SlideShare ist ein Scribd-Unternehmen logo
1 von 127
2017 AI 100 Companies
CB INSIGHTS AI Promising 100 Companies
2
3
Contents
1 Preface
2 100 Companies
4
3 Appendix
Preface.
Purpose
5
The aim of this PPT is to catch up with the trend of Artificial Intelligence in business situations.
Nowadays, AI is a kind of buzz word, but it has a high potential.
As a business parson, it is necessary to understand what AI is and how AI affect our businesses.
6
1760〜1830 1865〜1900 1990〜2000
①GPT=Steam Engine
②GPT=Internal Combustion Engine
③GPT=Internet
GPT(General Purpose Technology)
accumulation
History of Technology
2029 2045
④GPT=AI
1st industrial revolution
2nd industrial revolution
3rd industrial revolution
2029 Specific AI to General AI
4th Industrial revolution
2045 Singularity
ロジスティック曲線
https://ja.wikipedia.org/wiki/%E3%83%AD%E3%82%B8%E3%82%B9%E3%83%86
%E3%82%A3%E3%83%83%E3%82%AF%E6%96%B9%E7%A8%8B%E5%BC%8
F
We have 3 industrial revolutions.
1st one was based on the development of steam
engine. 2nd one was Internal combustion engine.
3rd one was Internet.
What is next ? I think AI is going to be 4th.
7Source: the singularity is near
The Row of Accelerating Returns
秩序が指数関数的に成長すると、時間は指数関数的に速くなる — つまり、
新たに大きな出来事が起きるまでの時間間隔は、時間の経過とともに短くなる。
The
Singularity is
Near
According to Dr. Ray Kurzweil,
It will be at 2045, and Specific AI is going to
be shifted at 2029 to general AI
owing to the development of
GNR (Genetics, Nano-technology, Robotics)
8
Utopia ?
or
Dystopia ?
AI is going to be the most important subject in 21 century.
10
AI 100 Companies
11
References:
CB INSIGHTS
12
Core AI
13
Affectiva, an MIT Media Lab spin-off, is the pioneer in Emotion AI,
the next frontier of artificial intelligence. Affectiva’s mission is to bring
emotional intelligence to the digital world with our emotion recognition
technology that senses and analyzes facial expressions and emotion.
The patented software is built on an emotion AI science platform
that uses computer vision, deep learning and the world’s largest
emotion data repository of more than 4.9 million faces analyzed from
75 countries, amounting to more than 50 billion emotion data points.
Affectiva’s SDKs and APIs enable developers to add emotion-sensing
and analytics to their own mobile apps, games, devices, applications
and digital experiences. Affectiva is also used by more than 1,400
brands, like Kellogg's, MARS and CBS to gather insight and analytics
in consumer emotional engagement.
General :01: Facial / Emotional Analysis
Category : Facial expression analysis
Emotion-sensing technology
Emotion analytics technology
Capital : $25.17M
SeriesA: $2M
SeriesB: $5.73M
SeriesC: $12M
Rounds: 4 rounds from 5 investors
Monetize : SDK, API , Consulting
Founder: Rana el Kaliouby
Name : affectiva 2009〜
HQ: Boston
Employee: 51-100
Source : https://www.affectiva.com/
Features :
• 5.6 million faces are measured
• Used by 1,400 brands
• 22 K media units analyzed
• 38,944 of face video analyzed
• MIT spin-off
Market : Advertising, and media
14
Petuum is creating a development platform that serves the full spectrum of
Artificial Intelligence and Machine Learning applications. They empower
organizations to create AI/ML solutions that are correct, fast,scalable, and
consume minimal computing resources. Their omnisource platform
processes and integrates data in different formats such as numeric, textual,
imagery, tabular, structured or unstructured, static or streaming from diverse
sources like social media, consumer profiles, electronic health records,
sensor logs from IoT devices, transaction logs from financial systems, and
machine logs from manufacturing equipment.
It is also omni-lingual, programmable with multiple popular
languages such as Python, R, Java, C++, and Julia. It’s also omnimount,
supporting different hardware platforms such as
datacenters, workstations, laptops, mobile, and
embedded devices.management, and beyond.
General :02: ML
Category : Full spectrum AI platform
Capital : $15M
Seed :
SeriesA: $15M
SeriesB:
Rounds: 1 rounds from 4 investors
Monetize : Provide omni platform
Founder: Eric Xing
Name : Petuum, inc. 2016〜
HQ: Pittsburg
Employee: 11-50
Source : http://www.petuum.com/products.html
Features :
• Programmable in all language.
• Originated from CMU.
• Faster, cheaper, repeatable and
affordable.
Market : AI / ML solutions
15
Vicarious is an artificial intelligence research
company that uses the computational principles of
the brain to build software designed to think and
learn like a human. Leveraging a new computational
paradigm called the Recursive Cortical Network,
the company has developed a visual perception
system that interprets the contents of photographs
and videos in a manner similar to humans. The
research at Vicarious is expected to
have applications for robotics, medical image
analysis, image and video search, and many
other fields.
General :03: General AI
Category : General AI
Robotics
Capital :$122M
Seed :
SeriesA:$15M
SeriesB:$52M
SeriesC:$50M
Rounds: 5 rounds from 28 investors
Monetize : ???
Founder: Dileep George
Name : Vicarious 2010〜
HQ: San Francisco
Employee: 11-50
Source : https://www.vicarious.com/index.html
Features :
• For robotics, medical, and so on.
• General AI
• Adviser Fei-Fei Lee
• Investors
Market : General AI and robotics
16
H2O.ai is the maker behind H2O, the leading open source AI platform
for data products. With H2O, a plethora of machine learning models
(from linear models to tree-based ensemble methods to Deep Learning)
can be trained from R, Python, Java, Scala, JSON, H2O’s Flow GUI, or
the REST API, on laptops or servers running Windows, Mac or Linux, in
the cloud or on premise, on clusters of up to hundreds of nodes, on top
of Hadoop or with the Sparkling Water API for Apache Spark. Some of
H2O’s mission critical applications include fraud, anti-money laundering,
auditing, churn, credit scoring, user based insurance, ICU monitoring,
predictive maintenance, operational intelligence and more in over 7,000
organizations. H2O is brewing a grassroots culture of data transformation
in its customer communities. Customers include Capital One, Progressive,
Zurich, Transamerica, Comcast, Nielsen Catalina Solutions, Neustar,
Macy’s, Walgreens, Kaiser Permanente and Aetna.
General :04: ML
Category : ML,
Cloud Computing
Analytics
Big Data
Capital : $33.6M
Seed : $3M
SeriesA: $8.9M
SeriesB: $20M
Rounds: 4 rounds from 10 investors
Monetize : Open source platform
Founder: SriSatish Ambati
Name : H2O.ai 2011〜
HQ: Mountain View
Employee: 11-50
Source : https://www.h2o.ai/
Features :
• Open source AI
• Over 7000 customers
• Cisco and Paypal is included
• Bringing AI to enterprise
• World record platform for AIMarket : Machine learning in financial,
insurance, healthcare
17
Loop AI Labs’ cognitive platform Loop Q is a technology that enables
organizations in any industry to stay competitive during the Fourth
Industrial Revolution by augmenting the capacity of current workforce.
With its ability to learn, parse context and understand meaning, the Loop
Q platform reasons on dark data in any language, and applies that Human
Capacity to power Robotic Process Automation (RPA). These cognitivelyenabled
applications powering RPA are custom-built by the global network
of Loop Certified Partners, already working in the Digital Transformation of
Forbes 2000 clients in Asia, Europe and America. The Q platform is a fully
unsupervised cognitive computing technology consisting of proprietary
Human Capacity cognitive algorithms integrated into a custom-built
High Performance Computing GPU accelerated hardware. Loop Q builds
on a long history of research and articulates several disciplines of
science and technology, including linguistics, psychology, neuroscience,
supercomputing, and AI.
General :
05: Unsupervised cognitive computing
platform
Category : Personalization
ML
Neural Language Processing
Big Data
Capital : ???
Seed :
SeriesA:
SeriesB:
Rounds:
Monetize : Machine Learning
Founder: GM Calafiore
Name : Loop.ai Labs 2012〜
HQ: San Francisco
Employee: 11-50
Source : http://www.loop.ai/industries
Features :
• Loop Q
• Robotics Process Automation
• Unsupervised cognitive computing
• $200M DARPA CALO project, the largest
government-funded artificial intelligence
project in history.
Market : EC, Healthcare, media, automotive,
mobile, retail ,etc.
18
CognitiveScale builds machine intelligence software for healthcare,
commerce, and financial services markets. The company’s products—
Engage and Amplify help large enterprises increase customer engagement,
improve decision-making, and deliver self-learning and self-assuring
business processes. CognitiveScale has successfully deployed its
software with multiple Global 500 companies and has formed strategic
go to market and technology partnerships with IBM, Microsoft, and
Deloitte. CognitiveScale was founded in 2013 by highly successful serial
entrepreneurs and senior executives from IBM Watson, Oracle, and
Salesforce with deep expertise in vertical enterprise software, cloud
computing, and machine learning. The company has won numerous
awards and featured in prominent research and publications. It is
headquartered in Austin, Texas, with offices in the United Kingdom and
India. Investors include Norwest Ventures, Intel Capital, IBM Watson,
and Microsoft Ventures.
General :06: Cognitive cloud software
Category : Big Data
Dark Data
ML
Information service
Capital :
Seed :
SeriesA:
SeriesB: $40M
Rounds: 2 rounds from 7 investors
Monetize : enterprise cognitive cloud
Founder: Matt Sanchez
Name : Cognitive Scale
HQ: Austin
Employee: 51-100
Source : https://www.cognitivescale.com/technology/
Features :
• Focus on dark data
• 500 companies
• Partner IBM, Microsoft, Delotte
Market : Commerce, healthcare, finance
19
Sentient’s mission is to transform how businesses
tackle their most complex, mission-critical problems
by empowering them to make the right decisions
faster. Sentient’s technology has patented
evolutionary and perceptual capabilities that will
provide customers with highly sophisticated solutions,
powered by the largest computer infrastructure
dedicated to distributed artificial intelligence.
General :07: Distributed AI Platform
Category : EC
Digital Marketing
Software
Capital : $143M
Seed :
SeriesA:
SeriesB: $38M
SeriesC: $103.5M
Rounds: 3 rounds from 6 investors
Monetize : Providing AI software
Founder: Antoine Blondeau
Name : Sentient 2007〜
HQ: San Francisco
Employee: ???
Source : https://www.sentient.ai/
Features :
• Decision making tool
• Personalization
• Sentient AWARE
• Sentient ASCEND
Market : digital marketing, EC, finance
20
Founded in 2012, Voyager Labs developed core technology with
unprecedented capabilities for analyzing in real time billions of data
points worldwide from multiple sources in order to understand and
predict human and group behavior and create real-time
actionable insights.
The company’s cognitive computing deep-insights platform
features unprecedented capabilities for analyzing in real-time billions
of publicly available unstructured data points. With offices in New
York, Washington and London, and R&D center in Israel, the
company currently employs more than 90 employees.
General :08: Big Data Analysis
Category : Personalization
Big Data
Platform
Capital : $100M
Seed :
SeriesA:
SeriesB:
Rounds: 1 rounds from 4 investors
Monetize : Optimization
Founder: Avi Korenblum
Name : Voyager lab
HQ: New York
Employee: 51-100
Source : http://voyagerlabs.co/
Features :
• Unprecedented capabilities for analyzing in
bunch of data.
• Gain insights into human behavior, interest,
and internet using data.
Market : EC, finance, human analysis
21
Numenta’s mission is to be a leader in the new era of machine
intelligence. They believe the brain is the best example of an
intelligent system, providing a roadmap for building intelligent
machines. The brain’s center of intelligence, the neocortex,
controls a wide range of functions using a common set of
principles. Numenta has developed several HTM example
applications to demonstrate the wide applicability of their
technology. They put all of their research and software
implementations into open source and encourage others to
join us in building a community. From a commercial point of
view, they license their technology and intellectual property.
General :09: BI
Category : Neuroscience
Machine Intelligence
Capital : ???
Seed : ???
SeriesA: ???
SeriesB: ???
Rounds: ???
Monetize : Licensing
Founder: Jeff Hawkins
Name : Numenta 2005〜
HQ: Redwood City
Employee: 15-20
Source : https://www.numenta.com/
Features :
• cohesive theory, core software technology, and
numerous applications
• Creating intelligent machines
• Neuroscience research
• Open source community
Market : Business Intelligence
Enterprise software
22
Scaled Inference is enabling a new generation of intelligent
software built by the masses and powered by an open shared
platform.
Easily enhance user’s websites, apps, and other software to
intelligently optimize for the key performance metrics, far faster
than possible with traditional analytics or A/B testing. Harness
the true power of Artificial Intelligence and Machine Learning,
with seamless integration and unprecedented versatility and
ease of deployment.
General :10: Scalable AI
Category : Machine Learning,
Probabilistic Inference
Distributed Systems
Capital : $13M
Seed : $5M
SeriesA: $8M
SeriesB:
Rounds: 2 rounds from 9 investors
Monetize : Intelligent Computing
Founder: Olcan Sercinoglu
Name : Scaled Inference 2014〜
HQ: Polo Alto
Employee: 11-50
Source : https://www.scaledinference.com/
Features :
• A platform for pattern recognition,
detection, prediction, and so on.
• Providing APIs
Market : ML, BI
23
Skymind is the Red Hat of artificial intelligence. It provides support,
training and services around an enterprise distribution of its
opensource libraries called the Skymind Intelligence Layer (SKIL).
These libraries include Deeplearning4j, the most widely used deep learning
tool for Java; and the scientific computing library ND4J, or n-dimensional
arrays for Java (Numpy for the JVM). Deep learning can equal and
surpass expert human accuracy on many pattern recognition tasks,
and Skymind is applying it to old, hard business problems such as
fraud detection, network intrusion detection, hardware breakdown
prediction, churn prediction, market forecasting and image recognition.
Skymind’s customers are in such sectors as financial services
, telecoms, manufacturing, healthcare and retail. Skymind’s
open-source software integrates with the rest of the AI stack,
working with tools such as Hadoop, Spark, Kafka, and ElasticSearch.
Skymind works with large clients on-premise and in the hybrid
cloud to ensure data privacy and security
General :11: BI
Category : deep learning,
prediction,
data analysis,
BI,
Data mining
Capital : $3.32M
Seed : $3.3M
SeriesA:
SeriesB:
Rounds: 4 rounds from 11 investors
Monetize : Providing support,training and service
Founder: Adam Gibson
Name : skymind 2014〜
HQ: San Francisco
Employee: 11-50
Source : https://skymind.ai/
Features :
• Working with Hadoop, Spark, kafka
• Deeplearning4j.org : the world's first open-source,
distributed, commercial-grade deep-learning framework.
• Investors : fundersClub, Y Combinator
Market : Security, Prediction, Image, Finance
24
Digital Reasoning is a leader in cognitive computing. They build software
that understands human communication and extracts insights from
it - in many languages, across many domains, and at enormous scale.
Their award-winning cognitive computing platform, Synthesys®, is
able to analyze all forms of unstructured and structured data, including
feeds from legacy technologies, as well new insights from untapped
resources. It produces holistic insights that give organizations
unparalleled oversight and control, even at the scale of complex global
enterprises and government departments. Synthesys uses natural
language processing and machine learning to semantically analyze
human communication, uses context to discern meaning and relevance,
and applies knowledge representation to adapt to different usage
domains. It creates and maintains profiles of entities (people, places,
objects) and relationships between them. Machine learning continually
improves its accuracy. Digital Reasoning has applied Synthesys to
develop proven solutions for financial services, intelligence and defense,
law enforcement, and health care organizations.
General :12: Cognitive computing
Category : NLP,
ML,
Big Data,
Text Analytics
Capital : $73.96M
Seed :
SeriesC: $24M
SeriesD: $40M
Rounds: 6 rounds from 7 investors
Monetize : providing software
Founder: Tim Estes
Name : Digital Reasoning 2000〜
HQ: Franklin
Employee: 101-250
Source : http://www.digitalreasoning.com/
Features :
• Software that can understand
human communication.
• NLP and ML
• Goldman Sachs and NASDAQ
Market : research and development in
cognitive computing
25
Bonsai is a software development platform that empowers every developer
to build, teach and use intelligence models. The Bonsai Platform abstracts
away the low-level, inner workings of artificial intelligence so developers
can focus on what really matters, building smarter applications faster.
Instead of needing expertise in complex AI algorithms and techniques, the
Bonsai Artificial Intelligence Engine allows a developer to more efficiently
code the multiple concepts and lessons needed to enable greater control
and optimization of hardware and software. Bonsai’s fundamentally
different approach results in far more accessible, efficient and explainable
models compared to alternatives. Bonsai is headquartered in Berkeley, CA
and backed by NEA.
General :13: Developer platform
Category : Operating Systems,
Developer Tools,
Developer Platform,
Machine Learning
Capital : $13.62M
Seed : $320K
SeriesA: $13.3M
SeriesB:
Rounds: 4 rounds from 8 investors
Monetize : B2B industrial strength AI for developers
Founder:
Name : bonsai 2014〜
HQ: Berkeley
Employee: 11-50
Source : https://bons.ai/
Features :
• For developer platform
• Industrial specific AI
• Investors : Microsoft ventures,
Samsung ventures
Market : developers
26
Ayasdi helps companies around the world to use artificial intelligence
and Big Data to make employees hundreds of times more productive
and to drive fundamental breakthroughs that are beyond the capabilities
of humans. Their revolutionary machine intelligence platform leverages
automation, machine learning and topological data analysis to simplify
the extraction of knowledge from even the largest and most
complex data sets and to facilitate the deployment of intelligent,
AI-based applications across the enterprise. Developed by Stanford
computational mathematicians, Ayasdi’s unique approach to machine
intelligence leverages breakthrough mathematics, highly automated
software and inexpensive, scalable computers to revolutionize the
process of converting big data into business impact. They are excited to
count many of the Global 500, plus leading governments and research
institutions as their clients and partners.
General :14: BI
Category : Big Data,
ML,
Data Visualization,
Detection
Capital : $106M
Seed : ???
SeriesA: $10M
SeriesB: $30.6M
SeriesC: $55M
Rounds: 7 rounds from 8 investors
Monetize : Providing TDA
Founder: Gurjeet Singh
Name : AYASDI 2008〜
HQ: Menlo Park
Employee: 10-50
Source : https://www.ayasdi.com/
Features :
• B2B focus
• Automated, inexpensive, and scalable
• Topological Data Analysis (TDA).
TDA: The most significant technological
advancements ever funded by DARPA
• Anti-money laundering, BI, fraud, management, etc
Market : Financial, Public, Healthcare
27
Text Analysis
28
Textio empowers you to be the best writer you can be, by predicting how
well your content will perform before you ever publish it. Textio is built on
predictive engine technology that combines machine learning and natural
language processing with a customer data exchange. The result is a
learning loop that joins artificial intelligence to human creativity,
becoming smarter with every keystroke. Textio’s first domain focus is on
content for recruiting and hiring such as job posts and candidate
emails. Textio scores your writing and highlights your most statistically
significant phrases, and then offers clear guidance to help you improve
your document’s performance. Case studies show that companies using
Textio will attract a cohort of job applicants that is on average 24% more
qualified and 12% more diverse than those applying to the competition
— and Textio customers fill positions on average 17% faster.
General :15: NLP
Category : Text Analytics,
Natural Language Processing,
ML
Capital : $29.5M
Seed : $1.5M
SeriesA: $8M
SeriesB: $20M
Rounds: 3 rounds from 6 investors
Monetize : providing text checking software
Founder: Kieran Snyder
Name : textio 2014〜
HQ: Seattle
Employee: 11-50
Source : https://textio.com/
Features :
• User : Microsoft, Square, Twitter,
Starbucks, Apple, Slack, NASA,
P&G etc.
• NPL × Predicting processing engine
• Founder is ex-Microsoft
Market : Hiring advertisement
“We had this premise that word processing
in text hadn’t been disrupted in a while, from
command line to GUI. We had the internet come
along, it was about social and sharing, and we
think that AI and the set of related technologies is
the next big disruptor of text. If you know the
Performance of a document before it’s ever
published then you can fix it before it’s published.”
CEO Kieran Snyder
29
Fido Artificial Intelligence turns a decision-making process into a
conversation. It learns automatically by extracting facts and opinions
from articles, blogs, social media and more. Fido Decision Engine
is used for a wide range of applications, including: fact-checking,
making decisions in hospitality and travel, e-commerce and more;
answering healthcare questions based on clinical data, patient and
doctor conversations etc.; product development and marketing. Fido
has married symbolic approach known for the highest precision
and predictability with self-learning neural networks. This patented
approach enables to understand the English language without the
“human bottleneck” - the need for training or labeling data for specific
domains of expertise. Fido.ai is a spinoff from AI Lab in Europe, that has
developed this new hybrid approach while building bots and AI products
for Fortune 500 companies and govements. Meet Ada, a Bot that reads
and learns from reviews.
General :16: NLP
Category : text analyzing,
Big Data
Capital : $1.86M
Seed : $1.86M
SeriesA:
SeriesB:
Rounds: 1 round from 8 investors
Monetize : Providing chatbot
Founder: Michal Wroczynski
Name : fido.ai 2013〜
HQ: San Mateo
Employee: 11-50
Source : http://fido.ai/
Features :
• Video: youtube.com/watch?v=FkM1foMZm7U
• Decision making process into a conversation
• Self learning neural network
• Powering chatbots
• Answering business questions based on a large volume of text
• Cyberbullying and hate speech detection.
• Invester : Plug and Play
Market : Communication, SNS
30
Cortical.io offers Natural Language Understanding (NLU) solutions
based on Semantic Folding, a theory which opens a fundamentally new
perspective to handling Big Text Data. Inspired by the latest findings
on the way the brain processes information, Cortical.io’s Retina Engine
converts language into semantic fingerprints, a numerical representation
that captures meaning explicitly and operates on it computationally. The
Retina Engine compares the semantic relatedness of any two texts by
measuring the overlap of their fingerprints. It can be easily customized for
any language, domain or jargon and delivers results quickly, at low costs.
The intrinsic difference of Cortical.io’s algorithm makes it possible to
solve many open NLU challenges like meaning-based filtering of terabytesof
unstructured text data, real-time topic detection in social media or
semantic search over millions of documents across languages. Cortical.io
was founded in 2011 in Vienna, Austria and holds a broad general license
for Numenta’s HTM technology
General :17: NLU
Category : Semantic Fingerprints,
Classification,
Streaming Text Filter,
Keyword extraction,
NLP,
Text Analytics
ML
Capital : $6.18M
Seed : $3M
SeriesA: $1.8M
SeriesB:
Rounds: 4 rounds from 4 investors
Monetize : APIs, Ratina platform
Founder: Francisco Webber
Name : Cortical.io 2011〜
HQ: Austria
Employee: 11-50
Source : http://www.cortical.io/
Features :
• NLU from bid text data
• Semantic Folding
• Cortical.io’s Retina Engine converts language into semantic fingerprints
• Solve these problems :
meaning-based filtering of terabytes of unstructured text data, real-time topic
detection in social media or semantic search over millions of documents
across languages.
Market : BI
31
Narrative Science is the leader in Advanced NLG for the enterprise. Its
Quill™ platform, an intelligent system, analyzes data from disparate
sources, understands what is interesting and important, then automatically
generates perfectly written narratives to convey the right meaning from
the data for any intended audience, at machine scale. It excels where
data
visualizations fall short: it identifies and conveys relevant information
in conversational language that people can immediately comprehend,
trust and act on. Organizations rely on Narrative Science to better serve
customers with useful written content and to increase efficiency, freeing
employees to focus on high-value activities and innovation.
General :18: NLG
Category : Neural Language Generation
Big Data
Capital : $40.4M
Seed :
SeriesB: $6M
SeriesC: $12M
SeriesD: $22M
Rounds: 6 rounds from 7 investors
Monetize : Providing NLG platform
Founder: Stuart Frankel
Name : NarrativeScience 2010〜
HQ: Chicago
Employee: 51-100
Source : https://narrativescience.com/Platform
Features :
• Neural Language Generation
• Intelligent Narratives
• Quill advanced NLG platform
Market : Finance, BI, Government, Retail
32
IoT / IIOT
33
Nanit is the first baby-safe monitor that uses computer vision
technology to measure sleep and provide scientifically backed insights
for parents to help their babies sleep better — all without a wearable.
Nanit was developed in conjunction with doctors and sleep experts
to ensure the device tracks the most important metrics. The camera
provides a high-resolution bird’s eye view of the crib, and its sensors
can measure and differentiate between even the slightest behavioral
changes. Nanit’s AI gradually familiarizes itself with baby’s behavior
over time and delivers personalized insights to help improve sleep.
Nanit is the only monitor on the market that provides sleep insights,
behavioral analysis, parenting tips, social sharing capabilities and nightly
video summaries. Other features include a private social feed for parents
and caregivers to communicate; floor stand with easy installation; night
light and white noise maker; fully integrated cable management system;
and humidity/temperature sensors.
General :19: IoT
Category : Smart monitor,
ML,
Capital : $6.6M
Seed : $6.6M
SeriesA:
SeriesB:
Rounds: 1 rounds from 8 investors
Monetize : Selling devices
Founder: Assaf Glazer
Name : nanit 2015〜
HQ: New York
Employee:11-50
Source : https://www.nanit.com/
Features :
• $349 per unit.
• Baby safe monitor.
• Understand sleep patterns, parent visits, room
conditions and much more.
• 30 days free trial.
Market : Baby, Child care
34
Munich-based IIoT company KONUX combines sensor data and artificial
intelligence to generate real-time insights into the health of machines
and infrastructure. This holistic approach enables operators to analyze
machine problems and predict maintenance needs ahead of time.
Clients benefit from decreases in maintenance costs of up to 30% and
reductions in machine breakdowns of up to 70%. The KONUX solution
replaces outdated manual inspection methods with smart sensors that
continuously transmit asset condition data to the KONUX Andromeda
software platform. There, the data is analyzed using machine learning
algorithms and visualized using a customized front end. The system
notifies of critical events in real time and gives recommendations
for optimal planning of maintenance operations. KONUX is currently
digitizing Deutsche Bahn’s high-speed railway network through
condition monitoring of switches nationwide. This helps Deutsche Bahn
significantly reduce inspection and maintenance costs, decrease train
delays and improve worker safety.
General :20: IIOT
Category : Smart Sensor
ML
Capital : $18.5M
Seed : $2M
SeriesA: $16.5M
SeriesB:
Rounds: 4 rounds from 16 investors
Monetize : smart IoT sensors and Visualizing
Founder: Andreas Kunze
Name : KONUX 2014〜
HQ: Munchen
Employee:11-50
Source : https://www.konux.com/
Features :
• Industrial IoT
• Visualizing and Predicting the industrial world.
• Sensors data to actionable insights.
Market : Transportation
35
Verdigris is an artificial intelligence and IoT platform that
makes buildings smarter and more connected while reducing
energy consumption and costs. By combining proprietary hardware
sensors, machine learning, and software, Verdigris “learns” the
energy patterns of a building. Their software produces comprehensive
reports including energy forecasts,alerts about faulty equipment,
maintenance reminders, and detailed energy usage information for
each and every device and appliance. Verdigris offers a suite of
applications that gives building engineers a comprehensive overview,
an “itemized utility bill”, powerful reporting, and simple automation
tools for their facility.
General :21: IIOT
Category : Big Data,
IoT platform
IoT hardware
Capital : $16M
Seed : $3.4M
SeriesA: $12.7M
SeriesB:
Rounds: 4 rounds from 4 investors
Monetize : Hardware and software for analysis
Founder: Jonathan Chu
Name : Verdigris Technologies 2011〜
HQ: Moffett Field
Employee: 11-50
Source : http://sightmachine.com/product/
Features :
• IoT platform
• Energy management, Property management.
Energy efficiency, Operational efficiency.
• Get better data, and smart decision, then save
money.
• Cool UI
Market : Energy management, big data
36
Sight Machine is the category leader for manufacturing analytics
and used by Global 500 companies to make better, faster decisions
about their operations. Sight Machine’s analytics platform, purpose-built
for discrete and process manufacturing, uses artificial intelligence,
machine learning, and advanced analytics to help address
critical challenges in quality and productivity throughout the
enterprise. The platform delivers “AI for the plant floor” and is
powered by the industry’s only Plant Digital Twin (patent pending)
, which enables real-time visibility and actionable insights
for every machine, line, and plant throughout an enterprise.
Founded in Michigan in 2011 and expanded to the Bay Area in 2012,
Sight Machine fuses the spirit of Silicon Valley technology innovation
with rock-solid Detroit manufacturing. Its team includes the founders
of Slashdot along with leadership from early Yahoo, Palantir, Tesla,
Cisco, IBM, McKinsey, and Apple.
General :22: IIOT
Category : Manufacturing analysis,
ML
Robotics,
SaaS
Capital : $30.52M
Seed :
SeriesA: $5M
SeriesB: $20M
Rounds: 4 rounds from 12 investors
Monetize : Analysis and Solutions
Founder: Jon Sobel
Name : SightMachine 2012〜
HQ: San Francisco
Employee: 51-100
Source : http://sightmachine.com/
Features :
• Reducing energy consumption and cost.
• Quality ↑, Productivity ↑, Visibility ↑
• Sensor for many industries.
• Kaizen culture.
• Real time visualizing
Market : Aerospace, Automobile, CPG,
Electronics, Food, Oil, Gas, Medical
37
Commerce
38
The BloomReach Personalization Platform is an underlying set of
technologies to deliver the right experience for the user and business in
every digital context from acquisition to conversion. The BloomReach
Personalization Platform powers big data applications that span the
customer experience and make it more personalized and relevant
to the customer’s intent. The BloomReach Personalization Platform
centralizes data enrichment, access, publishing and integration across
all BloomReach products. With a single integration, customers have one
login to access all BloomReach products, one pixel to inform BloomReach
and one feed to send to BloomReach. Data enrichment includes attribute
extraction, synonymization and machine learning. Data access makes
the behavioral, product and demand data available to all BloomReach
applications. Publishing supports the integration of many different widgets
into a single framework so that customers can customize their templates
and experiences.
General :23: EC Personalization
Category : EC,
SEO,
ML,
CMS
Capital : $97M
Seed :
SeriesA: $5M
SeriesB: $11M
SeriesC: $25M
SeriesD: $56M
Monetize : Software (Personalization, Platform))
Founder: Raj De Datta
Name : bloomreach 2009〜
HQ: Mountain View
Employee: 251-500
Source :
Features :
• Personalization platform
• Hippo CRM, cloud, marketplace
• BIMarket : CMS
39
mode.ai’s interactive user-experience and interface capitalizes
on users’own holistic and subjective notions of similarity.
mode.ai’s AI is uniquely suited to facilitate visually-driven,
conversational experiences. Mode.ai is in the business of
building AI-powered visual bots for retailers and publishers
(B2B2C offering) using computer vision and deep learning,
to provide an innovative conversational commerce channel
on mobile messaging platforms. Their technology invites
users to find visually similar items (‘more like this’), get styling
suggestions (‘wear it with’), experience virtual reality
(‘show on me’) and much more.
General :24: EC chatbot
Category : Retail,
Visual Search,
Commerce
Capital : ???
Seed : ???
SeriesA:
SeriesB:
Rounds: 1 round from 1 investor
Monetize : Chatbot × charge
Founder: Eitan Sharon
Name : mode.ai
HQ: Polo Alto
Employee: 1-10
Source : http://mode.ai/#/menu
Features :
• Chatbot AI in fashion
• Interactive EC
Market : EC
40
Fintech / Insurance
41
Cape Analytics was established to change the way information about the
human-built environment is created and used. The company uses artificial
intelligence to instantly and automatically extract proprietary property
data from geospatial imagery. Cape Analytics’ cloud-based platform uses
computer vision to provide near inspection-quality information about
high-value property features – instantaneously and at scale. This data is
available nationwide and can be easily integrated by insurance carriers and
other property stakeholders. Cape Analytics establishes a new category of
property analytics, offering immediacy and coverage comparable to public
record data, but with the accuracy and detail previously available only from
time-consuming, in-person property assessments.
General :26: Image recognition
Category : Image recognition
ML
Capital : $14M
Seed :
SeriesA:
SeriesB:
Rounds: 1 rounds from 9 investors
Monetize : Data analysis
Founder: Ryan Kottenstette
Name : CAPE ANALYTICS 2014〜
HQ: Mountain View
Employee: 11-50
Source : https://capeanalytics.com/
Features :
• geospatial imagery
• Focus on property data
• Using public recorded data
• Data Instant, Accurate, Everywhere
without inspectorsMarket : Insurance
42
Kensho is empowering financial institutions with technology that
brings transparency to markets. Kensho is pioneering real-time
statistical computing systems and scalable analytics architectures—the
next generation of improvements to the global financial system. Kensho
harnesses massively-parallel statistical computing, user-friendly visual
interfaces and breakthroughs in unstructured data engineering and
predictive analytics to create the next-generation analytics platform for
investment professionals. Addressing the most significant challenges
surrounding investment analysis on Wall Street today-achieving speed,
scale, and automation of previously human-intensive knowledge
work-Kensho’s intelligent computer systems are capable of answering
complex financial questions posed in plain English, and in real-time.
General :25: ML
Category : ML,
Data Analytics
Capital : $67M
Seed : $10M
SeriesA: $7M
SeriesB: $50M
Rounds: 3 rounds from 16 investors
Monetize : Analytics Software
Founder: Daniel Nadler
Name : KENSHO 2013〜
HQ: Cambridge
Employee: 51-100
Source : https://www.kensho.com/industry/as
Features :
• Real time statistical system
• Financial Analytics Software deploys scalable
analytics systems
• Partner: Goldman, J.P Morgan, Bank of America
CITI, Morgan Stanley
Market : Insurance, Financial, Healthcare,
Security
43
Numerai is a new kind of hedge fund built by a network of data
scientists. Numerai manages an institutional grade long/short global
equity strategy for the investors in their hedge fund. They transform
and regularize financial data into machine learning problems for their
global community of data scientists. In December 2015, they created
the world’s first encrypted data science tournament for stock market
predictions. The most accurate and original machine learning models
from the world’s best data scientists are synthesized into a collective
artificial intelligence that controls the capital in Numerai’s hedge
fund. They reward outstanding contributions from the data science
community with Bitcoin.
General :27: Platform
Category : ML,
Data Science
Capital : $7.5M
Seed :
SeriesA: $6M
SeriesB:
Rounds: 2 rounds from 7 investors
Monetize : ???
Founder: Richard Craib
Name : NUMERAI 2015〜
HQ: San Francisco
Employee: 11-50
Source : https://numer.ai/
Features :
• A new kind of hedge fund built by a network of data
scientist
• Numeaire : First cryptocurrency made by hedge fund
• On the Ethereum
• Network effect × financeMarket : Finance , Stock market
Data scientists entering Numerai’s tournament currently receive,
weekly, an encrypted data set that is an abstract representation of
stock market information that preserves its structure without revealing
details. The scientists then create machine-learning algorithms to find
patterns in that data, and they test their models by uploading their
predictions to the website, which so far has received about 40 billion
Predictions.
Forbes
https://vimeo.com/205032211
44
AlphaSense solves the crippling information overload problem for
knowledge professionals who are subject to a fire hose of data and are
unable to catch or digest the vast amounts of content relevant to their
daily decisions. Some platforms offer access to relevant documents,
but none have intelligent search capabilities. AlphaSense offers access
to proprietary research databases and includes semantic knowledge of
financial language and the relevance analytics to surface valuable hidden
snippets of information. AlphaSense ingests millions of documents,
including company filings and transcripts, presentations, news,
press releases and Wall Street research and any uploaded content. It
semantically indexes these documents and produces instant results for
users on any theme they are researching, summarizing relevant snippets
across a vast volume of documents. The key benefit AlphaSense provides
is an information edge, allowing users to find what others miss, and be the
first to act on new information and insights.
General :28: NLP search engine
Category : Intelligent Search Engine
Capital : $35M
Seed : $1.7M
SeriesA:
SeriesB:
Rounds: 2 rounds from 5 investors
Monetize :
Founder: Raj Neervannan
Name : alphasence 2010〜
HQ: New York
Employee: 51-100
Source : https://www.alpha-sense.com/#whyalpha
Features :
• Solve the crippling info. overload problem
• Find critical info.
• Access +35,000 companies.
• Linguistic search algorithms access to M of documents
Market : Finance
45
KAI, a conversational AI platform, enables companies to engage and
transact with their customers via intelligent conversations, anytime,
anywhere. KAI Banking is fluent in banking with thousands of intents and
millions of banking sentences. Financial institutions power smart bots on
messaging platforms like Facebook Messenger and virtual assistants in
their mobile apps to fulfill requests, solve problems, and predict needs for
their customers. KAI-powered bots and assistants help with payments,
transaction and account insights, and personal finance management.
They also provide new ways for banks to support and market product
and services. The experience is as natural as texting a friend because
KAI understands human-like conversations including idiosyncratic
phrases, rapid topic changes and interruptions. KAI keeps track of the
flow of conversations versus just natural language understanding –
staying focused on customers’ goals and interpreting the context of a
conversation. It enables lifestyle banking with financial decisions woven
into everyday life.
General :29: NLP chatbot
Category : Chatbot,
NLP,
Fintech
Capital : $11.45M
Seed : $2.25M
SeriesA: $9.2M
SeriesB:
Rounds: 2 rounds from 12 investors
Monetize : providing AI chatbot
Founder: Zor Gorelov
Name : kasisto 2013〜
HQ: New York
Employee: 11-50
Source : http://kasisto.com/
Features :
• Interactive chatbot
• For bank (payment, transactions, and account insights)
• Message on messenger
• Prefer: voice, touch, and text
Market : Financial (Bank)
46
Others
47
Gigster puts a world-class software development team in your pocket.
Software is becoming an essential tool for every business with global IT
spend reaching $2.3T, yet very few have easy access to quality, managed
talent when they need custom software. Gigster is changing the way
software is created by building the perfect team for every project,
giving clients a single point of contact with their product manager,
and completing it for a fixed price. The emerging viability of artificial
intelligence and data science have recently made this possible. Intelligent
tools powered by data from thousands of past projects take Gigster
freelancers, already among the best in the world, to superhuman levels of
efficiency. Gigster was founded in 2014 and has worked with companies
from seed-stage startups to enterprises like IBM, World Bank, Airbus,
Square, and Mastercard. Gigster has raised $12M from Andreessen,
Greylock, Bloomberg, and Y Combinator.
General :30: Smart developing service
Category : App development,
Web development,
Rapid Prototyping,
Product Management
Capital : $32.5M
Seed : $2.5M
SeriesA: $10M
SeriesB: $20M
Rounds: 4 rounds from 17 investors
Monetize : software developing platform
Founder: Roger Dickey
Name : Gigster 2014〜
HQ: San Francisco
Employee: 11-50
Source : https://gigster.com/
Features :
• Investors: Andreessen, Y Combinator
• smart development service
• 700+ network, 100+ project, 5M line of code
• Reliability and Efficiency
Market : developers
48
Prospera is developing artificial intelligence for agriculture to transform
farming from an intuition-based practice to one that will use statistical
models and automation in a way similar to silicon chip manufacturing,
with protocols that optimize workforce, irrigation, fertilization and
spraying. With in-field cameras and climatic sensors, Prospera is the
only company that offers accurate remote agronomy and management
solutions to farmers around the world. With an end-to-end data sciences
approach to acquire, analyze and turn all in-field data into actions,
growing practices will be measured more accurately, and “growing
campaigns” will be more similar to today’s advertising campaigns
in terms of understanding ROI, bench-marking and optimization. By
measuring and analyzing the finite variables which affect crops in
greenhouses and farms, Prospera offers solutions to empower farmers
with real-time and predictive analysis on what is happening to their
crops from a leaf by leaf basis to a multi-field basis, allowing them to
tackle critical issues of underperforming fields.
General :31: Image recognition
Category : ML,
Image recognition,
Computer Vision Technology
Capital : $22M
Seed :
SeriesA: $7M
SeriesB: $15M
Rounds: 2 rounds from 4 investors
Monetize : Providing agriculture solutions
Founder: Daniel Koppel
Name : prospera
HQ: Tel Aviv
Employee:11-50
Source : http://prospera.ag/
Features :
• Only one that offers accurate remote
agronomy and management solutions to farmers
• Centralized visibility and control
• 95% accurate yield predictions
• Maximize labor productivity
• analyze plant health, development and stress
Market : Agriculture
49
Citrine hosts the world’s largest materials repository platform. Citrine
uses this platform to build AI software that enables more efficient
discovery, optimization, manufacturing, and deployment of materials.
Their software platform ingests structured and unstructured materials
data from a wide variety of sources, both public and private; they
then use AI engines to identify important signals in those data and
directly enhance customers’ R&D and manufacturing efforts. They
serve organizations that rely on cutting-edge materials for competitive
advantage, in industries ranging from automotive, aerospace, consumer
goods, batteries, and electronics.
General :32: Predictive intelligence
Category : Big Data,
Advanced material,
Analytics,
ML
Capital : $7.6M
Seed :
SeriesA: $7.6M
SeriesB:
Rounds: 3 rounds from 8 investors
Monetize : platform for material and chemical
Founder: Greg Mulholland
Name : Citrine 2013〜
HQ: Redwood city
Employee: 11-50
Source : https://citrine.io/
Features :
• Repository platform
• R&D and manufacturing
• operating system for advanced materials
and chemicals
• understands large-scale data from countless
sources, such as patents, research papers,
technical reports, and existing databases
Market : R&D, Product Management, chemical
50
Blue River Technology creates and delivers advanced
technology for better agriculture. The company’s pioneering
approach utilizes computer vision and robotics to build a future
that ‘makes every plant count’ - where the needs of each plant
are precisely measured and instantly responded to,
significantly reducing chemical and nutrient use. The company
brings substantial experience in precision agriculture, robotics,
computer vision and machine learning.
General :33: Image recognition
Category : robotics,
ML,
Capital : $30M
Seed :
SeriesA: $13M
SeriesB: $17M
Rounds:
Monetize : providing ag solutions
Founder: Jorge Heraud
Name : Blue River 2011〜
HQ: Sunny Vale
Employee: 51-100
Source : http://www.bluerivertechnology.com/
Features :
• Reduce chemical and nutrient use
• 90% lower chemical costs.
• 2.5B potential reduction in global herbicide
use.
• See & Spray: precisely spraying chemicals
only where needed, and with exactly what's
needed
Market : Agriculture
51
ROSS Intelligence uses artificial intelligence to allow attorneys to do
more than was ever humanly possible and focus on what matters most
– their clients. Co-founded in 2014 by Andrew Arruda, Jimoh Ovbiagele
and Pargles Dall’Oglio, ROSS developed a proprietary framework,
LegalCognition and has combined with IBM Watson, an early partner
of ROSS Intelligence. ROSS’ first legal A.I. went live in the area of legal
research, allowing attorneys to perform tedious research tasks in seconds
rather than hours. A graduate of Y Combinator’s 2015 class and NextLaw
Labs, ROSS is currently partnered with a variety of in-house teams, bar
associations, and law schools, and has a client base that includes Dentons,
the world’s largest law firm by headcount, and Latham & Watkins, the
world’s largest law firm by revenue.
General :34: NLP law
Category : ML,
NLP,
Lawyer
Capital : ???
Seed : $120K
SeriesA:
SeriesB:
Rounds:
Monetize : providing solutions for lawyer
Founder: Andrew Arruda
Name : ROSS intelligence 2014〜
HQ: San Francisco
Employee: 11-50
Source : http://www.rossintelligence.com/%22%20%5Ct%20%22_blank
Features :
• Investors : Y Combinator
• Legal cognition
• IBM Watson
• First AI for law
Market : law
52
Zymergen is a technology company unlocking the power of biology.
Zymergen has developed a proprietary platform, which uses robots and
machine learning to engineer microbes faster, more predictably, and to
a level of performance previously unattainable. These microbes, and the
products they produce, have broad applications across industries
such as chemicals and materials, agriculture, and healthcare.
Zymergen works with customers in these industries to improve the
economics of existing products, bring new products to market faster,
and to develop entirely new products.
General :35: ML biology
Category : Bioinformatics,
ML,
Robotics
Capital : $174M
Seed : $2M
SeriesA: $42.14M
SeriesB: $130M
Rounds: 3 rounds from 17 investors
Monetize : microbes
Founder: Joshua Hoffman
Name : zymergen 2013〜
HQ: Emeryville
Employee: 101-250
Source : https://www.zymergen.com/about/
Features :
• Focus on biology
• Robots and machine learning to engineer
microbes.
• Investor : SoftBank seriesB lead
Market : Biology
53
Founded in 2014, Descartes Labs is a New Mexico-based technology
company advancing the science of forecasting. The team, which
originally spun out of Los Alamos National Lab, developed a platform
that applies machine learning to massive data sets, like satellite
imagery, for forecasting and analysis across different industries.
Descartes’ first application was in agriculture, analyzing satellite
imagery to predict corn and soy yields in the U.S. ahead of the USDA,
which is the current industry benchmark. Descartes Labs’ mission is to
solve the most challenging forecasting problems today, to help us
better understand the Earth and prepare for the future. The company
was named one of CB Insights’ Game
Changers in 2016.
General :36: Image recognition agriculture
Category : ML,
Computer vision,
Geospatial,
Image recognition
Capital : $38.28M
Seed : $3M
SeriesA: $5M
SeriesB: $30M
Rounds: 4 rounds from 10 investors
Monetize : Selling analysis to ag companies
Founder: Mark Johnson
Name : Descartes Labs 2014〜
HQ: New Mexico
Employee: 11-50
Source : https://www.descarteslabs.com/
Features :
• building a data refinery for satellite imagery.
• Geovisual search
Center Pivot, Airport runways, Wind turvines
• Map
• ForcastMarket : Agriculture
54
Gradescope is using AI to help instructors grade their students’ work.
Instructors do not need to compromise on assessment quality — their
software lets instructors give out their existing paper-based exams or
homework assignments, but then grade them online. Instructors save
time, while grading consistently and transparently. Students get rich,
personalized feedback in a shorter amount of time. They also keep
track of the exact reason behind every point earned by every student on
every question. This enables unprecedented data analytics: for example,
they can reveal which concepts a student needs help with, or which
questions are too difficult. To date, Gradescope has been used to grade
over 12 million pages of student work at more than 200 institutions
worldwide.
General :37: Image recognition education
Category : skill assessment,
image recognition
Capital : $2.5M
Seed : $2.5M
SeriesA:
SeriesB:
Rounds: 1 round from 5 investors
Monetize : providing software to institutes
Founder: Pieter Abbeel
Name : gradescore 2014〜
HQ: Berkley
Employee: 1-10
Source : https://www.gradescope.com/
Features :
• Help instructors to grade
students’ work.
• 12 million pages of student work
• 300↑ institutes
Market : Education
55
Talla gives you the power to turn your chat platform into a command
center for your company. Talla combines the tools, processes, and
intelligent automation you need to manage information workflows
within messaging systems, including Slack. Use Talla to enable
business processes in chat, such as onboarding employees,
training on new skills, polling, and building out custom
experiences. You’ll be able deliver and gather important
information for your team, keeping everyone knowledgeable,
engaged, and productive. Founded in 2015, Talla is based in
Cambridge, MA.
General :38: Data Analysis for HR
Category : HR,
Data Analysis
Capital : $12.33
Seed :
SeriesA: $8.3M
SeriesB:
Rounds: 3 rounds from 12 investors
Monetize : Providing talla for $149 / $499 per month
Founder: Rob May
Name : talla 2015〜
HQ: Brookline
Employee: 11-50
Source : https://talla.com/
Features :
• Virtual assistant for working.
• automate repetitive requests, increase employee
engagement, and accelerate information retrieval.
• 2000+ Companies use it.
• Talla for IT and HR
Market : HR
56
Health Care
57
Freenome is building software to understand the changes in plasma
cell-free DNA (cfDNA) patterns over time. By studying normal cfDNA
dynamics Freenome discovered signatures for early cancer detection
that outcompete existing screening methods from a single blood draw
in Prostate, Lung, Colorectal, and Breast cancers. In addition, the deep
learning models have been leveraged to distinguish disease subtypes such
as castration-sensitive from castration-resistant prostate cancer. Thus, the
resolving power of Freenome’s software enables both disease diagnosis
and personalized treatment recommendation from the same platform.
Freenome raised $5.5M from Andreessen Horowitz, Founders Fund, and
DCVC, and partnered with UCSF, Stanford, Duke, Emory, NYU, and several
other centers to expand the validation of Freenome’s technology.
General :
39: Image recognition for
healthcare
Category : DL,
Image recognition,
Capital : $77.55M
Seed : $5.55M
SeriesA: $72M
SeriesB:
Rounds: 3 rounds from 16 investors
Monetize : disease detecting solutions
Founder: Gabriel Otte
Name : freenome 2015〜
HQ: San Francisco
Employee: 11-50
Source : https://www.freenome.com/
Features :
• Investor: Andreessen Horowitz
• Image recognition for DNA
• health technology bringing accurate, accessible
and non-invasive disease screenings
• The members are scientists and technologists.
Market : Healthcare
58
We have built a Clinical AI Platform that is bringing scale and simplicity
to the application of brain-inspired clinical algorithms to healthcare.
Their platform is built on a comprehensive and constantly growing
network of medical knowledge that powers their applications. Further,
the sheer amount of unprocessed data in healthcare is hindering patient
centered care. Their natural language processing taps into this data with
a deep understanding of clinical context and uses machine learning to
provide a profile of each patient’s risk (severity of disease and potential
adverse events, like a hospital readmission) that could not be generated
before. This enables true patient centered precision care. CloudMedx
combines the power of machine learning and big data analytics to
generate real-time health insights and improve patient outcomes
for chronic conditions that are responsible for as much as 90% of
healthcare costs such as congestive heart failure, stroke, hypertension,
COPD, diabetes, etc.
General :40: NLP, ML for healthcare
Category : ML,
Data Analysis,
NLP,
Neuroscience,
Predictive Analysis
Capital : $4.2M
Seed : $4.2M
SeriesA:
SeriesB:
Rounds: 2 rounds from 8 investors
Monetize : Providing software to hospitals
Founder: Tashfeen Suleman
Name : CLOUDMEDX 2014〜
HQ: Polo Alto
Employee: 11-50
Source : http://www.cloudmedxhealth.com/
Features :
• Investor : Y Combinator
• real-time health insights and improve
patient outcomes
Market : Healthcare
59
Zebra Medical Vision is building a medical imaging insights platform.
The company provides a platform that offers a cloud-based, fully
hosted research and development environment including access
to large datasets of structured, de-identified studies, storage, GPU
computing power and support for a multitude of research tools.
The solution also enables research groups to collaborate and
create joint tools.
General :41: Image recognition for health
Category : Health diagnosis,
Image recognition,
SaaS,
Capital : $20M
Seed : $8M
SeriesA:
SeriesB:
Rounds: 2 rounds from 6 investors
Monetize : providing software to hospitals
Founder: Elad Benjamin
Name : zebra 2014〜
HQ: Israel
Employee: 11-50
Source : https://www.zebra-med.com/
Features :
• GPU computing
• Automated, Accurate & Timely medical
image diagnosis
• Data driven healthcare
• constantly growing Analytics Platform
• he largest, open, clinical research
platform globally
• 1100↑ hospitals
Market : Healthcare
60
Enlitic, Inc. is a deep learning company dedicated to improving
healthcare diagnostics. Enlitic’s algorithms were engineered from the
ground up by a multidisciplinary team of renowned data scientists,
machine learning practitioners and medical experts in order to provide
faster, and more accurate medical diagnoses. Enlitic’s technology
analyzes and learns from vast quantities of unstructured medical data,
including radiology and pathology images, laboratory results, genomics,
patient histories and electronic health records. Using millions of records,
Enlitic’s Deep Learning technology can assist radiologists by improving
accuracy, reducing costs, and facilitating early detection in order to
improve outcomes.
General :42: DL for healthcare
Category : DL,
Healthcare diagnostics,
Capital : $15M
Seed : $5M
SeriesA: $10M
SeriesB:
Rounds: 2 rounds from 4 investors
Monetize : providing DL services
Founder: Sally Daub
Name : enlitic2014〜
HQ: San Francisco
Employee: 11-50
Source : https://www.enlitic.com/index.html
Features :
• faster, and more accurate medical diagnoses
• reducing costs, and facilitating early detection
• Creating data driven medicine using deep
learning
• up to 10,000 times faster than the average
radiologist.
Market : Healthcare
61
twoXAR is a software-driven drug discovery company. The company
leverages its computational platform to identify promising drug
candidates, de-risks the opportunities through preclinical studies, and
progresses drug candidates to the clinic through industry partnerships.
The platform has been applied to more than 80 diseases to date. In
collaboration with leading research institutions including Stanford,
University of Chicago, and Mt. Sinai Hospital, twoXAR has uncovered
promising new medicines for diseases such as arthritis, multiple
sclerosis,
and cancer.
General :43: ML for healthcare
Category : Pharmaceutical,
Biotechnology,
ML
Big Data,
Capital : $4.3M
Seed : $3.4M
SeriesA:
SeriesB:
Rounds: 2 rounds from 3investors
Monetize : Providing software for drug
Founder: Andrew A. Radin
Name : twoXAR 2014〜
HQ: Polo Alto
Employee: 11-50
Source : http://www.twoxar.com/
Features :
• intelligence-driven drug discovery company.
• Fast, scalable, unbiased, comprehensive,
agnostic.
• Partners : Stanford, MIT.
• Improving health through computation.Market : Healthcare
62
Based on the world’s most professional and exponentially increasing
holographic health data, they will provide individualized health analysis
and prediction of health index through the most advanced data mining
and machine analysis technologies. Together with the world’s leading
partners, they plan to observe, study, guide and take care of one’s health
from the beginning of one’s life. Multiple companies have established
collaboration and/or cooperation with us, including research institutions,
pharmaceutical factories, medical examination centers, hospitals,
insurance companies and health management companies, etc.
General :
44: Data Science for personalize
health
Category : Health Care,
Biotechnology,
Big data
Data Analysis
Capital : $199.48M
Seed :
SeriesA:
SeriesB:
Rounds: 2 rounds from 3 investors
Monetize : ???
Founder: Jun Wang
Name :
HQ: Shenzhen Chine
Employee: ???
Source : https://www.icarbonx.com/en/index.html
Features :
• O2O service
• holographic health data
• Personalization
• Unicorn in China
• Providing individualized health analysis and prediction of health
index
• the first and most comprehensive collection platform of health
data from millions of individuals
Market : Healthcare
63
Atomwise uses artificial intelligence to discover new potential medicines.
Atomwise built the first deep neural network for structure-based drug
design. Atomwise is helping researchers tackle chronic diseases such as
cancer, multiple sclerosis, and diabetes; neglected global diseases such as
Ebola and malaria; resurgent diseases such as antibiotic-resistant germs;
and bioterror threats such as botulinum neurotoxin. Atomwise trains deep
3D convolutional neural networks that autonomously learn spatial and
chemical features, and predict which molecules are likely to be effective.
The neural networks are applied throughout the drug discovery pipeline to
optimize the initial leads into potent medicines and adjust them to avoid
toxicity problems. Atomwise can analyze millions of molecules per day,
orders of magnitude faster than other physical testing technologies, and
helping find cures months or even years faster.
General :45: ML for drug
Category : Drug Discovery,
ML
Capital : $6.35M
Seed : $6.35M
SeriesA:
SeriesB:
Rounds: 3 rounds from 9 investors
Monetize : Discovering potential medicines
Founder: Abraham Heifets
Name : Atomwise 2012〜
HQ: San Francisco
Employee: 1-10
Source : http://www.atomwise.com/
Features :
• Partner : Merck, and IBM.
• artificial intelligence for discover new potential medicines.
• the first deep neural network for structure-based drug
design.
• Investor: Y Combinator
Market : Medical
64
Founded in 2015, Deep Genomics builds computational systems
that will improve how they diagnose, treat, and understand disease.
A key obstacle to realizing the benefits promised by routine genome
sequencing is the difficulty connecting individual genetic alterations
to physiological consequences that impact health. Deep Genomics is
working to close this gap. Deep Genomics’ technology emerged from
more than a decade of academic research that brought together the
fields of machine learning and genome biology. Their mission is to
develop an integrated computational system that can learn, predict and
interpret how changes in DNA – whether natural or therapeutic – alter
crucial cellular processes. They develop new machine learning methods
that can find patterns in massive datasets and infer computer models of
how cells read the genome and generate biomolecules. In this way, their
unique technology provides a causal interpretation for genetic variation
that is applicable to any variant, and any disease
General :46: ML for genomics
Category : DL,
ML,
Genome biology,
Capital : $3.7M
Seed : $3.7M
SeriesA:
SeriesB:
Rounds: 1 rounds from 3 investors
Monetize : Providing an integrated system
Founder: Brendan Frey
Name : deep genomics 2015〜
HQ: Toronto
Employee: 11-50
Source : https://www.deepgenomics.com/
Features :
• improve how they diagnose, treat, and understand disease.
• building an integrated computational system, the DG
Engine, which can learn, predict and interpret how genetic
variation, whether natural or therapeutic, alters crucial
cellular processes in the context of disease.
Market : Medical
65
babylon is a personal healthcare service that lives in your smartphone
or tablet. It’s easy to use, available whenever you need it and available
for everyone to use. It lets people arrange to see their lovely doctors
within minutes, chat to them face-to-face on their mobile to find out
what’s wrong, and then get back on track with sound advice. At babylon,
they’re on a mission to make healthier, happier people. So they’ve
created a bunch of features for the app to do just that. You can check
any symptom and ask all the questions you can think of using their chat
feature, send us questions for a speedy response and order test kits you
can do at home. They’re changing the way healthcare gets done.
General :47: NLP chatbot
Category : Chatbot,
Personalization,
NLP
Capital : $85M
Seed :
SeriesA: $60M
SeriesB: $20M
Rounds: 2 rounds from 9 investors
Monetize : Application charge
Founder: Ali Parsa
Name : babylon 2013〜
HQ: London
Employee: 50-100
Source : https://www.babylonhealth.com/pricing
Features :
• Personal healthcare service.
• It lets people arrange to see their lovely doctors
within minutes, chat to them face-to-face on their mobile to find out
what’s wrong.
• Health advice without going to hospital.
• Cheap £5 for month £39 for an appointmentMarket : Healthcare
66
Despite the huge growth of knowledge, scientific discovery has
not changed for 50 years. It’s impossible for humans alone to process all
of the information potentially available to advance scientific research - a
new scientific paper is published every 30 seconds, there are 10,000
updates to PubMed every day. Consequently, only a small fraction of
globally generated scientific information can form ‘useable’ knowledge.
BenevolentAI applies AI and deep learning techniques to enable the
analysis of vast quantities of complex scientific information. The Company
is changing the way knowledge is created by producing an enormous
structured, curated and qualified proprietary ‘data lake’ of dynamic usable
knowledge that can be applied for real world use in conjunction with
human experts. The Company’s first application of AI was in bioscience
to accelerate drug discovery. BenevolentAI is now expanding into other
large global scientific industries such a veterinary medicine, aggrotech,
nutraceuticals and materials science.
General :48: DL for madicine
Category : DL,
Neuroscience,
Augmented human intelligence,
Capital : $100M
Seed :
SeriesA:
SeriesB:
Rounds: 1 round from 4 investors
Monetize : Discovering new medicine
Founder: Jerome Pesenti
Name : BenevolentAI 2013〜
HQ: London
Employee: 51-100
Source : http://benevolent.ai/
Features :
• Deep learning techniques to enable the analysis of vast quantities of complex scientific
information.
• Bioscience to accelerate drug discovery, a veterinary medicine, aggrotech,
nutraceuticals and materials science.
Market : Medicine
67
Lunit is an AI-centric company and develops a visual perception
technology that interprets medical images and visualizes abnormal
regions based on its own data-driven criteria. The company gained
international attention after achieving the highest rank among startup
teams in the ImageNet Large-scale Visual Recognition Challenge
(ILSVRC) 2015. Based on the expertise in deep learning, Lunit has been
working on abnormality detection in chest x-ray, mammography as
well as automatic grading of breast histopathology slides. The high
level of Lunit’s technology has been well demonstrated, presented 4
scientific abstracts in Radiological Society of North America (RSNA)
2016 and won the first place in the Tumor Proliferation Assessment
Challenge (TUPAC) 2016 ahead of IBM and Microsoft. Lunit envisions
a constructive partnership between physicians and technology in
becoming “better together” faced with challenges in accurate diagnoses
of diseases.
General :49: Image recognition
Category : DL,
ML,
Health Diagnostics,
Image recognition
Capital : $5.46M
Seed :
SeriesA: $2M
SeriesB:
Rounds: 3 rounds from 5 investors
Monetize :developing advanced software
for medical data analysis
Founder: Anthony Paek
Name : Lunit 2013〜
HQ: Seoul
Employee: 11-50
Source :
Features :
• visual perception technology
• Investor: SoftBank
• help physicians make accurate, consistent, and
efficient clinical decisions, not limited to diagnoses,
through the data-driven imaging biomarker technology.
Market :
68
AD, Sales, CRM
69
Voice calls are the enterprise’s most important data stream. They
represent 68% of customer contact, versus just 21% for email and chat.
They are how companies sell to customers and service their needs.
But this data — insights from the most critical customer conversations
— is not being captured, analyzed, or leveraged to grow and improve
business. TalkIQ has built a proprietary speech recognition and AI engine
for enterprise voice calls which is 2X more accurate than Watson and
3X more accurate than Google on these conversations. TalkIQ enables
sales and support teams to, for the first time, take a scientific approach
to understanding and optimizing key moments across their processes,
including recognizing purchase intent, handling objections, responding to
competitors, pricing, building rapport, and closing. As a result, companies
win more deals, retain more accounts, and improve their marketing and
product strategies to drive significant improvements against their most
important KPIs.
General :50: Voice recognition
Category : DL,
Speech recognition,
Predictive analysis
Capital : ???
Seed :
SeriesA:
SeriesB:
Rounds:
Monetize : providing speech recognition software
Founder: Dan O'Connell
Name : TalkIQ
HQ: San Francisco
Employee: ???
Source : https://www.talkiq.com/
Features :
• Voice recognition
• Delivering critical insights about the customers to
sales, marketing, account management, and
support teams
• Focus on customer conversation
Market : Customer support
70
Deepgram uses deep learning to mine your recorded speech
data for business insights. Companies only analyze 2% of their audio
data.
Deepgram does all of it. Predict churn, CSAT, NPS, conversion,
and search your data like you’re Google.
General :51: Voice recognition
Category : Voice recognition
Capital : $1.92M
Seed :
SeriesA:
SeriesB:
Rounds: 2 rounds from 3 investors
Monetize : voice research
Founder: Scott Stephenson
Name : Deepgram 2015〜
HQ: San Francisco
Employee: 1-10
Source : https://www.deepgram.com/
Features :
• Focus on keyword spotting and AI classification for
phone support and legal discovery.
• Investor : Y Combinator
• searching keyword
• Use case : call center, eDiscovery, Media
Market : media, customer support
71
Persado’s cognitive content platform generates language that inspires
action. Powered by focused AI technologies, the platform arms Fortune
500 companies and other organizations with “smart content” that
maximizes engagement with any audience, for every touchpoint, at
scale,
while delivering unique insight into the specific triggers that drive action.
General :52: Cognitive computing for ad
Category : Cognitive computing,
Marketing,
Contents creator,
Advertisement
Capital : $66M
Seed :
SeriesA: $15M
SeriesB: $21M
SeriesC: $30M
Rounds: 3 rounds from 6 investors
Monetize : providing marketing solution
Founder: Alex Vratskides
Name : Persado 2012〜
HQ: New York
Employee: 101-250
Source : https://persado.com/
Features :
• “smart content” that maximizes the efficacy of
communication with any audience at scale.
• an average uplift of 49.5% in conversions across
marketing campaigns.
• Persado Go leverages a smart machine to analyze more
than 40 ,000,000,000 digital communication interactions.
• Persado’s cognitive content platform generates language
that inspires
action.
Market : Advertisement
72
Appier is a technology company that makes it easy for businesses to
use artificial intelligence to grow and succeed in a cross screen era.
Appier is formed by a passionate team of computer scientists and
engineers with experience in AI, data analysis, distributed systems, and
marketing. Their colleagues come from Google, Intel, Yahoo, as well
as renowned AI research groups in Harvard University and Stanford
University. Headquartered in Taipei, Appier serves more than 500
global brands and agencies from offices in eleven markets across Asia,
including Taipei, Singapore, Tokyo, Sydney, Ho Chi Minh City, Manila,
Hong Kong, Mumbai, New Delhi, Jakarta and Seoul.
General :53: ML for ad
Category : Analytics,
Personalization,
ML,
Marketing,
Ad
Capital : $81.5M
Seed :
SeriesA: $6M
SeriesB: $42M
SeriesC: $33M
Rounds: 4 rounds from 14 investors
Monetize : Providing ad solutions
Founder: Chih-Han Yu
Name : appier 2012〜
HQ: Taipei
Employee: 101-250
Source : http://www.appier.com/en/index.html
Features :
• Investors : SoftBank, LINE, Sequoia, etc
• Personalized ad
• provide artificial intelligence (AI) platforms to help
enterprises solve their most challenging business
problems, spanning across Marketing and Data
intelligence.
Market : EC, Gaming, Building a brand
73
Chorus helps your team make decisions using the insights you’d get
if you were sitting in on every sales or customer success call. They
founded Chorus to understand what influences conversation outcomes,
and make it easy to learn from and influence the thousands of
conversations your team has. Today, almost all of those conversations
and the insights they contain are forgotten the second they end,
except for the few notes captured in your CRM. They’re changing that.
They are a tight-knit team of world-class scientists, engineers and
product designers, and are working with a wide variety of data-driven
public and high-growth companies. They’re passionate about voices,
language, technology and results, and can’t wait to find the moments in
conversations that matter to you and your team.
General :54: Voice recognition for sales
Category : Voice recognition,
Big Data,
ML
Capital : $22.3M
Seed :
SeriesA: $16M
SeriesB:
Rounds: 2 rounds from 2 investors
Monetize : providing conversation intelligence for sales teams.
Founder: Roy Raanani
Name : Chorus 2015〜
HQ: San Francisco
Employee: 11-50
Source : https://www.chorus.ai/
Features :
• Automatically record, transcribe and analyze meetings in real-time. Gain
critical insight into your sales opportunities and meeting performance.
• understanding what influences conversation outcomes,
and make it easy to learn from and influence the thousands of
conversations your team has.
• Improving the skills of sales people and a manager's ability to manage
based on what is proven to impact the outcomes of sales conversations.
Market : CRM
74
Since its founding in 2004, InsideSales.com has developed a robust
platform that uses technology backed by the core ingredients of real AI
(big data, machine learning and predictive analytics, made actionable
with an application layer) to solve the who, what, where, when and how of
sales. As more and more of the tech industry’s titans enter the artificial
intelligence (AI) market, this AI fueled sales acceleration platform positions
InsideSales at the forefront of this wave. InsideSales.com has received
numerous accolades for its technology, including being named to the
CNBC Disruptor 50 and Forbes Cloud 100 lists, and earning recognition as
one of the fastest growing companies, according to Inc. InsideSales.com
enterprise customers include ADP, Microsoft and Groupon.
General :55: DL for sales
Category : ML,
Prediction,
Self learning
Capital : $251.2M
Seed :
SeriesA: $4M
SeriesB: $36.55M
SeriesC: $100M
SeriesD: $60M
Rounds: 5 rounds from 15 investors
Monetize : Providing CRM services
Founder: David Elkington
Name : Insidesales.com 2004〜
HQ: Provo
Employee: 500〜1000
Source : https://www.insidesales.com/
Features :
• InsideSales.com offers sales acceleration
platform built on a predictive and prescriptive
self-learning engine.
• comprehensive sales acceleration platform.
• Self communication, gamification, email and web
tracking, predictive forecasting, etc
Market : CRM
75
Drawbridge is the leading anonymized digital identity company, building
patented cross-device technology that fundamentally changes the way
brands connect with people. The Drawbridge Connected Consumer
Graph® includes more than one billion consumers across more than
three billion devices, and verified to be 97.3% precise. Brands can work
with Drawbridge in three ways: by licensing the Drawbridge Connected
Consumer Graph for cross-device data applications; managing crossdevice
ad campaigns in real-time using the Drawbridge Cross-Device
Platform; or working with Drawbridge to execute cross-device digital
advertising campaigns. The company is headquartered in Silicon Valley, is
backed by Sequoia Capital, Kleiner Perkins Caufield Byers, and Northgate
Capital, and has been named to the Inc. 5000 annual ranking of the
fastest-growing companies in America for the past two years.
General :56: ML for ad
Category : SaaS,
Personalization,
Ad,
Identity Management
Capital : $45.5M
Seed :
SeriesA: $6.5M
SeriesB: $14M
SeriesC: $25M
Rounds: 3 rounds from 3 investors
Monetize : Providing software which connect
brand and consumers
Founder: Kamakshi Sivaramakrishnan
Name : drawbridge 2010〜
HQ: San Mateo
Employee: 100〜250
Source : https://drawbridge.com/
Features :
• Anonymized digital identity
• Investor : Sequpia
• It enables brands to have seamless conversations with consumers.
• The Drawbridge Connected Consumer Graph® includes more than one
billion consumers across more than three billion devices, and verified to be
97.3% precise.
Market : Ad
76
DigitalGenius brings practical applications of deep learning and artificial
intelligence into customer service operations of leading companies. At
its core are deep learning algorithms, which are trained on historical
customer service data and integrated directly into the contact center’s
existing software. Already deployed with industry innovators like
KLM Royal Dutch Airlines, Unilever, and HSBC, the product delivers
value through two main functions: Predictive Case Intelligence: using
machine learning to predict and automatically pre-fill all case metadata
around an incoming customer service message. Improving
accuracy and significantly reducing average handling time. Human+AI
Question Answering: a deep learning algorithm trained on historical
customer service logs suggests and automates answers to customer
questions over email, live chat, social media, mobile messaging and
SMS. DigitalGenius has built a scalable deep-learning product for
the customer service industry, leveraging and creating cutting edge
research, to transform the customer service function inside businesses.
General :57: NLP chatbot
Category : Personalization,
DL,
NLP
Capital : $7.35M
Seed : $4.1M
SeriesA:
SeriesB:
Rounds: 4 rounds from 12 investors
Monetize : chatbot
Founder: Dmitry Aksenov
Name : DigitalGenius 2013〜
HQ: London
Employee: 51-100
Source : https://www.digitalgenius.com/
Features :
• deep learning and artificial intelligence into customer service
operations
• Predictive Case Intelligence: using machine learning to predict
and automatically pre-fill all case metadata
• Customer Support: Q&A
Market : Customer support
77
All of your users are different. Some are new, some will
never buy, while others are always looking to purchase more.
Retention Science built Artificial Intelligence (Cortex) to market
to each person in a relevant way that coincides with where
they are in their buying lifecycle.
General :58: SaaS
Category : Personalization,
CRM,
Marketing,
Prediction
Capital : $10.25M
Seed : $2.5M
SeriesA: $7M
SeriesB:
Rounds: 4 rounds from 10 investors
Monetize : Providing CRM tools
Founder: Jerry Jao
Name : Retention Science 2011〜
HQ: Santa Monica
Employee: 51-100
Source : https://www.retentionscience.com/#
Features :
• Target, engage and retain the customers.
• The data driven, SaaS-based Retention
Marketing platform predicts customer behavior
and delivers targeted multi-channel
communications
Market : Sales
78
Cyber Security
79
Cylance is a cybersecurity products and services company focusing
on stopping tomorrow’s attacks today. Founded in 2012 by ex-McAfee
Global CTO Stuart McClure and ex-McAfee Chief Scientist Ryan Permeh,
Cylance was created to solve the malware problem once and for all.
Their flagship product, CylancePROTECT®, is the world’s first
nextgeneration antivirus built on artificial intelligence and machine
Learning. Named the SC Magazine Award winner for “Best
Emerging Technology” in 2015, CylancePROTECT offers exponentially
improved prevention capabilities when compared to other endpoint
security solutions. For a demo of CylancePROTECT, visit us at
cylance.com
General :59: ML for security
Category : ML,
Security
Capital : $177M
Seed :
SeriesA: $15M
SeriesB: $20M
SeriesC: $42M
SeriesD: $100M
Rounds: 4 rounds from 14 investors
Monetize : Providing service and consultant
Founder: Stuart McClure
Name : Cylance 2012〜
HQ: Irvin
Employee: 501-1000
Source : https://www.cylance.com/en_us/home.html
Features :
• global provider of cybersecurity products
• Prevent Cyberattacks with Artificial Intelligence
• Many product, and many services
Market : Cyber security
80
Sift Science provides real-time machine learning fraud prevention
solutions for online businesses across the globe. Its machine learning
software automatically learns and detects fraudulent behavioral
patterns, alerting businesses before they or their customers are
defrauded. Beyond this, the company has also launched a new
set of products designed to detect and mitigate additional types
of fraud and abuse, including: account abuse, content abuse, and
promo abuse.
General :60: ML for security
Category : ML,
Fraud detection,
Security,
Big data
Capital : $53.6M
Seed : $1.6M
SeriesA: $4M
SeriesB: $18M
SeriesC: $30M
Rounds: 4 rounds from 17 investors
Monetize : $1000〜$10000 per a month
Founder: Jason Tan
Name : sift science 2011〜
HQ: San Francisco
Employee: 51-100
Source : https://siftscience.com/
Features :
• detect fraud and increase positive user experience.
• machine learning platform designed to secure trust,
reduce fraud, and grow the revenue.
• Payment fraud, account takeover, content abuse,
account abuse, promo abuse
Market : Security
81
A global leader and highly awarded cognitive computing analytics
company, SparkCognition is successfully deploying cutting-edge
Machine Learning and AI algorithms to provide intelligence to uncover
trends, anomalies, and cyber-physical threats while automatically
investigating and proposing solutions in IoT and network environments.
SparkCognition combines data from various sources, applies machine
learning to build automated models, and uses them to develop deep
insights into underlying performance, optimization, and security. The
company’s technology is capable of harnessing real time infrastructure
data and learning from it continuously, allowing for more accurate risk
mitigation and prevention policies to intervene in and avert disasters.
The company’s cybersecurity solutions analyze structured and
unstructured data and natural language sources to identify potential
failures or attacks in the IoT environment. The cognitive platform
continuously learns from data and derives automated insights to thwart
emerging issues.
General :61: ML for security
Category : Cyber security,
ML,
IoT
Capital : $38.87M
Seed :
SeriesA: $370K
SeriesB: $38M
Rounds: 3 rounds from 5 investors
Monetize : Providing 3 security services
Founder: Amir Husain
Name : sparkcognition 2013〜
HQ: Austin
Employee: 11-50
Source : https://sparkcognition.com/
Features :
• the world’s first Cognitive Security Analytics
company.
• Applying Machine Learning & AI to Cloud Security
and the Internet of Things.
Market : Security
82
Deep Instinct is the first company to apply deep learning to cybersecurity.
Deep learning is inspired by the brain’s ability to learn. Once a brain learns
to identify an object, its identification becomes second nature. Similarly, as
Deep Instinct’s artificial brain learns to detect any type of cyber threat, its
prediction capabilities become instinctive. As a result, zero-day and APT
attacks are detected and prevented in real-time with unmatched accuracy.
Deep Instinct brings a completely new approach to cybersecurity that is
proactive and predictive. Deep Instinct provides comprehensive defense
that is designed to protect against the most evasive unknown malware in
real-time, across an organization’s endpoints, servers, and mobile devices.
Deep learning’s capabilities of identifying malware from any data source
results in comprehensive protection on any device, any platform, and
operating system.
General :62: DL for security
Category : DL,
Data Training,
Prediction
Capital : $32M↑
Seed :
SeriesA:
SeriesB: $32M
Rounds: ???
Monetize : security solutions
Founder: Guy Caspi
Name : deepinstinct 2014〜
HQ: Israel
Employee: ???
Source : https://www.deepinstinct.com/
Features :
• offering unmatched zero-day attack protection.
• By applying deep learning technology to cybersecurity,
enterprises can gain unmatched protection against
unknown and evasive cyber-attacks from any source.
Market : Security
83
Shift Technology provides insurance companies with a SaaS solution
designed to improve and scale fraud detection. The solution, which
can be rapidly implemented in as little as four months, seamlessly
integrates with the client’s existing operational processes and technical
context. Their Data Scientist team creates tailored algorithms designed
to reproduce an investigator’s deducting reasoning. Once the tool is fed
with client claims, their customized solution aggregates and analyzes
the data. The client can see results by logging into an easy-to-read/
customized dashboard highlighting the most suspicious cases. Each
claim is tagged with the potential risk of fraud along clear insights on
what makes the claim suspect. While there are many existing fraud
detection tools that can provide the “where” and the “when” Shift helps
the fraud handler determine the “why” and the “how” and can identify
not only the policyholder, but also service providers and full networks of
actors that could be part of the scam.
General :63: ML for fraud
Category : Insurance,
Big Data
Data Analysis
Capital : $11.8 M
Seed : $1.8M
SeriesA: $10M
SeriesB:
Rounds:
Monetize : fraud detection service
Founder: Jeremy Jawish
Name : shift technology 2013〜
HQ: Paris
Employee: 11-50
Source : http://www.shift-technology.com/
Features :
• provides insurance companies with a SaaS solution
designed to improve and scale fraud detection.
• automatically detect networks of fraudsters in insurance and e-
commerce.
Market : Insurance
84
Named ‘Best Security Company of the Year’ in the Info Security Products
Guide 2016, Darktrace is one of the world’s leading cyber threat defense
companies. Its Enterprise Immune System technology detects and
responds to previously unidentified threats, powered by machine
learning and mathematics developed by specialists from the University
of Cambridge. Without using rules or signatures, Darktrace is uniquely
capable of understanding the ‘pattern of life’ of every device, user and
network within an organization, and defends against evolving threats
that bypass all other systems. Some of the world’s largest corporations
rely on Darktrace’s self-learning technology in sectors including energy
and utilities, financial services, telecommunications, healthcare,
manufacturing, retail and transportation. Darktrace is headquartered
in Cambridge, UK and San Francisco, with offices in Auckland, Boston,
Chicago, Dallas, London, Los Angeles, Milan, Mumbai, New York, Paris,
Seoul, Singapore, Sydney, Tokyo, Toronto and Washington D.C.
General :64: ML for security
Category : ML,
Cyber security
Capital : $179.5M
Seed :
SeriesA: $18M
SeriesB: $22.5M
SeriesC: $64M
SeriesD: $75M
Rounds: 4 rounds from 8 investors
Monetize :
Founder: Nicole Eagan
Name : DARKTRACE 2013〜
HQ: Cambridge
Employee: 101-250
Source : https://www.darktrace.com/
Features :
• Investor : SoftBank
• self-learning platform to spot anomalous activity within the
enterprise, in sectors including energy and utilities, financial
services, telecommunications, retail and transportation.
Market : cyber security
85
Robotics
86
UBTECH is a high-tech enterprise engaging in the R&D, manufacturing
and promotion of commercial and consumer robots around the world.
The first company in China dedicated to commercializing humanoid
robots, UBTECH invested in humanoid robots research in 2008, and,
in 2012, established its headquarters in Shenzhen, China. UBTECH’s
mission is to bring robots into every home, and truly integrate intelligent
robots into the daily life of everyone, creating a more intelligent and
human-friendly way of leisure life. UBTECH will do this with continuous
investment in R&D to keep the core competence and a dedicated robotic
hardware and software technology development with a top robotic
engineering team. They also aim to have the most intellectual patents
in the humanoid service robotic industry, including invention patents,
industrial design patents, and practical patents. UBTECH will also
maintain its own manufacturing center and supply chain.
General :65: Robotics
Category : Robotics,
Consumer Electronics
Capital : $120M
Seed :
SeriesA: $20M
SeriesB: $100M
Rounds: 2 rounds from 3 investors
Monetize : Providing humanoid robot
Founder: James Chow
Name : UBTECH 2012〜
HQ: Shenzhen
Employee: 501-
Source : http://www.en.ubtrobot.com/
Features :
• R&D, manufacturing and promotion of commercial and consumer robots
• Humanoid robot
Market : leisure
87
Anki has a dream to bring artificial intelligence and consumer robotics
into everyday life. Anki’s cornerstone product is Anki Overdrive, based on
technology that brings together video games and physical toys. Using a
smartphone, the user can race a real toy car around Anki’s track, challenge
friends, or play against other cars controlled by Anki’s AI. As in a video
game, the cars adapt to their environment and surroundings, are fully
customizable through the app, and improve their performance with usage.
General :66: Robotics
Category : ML,
Robotics,
Consumer electronics
Capital : $157M
Seed :
SeriesB: $50M
SeriesC: $55M
Rounds: 4 rounds from 6 investors
Monetize : consumer robots
Founder: Boris Sofman
Name : anki 2010〜
HQ: San Francisco
Employee: 51-100
Source : https://www.anki.com/en-us
Features :
• Anki Overdrive, based on
technology that brings together video games and physical toys.
• Investors: JPMorgan, Andreessen Horowitz
Market : leisure
88
Rokid features advanced artificial intelligence and deep learning that
enrich life by proactively delivering information, providing entertainment,
and performing household chores via voice and visual interactions.
Rokid is not just another high tech gadget, but a resourceful family
companion in smart homes. In addition to its sharp, modern design, it
embodies a warm and unique personality, with intuitive conversational
abilities and recognition of individual family members — making it
beyond a robotic device. Rokid emphasizes premium quality in every
facet of the build from software and hardware to industrial design and
manufacturing. With their full-stack technologies, developed in-house,
Rokid’s industry-leading performance is based on the company’s
proprietary software and hardware designs.
General :67: Robotics
Category : Robotics,
DL,
Consumer device
Capital : $50M↑
Seed :
SeriesA:
SeriesB: $50M
Rounds: 2 rounds from 5 investors
Monetize : B2C providing robots
Founder: Mingming Zhu
Name : Rokid 2014〜
HQ: Hangzhou
Employee: 51-100
Source : https://www.rokid.com/
Features :
• Smart home device
• Modern design
• Team: over 15 Ph.D.’s and more than 30 master’s holders.
• artificial intelligence, robotics, software, and hardware from
global brands including Alibaba, Samsung, Foxconn, Sony,
Nokia, and Google.
Market : Consumer device
89
Delivery is a huge and growing market - as it continues to grow
autonomy becomes increasingly essential. Dispatch is making delivery
smart by creating a platform for local delivery powered by a fleet of
autonomous vehicles designed for sidewalks and pedestrian spaces.
Dispatch’s first autonomous vehicle, nicknamed Carry, is designed to
deliver. The vehicle is small enough to navigate sidewalks, but large
enough to carry multiple packages. It operates in pedestrian areas and
travels no faster than a brisk walking pace, blending smoothly with
pedestrian traffic. Carry provides real time notifications throughout it’s
journey. Upon arrival, users receive a code to unlock their compartment
and grab their items. Then Carry is off to its next delivery
General :68: Robotics
Category : DL,
Robotics,
Autonomous Vehicle,
Delivery
Capital : $2M
Seed : $2M
SeriesA:
SeriesB:
Rounds: 3 rounds from 4 investors
Monetize : delivering service
Founder: Uriah Baalke
Name : dispatch 2015〜
HQ: San Francisco
Employee: 1-10
Source : http://dispatch.ai/
Features :
• Delivery smart by creating a platform for local delivery powered by a fleet
of autonomous vehicles.
• robotics and artificial intelligence from MIT, UPenn, USC, UIUC, and UC
• Berkeley.
• Investor : Andreessen Horowitz
Market : delivering
90
Auto
91
Cambridge, MA-based nuTonomy develops state-of-the-art software
systems for self-driving vehicles. The company was founded by two
world-renowned experts in robotics and intelligent vehicle technology,
Drs. Karl Iagnemma and Emilio Frazzoli of MIT. The nuTonomy system
will provide point-to-point mobility via large fleets of autonomous
vehicles; this includes software for autonomous vehicle navigation in
urban environments, smartphone-based ride hailing, fleet routing and
management, and controlling a vehicle remotely through teleoperation.
The company is currently conducting public trials of its autonomous
ride-hailing service in Singapore, and will soon begin testing its self-
driving vehicles on public roads in Boston.
General :69: ML for self driving
Category : Autonomous Vehicle,
DL,
ML
Capital : $19.6M
Seed : $3.6M
SeriesA: $16M
SeriesB:
Rounds: 2 rounds from 5 investors
Monetize : self driving software
Founder: Karl Iagnemma
Name : nuTonomy
HQ: Cambridge
Employee: 51-100
Source : http://www.nutonomy.com/
Features :
• Focuse on inventing software for self-driving vehicles and autonomous mobile
robots.
• MIT spin off
• A Scalable, Full-stack Software Solution for Automated Driving.
Market : Vehicle
92
Drive.ai is a software company reimagining the fundamental relationship
between people and transportation. Founded in 2015 with a team
out of Stanford University’s Artificial Intelligence Lab, Drive.ai uses
sophisticated deep learning algorithms for a full-stack solution –
including perception and path planning, to control the vehicle – to power
the next era of transportation. Drive.ai’s product offering will consist
of a retrofitted self-driving kit for business fleets, with a long-term plan
to have their software integrated into new vehicles. This will include
sensors and a roof-mounted human-robot interaction outside the car,
all powered by deep learning software algorithms. The company’s initial
market approach will focus on proving the technology with route-based
vehicle fleets, in industries such as package delivery, ridesharing, and
public/private transit. Drive.ai is licensed to test autonomous vehicles in
the state of California.
General :70: ML for self driving
Category : ML,
DL,
Autonomous Vehicle,
Capital : $62M
Seed :
SeriesA: $12M
SeriesB: $50M
Rounds: 2 rounds from 7 investors
Monetize : providing self-driving software
Founder: Brody Huval
Name : drive ai 2015〜
HQ: Mountain View
Employee: 50-100
Source : https://www.drive.ai/
Features :
• Stanford AI Lab
• Partner : Lift
Market : Vehicle
93
AImotive is a Budapest-based software company, developing a full-stack
software suite for fully autonomous self-driving cars. Established on
the idea that self-driving cars should mimic human behavior, AImotive’s
algorithms rely on cameras as primary sensors for accomplishing the
tasks of object recognition and classification, localization, decision
making, trajectory planning and vehicle control. Development and
operation processes follow the current automotive standards, providing
a hardware-agnostic, yet scalable solution. The software engine
components are aided by an extensive toolkit to accelerate the training
and verification, including calibration, data collection and augmented
data generation, semi-supervised annotation, and a real-time,
photorealistic simulation environment. Addressing the growing need
for hardware accelerators that are optimized specifically for artificial
intelligence, AImotive designs a power efficient, high performance neural
network hardware IP for automotive embedded solutions. The reference
design helps chip companies build the optimal hardware to support the
performance requirements of the AI-based software suite.
General :71: ML for self driving
Category : ML,
DL,
Autonomous vehicle
Capital : $9.21
Seed :
SeriesA: $2.5M
SeriesB: €6M
Rounds: 2 rounds from 7 investors
Monetize : Providing self driving software
Founder: Laszlo Kishonti
Name : AIMOTIVE 2014〜
HQ: Budapest
Employee: 51-100
Source : https://aimotive.com/
Features :
• Hardware agnostic, full-stack software
• Toolkit that trains and verifies the AI with real-time simulations
• Power efficient, high-performance neural network hardware IP
for automotive embedded solutions
Market : Vehicle
94
NAUTO is a device, network and app that is an affordable way
to upgrade cars to get network and safety features previously
only available in high-end luxury cars. NAUTO’s system
includes an in-vehicle device that
collects and processes visual data in a smart and secure cloud,
which then produces valuable insights to help drivers operate
vehicles more efficiently, effectively and safely.
General :72: ML for camera
Category : ML,
DL,
Autonomous Vehicle,
Camera
Capital : $173.85M
Seed : $2.85M
SeriesA: $12M
SeriesB: $159M
Rounds: 4 rounds from 10 investors
Monetize : Providing AI camera
Founder: Stefan Heck
Name : NAUTO 2015〜
HQ: Polo Alto
Employee: 11-50
Source : https://www.nauto.com/
Features :
• Investor: SoftBank, Plug and Play, Toyota AI
• artificial intelligence-powered connected camera
network and smart cloud system
• real-time sensors and visual data help fleet managers
detect and understand the cause of accidents and
reduce false liability claims.
Market : Car
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017
Artificial Intelligence (AI) 100 Startups 2017

Weitere ähnliche Inhalte

Was ist angesagt?

The State of Global AI Adoption in 2023
The State of Global AI Adoption in 2023The State of Global AI Adoption in 2023
The State of Global AI Adoption in 2023InData Labs
 
AI in Healthcare 2017
AI in Healthcare 2017AI in Healthcare 2017
AI in Healthcare 2017Peter Morgan
 
The Top Trends in Artificial Intelligence
The Top Trends in Artificial IntelligenceThe Top Trends in Artificial Intelligence
The Top Trends in Artificial IntelligenceErling Hesselberg
 
Introduction to AI/ML with AWS
Introduction to AI/ML with AWSIntroduction to AI/ML with AWS
Introduction to AI/ML with AWSSuman Debnath
 
Role of artificial intelligence in health care
Role of artificial intelligence in health careRole of artificial intelligence in health care
Role of artificial intelligence in health carePrachi Gupta
 
Artificial Intelligence in Health Care
Artificial Intelligence in Health Care Artificial Intelligence in Health Care
Artificial Intelligence in Health Care 247 Labs Inc
 
An Introduction to Generative AI - May 18, 2023
An Introduction  to Generative AI - May 18, 2023An Introduction  to Generative AI - May 18, 2023
An Introduction to Generative AI - May 18, 2023CoriFaklaris1
 
Leveraging Generative AI & Best practices
Leveraging Generative AI & Best practicesLeveraging Generative AI & Best practices
Leveraging Generative AI & Best practicesDianaGray10
 
Suresh Poopandi_Generative AI On AWS-MidWestCommunityDay-Final.pdf
Suresh Poopandi_Generative AI On AWS-MidWestCommunityDay-Final.pdfSuresh Poopandi_Generative AI On AWS-MidWestCommunityDay-Final.pdf
Suresh Poopandi_Generative AI On AWS-MidWestCommunityDay-Final.pdfAWS Chicago
 
Artificial intelligence in healthcare
Artificial intelligence in healthcareArtificial intelligence in healthcare
Artificial intelligence in healthcare121Omkar
 
Generative AI and law.pptx
Generative AI and law.pptxGenerative AI and law.pptx
Generative AI and law.pptxChris Marsden
 
5 Powerful Real World Examples Of How AI Is Being Used In Healthcare
5 Powerful Real World Examples Of How AI Is Being Used In Healthcare5 Powerful Real World Examples Of How AI Is Being Used In Healthcare
5 Powerful Real World Examples Of How AI Is Being Used In HealthcareBernard Marr
 
AI and the Future of Healthcare, Siemens Healthineers
AI and the Future of Healthcare, Siemens HealthineersAI and the Future of Healthcare, Siemens Healthineers
AI and the Future of Healthcare, Siemens HealthineersLevi Shapiro
 
AI FOR BUSINESS LEADERS
AI FOR BUSINESS LEADERSAI FOR BUSINESS LEADERS
AI FOR BUSINESS LEADERSAndre Muscat
 

Was ist angesagt? (20)

Uses of AI
Uses of AIUses of AI
Uses of AI
 
The State of Global AI Adoption in 2023
The State of Global AI Adoption in 2023The State of Global AI Adoption in 2023
The State of Global AI Adoption in 2023
 
AI in Healthcare 2017
AI in Healthcare 2017AI in Healthcare 2017
AI in Healthcare 2017
 
The Top Trends in Artificial Intelligence
The Top Trends in Artificial IntelligenceThe Top Trends in Artificial Intelligence
The Top Trends in Artificial Intelligence
 
Introduction to AI/ML with AWS
Introduction to AI/ML with AWSIntroduction to AI/ML with AWS
Introduction to AI/ML with AWS
 
Role of artificial intelligence in health care
Role of artificial intelligence in health careRole of artificial intelligence in health care
Role of artificial intelligence in health care
 
Artificial Intelligence in Health Care
Artificial Intelligence in Health Care Artificial Intelligence in Health Care
Artificial Intelligence in Health Care
 
Generative AI.pptx
Generative AI.pptxGenerative AI.pptx
Generative AI.pptx
 
An Introduction to Generative AI - May 18, 2023
An Introduction  to Generative AI - May 18, 2023An Introduction  to Generative AI - May 18, 2023
An Introduction to Generative AI - May 18, 2023
 
ARTIFICIAL INTELLIGENCE ROLE IN HEALTH CARE Dr.T.V.Rao MD
ARTIFICIAL INTELLIGENCE ROLE IN HEALTH CARE  Dr.T.V.Rao MDARTIFICIAL INTELLIGENCE ROLE IN HEALTH CARE  Dr.T.V.Rao MD
ARTIFICIAL INTELLIGENCE ROLE IN HEALTH CARE Dr.T.V.Rao MD
 
Leveraging Generative AI & Best practices
Leveraging Generative AI & Best practicesLeveraging Generative AI & Best practices
Leveraging Generative AI & Best practices
 
Suresh Poopandi_Generative AI On AWS-MidWestCommunityDay-Final.pdf
Suresh Poopandi_Generative AI On AWS-MidWestCommunityDay-Final.pdfSuresh Poopandi_Generative AI On AWS-MidWestCommunityDay-Final.pdf
Suresh Poopandi_Generative AI On AWS-MidWestCommunityDay-Final.pdf
 
Ethics of AI
Ethics of AIEthics of AI
Ethics of AI
 
Artificial intelligence in healthcare
Artificial intelligence in healthcareArtificial intelligence in healthcare
Artificial intelligence in healthcare
 
Generative AI and law.pptx
Generative AI and law.pptxGenerative AI and law.pptx
Generative AI and law.pptx
 
OpenAI-Copilot-ChatGPT.pptx
OpenAI-Copilot-ChatGPT.pptxOpenAI-Copilot-ChatGPT.pptx
OpenAI-Copilot-ChatGPT.pptx
 
5 Powerful Real World Examples Of How AI Is Being Used In Healthcare
5 Powerful Real World Examples Of How AI Is Being Used In Healthcare5 Powerful Real World Examples Of How AI Is Being Used In Healthcare
5 Powerful Real World Examples Of How AI Is Being Used In Healthcare
 
AI and the Future of Healthcare, Siemens Healthineers
AI and the Future of Healthcare, Siemens HealthineersAI and the Future of Healthcare, Siemens Healthineers
AI and the Future of Healthcare, Siemens Healthineers
 
AI in healthcare - Use Cases
AI in healthcare - Use Cases AI in healthcare - Use Cases
AI in healthcare - Use Cases
 
AI FOR BUSINESS LEADERS
AI FOR BUSINESS LEADERSAI FOR BUSINESS LEADERS
AI FOR BUSINESS LEADERS
 

Andere mochten auch

マクロ的テクノロジー考察①人工知能と経済学に関して
マクロ的テクノロジー考察①人工知能と経済学に関してマクロ的テクノロジー考察①人工知能と経済学に関して
マクロ的テクノロジー考察①人工知能と経済学に関してSota Watanabe
 
The Basic Theories of Blockchain
The Basic Theories of BlockchainThe Basic Theories of Blockchain
The Basic Theories of BlockchainSota Watanabe
 
Video onesheeter-jun2015
Video onesheeter-jun2015Video onesheeter-jun2015
Video onesheeter-jun2015NVIDIA
 
NVIDIA CES 2016 Highlights
NVIDIA CES 2016 HighlightsNVIDIA CES 2016 Highlights
NVIDIA CES 2016 HighlightsNVIDIA
 
NVIDIA Testimony at Senate Commerce, Science, and Transportation Committee He...
NVIDIA Testimony at Senate Commerce, Science, and Transportation Committee He...NVIDIA Testimony at Senate Commerce, Science, and Transportation Committee He...
NVIDIA Testimony at Senate Commerce, Science, and Transportation Committee He...NVIDIA
 
Compare Streaming Media Players With NVIDIA SHIELD
Compare Streaming Media Players With NVIDIA SHIELDCompare Streaming Media Players With NVIDIA SHIELD
Compare Streaming Media Players With NVIDIA SHIELDNVIDIA
 
Managing Container Images with Amazon ECR - AWS Online Tech Talks
Managing Container Images with Amazon ECR - AWS Online Tech TalksManaging Container Images with Amazon ECR - AWS Online Tech Talks
Managing Container Images with Amazon ECR - AWS Online Tech TalksAmazon Web Services
 
Running Containerised Applications at Scale on AWS
Running Containerised Applications at Scale on AWSRunning Containerised Applications at Scale on AWS
Running Containerised Applications at Scale on AWSAmazon Web Services
 
NVIDIA SAP Sapphire 2017 Show Guide
NVIDIA SAP Sapphire 2017 Show Guide NVIDIA SAP Sapphire 2017 Show Guide
NVIDIA SAP Sapphire 2017 Show Guide NVIDIA
 
Working with Amazon Lex Chatbots in Amazon Connect - AWS Online Tech Talks
Working with Amazon Lex Chatbots in Amazon Connect - AWS Online Tech TalksWorking with Amazon Lex Chatbots in Amazon Connect - AWS Online Tech Talks
Working with Amazon Lex Chatbots in Amazon Connect - AWS Online Tech TalksAmazon Web Services
 
HPC Top 5 Stories: October 13, 2017
HPC Top 5 Stories: October 13, 2017HPC Top 5 Stories: October 13, 2017
HPC Top 5 Stories: October 13, 2017NVIDIA
 
GTC 2016 Opening Keynote
GTC 2016 Opening KeynoteGTC 2016 Opening Keynote
GTC 2016 Opening KeynoteNVIDIA
 
Revolutionizing Radiology with Deep Learning: The Road to RSNA 2017
Revolutionizing Radiology with Deep Learning: The Road to RSNA 2017Revolutionizing Radiology with Deep Learning: The Road to RSNA 2017
Revolutionizing Radiology with Deep Learning: The Road to RSNA 2017NVIDIA
 
Top 5 Deep Learning and AI Stories - November 3, 2017
Top 5 Deep Learning and AI Stories - November 3, 2017Top 5 Deep Learning and AI Stories - November 3, 2017
Top 5 Deep Learning and AI Stories - November 3, 2017NVIDIA
 
WKS401 Deploy a Deep Learning Framework on Amazon ECS and EC2 Spot Instances
WKS401 Deploy a Deep Learning Framework on Amazon ECS and EC2 Spot InstancesWKS401 Deploy a Deep Learning Framework on Amazon ECS and EC2 Spot Instances
WKS401 Deploy a Deep Learning Framework on Amazon ECS and EC2 Spot InstancesAmazon Web Services
 
Sentiment Analysis Using Apache MXNet and Gluon - AWS Online Tech Talks
Sentiment Analysis Using Apache MXNet and Gluon - AWS Online Tech TalksSentiment Analysis Using Apache MXNet and Gluon - AWS Online Tech Talks
Sentiment Analysis Using Apache MXNet and Gluon - AWS Online Tech TalksAmazon Web Services
 
Building Serverless Websites with Lambda@Edge - AWS Online Tech Talks
Building Serverless Websites with Lambda@Edge - AWS Online Tech TalksBuilding Serverless Websites with Lambda@Edge - AWS Online Tech Talks
Building Serverless Websites with Lambda@Edge - AWS Online Tech TalksAmazon Web Services
 
Top 5 Deep Learning and AI Stories - October 6, 2017
Top 5 Deep Learning and AI Stories - October 6, 2017Top 5 Deep Learning and AI Stories - October 6, 2017
Top 5 Deep Learning and AI Stories - October 6, 2017NVIDIA
 
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017Carol Smith
 

Andere mochten auch (20)

Blockchain startup
Blockchain startupBlockchain startup
Blockchain startup
 
マクロ的テクノロジー考察①人工知能と経済学に関して
マクロ的テクノロジー考察①人工知能と経済学に関してマクロ的テクノロジー考察①人工知能と経済学に関して
マクロ的テクノロジー考察①人工知能と経済学に関して
 
The Basic Theories of Blockchain
The Basic Theories of BlockchainThe Basic Theories of Blockchain
The Basic Theories of Blockchain
 
Video onesheeter-jun2015
Video onesheeter-jun2015Video onesheeter-jun2015
Video onesheeter-jun2015
 
NVIDIA CES 2016 Highlights
NVIDIA CES 2016 HighlightsNVIDIA CES 2016 Highlights
NVIDIA CES 2016 Highlights
 
NVIDIA Testimony at Senate Commerce, Science, and Transportation Committee He...
NVIDIA Testimony at Senate Commerce, Science, and Transportation Committee He...NVIDIA Testimony at Senate Commerce, Science, and Transportation Committee He...
NVIDIA Testimony at Senate Commerce, Science, and Transportation Committee He...
 
Compare Streaming Media Players With NVIDIA SHIELD
Compare Streaming Media Players With NVIDIA SHIELDCompare Streaming Media Players With NVIDIA SHIELD
Compare Streaming Media Players With NVIDIA SHIELD
 
Managing Container Images with Amazon ECR - AWS Online Tech Talks
Managing Container Images with Amazon ECR - AWS Online Tech TalksManaging Container Images with Amazon ECR - AWS Online Tech Talks
Managing Container Images with Amazon ECR - AWS Online Tech Talks
 
Running Containerised Applications at Scale on AWS
Running Containerised Applications at Scale on AWSRunning Containerised Applications at Scale on AWS
Running Containerised Applications at Scale on AWS
 
NVIDIA SAP Sapphire 2017 Show Guide
NVIDIA SAP Sapphire 2017 Show Guide NVIDIA SAP Sapphire 2017 Show Guide
NVIDIA SAP Sapphire 2017 Show Guide
 
Working with Amazon Lex Chatbots in Amazon Connect - AWS Online Tech Talks
Working with Amazon Lex Chatbots in Amazon Connect - AWS Online Tech TalksWorking with Amazon Lex Chatbots in Amazon Connect - AWS Online Tech Talks
Working with Amazon Lex Chatbots in Amazon Connect - AWS Online Tech Talks
 
HPC Top 5 Stories: October 13, 2017
HPC Top 5 Stories: October 13, 2017HPC Top 5 Stories: October 13, 2017
HPC Top 5 Stories: October 13, 2017
 
GTC 2016 Opening Keynote
GTC 2016 Opening KeynoteGTC 2016 Opening Keynote
GTC 2016 Opening Keynote
 
Revolutionizing Radiology with Deep Learning: The Road to RSNA 2017
Revolutionizing Radiology with Deep Learning: The Road to RSNA 2017Revolutionizing Radiology with Deep Learning: The Road to RSNA 2017
Revolutionizing Radiology with Deep Learning: The Road to RSNA 2017
 
Top 5 Deep Learning and AI Stories - November 3, 2017
Top 5 Deep Learning and AI Stories - November 3, 2017Top 5 Deep Learning and AI Stories - November 3, 2017
Top 5 Deep Learning and AI Stories - November 3, 2017
 
WKS401 Deploy a Deep Learning Framework on Amazon ECS and EC2 Spot Instances
WKS401 Deploy a Deep Learning Framework on Amazon ECS and EC2 Spot InstancesWKS401 Deploy a Deep Learning Framework on Amazon ECS and EC2 Spot Instances
WKS401 Deploy a Deep Learning Framework on Amazon ECS and EC2 Spot Instances
 
Sentiment Analysis Using Apache MXNet and Gluon - AWS Online Tech Talks
Sentiment Analysis Using Apache MXNet and Gluon - AWS Online Tech TalksSentiment Analysis Using Apache MXNet and Gluon - AWS Online Tech Talks
Sentiment Analysis Using Apache MXNet and Gluon - AWS Online Tech Talks
 
Building Serverless Websites with Lambda@Edge - AWS Online Tech Talks
Building Serverless Websites with Lambda@Edge - AWS Online Tech TalksBuilding Serverless Websites with Lambda@Edge - AWS Online Tech Talks
Building Serverless Websites with Lambda@Edge - AWS Online Tech Talks
 
Top 5 Deep Learning and AI Stories - October 6, 2017
Top 5 Deep Learning and AI Stories - October 6, 2017Top 5 Deep Learning and AI Stories - October 6, 2017
Top 5 Deep Learning and AI Stories - October 6, 2017
 
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
 

Ähnlich wie Artificial Intelligence (AI) 100 Startups 2017

Why someone in a non-software/internet business would acquire an artificial i...
Why someone in a non-software/internet business would acquire an artificial i...Why someone in a non-software/internet business would acquire an artificial i...
Why someone in a non-software/internet business would acquire an artificial i...Peter Zhegin
 
The Spring of AI : Leveraging Collective Disruptor Insights
The Spring of AI : Leveraging Collective Disruptor InsightsThe Spring of AI : Leveraging Collective Disruptor Insights
The Spring of AI : Leveraging Collective Disruptor InsightsZinnov
 
Conversational AI is Now the Heart of Customer Experience.pdf
Conversational AI is Now the Heart of Customer Experience.pdfConversational AI is Now the Heart of Customer Experience.pdf
Conversational AI is Now the Heart of Customer Experience.pdfScallionRice
 
MongoDB World 2016 Giant Ideas Stage eBook
MongoDB World 2016 Giant Ideas Stage eBookMongoDB World 2016 Giant Ideas Stage eBook
MongoDB World 2016 Giant Ideas Stage eBookMongoDB
 
2016 june disruption in enterprise software final
2016 june disruption in enterprise software final2016 june disruption in enterprise software final
2016 june disruption in enterprise software finalvibhorrastogi
 
How can AI & Automation make your business processes intelligent
How can AI & Automation make your business processes intelligentHow can AI & Automation make your business processes intelligent
How can AI & Automation make your business processes intelligentMindfields Global
 
AI for Enterprises-The Value Paradigm By Venkat Subramanian VP Marketing at B...
AI for Enterprises-The Value Paradigm By Venkat Subramanian VP Marketing at B...AI for Enterprises-The Value Paradigm By Venkat Subramanian VP Marketing at B...
AI for Enterprises-The Value Paradigm By Venkat Subramanian VP Marketing at B...Analytics India Magazine
 
AI & India : The potential to be the next global centre of innovation
AI & India : The potential to be the next global centre of innovationAI & India : The potential to be the next global centre of innovation
AI & India : The potential to be the next global centre of innovationUmakant Soni
 
Your AI Transformation
Your AI Transformation Your AI Transformation
Your AI Transformation Sri Ambati
 
How to Prepare for 2025's Intelligence Technology
How to Prepare for 2025's Intelligence TechnologyHow to Prepare for 2025's Intelligence Technology
How to Prepare for 2025's Intelligence TechnologyIntelCollab.com
 
How to Prepare for 2025's Intelligence Technology
How to Prepare for 2025's Intelligence TechnologyHow to Prepare for 2025's Intelligence Technology
How to Prepare for 2025's Intelligence TechnologyArik Johnson
 
AI in Banking and Financial Services
AI in Banking and Financial ServicesAI in Banking and Financial Services
AI in Banking and Financial ServicesNiraj Vaidya
 
The state of the whole AI & ML sector in Europe and North America – research ...
The state of the whole AI & ML sector in Europe and North America – research ...The state of the whole AI & ML sector in Europe and North America – research ...
The state of the whole AI & ML sector in Europe and North America – research ...Mindtrek
 
How AI is revolutionizing the world
How AI is revolutionizing the worldHow AI is revolutionizing the world
How AI is revolutionizing the worldSK Reddy
 
A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024Results
 
Dr Christoph Nieuwoudt- AI in Financial Services
Dr Christoph Nieuwoudt- AI in Financial ServicesDr Christoph Nieuwoudt- AI in Financial Services
Dr Christoph Nieuwoudt- AI in Financial Servicesitnewsafrica
 
Decoding the Future Unveiling AI and Its Operational Mechanics
Decoding the Future Unveiling AI and Its Operational MechanicsDecoding the Future Unveiling AI and Its Operational Mechanics
Decoding the Future Unveiling AI and Its Operational MechanicsMarketing AI Software Developer
 
BridgeCommunity Overview 2018
BridgeCommunity Overview 2018 BridgeCommunity Overview 2018
BridgeCommunity Overview 2018 Tricia Whitlock
 

Ähnlich wie Artificial Intelligence (AI) 100 Startups 2017 (20)

Why someone in a non-software/internet business would acquire an artificial i...
Why someone in a non-software/internet business would acquire an artificial i...Why someone in a non-software/internet business would acquire an artificial i...
Why someone in a non-software/internet business would acquire an artificial i...
 
The Spring of AI : Leveraging Collective Disruptor Insights
The Spring of AI : Leveraging Collective Disruptor InsightsThe Spring of AI : Leveraging Collective Disruptor Insights
The Spring of AI : Leveraging Collective Disruptor Insights
 
Conversational AI is Now the Heart of Customer Experience.pdf
Conversational AI is Now the Heart of Customer Experience.pdfConversational AI is Now the Heart of Customer Experience.pdf
Conversational AI is Now the Heart of Customer Experience.pdf
 
MongoDB World 2016 Giant Ideas Stage eBook
MongoDB World 2016 Giant Ideas Stage eBookMongoDB World 2016 Giant Ideas Stage eBook
MongoDB World 2016 Giant Ideas Stage eBook
 
2016 june disruption in enterprise software final
2016 june disruption in enterprise software final2016 june disruption in enterprise software final
2016 june disruption in enterprise software final
 
The spring of AI
The spring of AIThe spring of AI
The spring of AI
 
How can AI & Automation make your business processes intelligent
How can AI & Automation make your business processes intelligentHow can AI & Automation make your business processes intelligent
How can AI & Automation make your business processes intelligent
 
Ai trend report
Ai trend reportAi trend report
Ai trend report
 
AI for Enterprises-The Value Paradigm By Venkat Subramanian VP Marketing at B...
AI for Enterprises-The Value Paradigm By Venkat Subramanian VP Marketing at B...AI for Enterprises-The Value Paradigm By Venkat Subramanian VP Marketing at B...
AI for Enterprises-The Value Paradigm By Venkat Subramanian VP Marketing at B...
 
AI & India : The potential to be the next global centre of innovation
AI & India : The potential to be the next global centre of innovationAI & India : The potential to be the next global centre of innovation
AI & India : The potential to be the next global centre of innovation
 
Your AI Transformation
Your AI Transformation Your AI Transformation
Your AI Transformation
 
How to Prepare for 2025's Intelligence Technology
How to Prepare for 2025's Intelligence TechnologyHow to Prepare for 2025's Intelligence Technology
How to Prepare for 2025's Intelligence Technology
 
How to Prepare for 2025's Intelligence Technology
How to Prepare for 2025's Intelligence TechnologyHow to Prepare for 2025's Intelligence Technology
How to Prepare for 2025's Intelligence Technology
 
AI in Banking and Financial Services
AI in Banking and Financial ServicesAI in Banking and Financial Services
AI in Banking and Financial Services
 
The state of the whole AI & ML sector in Europe and North America – research ...
The state of the whole AI & ML sector in Europe and North America – research ...The state of the whole AI & ML sector in Europe and North America – research ...
The state of the whole AI & ML sector in Europe and North America – research ...
 
How AI is revolutionizing the world
How AI is revolutionizing the worldHow AI is revolutionizing the world
How AI is revolutionizing the world
 
A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024
 
Dr Christoph Nieuwoudt- AI in Financial Services
Dr Christoph Nieuwoudt- AI in Financial ServicesDr Christoph Nieuwoudt- AI in Financial Services
Dr Christoph Nieuwoudt- AI in Financial Services
 
Decoding the Future Unveiling AI and Its Operational Mechanics
Decoding the Future Unveiling AI and Its Operational MechanicsDecoding the Future Unveiling AI and Its Operational Mechanics
Decoding the Future Unveiling AI and Its Operational Mechanics
 
BridgeCommunity Overview 2018
BridgeCommunity Overview 2018 BridgeCommunity Overview 2018
BridgeCommunity Overview 2018
 

Kürzlich hochgeladen

TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Miguel Araújo
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...apidays
 
A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?Igalia
 
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...Zilliz
 
Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxCorporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxRustici Software
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...DianaGray10
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProduct Anonymous
 
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...apidays
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MIND CTI
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdflior mazor
 
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu SubbuApidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbuapidays
 
A Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source MilvusA Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source MilvusZilliz
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodJuan lago vázquez
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherRemote DBA Services
 
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesrafiqahmad00786416
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...apidays
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonAnna Loughnan Colquhoun
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native ApplicationsWSO2
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingEdi Saputra
 

Kürzlich hochgeladen (20)

TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?
 
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
 
Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxCorporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptx
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu SubbuApidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
 
A Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source MilvusA Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source Milvus
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
 

Artificial Intelligence (AI) 100 Startups 2017

  • 1. 2017 AI 100 Companies CB INSIGHTS AI Promising 100 Companies
  • 2. 2
  • 3. 3 Contents 1 Preface 2 100 Companies 4 3 Appendix
  • 5. Purpose 5 The aim of this PPT is to catch up with the trend of Artificial Intelligence in business situations. Nowadays, AI is a kind of buzz word, but it has a high potential. As a business parson, it is necessary to understand what AI is and how AI affect our businesses.
  • 6. 6 1760〜1830 1865〜1900 1990〜2000 ①GPT=Steam Engine ②GPT=Internal Combustion Engine ③GPT=Internet GPT(General Purpose Technology) accumulation History of Technology 2029 2045 ④GPT=AI 1st industrial revolution 2nd industrial revolution 3rd industrial revolution 2029 Specific AI to General AI 4th Industrial revolution 2045 Singularity ロジスティック曲線 https://ja.wikipedia.org/wiki/%E3%83%AD%E3%82%B8%E3%82%B9%E3%83%86 %E3%82%A3%E3%83%83%E3%82%AF%E6%96%B9%E7%A8%8B%E5%BC%8 F We have 3 industrial revolutions. 1st one was based on the development of steam engine. 2nd one was Internal combustion engine. 3rd one was Internet. What is next ? I think AI is going to be 4th.
  • 7. 7Source: the singularity is near The Row of Accelerating Returns 秩序が指数関数的に成長すると、時間は指数関数的に速くなる — つまり、 新たに大きな出来事が起きるまでの時間間隔は、時間の経過とともに短くなる。
  • 8. The Singularity is Near According to Dr. Ray Kurzweil, It will be at 2045, and Specific AI is going to be shifted at 2029 to general AI owing to the development of GNR (Genetics, Nano-technology, Robotics) 8
  • 9. Utopia ? or Dystopia ? AI is going to be the most important subject in 21 century.
  • 13. 13 Affectiva, an MIT Media Lab spin-off, is the pioneer in Emotion AI, the next frontier of artificial intelligence. Affectiva’s mission is to bring emotional intelligence to the digital world with our emotion recognition technology that senses and analyzes facial expressions and emotion. The patented software is built on an emotion AI science platform that uses computer vision, deep learning and the world’s largest emotion data repository of more than 4.9 million faces analyzed from 75 countries, amounting to more than 50 billion emotion data points. Affectiva’s SDKs and APIs enable developers to add emotion-sensing and analytics to their own mobile apps, games, devices, applications and digital experiences. Affectiva is also used by more than 1,400 brands, like Kellogg's, MARS and CBS to gather insight and analytics in consumer emotional engagement. General :01: Facial / Emotional Analysis Category : Facial expression analysis Emotion-sensing technology Emotion analytics technology Capital : $25.17M SeriesA: $2M SeriesB: $5.73M SeriesC: $12M Rounds: 4 rounds from 5 investors Monetize : SDK, API , Consulting Founder: Rana el Kaliouby Name : affectiva 2009〜 HQ: Boston Employee: 51-100 Source : https://www.affectiva.com/ Features : • 5.6 million faces are measured • Used by 1,400 brands • 22 K media units analyzed • 38,944 of face video analyzed • MIT spin-off Market : Advertising, and media
  • 14. 14 Petuum is creating a development platform that serves the full spectrum of Artificial Intelligence and Machine Learning applications. They empower organizations to create AI/ML solutions that are correct, fast,scalable, and consume minimal computing resources. Their omnisource platform processes and integrates data in different formats such as numeric, textual, imagery, tabular, structured or unstructured, static or streaming from diverse sources like social media, consumer profiles, electronic health records, sensor logs from IoT devices, transaction logs from financial systems, and machine logs from manufacturing equipment. It is also omni-lingual, programmable with multiple popular languages such as Python, R, Java, C++, and Julia. It’s also omnimount, supporting different hardware platforms such as datacenters, workstations, laptops, mobile, and embedded devices.management, and beyond. General :02: ML Category : Full spectrum AI platform Capital : $15M Seed : SeriesA: $15M SeriesB: Rounds: 1 rounds from 4 investors Monetize : Provide omni platform Founder: Eric Xing Name : Petuum, inc. 2016〜 HQ: Pittsburg Employee: 11-50 Source : http://www.petuum.com/products.html Features : • Programmable in all language. • Originated from CMU. • Faster, cheaper, repeatable and affordable. Market : AI / ML solutions
  • 15. 15 Vicarious is an artificial intelligence research company that uses the computational principles of the brain to build software designed to think and learn like a human. Leveraging a new computational paradigm called the Recursive Cortical Network, the company has developed a visual perception system that interprets the contents of photographs and videos in a manner similar to humans. The research at Vicarious is expected to have applications for robotics, medical image analysis, image and video search, and many other fields. General :03: General AI Category : General AI Robotics Capital :$122M Seed : SeriesA:$15M SeriesB:$52M SeriesC:$50M Rounds: 5 rounds from 28 investors Monetize : ??? Founder: Dileep George Name : Vicarious 2010〜 HQ: San Francisco Employee: 11-50 Source : https://www.vicarious.com/index.html Features : • For robotics, medical, and so on. • General AI • Adviser Fei-Fei Lee • Investors Market : General AI and robotics
  • 16. 16 H2O.ai is the maker behind H2O, the leading open source AI platform for data products. With H2O, a plethora of machine learning models (from linear models to tree-based ensemble methods to Deep Learning) can be trained from R, Python, Java, Scala, JSON, H2O’s Flow GUI, or the REST API, on laptops or servers running Windows, Mac or Linux, in the cloud or on premise, on clusters of up to hundreds of nodes, on top of Hadoop or with the Sparkling Water API for Apache Spark. Some of H2O’s mission critical applications include fraud, anti-money laundering, auditing, churn, credit scoring, user based insurance, ICU monitoring, predictive maintenance, operational intelligence and more in over 7,000 organizations. H2O is brewing a grassroots culture of data transformation in its customer communities. Customers include Capital One, Progressive, Zurich, Transamerica, Comcast, Nielsen Catalina Solutions, Neustar, Macy’s, Walgreens, Kaiser Permanente and Aetna. General :04: ML Category : ML, Cloud Computing Analytics Big Data Capital : $33.6M Seed : $3M SeriesA: $8.9M SeriesB: $20M Rounds: 4 rounds from 10 investors Monetize : Open source platform Founder: SriSatish Ambati Name : H2O.ai 2011〜 HQ: Mountain View Employee: 11-50 Source : https://www.h2o.ai/ Features : • Open source AI • Over 7000 customers • Cisco and Paypal is included • Bringing AI to enterprise • World record platform for AIMarket : Machine learning in financial, insurance, healthcare
  • 17. 17 Loop AI Labs’ cognitive platform Loop Q is a technology that enables organizations in any industry to stay competitive during the Fourth Industrial Revolution by augmenting the capacity of current workforce. With its ability to learn, parse context and understand meaning, the Loop Q platform reasons on dark data in any language, and applies that Human Capacity to power Robotic Process Automation (RPA). These cognitivelyenabled applications powering RPA are custom-built by the global network of Loop Certified Partners, already working in the Digital Transformation of Forbes 2000 clients in Asia, Europe and America. The Q platform is a fully unsupervised cognitive computing technology consisting of proprietary Human Capacity cognitive algorithms integrated into a custom-built High Performance Computing GPU accelerated hardware. Loop Q builds on a long history of research and articulates several disciplines of science and technology, including linguistics, psychology, neuroscience, supercomputing, and AI. General : 05: Unsupervised cognitive computing platform Category : Personalization ML Neural Language Processing Big Data Capital : ??? Seed : SeriesA: SeriesB: Rounds: Monetize : Machine Learning Founder: GM Calafiore Name : Loop.ai Labs 2012〜 HQ: San Francisco Employee: 11-50 Source : http://www.loop.ai/industries Features : • Loop Q • Robotics Process Automation • Unsupervised cognitive computing • $200M DARPA CALO project, the largest government-funded artificial intelligence project in history. Market : EC, Healthcare, media, automotive, mobile, retail ,etc.
  • 18. 18 CognitiveScale builds machine intelligence software for healthcare, commerce, and financial services markets. The company’s products— Engage and Amplify help large enterprises increase customer engagement, improve decision-making, and deliver self-learning and self-assuring business processes. CognitiveScale has successfully deployed its software with multiple Global 500 companies and has formed strategic go to market and technology partnerships with IBM, Microsoft, and Deloitte. CognitiveScale was founded in 2013 by highly successful serial entrepreneurs and senior executives from IBM Watson, Oracle, and Salesforce with deep expertise in vertical enterprise software, cloud computing, and machine learning. The company has won numerous awards and featured in prominent research and publications. It is headquartered in Austin, Texas, with offices in the United Kingdom and India. Investors include Norwest Ventures, Intel Capital, IBM Watson, and Microsoft Ventures. General :06: Cognitive cloud software Category : Big Data Dark Data ML Information service Capital : Seed : SeriesA: SeriesB: $40M Rounds: 2 rounds from 7 investors Monetize : enterprise cognitive cloud Founder: Matt Sanchez Name : Cognitive Scale HQ: Austin Employee: 51-100 Source : https://www.cognitivescale.com/technology/ Features : • Focus on dark data • 500 companies • Partner IBM, Microsoft, Delotte Market : Commerce, healthcare, finance
  • 19. 19 Sentient’s mission is to transform how businesses tackle their most complex, mission-critical problems by empowering them to make the right decisions faster. Sentient’s technology has patented evolutionary and perceptual capabilities that will provide customers with highly sophisticated solutions, powered by the largest computer infrastructure dedicated to distributed artificial intelligence. General :07: Distributed AI Platform Category : EC Digital Marketing Software Capital : $143M Seed : SeriesA: SeriesB: $38M SeriesC: $103.5M Rounds: 3 rounds from 6 investors Monetize : Providing AI software Founder: Antoine Blondeau Name : Sentient 2007〜 HQ: San Francisco Employee: ??? Source : https://www.sentient.ai/ Features : • Decision making tool • Personalization • Sentient AWARE • Sentient ASCEND Market : digital marketing, EC, finance
  • 20. 20 Founded in 2012, Voyager Labs developed core technology with unprecedented capabilities for analyzing in real time billions of data points worldwide from multiple sources in order to understand and predict human and group behavior and create real-time actionable insights. The company’s cognitive computing deep-insights platform features unprecedented capabilities for analyzing in real-time billions of publicly available unstructured data points. With offices in New York, Washington and London, and R&D center in Israel, the company currently employs more than 90 employees. General :08: Big Data Analysis Category : Personalization Big Data Platform Capital : $100M Seed : SeriesA: SeriesB: Rounds: 1 rounds from 4 investors Monetize : Optimization Founder: Avi Korenblum Name : Voyager lab HQ: New York Employee: 51-100 Source : http://voyagerlabs.co/ Features : • Unprecedented capabilities for analyzing in bunch of data. • Gain insights into human behavior, interest, and internet using data. Market : EC, finance, human analysis
  • 21. 21 Numenta’s mission is to be a leader in the new era of machine intelligence. They believe the brain is the best example of an intelligent system, providing a roadmap for building intelligent machines. The brain’s center of intelligence, the neocortex, controls a wide range of functions using a common set of principles. Numenta has developed several HTM example applications to demonstrate the wide applicability of their technology. They put all of their research and software implementations into open source and encourage others to join us in building a community. From a commercial point of view, they license their technology and intellectual property. General :09: BI Category : Neuroscience Machine Intelligence Capital : ??? Seed : ??? SeriesA: ??? SeriesB: ??? Rounds: ??? Monetize : Licensing Founder: Jeff Hawkins Name : Numenta 2005〜 HQ: Redwood City Employee: 15-20 Source : https://www.numenta.com/ Features : • cohesive theory, core software technology, and numerous applications • Creating intelligent machines • Neuroscience research • Open source community Market : Business Intelligence Enterprise software
  • 22. 22 Scaled Inference is enabling a new generation of intelligent software built by the masses and powered by an open shared platform. Easily enhance user’s websites, apps, and other software to intelligently optimize for the key performance metrics, far faster than possible with traditional analytics or A/B testing. Harness the true power of Artificial Intelligence and Machine Learning, with seamless integration and unprecedented versatility and ease of deployment. General :10: Scalable AI Category : Machine Learning, Probabilistic Inference Distributed Systems Capital : $13M Seed : $5M SeriesA: $8M SeriesB: Rounds: 2 rounds from 9 investors Monetize : Intelligent Computing Founder: Olcan Sercinoglu Name : Scaled Inference 2014〜 HQ: Polo Alto Employee: 11-50 Source : https://www.scaledinference.com/ Features : • A platform for pattern recognition, detection, prediction, and so on. • Providing APIs Market : ML, BI
  • 23. 23 Skymind is the Red Hat of artificial intelligence. It provides support, training and services around an enterprise distribution of its opensource libraries called the Skymind Intelligence Layer (SKIL). These libraries include Deeplearning4j, the most widely used deep learning tool for Java; and the scientific computing library ND4J, or n-dimensional arrays for Java (Numpy for the JVM). Deep learning can equal and surpass expert human accuracy on many pattern recognition tasks, and Skymind is applying it to old, hard business problems such as fraud detection, network intrusion detection, hardware breakdown prediction, churn prediction, market forecasting and image recognition. Skymind’s customers are in such sectors as financial services , telecoms, manufacturing, healthcare and retail. Skymind’s open-source software integrates with the rest of the AI stack, working with tools such as Hadoop, Spark, Kafka, and ElasticSearch. Skymind works with large clients on-premise and in the hybrid cloud to ensure data privacy and security General :11: BI Category : deep learning, prediction, data analysis, BI, Data mining Capital : $3.32M Seed : $3.3M SeriesA: SeriesB: Rounds: 4 rounds from 11 investors Monetize : Providing support,training and service Founder: Adam Gibson Name : skymind 2014〜 HQ: San Francisco Employee: 11-50 Source : https://skymind.ai/ Features : • Working with Hadoop, Spark, kafka • Deeplearning4j.org : the world's first open-source, distributed, commercial-grade deep-learning framework. • Investors : fundersClub, Y Combinator Market : Security, Prediction, Image, Finance
  • 24. 24 Digital Reasoning is a leader in cognitive computing. They build software that understands human communication and extracts insights from it - in many languages, across many domains, and at enormous scale. Their award-winning cognitive computing platform, Synthesys®, is able to analyze all forms of unstructured and structured data, including feeds from legacy technologies, as well new insights from untapped resources. It produces holistic insights that give organizations unparalleled oversight and control, even at the scale of complex global enterprises and government departments. Synthesys uses natural language processing and machine learning to semantically analyze human communication, uses context to discern meaning and relevance, and applies knowledge representation to adapt to different usage domains. It creates and maintains profiles of entities (people, places, objects) and relationships between them. Machine learning continually improves its accuracy. Digital Reasoning has applied Synthesys to develop proven solutions for financial services, intelligence and defense, law enforcement, and health care organizations. General :12: Cognitive computing Category : NLP, ML, Big Data, Text Analytics Capital : $73.96M Seed : SeriesC: $24M SeriesD: $40M Rounds: 6 rounds from 7 investors Monetize : providing software Founder: Tim Estes Name : Digital Reasoning 2000〜 HQ: Franklin Employee: 101-250 Source : http://www.digitalreasoning.com/ Features : • Software that can understand human communication. • NLP and ML • Goldman Sachs and NASDAQ Market : research and development in cognitive computing
  • 25. 25 Bonsai is a software development platform that empowers every developer to build, teach and use intelligence models. The Bonsai Platform abstracts away the low-level, inner workings of artificial intelligence so developers can focus on what really matters, building smarter applications faster. Instead of needing expertise in complex AI algorithms and techniques, the Bonsai Artificial Intelligence Engine allows a developer to more efficiently code the multiple concepts and lessons needed to enable greater control and optimization of hardware and software. Bonsai’s fundamentally different approach results in far more accessible, efficient and explainable models compared to alternatives. Bonsai is headquartered in Berkeley, CA and backed by NEA. General :13: Developer platform Category : Operating Systems, Developer Tools, Developer Platform, Machine Learning Capital : $13.62M Seed : $320K SeriesA: $13.3M SeriesB: Rounds: 4 rounds from 8 investors Monetize : B2B industrial strength AI for developers Founder: Name : bonsai 2014〜 HQ: Berkeley Employee: 11-50 Source : https://bons.ai/ Features : • For developer platform • Industrial specific AI • Investors : Microsoft ventures, Samsung ventures Market : developers
  • 26. 26 Ayasdi helps companies around the world to use artificial intelligence and Big Data to make employees hundreds of times more productive and to drive fundamental breakthroughs that are beyond the capabilities of humans. Their revolutionary machine intelligence platform leverages automation, machine learning and topological data analysis to simplify the extraction of knowledge from even the largest and most complex data sets and to facilitate the deployment of intelligent, AI-based applications across the enterprise. Developed by Stanford computational mathematicians, Ayasdi’s unique approach to machine intelligence leverages breakthrough mathematics, highly automated software and inexpensive, scalable computers to revolutionize the process of converting big data into business impact. They are excited to count many of the Global 500, plus leading governments and research institutions as their clients and partners. General :14: BI Category : Big Data, ML, Data Visualization, Detection Capital : $106M Seed : ??? SeriesA: $10M SeriesB: $30.6M SeriesC: $55M Rounds: 7 rounds from 8 investors Monetize : Providing TDA Founder: Gurjeet Singh Name : AYASDI 2008〜 HQ: Menlo Park Employee: 10-50 Source : https://www.ayasdi.com/ Features : • B2B focus • Automated, inexpensive, and scalable • Topological Data Analysis (TDA). TDA: The most significant technological advancements ever funded by DARPA • Anti-money laundering, BI, fraud, management, etc Market : Financial, Public, Healthcare
  • 28. 28 Textio empowers you to be the best writer you can be, by predicting how well your content will perform before you ever publish it. Textio is built on predictive engine technology that combines machine learning and natural language processing with a customer data exchange. The result is a learning loop that joins artificial intelligence to human creativity, becoming smarter with every keystroke. Textio’s first domain focus is on content for recruiting and hiring such as job posts and candidate emails. Textio scores your writing and highlights your most statistically significant phrases, and then offers clear guidance to help you improve your document’s performance. Case studies show that companies using Textio will attract a cohort of job applicants that is on average 24% more qualified and 12% more diverse than those applying to the competition — and Textio customers fill positions on average 17% faster. General :15: NLP Category : Text Analytics, Natural Language Processing, ML Capital : $29.5M Seed : $1.5M SeriesA: $8M SeriesB: $20M Rounds: 3 rounds from 6 investors Monetize : providing text checking software Founder: Kieran Snyder Name : textio 2014〜 HQ: Seattle Employee: 11-50 Source : https://textio.com/ Features : • User : Microsoft, Square, Twitter, Starbucks, Apple, Slack, NASA, P&G etc. • NPL × Predicting processing engine • Founder is ex-Microsoft Market : Hiring advertisement “We had this premise that word processing in text hadn’t been disrupted in a while, from command line to GUI. We had the internet come along, it was about social and sharing, and we think that AI and the set of related technologies is the next big disruptor of text. If you know the Performance of a document before it’s ever published then you can fix it before it’s published.” CEO Kieran Snyder
  • 29. 29 Fido Artificial Intelligence turns a decision-making process into a conversation. It learns automatically by extracting facts and opinions from articles, blogs, social media and more. Fido Decision Engine is used for a wide range of applications, including: fact-checking, making decisions in hospitality and travel, e-commerce and more; answering healthcare questions based on clinical data, patient and doctor conversations etc.; product development and marketing. Fido has married symbolic approach known for the highest precision and predictability with self-learning neural networks. This patented approach enables to understand the English language without the “human bottleneck” - the need for training or labeling data for specific domains of expertise. Fido.ai is a spinoff from AI Lab in Europe, that has developed this new hybrid approach while building bots and AI products for Fortune 500 companies and govements. Meet Ada, a Bot that reads and learns from reviews. General :16: NLP Category : text analyzing, Big Data Capital : $1.86M Seed : $1.86M SeriesA: SeriesB: Rounds: 1 round from 8 investors Monetize : Providing chatbot Founder: Michal Wroczynski Name : fido.ai 2013〜 HQ: San Mateo Employee: 11-50 Source : http://fido.ai/ Features : • Video: youtube.com/watch?v=FkM1foMZm7U • Decision making process into a conversation • Self learning neural network • Powering chatbots • Answering business questions based on a large volume of text • Cyberbullying and hate speech detection. • Invester : Plug and Play Market : Communication, SNS
  • 30. 30 Cortical.io offers Natural Language Understanding (NLU) solutions based on Semantic Folding, a theory which opens a fundamentally new perspective to handling Big Text Data. Inspired by the latest findings on the way the brain processes information, Cortical.io’s Retina Engine converts language into semantic fingerprints, a numerical representation that captures meaning explicitly and operates on it computationally. The Retina Engine compares the semantic relatedness of any two texts by measuring the overlap of their fingerprints. It can be easily customized for any language, domain or jargon and delivers results quickly, at low costs. The intrinsic difference of Cortical.io’s algorithm makes it possible to solve many open NLU challenges like meaning-based filtering of terabytesof unstructured text data, real-time topic detection in social media or semantic search over millions of documents across languages. Cortical.io was founded in 2011 in Vienna, Austria and holds a broad general license for Numenta’s HTM technology General :17: NLU Category : Semantic Fingerprints, Classification, Streaming Text Filter, Keyword extraction, NLP, Text Analytics ML Capital : $6.18M Seed : $3M SeriesA: $1.8M SeriesB: Rounds: 4 rounds from 4 investors Monetize : APIs, Ratina platform Founder: Francisco Webber Name : Cortical.io 2011〜 HQ: Austria Employee: 11-50 Source : http://www.cortical.io/ Features : • NLU from bid text data • Semantic Folding • Cortical.io’s Retina Engine converts language into semantic fingerprints • Solve these problems : meaning-based filtering of terabytes of unstructured text data, real-time topic detection in social media or semantic search over millions of documents across languages. Market : BI
  • 31. 31 Narrative Science is the leader in Advanced NLG for the enterprise. Its Quill™ platform, an intelligent system, analyzes data from disparate sources, understands what is interesting and important, then automatically generates perfectly written narratives to convey the right meaning from the data for any intended audience, at machine scale. It excels where data visualizations fall short: it identifies and conveys relevant information in conversational language that people can immediately comprehend, trust and act on. Organizations rely on Narrative Science to better serve customers with useful written content and to increase efficiency, freeing employees to focus on high-value activities and innovation. General :18: NLG Category : Neural Language Generation Big Data Capital : $40.4M Seed : SeriesB: $6M SeriesC: $12M SeriesD: $22M Rounds: 6 rounds from 7 investors Monetize : Providing NLG platform Founder: Stuart Frankel Name : NarrativeScience 2010〜 HQ: Chicago Employee: 51-100 Source : https://narrativescience.com/Platform Features : • Neural Language Generation • Intelligent Narratives • Quill advanced NLG platform Market : Finance, BI, Government, Retail
  • 33. 33 Nanit is the first baby-safe monitor that uses computer vision technology to measure sleep and provide scientifically backed insights for parents to help their babies sleep better — all without a wearable. Nanit was developed in conjunction with doctors and sleep experts to ensure the device tracks the most important metrics. The camera provides a high-resolution bird’s eye view of the crib, and its sensors can measure and differentiate between even the slightest behavioral changes. Nanit’s AI gradually familiarizes itself with baby’s behavior over time and delivers personalized insights to help improve sleep. Nanit is the only monitor on the market that provides sleep insights, behavioral analysis, parenting tips, social sharing capabilities and nightly video summaries. Other features include a private social feed for parents and caregivers to communicate; floor stand with easy installation; night light and white noise maker; fully integrated cable management system; and humidity/temperature sensors. General :19: IoT Category : Smart monitor, ML, Capital : $6.6M Seed : $6.6M SeriesA: SeriesB: Rounds: 1 rounds from 8 investors Monetize : Selling devices Founder: Assaf Glazer Name : nanit 2015〜 HQ: New York Employee:11-50 Source : https://www.nanit.com/ Features : • $349 per unit. • Baby safe monitor. • Understand sleep patterns, parent visits, room conditions and much more. • 30 days free trial. Market : Baby, Child care
  • 34. 34 Munich-based IIoT company KONUX combines sensor data and artificial intelligence to generate real-time insights into the health of machines and infrastructure. This holistic approach enables operators to analyze machine problems and predict maintenance needs ahead of time. Clients benefit from decreases in maintenance costs of up to 30% and reductions in machine breakdowns of up to 70%. The KONUX solution replaces outdated manual inspection methods with smart sensors that continuously transmit asset condition data to the KONUX Andromeda software platform. There, the data is analyzed using machine learning algorithms and visualized using a customized front end. The system notifies of critical events in real time and gives recommendations for optimal planning of maintenance operations. KONUX is currently digitizing Deutsche Bahn’s high-speed railway network through condition monitoring of switches nationwide. This helps Deutsche Bahn significantly reduce inspection and maintenance costs, decrease train delays and improve worker safety. General :20: IIOT Category : Smart Sensor ML Capital : $18.5M Seed : $2M SeriesA: $16.5M SeriesB: Rounds: 4 rounds from 16 investors Monetize : smart IoT sensors and Visualizing Founder: Andreas Kunze Name : KONUX 2014〜 HQ: Munchen Employee:11-50 Source : https://www.konux.com/ Features : • Industrial IoT • Visualizing and Predicting the industrial world. • Sensors data to actionable insights. Market : Transportation
  • 35. 35 Verdigris is an artificial intelligence and IoT platform that makes buildings smarter and more connected while reducing energy consumption and costs. By combining proprietary hardware sensors, machine learning, and software, Verdigris “learns” the energy patterns of a building. Their software produces comprehensive reports including energy forecasts,alerts about faulty equipment, maintenance reminders, and detailed energy usage information for each and every device and appliance. Verdigris offers a suite of applications that gives building engineers a comprehensive overview, an “itemized utility bill”, powerful reporting, and simple automation tools for their facility. General :21: IIOT Category : Big Data, IoT platform IoT hardware Capital : $16M Seed : $3.4M SeriesA: $12.7M SeriesB: Rounds: 4 rounds from 4 investors Monetize : Hardware and software for analysis Founder: Jonathan Chu Name : Verdigris Technologies 2011〜 HQ: Moffett Field Employee: 11-50 Source : http://sightmachine.com/product/ Features : • IoT platform • Energy management, Property management. Energy efficiency, Operational efficiency. • Get better data, and smart decision, then save money. • Cool UI Market : Energy management, big data
  • 36. 36 Sight Machine is the category leader for manufacturing analytics and used by Global 500 companies to make better, faster decisions about their operations. Sight Machine’s analytics platform, purpose-built for discrete and process manufacturing, uses artificial intelligence, machine learning, and advanced analytics to help address critical challenges in quality and productivity throughout the enterprise. The platform delivers “AI for the plant floor” and is powered by the industry’s only Plant Digital Twin (patent pending) , which enables real-time visibility and actionable insights for every machine, line, and plant throughout an enterprise. Founded in Michigan in 2011 and expanded to the Bay Area in 2012, Sight Machine fuses the spirit of Silicon Valley technology innovation with rock-solid Detroit manufacturing. Its team includes the founders of Slashdot along with leadership from early Yahoo, Palantir, Tesla, Cisco, IBM, McKinsey, and Apple. General :22: IIOT Category : Manufacturing analysis, ML Robotics, SaaS Capital : $30.52M Seed : SeriesA: $5M SeriesB: $20M Rounds: 4 rounds from 12 investors Monetize : Analysis and Solutions Founder: Jon Sobel Name : SightMachine 2012〜 HQ: San Francisco Employee: 51-100 Source : http://sightmachine.com/ Features : • Reducing energy consumption and cost. • Quality ↑, Productivity ↑, Visibility ↑ • Sensor for many industries. • Kaizen culture. • Real time visualizing Market : Aerospace, Automobile, CPG, Electronics, Food, Oil, Gas, Medical
  • 38. 38 The BloomReach Personalization Platform is an underlying set of technologies to deliver the right experience for the user and business in every digital context from acquisition to conversion. The BloomReach Personalization Platform powers big data applications that span the customer experience and make it more personalized and relevant to the customer’s intent. The BloomReach Personalization Platform centralizes data enrichment, access, publishing and integration across all BloomReach products. With a single integration, customers have one login to access all BloomReach products, one pixel to inform BloomReach and one feed to send to BloomReach. Data enrichment includes attribute extraction, synonymization and machine learning. Data access makes the behavioral, product and demand data available to all BloomReach applications. Publishing supports the integration of many different widgets into a single framework so that customers can customize their templates and experiences. General :23: EC Personalization Category : EC, SEO, ML, CMS Capital : $97M Seed : SeriesA: $5M SeriesB: $11M SeriesC: $25M SeriesD: $56M Monetize : Software (Personalization, Platform)) Founder: Raj De Datta Name : bloomreach 2009〜 HQ: Mountain View Employee: 251-500 Source : Features : • Personalization platform • Hippo CRM, cloud, marketplace • BIMarket : CMS
  • 39. 39 mode.ai’s interactive user-experience and interface capitalizes on users’own holistic and subjective notions of similarity. mode.ai’s AI is uniquely suited to facilitate visually-driven, conversational experiences. Mode.ai is in the business of building AI-powered visual bots for retailers and publishers (B2B2C offering) using computer vision and deep learning, to provide an innovative conversational commerce channel on mobile messaging platforms. Their technology invites users to find visually similar items (‘more like this’), get styling suggestions (‘wear it with’), experience virtual reality (‘show on me’) and much more. General :24: EC chatbot Category : Retail, Visual Search, Commerce Capital : ??? Seed : ??? SeriesA: SeriesB: Rounds: 1 round from 1 investor Monetize : Chatbot × charge Founder: Eitan Sharon Name : mode.ai HQ: Polo Alto Employee: 1-10 Source : http://mode.ai/#/menu Features : • Chatbot AI in fashion • Interactive EC Market : EC
  • 41. 41 Cape Analytics was established to change the way information about the human-built environment is created and used. The company uses artificial intelligence to instantly and automatically extract proprietary property data from geospatial imagery. Cape Analytics’ cloud-based platform uses computer vision to provide near inspection-quality information about high-value property features – instantaneously and at scale. This data is available nationwide and can be easily integrated by insurance carriers and other property stakeholders. Cape Analytics establishes a new category of property analytics, offering immediacy and coverage comparable to public record data, but with the accuracy and detail previously available only from time-consuming, in-person property assessments. General :26: Image recognition Category : Image recognition ML Capital : $14M Seed : SeriesA: SeriesB: Rounds: 1 rounds from 9 investors Monetize : Data analysis Founder: Ryan Kottenstette Name : CAPE ANALYTICS 2014〜 HQ: Mountain View Employee: 11-50 Source : https://capeanalytics.com/ Features : • geospatial imagery • Focus on property data • Using public recorded data • Data Instant, Accurate, Everywhere without inspectorsMarket : Insurance
  • 42. 42 Kensho is empowering financial institutions with technology that brings transparency to markets. Kensho is pioneering real-time statistical computing systems and scalable analytics architectures—the next generation of improvements to the global financial system. Kensho harnesses massively-parallel statistical computing, user-friendly visual interfaces and breakthroughs in unstructured data engineering and predictive analytics to create the next-generation analytics platform for investment professionals. Addressing the most significant challenges surrounding investment analysis on Wall Street today-achieving speed, scale, and automation of previously human-intensive knowledge work-Kensho’s intelligent computer systems are capable of answering complex financial questions posed in plain English, and in real-time. General :25: ML Category : ML, Data Analytics Capital : $67M Seed : $10M SeriesA: $7M SeriesB: $50M Rounds: 3 rounds from 16 investors Monetize : Analytics Software Founder: Daniel Nadler Name : KENSHO 2013〜 HQ: Cambridge Employee: 51-100 Source : https://www.kensho.com/industry/as Features : • Real time statistical system • Financial Analytics Software deploys scalable analytics systems • Partner: Goldman, J.P Morgan, Bank of America CITI, Morgan Stanley Market : Insurance, Financial, Healthcare, Security
  • 43. 43 Numerai is a new kind of hedge fund built by a network of data scientists. Numerai manages an institutional grade long/short global equity strategy for the investors in their hedge fund. They transform and regularize financial data into machine learning problems for their global community of data scientists. In December 2015, they created the world’s first encrypted data science tournament for stock market predictions. The most accurate and original machine learning models from the world’s best data scientists are synthesized into a collective artificial intelligence that controls the capital in Numerai’s hedge fund. They reward outstanding contributions from the data science community with Bitcoin. General :27: Platform Category : ML, Data Science Capital : $7.5M Seed : SeriesA: $6M SeriesB: Rounds: 2 rounds from 7 investors Monetize : ??? Founder: Richard Craib Name : NUMERAI 2015〜 HQ: San Francisco Employee: 11-50 Source : https://numer.ai/ Features : • A new kind of hedge fund built by a network of data scientist • Numeaire : First cryptocurrency made by hedge fund • On the Ethereum • Network effect × financeMarket : Finance , Stock market Data scientists entering Numerai’s tournament currently receive, weekly, an encrypted data set that is an abstract representation of stock market information that preserves its structure without revealing details. The scientists then create machine-learning algorithms to find patterns in that data, and they test their models by uploading their predictions to the website, which so far has received about 40 billion Predictions. Forbes https://vimeo.com/205032211
  • 44. 44 AlphaSense solves the crippling information overload problem for knowledge professionals who are subject to a fire hose of data and are unable to catch or digest the vast amounts of content relevant to their daily decisions. Some platforms offer access to relevant documents, but none have intelligent search capabilities. AlphaSense offers access to proprietary research databases and includes semantic knowledge of financial language and the relevance analytics to surface valuable hidden snippets of information. AlphaSense ingests millions of documents, including company filings and transcripts, presentations, news, press releases and Wall Street research and any uploaded content. It semantically indexes these documents and produces instant results for users on any theme they are researching, summarizing relevant snippets across a vast volume of documents. The key benefit AlphaSense provides is an information edge, allowing users to find what others miss, and be the first to act on new information and insights. General :28: NLP search engine Category : Intelligent Search Engine Capital : $35M Seed : $1.7M SeriesA: SeriesB: Rounds: 2 rounds from 5 investors Monetize : Founder: Raj Neervannan Name : alphasence 2010〜 HQ: New York Employee: 51-100 Source : https://www.alpha-sense.com/#whyalpha Features : • Solve the crippling info. overload problem • Find critical info. • Access +35,000 companies. • Linguistic search algorithms access to M of documents Market : Finance
  • 45. 45 KAI, a conversational AI platform, enables companies to engage and transact with their customers via intelligent conversations, anytime, anywhere. KAI Banking is fluent in banking with thousands of intents and millions of banking sentences. Financial institutions power smart bots on messaging platforms like Facebook Messenger and virtual assistants in their mobile apps to fulfill requests, solve problems, and predict needs for their customers. KAI-powered bots and assistants help with payments, transaction and account insights, and personal finance management. They also provide new ways for banks to support and market product and services. The experience is as natural as texting a friend because KAI understands human-like conversations including idiosyncratic phrases, rapid topic changes and interruptions. KAI keeps track of the flow of conversations versus just natural language understanding – staying focused on customers’ goals and interpreting the context of a conversation. It enables lifestyle banking with financial decisions woven into everyday life. General :29: NLP chatbot Category : Chatbot, NLP, Fintech Capital : $11.45M Seed : $2.25M SeriesA: $9.2M SeriesB: Rounds: 2 rounds from 12 investors Monetize : providing AI chatbot Founder: Zor Gorelov Name : kasisto 2013〜 HQ: New York Employee: 11-50 Source : http://kasisto.com/ Features : • Interactive chatbot • For bank (payment, transactions, and account insights) • Message on messenger • Prefer: voice, touch, and text Market : Financial (Bank)
  • 47. 47 Gigster puts a world-class software development team in your pocket. Software is becoming an essential tool for every business with global IT spend reaching $2.3T, yet very few have easy access to quality, managed talent when they need custom software. Gigster is changing the way software is created by building the perfect team for every project, giving clients a single point of contact with their product manager, and completing it for a fixed price. The emerging viability of artificial intelligence and data science have recently made this possible. Intelligent tools powered by data from thousands of past projects take Gigster freelancers, already among the best in the world, to superhuman levels of efficiency. Gigster was founded in 2014 and has worked with companies from seed-stage startups to enterprises like IBM, World Bank, Airbus, Square, and Mastercard. Gigster has raised $12M from Andreessen, Greylock, Bloomberg, and Y Combinator. General :30: Smart developing service Category : App development, Web development, Rapid Prototyping, Product Management Capital : $32.5M Seed : $2.5M SeriesA: $10M SeriesB: $20M Rounds: 4 rounds from 17 investors Monetize : software developing platform Founder: Roger Dickey Name : Gigster 2014〜 HQ: San Francisco Employee: 11-50 Source : https://gigster.com/ Features : • Investors: Andreessen, Y Combinator • smart development service • 700+ network, 100+ project, 5M line of code • Reliability and Efficiency Market : developers
  • 48. 48 Prospera is developing artificial intelligence for agriculture to transform farming from an intuition-based practice to one that will use statistical models and automation in a way similar to silicon chip manufacturing, with protocols that optimize workforce, irrigation, fertilization and spraying. With in-field cameras and climatic sensors, Prospera is the only company that offers accurate remote agronomy and management solutions to farmers around the world. With an end-to-end data sciences approach to acquire, analyze and turn all in-field data into actions, growing practices will be measured more accurately, and “growing campaigns” will be more similar to today’s advertising campaigns in terms of understanding ROI, bench-marking and optimization. By measuring and analyzing the finite variables which affect crops in greenhouses and farms, Prospera offers solutions to empower farmers with real-time and predictive analysis on what is happening to their crops from a leaf by leaf basis to a multi-field basis, allowing them to tackle critical issues of underperforming fields. General :31: Image recognition Category : ML, Image recognition, Computer Vision Technology Capital : $22M Seed : SeriesA: $7M SeriesB: $15M Rounds: 2 rounds from 4 investors Monetize : Providing agriculture solutions Founder: Daniel Koppel Name : prospera HQ: Tel Aviv Employee:11-50 Source : http://prospera.ag/ Features : • Only one that offers accurate remote agronomy and management solutions to farmers • Centralized visibility and control • 95% accurate yield predictions • Maximize labor productivity • analyze plant health, development and stress Market : Agriculture
  • 49. 49 Citrine hosts the world’s largest materials repository platform. Citrine uses this platform to build AI software that enables more efficient discovery, optimization, manufacturing, and deployment of materials. Their software platform ingests structured and unstructured materials data from a wide variety of sources, both public and private; they then use AI engines to identify important signals in those data and directly enhance customers’ R&D and manufacturing efforts. They serve organizations that rely on cutting-edge materials for competitive advantage, in industries ranging from automotive, aerospace, consumer goods, batteries, and electronics. General :32: Predictive intelligence Category : Big Data, Advanced material, Analytics, ML Capital : $7.6M Seed : SeriesA: $7.6M SeriesB: Rounds: 3 rounds from 8 investors Monetize : platform for material and chemical Founder: Greg Mulholland Name : Citrine 2013〜 HQ: Redwood city Employee: 11-50 Source : https://citrine.io/ Features : • Repository platform • R&D and manufacturing • operating system for advanced materials and chemicals • understands large-scale data from countless sources, such as patents, research papers, technical reports, and existing databases Market : R&D, Product Management, chemical
  • 50. 50 Blue River Technology creates and delivers advanced technology for better agriculture. The company’s pioneering approach utilizes computer vision and robotics to build a future that ‘makes every plant count’ - where the needs of each plant are precisely measured and instantly responded to, significantly reducing chemical and nutrient use. The company brings substantial experience in precision agriculture, robotics, computer vision and machine learning. General :33: Image recognition Category : robotics, ML, Capital : $30M Seed : SeriesA: $13M SeriesB: $17M Rounds: Monetize : providing ag solutions Founder: Jorge Heraud Name : Blue River 2011〜 HQ: Sunny Vale Employee: 51-100 Source : http://www.bluerivertechnology.com/ Features : • Reduce chemical and nutrient use • 90% lower chemical costs. • 2.5B potential reduction in global herbicide use. • See & Spray: precisely spraying chemicals only where needed, and with exactly what's needed Market : Agriculture
  • 51. 51 ROSS Intelligence uses artificial intelligence to allow attorneys to do more than was ever humanly possible and focus on what matters most – their clients. Co-founded in 2014 by Andrew Arruda, Jimoh Ovbiagele and Pargles Dall’Oglio, ROSS developed a proprietary framework, LegalCognition and has combined with IBM Watson, an early partner of ROSS Intelligence. ROSS’ first legal A.I. went live in the area of legal research, allowing attorneys to perform tedious research tasks in seconds rather than hours. A graduate of Y Combinator’s 2015 class and NextLaw Labs, ROSS is currently partnered with a variety of in-house teams, bar associations, and law schools, and has a client base that includes Dentons, the world’s largest law firm by headcount, and Latham & Watkins, the world’s largest law firm by revenue. General :34: NLP law Category : ML, NLP, Lawyer Capital : ??? Seed : $120K SeriesA: SeriesB: Rounds: Monetize : providing solutions for lawyer Founder: Andrew Arruda Name : ROSS intelligence 2014〜 HQ: San Francisco Employee: 11-50 Source : http://www.rossintelligence.com/%22%20%5Ct%20%22_blank Features : • Investors : Y Combinator • Legal cognition • IBM Watson • First AI for law Market : law
  • 52. 52 Zymergen is a technology company unlocking the power of biology. Zymergen has developed a proprietary platform, which uses robots and machine learning to engineer microbes faster, more predictably, and to a level of performance previously unattainable. These microbes, and the products they produce, have broad applications across industries such as chemicals and materials, agriculture, and healthcare. Zymergen works with customers in these industries to improve the economics of existing products, bring new products to market faster, and to develop entirely new products. General :35: ML biology Category : Bioinformatics, ML, Robotics Capital : $174M Seed : $2M SeriesA: $42.14M SeriesB: $130M Rounds: 3 rounds from 17 investors Monetize : microbes Founder: Joshua Hoffman Name : zymergen 2013〜 HQ: Emeryville Employee: 101-250 Source : https://www.zymergen.com/about/ Features : • Focus on biology • Robots and machine learning to engineer microbes. • Investor : SoftBank seriesB lead Market : Biology
  • 53. 53 Founded in 2014, Descartes Labs is a New Mexico-based technology company advancing the science of forecasting. The team, which originally spun out of Los Alamos National Lab, developed a platform that applies machine learning to massive data sets, like satellite imagery, for forecasting and analysis across different industries. Descartes’ first application was in agriculture, analyzing satellite imagery to predict corn and soy yields in the U.S. ahead of the USDA, which is the current industry benchmark. Descartes Labs’ mission is to solve the most challenging forecasting problems today, to help us better understand the Earth and prepare for the future. The company was named one of CB Insights’ Game Changers in 2016. General :36: Image recognition agriculture Category : ML, Computer vision, Geospatial, Image recognition Capital : $38.28M Seed : $3M SeriesA: $5M SeriesB: $30M Rounds: 4 rounds from 10 investors Monetize : Selling analysis to ag companies Founder: Mark Johnson Name : Descartes Labs 2014〜 HQ: New Mexico Employee: 11-50 Source : https://www.descarteslabs.com/ Features : • building a data refinery for satellite imagery. • Geovisual search Center Pivot, Airport runways, Wind turvines • Map • ForcastMarket : Agriculture
  • 54. 54 Gradescope is using AI to help instructors grade their students’ work. Instructors do not need to compromise on assessment quality — their software lets instructors give out their existing paper-based exams or homework assignments, but then grade them online. Instructors save time, while grading consistently and transparently. Students get rich, personalized feedback in a shorter amount of time. They also keep track of the exact reason behind every point earned by every student on every question. This enables unprecedented data analytics: for example, they can reveal which concepts a student needs help with, or which questions are too difficult. To date, Gradescope has been used to grade over 12 million pages of student work at more than 200 institutions worldwide. General :37: Image recognition education Category : skill assessment, image recognition Capital : $2.5M Seed : $2.5M SeriesA: SeriesB: Rounds: 1 round from 5 investors Monetize : providing software to institutes Founder: Pieter Abbeel Name : gradescore 2014〜 HQ: Berkley Employee: 1-10 Source : https://www.gradescope.com/ Features : • Help instructors to grade students’ work. • 12 million pages of student work • 300↑ institutes Market : Education
  • 55. 55 Talla gives you the power to turn your chat platform into a command center for your company. Talla combines the tools, processes, and intelligent automation you need to manage information workflows within messaging systems, including Slack. Use Talla to enable business processes in chat, such as onboarding employees, training on new skills, polling, and building out custom experiences. You’ll be able deliver and gather important information for your team, keeping everyone knowledgeable, engaged, and productive. Founded in 2015, Talla is based in Cambridge, MA. General :38: Data Analysis for HR Category : HR, Data Analysis Capital : $12.33 Seed : SeriesA: $8.3M SeriesB: Rounds: 3 rounds from 12 investors Monetize : Providing talla for $149 / $499 per month Founder: Rob May Name : talla 2015〜 HQ: Brookline Employee: 11-50 Source : https://talla.com/ Features : • Virtual assistant for working. • automate repetitive requests, increase employee engagement, and accelerate information retrieval. • 2000+ Companies use it. • Talla for IT and HR Market : HR
  • 57. 57 Freenome is building software to understand the changes in plasma cell-free DNA (cfDNA) patterns over time. By studying normal cfDNA dynamics Freenome discovered signatures for early cancer detection that outcompete existing screening methods from a single blood draw in Prostate, Lung, Colorectal, and Breast cancers. In addition, the deep learning models have been leveraged to distinguish disease subtypes such as castration-sensitive from castration-resistant prostate cancer. Thus, the resolving power of Freenome’s software enables both disease diagnosis and personalized treatment recommendation from the same platform. Freenome raised $5.5M from Andreessen Horowitz, Founders Fund, and DCVC, and partnered with UCSF, Stanford, Duke, Emory, NYU, and several other centers to expand the validation of Freenome’s technology. General : 39: Image recognition for healthcare Category : DL, Image recognition, Capital : $77.55M Seed : $5.55M SeriesA: $72M SeriesB: Rounds: 3 rounds from 16 investors Monetize : disease detecting solutions Founder: Gabriel Otte Name : freenome 2015〜 HQ: San Francisco Employee: 11-50 Source : https://www.freenome.com/ Features : • Investor: Andreessen Horowitz • Image recognition for DNA • health technology bringing accurate, accessible and non-invasive disease screenings • The members are scientists and technologists. Market : Healthcare
  • 58. 58 We have built a Clinical AI Platform that is bringing scale and simplicity to the application of brain-inspired clinical algorithms to healthcare. Their platform is built on a comprehensive and constantly growing network of medical knowledge that powers their applications. Further, the sheer amount of unprocessed data in healthcare is hindering patient centered care. Their natural language processing taps into this data with a deep understanding of clinical context and uses machine learning to provide a profile of each patient’s risk (severity of disease and potential adverse events, like a hospital readmission) that could not be generated before. This enables true patient centered precision care. CloudMedx combines the power of machine learning and big data analytics to generate real-time health insights and improve patient outcomes for chronic conditions that are responsible for as much as 90% of healthcare costs such as congestive heart failure, stroke, hypertension, COPD, diabetes, etc. General :40: NLP, ML for healthcare Category : ML, Data Analysis, NLP, Neuroscience, Predictive Analysis Capital : $4.2M Seed : $4.2M SeriesA: SeriesB: Rounds: 2 rounds from 8 investors Monetize : Providing software to hospitals Founder: Tashfeen Suleman Name : CLOUDMEDX 2014〜 HQ: Polo Alto Employee: 11-50 Source : http://www.cloudmedxhealth.com/ Features : • Investor : Y Combinator • real-time health insights and improve patient outcomes Market : Healthcare
  • 59. 59 Zebra Medical Vision is building a medical imaging insights platform. The company provides a platform that offers a cloud-based, fully hosted research and development environment including access to large datasets of structured, de-identified studies, storage, GPU computing power and support for a multitude of research tools. The solution also enables research groups to collaborate and create joint tools. General :41: Image recognition for health Category : Health diagnosis, Image recognition, SaaS, Capital : $20M Seed : $8M SeriesA: SeriesB: Rounds: 2 rounds from 6 investors Monetize : providing software to hospitals Founder: Elad Benjamin Name : zebra 2014〜 HQ: Israel Employee: 11-50 Source : https://www.zebra-med.com/ Features : • GPU computing • Automated, Accurate & Timely medical image diagnosis • Data driven healthcare • constantly growing Analytics Platform • he largest, open, clinical research platform globally • 1100↑ hospitals Market : Healthcare
  • 60. 60 Enlitic, Inc. is a deep learning company dedicated to improving healthcare diagnostics. Enlitic’s algorithms were engineered from the ground up by a multidisciplinary team of renowned data scientists, machine learning practitioners and medical experts in order to provide faster, and more accurate medical diagnoses. Enlitic’s technology analyzes and learns from vast quantities of unstructured medical data, including radiology and pathology images, laboratory results, genomics, patient histories and electronic health records. Using millions of records, Enlitic’s Deep Learning technology can assist radiologists by improving accuracy, reducing costs, and facilitating early detection in order to improve outcomes. General :42: DL for healthcare Category : DL, Healthcare diagnostics, Capital : $15M Seed : $5M SeriesA: $10M SeriesB: Rounds: 2 rounds from 4 investors Monetize : providing DL services Founder: Sally Daub Name : enlitic2014〜 HQ: San Francisco Employee: 11-50 Source : https://www.enlitic.com/index.html Features : • faster, and more accurate medical diagnoses • reducing costs, and facilitating early detection • Creating data driven medicine using deep learning • up to 10,000 times faster than the average radiologist. Market : Healthcare
  • 61. 61 twoXAR is a software-driven drug discovery company. The company leverages its computational platform to identify promising drug candidates, de-risks the opportunities through preclinical studies, and progresses drug candidates to the clinic through industry partnerships. The platform has been applied to more than 80 diseases to date. In collaboration with leading research institutions including Stanford, University of Chicago, and Mt. Sinai Hospital, twoXAR has uncovered promising new medicines for diseases such as arthritis, multiple sclerosis, and cancer. General :43: ML for healthcare Category : Pharmaceutical, Biotechnology, ML Big Data, Capital : $4.3M Seed : $3.4M SeriesA: SeriesB: Rounds: 2 rounds from 3investors Monetize : Providing software for drug Founder: Andrew A. Radin Name : twoXAR 2014〜 HQ: Polo Alto Employee: 11-50 Source : http://www.twoxar.com/ Features : • intelligence-driven drug discovery company. • Fast, scalable, unbiased, comprehensive, agnostic. • Partners : Stanford, MIT. • Improving health through computation.Market : Healthcare
  • 62. 62 Based on the world’s most professional and exponentially increasing holographic health data, they will provide individualized health analysis and prediction of health index through the most advanced data mining and machine analysis technologies. Together with the world’s leading partners, they plan to observe, study, guide and take care of one’s health from the beginning of one’s life. Multiple companies have established collaboration and/or cooperation with us, including research institutions, pharmaceutical factories, medical examination centers, hospitals, insurance companies and health management companies, etc. General : 44: Data Science for personalize health Category : Health Care, Biotechnology, Big data Data Analysis Capital : $199.48M Seed : SeriesA: SeriesB: Rounds: 2 rounds from 3 investors Monetize : ??? Founder: Jun Wang Name : HQ: Shenzhen Chine Employee: ??? Source : https://www.icarbonx.com/en/index.html Features : • O2O service • holographic health data • Personalization • Unicorn in China • Providing individualized health analysis and prediction of health index • the first and most comprehensive collection platform of health data from millions of individuals Market : Healthcare
  • 63. 63 Atomwise uses artificial intelligence to discover new potential medicines. Atomwise built the first deep neural network for structure-based drug design. Atomwise is helping researchers tackle chronic diseases such as cancer, multiple sclerosis, and diabetes; neglected global diseases such as Ebola and malaria; resurgent diseases such as antibiotic-resistant germs; and bioterror threats such as botulinum neurotoxin. Atomwise trains deep 3D convolutional neural networks that autonomously learn spatial and chemical features, and predict which molecules are likely to be effective. The neural networks are applied throughout the drug discovery pipeline to optimize the initial leads into potent medicines and adjust them to avoid toxicity problems. Atomwise can analyze millions of molecules per day, orders of magnitude faster than other physical testing technologies, and helping find cures months or even years faster. General :45: ML for drug Category : Drug Discovery, ML Capital : $6.35M Seed : $6.35M SeriesA: SeriesB: Rounds: 3 rounds from 9 investors Monetize : Discovering potential medicines Founder: Abraham Heifets Name : Atomwise 2012〜 HQ: San Francisco Employee: 1-10 Source : http://www.atomwise.com/ Features : • Partner : Merck, and IBM. • artificial intelligence for discover new potential medicines. • the first deep neural network for structure-based drug design. • Investor: Y Combinator Market : Medical
  • 64. 64 Founded in 2015, Deep Genomics builds computational systems that will improve how they diagnose, treat, and understand disease. A key obstacle to realizing the benefits promised by routine genome sequencing is the difficulty connecting individual genetic alterations to physiological consequences that impact health. Deep Genomics is working to close this gap. Deep Genomics’ technology emerged from more than a decade of academic research that brought together the fields of machine learning and genome biology. Their mission is to develop an integrated computational system that can learn, predict and interpret how changes in DNA – whether natural or therapeutic – alter crucial cellular processes. They develop new machine learning methods that can find patterns in massive datasets and infer computer models of how cells read the genome and generate biomolecules. In this way, their unique technology provides a causal interpretation for genetic variation that is applicable to any variant, and any disease General :46: ML for genomics Category : DL, ML, Genome biology, Capital : $3.7M Seed : $3.7M SeriesA: SeriesB: Rounds: 1 rounds from 3 investors Monetize : Providing an integrated system Founder: Brendan Frey Name : deep genomics 2015〜 HQ: Toronto Employee: 11-50 Source : https://www.deepgenomics.com/ Features : • improve how they diagnose, treat, and understand disease. • building an integrated computational system, the DG Engine, which can learn, predict and interpret how genetic variation, whether natural or therapeutic, alters crucial cellular processes in the context of disease. Market : Medical
  • 65. 65 babylon is a personal healthcare service that lives in your smartphone or tablet. It’s easy to use, available whenever you need it and available for everyone to use. It lets people arrange to see their lovely doctors within minutes, chat to them face-to-face on their mobile to find out what’s wrong, and then get back on track with sound advice. At babylon, they’re on a mission to make healthier, happier people. So they’ve created a bunch of features for the app to do just that. You can check any symptom and ask all the questions you can think of using their chat feature, send us questions for a speedy response and order test kits you can do at home. They’re changing the way healthcare gets done. General :47: NLP chatbot Category : Chatbot, Personalization, NLP Capital : $85M Seed : SeriesA: $60M SeriesB: $20M Rounds: 2 rounds from 9 investors Monetize : Application charge Founder: Ali Parsa Name : babylon 2013〜 HQ: London Employee: 50-100 Source : https://www.babylonhealth.com/pricing Features : • Personal healthcare service. • It lets people arrange to see their lovely doctors within minutes, chat to them face-to-face on their mobile to find out what’s wrong. • Health advice without going to hospital. • Cheap £5 for month £39 for an appointmentMarket : Healthcare
  • 66. 66 Despite the huge growth of knowledge, scientific discovery has not changed for 50 years. It’s impossible for humans alone to process all of the information potentially available to advance scientific research - a new scientific paper is published every 30 seconds, there are 10,000 updates to PubMed every day. Consequently, only a small fraction of globally generated scientific information can form ‘useable’ knowledge. BenevolentAI applies AI and deep learning techniques to enable the analysis of vast quantities of complex scientific information. The Company is changing the way knowledge is created by producing an enormous structured, curated and qualified proprietary ‘data lake’ of dynamic usable knowledge that can be applied for real world use in conjunction with human experts. The Company’s first application of AI was in bioscience to accelerate drug discovery. BenevolentAI is now expanding into other large global scientific industries such a veterinary medicine, aggrotech, nutraceuticals and materials science. General :48: DL for madicine Category : DL, Neuroscience, Augmented human intelligence, Capital : $100M Seed : SeriesA: SeriesB: Rounds: 1 round from 4 investors Monetize : Discovering new medicine Founder: Jerome Pesenti Name : BenevolentAI 2013〜 HQ: London Employee: 51-100 Source : http://benevolent.ai/ Features : • Deep learning techniques to enable the analysis of vast quantities of complex scientific information. • Bioscience to accelerate drug discovery, a veterinary medicine, aggrotech, nutraceuticals and materials science. Market : Medicine
  • 67. 67 Lunit is an AI-centric company and develops a visual perception technology that interprets medical images and visualizes abnormal regions based on its own data-driven criteria. The company gained international attention after achieving the highest rank among startup teams in the ImageNet Large-scale Visual Recognition Challenge (ILSVRC) 2015. Based on the expertise in deep learning, Lunit has been working on abnormality detection in chest x-ray, mammography as well as automatic grading of breast histopathology slides. The high level of Lunit’s technology has been well demonstrated, presented 4 scientific abstracts in Radiological Society of North America (RSNA) 2016 and won the first place in the Tumor Proliferation Assessment Challenge (TUPAC) 2016 ahead of IBM and Microsoft. Lunit envisions a constructive partnership between physicians and technology in becoming “better together” faced with challenges in accurate diagnoses of diseases. General :49: Image recognition Category : DL, ML, Health Diagnostics, Image recognition Capital : $5.46M Seed : SeriesA: $2M SeriesB: Rounds: 3 rounds from 5 investors Monetize :developing advanced software for medical data analysis Founder: Anthony Paek Name : Lunit 2013〜 HQ: Seoul Employee: 11-50 Source : Features : • visual perception technology • Investor: SoftBank • help physicians make accurate, consistent, and efficient clinical decisions, not limited to diagnoses, through the data-driven imaging biomarker technology. Market :
  • 69. 69 Voice calls are the enterprise’s most important data stream. They represent 68% of customer contact, versus just 21% for email and chat. They are how companies sell to customers and service their needs. But this data — insights from the most critical customer conversations — is not being captured, analyzed, or leveraged to grow and improve business. TalkIQ has built a proprietary speech recognition and AI engine for enterprise voice calls which is 2X more accurate than Watson and 3X more accurate than Google on these conversations. TalkIQ enables sales and support teams to, for the first time, take a scientific approach to understanding and optimizing key moments across their processes, including recognizing purchase intent, handling objections, responding to competitors, pricing, building rapport, and closing. As a result, companies win more deals, retain more accounts, and improve their marketing and product strategies to drive significant improvements against their most important KPIs. General :50: Voice recognition Category : DL, Speech recognition, Predictive analysis Capital : ??? Seed : SeriesA: SeriesB: Rounds: Monetize : providing speech recognition software Founder: Dan O'Connell Name : TalkIQ HQ: San Francisco Employee: ??? Source : https://www.talkiq.com/ Features : • Voice recognition • Delivering critical insights about the customers to sales, marketing, account management, and support teams • Focus on customer conversation Market : Customer support
  • 70. 70 Deepgram uses deep learning to mine your recorded speech data for business insights. Companies only analyze 2% of their audio data. Deepgram does all of it. Predict churn, CSAT, NPS, conversion, and search your data like you’re Google. General :51: Voice recognition Category : Voice recognition Capital : $1.92M Seed : SeriesA: SeriesB: Rounds: 2 rounds from 3 investors Monetize : voice research Founder: Scott Stephenson Name : Deepgram 2015〜 HQ: San Francisco Employee: 1-10 Source : https://www.deepgram.com/ Features : • Focus on keyword spotting and AI classification for phone support and legal discovery. • Investor : Y Combinator • searching keyword • Use case : call center, eDiscovery, Media Market : media, customer support
  • 71. 71 Persado’s cognitive content platform generates language that inspires action. Powered by focused AI technologies, the platform arms Fortune 500 companies and other organizations with “smart content” that maximizes engagement with any audience, for every touchpoint, at scale, while delivering unique insight into the specific triggers that drive action. General :52: Cognitive computing for ad Category : Cognitive computing, Marketing, Contents creator, Advertisement Capital : $66M Seed : SeriesA: $15M SeriesB: $21M SeriesC: $30M Rounds: 3 rounds from 6 investors Monetize : providing marketing solution Founder: Alex Vratskides Name : Persado 2012〜 HQ: New York Employee: 101-250 Source : https://persado.com/ Features : • “smart content” that maximizes the efficacy of communication with any audience at scale. • an average uplift of 49.5% in conversions across marketing campaigns. • Persado Go leverages a smart machine to analyze more than 40 ,000,000,000 digital communication interactions. • Persado’s cognitive content platform generates language that inspires action. Market : Advertisement
  • 72. 72 Appier is a technology company that makes it easy for businesses to use artificial intelligence to grow and succeed in a cross screen era. Appier is formed by a passionate team of computer scientists and engineers with experience in AI, data analysis, distributed systems, and marketing. Their colleagues come from Google, Intel, Yahoo, as well as renowned AI research groups in Harvard University and Stanford University. Headquartered in Taipei, Appier serves more than 500 global brands and agencies from offices in eleven markets across Asia, including Taipei, Singapore, Tokyo, Sydney, Ho Chi Minh City, Manila, Hong Kong, Mumbai, New Delhi, Jakarta and Seoul. General :53: ML for ad Category : Analytics, Personalization, ML, Marketing, Ad Capital : $81.5M Seed : SeriesA: $6M SeriesB: $42M SeriesC: $33M Rounds: 4 rounds from 14 investors Monetize : Providing ad solutions Founder: Chih-Han Yu Name : appier 2012〜 HQ: Taipei Employee: 101-250 Source : http://www.appier.com/en/index.html Features : • Investors : SoftBank, LINE, Sequoia, etc • Personalized ad • provide artificial intelligence (AI) platforms to help enterprises solve their most challenging business problems, spanning across Marketing and Data intelligence. Market : EC, Gaming, Building a brand
  • 73. 73 Chorus helps your team make decisions using the insights you’d get if you were sitting in on every sales or customer success call. They founded Chorus to understand what influences conversation outcomes, and make it easy to learn from and influence the thousands of conversations your team has. Today, almost all of those conversations and the insights they contain are forgotten the second they end, except for the few notes captured in your CRM. They’re changing that. They are a tight-knit team of world-class scientists, engineers and product designers, and are working with a wide variety of data-driven public and high-growth companies. They’re passionate about voices, language, technology and results, and can’t wait to find the moments in conversations that matter to you and your team. General :54: Voice recognition for sales Category : Voice recognition, Big Data, ML Capital : $22.3M Seed : SeriesA: $16M SeriesB: Rounds: 2 rounds from 2 investors Monetize : providing conversation intelligence for sales teams. Founder: Roy Raanani Name : Chorus 2015〜 HQ: San Francisco Employee: 11-50 Source : https://www.chorus.ai/ Features : • Automatically record, transcribe and analyze meetings in real-time. Gain critical insight into your sales opportunities and meeting performance. • understanding what influences conversation outcomes, and make it easy to learn from and influence the thousands of conversations your team has. • Improving the skills of sales people and a manager's ability to manage based on what is proven to impact the outcomes of sales conversations. Market : CRM
  • 74. 74 Since its founding in 2004, InsideSales.com has developed a robust platform that uses technology backed by the core ingredients of real AI (big data, machine learning and predictive analytics, made actionable with an application layer) to solve the who, what, where, when and how of sales. As more and more of the tech industry’s titans enter the artificial intelligence (AI) market, this AI fueled sales acceleration platform positions InsideSales at the forefront of this wave. InsideSales.com has received numerous accolades for its technology, including being named to the CNBC Disruptor 50 and Forbes Cloud 100 lists, and earning recognition as one of the fastest growing companies, according to Inc. InsideSales.com enterprise customers include ADP, Microsoft and Groupon. General :55: DL for sales Category : ML, Prediction, Self learning Capital : $251.2M Seed : SeriesA: $4M SeriesB: $36.55M SeriesC: $100M SeriesD: $60M Rounds: 5 rounds from 15 investors Monetize : Providing CRM services Founder: David Elkington Name : Insidesales.com 2004〜 HQ: Provo Employee: 500〜1000 Source : https://www.insidesales.com/ Features : • InsideSales.com offers sales acceleration platform built on a predictive and prescriptive self-learning engine. • comprehensive sales acceleration platform. • Self communication, gamification, email and web tracking, predictive forecasting, etc Market : CRM
  • 75. 75 Drawbridge is the leading anonymized digital identity company, building patented cross-device technology that fundamentally changes the way brands connect with people. The Drawbridge Connected Consumer Graph® includes more than one billion consumers across more than three billion devices, and verified to be 97.3% precise. Brands can work with Drawbridge in three ways: by licensing the Drawbridge Connected Consumer Graph for cross-device data applications; managing crossdevice ad campaigns in real-time using the Drawbridge Cross-Device Platform; or working with Drawbridge to execute cross-device digital advertising campaigns. The company is headquartered in Silicon Valley, is backed by Sequoia Capital, Kleiner Perkins Caufield Byers, and Northgate Capital, and has been named to the Inc. 5000 annual ranking of the fastest-growing companies in America for the past two years. General :56: ML for ad Category : SaaS, Personalization, Ad, Identity Management Capital : $45.5M Seed : SeriesA: $6.5M SeriesB: $14M SeriesC: $25M Rounds: 3 rounds from 3 investors Monetize : Providing software which connect brand and consumers Founder: Kamakshi Sivaramakrishnan Name : drawbridge 2010〜 HQ: San Mateo Employee: 100〜250 Source : https://drawbridge.com/ Features : • Anonymized digital identity • Investor : Sequpia • It enables brands to have seamless conversations with consumers. • The Drawbridge Connected Consumer Graph® includes more than one billion consumers across more than three billion devices, and verified to be 97.3% precise. Market : Ad
  • 76. 76 DigitalGenius brings practical applications of deep learning and artificial intelligence into customer service operations of leading companies. At its core are deep learning algorithms, which are trained on historical customer service data and integrated directly into the contact center’s existing software. Already deployed with industry innovators like KLM Royal Dutch Airlines, Unilever, and HSBC, the product delivers value through two main functions: Predictive Case Intelligence: using machine learning to predict and automatically pre-fill all case metadata around an incoming customer service message. Improving accuracy and significantly reducing average handling time. Human+AI Question Answering: a deep learning algorithm trained on historical customer service logs suggests and automates answers to customer questions over email, live chat, social media, mobile messaging and SMS. DigitalGenius has built a scalable deep-learning product for the customer service industry, leveraging and creating cutting edge research, to transform the customer service function inside businesses. General :57: NLP chatbot Category : Personalization, DL, NLP Capital : $7.35M Seed : $4.1M SeriesA: SeriesB: Rounds: 4 rounds from 12 investors Monetize : chatbot Founder: Dmitry Aksenov Name : DigitalGenius 2013〜 HQ: London Employee: 51-100 Source : https://www.digitalgenius.com/ Features : • deep learning and artificial intelligence into customer service operations • Predictive Case Intelligence: using machine learning to predict and automatically pre-fill all case metadata • Customer Support: Q&A Market : Customer support
  • 77. 77 All of your users are different. Some are new, some will never buy, while others are always looking to purchase more. Retention Science built Artificial Intelligence (Cortex) to market to each person in a relevant way that coincides with where they are in their buying lifecycle. General :58: SaaS Category : Personalization, CRM, Marketing, Prediction Capital : $10.25M Seed : $2.5M SeriesA: $7M SeriesB: Rounds: 4 rounds from 10 investors Monetize : Providing CRM tools Founder: Jerry Jao Name : Retention Science 2011〜 HQ: Santa Monica Employee: 51-100 Source : https://www.retentionscience.com/# Features : • Target, engage and retain the customers. • The data driven, SaaS-based Retention Marketing platform predicts customer behavior and delivers targeted multi-channel communications Market : Sales
  • 79. 79 Cylance is a cybersecurity products and services company focusing on stopping tomorrow’s attacks today. Founded in 2012 by ex-McAfee Global CTO Stuart McClure and ex-McAfee Chief Scientist Ryan Permeh, Cylance was created to solve the malware problem once and for all. Their flagship product, CylancePROTECT®, is the world’s first nextgeneration antivirus built on artificial intelligence and machine Learning. Named the SC Magazine Award winner for “Best Emerging Technology” in 2015, CylancePROTECT offers exponentially improved prevention capabilities when compared to other endpoint security solutions. For a demo of CylancePROTECT, visit us at cylance.com General :59: ML for security Category : ML, Security Capital : $177M Seed : SeriesA: $15M SeriesB: $20M SeriesC: $42M SeriesD: $100M Rounds: 4 rounds from 14 investors Monetize : Providing service and consultant Founder: Stuart McClure Name : Cylance 2012〜 HQ: Irvin Employee: 501-1000 Source : https://www.cylance.com/en_us/home.html Features : • global provider of cybersecurity products • Prevent Cyberattacks with Artificial Intelligence • Many product, and many services Market : Cyber security
  • 80. 80 Sift Science provides real-time machine learning fraud prevention solutions for online businesses across the globe. Its machine learning software automatically learns and detects fraudulent behavioral patterns, alerting businesses before they or their customers are defrauded. Beyond this, the company has also launched a new set of products designed to detect and mitigate additional types of fraud and abuse, including: account abuse, content abuse, and promo abuse. General :60: ML for security Category : ML, Fraud detection, Security, Big data Capital : $53.6M Seed : $1.6M SeriesA: $4M SeriesB: $18M SeriesC: $30M Rounds: 4 rounds from 17 investors Monetize : $1000〜$10000 per a month Founder: Jason Tan Name : sift science 2011〜 HQ: San Francisco Employee: 51-100 Source : https://siftscience.com/ Features : • detect fraud and increase positive user experience. • machine learning platform designed to secure trust, reduce fraud, and grow the revenue. • Payment fraud, account takeover, content abuse, account abuse, promo abuse Market : Security
  • 81. 81 A global leader and highly awarded cognitive computing analytics company, SparkCognition is successfully deploying cutting-edge Machine Learning and AI algorithms to provide intelligence to uncover trends, anomalies, and cyber-physical threats while automatically investigating and proposing solutions in IoT and network environments. SparkCognition combines data from various sources, applies machine learning to build automated models, and uses them to develop deep insights into underlying performance, optimization, and security. The company’s technology is capable of harnessing real time infrastructure data and learning from it continuously, allowing for more accurate risk mitigation and prevention policies to intervene in and avert disasters. The company’s cybersecurity solutions analyze structured and unstructured data and natural language sources to identify potential failures or attacks in the IoT environment. The cognitive platform continuously learns from data and derives automated insights to thwart emerging issues. General :61: ML for security Category : Cyber security, ML, IoT Capital : $38.87M Seed : SeriesA: $370K SeriesB: $38M Rounds: 3 rounds from 5 investors Monetize : Providing 3 security services Founder: Amir Husain Name : sparkcognition 2013〜 HQ: Austin Employee: 11-50 Source : https://sparkcognition.com/ Features : • the world’s first Cognitive Security Analytics company. • Applying Machine Learning & AI to Cloud Security and the Internet of Things. Market : Security
  • 82. 82 Deep Instinct is the first company to apply deep learning to cybersecurity. Deep learning is inspired by the brain’s ability to learn. Once a brain learns to identify an object, its identification becomes second nature. Similarly, as Deep Instinct’s artificial brain learns to detect any type of cyber threat, its prediction capabilities become instinctive. As a result, zero-day and APT attacks are detected and prevented in real-time with unmatched accuracy. Deep Instinct brings a completely new approach to cybersecurity that is proactive and predictive. Deep Instinct provides comprehensive defense that is designed to protect against the most evasive unknown malware in real-time, across an organization’s endpoints, servers, and mobile devices. Deep learning’s capabilities of identifying malware from any data source results in comprehensive protection on any device, any platform, and operating system. General :62: DL for security Category : DL, Data Training, Prediction Capital : $32M↑ Seed : SeriesA: SeriesB: $32M Rounds: ??? Monetize : security solutions Founder: Guy Caspi Name : deepinstinct 2014〜 HQ: Israel Employee: ??? Source : https://www.deepinstinct.com/ Features : • offering unmatched zero-day attack protection. • By applying deep learning technology to cybersecurity, enterprises can gain unmatched protection against unknown and evasive cyber-attacks from any source. Market : Security
  • 83. 83 Shift Technology provides insurance companies with a SaaS solution designed to improve and scale fraud detection. The solution, which can be rapidly implemented in as little as four months, seamlessly integrates with the client’s existing operational processes and technical context. Their Data Scientist team creates tailored algorithms designed to reproduce an investigator’s deducting reasoning. Once the tool is fed with client claims, their customized solution aggregates and analyzes the data. The client can see results by logging into an easy-to-read/ customized dashboard highlighting the most suspicious cases. Each claim is tagged with the potential risk of fraud along clear insights on what makes the claim suspect. While there are many existing fraud detection tools that can provide the “where” and the “when” Shift helps the fraud handler determine the “why” and the “how” and can identify not only the policyholder, but also service providers and full networks of actors that could be part of the scam. General :63: ML for fraud Category : Insurance, Big Data Data Analysis Capital : $11.8 M Seed : $1.8M SeriesA: $10M SeriesB: Rounds: Monetize : fraud detection service Founder: Jeremy Jawish Name : shift technology 2013〜 HQ: Paris Employee: 11-50 Source : http://www.shift-technology.com/ Features : • provides insurance companies with a SaaS solution designed to improve and scale fraud detection. • automatically detect networks of fraudsters in insurance and e- commerce. Market : Insurance
  • 84. 84 Named ‘Best Security Company of the Year’ in the Info Security Products Guide 2016, Darktrace is one of the world’s leading cyber threat defense companies. Its Enterprise Immune System technology detects and responds to previously unidentified threats, powered by machine learning and mathematics developed by specialists from the University of Cambridge. Without using rules or signatures, Darktrace is uniquely capable of understanding the ‘pattern of life’ of every device, user and network within an organization, and defends against evolving threats that bypass all other systems. Some of the world’s largest corporations rely on Darktrace’s self-learning technology in sectors including energy and utilities, financial services, telecommunications, healthcare, manufacturing, retail and transportation. Darktrace is headquartered in Cambridge, UK and San Francisco, with offices in Auckland, Boston, Chicago, Dallas, London, Los Angeles, Milan, Mumbai, New York, Paris, Seoul, Singapore, Sydney, Tokyo, Toronto and Washington D.C. General :64: ML for security Category : ML, Cyber security Capital : $179.5M Seed : SeriesA: $18M SeriesB: $22.5M SeriesC: $64M SeriesD: $75M Rounds: 4 rounds from 8 investors Monetize : Founder: Nicole Eagan Name : DARKTRACE 2013〜 HQ: Cambridge Employee: 101-250 Source : https://www.darktrace.com/ Features : • Investor : SoftBank • self-learning platform to spot anomalous activity within the enterprise, in sectors including energy and utilities, financial services, telecommunications, retail and transportation. Market : cyber security
  • 86. 86 UBTECH is a high-tech enterprise engaging in the R&D, manufacturing and promotion of commercial and consumer robots around the world. The first company in China dedicated to commercializing humanoid robots, UBTECH invested in humanoid robots research in 2008, and, in 2012, established its headquarters in Shenzhen, China. UBTECH’s mission is to bring robots into every home, and truly integrate intelligent robots into the daily life of everyone, creating a more intelligent and human-friendly way of leisure life. UBTECH will do this with continuous investment in R&D to keep the core competence and a dedicated robotic hardware and software technology development with a top robotic engineering team. They also aim to have the most intellectual patents in the humanoid service robotic industry, including invention patents, industrial design patents, and practical patents. UBTECH will also maintain its own manufacturing center and supply chain. General :65: Robotics Category : Robotics, Consumer Electronics Capital : $120M Seed : SeriesA: $20M SeriesB: $100M Rounds: 2 rounds from 3 investors Monetize : Providing humanoid robot Founder: James Chow Name : UBTECH 2012〜 HQ: Shenzhen Employee: 501- Source : http://www.en.ubtrobot.com/ Features : • R&D, manufacturing and promotion of commercial and consumer robots • Humanoid robot Market : leisure
  • 87. 87 Anki has a dream to bring artificial intelligence and consumer robotics into everyday life. Anki’s cornerstone product is Anki Overdrive, based on technology that brings together video games and physical toys. Using a smartphone, the user can race a real toy car around Anki’s track, challenge friends, or play against other cars controlled by Anki’s AI. As in a video game, the cars adapt to their environment and surroundings, are fully customizable through the app, and improve their performance with usage. General :66: Robotics Category : ML, Robotics, Consumer electronics Capital : $157M Seed : SeriesB: $50M SeriesC: $55M Rounds: 4 rounds from 6 investors Monetize : consumer robots Founder: Boris Sofman Name : anki 2010〜 HQ: San Francisco Employee: 51-100 Source : https://www.anki.com/en-us Features : • Anki Overdrive, based on technology that brings together video games and physical toys. • Investors: JPMorgan, Andreessen Horowitz Market : leisure
  • 88. 88 Rokid features advanced artificial intelligence and deep learning that enrich life by proactively delivering information, providing entertainment, and performing household chores via voice and visual interactions. Rokid is not just another high tech gadget, but a resourceful family companion in smart homes. In addition to its sharp, modern design, it embodies a warm and unique personality, with intuitive conversational abilities and recognition of individual family members — making it beyond a robotic device. Rokid emphasizes premium quality in every facet of the build from software and hardware to industrial design and manufacturing. With their full-stack technologies, developed in-house, Rokid’s industry-leading performance is based on the company’s proprietary software and hardware designs. General :67: Robotics Category : Robotics, DL, Consumer device Capital : $50M↑ Seed : SeriesA: SeriesB: $50M Rounds: 2 rounds from 5 investors Monetize : B2C providing robots Founder: Mingming Zhu Name : Rokid 2014〜 HQ: Hangzhou Employee: 51-100 Source : https://www.rokid.com/ Features : • Smart home device • Modern design • Team: over 15 Ph.D.’s and more than 30 master’s holders. • artificial intelligence, robotics, software, and hardware from global brands including Alibaba, Samsung, Foxconn, Sony, Nokia, and Google. Market : Consumer device
  • 89. 89 Delivery is a huge and growing market - as it continues to grow autonomy becomes increasingly essential. Dispatch is making delivery smart by creating a platform for local delivery powered by a fleet of autonomous vehicles designed for sidewalks and pedestrian spaces. Dispatch’s first autonomous vehicle, nicknamed Carry, is designed to deliver. The vehicle is small enough to navigate sidewalks, but large enough to carry multiple packages. It operates in pedestrian areas and travels no faster than a brisk walking pace, blending smoothly with pedestrian traffic. Carry provides real time notifications throughout it’s journey. Upon arrival, users receive a code to unlock their compartment and grab their items. Then Carry is off to its next delivery General :68: Robotics Category : DL, Robotics, Autonomous Vehicle, Delivery Capital : $2M Seed : $2M SeriesA: SeriesB: Rounds: 3 rounds from 4 investors Monetize : delivering service Founder: Uriah Baalke Name : dispatch 2015〜 HQ: San Francisco Employee: 1-10 Source : http://dispatch.ai/ Features : • Delivery smart by creating a platform for local delivery powered by a fleet of autonomous vehicles. • robotics and artificial intelligence from MIT, UPenn, USC, UIUC, and UC • Berkeley. • Investor : Andreessen Horowitz Market : delivering
  • 91. 91 Cambridge, MA-based nuTonomy develops state-of-the-art software systems for self-driving vehicles. The company was founded by two world-renowned experts in robotics and intelligent vehicle technology, Drs. Karl Iagnemma and Emilio Frazzoli of MIT. The nuTonomy system will provide point-to-point mobility via large fleets of autonomous vehicles; this includes software for autonomous vehicle navigation in urban environments, smartphone-based ride hailing, fleet routing and management, and controlling a vehicle remotely through teleoperation. The company is currently conducting public trials of its autonomous ride-hailing service in Singapore, and will soon begin testing its self- driving vehicles on public roads in Boston. General :69: ML for self driving Category : Autonomous Vehicle, DL, ML Capital : $19.6M Seed : $3.6M SeriesA: $16M SeriesB: Rounds: 2 rounds from 5 investors Monetize : self driving software Founder: Karl Iagnemma Name : nuTonomy HQ: Cambridge Employee: 51-100 Source : http://www.nutonomy.com/ Features : • Focuse on inventing software for self-driving vehicles and autonomous mobile robots. • MIT spin off • A Scalable, Full-stack Software Solution for Automated Driving. Market : Vehicle
  • 92. 92 Drive.ai is a software company reimagining the fundamental relationship between people and transportation. Founded in 2015 with a team out of Stanford University’s Artificial Intelligence Lab, Drive.ai uses sophisticated deep learning algorithms for a full-stack solution – including perception and path planning, to control the vehicle – to power the next era of transportation. Drive.ai’s product offering will consist of a retrofitted self-driving kit for business fleets, with a long-term plan to have their software integrated into new vehicles. This will include sensors and a roof-mounted human-robot interaction outside the car, all powered by deep learning software algorithms. The company’s initial market approach will focus on proving the technology with route-based vehicle fleets, in industries such as package delivery, ridesharing, and public/private transit. Drive.ai is licensed to test autonomous vehicles in the state of California. General :70: ML for self driving Category : ML, DL, Autonomous Vehicle, Capital : $62M Seed : SeriesA: $12M SeriesB: $50M Rounds: 2 rounds from 7 investors Monetize : providing self-driving software Founder: Brody Huval Name : drive ai 2015〜 HQ: Mountain View Employee: 50-100 Source : https://www.drive.ai/ Features : • Stanford AI Lab • Partner : Lift Market : Vehicle
  • 93. 93 AImotive is a Budapest-based software company, developing a full-stack software suite for fully autonomous self-driving cars. Established on the idea that self-driving cars should mimic human behavior, AImotive’s algorithms rely on cameras as primary sensors for accomplishing the tasks of object recognition and classification, localization, decision making, trajectory planning and vehicle control. Development and operation processes follow the current automotive standards, providing a hardware-agnostic, yet scalable solution. The software engine components are aided by an extensive toolkit to accelerate the training and verification, including calibration, data collection and augmented data generation, semi-supervised annotation, and a real-time, photorealistic simulation environment. Addressing the growing need for hardware accelerators that are optimized specifically for artificial intelligence, AImotive designs a power efficient, high performance neural network hardware IP for automotive embedded solutions. The reference design helps chip companies build the optimal hardware to support the performance requirements of the AI-based software suite. General :71: ML for self driving Category : ML, DL, Autonomous vehicle Capital : $9.21 Seed : SeriesA: $2.5M SeriesB: €6M Rounds: 2 rounds from 7 investors Monetize : Providing self driving software Founder: Laszlo Kishonti Name : AIMOTIVE 2014〜 HQ: Budapest Employee: 51-100 Source : https://aimotive.com/ Features : • Hardware agnostic, full-stack software • Toolkit that trains and verifies the AI with real-time simulations • Power efficient, high-performance neural network hardware IP for automotive embedded solutions Market : Vehicle
  • 94. 94 NAUTO is a device, network and app that is an affordable way to upgrade cars to get network and safety features previously only available in high-end luxury cars. NAUTO’s system includes an in-vehicle device that collects and processes visual data in a smart and secure cloud, which then produces valuable insights to help drivers operate vehicles more efficiently, effectively and safely. General :72: ML for camera Category : ML, DL, Autonomous Vehicle, Camera Capital : $173.85M Seed : $2.85M SeriesA: $12M SeriesB: $159M Rounds: 4 rounds from 10 investors Monetize : Providing AI camera Founder: Stefan Heck Name : NAUTO 2015〜 HQ: Polo Alto Employee: 11-50 Source : https://www.nauto.com/ Features : • Investor: SoftBank, Plug and Play, Toyota AI • artificial intelligence-powered connected camera network and smart cloud system • real-time sensors and visual data help fleet managers detect and understand the cause of accidents and reduce false liability claims. Market : Car