SlideShare ist ein Scribd-Unternehmen logo
1 von 26
AI,
Humanity &
Human Civilization
AI is bringing up
philosophical and
Ethical Questions
Philosophically Fundamental Questions
Can a machine act
intelligently? Can it
solve any problem that
a person would solve
by thinking?
01
Are human intelligence
and machine
intelligence the same?
Is the human
brain essentially a
computer?
02
Can a machine have
a mind, mental states,
and consciousness in
the same way that a
human being can? Can
it feel how things are?
03
AI
impact on
Humanity
AI is the next digital frontier
In 2016 Companies invested
In artificial Intelligence
Tech Giants Startups
AI Adopters - 20%
in multiple technology areas
AI Partial Adopters - 40%
skeptical about Business Cases and ROI
Laggards - 40%
contemplators
AI Adoption Story
Digitally
Mature
Large
Businesses
AI adoption in
Core Activities
Focus in
Growth over
Savings
C Level
Executives
support AI
EarlyAIAdopters
High Tech
Companies
Automotive &
Assembly
Financial
Services
MediumAIAdopters
Retail
Media &
Entertainment LaggardAIAdopters
Education
Travel &
Tourism
HealthCare
Four Areas where AI creates significant
Value
Smarter R&D
and
Forecasting
1
Optimized
Production and
Maintenance
2
Targeted Sales
and Marketing
3
Enhanced User
Experience
4
Machine Learning
&
Deep Learning
Two important
approaches in Artificial
Intelligence
AI, Machine Learning, Deep Learning…
ARTIFICIAL
INTELLIGENCE
Approaches
that help enable
machines to mimic
humans
intelligence
MACHINE
LEARNING
Specific Algorithms
that help machines
learns patterns from
data
DEEP
LEARNING
Algorithms based on artificial
neural networks that help machines
to learn patterns from data
The AI Landscape
Machine Learning
(Non Specific)
Computer
Vision
Natural
Languages
Autonomous
Vehicles
Virtual
Agents
Smart
Robotics
The AI Algorithms
Information
Theoretic
Algorithms
Neural
Networks
Probabilistic,
Evolutionary
Modelling
Algorithms
What
does AI help
us to do ?
Human Beings can write a lot of algorithms but some
algorithms are intrinsically difficult and hard..
• Write an algorithm that can looking at Medical Scans
identify diseases
• Write an algorithm to drive a Car
• Write an Algorithm that helps to identify the speakers
of different voice samples
• Write an Algorithm that determines the emotions
implicit in a piece of text
• Write an algorithm that recommends new products to
customers depending on what they have been
purchasing for the last few years.
And so on….these are hard problems to write algorithms
for, for even the “smartest Practioners of that Domain”
We want Machines to help us write these difficult programs
Enter Machine Learning!
Output
Input data Programmer writes a program
based on rules
Result is produced by the program
written by programmers
Input
Human Written
Algorithm
A model
Is discovered that allows
For Input  Output
Set of training data Inputs and
Outputs
A machine learning algorithm Output is an automatically learned
algorithm which is called as model
Prepared Input
Machine Learning
Algorithm
Expected Output
Traditional Programming Paradigm
Machine Learning Paradigm
Even preparing Inputs is hard …
Enter Deep Learning!!
Model / Program
Is discovered
Set of training data Inputs and
Outputs
A Deep learning algorithm Output is a automatically learned
program which is called as model
Raw Input
Deep
Learning Algorithm
Expected Output
Deep Learning Paradigm
Model / Program
Is discovered
A machine learning algorithm Output is a automatically learned
program which is called as model
Prepared Input
Machine Learning
Algorithm
Expected Output
Machine Learning Paradigm
How does it do that?
Mathematical
Modelling
Probability,
Statistics,
Linear Algebra
And Calculus
Computational
Programming
Computational
Libraries
Visualization
Libraries
Powerful
Platforms
GPU Hardware
Parallel/Multi
Processing
The Essential Idea
Problem
Representation
Model the
problem using
Mathematics
Transform
Representation
Transform the
representation
In mathematical
space
Iterative
Experimentation
Use fast
hardware to
Facilitate this
transformation
A simple example
Problem
Representation
Model a picture as a
vector of pixel values and
outcome as
0 if cat and 1 if dog
Transforming
Representation
Transform the input
representation and
optimally find the
parameters that give you
the best representation
Iterative
Experimentation
Try different approaches
and
Deploy the code/model
that satisfies the
expectations of the Client
Two important Problem Modelling
Problem
Representation Transforming
Representation
Iterative
Experimentation
Supervised
Modelling
Un-Supervised
Modelling
• Predictive Modelling (Classification
and Regression)
• Discover Groups in Data
• Reduce Complexity of Data
• Visualization of Data
• Anomaly Identification
Two different Approaches
Problem
Representation
Transforming
Representation
Iterative
Experimentation
Machine Learning
Algorithms
Deep Learning
Algorithms
• Multiple Algorithms
• Works with smaller Datasets
• Requires Feature Engineering
• Multiple Architectures
• Works with larger Datasets
• Requires no Domain Knowledge
What is happening behind the scenes
Input Data/Output
Labels
ML
Algorithm
Use the ML
Algorithm
Represents the Input and Output in
An appropriate Mathematical Space
Starts making informed guesses
Of the Output given the
Input
Calculate how far is the guess
from the actual outcome in that
Mathematical space
Adjusts its parameters/knobs
To minimize the distances
Between its guesses and
The actual output
What is the AI workflow?
Build
Model
Optimize
Model
Predict &
Deploy
Validation Data
Training Data
Test Data
Acquire Data
Images
Photographs, Scans, Graphic Art, Hand writing, Paintings
Time Series Data
Financial Data, Transactional Data, Sensor Data
Video
Surveillance Videos, Motion Picture Videos, Streaming
Video
Sound/Speech Recordings
Voice Samples, Conversations
Natural Language Text
Reports, SMS, Tweets, Web Content, Newspaper,
Books..
Structured data
Databases, CSV Data, JSON Data, Excel Data
Different forms of Data –Possible AI use cases exist..
‘Data-Specific’ Use Cases
Train a ML model with Disease Scan Images like X-Ray, MRI, ultrasound and make it diagnose diseases
Train a ML model to convert speech to Text
Train a ML model to convert evaluate Stock Movement and predict Stock price into the future
Train a ML model to monitor security surveillance cameras and alarm when there is a security breach
Train a ML model to understand the User preferences when they come shopping.
Train a ML model to understand the Research Reports and send you a summary of the important ones.
Some more ideas in AI
Anomaly Detection/Fraud Detection
Items, events or observations which do not conform to an expected pattern or other items in the dataset
Cluster Analysis
Find Natural groups in the Dataset based on certain attributes
Dimensionality Reduction
Reduce the complexity without compromising on information loss of the data
Visualization
Take Complex Data and make it humanly visual
The Sciences behind AI
Linear Algebra and
Matrix Mechanics
1
Statistical and
Probability Based
Modeling
2
Machine Learning
Algorithms
3
Neural Net
Architectures
4
The Scientific Method of
iterating - Hypothesis,
Experimentation and
Conclusion Building
5
The important technologies behind AI
Python
1
Tensor flow,
Theano,
pytorch
2
CUDA and GPUs
3

Weitere ähnliche Inhalte

Was ist angesagt?

ChatGPT Prompt Engineering
ChatGPT Prompt EngineeringChatGPT Prompt Engineering
ChatGPT Prompt EngineeringSupernova Media
 
Getting Started with ChatGPT.pdf
Getting Started with ChatGPT.pdfGetting Started with ChatGPT.pdf
Getting Started with ChatGPT.pdfManish Chopra
 
ChatGPT Deck.pptx
ChatGPT Deck.pptxChatGPT Deck.pptx
ChatGPT Deck.pptxomornahid1
 
Turing Test in Artificial Intelligence.pptx
Turing Test in Artificial Intelligence.pptxTuring Test in Artificial Intelligence.pptx
Turing Test in Artificial Intelligence.pptxRSAISHANKAR
 
Leveraging Generative AI & Best practices
Leveraging Generative AI & Best practicesLeveraging Generative AI & Best practices
Leveraging Generative AI & Best practicesDianaGray10
 
Generative AI Use-cases for Enterprise - First Session
Generative AI Use-cases for Enterprise - First SessionGenerative AI Use-cases for Enterprise - First Session
Generative AI Use-cases for Enterprise - First SessionGene Leybzon
 
Generative AI Risks & Concerns
Generative AI Risks & ConcernsGenerative AI Risks & Concerns
Generative AI Risks & ConcernsAjitesh Kumar
 
Generative Models and ChatGPT
Generative Models and ChatGPTGenerative Models and ChatGPT
Generative Models and ChatGPTLoic Merckel
 
AI and ChatGPT in Online Education
AI and ChatGPT in Online Education AI and ChatGPT in Online Education
AI and ChatGPT in Online Education D2L Barry
 
Solve for X with AI: a VC view of the Machine Learning & AI landscape
Solve for X with AI: a VC view of the Machine Learning & AI landscapeSolve for X with AI: a VC view of the Machine Learning & AI landscape
Solve for X with AI: a VC view of the Machine Learning & AI landscapeEd Fernandez
 
Generative AI: Redefining Creativity and Transforming Corporate Landscape
Generative AI: Redefining Creativity and Transforming Corporate LandscapeGenerative AI: Redefining Creativity and Transforming Corporate Landscape
Generative AI: Redefining Creativity and Transforming Corporate LandscapeOsaka University
 
Bard_Chat_GPT_Presentation_new.pptx
Bard_Chat_GPT_Presentation_new.pptxBard_Chat_GPT_Presentation_new.pptx
Bard_Chat_GPT_Presentation_new.pptxDR. Ram Kumar Pathak
 
Future of AI - 2023 07 25.pptx
Future of AI - 2023 07 25.pptxFuture of AI - 2023 07 25.pptx
Future of AI - 2023 07 25.pptxGreg Makowski
 
Generative AI Fundamentals - Databricks
Generative AI Fundamentals - DatabricksGenerative AI Fundamentals - Databricks
Generative AI Fundamentals - DatabricksVijayananda Mohire
 

Was ist angesagt? (20)

ENGLISH.chatgpt.pptx
ENGLISH.chatgpt.pptxENGLISH.chatgpt.pptx
ENGLISH.chatgpt.pptx
 
ChatGPT Prompt Engineering
ChatGPT Prompt EngineeringChatGPT Prompt Engineering
ChatGPT Prompt Engineering
 
Getting Started with ChatGPT.pdf
Getting Started with ChatGPT.pdfGetting Started with ChatGPT.pdf
Getting Started with ChatGPT.pdf
 
Content In The Age of AI
Content In The Age of AIContent In The Age of AI
Content In The Age of AI
 
ChatGPT Deck.pptx
ChatGPT Deck.pptxChatGPT Deck.pptx
ChatGPT Deck.pptx
 
Turing Test in Artificial Intelligence.pptx
Turing Test in Artificial Intelligence.pptxTuring Test in Artificial Intelligence.pptx
Turing Test in Artificial Intelligence.pptx
 
Leveraging Generative AI & Best practices
Leveraging Generative AI & Best practicesLeveraging Generative AI & Best practices
Leveraging Generative AI & Best practices
 
Generative AI Use-cases for Enterprise - First Session
Generative AI Use-cases for Enterprise - First SessionGenerative AI Use-cases for Enterprise - First Session
Generative AI Use-cases for Enterprise - First Session
 
Generative AI Risks & Concerns
Generative AI Risks & ConcernsGenerative AI Risks & Concerns
Generative AI Risks & Concerns
 
Generative AI
Generative AIGenerative AI
Generative AI
 
Generative Models and ChatGPT
Generative Models and ChatGPTGenerative Models and ChatGPT
Generative Models and ChatGPT
 
AI and ChatGPT in Online Education
AI and ChatGPT in Online Education AI and ChatGPT in Online Education
AI and ChatGPT in Online Education
 
Unlocking the Power of ChatGPT
Unlocking the Power of ChatGPTUnlocking the Power of ChatGPT
Unlocking the Power of ChatGPT
 
Uxpa design thinking workshop
Uxpa design thinking workshopUxpa design thinking workshop
Uxpa design thinking workshop
 
Solve for X with AI: a VC view of the Machine Learning & AI landscape
Solve for X with AI: a VC view of the Machine Learning & AI landscapeSolve for X with AI: a VC view of the Machine Learning & AI landscape
Solve for X with AI: a VC view of the Machine Learning & AI landscape
 
Generative AI: Redefining Creativity and Transforming Corporate Landscape
Generative AI: Redefining Creativity and Transforming Corporate LandscapeGenerative AI: Redefining Creativity and Transforming Corporate Landscape
Generative AI: Redefining Creativity and Transforming Corporate Landscape
 
DART
DARTDART
DART
 
Bard_Chat_GPT_Presentation_new.pptx
Bard_Chat_GPT_Presentation_new.pptxBard_Chat_GPT_Presentation_new.pptx
Bard_Chat_GPT_Presentation_new.pptx
 
Future of AI - 2023 07 25.pptx
Future of AI - 2023 07 25.pptxFuture of AI - 2023 07 25.pptx
Future of AI - 2023 07 25.pptx
 
Generative AI Fundamentals - Databricks
Generative AI Fundamentals - DatabricksGenerative AI Fundamentals - Databricks
Generative AI Fundamentals - Databricks
 

Ähnlich wie Demystifying AI

SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...NUS-ISS
 
Artificial intelligence Overview by Ramya Mopidevi
Artificial intelligence Overview by Ramya MopideviArtificial intelligence Overview by Ramya Mopidevi
Artificial intelligence Overview by Ramya MopideviRamya Mopidevi
 
AI for Customer Service: How to Improve Contact Center Efficiency with Machin...
AI for Customer Service: How to Improve Contact Center Efficiency with Machin...AI for Customer Service: How to Improve Contact Center Efficiency with Machin...
AI for Customer Service: How to Improve Contact Center Efficiency with Machin...Skyl.ai
 
PPT1: Introduction to Artificial Intelligence, AI Applications and Advantages...
PPT1: Introduction to Artificial Intelligence, AI Applications and Advantages...PPT1: Introduction to Artificial Intelligence, AI Applications and Advantages...
PPT1: Introduction to Artificial Intelligence, AI Applications and Advantages...akira-ai
 
AI for Customer Service - How to Improve Contact Center Efficiency with Machi...
AI for Customer Service - How to Improve Contact Center Efficiency with Machi...AI for Customer Service - How to Improve Contact Center Efficiency with Machi...
AI for Customer Service - How to Improve Contact Center Efficiency with Machi...Skyl.ai
 
Leveraging AI to Predict Demand and Drive Just-in-Time Operations
Leveraging AI to Predict Demand and Drive Just-in-Time OperationsLeveraging AI to Predict Demand and Drive Just-in-Time Operations
Leveraging AI to Predict Demand and Drive Just-in-Time OperationsNational Retail Federation
 
The future of artificial intelligence in the workplace
The future of artificial intelligence in the workplaceThe future of artificial intelligence in the workplace
The future of artificial intelligence in the workplaceONPASSIVE
 
IBM i & Data Science in the AI era.
IBM i & Data Science in the AI era.  IBM i & Data Science in the AI era.
IBM i & Data Science in the AI era. Benoit Marolleau
 
Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017
Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017
Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017StampedeCon
 
unleshing the the Power Azure Open AI - MCT Summit middle east 2024 Riyhad.pptx
unleshing the the Power Azure Open AI - MCT Summit middle east 2024 Riyhad.pptxunleshing the the Power Azure Open AI - MCT Summit middle east 2024 Riyhad.pptx
unleshing the the Power Azure Open AI - MCT Summit middle east 2024 Riyhad.pptxUsama Wahab Khan Cloud, Data and AI
 
What is artificial intelligence (IA) ?
What is artificial intelligence (IA) ?What is artificial intelligence (IA) ?
What is artificial intelligence (IA) ?Oussama Belakhdar
 
Simplifying ai: What to use when?
Simplifying ai: What to use when?Simplifying ai: What to use when?
Simplifying ai: What to use when?Tannistho Ghosh
 
Advances in ML learning process require. ppt.pptx
Advances in ML learning process require. ppt.pptxAdvances in ML learning process require. ppt.pptx
Advances in ML learning process require. ppt.pptxAnkitaVerma776806
 
A Practical Guide to AI and Automation
A Practical Guide to AI and AutomationA Practical Guide to AI and Automation
A Practical Guide to AI and AutomationAccelirate Inc.
 
Webinar - AI Powered Recommendation Engine for Businesses
Webinar - AI Powered Recommendation Engine for BusinessesWebinar - AI Powered Recommendation Engine for Businesses
Webinar - AI Powered Recommendation Engine for BusinessesJK Tech
 

Ähnlich wie Demystifying AI (20)

SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
 
AI BI and ML.pdf
AI BI and ML.pdfAI BI and ML.pdf
AI BI and ML.pdf
 
Artificial intelligence Overview by Ramya Mopidevi
Artificial intelligence Overview by Ramya MopideviArtificial intelligence Overview by Ramya Mopidevi
Artificial intelligence Overview by Ramya Mopidevi
 
AI for Customer Service: How to Improve Contact Center Efficiency with Machin...
AI for Customer Service: How to Improve Contact Center Efficiency with Machin...AI for Customer Service: How to Improve Contact Center Efficiency with Machin...
AI for Customer Service: How to Improve Contact Center Efficiency with Machin...
 
PPT1: Introduction to Artificial Intelligence, AI Applications and Advantages...
PPT1: Introduction to Artificial Intelligence, AI Applications and Advantages...PPT1: Introduction to Artificial Intelligence, AI Applications and Advantages...
PPT1: Introduction to Artificial Intelligence, AI Applications and Advantages...
 
AI for Customer Service - How to Improve Contact Center Efficiency with Machi...
AI for Customer Service - How to Improve Contact Center Efficiency with Machi...AI for Customer Service - How to Improve Contact Center Efficiency with Machi...
AI for Customer Service - How to Improve Contact Center Efficiency with Machi...
 
Leveraging AI to Predict Demand and Drive Just-in-Time Operations
Leveraging AI to Predict Demand and Drive Just-in-Time OperationsLeveraging AI to Predict Demand and Drive Just-in-Time Operations
Leveraging AI to Predict Demand and Drive Just-in-Time Operations
 
The future of artificial intelligence in the workplace
The future of artificial intelligence in the workplaceThe future of artificial intelligence in the workplace
The future of artificial intelligence in the workplace
 
IBM i & Data Science in the AI era.
IBM i & Data Science in the AI era.  IBM i & Data Science in the AI era.
IBM i & Data Science in the AI era.
 
Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017
Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017
Automated AI The Next Frontier in Analytics - StampedeCon AI Summit 2017
 
unleshing the the Power Azure Open AI - MCT Summit middle east 2024 Riyhad.pptx
unleshing the the Power Azure Open AI - MCT Summit middle east 2024 Riyhad.pptxunleshing the the Power Azure Open AI - MCT Summit middle east 2024 Riyhad.pptx
unleshing the the Power Azure Open AI - MCT Summit middle east 2024 Riyhad.pptx
 
Ai 13 oct-18
Ai 13 oct-18Ai 13 oct-18
Ai 13 oct-18
 
What is artificial intelligence (IA) ?
What is artificial intelligence (IA) ?What is artificial intelligence (IA) ?
What is artificial intelligence (IA) ?
 
Simplifying ai: What to use when?
Simplifying ai: What to use when?Simplifying ai: What to use when?
Simplifying ai: What to use when?
 
Advances in ML learning process require. ppt.pptx
Advances in ML learning process require. ppt.pptxAdvances in ML learning process require. ppt.pptx
Advances in ML learning process require. ppt.pptx
 
Advances in ML. ppt.pptx
Advances in ML. ppt.pptxAdvances in ML. ppt.pptx
Advances in ML. ppt.pptx
 
Atharva latest
Atharva latestAtharva latest
Atharva latest
 
Demystifying AI | A Comprehensive Guide
Demystifying AI | A Comprehensive Guide	Demystifying AI | A Comprehensive Guide
Demystifying AI | A Comprehensive Guide
 
A Practical Guide to AI and Automation
A Practical Guide to AI and AutomationA Practical Guide to AI and Automation
A Practical Guide to AI and Automation
 
Webinar - AI Powered Recommendation Engine for Businesses
Webinar - AI Powered Recommendation Engine for BusinessesWebinar - AI Powered Recommendation Engine for Businesses
Webinar - AI Powered Recommendation Engine for Businesses
 

Kürzlich hochgeladen

Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...Seán Kennedy
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdfHuman37
 
Call Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceCall Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceSapana Sha
 
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...Amil Baba Dawood bangali
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfgstagge
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDRafezzaman
 
GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]📊 Markus Baersch
 
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档208367051
 
How we prevented account sharing with MFA
How we prevented account sharing with MFAHow we prevented account sharing with MFA
How we prevented account sharing with MFAAndrei Kaleshka
 
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...Florian Roscheck
 
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)jennyeacort
 
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSINGmarianagonzalez07
 
Learn How Data Science Changes Our World
Learn How Data Science Changes Our WorldLearn How Data Science Changes Our World
Learn How Data Science Changes Our WorldEduminds Learning
 
Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 217djon017
 
Heart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectHeart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectBoston Institute of Analytics
 
Multiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdfMultiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdfchwongval
 
Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Cathrine Wilhelmsen
 
Identifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanIdentifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanMYRABACSAFRA2
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsVICTOR MAESTRE RAMIREZ
 
RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.natarajan8993
 

Kürzlich hochgeladen (20)

Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf
 
Call Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceCall Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts Service
 
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdf
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
 
GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]
 
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
 
How we prevented account sharing with MFA
How we prevented account sharing with MFAHow we prevented account sharing with MFA
How we prevented account sharing with MFA
 
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
 
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
 
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
 
Learn How Data Science Changes Our World
Learn How Data Science Changes Our WorldLearn How Data Science Changes Our World
Learn How Data Science Changes Our World
 
Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2
 
Heart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectHeart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis Project
 
Multiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdfMultiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdf
 
Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)
 
Identifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanIdentifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population Mean
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business Professionals
 
RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.
 

Demystifying AI

  • 1. AI, Humanity & Human Civilization AI is bringing up philosophical and Ethical Questions
  • 2. Philosophically Fundamental Questions Can a machine act intelligently? Can it solve any problem that a person would solve by thinking? 01 Are human intelligence and machine intelligence the same? Is the human brain essentially a computer? 02 Can a machine have a mind, mental states, and consciousness in the same way that a human being can? Can it feel how things are? 03
  • 4.
  • 5. AI is the next digital frontier In 2016 Companies invested In artificial Intelligence Tech Giants Startups AI Adopters - 20% in multiple technology areas AI Partial Adopters - 40% skeptical about Business Cases and ROI Laggards - 40% contemplators
  • 6. AI Adoption Story Digitally Mature Large Businesses AI adoption in Core Activities Focus in Growth over Savings C Level Executives support AI EarlyAIAdopters High Tech Companies Automotive & Assembly Financial Services MediumAIAdopters Retail Media & Entertainment LaggardAIAdopters Education Travel & Tourism HealthCare
  • 7. Four Areas where AI creates significant Value Smarter R&D and Forecasting 1 Optimized Production and Maintenance 2 Targeted Sales and Marketing 3 Enhanced User Experience 4
  • 8. Machine Learning & Deep Learning Two important approaches in Artificial Intelligence
  • 9. AI, Machine Learning, Deep Learning… ARTIFICIAL INTELLIGENCE Approaches that help enable machines to mimic humans intelligence MACHINE LEARNING Specific Algorithms that help machines learns patterns from data DEEP LEARNING Algorithms based on artificial neural networks that help machines to learn patterns from data
  • 10. The AI Landscape Machine Learning (Non Specific) Computer Vision Natural Languages Autonomous Vehicles Virtual Agents Smart Robotics
  • 12. What does AI help us to do ? Human Beings can write a lot of algorithms but some algorithms are intrinsically difficult and hard.. • Write an algorithm that can looking at Medical Scans identify diseases • Write an algorithm to drive a Car • Write an Algorithm that helps to identify the speakers of different voice samples • Write an Algorithm that determines the emotions implicit in a piece of text • Write an algorithm that recommends new products to customers depending on what they have been purchasing for the last few years. And so on….these are hard problems to write algorithms for, for even the “smartest Practioners of that Domain”
  • 13. We want Machines to help us write these difficult programs Enter Machine Learning! Output Input data Programmer writes a program based on rules Result is produced by the program written by programmers Input Human Written Algorithm A model Is discovered that allows For Input  Output Set of training data Inputs and Outputs A machine learning algorithm Output is an automatically learned algorithm which is called as model Prepared Input Machine Learning Algorithm Expected Output Traditional Programming Paradigm Machine Learning Paradigm
  • 14. Even preparing Inputs is hard … Enter Deep Learning!! Model / Program Is discovered Set of training data Inputs and Outputs A Deep learning algorithm Output is a automatically learned program which is called as model Raw Input Deep Learning Algorithm Expected Output Deep Learning Paradigm Model / Program Is discovered A machine learning algorithm Output is a automatically learned program which is called as model Prepared Input Machine Learning Algorithm Expected Output Machine Learning Paradigm
  • 15. How does it do that? Mathematical Modelling Probability, Statistics, Linear Algebra And Calculus Computational Programming Computational Libraries Visualization Libraries Powerful Platforms GPU Hardware Parallel/Multi Processing
  • 16. The Essential Idea Problem Representation Model the problem using Mathematics Transform Representation Transform the representation In mathematical space Iterative Experimentation Use fast hardware to Facilitate this transformation
  • 17. A simple example Problem Representation Model a picture as a vector of pixel values and outcome as 0 if cat and 1 if dog Transforming Representation Transform the input representation and optimally find the parameters that give you the best representation Iterative Experimentation Try different approaches and Deploy the code/model that satisfies the expectations of the Client
  • 18. Two important Problem Modelling Problem Representation Transforming Representation Iterative Experimentation Supervised Modelling Un-Supervised Modelling • Predictive Modelling (Classification and Regression) • Discover Groups in Data • Reduce Complexity of Data • Visualization of Data • Anomaly Identification
  • 19. Two different Approaches Problem Representation Transforming Representation Iterative Experimentation Machine Learning Algorithms Deep Learning Algorithms • Multiple Algorithms • Works with smaller Datasets • Requires Feature Engineering • Multiple Architectures • Works with larger Datasets • Requires no Domain Knowledge
  • 20. What is happening behind the scenes Input Data/Output Labels ML Algorithm Use the ML Algorithm Represents the Input and Output in An appropriate Mathematical Space Starts making informed guesses Of the Output given the Input Calculate how far is the guess from the actual outcome in that Mathematical space Adjusts its parameters/knobs To minimize the distances Between its guesses and The actual output
  • 21. What is the AI workflow? Build Model Optimize Model Predict & Deploy Validation Data Training Data Test Data Acquire Data
  • 22. Images Photographs, Scans, Graphic Art, Hand writing, Paintings Time Series Data Financial Data, Transactional Data, Sensor Data Video Surveillance Videos, Motion Picture Videos, Streaming Video Sound/Speech Recordings Voice Samples, Conversations Natural Language Text Reports, SMS, Tweets, Web Content, Newspaper, Books.. Structured data Databases, CSV Data, JSON Data, Excel Data Different forms of Data –Possible AI use cases exist..
  • 23. ‘Data-Specific’ Use Cases Train a ML model with Disease Scan Images like X-Ray, MRI, ultrasound and make it diagnose diseases Train a ML model to convert speech to Text Train a ML model to convert evaluate Stock Movement and predict Stock price into the future Train a ML model to monitor security surveillance cameras and alarm when there is a security breach Train a ML model to understand the User preferences when they come shopping. Train a ML model to understand the Research Reports and send you a summary of the important ones.
  • 24. Some more ideas in AI Anomaly Detection/Fraud Detection Items, events or observations which do not conform to an expected pattern or other items in the dataset Cluster Analysis Find Natural groups in the Dataset based on certain attributes Dimensionality Reduction Reduce the complexity without compromising on information loss of the data Visualization Take Complex Data and make it humanly visual
  • 25. The Sciences behind AI Linear Algebra and Matrix Mechanics 1 Statistical and Probability Based Modeling 2 Machine Learning Algorithms 3 Neural Net Architectures 4 The Scientific Method of iterating - Hypothesis, Experimentation and Conclusion Building 5
  • 26. The important technologies behind AI Python 1 Tensor flow, Theano, pytorch 2 CUDA and GPUs 3