In recent years, generative AI has made significant advancements in language understanding and generation, leading to the development of chatbots like ChatGPT. These models have the potential to change the way people interact with technology. In this session, we will explore the advancements in generative AI. I will show how these models have evolved, their strengths and limitations, and their potential for improving various applications. Additionally, I will show some of the ethical considerations that arise from the use of these models and their impact on society.
3. GENERATIVE AI
⢠Marketing, Content, Chat
Bots
⢠Drug Design
⢠Material Science
⢠Chip Design
⢠Synthetic Data
⢠Personalized Therapy
⢠Explaining Complex
Algorithms
⢠âŚ
Supercomputing
efficiently
solves
extremely
complex or data
intensive
problems by
concentrating
the processing
power of
multiple,
parallel
computers.
3
4. AI
4
(artificial narrow intelligence)
self-driving cars, web search, smart
parking, prescriptive maintenance,
face recognition
AI
ANI AGI
(artificial general intelligence)
anything a human can do, ability to reason,
solve a puzzle, exhibit common sense,
consciousness
5. AI
5
(artificial narrow intelligence)
self-driving cars, web search, smart
parking, prescriptive maintenance,
face recognition
AI
ANI AGI
(artificial general intelligence)
anything a human can do, ability to reason,
solve a puzzle, exhibit common sense,
consciousness
ASI
(artificial superintelligence)
AI that surpasses human intelligence
7. Generative AI Models
7
Microsoft Corporation's co-founder Bill Gates praised OpenAI's AI-
powered chatbot called chatGPT and called it as significant as the
invention of the internet.
An artwork made by AI won first place at the Colorado State Fair's
fine arts competition, sparking controversy about whether AI-
generated art can be used to compete in competitions.
PARIS - Sciences Po, one of France's top universities, has banned
the use of ChatGPT, an artificial intelligence-based chatbot that can
generate coherent prose, to prevent fraud and plagiarism.
The AI Act is a proposed European law on artificial intelligence â the
first law on AI by a major regulator anywhere. The law assigns
applications of AI to three risk categories.
Ai Ethics: private companies, research institutions and public sector have
issued principles and guidelines for ethical AI. However, despite an apparent
agreement that AI should be âethicalâ, there is debate about what constitutes
âethical AIâ
⢠GPT-4
⢠DALL-E
⢠Whisper
⢠Bard
⢠Jasper
⢠Llama
⢠Palm
⢠Fliki
⢠âŚ
Pause Giant AI Experiments: An Open Letter
We call on all AI labs to immediately pause for at least 6 months the
training of AI systems more powerful than GPT-4.
11. Is this the Future?
11
Timeline of images generated by AI
12. Is this the Future?
12
Timeline of images generated by AI
13. This is the Future
13
Timeline of images generated by AI High-resolution image reconstruction with
latent diffusion models from human brain
activity
14. Important for all AI Conversations, Designs, and Models
HPE AI ETHICS PRINCIPLES
Privacy
Enabled
and Secure
Human
Focuse
d
Inclusiv
e
Responsib
le
Robust
TRUSTWORTHY AI
Transparency Trust Bias Robustness
Fundamental Pillars Addressing Key Technology Gaps in Todayâs Conventional AI
14
15. 15
Year 1800
6 hours
Year 1950
8 seconds
Year 2013
1/2 second
Year 2023
AI is a period of transformation
Intent of Slide: Explain why exascale era technologies are needed in digital transformation
Massive data growth felt by every organization, big and small is driving the need for larger and more detailed models and simulations and new ways to compute on that data with new algorithms such as AI and other data models that are used together with new algorithms that push the limits of loosely-coupled, scale out systems.
Taken together, this requirements are driving the need for infrastructure that increasingly relies on HPC and supercomputing technologies. We feel in time, that as digital transformation continues to take holdâall datacenters will require supercomputing technologies to support these new modeling, simulation, analytics, and AI workflows.
Intent of the slide: Illustrate HPE engagement with Zenseact for Highly Autonomous Driving
If thereâs an auto brand synonymous with driver safety, itâs Volvo. And if thereâs a new technology pushing the automobile into the vast unknown, itâs autonomous driving. At the center of that crossroads is Zenseactâa Volvo Cars-owned start-up that uses an HPE built consumption-based platform to deliver thousands of simulations per second and make cars safer.
The challenge of autonomous driving is one of the greatest facing the automotive industry today. To develop software that will safely and securely allow cars to drive autonomously, huge amounts of data needs to be collected and processed. Zenseact (formerly Zenuity), which is today wholly owned by the Swedish car maker, Volvo Cars Corporation (VCC) , has designed their platforms to deliver world-class performance in autonomous driving, while at all times meeting stringent real-world safety benchmarks.
HPE will provide the entire HPC/AI infrastructure and services to support the development of next generation autonomous driving features (L3), available on the market from 2023.
Press Release
https://www.hpe.com/psnow/doc/a50004350enw
For more information, please, contact aind_practice_nwe_geo@hpe.com
Pause Giant AI Experiments: An Open Letter
We call on all AI labs to immediately pause for at least 6 months the training of AI systems more powerful than GPT-4.
High-resolution image reconstruction with latent diffusion models from human brain activity
People had their brains scanned in an fMRI machine while viewing a target image. The scan data was then decoded and reconstructed with a diffusion model.
Intent of the slide: Expand Trustworthy AI (relative to all AI conversations)
Trustworthy AI is AI where accuracy, equity, sustainability, privacy, compliance, and confident are engineered in.
As more companies adopt AI, the importance of embedding key principles that enforces ethical and inclusive decisions in AI designs and models is critical. HPEâs ethical guidance for AI serves two critical needs:
Demonstrates with transparency how current technology can be applied with confidence
Illuminates where current technologies fall short and thatâs where we need to innovate.
At HPE, weâve crafted 5 principles to guide ethical AI across our products, processes and partnerships. These are guiding principles we will use during AI development, distribution or when weâre helping others create AI systems.
Privacy-enabled and secureâDesigned and used to respect individualâs privacy, be secure and minimize the risk of errors, unintended or malicious use.
Human focusedâRespect human rights and abide by law throughout their life cycle, designed and used with mechanisms and safeguards, such as capacity for human determination or oversight, to support responsible use and prevent misuse.
InclusiveâDesigned and used to be inclusive, minimizes harmful bias, ensures fair and equal treatment and access for individuals.
ResponsibleâDesigned to be used responsibly and mechanisms should be put in place to ensure accountability. AI systems should disclose information to allow a general understanding of the AI, including how AI can consume resources and influence outcomes. AI driven outcomes should be open to challenge.
RobustâSubject to a hazard-based safety engineering approach throughout their lifecycle to build in quality testing and technical safeguards to ensure appropriate function, minimize the risk of misuse, and impact of failure.
As we have applied these principles in practice, weâve uncovered gaps where conventional AI is not meeting our aim of Trustworthy AI. Closing these technology gaps will take engineering and ingenuity. If we are successful in applying these 5 principles and also addressing these shortfalls, the result is Trustworthy AI.
Bias: How can a model unveil hidden correlations in the training data that can cause discrimination:
Explainability: Ensuring humans can remain in the loop in AI-driven decisions, or how to explain if the system works even when it behaves unexpectedly
Trust: Trust rooted in confidence you can measure: Confidence in decisions, or how to increase userâs confidence and make users comfortable with measures of stability and model reliability
Robustness: How to understand model failures, detecting and preventing adversarial attacks
Intent of the slide: AI importance and its adoption
Artificial intelligence and machine learning (AI and ML) are no longer the new game in town. As the C-suite continues to focus on shifting technological needs, AI is one of their highest priorities.
98% of customers say theyâre already using AI in some capacity or conducting proof-of-concept or pilot programs.
Almost half of organizations put AI among their organizationâs top 2 initiatives and 2/3 of dedicated AI budgets will continue or increase over the next year.
While AI certainly has significant mindshare, the depth, sophistication, and level of understanding of AI varies widely across organizations.
It is important to start from Data. A comprehensive data strategy is the foundation for a fully developed AI Strategy.
A lack of trust in data impedes further adoption: 63% of orgs still in the early stages of AI/ML development are skeptical of the data they work with.
Quick and easy access to Data is key for the success of advanced AI implementations. Indeed, only the 18% of orgs still in the early stages of AI/ML development, find easy and quick the access to their Data.
The most AI advanced organizations are scaling AI into Production with specialized tools and expertise, combining them in MLOps frameworks.
This is still a minority as we found that 14% have fully realized their AI Strategy and 89% need help scaling AI in Production.
Intent of the slide: Key principles for AI, which will be covered in later slides in the deck
What do the winning brands know?
They all agree that data is the lifeforce thatâs essential for activating next-gen operating and business models for their business
For some, this is about delivering rich experience across billions of moments
For others, itâs about accelerating decision velocity to cut through organizational lethargy
And lastly, many are using data to see around the corner and to drive continuous innovation
They all agree that Artificial Intelligence success comes driving incremental business value
For some, this is about improving decision-making to reduce human error and move faster
For others, itâs uncover deeper insights improving quality and faster time to market
And lastly, many are using AI to deliver cost efficiency optimizing outcomes and productivity
They all agree that ML Ops is needed for bringing AI at Scale combining specialized software and expertise
For some, this is about integrate AI into existing IT to automate and collaborate better
For others, itâs a moving to Production pilots and standardize practices for optimization and efficiency benefits
And lastly, many are using ML Ops to overcome the last mile, operationalizing and generate business value