Virtual Summit 2023

Generative AI Meets Responsible AI

Watch our sessions from industry practitioners and data science, machine learning, and policy leaders as they examine the intersection of generative AI and responsible AI.
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The New Era of AI

From GPT-4 to Stable Diffusion, Generative AI is pioneering the new era of AI, enabling exciting new possibilities for creativity and exploration while pushing the boundaries of what's possible.

Generative AI based models and applications are being rapidly adopted across industries due to their powerful capabilities and wide ranging scope. Responsible AI practices are needed to ensure that models are unbiased, trustworthy, and work as intended even after deployment. Sessions will range from industry challenges for implementing generative AI models to the ethical choices and implications these applications have.

Watch the sessions to learn:

1
How Generative AI is applied across various industries
2
Engineering challenges and solutions for using Generative AI
3
Ethical issues around Generative AI and the implementation of responsible AI practices

Watch On-Demand Sessions

Virtual summit presentation by Krishna Gade, CEO and Founder of Fiddler AI, titled 'Making Generative AI Responsible.'
Opening Remarks
Making Generative AI Responsible

Generative AI is pioneering a new era of innovation and possibilities. But in order to ensure it's used ethically, fairly, and safely, organizations must apply responsible AI principles.

Watch Fiddler Founder Krishna Gade’s opening remarks to hear how AI teams can meet this challenge.

Krishna Gade – CEO and Co-founder, Fiddler AI
Panel discussion at the Generative AI Meets Responsible AI virtual summit titled 'Innovating with Generative AI,' featuring Heather Wishart-Smith from Forbes, Payel Das from IBM Research, Srinath Sridhar from Regie AI, and Casey Corvino from Lavender AI.
Panel Discussion
Innovating with Generative AI

Generative AI is being used to innovate and improve processes across industries, from drug discovery to work automation.

Watch this panel session on Innovating with Generative AI to learn how:

  • Engineering teams enhance their productivity using generative AI
  • IBM is leveraging generative AI models to advance medical innovation
  • Generative AI is driving innovation across domains
Panelists
Srinath Sridhar – CEO and Co-founder, Regie.ai
Payel Das – Principal Research Staff Member and Manager, Trusted AI, IBM Research
Casey Corvino – CTO and Co-founder, Lavender AI
Moderator
Heather Wishart-Smith – Board Member, Advisor, and Forbes Contributor
Virtual summit session by George Mathew from Insight Partners titled 'Explainability in the Age of Generative AI.'
Explainability in the Age of Generative AI

AI has advanced rapidly over the past decade and is only accelerating in its evolution. George Mathew, Managing Director, Insight Partners, discusses the progress we’ve made and where we’re heading.

Watch this session on Explainability in the Age of Generative AI to learn:

  • How generative AI has opened up new modalities of human and machine interaction
  • Examples of generative AI advancements and milestones
  • Challenges society will face as AI usages spreads and improves
George Mathew – Managing Director, Insight Partners
Panel discussion at the Generative AI Meets Responsible AI virtual summit titled 'Best Practices for Responsible AI,' featuring Krishnaram Kenthapadi, Miriam Vogel from EqualAI, Ricardo Baeza-Yates, and Toni Morgan from TikTok.
Panel Discussion
Best Practices for Responsible AI

Responsible AI principles and practices are necessary to ensure fair, ethical, and safe usage.

Watch this panel session on Best Practices for Responsible AI to learn:

  • Limitations of large language models
  • The importance of model governance
  • Key pieces for building out a Responsible AI framework
Panelists
Miriam Vogel – President and CEO, EqualAI; Chair, National AI Advisory Committee
Ricardo Baeza- Yates – Director of Research, Institute for Experiential AI Northeastern University
Toni Morgan – Responsible Innovation Manager, TikTok
Moderator
Krishnaram Kenthapadi – Chief AI Officer and Scientist, Fiddler AI
Virtual summit session by Saad Ansari from Jasper AI titled 'Thinking of AI as a Public Service.'
Thinking of AI as a Public Service

Despite the fear and uncertainty around AI, it can be used as a tool for widespread good and societal benefit. Saad Ansari, Director of AI at Jasper AI, dives into this potential future.

Watch this session on Thinking of AI as a Public Service to learn:

  • The importance of intentionality when designing new technology
  • Applications for generative AI across different domains
  • How the future of AI can be directed to societal benefit
Saad Ansari – Director of AI, Jasper AI
Panel discussion at the Generative AI Meets Responsible AI virtual summit titled 'LLMOps: Operationalizing Large Language Models,' featuring Krishna Gade from Fiddler AI, Amit Prakash from ThoughtSpot, Diego Oppenheimer from Factory, and Roie Schwaber-Cohen from Pinecone.
Panel Discussion
LLMOps: Operationalizing Large Language Models

While generative AI offers huge upside for enterprises, many blockers remain before it’s used by a broad range of industries. LLMOps is the new ML workflow to accelerate adoption and productize generative AI.

Watch this panel session on LLMOps - Operationalizing Large Language Models to learn:

  • How LLMOps iterates on MLOps to optimize for large language models
  • The key pieces of a generative AI workflow
  • How ML teams can approach leveraging LLMs in their applications
Panelists
Amit Prakash – CTO and Co-founder, ThoughtSpot
Diego Oppenheimer – Partner and CEO in Residence, Factory
Roie Schwaber-Cohen – Staff Developer Advocate, Pinecone
Moderator
Krishna Gade – CEO and Co-founder, Fiddler AI
Virtual summit session by Ali Arsanjani, Ph.D from Google titled 'Enterprise Generative AI - Promises vs Compromises.'
Enterprise Generative AI - Promises vs Compromises

Enterprise generative AI needs to be reproducible, scalable, and responsible, while minimizing risks. Ali Arsanjani, PhD, Head of the AI Center of Excellence at Google, explains why this requires an augmentation of the ML lifecycle.

Watch this session on Enterprise Generative AI - Promises vs Compromises to learn:

  • The importance of explainability and adaptability for enterprise generative AI
  • How to minimize risks to safety, misuse, and model robustness
  • Key elements of the generative AI lifecycle
Ali Arsanjani, P.h.D – Director, Cloud Partner Engineering, Head of AI Center of Excellence, Google
Virtual summit demo session titled 'Monitoring OpenAI Embeddings' presented by Danny Brock and Bashir Rastegarpanah from Fiddler AI.
Demo: Monitoring OpenAI Embeddings

ML teams need to evolve their MLOps framework to support LLMs and make sure they're optimized to power generative AI applications. 

Watch this session on Monitoring OpenAI Embeddings to learn:

  • Why unstructured models are complex and difficult to monitor
  • How to monitor OpenAI embeddings using Fiddler’s vector monitoring, based on a patent-pending cluster-based algorithm
  • How to track for changes in high-dimensional vectors over time, especially in situations without ground-truth labels 
Danny Brock – Director of Solutions Engineering, Fiddler AI
Bashir Rastegarpanah – Data Scientist, Fiddler AI

Additional Reading

Thinking of AI as a Public Service

Best Practices for Responsible AI

LLMOps: Operationalizing Large Language Models

Top 5 Questions on Responsible AI from our Summit

Enterprise Generative AI - Promises vs Compromises

Innovating with Generative AI

The Missing Link in Generative AI

GPT-4 and the Next Frontier of Generative AI

LLMOps: The Future of MLOps for Generative AI

Not all Rainbows and Sunshine: the Darker Side of ChatGPT

Responsible AI by Design

Thinking of AI as a Public Service

AI is often viewed through a binary positive or negative lens. Saad Ansari, Director of AI at Jasper AI, offers a novel view on AI as a public service.

Best Practices for Responsible AI

Our panel of responsible AI experts outlined steps to implement responsible AI, including best practices for managing AI risk and ensuring accountability.

LLMOps: Operationalizing Large Language Models

Operationalizing large language models (LLMs) requires a different set of tooling and workflows than traditional ML. Check out the top 4 takeaways for LLMOps.

Top 5 Questions on Responsible AI from our Summit

Read the top responsible AI and ML model bias questions asked by our Generative AI Meets Responsible AI summit attendees, including responses from industry experts.

Top 5 Questions on LLMOps from our Generative AI Meets Responsible AI Summit

Read the top LLMOps questions asked by our Generative AI Meets Responsible AI Summit attendees and responses from our experts at Thoughtspot, Jasper AI, and Google.

Enterprise Generative AI - Promises vs Compromises

Enterprise usage of generative AI continues to advance rapidly. But before reaching their promise, LLMs must address concerns around explainability and security.

Innovating with Generative AI

Numerous industries are innovating with generative AI for enterprise and scientific use cases. Yet technical challenges remain before widespread adoption.

The Missing Link in Generative AI

Model monitoring, explainability, and bias detection are the missing link in the generative AI stack to deploy generative AI at scale.

GPT-4 and the Next Frontier of Generative AI

GPT-4 marks a new era from model-centric to data-centric AI. This shift brings a unique set of challenges across trust, interpretability, security and privacy.

LLMOps: The Future of MLOps for Generative AI

Operationalizing Generative AI at scale depends on reducing model training, selection, and deployment costs, while ensuring AI fairness. Introducing LLMops.

Not all Rainbows and Sunshine: the Darker Side of ChatGPT

ChaptGPT is a viral chatbot that is used for NLP tasks. This is an overview of the risks and ethical issues associated with ChatGPT and large language models.

Responsible AI by Design

Machine learning teams must create responsible AI by design to avoid potentially catastrophic damage, ensure fairness, and comply with upcoming AI regulations.