Presentations: Difference between revisions
No edit summary |
No edit summary Tag: Manual revert |
||
(7 intermediate revisions by the same user not shown) | |||
Line 1: | Line 1: | ||
{{#ask:[[Category:Presentations]] | {{#ask:[[Category:Presentations]] | ||
|? = Presentation | |? = Presentation | ||
Line 6: | Line 5: | ||
|?Organization | |?Organization | ||
|?Presenter | |?Presenter | ||
|?Description | |?Description#- | ||
|limit=10000 | |limit=10000 | ||
|headers=plain | |headers=plain | ||
|sort=Date | |||
|order=asc | |||
}} | }} |
Latest revision as of 21:47, 5 December 2023
Presentation | Date | Event | Organization | Presenter | Description |
---|---|---|---|---|---|
The New Stack and Ops for AI (OpenAI Dev Day 2023) | 2023 November 14 JL | OpenAI Dev Day 2023 | OpenAI | Shyamal Hitesh Anadkat Sherwin Wu | A new framework to navigate the unique considerations for scaling non-deterministic apps from prototype to production. |
A Survey of Techniques for Maximizing LLM Performance (OpenAI Dev Day 2023) | 2023 November 14 JL | OpenAI Dev Day 2023 | OpenAI | John Allard Colin Jarvis | Join us for a comprehensive survey of techniques designed to unlock the full potential of Language Model Models (LLMs). Explore strategies such as fine-tuning, RAG (Retrieval-Augmented Generation), and prompt engineering to maximize LLM performance. |
Andrew Ng: Opportunities in AI - 2023 (Stanford) | 2023 July 26 JL | Stanford Graduate School of Business | Stanford | Andrew Ng | Dr. Andrew Ng explores AI's broad potential and ethical considerations, emphasizing its impact on various sectors and the importance of responsible development for future innovations. |