DiscoverMachine Learning Street Talk (MLST)Patrick Lewis (Cohere) - Retrieval Augmented Generation
Patrick Lewis (Cohere) - Retrieval Augmented Generation

Patrick Lewis (Cohere) - Retrieval Augmented Generation

Update: 2024-09-16
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Description

Dr. Patrick Lewis, who coined the term RAG (Retrieval Augmented Generation) and now works at Cohere, discusses the evolution of language models, RAG systems, and challenges in AI evaluation.




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Key topics covered:


- Origins and evolution of Retrieval Augmented Generation (RAG)


- Challenges in evaluating RAG systems and language models


- Human-AI collaboration in research and knowledge work


- Word embeddings and the progression to modern language models


- Dense vs sparse retrieval methods in information retrieval




The discussion also explored broader implications and applications:


- Balancing faithfulness and fluency in RAG systems


- User interface design for AI-augmented research tools


- The journey from chemistry to AI research


- Challenges in enterprise search compared to web search


- The importance of data quality in training AI models




Patrick Lewis: https://www.patricklewis.io/




Cohere Command Models, check them out - they are amazing for RAG!


https://cohere.com/command




TOC


00:00:00 1. Intro to RAG


00:05:30 2. RAG Evaluation: Poll framework & model performance


00:12:55 3. Data Quality: Cleanliness vs scale in AI training


00:15:13 4. Human-AI Collaboration: Research agents & UI design


00:22:57 5. RAG Origins: Open-domain QA to generative models


00:30:18 6. RAG Challenges: Info retrieval, tool use, faithfulness


00:42:01 7. Dense vs Sparse Retrieval: Techniques & trade-offs


00:47:02 8. RAG Applications: Grounding, attribution, hallucination prevention


00:54:04 9. UI for RAG: Human-computer interaction & model optimization


00:59:01 10. Word Embeddings: Word2Vec, GloVe, and semantic spaces


01:06:43 11. Language Model Evolution: BERT, GPT, and beyond


01:11:38 12. AI & Human Cognition: Sequential processing & chain-of-thought




Refs:


1. Retrieval Augmented Generation (RAG) paper / Patrick Lewis et al. [00:27:45 ]


https://arxiv.org/abs/2005.11401


2. LAMA (LAnguage Model Analysis) probe / Petroni et al. [00:26:35 ]


https://arxiv.org/abs/1909.01066


3. KILT (Knowledge Intensive Language Tasks) benchmark / Petroni et al. [00:27:05 ]


https://arxiv.org/abs/2009.02252


4. Word2Vec algorithm / Tomas Mikolov et al. [01:00:25 ]


https://arxiv.org/abs/1301.3781


5. GloVe (Global Vectors for Word Representation) / Pennington et al. [01:04:35 ]


https://nlp.stanford.edu/projects/glove/


6. BERT (Bidirectional Encoder Representations from Transformers) / Devlin et al. [01:08:00 ]


https://arxiv.org/abs/1810.04805


7. 'The Language Game' book / Nick Chater and Morten H. Christiansen [01:11:40 ]


https://amzn.to/4grEUpG




Disclaimer: This is the sixth video from our Cohere partnership. We were not told what to say in the interview. Filmed in Seattle in June 2024.

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Patrick Lewis (Cohere) - Retrieval Augmented Generation

Patrick Lewis (Cohere) - Retrieval Augmented Generation

Machine Learning Street Talk (MLST)