Contextual Embeddings, Retrieval
Edo emphasizes the limitations of context windows in processing vast amounts of data efficiently. Patrick discusses the potential for varied retrieval methods tailored to different industries. The conversation delves into the challenges of using context engines effectively for optimal cost and performance.In this clip
From this podcast

Unsupervised Learning
Ep 32: CEO and Founder of Pinecone Edo Liberty on Pioneering Vector Databases, Barriers to Productionalizing Models and Why What’s Happening with GPUs is Not Sustainable
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