
The evolution and promise of RAG architecture with Tengyu Ma from Voyage AI
No Priors: Artificial Intelligence | Technology | Startups
Efficiency and Iterative Retrieval in Agent Training with Large Language Models
Efficiency in agent chaining and RAG's motivation align due to the use of a smaller language model for managing the system to maintain efficiency. In agent training, using an embedding model could be beneficial. Iterative retrieval is valuable due to limitations in embedding model performance, requiring multiple retrieval rounds. However, as embedding models improve, iterative retrieval may become less necessary in the long run.
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