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#22 Nils Reimers on the Limits of Embeddings, Out-of-Domain Data, Long Context, Finetuning (and How We're Fixing It) | Search

How AI Is Built

CHAPTER

Navigating the Challenges of Embedding Models

This chapter examines the complexities of fine-tuning embedding datasets for clustering and classification, highlighting the limitations of current models in handling out-of-domain data. It emphasizes the importance of continuous adaptation and introduces innovative fine-tuning methodologies, including generative queries, to improve model understanding. The discussion also touches on the challenges faced with long documents and the need for efficient re-ranking strategies to enhance search relevance in machine learning systems.

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