Neural Search Talks — Zeta Alpha cover image

ColBERT + ColBERTv2: late interaction at a reasonable inference cost

Neural Search Talks — Zeta Alpha

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Optimizing Retrieval Systems for Efficient Document Ranking

The architecture of Colbert involves summing dot products or cosine similarities of fixed query lengths, utilizing contextualized embeddings rather than single vectors for retrieval effectiveness. The system can function as both a re-ranker and an end-to-end retrieval system. It employs retrieval and re-ranking steps, with retrieval finding candidates for each query term and re-ranking computing exact scores to order top candidates. The system works with sizes of k=1000, handling a considerable amount of documents for re-ranking. The main challenge lies in storage space rather than computation, with considerations for quantization and dimensionality reduction to reduce the space footprint significantly.

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