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Classification using vector embeddings #96

@finnless

Description

@finnless

High Level approach: Module that creates sentence embeddings for every book. This could enable semantic search, clustering, recommendations, anomaly detection, diversity measurement, classification using distance function and could be first step to a “talk to books” or “talk to library” feature.

Disadvantage: Distance functions operate in the high-dimensional space of embeddings and can be computationally expensive, especially for large-scale book datasets.

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