giusedroid / serverless-embeddings-lancedb-bedrockLinks
This is an example of serverless document ingestion pipeline that automates the calculation of embeddings, so that they can be used in the context of a Retrieval Augmented Generation application. This sample makes use of Amazon Bedrock to provide access to Amazon Titan Embedding model and LanceDB
☆38Updated last year
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