Vespa Vector Database Setup and Indexing

implementationChallenge

Prompt Content

Configure and deploy a Vespa instance using Docker. Define a schema that can store your drug candidate embeddings along with relevant metadata. Develop a script to ingest the embeddings generated by your multimodal model into the Vespa database, ensuring efficient indexing for similarity search. Document your Vespa schema and deployment process.

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