|
|
|
|
|
by pamelafox
234 days ago
|
|
Yes, AI Search has a new agentic retrieval feature that includes synthetic query generation: https://techcommunity.microsoft.com/blog/azure-ai-foundry-bl...
You can customize the model used and the max # of queries to generate, so latency depends on those factors, plus the length of the conversation history passed in. The model is usually gpt-4o or gpt-4.1 or the -mini of those, so it's the standard latency for those.
A more recent version of that feature also uses the LLM to dynamically decide which of several indices to query, and executes the searches in parallel. That query generation approach does not extract structured data. I do maintain another RAG template for PostgreSQL that uses function calling to turn the query into a structured query, such that I can construct SQL filters dynamically.
Docs here:
https://github.com/Azure-Samples/rag-postgres-openai-python/... I'll ask the search about SPLADE, not sure. |
|