aws-samples/generative-bi-using-rag
A solution guidance for Generative BI using Amazon Bedrock, Amazon OpenSearch with RAG
This project helps business analysts and data scientists unlock insights from their company's data sources using natural language. You can ask questions in plain English, and it automatically translates them into SQL queries, pulling information from databases like RDS or Redshift. It takes your business questions and customized data descriptions to generate understandable answers and analysis ideas.
171 stars. No commits in the last 6 months.
Use this if you need to quickly get answers from complex business data using natural language, without writing SQL or relying heavily on IT.
Not ideal if you prefer traditional BI dashboards, need very low-cost solutions, or are comfortable writing SQL directly.
Stars
171
Forks
51
Language
Python
License
MIT-0
Category
Last pushed
Mar 21, 2025
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