A solution guidance for Generative BI using Amazon Bedrock, Amazon OpenSearch with RAG
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Updated
Mar 21, 2025 - Python
A solution guidance for Generative BI using Amazon Bedrock, Amazon OpenSearch with RAG
Parser for end-user search-like queries and rule-based named entity recognition (NER) in context of tabular dataset schema.
The project implements a specialized AI agent in the field of A/B testing, which is able to upload data,, put forward hypotheses, check statistical tests, make predictions and return the answer to the user in the most convenient form. This project can be integrated for any ML platform and can be used to solve various tasks.
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