Laoyu84/bq_causal_rag
Integrating Causal Graphs and Generative AI for Reliable Fact Extraction and Deep Reasoning
This tool helps financial analysts and researchers understand the 'what' and 'why' behind complex financial trends by combining vast amounts of structured data and company reports like 10-Ks with AI. It takes your financial questions and provides accurate, evidence-backed answers, explaining not just facts but also the causal relationships driving them. You get clear insights into financial variables and their impact.
Use this if you need to analyze financial performance, market trends, or company disclosures and require deep, interpretable explanations of causal factors, beyond just surface-level numbers.
Not ideal if your primary need is simple data retrieval without requiring complex causal reasoning or if you are not working with large financial datasets within a BigQuery environment.
Stars
9
Forks
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Language
Python
License
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Category
Last pushed
Oct 21, 2025
Commits (30d)
0
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