@axichuhai: Found a 50k-star project on GitHub that turns AI models into automated stock analysts. Just configure your watchlist, and it automatically pulls candlestick charts, technical indicators, news announcements, and fundamental data to generate a decision dashboard. Core conclusions, trend scores, buy/sell points, risk alerts, catalysts, and operations...
Summary
This is a 50k-star open-source project on GitHub that uses AI models to automatically analyze stock quotes, technical indicators, and fundamental data, generating a decision dashboard with trend scores, buy/sell points, and risk alerts. It supports daily automated runs and multi-platform push notifications.
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Cached at: 07/03/26, 06:41 PM
I saw a 5-star project on GitHub that turns AI large models into an automated stock analyst
Just configure your watchlist, and it automatically fetches market K-line data, technical indicators, news announcements, and fundamental data, then generates a decision dashboard
Core conclusions, trend scores, buy/sell points, risk alerts, catalysts, and an operation checklist are all listed item by item
Supports multi-round questioning strategies, moving average theory, Elliott wave trends, hot event-driven, and growth quality are all built-in
Runs automatically every day at a scheduled time, and pushes results directly to WeChat, Feishu, Telegram, or email
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ZhuLinsen/daily_stock_analysis
这是一个基于AI大模型的A股/港股/美股智能分析系统,支持每日自动分析并推送决策报告到企业微信、飞书、Telegram等多个平台,并提供Web工作台和多种数据源集成。
@waveking1314: I recommend this project to anyone doing investment research — save it. There's an open-source financial data project on GitHub called OpenBB, already approaching 70k Stars. Its most impressive aspect isn't that it created another market data tool, but that it breaks down data that was previously only easily accessible to institutions and professional research teams into an open-source workflow usable by ordinary people. Stocks...
OpenBB is an open-source financial data platform with nearly 70k Stars, integrating data on stocks, options, cryptocurrencies, macroeconomics, and more. It supports AI integration and self-deployment, helping individual investors and small teams lower the data barrier for financial research.