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TauricResearch/TradingAgents

May 4, 202664,98112,570

Summary

Multi-agent LLM framework for algorithmic trading. Provides reusable components for data pipelines, strategy simulation, and coordinated agents across markets. If you experiment with AI trading, use this instead of gluing together notebooks. ([github.com](https://github.com/trending?since=daily))

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