@CypherSacha: Madness Someone just released an open-source framework that simulates a real trading floor with AI agents. You launch a…
Summary
An open-source framework simulates a real trading floor with multiple AI agents performing fundamental, sentiment, technical, and risk analysis, compatible with major LLMs like GPT-5, Claude 4, and Gemini 3.
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Cached at: 06/09/26, 12:46 PM
Madness
Someone just released an open-source framework that simulates a real trading floor with AI agents.
You launch an analysis on any stock or crypto. And here’s what happens:
- A fundamental analyst pores over balance sheets
- A sentiment analyst scrapes Twitter, Reddit, StockTwits
- A technical analyst calculates MACD, RSI, patterns
- A bullish researcher vs A bearish researcher debate in real time
- A Risk Manager assesses the position
- A Portfolio Manager approves or rejects the order
Compatible with GPT-5, Claude 4, Gemini 3, Grok, DeepSeek
Guys, this is seriously mind-blowing !!!
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