AI Skill Hub 强烈推荐:TradingAgents Agent工作流 是一款优质的AI工具。在 GitHub 上收获超过 74.5k 颗 Star,AI 综合评分 8.2 分,在同类工具中表现稳健。如果你正在寻找可靠的AI工具解决方案,这是一个值得深入了解的选择。
基于大语言模型的开源金融交易多智能体工作流框架。支持多代理协作、智能决策和自动化交易,适合量化交易员、金融科技开发者和AI研究人员探索智能交易系统。
TradingAgents Agent工作流 是一款基于 Python 开发的开源工具,专注于 多智能体、金融交易、LLM 等核心功能。作为 GitHub 开源项目,它拥有活跃的社区支持和持续的版本迭代,代码完全透明可审计,支持本地部署以保护数据隐私。无论是个人使用还是集成到企业工作流,都能提供稳定可靠的解决方案。
基于大语言模型的开源金融交易多智能体工作流框架。支持多代理协作、智能决策和自动化交易,适合量化交易员、金融科技开发者和AI研究人员探索智能交易系统。
TradingAgents Agent工作流 是一款基于 Python 开发的开源工具,专注于 多智能体、金融交易、LLM 等核心功能。作为 GitHub 开源项目,它拥有活跃的社区支持和持续的版本迭代,代码完全透明可审计,支持本地部署以保护数据隐私。无论是个人使用还是集成到企业工作流,都能提供稳定可靠的解决方案。
# 方式一:pip 安装(推荐)
pip install tradingagents
# 方式二:虚拟环境安装(推荐生产环境)
python -m venv .venv
source .venv/bin/activate # Windows: .venv\Scripts\activate
pip install tradingagents
# 方式三:从源码安装(获取最新功能)
git clone https://github.com/TauricResearch/TradingAgents
cd TradingAgents
pip install -e .
# 验证安装
python -c "import tradingagents; print('安装成功')"
# 命令行使用
tradingagents --help
# 基本用法
tradingagents input_file -o output_file
# Python 代码中调用
import tradingagents
# 示例
result = tradingagents.process("input")
print(result)
# tradingagents 配置文件示例(config.yml) app: name: "tradingagents" debug: false log_level: "INFO" # 运行时指定配置文件 tradingagents --config config.yml # 或通过环境变量配置 export TRADINGAGENTS_API_KEY="your-key" export TRADINGAGENTS_OUTPUT_DIR="./output"
<p align="center"> <img src="assets/TauricResearch.png" style="width: 60%; height: auto;"> </p>
---
TradingAgents supports multiple LLM providers. Set the API key for your chosen provider:
export OPENAI_API_KEY=... # OpenAI (GPT)
export GOOGLE_API_KEY=... # Google (Gemini)
export ANTHROPIC_API_KEY=... # Anthropic (Claude)
export XAI_API_KEY=... # xAI (Grok)
export DEEPSEEK_API_KEY=... # DeepSeek
export DASHSCOPE_API_KEY=... # Qwen — International (dashscope-intl.aliyuncs.com)
export DASHSCOPE_CN_API_KEY=... # Qwen — China (dashscope.aliyuncs.com)
export ZHIPU_API_KEY=... # GLM via Z.AI (international)
export ZHIPU_CN_API_KEY=... # GLM via BigModel (China, open.bigmodel.cn)
export MINIMAX_API_KEY=... # MiniMax — Global (api.minimax.io)
export MINIMAX_CN_API_KEY=... # MiniMax — China (api.minimaxi.com)
export OPENROUTER_API_KEY=... # OpenRouter
export ALPHA_VANTAGE_API_KEY=... # Alpha Vantage
For Azure OpenAI, copy .env.enterprise.example to .env.enterprise and fill in your credentials.
For AWS Bedrock, install the extra with pip install ".[bedrock]", set llm_provider: "bedrock", configure AWS credentials (environment variables, ~/.aws/credentials, or an IAM role) and AWS_DEFAULT_REGION, and use a Bedrock model ID, e.g. us.anthropic.claude-opus-4-8-v1:0.
For local models, configure Ollama with llm_provider: "ollama". The default endpoint is http://localhost:11434/v1; set OLLAMA_BASE_URL to point at a remote ollama-serve. Pull models with ollama pull <name>, and pick "Custom model ID" in the CLI for any model not listed by default.
For any other OpenAI-compatible server (vLLM, LM Studio, llama.cpp, or a custom relay), use llm_provider: "openai_compatible" and set the endpoint via backend_url (or TRADINGAGENTS_LLM_BACKEND_URL), e.g. http://localhost:8000/v1 for vLLM or http://localhost:1234/v1 for LM Studio. The model is whatever your server serves. No key is needed for local servers; set OPENAI_COMPATIBLE_API_KEY when the endpoint requires one.
Alternatively, copy .env.example to .env and fill in your keys:
cp .env.example .env
Clone TradingAgents:
git clone https://github.com/TauricResearch/TradingAgents.git
cd TradingAgents
Create a virtual environment in any of your favorite environment managers:
conda create -n tradingagents python=3.12
conda activate tradingagents
Install the package and its dependencies:
pip install .
Alternatively, run with Docker:
cp .env.example .env # add your API keys
docker compose run --rm tradingagents
For local models with Ollama:
docker compose --profile ollama run --rm tradingagents-ollama
Launch the interactive CLI:
tradingagents # installed command
python -m cli.main # alternative: run directly from source You will see a screen where you can select your desired tickers, analysis date, LLM provider, research depth, and more.
To use TradingAgents inside your code, you can import the tradingagents module and initialize a TradingAgentsGraph() object. The .propagate() function will return a decision. You can run main.py, here's also a quick example:
```python from tradingagents.graph.trading_graph import TradingAgentsGraph from tradingagents.default_config import DEFAULT_CONFIG
ta = TradingAgentsGraph(debug=True, config=DEFAULT_CONFIG.copy())
```
What does not vary anymore: the analyzed company identity is resolved deterministically from the ticker before any agent runs, and the market analyst grounds exact price and indicator claims in a verified data snapshot. Earlier reports of "different companies" or fabricated price levels across runs are addressed by these two mechanisms.
Backtest results are not guaranteed to match any published figure. Returns depend on the model, the temperature, the date range, data quality, and the sampling above. Treat the framework as a research scaffold for studying multi-agent analysis, not as a strategy with a fixed, replicable return.
该项目整合多智能体与金融交易,技术前沿。高star数反映市场需求,但需验证实际交易效果和风险控制能力。
AI Skill Hub 为第三方内容聚合平台,本页面信息基于公开数据整理,不对工具功能和质量作任何法律背书。
建议在沙箱或测试环境中充分验证后,再部署至生产环境,并做好必要的安全评估。
✅ Apache 2.0 — 宽松开源协议,可商用,需保留版权声明和 NOTICE 文件,含专利授权条款。
总体来看,TradingAgents Agent工作流 是一款质量优秀的AI工具,在同类工具中具备一定竞争力。AI Skill Hub 将持续追踪其更新动态,建议收藏备用,结合自身场景选择合适时机引入使用。
| 原始名称 | TradingAgents |
| 原始描述 | 开源AI工作流:TradingAgents: Multi-Agents LLM Financial Trading Framework。⭐74.5k · Python |
| Topics | 多智能体金融交易LLM工作流量化交易 |
| GitHub | https://github.com/TauricResearch/TradingAgents |
| License | Apache-2.0 |
| 语言 | Python |
收录时间:2026-05-13 · 更新时间:2026-05-16 · License:Apache-2.0 · AI Skill Hub 不对第三方内容的准确性作法律背书。