* feat: introduce flow_id with timestamp-based report versioning
Replace run_id with flow_id as the primary grouping concept (one flow =
one user analysis intent spanning scan + pipeline + portfolio). Reports
are now written as {timestamp}_{name}.json so load methods always return
the latest version by lexicographic sort, eliminating the latest.json
pointer pattern for new flows.
Key changes:
- report_paths.py: add generate_flow_id(), ts_now() (ms precision),
flow_id kwarg on all path helpers; keep run_id / pointer helpers for
backward compatibility
- ReportStore: dual-mode save/load — flow_id uses timestamped layout,
run_id uses legacy runs/{id}/ layout with latest.json
- MongoReportStore: add flow_id field and index; run_id stays for compat
- DualReportStore: expose flow_id property
- store_factory: accept flow_id as primary param, run_id as alias
- runs.py / langgraph_engine.py: generate and thread flow_id through all
trigger endpoints and run methods
- Tests: add flow_id coverage for all layers; 905 tests pass
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
* feat: PM brain upgrade — macro/micro summary agents, memory split, forensic dashboard
Replaces the PM's raw-JSON context (~6,800 tokens on deep_think) with a
MAP-REDUCE compression layer using two parallel mid_think summary agents,
achieving ~70% cost reduction at the PM tier.
Architecture:
- MacroMemory: new regime-level memory class (MongoDB/JSON, separate from
per-ticker reflexion memory) with record_macro_state/build_macro_context
- ReflexionMemory: extended with collection_name param to isolate
micro_reflexion from the pipeline reflexion collection (with distinct
local JSON fallback path to prevent file collision)
- Macro_Summary_Agent (mid_think): compresses scan_summary into a 1-page
regime brief with memory injection; sentinel guard prevents LLM call on
empty/error scan data ("NO DATA AVAILABLE - ABORT MACRO")
- Micro_Summary_Agent (mid_think): compresses holding_reviews + candidates
into a markdown table brief with per-ticker memory injection
- Portfolio graph: parallel fan-out (prioritize_candidates → macro_summary
‖ micro_summary → make_pm_decision) using _last_value reducers for safe
concurrent state writes (ADR-005 pattern)
- PM refactor: Pydantic PMDecisionSchema enforces Forensic Execution
Dashboard output (macro_regime, forensic_report, per-trade
macro_alignment/memory_note/position_sizing_logic); with_structured_output
as primary path, extract_json fallback for non-conforming providers
- PM sentinel handling: "NO DATA AVAILABLE" in macro_brief substituted
with actionable conservative guidance before LLM sees it
62 new unit tests across 4 test files covering all new components.
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
* fix: address code review — relaxed error guard, ticker_analyses, PM memory wiring
1. macro_summary_agent: relaxed error guard to only abort when scan_summary's
sole key is "error" (partial failures with real data are now processed)
2. micro_summary_agent: now reads ticker_analyses from state and enriches
the per-ticker table with trading graph analysis data
3. portfolio_graph: wires macro_memory and micro_memory to PM factory call
4. test_empty_state: updated test for new partial-failure behavior
Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
---------
Co-authored-by: Claude Sonnet 4.6 <noreply@anthropic.com>
|
||
|---|---|---|
| .claude | ||
| .jules | ||
| .vscode | ||
| agent_os | ||
| assets | ||
| cli | ||
| docs | ||
| tests | ||
| tradingagents | ||
| .DS_Store | ||
| .env.example | ||
| .gitignore | ||
| CLAUDE.md | ||
| LICENSE | ||
| PLAN.md | ||
| README.md | ||
| benchmark_append.py | ||
| benchmark_csv.py | ||
| benchmark_engine.py | ||
| benchmark_full.py | ||
| benchmark_iteration.py | ||
| benchmark_list.py | ||
| benchmark_v2.py | ||
| benchmark_v3.py | ||
| benchmark_v4.py | ||
| benchmark_v5.py | ||
| main.py | ||
| package-lock.json | ||
| parse_again.py | ||
| parse_issue.py | ||
| pyproject.toml | ||
| requirements.txt | ||
| run_benchmark_6.py | ||
| run_test.py | ||
| test.py | ||
| test2.py | ||
| test_agent_os_connection.py | ||
| test_cache.csv | ||
| test_df.py | ||
| test_opt.py | ||
| test_pd.py | ||
| test_pyarrow.py | ||
README.md
TradingAgents: Multi-Agents LLM Financial Trading Framework
News
- [2026-03] TradingAgents v0.2.2 released with GPT-5.4/Gemini 3.1/Claude 4.6 model coverage, five-tier rating scale, OpenAI Responses API, Anthropic effort control, and cross-platform stability.
- [2026-02] TradingAgents v0.2.0 released with multi-provider LLM support (GPT-5.x, Gemini 3.x, Claude 4.x, Grok 4.x) and improved system architecture.
- [2026-01] Trading-R1 Technical Report released, with Terminal expected to land soon.
🎉 TradingAgents officially released! We have received numerous inquiries about the work, and we would like to express our thanks for the enthusiasm in our community.
So we decided to fully open-source the framework. Looking forward to building impactful projects with you!
🚀 TradingAgents | ⚡ Installation & CLI | 🎬 Demo | 📦 Package Usage | 🤝 Contributing | 📄 Citation
TradingAgents Framework
TradingAgents is a multi-agent trading framework that mirrors the dynamics of real-world trading firms. By deploying specialized LLM-powered agents: from fundamental analysts, sentiment experts, and technical analysts, to trader, risk management team, the platform collaboratively evaluates market conditions and informs trading decisions. Moreover, these agents engage in dynamic discussions to pinpoint the optimal strategy.
TradingAgents framework is designed for research purposes. Trading performance may vary based on many factors, including the chosen backbone language models, model temperature, trading periods, the quality of data, and other non-deterministic factors. It is not intended as financial, investment, or trading advice.
Our framework decomposes complex trading tasks into specialized roles. This ensures the system achieves a robust, scalable approach to market analysis and decision-making.
Analyst Team
- Fundamentals Analyst: Evaluates company financials and performance metrics, identifying intrinsic values and potential red flags.
- Sentiment Analyst: Analyzes social media and public sentiment using sentiment scoring algorithms to gauge short-term market mood.
- News Analyst: Monitors global news and macroeconomic indicators, interpreting the impact of events on market conditions.
- Technical Analyst: Utilizes technical indicators (like MACD and RSI) to detect trading patterns and forecast price movements.
Researcher Team
- Comprises both bullish and bearish researchers who critically assess the insights provided by the Analyst Team. Through structured debates, they balance potential gains against inherent risks.
Trader Agent
- Composes reports from the analysts and researchers to make informed trading decisions. It determines the timing and magnitude of trades based on comprehensive market insights.
Risk Management and Portfolio Manager
- Continuously evaluates portfolio risk by assessing market volatility, liquidity, and other risk factors. The risk management team evaluates and adjusts trading strategies, providing assessment reports to the Portfolio Manager for final decision.
- The Portfolio Manager approves/rejects the transaction proposal. If approved, the order will be sent to the simulated exchange and executed.
Installation and CLI
Installation
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=3.13
conda activate tradingagents
Install the package and its dependencies:
pip install .
Required APIs
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 OPENROUTER_API_KEY=... # OpenRouter
export ALPHA_VANTAGE_API_KEY=... # Alpha Vantage
For local models, configure Ollama with llm_provider: "ollama" in your config.
Alternatively, copy .env.example to .env and fill in your keys:
cp .env.example .env
CLI Usage
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.
An interface will appear showing results as they load, letting you track the agent's progress as it runs.
CLI Commands
| Command | Description |
|---|---|
analyze |
Interactive per-ticker multi-agent analysis (select analysts, LLM, date) |
scan |
Run the 3-phase macro scanner (geopolitical → sector → synthesis) |
pipeline |
Full pipeline: macro scan JSON → filter by conviction → per-ticker deep dive |
portfolio |
Run the Portfolio Manager workflow (requires portfolio ID + scan JSON) |
check-portfolio |
Review current holdings only — no new candidates |
auto |
End-to-end: scan → pipeline → portfolio manager (one command) |
Examples:
# Per-ticker analysis (interactive prompts for ticker, date, LLM, analysts)
python -m cli.main analyze
# Run macro scanner for a specific date
python -m cli.main scan --date 2026-03-21
# Run the full pipeline (scan → filter → per-ticker analysis)
python -m cli.main pipeline
# Run portfolio manager with a specific portfolio and scan results
python -m cli.main portfolio
# Review current holdings without new candidates
python -m cli.main check-portfolio --portfolio-id main_portfolio --date 2026-03-21
# Full autonomous mode: scan → pipeline → portfolio
python -m cli.main auto --portfolio-id main_portfolio --date 2026-03-21
Running Tests
# Install dev dependencies
pip install -e ".[dev]"
# Run all unit tests (integration and e2e excluded by default)
python -m pytest tests/ -v
# Run only portfolio tests
python -m pytest tests/portfolio/ -v
# Run a specific test file
python -m pytest tests/portfolio/test_models.py -v
# Run tests with coverage (requires pytest-cov)
python -m pytest tests/ --cov=tradingagents --cov-report=term-missing
Note: Integration tests that require network access or database connections auto-skip when the relevant environment variables (
SUPABASE_CONNECTION_STRING,FINNHUB_API_KEY, etc.) are not set.
TradingAgents Package
Implementation Details
We built TradingAgents with LangGraph to ensure flexibility and modularity. The framework supports multiple LLM providers: OpenAI, Google, Anthropic, xAI, OpenRouter, and Ollama.
Python Usage
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:
from tradingagents.graph.trading_graph import TradingAgentsGraph
from tradingagents.default_config import DEFAULT_CONFIG
ta = TradingAgentsGraph(debug=True, config=DEFAULT_CONFIG.copy())
# forward propagate
_, decision = ta.propagate("NVDA", "2026-01-15")
print(decision)
You can also adjust the default configuration to set your own choice of LLMs, debate rounds, etc.
from tradingagents.graph.trading_graph import TradingAgentsGraph
from tradingagents.default_config import DEFAULT_CONFIG
config = DEFAULT_CONFIG.copy()
config["llm_provider"] = "openai" # openai, google, anthropic, xai, openrouter, ollama
config["deep_think_llm"] = "gpt-5.2" # Model for complex reasoning
config["quick_think_llm"] = "gpt-5-mini" # Model for quick tasks
config["max_debate_rounds"] = 2
ta = TradingAgentsGraph(debug=True, config=config)
_, decision = ta.propagate("NVDA", "2026-01-15")
print(decision)
See tradingagents/default_config.py for all configuration options.
Contributing
We welcome contributions from the community! Whether it's fixing a bug, improving documentation, or suggesting a new feature, your input helps make this project better. If you are interested in this line of research, please consider joining our open-source financial AI research community Tauric Research.
Citation
Please reference our work if you find TradingAgents provides you with some help :)
@misc{xiao2025tradingagentsmultiagentsllmfinancial,
title={TradingAgents: Multi-Agents LLM Financial Trading Framework},
author={Yijia Xiao and Edward Sun and Di Luo and Wei Wang},
year={2025},
eprint={2412.20138},
archivePrefix={arXiv},
primaryClass={q-fin.TR},
url={https://arxiv.org/abs/2412.20138},
}