| name | vibe-trading |
| version | 0.1.10 |
| description | Professional finance research toolkit — backtesting (7 engines + benchmark comparison panel), factor analysis, Alpha Zoo (452 pre-built alphas across qlib158/alpha101/gtja191/academic), options pricing, 79 finance skills, 29 multi-agent swarm teams, Trade Journal analyzer, and Shadow Account (extract → backtest → render) across 18 market-data sources (tushare, yfinance, okx, akshare, baostock, tencent, mootdx, ccxt, futu, local, eastmoney, sina, stooq, yahoo, plus optional-key finnhub/alphavantage/tiingo/fmp). |
| dependencies | {"python":">=3.11","pip":["vibe-trading-ai"]} |
| env | [{"name":"TUSHARE_TOKEN","description":"Tushare API token for China A-share data (optional — HK/US/crypto work without any key)","required":false},{"name":"OPENAI_API_KEY","description":"OpenAI-compatible API key — only needed for run_swarm (multi-agent teams). All other tools work without it.","required":false},{"name":"LANGCHAIN_MODEL_NAME","description":"LLM model name for run_swarm (e.g. deepseek/deepseek-v4-pro). Only needed if using run_swarm.","required":false}] |
| mcp | {"command":"vibe-trading-mcp","args":[]} |
Vibe-Trading
Professional finance research toolkit with AI-powered backtesting (7 engines), multi-agent teams, 79 specialized skills, the Alpha Zoo (452 pre-built quantitative alphas across qlib158 / alpha101 / gtja191 / academic with one-line CLI benchmarking), and the Shadow Account loop — extract your implicit trading rules from a journal, backtest them across A股/港股/美股/crypto, then see where they would have served you better.
Setup
pip install vibe-trading-ai
Package name vs commands: The PyPI package is vibe-trading-ai. Once installed, you get:
| Command | Purpose |
|---|
vibe-trading | Interactive CLI / TUI |
vibe-trading serve | Launch FastAPI web server |
vibe-trading-mcp | Start MCP server (for Claude Desktop, OpenClaw, Cursor, etc.) |
Add to your agent's MCP config:
{
"mcpServers": {
"vibe-trading": {
"command": "vibe-trading-mcp"
}
}
}
API Key Requirements
Core research MCP tools work with zero API keys for HK/US/crypto. After pip install, backtesting, market data, factor analysis, options pricing, chart patterns, web search, document reading, trade journal analysis, shadow-account extraction/backtest/report, the Alpha Zoo (452 pre-built alphas), and all 79 skills are ready to use. IBKR tools require a local TWS / IB Gateway session; run_swarm requires an LLM key.
| Feature | Key needed | When |
|---|
| HK/US equities & crypto | None | Always free (yfinance / stooq / yahoo + OKX) |
| China A-share data | None | Free via akshare / baostock / tencent / sina / eastmoney / mootdx fallback (TUSHARE_TOKEN optional for premium quality) |
| Premium US fundamentals/quotes | FINNHUB_API_KEY / ALPHAVANTAGE_API_KEY / TIINGO_API_KEY / FMP_API_KEY | Only for optional-key providers (graceful fallback to free sources) |
Multi-agent swarm (run_swarm) | OPENAI_API_KEY + LANGCHAIN_MODEL_NAME | Swarm spawns internal LLM workers |
What You Can Do
Shadow Account — flagship loop
Feed a CSV broker export (同花顺 / 东财 / 富途 / generic), and the agent will:
analyze_trade_journal — profile your behavior (holding period, win rate, disposition effect, chasing, overtrading, anchoring).
extract_shadow_strategy — distill 3-5 if-then rules that describe your profitable roundtrips.
run_shadow_backtest — backtest those rules across A/HK/US/crypto and compute delta-PnL vs your realized trades.
render_shadow_report — produce an HTML/PDF report (8 sections + charts) with today's matching signals.
scan_shadow_signals — list today's symbols that match your shadow's entry cadence (research only).
Backtesting
Create and run quantitative strategies across 7 engines (ChinaA, GlobalEquity, Crypto, ChinaFutures, GlobalFutures, Forex + options) with 18 market-data sources (auto-detect + ordered fallback):
- HK/US equities via yfinance / stooq / yahoo (free, no API key)
- Cryptocurrency via OKX or CCXT/100+ exchanges (free, no API key)
- China A-shares via AKShare / baostock / tencent / sina / eastmoney / mootdx (free, no API key) —
TUSHARE_TOKEN optional for premium quality
- Futures, forex, macro via AKShare (free, no API key)
- HK & A-share equities via Futu (broker login required, optional)
- Local CSV/parquet bars via the
local loader (offline, no network)
- Premium US data via optional-key finnhub / alphavantage / tiingo / fmp (graceful fallback to free sources)
Example workflow:
- Use
list_skills() to discover strategy patterns
- Use
load_skill("strategy-generate") for the strategy creation guide
- Use
write_file() to create config.json and code/signal_engine.py
- Use
backtest() to run and get metrics (Sharpe, return, drawdown, etc.)
Multi-Agent Swarm Teams
29 pre-built agent teams for complex research:
- Investment Committee: bull/bear debate → risk review → PM decision
- Global Equities Desk: A-share + HK/US + crypto → global strategist
- Crypto Trading Desk: funding/basis + liquidation + flow → risk manager
- Earnings Research Desk: fundamentals + revisions + options → earnings strategist
- Macro/Rates/FX Desk: rates + FX + commodities → macro PM
- Quant Strategy Desk: screening → factor research → backtest → risk audit
- Risk Committee: drawdown, tail risk, regime analysis
- And 22 more specialized teams
Use list_swarm_presets() to see all teams, then run_swarm() to execute.
Alpha Zoo (452 pre-built alphas)
One-line cross-sectional IC / IR / alive-reversed-dead categorisation across four bundled zoos:
- qlib158 (154 alphas) — Microsoft Qlib's
Alpha158 feature handler, Apache-2.0 with pinned commit SHA.
- alpha101 (101 alphas) — Kakushadze (2015) "101 Formulaic Alphas" (arXiv:1601.00991), written from the paper appendix.
- gtja191 (191 alphas) — Guotai Junan 2014 "191 Short-period Trading Alpha Factors" research report.
- academic (6 factors) — Fama-French 5 + Carhart momentum (honest price-based proxies).
Each alpha ships with __alpha_meta__ (formula LaTeX + theme + universe + warmup + columns required), guarded by an AST purity gate + 300-row lookahead sentinel test. Use the vibe-trading alpha {list,show,bench,compare,export-manifest} CLI, the /alpha/* REST routes (browser at /alpha-zoo), or compose multi-factor signals via ZooSignalEngine.from_zoo(...).
Finance Skills (79)
Comprehensive knowledge base covering:
- Technical analysis (candlestick, Elliott wave, Ichimoku, SMC, harmonic, chanlun)
- Quantitative methods (factor research, ML strategy, pair trading, multi-factor)
- Risk management (VaR/CVaR, stress testing, hedging)
- Options (Black-Scholes, Greeks, multi-leg strategies, payoff diagrams)
- HK/US equities (SEC filings, earnings revisions, ETF flows, ADR/H-share arbitrage)
- Crypto trading desk (funding rates, liquidation heatmaps, stablecoin flows, token unlocks, DeFi yields)
- Behavioral finance, trade journal diagnostics, shadow account
- Macro analysis, credit research, sector rotation, and more
Use load_skill(name) to access full methodology docs with code templates.
Available MCP Tools (54)
| Tool | Description | API Key |
|---|
list_skills | List all 79 finance skills | None |
load_skill | Load full skill documentation | None |
start_research_goal | Create an auditable research goal | None |
get_research_goal | Read the current research goal | None |
add_goal_evidence | Attach evidence to a research goal | None |
update_research_goal_status | Update goal lifecycle status | None |
backtest | Run vectorized backtest engine | None* |
factor_analysis | IC/IR analysis + layered backtest | None* |
analyze_options | Black-Scholes price + Greeks | None |
pattern_recognition | Detect chart patterns (H&S, double top, etc.) | None |
get_market_data | Fetch OHLCV data (auto-detect + ordered fallback across 18 sources) | None* |
get_fund_flow | Capital fund-flow (main/retail net inflow) | None* |
get_dragon_tiger | Dragon-tiger list (龙虎榜) top buyer/seller seats | None* |
get_northbound_flow | Northbound (Stock Connect) net flow | None* |
get_margin_trading | Margin trading & short-selling balances | None* |
get_block_trades | Block-trade (大宗交易) records | None* |
get_shareholder_count | Shareholder-count history per symbol | None* |
get_lockup_expiry | Restricted-share lockup release schedule | None* |
get_sector_info | Sector / industry constituents & performance | None* |
get_research_reports | Sell-side analyst research reports | None* |
get_stock_news | Market & company news headlines | None* |
get_sec_filings | SEC EDGAR filings (10-K/10-Q/8-K, etc.) | None |
get_financial_statements | Income / balance / cash-flow statements | None* |
get_options_chain | Options chain (strikes, IV, OI, Greeks) | None* |
get_stock_profile | Valuation, analyst estimates & institutional holdings (US/HK) | None |
screen_market | Market screener with fundamental/technical filters | None* |
search_symbol | Symbol / ticker search across markets | None |
get_macro_series | FRED macroeconomic series | FRED_API_KEY |
iwencai_search | A-share natural-language research search | IWENCAI_KEY |
web_search | Search the web via DuckDuckGo | None |
read_url | Fetch web page as Markdown | None |
read_document | Extract text from PDF/DOCX/XLSX/PPTX/images | None |
write_file | Write files (config, strategy code) | None |
read_file | Read file contents | None |
analyze_trade_journal | Parse broker CSV → profile + behavior diagnostics | None |
extract_shadow_strategy | Distill 3-5 if-then rules from profitable roundtrips | None |
run_shadow_backtest | Multi-market backtest + delta-PnL attribution | None* |
render_shadow_report | HTML/PDF shadow report (8 sections + charts) | None |
scan_shadow_signals | Today's symbols matching the shadow's cadence | None |
list_swarm_presets | List multi-agent team presets | None |
run_swarm | Execute a multi-agent research team | LLM key |
get_swarm_status | Poll swarm run status without blocking | None |
get_run_result | Get final report and task summaries | None |
list_runs | List recent swarm runs with metadata | None |
reap_stale_runs | Finalize stale swarm runs | None |
retry_run | Re-run a failed/stale swarm run | LLM key |
trading_connections | List selectable connector profiles | None |
trading_select_connection | Select the default connector profile | None |
trading_check | Check connector readiness | Connector app/OAuth |
trading_account | Read account summary from selected connector | Connector app/OAuth |
trading_positions | Read positions from selected connector | Connector app/OAuth |
trading_orders | Read open orders from selected connector | Connector app/OAuth |
trading_quote | Read a quote snapshot from selected connector | Connector app/OAuth |
trading_history | Read historical bars from selected connector | Connector app/OAuth |
*A-share symbols require TUSHARE_TOKEN. HK/US/crypto are free. Trading connector rows use the selected connector profile, e.g. IBKR local TWS/Gateway or Robinhood MCP OAuth.
Quick Start
pip install vibe-trading-ai
That's it — no API keys needed for HK/US/crypto markets. Start using backtest, get_market_data, analyze_options, analyze_trade_journal, extract_shadow_strategy, web_search, the Alpha Zoo (vibe-trading alpha bench --zoo gtja191 --universe csi300 --period 2018-2025), and all 79 skills immediately.
Loading Tools from External MCP Servers
The built-in agent can load tools from your own external MCP servers in addition to its local toolset.
Note: This is the MCP client path — the opposite of the MCP plugin listed above. The plugin above makes Vibe-Trading's tools available to your agents. This section lets Vibe-Trading's own agent call tools from your servers.
Setup
Create ~/.vibe-trading/agent.json:
{
"mcpServers": {
"my-server": {
"command": "uvx",
"args": ["my-mcp-server"],
"toolTimeout": 30,
"enabledTools": ["*"]
}
}
}
Ordinary external MCP tools appear automatically in every vibe-trading run / vibe-trading chat call. They are injected after local tools under stable names: mcp_<server>_<tool>. Live-broker MCP servers are consumed through the connector-scoped trading_* tools instead of exposing raw mcp_<broker>_* tools to the agent.
Official IBKR MCP read-only probe
Add Interactive Brokers' official MCP endpoint as a read-only external server:
{
"mcpServers": {
"ibkr": {
"type": "streamableHttp",
"url": "https://api.ibkr.com/v1/api/mcp",
"auth": {
"type": "oauth",
"scopes": ["mcp.read"],
"clientName": "Vibe-Trading",
"cacheDir": "~/.vibe-trading/live/ibkr/oauth"
},
"enabledTools": ["*"]
}
}
}
Authorize it with vibe-trading connector authorize ibkr-live-official-mcp-readonly. The wildcard is accepted
only for this mcp.read probe. Generic trading_account and trading_positions
calls stay disabled until IBKR publishes stable read tool names that Vibe-Trading
can map safely; mcp.write requires an explicit tool allowlist and live
order-guard handling. If IBKR issues a pre-registered OAuth client, add
clientId and clientSecret inside auth.
Trading connector profiles
The public trading surface is connector-first. Choose a connector profile, then
paper/live is just an attribute under that connector.
pip install "vibe-trading-ai[ibkr]"
vibe-trading connector list
vibe-trading connector use ibkr-paper-local
vibe-trading connector configure ibkr-paper-local --yes
vibe-trading connector check
vibe-trading connector account
vibe-trading connector positions
vibe-trading connector orders
vibe-trading connector quote AAPL
vibe-trading connector history AAPL --duration "30 D" --bar-size "1 day"
Default ports are TWS paper 7497, IB Gateway paper 4002, TWS live-readonly
7496, and IB Gateway live-readonly 4001.
Config fields
| Field | Required | Default | Description |
|---|
type | stdio: no, HTTP: yes | inferred only for stdio | Transport type. Use sse or streamableHttp for URL-based servers. |
command | stdio: yes | — | Executable to launch |
args | no | [] | Command arguments |
env | no | {} | Extra env vars for the subprocess |
url | HTTP: yes | — | Remote SSE / streamable HTTP endpoint URL |
headers | no | {} | Extra HTTP headers for SSE / streamable HTTP servers |
toolTimeout | no | 30 | Seconds before a tool call is cancelled |
enabledTools | no | ["*"] | Allowlist of remote tool names. ["*"] enables all |
For URL-based transports, type is required. The agent no longer guesses between SSE and streamable HTTP from the URL suffix.
Per-session override (API)
Security — disabled by default. mcpServers defines subprocess command/args/env and is therefore restricted to operator-level trust. API callers cannot inject MCP server definitions through POST /sessions unless the server operator explicitly opts in.
To enable session-level MCP injection, set the environment variable on the server before starting the agent:
export ALLOW_SESSION_MCP_SERVERS=1
With the opt-in active, pass mcpServers inside session.config to extend or replace the global config for that session only:
{
"config": {
"mcpServers": {
"research": {
"command": "uvx",
"args": ["research-mcp"],
"enabledTools": ["search"]
}
}
}
}
Without ALLOW_SESSION_MCP_SERVERS=1, any mcpServers key in session.config is silently stripped before config loading. The global operator config on disk (~/.vibe-trading/agent.json) is always respected regardless of this flag.
v1 limits
- Transport: stdio, SSE, and streamable HTTP.
- Execution: serial only. MCP tools never enter the parallel readonly path.
- Surfaces: tools only. Resources and prompts are not exposed.
- Swarm: MCP tools are excluded from Swarm worker registries in v1.
- Hot reload: not supported. Restart the process to pick up config changes.
Failure handling
| Case | Behavior |
|---|
| Missing config file | falls back to empty config — no MCP servers loaded |
| Invalid config file | logs a warning and falls back to empty config |
| Server fails to start | that server is skipped; local tools and other servers still load |
| Tool call times out | returns a normalized error payload instead of raising |
| Two server names collide after sanitization | deterministic hash suffix appended; operator warning emitted |
Examples
Backtest a MACD strategy on Apple:
Backtest AAPL with MACD crossover strategy (fast=12, slow=26, signal=9) for 2024
Analyze my trade journal and build a Shadow Account:
Call analyze_trade_journal on ~/Downloads/tonghuashun.csv, then extract_shadow_strategy with min_support=3, then run_shadow_backtest for the last year, then render_shadow_report.
Run an investment committee review:
Use run_swarm with investment_committee preset to evaluate NVDA. Variables: target=NVDA.US, market=US
Factor analysis on CSI 300:
Run factor_analysis on CSI 300 stocks using pe_ttm factor from 2023 to 2024
Options analysis:
Use analyze_options: spot=100, strike=105, 90 days, vol=25%, rate=3%