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Echolon

LLM-agent-native backtest framework for SHFE daily futures research. 23 MCP tools (strategy validation, scaffolding, indicator catalog, error-code lookup), 22 in-package skills, 32 catalogued error codes, working strategy templates. `pip install echolon` then `claude mcp add -s …

finance-fintechaillmagent
By dolphinquant
1Updated 1 day agoPythonApache-2.0

Installation

pip install echolon

Configuration

{
  "mcpServers": {
    "echolon": {
      "command": "npx",
      "args": ["-y", "echolon"]
    }
  }
}

How to use

  1. Run the installation command above (if needed)
  2. Open your Claude Code settings file (~/.claude/settings.json)
  3. Add the configuration to the mcpServers section
  4. Restart Claude Code to apply changes

Echolon

PyPI Python License Status By DolphinQuant

📖 English · 简体中文

An LLM-agent-native backtest framework for futures research. LLM agents driving quantitative research is becoming routine, and the trajectory looks inevitable. For agents to drive strategy creation reliably, they need backtest tooling designed for them — typed tools they call directly, structured error codes they can resolve, an indicator catalog they can query. Without that, agents writing trading code from prose documentation hallucinate: wrong indicator names, made-up function signatures, params that don't exist. Echolon makes the framework itself the agent's API: 23 MCP tools, 22 in-package skills, 32 catalogued error codes, 214 indicators with typed metadata. End-to-end today: SHFE daily futures.

Production engine inside Qorka, DolphinQuant's AI-native strategy generation product. Exercised by real money on SHFE every trading day.

Quickstart

Three commands cover the natural newcomer arc:

CommandPurposeTime
echolon helloQuick demo. Downloads SHFE aluminum (last 2y) via akshare, scaffolds a strategy, runs a backtest. Network required.~30s
echolon init <workspace> --market SHFE --instrument <i> --start <d> --end <d> --template <t>Start a real project. Downloads market data via akshare (free, no signup), scaffolds a strategy from a template, writes a workspace marker.~1–5 min
echolon backtest single <strategy_dir> [--json]Iterate after editing. Walks up to recover ctx from the workspace marker, recomputes indicators, runs the backtest. No flags needed.~5–10s
pip install echolon
mkdir -p ~/echolon-playground && cd ~/echolon-playground
echolon hello                  # 30-second demo

echolon hello downloads ~2y of aluminum data, scaffolds the momentum_breakout template, writes .echolon-workspace.json, and runs the backtest. Open ./echolon-hello/strategy/baseline/entry.py, tweak a parameter, then re-run with echolon backtest single ./echolon-hello/strategy/baseline/ to see how the Sharpe shifts.

Three templates ship in-package — minimal, momentum_breakout, rsi_mean_reversion. echolon examples --list shows them; pass --template <name> to echolon init / echolon hello to start from one.

If pip install fails on Linux ARM64 / Alpine / FreeBSD, run echolon doctor — it diagnoses ta-lib's C library, the only dependency that may need source-building outside the standard prebuilt-wheel platforms (Linux x86_64, macOS x86_64+arm64, Windows x86_64; Python 3.11–3.12).

Drive it from your agent

pip install echolon                                # 1. install
claude mcp add -s user echolon -- echolon-mcp      # 2. register MCP server (user-wide)
# 3. restart Claude Code to load mcp__echolon__* tools

Then ask:

"Build a trend-following strategy on copper, backtest 2018–2024."

Behind the scenes:

  1. list_skills → picks patterns + quick_start
  2. load_template("momentum_breakout") → 4-file scaffold
  3. list_indicators(has_lookback=True) → picks an indicator
  4. edits entry.py and exit.py
  5. loops validate_strategy_full(strategy_dir) until clean
  6. runs the backtest

On any error, parses [CODE-NNN] from the traceback → get_error_doc(code). No step in the chain requires the agent to guess.

RuntimeSetup
Claude Codeclaude mcp add -s user echolon -- echolon-mcp
CursorIn ~/.cursor/mcp.json add an entry under mcpServers: "echolon": {"command": "echolon-mcp", "args": []}
OpenAI Codex CLIcodex mcp add echolon -- echolon-mcp (writes [mcp_servers.echolon] to ~/.codex/config.toml)
OpenAI Agents SDK (Python)MCPServerStdio(name="echolon", params={"command": "echolon-mcp", "args": []})
LangChain / LangGraphlangchain-mcp-adapters: MultiServerMCPClient({"echolon": {"transport": "stdio", "command": "echolon-mcp", "args": []}})
Any other MCP-compatible client (CrewAI, AutoGen, …)Configure it as a stdio server with command="echolon-mcp", no args. See your client's MCP docs for the call shape.

-s user registers Echolon for all your projects (drop it for current-project only); -- separates the registration name from the launch command. After running once, claude mcp list should show echolon as connected. The agent's orientation guide is llms.txt — also dropped at the workspace root by echolon init / hello, so any agent walking into the project finds it without needing the package.

What's in scope today

Done end-to-end (production-grade, exercised daily):

  • SHFE daily futures research — data ingestion, 214-indicator catalog, Backtrader execution, Optuna TPE optimization (single + multi-objective), walk-forward analysis with deployment-readiness scoring, KMeans-based robust trial selection.
  • Agent surface — 23 MCP tools, 22 skills, 32 error codes, 3 working templates.

Not yet (open an issue if you want to drive a slice forward):

  • SHFE intraday backtesting — data pipeline ready, engine plumbing being firmed up.
  • Live trading via MiniQMT — clean public release in progress.
  • Crypto perpetuals (CCXT adapter scaffolded), CME futures, equities.
  • Optuna alternatives (no grid, no random, no Bayesian-budget search), distributed orchestration, Python ≤ 3.10.
  • Pre-1.0 — public API may change between minor versions. Breaking changes documented in CHANGELOG.md.

Bring your own data

If you already have raw SHFE XLS files (downloaded from shfe.com.cn), run SHFEFileDayExtractor directly instead of using akshare. For other formats (broker CSV, tushare, custom DB), three files must end up under {workspace}/workspace/data/market_data/SHFE/{instrument}/:

FileSchema
sort_by_contract/{contract}.csvcontract, date, prev_close, prev_settlement, open, high, low, close, settlement, price_change, settlement_change, volume, turnover, open_interest
sort_by_date.csvSame columns, all rows concatenated and sorted by date.
trading_calendar.csvdate, is_trading_day (boolean).

Plus under {workspace}/data/SHFE/{instrument_code}/ (note the SHORT code, e.g. al not aluminum):

FileSchema
main_contract.csvdate, main_contract where main_contract is the contract code with .SF suffix (e.g. al2401.SF). One row per change-of-main-contract date.

Echolon does not auto-derive main_contract.csv from raw OHLCV — it's a USER input that encodes your roll convention (rules based on volume, open interest, or days to expiry). For SHFE via akshare, echolon init derives it for you; otherwise produce it yourself and drop it in place.

Project info

Apache 2.0 — see LICENSE. Use freely, commercially or otherwise. Active development, v0.1.3 beta. Built and maintained by DolphinQuant — the same team running Qorka on SHFE. Issues and pull requests welcome at github.com/DolphinQuant/echolon.

@software{echolon,
  title = {Echolon: AI-native quantitative trading engine},
  author = {DolphinQuant},
  year = {2026},
  url = {https://github.com/DolphinQuant/echolon},
}
View source on GitHub