Analysis Gym
FreeNot checkedRecords and scores prospective equity earnings predictions made by AI agents, allowing comparison of different agent configurations.
About
Records and scores prospective equity earnings predictions made by AI agents, allowing comparison of different agent configurations.
README
Analysis Gym is a tiny MCP server for recording and scoring prospective equity earnings predictions made by AI agents.
It deliberately does not choose tickers, schedule runs, or invoke models. Your agent loop owns those decisions. The agent uses the existing FactIQ MCP server for research and calls Analysis Gym only to record a prediction, record the eventual actuals, or read the results.
Tools
record_predictionrecords an immutable forecast before the expected earnings time.record_actualssettles all earlier predictions for a ticker and fiscal period.get_resultsreturns per-metric errors and a leaderboard grouped by harness, model, and thinking setting.
The five predicted values are revenue, EBITDA, net profit, free cash flow, and the first regular-session closing price after the earnings release.
Run locally
uv sync
uv run analysis-gym
The server uses stdio transport and stores data in analysis_gym.sqlite3 in its
working directory. Set ANALYSIS_GYM_DB_PATH to put the database elsewhere.
Codex
Add the server to ~/.codex/config.toml:
[mcp_servers.analysis-gym]
command = "uv"
args = ["--directory", "/absolute/path/to/analysis-gym", "run", "analysis-gym"]
Install and authenticate the FactIQ plugin separately. Then ask Codex, for example:
Pick an equity reporting soon. Use FactIQ to forecast its next-quarter revenue, EBITDA, net profit, free cash flow, and first post-earnings close. Record the forecast in Analysis Gym before the release.
Claude Code
claude mcp add analysis-gym -- \
uv --directory /absolute/path/to/analysis-gym run analysis-gym
Use the same prompt and ensure the FactIQ plugin is also installed and authenticated.
Agent-side loop
A loop outside this repository can choose an upcoming event and run the same
request through any set of CLI/model/thinking configurations. Each agent calls
record_prediction itself. After earnings, call record_actuals once with a
source URL, then use get_results to compare the configurations.
Analysis Gym uses symmetric mean absolute percentage error (SMAPE), where lower is better. It reports every metric separately and a simple mean across all five.
Metric definitions
- EBITDA: operating income plus depreciation and amortization.
- Free cash flow: operating cash flow minus capital expenditure.
- Net profit: consolidated net income attributable to the parent/common shareholders.
- Post-earnings close: the same session's close for a pre-market release, or the next regular session's close for an after-hours release.
All four financial values (submitted in millions) in a submission must use the same reporting currency.
Development
uv run pytest
Install Analysis Gym in Claude Desktop, Claude Code & Cursor
unyly install analysis-gymInstalls into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.
First time? Get the CLI: curl -fsSL https://unyly.org/install | sh
Or configure manually
Run in your terminal:
claude mcp add analysis-gym -- uvx --from git+https://github.com/defog-ai/analysis-gym analysis-gymFAQ
Is Analysis Gym MCP free?
Yes, Analysis Gym MCP is free — one-click install via Unyly at no cost.
Does Analysis Gym need an API key?
No, Analysis Gym runs without API keys or environment variables.
Is Analysis Gym hosted or self-hosted?
Self-hosted: the server runs locally on your machine via the install command above.
How do I install Analysis Gym in Claude Desktop, Claude Code or Cursor?
Open Analysis Gym on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
Related MCPs
Fetch
Web content fetching and conversion for efficient LLM usage.
AWS KB Retrieval
Retrieval from AWS Knowledge Base using Bedrock Agent Runtime.
by modelcontextprotocolSpring AI MCP Server
Provides auto-configuration for setting up an MCP server in Spring Boot applications.
llm-analysis-assistant
A very streamlined mcp client that supports calling and monitoring stdio/sse/streamableHttp, and can also view request responses through the /logs page. It also
by xuzexin-hzCompare Analysis Gym with
Not sure what to pick?
Find your stack in 60 seconds
Author?
Embed badge for your README
Browse similar
All ai MCPs
