SPARDA
SPARDA is a zero-configuration MCP builder that converts existing Express and FastAPI applications into fully functional Model Context Protocol servers. It automatically generates tools from routes, preserves API schemas, and accelerates MCP development from hours to minutes.
README
SPARDA
<div align="center"> <img src="assets/logo-presentation.png" alt="SPARDA Banner" width="800" /> </div>
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Your AI can write code. It still can't operate your app.
Claude, Cursor & friends read your files — not your running product. They can
refactor a controller, but they can't create an order, fetch a real user, or see why
production is failing. And giving an AI real access to your API usually means: write
an OpenAPI spec, build an MCP server, host it, secure it, keep it in sync with every
route change — and pray it never DELETEs the wrong row. Days of glue code, per
project, forever drifting.
SPARDA deletes that work:
npx sparda-mcp init # scan your Express/FastAPI app, inject the MCP router — 3 minutes
npx sparda-mcp dev # connect Claude Desktop / Claude Code. Done.
No OpenAPI spec. No account. No API key. No server to host.
Quickstart
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Scan + inject — run once, from your app's directory:
npx sparda-mcp initSPARDA parses your routes (AST), generates a marked
/mcprouter, injects it into your app (with a backup), and writessparda.json. Every step is reversible. -
Start your app, then start the bridge:
npx sparda-mcp dev -
Connect your client.
initprints a ready-to-paste block forclaude_desktop_config.json, pre-filled with your app's name and path:{ "mcpServers": { "your-app": { "command": "npx", "args": ["sparda-mcp", "dev"], "cwd": "/absolute/path/to/your-app" } } }Claude Code connects to the same bridge. That's it — your running app is now a set of MCP tools your AI can call.
To undo everything: npx sparda-mcp remove restores your code byte-for-byte.
The promise — every word is backed by a test in CI
<div align="center"> <img src="assets/features-presentation.png" alt="SPARDA Features" width="800" /> </div>
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- Three minutes, one command. AST scan, router generation, reversible injection — no config.
- Try it for free, leave for free.
npx sparda-mcp removerestores your code byte-for-byte (tested on JS, TS, Python, even Windows CRLF files). No trace, no lock-in. - The AI cannot write until you say so. Every POST/PUT/DELETE is disabled by default; you enable per tool, and your choice survives every re-run.
- Your app defends itself. A route failing 3 times in a row is quarantined — the AI can't hammer your broken production. Latency anomalies are flagged. Zero LLM needed.
- Nothing leaves your machine. No telemetry to us, no cloud, local key auth, 4 exact-pinned dependencies.
- What it learns is never lost. Diagnoses, descriptions, settings — versioned with your git, surviving every re-init.
What we don't promise: the honest limits in docs/SECURITY.md.
How it works
npx sparda-mcp initparses your codebase (AST), extracts every route, and injects a tiny marked router (/mcp) into your app — fully reversible withnpx sparda-mcp remove.- Tool calls run inside your live app process — warm DB pools, real auth chain, real data. SPARDA adds no infrastructure: compute comes from your host process, intelligence from your AI client's own model (MCP sampling), storage from
sparda.json+ git. - Write tools (POST/PUT/DELETE) are disabled by default. You opt in per tool in
sparda.json— your choices survive re-runs. - Suspicious docstrings are sanitized before they ever reach the AI (prompt-injection defense).
What SPARDA gives your AI
Operate, not just read
Every route becomes a tool that runs against your live process — real auth, real data,
warm connections. One call to sparda_get_context hands the AI the whole living
picture: enabled tools, suggested workflows, runtime telemetry, quarantine state, and
immune memory — so every session resumes where the last one stopped.
Write-safety: the AI can't write until you say so
- Writes (POST/PUT/DELETE) ship disabled. Enable them per tool in
sparda.json; your choice survives every re-init. - An enabled write is never executed on the first call. SPARDA returns an
awaiting_confirmationenvelope — a single-use token plus a preview of the action — and commits only after an explicit confirm step. - When your client supports MCP elicitation, that confirmation prompt appears in the AI's own UI.
- Proof-after-write: every successful write is followed by a read-back of the same resource, so the AI — and you — see the real effect, not a hopeful guess.
Your app defends itself — zero LLM on the hot path
- Quarantine. A tool that returns 3 consecutive 5xx is quarantined: further calls get a
503with a reason and a retry delay instead of hammering your broken route. After a cooldown it half-opens for a single probe. - Latency & anomaly flags. The router learns each route's baseline and flags deviations locally, in a few lines of math.
- Adaptive diagnosis, only on surprise. A genuinely new failure wakes your AI client's own model to diagnose it once; the diagnosis is cached as an "antibody" in
sparda.json, so the same failure later costs zero tokens. Cloning your code doesn't clone its immune memory.
A free intelligence layer, zero API key
On first connection your AI client's own model (via MCP sampling) rewrites raw routes
into business-language tool descriptions and proposes multi-step workflows — cached in
sparda.json and exposed as MCP prompts. Nothing to configure, nothing to pay.
It gets cheaper the more you use it
- Response recycling. When a read keeps returning the same answer, SPARDA serves the next identical call straight from memory — without touching your host app. Reads only; writes always hit the host.
- A recycling gauge.
GET /mcp/statscounts how many calls were answered from SPARDA's own knowledge vs. how many paid the host route. It reads 0% on day one and fills with usage — a measure, never a promise.
Tools nobody wrote — Labs, opt-in, default OFF
Turn it on with "labs": { "recordSequences": true } in sparda.json. SPARDA then
notices when one tool's output feeds the next tool's input and records the circuit —
structure only (tool names, argument names, counts), never your data. A read-only
circuit seen enough times crystallizes into a composite tool, announced
mid-session: one call runs the whole chain, auto-feeding each step from the previous
step's real response. Write routes are never absorbed — their per-call confirmation
always stands.
Living context & telemetry
GET /mcp/stats (per-tool calls/errors, tool "purity", quarantine state) and
GET /mcp/events (errors, latency anomalies, cached diagnoses) expose exactly what
your app is doing — surfaced to the AI as live notifications.
Built for AI clients: the bundled Skill
SPARDA ships with an Agent Skill (SKILL.md) that teaches any compatible
AI client how to drive a SPARDA server to its full potential — call
sparda_get_context first, exploit response recycling, honor quarantine, prefer
crystallized circuits over re-walking a chain, and follow the two-phase write-confirm
protocol. The live, per-project tool list always comes from sparda_get_context at
runtime, so the guidance never goes stale.
Supported frameworks
Express 4/5 (JS/TS, ESM/CJS) and FastAPI today. We are actively expanding SPARDA internally to support more Node.js environments (including NestJS, Fastify, and Next.js API routes) in the near future.
Security posture (honest)
- 4 runtime dependencies, exact-pinned.
- Local key on every router call; self-reference loop protection; 30s timeouts; 8 KB output truncation.
- AST-positioned injection with backup and post-injection re-parse;
npx sparda-mcp removeleaves a clean git diff. - Persistence is value-free: SPARDA records structure (tool names, field names, fingerprints), never your payloads.
Full threat model and known gaps: docs/SECURITY.md.
Documentation
- docs/ARCHITECTURE.md — how
init, the injected router, and the bridge fit together, plus thesparda.jsonschema. - docs/SECURITY.md — threat model, defenses, and honest known gaps.
- docs/TESTING.md — how the promises above are kept honest in CI.
- docs/ERRORS.md — the error knowledge base.
Beyond the open core
SPARDA is free, including in production (see License). Team-scale capabilities — fine-grained per-person access policies and a signed, tamper-evident audit log — are planned for a future paid tier. The open core stands on its own; nothing here is crippled to upsell you.
License
Business Source License 1.1 — free to use, including in production. You may not resell SPARDA or offer it as a competing commercial service. Each version converts to Apache 2.0 four years after its release.
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