SymKit
БесплатноНе проверенMCP server for symbolic computation that enables AI agents to perform step-by-step derivations, transform formulas, and verify results with full provenance, com
Описание
MCP server for symbolic computation that enables AI agents to perform step-by-step derivations, transform formulas, and verify results with full provenance, combining natural language with formal mathematical operations.
README
Mathematica-style symbolic computation, powered by LLMs.
🌐 English | 简体中文
What if you had Mathematica's symbolic engine, driven by natural language?
Mathematica gave us precise symbolic math. LLMs gave us natural-language reasoning. SymKit combines both.
It is an MCP server that lets AI agents perform step-by-step symbolic derivations: calculate, transform, verify, and store formulas with full provenance — all through conversation.
┌────────────────────────────────────────────────────────────────────┐
│ │
│ You describe the math in plain English │
│ ↓ │
│ SymKit executes, verifies, and records every step │
│ ↓ │
│ You get an exact, reusable formula with an audit trail │
│ │
└────────────────────────────────────────────────────────────────────┘
Why SymKit?
| Traditional LLM | SymKit |
|---|---|
| ❌ "The answer is approximately..." | ✅ "The exact expression is..." |
| ❌ "Let me calculate that again" | ✅ Every step is recorded and verifiable |
| ❌ "I think these units work out" | ✅ Dimensional analysis checks every result |
| ❌ "Where did this formula come from?" | ✅ Full provenance: base formulas + derivation steps |
| ❌ Calculation is lost in chat history | ✅ Stored as reusable Markdown + YAML |
What it does
SymKit is not a formula database. It is a symbolic derivation engine that creates new formulas from existing ones.
Known formulas New formula
┌─────────────────┐ ┌────────────────────────────┐
│ F = -kx │ │ │
│ F = ma │ ──compose──▶ │ ω = √(k/m) │
│ d²x/dt² = a │ │ (simple harmonic oscillator) │
└─────────────────┘ └────────────────────────────┘
Use it for physics, engineering, chemistry, biology, economics — any domain where you need to combine and transform mathematical relationships.
⚡ Four superpowers
| Capability | What it means | Tools |
|---|---|---|
| Derive | Combine base formulas into new ones | derive, intent_execute, math |
| Control | Review, annotate, and rollback every step | session_*, *_step |
| Verify | Check correctness symbolically and dimensionally | session_verify_*, assume* |
| Ship | Turn results into Python, LaTeX, Markdown, or SymPy | generate_* |
🚀 See it in action
Derive a physical law from first principles:
User: Derive the angular frequency of a simple harmonic oscillator.
SymKit:
1. Load F = -kx and F = m·d²x/dt²
2. Substitute → m·d²x/dt² = -kx
3. Solve ODE → x(t) = A·cos(ωt + φ), ω = √(k/m)
4. Verify by substitution: d²x/dt² = -ω²x ✓
5. Store result with full derivation history
Build a custom engineering model:
User: Find the cutoff frequency of an RC high-pass filter.
SymKit:
1. Load Q = CV and V = IR
2. Derive capacitive reactance X_c = 1/(2πfC)
3. Set X_c = R at cutoff
4. Solve for f → f_c = 1 / (2πRC) ✓
Verify a calculus result:
User: Calculate and verify ∫(x² + 3x) dx.
→ Result: x³/3 + 3x²/2 + C
→ Verify: d/dx(x³/3 + 3x²/2) = x² + 3x ✓
🛠️ 41 MCP tools, one coherent workflow
SymKit exposes 41 MCP tools across 8 categories. Everything routes through a few high-level tools while power users can drop down to individual steps.
| Category | Tools | Count |
|---|---|---|
| Unified Math | math |
1 |
| Session Management | session_start, session_show, session_rollback, session_complete, ... |
17 |
| Assumptions | assume, show_assumptions, assume_for_step, list_assumptions, check_assumption_conflicts, clear_step_assumptions |
6 |
| Formula Search | formula_search, formula_get, formula_add, formula_categories |
4 |
| Symbol Registry | register_symbol, lookup_symbol, list_domain_symbols, check_symbol_conflicts |
4 |
| Code Generation | generate_python_function, generate_latex_derivation, generate_derivation_report, generate_sympy_script |
4 |
| Derivation & Orchestration | derive, intent_execute, list_patterns |
3 |
| Tool Discovery | tool_categories, tool_recommend |
2 |
The math() tool alone covers ~25 symbolic operations — calculus, ODEs, matrices, vector analysis, integral transforms — and can write its result directly into a derivation session.
🔍 Formula search workflow
SymKit can pull authoritative formulas from Wikidata and physical constants from SciPy, normalize LLM queries automatically, and load the chosen formula straight into a derivation session.
Recommended workflow:
1. Search
formula_search("Navier-Stokes equations", domain="fluid_dynamics")
2. Get and load
formula_get("Q201321", source="wikidata", load_into_session=True)
3. Derive
math("simplify", "...", session=True)
4. Complete
session_complete(description="Incompressible NS momentum equation")
Query normalization: you can write queries naturally — fluid_dynamics, fluid mechanics, and cfd all resolve to the same domain; Navier–Stokes (en dash) and Navier-Stokes (hyphen) match the same Wikidata item.
MathML handling: Wikidata sometimes returns rendered MathML for search previews. Call formula_get on the result ID to retrieve the original LaTeX and a SymPy-ready string.
🎛️ You own every step
A derivation in SymKit is a chain of immutable, verifiable steps. You can:
- Create —
session_record_step - Read —
session_get_steps,session_show - Annotate —
session_add_note - Rollback —
session_rollback - Verify —
session_verify_step,session_verify_session
Expressions are never edited in place. If something goes wrong, roll back to the last good state and continue. This keeps the entire derivation reproducible.
🌍 Works with the MCP ecosystem
SymKit is designed to extend, not replace, your scientific computing stack. It handles derivation, verification, and provenance; raw symbolic computation and base formulas are delegated to SymPy-MCP.
When to use SymKit:
- ✅ Deriving new formulas from existing ones
- ✅ Building temperature/pressure/parameter-corrected models
- ✅ Creating custom models for any quantitative domain
- ✅ Producing verified, citable derivation results
When to use something else:
- ❌ Looking up basic physics formulas → use
sympy-mcp - ❌ Fetching physical constants → use
sympy-mcporSciPy - ❌ Clinical scoring → use
medical-calc-mcp - ❌ Reading textbook formulas → use the reference directly
📦 Get started in 60 seconds
Requirements
- Python 3.10+
- An MCP-compatible client: Claude Desktop, Claude Code, Cherry Studio, …
- uv (recommended) or pip
Step 1 — Install SymKit
Pick one of the three install paths below. Each produces a runnable
symkit-mcp command you point your MCP client at in Step 3.
Option A — uv (recommended)
uv is a fast Python package manager. Install SymKit as an isolated global CLI tool — no virtualenv to manage, no clashes with your system Python:
# 1. Install uv itself (if you don't have it yet)
# macOS / Linux:
curl -LsSf https://astral.sh/uv/install.sh | sh
# Windows (PowerShell):
powershell -c "irm https://astral.sh/uv/install.ps1 | iex"
# 2. Install SymKit as a global CLI tool
uv tool install symkit-mcp
# 3. Verify it's on your PATH
symkit-mcp --version
uv tool install places a symkit-mcp entry point on your PATH. Upgrade later
with uv tool upgrade symkit-mcp, and uninstall with uv tool uninstall symkit-mcp.
No-install alternative:
uvx symkit-mcpruns the latest published release on the fly, caching it behind the scenes. Useful for one-off runs or for the MCP client config in Step 3 — nouv tool installrequired.
Option B — pip
# Install
pip install symkit-mcp
# Verify
symkit-mcp --version
Prefer pipx (pipx install symkit-mcp) if
you want each CLI tool in its own isolated environment.
Option C — From source (development or unreleased changes)
git clone https://github.com/LBurny/symkit-mcp.git
cd symkit-mcp
# Install the project + dev/test extras into a local .venv
uv sync --all-extras
# Run the server straight from the checkout — no install step needed
uv run symkit-mcp
uv run executes against the local source tree, so you can edit and re-run
immediately. Pull the latest deps after changing pyproject.toml with
uv sync.
Step 2 — Where data lives
After install, SymKit stores runtime data in a per-user directory (resolved via
platformdirs): derived formulas and session JSONs persist under
~/.local/share/symkit/ (Linux), %LOCALAPPDATA%\symkit (Windows), or
~/Library/Application Support/symkit (macOS). Set the SYMKIT_DATA_DIR
environment variable to override this location. Seed formulas (Reynolds number,
Navier-Stokes, …) ship read-only inside the package; user-added formulas via
formula_add are written to the writable overlay and override seeds by id.
Step 3 — Connect to your client
SymKit speaks MCP over stdio, so the same server works with every MCP-compatible client. Below is the JSON config for Claude Desktop and Cherry Studio.
Claude Desktop / Cherry Studio (JSON config)
Add an mcpServers entry to your client's config file (claude_desktop_config.json
for Claude Desktop; the equivalent settings panel for Cherry Studio).
Installed via uv tool / pip / pipx (the symkit-mcp command is on PATH):
{
"mcpServers": {
"symkit": {
"command": "symkit-mcp",
"args": []
}
}
}
Run on the fly without installing (uvx pulls and caches the latest release):
{
"mcpServers": {
"symkit": {
"command": "uvx",
"args": ["symkit-mcp"]
}
}
}
Running from a local source checkout (no install needed):
{
"mcpServers": {
"symkit": {
"command": "uv",
"args": [
"run",
"--no-sync",
"--directory",
"<your-local-symkit-mcp-path>",
"python",
"-m",
"symkit_mcp.server"
]
}
}
}
Replace <your-local-symkit-mcp-path> with the absolute path to your local
symkit-mcp clone. --no-sync skips dependency resolution on every launch;
run uv sync manually when dependencies change.
Windows PATH gotcha: if Claude Desktop fails to launch the server with a "command not found" error, the app's process PATH may not include your
Scripts/or uv tool directory. Switch thecommandto an absolute path, e.g."C:/Users/you/AppData/Local/uv/tools/symkit-mcp/Scripts/symkit-mcp.exe".
🏗️ Clean architecture, built to extend
symkit-mcp/
├── src/
│ ├── symkit/ # Pure domain logic (no MCP dependency)
│ │ ├── domain/ # Entities, value objects, derivation engine
│ │ ├── application/ # Use cases
│ │ └── infrastructure/ # SymPy engine, adapters, persistence
│ └── symkit_mcp/ # MCP server layer
│ ├── server.py
│ └── tools/ # 41 MCP tools
├── formulas/ # Seed formula library (source tree)
├── tests/ # 295 tests
└── pyproject.toml
- Domain-driven design — core logic is independent of MCP and SymPy.
- Pluggable engines — swap the symbolic engine or verifier via protocols.
- File-based persistence — formulas and sessions live in readable Markdown/YAML/JSON.
🧪 Development
# Run the full test suite
uv run pytest
# Lint and type check
uv run ruff check src/ tests/
uv run mypy src/
# Start the dev server
uv run symkit-mcp
📖 Learn more
- Architecture — DDD layering and responsibilities
- SymKit Design — In-depth technical design (English)
- SymKit Design (中文) — 中文设计文档
- SymKit vs SymPy-MCP — Capability comparison
- Roadmap — What's coming next
🙏 Acknowledgments
SymKit is built on the foundation of nsforge-mcp, which pioneered the neurosymbolic formula-derivation approach. The original Chinese README of nsforge-mcp can be found here.
SymKit works alongside sympy-mcp, which provides the underlying SymPy-based symbolic computation and base formula lookup that SymKit builds upon.
📄 License
Apache 2.0 — see LICENSE.
Stop answering math questions. Start deriving new knowledge.
Установка SymKit
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/LBurny/symkit-mcpFAQ
SymKit MCP бесплатный?
Да, SymKit MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для SymKit?
Нет, SymKit работает без API-ключей и переменных окружения.
SymKit — hosted или self-hosted?
Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.
Как установить SymKit в Claude Desktop, Claude Code или Cursor?
Открой SymKit на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
Похожие MCP
Fetch
Web content fetching and conversion for efficient LLM usage.
AWS KB Retrieval
Retrieval from AWS Knowledge Base using Bedrock Agent Runtime.
автор: 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
автор: xuzexin-hzCompare SymKit with
Не уверен что выбрать?
Найди свой стек за 60 секунд
Автор?
Embed-бейдж для README
Похожее
Все в категории ai
