FermatMCP
The Ultimate Math Engine - Unifying SymPy, NumPy & Matplotlib in one powerful server! Perfect for devs & researchers.
Fermat MCP
This project provides a FastMCP server for mathematical computations, including numerical and symbolic calculations, as well as plotting.
Modules
1. mpl_mcp - Matplotlib Integration
| Feature | Description |
|---|---|
plot_barchart | Plots bar charts of given data values |
plot_scatter | Creates scatter plots from data points |
plot_chart | Plots line, scatter, or bar charts |
plot_stem | Creates stem plots for discrete data |
plot_stack | Generates stacked area/bar charts |
eqn_chart | Plots mathematical equations |
2. numpy_mcp - NumPy Integration
| Category | Operations |
|---|---|
| Basic Math | add, sub, mul, div, power, abs, exp, log, sqrt |
| Trigonometric | sin, cos, tan |
| Statistics | mean, median, std, var, min, max, argmin, argmax, percentile |
| Linear Algebra | dot, matmul, inv, det, eig, solve, svd |
| Matrix Operations | create, zeros, ones, full, arange, linspace |
| Array Manipulation | reshape, flatten, concatenate, transpose, stack |
3. sympy_mcp - SymPy Integration
| Category | Operations |
|---|---|
| Algebra | simplify, expand, factor, collect |
| Calculus | diff, integrate, limit, series |
| Equations | solve, solveset, linsolve, nonlinsolve |
| Matrix Operations | create, det, inv, rref, eigenvals |
Setup
Requirements
-
Python 3.12 or higher (To install Python3.12 follow Python Download)
-
uv (To install uv follow uv Installation)
Clone the repository
git clone https://github.com/abhiphile/fermat-mcp
Visual Studio Code, Windsurf
You can find the mcp.json file in the
MCP: Open User Configuration or MCP: Open Workspace Configuration

Add the following to your mcp.json:
{
"mcpServers": {
"fmcp": {
"command": "bash",
"args": ["MCP_SERVER_ABSOLUTE_PATH/setup.sh"],
"description": "fmcp server is for mathematical computations, including numerical and symbolic calculations, as well as plotting."
}
}
}
Claude (Anthropic)
If you're using Claude or the Anthropic MCP client, add this working MCP configuration to your mcp.json (update the directory path to your local clone):
{
"mcpServers": {
"fmcp": {
"command": "uv",
"args": [
"--directory",
"/home/ty/Repositories/fermat-mcp",
"run",
"server.py"
]
}
}
}
Gemini CLI
-
Open your Gemini settings JSON located in ~/.gemini/settings.json where ~ is your home directory.
-
Add the following to your settings.json:
{
"mcpServers": {
"fmcp": {
"command": "bash",
"args": ["MCP_SERVER_ABSOLUTE_PATH/setup.sh"],
"description": "fmcp server is for mathematical computations, including numerical and symbolic calculations, as well as plotting."
}
}
}
Installing via Smithery
To install Fermat MCP for local usage automatically via Smithery:
npx -y @smithery/cli install @abhiphile/fermat-mcp --client gemini
Example Usage
- Using Gemini CLI
╭──────────────────────────────────────────────────────────────────────────────────────────────────────────────╮
│ > Can you use fmcp server and using numpy method find the eigen values of this 8*8 matrix, |
│ 2 1 3 1 1 8 4 2 |
│ 6 6 0 7 1 4 6 1 │
│ 9 2 1 8 7 9 9 0 │
│ 2 5 6 6 9 8 0 1 │
│ 1 3 6 2 3 8 8 1 │
│ 9 4 2 2 1 2 2 9 │
│ 8 6 4 4 2 0 2 8 │
│ 0 0 0 6 6 7 5 6 │
╰──────────────────────────────────────────────────────────────────────────────────────────────────────────────╯
╭─────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────╮
│ ✔ numpy_mcp_numerical_operation (fmcp MCP Server) {"a":[[2,1,3,1,1,8,4,2],[6,6,0,7,1,4,6,1],[9,2,1,8,7,9,9,0],[2,5,6,6,9,8,0,1],[1,3,… │
│ │
│ {"eigenvalues":["32.077244457548815+0j","-11.531090644775198+0j","-6.6653982146786195+0j","0.6715984762411508+3.37024850 │
│ 10270413j","0.6715984762411508-3.3702485010270413j","4.541270555490195+2.776364664923869j","4.541270555490195-2.77636466 │
│ 4923869j","3.6935063384423428+0j"],"eigenvectors":[["-0.23263835483680192+0j","-0.2264723575289234+0j","-0.4308391916391 │
│ 0195+0j","-0.012346573390129022+0.17748655663058255j","-0.012346573390129022-0.17748655663058255j","-0.21221572277027187 │
│ +0.3524396218277479j","-0.21221572277027187-0.3524396218277479j","0.3451499664861578+0j"],["-0.31955742545335186+0j","-0 │
│ .2569860493445581+0j","0.05691886770041556+0j","-0.35591013681869693-0.2242364092694275j","-0.35591013681869693+0.224236 │
│ 4092694275j","0.1932161673963751-0.39527849111641133j","0.1932161673963751+0.39527849111641133j","-0.7979681696063214+0j │
│ "],["-0.46626263247473404+0j","-0.4684914620112376+0j","0.5469400556350749+0j","0.34325164099973565+0.06607019711949293j │
│ ","0.34325164099973565-0.06607019711949293j","0.21312270185159682+0.28822307710358636j","0.21312270185159682-0.288223077 │
│ 10358636j","0.42707422750984786+0j"],["-0.41589316441674523+0j","0.2291771012892302+0j","0.09410792992600435+0j","0.6375 │
│ 92441360358+0j","0.637592441360358+-0j","0.46446646137729414+0j","0.46446646137729414+-0j","0.08171661775583623+0j"],["- │
│ 0.35812884189789035+0j","-0.26551071423139044+0j","-0.649979374400915+0j","-0.2999153430497845+0.20110182336747695j","-0 │
│ .2999153430497845-0.20110182336747695j","0.04424367733961273-0.020400357434930304j","0.04424367733961273+0.0204003574349 │
│ 30304j","-0.037276545325188024+0j"],["-0.3042416233100104+0j","0.4027405071320744+0j","0.2343447346668298+0j","-0.119224 │
│ 87219398595+0.10317726668781271j","-0.11922487219398595-0.10317726668781271j","-0.3387759141362585+0.15790241128043445j" │
│ ,"-0.3387759141362585-0.15790241128043445j","0.11473144194899779+0j"],["-0.35389732755448017+0j","0.5359362131480812+0j" │
│ ,"0.13989902586074168+0j","-0.16008513226461316-0.26111873108374495j","-0.16008513226461316+0.26111873108374495j","0.055 │
│ 729749650881726-0.22748184206919145j","0.055729749650881726+0.22748184206919145j","-0.19838514696566653+0j"],["-0.327615 │
│ 5213691367+0j","-0.30122843153433887+0j","0.07858579556736099+0j","0.00042251379361638556-0.11670182367986544j","0.00042 │
│ 251379361638556+0.11670182367986544j","-0.18590228871569267-0.2479130526139182j","-0.18590228871569267+0.247913052613918 │
│ 2j","-0.03374593856285834+0j"]]} │
╰─────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────╯
✦ Of course, I can do that. Here are the eigenvalues for the given matrix:
32.077244457548815
-11.531090644775198
-6.6653982146786195
0.6715984762411508 + 3.3702485010270413j
0.6715984762411508 - 3.3702485010270413j
4.541270555490195 + 2.776364664923869j
4.541270555490195 - 2.776364664923869j
3.6935063384423428
- Using Visual Studio Code, Windsurf
Here the task was to plot both x**2 and sin(x) in the same plot.

Servidores relacionados
DrainBrain MCP Server
Solana token rug-pull detection via ML ensemble (XGBoost + GRU temporal)
Taiwan-Health-MCP
A Model Context Protocol (MCP) server exposing Taiwan healthcare datasets such as ICD-10 and drug information for AI agents.
企业经营分析洞察服务
Provides in-depth analysis of enterprise operations, including business status, development, and market performance.
Maker MCP Server
DAI stability data, vault info, and governance parameters on MakerDAO.
ImageMagick
An MCP server for image conversion using ImageMagick and darktable.
Pace
Pace is the first MCP connector that brings wearable health data directly into Claude — no third-party dashboards, no manual exports, no extra apps. Most health apps lock your data behind their own UI. Pace breaks that wall: connect once, and Claude can analyze your sleep, activity, workouts, nutrition and recovery in natural language — with full visualizations inline.
mycop
AI code security scanner with 100 built-in rules covering OWASP Top 10 and CWE Top 25
Polar MCP Server
MCP server for Polar AccessLink API to export data from Polar watches.
Sweeppea MCP
Manage sweepstakes, participants, and winner drawings with legal compliance in the US and Canada directly from your AI agent. Access requires an active Sweeppea subscription and API Key.
Phone Carrier Detector
Detects Chinese mobile phone carriers, including China Mobile, China Unicom, China Telecom, and virtual carriers.