ftc-mcp
MCP server that injects verified FTC documentation and code examples into AI assistants, enabling teams to write correct, competition-ready Java robot code through natural language.
README
ftc-mcp
MCP server that gives AI coding assistants deep knowledge of the FTC Robot Controller ecosystem. Enables teams to "vibe code" their robots through natural language while producing correct, optimized, competition-ready Java code.
The problem: AI assistants hallucinate wrong Pedro Pathing APIs (training data is outdated), don't know the @Config + public static dashboard pattern, use wrong import paths, and can't see your project structure.
The fix: This MCP server injects 9,500+ lines of verified FTC documentation, API references, and working code examples directly into your AI assistant's context.
One-Click Install
Claude Code
claude mcp add ftc -- npx ftc-mcp
Cursor (Manual)
Or use the one-click button above.
Add to ~/.cursor/mcp.json:
{
"mcpServers": {
"ftc": {
"command": "npx",
"args": ["-y", "ftc-mcp"]
}
}
}
VS Code (Copilot)
Or add to .vscode/mcp.json:
{
"servers": {
"ftc": {
"command": "npx",
"args": ["-y", "ftc-mcp"]
}
}
}
Windsurf
Add to your Windsurf MCP config:
{
"mcpServers": {
"ftc": {
"command": "npx",
"args": ["-y", "ftc-mcp"]
}
}
}
Any MCP Client (.mcp.json)
Drop this file in your project root:
{
"mcpServers": {
"ftc": {
"command": "npx",
"args": ["-y", "ftc-mcp"]
}
}
}
From Source
git clone https://github.com/jackulau/ftcMCP.git
cd ftcMCP
npm install
npm run build
# Then add to your AI client:
claude mcp add ftc -- node /path/to/ftcMCP/build/index.js
What It Provides
49 Resources (Documentation)
Contextual docs the AI pulls in when writing FTC code:
| Category | Resources | Coverage |
|---|---|---|
| Pedro Pathing 2.1 | 7 | Complete API (Follower, PathBuilder, PathChain, BezierLine/Curve), Constants builder pattern, coordinate system [0,144], auto FSM structure, TeleOp drive, callbacks, v2.1 release notes (predictive braking, swerve, auto-offsets tuner) |
| FTC Dashboard | 6 | @Config + public static pattern, copy semantics pitfall, MultipleTelemetry, TelemetryPacket, Canvas field overlay API, camera streaming, setup |
| Panels (by Lazar) | 8 | Overview & comparison with FTC Dashboard, setup & Gradle config, @Configurable live tuning, PanelsTelemetry, PanelsField canvas drawing, Limelight proxy, plugin architecture, gamepad support |
| Gradle | 5 | Project file structure, adding libraries step-by-step, exact Maven coordinates for every library, common issues (compileSdk 34 for Pedro), build process |
| Hardware | 17 | DcMotor/DcMotorEx full API, RunModes, motor specs (every goBILDA/REV CPR), servos, IMU, distance/color/touch sensors, encoders (port 0+3 vs 1+2), GoBilda Pinpoint, SparkFun OTOS, REV Hub internals, bulk reads, CachingHardware, custom wrapper patterns, VisionPortal + Limelight |
| Core SDK | 5 | OpMode lifecycle (iterative vs linear), hardwareMap patterns, gamepad API, best practices |
| Road Runner | 1 | Actions API, TrajectoryActionBuilder |
| FTCLib | 1 | Command-based framework, GamepadEx, triggers |
MCP Spec Compliance
| Feature | Status |
|---|---|
| Protocol version | 2025-11-25 (latest) |
tools capability |
✓ with outputSchema + structuredContent + annotations |
resources capability |
✓ template-based (9 categories, 1 template each) |
prompts capability |
✓ all 11 prompts use registerPrompt |
completions capability |
✓ prompt args + resource template {topic} autocomplete |
logging capability |
✓ declared, available for client-subscribed diagnostics |
3 Tools (context-optimized, SDK 1.29 with outputSchema + structuredContent)
| Tool | What It Does |
|---|---|
scan_project |
Scans your TeamCode directory -- detects SDK version, installed libraries (Pedro, Dashboard, Panels, RoadRunner, FTCLib, SolversLib, CachingHardware), existing OpModes, hardware devices, and Pedro Constants. Returns typed structuredContent. Call at the start of every session. |
search_knowledge |
Single entry point for the entire knowledge base. Tries exact example match → device API reference → full-text search across all categories. |
validate_ftc_code |
Checks code for common FTC mistakes: missing follower.update(), @Config with final, Thread.sleep in iterative OpMode, Pedro v1 imports, copy semantics, bulk-cache misuse, SolversLib/FTCLib coexistence, gamepad Y inversion, CommandOpMode super.run() gaps. Returns typed structuredContent with severity-classified issues. |
10 Complete Code Examples
Every example is a full, compilable Java file with package declaration, all imports, and working code:
| Topic | Description |
|---|---|
pedro-auto |
Pedro Pathing autonomous with FSM state machine, path callbacks, @Config tunable poses, field overlay |
pedro-teleop |
Pedro TeleOp with setTeleOpDrive(), slow mode, bulk reads, loop timer |
pedro-constants |
Complete Constants.java with FollowerConstants, MecanumConstants, PinpointConstants builders |
dashboard-config |
@Config demonstration with correct/wrong copy semantics examples |
bulk-reads |
Optimized OpMode with LynxModule MANUAL + CachingHardware |
subsystem |
Hardware subsystem class with @Config positions, state methods |
pid-tuning |
Live PID tuning with dashboard-graphed error/output |
vision-pipeline |
VisionPortal + AprilTag processor with dashboard camera stream |
custom-pid-drive |
Encoder-based autonomous with IMU heading PID (no pathing library) |
field-centric-drive |
Field-centric mecanum TeleOp using IMU |
11 Workflow Prompts
Structured instructions that guide the AI through complex FTC tasks:
| Prompt | Description |
|---|---|
setup-ftc-project |
Guided project init: choose pathing lib, configure Gradle, add dashboard |
create-autonomous |
Full auto creation: poses, paths, FSM, callbacks, dashboard telemetry |
create-teleop |
TeleOp: drive type, subsystems, gamepad bindings, slow mode |
create-subsystem |
Hardware subsystem with @Config tuning, state methods |
tune-pid |
PID tuning with dashboard live graphing |
optimize-performance |
Bulk reads, CachingHardware, loop timer, I2C reduction |
add-dashboard-tuning |
Add @Config live-tunable variables to existing code |
setup-command-based |
Command-based project with SolversLib: subsystems, commands, gamepad bindings |
build-and-deploy |
Build + deploy workflow for VS Code, Android Studio, IntelliJ, or CLI |
setup-vision |
VisionPortal + Limelight 3A: AprilTag and color detection |
setup-gradle |
Configure Gradle deps for any combination of FTC libraries |
Supported Libraries
| Library | Version | Knowledge Depth |
|---|---|---|
| FTC SDK | 11.1.0 | Full hardware API, OpMode lifecycle, gamepad, telemetry |
| Pedro Pathing | 2.1.2 | Complete v2.0+ API with builder patterns; v2.1 notes for predictive braking + swerve (NOT the outdated v1.x) |
| FTC Dashboard | 0.5.1 | @Config, MultipleTelemetry, Canvas, camera streaming |
| Panels | 1.0.12 | @Configurable, PanelsTelemetry, PanelsField, Limelight proxy, plugin architecture, gamepads, capture/replay |
| Road Runner | 1.0.x | Actions API, TrajectoryActionBuilder |
| CachingHardware | 1.0.0 | Write caching algorithm, drop-in wrappers |
| FTCLib | 2.1.1 | Command-based framework, GamepadEx |
Supported Hardware
Full API documentation and initialization patterns for:
- Motors: DcMotor, DcMotorEx, all RunModes, PIDF coefficients, every goBILDA/REV/NeveRest motor with exact CPR
- Servos: Servo, ServoImplEx (PWM range), CRServo, power pairing rules
- Sensors: REV IMU, Color Sensor V3, 2m Distance Sensor, Touch Sensor, Through Bore Encoder
- Localizers: goBILDA Pinpoint (full driver API, offsets, status enum), SparkFun OTOS (scalars, calibration)
- Vision: VisionPortal, AprilTagProcessor, Limelight 3A
- REV Hub: LynxModule bulk reads (OFF/AUTO/MANUAL), I2C timing, encoder port hardware vs software decoding
Example Vibe Coding Sessions
"Set up my project with Pedro Pathing and Dashboard"
AI calls
scan_project-> readsftc://gradle/all-library-coords-> editsbuild.dependencies.gradlewith exact repos and versions -> changescompileSdkto 34 -> creates Constants.java with builder pattern
"Create an autonomous that scores 3 samples"
AI reads
ftc://pedro/api-reference+ftc://pedro/auto-structure-> generates complete OpMode with @Config tunable poses, FSM state machine, path callbacks, MultipleTelemetry, field overlay
"My loop times are slow"
AI reads
ftc://hardware/bulk-reads+ftc://hardware/caching-hardware-> adds LynxModule MANUAL + CachingDcMotorEx + loop timer telemetry
"Add a dashboard variable so I can tune arm position"
AI reads
ftc://dashboard/config-pattern-> adds@Configclass withpublic static double ARM_POSITION = 0.5;-> warns about reading it fresh each loop (copy semantics)
Project Structure
ftc-mcp/
├── src/
│ ├── index.ts # Entry point (stdio transport)
│ ├── server.ts # McpServer setup
│ ├── knowledge/
│ │ ├── pedro.ts # Pedro Pathing 2.0 (1,550 lines)
│ │ ├── hardware.ts # Full hardware stack (1,479 lines)
│ │ ├── examples.ts # 10 complete code examples (1,396 lines)
│ │ ├── ftc-sdk.ts # SDK patterns (881 lines)
│ │ ├── dashboard.ts # FTC Dashboard (845 lines)
│ │ ├── panels.ts # Panels by Lazar — all-in-one dashboard
│ │ ├── ftclib.ts # FTCLib framework (636 lines)
│ │ ├── gradle.ts # Gradle build system (584 lines)
│ │ └── roadrunner.ts # Road Runner (478 lines)
│ ├── resources/registry.ts # 41 resource URI registrations
│ ├── tools/registry.ts # 6 tool implementations
│ └── prompts/registry.ts # 8 workflow prompts
├── package.json
└── tsconfig.json
Development
npm install
npm run build # Compile TypeScript
npm run dev # Watch mode
npm start # Run the server
Requirements
- Node.js >= 18
- An MCP-compatible AI client (Claude Code, Cursor, VS Code Copilot, etc.)
License
MIT
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