Copick MCP Server
Enables read-only exploration of Copick cryo-ET projects and discovery/validation of copick CLI commands for building processing pipelines.
README
Copick MCP Server
A Model Context Protocol (MCP) server for Copick that provides two sets of tools:
- Data Exploration Tools - Browse and query copick project contents (read-only)
- CLI Introspection Tools - Discover and validate copick CLI commands for building processing pipelines
Features
- Read-only data exploration - List and inspect runs, picks, segmentations, meshes, tomograms, and project metadata
- CLI discovery - Dynamically discover all available copick CLI commands with full documentation
- Command validation - Validate copick CLI command syntax using Click's native parsing
- Smart caching - Efficient caching of copick project roots
- Easy setup - Simple CLI for registering with Claude Desktop or Claude Code
Installation
cd copick-mcp
pip install -e .
Quick Setup
Register with Claude Desktop
Use the copick CLI to register the MCP server with Claude Desktop:
# Basic setup (default settings)
copick setup mcp
# Setup with custom server name
copick setup mcp --server-name "my-copick-server"
# Setup with default config path (optional - can be provided per-request)
copick setup mcp --config-path "/path/to/default/config.json"
# Check registration status
copick setup mcp-status
After setup:
- Restart Claude Desktop completely
- The Copick MCP tools should now be available
- The server starts automatically when Claude Desktop connects
Register with Claude Code
The MCP server can also be registered with Claude Code, either globally or for a specific project:
# Global setup (available in all Claude Code sessions)
copick setup mcp --target code-global
# Project-specific setup (creates .mcp.json in current directory)
copick setup mcp --target code-project
# Project-specific setup for a different directory
copick setup mcp --target code-project --project-path /path/to/project
# Check status for Claude Code
copick setup mcp-status --target code-global
copick setup mcp-status --target code-project
Target options:
desktop(default) - Claude Desktop applicationcode-global- Claude Code global config (~/.claude.json)code-project- Claude Code project-specific config (.mcp.jsonin project root)
Manual Configuration (Optional)
If you prefer manual setup, add the following configuration to the appropriate file:
Claude Desktop:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%/Claude/claude_desktop_config.json - Linux:
~/.config/Claude/claude_desktop_config.json
Claude Code:
- Global:
~/.claude.json - Project-specific:
.mcp.jsonin your project root
{
"mcpServers": {
"copick-mcp": {
"command": "python",
"args": ["-m", "copick_mcp.main"],
"env": {}
}
}
}
Available Tools
Data Exploration Tools (Read-Only)
All data exploration tools require a config_path parameter pointing to your copick configuration file.
list_runs
List all runs in a Copick project.
- Args:
config_path(str) - Returns: List of run names
get_run_details
Get detailed information about a specific run including voxel spacings, picks, meshes, and segmentations.
- Args:
config_path(str),run_name(str) - Returns: Comprehensive run details
list_objects
List all pickable objects defined in the project.
- Args:
config_path(str) - Returns: List of objects with properties (name, type, label, color, radius, etc.)
list_picks
List picks for a run with optional filtering.
- Args:
config_path(str),run_name(str),object_name(optional),user_id(optional),session_id(optional) - Returns: List of picks with point counts and sample coordinates
list_meshes
List meshes for a run with optional filtering.
- Args:
config_path(str),run_name(str),object_name(optional),user_id(optional),session_id(optional) - Returns: List of meshes
list_segmentations
List segmentations for a run with optional filtering.
- Args:
config_path(str),run_name(str),voxel_size(optional),name(optional),user_id(optional),session_id(optional),is_multilabel(optional) - Returns: List of segmentations with metadata
list_tomograms
List tomograms for a specific run and voxel spacing.
- Args:
config_path(str),run_name(str),voxel_spacing(float) - Returns: List of tomograms with feature information
list_voxel_spacings
List all voxel spacings available for a run.
- Args:
config_path(str),run_name(str) - Returns: List of voxel spacings with tomogram counts
get_project_info
Get general project information and statistics.
- Args:
config_path(str) - Returns: Project metadata and entity counts
get_json_config
Get the raw JSON configuration of the project.
- Args:
config_path(str) - Returns: Complete configuration dictionary
CLI Introspection Tools
These tools help LLMs discover and validate copick CLI commands for building processing pipelines.
list_copick_cli_commands
List all available copick CLI commands hierarchically organized by group.
- Returns: Complete command tree including:
main: Core commands (add, browse, config, deposit, info, new, stats, sync)inference: Inference commands (e.g., membrain-seg)training: Training commandsevaluation: Evaluation commandsprocess: Processing commands (downsample, fit-spline, hull, skeletonize, etc.)convert: Conversion commands (picks2seg, mesh2seg, seg2picks, etc.)logical: Logical operations (clipmesh, clippicks, meshop, segop, etc.)
get_copick_cli_command_info
Get detailed information about a specific command.
- Args:
command_path(str) - e.g., "convert.picks2seg" or "add" - Returns: Full command details including:
- Help text and short description
- All parameters with types, defaults, and help text
- Required vs optional parameters
- Usage examples (if present in help)
- Command group
validate_copick_cli_command
Validate a copick CLI command string using Click's syntax validation.
- Args:
command_string(str) - e.g., "copick convert picks2seg --config /path/to/config.json ..." - Returns: Validation result including:
- Valid/invalid status
- Missing required parameters
- Parameter type errors
- Helpful error messages from Click
Usage Examples
Data Exploration Workflow
User: "Show me all runs in my copick project at /data/my_project/config.json"
Assistant uses: list_runs(config_path="/data/my_project/config.json")
User: "What picks are available for run TS_001?"
Assistant uses: list_picks(config_path="/data/my_project/config.json", run_name="TS_001")
User: "Show me only the ribosome picks from user 'annotator1'"
Assistant uses: list_picks(
config_path="/data/my_project/config.json",
run_name="TS_001",
object_name="ribosome",
user_id="annotator1"
)
CLI Discovery Workflow
User: "I want to convert picks to a segmentation. What copick command can do that?"
Assistant uses: list_copick_cli_commands()
# Discovers convert.picks2seg command
Assistant uses: get_copick_cli_command_info(command_path="convert.picks2seg")
# Gets full documentation and parameters
Assistant explains:
"The picks2seg command converts picks to segmentation by painting spheres at pick locations.
It requires:
- --config: Path to copick config
- --input: Picks URI (format: object_name:user_id/session_id)
- --output: Segmentation URI (format: name:user_id/session_id@voxel_spacing)
- --radius: Sphere radius in angstroms (default: 10.0)"
User: "Can you validate this command for me: copick convert picks2seg --config /data/config.json --input 'ribosome:user1/manual-001' --output 'ribosome:picks2seg/painted-001@10.0'"
Assistant uses: validate_copick_cli_command(
command_string="copick convert picks2seg --config /data/config.json --input 'ribosome:user1/manual-001' --output 'ribosome:picks2seg/painted-001@10.0'"
)# Returns validation result: valid=True if syntax is correct
Pipeline Building Workflow
User: "I want to build a pipeline that:
1. Converts ribosome picks to meshes
2. Computes the convex hull of those meshes
3. Converts the hulls to segmentations"
Assistant uses: list_copick_cli_commands()
# Discovers relevant commands in convert and process groups
Assistant uses: get_copick_cli_command_info(command_path="convert.picks2mesh")
Assistant uses: get_copick_cli_command_info(command_path="process.hull")
Assistant uses: get_copick_cli_command_info(command_path="convert.mesh2seg")
# Gets documentation for each command
Assistant suggests the pipeline:
"Here's a three-step pipeline for your workflow:
Step 1: Convert picks to meshes
copick convert picks2mesh --config /path/to/config.json \
--input 'ribosome:user1/manual-001' \
--output 'ribosome:pipeline/step1-meshes' \
--method convex_hull
Step 2: Compute convex hull (if not done in step 1)
copick process hull --config /path/to/config.json \
--input-mesh 'ribosome:pipeline/step1-meshes' \
--output-mesh 'ribosome:pipeline/step2-hulls'
Step 3: Convert meshes to segmentation
copick convert mesh2seg --config /path/to/config.json \
--input 'ribosome:pipeline/step2-hulls' \
--output 'ribosome:pipeline/final-seg@10.0'"
Management Commands
# Check MCP server status (Claude Desktop)
copick setup mcp-status
# Check status for Claude Code
copick setup mcp-status --target code-global
copick setup mcp-status --target code-project
# Remove MCP server configuration (Claude Desktop)
copick setup mcp-remove --server-name "copick-mcp"
# Remove from Claude Code
copick setup mcp-remove --server-name "copick-mcp" --target code-global
copick setup mcp-remove --server-name "copick-mcp" --target code-project
# Force removal without confirmation
copick setup mcp-remove --server-name "copick-mcp" --force
Troubleshooting
- "MCP server not found": Ensure you've restarted Claude Desktop completely after configuration
- "Python module not found": Verify the package is installed and the Python path is correct in the config
- "Permission denied": Check that the Claude config directory is writable
- "Invalid JSON": Use
copick setup mcp-statusto validate your configuration - "Command not found" during CLI introspection: Ensure copick and all plugin packages (copick-torch, copick-utils) are installed
- "setup command not found": Make sure copick-mcp is installed (
pip install -e .from the copick-mcp directory)
Development
# Install in development mode
cd copick-mcp
pip install -e ".[dev]"
# Format code
black src/
# Lint
ruff check --fix src/
# Run the server locally for testing
python -m copick_mcp.main
License
MIT License - See LICENSE file for details.
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