mcp-management
**Claude Code Skill: mcp-management** This skill manages Model Context Protocol (MCP) servers, enabling discovery and execution of available tools, prompts, and resources from configured servers. Use it when integrating with MCP implementations, discovering what capabilities are available across multiple servers, filtering tools for specific tasks, executing MCP tools programmatically, or avoiding context pollution by delegating MCP operations to subagents for intelligent task-based tool selection.
git clone --depth 1 https://github.com/mrgoonie/claudekit-skills /tmp/mcp-management && cp -r /tmp/mcp-management/.claude/skills/mcp-management ~/.claude/skills/mcp-managementSKILL.md
# MCP Management
Skill for managing and interacting with Model Context Protocol (MCP) servers.
## Overview
MCP is an open protocol enabling AI agents to connect to external tools and data sources. This skill provides scripts and utilities to discover, analyze, and execute MCP capabilities from configured servers without polluting the main context window.
**Key Benefits**:
- Progressive disclosure of MCP capabilities (load only what's needed)
- Intelligent tool/prompt/resource selection based on task requirements
- Multi-server management from single config file
- Context-efficient: subagents handle MCP discovery and execution
- Persistent tool catalog: automatically saves discovered tools to JSON for fast reference
## When to Use This Skill
Use this skill when:
1. **Discovering MCP Capabilities**: Need to list available tools/prompts/resources from configured servers
2. **Task-Based Tool Selection**: Analyzing which MCP tools are relevant for a specific task
3. **Executing MCP Tools**: Calling MCP tools programmatically with proper parameter handling
4. **MCP Integration**: Building or debugging MCP client implementations
5. **Context Management**: Avoiding context pollution by delegating MCP operations to subagents
## Core Capabilities
### 1. Configuration Management
MCP servers configured in `.claude/.mcp.json`.
**Gemini CLI Integration** (recommended): Create symlink to `.gemini/settings.json`:
```bash
mkdir -p .gemini && ln -sf .claude/.mcp.json .gemini/settings.json
```
See [references/configuration.md](references/configuration.md) and [references/gemini-cli-integration.md](references/gemini-cli-integration.md).
### 2. Capability Discovery
```bash
npx tsx scripts/cli.ts list-tools # Saves to assets/tools.json
npx tsx scripts/cli.ts list-prompts
npx tsx scripts/cli.ts list-resources
```
Aggregates capabilities from multiple servers with server identification.
### 3. Intelligent Tool Analysis
LLM analyzes `assets/tools.json` directly - better than keyword matching algorithms.
### 4. Tool Execution
**Primary: Gemini CLI** (if available)
```bash
gemini -y -m gemini-2.5-flash -p "Take a screenshot of https://example.com"
```
**Secondary: Direct Scripts**
```bash
npx tsx scripts/cli.ts call-tool memory create_entities '{"entities":[...]}'
```
**Fallback: mcp-manager Subagent**
See [references/gemini-cli-integration.md](references/gemini-cli-integration.md) for complete examples.
## Implementation Patterns
### Pattern 1: Gemini CLI Auto-Execution (Primary)
Use Gemini CLI for automatic tool discovery and execution. See [references/gemini-cli-integration.md](references/gemini-cli-integration.md) for complete guide.
**Quick Example**:
```bash
gemini -y -m gemini-2.5-flash -p "Take a screenshot of https://example.com"
```
**Benefits**: Automatic tool discovery, natural language execution, faster than subagent orchestration.
### Pattern 2: Subagent-Based Execution (Fallback)
Use `mcp-manager` agent when Gemini CLI unavailable. Subagent discovers tools, selects relevant ones, executes tasks, reports back.
**Benefit**: Main context stays clean, only relevant tool definitions loaded when needed.
### Pattern 3: LLM-Driven Tool Selection
LLM reads `assets/tools.json`, intelligently selects relevant tools using context understanding, synonyms, and intent recognition.
### Pattern 4: Multi-Server Orchestration
Coordinate tools across multiple servers. Each tool knows its source server for proper routing.
## Scripts Reference
### scripts/mcp-client.ts
Core MCP client manager class. Handles:
- Config loading from `.claude/.mcp.json`
- Connecting to multiple MCP servers
- Listing tools/prompts/resources across all servers
- Executing tools with proper error handling
- Connection lifecycle management
### scripts/cli.ts
Command-line interface for MCP operations. Commands:
- `list-tools` - Display all tools and save to `assets/tools.json`
- `list-prompts` - Display all prompts
- `list-resources` - Display all resources
- `call-tool <server> <tool> <json>` - Execute a tool
**Note**: `list-tools` persists complete tool catalog to `assets/tools.json` with full schemas for fast reference, offline browsing, and version control.
## Quick Start
**Method 1: Gemini CLI** (recommended)
```bash
npm install -g gemini-cli
mkdir -p .gemini && ln -sf .claude/.mcp.json .gemini/settings.json
gemini -y -m gemini-2.5-flash -p "Take a screenshot of https://example.com"
```
**Method 2: Scripts**
```bash
cd .claude/skills/mcp-management/scripts && npm install
npx tsx cli.ts list-tools # Saves to assets/tools.json
npx tsx cli.ts call-tool memory create_entities '{"entities":[...]}'
```
**Method 3: mcp-manager Subagent**
See [references/gemini-cli-integration.md](references/gemini-cli-integration.md) for complete guide.
## Technical Details
See [references/mcp-protocol.md](references/mcp-protocol.md) for:
- JSON-RPC protocol details
- Message types and formats
- Error codes and handling
- Transport mechanisms (stdio, HTTP+SSE)
- Best practices
## Integration Strategy
### Execution Priority
1. **Gemini CLI** (Primary): Fast, automatic, intelligent tool selection
- Check: `command -v gemini`
- Execute: `gemini -y -m gemini-2.5-flash -p "<task>"`
- Best for: All tasks when available
2. **Direct CLI Scripts** (Secondary): Manual tool specification
- Use when: Need specific tool/server control
- Execute: `npx tsx scripts/cli.ts call-tool <server> <tool> <args>`
3. **mcp-manager Subagent** (Fallback): Context-efficient delegation
- Use when: Gemini unavailable or failed
- Keeps main context clean
### Integration with Agents
The `mcp-manager` agent uses this skill to:
- Check Gemini CLI availability first
- Execute via `gemini` command if available
- Fallback to direct script execution
- Discover MCP capabilities without loading into main context
- Report results back to main agent
This keeps main agent context clean and enables efficient MCP integration.Manage MCP (Model Context Protocol) server integrations - discover tools/prompts/resources, analyze relevance for tasks, and execute MCP capabilities. Use when need to work with MCP servers, discover available MCP tools, filter MCP capabilities for specific tasks, execute MCP tools programmatically, or implement MCP client functionality. Keeps main context clean by handling MCP discovery in subagent context.
Stage all files and create a commit.
Stage, commit and push all code in the current branch
Create a pull request
Create a new agent skill
Utilize tools of Model Context Protocol (MCP) servers
Create aesthetically beautiful interfaces following proven design principles. Use when building UI/UX, analyzing designs from inspiration sites, generating design images with ai-multimodal, implementing visual hierarchy and color theory, adding micro-interactions, or creating design documentation. Includes workflows for capturing and analyzing inspiration screenshots with chrome-devtools and ai-multimodal, iterative design image generation until aesthetic standards are met, and comprehensive design system guidance covering BEAUTIFUL (aesthetic principles), RIGHT (functionality/accessibility), SATISFYING (micro-interactions), and PEAK (storytelling) stages. Integrates with chrome-devtools, ai-multimodal, media-processing, ui-styling, and web-frameworks skills.
Process and generate multimedia content using Google Gemini API. Capabilities include analyze audio files (transcription with timestamps, summarization, speech understanding, music/sound analysis up to 9.5 hours), understand images (captioning, object detection, OCR, visual Q&A, segmentation), process videos (scene detection, Q&A, temporal analysis, YouTube URLs, up to 6 hours), extract from documents (PDF tables, forms, charts, diagrams, multi-page), generate images (text-to-image, editing, composition, refinement). Use when working with audio/video files, analyzing images or screenshots, processing PDF documents, extracting structured data from media, creating images from text prompts, or implementing multimodal AI features. Supports multiple models (Gemini 2.5/2.0) with context windows up to 2M tokens.