mcp-toolz
mcp-toolz is an MCP server for Claude Code that provides persistent context and todo management with multi-AI feedback capabilities.
Context Management: Save, search, list, get, and delete development contexts (conversations, code, suggestions, errors) with titles, content, tags, and automatic session/project tracking.
Todo Management: Save, restore, search, list, get, and delete todo snapshots with items containing content, status (pending/in_progress/completed), and activeForm metadata.
AI Feedback: Query ChatGPT, Claude, Gemini, and DeepSeek for analysis or second opinions on saved contexts with custom questions.
Session Continuity: Automatically tracks session IDs, timestamps, and project paths to restore work state across Claude Code restarts.
Project Organization: Filter and organize contexts and todos by project directory with full-text search capabilities.
Cross-Session Sharing: Shared SQLite database enables data synchronization across multiple sessions and machines (e.g., via cloud storage).
Passive Discovery: Provides MCP resources (mcp-toolz://contexts/..., mcp-toolz://todos/...) for automatic display of recent project contexts and active todo lists without explicit tool calls.
Allows querying Gemini AI models for analysis and feedback on saved contexts, with support for custom questions about code, architecture decisions, and debugging.
Allows querying ChatGPT models for analysis and feedback on saved contexts, with support for custom questions about code, architecture decisions, and debugging.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@mcp-toolzsave this context about implementing user authentication"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
MCP Toolz
mcp-name: io.github.taylorleese/mcp-toolz
MCP server for Claude Code that provides multi-LLM feedback tools.
Features
Multi-LLM Feedback: Get second opinions from ChatGPT (OpenAI), Gemini (Google), and DeepSeek
MCP Integration: Works with Claude Code via the Model Context Protocol
Related MCP server: Todoist MCP
Quick Start
Installation
From PyPI (Recommended)
pip install mcp-toolzFrom Source (Development)
# Clone the repository
git clone https://github.com/taylorleese/mcp-toolz.git
cd mcp-toolz
# Create and activate virtual environment
python3 -m venv venv
source venv/bin/activate # macOS/Linux
# or: venv\Scripts\activate # Windows
# Install in editable mode with dev dependencies
pip install -e ".[dev]"Configuration
# Set your API keys as environment variables (at least one required for AI feedback tools)
export OPENAI_API_KEY=sk-... # For ChatGPT
export GOOGLE_API_KEY=... # For Gemini
export DEEPSEEK_API_KEY=sk-... # For DeepSeek
# Or create a .env file (if installing from source)
cp .env.example .env
# Edit .env and add your API keysMCP Server Setup
Add to your Claude Code MCP settings:
If installed via pip:
{
"mcpServers": {
"mcp-toolz": {
"command": "python",
"args": ["-m", "mcp_server"],
"env": {
"OPENAI_API_KEY": "sk-...",
"GOOGLE_API_KEY": "...",
"DEEPSEEK_API_KEY": "sk-..."
}
}
}
}If installed from source:
{
"mcpServers": {
"mcp-toolz": {
"command": "python",
"args": ["-m", "mcp_server"],
"cwd": "/absolute/path/to/mcp-toolz",
"env": {
"PYTHONPATH": "/absolute/path/to/mcp-toolz/src"
}
}
}
}Restart Claude Code to load the MCP server.
MCP Server Tools
AI Feedback Tools
Get second opinions from multiple LLMs on code, architecture decisions, and implementation plans:
ask_chatgpt- Get ChatGPT's analysis (supports custom questions)ask_gemini- Get Gemini's analysis (supports custom questions)ask_deepseek- Get DeepSeek's analysis (supports custom questions)
Claude Code plugins
This repo doubles as a Claude Code plugin marketplace. Install all four with:
/plugin marketplace add taylorleese/mcp-toolz
/plugin install mcp-toolz-server@mcp-toolz
/plugin install precommit-detect@mcp-toolz
/plugin install revise-all-docs@mcp-toolz
/plugin install resolve-github-alerts@mcp-toolzmcp-toolz-server
Installs the mcp-toolz MCP server in Claude Code without manual editing of ~/.claude.json. Once installed, the three tools (ask_chatgpt, ask_gemini,
ask_deepseek) are available to the model in any Claude Code session. The plugin runs the server via uvx --from mcp-toolz python -m mcp_server, so PyPI
is still the underlying distribution channel — this is purely an installation-ergonomics layer for Claude Code users.
Required env vars (set in your shell or via direnv/.envrc): OPENAI_API_KEY, GOOGLE_API_KEY, DEEPSEEK_API_KEY. Each is independently optional — the
corresponding tool just returns an error if its key is unset.
For Cursor / Zed / Claude Desktop users: keep configuring the MCP server manually via your client's standard mechanism. Claude Code plugins don't propagate to other clients.
precommit-detect
Read-only check for pre-commit setup state. Registers SessionStart and PostToolUse:EnterWorktree hooks that detect whether the current repo's
.pre-commit-config.yaml is wired up — pre-commit binary present, .git/hooks/pre-commit installed, Docker daemon reachable when the config requires it.
When something is missing, the hook surfaces the gap as additionalContext so Claude can walk you through approval-gated installs (one prompt per missing
item — never auto-installs).
revise-all-docs
Two ways to keep CLAUDE.md, README.md, and docs/**/*.md in sync — pick by intent.
/revise-all-docs — "I just finished some work. Capture what we learned."
Reads the current conversation, pulls out commands discovered, gotchas hit, and patterns enforced, and proposes additions to the right doc file
for each finding (project-internal context → CLAUDE.md, user-facing onboarding → README.md, deeper how-to → docs/). Run this at the end of
a session that uncovered something worth recording.
/improve-all-docs — "Forget the session. Audit the docs as they stand today."
Statically scans every doc file, scores each against type-appropriate rubrics (install steps actually work? public command/API surface complete? versions and paths current? intra-doc links resolve? duplicated content?), then proposes targeted fixes — including deletions of stale or duplicated content, not just additions. Run this during cleanup passes, before a release, or when docs feel out of sync with the code.
The all-docs-improver skill is the same audit auto-invoked when you ask in plain language ("are my docs up to date?", "check the README and
docs"). The slash command is explicit; the skill is hands-free.
Required dependency
Both surfaces delegate CLAUDE.md work to the official claude-md-management plugin:
/plugin install claude-md-management@anthropicsresolve-github-alerts
Triages and resolves GitHub security alerts (Dependabot, code scanning, secret scanning) across pip / pip-tools / poetry / uv / npm / yarn / pnpm / cargo / go-modules / Docker / GitHub Actions ecosystems. Run it in any repo to:
Fix failing Dependabot PRs (lint/test issues)
Bump vulnerable dependencies and recompile lockfiles
Remediate code scanning and secret scanning alerts
Submit a single PR with all fixes for manual review
Auto-detects the project's verify commands (Makefile targets, pre-commit, ruff, pytest, npm scripts) — no per-project configuration required.
/resolve-github-alertsUsage Examples
Get Multiple AI Perspectives
I'm deciding between Redis and Memcached for caching user sessions.
Ask ChatGPT for their analysis.Follow up with:
"Ask Gemini for another perspective"
"What does DeepSeek think about this?"
Debug with Multiple Perspectives
I'm getting "TypeError: Cannot read property 'map' of undefined" in my React component.
The error occurs in UserList.jsx when rendering the users array.
Ask ChatGPT and Gemini for debugging suggestions.Environment Variables
# Required (at least one for AI feedback tools)
OPENAI_API_KEY=sk-... # Your OpenAI API key
GOOGLE_API_KEY=... # Your Google API key (for Gemini)
DEEPSEEK_API_KEY=sk-... # Your DeepSeek API key
# Optional
MCP_TOOLZ_MODEL=gpt-5 # OpenAI model (default: gpt-5)
MCP_TOOLZ_GEMINI_MODEL=gemini-2.0-flash-thinking-exp-01-21 # Gemini model
MCP_TOOLZ_DEEPSEEK_MODEL=deepseek-chat # DeepSeek modelTroubleshooting
"Error 401: Invalid API key"
Verify API keys are set in
.envor environment variablesCheck billing is enabled on your API provider account
"No module named context_manager"
Use
PYTHONPATH=srcbefore running Python directlyOr install via pip:
pip install mcp-toolz
Project Structure
mcp-toolz/
├── src/
│ ├── mcp_server/ # MCP server for Claude Code
│ │ └── server.py # MCP tools and handlers
│ └── context_manager/ # Client implementations
│ ├── openai_client.py # ChatGPT API client
│ ├── gemini_client.py # Gemini API client
│ └── deepseek_client.py # DeepSeek API client
├── tests/ # pytest tests
├── requirements.in
└── requirements.txtDevelopment
Setup for Contributors
# Clone and install
git clone https://github.com/taylorleese/mcp-toolz.git
cd mcp-toolz
python3 -m venv venv
source venv/bin/activate
pip install -r requirements-dev.txt
# Install pre-commit hooks (IMPORTANT!)
pre-commit install
# Copy and configure .env
cp .env.example .env
# Edit .env with your API keysRunning Tests
source venv/bin/activate
pytestCode Quality
# Run all checks (runs automatically on commit after pre-commit install)
pre-commit run --all-files
# Individual tools
black .
ruff check .
mypy src/License
MIT
Maintenance
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