Developer Tools MCP Repositories
827 repositories in this category.
mcp-graphql-schema
→
Explore and interact with GraphQL schemas, retrieving detailed type definitions and simplifying field information including types and arguments. Search for types and fields using pattern matching, and filter out internal GraphQL types for cleaner results.
touchdesigner-mcp
→
The TouchDesigner MCP Server allows AI agents to interact with TouchDesigner projects by creating, modifying, and deleting project elements, as well as executing Python scripts to automate tasks.
VoiceMacroProject
→
VoiceMacro enables executing keyboard shortcuts and macros through voice commands on Windows. It supports custom voice command configurations and manages presets for frequent macro operations while running in the background.
deepseek-mcp-server
→
Connects DeepSeek's language models with MCP-compatible applications, enabling users to integrate advanced AI capabilities seamlessly. Offers anonymous access to the DeepSeek API while masking user identity behind a proxy.
mcp-tool-kit
→
Enables integration of AI models with external systems and tools through file operations, browser automation, and API access. Facilitates the creation of custom tools for specific tasks to enhance AI capabilities.
mcp-1panel
→
The 1Panel MCP Server allows users to connect and manage their 1Panel environment, enabling efficient interaction with various tools and applications in real-time.
Network-Plugins
→
Enhance applications with networking functionalities to improve performance and connectivity. Integrate ready-to-use plugins for streamlined development processes.
Figma-Context-MCP
→
The Figma MCP Server connects Figma design files with AI coding tools, enabling more accurate and relevant code generation by allowing these tools direct access to design data instead of relying on screenshots.
mcp-nextflow
→
Provides tools for building, testing, and managing Nextflow projects, including the ability to run integration and specific tests, manage development directories, and access documentation.
obsidian-second-brain-mcp
→
Expose customizable prompt templates and tools to assist in software development. Integrate a conversational LLM for refining ideas, generating tests, and creating project blueprints while streamlining the coding process with web search and documentation resources.
servers
→
Interact with GitHub repositories for file operations, repository management, and advanced searching capabilities. Automate workflows with features like automatic branch creation while preserving Git history.
gerrit-code-review-mcp
→
Integrates with the Gerrit code review system to facilitate the fetching of change details, comparison of patchset differences, and analysis of file modifications. Streamlines code review workflows by providing access to detailed change information in an efficient manner.
docs
→
A starter kit for creating and customizing documentation with built-in examples and components. It automates the deployment process from a GitHub repository, making it easier to manage API reference and guide pages.
mcp-logic
→
Provides automated reasoning capabilities through Prover9 and Mace4, enabling logical theorem proving and model verification. Facilitates formal validation of knowledge representations and implications via a clean MCP interface.
google_openai_mcp
→
Automate the provisioning and termination of AWS EC2 instances using natural language commands while facilitating multi-agent communication through the MCP framework. Integrates intelligent agents to streamline cloud management tasks on AWS.
super-shell-mcp
→
Execute shell commands securely across Windows, macOS, and Linux platforms using automatic shell detection and command management. Features include whitelisting of commands with varying security levels and comprehensive logging for command execution.
agent_construct
→
Standardizes access to tools and data for AI applications, facilitating dynamic tool discovery and execution through a unified interface. It serves as a central hub for managing context and tool integration in AI models.
genaiscript
→
Assemble prompts for language models programmatically using JavaScript, facilitating the orchestration of LLMs, tools, and data within a cohesive coding environment. Offers integration with Visual Studio Code and built-in support for various AI models and services.
devdb-vscode
→
Integrate database functionalities within IDEs like VS Code without configuration. Access and manipulate database tables, enhancing development and debugging workflows with rich features.
awesome-chatgpt-prompts
→
Curated collection of effective prompts designed to enhance interactions with ChatGPT, enabling users to explore diverse use cases and improve their prompt crafting skills.
code-reasoning
→
Enhances the ability to solve complex programming tasks by breaking them down into structured, step-by-step reasoning. Provides detailed logging and alternative solution paths to improve code analysis and problem-solving capabilities.
git-mcp-server
→
Interact with Git repositories through a robust API, enabling operations such as cloning, committing, pushing, and repository management. Focuses on optimizing performance, error handling, and secure command execution.
mcp-dev-server
→
Manage software development projects with complete context awareness, facilitating code execution in secure Docker environments, and integrating Git operations for streamlined project management.
AutoGPT
→
Create, deploy, and manage continuous AI agents that automate complex workflows using a library of pre-configured options or custom-built agents.
figma-mcp-chunked
→
Efficiently interact with the Figma API, utilizing memory-aware chunking and pagination to manage and process large Figma files. This enables effective handling of extensive design documents and resource-intensive operations.
mcp-ui-gen
→
Generates, fetches, and manages UI components using natural language commands. Integrates with Claude and Windsurf AI assistants for efficient UI development.
mcpdoc
→
Provides a user-defined list of llms.txt files and fetches documents from URLs within those files for auditing tool calls and enhancing context retrieval for LLM interactions. Connects with various IDEs and applications to improve the development experience while ensuring transparency and control.
mcp-openapi-schema
→
Exposes OpenAPI schema information for Large Language Models to explore and understand API specifications, including paths, operations, and schemas. Provides detailed request and response schemas in an easily comprehensible format.
flutter-tools
→
Analyzes and provides diagnostics for Dart/Flutter files and applies fix suggestions based on the Flutter SDK.
vercel-ai-sdk-mcp-project
→
Integrates Vercel AI SDK core functionalities into AI development environments, enabling intelligent responses and dynamic data handling for applications. Supports features like object generation, text generation, streaming text, and UI component creation.
