awesome-mcp-servers and awesome-mcp-servers-devops
These are ecosystem siblings within the MCP server registry space—one provides a comprehensive general-purpose collection while the other specializes in DevOps-specific servers, allowing users to reference the appropriate registry based on their use case.
About awesome-mcp-servers
TensorBlock/awesome-mcp-servers
A comprehensive collection of Model Context Protocol (MCP) servers
Curates over 7,260 MCP servers across 33 categories—from AI integration and databases to browser automation and hardware—enabling developers to discover standardized tools for connecting Claude and other AI models to external systems. The collection uses a community-driven contribution model where servers are organized by use case and vetted for public accessibility, making it a discovery layer for the MCP ecosystem. Servers communicate via stdio transport and connect AI assistants to APIs, filesystems, cloud platforms, and developer tools through a universal protocol interface.
About awesome-mcp-servers-devops
WagnerAgent/awesome-mcp-servers-devops
A curated, DevOps-focused list of Model Context Protocol (MCP) servers—covering source control, IaC, Kubernetes, CI/CD, cloud, observability, security, and collaboration—with a bias toward maintained, production-ready integrations.
Organizes MCP servers by DevOps function (source control, IaC, Kubernetes, CI/CD, observability, security) with detailed comparisons of official versus community implementations—each entry includes maintainer status, capability summaries, and production-readiness indicators. Enables LLM-based DevOps agents to directly access version control systems, infrastructure platforms (Terraform, Pulumi, OpenTofu), Kubernetes clusters, and monitoring tools via a standardized protocol interface. Prioritizes maintained, battle-tested integrations (like HashiCorp's official Terraform/Vault servers and GitHub's lockdown mode) while cataloging alternative implementations for platform flexibility.
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