awesome-mcp-enterprise and awesome-remote-mcp-servers

These are ecosystem siblings, as both projects curate lists of different aspects within the MCP ecosystem: one focusing on enterprise tools and services, and the other on accessible hosted/managed MCP servers.

Maintenance 10/25
Adoption 9/25
Maturity 7/25
Community 21/25
Maintenance 2/25
Adoption 8/25
Maturity 15/25
Community 18/25
Stars: 103
Forks: 33
Downloads:
Commits (30d): 0
Language:
License:
Stars: 53
Forks: 15
Downloads:
Commits (30d): 0
Language: JavaScript
License: MIT
No License No Package No Dependents
Stale 6m No Package No Dependents

About awesome-mcp-enterprise

bh-rat/awesome-mcp-enterprise

A curated list of awesome MCP (Model Context Protocol) tools, platforms, and services for enterprises.

This list helps enterprise technical stakeholders discover and evaluate infrastructure solutions for implementing the Model Context Protocol (MCP). It features tools, platforms, and services for building, hosting, running, and securing MCP servers, which standardize how applications provide context to large language models. The intended user is a technical decision-maker like an architect or DevOps engineer exploring enterprise-grade MCP deployments.

enterprise-ai llm-ops api-management cloud-infrastructure data-governance

About awesome-remote-mcp-servers

sylviangth/awesome-remote-mcp-servers

A curated list of Hosted & Managed Model Context Protocol (MCP) Servers accessible via a simple URL endpoint.

This is a curated list of ready-to-use Model Context Protocol (MCP) servers that connect AI applications to external services and data. It provides simple URL endpoints that allow non-technical users to integrate powerful functions like CRM, data analytics, and payment processing into their AI agents. Marketers, financial analysts, operations engineers, or anyone building AI agents can use these hosted services to enhance their AI workflows.

AI-automation workflow-integration business-operations marketing-automation data-management

Scores updated daily from GitHub, PyPI, and npm data. How scores work