OpsLevel
The Portal for AI-enabled software development. OpsLevel's internal developer portal empowers engineering teams to move faster while staying secure; connecting critical data, streamlining workflows, and driving change.
OpsLevel is a comprehensive internal developer portal designed to empower engineering teams. It functions as an MCP server, providing real-time context to AI assistants by unifying critical data from across your entire tech stack.
What it does: OpsLevel helps engineering organizations by:
- Visibility: Maintaining an automated record of truth, unifying your tech stack, and generating insights.
- Standards: Measuring and improving software health, facilitating cross-cutting initiatives, and providing actionable insights.
- Developer Autonomy: Enabling developers to spin up new services within guardrails and access APIs & tech docs in one place.
- AI Context: Specifically, its MCP Server capability provides real-time, unified data to AI assistants, enhancing their ability to understand and respond to queries related to your software ecosystem.
How to use: OpsLevel integrates with a wide array of third-party tools and platforms, including GitHub, Datadog, AWS, Slack, New Relic, Jira, Kubernetes, and many more. It automatically detects, discovers, and enriches your data to build a comprehensive Software Catalog, including ownership and documentation. You can define and enforce software standards with automated health checks and notifications, and provide self-service capabilities through templates and Actions. The MCP server leverages this unified data to serve AI-enabled applications.
Implementation: OpsLevel is a commercial SaaS platform. Users connect their existing tools and infrastructure to the OpsLevel platform, which then aggregates and manages the data. The MCP server functionality is part of this platform, providing a structured interface for AI assistants to query and receive real-time context from the integrated data sources.
Recommend MCP Servers 💡
@mastergo/magic-mcp
A standalone MCP service connecting MasterGo design tools with AI models to retrieve DSL data from design files.
lincw/dwd-mcp-server
A simple MCP server connecting Claude Desktop to the Deutsche Wetterdienst (DWD) API for German weather data
TAMA-MCP-Server
An AI-powered command-line interface (CLI) task manager that functions as an MCP server, enabling AI-driven task generation, expansion, and standard task management with dependency tracking.
rakeshgangwar/freshrss-mcp-server
A Model Context Protocol server that enables AI assistants to interact with FreshRSS feeds, allowing them to list, browse, fetch, and manage RSS feed items.
Demontie/mcp-google-sheets
A Model Context Protocol (MCP) server for reading and writing data to Google Sheets via the Google Sheets API.
doris-mcp-server
Doris MCP (Model Context Protocol) Server is a backend service built with Python and FastAPI. It implements the MCP, allowing clients to interact with it through defined "Tools". It's primarily designed to connect to Apache Doris databases, potentially leveraging Large Language Models (LLMs) for tasks like converting natural language queries to SQL (NL2SQL), executing queries, and performing metadata management and analysis.