Model Context Protocol (MCP) Server for JFrog Platform

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The MCP server for JFrog provides APIs and tools for managing repositories, tracking builds, monitoring runtime clusters, and searching artifacts, streamlining DevSecOps workflows within the JFrog ecosystem.
Added on:
Created by:
Apr 06 2025
Model Context Protocol (MCP) Server for JFrog Platform

Model Context Protocol (MCP) Server for JFrog Platform

0 Reviews
84
0
Model Context Protocol (MCP) Server for JFrog Platform
The MCP server for JFrog provides APIs and tools for managing repositories, tracking builds, monitoring runtime clusters, and searching artifacts, streamlining DevSecOps workflows within the JFrog ecosystem.
Added on:
Created by:
Apr 06 2025
JFrog Ltd.
Featured

What is Model Context Protocol (MCP) Server for JFrog Platform?

This MCP server seamlessly integrates with the JFrog Platform API to facilitate comprehensive repository management, including creation of local, remote, and virtual repositories. It allows for detailed build tracking and retrieval, runtime cluster monitoring, and container image management. Additionally, it provides access control features, package curation, and vulnerability assessments. By offering powerful search functionalities through AQL queries, and robust project and environment management, this MCP supports DevSecOps teams in automating and optimizing their software development and release processes with enhanced visibility and control.

Who will use Model Context Protocol (MCP) Server for JFrog Platform?

  • DevOps Engineers
  • Repository Administrators
  • Build Managers
  • Security and Vulnerability Analysts
  • Platform Developers

How to use the Model Context Protocol (MCP) Server for JFrog Platform?

  • Step1: Install the MCP server and ensure it is configured with correct JFROG_ACCESS_TOKEN and JFROG_URL.
  • Step2: Use provided APIs or tools to create repositories, manage builds, or monitor runtime clusters.
  • Step3: Execute AQL queries to search for artifacts or retrieve detailed package info.
  • Step4: Manage projects and environments for access control and resource allocation.
  • Step5: Integrate MCP APIs into CI/CD pipelines for automation and continuous monitoring.

Model Context Protocol (MCP) Server for JFrog Platform's Core Features & Benefits

The Core Features
  • Repository Management
  • Build Tracking
  • Runtime Monitoring
  • Project and Environment Management
  • Artifact Search via AQL
  • Package Curation and Vulnerability Insights
The Benefits
  • Centralized management of repositories and builds
  • Enhanced visibility into runtime environments and application status
  • Automated artifact searches and vulnerability assessments
  • Streamlined project and environment control
  • Supports DevSecOps with security and operational metrics

Model Context Protocol (MCP) Server for JFrog Platform's Main Use Cases & Applications

  • Automating repository creation and management in CI/CD pipelines
  • Tracking and retrieving build information for release audits
  • Monitoring runtime clusters and container images for security
  • Performing artifact and package vulnerability scans
  • Managing project permissions and environments for large teams

FAQs of Model Context Protocol (MCP) Server for JFrog Platform

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