Agent skill

azure-devops-rest-api

Guide for working with Azure DevOps REST APIs and OpenAPI specifications. Use this skill when implementing new Azure DevOps API integrations, exploring API capabilities, understanding request/response formats, or referencing the official OpenAPI specifications from the vsts-rest-api-specs repository.

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Install this agent skill to your Project

npx add-skill https://github.com/Tiberriver256/mcp-server-azure-devops/tree/main/.github/skills/azure-devops-rest-api

SKILL.md

Azure DevOps REST API

Overview

This skill provides guidance for working with Azure DevOps REST APIs using the official OpenAPI specifications from the vsts-rest-api-specs repository. It helps with implementing new API integrations, understanding API capabilities, and referencing the correct request/response formats.

Key API Areas

Azure DevOps REST APIs are organized into the following main areas:

Core Services

  • core - Projects, teams, processes, and organization-level operations
  • git - Repositories, branches, pull requests, commits
  • build - Build definitions, builds, and build resources
  • pipelines - Pipeline definitions and runs
  • release - Release definitions, deployments, and approvals

Work Item & Planning

  • wit (Work Item Tracking) - Work items, queries, and work item types
  • work - Boards, backlogs, sprints, and team configurations
  • testPlan - Test plans, suites, and cases
  • testResults - Test runs and results

Package & Artifact Management

  • artifacts - Artifact feeds and packages
  • artifactsPackageTypes - NuGet, npm, Maven, Python packages

Security & Governance

  • graph - Users, groups, and memberships
  • security - Access control lists and permissions
  • policy - Branch policies and policy configurations
  • audit - Audit logs and events

Extension & Integration

  • extensionManagement - Extensions and marketplace
  • serviceEndpoint - Service connections
  • hooks - Service hooks and subscriptions

API Specification Structure

The vsts-rest-api-specs repository is organized by API area and version:

specification/
  ├── {api-area}/          (e.g., git, build, pipelines)
  │   ├── 7.2/            Latest stable version
  │   │   ├── {area}.json          OpenAPI spec file
  │   │   └── httpExamples/        Example requests/responses
  │   ├── 7.1/
  │   └── ...

Using the Specifications

  1. Identify the API area - Determine which service area (git, build, wit, etc.) contains the functionality needed
  2. Select the version - Use the latest version (7.2) unless targeting a specific Azure DevOps Server version
  3. Review the OpenAPI spec - The main {area}.json file contains all endpoints, schemas, and parameters
  4. Check httpExamples - Real request/response examples for each endpoint

Implementation Patterns

Pattern 1: Exploring New API Capabilities

When exploring what APIs are available for a specific feature:

  1. Clone the vsts-rest-api-specs repository to /tmp/vsts-rest-api-specs
  2. Browse the specification directory for the relevant API area
  3. Review the OpenAPI spec JSON file for available endpoints
  4. Check httpExamples for real-world usage patterns

Example workflow:

bash
cd /tmp
git clone --depth 1 https://github.com/MicrosoftDocs/vsts-rest-api-specs.git
cd vsts-rest-api-specs/specification/git/7.2
# Review git.json for endpoint definitions
# Check httpExamples/ for request/response samples

Pattern 2: Implementing a New API Feature

When adding new API functionality to the MCP server:

  1. Locate the spec: Find the relevant OpenAPI specification
  2. Review the schema: Understand the request parameters and response format
  3. Check examples: Review httpExamples for real request/response data
  4. Create types: Define TypeScript interfaces based on the OpenAPI schema
  5. Implement handler: Create the feature handler following the repository's feature-based architecture
  6. Add tests: Write unit tests with mocked responses based on httpExamples

Pattern 3: Understanding Request/Response Formats

When you need to understand the exact format of API requests or responses:

  1. Navigate to specification/{area}/{version}/httpExamples/
  2. Find the relevant endpoint example (e.g., GET_repositories.json)
  3. Review both the request parameters and response body structure
  4. Use this as the basis for creating Zod schemas and TypeScript types

Reference Resources

scripts/

Contains helper utilities for working with the API specifications:

  • clone_specs.sh - Clone or update the vsts-rest-api-specs repository
  • find_endpoint.py - Search for specific endpoints across all API specs

references/

Contains curated reference documentation:

  • api_areas.md - Comprehensive list of all API areas and their purposes
  • common_patterns.md - Common request/response patterns across APIs
  • authentication.md - API authentication methods and patterns

Usage Tips

Finding the right API:

  • Use the OpenAPI spec's paths section to find endpoint URLs
  • Check the tags property to understand the API category
  • Review the operationId for the internal Azure DevOps method name

Understanding schemas:

  • All data models are in the definitions section of the OpenAPI spec
  • Look for $ref properties to follow schema references
  • Use httpExamples to see actual data structures

Version selection:

  • Use version 7.2 for Azure DevOps Services (cloud)
  • Check azure-devops-server-{version} folders for on-premises versions
  • API versions are additive - newer versions include all older functionality

Integration with This Repository

When implementing features in this MCP server:

  1. Follow the feature-based architecture: Create features in src/features/{api-area}/
  2. Use Zod for validation: Define schemas based on OpenAPI definitions
  3. Reference the specs: Link to the relevant OpenAPI spec in code comments
  4. Include examples: Use httpExamples data for test fixtures
  5. Match naming: Use consistent naming with the Azure DevOps API (e.g., repositoryId, pullRequestId)

Example feature implementation pattern:

typescript
// src/features/{api-area}/{operation}/
├── feature.ts          // Core implementation using azure-devops-node-api
├── schema.ts           // Zod schemas based on OpenAPI definitions
├── feature.spec.unit.ts // Tests using httpExamples data
└── index.ts            // Exports

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