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go-testing

alex-ilgayev
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Testingaitestingmcpdesign

About

The go-testing skill handles Golang testing tasks including running tests, writing new tests, and debugging failures specifically for the MCPSpy project. It follows project conventions like using `require` for critical assertions and `assert` for non-critical ones. Use this skill when working with Go test files, implementing test cases, or fixing test issues in the codebase.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/alex-ilgayev/MCPSpy
Git CloneAlternative
git clone https://github.com/alex-ilgayev/MCPSpy.git ~/.claude/skills/go-testing

Copy and paste this command in Claude Code to install this skill

Documentation

Go Testing Skill

Provides guidance and automation for Golang testing tasks in the MCPSpy project.

Testing Philosophy

  • Use require library for assertions that should stop test execution on failure
  • Use assert library for non-critical assertions where test should continue
  • Choose internal vs external package testing based on what needs to be tested
  • Test internal functions by placing test files in the same package (no _test suffix)
  • Avoid creating externally facing functions solely for testing purposes

When to Use This Skill

  • Running unit tests with go test
  • Writing new test files and test cases
  • Debugging and fixing failing tests
  • Implementing test fixtures and mocks
  • Improving test coverage for the MCPSpy project

GitHub Repository

alex-ilgayev/MCPSpy
Path: .claude/skills/go-testing
aiai-securityllmmcpmonitoringsecurity

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