{ "name": "api-tester", "description": "Use this agent for comprehensive API testing including performance testing, load testing, and contract testing. This agent specializes in ensuring APIs are robust, performant, and meet specifications before deployment. Examples:\\n\\n<example>\\nContext: Testing API performance under load", "version": "1.0.0", "author": { "name": "Michael Galpert" }, "homepage": "https://github.com/ccplugins/awesome-claude-code-plugins/tree/main/plugins/api-tester" }
Claude Plugin
api-tester
Use this agent for comprehensive API testing including performance testing, load testing, and contract testing. This agent specializes in ensuring APIs are robust, performant, and meet specifications before deployment. Examples:\n\n<example>\nContext: Testing API performance under load
Editor's Note
Use this agent for comprehensive API testing including performance testing, load testing, and contract testing. This agent specializes in ensuring APIs are robust, performant, and meet specifications before deployment. Examples:\n\n<example>\nContext: Testing...
Plugin Overview
This item is backed by a plugin manifest rather than a `SKILL.md` file, so the most useful fields are surfaced here first.
Plugin Name
api-tester
Version
1.0.0
Author
Michael Galpert
Manifest Description
Use this agent for comprehensive API testing including performance testing, load testing, and contract testing. This agent specializes in ensuring APIs are robust, performant, and meet specifications before deployment. Examples:\n\n<example>\nContext: Testing API performance under load
Raw Manifest
The structured plugin fields above are derived from the same upstream manifest shown below.
Related Items
Claude Plugin
devops-automator
Use this agent when setting up CI/CD pipelines, configuring cloud infrastructure, implementing monitoring systems, or automating deployment processes. This agent specializes in making deployment and operations seamless for rapid development cycles. Examples:\n\n<example>\nContext: Setting up automated deployments\nuser: "We need automatic deployments when we push to main"\nassistant: "I'll set up a complete CI/CD pipeline. Let me use the devops-automator agent to configure automated testing, building, and deployment."\n<commentary>\nAutomated deployments require careful pipeline configuration and proper testing stages.\n</commentary>\n</example>\n\n<example>\nContext: Infrastructure scaling issues\nuser: "Our app crashes when we get traffic spikes"\nassistant: "I'll implement auto-scaling and load balancing. Let me use the devops-automator agent to ensure your infrastructure handles traffic gracefully."\n<commentary>\nScaling requires proper infrastructure setup with monitoring and automatic responses.\n</commentary>\n</example>\n\n<example>\nContext: Monitoring and alerting setup\nuser: "We have no idea when things break in production"\nassistant: "Observability is crucial for rapid iteration. I'll use the devops-automator agent to set up comprehensive monitoring and alerting."\n<commentary>\nProper monitoring enables fast issue detection and resolution in production.\n</commentary>\n</example>
Claude Plugin
rapid-prototyper
Use this agent when you need to quickly create a new application prototype, MVP, or proof-of-concept within the 6-day development cycle. This agent specializes in scaffolding projects, integrating trending features, and building functional demos rapidly. Examples:\n\n<example>\nContext: Starting a new experiment or app idea\nuser: "Create a new app that helps people overcome phone anxiety"\nassistant: "I'll help you create a phone anxiety app. Let me use the rapid-prototyper agent to scaffold this project and build an MVP."\n<commentary>\nWhen starting any new project or experiment, use the rapid-prototyper to quickly set up the foundation and core features.\n</commentary>\n</example>\n\n<example>\nContext: Need to test a trending feature or viral concept\nuser: "I saw this TikTok trend about AI avatars, can we build something around that?"\nassistant: "That's a great trending opportunity! I'll use the rapid-prototyper agent to quickly build a prototype app featuring AI avatars."\n<commentary>\nFor capitalizing on trends and viral content, the rapid-prototyper can quickly create testable prototypes.\n</commentary>\n</example>\n\n<example>\nContext: Validating a business idea with minimal investment\nuser: "We need to test if people would pay for a subscription box curation app"\nassistant: "Let's validate that idea with a quick prototype. I'll use the rapid-prototyper agent to build an MVP with basic subscription and curation features."\n<commentary>\nBusiness validation requires fast prototyping to test market fit before full investment.\n</commentary>\n</example>\n\n<example>\nContext: Creating demo apps for stakeholder presentations\nuser: "We're meeting with investors next week and need to show them our vision"\nassistant: "I'll help create a compelling demo. Let me use the rapid-prototyper agent to build a functional prototype that showcases your vision."\n<commentary>\nInvestor demos and stakeholder presentations benefit from working prototypes rather than just mockups.\n</commentary>\n</example>
Claude Plugin
ux-researcher
Use this agent when conducting user research, analyzing user behavior, creating journey maps, or validating design decisions through testing. This agent specializes in understanding user needs, pain points, and behaviors to inform product decisions within rapid development cycles. Examples:\n\n<example>\nContext: Understanding user needs for a new feature
Claude Plugin
ai-engineer
Use this agent when implementing AI/ML features, integrating language models, building recommendation systems, or adding intelligent automation to applications. This agent specializes in practical AI implementation for rapid deployment. Examples:\n\n<example>\nContext: Adding AI features to an app\nuser: "We need AI-powered content recommendations"\nassistant: "I'll implement a smart recommendation engine. Let me use the ai-engineer agent to build an ML pipeline that learns from user behavior."\n<commentary>\nRecommendation systems require careful ML implementation and continuous learning capabilities.\n</commentary>\n</example>\n\n<example>\nContext: Integrating language models\nuser: "Add an AI chatbot to help users navigate our app"\nassistant: "I'll integrate a conversational AI assistant. Let me use the ai-engineer agent to implement proper prompt engineering and response handling."\n<commentary>\nLLM integration requires expertise in prompt design, token management, and response streaming.\n</commentary>\n</example>\n\n<example>\nContext: Implementing computer vision features\nuser: "Users should be able to search products by taking a photo"\nassistant: "I'll implement visual search using computer vision. Let me use the ai-engineer agent to integrate image recognition and similarity matching."\n<commentary>\nComputer vision features require efficient processing and accurate model selection.\n</commentary>\n</example>