skills/suggest-awesome-github-copilot-agents/SKILL.md
Suggest relevant GitHub Copilot Custom Agents files from the awesome-copilot repository based on current repository context and chat history, avoiding duplicates with existing custom agents in this repository, and identifying outdated agents that need updates.
npx skillsauth add williamlimasilva/.copilot suggest-awesome-github-copilot-agentsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Analyze current repository context and suggest relevant Custom Agents files from the GitHub awesome-copilot repository that are not already available in this repository. Custom Agent files are located in the agents folder of the awesome-copilot repository.
fetch tool..github/agents/ folderhttps://raw.githubusercontent.com/github/awesome-copilot/main/agents/<filename>).github/agents/ folder#fetch tool to download assets, but may use curl using #runInTerminal tool to ensure all content is retrieved#todos tool to track progress🔍 Repository Patterns:
🗨️ Chat History Context:
Display analysis results in structured table comparing awesome-copilot custom agents with existing repository custom agents:
| Awesome-Copilot Custom Agent | Description | Already Installed | Similar Local Custom Agent | Suggestion Rationale |
| ------------------------------------------------------------------------------------------------------------------------------------------------------- | -------------------------------------------------------------------------------------------------------------------------------------------------------------------------- | ----------------- | ---------------------------------- | ------------------------------------------------------------- |
| amplitude-experiment-implementation.agent.md | This custom agent uses Amplitude's MCP tools to deploy new experiments inside of Amplitude, enabling seamless variant testing capabilities and rollout of product features | ❌ No | None | Would enhance experimentation capabilities within the product |
| launchdarkly-flag-cleanup.agent.md | Feature flag cleanup agent for LaunchDarkly | ✅ Yes | launchdarkly-flag-cleanup.agent.md | Already covered by existing LaunchDarkly custom agents |
| principal-software-engineer.agent.md | Provide principal-level software engineering guidance with focus on engineering excellence, technical leadership, and pragmatic implementation. | ⚠️ Outdated | principal-software-engineer.agent.md | Tools configuration differs: remote uses 'web/fetch' vs local 'fetch' - Update recommended |
*.agent.md files in .github/agents/ directorydescriptionhttps://raw.githubusercontent.com/github/awesome-copilot/main/agents/<filename>fetch toolgithubRepo tool to get content from awesome-copilot repository agents folder.github/agents/ directoryWhen outdated agents are identified:
.github/agents/ directorydevelopment
Build production RAG pipelines and persistent agent memory using Pinecone as the vector database backend. ALWAYS USE THIS SKILL when the user mentions Pinecone, wants to index documents for semantic search, build a retrieval-augmented generation system, store agent memory across sessions, implement hybrid search, or connect an LLM to a searchable knowledge base — even if they don't say "Pinecone" explicitly. Also use when the user asks about vector databases for RAG, namespace isolation for multi-tenant agents, embedding pipelines, or scaling a knowledge base beyond what local storage can handle. DO NOT use for local-only vector stores (Chroma, FAISS, pgvector) or pure keyword search with no semantic component.
development
Perform an AWS Well-Architected Framework review of the current workload IaC and architecture, generating findings and GitHub issues for improvements.
devops
Query AWS resources using natural language. Covers EC2, S3, RDS, Lambda, ECS, EKS, Secrets Manager, IAM, VPC, networking, messaging, and more. Strictly read-only — no writes, deletes, or mutations.
devops
Analyze AWS resource health, diagnose issues from CloudWatch logs and metrics, and create a remediation plan for identified problems.