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dot-ai
dot-ai contém 31 skills coletadas de vfarcic, com cobertura ocupacional por repositório e páginas de detalhe dentro do site.
Skills neste repositório
Create changelog fragment for release notes. Invoke during /prd-done workflow during the first push to the PR.
Create a release tag based on accumulated changelog fragments, then prune merged worktrees and branches. Run when ready to cut a release.
Build and publish the mock-server Docker image to GitHub Container Registry. Use when mock server fixtures or code have changed and need to be published.
Analyze the blast radius of a proposed Kubernetes operation. Accepts free-text input: kubectl commands (e.g., "kubectl delete pvc data-postgres-0 -n production"), YAML manifests, or plain-English descriptions (e.g., "what happens if I delete the postgres database?"). Returns whether the operation is safe and a detailed dependency analysis with confidence levels.
Close a PRD that is already implemented or no longer needed
Create documentation-first PRDs that guide development through user-facing content
Complete PRD implementation workflow - create branch, push changes, create PR, merge, and close issue
Run a PRD end-to-end autonomously — start, iterate until done, then create a PR. Stops after PR creation for manual review.
Create a git worktree for PRD work with a descriptive branch name. Infers PRD from context or asks user.
Write documentation with real, validated examples. Executes commands through the user to capture actual output. Use for any new documentation or major doc updates.
Write documentation with real, validated examples. Executes commands through the user to capture actual output. Use for any new documentation or major doc updates.
Start working on a PRD implementation
Update PRD based on design decisions and strategic changes made during conversations
Kubernetes cluster operations via dot-ai CLI - natural language cluster queries, AI-powered deployment recommendations, issue troubleshooting and remediation, Day 2 operations (scale, update, rollback, delete), resources, namespaces, events, logs, organizational knowledge base (ingest, search, query), organizational patterns/policies/capabilities management, project scaffolding and repo audit, and session history and visualization. Run `dot-ai --help` for commands.
Generate intelligent CI/CD workflows through interactive conversation by analyzing repository structure and user preferences
Generate production-ready, secure, multi-stage Dockerfile and .dockerignore for any project
Manage the knowledge base: ingest documents, search with natural language, or delete chunks. Use "ingest" to store organizational documentation, "search" to find relevant content semantically, or "deleteByUri" to remove all chunks for a document. TIP: For complex questions, you can call search multiple times with different phrasings to gather comprehensive information before synthesizing your answer.
Unified tool for managing cluster data: organizational patterns, policy intents, and resource capabilities. For patterns and policies: supports create, list, get, delete, deleteAll, and search operations (patterns also support step-by-step creation workflow). For capabilities: supports scan, list, get, delete, deleteAll, and progress operations for cluster resource capability discovery and management. Use dataType parameter to specify what to manage: "pattern" for organizational patterns, "policy" for policy intents, "capabilities" for resource capabilities.
AI-powered Kubernetes application operations tool for Day 2 operations. Handles updates, scaling, enhancements, rollbacks, and deletions through natural language intents. Analyzes current state, applies organizational patterns and policies, validates changes via dry-run, and executes approved operations safely.
Analyze existing PRD to identify and recommend the single highest-priority task to work on next
Update PRD progress based on git commits and code changes, enhanced by conversation context
Fetch all open GitHub issues from this project that have the 'PRD' label
Process a feature request or response from another dot-ai project. Reads from tmp directory, implements/integrates, and writes response if needed.
Setup project, audit repository, or generate repository files. Use this when user wants to: setup project, audit repo, check missing files, create README, add LICENSE, generate CONTRIBUTING.md, add CI/CD workflows, initialize documentation, setup governance files. Analyzes local repositories and generates missing configuration, documentation, and governance files. Does NOT handle Kubernetes deployments - use recommend for those.
Query sibling dot-ai projects to verify features are USABLE (not just defined). IMPORTANT: When calling this skill, explain HOW you plan to use the feature (e.g., 'I need to call X via REST API from the UI' or 'I need to import Y function'). This helps verify the full chain from definition to exposure.
Natural language query interface for Kubernetes cluster intelligence. Ask any questions about your cluster resources, capabilities, and status in plain English. Examples: "What databases are running?", "Describe the nginx deployment", "Show me pods in the kube-system namespace", "What operators are installed?", "Is my-postgres healthy?"
Deploy applications, infrastructure, and services using Kubernetes resources with AI recommendations. Supports cloud resources via operators like Crossplane, cluster management via CAPI, and traditional Kubernetes workloads. Describe what you want to deploy. Does NOT handle policy creation, organizational patterns, or resource capabilities - use manageOrgData for those.
AI-powered Kubernetes issue analysis that provides root cause identification and actionable remediation steps. Unlike basic kubectl commands, this tool performs multi-step investigation, correlates cluster data, and generates intelligent solutions. Use when users want to understand WHY something is broken, not just see raw status. Ideal for: troubleshooting failures, diagnosing performance issues, analyzing pod problems, investigating networking/storage issues, or any "what's wrong" questions.
Generate a feature request prompt for another dot-ai project. Use when you need a feature implemented in a sibling project (MCP server, controller, etc.) to unblock work in the current project.
Get comprehensive system health and diagnostics
Generate retro arcade style infographic prompts for documentation pages