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Repositório GitHub

My-Claude-Code-Skills

My-Claude-Code-Skills contém 5 skills coletadas de AvivK5498, com cobertura ocupacional por repositório e páginas de detalhe dentro do site.

skills coletadas
5
Stars
7
atualizado
2026-01-27
Forks
0
Cobertura ocupacional
3 categorias ocupacionais · 100% classificado
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Skills neste repositório

ceo-companion
Diretores executivos

Collaborative CEO co-pilot for SaaS strategy sessions. Researches markets, validates ideas, designs UI inspiration boards, and produces a .strategy/ folder that Beads Orchestration consumes for autonomous building. Use as Session 1 before a Beads build session.

2026-01-27
agent-debugger
Desenvolvedores de software

Systematic debugging toolkit for AI agentic workflows in customer support. Use when diagnosing issues with AI agents including wrong responses, tool/function calling problems, conversation loops, stuck states, or performance/latency issues. Works with any framework (LangChain, custom agents, Claude API) and accepts conversation logs, API logs, tool execution logs, and agent configurations.

2026-01-27
agentform
Desenvolvedores de software

Create and debug Agentform AI agent configurations (.af files). Use when: (1) Creating new agentform projects or workflows (2) Debugging agentform syntax errors (3) Adding MCP server integrations (4) Configuring agents, models, policies, or capabilities (5) Writing workflow steps with routing and human approval Agentform is "Infrastructure as Code for AI agents" - declarative .af files define agents, workflows, and policies.

2026-01-27
create-beads-orchestration
Desenvolvedores de software

Bootstrap lean multi-agent orchestration with beads task tracking. Use for projects needing agent delegation without heavy MCP overhead.

2026-01-27
runpod-serverless-builder
Administradores de redes e sistemas de computador

Build production-ready RunPod serverless endpoints with optimized cold start times. Use when creating or modifying RunPod serverless workers for (1) vLLM-based LLM inference, (2) ComfyUI image/video generation, or (3) custom Python inference. Supports both baked models (fastest cold starts) and dynamic loading (shared models). Generates complete projects including Dockerfiles, worker handlers, startup scripts, and configuration optimized for minimal cold start latency.

2026-01-27