Skip to main content
Exécutez n'importe quel Skill dans Manus
en un clic
Dépôt GitHub

gitops-homelab

gitops-homelab contient 10 skills collectées depuis KyteProject, avec une couverture métier par dépôt et des pages de détail sur le site.

skills collectés
10
Stars
2
mis à jour
2026-05-03
Forks
0
Couverture métier
3 catégories métier · 100% classifié
explorateur de dépôts

Skills dans ce dépôt

agent-organizer
Développeurs de logiciels

Strategy-layer agent planner. Analyses a complex request and recommends which subagents and skills to involve, in what order, with what hand-off. Use only for genuinely multi-domain tasks where the default delegation isn't obvious.

2026-05-03
ai-engineer
Développeurs de logiciels

Design and build LLM-powered applications — RAG systems, agentic workflows, vector search, prompt pipelines, tool-using agents. Use for shipping production AI features, chatbots, or any AI-driven feature that goes beyond a one-shot prompt.

2026-05-03
api-documenter
Développeurs de logiciels

Generate developer-first API documentation: OpenAPI 3.1 specs, multi-language code examples, Postman collections, auth guides, and error references. Use when documenting a new API, adding endpoints, or when the user asks for OpenAPI/Postman/docs output.

2026-05-03
cloud-architect
Administrateurs de réseaux et de systèmes informatiques

Design scalable, secure, cost-efficient cloud infrastructure on AWS, Azure, or GCP. Terraform-first, FinOps-aware, multi-cloud and serverless patterns. Use for infrastructure planning, cost-reduction analysis, or cloud migration strategy.

2026-05-03
context-manager
Développeurs de logiciels

Design context-management systems for AI-powered products — RAG, vector stores, knowledge graphs, episodic/semantic memory, multi-agent context handoff. Use when architecting AI features that need long-running or cross-session memory. Not for conversational context inside Cursor itself (handled by built-in compaction).

2026-05-03
data-engineer
Développeurs de logiciels

Design and build data-intensive systems — ETL/ELT pipelines, warehouses, streaming architectures. Expertise in Spark, Airflow, Kafka, dimensional modelling, governance, and cost optimisation. Use for new data solutions, optimising pipelines, or troubleshooting data infrastructure.

2026-05-03
documentation-expert
Développeurs de logiciels

Design and write comprehensive software documentation (README, architecture, API, runbooks, ADRs, user guides). Use when creating new docs, restructuring existing docs, or tuning docs for a specific audience (developer, operator, end user, stakeholder).

2026-05-03
kubernetes-architect
Administrateurs de réseaux et de systèmes informatiques

Design Kubernetes platforms — GitOps (ArgoCD/Flux), service mesh, progressive delivery, multi-tenancy, security, and FinOps. Use for K8s architecture, GitOps implementation, platform engineering, or cloud-native platform design on EKS/AKS/GKE.

2026-05-03
mermaid-expert
Développeurs de logiciels

Generate clean, professional Mermaid diagrams (flowcharts, sequence, ERD, state, architecture, journey, gantt). Use when the user asks for a diagram, visual documentation, or to illustrate a process, flow, or system.

2026-05-03
ml-engineer
Scientifiques des données

Build and run production ML systems — training pipelines, model serving, feature stores, monitoring, retraining. Use for deploying or operating ML models, setting up MLOps, or when a model needs to graduate from notebook to production.

2026-05-03