oss-ai-catalog

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Curated open-source AI catalog reference. Auto-activates when llm-architect, content-marketer, data-analyst, mcp-developer, backend-developer, or any agent needs to RECOMMEND an open-source AI tool, model, framework, inference engine, vector DB, or agent/RAG library to the user. Provides category-indexed lookup across 14 domains (Deep learning frameworks, Foundation models, Inference engines, Agentic AI, RAG/Vector DBs, Generative media, Training/Fine-tuning, MLOps, Evaluation, Safety, Specialized domains, UIs, Dev tools, Learning resources). MUST trigger when user says any of: - "어떤 LLM 써", "어떤 모델 써", "오픈소스 AI 추천", "OSS 추천" - "vector DB 뭐가 좋아", "RAG framework", "inference engine 추천" - "음성 모델 / TTS / STT 추천", "이미지 생성 모델 추천", "영상 생성 모델" - "LangChain 말고 다른 거", "vLLM 같은 거" - any "what tool should I use for X" question in an AI/ML context DO NOT hardcode recommendations in agent prompts; consult this skill so recommendations stay fresh.

Yoodaddy0311 By Yoodaddy0311 schedule Updated 5/14/2026

name: oss-ai-catalog context: fork triggers:

  • "오픈소스 AI"
  • "OSS 추천"
  • "어떤 LLM"
  • "어떤 모델"
  • "vector DB"
  • "RAG framework"
  • "inference engine"
  • "LangChain"
  • "vLLM"
  • "open source AI" description: | Curated open-source AI catalog reference. Auto-activates when llm-architect, content-marketer, data-analyst, mcp-developer, backend-developer, or any agent needs to RECOMMEND an open-source AI tool, model, framework, inference engine, vector DB, or agent/RAG library to the user. Provides category-indexed lookup across 14 domains (Deep learning frameworks, Foundation models, Inference engines, Agentic AI, RAG/Vector DBs, Generative media, Training/Fine-tuning, MLOps, Evaluation, Safety, Specialized domains, UIs, Dev tools, Learning resources).

MUST trigger when user says any of:

  • "어떤 LLM 써", "어떤 모델 써", "오픈소스 AI 추천", "OSS 추천"
  • "vector DB 뭐가 좋아", "RAG framework", "inference engine 추천"
  • "음성 모델 / TTS / STT 추천", "이미지 생성 모델 추천", "영상 생성 모델"
  • "LangChain 말고 다른 거", "vLLM 같은 거"
  • any "what tool should I use for X" question in an AI/ML context

DO NOT hardcode recommendations in agent prompts; consult this skill so recommendations stay fresh. lang: [en, ko] whenNotToUse: "Proprietary or commercial-only tool recommendations; do not apply when the user explicitly needs a managed SaaS product and open-source constraints do not apply." platforms: [claude-code, gemini-cli, codex-cli, cursor] level: 2 category: library tokens: 2500 agents: [llm-architect, backend-developer, data-analyst] auto-invoke: true user-invocable: false

oss-ai-catalog — Curated OSS AI Tool Index

Source: curated from alvinreal/awesome-opensource-ai (battle-tested, production-proven tier) as of 2026-04-15. Artibot agents consult this skill instead of hallucinating recommendations.

Lookup Categories

# Category Typical user request Where to look
1 Deep Learning Frameworks "training framework" PyTorch, JAX, TensorFlow, Candle (Rust)
2 Foundation Models (LLM) "base chat model" Llama 3, Qwen, Mistral, DeepSeek, Gemma
3 Coding & Reasoning Models "code model" DeepSeek-Coder, Qwen-Coder, CodeLlama
4 Multimodal (Vision+Lang) "vision model" LLaVA, Qwen-VL, InternVL
5 Speech & Audio "TTS / STT / music" Whisper, Coqui-TTS, Bark, RVC, MusicGen
6 Video & Animation "video gen" AnimateDiff, Stable Video Diffusion, Open-Sora
7 Local / On-device Inference "run local" Ollama, llama.cpp, MLX, LM Studio (not OSS but built on OSS)
8 High-perf Serving "serving" vLLM, SGLang, TGI, LMDeploy
9 Quantization / Distillation "compress model" GPTQ, AWQ, bitsandbytes, GGUF
10 Single-Agent Frameworks "agent framework" LangChain, LlamaIndex, Haystack
11 Multi-Agent Orchestration "multi-agent" AutoGen, CrewAI, Swarm
12 Autonomous Coding Agents "coding agent" Aider, SWE-agent, OpenDevin
13 Vector DBs / Search "vector store" Milvus, Qdrant, Weaviate, LanceDB, pgvector
14 Embedding Models "embeddings" bge, e5, nomic-embed, jina-embeddings
15 RAG Frameworks "RAG" LlamaIndex, Haystack, RAGFlow, R2R
16 Knowledge Graphs "KG RAG" GraphRAG, LightRAG, Neo4j
17 Web Data Ingestion "scraper / crawler" Firecrawl, Crawl4AI, Scrapy
18 Image Generation "image gen" SDXL, Flux, Stable Diffusion ecosystem
19 Training / Fine-tune "fine-tune" Unsloth, Axolotl, TRL, DeepSpeed
20 MLOps / LLMOps "monitoring" MLflow, Weights & Biases (not OSS but common), Langfuse, Phoenix
21 Evaluation & Benchmarks "eval" lm-evaluation-harness, Promptfoo, DeepEval
22 Safety / Alignment "safety" Llama Guard, NeMo Guardrails
23 UI / Self-hosted Platforms "chat UI" Open WebUI, LibreChat, AnythingLLM
24 Dev Tools & Integrations "dev tool" LiteLLM, Instructor, Outlines

How agents should use this

  1. Detect user's tool-recommendation intent
  2. Map to a category row above
  3. Cite 2–4 options with a 1-sentence trade-off each (never a flat list)
  4. Recommend the simplest option that satisfies the user's scale
  5. If the user's constraint is unclear, ask one clarifying question (scale? latency budget? deployment target?) then recommend

What NOT to do

  • Don't paste this whole file to the user — summarize the relevant 2–4 options
  • Don't recommend proprietary services when user asks for "open source"
  • Don't hallucinate versions or benchmark numbers — if unsure, say "check the upstream repo"
  • Don't replace this catalog with inline recommendations in other skills; always defer here

Refresh

Source repo updates continuously. Artibot should re-scan awesome-opensource-ai/README.md + EMERGING.md when /repo is run against that URL with --focus innovation.

Install via CLI
npx skills add https://github.com/Yoodaddy0311/artibot --skill oss-ai-catalog
Repository Details
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article Path SKILL.md
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