huggingface-best

Finds the best models for a task by querying official HF benchmark leaderboards, enriching results with model size data, filtering for what fits on the user's device, and returning a comparison table with benchmark scores.

npx skills add https://github.com/huggingface/skills --skill huggingface-best

HuggingFace Best Model Finder

Finds the best models for a task by querying official HF benchmark leaderboards, enriching results with model size data, filtering for what fits on the user's device, and returning a comparison table with benchmark scores.


Step 1: Parse the request

Extract from the user's message:

  • Task: what they want the model to do (coding, math/reasoning, chat, OCR, RAG/retrieval, speech recognition, image classification, multimodal, agents, etc.)
  • Device: hardware constraints (MacBook M-series 8/16/32/64GB unified memory, RTX GPU with VRAM amount, CPU-only, cloud/no constraint, etc.)

If device is not mentioned, skip filtering entirely and return the highest-performing models regardless of size. If the task is genuinely ambiguous, ask one clarifying question.

Device → max parameter budget

When a device is specified, extract its available memory (unified RAM for Apple Silicon, VRAM for discrete GPUs) and apply:

  • fp16 max params (B) ≈ memory (GB) ÷ 2
  • Q4 max params (B) ≈ memory (GB) × 2

Examples: 16GB → 8B fp16 / 32B Q4 — 24GB VRAM → 12B fp16 / 48B Q4 — 8GB → 4B fp16 / 16B Q4


Step 2: Find relevant benchmark datasets

Fetch the full list of official HF benchmarks:

curl -s -H "Authorization: Bearer $(cat ~/.cache/huggingface/token)" \
  "https://huggingface.co/api/datasets?filter=benchmark:official&limit=500" | jq '[.[] | {id, tags, description}]'

Read the returned list and select the datasets most relevant to the user's task — match on dataset id, tags, and description. Use your judgment; don't limit yourself to 2-3. Aim for comprehensive coverage: if 5 benchmarks clearly cover the task, use all 5.


Step 3: Fetch top models from leaderboards

For each selected benchmark dataset:

curl -s -H "Authorization: Bearer $(cat ~/.cache/huggingface/token)" \
  "https://huggingface.co/api/datasets/<namespace>/<repo>/leaderboard" | jq '[.[:15] | .[] | {rank, modelId, value, verified}]'

Collect model IDs and scores across all benchmarks. If a leaderboard returns an error (404, 401, etc.), skip it and note it in the output.


Step 4: Enrich with model metadata

For the top 10-15 candidate model IDs, get model infos.

# REST API
curl -s -H "Authorization: Bearer $(cat ~/.cache/huggingface/token)" \
  "https://huggingface.co/api/models/org/model1" | jq '{safetensors, tags, cardData}'

# CLI (hf-cli)
hf models info org/model1 --json | jq '{safetensors, tags, cardData}'

Extract from each response:

  • Parameters: safetensors.total → convert to B (e.g., 7_241_748_480 → "7.2B")
  • License: from model card tags (look for license:apache-2.0, license:mit, etc.)
  • If safetensors is absent, parse size from the model name (look for "7b", "8b", "13b", "70b", "72b", etc.)

Step 5: Filter and rank

If a device was specified:

  1. Remove models exceeding the fp16 parameter budget for the device
  2. Flag models that fit only with Q4 quantization (multiply budget by ~4 for Q4 capacity)
  3. If a highly-ranked model is slightly over budget, keep it with a "needs Q4" note — don't silently drop it

If no device was mentioned: skip all size filtering — just rank by benchmark score.

Then: rank by benchmark score (descending), keep top 5-8 models.

Include proprietary models (GPT-4, Claude, Gemini) if they appear on leaderboards, but flag them as "API only / not self-hostable". If the user explicitly asked for local/open models only, exclude them.


Step 6: Output

Comparison table

| # | Model | Params | [Benchmark 1] | [Benchmark 2] | License | On device |
|---|-------|--------|--------------|--------------|---------|-----------|
| ⭐1 | [org/name](https://huggingface.co/org/name) | 7B | 85.2% | — | Apache 2.0 | Yes (fp16) |
| 2 | [org/name](https://huggingface.co/org/name) | 13B | 83.1% | 71.5% | MIT | Q4 only |
| 3 | [org/name](https://huggingface.co/org/name) | 70B | 90.0% | 81.0% | Llama | Too large |
  • Link model names to https://huggingface.co/<model_id>
  • Use for benchmarks where the model wasn't evaluated
  • Star the top recommended pick with ⭐
  • "On device" values: Yes (fp16), Q4 only, Too large, API only

Follow-up

After presenting the table, ask the user: "Would you like to run [top recommended model]?"

If they say yes, ask whether they'd prefer to:


Error handling

  • Leaderboard not found: skip, note "leaderboard unavailable" in output
  • Model missing from hub_repo_details: fall back to parsing size from model name
  • No benchmarks found for task: use the curated fallback table above, or try hub_repo_search with filters=["<task>"] sorted by trendingScore
  • All leaderboards fail: fall back to hub_repo_search for popular models tagged with the task, note that results are by popularity rather than benchmark score

Mais skills de huggingface

Hugging Face Cli
huggingface
Execute Hugging Face Hub operations using the `hf` CLI. Use when the user needs to download models/datasets/spaces, upload files to Hub repositories, create repos, manage local cache, or run compute jobs on HF infrastructure. Covers authentication, file transfers, repository creation, cache operations, and cloud compute.
official
Hugging Face Datasets
huggingface
Criar e gerenciar datasets no Hugging Face Hub. Suporta inicialização de repositórios, definição de configurações/prompts de sistema, atualização de linhas em streaming e consulta/transformação de datasets baseada em SQL. Projetado para funcionar junto ao servidor MCP do HF para fluxos de trabalho abrangentes com datasets.
official
Hugging Face Evaluation
huggingface
Adicionar e gerenciar resultados de avaliação em model cards do Hugging Face. Suporta extração de tabelas de avaliação do conteúdo do README, importação de pontuações da API Artificial Analysis e execução de avaliações personalizadas de modelos com vLLM/lighteval. Funciona com o formato de metadados model-index.
official
Hugging Face Jobs
huggingface
Execute qualquer workload na infraestrutura de Hugging Face Jobs. Abrange scripts UV, jobs baseados em Docker, seleção de hardware, estimativa de custos, autenticação com tokens, gerenciamento de segredos, configuração de timeout e persistência de resultados. Projetado para workloads de computação de uso geral, incluindo processamento de dados, inferência, experimentos, jobs em lote e qualquer tarefa baseada em Python.
official
Hugging Face Model Trainer
huggingface
Treine ou ajuste modelos de linguagem usando TRL (Transformer Reinforcement Learning) na infraestrutura de Jobs do Hugging Face. Abrange os métodos de treinamento SFT, DPO, GRPO e modelagem de recompensa, além da conversão para GGUF para implantação local. Inclui orientações sobre preparação de conjuntos de dados, seleção de hardware, estimativa de custos e persistência de modelos.
official
Hugging Face Paper Publisher
huggingface
Publique e gerencie artigos de pesquisa no Hugging Face Hub. Suporta a criação de páginas de artigos, vinculação de artigos a modelos/conjuntos de dados, reivindicação de autoria e geração de artigos de pesquisa profissionais baseados em markdown.
official
Hugging Face Tool Builder
huggingface
Construa scripts e ferramentas reutilizáveis usando a API do Hugging Face. Útil ao encadear ou combinar chamadas de API, ou quando tarefas forem repetidas/automatizadas. Cria scripts de linha de comando reutilizáveis para buscar, enriquecer ou processar dados do Hugging Face Hub.
official
Hugging Face Trackio
huggingface
Acompanhe e visualize experimentos de treinamento de ML com o Trackio. Use ao registrar métricas durante o treinamento (API Python) ou ao recuperar/analisar métricas registradas (CLI). Suporta visualização em dashboard em tempo real, sincronização com HF Space e saída JSON para automação.
official