Queries HuggingFace benchmark leaderboards to find the best model for a task, filters by device memory constraints, and returns a comparison table with scores.
How this skill is triggered — by the user, by Claude, or both
Slash command
/agentic-awesome-skills:huggingface-bestThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Use when the user asks about finding the best, top, or recommended model for a task, wants to know what AI model to use, or wants to compare models by benchmark scores. Triggers on: "best model for X", "what model should I use for", "top models for [task]", "which model runs on my...
Use when the user asks about finding the best, top, or recommended model for a task, wants to know what AI model to use, or wants to compare models by benchmark scores. Triggers on: "best model for X", "what model should I use for", "top models for [task]", "which model runs on my...
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.
Extract from the user's message:
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.
When a device is specified, extract its available memory (unified RAM for Apple Silicon, VRAM for discrete GPUs) and apply:
Examples: 16GB → 8B fp16 / 32B Q4 — 24GB VRAM → 12B fp16 / 48B Q4 — 8GB → 4B fp16 / 16B Q4
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.
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.
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:
safetensors.total → convert to B (e.g., 7_241_748_480 → "7.2B")license:apache-2.0, license:mit, etc.)safetensors is absent, parse size from the model name (look for "7b", "8b", "13b", "70b", "72b", etc.)If a device was specified:
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.
| # | 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 |
https://huggingface.co/<model_id>— for benchmarks where the model wasn't evaluatedYes (fp16), Q4 only, Too large, API onlyAfter presenting the table, ask the user: "Would you like to run [top recommended model]?"
If they say yes, ask whether they'd prefer to:
hub_repo_search with filters=["<task>"] sorted by trendingScorehub_repo_search for popular models tagged with the task, note that results are by popularity rather than benchmark scorenpx claudepluginhub sickn33/agentic-awesome-skills --plugin antigravity-bundle-aas-localization-international-growth5plugins reuse this skill
First indexed Jul 2, 2026
Queries HuggingFace benchmark leaderboards to find the best model for a task, filters by device memory constraints, and returns a comparison table with scores.
Queries HuggingFace benchmark leaderboards to find the best AI model for a user's task and hardware constraints, returning a comparison table with scores.
Detects system RAM, CPU, and GPU then scores and recommends local LLM models across quality, speed, fit, and context dimensions.