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huggingface/huggingface-tool-builder

huggingface

huggingface-tool-builder

Use this skill when the user wants to build tool/scripts or achieve a task where using data from the Hugging Face API would help. This is especially useful when chaining or combining API calls or the task will be repeated/automated. This Skill creates a reusable script to fetch, enrich or process data.

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New~1.5k
v1.0Saved Jul 11, 2026

Hugging Face API Tool Builder

Your purpose is now is to create reusable command line scripts and utilities for using the Hugging Face API, allowing chaining, piping and intermediate processing where helpful. You can access the API directly, as well as use the hf command line tool. Model and Dataset cards can be accessed from repositories directly.

Script Rules

Make sure to follow these rules:

  • Scripts must take a --help command line argument to describe their inputs and outputs
  • Non-destructive scripts should be tested before handing over to the User
  • Shell scripts are preferred, but use Python or TSX if complexity or user need requires it.
  • IMPORTANT: Use the HF_TOKEN environment variable as an Authorization header. For example: curl -H "Authorization: Bearer ${HF_TOKEN}" https://huggingface.co/api/. This provides higher rate limits and appropriate authorization for data access.
  • Investigate the shape of the API results before commiting to a final design; make use of piping and chaining where composability would be an advantage - prefer simple solutions where possible.
  • Share usage examples once complete.

Be sure to confirm User preferences where there are questions or clarifications needed.

Sample Scripts

Paths below are relative to this skill directory.

Reference examples:

  • references/hf_model_papers_auth.sh — uses HF_TOKEN automatically and chains trending → model metadata → model card parsing with fallbacks; it demonstrates multi-step API usage plus auth hygiene for gated/private content.
  • references/find_models_by_paper.sh — optional HF_TOKEN usage via --token, consistent authenticated search, and a retry path when arXiv-prefixed searches are too narrow; it shows resilient query strategy and clear user-facing help.
  • references/hf_model_card_frontmatter.sh — uses the hf CLI to download model cards, extracts YAML frontmatter, and emits NDJSON summaries (license, pipeline tag, tags, gated prompt flag) for easy filtering.

Baseline examples (ultra-simple, minimal logic, raw JSON output with HF_TOKEN header):

  • references/baseline_hf_api.sh — bash
  • references/baseline_hf_api.py — python
  • references/baseline_hf_api.tsx — typescript executable

Composable utility (stdin → NDJSON):

  • references/hf_enrich_models.sh — reads model IDs from stdin, fetches metadata per ID, emits one JSON object per line for streaming pipelines.

Composability through piping (shell-friendly JSON output):

  • references/baseline_hf_api.sh 25 | jq -r '.[].id' | references/hf_enrich_models.sh | jq -s 'sort_by(.downloads) | reverse | .[:10]'
  • references/baseline_hf_api.sh 50 | jq '[.[] | {id, downloads}] | sort_by(.downloads) | reverse | .[:10]'
  • printf '%s\n' openai/gpt-oss-120b meta-llama/Meta-Llama-3.1-8B | references/hf_model_card_frontmatter.sh | jq -s 'map({id, license, has_extra_gated_prompt})'

High Level Endpoints

The following are the main API endpoints available at https://huggingface.co

/api/datasets
/api/models
/api/spaces
/api/collections
/api/daily_papers
/api/notifications
/api/settings
/api/whoami-v2
/api/trending
/oauth/userinfo

Accessing the API

The API is documented with the OpenAPI standard at https://huggingface.co/.well-known/openapi.json.

IMPORTANT: DO NOT ATTEMPT to read https://huggingface.co/.well-known/openapi.json directly as it is too large to process.

IMPORTANT Use jq to query and extract relevant parts. For example,

Command to Get All 160 Endpoints

curl -s "https://huggingface.co/.well-known/openapi.json" | jq '.paths | keys | sort'

Model Search Endpoint Details

curl -s "https://huggingface.co/.well-known/openapi.json" | jq '.paths["/api/models"]'

You can also query endpoints to see the shape of the data. When doing so constrain results to low numbers to make them easy to process, yet representative.

Using the HF command line tool

The hf command line tool gives you further access to Hugging Face repository content and infrastructure.

❯ hf --help
Usage: hf [OPTIONS] COMMAND [ARGS]...

  Hugging Face Hub CLI

Options:
  --help                Show this message and exit.

Commands:
  auth                 Manage authentication (login, logout, etc.).
  buckets              Commands to interact with buckets.
  cache                Manage local cache directory.
  collections          Interact with collections on the Hub.
  datasets             Interact with datasets on the Hub.
  discussions          Manage discussions and pull requests on the Hub.
  download             Download files from the Hub.
  endpoints            Manage Hugging Face Inference Endpoints.
  env                  Print information about the environment.
  extensions           Manage hf CLI extensions.
  jobs                 Run and manage Jobs on the Hub.
  models               Interact with models on the Hub.
  papers               Interact with papers on the Hub.
  repos                Manage repos on the Hub.
  skills               Manage skills for AI assistants.
  spaces               Interact with spaces on the Hub.
  sync                 Sync files between local directory and a bucket.
  upload               Upload a file or a folder to the Hub.
  upload-large-folder  Upload a large folder to the Hub.
  version              Print information about the hf version.
  webhooks             Manage webhooks on the Hub.

The hf CLI command has replaced the now deprecated huggingface-cli command.

Files8
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Overall Score

82/100

Grade

B

Good

Safety

82

Quality

84

Clarity

85

Completeness

76

Summary

This skill teaches agents to build reusable command-line scripts and utilities for the Hugging Face API, with support for authentication, data enrichment, and composable piping patterns. It provides shell, Python, and TypeScript baseline examples plus advanced scripts that fetch model metadata, extract papers, and parse model card frontmatter—all scoped to HF API access with optional token-based authentication.

Static Analysis Findings

1 finding

Patterns detected by deterministic static analysis before AI scoring. Hover over any finding code for detailed information and remediation guidance.

Destructive Operation
SEC-001Recursive DeletionMax: B

Recursive deletion pattern (rm -rf)

references/hf_model_card_frontmatter.shrm -rf

Detected Capabilities

api-requestshell-command-executionfile-readtemporary-directory-creationjson-processinghttp-request

Trigger Keywords

Phrases that MCP clients use to match this skill to user intent.

fetch hugging face modelssearch models by paperextract model metadatabuild hf pipelinemodel card analysis

Risk Signals

WARNING

rm -rf in temporary directory cleanup

references/hf_model_card_frontmatter.sh:cleanup()

Referenced Domains

External domains referenced in skill content, detected by static analysis.

huggingface.cowww.apache.org

Use Cases

  • Build shell pipelines that fetch trending HF models and filter by metadata
  • Extract paper citations and arXiv references from model cards at scale
  • Chain API calls to search for models by research paper or keyword
  • Create composable utilities that enrich model IDs with download/like counts via NDJSON output
  • Fetch and parse YAML frontmatter from HF model README files for structured reporting

Quality Notes

  • Strong: All scripts include --help documentation and clear usage examples
  • Strong: Authentication pattern consistently uses HF_TOKEN env var with Bearer header across all scripts
  • Strong: Reference scripts demonstrate practical patterns (piping, NDJSON output, error handling)
  • Strong: Scripts use set -euo pipefail for defensive execution
  • Positive: Composable utilities (hf_enrich_models.sh, baseline_hf_api.sh) designed for stdin/stdout piping
  • Positive: Main SKILL.md provides clear examples of chaining and composability
  • Positive: Explicit documentation warns against reading large OpenAPI schema file directly
  • Minor: hf_model_card_frontmatter.sh uses base64 encoding in find_models_by_paper.sh but adds minimal complexity
  • Minor: Error handling is consistent but could be more detailed (e.g., what to do on rate limit)
Model: claude-haiku-4-5-20251001Analyzed: Jul 11, 2026

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