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Create a Hugging Face dataset shortlist agent

Build an ML research assistant that narrows candidate datasets before experimentation.

Workflow outcome

Convert dataset research into a shortlist with licensing questions, quality risks, and evaluation steps.

What this agent helps you do

A Hugging Face dataset shortlist agent helps teams compare candidate datasets before training, fine-tuning, benchmarking, or prototyping. It focuses on data suitability rather than model selection.

When to use this workflow

Use it before choosing training data, building an evaluation set, exploring public datasets, or preparing a data review for legal or domain experts.

How Hugging Face gives the agent context

Connect Hugging Face and describe the task, domain, language, size needs, license constraints, and quality criteria. Ask the agent to cite dataset metadata and flag missing documentation.

Example starter prompt

Find and compare Hugging Face datasets for this ML task. Prepare a shortlist with purpose, coverage, license questions, quality risks, and recommended evaluation steps.

Suggested workflow steps

The agent gathers candidate dataset context, filters by constraints, compares metadata, identifies risks, and recommends tests. It should avoid assuming a dataset fits your domain without validation.

Expected handoff

The output should include a shortlist table, risks, follow-up questions, and evaluation checklist. It can feed a research doc or implementation task.

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