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173 lines
5.4 KiB
Markdown
173 lines
5.4 KiB
Markdown
---
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displayed_sidebar: promptfoo
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sidebar_label: HuggingFace Datasets
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title: Loading Test Cases from HuggingFace Datasets
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description: Load HuggingFace datasets directly for LLM evaluation with automatic splits, filtering, and format conversion capabilities
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keywords:
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[
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huggingface datasets,
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test cases,
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dataset integration,
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promptfoo datasets,
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ml evaluation,
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dataset import,
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existing datasets,
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]
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pagination_prev: configuration/datasets
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pagination_next: configuration/scenarios
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---
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# HuggingFace Datasets
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Promptfoo can import test cases directly from [HuggingFace datasets](https://huggingface.co/docs/datasets) using the `huggingface://datasets/` prefix.
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## Basic usage
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To load an entire dataset:
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```yaml
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tests: huggingface://datasets/fka/awesome-chatgpt-prompts
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```
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Run the evaluation:
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```bash
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npx promptfoo eval
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```
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Each dataset row becomes a test case with all dataset fields available as variables.
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## Dataset splits
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Load specific portions of datasets using query parameters:
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```yaml
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# Load from training split
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tests: huggingface://datasets/fka/awesome-chatgpt-prompts?split=train
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# Load from validation split with custom configuration
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tests: huggingface://datasets/fka/awesome-chatgpt-prompts?split=validation&config=custom
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```
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## Use dataset fields in prompts
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Dataset fields automatically become prompt variables. Here's how:
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```yaml title="promptfooconfig.yaml"
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prompts:
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- "Question: {{question}}\nAnswer:"
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tests: huggingface://datasets/rajpurkar/squad
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```
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## Query parameters
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| Parameter | Description | Default |
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| --------- | --------------------------------------------- | ----------- |
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| `split` | Dataset split to load (train/test/validation) | `test` |
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| `config` | Dataset configuration name | `default` |
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| `subset` | Dataset subset (for multi-subset datasets) | `none` |
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| `limit` | Maximum number of test cases to load | `unlimited` |
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The loader accepts any parameter supported by the [HuggingFace Datasets API](https://huggingface.co/docs/datasets-server/api_reference#get-apirows). Additional parameters beyond these common ones are passed directly to the API.
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To limit the number of test cases:
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```yaml
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tests: huggingface://datasets/fka/awesome-chatgpt-prompts?split=train&limit=50
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```
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To load a specific subset (common with MMLU datasets):
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```yaml
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tests: huggingface://datasets/cais/mmlu?split=test&subset=physics&limit=10
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```
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## Authentication
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For private datasets or increased rate limits, authenticate using your HuggingFace token. Set one of these environment variables:
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```bash
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# Any of these environment variables will work:
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export HF_TOKEN=your_token_here
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export HF_API_TOKEN=your_token_here
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export HUGGING_FACE_HUB_TOKEN=your_token_here
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```
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:::info
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Authentication is required for private datasets and gated models. For public datasets, authentication is optional but provides higher rate limits.
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:::
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## Implementation details
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- Each dataset row becomes a test case
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- All dataset fields are available as prompt variables
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- Large datasets are automatically paginated (100 rows per request)
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- Variable expansion is disabled to preserve original data
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## Example configurations
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### Basic chatbot evaluation
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```yaml title="promptfooconfig.yaml"
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description: Testing with HuggingFace dataset
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prompts:
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- 'Act as {{act}}. {{prompt}}'
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providers:
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- openai:gpt-5-mini
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tests: huggingface://datasets/fka/awesome-chatgpt-prompts?split=train
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```
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### Question answering with limits
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```yaml title="promptfooconfig.yaml"
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description: SQUAD evaluation with authentication
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prompts:
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- 'Question: {{question}}\nContext: {{context}}\nAnswer:'
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providers:
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- openai:gpt-5-mini
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tests: huggingface://datasets/rajpurkar/squad?split=validation&limit=100
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env:
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HF_TOKEN: your_token_here
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```
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## Example projects
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| Example | Use Case | Key Features |
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| ----------------------------------------------------------------------------------------------------------------- | ----------------- | -------------------- |
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| [Basic Setup](https://github.com/promptfoo/promptfoo/tree/main/examples/huggingface/dataset) | Simple evaluation | Default parameters |
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| [MMLU-Pro Comparison](https://github.com/promptfoo/promptfoo/tree/main/examples/compare-gpt-model-tiers-mmlu-pro) | Query parameters | Split, config, limit |
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| [Red Team Safety](https://github.com/promptfoo/promptfoo/tree/main/examples/redteam-beavertails) | Safety testing | BeaverTails dataset |
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## Troubleshooting
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### Authentication errors
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Ensure your HuggingFace token is set correctly: `export HF_TOKEN=your_token`
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### Dataset not found
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Verify the dataset path format: `owner/repo` (e.g., `rajpurkar/squad`)
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### Empty results
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Check that the specified split exists for the dataset. Try `split=train` if `split=test` returns no results.
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### Performance issues
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Add the `limit` parameter to reduce the number of rows loaded: `&limit=100`
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## See Also
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- [Test Case Configuration](/docs/configuration/test-cases) - Complete guide to configuring test cases
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- [HuggingFace Provider](/docs/providers/huggingface) - Using HuggingFace models for inference
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- [CSV Test Cases](/docs/configuration/test-cases#csv-format) - Loading test cases from CSV files
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- [Red Team Configuration](/docs/red-team/configuration) - Using datasets in red team evaluations
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