| --- |
| viewer: false |
| tags: [uv-script, classification, vllm, structured-outputs, gpu-required, hf-jobs] |
| --- |
| |
| # Dataset Classification Script |
|
|
| GPU-accelerated text classification for Hugging Face datasets with guaranteed valid outputs through structured generation. Powered by SmolLM3-3B's advanced reasoning capabilities. |
|
|
| ## π Quick Start |
|
|
| ```bash |
| # Classify IMDB reviews |
| uv run classify-dataset.py \ |
| --input-dataset stanfordnlp/imdb \ |
| --column text \ |
| --labels "positive,negative" \ |
| --output-dataset user/imdb-classified |
| ``` |
|
|
| That's it! No installation, no setup - just `uv run`. |
|
|
| ## π Requirements |
|
|
| - **GPU Required**: Uses GPU-accelerated inference |
| - Python 3.10+ |
| - UV (will handle all dependencies automatically) |
| - vLLM >= 0.6.6 |
|
|
| ## π― Features |
|
|
| - **Guaranteed valid outputs** using structured generation with guided decoding |
| - **Zero-shot classification** without training data required |
| - **GPU-optimized** for maximum throughput and efficiency |
| - **Default model**: [HuggingFaceTB/SmolLM3-3B](https://huggingface.co/HuggingFaceTB/SmolLM3-3B) - a fast 3B model with native thinking capabilities (`<think>` tags) |
| - **Robust text handling** with preprocessing and validation |
| - **Automatic progress tracking** and detailed statistics |
| - **Direct Hub integration** - read and write datasets seamlessly |
| - **Label descriptions** support for providing context to improve accuracy |
| - **Reasoning mode** for interpretable classifications with thinking traces |
| - **JSON output parsing** for reliable extraction from reasoning mode |
| - **Optimized batching** with vLLM's automatic batch processing |
| - **Multiple guided backends** - supports outlines, xgrammar, and more |
|
|
| ## π» Usage |
|
|
| ### Basic Classification |
|
|
| ```bash |
| uv run classify-dataset.py \ |
| --input-dataset <dataset-id> \ |
| --column <text-column> \ |
| --labels <comma-separated-labels> \ |
| --output-dataset <output-id> |
| ``` |
|
|
| ### Arguments |
|
|
| **Required:** |
|
|
| - `--input-dataset`: Hugging Face dataset ID (e.g., `stanfordnlp/imdb`, `user/my-dataset`) |
| - `--column`: Name of the text column to classify |
| - `--labels`: Comma-separated classification labels (e.g., `"spam,ham"`) |
| - `--output-dataset`: Where to save the classified dataset |
|
|
| **Optional:** |
|
|
| - `--model`: Model to use (default: **`HuggingFaceTB/SmolLM3-3B`** - a fast 3B parameter model) |
| - `--label-descriptions`: Provide descriptions for each label to improve classification accuracy |
| - `--enable-reasoning`: Enable reasoning mode with thinking traces (adds reasoning column) |
| - `--split`: Dataset split to process (default: `train`) |
| - `--max-samples`: Limit samples for testing |
| - `--shuffle`: Shuffle dataset before selecting samples (useful for random sampling) |
| - `--shuffle-seed`: Random seed for shuffling (default: 42) |
| - `--temperature`: Generation temperature (default: 0.1) |
| - `--guided-backend`: Backend for guided decoding (default: `outlines`) |
| - `--hf-token`: Hugging Face token (or use `HF_TOKEN` env var) |
|
|
| ### Label Descriptions |
|
|
| Provide context for your labels to improve classification accuracy: |
|
|
| ```bash |
| uv run classify-dataset.py \ |
| --input-dataset user/support-tickets \ |
| --column content \ |
| --labels "bug,feature,question,other" \ |
| --label-descriptions "bug:something is broken,feature:request for new functionality,question:asking for help,other:anything else" \ |
| --output-dataset user/tickets-classified |
| ``` |
|
|
| The model uses these descriptions to better understand what each label represents, leading to more accurate classifications. |
|
|
| ### Reasoning Mode |
|
|
| Enable thinking traces for interpretable classifications: |
|
|
| ```bash |
| uv run classify-dataset.py \ |
| --input-dataset stanfordnlp/imdb \ |
| --column text \ |
| --labels "positive,negative,neutral" \ |
| --enable-reasoning \ |
| --output-dataset user/imdb-with-reasoning |
| ``` |
|
|
| When `--enable-reasoning` is used: |
| - The model generates step-by-step reasoning using SmolLM3's thinking capabilities |
| - Output includes three columns: `classification`, `reasoning`, and `parsing_success` |
| - Final answer must be in JSON format: `{"label": "chosen_label"}` |
| - Useful for understanding complex classification decisions |
| - Trade-off: Slower but more interpretable |
|
|
| ## π Examples |
|
|
| ### Sentiment Analysis |
|
|
| ```bash |
| uv run classify-dataset.py \ |
| --input-dataset stanfordnlp/imdb \ |
| --column text \ |
| --labels "positive,negative" \ |
| --output-dataset user/imdb-sentiment |
| ``` |
|
|
| ### Support Ticket Classification |
|
|
| ```bash |
| # Run on HF Jobs with SmolLM3-3B (default) |
| hf jobs uv run \ |
| --flavor l4x1 \ |
| --image vllm/vllm-openai:latest \ |
| https://huggingface.co/datasets/uv-scripts/classification/raw/main/classify-dataset.py \ |
| --input-dataset user/support-tickets \ |
| --column content \ |
| --labels "bug,feature_request,question,other" \ |
| --label-descriptions "bug:code or product not working as expected,feature_request:asking for new functionality,question:seeking help or clarification,other:general comments or feedback" \ |
| --output-dataset user/tickets-classified |
| ``` |
|
|
| ### News Categorization |
|
|
| ```bash |
| # Using SmolLM3-3B for efficient news classification |
| hf jobs uv run \ |
| --flavor l4x1 \ |
| --image vllm/vllm-openai:latest \ |
| https://huggingface.co/datasets/uv-scripts/classification/raw/main/classify-dataset.py \ |
| --input-dataset ag_news \ |
| --column text \ |
| --labels "world,sports,business,tech" \ |
| --output-dataset user/ag-news-categorized |
| ``` |
|
|
| ### Complex Classification with Reasoning |
|
|
| ```bash |
| # SmolLM3's thinking mode for nuanced feedback analysis |
| hf jobs uv run \ |
| --flavor l4x1 \ |
| --image vllm/vllm-openai:latest \ |
| https://huggingface.co/datasets/uv-scripts/classification/raw/main/classify-dataset.py \ |
| --input-dataset user/customer-feedback \ |
| --column text \ |
| --labels "very_positive,positive,neutral,negative,very_negative" \ |
| --label-descriptions "very_positive:extremely satisfied,positive:generally satisfied,neutral:mixed feelings,negative:dissatisfied,very_negative:extremely dissatisfied" \ |
| --enable-reasoning \ |
| --output-dataset user/feedback-analyzed |
| ``` |
|
|
| This combines label descriptions with reasoning mode for maximum interpretability. |
|
|
| ### ArXiv ML Research Classification |
|
|
| Classify academic papers into machine learning research areas: |
|
|
| ```bash |
| # Fast classification with random sampling |
| uv run classify-dataset.py \ |
| --input-dataset librarian-bots/arxiv-metadata-snapshot \ |
| --column abstract \ |
| --labels "llm,computer_vision,reinforcement_learning,optimization,theory,other" \ |
| --label-descriptions "llm:language models and NLP,computer_vision:image and video processing,reinforcement_learning:RL and decision making,optimization:training and efficiency,theory:theoretical ML foundations,other:other ML topics" \ |
| --output-dataset user/arxiv-ml-classified \ |
| --split "train[:10000]" \ |
| --max-samples 100 \ |
| --shuffle |
| |
| # With reasoning for nuanced classification |
| hf jobs uv run \ |
| --flavor l4x1 \ |
| --image vllm/vllm-openai:latest \ |
| https://huggingface.co/datasets/uv-scripts/classification/raw/main/classify-dataset.py \ |
| --input-dataset librarian-bots/arxiv-metadata-snapshot \ |
| --column abstract \ |
| --labels "multimodal,agents,reasoning,safety,efficiency" \ |
| --label-descriptions "multimodal:vision-language and cross-modal models,agents:autonomous agents and tool use,reasoning:reasoning and planning systems,safety:alignment and safety research,efficiency:model optimization and deployment" \ |
| --enable-reasoning \ |
| --output-dataset user/arxiv-frontier-research \ |
| --split "train[:1000]" \ |
| --max-samples 50 |
| ``` |
|
|
| The reasoning mode is particularly valuable for academic abstracts where papers often span multiple topics and require careful analysis to determine the primary focus. |
|
|
| ## π Running on HF Jobs |
|
|
| Optimized for [Hugging Face Jobs](https://huggingface.co/docs/hub/spaces-gpu-jobs) (requires Pro subscription or Team/Enterprise organization): |
| ```bash |
| # Run on L4 GPU with vLLM image |
| hf jobs uv run \ |
| --flavor l4x1 \ |
| --image vllm/vllm-openai:latest \ |
| https://huggingface.co/datasets/uv-scripts/classification/raw/main/classify-dataset.py \ |
| --input-dataset stanfordnlp/imdb \ |
| --column text \ |
| --labels "positive,negative" \ |
| --output-dataset user/imdb-classified |
| ``` |
|
|
| ### GPU Flavors |
| - `l4x1`: **Recommended starting point** - great for SmolLM3 |
| - `a10g-large`: More memory for larger batches or 7B+ models |
| - `a100-large`: Maximum performance for demanding workloads |
|
|
| ## π§ Advanced Usage |
|
|
| ### Random Sampling |
|
|
| When working with ordered datasets, use `--shuffle` with `--max-samples` to get a representative sample: |
|
|
| ```bash |
| # Get 50 random reviews instead of the first 50 |
| uv run classify-dataset.py \ |
| --input-dataset stanfordnlp/imdb \ |
| --column text \ |
| --labels "positive,negative" \ |
| --output-dataset user/imdb-sample \ |
| --max-samples 50 \ |
| --shuffle \ |
| --shuffle-seed 123 # For reproducibility |
| ``` |
|
|
| This is especially important for: |
| - Chronologically ordered datasets (news, papers, social media) |
| - Pre-sorted datasets (by rating, category, etc.) |
| - Testing on diverse samples before processing the full dataset |
|
|
| ### Using Different Models |
|
|
| By default, this script uses **[HuggingFaceTB/SmolLM3-3B](https://huggingface.co/HuggingFaceTB/SmolLM3-3B)** - a state-of-the-art 3B parameter model specifically designed for efficient inference. SmolLM3 features: |
| - Native thinking capabilities with `<think>` tags for step-by-step reasoning |
| - Excellent performance on classification tasks |
| - Fast inference speed (50-100 texts/second on A10) |
| - Low memory footprint allowing larger batch sizes |
|
|
| While you can use other models, SmolLM3 is recommended for its balance of quality, speed, and reasoning capabilities: |
|
|
| ```bash |
| # Larger model for complex classification |
| uv run classify-dataset.py \ |
| --input-dataset user/legal-docs \ |
| --column text \ |
| --labels "contract,patent,brief,memo,other" \ |
| --output-dataset user/legal-classified \ |
| --model Qwen/Qwen2.5-7B-Instruct |
| ``` |
|
|
| ### Large Datasets |
|
|
| vLLM automatically handles batching for optimal performance. For very large datasets, it will process efficiently without manual intervention: |
|
|
| ```bash |
| uv run classify-dataset.py \ |
| --input-dataset user/huge-dataset \ |
| --column text \ |
| --labels "A,B,C" \ |
| --output-dataset user/huge-classified |
| ``` |
|
|
| ## π Performance |
|
|
| - **SmolLM3-3B (default)**: ~50-100 texts/second on A10 |
| - **7B models**: ~20-50 texts/second on A10 |
| - vLLM automatically optimizes batching for best throughput |
| - Performance scales with GPU memory and compute capability |
|
|
| ## π€ How It Works |
|
|
| 1. **vLLM**: Provides efficient GPU batch inference with automatic batching |
| 2. **Guided Decoding**: Uses outlines backend to guarantee valid label outputs |
| 3. **Structured Generation**: Constrains model outputs to exact label choices |
| 4. **UV**: Handles all dependencies automatically |
|
|
| The script loads your dataset, preprocesses texts, classifies each one with guaranteed valid outputs, then saves the results as a new column in the output dataset. |
|
|
| ## π Troubleshooting |
|
|
| ### CUDA Not Available |
|
|
| This script requires a GPU. Run it on: |
|
|
| - A machine with NVIDIA GPU |
| - HF Jobs (recommended) |
| - Cloud GPU instances |
|
|
| ### Out of Memory |
|
|
| - Use a smaller model |
| - Use a larger GPU (e.g., a100-large) |
|
|
| ### Invalid/Skipped Texts |
|
|
| - Texts shorter than 3 characters are skipped |
| - Empty or None values are marked as invalid |
| - Very long texts are truncated to 4000 characters |
|
|
| ### Classification Quality |
|
|
| - With guided decoding, outputs are guaranteed to be valid labels |
| - For better results, use clear and distinct label names |
| - Try the `reasoning` prompt style for complex classifications |
| - Use a larger model for nuanced tasks |
|
|
| ### vLLM Version Issues |
|
|
| If you see `ImportError: cannot import name 'GuidedDecodingParams'`: |
|
|
| - Your vLLM version is too old (requires >= 0.6.6) |
| - The script specifies the correct version in its dependencies |
| - UV should automatically install the correct version |
|
|
| ## π¬ Advanced Workflows |
|
|
| For complex real-world workflows that integrate UV scripts with the Python HF Jobs API, see the [ArXiv ML Trends example](examples/arxiv-workflow/). This demonstrates: |
|
|
| - **Multi-stage pipelines**: Data preparation β GPU classification β Analysis |
| - **Python API orchestration**: Using `run_uv_job()` to manage GPU jobs programmatically |
| - **Production patterns**: Error handling, parallel execution, and incremental updates |
| - **Cost optimization**: Choosing appropriate compute resources for each task |
|
|
| ```python |
| # Example: Submit a classification job via Python API |
| from huggingface_hub import run_uv_job |
| |
| job = run_uv_job( |
| script="https://huggingface.co/datasets/uv-scripts/classification/raw/main/classify-dataset.py", |
| args=["--input-dataset", "my/dataset", "--labels", "A,B,C"], |
| flavor="l4x1", |
| image="vllm/vllm-openai:latest" |
| ) |
| result = job.wait() |
| ``` |
|
|
| ## π License |
|
|
| This script is provided as-is for use with the UV Scripts organization. |
|
|