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metadata
title: Synthetic Data Generator
short_description: Build datasets using natural language
emoji: 🧬
colorFrom: yellow
colorTo: pink
sdk: gradio
sdk_version: 5.8.0
app_file: app.py
pinned: true
license: apache-2.0
hf_oauth: true
hf_oauth_scopes:
  - read-repos
  - write-repos
  - manage-repos
  - inference-api

Synthetic Data Generator Logo

Build datasets using natural language

Synthetic Data Generator

Introduction

Synthetic Data Generator is a tool that allows you to create high-quality datasets for training and fine-tuning language models. It leverages the power of distilabel and LLMs to generate synthetic data tailored to your specific needs. The announcement blog goes over a practical example of how to use it.

Supported Tasks:

  • Text Classification
  • Chat Data for Supervised Fine-Tuning

This tool simplifies the process of creating custom datasets, enabling you to:

  • Describe the characteristics of your desired application
  • Iterate on sample datasets
  • Produce full-scale datasets
  • Push your datasets to the Hugging Face Hub and/or Argilla

By using the Synthetic Data Generator, you can rapidly prototype and create datasets for, accelerating your AI development process.

Installation

You can simply install the package with:

pip install synthetic-dataset-generator

Quickstart

from synthetic_dataset_generator import launch

launch()

Environment Variables

  • HF_TOKEN: Your Hugging Face token to push your datasets to the Hugging Face Hub and generate free completions from Hugging Face Inference Endpoints. You can find some configuration examples in the examples folder.

Optionally, you can set the following environment variables to customize the generation process.

  • MAX_NUM_TOKENS: The maximum number of tokens to generate, defaults to 2048.
  • MAX_NUM_ROWS: The maximum number of rows to generate, defaults to 1000.
  • DEFAULT_BATCH_SIZE: The default batch size to use for generating the dataset, defaults to 5.

Optionally, you can use different models and APIs. For providers outside of Hugging Face, we provide an integration through LiteLLM.

  • BASE_URL: The base URL for any OpenAI compatible API, e.g. https://api-inference.huggingface.co/v1/, https://api.openai.com/v1/, http://127.0.0.1:11434/v1/.
  • MODEL: The model to use for generating the dataset, e.g. meta-llama/Meta-Llama-3.1-8B-Instruct, openai/gpt-4o, ollama/llama3.1.
  • API_KEY: The API key to use for the generation API, e.g. hf_..., sk-.... If not provided, it will default to the provided HF_TOKEN environment variable.

SFT and Chat Data generation is only supported with Hugging Face Inference Endpoints , and you can set the following environment variables use it with models other than Llama3 and Qwen2.

  • MAGPIE_PRE_QUERY_TEMPLATE: Enforce setting the pre-query template for Magpie, which is only supported with Hugging Face Inference Endpoints. Llama3 and Qwen2 are supported out of the box and will use "<|begin_of_text|><|start_header_id|>user<|end_header_id|>\n\n" and "<|im_start|>user\n" respectively. For other models, you can pass a custom pre-query template string.

Optionally, you can also push your datasets to Argilla for further curation by setting the following environment variables:

  • ARGILLA_API_KEY: Your Argilla API key to push your datasets to Argilla.
  • ARGILLA_API_URL: Your Argilla API URL to push your datasets to Argilla.

Argilla integration

Argilla is an open source tool for data curation. It allows you to annotate and review datasets, and push curated datasets to the Hugging Face Hub. You can easily get started with Argilla by following the quickstart guide.

Argilla integration

Custom synthetic data generation?

Each pipeline is based on distilabel, so you can easily change the LLM or the pipeline steps.

Check out the distilabel library for more information.

Development

Install the dependencies:

# Create a virtual environment
python -m venv .venv
source .venv/bin/activate

# Install the dependencies
pip install -e . # pdm install

Run the app:

python app.py