The Synthetic Data Vault (SDV) is a Python library designed to be your one-stop shop for creating tabular synthetic data. The SDV uses a variety of machine learning algorithms to learn patterns from your real data and emulate them in synthetic data.
🧠 Create synthetic data using machine learning. The SDV offers multiple models, ranging from classical statistical methods (GaussianCopula) to deep learning methods (CTGAN). Generate data for single tables, multiple connected tables or sequential tables.
📊 Evaluate and visualize data. Compare the synthetic data to the real data against a variety of measures. Diagnose problems and generate a quality report to get more insights.
🔄 Preprocess, anonymize and define constraints. Control data processing to improve the quality of synthetic data, choose from different types of anonymization and define business rules in the form of logical constraints.
Important Links | |
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Tutorials | Get some hands-on experience with the SDV. Launch the tutorial notebooks and run the code yourself. |
📖 Docs | Learn how to use the SDV library with user guides and API references. |
📙 Blog | Get more insights about using the SDV, deploying models and our synthetic data community. |
Community | Join our Slack workspace for announcements and discussions. |
💻 Website | Check out the SDV website for more information about the project. |
The SDV is publicly available under the Business Source License. Install SDV using pip or conda. We recommend using a virtual environment to avoid conflicts with other software on your device.
pip install sdv
conda install -c pytorch -c conda-forge sdv
Load a demo dataset to get started. This dataset is a single table describing guests staying at a fictional hotel.
from sdv.datasets.demo import download_demo
real_data, metadata = download_demo(
modality='single_table',
dataset_name='fake_hotel_guests')
The demo also includes metadata, a description of the dataset, including the data types in each
column and the primary key (guest_email
).
Next, we can create an SDV synthesizer, an object that you can use to create synthetic data. It learns patterns from the real data and replicates them to generate synthetic data. Let's use the GaussianCopulaSynthesizer.
from sdv.single_table import GaussianCopulaSynthesizer
synthesizer = GaussianCopulaSynthesizer(metadata)
synthesizer.fit(data=real_data)
And now the synthesizer is ready to create synthetic data!
synthetic_data = synthesizer.sample(num_rows=500)
The synthetic data will have the following properties:
- Sensitive columns are fully anonymized. The email, billing address and credit card number columns contain new data so you don't expose the real values.
- Other columns follow statistical patterns. For example, the proportion of room types, the distribution of check in dates and the correlations between room rate and room type are preserved.
- Keys and other relationships are intact. The primary key (guest email) is unique for each row. If you have multiple tables, the connection between a primary and foreign keys makes sense.
The SDV library allows you to evaluate the synthetic data by comparing it to the real data. Get started by generating a quality report.
from sdv.evaluation.single_table import evaluate_quality
quality_report = evaluate_quality(
real_data,
synthetic_data,
metadata)
Generating report ...
(1/2) Evaluating Column Shapes: |████████████████| 9/9 [00:00<00:00, 1133.09it/s]|
Column Shapes Score: 89.11%
(2/2) Evaluating Column Pair Trends: |██████████████████████████████████████████| 36/36 [00:00<00:00, 502.88it/s]|
Column Pair Trends Score: 88.3%
Overall Score (Average): 88.7%
This object computes an overall quality score on a scale of 0 to 100% (100 being the best) as well as detailed breakdowns. For more insights, you can also visualize the synthetic vs. real data.
from sdv.evaluation.single_table import get_column_plot
fig = get_column_plot(
real_data=real_data,
synthetic_data=synthetic_data,
column_name='amenities_fee',
metadata=metadata
)
fig.show()
Using the SDV library, you can synthesize single table, multi table and sequential data. You can also customize the full synthetic data workflow, including preprocessing, anonymization and adding constraints.
To learn more, visit the SDV Demo page.
Thank you to our team of contributors who have built and maintained the SDV ecosystem over the years!
If you use SDV for your research, please cite the following paper:
Neha Patki, Roy Wedge, Kalyan Veeramachaneni. The Synthetic Data Vault. IEEE DSAA 2016.
@inproceedings{
SDV,
title={The Synthetic data vault},
author={Patki, Neha and Wedge, Roy and Veeramachaneni, Kalyan},
booktitle={IEEE International Conference on Data Science and Advanced Analytics (DSAA)},
year={2016},
pages={399-410},
doi={10.1109/DSAA.2016.49},
month={Oct}
}
The Synthetic Data Vault Project was first created at MIT's Data to AI Lab in 2016. After 4 years of research and traction with enterprise, we created DataCebo in 2020 with the goal of growing the project. Today, DataCebo is the proud developer of SDV, the largest ecosystem for synthetic data generation & evaluation. It is home to multiple libraries that support synthetic data, including:
- 🔄 Data discovery & transformation. Reverse the transforms to reproduce realistic data.
- 🧠 Multiple machine learning models -- ranging from Copulas to Deep Learning -- to create tabular, multi table and time series data.
- 📊 Measuring quality and privacy of synthetic data, and comparing different synthetic data generation models.
Get started using the SDV package -- a fully integrated solution and your one-stop shop for synthetic data. Or, use the standalone libraries for specific needs.