Data-Centric-AI-Community/fg-data-synthetic
Synthetic data generators for tabular and time-series data
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We well know GANs for success in the realistic image generation. However, they can be applied in tabular data generation. We will review and examine some recent papers about tabular GANs in action.
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Latest capture 2026-07-15 03:06
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Scanned 2026-07-15 03:06
pyproject.toml
python ecosystem,
15 dependencies
requirements.txt
python ecosystem,
12 dependencies
setup.cfg
python ecosystem,
15 dependencies
setup.py
python ecosystem,
0 dependencies
huggingface_space/requirements.txt
python ecosystem,
14 dependencies
Research/requirements.txt
python ecosystem,
9 dependencies
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Synthetic data generators for tabular and time-series data
SDG is a specialized framework designed to generate high-quality structured tabular data.
Official Code for DragGAN (SIGGRAPH 2023)
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