Synthetic Tabular Data Generation Using Transformers
, Sr. Solutions Architect, NVIDIA
Highly Rated
Synthetic data generation (SDG) is a data augmentation technique necessary for increasing the robustness of models by supplying additional data to train models. We'll explore the use of Transformers for synthetic tabular data generation in the context of credit card transactions. We'll use the Megatron framework, developed by NVIDIA's Applied Deep Learning Research Team, to facilitate training our Transformer SDG model on multi-node, multi-GPU systems and/or supercomputers. We'll work through end-to-end development covering data pre-processing, model pre-training, fine tuning, inference, and evaluation.
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