Intuitive training framework for PyTorch
Project description
blowtorch
Intuitive, high-level training framework for research and development. It abstracts away lots of boilerplate normally associated with training and evaluating PyTorch models, without limiting your flexibility. Aurora provides the following:
- A way to specify training runs at a high level, while having fine-grained control over individual parts of the training
- Automated checkpointing, logging and resuming of runs
- A sacred inspired configuration management
- Reproducibility by keeping track of configuration, code and random state of each run
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