SparseML v1.4.0
jeanniefinks
released this
17 Feb 20:06
·
13 commits
to release/1.4
since this release
New Features:
- OpenPifPaf training prototype support (#1171)
- Layerwise distillation support for the PyTorch DistillationModifier (#1272)
- Recipe template API added in PyTorch for simple creation of default recipes (#1147)
- Ability to create sample inputs and outputs on export for transformers, YOLOv5, and image classification pathways (#1180)
- Loggers and one-shot support for torchvision training script (#1299, #1300)
Changes:
- Refactored the ONNX Export pipeline to standardize implementations, adding functionality for more complicated models, and adding better debugging support. (#1192)
- Refactored the PyTorch QuantizationModifier to expand supported models and operators and simplify the interface. (#1183)
- YOLOv5 integration upgraded to the latest upstream. (#1322)
Resolved Issues:
recipe_template
CLI no longer has improper code documentation, impairing operability. (#1170)- ONNX export now enforces that all quantized graphs will have unit8 values. fixing issues for some quantized models that were crashing in DeepSparse. (#1181)
- Changed over to vector_norm for PyTorch pruning modifiers that were leading to crashes in older PyTorch versions. (#1167)
- Model loading for torchvision script fixed where models were failing on load unless a recipe was supplied. (#1281)
Known Issues:
- None