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5 commits
to release_v220
since this release
New features
Pre-production quality
(TensorFlow) Added TensorFlow 2.5.x support.
(TensorFlow) The SubclassedConverter class was added to create NNCFGraph for the tf.Graph Keras model.
(TensorFlow) Added TFOpLambda layer support with TFModelConverter, TFModelTransformer, and TFOpLambdaMetatype.
(TensorFlow) Patterns from MatMul and Conv2D to BiasAdd and Metatypes of TensorFlow operations with weights TFOpWithWeightsMetatype are added.
(PyTorch, TensorFlow) Added prunings for Reshape and Linear as ReshapePruningOp and LinearPruningOp.
(PyTorch) Added mixed precision quantization config with HAWQ for Resnet50 and Mobilenet_v2 for the latest VPU.
(PyTorch) Splitted NNCFBatchNorm into NNCFBatchNorm1d, NNCFBatchNorm2d, NNCFBatchNorm3d.
(PyTorch - Experimental) Added the BNASTrainingController and BNASTrainingAlgorithm for BootstrapNAS to search the model's architecture.
(Experimental) ONNX ModelProto is now converted to NNCFGraph through GraphConverter.
(Experimental) ONNXOpMetatype and extended patterns for fusing HW config is now available.
(Experimental) Added ONNXPostTrainingQuantization and MinMaxQuantization supports for ONNX.
Bugfixes
(PyTorch, TensorFlow) Added exception handling of BN adaptation for zero sample values.
(PyTorch, TensorFlow) Fixed learning rate after validation step for EarlyExitCompressionTrainingLoop.
(PyTorch) Fixed FakeQuantizer to make exact zeros.
(PyTorch) Fixed Quantizer misplacements during ONNX export.
(PyTorch) Restored device information during ONNX export.
(PyTorch) Fixed the statistics collection from the pruned model.
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