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authorBenjamin Klimczak <benjamin.klimczak@arm.com>2023-07-19 16:35:57 +0100
committerBenjamin Klimczak <benjamin.klimczak@arm.com>2023-10-11 16:06:17 +0100
commit3cd84481fa25e64c29e57396d4bf32d7a3ca490a (patch)
treead81fb520a965bd3a3c7c983833b7cd48f9b8dea /tests/test_utils_registry.py
parentf3e6597dd50ec70f043d692b773f2d9fd31519ae (diff)
downloadmlia-3cd84481fa25e64c29e57396d4bf32d7a3ca490a.tar.gz
Bug-fixes and re-factoring for the rewrite module
- Fix input shape of rewrite replacement: During and after training of the replacement model for a rewrite the Keras model is converted and saved in TensorFlow Lite format. If the input shape does not match the teacher model exactly, e.g. if the batch size is undefined, the TFLiteConverter adds extra operators during conversion. - Fix rewritten model output - Save the model output with the rewritten operator in the output dir - Log MAE and NRMSE of the rewrite - Remove 'verbose' flag from rewrite module and rely on the logging mechanism to control verbose output. - Re-factor utility classes for rewrites - Merge the two TFLiteModel classes - Move functionality to load/save TensorFlow Lite flatbuffers to nn/tensorflow/tflite_graph - Fix issue with unknown shape in datasets After upgrading to TensorFlow 2.12 the unknown shape of the TFRecordDataset is causing problems when training the replacement models for rewrites. By explicitly setting the right shape of the tensors we can work around the issue. - Adapt default parameters for rewrites. The training steps especially had to be increased significantly to be effective. Resolves: MLIA-895, MLIA-907, MLIA-946, MLIA-979 Signed-off-by: Benjamin Klimczak <benjamin.klimczak@arm.com> Change-Id: I887ad165aed0f2c6e5a0041f64cec5e6c5ab5c5c
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