- 28 Jan, 2021 1 commit
-
-
Vasilis Vryniotis authored
* Adding presets in the classification reference scripts. * Adding presets in the object detection reference scripts. * Adding presets in the segmentation reference scripts. * Adding presets in the video classification reference scripts. * Moving flip at the end to align with image classification signature.
-
- 14 Jan, 2021 1 commit
-
-
Vasilis Vryniotis authored
* Add MobileNetV3 Architecture in TorchVision (#3182) * Adding implementation of network architecture * Adding rmsprop support on the train.py * Adding auto-augment and random-erase in the training scripts. * Adding support for reduced tail on MobileNetV3. * Tagging blocks with comments. * Adding documentation, pre-trained model URL and a minor refactoring. * Handling better untrained supported models.
-
- 31 Mar, 2020 1 commit
-
-
Philip Meier authored
* remove sys.version_info == 2 * remove sys.version_info < 3 * remove from __future__ imports
-
- 26 Oct, 2019 1 commit
-
-
raghuramank100 authored
* add quantized models * Modify mobilenet.py documentation and clean up comments Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Move fuse_model method to QuantizableInvertedResidual and clean up args documentation Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Restore relu settings to default in resnet.py Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Fix missing return in forward Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Fix missing return in forwards Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Change pretrained -> pretrained_float_models Replace InvertedResidual with block Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Update tests to follow similar structure to test_models.py, allowing for modular testing Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Replace forward method with simple function assignment Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Fix error in arguments for resnet18 Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * pretrained_float_model argument missing for mobilenet Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * reference script for quantization aware training and post training quantization * reference script for quantization aware training and post training quantization * set pretrained_float_model as False and explicitly provide float model Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Address review comments: 1. Replace forward with _forward 2. Use pretrained models in reference train/eval script 3. Modify test to skip if fbgemm is not supported Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Fix lint errors. Use _forward for common code between float and quantized models Clean up linting for reference train scripts Test over all quantizable models Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Update default values for args in quantization/train.py Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Update models to conform to new API with quantize argument Remove apex in training script, add post training quant as an option Add support for separate calibration data set. Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Fix minor errors in train_quantization.py Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Remove duplicate file * Bugfix * Minor improvements on the models * Expose print_freq to evaluate * Minor improvements on train_quantization.py * Ensure that quantized models are created and run on the specified backends Fix errors in test only mode Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Add model urls * Fix errors in quantized model tests. Speedup creation of random quantized model by removing histogram observers Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Move setting qengine prior to convert. Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Fix lint error Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Add readme.md Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Readme.md Summary: Test Plan: Reviewers: Subscribers: Tasks: Tags: * Fix lint
-
- 19 Jul, 2019 1 commit
-
-
Vinh Nguyen authored
* adding mixed precision training with Apex * fix APEX default optimization level * adding python version check for apex * fix LINT errors and raise exceptions if apex not available * fixing apex distributed training * fix throughput calculation: include forward pass * remove torch.cuda.set_device(args.gpu) as it's already called in init_distributed_mode * fix linter: new line * move Apex initialization code back to the beginning of main * move apex initialization to before lr_scheduler - for peace of mind. Though, doing apex initialization after lr_scheduler seems to work fine as well
-
- 06 Jun, 2019 1 commit
-
-
Vinh Nguyen authored
* adding mixed precision training with Apex * fix APEX default optimization level * adding python version check for apex * fix LINT errors and raise exceptions if apex not available
-
- 21 May, 2019 1 commit
-
-
Francisco Massa authored
Allows for easily evaluating the pre-trained models in the modelzoo
-
- 19 May, 2019 1 commit
-
-
Francisco Massa authored
-
- 08 May, 2019 1 commit
-
-
Francisco Massa authored
* Miscellaneous improvements to the classification reference scritps * Fix lint
-
- 02 Apr, 2019 2 commits
-
-
Francisco Massa authored
* Add groups support to ResNet * Kill BaseResNet * Make it support multi-machine training
-
Surgan Jandial authored
Making references/classification/train.py and references/classification/utils.py compatible with python2 (#831) * linter fixes * linter fixes
-
- 28 Mar, 2019 1 commit
-
-
Francisco Massa authored
* Initial version of classification reference training script * Updates * Minor updates * Expose a few more options * Load optimizer and lr_scheduler when resuming Also log the learning rate * Evaluation-only and minor improvements Identified a bug in the reporting of the results. They need to be reduced between all processes * Address Soumith's comment * Fix some approximations on the evaluation metric * Flake8
-