- 17 Oct, 2019 1 commit
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fbbradheintz authored
* added correctness tests for classification models * refactored tests for extensibility & usability * flake8 fixes
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- 02 Oct, 2019 1 commit
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eellison authored
* add support for video resnet models, restructure script test to just ignore RCNN models * switch back to testing subset of the models
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- 01 Oct, 2019 1 commit
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eellison authored
* add expected result tests * fix wrong assertion * start with only detection models * remove unneeded rng setting * fix test * add tuple support * update test * syntax error * treat .pkl files as binary data, see : https://git-scm.com/book/en/v2/Customizing-Git-Git-Attributes#_binary_files * fix test * fix elif * Map tensor results and enforce maximum pickle size * unrelated change * larger rtol * pass rtol atol around * last commit i swear... * respond to comments * fix flake * fix py2 flake
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- 27 Sep, 2019 1 commit
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eellison authored
* make googlnet scriptable * Remove typing import in favor of torch.jit.annotations * add inceptionnet * flake fixes * fix asssert true * add import division for torchscript * fix script compilation * fix flake, py2 division error * fix py2 division error
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- 20 Sep, 2019 2 commits
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eellison authored
* script_fcn_resnet * Make old models load * DeepLabV3 also got torchscript-ready
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eellison authored
* make densenet scriptable * make py2 compat * use torch List polyfill * fix unpacking for checkpointing * fewer changes to _Denseblock * improve error message * print traceback * add typing dependency * add typing dependency to travis too * Make loading old checkpoints work
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- 18 Sep, 2019 1 commit
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Francisco Massa authored
* Make AnchorGenerator support half precision * Add test for fasterrcnn with double * convert gt_boxes to right dtype
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- 17 Sep, 2019 1 commit
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eellison authored
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- 02 Sep, 2019 1 commit
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eellison authored
* make shufflenet scriptable * make resnet18 scriptable * set downsample to identity instead of __constants__ api * use __constants__ for downsample instead of identity * import tensor to fix flake * use torch.Tensor type annotation instead of import
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- 28 Aug, 2019 1 commit
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eellison authored
* test that torchhub models are scriptable * fix lint
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- 04 Aug, 2019 1 commit
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Francisco Massa authored
* [WIP] Minor cleanups on R3d * Move all models to video/resnet.py * Remove old files * Make tests less memory intensive * Lint * Fix typo and add pretraing arg to training script
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- 26 Jul, 2019 1 commit
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Bruno Korbar authored
* [0.4_video] models - initial commit * addressing fmassas inline comments * pep8 and flake8 * simplify "hacks" * sorting out latest comments * nitpick * Updated tests and constructors * Added docstrings - ready to merge
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- 04 Jul, 2019 1 commit
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buoyancy99 authored
* Update test for detection model to test input list unmodified Update test for detection model to test input list unmodified according to suggestion in a previous PR * test input unchaged
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- 07 Jun, 2019 2 commits
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Francisco Massa authored
* GPU efficient Densenets * removed `import math` * Changed 'efficient' to 'memory_efficient' * Add tests * Bugfix in test * Fix lint * Remove unecessary formatting
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Matthew Yeung authored
* allow user to define residual settings * 4spaces * linting errors * backward compatible, and added test
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- 19 May, 2019 1 commit
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Francisco Massa authored
* [Remove] Use stride in 1x1 in resnet This is temporary * Move files to torchvision Inference works * Now seems to give same results Was using the wrong number of total iterations in the end... * Distributed evaluation seems to work * Factor out transforms into its own file * Enabling horizontal flips * MultiStepLR and preparing for launches * Add warmup * Clip gt boxes to images Seems to be crucial to avoid divergence. Also reduces the losses over different processes for better logging * Single-GPU batch-size 1 of CocoEvaluator works * Multi-GPU CocoEvaluator works Gives the exact same results as the other one, and also supports batch size > 1 * Silence prints from pycocotools * Commenting unneeded code for run * Fixes * Improvements and cleanups * Remove scales from Pooler It was not a free parameter, and depended only on the feature map dimensions * Cleanups * More cleanups * Add misc ops and totally remove maskrcnn_benchmark * nit * Move Pooler to ops * Make FPN slightly more generic * Minor improvements or FPN * Move FPN to ops * Move functions to utils * Lint fixes * More lint * Minor cleanups * Add FasterRCNN * Remove modifications to resnet * Fixes for Python2 * More lint fixes * Add aspect ratio grouping * Move functions around * Make evaluation use all images for mAP, even those without annotations * Bugfix with DDP introduced in last commit * [Check] Remove category mapping * Lint * Make GroupedBatchSampler prioritize largest clusters in the end of iteration * Bugfix for selecting the iou_types during evaluation Also switch to using the torchvision normalization now on, given that we are using torchvision base models * More lint * Add barrier after init_process_group Better be safe than sorry * Make evaluation only use one CPU thread per process When doing multi-gpu evaluation, paste_masks_in_image is multithreaded and throttles evaluation altogether. Also change default for aspect ratio group to match Detectron * Fix bug in GroupedBatchSampler After the first epoch, the number of batch elements could be larger than batch_size, because they got accumulated from the previous iteration. Fix this and also rename some variables for more clarity * Start adding KeypointRCNN Currently runs and perform inference, need to do full training * Remove use of opencv in keypoint inference PyTorch 1.1 adds support for bicubic interpolation which matches opencv (except for empty boxes, where one of the dimensions is 1, but that's fine) * Remove Masker Towards having mask postprocessing done inside the model * Bugfixes in previous change plus cleanups * Preparing to run keypoint training * Zero initialize bias for mask heads * Minor improvements on print * Towards moving resize to model Also remove class mapping specific to COCO * Remove zero init in bias for mask head Checking if it decreased accuracy * [CHECK] See if this change brings back expected accuracy * Cleanups on model and training script * Remove BatchCollator * Some cleanups in coco_eval * Move postprocess to transform * Revert back scaling and start adding conversion to coco api The scaling didn't seem to matter * Use decorator instead of context manager in evaluate * Move training and evaluation functions to a separate file Also adds support for obtaining a coco API object from our dataset * Remove unused code * Update location of lr_scheduler Its behavior has changed in PyTorch 1.1 * Remove debug code * Typo * Bugfix * Move image normalization to model * Remove legacy tensor constructors Also move away from Int and instead use int64 * Bugfix in MultiscaleRoiAlign * Move transforms to its own file * Add missing file * Lint * More lint * Add some basic test for detection models * More lint
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- 10 May, 2019 1 commit
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Francisco Massa authored
* Initial version of the segmentation examples WIP * Cleanups * [WIP] * Tag where runs are being executed * Minor additions * Update model with new resnet API * [WIP] Using torchvision datasets * Improving datasets Leverage more and more torchvision datasets * Reorganizing datasets * PEP8 * No more SegmentationModel Also remove outplanes from ResNet, and add a function for querying intermediate outputs. I won't keep it in the end, because it's very hacky and don't work with tracing * Minor cleanups * Moving transforms to its own file * Move models to torchvision * Bugfixes * Multiply LR by 10 for classifier * Remove classifier x 10 * Add tests for segmentation models * Update with latest utils from classification * Lint and missing import
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- 24 Apr, 2019 1 commit
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Francisco Massa authored
* Add dilation option to ResNet * Add a size check for replace_stride_with_dilation
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- 26 Mar, 2019 1 commit
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ekka authored
* Add test for loading pretrained models The update modifies the test to check whether the model can successfully load the pretrained weights. Will raise an error if the model parameters are incorrectly defined or named. * Add test on 'num_class' Passing num_class equal to a number other than 1000 helps in making the test more enforcing in nature.
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- 25 Mar, 2019 1 commit
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Francisco Massa authored
* Add basic model testing. Also fixes flaky test * Fix flake8
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