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Benchmarks
Here we benchmark the training speed of a Mask R-CNN in detectron2, with some other popular open source Mask R-CNN implementations.
Settings
- Hardware: 8 NVIDIA V100s with NVLink.
- Software: Python 3.7, CUDA 10.1, cuDNN 7.6.5, PyTorch 1.5, TensorFlow 1.15.0rc2, Keras 2.2.5, MxNet 1.6.0b20190820.
- Model: an end-to-end R-50-FPN Mask-RCNN model, using the same hyperparameter as the Detectron baseline config (it does no have scale augmentation).
- Metrics: We use the average throughput in iterations 100-500 to skip GPU warmup time. Note that for R-CNN-style models, the throughput of a model typically changes during training, because it depends on the predictions of the model. Therefore this metric is not directly comparable with "train speed" in model zoo, which is the average speed of the entire training run.
Main Results
+-------------------------------+--------------------+
| Implementation | Throughput (img/s) |
+===============================+====================+
| |D2| |PT| | 62 |
+-------------------------------+--------------------+
| mmdetection_ |PT| | 53 |
+-------------------------------+--------------------+
| maskrcnn-benchmark_ |PT| | 53 |
+-------------------------------+--------------------+
| tensorpack_ |TF| | 50 |
+-------------------------------+--------------------+
| simpledet_ |mxnet| | 39 |
+-------------------------------+--------------------+
| Detectron_ |C2| | 19 |
+-------------------------------+--------------------+
| `matterport/Mask_RCNN`__ |TF| | 14 |
+-------------------------------+--------------------+
.. _maskrcnn-benchmark: https://github.com/facebookresearch/maskrcnn-benchmark/
.. _tensorpack: https://github.com/tensorpack/tensorpack/tree/master/examples/FasterRCNN
.. _mmdetection: https://github.com/open-mmlab/mmdetection/
.. _simpledet: https://github.com/TuSimple/simpledet/
.. _Detectron: https://github.com/facebookresearch/Detectron
__ https://github.com/matterport/Mask_RCNN/
.. |D2| image:: https://github.com/facebookresearch/detectron2/raw/master/.github/Detectron2-Logo-Horz.svg?sanitize=true
:height: 15pt
:target: https://github.com/facebookresearch/detectron2/
.. |PT| image:: https://pytorch.org/assets/images/logo-icon.svg
:width: 15pt
:height: 15pt
:target: https://pytorch.org
.. |TF| image:: https://static.nvidiagrid.net/ngc/containers/tensorflow.png
:width: 15pt
:height: 15pt
:target: https://tensorflow.org
.. |mxnet| image:: https://github.com/dmlc/web-data/raw/master/mxnet/image/mxnet_favicon.png
:width: 15pt
:height: 15pt
:target: https://mxnet.apache.org/
.. |C2| image:: https://caffe2.ai/static/logo.svg
:width: 15pt
:height: 15pt
:target: https://caffe2.ai
Details for each implementation:
Detectron2: with release v0.1.2, run:
python tools/train_net.py --config-file configs/Detectron1-Comparisons/mask_rcnn_R_50_FPN_noaug_1x.yaml --num-gpus 8
mmdetection: at commit
b0d845f
, run./tools/dist_train.sh configs/mask_rcnn/mask_rcnn_r50_caffe_fpn_1x_coco.py 8
maskrcnn-benchmark: use commit
0ce8f6f
withsed -i βs/torch.uint8/torch.bool/gβ **/*.py; sed -i 's/AT_CHECK/TORCH_CHECK/g' **/*.cu
to make it compatible with PyTorch 1.5. Then, run training withpython -m torch.distributed.launch --nproc_per_node=8 tools/train_net.py --config-file configs/e2e_mask_rcnn_R_50_FPN_1x.yaml
The speed we observed is faster than its model zoo, likely due to different software versions.
tensorpack: at commit
caafda
,export TF_CUDNN_USE_AUTOTUNE=0
, then runmpirun -np 8 ./train.py --config DATA.BASEDIR=/data/coco TRAINER=horovod BACKBONE.STRIDE_1X1=True TRAIN.STEPS_PER_EPOCH=50 --load ImageNet-R50-AlignPadding.npz
SimpleDet: at commit
9187a1
, runpython detection_train.py --config config/mask_r50v1_fpn_1x.py
Detectron: run
python tools/train_net.py --cfg configs/12_2017_baselines/e2e_mask_rcnn_R-50-FPN_1x.yaml
Note that many of its ops run on CPUs, therefore the performance is limited.
matterport/Mask_RCNN: at commit
3deaec
, apply the following diff,export TF_CUDNN_USE_AUTOTUNE=0
, then runpython coco.py train --dataset=/data/coco/ --model=imagenet
Note that many small details in this implementation might be different from Detectron's standards.
(diff to make it use the same hyperparameters - click to expand)
diff --git i/mrcnn/model.py w/mrcnn/model.py index 62cb2b0..61d7779 100644 --- i/mrcnn/model.py +++ w/mrcnn/model.py @@ -2367,8 +2367,8 @@ class MaskRCNN(): epochs=epochs, steps_per_epoch=self.config.STEPS_PER_EPOCH, callbacks=callbacks, - validation_data=val_generator, - validation_steps=self.config.VALIDATION_STEPS, + #validation_data=val_generator, + #validation_steps=self.config.VALIDATION_STEPS, max_queue_size=100, workers=workers, use_multiprocessing=True, diff --git i/mrcnn/parallel_model.py w/mrcnn/parallel_model.py index d2bf53b..060172a 100644 --- i/mrcnn/parallel_model.py +++ w/mrcnn/parallel_model.py @@ -32,6 +32,7 @@ class ParallelModel(KM.Model): keras_model: The Keras model to parallelize gpu_count: Number of GPUs. Must be > 1 """ + super().__init__() self.inner_model = keras_model self.gpu_count = gpu_count merged_outputs = self.make_parallel() diff --git i/samples/coco/coco.py w/samples/coco/coco.py index 5d172b5..239ed75 100644 --- i/samples/coco/coco.py +++ w/samples/coco/coco.py @@ -81,7 +81,10 @@ class CocoConfig(Config): IMAGES_PER_GPU = 2 # Uncomment to train on 8 GPUs (default is 1) - # GPU_COUNT = 8 + GPU_COUNT = 8 + BACKBONE = "resnet50" + STEPS_PER_EPOCH = 50 + TRAIN_ROIS_PER_IMAGE = 512 # Number of classes (including background) NUM_CLASSES = 1 + 80 # COCO has 80 classes @@ -496,29 +499,10 @@ if __name__ == '__main__': # *** This training schedule is an example. Update to your needs *** # Training - Stage 1 - print("Training network heads") model.train(dataset_train, dataset_val, learning_rate=config.LEARNING_RATE, epochs=40, - layers='heads', - augmentation=augmentation) - - # Training - Stage 2 - # Finetune layers from ResNet stage 4 and up - print("Fine tune Resnet stage 4 and up") - model.train(dataset_train, dataset_val, - learning_rate=config.LEARNING_RATE, - epochs=120, - layers='4+', - augmentation=augmentation) - - # Training - Stage 3 - # Fine tune all layers - print("Fine tune all layers") - model.train(dataset_train, dataset_val, - learning_rate=config.LEARNING_RATE / 10, - epochs=160, - layers='all', + layers='3+', augmentation=augmentation) elif args.command == "evaluate":