Towards making the interface of ghost clipping same as that of PyTorc… #139
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name: CI_GPU | ||
on: | ||
push: | ||
branches: | ||
- main | ||
pull_request: | ||
branches: | ||
- main | ||
unittest_multi_gpu: | ||
runs-on: linux.4xlarge.nvidia.gpu | ||
steps: | ||
- name: Checkout | ||
uses: actions/checkout@v2 | ||
- name: Set up Python | ||
uses: actions/setup-python@v2 | ||
with: | ||
python-version: 3.9 | ||
- name: Install dependencies | ||
run: | | ||
./scripts/install_via_pip.sh -c | ||
- name: Run multi-GPU unit tests | ||
run: | | ||
nvidia-smi | ||
nvcc --version | ||
python -m unittest opacus.tests.multigpu_gradcheck.GradientComputationTest.test_gradient_correct | ||
integrationtest_py39_torch_release_cuda: | ||
runs-on: ubuntu-latest | ||
container: | ||
# https://hub.docker.com/r/nvidia/cuda | ||
image: nvidia/cuda:12.3.1-base-ubuntu22.04 | ||
options: --gpus all | ||
env: | ||
TZ: 'UTC' | ||
steps: | ||
- name: Checkout | ||
uses: actions/checkout@v2 | ||
- name: Set up Python | ||
uses: actions/setup-python@v2 | ||
with: | ||
python-version: 3.9 | ||
- name: Install dependencies | ||
run: | | ||
python -m pip install --upgrade pip | ||
pip install pytest coverage coveralls | ||
./scripts/install_via_pip.sh -c | ||
- name: Install CUDA toolkit and cuDNN | ||
run: | | ||
apt-get update | ||
apt-get install -y --no-install-recommends \ | ||
cuda-toolkit-11-1 \ | ||
libcudnn8=8.1.1.33-1+cuda11.1 \ | ||
libcudnn8-dev=8.1.1.33-1+cuda11.1 | ||
- name: Run MNIST integration test (CUDA) | ||
run: | | ||
mkdir -p runs/mnist/data | ||
mkdir -p runs/mnist/test-reports | ||
python examples/mnist.py --lr 0.25 --sigma 0.7 -c 1.5 --batch-size 64 --epochs 1 --data-root runs/mnist/data --n-runs 1 --device cuda | ||
python -c "import torch; accuracy = torch.load('run_results_mnist_0.25_0.7_1.5_64_1.pt'); exit(0) if (accuracy[0]>0.78 and accuracy[0]<0.95) else exit(1)" | ||
- name: Store MNIST test results | ||
uses: actions/upload-artifact@v2 | ||
with: | ||
name: mnist-gpu-reports | ||
path: runs/mnist/test-reports | ||
- name: Run CIFAR10 integration test (CUDA) | ||
run: | | ||
mkdir -p runs/cifar10/data | ||
mkdir -p runs/cifar10/logs | ||
mkdir -p runs/cifar10/test-reports | ||
pip install tensorboard | ||
python examples/cifar10.py --lr 0.1 --sigma 1.5 -c 10 --batch-size 2000 --epochs 10 --data-root runs/cifar10/data --log-dir runs/cifar10/logs --device cuda | ||
python -c "import torch; model = torch.load('model_best.pth.tar'); exit(0) if (model['best_acc1']>0.4 and model['best_acc1']<0.49) else exit(1)" | ||
python examples/cifar10.py --lr 0.1 --sigma 1.5 -c 10 --batch-size 2000 --epochs 10 --data-root runs/cifar10/data --log-dir runs/cifar10/logs --device cuda --grad_sample_mode no_op | ||
python -c "import torch; model = torch.load('model_best.pth.tar'); exit(0) if (model['best_acc1']>0.4 and model['best_acc1']<0.49) else exit(1)" | ||
- name: Store CIFAR10 test results | ||
uses: actions/upload-artifact@v2 | ||
with: | ||
name: cifar10-gpu-reports | ||
path: runs/cifar10/test-reports | ||
- name: Run IMDb integration test (CUDA) | ||
run: | | ||
mkdir -p runs/imdb/data | ||
mkdir -p runs/imdb/test-reports | ||
pip install --user datasets transformers | ||
python examples/imdb.py --lr 0.02 --sigma 1.0 -c 1.0 --batch-size 64 --max-sequence-length 256 --epochs 2 --data-root runs/imdb/data --device cuda | ||
python -c "import torch; accuracy = torch.load('run_results_imdb_classification.pt'); exit(0) if (accuracy>0.54 and accuracy<0.66) else exit(1)" | ||
- name: Store IMDb test results | ||
uses: actions/upload-artifact@v2 | ||
with: | ||
name: imdb-gpu-reports | ||
path: runs/imdb/test-reports | ||
- name: Run charlstm integration test (CUDA) | ||
run: | | ||
mkdir -p runs/charlstm/data | ||
wget https://download.pytorch.org/tutorial/data.zip -O runs/charlstm/data/data.zip | ||
unzip runs/charlstm/data/data.zip -d runs/charlstm/data | ||
rm runs/charlstm/data/data.zip | ||
mkdir -p runs/charlstm/test-reports | ||
pip install scikit-learn | ||
python examples/char-lstm-classification.py --epochs=20 --learning-rate=2.0 --hidden-size=128 --delta=8e-5 --batch-size 400 --n-layers=1 --sigma=1.0 --max-per-sample-grad-norm=1.5 --data-root="runs/charlstm/data/data/names/" --device cuda --test-every 5 | ||
python -c "import torch; accuracy = torch.load('run_results_chr_lstm_classification.pt'); exit(0) if (accuracy>0.60 and accuracy<0.80) else exit(1)" | ||
- name: Store test results | ||
uses: actions/upload-artifact@v2 | ||
with: | ||
name: charlstm-gpu-reports | ||
path: runs/charlstm/test-reports | ||
micro_benchmarks_py39_torch_release_cuda: | ||
runs-on: ubuntu-latest | ||
needs: [integrationtest_py39_torch_release_cuda] | ||
container: | ||
# https://hub.docker.com/r/nvidia/cuda | ||
image: nvidia/cuda:12.3.1-base-ubuntu22.04 | ||
options: --gpus all | ||
env: | ||
TZ: 'UTC' | ||
steps: | ||
- name: Checkout | ||
uses: actions/checkout@v2 | ||
- name: Set up Python | ||
uses: actions/setup-python@v2 | ||
with: | ||
python-version: 3.9 | ||
- name: Install dependencies | ||
run: | | ||
python -m pip install --upgrade pip | ||
pip install pytest coverage coveralls | ||
./scripts/install_via_pip.sh | ||
- name: Install CUDA toolkit and cuDNN | ||
run: | | ||
apt-get update | ||
apt-get install -y --no-install-recommends \ | ||
cuda-toolkit-11-1 \ | ||
libcudnn8=8.1.1.33-1+cuda11.1 \ | ||
libcudnn8-dev=8.1.1.33-1+cuda11.1 | ||
- name: Run benchmark integration tests (CUDA) | ||
run: | | ||
mkdir -p benchmarks/results/raw | ||
python benchmarks/run_benchmarks.py --batch_size 16 --layers "groupnorm instancenorm layernorm" --config_file ./benchmarks/config.json --root ./benchmarks/results/raw/ --cont | ||
IFS=$' ';layers=("groupnorm" "instancenorm" "layernorm"); rm -rf /tmp/report_layers; mkdir -p /tmp/report_layers; IFS=$'\n'; files=`( echo "${layers[*]}" ) | sed 's/.*/.\/benchmarks\/results\/raw\/&*/'` | ||
cp -v ${files[@]} /tmp/report_layers | ||
report_id=`IFS=$'-'; echo "${layers[*]}"` | ||
python benchmarks/generate_report.py --path-to-results /tmp/report_layers --save-path benchmarks/results/report-${report_id}.csv --format csv | ||
python benchmarks/generate_report.py --path-to-results /tmp/report_layers --save-path benchmarks/results/report-${report_id}.pkl --format pkl | ||
python benchmarks/check_threshold.py --report-path "./benchmarks/results/report-"$report_id".pkl" --metric runtime --threshold 3.0 --column "hooks/baseline" | ||
python benchmarks/check_threshold.py --report-path "./benchmarks/results/report-"$report_id".pkl" --metric memory --threshold 1.6 --column "hooks/baseline" | ||
- name: Store artifacts | ||
uses: actions/upload-artifact@v2 | ||
with: | ||
name: benchmarks-reports | ||
path: benchmarks/results/ |