# Python package # Create and test a Python package on multiple Python versions. # Add steps that analyze code, save the dist with the build record, publish to a PyPI-compatible index, and more: # https://docs.microsoft.com/azure/devops/pipelines/languages/python trigger: tags: include: - '*' branches: include: - "master" - "release/*" - "refs/tags/*" pr: - "master" - "release/*" jobs: - job: pytest strategy: matrix: 'PyTorch - LTS': image: "pytorchlightning/pytorch_lightning:base-cuda-py3.7-torch1.8" 'PyTorch - stable': image: "pytorchlightning/pytorch_lightning:base-cuda-py3.9-torch1.11" # how long to run the job before automatically cancelling timeoutInMinutes: "100" # how much time to give 'run always even if cancelled tasks' before stopping them cancelTimeoutInMinutes: "2" pool: azure-jirka-spot container: image: $(image) # default shm size is 64m. Increase it to avoid: # 'Error while creating shared memory: unhandled system error, NCCL version 2.7.8' options: "--runtime=nvidia -e NVIDIA_VISIBLE_DEVICES=all --shm-size=512m" workspace: clean: all steps: - bash: | lspci | egrep 'VGA|3D' whereis nvidia nvidia-smi which python && which pip python --version pip --version pip list displayName: 'Image info & NVIDIA' - bash: | python -c "fname = 'requirements/strategies.txt' ; lines = [line for line in open(fname).readlines() if 'horovod' not in line] ; open(fname, 'w').writelines(lines)" CUDA_VERSION_MM=$(python -c "import torch ; print(''.join(map(str, torch.version.cuda.split('.')[:2])))") pip install "bagua-cuda$CUDA_VERSION_MM>=0.9.0" pip install . --requirement requirements/devel.txt pip install . --requirement requirements/strategies.txt pip list displayName: 'Install dependencies' - bash: | set -e python requirements/collect_env_details.py python -c "import torch ; mgpu = torch.cuda.device_count() ; assert mgpu >= 2, f'GPU: {mgpu}'" python requirements/check-avail-strategies.py python requirements/check-avail-extras.py displayName: 'Env details' - bash: bash .actions/pull_legacy_checkpoints.sh displayName: 'Get legacy checkpoints' - bash: | python -m coverage run --source pytorch_lightning -m pytest pytorch_lightning tests --ignore tests/benchmarks -v --junitxml=$(Build.StagingDirectory)/test-results.xml --durations=50 displayName: 'Testing: standard' - bash: | bash tests/standalone_tests.sh env: PL_USE_MOCKED_MNIST: "1" displayName: 'Testing: standalone' - bash: | python -m coverage report python -m coverage xml python -m coverage html python -m codecov --token=$(CODECOV_TOKEN) --commit=$(Build.SourceVersion) --flags=gpu,pytest --name="GPU-coverage" --env=linux,azure ls -l displayName: 'Statistics' - task: PublishTestResults@2 displayName: 'Publish test results' inputs: testResultsFiles: '$(Build.StagingDirectory)/test-results.xml' testRunTitle: '$(Agent.OS) - $(Build.DefinitionName) - Python $(python.version)' condition: succeededOrFailed() # todo: re-enable after schema check pass, also atm it seems does not have any effect #- task: PublishCodeCoverageResults@2 # displayName: 'Publish coverage report' # inputs: # codeCoverageTool: 'Cobertura' # summaryFileLocation: 'coverage.xml' # reportDirectory: '$(Build.SourcesDirectory)/htmlcov' # testRunTitle: '$(Agent.OS) - $(Build.BuildNumber)[$(Agent.JobName)] - Python $(python.version)' # condition: succeededOrFailed() - script: | set -e python -m pytest pl_examples -v --maxfail=2 --durations=0 bash pl_examples/run_examples.sh --trainer.accelerator=gpu --trainer.devices=1 bash pl_examples/run_examples.sh --trainer.accelerator=gpu --trainer.devices=2 --trainer.strategy=ddp bash pl_examples/run_examples.sh --trainer.accelerator=gpu --trainer.devices=2 --trainer.strategy=ddp --trainer.precision=16 env: PL_USE_MOCKED_MNIST: "1" displayName: 'Testing: examples' - bash: | python -m pytest tests/benchmarks -v --maxfail=2 --durations=0 displayName: 'Testing: benchmarks'