name: model-training on: push: branches: - mlmodel permissions: write-all jobs: run: runs-on: ubuntu-latest steps: - uses: actions/checkout@v3 - uses: actions/setup-python@v4 - uses: iterative/setup-cml@v1 - name: Train model env: REPO_TOKEN: ${{ secrets.GITHUB_TOKEN }} run: | ls cd model_data/simulation_system pip install seaborn matplotlib python3 -c "import seaborn as sns; import matplotlib.pyplot as plt; sns.scatterplot(data=[0,1,2,3]); plt.savefig('test.png')" # pip install -r requirements.txt # python3 training.py --train-filepath ./model_build_data/change_data/rdsap_full/train_validation_data.parquet --test-filepath ./model_build_data/change_data/rdsap_full/test_data.parquet echo "## Residuals plot from model" > report.md # metrics_location=$(find . -maxdepth 10 -name "residuals.png") # echo $metrics_location # cd $metric_location echo "![](./test.png)" >> report.md cml comment create --log debug --publish false report.md # cd model_directory/RDSAP_CHANGE # echo "## Model metrics from registry" >> report.md # cat model_registry.csv >> report.md # cml comment create report.md