
Cassie Haas developed and enhanced the dsi-clinic/CMAP repository over four months, focusing on robust Digital Elevation Model (DEM) integration, data normalization, and scalable machine learning workflows. She implemented Z-score normalization and flexible DEM data handling, improving reproducibility and cross-dataset comparability. Cassie refactored data loading and configuration logic in Python and PyTorch, streamlined training pipelines, and introduced parallelized training across GPUs using multiprocessing. Her work addressed memory optimization, code readability, and CI/CD reliability through updated pre-commit workflows and GitHub Actions. These contributions resulted in more maintainable code, reliable model evaluation, and accelerated experimentation for geospatial and deep learning applications.

In April 2025, CMAP delivered key capabilities to accelerate ML experimentation, improve reliability, and strengthen CI quality. The team implemented a parallelized training workflow that enables multiprocessing across GPUs, reorganizing trial execution and refining argument handling and serialization for multiprocessing. This included dataset initialization tweaks and RGB channel adjustments to support robust parallel runs, resulting in faster experiment throughput and better resource utilization. A critical GPU targeting bug was fixed, ensuring training uses the intended CUDA device as configured, improving reproducibility and correctness. CI reliability was enhanced through an update to pre-commit tooling (v3.0.1) and associated workflow adjustments to leverage newer linting features and fixes. Additional work underpins long-term stability by addressing config/args unpacking and serialization issues within multiprocessing, setting the stage for scalable experimentation and easier maintenance.
In April 2025, CMAP delivered key capabilities to accelerate ML experimentation, improve reliability, and strengthen CI quality. The team implemented a parallelized training workflow that enables multiprocessing across GPUs, reorganizing trial execution and refining argument handling and serialization for multiprocessing. This included dataset initialization tweaks and RGB channel adjustments to support robust parallel runs, resulting in faster experiment throughput and better resource utilization. A critical GPU targeting bug was fixed, ensuring training uses the intended CUDA device as configured, improving reproducibility and correctness. CI reliability was enhanced through an update to pre-commit tooling (v3.0.1) and associated workflow adjustments to leverage newer linting features and fixes. Additional work underpins long-term stability by addressing config/args unpacking and serialization issues within multiprocessing, setting the stage for scalable experimentation and easier maintenance.
March 2025 CMAP monthly summary for dsi-clinic/CMAP focusing on delivering business-value and robust technical outcomes. Key features were implemented to enhance DEM data handling, normalization, and configuration, accompanied by data loading improvements and documentation. Reliability improvements in plotting and training paths reduced runtime errors and improved scalability. Overall, the month delivered measurable improvements in model readiness, reproducibility, and user guidance, aligning with roadmap priorities.
March 2025 CMAP monthly summary for dsi-clinic/CMAP focusing on delivering business-value and robust technical outcomes. Key features were implemented to enhance DEM data handling, normalization, and configuration, accompanied by data loading improvements and documentation. Reliability improvements in plotting and training paths reduced runtime errors and improved scalability. Overall, the month delivered measurable improvements in model readiness, reproducibility, and user guidance, aligning with roadmap priorities.
February 2025 CMAP monthly recap: Implemented end-to-end Digital Elevation Model (DEM) integration and visualization enhancements in the training pipeline, delivering DEM-driven image generation, plotting, and robust normalization; improved performance and maintainability while ensuring metric reliability and clear business value.
February 2025 CMAP monthly recap: Implemented end-to-end Digital Elevation Model (DEM) integration and visualization enhancements in the training pipeline, delivering DEM-driven image generation, plotting, and robust normalization; improved performance and maintainability while ensuring metric reliability and clear business value.
January 2025 CMAP (dsi-clinic/CMAP): Implemented Z-score normalization for the difference DEM, refactored normalization logic for clarity and reuse, and expanded DEM documentation and contributor information. These efforts standardize cross-dataset comparisons, improve reproducibility, and strengthen onboarding for contributors.
January 2025 CMAP (dsi-clinic/CMAP): Implemented Z-score normalization for the difference DEM, refactored normalization logic for clarity and reuse, and expanded DEM documentation and contributor information. These efforts standardize cross-dataset comparisons, improve reproducibility, and strengthen onboarding for contributors.
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