
Developed a suite of computational physics and astrophysics coursework features in the ubsuny/PHY386 repository, focusing on reproducible, data-driven analysis and visualization. Delivered Jupyter Notebooks for quantum mechanics, astronomical image processing, and lunar crater analysis, integrating Python, TensorFlow, and Astropy to enable GPU-accelerated workflows and advanced image processing. Implemented pipelines for spring-mass system modeling, freefall data analysis, and crater size distribution, emphasizing clear documentation and maintainable project structure. Addressed reproducibility by cleaning notebook metadata and outputs, while refining machine learning preprocessing and visualization. The work demonstrated depth in scientific computing, data engineering, and the application of deep learning techniques.
Monthly summary for 2025-05: Delivered a feature-rich Lunar crater size distribution analysis pipeline with enhanced visualization, enabling more accurate surface age estimation and insightful crater distribution discussions. Also completed notebook cleanup to improve reproducibility and reduce noise.
Monthly summary for 2025-05: Delivered a feature-rich Lunar crater size distribution analysis pipeline with enhanced visualization, enabling more accurate surface age estimation and insightful crater distribution discussions. Also completed notebook cleanup to improve reproducibility and reduce noise.
April 2025 performance summary for ubsuny/PHY386. Delivered a suite of notebook-based coursework features, improved data processing pipelines, and introduced CNN-based spectral classification, elevating both teaching resources and technical capabilities. Key design focus was on reproducibility, GPU-accelerated workflows, and clear traceability of deliverables to business value.
April 2025 performance summary for ubsuny/PHY386. Delivered a suite of notebook-based coursework features, improved data processing pipelines, and introduced CNN-based spectral classification, elevating both teaching resources and technical capabilities. Key design focus was on reproducibility, GPU-accelerated workflows, and clear traceability of deliverables to business value.
Professional monthly summary for 2025-03 focused on business value, technical achievements, and reproducibility for the PHY386 workstream.
Professional monthly summary for 2025-03 focused on business value, technical achievements, and reproducibility for the PHY386 workstream.
February 2025 monthly summary for ubsuny/PHY386. Key feature delivered: Physics course HW1 notebooks — a new notebook with content expansion; repository improvements and maintainability. No major bugs fixed this month. Business impact: enhanced course readiness, portability across environments (including Google Colab), and scalable content for students with clear learning objectives. Technologies/skills demonstrated: Python, MATLAB, LaTeX, Jupyter notebooks, markdown structure, conditional logic, loops, functions, data structures (lists, dictionaries), file I/O, and documentation via learning objectives and citations.
February 2025 monthly summary for ubsuny/PHY386. Key feature delivered: Physics course HW1 notebooks — a new notebook with content expansion; repository improvements and maintainability. No major bugs fixed this month. Business impact: enhanced course readiness, portability across environments (including Google Colab), and scalable content for students with clear learning objectives. Technologies/skills demonstrated: Python, MATLAB, LaTeX, Jupyter notebooks, markdown structure, conditional logic, loops, functions, data structures (lists, dictionaries), file I/O, and documentation via learning objectives and citations.

Overview of all repositories you've contributed to across your timeline