
Eugene Goh contributed to the Yihe-Harry/DSA3101-Group-Project by engineering real-time customer segmentation and campaign optimization features using Python, Streamlit, and Docker. He developed a Streamlit-based CTR campaign optimizer with dynamic recommendations and performance visualization, and implemented a real-time segmentation API with CRUD endpoints and automatic model retraining. Eugene reorganized and cleaned datasets to support ML model training, aligning data structures across project modules for stability and reproducibility. He enhanced deployment reliability by updating Dockerfiles to support Flask and maintained repository hygiene through codebase cleanup and documentation improvements, demonstrating a strong focus on maintainability and scalable data-driven workflows.

April 2025 monthly summary for Yihe-Harry/DSA3101-Group-Project: Delivered data-management overhaul, container readiness, and documentation improvements that strengthen reproducibility, deployment reliability, and team onboarding. Key dataset reorganization across A1/API/A3, extensive cleanup of unused references and directories, and alignment of datasets to current workflows. Documentation and notebook updates, cluster naming refinements, and batch asset uploads improved project clarity. Dockerfile enhancement enabling Flask-powered container execution reduced deployment friction and accelerated environment parity.
April 2025 monthly summary for Yihe-Harry/DSA3101-Group-Project: Delivered data-management overhaul, container readiness, and documentation improvements that strengthen reproducibility, deployment reliability, and team onboarding. Key dataset reorganization across A1/API/A3, extensive cleanup of unused references and directories, and alignment of datasets to current workflows. Documentation and notebook updates, cluster naming refinements, and batch asset uploads improved project clarity. Dockerfile enhancement enabling Flask-powered container execution reduced deployment friction and accelerated environment parity.
March 2025 monthly summary for Yihe-Harry/DSA3101-Group-Project highlighting business value and technical achievements across the feature set. Key data infrastructure, real-time experimentation, and customer segmentation capabilities were delivered with a focus on reliability, scalability, and maintainability. Notable improvements include ML-ready data provisioning, a Streamlit-based real-time CTR campaign optimizer with containerization, a real-time segmentation API with CRUD and automatic retraining, a lifecycle scaffold for API management, segmentation modeling analytics, and repo hygiene to reduce technical debt.
March 2025 monthly summary for Yihe-Harry/DSA3101-Group-Project highlighting business value and technical achievements across the feature set. Key data infrastructure, real-time experimentation, and customer segmentation capabilities were delivered with a focus on reliability, scalability, and maintainability. Notable improvements include ML-ready data provisioning, a Streamlit-based real-time CTR campaign optimizer with containerization, a real-time segmentation API with CRUD and automatic retraining, a lifecycle scaffold for API management, segmentation modeling analytics, and repo hygiene to reduce technical debt.
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