
Developed a comprehensive CNN object detection training pipeline for the Cornell-University-Combat-Robotics/Autonomous-24-25 repository, focusing on robust data loading, multi-task loss functions, and architectural refinements to improve detection accuracy and model deployment. Integrated Roboflow for dataset management and implemented a prediction module enabling end-to-end inference with visualization of bounding boxes and labels. Addressed critical bugs in training validation, dataset length calculations, and batch processing to stabilize model training. Enhanced repository hygiene by refining the .gitignore configuration. Leveraged Python, PyTorch, and OpenCV throughout, delivering a scalable, reproducible codebase that supports rapid iteration and deployment for autonomous robotics workflows.
November 2024 for Cornell-University-Combat-Robotics/Autonomous-24-25: Delivered a robust CNN object detection training pipeline with multi-task losses, robust data loading, dataset management, tuned training hyperparameters, architectural refinements, and Roboflow integration. Launched a Prediction Module for inference and visualization. Expanded model artifacts and dataset support (added most recent model and 400-dataset model). Fixed critical issues in training validation, dataset length calculations, and batch processing to stabilize training runs. Updated repository hygiene by refining gitignore to exclude runs and models. These efforts deliver improved detection accuracy, faster deployment of updated models, and a cleaner, reproducible codebase enabling scalable autonomous robotics workflows.
November 2024 for Cornell-University-Combat-Robotics/Autonomous-24-25: Delivered a robust CNN object detection training pipeline with multi-task losses, robust data loading, dataset management, tuned training hyperparameters, architectural refinements, and Roboflow integration. Launched a Prediction Module for inference and visualization. Expanded model artifacts and dataset support (added most recent model and 400-dataset model). Fixed critical issues in training validation, dataset length calculations, and batch processing to stabilize training runs. Updated repository hygiene by refining gitignore to exclude runs and models. These efforts deliver improved detection accuracy, faster deployment of updated models, and a cleaner, reproducible codebase enabling scalable autonomous robotics workflows.

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