Section 01
[Main Floor] Guide to MNIST Handwritten Digit Recognition Practice with Convolutional Neural Networks
This project focuses on implementing MNIST handwritten digit recognition using Convolutional Neural Networks (CNN), covering dataset characteristics, model architecture design, Adam vs. SGD optimizer comparison experiments, and the complete training process, providing a practical reference case for deep learning beginners. Key content includes data preprocessing, CNN hierarchical feature extraction, optimizer performance analysis, and result visualization, among other critical steps.