DeepLearning-500-questions is a comprehensive handbook that compiles 500 important questions on deep learning, curated to serve as a valuable reference for AI engineer interviews and self-study. Edited by Tan Jiyong with contributions from Guo Zizhao, Li Jian, and Dian Songyi, the book systematically covers both theoretical foundations and practical applications of deep learning. The first sections focus on essential mathematics, machine learning basics, and deep learning foundations, establishing the groundwork for more advanced topics. Later chapters explore classic neural network structures such as CNNs, RNNs, and GANs, as well as key applications in computer vision like object detection and image segmentation. The resource also delves into optimization methods, including transfer learning, network architecture design, hyperparameter tuning, model compression, and acceleration techniques.
Features
- Covers 500 essential deep learning questions with explanations
- Includes foundations in mathematics, machine learning, and deep learning
- Details major architectures such as CNNs, RNNs, and GANs
- Explores core applications in object detection and image segmentation
- Provides optimization strategies like transfer learning and model compression
- Serves as a reference for interviews, teaching, and professional growth