Deep-Learning-Interview-Book collects structured notes, Q&A, and concept summaries tailored to deep-learning interviews, turning scattered study into a coherent playbook. It spans the core math (linear algebra, probability, optimization) and the practitioner topics candidates actually face, like CNNs, RNNs/Transformers, attention, regularization, and training tricks. Explanations emphasize intuition first, then key formulas and common pitfalls, so you can reason through unseen questions rather than memorize trivia. Many entries connect theory to implementation details, including how choices in activation, initialization, or normalization affect convergence and stability. The content is organized for fast review before an interview loop but is also deep enough for systematic study over weeks. Because it’s text-first and modular, it works equally well as a quick refresher or a backbone for a full study plan.
Features
- Curated interview questions mapped to core deep-learning topics
- Math refreshers aligned with practical DL use
- Intuition-first explanations followed by key formulas and pitfalls
- Links from concepts to implementation details and training tips
- Modular structure for targeted, time-boxed review
- Checklists and summaries to speed up last-mile prep