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Details for:
Raschka S.Test Yourself on Sebastian Raschka's Build a Large Language Model 2025
raschka s test yourself sebastian raschka s build large language model 2025
Type:
E-books
Files:
1
Size:
9.3 MB
Uploaded On:
Sept. 19, 2025, 7:34 a.m.
Added By:
andryold1
Seeders:
1
Leechers:
2
Info Hash:
8A8B2365F3F624BCFADAB1D77B1BC2CD13F3D365
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Textbook in PDF format Learn how to create, train, and tweak large language models (LLMs) by building one from the ground up! Sebastian Raschka’s bestselling book Build a Large Language Model (From Scratch) is the best way to learn how Large Language Models function. It uses Python and the PyTorch deep learning library. It’s a unique way to learn this subject, which some believe is the only way to truly learn: you build a model yourself. Even with the clear explanations, diagrams, and code in the book, learning a complex subject is still hard. This Test Yourself guide intends to make it a little easier. The structure mirrors the structure of Build a Large Language Model (From Scratch), focusing on key concepts from each chapter. You can test yourself with multiple-choice quizzes, questions on code and key concepts, and questions with longer answers that push you to think critically. The answers to all questions are provided. Depending on what you know at any point, this Test Yourself guide can help you in different ways. It will solidify your knowledge if used after reading a chapter. But it will also benefit you if you digest it before reading. By testing yourself on the main concepts and their relationships you are primed to navigate a chapter more easily and be ready for its messages. We recommend using it before and after reading, as well as later when you have started forgetting. Repeated learning solidifies our knowledge and integrates it with related knowledge already in our long-term memory. Whether you're a working engineer integrating LLMs into production systems, or a researcher deepening your practical skills, this guide meets you where you are. Each question is crafted to reinforce the specific learning objectives from the corresponding chapter in Build a Large Language Model (From Scratch). Work through the questions honestly. Resist the urge to peek at answers too quickly. The struggle to recall and reason through problems is where the deepest learning happens. When you encounter a question you can't answer, that's valuable feedback about where to focus your study efforts. When you encounter a question you can't answer, that's your signal to return to the relevant section in the main book. When answer explanations reference "see section 3.2" or "as shown in figure 4.1," you'll know exactly where to look for the complete context. Most importantly, use this guide as intended: as a companion to comprehensive learning. While these practice problems will strengthen your understanding, they're designed to work alongside the complete theoretical foundations and step-by-step implementations that make Build a Large Language Model (From Scratch) the definitive resource for understanding how these systems work. Ready to test your knowledge and deepen your expertise? Make sure you have Build a Large Language Model (From Scratch) at hand, then let's begin. What's inside Questions on code and key concepts Critical thinking exercises requiring longer answers Answers for all questions About the reader For readers of Build a Large Language Model (From Scratch) who want to enhance their learning with exercises and self-assessment tools. About the author Curated from Build a Large Language Model (From Scratch) Contents: Understanding large language models Working with text data Coding Attention Mechanisms Implementing a GPT model from scratch to generate text Pretraining on unlabeled data Fine-tuning for classification Fine-tuning to follow instructions Appendix A. Introduction to PyTorch Appendix B. References and further reading Appendix C. Exercise solutions Appendix D. Adding bells and whistles to the training loop Appendix E. Parameter-efficient fine-tuning with LoRA
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Raschka S.Test Yourself on Sebastian Raschka's Build a Large Language Model 2025.pdf
9.3 MB
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