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d2l-ko's Introduction

D2L.ai: Interactive Deep Learning Book with Multi-Framework Code, Math, and Discussions

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Book website | STAT 157 Course at UC Berkeley, Spring 2019

The best way to understand deep learning is learning by doing.

This open-source book represents our attempt to make deep learning approachable, teaching you the concepts, the context, and the code. The entire book is drafted in Jupyter notebooks, seamlessly integrating exposition figures, math, and interactive examples with self-contained code.

Our goal is to offer a resource that could

  1. be freely available for everyone;
  2. offer sufficient technical depth to provide a starting point on the path to actually becoming an applied machine learning scientist;
  3. include runnable code, showing readers how to solve problems in practice;
  4. allow for rapid updates, both by us and also by the community at large;
  5. be complemented by a forum for interactive discussion of technical details and to answer questions.

Universities Using D2L

Cool Papers Using D2L

  1. Descending through a Crowded Valley--Benchmarking Deep Learning Optimizers. R. Schmidt, F. Schneider, P. Hennig. International Conference on Machine Learning, 2021

  2. Universal Average-Case Optimality of Polyak Momentum. D. Scieur, F. Pedregosan. International Conference on Machine Learning, 2020

  3. 2D Digital Image Correlation and Region-Based Convolutional Neural Network in Monitoring and Evaluation of Surface Cracks in Concrete Structural Elements. M. Słoński, M. Tekieli. Materials, 2020

  4. GluonCV and GluonNLP: Deep Learning in Computer Vision and Natural Language Processing. J. Guo, H. He, T. He, L. Lausen, M. Li, H. Lin, X. Shi, C. Wang, J. Xie, S. Zha, A. Zhang, H. Zhang, Z. Zhang, Z. Zhang, S. Zheng, and Y. Zhu. Journal of Machine Learning Research, 2020

  5. Detecting Human Driver Inattentive and Aggressive Driving Behavior Using Deep Learning: Recent Advances, Requirements and Open Challenges. M. Alkinani, W. Khan, Q. Arshad. IEEE Access, 2020

more
  1. Diagnosing Parkinson by Using Deep Autoencoder Neural Network. U. Kose, O. Deperlioglu, J. Alzubi, B. Patrut. Deep Learning for Medical Decision Support Systems, 2020

  2. Deep Learning Architectures for Medical Diagnosis. U. Kose, O. Deperlioglu, J. Alzubi, B. Patrut. Deep Learning for Medical Decision Support Systems, 2020

  3. ControlVAE: Tuning, Analytical Properties, and Performance Analysis. H. Shao, Z. Xiao, S. Yao, D. Sun, A. Zhang, S. Liu, T. Abdelzaher.

  4. Potential, challenges and future directions for deep learning in prognostics and health management applications. O. Fink, Q. Wang, M. Svensén, P. Dersin, W-J. Lee, M. Ducoffe. Engineering Applications of Artificial Intelligence, 2020

  5. Learning User Representations with Hypercuboids for Recommender Systems. S. Zhang, H. Liu, A. Zhang, Y. Hu, C. Zhang, Y. Li, T. Zhu, S. He, W. Ou. ACM International Conference on Web Search and Data Mining, 2021

If you find this book useful, please star (★) this repository or cite this book using the following bibtex entry:

@article{zhang2021dive,
    title={Dive into Deep Learning},
    author={Zhang, Aston and Lipton, Zachary C. and Li, Mu and Smola, Alexander J.},
    journal={arXiv preprint arXiv:2106.11342},
    year={2021}
}

Endorsements

"In less than a decade, the AI revolution has swept from research labs to broad industries to every corner of our daily life. Dive into Deep Learning is an excellent text on deep learning and deserves attention from anyone who wants to learn why deep learning has ignited the AI revolution: the most powerful technology force of our time."

— Jensen Huang, Founder and CEO, NVIDIA

"This is a timely, fascinating book, providing with not only a comprehensive overview of deep learning principles but also detailed algorithms with hands-on programming code, and moreover, a state-of-the-art introduction to deep learning in computer vision and natural language processing. Dive into this book if you want to dive into deep learning!"

— Jiawei Han, Michael Aiken Chair Professor, University of Illinois at Urbana-Champaign

"This is a highly welcome addition to the machine learning literature, with a focus on hands-on experience implemented via the integration of Jupyter notebooks. Students of deep learning should find this invaluable to become proficient in this field."

— Bernhard Schölkopf, Director, Max Planck Institute for Intelligent Systems

Contributing (Learn How)

This open source book has benefited from pedagogical suggestions, typo corrections, and other improvements from community contributors. Your help is valuable for making the book better for everyone.

Dear D2L contributors, please email your GitHub ID and name to d2lbook.en AT gmail DOT com so your name will appear on the acknowledgments. Thanks.

License Summary

This open source book is made available under the Creative Commons Attribution-ShareAlike 4.0 International License. See LICENSE file.

The sample and reference code within this open source book is made available under a modified MIT license. See the LICENSE-SAMPLECODE file.

Chinese version | Discuss and report issues | Code of conduct | Other Information

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d2l-ko's Issues

번역에 기여를 하고 싶습니다.

안녕하세요, 컴퓨터를 공부하고 있는 학생입니다.

d2l-en 번역에 기여를 하고 싶어 이슈를 남기게 되었습니다.
버전 0.7.1에 맞추어 빌드 및 번역을 진행하기 위해 최신 버전의 d2l-en를 cloning 후,
d2l-ko를 forking한 뒤 새로이 working directory를 만들어 작업을 진행하고 있습니다.

Preface, Installation, NotationContributing to This Book 초벌 번역을 마친 상태이며, 현재 Introduction 번역을 진행중에 있습니다.

학부연구생 신분이지만, 번역에 기여를 하고 싶습니다. 기초적인 git을 다룰 수 있으며, d2l-ko contribute guideline 및 building process에 대한 이해를 마쳤습니다. 시간이 나는 대로 (특히 주말) 번역을 진행할 예정입니다.

피드백 기다리겠습니다. 감사합니다.

Add build instruction

For contributors, please describe how to build the book (e.g. html, pdf, or live server).

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