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fastai与PyTorch深度学习实践指南(影印版)(英文版)

fastai与PyTorch深度学习实践指南(影印版)(英文版)

  • 字数: 759
  • 出版社: 东南大学
  • 作者: (美)杰瑞米·霍华德//(法)西尔万·古戈尔|责编:张烨
  • 商品条码: 9787564194543
  • 版次: 1
  • 开本: 16开
  • 页数: 594
  • 出版年份: 2021
  • 印次: 1
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内容简介
深度学习往往被视为数 学博士和大型科技公司的专 属领域。但正如这本实践指 南所展示的那样,熟练使用 Python的程序员只需很少的 数学背景、少量的数据和最 少的代码,就可以在深度学 习方面取得令人印象深刻的 成果。怎么样才能做到?使 用fastai,这是首个为最常 用的深度学习应用提供一致 接口的库。 本书作者Jeremy Howard和Sylvain Gugger 是fastai的创建者,他们向 你展示了如何使用fastai和 PyTorch在各种任务上训练 一个模型。你还将逐步深入 了解深度学习理论,以便充 分理解幕后的算法。 在计算机视觉、自然语 言处理、表格型数据和协同 过滤中训练模型; 学习在实践中至关重要 的最新深度学习技术; 通过了解深度学习模型 的工作原理,提高准确性、 速度和可靠性; 了解如何将你的模型转 化为Web应用; 从头开始实现深度学习 算法; 考虑你的工作所带来的 道德影响; 从PyTorch联合创始人 Soumith Chintala的前言中 获得启示。
目录
Preface Foreword Part I. Deep Learning in Practice 1. Your Deep Learning Journey Deep Learning Is for Everyone Neural Networks: A Brief History Who We Are How to Learn Deep Learning Your Projects and Your Mindset The Software: PyTorch, fastai, and Jupyter (And Why It Doesn''t Matter) Your First Model Getting a GPU Deep Learning Server Running Your First Notebook What Is Machine Learning? What Is a Neural Network? A Bit of Deep Learning Jargon Limitations Inherent to Machine Learning How Our Image Recognizer Works What Our Image Recognizer Learned Image Recognizers Can Tackle Non-Image Tasks Jargon Recap Deep Learning Is Not Just for Image Classification Validation Sets and Test Sets Use Judgment in Defining Test Sets A Choose Your Own Adventure Moment Questionnaire Further Research 2. From Model to Production The Practice of Deep Learning Starting Your Project The State of Deep Learning The Drivetrain Approach Gathering Data From Data to DataLoaders Data Augmentation Training Your Model, and Using It to Clean Your Data Turning Your Model into an Online Application Using the Model for Inference Creating a Notebook App from the Model Turning Your Notebook into a Real App Deploying Your App How to Avoid Disaster Unforeseen Consequences and Feedback Loops Get Writing! Questionnaire Further Research 3. Data Ethics Key Examples for Data Ethics Bugs and Recourse: Buggy Algorithm Used for Healthcare Benefits Feedback Loops: YouTube''s Recommendation System Bias: Professor Latanya Sweeney \\\\\\\"Arrested\\\\\\\" Why Does This Matter? Integrating Machine Learning with Product Design Topics in Data Ethics Recourse and Accountability Feedback Loops Bias Disinformation Identifying and Addressing Ethical Issues Analyze a Project You Are Working On Processes to Implement The Power of Diversity …… Part II. Understanding fastai''s applications Part III. Foundations of Deep Learning Part IV. Deep learning from Scratch Index

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