沃新书屋 - Programming PyTorch for Deep Learning - azw3 网盘 高速 下载地址大全 免费
本书资料更新时间:2025-05-04 12:36:13

Programming PyTorch for Deep Learning azw3 网盘 高速 下载地址大全 免费

Programming PyTorch for Deep Learning精美图片
其他格式下载地址

Programming PyTorch for Deep Learning书籍详细信息


内容简介:

Deep learning is changing everything. This machine-learning method has already surpassed traditional computer vision techniques, and the same is happening with NLP. If you're looking to bring deep learning into your domain, this practical book will bring you up to speed on key concepts using Facebook's PyTorch framework. Once author Ian Pointer helps you set up PyTorch on a cloud-based environment, you'll learn how use the framework to create neural architectures for performing operations on images, sound, text, and other types of data. By the end of the book, you'll be able to create neural networks and train them on multiple types of data. Learn how to deploy deep learning models to production Explore PyTorch use cases in companies other than Facebook Learn how to apply transfer learning to images Apply cutting-edge NLP techniques using a model trained on Wikipedia

书籍目录:

暂无相关目录,正在全力查找中!


作者简介:

Currently Ian is the Director of Partner Engineering at a company called Kogentix that specializes in Machine Learning solutions (including Deep Learning techniques), with multiple Fortune 100 clients. Prior to that, he worked for many years at an early Big Data startup called Mammoth Data, cutting his teeth on Apache Hadoop and Apache Spark. He emigrated to the US from the UK in 2011 and became an American citizen in 2017.

其它内容:

暂无其它内容!


下载点评

  • 水印(122+)
  • 值得购买(574+)
  • 宝藏(795+)
  • 免密(715+)
  • 低清(126+)
  • 扫描(763+)
  • 破损(997+)
  • 珍藏(799+)
  • 快捷(840+)
  • 可搜索(225+)
  • 稀缺(364+)
  • 惊喜(260+)
  • 必备(731+)
  • 精校(189+)
  • 科研(428+)
  • 修订(698+)
  • 考证(338+)
  • 学者(122+)

下载评论

  • 用户1725413446: ( 2024-09-04 09:30:46 )

    优质的期刊资源,图文设计提升阅读体验,操作便捷。

  • 扈***洁: ( 2024-11-20 14:53:50 )

    还不错啊,挺好

  • 用户1730963210: ( 2024-11-07 15:06:50 )

    多格式功能搭配EPUB/AZW3格式,无损数字阅读体验,推荐下载。

  • 用户1730375452: ( 2024-10-31 19:50:52 )

    无损的报告资源,多格式设计提升阅读体验,操作便捷。

  • 用户1737010424: ( 2025-01-16 14:53:44 )

    秒传下载PDF/AZW3文件,完整小说推荐收藏,体验良好。


相关书评

暂时还没有人为这本书评论!