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Deep Belief Nets in C++ and CUDA C: ...
~
Masters, Timothy.
Deep Belief Nets in C++ and CUDA C: Volume 2 = Autoencoding in the Complex Domain /
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Deep Belief Nets in C++ and CUDA C: Volume 2/ by Timothy Masters.
其他題名:
Autoencoding in the Complex Domain /
作者:
Masters, Timothy.
面頁冊數:
XI, 258 p. 47 illus.online resource. :
Contained By:
Springer Nature eBook
標題:
Artificial intelligence. -
電子資源:
https://doi.org/10.1007/978-1-4842-3646-8
ISBN:
9781484236468
Deep Belief Nets in C++ and CUDA C: Volume 2 = Autoencoding in the Complex Domain /
Masters, Timothy.
Deep Belief Nets in C++ and CUDA C: Volume 2
Autoencoding in the Complex Domain /[electronic resource] :by Timothy Masters. - 1st ed. 2018. - XI, 258 p. 47 illus.online resource.
0. Introduction -- 1. Embedded Class Labels -- 2. Signal Preprocessing -- 3. Image Preprocessing -- 4. Autoencoding -- 5. Deep Operating Manual.
Discover the essential building blocks of a common and powerful form of deep belief net: the autoencoder. You’ll take this topic beyond current usage by extending it to the complex domain for signal and image processing applications. Deep Belief Nets in C++ and CUDA C: Volume 2 also covers several algorithms for preprocessing time series and image data. These algorithms focus on the creation of complex-domain predictors that are suitable for input to a complex-domain autoencoder. Finally, you’ll learn a method for embedding class information in the input layer of a restricted Boltzmann machine. This facilitates generative display of samples from individual classes rather than the entire data distribution. The ability to see the features that the model has learned for each class separately can be invaluable. At each step this book provides you with intuitive motivation, a summary of the most important equations relevant to the topic, and highly commented code for threaded computation on modern CPUs as well as massive parallel processing on computers with CUDA-capable video display cards. You will: • Code for deep learning, neural networks, and AI using C++ and CUDA C • Carry out signal preprocessing using simple transformations, Fourier transforms, Morlet wavelets, and more • Use the Fourier Transform for image preprocessing • Implement autoencoding via activation in the complex domain • Work with algorithms for CUDA gradient computation • Use the DEEP operating manual.
ISBN: 9781484236468
Standard No.: 10.1007/978-1-4842-3646-8doiSubjects--Topical Terms:
559380
Artificial intelligence.
LC Class. No.: Q334-342
Dewey Class. No.: 006.3
Deep Belief Nets in C++ and CUDA C: Volume 2 = Autoencoding in the Complex Domain /
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