Number Systems for Deep Neural Network Architectures Number Systems for Deep Neural Network Architectures
Synthesis Lectures on Engineering, Science, and Technology

Number Systems for Deep Neural Network Architectures

Ghada Alsuhli and Others
    • USD 44.99
    • USD 44.99

Publisher Description

This book provides readers a comprehensive introduction to alternative number systems for more efficient representations of Deep Neural Network (DNN) data. Various number systems (conventional/unconventional) exploited for DNNs are discussed, including Floating Point (FP), Fixed Point (FXP), Logarithmic Number System (LNS), Residue Number System (RNS), Block Floating Point Number System (BFP), Dynamic Fixed-Point Number System (DFXP) and Posit Number System (PNS). The authors explore the impact of these number systems on the performance and hardware design of DNNs, highlighting the challenges associated with each number system and various solutions that are proposed for addressing them.

GENRE
Computing & Internet
RELEASED
2023
1 September
LANGUAGE
EN
English
LENGTH
105
Pages
PUBLISHER
Springer Nature Switzerland
SELLER
Springer Nature B.V.
SIZE
10.3
MB
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