|Listed in category:
This listing was ended by the seller on Thu, 3 Jul at 8:15 PM because the item is no longer available.
DEEP LEARNING FOR COMPUTER ARCHITECTS (SYNTHESIS LECTURES By Paul Whatmough
Ended
DEEP LEARNING FOR COMPUTER ARCHITECTS (SYNTHESIS LECTURES By Paul Whatmough
US $75.95US $75.95
Jul 03, 20:15Jul 03, 20:15
Have one to sell?

DEEP LEARNING FOR COMPUTER ARCHITECTS (SYNTHESIS LECTURES By Paul Whatmough

~ Quick Free Delivery in 2-14 days. 100% Satisfaction ~
US $75.95
ApproximatelyS$ 97.41
Condition:
Good
Book is in typical used-Good Condition.  Will show signs of wear to cover and/or pages. There may be ... Read moreabout condition
    Shipping:
    Free Economy Shipping.
    Located in: US, United States
    Delivery:
    Estimated between Mon, 21 Jul and Thu, 24 Jul to 94104
    Delivery time is estimated using our proprietary method which is based on the buyer's proximity to the item location, the shipping service selected, the seller's shipping history, and other factors. Delivery times may vary, especially during peak periods.
    Returns:
    30 days return. Seller pays for return shipping.
    Coverage:
    Read item description or contact seller for details. See all detailsSee all details on coverage
    (Not eligible for eBay purchase protection programmes)
    Seller assumes all responsibility for this listing.
    eBay item number:336018753630

    Item specifics

    Condition
    Good
    A book that has been read but is in good condition. Very minimal damage to the cover including scuff marks, but no holes or tears. The dust jacket for hard covers may not be included. Binding has minimal wear. The majority of pages are undamaged with minimal creasing or tearing, minimal pencil underlining of text, no highlighting of text, no writing in margins. No missing pages. See all condition definitionsopens in a new window or tab
    Seller Notes
    “Book is in typical used-Good Condition.  Will show signs of wear to cover and/or pages. There may ...
    ISBN-10
    1627057285
    Book Title
    Deep Learning for Computer Architects (Synthesis Lectures on
    ISBN
    9781627057288

    About this product

    Product Identifiers

    Publisher
    Morgan & Claypool Publishers
    ISBN-10
    1627057285
    ISBN-13
    9781627057288
    eBay Product ID (ePID)
    240299249

    Product Key Features

    Number of Pages
    123 Pages
    Language
    English
    Publication Name
    Deep Learning for Computer Architects
    Publication Year
    2017
    Subject
    Systems Architecture / General, Intelligence (Ai) & Semantics, Neural Networks
    Type
    Textbook
    Subject Area
    Computers
    Author
    Paul Whatmough, Brandon Reagen, Robert Adolf, David Brooks, Gu-Yeon Wei
    Series
    Synthesis Lectures on Computer Architecture Ser.
    Format
    Trade Paperback

    Dimensions

    Item Height
    0.3 in
    Item Weight
    8 Oz
    Item Length
    9.2 in
    Item Width
    7.5 in

    Additional Product Features

    Intended Audience
    Trade
    Illustrated
    Yes
    Table Of Content
    Preface Introduction Foundations of Deep Learning Methods and Models Neural Network Accelerator Optimization: A Case Study A Literature Survey and Review Conclusion Bibliography Authors' Biographies
    Synopsis
    This is a primer written for computer architects in the new and rapidly evolving field of deep learning. It reviews how machine learning has evolved since its inception in the 1960s and tracks the key developments leading up to the emergence of the powerful deep learning techniques that emerged in the last decade. Machine learning, and specifically deep learning, has been hugely disruptive in many fields of computer science. The success of deep learning techniques in solving notoriously difficult classification and regression problems has resulted in their rapid adoption in solving real-world problems. The emergence of deep learning is widely attributed to a virtuous cycle whereby fundamental advancements in training deeper models were enabled by the availability of massive datasets and high-performance computer hardware. It also reviews representative workloads, including the most commonly used datasets and seminal networks across a variety of domains. In addition to discussing the workloads themselves, it also details the most popular deep learning tools and show how aspiring practitioners can use the tools with the workloads to characterize and optimize DNNs. The remainder of the book is dedicated to the design and optimization of hardware and architectures for machine learning. As high-performance hardware was so instrumental in the success of machine learning becoming a practical solution, this chapter recounts a variety of optimizations proposed recently to further improve future designs. Finally, it presents a review of recent research published in the area as well as a taxonomy to help readers understand how various contributions fall in context., A primer for computer architects in a new and rapidly evolving field. The authors review how machine learning has evolved since its inception in the 1960s and track the key developments leading up to the emergence of the powerful deep learning techniques that have emerged in the last decade., This is a primer written for computer architects in the new and rapidly evolving field of deep learning . It reviews how machine learning has evolved since its inception in the 1960s and tracks the key developments leading up to the emergence of the powerful deep learning techniques that emerged in the last decade. Machine learning, and specifically deep learning, has been hugely disruptive in many fields of computer science. The success of deep learning techniques in solving notoriously difficult classification and regression problems has resulted in their rapid adoption in solving real-world problems. The emergence of deep learning is widely attributed to a virtuous cycle whereby fundamental advancements in training deeper models were enabled by the availability of massive datasets and high-performance computer hardware. It also reviews representative workloads, including the most commonly used datasets and seminal networks across a variety of domains. In addition to discussing the workloads themselves, it also details the most popular deep learning tools and show how aspiring practitioners can use the tools with the workloads to characterize and optimize DNNs. The remainder of the book is dedicated to the design and optimization of hardware and architectures for machine learning. As high-performance hardware was so instrumental in the success of machine learning becoming a practical solution, this chapter recounts a variety of optimizations proposed recently to further improve future designs. Finally, it presents a review of recent research published in the area as well as a taxonomy to help readers understand how various contributions fall in context.

    Item description from the seller

    About this seller

    ZUBER

    97.8% positive feedback959K items sold

    Joined Oct 1998

    Detailed Seller Ratings

    Average for the last 12 months
    Accurate description
    4.8
    Reasonable shipping cost
    5.0
    Shipping speed
    5.0
    Communication
    4.9

    Popular categories from this store

    Seller feedback (294,565)

    All ratings
    Positive
    Neutral
    Negative
      • e***l (796)- Feedback left by buyer.
        Past month
        Verified purchase
        Low cost, fast shipping, probably in good condition, A+ ebayer.
      See all feedback