Search preferences
Skip to main search results

Search filters

Product Type

  • All Product Types 
  • Books (2)
  • Magazines & Periodicals (No further results match this refinement)
  • Comics (No further results match this refinement)
  • Sheet Music (No further results match this refinement)
  • Art, Prints & Posters (No further results match this refinement)
  • Photographs (No further results match this refinement)
  • Maps (No further results match this refinement)
  • Manuscripts & Paper Collectibles (No further results match this refinement)

Condition Learn more

  • New (1)
  • As New, Fine or Near Fine (1)
  • Very Good or Good (No further results match this refinement)
  • Fair or Poor (No further results match this refinement)
  • As Described (No further results match this refinement)

Binding

Collectible Attributes

Language (1)

Price

Custom price range (£)

Free Shipping

  • Free Shipping to U.S.A. (No further results match this refinement)

Seller Location

  • Liu, Ji; Zhang, Ce

    Language: English

    Published by Now Publishers, 2020

    ISBN 10: 1680837001 ISBN 13: 9781680837001

    Seller: Leopolis, Kraków, Poland

    Seller rating 5 out of 5 stars 5-star rating, Learn more about seller ratings

    Contact seller

    £ 39.36

    £ 56.10 shipping
    Ships from Poland to U.S.A.

    Quantity: 1 available

    Add to basket

    Soft cover. Condition: New. 8vo (23.5 cm). VIII, 105 pp. Laminated wrappers. "Scalable and efficient distributed learning is one of the main driving forces behind the recent rapid advancement of machine learning and artificial intelligence. One prominent feature of this development is that recent progress has been made by researchers in two communities: (1) the system community such as database, data management, and distributed systems, and (2) the machine learning and mathematical optimization community. The interaction and knowledge sharing between these two communities has led to the rapid development of new distributed learning systems and theory. This monograph provides a brief introduction to three distributed learning techniques that have recently been developed: lossy communication compression, asynchronous communication, and decentralized communication. These have significant impact on the work in both the system and machine learning and mathematical optimization communities but to fully realize the potential, it is essential they understand the whole picture. This monograph provides the bridge between the two communities. The simplified introduction to the essential aspects of each community enables researchers to gain insights into the factors influencing both. The monograph provides students and researchers the groundwork for developing faster and better research results in this dynamic area of research." (publisher's description).

  • Ji Liu, Ce Zhang

    Language: English

    Published by Now Publishers Inc, 2020

    ISBN 10: 1680837001 ISBN 13: 9781680837001

    Seller: Buchpark, Trebbin, Germany

    Seller rating 5 out of 5 stars 5-star rating, Learn more about seller ratings

    Contact seller

    £ 55.51

    £ 90.62 shipping
    Ships from Germany to U.S.A.

    Quantity: 1 available

    Add to basket

    Condition: Sehr gut. Zustand: Sehr gut | Sprache: Englisch | Produktart: Bücher | Scalable and efficient distributed learning is one of the main driving forces behind the recent rapid advancement of machine learning and artificial intelligence. One prominent feature of this development is that recent progress has been made by researchers in two communities: (1) the system community such as database, data management, and distributed systems, and (2) the machine learning and mathematical optimization community. The interaction and knowledge sharing between these two communities has led to the rapid development of new distributed learning systems and theory. This monograph provides a brief introduction to three distributed learning techniques that have recently been developed: lossy communication compression, asynchronous communication, and decentralized communication. These have significant impact on the work in both the system and machine learning and mathematical optimization communities but to fully realize the potential, it is essential they understand the whole picture. This monograph provides the bridge between the two communities. The simplified introduction to the essential aspects of each community enables researchers to gain insights into the factors influencing both. The monograph provides students and researchers the groundwork for developing faster and better research results in this dynamic area of research.