Small Summaries for Big Data Small Summaries for Big Data

Small Summaries for Big Data

    • $67.99
    • $67.99

Publisher Description

The massive volume of data generated in modern applications can overwhelm our ability to conveniently transmit, store, and index it. For many scenarios, building a compact summary of a dataset that is vastly smaller enables flexibility and efficiency in a range of queries over the data, in exchange for some approximation. This comprehensive introduction to data summarization, aimed at practitioners and students, showcases the algorithms, their behavior, and the mathematical underpinnings of their operation. The coverage starts with simple sums and approximate counts, building to more advanced probabilistic structures such as the Bloom Filter, distinct value summaries, sketches, and quantile summaries. Summaries are described for specific types of data, such as geometric data, graphs, and vectors and matrices. The authors offer detailed descriptions of and pseudocode for key algorithms that have been incorporated in systems from companies such as Google, Apple, Microsoft, Netflix and Twitter.

GENRE
Computers & Internet
RELEASED
2020
November 12
LANGUAGE
EN
English
LENGTH
411
Pages
PUBLISHER
Cambridge University Press
SELLER
Cambridge University Press
SIZE
8.7
MB
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