Description

Book Synopsis
Massive modern datasets make traditional data structures and algorithms grind to a halt. This fun and practical guide introduces cutting-edge techniques that can reliably handle even the largest distributed datasets.

In Algorithms and Data Structures for Massive Datasets you will learn:

Probabilistic sketching data structures for practical problems
Choosing the right database engine for your application
Evaluating and designing efficient on-disk data structures and algorithms
Understanding the algorithmic trade-offs involved in massive-scale systems
Deriving basic statistics from streaming data
Correctly sampling streaming data
Computing percentiles with limited space resources

Algorithms and Data Structures for Massive Datasets reveals a toolbox of new methods that are perfect for handling modern big data applications. You’ll explore the novel data structures and algorithms that underpin Google, Facebook, and other enterprise applications that work with truly massive amounts of data. These effective techniques can be applied to any discipline, from finance to text analysis. Graphics, illustrations, and hands-on industry examples make complex ideas practical to implement in your projects—and there’s no mathematical proofs to puzzle over. Work through this one-of-a-kind guide, and you’ll find the sweet spot of saving space without sacrificing your data’s accuracy.

Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications.

About the technology


Standard algorithms and data structures may become slow—or fail altogether—when applied to large distributed datasets. Choosing algorithms designed for big data saves time, increases accuracy, and reduces processing cost. This unique book distills cutting-edge research papers into practical techniques for sketching, streaming, and organizing massive datasets on-disk and in the cloud.

About the book


Algorithms and Data Structures for Massive Datasets introduces processing and analytics techniques for large distributed data. Packed with industry stories and entertaining illustrations, this friendly guide makes even complex concepts easy to understand. You’ll explore real-world examples as you learn to map powerful algorithms like Bloom filters, Count-min sketch, HyperLogLog, and LSM-trees to your own use cases.

What's inside



Probabilistic sketching data structures
Choosing the right database engine
Designing efficient on-disk data structures and algorithms
Algorithmic tradeoffs in massive-scale systems
Computing percentiles with limited space resources

About the reader


Examples in Python, R, and pseudocode.

About the author


Dzejla Medjedovic earned her PhD in the Applied Algorithms Lab at Stony Brook University, New York. Emin Tahirovic earned his PhD in biostatistics from University of Pennsylvania. Illustrator Ines Dedovic earned her PhD at the Institute for Imaging and Computer Vision at RWTH Aachen University, Germany.

 

Table of Contents

1 Introduction
PART 1 HASH-BASED SKETCHES
2 Review of hash tables and modern hashing
3 Approximate membership: Bloom and quotient filters
4 Frequency estimation and count-min sketch
5 Cardinality estimation and HyperLogLog
PART 2 REAL-TIME ANALYTICS
6 Streaming data: Bringing everything together
7 Sampling from data streams
8 Approximate quantiles on data streams
PART 3 DATA STRUCTURES FOR DATABASES AND EXTERNAL MEMORY ALGORITHMS
9 Introducing the external memory model
10 Data structures for databases: B-trees, Bε-trees, and LSM-trees
11 External memory sorting

Algorithms and Data Structures for Massive

Product form

£45.39

Includes FREE delivery

Order before 4pm today for delivery by Tue 6 Jan 2026.

A Paperback / softback by Dzejla Medjedovic, Emin Tahirovic, Ines Dedovic

10 in stock


    View other formats and editions of Algorithms and Data Structures for Massive by Dzejla Medjedovic

    Publisher: Manning Publications
    Publication Date: 05/07/2022
    ISBN13: 9781617298035, 978-1617298035
    ISBN10: 1617298034

    Description

    Book Synopsis
    Massive modern datasets make traditional data structures and algorithms grind to a halt. This fun and practical guide introduces cutting-edge techniques that can reliably handle even the largest distributed datasets.

    In Algorithms and Data Structures for Massive Datasets you will learn:

    Probabilistic sketching data structures for practical problems
    Choosing the right database engine for your application
    Evaluating and designing efficient on-disk data structures and algorithms
    Understanding the algorithmic trade-offs involved in massive-scale systems
    Deriving basic statistics from streaming data
    Correctly sampling streaming data
    Computing percentiles with limited space resources

    Algorithms and Data Structures for Massive Datasets reveals a toolbox of new methods that are perfect for handling modern big data applications. You’ll explore the novel data structures and algorithms that underpin Google, Facebook, and other enterprise applications that work with truly massive amounts of data. These effective techniques can be applied to any discipline, from finance to text analysis. Graphics, illustrations, and hands-on industry examples make complex ideas practical to implement in your projects—and there’s no mathematical proofs to puzzle over. Work through this one-of-a-kind guide, and you’ll find the sweet spot of saving space without sacrificing your data’s accuracy.

    Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications.

    About the technology


    Standard algorithms and data structures may become slow—or fail altogether—when applied to large distributed datasets. Choosing algorithms designed for big data saves time, increases accuracy, and reduces processing cost. This unique book distills cutting-edge research papers into practical techniques for sketching, streaming, and organizing massive datasets on-disk and in the cloud.

    About the book


    Algorithms and Data Structures for Massive Datasets introduces processing and analytics techniques for large distributed data. Packed with industry stories and entertaining illustrations, this friendly guide makes even complex concepts easy to understand. You’ll explore real-world examples as you learn to map powerful algorithms like Bloom filters, Count-min sketch, HyperLogLog, and LSM-trees to your own use cases.

    What's inside



    Probabilistic sketching data structures
    Choosing the right database engine
    Designing efficient on-disk data structures and algorithms
    Algorithmic tradeoffs in massive-scale systems
    Computing percentiles with limited space resources

    About the reader


    Examples in Python, R, and pseudocode.

    About the author


    Dzejla Medjedovic earned her PhD in the Applied Algorithms Lab at Stony Brook University, New York. Emin Tahirovic earned his PhD in biostatistics from University of Pennsylvania. Illustrator Ines Dedovic earned her PhD at the Institute for Imaging and Computer Vision at RWTH Aachen University, Germany.

     

    Table of Contents

    1 Introduction
    PART 1 HASH-BASED SKETCHES
    2 Review of hash tables and modern hashing
    3 Approximate membership: Bloom and quotient filters
    4 Frequency estimation and count-min sketch
    5 Cardinality estimation and HyperLogLog
    PART 2 REAL-TIME ANALYTICS
    6 Streaming data: Bringing everything together
    7 Sampling from data streams
    8 Approximate quantiles on data streams
    PART 3 DATA STRUCTURES FOR DATABASES AND EXTERNAL MEMORY ALGORITHMS
    9 Introducing the external memory model
    10 Data structures for databases: B-trees, Bε-trees, and LSM-trees
    11 External memory sorting

    Recently viewed products

    © 2025 Book Curl

      • American Express
      • Apple Pay
      • Diners Club
      • Discover
      • Google Pay
      • Maestro
      • Mastercard
      • PayPal
      • Shop Pay
      • Union Pay
      • Visa

      Login

      Forgot your password?

      Don't have an account yet?
      Create account