Data Structures for Data-Intensive Applications: Tradeoffs and Design Guidelines
Data structures are the means by which software programs store and retrieve data. This monograph focuses on key-value data structures, which are widely used for data-intensive applications thanks to the versatility of the key-value data model. Key-value data structures constitute the core of any data-driven system. They provide the means to store, search, and modify data residing at various levels of the storage and memory hierarchy. Designing efficient data structures for given workloads has long been a focus of research and practice in both academia and industry.

Data Structures for Data-Intensive Applications explains the space of data structure design choices, how to select the appropriate data structure depending on the goals and workload of an application at hand, and how the ever-evolving hardware and data properties require innovations in data structure design. The overarching goal is to help the reader both select the best existing data structures and design and build new ones.
1143866448
Data Structures for Data-Intensive Applications: Tradeoffs and Design Guidelines
Data structures are the means by which software programs store and retrieve data. This monograph focuses on key-value data structures, which are widely used for data-intensive applications thanks to the versatility of the key-value data model. Key-value data structures constitute the core of any data-driven system. They provide the means to store, search, and modify data residing at various levels of the storage and memory hierarchy. Designing efficient data structures for given workloads has long been a focus of research and practice in both academia and industry.

Data Structures for Data-Intensive Applications explains the space of data structure design choices, how to select the appropriate data structure depending on the goals and workload of an application at hand, and how the ever-evolving hardware and data properties require innovations in data structure design. The overarching goal is to help the reader both select the best existing data structures and design and build new ones.
99.0 In Stock
Data Structures for Data-Intensive Applications: Tradeoffs and Design Guidelines

Data Structures for Data-Intensive Applications: Tradeoffs and Design Guidelines

Data Structures for Data-Intensive Applications: Tradeoffs and Design Guidelines

Data Structures for Data-Intensive Applications: Tradeoffs and Design Guidelines

Paperback

$99.00 
  • SHIP THIS ITEM
    In stock. Ships in 1-2 days.
  • PICK UP IN STORE

    Your local store may have stock of this item.

Related collections and offers


Overview

Data structures are the means by which software programs store and retrieve data. This monograph focuses on key-value data structures, which are widely used for data-intensive applications thanks to the versatility of the key-value data model. Key-value data structures constitute the core of any data-driven system. They provide the means to store, search, and modify data residing at various levels of the storage and memory hierarchy. Designing efficient data structures for given workloads has long been a focus of research and practice in both academia and industry.

Data Structures for Data-Intensive Applications explains the space of data structure design choices, how to select the appropriate data structure depending on the goals and workload of an application at hand, and how the ever-evolving hardware and data properties require innovations in data structure design. The overarching goal is to help the reader both select the best existing data structures and design and build new ones.

Product Details

ISBN-13: 9781638281849
Publisher: Now Publishers
Publication date: 07/31/2023
Series: Foundations and Trends in Databases , #36
Pages: 182
Product dimensions: 6.12(w) x 9.25(h) x 0.39(d)

Table of Contents

1. Introduction
2. Performance Metrics and Operational Tradeoffs
3. Dimensions of the Data Structure Design Space
4. From Workloads to Data Structures
5. Adaptivity: Evolving Data Structures to a Workload
6. Data Structures for Specific Application Domains
7. Challenging Design Considerations
8. Summary
Acknowledgments
References
From the B&N Reads Blog

Customer Reviews