Sign up
Forgot password?
FAQ: Login

Patgiri R., Nayak S., Muppalaneni N.B. Bloom Filter: A Data Structure for Computer Networking, Big Data, Cloud Computing, Internet of Things, Bioinformatics and Beyond

  • pdf file
  • size 7,64 MB
  • added by
Patgiri R., Nayak S., Muppalaneni N.B. Bloom Filter: A Data Structure for Computer Networking, Big Data, Cloud Computing, Internet of Things, Bioinformatics and Beyond
Academic Press, 2023. — 230 p.
The book focuses on both the theory and practice of the most emerging areas for Bloom filter application, including Big Data, Cloud Computing, the Internet of Things, and Bioinformatics. Sections provide in-depth insights on structure and variants, focus on its role in computer networking, and discuss applications in various research domains, such as Big Data, Cloud Computing, and Bioinformatics. The conventional Bloom filter is a probabilistic data structure for the membership filter. Burton Howard Bloom introduced an approximate membership filtering data structure in 1970. Hence, it is called a Bloom filter. Since its inception, it has been extensively experimented with and developed to enhance system performance such as web cache. Bloom filter influences many research fields, including Bioinformatics, the Internet of Things, computer security, network appliances, Big Data, and Cloud Computing. Includes Bloom filter methods for a wide variety of applications Includes concepts and implementation strategies that will help the reader to use the suggested methods Provides a look at issues and challenges faced by researchers.
  • Sign up or login using form at top of the page to download this file.
  • Sign up
Up