LIBRISTO
LIBROAMANTO
задължително
Станете част от общност от любители на книгите от цял свят и получавате много предимства. Създай на безплатен акаунт
0
Безплатна доставка със Еконт над 69.99 €
Куриер Speedy 3.49 Пункт на Speedy 3.49 ЕКОНТ 3.99 Еконтомат/Офис на Еконт 3.99 Ekont Box 3.99 Sameday 3.99 Sameday box 3.99 Box Now 3.99

Над 4 милиона заглавия на английски и други езици! Открийте новата си история още днес! Безплатна доставка за поръчки над 69.99€

Bloom Filter

A Data Structure for Computer Networking, Big Data, Cloud Computing, Internet of Things, Bioinformatics and Beyond

Език Английски езикАнглийски език
Книга С меки корици
Книга Bloom Filter Ripon Patgiri
Код Либристо: 37086556
Издателство Elsevier Science Publishing Co Inc, октомври 2022
Bloom Filter is a probabilistic data structure for membership filter. Burton Howard Bloom introduced... Цялото описание
? points 476 b
196.84
384.98  лв
Външен склад Изпращаме след 10-18 дни

30 дни за връщане на стоката


Клиентите са закупили също


CRONICAS SOBRENATURALES. (Gabinete 1906). II - Stendhal. Juan Gonzalez Mesa / Книга С меки корици
common.buy 10.81 21.14 лв
Dusk maiden of Amnesia - Tome 7 Maybe / Книга С меки корици
common.buy 12.00 23.46 лв
corpo elettrico. Il desiderio nel femminismo che verrà Jennifer Guerra / Книга С меки корици
common.buy 26.58 52.00 лв

Bloom Filter is a probabilistic data structure for membership filter. Burton Howard Bloom introduced an approximate membership filtering data structure in 1970. Hence, it is called as Bloom Filter. Since its inception, Bloom Filter has been extensively experimented with and developed to enhance system performance such as web cache. Bloom Filter influences many research fields, including Bioinformatics, Internet of Things, computer security, network appliances, Big Data, and Cloud Computing. Bloom Filter has been propelled to the forefront of the hashing algorithm, and it has become even more important in recent years due to its dramatic improvement of query and memory performance. Bloom Filter utilizes a tiny amount of memory space to keep a record of huge sets of data, for example, in Network Packet Filtering. Bloom Filter: A Data Structure for Computer Networking, Big Data, Cloud Computing, Internet of Things, Bioinformatics, and Beyond focuses on both theory and practice of most emerging areas for Bloom Filter application, including Big Data, Cloud Computing, Internet of Things, and Bioinformatics. Part I provides indepth insight on Bloom Filter data structure and its variants. Part II focuses on the role of Bloom Filter in Computer Networking. Part III focuses on applications of Bloom Filter in various research domains, such as Big Data, Cloud Computing, and Bioinformatics. The applications of Bloom Filter are vast. Big Table uses Bloom Filter to eliminate unnecessary HDD accesses which in turn boosts the performance of the whole system. Similarly, storage deduplication, content-centric network, and data streaming also deploy Bloom Filter to minimize memory consumption. Bloom Filter is also applied in the P2P model to improve lookup performance. Bloom Filter is also used to remove redundant recommendation in recommender system. Moreover, the storage performance of the Metadata Server is boosted by deploying Bloom Filter. The conventional Metadata Server uses a hashing system or tree; however, using the Bloom Filter reduces memory consumption in terms of an order of magnitude. URL deduplication removes duplicate URLs using Bloom Filter. Furthermore, the Bloom Filter is prominently used in the implementation of cache memory, and there are many applications of Bloom Filter in Biometric and Biomedical Engineering applications. Other applications of Bloom Filter include error correction, Wireless Sensor Networks, Plagiarism checking, Web search, searchable encryption schemes, Internet of Things, databases and cloud data filtering. It is also applied in interdisciplinary computing applications such as DNA Sequencing. The reader will learn about the theory and structure of Bloom Filter, its various applications, as well as exploring some of the many variants of Bloom Filter that have been introduced, including CountBF, Cuckoo Filter, dlCBF, Quotient Filter, Scalable Bloom Filter, Sliding Bloom Filter, TinySet, Ternary Bloom Filter, Bloofi, Deletable Bloom Filter, and Dynamic Reordering Bloom Filter, BloomStore, Forest-Structured Bloom Filter, and BloomFlash. 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

Героиня & Полиглот
EWA KASP за
Пусни видеото
Ewa Kasp
В Libristo има най-богатия избор от чуждоезична литература. Затова купувам книгите си тук.

Информация за книгата

Пълно заглавие Bloom Filter
Език Английски език
Корици Книга - С меки корици
Дата на издаване 2022
Брой страници 232
Баркод 9780128235201
Код Либристо 37086556
Издателство Elsevier Science Publishing Co Inc
Тегло 616
Размери 191 x 235
Подарете тази книга днес
Лесно е
1 Добавете книгата в количката си и изберете Доставка като подарък 2 В замяна ще ви изпратим ваучер 3 Книгата ще пристигне на адреса на получателя

Може би ще Ви заинтересува


Bodies of Pain Scott E. Pincikowski / Книга С твърди корици
common.buy 133.36 260.83 лв
Zombies vs. Robots 2 Joe Cautilli / Книга С меки корици
common.buy 15.72 30.75 лв
Top
Memory Craft: Improve Your Memory with the Most Powerful Methods in History Lynne Kelly / Книга С меки корици
common.buy 20.22 39.55 лв
Tilly Breaks Through Wayne Hanson / Книга С твърди корици
common.buy 25.19 49.26 лв
THE NEWEST NINJA CREAM Layla F. Kennel / Книга С меки корици
common.buy 38.12 74.56 лв

Вход

Влезте в акаунта си. Още нямате акаунт за Libristo? Създайте го сега!

 
задължително
задължително

Нямате акаунт? Използвайте предимствата на акаунта за Libristo!

Благодарение на акаунта за Libristo държите всичко под контрол.

Създаване на акаунт за Libristo