Lavoisier S.A.S.
14 rue de Provigny
94236 Cachan cedex
FRANCE

Heures d'ouverture 08h30-12h30/13h30-17h30
Tél.: +33 (0)1 47 40 67 00
Fax: +33 (0)1 47 40 67 02


Url canonique : www.lavoisier.fr/livre/informatique/big-data-management-and-processing/descriptif_3930908
Url courte ou permalien : www.lavoisier.fr/livre/notice.asp?ouvrage=3930908

Big Data Management and Processing Chapman & Hall/CRC Big Data Series

Langue : Anglais

Coordonnateurs : Li Kuan-Ching, Jiang Hai, Zomaya Albert Y.

Couverture de l’ouvrage Big Data Management and Processing

From the Foreword:

"Big Data Management and Processing is [a] state-of-the-art book that deals with a wide range of topical themes in the field of Big Data. The book, which probes many issues related to this exciting and rapidly growing field, covers processing, management, analytics, and applications... [It] is a very valuable addition to the literature. It will serve as a source of up-to-date research in this continuously developing area. The book also provides an opportunity for researchers to explore the use of advanced computing technologies and their impact on enhancing our capabilities to conduct more sophisticated studies."

---Sartaj Sahni, University of Florida, USA

"Big Data Management and Processing covers the latest Big Data research results in processing, analytics, management and applications. Both fundamental insights and representative applications are provided. This book is a timely and valuable resource for students, researchers and seasoned practitioners in Big Data fields.

--Hai Jin, Huazhong University of Science and Technology, China

Big Data Management and Processing explores a range of big data related issues and their impact on the design of new computing systems. The twenty-one chapters were carefully selected and feature contributions from several outstanding researchers. The book endeavors to strike a balance between theoretical and practical coverage of innovative problem solving techniques for a range of platforms. It serves as a repository of paradigms, technologies, and applications that target different facets of big data computing systems.

The first part of the book explores energy and resource management issues, as well as legal compliance and quality management for Big Data. It covers In-Memory computing and In-Memory data grids, as well as co-scheduling for high performance computing applications. The second part of the book includes comprehensive coverage of Hadoop and Spark, along with security, privacy, and trust challenges and solutions.

The latter part of the book covers mining and clustering in Big Data, and includes applications in genomics, hospital big data processing, and vehicular cloud computing. The book also analyzes funding for Big Data projects.

Big Data Management. Big Data Design, implementation, evaluation and services. Big Data as integration of technologies. Big Data analytics and visualization. Query processing and indexing. Elasticity for data management systems. Self-adaptive and energy-efficient mechanisms. Performance evaluation. Security, privacy, trust, data ownership and risk simulations. Processing. Techniques, algorithms and innovative methods of processing. Business and economic models. Adoption cases, frameworks and user evaluations. Data-intensive and scalable computing on hybrid infrastructures. MapReduce based computations. Many-Task Computing in the Cloud. Streaming and real-time processing. Big Data systems and applications for multidisciplinary applications.

Kuan-Ching Li, Hai Jiang, Albert Y. Zomaya

Date de parution :

17.8x25.4 cm

Disponible chez l'éditeur (délai d'approvisionnement : 14 jours).

56,31 €

Ajouter au panier

Date de parution :

17.8x25.4 cm

Disponible chez l'éditeur (délai d'approvisionnement : 15 jours).

160,25 €

Ajouter au panier

Mots-clés :

Big Data; Execution Time; data analytics; Apache Hadoop; business analytics; Data Sets; large-scale data; MapReduce Job; visualization; Power Consumption; data processing; Apache Spark; data mining; Big Data Processing; Paolo Balboni; Big Data Management; Theodora Dragan; MapReduce; Chonglin Gu; DFS; Hejiao Huang; Distributed File System; Xiaohua Jia; Big Data Analytics; Mihaela-Andreea Vasile; Reduce Task; Florin Pop; Hadoop Cluster; Junwhan Kim; Frequent Itemsets; Roberto Palmieri; BP Neural Network; Binoy Ravindran; RF Algorithm; Guillaume Aupy; Big Data Stream; Anne Benoit; CP Model; Loic Pottier; Frequent Itemset Mining; Padma Raghavan; VM Migration; Yves Robert; Big Data Projects; Manu Shantharam; Graph Computing Systems; Norman Lim; VC; Shikharesh Majumdar; Pilar Gonzz-Férez; Angelos Bilas; Boyang Li; Chen Liu; Alfredo Cuzzocrea; Rim Moussa; Soror Sahri; Xiongpai Qin; Keqin Li; Yuhong Liu; Yu Wang; Nam Ling; Miyuru Dayarathna; Paul Fremantle; Srinath Perera; Sriskandarajah Suhothayan; Deepak Puthal; Surya Nepal; Rajiv Ranjan; Jinjun Chen; Vito Giovanni Castellana; Antonino Tumeo; Marco Minutoli; Marco Lattuada; Fabrizio Ferrandi; Carson Kai-Sang Leung; Fan Jiang; Richard Kyle MacKinnon; Min Chen; Simone A; Ludwig; Chengwen Wu; Guangyan Zhang; Weimin Zheng; Huaming Chen; Jiangning Song; Jun Shen; Lei Wang; Antonio Juarez Alencar; Mauro Penha Bastos; Eber Assis Schmitz; Monica Ferreira da Silva; Petros Sotirios Stefaneas; Jianguo Chen; Zhuo Tang; Kenli Li; Ryan Florin; Syedmeysam Abolghasemi; Aida Ghazi Zadeh; Stephan Olariu