Systems Simulation and Modelling for Cloud Computing and Big Data Applications provides readers with the most current approaches to solving problems through the use of models and simulations, presenting SSM based approaches to performance testing and benchmarking that offer significant advantages. For example, multiple big data and cloud application developers and researchers can perform tests in a controllable and repeatable manner. Inspired by the need to analyze the performance of different big data processing and cloud frameworks, researchers have introduced several benchmarks, including Big Data Bench, Big Bench, Hi Bench, Pig Mix, Cloud Suite and Grid Mix, which are all covered in this book. Despite the substantial progress, the research community still needs a holistic, comprehensive big data SSM to use in almost every scientific and engineering discipline involving multidisciplinary research. SSM develops frameworks that are applicable across disciplines to develop benchmarking tools that are useful in solutions development. – Examines the methodology and requirements of benchmarking big data and cloud computing tools, advances in big data frameworks and benchmarks for large-scale data analytics, and frameworks for benchmarking and predictive analytics in big data deployment- Discusses applications using big data benchmarks, such as Big Data Bench, Big Bench, Hi Bench, Map Reduce, HPCC, ECL, HOBBIT, Grid Mix and Pig Mix, and applications using big data frameworks, such as Hadoop, Spark, Samza, Flink and SQL frameworks- Covers development of big data benchmarks to evaluate workloads in state-of-the-practice heterogeneous hardware platforms, advances in modeling and simulation tools for performance evaluation, security problems and scalable cloud computing environments
Steven L. Fernandes & Dinesh Peter
Systems Simulation and Modeling for Cloud Computing and Big Data Applications [EPUB ebook]
Systems Simulation and Modeling for Cloud Computing and Big Data Applications [EPUB ebook]
购买此电子书可免费获赠一本!
语言 英语 ● 格式 EPUB ● ISBN 9780128197806 ● 编辑 Steven L. Fernandes & Dinesh Peter ● 出版者 Elsevier Science ● 发布时间 2020 ● 下载 3 时 ● 货币 EUR ● ID 7163427 ● 复制保护 Adobe DRM
需要具备DRM功能的电子书阅读器