
Programming Big Data Applications: Scalable Tools and Frameworks for Your Needs
by: Domenico Talia (Author),Paolo Trunfio(Author),Fabrizio Marozzo(Author),Loris Belcastro(Author),Riccardo Cantini(Author),Alessio Orsino(Author)
Publisher: World Scientific Publishing Europe Ltd
Publication Date: 2024/5/29
Language: English
Print Length: 275 pages
ISBN-10: 1800615043
ISBN-13: 9781800615045
Book Description
In the age of the Internet of Things and social media platforms, huge amounts of digital data are generated by and collected from many sources, including sensors, mobile devices, wearable trackers and security cameras. These data, commonly referred to as big data, are challenging current storage, processing and analysis capabilities. New models, languages, systems and algorithms continue to be developed to effectively collect, store, analyze and learn from big data.Programming Big Data Applications introduces and discusses models, programming frameworks and algorithms to process and analyze large amounts of data. In particular, the book provides an in-depth description of the properties and mechanisms of the main programming paradigms for big data analysis, including MapReduce, workflow, BSP, message passing, and SQL-like. Through programming examples it also describes the most used frameworks for big data analysis like Hadoop, Spark, MPI, Hive and Storm. Each of the different systems is discussed and compared, highlighting their main features, their diffusion (both within their community of developers and among users), and their main advantages and disadvantages in implementing big data analysis applications.
About the Author
In the age of the Internet of Things and social media platforms, huge amounts of digital data are generated by and collected from many sources, including sensors, mobile devices, wearable trackers and security cameras. These data, commonly referred to as big data, are challenging current storage, processing and analysis capabilities. New models, languages, systems and algorithms continue to be developed to effectively collect, store, analyze and learn from big data.Programming Big Data Applications introduces and discusses models, programming frameworks and algorithms to process and analyze large amounts of data. In particular, the book provides an in-depth description of the properties and mechanisms of the main programming paradigms for big data analysis, including MapReduce, workflow, BSP, message passing, and SQL-like. Through programming examples it also describes the most used frameworks for big data analysis like Hadoop, Spark, MPI, Hive and Storm. Each of the different systems is discussed and compared, highlighting their main features, their diffusion (both within their community of developers and among users), and their main advantages and disadvantages in implementing big data analysis applications. Read more
Programming Big Data Applications: Scalable Tools and Frameworks for Your Needs
相关推荐
Red Team Engineering: The Art of Building Offensive Tools and Infrastructure
Mastering Time Series Analysis and Forecasting with Python: Bridging Theory and Practice Through Insights, Techniques, and Tools for Effective Time Series Analysis in Python
The Oxford Handbook of European Romanticism
Context Engineering for Verified Output: Master Getting Verified Consistent Output Through Example Stories
Vectorization: A Practical Guide to Efficient Implementations of Machine Learning Algorithms
High Performance Polymers
The Comprehensive DevOps Interview Guide: Mastering DevOps systems for your successful interview
Speaking in the Medieval World
电子书百科大全
评论前必须登录!
立即登录 注册