Librería Portfolio Librería Portfolio

Búsqueda avanzada

TIENE EN SU CESTA DE LA COMPRA

0 productos

en total 0,00 €

PRO SPARK STREAMING. THE ZEN OF REAL-TIME ANALYTICS USING APACHE SPARK
Título:
PRO SPARK STREAMING. THE ZEN OF REAL-TIME ANALYTICS USING APACHE SPARK
Subtítulo:
Autor:
NABI, Z
Editorial:
SPRINGER VERLAG
Año de edición:
2016
Materia
PROGRAMACION INTERNET
ISBN:
978-1-4842-1480-0
Páginas:
230
39,95 €

 

Sinopsis

Highlights the differences between traditional stream processing and the Spark Streaming micro-batch model
Targets real-world applications from multiple industry verticals
Provides an introduction to other popular Big Data solutions, such as Apache Kafka



Learn the right cutting-edge skills and knowledge to leverage Spark Streaming to implement a wide array of real-time, streaming applications. This book walks you through end-to-end real-time application development using real-world applications, data, and code. Taking an application-first approach, each chapter introduces use cases from a specific industry and uses publicly available datasets from that domain to unravel the intricacies of production-grade design and implementation. The domains covered in Pro Spark Streaming include social media, the sharing economy, finance, online advertising, telecommunication, and IoT.

In the last few years, Spark has become synonymous with big data processing. DStreams enhance the underlying Spark processing engine to support streaming analysis with a novel micro-batch processing model. Pro Spark Streaming by Zubair Nabi will enable you to become a specialist of latency sensitive applications by leveraging the key features of DStreams, micro-batch processing, and functional programming. To this end, the book includes ready-to-deploy examples and actual code. Pro Spark Streaming will act as the bible of Spark Streaming.
What You´ll Learn

Discover Spark Streaming application development and best practices
Work with the low-level details of discretized streams
Optimize production-grade deployments of Spark Streaming via configuration recipes and instrumentation using Graphite, collectd, and Nagios
Ingest data from disparate sources including MQTT, Flume, Kafka, Twitter, and a custom HTTP receiver
Integrate and couple with HBase, Cassandra, and Redis
Take advantage of design patterns for side-effects and maintaining state across the Spark Streaming micro-batch model
Implement real-time and scalable ETL using data frames, SparkSQL, Hive, and SparkR
Use streaming machine learning, predictive analytics, and recommendations
Mesh batch processing with stream processing via the Lambda architecture
Who This Book Is For
Data scientists, big data experts, BI analysts, and data architects.