Development [Packtpub] Master Big Data Ingestion And Analytics With Flume, Sqoop, Hive And Spark

tttx

Помощник Администратора
Команда форума
Регистрация
27 Авг 2018
Сообщения
37,366
Реакции
526,748
62c09b57b7.jpg

DESCRIPTION:

Complete course on Sqoop, Flume, and Hive: Great for CCA175 and Hortonworks Spark Certification preparation


Learn
  • Explore the Hadoop Distributed File System (HDFS) and commands
  • Get to grips with the lifecycle of the Sqoop command
  • Use the Sqoop Import command to migrate data from MySQL to HDFS and Hive
  • Understand split-by and boundary queries
  • Use the incremental mode to migrate data from MySQL to HDFS
  • Employ Sqoop Export to migrate data from HDFS to MySQL
  • Discover Spark DataFrames and gain insights into working with different file formats and compression
AboutIn this course, you will start by learning about the Hadoop Distributed File System (HDFS) and the most common Hadoop commands required to work with HDFS. Next, you’ll be introduced to Sqoop Import, which will help you gain insights into the lifecycle of the Sqoop command and how to use the import command to migrate data from MySQL to HDFS, and from MySQL to Hive.

In addition to this, you will get up to speed with Sqoop Export for migrating data effectively, along with using Apache Flume to ingest data. As you progress, you will delve into Apache Hive, external and managed tables, working with different files, and Parquet and Avro. Toward the concluding section, you will focus on Spark DataFrames and Spark SQL.

By the end of this course, you will have gained comprehensive insights into big data ingestion and analytics with Flume, Sqoop, Hive, and Spark.

All code and supporting files are available at – PacktPublishing/Master-Big-Data-Ingestion-and-Analytics-with-Flume-Sqoop-Hive-and-Spark
Features
  • Learn Sqoop, Flume, and Hive and successfully achieve CCA175 and Hortonworks Spark Certification
  • Understand the Hadoop Distributed File System (HDFS), along with exploring Hadoop commands to work effectively with HDFS

SALES PAGE:
DOWNLOAD:
 

Обратите внимание

Назад
Сверху