Created by Loony Corn | Video: 1280x720 | Audio: AAC 48KHz 2ch | Duration: 02:16 H/M | Lec: 17 | 566 MB | Language: English | Sub: English [Auto-generated]
Import data to HDFS, HBase and Hive from a variety of sources , including Twitter and MySQL
What you'll learn
Use Flume to ingest data to HDFS and HBase
Use Sqoop to import data from MySQL to HDFS and Hive
Ingest data from a variety of sources including HTTP, Twitter and MySQL
Requirements
Knowledge of HDFS is a prerequisite for the course
HBase and Hive examples assume basic understanding of HBase and Hive shells
HDFS is required to run most of the examples, so you'll need to have a working installation of HDFS
Description
Taught by a team which includes 2 Stanford-educated, ex-Googlers. This team has decades of practical experience in working with Java and with billions of rows of data.
Use Flume and Sqoop to import data to HDFS, HBase and Hive from a variety of sources, including Twitter and MySQL
Let’s parse that.
Import data : Flume and Sqoop play a special role in the Hadoop ecosystem. They transport data from sources like local file systems, HTTP, MySQL and Twitter which hold/produce data to data stores like HDFS, HBase and Hive. Both tools come with built-in functionality and abstract away users from the complexity of transporting data between these systems.
Flume: Flume Agents can transport data produced by a streaming application to data stores like HDFS and HBase.
Sqoop: Use Sqoop to bulk import data from traditional RDBMS to Hadoop storage architectures like HDFS or Hive.
What's Covered:
Practical implementations for a variety of sources and data stores ..
Sources : Twitter, MySQL, Spooling Directory, HTTP
Sinks : HDFS, HBase, Hive
.. Flume features :
Flume Agents, Flume Events, Event bucketing, Channel selectors, Interceptors
.. Sqoop features :
Sqoop import from MySQL, Incremental imports using Sqoop Jobs
Who this course is for?
Yep! Engineers building an application with HDFS/HBase/Hive as the data store
Yep! Engineers who want to port data from legacy data stores to HDFS
发布日期: 2019-07-11