IBM BigInsights Foundation - SPVC

Type product
Logo van Global Knowledge BV: E-learnings & Subscriptions

Tip: meer info over het programma, prijs, en inschrijven? Download de brochure!

Beschrijving

Overview

This training course is for those who want a foundation of IBM BigInsights. This SPVC course consists of two separate modules.

The first module is IBM BigInsights Overview and it will give you an overview of IBM's big data strategy as well as a why it is important to understand and use big data. It will cover IBM BigInsights as a platform for managing and gaining insights from your big data. As such, you will see how the BigInsights have aligned their offerings to better suit your needs with the IBM Open Platform (IOP) along with the three specialized modules with value-add that sits on top of the IOP. Along with that, you will get an introduction to the BigInsights value-add includ…

Lees de volledige beschrijving

Veelgestelde vragen

Er zijn nog geen veelgestelde vragen over dit product. Als je een vraag hebt, neem dan contact op met onze klantenservice.

Nog niet gevonden wat je zocht? Bekijk deze onderwerpen: IBM (overzicht), IBM Lotus Notes, IBM Lotus Domino, IBM WebSphere en IBM Cognos.

Overview

This training course is for those who want a foundation of IBM BigInsights. This SPVC course consists of two separate modules.

The first module is IBM BigInsights Overview and it will give you an overview of IBM's big data strategy as well as a why it is important to understand and use big data. It will cover IBM BigInsights as a platform for managing and gaining insights from your big data. As such, you will see how the BigInsights have aligned their offerings to better suit your needs with the IBM Open Platform (IOP) along with the three specialized modules with value-add that sits on top of the IOP. Along with that, you will get an introduction to the BigInsights value-add including Big SQL, BigSheets, and Big R.

The second module is IBM Open Platform with Apache Hadoop. IBM Open Platform (IOP) with Apache Hadoop is the first premiere collaborative platform to enable Big Data solutions to be developed on the common set of Apache Hadoop technologies. The Open Data Platform initiative (ODP) is a shared industry effort focused on promoting and advancing the state of Apache Hadoop and Big Data technologies for the enterprise. The current ecosystem is challenged and slowed by fragmented and duplicated efforts between different groups. The ODP Core will take the guesswork out of the process and accelerate many use cases by running on a common platform. It allows enterprises to focus on building business driven applications.

This module provides an in-depth introduction to the main components of the ODP core --namely Apache Hadoop (inclusive of HDFS, YARN, and MapReduce) and Apache Ambari -- as well as providing a treatment of the main open-source components that are generally made available with the ODP core in a production Hadoop cluster.

IBM BigInsights v4 itself is built upon the ODP core and these other main open-source components.The relationships between the IBM Open Platform with Apache Hadoop and the BigInsights add-ons is covered briefly in Unit 1 - pro.

If you are enrolling in a Self Paced Virtual Classroom or Web Based training course, before you enroll, please review the Self-Paced Virtual Classes and Web-Based training Classes on our Terms and Conditions page, as well as the system requirements, to ensure that your system meets the minimum requirements for this course.

http://www.ibm.com/training/terms

Objectives

IBM BigInsights Overview

DW6A1

  • Understand the purpose of big data and know why it is important
  • List the sources of data (data-at-rest vs data-in-motion)
  • Describe the IBM BigInsights offering
  • Utilize the various IBM BigInsights tools including Big SQL, BigSheets, Big R, Jaql and AQL for your big data needs

IBM Open Platform (IOP) with Apache Hadoop

DW6B1

  • List and describe the major components of the open-source Apache Hadoop stack and the approach taken by the Open Data Foundation.
  • Manage and monitor Hadoop clusters with Apache Ambari and related components
  • Explore the Hadoop Distributed File System (HDFS) by running Hadoop commands.
  • Understand the differences between Hadoop 1 (with MapReduce 1) and Hadoop 2 (with YARN and MapReduce 2).
  • Create and run basic MapReduce jobs using command line.
  • Explain how Spark integrates int the Hadoop ecosystem.
  • Execute iterative algorithms using Spark's RDD.
  • Explain the role of coordination, management, and governance in the Hadoop ecosystem using Apache Zookeeper, Apache Slider, and Apache Knox.
  • Explore common methods for performing data movement
  • Configure Flume for data loading of log files
  • Move data int the HDFS from relational databases using Sqoop
  • Understand when t use various data storage formats (flat files, CSV/delimited, Avro/Sequence files, Parquet, etc.).
  • Review the differences between the available open-source programming languages typically used with Hadoop (Pig, Hive) and for Data Science (Python, R)
  • Query data from Hive
  • Perform random access on data stored in HBase
  • Explore advanced concepts, including Oozie and Solr


Content

(DW6A1)

  • Unit 1: Introduction to Big Data
  • Exercise 1: Setting up the lab environment
  • Unit 2: Introduction to IBM BigInsights
  • Exercise 2: Getting started with IBM BigInsights
  • Unit 3: IBM BigInsights for Analysts
  • Exercise 3: working with Big SQL and BigSheets
  • Unit 4: IBM BigInsights for Data Scientist
  • Exercise 4: Analyzing data with Big R, Jaql, and AQL
  • Unit 5: IBM BigInsights for Enterprise Management

(DW6B1)

  • Unit 1: IBM Open Platform with Apache Hadoop
  • Exercise 1: Exploring the HDFS
  • Unit 2: Apache Ambari
  • Exercise 2: Managing Hadoop clusters with Apache Ambari
  • Unit 3: Hadoop Distributed File System
  • Exercise 3:  File access & basic commands with HDFS
  • Unit 4: MapReduce and Yarn
  • Topic 1:  Introduction to MapReduce based on MR1
  • Topic 2:  Limitations of MR1
  • Topic 3:  YARN and MR2
  • Exercise 4: Creating and coding a simple MapReduce job (Possibly a more complex second Exercise)
  • Unit 5: Apache Spark
  • Exercise 5: working with Spark's RDD to a Spark job
  • Unit 6: Coordination, management, and governance
  • Exercise 6: Apache ZooKeeper, Apache Slider, Apache Knox
  • Unit 7: Data Movement
  • Exercise 7: Moving data into Hadoop with Flume and Sqoop
  • Unit 8: Storing and Accessing Data
  • Topic 1:  Representing Data:  CSV, XML, JSON, and YAML
  • Topic 2:  Open Source Programming Languages: Pig, Hive, and Other [R, Python, etc]
  • Topic 3:  NoSQL Concepts
  • Topic 4:  Accessing Hadoop data using Hive
  • Exercise 8: Performing CRUD operations using the HBase shell
  • Topic 5:  Querying Hadoop data using Hive
  • Exercise 9:  Using Hive to Access Hadoop / HBase Data
  • Unit 9: Advanced Topics
  • Topic 1: Controlling job workflows with Oozie
  • Topic 2: Search using Apache Solr
  • No lab exercises


PreRequisites

There are no pre-requisites for this course but knowledge of Linux would be beneficial.

 

Blijf op de hoogte van nieuwe ervaringen

Er zijn nog geen ervaringen.

Deel je ervaring

Heb je ervaring met deze cursus? Deel je ervaring en help anderen kiezen. Als dank voor de moeite doneert Springest € 1,- aan Stichting Edukans.

Er zijn nog geen veelgestelde vragen over dit product. Als je een vraag hebt, neem dan contact op met onze klantenservice.

Download gratis en vrijblijvend de informatiebrochure

Aanhef
(optioneel)
(optioneel)
(optioneel)
(optioneel)
(optioneel)

Heb je nog vragen?

(optioneel)
We slaan je gegevens op om je via e-mail en evt. telefoon verder te helpen.
Meer info vind je in ons privacybeleid.