Oracle Big Data Fundamentals Ed 1

Similar documents
Oracle Big Data Fundamentals Ed 2

Oracle Big Data Fundamentals

Oracle Big Data. A NA LYT ICS A ND MA NAG E MENT.

1Z Oracle Big Data 2017 Implementation Essentials Exam Summary Syllabus Questions

Oracle Big Data Fundamentals

Big Data Hadoop Developer Course Content. Big Data Hadoop Developer - The Complete Course Course Duration: 45 Hours

Big Data Analytics using Apache Hadoop and Spark with Scala

Securing the Oracle BDA - 1

Oracle BDA: Working With Mammoth - 1

Introduction to the Oracle Big Data Appliance - 1

Question: 1 You need to place the results of a PigLatin script into an HDFS output directory. What is the correct syntax in Apache Pig?

Oracle Big Data Appliance

Oracle Big Data Appliance

CERTIFICATE IN SOFTWARE DEVELOPMENT LIFE CYCLE IN BIG DATA AND BUSINESS INTELLIGENCE (SDLC-BD & BI)

Certified Big Data and Hadoop Course Curriculum

Big Data Architect.

Big Data Hadoop Stack

We are ready to serve Latest Testing Trends, Are you ready to learn?? New Batches Info

Overview. : Cloudera Data Analyst Training. Course Outline :: Cloudera Data Analyst Training::

Oracle Big Data Appliance

Certified Big Data Hadoop and Spark Scala Course Curriculum

Innovatus Technologies

Oracle 1Z Oracle Big Data 2017 Implementation Essentials.

Blended Learning Outline: Cloudera Data Analyst Training (171219a)

Quick Deployment Step-by-step instructions to deploy Oracle Big Data Lite Virtual Machine

Blended Learning Outline: Developer Training for Apache Spark and Hadoop (180404a)

Hadoop 2.x Core: YARN, Tez, and Spark. Hortonworks Inc All Rights Reserved

Quick Deployment Step- by- step instructions to deploy Oracle Big Data Lite Virtual Machine

Overview. Prerequisites. Course Outline. Course Outline :: Apache Spark Development::

Hadoop. Course Duration: 25 days (60 hours duration). Bigdata Fundamentals. Day1: (2hours)

The Hadoop Ecosystem. EECS 4415 Big Data Systems. Tilemachos Pechlivanoglou

Introduction to the Hadoop Ecosystem - 1

Introduction to BigData, Hadoop:-

Oracle. Oracle Big Data 2017 Implementation Essentials. 1z Version: Demo. [ Total Questions: 10] Web:

Exam Questions 1z0-449

Big Data Hadoop Course Content

Oracle Big Data Appliance

Big Data Syllabus. Understanding big data and Hadoop. Limitations and Solutions of existing Data Analytics Architecture

Spatial Analytics Built for Big Data Platforms

Hadoop. Introduction / Overview

Configuring and Deploying Hadoop Cluster Deployment Templates

Oracle Data Integrator 12c: Integration and Administration

1z0-449.exam. Number: 1z0-449 Passing Score: 800 Time Limit: 120 min File Version: Oracle. 1z0-449

Oracle Data Integrator 12c: Integration and Administration

Big Data with Hadoop Ecosystem

Hadoop Development Introduction

Oracle Big Data Science

Oracle Big Data Appliance X7-2

Hadoop & Big Data Analytics Complete Practical & Real-time Training

基于 Hadoop 和 RDBMS 的 Oracle 大数据分析 Corey Wei 技术顾问甲骨文公司. 版权所有 2014,Oracle 和 / 或其关联公司 保留所有权利

Delving Deep into Hadoop Course Contents Introduction to Hadoop and Architecture

Oracle Big Data Connectors

Hadoop An Overview. - Socrates CCDH

Oracle Public Cloud Machine

HADOOP COURSE CONTENT (HADOOP-1.X, 2.X & 3.X) (Development, Administration & REAL TIME Projects Implementation)

Security and Performance advances with Oracle Big Data SQL

Oracle Cloud Using Oracle Big Data Cloud Service. Release

MapR Enterprise Hadoop

Oracle Big Data SQL. Release 3.2. Rich SQL Processing on All Data

Oracle Big Data Connectors

Integrating Big Data with Oracle Data Integrator 12c ( )

Hadoop Overview. Lars George Director EMEA Services

Using Oracle NoSQL Database Workshop Ed 1

Hadoop. Introduction to BIGDATA and HADOOP

Gain Insights From Unstructured Data Using Pivotal HD. Copyright 2013 EMC Corporation. All rights reserved.

Techno Expert Solutions An institute for specialized studies!

Oracle Big Data Science IOUG Collaborate 16

How Apache Hadoop Complements Existing BI Systems. Dr. Amr Awadallah Founder, CTO Cloudera,

Big Data Analytics. Description:

Hadoop course content

Building an Integrated Big Data & Analytics Infrastructure September 25, 2012 Robert Stackowiak, Vice President Data Systems Architecture Oracle

Actual4Test. Actual4test - actual test exam dumps-pass for IT exams

Apache Spark is a fast and general-purpose engine for large-scale data processing Spark aims at achieving the following goals in the Big data context

Big Data Technologies and Geospatial Data Processing:

Hadoop-PR Hortonworks Certified Apache Hadoop 2.0 Developer (Pig and Hive Developer)

SQT03 Big Data and Hadoop with Azure HDInsight Andrew Brust. Senior Director, Technical Product Marketing and Evangelism

<Insert Picture Here> Introduction to Big Data Technology

Hortonworks PR PowerCenter Data Integration 9.x Administrator Specialist.

Part 1 Configuring Oracle Big Data SQL

Cloudera Introduction

Product Compatibility Matrix

Big Data Infrastructure The Oracle Way. Daniel Steiger

Big Data. Big Data Analyst. Big Data Engineer. Big Data Architect

Introducing Oracle R Enterprise 1.4 -

IT Certification Exams Provider! Weofferfreeupdateserviceforoneyear! h ps://

BIG DATA ANALYTICS USING HADOOP TOOLS APACHE HIVE VS APACHE PIG

Big Data and Hadoop. Course Curriculum: Your 10 Module Learning Plan. About Edureka

Hortonworks Data Platform

WANdisco Fusion on Oracle Big Data Cloud Service O R A C L E W H I T E P A P E R J U L Y

User's Guide Release 4 (4.1)

Microsoft Big Data and Hadoop

Copyright 2012, Oracle and/or its affiliates. All rights reserved.

CSE 444: Database Internals. Lecture 23 Spark

DATA SCIENCE USING SPARK: AN INTRODUCTION

This is a brief tutorial that explains how to make use of Sqoop in Hadoop ecosystem.

MODERN BIG DATA DESIGN PATTERNS CASE DRIVEN DESINGS

April Copyright 2013 Cloudera Inc. All rights reserved.

Technical White Paper

User's Guide Release 4 (4.0)

Big Data com Hadoop. VIII Sessão - SQL Bahia. Impala, Hive e Spark. Diógenes Pires 03/03/2018

Transcription:

Oracle University Contact Us: +0097143909050 Oracle Big Data Fundamentals Ed 1 Duration: 5 Days What you will learn In the Oracle Big Data Fundamentals course, learn to use Oracle's Integrated Big Data Solution to acquire, process, integrate and analyze big data. Learn To: Define Big Data. Describe Oracle's Integrated Big Data Solution and its components. Define the Hadoop Ecosystem and Cloudera's Distribution Including Apache Hadoop (CDH). Use the Hadoop Distributed File System (HDFS)to store, distribute, and replicate data across the nodes in the Hadoop cluster. Acquire big data using the HDFS Command Line Interface, Flume, and Oracle NoSQL Database. Use MapReduce and YARN for distributed processing of the data stored in the Hadoop cluster. Process big data using MapReduce, YARN, Hive, Pig, Oracle XQuery for Hadoop, Solr, and Spark. Integrate big data and warehouse data using Scoop, Oracle Big Data Connectors, Copy to BDA, Oracle Big Data SQL, Oracle Data Integrator, and Oracle GoldenGate. Analyze big data using Oracle Big Data SQL, Oracle Advanced Analytics technologies, and Oracle Big Data Discovery. Use and manage Oracle Big Data Appliance. Secure your data. Benefits To You Increase your Big Data technology portfolio by learning to use a wide range of big data acquisition, processing, integration, and analysis techniques. In addition, you learn about Oracle s engineered systems for Big Data, which provide a variety of data integration and analysis capabilities. Analysis options include Oracle Big Data SQL, Oracle Data Mining, Oracle R Enterprise, and Oracle Big Data Discovery. Benefit from a hands-on, case-study approach while learning about Oracle s Integrated Big Data Solution. Audience Application Developers Database Administrators Hadoop Programmer Hadoop/BigData Cluster Administrator Related Training Required Prerequisites Copyright 2013, Oracle. All rights reserved. Page 1

Basic knowledge of Hadoop Database Basics (optional) Exposure to Big Data Course Objectives Use Oracle XQuery for Hadoop Examine MapReduce programs and balance MapReduce jobs Use the Oracle BigDataLite Virtual Machine Review Oracle s Big Data Management Architecture and Engineered Systems Define Big Data Identify Big Data Use Cases Define the Hadoop ecosystem and its components Examine MapReduce programs and balance MapReduce jobs Use Oracle NoSQL Database Install, use, and administer the Oracle Big Data Appliance Provide data security and enable resource management Course Topics Introduction Questions About You Course Objectives Course Road Map Practice Environment Connecting to the Course Environment (Oracle Big Data Lite Virtual Machine) Using VNC Starting the Oracle Big Data Lite Virtual Version Machine 4.01 Introducing the Movieplex Big Data and the Oracle Information Management System Big Data Opportunities and Challenges Oracle Information Management Architecture Optimizing/Simplifying Architecture with Engineered Systems Using Oracle Big Data Lite Virtual Machine Overview of the Big Data product stack Copyright 2013, Oracle. All rights reserved. Page 2

Access methods Review the Oracle Big Data Virtual Machine Home page Deep dive into the Oracle case study Identify the data structures used Understand the importance of filtering the data Identify the Hadoop Command Guide URL, and review the fs and version commands that are used in the practice Introduction to the Big Data Ecosystem Computer Clusters Distributed Computing The Hadoop Ecosystem Hadoop Core Components Choosing a Hadoop Distribution and Version Types of Analysis That Use Hadoop Cloudera s Distribution Including Apache Hadoop (CDH) Architecture Introduction to the Hadoop Distributed File System (HDFS) Hadoop Distributed Filesystem (HDFS) Acquire Data using CLI, Fuse-DFS, and Flume Introducing the CLI Examining Fuse DFS Using Flume Using and Administering Oracle NoSQL Database Define Oracle NoSQL Database List Benefits Load data into the DB Access NoSQL Data Plan an Oracle NoSQL Database installation and Node configuration Configure and Deploy a KVStore Using the GUI Interface (monitoring the KVStore) Use the NoSQL Database Table Model (both CLI and Java API) Introduction to MapReduce MapReduce Interacting with MapReduce MapReduce Daemons (Services) update based on YARN Interacting With MapReduce Fault Tolerance MapReduce Examples Using YARN to Manage Resources YARN Overview YARN: Theme 1 YARN: Theme 2 Job Submission in YARN YARN Features MapReduce 2.0: Overview Copyright 2013, Oracle. All rights reserved. Page 3

YARN Services Overview of Apache Hive and Apache Pig Apache Hive Apache Pig Overview of Cloudera Impala, Solr, and Apache Spark Examining Cloudera Impala Integrating Hadoop and Oracle What is Apache Solr (Cloudera Serach)? Cloudera Search: Key Capabilities, Features, Tasks, Indexes, and Collections Introduction to Spark Resilient Distributed Datasets (RDD) and Directed Acyclic Graph (DAG) Execution Engine Overview of Scala Language Using Oracle XQuery for Hadoop Extensible Markup Language (XML) XML Elements and Attributes XML Path (XPath) Language: Node Types and Family Relationships FLWOR Expressions Oracle XQuery for Hadoop (OXH) Features and Data Flow OXH Adapters and Configuration Properties XQuery Transformation and Basic Filtering Viewing the Completed OXH Job in YARN Options for Integrating Your Big Data Apache Sqoop Oracle Loader for Hadoop (OLH) Copy To BDA Oracle SQL Connector for HDFS (OSCH) Oracle Data Integrator (ODI) and Oracle GoldenGate (OGG) Using Oracle Big Data SQL Context: Exadata and Big Data Appliance What is Big Data SQL? Configuring Oracle Big Data SQL Create Oracle Tables over HDFS data Leverage the Hive Metastore to Access Data in Hadoop Apply Oracle Database Security Policies Over Data in Hadoop Combine HDFS and Oracle data for analysis (SQL Pattern Matching) Using Oracle Advanced Analytics Oracle Data Mining (ODM) Oracle R Enterprise (ORE) Oracle R Advanced Analytics for Hadoop (ORAAH) Introducing Oracle Big Data Discovery Discover Complex Data Using Oracle Big Data Discovery Oracle R Enterprise (ORE) Performing Complex Event Processing Decision Making Guidelines Recommendations Copyright 2013, Oracle. All rights reserved. Page 4

Using the Oracle Big Data Appliance (BDA) - Identify the Hardware and Software Components of Oracle Big Data Appliance The Available Oracle BDA Configurations Using the Mammoth Utility Using Oracle BDA Configuration Generation Utility BDA Configurations: Full Rack, Starter Rack, and In-Rack Expansion Critical and Noncritical Nodes in an Oracle BDA CDH Cluster Oracle Integrated Lights Out Manager (ILOM) Managing the Oracle Big Data Appliance Mammoth Installation Types and Steps Monitoring the Oracle BDA Oracle BDA Command-Line Interface Monitor BDA with Oracle Enterprise Manager (OEM) Hadoop Cluster Monitoring Using Cloudera Manager Using Cloudera Hue to interact with CDH Starting and Stopping Oracle BDA Balancing MapReduce Jobs Define the Perfect Balance Feature of Oracle BDA Use Perfect Balance to Balance MapReduce Jobs Run Job Analyzer as a Stand-alone Utility or With Perfect Balance Identify, Locate, and Read the Generated Reports Collect additional Metrics with Job Analyzer Configure Perfect Balance Use chopping (partitioning of values) Troubleshoot Jobs Running with Perfect Balance and Use the Perfect Balance Examples Securing Your Data on the BDA Security Levels Authentication, Authorization, Auditing, and Encryption BDA Secure Installation: Kerberos, Sentry, Oracle Audit Vault, and Encryption Strong Authentication With Kerberos Cloudera Navigator Configure Perfect Balance Copyright 2013, Oracle. All rights reserved. Page 5