<?xml version="1.0" encoding="utf-8" ?>
<!DOCTYPE FL_Course SYSTEM "https://www.flane.de/dtd/fl_course095.dtd"><?xml-stylesheet type="text/xsl" href="https://portal.flane.ch/css/xml-course.xsl"?><course productid="3970" language="de" source="https://portal.flane.ch/swisscom/xml-course/emc-mr-1cp-dsbda" lastchanged="2026-02-23T15:46:42+01:00" parent="https://portal.flane.ch/swisscom/xml-courses"><title>Data Science and Big Data Analytics</title><productcode>MR-1CP-DSBDA</productcode><vendorcode>EM</vendorcode><vendorname>Dell EMC</vendorname><fullproductcode>EM-MR-1CP-DSBDA</fullproductcode><version>1.0</version><objective>&lt;p&gt;Upon successful completion of this course, participants should be able to:&lt;/p&gt;
&lt;ul&gt;
&lt;li&gt;Immediately participate and contribute as a Data Science Team Member on big data and other analytics projects by:
&lt;ul&gt;
&lt;li&gt;Deploying the Data Analytics Lifecycle to address big data analytics projects&lt;/li&gt;&lt;li&gt;Reframing a business challenge as an analytics challenge&lt;/li&gt;&lt;li&gt;Applying appropriate analytic techniques and tools to analyze big data, create statistical models, and identify insights that can lead to actionable results&lt;/li&gt;&lt;li&gt;Selecting appropriate data visualizations to clearly communicate analytic insights to business sponsors and analytic audiences&lt;/li&gt;&lt;li&gt;Using tools such as: R and RStudio, MapReduce/Hadoop, in-database analytics, Window and MADlib functions&lt;/li&gt;&lt;/ul&gt;&lt;/li&gt;&lt;li&gt;Explain how advanced analytics can be leveraged to create competitive advantage and how the data scientist role and skills differ from those of a traditional business intelligence analyst&lt;/li&gt;&lt;/ul&gt;</objective><essentials>&lt;p&gt;To complete this course successfully and gain the maximum benefits from it, a student should have the following knowledge and skillsets:
&lt;/p&gt;
&lt;ul&gt;
&lt;li&gt;A strong quantitative background with a solid understanding of basic statistics, as would be found in a statistics 101 level course.&lt;/li&gt;&lt;li&gt;Experience with a scripting language, such as Java, Perl, or Python (or R).  Many of the lab examples taught in the course use R (with an RStudio GUI), which is an open source statistical tool and programming language.&lt;/li&gt;&lt;li&gt;Experience with SQL (some course examples use PSQL).&lt;/li&gt;&lt;/ul&gt;&lt;p&gt;Consider the above as a list of specific prerequisite (or refresher) training and reading to be completed prior to enrolling for or attending this course. Having this requisite background will help ensure a positive experience in the class, and enable students to build on their expertise to learn many of the more advanced tools and analytical methods taught in the course.&lt;/p&gt;</essentials><audience>&lt;p&gt;This course is intended for individuals seeking to develop an understanding of Data Science from the perspective of a practicing Data Scientist, including:
&lt;/p&gt;
&lt;ul&gt;
&lt;li&gt;Managers of teams of business intelligence, analytics, and big data professionals&lt;/li&gt;&lt;li&gt;Current Business and Data Analysts looking to add big data analytics to their skills.&lt;/li&gt;&lt;li&gt;Data and database professionals looking to exploit their analytic skills in a big data environment&lt;/li&gt;&lt;li&gt;Recent college graduates and graduate students with academic experience in a related discipline looking to move into the world of Data Science and big data&lt;/li&gt;&lt;li&gt;Individuals seeking to take advantage of the EMC Proven&amp;trade; Professional Data Scientist Associate (EMCDSA) certification&lt;/li&gt;&lt;/ul&gt;</audience><contents>&lt;p&gt;The following modules and lessons included in this course are designed to support the course objectives: &lt;/p&gt;
&lt;h5&gt;Introduction and Course Agenda&lt;/h5&gt;&lt;h5&gt;Introduction to Big Data Analytics&lt;/h5&gt;&lt;ul&gt;
&lt;li&gt;Big Data Overview&lt;/li&gt;&lt;li&gt;State of the Practice in Analytics&lt;/li&gt;&lt;li&gt;The Data Scientist&lt;/li&gt;&lt;li&gt;Big Data Analytics in Industry Verticals&lt;/li&gt;&lt;/ul&gt;&lt;h5&gt;Data Analytics Lifecycle&lt;/h5&gt;&lt;ul&gt;
&lt;li&gt;Discovery&lt;/li&gt;&lt;li&gt;Data Preparation&lt;/li&gt;&lt;li&gt;Model Planning&lt;/li&gt;&lt;li&gt;Model Building&lt;/li&gt;&lt;li&gt;Communicating Results&lt;/li&gt;&lt;li&gt;Operationalizing&lt;/li&gt;&lt;/ul&gt;&lt;h5&gt;Review of Basic Data Analytic Methods Using R&lt;/h5&gt;&lt;ul&gt;
&lt;li&gt;Using R to Look at Data &amp;ndash; Introduction to R&lt;/li&gt;&lt;li&gt;Analyzing and Exploring the Data&lt;/li&gt;&lt;li&gt;Statistics for Model Building and Evaluation&lt;/li&gt;&lt;/ul&gt;&lt;h5&gt;Advanced Analytics &amp;ndash; Theory And Methods&lt;/h5&gt;&lt;ul&gt;
&lt;li&gt;K Means Clustering&lt;/li&gt;&lt;li&gt;Association Rules&lt;/li&gt;&lt;li&gt;Linear Regression&lt;/li&gt;&lt;li&gt;Logistic Regression&lt;/li&gt;&lt;li&gt;Na&amp;iuml;ve Bayesian Classifier&lt;/li&gt;&lt;li&gt;Decision Trees&lt;/li&gt;&lt;li&gt;Time Series Analysis&lt;/li&gt;&lt;li&gt;Text Analysis&lt;/li&gt;&lt;/ul&gt;&lt;h5&gt;Advanced Analytics - Technologies and Tools&lt;/h5&gt;&lt;ul&gt;
&lt;li&gt;Analytics for Unstructured Data - MapReduce and Hadoop&lt;/li&gt;&lt;li&gt;The Hadoop Ecosystem
&lt;ul&gt;
&lt;li&gt;In-database Analytics &amp;ndash; SQL Essentials&lt;/li&gt;&lt;li&gt;Advanced SQL and MADlib for In-database Analytics&lt;/li&gt;&lt;/ul&gt;&lt;/li&gt;&lt;/ul&gt;&lt;h5&gt;The Endgame, or Putting it All Together&lt;/h5&gt;&lt;ul&gt;
&lt;li&gt;Operationalizing an Analytics Project&lt;/li&gt;&lt;li&gt;Creating the Final Deliverables&lt;/li&gt;&lt;li&gt;Data Visualization Techniques&lt;/li&gt;&lt;li&gt;Final Lab Exercise on Big Data Analytics&lt;/li&gt;&lt;/ul&gt;</contents><objective_plain>Upon successful completion of this course, participants should be able to:


- Immediately participate and contribute as a Data Science Team Member on big data and other analytics projects by:

- Deploying the Data Analytics Lifecycle to address big data analytics projects
- Reframing a business challenge as an analytics challenge
- Applying appropriate analytic techniques and tools to analyze big data, create statistical models, and identify insights that can lead to actionable results
- Selecting appropriate data visualizations to clearly communicate analytic insights to business sponsors and analytic audiences
- Using tools such as: R and RStudio, MapReduce/Hadoop, in-database analytics, Window and MADlib functions
- Explain how advanced analytics can be leveraged to create competitive advantage and how the data scientist role and skills differ from those of a traditional business intelligence analyst</objective_plain><essentials_plain>To complete this course successfully and gain the maximum benefits from it, a student should have the following knowledge and skillsets:



- A strong quantitative background with a solid understanding of basic statistics, as would be found in a statistics 101 level course.
- Experience with a scripting language, such as Java, Perl, or Python (or R).  Many of the lab examples taught in the course use R (with an RStudio GUI), which is an open source statistical tool and programming language.
- Experience with SQL (some course examples use PSQL).
Consider the above as a list of specific prerequisite (or refresher) training and reading to be completed prior to enrolling for or attending this course. Having this requisite background will help ensure a positive experience in the class, and enable students to build on their expertise to learn many of the more advanced tools and analytical methods taught in the course.</essentials_plain><audience_plain>This course is intended for individuals seeking to develop an understanding of Data Science from the perspective of a practicing Data Scientist, including:



- Managers of teams of business intelligence, analytics, and big data professionals
- Current Business and Data Analysts looking to add big data analytics to their skills.
- Data and database professionals looking to exploit their analytic skills in a big data environment
- Recent college graduates and graduate students with academic experience in a related discipline looking to move into the world of Data Science and big data
- Individuals seeking to take advantage of the EMC Proven™ Professional Data Scientist Associate (EMCDSA) certification</audience_plain><contents_plain>The following modules and lessons included in this course are designed to support the course objectives: 

Introduction and Course Agenda

Introduction to Big Data Analytics


- Big Data Overview
- State of the Practice in Analytics
- The Data Scientist
- Big Data Analytics in Industry Verticals
Data Analytics Lifecycle


- Discovery
- Data Preparation
- Model Planning
- Model Building
- Communicating Results
- Operationalizing
Review of Basic Data Analytic Methods Using R


- Using R to Look at Data – Introduction to R
- Analyzing and Exploring the Data
- Statistics for Model Building and Evaluation
Advanced Analytics – Theory And Methods


- K Means Clustering
- Association Rules
- Linear Regression
- Logistic Regression
- Naïve Bayesian Classifier
- Decision Trees
- Time Series Analysis
- Text Analysis
Advanced Analytics - Technologies and Tools


- Analytics for Unstructured Data - MapReduce and Hadoop
- The Hadoop Ecosystem

- In-database Analytics – SQL Essentials
- Advanced SQL and MADlib for In-database Analytics
The Endgame, or Putting it All Together


- Operationalizing an Analytics Project
- Creating the Final Deliverables
- Data Visualization Techniques
- Final Lab Exercise on Big Data Analytics</contents_plain><duration unit="d" days="5">5 Tage</duration><pricelist><price country="SI" currency="USD">5000.00</price><price country="AU" currency="USD">5000.00</price><price country="AE" currency="USD">5000.00</price><price country="US" currency="USD">3120.00</price><price country="DE" currency="EUR">2824.00</price><price country="CA" currency="CAD">4305.00</price><price country="AT" currency="EUR">2824.00</price></pricelist><miles/></course>