Data Science and Big Data Analytics training, Manila,Philippines

Data Science and Big Data Analytics training, Manila,Philippines

Data Science And Big Data Analytics Course Description

Duration: 5.00 days (40 hours), 

In this course, you will gain practical foundation level training that enables immediate and effective participation in big data and other analytics projects. You will cover basic and advanced analytic methods and big data analytics technology and tools, including MapReduce and Hadoop. The extensive labs throughout the course provide you with the opportunity to apply these methods and tools to real world business challenges. This course takes a technology-neutral approach. In a final lab, you will address a big data analytics challenge by applying the concepts taught in the course to the context of the Data Analytics Lifecycle. You will prepare for the Proven Professional Data Scientist Associate (EMCDSA) certification exam, and establish a baseline of Data Science skills.

Intended Audience For This Data Science And Big Data Analytics Course

  • » This course is appropriate for developers and administrators who intend to use HBase. Prior experience with databases and data modeling is helpful, but not required. Prior knowledge of Java is helpful. Prior knowledge of Hadoop is not required, but Cloudera Developer Training for Apache Hadoop provides an excellent foundation for this course.
  • Data Science And Big Data Analytics Course Objectives

    • » Deploy the Data Analytics Lifecycle to address big data analytics projects
    • » Reframe a business challenge as an analytics challenge
    • » Apply appropriate analytic techniques and tools to analyze big data, create statistical models, and identify insights that can lead to actionable results
    • » Select appropriate data visualizations to clearly communicate analytic insights to business sponsors and analytic audiences
    • » Use R and RStudio, MapReduce/Hadoop, in-database analytics, Windows, and MADlib functions
    • » Use advanced analytics create competitive advantage
    • » Data scientist role and skills vs. traditional business intelligence analyst
    • Data Science And Big Data Analytics Course Outline

        1. Big Data Analytics
          1. Big Data
          2. State of the Practice in Analytics
          3. Data Scientist
          4. Big Data Analytics in Industry Verticals
        2. Data Analytics Lifecycle
          1. Discovery
          2. Data Preparation
          3. Model Planning
          4. Model Building
          5. Communicating Results
          6. Operationalizing
        3. Basic Data Analytic Methods Using R
          1. Using R to Look at Data
          2. Analyzing and Exploring the Data
          3. Statistics for Model Building and Evaluation
        4. Advanced Analytics: Theory and Methods
          1. K Means Clustering
          2. Association Rules
          3. Linear Regression
          4. Logistic Regression
          5. Naïve Bayesian Classifier
          6. Decision Trees
          7. Time Series Analysis
          8. Text Analysis
        5. Advanced Analytics: Technologies and Tools
          1. Analytics for Unstructured Data
          2. MapReduce and Hadoop
          3. Hadoop Ecosystem
          4. In-Database Analytics: SQL Essentials
          5. Advanced SQL and MADlib for In-Database Analytics
        6. Putting it All Together
          1. Operationalizing an Analytics Project
          2. Creating the Final Deliverables
          3. Data Visualization Techniques
          4. Final Lab Exercise on Big Data Analytics