Data Science with SAS & Hadoop Certification Training

Online Classroom

Online Classroom

16 Contact Hours/PDUs

5 live classes of 3 hrs each by Industry practitioners

Data Science

describe the role and responsibilities of a data scientist
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For Individuals

Sorry No batches available.

For Business

  • Blended learning (live on-site or online training) that fits your tight schedules
  • Cost-efficient, tailored solutions from industry experts
  • Customized assessments to track training outcomes

This introduction to working with Apache Hadoop is designed for statisticians, as well as experienced SAS programmers with a background in statistics. The course is problem-driven and focuses on helping you understand what data scientists do, the problems they solve, and their methods. By taking a practical approach to the subject, including multiple hands-on exercises, you will leave class with skills that you can immediately apply to real-world problems. You will also learn how recommender systems can be leveraged in industries such as Health Care, Finance, Telecom, and so on.

Upon successful completion of this course, participants should be able to:

  •  5 live classes of 3 hrs each by Industry practitioners
  •  Describe the role and responsibilities of a data scientist
  •  Explain several ways in which data scientists create value for organizations across many industries
  •  Locate and acquire data from diverse sources
  •  Use transformation and normalization techniques on both structured and unstructured data
  •  Determine the most appropriate type of analysis and modeling tool to use for a given problem
  •  Be able to implement an automated recommendation system
  •  Develop, evaluate, and refine scoring systems for recommenders
  •  Understand the considerations involved in working at scale
  •  Identify meaningful, actionable, and business-oriented results from the analysis.

Data scientists, SAS programmers, and statisticians who have some basic familiarity with Apache Hadoop

Before attending this course, you must:

  • Be familiar with Base SAS software
  • Be able to write basic SQL queries
  • Have predictive modelling knowledge at the level acquired in Predictive Modelling Using Logistic Regression
  • Have a basic understanding of Apache Hadoop at the level acquired in Introduction to SAS and Hadoop
  • This course addresses SAS/STAT software.
Participant can attend the certifications exam.
It is mandatory that a participant to clear the online exam with minimum score of 80% to be Certified in Data Science with SAS.
 Introduction
 Data Science Overview
 Apache Hadoop Overview
 Use Cases
 Project Lifecycle
 Data Acquisition
 Evaluating Input Data
 Data Transformation
 Fundamentals of Machine Learning
 Recommender Overview
 Implementing Recommenders with MapReduce and SAS
 Experimentation and Evaluation

1. Who will be the trainer for the training?

Highly qualified and certified instructors with industry relevant experience deliver the training.

2. How do I enrol for the training?

You can enrol for the training through our website. You can make online payment using any of the following options:

  • Visa debit/credit card
  • American Express and Diners Club cards
  • Master Card
  • PayPal

Once the online payment is done, you will automatically receive payment receipt, via email.

3. Can I cancel my enrolment? Do I get a refund?

Yes, you can cancel your enrolment. We provide you complete refund after deducting the administration fee. To know more please go through our Refund Policy.

4. Do you provide money back guarantee for the training programs?

Yes, we do provide money back guarantee for some of our training programs. You can contact support@redstonelearning.com for more information.

5. Do you provide assistance for the exam?

Yes, we do provide guidance and assistance for some of our certification exams.

There is no such governing body administers Data Science with SAS exam. However, many training providers conduct exam to evaluate a candidate’s skills on Data Science with SAS training.