Big Data Science Analyst +

Co-op

Hadoop, Spark, Pig, Hive, Impala, YARN, MapReduce

The Big Data and Data Science analyst course is designed to give you in-depth knowledge of the Big Data framework using Hadoop and Spark, including HDFS, YARN, and MapReduce. You will learn to use Python, Pig, Hive, and Impala to process and analyze large datasets stored in the HDFS, and use Sqoop and Flume for data ingestion with our big data training.

 

You will master real-time data processing using Spark, including functional programming in Spark, implementing Spark applications, understanding parallel processing in Spark, and using Spark RDD optimization techniques. With our big data course, you will also learn the various forms of databases like SQL & No SQL for creating, transforming, and querying data.

 

Can't attend classes? Check out the Online Big Data course

 

Why should you register with us? See FAQ and Testimonials. See our Gallery to view us in action and also check out our social side on Facebook

What You Get

8 hours weekly in class teaching

10 Weeks of training

5 days online access to teacher
120 hours (10 Weeks) in total

Open 6 days a week (9am-6pm)

Saturday & Sunday classes

24x7 access to Lab

Installation of all required software

Have fun in a high energy class

3 months Work Term placement 
Job Referral and Hiring

Flexible Payment Plan
Group & Corporate Discount

What You'll Learn

Wee 1:  Data warehousing, ETL & Big Data concepts

 

Week 2: Linux & Shell scripting

Week 3: Java/Python Essentials for Hadoop Java

Week 4: Hadoop HDFS, MapReduce & Yarn

Week 5: Querying Data using Hive

Week 6: Ingesting Data using Apache Sqoop

Week 7: Data streaming using Apache flume & Kafka 

Week 8: Processing and transforming Data using Apache Pig 

Week 9: NoSQL Databases

Week 10: Apache Spark

Week 11: Scala for Apache Spark 

Week 12:  Hadoop/Big Data testing 

 

We also offer Python, Java Fullstack Developer and Software Testing training. View our classes page to see a full list of our classes. Contact us for any question.

APR

11

NEXT BATCH

Big Data + Co-op (Mississauga)
12 sessions 
1:30PM - 4:30PM
Suite 1532
4 Robert Speck Parkway
Mississauga ON L4Z 1S1

Career Roadmap

1- 4 Yrs
5 - 9 Yrs
10+ Yrs
  • Big Data Analyst 

  • Big Data Developer 

  • Big Data Tester

  • Salary up to $75k

  • Big Data Architect

  • Big Data Developer Lead

  • Big Data Test Lead 

  • Data Scientist 

  • Salary up to $100k

  • Big Data Manager

  • Data Project Manager

  • Hadoop Data & Analytical Manager

  • Salary up to $130k

BusyQA Alumni have been hired by some of the largest companies in Canada

Know your Instructor

(Toronto)

Big Data/Data Science Expert. PHD

 

Maher Selim is a data science and machine learning postdoctoral fellow at Trent University. He worked in many Big Data and Data Science projects. Maher also is lecturing in the machine learning, data science, and Big Data subjects in Trent University.  He received his PhD. in physics from the University of Western Ontario, and his M.Sc. and B.Sc. in physics from Egypt. His research is focusing on developing of a confident and accurate forecasting system using deep learning artificial neural network on big data platforms.

 

 

Hi, I'm Maher Selim

Head office :

Suite 1532

4 Robert Speck Parkway
Mississauga ON L4Z 1S1 

Training Centers  (appointment only):

 

Mississauga

Iceland Mississauga
705 Matheson Blvd E, Mississauga

ON L4Z 3X9

Mississauga

Ivor Woodlands Room

South Common Community Centre

2233 South Millway, Mississauga

ON, L5L 3H7

Toronto

Swansea Town Hall Community Center

95 Lavinia Ave, Toronto

ON M6S 3H9

Markham

Program Room 1/2

Thornhill Community Centre Library

7755 Bayview Ave, Thornhill

L3T 4P1

Brampton

Library Room
Grace Place

156 Main St. N.
Brampton ON L6V 1N9

Kitchener

Kitchener Public Library                         
Central Library
85 Queen St N

Kitchener ON N2H 2H

Call

Tel: 1-905-499-3705

Open Mon - Fri : 9AM- 6PM

            Saturday: 9AM- 2 PM

 

© 2020

busyQA Inc

 

  • facebook
  • Twitter Clean
  • LinkedIn Clean