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Data Engineering Certification Training - Using R Or Python

  • Get practical learnings from basic to advanced around Data Science methods with R / Python, machine learning, AI, deep learning, Big Data Hadoop, and Tableau Data Visualization in complete depth.
  • Our Data Science certification training lets you master the concepts of Data Science based real-life industry cases increasing your job market value.

Next Class Begins in 2 days - 19 Jun 2026

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Why Data Science Certification?

Facts and Figures that will tantalize you to sign up for Data Science Certification Training.

#1

Data Science is the most demanding IT skill

$121,050+

Is the average Data Scientist Salary per year as per Indeed.

Salesforce Growth

You Should Join Our Classes If You Are:

  • Just starting off & aren’t sure where to start from
  • In an established role but need to dive deep
  • Looking to brush up your skills & master the course
  • Willing to get better in your current or new job

190 K

United States leads the data science job market, requiring 190,000 data scientists by next year.

$16 B

Data science industry is expected to touch US$ 16 billion by 2025

Dive deep into the Data Science Career

Learn about Career benefits, in-demand skills, average salaries and tips to Crack Job Interview.

Data Science jobs

2.2 K

Students has successfully completed Data Science training and now working for top MNC's

Thriving Career Opportunities - What and Where!

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Get all the technical skills to help businesses transform their big data!

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IT

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Retail

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Manufacturing / Medicine

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Banking &
Finance

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Construction

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Communication & media

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Manufacturing

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Energy/utility

Data Scientist

Machine Learning Engineer

Data Analyst

BI Developer

Instructor-led Live Online Data Engineering Classes


Starting
Duration
Price

calendar-icon119 Jun

WEEKDAY - Filling Fast

8 WEEKS

09.00 - 10.30 PM EST

USD 2199

USD 1869

Flat 15% Off

calendar-icon103 Jul

WEEKDAY

8 WEEKS

09.00 - 10.30 PM EST

USD 2199

calendar-icon117 Jul

WEEKDAY

8 WEEKS

09.00 - 10.30 PM EST

USD 2199

calendar-icon131 Jul

WEEKDAY

8 WEEKS

09.00 - 10.30 PM EST

USD 2199

USD 1759

Flat 20% Off

Early Bird Discount

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Easy Installments

Detail
WEEKDAY - Filling Fast

calendar-icon119 Jun


8 WEEKS

09.00 - 10.30 PM EST

USD 2199

USD 1869

Flat 15% Off

Enroll Now
WEEKDAY

calendar-icon103 Jul


8 WEEKS

09.00 - 10.30 PM EST

USD 2199

WEEKDAY

calendar-icon131 Jul


8 WEEKS

09.00 - 10.30 PM EST

USD 2199

yel-icon1

Easy Installments

Not Sure Which Data Engineering Class to Join?  

    Best-in-class content by leading faculty & industry leaders in the form of videos and projects, assignments & live sessions.

Career Counselling

Career Counselling

Resume Feedback

Resume Feedback

Interview Preparation

Interview Preparation

Data science Training Course Roadmap

Scroll through the concepts that we cover in our Data Science Course

SQL & Database Basics , Advanced SQL

    • Introduction to Data Engineering
    • Database Concepts
    • SQL Basics
    • Filtering & Joins
    • SQL Practice
    • Aggregate Functions
    • Group By & Having
    • Subqueries
    • Views & Indexes
    • SQL Practice Session

Python Basics, ETL & Data Processing

    • Python Introduction
    • Variables & Data Types
    • Loops & Functions
    • File Handling
    • Python Practice
    • Introduction to ETL
    • Data Cleaning
    • CSV & JSON Handling
    • APIs Basics
    • Mini ETL Project

Data Warehousing, Big Data Basics

    • Warehouse Concepts
    • OLTP vs OLAP
    • Star & Snowflake Schema
    • MySQL Basics
    • Data Modeling
    • Introduction to Big Data
    • Hadoop Basics
    • Spark Basics
    • Distributed Data Concepts
    • Spark Practice

Cloud & Pipelines, Projects & Interview Prep

    • Cloud Basics
    • AWS Introduction
    • Data Pipelines
    • Airflow Basics
    • Cloud Storage
    • End-to-End Pipeline
    • Real-Time Data Concepts
    • Resume Building
    • Interview Questions
    • Final Project Presentation

Data Science training Certification Course Roadmap

  • What all do we cover in our Data Science Courses

    The Data Science learning path that you get to cover at JanBask Training is very informative and engaging. It has been prepared after vigorous market research on the trends of Data Science, industry needs, etc. Take a look at the things that we cover in this course.

    • What is Data Science?
    • Data Science Life Cycle
    • What is Machine Learning?
    • What is Business Analytics?
    • What is Artificial Intelligence?
    • How is data science different from BI and Reporting
    • End to End Data Science Project Life Cycle
    • knowledge of the concepts of data collection & data mining.
    • Why R and importance of R in Analytics
    • Installation of R and R-studio
    • Working Directories
    • Data Types, Operators, Loops-For and While
    • If-else statements, Nested statements
    • Working with Vector and Matrices
    • Reading and Writing Data in R
    • Working with Data, Manipulating Data
    • Objects, and Vectors
    • Why Python for data science?
    • Overview of Python- Starting with Python
    • Installation of Python
    • Python Editors & IDE’s
    • Understand Jupyter notebook & Customize Settings
    • Concept of Packages/Libraries
    • Installing & loading Packages & Name Spaces
    • Data Types & Data objects/structures
    • List and Dictionary Comprehensions
    • Control flow & conditional statements
    • Definition and computation of the probability
    • Measurement of central tendencies and its applications
    • Spreads, Distributions(Normal, Z-distribution, Binomial, Poisson)
    • Various types of probability distributions(Continuous and discrete)
    • Measures of Central Tendencies and Variance
    • Sampling and Sampling distributions
    • Measures of shape( Skewness and Kurtosis)
    • Measures of the relationship between variables(Correlation, causation)
    • Hypothesis Testing(t-test, Chi-square, Anova)
    • Measures of Dispersion( Variance, std. deviation, Range)
    • Prediction and Confidence interval-Computation and Analysis
    • Correlation, Covariance, and Causation
    • Supervised Learning
    • Algorithms in Supervised learning
    • Regression & Classification
    • Regression vs classification
    • Computation of correlation coefficient and Analysis
    • Multivariate Linear Regression Theory
    • Coefficient of determination (R2) and Adjusted R2
    • Model Misspecifications
    • Economic meaning of a Regression Model
    • Bivariate Analysis
    • Naive Baye classifier, Model Training
    • ANOVA (Analysis of Variance)
    • What is Clustering
    • Supervised vs Unsupervised learning
    • Data Mining Process
    • Measure of distance
    • Hierarchical Clustering / Agglomerative Clustering
    • Non-clustering, K-Means Clustering
    • dimension reduction
    • Advantages of PCA
    • Calculation of PCA weights
    • Definition of a network (the LinkedIn analogy)
    • The measure of Node strength in a Network
    • What is Market Basket / Affinity Analysis
    • The measure of distance/similarity between users
    • Pre-processing, corpus Document-Term Matrix (DTM) and TDM
    • Why is Deep Learning taking off?
    • Advantage of Deep Learning
    • What is the difference between ML, DL and AI?
    • Why is deep learning important?
    • Sharing Variables
    • Activation Functions
    • Illustrate Perceptron
    • Training a Perceptron
    • Neural Networks with TensorFlow
    • Convolutional Neural Networks (CNN)
    • Convolution and Pooling layers in a CNN
    • Understanding and Visualizing a CNN
    • Recurrent Neural Networks (RNN)
    • What is Natural Language Processing?
    • What Can Developers Use NLP Algorithms For?
    • Open Source NLP Libraries
    • Topic Modeling
    • Sentiment Extraction
    • Lexicons and Emotion Mining
    • Hadoop Installation and Setup
    • Hadoop ecosystem components
    • Hadoop’s Key Characteristics
    • What is Big Data & its analytics
    • Hadoop Ecosystem and HDFS
    • Hadoop Core Components
    • Hadoop Cluster and its Architecture
    • Rack Awareness and Block Replication
    • YARN and its Advantage
    • MapReduce Framework and Pig
    • Apache Spark Next-Generation Big Data Framework
    • How Spark differs from other frameworks?
    • What is Scala
    • Scala in other Frameworks
    • Introduction to Scala REPL
    • Basic Scala Operations
    • Variable Types in Scala
    • Control Structures in Scala
    • Understanding the constructor overloading,
    • Various abstract classes
    • The hierarchy types in Scala,
    • Foreach loop, Functions and Procedures
    • Collections in Scala- Array
    • Overview to Spark
    • Spark installation, Spark configuration,
    • Spark Components & its Architecture
    • Spark Deployment Modes
    • Limitations of MapReduce in Hadoop
    • Working with RDDs in Spark
    • Introduction to Spark Shell
    • Deploying Spark without Hadoop
    • Parallel Processing
    • Spark MLLib - Modelling BigData with Spark
    • what is Kafka, Why Kafka,
    • Configuring Kafka Cluster
    • Kafka architecture
    • Producing and consuming messages
    • Operations, Kafka monitoring tool
    • Need of Apache Flume
    • What is Apache Flume
    • Understanding the architecture of Flume
    • Basic Flume Architecture
    • What is Data Visualization
    • Overview to Tableau 10.0
    • Installing Tableau, Establishing Connection
    • Tableau interface
    • Connecting to DataSource
    • Installation of Tableau Desktop
    • Architecture of Tableau
    • Connection to Excel, cubes, and PDFs
    • Data extraction, Data blending
    • Calculations to your workbook
    • Mapping data in Tableau
    • Custom Geocoding, Polygon Maps.
    • Web Mapping Services.
    • Background Images.
    • Dashboards and Stories

Course Curriculum

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JanBask Training’s Job Oriented and Certification Focussed Training

Experience Our Data Engineering Certification Training Journey!

  • Introduce yourself to the concepts, principles and working knowledge of Data Engineering
  • Understand the real world scenarios with real-time job oriented projects and case studies
  • Learn from World Class Trainers who are one amongst the top rated working IT Professionals
  • Clear your certifications while we make you ready for the huge job market present out there

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