FOLLOW US :

Gallery!

Demo Confirmation

Get Brochure

shape
shape

DATA ENGINEERING
WITH AWS

Online

video video
Book Demo

Course Information

  • Instructors: Weslin, Thatharik, Bhanuchandar
  • Sessions: 72
  • Duration: 24 Weeks
  • Online: Google Meet / Zoom
  • Placement Training: 10 Sessions
  • Internship Support: Yes

Fees Details

DATA ENGINEERING WITH AWS

What Is Data Engineering With AWS And How Is The Career Opportunities For It?

Data Engineering with AWS combines data engineering principles with the utilization of Amazon Web Services (AWS) tools and services, focusing on designing, building, and maintaining data pipelines and infrastructure for large-scale data processing and analysis. Career opportunities in this field are abundant and promising as organizations increasingly rely on data-driven decision-making. With the dominance of AWS in the cloud services market, having expertise in data engineering with AWS opens up diverse career options and provides versatility across industries.

Professionals skilled in data engineering with AWS are in high demand, and their proficiency in data modeling, ETL processes, data warehousing, big data frameworks, and cloud technologies makes them valuable assets for organizations.

  • Staggering Demand
  • Job Security
  • Freelancing
  • Well paid career option
  • Minimum Qualification
  • Creative & Fun
  • Easy to learn
  • Stay Market Trend
  • Growing opportunities
  • Everlasting domain
What You'll Learn

The “Data Engineering with AWS” course provides a comprehensive understanding of data engineering principles and the effective utilization of Amazon Web Services. You will learn to build scalable and robust data solutions using services like Amazon S3, RDS, Redshift, and DynamoDB. The course covers data storage, management, and processing, including popular frameworks like Hadoop, Spark, and Kafka. Through hands-on exercises and real-world examples, you will gain the skills to design and implement efficient data pipelines for advanced analytics and handling large volumes of data.

  • Photoshop logo
  • Photoshop logo
  • Photoshop logo
  • Photoshop logo
  • Photoshop logo
  • Photoshop logo

  • Introduction to Python
  • Python setting up and essentials
  • Programming in Python
  • Data Science overview
  • Python for Data Science
  • Data Manipulation with Pandas
  • Data Visualization in Matplotlib
  • Data Analysis using SQL
  • Advanced SQL & Best practices
  • Assignment

  • Introduction to AWS
  • AWS Services:
  • – IAM
    – Policy Creations
    – VPN
    – EC2
  • S3, Athena, Glue and Step Functions
  • RDS, DMS
  • Kinesis
  • ECS and Lambda functions
  • EMR
  • Assignment

  • Data modeling techniques
  • ETL using Python
  • ELT using Python
  • Best practices for ETL/ELT
  • Data Cleansing
  • Data Processing
  • Assignment

  • Data management and Relational DB
  • Data Warehousing
  • Amazon Redshift
  • Real Time Data Streaming with Kafka
  • Real Time Data Streaming with SQS
  • Data Pipelines using Airflow
  • Assignment

  • Introduction to Data Analytics
  • What is Business Intelligence
  • Exploring the BI tools
  • Statistical analysis and business applications
  • Data Analytics using PowerBI
  • Data Analytics using Metabase
  • Data Analytics using Tableau
  • Data Story Telling
  • Assignment

  • Introduction to PostgreSQL and MySQL
  • Working with Joins and Subqueries
  • Mathematical operations with SQL
  • Creating CTEs
  • Working with Stored Procedures
  • What are views and dbt
  • Assignment
Author Image

Arun

Senior Data Engineer

"A Senior data engineer working for Channel 4, London, holding a Masters from University Houston, Texas, USA. Having experience in working with Oil and Gas, e-commerce, Health and hospitality and Media companies. Worked with AWS, GCP and Azure cloud platforms in designing and developing efficient data"

Demo Confirmation
Demo Confirmation
Our Students Reviews

Trusted By Hundreds Of Students

Students Testimonials

Hear it from our students

video
Have Any Questions?

Feel Free to Reach Out to us.

Some programming experience is necessary, and knowledge of Python is highly recommended. Basic understanding of statistics, calculus, and linear algebra is also helpful. Familiarity with databases and SQL can be useful for data engineering. Dont worry if you dont have any experience in these technologies, we can help you learn from the basics.

For data science, popular tools and technologies include Python, R, SQL, and machine learning libraries like scikit-learn and TensorFlow. For data engineering, popular tools and technologies include Hadoop, Spark, SQL, and NoSQL databases.

This can vary depending on your prior knowledge and experience, as well as the course you choose. Typically, it can take anywhere from a few months to a year or more to gain proficiency in these fields.

For data science, common job titles include data analyst, data scientist, machine learning engineer, and business analyst. For data engineering, common job titles include data engineer, ETL developer, big data engineer, and database administrator.

It is possible to learn these fields on your own through online resources, books, and practice. However, taking a structured course can provide you with a more comprehensive and guided learning experience. Additionally, taking a course can help you build a network and gain access to job opportunities

mockup
Connect With Mentor

Get your queries sorted out with our Tech Expert

Feel free to reach out to our technology experts and get your queries sorted out!