AWS Data Engineering Complete Roadmap
AWS Data Engineering Complete Roadmap
AWS data engineering requires a combination of skills in
cloud computing, data management, and programming. Here's a comprehensive
roadmap to guide you through the essential steps
AWS Data Engineering Training
Institute
Understanding Cloud Computing: Learn the basics of cloud computing
concepts, especially focusing on AWS services.
AWS Fundamentals: Familiarize yourself with core AWS
services like EC2, S3, IAM, VPC, etc.
Basic Programming: Acquire proficiency in at least one
programming language like Python or Java.
Data
Fundamentals:
Data Structures and Algorithms: Develop strong skills in data
structures and algorithms, which are fundamental for efficient data processing.
Databases: Learn about different types of databases (relational, NoSQL,
etc.) and how they are used in data engineering.
- Data Engineering Course in Hyderabad
AWS Core
Services:
AWS S3: Master AWS S3 for data storage, understanding features like
versioning, encryption, and lifecycle policies.
AWS Glue: Learn how to use AWS Glue for data cataloging, ETL (Extract,
Transform, Load), and data preparation.
AWS Redshift: Understand Amazon Redshift for data warehousing and
analytics.
AWS Lambda: Gain proficiency in AWS Lambda for serverless data
processing.
Amazon EMR: Learn about Elastic MapReduce for processing large-scale data
Data
Processing and Analysis:
Apache Spark: Gain expertise in Apache Spark for distributed data
processing.
ETL Tools: Familiarize yourself with ETL tools like Apache NiFi, Talend,
or Informatica. - AWS Data Engineer Training
Data Pipeline Orchestration: Learn how to orchestrate data
pipelines using tools like Apache Airflow or AWS Step Functions.
Data
Visualization:
AWS QuickSight: Learn how to use AWS QuickSight for interactive data
visualization and analytics.
Tableau or Power BI: Familiarize yourself with popular BI
tools like Tableau or Microsoft Power BI.
Advanced
Topics:
Data Streaming: Understand concepts and technologies like Apache
Kafka, Amazon Kinesis, and Spark Streaming for real-time data processing.
Machine Learning: Explore machine learning concepts and
how to integrate ML models into data pipelines using AWS services like
SageMaker.
Data Governance and Security: Learn about data governance best
practices and how to ensure data security and compliance in AWS.
Certifications:
Consider earning AWS certifications such as:
AWS Certified Solutions Architect – Associate
AWS Certified Big Data – Specialty
AWS Certified Data Analytics – Specialty
Projects and Practical Experience:
Work on real-world projects or create your own to apply the
knowledge gained.
Participate in Kaggle competitions or open-source projects to
gain practical experience.
Continuous
Learning:
Stay updated with the latest developments in AWS and data
engineering by following blogs, and forums, and attending webinars or
conferences.
Keep refining your skills and exploring new tools and
technologies as the field evolves. - AWS Data Engineering
Training Ameerpet
Networking:
Join online communities, forums, or LinkedIn groups related
to AWS and data engineering to connect with professionals in the field and
share knowledge.
By following this roadmap and continuously honing your
skills, you'll be well-equipped to excel in AWS data engineering roles.
Remember that practical experience and continuous learning are key to success
in this field.
Visualpath is the Leading and Best Institute
for AWS Data Engineering Online Training, in Hyderabad. We at AWS Data Engineering Training provide you with the best course at an affordable
cost.
Attend Free Demo
Call on - +91-9989971070.
Visit: https://www.visualpath.in/aws-data-engineering-with-data-analytics-training.html
Comments
Post a Comment