Data is everywhere and the 24 hours Big Data on AWS course prepares you to design and create cloud-based Big Data solutions. Use tools from the AWS suite like Amazon EMR and Hadoop tools like Hive and Hue to process data, and Amazon Redshift and Amazon Kinesis to design and create Big Data environments that are built for cost efficiency, stability, and security.
This instructor-led, engaging Big Data on AWS course, is taught by Amazon Certified trainers with industry experience. The mix of hands-on lab sessions and classroom lessons prepares you to effectively use tools from the AWS suite for big data workloads. Professionals who want to attempt the AWS Certified Data Analytics – Specialty exam will benefit from this training.
Who Should Attend the Course
- Solutions architects
- SysOps administrators
- Data scientists
- Data analysts
What You Will Learn
-
Fundamentals of Big-Data
Learn the fundamentals of cloud-based big data solutions, including the usage of Apache Hadoop with Amazon EMR -
Launch and Configure
Master the skill of launching and configuring an Amazon EMR cluster -
Master Common Programming Frameworks
Use common programming frameworks for Amazon EMR, including Hive, Pig, and Streaming -
Improve Usage
Learn to use Hue to improve and make the usage of Amazon EMR easy -
Understand and Optimize AWS Services
Understand how services like AWS Glue, Amazon Athena, and Amazon QuickSight can be used with big data workloads -
Learn In-memory Analytics
Understand and learn to use in-memory analytics with Spark on Amazon EMR
By the end of this course, you will learn to:
- Use Apache Hadoop with Amazon EMR
- Launch and configure an Amazon EMR cluster
- Use common programming frameworks for Amazon EMR, including Hive, Pig, and Streaming
- Use Hue to improve the ease-of-use of Amazon EMR
- Use in-memory analytics with Spark on Amazon EMR
- Understand how services like AWS Glue, Amazon Kinesis, Amazon Redshift, Amazon Athena, and Amazon QuickSight can be used with big data workloads
We provide this course in English.