Real-Time Stream Processing Using Apache Spark 3 for Scala Developers
Video description
A comprehensive course for Scala developers to create real-time stream processing applications with Apache Spark.
About This Video
Deep dive into Spark structured streaming APIs and architecture
Discover streaming joins and aggregation
Explore real-time stream processing concepts
In Detail
Since its inception, Apache Spark has seen rapid adoption by enterprises across a wide range of industries. So, mastering …
Real-Time Stream Processing Using Apache Spark 3 for Scala Developers
Video description
A comprehensive course for Scala developers to create real-time stream processing applications with Apache Spark.
About This Video
Deep dive into Spark structured streaming APIs and architecture
Discover streaming joins and aggregation
Explore real-time stream processing concepts
In Detail
Since its inception, Apache Spark has seen rapid adoption by enterprises across a wide range of industries. So, mastering Apache Spark opens a wide range of professional opportunities. If you are a software engineer or architect and want to design or build your own projects, then this is the right course for you.
This is a hands-on, example-driven, advanced course with demonstrations and coding sessions. This course will help you understand real-time stream processing using Apache Spark and later, you will be able to apply that knowledge to build real-time stream processing solutions.
This course covers everything from scratch, which involves installing Apache Spark and seeing how to set up and run Apache Kafka. Furthermore, it introduces stream processing and how to work with files and directories. You will also explore Kafka serialization and deserialization for Spark and how to work with Kafka AVRO Source. And finally, the course wraps up with streaming Watermark and outer joints.
By the end of this course, you will be able to design and develop big data engineering projects. You will be able to create real-time stream processing applications with Apache Spark. This course will also help you further your growth in real-time stream processing.
Audience
This course is designed for software engineers and architects who aspire to develop big data engineering projects using Apache Spark. Also, if you are a programmer and developer who wants to grow and learn data engineering using Apache Spark, then this course is for you. Another group of people that can opt for this course are the managers and architects who might not directly work with Spark implementation but still work with the people who implement Apache Spark at the ground level.
Chapter 3 : Getting Started with Spark Structured Streaming
Introduction to Stream Processing
Spark Streaming APIs - DStream Versus Structured Streaming
Creating Your First Stream Processing Application
Stream Processing Model in Spark
Working with Files and Directories
Streaming Sources, Sinks, and Output Mode
Fault Tolerance and Restarts
Chapter 4 : Spark Streaming with Kafka
Streaming from Kafka Source
Working with Kafka Sinks
Multi-Query Streams Application
Kafka Serialization and Deserialization for Spark
Creating Kafka AVRO Sinks
Working with Kafka AVRO Source
Chapter 5 : Windowing and Aggregates
Stateless Versus Stateful Transformations
Event Time and Windowing
Tumbling Window Aggregate
Watermarking Your Windows
Watermark and Output Modes
Sliding Windows
Chapter 6 : Stream Processing and Joins
Joining Stream to Static Source
Joining Stream to Another Stream
Streaming Watermark
Streaming Outer Joins
Start your Free Trial Self paced Go to the Course We have partnered with providers to bring you collection of courses, When you buy through links on our site, we may earn an affiliate commission from provider.
This site uses cookies. By continuing to use this website, you agree to their use.I Accept