Introduction to Apache Spark & Scala - Introduction to Big Data & Spark - What is Scala | Introduction to Scala - What is Scala REPL - Scala REPL Explained - Apache Spark Ecosystem - What is Spark - Spark Installation - What is Scala | Overview of Scala Programming - Hadoop Map Reduce Vs. Apache Spark & Scala - Why Scala ? - Scala Functional Programming - Introduction to Scala - Spark Functional Features - Variable Types of Scala - What is Batch processing and real-time Processing - Traits and Oops in Scala - Understanding RDD | Analyze Scala RDD - Beyond Hadoop Mapreduce : Spark + Hadoop - Understanding Apache Spark in Depth - PySpark: Python API for Spark - Invoke Spark Shell & Pyspark - Spark for Big Data - Big Data Processing with Spark - Big Data Processing using Spark & Scala - Webinar
Watch the sample class recording httpwww.edureka.coapache-spark-scala-training?utm_source=youtube&utm_medium=referral&utm_campaign=spark-tutorial-1
Apache Spark, developed by Apache Software Foundation, is an open-source big data processing and advanced analytics engine. It allows developers to develop applications in Scala, Python and Java. This video provides detailed knowledge about various features of this high-speed cluster-computing framework and also Scala, the language in which Spark has been written.
Moreover, these are the topics covered in the video
1.What is Big Data?
2.Big Data Generation
3.Un-structured Data is Exploding
4.Definition of Big Data
5.How to Handle Big Data?
6.Fastest Big Data Analytics Framework
7.What is Spark?
9.Spark Functional Features
10.Spark- Non-functional Features
11.Spark- Programming Interface
12.Spark Version Timeline
13.Introduction to Scala
14.Scala- Functional Programming
15.Frameworks in Scala
Edureka is a New Age e-learning platform that provides Instructor-Led Live, Online classes for learners who would prefer a hassle free and self paced learning environment, accessible from any part of the world.
Topics related to ‘Spark and Scala’ have been covered in detail in our course ‘Apache Spark & Scala’.
For more information, please write back to us at email@example.com