HOME > Development > Working with Apache Spark (Aug 2023)

Working with Apache Spark (Aug 2023)

  • Development
  • May 04, 2025
SynopsisWorking with Apache Spark (Aug 2023 , available at $19.99, ha...
Working with Apache Spark (Aug 2023)  No.1

Working with Apache Spark (Aug 2023), available at $19.99, has an average rating of 4.3, with 28 lectures, 8 quizzes, based on 5 reviews, and has 75 subscribers.

You will learn about Apache Spark and its features Installing and Configuring Spark Programming Environment Spark Programming using Scala Creating and Working with Spark Context, Spark RDD, DataFrames, DataSets Transformations and Actions using DataFrames Spark SQL, Spark Streaming with Kafka, GraphX, Spark Mllib, PySpark and Sparklyr Scheduling Spark Jobs This course is ideal for individuals who are Data Scientists / Data Engineers or Big Data Developers or Big Data Engineers or Big Data Architects or Any technical personnel who are interested in learning and Exploring the Features of Apache Spark It is particularly useful for Data Scientists / Data Engineers or Big Data Developers or Big Data Engineers or Big Data Architects or Any technical personnel who are interested in learning and Exploring the Features of Apache Spark.

Enroll now: Working with Apache Spark (Aug 2023)

Summary

Title: Working with Apache Spark (Aug 2023)

Price: $19.99

Average Rating: 4.3

Number of Lectures: 28

Number of Quizzes: 8

Number of Published Lectures: 28

Number of Published Quizzes: 8

Number of Curriculum Items: 36

Number of Published Curriculum Objects: 36

Original Price: ?3,299

Quality Status: approved

Status: Live

What You Will Learn

  • Apache Spark and its features
  • Installing and Configuring Spark Programming Environment
  • Spark Programming using Scala
  • Creating and Working with Spark Context, Spark RDD, DataFrames, DataSets
  • Transformations and Actions using DataFrames
  • Spark SQL, Spark Streaming with Kafka, GraphX, Spark Mllib, PySpark and Sparklyr
  • Scheduling Spark Jobs
  • Who Should Attend

  • Data Scientists / Data Engineers
  • Big Data Developers
  • Big Data Engineers
  • Big Data Architects
  • Any technical personnel who are interested in learning and Exploring the Features of Apache Spark
  • Target Audiences

  • Data Scientists / Data Engineers
  • Big Data Developers
  • Big Data Engineers
  • Big Data Architects
  • Any technical personnel who are interested in learning and Exploring the Features of Apache Spark
  • In this Course, you will Learn in detail about Apache Spark and its Features. This is course deep dives into Features of Apache Spark, RDDs, Transformation, Actions, Lazy Execution, Data Frames, DataSets, Spark SQL, Spark Streaming, PySpark, Sparklyr and Spark Jobs.

    You will explore creating Spark RDD and performing various transformation operations on RDDs along with actions. This Course also illustrates the difference between RDD, DataFrame and DataSet with examples. You will also explore features of Spark SQL and execute database queries using various contexts.

    In this course, you will also explore Spark Streaming along with Kafka. The Spark Streaming examples includes producing and consuming messages on a Kafka Topic. Spark program is basically coded using Scala in this course, but PySpark is also discussed, programming examples using PySpark is also included.

    Usage of Sparklyr package in R Programming is included in the Course. Finally, the course includes how to schedule and execute Spark Jobs.

    The course teaches you everything you need to know about Apache Spark.

    This course gives details about Working with Apache Spark with an emphasis on its activity lessons and hands on experience.

    What are you waiting for?

    Every day is a missed opportunity.

    Enroll No!

    Hurry up!

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Introduction

    Chapter 2: Introduction to Spark

    Lecture 1: Lesson 01: Introduction to Spark

    Lecture 2: Practice 1-1: Installing and Configuring Standalone Spark Computing Environment

    Lecture 3: Practice 1-2: Create & Run a Project on Standalone Spark Programming Environment

    Chapter 3: Spark Runtime: Context, Executor and Stage

    Lecture 1: Lesson 02: Spark Runtime: Context, Executor and Stage

    Lecture 2: Practice 2-1: Starting Spark on Cloudera Hadoop Ecosystem

    Lecture 3: Practice 2-2: Exploring the Spark Context in the Cloudera Ecosystem

    Chapter 4: Working with Spark RDD

    Lecture 1: Lesson 03: Working with Spark RDD

    Lecture 2: Practice 3-1: Working with RDD Transformations and Actions

    Lecture 3: Practice 3-2: Working with Paired RDDs

    Lecture 4: Practice 3-3: Using Cache and Persist Methods in Spark

    Chapter 5: Working with Spark SQL

    Lecture 1: Lesson 04: Working with Spark SQL

    Lecture 2: Practice 4-1: DataFrames in Spark SQL

    Lecture 3: Practice 4-2: DataSets in Spark SQL

    Lecture 4: Practice 4-3: Using Window Function in Spark SQL

    Lecture 5: Practice 4-4: Creating DataFrame and Dataset in Standalone Spark Environment

    Chapter 6: Working with Spark Streaming

    Lecture 1: Lesson 05: Working with Spark Streaming

    Lecture 2: Practice 5-1: Installing and Running Apache Kafka in a Standalone Environment

    Lecture 3: Practice 5-2: Spark Streaming with Apache Kafka

    Chapter 7: Using Sparklyr

    Lecture 1: Lesson 06: Using Sparklyr

    Lecture 2: Practice 6-1: Configuring R Programming Environment

    Lecture 3: Practice 6-2: Working with Spark DataFrames in R

    Chapter 8: Advanced Features with Spark

    Lecture 1: Lesson 07: Advanced Features with Spark

    Lecture 2: Practice 7-1: Performing various Spark Operations using Pyspark

    Lecture 3: Practice 7-2: Working with GraphX

    Lecture 4: Practice 7-3: Implementing Linear Regression using MLlib

    Chapter 9: Executing and Scheduling the Spark job

    Lecture 1: Lesson 08: Executing and Scheduling the Spark job

    Lecture 2: Practice 8-1: Running Spark Python Application

    Instructors

  • Working with Apache Spark (Aug 2023)  No.2
    Proton Expert Systems & Solutions
    Proton Expert Systems & Solutions
  • Rating Distribution

  • 1 stars: 0 votes
  • 2 stars: 0 votes
  • 3 stars: 1 votes
  • 4 stars: 2 votes
  • 5 stars: 2 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!