Apache Spark Foundation


Free Download Apache Spark Foundation
Published 8/2023
Created by Akkem Sreenivasulu
MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 14 Lectures ( 4h 57m ) | Size: 2.22 GB


Apache Spark Foundation
What you’ll learn
1. Apache Spark Foundation Introduction
2. Difference Between Apache Spark and Apache Hadoop – Apache Spark vs Apache Hadoop
3. Apache Spark Installation on Windows Operating System
4. Apache Spark Programming Introduction
5. Apache Spark with Java Introduction and Examples
6. Apache Spark & Scala Introduction and Examples
7. Apache PySpark Introduction and Examples
Requirements
1. Basic Computer Knowledge
2. Optionally Any Programming
3. Optionally Any RDBMS
4. Basic Cloud Computing Knowledge
Description
Apache Spark Foundation SyllabusApache Spark Introduction (What is Apache Spark, What are Apache Spark Components, What are Spark Opportunities/Job Roles)Apache Spark vs Apache HadoopApache Spark Installation on Windows Operating SystemApache Spark Programming IntroductionApache Spark with Java LanguageApache Spark with Scala LanguageApache Spark with Python (PySpark) LanguageApache Spark with R Language (SparkR)What is Apache Spark?Apache Spark is a Data Processing Framework.Apache Spark Software implemented using Scala Language.Apache Spark Applications/Programs we can write using 4 Languages. They are:1. Apache Spark with Java Language2. Apache Spark with Scala Language (Spark & Scala)3. Apache Spark with Python Language (PySpark)4. Apache Spark with R Language (SparkR)Apache Spark API Available for Java, Scala, Python and R LanguageAPI – Application Programming Interface (Contains Predefined classes, functions and Variables)Apache Spark is Pure Data Processing Framework. It does not have Storage. It can process any data.What are Apache Spark Components?Apache Spark CoreApache Spark SQLApache Spark StreamingApache Spark ML/MLibApache Spark GraphXApache Spark Core – RDD Programming (RDD – Resilient Distributed Dataset) (Transformations, Actions using either Java or Scala or Python)Apache Spark SQL – DataFrames/Tables/Datasets – We write SQL Kind Programming.Apache Spark Streaming – Streaming + Live AnalyticsApache Spark ML/MLib – Machine LearningApache Spark GraphX – Linked Data/Graph Data ProcessingApache Spark Application we can deploy onApache Spark Standalone Cluster orYARN Cluster (Hadoop Cluster)Mesos ClusterKubernetes ClusterWhat are Spark Opportunities/Job Roles?There are Two Kinds of Job Roles/ Opportunities in Apache Spark World. They are:Apache Spark DeveloperApache Spark Machine Learning Developer or Apache Spark Data ScientistApache Spark DeveloperStrong Apache Spark FoundationApache Spark Core ProgrammingApache Spark SQLApache Spark StreamingApache Spark Integration Like RDBSM, NoSQL, Streaming Frameworks and Cloud ComputingProgramming Language (Java or Scala or Python or R)SQL on Any RDBMSLinux Essentials.Any Cloud Computing like AWS or Azure or GCPApache Spark Machine Learning Developer or Apache Spark Data ScientistApache Spark DeveloperApache Spark ML/MLibApache Spark GraphXML/DL/Data Science AlgorithmsMathematics and Statistics
Who this course is for
• Any IT aspirant/professional willing to learn/Become Data Engineering using Apache Spark
• Python Developers who want to learn Spark to add the key skill to be a Data Engineer
• Who would like to learn Spark
• Who are Freshers/Experienced – Who Wants to Become Data Engineers
• Who are Programmers like Java, Scala, .Net, Python etc.. willing to learn/Become Data Engineering using Apache PySpark
• Who are Database Developer/DBA willing to learn/Become Data Engineering using Apache PySpark
• Who are Data Warehouse and Reporting People willing to learn/Become Data Engineering using Apache PySpark
• Non-Programmers like Test Engineers etc.. willing to learn/Become Data Engineering using Apache PySpark
Homepage

https://www.udemy.com/course/apache-spark-foundation/

Buy Premium From My Links To Get Resumable Support,Max Speed & Support Me

No Password – Links are Interchangeable

Add a Comment

Your email address will not be published. Required fields are marked *