HOME > Development > Learn How to Create Hadoop MapReduce Jobs in Python

Learn How to Create Hadoop MapReduce Jobs in Python

  • Development
  • Jan 12, 2025
SynopsisLearn How to Create Hadoop MapReduce Jobs in Python, availabl...
Learn How to Create Hadoop MapReduce Jobs in Python  No.1

Learn How to Create Hadoop MapReduce Jobs in Python, available at $29.99, has an average rating of 3.25, with 37 lectures, based on 37 reviews, and has 658 subscribers.

You will learn about Understand what is Hadoop? Understand MapReduce i.e. Heart of Big Data and Hadoop. Running Jobs using Python. Design and Implement Mapper and Reducer phase in Python Execute and Run Hadoop Streaming Jobs Integrate Mapper phase and Reducer phase with Java Driver Class This course is ideal for individuals who are Big Data Professionals or Hadoop Developers or Python Developers who want to go in the field of Big Data or Students who are interested in Hadoop MapReduce It is particularly useful for Big Data Professionals or Hadoop Developers or Python Developers who want to go in the field of Big Data or Students who are interested in Hadoop MapReduce .

Enroll now: Learn How to Create Hadoop MapReduce Jobs in Python

Summary

Title: Learn How to Create Hadoop MapReduce Jobs in Python

Price: $29.99

Average Rating: 3.25

Number of Lectures: 37

Number of Published Lectures: 37

Number of Curriculum Items: 37

Number of Published Curriculum Objects: 37

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • Understand what is Hadoop?
  • Understand MapReduce i.e. Heart of Big Data and Hadoop.
  • Running Jobs using Python.
  • Design and Implement Mapper and Reducer phase in Python
  • Execute and Run Hadoop Streaming Jobs
  • Integrate Mapper phase and Reducer phase with Java Driver Class
  • Who Should Attend

  • Big Data Professionals
  • Hadoop Developers
  • Python Developers who want to go in the field of Big Data
  • Students who are interested in Hadoop MapReduce
  • Target Audiences

  • Big Data Professionals
  • Hadoop Developers
  • Python Developers who want to go in the field of Big Data
  • Students who are interested in Hadoop MapReduce
  • Apache Hadoop is an open-source software framework for distributed storage and distributed processing of very large data sets on computer clusters built from commodity hardware. MapReduce is the heart of Apache Hadoop. MapReduce is a framework which allows developers to develop hadoop jobs in different languages. So in this course we’ll learn how to create MapReduce Jobs with Python.This course will provide you an in-depth knowledge of concepts and different approaches to analyse datasets using Python Programming.?

    This course on MapReduce Jobs with Python?will help you to understand MapReduce Jobs?Programming in Python, how to set up an environment for the running MapReduce Jobs in Python, how to submit and execute MapReduce applications in Python environment. We will start from beginning and then dive into?the advanced concepts of MapReduce.

    Course Curriculum

    Lecture 1: 1.1 prerequisites

    Lecture 2: 1.2 Course Module

    Lecture 3: 1.3 Why MapReduce with Python

    Lecture 4: 2.1 What is Apache Hadoop

    Lecture 5: 2.2 Comparison with RDBMS

    Lecture 6: 2.3 HDFS in Hadoop

    Lecture 7: 2.4 Cluster modes of Hadoop

    Lecture 8: 2.5 HDFS and MapReduce

    Lecture 9: 3.1 MapReduce Model

    Lecture 10: 3.2 Why MapReduce

    Lecture 11: 3.3 Map and Reduce Operation

    Lecture 12: 3.4 Data Flow In MapReduce

    Lecture 13: 3.5 MapReduce Daemons

    Lecture 14: 4.1 Introduction to Hadoop Streaming

    Lecture 15: 4.2 Streaming Command Options

    Lecture 16: 4.3 Generic Command Options

    Lecture 17: 4.4 MapReduce Sample Program-1

    Lecture 18: 4.5 MapReduce Sample Program-2

    Lecture 19: 5.1 Chaining of MR Jobs

    Lecture 20: 5.2 Custom Combiner

    Lecture 21: 5.3 GenericOptionParser

    Lecture 22: 5.4 Distributed Cache

    Lecture 23: 6.1 JUnit Testing

    Lecture 24: 6.2 Analysis of IRIS dataset

    Lecture 25: 6.3 Built-in and Custom Counters in Hadoop

    Lecture 26: 6.4 Custom Partititioner

    Lecture 27: 6.5 Hadoop Sequence File Format

    Lecture 28: 6.6 Read Write Sequence File

    Lecture 29: 7.1 Hadoop Data Types

    Lecture 30: 7.2 Processing of XML File

    Lecture 31: 7.3 Data Compression with Hadoop

    Lecture 32: 7.4 Data Serialization using Avro-Theo

    Lecture 33: 8.1 Limitations of Hadoop 1.x

    Lecture 34: 8.2 Hadoop 2.x with YARN

    Lecture 35: 8.3 YARN and its Processing Application

    Lecture 36: 8.4 YARN MR Application Execution Flow

    Lecture 37: 8.5 Hadoop 2.x Cluster Architecture

    Instructors

  • Learn How to Create Hadoop MapReduce Jobs in Python  No.2
    Inflame Tech
  • Rating Distribution

  • 1 stars: 8 votes
  • 2 stars: 1 votes
  • 3 stars: 4 votes
  • 4 stars: 10 votes
  • 5 stars: 14 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!