Spark And Python For Big Data With Pyspark by Jose Portilla

Posted on 19 Jul 04:56 | by mata000 | 21 views
Spark And Python For Big Data With Pyspark by Jose Portilla
Spark And Python For Big Data With Pyspark
Last updated 5/2020
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.47 GB | Duration: 10h 35m

Learn how to use Spark with Python, including Spark Streaming, Machine Learning, Spark 2.0 DataFrames and more!

What you'll learn
Use Python and Spark together to analyze Big Data
Learn how to use the new Spark 2.0 DataFrame Syntax
Work on Consulting Projects that mimic real world situations!
Classify Customer Churn with Logisitic Regression
Use Spark with Random Forests for Classification
Learn how to use Spark's Gradient Boosted Trees
Use Spark's MLlib to create Powerful Machine Learning Models
Learn about the DataBricks Platform!
Get set up on Amazon Web Services EC2 for Big Data Analysis
Learn how to use AWS Elastic MapReduce Service!
Learn how to leverage the power of Linux with a Spark Environment!
Create a Spam filter using Spark and Natural Language Processing!
Use Spark Streaming to Analyze Tweets in Real Time!
Requirements
General Programming Skills in any Language (Preferrably Python)
20 GB of free space on your local computer (or alternatively a strong internet connection for AWS)
Description
Learn the latest Big Data Technology - Spark! And learn to use it with one of the most popular programming languages, Python!
One of the most valuable technology skills is the ability to analyze huge data sets, and this course is specifically designed to bring you up to speed on one of the best technologies for this task, Apache Spark! The top technology companies like Google, Facebook, Netflix, Airbnb, Amazon, NASA, and more are all using Spark to solve their big data problems!
Spark can perform up to 100x faster than Hadoop MapReduce, which has caused an explosion in demand for this skill! Because the Spark 2.0 DataFrame framework is so new, you now have the ability to quickly become one of the most knowledgeable people in the job market!
This course will teach the basics with a crash course in Python, continuing on to learning how to use Spark DataFrames with the latest Spark 2.0 syntax! Once we've done that we'll go through how to use the MLlib Machine Library with the DataFrame syntax and Spark. All along the way you'll have exercises and Mock Consulting Projects that put you right into a real world situation where you need to use your new skills to solve a real problem!
We also cover the latest Spark Technologies, like Spark SQL, Spark Streaming, and advanced models like Gradient Boosted Trees! After you complete this course you will feel comfortable putting Spark and PySpark on your resume! This course also has a full 30 day money back guarantee and comes with a LinkedIn Certificate of Completion!
If you're ready to jump into the world of Python, Spark, and Big Data, this is the course for you!

Homepage
https://www.udemy.com/course/spark-and-python-for-big-data-with-pyspark/#instructor-1


Screenshots



Link Download

Download Via UploadGig


Download Via Rapidgator

Extract files with WinRar 5 or Latest !

Related News

Big Data with Apache Spark 3 and Python From Zero to  Expert Big Data with Apache Spark 3 and Python From Zero to Expert
Big Data with Apache Spark 3 and Python: From Zero to Expert Published 11/2022 MP4 | Video: h264,...
Learn Apache Spark And Scala From Scratch Learn Apache Spark And Scala From Scratch
Learn Apache Spark And Scala From Scratch Published 12/2022 MP4 | Video: h264, 1280x720 | Audio:...
Databricks Certified Associate Developer for Apache Spark Databricks Certified Associate Developer for Apache Spark
Databricks Certified Associate Developer for Apache Spark Published 11/2022 Created by Data...
Databricks and PySpark for Big Data – From Zero to Expert Databricks and PySpark for Big Data – From Zero to Expert
Udemy – Databricks and PySpark for Big Data – From Zero to Expert English | Tutorial | Size:...

System Comment

Information

Error Users of Visitor are not allowed to comment this publication.

Facebook Comment

Member Area
Top News