[ FreeCourseWeb ] Udemy - Build Apache Spark Machine Learning Project (Banking Domain)

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[ FreeCourseWeb.com ] Build Apache Spark Machine Learning Project (Banking Domain)

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Genre: eLearning | MP4 | Video: h264, 1280x720 | Audio: aac, 44100 Hz
Language: English | VTT | Size: 632 MB | Duration: 1.5 hours
What you'll learn
In this Apache Spark Project course you will implement Predicting Customer Response to Bank Direct Telemarketing Campaign Project in Apache Spark (ML) using Databricks Notebook (Community edition server)
Explore Apache Spark and Machine Learning on the Databricks platform.
Launching Spark Cluster
Create a Data Pipeline
Process that data using a Machine Learning model (Spark ML Library)
Hands-on learning
Real-time Use Case
Publish the Project on Web to Impress your recruiter

Requirements
Apache Spark basic and Scala fundamental knowledge is required and SQL Basics along with Machine Learning
Following browsers on Windows, Linux or macOS desktop:
Google Chrome (Latest version), Firefox (Latest version), Safari (Latest version), Microsoft Edge* (Latest version)
Internet Explorer 11* on Windows 7, 8, or 10 (with latest Windows updates applied)
*You might see performance degradation for some features on Microsoft Edge and Internet Explorer.
The following browsers are not supported:
Mobile browsers.
Beta, “preview,” or otherwise pre-release versions of desktop browsers.
Description
Predicting Customer Response to Bank Direct Telemarketing Campaign Project in Apache Spark Project (Machine Learning) for a beginner using Databricks Notebook (Unofficial)

Why should you learn Apache Spark Machine Learning Project?

Apache Spark Machine Learning is becoming incredibly popular, and with good reason. According to IBM, Ninety percent of the data in the world today has been created in the last two years alone. Our current output of data is roughly 2.5 quintillion bytes per day. The world is being immersed in data, more so each and every day.

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[ FreeCourseWeb ] Udemy - Build Apache Spark Machine Learning Project (Banking Domain)


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621.1 MB
seeders:4
leechers:5
[ FreeCourseWeb ] Udemy - Build Apache Spark Machine Learning Project (Banking Domain)


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