5  1 reviews on Udemy

Coaching Course: 0 to 1: Spark for Data Science with Python

A Blended Learning Course
Course from Udemy
 22 students enrolled
 en
Effectively check and installing of Spark dependencies.
Define PySpark and check the PySpark Package by running a program.
Define transformations and actions to effectively extract information and retrieve results.
Create a base RDD and perform a count() action to view counts of Dataset independently.
Introduce RDD partitions and define the functions and customization features of RDD partitions.
Check and apply partitions within RDD independently.
Explore the parallel application of map() and reduce() operations.

**This coaching course is approved by SkillsFuture Singapore. It combines online learning with face-to-face skills coaching sessions conducted in small groups in Singapore. Singaporeans can purchase this coaching course with their SkillsFuture Credit. Other learners in Singapore (without SkillsFuture Credit) may also purchase this course on their own account.

From 0 to 1 : Spark for Data Science with Python is a course that consists of learning/ Using of Spark and Python to work on a variety of datasets. Learners will gain experience and skills in analyzing data. They will learn and use the techniques, technologies and tools. These include machine learning and data science with spark’s core functionality and built-in libraries such as RDDs, Dataframes, SparkSQL, MLlib, Spark Streaming and GraphX with algorithms like PageRank, MapReduce and Graph datasets. 

Coaching Course: 0 to 1: Spark for Data Science with Python
$ 199.99
per course
Also check at

FAQs About "Coaching Course: 0 to 1: Spark for Data Science with Python"

About

Elektev is on a mission to organize educational content on the Internet and make it easily accessible. Elektev provides users with online course details, reviews and prices on courses aggregated from multiple online education providers.
DISCLOSURE: This page may contain affiliate links, meaning when you click the links and make a purchase, we receive a commission.

SOCIAL NETWORK