PySpark for Data Science - IV: Machine Learning
Contact us

PySpark for Data Science - IV: Machine Learning

  • Dive into the world of big data processing with PySpark, the Python library for Apache Spark.
  • Learn how to process, analyze, and derive insights from massive datasets using Python’s user-friendly
    interface.
  • Elevate your data skills with PySpark. Dive deep into distributed data processing, machine learning,
    streaming, and more to navigate the vast oceans of big data.

Created by Selva Prabhakaran

  • 19 Video Lessons

  • English

  • English captions

What you will learn

01

PySpark linear
regression

02

PySpark Logistic
regression

03

PySpark LASSO
Regression

04

PySpark Ridge
Regression

Course Curriculum

Requirements

  • Courses Page1 Basics of Python
  • Courses Page1 Foundational knowledge of Data Science
  • Courses Page1 High school maths

Who should attend this course?

  • Data Science Aspirants

  • Data Science Professionals

  • Software/Data engineers interested in quantitative analysis

  • Professionals working with large datasets

  • Data analysts, economists, researchers

Instructor

Selva Prabhakaran Principal Data Scientist

My name is Selva, and I am super excited to mentor you on this project!

I head the Data Science team for a global Fortune 500 company and over the last 10 years of my data science experience I’ve deployed 20+ global products. I’m also the Founder & Chief Author of Machine Learning Plus, which has over 4M annual readers.

I specialize in covering the in-depth intuition and maths of any concept or algorithm. And based on my existing student requests, I’ve put up the series of courses and projects with detailed explanations – just like an on the job experience. Hope you love it!

  • 4.5+Instructor rating

  • 200+ reviews

  • 75K+students

  • 50+ Courses

Launch your GraphyLaunch your Graphy
100K+ creators trust Graphy to teach online
Complete Data Science Pathway by ML+ | TagTree Technology Private Limited 2024 Privacy policy Terms of use Contact us Refund policy