Data Science:Hands-on Diabetes Prediction with Pyspark MLlib

Diabetes Prediction using Machine Learning in Apache Spark

Ratings 4.47 / 5.00
Data Science:Hands-on Diabetes Prediction with Pyspark MLlib

What You Will Learn!

  • Diabetes Prediction using Spark Machine Learning (Spark MLlib)
  • Learn Pyspark fundamentals
  • Working with dataframes in Pyspark
  • Analyzing and cleaning data
  • Process data using a Machine Learning model using Spark MLlib
  • Build and train logistic regression model
  • Performance evaluation and saving model

Description

Would you like to build, train, test and evaluate a machine learning model that is able to detect diabetes using logistic regression?


This is a Hands-on Machine Learning Course where you will practice alongside the classes. The dataset will be provided to you during the lectures. We highly recommend that for the best learning experience, you practice alongside the lectures.


You will learn more in this one hour of Practice than hundreds of hours of unnecessary theoretical lectures.


Learn the most important aspect of Spark Machine learning (Spark MLlib) :


  • Pyspark fundamentals and implementing spark machine learning

  • Importing and Working with Datasets

  • Process data using a Machine Learning model using spark MLlib

  • Build and train Logistic regression model

  • Test and analyze the model


The entire course has been divided into tasks. Each task has been very carefully created and designed to give you the best learning experience. In this hands-on project, we will complete the following tasks:


  • Task 1: Project overview

  • Task 2: Intro to Colab environment & install dependencies to run spark on Colab

  • Task 3: Clone & explore the diabetes dataset

  • Task 4: Data Cleaning

  • Task 5: Correlation & feature selection

  • Task 6: Build and train Logistic Regression Model using Spark MLlib

  • Task 7: Performance evaluation & Test the model

  • Task 8: Save & load model


About Pyspark:


Pyspark is the collaboration of Apache Spark and Python. PySpark is a tool used in Big Data Analytics.

Apache Spark is an open-source cluster-computing framework, built around speed, ease of use, and streaming analytics whereas Python is a general-purpose, high-level programming language. It provides a wide range of libraries and is majorly used for Machine Learning and Real-Time Streaming Analytics.

In other words, it is a Python API for Spark that lets you harness the simplicity of Python and the power of Apache Spark in order to tame Big Data. We will be using Big data tools in this project.


Make a leap into Data science with this Spark MLlib project and showcase your skills on your resume.


Click on the “ENROLL NOW” button and start learning.


Happy Learning.

Who Should Attend!

  • Anyone interested in Data analysis with Spark and ML
  • Anyone who wants to learn fundamentals of Apache Spark in Big Data Analytics

TAKE THIS COURSE

Tags

  • Apache Spark
  • Big Data
  • Machine Learning
  • PySpark

Subscribers

11846

Lectures

6

TAKE THIS COURSE



Related Courses