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Data Science- Diabetes Prediction- Model Building Deployment

  • Development
  • Mar 02, 2025
SynopsisData Science: Diabetes Prediction- Model Building Deployment,...
Data Science- Diabetes Prediction- Model Building Deployment  No.1

Data Science: Diabetes Prediction- Model Building Deployment, available at $54.99, has an average rating of 3.83, with 28 lectures, based on 3 reviews, and has 41 subscribers.

You will learn about Data Analysis and Understanding Data Cleaning and Imputation Data Preparation Model Building for Diabetes Prediction Hyperparameter Tuning Classification Metrics Model Evaluation Running the model on a local Streamlit Server Pushing your notebooks and project files to GitHub repository Deploying the project on Heroku Cloud Platform This course is ideal for individuals who are Students and professionals who want to learn Data Analysis, Data Preparation for Model building, Evaluation and Model Deployment on Cloud. or Students and professionals who wants to visually interact with their created models. or Professionals who knows how to create models but wants to deploy their models on cloud platform. It is particularly useful for Students and professionals who want to learn Data Analysis, Data Preparation for Model building, Evaluation and Model Deployment on Cloud. or Students and professionals who wants to visually interact with their created models. or Professionals who knows how to create models but wants to deploy their models on cloud platform.

Enroll now: Data Science: Diabetes Prediction- Model Building Deployment

Summary

Title: Data Science: Diabetes Prediction- Model Building Deployment

Price: $54.99

Average Rating: 3.83

Number of Lectures: 28

Number of Published Lectures: 28

Number of Curriculum Items: 28

Number of Published Curriculum Objects: 28

Original Price: ?999

Quality Status: approved

Status: Live

What You Will Learn

  • Data Analysis and Understanding
  • Data Cleaning and Imputation
  • Data Preparation
  • Model Building for Diabetes Prediction
  • Hyperparameter Tuning
  • Classification Metrics
  • Model Evaluation
  • Running the model on a local Streamlit Server
  • Pushing your notebooks and project files to GitHub repository
  • Deploying the project on Heroku Cloud Platform
  • Who Should Attend

  • Students and professionals who want to learn Data Analysis, Data Preparation for Model building, Evaluation and Model Deployment on Cloud.
  • Students and professionals who wants to visually interact with their created models.
  • Professionals who knows how to create models but wants to deploy their models on cloud platform.
  • Target Audiences

  • Students and professionals who want to learn Data Analysis, Data Preparation for Model building, Evaluation and Model Deployment on Cloud.
  • Students and professionals who wants to visually interact with their created models.
  • Professionals who knows how to create models but wants to deploy their models on cloud platform.
  • This course is about predicting whether or not the person has diabetes using Machine Learning Models. This is a hands on project where I will teach you the step by step process in creating and evaluating a machine learning model and finally deploying the same on Cloud platforms to let your customers interact with your model via an user interface.

    This course will walk you through the initial data exploration and understanding, data analysis, data preparation, model building, evaluation and deployment techniques. We will explore multiple ML algorithms to create our model and finally zoom into one which performs the best on the given dataset.

    At the end we will learn to create an User Interface to interact with our created model and finally deploy the same on Cloud.

    I have splitted and segregated the entire course in Tasks below, for ease of understanding of what will be covered.

    Task 1  :  Installing Packages

    Task 2  :  Importing Libraries.

    Task 3  :  Loading the data from source.

    Task 4  :  Pandas Profiling

    Task 5  :  Understanding the data

    Task 6  :  Data Cleaning and Imputation

    Task 7  :  Train Test Split

    Task 8  :  Scaling using StandardScaler

    Task 9  :  About Confusion Matrix

    Task 10 :  About Classification Report

    Task 11 :  About AUC-ROC

    Task 12 :  Checking for model performance across a wide range of models

    Task 13 :  Creating Random Forest model with default parameters

    Task 14 :  Model Evaluation – Classification Report,Confusion Matrix,AUC-ROC

    Task 15 :  Hyperparameter Tuning using RandomizedSearchCV

    Task 16 :  Building RandomForestClassifier model with the selected hyperparameters

    Task 17 :  Final Model Evaluation – Classification Report,Confusion Matrix,AUC-ROC

    Task 18 :  Final Inference

    Task 19 :  Loading the saved model and scaler objects

    Task 20 :  Testing the model on random data

    Task 21 :  What is Streamlit and Installation steps.

    Task 22 :  Creating an user interface to interact with our created model.

    Task 23 :  Running your notebook on Streamlit Server in your local machine.

    Task 24 :  Pushing your project to GitHub repository.

    Task 25 :  Project Deployment on Heroku Platform for free.

    Data Analysis, Model Building and Deployment is one of the most demanded skill of the 21st century. Take the course now, and have a much stronger grasp of data analysis, machine learning and deployment in just a few hours!

    You will receive :

    1. Certificate of completion from AutomationGig.

    2. All the datasets used in the course are in the resources section.

    3. The Jupyter notebook and other project files are provided at the end of the course in the resource section.

    So what are you waiting for?

    Grab a cup of coffee, click on the ENROLL NOW Button and start learning the most demanded skill of the 21st century. We’ll see you inside the course!

    Happy Learning !!

    [Please note that this course and its related contents are for educational purpose only]

    Music : bensound

    Course Curriculum

    Chapter 1: Introduction and Getting Started

    Lecture 1: Project Overview

    Lecture 2: Installing Packages

    Chapter 2: Data Understanding, Exploration & Cleaning

    Lecture 1: Problem Statement overview and Importing Libraries

    Lecture 2: Loading the data from source

    Lecture 3: Pandas Profiling

    Lecture 4: Understanding the data

    Lecture 5: Data Cleaning and Imputation

    Chapter 3: Data Preparation

    Lecture 1: Train Test Split

    Lecture 2: Scaling using StandardScaler

    Chapter 4: Classification Metrics

    Lecture 1: About Confusion Matrix

    Lecture 2: About Classification Report

    Lecture 3: About AUC-ROC

    Chapter 5: Model Building and Evaluation

    Lecture 1: Checking for model performance across a wide range of models

    Lecture 2: Creating Random Forest model with default parameters

    Lecture 3: Model Evaluation – Classification Report,Confusion Matrix,AUC-ROC

    Lecture 4: Hyperparameter Tuning using RandomizedSearchCV

    Lecture 5: Building RandomForestClassifier model with the selected hyperparameters

    Lecture 6: Final Model Evaluation – Classification Report,Confusion Matrix,AUC-ROC

    Lecture 7: Final Inference

    Chapter 6: Model in Action

    Lecture 1: Loading the saved model and scaler objects

    Lecture 2: Testing the model on random data

    Chapter 7: Running the model on a local Server

    Lecture 1: What is Streamlit and Installation steps

    Lecture 2: Creating an user interface to interact with our created model.

    Lecture 3: Running the model on Local Streamlit Server

    Chapter 8: Deploying the project on Heroku Platform

    Lecture 1: Updating your Project directory

    Lecture 2: Pushing your code to Github repository

    Lecture 3: Project deployment on Heroku Platform

    Chapter 9: Project Files and Code

    Lecture 1: Full Project Code

    Instructors

  • Data Science- Diabetes Prediction- Model Building Deployment  No.2
    AutomationGig .
    ELEARNING HUB
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  • Frequently Asked Questions

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