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Master Machine Learning- Basics, Jobs and Interview Bootcamp

  • Development
  • Apr 15, 2025
SynopsisMaster Machine Learning: Basics, Jobs and Interview Bootcamp,...
Master Machine Learning- Basics, Jobs and Interview Bootcamp  No.1

Master Machine Learning: Basics, Jobs and Interview Bootcamp, available at $39.99, has an average rating of 4.75, with 58 lectures, based on 2 reviews, and has 16 subscribers.

You will learn about Master Machine Learning on Python , Make Machine Learning models, Build powerful Machine Learning models and know how to combine them to solve any problem Master Machine Learning on Python Make accurate predictions using Machine Learning. Make powerful analysis Build an army of powerful Machine Learning models and know how to combine them to solve any problem This course is ideal for individuals who are Anyone interested in Machine Learning , Any people who want to create added value to their business by using powerful Machine Learning tools , Any people who are not satisfied with their job and who want to become a Data Scientist or Those who are not able to find jobs in machine learning field. or Those who want to make a better future using machine learning. or Those who want to brush up there basics in machine learning field. It is particularly useful for Anyone interested in Machine Learning , Any people who want to create added value to their business by using powerful Machine Learning tools , Any people who are not satisfied with their job and who want to become a Data Scientist or Those who are not able to find jobs in machine learning field. or Those who want to make a better future using machine learning. or Those who want to brush up there basics in machine learning field.

Enroll now: Master Machine Learning: Basics, Jobs and Interview Bootcamp

Summary

Title: Master Machine Learning: Basics, Jobs and Interview Bootcamp

Price: $39.99

Average Rating: 4.75

Number of Lectures: 58

Number of Published Lectures: 58

Number of Curriculum Items: 58

Number of Published Curriculum Objects: 58

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • Master Machine Learning on Python , Make Machine Learning models, Build powerful Machine Learning models and know how to combine them to solve any problem
  • Master Machine Learning on Python
  • Make accurate predictions using Machine Learning.
  • Make powerful analysis
  • Build an army of powerful Machine Learning models and know how to combine them to solve any problem
  • Who Should Attend

  • Anyone interested in Machine Learning , Any people who want to create added value to their business by using powerful Machine Learning tools , Any people who are not satisfied with their job and who want to become a Data Scientist
  • Those who are not able to find jobs in machine learning field.
  • Those who want to make a better future using machine learning.
  • Those who want to brush up there basics in machine learning field.
  • Target Audiences

  • Anyone interested in Machine Learning , Any people who want to create added value to their business by using powerful Machine Learning tools , Any people who are not satisfied with their job and who want to become a Data Scientist
  • Those who are not able to find jobs in machine learning field.
  • Those who want to make a better future using machine learning.
  • Those who want to brush up there basics in machine learning field.
  • This course is designed by Manik Soni, professional Data Scientists so that I can share my knowledge and help you learn complex theory, algorithms, and coding libraries in a simple way.

    Moreover, the course is packed with practical exercises that are based on real-life examples. So not only will you learn the theory, but you will also get some hands-on practice building your own machine learning models.

    1. Master Machine Learning on Python

    2. Have a great intuition of many Machine Learning models

    3. Make accurate predictions

    4. Make a powerful analysis

    5. Make robust Machine Learning models

    6. Create strong added value to your business

    7. Use Machine Learning for personal purpose

    8. Handle advanced techniques like Dimensionality Reduction

    9. Know which Machine Learning model to choose for each type of problem

    10. Build an army of powerful Machine Learning models and know-how to combine them to solve any problem

    11. Questions for Job Interview

      Who this course is for:

    12. Anyone interested in Machine Learning.

    13. Students who have at least high school knowledge in math and who want to start learning Machine Learning.

    14. Any intermediate-level people who know the basics of machine learning, including the classical algorithms like linear regression or logistic regression, but who want to learn more about it and explore all the different fields of Machine Learning.

    15. Any people who are not that comfortable with coding but who are interested in Machine Learning and want to apply it easily on datasets.

    16. Any students in college who want to start a career in Data Science.

    17. Any data analysts who want to level up in Machine Learning.

    18. Any people who are not satisfied with their job and who want to become a Data Scientist.

    19. Any people who want to create added value to their business by using powerful Machine Learning tools.

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Introduction

    Lecture 2: Importance of Machine Learning

    Chapter 2: Data PreProcessing

    Lecture 1: Importing Basic Libraries

    Lecture 2: Importing DataSet

    Lecture 3: Matrix of Features and Dependent Variable

    Lecture 4: Processing of Missing Values

    Lecture 5: Processing of Categorical Data

    Lecture 6: Splitting the DataSet into Train and Test Set

    Lecture 7: Feature Scaling on DataSet

    Chapter 3: Simple Linear Regression

    Lecture 1: Introduction to Simple Linear Regression

    Lecture 2: Ordinary Least Squares

    Lecture 3: CODE : Simple Regression(Part 1)

    Lecture 4: CODE : Simple Regression(Part 2)

    Lecture 5: CODE : Simple Regression(Part 3)

    Lecture 6: visualisation of simple Linear Regression Model

    Chapter 4: Multiple Linear Regression

    Lecture 1: Introduction to Multiple Linear Regression

    Lecture 2: Dummy Variable and Dummy Variable Trap

    Lecture 3: Introduction to Build a Model ?

    Lecture 4: Backward Elimination

    Lecture 5: CODE : Backward Elimination(PART1)

    Lecture 6: CODE : Backward Elimination(PART2)

    Lecture 7: CODE : Backward Elimination(PART3)

    Chapter 5: Polynomial Regression

    Lecture 1: Introduction to Polynomial Regression ?

    Lecture 2: CODE : Polynomial Regression

    Chapter 6: Decision Tree Regression

    Lecture 1: Introduction to Decision Tree Regression ?

    Lecture 2: CODE : Decision Tree Regression

    Chapter 7: Random Forest Regression

    Lecture 1: Introduction to Random Forest Regression?

    Lecture 2: CODE : Random Forest Regression

    Chapter 8: Logistic Regression

    Lecture 1: Introduction to Logistic Regression?

    Lecture 2: CODE : Logistic Regression(PART1)

    Lecture 3: CODE : Logistic Regression(PART2)

    Lecture 4: Confusion Matrix

    Lecture 5: Logistic Regression Visualization

    Chapter 9: K-Nearest Neighbor

    Lecture 1: Introduction to K-Nearest Neighbor?

    Lecture 2: CODE : K-Nearest Neighbor

    Chapter 10: Support Vector Machine(SVM)

    Lecture 1: Introduction to Support Vector Machine(SVM)?

    Lecture 2: CODE: Support Vector Machine(SVM)

    Chapter 11: Kernel – Support Vector Machine(SVM)

    Lecture 1: Linearly Separable Vs Non Linearly Separable

    Lecture 2: Mapping to higher dimensions

    Lecture 3: Deep Knowledge of Kernel Function

    Lecture 4: Types of Kernel Function

    Lecture 5: CODE : Kernel Support Vector Machine(SVM)

    Chapter 12: Naive Bayes

    Lecture 1: Introduction to Bayes Theorem?

    Lecture 2: Introduction to Project Naive Bayes with example

    Lecture 3: CODE : Naive Bayes

    Chapter 13: Decision Tree Classification

    Lecture 1: Introduction to Decision Tree Classification

    Lecture 2: CODE : Decision Tree Classification

    Chapter 14: Random Forest Classification

    Lecture 1: Introduction to Random Forest Classification

    Lecture 2: CODE : Random Forest Classification

    Chapter 15: K- Means Clustering

    Lecture 1: Introduction to K- Means Clustering ?

    Lecture 2: What is Random Initialization Trap ?

    Lecture 3: How to choose right number of clusters?

    Lecture 4: CODE: K-Means Clustering?

    Chapter 16: Hierarchical Clustering

    Lecture 1: Introduction to Hierarchical Clustering

    Lecture 2: What is Dendogram and How it works?

    Lecture 3: CODE : Hierarchical Clustering

    Chapter 17: Capstone Project and Interview Questions

    Lecture 1: Capstone Project

    Lecture 2: Interview Questions

    Instructors

  • Master Machine Learning- Basics, Jobs and Interview Bootcamp  No.2
    Manik Soni
    Professional Project Manager
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  • Frequently Asked Questions

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    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!

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