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A Beginner Guide to Machine Learning (in Python)

  • Development
  • Feb 24, 2025
SynopsisA Beginners Guide to Machine Learning (in Python , available...
A Beginner Guide to Machine Learning (in Python)  No.1

A Beginners Guide to Machine Learning (in Python), available at $59.99, has an average rating of 3.45, with 49 lectures, 6 quizzes, based on 78 reviews, and has 1193 subscribers.

You will learn about Understand Machine Learning, Data Mining, Big Data, Data Science, and Data Analytics Learn a little bit of coding in Python Learn Support Vector Machine, Linear Regression, Logistic Regression, K-Nearest Neighbor, Decision Trees, and Neural Networks Learn how to preprocess a dataset Learn how to handle categorical features Learn how to handle unbalanced datasets Understand the different validation methods Understand feature selection and dimensionality reduction Understand hyperparameter optimization This course is ideal for individuals who are Anyone who wants to learn the basics of Machine Learning It is particularly useful for Anyone who wants to learn the basics of Machine Learning.

Enroll now: A Beginners Guide to Machine Learning (in Python)

Summary

Title: A Beginners Guide to Machine Learning (in Python)

Price: $59.99

Average Rating: 3.45

Number of Lectures: 49

Number of Quizzes: 6

Number of Published Lectures: 49

Number of Published Quizzes: 6

Number of Curriculum Items: 55

Number of Published Curriculum Objects: 55

Original Price: $129.99

Quality Status: approved

Status: Live

What You Will Learn

  • Understand Machine Learning, Data Mining, Big Data, Data Science, and Data Analytics
  • Learn a little bit of coding in Python
  • Learn Support Vector Machine, Linear Regression, Logistic Regression, K-Nearest Neighbor, Decision Trees, and Neural Networks
  • Learn how to preprocess a dataset
  • Learn how to handle categorical features
  • Learn how to handle unbalanced datasets
  • Understand the different validation methods
  • Understand feature selection and dimensionality reduction
  • Understand hyperparameter optimization
  • Who Should Attend

  • Anyone who wants to learn the basics of Machine Learning
  • Target Audiences

  • Anyone who wants to learn the basics of Machine Learning
  • In this course, you will learn the basics of Machine Learning and?Data Mining; almost everything you need to get started. You will understand what Big Data is and what Data Science and Data?Analytics is. You will learn algorithms such as Linear Regression, Logistic Regression,?Support Vector Machine, K-Nearest Neighbor, Decision Trees, and Neural Networks. You’ll also understand how to combine algorithms into ensembles. Preprocessing data will be taught and?you will understand how to clean your data, transform it, how to handle categorical features, and how to handle unbalanced data. By the end of this course, you will understand the ABCs of Machine Learning?and be able to implement what you’ve learnt on your own, more specifically, be able to implement what you’ve learnt on Python. There is no ideal student as there are no prior requirements needed – everybody is welcome!!

    Please feel free to ask me any question! Don’t like the course? Ask for a 30-day refund!!

    Real Testaments –>

    1) “Excellent course!! Dana is very knowledgeable about Machine Learning, and is able to present the concepts and practices in a way that is easy to understand, along with actionable exercises to implement and practice. The presentation is very detailed and direct. A topic is introduced, explained, displayed with example and then we began implementing it.” Joseph, 5 star rating

    2) “The instructor gives a very basic explanation for complicated material. that makes it very easy for me to understand given that I already studied that in a master class but I understand it better here. Thank you” ? Fatimah, 5 star rating

    3) “I think it was a very useful begginner’s guide to Machine Learning using Python. I learned a lot !. Thanks” Hernan, 4 star rating

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Course Outline

    Lecture 2: Practical Exercises

    Lecture 3: Machine Learning

    Lecture 4: Exploratory Data Analysis

    Lecture 5: Introduction to Python

    Lecture 6: Descriptive Statistics and Histograms in Python

    Lecture 7: Spambase Dataset

    Lecture 8: Dataset Resources

    Chapter 2: Algorithms

    Lecture 1: Model Evaluation

    Lecture 2: Linear Regression

    Lecture 3: Support Vector Machine

    Lecture 4: Support Vector Machine in Python

    Lecture 5: K-Nearest Neighbor

    Lecture 6: K-Nearest Neighbor in Python

    Lecture 7: Decision Trees

    Lecture 8: Decision Trees in Python

    Lecture 9: Logistic Regression

    Lecture 10: Neural Networks

    Lecture 11: Neural Networks in Python

    Lecture 12: Ensemble Learning

    Lecture 13: Ensemble Learning in Python

    Lecture 14: Energy Efficiency Dataset

    Lecture 15: Regression Problem in Python

    Lecture 16: Hyperparameters

    Lecture 17: Hyperparameters vs. Parameters Examples

    Lecture 18: Kernels and Learning Rate vs. Momentum

    Chapter 3: Model Performance

    Lecture 1: Performance Metrics

    Lecture 2: Overfitting vs. Underfitting

    Chapter 4: Data Preprocessing

    Lecture 1: Data Cleaning

    Lecture 2: Data Transformation

    Lecture 3: Data Transformation in Python

    Lecture 4: Categorical Features

    Lecture 5: Unbalanced Data

    Chapter 5: Other

    Lecture 1: Validation Methods

    Lecture 2: The Holdout Method and Confusion Matrix in Python

    Lecture 3: The K-Fold Method and Cleaning the Data

    Lecture 4: Classifying New Observations

    Lecture 5: Feature Selection

    Lecture 6: Feature Selection in Python

    Lecture 7: Dimensionality Reduction

    Lecture 8: Principle Component Analysis in Python

    Lecture 9: Hyperparameter Optimization

    Lecture 10: Grid Search Optimization in Python, Part #1

    Lecture 11: Grid Search Optimization in Python, Part #2

    Lecture 12: Grid Search Optimization in Python, Part #3

    Chapter 6: BONUS OFFER!!

    Lecture 1: Bonus Lecture: Discounted Coupons

    Chapter 7: Appendix

    Lecture 1: Big Data

    Lecture 2: Data Science

    Lecture 3: Data Analytics

    Instructors

  • A Beginner Guide to Machine Learning (in Python)  No.2
    Curiosity for Data Science
    Architect and Industrial Engineer
  • Rating Distribution

  • 1 stars: 2 votes
  • 2 stars: 3 votes
  • 3 stars: 17 votes
  • 4 stars: 21 votes
  • 5 stars: 35 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    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!