Machine Learning Mastery- From Basics to Advanced Techniques
- Development
- Mar 18, 2025

Machine Learning Mastery: From Basics to Advanced Techniques, available at $54.99, has an average rating of 4.8, with 36 lectures, based on 20 reviews, and has 37 subscribers.
You will learn about Explore popular machine learning algorithms. Learn How to use natural language processing (NLP) with Supervised Machine Learning Algorithms for Sentiment Analysis & Text Classification. Implement real-world projects using Python and scikit-learn. Optimize models for accuracy and efficiency. Develop critical thinking skills to tackle real-world challenges. Showcase your skills to potential employers. This course is ideal for individuals who are Practical experience: Learn by doing with hands-on projects and exercises. or Portfolio building: Showcase your skills to potential employers. or Problem-solving: Develop critical thinking skills to tackle real-world challenges. or Continuous learning: Stay updated with the latest advancements in machine learning. It is particularly useful for Practical experience: Learn by doing with hands-on projects and exercises. or Portfolio building: Showcase your skills to potential employers. or Problem-solving: Develop critical thinking skills to tackle real-world challenges. or Continuous learning: Stay updated with the latest advancements in machine learning.
Enroll now: Machine Learning Mastery: From Basics to Advanced Techniques
Summary
Title: Machine Learning Mastery: From Basics to Advanced Techniques
Price: $54.99
Average Rating: 4.8
Number of Lectures: 36
Number of Published Lectures: 36
Number of Curriculum Items: 36
Number of Published Curriculum Objects: 36
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
Who Should Attend
Target Audiences
Are you ready to dive into the exciting world of machine learning? Look no further! In this comprehensive Udemy course, you’ll learn everything you need to know about machine learning, from foundational concepts to cutting-edge techniques.
Are you ready to embark on an exhilarating journey into the world of machine learning? Look no further! Our comprehensive Udemy course, “Machine Learning Mastery: From Basics to Advanced Techniques,” is designed to empower learners of all levels with the knowledge and skills needed to thrive in this dynamic field.
In this course, we demystify machine learning concepts, starting from the fundamentals and gradually progressing to advanced techniques.
What You’ll Learn:
Understand the fundamentals of supervised and unsupervised learning
Explore popular machine learning algorithms.
Use natural language processing (NLP) with Supervised Machine Learning Algorithms for Sentiment Analysis & Text Classification.
Implement real-world projects using Python and scikit-learn.
Optimize models for accuracy and efficiency.
Why Take This Course?
Practical experience: Learn by doing with hands-on projects and exercises.
Portfolio building: Showcase your skills to potential employers.
Problem-solving: Develop critical thinking skills to tackle real-world challenges.
Continuous learning: Stay updated with the latest advancements in machine learning
Whether you’re a beginner or an experienced data scientist, this course will empower you to create intelligent solutions and make an impact in the field of machine learning. Enroll now and start your journey toward becoming a machine learning pro!
Here’s what you can expect:
-
Foundational Knowledge:
-
Understand the core principles of supervised and unsupervised learning.
-
Explore regression, classification, clustering, and dimensionality reduction.
-
Algorithm Deep Dive:
-
Dive into popular machine learning algorithms, including linear regression, decision trees, support vector machines, and neural networks.
-
Learn how to choose the right algorithm for specific tasks.
-
Real-World Applications:
-
Apply your knowledge to real-world projects using Python and libraries like scikit-learn.
-
Tackle natural language processing (NLP) challenges with Supervised ML Algorithms for Sentiment Analysis & Text Classification.
-
Model Optimization:
-
Discover techniques for model evaluation, hyperparameter tuning, and performance optimization.
-
Learn how to avoid common pitfalls and enhance model accuracy.
-
Career Boost:
-
Build a strong portfolio by completing hands-on exercises and projects.
-
Gain practical experience that sets you apart in job interviews.
-
Stay Current:
-
Keep pace with the ever-evolving field of machine learning.
-
Stay informed about the latest research and trends.
Whether you’re a data enthusiast, aspiring data scientist, or seasoned professional, this course provides a solid foundation and equips you with practical skills. Enroll now and unlock the potential of machine learning!
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction to Machine learning with scikit-learn.
Lecture 2: Download All The Datasets Used in This Course From Here.
Chapter 2: The Supervised Machine Learning Workflow.
Lecture 1: The Supervised Learning Workflow
Lecture 2: Measuring Model Performance.
Chapter 3: Regression Supervised ML Algorithm.
Lecture 1: Introduction to Regression.
Lecture 2: The Basics of Linear regression & Regression Performance.
Lecture 3: Cross-validation for R-squared & Analyzing Cross-Validation Metrics.
Lecture 4: Regularized Regression.
Chapter 4: Binary Classification & Multiclass ML Supervised Classifiers.
Lecture 1: The k-Nearest Neighbors Classification Supervised ML Learning Algorithms.
Lecture 2: How Good is your Model? and How to use Random Forest Classifier?
Lecture 3: Logistic Regression and the ROC Curve.
Lecture 4: Hyperparameter Tuning with GridSearchCV & RandomizedSearchCV.
Chapter 5: Feature Engineering for ML Supervised Learning Algorithms.
Lecture 1: Preprocessing Data and Creating Dummy Variable for Categorical Data Variables.
Lecture 2: Handling Missing Data And Creating The ML Pipeline.
Lecture 3: Centering and Scaling Techniques in ML Supervised Learning Algorithms.
Chapter 6: How to Evaluate Multiple Models?
Lecture 1: Evaluating Multiple Models with Examples.
Lecture 2: Comparing Models.
Lecture 3: Logistic Regression and Support Vector Machines for Text Classification.
Chapter 7: Advanced Topics regarding ML Supervised Learning Algorithms.
Lecture 1: Linear Classifier & Decision Boundaries.
Lecture 2: Linear Classifiers & The Coefficients.
Lecture 3: What is The Loss Function?
Lecture 4: Loss Function Diagrams.
Lecture 5: Logistic Regression Regularization & Identifying Negative Reviews.
Lecture 6: Logistic Regression and Probabilities.
Lecture 7: Multi-class Logistic Regression.
Chapter 8: Clustering ML Unsupervised Learning Algorithms.
Lecture 1: Unsupervised Learning The Fundamentals of Clustering.
Lecture 2: Clustering Evaluation & Optimization.
Lecture 3: Transforming Features for Better Clustering & Clustering Stocks Using KMeans.
Lecture 4: Hierarchical Clustering & Visualizing Hierarchies.
Chapter 9: t-SNE for 2-dimensional maps.
Lecture 1: t-SNE for 2-dimensional maps.
Chapter 10: PCA ML Unsupervised Learning Algorithm.
Lecture 1: Visualizing The PCA Transformation & Calculating Cumulative Explained Variance.
Lecture 2: Dimension Reduction with PCA.
Lecture 3: Dimension Reduction with PCA and Non-negative Matrix Factorization (NMF).
Chapter 11: Capstone Project: Building Recommender System using NMF.
Lecture 1: Learn How to Building Recommender System using NMF!
Chapter 12: Review All Course Python ML Code From Here.
Lecture 1: Review All Course Python ML Code From Here.
Chapter 13: Bonus
Lecture 1: Thank you.
Instructors

Tamer Ahmed
Passionate Developer, Data Scientist and Data Engineer.
Rating Distribution
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!
- Random Picks
- Popular
- Hot Reviews
- Acting For The Camera- Win On-Camera Confidence
- MailChimp Free Mailing Lists- MailChimp Email Marketing
- Modern Market Research
- Ecommerce Theory For The Newbie- The Business Side
- 3DS Max Tutorial. Learn The Art of Modelling and Animation
- Personal Finance
- The Beginner Forex Trading Playbook
- How to Draw Cute Thanksgiving!
- 1YouTube Masterclass The Best Guide to YouTube Success
- 2Photoshop CC- Adjustement Layers, Blending Modes Masks
- 3Personal Finance
- 4SolidWorks Essential Training ( 2023 2024 )
- 5The Architecture of Oscar Niemeyer
- 6Polymer Clay Jewelry Making Techniques for Beginners
- 7Advanced Photoshop Manipulations Tutorials Bundle
- 8LINQ- A Course For Beginners
- 1Linux Performance Monitoring Analysis Hands On !!
- 2Content Writing Mastery 1- Content Writing For Beginners
- 3Media Training for PrintOnline Interviews-Get Great Quotes
- 4Learn Facebook Ads from Scratch Get more Leads and Sales
- 5The Complete Digital Marketing Course Learn From Scratch
- 6C#- Start programming with C# (for complete beginners)
- 7[FREE] How to code 10 times faster with Emmet
- 8Driving Results through Data Storytelling