Learn Fundamentals of Programming in Machine Learning
Learn Fundamentals of Programming in Machine Learning, available at Free, has an average rating of 3.85, with 45 lectures, 1 quizzes, based on 14 reviews, and has 995 subscribers.
You will learn about Grasp fundamental principles underlying machine learning – including supervised learning, unsupervised learning, and reinforcement learning Learn programming fundamentals necessary for machine learning, with a focus on Python programming language Learn techniques for handling and preprocessing data, including cleaning, transforming, and scaling datasets. Learn how to evaluate the performance of machine learning models using various metrics and techniques – like accuracy, precision This course is ideal for individuals who are Python developers interested in learning Machine Learning It is particularly useful for Python developers interested in learning Machine Learning.
Enroll now: Learn Fundamentals of Programming in Machine Learning
Summary
Title: Learn Fundamentals of Programming in Machine Learning
Price: Free
Average Rating: 3.85
Number of Lectures: 45
Number of Quizzes: 1
Number of Published Lectures: 45
Number of Curriculum Items: 46
Number of Published Curriculum Objects: 45
Original Price: Free
Quality Status: approved
Status: Live
What You Will Learn
- Grasp fundamental principles underlying machine learning – including supervised learning, unsupervised learning, and reinforcement learning
- Learn programming fundamentals necessary for machine learning, with a focus on Python programming language
- Learn techniques for handling and preprocessing data, including cleaning, transforming, and scaling datasets.
- Learn how to evaluate the performance of machine learning models using various metrics and techniques – like accuracy, precision
Who Should Attend
- Python developers interested in learning Machine Learning
Target Audiences
- Python developers interested in learning Machine Learning
In today’s data-driven world, Machine Learning (ML) has become an indispensable tool for extracting insights and making informed decisions. This comprehensive course is designed to equip you with the fundamental knowledge and practical skills needed to navigate the exciting realm of Machine Learning.
Through this course, you will embark on a journey that begins with an introduction to the core concepts of ML, including its types, applications, workflow, and challenges. You will gain a solid understanding of the ML process, from data preparation to model deployment.
The course delves into various supervised learning algorithms, such as linear regression, logistic regression, decision trees, random forests, support vector machines (SVM), and naive Bayes. You will learn how to implement these algorithms, evaluate their performance, and apply them to real-world scenarios.
Unsupervised learning techniques, including clustering algorithms like K-means and dimensionality reduction methods, will also be covered. These techniques are essential for exploring and understanding the underlying patterns in data without relying on labeled examples.
Cross-validation, a crucial aspect of model evaluation, will be explored in-depth. You will learn about different evaluation metrics for classification and regression tasks, and how to apply cross-validation techniques to ensure the robustness and generalizability of your models.
Furthermore, the course will introduce you to the concept of bias-variance tradeoff and regularization techniques, which are essential for optimizing model performance and preventing overfitting or underfitting. You will also explore ensemble methods, such as random forests and gradient boosting, which combine multiple models to improve overall accuracy and robustness.
Finally, the course will provide an introduction to the exciting world of deep learning and neural networks. You will gain an understanding of convolutional neural networks (CNNs) and their applications in areas like computer vision and image recognition. Additionally, you will learn about the training process for neural networks and the techniques used to optimize their performance.
Throughout the course, you will have the opportunity to apply your knowledge through hands-on coding exercises and real-world case studies, utilizing popular ML libraries and frameworks. By the end of this course, you will have a solid foundation in Machine Learning and be well-equipped to tackle a wide range of data-driven challenges in various domains.
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction
Lecture 2: Types of Machine Learning
Lecture 3: Applications of ML
Lecture 4: ML Workflow
Lecture 5: Challenges in ML
Lecture 6: Summary
Chapter 2: Regression ML Algorithms
Lecture 1: Linear Regression
Lecture 2: Gradient Descent Algorithm
Lecture 3: Hyper-parameter in ML
Lecture 4: Suummary
Chapter 3: Supervised Learning Algorithms – Part 1
Lecture 1: Logistic Regression
Lecture 2: Decision Trees
Lecture 3: Random Forests
Lecture 4: Performance Evaluation
Lecture 5: Real-world Applications
Lecture 6: Summary
Chapter 4: Supervised Learning Algorithms – Part 2
Lecture 1: Support Vector Machines (SVM)
Lecture 2: SVM – Demo
Lecture 3: Naive Bayes
Lecture 4: Demo: Naive Bayes
Lecture 5: K-Nearest Neighbors (KNN)
Lecture 6: Demo: K-Nearest Neighbors (KNN)
Lecture 7: Summary
Chapter 5: Unsupervised Learning Algorithms
Lecture 1: Clustering Algorithms
Lecture 2: K-means Algorithms
Lecture 3: Dimensionality Reduction
Lecture 4: Feature Selection and Extraction
Lecture 5: Summary
Chapter 6: Cross Validation
Lecture 1: Evaluation Metrics for Classification
Lecture 2: Demo – Evaluation Metrics for Classification
Lecture 3: Evaluation Metrics for Regression
Lecture 4: Demo – Evaluation Metrics for Regression
Lecture 5: Cross-Validation
Lecture 6: Demo – Cross-validation
Chapter 7: ML Tradeoffs
Lecture 1: Bias-Variance Tradeoff
Lecture 2: Regularization Techniques
Lecture 3: Demo: Regularization
Lecture 4: Ensemble Methods
Lecture 5: Demo: Random Forest
Lecture 6: Demo: Gradient Boosting
Lecture 7: Summary
Chapter 8: Neural Networks
Lecture 1: What is deep learning?
Lecture 2: CNNs
Lecture 3: Training NN
Lecture 4: Summary
Instructors
-
Techjedi LLP
Learn from Experts
Rating Distribution
- 1 stars: 1 votes
- 2 stars: 1 votes
- 3 stars: 2 votes
- 4 stars: 5 votes
- 5 stars: 5 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!
You may also like
- Top 10 Language Learning Courses to Learn in November 2024
- Top 10 Video Editing Courses to Learn in November 2024
- Top 10 Music Production Courses to Learn in November 2024
- Top 10 Animation Courses to Learn in November 2024
- Top 10 Digital Illustration Courses to Learn in November 2024
- Top 10 Renewable Energy Courses to Learn in November 2024
- Top 10 Sustainable Living Courses to Learn in November 2024
- Top 10 Ethical AI Courses to Learn in November 2024
- Top 10 Cybersecurity Fundamentals Courses to Learn in November 2024
- Top 10 Smart Home Technology Courses to Learn in November 2024
- Top 10 Holistic Health Courses to Learn in November 2024
- Top 10 Nutrition And Diet Planning Courses to Learn in November 2024
- Top 10 Yoga Instruction Courses to Learn in November 2024
- Top 10 Stress Management Courses to Learn in November 2024
- Top 10 Mindfulness Meditation Courses to Learn in November 2024
- Top 10 Life Coaching Courses to Learn in November 2024
- Top 10 Career Development Courses to Learn in November 2024
- Top 10 Relationship Building Courses to Learn in November 2024
- Top 10 Parenting Skills Courses to Learn in November 2024
- Top 10 Home Improvement Courses to Learn in November 2024