×
MindLuster Logo
Join Our Telegram Channel Now to Get Any New Free Courses : Click Here

How to read the scikit learn documentation

Share your inquiries now with community members Click Here
Sign Up and Get Free Certificate
Sign up Now
Lesson extensions

Lessons List | 8 Lesson

Comments

Our New Certified Courses Will Reach You in Our Telegram Channel
Join Our Telegram Channels to Get Best Free Courses

Join Now

We Appreciate Your Feedback

Excellent
0 Reviews
Good
0 Reviews
medium
1 Reviews
Acceptable
0 Reviews
Not Good
0 Reviews
3
1 Reviews

Subhashree Arumugan

gud 2025-06-20

Kowsalya M

good 2025-06-19

Saranya R

good 2025-06-19

R. Sudha

NICEE 2025-06-17

keerthana a

good 2025-06-17

Ehteshamul Haque

No 2025-06-10

pasindu madushan

good 2025-06-10

Vivek Bag

Good 2025-06-07

María Susana Alonso Mendoza

Great Course! 2025-06-06

burusu bhavana

Good 2025-06-06

sandhiyarani r

good 2025-06-05

Priyanka Bala

Super 2025-06-05

Show More Reviews

Course Description

Advanced machine learning, in this course we will learn about advanced machine learning techniques and algorithms that go beyond the basics. You'll explore ensemble methods like Random Forest, Gradient Boosting, and XGBoost, as well as techniques for feature selection, dimensionality reduction, and hyperparameter optimization. The course covers deep learning fundamentals, including neural networks, activation functions, and backpropagation. You’ll also dive into unsupervised learning techniques like DBSCAN and hierarchical clustering, and advanced topics like anomaly detection, time series forecasting, and model interpretability using SHAP and LIME. We will use Python libraries such as scikit-learn, TensorFlow, and Keras for hands-on implementation. Real-world projects and datasets will help you apply what you learn in practical scenarios. By the end of this course, you'll be equipped to build robust, efficient, and scalable machine learning solutions. Prior experience with basic ML concepts and Python is recommended. Data School