Python Machine Learning with Scikit Learn Training
Venue
Entrance Fee
Category
Event Type
Share
Schedule
Date | Time |
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12/01/2025 | 9:30 AM - 5:30 PM |
21/01/2025 | 9:30 AM - 5:30 PM |
Enter the dynamic realm of machine learning with our specialized Python training module using Scikit-Learn at Tertiary Courses. From understanding the core differences between supervised and unsupervised learning to hands-on engagements with classification model analysis, our curriculum promises in-depth exploration. F1 Score and AUC metrics ensure that participants gain key insights into the accuracy and performance of their ML models.
The course further delves into critical machine learning facets like multivariate linear regression, supplemented by techniques such as Ridge and Lasso regularization to counter overfitting effectively. Participants will also be introduced to Silhouette Analysis and Dendrogram methods, empowering them with clustering skills. Concluding with dimension reduction using PCA, our program ensures that attendees walk away with a well-rounded, practical understanding of Python-powered machine learning using Scikit-Learn.
Certificate
All participants will receive a Certificate of Completion from Tertiary Courses after achieved at least 75% attendance.
Funding and Grant
HRD Corp Claimable Course for Employers Registered with HRD Corp
Course Code: M268
Topic 1 Overview of Machine Learning and Scikit Learn
Introduction to Machine Learning
Supervised vs Unsupervised Learnings
Machine Learning Applications and Case Studies
What is Scikit Learn
Installing Scikit-Learn
Topic 2 Classification
What is Classification
Classification Algorithms
Classification Workflow
Confusion Matrix
Binary Classification Metrics
ROC and AUC
Topic 3 Regression
What is Regression?
Regression Algorithms
Regression Workflow
Regression Metrics
Overfitting and Regularizations
Topic 4 Clustering
What is Clustering
K-Means Clustering
Silhouette Analysis
Dendrogram and Hierarchical Clustering
Topic 5 Principal Component Analysis
Curse of Dimensionality Issue
What is Principal Component Analysis (PCA)
Feature Reduction with PCA