This course explores common machine learning models and how they are trained. Students learn how different models work, how training is performed, and how performance is improved.
Ingrid Björnsson | Level 1 Organization
Machine learning models
Decision trees basics
Training algorithms
Model optimization methods
Model evaluation metrics
Linear and logistic models
Neural network overview
Loss functions basics
Overfitting and underfitting
Training workflow
Machine Learning Models and Training Techniques
Learn how machine learning models are built, trained, and improved.
Machine learning models are the core of intelligent systems. This course is designed to help students understand how different machine learning models work and how they are trained using data. You will explore the logic behind model selection, training processes, and performance improvement.
What You’ll Learn
During this course, students will explore key machine learning models and training techniques, including:
• Machine Learning Models: Understanding the role of models in ML systems.
• Linear and Logistic Models: Core models for prediction and classification.
• Decision Trees: How tree-based models make decisions.
• Neural Networks: Basic structure and learning process.
• Training Algorithms: How models learn from data.
• Loss Functions: Measuring model errors.
• Optimization Techniques: Improving model performance.
• Overfitting and Underfitting: Recognizing and avoiding common problems.
• Evaluation Metrics: Measuring accuracy and effectiveness.
Students learn not only how models are trained, but also how to choose the right model and understand training results. The course combines conceptual understanding with practical development thinking.

Why This Course Matters
• Core ML Knowledge: Focuses on the heart of machine learning systems.
• Development-Oriented: Explains training from an engineering perspective.
• Clear Model Comparison: Helps students understand when to use each model.
• Foundation for Advanced ML: Prepares learners for deep learning and deployment topics.
This course builds the technical confidence needed to work with machine learning models in real systems. You will gain a clear understanding of how training techniques shape intelligent behavior in modern applications.
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Hannah Mccarty | Programmer, Software Developer
Hannah Mccarty | Programmer, Software Developer
Hannah Mccarty | Programmer, Software Developer
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Quantum | Professional Systems Programmer
Quantum | Professional Systems Programmer
ZenCode Labs | Systems Programmer
ZenCode Labs | Systems Programmer
ZenCode Labs | Systems Programmer
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