Machine learning

About Course
This course provides a comprehensive introduction to the field of Machine Learning (ML). Students will gain a solid foundation in ML concepts, algorithms, and applications. The course covers key topics such as supervised and unsupervised learning, neural networks, and deep learning. Practical hands-on experience is emphasized through coding exercises and a capstone project. By the end of the course, students will be equipped with the skills to apply ML techniques to real-world problems and understand the ethical considerations in the field.
Learning Format:
– Live interactive classes
– Recorded tutorials for flexible learning
– Hands-on exercises and projects to concepts
– 24/7 doubt clearing facility
Format:
– Live interactive classes
– Recorded tutorials for flexible learning
– Hands-on exercises and projects to concepts
– 24/7 doubt clearing facility
Format:
- Self-paced online course with video lectures and practical exercises.
- Real-world case studies and projects for hands-on application.
- Capstone project to showcase mastery of Machine learning Courses skills.
Assignments:
– Daily hands-on exercises to Machine learning Courses
– Project-based assessments to apply knowledge in practical scenarios
Final Project:
- Final Project Overview
- Planning and executing a Machine learning Courses project
- Showcasing learned skills
- Course Recap and Next Steps
- Reviewing key concepts
- Resources for ongoing learning
- Certification:
- Comprehensive assessment covering the entire course
- Practical problem-solving and application of knowledge
Course Content
Introduction to Machine Learning
-
Overview of Machine Learning
00:00 -
Historical context and evolution
00:00 -
Types of Machine Learning: Supervised, Unsupervised, Reinforcement Learning
00:00 -
Real-world applications and case studies
00:00 -
Python and Jupyter Notebooks for ML
00:00
Fundamentals of Python and NumPy
Data Preprocessing and Exploratory Data Analysis (EDA)
Supervised Learning – Regression
Supervised Learning – Classification
Unsupervised Learning – Clustering
Dimensionality Reduction
Model Evaluation and Hyperparameter Tuning
Neural Networks and Deep Learning
Natural Language Processing (NLP) and Text Mining
Reinforcement Learning
Special Topics in Machine Learning
Capstone Project
Ethical Considerations and Future Directions
Quiz:
Student Ratings & Reviews
No Review Yet