The Machine Learning Specialization is a comprehensive, hands-on program designed to equip learners with the skills and knowledge to build and deploy machine learning models in real-world applications. This course provides a structured pathway from foundational programming skills in Python to advanced machine learning techniques, including deep learning and reinforcement learning.

Through interactive coding exercises, practical case studies, and industry-relevant projects, learners will gain expertise in supervised, unsupervised, deep, and reinforcement learning. The course also includes a final capstone project, allowing participants to showcase their ability to apply machine-learning solutions to real-world challenges.

REFLECT AND APPLY

Apply your new skills in your workplace with practical examples from technical environments, supported by reflection prompts to deepen your learning.

SHOWCASE YOUR SUCCESS

Earn a Professional Certificate along with Continuing Education Units to highlight your achievements.

LEARN FROM EXPERTS

Benefit from the knowledge and experience of top faculty members and industry leaders.

LEARN AT YOUR OWN PACE

Access the content online anytime and enjoy the flexibility of learning on the go.

INTERACT WITH SPECIALISTS

Engage with an international network of professionals while tackling projects inspired by real-world scenarios.

HANDS-ON LEARNING

Master skills through hands-on simulations, case studies, tools, and assessments.

Course Curriculum

Track 1: Python for Machine Learning (Beginner Level)
1. Introduction to Python & Jupyter Notebooks Details 00:00:00
2. Python Data Structures & Fundamentals Details 00:00:00
3. Working with Data in Python Details 00:00:00
4. APIs and Data Collection Details 00:00:00
Track 2: Supervised Learning – Regression & Classification (Intermediate Level)
1. Introduction to Machine Learning Details 00:00:00
2. Regression Models Details 00:00:00
3. Classification Models Details 00:00:00
4. Model Evaluation & Optimization Details 00:00:00
Track 3: Deep Learning & Neural Networks (Advanced Level)
1. Neural Networks Fundamentals Details 00:00:00
2. Training Deep Neural Networks Details 00:00:00
3. TensorFlow & Keras for Deep Learning Details 00:00:00
4. Special Topics in Deep Learning Details 00:00:00
Track 4: Unsupervised Learning & Reinforcement Learning (Specialization Level)
1. Unsupervised Learning & Clustering Details 00:00:00
2. Recommender Systems Details 00:00:00
3. Dimensionality Reduction & Feature Engineering Details 00:00:00
4. Introduction to Reinforcement Learning Details 00:00:00
Final Capstone Project
Learners will work on a real-world ML project, applying concepts from all four tracks. Details 5, 00:00

Course Reviews

N.A

ratings
  • 5 stars0
  • 4 stars0
  • 3 stars0
  • 2 stars0
  • 1 stars0

No Reviews found for this course.

Apply for Course
0 STUDENTS ENROLLED