Master Course : Fundamentals of Machine Learning (101 level)

0
Machine Learning, Supervised Machine Learning, Unsupervised Machine Learning, Deep Learning, TensorFlow, Keras, NLP

Requirements

  • Basic skills and ideas of machine learning and deep learning

Description

This course offers a comprehensive journey through the evolving field of machine learning and artificial intelligence, beginning with the foundational techniques and progressing to advanced methodologies. The first module delves into the essential steps of data preprocessing, supervised learning algorithms, and their real-world applications. As students advance, they will explore unsupervised learning techniques, model evaluation methods, and the critical importance of feature engineering in improving model performance. The course emphasizes the power of deep learning in extracting meaningful insights from complex data, equipping learners with the necessary skills to build cutting-edge machine learning models.

Building on this foundation, the course moves into advanced AI topics, including the use of TensorFlow and Keras for constructing deep learning architectures, and natural language processing (NLP) for enabling machines to understand human language. Students will gain hands-on experience applying these techniques to practical problems, including computer vision and reinforcement learning. Ethical considerations in AI deployment are also discussed, providing students with a holistic understanding of the technology’s societal impact. In the final modules, the course addresses state-of-the-art methods such as generative models, transfer learning, and the future of AI in practice, preparing students to navigate and innovate in the rapidly evolving landscape of artificial intelligence.

In this master course, I would like to teach the major topics:

1. Foundations of Machine Learning: Preprocessing, Supervised Learning, and Beyond

2. Mastering Machine Learning: Unsupervised Techniques, Model Evaluation, and More

3. Feature Engineering and Deep Learning: Unlocking the Power of Data

4. TensorFlow, Keras, and NLP: Building Bridges to Natural Language Understanding

5. Visualizing the Future: Computer Vision, Reinforcement Learning, and Ethical Dilemmas in AI

6. Model Evaluation and Validation in Data Science and Machine Learning

Additional Lectures : 2025

1. Advanced AI Techniques: Generative Models, Transfer Learning, and AI in Practice

Enroll now and learn today !

Who this course is for:

  • All UG and PG Computer Science and Information Technology and Business Systems Domain Students
  • Interested students to learn about the concepts of Fundamentals of Machine Learning (101 level)

FREE $19.99 FREE ENROLL

Wolf Watch
Logo