This course features Coursera Coach!
A smarter way to learn with interactive, real-time conversations that help you test your knowledge, challenge assumptions, and deepen your understanding as you progress through the course. This course will equip you with the foundational skills and knowledge to optimize machine learning models and implement deep learning techniques like Convolutional Neural Networks (CNNs). You’ll begin by learning about the critical role of hyperparameter tuning and optimization techniques for improving model performance. The course covers a wide range of optimization strategies including grid search, random search, and advanced Bayesian optimization. You will also explore the practical application of regularization techniques like L1, L2, and dropout, as well as cross-validation strategies for robust model evaluation. The course delves into deep learning with a focus on CNNs, which are powerful tools for image processing and computer vision. You will learn the mechanics of CNN layers, such as convolutional and pooling layers, and how to reduce dimensionality while maintaining critical features. The course then transitions into hands-on experience, where you will build CNN architectures using popular frameworks like Keras, TensorFlow, and PyTorch. You'll also gain insights into advanced techniques like data augmentation and regularization to improve model generalization. As you progress, you'll apply these concepts to real-world projects. The course culminates in a practical project where you will use your deep learning skills to classify images using the Fashion MNIST or CIFAR-10 datasets. By working on this project, you will strengthen your understanding of how CNNs work in a practical setting, improving both your theoretical and practical machine learning abilities. This course is designed for learners who want to dive into machine learning optimization and deep learning, especially those interested in pursuing careers in AI and data science. A basic understanding of Python and machine learning fundamentals will help you get the most out of the course, which is suitable for intermediate learners eager to build real-world AI applications. By the end of the course, you will be able to optimize machine learning models using various tuning techniques, implement Convolutional Neural Networks for image processing, and use regularization and data augmentation to improve model accuracy and generalization.











