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 offers a deep dive into advanced deep learning concepts and techniques, focusing on both theory and hands-on implementation. Starting with ensemble learning, you will learn techniques like bagging, boosting, and gradient boosting, helping you improve model performance for real-world applications. The course also covers powerful tools like XGBoost, LightGBM, and CatBoost, allowing you to build efficient and accurate models using these state-of-the-art frameworks. You will then venture into neural networks, covering the fundamentals of deep learning, forward propagation, activation functions, loss functions, and backpropagation. You'll also explore optimization techniques such as gradient descent, all while building neural networks using popular frameworks like TensorFlow, Keras, and PyTorch. As the course progresses, you will apply these skills to practical projects, such as image classification with CIFAR-10, and learn how to fine-tune models with transfer learning and handle complex data types like images and sequences. Designed for learners with a basic understanding of machine learning and programming, this course is ideal for those looking to master advanced deep learning techniques. Whether you're an aspiring AI engineer or a data scientist looking to enhance your skills, this course will prepare you for tackling complex real-world deep learning tasks. Familiarity with Python and machine learning fundamentals is recommended, but not required. By the end of the course, you will be able to implement advanced machine learning algorithms, build neural networks using TensorFlow and PyTorch, apply transfer learning techniques, and deploy models into production environments.














