Applied Machine Learning
About this Specialization
This specialization is intended for post-graduate students seeking to develop practical machine-learning skills applicable across various domains. Through three comprehensive courses, learners will explore core techniques including supervised learning, ensemble methods, regression analysis, unsupervised learning, and neural networks. The courses emphasize hands-on learning, providing you with the opportunity to apply machine learning to real-world problems like image classification, data feature extraction, and model optimization.\\n\\nYou will dive into advanced topics such as convolutional neural networks (CNNs), reinforcement learning, and apriori analysis, learning to leverage the PyTorch framework for deep learning tasks. By the end of the specialization, you will be well-equipped to handle complex machine learning challenges in fields like computer vision and data processing, making you a valuable asset in industries requiring advanced predictive modeling, AI-driven solutions, and data-driven decision-making. This specialization is designed to build both theoretical knowledge and practical skills to thrive in the ever-evolving tech landscape.Created by: Johns Hopkins University

Related Online Courses
Do you want to more effectively handle complex challenges? In this Decision-making specialization, learn how to solve problems, make decisions and think creatively to tackle your problems head-on... more
\"Cloud Architecture Design Patterns\" is a comprehensive course designed to introduce learners to the essential principles and patterns in cloud architecture. This course blends theoretical... more
In this course, you will see how web apps in Azure allow you to publish and manage your website easily without having to work with the underlying servers, storage, or network assets. Instead, you... more
This course provides those involved in educating members of the health professions an asynchronous, interdisciplinary, and interactive way to obtain, expand, and improve their teaching skills.... more