Diving Deep into Deep Belief Networks (DBNs)
Offered By: Pluralsight
Course Description
Overview
Dive into the world of deep belief networks (DBNs) and discover their significance. This course will teach you about restricted Boltzmann machines (RBMs) and DBNs, provide real-world data challenges, and expand your deep learning knowledge.
Deep belief networks (DBNs) stand as significant milestones in the history of deep learning, marking crucial advancements in our understanding and application of artificial intelligence. In this course, Diving Deep into Deep Belief Networks (DBNs), you’ll gain an understand of DBN architecture and see use cases to solve real-world data analysis challenges. First, you'll explore the architecture and functioning of restricted Boltzmann machines (RBMs), the building blocks of DBNs, understanding their unique role in unsupervised learning and feature extraction. Next, you'll discover how to stack RBMs to form deep belief networks, and how to use concepts like "contrastive divergence” and “Gibbs sampling.” Finally, you’ll learn how to optimize your networks, either using regularization tools or fine-tuning the model. When you’re finished with this course, you’ll have the skills and knowledge of deep belief networks needed to effectively use them in projects and unlock new possibilities in data analysis.
Deep belief networks (DBNs) stand as significant milestones in the history of deep learning, marking crucial advancements in our understanding and application of artificial intelligence. In this course, Diving Deep into Deep Belief Networks (DBNs), you’ll gain an understand of DBN architecture and see use cases to solve real-world data analysis challenges. First, you'll explore the architecture and functioning of restricted Boltzmann machines (RBMs), the building blocks of DBNs, understanding their unique role in unsupervised learning and feature extraction. Next, you'll discover how to stack RBMs to form deep belief networks, and how to use concepts like "contrastive divergence” and “Gibbs sampling.” Finally, you’ll learn how to optimize your networks, either using regularization tools or fine-tuning the model. When you’re finished with this course, you’ll have the skills and knowledge of deep belief networks needed to effectively use them in projects and unlock new possibilities in data analysis.
Syllabus
- Course Overview 1min
- Restricted Boltzmann Machines (RBMs) 16mins
- Deep Belief Networks, Fine-tuning, and Applications 19mins
Taught by
Alper Tellioglu
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