Learning Deep Learning: Unit 3
Key Takeaways
This video teaches deep learning architectures such as BERT and GPT, and their applications in chatbots, prompt tuning, multitask learning, and computer vision tasks like object detection and segmentation using R-CNN, U-Net, and Mask R-CNN
Original Description
This course covers key deep learning architectures such as BERT and GPT, focusing on their use in applications like chatbots and prompt tuning. You will learn how to build models that combine text and images, and generate text from visual data. The course also addresses multitask learning and computer vision tasks, including object detection and segmentation, using networks like R-CNN, U-Net, and Mask R-CNN. Topics include ethical considerations in AI and practical advice for tuning and deploying models. Through hands-on projects in TensorFlow and PyTorch, you will develop the skills needed to build, optimize, and apply deep learning solutions in real-world situations.
Watch on External: Coursera ↗
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