Unlock the transformative power of generative AI with our comprehensive online course, designed for learners eager to master the fundamentals and practical applications of deep generative modeling. Begin your journey by demystifying what generative AI truly is, exploring the diverse landscape of multimodal models, and understanding how algorithms can create rich media content from scratch. Delve into the theoretical underpinnings and formalizations that drive deep generative models, gaining insight into the trade-offs between different architectures. Transition seamlessly from theory to practice as you are introduced to the PyTorch framework—one of the most powerful tools in modern deep learning. Through hands-on programming exercises, you’ll learn to manipulate tensors, leverage automatic differentiation, and harness GPU acceleration to build and train your own neural networks. By the end of this course, you’ll not only grasp the core concepts behind generative AI but also acquire the practical skills needed to implement and experiment with deep learning models using industry-standard tools. Whether you’re aspiring to innovate in AI research or apply these skills in real-world projects, this course is your gateway to the future of artificial intelligence.

Programming Generative AI: Unit 1
本课程是 Programming Generative AI 专项课程 的一部分


位教师:Pearson
访问权限由 New York State Department of Labor 提供
您将学到什么
Develop a foundational understanding of generative AI and deep generative modeling concepts.
Explore and compare various multimodal generative models and their input/output modalities.
Gain hands-on experience programming with tensors and building neural networks using PyTorch.
Understand the theoretical trade-offs between different generative model architectures and their practical implications.
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要了解的详细信息

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2 项作业
August 2025
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该课程共有1个模块
This module introduces the fundamentals of generative AI and deep generative modeling, exploring how algorithms can create rich media across various modalities. It covers the theoretical foundations and trade-offs of different generative model architectures. The module then provides hands-on experience with the PyTorch framework, guiding learners through programming with tensors, leveraging automatic differentiation, and building neural networks. By the end, students will understand both the principles behind generative models and the practical skills needed to implement them using modern deep learning tools.
涵盖的内容
29个视频2个作业
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