Advance your PyTorch skills by building sophisticated deep learning models and preparing them for deployment. You’ll design custom architectures that go beyond Sequential models, exploring Siamese Networks, ResNet, and DenseNet to understand how modern systems handle complex data.

PyTorch: Advanced Architectures and Deployment
本课程是 PyTorch for Deep Learning 专业证书 的一部分

位教师:Laurence Moroney
访问权限由 Coursera Learning Team 提供
1,634 人已注册
您将学到什么
Design and implement advanced architectures in PyTorch.
Apply advanced techniques in vision, language, and generative modeling—including Transformers and diffusion models.
Prepare, compress, and deploy models for real-world use.
您将获得的技能
要了解的详细信息

添加到您的领英档案
8 项作业
October 2025
了解顶级公司的员工如何掌握热门技能

积累 Software Development 领域的专业知识
- 向行业专家学习新概念
- 获得对主题或工具的基础理解
- 通过实践项目培养工作相关技能
- 通过 DeepLearning.AI 获得可共享的职业证书

该课程共有4个模块
This module introduces custom architectures that go beyond Sequential models, showing how PyTorch’s dynamic graphs support multi-input/multi-output design, parameter sharing, conditional execution, and dynamic creation. You’ll build Siamese Networks, ResNet, and DenseNet to see how architectural choices solve real challenges like similarity comparison, vanishing gradients, and information reuse.
涵盖的内容
5个视频3篇阅读材料2个作业1个编程作业3个非评分实验室
This module explores specialized vision approaches in PyTorch, starting with how receptive fields grow in CNNs and moving into interpretability tools like saliency maps and Grad-CAM to reveal what drives model predictions. You’ll then dive into generative models, using diffusion techniques with Hugging Face’s diffusers library and Stable Diffusion to create images while experimenting with parameters that shape the output.
涵盖的内容
5个视频1篇阅读材料2个作业1个编程作业3个非评分实验室
This module demystifies transformer architectures by showing how modern NLP models are built from familiar PyTorch components like linear layers, embeddings, and attention. You’ll explore encoder-only, decoder-only, and encoder-decoder designs step by step, learning how attention, positional encoding, and cross-attention make these models so powerful for tasks from classification to translation.
涵盖的内容
5个视频1篇阅读材料2个作业1个编程作业3个非评分实验室
This module bridges the gap between training models and deploying them in the real world, covering how to save, track, and manage experiments with PyTorch serialization and MLflow. You’ll then make models portable with ONNX and optimize them for production using pruning and quantization techniques that shrink size and boost speed without losing accuracy.
涵盖的内容
6个视频3篇阅读材料2个作业1个编程作业4个非评分实验室
获得职业证书
将此证书添加到您的 LinkedIn 个人资料、简历或履历中。在社交媒体和绩效考核中分享。
位教师

人们为什么选择 Coursera 来帮助自己实现职业发展

Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
学生评论
- 5 stars
100%
- 4 stars
0%
- 3 stars
0%
- 2 stars
0%
- 1 star
0%
显示 3/10 个
已于 Dec 26, 2025审阅
This course was so helpful in understanding the 'why' of the ML steps, not just the PyTorch itself.
从 Computer Science 浏览更多内容

DeepLearning.AI
状态:人工智能技能DeepLearning.AI

Coursera
