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There is 1 module in this course
This course teaches you how to evaluate and design custom neural network architectures for real machine-learning tasks. You start by learning how to compare common model families—such as CNNs, RNNs, and Transformers—and match them to task needs, data patterns, and compute limits. You then learn how to construct custom architectures using layers, activations, and regularization techniques that improve generalization and training stability. Through videos, readings, hands-on practice, and guided coach support, you build models in PyTorch and test how design choices affect performance. By the end of the course, you can confidently select topologies, justify architectural decisions, and design models ready for real-world deployment.
This course teaches you how to evaluate and design custom neural network architectures for real machine-learning tasks. You start by learning how to compare common model families—such as CNNs, RNNs, and Transformers—and match them to task needs, data patterns, and compute limits.
You then learn how to construct custom architectures using layers, activations, and regularization techniques that improve generalization and training stability. Through videos, readings, hands-on practice, and guided coach support, you build models in PyTorch and test how design choices affect performance. By the end of the course, you can confidently select topologies, justify architectural decisions, and design models ready for real-world deployment.
What's included
7 videos2 readings5 assignments
Show info about module content
7 videos•Total 20 minutes
Welcome and Why Architecture Choices Matter•2 minutes
Comparing Neural Network Topologies•3 minutes
How to Evaluate Architecture Fit in Practice•3 minutes
Why Build Custom Architectures•2 minutes
Layers, Activations, and Regularization•2 minutes
Screencast: Constructing a Custom Model in PyTorch•5 minutes
Congratulations and Continuous Learning Journey•2 minutes
2 readings•Total 20 minutes
Understanding Task, Data, and Compute Constraints•10 minutes
Designing a Custom Network Step by Step•10 minutes
5 assignments•Total 64 minutes
HOL: Choose the Best Architecture Under Real Constraints•15 minutes
Practice Quiz: Architecture Selection Mini-Review•7 minutes
Hands-on Activity: Build Your Own Network Architecture•15 minutes
Practice Quiz: Improve a Baseline Model With Regularization•7 minutes
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