Offered By: IBMSkillsNetwork
Autoencoders and Regularization - Learn and Implement
In this course, you'll explore how Autoencoders compress, denoise, and derive valuable features from data. You'll also delve into regularization to curb overfitting and boost model generalizability. Autoencoders play roles in image enhancement, anomaly spotting, recommendation engines, and generative modelling. Meanwhile, regularization is essential in nearly every machine-learning endeavor. This training will equip you to address practical challenges across various applications.
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Artificial Intelligence
279 EnrolledAt a Glance
In this course, you'll explore how Autoencoders compress, denoise, and derive valuable features from data. You'll also delve into regularization to curb overfitting and boost model generalizability. Autoencoders play roles in image enhancement, anomaly spotting, recommendation engines, and generative modelling. Meanwhile, regularization is essential in nearly every machine-learning endeavor. This training will equip you to address practical challenges across various applications.
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Course Syllabus
- Regularization
- Autoencoders
- Variational Autoencoders
Recommended Skills Prior to Taking this Course
Estimated Effort
3 Hours
Level
Intermediate
Skills You Will Learn
Artificial Intelligence, Data Science, Deep Learning, Keras
Language
English
Course Code
AI0203EN