As AI moves beyond the cloud, on-device inference is rapidly expanding to smartphones, IoT devices, robots, AR/VR headsets, and more. Billions of mobile and other edge devices are ready to run optimized AI models.



Introduction to On-Device AI

Instructor: Krishna Sridhar
Access provided by Sri Lanka Institute of Information Technology
(22 reviews)
Recommended experience
What you'll learn
- Learn to deploy AI models on edge devices like smartphones, using their local compute power for faster and more secure inference. 
- Explore converting PyTorch/TensorFlow models for device compatibility and quantize them for better performance and reduced model size. 
- Learn about device integration, including runtime dependencies, and how GPU, NPU, and CPU compute unit utilization affect performance. 
Skills you'll practice
Details to know
Only available on desktop
See how employees at top companies are mastering in-demand skills

Learn, practice, and apply job-ready skills in less than 2 hours
- Receive training from industry experts
- Gain hands-on experience solving real-world job tasks

About this project
Instructor

Offered by
How you'll learn
- Hands-on, project-based learning - Practice new skills by completing job-related tasks with step-by-step instructions. 
- No downloads or installation required - Access the tools and resources you need in a cloud environment. 
- Available only on desktop - This project is designed for laptops or desktop computers with a reliable Internet connection, not mobile devices. 
Why people choose Coursera for their career




Learner reviews
22 reviews
- 5 stars54.54% 
- 4 stars27.27% 
- 3 stars13.63% 
- 2 stars4.54% 
- 1 star0% 
Showing 3 of 22
Reviewed on Jan 14, 2025
I'm not quite used to the Indian teacher's English accent, even though I know he is trying hard to impart knowledge.
You might also like
 - DeepLearning.AI 
 - University of Illinois Urbana-Champaign 



