Global Admissions Logo

$ USD

Search Programs

Introduction to On-Device AI

California, United States

The Non-degree in Introduction to On-Device AI at DeepLearning.AI is a program for international students taught in English.

đź“– Introduction

DeepLearning.AI is an online education platform founded in 2017 by Andrew Ng, a leading AI expert and co-founder of Coursera. As a private organization, DeepLearning.AI specializes in AI and machine learning education, offering high-quality courses, specializations, and professional certifications in collaboration with top institutions and industry leaders. The platform is known for its practical, hands-on approach to teaching AI concepts and its focus on making cutting-edge AI knowledge accessible to learners worldwide.

📚 About the Program

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. This course equips you with key skills to deploy AI on device:1. Explore how deploying models on device reduces latency, enhances efficiency, and preserves privacy.2. Go through key concepts of on-device deployment such as neural network graph capture, on-device compilation, and hardware acceleration.3. Convert pretrained models from PyTorch and TensorFlow for on-device compatibility.4. Deploy a real-time image segmentation model on device with just a few lines of code.5. Test your model performance and validate numerical accuracy when deploying to on-device environments6. Quantize and make your model up to 4x faster and 4x smaller for higher on-device performance.7. See a demonstration of the steps for integrating the model into a functioning Android app.Learn from Krishna Sridhar, Senior Director of Engineering at Qualcomm, who has played a pivotal role in deploying over 1,000 models on devices and, with his team, has created the infrastructure used by over 100,000 applications.By learning these techniques, you’ll be positioned to develop and deploy AI to billions of devices and optimize your complex models to run efficiently on the edge.

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. This course equips you with key skills to deploy AI on device:1. Explore how deploying models on device reduces latency, enhances efficiency, and preserves privacy.2. Go through key concepts of on-device deployment such as neural network graph capture, on-device compilation, and hardware acceleration.3. Convert pretrained models from PyTorch and TensorFlow for on-device compatibility.4. Deploy a real-time image segmentation model on device with just a few lines of code.5. Test your model performance and validate numerical accuracy when deploying to on-device environments6. Quantize and make your model up to 4x faster and 4x smaller for higher on-device performance.7. See a demonstration of the steps for integrating the model into a functioning Android app.Learn from Krishna Sridhar, Senior Director of Engineering at Qualcomm, who has played a pivotal role in deploying over 1,000 models on devices and, with his team, has created the infrastructure used by over 100,000 applications.By learning these techniques, you’ll be positioned to develop and deploy AI to billions of devices and optimize your complex models to run efficiently on the edge.

🏫 About the University

DeepLearning.AI is dedicated to advancing artificial intelligence education and empowering individuals to build careers in AI and machine learning. The platform offers a range of courses, including the renowned "Deep Learning Specialization" and "AI for Everyone," designed to cater to beginners, professionals, and researchers. By collaborating with leading experts and institutions, DeepLearning.AI provides industry-relevant content that bridges the gap between theoretical knowledge and real-world applications. Through its online courses, research initiatives, and community-driven projects, DeepLearning.AI plays a crucial role in shaping the future of AI education and innovation.

đź’° Fees

Application Fee

$0 USD

$0 USD

Tuition Fee

$120 USD

$120 USD

per year

âś… Entry Requirements

The minimum age is 18 and the maximum age is 50.

English Fluent is required.

Minimum education level Bachelor's degree

All students from all countries are eligible to apply to this program.

📬 Admissions Process


1

Step 1

Choose programs

2

Step 2

Apply online

3

Step 3

Enroll

📝 Reviews

Write a review

Application Fee

$0 USD

Service Fee

$0 USD

Tuition

$120 USD

Why Apply on Global Admissions?

Similar Programs to Non-degree

Similar Programs to Non-degree

We use cookies to improve your experience and analyze site usage. Read our Privacy Policy to learn more about our data practices.