Go to Tech Hub

Experiences at the Edge: Best Practices in Developing Endpoint AI


SPEAKERS

Principal AI & DSP Engineer, Edge AI Technology Lead
Available from October 6

Whether it’s optimizing for low power and longevity, or porting cloud-sized AI to the new breed of endpoint AI hardware – developing embedding intelligence for the IoT is subject to very different constraints to AI in the cloud or data center.

In this talk Cambridge Consultants, specialists in developing high-performance AI in constrained environments, will outline the best practices which contribute to a success with endpoint AI.
SEE MORE

RELATED CONTENT


ON-DEMAND TECHNICAL SESSION

Jumping from Arm 32-bit to 64-bit for Optimized Machine Learning

Brendan Gillatt

Principal AI & DSP Engineer, Edge AI Technology Lead / Cambridge Consultants


Available from October 6 Embedded Systems are mostly 32-bit software today. Some people feel that is "good enough“. With the new challenges and the importance of machine learning it's essential to k...

Go to Session

TECHNICAL SESSIONS WITH Q&A

The Value and Path to System Ready IR Certification

Brendan Gillatt

Principal AI & DSP Engineer, Edge AI Technology Lead / Cambridge Consultants


This session will provide a specific overview of Arm System Ready-IR, its value proposition and its enabled SW. We'll do a technical dive into System Ready IR, components, problem solving and meaning...

Go to Session

ON-DEMAND TECHNICAL SESSION

Cloud-Native at the Edge – and Other Open Secrets

Brendan Gillatt

Principal AI & DSP Engineer, Edge AI Technology Lead / Cambridge Consultants


Available from October 6 Advancements in Kubernetes over the last few years, including capabilities to operate on edge compute, are causing a sea-change in every aspect of computing which we have not...

Go to Session