June 19, 2026
On-Device AI Training: Why Deployed AI Models Need to Keep Learning
Anuj Jadhav
AI models deployed on edge hardware degrade over time as field conditions change. The traditional solution, cloud retraining, is costly, consumes significant power, and relies on connectivity that remote systems lack. This article examines the compounding constraints of power, memory, and connectivity that have historically prevented on-device AI training. Discover how Vellex Computing leverages analog circuit dynamics to enable continuous, real-time parameter updates directly on edge hardware, removing cloud dependency for autonomous robotics, satellite platforms, and industrial IoT.