Edge AI From Atoms To Apps with Dr. Mohamed Sabry of Nanoveu
What if real AI at the edge didn’t drain your battery, overheat your device, or bloat your bill of materials? We pull back the curtain on EMASS, our edge AI system-on-chip built from the ground up to squeeze maximum intelligence out of milliwatts, not watts. The journey starts “from atoms to apps,” where device physics, circuits, architecture, and algorithms are tuned together—so every layer contributes to performance instead of fighting it.
We walk through the architecture: a RISC-V core that manages dataflow and OS tasks, plus two specialized AI accelerators that the compiler selects automatically based on workload. With SRAM and non-volatile memory on board, the chip preserves system state, then powers down aggressively and wakes in microseconds. Add model quantization, pruning, knowledge distillation, and coding, and you can shrink networks by up to 100x; a hardware weight decompressor restores precision just in time, preserving accuracy while slashing memory and bandwidth.
Performance isn’t just on paper. Fabricated at 22 nm and moving to 16 nm, XDOT hits up to 12 TOPS/W and around 30 GOPS at roughly 2 mW. Against public edge benchmarks, we match or beat latency while cutting energy by 20x to 200x. Developers can compile from TensorFlow or PyTorch and even remote-run on our boards—hosted in Singapore—so you see real hardware results from anywhere. Partnerships with Literal Labs yield dramatic speed and energy gains, while our Arrow Electronics modular boards let you stack sensors for predictive maintenance, biometrics, cold-chain tracking, storage, and wireless in minutes.
The standout use case: drones. Instead of piling on compute-heavy features, we target the battery subsystem with AI-driven control, extending flight endurance by up to 60% and, in some trials, even higher. That means longer missions on the same charge or more payload without sacrificing airtime. It’s a taste of what becomes possible when the entire stack is co-designed—wearables that last, IoT nodes that think locally, AR devices that stay cool, and fleets that fly farther.
If you’re building edge AI and want real results on real silicon, subscribe, share this episode with a teammate, and leave a review. Ready to test your model on hardware today? Reach out and try the remote run.
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