Key Takeaways Purdue University engineers have announced advances in brain-inspired hardware using in-memory computing and spiking neural networks to boost autonomous device efficiency. This approach tackles the von Neumann bottleneck directly, cutting energy consumption and latency for real-time decision-making at the edge. Commercial neuromorphic chips from Intel and IBM are demonstrating dramatic power efficiency gains over traditional GPUs, enabling robots and drones to operate longer without a tether. Neuromorphic computing has spent years as a compelling research concept — now it’s shipping in hardware that makes autonomous drones and robots genuinely practical. Purdue University engineers have announced advances in brain-inspired chips that combine in-memory computing with spiking neural networks, targeting the core problem that has always plagued edge AI: you can’t run a power-hungry GPU on a drone battery.…