Date: Wednesday, May 18 (Main Conference Day 2)
Start Time: 4:15 pm
End Time: 4:45 pm
Deep learning models are advancing at a dizzying pace, creating difficult dilemmas for system developers. When you begin developing an edge AI system, you select the best available model for your needs. But by the time you’re ready to deploy your product, your original model is obsolete. You’d like to upgrade your model, but your neural network accelerator was designed with previous-generation models in mind and struggles to deliver top performance and efficiency on state-of-the-art models. The solution is hardware that adapts to the needs of whatever algorithms you choose. Hardware programmability enables Lattice FPGAs to support the latest models and techniques with astounding efficiency, typically consuming less than 200 mW when running visual AI workloads at 30+ frames per second. In this talk, we’ll show how Lattice FPGAs, coupled with our production-proven sensAI solution stack, are being used to quickly develop super-efficient AI implementations that enable groundbreaking features in smart edge devices.