As the deep learning market matures, developers are transitioning their trained models for use in production, ushering in a new set of challenges. Among the difficulties are the need to deploy models built in the lab on commercial hardware with its many computational limitations. These real-world restrictions have a direct impact on the models’ accuracy.
With the looming uphill battle AI developers will soon face in continuously optimizing both software and hardware components at inference (production) stage, Israeli startup Deci has come out of stealth with an AutoML based deep learning acceleration software capable of delivering a tenfold acceleration of any model’s run-time and performance, regardless of the hardware used.
