The United Imaging Healthcare team used NVIDIA’s rich suite of GPUs and SDKs, which provided them with a wide range of acceleration, from AI inference to matrix calculations. Using NVIDIA data center GPUs, their products and engineering teams increased the performance and speed of their HPC algorithms, necessary for streaming sensor data to image pipelines. With the NVIDIA CUDA® Toolkit, the team optimized performance of their proprietary algorithm for developing and deploying AI applications across multiple environments.
United Imaging Health also used cuSolver, NVIDIA’s high-performance matrix computation library, to accelerate the reconstruction of MR images. To further improve performance, NVIDIA engineers tailored an algorithm that increased computational speed by more than 10X and significantly reduced the time required for MR reconstruction.
The NVIDIA AI Enterprise software suite came with enterprise support—critical to the success of developing and launching United Imaging Healthcare’s AI-enabled MR machine. NVIDIA experts, including DevTech engineers and solution architects, helped their teams train models, analyze code, and efficiently migrate to GPUs, reducing development costs. Finally, the United Imaging Healthcare team participated in NVIDIA Deep Learning Institute courses to deepen their understanding of how to develop on CUDA.