Discover how Sinkove accelerated medical imaging AI by leveraging Amazon SageMaker HyperPod, reducing costs, and improving training times through a scalable AWS infrastructure.
Sinkove is at the forefront of medical imaging AI, specialising in the development of advanced diffusion models for both 2D and 3D medical imaging. Their mission is to transform diagnostic and treatment workflows by enabling more precise and data-rich visualisations through AI-driven approaches. As the healthcare industry increasingly turns to AI for efficiency and accuracy, Sinkove’s solutions are helping to redefine what’s possible in medical diagnostics.
As demand for their AI-powered imaging tools grew, Sinkove encountered growing pains in their infrastructure. Relying on a combination of in-house servers and academic GPU clusters, they quickly hit limitations in compute capacity, training speed, and cost efficiency. These issues impacted their ability to iterate on models quickly and meet delivery timelines for clients. Specifically, they faced:
Scaling limitations, making it difficult to onboard new customers while maintaining model performance.
To overcome these hurdles, Sinkove partnered with Cloud Combinator, an AWS Advanced Consulting Partner, to rearchitect their training infrastructure using scalable AWS solutions. The strategy included:
The collaboration delivered a step change in operational performance:
By adopting AWS and working with Cloud Combinator, Sinkove not only resolved its immediate performance issues but also created a foundation for sustainable growth and innovation.
With a scalable, cloud-native infrastructure now in place, Sinkove is well-positioned to expand its customer base and further develop its diffusion model capabilities. The company’s leadership plans to continue leveraging AWS technologies for ongoing innovation, confident that their infrastructure can handle increasing workloads without compromising speed, cost, or reliability.
The partnership with Cloud Combinator and AWS has not only solved Sinkove’s immediate compute challenges but also empowered the company to maintain its competitive edge in the rapidly evolving healthcare AI landscape.