Transform your on-premise HPC system with the ScaleX® platform and gain instant access to the world's largest high performance computing infrastructure in the cloud.
PROBLEM SOLVED, FASTER
Rescale’s ScaleX® platform helps solve the world’s most challenging engineering, scientific, and mathematical problems with unprecedented speed by leveraging HPC in the cloud.
TRANSFORMED IT AGILITY
Instantly shift workloads to the cloud and work in tandem with on-premise systems. Access the very latest cloud hardware including GPU and InfiniBand.
ON-DEMAND TURNKEY PLATFORM
Browser-based workflow with immediate access to over 250 applications, ported and tuned for HPC.
ACCELERATED TIME TO MARKET
No waiting in queues or schedulers for resources. Reduce turnaround times and access instant HPC capacity.
REDUCED CAPITAL EXPENDITURES
Pay-as-you-go for hardware and software. Avoid under-utilized on-premise machines and reduce costs through managed resource allocation.
Turnkey access to over 250 applications, ported and tuned for HPC.
Pay-as-you-go (on-demand) licensing available or you can bring your own license server.
Rescale offers access to global data centers, the very latest HPC hardware and a complete library of engineering, scientific and mathematical software.
Deep Learning on Rescale
Deep Learning is a sub-field of machine learning that focuses on predictive models that have large numbers of parameters, typically organized as a layered computational graph. It is fast becoming the preferred model choice for large datasets with samples that have many features.
Rescale provides GPU-based HPC nodes and clusters for training deep learning models in the cloud. Rescale supports batch training of models as well as interactive data analysis through Rescale Desktops. A wide variety of GPU configurations are available from lower cost previous-generation K80s to the latest multi-GPU P100s with NVLink interconnect. Clusters can be preconfigured with your choice from the most popular deep learning frameworks.
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