학술논문

Petascale Cloud Supercomputing for Terapixel Visualization of a Digital Twin
Document Type
Periodical
Source
IEEE Transactions on Cloud Computing IEEE Trans. Cloud Comput. Cloud Computing, IEEE Transactions on. 10(1):583-594 Jan, 2022
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
Security
Optical fibers
Optical fiber communication
Optical receivers
Channel models
Decoding
Data visualization
Internet of Things
scalability
supercomputers
Language
ISSN
2168-7161
2372-0018
Abstract
Background—Photo-realistic terapixel visualization is computationally intensive and to date there have been no such visualizations of urban digital twins, the few terapixel visualizations that exist have looked towards space rather than earth. Objective—Our aims are: creating a scalable cloud supercomputer software architecture for visualization; a photo-realistic terapixel 3D visualization of urban IoT data supporting daily updates; a rigorous evaluation of cloud supercomputing for our application. Method—We migrated the Blender Cycles path tracer to the public cloud within a new software framework designed to scale to petaFLOP performance. Results—We demonstrate that we can compute a terapixel visualization in under one hour, the system scaling at 98 percent efficiency to use 1024 public cloud GPU nodes delivering 14 petaFLOPS. The resulting terapixel image supports interactive browsing of the city and its data at a wide range of sensing scales. Conclusion—The GPU compute resource available in the cloud is greater than anything available on our national supercomputers providing access to the globally competitive resources. The direct financial cost of access, compared to procuring and running these systems, was low. The indirect cost, in overcoming teething issues with cloud software development, should reduce significantly over time.