Trane Technologies and NVIDIA optimize 1-GW AI factory thermal management design with 10% efficiency gain

Reuters
Mar 17
Trane Technologies and NVIDIA optimize 1-GW AI factory thermal management design with 10% efficiency gain

Trane said it is working with NVIDIA to integrate its thermal management reference design for gigawatt-scale AI factories with the NVIDIA Omniverse DSX Blueprint for AI data centers. The companies said the updated system delivers nearly a 10% improvement in overall thermal management performance versus the original 1-gigawatt reference design. Trane’s Mauro Atalla and NVIDIA’s Vladimir Troy commented on the collaboration related to simulation and cooling optimization for large-scale AI infrastructure.

Disclaimer: This news brief was created by Public Technologies (PUBT) using generative artificial intelligence. While PUBT strives to provide accurate and timely information, this AI-generated content is for informational purposes only and should not be interpreted as financial, investment, or legal advice. Trane Technologies plc published the original content used to generate this news brief via Business Wire (Ref. ID: 20260316606929) on March 16, 2026, and is solely responsible for the information contained therein.

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