No. 18, Shaziba Group, Mazhe Village, Tunbao Township, Enshi, Enshi Tujia and Miao Autonomous Prefecture, China
SYDNEY, April 9, 2026 /PRNewswire/ -- Australian web infrastructure company Sitecove has developed a new AI inference optimisation architecture, the Sitecove HyperCache Inference Protocol (SHIP), designed to significantly improve how large language models are served in production.
Originally built during internal performance work, SHIP takes a system-level approach to inference — optimising memory handling, cache behaviour, scheduling, and token generation as a unified system rather than isolated components.
In early real-world tests, SHIP achieved up to a 91% reduction in GPU usage and speed improvements of up to 12×, alongside gains in memory efficiency and cost per token.
Rethinking the Inference Stack
Most AI inference optimisation focuses on individual layers such as model compression or cache tuning. SHIP instead reworks the entire inference lifecycle, introducing a multi-layered architecture that compounds efficiency gains across memory, compute, and throughput — key constraints in large-scale AI deployment.
Built Outside the AI Establishment
SHIP was developed by a team known for web infrastructure rather than AI research.
"This came out of solving real constraints in our own systems," said founder Adam Kerr.
"We weren't trying to reinvent AI — just make it faster and more efficient. The results exceeded expectations, including reducing cost per million tokens from $49 to $4."
Why It Matters
As AI scales, infrastructure — not models — is becoming the primary bottleneck. Improvements in memory utilisation, throughput, and cost per inference directly impact operating costs, with even small gains delivering significant savings at scale.
What's Next
Efficiency is emerging as a defining challenge in AI as GPU demand continues to outpace supply. SHIP reflects a broader trend of impactful innovation coming from smaller, systems-focused teams.
About Sitecove
Sitecove is an Australian web infrastructure company focused on hosting and performance optimisation for small to medium businesses. Founded in 2022 by Adam Kerr.
https://mma.prnewswire.com/media/2952884/Sitecove_SHIP_White_Paper_Redacted.pdf
Business zone:
Area: enshishi
Address: No. 18, Shaziba Group, Mazhe Village, Tunbao Township, Enshi, Enshi Tujia and Miao Autonomous Prefecture, China
Enshi Erliu Guest House reserve:+8620-86009099
Busy or no answer, online booking please!
Catering Entertainment:13697187776
Meeting room reserve
Enshi Erliu Guest House address: No. 18, Shaziba Group, Mazhe Village, Tunbao Township, Enshi, Enshi Tujia and Miao Autonomous Prefecture, China
恩施二六山庄 ◎ Enshi Erliu Guest House
Disclaimer: We are a tourism service provider that provides room booking services for Enshi Erliu Guest House We are not the official website of the hotel, please be aware.