Trending
The $400 million machine powering the future of chipmaking Building pay-per-intelligence for AI agents: How Ampersend uses Amazon Bedrock AgentCore Payments Running ComfyUI workflows on Amazon SageMaker AI processing jobs Prometheus Hyperscale secures planning approval for gigawatt data center campus in Wyoming Mitigating vendor lock-in with Sakana AI Fugu multi-agent models Microsoft proposes ratepayer-protection tariff in Nevada Microsoft plans 2GW data center campus in Pecos, Texas Sponsored: What digital twins reveal about AI infrastructure design DCD Podcast – What data centers should expect from the next UK Prime Minister New chip could help tiny robots traverse complex environments Sponsored: Rethinking security for the AI era Centuria Capital Group raises AU$300m in equity for ResetData AI cloud business 87-acre ‘Project Tallmadge’ to be built in Strasburg, Virginia Data Centers Take Training into Their Own Hands Amid Talent Shortages MGX could purchase APAC data center operator DayOne – report

QumulusAI secures $124m in AI infrastructure agreements

QumulusAI, an AI cloud provider, has secured $224 million in customer commitments. The company has signed two three-year contracts worth more than $220 million with “open access AI cloud” Hyperbolic and one other unnamed AI inference platform. QumulusAI is planning a data center in Denton, Texas.

The deals include $21.9 million in total upfront commitments. Under the agreement, QumulusAI will deploy 1,280 Nvidia Blackwell GPUs across 160 Lenovo and Supermicro bare-metal servers featuring B300 and B200 Blackwell GPUs, respectively. Cisco Nexus One will serve as the backbone for the cluster fabric in both deployments, providing secure and high-performance AI networking. “AI infrastructure can no longer rely on one-size-fits-all designs,” said Mike Maniscalco, CEO of QumulusAI.

Inference workloads have distinctly different performance and cost demands compared to model training setups. By aligning infrastructure with the specific workload, we can boost utilization, lower costs, and speed up deployment timelines for customers running at production scale. As AI adoption grows, organizations require infrastructure that can be rapidly deployed, scaled effectively, and optimized for the economics of production AI, added Maniscalco.

These agreements highlight the benefits of adopting a more adaptable strategy for AI infrastructure. QumulusAI has not revealed the deployment location of the cluster.

 

Join the conversation

Your email address will not be published. Required fields are marked *