In a Market That Moves in Weeks, Building from Scratch Was Not an Option
Boost Run is an NVIDIA Preferred Cloud Service Provider (CSP) delivering enterprise-grade GPU infrastructure across multiple U.S. data center locations. With SOC 2, ISO 27001, ISO 27701, and HIPAA certifications, Boost Run provides thousands of GPUs to customers powering AI and high-performance workloads at scale. From its inception, the company’s roadmap extended well beyond bare-metal GPU access. Boost Run’s founding team recognized early that enterprise customers require not just raw compute power, but a fully managed, cloud-native Kubernetes experience - complete with strong tenant isolation, self-service provisioning, and native support for tools like GPU Operator, Ray, KServe, and custom CRDs.
This was never a reactive pivot. Managed Kubernetes was always the next phase of Boost Run’s platform strategy. The question was not whether to build it, but how to bring it to market at the pace the GPU cloud space demands.
Why a Partnership Approach
Boost Run’s leadership evaluated the build-versus-partner decision rigorously. Building a hyperscaler-grade, multi-tenant Kubernetes platform from scratch would have required a dedicated team of senior platform engineers, months of development runway, and ongoing operational investment that would divert focus from core infrastructure innovation.
The math was clear: the GPU market moves in weeks, not quarters. Rather than spend months building a platform from scratch, Boost Run chose to partner with vCluster as the foundation of its managed Kubernetes offering, accelerating time to market and unlocking enterprise revenue on its best-in-class infrastructure. Boost Run needed a partner with deep Kubernetes expertise and a production-hardened multi-tenant architecture that would amplify, not constrain, its platform vision.
What Boost Run Needed
- A scalable multi-tenant Kubernetes architecture that avoided per-customer cluster sprawl
- Dedicated GPU isolation at the hardware level with centralized lifecycle management
- Automated, tenant-level network isolation without manual configuration overhead
- Compatibility with the full GPU-native AI toolchain customers expect
- A path from decision to production in weeks, not months