# Vultr (Silver) — ClusterMAX GPU Cloud Review > Vultr earns a ClusterMAX 2.0 Silver rating from SemiAnalysis. To kick things off, Vultr set the record for this round of ClusterMAX by bringing 12 people onto our kickoff call. Vultr raised money last year at a $3.5B valuation, including an investment from AMD Ventures, and this past summer also… - **Provider**: Vultr - **ClusterMAX Tier**: Silver - **Tier definition**: Adequate offering with noticeable gaps compared to Gold or Platinum. Room for improvement. - **Authors**: Jordan Nanos, Daniel Nishball, Dylan Patel (SemiAnalysis) - **Published**: 2025-11-06 (Nov 06, 2025) - **Last updated**: 2025-11-06 (Nov 06, 2025) - **Source**: ClusterMAX 2.0 - **Canonical URL**: https://www.clustermax.ai/cloudreview/vultr - **Source article**: https://newsletter.semianalysis.com/p/clustermax-20-the-industry-standard - **Topics**: Vultr review, Vultr GPU cloud, Vultr ClusterMAX rating, Vultr Silver, Silver tier GPU cloud, GPU cloud review, neocloud review, Vultr B200, Vultr MI355X, B200 cloud, MI355X cloud, Kubernetes, Slurm, NCCL, ClusterMAX 2.0, SemiAnalysis --- To kick things off, Vultr set the record for this round of ClusterMAX by bringing 12 people onto our kickoff call. Vultr raised money last year at a $3.5B valuation, including an investment from AMD Ventures, and this past summer also got $329M of debt financing. As a result, Vultr now offers AMD MI355X GPUs (backstopped by AMD) and an expanding fleet of NVIDIA GPUs (including HGX B200), across some of their 32 global regions. [](https://substackcdn.com/image/fetch/$s_!aQk6!,f_auto,q_auto:good,fl_progressive:steep/https%3A%2F%2Fsubstack-post-media.s3.amazonaws.com%2Fpublic%2Fimages%2F134631bf-ecf8-4abf-9216-b4445ce7626e_936x598.png) When we started our testing, the Vultr SLURM service seemed brand new, like a second class citizen in the console. This was clear when we logged in too. The cluster was missing pyxis, hpcx, topology.conf, the default login user was “root” (with no default workdir). Most importantly, there was no shared home filesystem. We recommended some basic fixes, and quickly got going with an “ubuntu” user, with a default workdir switched to a shared /mnt/vfs. [](https://substackcdn.com/image/fetch/$s_!-YDx!,f_auto,q_auto:good,fl_progressive:steep/https%3A%2F%2Fsubstack-post-media.s3.amazonaws.com%2Fpublic%2Fimages%2Fb36e8c64-9698-483e-9d32-c10253107baf_477x244.png) [](https://substackcdn.com/image/fetch/$s_!0hbp!,f_auto,q_auto:good,fl_progressive:steep/https%3A%2F%2Fsubstack-post-media.s3.amazonaws.com%2Fpublic%2Fimages%2F5661a17e-509b-4500-bc40-1a8c7ea32f01_694x314.png) Eventually, we were able to get nccl-tests at expected bandwidth, and some basic torchtitan training runs going at expected MFU. When we were handed our kuberenetes cluster, we unfortunately got versions of the NVIDIA GPU Operator and Network Operator that were over 1 year old, meaning they were subject to three separate “critical” level CVEs, such as NVIDIAscape from Wiz: . We recommended an upgrade, and the team mentioned they were “writing the jira for it”. During testing, we had some intermittent link flaps that eventually went away on their own. Unfortunately, there was no proactive notification or remediation of this, due to a lack of a monitoring dashboard and any active or passive health checks on the cluster’s interconnect. [](https://substackcdn.com/image/fetch/$s_!A7zn!,f_auto,q_auto:good,fl_progressive:steep/https%3A%2F%2Fsubstack-post-media.s3.amazonaws.com%2Fpublic%2Fimages%2F5750b6c8-290f-4cfe-98de-4292ed80da61_935x800.png) After eventually getting nccl-tests to run at full bandwidth on the kubernetes cluster, we engaged with the support team to troubleshoot a training job on the cluster. One of the team members, Enis, was familiar enough with KubeFlow to get it installed and configure an example torchtitan training job to work on their network. We were impressed! [](https://substackcdn.com/image/fetch/$s_!4SbE!,f_auto,q_auto:good,fl_progressive:steep/https%3A%2F%2Fsubstack-post-media.s3.amazonaws.com%2Fpublic%2Fimages%2Fcbd41255-92a5-4296-b599-aac95d1f3c9d_937x272.png)Source: a beautiful sight After shifting to inference, we saw a strong showing from VKE. The Vultr Cloud Controller Manager runs as part of Vultr’s managed control plane (not visible in the cluster), and handles automatic provisioning of resources like a LoadBalancer public IP. Reasonable default helm charts were installed, and it was easy to configure new ones, thanks to a default ReadWriteMany StorageClass being configured. Following our feedback, Vultr has joined the NVIDIA embargo program to ensure they are notified ahead of time for future security vulnerabilities. Vultr’s outreach to AMD’s Product Security Office seems to have motivated AMD to develop a similar security embargo program on their own. We appreciate Vultr’s commitment to improvement and the direct engagement from their engineers. We recommend that they work on developing a monitoring dashboard, active and passive health checks, and continue building experience operating large GPU clusters. --- Other Silver tier providers: - Together: https://www.clustermax.ai/cloudreview/together - Lambda: https://www.clustermax.ai/cloudreview/lambda - Google Cloud (GCP): https://www.clustermax.ai/cloudreview/googlecloud - Amazon Web Services (AWS): https://www.clustermax.ai/cloudreview/amazonwebservices - Scaleway: https://www.clustermax.ai/cloudreview/scaleway - Cirrascale: https://www.clustermax.ai/cloudreview/cirrascale - GCORE: https://www.clustermax.ai/cloudreview/gcore - Firmus / Sustainable Metal Cloud (SMC): https://www.clustermax.ai/cloudreview/firmussustainablemetalcloud - GMO Cloud: https://www.clustermax.ai/cloudreview/gmocloud - Voltage Park: https://www.clustermax.ai/cloudreview/voltagepark - Tensorwave: https://www.clustermax.ai/cloudreview/tensorwave Full ClusterMAX 2.0 + 2.1 index: https://www.clustermax.ai/cloudreview Full LLM dump of all reviews: https://www.clustermax.ai/llms-full.txt