The decentralized GPU computing infrastructure Aethir officially launches managed Kubernetes services
The decentralized GPU computing infrastructure Aethir officially launched its managed Kubernetes service today, strategically extending into the enterprise AI infrastructure market.
Kubernetes (K8s), as the "gold standard" in the open-source container orchestration field, can automate the management of large-scale server clusters. Aethir's move aims to provide global AI teams with a high-performance development environment that is ready to use without the hassle of managing underlying hardware.
The core features of Aethir's managed Kubernetes service include: minute-level cluster deployment: enterprises can launch GPU-supported Kubernetes clusters in minutes through a self-service API; high-end GPU support: offering the latest generation of GPUs such as NVIDIA H100, H200, B200; transparent pricing: starting at $1.45/hour with no outbound data transfer fees; enterprise-grade security: zero-trust access control, RBAC, and complete audit logs.
Aethir offers a pricing model that is lower than traditional centralized cloud providers. By eliminating redundant intermediary premiums and high virtualization taxes, Aethir has reduced overall computing costs by 60% to 80%. Aethir's decentralized infrastructure spans 95 countries and regions globally, with 435,000 GPU containers providing low-latency computing access across more than 200 physical nodes, serving over 150 enterprise clients.
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