NEW
NVIDIA and Rafay Enhance AI Workloads with Accelerated Computing Solutions - Blockchain.News

NVIDIA and Rafay Enhance AI Workloads with Accelerated Computing Solutions

Darius Baruo Apr 09, 2025 07:18

NVIDIA and Rafay are collaborating to enhance AI workloads with advanced accelerated computing solutions, focusing on enterprise AI infrastructure and self-service platforms.

NVIDIA and Rafay Enhance AI Workloads with Accelerated Computing Solutions

The global demand for generative AI has significantly increased the need for accelerated computing hardware, prompting enterprises to deploy advanced private cloud infrastructure. This surge has led to the emergence of GPU cloud providers or AI clouds, which offer accelerated compute capacity for AI workloads, according to NVIDIA.

Self-Service AI Infrastructure

Developers and data scientists now demand seamless, self-service access to compute resources, avoiding delays from traditional systems. Cloud providers are thus prioritizing self-service workflows to optimize GPU infrastructure utilization. NVIDIA AI Enterprise accelerates AI workloads by providing secure microservices for model deployment in self-service environments.

Challenges in GPU PaaS Development

Building a production-ready GPU PaaS platform involves continuous development, support, and security maintenance. Infrastructure software vendors like Rafay offer crucial support by providing ready-to-deploy PaaS solutions for GPU-powered environments, facilitating innovation in enterprise private clouds and cloud providers.

Rafay's Role in AI Infrastructure

The Rafay Platform enables enterprises to deliver a self-service PaaS for AI infrastructure with enterprise-grade controls. Designed for NVIDIA accelerated computing, it supports NVIDIA AI Enterprise and various AI models and frameworks, providing a comprehensive platform for AI development and model training.

Integration with NVIDIA AI Enterprise

Rafay facilitates tools for building AI agents, such as NVIDIA NIM and NeMo, as part of NVIDIA AI Enterprise's production-ready deployments. The platform also enables cloud providers to offer additional AI services through its Environment Management layer.

Enterprises can leverage Rafay to manage infrastructure, offer compute services, and deploy AI tools in a self-service manner. The platform's features include SKU automation, self-service portals, enterprise-grade user management, and Kubernetes cluster lifecycle management.

Regional Implementation and Impact

Regional cloud providers like Lintasarta in Indonesia plan to use the Rafay Platform to offer PaaS capabilities for AI inferencing and training workloads. Vikram Sinha, CEO of Indosat Ooredoo Hutchinson, emphasized their collaboration with NVIDIA and Rafay in defining PaaS requirements for AI applications.

Overall, the Rafay Platform addresses the demands of AI workloads by offering a production-ready PaaS solution, combining NVIDIA's accelerated computing infrastructure with its platform capabilities to reduce time-to-market for AI initiatives.

For more information, visit the NVIDIA blog.

Image source: Shutterstock