Nutanix Enterprise AI provides an easy-to-use, unified generative AI experience on-premises, at the edge and now in public clouds
COMPANY NEWS: Nutanix, a leader in hybrid multicloud computing, today announced that it extended the company's AI infrastructure platform with a new cloud native offering, Nutanix Enterprise AI (NAI), that can be deployed on any Kubernetes platform, at the edge, in core data centres, and on public cloud services like AWS EKS, Azure AKS, and Google GKE.
The NAI offering delivers a consistent hybrid multicloud operating model for accelerated AI workloads, enabling organisations to leverage their models and data in a secure location of their choice while improving return on investment (ROI). Leveraging NVIDIA NIM for optimised performance of foundation models, Nutanix Enterprise AI helps organisations securely deploy, run, and scale inference endpoints for large language models (LLMs) to support the deployment of generative AI (GenAI) applications in minutes, not days or weeks.
Generative AI is an inherently hybrid workload, with new applications often built in the public cloud, fine-tuning of models using private data occurring on-premises, and inferencing deployed closest to the business logic, which could be at the edge, on-premises or in the public cloud. This distributed hybrid GenAI workflow can present challenges for organisations concerned about complexity, data privacy, security, and cost.
Nutanix Enterprise AI provides a consistent multicloud operating model and a simple way to securely deploy, scale, and run LLMs withNVIDIA NIM optimised inference microservices as well as open foundation models from Hugging Face. This enables customers to stand up enterprise GenAI infrastructure with the resiliency, day 2 operations, and security they require for business-critical applications, on-premises or on AWS Elastic Kubernetes Service (EKS), Azure Managed Kubernetes Service (AKS), and Google Kubernetes Engine (GKE).
Additionally, Nutanix Enterprise AI delivers a transparent and predictable pricing model based on infrastructure resources, which is important for customers looking to maximize ROI from their GenAI investments. This is in contrast to hard-to-predict usage or token-based pricing.
Nutanix Enterprise AI is a component of Nutanix GPT-in-a-Box 2.0. GPT-in-a-Box also includes Nutanix Cloud Infrastructure, Nutanix Kubernetes Platform, and Nutanix Unified Storage along with services to support customer configuration and sizing needs for on-premises training and inferencing. For customers looking to deploy in public cloud, Nutanix Enterprise AI can be deployed in any Kubernetes environment but is operationally consistent with on-premises deployments.
“With Nutanix Enterprise AI, we're helping our customers simply and securely run GenAI applications on-premises or in public clouds. Nutanix Enterprise AI can run on any Kubernetes platform and allows their AI applications to run in their secure location, with a predictable cost model,” saidThomas Cornely, SVP, Product Management, Nutanix.
Nutanix Enterprise AI can be deployed with the NVIDIA full-stack AI platform and is validated with theNVIDIA AI Enterprise software platform, includingNVIDIA NIM, a set of easy-to-use microservices designed for secure, reliable deployment of high-performance AI model inferencing. Nutanix-GPT-in-a-Box is also an NVIDIA-Certified System, also ensuring reliability of performance.
"Generative AI workloads are inherently hybrid, with training, customisation, and inference occurring across public clouds, on-premises systems, and edge locations,"said Justin Boitano, vice president of enterprise AI at NVIDIA. "Integrating NVIDIA NIM into Nutanix Enterprise AI provides a consistent multicloud model with secure APIs, enabling customers to deploy AI across diverse environments with the high performance and security needed for business-critical applications."
"Thanks to the deep collaboration between the Nutanix and Hugging Face teams, customers of Nutanix Enterprise AI are able to seamlessly deploy the most popular open models in an easy to use, fully tested stack – now also on public clouds," saidJeff Boudier, Head of Product at Hugging Face.
“By providing a consistent experience from the enterprise to public cloud, Nutanix Enterprise AI aims to provide a user-friendly infrastructure platform to support organisations at every step of their AI journey, from public cloud to the edge,” saidDave Pearson, Infrastructure Research VP at IDC.
Nutanix Enterprise AI can help customers:
Key use cases for customers leveraging Nutanix Enterprise AI include: enhancing customer experience with GenAI through analysis of customer feedback and documents; accelerating code and content creation by leveraging co-pilots and intelligent document processing; leveraging fine-tuning models on domain-specific data to accelerate code and content generation; strengthening security, including leveraging AI models for fraud detection, threat detection, alert enrichment, and automatic policy creation; and improving analytics by leveraging fine-tuned models on private data.
Nutanix Enterprise AI, running on-premises, at the edge or in public cloud, and Nutanix GPT-in-a-Box 2.0 are currently available to customers. For more information, please visitNutanix.com/enterprise-ai
About Nutanix
Nutanix is a global leader in cloud software, offering organizations a single platform for running applications and managing data, anywhere. With Nutanix, companies can reduce complexity and simplify operations, freeing them to focus on their business outcomes. Building on its legacy as the pioneer of hyperconverged infrastructure, Nutanix is trusted by companies worldwide to power hybrid multicloud environments consistently, simply, and cost-effectively. Learn more atwww.nutanix.com or follow us on social media @nutanix.

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