VMware Inc. and NVIDIA announced the expansion of their strategic partnership to ready the hundreds of thousands of enterprises that run on VMware’s cloud infrastructure for the era of generative AI.
VMware Private AI Foundation with NVIDIA will enable enterprises to customize models and run generative AI applications, including intelligent chatbots, assistants, search and summarization. The platform will be a fully integrated solution featuring generative AI software and accelerated computing from NVIDIA, built on VMware Cloud Foundation and optimized for AI.
“Generative AI and multi-cloud are the perfect match,” said Raghu Raghuram, CEO, VMware. “Customer data is everywhere — in their data centers, at the edge, and in their clouds. Together with NVIDIA, we’ll empower enterprises to run their generative AI workloads adjacent to their data with confidence while addressing their corporate data privacy, security and control concerns.”
“Enterprises everywhere are racing to integrate generative AI into their businesses,” said Jensen Huang, founder and CEO, NVIDIA. “Our expanded collaboration with VMware will offer hundreds of thousands of customers — across financial services, healthcare, manufacturing and more — the full-stack software and computing they need to unlock the potential of generative AI using custom applications built with their own data.”
Full-Stack Computing to Supercharge Generative AI
To achieve business benefits faster, enterprises are seeking to streamline development, testing and deployment of generative AI applications. McKinsey estimates that generative AI could add up to $4.4 trillion annually to the global economy.(1)
VMware Private AI Foundation with NVIDIA will enable enterprises to harness this capability, customizing large language models; producing more secure and private models for their internal usage; and offering generative AI as a service to their users; and, more securely running inference workloads at scale.
The platform is expected to include integrated AI tools to empower enterprises to run proven models trained on their private data in a cost-efficient manner. To be built on VMware Cloud Foundation and NVIDIA AI Enterprise software, the platform’s expected benefits will include:
- Privacy — Will enable customers to easily run AI services adjacent to wherever they have data with an architecture that preserves data privacy and enable secure access.
- Choice — Enterprises will have a wide choice in where to build and run their models — from NVIDIA NeMo™ to Llama 2 and beyond — including leading OEM hardware configurations and, in the future, on public cloud and service provider offerings.
- Performance — Running on NVIDIA accelerated infrastructure will deliver performance equal to and even exceeding bare metal in some use cases, as proven in recent industry benchmarks.
- Data-Center Scale — GPU scaling optimizations in virtualized environments will enable AI workloads to scale across up to 16 vGPUs/GPUs in a single virtual machine and across multiple nodes to speed generative AI model fine-tuning and deployment.
- Lower Cost — Will maximize usage of all compute resources across, GPUs, DPUs and CPUs to lower overall costs, and create a pooled resource environment that can be shared efficiently across teams.
- Accelerated Storage — VMware vSAN Express Storage Architecture will provide performance-optimized NVMe storage and supports GPUDirect® storage over RDMA, allowing for direct I/O transfer from storage to GPUs without CPU involvement.
- Accelerated Networking — Deep integration between vSphere and NVIDIA NVSwitch™ technology will further enable multi-GPU models to execute without inter-GPU bottlenecks.
- Rapid Deployment and Time to Value — vSphere Deep Learning VM images and image repository will enable fast prototyping capabilities by offering a stable turnkey solution image that includes frameworks and performance-optimized libraries pre-installed.
The platform will feature NVIDIA NeMo, an end-to-end, cloud-native framework included in NVIDIA AI Enterprise — the operating system of the NVIDIA AI platform — that allows enterprises to build, customize and deploy generative AI models virtually anywhere. NeMo combines customization frameworks, guardrail toolkits, data curation tools and pretrained models to offer enterprises an easy, cost-effective and fast way to adopt generative AI.
For deploying generative AI in production, NeMo uses TensorRT for Large Language Models (TRT-LLM), which accelerates and optimizes inference performance on the latest LLMs on NVIDIA GPUs. With NeMo, VMware Private AI Foundation with NVIDIA will enable enterprises to pull in their own data to build and run custom generative AI models on VMware’s hybrid cloud infrastructure.
At VMware Explore 2023, NVIDIA and VMware will highlight how developers within enterprises can use the new NVIDIA AI Workbench to pull community models, like Llama 2, available on Hugging Face, customize them remotely and deploy production-grade generative AI in VMware environments.
Broad Ecosystem Support for VMware Private AI Foundation With NVIDIA
VMware Private AI Foundation with NVIDIA will be supported by Dell Technologies, Hewlett Packard Enterprise and Lenovo — which will be among the first to offer systems that supercharge enterprise LLM customization and inference workloads with NVIDIA L40S GPUs, NVIDIA BlueField®-3 DPUs and NVIDIA ConnectX®-7 SmartNICs.
The NVIDIA L40S GPU enables up to 1.2x more generative AI inference performance and up to 1.7x more training performance compared with the NVIDIA A100 Tensor Core GPU.
NVIDIA BlueField-3 DPUs accelerate, offload and isolate the tremendous compute load of virtualization, networking, storage, security and other cloud-native AI services from the GPU or CPU.
NVIDIA ConnectX-7 SmartNICs deliver smart, accelerated networking for data center infrastructure to boost some of the world’s most demanding AI workloads.
VMware Private AI Foundation with NVIDIA builds on the companies’ decade-long partnership. Their co-engineering work optimized VMware’s cloud infrastructure to run NVIDIA AI Enterprise with performance comparable to bare metal. Mutual customers further benefit from the resource and infrastructure management and flexibility enabled by VMware Cloud Foundation.
Archive
- October 2024(44)
- September 2024(94)
- August 2024(100)
- July 2024(99)
- June 2024(126)
- May 2024(155)
- April 2024(123)
- March 2024(112)
- February 2024(109)
- January 2024(95)
- December 2023(56)
- November 2023(86)
- October 2023(97)
- September 2023(89)
- August 2023(101)
- July 2023(104)
- June 2023(113)
- May 2023(103)
- April 2023(93)
- March 2023(129)
- February 2023(77)
- January 2023(91)
- December 2022(90)
- November 2022(125)
- October 2022(117)
- September 2022(137)
- August 2022(119)
- July 2022(99)
- June 2022(128)
- May 2022(112)
- April 2022(108)
- March 2022(121)
- February 2022(93)
- January 2022(110)
- December 2021(92)
- November 2021(107)
- October 2021(101)
- September 2021(81)
- August 2021(74)
- July 2021(78)
- June 2021(92)
- May 2021(67)
- April 2021(79)
- March 2021(79)
- February 2021(58)
- January 2021(55)
- December 2020(56)
- November 2020(59)
- October 2020(78)
- September 2020(72)
- August 2020(64)
- July 2020(71)
- June 2020(74)
- May 2020(50)
- April 2020(71)
- March 2020(71)
- February 2020(58)
- January 2020(62)
- December 2019(57)
- November 2019(64)
- October 2019(25)
- September 2019(24)
- August 2019(14)
- July 2019(23)
- June 2019(54)
- May 2019(82)
- April 2019(76)
- March 2019(71)
- February 2019(67)
- January 2019(75)
- December 2018(44)
- November 2018(47)
- October 2018(74)
- September 2018(54)
- August 2018(61)
- July 2018(72)
- June 2018(62)
- May 2018(62)
- April 2018(73)
- March 2018(76)
- February 2018(8)
- January 2018(7)
- December 2017(6)
- November 2017(8)
- October 2017(3)
- September 2017(4)
- August 2017(4)
- July 2017(2)
- June 2017(5)
- May 2017(6)
- April 2017(11)
- March 2017(8)
- February 2017(16)
- January 2017(10)
- December 2016(12)
- November 2016(20)
- October 2016(7)
- September 2016(102)
- August 2016(168)
- July 2016(141)
- June 2016(149)
- May 2016(117)
- April 2016(59)
- March 2016(85)
- February 2016(153)
- December 2015(150)