Hewlett Packard Enterprise (NYSE: HPE) has announced a supercomputing solution for generative AI designed for large enterprises, research institutions, and government organisations to accelerate the training and tuning of artificial intelligence (AI) models using private data sets. This solution comprises a software suite enabling customers to train and tune models and develop AI applications. The solution also includes liquid-cooled supercomputers, accelerated compute, networking, storage, and services to help organisations unlock AI value faster.
“The world’s leading companies and research centres are training and tuning AI models to drive innovation and unlock breakthroughs in research, but to do so effectively and efficiently, they need purpose-built solutions,” said Justin Hotard, executive vice president and general manager, HPC, AI & Labs at Hewlett Packard Enterprise. “To support generative AI, organisations need to leverage solutions that are sustainable and deliver the dedicated performance and scale of a supercomputer to support AI model training. We are thrilled to expand our collaboration with NVIDIA to offer a turnkey AI-native solution that will help our customers significantly accelerate AI model training and outcomes.”
Software tools to build AI applications, customise pre-built models, and develop and modify code are key components of this supercomputing solution for generative AI. The software is integrated with HPE Cray supercomputing technology that is based on the same powerful architecture used in the world’s fastest supercomputer and powered by NVIDIA Grace Hopper GH200 Superchips. Together, this solution offers organisations the unprecedented scale and performance required for big AI workloads, such as large language model (LLM) and deep learning recommendation model (DLRM) training. Using HPE Machine Learning Development Environment on this system, the open source 70 billion-parameter Llama 2 model was fine-tuned in less than 3 minutes[i], translating directly to faster time-to-value for customers. The advanced supercomputing capabilities of HPE, supported by NVIDIA technology, improve system performance by 2-3X[ii].
“Generative AI is transforming every industrial and scientific endeavour,” said Ian Buck, vice president of Hyperscale and HPC at NVIDIA. “NVIDIA’s collaboration with HPE on this turnkey AI training and simulation solution, powered by NVIDIA GH200 Grace Hopper Superchips, will provide customers with the performance needed to achieve breakthroughs in their generative AI initiatives.”
The supercomputing solution for generative AI is a purpose-built, integrated, AI-native offering that includes the following end-to-end technologies and services:
By 2028, it is estimated that the growth of AI workloads will require about 20 gigawatts of power within data centres[iii]. Customers will require solutions that deliver a new level of energy efficiency to minimise the impact of their carbon footprint.
Energy efficiency is core to HPE’s computing initiatives which deliver solutions with liquid-cooling capabilities that can drive up to 20% performance improvement per kilowatt over air-cooled solutions and consume 15% less power[iv].
Today, HPE delivers the majority of the world’s top 10 most efficient supercomputers using direct liquid cooling (DLC) which is featured in the supercomputing solution for generative AI to efficiently cool systems while lowering energy consumption for compute-intensive applications.
HPE is uniquely positioned to help organisations unleash the most powerful compute technology to drive their AI goals forward while helping reduce their energy usage.
The supercomputing solution for generative AI will be generally available in December through HPE in more than 30 countries.
[i] Using 32 HPE Cray EX 2500 nodes with 128 NVIDIA H100 GPUs at 97% scaling efficiency, a 70 billion-parameter Llama 2 model was fine-tuned in internal tests on a 10 million token corpus in less than 3 minutes. Model tuning code and training parameters were not optimised between scaling runs.
[ii] Standard AI benchmarks, BERT and Mask R-CNN, using an out-of-box, non-tuned system comprising the HPE Cray EX2500 Supercomputer using an HPE Cray EX254n accelerator blade with four NVIDIA GH200 Grace Hopper Superchips. The independently-run tests showed 2-3X performance improvement as compared to MLPerf 3.0 published results for an A100-based system comprising two AMD EPYC 7763 processors and four NVIDIA A100 GPUs with NVLINK interconnects.
[iii] Avelar, Victor; Donovan, Patrick; Lin, Paul; Torell, Wendy; and Torres Arango, Maria A., The AI disruption: Challenges and guidance for data center design (White paper 110), Schneider Electric: https://download.schneider-electric.com/files?p_Doc_Ref=SPD_WP110_EN&p_enDocType=White+Paper&p_File_Name=WP110_V1.1_EN.pdf
[iv] Based on estimates from internal performance testing conducted by HPE in April 2023 that compares an air-cooled HPE Cray XD2000 with the same system using direct liquid cooling. Using a benchmark of SPEChpc™2021, small, MPI + OpenMP, 64 ranks, 14 threads estimated results per server, the air-cooled system recorded 6.61 performance per kW and the DLC system recorded 7.98 performance per kW, representing a 20.7% difference. The same benchmark recorded results of 4539 watts for the air-cooled system’s chassis power and the DLC system recorded 3862 watts, representing a 14.9% difference.