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NetApp ONTAP and Fujitsu for Enterprise AI/ML

Mike McNamara
Mike McNamara
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Computer vision capabilities are having a significant impact in almost every industry, from autonomous vehicles to AI-assisted medical diagnosis. Training the machine learning (ML) algorithms used for computer vision applications creates an extremely demanding workload, requiring massive quantities of data and significant computing power.

To accommodate these workloads, you can use a clustered architecture consisting of NetApp® storage systems and Fujitsu PRIMERGY servers optimized for AI. This NetApp and Fujitsu solution is designed to handle large datasets by using the processing power of GPUs alongside traditional CPUs. The combined solution of PRIMERGY servers and NetApp all-flash storage systems provides an infrastructure that delivers excellent performance and seamless scalability with industry-leading data management.

State-of-the-art NetApp AFF storage systems enable IT departments to meet enterprise storage requirements with industry-leading performance, cloud integration, and best-in-class data management. The Fujitsu PRIMERGY GX2570 server is an extremely powerful deep-learning (DL) platform that benefits from equally powerful storage and network infrastructure to deliver maximum value.

To automatically construct the system infrastructure for this solution, you can use Ansible, a DevOps-style configuration management tool developed by Red Hat. Ansible offers a variety of functional modules from NetApp and Cisco. It includes modules for the Fujitsu PRIMERGY GX2570 M5, for storage such as the NetApp AFF A800 array, and for automatic construction and configuration management of Cisco Nexus 3232C network switches. Ansible makes it easy to add GPU nodes and change the software environment on the host OS, greatly reducing the load on system administrators.

To validate the solution, NetApp and Fujitsu used one NetApp AFF A800 storage system, four Fujitsu PRIMERGY GX2570 servers, and two Cisco Nexus 3232C 100Gb Ethernet (100GbE) switches.

Compute, Network, Storage system diagramWe validated the solution by using the MLPerf v0.6 benchmark models and testing procedure. Each MLPerf training benchmark measures the processing time required to train a model on the specified dataset to achieve the specified quality target. The following table shows the training time involved for each of the models.

ModelTraining time result
SSD19.54 minutes
Mask R-CNN186.22 minutes
ResNet-5094.76 minutes
Minigo24.97 minutes


To learn more about the joint solution, read this technical report.

Mike McNamara

Mike McNamara

Mike McNamara는 NetApp의 제품 및 솔루션 마케팅 분야의 고위 경영진이며 25년이 넘는 데이터 관리 및 클라우드 스토리지 마케팅 경험을 보유하고 있습니다. 10년 전 NetApp에 입사하기에 앞서, McNamara는 Adaptec, Dell EMC, HPE에서 근무했습니다. McNamara는 자사 클라우드 스토리지 오퍼링 및 업계 최초의 클라우드 연결형 AI/ML 솔루션(NetApp), 유니파이드 스케일아웃 및 하이브리드 클라우드 스토리지 시스템 및 소프트웨어(NetApp), iSCSI 및 SAS 스토리지 시스템 및 소프트웨어(Adaptec), 파이버 채널 스토리지 시스템(EMC CLARiiON)의 출시를 이끈 핵심 팀 리더입니다.McNamara는 Fibre Channel Industry Association에서 마케팅 의장을 역임한 경력 외에도 Ethernet Technology Summit Conference Advisory Board와 Ethernet Alliance에서 회원으로 활동하고 있으며, 업계 저널의 고정 기고자로 활동하며 여러 행사에서 연설을 맡기도 했습니다. McNamara는 또한 FriesenPress에서 'Scale-Out Storage - The Next Frontier in Enterprise Data Management'라는 책을 출간했으며, Kapos가 선정한 눈 여겨 볼 상위 50대 B2B 제품 마케터에 이름을 올렸습니다.Mike McNamara의 모든 게시물 보기

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