NVIDIA DGX-2 Systems Supplied by Microway Accelerates Research at ORNL

February 19, 2020

PLYMOUTH, Mass., Feb. 19, 2020 – Microway, a leading provider of computational clusters, servers, and workstations for AI and HPC, announces it has delivered 2 NVIDIA DGX-2 AI Systems to the U.S. Department of Energy’s Oak Ridge National Laboratory (ORNL) that have since opened new opportunities and scientific results for machine learning and data-intensive computing groups.

Thanks to the unique features of the new NVIDIA DGX-2 AI systems and their rapid and successful installation, ORNL research teams have been able to expand existing and enable new innovative projects focusing on machine learning and AI with advanced architectures throughout the Lab.

(From left to right) Cole Freniere and Michael Reynolds of Microway, Alex Volkov of NVIDIA, and Chris Layton and Brian Zachary of ORNL pose with a newly arrived DGX-2. The NVIDIA appliances connect ORNL researchers with a platform that excels at machine learning, a type of artificial intelligent that could automate some of the time-intensive analysis inherent in scientific research. Image courtesy of ORNL. 

The DGX-2 systems feature a unique density of 16 NVIDIA V100 GPUs plus innovative NVIDIA NVSwitch technology to fully interconnect all GPUs. Since their delivery, they have proven extraordinarily complementary to ORNL’s record-breaking 200 petaflop “Summit” supercomputer.

Enabling innovative projects

These specialized systems allow users to work on a uniquely large and complex set of problems that other large GPU solutions are incapable of tackling.

“I get requests for access to these systems often, from both researchers and students from all over the lab who want to learn on the best hardware around. These requests cover the full range of use cases and the DGX-2s never fail to impress. As word of mouth, combined with outreach, ramps up, I only see usage of these systems increasing,” said Chris Layton, Linux Systems Engineer for ORNL’s Compute and Data Environment for Science (CADES) team.

Heng Ma, a postdoctoral research associate in the Center for Molecular Biophysics, shared that the DGX-2 systems have made scaling projects up to the Summit system easier and more successful. “We use machine learning algorithms to control Molecular Dynamics simulations… For my current projects, I use the DGX-2 to produce a prototype of data, which later on we are trying to move to Summit. So, this prototype is like the proof of concept that it actually works before we actually put it on Summit.”

The Compute and Data Environment for Science (CADES) team at ORNL sought this groundbreaking new architecture to help advance their research. The ORNL team then decided to trust AI & HPC specialist Microway with their deployment. They were rewarded with the two DGX-2 systems physically installed, up and running, and doing benchmark testing within 4 hours of the first crate being opened.

Deployment: running benchmarks 4 hours after the crates were opened

As an experienced cluster integrator and NVIDIA Partner Network Elite DGX partner, Microway’s role was essential to delivering a complete solution that was operational as soon as it was installed.

In the weeks before delivery Microway experts performed a careful system, storage, and network architecture design and design review with ORNL personnel and NVIDIA solutions architects—enabling rapid installation and setup once Microway personnel arrived onsite.

Delivery of the two new machines also required careful advanced logistical preparation to ensure that the room, network, contacts, cooling, and system admins were all ready for the installation and launch of the DGX-2 systems. The ORNL admin and Microway teams constantly collaborated via, phone, email, and web prior to the installation to ensure a smooth deployment.

“Microway was able to, via their installation crew, make the integration of the DGX-2 into the CADES environment a smooth process… This was done under a deadline and they met all the timelines flawlessly. Microway was able to update the DGX-2s to a point where they were ready for the CADES team to hit the ground running in configuring them for end users,” Layton shared.

Upon arriving onsite, the Microway team uncrated the systems, readied racks, installed the systems into the racks, ran power and network cabling, updated all firmware, deployed the complete DGX software stack, and readied the systems for benchmark testing.

Into the Future

The new DGX-2 systems have already provided unexpected capacities and insights to the ORNL team, and the researchers expect that this will continue into the future.

Groups in such diverse fields as Molecular Biophysics, geographic data sciences, and AI-Driven Biosystems modeling have all utilized the new hardware deployment to drive their science & research since delivery.

The systems have attracted attention across the lab. Additional users at ORNL have selected a third DGX-2 for a recent deployment. As with the initial systems, the Microway team has ensured a smooth delivery experience and rapid bringup.

About Microway, Inc.

Microway designs and builds hardware solutions for the intersection of AI and HPC. These include clusters, servers, quiet workstations designed for bleeding-edge computational performance. These products serve demanding users in the enterprise, government, and academia.


Source: Microway, Inc. 

Subscribe to HPCwire's Weekly Update!

Be the most informed person in the room! Stay ahead of the tech trends with industry updates delivered to you every week!

Recipe for Scaling: ARQUIN Framework for Simulating a Distributed Quantum Computing System

October 14, 2024

One of the most difficult problems with quantum computing relates to increasing the size of the quantum computer. Researchers globally are seeking to solve this “challenge of scale.” To bring quantum scaling closer Read more…

Nvidia Is Increasingly the Secret Sauce in AI Deployments, But You Still Need Experience

October 14, 2024

I’ve been through a number of briefings from different vendors from IBM to HP, and there is one constant: they are all leaning heavily on Nvidia for their AI services strategy. That may be a best practice, but Nvidia d Read more…

Zapata Computing, Early Quantum-AI Software Specialist, Ceases Operations

October 14, 2024

Zapata Computing, which was founded in 2017 as a Harvard spinout specializing in quantum software and later pivoted to an AI focus, is ceasing operations, according to an SEC filing last week. Zapata had gone public one Read more…

AMD Announces Flurry of New Chips

October 10, 2024

AMD today announced several new chips including its newest Instinct GPU — the MI325X — as it chases Nvidia. Other new devices announced at the company event in San Francisco included the 5th Gen AMD EPYC processors, Read more…

NSF Grants $107,600 to English Professors to Research Aurora Supercomputer

October 9, 2024

The National Science Foundation has granted $107,600 to English professors at US universities to unearth the mysteries of the Aurora supercomputer. The two-year grant recipients will write up what the Aurora supercompute Read more…

VAST Looks Inward, Outward for An AI Edge

October 9, 2024

There’s no single best way to respond to the explosion of data and AI. Sometimes you need to bring everything into your own unified platform. Other times, you lean on friends and neighbors to chart a way forward. Those Read more…

Nvidia Is Increasingly the Secret Sauce in AI Deployments, But You Still Need Experience

October 14, 2024

I’ve been through a number of briefings from different vendors from IBM to HP, and there is one constant: they are all leaning heavily on Nvidia for their AI Read more…

NSF Grants $107,600 to English Professors to Research Aurora Supercomputer

October 9, 2024

The National Science Foundation has granted $107,600 to English professors at US universities to unearth the mysteries of the Aurora supercomputer. The two-year Read more…

VAST Looks Inward, Outward for An AI Edge

October 9, 2024

There’s no single best way to respond to the explosion of data and AI. Sometimes you need to bring everything into your own unified platform. Other times, you Read more…

Google Reports Progress on Quantum Devices beyond Supercomputer Capability

October 9, 2024

A Google-led team of researchers has presented more evidence that it’s possible to run productive circuits on today’s near-term intermediate scale quantum d Read more…

At 50, Foxconn Celebrates Graduation from Connectors to AI Supercomputing

October 8, 2024

Foxconn is celebrating its 50th birthday this year. It started by making connectors, then moved to systems, and now, a supercomputer. The company announced it w Read more…

The New MLPerf Storage Benchmark Runs Without ML Accelerators

October 3, 2024

MLCommons is known for its independent Machine Learning (ML) benchmarks. These benchmarks have focused on mathematical ML operations and accelerators (e.g., Nvi Read more…

DataPelago Unveils Universal Engine to Unite Big Data, Advanced Analytics, HPC, and AI Workloads

October 3, 2024

DataPelago this week emerged from stealth with a new virtualization layer that it says will allow users to move AI, data analytics, and ETL workloads to whateve Read more…

Stayin’ Alive: Intel’s Falcon Shores GPU Will Survive Restructuring

October 2, 2024

Intel's upcoming Falcon Shores GPU will survive the brutal cost-cutting measures as part of its "next phase of transformation." An Intel spokeswoman confirmed t Read more…

Shutterstock_2176157037

Intel’s Falcon Shores Future Looks Bleak as It Concedes AI Training to GPU Rivals

September 17, 2024

Intel's Falcon Shores future looks bleak as it concedes AI training to GPU rivals On Monday, Intel sent a letter to employees detailing its comeback plan after Read more…

Granite Rapids HPC Benchmarks: I’m Thinking Intel Is Back (Updated)

September 25, 2024

Waiting is the hardest part. In the fall of 2023, HPCwire wrote about the new diverging Xeon processor strategy from Intel. Instead of a on-size-fits all approa Read more…

Ansys Fluent® Adds AMD Instinct™ MI200 and MI300 Acceleration to Power CFD Simulations

September 23, 2024

Ansys Fluent® is well-known in the commercial computational fluid dynamics (CFD) space and is praised for its versatility as a general-purpose solver. Its impr Read more…

AMD Clears Up Messy GPU Roadmap, Upgrades Chips Annually

June 3, 2024

In the world of AI, there's a desperate search for an alternative to Nvidia's GPUs, and AMD is stepping up to the plate. AMD detailed its updated GPU roadmap, w Read more…

Nvidia Shipped 3.76 Million Data-center GPUs in 2023, According to Study

June 10, 2024

Nvidia had an explosive 2023 in data-center GPU shipments, which totaled roughly 3.76 million units, according to a study conducted by semiconductor analyst fir Read more…

Shutterstock_1687123447

Nvidia Economics: Make $5-$7 for Every $1 Spent on GPUs

June 30, 2024

Nvidia is saying that companies could make $5 to $7 for every $1 invested in GPUs over a four-year period. Customers are investing billions in new Nvidia hardwa Read more…

Shutterstock 1024337068

Researchers Benchmark Nvidia’s GH200 Supercomputing Chips

September 4, 2024

Nvidia is putting its GH200 chips in European supercomputers, and researchers are getting their hands on those systems and releasing research papers with perfor Read more…

Comparing NVIDIA A100 and NVIDIA L40S: Which GPU is Ideal for AI and Graphics-Intensive Workloads?

October 30, 2023

With long lead times for the NVIDIA H100 and A100 GPUs, many organizations are looking at the new NVIDIA L40S GPU, which it’s a new GPU optimized for AI and g Read more…

Leading Solution Providers

Contributors

IBM Develops New Quantum Benchmarking Tool — Benchpress

September 26, 2024

Benchmarking is an important topic in quantum computing. There’s consensus it’s needed but opinions vary widely on how to go about it. Last week, IBM introd Read more…

Intel Customizing Granite Rapids Server Chips for Nvidia GPUs

September 25, 2024

Intel is now customizing its latest Xeon 6 server chips for use with Nvidia's GPUs that dominate the AI landscape. The chipmaker's new Xeon 6 chips, also called Read more…

Quantum and AI: Navigating the Resource Challenge

September 18, 2024

Rapid advancements in quantum computing are bringing a new era of technological possibilities. However, as quantum technology progresses, there are growing conc Read more…

IonQ Plots Path to Commercial (Quantum) Advantage

July 2, 2024

IonQ, the trapped ion quantum computing specialist, delivered a progress report last week firming up 2024/25 product goals and reviewing its technology roadmap. Read more…

Google’s DataGemma Tackles AI Hallucination

September 18, 2024

The rapid evolution of large language models (LLMs) has fueled significant advancement in AI, enabling these systems to analyze text, generate summaries, sugges Read more…

Microsoft, Quantinuum Use Hybrid Workflow to Simulate Catalyst

September 13, 2024

Microsoft and Quantinuum reported the ability to create 12 logical qubits on Quantinuum's H2 trapped ion system this week and also reported using two logical qu Read more…

US Implements Controls on Quantum Computing and other Technologies

September 27, 2024

Yesterday the Commerce Department announced export controls on quantum computing technologies as well as new controls for advanced semiconductors and additive Read more…

Everyone Except Nvidia Forms Ultra Accelerator Link (UALink) Consortium

May 30, 2024

Consider the GPU. An island of SIMD greatness that makes light work of matrix math. Originally designed to rapidly paint dots on a computer monitor, it was then Read more…

  • arrow
  • Click Here for More Headlines
  • arrow
HPCwire