• GPU Direct at Clemson

    Virtual

    Overview RSVP today to receive your Grub Hub gift card Clemson Lunch & Learn with Vast Data & Cambridge Computer! Clemson's newest High-Performance Computing installation is a GPU Direct architecture connecting NVIDIA's newest system, the DGX A100, to a high-performance storage array from VAST Data. This supercomputer is available to you to increase your time-to-results and outcomes from your research. Perhaps you've asked yourself "what benefits are gained when I bypass the CPU and leverage GPU-Direct architecture?" or "what do I need to change about my process or code to leverage this system?" Please join us for an interactive session, we will dive into those questions and more! Schedule 11:15 AM - Order your Grub Hub meal for 12:15pm delivery! 11:30 AM - 12:15 PM - Session 1 Why & When GPU Direct Architectures are Advantageous - Presented by Vast Data Where Does it all Happen at Clemson? - Presented by Palmetto Storage Team 12:15 PM - 12:45 PM - Lunch break w/ Grub Hub 12:45 PM - 1:30 PM - Session 2 Leveraging GPU Direct - Presented by Cambridge Computer Professional Services Team How do we use it? - Hands-on lab with Cambridge, Vast and audience Our team will […]

  • HPC AI Day – Stony Brook University

    Gates and Hillman Centers 4902 Forbes Avenue, Pittsburg, PA, United States

    Overview A follow-up to Cambridge Computer's HPC AI Day @ PEARC 2022 Cambridge is looking forward to uniting industry leaders at Stony Brook University's campus for a 1-day series of presentations and workshops. Location: CEWIT Conference Room Agenda *Times subject to change 8:00 AM - Welcome & Coffee Hour 9:00 AM - Nvidia & Research Computing The DPU - Provide high-level overview Nvidia Latest Product Announcements from GTC including Grace/Hopper, L40 and RTX6000 Nvidia HPC Software Development Kits for AI based models Q&A 10:30AM - **Break** 10:45 AM - Run:ai - Building AI Infrastructure Right 11:30 AM - **LUNCH** 12:30 PM - AMD: CPU Roadmap & Software Stack, ROCm & GPU Review Open source tool for GPU Computing 2:00 PM - **Break** 2:15 PM - CIQ: Rocky Linux & Containers - Singularity Support 3:00 PM - **Break** 3:15 PM - Intel: CPU & HBM Roadmap & Software Research Stack - oneAPI How the Intel® DPC++ Compatibility Tool assists in migrating your existing CUDA code to Data Parallel C++ (DPC++) code About DPC++, based on ISO C++ and incorporates standard SYCL and community extensions to simplify data parallel programming. How the tool ports both CUDA language kernels and library API calls

  • GPU in EDU at Carnegie Mellon University

    Carnegie Mellon University 4902 Forbes Ave., Pittsburg, PA, United States

    Cambridge Computer and NVIDIA teamed to lead a seminar last week at Carnegie Mellon University to discuss how new HPC and GPU architectures impact research computing in higher ed. We had a full room plus a bunch of people attending remotely. There was some lively debate and a lot of great ideas shared. We gave our own version of the NVIDIA GTC recap and led a discussion on the new chip architectures (Grace, Hopper, Blackwell). We also had presentations from Nvidia on the various products and services that they offer that are lesser known to their client base. This was a great chance for different stakeholders in the university to get together in person and bat around ideas, common challenges, etc.

  • AI Futures at Harvard Medical School

    Countway Library, Harvard Medical School 695 Huntington Ave., Boston

    Cambridge and NVIDIA had a full house at Harvard Med for the seminar entitled AI Futures at Harvard Medical School. GPU in EDU is a seminar series co-produced by NVIDIA and Cambridge Computer. We travel to universities and research institutions across the country to share ideas and insights related to AI and ML at the intersection of science and IT infrastructure. The content of each session is tailored to the specific interests of the institution hosting the event. Harvard Med chose to focus on deep learning for genomics, NVIDIA software frameworks, and GPU resource management. We'd like to thank our friends at Harvard, Run:ai, and NVIDIA for making this event possible. Their support and collaboration were instrumental in making it a memorable and informative event. Special thanks for Run:ai for co-sponsoring the event and sharing insights into their amazing technology for pooling and scheduling GPU resources. We'd also like to thank Christos Alexiadis (Cambridge) and Eliot Eshelman (NVIDIA) for all their work behind the scenes. Agenda Welcome Session (10:00am - 10:15 am) Presented by: Eliot Eshelman (NVIDIA) & Jose Alvarez (Cambridge) Part 1. Deep Learning & Genomics (10:15 am - 12:30 pm) 10:15 - 11:00 am - Training, Tuning, & Deploying large deep learning models […]

  • GPU in EDU Higher Ed Breakfast Meetup and Panel

    College Football Hall of Fame 250 Marietta Street NW, Atlanta, GA, United States

    Join us for a morning of insights and discussion with Cambridge and NVIDIA at the "GPU in EDU" Breakfast Meetup & Panel Discussion. Breakfast & Latte Services 7:00 AM - 10:00 AM Panel with Harvard Medical School & University of California, San Francisco 8:00 AM - 9:30 AM Q&A 9:30 AM - 10:00 AM  

  • NVIDIA Day at Columbia University

    Davis Auditorium, Schapiro CEPSR 530 West 120th Street, New York, NY, United States

    Overview Presentations and discussions about AI and data science in research and education. The morning session will focus on NVIDIA overviews and topics of particular concern to IT Professionals. The afternoon will focus on Researcher workloads with additional presentations from NVIDIA, Cambridge, and CUIT as well as opportunities for open discussion. All are welcome to join throughout the day and to come and go as your schedule allows! Room Location: Davis Auditorium, Schapiro CEPSR About Cambridge Cambridge Computer provides IT infrastructure solutions with a focus on the needs of higher education and research computing. We work with our clients and vendors to specify, sell, and deploy hardware. Projects are as simple as individual workstations and as complex as HPC/GPU compute clusters. About NVIDIA We pioneered accelerated computing to tackle challenges no one else can solve. With NVIDIA, healthcare institutions can harness the power of AI and high-performance computing to define the future of medicine. NVIDIA engineers the most advanced chips, systems, and software for the AI factories of the future. We build new AI services that help institutions create their own AI factories.

  • GPU in EDU: Dartmouth College

    Dartmouth College 3 Maynard St, Hanover, NH, United States

    Overview Presentations and discussions about HPC & AI infrastructure for science and higher education The day will feature a mix of presentations from the Cambridge and Dartmouth teams, along with open discussions with attendees. Everyone is welcome to join the Happy Hour at the end of the event at Murphy's! Agenda 1:00 PM - 2:00 PM — Goldstein 105 Occom Commons (including lunch) Roadmap - NVIDIA Products & Highlights 2025 - Cambridge & NVIDIA Discussion - How to Leverage GH200s (specifically memory) Discussion - Over-Subscribing Systems and Unified Memory 2:00 PM - 2:15 PM — Break; move to Filene 2:15 PM - 3:15 PM — Moore Hall B13 Filene Auditorium Presentation - GPUs/AI - A Scientist's Perspective - Chris Simmons Sneak Peek - Grace Blackwell 3:15 PM - 4:00 PM — Moore Hall B13 Filene Auditorium Dartmouth Presentation Reviewing chat.dartmouth.edu and ai.dartmouth.edu - Dartmouth Team Introduction to Research Computing AI Offerings and Real-world Applications - Simon Stone API access to chat.dartmouth.edu - Jonathan Crossett In-depth Coverage & Future Plans for chat.dartmouth.edu - Tivon Luker Q & A - Jonathan Crossett, Simon Stone, Tivon Luker 4:00 PM - 4:15 PM — Break 4:15 PM - 5:00 PM — (OPTIONAL) Farewell to […]

  • GPU in EDU at University of Washington

    UW Tower 4333 Brooklyn Ave NE, Seattle, WA, United States

    Join Cambridge Computer, NVIDIA, and the UW-IT Research Computing Team for a day of innovation and learning at the University of Washington. This hybrid event is part of our national GPU in EDU Seminar Series, focusing on the expanding role of AI and data science in academic research and education. What to Expect: Expert Presentations on reproducible software pipelines, GPU computing services, and NVIDIA RAPIDS Hands-on Demonstrations showcasing practical GPU implementations Networking Opportunities with industry leaders and academic researchers Q&A Sessions with Cambridge, NVIDIA, and UW-IT specialists Featured speakers include Dr. Christopher Simmons (Cambridge Computer), Dr. Melisa Alkan (NVIDIA), and Dr. Kristen Finch (UW-IT Research Computing). Whether you're new to GPU computing or scaling advanced research, this seminar offers valuable insights for accelerating your research workflows. Visit Event Page to Register → All registrants will receive Zoom meeting information for remote participation.

  • GPU in EDU at University of Minnesota

    Coffman Memorial Union, President's Room 300 Washington Ave. S.E., Minneapolis, MN, United States

    This one-day event, presented in collaboration with the Minnesota Supercomputing Institute at the University of Minnesota, features Dr. Christopher S. Simmons leading comprehensive sessions that equip academic researchers with a complete framework for implementing reproducible AI and scientific workflows. Visit Event Page to Register → All registrants will receive Zoom meeting information for remote participation and a link to the recorded sessions.

  • Implementing Open-Source LLMs

    Missouri Athletic Club 405 Washington Ave., St. Louis, United States

    Overview This meeting is the 2nd annual in-person gathering of the GPU Innovators User Community. In our inaugural meeting last year in Atlanta, we packed the room with passionate discussions about NVIDIA's Grace Hopper and Blackwell architectures—the powerhouse hardware that makes today's AI revolution possible. This year, we're taking the next logical step in our community's journey: transitioning from metal to models. TL;DR We'll tackle the questions keeping you up at night—which models fit your research needs, what hardware specifications actually matter, and how to deploy these systems using the open-source tools you already trust. Lunch is served afterwards at the Blues Museum down the street. Intended Audience This talk is designed for research computing professionals, HPC administrators, academic researchers, and AI enthusiasts seeking practical guidance on deploying open-source LLMs, selecting appropriate models, and integrating them into existing research computing infrastructure. Session Description The rapid evolution of open-source large language models presents researchers with unprecedented opportunities to deploy powerful AI capabilities while maintaining complete control over sensitive data and computational workflows. This tutorial addresses the critical challenge facing research computing centers: how to navigate the complex landscape of open-source LLMs to make informed decisions about model selection, hardware requirements, and […]