Event Details:
Location
This event is open to:
Distributed Training & Marlowe Multi-GPU Best Practices
Abstract: This training focuses on efficient strategies for using multiple GPUs and nodes. We will overview how to deploy strategies of data parallelism and model parallelism to scale to multiple GPUs, enabling faster training times and better model performance.
Speaker: Aastha Jhunjhunwala is a Solution Architect in the NVIDIA AI Enterprise team working with customers across different industries. She helps customers build optimized generative applications by leveraging NVIDIA hardware and software stack.
About the NVIDIA GPU Computing Workshop Series
We are excited to announce a series of NVIDIA-led workshops designed to enhance your expertise in GPU computing. Whether you're a beginner or looking to deepen your skills, these sessions offer valuable insights and hands-on learning opportunities. Workshops are expected to be held on a monthly basis.
NOTE: This event is open to Stanford and NVIDIA affiliates only.
Explore More Events
-
Open Science Center
CORES Annual Symposium 2025
-Simonyi Conference Center, CoDa, 389 Jane Stanford Way, Stanford, CA 94305 -
Causal Science Center
Stanford Causal Science Center Conference on Experimentation
-Paul Brest Hall, 555 Salvatierra Walk, Stanford, CA 94305 -
Center for Decoding the Universe
Center for Decoding the Universe Annual Conference
Data-Driven Discovery in the Rubin Era-Simonyi Conference Center, CoDa, 389 Jane Stanford Way, Stanford, CA 94305