Repository for training material for the 2022 SDSC HPC/CI User Training Course

Overview

hpc-training-2022

Repository for training material for the 2022 SDSC HPC/CI Training Series

HPC/CI Training Series home

https://www.sdsc.edu/event_items/202201_HPC-CI-Training-Series.html

Content:

Session 1 (01/14/22 – 03/04/22):

Agenda: Learn about tools and computing concepts necessary for HPC and CI systems

WEEK DATE TOPIC MATERIAL INSTRUCTOR
Week 01 Fri, 01/14/22 Program Orientation, history, plan,
Registration process & accounts
Interactive Video
YouTube
Mary Thomas
Week 02 Fri, 01/21/22 Parallel Computing Concepts
HPC overview & Expanse Architecture
Interactive Video
YouTube
Bob Sinkovits
Week 03 Fri, 01/28/22 Data Management
Job Submission - Queues and batch scripting
Interactive Video
YouTube
Mahidhar Tatineni,
Mary Thomas
Week 04 Fri, 02/04/22 Introduction to Singularity Containers Interactive Video
YouTube
Marty Kandes
Week 05 Fri, 02/11/22 Introduction to Software Containers and Kubernetes Interactive Video
YouTube
Jeffrey Weekly
Week 06 Fri, 02/18/22 Running Secure Jupyter Notebooks on HPC Systems Interactive Computing Interactive Video
YouTube
Mary Thomas
Week 07 Fri, 02/25/22 Introduction to Neural Networks, Convolution Neural Networks, and Deep Learning,
Introduction to Using TensorFlow and PyTorch on Expanse
Interactive Video
YouTube
Paul Rodriguez,
Mahidhar Tatineni
Week 08 Fri, 03/4/22 Oracle Cloud Overview
Azure Overview
Cloud Computing on JetStream
Interactive Video
YouTube
Santosh Bhatt,
Paul Yu,
Marty Kandes

[ Back to Session 1 ] [ Back to Top ]

Session 2: (03/28/22 - 05/06/22)

Agenda: Learn about tools and computing concepts necessary for HPC and CI systems

WEEK DATE TOPIC MATERIAL INSTRUCTOR
Week 09 Fri, 04/1/22 Visualization using Jupyter Notebooks Interactive Video
YouTube
Bob Sinkovits
Week 10 Fri, 04/8/22 CPU Computing: Introduction to OpenMP/Threads Interactive Video
YouTube
Marty Kandes
Week 11 Fri, 04/15/22 CPU Computing: Introduction to MPI Interactive Video
YouTube
Mahidhar Tatineni
Week 12 Fri, 04/22/22 CPU profiling with gprof and uProf Interactive Video
YouTube
Bob Sinkovits
Week 13 Fri, 04/29/22 Introduction to GPU computing
Programming and profiling with CUDA, OpenACC, and NSight
Interactive Video
YouTube
Andreas Goetz
Mahidhar Tatineni
Week 14 Fri, 05/06/22 GPU Computing with Python (Numba, CuPy, and RAPIDS) YouTube Kristopher Keipert (NVIDIA)
Zoe Ryan (NVIDIA)

[ Back to Session 2 ] [ Back to Top ]


## Instructors
NAME TITLE ORG
Santosh Bhatt Principal Enterprise Cloud Architect, Oracle (website) Oracle
Andy Goetz Director - Computational Chemistry Laboratory (website) SDSC
Kristopher Keipert Senior Solutions Architect (website) NVIDA
Marty Kandes Computational and Data Science Research Specialist (website) SDSC
Paul Rodriguez Research Programmer (website) SDSC
Zoe Ryan Solutions Architect (website) NVIDA
Bob Sinkovits Director for Scientific Computing Applications (website) SDSC
Mahidhar Tatineni Director of User Services (website) SDSC
Mary Thomas Computational Data Scientist, Lead - HPC Training (website) SDSC
Jeffrey Weekly Research IT Engagement and Support Manager bio University of California Santa Cruz
Cindy Wong Events Specialist SDSC
Nicole Wolter Computational and Data Science Research Specialist (website) SDSC
Paul Yu Sr. Cloud Solutions Architect bio Microsoft

[ Back to Top ]

Owner
sdsc-hpc-training-org
An organization for managing the various sdsc hpc education repos
sdsc-hpc-training-org
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