2022-11-28 Fundamentals of Accelerated Computing with CUDA C,C++ (hdlw1w22)
Course | Fundamentals of Accelerated Computing with CUDA C,C++ |
Number | hdlw1w22 |
Places available | 15 |
Date | 28.11.2022 – 28.11.2022 |
Price | € 0.00 |
Place | ONLINE |
Room | |
Registration deadline | 21.11.2022 23:55 |
education@lrz.de |
Contents
The CUDA computing platform enables the acceleration of CPU-only applications to run on the world’s fastest massively parallel GPUs. In this course you experience C/C++ application acceleration by:
Accelerating CPU-only applications to run their latent parallelism on GPUs
Utilising essential CUDA memory management techniques to optimise accelerated applications
Exposing accelerated application potential for concurrency and exploiting it with CUDA streams
Leveraging command line and visual profiling to guide and check your work
Upon completion, you’ll be able to accelerate and optimise existing C/C++ CPU-only applications using the most essential CUDA tools and techniques. You’ll understand an iterative style of CUDA development that will allow you to ship accelerated applications fast.
The course is co-organised by LRZ, NHR@FAU and NVIDIA Deep Learning Institute (DLI). All instructors are NVIDIA certified University Ambassadors.
Important information
After you are accepted, please create an account under courses.nvidia.com/join .
Ensure your laptop / PC will run smoothly by going to http://websocketstest.com/ Make sure that WebSockets work for you by seeing under Environment, WebSockets is supported and Data Receive, Send and Echo Test all check Yes under WebSockets (Port 80).If there are issues with WebSockets, try updating your browser. If you have any questions, please contact Marjut Dieringer at mdieringer"at"nvidia.com.
NVIDIA Deep Learning Institute
The NVIDIA Deep Learning Institute delivers hands-on training for developers, data scientists, and engineers. The program is designed to help you get started with training, optimising, and deploying neural networks to solve real-world problems across diverse industries such as self-driving cars, healthcare, online services, and robotics.
Prerequisites
Technical background, basic C/C++ programming skills.
Hands-On
The lectures are interleaved with many hands-on sessions using Jupyter Notebooks. The exercises will be done on a fully configured GPU-accelerated workstation in the cloud.
Language
English
Lecturer
Dr. Momme Allalen (LRZ and NVIDIA University Ambassador), Dr. Sebastian Kuckuk (NHR@FAU and NVIDIA University Ambassador)
Prices and Eligibility
The course is open and free of charge for people from academia from the Member States (MS) of the European Union (EU) and Associated Countries to the Horizon 2020 programme.
Registration
Please register with your official e-mail address to prove your affiliation.
Withdrawal Policy
See Withdrawal
Legal Notices
For registration for LRZ courses and workshops we use the service edoobox from Etzensperger Informatik AG (www.edoobox.com). Etzensperger Informatik AG acts as processor and we have concluded a Data Processing Agreement with them.
No. | Date | Time | Leader | Location | Room | Description |
---|---|---|---|---|---|---|
1 | 28.11.2022 | 09:00 – 16:30 | Momme Allalen Sebastian Kuckuk | ONLINE | Course |