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Docs» training:ds:2025:data_science_on-boarding_on_ibex

Data Science on-boarding on Ibex

  Date

  • February 03, 2025
  • 9:00 pm - 01:00 pm


  Venue

  • Building 1, Level 2, Multi-purpose Room (MPR) (Desert Side)



  Organizer

Didier Barradas Bautista
Visualization Core Laboratory
didier.barradasbautista@kaust.edu.sa

  Register

Register Here



ds_onboarding_corelabs.jpg

Workshop Materials

  • Material to work:Data-science-onboarding
  • Slides:here
  • Livestream: watch recording

How to Prepare?

  • Here is the Ibex Starting Pack
  • You can consult reading the KSL documentation

Overview

The Ibex cluster is a heterogeneous cluster with various compute nodes and filesystems. Several users run numerous projects, including mathematical and chemical modeling, data analysis, machine learning, and artificial intelligence.

This hands-on lesson is part of the Introduction to Data Science Workshop Series offered by KVL and KSL as part of our ongoing efforts to build core data science skills capacity both at KAUST and within the Kingdom of Saudi Arabia (KSA).

If you have any questions, please contact us at help@vis.kaust.edu.sa.

Who Should Attend?

The course is aimed at graduate students and other researchers. A user on Ibex must be associated with a PI. Unassociated users will have severe restrictions regarding how many computing resources they can request. Check using your KAUST credentials to see if you are associated with a PI Click Here.

Agenda

Time Topic
09:00 Quick overview of Supercomputing resources
09:45 Job Scheduler 
10:40 Jupyter and Code-server on Ibex
11:30 Containers in HPC
12:30 Scale out demos

workshop
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training/ds/2025/data_science_on-boarding_on_ibex.txt · Last modified: 2025/02/03 11:15 by Didier Barradas Bautista
Visualization Laboratory Wiki

Table of Contents

Table of Contents

  • Data Science on-boarding on Ibex
    • Overview
    • Who Should Attend?
    • Agenda

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