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KSL AI/ML Training Series: Data Science on KSL HPC Systems

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  • KSL AI/ML Training Series: Data Science on KSL HPC Systems

Accelerate Your AI/ML Research on KAUST HPC Systems

The KAUST Supercomputing Core Lab (KSL) invites you to our hands-on workshop series designed to help researchers leverage our high-performance computing infrastructure for AI and machine learning workloads.

What You'll Gain:

  • Practical skills to efficiently run AI/ML workloads on IBEX
  • Insights into recent storage subsystem upgrades and optimization strategies
  • Hands-on experience with distributed deep learning and hyperparameter tuning
  • Direct support from KSL experts to accelerate your research

Bring your laptop: all sessions include interactive, hands-on components.

 

Workshop Schedule

Data Science Onboarding on IBEX
Sunday, February 1, 2026 | 8:30 AM – 12:30 PM
Building 4&5, Level 0, Auditorium 0215
Perfect for new users getting started with IBEX for data science workflows.
Register here

Distributed Deep Learning on IBEX (2-day intensive)
Monday-Tuesday, February 9-10, 2026 | 9:00 AM – 3:00 PM
KAUST Vis Lab Showcase, Building 1, Level 2
Learn to scale your deep learning models across multiple GPUs and nodes.
Register here

Distributed Hyperparameter Optimization on IBEX
Wednesday, February 11, 2026 | 9:00 AM – 12:00 PM
KAUST Vis Lab Showcase, Building 1, Level 2
Master efficient hyperparameter tuning techniques for large-scale experiments.
Register here

 

Prerequisites and detailed agendas are available on the registration pages.

Questions? Contact KSL at training@hpc.kaust.edu.sa 

Seats are limited – register early to secure your spot!

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