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Documentation Index

Fetch the complete documentation index at: https://docs.nyc-ai.app/llms.txt

Use this file to discover all available pages before exploring further.

CSI HPCC offers regular learning opportunities alongside this documentation.

Workshops

The HPC Center hosts free workshops covering:
  • Introduction to HPC and the command line.
  • Parallel programming (MPI and OpenMP basics).
  • Job scripting with SLURM.
  • GPU programming and CUDA.
  • Data management, transfer, and archival.
  • Python and Julia on HPC clusters.
Schedules are posted on the Training & Workshops page of the HPCC Wiki and on the CSI events calendar.

Seminars

Periodic research seminars and guest talks are announced on the CSI HPCC center page under HPC Events. These cover computational research across CUNY and beyond.

One-on-one help

The HPC Center provides helpdesk hours by appointment at both the CUNY Graduate Center and the College of Staten Island. Request a slot through the HPC Helpline and mention which location works for you.
Current appointment availability and exact locations move around. Confirm on the Wiki’s Training and workshops page before advertising specific times.

Self-paced material

  • HPCC Wiki: the authoritative technical reference, including Running Jobs, File Transfers, Program Compilation, and FAQs pages.
  • This site: the getting-started track (AccountsQuickstartJob submission) is designed to get a new user through their first real job.
  • External MOOCs and vendor docs: topics like SLURM, MPI, CUDA, and PyTorch on GPU clusters are well covered by NVIDIA, LLNL, and university HPC programs. We link out when relevant rather than duplicating their material.

Stay up to date

Keep an eye on:
  • CSI HPCC events on the center’s page.
  • The HPCC Wiki for operational announcements (maintenance windows, software updates).
  • Any user mailing list you were subscribed to when your account was provisioned.
If you’d like to see a specific workshop or tutorial run, email the helpline. Scheduling reflects demand.