TinyGPU has new hardware:
tg010
. The hardware configuration and the currently deployed software are different to the non-Fermi nodes:- Ubuntu 10.04 LTS (instead of 8.04 LTS) as OS.
Note: For using the Intel Compiler <= 11.1 locally on tg010, you have to use gcc/3.3.6 Module [currently]. If not, libstdc++.so.5 is missing , as Ubuntu 10.04 does no longer contain this version. This is necessary only for compilation. Compiled Intel binaries will run as expected. /home/hpc
and/home/vault
are mounted [only] through NFS (and natively via GPFS-Cross-Cluster-Mount)- Dual-Socket-System with Intel Westmere X5650 (2.66 GHz) processor, having 6 native cores per socket (instead of Dual-Socket-System with Intel Nehalem X5550 (2.66 GHz), having 4 native cores per socket)
- 48 GB DDR3 RAM (instead of 24 GB DDR3 RAM)
- 1x NVidia Tesla C250 (“Fermi” with 3 GB GDDR5 featuring ECC)
- 1x NVidia GTX 280 (Consumer-Card with 1 GB RAM – formerly know as F22)
- 2 further PCIe2.0 16x slots will be equipped with NVidia C2070 Cards (“Fermi” with 6 GB GDDR5 featuring ECC) in Q4, instead of 2x NVidia Tesla M1060 (“Tesla” with 4 GB RAM) as in the remaining cluster nodes
- SuperServer 7046GT-TRF / X8DTG-QF with dual Intel 5520 (Tylersburg) chipset instead of SuperServer 6016GT-TF-TM2 / X8DTG-DF with Intel 5520 (Tylersburg) chipset
To allocate the fermi node, specify
:ppn=24
with your job (instead of :ppn=16
) and explicitly submit to the TinyGPU-Queue fermi
. The wallclock limit is set to the default of 24h . The ECC Memory status is shown on job startup.This article tries to be a translation from the original posted here: Zuwachs im TinyGPU-Cluster
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