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30.11.2025
this writes an LVM label and some metadata to the PV.
The PV is divided up into units of the same size (4MB by default) known as physical extents (PEs). A PE is the smallest allocatable data volume. Figure 1
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04.04.2023
the Microsoft Security Compliance Toolkit 1.0 [1] can help you with this question. After unzipping the archive file, you will see a Group Policy Objects (GPOs) backup folder, which you can import in the Group
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30.05.2021
the following:
$ gpustat -P
[0] Tesla V100-SXM2-16GB | 37'C, 0 %, 24 / 300 W | 0 / 16160 MB |
One GPU is present, running at a cool 37 Celsius and drawing 24W while doing absolutely nothing. To proceed further
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30.11.2025
appliance (see the "Test Hardware" box) with eight fast disks in a RAID level 0 array with a stripe size of 64KB. The RAID is divided into an SSD array and an HDD array with identical partitions on both
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21.01.2021
processors running at 167MHz. It had options for 128, 256, or 512MB of SRAM main memory and was the first supercomputer to sustain greater than 1GFLOPS (10^9 floating point operations per second
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31.10.2025
If you are looking for more performance or more security, RAID storage is always a useful solution. Whereas the non-redundant RAID 0 speeds up data access, RAID 1 duplicates your data and therefore
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08.10.2013
November 1, 2013 is the deadline for entries in International Supercomputing Conference (ISC '14) Student Cluster Competition.
ISC '14 will be held in Leipzig, Germany on June 22-26, 2014
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18.06.2015
XC40 before the system is placed into regular service.
The Excalibur system comes with 101,184 processors, and the Stanford team had access to 22,00 of them. The team was working on a new scalability
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25.08.2016
than fabricating 22,000 cables on site. The team also replaced the copper power cables with aluminum cables at some points, saving 20 percent in material costs.
Other institutions with Trinity
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18.04.2018
, and possible subjects include “traditional simulation-based projects,” as well as big data and machine learning proposals.
The deadline for proposals is June 22, 2018. See the DOE website for more on proposal