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29.10.2013
you read this. This is a major feature release for the CloudStack community, and has been in the works for about 6 months now. There are a ton of interesting features, from the ability to use a message
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05.03.2013
on this previous experience, the Google team refined the approach when developing TFO, leading to an improved result. Linux kernel 3.6 implements the necessary client-side infrastructure, and 3.7 will include
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14.09.2011
explain the crux of the matter in just 10 pages, performing the rare magic of insight and concision all at once. He similarly introduces the Lambda function (in the humorously numbered chapter 6
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12.10.2011
.3.11
Successfully installed actionmailer-2.3.11
Successfully installed activeresource-2.3.11
Successfully installed rails-2.3.11
6 gems installed
-----> Compiled slug size is 4.7MB
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28.06.2011
extensively covered by the CSA in Domain 6 "Portability an Interoperability" [5] of their Security Guidance for Critical Areas of Focus in Cloud Computing.
Security as a Service (SecaaS)
SecaaS is by far
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15.02.2012
-source virtualized cloud software stacks for production science use.
Finding 5. Clouds expose a different risk model requiring different security practices and policies.
Finding 6. MapReduce shows promise
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02.10.2017
than 8MB of files are installed, youcan start creating a snap with an init
command (Figure 6), which pulls in a template.
Figure 6: Some helpful output
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09.11.2017
. There are a few differences, so a developer has to go in and tweak the remaining 1%.” The ROCm developers recently converted the CUDA-based Caffe machine learning library to HIP and found that 99.6% of the 55
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13.06.2018
with: ../src/configure -v
--with-pkgversion='Ubuntu 5.4.0-6ubuntu1~16.04.9'
--with-bugurl=file:///usr/share/doc/gcc-5/README.Bugs
--enable-languages=c,ada,c++,java,go,d,fortran,objc,obj-c++
--prefix
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15.11.2019
.
The ROCm developers have also ported the LAMMPS molecular dynamics simulator and the HPGMG benchmark to HIP with similar success. Another porting project was the Caffe deep learning framework [5], where 99.6