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Hint: To find right tool for your client(Windows, Mac, etc. # Open an interactive batch session, e.g.: Ssh -X # use -X for X-forwarding on the Cluster # use -X for ssh X-forwarding to connect to bwUniCluster or bwForCluster MLS&WISO # Output is automatically saved in analyse.log # Number of nodes and cores (processors per node) To show environment variables, which will be available after 'module load'Īfter loading the Stata module with the following start-up commands are possible:Įxample scripts are available in the directory $STATADIR/bwhpc-examples If Stata is available you can load a specific version or you can load the default version with You do not have to care about parallelization Stata/MP manages this for you. The graphical user interface and the statistical functions are the same. There is a special edition called Stata/SE that can handle up to 32,766 variables (and also allows longer string variables and larger matrices), and a version for multicore/multiprocessor computers called Stata/MP, which allows larger datasets and is substantially faster. Working with Stata/MP does not differ from working with other Stata variants. The standard version is called Stata/IC (or Intercooled Stata) and can handle up to 2,047 variables. Due to internal shared-memory parallelization you can expect a speed-up for large-scale applications. The license allows the usage of the multiprocessing variant Stata/MP for up to 16 cores.
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Many statistical methods are available.Ī list of versions currently available on all bwHPC-C5-Clusters can be obtained from theįor Stata the following variants are available:
#Can we open all data in stata ic to stata mp software#
Stata is a software package for statistical computations in research and development.