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SAS tutorial


SAS Tutorial



SAS E-Guide


1. Library Creation

Create a program and write following command:

libname tanvir '/sasdata2/SAS-USERS/taaalam/';





2. Import File into Library

File > Import Data >  Select Local File >  Output SAS data set (  use SAS server and Library name that you created in step 1 )




SAS E-Miner


1. Map Libraries in SAS Miner (Let E-miner knows the library you created in E-Guide)

File > New > Library


2. Bring Files under "Data Source"

Right click "Data Source" > "Create Data Soruce"





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