we have more than 7000 excel data files for .xlsx(2010). my R version is R 2.15.0. if i do manual operation to convert xlsx to xlx, .cvs, or txt., it will spend more time to do it .
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I have not used XLSconnect but my students used the package xlsx. Then either the function read.xlsx or read.xlsx2 will read in the xls sheet. This package has options for reading and writing xls format and can read and write specific sheets in the spreadsheet and specific regions.
The only formal guidance I gave my students (biology sophomores) for using this package is that the spreadsheet must be 'well formed'. (all items are data not formulas, first row is the variable name in lower case without any non-letter characters, and rows 2-## have the data for each variable. If it is a record than all the items for the same record are on the same row) It doesn't have *.xls to be this strict but I wanted the minimum of problems for the students as they read their data files.
Sounds like you've got a lot of Excel files to work with, here's what I do to get a large number of these files (both
Set working directly to location of my Excel files
Make a list of all files in working directory
Check the list
Makeke a list that contains all the data from the xls and xlsx files contained in the working dir. This is like a batch data import function.
Check that this read all the files in the folder, in case some Excel files are corrupt, etc. If the result is
Then I carry on with