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<description>
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## Writing to a file
+ All files are stored under Documents/SEELab3
+ Select the 'Print To File' block from the expeyes menu
+ Specify a filename, and attach any variable to the block's input
+ If checked, the newline checkbox inserts a newline character after every line so that your results appear properly formatted in a single column.
## Description of the program
100 Voltage values are read from A1 and stored into a file called voltages.txt
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</description>
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</block>
</next>
</block>
</next>
</block>
</statement>
</block>
</xml>
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