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I have some problems while reading file even from txt or HDF5 formats to dataframes in pandas because a txt file of about 200 mb of strings stored as txt and read with read_table causes a memory consumption of about 600 Mb. If I append the dataframe to HDFStore the file is about 200 mb too. Here is how I read the file

datatypes=[('FIELD1','S13'),('FIELD2','S3'),('FIELD3','S31')]
df=pd.read_table('c:\\folder1\\example1.txt',sep='|',dtype=datatypes)

Is there a way to read the txt file more efficiently in terms of memory usage?

I'm using pandas v 0.11.0

Thank you in advance

share|improve this question
    
How do you measure memory consumption? And are you really just using the two lines above? – Achim May 31 '13 at 8:25
    
I just watch at OS process monitor . I ommitted the import pandas as pd and futher instructions not related with the text file import task. – D.Castro May 31 '13 at 8:37
1  
don't specify the dtypes, these cause the data to be read as fixed type strings rather than variable length object types – Jeff May 31 '13 at 13:07

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