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How can I filter which lines of a CSV to be loaded into memory using pandas? This seems like an option that one should find in read_csv. Am I missing something?

Example: we've a CSV with a timestamp column and we'd like to load just the lines that with a timestamp greater than a given constant.

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3 Answers 3

up vote 23 down vote accepted

There isn't an option to filter the rows before the CSV file is loaded into a pandas object.

You can either load the file and then filter using df[df['field'] > constant], or if you have a very large file and you are worried about memory running out, then use an iterator and apply the filter as you concatenate chunks of your file e.g.:

iter_csv = pandas.read_csv('file.csv', iterator=True, chunksize=1000)
df = pd.concat([chunk[chunk['field'] > constant] for chunk in iter_csv])

You can vary the chunksize to suit your available memory. See here for more details.

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I didn't find a straight-forward way to do it within context of read_csv. However, read_csv returns a DataFrame, which can be filtered using this:

Select rows by boolean vector df[bool_vec] DataFrame


filtered = df[df['timestamp'] > targettime]]

This is selecting all rows in df (assuming df is any DataFrame, such as the result of a read_csv call, that at least contains a datetime column "timestamp") for which the values in the "timestamp" column are greater than the value of targettime.

UPDATE: This question is similar to pandas: filter rows of DataFrame with operator chaining

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you can only skip rows using argument skiprows.

as Griffin mentioned i would just load all and filter the DataFrame if the rows you want to filter are not consecutive

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