10

To reduce memory costs, I specified dtypes of my pandas dataframe using astype(),like:

df['A'] = df['A'].astype(int8)

then I use to_csv() to store it, but when I use read_csv() to read it again and check the dtypes, I found it still stored in int64. How can I preserve the dtypes while saving it in local storages?

2
  • 8
    You're writing text out, there is no concept of dtypes with text, you'd need to specify the dtypes again when reading the csv again see read_csv you need to pass a param to dtype arg
    – EdChum
    Apr 26, 2018 at 15:53
  • @EdChum Now I understand. Thanks!
    – Feephy
    Apr 27, 2018 at 1:14

2 Answers 2

9

Here's a way to do it:

import pandas as pd

# Create Example data with types
df = pd.DataFrame({
    'words': ['foo', 'bar', 'spam', 'eggs'],
    'nums': [1, 2, 3, 4]
}).astype(dtype={
    'words': 'object',
    'nums': 'int8'
})

def to_csv(df, path):
    # Prepend dtypes to the top of df (from https://stackoverflow.com/a/43408736/7607701)
    df.loc[-1] = df.dtypes
    df.index = df.index + 1
    df.sort_index(inplace=True)
    # Then save it to a csv
    df.to_csv(path, index=False)

def read_csv(path):
    # Read types first line of csv
    dtypes = pd.read_csv('tmp.csv', nrows=1).iloc[0].to_dict()
    # Read the rest of the lines with the types from above
    return pd.read_csv('tmp.csv', dtype=dtypes, skiprows=[1])


print('Before: \n{}\n'.format(df.dtypes))

to_csv(df, 'tmp.csv')
df = read_csv('tmp.csv')

print('After: \n{}\n'.format(df.dtypes))

Output:

Before: 
nums       int8
words    object
dtype: object

After: 
nums       int8 # still int8
words    object
dtype: object
0
8

A modification of #Aaron N. Brock to allow parse_dates as well (plus not change original DataFrame):

def to_csv(df, path):
    # Prepend dtypes to the top of df
    df2 = df.copy()
    df2.loc[-1] = df2.dtypes
    df2.index = df2.index + 1
    df2.sort_index(inplace=True)
    # Then save it to a csv
    df2.to_csv(path, index=False)

def read_csv(path):
    # Read types first line of csv
    dtypes = {key:value for (key,value) in pd.read_csv(path,    
              nrows=1).iloc[0].to_dict().items() if 'date' not in value}

    parse_dates = [key for (key,value) in pd.read_csv(path, 
                   nrows=1).iloc[0].to_dict().items() if 'date' in value]
    # Read the rest of the lines with the types from above
    return pd.read_csv(path, dtype=dtypes, parse_dates=parse_dates, skiprows=[1])
2
  • no upvotes for this? That's just crazy. Nice work. I wonder the dataframe could be subclassed to include these functions. Mar 20, 2019 at 3:10
  • This is a fantastic addition! Good catch that I ignored the mutation of the original dataframe. Mar 20, 2019 at 16:06

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