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I'm saving data to CSV files using pandas. I have one important column with dtype: datetime64[ns].Somehow the datatype is changed to object when I read the data back from CSV file. How can I write, read while keeping the same datatype? Is this related to the encoding type?

df = pd.io.sql.read_sql(sql, cnxn)
df.to_csv(fileName)
df.TimeSeries

Name: TimeSeries, Length: 10000, dtype: datetime64[ns]

DF = pd.read_csv(fileName, sep=',')
DF.TimeSeries

Name: TimeSeries, Length: 10000, dtype: object

2 Answers 2

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CSV files do not store data types. Data in CSV files is stored as text.

Your best options are:

  1. Store in a serialized or other type-aware format (pickle, HDF5) if this is appropriate for your use case.
  2. Use the parse_dates argument of pd.read_csv, e.g. df = pd.read_csv(filename, sep=',', parse_dates=['Date']). See pd.read_csv documentation for more details.

The second option is just a workaround. It will convert text back to datetime when you read the data into a dataframe.

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  • 2
    I tried DataFrame.to_pickle and pandas.read_pickle. Works great. Thanks. Apr 9, 2018 at 13:49
  • @Animate_Ant, great. Just be careful. Pickle is version-specific. It may not work across pandas versions. It also makes your solution Python-specific. But it's certainly efficient.
    – jpp
    Apr 9, 2018 at 13:53
  • Actually, if you use a csv that quotes only nonnumeric types (Python csv.QUOTE_NONNUMERIC in csv library) then you can at least distinguish between numeric and string types.
    – user202729
    Nov 27, 2020 at 4:27
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I was facing the same problem, also I did not want to share the data temporarily. I wanted long-term storage which could also handle data types.

Parquet is what worked for me.

  1. I read a CSV, changed its dtypes, and saved it as parquet

    df.to_parquet("some-data.parquet", index=False)

  2. Read the parquet in pandas in other notebooks

    pd.read_parquet("some-data.parquet")

Note You need to install a reader for pandas like fastparquet to do this in pandas

pip install fastparquet

Cheers.

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