4

I have the following snippet of Python code:

import pandas as pd

# print normal index
print data.index

# convert from df to JSON and back
data_json = data.to_json()
df = pd.read_json(data_json)
df.index = pd.to_datetime(df.index)
print df.index

for some reason running this returns in:

<class 'pandas.tseries.index.DatetimeIndex'>
[1950-01-03 00:00:00, ..., 2014-08-21 00:00:00]
Length: 16264, Freq: None, Timezone: None
<class 'pandas.tseries.index.DatetimeIndex'>
[1966-10-31 00:00:00, ..., 2001-09-07 00:00:00]
Length: 16264, Freq: None, Timezone: None

Can someone explain to me what is going on and how I can have the index persist through the transformations?

  • 2
    Can you post some example data where this fails? On a dummy set it worked for me. You should also note versions. – chrisb Aug 22 '14 at 20:36
  • print sys.version print pd.__version__ 2.7.5 |Anaconda 1.8.0 (64-bit)| (default, Nov 4 2013, 15:30:26) [GCC 4.1.2 20080704 (Red Hat 4.1.2-54)] 0.12.0 The data is: data = Quandl.get("YAHOO/INDEX_GSPC", trim_start="1950-01-03", trim_end="2014-08-21") – L1meta Aug 22 '14 at 20:41
  • 2
    fixed it by upgrading pandas to 0.14.1 and specifying date_format='iso' in the to_json() call. – L1meta Aug 22 '14 at 21:08
4

The error here is that to_json saves dates with ms resolution by defaul, while to_datetime converts with nanosecond resolution by default. To fix, either of these (but not both!) would work.

pd.to_datetime(df.index, unit='ms')
#OR
data_json = data.to_json(date_unit='ns')

As noted in comments, you can also just save the json with the dates in iso format.

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