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I have been running an experiment that outputs data with two columns:

  1. seconds since start of experiment (float)
  2. a measurement. (float)

I would now like to load this into Pandas to resample and plot the measurements. I've done this before, but those times my timestamps have been since epoch or in datetime (YYY-MM-DD HH:mm:ss) format. If I'm loading my first column as integers I'm unable to do

data.resample('5Min', how='mean')

. It also does not seem possible if I'd convert my first column to timedelta(seconds=...). My question is, is it possible to resample this data without subverting to epoch conversion?

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can you post some of your data? hard to help otherwise –  Paul H Nov 28 '13 at 18:14
    
What date format are you using (it should always be Timestamp?) –  Andy Hayden Nov 28 '13 at 20:04

1 Answer 1

up vote 1 down vote accepted

You can use groupby with time // period to do this:

import pandas as pd
import numpy as np

t = np.random.rand(10000)*3600
t.sort()
v = np.random.rand(10000)

df = pd.DataFrame({"time":t, "value":v})

period = 5*60
s = df.groupby(df.time // period).value.mean()
s.index *= period
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Is there a way to resample like this if the time column contains datetimes rather than ints? I tried using this with datetimes and got TypeError: incompatible type for a datetime/timedelta operation [__floordiv__] –  10flow Nov 18 at 22:45

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