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I am reading some csv log data from a file and using the date,time fields as the index of the frame. When I plot the timeseries, the absolute times are shown in X-axis. I want to show the time on x-axis relative to the start time. How to do this?

For example: here is a sample x-axis:

 23:59:57--------+23:59:58----------23:59:59--------+00:00:00--------------+

I want it like this:

 0---------00:00:01----------00:00:02--------+00:00:03--------------+
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2 Answers 2

up vote 3 down vote accepted

An easy solution is to subtract the first index-item from the index. It can be done by using list comprehension, which might not be the best (fastest) option if your Dataframe very large.

begin = pd.datetime(2013,1,5,5,53)
end = pd.datetime(2013,1,7,7,16)

rng = pd.DatetimeIndex(start=begin, end=end, freq=pd.datetools.Minute(15))
df = pd.DataFrame(np.random.randn(rng.size), index=rng)

fig, axs = plt.subplots(2,1, figsize=(15,6))
fig.subplots_adjust(hspace=.5)

df.plot(ax=axs[0])
axs[0].set_title('Original')

df.index = [idx - df.index[0] for idx in df.index]
df.plot(ax=axs[1])
axs[1].set_title('Normalized')

enter image description here

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Great, thanks. I tried a similar approach after reading the dataframe from the csv: df.date_time = df.date_time - df.date_time[0], which errored out saying "'Timestamp' object has no attribute 'dtype'". I will try your solution now. –  nom-mon-ir Feb 14 '13 at 18:04
    
@Rutger_Kassies I am seeing that doing df.index = [idx - df.index[0] for idx in df.index] changes the data type of the index to Objects instead of DatetimeIndex, which is changing the graph output. I will post the output image as a separate answer so you have an idea what is happening. I will investigate myself to fix it but posting it here if you have any clue. –  nom-mon-ir Mar 5 '13 at 20:16

Here is the output after I did relative time normalization

Since the data type of the indices changed from DatetimeIndex to objects, each line is being printed in separate buckets.

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1  
Issue fixed now by doing this: start_t=pd.tslib.Timestamp(df.index[0].date()) df.index = [ pd.tslib.Timestamp(start_t + (idx - df.index[0])) for idx in df.index] –  nom-mon-ir Mar 5 '13 at 22:56

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