I have a series of data indexed by time values (a float) and I want to take chunks of the series and plot them on top of each other. So for example, lets say I have stock prices taken about every 10 minutes for a period of 20 weeks and I want to see the weekly pattern by plotting 20 lines of the stock prices. So my X axis is one week and I have 20 lines (corresponding to the prices during the week).
The index is not a uniformly spaced value and it is a floating point. It is something like:
t = np.arange(0,12e-9,12e-9/1000.0) noise = np.random.randn(1000)/1e12 cn = noise.cumsum() t_noise = t+cn y = sin(2*math.pi*36e7*t_noise) + noise df = DataFrame(y,index=t_noise,columns=["A"]) df.plot(marker='.') plt.axis([0,0.2e-8,0,1])
So the index is not uniformly spaced. I'm dealing with voltage vs time data from a simulator. I would like to know how to create a window of time, T, and split df into chunks of T long and plot them on top of each other. So if the data was 20*T long then I would have 20 lines in the same plot.
Sorry for the confusion; I used the stock analogy thinking it might help.