I have searched, and searched (for 4 days) before posting this. I apologize in advance if it is too elementary, and a waste of your time. I have successfully generated some basic plots using pyplot, and matplotlib by using their tutorial's examples, but to no avail for what I need to accomplish.
- I have a list of numbers that exist in a single file.
- Each line contains a number corresponding to the number of milliseconds that it takes to complete a certain repeated task.
- There are over a million entries in this file, and it can grow beyond that.
Example of 20:
173 1685 1152 253 1623 390 84 40 319 86 54 991 1012 721 3074 4227 4927 181 4856 1415
Eventually what I'll need to do is calculate a range of individual totals (distributed evenly over the absolute total number of entries) -- and then plot those averages using any of the plotting libs for python. I have considered using pyplot for ease of use.
- The X axis will correspond to the total number of tasks completed, as the Y axis will represent the number of milliseconds it takes to complete the task (for this example the average time it takes to complete every 5).
Entries 1-5 = (plottedTotalA) Entries 6-10 = (plottedTotalB) Entries 11-15 = (plottedTotalC) Entries 16-20 = (plottedTotalD)
From what I can tell, I don't need to indefinitely store the values of the variables, only pass them as they are processed (in order) to the plotter. I have tried the following example to sum a range of 5 entries from the above list of 20 (which works), but I don't know how to dynamically pass the 5 at a time until completion, all the while retaining the calculated averages which will ultimately be passed to pyplot.
Python 2.7.3 (default, Jul 24 2012, 10:05:38) [GCC 4.7.0 20120507 (Red Hat 4.7.0-5)] on linux2 Type "help", "copyright", "credits" or "license" for more information. >>> plottedTotalA = ['173', '1685', '1152', '253', '1623'] >>> sum(float(t) for t in plottedTotalA) 4886.0