# How to determine a formula for execution time given quantitative data, Excel, trendlines, monte carlo simulation

Can I get your help on some Maths and possibly Excel?

I have benchmarked my app increasing the number of iterations and number of obligors recording the time taken in seconds with the following result:

``````        200	400	600	800	1000	1200	1400	1600	1800	2000
20000   15.627681	30.0968663	44.7592684	60.9037558	75.8267358	90.3718977	105.8749983	121.0030672	135.9191249	150.3331682
40000   31.7202111	62.3603882	97.2085204	128.8111731	156.2443206	186.6374271	218.324317	249.2699288	279.6008184	310.9970803
60000   47.0708635	92.4599437	138.874287	186.0576007	231.2181381	280.541207	322.9836878	371.3076757	413.4058622	459.6208335
80000   60.7346238	120.3216303	180.471169	241.668982	300.4283548	376.9639188	417.5231669	482.6288981	554.9740194	598.0394434
100000  76.7535915	150.7479245	227.5125656	304.3908046	382.5900043	451.6034296	526.0730786	609.0358776	679.0268121	779.6887277
120000  90.4174626	179.5511355	269.4099593	360.2934453	448.4387573	537.1406039	626.7325734	727.6132992	807.4767327	898.307638
``````

How can I now come up with a function for T (time taken in seconds) as an expression of number of obligors O and number of iterations I

Thanks

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Damn that data came out really ugly, how can I paste a table or spreadsheet? I am blocked from all google apps at work so can't link to a google spreadsheet. –  m3ntat Jul 12 '09 at 10:45

I'm not quite sure of the data involved due to the question construction/presentation.

Assuming you're looking for `y = f(x)`. If you load the data into Excel, you can use the methods `SLOPE` and `INTERCEPT` on the data ranges to derive an expression of the form

``````y = mx+c
``````

and thus a linear function.

If you want a quadratic or cubic, you can use `LINEST` with a column of time data squared/cubed etc. to give you quadratic/cubic parameters, and thus derive an appropriate higher order function.

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Thanks Brian, I've used the Slope function and now have two sets of slope data. The slopes for time = as obligors increase for given numbers of iterations, and the slopes for time = as iterations increase for given numbers of obligors. Slopes for increasing obligor runs 200,400,600,800,1000,1200,1400,1600,1800,2000 20000 0.075266154 40000 0.154345891 60000 0.22975271 80000 0.302824147 100000 0.383819553 120000 0.449864445 –  m3ntat Jul 12 '09 at 11:37
And Slopes for increasin iterations for runs 20000,40000,60000,80000,100000,120000 200 0.000746733 400 0.001486137 600 0.002222518 800 0.002970427 1000 0.003730439 1200 0.00446452 1400 0.005174391 1600 0.006033815 1800 0.006710906 2000 0.007549094 Do I need to run through this for intercept as well? Then how to get an overall formula for Time as a function of number of obligors and number of iterations? Thanks –  m3ntat Jul 12 '09 at 11:38
So firstly get your y=mx+c for both data sets. Now (it's hard to do this without a diagram), you have a linear function for time vs obligors, and time vs iterations. I'm not an expert at this, but imagine those two functions plotted at right angles to each other, sharing the time as a vertical axis. You need to find some function that weights both contributions (such that looking at one only, you don't consider the other). I confess I'm not sure how to do that. –  Brian Agnew Jul 12 '09 at 11:47
I've posted up the question here experts-exchange.com/Software/Office_Productivity/Office_Suites/… which also allows file attachments, the data I am working with is here: filedb.experts-exchange.com/incoming/2009/07_w29/158924/… not sure if you will be able to see this without an EE account though. –  m3ntat Jul 12 '09 at 12:29
linking to experts-exchange.com when it is subscription only is spam surely. –  polyglot Jul 12 '09 at 13:56

Spoke to one of the quants here the function is of the from T = KNO, where T is time, K some constant, N iterations, O obligors.

Rearrange for K = T/(NO), plug this into my sample data, take the average of all sample points, use the Std dev for the error

I did this for my data and get:

T = 3.81524E-06 * N * O (with 1.9% error), this is a pretty good approximation.

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Create a chart in Excel, add a trendline, and select to have the equation displayed on the chart.

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I can take a subset of the data and create a chart with trend line for iterations (x) vs time (y) and view the formula (holding obligors constant), I can also do this separately for obligors (x) vs time (y) for a given number iterations (holding this constant). But I have a grid of data with both variables iterations, obligors and time, how to get a formula for T = some function with O (obligors) and I (iterations). Thanks –  m3ntat Jul 12 '09 at 11:13

To clarify: You have tabular data below which you want to fit to some function f(O,I)=t?

``````        200          400         600         800         1000        1200        1400        1600        1800        2000
20000   15.627681   30.0968663  44.7592684  60.9037558  75.8267358  90.3718977  105.8749983 121.0030672 135.9191249 150.3331682
40000   31.7202111  62.3603882  97.2085204  128.8111731 156.2443206 186.6374271 218.324317  249.2699288 279.6008184 310.9970803
60000   47.0708635  92.4599437  138.874287  186.0576007 231.2181381 280.541207  322.9836878 371.3076757 413.4058622 459.6208335
80000   60.7346238  120.3216303 180.471169  241.668982  300.4283548 376.9639188 417.5231669 482.6288981 554.9740194 598.0394434
100000  76.7535915  150.7479245 227.5125656 304.3908046 382.5900043 451.6034296 526.0730786 609.0358776 679.0268121 779.6887277
120000  90.4174626  179.5511355 269.4099593 360.2934453 448.4387573 537.1406039 626.7325734 727.6132992 807.4767327 898.307638
``````

A rough guess looks like both O & I are linear. So f is in the form t = aO + bI + c. Plug in a few (O,I,t) and see what a,b,c should be.

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Great so how do I go about calculating a,b and c? –  m3ntat Jul 12 '09 at 13:23