None of the above. Bran is close though. You should save every measurment. But don't average them. The average (arithmetic mean) can be very misleading in this type of analysis. The reason is that some of your measurments will be much longer than the others. This will happen becuse things can interfere with your process - even on 'clean' test systems. It can also happen becuse your process may not be as deterministic as you might thing.
Some people think that simply taking more samples (running more iterations) and averaging the measurmetns will give them better data. It doesn't. The more you run, the more likelty it is that you will encounter a perturbing event, thus making the average overly high.
A better way to do this is to run as many measurments as you can (time permitting). 100 is not a bad number, but 30-ish can be enough.
Then, sort these by magnitude and graph them. Note that this is not a standard distribution. Compute compute some simple statistics: mean, median, min, max, lower quaertile, upper quartile.
Contrary to some guidance, do not 'throw away' outside vaulues or 'outliers'. These are often the most intersting measurments. For example, you may establish a nice baseline, then look for departures. Understanding these departures will help you fully understand how your process works, how the sytsem affecdts your process, and what can interfere with your process. It will often readily expose bugs.