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I'm getting really, really confused about the precision of the results of the functions above.
To me the documentation isn't clear at all, for example here are two sentences:

from time module documentation

The precision of the various real-time functions may be less than suggested by the units in which their value or argument is expressed. E.g. on most Unix systems, the clock “ticks” only 50 or 100 times a second.

from timeit module documentation

Define a default timer, in a platform-specific manner. On Windows, time.clock() has microsecond granularity, but time.time()‘s granularity is 1/60th of a second. On Unix, time.clock() has 1/100th of a second granularity, and time.time() is much more precise. On either platform, default_timer() measures wall clock time, not the CPU time. This means that other processes running on the same computer may interfere with the timing.

Now because real-time, in Unix, it is returned by time.time() and it has a resolution far better than 1/100 how can it just "ticks" 50 or 100 times a second?


Always about resolution, I can't understand what the exact resolution I get calling each function, so I tried the followings and I put my guesses in the comments:

>>> time.clock()
0.038955                            # a resolution of microsecond?
>>> time.time()                     
1410633457.0955694                  # a resolution of 10-7 second?
>>> time.perf_counter()
4548.103329075                      # a resolution of 10-9 second (i.e nanosecond)?

P.S. This was tried on Python3.4.0, in Python2 for time.clock() and time.time() I always get 6 numbers after the dot, so 1us precision?

2 Answers 2

5

Precision relates to how often the value changes.

If you could call any of these functions infinitely fast, each of these functions would return a new value at different rates.

Because each returns a floating point value, which doesn't have absolute precision, you cannot tell anything from their return values as to what precision they have. You'll need to measure how the values change over time to see what their precision is.

To show the differences, run:

import time

def average_deltas(*t):
    deltas = [t2 - t1 for t1, t2 in zip(t, t[1:])]
    return sum(deltas) / len(deltas)

for timer in time.clock, time.time, time.perf_counter:
    average = average_deltas(*(timer() for _ in range(1000))) * 10 ** 6
    print('{:<12} {:.10f}'.format(timer.__name__, average))

On my Mac this prints:

clock        0.6716716717
time         0.2892525704
perf_counter 0.1550070010

So perf_counter has the greatest precision on my architecture, because it changes more often per second, making the delta between values smaller.

You can use the time.get_clock_info() function to query what precision each method offers:

>>> for timer in time.clock, time.time, time.perf_counter:
...     name = timer.__name__
...     print('{:<12} {:.10f}'.format(name, time.get_clock_info(name).resolution))
... 
clock        0.0000010000
time         0.0000010000
perf_counter 0.0000000010
10
  • I don't understand, so the documentation is wrong? If time.pref_counter() returns 9 numbers after the dot it means it has has a resulution till nanoseconds, because if it wasn't so why return 9 numbers and not 5 or 6?
    – zer0uno
    Sep 13, 2014 at 19:02
  • 1
    @antox: no, it means you misunderstand what the precision means. The floating point is just a fraction of seconds, but a floating point value is almost always imprecise (it is the sum of binary fractions, 1/2 + 1/4 + 1/8, etc, approximating a value).
    – Martijn Pieters
    Sep 13, 2014 at 19:05
  • 1
    Also the difference between processor time and wall-clock time is relevant - basically the processor clock is only advancing if your processs is doing work. So every time it ticks, its value may have a certain precision, but its accuracy is dependent on CPU load as well.
    – Lukas Graf
    Sep 13, 2014 at 19:06
  • @LukasGraf: which is where time.perf_counter() vs. time.process_time() comes in too, but the OP is misunderstanding what is meant by precision here.
    – Martijn Pieters
    Sep 13, 2014 at 19:08
  • They actually edited the docs a few years ago to use words and phrases like "granularity" to avoid the common confusion between accuracy and precision, and between precision of the values vs. the data types… but I guess that didn't help; people now just have more terms to mix up instead of just two. :)
    – abarnert
    Sep 13, 2014 at 19:47
0

Just want to update this as it has changed a bit recently.

Using Python3 version Python 3.8.11 in ubuntu

There is no time.clock

The delta method in the accepted answer don't give good metrics. Run them a good few times, and swap orders, and you will see bad variations.

However...

import time
for timer in time.time, time.perf_counter:
    name = timer.__name__
    print('{:<12} {:.10f}'.format(name, time.get_clock_info(name).resolution))

time 0.0000000010

perf_counter 0.0000000010

Both are showing nanosecond resolution

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