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about-time

A cool helper for tracking time and throughput of code blocks, with beautiful human friendly renditions.

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What does it do?

Did you ever need to measure the duration of an operation? Yeah, this is easy.

But how to:

Yes, it can get tricky! More interesting details about duration and throughput. <br>If you'd tried to do it without these magic, it would probably get messy and immensely pollute the code being instrumented.

I have the solution, behold!

from about_time import about_time


def some_func():
    import time
    time.sleep(85e-3)
    return True


def main():
    with about_time() as t1:  # <-- use it like a context manager!

        t2 = about_time(some_func)  # <-- use it with any callable!!

        t3 = about_time(x * 2 for x in range(56789))  # <-- use it with any iterable or generator!!!
        data = [x for x in t3]  # then just iterate!

    print(f'total: {t1.duration_human}')
    print(f'  some_func: {t2.duration_human} -> result: {t2.result}')
    print(f'  generator: {t3.duration_human} -> {t3.count_human} elements, throughput: {t3.throughput_human}')

This main() function prints:

total: 95.6ms
  some_func: 89.7ms -> result: True
  generator: 5.79ms -> 56.8k elements, throughput: 9.81M/s

How cool is that? ๐Ÿ˜ฒ๐Ÿ‘

You can also get the duration in seconds if needed:

In [7]: t1.duration
Out[7]: 0.09556673200064251

But 95.6ms is way better, isn't it? The same with count and throughput!

So, about_time measures code blocks, both time and throughput, and converts them to beautiful human friendly representations! ๐Ÿ‘

Get it

Just install with pip:

โฏ pip install about-time

Use it

There are three modes of operation: context manager, callable and throughput. Let's dive in.

1. Use it like a context manager:

from about_time import about_time

with about_time() as t:
    # the code to be measured...
    # any lenghty block.

print(f'The whole block took: {t.duration_human}')

This way you can nicely wrap any amount of code.

In this mode, there are the basic fields duration and duration_human.

2. Use it with any callable:

from about_time import about_time

t = about_time(some_func)

print(f'The whole block took: {t.duration_human}')
print(f'And the result was: {t.result}')

This way you have a nice one liner, and do not need to increase the indent of your code.

In this mode, there is an additional field result, with the return of the callable.

If the callable have params, you can use a lambda or (๐Ÿ“Œ new) simply send them:

def add(n, m):
    return n + m

t = about_time(add, 1, 41)
# or:
t = about_time(add, n=1, m=41)
# or even:
t = about_time(lambda: add(1, 41))

3. Use it with any iterable or generator:

from about_time import about_time

t = about_time(iterable)
for item in t:
    # process item.

print(f'The whole block took: {t.duration_human}')
print(f'It was detected {t.count_human} elements')
print(f'The throughput was: {t.throughput_human}')

This way about_time also extracts the number of iterations, and with the measured duration it calculates the throughput of the whole loop! It's especially useful with generators, which do not have length.

In this mode, there are the additional fields count, count_human, throughput and throughput_human.

Cool tricks under the hood:

Features:

According to the SI standard, there are 1000 bytes in a kilobyte. <br>There is another standard called IEC that has 1024 bytes in a kibibyte, but this is only useful when measuring things that are naturally a power of two, e.g. a stick of RAM.

Be careful to not render IEC quantities with SI scaling, which would be incorrect. But I still support it, if you really want to ;)

By default, this will use SI, 1000 divisor, and no space between values and scales/units. SI uses prefixes: k, M, G, T, P, E, Z, and Y.

These are the optional features:

To change them, just use the properties:

from about_time import FEATURES

FEATURES.feature_1024
FEATURES.feature_iec
FEATURES.feature_space

For example, to enable spaces between scales/units:

from about_time import FEATURES
FEATURES.feature_space = True

The human duration magic

I've used just one key concept in designing the human duration features: cleanliness.

3.44s is more meaningful than 3.43584783784s, and 14.1us is much nicer than .0000141233333s.

So what I do is: round values to at most two decimal places (three significant digits), and find the best scale unit to represent them, minimizing resulting values smaller than 1. The search for the best unit considers even the rounding been applied!

0.000999999 does not end up as 999.99us (truncate) nor 1000.0us (bad unit), but is auto-upgraded to the next unit 1.0ms!

The duration_human units change seamlessly from nanoseconds to hours.

It feels much more humane, humm? ;)

Some examples:

duration (float seconds)duration_human
.00000000185'1.85ns'
.000000999996'1.00ยตs'
.00001'10.0ยตs'
.0000156'15.6ยตs'
.01'10.0ms'
.0141233333333'14.1ms'
.1099999'110ms'
.1599999'160ms'
.8015'802ms'
3.434999'3.43s'
59.999'0:01:00'
68.5'0:01:08'
125.825'0:02:05'
4488.395'1:14:48'

The human throughput magic

I've made the throughput_human with a similar logic. It is funny how much trickier "throughput" is to the human brain!

If something took 1165263 seconds to handle 123 items, how fast did it go? It's not obvious...

It doesn't help even if we divide the duration by the number of items, 9473 seconds/item, which still does not mean much. How fast was that? We can't say. <br>How many items did we do per time unit?

Oh, we just need to invert it, so 0,000105555569858 items/second, there it is! ๐Ÿ˜‚

To make some sense of it we need to multiply that by 3600 (seconds in an hour) to get 0.38/h, which is much better, and again by 24 (hours in a day) to finally get 9.12/d!! Now we know how fast that process was! \o/ As you see, it's not easy at all.

The throughput_human unit changes seamlessly from per-second, per-minute, per-hour, and per-day. <br>It also automatically inserts SI-prefixes, like k, M, and G. ๐Ÿ‘

duration (float seconds)number of elementsthroughput_human
1.10'10.0/s'
1.2500'2.50k/s'
1.1825000'1.82M/s'
2.1'30.0/m'
2.10'5.00/s'
1.98198198198198211'5.55/s'
100.10'6.00/m'
1600.3'6.75/h'
.991'1.01/s'
1165263.123'9.12/d'

Accuracy

about_time supports all versions of python, but in pythons >= 3.3 it performs even better, with much higher resolution and smaller propagation of errors, thanks to the new time.perf_counter. In older versions, it uses time.time as usual.

Changelog highlights:

License

This software is licensed under the MIT License. See the LICENSE file in the top distribution directory for the full license text.


Maintaining an open source project is hard and time-consuming, and I've put much โค๏ธ and effort into this.

If you've appreciated my work, you can back me up with a donation! Thank you ๐Ÿ˜Š

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