251

I would like to get the time spent on the cell execution in addition to the original output from cell.

To this end, I tried %%timeit -r1 -n1 but it doesn't expose the variable defined within cell.

%%time works for cell which only contains 1 statement.

In[1]: %%time
       1
CPU times: user 4 µs, sys: 0 ns, total: 4 µs
Wall time: 5.96 µs
Out[1]: 1

In[2]: %%time
       # Notice there is no out result in this case.
       x = 1
       x
CPU times: user 3 µs, sys: 0 ns, total: 3 µs
Wall time: 5.96 µs

What's the best way to do it?

Update

I have been using Execute Time in Nbextension for quite some time now. It is great.

2
  • 3
    do you really need to time the display of the value? why not just put the x display line in the next cell?
    – dbliss
    Feb 19 '16 at 17:58
  • Why not accepting an answer?
    – raratiru
    Mar 28 '17 at 20:30

14 Answers 14

507

The only way I found to overcome this problem is by executing the last statement with print.

Do not forget that cell magic starts with %% and line magic starts with %.

%%time
clf = tree.DecisionTreeRegressor().fit(X_train, y_train)
res = clf.predict(X_test)
print(res)

Notice that any changes performed inside the cell are not taken into consideration in the next cells, something that is counter intuitive when there is a pipeline: an example

7
  • 8
    Now %%time works even when the last statement is not print, as @rhaps0dy pointed out above.
    – nealmcb
    Aug 17 '18 at 1:18
  • 1
    display(res) also works and is the preferred solution when trying to display a pandas dataframe or something else that requires a stylized output.
    – dshefman
    Oct 31 '18 at 15:53
  • @dshefman Yes that is correct and makes it easy portable for databricks/spark notebooks too.
    – technazi
    Nov 6 '18 at 4:55
  • Isn't it a problem when we implement the 1st cell %%time and a=1 but the 2nd cell doesn't know what a is?
    – Jason
    Aug 27 '19 at 19:25
  • 10
    FYI. I found that variables in the tested cell are now taken into consideration into the next cells. (20/02/2020) - Fei
    – Fei Yao
    Feb 20 '20 at 18:27
83

%time and %timeit now come part of ipython's built-in magic commands

0
82

An easier way is to use ExecuteTime plugin in jupyter_contrib_nbextensions package.

pip install jupyter_contrib_nbextensions
jupyter contrib nbextension install --user
jupyter nbextension enable execute_time/ExecuteTime
4
  • 14
    This is the most underrated answer!
    – DaveR
    Jul 6 '19 at 9:38
  • 3
    to somebody diving throught the answers sea: this is the one, just install it and then you will see execution time on each cell in a nice format Feb 19 '20 at 18:29
  • worked perfectly! also included the timestamp when cell has been executed
    – Timo
    Apr 29 at 13:49
  • And if pip doesn't work, conda or direct install options are mentioned on the github github.com/ipython-contrib/jupyter_contrib_nbextensions Apr 29 at 17:33
70

Use cell magic and this project on github by Phillip Cloud:

Load it by putting this at the top of your notebook or put it in your config file if you always want to load it by default:

%install_ext https://raw.github.com/cpcloud/ipython-autotime/master/autotime.py
%load_ext autotime

If loaded, every output of subsequent cell execution will include the time in min and sec it took to execute it.

4
  • 23
    this no longer works, since %install_ext is deprecated. Is there an alternative? Feb 13 '17 at 1:05
  • 22
    There is a Pull Request adressing this issue(github.com/cpcloud/ipython-autotime/pull/5) then you can try pip install ipython-autotime
    – x0s
    Apr 11 '17 at 15:06
  • 20
    Now %%time works even when the last statement is not print.
    – rhaps0dy
    Jul 11 '17 at 16:10
  • to summarize: 1) pip install ipython-autotime 2) type into the first cell in jupyter : %load_ext autotime
    – KenBuckley
    Aug 31 at 14:00
36
import time
start = time.time()
"the code you want to test stays here"
end = time.time()
print(end - start)
1
  • 3
    Perfect. It's too much hassle to preserve the object from %%timeit and use in next cell
    – Paul
    Jul 9 '20 at 17:47
21

You can use timeit magic function for that.

%timeit CODE_LINE

Or on the cell

%%timeit 

SOME_CELL_CODE

Check more IPython magic functions at https://nbviewer.jupyter.org/github/ipython/ipython/blob/1.x/examples/notebooks/Cell%20Magics.ipynb

16

I simply added %%time at the beginning of the cell and got the time. You may use the same on Jupyter Spark cluster/ Virtual environment using the same. Just add %%time at the top of the cell and you will get the output. On spark cluster using Jupyter, I added to the top of the cell and I got output like below:-

[1]  %%time
     import pandas as pd
     from pyspark.ml import Pipeline
     from pyspark.ml.classification import LogisticRegression
     import numpy as np
     .... code ....

Output :-

CPU times: user 59.8 s, sys: 4.97 s, total: 1min 4s
Wall time: 1min 18s
1
  • Does this execute the cell code a default no. of times and then takes the average? And what about the first statement as the 'setup code'?
    – amsquareb
    Apr 2 '20 at 7:58
13

This is not exactly beautiful but without extra software

class timeit():
    from datetime import datetime
    def __enter__(self):
        self.tic = self.datetime.now()
    def __exit__(self, *args, **kwargs):
        print('runtime: {}'.format(self.datetime.now() - self.tic))

Then you can run it like:

with timeit():
    # your code, e.g., 
    print(sum(range(int(1e7))))

% 49999995000000
% runtime: 0:00:00.338492
12

If you want to print wall cell execution time here is a trick, use

%%time
<--code goes here-->

but here make sure that, the %%time is a magic function, so put it at first line in your code.

if you put it after some line of your code it's going to give you usage error and not gonna work.

10

That was only a problem in old versions.

All you need to do now is put %%time at the top of the cell.

enter image description here

%time measures how long it took something to run. It’s better for reporting on long-running operations than for doing low-level optimization.

%%timeit is a benchmarking tool that runs statements over and over to give the average runtime for some statements, as well as the standard deviation. Because of the way in which the statements are repeatedly executed, the variables created in %%timeit cells are not available in other cells.

enter image description here

%%timeit uses the python timeit module. The docs for that say,

It avoids a number of common traps for measuring execution times. See also Tim Peters’ introduction to the “Algorithms” chapter in the Python Cookbook, published by O’Reilly.

I hope that that module is still relevant, as the reference it refers to describes issues such as (1) workarounds for Windows 98 only updating time.time() 18.2 times per second, and (2) jamming all the statements onto one line to avoid the bytecode overhead of incrementing the line number counter.


The currently top-rated answer, as well as some of the other outdated ones—which should be deleted because they are now highly misleadingdo have useful comments indicating that those answers are not correct:

7

Sometimes the formatting is different in a cell when using print(res), but jupyter/ipython comes with a display. See an example of the formatting difference using pandas below.

%%time
import pandas as pd 
from IPython.display import display

df = pd.DataFrame({"col0":{"a":0,"b":0}
              ,"col1":{"a":1,"b":1}
              ,"col2":{"a":2,"b":2}
             })

#compare the following
print(df)
display(df)

The display statement can preserve the formatting. screenshot

1
  • Does this execute the cell code a default no. of times and then takes the average? And what about the first statement as the 'setup code'?
    – amsquareb
    Apr 2 '20 at 7:58
4

you may also want to look in to python's profiling magic command %prunwhich gives something like -

def sum_of_lists(N):
    total = 0
    for i in range(5):
        L = [j ^ (j >> i) for j in range(N)]
        total += sum(L)
    return total

then

%prun sum_of_lists(1000000)

will return

14 function calls in 0.714 seconds  

Ordered by: internal time      

ncalls  tottime  percall  cumtime  percall filename:lineno(function)
    5    0.599    0.120    0.599    0.120 <ipython-input-19>:4(<listcomp>)
    5    0.064    0.013    0.064    0.013 {built-in method sum}
    1    0.036    0.036    0.699    0.699 <ipython-input-19>:1(sum_of_lists)
    1    0.014    0.014    0.714    0.714 <string>:1(<module>)
    1    0.000    0.000    0.714    0.714 {built-in method exec}

I find it useful when working with large chunks of code.

4

When in trouble what means what:

?%timeit or ??timeit

To get the details:

Usage, in line mode:
  %timeit [-n<N> -r<R> [-t|-c] -q -p<P> -o] statement
or in cell mode:
  %%timeit [-n<N> -r<R> [-t|-c] -q -p<P> -o] setup_code
  code
  code...

Time execution of a Python statement or expression using the timeit
module.  This function can be used both as a line and cell magic:

- In line mode you can time a single-line statement (though multiple
  ones can be chained with using semicolons).

- In cell mode, the statement in the first line is used as setup code
  (executed but not timed) and the body of the cell is timed.  The cell
  body has access to any variables created in the setup code.
2

The Simplest way to measure cell execution time in ipython notebook is by using ipython-autotime package.

Install the package in the begining of the notebook

pip install ipython-autotime

and then load the extension by running below

%load_ext autotime

Once you have loaded it, any cell run after this ,will give you the execution time of the cell.

And dont worry if you want to turn it off, just unload the extension by running below

%unload_ext autotime

It is pretty simple and easy to use it whenever you want.

And if you want to check out more, can refer to ipython-autime documentation or its github source

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