# Set maximum value (upper bound) in pandas DataFrame

I'm trying to set a maximum value of a pandas DataFrame column. For example:

``````my_dict = {'a':[10,12,15,17,19,20]}
df = pd.DataFrame(my_dict)

df['a'].set_max(15)
``````

would yield:

``````    a
0   10
1   12
2   15
3   15
4   15
5   15
``````

But it doesn't.

There are a million solutions to find the maximum value, but nothing to set the maximum value... at least that I can find.

I could iterate through the list, but I suspect there is a faster way to do it with pandas. My lists will be significantly longer and thus I would expect iteration to take relatively longer amount of time. Also, I'd like whatever solution to be able to handle `NaN`.

I suppose you can do:

``````maxVal = 15
df['a'].where(df['a'] <= maxVal, maxVal)      # where replace values with other when the
# condition is not satisfied

#0    10
#1    12
#2    15
#3    15
#4    15
#5    15
#Name: a, dtype: int64
``````

Or:

``````df['a'][df['a'] >= maxVal] = maxVal
``````
• That's it. Knew there was something simple I was missing. Thanks Psidom. – elPastor Nov 28 '16 at 2:21
• Note: the two are not equivalent. The first replace also the NaN, the second just the value above the threshold (but keeping NaN). – Giacomo Catenazzi Mar 22 '18 at 14:43
• I'd also note that it's probably better practice to use the format `df.loc[df['a'] >= maxVal, 'a'] = maxVal` but I don't have any concrete reason why it's preferred, nor have I compared timing. – elPastor Jan 1 at 19:47
• If you don't use `df.loc[df['a'] >= maxVal, 'a'] = maxVal`, and instead use `df['a'][df['a'] >= maxVal] = maxVal` you are basically setting value on a copy of the dataframe, not the dataframe itself. – DaSarfyCode Sep 11 at 11:39

You can use clip.

Apply to all columns of the data frame:

``````df.clip(upper=15)
``````

Otherwise apply to selected columns as seen here:

``````df.clip(upper=pd.Series({'a': 15}), axis=1)
``````

`numpy.clip` is a good, fast alternative.

``````df

a
0  10
1  12
2  15
3  17
4  19
5  20

np.clip(df['a'], a_max=15, a_min=None)

0    10
1    12
2    15
3    15
4    15
5    15
Name: a, dtype: int64

# Or,
np.clip(df['a'].to_numpy(), a_max=15, a_min=None)
# array([10, 12, 15, 15, 15, 15])
``````

From v0.21 onwards, you can also use `DataFrame.clip_upper`.

Note
This method (along with `clip_lower`) has been deprecated from v0.24 and will be removed in a future version.

``````df.clip_upper(15)
# Or, for a specific column,
df['a'].clip_upper(15)

a
0  10
1  12
2  15
3  15
4  15
5  15
``````

In similar vein, if you only want to set the lower bound, use `DataFrame.clip_lower`. These methods are also avaliable on `Series` objects.