How to count longest uninterrupted sequence in pandas

Let's say I have `pd.Series` like below

``````s = pd.Series([False, True, False,True,True,True,False, False])

0    False
1     True
2    False
3     True
4     True
5     True
6    False
7    False
dtype: bool
``````

I want to know how long is the longest `True` sequence, in this example, it is 3.

I tried it in a stupid way.

``````s_list = s.tolist()
count = 0
max_count = 0
for item in s_list:
if item:
count +=1
else:
if count>max_count:
max_count = count
count = 0
print(max_count)
``````

It will print `3`, but in a `Series` of all `True`, it will print `0`

6 Answers

Option 1
Use a the series itself to mask the cumulative sum of the negation. Then use `value_counts`

``````(~s).cumsum()[s].value_counts().max()

3
``````

explanation

1. `(~s).cumsum()` is a pretty standard way to produce distinct `True`/`False` groups

``````0    1
1    1
2    2
3    2
4    2
5    2
6    3
7    4
dtype: int64
``````
2. But you can see that the group we care about is represented by the `2`s and there are four of them. That's because the group is initiated by the first `False` (which becomes `True` with `(~s)`). Therefore, we mask this cumulative sum with the boolean mask we started with.

``````(~s).cumsum()[s]

1    1
3    2
4    2
5    2
dtype: int64
``````
3. Now we see the three `2`s pop out and we just have to use a method to extract them. I used `value_counts` and `max`.

Option 2
Use `factorize` and `bincount`

``````a = s.values
b = pd.factorize((~a).cumsum())[0]
np.bincount(b[a]).max()

3
``````

explanation
This is a similar explanation as for option 1. The main difference is in how I a found the max. I use `pd.factorize` to tokenize the values into integers ranging from 0 to the total number of unique values. Given the actual values we had in `(~a).cumsum()` we didn't strictly need this part. I used it because it's a general purpose tool that could be used on arbitrary group names.

After `pd.factorize` I use those integer values in `np.bincount` which accumulates the total number of times each integer is used. Then take the maximum.

Option 3
As stated in the explanation of option 2, this also works:

``````a = s.values
np.bincount((~a).cumsum()[a]).max()

3
``````
• Thanks for the great explanation. Feb 21, 2018 at 2:46
• Man ,this is great :-)
– BENY
Feb 21, 2018 at 2:46
• @piRSquared Adding a python groupby :-) cheers :-), learn a lot from yours , thank you Sir !
– BENY
Feb 21, 2018 at 2:53
• @piRSquared, thanks and learnt a new trick of using (~a).cumsum() Feb 21, 2018 at 3:29
• @piRSquared, how do I know where the longest sequence of trues occur? Jan 6, 2021 at 22:13

I think this could work

``````pd.Series(s.index[~s].values).diff().max()-1
Out[57]: 3.0
``````

Also outside pandas' we can back to python groupby

``````from itertools import groupby
max([len(list(group)) for key, group in groupby(s.tolist())])
Out[73]: 3
``````

Update :

``````from itertools import compress
max(list(compress([len(list(group)) for key, group in groupby(s.tolist())],[key for key, group in groupby(s.tolist())])))
Out[84]: 3
``````
• This is very clean.
– Tai
Feb 21, 2018 at 2:52
• @wen, nice use of s.index[~s] Feb 21, 2018 at 3:40
• Maybe I need to pay more time to learn python standard library. Feb 21, 2018 at 4:10
• If all element is `False` it will return `8`, so the code should be `max([len(list(group)) for key, group in groupby(s.tolist()) if key])` Feb 21, 2018 at 4:21

You can use (inspired by @piRSquared answer):

``````s.groupby((~s).cumsum()).sum().max()
Out[513]: 3.0
``````

Another option to use a lambda func to do this.

``````s.to_frame().apply(lambda x: s.loc[x.name:].idxmin() - x.name, axis=1).max()
Out[429]: 3
``````

Edit: As piRSquared mentioned, my previous solution needs to append two `False` at the beginning and at the end of the series. piRSquared kindly gave an answer based on that.

``````(np.diff(np.flatnonzero(np.append(True, np.append(~s.values, True)))) - 1).max()
``````

My original trial is

``````(np.diff(s.where(~s).dropna().index.values) - 1).max()
``````

(This will not give the correct answer if the longest `True` starts at the beginning or ends at the end as pointed out by piRSquared. Please use the solution above given by piRSquared. This work remains only for explanation.)

Explanation:

This finds the indices of the `False` parts and by finding the gaps between the indices of `False`, we can know the longest `True`.

• `s.where(s == False).dropna().index.values` finds all the indices of `False`

``````array([0, 2, 6, 7])
``````

We know that `True`s live between the `False`s. Thus, we can use `np.diff` to find the gaps between these indices.

``````    array([2, 4, 1])
``````
• Minus 1 in the end as `True`s lies between these indices.

• Find the maximum of the difference.

• Umm nice solution
– BENY
Feb 21, 2018 at 2:46
• Agreed this is nice. However, if you have the longest `True` sequence at the beginning or the end of the array, your diff will not catch it. You need to append `False` to the ends, then do it. Also, you don't need `s == False`, `~s` will do. Feb 21, 2018 at 2:53
• This is how I would have done it. Feel free to add it to your answer as it is the same concept, only if you want to (-: `(np.diff(np.flatnonzero(np.append(True, np.append(~s.values, True)))) - 1).max()` Though I'd suggest formatting nicer. Feb 21, 2018 at 2:56
• @piRSquared thank you for offering the solution to this. I appreciate it.
– Tai
Feb 21, 2018 at 3:01

Your code was actually very close. It becomes perfect with a minor fix:

``````count = 0
maxCount = 0
for item in s:
if item:
count += 1
if count > maxCount:
maxCount = count
else:
count = 0
print(maxCount)
``````

I'm not exactly sure how to do it with pandas but what about using `itertools.groupby`?

``````>>> import pandas as pd
>>> s = pd.Series([False, True, False,True,True,True,False, False])
>>> max(sum(1 for _ in g) for k, g in groupby(s) if k)
3
``````