# How to find maximum count of consecutive zeros in column pandas?

I have dataframe and want to check maximum count of consecutive zero values in Column B.

Example input and output:

``````df = pd.DataFrame({'B':[1,3,4,0,0,11,1,15,0,0,0,87]})

df_out = pd.DataFrame({'max_count':})
``````

How could this be done?

One NumPy way -

``````a = df['B'].values
m1 = np.r_[False, a==0, False]
idx = np.flatnonzero(m1[:-1] != m1[1:])
out = (idx[1::2]-idx[::2]).max()
``````

Step-by-step run -

``````# Input data as array
In : a
Out: array([ 1,  3,  4,  0,  0, 11,  1, 15,  0,  0,  0, 87])

# Mask of starts and ends for each island of 0s
In : m1
Out:
array([False, False, False, False,  True,  True, False, False, False,
True,  True,  True, False, False])

# Indices of those starts and ends
In : idx
Out: array([ 3,  5,  8, 11])

# Finally the differencing between starts and ends and max for final o/p
In : out
Out: 3
``````

That could be converted to a one-liner :

``````np.diff(np.flatnonzero(np.diff(np.r_[0,a==0,0])).reshape(-1,2),axis=1).max()
``````
• What is the reason to use `np.r_`? would `m1 = a==0` not suffice? – Ehsan Sep 4 at 8:37
• @Ehsan To account for any starting 0s – Divakar Sep 4 at 8:37

You can create group for consecutive rows

``````# create group for consecutive numbers
df['grp'] = (df['B'] != df['B'].shift()).cumsum()

B  grp
0    1    1
1    3    2
2    4    3
3    0    4
4    0    4
5   11    5
6    1    6
7   15    7
8    0    8
9    0    8
10   0    8
11  87    9

# check size of groups having 0 value
max_count = df.query("B == 0").groupby('grp').size().max()

print(max_count)
3
``````

Idea is create mask with cumulative sum for counter of consecutive values, filter only `0` values, count them by `Series.value_counts` and get maximum value:

``````s = df['B'].ne(0)

a = s.cumsum()[~s].value_counts().max()
print (a)
3

df_out=pd.DataFrame({'max_count':[a]})
``````

Details:

``````print (s.cumsum())
0     1
1     2
2     3
3     3
4     3
5     4
6     5
7     6
8     6
9     6
10    6
11    7
Name: B, dtype: int32

print (s.cumsum()[~s])
3     3
4     3
8     6
9     6
10    6
Name: B, dtype: int32

print (s.cumsum()[~s].value_counts())
6    3
3    2
Name: B, dtype: int64
``````

Maybe you could adjust it to Python. In Java, you could find most consecutive 0's length using this code:

``````int B [] = {1,3,4,0,0,11,1,15,0,0,0,87}

int max_zeroes = 0;
int zeroes = 0;
for(int i = 0; i < B.length; i++) {
if( B[i] == 0) {
zeroes += 1;
if(zeroes > max_zeroes) {
max_zeroes = zeroes;
}
} else {
zeroes = 0;
}
}
``````

And if you are inclined towards finding the start and end indexes of most consecutive 0s in an array, you could use this logic:

``````int max_zeroes = 0;
int zeroes = 0;
int endIndex = -1;
for (int i = 0; i < B.length; i++) {
if (B[i] == 0) {
zeroes += 1;
if (zeroes > max_zeroes) {
max_zeroes = zeroes;
endIndex = i;
}
} else {
zeroes = 0;
}
}

int startIndex = endIndex;
for (int i = endIndex - 1; i > -1; i--) {
if(B[i] == 0) {
start = i;
} else {
i = -1; //used to get out of this for loop.
}
}

System.out.println("Max zeroes is: " + max_zeroes + " at start index " + start + " and end index: " + endIndex);
``````

Maybe you could adjust it to Python.