# Finding start and stops of consecutive values block in Python/Numpy/Pandas

I want to find the starts and stops indexes of blocks of identical values in a numpy array or preferably a pandas DataFrame (blocks along the column for a 2D array, and along the most quickly varying index for a n - dimensional array). I only look for blocks on a single dimension and don't want to agregate nans on different rows.

Starting from that question (Find large number of consecutive values fulfilling condition in a numpy array), I wrote the following solution finding np.nan for a 2D array :

``````import numpy as np
a = np.array([
[1, np.nan, np.nan, 2],
[np.nan, 1, np.nan, 3],
[np.nan, np.nan, np.nan, np.nan]
])

))
))

``````

This lets me for example analyze the distribution of length of patches of missing values before applying pd.fillna.

``````stop_col_idx - start_col_idx + 1
array([2, 1, 1, 4], dtype=int64)
``````

One more example and the expecting result :

``````a = np.array([
[1, np.nan, np.nan, 2],
[np.nan, 1, np.nan, np.nan],
[np.nan, np.nan, np.nan, np.nan]
])

array([2, 1, 2, 4], dtype=int64)
``````

and not

``````array([2, 1, 6], dtype=int64)
``````

My questions are the following :

• Is there a way to optimize my solution (finding starts and ends in a single pass of mask/where operations)?
• Is there a more optimized solution in pandas? (i.e. different solution than just applying mask/where on the DataFrame's values)
• What happens when the underlying array or DataFrame is to big to fit in memory?
-

``````In [26]: df
Out[26]:
0   1   2   3
0   1 NaN NaN   2
1 NaN   1 NaN   2
2 NaN NaN NaN NaN
``````

Then transposed and turned it into a series. I think this is similar to `np.hstack`:

``````In [28]: s = df.T.unstack(); s
Out[28]:
0  0     1
1   NaN
2   NaN
3     2
1  0   NaN
1     1
2   NaN
3     2
2  0   NaN
1   NaN
2   NaN
3   NaN
``````

This expression creates a Series where the numbers represent blocks incrementing by 1 for every non-null value:

``````In [29]: s.notnull().astype(int).cumsum()
Out[29]:
0  0    1
1    1
2    1
3    2
1  0    2
1    3
2    3
3    4
2  0    4
1    4
2    4
3    4
``````

This expression creates a Series where every nan is a 1 and everything else is a zero:

``````In [31]: s.isnull().astype(int)
Out[31]:
0  0    0
1    1
2    1
3    0
1  0    1
1    0
2    1
3    0
2  0    1
1    1
2    1
3    1
``````

We can combine the two in the following manner to achieve the counts you need:

``````In [32]: s.isnull().astype(int).groupby(s.notnull().astype(int).cumsum()).sum()
Out[32]:
1    2
2    1
3    1
4    4
``````
-
Waow, that's some pandas magic that I am always impressed of! However, your implementation consider that consecutive nans but on different columns/rows actually belong to the same 'block'. I have create a small ipython notebook (nbviewer.ipython.org/url/www.guillaumeallain.info/…) to play with showing that problem. Performance-wise, the numpy implementation is also approx. 3 times faster. –  Guillaume Feb 26 '13 at 12:35

Below a numpy-based implementation for any dimensionnality (ndim = 2 or more) :

``````def get_nans_blocks_length(a):
"""
Returns 1D length of np.nan s block in sequence depth wise (last axis).
"""
), axis=a.ndim-1)
), axis=a.ndim-1)

return stop_idxs[-1] - start_idxs[-1] + 1
``````

So that :

``````a = np.array([
[1, np.nan, np.nan, np.nan],
[np.nan, 1, np.nan, 2],
[np.nan, np.nan, np.nan, np.nan]
])
get_nans_blocks_length(a)
array([3, 1, 1, 4], dtype=int64)
``````

And :

``````a = np.array([
[[1, np.nan], [np.nan, np.nan]],
[[np.nan, 1], [np.nan, 2]],
[[np.nan, np.nan], [np.nan, np.nan]]
])
get_nans_blocks_length(a)
array([1, 2, 1, 1, 2, 2], dtype=int64)
``````
-