7

I'm trying to ascertain how I can create a column that indicates in advance (X rows) when the next occurrence of a value in another column will occur with pandas that in essence performs the following functionality (In this instance X = 3):

df

rowid  event   indicator
1      True    1 # Event occurs
2      False   0
3      False   0
4      False   1 # Starts indicator
5      False   1
6      True    1 # Event occurs
7      False   0

Apart from doing a iterative/recursive loop through every row:

i = df.index[df['event']==True]
dfx = [df.index[z-X:z] for z in i]
df['indicator'][dfx]=1
df['indicator'].fillna(0)

However this seems inefficient, is there a more succinct method of achieving the aforementioned example? Thanks

  • 1
    You should try with df.rolling(window=X).apply(func) where func is your custom function – FBruzzesi Nov 29 at 8:44
1

Here's a NumPy based approach:

X = 3
# ndarray of indices where indicator should be set to one
nd_ixs = np.flatnonzero(df.event)[:,None] - np.arange(X-1, -1, -1)
# flatten the indices
ixs = nd_ixs.ravel()
# filter out negative indices an set to 1
df['indicator'] = 0
df.loc[ixs[ixs>=0], 'indicator'] = 1

print(df)

    rowid  event  indicator
0      1   True          1
1      2  False          0
2      3  False          0
3      4  False          1
4      5  False          1
5      6   True          1
6      7  False          0

Where nd_ixs is obtained through the broadcasted subtraction of the indices where event is True and an arange up to X:

print(nd_ixs)

array([[-2, -1,  0],
       [ 3,  4,  5]], dtype=int64)
0

A pandas and numpy solution:

# Make a variable shift:
def var_shift(series, X):
    return [series] + [series.shift(i) for i in range(-X + 1, 0, 1)]

X = 3
# Set indicator to default to 1
df["indicator"] = 1

# Use pd.Series.where and np.logical_or with the 
#  var_shift function to get a bool array, setting
#  0 when False
df["indicator"] = df["indicator"].where(
    np.logical_or.reduce(var_shift(df["event"], X)),
    0,
)

#    rowid  event  indicator
# 0      1   True          1
# 1      2  False          0
# 2      3  False          0
# 3      4  False          1
# 4      5  False          1
# 5      6   True          1
# 6      7  False          0

In [77]: np.logical_or.reduce(var_shift(df["event"], 3))
Out[77]: array([True, False, False, True, True, True, nan], dtype=object)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.