I have a time series in which any value `valX`

at time `tX`

has two other values associated with it (`minX`

and `maxX`

). As you can see in the figure bellow, those values always satisfy `minX < valX < maxX`

.

Now, I would like to create a new time series that associates, for each `tX`

, the first value in the time series that crossed `minX`

or `maxX`

at `tY > tX`

:

This is the implementation I have come up with:

```
import pandas
import numpy as np
# An example data frame
np.random.seed(1)
df = pandas.DataFrame(np.random.rand(10, 3), columns=['min', 'max', 'val'])
df['max'] += 1
df['val'] = (df['min'] + df['max']) / 2.
# An auxiliary column, that will be shifted
df['shift'] = df['val'].copy()
# This is the time series I am looking for (initialized with NaN values)
df['result'] = np.nan
# Main loop
LIMIT = len(df)
for i in range(LIMIT):
df['shift'] = df['shift'].shift(-1)
df['result'].update(df['shift'][((df['shift'] < df['min']) | \
(df['shift'] > df['max'])) & \
(df['result'].isnull())])
# Data frame is well-formed
df
```

Which shows the correct result:

I wonder if there is a better (specially faster in execution) way of doing this.