0

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:

enter image description here

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:

enter image description here

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

3
+50

numba often works well for these type of problems. You could also a get a similar result with cython with more annotations.

@numba.jit(nopython=True)
def generate_values(mins, maxs, vals):
    N = len(vals)
    ans = np.empty(N)

    for i in range(N):
        for j in range(i, N):
            if vals[j] < mins[i] or vals[j] > maxs[i]:
                ans[i] = vals[j]
                break
        else:
            ans[i] = np.nan
    return ans

A bit verbose, but very fast.

In [278]: %%time
     ...: 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())])
Wall time: 62 ms


In [281]: %timeit generate_values(df['min'].values, df['max'].values, df['val'].values)
10000 loops, best of 3: 20.6 µs per loop
  • 1
    With numba a new world of possibilities has been opened-up in front of me. Thank you very much. – Peque Sep 23 '15 at 20:04

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.