3

I've got data frames that look like this:

import time
import pandas as pd
import numpy as np

N = 3
l = []
for i in range(N):
    n = np.random.choice(5)+2
    l += [pd.DataFrame(dict(ID = np.repeat(i, n),
                            t = list(range(n)),
                            X = np.random.normal(size = n)))]
df = pd.concat(l)

df
Out[85]: 
   ID  t         X
0   0  0  0.992300
1   0  1  0.226487
2   0  2 -0.731178
3   0  3  0.748376
4   0  4  1.269106
0   1  0  0.512957
1   1  1 -1.274963
2   1  2  0.186314
3   1  3  1.243093
0   2  0  0.321971
1   2  1  0.233895
2   2  2  0.293439

I need to set their last value of t for each ID to NaN. Right now, I can do it one of two ways:

trimlast = df.groupby('ID').apply(lambda x: x.head(-1)).reset_index(drop=True)
df = df.drop(columns='X').merge(trimlast, how='left')

Or

def f(d):
    d.loc[d.t == d.t.max(), 'X'] = np.nan
    return d

df = df.groupby('ID').apply(f).reset_index(drop=True)

Both of which yield:

df
Out[87]: 
    ID  t         X
0    0  0  0.992300
1    0  1  0.226487
2    0  2 -0.731178
3    0  3  0.748376
4    0  4       NaN
5    1  0  0.512957
6    1  1 -1.274963
7    1  2  0.186314
8    1  3       NaN
9    2  0  0.321971
10   2  1  0.233895
11   2  2       NaN

They're too slow when the data gets big. Time is approx linear.

def sizetry(N, other_way = False):
    np.random.seed(0)
    l = []
    for i in range(N):
        n = np.random.choice(5) + 2
        l += [pd.DataFrame(dict(ID=np.repeat(i, n),
                                t=list(range(n)),
                                X=np.random.normal(size=n)))]
    df = pd.concat(l)
    start = time.time()
    if other_way:
        trimlast = df.groupby('ID').apply(lambda x: x.head(-1)).reset_index(drop=True)
        df = df.drop(columns='X').merge(trimlast, how='left')
    else:
        df = df.groupby('ID').apply(f).reset_index(drop=True)
    end = time.time()
    return end-start

tvec = [sizetry(2**i) for i in range(15)]
tvec_other = [sizetry(2**i, other_way = True) for i in range(15)]
import matplotlib.pyplot as plt
plt.plot(np.log2(tvec), label = "merge way")
plt.plot(np.log2(tvec_other), label = 'other way')
plt.legend()
plt.show()

enter image description here

I suspect that the problem is groupby. Is there a faster way to do this?

2
  • 1
    is your index actually repeated ?
    – Umar.H
    Mar 20 at 16:50
  • The Id index is not repeated. The t index is repeated. It's individuals over time. Mar 20 at 16:54
7

first reset your index.

df = df.reset_index(drop=True)

then use duplicated() with an inversed boolean.

import numpy as np
df.loc[~df.duplicated(subset=['ID'],keep='last'),'X'] = np.nan

print(df)

    ID  t         X
0    0  0  0.424902
1    0  1  1.597951
2    0  2  1.453884
3    0  3       NaN
4    1  0  0.534653
5    1  1 -0.318361
6    1  2  0.188290
7    1  3  1.157802
8    1  4       NaN
9    2  0  0.186005
10   2  1  0.036017
11   2  2  1.039822
12   2  3 -1.602205
13   2  4 -0.210601
14   2  5       NaN

if you want the max T value to be changed then use idxmax() with a groupby

df.loc[df.groupby('ID')['t'].idxmax(),'x'] = np.nan

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.