11

I'm trying to select rows of a DataFrame based on a list of conditions that needs to be all satisfied. Those conditions are stored in a dictionary and are of the form {column: max-value}.

This is an example: dict = {'name': 4.0, 'sex': 0.0, 'city': 2, 'age': 3.0}

I need to select all DataFrame rows where the corresponding attribute is less than or equal to the corresponding value in the dictionary.

I know that for selecting rows based on two or more conditions I can write:

rows = df[(df[column1] <= dict[column1]) & (df[column2] <= dict[column2])]

My question is, how can I select rows that matches the conditions present in a dictionary in a Pythonic way? I tried this way,

keys = dict.keys() 
rows = df[(df[kk] <= dict[kk]) for kk in keys]

but it gives me an error = "[ expected" that doesn't disappear even putting the [ symbol.

1
  • 4
    Don't name your variable dict because dict is a builtin python dictionary constructor.
    – Abdou
    Aug 9, 2017 at 12:48

3 Answers 3

8

we can use DataFrame.query() method like this:

In [109]: dct = {'name': 4.0, 'sex': 0.0, 'city': 2, 'age': 3.0}

In [110]: qry = ' and '.join(['{} <= {}'.format(k,v) for k,v in dct.items()])

In [111]: qry
Out[111]: 'name <= 4.0 and sex <= 0.0 and city <= 2 and age <= 3.0'

In [112]: df.query(qry)
...
3

You could take advantage of Pandas' automatic axis alignment. Given a DataFrame with columns ['age', 'city', 'name', 'sex'] and a Series with the same index, you can compare every entry in the DataFrame against the corresponding value in the Series using

In [29]: df < pd.Series(dct)
Out[29]: 
      age   city   name    sex
0   False  False  False  False
1   False  False  False  False
2    True  False  False  False
3   False   True  False  False
4    True   True   True  False
...

Then you can find the rows which are all True using

mask = (df <= pd.Series(dct)).all(axis=1)

and select those rows with df.loc[mask, :]. For example,

import numpy as np
import pandas as pd
np.random.seed(2017)
N = 300
df = pd.DataFrame({'name':np.random.randint(10, size=N),
                   'sex':np.random.randint(2, size=N),
                   'city':np.random.randint(10, size=N),
                   'age':np.random.randint(10, size=N)})
dct = {'name': 4.0, 'sex': 0.0, 'city': 2, 'age': 3.0}

mask = (df <= pd.Series(dct)).all(axis=1)
print(df.loc[mask, :])

yields

     age  city  name  sex
7      3     2     0    0
10     1     2     4    0
150    1     2     4    0
188    2     2     2    0
198    3     2     3    0
229    1     2     0    0
254    1     2     2    0
275    3     2     1    0
276    0     1     4    0
299    3     1     2    0
3
  • Does anyone know how @MaxU and @ unutbu 's answers perform compared to each other?
    – srcerer
    Mar 17, 2019 at 13:47
  • 2
    @srcerer: On my machine, especially for larger DataFrames, MaxU's answer (using query) is faster. Since it is empowering to know how to test this for yourself, you may want to take a look at the timeit module or for more convenience, IPython's %timeit magic function.
    – unutbu
    Mar 17, 2019 at 14:45
  • Thanks, I was just too lazy to test for myself. I like that your method doesn't require generating a string.
    – srcerer
    Mar 17, 2019 at 15:07
0

You can also try:

import pandas as pd
import numpy as np


N = 300

df = pd.DataFrame({'name':np.random.randint(10, size=N),
                   'sex':np.random.randint(2, size=N),
                   'city':np.random.randint(10, size=N),
                   'age':np.random.randint(10, size=N)})

dct = {'name': 4.0, 'sex': 0.0, 'city': 2, 'age': 3.0}

df.loc[np.prod([df[k] <= v for k,v in dct.items()],axis=0).astype(bool),:]

#      age  city  name  sex
# 7      3     2     0    0
# 10     1     2     4    0
# 150    1     2     4    0
# 188    2     2     2    0
# 198    3     2     3    0
# 229    1     2     0    0
# 254    1     2     2    0
# 275    3     2     1    0
# 276    0     1     4    0
# 299    3     1     2    0

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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