41

I am trying to filter a pandas data frame using thresholds for three columns

import pandas as pd
df = pd.DataFrame({"A" : [6, 2, 10, -5, 3],
                   "B" : [2, 5, 3, 2, 6],
                   "C" : [-5, 2, 1, 8, 2]})
df = df.loc[(df.A > 0) & (df.B > 2) & (df.C > -1)].reset_index(drop = True)

df
    A  B  C
0   2  5  2
1  10  3  1
2   3  6  2

However, I want to do this inside a function where the names of the columns and their thresholds are given to me in a dictionary. Here's my first try that works ok. Essentially I am putting the filter inside cond variable and just run it:

df = pd.DataFrame({"A" : [6, 2, 10, -5, 3],
                   "B" : [2, 5, 3, 2, 6],
                   "C" : [-5, 2, 1, 8, 2]})
limits_dic = {"A" : 0, "B" : 2, "C" : -1}
cond = "df = df.loc["
for key in limits_dic.keys():
    cond += "(df." + key + " > " + str(limits_dic[key])+ ") & "
cond = cond[:-2] + "].reset_index(drop = True)"
exec(cond)
df
    A  B  C
0   2  5  2
1  10  3  1
2   3  6  2

Now, finally I put everything inside a function and it stops working (perhaps exec function does not like to be used inside a function!):

df = pd.DataFrame({"A" : [6, 2, 10, -5, 3],
                   "B" : [2, 5, 3, 2, 6],
                   "C" : [-5, 2, 1, 8, 2]})
limits_dic = {"A" : 0, "B" : 2, "C" : -1}
def filtering(df, limits_dic):
    cond = "df = df.loc["
    for key in limits_dic.keys():
        cond += "(df." + key + " > " + str(limits_dic[key])+ ") & "
    cond = cond[:-2] + "].reset_index(drop = True)"
    exec(cond)
    return(df)

df = filtering(df, limits_dic)
df
    A  B  C
0   6  2 -5
1   2  5  2
2  10  3  1
3  -5  2  8
4   3  6  2

I know that exec function acts differently when used inside a function but was not sure how to address the problem. Also, I am wondering there must be a more elegant way to define a function to do the filtering given two input: 1)df and 2)limits_dic = {"A" : 0, "B" : 2, "C" : -1}. I would appreciate any thoughts on this.

2
  • if you change the name of the result (cond = "df2 = df.loc[" and return(locals()['df2'])) it works. i tried to add dicts to exec to no avail
    – bobrobbob
    May 21, 2018 at 2:10
  • For more information on the pd.eval() family of functions, their features and use cases, please visit Dynamic Expression Evaluation in pandas using pd.eval().
    – cs95
    Dec 16, 2018 at 4:55

4 Answers 4

78

If you're trying to build a dynamic query, there are easier ways. Here's one using a list comprehension and str.join:

query = ' & '.join(['{}>{}'.format(k, v) for k, v in limits_dic.items()])

Or, using f-strings with python-3.6+,

query = ' & '.join([f'{k}>{v}' for k, v in limits_dic.items()])

print(query)

'A>0 & C>-1 & B>2'

Pass the query string to df.query, it's meant for this very purpose:

out = df.query(query)
print(out)

    A  B  C
1   2  5  2
2  10  3  1
4   3  6  2

What if my column names have whitespace, or other weird characters?

From pandas 0.25, you can wrap your column name in backticks so this works:

query = ' & '.join([f'`{k}`>{v}' for k, v in limits_dic.items()])

See this Stack Overflow post for more.


You could also use df.eval if you want to obtain a boolean mask for your query, and then indexing becomes straightforward after that:

mask = df.eval(query)
print(mask)

0    False
1     True
2     True
3    False
4     True
dtype: bool

out = df[mask]
print(out)

    A  B  C
1   2  5  2
2  10  3  1
4   3  6  2

String Data

If you need to query columns that use string data, the code above will need a slight modification.

Consider (data from this answer):

df = pd.DataFrame({'gender':list('MMMFFF'),
                   'height':[4,5,4,5,5,4],
                   'age':[70,80,90,40,2,3]})

print (df)
  gender  height  age
0      M       4   70
1      M       5   80
2      M       4   90
3      F       5   40
4      F       5    2
5      F       4    3

And a list of columns, operators, and values:

column = ['height', 'age', 'gender']
equal = ['>', '>', '==']
condition = [1.68, 20, 'F']

The appropriate modification here is:

query = ' & '.join(f'{i} {j} {repr(k)}' for i, j, k in zip(column, equal, condition))
df.query(query)

   age gender  height
3   40      F       5

For information on the pd.eval() family of functions, their features and use cases, please visit Dynamic Expression Evaluation in pandas using pd.eval().

7
  • 1
    In f-strings you can use the shorthand {k!r} above, rather than {repr(k)}...helps in long expressions like above. Oct 2, 2018 at 17:11
  • how to handle if there is multiple value for the same column
    – Abhis
    Nov 25, 2019 at 5:39
  • @Abhis What is that supposed to look like?
    – cs95
    Nov 25, 2019 at 8:43
  • @cs95 What if my column name itself has some operators such as C > D and I want to compare two such columns. Should I be adding double quotes around each column name, and entire query in single quote? Jun 19, 2020 at 19:44
  • 1
    That part about using a 'mask' answered a question I've had about how to combine 'query' with the selection of a subset of columns, when using 'loc' to avoid chained indexing. Thank you!
    – etotheipi
    Jan 19, 2021 at 4:44
7

An alternative to @coldspeed 's version:

conditions = None
for key, val in limit_dic.items():
    cond = df[key] > val
    if conditions is None:
        conditions = cond
    else:
        conditions = conditions & cond
print(df[conditions])
1
  • Thanks for this. I couldn't find a way to make the accepted answer work joining together isin conditions that referenced a python list defined in my code.
    – kev8484
    Aug 23, 2019 at 15:17
3

An alternative to both posted, that may or may not be more pythonic:

import pandas as pd
import operator
from functools import reduce

df = pd.DataFrame({"A": [6, 2, 10, -5, 3],
                   "B": [2, 5, 3, 2, 6],
                   "C": [-5, 2, 1, 8, 2]})

limits_dic = {"A": 0, "B": 2, "C": -1}

# equiv to [df['A'] > 0, df['B'] > 2 ...]
loc_elements = [df[key] > val for key, val in limits_dic.items()]

df = df.loc[reduce(operator.and_, loc_elements)]
1

How I do this without creating a string and df.query:

limits_dic = {"A" : 0, "B" : 2, "C" : -1}
cond = None

# Build the conjunction one clause at a time 
for key, val in limits_dic.items():
    if cond is None:
        cond = df[key] > val
    else:
        cond = cond & (df[key] > val)

df.loc[cond]

    A  B  C
0   2  5  2
1  10  3  1
2   3  6  2

Note the hard coded (>, &) operators (since I wanted to follow your example exactly).

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.