186

To filter a DataFrame (df) by a single column, if we consider data with male and females we might:

males = df[df[Gender]=='Male']

Question 1: But what if the data spanned multiple years and I wanted to only see males for 2014?

In other languages I might do something like:

if A = "Male" and if B = "2014" then 

(except I want to do this and get a subset of the original DataFrame in a new dataframe object)

Question 2: How do I do this in a loop, and create a dataframe object for each unique sets of year and gender (i.e. a df for: 2013-Male, 2013-Female, 2014-Male, and 2014-Female?

for y in year:

for g in gender:

df = .....
2
  • Do you want to filter it or group it? If you want to create a separate DataFrame for each unique set of year and gender, look at groupby.
    – BrenBarn
    Feb 28, 2014 at 4:35
  • 2
    This answer gives a comprehensive overview of boolean indexing and logical operators in pandas. Jan 25, 2019 at 6:17

11 Answers 11

292

Using & operator, don't forget to wrap the sub-statements with ():

males = df[(df[Gender]=='Male') & (df[Year]==2014)]

To store your DataFrames in a dict using a for loop:

from collections import defaultdict
dic={}
for g in ['male', 'female']:
    dic[g]=defaultdict(dict)
    for y in [2013, 2014]:
        dic[g][y]=df[(df[Gender]==g) & (df[Year]==y)] #store the DataFrames to a dict of dict

A demo for your getDF:

def getDF(dic, gender, year):
    return dic[gender][year]

print genDF(dic, 'male', 2014)
7
  • great answer zhangxaochen - could you edit your answer to show at the bottom how you might do a for loop, which creates the dataframes (with year and gender data) but adds them to a dictionary so they can be accessed later by my getDF method? def GetDF(dict,key): return dict[key]
    – yoshiserry
    Feb 28, 2014 at 5:11
  • @yoshiserry what's the key like in your getDF? a single parameter or a tuple of keys? be specific plz ;) Feb 28, 2014 at 5:21
  • hi it's a single key, just a word, that would correspond to the gender (male, or female) or year (13, 14) Didn't know you could have a tuple of keys. Could you share an example of when and how you would do this?
    – yoshiserry
    Feb 28, 2014 at 5:24
  • could you have a look at this question too. I feel like you could answer it. Relates to pandas dataframes again. stackoverflow.com/questions/22086619/…
    – yoshiserry
    Feb 28, 2014 at 5:26
  • 3
    Note that the Gender and Year should both be strings, i.e., 'Gender' and 'Year'. May 4, 2017 at 19:47
41

Start from pandas 0.13, this is the most efficient way.

df.query('Gender=="Male" & Year=="2014" ')
5
  • 2
    Why should this be more efficient than the accepted answer?
    – Bouncner
    Jul 4, 2019 at 8:11
  • @Bouncner just verify it against the high-voted answer. Oct 11, 2019 at 15:27
  • 28
    This answer could be improved by showing the benchmark
    – nardeas
    Dec 4, 2019 at 13:19
  • 2
    This is not efficient. Using %timeit, df.query(blah) scored 1.81 ms ± 99.7 µs per loop (7 runs, 1000 loops each), whereas df[(blah) & (blah)] scored faster at 501 µs ± 15.3 µs per loop (7 runs, 1000 loops each)
    – blackraven
    May 8, 2022 at 2:38
  • Why not Year==2014 instead of Year=="2014"?
    – kiradotee
    Mar 9, 2023 at 14:04
37

In case somebody wonders what is the faster way to filter (the accepted answer or the one from @redreamality):

import pandas as pd
import numpy as np

length = 100_000
df = pd.DataFrame()
df['Year'] = np.random.randint(1950, 2019, size=length)
df['Gender'] = np.random.choice(['Male', 'Female'], length)

%timeit df.query('Gender=="Male" & Year=="2014" ')
%timeit df[(df['Gender']=='Male') & (df['Year']==2014)]

Results for 100,000 rows:

6.67 ms ± 557 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
5.54 ms ± 536 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

Results for 10,000,000 rows:

326 ms ± 6.52 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
472 ms ± 25.1 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)

So results depend on the size and the data. On my laptop, query() gets faster after 500k rows. Further, the string search in Year=="2014" has an unnecessary overhead (Year==2014 is faster).

2
  • 3
    However, I think the query syntax is neater and close to SQL, which makes it nice for data since. The chery on the cake is that it's faster with many rows :)
    – csgroen
    Aug 27, 2020 at 15:58
  • Couldn't agree more, @csgroen.
    – Bouncner
    Apr 21, 2023 at 17:44
29

For more general boolean functions that you would like to use as a filter and that depend on more than one column, you can use:

df = df[df[['col_1','col_2']].apply(lambda x: f(*x), axis=1)]

where f is a function that is applied to every pair of elements (x1, x2) from col_1 and col_2 and returns True or False depending on any condition you want on (x1, x2).

2
  • 6
    A fleshed out example where you also define f would improve this answer.
    – user239558
    Apr 16, 2021 at 11:00
  • Great idea! Use df[df[["col_1", "col_2"]].apply(lambda x: True if tuple(x.values) == ("val_1", "val_2") else False, axis=1)] to filter by a tuple of desired values for specific columns, for example. Or even shorter, df[df[["col_1", "col_2"]].apply(lambda x: tuple(x.values) == ("val_1", "val_2"), axis=1)] Jun 28, 2022 at 12:21
8

Since you are looking for a rows that basically meet a condition where Column_A='Value_A' and Column_B='Value_B'

you can do using loc

df = df.loc[df['Column_A'].eq('Value_A') & df['Column_B'].eq('Value_B')]

You can find full doc here panda loc

6

You can create your own filter function using query in pandas. Here you have filtering of df results by all the kwargs parameters. Dont' forgot to add some validators(kwargs filtering) to get filter function for your own df.

def filter(df, **kwargs):
    query_list = []
    for key in kwargs.keys():
        query_list.append(f'{key}=="{kwargs[key]}"')
    query = ' & '.join(query_list)
    return df.query(query)
2
  • Thanks for the elegant solution! I think it's the best out of all the rest. It combines the efficiency of using query with the versatility of having it as a function.
    – A Merii
    Jul 27, 2020 at 9:37
  • 2
    Note that this assumes the value kwargs[key] is a string; it can be made a bit more generic (at least ints and strings) by something like val = kwargs[key] and val_str = f'"{val}"' if isinstance(val, str) else f'{str(val)} and query_list.append(f'{key}=={val_str}')
    – THK
    Feb 26, 2021 at 19:27
2

You can filter by multiple columns (more than two) by using the np.logical_and operator to replace & (or np.logical_or to replace |)

Here's an example function that does the job, if you provide target values for multiple fields. You can adapt it for different types of filtering and whatnot:

def filter_df(df, filter_values):
    """Filter df by matching targets for multiple columns.

    Args:
        df (pd.DataFrame): dataframe
        filter_values (None or dict): Dictionary of the form:
                `{<field>: <target_values_list>}`
            used to filter columns data.
    """
    import numpy as np
    if filter_values is None or not filter_values:
        return df
    return df[
        np.logical_and.reduce([
            df[column].isin(target_values) 
            for column, target_values in filter_values.items()
        ])
    ]

Usage:

df = pd.DataFrame({'a': [1, 2, 3, 4], 'b': [1, 2, 3, 4]})

filter_df(df, {
    'a': [1, 2, 3],
    'b': [1, 2, 4]
})
1

An improvement to Alex answer

def df_filter(df, **kwargs):
    query_list = []
    for key, value in kwargs.items():
        if value is not None:
            query_list.append(f"{key}==@kwargs['{str(key)}']")
    query = ' & '.join(query_list)
    return df.query(query)

will remove None values so can be directly incoperated to functions with some values defaulting to None also the previous one would not work if the value was not string , this will work on any type of arguments

0
0

After a few years I came back to this question and can propose another solution, it's especially good when you have lots of filters included. We can create a several filtering masks and then operate on those filters:

>>> df = pd.DataFrame({'gender': ['Male', 'Female', 'Male'],
...                    'married': [True, False, False]})
>>> gender_mask = df['gender'] == 'Male'
>>> married_mask = df['married']
>>> filtered_df = df.loc[gender_mask & married_mask]
>>> filtered_df
  gender  married
0   Male     True

Maybe it's not the shortest solution, but it's readable and could be a great help to organize the code.

0

My dataframe has 25 columns and I want to leave for future a freedom to choice any kind of filters (num of params, conditions). I use this:

    
def flex_query(params):
    res = load_dataframe()
    if type(params) is not list:
        return None
    for el in params:
        res = res.query(f"{el[0]} {el[1]} {el[2]}")
    return res

And calling this:

res = flex_query([['DATE','==', '"2022-09-26"'],['LEVEL','>=',2], ['PERCENT','>',10.2]])

Where 'DATE', 'LEVEL', 'PERCENT' - column names. As you can see, here are very flexible query method with several params and different type of conditions. This method gives me possibility to compare int, float, string - 'all in one'

0

Another more generalised solution I found is using the where method on the data frame.

Example:

import pandas as pd

data = {'A': [1, 2, 1, 1],
        'B': [5, 6, 7, 8],
        'C': [9, 10, 11, 10]}
df = pd.DataFrame(data)
df[['A', 'C']].where(lambda row: row.values == [1, 10]).dropna()
# >> 
#    A      C
# 3  1.0    10.0

dropna() makes sure only rows that have a full match are returned. Also, make sure the values you're checking for are in the correct order. In this example, 1 is for the A column and 10 is for the C column values

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