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I have a dataframe with column names, and I want to find the one that contains a certain string, but does not exactly match it. I'm searching for 'spike' in column names like 'spike-2', 'hey spike', 'spiked-in' (the 'spike' part is always continuous).

I want the column name to be returned as a string or a variable, so I access the column later with df['name'] or df[name] as normal. I've tried to find ways to do this, to no avail. Any tips?

8 Answers 8

418

Just iterate over DataFrame.columns, now this is an example in which you will end up with a list of column names that match:

import pandas as pd

data = {'spike-2': [1,2,3], 'hey spke': [4,5,6], 'spiked-in': [7,8,9], 'no': [10,11,12]}
df = pd.DataFrame(data)

spike_cols = [col for col in df.columns if 'spike' in col]
print(list(df.columns))
print(spike_cols)

Output:

['hey spke', 'no', 'spike-2', 'spiked-in']
['spike-2', 'spiked-in']

Explanation:

  1. df.columns returns a list of column names
  2. [col for col in df.columns if 'spike' in col] iterates over the list df.columns with the variable col and adds it to the resulting list if col contains 'spike'. This syntax is list comprehension.

If you only want the resulting data set with the columns that match you can do this:

df2 = df.filter(regex='spike')
print(df2)

Output:

   spike-2  spiked-in
0        1          7
1        2          8
2        3          9
8
  • 28
    this is what DataFrame.filter does FYI (and you can supply a regex if you want)
    – Jeff
    Commented Jan 22, 2014 at 14:37
  • 2
    @xndrme how would you do a regex to exclude a certain column matching a regex instead of include? Commented Mar 31, 2016 at 11:28
  • 3
    @DhruvGhulati It is possible also to drop your unwanted columns as in df[df.columns.drop(spike_cols)], there you get a DataFrame without the columns in the list spike_cols which you can obtain using your undesired regex. Commented Mar 31, 2016 at 11:54
  • 3
    more concise code: df[[col for col in df.columns if "spike" in col]]
    – WindChimes
    Commented May 22, 2016 at 3:11
  • 4
    @JacoSolari [col for col in df.columns if any(s in col for s in ['spike', 'foo', 'bar'])] or df.filter(regex='(spike)|(foo)|(bar)') Commented Feb 3, 2021 at 10:30
146

This answer uses the DataFrame.filter method to do this without list comprehension:

import pandas as pd

data = {'spike-2': [1,2,3], 'hey spke': [4,5,6]}
df = pd.DataFrame(data)

print(df.filter(like='spike').columns)

Will output just 'spike-2'. You can also use regex, as some people suggested in comments above:

print(df.filter(regex='spike|spke').columns)

Will output both columns: ['spike-2', 'hey spke']

3
  • I have many columns and I used this code, it seems it skips some of the names! In this example, imagine running this code and not returning 'hey spke' column!!
    – PM0087
    Commented May 24, 2021 at 15:25
  • How about excluding some columns by name? How would we go about doing that?
    – MrSoLoDoLo
    Commented Oct 3, 2021 at 15:04
  • You could do a negative lookahead (regex='^(?!spke)') or get a boolean vector for columns doing something like df.columns.str.contains('spke').
    – Ben
    Commented Mar 21, 2022 at 13:06
49

You can also use df.columns[df.columns.str.contains(pat = 'spike')]

data = {'spike-2': [1,2,3], 'hey spke': [4,5,6], 'spiked-in': [7,8,9], 'no': [10,11,12]}
df = pd.DataFrame(data)

colNames = df.columns[df.columns.str.contains(pat = 'spike')] 

print(colNames)

This will output the column names: 'spike-2', 'spiked-in'

More about pandas.Series.str.contains.

43
# select columns containing 'spike'
df.filter(like='spike', axis=1)

You can also select by name, regular expression. Refer to: pandas.DataFrame.filter

2
  • 2
    Easiest solution so far. Simple yet powerful!
    – ciurlaro
    Commented Mar 14, 2020 at 16:39
  • 1
    This is a wrong answer. Please note, questions ask for returning 'columns name' with a given string in it or pattern e.g. spike.
    – DataFramed
    Commented Dec 17, 2020 at 12:03
17
df.loc[:,df.columns.str.contains("spike")]
1
  • 1
    While it does not exactly answer the original question, I really like this solution as it directly returns the sliced DataFrame (which is actually also what probably the OP is after).
    – malvoisen
    Commented Jan 11, 2021 at 17:35
12

Another solution that returns a subset of the df with the desired columns:

df[df.columns[df.columns.str.contains("spike|spke")]]

1
  • Does '&' operator work the same way '|' operator works in Regex? Commented Nov 9, 2023 at 19:37
4

You also can use this code:

spike_cols =[x for x in df.columns[df.columns.str.contains('spike')]]
1

Getting name and subsetting based on Start, Contains, and Ends:

# from: https://stackoverflow.com/questions/21285380/find-column-whose-name-contains-a-specific-string
# from: https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.Series.str.contains.html
# from: https://cmdlinetips.com/2019/04/how-to-select-columns-using-prefix-suffix-of-column-names-in-pandas/
# from: https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.filter.html




import pandas as pd



data = {'spike_starts': [1,2,3], 'ends_spike_starts': [4,5,6], 'ends_spike': [7,8,9], 'not': [10,11,12]}
df = pd.DataFrame(data)



print("\n")
print("----------------------------------------")
colNames_contains = df.columns[df.columns.str.contains(pat = 'spike')].tolist() 
print("Contains")
print(colNames_contains)



print("\n")
print("----------------------------------------")
colNames_starts = df.columns[df.columns.str.contains(pat = '^spike')].tolist() 
print("Starts")
print(colNames_starts)



print("\n")
print("----------------------------------------")
colNames_ends = df.columns[df.columns.str.contains(pat = 'spike$')].tolist() 
print("Ends")
print(colNames_ends)



print("\n")
print("----------------------------------------")
df_subset_start = df.filter(regex='^spike',axis=1)
print("Starts")
print(df_subset_start)



print("\n")
print("----------------------------------------")
df_subset_contains = df.filter(regex='spike',axis=1)
print("Contains")
print(df_subset_contains)



print("\n")
print("----------------------------------------")
df_subset_ends = df.filter(regex='spike$',axis=1)
print("Ends")
print(df_subset_ends)

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