I want to use a boolean to select the columns with more than 4000 entries from a dataframe comb which has over 1,000 columns. This expression gives me a Boolean (True/False) result:

criteria = comb.ix[:,'c_0327':].count()>4000

I want to use it to select only the True columns to a new Dataframe.
The following just gives me "Unalignable boolean Series key provided":


I also tried:

comb.ix[:, comb.ix[:,'c_0327':].count()>4000] 

Similar to this question answer dataframe boolean selection along columns instead of row but that gives me the same error: "Unalignable boolean Series key provided"



c_0327    False
c_0328    False
c_0329    False
c_0330    False
c_0331    False
c_0332    False
c_0333    False
c_0334    False
c_0335    False
c_0336    False
c_0337     True
c_0338    False
  • don't you want comb[criteria.columns]?
    – EdChum
    Commented Mar 26, 2015 at 15:19
  • 1
    comb[criteria.columns] gives me "'Series' object has no attribute 'columns'"
    – dartdog
    Commented Mar 26, 2015 at 15:24

7 Answers 7


What is returned is a Series with the column names as the index and the boolean values as the row values.

I think actually you want:

this should now work:


Basically this uses the index values from criteria and the boolean values to mask them, this will return an array of column names, we can use this to select the columns of interest from the orig df.

  • 4
    I am surprised to see, there is no shorter (more straightforward ) way of doing this.
    – Areza
    Commented Jan 23, 2019 at 9:56
  • 2
    There is, this answer is 5 years old and outdated. See my answer below for the straightforward way
    – johnDanger
    Commented Apr 16, 2020 at 22:00
  • @johnDanger Nice answer, but I'm not sure I'd agree that going from "m[f] for row filtering" to "m.loc[:,f] for column filtering" is straightforward.
    – c z
    Commented Mar 9, 2021 at 11:37
  • 1
    The "straightforwardness" in @johnDanger's answer is that you only need criteria once, and hence you do not need to define the variable separately (but can just use the expression itself ion m.loc[:, expression_of_criteria_itself]). Commented Jun 10, 2021 at 9:13

In pandas 0.25:

comb.loc[:, criteria]

Returns a DataFrame with columns selected by the Boolean list or Series.

For multiple criteria:

comb.loc[:, criteria1 & criteria2]

And for selecting rows with an index criteria:


Note: The bit-wise operator & is required (not and). See Logical operators for boolean indexing in Pandas.

Other Note: If the criteria is an expression (e.g., comb.columnX > 3), and multiple criteria are used, remember to enclose each expression in parentheses! This is because &, | have higher precedence than >, ==, ect. (whereas and, or are lower precedence).


You can also use:

# To filter columns (assuming criteria length is equal to the number of columns of comb)
comb.ix[:, criteria]
comb.iloc[:, criteria.values]

# To filter rows (assuming criteria length is equal to the number of rows of comb)
  • 2
    The first answer looks the most elegant for masked column selection. The only trick is that one needs to do comb.iloc[:, criteria.values], as a series is not a valid argument into iloc slicing of this type Commented Aug 17, 2018 at 13:47
  • I should have specified that I expected criteria to be a boolean list. Good catch. Commented Aug 24, 2018 at 9:02

You can pass a boolean array to loc to indicate which columns should be kept and which not.

For example,

>>> df
    A   B   C   D    E
0  73  15  55  33  foo
1  63  64  11  11  bar
2  56  72  57  55  foo

>>> df.loc[:, [True, True, False, False, True]]
    A   B    E
0  73  15  foo
1  63  64  bar
2  56  72  foo

I'm using this, it's cleaner


credit: https://stackoverflow.com/a/43291257/815677

  • 7
    Just to be clear, this returns an numpy.ndarray, and not a pandas.DataFrame. Commented Jan 16, 2019 at 7:13

Another solution is to transpose comb to make its columns act as its index, then transpose on the resulting subset:


Again, not particularly elegant, but at least shorter/less repetitive than the leading solution.

  • 1
    There are already proposed solutions which are shorter/less repetitive than the accepted solution but also more elegant.
    – Jean Paul
    Commented Oct 22, 2020 at 15:34
  • 1
    Seconding @JeanPaul... best to avoid transposes Commented Mar 15, 2022 at 20:05
  • @william_grisaitis What's the problem with transposes? Are they memory/compute intensive, or do you just find the T aesthetically displeasing, or ...? Commented Mar 29, 2022 at 20:46
  • 1
    @SethJohnson they can be really slow. not an expert, but that's my experience. if i had to guess, it's reallocating memory under the hood for everything (not a zero-copy operation). Commented Mar 30, 2022 at 21:24

Another approach is to use Python's built-in filter function:

def satisfies_criteria(column):
    return comb[column].count() > 4000

cols = filter(satisfies_criteria, df.columns)

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