I have this DataFrame:

                      0   1   2         3   4       5   6          7
0               #0915-8 NaN NaN       NaN NaN     NaN NaN        NaN
1                   NaN NaN NaN  LIVE WGT NaN  AMOUNT NaN      TOTAL
2               GBW COD NaN NaN     2,280 NaN   $0.60 NaN  $1,368.00
3               POLLOCK NaN NaN     1,611 NaN   $0.01 NaN     $16.11
4                 WHAKE NaN NaN       441 NaN   $0.70 NaN    $308.70
5           GBE HADDOCK NaN NaN     2,788 NaN   $0.01 NaN     $27.88
6           GBW HADDOCK NaN NaN    16,667 NaN   $0.01 NaN    $166.67
7               REDFISH NaN NaN       932 NaN   $0.01 NaN      $9.32
8    GB WINTER FLOUNDER NaN NaN       145 NaN   $0.25 NaN     $36.25
9   GOM WINTER FLOUNDER NaN NaN    25,070 NaN   $0.35 NaN  $8,774.50
10        GB YELLOWTAIL NaN NaN        26 NaN   $1.75 NaN     $45.50

I want to drop all NaNs as well as any columns with more than 3 NaNs (either one, or both, should work I think). I tried this code:

fish_frame.dropna(thresh=len(fish_frame) - 3, axis=1)

but it seems not to have any effect on the DataFrame - I see the same results afterward.

What is wrong with the code, and how do I fix it?

  • 8
    .dropna() doesn't change DF in place - it returns a changed DF... so you either have to assign it back like: df = df.dropna() or to explicitly use inplace=True parameter Jul 17, 2017 at 14:40
  • Ohh my bad. Gotcha. Should I expect that command to produce an empty dataframe, given how many NaNs my original one has?
    – theprowler
    Jul 17, 2017 at 14:51
  • 1
    i think your second command should work (since it targets columns), but the first one will remove any row with a NaN - since all rows have at least one NaN in them, it will remove all of them. Jul 17, 2017 at 15:01
  • @MaxU: better to say dropna() by default does inplace=False so you'd need to assign that; but if you want in-place just do dropna(..., inplace=True)
    – smci
    Sep 9, 2019 at 23:34
  • 1
    OP When you say "drop all NaNs" you really mean "drop all-NaN columns". That's slightly different.
    – smci
    Sep 9, 2019 at 23:37

4 Answers 4


From the dropna docstring:

Drop the columns where all elements are NaN:
df.dropna(axis=1, how='all')

   A    B    D
0  NaN  2.0  0
1  3.0  4.0  1
2  NaN  NaN  5

dropna() drops the null values and returns a dataFrame. Assign it back to the original dataFrame.

fish_frame = fish_frame.dropna(axis = 1, how = 'all')

Referring to your code:

fish_frame.dropna(thresh=len(fish_frame) - 3, axis=1)

This would drop columns with 7 or more NaN's (assuming len(df) = 10), if you want to drop columns with more than 3 Nan's like you've mentioned, thresh should be equal to 3.

  • Right. MaxU explained why that works. But for my dataframe specifically, it produced an empty dataframe after running fish_frame = fish_frame.dropna(). Should that be expected?
    – theprowler
    Jul 17, 2017 at 14:52
  • 1
    try passing parameter how = 'all' Jul 17, 2017 at 15:02

dropna() by default returns a dataframe (defaults to inplace=False behavior) and thus needs to be assigned to a new dataframe for it to stay in your code.

So for example,

fish_frame = fish_frame.dropna()

As to why your dropna is returning an empty dataframe, I'd recommend you look at the "how" argument in the dropna method (https://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.dropna.html). Also bear in mind, axis=0 corresponds to columns, and axis=1 corresponds to rows.

So to remove columns with all "NAs", axis=0, how="any" should do the trick:

fish_frame = fish_frame.dropna(axis=0, how="any")

Finally, the "thresh" argument designates explicitly how many NA's are necessary for a drop to occur. So

fish_frame = fish_frame.dropna(axis=0, thresh=3, how="any") 

should work fine and dandy to remove any column with three NA's.

Also, as Corley pointed out, how="any" is the default and is thus not necessary.

  • don't you mean how='all'?
    – jwm
    Oct 17, 2022 at 20:09
  • you cannot use both a threshold and how="any"
    – nafrtiti
    Feb 7, 2023 at 8:34

Another solution would be to create a boolean dataframe with True values at not-null positions and then take the columns having at least one True value. Below line removes columns with all NaN values.

df = df.loc[:,df.notna().any(axis=0)]

If you want to remove columns having at least one missing (NaN) value;

df = df.loc[:,df.notna().all(axis=0)]

This approach is particularly useful in removing columns containing empty strings, zeros or basically any given value. For example;

df = df.loc[:,(df!='').all(axis=0)]

removes columns having at least one empty string.

  • This approach is useful because it points direction to selectively delete subsets of columns
    – pauljohn32
    Jun 3, 2022 at 15:13

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