I know it might be old debate, but out of pandas.drop and python del function which is better in terms of performance over large dataset?

I am learning machine learning using python 3 and not sure which one to use. My data is in pandas data frame format. But python del function is in built-in function for python.

  • 1
    I will suggest to use drop, since it easily can achieve drop multiple column in one time. df.drop(['A','B'])
    – BENY
    Nov 22, 2017 at 3:15
  • Check this out: stackoverflow.com/questions/13411544/…
    – Greg
    Nov 22, 2017 at 3:22
  • @Wen achieving multiple column drop wasn't my concern but for larger dataset, if only one column I need to delete,will drop performs better than del or vice versa?
    – sagar jain
    Nov 22, 2017 at 3:35
  • @Greg this is what I was searching.Thanks a lot..I guess deleting will free some memory from data frame while dropping will just return dataframe while hiding the dropped column, Is it right or am I missing something?
    – sagar jain
    Nov 22, 2017 at 3:39
  • @sagarjain you can make the .drop method work in-place by passing df.drop(<whatever>, inplace=True). I don't think there would be a performance difference. Can't you run a test if you are curios? Nov 22, 2017 at 8:39

4 Answers 4


Summarizing a few points about functionality:

  • drop operates on both columns and rows; del operates on column only.
  • drop can operate on multiple items at a time; del operates only on one at a time.
  • drop can operate in-place or return a copy; del is an in-place operation only.

The documentation at https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.drop.html has more details on drop's features.


Using randomly generated data of about 1.6 GB, it appears that df.drop is faster than del, especially over multiple columns:

df = pd.DataFrame(np.random.rand(20000,10000))
t_1 = time.time()
df.drop(labels=[2,4,1000], inplace=True)
t_2 = time.time()
print(t_2 - t_1)


Compared to:

df = pd.DataFrame(np.random.rand(20000,10000))
t_3 = time.time()
del df[2]
del df[4]
del df[1000]
t_4 = time.time()
print(t_4 - t_3)


@Inder's comparison is not quite the same since it doesn't use inplace=True.


tested it on a 10Mb data of stocks, got the following results:

for drop with the following code



for del with the following code on the same column:

del d[2]

time i got was:


reruns on different datasets and columns didn't make any significant difference


In drop method using "inplace=False" you have option to create Subset DF and keep un-touch the original DF, But in del I believe this option is not available.

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