I'm trying to get the number of rows of dataframe df with Pandas, and here is my code.

Method 1:

total_rows = df.count
print total_rows + 1

Method 2:

total_rows = df['First_columnn_label'].count
print total_rows + 1

Both the code snippets give me this error:

TypeError: unsupported operand type(s) for +: 'instancemethod' and 'int'

What am I doing wrong?

  • 17
    ok I found out, i should have called method not check property, so it should be df.count() no df.count – yemu Apr 11 '13 at 8:15
  • 76
    ^ Dangerous! Beware that df.count() will only return the count of non-NA/NaN rows for each column. You should use df.shape[0] instead, which will always correctly tell you the number of rows. – smci Apr 18 '14 at 12:04
  • 4
    Note that df.count will not return an int when the dataframe is empty (e.g., pd.DataFrame(columns=["Blue","Red").count is not 0) – Marcelo Bielsa Sep 1 '15 at 3:32

15 Answers 15


For a dataframe df, one can use any of the following:

  • len(df.index)
  • df.shape[0]
  • df[df.columns[0]].count() (slowest, but avoids counting NaN values in the first column)

Performance plot

Code to reproduce the plot:

import numpy as np
import pandas as pd
import perfplot

    setup=lambda n: pd.DataFrame(np.arange(n * 3).reshape(n, 3)),
    n_range=[2**k for k in range(25)],
        lambda df: len(df.index),
        lambda df: df.shape[0],
        lambda df: df[df.columns[0]].count(),
    labels=["len(df.index)", "df.shape[0]", "df[df.columns[0]].count()"],
    xlabel="Number of rows",
  • 18
    There's one good reason why to use shape in interactive work, instead of len(df): Trying out different filtering, I often need to know how many items remain. With shape I can see that just by adding .shape after my filtering. With len() the editing of the command-line becomes much more cumbersome, going back and forth. – K.-Michael Aye Feb 25 '14 at 4:51
  • 10
    Won't work for OP, but if you just need to know whether the dataframe is empty, df.empty is the best option. – jtschoonhoven Mar 16 '16 at 21:26
  • 21
    I know it's been a while, but isn't len(df.index) takes 381 nanoseconds, or 0.381 microseconds, df.shape is 3 times slower, taking 1.17 microseconds. did I miss something? @root – T.G. May 22 '17 at 18:34
  • 12
    (3,3) matrix is bad example as it does not show the order of the shape tuple – xaedes Aug 15 '17 at 16:42
  • 7
    How is df.shape[0] faster than len(df) or len(df.columns)? Since 1 ns (nanosecond) = 1000 µs (microsecond), therefore 1.17µs = 1170ns, which means it's roughly 3 times slower than 381ns – itsjef Mar 24 '18 at 3:19

Suppose df is your dataframe then:

count_row = df.shape[0]  # Gives number of rows
count_col = df.shape[1]  # Gives number of columns

Or, more succinctly,

r, c = df.shape
  • 12
    If the data set is large, len (df.index) is significantly faster than df.shape[0] if you need only row count. I tested it. – Sumit Pokhrel Jan 2 '20 at 14:47
  • 1
    Why i do not have shape method on my DataFrame? – Ardalan Shahgholi Oct 6 '20 at 20:00

Use len(df) :-).

__len__() is documented with "Returns length of index".

Timing info, set up the same way as in root's answer:

In [7]: timeit len(df.index)
1000000 loops, best of 3: 248 ns per loop

In [8]: timeit len(df)
1000000 loops, best of 3: 573 ns per loop

Due to one additional function call, it of course correct to say that it is a bit slower than calling len(df.index) directly. But this should not matter in most cases. I find len(df) to be quite readable.


How do I get the row count of a Pandas DataFrame?

This table summarises the different situations in which you'd want to count something in a DataFrame (or Series, for completeness), along with the recommended method(s).

Enter image description here


  1. DataFrame.count returns counts for each column as a Series since the non-null count varies by column.
  2. DataFrameGroupBy.size returns a Series, since all columns in the same group share the same row-count.
  3. DataFrameGroupBy.count returns a DataFrame, since the non-null count could differ across columns in the same group. To get the group-wise non-null count for a specific column, use df.groupby(...)['x'].count() where "x" is the column to count.

#Minimal Code Examples

Below, I show examples of each of the methods described in the table above. First, the setup -

df = pd.DataFrame({
    'A': list('aabbc'), 'B': ['x', 'x', np.nan, 'x', np.nan]})
s = df['B'].copy()


   A    B
0  a    x
1  a    x
2  b  NaN
3  b    x
4  c  NaN


0      x
1      x
2    NaN
3      x
4    NaN
Name: B, dtype: object

Row Count of a DataFrame: len(df), df.shape[0], or len(df.index)

# 5

# 5

# 5

It seems silly to compare the performance of constant time operations, especially when the difference is on the level of "seriously, don't worry about it". But this seems to be a trend with other answers, so I'm doing the same for completeness.

Of the three methods above, len(df.index) (as mentioned in other answers) is the fastest.


  • All the methods above are constant time operations as they are simple attribute lookups.
  • df.shape (similar to ndarray.shape) is an attribute that returns a tuple of (# Rows, # Cols). For example, df.shape returns (8, 2) for the example here.

Column Count of a DataFrame: df.shape[1], len(df.columns)

# 2

# 2

Analogous to len(df.index), len(df.columns) is the faster of the two methods (but takes more characters to type).

Row Count of a Series: len(s), s.size, len(s.index)

# 5

# 5

# 5

s.size and len(s.index) are about the same in terms of speed. But I recommend len(df).

Note size is an attribute, and it returns the number of elements (=count of rows for any Series). DataFrames also define a size attribute which returns the same result as df.shape[0] * df.shape[1].

Non-Null Row Count: DataFrame.count and Series.count

The methods described here only count non-null values (meaning NaNs are ignored).

Calling DataFrame.count will return non-NaN counts for each column:


A    5
B    3
dtype: int64

For Series, use Series.count to similar effect:

# 3

Group-wise Row Count: GroupBy.size

For DataFrames, use DataFrameGroupBy.size to count the number of rows per group.


a    2
b    2
c    1
dtype: int64

Similarly, for Series, you'll use SeriesGroupBy.size.


a    2
b    2
c    1
Name: B, dtype: int64

In both cases, a Series is returned. This makes sense for DataFrames as well since all groups share the same row-count.

Group-wise Non-Null Row Count: GroupBy.count

Similar to above, but use GroupBy.count, not GroupBy.size. Note that size always returns a Series, while count returns a Series if called on a specific column, or else a DataFrame.

The following methods return the same thing:


a    2
b    2
c    1
Name: B, dtype: int64

Meanwhile, for count, we have


a  2
b  1
c  0

...called on the entire GroupBy object, vs.,


a    2
b    1
c    0
Name: B, dtype: int64

Called on a specific column.



Short, clear and clean: use len(df)

len() is your friend, and it can be used for row counts as len(df).

Alternatively, you can access all rows by df.index and all columns by df.columns, and as you can use the len(anyList) for getting the count of list, use len(df.index) for getting the number of rows, and len(df.columns) for the column count.

Or, you can use df.shape which returns the number of rows and columns together. If you want to access the number of rows, only use df.shape[0]. For the number of columns, only use: df.shape[1].


Apart from the previous answers, you can use df.axes to get the tuple with row and column indexes and then use the len() function:

total_rows = len(df.axes[0])
total_cols = len(df.axes[1])
  • 3
    This returns index objects, which may or may not be copies of the original, which is wasteful if you are just discarding them after checking the length. Unless you intend to do anything else with the index, DO NOT USE. – cs95 Mar 30 '19 at 20:13

...building on Jan-Philip Gehrcke's answer.

The reason why len(df) or len(df.index) is faster than df.shape[0]:

Look at the code. df.shape is a @property that runs a DataFrame method calling len twice.

Type:        property
String form: <property object at 0x1127b33c0>
# df.shape.fget
def shape(self):
    Return a tuple representing the dimensionality of the DataFrame.
    return len(self.index), len(self.columns)

And beneath the hood of len(df)

Signature: df.__len__()
    def __len__(self):
        """Returns length of info axis, but here we use the index """
        return len(self.index)
File:      ~/miniconda2/lib/python2.7/site-packages/pandas/core/frame.py
Type:      instancemethod

len(df.index) will be slightly faster than len(df) since it has one less function call, but this is always faster than df.shape[0]

  • The syntax highlighting does not seem quite right. Can you fix it? E.g., is this a mixture of output, code, and annotation (not a rhetorical question)? – Peter Mortensen Feb 8 at 15:22
  • @PeterMortensen This output is from ipython/jupyter. Executing a function name with two question marks and without the parenthesis will show the function definition. ie for function len() you would execute len?? – debo Apr 8 at 4:04

I come to Pandas from an R background, and I see that Pandas is more complicated when it comes to selecting rows or columns.

I had to wrestle with it for a while, and then I found some ways to deal with:

Getting the number of columns:

## Here:
# df is your data.frame
# df.columns returns a string. It contains column's titles of the df.
# Then, "len()" gets the length of it.

Getting the number of rows:

len(df.index) # It's similar.
  • After using Pandas for a while, I think we should go with df.shape. It returns the number of rows and columns respectively. – Catbuilts Oct 29 '18 at 10:16

You can do this also:

Let’s say df is your dataframe. Then df.shape gives you the shape of your dataframe i.e (row,col)

Thus, assign the below command to get the required

 row = df.shape[0], col = df.shape[1]
  • Or you can directly use row, col = df.shape instead if you need to get both at the same them (it's shorter and you do not have to care about indexes). – Nerxis May 17 at 8:46

In case you want to get the row count in the middle of a chained operation, you can use:



row_count = (

This can be useful if you don't want to put a long statement inside a len() function.

You could use __len__() instead but __len__() looks a bit weird.

  • It seems pointless to want to "pipe" this operation because there's nothing else you can pipe this into (it returns an integer). I would much rather count = len(df.reset_index()) than count = df.reset_index().pipe(len). The former is just an attribute lookup without the function call. – cs95 Mar 30 '19 at 20:15

For dataframe df, a printed comma formatted row count used while exploring data:

def nrow(df):



Either of this can do it (df is the name of the DataFrame):

Method 1: Using the len function:

len(df) will give the number of rows in a DataFrame named df.

Method 2: using count function:

df[col].count() will count the number of rows in a given column col.

df.count() will give the number of rows for all the columns.

  • 4
    This is a fine answer, but there are already sufficient answers to this question, so this doesn't really add anything. – John Apr 24 '20 at 18:07

An alternative method to finding out the amount of rows in a dataframe which I think is the most readable variant is pandas.Index.size.

Do note that, as I commented on the accepted answer,

Suspected pandas.Index.size would actually be faster than len(df.index) but timeit on my computer tells me otherwise (~150 ns slower per loop).


I'm not sure if this would work (data could be omitted), but this may work:

*dataframe name*.tails(1)

and then using this, you could find the number of rows by running the code snippet and looking at the row number that was given to you.


Think, the dataset is "data" and name your dataset as " data_fr " and number of rows in the data_fr is "nu_rows"

#import the data frame. Extention could be different as csv,xlsx or etc.
data_fr = pd.read_csv('data.csv')

#print the number of rows
nu_rows = data_fr.shape[0]

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