# 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).

**Footnotes**

`DataFrame.count`

returns counts for each column as a `Series`

since the non-null count varies by column.
`DataFrameGroupBy.size`

returns a `Series`

, since all columns in the same group share the same row-count.
`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()
df
A B
0 a x
1 a x
2 b NaN
3 b x
4 c NaN
s
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)`

```
len(df)
# 5
df.shape[0]
# 5
len(df.index)
# 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.

**Note**

- 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)`

```
df.shape[1]
# 2
len(df.columns)
# 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)`

```
len(s)
# 5
s.size
# 5
len(s.index)
# 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:

```
df.count()
A 5
B 3
dtype: int64
```

For Series, use `Series.count`

to similar effect:

```
s.count()
# 3
```

### Group-wise Row Count: `GroupBy.size`

For `DataFrames`

, use `DataFrameGroupBy.size`

to count the number of rows per group.

```
df.groupby('A').size()
A
a 2
b 2
c 1
dtype: int64
```

Similarly, for `Series`

, you'll use `SeriesGroupBy.size`

.

```
s.groupby(df.A).size()
A
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:

```
df.groupby('A')['B'].size()
df.groupby('A').size()
A
a 2
b 2
c 1
Name: B, dtype: int64
```

Meanwhile, for `count`

, we have

```
df.groupby('A').count()
B
A
a 2
b 1
c 0
```

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

```
df.groupby('A')['B'].count()
A
a 2
b 1
c 0
Name: B, dtype: int64
```

Called on a specific column.

`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