# Pandas Sorting 101

`sort`

has been replaced in v0.20 by `DataFrame.sort_values`

and `DataFrame.sort_index`

. Aside from this, we also have `argsort`

.

Here are some common use cases in sorting, and how to solve them using the sorting functions in the current API. First, the setup.

```
# Setup
np.random.seed(0)
df = pd.DataFrame({'A': list('accab'), 'B': np.random.choice(10, 5)})
df
A B
0 a 7
1 c 9
2 c 3
3 a 5
4 b 2
```

**Sort by Single Column**

For example, to sort `df`

by column "A", use `sort_values`

with a single column name:

```
df.sort_values(by='A')
A B
0 a 7
3 a 5
4 b 2
1 c 9
2 c 3
```

If you need a fresh RangeIndex, use `DataFrame.reset_index`

.

**Sort by Multiple Columns**

For example, to sort by *both* col "A" and "B" in `df`

, you can pass a list to `sort_values`

:

```
df.sort_values(by=['A', 'B'])
A B
3 a 5
0 a 7
4 b 2
2 c 3
1 c 9
```

**Sort By DataFrame Index**

```
df2 = df.sample(frac=1)
df2
A B
1 c 9
0 a 7
2 c 3
3 a 5
4 b 2
```

You can do this using `sort_index`

:

```
df2.sort_index()
A B
0 a 7
1 c 9
2 c 3
3 a 5
4 b 2
df.equals(df2)
# False
df.equals(df2.sort_index())
# True
```

Here are some comparable methods with their performance:

```
%timeit df2.sort_index()
%timeit df2.iloc[df2.index.argsort()]
%timeit df2.reindex(np.sort(df2.index))
605 µs ± 13.6 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
610 µs ± 24.2 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
581 µs ± 7.63 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
```

**Sort by List of Indices**

For example,

```
idx = df2.index.argsort()
idx
# array([0, 7, 2, 3, 9, 4, 5, 6, 8, 1])
```

This "sorting" problem is actually a simple indexing problem. Just passing integer labels to `iloc`

will do.

```
df.iloc[idx]
A B
1 c 9
0 a 7
2 c 3
3 a 5
4 b 2
```