What is the most efficient way to use groupby and in parallel apply a filter in pandas?

# Use `groupby.transform`

+ boolean indexing

Even though the equivalent syntax in pandas is `groupby.filter`

, it is painfully slow. If performance is important, instead of filtering *during* the groupby operation, it's far better to perform the groupby and filter the dataframe later. Because `groupby.filter`

makes calls to Python functions (e.g. lambda) for each group while `groupby.transform`

calls a Cython-optimized function on the entire dataframe, the latter is much faster if there are a lot of groups.

The point of using `groupby.transform`

is that it returns a dataframe that has the same indexes as the original dataframe filled with the aggregated values. Since its output has the same index, it can be used to filter the original dataframe.

So the equivalent of

```
SELECT * FROM df GROUP BY colA HAVING COUNT(*) > 1
```

is

```
df[df.groupby('colA').transform('size') > 1]
```

and the equivalent of

```
SELECT * FROM df GROUP BY colA HAVING SUM(colB) > 5
```

is

```
df[df.groupby('colA')['colB'].transform('sum') > 5]
```

Anyway, as the following performance graph shows, as the number of groups increase, `groupby.transform`

+ boolean indexing performs much faster than `groupby.filter`

; for example with 10k groups, it is 1000 times faster. In fact, if your dataframe has millions of groups, `groupby.filter`

may not even run while `groupby.transform`

+ boolean indexing will finish the job in reasonable amount of time.

Code used to produce the above graph

```
import perfplot
import pandas as pd
import numpy as np
def groupby_filter(df):
g = df.groupby('A')
return g.filter(lambda x: x['B'].sum() > 5)
def groupby_transform(df):
g = df.groupby('A')
return df[g['B'].transform('sum') > 5]
perfplot.plot(
kernels=[groupby_filter, groupby_transform],
n_range=[2**k for k in range(16)],
setup=lambda n: pd.DataFrame({
'A': np.random.choice(n, size=n, replace=False),
'B': np.random.randint(n, size=n)}),
xlabel='Number of groups'
)
```

`groupby-filter`

. I think the`filter`

is the pandas equivalent of the`having condition`

.