Since Spark 2.3 you can use `pandas_udf`

. `GROUPED_MAP`

takes `Callable[[pandas.DataFrame], pandas.DataFrame]`

or in other words a function which maps from Pandas `DataFrame`

of the same shape as the input, to the output `DataFrame`

.

For example if data looks like this:

```
df = spark.createDataFrame(
[("a", 1, 0), ("a", -1, 42), ("b", 3, -1), ("b", 10, -2)],
("key", "value1", "value2")
)
```

and you want to compute average value of pairwise min between `value1`

`value2`

, you have to define output schema:

```
from pyspark.sql.types import *
schema = StructType([
StructField("key", StringType()),
StructField("avg_min", DoubleType())
])
```

`pandas_udf`

:

```
import pandas as pd
from pyspark.sql.functions import pandas_udf
from pyspark.sql.functions import PandasUDFType
@pandas_udf(schema, functionType=PandasUDFType.GROUPED_MAP)
def g(df):
result = pd.DataFrame(df.groupby(df.key).apply(
lambda x: x.loc[:, ["value1", "value2"]].min(axis=1).mean()
))
result.reset_index(inplace=True, drop=False)
return result
```

and apply it:

```
df.groupby("key").apply(g).show()
```

```
+---+-------+
|key|avg_min|
+---+-------+
| b| -1.5|
| a| -0.5|
+---+-------+
```

Excluding schema definition and decorator, your current Pandas code can be applied as-is.

Since Spark 2.4.0 there is also `GROUPED_AGG`

variant, which takes `Callable[[pandas.Series, ...], T]`

, where `T`

is a primitive scalar:

```
import numpy as np
@pandas_udf(DoubleType(), functionType=PandasUDFType.GROUPED_AGG)
def f(x, y):
return np.minimum(x, y).mean()
```

which can be used with standard `group_by`

/ `agg`

construct:

```
df.groupBy("key").agg(f("value1", "value2").alias("avg_min")).show()
```

```
+---+-------+
|key|avg_min|
+---+-------+
| b| -1.5|
| a| -0.5|
+---+-------+
```

Please note that neither `GROUPED_MAP`

nor `GROUPPED_AGG`

`pandas_udf`

behave the same way as `UserDefinedAggregateFunction`

or `Aggregator`

, and it is closer to `groupByKey`

or window functions with unbounded frame. Data is shuffled first, and only after that, UDF is applied.

For optimized execution you should implement Scala `UserDefinedAggregateFunction`

and add Python wrapper.

See also User defined function to be applied to Window in PySpark?