The simplest way is to use Dask's map_partitions. You need these imports (you will need to `pip install dask`

):

```
import pandas as pd
import dask.dataframe as dd
from dask.multiprocessing import get
```

and the syntax is

```
data = <your_pandas_dataframe>
ddata = dd.from_pandas(data, npartitions=30)
def myfunc(x,y,z, ...): return <whatever>
res = ddata.map_partitions(lambda df: df.apply((lambda row: myfunc(*row)), axis=1)).compute(get=get)
```

(I believe that 30 is a suitable number of partitions if you have 16 cores). Just for completeness, I timed the difference on my machine (16 cores):

```
data = pd.DataFrame()
data['col1'] = np.random.normal(size = 1500000)
data['col2'] = np.random.normal(size = 1500000)
ddata = dd.from_pandas(data, npartitions=30)
def myfunc(x,y): return y*(x**2+1)
def apply_myfunc_to_DF(df): return df.apply((lambda row: myfunc(*row)), axis=1)
def pandas_apply(): return apply_myfunc_to_DF(data)
def dask_apply(): return ddata.map_partitions(apply_myfunc_to_DF).compute(get=get)
def vectorized(): return myfunc(data['col1'], data['col2'] )
t_pds = timeit.Timer(lambda: pandas_apply())
print(t_pds.timeit(number=1))
```

28.16970546543598

```
t_dsk = timeit.Timer(lambda: dask_apply())
print(t_dsk.timeit(number=1))
```

2.708152851089835

```
t_vec = timeit.Timer(lambda: vectorized())
print(t_vec.timeit(number=1))
```

0.010668013244867325

Giving a **factor of 10 speedup** going from pandas apply to dask apply on partitions. Of course, if you have a function you can vectorize, you should - in this case the function (`y*(x**2+1)`

) is trivially vectorized, but there are plenty of things that are impossible to vectorize.