As of August 2017, Pandas DataFame.apply() is unfortunately still limited to working with a single core, meaning that a multi-core machine will waste the majority of its compute-time when you run df.apply(myfunc, axis=1).

How can you use all your cores to run apply on a dataframe in parallel?

10 Answers 10


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())


t_dsk = timeit.Timer(lambda: dask_apply())


t_vec = timeit.Timer(lambda: vectorized())


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.

  • 2
    Great to know, thanks for posting. Can you explain why you chose 30 partitions? Does performance change when changing this value?
    – Andrew L
    Aug 7 '17 at 11:53
  • 4
    @AndrewL I assume that each partition is serviced by a separate process, and with 16 cores I assume that either 16 or 32 processes can run simultaneously. I tried it out, and performance seems to improve up to 32 partitions, but further increases have no beneficial effect. I assume that with a quad-core machine you would want 8 partitions, etc. Note that I did notice some improvement between 16 and 32, so I think you really do want 2x$NUM_PROCESSORS
    – Roko Mijic
    Aug 7 '17 at 12:26
  • 14
    Only thing is The get= keyword has been deprecated. Please use the scheduler= keyword instead with the name of the desired scheduler like 'threads' or 'processes' Aug 10 '18 at 1:56
  • 6
    For dask v0.20.0 and on, use ddata.map_partitions(lambda df: df.apply((lambda row: myfunc(*row)), axis=1)).compute(scheduler='processes'), or one of the other scheduler options. The current code throws "TypeError: The get= keyword has been removed. Please use the scheduler= keyword instead with the name of the desired scheduler like 'threads' or 'processes'"
    – mork
    Jan 20 '19 at 19:15
  • 2
    Make sure that before you do this, the dataframe has no duplicate indexes as it throws ValueError: cannot reindex from a duplicate axis. To go around that, either you should remove duplicated indexes by df = df[~df.index.duplicated()] or reset your indexes by df.reset_index(inplace=True). May 13 '19 at 3:53

You may use the swifter package:

pip install swifter

(Note that you may want to use this in a virtualenv to avoid version conflicts with installed dependencies.)

Swifter works as a plugin for pandas, allowing you to reuse the apply function:

import swifter

def some_function(data):
    return data * 10

data['out'] = data['in'].swifter.apply(some_function)

It will automatically figure out the most efficient way to parallelize the function, no matter if it's vectorized (as in the above example) or not.

More examples and a performance comparison are available on GitHub. Note that the package is under active development, so the API may change.

Also note that this will not work automatically for string columns. When using strings, Swifter will fallback to a “simple” Pandas apply, which will not be parallel. In this case, even forcing it to use dask will not create performance improvements, and you would be better off just splitting your dataset manually and parallelizing using multiprocessing.

  • 2
    Our of pure curiosity, is there a way to limit number of cores it uses when doing parallel apply? I have a shared server so if I grab all 32 cores no one will be happy. Sep 5 '18 at 18:12
  • 1
    @MaximHaytovich I don't know. Swifter uses dask in the background, so maybe it respects these settings: stackoverflow.com/a/40633117/435093 — otherwise I'd recommend opening an issue on GitHub. The author is very responsive.
    – slhck
    Sep 5 '18 at 18:19
  • @slhck thanks! Will dig it a bit more. It seem to not work on windows server anyway - just hangs not doing anything on toy task Sep 5 '18 at 18:48
  • 1
    +1 for Swifter. Not only does it parallelize using the best available method, it also integrates progress bars via tqdm.
    – scribu
    Jul 22 '19 at 10:49
  • 3
    For strings, just add allow_dask_on_strings(enable=True) like this: df.swifter.allow_dask_on_strings(enable=True).apply(some_function) Source: github.com/jmcarpenter2/swifter/issues/45 Jul 17 '20 at 16:22

you can try pandarallel instead: A simple and efficient tool to parallelize your pandas operations on all your CPUs (On Linux & macOS)

  • Parallelization has a cost (instanciating new processes, sending data via shared memory, etc ...), so parallelization is efficiant only if the amount of calculation to parallelize is high enough. For very little amount of data, using parallezation not always worth it.
  • Functions applied should NOT be lambda functions.
from pandarallel import pandarallel
from math import sin


df.parallel_apply(lambda x: sin(x**2), axis=1)

def func(x):
    return sin(x**2)

df.parallel_apply(func, axis=1)

see https://github.com/nalepae/pandarallel

  • hello, I cant resolve one issue, using pandarallel there is an Error: AttributeError: Can't pickle local object 'prepare_worker.<locals>.closure.<locals>.wrapper' . Can u help me with this?
    – Alex Cam
    Apr 27 '20 at 10:36
  • @Alex Sry I'm not the developer of that module. What's your codes look like? You can try declare your "inside functions" as global ? (just guess) May 8 '20 at 10:01
  • @AlexCam Your function should be defined outside other function so python can pickle it for multiprocessing
    – Kenan
    Jun 15 '20 at 4:32
  • 1
    @G_KOBELIEF With Python >3.6 we can use lambda function with pandaparallel
    – learner
    Jun 18 '20 at 5:13

If you want to stay in native python:

import multiprocessing as mp

with mp.Pool(mp.cpu_count()) as pool:
    df['newcol'] = pool.map(f, df['col'])

will apply function f in a parallel fashion to column col of dataframe df

  • Following an approach like this I got a ValueError: Length of values does not match length of index from __setitem__ in pandas/core/frame.py. Not sure if I've done something wrong, or if assigning to df['newcol'] is not threadsafe.
    – Rattle
    Sep 18 '19 at 8:35
  • 2
    You can write the pool.map to an intermediary temp_result list to allow checking if length matches with the df, and then doing a df['newcol'] = temp_result? Sep 18 '19 at 11:10
  • you mean creating the new column? what would you use? Apr 17 '20 at 21:18
  • yes, assigning the result of the map to the new column of the dataframe. Doesn't map return a list of the result of each chunk sent to the function f? So what happens when you assign that to the column 'newcol? Using Pandas and Python 3
    – Mina
    Apr 20 '20 at 15:04
  • It actually works really smooth! Did you try it? It creates a list of the same length of the df, same order as what was sent. It literally does c2 = f(c1) in a parallel fashion. There is no simpler way to multi-process in python. Performance-wise it seems that Ray can do good things as well (towardsdatascience.com/…) but it's not as mature and installation doesn't always go smoothly in my experience Apr 20 '20 at 20:13

To use all (physical or logical) cores, you could try mapply as an alternative to swifter and pandarallel.

You can set the amount of cores (and the chunking behaviour) upon init:

import pandas as pd
import mapply



df.mapply(myfunc, axis=1)

By default (n_workers=-1), the package uses all physical CPUs available on the system. If your system uses hyper-threading (usually twice the amount of physical CPUs would show up), mapply will spawn one extra worker to prioritise the multiprocessing pool over other processes on the system.

Depending on your definition of all your cores, you could also use all logical cores instead (beware that like this the CPU-bound processes will be fighting for physical CPUs, which might slow down your operation):

import multiprocessing
n_workers = multiprocessing.cpu_count()

# or more explicit
import psutil
n_workers = psutil.cpu_count(logical=True)

Just want to give an update answer for Dask

import dask.dataframe as dd

def your_func(row):
  #do something
  return row

ddf = dd.from_pandas(df, npartitions=30) # find your own number of partitions
ddf_update = ddf.apply(your_func, axis=1).compute()

On my 100,000 records, without Dask:

CPU times: user 6min 32s, sys: 100 ms, total: 6min 32s Wall time: 6min 32s

With Dask:

CPU times: user 5.19 s, sys: 784 ms, total: 5.98 s Wall time: 1min 3s


Here is an example of sklearn base transformer, in which pandas apply is parallelized

import multiprocessing as mp
from sklearn.base import TransformerMixin, BaseEstimator

class ParllelTransformer(BaseEstimator, TransformerMixin):
    def __init__(self,
        n_jobs - parallel jobs to run
        self.variety = variety
        self.user_abbrevs = user_abbrevs
        self.n_jobs = n_jobs
    def fit(self, X, y=None):
        return self
    def transform(self, X, *_):
        X_copy = X.copy()
        cores = mp.cpu_count()
        partitions = 1

        if self.n_jobs <= -1:
            partitions = cores
        elif self.n_jobs <= 0:
            partitions = 1
            partitions = min(self.n_jobs, cores)

        if partitions == 1:
            # transform sequentially
            return X_copy.apply(self._transform_one)

        # splitting data into batches
        data_split = np.array_split(X_copy, partitions)

        pool = mp.Pool(cores)

        # Here reduce function - concationation of transformed batches
        data = pd.concat(
            pool.map(self._preprocess_part, data_split)

        return data
    def _transform_part(self, df_part):
        return df_part.apply(self._transform_one)
    def _transform_one(self, line):
        # some kind of transformations here
        return line

for more info see https://towardsdatascience.com/4-easy-steps-to-improve-your-machine-learning-code-performance-88a0b0eeffa8

  • What is: self._preprocess_part? I only find _transform_part
    – Phun
    May 18 '21 at 9:28

Here another one using Joblib and some helper code from scikit-learn. Lightweight (if you already have scikit-learn), good if you prefer more control over what it is doing since joblib is easily hackable.

from joblib import parallel_backend, Parallel, delayed, effective_n_jobs
from sklearn.utils import gen_even_slices
from sklearn.utils.validation import _num_samples

def parallel_apply(df, func, n_jobs= -1, **kwargs):
    """ Pandas apply in parallel using joblib. 
    Uses sklearn.utils to partition input evenly.
        df: Pandas DataFrame, Series, or any other object that supports slicing and apply.
        func: Callable to apply
        n_jobs: Desired number of workers. Default value -1 means use all available cores.
        **kwargs: Any additional parameters will be supplied to the apply function
        Same as for normal Pandas DataFrame.apply()
    if effective_n_jobs(n_jobs) == 1:
        return df.apply(func, **kwargs)
        ret = Parallel(n_jobs=n_jobs)(
            delayed(type(df).apply)(df[s], func, **kwargs)
            for s in gen_even_slices(_num_samples(df), effective_n_jobs(n_jobs)))
        return pd.concat(ret)

Usage: result = parallel_apply(my_dataframe, my_func)


Since the question was "How can you use all your cores to run apply on a dataframe in parallel?", the answer can also be with modin. You can run all cores in parallel, though the real time is worse.

See https://github.com/modin-project/modin . It runs of top of dask or ray. They say "Modin is a DataFrame designed for datasets from 1MB to 1TB+." I tried: pip3 install "modin"[ray]". Modin vs pandas was - 12 sec on six cores vs. 6 sec.


Instead of

df["new"] = df["old"].map(fun)


from joblib import Parallel, delayed
df["new"] = Parallel(n_jobs=-1, verbose=10)(delayed(fun)(i) for i in df["old"])

To me this is a slight improvement over

import multiprocessing as mp
with mp.Pool(mp.cpu_count()) as pool:
    df["new"] = pool.map(fun, df["old"])

as you get a progress indication and automatic batching if the jobs are very small.

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