What is the best way to create a zero-filled pandas data frame of a given size?

I have used:

zero_data = np.zeros(shape=(len(data),len(feature_list)))
d = pd.DataFrame(zero_data, columns=feature_list)

Is there a better way to do it?

  • 1
    No, I can't think of any substantial improvement on that.
    – Dan Allan
    Apr 9, 2014 at 13:18
  • I am getting a Memory Error on np.zeros, as the data is a big set. Any hints on what I can do? I got no other output apart from "MemoryError". I have 100GB of RAM and the data is just 20GB but still fails. No idea how to debug it, 64bit ubuntu server. I googled for a bit but everyone says - divide in to chunks, but this data can't be divided.
    – niedakh
    Apr 9, 2014 at 13:26
  • 1
    Can you just work with data? Why do you need to create another structure to hold it? Apr 9, 2014 at 14:24

6 Answers 6


You can try this:

d = pd.DataFrame(0, index=np.arange(len(data)), columns=feature_list)
  • 2
    Testing this I find %timeit temp = np.zeros((10, 11)); d = pd.DataFrame(temp, columns = ['col1', 'col2',...'col11']) takes 156 us. But %timeit d = pd.DataFrame(0, index = np.arange(10), columns = ['col1', 'col2',...'col11']) takes 171 us. I'm surprised it's not any faster.
    – emschorsch
    Sep 24, 2015 at 14:17
  • 4
    Note that you may run into int/float issue if you will be doing something like d.set_value(params) after initializing d to contain 0's. An easy fix is: d = pd.DataFrame(0.0, index=np.arange(len(data)), columns=feature_list).
    – ximiki
    Aug 29, 2017 at 21:03

It's best to do this with numpy in my opinion

import numpy as np
import pandas as pd
d = pd.DataFrame(np.zeros((N_rows, N_cols)))
  • 1
    When I did it this way, I could not alter the "0" values. TypeError: 'numpy.float64' object does not support item assignment
    – RightmireM
    Jan 16, 2018 at 12:48
  • @RightmireM How exactly are you trying to alter them? You are correct, the datatype is np.float64
    – Alex
    Jan 16, 2018 at 17:41

Similar to @Shravan, but without the use of numpy:

  height = 10
  width = 20
  df_0 = pd.DataFrame(0, index=range(height), columns=range(width))

Then you can do whatever you want with it:

post_instantiation_fcn = lambda x: str(x)
df_ready_for_whatever = df_0.applymap(post_instantiation_fcn)

If you would like the new data frame to have the same index and columns as an existing data frame, you can just multiply the existing data frame by zero:

df_zeros = df * 0

If the existing data frame contains NaNs or non-numeric values you can instead apply a function to each cell that will just return 0:

df_zeros = df.applymap(lambda x: 0)
  • 3
    Be aware that you will get NaNs instead of zeros wherever df contains NaNs.
    – kadee
    May 15, 2020 at 11:48

Assuming having a template DataFrame, which one would like to copy with zero values filled here...

If you have no NaNs in your data set, multiplying by zero can be significantly faster:

In [19]: columns = ["col{}".format(i) for i in xrange(3000)]                                                                                       

In [20]: indices = xrange(2000)

In [21]: orig_df = pd.DataFrame(42.0, index=indices, columns=columns)

In [22]: %timeit d = pd.DataFrame(np.zeros_like(orig_df), index=orig_df.index, columns=orig_df.columns)
100 loops, best of 3: 12.6 ms per loop

In [23]: %timeit d = orig_df * 0.0
100 loops, best of 3: 7.17 ms per loop

Improvement depends on DataFrame size, but never found it slower.

And just for the heck of it:

In [24]: %timeit d = orig_df * 0.0 + 1.0
100 loops, best of 3: 13.6 ms per loop

In [25]: %timeit d = pd.eval('orig_df * 0.0 + 1.0')
100 loops, best of 3: 8.36 ms per loop


In [24]: %timeit d = orig_df.copy()
10 loops, best of 3: 24 ms per loop


Assuming you have a frame using float64, this will be the fastest by a huge margin! It is also able to generate any value by replacing 0.0 to the desired fill number.

In [23]: %timeit d = pd.eval('orig_df > 1.7976931348623157e+308 + 0.0')
100 loops, best of 3: 3.68 ms per loop

Depending on taste, one can externally define nan, and do a general solution, irrespective of the particular float type:

In [39]: nan = np.nan
In [40]: %timeit d = pd.eval('orig_df > nan + 0.0')
100 loops, best of 3: 4.39 ms per loop
  • 1
    This is definitely the most comprehensive answer on timing, although for the OP it seems that memory requirements were the issue and not speed... By the way, on my system the first two suggestion you wrote give the same timing (Pandas 0.20.3), so perhaps there have been some changes.
    – Moot
    Aug 9, 2017 at 23:30

If you already have a dataframe, this is the fastest way:

In [1]: columns = ["col{}".format(i) for i in range(10)]
In [2]: orig_df = pd.DataFrame(np.ones((10, 10)), columns=columns)
In [3]: %timeit d = pd.DataFrame(np.zeros_like(orig_df), index=orig_df.index, columns=orig_df.columns)
10000 loops, best of 3: 60.2 µs per loop

Compare to:

In [4]: %timeit d = pd.DataFrame(0, index = np.arange(10), columns=columns)
10000 loops, best of 3: 110 µs per loop

In [5]: temp = np.zeros((10, 10))
In [6]: %timeit d = pd.DataFrame(temp, columns=columns)
10000 loops, best of 3: 95.7 µs per loop

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