48

I want to show all columns in a dataframe in a Jupyter Notebook. Jupyter shows some of the columns and adds dots to the last columns like in the following picture:

Juputer Screenshot

How can I display all columns?

76

Try the display max_columns setting as follows:

import pandas as pd
from IPython.display import display

df = pd.read_csv("some_data.csv")
pd.options.display.max_columns = None
display(df)

Edit: Pandas 0.11.0 backwards

This is deprecated but in versions of Pandas older than 0.11.0 the max_columns setting is specified as follows:

pd.set_printoptions(max_columns=500)
  • 2
    It did not work for me, is this python 3? – rsc05 Apr 15 '18 at 9:05
  • Should work unless you have a very old version of Pandas. I have updated the answer... – Isma Apr 15 '18 at 9:31
  • 3
    Can't believe this is the way to do it! – information_interchange May 5 '18 at 3:57
  • 1
    Awesome, thank you~ – StackG Mar 19 at 9:30
14

I know this question is a little old but the following worked for me in a Jupyter Notebook running pandas 0.22.0 and Python 3:

import pandas as pd
pd.set_option('display.max_columns', <number of columns>)

You can do the same for the rows too:

pd.set_option('display.max_rows', <number of rows>)

This saves importing IPython, and there are more options in the pandas.set_option documentation: https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.set_option.html

6

Python 3.x for large (but not too large) DataFrames

Maybe because I have an older version of pandas but on Jupyter notebook this work for me

import pandas as pd
from IPython.core.display import HTML

df=pd.read_pickle('Data1')
display(HTML(df.to_html()))
  • Tried this but it ruined my jupyter session going out of memory. My PC has SSD and 8 GB RAM memory... – FLBKernel May 28 at 15:22
  • @FLBKernel it has not done this to me, maybe your Dataframe is much larger than mine. What was your way out? Did you try another method and worked for you? if so share your knowledge. Thanks. – rsc05 May 29 at 9:47
  • I haven't found any method yet, but I will let you know as soon as I get to solve this problem. And yes, my Dataframe was probably larger so lets point out that this is not recomendable for large Dataframes – FLBKernel May 29 at 10:50
  • 1
    @FLBKernel My data frame was also large. But I did not know to what extent large it can be. I will point it out. Thanks! – rsc05 May 30 at 11:03
  • Mine has 107.763 rows and 15 columns. We can establish -maybe- that more than about 100k rows and 15 columns this answer is not recomendable. I like the "large (but not too large)" title though :) – FLBKernel May 30 at 11:37

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.