I'm trying to show a code block with sample output to clarify my question. I know how to add a code block (indenting with 4 space) but I can't figure out how to show the output.

import pandas as pd
df = pd.DataFrame({'item_id':[1,2,1,1,2], 
                'shop_id':['S1', 'S1', 'S1', 'S2', 'S2'], 
                'price':[10, 20, 10, 12, 18]})

In a Jupyter notebook, the above will print the dataframe and I have seen other posts displaying results. How can do it?


  1. I have gone through this post which suggests that I can copy and paste the output from Jupyter but that didn't work.
  2. I have tried to save my notebook as HTML and then insert the html snippet here. I thought when I run it it would display the output but it shows the entire html code instead.
  3. Take a screenshot of my notebook and insert a link to it here. But I don't think this is the proper way to ask a question.

Please see example of what I wanted to post:

Several sets of inputs and outputs where the input is a code block and the output is tabular data.


Open a terminal or command-line window, start the ipython interpreter, and run the same commands that you ran in your example. This will give you the following pretty formatted output which you can copy/paste as plain text.

To format a block of text as code, select the block of code to be formatted with the mouse and click the pair of curly brackets {} in the Stack Overflow markdown editor to format the selected text as a code block. To highlight a block of text as Python code, precede the block of Python code with the following HTML comment followed by a blank space: <!-- language: python -->

$ ipython
Python 2.7.15rc1  
Type "copyright", "credits" or "license" for more information.

IPython 5.5.0 -- An enhanced Interactive Python.
?         -> Introduction and overview of IPython's features.
%quickref -> Quick reference.
help      -> Python's own help system.
object?   -> Details about 'object', use 'object??' for extra details.

In [1]: import pandas as pd
   ...: df1 = pd.DataFrame({'item_id':[1,2,1,1,2], 
   ...:                 'shop_id':['S1', 'S1', 'S1', 'S2', 'S2'], 
   ...:                 'price':[10, 20, 10, 12, 18]})
   ...: df1
   item_id  price shop_id
0        1     10      S1
1        2     20      S1
2        1     10      S1
3        1     12      S2
4        2     18      S2

In [2]: df2 = pd.DataFrame({'shop_id':['S1', 'S2'],
   ...:                     'shop_name':['shop1', 'shop2']})  
   ...: df2
  shop_id shop_name
0      S1     shop1
1      S2     shop2

In [3]: shop_map = {shop_id:shop_name for shop_id,shop_name in zip(df2.shop_id, 
   ...: df2.shop_name)}
   ...: shop_map
Out[3]: {'S1': 'shop1', 'S2': 'shop2'}

In [4]: df1['shop_name'] = df1['shop_id'].apply(lambda shop_id: shop_map[shop_id
   ...: ])
   ...: df1
   item_id  price shop_id shop_name
0        1     10      S1     shop1
1        2     20      S1     shop1
2        1     10      S1     shop1
3        1     12      S2     shop2
4        2     18      S2     shop2

In [5]:
  • 1
    Thank you so much Karel. This works! – Valery Marcel Dec 6 '18 at 2:53
  • @ValeryMarcel If this answered your question please click the gray checkmark on the left side of this answer to mark it as accepted. This will change the checkmark's color from gray to green. – karel Dec 6 '18 at 2:55

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