7

when I use df.show() to view the pyspark dataframe in jupyter notebook

It show me that:

+---+-------+-------+-------+------+-----------+-----+-------------+-----+---------+----------+-----+-----------+-----------+--------+---------+-------+------------+---------+------------+---------+---------------+------------+---------------+---------+------------+
| Id|groupId|matchId|assists|boosts|damageDealt|DBNOs|headshotKills|heals|killPlace|killPoints|kills|killStreaks|longestKill|maxPlace|numGroups|revives|rideDistance|roadKills|swimDistance|teamKills|vehicleDestroys|walkDistance|weaponsAcquired|winPoints|winPlacePerc|
+---+-------+-------+-------+------+-----------+-----+-------------+-----+---------+----------+-----+-----------+-----------+--------+---------+-------+------------+---------+------------+---------+---------------+------------+---------------+---------+------------+
|  0|     24|      0|      0|     5|   247.3000|    2|            0|    4|       17|      1050|    2|          1|    65.3200|      29|       28|      1|    591.3000|        0|      0.0000|        0|              0|    782.4000|              4|     1458|      0.8571|
|  1| 440875|      1|      1|     0|    37.6500|    1|            1|    0|       45|      1072|    1|          1|    13.5500|      26|       23|      0|      0.0000|        0|      0.0000|        0|              0|    119.6000|              3|     1511|      0.0400|
|  2| 878242|      2|      0|     1|    93.7300|    1|            0|    2|       54|      1404|    0|          0|     0.0000|      28|       28|      1|      0.0000|        0|      0.0000|        0|              0|   3248.0000|              5|     1583|      0.7407|
|  3|1319841|      3|      0|     0|    95.8800|    0|            0|    0|       86|      1069|    0|          0|     0.0000|      97|       94|      0|      0.0000|        0|      0.0000|        0|              0|     21.4900|              1|     1489|      0.1146|
|  4|1757883|      4|      0|     1|     0.0000|    0|            0|    1|       58|      1034|    0|          0|     0.0000|      47|  

How can I get a formatted dataframe just like pandas dataframe to view the data more efficiently?

2

3 Answers 3

11

You can use the ability to convert a pyspark dataframe directly to a pandas dataframe. The command for the same would be -

df.limit(10).toPandas()

This should directly yield the result as a pandas dataframe and you just need to have pandas package installed.

0

You have to use the below code

from IPython.display import display
import pandas as pd
import numpy as np

d = {'col1': [1, 2], 'col2': [3, 4]}
df = pd.DataFrame(data=d)

display(df)
4
  • 1
    This does not answer the question. He wants to show a pyspark Dataframe in a formatted way (similar to how a pandas DataFrame can be shown). Note pandas and pyspark DatFrame's are not same!
    – pvy4917
    Dec 11, 2018 at 17:44
  • So the above mentioned code is correct for Pyspark also when he use jupyter notebook Dec 12, 2018 at 11:26
  • Thanks for your anser.But when I use Pyspark Dataframe show(),display doesn't work.
    – sdy b
    Dec 13, 2018 at 3:36
  • This answer works fine. Don't call df.show().display, but (as shown in the answer) instead call display(df). It works for Pandas or Spark DataFrame. Feb 4, 2021 at 11:38
0

As @sat mentioned in their answer you can use:

df.toPandas()

Or better to limit:

df.limit(10).toPandas()
# where 10 is the number of rows

to convert your dataframe into pandas dataframe.

However if you want to see your data in pyspark you can use :

df.show(10,truncate=False)

If you want to see each row of your dataframe individually then use:

df.show(10, vertical=True)

Also, you can find the total number of records with :

df.count()

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.