23

I have the following dataset and its contain some null values, need to replace the null value using fillna in spark.

DataFrame:

df = spark.read.format("com.databricks.spark.csv").option("header‌​","true").load("/sam‌​ple.csv")

>>> df.printSchema();
root
 |-- Age: string (nullable = true)
 |-- Height: string (nullable = true)
 |-- Name: string (nullable = true)

>>> df.show()
+---+------+-----+
|Age|Height| Name|
+---+------+-----+
| 10|    80|Alice|
|  5|  null|  Bob|
| 50|  null|  Tom|
| 50|  null| null|
+---+------+-----+

>>> df.na.fill(10).show()

when i'll give the na values it dosen't changed the same dataframe appeared again.

+---+------+-----+
|Age|Height| Name|
+---+------+-----+
| 10|    80|Alice|
|  5|  null|  Bob|
| 50|  null|  Tom|
| 50|  null| null|
+---+------+-----+

tried create a new dataframe and store the fill values in dataframe but the result showing like unchanged.

>>> df2 = df.na.fill(10)

how to replace the null values? please give me the possible ways by using fill na. Thanks in Advance.

2
  • Is there any rules for replacement ? e.g Is replacing nulls in the Height column different than the Name column ?
    – eliasah
    Nov 3, 2016 at 13:04
  • 1
    In my case the null value not replaced, if the rule applied or else not specified the rule. the basic fill operation not working properly. checked with the different datasets. Nov 3, 2016 at 13:18

2 Answers 2

37

It seems that your Height column is not numeric. When you call df.na.fill(10) spark replaces only nulls with column that match type of 10, which are numeric columns.

If Height column need to be string, you can try df.na.fill('10').show(), otherwise casting to IntegerType() is neccessary.

6
  • 1
    df.na.fill('10').show() I'll tried with this code, but not working properly. How can i casting to int any examples? Nov 3, 2016 at 8:50
  • here you can find documentation for casting dataframe columns: spark.apache.org/docs/latest/api/python/… - the 'int' type or IntegerType() is valid type for storing numbers.
    – Mariusz
    Nov 3, 2016 at 9:01
  • @Marisuz thanks for the info it's working. now i have a doubt can i directly fill the string like df.na.fill("sample") like this, instead of giving condition df.na.fill({'age': 50, 'name': 'sample'}). Nov 10, 2016 at 7:02
  • Yes, sure. Take a look at documentation.
    – Mariusz
    Nov 10, 2016 at 10:26
  • I'll checked with the documentation but i don't found anything for my case. instead of conditions there is any possible ways? Nov 10, 2016 at 11:18
12

You can also provide a specific default value for each column if you prefer.

df.na.fill({'Height': '10', 'Name': 'Bob'})

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