166

I'm trying to filter a PySpark dataframe that has None as a row value:

df.select('dt_mvmt').distinct().collect()

[Row(dt_mvmt=u'2016-03-27'),
 Row(dt_mvmt=u'2016-03-28'),
 Row(dt_mvmt=u'2016-03-29'),
 Row(dt_mvmt=None),
 Row(dt_mvmt=u'2016-03-30'),
 Row(dt_mvmt=u'2016-03-31')]

and I can filter correctly with an string value:

df[df.dt_mvmt == '2016-03-31']
# some results here

but this fails:

df[df.dt_mvmt == None].count()
0
df[df.dt_mvmt != None].count()
0

But there are definitely values on each category. What's going on?

2
  • 1
    You actually want to filter rows with null values, not a column with None values. The title could be misleading.
    – Atorpat
    Dec 7, 2019 at 14:24
  • In a nutshell, a comparison involving null (or None, in this case) always returns false. In particular, the comparison (null == null) returns false. Also, the comparison (None == None) returns false. Jun 18, 2020 at 7:31

10 Answers 10

304

You can use Column.isNull / Column.isNotNull:

df.where(col("dt_mvmt").isNull())

df.where(col("dt_mvmt").isNotNull())

If you want to simply drop NULL values you can use na.drop with subset argument:

df.na.drop(subset=["dt_mvmt"])

Equality based comparisons with NULL won't work because in SQL NULL is undefined so any attempt to compare it with another value returns NULL:

sqlContext.sql("SELECT NULL = NULL").show()
## +-------------+
## |(NULL = NULL)|
## +-------------+
## |         null|
## +-------------+


sqlContext.sql("SELECT NULL != NULL").show()
## +-------------------+
## |(NOT (NULL = NULL))|
## +-------------------+
## |               null|
## +-------------------+

The only valid method to compare value with NULL is IS / IS NOT which are equivalent to the isNull / isNotNull method calls.

3
  • 2
    Awesome, thanks. I thought that these filters on PySpark dataframes would be more "pythonic", but alas, they're not. I'm thinking on asking the devs about this.
    – Ivan
    May 17, 2016 at 12:25
  • 1
    Actually it is quite Pythonic. You should never check __eq__ with None ;) And is wouldn't work because it doesn't behave the same way.
    – zero323
    May 17, 2016 at 12:37
  • 2
    Strangely this only works for string columns... It seems like df.filter("dt_mvmt is not NULL") handles both. Aug 20, 2017 at 9:14
46

Try to just use isNotNull function.

df.filter(df.dt_mvmt.isNotNull()).count()
0
22

To obtain entries whose values in the dt_mvmt column are not null we have

df.filter("dt_mvmt is not NULL")

and for entries which are null we have

df.filter("dt_mvmt is NULL")
8

There are multiple ways you can remove/filter the null values from a column in DataFrame.

Lets create a simple DataFrame with below code:

date = ['2016-03-27','2016-03-28','2016-03-29', None, '2016-03-30','2016-03-31']
df = spark.createDataFrame(date, StringType())

Now you can try one of the below approach to filter out the null values.

# Approach - 1
df.filter("value is not null").show()

# Approach - 2
df.filter(col("value").isNotNull()).show()

# Approach - 3
df.filter(df["value"].isNotNull()).show()

# Approach - 4
df.filter(df.value.isNotNull()).show()

# Approach - 5
df.na.drop(subset=["value"]).show()

# Approach - 6
df.dropna(subset=["value"]).show()

# Note: You can also use where function instead of a filter.

You can also check the section "Working with NULL Values" on my blog for more information.

I hope it helps.

7

isNull()/isNotNull() will return the respective rows which have dt_mvmt as Null or !Null.

method_1 = df.filter(df['dt_mvmt'].isNotNull()).count()
method_2 = df.filter(df.dt_mvmt.isNotNull()).count()

Both will return the same result

3

if column = None

COLUMN_OLD_VALUE
----------------
None
1
None
100
20
------------------

Use create a temptable on data frame:

sqlContext.sql("select * from tempTable where column_old_value='None' ").show()

So use : column_old_value='None'

2

If you want to keep with the Pandas syntex this worked for me.

df = df[df.dt_mvmt.isNotNull()]
2

None/Null is a data type of the class NoneType in PySpark/Python so, below will not work as you are trying to compare NoneType object with the string object

Wrong way of filreting
df[df.dt_mvmt == None].count()

0

df[df.dt_mvmt != None].count()

0

correct

df=df.where(col("dt_mvmt").isNotNull())

returns all records with dt_mvmt as None/Null

1

PySpark provides various filtering options based on arithmetic, logical and other conditions. Presence of NULL values can hamper further processes. Removing them or statistically imputing them could be a choice.

Below set of code can be considered:

# Dataset is df
# Column name is dt_mvmt
# Before filtering make sure you have the right count of the dataset
df.count() # Some number

# Filter here
df = df.filter(df.dt_mvmt.isNotNull())

# Check the count to ensure there are NULL values present (This is important when dealing with large dataset)
df.count() # Count should be reduced if NULL values are present
1

If you want to filter out records having None value in column then see below example:

df=spark.createDataFrame([[123,"abc"],[234,"fre"],[345,None]],["a","b"])

Now filter out null value records:

df=df.filter(df.b.isNotNull())

df.show()

If you want to remove those records from DF then see below:

df1=df.na.drop(subset=['b'])

df1.show()

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