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python - Differences between null and NaN in spark? How to deal with it?

In my DataFrame, there are columns including values of null and NaN respectively, such as:

df = spark.createDataFrame([(1, float('nan')), (None, 1.0)], ("a", "b"))
df.show()

+----+---+
|   a|  b|
+----+---+
|   1|NaN|
|null|1.0|
+----+---+

Are there any difference between those? How can they be dealt with?

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null values represents "no value" or "nothing", it's not even an empty string or zero. It can be used to represent that nothing useful exists.

NaN stands for "Not a Number", it's usually the result of a mathematical operation that doesn't make sense, e.g. 0.0/0.0.

One possible way to handle null values is to remove them with:

df.na.drop()

Or you can change them to an actual value (here I used 0) with:

df.na.fill(0)

Another way would be to select the rows where a specific column is null for further processing:

df.where(col("a").isNull())
df.where(col("a").isNotNull())

Rows with NaN can also be selected using the equivalent method:

from pyspark.sql.functions import isnan
df.where(isnan(col("a")))

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