Spark provides a special `NULL`

safe equality operator:

```
numbersDf
.join(lettersDf, numbersDf("numbers") <=> lettersDf("numbers"))
.drop(lettersDf("numbers"))
```

```
+-------+-------+
|numbers|letters|
+-------+-------+
| 123| abc|
| 456| def|
| null| zzz|
| | hhh|
+-------+-------+
```

Be careful not to use it with Spark 1.5 or earlier. Prior to Spark 1.6 it required a Cartesian product (SPARK-11111 - *Fast null-safe join*).

In **Spark 2.3.0** or later you can use `Column.eqNullSafe`

in **PySpark**:

```
numbers_df = sc.parallelize([
("123", ), ("456", ), (None, ), ("", )
]).toDF(["numbers"])
letters_df = sc.parallelize([
("123", "abc"), ("456", "def"), (None, "zzz"), ("", "hhh")
]).toDF(["numbers", "letters"])
numbers_df.join(letters_df, numbers_df.numbers.eqNullSafe(letters_df.numbers))
```

```
+-------+-------+-------+
|numbers|numbers|letters|
+-------+-------+-------+
| 456| 456| def|
| null| null| zzz|
| | | hhh|
| 123| 123| abc|
+-------+-------+-------+
```

and `%<=>%`

in **SparkR**:

```
numbers_df <- createDataFrame(data.frame(numbers = c("123", "456", NA, "")))
letters_df <- createDataFrame(data.frame(
numbers = c("123", "456", NA, ""),
letters = c("abc", "def", "zzz", "hhh")
))
head(join(numbers_df, letters_df, numbers_df$numbers %<=>% letters_df$numbers))
```

```
numbers numbers letters
1 456 456 def
2 <NA> <NA> zzz
3 hhh
4 123 123 abc
```

With **SQL** (**Spark 2.2.0+**) you can use `IS NOT DISTINCT FROM`

:

```
SELECT * FROM numbers JOIN letters
ON numbers.numbers IS NOT DISTINCT FROM letters.numbers
```

This is can be used with `DataFrame`

API as well:

```
numbersDf.alias("numbers")
.join(lettersDf.alias("letters"))
.where("numbers.numbers IS NOT DISTINCT FROM letters.numbers")
```