I have a column in my data frame which contains list of JSONs but the type is of String. I need to run explode on this column, so first I need to convert this into a list. I couldn't find much references to this use case.

Sample data:

columnName: "[{"name":"a","info":{"age":"1","grade":"b"},"other":7},{"random":"x"}, {...}]"

The above is how the data looks like, the fields are not fixed (index 0 might have JSON with some fields while index 1 will have fields with some other fields). In the list there can be more nested JSONs or some extra fields. I am currently using this -

"""explode(split(regexp_replace(regexp_replace(colName, '(\\\},)','}},'), '(\\\[|\\\])',''), "},")) as colName""" where I am just replacing "}," with "}}," then removing "[]" and then calling split on "}," but this approach doesn't work since there are nested JSONs.

How can I extract the array from the string?

  • update the question with proper input JSON
    – Shankar
    Feb 24, 2022 at 13:45
  • It's proper, there are around 20 to 30 fields which are all nullable, I have tried showing that through a sample. Is there something specific you want to check?
    – Trayambak
    Feb 24, 2022 at 13:53

2 Answers 2


You can try this way:

// Initial DataFrame


|columnName                                                            |


 |-- columnName: string (nullable = true)
// toArray is a user defined function that parses an array of json objects which is present as a string
import org.json.JSONArray

val toArray = udf { (data: String) => {
    val jsonArray = new JSONArray(data)
    var arr: Array[String] = Array()
    val objects = (0 until jsonArray.length).map(x => jsonArray.getJSONObject(x))
    objects.foreach { elem =>
        arr :+= elem.toString

// Using the udf and exploding the resultant array

val df1 = df.withColumn("columnName",explode(toArray(col("columnName"))))


|columnName                                           |
|{"random":"x"}                                       |


 |-- columnName: string (nullable = true)
// Parsing the json string by obtaining the schema dynamically

val schema = spark.read.json(df1.select("columnName").rdd.map(x => x(0).toString)).schema
val df2 = df1.withColumn("columnName",from_json(col("columnName"),schema))


|columnName     |
|[[1, b], a, 7,]|
|[,,, x]        |


 |-- columnName: struct (nullable = true)
 |    |-- info: struct (nullable = true)
 |    |    |-- age: string (nullable = true)
 |    |    |-- grade: string (nullable = true)
 |    |-- name: string (nullable = true)
 |    |-- other: long (nullable = true)
 |    |-- random: string (nullable = true)
// Extracting all the fields from the json


|info  |name|other|random|
|[1, b]|a   |7    |null  |
|null  |null|null |x     |


You can try this way if you can use get_json_object function

// Get the list of columns dynamically

val columns = spark.read.json(df1.select("columnName").rdd.map(x => x(0).toString)).columns

// define an empty array of Column type and get_json_object function to extract the columns

var extract_columns: Array[Column] = Array()
    columns.foreach { column =>
    extract_columns :+= get_json_object(col("columnName"), "$." + column).as(column)

df1.select(extract_columns: _*).show(false)

|info                   |name|other|random|
|{"grade":"b","age":"1"}|a   |7    |null  |
|null                   |null|null |x     |

Please note that info column is not of struct type. You may have to follow similar way to extract the columns of the nested json

  • I like the second approach but I am using an older version of Spark so can't "from_json", is it possible to achieve this with "get_json_object" ?. The first approach seems good as well but was looking for Spark library that I can reuse.
    – Trayambak
    Feb 24, 2022 at 14:09
  • Second approach seems different to what I was looking for. The first one worked like a charm. Thanks.
    – Trayambak
    Feb 24, 2022 at 14:38

val testString = """[{"name":"a","info":{"age":"1","grade":"b"},"other":7},{"random":"x"}]"""

val ds = Seq(testString).toDS()

.select("info.age", "info.grade","name","other","random")

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    Oct 2, 2022 at 11:36

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