9

I am using Spark with Java and I have a dataframe like this:

id  | array_column
-------------------
12  | [a:123, b:125, c:456]
13  | [a:443, b:225, c:126]

I want to explode array_column with the same id, however explode doesn't work, because I want dataframe to become:

id  | a  | b  | c
-------------------
12  |123 |125 | 456 
13  |443 |225 | 126
2
  • Do you have fixed amount of elements in map or it can be changed? Sep 28, 2021 at 12:27
  • @ArtemAstashov The number is not fixed but it can be blocked with a large number if needed
    – Ofir
    Sep 28, 2021 at 12:38

3 Answers 3

7

The following approach will work on variable length lists in array_column. The approach uses explode to expand the list of string elements in array_column before splitting each string element using : into two different columns col_name and col_val respectively. Finally a pivot is used with a group by to transpose the data into the desired format.

The following example uses the pyspark api but can easily be translated to the java/scala apis as they are similar. I assumed your dataset is in a dataframe named input_df

from pyspark.sql import functions as F

output_df = (
    input_df.select("id",F.explode("array_column").alias("acol"))
            .select(
                "id",
                F.split("acol",":")[0].alias("col_name"),
                F.split("acol",":")[1].cast("integer").alias("col_val")
            )
            .groupBy("id")
            .pivot("col_name")
            .max("col_val")
)

Let me know if this works for you.

0
5

A very similar approach like ggordon's answer in Java:

import static org.apache.spark.sql.functions.*;

Dataset<Row> df = ...

df.withColumn("array_column", explode(col("array_column")))
        .withColumn("array_column", split(col("array_column"), ":"))
        .withColumn("key", col("array_column").getItem(0))
        .withColumn("value", col("array_column").getItem(1))
        .groupBy(col("id"))
        .pivot(col("key"))
        .agg(first("value")) //1
        .show();

Output:

+---+---+---+---+
| id|  a|  b|  c|
+---+---+---+---+
| 12|456|225|126|
| 11|123|125|456|
+---+---+---+---+

I assume that the combination of id and and the key field in the array is unique. That's why the aggregation function used at //1 is first. If this combination is not unique, the aggregation function could be changed to collect_list in order to get an array of all matching values.

0
1

Extracting column names from strings inside columns:

  • create a proper JSON string (with quote symbols around json objects and values)
  • create schema using this column
  • create struct and explode it into columns

Input example:

from pyspark.sql import functions as F
df = spark.createDataFrame(
    [(12, ['a:123', 'b:125', 'c:456']),
     (13, ['a:443', 'b:225', 'c:126'])],
    ['id', 'array_col'])

df.show(truncate=0)
# +---+---------------------+
# |id |array_col            |
# +---+---------------------+
# |12 |[a:123, b:125, c:456]|
# |13 |[a:443, b:225, c:126]|
# +---+---------------------+

Script:

df = df.withColumn("array_col", F.expr("to_json(str_to_map(array_join(array_col, ',')))"))
json_schema = spark.read.json(df.rdd.map(lambda row: row.array_col)).schema
df = df.withColumn("array_col", F.from_json("array_col", json_schema))
df = df.select("*", "array_col.*").drop("array_col")

df.show()
# +---+---+---+---+
# | id|  a|  b|  c|
# +---+---+---+---+
# | 12|123|125|456|
# | 13|443|225|126|
# +---+---+---+---+
1
  • 1
    very clever trick with converting to JSON and rebuilding dataframe from schema. ++ for that.
    – Azhar Khan
    Oct 29, 2022 at 1:58

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.