I am getting started with apache spark. I have a requirement to convert a json log to a flattened metrics, can be considered as a simple csv as well.

For eg.

  "orderData": {
  "customerId": 123,
  "orders": [
      "itemCount": 2,
      "items": [
          "quantity": 1,
          "price": 315
          "quantity": 2,
          "price": 300


This can be considered as a single json log, I want to convert this into,

  1    ,   123    ,   915    ,  3

I was going through sparkSQL documentation and can use it to get hold of individual values like "select orderId,orderData.customerId from Order" but I am not sure how to get the summation of all the prices and units.

What should be the best practice to get this done using apache spark?

  • cant we do like DataFrame df = sqlContext.read().json("/path/to/file").toDF(); df.registerTempTable("df"); df.printSchema(); and after that perform aggregates through sql ? – Ram Ghadiyaram Aug 1 '16 at 16:25
  • Through SQL I can get hold of individual elements but not sure about orders.items, how can I run aggregates on this? I think it will come as a json value only, please correct me if I am missing something. – fireants Aug 1 '16 at 16:31
  • you can have a look through this & [nested json] (xinhstechblog.blogspot.in/2016/05/…) – Ram Ghadiyaram Aug 1 '16 at 17:03
  • Thanks a lot Ram, will try this out. This definitely looks to work. – fireants Aug 1 '16 at 17:06
  • ya another link I gave if it works well pls post the answer with your relevant use case – Ram Ghadiyaram Aug 1 '16 at 17:07
up vote 1 down vote accepted


>>> from pyspark.sql.functions import *
>>> doc = {"orderData": {"orders": [{"items": [{"quantity": 1, "price": 315}, {"quantity": 2, "price": 300}], "itemCount": 2}], "customerId": 123}, "orderId": 1}
>>> df = sqlContext.read.json(sc.parallelize([doc]))
>>> df.select("orderId", "orderData.customerId", explode("orderData.orders").alias("order")) \
... .withColumn("item", explode("order.items")) \
... .groupBy("orderId", "customerId") \
... .agg(sum("item.quantity"), sum(col("item.quantity") * col("item.price")))
  • Thanks for the working logic, i will try to map it in java and post it here for others. – fireants Aug 1 '16 at 20:47

For the people who are looking for a java solution of the above, please follow:

SparkSession spark = SparkSession

    SQLContext sqlContext = new SQLContext(spark);

    Dataset<Row> orders = sqlContext.read().json("order.json");
    Dataset<Row> newOrders = orders.select(

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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