30

I have a json file, nodes that looks like this:

[{"toid":"osgb4000000031043205","point":[508180.748,195333.973],"index":1}
,{"toid":"osgb4000000031043206","point":[508163.122,195316.627],"index":2}
,{"toid":"osgb4000000031043207","point":[508172.075,195325.719],"index":3}
,{"toid":"osgb4000000031043208","point":[508513,196023],"index":4}]

I am able to read and manipulate this record with Python.

I am trying to read this file in scala through the spark-shell.

From this tutorial, I can see that it is possible to read json via sqlContext.read.json

val vfile = sqlContext.read.json("path/to/file/nodes.json")

However, this results in a corrupt_record error:

vfile: org.apache.spark.sql.DataFrame = [_corrupt_record: string]

Can anyone shed some light on this error? I can read and use the file with other applications and I am confident it is not corrupt and sound json.

0

4 Answers 4

41

As Spark expects "JSON Line format" not a typical JSON format, we can tell spark to read typical JSON by specifying:

val df = spark.read.option("multiline", "true").json("<file>")
2
  • 1
    It's not giving as expected and getting Null as below. | _corrupt_record|order_customer_id|order_date|order_id|order_status| +--------------------+-----------------+----------+--------+------------+ | {| null| null| null| null| | "Sno": 1,| null| null| null| null| | "Date": "30/0...| null| null| null| null| May 24, 2020 at 8:05
  • This worked for me, and the following is my code: movie0 = "dbfs:/FileStore/movies/movie_0.json" movie0DF = (spark.read # The DataFrameReader .option("inferSchema", "true") # Automatically infer data types & column names .option("multiline", "true") # Since not each line is a separate JSON object, therefore, to avoid error, I need to declare this line .json(movie0) # Creates a DataFrame from JSON after reading in the file )
    – sediq khan
    May 20, 2022 at 17:24
31

Spark cannot read JSON-array to a record on top-level, so you have to pass:

{"toid":"osgb4000000031043205","point":[508180.748,195333.973],"index":1} 
{"toid":"osgb4000000031043206","point":[508163.122,195316.627],"index":2} 
{"toid":"osgb4000000031043207","point":[508172.075,195325.719],"index":3} 
{"toid":"osgb4000000031043208","point":[508513,196023],"index":4}

As it's described in the tutorial you're referring to:

Let's begin by loading a JSON file, where each line is a JSON object

The reasoning is quite simple. Spark expects you to pass a file with a lot of JSON-entities (entity per line), so it could distribute their processing (per entity, roughly saying).

To put more light on it, here is a quote form the official doc

Note that the file that is offered as a json file is not a typical JSON file. Each line must contain a separate, self-contained valid JSON object. As a consequence, a regular multi-line JSON file will most often fail.

This format is called JSONL. Basically it's an alternative to CSV.

2
  • Thanks @dl14. I'll have to think about how to prepare the input files in more depth Aug 11, 2016 at 14:59
  • 1
    Visitors: make sure you read the last part of this answer: "Note that the file that is offered as a json file is not a typical JSON file. Each line must contain a separate, self-contained valid JSON object. As a consequence, a regular multi-line JSON file will most often fail."
    – 0x6C38
    May 1, 2017 at 6:53
12

To read the multi-line JSON as a DataFrame:

val spark = SparkSession.builder().getOrCreate()

val df = spark.read.json(spark.sparkContext.wholeTextFiles("file.json").values)

Reading large files in this manner is not recommended, from the wholeTextFiles docs

Small files are preferred, large file is also allowable, but may cause bad performance.

0
1

I run into the same problem. I used sparkContext and sparkSql on the same configuration:

val conf = new SparkConf()
  .setMaster("local[1]")
  .setAppName("Simple Application")


val sc = new SparkContext(conf)

val spark = SparkSession
  .builder()
  .config(conf)
  .getOrCreate()

Then, using the spark context I read the whole json (JSON - path to file) file:

 val jsonRDD = sc.wholeTextFiles(JSON).map(x => x._2)

You can create a schema for future selects, filters...

val schema = StructType( List(
  StructField("toid", StringType, nullable = true),
  StructField("point", ArrayType(DoubleType), nullable = true),
  StructField("index", DoubleType, nullable = true)
))

Create a DataFrame using spark sql:

var df: DataFrame = spark.read.schema(schema).json(jsonRDD).toDF()

For testing use show and printSchema:

df.show()
df.printSchema()

sbt build file:

name := "spark-single"

version := "1.0"

scalaVersion := "2.11.7"

libraryDependencies += "org.apache.spark" %% "spark-core" % "2.0.2"
libraryDependencies +="org.apache.spark" %% "spark-sql" % "2.0.2"

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.