1

I am trying to manually create some dummy pyspark dataframe.

I did the following:

from pyspark.sql.types import StructType,StructField, StringType, IntegerType
data2 = [('{"Time":"2020-08-01T08:14:20.650Z","version":null}')
            ]

schema = StructType([ \
    StructField("raw_json",StringType(),True)
  ])

df = spark.createDataFrame(data=data2,schema=schema)
df.printSchema()
df.show(truncate=False)

but i got the error:

TypeError: StructType can not accept object '[{"Time:"2020-08-01T08:14:20.650Z","version":null}]' in type <class 'str'>

How am i able to put json string into pyspark dataframe as values?

my ideal result is:

+-----------------------------------------------------------------+
|value                                                             |             
+-----------------------------------------------------------------------
| {"Time":"2020-08-01T08:14:20.650Z","version":null}|
1

The error is because of your braces. data2 should have list of lists - so replace inner parenthesis with square brackets:

data2 = [['{"applicationTimeStamp":"2020-08-01T08:14:20.650Z","version":null}']]

schema = StructType([StructField("raw_json",StringType(),True)])
df = spark.createDataFrame(data=data2,schema=schema)

df.show(truncate=False)
+------------------------------------------------------------------+            
|raw_json                                                          |
+------------------------------------------------------------------+
|{"applicationTimeStamp":"2020-08-01T08:14:20.650Z","version":null}|
+------------------------------------------------------------------+
0

It could also work if you specify data2 as a list of tuples, by adding a trailing comma inside the parentheses to specify that it is a tuple.

from pyspark.sql.types import *

# Note the trailing comma inside the parentheses
data2 = [('{"applicationTimeStamp":"2020-08-01T08:14:20.650Z","version":null}',)]

schema = StructType([
    StructField("raw_json",StringType(),True)
])

df = spark.createDataFrame(data=data2,schema=schema)
df.show(truncate=False)
+------------------------------------------------------------------+
|raw_json                                                          |
+------------------------------------------------------------------+
|{"applicationTimeStamp":"2020-08-01T08:14:20.650Z","version":null}|
+------------------------------------------------------------------+
0

Try this:

import json

rdd = sc.parallelize(data2).map(lambda x: [json.loads(x)]).toDF(schema=['raw_json'])

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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