8

I'm looking at a mystery. I have a bunch of long documents available as Python bytestrings (b"I'm a byte string") in a RDD. Now I convert this RDD to a DataFrame to join it to another DataFrame. I do that like this:

Data_RDD = Paths_RDD.map(open_paths).flatMap(split_files)

Data_schema = StructType([
    StructField("URI", StringType(), True),
    StructField("Content", StringType(), True),
])

Data_DF = sqlContext.createDataFrame(Data_RDD, schema=Data_schema)

print(Data_DF.show(5))

+--------------------+-----------+
|                 URI|    Content|
+--------------------+-----------+
|http://01storytel...|[B@10628e42|
|http://05yxgs.com...|[B@36699775|
|http://1.lhcmaima...|[B@4e569e3b|
|http://100100.ove...|[B@18ae5bab|
|http://1015theriv...|[B@5f044435|
+--------------------+-----------+
only showing top 5 rows

these short "[B@10628e42" strings seem fairly useless to me and are probably some kind of pointer. The bytestrings are still 'intact' in the RDD because I can still access them. So in the conversion from RDD to DataFrame the problem occurs. Now I tried to store the bytestrings in fields with other types, namely ByteType() and BinaryType(). Both not working because the bytestrings are not accepted with these error messages:

TypeError: ByteType can not accept object b'some string' in type <class 'bytes'>
TypeError: BinaryType can not accept object b'some string' in type <class 'bytes'>

But it gets even weirder. When I setup a small scale experiment:

ByteStrings = [b'one',b'two',b'three']
rdd_ByteStrings = sc.parallelize(ByteStrings)
print(rdd_ByteStrings.take(3))

DF2_schema = StructType([
    StructField("ByteString", StringType(), True),
])
DF_ByteStrings = sqlContext.createDataFrame(rdd_ByteStrings,schema=DF2_schema)

print(DF_ByteStrings.show())

The small bytestrings are not allowed as in a StringType column as well. When I try to run this I get this error message:

StructType can not accept object b'one' in type <class 'bytes'>

when I try to let spark infer a type it also fails with this message:

TypeError: Can not infer schema for type: <class 'bytes'>

So any ideas how I could store bytestrings in a DataFrame without to .decode() them. That is something I only can do after I joined the two DataFrames together, because the other one holds the decoding information.

I use Python 3.5 and Spark 2.0.1

Thanks in advance!

8

It is not so much a mystery. Step by step:

  • Spark uses Pyrolite to convert between Python and Java types.
  • Java type for bytes is byte[] which is equivalent to Array[Byte] in Scala.
  • You defined column to be of StringType therefore Array[Byte] will be converted to String before storing in a DataFrame.
  • Arrays in Scala are ugly Java artifact and among other problems have no useful toString method:

    Array(192, 168, 1, 1).map(_.toByte)
    
    Array[Byte] = Array(-64, -88, 1, 1)
    
    Array(192, 168, 1, 1).map(_.toByte).toString
    
    String = [B@6c9fe061
    

    This is how you get the content of the column.

There is no type in Spark SQL that maps directly to Python bytes. Personally I would join join RDDs but if you really want to use DataFrames you can use intermediate BinaryType representation.

from collections import namedtuple

Record = namedtuple("Record", ["url", "content"])

rdd = sc.parallelize([Record("none://", b"foo"), Record("none://", b"bar")])
df = rdd.map(lambda rec: Record(rec.url, bytearray(rec.content))).toDF()

df.printSchema()
root
 |-- url: string (nullable = true)
 |-- content: binary (nullable = true)

It won't give you that can be used natively (JVM) nor a meaningful string representation:

+-------+----------+
|    url|   content|
+-------+----------+
|none://|[66 6F 6F]|
|none://|[62 61 72]|
+-------+----------+

but is lossless:

df.rdd.map(lambda row: bytes(row.content)).first()
b'foo'

and can be accessed in Python udf:

from pyspark.sql.functions import udf
from pyspark.sql import Column
from typing import Union

def decode(col: Union[str, Column], enc: str="utf-8") -> Column:
    def decode_(bs: Union[bytearray, None]) -> Union[str, None]:
        if bs is not None:
            return bytes(bs).decode(enc)
        except UnicodeDecodeError:
            pass 
    return udf(decode_)(col)

df.withColumn("decoded", decode("content")).show()
+-------+----------+-------+
|    url|   content|decoded|
+-------+----------+-------+
|none://|[66 6F 6F]|    foo|
|none://|[62 61 72]|    bar|
+-------+----------+-------+
  • I also had to set PYTHONHASHSEED to make rdd joins possible! – Thagor Dec 29 '16 at 9:46
  • @user6910411, can u pls reply on stackoverflow.com/questions/54033132/… post – Ajay Jan 8 at 9:41
  • @user6910411 could you please explain the syntax of decode function so python beginners understand what it is doing. – BI Dude Jul 24 at 14:17

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.