I am trying to read a simple text file into a Spark RDD and I see that there are two ways of doing so :
from pyspark.sql import SparkSession spark = SparkSession.builder.master("local[*]").getOrCreate() sc = spark.sparkContext textRDD1 = sc.textFile("hobbit.txt") textRDD2 = spark.read.text('hobbit.txt').rdd
then I look into the data and see that the two RDDs are structured differently
textRDD1.take(5) ['The king beneath the mountain', 'The king of carven stone', 'The lord of silver fountain', 'Shall come unto his own', 'His throne shall be upholden'] textRDD2.take(5) [Row(value='The king beneath the mountain'), Row(value='The king of carven stone'), Row(value='The lord of silver fountain'), Row(value='Shall come unto his own'), Row(value='His throne shall be upholden')]
Based on this, all subsequent processing has to be changed to reflect the presence of the 'value'
My questions are
- What is the implication of using these two ways of reading a text file?
- Under what circumstances should we use which method?