I am trying to test the ability of PySpark to iterate over some very large (10s of GBs to 1s of TBs) data. For most scripts I find PySpark to have about the same efficiency as Scala code. In other cases (like the code below) I get serious speed problems ranging from 10 to 12 times slower.
path = "path/to/file" spark = SparkSession.builder.appName("siteLinkStructureByDate").getOrCreate() sc = spark.sparkContext df = RecordLoader.loadSomethingAsDF(path, sc, spark) fdf = df.select(df['aDate'], df['aSourceUrl'], df['contentTextWithUrls']) rdd = fdf.rdd rddx = rdd.map (lambda r: (r.aDate, CreateAVertexFromSourceUrlAndContent(r.aSourceUrl, r.contentTextWithUrls)))\ .flatMap(lambda r: map(lambda f: (r, ExtractDomain(f), ExtractDomain(f)), r))\ .filter(lambda r: r[-1] != None)\ .countByValue() print([((x, x, x), y) for x, y in rddx.items()])
We think we have isolated the problem to the .countByValue() (which returns a defaultdict), but applying countItems() or reduceByKey() produces pretty much the same results. We are also 99% sure the problem is not with the ExtractDomain or CreateAVertexFromSourceUrlAndContent (not the real names of the functions, just pseudocode to make it understandable).
So my question is first
- is there anything in this code that I can do to reduce the time?
- Is PySpark fundamentally that much slower than its Scala counterpart?
- Is there a way to replicate the flatmap using PySpark dataframes instead (understanding that dataframes are generally faster than RDD in Pyspark)?