from pyspark.sql import SparkSession spark = SparkSession \ .builder \ .appName("Python Spark SQL basic example") \ .config("spark.some.config.option", "some-value") \ .getOrCreate() import pyspark.sql.functions as F
Load some data
df = spark.read.load("DEX03s - 2019-10-07.csv", format="csv", sep=",", inferSchema="true", header="true")
Find columns that are more than 90% null
threshold = df.count() * .90 null_counts = df.select([F.count(F.when(F.col(c).isNull(), c)).alias(c) for c in df.columns]).collect()[0].asDict() to_drop = [k for k, v in null_counts.items() if v >= threshold ]
Drop Null columns
clean = df.drop(*to_drop) display(clean)
Create a subset of records
subsetDF = cleanDF.limit(100).select("COMMENT_DESC") map = { 'zip': ['ZIP'], 'moved': ['MOVED'], 'apt': ['APT'], 'box': ['P O BOX'],'street': ['STREET','ADDRESS'] } print(subsetDF.count()) subsetDF.show()
Categorize records using a User Defined Fucntion (UDF)
from pyspark.sql.functions import count, col from pyspark.sql.functions import udf from pyspark.sql.types import StringType def getErrorType ( errorString ): if errorString is None: return 'empty' map = { 'moved': ['MOVED'], 'zip': ['ZIP'], 'apt': ['APT'], 'box': ['P O BOX'],'street': ['STREET','ADDRESS'] } for key,searchlist in map.items(): for searchterm in searchlist: print ("{} - {}".format(errorString, searchterm) ) if ( errorString.find(searchterm) >= 0 ): return key return 'unknown' myudf = udf(getErrorType, StringType()) subsetDF = ( cleanDF .select("COMMENT_DESC") .withColumn('ERROR_CLASSIFICATION', myudf( cleanDF['COMMENT_DESC'] ) ) ) print(subsetDF.count()) subsetDF.show() country_totals = ( subsetDF .select ( "ERROR_CLASSIFICATION") .groupby("ERROR_CLASSIFICATION") .agg(count("*").alias("count")) .sort(col("count").desc()) ) country_totals.show()