0

I have a school work based on this problem website - we use the dataset available here. I am trying to do the following: Find the top 10 most frequent routes for each period of one hour, for each day of the week. The output should be: weekday,hour,[route1,…,route10]. My code is:

from pyspark.sql import *
from pyspark.sql.types import * 
from pyspark.sql.functions import * 

import datetime  
import time 

start_time = time.time() 
spark = SparkSession.builder.master('local[*]').appName('taxis').getOrCreate() sc = spark.sparkContext sc.setLogLevel("ERROR")

timeformat = "yyyy-MM-dd HH:mm:ss" 
dateformat = "EEEE"

lat = 41.474937   #first cell is (1,1) 
long = -74.913585 
south = 0.004491556 
east = 0.005986

try :
    lines = sc.textFile('sorted_data.csv')
    taxisRows = lines.filter( lambda line : len(line) > 0 )   \
                        .map( lambda line : line.split(',') ) \
                        .filter( lambda split_line : (float(split_line[6]) != 0) \
                                                    and (float(split_line[7]) != 0) \
                                                    and (float(split_line[8]) != 0) \
                                                    and (float(split_line[9]) != 0)) \
                        .map( lambda arr : Row(pickup_datetime = arr[2], dropoff_datetime = arr[3], \
                                                pickup_longitude = (float(arr[6]) - long), \
                                                pickup_latitude = (float(arr[7]) - lat), \
                                                dropoff_longitude = (float(arr[8]) - long), \
                                                dropoff_latitude = (float(arr[9]) - lat), \
                                                )) 

    taxisRowsDF = spark.createDataFrame( taxisRows )

    taxisRowsDF = taxisRowsDF.withColumn('route', struct( struct((round((abs(taxisRowsDF.pickup_latitude)/south)+1)), (round((abs(taxisRowsDF.pickup_longitude)/east)+1))) , \
                                                        struct((round((abs(taxisRowsDF.dropoff_latitude)/south)+1)), (round((abs(taxisRowsDF.dropoff_longitude)/east)+1))) ) )


    taxisRowsDF = taxisRowsDF.withColumn("weekday",date_format('pickup_datetime', format= 'E'))
    taxisRowsDF = taxisRowsDF.withColumn("hour", date_format("pickup_datetime", format = 'H'))

    routesFrequencyDF = taxisRowsDF.groupBy('weekday', 'hour', 'route').count().orderBy('count',ascending = False)
    tenMostFrequent = routesFrequencyDF.groupBy('weekday', 'hour').agg(collect_set('route').alias('List of Routes')).show()

    #tenMostFrequent1 = tenMostFrequent.select('List of Routes', size('List of Routes').alias('Number of Routes'))

    #tenMostFrequent.show(tenMostFrequent.count, False)
    #tenMostFrequent.show(10)
#     taxisRowsDF.show(10)                
#     routesFrequencyDF.show(10)
    print("---%s seconds---"% (time.time()-start_time))
    sc.stop() except Exception as e:
    print(e)
    sc.stop()

I have the frequency of each route with routesFrequencyDF, and with agg(colect_set()) i am able to creat a set of values (so that the output is a list of the 10 most frequent routes for each week and hour), although I am not able to join this two pieces of information together. Does anyone have any suggestion?

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Browse other questions tagged or ask your own question.