bachelorThesis/table_iii/tableIV.py

86 lines
2.5 KiB
Python
Executable File

#!/usr/bin/env python3
# coding: utf-8
import json
import pandas
import findspark
findspark.init()
import pyspark
import pyspark.sql
import sys
import gzip
import os
import pyspark.sql.functions as F
from pyspark import AccumulatorParam
from pyspark.sql.functions import lit
from pyspark.sql import Window
from pyspark.sql.types import StructType, LongType, StringType, ByteType
def main():
global DIR
global NAME
global launched
if len(sys.argv) != 4:
print(sys.argv[0] + " {cluster} {tmpdir} {maxram}")
sys.exit()
cluster=sys.argv[1]
DIR = os.path.dirname(__file__)
NAME = "table-iv-evts-" + cluster
if os.path.exists(DIR + "/" + NAME + "-working") or os.path.exists(DIR + "/" + NAME + ".parquet"):
print("already launched")
launched = True
sys.exit()
os.system("touch " + DIR + "/" + NAME + "-working")
spark = pyspark.sql.SparkSession.builder \
.appName(NAME) \
.config("spark.driver.maxResultSize", "32g") \
.config("spark.local.dir", sys.argv[2]) \
.config("spark.driver.memory", sys.argv[3]) \
.getOrCreate()
sc = spark.sparkContext
df = spark.read.parquet(DIR + "/bigtable-" + cluster + ".parquet")
usage_schema = StructType() \
.add("jobid", StringType(), False) \
.add("job_term", LongType(), False) \
.add("task_count", LongType(), False)
dfj = spark.read.format("csv") \
.option("header", False) \
.schema(usage_schema) \
.load("/home/claudio/google_2019/thesis_queries/figure_9/" + cluster + "_task_count")
dfj = dfj.select(["jobid", "job_term"])
df = df.join(dfj, "jobid")
df = df.groupBy("job_term").agg( \
F.expr("avg(count_0)").alias('avg_count_0'),
F.expr("avg(count_1)").alias('avg_count_1'),
F.expr("avg(count_2)").alias('avg_count_2'),
F.expr("avg(count_3)").alias('avg_count_3'),
F.expr("avg(count_4)").alias('avg_count_4'),
F.expr("avg(count_5)").alias('avg_count_5'),
F.expr("avg(count_6)").alias('avg_count_6'),
F.expr("avg(count_7)").alias('avg_count_7'),
F.expr("avg(count_8)").alias('avg_count_8'),
F.expr("avg(count_9)").alias('avg_count_9'),
F.expr("avg(count_10)").alias('avg_count_10'))
df.repartition(1).write.csv(DIR + "/" + NAME + ".csv")
if __name__ == "__main__":
launched = False
try:
main()
finally:
if not launched:
os.system("rm -v " + DIR + "/" + NAME + "-working")
# vim: set ts=4 sw=4 et tw=120: