熊猫到pyspark cumprod函数

问题描述 投票:0回答:1

我正在尝试将下面的熊猫代码转换为pyspark

Python Pandas代码:

  df = spark.createDataFrame([(1, 1,0.9), (1, 2,0.13), (1, 3,0.5), (1, 4,1.0), (1, 5,0.6)], ['col1', 'col2','col3'])
pandas_df = df.toPandas()

pandas_df['col4'] = (pandas_df.groupby(['col1','col2'])['col3'].apply(lambda x: (1 - x).cumprod()))
pandas_df

结果如下:

   col1  col2  col3  col4
0     1     1  0.90  0.10
1     1     2  0.13  0.87
2     1     3  0.50  0.50
3     1     4  1.00  0.00
4     1     5  0.60  0.40

和转换后的火花代码:

from pyspark.sql import functions as F, Window, types
from functools import reduce
from operator import mul

df = spark.createDataFrame([(1, 1,0.9), (1, 2,0.13), (1, 3,0.5), (1, 4,1.0), (1, 5,0.6)], ['col1', 'col2','col3'])
partition_column = ['col1','col2']
window = Window.partitionBy(partition_column)
expr = 1.0 - F.col('col3')
mul_udf = F.udf(lambda x: reduce(mul, x), types.DoubleType())
df = df.withColumn('col4', mul_udf(F.collect_list(expr).over(window)))
df.orderBy('col2').show()

及其输出

+----+----+----+-------------------+
|col1|col2|col3|               col4|
+----+----+----+-------------------+
|   1|   1| 0.9|0.09999999999999998|
|   1|   2|0.13|               0.87|
|   1|   3| 0.5|                0.5|
|   1|   4| 1.0|                0.0|
|   1|   5| 0.6|                0.4|
+----+----+----+-------------------+

我不完全了解熊猫是如何工作的,有人可以帮助我验证上述转换是否正确,而且我正在使用UDF,这会降低性能,pyspark中是否有可用的分布式函数来执行cumprod()?

预先感谢

python pandas pyspark rollingfileappender
1个回答
0
投票

由于正数的乘积可以用logexp函数(a*b*c = exp(log(a) + log(b) + log(c)))表示,所以只能使用Spark内置函数来计算累积积:

df.groupBy("col1", "col2") \
  .agg(max(col("col3")).alias("col3"),
       coalesce(exp(sum(log(lit(1) - col("col3")))), lit(0)).alias("col4")
  )\
  .orderBy(col("col2"))\
  .show()
© www.soinside.com 2019 - 2024. All rights reserved.