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pyspark - AWS Glue pyspark UDF

转载 作者:行者123 更新时间:2023-12-05 06:36:19 25 4
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在 AWS Glue 中,我需要将浮点值(摄氏度转换为华氏度)并使用 UDF。

以下是我的UDF:

toFahrenheit = udf(lambda x: '-1' if x in not_found else x * 9 / 5 + 32, StringType())

我在 spark 数据框中使用如下 UDF:

weather_df.withColumn("new_tmax", toFahrenheit(weather_df["tmax"])).drop("tmax").withColumnRenamed("new_tmax","tmax")

当我运行代码时,收到错误消息:

IllegalArgumentException: u"requirement failed: The number of columns doesn't match.\nOld column names (11): station, name, latitude, longitude, elevation, date, awnd, prcp, snow, tmin, tmax\nNew column names (0): "

不确定如何调用 UDF,因为我是 python/pyspark 的新手,而且我的新列模式没有创建,而且是空的。

用于上述示例的代码片段是:

%pyspark
import sys
from pyspark.context import SparkContext
from awsglue.context import GlueContext
from awsglue.context import DynamicFrame
from awsglue.transforms import *
from awsglue.utils import getResolvedOptions
from awsglue.job import Job
from pyspark.sql import SparkSession
from pyspark.sql.functions import udf
from pyspark.sql.types import StringType

glueContext = GlueContext(SparkContext.getOrCreate())

weather_raw = glueContext.create_dynamic_frame.from_catalog(database = "ohare-airport-2006", table_name = "ohare_intl_airport_2006_08_climate_csv")
print "cpnt : ", weather_raw.count()
weather_raw.printSchema()
weather_raw.toDF().show(10)

#UDF to convert the air temperature from celsius to fahrenheit (For sample transformation)
#toFahrenheit = udf((lambda c: c[1:], c * 9 / 5 + 32)
toFahrenheit = udf(lambda x: '-1' if x in not_found_cat else x * 9 / 5 + 32, StringType())

#Apply the UDF to maximum and minimum air temperature
wthdf = weather_df.withColumn("new_tmin", toFahrenheit(weather_df["tmin"])).withColumn("new_tmax", toFahrenheit(weather_df["tmax"])).drop("tmax").drop("tmin").withColumnRenamed("new_tmax","tmax").withColumnRenamed("new_tmin","tmin")

wthdf.toDF().show(5)

架构

 weather_df:
root
|-- station: string
|-- name: string
|-- latitude: double
|-- longitude: double
|-- elevation: double
|-- date: string
|-- awnd: double
|-- fmtm: string
|-- pgtm: string
|-- prcp: double
|-- snow: double
|-- snwd: long
|-- tavg: string
|-- tmax: long
|-- tmin: long

错误轨迹:

Traceback (most recent call last):
File "/tmp/zeppelin_pyspark-3684249459612979499.py", line 349, in <module>
raise Exception(traceback.format_exc())
Exception: Traceback (most recent call last):
File "/tmp/zeppelin_pyspark-3684249459612979499.py", line 342, in <module>
exec(code)
File "<stdin>", line 3, in <module>
File "/usr/lib/spark/python/pyspark/sql/dataframe.py", line 1558, in toDF
jdf = self._jdf.toDF(self._jseq(cols))
File "/usr/lib/spark/python/lib/py4j-0.10.4-src.zip/py4j/java_gateway.py", line 1133, in __call__
answer, self.gateway_client, self.target_id, self.name)
File "/usr/lib/spark/python/pyspark/sql/utils.py", line 79, in deco
raise IllegalArgumentException(s.split(': ', 1)[1], stackTrace)
IllegalArgumentException: u"requirement failed: The number of columns doesn't match.\nOld column names (11): station, name, latitude, longitude, elevation, date, awnd, prcp, snow, tmin, tmax\nNew column names (0): "

谢谢

最佳答案

以上解决方法(摄氏度转华氏度),仅供引用:

#UDF to convert the air temperature from celsius to fahrenheit
toFahrenheit = udf(lambda x: x * 9 / 5 + 32, StringType())

weather_in_Fahrenheit = weather_df.withColumn("new_tmax", toFahrenheit(weather_df["tmax"])).withColumn("new_tmin", toFahrenheit(weather_df["tmin"])).drop("tmax").drop("tmin").withColumnRenamed("new_tmax","tmax").withColumnRenamed("new_tmin","tmin")

weather_in_Fahrenheit.show(5)

原始数据样本:

+-----------+--------------------+---------+--------+---------+----+----+----+----+----------+
| station| name|elevation|latitude|longitude|prcp|snow|tmax|tmin| date|
+-----------+--------------------+---------+--------+---------+----+----+----+----+----------+
|USW00094846|CHICAGO OHARE INT...| 201.8| 41.995| -87.9336| 0.0| 0.0| 25| 11|2013-01-01|
|USW00094846|CHICAGO OHARE INT...| 201.8| 41.995| -87.9336| 0.0| 0.0| 30| 10|2013-01-02|
|USW00094846|CHICAGO OHARE INT...| 201.8| 41.995| -87.9336| 0.0| 0.0| 29| 18|2013-01-03|
|USW00094846|CHICAGO OHARE INT...| 201.8| 41.995| -87.9336| 0.0| 0.0| 36| 13|2013-01-04|
|USW00094846|CHICAGO OHARE INT...| 201.8| 41.995| -87.9336|0.03| 0.4| 39| 18|2013-01-05|
|USW00094846|CHICAGO OHARE INT...| 201.8| 41.995| -87.9336| 0.0| 0.0| 36| 18|2013-01-06|
|USW00094846|CHICAGO OHARE INT...| 201.8| 41.995| -87.9336| 0.0| 0.0| 41| 15|2013-01-07|
|USW00094846|CHICAGO OHARE INT...| 201.8| 41.995| -87.9336| 0.0| 0.0| 44| 22|2013-01-08|
|USW00094846|CHICAGO OHARE INT...| 201.8| 41.995| -87.9336| 0.0| 0.0| 50| 27|2013-01-09|
|USW00094846|CHICAGO OHARE INT...| 201.8| 41.995| -87.9336|0.63| 0.0| 45| 22|2013-01-10|
+-----------+--------------------+---------+--------+---------+----+----+----+----+----------+

将 UDF 应用于华氏温度后:

+-----------+--------------------+--------+---------+---------+----------+-----+----+----+----+----+
| station| name|latitude|longitude|elevation| date| awnd|prcp|snow|tmax|tmin|
+-----------+--------------------+--------+---------+---------+----------+-----+----+----+----+----+
|USW00094846|CHICAGO OHARE INT...| 41.995| -87.9336| 201.8|2013-01-01| 8.5| 0.0| 0.0| 77| 51|
|USW00094846|CHICAGO OHARE INT...| 41.995| -87.9336| 201.8|2013-01-02| 8.05| 0.0| 0.0| 86| 50|
|USW00094846|CHICAGO OHARE INT...| 41.995| -87.9336| 201.8|2013-01-03|11.41| 0.0| 0.0| 84| 64|
|USW00094846|CHICAGO OHARE INT...| 41.995| -87.9336| 201.8|2013-01-04| 13.2| 0.0| 0.0| 96| 55|
|USW00094846|CHICAGO OHARE INT...| 41.995| -87.9336| 201.8|2013-01-05| 9.62|0.03| 0.4| 102| 64|
+-----------+--------------------+--------+---------+---------+----------+-----+----+----+----+----+

关于pyspark - AWS Glue pyspark UDF,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/49179884/

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