Win10搭建Pyspark2.4.4+Pycharm开发环境的图文教程(亲测)
目录
- 下载资源
- python环境(推荐cmd非PowerShell)
- 配置环境变量(自行百度)
- 修改配置文件
- 配置Pycharm
- 常见问题:
- 其他
下载资源
- hadoop3.0.0
- spark-2.4.4-http://www.devze.combin-without-hadoop
- winutils下载(对应hadoop3.0.1的bin目录覆盖本地hadoop的bin目录)
- jdk1.8(默认已按照配置)
- conda/anaconda(默认已安装)
注意:cdh6.3.2的spark为2.4.0但是使用2.4.0本地pyspark有bug,下载的文件可能在第一次解压缩后,如未出现目录,则需要修改文件后缀为zip,再次解压缩
python环境(推荐cmd非powershell)
spark2.4.x不支持python3.7以上版本
conda create -n pyspark2.4 python=3.7 activate pyspark2.4 pip install py4j pip install psutil
pyspark安装方法(推荐一)
- %SPARK_HOME%\python\pyspark目录复制到%CONDA_HOME%\pyspark2.4\Lib\site-packages下
- pip install pyspark=2.4XRmjsva.4
配置环境变量(自行百度)
以下只是示例,根据实际情况修改,路径不要有空格,如果有使用mklink /J 软链接 目录路径
系统变量添加 HADOOP_HOME E:\bigdata\ENV\hadoop-3.0.0 SPARK_HOME E:\bigdata\ENV\spark-2.4.4-bin-without-hadoop PYSPARK_PYTHON C:\Users\zakza\anaconda3\envs\pyspark2.4\python.exe PATH添加 %HADOOP_HOME%\bin %SPARK_HOME%\bin
修改配置文件
配置一 %SPARK_HOME%\conf目录下新建spark-env.cmd文件,内容如下
FOR /F %%i IN ('hadoop classpath') DO @set SPARK_DIST_CLASSPATH=%%i
配置二 %SPARK_HOME%\conf\目录下新建log4j.properties文件,内容如下
# # Licensed to the Apache Software Founjavascriptdation (ASF) under one or more # contributor license agreements. See the NOTICE file distributed with # this work for additional information regarding copyright ownership. # The ASF licenses this file to You under the Apache License, Version 2.0 # (the "License"); you may not use this file except in compliance with # the License. You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # # Set everything to be logged to the console log4j.rootCategory=WARN, console log4j.appender.console=org.apache.log4j.ConsoleAppender log4j.appender.console.target=System.err log4j.appender.console.layout=org.apache.log4j.PatternLayout log4j.appender.console.layout.ConversionPattern=%d{yy/MM/dd HH:mm:ss} %p %c{1}: %m%n # Set the default spark-shell log level to WARN. When running the spark-shell, the # log level for this class is used to overwrite the root logger's log level, so that # the user can have different defaults for the shell and regular Spark apps. log4j.logger.org.apache.spark.repl.Main=WARN # Settings to quiet third party logs that are too verbose log4j.logger.org.spark_project.jetty=WARN log4j.logger.org.spark_project.jetty.util.component.AbstractLifeCycle=ERROR log4j.logger.org.apache.spark.repl.SparkIMain$exprTyper=INFO log4j.logger.org.apache.spark.repl.SparkILoop$SparkILoopInterpreter=INFO log4j.logger.org.apache.parquet=ERROR log4开发者_Go开发j.logger.parquet=ERROR # SPARK-9183: Settings to avoid annoying messages when looking up nonexistent UDFs in SparkSQL with Hive support log4j.logger.org.apache.hadoop.hive.metastore.RetryingHMSHandler=FATAL log4j.logger.org.apache.hadoop.hive.ql.exec.FunctionRegistry=ERROR
配置Pycharm
注意:配置好环境变量重启下电脑,不然可能存在pycharm无法加载系统环境变量的情况
wc.txt
hello hadoop hadoop spark python flink storm spark master slave first second thrid kafka scikit-learn flume hive spark-streaming hbase
wordcount测试代码
from pyspark import SparkContext if __name__ == '__main__': sc = SparkContext('local', 'WordCount') textFile = sc.textFile("wc.txt") wordCount = textFile.flatMap(lambda line: line.split(" ")).map(lambda word: (word, 1)).redwww.devze.comuceByKey( lambda a, b: a + b) wordCount.foreach(print)
正常运行结果:
常见问题:
spark-shell报错Caused by: Java.lang.ClassNotFoundException: org.slf4j.Logger
解决方法:见上述配置一
Pyspark报错ModuleNotFoundError: No module named 'resource'
解决方法:spark2.4.0存在的bug,使用spark2.4.4
Pyspark报错org.apache.spark.sparkexception: python worker failed to connect back
解决方法:环境变量未配置正确,检查是否遗漏,并检查pycharm的configuration的环境变量里面能够看到
其他
关于%SPARK_HOME%\python\lib下的py4j-编程0.10.7-src.zip,pyspark.zip(未配置运行正常),也可以尝试添加到项目
到此这篇关于Win10搭建Pyspark2.4.4+Pycharm开发环境的图文教程(亲测)的文章就介绍到这了,更多相关Pyspark Pycharm开发环境内容请搜索我们以前的文章或继续浏览下面的相关文章希望大家以后多多支持我们!
精彩评论