python - 模块未找到错误 : No module named 'airflow'

标签 python google-cloud-platform airflow google-cloud-dataflow google-cloud-composer

我正在使用 Airflow PythonOperator 来使用数据流运行器执行 python Beam 作业。 Dataflow 作业返回错误 "ModuleNotFoundError: No module named 'airflow'"

在 DataFlow UI 中,使用 PythonOperator 调用作业时使用的 SDK 版本是 2.15.0。如果 作业是从 Cloud shell 执行的,所使用的 SDK 版本是 2.23.0。该工作在从以下位置启动时有效 外壳。

Composer 的环境详细信息是:

Image version = composer-1.10.3-airflow-1.10.3

Python version= 3

之前的帖子建议使用 PythonVirtualenvOperator 运算符。我尝试使用以下设置:

requirements=['apache-beam[gcp]'],

python_version=3

Composer 返回错误 "'install', 'apache-beam[gcp]']' returned non-zero exit status 2."

如有任何建议,我们将不胜感激。

这是调用数据流作业的 DAG。我没有展示 DAG 中使用的所有函数,但将导入保留在:

  import logging
    import pprint
    import json
    from airflow.operators.bash_operator import BashOperator
    from airflow.operators.python_operator import PythonOperator
    from airflow.contrib.operators.dataflow_operator import DataflowTemplateOperator
    from airflow.models import DAG
    import google.cloud.logging
    from datetime import timedelta
    from airflow.utils.dates import days_ago
    from deps import utils
    from google.cloud import storage
    from airflow.exceptions import AirflowException
    from deps import logger_montr
    from deps import dataflow_clean_csv
    
    
    
    dag = DAG(dag_id='clean_data_file',
              default_args=args,
              description='Runs Dataflow to clean csv files',
              schedule_interval=None)
    
    def get_values_from_previous_dag(**context):
        var_dict = {}
        for key, val in context['dag_run'].conf.items():
            context['ti'].xcom_push(key, val)
            var_dict[key] = val
    
    populate_ti_xcom = PythonOperator(
        task_id='get_values_from_previous_dag',
        python_callable=get_values_from_previous_dag,
        provide_context=True,
        dag=dag,
    )
    
    
    dataflow_clean_csv = PythonOperator(
        task_id = "dataflow_clean_csv",
        python_callable = dataflow_clean_csv.clean_csv_dataflow,
        op_kwargs= {
         'project': 
         'zone': 
         'region': 
         'stagingLocation':
         'inputDirectory': 
         'filename': 
         'outputDirectory':     
        },
        provide_context=True,
        dag=dag,
    )

populate_ti_xcom >> dataflow_clean_csv

我使用 ti.xcom_pull(task_ids = 'get_values_from_previous_dag') 方法分配 op_kwargs。

这是被调用的数据流作业:

import apache_beam as beam
import csv
import logging
from apache_beam.options.pipeline_options import PipelineOptions
from apache_beam.io import WriteToText


def parse_file(element):
  for line in csv.reader([element], quotechar='"', delimiter=',', quoting=csv.QUOTE_ALL):
      line = [s.replace('\"', '') for s in line]
      clean_line = '","'.join(line)
      final_line = '"'+ clean_line +'"'
      return final_line

def clean_csv_dataflow(**kwargs): 
    argv = [
           # Dataflow pipeline options 
           "--region={}".format(kwargs["region"]),
           "--project={}".format(kwargs["project"]) ,
           "--temp_location={}".format(kwargs["stagingLocation"]),
           # Setting Dataflow pipeline options  
           '--save_main_session',
           '--max_num_workers=8',
           '--autoscaling_algorithm=THROUGHPUT_BASED', 
           # Mandatory constants
           '--job_name=cleancsvdataflow',
           '--runner=DataflowRunner'     
          ]
    options = PipelineOptions(
      flags=argv
      )
      
    pipeline = beam.Pipeline(options=options)
    
    inputDirectory = kwargs["inputDirectory"]
    filename = kwargs["filename"]
    outputDirectory = kwargs["outputDirectory"]

    
    outputfile_temp = filename
    outputfile_temp = outputfile_temp.split(".")
    outputfile = "_CLEANED.".join(outputfile_temp)   

    in_path_and_filename = "{}{}".format(inputDirectory,filename)
    out_path_and_filename = "{}{}".format(outputDirectory,outputfile)
    
    pipeline = beam.Pipeline(options=options)
   

    clean_csv = (pipeline 
      | "Read input file" >> beam.io.ReadFromText(in_path_and_filename)
      | "Parse file" >> beam.Map(parse_file)
      | "writecsv" >> beam.io.WriteToText(out_path_and_filename,num_shards=1)
    )
   
    pipeline.run()

最佳答案

此答案由@BSpinoza 在评论区提供:

What I did was move all imports from the global namespace and place them into the function definitions. Then, from the calling DAG I used the BashOperator. It worked.

此外,推荐的方法之一是使用 DataFlowPythonOperator .

关于python - 模块未找到错误 : No module named 'airflow' ,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/63351208/

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