可以使用Apache Beam和Google Cloud Dataflow来处理大量文件,并为文件名添加元数据,例如创建日期和文件大小等。以下是一个示例管道,用于处理Google Cloud Storage中的1M+个.csv文件,并为每个文件添加文件大小并将其写入BigQuery。
import apache_beam as beam
class AddMetadata(beam.DoFn):
"""
Add metadata to the filename
"""
def process(self, element):
from google.cloud import storage
from datetime import datetime
import os
bucket_name = 'my-bucket'
storage_client = storage.Client()
bucket = storage_client.get_bucket(bucket_name)
blob = bucket.get_blob(element)
# Add file size and creation time metadata to the filename
filename_with_metadata = f"{element}|{blob.size}|{datetime.fromtimestamp(os.path.getctime(element)).strftime('%Y-%m-%d %H:%M:%S')}"
return filename_with_metadata
def run_pipeline():
# Set up the pipeline options
options = beam.options.pipeline_options.PipelineOptions(
runner='DataflowRunner',
region='us-central1',
project='my-project',
job_name='add-metadata',
temp_location='gs://my-bucket/temp',
setup_file='./setup.py'
)
# Create the pipeline
with beam.Pipeline(options=options) as p:
# Read filenames from Google Cloud Storage
files = p | 'Read filenames' >> beam.io.ReadFromText('gs://my-bucket/files.txt')
# Add filename metadata
files_with_metadata = files | 'Add metadata' >> beam.ParDo(AddMetadata())
# Write files with metadata to BigQuery
files_with_metadata | 'Write to BigQuery' >> beam.io.WriteToBigQuery(
'my_dataset.my_table',
schema='filename:STRING,size:INTEGER,created:DATETIME',
write_disposition=beam.io.BigQueryDisposition.WRITE_TRUNCATE,
create_disposition=beam.io.BigQueryDisposition.CREATE_IF_NEEDED
)
if __name__ == '__main__':
run_pipeline()
该示例管道使用AddMetadata
DoFn
来获取文件大小和创建日期,并将其添加到文件名中。然后,将文件名和元数据写入BigQuery以进行进一步分析。您可以将此管道更改为处理其他类型的文件,例如图像或日志文件。