In my NDB Datastore I have more than 2 million records. I want to export these records grouped by
created_at date into CSV files on Google Cloud Storage. I calculated that every file would then be about 1GB.
2014-03-18.csv, ~17000 records, ~1GB 2014-03-17.csv, ~17000 records, ~1GB 2014-03-18.csv, ~17000 records, ~1GB ...
My first approach (pseudo-code):
import cloudstorage as gcs gcs_file = gcs.open(date + '.csv', 'w') query = Item.query().filter(Item.created_at >= date).filter(Item.created_at < date+1day) records = query.fetch_page(50, cursor) for record in records: gcs_file.write(record)
But this (obviously?) leads into memory issues:
Error: Exceeded soft private memory limit with 622.16 MB after servicing 2 requests total
Should I use a MapReduce Pipeline instead or is there any way to make approach 1 work? If using MapReduce: Could I filter for
created_at without iterating over all records in NDB?