Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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?

share|improve this question
    
related: stackoverflow.com/questions/9124398/… –  mattes Mar 19 at 18:18

3 Answers 3

Considering the number of records, it seems obvious indeed that you get a memory error. The garbage collector is called by default when the request ends, which explains why the memory used is increasing like this.

In this kind of situation what I usually do is calling the garbage collector manually with gc.collect() after each page is fetched.

It would look something like this:

import cloudstorage as gcs
import gc

cursor = None
more = True
gcs_file = gcs.open(date + '.csv', 'w')
query = Item.query().filter(Item.created_at >= date).filter(Item.created_at < date+1day)

while more:
  records, cursor, more = query.fetch_page(50, cursor)
  gc.collect()
  for record in records:
    gcs_file.write(record)

gcs_file.close()

It has been working for me in many cases.

share|improve this answer
    
good idea. it is giving me the same error though, unfortunately. Not sure how the ` gcs_file.write(record)` works, yet. If this functions buffers everything first, then this would be a problem. –  mattes Mar 19 at 16:08
    
Shouldn't gc.collect() go inside the loop? –  jterrace Mar 19 at 16:36
    
He says this is pseudo-code so I guess there's another loop around. He writes records 50 per 50, so to me there's no need to put the gc.collect() inside the for loop. the gcs_file.write method should write in chunks into cloud storage. @mattes can you show the actual code you're using, just to be sure ? –  brian Mar 19 at 16:48
    
I've updated my code, let me know if this is what you do. –  brian Mar 19 at 16:53
    
gist.github.com/mattes/9646173 –  mattes Mar 19 at 17:00
up vote 0 down vote accepted

I finally figured it out. Since all data is in NDB datastore I wasn't really able to test everything locally, so I found logging.info("Memory Usage: %s", runtime.memory_usage().current()) extremely helpful. (Import with from google.appengine.api import runtime).

The problem is the "In-Context Cache": query results are written back to the in-context cache. More information. See an example to disable the In-Context Cache for an Entity Kind.

My calculation was slightly wrong though. A generated CVS file is about 300 MB big. It is generated/ saved to Google Cloud Storage within 5 minutes.

Memory consumption without gc.collect()

Peak memory consumption was about 480MB.

In comparison, with an added gc.collect() in the while True: loop (link) as suggested by @brian in the comment above, the memory consumption peak was about 260MB. But it took quite long, about 20 minutes.

enter image description here

share|improve this answer

The in context cache might be part of your issue, but fetch_page in general is a leaky method. If you're doing repeated queries, wrap your work in @ndb.toplevel so queues are cleared in between queries and garbage collection can be more effective.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.