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I am using db.get([keys]) and experiencing extremely slow reads. It takes at least "9008cpu_ms 2125api_cpu_ms" for simple test. Keys array length is ~200. Is it normal? Entities are small:

p1 = db.StringProperty(indexed=False) - ~20 characters
p2 = db.StringProperty(indexed=False, required=True) ~10 characters
p3 = db.GeoPtProperty(indexed=False, required=True)
p4 = db.StringListProperty(indexed=False) 10 items x ~10 characters

Total entities in HRD datastore: ~1000. Fetched: ~200.

Appstats shows:

datastore_v3.RunQuery    9ms (29ms api)
datastore_v3.Next    32ms (16ms api)
datastore_v3.Next    11ms (16ms api)
datastore_v3.Next    16ms (16ms api)
datastore_v3.Next    86ms (16ms api)
datastore_v3.Next    8ms (16ms api)
datastore_v3.Next    84ms (16ms api)
datastore_v3.Next    8ms (16ms api)
datastore_v3.Next    92ms (16ms api)
datastore_v3.Next    14ms (16ms api)
datastore_v3.Next    82ms (16ms api)
datastore_v3.Next    8ms (16ms api)
datastore_v3.Next    86ms (16ms api)
datastore_v3.Next    96ms (16ms api)
datastore_v3.Next    7ms (16ms api)
datastore_v3.Next    92ms (16ms api)
datastore_v3.Next    92ms (16ms api)
datastore_v3.Next    9ms (16ms api)
datastore_v3.Next    89ms (16ms api)
datastore_v3.Next    7ms (4ms api)
datastore_v3.Get    5692ms (8ms api)
datastore_v3.Get    5688ms (8ms api)
datastore_v3.Get    5684ms (8ms api)</code>

And hundreds of:

datastore_v3.Get    ~ 5681ms (8ms api)

Source:

logging.debug('Fetching ' + str(len(m.keys())) + ' entities')
items = db.get(m.keys())
logging.debug('Done fetching items')

Log:

D 2011-10-30 22:46:41.495 Fetching 238 entities
D 2011-10-30 22:46:50.009 Done fetching items
W 2011-10-30 22:46:54.407 Full proto too large to save, cleared variables.

Update 1 (Monday, October 31, 2011 at 23:33:42 UTC):

While searching for possible solution, I have removed StringList property and recreated entities. No changes.

Sample entity:

ID/Name|description|location|name
id=804|Sample description|54.8968721,23.892426|Sample place

Update 2(Tuesday, November 01, 2011 at 12:27:31 UTC):

Screenshot of Appstats output:

Screenshot of Appstats output

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What is the actual wallclock time? How many of these are overlapping? –  Nick Johnson Oct 31 '11 at 23:18

1 Answer 1

up vote 1 down vote accepted

Yes, it's normal for fetching 1000 entities (each with 10 items in a listproperty!) to take a while. The high CPU milliseconds indicates your spending a lot of time decoding and processing the entities, aside from the API time spent actually fetching them.

Bear in mind that gets are strongly consistent by default. If you don't need this, you can speed things up by doing an eventually consistent get, as documented here.

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I had the same idea at one moment. But I have removed the List property from my model completely, recreated the entities and got very similar results, again, 7-10 seconds. –  Zygimantas Oct 31 '11 at 23:28
    
@Zygimantas As I asked in my comment, what is the wallclock time? Including the image of the appstats trace would be ideal. Fetching 1000 entities is always going to be fairly slow, though - you should try and minimize how many you have to process in a user-facing request. –  Nick Johnson Oct 31 '11 at 23:35
    
I am making screenshot, please give me a minute. –  Zygimantas Oct 31 '11 at 23:50
    
@Zygimantas I've updated my answer. Please edit your question to include the screenshot so others can benefit from it - dropbox stuff tends to go away after a while. –  Nick Johnson Nov 1 '11 at 0:16
    
Eventual consistency policy flag helped a little bit. Now to fetch 50 entities by key takes 2000ms instead of 4000ms. –  Zygimantas Nov 1 '11 at 0:40

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