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.

When running the below with 200 Documents and 1 DocUser the script takes approx 5000ms according to AppStats. The culprint is that there is a request to the datastore for each lockup of the lastEditedBy (datastore_v3.Get) taking 6-51ms each.

What I'm trying do is to make something that makes possible to show many entities with several properties where some of them are derived from other entities. There will never be a large number of entities (<5000) and since this is more of an admin interface there will never be many simultaneous users.

I have tried to optimize by caching the DocUser entities but I am not able to get the DocUser key from the query above without making a new request to the datastore.

1) Does this make sense - is the latency I am experiencing normal?

2) Is there a way to make this work without the additional requests to the datastore?

models.py

class Document(db.Expando):
    title = db.StringProperty()
    lastEditedBy = db.ReferenceProperty(DocUser, collection_name = 'documentLastEditedBy')  
...

class DocUser(db.Model):
    user = db.UserProperty()
    name = db.StringProperty()  
    hasWriteAccess= db.BooleanProperty(default = False)
    isAdmin = db.BooleanProperty(default = False)
    accessGroups = db.ListProperty(db.Key)
...

main.py

$out = '<table>'   
documents = Document.all()
for i,d in enumerate(documents):        
    out += '<tr><td>%s</td><td>%s</td></tr>' % (d.title, d.lastEditedBy.name)
$out = '</table>'
share|improve this question
    
Why are you looping on documents and then fetching all of them every time in the loop? Something is wrong with your main.py. –  mjibson Apr 29 '12 at 0:40
    
Sorry, error in my example code. Fixed now. –  Arne S Apr 29 '12 at 8:27
add comment

3 Answers

up vote 1 down vote accepted

One way to do it is to prefetch all the docusers to make a lookup dictionary, with the keys being docuser.key() and values being docuser.name.

    docusers = Docuser.all().fetch(1000)
    docuser_dict = dict( [(i.key(), i.name) for i in docusers] )

Then in your code, you can get the names from the docuser_dict by using get_value_for_datastore to get the docuser.key() without pulling the object from the datastore.

    documents = Document.all().fetch(1000)
    for i,d in enumerate(documents):
        docuser_key = Document.lastEditedBy.get_value_for_datastore(d)
        last_editedby_name = docuser_dict.get(docuser_key)
        out += '<tr><td>%s</td><td>%s</td></tr>' % (d.title, last_editedby_name)
share|improve this answer
    
Thank you this works great. –  Arne S Apr 29 '12 at 22:20
add comment

If you want to cut instance-time, you can break a single synchronous query into multiple asynchronous queries, which can prefetch results while you do other work. Instead of using Document.all().fetch(), use Document.all().run(). You may have to block on the first query you iterate on, but by the time it is done, all other queries will have finished loading results. If you want to get 200 entities, try using 5 queries at once.

q1 = Document.all().run(prefetch_size=20, batch_size=20, limit=20, offset=0)
q2 = Document.all().run(prefetch_size=45, batch_size=45, limit=45, offset=20)
q3 = Document.all().run(prefetch_size=45, batch_size=45, limit=45, offset=65)
q4 = Document.all().run(prefetch_size=45, batch_size=45, limit=45, offset=110)
q5 = Document.all().run(prefetch_size=45, batch_size=45, limit=45, offset=155)
for i,d in enumerate(q1):        
    out += '<tr><td>%s</td><td>%s</td></tr>' % (d.title, d.lastEditedBy.name)
for i,d in enumerate(q2):        
    out += '<tr><td>%s</td><td>%s</td></tr>' % (d.title, d.lastEditedBy.name)
for i,d in enumerate(q3):        
    out += '<tr><td>%s</td><td>%s</td></tr>' % (d.title, d.lastEditedBy.name)
for i,d in enumerate(q4):        
    out += '<tr><td>%s</td><td>%s</td></tr>' % (d.title, d.lastEditedBy.name)
for i,d in enumerate(q5):        
    out += '<tr><td>%s</td><td>%s</td></tr>' % (d.title, d.lastEditedBy.name)

I apologize for my crummy python; but the idea is simple. set your prefetch_size = batch_size = limit, and start all your queries at once. q1 has a smaller size because we will block on it first, and blocking is what wastes time. By the time q1 is done, q2 will be done or almost done, and q3-5 you will pay zero latency.

See https://developers.google.com/appengine/docs/python/datastore/async#Async_Queries for details.

share|improve this answer
    
Thank you. This is interesting but I hope I will not need to do these kinds of hacks in order to make my application perform reasonably –  Arne S Apr 30 '12 at 10:40
    
This isn't really a hack. This is how you unlock the power of appengine. It can comfortably do 5-10 queries in parallel, and you can wrap this up in a single method def multiquery(...). I do this all the time in appengine java, and dropped our cost from $70/day to $25/day. Use asynchronous everything. All appengine services can be used asynchronously, which is how you cut your instance hours to a minimum. –  Ajax Apr 30 '12 at 14:28
    
Also, if your DocUser reference property is causing expensive repeated gets() on the same entity, you should consider caching the keys of each lookup property while you are iterating, and then resolve only the unique keys, so you are only getting one at once. I would recommend doing this asynchronously as well; if possible. –  Ajax Apr 30 '12 at 14:47
    
Thank you again. I have been thinking a bit about this and one thing I do not understand is how this technique could be applied if one does not know anything about the number of entities that will be returned. How did you implement that in your multiquery(...) method? –  Arne S May 25 '12 at 11:05
1  
Alternatively one could first run both a count query and a query for the X first results asynchronous. If the count is more than X, additional sliced queries could be run in parallel and results combined with the first query. If X is smaller results from the first query would simply be returned. Further reduction of latency could maybe be achieved by initially starting Y asynchronous sliced queries that in sum add up to X and combining these results with additional queries based on the result of the count query if necessary. This could all be handled by the function based on the size of X. –  Arne S May 31 '12 at 8:42
show 4 more comments

This is a typical anti-pattern. You can workaround this by:

share|improve this answer
    
Thank you for your feedback. I now understand that the GAE datasore is a not as advanced and easy going as I thought first it was. I should probably use NBC instead but that would make it necessary to rewrite the whole application. I cannot get Nick's code to work and I see that there are some comments on his blog that something is not working anymore. Have you tested this recently? –  Arne S Apr 29 '12 at 22:13
add comment

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.