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Lets say you have an Entity like this.

postid=db.StringProperty()
comment=db.StringProperty()

for storing comments on a certain post identified by post id. The comments can hit billions of records. Now if you want to get all comments belonging to a certain post you can do,

query=Comment.all()
query.filter('postid = ','id').

Or instead of doing that you can define post like

class Post(db.Model)
    commentids=db.StringListProperty()#store list of comment ids

This way you can directly get the comment by doing

comment=Comment.get_by_key_name('commentkey')

In the long run (when comments hit millions or even billions mark) which one is more efficient. In other words which one is more appropriate.

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2 Answers 2

up vote 3 down vote accepted

If you're planning to have billions of comments consider also using the newest NDB API, which, among other things, supports automatic caching.

Instead of filtering them by postid you should probably use a parent for your Comment entity. Here is an example (using DB, but it's very similar using NDB):

If you have model like this one:

class Post(db.Model):
  desc = db.StringProperty()

class Comment(db.Model):
  desc = db.TextProperty()

You can create posts and comments like:

post_db = Post(desc='Hello World')
post_db.put()

comment_db = Comment(parent=post_db, desc='Nice post')
comment_db.put()

And finally if you want to get all the comments from a particular post_db entity:

comment_dbs = Comment.all().ancestor(post_db)
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By doing this though, in the HR datastore you limit yourself to about 1-2 write per entity group per second. If you expect a high frequency of commenting on each post, then you will have to mitigate this (try using pull queues or a push queue with a 2/s execution rate) or explicitly catching contention exceptions and retrying the post later. –  someone1 Sep 7 '12 at 18:46
    
Entity groups are to be used when you need transactons, not as a parent-child relationship. –  Peter Knego Sep 7 '12 at 21:40
    
@PeterKnego I think there are other examples that even if you don't need transactions you can use ancestors. For example if you have User and Setting entities, you could use the same key_name for different kind of settings to get the advantage of: Setting.get_or_insert(background_color, parent=user_db, value='#ff0000') without including something ugly and unique in the key_name :) –  Lipis Sep 7 '12 at 23:13
    
@PeterKnego or it should be avoided in general if you're not using transactions? –  Lipis Sep 7 '12 at 23:14
2  
The ancestor solution looks fine, the postid query should work too. The list of commentids in the Post doesn't scale well, you end up with rewriting the Post each time a comment is added. –  Guido van Rossum Sep 8 '12 at 20:17

Entities are limited to 1MB in size. Also, entity can have max 5000 index entries, so if your commentids is indexed then the max size would be 5000 entries.

So option two would not be a good fit for millions of comments (I've never seen a site with a million of comments per post, but Reddit does get over 5k for popular posts.

Also, you'd probably need a way to list comments in a progressive way (pagging, progressive scrolling). In this case option one via query would be better as you could list comments progressivelly via cursors and also you could sort properties via different criteria ( time, votes, etc..).

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Thanks, the problem for me is not the number of comments per post. I am worried about the speed of execution when you filter from Comment.all() when number of entities under Comment hits a large number. I am very much aware of 5k limit and I dont think I will ever hit that limit for a single post. –  specialscope Sep 8 '12 at 3:35

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