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I'm having a very difficult time understanding the mechanics of the Google App Engine Datastore.
I want to understand the mechanics so I can build my database in an optimal way for the database.

Given my example below, can someone help me in:

  1. structure the database optimally
  2. understand the performance of both read and write given that structure

Example:
Let's say I have N baseball players and each has a unique ID.
I'd like to keep a daily tally of the homeruns hit by each player (storing a "total daily homeruns" property) and basically increment it when a homerun is hit.
So, as time increases, I'd like to show a graph of homeruns each day for each baseball player over X years.

Player 1
1/21/2011 - 2 homeruns
1/22/2011 - 0 homeruns
1/23/2011 - 1 homeruns

Read Requirement: Read the last 5 years of daily "homerun" data for a certain player?

Write Requirement: Increment a daily homerun count for a certain baseball player.

I would love to understand how to structure the data and also the mechanics of both read and write? Will this simple storage task scale? Thanks all.

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Are you going to develop in Python or Java? –  systempuntoout Feb 18 '11 at 10:36
    
I wonder how the programming language relates to this question –  guigouz Feb 18 '11 at 15:12

2 Answers 2

up vote 3 down vote accepted

I would model your requirements with a one-to-many relationship like this:

class Player(db.Model):
  name = db.StringProperty()

class DailyHomeruns(db.Model):
  date = db.DateProperty()
  counter = db.IntegerProperty()
  player = db.ReferenceProperty(Player)

To retrieve all the DailyHomeruns of a given Player you can do it in this way:

daily_homeruns = DailyHomeruns.all().filter('player =', player)
                                    .filter('date >', date_start)
                                    .filter('date <=', date_end)
                                    .order('date')

Read Requirement:

Google App Engine performance queries scales with the size of the result set and not with the size of the data set.

This means that if your last 5 years homeruns query set contains in average 800 entities *, this query performs the same whether it searches over a thousand entities or a million entities.

Write Requirement:
Writes are slow in Google App Engine but your scenario seems quite trivial and I don't see any possible contention/timeout problem; after all you just need to serially update the DailyHomeruns incrementing the counter for a small number of times per day.

Other thoughts:
If you need to calculate some stats, for example the total number of Homeruns of a given Player ,don't even think to use GQL for this purpose because it does not provide any aggregate function à la SQL.
Instead, you have to design your database upfront, defining a model to store the total count of Homeruns per player.
Using the transactions API, each time you increment the DailyHomeruns you will need to increment the TotalHomeruns entity for that Player.

* I have estimated 3 matches per week for 52 weeks multiplied per 5 years

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this is great. Thanks. –  Ryan Feb 18 '11 at 18:10

There's no single answer to this question. The datastore is really low level and it's up to you to create the right indexes and preprocess data so it can be retrieved faster. Also, depending on concurrent access to the same entity, you'd have to use pretty creative stuff like http://code.google.com/appengine/articles/sharding_counters.html

I can recommend you watching two Google I/O Sessions to get you started http://sites.google.com/site/io/under-the-covers-of-the-google-app-engine-datastore gives you a low-level overview of how everything works and why they were done this way (down to how the sectors are written to disk)

Then http://sites.google.com/site/io/building-scalable-web-applications-with-google-app-engine will show you how to use that low level stuff in real world applications.

There's another one which presents other solutions to common problems http://www.google.com/events/io/2009/sessions/BuildingScalableComplexApps.html - nice to open your mind to new kinds of solutions to the datastore's limitations.

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Great videos, a must see for all GAE coders. –  Peter Knego Feb 17 '11 at 21:34
    
Btw, sharding counters are used for properties that change several times a second. Using simple write for every change would hit a write limit on a single entity. –  Peter Knego Feb 17 '11 at 21:37
1  
@Peter Sharded counters are unnecessary for counting homeruns unless you have a baseball player who can hit more than one a second for an extended period. –  Nick Johnson Feb 17 '11 at 23:09
    
Yes I know. That's what I tried to point out in my comment. –  Peter Knego Feb 18 '11 at 7:33
    
Just to clarify, I added the sharded counters as an example of a limitation (concurrent transactions on the same entity) and solution to that. No direct relation to the homerun counting use-case. –  guigouz Feb 18 '11 at 15:09

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