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Assuming I have a model

class MyModelList(db.Model):
  listed_props = db.StringListProperty(indexed=True)

and I query it with

SELECT * from MyModelList where listed_props = 'a' and listed_props = 'b'

will it be almost as performant (latency wise) as if I had a model

class MyModelProps(db.Model):
  property_1 = db.StringProperty(indexed=True)
  property_2 = db.StringProperty(indexed=True)

which I would query with:

SELECT * from MyModelProps where property_1 = 'a' and property_2 = 'b'

and a composite index of

- kind: MyModelProps
   - name: property_1
   - name: property_2

The query for the first example with MyModelList seems harder to answer because the datastore will have to merge the listed_props index with itself (I assume 2 binary searches to find the start and then merging the indexes) compared to the second example (I assume 1 binary search to find the start and then just read).

This will be especially complicated if the index of MyModelList.listed_props needs to be sharded across multiple bigtable tablets.

Can I expect about the same performance (latency wise) for the two?

PS: The reason I'm asking is because I'd love to go with MyModelList.listed_props as it is much cheaper to update existing entities because I could get rid of a lot of composite indexes.

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1 Answer 1

up vote 0 down vote accepted

Performance wise it is a very bad idea to do queries without composite indexes like

SELECT * from MyModelList where listed_props = 'a' and listed_props = 'b'

It is much more performant if you do

SELECT * from MyModelProps where property_1 = 'a' and property_2 = 'b'

with a composite index, even if it doesn't need one.

I've implemented both solutions and ran it in a live system with 2.7 million records. The one with composite index was about 100x faster.

There is a fantastic article that explains it all:


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