I am looking to create a system for tracking versions (history) of content of ndb.Models/Expandos on Google App Engine (Python).
The content can be relatively lengthy and there may be many versions, but diffs between versions may be quite small. I expect others have done something like this and I would like to know how they went about it and what principles may guide the design & development.
It is not known at the time of deployment what the attributes of the data models would be (e.g. "title", "content", "body", "dated", etc.), but the types are known (dates, text, etc).
My initial thought is to have the arranged something like this:
from google.appengine.ext import ndb class Version(ndb.Expando): version_id = ndb.IntegerProperty() # dated, etc. # data properties are not known in advance, hence Expando class MyDoc(ndb.Model): head = ndb.KeyProperty(kind=Version) instance = ndb.kind=Property(kind=Version, repeated=True) # ^^^ may be a StructuredProperty?
The overview of the algorithms is:
Every time a user saves a document, put all the latest data into a new
Version and point
head to that instance.
At that point, or some time after, go through old versions and change full saves to diffs (to save on space) with e.g. diff-match-patch. I would expect one full save per hour, day or some set time - or some set number of diffs.
head is trivial.
Older versions would be marked as a full save or a diff, and depending on which the data may be returned directly or compiled from the diff.
I am sure others have tackled this problem, and I would love to know what ideas and implementations are out there about it. Obviously, there are full version control systems such as Git, Mercurial and Subversion and CVS - but those are both overkill for the intended purpose and would not work on Google App Engine.