I just watched Batch data processing with App Engine session of Google I/O 2010, read some parts of MapReduce article from Google Research and now I am thinking to use MapReduce on Google App Engine to implement a recommender system in Python.
I prefer using appengine-mapreduce instead of Task Queue API because the former offers easy iteration over all instances of some kind, automatic batching, automatic task chaining, etc. The problem is: my recommender system needs to calculate correlation between instances of two different Models, i.e., instances of two distinct kinds.
I have these two Models: User and Item. Each one has a list of tags as an attribute. Below are the functions to calculate correlation between users and items. Note that
calculateCorrelation should be called for every combination of users and items:
def calculateCorrelation(user, item): return calculateCorrelationAverage(u.tags, i.tags) def calculateCorrelationAverage(tags1, tags2): correlationSum = 0.0 for (tag1, tag2) in allCombinations(tags1, tags2): correlationSum += correlation(tag1, tag2) return correlationSum / (len(tags1) + len(tags2)) def allCombinations(list1, list2): combinations =  for x in list1: for y in list2: combinations.append((x, y)) return combinations
calculateCorrelation is not a valid Mapper in appengine-mapreduce and maybe this function is not even compatible with MapReduce computation concept. Yet, I need to be sure... it would be really great for me having those appengine-mapreduce advantages like automatic batching and task chaining.
Is there any solution for that?
Should I define my own InputReader? A new InputReader that reads all instances of two different kinds is compatible with the current appengine-mapreduce implementation?
Or should I try the following?
- Combine all keys of all entities of these two kinds, two by two, into instances of a new Model (possibly using MapReduce)
- Iterate using mappers over instances of this new Model
- For each instance, use keys inside it to get the two entities of different kinds and calculate the correlation between them.