15

I want to delete all geospacial fields that are NaN so I can properly index my MongoDB.

How do I find all documents that have this though?

db.collection.find( { field: {$not: { $type: 1 } } })

won't work since NaN is of type Number.

2 Answers 2

28
db.collection.find( { field: NaN })

actually works although I couldn't find any documentation on it

4
  • I do not see this as possible. db.collection.find({ field: 0/0 }) would actually match something that was possibly inserted as Nan but otherwise it will just not serialize to valid BSON. I Don't think this Q&A is valid when it cannot be reproduced.
    – Neil Lunn
    May 28, 2014 at 9:55
  • 2
    I don't understand your point, could you explain more please. May 28, 2014 at 10:10
  • 1
    Is there any pymongo version of this query ? Aug 24, 2015 at 8:52
  • @MayankJaiswal check my answer below.
    – conner.xyz
    Apr 28, 2016 at 18:08
9

Solution for PyMongo:

# If you're alright with numpy as a dependency
import numpy as np
db.collection.find({ 'field': np.nan })

or

db.collection.find({ 'field': float('nan') })

FYI: I ran into this issue because mongoexport (mongo 3.0.7) wrote NaN into the JSON files it created. This appears to have been addressed in 3.3.5.

So again using PyMongo and in a similar boat, you can replace NaN with Python's None, which mongoexport will convert to JSON valid null:

import numpy as np
for doc in list(db.collection.find({ 'field': np.nan }))
    update_one({'_id': ObjectId(doc['_id'])},
                {'$set': {'field': (lambda x: None if np.isnan(x) else x)(doc['field'])}})

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