1

What I'm trying to do:

Calculate the Euclidean distance between a given array ([0,1.2,0,1.5,0,0.3,1,2,1] for example) and all the other arrays inside the objects of a collection with the structure below:

{'myname':'001','myarray':[0,1,2.0,1,0,0.3,1,2,1]}

How I am creating the collection:

from pymongo import MongoClient

mydata = [{'myname':'001',
          'myarray':[0,1,2.0,1,0,0.3,1,2,1]},
          {'myname':'002',
          'myarray':[0,0,0,1,1,0.7,1,2,1]},
          {'myname':'003',
          'myarray':[0,1,2,1.2,1,2,1,2,1]},
          {'myname':'004',
          'myarray':[0,0,2,0,0,0,1.3,2,1]},
          {'myname':'005',
          'myarray':[0,1,0.5,1,0,0,1,2,1]},
          ]


client = MongoClient('localhost', 27017)
db = client['mydb']
collection = db['mydata']

for data in mydata:
    collection.insert_one(data)

What I found on the other solutions:

I saw many examples of how to calculate a geospatial distance using MongoDB, but unfortunately, it looks like it only works with a 2-elements arrays (as in [longitude, latitude]). In these cases, people are using $near and $geoNear. I also found something about map-reduce functions which should be useful for this situation, but I'm new on MongoDB and I don't have an idea of how can I create and execute a function through collections.

What would be great to have:

A Python code using the code example above for return a list of each object with its distance to the given array like: {'myname':'001','mydistance': 15.}

1 Answer 1

3

Following the map-reduce syntax in pymongo, we need map and reduce JS functions passed in as strings. To specify the point wrt. which we'll calculate the distance, we need to pass in an additional variable (target) into the function scope. In sum, the operation looks something like this:

from bson.code import Code

map = Code("function () {....")
reduce = Code("function (key, values) {...")

point_array = collection.find({ 'myname': '005' }, { 'myarray': 1 })[0]['myarray']
result = collection.map_reduce(map, reduce, "myresults", scope={"target": point_array})

There are probably a million ways to split up the map-reduce functions, but here's how I've done it. First, we have the map function, which emits a bunch of element-wise differences between one array and your "target" array, along with a key. I've gone ahead and assumed that myname is unique, so I've used that as the key:

# map
function () {
  var i;
  for (i = 0; i < this.myarray.length; i++) {
    emit(this.myname, this.myarray[i] - target[i]);
  }
}

Then, to get our final distance, the reduce function takes the differences emitted from the map step, sums their squares, then takes the squareroot of that sum, according to the formula:

# reduce
function (key, values) {
  var total = 0;
  var i = 0;
  for (i = 0; i < values.length; i++) {
    total = total + Math.pow(values[i],2);
  }
  return Math.sqrt(total);
}

The output of result is then:

{'_id': '001', 'value': 1.5297058540778354}
{'_id': '002', 'value': 1.6552945357246849}
{'_id': '003', 'value': 2.7}
{'_id': '004', 'value': 2.083266665599966}
{'_id': '005', 'value': 0.0}
2
  • GREAT! Thank you very much! Dec 14, 2018 at 23:19
  • Look... There is a missing bracket on the last line of the first code cell. I tried to correct that, but I can't edit only a single character. Dec 14, 2018 at 23:21

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.