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.}