I'm looking into using MongoDB as a time-series database. Once conern I have is that my application will require the ability to go back in time and fill in gaps in the time-series data. For example, I might have data at times 1, 2, 3, 6. After time 10 has been reported, I might then need to insert data for times 4, 5, 6. Will inserting the data be practical or will I suffer a big performance hit by needing to use slow/complex operations? Will updating time 6 with the same (or possibly new) value be straightforward or will different operations be required to insert new data then update existing data?

  • If you're using an index for the time field, the general order of insertion shouldn't matter. – WiredPrairie Feb 24 '14 at 13:41

Using the update and upsert flags this is easily done (MongoDB is awesome!). Below is some sample python code that does this.

import time
import datetime
import random
import csv
import os
import zipfile
import json
import pymongo
from pymongo import Connection

client = Connection('localhost')
db = client.pan2
collection = db.well1

maxloop = 10000
x = 1
y = random.randint(100,999)/random.randint(1,10)
v1 = 'value'+str(random.randint(1,10))
v2 = 'value'+str(random.randint(1,10))
v3 = 'value'+str(random.randint(1,10))

elaptime = time.clock()

while maxloop > 0:
    collection.update({'timestamp': x}, {'$set': {'value1':y, v1 : y/2, v2 : y/4}}, upsert=True)
    maxloop = maxloop - 1
    x = x + 1

print("Processing time was", elaptime, "seconds")

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