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I'm using CouchDB for storing data about events. Each event has a start date/time and end date/time. I'd like to create a view now, that allows me to get a list of all events that happen on a specific date/time. But the events don't have a single dates, they can rather range over several days.

Now I don't know how I can reflect this in my view function. Unfortunately, I need granularity on minute level, so emitting a key for each minute might not be a valid solution. So how can I do that?

Thanks in advance!

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Tough one, I don't think range queries are CouchDB's forte. – Till Jun 30 '10 at 15:50
up vote 8 down vote accepted

Ok, here's a solution anyway! I just ping-ponged with Jan (Lehnardt) of CouchDB and he told me that I can emit() multiple times within a map. Something I did not know up until now.

To make it easier for myself, I'm assuming your end and start time are TIMESTAMP values already. If not, you need to convert them in your map or generally switch to them.

I'm also gonna assume that an event starts at a full minute (e.g. 16:51:00) and not at 16:51:23. Same on the end date.

Example document:

    "_id"   : "super-random-id",
    "name"  : "event 1",
    "start" : "TIMESTAMP",
    "end"   : "TIMESTAMP"

Here's the map:

function (doc) {
    if (doc.start == undefined || doc.end == undefined) {
    var current = doc.start;
    while (current <= doc.end) {
        emit(current, doc.id);
        current = current + 60; // increment by 1 minute

Then it should be easy to query with startkey and endkey. You could probably add an _list here.

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Thanks for your answer, but as I already wrote in my question, "emitting a key for each minute might not be a valid solution". This is due to the fact that I have very long time ranges on the hand (i.e multiple days). On the other hand I still need a fine granularity. This can only be achieved by emitting thousands of keys per document, which will not really scale well as far as I know. But thanks again for your thoughts. – b_erb Jun 30 '10 at 17:21
Well, views are computed once and then they're read. I don't think it should be an issue, but I see what you mean. – Till Jul 1 '10 at 17:29

I found finally a good solution using GeoCouch: http://www.diretto.org/2010/08/efficient-time-based-range-queries-in-couchdb-using-geocouch/

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This is the right answer, but unfortunately the link is dead. – dgreisen Mar 8 '15 at 13:41
From article: GeoCouch "allows for spatial searches using bounding boxes... GeoCouch’s spatial index expects GeoJSON entries (which are also not bound to any distinct format like WGS84), so we emit our time periods as positions with bounding boxes. The longitudinal values are ignored and set to 0 and the latitudinal values represent the temporal start and end point encoded as time stamps. Thus, we... efficently query all entries within a given period." web.archive.org/web/20131121023735/http://www.diretto.org/2010/… – dgreisen Mar 8 '15 at 13:45

Emiting at the minute level should be fine. Let's assume that you have 60 days events, it would take : 24*60*60 = 130,000 index entries to emit every minute. As mentioned by Till, views are only built once as long as the document is not updated, and typically for this kind of archive, the document won't be updated very often.

So the only sensitive thing is to make sure that the view will be built fast enough. Looping 150,000 times takes on average 12ms on the javascript interpreter of my web browser (I assume that CouchDb's interpreter is much more optimized than this one).

So if we add the overhead of emitting and decide to be pessimistic, let's say that updating this index entry will take about 100ms (I think it'd rather take around 50ms considering that writes are fast with CouchDb).

I don't know your requirements but I do not think this would be a deal breaker in most situations.

So I'd say the real steps to take are the following :

1) Anticipate by designing your domain model in a way such that these event documents are independent (are not contained in a graph for example) to minimize the update frequency (in most scenarios they would almost never need to be updated).

2) If you are to do bulk operations (> 100 documents), then the indexing time will start to be noticeable. I would work on the user experience, and let the user do something else and notify him when the operation finishes. However I tend to think that in most situations there wouldn't be a need for bulk inserts / updates. (> 100 documents at a time).

3) While writing that, I just realized that this indexing time can actually be transparent for the end user even for bulk operations. Indexes are only updated on read, therefore the bulk insert will be fast and the nice thing is that you can query this specific view with the stale option set to true so that the user does not have to wait for the index to be completely built :) I think it is safe to assume there is rarely a need to really time updates in these scenarios.

4) Finally Remember that CouchDb relies on B-Trees so once the view index is updated, you might have billions and billions of entries, the read-time would not be affected.

The bottom line is that I think the natural way to achieve that with CouchDb would be to emit on every minute. While it might seem awkard, CouchDb has been designed to handle this usage just fine.

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