I am using elastic search 7.5.
I have an elastic search mapping that looks like this:
{
...
"assigned_on" : { "type" : "date" },
"collection_complete" : { "type" : "date" },
"correct_complete" : { "type" : "date" },
"production_complete" : { "type" : "date" },
"complete_on" : { "type" : "date" }
...
}
Each of the properties are dates which are set when that step in the process completes. So the assigned_on
signals the start of the process, and collection_complete
will signify the end of the first step of the process.
Thus the difference between each date is the time that lapsed while that step was taking place. For example, the difference between collection_complete
and correct_complete
is the amount of time the "correct" step took for that particular document.
This is what I have currently tried:
{
"query" : {"match_all" : {}},
"aggs" : {
"average_step_durations" : {
"aggs" : {
"collection_average_duration" : {
"avg" : { "script" : "doc['collection_complete'] - doc['assigned_on']" }
},
"correction_average_duration" : {
"avg" : { "script" : "doc['correct_complete'] - doc['collection_complete']" }
},
"production_average_duration" : {
"avg" : { "script" : "doc['production_complete'] - doc['correct_complete']" }
}
}
}
}
}
How do I aggregate the average numbers of days each step takes? This is an example of what I'm wanting my output to look like:
"_shards": ...,
"hits": ...,
"aggregations": {
"average_step_durations": {
"collection_stage" : 23.45,
"correct_stage" : 3.89,
"production_stage" : 4.51 // All these values would be in unit of days.
}
}
}