9.8 KiB
id | title |
---|---|
multi-value-dimensions | Multi-value dimensions |
Apache Druid supports "multi-value" string dimensions. Multi-value string dimensions result from input fields that contain an
array of values instead of a single value, such as the tags
values in the following JSON array example:
{"timestamp": "2011-01-12T00:00:00.000Z", "tags": ["t1","t2","t3"]}
This document describes filtering and grouping behavior for multi-value dimensions. For information about the internal representation of multi-value dimensions, see segments documentation. Examples in this document are in the form of native Druid queries. Refer to the Druid SQL documentation for details about using multi-value string dimensions in SQL.
Overview
At ingestion time, Druid can detect multi-value dimensions and configure the dimensionsSpec
accordingly. It detects JSON arrays or CSV/TSV fields as multi-value dimensions.
For TSV or CSV data, you can specify the multi-value delimiters using the listDelimiter
field in the parseSpec
. JSON data must be formatted as a JSON array to be ingested as a multi-value dimension. JSON data does not require parseSpec
configuration.
The following shows an example multi-value dimension named tags
in a dimensionsSpec
:
"dimensions": [
{
"type": "string",
"name": "tags",
"multiValueHandling": "SORTED_ARRAY",
"createBitmapIndex": true
}
],
By default, Druid sorts values in multi-value dimensions. This behavior is controlled by the SORTED_ARRAY
value of the multiValueHandling
field. Alternatively, you can specify multi-value handling as:
SORTED_SET
: results in the removal of duplicate valuesARRAY
: retains the original order of the values
See Dimension Objects for information on configuring multi-value handling.
Querying multi-value dimensions
The following sections describe filtering and grouping behavior based on the following example data, which includes a multi-value dimension, tags
.
{"timestamp": "2011-01-12T00:00:00.000Z", "tags": ["t1","t2","t3"]} #row1
{"timestamp": "2011-01-13T00:00:00.000Z", "tags": ["t3","t4","t5"]} #row2
{"timestamp": "2011-01-14T00:00:00.000Z", "tags": ["t5","t6","t7"]} #row3
{"timestamp": "2011-01-14T00:00:00.000Z", "tags": []} #row4
Be sure to remove the comments before trying out the sample data.
Filtering
All query types, as well as filtered aggregators, can filter on multi-value dimensions. Filters follow these rules on multi-value dimensions:
- Value filters (like "selector", "bound", and "in") match a row if any of the values of a multi-value dimension match the filter.
- The Column Comparison filter will match a row if the dimensions have any overlap.
- Value filters that match
null
or""
(empty string) will match empty cells in a multi-value dimension. - Logical expression filters behave the same way they do on single-value dimensions: "and" matches a row if all underlying filters match that row; "or" matches a row if any underlying filters match that row; "not" matches a row if the underlying filter does not match the row.
The following example illustrates these rules. This query applies an "or" filter to match row1 and row2 of the dataset above, but not row3:
{
"type": "or",
"fields": [
{
"type": "selector",
"dimension": "tags",
"value": "t1"
},
{
"type": "selector",
"dimension": "tags",
"value": "t3"
}
]
}
This "and" filter would match only row1 of the dataset above:
{
"type": "and",
"fields": [
{
"type": "selector",
"dimension": "tags",
"value": "t1"
},
{
"type": "selector",
"dimension": "tags",
"value": "t3"
}
]
}
This "selector" filter would match row4 of the dataset above:
{
"type": "selector",
"dimension": "tags",
"value": null
}
Grouping
topN and groupBy queries can group on multi-value dimensions. When grouping on a multi-value dimension, all values
from matching rows will be used to generate one group per value. This can be thought of as the equivalent to the
UNNEST
operator used on an ARRAY
type that many SQL dialects support. This means it's possible for a query to return
more groups than there are rows. For example, a topN on the dimension tags
with filter "t1" AND "t3"
would match
only row1, and generate a result with three groups: t1
, t2
, and t3
. If you only need to include values that match
your filter, you can use a filtered dimensionSpec. This can also
improve performance.
Example: GroupBy query with no filtering
See GroupBy querying for details.
{
"queryType": "groupBy",
"dataSource": "test",
"intervals": [
"1970-01-01T00:00:00.000Z/3000-01-01T00:00:00.000Z"
],
"granularity": {
"type": "all"
},
"dimensions": [
{
"type": "default",
"dimension": "tags",
"outputName": "tags"
}
],
"aggregations": [
{
"type": "count",
"name": "count"
}
]
}
This query returns the following result:
[
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 1,
"tags": "t1"
}
},
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 1,
"tags": "t2"
}
},
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 2,
"tags": "t3"
}
},
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 1,
"tags": "t4"
}
},
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 2,
"tags": "t5"
}
},
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 1,
"tags": "t6"
}
},
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 1,
"tags": "t7"
}
}
]
Notice that original rows are "exploded" into multiple rows and merged.
Example: GroupBy query with a selector query filter
See query filters for details of selector query filter.
{
"queryType": "groupBy",
"dataSource": "test",
"intervals": [
"1970-01-01T00:00:00.000Z/3000-01-01T00:00:00.000Z"
],
"filter": {
"type": "selector",
"dimension": "tags",
"value": "t3"
},
"granularity": {
"type": "all"
},
"dimensions": [
{
"type": "default",
"dimension": "tags",
"outputName": "tags"
}
],
"aggregations": [
{
"type": "count",
"name": "count"
}
]
}
This query returns the following result:
[
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 1,
"tags": "t1"
}
},
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 1,
"tags": "t2"
}
},
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 2,
"tags": "t3"
}
},
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 1,
"tags": "t4"
}
},
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 1,
"tags": "t5"
}
}
]
You might be surprised to see "t1", "t2", "t4" and "t5" included in the results. This is because the query filter is applied on the row before explosion. For multi-value dimensions, a selector filter for "t3" would match row1 and row2, after which exploding is done. For multi-value dimensions, a query filter matches a row if any individual value inside the multiple values matches the query filter.
Example: GroupBy query with selector query and dimension filters
To solve the problem above and to get only rows for "t3", use a "filtered dimension spec", as in the query below.
See filtered dimensionSpecs
in dimensionSpecs for details.
{
"queryType": "groupBy",
"dataSource": "test",
"intervals": [
"1970-01-01T00:00:00.000Z/3000-01-01T00:00:00.000Z"
],
"filter": {
"type": "selector",
"dimension": "tags",
"value": "t3"
},
"granularity": {
"type": "all"
},
"dimensions": [
{
"type": "listFiltered",
"delegate": {
"type": "default",
"dimension": "tags",
"outputName": "tags"
},
"values": ["t3"]
}
],
"aggregations": [
{
"type": "count",
"name": "count"
}
]
}
This query returns the following result:
[
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 2,
"tags": "t3"
}
}
]
Note that, for groupBy queries, you could get similar result with a having spec but using a filtered
dimensionSpec
is much more efficient because that gets applied at the lowest level in the query processing pipeline.
Having specs are applied at the outermost level of groupBy query processing.