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---
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id: multi-value-dimensions
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title: "Multi-value dimensions"
---
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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:
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```
{"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 ](../design/segments.md#multi-value-columns ). Examples in this document
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are in the form of [native Druid queries ](querying.md ). Refer to the [Druid SQL documentation ](sql.md ) for details
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about using multi-value string dimensions in SQL.
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## 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 values
* `ARRAY` : retains the original order of the values
See [Dimension Objects ](../ingestion/index.md#dimension-objects ) for information on configuring multi-value handling.
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## Querying multi-value dimensions
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The following sections describe filtering and grouping behavior based on the following example data, which includes a multi-value dimension, `tags` .
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```
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{"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
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{"timestamp": "2011-01-14T00:00:00.000Z", "tags": []} #row4
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```
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> Be sure to remove the comments before trying out the sample data.
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### Filtering
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All query types, as well as [filtered aggregators ](aggregations.md#filtered-aggregator ), can filter on multi-value
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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.
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- The Column Comparison filter will match a row if the dimensions have any overlap.
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- 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.
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The following example illustrates these rules. This query applies an "or" filter to match row1 and row2 of the dataset above, but not row3:
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```
{
"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
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topN and groupBy queries can group on multi-value dimensions. When grouping on a multi-value dimension, _all_ values
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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
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your filter, you can use a [filtered dimensionSpec ](dimensionspecs.md#filtered-dimensionspecs ). This can also
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improve performance.
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## Example: GroupBy query with no filtering
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See [GroupBy querying ](groupbyquery.md ) for details.
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```json
{
"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"
}
]
}
```
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This query returns the following result:
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```json
[
{
"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"
}
}
]
```
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Notice that original rows are "exploded" into multiple rows and merged.
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## Example: GroupBy query with a selector query filter
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See [query filters ](filters.md ) for details of selector query filter.
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```json
{
"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"
}
]
}
```
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This query returns the following result:
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```json
[
{
"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"
}
}
]
```
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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
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the multiple values matches the query filter.
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## Example: GroupBy query with selector query and dimension filters
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To solve the problem above and to get only rows for "t3", use a "filtered dimension spec", as in the query below.
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See filtered `dimensionSpecs` in [dimensionSpecs ](dimensionspecs.md#filtered-dimensionspecs ) for details.
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```json
{
"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"
}
]
}
```
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This query returns the following result:
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```json
[
{
"timestamp": "1970-01-01T00:00:00.000Z",
"event": {
"count": 2,
"tags": "t3"
}
}
]
```
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Note that, for groupBy queries, you could get similar result with a [having spec ](having.md ) but using a filtered
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`dimensionSpec` is much more efficient because that gets applied at the lowest level in the query processing pipeline.
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Having specs are applied at the outermost level of groupBy query processing.