|TIMESTAMP|LONG|`0`, meaning 1970-01-01 00:00:00 UTC|Druid's `__time` column is reported as TIMESTAMP. Casts between string and timestamp types assume standard SQL formatting, such as `2000-01-02 03:04:05`, not ISO 8601 formatting. For handling other formats, use one of the [time functions](sql-scalar.md#date-and-time-functions).|
|DATE|LONG|`0`, meaning 1970-01-01|Casting TIMESTAMP to DATE rounds down the timestamp to the nearest day. Casts between string and date types assume standard SQL formatting—for example, `2000-01-02`. For handling other formats, use one of the [time functions](sql-scalar.md#date-and-time-functions).|
|ARRAY|ARRAY|`NULL`|Druid native array types work as SQL arrays, and multi-value strings can be converted to arrays. See [Arrays](#arrays) for more information.|
The default value is <code>NULL</code> for all types, except in the deprecated legacy mode (<code>druid.generic.useDefaultValueForNull = true</code>) which initialize a default value.
When `druid.generic.useDefaultValueForNull = true` (deprecated legacy mode), Druid instead substitutes a default value, including when NULL values cast to non-nullable types. For example, if `druid.generic.useDefaultValueForNull = true`, a null VARCHAR cast to BIGINT is converted to a zero.
Druid supports [`ARRAY` types](arrays.md), which behave as standard SQL arrays, where results are grouped by matching entire arrays. The [`UNNEST` operator](./sql.md#unnest) can be used to perform operations on individual array elements, translating each element into a separate row.
`ARRAY` typed columns can be stored in segments with JSON-based ingestion using the 'auto' typed dimension schema shared with [schema auto-discovery](../ingestion/schema-design.md#schema-auto-discovery-for-dimensions) to detect and ingest arrays as ARRAY typed columns. For [SQL based ingestion](../multi-stage-query/index.md), the query context parameter `arrayIngestMode` must be specified as `"array"` to ingest ARRAY types. In Druid 28, the default mode for this parameter is `"mvd"` for backwards compatibility, which instead can only handle `ARRAY<STRING>` which it stores in [multi-value string columns](#multi-value-strings).
You can convert multi-value dimensions to standard SQL arrays explicitly with `MV_TO_ARRAY` or implicitly using [array functions](./sql-array-functions.md). You can also use the array functions to construct arrays from multiple columns.
Druid serializes `ARRAY` results as a JSON string of the array by default, which can be controlled by the context parameter
[`sqlStringifyArrays`](sql-query-context.md). When set to `false` and using JSON [result formats](../api-reference/sql-api.md#responses), the arrays will instead be returned as regular JSON arrays instead of in stringified form.
Druid's native type system allows strings to have multiple values. These [multi-value string dimensions](multi-value-dimensions.md) are reported in SQL as type VARCHAR and can be
syntactically used like any other VARCHAR. Regular string functions that refer to multi-value string dimensions are applied to all values for each row individually.
You can treat multi-value string dimensions as arrays using special
[multi-value string functions](sql-multivalue-string-functions.md), which perform powerful array-aware operations, but retain their VARCHAR type and behavior.
Grouping by multi-value dimensions observes the native Druid multi-value aggregation behavior, which is similar to an implicit SQL UNNEST. See [Grouping](multi-value-dimensions.md#grouping) for more information.
Because the SQL planner treats multi-value dimensions as VARCHAR, there are some inconsistencies between how they are handled in Druid SQL and in native queries. For instance, expressions involving multi-value dimensions may be incorrectly optimized by the Druid SQL planner. For example, `multi_val_dim = 'a' AND multi_val_dim = 'b'` is optimized to
The SQL behavior of multi-value dimensions may change in a future release to more closely align with their behavior in native queries, but the [multi-value string functions](./sql-multivalue-string-functions.md) should be able to provide nearly all possible native functionality.
* [`druid.generic.useDefaultValueForNull`](../configuration/index.md#sql-compatible-null-handling) must be set to false (default), a runtime property which allows NULL values to exist in numeric columns and expressions, and string typed columns to distinguish between NULL and the empty string
* [`druid.expressions.useStrictBooleans`](../configuration/index.md#expression-processing-configurations) must be set to true (default), a runtime property controls Druid's boolean logic mode for expressions, as well as coercing all expression boolean values to be represented with a 1 for true and 0 for false
* [`druid.generic.useThreeValueLogicForNativeFilters`](../configuration/index.md#sql-compatible-null-handling) must be set to true (default), a runtime property which decouples three-value logic handling from `druid.generic.useDefaultValueForNull` and `druid.expressions.useStrictBooleans` for backwards compatibility with older versions of Druid that did not fully support SQL compatible null value logic handling
If any of these settings is configured with a non-default value, Druid will use two-valued logic for non-expression based filters. Expression based filters are controlled independently with `druid.expressions.useStrictBooleans`, which if set to false Druid will use two-valued logic for expressions.
Druid supports storing nested data structures in segments using the native `COMPLEX<json>` type. See [Nested columns](./nested-columns.md) for more information.
You can interact with nested data using [JSON functions](./sql-json-functions.md), which can extract nested values, parse from string, serialize to string, and create new `COMPLEX<json>` structures.
In many cases, functions are provided to translate COMPLEX value types to STRING, which serves as a workaround solution until COMPLEX type functionality can be improved.