-`TIME_FLOOR(__time, 'granularity_string')`, where granularity_string is one of the ISO 8601 periods listed below. The
first argument must be `__time`.
-`FLOOR(__time TO TimeUnit)`, where `TimeUnit` is any unit supported by the [FLOOR function](../querying/sql-scalar.md#date-and-time-functions). The first argument must be `__time`.
-`ALL` or `ALL TIME`, which effectively disables time partitioning by placing all data in a single time chunk. To use
For more information about partitioning, see [Partitioning](concepts.md#partitioning-by-time). <br/><br/>
*Avoid partitioning by week, `P1W`, because weeks don't align neatly with months and years, making it difficult to partition by coarser granularities later.
In addition to the Druid SQL [context parameters](../querying/sql-query-context.md), the multi-stage query task engine accepts certain context parameters that are specific to it.
Use context parameters alongside your queries to customize the behavior of the query. If you're using the API, include the context parameters in the query context when you submit a query:
```json
{
"query": "SELECT 1 + 1",
"context": {
"<key>": "<value>",
"maxNumTasks": 3
}
}
```
If you're using the web console, you can specify the context parameters through various UI options.
The following table lists the context parameters for the MSQ task engine:
| `maxNumTasks` | SELECT, INSERT, REPLACE<br/><br/>The maximum total number of tasks to launch, including the controller task. The lowest possible value for this setting is 2: one controller and one worker. All tasks must be able to launch simultaneously. If they cannot, the query returns a `TaskStartTimeout` error code after approximately 10 minutes.<br/><br/>May also be provided as `numTasks`. If both are present, `maxNumTasks` takes priority. | 2 |
| `taskAssignment` | SELECT, INSERT, REPLACE<br/><br/>Determines how many tasks to use. Possible values include: <ul><li>`max`: Uses as many tasks as possible, up to `maxNumTasks`.</li><li>`auto`: When file sizes can be determined through directory listing (for example: local files, S3, GCS, HDFS) uses as few tasks as possible without exceeding 512 MiB or 10,000 files per task, unless exceeding these limits is necessary to stay within `maxNumTasks`. When calculating the size of files, the weighted size is used, which considers the file format and compression format used if any. When file sizes cannot be determined through directory listing (for example: http), behaves the same as `max`.</li></ul> | `max` |
| `finalizeAggregations` | SELECT, INSERT, REPLACE<br/><br/>Determines the type of aggregation to return. If true, Druid finalizes the results of complex aggregations that directly appear in query results. If false, Druid returns the aggregation's intermediate type rather than finalized type. This parameter is useful during ingestion, where it enables storing sketches directly in Druid tables. For more information about aggregations, see [SQL aggregation functions](../querying/sql-aggregations.md). | true |
| `sqlJoinAlgorithm` | SELECT, INSERT, REPLACE<br/><br/>Algorithm to use for JOIN. Use `broadcast` (the default) for broadcast hash join or `sortMerge` for sort-merge join. Affects all JOIN operations in the query. This is a hint to the MSQ engine and the actual joins in the query may proceed in a different way than specified. See [Joins](#joins) for more details. | `broadcast` |
| `rowsInMemory` | INSERT or REPLACE<br/><br/>Maximum number of rows to store in memory at once before flushing to disk during the segment generation process. Ignored for non-INSERT queries. In most cases, use the default value. You may need to override the default if you run into one of the [known issues](./known-issues.md) around memory usage. | 100,000 |
| `segmentSortOrder` | INSERT or REPLACE<br/><br/>Normally, Druid sorts rows in individual segments using `__time` first, followed by the [CLUSTERED BY](#clustered-by) clause. When you set `segmentSortOrder`, Druid sorts rows in segments using this column list first, followed by the CLUSTERED BY order.<br/><br/>You provide the column list as comma-separated values or as a JSON array in string form. If your query includes `__time`, then this list must begin with `__time`. For example, consider an INSERT query that uses `CLUSTERED BY country` and has `segmentSortOrder` set to `__time,city`. Within each time chunk, Druid assigns rows to segments based on `country`, and then within each of those segments, Druid sorts those rows by `__time` first, then `city`, then `country`. | empty list |
| `maxParseExceptions`| SELECT, INSERT, REPLACE<br/><br/>Maximum number of parse exceptions that are ignored while executing the query before it stops with `TooManyWarningsFault`. To ignore all the parse exceptions, set the value to -1. | 0 |
| `rowsPerSegment` | INSERT or REPLACE<br/><br/>The number of rows per segment to target. The actual number of rows per segment may be somewhat higher or lower than this number. In most cases, use the default. For general information about sizing rows per segment, see [Segment Size Optimization](../operations/segment-optimization.md). | 3,000,000 |
| `indexSpec` | INSERT or REPLACE<br/><br/>An [`indexSpec`](../ingestion/ingestion-spec.md#indexspec) to use when generating segments. May be a JSON string or object. See [Front coding](../ingestion/ingestion-spec.md#front-coding) for details on configuring an `indexSpec` with front coding. | See [`indexSpec`](../ingestion/ingestion-spec.md#indexspec). |
| `durableShuffleStorage` | SELECT, INSERT, REPLACE <br/><br/>Whether to use durable storage for shuffle mesh. To use this feature, configure the durable storage at the server level using `druid.msq.intermediate.storage.enable=true`). If these properties are not configured, any query with the context variable `durableShuffleStorage=true` fails with a configuration error. <br/><br/> | `false` |
| `faultTolerance` | SELECT, INSERT, REPLACE<br/><br/> Whether to turn on fault tolerance mode or not. Failed workers are retried based on [Limits](#limits). Cannot be used when `durableShuffleStorage` is explicitly set to false. | `false` |
Joins in multi-stage queries use one of two algorithms based on what you set the [context parameter](#context-parameters) `sqlJoinAlgorithm` to:
- [`broadcast`](#broadcast) (default)
- [`sortMerge`](#sort-merge).
If you omit this context parameter, the MSQ task engine uses broadcast since it's the default join algorithm. The context parameter applies to the entire SQL statement, so you can't mix different
The following example has a single join chain where `orders` is the base input while `products` and
`customers` are non-base leaf inputs. The broadcast inputs (`products` and `customers`) must fall under the limit on broadcast table footprint, but the base `orders` input
You can use the sort-merge join algorithm to make queries more scalable at the cost of performance. If your goal is performance, consider [broadcast joins](#broadcast). There are various scenarios where broadcast join would return a [`BroadcastTablesTooLarge`](#error-codes) error, but a sort-merge join would succeed.
In a sort-merge join, each pairwise join is planned into its own stage with two inputs. The two inputs are partitioned and sorted using a hash partitioning on the same key.
- There is no limit on the overall size of either input, so sort-merge is a good choice for performing a join of two large inputs or for performing a self-join of a large input with itself.
- There is a limit on the amount of data associated with each individual key. If _both_ sides of the join exceed this limit, the query returns a [`TooManyRowsWithSameKey`](#error-codes) error. If only one side exceeds the limit, the query does not return this error.
by the super sorter. Tasks will use whatever has been configured for their temporary usage as described in [Configuring task storage sizes](../ingestion/tasks.md#configuring-task-storage-sizes)
If the configured limit is too low, `NotEnoughTemporaryStorageFault` may be thrown.
For queries where you want to use fault tolerance for workers, set `faultTolerance` to `true`, which automatically sets `durableShuffleStorage` to `true`.
## Durable storage configurations
The following common service properties control how durable storage behaves:
|`druid.msq.intermediate.storage.chunkSize` | 100MiB | Optional. Defines the size of each chunk to temporarily store in `druid.msq.intermediate.storage.tempDir`. The chunk size must be between 5 MiB and 5 GiB. A large chunk size reduces the API calls made to the durable storage, however it requires more disk space to store the temporary chunks. Druid uses a default of 100MiB if the value is not provided.|
|`druid.msq.intermediate.storage.maxRetry` | 10 | Optional. Defines the max number times to attempt S3 API calls to avoid failures due to transient errors. |
|`druid.msq.intermediate.storage.prefix` | n/a | S3 prefix to store intermediate stage results. Provide a unique value for the prefix. Don't share the same prefix between clusters. If the location includes other files or directories, then they will get cleaned up as well. |
|`druid.msq.intermediate.storage.tempDir`| n/a | Required. Directory path on the local disk to temporarily store intermediate stage results. |
|`druid.msq.intermediate.storage.type` | `s3` if your deep storage is S3 | Required. The type of storage to use. You can either set this to `local` or `s3`. |
In addition to the common service properties, there are certain properties that you configure on the Overlord specifically to clean up intermediate files:
|`druid.msq.intermediate.storage.cleaner.enabled`| false | Optional. Whether durable storage cleaner should be enabled for the cluster. |
|`druid.msq.intermediate.storage.cleaner.delaySeconds`| 86400 | Optional. The delay (in seconds) after the last run post which the durable storage cleaner would clean the outputs. |
Knowing the limits for the MSQ task engine can help you troubleshoot any [errors](#error-codes) that you encounter. Many of the errors occur as a result of reaching a limit.
| Size of an individual row written to a frame. Row size when written to a frame may differ from the original row size. | 1 MB | [`RowTooLarge`](#error_RowTooLarge) |
| Number of segment-granular time chunks encountered during ingestion. | 5,000 | [`TooManyBuckets`](#error_TooManyBuckets) |
| Number of input files/segments per worker. | 10,000 | [`TooManyInputFiles`](#error_TooManyInputFiles) |
| Number of output partitions for any one stage. Number of segments generated during ingestion. |25,000 | [`TooManyPartitions`](#error_TooManyPartitions) |
| Number of output columns for any one stage. | 2,000 | [`TooManyColumns`](#error_TooManyColumns) |
| Number of cluster by columns that can appear in a stage | 1,500 | [`TooManyClusteredByColumns`](#error_TooManyClusteredByColumns) |
| Number of workers for any one stage. | Hard limit is 1,000. Memory-dependent soft limit may be lower. | [`TooManyWorkers`](#error_TooManyWorkers) |
| Maximum memory occupied by broadcasted tables. | 30% of each [processor memory bundle](concepts.md#memory-usage). | [`BroadcastTablesTooLarge`](#error_BroadcastTablesTooLarge) |
| Maximum memory occupied by buffered data during sort-merge join. Only relevant when `sqlJoinAlgorithm` is `sortMerge`. | 10 MB | `TooManyRowsWithSameKey` |
| Maximum relaunch attempts per worker. Initial run is not a relaunch. The worker will be spawned 1 + `workerRelaunchLimit` times before the job fails. | 2 | `TooManyAttemptsForWorker` |
| Maximum relaunch attempts for a job across all workers. | 100 | `TooManyAttemptsForJob` |
| <aname="error_BroadcastTablesTooLarge">`BroadcastTablesTooLarge`</a> | The size of the broadcast tables used in the right hand side of the join exceeded the memory reserved for them in a worker task.<br/><br/>Try increasing the peon memory or reducing the size of the broadcast tables. | `maxBroadcastTablesSize`: Memory reserved for the broadcast tables, measured in bytes. |
| <aname="error_Canceled">`Canceled`</a> | The query was canceled. Common reasons for cancellation:<br/><br/><ul><li>User-initiated shutdown of the controller task via the `/druid/indexer/v1/task/{taskId}/shutdown` API.</li><li>Restart or failure of the server process that was running the controller task.</li></ul>| |
| <aname="error_CannotParseExternalData">`CannotParseExternalData`</a> | A worker task could not parse data from an external datasource. | `errorMessage`: More details on why parsing failed. |
| <aname="error_ColumnNameRestricted">`ColumnNameRestricted`</a> | The query uses a restricted column name. | `columnName`: The restricted column name. |
| <aname="error_ColumnTypeNotSupported">`ColumnTypeNotSupported`</a> | The column type is not supported. This can be because:<br/><br/><ul><li>Support for writing or reading from a particular column type is not supported.</li><li>The query attempted to use a column type that is not supported by the frame format. This occurs with ARRAY types, which are not yet implemented for frames.</li></ul> | `columnName`: The column name with an unsupported type.<br/><br/>`columnType`: The unknown column type. |
| <aname="error_InsertCannotAllocateSegment">`InsertCannotAllocateSegment`</a> | The controller task could not allocate a new segment ID due to conflict with existing segments or pending segments. Common reasons for such conflicts:<br/><br/><ul><li>Attempting to mix different granularities in the same intervals of the same datasource.</li><li>Prior ingestions that used non-extendable shard specs.</li></ul><br/><br/> Use REPLACE to overwrite the existing data or if the error contains the `allocatedInterval` then alternatively rerun the INSERT job with the mentioned granularity to append to existing data. Note that it might not always be possible to append to the existing data using INSERT and can only be done if `allocatedInterval` is present. | `dataSource`<br/><br/>`interval`: The interval for the attempted new segment allocation. <br/><br/>`allocatedInterval`: The incorrect interval allocated by the overlord. It can be null |
| <aname="error_InsertCannotBeEmpty">`InsertCannotBeEmpty`</a> | An INSERT or REPLACE query did not generate any output rows in a situation where output rows are required for success. This can happen for INSERT or REPLACE queries with `PARTITIONED BY` set to something other than `ALL` or `ALL TIME`. | `dataSource` |
| <aname="error_InsertLockPreempted">`InsertLockPreempted`</a> | An INSERT or REPLACE query was canceled by a higher-priority ingestion job, such as a real-time ingestion task. | |
| <aname="error_InsertTimeNull">`InsertTimeNull`</a> | An INSERT or REPLACE query encountered a null timestamp in the `__time` field.<br/><br/>This can happen due to using an expression like `TIME_PARSE(timestamp) AS __time` with a timestamp that cannot be parsed. ([`TIME_PARSE`](../querying/sql-scalar.md#date-and-time-functions) returns null when it cannot parse a timestamp.) In this case, try parsing your timestamps using a different function or pattern. Or, if your timestamps may genuinely be null, consider using [`COALESCE`](../querying/sql-scalar.md#other-scalar-functions) to provide a default value. One option is [`CURRENT_TIMESTAMP`](../querying/sql-scalar.md#date-and-time-functions), which represents the start time of the job.|
| <aname="error_InsertTimeOutOfBounds">`InsertTimeOutOfBounds`</a> | A REPLACE query generated a timestamp outside the bounds of the TIMESTAMP parameter for your OVERWRITE WHERE clause.<br/><br/>To avoid this error, verify that the you specified is valid. | `interval`: time chunk interval corresponding to the out-of-bounds timestamp |
| <aname="error_InvalidNullByte">`InvalidNullByte`</a> | A string column included a null byte. Null bytes in strings are not permitted. |`source`: The source that included the null byte <br/></br /> `rowNumber`: The row number (1-indexed) that included the null byte <br/><br/>`column`: The column that included the null byte <br/><br/>`value`: Actual string containing the null byte <br/><br/>`position`: Position (1-indexed) of occurrence of null byte|
| <aname="error_QueryNotSupported">`QueryNotSupported`</a> | QueryKit could not translate the provided native query to a multi-stage query.<br/><br/>This can happen if the query uses features that aren't supported, like GROUPING SETS. | |
| <aname="error_QueryRuntimeError">`QueryRuntimeError`</a> | MSQ uses the native query engine to run the leaf stages. This error tells MSQ that error is in native query runtime.<br/><br/> Since this is a generic error, the user needs to look at logs for the error message and stack trace to figure out the next course of action. If the user is stuck, consider raising a `github` issue for assistance. | `baseErrorMessage` error message from the native query runtime. |
| <aname="error_RowTooLarge">`RowTooLarge`</a> | The query tried to process a row that was too large to write to a single frame. See the [Limits](#limits) table for specific limits on frame size. Note that the effective maximum row size is smaller than the maximum frame size due to alignment considerations during frame writing. | `maxFrameSize`: The limit on the frame size. |
| <aname="error_TaskStartTimeout">`TaskStartTimeout`</a> | Unable to launch `pendingTasks` worker out of total `totalTasks` workers tasks within `timeout` seconds of the last successful worker launch.<br/><br/>There may be insufficient available slots to start all the worker tasks simultaneously. Try splitting up your query into smaller chunks using a smaller value of [`maxNumTasks`](#context-parameters). Another option is to increase capacity. | `pendingTasks`: Number of tasks not yet started.<br/><br/>`totalTasks`: The number of tasks attempted to launch.<br/><br/>`timeout`: Timeout, in milliseconds, that was exceeded. |
| <aname="error_TooManyAttemptsForJob">`TooManyAttemptsForJob`</a> | Total relaunch attempt count across all workers exceeded max relaunch attempt limit. See the [Limits](#limits) table for the specific limit. | `maxRelaunchCount`: Max number of relaunches across all the workers defined in the [Limits](#limits) section. <br/><br/>`currentRelaunchCount`: current relaunch counter for the job across all workers. <br/><br/>`taskId`: Latest task id which failed <br/><br/>`rootErrorMessage`: Error message of the latest failed task.|
| <aname="error_TooManyAttemptsForWorker">`TooManyAttemptsForWorker`</a> | Worker exceeded maximum relaunch attempt count as defined in the [Limits](#limits) section. |`maxPerWorkerRelaunchCount`: Max number of relaunches allowed per worker as defined in the [Limits](#limits) section. <br/><br/>`workerNumber`: the worker number for which the task failed <br/><br/>`taskId`: Latest task id which failed <br/><br/>`rootErrorMessage`: Error message of the latest failed task.|
| <aname="error_TooManyBuckets">`TooManyBuckets`</a> | Exceeded the maximum number of partition buckets for a stage (5,000 partition buckets).<br/><br/>Partition buckets are created for each [`PARTITIONED BY`](#partitioned-by) time chunk for INSERT and REPLACE queries. The most common reason for this error is that your `PARTITIONED BY` is too narrow relative to your data. | `maxBuckets`: The limit on partition buckets. |
| <aname="error_TooManyInputFiles">`TooManyInputFiles`</a> | Exceeded the maximum number of input files or segments per worker (10,000 files or segments).<br/><br/>If you encounter this limit, consider adding more workers, or breaking up your query into smaller queries that process fewer files or segments per query. | `numInputFiles`: The total number of input files/segments for the stage.<br/><br/>`maxInputFiles`: The maximum number of input files/segments per worker per stage.<br/><br/>`minNumWorker`: The minimum number of workers required for a successful run. |
| <aname="error_TooManyPartitions">`TooManyPartitions`</a> | Exceeded the maximum number of partitions for a stage (25,000 partitions).<br/><br/>This can occur with INSERT or REPLACE statements that generate large numbers of segments, since each segment is associated with a partition. If you encounter this limit, consider breaking up your INSERT or REPLACE statement into smaller statements that process less data per statement. | `maxPartitions`: The limit on partitions which was exceeded |
| <aname="error_TooManyClusteredByColumns">`TooManyClusteredByColumns`</a> | Exceeded the maximum number of clustering columns for a stage (1,500 columns).<br/><br/>This can occur with `CLUSTERED BY`, `ORDER BY`, or `GROUP BY` with a large number of columns. | `numColumns`: The number of columns requested.<br/><br/>`maxColumns`: The limit on columns which was exceeded.`stage`: The stage number exceeding the limit<br/><br/> |
| <aname="error_TooManyRowsWithSameKey">`TooManyRowsWithSameKey`</a> | The number of rows for a given key exceeded the maximum number of buffered bytes on both sides of a join. See the [Limits](#limits) table for the specific limit. Only occurs when join is executed via the sort-merge join algorithm. | `key`: The key that had a large number of rows.<br/><br/>`numBytes`: Number of bytes buffered, which may include other keys.<br/><br/>`maxBytes`: Maximum number of bytes buffered. |
| <aname="error_TooManyColumns">`TooManyColumns`</a> | Exceeded the maximum number of columns for a stage (2,000 columns). | `numColumns`: The number of columns requested.<br/><br/>`maxColumns`: The limit on columns which was exceeded. |
| <aname="error_TooManyWarnings">`TooManyWarnings`</a> | Exceeded the maximum allowed number of warnings of a particular type. | `rootErrorCode`: The error code corresponding to the exception that exceeded the required limit. <br/><br/>`maxWarnings`: Maximum number of warnings that are allowed for the corresponding `rootErrorCode`. |
| <aname="error_TooManyWorkers">`TooManyWorkers`</a> | Exceeded the maximum number of simultaneously-running workers. See the [Limits](#limits) table for more details. | `workers`: The number of simultaneously running workers that exceeded a hard or soft limit. This may be larger than the number of workers in any one stage if multiple stages are running simultaneously. <br/><br/>`maxWorkers`: The hard or soft limit on workers that was exceeded. If this is lower than the hard limit (1,000 workers), then you can increase the limit by adding more memory to each task. |
| <aname="error_NotEnoughMemory">`NotEnoughMemory`</a> | Insufficient memory to launch a stage. | `suggestedServerMemory`: Suggested number of bytes of memory to allocate to a given process. <br/><br/>`serverMemory`: The number of bytes of memory available to a single process.<br/><br/>`usableMemory`: The number of usable bytes of memory for a single process.<br/><br/>`serverWorkers`: The number of workers running in a single process.<br/><br/>`serverThreads`: The number of threads in a single process. |
| <aname="error_NotEnoughTemporaryStorage">`NotEnoughTemporaryStorage`</a> | Insufficient temporary storage configured to launch a stage. This limit is set by the property `druid.indexer.task.tmpStorageBytesPerTask`. This property should be increased to the minimum suggested limit to resolve this.| `suggestedMinimumStorage`: Suggested number of bytes of temporary storage space to allocate to a given process. <br/><br/>`configuredTemporaryStorage`: The number of bytes of storage currently configured. |
| <aname="error_WorkerFailed">`WorkerFailed`</a> | A worker task failed unexpectedly. | `errorMsg`<br/><br/>`workerTaskId`: The ID of the worker task. |
| <aname="error_WorkerRpcFailed">`WorkerRpcFailed`</a> | A remote procedure call to a worker task failed and could not recover. | `workerTaskId`: the id of the worker task |
| <aname="error_UnknownError">`UnknownError`</a> | All other errors. | `message` |
| <aname="error_InsertCannotOrderByDescending">`InsertCannotOrderByDescending`</a> | Deprecated. An INSERT query contained a `CLUSTERED BY` expression in descending order. Druid's segment generation code only supports ascending order. The query returns a `ValidationException` instead of the fault. | `columnName` |