druid/docs/querying/query-context.md

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---
id: query-context
title: "Query context"
---
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The query context is used for various query configuration parameters. The following parameters apply to all queries.
|property |default | description |
|-----------------|----------------------------------------|----------------------|
|timeout | `druid.server.http.defaultQueryTimeout`| Query timeout in millis, beyond which unfinished queries will be cancelled. 0 timeout means `no timeout`. To set the default timeout, see [Broker configuration](../configuration/index.html#broker) |
|priority | `0` | Query Priority. Queries with higher priority get precedence for computational resources.|
|queryId | auto-generated | Unique identifier given to this query. If a query ID is set or known, this can be used to cancel the query |
|useCache | `true` | Flag indicating whether to leverage the query cache for this query. When set to false, it disables reading from the query cache for this query. When set to true, Apache Druid (incubating) uses `druid.broker.cache.useCache` or `druid.historical.cache.useCache` to determine whether or not to read from the query cache |
|populateCache | `true` | Flag indicating whether to save the results of the query to the query cache. Primarily used for debugging. When set to false, it disables saving the results of this query to the query cache. When set to true, Druid uses `druid.broker.cache.populateCache` or `druid.historical.cache.populateCache` to determine whether or not to save the results of this query to the query cache |
|useResultLevelCache | `true` | Flag indicating whether to leverage the result level cache for this query. When set to false, it disables reading from the query cache for this query. When set to true, Druid uses `druid.broker.cache.useResultLevelCache` to determine whether or not to read from the result-level query cache |
|populateResultLevelCache | `true` | Flag indicating whether to save the results of the query to the result level cache. Primarily used for debugging. When set to false, it disables saving the results of this query to the query cache. When set to true, Druid uses `druid.broker.cache.populateResultLevelCache` to determine whether or not to save the results of this query to the result-level query cache |
|bySegment | `false` | Return "by segment" results. Primarily used for debugging, setting it to `true` returns results associated with the data segment they came from |
|finalize | `true` | Flag indicating whether to "finalize" aggregation results. Primarily used for debugging. For instance, the `hyperUnique` aggregator will return the full HyperLogLog sketch instead of the estimated cardinality when this flag is set to `false` |
|chunkPeriod | `P0D` (off) | At the Broker process level, long interval queries (of any type) may be broken into shorter interval queries to parallelize merging more than normal. Broken up queries will use a larger share of cluster resources, but, if you use groupBy "v1, it may be able to complete faster as a result. Use ISO 8601 periods. For example, if this property is set to `P1M` (one month), then a query covering a year would be broken into 12 smaller queries. The broker uses its query processing executor service to initiate processing for query chunks, so make sure `druid.processing.numThreads` is configured appropriately on the broker. [groupBy queries](groupbyquery.html) do not support chunkPeriod by default, although they do if using the legacy "v1" engine. This context is deprecated since it's only useful for groupBy "v1", and will be removed in the future releases.|
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|maxScatterGatherBytes| `druid.server.http.maxScatterGatherBytes` | Maximum number of bytes gathered from data processes such as Historicals and realtime processes to execute a query. This parameter can be used to further reduce `maxScatterGatherBytes` limit at query time. See [Broker configuration](../configuration/index.html#broker) for more details.|
|maxQueuedBytes | `druid.broker.http.maxQueuedBytes` | Maximum number of bytes queued per query before exerting backpressure on the channel to the data server. Similar to `maxScatterGatherBytes`, except unlike that configuration, this one will trigger backpressure rather than query failure. Zero means disabled.|
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|serializeDateTimeAsLong| `false` | If true, DateTime is serialized as long in the result returned by Broker and the data transportation between Broker and compute process|
|serializeDateTimeAsLongInner| `false` | If true, DateTime is serialized as long in the data transportation between Broker and compute process|
In addition, some query types offer context parameters specific to that query type.
### TopN queries
|property |default | description |
|-----------------|---------------------|----------------------|
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|minTopNThreshold | `1000` | The top minTopNThreshold local results from each segment are returned for merging to determine the global topN. |
### Timeseries queries
|property |default | description |
|-----------------|---------------------|----------------------|
|skipEmptyBuckets | `false` | Disable timeseries zero-filling behavior, so only buckets with results will be returned. |
### GroupBy queries
See [GroupBy query context](groupbyquery.md#advanced-configurations).
Query vectorization. (#6794) * Benchmarks: New SqlBenchmark, add caching & vectorization to some others. - Introduce a new SqlBenchmark geared towards benchmarking a wide variety of SQL queries. Rename the old SqlBenchmark to SqlVsNativeBenchmark. - Add (optional) caching to SegmentGenerator to enable easier benchmarking of larger segments. - Add vectorization to FilteredAggregatorBenchmark and GroupByBenchmark. * Query vectorization. This patch includes vectorized timeseries and groupBy engines, as well as some analogs of your favorite Druid classes: - VectorCursor is like Cursor. (It comes from StorageAdapter.makeVectorCursor.) - VectorColumnSelectorFactory is like ColumnSelectorFactory, and it has methods to create analogs of the column selectors you know and love. - VectorOffset and ReadableVectorOffset are like Offset and ReadableOffset. - VectorAggregator is like BufferAggregator. - VectorValueMatcher is like ValueMatcher. There are some noticeable differences between vectorized and regular execution: - Unlike regular cursors, vector cursors do not understand time granularity. They expect query engines to handle this on their own, which a new VectorCursorGranularizer class helps with. This is to avoid too much batch-splitting and to respect the fact that vector selectors are somewhat more heavyweight than regular selectors. - Unlike FilteredOffset, FilteredVectorOffset does not leverage indexes for filters that might partially support them (like an OR of one filter that supports indexing and another that doesn't). I'm not sure that this behavior is desirable anyway (it is potentially too eager) but, at any rate, it'd be better to harmonize it between the two classes. Potentially they should both do some different thing that is smarter than what either of them is doing right now. - When vector cursors are created by QueryableIndexCursorSequenceBuilder, they use a morphing binary-then-linear search to find their start and end rows, rather than linear search. Limitations in this patch are: - Only timeseries and groupBy have vectorized engines. - GroupBy doesn't handle multi-value dimensions yet. - Vector cursors cannot handle virtual columns or descending order. - Only some filters have vectorized matchers: "selector", "bound", "in", "like", "regex", "search", "and", "or", and "not". - Only some aggregators have vectorized implementations: "count", "doubleSum", "floatSum", "longSum", "hyperUnique", and "filtered". - Dimension specs other than "default" don't work yet (no extraction functions or filtered dimension specs). Currently, the testing strategy includes adding vectorization-enabled tests to TimeseriesQueryRunnerTest, GroupByQueryRunnerTest, GroupByTimeseriesQueryRunnerTest, CalciteQueryTest, and all of the filtering tests that extend BaseFilterTest. In all of those classes, there are some test cases that don't support vectorization. They are marked by special function calls like "cannotVectorize" or "skipVectorize" that tell the test harness to either expect an exception or to skip the test case. Testing should be expanded in the future -- a project in and of itself. Related to #3011. * WIP * Adjustments for unused things. * Adjust javadocs. * DimensionDictionarySelector adjustments. * Add "clone" to BatchIteratorAdapter. * ValueMatcher javadocs. * Fix benchmark. * Fixups post-merge. * Expect exception on testGroupByWithStringVirtualColumn for IncrementalIndex. * BloomDimFilterSqlTest: Tag two non-vectorizable tests. * Minor adjustments. * Update surefire, bump up Xmx in Travis. * Some more adjustments. * Javadoc adjustments * AggregatorAdapters adjustments. * Additional comments. * Remove switching search. * Only missiles.
2019-07-12 15:54:07 -04:00
### Vectorizable queries
The GroupBy and Timeseries query types can run in _vectorized_ mode, which speeds up query execution by processing
batches of rows at a time. Not all queries can be vectorized. In particular, vectorization currently has the following
requirements:
- All query-level filters must either be able to run on bitmap indexes or must offer vectorized row-matchers. These
include "selector", "bound", "in", "like", "regex", "search", "and", "or", and "not".
- All filters in filtered aggregators must offer vectorized row-matchers.
- All aggregators must offer vectorized implementations. These include "count", "doubleSum", "floatSum", "longSum",
"hyperUnique", and "filtered".
- No virtual columns.
- For GroupBy: All dimension specs must be "default" (no extraction functions or filtered dimension specs).
- For GroupBy: No multi-value dimensions.
- For Timeseries: No "descending" order.
- Only immutable segments (not real-time).
Other query types (like TopN, Scan, Select, and Search) ignore the "vectorize" parameter, and will execute without
vectorization. These query types will ignore the "vectorize" parameter even if it is set to `"force"`.
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Vectorization is an alpha-quality feature as of Druid {{DRUIDVERSION}}. We heartily welcome any feedback and testing
Query vectorization. (#6794) * Benchmarks: New SqlBenchmark, add caching & vectorization to some others. - Introduce a new SqlBenchmark geared towards benchmarking a wide variety of SQL queries. Rename the old SqlBenchmark to SqlVsNativeBenchmark. - Add (optional) caching to SegmentGenerator to enable easier benchmarking of larger segments. - Add vectorization to FilteredAggregatorBenchmark and GroupByBenchmark. * Query vectorization. This patch includes vectorized timeseries and groupBy engines, as well as some analogs of your favorite Druid classes: - VectorCursor is like Cursor. (It comes from StorageAdapter.makeVectorCursor.) - VectorColumnSelectorFactory is like ColumnSelectorFactory, and it has methods to create analogs of the column selectors you know and love. - VectorOffset and ReadableVectorOffset are like Offset and ReadableOffset. - VectorAggregator is like BufferAggregator. - VectorValueMatcher is like ValueMatcher. There are some noticeable differences between vectorized and regular execution: - Unlike regular cursors, vector cursors do not understand time granularity. They expect query engines to handle this on their own, which a new VectorCursorGranularizer class helps with. This is to avoid too much batch-splitting and to respect the fact that vector selectors are somewhat more heavyweight than regular selectors. - Unlike FilteredOffset, FilteredVectorOffset does not leverage indexes for filters that might partially support them (like an OR of one filter that supports indexing and another that doesn't). I'm not sure that this behavior is desirable anyway (it is potentially too eager) but, at any rate, it'd be better to harmonize it between the two classes. Potentially they should both do some different thing that is smarter than what either of them is doing right now. - When vector cursors are created by QueryableIndexCursorSequenceBuilder, they use a morphing binary-then-linear search to find their start and end rows, rather than linear search. Limitations in this patch are: - Only timeseries and groupBy have vectorized engines. - GroupBy doesn't handle multi-value dimensions yet. - Vector cursors cannot handle virtual columns or descending order. - Only some filters have vectorized matchers: "selector", "bound", "in", "like", "regex", "search", "and", "or", and "not". - Only some aggregators have vectorized implementations: "count", "doubleSum", "floatSum", "longSum", "hyperUnique", and "filtered". - Dimension specs other than "default" don't work yet (no extraction functions or filtered dimension specs). Currently, the testing strategy includes adding vectorization-enabled tests to TimeseriesQueryRunnerTest, GroupByQueryRunnerTest, GroupByTimeseriesQueryRunnerTest, CalciteQueryTest, and all of the filtering tests that extend BaseFilterTest. In all of those classes, there are some test cases that don't support vectorization. They are marked by special function calls like "cannotVectorize" or "skipVectorize" that tell the test harness to either expect an exception or to skip the test case. Testing should be expanded in the future -- a project in and of itself. Related to #3011. * WIP * Adjustments for unused things. * Adjust javadocs. * DimensionDictionarySelector adjustments. * Add "clone" to BatchIteratorAdapter. * ValueMatcher javadocs. * Fix benchmark. * Fixups post-merge. * Expect exception on testGroupByWithStringVirtualColumn for IncrementalIndex. * BloomDimFilterSqlTest: Tag two non-vectorizable tests. * Minor adjustments. * Update surefire, bump up Xmx in Travis. * Some more adjustments. * Javadoc adjustments * AggregatorAdapters adjustments. * Additional comments. * Remove switching search. * Only missiles.
2019-07-12 15:54:07 -04:00
from the community as we work to battle-test it.
|property|default| description|
|--------|-------|------------|
|vectorize|`false`|Enables or disables vectorized query execution. Possible values are `false` (disabled), `true` (enabled if possible, disabled otherwise, on a per-segment basis), and `force` (enabled, and groupBy or timeseries queries that cannot be vectorized will fail). The `"force"` setting is meant to aid in testing, and is not generally useful in production (since real-time segments can never be processed with vectorized execution, any queries on real-time data will fail). This will override `druid.query.vectorize` if it's set.|
|vectorSize|`512`|Sets the row batching size for a particular query. This will override `druid.query.vectorSize` if it's set.|