mirror of https://github.com/apache/druid.git
99 lines
5.0 KiB
Markdown
99 lines
5.0 KiB
Markdown
---
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id: segment-optimization
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title: "Segment Size Optimization"
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---
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In Apache Druid, it's important to optimize the segment size because
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1. Druid stores data in segments. If you're using the [best-effort roll-up](../ingestion/index.md#rollup) mode,
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increasing the segment size might introduce further aggregation which reduces the dataSource size.
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2. When a query is submitted, that query is distributed to all Historicals and realtime tasks
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which hold the input segments of the query. Each process and task picks a thread from its own processing thread pool
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to process a single segment. If segment sizes are too large, data might not be well distributed between data
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servers, decreasing the degree of parallelism possible during query processing.
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At the other extreme where segment sizes are too small, the scheduling
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overhead of processing a larger number of segments per query can reduce
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performance, as the threads that process each segment compete for the fixed
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slots of the processing pool.
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It would be best if you can optimize the segment size at ingestion time, but sometimes it's not easy
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especially when it comes to stream ingestion because the amount of data ingested might vary over time. In this case,
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you can create segments with a sub-optimized size first and optimize them later.
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You may need to consider the followings to optimize your segments.
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- Number of rows per segment: it's generally recommended for each segment to have around 5 million rows.
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This setting is usually _more_ important than the below "segment byte size".
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This is because Druid uses a single thread to process each segment,
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and thus this setting can directly control how many rows each thread processes,
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which in turn means how well the query execution is parallelized.
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- Segment byte size: it's recommended to set 300 ~ 700MB. If this value
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doesn't match with the "number of rows per segment", please consider optimizing
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number of rows per segment rather than this value.
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> The above recommendation works in general, but the optimal setting can
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> vary based on your workload. For example, if most of your queries
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> are heavy and take a long time to process each row, you may want to make
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> segments smaller so that the query processing can be more parallelized.
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> If you still see some performance issue after optimizing segment size,
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> you may need to find the optimal settings for your workload.
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There might be several ways to check if the compaction is necessary. One way
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is using the [System Schema](../querying/sql.html#system-schema). The
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system schema provides several tables about the current system status including the `segments` table.
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By running the below query, you can get the average number of rows and average size for published segments.
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```sql
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SELECT
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"start",
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"end",
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version,
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COUNT(*) AS num_segments,
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AVG("num_rows") AS avg_num_rows,
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SUM("num_rows") AS total_num_rows,
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AVG("size") AS avg_size,
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SUM("size") AS total_size
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FROM
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sys.segments A
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WHERE
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datasource = 'your_dataSource' AND
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is_published = 1
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GROUP BY 1, 2, 3
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ORDER BY 1, 2, 3 DESC;
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```
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Please note that the query result might include overshadowed segments.
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In this case, you may want to see only rows of the max version per interval (pair of `start` and `end`).
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Once you find your segments need compaction, you can consider the below two options:
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- Turning on the [automatic compaction of Coordinators](../design/coordinator.html#compacting-segments).
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The Coordinator periodically submits [compaction tasks](../ingestion/tasks.md#compact) to re-index small segments.
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To enable the automatic compaction, you need to configure it for each dataSource via Coordinator's dynamic configuration.
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See [Compaction Configuration API](../operations/api-reference.html#compaction-configuration)
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and [Compaction Configuration](../configuration/index.html#compaction-dynamic-configuration) for details.
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- Running periodic Hadoop batch ingestion jobs and using a `dataSource`
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inputSpec to read from the segments generated by the Kafka indexing tasks. This might be helpful if you want to compact a lot of segments in parallel.
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Details on how to do this can be found on the [Updating existing data](../ingestion/data-management.md#update) section
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of the data management page.
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