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321 lines
14 KiB
Markdown
321 lines
14 KiB
Markdown
---
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id: approximate-histograms
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title: "Approximate Histogram aggregators"
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---
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To use this Apache Druid extension, [include](../../development/extensions.md#loading-extensions) `druid-histogram` in the extensions load list.
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The `druid-histogram` extension provides an approximate histogram aggregator and a fixed buckets histogram aggregator.
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<a name="approximate-histogram-aggregator"></a>
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## Approximate Histogram aggregator (Deprecated)
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> The Approximate Histogram aggregator is deprecated. Please use [DataSketches Quantiles](../extensions-core/datasketches-quantiles.md) instead which provides a superior distribution-independent algorithm with formal error guarantees.
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This aggregator is based on
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[http://jmlr.org/papers/volume11/ben-haim10a/ben-haim10a.pdf](http://jmlr.org/papers/volume11/ben-haim10a/ben-haim10a.pdf)
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to compute approximate histograms, with the following modifications:
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- some tradeoffs in accuracy were made in the interest of speed (see below)
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- the sketch maintains the exact original data as long as the number of
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distinct data points is fewer than the resolutions (number of centroids),
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increasing accuracy when there are few data points, or when dealing with
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discrete data points. You can find some of the details in [this post](https://metamarkets.com/2013/histograms/).
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Approximate histogram sketches are still experimental for a reason, and you
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should understand the limitations of the current implementation before using
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them. The approximation is heavily data-dependent, which makes it difficult to
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give good general guidelines, so you should experiment and see what parameters
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work well for your data.
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Here are a few things to note before using them:
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- As indicated in the original paper, there are no formal error bounds on the
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approximation. In practice, the approximation gets worse if the distribution
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is skewed.
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- The algorithm is order-dependent, so results can vary for the same query, due
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to variations in the order in which results are merged.
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- In general, the algorithm only works well if the data that comes is randomly
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distributed (i.e. if data points end up sorted in a column, approximation
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will be horrible)
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- We traded accuracy for aggregation speed, taking some shortcuts when adding
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histograms together, which can lead to pathological cases if your data is
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ordered in some way, or if your distribution has long tails. It should be
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cheaper to increase the resolution of the sketch to get the accuracy you need.
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That being said, those sketches can be useful to get a first order approximation
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when averages are not good enough. Assuming most rows in your segment store
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fewer data points than the resolution of histogram, you should be able to use
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them for monitoring purposes and detect meaningful variations with a few
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hundred centroids. To get good accuracy readings on 95th percentiles with
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millions of rows of data, you may want to use several thousand centroids,
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especially with long tails, since that's where the approximation will be worse.
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### Creating approximate histogram sketches at ingestion time
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To use this feature, an "approxHistogram" or "approxHistogramFold" aggregator must be included at
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indexing time. The ingestion aggregator can only apply to numeric values. If you use "approxHistogram"
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then any input rows missing the value will be considered to have a value of 0, while with "approxHistogramFold"
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such rows will be ignored.
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To query for results, an "approxHistogramFold" aggregator must be included in the
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query.
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```json
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{
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"type" : "approxHistogram or approxHistogramFold (at ingestion time), approxHistogramFold (at query time)",
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"name" : <output_name>,
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"fieldName" : <metric_name>,
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"resolution" : <integer>,
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"numBuckets" : <integer>,
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"lowerLimit" : <float>,
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"upperLimit" : <float>
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}
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```
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|Property |Description |Default |
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|-------------------------|------------------------------|----------------------------------|
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|`resolution` |Number of centroids (data points) to store. The higher the resolution, the more accurate results are, but the slower the computation will be.|50|
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|`numBuckets` |Number of output buckets for the resulting histogram. Bucket intervals are dynamic, based on the range of the underlying data. Use a post-aggregator to have finer control over the bucketing scheme|7|
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|`lowerLimit`/`upperLimit`|Restrict the approximation to the given range. The values outside this range will be aggregated into two centroids. Counts of values outside this range are still maintained. |-INF/+INF|
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|`finalizeAsBase64Binary` |If true, the finalized aggregator value will be a Base64-encoded byte array containing the serialized form of the histogram. If false, the finalized aggregator value will be a JSON representation of the histogram.|false|
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## Fixed Buckets Histogram
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The fixed buckets histogram aggregator builds a histogram on a numeric column, with evenly-sized buckets across a specified value range. Values outside of the range are handled based on a user-specified outlier handling mode.
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This histogram supports the min/max/quantiles post-aggregators but does not support the bucketing post-aggregators.
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### When to use
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The accuracy/usefulness of the fixed buckets histogram is extremely data-dependent; it is provided to support special use cases where the user has a great deal of prior information about the data being aggregated and knows that a fixed buckets implementation is suitable.
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For general histogram and quantile use cases, the [DataSketches Quantiles Sketch](../extensions-core/datasketches-quantiles.md) extension is recommended.
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### Properties
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|Property |Description |Default |
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|-------------------------|------------------------------|----------------------------------|
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|`type`|Type of the aggregator. Must `fixedBucketsHistogram`.|No default, must be specified|
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|`name`|Column name for the aggregator.|No default, must be specified|
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|`fieldName`|Column name of the input to the aggregator.|No default, must be specified|
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|`lowerLimit`|Lower limit of the histogram. |No default, must be specified|
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|`upperLimit`|Upper limit of the histogram. |No default, must be specified|
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|`numBuckets`|Number of buckets for the histogram. The range [lowerLimit, upperLimit] will be divided into `numBuckets` intervals of equal size.|10|
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|`outlierHandlingMode`|Specifies how values outside of [lowerLimit, upperLimit] will be handled. Supported modes are "ignore", "overflow", and "clip". See [outlier handling modes](#outlier-handling-modes) for more details.|No default, must be specified|
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|`finalizeAsBase64Binary`|If true, the finalized aggregator value will be a Base64-encoded byte array containing the [serialized form](#serialization-formats) of the histogram. If false, the finalized aggregator value will be a JSON representation of the histogram.|false|
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An example aggregator spec is shown below:
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```json
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{
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"type" : "fixedBucketsHistogram",
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"name" : <output_name>,
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"fieldName" : <metric_name>,
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"numBuckets" : <integer>,
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"lowerLimit" : <double>,
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"upperLimit" : <double>,
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"outlierHandlingMode": <mode>
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}
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```
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### Outlier handling modes
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The outlier handling mode specifies what should be done with values outside of the histogram's range. There are three supported modes:
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- `ignore`: Throw away outlier values.
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- `overflow`: A count of outlier values will be tracked by the histogram, available in the `lowerOutlierCount` and `upperOutlierCount` fields.
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- `clip`: Outlier values will be clipped to the `lowerLimit` or the `upperLimit` and included in the histogram.
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If you don't care about outliers, `ignore` is the cheapest option performance-wise. There is currently no difference in storage size among the modes.
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### Output fields
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The histogram aggregator's output object has the following fields:
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- `lowerLimit`: Lower limit of the histogram
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- `upperLimit`: Upper limit of the histogram
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- `numBuckets`: Number of histogram buckets
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- `outlierHandlingMode`: Outlier handling mode
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- `count`: Total number of values contained in the histogram, excluding outliers
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- `lowerOutlierCount`: Count of outlier values below `lowerLimit`. Only used if the outlier mode is `overflow`.
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- `upperOutlierCount`: Count of outlier values above `upperLimit`. Only used if the outlier mode is `overflow`.
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- `missingValueCount`: Count of null values seen by the histogram.
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- `max`: Max value seen by the histogram. This does not include outlier values.
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- `min`: Min value seen by the histogram. This does not include outlier values.
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- `histogram`: An array of longs with size `numBuckets`, containing the bucket counts
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### Ingesting existing histograms
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It is also possible to ingest existing fixed buckets histograms. The input must be a Base64 string encoding a byte array that contains a serialized histogram object. Both "full" and "sparse" formats can be used. Please see [Serialization formats](#serialization-formats) below for details.
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### Serialization formats
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#### Full serialization format
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This format includes the full histogram bucket count array in the serialization format.
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```
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byte: serialization version, must be 0x01
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byte: encoding mode, 0x01 for full
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double: lowerLimit
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double: upperLimit
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int: numBuckets
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byte: outlier handling mode (0x00 for `ignore`, 0x01 for `overflow`, and 0x02 for `clip`)
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long: count, total number of values contained in the histogram, excluding outliers
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long: lowerOutlierCount
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long: upperOutlierCount
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long: missingValueCount
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double: max
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double: min
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array of longs: bucket counts for the histogram
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```
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#### Sparse serialization format
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This format represents the histogram bucket counts as (bucketNum, count) pairs. This serialization format is used when less than half of the histogram's buckets have values.
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```
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byte: serialization version, must be 0x01
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byte: encoding mode, 0x02 for sparse
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double: lowerLimit
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double: upperLimit
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int: numBuckets
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byte: outlier handling mode (0x00 for `ignore`, 0x01 for `overflow`, and 0x02 for `clip`)
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long: count, total number of values contained in the histogram, excluding outliers
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long: lowerOutlierCount
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long: upperOutlierCount
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long: missingValueCount
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double: max
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double: min
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int: number of following (bucketNum, count) pairs
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sequence of (int, long) pairs:
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int: bucket number
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count: bucket count
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```
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### Combining histograms with different bucketing schemes
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It is possible to combine two histograms with different bucketing schemes (lowerLimit, upperLimit, numBuckets) together.
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The bucketing scheme of the "left hand" histogram will be preserved (i.e., when running a query, the bucketing schemes specified in the query's histogram aggregators will be preserved).
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When merging, we assume that values are evenly distributed within the buckets of the "right hand" histogram.
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When the right-hand histogram contains outliers (when using `overflow` mode), we assume that all of the outliers counted in the right-hand histogram will be outliers in the left-hand histogram as well.
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For performance and accuracy reasons, we recommend avoiding aggregation of histograms with different bucketing schemes if possible.
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### Null handling
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If `druid.generic.useDefaultValueForNull` is false, null values will be tracked in the `missingValueCount` field of the histogram.
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If `druid.generic.useDefaultValueForNull` is true, null values will be added to the histogram as the default 0.0 value.
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## Histogram post-aggregators
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Post-aggregators are used to transform opaque approximate histogram sketches
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into bucketed histogram representations, as well as to compute various
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distribution metrics such as quantiles, min, and max.
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### Equal buckets post-aggregator
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Computes a visual representation of the approximate histogram with a given number of equal-sized bins.
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Bucket intervals are based on the range of the underlying data. This aggregator is not supported for the fixed buckets histogram.
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```json
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{
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"type": "equalBuckets",
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"name": "<output_name>",
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"fieldName": "<aggregator_name>",
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"numBuckets": <count>
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}
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```
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### Buckets post-aggregator
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Computes a visual representation given an initial breakpoint, offset, and a bucket size.
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Bucket size determines the width of the binning interval.
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Offset determines the value on which those interval bins align.
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This aggregator is not supported for the fixed buckets histogram.
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```json
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{
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"type": "buckets",
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"name": "<output_name>",
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"fieldName": "<aggregator_name>",
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"bucketSize": <bucket_size>,
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"offset": <offset>
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}
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```
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### Custom buckets post-aggregator
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Computes a visual representation of the approximate histogram with bins laid out according to the given breaks.
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This aggregator is not supported for the fixed buckets histogram.
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```json
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{ "type" : "customBuckets", "name" : <output_name>, "fieldName" : <aggregator_name>,
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"breaks" : [ <value>, <value>, ... ] }
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```
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### min post-aggregator
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Returns the minimum value of the underlying approximate or fixed buckets histogram aggregator
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```json
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{ "type" : "min", "name" : <output_name>, "fieldName" : <aggregator_name> }
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```
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### max post-aggregator
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Returns the maximum value of the underlying approximate or fixed buckets histogram aggregator
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```json
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{ "type" : "max", "name" : <output_name>, "fieldName" : <aggregator_name> }
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```
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#### quantile post-aggregator
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Computes a single quantile based on the underlying approximate or fixed buckets histogram aggregator
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```json
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{ "type" : "quantile", "name" : <output_name>, "fieldName" : <aggregator_name>,
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"probability" : <quantile> }
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```
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#### quantiles post-aggregator
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Computes an array of quantiles based on the underlying approximate or fixed buckets histogram aggregator
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```json
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{ "type" : "quantiles", "name" : <output_name>, "fieldName" : <aggregator_name>,
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"probabilities" : [ <quantile>, <quantile>, ... ] }
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```
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