Interface LongsSortedView
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- All Superinterfaces:
SortedView
- All Known Implementing Classes:
LongsSketchSortedView
public interface LongsSortedView extends SortedView
The Sorted View for quantile sketches of primitive type long.- Author:
- Lee Rhodes, Zac Blanco
- See Also:
SortedView
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Method Summary
All Methods Instance Methods Abstract Methods Default Methods Modifier and Type Method Description default double[]
getCDF(long[] splitPoints, QuantileSearchCriteria searchCrit)
Returns an approximation to the Cumulative Distribution Function (CDF) of the input stream as a monotonically increasing array of double ranks (or cumulative probabilities) on the interval [0.0, 1.0], given a set of splitPoints.long
getMaxItem()
Returns the maximum item of the stream.long
getMinItem()
Returns the minimum item of the stream.default double[]
getPMF(long[] splitPoints, QuantileSearchCriteria searchCrit)
Returns an approximation to the Probability Mass Function (PMF) of the input stream as an array of probability masses as doubles on the interval [0.0, 1.0], given a set of splitPoints.long
getQuantile(double rank, QuantileSearchCriteria searchCrit)
Gets the approximate quantile of the given normalized rank and the given search criterion.long[]
getQuantiles()
Returns an array of all retained quantiles by the sketch.double
getRank(long quantile, QuantileSearchCriteria searchCrit)
Gets the normalized rank corresponding to the given a quantile.LongsSortedViewIterator
iterator()
Returns an iterator for this Sorted View.-
Methods inherited from interface org.apache.datasketches.quantilescommon.SortedView
getCumulativeWeights, getN, getNumRetained, isEmpty
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Method Detail
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getCDF
default double[] getCDF(long[] splitPoints, QuantileSearchCriteria searchCrit)
Returns an approximation to the Cumulative Distribution Function (CDF) of the input stream as a monotonically increasing array of double ranks (or cumulative probabilities) on the interval [0.0, 1.0], given a set of splitPoints.The resulting approximations have a probabilistic guarantee that can be obtained from the getNormalizedRankError(false) function.
- Parameters:
splitPoints
- an array of m unique, monotonically increasing items (of the same type as the input items) that divide the item input domain into m+1 overlapping intervals.The start of each interval is below the lowest item retained by the sketch corresponding to a zero rank or zero probability, and the end of the interval is the rank or cumulative probability corresponding to the split point.
The (m+1)th interval represents 100% of the distribution represented by the sketch and consistent with the definition of a cumulative probability distribution, thus the (m+1)th rank or probability in the returned array is always 1.0.
If a split point exactly equals a retained item of the sketch and the search criterion is:
- INCLUSIVE, the resulting cumulative probability will include that item.
- EXCLUSIVE, the resulting cumulative probability will not include the weight of that split point.
It is not recommended to include either the minimum or maximum items of the input stream.
searchCrit
- the desired search criteria.- Returns:
- a discrete CDF array of m+1 double ranks (or cumulative probabilities) on the interval [0.0, 1.0].
- Throws:
IllegalArgumentException
- if sketch is empty.
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getMaxItem
long getMaxItem()
Returns the maximum item of the stream. This may be distinct from the largest item retained by the sketch algorithm.- Returns:
- the maximum item of the stream
- Throws:
IllegalArgumentException
- if sketch is empty.
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getMinItem
long getMinItem()
Returns the minimum item of the stream. This may be distinct from the smallest item retained by the sketch algorithm.- Returns:
- the minimum item of the stream
- Throws:
IllegalArgumentException
- if sketch is empty.
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getPMF
default double[] getPMF(long[] splitPoints, QuantileSearchCriteria searchCrit)
Returns an approximation to the Probability Mass Function (PMF) of the input stream as an array of probability masses as doubles on the interval [0.0, 1.0], given a set of splitPoints.The resulting approximations have a probabilistic guarantee that can be obtained from the getNormalizedRankError(true) function.
- Parameters:
splitPoints
- an array of m unique, monotonically increasing items (of the same type as the input items) that divide the item input domain into m+1 consecutive, non-overlapping intervals.Each interval except for the end intervals starts with a split point and ends with the next split point in sequence.
The first interval starts below the lowest item retained by the sketch corresponding to a zero rank or zero probability, and ends with the first split point
The last (m+1)th interval starts with the last split point and ends after the last item retained by the sketch corresponding to a rank or probability of 1.0.
The sum of the probability masses of all (m+1) intervals is 1.0.
If the search criterion is:
- INCLUSIVE, and the upper split point of an interval equals an item retained by the sketch, the interval will include that item. If the lower split point equals an item retained by the sketch, the interval will exclude that item.
- EXCLUSIVE, and the upper split point of an interval equals an item retained by the sketch, the interval will exclude that item. If the lower split point equals an item retained by the sketch, the interval will include that item.
It is not recommended to include either the minimum or maximum items of the input stream.
searchCrit
- the desired search criteria.- Returns:
- a PMF array of m+1 probability masses as doubles on the interval [0.0, 1.0].
- Throws:
IllegalArgumentException
- if sketch is empty.
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getQuantile
long getQuantile(double rank, QuantileSearchCriteria searchCrit)
Gets the approximate quantile of the given normalized rank and the given search criterion.- Parameters:
rank
- the given normalized rank, a double in the range [0.0, 1.0].searchCrit
- If INCLUSIVE, the given rank includes all quantiles ≤ the quantile directly corresponding to the given rank. If EXCLUSIVE, he given rank includes all quantiles < the quantile directly corresponding to the given rank.- Returns:
- the approximate quantile given the normalized rank.
- Throws:
IllegalArgumentException
- if sketch is empty.- See Also:
QuantileSearchCriteria
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getQuantiles
long[] getQuantiles()
Returns an array of all retained quantiles by the sketch.- Returns:
- an array of all retained quantiles by the sketch.
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getRank
double getRank(long quantile, QuantileSearchCriteria searchCrit)
Gets the normalized rank corresponding to the given a quantile.- Parameters:
quantile
- the given quantilesearchCrit
- if INCLUSIVE the given quantile is included into the rank.- Returns:
- the normalized rank corresponding to the given quantile.
- Throws:
IllegalArgumentException
- if sketch is empty.- See Also:
QuantileSearchCriteria
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iterator
LongsSortedViewIterator iterator()
Description copied from interface:SortedView
Returns an iterator for this Sorted View.- Specified by:
iterator
in interfaceSortedView
- Returns:
- an iterator for this Sorted View.
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