ReserveSourcesTask#
- class lsst.meas.algorithms.ReserveSourcesTask(columnName=None, schema=None, doc=None, **kwargs)#
Bases:
TaskReserve sources from analysis
We randomly select a fraction of sources that will be reserved from analysis. This allows evaluation of the quality of model fits using sources that were not involved in the fitting process.
Parameters#
- columnName
str, required Name of flag column to add; we will suffix this with “_reserved”.
- schema
lsst.afw.table.Schema, required Catalog schema.
- doc
str Documentation for column to add.
- config
ReserveSourcesConfig Configuration.
Methods Summary
applySelectionPrior(prior, selection)Apply selection to full catalog
markSources(sources, selection)Mark sources in a list or catalog
run(sources[, prior, expId])Select sources to be reserved
select(numSources[, expId])Randomly select some sources
Methods Documentation
- applySelectionPrior(prior, selection)#
Apply selection to full catalog
The
selectmethod makes a random selection of sources. If those sources don’t represent the full population (because a sub-selection has already been made), then we need to generate a selection covering the entire population.Parameters#
- prior
numpy.ndarrayof typebool Prior selection of sources, identifying the subset from which the random selection has been made.
- selection
numpy.ndarrayof typebool Selection of sources in subset identified by
prior.
Returns#
- full
numpy.ndarrayof typebool Selection applied to full population.
- prior
- markSources(sources, selection)#
Mark sources in a list or catalog
This requires iterating through the list and setting the flag in each source individually. Even if the
sourcesis aCatalogwith contiguous records, it’s not currently possible to set a boolean column (DM-6981) so we need to iterate.Parameters#
- catalog
lsst.afw.table.Catalogorlistoflsst.afw.table.Record Catalog in which to flag selected sources.
- selection
numpy.ndarrayof typebool Selection of sources to mark.
- catalog
- run(sources, prior=None, expId=0)#
Select sources to be reserved
Reserved sources will be flagged in the catalog, and we will return boolean arrays that identify the sources to be reserved from and used in the analysis. Typically you’ll want to use the sources from the
usearray in your fitting, and use the sources from thereservedarray as an independent test of your fitting.Parameters#
- sources
lsst.afw.table.Catalogorlistoflsst.afw.table.Record Sources from which to select some to be reserved.
- prior
numpy.ndarrayof typebool, optional Prior selection of sources. Should have the same length as
sources. If set, we will only consider for reservation sources that are flaggedTruein this array.- expId
int Exposure identifier; used for seeding the random number generator.
Returns#
- results
lsst.pipe.base.Struct The results in a
Struct:reservedSources to be reserved are flagged
Truein this array. (numpy.ndarrayof typebool)useSources the user should use in analysis are flagged
True. (numpy.ndarrayof typebool)
- sources
- select(numSources, expId=0)#
Randomly select some sources
We return a boolean array with a random selection. The fraction of sources selected is specified by the config parameter
fraction.Parameters#
- numSources
int Number of sources in catalog from which to select.
- expId
int Exposure identifier; used for seeding the random number generator.
Returns#
- selection
numpy.ndarrayof typebool Selected sources are flagged
Truein this array.
- numSources
- columnName