24__all__ = [
"ReserveSourcesConfig",
"ReserveSourcesTask"]
33 """Configuration for reserving sources"""
34 fraction =
Field(dtype=float, default=0.0,
35 doc=
"Fraction of candidates to reserve from fitting; none if <= 0")
36 seed =
Field(dtype=int, default=1,
37 doc=(
"This number will be added to the exposure ID to set the random seed for "
38 "reserving candidates"))
42 """Reserve sources from analysis
44 We randomly select a fraction of sources that will be reserved
45 from analysis. This allows evaluation of the quality of model fits
46 using sources that were
not involved
in the fitting process.
50 columnName : `str`, required
51 Name of flag column to add; we will suffix this
with "_reserved".
55 Documentation
for column to add.
56 config : `ReserveSourcesConfig`
59 ConfigClass = ReserveSourcesConfig
60 _DefaultName = "reserveSources"
62 def __init__(self, columnName=None, schema=None, doc=None, **kwargs):
63 Task.__init__(self, **kwargs)
64 assert columnName
is not None,
"columnName not provided"
65 assert schema
is not None,
"schema not provided"
67 self.
key = schema.addField(self.
columnName +
"_reserved", type=
"Flag", doc=doc)
69 def run(self, sources, prior=None, expId=0):
70 """Select sources to be reserved
72 Reserved sources will be flagged in the catalog,
and we will
return
73 boolean arrays that identify the sources to be reserved
from and
74 used
in the analysis. Typically you
'll want to use the sources
75 from the `use` array
in your fitting,
and use the sources
from the
76 `reserved` array
as an independent test of your fitting.
81 Sources
from which to select some to be reserved.
82 prior : `numpy.ndarray` of type `bool`, optional
83 Prior selection of sources. Should have the same length
as
84 `sources`. If set, we will only consider
for reservation sources
85 that are flagged `
True`
in this array.
87 Exposure identifier; used
for seeding the random number generator.
91 results : `lsst.pipe.base.Struct`
92 The results
in a `~lsst.pipe.base.Struct`:
95 Sources to be reserved are flagged `
True`
in this array.
96 (`numpy.ndarray` of type `bool`)
98 Sources the user should use
in analysis are flagged `
True`.
99 (`numpy.ndarray` of type `bool`)
101 if prior
is not None:
102 assert len(prior) == len(sources),
"Length mismatch: %s vs %s" % (len(prior), len(sources))
103 numSources = prior.sum()
105 numSources = len(sources)
106 selection = self.
select(numSources, expId)
107 if prior
is not None:
110 self.log.info(
"Reserved %d/%d sources", selection.sum(), len(selection))
111 return Struct(reserved=selection,
112 use=prior & ~selection
if prior
is not None else np.logical_not(selection))
115 """Randomly select some sources
117 We return a boolean array
with a random selection. The fraction
118 of sources selected
is specified by the config parameter `fraction`.
123 Number of sources
in catalog
from which to select.
125 Exposure identifier; used
for seeding the random number generator.
129 selection : `numpy.ndarray` of type `bool`
130 Selected sources are flagged `
True`
in this array.
132 selection = np.zeros(numSources, dtype=bool)
133 if self.config.fraction <= 0:
135 reserve = int(np.round(numSources*self.config.fraction))
136 selection[:reserve] =
True
137 rng = np.random.RandomState((self.config.seed + expId) & 0xFFFFFFFF)
138 rng.shuffle(selection)
142 """Apply selection to full catalog
144 The `select` method makes a random selection of sources. If those
145 sources don't represent the full population (because a sub-selection
146 has already been made), then we need to generate a selection covering
147 the entire population.
151 prior : `numpy.ndarray` of type `bool`
152 Prior selection of sources, identifying the subset from which the
153 random selection has been made.
154 selection : `numpy.ndarray` of type `bool`
155 Selection of sources
in subset identified by `prior`.
159 full : `numpy.ndarray` of type `bool`
160 Selection applied to full population.
162 full = np.zeros(len(prior), dtype=bool)
163 full[prior] = selection
167 """Mark sources in a list or catalog
169 This requires iterating through the list and setting the flag
in
170 each source individually. Even
if the `sources`
is a `Catalog`
171 with contiguous records, it
's not currently possible to set a boolean
172 column (DM-6981) so we need to iterate.
177 Catalog
in which to flag selected sources.
178 selection : `numpy.ndarray` of type `bool`
179 Selection of sources to mark.
181 for src, select
in zip(sources, selection):
183 src.set(self.
key,
True)
Defines the fields and offsets for a table.
__init__(self, columnName=None, schema=None, doc=None, **kwargs)
select(self, numSources, expId=0)
applySelectionPrior(self, prior, selection)
markSources(self, sources, selection)