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mechanism to render metrics with alternative names

This commit is contained in:
Richard van der Hoff 2018-01-15 16:58:41 +00:00
parent 80fa610f9c
commit 992018d1c0

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@ -17,24 +17,33 @@
from itertools import chain
# TODO(paul): I can't believe Python doesn't have one of these
def map_concat(func, items):
# flatten a list-of-lists
return list(chain.from_iterable(map(func, items)))
def flatten(items):
"""Flatten a list of lists
Args:
items: iterable[iterable[X]]
Returns:
list[X]: flattened list
"""
return list(chain.from_iterable(items))
class BaseMetric(object):
"""Base class for metrics which report a single value per label set
"""
def __init__(self, name, labels=[]):
def __init__(self, name, labels=[], alternative_names=[]):
"""
Args:
name (str): principal name for this metric
labels (list(str)): names of the labels which will be reported
for this metric
alternative_names (iterable(str)): list of alternative names for
this metric. This can be useful to provide a migration path
when renaming metrics.
"""
self.name = name
self._names = [name] + list(alternative_names)
self.labels = labels # OK not to clone as we never write it
def dimension(self):
@ -55,6 +64,22 @@ class BaseMetric(object):
for k, v in zip(self.labels, values)])
)
def _render_for_labels(self, label_values, value):
"""Render this metric for a single set of labels
Args:
label_values (list[str]): values for each of the labels
value: value of the metric at with these labels
Returns:
iterable[str]: rendered metric
"""
rendered_labels = self._render_key(label_values)
return (
"%s%s %.12g" % (name, rendered_labels, value)
for name in self._names
)
def render(self):
"""Render this metric
@ -110,11 +135,11 @@ class CounterMetric(BaseMetric):
def inc(self, *values):
self.inc_by(1, *values)
def render_item(self, k):
return ["%s%s %.12g" % (self.name, self._render_key(k), self.counts[k])]
def render(self):
return map_concat(self.render_item, sorted(self.counts.keys()))
return flatten(
self._render_for_labels(k, self.counts[k])
for k in sorted(self.counts.keys())
)
class CallbackMetric(BaseMetric):
@ -131,10 +156,12 @@ class CallbackMetric(BaseMetric):
value = self.callback()
if self.is_scalar():
return ["%s %.12g" % (self.name, value)]
return list(self._render_for_labels([], value))
return ["%s%s %.12g" % (self.name, self._render_key(k), value[k])
for k in sorted(value.keys())]
return flatten(
self._render_for_labels(k, value[k])
for k in sorted(value.keys())
)
class DistributionMetric(object):