f67bce40fb
H405 is a new rule in hacking 0.9, so fix new violations and re-enable gating. Change-Id: I61541fa0a9dc18ad938df54d56c65c972b151622
530 lines
19 KiB
Python
530 lines
19 KiB
Python
#
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# Copyright 2013 Intel Corp.
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# Copyright 2014 Red Hat, Inc
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#
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# Authors: Yunhong Jiang <yunhong.jiang@intel.com>
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# Eoghan Glynn <eglynn@redhat.com>
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#
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# Licensed under the Apache License, Version 2.0 (the "License"); you may
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# not use this file except in compliance with the License. You may obtain
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# a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS, WITHOUT
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# WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the
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# License for the specific language governing permissions and limitations
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# under the License.
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import fnmatch
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import itertools
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import operator
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import os
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from oslo.config import cfg
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import yaml
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from ceilometer.openstack.common.gettextutils import _
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from ceilometer.openstack.common import log
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from ceilometer import publisher
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from ceilometer import transformer as xformer
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OPTS = [
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cfg.StrOpt('pipeline_cfg_file',
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default="pipeline.yaml",
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help="Configuration file for pipeline definition."
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),
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]
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cfg.CONF.register_opts(OPTS)
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LOG = log.getLogger(__name__)
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class PipelineException(Exception):
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def __init__(self, message, pipeline_cfg):
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self.msg = message
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self.pipeline_cfg = pipeline_cfg
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def __str__(self):
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return 'Pipeline %s: %s' % (self.pipeline_cfg, self.msg)
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class PublishContext(object):
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def __init__(self, context, pipelines=None):
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pipelines = pipelines or []
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self.pipelines = set(pipelines)
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self.context = context
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def add_pipelines(self, pipelines):
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self.pipelines.update(pipelines)
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def __enter__(self):
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def p(samples):
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for p in self.pipelines:
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p.publish_samples(self.context,
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samples)
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return p
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def __exit__(self, exc_type, exc_value, traceback):
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for p in self.pipelines:
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p.flush(self.context)
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class Source(object):
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"""Represents a source of samples.
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In effect it is a set of pollsters and/or notification handlers emitting
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samples for a set of matching meters. Each source encapsulates meter name
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matching, polling interval determination, optional resource enumeration or
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discovery, and mapping to one or more sinks for publication.
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"""
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def __init__(self, cfg):
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self.cfg = cfg
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try:
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self.name = cfg['name']
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try:
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self.interval = int(cfg['interval'])
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except ValueError:
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raise PipelineException("Invalid interval value", cfg)
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# Support 'counters' for backward compatibility
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self.meters = cfg.get('meters', cfg.get('counters'))
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self.sinks = cfg.get('sinks')
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except KeyError as err:
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raise PipelineException(
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"Required field %s not specified" % err.args[0], cfg)
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if self.interval <= 0:
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raise PipelineException("Interval value should > 0", cfg)
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self.resources = cfg.get('resources') or []
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if not isinstance(self.resources, list):
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raise PipelineException("Resources should be a list", cfg)
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self.discovery = cfg.get('discovery') or []
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if not isinstance(self.discovery, list):
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raise PipelineException("Discovery should be a list", cfg)
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self._check_meters()
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def __str__(self):
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return self.name
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def _check_meters(self):
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"""Meter rules checking
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At least one meaningful meter exist
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Included type and excluded type meter can't co-exist at
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the same pipeline
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Included type meter and wildcard can't co-exist at same pipeline
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"""
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meters = self.meters
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if not meters:
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raise PipelineException("No meter specified", self.cfg)
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if ([x for x in meters if x[0] not in '!*'] and
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[x for x in meters if x[0] == '!']):
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raise PipelineException(
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"Both included and excluded meters specified",
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cfg)
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if '*' in meters and [x for x in meters if x[0] not in '!*']:
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raise PipelineException(
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"Included meters specified with wildcard",
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self.cfg)
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# (yjiang5) To support meters like instance:m1.tiny,
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# which include variable part at the end starting with ':'.
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# Hope we will not add such meters in future.
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@staticmethod
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def _variable_meter_name(name):
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m = name.partition(':')
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if m[1] == ':':
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return m[1].join((m[0], '*'))
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else:
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return name
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def support_meter(self, meter_name):
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meter_name = self._variable_meter_name(meter_name)
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# Special case: if we only have negation, we suppose the default is
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# allow
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default = all(meter.startswith('!') for meter in self.meters)
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# Support wildcard like storage.* and !disk.*
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# Start with negation, we consider that the order is deny, allow
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if any(fnmatch.fnmatch(meter_name, meter[1:])
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for meter in self.meters
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if meter[0] == '!'):
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return False
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if any(fnmatch.fnmatch(meter_name, meter)
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for meter in self.meters
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if meter[0] != '!'):
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return True
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return default
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def check_sinks(self, sinks):
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if not self.sinks:
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raise PipelineException(
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"No sink defined in source %s" % self,
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self.cfg)
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for sink in self.sinks:
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if sink not in sinks:
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raise PipelineException(
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"Dangling sink %s from source %s" % (sink, self),
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self.cfg)
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class Sink(object):
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"""Represents a sink for the transformation and publication of samples.
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Samples are emitted from a related source.
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Each sink config is concerned *only* with the transformation rules
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and publication conduits for samples.
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In effect, a sink describes a chain of handlers. The chain starts
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with zero or more transformers and ends with one or more publishers.
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The first transformer in the chain is passed samples from the
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corresponding source, takes some action such as deriving rate of
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change, performing unit conversion, or aggregating, before passing
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the modified sample to next step.
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The subsequent transformers, if any, handle the data similarly.
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At the end of the chain, publishers publish the data. The exact
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publishing method depends on publisher type, for example, pushing
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into data storage via the message bus providing guaranteed delivery,
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or for loss-tolerant samples UDP may be used.
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If no transformers are included in the chain, the publishers are
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passed samples directly from the sink which are published unchanged.
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"""
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def __init__(self, cfg, transformer_manager):
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self.cfg = cfg
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try:
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self.name = cfg['name']
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# It's legal to have no transformer specified
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self.transformer_cfg = cfg['transformers'] or []
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except KeyError as err:
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raise PipelineException(
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"Required field %s not specified" % err.args[0], cfg)
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if not cfg.get('publishers'):
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raise PipelineException("No publisher specified", cfg)
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self.publishers = []
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for p in cfg['publishers']:
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if '://' not in p:
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# Support old format without URL
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p = p + "://"
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try:
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self.publishers.append(publisher.get_publisher(p))
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except Exception:
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LOG.exception(_("Unable to load publisher %s"), p)
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self.transformers = self._setup_transformers(cfg, transformer_manager)
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def __str__(self):
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return self.name
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def _setup_transformers(self, cfg, transformer_manager):
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transformer_cfg = cfg['transformers'] or []
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transformers = []
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for transformer in transformer_cfg:
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parameter = transformer['parameters'] or {}
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try:
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ext = transformer_manager.get_ext(transformer['name'])
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except KeyError:
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raise PipelineException(
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"No transformer named %s loaded" % transformer['name'],
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cfg)
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transformers.append(ext.plugin(**parameter))
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LOG.info(_(
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"Pipeline %(pipeline)s: Setup transformer instance %(name)s "
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"with parameter %(param)s") % ({'pipeline': self,
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'name': transformer['name'],
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'param': parameter}))
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return transformers
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def _transform_sample(self, start, ctxt, sample):
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try:
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for transformer in self.transformers[start:]:
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sample = transformer.handle_sample(ctxt, sample)
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if not sample:
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LOG.debug(_(
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"Pipeline %(pipeline)s: Sample dropped by "
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"transformer %(trans)s") % ({'pipeline': self,
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'trans': transformer}))
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return
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return sample
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except Exception as err:
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LOG.warning(_("Pipeline %(pipeline)s: "
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"Exit after error from transformer "
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"%(trans)s for %(smp)s") % ({'pipeline': self,
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'trans': transformer,
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'smp': sample}))
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LOG.exception(err)
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def _publish_samples(self, start, ctxt, samples):
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"""Push samples into pipeline for publishing.
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:param start: The first transformer that the sample will be injected.
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This is mainly for flush() invocation that transformer
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may emit samples.
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:param ctxt: Execution context from the manager or service.
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:param samples: Sample list.
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"""
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transformed_samples = []
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for sample in samples:
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LOG.debug(_(
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"Pipeline %(pipeline)s: Transform sample "
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"%(smp)s from %(trans)s transformer") % ({'pipeline': self,
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'smp': sample,
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'trans': start}))
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sample = self._transform_sample(start, ctxt, sample)
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if sample:
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transformed_samples.append(sample)
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if transformed_samples:
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for p in self.publishers:
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try:
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p.publish_samples(ctxt, transformed_samples)
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except Exception:
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LOG.exception(_(
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"Pipeline %(pipeline)s: Continue after error "
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"from publisher %(pub)s") % ({'pipeline': self,
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'pub': p}))
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def publish_samples(self, ctxt, samples):
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for meter_name, samples in itertools.groupby(
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sorted(samples, key=operator.attrgetter('name')),
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operator.attrgetter('name')):
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self._publish_samples(0, ctxt, samples)
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def flush(self, ctxt):
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"""Flush data after all samples have been injected to pipeline."""
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for (i, transformer) in enumerate(self.transformers):
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try:
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self._publish_samples(i + 1, ctxt,
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list(transformer.flush(ctxt)))
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except Exception as err:
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LOG.warning(_(
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"Pipeline %(pipeline)s: Error flushing "
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"transformer %(trans)s") % ({'pipeline': self,
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'trans': transformer}))
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LOG.exception(err)
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class Pipeline(object):
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"""Represents a coupling between a sink and a corresponding source."""
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def __init__(self, source, sink):
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self.source = source
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self.sink = sink
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self.name = str(self)
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def __str__(self):
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return (self.source.name if self.source.name == self.sink.name
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else '%s:%s' % (self.source.name, self.sink.name))
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def get_interval(self):
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return self.source.interval
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@property
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def resources(self):
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return self.source.resources
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@property
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def discovery(self):
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return self.source.discovery
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def support_meter(self, meter_name):
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return self.source.support_meter(meter_name)
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@property
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def publishers(self):
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return self.sink.publishers
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def publish_sample(self, ctxt, sample):
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self.publish_samples(ctxt, [sample])
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def publish_samples(self, ctxt, samples):
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supported = [s for s in samples if self.source.support_meter(s.name)]
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self.sink.publish_samples(ctxt, supported)
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def flush(self, ctxt):
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self.sink.flush(ctxt)
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class PipelineManager(object):
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"""Pipeline Manager
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Pipeline manager sets up pipelines according to config file
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Usually only one pipeline manager exists in the system.
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"""
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def __init__(self, cfg, transformer_manager):
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"""Setup the pipelines according to config.
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The configuration is supported in one of two forms:
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1. Deprecated: the source and sink configuration are conflated
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as a list of consolidated pipelines.
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The pipelines are defined as a list of dictionaries each
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specifying the target samples, the transformers involved,
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and the target publishers, for example:
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[{"name": pipeline_1,
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"interval": interval_time,
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"meters" : ["meter_1", "meter_2"],
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"resources": ["resource_uri1", "resource_uri2"],
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"transformers": [
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{"name": "Transformer_1",
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"parameters": {"p1": "value"}},
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{"name": "Transformer_2",
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"parameters": {"p1": "value"}},
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],
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"publishers": ["publisher_1", "publisher_2"]
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},
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{"name": pipeline_2,
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"interval": interval_time,
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"meters" : ["meter_3"],
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"publishers": ["publisher_3"]
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},
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]
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2. Decoupled: the source and sink configuration are separately
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specified before being linked together. This allows source-
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specific configuration, such as resource discovery, to be
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kept focused only on the fine-grained source while avoiding
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the necessity for wide duplication of sink-related config.
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The configuration is provided in the form of separate lists
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of dictionaries defining sources and sinks, for example:
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{"sources": [{"name": source_1,
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"interval": interval_time,
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"meters" : ["meter_1", "meter_2"],
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"resources": ["resource_uri1", "resource_uri2"],
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"sinks" : ["sink_1", "sink_2"]
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},
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{"name": source_2,
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"interval": interval_time,
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"meters" : ["meter_3"],
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"sinks" : ["sink_2"]
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},
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],
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"sinks": [{"name": sink_1,
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"transformers": [
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{"name": "Transformer_1",
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"parameters": {"p1": "value"}},
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{"name": "Transformer_2",
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"parameters": {"p1": "value"}},
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],
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"publishers": ["publisher_1", "publisher_2"]
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},
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{"name": sink_2,
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"publishers": ["publisher_3"]
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},
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]
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}
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The semantics of the common individual configuration elements
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are identical in the deprecated and decoupled version.
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The interval determines the cadence of sample injection into
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the pipeline where samples are produced under the direct control
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of an agent, i.e. via a polling cycle as opposed to incoming
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notifications.
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Valid meter format is '*', '!meter_name', or 'meter_name'.
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'*' is wildcard symbol means any meters; '!meter_name' means
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"meter_name" will be excluded; 'meter_name' means 'meter_name'
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will be included.
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The 'meter_name" is Sample name field. For meter names with
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variable like "instance:m1.tiny", it's "instance:*".
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Valid meters definition is all "included meter names", all
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"excluded meter names", wildcard and "excluded meter names", or
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only wildcard.
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The resources is list of URI indicating the resources from where
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the meters should be polled. It's optional and it's up to the
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specific pollster to decide how to use it.
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Transformer's name is plugin name in setup.cfg.
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Publisher's name is plugin name in setup.cfg
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"""
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self.pipelines = []
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if 'sources' in cfg or 'sinks' in cfg:
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if not ('sources' in cfg and 'sinks' in cfg):
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raise PipelineException("Both sources & sinks are required",
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cfg)
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LOG.info(_('detected decoupled pipeline config format'))
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sources = [Source(s) for s in cfg.get('sources', [])]
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sinks = dict((s['name'], Sink(s, transformer_manager))
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for s in cfg.get('sinks', []))
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for source in sources:
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source.check_sinks(sinks)
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for target in source.sinks:
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self.pipelines.append(Pipeline(source,
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sinks[target]))
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else:
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LOG.warning(_('detected deprecated pipeline config format'))
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for pipedef in cfg:
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source = Source(pipedef)
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sink = Sink(pipedef, transformer_manager)
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self.pipelines.append(Pipeline(source, sink))
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def publisher(self, context):
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"""Build a new Publisher for these manager pipelines.
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:param context: The context.
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"""
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return PublishContext(context, self.pipelines)
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def setup_pipeline(transformer_manager=None):
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"""Setup pipeline manager according to yaml config file."""
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cfg_file = cfg.CONF.pipeline_cfg_file
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if not os.path.exists(cfg_file):
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cfg_file = cfg.CONF.find_file(cfg_file)
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LOG.debug(_("Pipeline config file: %s"), cfg_file)
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with open(cfg_file) as fap:
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data = fap.read()
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pipeline_cfg = yaml.safe_load(data)
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LOG.info(_("Pipeline config: %s"), pipeline_cfg)
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return PipelineManager(pipeline_cfg,
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transformer_manager or
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xformer.TransformerExtensionManager(
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'ceilometer.transformer',
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))
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