Example #1
0
class PerfdataModule(MigrationModule):
    def __init__(self, *args, **kwargs):
        super(PerfdataModule, self).__init__(*args, **kwargs)

        self.manager = PerfData()

    def init(self):
        pass

    def update(self):
        if self.get_version('perfdata') < 1:
            self.logger.info('Migrating to version 1')

            self.update_to_version_1()
            self.set_version('perfdata', 1)

    def update_to_version_1(self):
        storage = self.manager[PerfData.PERFDATA_STORAGE]
        nan = float('nan')

        oneweek = 3600 * 24 * 7

        for document in storage.find_elements():

            metric_id = document['i']

            values = document['v']
            t = document['t']

            points = list(
                (t + int(ts), nan if values[ts] is None else values[ts])
                for ts in values
            )

            rightvalues = {
                key: values[key] for key in values if int(key) < oneweek
            }
            document['v'] = rightvalues

            storage.put_element(
                element=document, cache=False
            )

            self.manager.put(metric_id=metric_id, points=points, cache=False)
Example #2
0
    def __init__(self, *args, **kargs):
        super(engine, self).__init__(*args, **kargs)

        self.storage = get_storage(
            namespace='events',
            account=Account(
                user="******",
                group="root"
            )
        )
        self.manager = PerfData()
        self.perf_data = PerfDataUtils()
Example #3
0
class CTXPerfDataRegistry(CTXPropRegistry):
    """In charge of ctx perfdata properties.
    """

    __datatype__ = 'perfdata'  #: default datatype name

    def __init__(self, *args, **kwargs):

        super(CTXPerfDataRegistry, self).__init__(*args, **kwargs)

        self.manager = PerfData()

    def _do(self, cmd, ids, *args, **kwargs):

        result = []

        if ids is None:
            metrics = self.manager.context.find(_type='metric')
            ids = [metric['_id'] for metric in metrics]

        entity_id_field = self._entity_id_field()

        for entity_id in ids:
            cmdresult = cmd(metric_id=entity_id, **kwargs)
            if isinstance(cmdresult, list):
                result += [
                    {entity_id_field: entity_id, 'point': point}
                    for point in cmdresult
                ]
            else:
                item = {entity_id_field: entity_id, 'result': cmdresult}
                result.append(item)

        return result

    def _get(self, ids, query, *args, **kwargs):

        return self._do(cmd=self.manager.get, ids=ids, with_tags=False)

    def _count(self, ids, query, *args, **kwargs):

        return self._do(cmd=self.manager.count, ids=ids)

    def _delete(self, ids, query, *args, **kwargs):

        return self._do(cmd=self.manager.remove, ids=ids)

    def ids(self, query=None):

        result = self.manager.get_metrics(query=query)

        return result
Example #4
0
 def setUp(self):
     self.perfdata = PerfData(data_scope='test')
Example #5
0
class PerfDataTest(TestCase):

    def setUp(self):
        self.perfdata = PerfData(data_scope='test')

    def test_put_get_data(self):

        timewindow = TimeWindow()

        metric_id = 'test_manager'

        self.perfdata.remove(metric_id=metric_id, with_meta=True)

        count = self.perfdata.count(metric_id=metric_id)
        self.assertEqual(count, 0)

        tv0 = (int(timewindow.start()), None)
        tv1 = (int(timewindow.start() + 1), 0)
        tv2 = (int(timewindow.stop()), 2)
        tv3 = (int(timewindow.stop() + 1000000), 3)

        # set values with timestamp without order
        points = [tv0, tv2, tv1, tv3]

        meta = {'plop': None}

        self.perfdata.put(
            metric_id=metric_id,
            points=points,
            meta=meta
        )

        data, _meta = self.perfdata.get(
            metric_id=metric_id,
            timewindow=timewindow,
            with_meta=True
        )

        self.assertEqual(meta, _meta[0][PerfData.META_VALUE])

        self.assertEqual([tv0, tv1, tv2], data)

        # remove 1 data at stop point
        _timewindow = get_offset_timewindow(timewindow.stop())

        self.perfdata.remove(
            metric_id=metric_id,
            timewindow=_timewindow
        )

        data, _meta = self.perfdata.get(
            metric_id=metric_id,
            timewindow=timewindow,
            with_meta=True
        )

        self.assertEqual(meta, _meta[0][PerfData.META_VALUE])

        self.assertEqual(data, [tv0, tv1])

        # get data on timewindow
        data, _meta = self.perfdata.get(
            metric_id=metric_id,
            timewindow=timewindow,
            with_meta=True
        )

        self.assertEqual(meta, _meta[0][PerfData.META_VALUE])

        # get all data
        data, _meta = self.perfdata.get(
            metric_id=metric_id,
            with_meta=True
        )

        self.assertEqual(meta, _meta[0][PerfData.META_VALUE])

        self.assertEqual(len(data), 3)

        # remove all data
        self.perfdata.remove(
            metric_id=metric_id,
            with_meta=True
        )

        data, _meta = self.perfdata.get(
            metric_id=metric_id,
            with_meta=True
        )

        self.assertIsNone(_meta)

        self.assertEqual(len(data), 0)
Example #6
0
    def __init__(self, *args, **kwargs):
        super(PerfdataModule, self).__init__(*args, **kwargs)

        self.manager = PerfData()
Example #7
0
 def __init__(self):
     self.manager = PerfData()
Example #8
0
class PerfDataUtils(object):
    """docstring for PerfDataUtils"""

    def __init__(self):
        self.manager = PerfData()

    def perfdata_count(self, metric_id, timewindow=None):
        if timewindow is not None:
            timewindow = TimeWindow(**timewindow)

        result = self.manager.count(
            metric_id=metric_id, timewindow=timewindow
        )

        return result

    def perfdata(
        self, metric_id, timewindow=None, period=None, with_meta=True,
        limit=0, skip=0, timeserie=None
    ):
        if timewindow is not None:
            timewindow = TimeWindow(**timewindow)

        if timeserie is not None:
            if period is None:
                period = timeserie.pop('period', None)

            timeserie = TimeSerie(**timeserie)

            if period is not None:
                timeserie.period = Period(**period)

        if not isinstance(metric_id, list):
            metrics = [metric_id]

        else:
            metrics = metric_id

        result = []

        for metric_id in metrics:
            pts, meta = self.manager.get(
                metric_id=metric_id, with_meta=True,
                timewindow=timewindow, limit=limit, skip=skip
            )

            meta = meta[0]

            if timeserie is not None:
                pts = timeserie.calculate(pts, timewindow, meta=meta)

            if with_meta:
                result.append({
                    "points": pts,
                    "meta": meta
                })

            else:
                result.append({
                    "points": pts
                })

        return (result, len(result))

    def perfdata_meta(self, metric_id, timewindow=None, limit=0, sort=None):
        if timewindow is not None:
            timewindow = TimeWindow(**timewindow)

        result = self.manager.get_meta(
            metric_id=metric_id, timewindow=timewindow, limit=limit, sort=sort
        )

        return result
Example #9
0
 def pre_run(self):
     self.storage = get_storage(
         namespace='object',
         account=Account(user="******", group="root")
     )
     self.manager = PerfData()
Example #10
0
class engine(Engine):
    etype = 'consolidation'

    def __init__(self, *args, **kargs):
        super(engine, self).__init__(*args, **kargs)

        self.storage = get_storage(
            namespace='events',
            account=Account(
                user="******",
                group="root"
            )
        )
        self.manager = PerfData()
        self.perf_data = PerfDataUtils()

    def pre_run(self):
        self.storage = get_storage(
            namespace='object',
            account=Account(user="******", group="root")
        )
        self.manager = PerfData()

    def fetch(self, serie, _from, _to):
        self.logger.debug("*Start fetch*")
        t_serie = serie.copy()
        timewindow = {'start': _from, 'stop': _to, 'timezone': gmtime()}
        if (len(t_serie['metrics']) > 1
                and t_serie['aggregate_method'].lower() == 'none'):
            self.logger.debug(
                'More than one metric in serie, performing an aggregation'
            )
            self.logger.debug('serie:'.format(t_serie))
            self.logger.debug('aggregation: average - 60s')
            t_serie['aggregate_method'] = 'average'
            t_serie['aggregate_interval'] = 60
        if t_serie['aggregate_method'].lower() == 'none':
            self.logger.debug('serie:'.format(t_serie))
            timeserie = {'aggregation': 'NONE'}
            results = self.perf_data.perfdata(
                metric_id=t_serie['metrics'], timewindow=timewindow,
                timeserie=timeserie
            )
        else:
            self.logger.debug('serie:', t_serie)
            timeserie = {
                'aggregation': t_serie['aggregate_method'],
                'period': {'second': t_serie['aggregate_interval']}
            }
            results = self.perf_data.perfdata(
                metric_id=t_serie['metrics'], timewindow=timewindow,
                timeserie=timeserie
            )

        formula = t_serie['formula']

        finalserie = self.metric_raw(results, formula)
        self.logger.debug("*End fetch*")

        return finalserie

    def metric_raw(self, results, formula):
        #nmetric = results[1]
        metrics, _ = results
        # Build points dictionnary
        points = {}
        length = False
        for m in metrics:
            cid = m['meta']['data_id']
            mid = 'metric_' + hashlib.md5(cid).hexdigest()
            mname = self.retreive_metric_name(cid)
            # Replace metric name in formula by the unique id
            formula = formula.replace(mname, mid)
            self.logger.debug("Metric {0} - {1}".format(mname, mid))
            points[mid] = m['points']
            # Make sure we treat the same amount of points by selecting
            # The metric with less points.
            if not length or len(m['points']) < length:
                length = len(m['points'])
        self.logger.debug('formula: {}'.format(formula))
        #self.logger.debug('points: {}'.format(points))

        mids = points.keys()
        finalSerie = []

        # Now loop over all points to calculate the final serie
        for i in range(length):
            data = {}
            ts = 0
            for j in range(len(mids)):
                mid = mids[j]
                # Get point value at timestamp "i" for metric "mid"
                data[mid] = points[mid][i][1]

                # Set timestamp
                ts = points[mid][i][0]

            # import data in math context
            math = Formulas(data)
            # Evaluate the mathematic formula
            pointval = math.evaluate(formula)

            # Add computed point in the serie
            finalSerie.append([ts * 1000, pointval])
            # Remove variables values from math context
            math.reset()

        self.logger.debug('finalserie: {}'.format(finalSerie))

        return finalSerie, points[mid]

    def retreive_metric_name(self, name):
        '''
        This method allow to slice data from an existing one.
        TODO: improve this method with the Context ID.
        '''
        if name is None:
            return None
        li = name.split('/')
        for i in range(4):
            li.pop(0)
        name = '/'+'/'.join(li)
        return name

    def consume_dispatcher(self, event, *args, **kargs):
        self.logger.debug("Start metrics consolidation")
        t_serie = event.copy()
        self.logger.debug('\n\n\n\n----->serie: {}'.format(t_serie))
        if not t_serie:
            # Show error message
            self.logger.error('No record found.')
        # Test Settings
        _from = 1425394522
        _to = 1425402296
        perf_data_array = []
        _, points = self.fetch(t_serie, _from, _to)

        # This method allow us to update an metric or a list of metrics
        self.manager.put(metric_id=t_serie['_id'], points=points)

        # Publish the consolidation metrics
        # metric_name = 'metric_name'  # Change the value with UI data
        for t, v in points:
            #c_event['timestamp'] = t
            perf_data_array.append(
                {
                    'metric': t_serie['_id'], 'value': v,
                    'unit': t_serie['_id'], 'min': None,
                    'max': None, 'warn': None, 'crit': None, 'type': 'GAUGE'
                }
            )
            conso_event = forger(
                timestamp=t,
                component='conso',
                connector='Engine',
                connector_name='consolidation',
                event_type='perf',
                source_type='component',
                perf_data_array=perf_data_array
            )

            self.logger.debug('Publishing {}'.format(conso_event))
            publish(publisher=self.amqp, event=conso_event)
            perf_data_array = []  # reset the perf_data_array data

        # Update crecords informations
        event_id = t_serie['_id']
        self.crecord_task_complete(event_id)
Example #11
0
    def __init__(self, *args, **kwargs):

        super(CTXPerfDataRegistry, self).__init__(*args, **kwargs)

        self.manager = PerfData()
Example #12
0
class PerfdataModule(MigrationModule):
    def __init__(self, *args, **kwargs):
        super(PerfdataModule, self).__init__(*args, **kwargs)

        self.manager = PerfData()

    def init(self):
        pass

    def update_mongo2influxdb(self):
        """Convert mongo data to influxdb data."""
        mongostorage = MongoStorage(table='periodic_perfdata')

        count = mongostorage._backend.count()

        if count:  # if data have to be deleted
            for document in mongostorage._backend.find():

                data_id = document['i']
                timestamp = int(document['t'])
                values = document['v']

                points = [(timestamp + int(ts), values[ts]) for ts in values]

                perfdata.put(metric_id=data_id, points=points)

                mongostorage.remove_elements(ids=document['_id'])

    def update(self):
        # FIXME
        if self.get_version('perfdata') < 1 and False:
            self.logger.info(u'Migrating to version 1')

            self.update_to_version_1()
            self.set_version('perfdata', 1)

        if self.get_version('perfdata') < 2:
            self.logger.info(u'Migrating to version 2')
            self.update_mongo2influxdb()
            self.set_version('perfdata', 2)

    def update_to_version_1(self):
        storage = self.manager[PerfData.PERFDATA_STORAGE]
        nan = float('nan')

        oneweek = 3600 * 24 * 7

        for document in storage.find_elements():

            metric_id = document['i']

            values = document['v']
            t = document['t']

            points = list(
                (t + int(ts), nan if values[ts] is None else values[ts])
                for ts in values
            )

            rightvalues = {
                key: values[key] for key in values if int(key) < oneweek
            }
            document['v'] = rightvalues

            storage.put_element(
                element=document, cache=False
            )

            self.manager.put(metric_id=metric_id, points=points, cache=False)
Example #13
0
    def __init__(self, *args, **kargs):

        super(engine, self).__init__(*args, **kargs)

        self.perfdata = PerfData()
Example #14
0
class engine(Engine):

    etype = 'perfdata'

    def __init__(self, *args, **kargs):

        super(engine, self).__init__(*args, **kargs)

        self.perfdata = PerfData()

    def work(self, event, *args, **kargs):

        # Get perfdata
        perf_data = event.get('perf_data')
        perf_data_array = event.get('perf_data_array', [])

        if perf_data_array is None:
            perf_data_array = []

        # Parse perfdata
        if perf_data:

            self.logger.debug(' + perf_data: {0}'.format(perf_data))

            try:
                perf_data_array += self.perfdata.parse_perfdata(perf_data)

            except Exception as err:
                self.logger.error(
                    "Impossible to parse perfdata from: {0} ({1})"
                    .format(event, err)
                )

        self.logger.debug(' + perf_data_array: {0}'.format(perf_data_array))

        # Add status informations
        event_type = event.get('event_type')

        handled_event_types = ['check', 'selector', 'sla']

        if event_type is not None and event_type in handled_event_types:

            self.logger.debug('Add status informations')

            state = int(event.get('state', 0))
            state_type = int(event.get('state_type', 0))
            state_extra = 0

            # Multiplex state
            cps_state = state * 100 + state_type * 10 + state_extra

            perf_data_array.append(
                {
                    "metric": "cps_state",
                    "value": cps_state
                }
            )

        event['perf_data_array'] = perf_data_array

        # remove perf_data_keys where values are None
        for index, perf_data in enumerate(event['perf_data_array']):

            perf_data_array_with_Nones = event['perf_data_array'][index]

            event['perf_data_array'][index] = {
                name: perf_data_array_with_Nones[name]
                for name in perf_data_array_with_Nones
                if perf_data_array_with_Nones[name] is not None
            }

        self.logger.debug('perf_data_array: {0}'.format(perf_data_array))

        event = deepcopy(event)

        # Metrology
        timestamp = event['timestamp'] if 'timestamp' in event else None

        if timestamp is not None:

            perf_data_array = event.get('perf_data_array', [])

            for perf_data in perf_data_array:

                perf_data = perf_data.copy()
                event_with_metric = deepcopy(event)
                event_with_metric['type'] = 'metric'
                event_with_metric[Context.NAME] = perf_data.pop('metric')

                metric_id = self.perfdata.context.get_entity_id(
                    event_with_metric
                )
                value = perf_data.pop('value', None)

                self.perfdata.put(
                    metric_id=metric_id, points=[(timestamp, value)],
                    meta=perf_data, cache=True
                )

        return event