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python-librato

Build Status

A Python wrapper for the Librato Metrics API.

NOTE: Starting in version 3, we have deprecated Dashboards and Instruments in favor of Spaces and Charts.

Installation

In your shell:

$ easy_install librato-metrics

or

$ pip install librato-metrics

From your application or script:

import librato

Authentication

We first use our credentials to connect to the API. I am assuming you have a librato account for Metrics. Go to your account settings page and save your username (email address) and token (long hexadecimal string).

  api = librato.connect('email', 'token')

When creating your connection you may choose to provide a sanitization function. This will be applied to any metric name you pass in. For example we provide a sanitization function that will ensure your metrics are legal librato names. This can be set as such

  api = librato.connect('email', 'token', sanitizer=librato.sanitize_metric_name)

By default no sanitization is done.

Basic Usage

To iterate over your metrics:

  for m in api.list_metrics():
    print m.name

or use list_metrics() to iterate over all your metrics with transparent pagination.

Let's now create a Metric:

  api.submit("temperature", 10, description="temperature at home")

By default submit() will create a gauge metric. The metric will be created automatically by the server if it does not exist

To create a counter metric (note: counters are expected to be absolute counters and take a monotonically increasing value such as network throughput):

  api.submit("connections", 20, type="counter", description="server connections")

To iterate over your metric names:

  for m in api.list_metrics():
      print "%s: %s" % (m.name, m.description)

To retrieve a specific metric:

  # Retrieve metric metadata ONLY
  gauge = api.get("temperature")
  gauge.name # "temperature"
  gauge.description # "temperature at home"
  gauge.measurements # {}
  # Retrive metric with the last measurement seen
  gauge = api.get("temperature", count=1, resolution=1)
  gauge.measurements
  # {u'unassigned': [{u'count': 1, u'sum_squares': 100.0, u'min': 10.0, u'measure_time': 1474988647, u'max': 10.0, u'sum': 10.0, u'value': 10.0}]}

Iterate over measurements:

  metric = api.get("temperature", count=100, resolution=1)
  source = 'unassigned'
  for m in metric.measurements[source]:
    print "%s: %s" % (m['value'], m['measure_time'])

Notice a couple of things here. First, we are using the key unassigned since we have not associated our measurements to any source. If we had specified a source such as sf we could use it in the same fashion. Read more the API documentation. In addition, notice how we are passing the count and resolution parameters to make sure the API returns measurements in its answer and not only the metric properties. Read more about them here.

To retrieve a composite metric:

  # Get average temperature across all cities for last 8 hours
  compose = 'mean(s("temperature", "*", {function: "mean", period: "3600"}))'
  import time
  start_time = int(time.time()) - 8 * 3600
  resp = api.get_composite(compose, start_time=start_time)
  resp['measurements'][0]['series']
  # [
  #   {u'measure_time': 1421744400, u'value': 41.23944444444444},
  #   {u'measure_time': 1421748000, u'value': 40.07611111111111},
  #   {u'measure_time': 1421751600, u'value': 38.77444444444445},
  #   {u'measure_time': 1421755200, u'value': 38.05833333333333},
  #   {u'measure_time': 1421758800, u'value': 37.983333333333334},
  #   {u'measure_time': 1421762400, u'value': 38.93333333333333},
  #   {u'measure_time': 1421766000, u'value': 40.556666666666665}
  # ]

To create a saved composite metric:

  api.create_composite('humidity', 'sum(s("all.*", "*"))',
      description='a test composite')

Delete a metric:

  api.delete("temperature")

Sending measurements in batch mode

Sending a measurement in a single HTTP request is inefficient. The overhead both at protocol and backend level is very high. That's why we provide an alternative method to submit your measurements. The idea is to send measurements in batch mode. We push measurements that are stored and when we are ready, they will be submitted in an efficient manner. Here is an example:

api = librato.connect('email', 'token')
q   = api.new_queue()
q.add('temperature', 22.1, source='upstairs')
q.add('temperature', 23.1, source='dowstairs')
q.add('num_requests', 100, type='counter', source='server1')
q.add('num_requests', 102, type='counter', source='server2')
q.submit()

Queues can also be used as context managers. Once the context block is complete the queue is submitted automatically. This is true even if an exception interrupts flow. In the example below if potentially_dangerous_operation causes an exception the queue will submit the first measurement as it was the only one successfully added. If the operation succeeds both measurements will be submitted.

api = librato.connect('email', 'token')
with api.new_queue() as q:
    q.add('temperature', 22.1, source='upstairs')
    potentially_dangerous_operation()
    q.add('num_requests', 100, type='counter', source='server1')

Queues by default will collect metrics until they are told to submit. You may create a queue that autosubmits based on metric volume.

api = librato.connect('email', 'token')
# Submit when the 400th metric is queued
q = api.new_queue(auto_submit_count=400)

Submitting tagged measurements

NOTE: Tagged measurements are only available in the Tags Beta. Please contact Librato support to join the beta.

We can use tags in the submit method in order to associate key value pairs with our measurements:

    api.submit("temperature", 22, tags={'city': 'austin', 'station': '27'})

Queues also support tags. When adding measurements to a queue, we can associate tags to them in the same way we do with the submit method:

    q = api.new_queue()
    q.add('temperature', 12, tags={'city': 'sf'      , 'station': '12'})
    q.add('temperature', 14, tags={'city': 'new york', 'station': '1'})
    q.add('temperature', 22, tags={'city': 'austin'  , 'station': '112'})
    q.submit()

Updating Metric Attributes

You can update the information for a metric by using the update method, for example:

api = librato.connect('email', 'token')
for metric in api.list_metrics(name=" "):
  gauge = api.get(metric.name)
  attrs = gauge.attributes
  attrs['display_units_long'] = 'ms'
  api.update(metric.name, attributes=attrs)

Annotations

List Annotation all annotation streams:

for stream in api.list_annotation_streams():
print("%s: %s" % (stream.name, stream.display_name))

View the metadata on a named annotation stream:

stream = api.get_annotation_stream("api.pushes")
print stream

Retrieve all of the events inside a named annotation stream, by adding a start_time parameter to the get_annotation_stream() call:

stream=api.get_annotation_stream("api.pushes",start_time="1386050400")
for source in stream.events:
	print source
	events=stream.events[source]
	for event in events:
		print event['id']
		print event['title']
		print event['description']

Submit a new annotation to a named annotation stream (creates the stream if it doesn't exist). Title is a required parameter, and all other parameters are optional

api.post_annotation("testing",title="foobarbiz")

api.post_annotation("TravisCI",title="build %s"%travisBuildID,
                     source="SystemSource",
                     description="Application %s, Travis build %s"%(appName,travisBuildID),
                     links=[{'rel': 'travis', 'href': 'http://travisci.com/somebuild'}])

Delete a named annotation stream:

api.delete_annotation_stream("testing")

Spaces API

List Spaces

# List spaces
spaces = api.list_spaces()

Create a Space

# Create a new Space directly via API
space = api.create_space("space_name")
print("Created '%s'" % space.name)

# Create a new Space via the model, passing the connection
space = Space(api, 'Production')
space.save()

Find a Space

space = api.find_space('Production')

Delete a Space

space = api.create_space('Test')
api.delete_space(space.id)
# or
space.delete()

Create a Chart

# Create a Chart directly via API (defaults to line chart)
space = api.find_space('Production')
chart = api.create_chart(
    'cpu',
    space,
    streams=[{'metric': 'cpu.idle', 'source': '*'}]
)
# Create line chart using the Space model
space = api.find_space('Production')

# You can actually create an empty chart (default to line)
chart = space.add_chart('cpu')

# Create a chart with all attributes
chart = space.add_chart(
    'memory',
    type='line',
    streams=[
      {'metric': 'memory.free', 'source': '*'},
      {'metric': 'memory.used', 'source': '*',
        'group_function': 'breakout', 'summary_function': 'average'}
    ],
    min=0,
    max=50,
    label='the y axis label',
    use_log_yaxis=True,
    related_space=1234
)
# Shortcut to create a line chart with a single metric on it
chart = space.add_single_line_chart('my chart', 'my.metric', '*')
chart = space.add_single_line_chart('my chart', metric='my.metric', source='*')
# Shortcut to create a stacked chart with a single metric on it
chart = space.add_single_stacked_chart('my chart', 'my.metric', '*')
# Create a big number chart
bn = space.add_chart(
    'memory',
    type='bignumber',
    streams=[{'metric': 'my.metric', 'source': '*'}]
)
# Shortcut to add big number chart
bn = space.add_bignumber_chart('My Chart', 'my.metric', '*')
bn = space.add_bignumber_chart('My Chart', 'my.metric',
  source='*',
  group_function='sum',
  summary_function='sum',
  use_last_value=True
)

Find a Chart

# Takes either space_id or a space object
chart = api.get_chart(chart_id, space_id)
chart = api.get_chart(chart_id, space)

Update a Chart

chart = api.get_chart(chart_id, space_id)
chart.min = 0
chart.max = 50
chart.save()

Rename a Chart

chart = api.get_chart(chart_id, space_id)
# save() gets called automatically here
chart.rename('new chart name')

Add new metrics to a Chart

chart = space.charts()[-1]
chart.new_stream('foo', '*')
chart.new_stream(metric='foo', source='*')
chart.new_stream(composite='s("foo", "*")')
chart.save()

Delete a Chart

chart = api.get_chart(chart_id, space_id)
chart.delete()

Alerts

List all alerts:

for alert in api.list_alerts():
    print(alert.name)

Create an alert with an above condition:

alert = api.create_alert('my.alert')
alert.add_condition_for('metric_name').above(1) # trigger immediately
alert.add_condition_for('metric_name').above(1).duration(60) # trigger after a set duration
alert.add_condition_for('metric_name').above(1, 'sum') # custom summary function
alert.save()

Create an alert with a below condition:

alert = api.create_alert('my.alert', description='An alert description')
alert.add_condition_for('metric_name').below(1) # the same syntax as above conditions
alert.save()

Create an alert with an absent condition:

alert = api.create_alert('my.alert')
alert.add_condition_for('metric_name').stops_reporting_for(5) # duration in minutes of the threshold to trigger the alert
alert.save()

Restrict the condition to a specific source (default is *):

alert = api.create_alert('my.alert')
alert.add_condition_for('metric_name', 'mysource')
alert.save()

View all outbound services for the current user

for service in api.list_services():
    print(service._id, service.title, service.settings)

Create an alert with Service IDs

alert = api.create_alert('my.alert', services=[1234, 5678])

Create an alert with Service objects

s = api.list_services()
alert = api.create_alert('my.alert', services=[s[0], s[1]])

Add an outbound service to an alert:

alert = api.create_alert('my.alert')
alert.add_service(1234)
alert.save()

Put it all together:

cond = {'metric_name': 'cpu', 'type': 'above', 'threshold': 42}
s = api.list_services()
api.create_alert('my.alert', conditions=[cond], services=[s[0], s[1]])
# We have an issue at the API where conditions and services are not returned
# when creating. So, retrieve back from API
alert = api.get_alert('my.alert')
print(alert.conditions)
print(alert.services)

Client-side Aggregation

You can aggregate measurements before submission using the Aggregator class. Optionally, specify a measure_time to submit that timestamp to the API. You may also optionally specify a period to floor the timestamp to a particular interval. If period is specified without a measure_time, the current timestamp will be used, and floored to period. Specifying an optional source allows the aggregated measurement to report a source name.

Aggregator instances can be sent immediately by calling submit() or added to a Queue by calling queue.add_aggregator().

from librato.aggregator import Aggregator

api = librato.connect('email', 'token')

a = Aggregator(api)
a.add("foo", 42)
a.add("foo", 5)
# count=2, min=5, max=42, sum=47 (value calculated by API = mean = 23.5), source=unassigned
# measure_time = <now>
a.submit()

a = Aggregator(api, source='my.source', period=60)
a.add("foo", 42)
a.add("foo", 5)
# count=2, min=5, max=42, sum=47 (value calculated by API = mean = 23.5), source=my.source
# measure_time = <now> - (<now> % 60)
a.submit()

a = Aggregator(api, period=60, measure_time=1419302671)
a.add("foo", 42)
a.add("foo", 5)
# count=2, min=5, max=42, sum=47 (value calculated by API = mean = 23.5), source=unassigned
# measure_time = 1419302671 - (1419302671 % 60) = 1419302671 - 31 = 1419302640
a.submit()

a = Aggregator(api, measure_time=1419302671)
a.add("foo", 42)
a.add("foo", 5)
# count=2, min=5, max=42, sum=47 (value calculated by API = mean = 23.5), source=unassigned
# measure_time = 1419302671
a.submit()


# You can also add an Aggregator instance to a queue
q = librato.queue.Queue(api)
q.add_aggregator(a)
q.submit()

Misc

Timeouts

Timeouts are provided by the underlying http client. By default we timeout at 10 seconds. You can change that by using api.set_timeout(timeout).

Contribution

Do you want to contribute? Do you need a new feature? Please open a ticket.

Contributors

The original version of python-librato was conceived/authored/released by Chris Moyer (AKA @kopertop). He's graciously handed over maintainership of the project to us and we're super-appreciative of his efforts.

Copyright

Copyright (c) 2011-2016 Librato Inc. See LICENSE for details.

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