openstack-manuals/doc/admin-guide-cloud/section_object-storage-monitoring.xml
nerminamiller 2163ad9a00 Restructure Object Storage chapter of Cloud Admin Guide
Restores Troubleshoot Object Storage
Removes Monitoring section, which was based on a blog

backport: havana
Closes-Bug: #1251515
author: nermina miller

Change-Id: I580b077a0124d7cd54dced6c0d340e05d5d5f983
2013-12-18 13:47:49 -05:00

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<?xml version="1.0" encoding="UTF-8"?>
<section xmlns="http://docbook.org/ns/docbook"
xmlns:xi="http://www.w3.org/2001/XInclude"
xmlns:xlink="http://www.w3.org/1999/xlink" version="5.0"
xml:id="ch_introduction-to-openstack-object-storage-monitoring">
<!-- ... Based on a blog, should be replaced with original material... -->
<title>Object Storage monitoring</title>
<?dbhtml stop-chunking?>
<para>Excerpted from a blog post by <link
xlink:href="http://swiftstack.com/blog/2012/04/11/swift-monitoring-with-statsd"
>Darrell Bishop</link></para>
<para>An OpenStack Object Storage cluster is a collection of many
daemons that work together across many nodes. With so many
different components, you must be able to tell what is going
on inside the cluster. Tracking server-level metrics like CPU
utilization, load, memory consumption, disk usage and
utilization, and so on is necessary, but not
sufficient.</para>
<para>What are different daemons are doing on each server? What is
the volume of object replication on node8? How long is it
taking? Are there errors? If so, when did they happen?</para>
<para>In such a complex ecosystem, you can use multiple approaches
to get the answers to these questions. This section describes
several approaches.</para>
<section xml:id="monitoring-swiftrecon">
<title>Swift Recon</title>
<para>The Swift Recon middleware (see <link
xlink:href="http://swift.openstack.org/admin_guide.html#cluster-telemetry-and-monitoring"
>http://swift.openstack.org/admin_guide.html#cluster-telemetry-and-monitoring</link>)
provides general machine statistics, such as load average,
socket statistics, <code>/proc/meminfo</code> contents,
and so on, as well as Swift-specific metrics:</para>
<itemizedlist>
<listitem>
<para>The MD5 sum of each ring file.</para>
</listitem>
<listitem>
<para>The most recent object replication time.</para>
</listitem>
<listitem>
<para>Count of each type of quarantined file: Account,
container, or object.</para>
</listitem>
<listitem>
<para>Count of “async_pendings” (deferred container
updates) on disk.</para>
</listitem>
</itemizedlist>
<para>Swift Recon is middleware that is installed in the
object servers pipeline and takes one required option: A
local cache directory. To track
<literal>async_pendings</literal>, you must set up an
additional cron job for each object server. You access
data by either sending HTTP requests directly to the
object server or using the <command>swift-recon</command>
command-line client.</para>
<para>There are some good Object Storage cluster statistics
but the general server metrics overlap with existing
server monitoring systems. To get the Swift-specific
metrics into a monitoring system, they must be polled.
Swift Recon essentially acts as a middleware metrics
collector. The process that feeds metrics to your
statistics system, such as <literal>collectd</literal> and
<literal>gmond</literal>, probably already runs on the
storage node. So, you can choose to either talk to Swift
Recon or collect the metrics directly.</para>
</section>
<section xml:id="monitoring-swift-informant">
<title>Swift-Informant</title>
<para>Florian Hines developed the Swift-Informant middleware
(see <link
xlink:href="http://pandemicsyn.posterous.com/swift-informant-statsd-getting-realtime-telem"
>http://pandemicsyn.posterous.com/swift-informant-statsd-getting-realtime-telem</link>)
to get real-time visibility into Object Storage client
requests. It sits in the pipeline for the proxy server,
and after each request to the proxy server, sends three
metrics to a StatsD server (see <link
xlink:href="http://codeascraft.etsy.com/2011/02/15/measure-anything-measure-everything/"
>http://codeascraft.etsy.com/2011/02/15/measure-anything-measure-everything/</link>):</para>
<itemizedlist>
<listitem>
<para>A counter increment for a metric like
<code>obj.GET.200</code> or
<code>cont.PUT.404</code>.</para>
</listitem>
<listitem>
<para>Timing data for a metric like
<code>acct.GET.200</code> or
<code>obj.GET.200</code>. [The README says the
metrics look like
<code>duration.acct.GET.200</code>, but I do
not see the <literal>duration</literal> in the
code. I am not sure what the Etsy server does but
our StatsD server turns timing metrics into five
derivative metrics with new segments appended, so
it probably works as coded. The first metric turns
into <code>acct.GET.200.lower</code>,
<code>acct.GET.200.upper</code>,
<code>acct.GET.200.mean</code>,
<code>acct.GET.200.upper_90</code>, and
<code>acct.GET.200.count</code>].</para>
</listitem>
<listitem>
<para>A counter increase by the bytes transferred for
a metric like
<code>tfer.obj.PUT.201</code>.</para>
</listitem>
</itemizedlist>
<para>This is good for getting a feel for the quality of
service clients are experiencing with the timing metrics,
as well as getting a feel for the volume of the various
permutations of request server type, command, and response
code. Swift-Informant also requires no change to core
Object Storage code because it is implemented as
middleware. However, it gives you no insight into the
workings of the cluster past the proxy server. If the
responsiveness of one storage node degrades, you can only
see that some of your requests are bad, either as high
latency or error status codes. You do not know exactly why
or where that request tried to go. Maybe the container
server in question was on a good node but the object
server was on a different, poorly-performing node.</para>
</section>
<section xml:id="monitoring-statsdlog">
<title>Statsdlog</title>
<para>Florians <link
xlink:href="https://github.com/pandemicsyn/statsdlog"
>Statsdlog</link> project increments StatsD counters
based on logged events. Like Swift-Informant, it is also
non-intrusive, but statsdlog can track events from all
Object Storage daemons, not just proxy-server. The daemon
listens to a UDP stream of syslog messages and StatsD
counters are incremented when a log line matches a regular
expression. Metric names are mapped to regex match
patterns in a JSON file, allowing flexible configuration
of what metrics are extracted from the log stream.</para>
<para>Currently, only the first matching regex triggers a
StatsD counter increment, and the counter is always
incremented by one. There is no way to increment a counter
by more than one or send timing data to StatsD based on
the log line content. The tool could be extended to handle
more metrics for each line and data extraction, including
timing data. But a coupling would still exist between the
log textual format and the log parsing regexes, which
would themselves be more complex to support multiple
matches for each line and data extraction. Also, log
processing introduces a delay between the triggering event
and sending the data to StatsD. It would be preferable to
increment error counters where they occur and send timing
data as soon as it is known to avoid coupling between a
log string and a parsing regex and prevent a time delay
between events and sending data to StatsD.</para>
<para>The next section describes another method for gathering
Object Storage operational metrics.</para>
</section>
<section xml:id="monitoring-statsD">
<title>Swift StatsD logging</title>
<para>StatsD (see <link
xlink:href="http://codeascraft.etsy.com/2011/02/15/measure-anything-measure-everything/"
>http://codeascraft.etsy.com/2011/02/15/measure-anything-measure-everything/</link>)
was designed for application code to be deeply
instrumented; metrics are sent in real-time by the code
that just noticed or did something. The overhead of
sending a metric is extremely low: a <code>sendto</code>
of one UDP packet. If that overhead is still too high, the
StatsD client library can send only a random portion of
samples and StatsD approximates the actual number when
flushing metrics upstream.</para>
<para>To avoid the problems inherent with middleware-based
monitoring and after-the-fact log processing, the sending
of StatsD metrics is integrated into Object Storage
itself. The submitted change set (see <link
xlink:href="https://review.openstack.org/#change,6058"
>https://review.openstack.org/#change,6058</link>)
currently reports 124 metrics across 15 Object Storage
daemons and the tempauth middleware. Details of the
metrics tracked are in the <link
xlink:href="http://docs.openstack.org/developer/swift/admin_guide.html"
>Administrator's Guide</link>.</para>
<para>The sending of metrics is integrated with the logging
framework. To enable, configure
<code>log_statsd_host</code> in the relevant config
file. You can also specify the port and a default sample
rate. The specified default sample rate is used unless a
specific call to a statsd logging method (see the list
below) overrides it. Currently, no logging calls override
the sample rate, but it is conceivable that some metrics
may require accuracy (sample_rate == 1) while others may
not.</para>
<literallayout class="monospaced">[DEFAULT]
...
log_statsd_host = 127.0.0.1
log_statsd_port = 8125
log_statsd_default_sample_rate = 1</literallayout>
<para>Then the LogAdapter object returned by
<code>get_logger()</code>, usually stored in
<code>self.logger</code>, has these new
methods:</para>
<itemizedlist>
<listitem>
<para><code>set_statsd_prefix(self, prefix)</code>
Sets the client library stat prefix value which
gets prefixed to every metric. The default prefix
is the “name” of the logger (such as, .
“object-server”, “container-auditor”, etc.). This
is currently used to turn “proxy-server” into one
of “proxy-server.Account”,
“proxy-server.Container”, or “proxy-server.Object”
as soon as the Controller object is determined and
instantiated for the request.</para>
</listitem>
<listitem>
<para><code>update_stats(self, metric, amount,
sample_rate=1)</code> Increments the supplied
metric by the given amount. This is used when you
need to add or subtract more that one from a
counter, like incrementing “suffix.hashes” by the
number of computed hashes in the object
replicator.</para>
</listitem>
<listitem>
<para><code>increment(self, metric,
sample_rate=1)</code> Increments the given
counter metric by one.</para>
</listitem>
<listitem>
<para><code>decrement(self, metric,
sample_rate=1)</code> Lowers the given counter
metric by one.</para>
</listitem>
<listitem>
<para><code>timing(self, metric, timing_ms,
sample_rate=1)</code> Record that the given
metric took the supplied number of
milliseconds.</para>
</listitem>
<listitem>
<para><code>timing_since(self, metric, orig_time,
sample_rate=1)</code> Convenience method to
record a timing metric whose value is “now” minus
an existing timestamp.</para>
</listitem>
</itemizedlist>
<para>Note that these logging methods may safely be called
anywhere you have a logger object. If StatsD logging has
not been configured, the methods are no-ops. This avoids
messy conditional logic each place a metric is recorded.
These example usages show the new logging methods:</para>
<programlisting language="bash"># swift/obj/replicator.py
def update(self, job):
# ...
begin = time.time()
try:
hashed, local_hash = tpool.execute(tpooled_get_hashes, job['path'],
do_listdir=(self.replication_count % 10) == 0,
reclaim_age=self.reclaim_age)
# See tpooled_get_hashes "Hack".
if isinstance(hashed, BaseException):
raise hashed
self.suffix_hash += hashed
self.logger.update_stats('suffix.hashes', hashed)
# ...
finally:
self.partition_times.append(time.time() - begin)
self.logger.timing_since('partition.update.timing', begin)</programlisting>
<programlisting language="bash"># swift/container/updater.py
def process_container(self, dbfile):
# ...
start_time = time.time()
# ...
for event in events:
if 200 &lt;= event.wait() &lt; 300:
successes += 1
else:
failures += 1
if successes > failures:
self.logger.increment('successes')
# ...
else:
self.logger.increment('failures')
# ...
# Only track timing data for attempted updates:
self.logger.timing_since('timing', start_time)
else:
self.logger.increment('no_changes')
self.no_changes += 1</programlisting>
<para>The development team of StatsD wanted to use the <link
xlink:href="https://github.com/sivy/py-statsd"
>pystatsd</link> client library (not to be confused
with a <link
xlink:href="https://github.com/sivy/py-statsd"
>similar-looking project</link> also hosted on
GitHub), but the released version on PyPi was missing two
desired features the latest version in GitHub had: the
ability to configure a metrics prefix in the client object
and a convenience method for sending timing data between
“now” and a “start” timestamp you already have. So they
just implemented a simple StatsD client library from
scratch with the same interface. This has the nice fringe
benefit of not introducing another external library
dependency into Object Storage.</para>
</section>
</section>