608e428006
This CL splits metrics_daemon into two independent daemons: metricsd and metrics_collector. * metricsd will be responsible for reading the metrics from disk and periodically uploading them to the server. * metrics_collector will be responsible for gathering generic metrics from the system and managing the weave state for metrics. This refactoring is necessary to prepare the migration of metricsd to log over binder. Bug: 25670908 Test: Unit tests. Test: manual: both daemons run. Metrics are logged, uploaded and the weave interaction works. Change-Id: Ib00e1772bb7eec87cbcdcd912c30b555d79d7074 |
||
---|---|---|
.. | ||
collectors | ||
etc/weaved | ||
include/metrics | ||
serialization | ||
uploader | ||
Android.mk | ||
c_metrics_library.cc | ||
constants.h | ||
libmetrics-334380.gyp | ||
libmetrics.gypi | ||
libmetrics.pc.in | ||
metrics.gyp | ||
metrics_client.cc | ||
metrics_collector.cc | ||
metrics_collector.h | ||
metrics_collector.rc | ||
metrics_collector_main.cc | ||
metrics_collector_test.cc | ||
metrics_library.cc | ||
metrics_library_test.cc | ||
metricsd.rc | ||
metricsd_main.cc | ||
OWNERS | ||
persistent_integer.cc | ||
persistent_integer.h | ||
persistent_integer_mock.h | ||
persistent_integer_test.cc | ||
README | ||
timer.cc | ||
timer_test.cc | ||
WATCHLISTS |
Copyright (C) 2015 The Android Open Source Project Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License. ================================================================================ The Chrome OS "metrics" package contains utilities for client-side user metric collection. When Chrome is installed, Chrome will take care of aggregating and uploading the metrics to the UMA server. When Chrome is not installed (embedded build) and the metrics_uploader USE flag is set, metrics_daemon will aggregate and upload the metrics itself. ================================================================================ The Metrics Library: libmetrics ================================================================================ libmetrics is a small library that implements the basic C and C++ API for metrics collection. All metrics collection is funneled through this library. The easiest and recommended way for a client-side module to collect user metrics is to link libmetrics and use its APIs to send metrics to Chrome for transport to UMA. In order to use the library in a module, you need to do the following: - Add a dependence (DEPEND and RDEPEND) on chromeos-base/metrics to the module's ebuild. - Link the module with libmetrics (for example, by passing -lmetrics to the module's link command). Both libmetrics.so and libmetrics.a are built and installed under $SYSROOT/usr/lib/. Note that by default -lmetrics will link against libmetrics.so, which is preferred. - To access the metrics library API in the module, include the <metrics/metrics_library.h> header file. The file is installed in $SYSROOT/usr/include/ when the metrics library is built and installed. - The API is documented in metrics_library.h under src/platform/metrics/. Before using the API methods, a MetricsLibrary object needs to be constructed and initialized through its Init method. For more information on the C API see c_metrics_library.h. - Samples are sent to Chrome only if the "/home/chronos/Consent To Send Stats" file exists or the metrics are declared enabled in the policy file (see the AreMetricsEnabled API method). - On the target platform, shortly after the sample is sent, it should be visible in Chrome through "about:histograms". ================================================================================ Histogram Naming Convention ================================================================================ Use TrackerArea.MetricName. For example: Platform.DailyUseTime Network.TimeToDrop ================================================================================ Server Side ================================================================================ If the histogram data is visible in about:histograms, it will be sent by an official Chrome build to UMA, assuming the user has opted into metrics collection. To make the histogram visible on "chromedashboard", the histogram description XML file needs to be updated (steps 2 and 3 after following the "Details on how to add your own histograms" link under the Histograms tab). Include the string "Chrome OS" in the histogram description so that it's easier to distinguish Chrome OS specific metrics from general Chrome histograms. The UMA server logs and keeps the collected field data even if the metric's name is not added to the histogram XML. However, the dashboard histogram for that metric will show field data as of the histogram XML update date; it will not include data for older dates. If past data needs to be displayed, manual server-side intervention is required. In other words, one should assume that field data collection starts only after the histogram XML has been updated. ================================================================================ The Metrics Client: metrics_client ================================================================================ metrics_client is a simple shell command-line utility for sending histogram samples and user actions. It's installed under /usr/bin on the target platform and uses libmetrics to send the data to Chrome. The utility is useful for generating metrics from shell scripts. For usage information and command-line options, run "metrics_client" on the target platform or look for "Usage:" in metrics_client.cc. ================================================================================ The Metrics Daemon: metrics_daemon ================================================================================ metrics_daemon is a daemon that runs in the background on the target platform and is intended for passive or ongoing metrics collection, or metrics collection requiring feedback from multiple modules. For example, it listens to D-Bus signals related to the user session and screen saver states to determine if the user is actively using the device or not and generates the corresponding data. The metrics daemon uses libmetrics to send the data to Chrome. The recommended way to generate metrics data from a module is to link and use libmetrics directly. However, the module could instead send signals to or communicate in some alternative way with the metrics daemon. Then the metrics daemon needs to monitor for the relevant events and take appropriate action -- for example, aggregate data and send the histogram samples. ================================================================================ FAQ ================================================================================ Q. What should my histogram's |min| and |max| values be set at? A. You should set the values to a range that covers the vast majority of samples that would appear in the field. Note that samples below the |min| will still be collected in the underflow bucket and samples above the |max| will end up in the overflow bucket. Also, the reported mean of the data will be correct regardless of the range. Q. How many buckets should I use in my histogram? A. You should allocate as many buckets as necessary to perform proper analysis on the collected data. Note, however, that the memory allocated in Chrome for each histogram is proportional to the number of buckets. Therefore, it is strongly recommended to keep this number low (e.g., 50 is normal, while 100 is probably high). Q. When should I use an enumeration (linear) histogram vs. a regular (exponential) histogram? A. Enumeration histograms should really be used only for sampling enumerated events and, in some cases, percentages. Normally, you should use a regular histogram with exponential bucket layout that provides higher resolution at the low end of the range and lower resolution at the high end. Regular histograms are generally used for collecting performance data (e.g., timing, memory usage, power) as well as aggregated event counts.