Mozci¶
Mozci is an object oriented library aimed at making it easier to analyze pushes and tasks in
Mozilla’s CI system. Basic usage involves instantiating a Push
object then accessing the
attributes and calling the functions to retrieve the desired data of this push. For example:
from mozci.push import Push
push = Push("79041cab0cc2", branch="autoland")
print("\n".join([t.label for t in push.tasks if t.failed])
The above snippet prints the failed tasks for a given push. Mozci uses data from a variety of sources, including Treeherder, hg.mozilla.org and decision task artifacts.
See the API docs for more details.
Usage Tips¶
Below are some ways to get the best experience with mozci
.
Caching Results¶
Gathering the requisite data can sometimes be very expensive. Analyzing many pushes at once can take
hours or even days. Luckily, mozci
uses a caching mechanism so once a result
is computed once, it won’t be re-computed (even between runs). See the linked docs for more details,
but a basic file system cache can be set up by modifying ~/.config/mozci/config.toml
and adding
the following:
[mozci.cache]
retention = 10080 # minutes
[mozci.cache.stores]
file = { driver = "file", path = "/path/to/cache" }
Pre-seeding the Cache via Bugbug¶
There’s a service called bugbug that runs mozci
against all of the pushes on autoland. This
service uploads its cache on S3 for others to use. You can benefit by using this uploaded cache
to “pre-seed” your own local cache, if you have the necessary scopes. To do so, add the following to your
~/.config/mozci/config.toml
:
[mozci.cache]
serializer = "compressedpickle"
[mozci.cache.stores]
s3 = { driver = "s3", bucket = "communitytc-bugbug", prefix = "data/mozci_cache/" }
Configuration¶
Mozci looks for a configuration file in your user config dir (e.g
~/.config/mozci/config.toml
):
The config is a TOML file, which looks something like:
[mozci]
verbose = 1
List of Options¶
The following keys are valid config options.
cache¶
This value allows you to set up a cache to store the results for future use. This avoids the penalty of hitting expensive data sources.
The mozci
module uses cachy to handle caching. Therefore the following stores are supported:
- database
- file system
- memcached
- redis
To enable caching, you’ll need to configure at least one store using the cache.stores
key.
Follow cachy’s configuration format identically. In addition to the options cachy
supports,
you can set the mozci.cache.retention
key to the time in minutes before stored queries are
invalidated.
For example:
[mozci.cache]
retention = 10080 # minutes
[mozci.cache.stores]
file = { driver = "file", path = "/path/to/dir/to/keep/cache" }
In addition, mozci
defines several custom cache stores:
- a
seeded-file
store. This is the same as the “file system” store, except you can specify a URL to initially seed your cache on creation:
[mozci.cache.stores]
file = {
driver = "seeded-file",
path = "/path/to/dir/to/keep/cache",
url = "https://example.com/mozci_cache.tar.gz"
}
Supported archive formats include .zip
, .tar
, .tar.gz
, .tar.bz2
and .tar.zst
.
The config also accepts a reseed_interval
(in minutes) which will re-seed the cache after the
interval expires. This assumes the URL is automatically updated by some other process.
As well as an archive_relpath
config, which specifies the path to the cache data “within” the
archive. Otherwise the cache data is assumed to be right at the root of the archive.
- a
renewing-file
store. This is the same as the “file system” store, except it renews items in the cache when they are retrieved. - an
s3
store, which allows caching items in a S3 bucket. With this store, items are renewed on access likerenewing-file
. It’s suggested to use a S3 Object Expiration policy to clean up items which are not accessed for a long time. Example configuration:
[mozci.cache.stores]
s3 = {
driver = "s3",
bucket = "myBucket",
prefix = "data/mozci_cache/"
}
data_sources¶
Mozci can retrieve data from many different sources, e.g treeherder, taskcluster, hg.mozilla.org, etc. Often these sources can provide the same data, but may have different runtime characteristics. For example, some may not have realtime data, might require authentication or might take a really long time.
You can choose which sources you want to use with this key. For example:
[mozci]
data_sources = ["treeherder_client", "taskcluster"]
The above will first try to fulfill any data requirements using the
treeherder_client
source. But if that source is unable to fulfill the
contract, the taskcluster
source will be used as a backup.
Available sources are defined in the DataHandler
class.
verbose¶
Enable verbose logging (default: 0
). Setting this to 1
enables debug
logging, while setting it to 2
enables trace logging.
autoclassification¶
Mozci controls which push classification results can be automatically processed by third-party tools (like Treeherder), using a feature flag and a set of filters for test names.
The feature can be fully disabled by setting enabled to false.
[mozci.autoclassification]
enabled = true
test-suite-names = [
"test-linux64-*/opt-mochitest-*",
"*wpt*",
]
Each value in the list of test-suite-names support [fnmatch](https://docs.python.org/3/library/fnmatch.html#fnmatch.fnmatch) syntax to allow glob-like syntax (using * for wildcard and ? for single characters).
The configuration above will enable autoclassification for tests matching test-linux64-*/opt-mochitest-* or *wpt*
Finally, the JSON classification output is extended to have an autoclassify boolean flag on each failure details payload, to check if this specific result should be processed.
Regressions¶
One of the primary uses of mozci
is to help detect which tasks and/or tests (if any) a push has
regressed. Since we do not run all tasks on every push and because of other factors like
intermittents, this problem is more difficult than it first appears. In fact mozci
can make very
few guarantees and so has to rely on probabilistic guesses.
This page will help explain how regressions are calculated by introducing concepts one at a time.
Definitions¶
There are currently two different vectors of regression that mozci
can check for: label and
group.
- label - is a task label (e.g
test-linux1804-64/debug-mochitest-e10s-1
) - group - is a grouping of tests, typically a manifest (e.g
dom/indexedDB/test/mochitest.ini
). - runnable is the unique label identifying a set of tasks, or the unique group identifying a set of tests.
- classification - an annotation that Sheriffs apply to tasks manually. It is also known as “starring” because it puts a little asterisk next to the task in Treeherder.
Runnable Summary¶
Thanks to retriggers, each runnable can run multiple times on the same push. The collection of labels or groups of the same type that ran on a push is called a runnable summary. For instance, if all the runnables on a push passed, then the status of the runnable summary is also PASS. Likewise if they all failed. If at least one instance of a runnable passes, and at least one instance of a runnable failed, then the runnable summary is said to be intermittent.
The GroupSummary
class implements this logic for groups and the
LabelSummary
implements the logic for labels. Both classes inherit from the
RunnableSummary
abstract base class.
All instances of RunnableSummary
have an overall status and an overall classification.
Candidate Regression¶
A candidate regression is a runnable which meets the following criteria:
- At least one instance of this runnable failed on target push (i.e, the status of the runnable summary is either FAIL or INTERMITTENT)
- The overall classification of the runnable summary is either
unclassified
, orfixed by commit
. This means runnables classified as a known intermittent are not candidate regressions.- For runnables classified
fixed by commit
, the referenced backout backs out the target push and not some other one.OR
- The runnable ran on a child push (up to
MAX_DEPTH
pushes away), and is classifiedfixed by commit
.- The classification references a backout that backs out the target push.
Candidate regressions are the set of all runnables that could possibly be a regression of this push. This does not mean that they are regressions. Just that they could be.
The set of candidate regressions can be obtained by calling
Push.get_candidate_regressions()
.
Regression¶
A regression is a candidate regression that additionally satisfies the following criteria:
- The candidate regression is not marked as a regression of any parent pushes up to
MAX_DEPTH
pushes away.- The condition
total_distance <= MAX_DEPTH
is satisfied. This condition is explained in more detail below.
Note
Distance Calculation
The total_distance
is the number of parent pushes we need to go back to see the runnable plus
the number of child pushes we need to go forward to see the runnable. A total_distance
of 0
means the runnable ran on the actual target push.
The total_distance
can be modified in certain scenarios:
- The push was not backed out => total distance is doubled.
- The runnable was intermittent => total distance is doubled.
- The runnable was marked as
fixed by commit
referencing a backout that backs out the target push => total distance is 0 even if it didn’t run on the target push.
These modifications help us deal with (un)certainty in special easy to detect circumstances. The first two make a candidate regression less likely to be treated as a regression, while the third guarantees it.
Regressions can be obtained by calling Push.get_regressions()
.
Likely Regressions¶
A likely regression is a regression whose associated total_distance
is 0. In other words, we
are as sure as we can be that these are regressions.
Likely regressions can be obtained by calling Push.get_likely_regressions()
.
Possible Regressions¶
A possible regression is a regression whose associated total_distance
is above 0. In other
words, it could be a regression, or it could be regressed from one of its parent pushes. We aren’t
sure. The higher the total_distance
the less sure we are.
Possible regressions can be obtained by calling Push.get_possible_regressions()
.
Note
Candidate regressions that aren’t also possible regressions could still technically be real regressions. Mozci just thinks the likelihood is so low they aren’t worth counting.