2
0
mirror of https://github.com/fork-maintainers/iceraven-browser synced 2024-11-19 09:25:34 +00:00
iceraven-browser/taskcluster/docker/visual-metrics/run-visual-metrics.py
2020-07-21 10:15:38 -07:00

388 lines
11 KiB
Python

#!/usr/bin/env python3
#
# This Source Code Form is subject to the terms of the Mozilla Public
# License, v. 2.0. If a copy of the MPL was not distributed with this
# file, You can obtain one at http://mozilla.org/MPL/2.0/.
"""Instrument visualmetrics.py to run in parallel."""
import argparse
import json
import os
import statistics
import subprocess
import sys
import tarfile
from concurrent.futures import ProcessPoolExecutor
from functools import partial
from multiprocessing import cpu_count
from pathlib import Path
import attr
import structlog
from jsonschema import validate
from voluptuous import ALLOW_EXTRA, Required, Schema
#: The directory where artifacts from this job will be placed.
OUTPUT_DIR = Path("/", "builds", "worker", "artifacts")
#: A job to process through visualmetrics.py
@attr.s
class Job:
#: The name of the test.
test_name = attr.ib(type=str)
#: The extra options for this job.
extra_options = attr.ib(type=str)
#: json_path: The path to the ``browsertime.json`` file on disk.
json_path = attr.ib(type=Path)
#: video_path: The path of the video file on disk.
video_path = attr.ib(type=Path)
#: The schema for validating jobs.
JOB_SCHEMA = Schema(
{
Required("jobs"): [
{
Required("test_name"): str,
Required("browsertime_json_path"): str,
Required("extra_options"): [str],
}
],
Required("application"): {Required("name"): str, "version": str},
Required("extra_options"): [str],
}
)
#: A partial schema for browsertime.json files.
BROWSERTIME_SCHEMA = Schema(
[{Required("files"): {Required("video"): [str]}}], extra=ALLOW_EXTRA
)
with Path("/", "builds", "worker", "performance-artifact-schema.json").open() as f:
PERFHERDER_SCHEMA = json.loads(f.read())
def run_command(log, cmd):
"""Run a command using subprocess.check_output
Args:
log: The structlog logger instance.
cmd: the command to run as a list of strings.
Returns:
A tuple of the process' exit status and standard output.
"""
log.info("Running command", cmd=cmd)
try:
res = subprocess.check_output(cmd)
log.info("Command succeeded", result=res)
return 0, res
except subprocess.CalledProcessError as e:
log.info("Command failed", cmd=cmd, status=e.returncode, output=e.output)
return e.returncode, e.output
def append_result(log, suites, test_name, name, result, extra_options):
"""Appends a ``name`` metrics result in the ``test_name`` suite.
Args:
log: The structlog logger instance.
suites: A mapping containing the suites.
test_name: The name of the test.
name: The name of the metrics.
result: The value to append.
"""
if name.endswith("Progress"):
return
try:
result = int(result)
except ValueError:
log.error("Could not convert value", name=name)
log.error("%s" % result)
result = 0
if test_name in suites and suites[test_name]["extraOptions"] != extra_options:
missing = set(extra_options) - set(suites[test_name]["extraOptions"])
test_name = test_name + "-".join(list(missing))
subtests = suites.setdefault(
test_name,
{"name": test_name, "subtests": {}, "extraOptions": extra_options}
)["subtests"]
if name not in subtests:
subtests[name] = {
"name": name,
"replicates": [result],
"lowerIsBetter": True,
"unit": "ms",
}
else:
subtests[name]["replicates"].append(result)
def compute_median(subtest):
"""Adds in the subtest the ``value`` field, which is the average of all
replicates.
Args:
subtest: The subtest containing all replicates.
Returns:
The subtest.
"""
if "replicates" not in subtest:
return subtest
subtest["value"] = statistics.median(subtest["replicates"])
return subtest
def get_suite(suite):
"""Returns the suite with computed medians in its subtests.
Args:
suite: The suite to convert.
Returns:
The suite.
"""
suite["subtests"] = [
compute_median(subtest) for subtest in suite["subtests"].values()
]
return suite
def read_json(json_path, schema):
"""Read the given json file and verify against the provided schema.
Args:
json_path: Path of json file to parse.
schema: A callable to validate the JSON's schema.
Returns:
The contents of the file at ``json_path`` interpreted as JSON.
"""
try:
with open(str(json_path), "r", encoding="utf-8", errors="ignore") as f:
data = json.load(f)
except Exception:
log.error("Could not read JSON file", path=json_path, exc_info=True)
raise
log.info("Loaded JSON from file", path=json_path)
try:
schema(data)
except Exception:
log.error("JSON failed to validate", exc_info=True)
raise
return data
def main(log, args):
"""Run visualmetrics.py in parallel.
Args:
log: The structlog logger instance.
args: The parsed arguments from the argument parser.
Returns:
The return code that the program will exit with.
"""
fetch_dir = os.getenv("MOZ_FETCHES_DIR")
if not fetch_dir:
log.error("Expected MOZ_FETCHES_DIR environment variable.")
return 1
fetch_dir = Path(fetch_dir)
visualmetrics_path = fetch_dir / "visualmetrics.py"
if not visualmetrics_path.exists():
log.error(
"Could not locate visualmetrics.py", expected_path=str(visualmetrics_path)
)
return 1
browsertime_results_path = fetch_dir / "browsertime-results.tgz"
try:
with tarfile.open(str(browsertime_results_path)) as tar:
tar.extractall(path=str(fetch_dir))
except Exception:
log.error(
"Could not read/extract browsertime results archive",
path=browsertime_results_path,
exc_info=True
)
return 1
log.info("Extracted browsertime results", path=browsertime_results_path)
try:
jobs_json_path = fetch_dir / "browsertime-results" / "jobs.json"
jobs_json = read_json(jobs_json_path, JOB_SCHEMA)
except Exception:
log.error(
"Could not open the jobs.json file",
path=jobs_json_path,
exc_info=True
)
return 1
jobs = []
for job in jobs_json["jobs"]:
browsertime_json_path = fetch_dir / job["browsertime_json_path"]
try:
browsertime_json = read_json(browsertime_json_path, BROWSERTIME_SCHEMA)
except Exception:
log.error(
"Could not open a browsertime.json file",
path=browsertime_json_path,
exc_info=True
)
return 1
for site in browsertime_json:
for video in site["files"]["video"]:
jobs.append(
Job(
test_name=job["test_name"],
extra_options=len(job["extra_options"]) > 0 and
job["extra_options"] or jobs_json["extra_options"],
json_path=browsertime_json_path,
video_path=browsertime_json_path.parent / video,
)
)
failed_runs = 0
suites = {}
with ProcessPoolExecutor(max_workers=cpu_count()) as executor:
for job, result in zip(
jobs,
executor.map(
partial(
run_visual_metrics,
visualmetrics_path=visualmetrics_path,
options=args.visual_metrics_options,
),
jobs,
),
):
returncode, res = result
if returncode != 0:
log.error(
"Failed to run visualmetrics.py",
video_path=job.video_path,
error=res,
)
failed_runs += 1
else:
# Python 3.5 requires a str object (not 3.6+)
res = json.loads(res.decode("utf8"))
for name, value in res.items():
append_result(log, suites, job.test_name, name, value, job.extra_options)
suites = [get_suite(suite) for suite in suites.values()]
perf_data = {
"framework": {"name": "browsertime"},
"application": jobs_json["application"],
"type": "pageload",
"suites": suites,
}
# Try to get the similarity for all possible tests, this means that we
# will also get a comparison of recorded vs. live sites to check
# the on-going quality of our recordings.
try:
from similarity import calculate_similarity
for name, value in calculate_similarity(jobs_json, fetch_dir, OUTPUT_DIR).items():
if value is None:
continue
suites[0]["subtests"].append({
"name": name,
"value": value,
"replicates": [value],
"lowerIsBetter": False,
"unit": "a.u.",
})
except Exception:
log.info("Failed to calculate similarity score", exc_info=True)
# Validates the perf data complies with perfherder schema.
# The perfherder schema uses jsonschema so we can't use voluptuous here.
validate(perf_data, PERFHERDER_SCHEMA)
raw_perf_data = json.dumps(perf_data)
with Path(OUTPUT_DIR, "perfherder-data.json").open("w") as f:
f.write(raw_perf_data)
# Prints the data in logs for Perfherder to pick it up.
log.info("PERFHERDER_DATA: %s" % raw_perf_data)
# Lists the number of processed jobs, failures, and successes.
with Path(OUTPUT_DIR, "summary.json").open("w") as f:
json.dump(
{
"total_jobs": len(jobs),
"successful_runs": len(jobs) - failed_runs,
"failed_runs": failed_runs,
},
f,
)
# If there's one failure along the way, we want to return > 0
# to trigger a red job in TC.
return failed_runs
def run_visual_metrics(job, visualmetrics_path, options):
"""Run visualmetrics.py on the input job.
Returns:
A returncode and a string containing the output of visualmetrics.py
"""
cmd = ["/usr/bin/python", str(visualmetrics_path), "--video", str(job.video_path)]
cmd.extend(options)
return run_command(log, cmd)
if __name__ == "__main__":
structlog.configure(
processors=[
structlog.processors.TimeStamper(fmt="iso"),
structlog.processors.format_exc_info,
structlog.dev.ConsoleRenderer(colors=False),
],
cache_logger_on_first_use=True,
)
parser = argparse.ArgumentParser(
description=__doc__, formatter_class=argparse.RawDescriptionHelpFormatter
)
parser.add_argument(
"visual_metrics_options",
type=str,
metavar="VISUAL-METRICS-OPTIONS",
help="Options to pass to visualmetrics.py",
nargs="*",
)
args = parser.parse_args()
log = structlog.get_logger()
try:
sys.exit(main(log, args))
except Exception as e:
log.error("Unhandled exception: %s" % e, exc_info=True)
sys.exit(1)