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# Copyright 2020 The HuggingFace Team. All rights reserved. | |
# | |
# 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. | |
import ast | |
import collections | |
import functools | |
import json | |
import operator | |
import os | |
import re | |
import sys | |
import time | |
from typing import Dict, List, Optional, Union | |
import requests | |
from get_ci_error_statistics import get_job_links | |
from slack_sdk import WebClient | |
client = WebClient(token=os.environ["CI_SLACK_BOT_TOKEN"]) | |
NON_MODEL_TEST_MODULES = [ | |
"benchmark", | |
"deepspeed", | |
"extended", | |
"fixtures", | |
"generation", | |
"onnx", | |
"optimization", | |
"pipelines", | |
"sagemaker", | |
"trainer", | |
"utils", | |
] | |
def handle_test_results(test_results): | |
expressions = test_results.split(" ") | |
failed = 0 | |
success = 0 | |
# When the output is short enough, the output is surrounded by = signs: "== OUTPUT ==" | |
# When it is too long, those signs are not present. | |
time_spent = expressions[-2] if "=" in expressions[-1] else expressions[-1] | |
for i, expression in enumerate(expressions): | |
if "failed" in expression: | |
failed += int(expressions[i - 1]) | |
if "passed" in expression: | |
success += int(expressions[i - 1]) | |
return failed, success, time_spent | |
def handle_stacktraces(test_results): | |
# These files should follow the following architecture: | |
# === FAILURES === | |
# <path>:<line>: Error ... | |
# <path>:<line>: Error ... | |
# <empty line> | |
total_stacktraces = test_results.split("\n")[1:-1] | |
stacktraces = [] | |
for stacktrace in total_stacktraces: | |
try: | |
line = stacktrace[: stacktrace.index(" ")].split(":")[-2] | |
error_message = stacktrace[stacktrace.index(" ") :] | |
stacktraces.append(f"(line {line}) {error_message}") | |
except Exception: | |
stacktraces.append("Cannot retrieve error message.") | |
return stacktraces | |
def dicts_to_sum(objects: Union[Dict[str, Dict], List[dict]]): | |
if isinstance(objects, dict): | |
lists = objects.values() | |
else: | |
lists = objects | |
# Convert each dictionary to counter | |
counters = map(collections.Counter, lists) | |
# Sum all the counters | |
return functools.reduce(operator.add, counters) | |
class Message: | |
def __init__( | |
self, title: str, ci_title: str, model_results: Dict, additional_results: Dict, selected_warnings: List = None | |
): | |
self.title = title | |
self.ci_title = ci_title | |
# Failures and success of the modeling tests | |
self.n_model_success = sum(r["success"] for r in model_results.values()) | |
self.n_model_single_gpu_failures = sum(dicts_to_sum(r["failed"])["single"] for r in model_results.values()) | |
self.n_model_multi_gpu_failures = sum(dicts_to_sum(r["failed"])["multi"] for r in model_results.values()) | |
# Some suites do not have a distinction between single and multi GPU. | |
self.n_model_unknown_failures = sum(dicts_to_sum(r["failed"])["unclassified"] for r in model_results.values()) | |
self.n_model_failures = ( | |
self.n_model_single_gpu_failures + self.n_model_multi_gpu_failures + self.n_model_unknown_failures | |
) | |
# Failures and success of the additional tests | |
self.n_additional_success = sum(r["success"] for r in additional_results.values()) | |
all_additional_failures = dicts_to_sum([r["failed"] for r in additional_results.values()]) | |
self.n_additional_single_gpu_failures = all_additional_failures["single"] | |
self.n_additional_multi_gpu_failures = all_additional_failures["multi"] | |
self.n_additional_unknown_gpu_failures = all_additional_failures["unclassified"] | |
self.n_additional_failures = ( | |
self.n_additional_single_gpu_failures | |
+ self.n_additional_multi_gpu_failures | |
+ self.n_additional_unknown_gpu_failures | |
) | |
# Results | |
self.n_failures = self.n_model_failures + self.n_additional_failures | |
self.n_success = self.n_model_success + self.n_additional_success | |
self.n_tests = self.n_failures + self.n_success | |
self.model_results = model_results | |
self.additional_results = additional_results | |
self.thread_ts = None | |
if selected_warnings is None: | |
selected_warnings = [] | |
self.selected_warnings = selected_warnings | |
def time(self) -> str: | |
all_results = [*self.model_results.values(), *self.additional_results.values()] | |
time_spent = [r["time_spent"].split(", ")[0] for r in all_results if len(r["time_spent"])] | |
total_secs = 0 | |
for time in time_spent: | |
time_parts = time.split(":") | |
# Time can be formatted as xx:xx:xx, as .xx, or as x.xx if the time spent was less than a minute. | |
if len(time_parts) == 1: | |
time_parts = [0, 0, time_parts[0]] | |
hours, minutes, seconds = int(time_parts[0]), int(time_parts[1]), float(time_parts[2]) | |
total_secs += hours * 3600 + minutes * 60 + seconds | |
hours, minutes, seconds = total_secs // 3600, (total_secs % 3600) // 60, total_secs % 60 | |
return f"{int(hours)}h{int(minutes)}m{int(seconds)}s" | |
def header(self) -> Dict: | |
return {"type": "header", "text": {"type": "plain_text", "text": self.title}} | |
def ci_title_section(self) -> Dict: | |
return {"type": "section", "text": {"type": "mrkdwn", "text": self.ci_title}} | |
def no_failures(self) -> Dict: | |
return { | |
"type": "section", | |
"text": { | |
"type": "plain_text", | |
"text": f"🌞 There were no failures: all {self.n_tests} tests passed. The suite ran in {self.time}.", | |
"emoji": True, | |
}, | |
"accessory": { | |
"type": "button", | |
"text": {"type": "plain_text", "text": "Check Action results", "emoji": True}, | |
"url": f"https://github.com/huggingface/transformers/actions/runs/{os.environ['GITHUB_RUN_ID']}", | |
}, | |
} | |
def failures(self) -> Dict: | |
return { | |
"type": "section", | |
"text": { | |
"type": "plain_text", | |
"text": ( | |
f"There were {self.n_failures} failures, out of {self.n_tests} tests.\nThe suite ran in" | |
f" {self.time}." | |
), | |
"emoji": True, | |
}, | |
"accessory": { | |
"type": "button", | |
"text": {"type": "plain_text", "text": "Check Action results", "emoji": True}, | |
"url": f"https://github.com/huggingface/transformers/actions/runs/{os.environ['GITHUB_RUN_ID']}", | |
}, | |
} | |
def warnings(self) -> Dict: | |
# If something goes wrong, let's avoid the CI report failing to be sent. | |
button_text = "Check warnings (Link not found)" | |
# Use the workflow run link | |
job_link = f"https://github.com/huggingface/transformers/actions/runs/{os.environ['GITHUB_RUN_ID']}" | |
if "Extract warnings in CI artifacts" in github_actions_job_links: | |
button_text = "Check warnings" | |
# Use the actual job link | |
job_link = f"{github_actions_job_links['Extract warnings in CI artifacts']}" | |
huggingface_hub_warnings = [x for x in self.selected_warnings if "huggingface_hub" in x] | |
text = f"There are {len(self.selected_warnings)} warnings being selected." | |
text += f"\n{len(huggingface_hub_warnings)} of them are from `huggingface_hub`." | |
return { | |
"type": "section", | |
"text": { | |
"type": "plain_text", | |
"text": text, | |
"emoji": True, | |
}, | |
"accessory": { | |
"type": "button", | |
"text": {"type": "plain_text", "text": button_text, "emoji": True}, | |
"url": job_link, | |
}, | |
} | |
def get_device_report(report, rjust=6): | |
if "single" in report and "multi" in report: | |
return f"{str(report['single']).rjust(rjust)} | {str(report['multi']).rjust(rjust)} | " | |
elif "single" in report: | |
return f"{str(report['single']).rjust(rjust)} | {'0'.rjust(rjust)} | " | |
elif "multi" in report: | |
return f"{'0'.rjust(rjust)} | {str(report['multi']).rjust(rjust)} | " | |
def category_failures(self) -> Dict: | |
model_failures = [v["failed"] for v in self.model_results.values()] | |
category_failures = {} | |
for model_failure in model_failures: | |
for key, value in model_failure.items(): | |
if key not in category_failures: | |
category_failures[key] = dict(value) | |
else: | |
category_failures[key]["unclassified"] += value["unclassified"] | |
category_failures[key]["single"] += value["single"] | |
category_failures[key]["multi"] += value["multi"] | |
individual_reports = [] | |
for key, value in category_failures.items(): | |
device_report = self.get_device_report(value) | |
if sum(value.values()): | |
if device_report: | |
individual_reports.append(f"{device_report}{key}") | |
else: | |
individual_reports.append(key) | |
header = "Single | Multi | Category\n" | |
category_failures_report = prepare_reports( | |
title="The following modeling categories had failures", header=header, reports=individual_reports | |
) | |
return {"type": "section", "text": {"type": "mrkdwn", "text": category_failures_report}} | |
def model_failures(self) -> Dict: | |
# Obtain per-model failures | |
def per_model_sum(model_category_dict): | |
return dicts_to_sum(model_category_dict["failed"].values()) | |
failures = {} | |
non_model_failures = { | |
k: per_model_sum(v) for k, v in self.model_results.items() if sum(per_model_sum(v).values()) | |
} | |
for k, v in self.model_results.items(): | |
if k in NON_MODEL_TEST_MODULES: | |
pass | |
if sum(per_model_sum(v).values()): | |
dict_failed = dict(v["failed"]) | |
pytorch_specific_failures = dict_failed.pop("PyTorch") | |
tensorflow_specific_failures = dict_failed.pop("TensorFlow") | |
other_failures = dicts_to_sum(dict_failed.values()) | |
failures[k] = { | |
"PyTorch": pytorch_specific_failures, | |
"TensorFlow": tensorflow_specific_failures, | |
"other": other_failures, | |
} | |
model_reports = [] | |
other_module_reports = [] | |
for key, value in non_model_failures.items(): | |
if key in NON_MODEL_TEST_MODULES: | |
device_report = self.get_device_report(value) | |
if sum(value.values()): | |
if device_report: | |
report = f"{device_report}{key}" | |
else: | |
report = key | |
other_module_reports.append(report) | |
for key, value in failures.items(): | |
device_report_values = [ | |
value["PyTorch"]["single"], | |
value["PyTorch"]["multi"], | |
value["TensorFlow"]["single"], | |
value["TensorFlow"]["multi"], | |
sum(value["other"].values()), | |
] | |
if sum(device_report_values): | |
device_report = " | ".join([str(x).rjust(9) for x in device_report_values]) + " | " | |
report = f"{device_report}{key}" | |
model_reports.append(report) | |
model_header = "Single PT | Multi PT | Single TF | Multi TF | Other | Category\n" | |
sorted_model_reports = sorted(model_reports, key=lambda s: s.split("] ")[-1]) | |
model_failures_report = prepare_reports( | |
title="These following model modules had failures", header=model_header, reports=sorted_model_reports | |
) | |
module_header = "Single | Multi | Category\n" | |
sorted_module_reports = sorted(other_module_reports, key=lambda s: s.split("] ")[-1]) | |
module_failures_report = prepare_reports( | |
title="The following non-model modules had failures", header=module_header, reports=sorted_module_reports | |
) | |
model_failure_sections = [ | |
{"type": "section", "text": {"type": "mrkdwn", "text": model_failures_report}}, | |
{"type": "section", "text": {"type": "mrkdwn", "text": module_failures_report}}, | |
] | |
# Save complete tables (for past CI) - to be uploaded as artifacts | |
if ci_event.startswith("Past CI"): | |
model_failures_report = prepare_reports( | |
title="These following model modules had failures", | |
header=model_header, | |
reports=sorted_model_reports, | |
to_truncate=False, | |
) | |
file_path = os.path.join(os.getcwd(), "test_failure_tables/model_failures_report.txt") | |
with open(file_path, "w", encoding="UTF-8") as fp: | |
fp.write(model_failures_report) | |
module_failures_report = prepare_reports( | |
title="The following non-model modules had failures", | |
header=module_header, | |
reports=sorted_module_reports, | |
to_truncate=False, | |
) | |
file_path = os.path.join(os.getcwd(), "test_failure_tables/module_failures_report.txt") | |
with open(file_path, "w", encoding="UTF-8") as fp: | |
fp.write(module_failures_report) | |
return model_failure_sections | |
def additional_failures(self) -> Dict: | |
failures = {k: v["failed"] for k, v in self.additional_results.items()} | |
errors = {k: v["error"] for k, v in self.additional_results.items()} | |
individual_reports = [] | |
for key, value in failures.items(): | |
device_report = self.get_device_report(value) | |
if sum(value.values()) or errors[key]: | |
report = f"{key}" | |
if errors[key]: | |
report = f"[Errored out] {report}" | |
if device_report: | |
report = f"{device_report}{report}" | |
individual_reports.append(report) | |
header = "Single | Multi | Category\n" | |
failures_report = prepare_reports( | |
title="The following non-modeling tests had failures", header=header, reports=individual_reports | |
) | |
return {"type": "section", "text": {"type": "mrkdwn", "text": failures_report}} | |
def payload(self) -> str: | |
blocks = [self.header] | |
if self.ci_title: | |
blocks.append(self.ci_title_section) | |
if self.n_model_failures > 0 or self.n_additional_failures > 0: | |
blocks.append(self.failures) | |
if self.n_model_failures > 0: | |
blocks.append(self.category_failures) | |
for block in self.model_failures: | |
if block["text"]["text"]: | |
blocks.append(block) | |
if self.n_additional_failures > 0: | |
blocks.append(self.additional_failures) | |
if self.n_model_failures == 0 and self.n_additional_failures == 0: | |
blocks.append(self.no_failures) | |
if len(self.selected_warnings) > 0: | |
blocks.append(self.warnings) | |
return json.dumps(blocks) | |
def error_out(title, ci_title="", runner_not_available=False, runner_failed=False, setup_failed=False): | |
blocks = [] | |
title_block = {"type": "header", "text": {"type": "plain_text", "text": title}} | |
blocks.append(title_block) | |
if ci_title: | |
ci_title_block = {"type": "section", "text": {"type": "mrkdwn", "text": ci_title}} | |
blocks.append(ci_title_block) | |
offline_runners = [] | |
if runner_not_available: | |
text = "💔 CI runners are not available! Tests are not run. 😭" | |
result = os.environ.get("OFFLINE_RUNNERS") | |
if result is not None: | |
offline_runners = json.loads(result) | |
elif runner_failed: | |
text = "💔 CI runners have problems! Tests are not run. 😭" | |
elif setup_failed: | |
text = "💔 Setup job failed. Tests are not run. 😭" | |
else: | |
text = "💔 There was an issue running the tests. 😭" | |
error_block_1 = { | |
"type": "header", | |
"text": { | |
"type": "plain_text", | |
"text": text, | |
}, | |
} | |
text = "" | |
if len(offline_runners) > 0: | |
text = "\n • " + "\n • ".join(offline_runners) | |
text = f"The following runners are offline:\n{text}\n\n" | |
text += "🙏 Let's fix it ASAP! 🙏" | |
error_block_2 = { | |
"type": "section", | |
"text": { | |
"type": "plain_text", | |
"text": text, | |
}, | |
"accessory": { | |
"type": "button", | |
"text": {"type": "plain_text", "text": "Check Action results", "emoji": True}, | |
"url": f"https://github.com/huggingface/transformers/actions/runs/{os.environ['GITHUB_RUN_ID']}", | |
}, | |
} | |
blocks.extend([error_block_1, error_block_2]) | |
payload = json.dumps(blocks) | |
print("Sending the following payload") | |
print(json.dumps({"blocks": blocks})) | |
client.chat_postMessage( | |
channel=os.environ["CI_SLACK_REPORT_CHANNEL_ID"], | |
text=text, | |
blocks=payload, | |
) | |
def post(self): | |
print("Sending the following payload") | |
print(json.dumps({"blocks": json.loads(self.payload)})) | |
text = f"{self.n_failures} failures out of {self.n_tests} tests," if self.n_failures else "All tests passed." | |
self.thread_ts = client.chat_postMessage( | |
channel=os.environ["CI_SLACK_REPORT_CHANNEL_ID"], | |
blocks=self.payload, | |
text=text, | |
) | |
def get_reply_blocks(self, job_name, job_result, failures, device, text): | |
""" | |
failures: A list with elements of the form {"line": full test name, "trace": error trace} | |
""" | |
# `text` must be less than 3001 characters in Slack SDK | |
# keep some room for adding "[Truncated]" when necessary | |
MAX_ERROR_TEXT = 3000 - len("[Truncated]") | |
failure_text = "" | |
for idx, error in enumerate(failures): | |
new_text = failure_text + f'*{error["line"]}*\n_{error["trace"]}_\n\n' | |
if len(new_text) > MAX_ERROR_TEXT: | |
# `failure_text` here has length <= 3000 | |
failure_text = failure_text + "[Truncated]" | |
break | |
# `failure_text` here has length <= MAX_ERROR_TEXT | |
failure_text = new_text | |
title = job_name | |
if device is not None: | |
title += f" ({device}-gpu)" | |
content = {"type": "section", "text": {"type": "mrkdwn", "text": text}} | |
# TODO: Make sure we always have a valid job link (or at least a way not to break the report sending) | |
# Currently we get the device from a job's artifact name. | |
# If a device is found, the job name should contain the device type, for example, `XXX (single-gpu)`. | |
# This could be done by adding `machine_type` in a job's `strategy`. | |
# (If `job_result["job_link"][device]` is `None`, we get an error: `... [ERROR] must provide a string ...`) | |
if job_result["job_link"] is not None and job_result["job_link"][device] is not None: | |
content["accessory"] = { | |
"type": "button", | |
"text": {"type": "plain_text", "text": "GitHub Action job", "emoji": True}, | |
"url": job_result["job_link"][device], | |
} | |
return [ | |
{"type": "header", "text": {"type": "plain_text", "text": title.upper(), "emoji": True}}, | |
content, | |
{"type": "section", "text": {"type": "mrkdwn", "text": failure_text}}, | |
] | |
def post_reply(self): | |
if self.thread_ts is None: | |
raise ValueError("Can only post reply if a post has been made.") | |
sorted_dict = sorted(self.model_results.items(), key=lambda t: t[0]) | |
for job, job_result in sorted_dict: | |
if len(job_result["failures"]): | |
for device, failures in job_result["failures"].items(): | |
text = "\n".join( | |
sorted([f"*{k}*: {v[device]}" for k, v in job_result["failed"].items() if v[device]]) | |
) | |
blocks = self.get_reply_blocks(job, job_result, failures, device, text=text) | |
print("Sending the following reply") | |
print(json.dumps({"blocks": blocks})) | |
client.chat_postMessage( | |
channel=os.environ["CI_SLACK_REPORT_CHANNEL_ID"], | |
text=f"Results for {job}", | |
blocks=blocks, | |
thread_ts=self.thread_ts["ts"], | |
) | |
time.sleep(1) | |
for job, job_result in self.additional_results.items(): | |
if len(job_result["failures"]): | |
for device, failures in job_result["failures"].items(): | |
blocks = self.get_reply_blocks( | |
job, | |
job_result, | |
failures, | |
device, | |
text=f"Number of failures: {sum(job_result['failed'].values())}", | |
) | |
print("Sending the following reply") | |
print(json.dumps({"blocks": blocks})) | |
client.chat_postMessage( | |
channel=os.environ["CI_SLACK_REPORT_CHANNEL_ID"], | |
text=f"Results for {job}", | |
blocks=blocks, | |
thread_ts=self.thread_ts["ts"], | |
) | |
time.sleep(1) | |
def retrieve_artifact(artifact_path: str, gpu: Optional[str]): | |
if gpu not in [None, "single", "multi"]: | |
raise ValueError(f"Invalid GPU for artifact. Passed GPU: `{gpu}`.") | |
_artifact = {} | |
if os.path.exists(artifact_path): | |
files = os.listdir(artifact_path) | |
for file in files: | |
try: | |
with open(os.path.join(artifact_path, file)) as f: | |
_artifact[file.split(".")[0]] = f.read() | |
except UnicodeDecodeError as e: | |
raise ValueError(f"Could not open {os.path.join(artifact_path, file)}.") from e | |
return _artifact | |
def retrieve_available_artifacts(): | |
class Artifact: | |
def __init__(self, name: str, single_gpu: bool = False, multi_gpu: bool = False): | |
self.name = name | |
self.single_gpu = single_gpu | |
self.multi_gpu = multi_gpu | |
self.paths = [] | |
def __str__(self): | |
return self.name | |
def add_path(self, path: str, gpu: str = None): | |
self.paths.append({"name": self.name, "path": path, "gpu": gpu}) | |
_available_artifacts: Dict[str, Artifact] = {} | |
directories = filter(os.path.isdir, os.listdir()) | |
for directory in directories: | |
artifact_name = directory | |
name_parts = artifact_name.split("_postfix_") | |
if len(name_parts) > 1: | |
artifact_name = name_parts[0] | |
if artifact_name.startswith("single-gpu"): | |
artifact_name = artifact_name[len("single-gpu") + 1 :] | |
if artifact_name in _available_artifacts: | |
_available_artifacts[artifact_name].single_gpu = True | |
else: | |
_available_artifacts[artifact_name] = Artifact(artifact_name, single_gpu=True) | |
_available_artifacts[artifact_name].add_path(directory, gpu="single") | |
elif artifact_name.startswith("multi-gpu"): | |
artifact_name = directory[len("multi-gpu") + 1 :] | |
if artifact_name in _available_artifacts: | |
_available_artifacts[artifact_name].multi_gpu = True | |
else: | |
_available_artifacts[artifact_name] = Artifact(artifact_name, multi_gpu=True) | |
_available_artifacts[artifact_name].add_path(directory, gpu="multi") | |
else: | |
if artifact_name not in _available_artifacts: | |
_available_artifacts[artifact_name] = Artifact(artifact_name) | |
_available_artifacts[artifact_name].add_path(directory) | |
return _available_artifacts | |
def prepare_reports(title, header, reports, to_truncate=True): | |
report = "" | |
MAX_ERROR_TEXT = 3000 - len("[Truncated]") | |
if not to_truncate: | |
MAX_ERROR_TEXT = float("inf") | |
if len(reports) > 0: | |
# `text` must be less than 3001 characters in Slack SDK | |
# keep some room for adding "[Truncated]" when necessary | |
for idx in range(len(reports)): | |
_report = header + "\n".join(reports[: idx + 1]) | |
new_report = f"{title}:\n```\n{_report}\n```\n" | |
if len(new_report) > MAX_ERROR_TEXT: | |
# `report` here has length <= 3000 | |
report = report + "[Truncated]" | |
break | |
report = new_report | |
return report | |
if __name__ == "__main__": | |
runner_status = os.environ.get("RUNNER_STATUS") | |
runner_env_status = os.environ.get("RUNNER_ENV_STATUS") | |
setup_status = os.environ.get("SETUP_STATUS") | |
runner_not_available = True if runner_status is not None and runner_status != "success" else False | |
runner_failed = True if runner_env_status is not None and runner_env_status != "success" else False | |
setup_failed = True if setup_status is not None and setup_status != "success" else False | |
org = "huggingface" | |
repo = "transformers" | |
repository_full_name = f"{org}/{repo}" | |
# This env. variable is set in workflow file (under the job `send_results`). | |
ci_event = os.environ["CI_EVENT"] | |
# To find the PR number in a commit title, for example, `Add AwesomeFormer model (#99999)` | |
pr_number_re = re.compile(r"\(#(\d+)\)$") | |
title = f"🤗 Results of the {ci_event} tests." | |
# Add Commit/PR title with a link for push CI | |
# (check the title in 2 env. variables - depending on the CI is triggered via `push` or `workflow_run` event) | |
ci_title_push = os.environ.get("CI_TITLE_PUSH") | |
ci_title_workflow_run = os.environ.get("CI_TITLE_WORKFLOW_RUN") | |
ci_title = ci_title_push if ci_title_push else ci_title_workflow_run | |
ci_sha = os.environ.get("CI_SHA") | |
ci_url = None | |
if ci_sha: | |
ci_url = f"https://github.com/{repository_full_name}/commit/{ci_sha}" | |
if ci_title is not None: | |
if ci_url is None: | |
raise ValueError( | |
"When a title is found (`ci_title`), it means a `push` event or a `workflow_run` even (triggered by " | |
"another `push` event), and the commit SHA has to be provided in order to create the URL to the " | |
"commit page." | |
) | |
ci_title = ci_title.strip().split("\n")[0].strip() | |
# Retrieve the PR title and author login to complete the report | |
commit_number = ci_url.split("/")[-1] | |
ci_detail_url = f"https://api.github.com/repos/{repository_full_name}/commits/{commit_number}" | |
ci_details = requests.get(ci_detail_url).json() | |
ci_author = ci_details["author"]["login"] | |
merged_by = None | |
# Find the PR number (if any) and change the url to the actual PR page. | |
numbers = pr_number_re.findall(ci_title) | |
if len(numbers) > 0: | |
pr_number = numbers[0] | |
ci_detail_url = f"https://api.github.com/repos/{repository_full_name}/pulls/{pr_number}" | |
ci_details = requests.get(ci_detail_url).json() | |
ci_author = ci_details["user"]["login"] | |
ci_url = f"https://github.com/{repository_full_name}/pull/{pr_number}" | |
merged_by = ci_details["merged_by"]["login"] | |
if merged_by is None: | |
ci_title = f"<{ci_url}|{ci_title}>\nAuthor: {ci_author}" | |
else: | |
ci_title = f"<{ci_url}|{ci_title}>\nAuthor: {ci_author} | Merged by: {merged_by}" | |
else: | |
ci_title = "" | |
if runner_not_available or runner_failed or setup_failed: | |
Message.error_out(title, ci_title, runner_not_available, runner_failed, setup_failed) | |
exit(0) | |
arguments = sys.argv[1:][0] | |
try: | |
models = ast.literal_eval(arguments) | |
# Need to change from elements like `models/bert` to `models_bert` (the ones used as artifact names). | |
models = [x.replace("models/", "models_") for x in models] | |
except SyntaxError: | |
Message.error_out(title, ci_title) | |
raise ValueError("Errored out.") | |
github_actions_job_links = get_job_links( | |
workflow_run_id=os.environ["GITHUB_RUN_ID"], token=os.environ["ACCESS_REPO_INFO_TOKEN"] | |
) | |
available_artifacts = retrieve_available_artifacts() | |
modeling_categories = [ | |
"PyTorch", | |
"TensorFlow", | |
"Flax", | |
"Tokenizers", | |
"Pipelines", | |
"Trainer", | |
"ONNX", | |
"Auto", | |
"Unclassified", | |
] | |
# This dict will contain all the information relative to each model: | |
# - Failures: the total, as well as the number of failures per-category defined above | |
# - Success: total | |
# - Time spent: as a comma-separated list of elapsed time | |
# - Failures: as a line-break separated list of errors | |
model_results = { | |
model: { | |
"failed": {m: {"unclassified": 0, "single": 0, "multi": 0} for m in modeling_categories}, | |
"success": 0, | |
"time_spent": "", | |
"failures": {}, | |
"job_link": {}, | |
} | |
for model in models | |
if f"run_all_tests_gpu_{model}_test_reports" in available_artifacts | |
} | |
unclassified_model_failures = [] | |
# This prefix is used to get job links below. For past CI, we use `workflow_call`, which changes the job names from | |
# `Model tests (...)` to `PyTorch 1.5 / Model tests (...)` for example. | |
job_name_prefix = "" | |
if ci_event.startswith("Past CI - "): | |
framework, version = ci_event.replace("Past CI - ", "").split("-") | |
framework = "PyTorch" if framework == "pytorch" else "TensorFlow" | |
job_name_prefix = f"{framework} {version}" | |
elif ci_event.startswith("Nightly CI"): | |
job_name_prefix = "Nightly CI" | |
for model in model_results.keys(): | |
for artifact_path in available_artifacts[f"run_all_tests_gpu_{model}_test_reports"].paths: | |
artifact = retrieve_artifact(artifact_path["path"], artifact_path["gpu"]) | |
if "stats" in artifact: | |
# Link to the GitHub Action job | |
# The job names use `matrix.folder` which contain things like `models/bert` instead of `models_bert` | |
job_name = f"Model tests ({model.replace('models_', 'models/')}, {artifact_path['gpu']}-gpu)" | |
if job_name_prefix: | |
job_name = f"{job_name_prefix} / {job_name}" | |
model_results[model]["job_link"][artifact_path["gpu"]] = github_actions_job_links.get(job_name) | |
failed, success, time_spent = handle_test_results(artifact["stats"]) | |
model_results[model]["success"] += success | |
model_results[model]["time_spent"] += time_spent[1:-1] + ", " | |
stacktraces = handle_stacktraces(artifact["failures_line"]) | |
for line in artifact["summary_short"].split("\n"): | |
if line.startswith("FAILED "): | |
line = line[len("FAILED ") :] | |
line = line.split()[0].replace("\n", "") | |
if artifact_path["gpu"] not in model_results[model]["failures"]: | |
model_results[model]["failures"][artifact_path["gpu"]] = [] | |
model_results[model]["failures"][artifact_path["gpu"]].append( | |
{"line": line, "trace": stacktraces.pop(0)} | |
) | |
if re.search("test_modeling_tf_", line): | |
model_results[model]["failed"]["TensorFlow"][artifact_path["gpu"]] += 1 | |
elif re.search("test_modeling_flax_", line): | |
model_results[model]["failed"]["Flax"][artifact_path["gpu"]] += 1 | |
elif re.search("test_modeling", line): | |
model_results[model]["failed"]["PyTorch"][artifact_path["gpu"]] += 1 | |
elif re.search("test_tokenization", line): | |
model_results[model]["failed"]["Tokenizers"][artifact_path["gpu"]] += 1 | |
elif re.search("test_pipelines", line): | |
model_results[model]["failed"]["Pipelines"][artifact_path["gpu"]] += 1 | |
elif re.search("test_trainer", line): | |
model_results[model]["failed"]["Trainer"][artifact_path["gpu"]] += 1 | |
elif re.search("onnx", line): | |
model_results[model]["failed"]["ONNX"][artifact_path["gpu"]] += 1 | |
elif re.search("auto", line): | |
model_results[model]["failed"]["Auto"][artifact_path["gpu"]] += 1 | |
else: | |
model_results[model]["failed"]["Unclassified"][artifact_path["gpu"]] += 1 | |
unclassified_model_failures.append(line) | |
# Additional runs | |
additional_files = { | |
"Examples directory": "run_examples_gpu", | |
"PyTorch pipelines": "run_tests_torch_pipeline_gpu", | |
"TensorFlow pipelines": "run_tests_tf_pipeline_gpu", | |
"Torch CUDA extension tests": "run_tests_torch_cuda_extensions_gpu_test_reports", | |
} | |
if ci_event == "push": | |
del additional_files["Examples directory"] | |
del additional_files["PyTorch pipelines"] | |
del additional_files["TensorFlow pipelines"] | |
additional_results = { | |
key: { | |
"failed": {"unclassified": 0, "single": 0, "multi": 0}, | |
"success": 0, | |
"time_spent": "", | |
"error": False, | |
"failures": {}, | |
"job_link": {}, | |
} | |
for key in additional_files.keys() | |
} | |
for key in additional_results.keys(): | |
# If a whole suite of test fails, the artifact isn't available. | |
if additional_files[key] not in available_artifacts: | |
additional_results[key]["error"] = True | |
continue | |
for artifact_path in available_artifacts[additional_files[key]].paths: | |
if artifact_path["gpu"] is not None: | |
additional_results[key]["job_link"][artifact_path["gpu"]] = github_actions_job_links.get( | |
f"{key} ({artifact_path['gpu']}-gpu)" | |
) | |
else: | |
additional_results[key]["job_link"][artifact_path["gpu"]] = github_actions_job_links.get(key) | |
artifact = retrieve_artifact(artifact_path["path"], artifact_path["gpu"]) | |
stacktraces = handle_stacktraces(artifact["failures_line"]) | |
failed, success, time_spent = handle_test_results(artifact["stats"]) | |
additional_results[key]["failed"][artifact_path["gpu"] or "unclassified"] += failed | |
additional_results[key]["success"] += success | |
additional_results[key]["time_spent"] += time_spent[1:-1] + ", " | |
if len(artifact["errors"]): | |
additional_results[key]["error"] = True | |
if failed: | |
for line in artifact["summary_short"].split("\n"): | |
if line.startswith("FAILED "): | |
line = line[len("FAILED ") :] | |
line = line.split()[0].replace("\n", "") | |
if artifact_path["gpu"] not in additional_results[key]["failures"]: | |
additional_results[key]["failures"][artifact_path["gpu"]] = [] | |
additional_results[key]["failures"][artifact_path["gpu"]].append( | |
{"line": line, "trace": stacktraces.pop(0)} | |
) | |
selected_warnings = [] | |
if "warnings_in_ci" in available_artifacts: | |
directory = available_artifacts["warnings_in_ci"].paths[0]["path"] | |
with open(os.path.join(directory, "selected_warnings.json")) as fp: | |
selected_warnings = json.load(fp) | |
message = Message(title, ci_title, model_results, additional_results, selected_warnings=selected_warnings) | |
# send report only if there is any failure (for push CI) | |
if message.n_failures or ci_event != "push": | |
message.post() | |
message.post_reply() | |