diff options
Diffstat (limited to 'mini_scalene.py')
| -rw-r--r-- | mini_scalene.py | 258 |
1 files changed, 258 insertions, 0 deletions
diff --git a/mini_scalene.py b/mini_scalene.py new file mode 100644 index 0000000..569d7c0 --- /dev/null +++ b/mini_scalene.py @@ -0,0 +1,258 @@ +import sys +import argparse +import threading +import traceback +import atexit +import signal +import asyncio +import time +from typing import ( + Any, + Callable, + cast, +) +from types import FrameType +from collections import defaultdict + +the_globals = { + '__name__': '__main__', + '__doc__': None, + '__package__': None, + '__loader__': globals()['__loader__'], + '__spec__': None, + '__annotations__': {}, + '__builtins__': globals()['__builtins__'], + '__file__': None, + '__cached__': None, +} + +def parse_arguments(): + '''Parse CLI args''' + parser = argparse.ArgumentParser() + + parser.add_argument('-a', '--async_off', + action='store_false', + help='Turn off experimental async profiling.', + default=True) + + parser.add_argument('script', help='A python script to run') + parser.add_argument('s_args', nargs=argparse.REMAINDER, + help='python script args') + + return parser.parse_args() + + +class MiniScalene(object): + '''A stripped-down version of SCALENE which tallies active lines during + execution.''' + + # a key-value pair where keys represent frame metadata (see + # MiniScalene.frame_to_string) and values represent number of times + # sampled. + cpu_samples = defaultdict(lambda: 0) + cpu_samples_c = defaultdict(lambda: 0) + # number of times samples have been collected + total_cpu_samples = 0 + + # the time, in seconds, between samples + signal_interval = 0.01 + # the timestamp recorded last signal + last_signal_time = 0.0 + + # if we should try to profile asynchronous code. Used to observe + # effectiveness of the implementation. + profile_async = True + + def __init__(self): + import replacement_poll_selector + signal.signal(signal.SIGPROF, + self.cpu_signal_handler) + signal.setitimer(signal.ITIMER_PROF, + self.signal_interval, + self.signal_interval) + MiniScalene.last_signal_time = MiniScalene.gettime() + + @staticmethod + def gettime(): + '''get the wallclock time''' + return time.perf_counter() + + @staticmethod + def start(profile_async): + MiniScalene.profile_async = profile_async + atexit.register(MiniScalene.exit_handler) + + @staticmethod + def exit_handler(): + '''Turn off profiling signals & pretty-print profiling information.''' + MiniScalene.disable_signals() + # If we've collected any samples, dump them. + print("CPU usage (Python):") + if MiniScalene.total_cpu_samples > 0: + for key in MiniScalene.sort_samples(MiniScalene.cpu_samples): + print(f"{key} : " + f"{MiniScalene.cpu_samples[key] * 100 / MiniScalene.total_cpu_samples:.3f} % " + f"({MiniScalene.cpu_samples[key]:.1f} total samples)") + print("CPU usage (Native):") + for key in MiniScalene.sort_samples(MiniScalene.cpu_samples_c): + print(f"{key} : " + f"{MiniScalene.cpu_samples_c[key] * 100 / MiniScalene.total_cpu_samples:.3f} % " + f"({MiniScalene.cpu_samples_c[key]:.1f} total samples)") + else: + print("(did not run long enough to profile)") + + @staticmethod + def disable_signals(): + signal.signal(signal.ITIMER_PROF, signal.SIG_IGN) + signal.signal(signal.SIGVTALRM, signal.SIG_IGN) + signal.setitimer(signal.ITIMER_PROF, 0) + + @staticmethod + def cpu_signal_handler(sig, frame): + elapsed_since_last_signal = MiniScalene.gettime() - \ + MiniScalene.last_signal_time + c_time_norm = (elapsed_since_last_signal - + MiniScalene.signal_interval) / \ + MiniScalene.signal_interval + + keys = MiniScalene.compute_frames_to_record(frame) + for key in keys: + MiniScalene.cpu_samples[MiniScalene.frame_to_string(key)] += 1 + MiniScalene.cpu_samples_c[MiniScalene.frame_to_string( + key)] += c_time_norm + MiniScalene.total_cpu_samples += elapsed_since_last_signal / \ + MiniScalene.signal_interval + MiniScalene.last_signal_time = MiniScalene.gettime() + + @staticmethod + def compute_frames_to_record(this_frame): + '''Collects all stack frames that Scalene actually processes.''' + frames = [this_frame] + frames += [sys._current_frames().get(t.ident, None) + for t in threading.enumerate()] + frames += MiniScalene.get_async_frames() + + frames = MiniScalene.filter_duplicated_frames(frames) + # Process all the frames to remove ones we aren't going to track. + new_frames = [] + for frame in frames: + if frame is None: + continue + fname = frame.f_code.co_filename + # Record samples only for files we care about. + if (len(fname)) == 0: + # 'eval/compile' gives no f_code.co_filename. We have + # to look back into the outer frame in order to check + # the co_filename. + fname = frame.f_back.f_code.co_filename + while not MiniScalene.should_trace(fname): + # Walk the stack backwards until we hit a frame that + # IS one we should trace (if there is one). i.e., if + # it's in the code being profiled, and it is just + # calling stuff deep in libraries. + if frame: + frame = cast(FrameType, frame.f_back) + else: + break + if frame: + fname = frame.f_code.co_filename + if frame: + new_frames.append(frame) + return new_frames + + @staticmethod + def frame_to_string(frame): + '''Pretty-prints a frame as a function/file name and a line number. + Additionally used a key for tallying lines.''' + co = frame.f_code + func_name = co.co_name + line_no = frame.f_lineno + filename = co.co_filename + return filename + '\t' + func_name + '\t' + str(line_no) + + @staticmethod + def get_async_frames(): + '''Obtains the stack frames of all currently executing tasks.''' + if MiniScalene.is_event_loop_running() and MiniScalene.profile_async: + return [task.get_coro().cr_frame for task in asyncio.all_tasks()] + return [] + + @staticmethod + def should_trace(filename): + '''Returns FALSE if filename is uninteresting to the user.''' + # FIXME Assume GuixSD. Makes filtering easy + if '/gnu/store' in filename: + return False + if filename[0] == '<': + return False + if 'mini_scalene.py' in filename: + return False + return True + + @staticmethod + def is_event_loop_running() -> bool: + '''Returns TRUE if there is an exent loop running. This is what + `asyncio.get_event_loop()' did, before it was deprecated in 3.12''' + return asyncio.get_event_loop_policy()._local._loop is not None + + @staticmethod + def sort_samples(sample_dict): + '''Returns SAMPLE_DICT in descending order by number of samples.''' + return {k: v for k, v in sorted(sample_dict.items(), + key=lambda item: item[1], + reverse=True)} + + @staticmethod + def shim(func: Callable[[Any], Any]) -> Any: + """Provide a decorator that calls the wrapped function with the + Scalene variant. + + Wrapped function must be of type (s: Scalene) -> Any. + + This decorator allows for marking a function in a separate + file as a drop-in replacement for an existing library + function. The intention is for these functions to replace a + function that indefinitely blocks (which interferes with + Scalene) with a function that awakens periodically to allow + for signals to be delivered. + + """ + func(MiniScalene) + # Returns the function itself to the calling file for the sake + # of not displaying unusual errors if someone attempts to call + # it + + @staticmethod + def filter_duplicated_frames(frames) -> bool: + s = set() + dup = [] + for f in frames: + if f in s: + dup.append(f) + else: + s.add(f) + # TODO we probably have one because given get_async_frames returns the + # currently executing task. Would be an easy fix in that method. + # if there's more than one, I cannot explain it. + assert len( + dup) < 2, f"ERROR: More than 1 duplicate frame (shouldn't happen): {dup}" + if len(dup) != 0: + print(f"WARN: Duplicate frame found: {dup}", file=sys.stderr) + return list(s) + + +def main(): + args = parse_arguments() + + sys.argv = [args.script] + args.s_args + try: + with open(args.script, 'rb') as fp: + code = compile(fp.read(), args.script, "exec") + MiniScalene().start(args.async_off) + exec(code, the_globals) + except Exception: + traceback.print_exc() + + +if __name__ == "__main__": + main() |
