#!/usr/bin/env python # Copyright 2024 The HuggingFace Inc. 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 logging import os import platform import select import subprocess import sys import time from copy import copy, deepcopy from datetime import datetime from pathlib import Path from statistics import mean import numpy as np import torch from accelerate import Accelerator from datasets.utils.logging import disable_progress_bar, enable_progress_bar def inside_slurm(): """Check whether the python process was launched through slurm""" # TODO(rcadene): return False for interactive mode `--pty bash` return "SLURM_JOB_ID" in os.environ def auto_select_torch_device() -> torch.device: """Tries to select automatically a torch device.""" if torch.cuda.is_available(): logging.info("Cuda backend detected, using cuda.") return torch.device("cuda") elif torch.backends.mps.is_available(): logging.info("Metal backend detected, using mps.") return torch.device("mps") elif torch.xpu.is_available(): logging.info("Intel XPU backend detected, using xpu.") return torch.device("xpu") else: logging.warning("No accelerated backend detected. Using default cpu, this will be slow.") return torch.device("cpu") # TODO(Steven): Remove log. log shouldn't be an argument, this should be handled by the logger level def get_safe_torch_device(try_device: str, log: bool = False) -> torch.device: """Given a string, return a torch.device with checks on whether the device is available.""" try_device = str(try_device) if try_device.startswith("cuda"): assert torch.cuda.is_available() device = torch.device(try_device) elif try_device == "mps": assert torch.backends.mps.is_available() device = torch.device("mps") elif try_device == "xpu": assert torch.xpu.is_available() device = torch.device("xpu") elif try_device == "cpu": device = torch.device("cpu") if log: logging.warning("Using CPU, this will be slow.") else: device = torch.device(try_device) if log: logging.warning(f"Using custom {try_device} device.") return device def get_safe_dtype(dtype: torch.dtype, device: str | torch.device): """ mps is currently not compatible with float64 """ if isinstance(device, torch.device): device = device.type if device == "mps" and dtype == torch.float64: return torch.float32 if device == "xpu" and dtype == torch.float64: if hasattr(torch.xpu, "get_device_capability"): device_capability = torch.xpu.get_device_capability() # NOTE: Some Intel XPU devices do not support double precision (FP64). # The `has_fp64` flag is returned by `torch.xpu.get_device_capability()` # when available; if False, we fall back to float32 for compatibility. if not device_capability.get("has_fp64", False): logging.warning(f"Device {device} does not support float64, using float32 instead.") return torch.float32 else: logging.warning( f"Device {device} capability check failed. Assuming no support for float64, using float32 instead." ) return torch.float32 return dtype else: return dtype def is_torch_device_available(try_device: str) -> bool: try_device = str(try_device) # Ensure try_device is a string if try_device.startswith("cuda"): return torch.cuda.is_available() elif try_device == "mps": return torch.backends.mps.is_available() elif try_device == "xpu": return torch.xpu.is_available() elif try_device == "cpu": return True else: raise ValueError(f"Unknown device {try_device}. Supported devices are: cuda, mps, xpu or cpu.") def is_amp_available(device: str): if device in ["cuda", "xpu", "cpu"]: return True elif device == "mps": return False else: raise ValueError(f"Unknown device '{device}.") def init_logging( log_file: Path | None = None, display_pid: bool = False, console_level: str = "INFO", file_level: str = "DEBUG", accelerator: Accelerator | None = None, ): """Initialize logging configuration for LeRobot. In multi-GPU training, only the main process logs to console to avoid duplicate output. Non-main processes have console logging suppressed but can still log to file. Args: log_file: Optional file path to write logs to display_pid: Include process ID in log messages (useful for debugging multi-process) console_level: Logging level for console output file_level: Logging level for file output accelerator: Optional Accelerator instance (for multi-GPU detection) """ def custom_format(record: logging.LogRecord) -> str: dt = datetime.now().strftime("%Y-%m-%d %H:%M:%S") fnameline = f"{record.pathname}:{record.lineno}" pid_str = f"[PID: {os.getpid()}] " if display_pid else "" return f"{record.levelname} {pid_str}{dt} {fnameline[-15:]:>15} {record.getMessage()}" formatter = logging.Formatter() formatter.format = custom_format logger = logging.getLogger() logger.setLevel(logging.NOTSET) # Clear any existing handlers logger.handlers.clear() # Determine if this is a non-main process in distributed training is_main_process = accelerator.is_main_process if accelerator is not None else True # Console logging (main process only) if is_main_process: console_handler = logging.StreamHandler() console_handler.setFormatter(formatter) console_handler.setLevel(console_level.upper()) logger.addHandler(console_handler) else: # Suppress console output for non-main processes logger.addHandler(logging.NullHandler()) logger.setLevel(logging.ERROR) if log_file is not None: file_handler = logging.FileHandler(log_file) file_handler.setFormatter(formatter) file_handler.setLevel(file_level.upper()) logger.addHandler(file_handler) def format_big_number(num, precision=0): suffixes = ["", "K", "M", "B", "T", "Q"] divisor = 1000.0 for suffix in suffixes: if abs(num) < divisor: return f"{num:.{precision}f}{suffix}" num /= divisor return num def say(text: str, blocking: bool = False): system = platform.system() if system == "Darwin": cmd = ["say", text] elif system == "Linux": cmd = ["spd-say", text] if blocking: cmd.append("--wait") elif system == "Windows": cmd = [ "PowerShell", "-Command", "Add-Type -AssemblyName System.Speech; " f"(New-Object System.Speech.Synthesis.SpeechSynthesizer).Speak('{text}')", ] else: raise RuntimeError("Unsupported operating system for text-to-speech.") if blocking: subprocess.run(cmd, check=True) else: subprocess.Popen(cmd, creationflags=subprocess.CREATE_NO_WINDOW if system == "Windows" else 0) def log_say(text: str, play_sounds: bool = True, blocking: bool = False): logging.info(text) if play_sounds: say(text, blocking) def get_channel_first_image_shape(image_shape: tuple) -> tuple: shape = copy(image_shape) if shape[2] < shape[0] and shape[2] < shape[1]: # (h, w, c) -> (c, h, w) shape = (shape[2], shape[0], shape[1]) elif not (shape[0] < shape[1] and shape[0] < shape[2]): raise ValueError(image_shape) return shape def has_method(cls: object, method_name: str) -> bool: return hasattr(cls, method_name) and callable(getattr(cls, method_name)) def is_valid_numpy_dtype_string(dtype_str: str) -> bool: """ Return True if a given string can be converted to a numpy dtype. """ try: # Attempt to convert the string to a numpy dtype np.dtype(dtype_str) return True except TypeError: # If a TypeError is raised, the string is not a valid dtype return False def enter_pressed() -> bool: if platform.system() == "Windows": import msvcrt if msvcrt.kbhit(): key = msvcrt.getch() return key in (b"\r", b"\n") # enter key return False else: return select.select([sys.stdin], [], [], 0)[0] and sys.stdin.readline().strip() == "" def move_cursor_up(lines): """Move the cursor up by a specified number of lines.""" print(f"\033[{lines}A", end="") def get_elapsed_time_in_days_hours_minutes_seconds(elapsed_time_s: float): days = int(elapsed_time_s // (24 * 3600)) elapsed_time_s %= 24 * 3600 hours = int(elapsed_time_s // 3600) elapsed_time_s %= 3600 minutes = int(elapsed_time_s // 60) seconds = elapsed_time_s % 60 return days, hours, minutes, seconds class SuppressProgressBars: """ Context manager to suppress progress bars. Example -------- ```python with SuppressProgressBars(): # Code that would normally show progress bars ``` """ def __enter__(self): disable_progress_bar() def __exit__(self, exc_type, exc_val, exc_tb): enable_progress_bar() class TimerManager: """ Lightweight utility to measure elapsed time. Examples -------- ```python # Example 1: Using context manager timer = TimerManager("Policy", log=False) for _ in range(3): with timer: time.sleep(0.01) print(timer.last, timer.fps_avg, timer.percentile(90)) # Prints: 0.01 100.0 0.01 ``` ```python # Example 2: Using start/stop methods timer = TimerManager("Policy", log=False) timer.start() time.sleep(0.01) timer.stop() print(timer.last, timer.fps_avg, timer.percentile(90)) # Prints: 0.01 100.0 0.01 ``` """ def __init__( self, label: str = "Elapsed-time", log: bool = True, logger: logging.Logger | None = None, ): self.label = label self.log = log self.logger = logger self._start: float | None = None self._history: list[float] = [] def __enter__(self): return self.start() def __exit__(self, exc_type, exc_val, exc_tb): self.stop() def start(self): self._start = time.perf_counter() return self def stop(self) -> float: if self._start is None: raise RuntimeError("Timer was never started.") elapsed = time.perf_counter() - self._start self._history.append(elapsed) self._start = None if self.log: if self.logger is not None: self.logger.info(f"{self.label}: {elapsed:.6f} s") else: logging.info(f"{self.label}: {elapsed:.6f} s") return elapsed def reset(self): self._history.clear() @property def last(self) -> float: return self._history[-1] if self._history else 0.0 @property def avg(self) -> float: return mean(self._history) if self._history else 0.0 @property def total(self) -> float: return sum(self._history) @property def count(self) -> int: return len(self._history) @property def history(self) -> list[float]: return deepcopy(self._history) @property def fps_last(self) -> float: return 0.0 if self.last == 0 else 1.0 / self.last @property def fps_avg(self) -> float: return 0.0 if self.avg == 0 else 1.0 / self.avg def percentile(self, p: float) -> float: """ Return the p-th percentile of recorded times. """ if not self._history: return 0.0 return float(np.percentile(self._history, p)) def fps_percentile(self, p: float) -> float: """ FPS corresponding to the p-th percentile time. """ val = self.percentile(p) return 0.0 if val == 0 else 1.0 / val