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""" |
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This set of utility function is meant to make using Jupyter notebooks easier with MONAI. Plotting functions using |
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Matplotlib produce common plots for metrics and images. |
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""" |
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from __future__ import annotations |
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import copy |
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from collections.abc import Callable, Mapping |
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from enum import Enum |
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from threading import RLock, Thread |
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from typing import TYPE_CHECKING, Any |
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import numpy as np |
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import torch |
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from monai.config import IgniteInfo |
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from monai.utils.module import min_version, optional_import |
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try: |
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import matplotlib.pyplot as plt |
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has_matplotlib = True |
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except ImportError: |
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has_matplotlib = False |
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if TYPE_CHECKING: |
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from ignite.engine import Engine, Events |
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else: |
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Engine, _ = optional_import("ignite.engine", IgniteInfo.OPT_IMPORT_VERSION, min_version, "Engine") |
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Events, _ = optional_import("ignite.engine", IgniteInfo.OPT_IMPORT_VERSION, min_version, "Events") |
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LOSS_NAME = "loss" |
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def plot_metric_graph( |
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ax: plt.Axes, |
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title: str, |
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graphmap: Mapping[str, list[float] | tuple[list[float], list[float]]], |
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yscale: str = "log", |
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avg_keys: tuple[str] = (LOSS_NAME,), |
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window_fraction: int = 20, |
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) -> None: |
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""" |
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Plot metrics on a single graph with running averages plotted for selected keys. The values in `graphmap` |
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should be lists of (timepoint, value) pairs as stored in MetricLogger objects. |
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Args: |
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ax: Axes object to plot into |
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title: graph title |
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graphmap: dictionary of named graph values, which are lists of values or (index, value) pairs |
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yscale: scale for y-axis compatible with `Axes.set_yscale` |
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avg_keys: tuple of keys in `graphmap` to provide running average plots for |
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window_fraction: what fraction of the graph value length to use as the running average window |
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""" |
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from matplotlib.ticker import MaxNLocator |
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for n, v in graphmap.items(): |
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if len(v) > 0: |
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if isinstance(v[0], (tuple, list)): |
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inds, vals = zip(*v) |
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else: |
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inds, vals = tuple(range(len(v))), tuple(v) |
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ax.plot(inds, vals, label=f"{n} = {vals[-1]:.5g}") |
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if n in avg_keys and len(v) > window_fraction: |
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window = len(v) // window_fraction |
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kernel = np.ones((window,)) / window |
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ra = np.convolve((vals[0],) * (window - 1) + vals, kernel, mode="valid") |
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ax.plot(inds, ra, label=f"{n} Avg = {ra[-1]:.5g}") |
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ax.set_title(title) |
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ax.set_yscale(yscale) |
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ax.axis("on") |
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ax.legend(bbox_to_anchor=(1, 1), loc=1, borderaxespad=0.0) |
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ax.grid(True, "both", "both") |
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ax.xaxis.set_major_locator(MaxNLocator(integer=True)) |
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def plot_metric_images( |
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fig: plt.Figure, |
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title: str, |
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graphmap: Mapping[str, list[float] | tuple[list[float], list[float]]], |
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imagemap: dict[str, np.ndarray], |
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yscale: str = "log", |
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avg_keys: tuple[str] = (LOSS_NAME,), |
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window_fraction: int = 20, |
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) -> list: |
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""" |
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Plot metric graph data with images below into figure `fig`. The intended use is for the graph data to be |
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metrics from a training run and the images to be the batch and output from the last iteration. This uses |
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`plot_metric_graph` to plot the metric graph. |
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Args: |
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fig: Figure object to plot into, reuse from previous plotting for flicker-free refreshing |
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title: graph title |
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graphmap: dictionary of named graph values, which are lists of values or (index, value) pairs |
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imagemap: dictionary of named images to show with metric plot |
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yscale: for metric plot, scale for y-axis compatible with `Axes.set_yscale` |
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avg_keys: for metric plot, tuple of keys in `graphmap` to provide running average plots for |
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window_fraction: for metric plot, what fraction of the graph value length to use as the running average window |
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Returns: |
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list of Axes objects for graph followed by images |
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""" |
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gridshape = (4, max(1, len(imagemap))) |
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graph = plt.subplot2grid(gridshape, (0, 0), colspan=gridshape[1], fig=fig) |
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plot_metric_graph(graph, title, graphmap, yscale, avg_keys, window_fraction) |
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axes = [graph] |
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for i, n in enumerate(imagemap): |
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im = plt.subplot2grid(gridshape, (1, i), rowspan=2, fig=fig) |
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if imagemap[n].shape[0] == 3: |
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im.imshow(imagemap[n].transpose([1, 2, 0])) |
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else: |
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im.imshow(np.squeeze(imagemap[n]), cmap="gray") |
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im.set_title(f"{n}\n{imagemap[n].min():.3g} -> {imagemap[n].max():.3g}") |
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im.axis("off") |
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axes.append(im) |
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return axes |
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def tensor_to_images(name: str, tensor: torch.Tensor) -> np.ndarray | None: |
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""" |
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Return an tuple of images derived from the given tensor. The `name` value indices which key from the |
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output or batch value the tensor was stored as, or is "Batch" or "Output" if these were single tensors |
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instead of dictionaries. Returns a tuple of 2D images of shape HW, or 3D images of shape CHW where C is |
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color channels RGB or RGBA. This allows multiple images to be created from a single tensor, ie. to show |
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each channel separately. |
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""" |
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if tensor.ndim == 3 and tensor.shape[1] > 2 and tensor.shape[2] > 2: |
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return tensor.cpu().data.numpy() |
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if tensor.ndim == 4 and tensor.shape[2] > 2 and tensor.shape[3] > 2: |
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dmid = tensor.shape[1] // 2 |
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return tensor[:, dmid].cpu().data.numpy() |
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return None |
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def plot_engine_status( |
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engine: Engine, |
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logger: Any, |
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title: str = "Training Log", |
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yscale: str = "log", |
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avg_keys: tuple[str] = (LOSS_NAME,), |
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window_fraction: int = 20, |
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image_fn: Callable[[str, torch.Tensor], Any] | None = tensor_to_images, |
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fig: plt.Figure | None = None, |
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selected_inst: int = 0, |
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) -> tuple[plt.Figure, list]: |
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""" |
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Plot the status of the given Engine with its logger. The plot will consist of a graph of loss values and metrics |
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taken from the logger, and images taken from the `output` and `batch` members of `engine.state`. The images are |
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converted to Numpy arrays suitable for input to `Axes.imshow` using `image_fn`, if this is None then no image |
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plotting is done. |
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Args: |
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engine: Engine to extract images from |
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logger: MetricLogger to extract loss and metric data from |
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title: graph title |
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yscale: for metric plot, scale for y-axis compatible with `Axes.set_yscale` |
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avg_keys: for metric plot, tuple of keys in `graphmap` to provide running average plots for |
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window_fraction: for metric plot, what fraction of the graph value length to use as the running average window |
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image_fn: callable converting tensors keyed to a name in the Engine to a tuple of images to plot |
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fig: Figure object to plot into, reuse from previous plotting for flicker-free refreshing |
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selected_inst: index of the instance to show in the image plot |
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Returns: |
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Figure object (or `fig` if given), list of Axes objects for graph and images |
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""" |
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if fig is not None: |
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fig.clf() |
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else: |
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fig = plt.Figure(figsize=(20, 10), tight_layout=True, facecolor="white") |
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graphmap: dict[str, list[float]] = {LOSS_NAME: logger.loss} |
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graphmap.update(logger.metrics) |
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imagemap: dict = {} |
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if image_fn is not None and engine.state is not None and engine.state.batch is not None: |
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for src in (engine.state.batch, engine.state.output): |
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label = "Batch" if src is engine.state.batch else "Output" |
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batch_selected_inst = selected_inst |
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if isinstance(src, list): |
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selected_dict = src[selected_inst] |
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batch_selected_inst = 0 |
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src = {k: v[None] for k, v in selected_dict.items() if isinstance(v, torch.Tensor) and v.ndim >= 3} |
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if isinstance(src, dict): |
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for k, v in src.items(): |
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if isinstance(v, torch.Tensor) and v.ndim >= 4: |
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image = image_fn(k, v[batch_selected_inst]) |
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if image is not None: |
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for i, im in enumerate(image): |
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imagemap[f"{k}_{i}"] = im |
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elif isinstance(src, torch.Tensor): |
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image = image_fn(label, src) |
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if image is not None: |
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imagemap[f"{label}_{i}"] = image |
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axes = plot_metric_images(fig, title, graphmap, imagemap, yscale, avg_keys, window_fraction) |
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if logger.loss: |
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axes[0].axhline(logger.loss[-1][1], c="k", ls=":") |
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return fig, axes |
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def _get_loss_from_output( |
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output: list[torch.Tensor | dict[str, torch.Tensor]] | dict[str, torch.Tensor] | torch.Tensor |
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) -> torch.Tensor: |
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"""Returns a single value from the network output, which is a dict or tensor.""" |
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def _get_loss(data: torch.Tensor | dict[str, torch.Tensor]) -> torch.Tensor: |
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if isinstance(data, dict): |
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return data["loss"] |
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return data |
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if isinstance(output, list): |
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return _get_loss(output[0]) |
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return _get_loss(output) |
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class StatusMembers(Enum): |
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""" |
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Named members of the status dictionary, others may be present for named metric values. |
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""" |
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STATUS = "Status" |
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EPOCHS = "Epochs" |
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ITERS = "Iters" |
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LOSS = "Loss" |
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class ThreadContainer(Thread): |
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""" |
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Contains a running `Engine` object within a separate thread from main thread in a Jupyter notebook. This |
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allows an engine to begin a run in the background and allow the starting notebook cell to complete. A |
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user can thus start a run and then navigate away from the notebook without concern for loosing connection |
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with the running cell. All output is acquired through methods which synchronize with the running engine |
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using an internal `lock` member, acquiring this lock allows the engine to be inspected while it's prevented |
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from starting the next iteration. |
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Args: |
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engine: wrapped `Engine` object, when the container is started its `run` method is called |
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loss_transform: callable to convert an output dict into a single numeric value |
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|
metric_transform: callable to convert a named metric value into a single numeric value |
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status_format: format string for status key-value pairs. |
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""" |
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def __init__( |
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self, |
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engine: Engine, |
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loss_transform: Callable = _get_loss_from_output, |
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metric_transform: Callable = lambda name, value: value, |
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status_format: str = "{}: {:.4}", |
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): |
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super().__init__() |
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self.lock = RLock() |
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self.engine = engine |
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self._status_dict: dict[str, Any] = {} |
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self.loss_transform = loss_transform |
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self.metric_transform = metric_transform |
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self.fig: plt.Figure | None = None |
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self.status_format = status_format |
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self.engine.add_event_handler(Events.ITERATION_COMPLETED, self._update_status) |
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def run(self): |
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"""Calls the `run` method of the wrapped engine.""" |
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self.engine.run() |
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def stop(self): |
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"""Stop the engine and join the thread.""" |
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self.engine.terminate() |
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self.join() |
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def _update_status(self): |
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"""Called as an event, updates the internal status dict at the end of iterations.""" |
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with self.lock: |
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state = self.engine.state |
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stats: dict[str, Any] = { |
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StatusMembers.EPOCHS.value: 0, |
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StatusMembers.ITERS.value: 0, |
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StatusMembers.LOSS.value: float("nan"), |
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} |
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if state is not None: |
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if state.max_epochs is not None and state.max_epochs >= 1: |
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epoch = f"{state.epoch}/{state.max_epochs}" |
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|
else: |
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epoch = str(state.epoch) |
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if state.epoch_length is not None: |
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iters = f"{state.iteration % state.epoch_length}/{state.epoch_length}" |
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else: |
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iters = str(state.iteration) |
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stats[StatusMembers.EPOCHS.value] = epoch |
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stats[StatusMembers.ITERS.value] = iters |
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stats[StatusMembers.LOSS.value] = self.loss_transform(state.output) |
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metrics = state.metrics or {} |
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for m, v in metrics.items(): |
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v = self.metric_transform(m, v) |
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if v is not None: |
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stats[m].append(v) |
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self._status_dict.update(stats) |
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@property |
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def status_dict(self) -> dict[str, str]: |
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"""A dictionary containing status information, current loss, and current metric values.""" |
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with self.lock: |
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stats = {StatusMembers.STATUS.value: "Running" if self.is_alive() else "Stopped"} |
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stats.update(self._status_dict) |
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return stats |
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def status(self) -> str: |
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"""Returns a status string for the current state of the engine.""" |
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stats = copy.deepcopy(self.status_dict) |
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msgs = [stats.pop(StatusMembers.STATUS.value), "Iters: " + str(stats.pop(StatusMembers.ITERS.value, 0))] |
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for key, val in stats.items(): |
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if isinstance(val, float): |
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msg = self.status_format.format(key, val) |
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else: |
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msg = f"{key}: {val}" |
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msgs.append(msg) |
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return ", ".join(msgs) |
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def plot_status(self, logger: Any, plot_func: Callable = plot_engine_status) -> plt.Figure | None: |
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""" |
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|
Generate a plot of the current status of the contained engine whose loss and metrics were tracked by `logger`. |
|
|
The function `plot_func` must accept arguments `title`, `engine`, `logger`, and `fig` which are the plot title, |
|
|
`self.engine`, `logger`, and `self.fig` respectively. The return value must be a figure object (stored in |
|
|
`self.fig`) and a list of Axes objects for the plots in the figure. Only the figure is returned by this method, |
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|
which holds the internal lock during the plot generation. |
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|
""" |
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|
with self.lock: |
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self.fig, _ = plot_func(title=self.status(), engine=self.engine, logger=logger, fig=self.fig) |
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|
return self.fig |
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|