2023-09-02 21:29:53 +00:00
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#!/usr/bin/env python3
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import argparse
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import json
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import re
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from pathlib import Path
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import matplotlib.pyplot as plt
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import pandas as pd
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from .config import cfg
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def plot(paths, args):
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dfs = []
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for path in paths:
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with open(path, "r") as f:
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text = f.read()
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rows = []
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pattern = r"(\{.+?\})\.\n"
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for row in re.findall(pattern, text, re.DOTALL):
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try:
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row = json.loads(row)
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except Exception as e:
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continue
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for model in args.models:
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if f'{model.name}.{args.xs}' not in row:
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continue
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rows.append(row)
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break
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df = pd.DataFrame(rows)
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if "name" in df:
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df["name"] = df["name"].fillna("train")
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else:
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df["name"] = "train"
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df["group"] = str(path.parents[args.group_level])
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df["group"] = df["group"] + "/" + df["name"]
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dfs.append(df)
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df = pd.concat(dfs)
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2023-10-05 00:41:37 +00:00
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if args.min_x is not None:
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for model in args.models:
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df = df[args.min_x < df[f'{model.name}.{args.xs}']]
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if args.max_x is not None:
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2023-09-02 21:29:53 +00:00
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for model in args.models:
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df = df[df[f'{model.name}.{args.xs}'] < args.max_x]
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for gtag, gdf in sorted(
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df.groupby("group"),
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key=lambda p: (p[0].split("/")[-1], p[0]),
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):
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for model in args.models:
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x = f'{model.name}.{args.xs}'
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for ys in args.ys:
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y = f'{model.name}.{ys}'
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if gdf[y].isna().all():
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continue
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2023-10-05 00:41:37 +00:00
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if args.min_y is not None:
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gdf = gdf[args.min_y < gdf[y]]
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2023-09-02 21:29:53 +00:00
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if args.max_y is not None:
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gdf = gdf[gdf[y] < args.max_y]
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2024-09-25 01:05:10 +00:00
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if args.ewm:
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gdf[y] = gdf[y].ewm(args.ewm).mean()
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elif args.rolling:
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gdf[y] = gdf[y].rolling(args.rolling).mean()
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2023-09-02 21:29:53 +00:00
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gdf.plot(
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x=x,
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y=y,
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label=f"{y}",
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ax=plt.gca(),
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marker="x" if len(gdf) < 100 else None,
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alpha=0.7,
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)
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plt.gca().legend(
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2024-09-25 01:05:10 +00:00
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#loc="center left",
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2023-09-02 21:29:53 +00:00
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fancybox=True,
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shadow=True,
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2024-09-25 01:05:10 +00:00
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#bbox_to_anchor=(1.04, 0.5),
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2023-09-02 21:29:53 +00:00
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)
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2024-10-12 02:18:26 +00:00
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def plot_entropies( entropies ):
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"""
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fig = plt.figure()
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fig.set_figwidth( 16 * len(entropies) // cfg.dataset.frames_per_second )
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"""
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2024-10-12 14:57:34 +00:00
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data = { key: [ e[0][key] for e in entropies ] for key in entropies[0][0].keys() }
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2024-10-12 02:18:26 +00:00
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df = pd.DataFrame(data)
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df.plot()
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plt.gca().legend(
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#loc="center left",
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fancybox=True,
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shadow=True,
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#bbox_to_anchor=(1.04, 0.5),
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)
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out_path = cfg.rel_path / "metrics.png"
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plt.savefig(out_path, bbox_inches="tight")
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2023-09-02 21:29:53 +00:00
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if __name__ == "__main__":
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parser = argparse.ArgumentParser()
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parser.add_argument("--xs", default="engine_step")
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parser.add_argument("--ys", nargs="+", default="")
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parser.add_argument("--model", nargs="+", default="*")
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2023-10-05 00:41:37 +00:00
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parser.add_argument("--min-x", type=float, default=-float("inf"))
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parser.add_argument("--min-y", type=float, default=-float("inf"))
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2023-09-02 21:29:53 +00:00
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parser.add_argument("--max-x", type=float, default=float("inf"))
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parser.add_argument("--max-y", type=float, default=float("inf"))
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2024-09-25 01:05:10 +00:00
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parser.add_argument("--ewm", type=int, default=1024)
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parser.add_argument("--rolling", type=int, default=None)
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parser.add_argument("--size", type=str, default=None)
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2023-09-02 21:29:53 +00:00
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parser.add_argument("--filename", default="log.txt")
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parser.add_argument("--group-level", default=1)
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2024-06-09 16:39:43 +00:00
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args, unknown = parser.parse_known_args()
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2023-09-02 21:29:53 +00:00
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2024-06-09 16:22:52 +00:00
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path = cfg.rel_path / "logs"
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2023-09-02 21:29:53 +00:00
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paths = path.rglob(f"./*/{args.filename}")
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2024-04-16 00:54:32 +00:00
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args.models = [ model for model in cfg.model.get() if model.training and (args.model == "*" or model.name in args.model) ]
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2023-09-02 21:29:53 +00:00
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if args.ys == "":
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2024-09-25 01:05:10 +00:00
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args.ys = ["loss.nll"]
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if args.size:
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width, height = args.size.split("x")
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plt.figure(figsize=(int(width), int(height)))
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2023-09-02 21:29:53 +00:00
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plot(paths, args)
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2024-06-09 16:22:52 +00:00
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out_path = cfg.rel_path / "metrics.png"
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2023-09-02 21:29:53 +00:00
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plt.savefig(out_path, bbox_inches="tight")
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