import hashlib import json import numpy as np import pandas as pd from utils import print_progress cache_file = "center_cache.json" try: with open(cache_file, "r") as f: center_cache = json.load(f) except FileNotFoundError: center_cache = {} def find_center(df: pd.DataFrame, center: np.ndarray, initial_radius=1): # plt.figure() all_particles = df[["X", "Y", "Z"]].to_numpy() hash = hashlib.sha256(np.ascontiguousarray(all_particles).data).hexdigest() if hash in center_cache: return np.array(center_cache[hash]) radius = initial_radius center_history = [] i = 0 while True: center_history.append(center) distances = np.linalg.norm(all_particles - center, axis=1) in_radius_particles = all_particles[distances < radius] num_particles = in_radius_particles.shape[0] print_progress(i, "?", f"n={num_particles}, r={radius}, c={center}") if num_particles < 10: break center_of_mass = in_radius_particles.mean(axis=0) new_center = (center_of_mass + center) / 2 shift = np.linalg.norm(center - new_center) radius = max(2 * shift, radius * 0.9) center = new_center i += 1 center_history = np.array(center_history) # print(center_history) # plt.scatter(center_history[::, 0], center_history[::, 1], c=range(len(center_history[::, 1]))) # plt.colorbar(label="step") # plt.show() print() center_cache[hash] = center.tolist() with open(cache_file, "w") as f: json.dump(center_cache, f) return center