From 7c754dc420996d2216d4d480a76f7603cc4cec4c Mon Sep 17 00:00:00 2001 From: ylzz1997 Date: Sat, 20 May 2023 19:43:33 +0800 Subject: [PATCH] Debug Kmeans --- cluster/km_train.py | 80 ---------------------------------------- cluster/train_cluster.py | 4 +- 2 files changed, 2 insertions(+), 82 deletions(-) delete mode 100644 cluster/km_train.py diff --git a/cluster/km_train.py b/cluster/km_train.py deleted file mode 100644 index 917b2da..0000000 --- a/cluster/km_train.py +++ /dev/null @@ -1,80 +0,0 @@ -import time,pdb -import tqdm -from time import time as ttime -import os -from pathlib import Path -import logging -import argparse -from cluster.kmeans import KMeansGPU -import torch -import numpy as np -from sklearn.cluster import KMeans,MiniBatchKMeans - -logging.basicConfig(level=logging.INFO) -logger = logging.getLogger(__name__) -from time import time as ttime -import pynvml,torch - -def train_cluster(in_dir, n_clusters, use_minibatch=True, verbose=False,use_gpu=False):#gpu_minibatch真拉,虽然库支持但是也不考虑 - logger.info(f"Loading features from {in_dir}") - features = [] - nums = 0 - for path in tqdm.tqdm(in_dir.glob("*.soft.pt")): - # for name in os.listdir(in_dir): - # path="%s/%s"%(in_dir,name) - features.append(torch.load(path,map_location="cpu").squeeze(0).numpy().T) - # print(features[-1].shape) - features = np.concatenate(features, axis=0) - print(nums, features.nbytes/ 1024**2, "MB , shape:",features.shape, features.dtype) - features = features.astype(np.float32) - logger.info(f"Clustering features of shape: {features.shape}") - t = time.time() - if(use_gpu==False): - if use_minibatch: - kmeans = MiniBatchKMeans(n_clusters=n_clusters,verbose=verbose, batch_size=4096, max_iter=80).fit(features) - else: - kmeans = KMeans(n_clusters=n_clusters,verbose=verbose).fit(features) - else: - kmeans = KMeansGPU(n_clusters=n_clusters, mode='euclidean', verbose=2 if verbose else 0,max_iter=500,tol=1e-2)# - features=torch.from_numpy(features)#.to(device) - labels = kmeans.fit_predict(features)# - - print(time.time()-t, "s") - - x = { - "n_features_in_": kmeans.n_features_in_ if use_gpu==False else features.shape[0], - "_n_threads": kmeans._n_threads if use_gpu==False else 4, - "cluster_centers_": kmeans.cluster_centers_ if use_gpu==False else kmeans.centroids.cpu().numpy(), - } - print("end") - - return x - -if __name__ == "__main__": - parser = argparse.ArgumentParser() - parser.add_argument('--dataset', type=Path, default="./dataset/44k", - help='path of training data directory') - parser.add_argument('--output', type=Path, default="logs/44k", - help='path of model output directory') - - args = parser.parse_args() - - checkpoint_dir = args.output - dataset = args.dataset - n_clusters = 1000 - - ckpt = {} - for spk in os.listdir(dataset): - if os.path.isdir(dataset/spk): - print(f"train kmeans for {spk}...") - in_dir = dataset/spk - x = train_cluster(in_dir, n_clusters,use_minibatch=False,verbose=False,use_gpu=True) - ckpt[spk] = x - - checkpoint_path = checkpoint_dir / f"kmeans_{n_clusters}.pt" - checkpoint_path.parent.mkdir(exist_ok=True, parents=True) - torch.save( - ckpt, - checkpoint_path, - ) - diff --git a/cluster/train_cluster.py b/cluster/train_cluster.py index b8d4964..8644566 100644 --- a/cluster/train_cluster.py +++ b/cluster/train_cluster.py @@ -42,7 +42,7 @@ def train_cluster(in_dir, n_clusters, use_minibatch=True, verbose=False,use_gpu= print(time.time()-t, "s") x = { - "n_features_in_": kmeans.n_features_in_ if use_gpu==False else features.shape[0], + "n_features_in_": kmeans.n_features_in_ if use_gpu==False else features.shape[1], "_n_threads": kmeans._n_threads if use_gpu==False else 4, "cluster_centers_": kmeans.cluster_centers_ if use_gpu==False else kmeans.centroids.cpu().numpy(), } @@ -65,7 +65,7 @@ if __name__ == "__main__": checkpoint_dir = args.output dataset = args.dataset use_gpu = args.gpu - n_clusters = 1000 + n_clusters = 10000 ckpt = {} for spk in os.listdir(dataset):