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    Pytorch可视化的几种实现方法

    作者:_Be_Water_ 时间:2021-08-09 18:40

    目录
    • 一,利用 tensorboardX 可视化网络结构
    • 二,利用 vistom 可视化
    • 三,利用pytorchviz可视化网络结构

    一,利用 tensorboardX 可视化网络结构

    参考 https://github.com/lanpa/tensorboardX
    支持scalar, image, figure, histogram, audio, text, graph, onnx_graph, embedding, pr_curve and video summaries.
    例子要求tensorboardX>=1.2 and pytorch>=0.4

    安装

    pip install tensorboardXpip install git+https://github.com/lanpa/tensorboardX

    例子

    # demo.py
    
    import torch
    import torchvision.utils as vutils
    import numpy as np
    import torchvision.models as models
    from torchvision import datasets
    from tensorboardX import SummaryWriter
    
    resnet18 = models.resnet18(False)
    writer = SummaryWriter()
    sample_rate = 44100
    freqs = [262, 294, 330, 349, 392, 440, 440, 440, 440, 440, 440]
    
    for n_iter in range(100):
    
        dummy_s1 = torch.rand(1)
        dummy_s2 = torch.rand(1)
        # data grouping by `slash`
        writer.add_scalar('data/scalar1', dummy_s1[0], n_iter)
        writer.add_scalar('data/scalar2', dummy_s2[0], n_iter)
    
        writer.add_scalars('data/scalar_group', {'xsinx': n_iter * np.sin(n_iter),
                                                 'xcosx': n_iter * np.cos(n_iter),
                                                 'arctanx': np.arctan(n_iter)}, n_iter)
    
        dummy_img = torch.rand(32, 3, 64, 64)  # output from network
        if n_iter % 10 == 0:
            x = vutils.make_grid(dummy_img, normalize=True, scale_each=True)
            writer.add_image('Image', x, n_iter)
    
            dummy_audio = torch.zeros(sample_rate * 2)
            for i in range(x.size(0)):
                # amplitude of sound should in [-1, 1]
                dummy_audio[i] = np.cos(freqs[n_iter // 10] * np.pi * float(i) / float(sample_rate))
            writer.add_audio('myAudio', dummy_audio, n_iter, sample_rate=sample_rate)
    
            writer.add_text('Text', 'text logged at step:' + str(n_iter), n_iter)
    
            for name, param in resnet18.named_parameters():
                writer.add_histogram(name, param.clone().cpu().data.numpy(), n_iter)
    
            # needs tensorboard 0.4RC or later
            writer.add_pr_curve('xoxo', np.random.randint(2, size=100), np.random.rand(100), n_iter)
    
    dataset = datasets.MNIST('mnist', train=False, download=True)
    images = dataset.test_data[:100].float()
    label = dataset.test_labels[:100]
    
    features = images.view(100, 784)
    writer.add_embedding(features, metadata=label, label_img=images.unsqueeze(1))
    
    # export scalar data to JSON for external processing
    writer.export_scalars_to_json("./all_scalars.json")
    writer.close()
    

    运行: python demo.py 会出现runs文件夹,然后在cd到工程目录运行tensorboard --logdir runs

    结果:

    在这里插入图片描述

    二,利用 vistom 可视化

    参考:https://github.com/facebookresearch/visdom

    安装和启动
    安装: pip install visdom
    启动:python -m visdom.server示例

        from visdom import Visdom
        #单张
        viz.image(
            np.random.rand(3, 512, 256),
            opts=dict(title=\\\\\'Random!\\\\\', caption=\\\\\'How random.\\\\\'),
        )
        #多张
        viz.images(
            np.random.randn(20, 3, 64, 64),
            opts=dict(title=\\\\\'Random images\\\\\', caption=\\\\\'How random.\\\\\')
        )
    

    在这里插入图片描述

    from visdom import Visdom
    
    image = np.zeros((100,100))
    vis = Visdom() 
    vis.text("hello world!!!")
    vis.image(image)
    vis.line(Y = np.column_stack((np.random.randn(10),np.random.randn(10))), 
             X = np.column_stack((np.arange(10),np.arange(10))),
             opts = dict(title = "line", legend=["Test","Test1"]))
    

    在这里插入图片描述

    三,利用pytorchviz可视化网络结构

    参考:https://github.com/szagoruyko/pytorchviz

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