将交互式 Jupyter Notebook 导出到 html [英] Exporting Interactive Jupyter Notebook to html

查看:133
本文介绍了将交互式 Jupyter Notebook 导出到 html的处理方法,对大家解决问题具有一定的参考价值,需要的朋友们下面随着小编来一起学习吧!

问题描述

以下代码绘制了一个交互式图形,我可以在其中打开/关闭特定行.当我在 Ipython Notebook 中工作时,这非常有效

The following code plots an interactive figure where I can toggle specific lines on/off. This works perfectly when I'm working in an Ipython Notebook

import pandas as pd
import numpy as np
from itertools import cycle
import matplotlib.pyplot as plt, mpld3
from matplotlib.widgets import CheckButtons
import matplotlib.patches
import seaborn as sns
%matplotlib nbagg
sns.set(style="whitegrid")
df = pd.DataFrame({'freq': {0: 0.01, 1: 0.02, 2: 0.029999999999999999, 3: 0.040000000000000001, 4: 0.050000000000000003, 5: 0.059999999999999998, 6: 0.070000000000000007, 7: 0.080000000000000002, 8: 0.089999999999999997, 9: 0.10000000000000001, 10: 0.01, 11: 0.02, 12: 0.029999999999999999, 13: 0.040000000000000001, 14: 0.050000000000000003, 15: 0.059999999999999998, 16: 0.070000000000000007, 17: 0.080000000000000002, 18: 0.089999999999999997, 19: 0.10000000000000001, 20: 0.01, 21: 0.02, 22: 0.029999999999999999, 23: 0.040000000000000001, 24: 0.050000000000000003, 25: 0.059999999999999998, 26: 0.070000000000000007, 27: 0.080000000000000002, 28: 0.089999999999999997, 29: 0.10000000000000001}, 'kit': {0: 'B', 1: 'B', 2: 'B', 3: 'B', 4: 'B', 5: 'B', 6: 'B', 7: 'B', 8: 'B', 9: 'B', 10: 'A', 11: 'A', 12: 'A', 13: 'A', 14: 'A', 15: 'A', 16: 'A', 17: 'A', 18: 'A', 19: 'A', 20: 'C', 21: 'C', 22: 'C', 23: 'C', 24: 'C', 25: 'C', 26: 'C', 27: 'C', 28: 'C', 29: 'C'}, 'SNS': {0: 91.198979591799997, 1: 90.263605442199989, 2: 88.818027210899999, 3: 85.671768707499993, 4: 76.23299319729999, 5: 61.0969387755, 6: 45.1530612245, 7: 36.267006802700003, 8: 33.0782312925, 9: 30.739795918400002, 10: 90.646258503400006, 11: 90.306122449, 12: 90.178571428600009, 13: 89.498299319699996, 14: 88.435374149599994, 15: 83.588435374200003, 16: 75.212585034, 17: 60.969387755100001, 18: 47.278911564600001, 19: 37.627551020399999, 20: 90.986394557800011, 21: 90.136054421799997, 22: 89.540816326499993, 23: 88.690476190499993, 24: 86.479591836799997, 25: 82.397959183699996, 26: 73.809523809499993, 27: 63.180272108800004, 28: 50.935374149700003, 29: 41.241496598699996}, 'FPR': {0: 1.0953616823100001, 1: 0.24489252678500001, 2: 0.15106142277199999, 3: 0.104478605177, 4: 0.089172822253300005, 5: 0.079856258734300009, 6: 0.065881413455800009, 7: 0.059892194050699996, 8: 0.059892194050699996, 9: 0.0578957875824, 10: 0.94097291541899997, 11: 0.208291741532, 12: 0.14773407865800001, 13: 0.107805949291, 14: 0.093165635189999998, 15: 0.082518134025399995, 16: 0.074532508152000007, 17: 0.065881413455800009, 18: 0.062554069341799995, 19: 0.061888600519100001, 20: 0.85313103081100006, 21: 0.18899314567100001, 22: 0.14107939043000001, 23: 0.110467824582, 24: 0.099820323417899995, 25: 0.085180009316599997, 26: 0.078525321088700001, 27: 0.073201570506399985, 28: 0.071870632860800004, 29: 0.0705396952153}})

tableau20 = ["#6C6C6C", "#92D050", "#FFC000"]
tableau20 = cycle(tableau20)

kits = ["A","B", "C"]
color = iter(["#6C6C6C", "#92D050", "#FFC000"])
fig = plt.figure(figsize=(12,8))
for kit in kits:
    colour = next(color)
    for i in df.groupby('kit'):
        grouped_df = pd.DataFrame(np.array(i[1]), columns = 
                      ['freq', 'SNS', 'FPR', 'kit'])
        if grouped_df.kit.tolist()[1] == kit:
            x = [float(value) for i, value in enumerate(grouped_df.FPR)]
            y = [float(value) for i, value in enumerate(grouped_df.SNS)]
            x, y = (list(x) for x in zip(*sorted(zip(x, y))))
            label = grouped_df['kit'].tolist()[1]
            p = plt.plot(x, y, "-o",label = label, color = colour)

labels = [label.get_text() for label in plt.legend().texts]
plt.legend().set_visible(False)
for i, value in enumerate(labels):
    exec('label%s="%s"'%(i, value))

for i in range(len(labels)):
    exec('l%s=fig.axes[0].lines[i]'%(i))

rax = plt.axes([0.92, 0.7, 0.2, 0.2], frameon=False)
check = CheckButtons(rax, (labels), ('True ' * len(labels)))
for i, rec in enumerate(check.rectangles):
     rec.set_facecolor(tableau20.next())

def func(label):
    for i in range(len(labels)):
        if label == eval('label%s'%(i)): eval('l%s.set_visible(not l%s.get_visible())'%(i,i))

    plt.draw()
check.on_clicked(func)

plt.show()

问题是,我需要将notebook导出为html,分享给对python一无所知的同事.如何将笔记本导出到 html 并让它保持交互式(切换)功能(它目前已丢失)?谢谢!

Problem is, I need to export the notebook as a html to share with colleagues who know nothing about python. How can I export the notebook to html and get it to maintain the interactive (toggle) functionality (which it currently loses)? Thanks!

推荐答案

也许您不需要将 jupyter notebook 导出为 html,而是将 notebook 链接分享给其他人,他们可以使用浏览器访问该 url.

Maybe you don't need to export jupyter notebook to html, but share the notebook link to the other people and they can visit the url using their browser.

jupyter notebook 插件将帮助您更有效地执行此操作:jupyter/dashboards,它由jupyter 官方团队,它可以帮助您像报告一样共享您的笔记本,并且您可以控制显示哪个单元格以及每个单元格显示的位置.值得一试!

A jupyter notebook plugin would help you do this more efficiently: jupyter/dashboards, it's maintained by official jupyter team, and it helps you share your notebook like a report, and you can control which cell to display and the location of each cell displayed. Worth a try!

这篇关于将交互式 Jupyter Notebook 导出到 html的文章就介绍到这了,希望我们推荐的答案对大家有所帮助,也希望大家多多支持IT屋!

查看全文
登录 关闭
扫码关注1秒登录
发送“验证码”获取 | 15天全站免登陆