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问题:

通过选择散点图上的点更新仪表板

东典
2023-03-14

我正在做仪表板。这是我的密码:

# IMPORT SECTION
import dash
import dash_table
import dash_core_components as dcc
import dash_html_components as html
import dash_bootstrap_components as dbc
from dash.dependencies import Input, Output
import plotly.graph_objs as go
import numpy as np
import pandas as pd
from math import ceil
from matplotlib.cm import Set3


# INPUT DATA
n = 7
d_min = 0.2
d_max = 0.8
d_step = 0.1
N_min = 2000
N_max = 8000
N_step = 1000
D = 40
h = 20
dataframe_file = 'data.xlsx'


# COLOR AND FONT DEFINITION
grey = '#e0e1f5'
black = '#212121'
scatter_colors = ['#' + ''.join(['{:02x}'.format(int(255*Set3(i)[j])) for j in range(3)]) for i in range(n)]
fontsize = 18
fontfamily = 'Arial, sans-serif'


# READ CSV DATA
df = pd.read_excel(dataframe_file)


# CREATE DATA FOR DASH DATATABLE
df_scatter_colors = ceil(len(df) / len(scatter_colors)) * scatter_colors
df_scatter_colors = df_scatter_colors[:len(df)]
df.insert(loc = 0, column = 'COLOR', value = df_scatter_colors)

headers = [{"name": i, "id": i} for i in df.columns]

table = df.to_dict('records')

table_colors = [{'if': {'row_index': i, 'column_id': 'COLOR'},
                 'background-color': df.iloc[i]['COLOR'],
                 'color': df.iloc[i]['COLOR']} for i in range(df.shape[0])]


# CREATE DATA AND LAYOUT FOR THE SCATTERPLOT
x_jitter = 0.05 * N_step * np.random.randn(len(df))
y_jitter = 0.05 * d_step * 1000 * np.random.randn(len(df))
data = [go.Scatter(x = df['NUMBER'] + x_jitter,
                   y = df['DIAMETER'] + y_jitter,
                   text = df['PRODUCT'],
                   mode = 'markers',
                   hoverinfo = 'skip',
                   showlegend = False,
                   marker_color = 'rgba(0, 0, 0, 0)',
                   marker = {'size': 25,
                             'line': {'color': df['COLOR'],
                                      'width': 8}})]

layout = go.Layout(plot_bgcolor = black,
                   hovermode = 'x unified',
                   uirevision = 'value')

figure = go.Figure(data = data, layout = layout)


# DASHBOARD LAYOUT
app = dash.Dash(external_stylesheets = [dbc.themes.BOOTSTRAP])

app.layout = html.Div(id = 'general_div',
                      children = [html.Div(id = 'first_row',
                                           children = [dcc.Graph(id = 'main_graph',
                                                                 figure = figure,
                                                                 style = {'height': 800,
                                                                          'width': 1400})],

                                           className = 'row'),

                                  html.Div(id = 'second_row',
                                           children = [dash_table.DataTable(id = 'main_table',
                                                                            columns = headers,
                                                                            data = table,
                                                                            style_data_conditional = table_colors,
                                                                            style_table = {'margin-left': '3vw',
                                                                                           'margin-top': '3vw'},
                                                                            style_cell = {'font-family': fontfamily,
                                                                                          'fontSize': fontsize},
                                                                            style_header = {'backgroundColor': 'rgb(230, 230, 230)',
                                                                                            'fontWeight': 'bold'})],

                                           className = 'row')])


# CALLBACK DEFINITION
@app.callback(Output('main_table', 'style_data_conditional'),
              [Input('main_graph', 'selectedData'),
               Input('main_table', 'style_data_conditional')])
def display_selected_data(selectedData, style_data_conditional):
    # what to do here and how to run this callback?
    return style_data_conditional


if __name__ == "__main__":
    app.run_server()

仪表板中有一个散点图(dcc.Graph)和一个表(dash\u table.DataTable)。散点图的每个点对应于表中的特定行,我从excel文件中读取这些数据
excel文件中的数据采用以下格式

PRODUCT CODE    NUMBER  DIAMETER
AAAAA   1412    8000    0.049
BBBBB   1418    3900    0.08
CCCCC   1420    7600    0.06
DDDDD   1426    8500    0.049
EEEEE   1430    3900    0.08
FFFFF   1442    3900    0.08
GGGGG   1490    8500    0.049
HHHHH   1504    9000    0.18
IIIII   1514    5500    0.224
JJJJJ   1584    7600    0.06
KKKKK   1606    8500    0.049
LLLLL   1618    7600    0.06
MMMMM   1638    7600    0.06
NNNNN   1640    7600    0.06
OOOOO   1666    3900    0.08
PPPPP   1670    8000    0.049
QQQQQ   1672    8000    0.049
RRRRR   1674    7600    0.06
SSSSS   1700    7100    0.071
TTTTT   1704    8500    0.049
UUUUU   1712    7600    0.06
VVVVV   1718    7600    0.06
WWWWW   1722    8000    0.065

我想实现这个功能:当用户选择散点图中的某个点时,代码会突出显示表中相应的行(例如将这些行中的单元格的背景颜色更改为'粉红色',除了'COLOR'列,保持其颜色)。

检查以下来源:

  1. 使用样式数据条件的dash datatable单个高亮显示效果异常

我试图画一个这样的回调,但没有成功:

@app.callback(Output('selected_data', 'children'),
              [Input('main_graph', 'selectedData'),
               Input('main_table', 'style_data_conditional')])
def display_selected_data(selectedData, style_data_conditional):
    selected_points = []
    for point in selectedData['points']:
        selected_points.append(point['marker.line.color'])
    selected = [{'if': {'filter': '{COLOR} eq ' + f'"{color}"',
                        'column_id': 'PRODUCT'},
                 'backgroundColor': 'pink'} for color in selected_points]
    style_data_conditional.extend(selected)

    return style_data_conditional

提前感谢。

版本信息

Python                       3.7.0
dash                         1.12.0
dash-bootstrap-components    0.10.1
dash-core-components         1.10.0
dash-html-components         1.0.3
matplotlib                   3.0.2
numpy                        1.15.4
plotly                       4.7.0

共有1个答案

易元青
2023-03-14

我设法通过将selectedData作为main_graph的输入,并通过函数将main_table的style_data_conditional作为输出来解决这个问题。这里我用深灰色着色对于奇数行,为了提高表格的可见性,我再通过一个条件式设置选中行的背景色。最后,我根据每行的颜色更改第一列的背景(每行第一列报告的颜色)。

代码:

# IMPORT SECTION
import dash
import dash_table
import dash_core_components as dcc
import dash_html_components as html
import dash_bootstrap_components as dbc
from dash.dependencies import Input, Output
import plotly.graph_objs as go
import numpy as np
import pandas as pd
from math import ceil
from matplotlib.cm import Set3


# INPUT DATA
n = 7
d_min = 0.2
d_max = 0.8
d_step = 0.1
N_min = 2000
N_max = 8000
N_step = 1000
D = 40
h = 20
dataframe_file = 'data.xlsx'


# COLOR AND FONT DEFINITION
grey = '#e0e1f5'
black = '#212121'
scatter_colors = ['#' + ''.join(['{:02x}'.format(int(255*Set3(i)[j])) for j in range(3)]) for i in range(n)]
fontsize = 18
fontfamily = 'Arial, sans-serif'


# READ CSV DATA
df = pd.read_excel(dataframe_file)


# CREATE DATA FOR DASH DATATABLE
df_scatter_colors = ceil(len(df) / len(scatter_colors)) * scatter_colors
df_scatter_colors = df_scatter_colors[:len(df)]
df.insert(loc = 0, column = 'COLOR', value = df_scatter_colors)

headers = [{"name": i, "id": i} for i in df.columns]

table = df.to_dict('records')


# CREATE DATA AND LAYOUT FOR THE SCATTERPLOT
x_jitter = 0.05 * N_step * np.random.randn(len(df))
y_jitter = 0.05 * d_step * 1000 * np.random.randn(len(df))
data = [go.Scatter(x = df['NUMBER'] + x_jitter,
                   y = df['DIAMETER'] + y_jitter,
                   text = df['PRODUCT'],
                   mode = 'markers',
                   hoverinfo = 'skip',
                   showlegend = False,
                   marker_color = 'rgba(0, 0, 0, 0)',
                   marker = {'size': 25,
                             'line': {'color': df['COLOR'],
                                      'width': 8}})]

layout = go.Layout(plot_bgcolor = black,
                   hovermode = 'x unified',
                   uirevision = 'value')

figure = go.Figure(data = data, layout = layout)

def update_table_style(selectedData):
    table_style_conditions = [{'if': {'row_index': 'odd'},
                               'backgroundColor': 'rgb(240, 240, 240)'}]

    if selectedData != None:
        points_selected = []
        for point in selectedData['points']:
            points_selected.append(point['pointIndex'])
        selected_styles = [{'if': {'row_index': i},
                            'backgroundColor': 'pink'} for i in points_selected]
        table_style_conditions.extend(selected_styles)

    table_style_conditions.extend([{'if': {'row_index': i, 'column_id': 'COLOR'},
                                    'background-color': df.iloc[i]['COLOR'],
                                    'color': df.iloc[i]['COLOR']} for i in range(df.shape[0])])

    return table_style_conditions


# DASHBOARD LAYOUT
app = dash.Dash(external_stylesheets = [dbc.themes.BOOTSTRAP])

app.layout = html.Div(id = 'general_div',
                      children = [html.Div(id = 'first_row',
                                           children = [dcc.Graph(id = 'main_graph',
                                                                 figure = figure,
                                                                 style = {'height': 800,
                                                                          'width': 1400})],

                                           className = 'row'),

                                  html.Div(id = 'second_row',
                                           children = [dash_table.DataTable(id = 'main_table',
                                                                            columns = headers,
                                                                            data = table,
                                                                            # style_data_conditional = table_colors,
                                                                            style_table = {'margin-left': '3vw',
                                                                                           'margin-top': '3vw'},
                                                                            style_cell = {'font-family': fontfamily,
                                                                                          'fontSize': fontsize},
                                                                            style_header = {'backgroundColor': 'rgb(230, 230, 230)',
                                                                                            'fontWeight': 'bold'})],

                                           className = 'row')])


# CALLBACK DEFINITION
@app.callback(Output('main_table', 'style_data_conditional'),
              [Input('main_graph', 'selectedData')])
def display_selected_data(selectedData):
    table_style_conditions = update_table_style(selectedData)
    return table_style_conditions


if __name__ == "__main__":
    app.run_server()

着色部分是这样的:

table_style_conditions = [{'if': {'row_index': 'odd'},
                           'backgroundColor': 'rgb(240, 240, 240)'}]

if selectedData != None:
    points_selected = []
    for point in selectedData['points']:
        points_selected.append(point['pointIndex'])
    selected_styles = [{'if': {'row_index': i},
                        'backgroundColor': 'pink'} for i in points_selected]
    table_style_conditions.extend(selected_styles)

table_style_conditions.extend([{'if': {'row_index': i, 'column_id': 'COLOR'},
                                'background-color': df.iloc[i]['COLOR'],
                                'color': df.iloc[i]['COLOR']} for i in range(df.shape[0])])

我得到的结果如下:

 类似资料:
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