[英]Plotly Dash: Graphs not updating based on Dropdown selection
尽管我的仪表板已成功创建,但它只显示了 5 次相同的折线图。 如代码所示,它应该显示折线图、饼图和条形图以及 map。 数据确实会逐年变化,并且会因不同的报告而变化,但图表保持不变。 简而言之,仪表板显示了 4 个折线图,而所有的图都应该是不同类型的图。
下面的代码:
# Import required libraries
import pandas as pd
import dash
import dash_html_components as html
import dash_core_components as dcc
from dash.dependencies import Input, Output, State
import plotly.graph_objects as go
import plotly.express as px
from dash import no_update
# Create a dash application
app = dash.Dash(__name__)
# REVIEW1: Clear the layout and do not display exception till callback gets executed
app.config.suppress_callback_exceptions = True
# Read the airline data into pandas dataframe
airline_data = pd.read_csv('https://cf-courses-data.s3.us.cloud-object-storage.appdomain.cloud/IBMDeveloperSkillsNetwork-DV0101EN-SkillsNetwork/Data%20Files/airline_data.csv',
encoding = "ISO-8859-1",
dtype={'Div1Airport': str, 'Div1TailNum': str,
'Div2Airport': str, 'Div2TailNum': str})
# List of years
year_list = [i for i in range(2005, 2021, 1)]
"""Compute graph data for creating yearly airline performance report
Function that takes airline data as input and create 5 dataframes based on the grouping condition to be used for plottling charts and grphs.
Argument:
df: Filtered dataframe
Returns:
Dataframes to create graph.
"""
def compute_data_choice_1(df):
# Cancellation Category Count
bar_data = df.groupby(['Month','CancellationCode'])['Flights'].sum().reset_index()
# Average flight time by reporting airline
line_data = df.groupby(['Month','Reporting_Airline'])['AirTime'].mean().reset_index()
# Diverted Airport Landings
div_data = df[df['DivAirportLandings'] != 0.0]
# Source state count
map_data = df.groupby(['OriginState'])['Flights'].sum().reset_index()
# Destination state count
tree_data = df.groupby(['DestState', 'Reporting_Airline'])['Flights'].sum().reset_index()
return bar_data, line_data, div_data, map_data, tree_data
"""Compute graph data for creating yearly airline delay report
This function takes in airline data and selected year as an input and performs computation for creating charts and plots.
Arguments:
df: Input airline data.
Returns:
Computed average dataframes for carrier delay, weather delay, NAS delay, security delay, and late aircraft delay.
"""
def compute_data_choice_2(df):
# Compute delay averages
avg_car = df.groupby(['Month','Reporting_Airline'])['CarrierDelay'].mean().reset_index()
avg_weather = df.groupby(['Month','Reporting_Airline'])['WeatherDelay'].mean().reset_index()
avg_NAS = df.groupby(['Month','Reporting_Airline'])['NASDelay'].mean().reset_index()
avg_sec = df.groupby(['Month','Reporting_Airline'])['SecurityDelay'].mean().reset_index()
avg_late = df.groupby(['Month','Reporting_Airline'])['LateAircraftDelay'].mean().reset_index()
return avg_car, avg_weather, avg_NAS, avg_sec, avg_late
# Application layout
app.layout = html.Div(children=[html.H1 ('US Domestic Airline Flights Performance', style={'textAlign': 'center', 'color': '#503D36','font-size': 40}),
# TASK1: Add title to the dashboard
# Enter your code below. Make sure you have correct formatting.
# REVIEW2: Dropdown creation
# Create an outer division
html.Div([
# Add an division
html.Div([
# Create an division for adding dropdown helper text for report type
html.Div(
[
html.H2('Report Type:', style={'margin-right': '2em'}),
]
),
# TASK2: Add a dropdown
# Enter your code below. Make sure you have correct formatting.
dcc.Dropdown(id='input-type',
options=[{'label': 'Yearly Airline Performance Report', 'value': '.OPT1'},{'label': 'Yearly Airline Delay Report', 'value': 'OPT2'}],
placeholder='Select a report type',
style={'width':'80%', 'padding':'3px', 'font-size': '20px', 'text-align-last' : 'center'})
# Place them next to each other using the division style
], style={'display':'flex'}),
# Add next division
html.Div([
# Create an division for adding dropdown helper text for choosing year
html.Div(
[
html.H2('Choose Year:', style={'margin-right': '2em'})
]
),
dcc.Dropdown(id='input-year',
# Update dropdown values using list comphrehension
options=[{'label': i, 'value': i} for i in year_list],
placeholder="Select a year",
style={'width':'80%', 'padding':'3px', 'font-size': '20px', 'text-align-last' : 'center'}),
# Place them next to each other using the division style
], style={'display': 'flex'}),
]),
# Add Computed graphs
# REVIEW3: Observe how we add an empty division and providing an id that will be updated during callback
html.Div([ ], id='plot1'),
html.Div([
html.Div([ ], id='plot2'),
html.Div([ ], id='plot3')
], style={'display': 'flex'}),
# TASK3: Add a division with two empty divisions inside. See above disvision for example.
# Enter your code below. Make sure you have correct formatting.
html.Div([
html.Div([ ], id='plot4'),
html.Div([ ], id='plot5')
], style={'display': 'flex'}),
])
# Callback function definition
# TASK4: Add 5 ouput components
# Enter your code below. Make sure you have correct formatting.
@app.callback( [Output(component_id='plot1', component_property='children')],
[Output('plot2','children'),
Output('plot3','children'),
Output('plot4','children'),
Output('plot5','children')],
[Input(component_id='input-type', component_property='value'),
Input(component_id='input-year', component_property='value')],
# REVIEW4: Holding output state till user enters all the form information. In this case, it will be chart type and year
[State("plot1", 'children'), State("plot2", "children"),
State("plot3", "children"), State("plot4", "children"),
State("plot5", "children")
])
# Add computation to callback function and return graph
def get_graph(chart, year, children1, children2, c3, c4, c5):
# Select data
df = airline_data[airline_data['Year']==int(year)]
if chart == 'OPT1':
# Compute required information for creating graph from the data
bar_data, line_data, div_data, map_data, tree_data = compute_data_choice_1(df)
# Number of flights under different cancellation categories
bar_fig = px.bar(bar_data, x='Month', y='Flights', color='CancellationCode', title='Monthly Flight Cancellation')
# TASK5: Average flight time by reporting airline
# Enter your code below. Make sure you have correct formatting.
line_fig = px.line(line_data, x='Month', y='AirTime', color='Reporting Airline', title='Average monthly flight time (minutes) by airline')
# Percentage of diverted airport landings per reporting airline
pie_fig = px.pie(div_data, values='Flights', names='Reporting_Airline', title='% of flights by reporting airline')
# REVIEW5: Number of flights flying from each state using choropleth
map_fig = px.choropleth(map_data, # Input data
locations='OriginState',
color='Flights',
hover_data=['OriginState', 'Flights'],
locationmode = 'USA-states', # Set to plot as US States
color_continuous_scale='GnBu',
range_color=[0, map_data['Flights'].max()])
map_fig.update_layout(
title_text = 'Number of flights from origin state',
geo_scope='usa') # Plot only the USA instead of globe
# TASK6: Number of flights flying to each state from each reporting airline
# Enter your code below. Make sure you have correct formatting.
tree_fig = px.treemap(tree_data, path=['DestState', 'Reporting_Airline'],
values='Flights',
color='Flights',
color_continuous_scale='RdBu',
title='Flight count by airline to destination state'
)
# REVIEW6: Return dcc.Graph component to the empty division
return [dcc.Graph(figure=tree_fig),
dcc.Graph(figure=pie_fig),
dcc.Graph(figure=map_fig),
dcc.Graph(figure=bar_fig),
dcc.Graph(figure=line_fig)
]
else:
# REVIEW7: This covers chart type 2 and we have completed this exercise under Flight Delay Time Statistics Dashboard section
# Compute required information for creating graph from the data
avg_car, avg_weather, avg_NAS, avg_sec, avg_late = compute_data_choice_2(df)
# Create graph
carrier_fig = px.line(avg_car, x='Month', y='CarrierDelay', color='Reporting_Airline', title='Average carrrier delay time (minutes) by airline')
weather_fig = px.line(avg_weather, x='Month', y='WeatherDelay', color='Reporting_Airline', title='Average weather delay time (minutes) by airline')
nas_fig = px.line(avg_NAS, x='Month', y='NASDelay', color='Reporting_Airline', title='Average NAS delay time (minutes) by airline')
sec_fig = px.line(avg_sec, x='Month', y='SecurityDelay', color='Reporting_Airline', title='Average security delay time (minutes) by airline')
late_fig = px.line(avg_late, x='Month', y='LateAircraftDelay', color='Reporting_Airline', title='Average late aircraft delay time (minutes) by airline')
return[dcc.Graph(figure=carrier_fig),
dcc.Graph(figure=weather_fig),
dcc.Graph(figure=nas_fig),
dcc.Graph(figure=sec_fig),
dcc.Graph(figure=late_fig)]
# Run the app
if __name__ == '__main__':
app.run_server(debug=True, use_reloader=False)
您的代码中有两个错别字:
id='input-type'
下拉列表的选项列表中,第一个选项的值设置为'.OPT1'
而不是'OPT1'
,这就是为什么回调总是返回对应于'OPT2'
,即它总是返回折线图。'OPT1'
下的line_fig
定义中, color
设置为'Reporting Airline'
而不是'Reporting_Airline'
。 另请注意,没有必要在回调中包含 ' children
'plot1'
、 'plot2'
、 'plot3'
、 'plot4'
和'plot5'
作为State
的子级。
更新代码:
# Import required libraries
import pandas as pd
import dash
import dash_html_components as html
import dash_core_components as dcc
from dash.dependencies import Input, Output
import plotly.express as px
# Create a dash application
app = dash.Dash(__name__)
# Clear the layout and do not display exception till callback gets executed
app.config.suppress_callback_exceptions = True
# Read the airline data into pandas dataframe
airline_data = pd.read_csv(
'https://cf-courses-data.s3.us.cloud-object-storage.appdomain.cloud/IBMDeveloperSkillsNetwork-DV0101EN-SkillsNetwork/Data%20Files/airline_data.csv',
encoding='ISO-8859-1',
dtype={'Div1Airport': str, 'Div1TailNum': str, 'Div2Airport': str, 'Div2TailNum': str}
)
# List of years
year_list = [i for i in range(2005, 2021, 1)]
def compute_data_choice_1(df):
'''
Function that takes airline data as input and create 5 dataframes based on the grouping condition to be used for plottling charts and grphs.
Argument:
df: Filtered dataframe
Returns:
Dataframes to create graph.
'''
# Cancellation Category Count
bar_data = df.groupby(['Month', 'CancellationCode'])['Flights'].sum().reset_index()
# Average flight time by reporting airline
line_data = df.groupby(['Month', 'Reporting_Airline'])['AirTime'].mean().reset_index()
# Diverted Airport Landings
div_data = df[df['DivAirportLandings'] != 0.0]
# Source state count
map_data = df.groupby(['OriginState'])['Flights'].sum().reset_index()
# Destination state count
tree_data = df.groupby(['DestState', 'Reporting_Airline'])['Flights'].sum().reset_index()
return bar_data, line_data, div_data, map_data, tree_data
def compute_data_choice_2(df):
'''
This function takes in airline data and selected year as an input and performs computation for creating charts and plots.
Arguments:
df: Input airline data.
Returns:
Computed average dataframes for carrier delay, weather delay, NAS delay, security delay, and late aircraft delay.
'''
avg_car = df.groupby(['Month', 'Reporting_Airline'])['CarrierDelay'].mean().reset_index()
avg_weather = df.groupby(['Month', 'Reporting_Airline'])['WeatherDelay'].mean().reset_index()
avg_NAS = df.groupby(['Month', 'Reporting_Airline'])['NASDelay'].mean().reset_index()
avg_sec = df.groupby(['Month', 'Reporting_Airline'])['SecurityDelay'].mean().reset_index()
avg_late = df.groupby(['Month', 'Reporting_Airline'])['LateAircraftDelay'].mean().reset_index()
return avg_car, avg_weather, avg_NAS, avg_sec, avg_late
# Application layout
app.layout = html.Div(children=[
html.H1(
children='US Domestic Airline Flights Performance',
style={'textAlign': 'center', 'color': '#503D36', 'font-size': 40}
),
html.Div([
html.Div([
html.H2('Report Type:', style={'margin-right': '2em'}),
dcc.Dropdown(
id='input-type',
options=[
{'label': 'Yearly Airline Performance Report', 'value': 'OPT1'},
{'label': 'Yearly Airline Delay Report', 'value': 'OPT2'}
],
value='OPT1',
placeholder='Select a report type',
style={'width': '80%', 'padding': '3px', 'font-size': '20px', 'text-align-last': 'center'}
)
], style={'display': 'flex'}),
html.Div([
html.H2('Choose Year:', style={'margin-right': '2em'}),
dcc.Dropdown(
id='input-year',
options=[{'label': i, 'value': i} for i in year_list],
value=year_list[0],
placeholder='Select a year',
style={'width': '80%', 'padding': '3px', 'font-size': '20px', 'text-align-last': 'center'}
),
], style={'display': 'flex'}),
]),
html.Div(id='plot1'),
html.Div(
children=[
html.Div(id='plot2'),
html.Div(id='plot3')
],
style={'display': 'flex'}
),
html.Div(
children=[
html.Div(id='plot4'),
html.Div(id='plot5')
],
style={'display': 'flex'}
),
])
@app.callback([Output('plot1', 'children')],
[Output('plot2', 'children'),
Output('plot3', 'children'),
Output('plot4', 'children'),
Output('plot5', 'children')],
[Input('input-type', 'value'),
Input('input-year', 'value')])
def get_graph(chart, year):
df = airline_data[airline_data['Year'] == int(year)]
if chart == 'OPT1':
bar_data, line_data, div_data, map_data, tree_data = compute_data_choice_1(df)
bar_fig = px.bar(bar_data,
x='Month',
y='Flights',
color='CancellationCode',
title='Monthly Flight Cancellation')
line_fig = px.line(line_data,
x='Month',
y='AirTime',
color='Reporting_Airline',
title='Average monthly flight time (minutes) by airline')
pie_fig = px.pie(div_data,
values='Flights',
names='Reporting_Airline',
title='% of flights by reporting airline')
map_fig = px.choropleth(map_data,
locations='OriginState',
color='Flights',
hover_data=['OriginState', 'Flights'],
locationmode='USA-states',
color_continuous_scale='GnBu',
range_color=[0, map_data['Flights'].max()])
map_fig.update_layout(title_text='Number of flights from origin state',
geo_scope='usa')
tree_fig = px.treemap(tree_data, path=['DestState', 'Reporting_Airline'],
values='Flights',
color='Flights',
color_continuous_scale='RdBu',
title='Flight count by airline to destination state')
return [dcc.Graph(figure=tree_fig),
dcc.Graph(figure=pie_fig),
dcc.Graph(figure=map_fig),
dcc.Graph(figure=bar_fig),
dcc.Graph(figure=line_fig)]
else:
avg_car, avg_weather, avg_NAS, avg_sec, avg_late = compute_data_choice_2(df)
carrier_fig = px.line(avg_car,
x='Month',
y='CarrierDelay',
color='Reporting_Airline',
title='Average carrrier delay time (minutes) by airline')
weather_fig = px.line(avg_weather,
x='Month',
y='WeatherDelay',
color='Reporting_Airline',
title='Average weather delay time (minutes) by airline')
nas_fig = px.line(avg_NAS,
x='Month',
y='NASDelay',
color='Reporting_Airline',
title='Average NAS delay time (minutes) by airline')
sec_fig = px.line(avg_sec,
x='Month',
y='SecurityDelay',
color='Reporting_Airline',
title='Average security delay time (minutes) by airline')
late_fig = px.line(avg_late,
x='Month',
y='LateAircraftDelay',
color='Reporting_Airline',
title='Average late aircraft delay time (minutes) by airline')
return [dcc.Graph(figure=carrier_fig),
dcc.Graph(figure=weather_fig),
dcc.Graph(figure=nas_fig),
dcc.Graph(figure=sec_fig),
dcc.Graph(figure=late_fig)]
if __name__ == '__main__':
app.run_server(debug=True, host='127.0.0.1')
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