7

I would like to read a .csv file and return a groupby function as a callback to be displayed as a simple data table with "dash_table" library. @Lawliet's helpful answer shows how to do that with "dash_table_experiments" library. Here is where I’m stuck:

import pandas as pd
import dash
import dash_core_components as dcc
import dash_html_components as html
import dash_table
from dash.dependencies import Input, Output, State

df = pd.read_csv(
        'https://gist.githubusercontent.com/chriddyp/'
        'c78bf172206ce24f77d6363a2d754b59/raw/'
        'c353e8ef842413cae56ae3920b8fd78468aa4cb2/'
        'usa-agricultural-exports-2011.csv')

app = dash.Dash()
application = app.server

app.layout = html.Div([
    dash_table.DataTable(
        id = 'datatable',        
    ),

    html.Div([
        html.Button(id='submit-button',                
                children='Submit'
    )
    ]),    

])

@app.callback(Output('datatable','data'),
            [Input('submit-button','n_clicks')],
                [State('submit-button','n_clicks')])

def update_datatable(n_clicks,csv_file):            
    if n_clicks:                            
        dfgb = df.groupby(['state']).sum()
        return dfgb.to_dict('rows')

if __name__ == '__main__':
    application.run(debug=False, port=8080)

3 Answers 3

26
+100

When you are trying to register the callback Output component as a DataTable, all the required / mandatory attributes for the DataTable component should be updated in the callback and returned. In your code, you are updating just DataTable.data and not DataTable.column, one easy way is to return the whole Datatable component which is prepopulated with all the required attribute values.

Here is an example,

import dash_html_components as html
import dash_core_components as dcc
import dash
import dash_table
import pandas as pd
import dash_table_experiments as dt

app = dash.Dash(__name__)

#data to be loaded
data = [['Alex',10],['Bob',12],['Clarke',13],['Alex',100]]
df = pd.DataFrame(data,columns=['Name','Mark'])

app.layout = html.Div([
    dt.DataTable(
            rows=df.to_dict('records'),
            columns=df.columns,
            row_selectable=True,
            filterable=True,
            sortable=True,
            selected_row_indices=list(df.index),  # all rows selected by default
            id='2'
     ),
    html.Button('Submit', id='button'),
    html.Div(id="div-1"),
])


@app.callback(
    dash.dependencies.Output('div-1', 'children'),
    [dash.dependencies.Input('button', 'n_clicks')])
def update_output(n_clicks):

    df_chart = df.groupby('Name').sum()

    return [
        dt.DataTable(
            rows=df_chart.to_dict('rows'),
            columns=df_chart.columns,
            row_selectable=True,
            filterable=True,
            sortable=True,
            selected_row_indices=list(df_chart.index),  # all rows selected by default
            id='3'
        )
    ]

if __name__ == '__main__':
    app.run_server(debug=True)

Looks like dash-table-experiments is deprecated.

Edit 1: Here is one way of how it can be achieved using dash_tables

import pandas as pd
import dash
import dash_core_components as dcc
import dash_html_components as html
import dash_table as dt
from dash.dependencies import Input, Output, State

df = pd.read_csv(
        'https://gist.githubusercontent.com/chriddyp/'
        'c78bf172206ce24f77d6363a2d754b59/raw/'
        'c353e8ef842413cae56ae3920b8fd78468aa4cb2/'
        'usa-agricultural-exports-2011.csv')

app = dash.Dash()
application = app.server

app.layout = html.Div([
    dt.DataTable(
        id = 'dt1', 
        columns =  [{"name": i, "id": i,} for i in (df.columns)],

    ),
    html.Div([
        html.Button(id='submit-button',                
                children='Submit'
        )
    ]),    

])

@app.callback(Output('dt1','data'),
            [Input('submit-button','n_clicks')],
                [State('submit-button','n_clicks')])

def update_datatable(n_clicks,csv_file):            
    if n_clicks:                            
        dfgb = df.groupby(['state']).sum()
        data_1 = df.to_dict('rows')
        return data_1

if __name__ == '__main__':
    application.run(debug=False, port=8080)

Another way: return the whole DataTable

import pandas as pd
import dash
import dash_core_components as dcc
import dash_html_components as html
import dash_table as dt
from dash.dependencies import Input, Output, State

df = pd.read_csv(
        'https://gist.githubusercontent.com/chriddyp/'
        'c78bf172206ce24f77d6363a2d754b59/raw/'
        'c353e8ef842413cae56ae3920b8fd78468aa4cb2/'
        'usa-agricultural-exports-2011.csv')

app = dash.Dash()
application = app.server

app.layout = html.Div([
    html.Div(id="table1"),

    html.Div([
        html.Button(id='submit-button',                
                children='Submit'
    )
    ]),    

])

@app.callback(Output('table1','children'),
            [Input('submit-button','n_clicks')],
                [State('submit-button','n_clicks')])

def update_datatable(n_clicks,csv_file):            
    if n_clicks:                            
        dfgb = df.groupby(['state']).sum()
        data = df.to_dict('rows')
        columns =  [{"name": i, "id": i,} for i in (df.columns)]
        return dt.DataTable(data=data, columns=columns)


if __name__ == '__main__':
    application.run(debug=False, port=8080)


I referred to this example: https://github.com/plotly/dash-table/blob/master/tests/cypress/dash/v_copy_paste.py#L33

5
  • Thanks @Lawliet. I'm sorry I wasn't more clear in my question, I've edited it, I'm trying to return the groupby table using "dash_table" not "dash_table_experiments". I suppose I can just use dash_table_experiments instead though, as your example shows.
    – sparrow
    Mar 26, 2019 at 14:41
  • 1
    Thanks @Lawliet! Your solution works for returning dfgb, you just forgot to return that from the callback in your example, should be: data = dfgb.to_dict('rows')
    – sparrow
    Mar 26, 2019 at 18:37
  • A quick (optional) follow up question :). Do you know how to give the datatable the ability to be copied to the clipboard when it's contents are highlighted with the mouse, then ctrl+C?
    – sparrow
    Mar 26, 2019 at 18:38
  • 1
    @sparrow Shift and mouse clicks (or Shift and arrows) will let you highlight and Ctlr+C will copy to clipboard. This functionality exist by default. Mar 27, 2019 at 3:20
  • @Lawliet, i have a similar question here: stackoverflow.com/questions/60556896/…, if you are free, please drop by and have a look, thank you.
    – yts61
    Mar 6, 2020 at 9:00
2

You almost got it done just with minor modification in update_datatable it should work fine (not tested):

def update_datatable(n_clicks,csv_file):            
    if n_clicks:                            
        dfgb = df.groupby(['state']).sum()
        return html.Div([dash_table.DataTable(
                data=dfgb.to_dict('rows'),
                columns=[{'name': i, 'id': i} for i in dfgb.columns],
                style_header={'backgroundColor': "#FFD700",
                              'fontWeight': 'bold',
                              'textAlign': 'center',},
                style_table={'overflowX': 'scroll'},  
                style_cell={'minWidth': '180px', 'width': '180px',
                        'maxWidth': '180px','whiteSpace': 'normal'},                        
                         filtering=True,
                 row_selectable="multi",
                 n_fixed_rows=1),
               html.Hr()
        ])
2
  • Thanks! that works. A quick (optional) follow up question :). Do you know how to give the datatable the ability to be copied to the clipboard when it's contents are highlighted with the mouse, then ctrl+C?
    – sparrow
    Mar 26, 2019 at 18:54
  • @shivsn i have a similary question here: stackoverflow.com/questions/60556896/…, if you are free, please drop by and have a look, thank you.
    – yts61
    Mar 6, 2020 at 9:00
0

As of 2024-05-21 with Python 3.12.3, Pandas 2.2.2 and Dash 2.16.1 the correct syntax is:

import pandas as pd
from dash import callback, Dash, dash_table, html, Input, Output, State

df = pd.read_csv(
        'https://gist.githubusercontent.com/chriddyp/'
        'c78bf172206ce24f77d6363a2d754b59/raw/'
        'c353e8ef842413cae56ae3920b8fd78468aa4cb2/'
        'usa-agricultural-exports-2011.csv')

app=Dash(__name__, title="IHK-Arbeitskräfteradar") 

app.layout = html.Div([
    html.Div(id="table1"),

    html.Div([
        html.Button(id='submit-button',                
                children='Submit'
    )
    ]),    

])

@callback(
    Output('table1','children'),
    Input('submit-button','n_clicks'),
    State('submit-button','n_clicks'),
)

def update_datatable(n_clicks,csv_file):            
    if n_clicks:                            
        dfgb = df.groupby(['state']).sum()
        data = df.to_dict('records')
        columns =  [{"name": i, "id": i,} for i in (df.columns)]
        return dash_table.DataTable(data=data, columns=columns)
        return dash_table.DataTable(data=data)

if __name__ == '__main__':
    app.run(debug=True)

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