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I am using Python 3.6 in Spyder and try to plot a graph with the plotly offline library. Anyways I have some missing dates in my csv-file and I think they cause the problem you can see in the attached screenshot. enter image description here

Here is my python code:

from plotly.offline import plot
import plotly.graph_objs as go

import pandas as pd

df = pd.read_csv('H://python/final_mk_output_regression.csv')

data = [go.Scatter(
          x=df.MESS_DATUM,
          y=df['sum_meal'])]

plot(data)

I can not get a correct graph. For example the part before May is very confusing. I have missing dates in my csv-file from 18th April until 30th April which maybe cause this problem. How can I solve this problem?

7
  • Your data is messy, or the format with which the mixes read it, for me it is the first case.
    – eyllanesc
    Dec 11 '17 at 8:38
  • I forgot to mention that I already checked my data with a count. I have no duplicate dates in my file.
    – adama
    Dec 11 '17 at 8:44
  • 1
    share the file to review it
    – eyllanesc
    Dec 11 '17 at 8:56
  • show your code.
    – eyllanesc
    Dec 11 '17 at 9:34
  • sorry, edited my post with the source code
    – adama
    Dec 11 '17 at 9:37
2

Simply add type="category" to the code. Here we go:

#PRINT DATA
data = [go.Scatter(
                x=df.MESS_DATUM,
                y=df['sum_meal'])]
layout = dict(
                title="timeline meal orders",
                xaxis = dict(
                type="category"))
fig = dict(data=data, layout=layout)
plot(fig, filename="overview")
1

Only adding type='categry' wouldn't help because it will give unsorted date and time. You will also need to add categoryorder='category ascending'.

Here is the modified code:

data = [go.Scatter(
            x=df.MESS_DATUM,
            y=df['sum_meal'])]

layout = dict(
            title="timeline meal orders",
            xaxis = dict(
            type="category", 
            categoryorder='category ascending'))

fig = dict(data=data, layout=layout)
plot(fig, filename="overview")

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