Line Charts in Julia

How to make line charts in Julia with Plotly. Examples on creating and styling line charts in Julia with Plotly.


Line Plots with DataFrames

For more examples of line plots, see the line and scatter notebook.

using PlotlyJS, CSV, DataFrames
df = dataset(DataFrame, "gapminder")
dfCan = df[df.country .== "Canada", :]
plot(dfCan, kind="scatter", mode="lines", x=:year, y=:lifeExp, Layout(title="Life expectancy in Canada"))

Line Plots with column encoding color

using PlotlyJS, CSV, DataFrames

df = dataset(DataFrame, "gapminder")
dfCan = df[df.continent .== "Oceania", :]
plot(dfCan, kind="scatter", mode="lines", x=:year, y=:lifeExp, group=:country)

Data Order in Line Charts

Plotly line charts are implemented as connected scatterplots (see below), meaning that the points are plotted and connected with lines in the order they are provided, with no automatic reordering.

This makes it possible to make charts like the one below, but also means that it may be required to explicitly sort data before passing it to Plotly to avoid lines moving "backwards" across the chart.

using PlotlyJS, DataFrames

df = DataFrame(
    x=[1, 3, 2, 4],
    y=[1, 2, 3, 4],
)
p1 = plot(df, x=:x, y=:y, Layout(title="Unsorted Input"))

p2 = plot(sort(df, :x), x=:x, y=:y, Layout(title="Sorted Input"))

[p1; p2]

Connected Scatterplots

In a connected scatterplot, two continuous variables are plotted against each other, with a line connecting them in some meaningful order, usually a time variable. In the plot below, we show the "trajectory" of a pair of countries through a space defined by GDP per Capita and Life Expectancy. Botswana's life expectancy

using PlotlyJS, CSV, DataFrames

df_full = dataset(DataFrame, "gapminder")
df = df_full[in.(df_full.country, Ref(["Canada", "Botswana"])), :]

plot(
    df,
    x=:lifeExp, y=:gdpPercap, color=:country, text=:year,
    textposition="bottom right", mode="markers+lines+text"
)

Line charts with markers

The mode argument can be set to markers+lines to show markers on lines.

using PlotlyJS, CSV, DataFrames

df_full = dataset(DataFrame, "gapminder")
df = df_full[df_full.continent .== "Oceania", :]

plot(
    df, mode="markers+lines",
    x=:year, y=:lifeExp, color=:country
)

Line Plot Modes

using PlotlyJS

N = 100
random_x = range(0, stop=1, length=N)
random_y0 = randn(N) .+ 5
random_y1 = randn(N)
random_y2 = randn(N) .- 5

# Create traces
trace1 = scatter(x=random_x, y=random_y0,
                    mode="lines",
                    name="lines")
trace2 = scatter(x=random_x, y=random_y1,
                    mode="lines+markers",
                    name="lines+markers")
trace3 = scatter(x=random_x, y=random_y2,
                    mode="markers", name="markers")

plot([trace1, trace2, trace3])

Style Line Plots

This example styles the color and dash of the traces, adds trace names, modifies line width, and adds plot and axes titles.

using PlotlyJS

# Add data
month = ["January", "February", "March", "April", "May", "June", "July",
         "August", "September", "October", "November", "December"]
high_2000 = [32.5, 37.6, 49.9, 53.0, 69.1, 75.4, 76.5, 76.6, 70.7, 60.6, 45.1, 29.3]
low_2000 = [13.8, 22.3, 32.5, 37.2, 49.9, 56.1, 57.7, 58.3, 51.2, 42.8, 31.6, 15.9]
high_2007 = [36.5, 26.6, 43.6, 52.3, 71.5, 81.4, 80.5, 82.2, 76.0, 67.3, 46.1, 35.0]
low_2007 = [23.6, 14.0, 27.0, 36.8, 47.6, 57.7, 58.9, 61.2, 53.3, 48.5, 31.0, 23.6]
high_2014 = [28.8, 28.5, 37.0, 56.8, 69.7, 79.7, 78.5, 77.8, 74.1, 62.6, 45.3, 39.9]
low_2014 = [12.7, 14.3, 18.6, 35.5, 49.9, 58.0, 60.0, 58.6, 51.7, 45.2, 32.2, 29.1]

# Create and style traces
trace1 = scatter(x=month, y=high_2014, name="High 2014",
                         line=attr(color="firebrick", width=4))
trace2 = scatter(x=month, y=low_2014, name = "Low 2014",
                         line=attr(color="royalblue", width=4))
trace3 = scatter(x=month, y=high_2007, name="High 2007",
                         line=attr(color="firebrick", width=4,
                              dash="dash") # dash options include "dash", "dot", and "dashdot"
)
trace4 = scatter(x=month, y=low_2007, name="Low 2007",
                         line = attr(color="royalblue", width=4, dash="dash"))
trace5 = scatter(x=month, y=high_2000, name="High 2000",
                         line = attr(color="firebrick", width=4, dash="dot"))
trace6 = scatter(x=month, y=low_2000, name="Low 2000",
                         line=attr(color="royalblue", width=4, dash="dot"))


# Edit the layout
layout = Layout(title="Average High and Low Temperatures in New York",
                   xaxis_title="Month",
                   yaxis_title="Temperature (degrees F)")

plot([trace1 ,trace2, trace3, trace4, trace5, trace6], layout)

Connect Data Gaps

connectgaps determines if missing values in the provided data are shown as a gap in the graph or not. In this tutorial, we showed how to take benefit of this feature and illustrate multiple areas in mapbox.

using PlotlyJS

x = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15]

trace1 = scatter(
    x=x,
    y=[10, 20, nothing, 15, 10, 5, 15, nothing, 20, 10, 10, 15, 25, 20, 10],
    name = "<b>No</b> Gaps", # Style name/legend entry with html tags
    connectgaps=true # override default to connect the gaps
)
trace2 = scatter(
    x=x,
    y=[5, 15, nothing, 10, 5, 0, 10, nothing, 15, 5, 5, 10, 20, 15, 5],
    name="Gaps",
)

plot([trace1, trace2])

Interpolation with Line Plots

using PlotlyJS

x = [1, 2, 3, 4, 5]
y = [1, 3, 2, 3, 1]

trace1 = scatter(hoverinfo="text+name", mode="lines+markers", x=x, y=y, name="linear",
                    line_shape="linear")
trace2 = scatter(hoverinfo="text+name", mode="lines+markers", x=x, y=y .+ 5, name="spline",
                    text=["tweak line smoothness<br>with 'smoothing' in line object"],
                    line_shape="spline")
trace3 = scatter(hoverinfo="text+name", mode="lines+markers", x=x, y=y .+ 10, name="vhv",
                    line_shape="vhv")
trace4 = scatter(hoverinfo="text+name", mode="lines+markers", x=x, y=y .+ 15, name="hvh",
                    line_shape="hvh")
trace5 = scatter(hoverinfo="text+name", mode="lines+markers", x=x, y=y .+ 20, name="vh",
                    line_shape="vh")
trace6 = scatter(hoverinfo="text+name", mode="lines+markers", x=x, y=y .+ 25, name="hv",
                    line_shape="hv")

layout = Layout(legend=attr(y=0.5, traceorder="reversed", font_size=16))

plot([trace1, trace2, trace3, trace4, trace5, trace6], layout)

Label Lines with Annotations

using PlotlyJS

title = "Main Source for News"
labels = ["Television", "Newspaper", "Internet", "Radio"]
color_vec = ["rgb(67,67,67)", "rgb(115,115,115)", "rgb(49,130,189)", "rgb(189,189,189)"]

mode_size = [8, 8, 12, 8]
line_size = [2, 2, 4, 2]

x_data = [
    2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013
    2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013
    2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013
    2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013
]

y_data = [
    74 82 80 74 73 72 74 70 70 66 66 69
    45 42 50 46 36 36 34 35 32 31 31 28
    13 14 20 24 20 24 24 40 35 41 43 50
    18 21 18 21 16 14 13 18 17 16 19 23
]

function trace_for_row(i)
    t1 = scatter(x=x_data[i, :], y=y_data[i, :], mode="lines",
        name=labels[i],
        line=attr(color=color_vec[i], width=line_size[i]),
        connectgaps=true
    )
    t2 = scatter(
        x=[x_data[i, 1], x_data[i, end]],
        y=[y_data[i, 1], y_data[i, end]],
        mode="markers",
        marker=attr(color=color_vec[i], size=mode_size[i])
    )
    [t1, t2]
end
traces = vcat(map(trace_for_row, 1:4)...)

function labels_for_row(i)
    y = y_data[i, :]
    color = color_vec[i]
    label = labels[i]

    # labeling the left_side of the plot
    a_left = attr(
        xref="paper", x=0.05, y=y[1],
        xanchor="right", yanchor="middle",
        text=string(label, " $(y[end])%"),
        font=attr(family="Arial", size=16),
        showarrow=false
    )

    # labeling the right_side of the plot
    a_right = attr(
        xref="paper", x=0.95, y=y[end],
        xanchor="left", yanchor="middle",
        text="$(y[end])%",
        font=attr(family="Arial", size=16),
        showarrow=false
    )
    [a_left, a_right]
end
annotations = vcat(map(labels_for_row, 1:4)...)

# Title
a_title = attr(
    xref="paper", yref="paper", x=0.0, y=1.05,
    xanchor="left", yanchor="bottom",
    text="Main Source for News",
    font=attr(family="Arial", size=30, color="rgb(37,37,37)"),
    showarrow=false
)

# Source
a_source = attr(
    xref="paper", yref="paper", x=0.5, y=-0.1,
    xanchor="center", yanchor="top",
    text=string("Source: PewResearch Center & ", "Storytelling with data"),
    font=attr(family="Arial", size=12, color="rgb(150,150,150)"),
    showarrow=false
)

append!(annotations, [a_title, a_source])

layout = Layout(
    annotations=annotations,
    xaxis=attr(
        showline=true,
        showgrid=false,
        showticklabels=true,
        linecolor="rgb(204, 204, 204)",
        linewidth=2,
        ticks="outside",
        tickfont=attr(
            family="Arial",
            size=12,
            color="rgb(82, 82, 82)",
        ),
    ),
    yaxis=attr(
        showgrid=false,
        zeroline=false,
        showline=false,
        showticklabels=false,
    ),
    autosize=false,
    margin=attr(
        autoexpand=false,
        l=100,
        r=20,
        t=110,
    ),
    showlegend=false,
    plot_bgcolor="white"
)

plot(traces, layout)

Reference

See https://plotly.com/julia/reference/scatter/ for more information and chart attribute options!