示例#1
0
def polynomial():
    """ Very simple embedding of a polynomial chart

    """

    # Grab the inputs arguments from the URL
    args = flask.request.args

    # Get all the form arguments in the url with defaults
    color = getitem(args, 'color', 'Black')
    _from = int(getitem(args, '_from', 0))
    to = int(getitem(args, 'to', 10))

    # Create a polynomial line graph with those arguments
    x = list(range(_from, to + 1))
    fig = figure(title="Polynomial")
    fig.line(x, [i ** 2 for i in x], color=colors[color], line_width=2)

    resources = INLINE.render()

    script, div = components(fig)
    html = flask.render_template(
        'embed.html',
        plot_script=script,
        plot_div=div,
        resources=resources,
        color=color,
        _from=_from,
        to=to
    )
    return encode_utf8(html)
示例#2
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        {{ script }}
        <style>
            .embed-wrapper {
                display: flex;
                justify-content: space-evenly;
            }
        </style>
    </head>
    <body>
        <div class="embed-wrapper">
            {% for key in div.keys() %}
                {{ div[key] }}
            {% endfor %}
        </div>
    </body>
</html>
''')

resources = INLINE.render()

filename = 'embed_multiple.html'

html = template.render(resources=resources,
                       script=script,
                       div=div)

with io.open(filename, mode='w', encoding='utf-8') as f:
    f.write(html)

view(filename)
示例#3
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        <title>Bokeh Scatter Plots</title>
        {{ resources }}
        {{ script }}
        <style>
            .embed-wrapper {
                display: flex;
                justify-content: space-evenly;
            }
        </style>
    </head>
    <body>
        <div class="embed-wrapper">
            {% for key in div.keys() %}
                {{ div[key] }}
            {% endfor %}
        </div>
    </body>
</html>
''')

resources = INLINE.render()

filename = 'embed_multiple.html'

html = template.render(resources=resources, script=script, div=div)

with io.open(filename, mode='w', encoding='utf-8') as f:
    f.write(html)

view(filename)
示例#4
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def usptoPlot(uspto_final, orgName):

    uspto_dict = dict()
    uspto_dict['application'] = 0
    uspto_dict['grant'] = 1

    uspto_final = uspto_final.drop_duplicates([
        '_version_', 'applicationDate', 'applicationNumber', 'applicationType',
        'documentId', 'documentType', 'productionDate', 'publicationDate',
        'title', 'year'
    ])

    uspto_final['year'] = uspto_final['year'].astype('int')
    uspto_final['type_ind'] = uspto_final['documentType'].apply(
        lambda x: uspto_dict[x])

    source_2 = ColumnDataSource(data=uspto_final)

    tooltips_2 = [("Title", "<strong>@title</strong>"),
                  ("Application Date", "@applicationDate"),
                  ("Application Type", "@applicationType"),
                  ("Document Type", "@documentType"),
                  ("Patent Number", "@patentNumber"),
                  ("Publication Date", "@publicationDate"), ("year", "@year")]

    grant_types = ['application', 'grant']

    p = figure(title=orgName + ' PATENTS',
               y_axis_label='YEAR',
               x_axis_label='PATENT',
               y_range=(int(uspto_final.year.min()) - 1,
                        int(uspto_final.year.max()) + 1),
               x_range=grant_types,
               tooltips=tooltips_2,
               tools=['hover', 'tap'],
               plot_width=500,
               plot_height=550)

    url = "@pdfPath"
    taptool = p.select(type=TapTool)
    taptool.callback = OpenURL(url=url)

    color_mapper = CategoricalColorMapper(factors=list(
        uspto_final['title'].unique()),
                                          palette=all_palettes['Set1'][9])

    p.scatter(x='documentType',
              y=jitter('year', 0.5),
              size=10,
              source=source_2,
              alpha=0.5,
              color={
                  'field': 'title',
                  'transform': color_mapper
              })

    p.title.text_font_size = "18pt"
    p.xaxis.axis_label_text_font_size = "16pt"
    p.yaxis.axis_label_text_font_size = "16pt"
    p.xaxis.major_label_text_font_size = "12pt"
    p.yaxis.major_label_text_font_size = "12pt"
    p.toolbar.logo = None
    p.toolbar_location = None

    source, div = components(p)
    resources = INLINE.render()

    return p
示例#5
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def plot_tweets(tweets, sentiment_scores):
            """
            Create a histogram-style barplot of tweets and their sentiment.
            Return a bokeh plot object, expressed as a tuple of (resources, script, div).
            Where :
                resources: some CSS, etc. that goes in the head of the webpage for styling the plot.
                script:   javascript for the plot to function.  expressed as string.
                div:      html div container for the plot. expressed as string.
            """

            # Sort tweets from negative to positive.
            # This step is not strictly necessary, but makes it easier to see the overall shape of the data.
            sorted_indices = np.argsort(sentiment_scores)
            sentiment_scores = np.array(sentiment_scores)[sorted_indices]
            tweets = np.array(tweets)[sorted_indices]

            # Express the data as a bokeh data source object.
            source = ColumnDataSource(data={
                "text": tweets,
                "sentiment": sentiment_scores,
                "x": np.arange(len(tweets)),
            })

            """ 
            Create plot. 
            """

            # Create plot object.
            width = 0.9
            p = figure(x_axis_label="Tweet", y_axis_label="Sentiment (0 = Neutral)")
            p.vbar(source=source, x="x", top="sentiment", width=width)

            # Add hover tool, allowing mouseover to view text and sentiment.
            hover = HoverTool(
                tooltips=[
                    ("text", "@text"),
                    ("sentiment", "@sentiment")
                ],
                formatters={
                    "text": "printf",
                    "sentiment": "printf"
                },
                mode="vline"
            )
            p.add_tools(hover)

            """
            Format plot.
            """

            # axis font size
            p.xaxis.axis_label_text_font_size = "15pt"
            p.yaxis.axis_label_text_font_size = "15pt"

            # remove tick marks from axes
            p.xaxis.major_tick_line_color = None
            p.xaxis.minor_tick_line_color = None
            p.yaxis.major_tick_line_color = None
            p.yaxis.minor_tick_line_color = None

            # adjust plot width, height
            scale = 1.5
            p.plot_height = int(250 * scale)
            p.plot_width = int(450 * scale)

            # remove toolbar (e.g. move, resize, etc) from right of plot.
            p.toolbar.logo = None
            p.toolbar_location = None

            # remove gridlines
            p.xgrid.visible = False
            p.ygrid.visible = False

            # remove x axis tick labels (done by setting label fontsize to 0 pt)
            p.xaxis.major_label_text_font_size = '0pt'

            """
            Export plot
            """

            # Create resources string, which is CSS, etc. that goes in the head of
            resources = INLINE.render()

            # Get javascript (script) and HTML div (div) for the plot.
            script, div = components(p)

            return (resources, script, div)
示例#6
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    def modify_doc(cls):
        TOOLS = "pan,wheel_zoom,box_zoom,reset,save"
        season = Season()
        seasons_1990_on = season.seasons_1990_on

        data_dict = seasons_1990_on.to_dict('list')

        source = ColumnDataSource(data=data_dict)

        slider = Slider(title="Year", start=1990, end=2017, step=1, value=2006)
        menu_options_list = ["ALL"] + seasons_1990_on["Tm"].unique().tolist()
        team_menu = Select(options=menu_options_list,
                           value="ALL",
                           title="Team")
        columns = list(seasons_1990_on.columns)
        x_axis_menu = Select(options=columns, value="3PA", title="X Axis")
        y_axis_menu = Select(options=columns, value="3P", title="Y Axis")

        palette = season.get_palette()
        color_mapper = CategoricalColorMapper(
            factors=seasons_1990_on["Tm"].unique().tolist(), palette=palette)

        TOOLS = "pan,wheel_zoom,box_zoom,reset,save"
        p1 = figure(x_axis_label="3 Points Attempted",
                    y_axis_label="3 Points Made",
                    tools=TOOLS)

        ###################
        p1.circle(
            "X",
            "Y",
            source=source,
            alpha=0.8,
            nonselection_alpha=0.1,
        )

        p1.legend.location = "bottom_right"
        ####################

        ####################

        #######################
        cls.add_tooltips(p1)

        column1 = column(widgetbox(team_menu), widgetbox(slider),
                         widgetbox(x_axis_menu), widgetbox(y_axis_menu))
        layout = row(column1, p1)
        args = {
            'source': source,
            'data_dict': data_dict,
            'team_menu': team_menu,
            'slider': slider,
            'x_axis_menu': x_axis_menu,
            'y_axis_menu': y_axis_menu
        }

        callback = CustomJS(args=args,
                            code="""

            data_copy = JSON.parse(JSON.stringify(data_dict))
            console.log(data_copy, "<-- Here is data copy");
            if (team_menu.value === "ALL") {
                console.log("What's up. I am ALL");
            }

            source.change.emit();
        """)

        x_axis_menu.js_on_change('value', callback)

        resources = INLINE.render()

        script, div = components({'p': layout})

        return {'script': script, 'div': div, 'resources': resources}

        def callback(attr, old, new):
            if menu.value == "ALL":
                new_df = seasons_1990_on[seasons_1990_on['Year'] ==
                                         slider.value]
                new_x = new_df[x_axis_menu.value]
                new_y = new_df[y_axis_menu.value]

            else:
                new_df = seasons_1990_on[
                    (seasons_1990_on['Year'] == slider.value)
                    & (seasons_1990_on['Tm'] == menu.value)]
                new_x = new_df[x_axis_menu.value]
                new_y = new_df[y_axis_menu.value]

            source.data['X'] = new_x
            source.data['Y'] = new_y

            new_df['X'] = new_x
            new_df['Y'] = new_y

            tooltips = [("Players", "@Player"),
                        (x_axis_menu.value, "@{}".format(x_axis_menu.value))(
                            y_axis_menu.value,
                            "@{}".format(y_axis_menu.value))]

            source.data = new_df

            cls.add_tooltips(plot=p1, tooltips=tooltips)

            print("Here is x", new_x)
            print("Here is y", new_y)
            print("Here is y name", new_y.name)
            p1.xaxis.axis_label = new_x.name
            p1.yaxis.axis_label = new_y.name

        slider.on_change("value", callback)
        menu.on_change("value", callback)
        x_axis_menu.on_change("value", callback)
        y_axis_menu.on_change("value", callback)