Stocks example¶
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URL: http://bokeh.pydata.org/en/latest/docs/gallery/stocks.html
Most examples work across multiple plotting backends, this example is also available for:
In [1]:
import numpy as np
import pandas as pd
import holoviews as hv
from holoviews import opts
hv.extension('bokeh')
Defining the data¶
In [2]:
from holoviews.operation.timeseries import rolling
from bokeh.sampledata.stocks import AAPL, GOOG, IBM, MSFT
color_cycle = hv.Cycle(values=['#A6CEE3', '#B2DF8A','#33A02C', '#FB9A99'])
def get_curve(data, label=''):
df = pd.DataFrame(data)
df['date'] = df.date.astype('datetime64[ns]')
return hv.Curve(df, ('date', 'Date'), ('adj_close', 'Price'), label=label)
hv.Dimension.type_formatters[np.datetime64] = '%Y'
aapl = get_curve(AAPL, label='AAPL')
goog = get_curve(GOOG, label='GOOG')
ibm = get_curve(IBM, label='IBM')
msft = get_curve(MSFT, label='MSFT')
avg_curve = rolling(aapl, rolling_window=30).relabel('Average')
avg_scatter = hv.Scatter((np.array(AAPL['date'], dtype=np.datetime64), np.array(AAPL['adj_close'])),
('date', 'Date'), ('adj_close', 'Price'), label='close')
Plot¶
In [3]:
((aapl * goog * ibm * msft) + (avg_scatter * avg_curve)).opts(
opts.Curve(color=color_cycle),
opts.Curve('Curve.Average', color='navy'),
opts.Scatter(alpha=0.2, size=4, color='darkgrey'),
opts.Overlay(width=400, height=400, legend_position='top_left'))
Out[3]:
Download this notebook from GitHub (right-click to download).