2

I am working on a little widget with holoviews and panel - it consists of reading a pandas.dataFrame and display a curve for each column. The interaction I need is to be able to add/remove columns from the plot. In my real use case, there are too many columns so I can’t take advantage of the interactive legend already provided by bokeh+holoviews.

I made a little example that ‘’’ kind of works ‘’’ but I am probably doing it wrong, as I am reloading the data for the plot every time there is an interaction with the panel.widgets.MultiChoice (which is obviously wrong)


import holoviews as hv
import numpy as np
import pandas as pd
import colorcet as cc
import panel as pn

pn.extension()
hv.extension("bokeh")

# generate some data
def get_data():
    data = {
        "1998": np.random.rand(365),
        "1999": np.random.rand(365),
        "2000": np.random.rand(365),
        "2002": np.random.rand(365),
        "2003": np.random.rand(365),
    }
    df = pd.DataFrame(data, index=range(0, 365))
    return df

# utility to help me placing the month label around the 2nd week of each month

def split_list(a, n):
    k, m = divmod(len(a), n)
    return list(
        list(a[i * k + min(i, m) : (i + 1) * k + min(i + 1, m)]) for i in range(n)
    )


def get_ticks(df, pos):
    splitter = split_list(df.index, 12)
    months = [
        "Jan",
        "Feb",
        "Mar",
        "Apr",
        "May",
        "Jun",
        "Jul",
        "Aug",
        "Sep",
        "Oct",
        "Nov",
        "Dec",
    ]
    xticks_map = [i for i in zip([splitter[i][pos] for i in range(0, 12)], months)]
    return xticks_map

# plotting method

def get_mplot(df, cols=None):
    if cols:
        df = df[cols]
    if len(df.columns) == 0:
        print("No coumns selected")
        return None
    grid_style = {
        "grid_line_color": "black",
        "grid_line_width": 1.1,
        "minor_ygrid_line_color": "lightgray",
        "minor_xgrid_line_color": "lightgray",
        "xgrid_line_dash": [4, 4],
    }
    colors = cc.glasbey_light[: len(list(df.columns))]
    xticks_map = get_ticks(df, 15)
    multi_curve = [
        hv.Curve((df.index, df[v]), label=str(v)).opts(
            xticks=xticks_map,
            xrotation=45,
            width=900,
            height=400,
            line_color=colors[i],
            gridstyle=grid_style,
            show_grid=True,
        )
        for i, v in enumerate(df)
    ]
    mplot = hv.Overlay(multi_curve)
    return mplot


# get the data
df = get_data()

# create a multi-choice widget

years = pn.widgets.MultiChoice(
    name="Years", options=list(df.columns), margin=(0, 20, 0, 0)
)

# bind plot and multi-choice

@pn.depends(years)
def get_plot(years):
    df = get_data()
    if years:
        df = df[years]
    mplot = get_mplot(df, years)
    return mplot


pn.Column("Plot!", get_plot, pn.Row(years), width_policy="max").servable()

For convenience, I stored the code online as notebook on a gist:

notebook

My issue is with the interaction between holoviews and panel at cell #7 (in the notebook) when I define the @pn.depends method - the only way I got it to work so far, is to “reloading” the data at each interaction … (cell_out: [#21], line [#3], in df = get_data() ) which obviously slows down the whole app if the data starts to increase.

Essentially I need a method to interact with the plot components and not re-executing the plot at each interaction. In plain bokeh I would write a handler that gets connected to the plot but it is my understanding, in holoviews+panel (as they are a higher-level set of libraries built on top of bokeh) there should be a simpler way to achieve the same.

Do you have any hints on how to avoid reload the dataset?

2 Answers 2

1

I think you just need to do your data loading first and not overwrite the dataframe, like:

df = get_data()

@pn.depends(years)
def get_plot(years):
    if years:
        df1 = df[years]
    mplot = get_mplot(df1, years)
    return mplot
2
  • Thanks @rich-signell, I went that route - it works until the multi-choice is 'non-empty' - but it will trow an exception (df not defined) when removing the entries from the multi-choice widget. I maybe need to add some more logic on the plotting routine.
    – epifanio
    Mar 3, 2021 at 11:44
  • EDIT: Thanks, @rich-signell, I went that route - it works until the multi-choice is 'non-empty' - but it will throw an exception (df not defined) when removing the entries from the multi-choice widget. However, following your code, I tried to add some more logic to the plotting routine and I finally found out the issue. It seems that no matter what I change in the notebook cell in the method decorated with @pn.depends - the code cell doesn't get updated, the only way to pick-up the changes is to restart the kernel .... I will add a better description as a follow-up answer.
    – epifanio
    Mar 3, 2021 at 12:05
0

Building on top of @rich-signell, this will also work when removing all the entries from the multi-choice widget:

@pn.depends(years)
def get_plot(years):
    if years:
        df1 = df[years]
        mplot = get_mplot(df1, years)
    else:
        mplot = get_mplot(df)
    return mplot

However, the issue I was facing is due to the way how I was prototyping the code, in a jupyter notebook. There is an odd behavior when running holoviews+panel in a jupyter notebook. I was able to replicate it on two different jupyter server with the following version for

Jupyterlab, holoviews, panel

'2.2.9', '1.14.0', '0.11.0a3.post2+g5aa0c91'
'3.0.7', '1.14.2.post2+gd235b1cb0','0.10.3'

The problem is that changes applied to the get_plot() method, decorated with @pn.depends - were not picked up by the panel widget until restart of the notebook kernel, so any attempt to change the code (also working solution) were not effective and confused me.

Tried to show the issue in this recording https://gist.github.com/epifanio/6c9827f9163de359130102a29d7f3079

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.