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Trending for Process Control Data Analysis

Project description

proc_plot

Quick interactive trending of time series data for process control data analysis.

Usage

To start, read process data into a pandas Dataframe. It will work best if the column names in the dataframe are DCS tagnames e.g. FIC101.SP. Next, let proc_plot know which dataframe to use and call the show() function to show the main window.

%matplotlib qt
import matplotlib.pyplot as plt
import proc_plot
import pandas
df = pandas.read_excel('data.xlsx',parse_dates=True)
proc_plot.set_dataframe(df)
proc_plot.show()

Grouping Rules

proc_plot uses regular expression rules to group tags that should be plotted on the same axis. See help(proc_plot.add_grouping_rule) for examples if you want to customise grouping rules. Since v1.4, the function load_grouping_template() makes it easy to load preconfigured grouping rules for different kinds of data. v1.4 includes templates 'ProfCon' and 'DMC'.

%matplotlib magic

The intended use of proc_plot is to call it from a jupyter notebook. The way the qt gui loop runs in jupyter is tricky and proc_plot includes logic to check which backend is used (plt.get_backend) to tell if the notebook is using %matplotlib qt or %matplotlib notebook.

It is possible to switch the backend after the %matplotlib magic, if the backend is switched before proc_plot is imported then proc_plot could break the qt gui loop. In previous versions of matplotlib I recommended using %matplotlib qt, and then switching the backend with plt.switch_backend('nbagg') after importing proc_plot if you want to use interactive notebook plots and proc_plot in the same notebook.

In current versions of jupyter notebook and matplotlib, using %matplotlib notebook works well.

Show Me

The tool has a button "Show Me" that will show you python code to generate the current trend. The code assumes your dataframe is called df and that you imported matplotlib.pyplot as plt.

Project details


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proc_plot-1.7.tar.gz (24.8 kB view hashes)

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