knio.output_view
variable to a view created with any of the knio.view
functions.
Furthermore, the node allows to import Jupyter notebooks as Python modules via the
knime.scripting.jupyter module that can be imported in the script.
See the
API Documentation for a detailed description of the full API.
The node brings significant performance improvements over the nodes of the legacy KNIME Python Integration and enables working with larger-than-memory data. More details on how to transition to the node's new scripting API can be found here. There are also example workflows that further illustrate its use here as well as example templates on the Templates tab of the node.
Please consider the following prerequisites before using this node:
knime.scripting.io
module (imported as knio
by default) to access the
node's input data and populate its output view as described in the Ports and Views sections below. Use the
knio.flow_variables
dictionary to access input flow variables by name and to add new output
flow variables by name.jedi
is installed in the Python environment used by the node (default if Python environment is created through KNIME).knio.input_objects
. For example, the first input object can be accessed like this:
knio.input_objects[0]
.knio.input_tables
. For example, the first input
table can be accessed like this: knio.input_tables[0]
. Each table is an instance of type
knime.api.table.Table
. Before being able to work with the table, you have to convert it into, for
example, a pandas.DataFrame
or a pyarrow.Table
. Please refer to the
KNIME Python Integration Guide to
learn how to do this, or take a look at one of the templates on the Templates tab of the node.knio.output_images[0]
in your script. To
populate the output image, assign it a value like this knio.output_images[0] = <value>
.
The assigned value must be a bytes-like object encoding a PNG or SVG image.
If no value is assinged to knio.output_images[0]
the node will try to generate an SVG or PNG
image from knio.output_view
.knio.view(obj)
function to create a view and
assign to knio.output_view
.You want to see the source code for this node? Click the following button and we’ll use our super-powers to find it for you.
To use this node in KNIME, install the extension KNIME Python Integration from the below update site following our NodePit Product and Node Installation Guide:
A zipped version of the software site can be downloaded here.
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