Creating widgets#
Widgets are small composable graphical elements that can be added to the napari user
interface. The easiest way to add a widget is by using
magicgui, a Python package that assists
in building widgets. It is a general abstraction layer on GUI toolkit backends (like
Qt), with an emphasis on mapping Python types to widgets. This enables you to easily
create widgets using annotations.
If you require more extensibility, you can create your own widget class that
subclasses QtWidgets.QWidget or
magicgui.widgets.bases.Widget.
This document will describe each widget creation method, in increasing order of extensibility;
@magicguidecorator - create a widget from a function andmagicgui. This is the simplest but least extensible option. It would suit one wishing to build a widget to simply run a function, with input widgets to select function parameters.magicgui class widgets - subclass a
magicguiwidget class. This option provides you withmagicguiconveniences (via their useful defaults) while enabling you access to the nativeQWidget. This enables maximum widget extensibility, allowing you to connect event callbacks, perform processing, have conditional selection options, customize display of outputs and much more.QWidget class widgets - subclass
QtWidgets.QWidget. This option is the most difficult to implement and is suitable for those who wish to build a widget from a ‘blank slate’, withoutmagicguidefaults.
More examples of widget use can be found in the ‘GUI’ gallery examples (note: not every example includes a widget). Additionally, napari-plugin-template has more robust widget examples that you can adapt to your needs.
Adding widgets to napari viewer#
There are two ways to add a widget to a napari viewer:
via
napari.qt.Window.add_dock_widget()in a Python script or interactive console (see How to launch napari for details on launching and interacting programmatically with napari)by adding a widget contribution in a plugin.
There is an important implementation distinction between the two methods;
add_dock_widget() expects an instance of a widget, like
an instance of class FunctionGui or
QtWidgets.QWidget, whereas
widget contributions expect a callable
(e.g., a function or class) that will return a widget instance. When describing
each of the three widget creation methods below, we will first show how to create a
widget and add it to the viewer
with add_dock_widget(), then how to adapt the widget
for a widget contribution.
magicgui decorated functions#
magicgui makes building widgets to represent
function inputs easy via the @magicgui decorator.
It uses type hints to infer
the appropriate widget type for a given function parameter, and to indicate a
context-dependent action for the object returned from the function (in the
absence of a type hint, the type of the default value will be used).
You can also customize your widget using magicgui.magicgui() parameters.
First we demonstrate how to create a generic non-napari widget. The
@magicgui argument call_button specifies the button text
and the parameter specific slider_float and dropdown let you customize the widget
associated with those function parameters.
from magicgui import magicgui
import datetime
import pathlib
@magicgui(
call_button="Calculate",
slider_float={"widget_type": "FloatSlider", 'max': 10},
dropdown={"choices": ['first', 'second', 'third']},
)
def widget_demo(
maybe: bool,
some_int: int,
spin_float=3.14159,
slider_float=4.5,
string="Text goes here",
dropdown='first',
date=datetime.datetime.now(),
filename=pathlib.Path('/some/path.ext')
):
...
widget_demo.show()
Third party packages (like napari in this case) can add support for their types
using magicgui.type_map.register_type(). Indeed napari uses
register_type() to provide support for napari-specific type
annotations. This makes it easy to use magicgui to build widgets in napari.
Below we demonstrate how to create a simple threshold widget using magicgui and add
it to the viewer. Note the auto_call parameter tells magicgui to call the function
whenever a threshold_magic_widget parameter changes, thus the function is called
as soon as we add the ‘camera’ image.
from skimage import data
from skimage.util import img_as_float
import napari
@magicgui(
threshold={"widget_type": "FloatSlider", "max": 1}, auto_call=True
)
def threshold_magic_widget(
img_layer: "napari.layers.Image", threshold: "float"
) -> "napari.types.LabelsData":
return img_as_float(img_layer.data) > threshold
# Create the viewer and add an image
viewer = napari.view_image(data.camera())
# Add widget to viewer
viewer.window.add_dock_widget(threshold_magic_widget)
Note
For a more complex example of a magicgui.magicgui() widget, see the
gaussian blur example
in the magicgui documentation.
See Parameter annotations for details on how to use napari types
to get information from the napari viewer into your widget. See
Return annotations for information how to use napari types to add
output to the napari viewer.
For type annotations to work as described, the resulting widget needs to be added to a napari viewer.
To use these magicgui function widgets as plugin widget contributions,
see below.
magicgui function widgets as plugin contributions#
Recall above that plugin
widget contributions expects a callable that returns
a widget instance, whereas add_dock_widget() expects an
instance of a widget. The add_dock_widget() examples
above can be easily adapted to be plugin widgets by using
the @magic_factory decorator instead of the
@magicgui decorator.
For example, the threshold widget shown above could be provided as a napari plugin as follows:
from magicgui import magic_factory
@magic_factory(auto_call=True, threshold={'max': 2 ** 16})
def threshold(
data: 'napari.types.ImageData', threshold: int
) -> 'napari.types.LabelsData':
return (data > threshold).astype(int)
This function can now be added to the plugin manifest as a widget contribution. See the widget contribution guide for details.
Note
@magic_factory behaves very much like
functools.partial(): it returns a callable that “remembers” some or
all of the parameters required for a “future” call to magicgui.magicgui().
The parameters provided to @magic_factory can
also be overridden when creating a widget from a factory:
@magic_factory(call_button=True)
def my_factory(x: int):
...
widget1 = my_factory()
widget2 = my_factory(call_button=False, x={'widget_type': 'Slider'})
Parameter annotations#
The following napari types may be used as parameter type annotations in
magicgui functions or in the annotation argument of
magicgui.widgets.create_widget(). create_widget()
can be used when adding an input widget to your widget class.
This enables you to get information from the napari viewer into your widget.
the napari
Layerclassany of the
<LayerType>Datatypes fromnapari.types, such asnapari.types.ImageDataornapari.types.LabelsData
Note
When using create_widget() for a ‘layer’ type in a
QtWidgets.QWidget subclass,
you will need to manually connect the reset_choices of the resulting
ComboBox (i.e., “dropdown menu”) to layer events. This
is so it will synchronize with layer changes.
See the QWidget example for details.
The consequence of each type annotation is described below:
Annotating as a Layer subclass#
Annotating a function parameter or setting annotation in create_widget to be a
Layer subclass (such as Image or
Points), will result in a
ComboBox widget (i.e. “dropdown menu”), where the
options in the dropdown box are the layers of the corresponding type currently
in the viewer.
Using Image annotation in a @magic_factory
decorated function:
from napari.layers import Image
@magicgui
def my_widget(image: Image):
# do something with whatever image layer the user has selected
# note: it *may* be None! so your function should handle the null case
...
Using Image annotation in create_widget:
from magicgui.widgets import Container, create_widget
class ImageWidget(Container):
def __init__(self, viewer: "napari.viewer.Viewer"):
super().__init__()
self._viewer = viewer
# use create_widget to generate widgets from type annotations
self._image_layer_combo = create_widget(
label="Image", annotation="napari.layers.Image"
)
Here’s a complete example:
import napari
import numpy as np
from napari.layers import Image
@magicgui(image={'label': 'Pick an Image'})
def my_widget(image: Image):
...
viewer = napari.view_image(np.random.rand(64, 64), name="My Image")
viewer.window.add_dock_widget(my_widget)
Note the widget on the right side with “My Image” as the currently selected option
Annotating as Layer class#
In the previous example, the dropdown menu will only show
Image layers, because the parameter was annotated as an
Image. If you’d like a dropdown menu that allows the
user to pick from all layers in the layer list, annotate your parameter as
Layer.
from napari.layers import Layer
@magicgui
def my_widget(layer: Layer):
# do something with whatever layer the user has selected
# note: it *may* be None! so your function should handle the null case
...
You can also use Layer annotation in create_widget in the same way as in
Annotating as a Layer subclass.
Annotating as napari.types.*Data#
In the previous example, the object passed to your function/widget will be
the actual
Layer instance, meaning you will need to access any
attributes (like layer.data) on your own. If your function/widget is designed
to accept a numpy array, you can use any of the special <LayerType>Data types
from napari.types to indicate that you only want the data attribute from
the layer (where <LayerType> is one of the available layer types).
from napari.types import ImageData
import numpy as np
@magicgui
def my_widget(array: ImageData):
# note: it *may* be None! so your function should handle the null case
if array is not None:
assert isinstance(array, np.ndarray) # it will be!
You can also use ImageData annotation in create_widget in the same way as in
Annotating as a Layer subclass.
Like above, it will be rendered as a ComboBox.
Annotating as napari.Viewer#
Lastly, if you need to access the actual Viewer instance
in which the widget is docked, you can annotate one of your parameters as a
napari.Viewer.
from napari import Viewer
@magicgui
def my_widget(viewer: Viewer):
...
Caution
Please use this sparingly, as a last resort. If you need to add layers to the viewer from your function, prefer one of the return-annotation methods described below. If you find that you require the viewer instance because of functionality that is otherwise missing here, please consider opening an issue in the napari issue tracker, describing your use case.
Return annotations#
The following napari types may be used as return type annotations in magicgui
functions to add layers to napari from your magicgui function:
napari
Layerclass or any of its subclasses, such asImageorPointsany of the
<LayerType>Datatypes fromnapari.types, such asnapari.types.ImageDataornapari.types.LabelsDatanapari.types.LayerDataTupleLists ofnapari.layers.Layerornapari.types.LayerDataTuple
The consequence of each type is described below:
Returning a Layer subclass#
If you use a Layer subclass as a return annotation on a
magicgui function, napari will interpet it to mean that the layer returned
from the function should be added to the viewer. The object returned from the
function must be an actual Layer instance.
from napari.layers import Image
import numpy as np
@magicgui
def my_widget(ny: int=64, nx: int=64) -> Image:
return Image(np.random.rand(ny, nx), name='my Image')
Here’s a complete example
@magicgui(call_button='Add Image')
def my_widget(ny: int=64, nx: int=64) -> Image:
return Image(np.random.rand(ny, nx), name='My Image')
viewer = napari.Viewer()
viewer.window.add_dock_widget(my_widget, area='right')
my_widget() # "call the widget" to call the function, so it shows in the
# screenshot below.
# Normally this would be caused by clicking on 'Add Image' button
Note the new “My Image” layer in the viewer as a result of having called the widget function.
Note
With this method, a new layer will be added to the layer list each time the
function is called. To update an existing layer, you must use the
LayerDataTuple approach described below
Returning List[napari.layers.Layer]#
You can create multiple layers by returning a list of
Layer.
from typing import List
@magicgui
def make_points(...) -> List[napari.layers.Layer]:
...
Note
Note: the List[] syntax here is optional from the perspective of napari. You
can return either a single Layer or a list of Layers and they will all be added
to the viewer as long as you annotate with either List[napari.layers.Layer] or
napari.layers.Layer. If you want your code to be properly typed, however,
your return type must match your return annotation.
Returning napari.types.*Data#
In the previous example, the object returned by the function had to be an actual
Layer instance (in keeping with the return type
annotation). In many cases, you may only be interested in receiving and
returning the layer data itself. (There are
many functions already written that accept and return a numpy.ndarray, for
example). In this case, you may use a return type annotation of one the special
<LayerType>Data types from napari.types to indicate that you want data
returned by your function to be turned into the corresponding
Layer type, and added to the viewer.
For example, in combination with the ImageData paramater
annotation described above:
from napari.types import LabelsData, ImageData
@magicgui(call_button='Run Threshold')
def threshold(image: ImageData, threshold: int = 75) -> LabelsData:
"""Threshold an image and return a mask."""
return (image > threshold).astype(int)
viewer = napari.view_image(np.random.randint(0, 100, (64, 64)))
viewer.window.add_dock_widget(threshold)
threshold() # "call the widget" to call the function, so it shows in the
# screenshot below.
# Normally this would be caused by clicking on 'Run Threshold' button
Returning napari.types.LayerDataTuple#
The most flexible return type annotation is napari.types.LayerDataTuple:
it gives you full control over the layer that will be created and added to the
viewer. It also lets you update an existing layer with a matching name.
A LayerDataTuple is a tuple in one of the
following three forms:
(layer_data,)a single item tuple containing only layer data (will be interpreted as an ‘image’ layer).
(layer_data, {})a 2-tuple of
layer_dataand a metadatadict. the keys in the metadatadictmust be valid keyword arguments to the correspondingnapari.layers.Layerconstructor.
(layer_data, {}, 'layer_type')a 3-tuple of data, metadata, and layer type string.
layer_typeshould be a lowercase string form of one of the layer types (like'points','shapes', etc…). If omitted, the layer type is assumed to be'image'.
The following are all valid napari.types.LayerDataTuple examples:
# an image array
(np.random.rand(64, 64),)
# an image with name and custom blending mode
(np.random.rand(64, 64), {'name': 'My Image', 'blending': 'additive'})
# an empty points layer
(None, {}, 'points')
# points with features
(np.random.rand(20, 2), {'features': {'values': np.random.rand(20)}}, 'points')
An example of using a LayerDataTuple return annotation in
a magicgui function:
import napari.types
@magicgui(call_button='Make Points')
def make_points(n_points=40) -> napari.types.LayerDataTuple:
data = 500 * np.random.rand(n_points, 2)
features = {'values': np.random.rand(n_points)}
return (data, {'features': features}, 'points')
viewer = napari.Viewer()
viewer.window.add_dock_widget(make_points)
make_points() # "call the widget" to call the function, so it shows in the
# screenshot below.
# Normally this would be caused by clicking on 'Make Points' button
Returning List[napari.types.LayerDataTuple]#
You can also create multiple layers by returning a list of
LayerDataTuple.
from typing import List
@magicgui
def make_points(...) -> List[napari.types.LayerDataTuple]:
...
Note
Note: the List[] syntax here is optional from the perspective of napari. You
can return either a single tuple or a list of tuples and they will all be added
to the viewer as long as you annotate with either List[napari.types.LayerDataTuple]
or napari.types.LayerDataTuple. If you want your code to be properly typed, however,
your return type must match your return annotation.
Updating an existing Layer#
The default behavior is to add a new layer to the viewer for each
LayerDataTuple returned by a magicgui function. By specifying the value of
name key in your LayerDataTuple metadata dict to be the name
of an existing layer, you can update this layer, rather than creating a new layer each
time the function is called:
@magicgui(call_button='Make Points', n_points={'max': 200})
def make_points(n_points=40) -> napari.types.LayerDataTuple:
data = 500 * np.random.rand(n_points, 2)
# 'My Points' is the name of an existing layer
return (data, {'name': 'My Points'}, 'points')
viewer = napari.Viewer()
viewer.window.add_dock_widget(make_points)
# calling this multiple times will just update 'My Points'
make_points()
make_points.n_points.value = 80
make_points()
make_points.n_points.value = 120
make_points()
Widget classes#
Generating a widget by creating a widget class allows you to have more control over
your widget. Your widget class must subclass magicgui.widgets.bases.Widget
(i.e., a
magicgui widget class)
or QtWidgets.QWidget.
It can then be added to the napari viewer
by instantiating the widget class, then adding it to the viewer via
add_dock_widget(). You can also create a plugin and add
your widget class (not instantiated widget) as a
widget contribution.
Below we will detail how to use various parent classes to generate a widget.
There are several magicgui widget classes so we will only document the use of the
two most useful in the napari context; FunctionGui
and Container (more complex).
magicgui class widgets#
magicgui.widgets.FunctionGui#
FunctionGui is the type that is returned by the
@magicgui decorator. Creating a widget by directly
subclassing FunctionGui is thus similar in
principle to using the @magicgui decorator. Decorating
a function with @magicgui is equivalent to passing
the same function to FunctionGui’s function parameter.
The remaining FunctionGui parameters essentially
mirror @magicgui’s parameters.
Subclassing FunctionGui however, gives you access to the
native QWidget of your widget, allowing you change its appearance and add
custom elements.
from magicgui.widgets import FunctionGui
import napari
def my_function(...):
...
class MyGui(FunctionGui):
def __init__(self):
super().__init__(
my_function,
call_button=True,
layout='vertical',
param_options={...}
)
# do whatever other initialization you want here
# Create a `viewer`
viewer = napari.Viewer()
# Instantiate your widget
my_widg = MyGui(my_function)
# Add widget to `viewer`
viewer.window.add_dock_widget(my_widg)
Notice above that we first instantiated the widget class, then add to the viewer via
add_dock_widget().
To use FunctionGui widget as a
plugin widget contribution, simply provide the
class definition and add to the plugin manifest.
magicgui.widgets.Container#
The Container allows you to build more complex widgets
from sub-widgets. This gives you more control over each sub-widget and how callbacks
are connected to events but you can still use the convenient magicgui widget
generation features as shown below.
from magicgui.widgets import Container, create_widget
class ImageThreshold(Container):
def __init__(self, viewer: "napari.viewer.Viewer"):
super().__init__()
self._viewer = viewer
# use create_widget to generate widgets from type annotations
self._image_layer_combo = create_widget(
label="Image", annotation="napari.layers.Image"
)
self._threshold_slider = create_widget(
label="Threshold", annotation=float, widget_type="FloatSlider"
)
# connect your own callbacks
self._threshold_slider.changed.connect(self._threshold_im)
# append into/extend the container with your widgets
self.extend(
[
self._image_layer_combo,
self._threshold_slider,
]
)
def _threshold_im(self):
image_layer = self._image_layer_combo.value
if image_layer is None:
return
image = img_as_float(image_layer.data)
name = image_layer.name + "_thresholded"
threshold = self._threshold_slider.value
thresholded = image > threshold
# Update existing layer (if present) or add new labels layer
if name in self._viewer.layers:
self._viewer.layers[name].data = thresholded
else:
self._viewer.add_labels(thresholded, name=name)
# Create a `viewer`
viewer = napari.Viewer()
# Instantiate your widget
my_widg = ImageThreshold()
# Add widget to `viewer`
viewer.window.add_dock_widget(my_widg)
As above, to turn this into a plugin widget contribution, simply provide the class definition and add to the plugin manifest.
To build your widget from a ‘blank slate’, you can subclass
QtWidgets.QWidget.
See QWidget class widgets for details.
QWidget class widgets#
To build your widget from a ‘blank slate’, subclass
QtWidgets.QWidget.
In the following example, we create a button and a dropdown list.
The available choices for the dropdown list are the
current layers in the viewer. For this, we use
create_widget with the annotation
napari.types.ImageData.
Because the layer selection widget will be housed by a native QWidget
and not by a magicgui subclass (as with @magicgui
decoratored functions and magicgui subclasses), we now need to
manually connect the reset_choices of the created widget with the
viewer.layers.events so that the available choices are synchronized
with the current layers of the viewer:
import numpy
import napari
from magicgui.widgets import create_widget
from qtpy.QtWidgets import QHBoxLayout, QPushButton, QWidget
from napari.types import ImageData
class ExampleLayerListWidget(QWidget):
def __init__(self, viewer: "napari.viewer.Viewer"):
super().__init__()
self.viewer = viewer
# Create a button
btn = QPushButton("Click me!")
# Connect the click event to a function
btn.clicked.connect(self._on_click)
# create new widget with create_widget and type annotation
self.layer_select = create_widget(annotation=ImageData)
# The `layer_select` widgets `reset_choices` method has to be connected to viewer.layers.events
layers_events = self.viewer.layers.events
layers_events.inserted.connect(self.layer_select.reset_choices)
layers_events.removed.connect(self.layer_select.reset_choices)
layers_events.reordered.connect(self.layer_select.reset_choices)
self.setLayout(QHBoxLayout())
# add it to the layout
self.layout().addWidget(self.layer_select.native)
self.layout().addWidget(btn)
def _on_click(self):
print(
"Selected layer has shape: ",
self.layer_select.value.shape,
)
# Create a `viewer`
viewer = napari.Viewer()
viewer.add_image(numpy.random.rand(20, 20), name="Layer 1")
viewer.add_image(numpy.random.rand(40, 40), name="Layer 2")
# Instantiate your widget
my_widg = ExampleLayerListWidget(viewer)
# Add widget to `viewer`
viewer.window.add_dock_widget(my_widg)
As above, to turn this into a plugin widget contribution, simply provide the class definition and add to the plugin manifest.