A Jupyter widget using sigma.js and graphology to render interactive networks directly within the result of a notebook cell.
ipysigma
has been designed to work with either networkx
or igraph
.
ipysigma
lets you customize a large number of the graph's visual variables such as: node color, size, label, border, halo, pictogram, shape and edge color, size, type, label etc.
For an exhaustive list of what visual variables you may tweak, check the "Available visual variables" part of the documentation.
ipysigma
is also able to display synchronized & interactive "small multiples" of a same graph to easily compare some of its features.
- Installation
- Quick start
- Examples
- What data can be used as visual variable
- Visual variables and kwargs naming rationale
- Scales, palettes and gradients
- Widget-side metrics
- Frequently asked questions
- Why are there so few labels displayed?
- Why are some of my categories mapped to a dull grey?
- I gave colors to node_color but arbitrary colors are displayed by the widget instead
- My computer sounds like an airplane taking off
- Some of my widgets only display labels or a glitchy black box
- My graph is ugly, make it beautiful like Gephi
- Available visual variables
- API Reference
You can install using pip
:
pip install ipysigma
You will also need to install either networkx
or igraph
.
If you are using an older version of Jupyter, or if the extension does not appear to be installed automatically, you might also need to run some nbextension/labextension commands likewise:
# Try one/all of those for jupyter notebook:
jupyter nbextension enable --py --sys-prefix ipysigma
jupyter nbextension enable --py --user ipysigma
jupyter nbextension enable --py --system ipysigma
# Try one/all of those for jupyter lab:
jupyter labextension enable ipysigma
jupyter labextension enable ipysigma user
jupyter labextension enable ipysigma sys-prefix
If you want to use ipysigma
on Google Colab, you will need to enable widget output using the following code:
from google.colab import output
output.enable_custom_widget_manager()
Remember you can always install packages in Colab by executing the following command in a cell:
!pip install networkx ipysigma
Using networkx
import networkx as nx
from ipysigma import Sigma
# Importing a gexf graph
g = nx.read_gexf('./my-graph.gexf')
# Displaying the graph with a size mapped on degree and
# a color mapped on a categorical attribute of the nodes
Sigma(g, node_size=g.degree, node_color='category')
Using igraph
import igraph as ig
from ipysigma import Sigma
# Generating a graph
g = ig.Graph.Famous('Zachary')
# Displaying the graph with a size mapped on degree and
# a color mapped on node betweenness centrality, using
# a continuous color scale named "Viridis"
Sigma(g, node_size=g.degree, node_color=g.betweenness(), node_color_gradient='Viridis')
ipysigma
is able to compute metrics on the widget side using graphology. As such, you can ask it to compute e.g. a Louvain partitioning if you don't want or cannot do it on the python side.
For more information about available metrics and how to specify them, check this part of the documentation.
Sigma(g, node_metrics=["louvain"], node_color="louvain")
# Renaming the target attribute
Sigma(g, node_metrics={"community": "louvain"}, node_color="community")
# Passing custom parameters
Sigma(
g,
node_metrics={"community": {"name": "louvain", "resolution": 1.5}},
node_color="community"
)
Use networkx metrics:
import networkx as nx
g = nx.path_graph(5)
Sigma(g, node_size=nx.eigenvector_centrality(g))
Use igraph metrics:
import igraph as ig
g = ig.Graph.GRG(5, 0.5)
Sigma(g, node_size=g.pagerank(), node_color=g.connected_components())
Use custom metrics:
import networkx as nx
def even_or_odd(node):
return node % 2 == 0
g = nx.path_graph(5)
Sigma(g, node_color=even_or_odd)
Read this for an exhaustive list of what can be used as visual variables.
Converting tabular data to a graph is not obvious. So for this, we advise to use helper functions found in our other library python pelote
.
In this first example, we create a graph from a DataFrame of edges:
import pandas as pd
from pelote import edges_table_to_graph
# Alice invited Bob and Chloe. Bob invited Chloe twice.
df = pd.DataFrame({
"hosts": ["Alice", "Alice", "Bob", "Bob"],
"guests": ["Bob", "Chloe", "Chloe", "Chloe"]
})
g = edges_table_to_graph(
df,
edge_source_col="hosts",
edge_target_col="guests",
count_rows_as_weight=True,
directed=True
)
Sigma(g, edge_size='weight')
Using pelote again, you can also create a bipartite network (students and their professors, for example) with the table_to_bipartite_graph
function:
import pandas as pd
from pelote import table_to_bipartite_graph
df = pd.DataFrame({
"professor": ["A", "A", "A", "B", "B", "B", "B"],
"student": ["C", "D", "E", "C", "F", "G", "H"],
})
g = table_to_bipartite_graph(df, 'student', 'professor', node_part_attr='status')
Sigma(g, node_color='status', default_node_size=10, show_all_labels=True)
Let's say we have a graph of websites that we categorized by type and language and we want to compare the distribution of those categories on the graph's topology. We could use node color for language and border color for type but you will quickly see that this is probably not readable.
To solve this kind of problems and enable its users to easily compare multiple features of a graph, ipysigma
exposes a SigmaGrid
widget that arranges multiple synchronized views of the same graph on a grid:
from ipysigma import SigmaGrid
# Views to display can be specified through the `views` kwarg, expecting
# a list of dicts of keyword arguments to give to the underlying Sigma widgets:
SigmaGrid(g, views=[
{"node_color": "type"},
{"node_color": "type"}
])
# You can do the same by using the `#.add` method of the grid to
# dynamically add views:
SigmaGrid(g).add(node_color="lang").add(node_color="type")
# Any kwarg passed to the grid directly will be used by all of the views.
# This is useful to avoid repetition:
SigmaGrid(g, node_size=g.degree, views=[
{"node_color": "type"},
{"node_color": "type"}
])
# You can of course display more than 2 views
# By default the grid has 2 columns and will wrap to new rows,
# but you can change the number of columns using the `columns` kwarg:
SigmaGrid(g, columns=3, views=[
{"node_size": g.degree},
{"node_size": g.in_degree},
{"node_size": g.out_degree}
])
If you want comprehensive examples of the widget's visual variables being used, you can read the notebooks found here, which serve as functional tests to the library.
There are several ways to specify what you want to use as visual variables (read this for a detailed explanation).
Here is the exhaustive list of what is possible:
Name of a node or edge attribute
# Let's say your nodes have a "lang" attribute, we can use its modalities as values for
# a categorical color palette:
Sigma(g, node_color='lang')
Node or edge mapping
# You can store the data in a mapping, e.g. a dictionary, likewise:
node_lang = {'node1': 'en', 'node2': 'fr', ...}
Sigma(g, node_color=node_lang)
# For edges, the mapping's key must be a 2-tuple containing source & target nodes.
# Note that for undirected graphs, the order of nodes in the tuple
# does not make any difference as both will work.
edge_type = {('node1', 'node2'): 'LIKES', ('node2', 'node3'): 'LOVES'}
Arbitrary iterable
# Any arbitrary iterable such as generators, ranges, numpy vectors,
# pandas series etc. will work. The only requirement is that they should
# follow the order of iteration of nodes or edges in the graph, so we may
# align the data properly.
# Creating a 0 to n generic label for my nodes
Sigma(g, node_label=range(len(g)))
# Random size for my edges
Sigma(g, edge_size=(random() for _ in g.edges))
# Numpy vector
Sigma(g, node_size=np.random.rand(len(g)))
# Pandas series
Sigma(g, edge_size=df.edge_weights)
Partition
# A partition, complete or not, but not overlapping, of nodes or edges:
# Must be a list of lists or a list of sets.
communities = [{2, 3, 6}, {0, 1}, {4, 6}]
Sigma(g, node_color=communities)
networkx/igraph degree view
# Mapping node size on degree is as simple as:
Sigma(g, node_size=g.degree)
igraph VertexClustering
# IGraph community detection / clustering methods return a VertexClustering object
Sigma(g, node_color=g.connected_components())
Sigma(g, node_color=g.community_multilevel())
Arbitrary callable
# Creating a label for my nodes
Sigma(g, node_label=lambda node: 'Label of ' + str(node))
# Using edge weight as size only for some source nodes
Sigma(g, edge_size=lambda u, v, a: attr['weight'] if g.nodes[u]['part'] == 'main' else 1)
# Node callables will be given the following arguments:
# 1. node key
# 2. node attributes
# Edge callables will be given the following arguments:
# 1. source node key
# 2. target node key
# 3. edge attributes
# Note that given callables may choose to take any number of those arguments.
# For instance, the first example only uses the first argument but still works.
Set
# A set will be understood as a binary partition with nodes or edges being
# in it or outside it. This will be mapped to a boolean value, with `True`
# meaning the node or edge was in the partition.
# This will display the nodes 1, 5 and 6 in a color, and all the other ones
# in a different color.
Sigma(g, node_color={1, 5, 6})
ipysigma
lets its users tweak a large number of visual variables. They all work through a similar variety of keyword arguments given to the Sigma
widget.
In ipysigma
visual variables can be given:
- categorical data, which means they will map category values to discrete visualization values such as a node's category being associated with a given color.
- continuous data, which means they will map numerical values to a range of sizes or a gradient of colors, like when representing a node's degree by a size on screen.
kwargs naming rationale
To be able to be drawn on screen, every visual variable must use values that have a meaning for the the widget's visual representation. For colors, it might be a HTML color name such as #fa65ea
or cyan
. For sizes, it might be a number of pixels etc.
If you know what you are doing and want to give ipysigma
the same "raw" values as those expected by the visual representation directly, all variables have kwargs starting by raw_
, such as raw_node_color
.
But if you want ipysigma
to map your arbitrary values to a suitable visual representation, all variables have a kwarg without any prefix, for instance node_color
.
In which case, if you use categorical data, ipysigma
can generate or use palettes to map the category values to e.g. colors on screen. You can always customize the palette or mapping using a kwarg suffixed with _palette
or _mapping
such as node_color_palette
or node_shape_mapping
.
And if you use numerical data, then values will be mapped to an output range, usually in pixels, that can be configured with a kwarg suffixed with _range
such as node_size_range
. Similarly, if you want to map numerical data to a gradient of colors, you will find kwarg suffixed with _gradient
such as node_color_gradient
.
Sometimes, some values might fall out of the represented domain, such as non-numerical values for continuous variables, or categories outside of the colors available in the given palette. In which case there always exists a kwarg prefixed with default_
, such as default_node_color
. A neat trick is also to use those kwargs as a way to indicate a constant value if you want all your edges to have the same color for instance, or your nodes to have the same size in pixels.
Finally, it's usually possible to tweak the way numerical values will be mapped from their original domain to the visual one. This is what you do, for instance, when you choose to use a logarithmic scale on a chart to better visualize a specific distribution. Similarly, relevant ipysigma
visual variables give access to a kwarg suffixed _scale
, such as node_color_scale
that lets you easily switch from a linear to a logarithmic or power scale etc. (for more information about this, check this in the next part of the documentation).
To summarize, let's finish with two exhaustive examples: node color & node size.
Categorical or continuous variable: node color as an example
- node_color: this kwarg expects some arbitrary values related to your nodes. Those values can be given in multiple ways listed here. By default,
node_color
is a categorical variable. Hence, given values will be mapped to suitable colors, from a palette generated automatically for you. If you want your data to be interpreted as continuous instead, you will need to give a gradient to the variable throughnode_color_gradient
. - raw_node_color: this kwarg does not expect arbitrary values but CSS colors instead. This way you can always regain full control on the colors you want for your nodes if none of
ipysigma
utilities suit your particular use-case. - default_node_color: the
default_
kwargs always expect a value that will be used in the final representation, so here a CSS color, that will be used if a node category is not found in the color palette or if a node value is not numerical and we are using a gradient. - node_color_palette: by default,
ipysigma
usesiwanthue
to automatically generate fitting color palettes for the categories present in the given data. But sometimes you might want to customize the colors used. In which case this kwarg expects either a dictionary mapping category values to a CSS color such as{'en': 'blue, 'fr': 'red'}
or the name of a categorical color scheme from d3-scale-chromatic such asTableau10
orRdYlBu
for instance. - node_color_gradient: if you want to use a color gradient for your node to represent continuous data, you will need to give this kwarg either a 2-tuple containing the "lowest" and "highest" color such as
("yellow", "red")
or the name of a continuous color gradient from d3-scale-chromatic such asInferno
orYlGn
for instance. - node_color_scale: finally, if you gave a gradient to
node_color_gradient
and want to apply a nonlinear scale to the given data, you can pass the name of the scale to use such aslog
or a 2-tuple containing the name of the scale and an optional param such as the scale's base in the case of a logarithmic scale. Here is a binary log scale for instance:("log", 2)
.
Continuous variable: node size as an example
- node_size: this kwarg expects some arbitrary numerical values related to your nodes. Those values can be given in multiple ways listed here. Then they will be mapped using a scale given to
node_size_scale
to a range in pixels given tonode_size_range
before being used on screen. - raw_node_size: if you want to bypass the scale and the range altogether, this kwarg directly takes values to be considered as pixels on screen.
- default_node_size: if no relevant value can be found for a node, or if said value is not a valid number, the widget will use this size, expressed in pixels, instead.
- node_size_scale: if you want to apply a nonlinear scale to the given data, you can pass the name of the scale to use such as
log
or a 2-tuple containing the name of the scale and an optional param such as the scale's base in the case of a logarithmic scale. Here is a binary log scale for instance:("log", 2)
. - node_size_range: this kwarg lets you customize the output range in pixels we should map the node numerical values to. For instance, if we want to have our nodes to have sizes between
1
pixel and25
pixels, we would give it(1, 25)
. Note that most visual variables have a default range and this kwarg can usually be omitted if the defaults suit you.
For a comprehensive view of the available visual variables, the values they expect and how they can be customized, read this next part of the documentation.
Available scales
- lin: linear scale, used by default when scale is not specified.
- log: logarithmic scale. Takes an optional base (
e
by default). - log+1: logarithmic scale incrementing your values by one. This is a well-known visualization trick designed to avoid issues with zeros, which is often the case when using some typical node metrics. Takes an optional base (
e
by default).. - pow: power scale. Takes an optional exponent (
2
by default). - sqrt: square root scale (same as power scale but with inverted exponent). Takes an optional exponent (
2
by default).
All the _scale
kwargs can take the following:
- Nothing (the default), then the scale remains linear:
node_size_scale=None
. - The name of the scale directly:
node_size_scale="log"
. - A 2-tuple containing the name of the scale and its parameter:
node_size_scale=("log", 2)
.
Color palettes
By default, color palettes are generated for you by ipysigma
using iwanthue. ipysigma
will first count the number of distinct categories to represent, sort them by frequency and generate a palette of up to 10
colors for the most used ones. The other one will use the default one given to the relevant default_
kwarg such as default_node_color
for instance.
Note that this maximum number of 10
can be increased using the max_categorical_colors
kwarg.
Note also that the palette generation is seeded using the mapped attribute name in the data so that the palette is always the same (if the name and the category count remains the same), but is different from one attribute to the other.
If you don't want ipysigma
to generate color palettes for you, you can give your own palette through the relevant _palette
kwarg such as node_color_palette
, or use some d3-scale-chromatic one (they have names starting with scheme
).
Here is the full list of those palettes supported by ipysigma
: <% supported_color_palettes %>.
Color gradients
Color gradients can be defined as a range from "lowest" to "highest" color, e.g. ("yellow", "red)
.
They can also be taken from any d3-scale-chromatic continuous gradient (they have names starting with interpolate
).
Here is the full list of those gradients supported by ipysigma
: <% supported_color_gradients %>.
Since ipysigma
is using graphology, it can also draw from its library of graph theory metrics.
As such, the node_metrics
enables you to ask your widget to compute node metrics on its own and use to map the result on any visual variable.
Here is how you can specify metrics to be computed:
# node_metrics expects an iterable of metrics to compute:
Sigma(g, node_metrics=["louvain"], node_color="louvain")
# They can be specified by name, but you can also specify through
# a dictionary if you need parameters for the metrics:
Sigma(g, node_metrics=[{"name": "louvain", "resolution": 1.5}], node_color="louvain")
# You can also give a dictionary mapping resulting attribute name to
# the metric to compute if you don't want to map the result on an attribute
# having the same name as the metric:
Sigma(g, node_metrics={"community": "louvain"}, node_color="community")
Sigma(g, node_metrics={"community": {"name": "louvain", "resolution": 1.5}}, node_color="community")
Available node metrics & their parameters
- louvain: Louvain algorithm for community detection (through modularity optimization)
- resolution ?float [
1
]: resolution parameter.
- resolution ?float [
Labels are costly to render and can negate the benefit of using a WebGL renderer such as sigma.js to render interactive graphs. As such, sigma.js relies on a constant size grid to select the "worthiest" labels to display, after taking camera zoom into account.
You can tweak the parameters of this grid using label_grid_cell_size
and label_density
. Decreasing the first one or increasing the second one will result in more labels being displayed.
Also, by default, the label of a node is displayed only if its size in pixels is larger than a threshold. You can change that threshold using the label_rendered_size_threshold
kwarg.
Finally, if you don't want to deal with all this nonsense and just want to display all labels because you know what you are doing and don't care about performance, you can just use show_all_labels=True
instead.
When ipysigma
generates palettes for you, it only uses up to 10
colors by default. This number can be increased using the max_categorical_colors
kwarg. For more information about palette generation, read this part of the documentation.
Some designer told me (while holding a baseball bat) that it is unwise to have more than 10 categorical colors because you won't be able to distinguish them anymore. My hands are tied. Don't ask me to change this.
node_color
does not expect colors per se but arbitrary data that will be mapped to a suitable color palette for you. If you want to give colors directly, use raw_node_color
instead. For more information about the visual variables kwarg naming rationale, read this part of the documentation.
Don't forget to turn off the layout when it has converged (the pause button on the left). There is no convincing way to automatically detect when layout has converged so we must rely on you, the user, to indicate when it's done.
If you want to start the layout automatically when instantiating the widget and make sure it will automatically stop after, say, 10 seconds, use start_layout=10
.
Your GPU can only render so many webgl canvases in your browser tabs. So if you created too many widgets (this depends on the specifics of your computer and graphics card), it may gracefully deal with the situation by erasing the graph (but not the labels since those are rendered using 2d canvases) or by glitching to death.
Use default_edge_type="curve"
, node_border_color_from="node"
, label_size=g.degree
and label_font="cursive"
and you should have a dazzling Gephi graph.
Type
Categorical or continuous.
Raw values
HTML named color or hex color or rgb/rgba color. Examples: red
, #fff
, #a89971
, rgb(25, 25, 25)
, rgba(25, 145, 56, 0.5)
Related kwargs
- node_color
- raw_node_color
- default_node_color
- node_color_palette
- node_color_gradient
- node_color_scale
Type
Continuous.
Raw values
A percentage of color saturation. Examples: 0.1
, 0.96
.
Related kwargs
- node_color_saturation
- raw_node_color_saturation
- default_node_color_saturation
- node_color_saturation_range
- node_color_saturation_scale
Type
Continuous.
Raw values
A node size, i.e. a circle radius, in pixels, with default camera (not zoomed nor unzoomed).
Related kwargs
- node_size
- raw_node_size
- default_node_size
- node_size_range
- node_size_scale
Type
Raw only.
Raw values
A text label.
Related kwargs
- node_label
- raw_node_label
- default_node_label
Type
Continuous.
Raw values
A font size for the label text, in pixels.
Related kwargs
- node_label_size
- raw_node_label_size
- default_node_label_size
- node_label_size_range
Type
Categorical.
Raw values
HTML named color or hex color or rgb/rgba color. Examples: red
, #fff
, #a89971
, rgb(25, 25, 25)
, rgba(25, 145, 56, 0.5)
Related kwargs
- node_label_color
- raw_node_label_color
- default_node_label_color
- node_label_color_palette
Type
Continuous.
Raw values
A border size, in pixels, with default camera (not zoomed nor unzoomed).
Note that this border size will be added to the node's radius.
Related kwargs
- node_border_size
- raw_node_border_size
- default_node_border_size
- node_border_size_range
Notes
Borders are only shown on screen if a node_border_size OR a node_border_ratio AND a node_border_color are defined.
Type
Continuous.
Raw values
A border ratio, in percentage, with default camera (not zoomed nor unzoomed).
Note that this border ratio will eat the node's size.
Related kwargs
- node_border_ratio
- raw_node_border_ratio
- default_node_border_ratio
- node_border_ratio_range
Notes
Borders are only shown on screen if a node_border_size OR a node_border_ratio AND a node_border_color are defined.
Type
Categorical or continuous.
Raw values
HTML named color or hex color or rgb/rgba color. Examples: red
, #fff
, #a89971
, rgb(25, 25, 25)
, rgba(25, 145, 56, 0.5)
Related kwargs
- node_border_color
- raw_node_border_color
- default_node_border_color
- node_border_color_palette
- node_border_color_gradient
- node_border_color_scale
Notes
Borders are only shown on screen if a node_border_size OR a node_border_ratio AND a node_border_color are defined.
Type
Categorical.
Raw values
The name of any Google Material Icon as listed here (the name must be lowercase and snake_case, e.g. the name "Arrow Drop Done" should be given to ipysigma
as arrow_drop_done
).
Alternatively, one can also give urls of publicly accessible svg icons such as https://fonts.gstatic.com/s/i/short-term/release/materialsymbolsoutlined/arrow_drop_down/default/48px.svg
Related kwargs
- raw_node_pictogram
- default_node_pictogram
Notes
Pictograms are only shown on screen if node_pictogram AND node_pictogram_color are defined.
Type
Categorical.
Raw values
HTML named color or hex color or rgb/rgba color. Examples: red
, #fff
, #a89971
, rgb(25, 25, 25)
, rgba(25, 145, 56, 0.5)
Related kwargs
- node_pictogram_color
- raw_node_pictogram_color
- default_node_pictogram_color
- node_pictogram_color_palette
Notes
Pictograms are only shown on screen if node_pictogram AND node_pictogram_color are defined.
Type
Categorical.
Raw values
The name of a supported shape such as: circle
, triangle
, square
, pentagon
, star
, hexagon
, heart
or cloud
.
Alternatively, if you are feeling adventurous, it can also be the name of any Google Material Icon as listed here (the name must be lowercase and snake_case, e.g. the name "Arrow Drop Done" should be given to ipysigma
as arrow_drop_done
).
Finally, one can also give urls of publicly accessible svg icons such as https://fonts.gstatic.com/s/i/short-term/release/materialsymbolsoutlined/arrow_drop_down/default/48px.svg
Related kwargs
- node_shape
- raw_node_shape
- default_node_shape
- node_shape_mapping
Note
Node shapes cannot be used with borders nor pictograms nor halos, as of yet.
Type
Continuous.
Raw values
A halo size offset in pixels, with default camera (not zoomed nor unzoomed). The full halo radius will therefore be its size + its node's radius.
Related kwargs
- node_halo_size
- raw_node_halo_size
- default_node_halo_size
- node_halo_size_range
- node_halo_size_scale
Type
Categorical or continuous.
Raw values
HTML named color or hex color or rgb/rgba color. Examples: red
, #fff
, #a89971
, rgb(25, 25, 25)
, rgba(25, 145, 56, 0.5)
Related kwargs
- node_halo_color
- raw_node_halo_color
- default_node_halo_color
- node_halo_color_palette
- node_halo_color_gradient
- node_halo_color_scale
Type
Categorical or continuous.
Raw values
HTML named color or hex color or rgb/rgba color. Examples: red
, #fff
, #a89971
, rgb(25, 25, 25)
, rgba(25, 145, 56, 0.5)
Related kwargs
- edge_color
- raw_edge_color
- default_edge_color
- edge_color_palette
- edge_color_gradient
- edge_color_scale
Type
Name of renderer to use to draw the graph's edges. One of arrow
, triangle
, rectangle
, line
or curve
.
Usually defaults to rectangle
for undirected graphs and arrow
for directed graphs, or curve
if edge_curveness is activated.
It cannot be mapped to some edge attribute or data as of yet.
Related_kwargs
- default_edge_type
Type
Continuous.
Raw values
An edge thickness in pixels, with default camera (not zoomed nor unzoomed).
Related kwargs
- edge_size
- raw_edge_size
- default_edge_size
- edge_size_range
- edge_size_scale
Type
Continuous.
Raw values
A percentage. Note that it can go beyond 1
and that 0
will make the edge disappear.
Related kwargs
- default_edge_curveness
Type
Raw only.
Raw values
A text label.
Related kwargs
- edge_label
- raw_edge_label
- default_edge_label
Arguments
<% sigma_args %>
Method returning the layout of the graph, i.e. the current node positions in the widget, as a dict mapping nodes to their {x, y}
coordinates.
Method returning the current camera state of the widget, as a {x, y, ratio, angle}
dict.
Method returning the currently selected node if any or None
.
Method returning the currently selected edge as a (source, target)
tuple if any or None
.
Method returning a set of currently selected node category values or None
.
Method returning a set of currently selected edge category values or None
.
Method rendering the widget as an rasterized image in the resulting cell.
Method rendering the widget as a standalone HTML file that can be hosted statically elsewhere.
Arguments
- path PathLike or file: where to save the HTML file.
Static method that can be used to override some default values of the Sigma
class kwargs.
Arguments
- height int, optional: default widget height in pixels.
- background_color str, optional: default background color.
- max_categorical_colors int, optional: default maximum number of colors for generated palettes.
- node_size_range tuple, optional: default size range in pixels for nodes.
- edge_size_range tuple, optional: default size range in pixels for edges.
Static method taking the same kwargs as Sigma
and rendering the widget as a standalone HTML file that can be hosted statically elsewhere.
Arguments
- graph nx.AnyGraph or ig.AnyGraph: graph to represent.
- path PathLike or file: where to save the HTML file.
- fullscreen bool, optional [
False
]: whether to display the widget by taking up the full space of the screen. IfFalse
, will follow the givenheight
. - **kwarg: any kwarg accepted by
Sigma
.
Arguments
<% sigma_grid_args %>
Method one can use as an alternative or combined to SigmaGrid
constructor's views
kwarg to add a new Sigma
view to the grid. It takes any argument taken by Sigma
and returns self for easy chaining.
SigmaGrid(g, node_color='category').add(node_size=g.degree).add(node_size='occurrences')
Guillaume Plique. (2022). ipysigma, A Jupyter widget using sigma.js to render interactive networks. Zenodo. https://doi.org/10.5281/zenodo.7446059