v0.7.0 (January 2016)#
This is a major release from 0.6. The main new feature is swarmplot()
which implements the beeswarm approach for drawing categorical scatterplots. There are also some performance improvements, bug fixes, and updates for compatibility with new versions of dependencies.
Added the
swarmplot()
function, which draws beeswarm plots. These are categorical scatterplots, similar to those produced bystripplot()
, but position of the points on the categorical axis is chosen to avoid overlapping points. See the categorical plot tutorial for more information.Changed some of the
stripplot()
defaults to be closer toswarmplot()
. Points are now somewhat smaller, have no outlines, and are not split by default when usinghue
. These settings remain customizable through function parameters.Added an additional rule when determining category order in categorical plots. Now, when numeric variables are used in a categorical role, the default behavior is to sort the unique levels of the variable (i.e they will be in proper numerical order). This can still be overridden by the appropriate
{*_}order
parameter, and variables with acategory
datatype will still follow the category order even if the levels are strictly numerical.Changed how
stripplot()
draws points when usinghue
nesting withsplit=False
so that the differenthue
levels are not drawn strictly on top of each other.Improve performance for large dendrograms in
clustermap()
.Added
font.size
to the plotting context definition so that the default output fromplt.text
will be scaled appropriately.Fixed a bug in
clustermap()
whenfastcluster
is not installed.Fixed a bug in the zscore calculation in
clustermap()
.Fixed a bug in
distplot()
where sometimes the default number of bins would not be an integer.Fixed a bug in
stripplot()
where a legend item would not appear for ahue
level if there were no observations in the first group of points.Heatmap colorbars are now rasterized for better performance in vector plots.
Added workarounds for some matplotlib boxplot issues, such as strange colors of outlier points.
Added workarounds for an issue where violinplot edges would be missing or have random colors.
Added a workaround for an issue where only one
heatmap()
cell would be annotated on some matplotlib backends.Fixed a bug on newer versions of matplotlib where a colormap would be erroneously applied to scatterplots with only three observations.
Updated seaborn for compatibility with matplotlib 1.5.
Added compatibility for various IPython (and Jupyter) versions in functions that use widgets.