=========== API Changes =========== This chapter is a log of changes to matplotlib that affect the outward-facing API. If updating matplotlib breaks your scripts, this list may help describe what changes may be necessary in your code or help figure out possible sources of the changes you are experiencing. For new features that were added to matplotlib, please see :ref:`whats-new`. Changes in 1.2.x ================ * The ``classic`` option of the rc parameter ``toolbar`` is deprecated and will be removed in the next release. * The :meth:`~matplotlib.cbook.isvector` method has been removed since it is no longer functional. * The `rasterization_zorder` property on `~matplotlib.axes.Axes` a zorder below which artists are rasterized. This has defaulted to -30000.0, but it now defaults to `None`, meaning no artists will be rasterized. In order to rasterize artists below a given zorder value, `set_rasterization_zorder` must be explicitly called. * In :meth:`~matplotlib.axes.Axes.scatter`, and `~pyplot.scatter`, when specifying a marker using a tuple, the angle is now specified in degrees, not radians. * Using :meth:`~matplotlib.axes.Axes.twinx` or :meth:`~matplotlib.axes.Axes.twiny` no longer overrides the current locaters and formatters on the axes. * In :meth:`~matplotlib.axes.Axes.contourf`, the handling of the *extend* kwarg has changed. Formerly, the extended ranges were mapped after to 0, 1 after being normed, so that they always corresponded to the extreme values of the colormap. Now they are mapped outside this range so that they correspond to the special colormap values determined by the :meth:`~matplotlib.colors.Colormap.set_under` and :meth:`~matplotlib.colors.Colormap.set_over` methods, which default to the colormap end points. * The new rc parameter ``savefig.format`` replaces ``cairo.format`` and ``savefig.extension``, and sets the default file format used by :meth:`matplotlib.figure.Figure.savefig`. * In :meth:`~matplotlib.pyplot.pie` and :meth:`~matplotlib.Axes.pie`, one can now set the radius of the pie; setting the *radius* to 'None' (the default value), will result in a pie with a radius of 1 as before. * Use of :func:`~matplotlib.projections.projection_factory` is now deprecated in favour of axes class identification using :func:`~matplotlib.projections.process_projection_requirements` followed by direct axes class invocation (at the time of writing, functions which do this are: :meth:`~matplotlib.figure.Figure.add_axes`, :meth:`~matplotlib.figure.Figure.add_subplot` and :meth:`~matplotlib.figure.Figure.gca`). Therefore:: key = figure._make_key(*args, **kwargs) ispolar = kwargs.pop('polar', False) projection = kwargs.pop('projection', None) if ispolar: if projection is not None and projection != 'polar': raise ValuError('polar and projection args are inconsistent') projection = 'polar' ax = projection_factory(projection, self, rect, **kwargs) key = self._make_key(*args, **kwargs) # is now projection_class, kwargs, key = \ process_projection_requirements(self, *args, **kwargs) ax = projection_class(self, rect, **kwargs) This change means that third party objects can expose themselves as matplotlib axes by providing a ``_as_mpl_axes`` method. See :ref:`adding-new-scales` for more detail. * A new keyword *extendfrac* in :meth:`~matplotlib.pyplot.colorbar` and :class:`~matplotlib.colorbar.ColorbarBase` allows one to control the size of the triangular minimum and maximum extensions on colorbars. * A new keyword *capthick* in :meth:`~matplotlib.pyplot.errorbar` has been added as an intuitive alias to the *markeredgewidth* and *mew* keyword arguments, which indirectly controlled the thickness of the caps on the errorbars. For backwards compatibility, specifying either of the original keyword arguments will override any value provided by *capthick*. * Transform subclassing behaviour is now subtly changed. If your transform implements a non-affine transformation, then it should override the ``transform_non_affine`` method, rather than the generic ``transform`` method. Previously transforms would define ``transform`` and then copy the method into ``transform_non_affine``:: class MyTransform(mtrans.Transform): def transform(self, xy): ... transform_non_affine = transform This approach will no longer function correctly and should be changed to:: class MyTransform(mtrans.Transform): def transform_non_affine(self, xy): ... * Artists no longer have ``x_isdata`` or ``y_isdata`` attributes; instead any artist's transform can be interrogated with ``artist_instance.get_transform().contains_branch(ax.transData)`` * Lines added to an axes now take into account their transform when updating the data and view limits. This means transforms can now be used as a pre-transform. For instance:: >>> import matplotlib.pyplot as plt >>> import matplotlib.transforms as mtrans >>> ax = plt.axes() >>> ax.plot(range(10), transform=mtrans.Affine2D().scale(10) + ax.transData) >>> print(ax.viewLim) Bbox('array([[ 0., 0.],\n [ 90., 90.]])') * One can now easily get a transform which goes from one transform's coordinate system to another, in an optimized way, using the new subtract method on a transform. For instance, to go from data coordinates to axes coordinates:: >>> import matplotlib.pyplot as plt >>> ax = plt.axes() >>> data2ax = ax.transData - ax.transAxes >>> print(ax.transData.depth, ax.transAxes.depth) 3, 1 >>> print(data2ax.depth) 2 for versions before 1.2 this could only be achieved in a sub-optimal way, using ``ax.transData + ax.transAxes.inverted()`` (depth is a new concept, but had it existed it would return 4 for this example). * ``twinx`` and ``twiny`` now returns an instance of SubplotBase if parent axes is an instance of SubplotBase. * All Qt3-based backends are now deprecated due to the lack of py3k bindings. Qt and QtAgg backends will continue to work in v1.2.x for py2.6 and py2.7. It is anticipated that the Qt3 support will be completely removed for the next release. * :class:`~matplotlib.colors.ColorConverter`, :class:`~matplotlib.colors.Colormap` and :class:`~matplotlib.colors.Normalize` now subclasses ``object`` * ContourSet instances no longer have a ``transform`` attribute. Instead, access the transform with the ``get_transform`` method. Changes in 1.1.x ================ * Added new :class:`matplotlib.sankey.Sankey` for generating Sankey diagrams. * In :meth:`~matplotlib.pyplot.imshow`, setting *interpolation* to 'nearest' will now always mean that the nearest-neighbor interpolation is performed. If you want the no-op interpolation to be performed, choose 'none'. * There were errors in how the tri-functions were handling input parameters that had to be fixed. If your tri-plots are not working correctly anymore, or you were working around apparent mistakes, please see issue #203 in the github tracker. When in doubt, use kwargs. * The 'symlog' scale had some bad behavior in previous versions. This has now been fixed and users should now be able to use it without frustrations. The fixes did result in some minor changes in appearance for some users who may have been depending on the bad behavior. * There is now a common set of markers for all plotting functions. Previously, some markers existed only for :meth:`~matplotlib.pyplot.scatter` or just for :meth:`~matplotlib.pyplot.plot`. This is now no longer the case. This merge did result in a conflict. The string 'd' now means "thin diamond" while 'D' will mean "regular diamond". Changes beyond 0.99.x ===================== * The default behavior of :meth:`matplotlib.axes.Axes.set_xlim`, :meth:`matplotlib.axes.Axes.set_ylim`, and :meth:`matplotlib.axes.Axes.axis`, and their corresponding pyplot functions, has been changed: when view limits are set explicitly with one of these methods, autoscaling is turned off for the matching axis. A new *auto* kwarg is available to control this behavior. The limit kwargs have been renamed to *left* and *right* instead of *xmin* and *xmax*, and *bottom* and *top* instead of *ymin* and *ymax*. The old names may still be used, however. * There are five new Axes methods with corresponding pyplot functions to facilitate autoscaling, tick location, and tick label formatting, and the general appearance of ticks and tick labels: + :meth:`matplotlib.axes.Axes.autoscale` turns autoscaling on or off, and applies it. + :meth:`matplotlib.axes.Axes.margins` sets margins used to autoscale the :attr:`matplotlib.axes.Axes.viewLim` based on the :attr:`matplotlib.axes.Axes.dataLim`. + :meth:`matplotlib.axes.Axes.locator_params` allows one to adjust axes locator parameters such as *nbins*. + :meth:`matplotlib.axes.Axes.ticklabel_format` is a convenience method for controlling the :class:`matplotlib.ticker.ScalarFormatter` that is used by default with linear axes. + :meth:`matplotlib.axes.Axes.tick_params` controls direction, size, visibility, and color of ticks and their labels. * The :meth:`matplotlib.axes.Axes.bar` method accepts a *error_kw* kwarg; it is a dictionary of kwargs to be passed to the errorbar function. * The :meth:`matplotlib.axes.Axes.hist` *color* kwarg now accepts a sequence of color specs to match a sequence of datasets. * The :class:`~matplotlib.collections.EllipseCollection` has been changed in two ways: + There is a new *units* option, 'xy', that scales the ellipse with the data units. This matches the :class:'~matplotlib.patches.Ellipse` scaling. + The *height* and *width* kwargs have been changed to specify the height and width, again for consistency with :class:`~matplotlib.patches.Ellipse`, and to better match their names; previously they specified the half-height and half-width. * There is a new rc parameter ``axes.color_cycle``, and the color cycle is now independent of the rc parameter ``lines.color``. :func:`matplotlib.Axes.set_default_color_cycle` is deprecated. * You can now print several figures to one pdf file and modify the document information dictionary of a pdf file. See the docstrings of the class :class:`matplotlib.backends.backend_pdf.PdfPages` for more information. * Removed configobj_ and `enthought.traits`_ packages, which are only required by the experimental traited config and are somewhat out of date. If needed, install them independently. .. _configobj: http://www.voidspace.org.uk/python/configobj.html .. _`enthought.traits`: http://code.enthought.com/projects/traits * The new rc parameter ``savefig.extension`` sets the filename extension that is used by :meth:`matplotlib.figure.Figure.savefig` if its *fname* argument lacks an extension. * In an effort to simplify the backend API, all clipping rectangles and paths are now passed in using GraphicsContext objects, even on collections and images. Therefore:: draw_path_collection(self, master_transform, cliprect, clippath, clippath_trans, paths, all_transforms, offsets, offsetTrans, facecolors, edgecolors, linewidths, linestyles, antialiaseds, urls) # is now draw_path_collection(self, gc, master_transform, paths, all_transforms, offsets, offsetTrans, facecolors, edgecolors, linewidths, linestyles, antialiaseds, urls) draw_quad_mesh(self, master_transform, cliprect, clippath, clippath_trans, meshWidth, meshHeight, coordinates, offsets, offsetTrans, facecolors, antialiased, showedges) # is now draw_quad_mesh(self, gc, master_transform, meshWidth, meshHeight, coordinates, offsets, offsetTrans, facecolors, antialiased, showedges) draw_image(self, x, y, im, bbox, clippath=None, clippath_trans=None) # is now draw_image(self, gc, x, y, im) * There are four new Axes methods with corresponding pyplot functions that deal with unstructured triangular grids: + :meth:`matplotlib.axes.Axes.tricontour` draws contour lines on a triangular grid. + :meth:`matplotlib.axes.Axes.tricontourf` draws filled contours on a triangular grid. + :meth:`matplotlib.axes.Axes.tripcolor` draws a pseudocolor plot on a triangular grid. + :meth:`matplotlib.axes.Axes.triplot` draws a triangular grid as lines and/or markers. Changes in 0.99 ====================== * pylab no longer provides a load and save function. These are available in matplotlib.mlab, or you can use numpy.loadtxt and numpy.savetxt for text files, or np.save and np.load for binary numpy arrays. * User-generated colormaps can now be added to the set recognized by :func:`matplotlib.cm.get_cmap`. Colormaps can be made the default and applied to the current image using :func:`matplotlib.pyplot.set_cmap`. * changed use_mrecords default to False in mlab.csv2rec since this is partially broken * Axes instances no longer have a "frame" attribute. Instead, use the new "spines" attribute. Spines is a dictionary where the keys are the names of the spines (e.g. 'left','right' and so on) and the values are the artists that draw the spines. For normal (rectilinear) axes, these artists are Line2D instances. For other axes (such as polar axes), these artists may be Patch instances. * Polar plots no longer accept a resolution kwarg. Instead, each Path must specify its own number of interpolation steps. This is unlikely to be a user-visible change -- if interpolation of data is required, that should be done before passing it to matplotlib. Changes for 0.98.x ================== * psd(), csd(), and cohere() will now automatically wrap negative frequency components to the beginning of the returned arrays. This is much more sensible behavior and makes them consistent with specgram(). The previous behavior was more of an oversight than a design decision. * Added new keyword parameters *nonposx*, *nonposy* to :class:`matplotlib.axes.Axes` methods that set log scale parameters. The default is still to mask out non-positive values, but the kwargs accept 'clip', which causes non-positive values to be replaced with a very small positive value. * Added new :func:`matplotlib.pyplot.fignum_exists` and :func:`matplotlib.pyplot.get_fignums`; they merely expose information that had been hidden in :mod:`matplotlib._pylab_helpers`. * Deprecated numerix package. * Added new :func:`matplotlib.image.imsave` and exposed it to the :mod:`matplotlib.pyplot` interface. * Remove support for pyExcelerator in exceltools -- use xlwt instead * Changed the defaults of acorr and xcorr to use usevlines=True, maxlags=10 and normed=True since these are the best defaults * Following keyword parameters for :class:`matplotlib.label.Label` are now deprecated and new set of parameters are introduced. The new parameters are given as a fraction of the font-size. Also, *scatteryoffsets*, *fancybox* and *columnspacing* are added as keyword parameters. ================ ================ Deprecated New ================ ================ pad borderpad labelsep labelspacing handlelen handlelength handlestextsep handletextpad axespad borderaxespad ================ ================ * Removed the configobj and experimental traits rc support * Modified :func:`matplotlib.mlab.psd`, :func:`matplotlib.mlab.csd`, :func:`matplotlib.mlab.cohere`, and :func:`matplotlib.mlab.specgram` to scale one-sided densities by a factor of 2. Also, optionally scale the densities by the sampling frequency, which gives true values of densities that can be integrated by the returned frequency values. This also gives better MATLAB compatibility. The corresponding :class:`matplotlib.axes.Axes` methods and :mod:`matplotlib.pyplot` functions were updated as well. * Font lookup now uses a nearest-neighbor approach rather than an exact match. Some fonts may be different in plots, but should be closer to what was requested. * :meth:`matplotlib.axes.Axes.set_xlim`, :meth:`matplotlib.axes.Axes.set_ylim` now return a copy of the :attr:`viewlim` array to avoid modify-in-place surprises. * :meth:`matplotlib.afm.AFM.get_fullname` and :meth:`matplotlib.afm.AFM.get_familyname` no longer raise an exception if the AFM file does not specify these optional attributes, but returns a guess based on the required FontName attribute. * Changed precision kwarg in :func:`matplotlib.pyplot.spy`; default is 0, and the string value 'present' is used for sparse arrays only to show filled locations. * :class:`matplotlib.collections.EllipseCollection` added. * Added ``angles`` kwarg to :func:`matplotlib.pyplot.quiver` for more flexible specification of the arrow angles. * Deprecated (raise NotImplementedError) all the mlab2 functions from :mod:`matplotlib.mlab` out of concern that some of them were not clean room implementations. * Methods :meth:`matplotlib.collections.Collection.get_offsets` and :meth:`matplotlib.collections.Collection.set_offsets` added to :class:`~matplotlib.collections.Collection` base class. * :attr:`matplotlib.figure.Figure.figurePatch` renamed :attr:`matplotlib.figure.Figure.patch`; :attr:`matplotlib.axes.Axes.axesPatch` renamed :attr:`matplotlib.axes.Axes.patch`; :attr:`matplotlib.axes.Axes.axesFrame` renamed :attr:`matplotlib.axes.Axes.frame`. :meth:`matplotlib.axes.Axes.get_frame`, which returns :attr:`matplotlib.axes.Axes.patch`, is deprecated. * Changes in the :class:`matplotlib.contour.ContourLabeler` attributes (:func:`matplotlib.pyplot.clabel` function) so that they all have a form like ``.labelAttribute``. The three attributes that are most likely to be used by end users, ``.cl``, ``.cl_xy`` and ``.cl_cvalues`` have been maintained for the moment (in addition to their renamed versions), but they are deprecated and will eventually be removed. * Moved several functions in :mod:`matplotlib.mlab` and :mod:`matplotlib.cbook` into a separate module :mod:`matplotlib.numerical_methods` because they were unrelated to the initial purpose of mlab or cbook and appeared more coherent elsewhere. Changes for 0.98.1 ================== * Removed broken :mod:`matplotlib.axes3d` support and replaced it with a non-implemented error pointing to 0.91.x Changes for 0.98.0 ================== * :func:`matplotlib.image.imread` now no longer always returns RGBA data---if the image is luminance or RGB, it will return a MxN or MxNx3 array if possible. Also uint8 is no longer always forced to float. * Rewrote the :class:`matplotlib.cm.ScalarMappable` callback infrastructure to use :class:`matplotlib.cbook.CallbackRegistry` rather than custom callback handling. Any users of :meth:`matplotlib.cm.ScalarMappable.add_observer` of the :class:`~matplotlib.cm.ScalarMappable` should use the :attr:`matplotlib.cm.ScalarMappable.callbacks` :class:`~matplotlib.cbook.CallbackRegistry` instead. * New axes function and Axes method provide control over the plot color cycle: :func:`matplotlib.axes.set_default_color_cycle` and :meth:`matplotlib.axes.Axes.set_color_cycle`. * matplotlib now requires Python 2.4, so :mod:`matplotlib.cbook` will no longer provide :class:`set`, :func:`enumerate`, :func:`reversed` or :func:`izip` compatibility functions. * In Numpy 1.0, bins are specified by the left edges only. The axes method :meth:`matplotlib.axes.Axes.hist` now uses future Numpy 1.3 semantics for histograms. Providing ``binedges``, the last value gives the upper-right edge now, which was implicitly set to +infinity in Numpy 1.0. This also means that the last bin doesn't contain upper outliers any more by default. * New axes method and pyplot function, :func:`~matplotlib.pyplot.hexbin`, is an alternative to :func:`~matplotlib.pyplot.scatter` for large datasets. It makes something like a :func:`~matplotlib.pyplot.pcolor` of a 2-D histogram, but uses hexagonal bins. * New kwarg, ``symmetric``, in :class:`matplotlib.ticker.MaxNLocator` allows one require an axis to be centered around zero. * Toolkits must now be imported from ``mpl_toolkits`` (not ``matplotlib.toolkits``) Notes about the transforms refactoring -------------------------------------- A major new feature of the 0.98 series is a more flexible and extensible transformation infrastructure, written in Python/Numpy rather than a custom C extension. The primary goal of this refactoring was to make it easier to extend matplotlib to support new kinds of projections. This is mostly an internal improvement, and the possible user-visible changes it allows are yet to come. See :mod:`matplotlib.transforms` for a description of the design of the new transformation framework. For efficiency, many of these functions return views into Numpy arrays. This means that if you hold on to a reference to them, their contents may change. If you want to store a snapshot of their current values, use the Numpy array method copy(). The view intervals are now stored only in one place -- in the :class:`matplotlib.axes.Axes` instance, not in the locator instances as well. This means locators must get their limits from their :class:`matplotlib.axis.Axis`, which in turn looks up its limits from the :class:`~matplotlib.axes.Axes`. If a locator is used temporarily and not assigned to an Axis or Axes, (e.g. in :mod:`matplotlib.contour`), a dummy axis must be created to store its bounds. Call :meth:`matplotlib.ticker.Locator.create_dummy_axis` to do so. The functionality of :class:`Pbox` has been merged with :class:`~matplotlib.transforms.Bbox`. Its methods now all return copies rather than modifying in place. The following lists many of the simple changes necessary to update code from the old transformation framework to the new one. In particular, methods that return a copy are named with a verb in the past tense, whereas methods that alter an object in place are named with a verb in the present tense. :mod:`matplotlib.transforms` ~~~~~~~~~~~~~~~~~~~~~~~~~~~~ ============================================================ ============================================================ Old method New method ============================================================ ============================================================ :meth:`Bbox.get_bounds` :attr:`transforms.Bbox.bounds` ------------------------------------------------------------ ------------------------------------------------------------ :meth:`Bbox.width` :attr:`transforms.Bbox.width` ------------------------------------------------------------ ------------------------------------------------------------ :meth:`Bbox.height` :attr:`transforms.Bbox.height` ------------------------------------------------------------ ------------------------------------------------------------ `Bbox.intervalx().get_bounds()` :attr:`transforms.Bbox.intervalx` `Bbox.intervalx().set_bounds()` [:attr:`Bbox.intervalx` is now a property.] ------------------------------------------------------------ ------------------------------------------------------------ `Bbox.intervaly().get_bounds()` :attr:`transforms.Bbox.intervaly` `Bbox.intervaly().set_bounds()` [:attr:`Bbox.intervaly` is now a property.] ------------------------------------------------------------ ------------------------------------------------------------ :meth:`Bbox.xmin` :attr:`transforms.Bbox.x0` or :attr:`transforms.Bbox.xmin` [1]_ ------------------------------------------------------------ ------------------------------------------------------------ :meth:`Bbox.ymin` :attr:`transforms.Bbox.y0` or :attr:`transforms.Bbox.ymin` [1]_ ------------------------------------------------------------ ------------------------------------------------------------ :meth:`Bbox.xmax` :attr:`transforms.Bbox.x1` or :attr:`transforms.Bbox.xmax` [1]_ ------------------------------------------------------------ ------------------------------------------------------------ :meth:`Bbox.ymax` :attr:`transforms.Bbox.y1` or :attr:`transforms.Bbox.ymax` [1]_ ------------------------------------------------------------ ------------------------------------------------------------ `Bbox.overlaps(bboxes)` `Bbox.count_overlaps(bboxes)` ------------------------------------------------------------ ------------------------------------------------------------ `bbox_all(bboxes)` `Bbox.union(bboxes)` [:meth:`transforms.Bbox.union` is a staticmethod.] ------------------------------------------------------------ ------------------------------------------------------------ `lbwh_to_bbox(l, b, w, h)` `Bbox.from_bounds(x0, y0, w, h)` [:meth:`transforms.Bbox.from_bounds` is a staticmethod.] ------------------------------------------------------------ ------------------------------------------------------------ `inverse_transform_bbox(trans, bbox)` `Bbox.inverse_transformed(trans)` ------------------------------------------------------------ ------------------------------------------------------------ `Interval.contains_open(v)` `interval_contains_open(tuple, v)` ------------------------------------------------------------ ------------------------------------------------------------ `Interval.contains(v)` `interval_contains(tuple, v)` ------------------------------------------------------------ ------------------------------------------------------------ `identity_transform()` :class:`matplotlib.transforms.IdentityTransform` ------------------------------------------------------------ ------------------------------------------------------------ `blend_xy_sep_transform(xtrans, ytrans)` `blended_transform_factory(xtrans, ytrans)` ------------------------------------------------------------ ------------------------------------------------------------ `scale_transform(xs, ys)` `Affine2D().scale(xs[, ys])` ------------------------------------------------------------ ------------------------------------------------------------ `get_bbox_transform(boxin, boxout)` `BboxTransform(boxin, boxout)` or `BboxTransformFrom(boxin)` or `BboxTransformTo(boxout)` ------------------------------------------------------------ ------------------------------------------------------------ `Transform.seq_xy_tup(points)` `Transform.transform(points)` ------------------------------------------------------------ ------------------------------------------------------------ `Transform.inverse_xy_tup(points)` `Transform.inverted().transform(points)` ============================================================ ============================================================ .. [1] The :class:`~matplotlib.transforms.Bbox` is bound by the points (x0, y0) to (x1, y1) and there is no defined order to these points, that is, x0 is not necessarily the left edge of the box. To get the left edge of the :class:`Bbox`, use the read-only property :attr:`~matplotlib.transforms.Bbox.xmin`. :mod:`matplotlib.axes` ~~~~~~~~~~~~~~~~~~~~~~ ============================================================ ============================================================ Old method New method ============================================================ ============================================================ `Axes.get_position()` :meth:`matplotlib.axes.Axes.get_position` [2]_ ------------------------------------------------------------ ------------------------------------------------------------ `Axes.set_position()` :meth:`matplotlib.axes.Axes.set_position` [3]_ ------------------------------------------------------------ ------------------------------------------------------------ `Axes.toggle_log_lineary()` :meth:`matplotlib.axes.Axes.set_yscale` [4]_ ------------------------------------------------------------ ------------------------------------------------------------ `Subplot` class removed. ============================================================ ============================================================ The :class:`Polar` class has moved to :mod:`matplotlib.projections.polar`. .. [2] :meth:`matplotlib.axes.Axes.get_position` used to return a list of points, now it returns a :class:`matplotlib.transforms.Bbox` instance. .. [3] :meth:`matplotlib.axes.Axes.set_position` now accepts either four scalars or a :class:`matplotlib.transforms.Bbox` instance. .. [4] Since the recfactoring allows for more than two scale types ('log' or 'linear'), it no longer makes sense to have a toggle. `Axes.toggle_log_lineary()` has been removed. :mod:`matplotlib.artist` ~~~~~~~~~~~~~~~~~~~~~~~~~~ ============================================================ ============================================================ Old method New method ============================================================ ============================================================ `Artist.set_clip_path(path)` `Artist.set_clip_path(path, transform)` [5]_ ============================================================ ============================================================ .. [5] :meth:`matplotlib.artist.Artist.set_clip_path` now accepts a :class:`matplotlib.path.Path` instance and a :class:`matplotlib.transforms.Transform` that will be applied to the path immediately before clipping. :mod:`matplotlib.collections` ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ ============================================================ ============================================================ Old method New method ============================================================ ============================================================ `linestyle` `linestyles` [6]_ ============================================================ ============================================================ .. [6] Linestyles are now treated like all other collection attributes, i.e. a single value or multiple values may be provided. :mod:`matplotlib.colors` ~~~~~~~~~~~~~~~~~~~~~~~~ ============================================================ ============================================================ Old method New method ============================================================ ============================================================ `ColorConvertor.to_rgba_list(c)` `ColorConvertor.to_rgba_array(c)` [:meth:`matplotlib.colors.ColorConvertor.to_rgba_array` returns an Nx4 Numpy array of RGBA color quadruples.] ============================================================ ============================================================ :mod:`matplotlib.contour` ~~~~~~~~~~~~~~~~~~~~~~~~~ ============================================================ ============================================================ Old method New method ============================================================ ============================================================ `Contour._segments` :meth:`matplotlib.contour.Contour.get_paths`` [Returns a list of :class:`matplotlib.path.Path` instances.] ============================================================ ============================================================ :mod:`matplotlib.figure` ~~~~~~~~~~~~~~~~~~~~~~~~ ============================================================ ============================================================ Old method New method ============================================================ ============================================================ `Figure.dpi.get()` / `Figure.dpi.set()` :attr:`matplotlib.figure.Figure.dpi` *(a property)* ============================================================ ============================================================ :mod:`matplotlib.patches` ~~~~~~~~~~~~~~~~~~~~~~~~~ ============================================================ ============================================================ Old method New method ============================================================ ============================================================ `Patch.get_verts()` :meth:`matplotlib.patches.Patch.get_path` [Returns a :class:`matplotlib.path.Path` instance] ============================================================ ============================================================ :mod:`matplotlib.backend_bases` ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ ============================================================ ============================================================ Old method New method ============================================================ ============================================================ `GraphicsContext.set_clip_rectangle(tuple)` `GraphicsContext.set_clip_rectangle(bbox)` ------------------------------------------------------------ ------------------------------------------------------------ `GraphicsContext.get_clip_path()` `GraphicsContext.get_clip_path()` [7]_ ------------------------------------------------------------ ------------------------------------------------------------ `GraphicsContext.set_clip_path()` `GraphicsContext.set_clip_path()` [8]_ ============================================================ ============================================================ :class:`~matplotlib.backend_bases.RendererBase` ``````````````````````````````````````````````` New methods: * :meth:`draw_path(self, gc, path, transform, rgbFace) ` * :meth:`draw_markers(self, gc, marker_path, marker_trans, path, trans, rgbFace) ` *[optional]* Changed methods: * `draw_image(self, x, y, im, bbox)` is now :meth:`draw_image(self, x, y, im, bbox, clippath, clippath_trans) ` Removed methods: * `draw_arc` * `draw_line_collection` * `draw_line` * `draw_lines` * `draw_point` * `draw_quad_mesh` * `draw_poly_collection` * `draw_polygon` * `draw_rectangle` * `draw_regpoly_collection` .. [7] :meth:`matplotlib.backend_bases.GraphicsContext.get_clip_path` returns a tuple of the form (*path*, *affine_transform*), where *path* is a :class:`matplotlib.path.Path` instance and *affine_transform* is a :class:`matplotlib.transforms.Affine2D` instance. .. [8] :meth:`matplotlib.backend_bases.GraphicsContext.set_clip_path` now only accepts a :class:`matplotlib.transforms.TransformedPath` instance. Changes for 0.91.2 ================== * For :func:`csv2rec`, checkrows=0 is the new default indicating all rows will be checked for type inference * A warning is issued when an image is drawn on log-scaled axes, since it will not log-scale the image data. * Moved :func:`rec2gtk` to :mod:`matplotlib.toolkits.gtktools` * Moved :func:`rec2excel` to :mod:`matplotlib.toolkits.exceltools` * Removed, dead/experimental ExampleInfo, Namespace and Importer code from :mod:`matplotlib.__init__` Changes for 0.91.1 ================== Changes for 0.91.0 ================== * Changed :func:`cbook.is_file_like` to :func:`cbook.is_writable_file_like` and corrected behavior. * Added ax kwarg to :func:`pyplot.colorbar` and :meth:`Figure.colorbar` so that one can specify the axes object from which space for the colorbar is to be taken, if one does not want to make the colorbar axes manually. * Changed :func:`cbook.reversed` so it yields a tuple rather than a (index, tuple). This agrees with the python reversed builtin, and cbook only defines reversed if python doesnt provide the builtin. * Made skiprows=1 the default on :func:`csv2rec` * The gd and paint backends have been deleted. * The errorbar method and function now accept additional kwargs so that upper and lower limits can be indicated by capping the bar with a caret instead of a straight line segment. * The :mod:`matplotlib.dviread` file now has a parser for files like psfonts.map and pdftex.map, to map TeX font names to external files. * The file :mod:`matplotlib.type1font` contains a new class for Type 1 fonts. Currently it simply reads pfa and pfb format files and stores the data in a way that is suitable for embedding in pdf files. In the future the class might actually parse the font to allow e.g. subsetting. * :mod:`matplotlib.FT2Font` now supports :meth:`FT_Attach_File`. In practice this can be used to read an afm file in addition to a pfa/pfb file, to get metrics and kerning information for a Type 1 font. * The :class:`AFM` class now supports querying CapHeight and stem widths. The get_name_char method now has an isord kwarg like get_width_char. * Changed :func:`pcolor` default to shading='flat'; but as noted now in the docstring, it is preferable to simply use the edgecolor kwarg. * The mathtext font commands (``\cal``, ``\rm``, ``\it``, ``\tt``) now behave as TeX does: they are in effect until the next font change command or the end of the grouping. Therefore uses of ``$\cal{R}$`` should be changed to ``${\cal R}$``. Alternatively, you may use the new LaTeX-style font commands (``\mathcal``, ``\mathrm``, ``\mathit``, ``\mathtt``) which do affect the following group, eg. ``$\mathcal{R}$``. * Text creation commands have a new default linespacing and a new ``linespacing`` kwarg, which is a multiple of the maximum vertical extent of a line of ordinary text. The default is 1.2; ``linespacing=2`` would be like ordinary double spacing, for example. * Changed default kwarg in :meth:`matplotlib.colors.Normalize.__init__`` to ``clip=False``; clipping silently defeats the purpose of the special over, under, and bad values in the colormap, thereby leading to unexpected behavior. The new default should reduce such surprises. * Made the emit property of :meth:`~matplotlib.axes.Axes.set_xlim` and :meth:`~matplotlib.axes.Axes.set_ylim` ``True`` by default; removed the Axes custom callback handling into a 'callbacks' attribute which is a :class:`~matplotlib.cbook.CallbackRegistry` instance. This now supports the 'xlim_changed' and 'ylim_changed' Axes events. Changes for 0.90.1 ================== :: The file dviread.py has a (very limited and fragile) dvi reader for usetex support. The API might change in the future so don't depend on it yet. Removed deprecated support for a float value as a gray-scale; now it must be a string, like '0.5'. Added alpha kwarg to ColorConverter.to_rgba_list. New method set_bounds(vmin, vmax) for formatters, locators sets the viewInterval and dataInterval from floats. Removed deprecated colorbar_classic. Line2D.get_xdata and get_ydata valid_only=False kwarg is replaced by orig=True. When True, it returns the original data, otherwise the processed data (masked, converted) Some modifications to the units interface. units.ConversionInterface.tickers renamed to units.ConversionInterface.axisinfo and it now returns a units.AxisInfo object rather than a tuple. This will make it easier to add axis info functionality (eg I added a default label on this iteration) w/o having to change the tuple length and hence the API of the client code everytime new functionality is added. Also, units.ConversionInterface.convert_to_value is now simply named units.ConversionInterface.convert. Axes.errorbar uses Axes.vlines and Axes.hlines to draw its error limits int he vertical and horizontal direction. As you'll see in the changes below, these funcs now return a LineCollection rather than a list of lines. The new return signature for errorbar is ylins, caplines, errorcollections where errorcollections is a xerrcollection, yerrcollection Axes.vlines and Axes.hlines now create and returns a LineCollection, not a list of lines. This is much faster. The kwarg signature has changed, so consult the docs MaxNLocator accepts a new Boolean kwarg ('integer') to force ticks to integer locations. Commands that pass an argument to the Text constructor or to Text.set_text() now accept any object that can be converted with '%s'. This affects xlabel(), title(), etc. Barh now takes a **kwargs dict instead of most of the old arguments. This helps ensure that bar and barh are kept in sync, but as a side effect you can no longer pass e.g. color as a positional argument. ft2font.get_charmap() now returns a dict that maps character codes to glyph indices (until now it was reversed) Moved data files into lib/matplotlib so that setuptools' develop mode works. Re-organized the mpl-data layout so that this source structure is maintained in the installation. (I.e. the 'fonts' and 'images' sub-directories are maintained in site-packages.). Suggest removing site-packages/matplotlib/mpl-data and ~/.matplotlib/ttffont.cache before installing Changes for 0.90.0 ================== :: All artists now implement a "pick" method which users should not call. Rather, set the "picker" property of any artist you want to pick on (the epsilon distance in points for a hit test) and register with the "pick_event" callback. See examples/pick_event_demo.py for details Bar, barh, and hist have "log" binary kwarg: log=True sets the ordinate to a log scale. Boxplot can handle a list of vectors instead of just an array, so vectors can have different lengths. Plot can handle 2-D x and/or y; it plots the columns. Added linewidth kwarg to bar and barh. Made the default Artist._transform None (rather than invoking identity_transform for each artist only to have it overridden later). Use artist.get_transform() rather than artist._transform, even in derived classes, so that the default transform will be created lazily as needed New LogNorm subclass of Normalize added to colors.py. All Normalize subclasses have new inverse() method, and the __call__() method has a new clip kwarg. Changed class names in colors.py to match convention: normalize -> Normalize, no_norm -> NoNorm. Old names are still available for now. Removed obsolete pcolor_classic command and method. Removed lineprops and markerprops from the Annotation code and replaced them with an arrow configurable with kwarg arrowprops. See examples/annotation_demo.py - JDH Changes for 0.87.7 ================== :: Completely reworked the annotations API because I found the old API cumbersome. The new design is much more legible and easy to read. See matplotlib.text.Annotation and examples/annotation_demo.py markeredgecolor and markerfacecolor cannot be configured in matplotlibrc any more. Instead, markers are generally colored automatically based on the color of the line, unless marker colors are explicitely set as kwargs - NN Changed default comment character for load to '#' - JDH math_parse_s_ft2font_svg from mathtext.py & mathtext2.py now returns width, height, svg_elements. svg_elements is an instance of Bunch ( cmbook.py) and has the attributes svg_glyphs and svg_lines, which are both lists. Renderer.draw_arc now takes an additional parameter, rotation. It specifies to draw the artist rotated in degrees anti- clockwise. It was added for rotated ellipses. Renamed Figure.set_figsize_inches to Figure.set_size_inches to better match the get method, Figure.get_size_inches. Removed the copy_bbox_transform from transforms.py; added shallowcopy methods to all transforms. All transforms already had deepcopy methods. FigureManager.resize(width, height): resize the window specified in pixels barh: x and y args have been renamed to width and bottom respectively, and their order has been swapped to maintain a (position, value) order. bar and barh: now accept kwarg 'edgecolor'. bar and barh: The left, height, width and bottom args can now all be scalars or sequences; see docstring. barh: now defaults to edge aligned instead of center aligned bars bar, barh and hist: Added a keyword arg 'align' that controls between edge or center bar alignment. Collections: PolyCollection and LineCollection now accept vertices or segments either in the original form [(x,y), (x,y), ...] or as a 2D numerix array, with X as the first column and Y as the second. Contour and quiver output the numerix form. The transforms methods Bbox.update() and Transformation.seq_xy_tups() now accept either form. Collections: LineCollection is now a ScalarMappable like PolyCollection, etc. Specifying a grayscale color as a float is deprecated; use a string instead, e.g., 0.75 -> '0.75'. Collections: initializers now accept any mpl color arg, or sequence of such args; previously only a sequence of rgba tuples was accepted. Colorbar: completely new version and api; see docstring. The original version is still accessible as colorbar_classic, but is deprecated. Contourf: "extend" kwarg replaces "clip_ends"; see docstring. Masked array support added to pcolormesh. Modified aspect-ratio handling: Removed aspect kwarg from imshow Axes methods: set_aspect(self, aspect, adjustable=None, anchor=None) set_adjustable(self, adjustable) set_anchor(self, anchor) Pylab interface: axis('image') Backend developers: ft2font's load_char now takes a flags argument, which you can OR together from the LOAD_XXX constants. Changes for 0.86 ================ :: Matplotlib data is installed into the matplotlib module. This is similar to package_data. This should get rid of having to check for many possibilities in _get_data_path(). The MATPLOTLIBDATA env key is still checked first to allow for flexibility. 1) Separated the color table data from cm.py out into a new file, _cm.py, to make it easier to find the actual code in cm.py and to add new colormaps. Everything from _cm.py is imported by cm.py, so the split should be transparent. 2) Enabled automatic generation of a colormap from a list of colors in contour; see modified examples/contour_demo.py. 3) Support for imshow of a masked array, with the ability to specify colors (or no color at all) for masked regions, and for regions that are above or below the normally mapped region. See examples/image_masked.py. 4) In support of the above, added two new classes, ListedColormap, and no_norm, to colors.py, and modified the Colormap class to include common functionality. Added a clip kwarg to the normalize class. Changes for 0.85 ================ :: Made xtick and ytick separate props in rc made pos=None the default for tick formatters rather than 0 to indicate "not supplied" Removed "feature" of minor ticks which prevents them from overlapping major ticks. Often you want major and minor ticks at the same place, and can offset the major ticks with the pad. This could be made configurable Changed the internal structure of contour.py to a more OO style. Calls to contour or contourf in axes.py or pylab.py now return a ContourSet object which contains references to the LineCollections or PolyCollections created by the call, as well as the configuration variables that were used. The ContourSet object is a "mappable" if a colormap was used. Added a clip_ends kwarg to contourf. From the docstring: * clip_ends = True If False, the limits for color scaling are set to the minimum and maximum contour levels. True (default) clips the scaling limits. Example: if the contour boundaries are V = [-100, 2, 1, 0, 1, 2, 100], then the scaling limits will be [-100, 100] if clip_ends is False, and [-3, 3] if clip_ends is True. Added kwargs linewidths, antialiased, and nchunk to contourf. These are experimental; see the docstring. Changed Figure.colorbar(): kw argument order changed; if mappable arg is a non-filled ContourSet, colorbar() shows lines instead hof polygons. if mappable arg is a filled ContourSet with clip_ends=True, the endpoints are not labelled, so as to give the correct impression of open-endedness. Changed LineCollection.get_linewidths to get_linewidth, for consistency. Changes for 0.84 ================ :: Unified argument handling between hlines and vlines. Both now take optionally a fmt argument (as in plot) and a keyword args that can be passed onto Line2D. Removed all references to "data clipping" in rc and lines.py since these were not used and not optimized. I'm sure they'll be resurrected later with a better implementation when needed. 'set' removed - no more deprecation warnings. Use 'setp' instead. Backend developers: Added flipud method to image and removed it from to_str. Removed origin kwarg from backend.draw_image. origin is handled entirely by the frontend now. Changes for 0.83 ================ :: - Made HOME/.matplotlib the new config dir where the matplotlibrc file, the ttf.cache, and the tex.cache live. The new default filenames in .matplotlib have no leading dot and are not hidden. Eg, the new names are matplotlibrc, tex.cache, and ttffont.cache. This is how ipython does it so it must be right. If old files are found, a warning is issued and they are moved to the new location. - backends/__init__.py no longer imports new_figure_manager, draw_if_interactive and show from the default backend, but puts these imports into a call to pylab_setup. Also, the Toolbar is no longer imported from WX/WXAgg. New usage: from backends import pylab_setup new_figure_manager, draw_if_interactive, show = pylab_setup() - Moved Figure.get_width_height() to FigureCanvasBase. It now returns int instead of float. Changes for 0.82 ================ :: - toolbar import change in GTKAgg, GTKCairo and WXAgg - Added subplot config tool to GTK* backends -- note you must now import the NavigationToolbar2 from your backend of choice rather than from backend_gtk because it needs to know about the backend specific canvas -- see examples/embedding_in_gtk2.py. Ditto for wx backend -- see examples/embedding_in_wxagg.py - hist bin change Sean Richards notes there was a problem in the way we created the binning for histogram, which made the last bin underrepresented. From his post: I see that hist uses the linspace function to create the bins and then uses searchsorted to put the values in their correct bin. Thats all good but I am confused over the use of linspace for the bin creation. I wouldn't have thought that it does what is needed, to quote the docstring it creates a "Linear spaced array from min to max". For it to work correctly shouldn't the values in the bins array be the same bound for each bin? (i.e. each value should be the lower bound of a bin). To provide the correct bins for hist would it not be something like def bins(xmin, xmax, N): if N==1: return xmax dx = (xmax-xmin)/N # instead of N-1 return xmin + dx*arange(N) This suggestion is implemented in 0.81. My test script with these changes does not reveal any bias in the binning from matplotlib.numerix.mlab import randn, rand, zeros, Float from matplotlib.mlab import hist, mean Nbins = 50 Ntests = 200 results = zeros((Ntests,Nbins), typecode=Float) for i in range(Ntests): print 'computing', i x = rand(10000) n, bins = hist(x, Nbins) results[i] = n print mean(results) Changes for 0.81 ================ :: - pylab and artist "set" functions renamed to setp to avoid clash with python2.4 built-in set. Current version will issue a deprecation warning which will be removed in future versions - imshow interpolation arguments changes for advanced interpolation schemes. See help imshow, particularly the interpolation, filternorm and filterrad kwargs - Support for masked arrays has been added to the plot command and to the Line2D object. Only the valid points are plotted. A "valid_only" kwarg was added to the get_xdata() and get_ydata() methods of Line2D; by default it is False, so that the original data arrays are returned. Setting it to True returns the plottable points. - contour changes: Masked arrays: contour and contourf now accept masked arrays as the variable to be contoured. Masking works correctly for contour, but a bug remains to be fixed before it will work for contourf. The "badmask" kwarg has been removed from both functions. Level argument changes: Old version: a list of levels as one of the positional arguments specified the lower bound of each filled region; the upper bound of the last region was taken as a very large number. Hence, it was not possible to specify that z values between 0 and 1, for example, be filled, and that values outside that range remain unfilled. New version: a list of N levels is taken as specifying the boundaries of N-1 z ranges. Now the user has more control over what is colored and what is not. Repeated calls to contourf (with different colormaps or color specifications, for example) can be used to color different ranges of z. Values of z outside an expected range are left uncolored. Example: Old: contourf(z, [0, 1, 2]) would yield 3 regions: 0-1, 1-2, and >2. New: it would yield 2 regions: 0-1, 1-2. If the same 3 regions were desired, the equivalent list of levels would be [0, 1, 2, 1e38]. Changes for 0.80 ================ :: - xlim/ylim/axis always return the new limits regardless of arguments. They now take kwargs which allow you to selectively change the upper or lower limits while leaving unnamed limits unchanged. See help(xlim) for example Changes for 0.73 ================ :: - Removed deprecated ColormapJet and friends - Removed all error handling from the verbose object - figure num of zero is now allowed Changes for 0.72 ================ :: - Line2D, Text, and Patch copy_properties renamed update_from and moved into artist base class - LineCollecitons.color renamed to LineCollections.set_color for consistency with set/get introspection mechanism, - pylab figure now defaults to num=None, which creates a new figure with a guaranteed unique number - contour method syntax changed - now it is MATLAB compatible unchanged: contour(Z) old: contour(Z, x=Y, y=Y) new: contour(X, Y, Z) see http://matplotlib.sf.net/matplotlib.pylab.html#-contour - Increased the default resolution for save command. - Renamed the base attribute of the ticker classes to _base to avoid conflict with the base method. Sitt for subs - subs=none now does autosubbing in the tick locator. - New subplots that overlap old will delete the old axes. If you do not want this behavior, use fig.add_subplot or the axes command Changes for 0.71 ================ :: Significant numerix namespace changes, introduced to resolve namespace clashes between python built-ins and mlab names. Refactored numerix to maintain separate modules, rather than folding all these names into a single namespace. See the following mailing list threads for more information and background http://sourceforge.net/mailarchive/forum.php?thread_id=6398890&forum_id=36187 http://sourceforge.net/mailarchive/forum.php?thread_id=6323208&forum_id=36187 OLD usage from matplotlib.numerix import array, mean, fft NEW usage from matplotlib.numerix import array from matplotlib.numerix.mlab import mean from matplotlib.numerix.fft import fft numerix dir structure mirrors numarray (though it is an incomplete implementation) numerix numerix/mlab numerix/linear_algebra numerix/fft numerix/random_array but of course you can use 'numerix : Numeric' and still get the symbols. pylab still imports most of the symbols from Numerix, MLab, fft, etc, but is more cautious. For names that clash with python names (min, max, sum), pylab keeps the builtins and provides the numeric versions with an a* prefix, eg (amin, amax, asum) Changes for 0.70 ================ :: MplEvent factored into a base class Event and derived classes MouseEvent and KeyEvent Removed definct set_measurement in wx toolbar Changes for 0.65.1 ================== :: removed add_axes and add_subplot from backend_bases. Use figure.add_axes and add_subplot instead. The figure now manages the current axes with gca and sca for get and set current axe. If you have code you are porting which called, eg, figmanager.add_axes, you can now simply do figmanager.canvas.figure.add_axes. Changes for 0.65 ================ :: mpl_connect and mpl_disconnect in the MATLAB interface renamed to connect and disconnect Did away with the text methods for angle since they were ambiguous. fontangle could mean fontstyle (obligue, etc) or the rotation of the text. Use style and rotation instead. Changes for 0.63 ================ :: Dates are now represented internally as float days since 0001-01-01, UTC. All date tickers and formatters are now in matplotlib.dates, rather than matplotlib.tickers converters have been abolished from all functions and classes. num2date and date2num are now the converter functions for all date plots Most of the date tick locators have a different meaning in their constructors. In the prior implementation, the first argument was a base and multiples of the base were ticked. Eg HourLocator(5) # old: tick every 5 minutes In the new implementation, the explicit points you want to tick are provided as a number or sequence HourLocator(range(0,5,61)) # new: tick every 5 minutes This gives much greater flexibility. I have tried to make the default constructors (no args) behave similarly, where possible. Note that YearLocator still works under the base/multiple scheme. The difference between the YearLocator and the other locators is that years are not recurrent. Financial functions: matplotlib.finance.quotes_historical_yahoo(ticker, date1, date2) date1, date2 are now datetime instances. Return value is a list of quotes where the quote time is a float - days since gregorian start, as returned by date2num See examples/finance_demo.py for example usage of new API Changes for 0.61 ================ :: canvas.connect is now deprecated for event handling. use mpl_connect and mpl_disconnect instead. The callback signature is func(event) rather than func(widget, evet) Changes for 0.60 ================ :: ColormapJet and Grayscale are deprecated. For backwards compatibility, they can be obtained either by doing from matplotlib.cm import ColormapJet or from matplotlib.matlab import * They are replaced by cm.jet and cm.grey Changes for 0.54.3 ================== :: removed the set_default_font / get_default_font scheme from the font_manager to unify customization of font defaults with the rest of the rc scheme. See examples/font_properties_demo.py and help(rc) in matplotlib.matlab. Changes for 0.54 ================ MATLAB interface ---------------- dpi ~~~ Several of the backends used a PIXELS_PER_INCH hack that I added to try and make images render consistently across backends. This just complicated matters. So you may find that some font sizes and line widths appear different than before. Apologies for the inconvenience. You should set the dpi to an accurate value for your screen to get true sizes. pcolor and scatter ~~~~~~~~~~~~~~~~~~ There are two changes to the MATLAB interface API, both involving the patch drawing commands. For efficiency, pcolor and scatter have been rewritten to use polygon collections, which are a new set of objects from matplotlib.collections designed to enable efficient handling of large collections of objects. These new collections make it possible to build large scatter plots or pcolor plots with no loops at the python level, and are significantly faster than their predecessors. The original pcolor and scatter functions are retained as pcolor_classic and scatter_classic. The return value from pcolor is a PolyCollection. Most of the propertes that are available on rectangles or other patches are also available on PolyCollections, eg you can say:: c = scatter(blah, blah) c.set_linewidth(1.0) c.set_facecolor('r') c.set_alpha(0.5) or:: c = scatter(blah, blah) set(c, 'linewidth', 1.0, 'facecolor', 'r', 'alpha', 0.5) Because the collection is a single object, you no longer need to loop over the return value of scatter or pcolor to set properties for the entire list. If you want the different elements of a collection to vary on a property, eg to have different line widths, see matplotlib.collections for a discussion on how to set the properties as a sequence. For scatter, the size argument is now in points^2 (the area of the symbol in points) as in MATLAB and is not in data coords as before. Using sizes in data coords caused several problems. So you will need to adjust your size arguments accordingly or use scatter_classic. mathtext spacing ~~~~~~~~~~~~~~~~ For reasons not clear to me (and which I'll eventually fix) spacing no longer works in font groups. However, I added three new spacing commands which compensate for this '\ ' (regular space), '\/' (small space) and '\hspace{frac}' where frac is a fraction of fontsize in points. You will need to quote spaces in font strings, is:: title(r'$\rm{Histogram\ of\ IQ:}\ \mu=100,\ \sigma=15$') Object interface - Application programmers ------------------------------------------ Autoscaling ~~~~~~~~~~~ The x and y axis instances no longer have autoscale view. These are handled by axes.autoscale_view Axes creation ~~~~~~~~~~~~~ You should not instantiate your own Axes any more using the OO API. Rather, create a Figure as before and in place of:: f = Figure(figsize=(5,4), dpi=100) a = Subplot(f, 111) f.add_axis(a) use:: f = Figure(figsize=(5,4), dpi=100) a = f.add_subplot(111) That is, add_axis no longer exists and is replaced by:: add_axes(rect, axisbg=defaultcolor, frameon=True) add_subplot(num, axisbg=defaultcolor, frameon=True) Artist methods ~~~~~~~~~~~~~~ If you define your own Artists, you need to rename the _draw method to draw Bounding boxes ~~~~~~~~~~~~~~ matplotlib.transforms.Bound2D is replaced by matplotlib.transforms.Bbox. If you want to construct a bbox from left, bottom, width, height (the signature for Bound2D), use matplotlib.transforms.lbwh_to_bbox, as in bbox = clickBBox = lbwh_to_bbox(left, bottom, width, height) The Bbox has a different API than the Bound2D. Eg, if you want to get the width and height of the bbox OLD:: width = fig.bbox.x.interval() height = fig.bbox.y.interval() New:: width = fig.bbox.width() height = fig.bbox.height() Object constructors ~~~~~~~~~~~~~~~~~~~ You no longer pass the bbox, dpi, or transforms to the various Artist constructors. The old way or creating lines and rectangles was cumbersome because you had to pass so many attributes to the Line2D and Rectangle classes not related directly to the gemoetry and properties of the object. Now default values are added to the object when you call axes.add_line or axes.add_patch, so they are hidden from the user. If you want to define a custom transformation on these objects, call o.set_transform(trans) where trans is a Transformation instance. In prior versions of you wanted to add a custom line in data coords, you would have to do l = Line2D(dpi, bbox, x, y, color = color, transx = transx, transy = transy, ) now all you need is l = Line2D(x, y, color=color) and the axes will set the transformation for you (unless you have set your own already, in which case it will eave it unchanged) Transformations ~~~~~~~~~~~~~~~ The entire transformation architecture has been rewritten. Previously the x and y transformations where stored in the xaxis and yaxis insstances. The problem with this approach is it only allows for separable transforms (where the x and y transformations don't depend on one another). But for cases like polar, they do. Now transformations operate on x,y together. There is a new base class matplotlib.transforms.Transformation and two concrete implemetations, matplotlib.transforms.SeparableTransformation and matplotlib.transforms.Affine. The SeparableTransformation is constructed with the bounding box of the input (this determines the rectangular coordinate system of the input, ie the x and y view limits), the bounding box of the display, and possibily nonlinear transformations of x and y. The 2 most frequently used transformations, data cordinates -> display and axes coordinates -> display are available as ax.transData and ax.transAxes. See alignment_demo.py which uses axes coords. Also, the transformations should be much faster now, for two reasons * they are written entirely in extension code * because they operate on x and y together, they can do the entire transformation in one loop. Earlier I did something along the lines of:: xt = sx*func(x) + tx yt = sy*func(y) + ty Although this was done in numerix, it still involves 6 length(x) for-loops (the multiply, add, and function evaluation each for x and y). Now all of that is done in a single pass. If you are using transformations and bounding boxes to get the cursor position in data coordinates, the method calls are a little different now. See the updated examples/coords_demo.py which shows you how to do this. Likewise, if you are using the artist bounding boxes to pick items on the canvas with the GUI, the bbox methods are somewhat different. You will need to see the updated examples/object_picker.py. See unit/transforms_unit.py for many examples using the new transformations. Changes for 0.50 ================ :: * refactored Figure class so it is no longer backend dependent. FigureCanvasBackend takes over the backend specific duties of the Figure. matplotlib.backend_bases.FigureBase moved to matplotlib.figure.Figure. * backends must implement FigureCanvasBackend (the thing that controls the figure and handles the events if any) and FigureManagerBackend (wraps the canvas and the window for MATLAB interface). FigureCanvasBase implements a backend switching mechanism * Figure is now an Artist (like everything else in the figure) and is totally backend independent * GDFONTPATH renamed to TTFPATH * backend faceColor argument changed to rgbFace * colormap stuff moved to colors.py * arg_to_rgb in backend_bases moved to class ColorConverter in colors.py * GD users must upgrade to gd-2.0.22 and gdmodule-0.52 since new gd features (clipping, antialiased lines) are now used. * Renderer must implement points_to_pixels Migrating code: MATLAB interface: The only API change for those using the MATLAB interface is in how you call figure redraws for dynamically updating figures. In the old API, you did fig.draw() In the new API, you do manager = get_current_fig_manager() manager.canvas.draw() See the examples system_monitor.py, dynamic_demo.py, and anim.py API There is one important API change for application developers. Figure instances used subclass GUI widgets that enabled them to be placed directly into figures. Eg, FigureGTK subclassed gtk.DrawingArea. Now the Figure class is independent of the backend, and FigureCanvas takes over the functionality formerly handled by Figure. In order to include figures into your apps, you now need to do, for example # gtk example fig = Figure(figsize=(5,4), dpi=100) canvas = FigureCanvasGTK(fig) # a gtk.DrawingArea canvas.show() vbox.pack_start(canvas) If you use the NavigationToolbar, this in now intialized with a FigureCanvas, not a Figure. The examples embedding_in_gtk.py, embedding_in_gtk2.py, and mpl_with_glade.py all reflect the new API so use these as a guide. All prior calls to figure.draw() and figure.print_figure(args) should now be canvas.draw() and canvas.print_figure(args) Apologies for the inconvenience. This refactorization brings significant more freedom in developing matplotlib and should bring better plotting capabilities, so I hope the inconvenience is worth it. Changes for 0.42 ================ :: * Refactoring AxisText to be backend independent. Text drawing and get_window_extent functionality will be moved to the Renderer. * backend_bases.AxisTextBase is now text.Text module * All the erase and reset functionality removed frmo AxisText - not needed with double buffered drawing. Ditto with state change. Text instances have a get_prop_tup method that returns a hashable tuple of text properties which you can use to see if text props have changed, eg by caching a font or layout instance in a dict with the prop tup as a key -- see RendererGTK.get_pango_layout in backend_gtk for an example. * Text._get_xy_display renamed Text.get_xy_display * Artist set_renderer and wash_brushes methods removed * Moved Legend class from matplotlib.axes into matplotlib.legend * Moved Tick, XTick, YTick, Axis, XAxis, YAxis from matplotlib.axes to matplotlib.axis * moved process_text_args to matplotlib.text * After getting Text handled in a backend independent fashion, the import process is much cleaner since there are no longer cyclic dependencies * matplotlib.matlab._get_current_fig_manager renamed to matplotlib.matlab.get_current_fig_manager to allow user access to the GUI window attribute, eg figManager.window for GTK and figManager.frame for wx Changes for 0.40 ================ :: - Artist * __init__ takes a DPI instance and a Bound2D instance which is the bounding box of the artist in display coords * get_window_extent returns a Bound2D instance * set_size is removed; replaced by bbox and dpi * the clip_gc method is removed. Artists now clip themselves with their box * added _clipOn boolean attribute. If True, gc clip to bbox. - AxisTextBase * Initialized with a transx, transy which are Transform instances * set_drawing_area removed * get_left_right and get_top_bottom are replaced by get_window_extent - Line2D Patches now take transx, transy * Initialized with a transx, transy which are Transform instances - Patches * Initialized with a transx, transy which are Transform instances - FigureBase attributes dpi is a DPI intance rather than scalar and new attribute bbox is a Bound2D in display coords, and I got rid of the left, width, height, etc... attributes. These are now accessible as, for example, bbox.x.min is left, bbox.x.interval() is width, bbox.y.max is top, etc... - GcfBase attribute pagesize renamed to figsize - Axes * removed figbg attribute * added fig instance to __init__ * resizing is handled by figure call to resize. - Subplot * added fig instance to __init__ - Renderer methods for patches now take gcEdge and gcFace instances. gcFace=None takes the place of filled=False - True and False symbols provided by cbook in a python2.3 compatible way - new module transforms supplies Bound1D, Bound2D and Transform instances and more - Changes to the MATLAB helpers API * _matlab_helpers.GcfBase is renamed by Gcf. Backends no longer need to derive from this class. Instead, they provide a factory function new_figure_manager(num, figsize, dpi). The destroy method of the GcfDerived from the backends is moved to the derived FigureManager. * FigureManagerBase moved to backend_bases * Gcf.get_all_figwins renamed to Gcf.get_all_fig_managers Jeremy: Make sure to self._reset = False in AxisTextWX._set_font. This was something missing in my backend code.