"""
Prototype plottable object support.
The main point of this prototype is to provide a clean separation between
the style (plotter details: color, grids, widgets, etc.) and substance
(application details: which information to plot). Programmers should not be
dictating line colours and plotting symbols.
Unlike the problem of style in CSS or Word, where most paragraphs look
the same, each line on a graph has to be distinguishable from its neighbours.
Our solution is to provide parametric styles, in which a number of
different classes of object (e.g., reflectometry data, reflectometry
theory) representing multiple graph primitives cycle through a colour
palette provided by the underlying plotter.
A full treatment would provide perceptual dimensions of prominence and
distinctiveness rather than a simple colour number.
"""
# Design question: who owns the color?
# Is it a property of the plottable?
# Or of the plottable as it exists on the graph?
# Or if the graph?
# If a plottable can appear on multiple graphs, in some case the
# color should be the same on each graph in which it appears, and
# in other cases (where multiple plottables from different graphs
# coexist), the color should be assigned by the graph. In any case
# once a plottable is placed on the graph its color should not
# depend on the other plottables on the graph. Furthermore, if
# a plottable is added and removed from a graph and added again,
# it may be nice, but not necessary, to have the color persist.
#
# The safest approach seems to be to give ownership of color
# to the graph, which will allocate the colors along with the
# plottable. The plottable will need to return the number of
# colors that are needed.
#
# The situation is less clear for symbols. It is less clear
# how much the application requires that symbols be unique across
# all plots on the graph.
# Support for ancient python versions
import copy
import numpy
import sys
import logging
if 'any' not in dir(__builtins__):
[docs] def any(L):
for cond in L:
if cond:
return True
return False
[docs] def all(L):
for cond in L:
if not cond:
return False
return True
[docs]class Graph(object):
"""
Generic plottables graph structure.
Plot styles are based on color/symbol lists. The user gets to select
the list of colors/symbols/sizes to choose from, not the application
developer. The programmer only gets to add/remove lines from the
plot and move to the next symbol/color.
Another dimension is prominence, which refers to line sizes/point sizes.
Axis transformations allow the user to select the coordinate view
which provides clarity to the data. There is no way we can provide
every possible transformation for every application generically, so
the plottable objects themselves will need to provide the transformations.
Here are some examples from reflectometry: ::
independent: x -> f(x)
monitor scaling: y -> M*y
log: y -> log(y if y > min else min)
cos: y -> cos(y*pi/180)
dependent: x -> f(x,y)
Q4: y -> y*x^4
fresnel: y -> y*fresnel(x)
coordinated: x,y = f(x,y)
Q: x -> 2*pi/L (cos(x*pi/180) - cos(y*pi/180))
y -> 2*pi/L (sin(x*pi/180) + sin(y*pi/180))
reducing: x,y = f(x1,x2,y1,y2)
spin asymmetry: x -> x1, y -> (y1 - y2)/(y1 + y2)
vector net: x -> x1, y -> y1*cos(y2*pi/180)
Multiple transformations are possible, such as Q4 spin asymmetry
Axes have further complications in that the units of what are being
plotted should correspond to the units on the axes. Plotting multiple
types on the same graph should be handled gracefully, e.g., by creating
a separate tab for each available axis type, breaking into subplots,
showing multiple axes on the same plot, or generating inset plots.
Ultimately the decision should be left to the user.
Graph properties such as grids/crosshairs should be under user control,
as should the sizes of items such as axis fonts, etc. No direct
access will be provided to the application.
Axis limits are mostly under user control. If the user has zoomed or
panned then those limits are preserved even if new data is plotted.
The exception is when, e.g., scanning through a set of related lines
in which the user may want to fix the limits so that user can compare
the values directly. Another exception is when creating multiple
graphs sharing the same limits, though this case may be important
enough that it is handled by the graph widget itself. Axis limits
will of course have to understand the effects of axis transformations.
High level plottable objects may be composed of low level primitives.
Operations such as legend/hide/show copy/paste, etc. need to operate
on these primitives as a group. E.g., allowing the user to have a
working canvas where they can drag lines they want to save and annotate
them.
Graphs need to be printable. A page layout program for entire plots
would be nice.
"""
[docs] def xaxis(self, name, units):
"""
Properties of the x axis.
"""
if units != "":
name = "%s (%s)" % (name, units)
self.prop["xlabel"] = name
self.prop["xunit"] = units
self.prop["xlabel_base"] = name
self.prop["xunit_base"] = units
[docs] def yaxis(self, name, units):
"""
Properties of the y axis.
"""
if units != "":
name = "%s (%s)" % (name, units)
self.prop["ylabel"] = name
self.prop["yunit"] = units
self.prop["ylabel_base"] = name
self.prop["yunit_base"] = units
[docs] def title(self, name):
"""
Graph title
"""
self.prop["title"] = name
[docs] def get(self, key):
"""
Get the graph properties
"""
if key == "color":
return self.color
elif key == "symbol":
return self.symbol
else:
return self.prop[key]
[docs] def set(self, **kw):
"""
Set the graph properties
"""
for key in kw:
if key == "color":
self.color = kw[key] % len(self.colorlist)
elif key == "symbol":
self.symbol = kw[key] % len(self.symbollist)
else:
self.prop[key] = kw[key]
[docs] def isPlotted(self, plottable):
"""Return True is the plottable is already on the graph"""
if plottable in self.plottables:
return True
return False
[docs] def add(self, plottable, color=None):
"""Add a new plottable to the graph"""
# record the colour associated with the plottable
if not plottable in self.plottables:
if color is not None:
self.plottables[plottable] = color
else:
self.color += plottable.colors()
self.plottables[plottable] = self.color
plottable.custom_color = self.color
[docs] def changed(self):
"""Detect if any graphed plottables have changed"""
return any([p.changed() for p in self.plottables])
[docs] def get_range(self):
"""
Return the range of all displayed plottables
"""
min_value = None
max_value = None
for p in self.plottables:
if p.hidden == True:
continue
if not p.x is None:
for x_i in p.x:
if min_value is None or x_i < min_value:
min_value = x_i
if max_value is None or x_i > max_value:
max_value = x_i
return min_value, max_value
[docs] def replace(self, plottable):
"""Replace an existing plottable from the graph"""
selected_color = None
selected_plottable = None
for p in list(self.plottables.keys()):
if plottable.id == p.id:
selected_plottable = p
selected_color = self.plottables[p]
break
if selected_plottable is not None and selected_color is not None:
del self.plottables[selected_plottable]
self.plottables[plottable] = selected_color
[docs] def delete(self, plottable):
"""Remove an existing plottable from the graph"""
if plottable in self.plottables:
del self.plottables[plottable]
self.color = len(self.plottables)
[docs] def reset_scale(self):
"""
Resets the scale transformation data to the underlying data
"""
for p in self.plottables:
p.reset_view()
[docs] def reset(self):
"""Reset the graph."""
self.color = -1
self.symbol = 0
self.prop = {"xlabel": "", "xunit": None,
"ylabel": "", "yunit": None,
"title": ""}
self.plottables = {}
[docs] def _make_labels(self):
"""
"""
# Find groups of related plottables
sets = {}
for p in self.plottables:
if p.__class__ in sets:
sets[p.__class__].append(p)
else:
sets[p.__class__] = [p]
# Ask each plottable class for a set of unique labels
labels = {}
for c in sets:
labels.update(c.labels(sets[c]))
return labels
[docs] def get_plottable(self, name):
"""
Return the plottable with the given
name if it exists. Otherwise return None
"""
for item in self.plottables:
if item.name == name:
return item
return None
[docs] def returnPlottable(self):
"""
This method returns a dictionary of plottables contained in graph
It is just by Plotpanel to interact with the complete list of plottables
inside the graph.
"""
return self.plottables
[docs] def render(self, plot):
"""Redraw the graph"""
plot.connect.clearall()
plot.clear()
plot.properties(self.prop)
labels = self._make_labels()
for p in self.plottables:
if p.custom_color is not None:
p.render(plot, color=p.custom_color, symbol=0,
markersize=p.markersize, label=labels[p])
else:
p.render(plot, color=self.plottables[p], symbol=0,
markersize=p.markersize, label=labels[p])
plot.render()
[docs] def __init__(self, **kw):
self.reset()
self.set(**kw)
# Name of selected plottable, if any
self.selected_plottable = None
# Transform interface definition
# No need to inherit from this class, just need to provide
# the same methods.
# Related issues
# ==============
#
# log scale:
# All axes have implicit log/linear scaling options.
#
# normalization:
# Want to display raw counts vs detector efficiency correction
# Want to normalize by time/monitor/proton current/intensity.
# Want to display by eg. counts per 3 sec or counts per 10000 monitor.
# Want to divide by footprint (ab initio, fitted or measured).
# Want to scale by attenuator values.
#
# compare/contrast:
# Want to average all visible lines with the same tag, and
# display difference from one particular line. Not a transform
# issue?
#
# multiline graph:
# How do we show/hide data parts. E.g., data or theory, or
# different polarization cross sections? One way is with
# tags: each plottable has a set of tags and the tags are
# listed as check boxes above the plotting area. Click a
# tag and all plottables with that tag are hidden on the
# plot and on the legend.
#
# nonconformant y-axes:
# What do we do with temperature vs. Q and reflectivity vs. Q
# on the same graph?
#
# 2D -> 1D:
# Want various slices through the data. Do transforms apply
# to the sliced data as well?
[docs]class Plottable(object):
"""
"""
# Short ascii name to refer to the plottable in a menu
short_name = None
# Fancy name
name = None
# Data
x = None
y = None
dx = None
dy = None
# Parameter to allow a plot to be part of the list without being displayed
hidden = False
# Flag to set whether a plottable has an interactor or not
interactive = True
custom_color = None
markersize = 3 # default marker size is 'size 3'
# Option to show a horizontal line at y=0
show_yzero = False
[docs] def __init__(self):
self.view = View()
self._xaxis = ""
self._xunit = ""
self._yaxis = ""
self._yunit = ""
[docs] def __setattr__(self, name, value):
"""
Take care of changes in View when data is changed.
This method is provided for backward compatibility.
"""
object.__setattr__(self, name, value)
if name in ['x', 'y', 'dx', 'dy']:
self.reset_view()
# print "self.%s has been called" % name
[docs] def set_data(self, x, y, dx=None, dy=None):
"""
"""
self.x = x
self.y = y
self.dy = dy
self.dx = dx
self.transformView()
[docs] def xaxis(self, name, units):
"""
Set the name and unit of x_axis
:param name: the name of x-axis
:param units: the units of x_axis
"""
self._xaxis = name
self._xunit = units
[docs] def yaxis(self, name, units):
"""
Set the name and unit of y_axis
:param name: the name of y-axis
:param units: the units of y_axis
"""
self._yaxis = name
self._yunit = units
[docs] def get_xaxis(self):
"""Return the units and name of x-axis"""
return self._xaxis, self._xunit
[docs] def get_yaxis(self):
""" Return the units and name of y- axis"""
return self._yaxis, self._yunit
[docs] @classmethod
def labels(cls, collection):
"""
Construct a set of unique labels for a collection of plottables of
the same type.
Returns a map from plottable to name.
"""
n = len(collection)
label_dict = {}
if n > 0:
basename = str(cls).split('.')[-1]
if n == 1:
label_dict[collection[0]] = basename
else:
for i in range(len(collection)):
label_dict[collection[i]] = "%s %d" % (basename, i)
return label_dict
# #Use the following if @classmethod doesn't work
# labels = classmethod(labels)
[docs] def setLabel(self, labelx, labely):
"""
It takes a label of the x and y transformation and set View parameters
:param transx: The label of x transformation is sent by Properties Dialog
:param transy: The label of y transformation is sent Properties Dialog
"""
self.view.xLabel = labelx
self.view.yLabel = labely
[docs] def set_View(self, x, y):
"""Load View"""
self.x = x
self.y = y
self.reset_view()
[docs] def reset_view(self):
"""Reload view with new value to plot"""
self.view = View(self.x, self.y, self.dx, self.dy)
self.view.Xreel = self.view.x
self.view.Yreel = self.view.y
self.view.DXreel = self.view.dx
self.view.DYreel = self.view.dy
[docs] def render(self, plot):
"""
The base class makes sure the correct units are being used for
subsequent plottable.
For now it is assumed that the graphs are commensurate, and if you
put a Qx object on a Temperature graph then you had better hope
that it makes sense.
"""
plot.xaxis(self._xaxis, self._xunit)
plot.yaxis(self._yaxis, self._yunit)
[docs] def is_empty(self):
"""
Returns True if there is no data stored in the plottable
"""
if not self.x is None and len(self.x) == 0 \
and not self.y is None and len(self.y) == 0:
return True
return False
[docs] def colors(self):
"""Return the number of colors need to render the object"""
return 1
[docs] def returnValuesOfView(self):
"""
Return View parameters and it is used by Fit Dialog
"""
return self.view.returnXview()
[docs] def check_data_PlottableX(self):
"""
Since no transformation is made for log10(x), check that
no negative values is plot in log scale
"""
self.view.check_data_logX()
[docs] def check_data_PlottableY(self):
"""
Since no transformation is made for log10(y), check that
no negative values is plot in log scale
"""
self.view.check_data_logY()
[docs] def onReset(self):
"""
Reset x, y, dx, dy view with its parameters
"""
self.view.onResetView()
[docs] def onFitRange(self, xmin=None, xmax=None):
"""
It limits View data range to plot from min to max
:param xmin: the minimum value of x to plot.
:param xmax: the maximum value of x to plot
"""
self.view.onFitRangeView(xmin, xmax)
[docs]class View(object):
"""
Representation of the data that might include a transformation
"""
x = None
y = None
dx = None
dy = None
[docs] def __init__(self, x=None, y=None, dx=None, dy=None):
"""
"""
self.x = x
self.y = y
self.dx = dx
self.dy = dy
# To change x range to the reel range
self.Xreel = self.x
self.Yreel = self.y
self.DXreel = self.dx
self.DYreel = self.dy
# Labels of x and y received from Properties Dialog
self.xLabel = ""
self.yLabel = ""
# Function to transform x, y, dx and dy
self.funcx = None
self.funcy = None
self.funcdx = None
self.funcdy = None
[docs] def onResetView(self):
"""
Reset x,y,dx and y in their full range and in the initial scale
in case their previous range has changed
"""
self.x = self.Xreel
self.y = self.Yreel
self.dx = self.DXreel
self.dy = self.DYreel
[docs] def returnXview(self):
"""
Return View x,y,dx,dy
"""
return self.x, self.y, self.dx, self.dy
[docs] def check_data_logX(self):
"""
Remove negative value in x vector to avoid plotting negative
value of Log10
"""
tempx = []
tempdx = []
tempy = []
tempdy = []
if self.dx is None:
self.dx = numpy.zeros(len(self.x))
if self.dy is None:
self.dy = numpy.zeros(len(self.y))
if self.xLabel == "log10(x)":
for i in range(len(self.x)):
try:
if self.x[i] > 0:
tempx.append(self.x[i])
tempdx.append(self.dx[i])
tempy.append(self.y[i])
tempdy.append(self.dy[i])
except:
logging.error("check_data_logX: skipping point x %g", self.x[i])
logging.error(sys.exc_info()[1])
self.x = tempx
self.y = tempy
self.dx = tempdx
self.dy = tempdy
[docs] def check_data_logY(self):
"""
Remove negative value in y vector
to avoid plotting negative value of Log10
"""
tempx = []
tempdx = []
tempy = []
tempdy = []
if self.dx is None:
self.dx = numpy.zeros(len(self.x))
if self.dy is None:
self.dy = numpy.zeros(len(self.y))
if self.yLabel == "log10(y)":
for i in range(len(self.x)):
try:
if self.y[i] > 0:
tempx.append(self.x[i])
tempdx.append(self.dx[i])
tempy.append(self.y[i])
tempdy.append(self.dy[i])
except:
logging.error("check_data_logY: skipping point %g", self.y[i])
logging.error(sys.exc_info()[1])
self.x = tempx
self.y = tempy
self.dx = tempdx
self.dy = tempdy
[docs] def onFitRangeView(self, xmin=None, xmax=None):
"""
It limits View data range to plot from min to max
:param xmin: the minimum value of x to plot.
:param xmax: the maximum value of x to plot
"""
tempx = []
tempdx = []
tempy = []
tempdy = []
if self.dx is None:
self.dx = numpy.zeros(len(self.x))
if self.dy is None:
self.dy = numpy.zeros(len(self.y))
if xmin is not None and xmax is not None:
for i in range(len(self.x)):
if self.x[i] >= xmin and self.x[i] <= xmax:
tempx.append(self.x[i])
tempdx.append(self.dx[i])
tempy.append(self.y[i])
tempdy.append(self.dy[i])
self.x = tempx
self.y = tempy
self.dx = tempdx
self.dy = tempdy
[docs]class PlottableData2D(Plottable):
"""
2D data class for image plotting
"""
[docs] def __init__(self, image=None, qx_data=None, qy_data=None,
err_image=None, xmin=None, xmax=None, ymin=None,
ymax=None, zmin=None, zmax=None):
"""
Draw image
"""
Plottable.__init__(self)
self.name = "Data2D"
self.label = None
self.data = image
self.qx_data = qx_data
self.qy_data = qx_data
self.err_data = err_image
self.source = None
self.detector = []
# # Units for Q-values
self.xy_unit = 'A^{-1}'
# # Units for I(Q) values
self.z_unit = 'cm^{-1}'
self._zaxis = ''
# x-axis unit and label
self._xaxis = '\\rm{Q_{x}}'
self._xunit = 'A^{-1}'
# y-axis unit and label
self._yaxis = '\\rm{Q_{y}}'
self._yunit = 'A^{-1}'
# ## might remove that later
# # Vector of Q-values at the center of each bin in x
self.x_bins = []
# # Vector of Q-values at the center of each bin in y
self.y_bins = []
# x and y boundaries
self.xmin = xmin
self.xmax = xmax
self.ymin = ymin
self.ymax = ymax
self.zmin = zmin
self.zmax = zmax
self.id = None
[docs] def xaxis(self, label, unit):
"""
set x-axis
:param label: x-axis label
:param unit: x-axis unit
"""
self._xaxis = label
self._xunit = unit
[docs] def yaxis(self, label, unit):
"""
set y-axis
:param label: y-axis label
:param unit: y-axis unit
"""
self._yaxis = label
self._yunit = unit
[docs] def zaxis(self, label, unit):
"""
set z-axis
:param label: z-axis label
:param unit: z-axis unit
"""
self._zaxis = label
self._zunit = unit
[docs] def setValues(self, datainfo=None):
"""
Use datainfo object to initialize data2D
:param datainfo: object
"""
self.image = copy.deepcopy(datainfo.data)
self.qx_data = copy.deepcopy(datainfo.qx_data)
self.qy_data = copy.deepcopy(datainfo.qy_data)
self.err_image = copy.deepcopy(datainfo.err_data)
self.xy_unit = datainfo.Q_unit
self.z_unit = datainfo.I_unit
self._zaxis = datainfo._zaxis
self.xaxis(datainfo._xunit, datainfo._xaxis)
self.yaxis(datainfo._yunit, datainfo._yaxis)
# x and y boundaries
self.xmin = datainfo.xmin
self.xmax = datainfo.xmax
self.ymin = datainfo.ymin
self.ymax = datainfo.ymax
# # Vector of Q-values at the center of each bin in x
self.x_bins = datainfo.x_bins
# # Vector of Q-values at the center of each bin in y
self.y_bins = datainfo.y_bins
[docs] def set_zrange(self, zmin=None, zmax=None):
"""
"""
if zmin < zmax:
self.zmin = zmin
self.zmax = zmax
else:
raise "zmin is greater or equal to zmax "
[docs] def render(self, plot, **kw):
"""
Renders the plottable on the graph
"""
plot.image(self.data, self.qx_data, self.qy_data,
self.xmin, self.xmax, self.ymin,
self.ymax, self.zmin, self.zmax, **kw)
[docs] def changed(self):
"""
"""
return False
[docs] @classmethod
def labels(cls, collection):
"""Build a label mostly unique within a collection"""
label_dict = {}
for item in collection:
if item.label == "Data2D":
item.label = item.name
label_dict[item] = item.label
return label_dict
[docs]class PlottableData1D(Plottable):
"""
Data plottable: scatter plot of x,y with errors in x and y.
"""
[docs] def __init__(self, x, y, dx=None, dy=None):
"""
Draw points specified by x[i],y[i] in the current color/symbol.
Uncertainty in x is given by dx[i], or by (xlo[i],xhi[i]) if the
uncertainty is asymmetric. Similarly for y uncertainty.
The title appears on the legend.
The label, if it is different, appears on the status bar.
"""
Plottable.__init__(self)
self.name = "data"
self.label = "data"
self.x = x
self.y = y
self.dx = dx
self.dy = dy
self.source = None
self.detector = None
self.xaxis('', '')
self.yaxis('', '')
self.view = View(self.x, self.y, self.dx, self.dy)
self.symbol = 0
self.custom_color = None
self.markersize = 3
self.id = None
self.zorder = 1
self.hide_error = False
[docs] def render(self, plot, **kw):
"""
Renders the plottable on the graph
"""
if self.interactive == True:
kw['symbol'] = self.symbol
kw['id'] = self.id
kw['hide_error'] = self.hide_error
kw['markersize'] = self.markersize
plot.interactive_points(self.view.x, self.view.y,
dx=self.view.dx, dy=self.view.dy,
name=self.name, zorder=self.zorder, **kw)
else:
kw['id'] = self.id
kw['hide_error'] = self.hide_error
kw['symbol'] = self.symbol
kw['color'] = self.custom_color
kw['markersize'] = self.markersize
plot.points(self.view.x, self.view.y, dx=self.view.dx,
dy=self.view.dy, zorder=self.zorder,
marker=self.symbollist[self.symbol], **kw)
[docs] def changed(self):
return False
[docs] @classmethod
def labels(cls, collection):
"""Build a label mostly unique within a collection"""
label_dict = {}
for item in collection:
if item.label == "data":
item.label = item.name
label_dict[item] = item.label
return label_dict
[docs]class PlottableTheory1D(Plottable):
"""
Theory plottable: line plot of x,y with confidence interval y.
"""
[docs] def __init__(self, x, y, dy=None):
"""
Draw lines specified in x[i],y[i] in the current color/symbol.
Confidence intervals in x are given by dx[i] or by (xlo[i],xhi[i])
if the limits are asymmetric.
The title is the name that will show up on the legend.
"""
Plottable.__init__(self)
msg = "Theory1D is no longer supported, please use Data1D and change symbol.\n"
raise DeprecationWarning(msg)
[docs]class PlottableFit1D(Plottable):
"""
Fit plottable: composed of a data line plus a theory line. This
is treated like a single object from the perspective of the graph,
except that it will have two legend entries, one for the data and
one for the theory.
The color of the data and theory will be shared.
"""
[docs] def __init__(self, data=None, theory=None):
"""
"""
Plottable.__init__(self)
self.data = data
self.theory = theory
[docs] def render(self, plot, **kw):
"""
"""
self.data.render(plot, **kw)
self.theory.render(plot, **kw)
[docs] def changed(self):
"""
"""
return self.data.changed() or self.theory.changed()
# ---------------------------------------------------------------
[docs]class Text(Plottable):
"""
"""
[docs] def __init__(self, text=None, xpos=0.5, ypos=0.9, name='text'):
"""
Draw the user-defined text in plotter
We can specify the position of text
"""
Plottable.__init__(self)
self.name = name
self.text = text
self.xpos = xpos
self.ypos = ypos
[docs] def render(self, plot, **kw):
"""
"""
from matplotlib import transforms
xcoords = transforms.blended_transform_factory(plot.subplot.transAxes,
plot.subplot.transAxes)
plot.subplot.text(self.xpos,
self.ypos,
self.text,
label=self.name,
transform=xcoords)
[docs] def setText(self, text):
"""Set the text string."""
self.text = text
[docs] def getText(self, text):
"""Get the text string."""
return self.text
[docs] def set_x(self, x):
"""
Set the x position of the text
ACCEPTS: float
"""
self.xpos = x
[docs] def set_y(self, y):
"""
Set the y position of the text
ACCEPTS: float
"""
self.ypos = y
# ---------------------------------------------------------------
[docs]class Chisq(Plottable):
"""
Chisq plottable plots the chisq
"""
[docs] def __init__(self, chisq=None):
"""
Draw the chisq in plotter
We can specify the position of chisq
"""
Plottable.__init__(self)
self.name = "chisq"
self._chisq = chisq
self.xpos = 0.5
self.ypos = 0.9
[docs] def render(self, plot, **kw):
"""
"""
if self._chisq is None:
chisqTxt = r'$\chi^2=$'
else:
chisqTxt = r'$\chi^2=%g$' % (float(self._chisq))
from matplotlib import transforms
xcoords = transforms.blended_transform_factory(plot.subplot.transAxes,
plot.subplot.transAxes)
plot.subplot.text(self.xpos,
self.ypos,
chisqTxt, label='chisq',
transform=xcoords)
[docs] def setChisq(self, chisq):
"""
Set the chisq value.
"""
self._chisq = chisq