source_code stringlengths 45 7.24k | function_name stringlengths 1 111 | messages list |
|---|---|---|
def x(element, ranges, dimension):
if dimension and dimension != 'categorical':
if ranges and dimension.name in ranges:
drange = ranges[dimension.name]['data']
srange = ranges[dimension.name]['soft']
hrange = ranges[dimension.name]['hard']
else:
drange = element.range(dimension, dimension_range=False)
srange = dimension.soft_range
hrange = dimension.range
else:
drange = srange = hrange = np.NaN, np.NaN
return drange, srange, hrange
| get_range | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(element, ranges, dimension):\n if dimension and dimension != 'categorical':\n if ranges and dimension.name in ranges:\n drange = ranges[dimension.name]['data']\n srange = ranges[dimension.name]['soft']\n hrange = ranges[dimension.name]['hard']\n else:\n drange = element.range(dimension, dimension_range=False)\n srange = dimension.soft_range\n hrange = dimension.range\n else:\n drange = srange = hrange = np.NaN, np.NaN\n return drange, srange, hrange\n",
"role": "user"
},
{
"content": "get_range",
"role": "assistant"
}
] |
def x(plot, element, main, ranges):
key = plot.current_key
dims = element.dimensions()
dim = dims[0] if 'frequency' in dims[1].name else dims[1]
range_item = main
if isinstance(main, HoloMap):
if issubclass(main.type, CompositeOverlay):
range_item = [hm for hm in main._split_overlays()[1] if dim in
hm.dimensions('all')][0]
else:
range_item = HoloMap({(0): main}, kdims=['Frame'])
ranges = match_spec(range_item.last, ranges)
if dim.name in ranges:
main_range = ranges[dim.name]['combined']
else:
framewise = plot.lookup_options(range_item.last, 'norm').options.get(
'framewise')
if framewise and range_item.get(key, False):
main_range = range_item[key].range(dim)
else:
main_range = range_item.range(dim)
if isinstance(range_item, HoloMap):
range_item = range_item.last
if isinstance(range_item, CompositeOverlay):
range_item = [ov for ov in range_item if dim in ov.dimensions('all')][0
]
return range_item, main_range, dim
| get_sideplot_ranges | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(plot, element, main, ranges):\n key = plot.current_key\n dims = element.dimensions()\n dim = dims[0] if 'frequency' in dims[1].name else dims[1]\n range_item = main\n if isinstance(main, HoloMap):\n if issubclass(main.type, CompositeOverlay):\n range_item = [hm for hm in main._split_overlays()[1] if dim in\n hm.dimensions('all')][0]\n else:\n range_item = HoloMap({(0): main}, kdims=['Frame'])\n ranges = match_spec(range_item.last, ranges)\n if dim.name in ranges:\n main_range = ranges[dim.name]['combined']\n else:\n framewise = plot.lookup_options(range_item.last, 'norm').options.get(\n 'framewise')\n if framewise and range_item.get(key, False):\n main_range = range_item[key].range(dim)\n else:\n main_range = range_item.range(dim)\n if isinstance(range_item, HoloMap):\n range_item = range_item.last\n if isinstance(range_item, CompositeOverlay):\n range_item = [ov for ov in range_item if dim in ov.dimensions('all')][0\n ]\n return range_item, main_range, dim\n",
"role": "user"
},
{
"content": "get_sideplot_ranges",
"role": "assistant"
}
] |
def x(range1, range2):
range1 = [(r if isfinite(r) else None) for r in range1]
range2 = [(r if isfinite(r) else None) for r in range2]
return (range1[0] is None or range2[0] is None or range1[0] >= range2[0]
) and (range1[1] is None or range2[1] is None or range1[1] <= range2[1]
)
| within_range | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(range1, range2):\n range1 = [(r if isfinite(r) else None) for r in range1]\n range2 = [(r if isfinite(r) else None) for r in range2]\n return (range1[0] is None or range2[0] is None or range1[0] >= range2[0]\n ) and (range1[1] is None or range2[1] is None or range1[1] <= range2[1]\n )\n",
"role": "user"
},
{
"content": "within_range",
"role": "assistant"
}
] |
def x(composite):
dynmaps = composite.traverse(lambda x: x, [DynamicMap])
holomaps = composite.traverse(lambda x: x, ['HoloMap'])
dynamic_unbounded = any(m.unbounded for m in dynmaps)
if holomaps:
validate_unbounded_mode(holomaps, dynmaps)
elif dynamic_unbounded and not holomaps:
raise Exception(
'DynamicMaps in unbounded mode must be displayed alongside a HoloMap to define the sampling.'
)
return dynmaps and not holomaps, dynamic_unbounded
| get_dynamic_mode | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(composite):\n dynmaps = composite.traverse(lambda x: x, [DynamicMap])\n holomaps = composite.traverse(lambda x: x, ['HoloMap'])\n dynamic_unbounded = any(m.unbounded for m in dynmaps)\n if holomaps:\n validate_unbounded_mode(holomaps, dynmaps)\n elif dynamic_unbounded and not holomaps:\n raise Exception(\n 'DynamicMaps in unbounded mode must be displayed alongside a HoloMap to define the sampling.'\n )\n return dynmaps and not holomaps, dynamic_unbounded\n",
"role": "user"
},
{
"content": "get_dynamic_mode",
"role": "assistant"
}
] |
def x(obj, dimensions, key):
select = dict(zip([d.name for d in dimensions], key))
try:
obj.select([DynamicMap], **select)
except KeyError:
pass
| initialize_unbounded | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(obj, dimensions, key):\n select = dict(zip([d.name for d in dimensions], key))\n try:\n obj.select([DynamicMap], **select)\n except KeyError:\n pass\n",
"role": "user"
},
{
"content": "initialize_unbounded",
"role": "assistant"
}
] |
def x(obj, filename, fmt=None, backend=None, options=None):
backend = Store.current_backend if backend is None else backend
renderer = Store.renderers[backend]
fmt = renderer.params('fig').objects[0] if fmt is None else fmt
plot = renderer.get_plot(obj)
for i in range(len(plot)):
plot.update(i)
renderer.save(plot, '%s_%s' % (filename, i), fmt=fmt, options=options)
| save_frames | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(obj, filename, fmt=None, backend=None, options=None):\n backend = Store.current_backend if backend is None else backend\n renderer = Store.renderers[backend]\n fmt = renderer.params('fig').objects[0] if fmt is None else fmt\n plot = renderer.get_plot(obj)\n for i in range(len(plot)):\n plot.update(i)\n renderer.save(plot, '%s_%s' % (filename, i), fmt=fmt, options=options)\n",
"role": "user"
},
{
"content": "save_frames",
"role": "assistant"
}
] |
def x(plot, subplot, key, overlay, items):
match_spec = get_overlay_spec(overlay, wrap_tuple(key), subplot.
current_frame)
specs = [(i, get_overlay_spec(overlay, wrap_tuple(k), el)) for i, (k,
el) in enumerate(items)]
closest = closest_match(match_spec, specs)
if closest is None:
return closest, None, False
matched = specs[closest][1]
return closest, matched, match_spec == matched
| dynamic_update | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(plot, subplot, key, overlay, items):\n match_spec = get_overlay_spec(overlay, wrap_tuple(key), subplot.\n current_frame)\n specs = [(i, get_overlay_spec(overlay, wrap_tuple(k), el)) for i, (k,\n el) in enumerate(items)]\n closest = closest_match(match_spec, specs)\n if closest is None:\n return closest, None, False\n matched = specs[closest][1]\n return closest, matched, match_spec == matched\n",
"role": "user"
},
{
"content": "dynamic_update",
"role": "assistant"
}
] |
def x(arr, crange, cmap, hex=True):
if isinstance(crange, np.ndarray):
xsorted = np.argsort(crange)
ypos = np.searchsorted(crange, arr)
arr = xsorted[ypos]
else:
if isinstance(crange, tuple):
cmin, cmax = crange
else:
cmin, cmax = np.nanmin(arr), np.nanmax(arr)
arr = (arr - cmin) / (cmax - cmin)
arr = np.ma.array(arr, mask=np.logical_not(np.isfinite(arr)))
arr = cmap(arr)
if hex:
return rgb2hex(arr)
else:
return arr
| map_colors | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(arr, crange, cmap, hex=True):\n if isinstance(crange, np.ndarray):\n xsorted = np.argsort(crange)\n ypos = np.searchsorted(crange, arr)\n arr = xsorted[ypos]\n else:\n if isinstance(crange, tuple):\n cmin, cmax = crange\n else:\n cmin, cmax = np.nanmin(arr), np.nanmax(arr)\n arr = (arr - cmin) / (cmax - cmin)\n arr = np.ma.array(arr, mask=np.logical_not(np.isfinite(arr)))\n arr = cmap(arr)\n if hex:\n return rgb2hex(arr)\n else:\n return arr\n",
"role": "user"
},
{
"content": "map_colors",
"role": "assistant"
}
] |
def x(cmap, ncolors=None, categorical=False):
from matplotlib.colors import Colormap, ListedColormap
ncolors = ncolors or 256
if not isinstance(cmap, Colormap):
import matplotlib.cm as cm
if cmap.startswith('Category'):
cmap = cmap.replace('Category', 'tab')
try:
cmap = cm.get_cmap(cmap)
except:
cmap = cm.get_cmap(cmap.lower())
if isinstance(cmap, ListedColormap):
if categorical:
palette = [rgb2hex(cmap.colors[i % cmap.N]) for i in range(ncolors)
]
return palette
elif cmap.N > ncolors:
palette = [rgb2hex(c) for c in cmap(np.arange(cmap.N))]
if len(palette) != ncolors:
palette = [palette[int(v)] for v in np.linspace(0, len(
palette) - 1, ncolors)]
return palette
return [rgb2hex(c) for c in cmap(np.linspace(0, 1, ncolors))]
| mplcmap_to_palette | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cmap, ncolors=None, categorical=False):\n from matplotlib.colors import Colormap, ListedColormap\n ncolors = ncolors or 256\n if not isinstance(cmap, Colormap):\n import matplotlib.cm as cm\n if cmap.startswith('Category'):\n cmap = cmap.replace('Category', 'tab')\n try:\n cmap = cm.get_cmap(cmap)\n except:\n cmap = cm.get_cmap(cmap.lower())\n if isinstance(cmap, ListedColormap):\n if categorical:\n palette = [rgb2hex(cmap.colors[i % cmap.N]) for i in range(ncolors)\n ]\n return palette\n elif cmap.N > ncolors:\n palette = [rgb2hex(c) for c in cmap(np.arange(cmap.N))]\n if len(palette) != ncolors:\n palette = [palette[int(v)] for v in np.linspace(0, len(\n palette) - 1, ncolors)]\n return palette\n return [rgb2hex(c) for c in cmap(np.linspace(0, 1, ncolors))]\n",
"role": "user"
},
{
"content": "mplcmap_to_palette",
"role": "assistant"
}
] |
def x(start_hex, finish_hex, n=10):
s = hex2rgb(start_hex)
f = hex2rgb(finish_hex)
gradient = [s]
for t in range(1, n):
curr_vector = [int(s[j] + float(t) / (n - 1) * (f[j] - s[j])) for j in
range(3)]
gradient.append(curr_vector)
return [rgb2hex([(c / 255.0) for c in rgb]) for rgb in gradient]
| linear_gradient | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(start_hex, finish_hex, n=10):\n s = hex2rgb(start_hex)\n f = hex2rgb(finish_hex)\n gradient = [s]\n for t in range(1, n):\n curr_vector = [int(s[j] + float(t) / (n - 1) * (f[j] - s[j])) for j in\n range(3)]\n gradient.append(curr_vector)\n return [rgb2hex([(c / 255.0) for c in rgb]) for rgb in gradient]\n",
"role": "user"
},
{
"content": "linear_gradient",
"role": "assistant"
}
] |
def x(colors, n):
n_out = int(float(n) / (len(colors) - 1))
gradient = linear_gradient(colors[0], colors[1], n_out)
if len(colors) == len(gradient):
return gradient
for col in range(1, len(colors) - 1):
next_colors = linear_gradient(colors[col], colors[col + 1], n_out + 1)
gradient += next_colors[1:] if len(next_colors) > 1 else next_colors
return gradient
| polylinear_gradient | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(colors, n):\n n_out = int(float(n) / (len(colors) - 1))\n gradient = linear_gradient(colors[0], colors[1], n_out)\n if len(colors) == len(gradient):\n return gradient\n for col in range(1, len(colors) - 1):\n next_colors = linear_gradient(colors[col], colors[col + 1], n_out + 1)\n gradient += next_colors[1:] if len(next_colors) > 1 else next_colors\n return gradient\n",
"role": "user"
},
{
"content": "polylinear_gradient",
"role": "assistant"
}
] |
def x(provider=None, records=False):
if provider is None:
provider = providers
elif isinstance(provider, basestring):
if provider not in providers:
raise ValueError(
'Colormap provider %r not recognized, must be one of %r' %
(provider, providers))
provider = [provider]
cmaps = []
def x(provider, names):
return [CMapInfo(name=n, provider=provider, category=None, source=
None, bg=None) for n in names] if records else list(names)
if 'matplotlib' in provider:
try:
import matplotlib.cm as cm
cmaps += info('matplotlib', [cmap for cmap in cm.cmap_d if not
(cmap.startswith('cet_') or cmap.startswith('Vega') or cmap
.startswith('spectral'))])
except:
pass
if 'bokeh' in provider:
try:
from bokeh import palettes
cmaps += info('bokeh', palettes.all_palettes)
cmaps += info('bokeh', [(p + '_r') for p in palettes.all_palettes])
except:
pass
if 'colorcet' in provider:
try:
from colorcet import palette_n, glasbey_hv
cet_maps = palette_n.copy()
cet_maps['glasbey_hv'] = glasbey_hv
cmaps += info('colorcet', cet_maps)
cmaps += info('colorcet', [(p + '_r') for p in cet_maps])
except:
pass
return sorted(unique_iterator(cmaps))
| list_cmaps | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(provider=None, records=False):\n if provider is None:\n provider = providers\n elif isinstance(provider, basestring):\n if provider not in providers:\n raise ValueError(\n 'Colormap provider %r not recognized, must be one of %r' %\n (provider, providers))\n provider = [provider]\n cmaps = []\n\n def x(provider, names):\n return [CMapInfo(name=n, provider=provider, category=None, source=\n None, bg=None) for n in names] if records else list(names)\n if 'matplotlib' in provider:\n try:\n import matplotlib.cm as cm\n cmaps += info('matplotlib', [cmap for cmap in cm.cmap_d if not\n (cmap.startswith('cet_') or cmap.startswith('Vega') or cmap\n .startswith('spectral'))])\n except:\n pass\n if 'bokeh' in provider:\n try:\n from bokeh import palettes\n cmaps += info('bokeh', palettes.all_palettes)\n cmaps += info('bokeh', [(p + '_r') for p in palettes.all_palettes])\n except:\n pass\n if 'colorcet' in provider:\n try:\n from colorcet import palette_n, glasbey_hv\n cet_maps = palette_n.copy()\n cet_maps['glasbey_hv'] = glasbey_hv\n cmaps += info('colorcet', cet_maps)\n cmaps += info('colorcet', [(p + '_r') for p in cet_maps])\n except:\n pass\n return sorted(unique_iterator(cmaps))\n",
"role": "user"
},
{
"content": "list_cmaps",
"role": "assistant"
}
] |
def x(category, provider, source, bg, names):
for name in names:
bisect.insort(cmap_info, CMapInfo(name=name, provider=provider,
category=category, source=source, bg=bg))
| register_cmaps | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(category, provider, source, bg, names):\n for name in names:\n bisect.insort(cmap_info, CMapInfo(name=name, provider=provider,\n category=category, source=source, bg=bg))\n",
"role": "user"
},
{
"content": "register_cmaps",
"role": "assistant"
}
] |
def x(provider=None, records=False, name=None, category=None, source=None,
bg=None, reverse=None):
available = _list_cmaps(provider=provider, records=True)
matches = set()
for avail in available:
aname = avail.name
matched = False
basename = aname[:-2] if aname.endswith('_r') else aname
if reverse is None or reverse == True and aname.endswith('_r'
) or reverse == False and not aname.endswith('_r'):
for r in cmap_info:
if r.name == basename:
matched = True
r = r._replace(name=aname)
if aname.endswith('_r') and r.category != 'Diverging':
if r.bg == 'light':
r = r._replace(bg='dark')
elif r.bg == 'dark':
r = r._replace(bg='light')
if (name is None or name in r.name) and (provider is
None or provider in r.provider) and (category is
None or category in r.category) and (source is None or
source in r.source) and (bg is None or bg in r.bg):
matches.add(r)
if not matched and (category is None or category == 'Miscellaneous'
):
r = CMapInfo(aname, provider=avail.provider, category=
'Miscellaneous', source=None, bg=None)
matches.add(r)
if records:
return list(unique_iterator(python2sort(matches, key=lambda r: (r.
category.split(' ')[-1], r.bg, r.name.lower(), r.provider, r.
source))))
else:
return list(unique_iterator(sorted([rec.name for rec in matches],
key=lambda n: n.lower())))
| list_cmaps | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(provider=None, records=False, name=None, category=None, source=None,\n bg=None, reverse=None):\n available = _list_cmaps(provider=provider, records=True)\n matches = set()\n for avail in available:\n aname = avail.name\n matched = False\n basename = aname[:-2] if aname.endswith('_r') else aname\n if reverse is None or reverse == True and aname.endswith('_r'\n ) or reverse == False and not aname.endswith('_r'):\n for r in cmap_info:\n if r.name == basename:\n matched = True\n r = r._replace(name=aname)\n if aname.endswith('_r') and r.category != 'Diverging':\n if r.bg == 'light':\n r = r._replace(bg='dark')\n elif r.bg == 'dark':\n r = r._replace(bg='light')\n if (name is None or name in r.name) and (provider is\n None or provider in r.provider) and (category is\n None or category in r.category) and (source is None or\n source in r.source) and (bg is None or bg in r.bg):\n matches.add(r)\n if not matched and (category is None or category == 'Miscellaneous'\n ):\n r = CMapInfo(aname, provider=avail.provider, category=\n 'Miscellaneous', source=None, bg=None)\n matches.add(r)\n if records:\n return list(unique_iterator(python2sort(matches, key=lambda r: (r.\n category.split(' ')[-1], r.bg, r.name.lower(), r.provider, r.\n source))))\n else:\n return list(unique_iterator(sorted([rec.name for rec in matches],\n key=lambda n: n.lower())))\n",
"role": "user"
},
{
"content": "list_cmaps",
"role": "assistant"
}
] |
def x(cmap, ncolors=None, provider=None, categorical=False):
providers_checked = ('matplotlib, bokeh, or colorcet' if provider is
None else provider)
if isinstance(cmap, Cycle):
palette = [(rgb2hex(c) if isinstance(c, tuple) else c) for c in
cmap.values]
elif isinstance(cmap, list):
palette = cmap
elif isinstance(cmap, basestring):
mpl_cmaps = _list_cmaps('matplotlib')
bk_cmaps = _list_cmaps('bokeh')
cet_cmaps = _list_cmaps('colorcet')
if provider == 'matplotlib' or provider is None and (cmap in
mpl_cmaps or cmap.lower() in mpl_cmaps):
palette = mplcmap_to_palette(cmap, ncolors, categorical)
elif provider == 'bokeh' or provider is None and (cmap in bk_cmaps or
cmap.capitalize() in bk_cmaps):
palette = bokeh_palette_to_palette(cmap, ncolors, categorical)
elif provider == 'colorcet' or provider is None and cmap in cet_cmaps:
from colorcet import palette
if cmap.endswith('_r'):
palette = list(reversed(palette[cmap[:-2]]))
else:
palette = palette[cmap]
else:
raise ValueError(
'Supplied cmap %s not found among %s colormaps.' % (cmap,
providers_checked))
else:
try:
palette = mplcmap_to_palette(cmap, ncolors)
except:
palette = None
if not isinstance(palette, list):
raise TypeError(
'cmap argument %s expects a list, Cycle or valid %s colormap or palette.'
% (cmap, providers_checked))
if ncolors and len(palette) != ncolors:
return [palette[i % len(palette)] for i in range(ncolors)]
return palette
| process_cmap | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cmap, ncolors=None, provider=None, categorical=False):\n providers_checked = ('matplotlib, bokeh, or colorcet' if provider is\n None else provider)\n if isinstance(cmap, Cycle):\n palette = [(rgb2hex(c) if isinstance(c, tuple) else c) for c in\n cmap.values]\n elif isinstance(cmap, list):\n palette = cmap\n elif isinstance(cmap, basestring):\n mpl_cmaps = _list_cmaps('matplotlib')\n bk_cmaps = _list_cmaps('bokeh')\n cet_cmaps = _list_cmaps('colorcet')\n if provider == 'matplotlib' or provider is None and (cmap in\n mpl_cmaps or cmap.lower() in mpl_cmaps):\n palette = mplcmap_to_palette(cmap, ncolors, categorical)\n elif provider == 'bokeh' or provider is None and (cmap in bk_cmaps or\n cmap.capitalize() in bk_cmaps):\n palette = bokeh_palette_to_palette(cmap, ncolors, categorical)\n elif provider == 'colorcet' or provider is None and cmap in cet_cmaps:\n from colorcet import palette\n if cmap.endswith('_r'):\n palette = list(reversed(palette[cmap[:-2]]))\n else:\n palette = palette[cmap]\n else:\n raise ValueError(\n 'Supplied cmap %s not found among %s colormaps.' % (cmap,\n providers_checked))\n else:\n try:\n palette = mplcmap_to_palette(cmap, ncolors)\n except:\n palette = None\n if not isinstance(palette, list):\n raise TypeError(\n 'cmap argument %s expects a list, Cycle or valid %s colormap or palette.'\n % (cmap, providers_checked))\n if ncolors and len(palette) != ncolors:\n return [palette[i % len(palette)] for i in range(ncolors)]\n return palette\n",
"role": "user"
},
{
"content": "process_cmap",
"role": "assistant"
}
] |
def x(colors, levels, clip=None, N=255):
if len(colors) != len(levels) - 1:
raise ValueError(
'The number of colors in the colormap must match the intervals defined in the color_levels, expected %d colors found %d.'
% (N, len(colors)))
intervals = np.diff(levels)
cmin, cmax = min(levels), max(levels)
interval = cmax - cmin
cmap = []
for intv, c in zip(intervals, colors):
cmap += [c] * int(round(N * (intv / interval)))
if clip is not None:
clmin, clmax = clip
lidx = int(round(N * ((clmin - cmin) / interval)))
uidx = int(round(N * ((cmax - clmax) / interval)))
uidx = N - uidx
if lidx == uidx:
uidx = lidx + 1
cmap = cmap[lidx:uidx]
if clmin == clmax:
idx = np.argmin(np.abs(np.array(levels) - clmin))
clip = levels[idx:idx + 2] if len(levels) > idx + 2 else levels[
idx - 1:idx + 1]
return cmap, clip
| color_intervals | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(colors, levels, clip=None, N=255):\n if len(colors) != len(levels) - 1:\n raise ValueError(\n 'The number of colors in the colormap must match the intervals defined in the color_levels, expected %d colors found %d.'\n % (N, len(colors)))\n intervals = np.diff(levels)\n cmin, cmax = min(levels), max(levels)\n interval = cmax - cmin\n cmap = []\n for intv, c in zip(intervals, colors):\n cmap += [c] * int(round(N * (intv / interval)))\n if clip is not None:\n clmin, clmax = clip\n lidx = int(round(N * ((clmin - cmin) / interval)))\n uidx = int(round(N * ((cmax - clmax) / interval)))\n uidx = N - uidx\n if lidx == uidx:\n uidx = lidx + 1\n cmap = cmap[lidx:uidx]\n if clmin == clmax:\n idx = np.argmin(np.abs(np.array(levels) - clmin))\n clip = levels[idx:idx + 2] if len(levels) > idx + 2 else levels[\n idx - 1:idx + 1]\n return cmap, clip\n",
"role": "user"
},
{
"content": "color_intervals",
"role": "assistant"
}
] |
def x(dimensions, separator=', '):
if not isinstance(dimensions, list):
dimensions = [dimensions]
return separator.join([d.pprint_label for d in dimensions])
| dim_axis_label | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(dimensions, separator=', '):\n if not isinstance(dimensions, list):\n dimensions = [dimensions]\n return separator.join([d.pprint_label for d in dimensions])\n",
"role": "user"
},
{
"content": "dim_axis_label",
"role": "assistant"
}
] |
def x(plot, obj, precedence=1.1):
def x(dmap):
for stream in get_nested_streams(dmap):
if plot.refresh not in stream._subscribers:
stream.add_subscriber(plot.refresh, precedence)
return obj.traverse(append_refresh, [DynamicMap])
| attach_streams | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(plot, obj, precedence=1.1):\n\n def x(dmap):\n for stream in get_nested_streams(dmap):\n if plot.refresh not in stream._subscribers:\n stream.add_subscriber(plot.refresh, precedence)\n return obj.traverse(append_refresh, [DynamicMap])\n",
"role": "user"
},
{
"content": "attach_streams",
"role": "assistant"
}
] |
def x(obj, attribute, value):
obj.traverse(lambda x: setattr(x, attribute, value))
| traverse_setter | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(obj, attribute, value):\n obj.traverse(lambda x: setattr(x, attribute, value))\n",
"role": "user"
},
{
"content": "traverse_setter",
"role": "assistant"
}
] |
def x(element):
xys = element.array([0, 1])
with warnings.catch_warnings():
warnings.filterwarnings('ignore', 'invalid value encountered in')
xys = xys.astype('float32').view(np.complex64)
distances = np.abs(xys.T - xys)
np.fill_diagonal(distances, np.inf)
distances = distances[distances > 0]
if len(distances):
return distances.min()
return 0
| get_min_distance_numpy | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(element):\n xys = element.array([0, 1])\n with warnings.catch_warnings():\n warnings.filterwarnings('ignore', 'invalid value encountered in')\n xys = xys.astype('float32').view(np.complex64)\n distances = np.abs(xys.T - xys)\n np.fill_diagonal(distances, np.inf)\n distances = distances[distances > 0]\n if len(distances):\n return distances.min()\n return 0\n",
"role": "user"
},
{
"content": "get_min_distance_numpy",
"role": "assistant"
}
] |
def x(element):
try:
from scipy.spatial.distance import pdist
return pdist(element.array([0, 1])).min()
except:
return _get_min_distance_numpy(element)
| get_min_distance | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(element):\n try:\n from scipy.spatial.distance import pdist\n return pdist(element.array([0, 1])).min()\n except:\n return _get_min_distance_numpy(element)\n",
"role": "user"
},
{
"content": "get_min_distance",
"role": "assistant"
}
] |
def x(element, arrow_length):
edgepaths = element._split_edgepaths
edges = edgepaths.split(datatype='array', dimensions=edgepaths.kdims)
arrows = []
for e in edges:
sx, sy = e[0]
ex, ey = e[1]
rad = np.arctan2(ey - sy, ex - sx)
xa0 = ex - np.cos(rad + np.pi / 8) * arrow_length
ya0 = ey - np.sin(rad + np.pi / 8) * arrow_length
xa1 = ex - np.cos(rad - np.pi / 8) * arrow_length
ya1 = ey - np.sin(rad - np.pi / 8) * arrow_length
arrow = np.array([(sx, sy), (ex, ey), (np.nan, np.nan), (xa0, ya0),
(ex, ey), (xa1, ya1)])
arrows.append(arrow)
return arrows
| get_directed_graph_paths | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(element, arrow_length):\n edgepaths = element._split_edgepaths\n edges = edgepaths.split(datatype='array', dimensions=edgepaths.kdims)\n arrows = []\n for e in edges:\n sx, sy = e[0]\n ex, ey = e[1]\n rad = np.arctan2(ey - sy, ex - sx)\n xa0 = ex - np.cos(rad + np.pi / 8) * arrow_length\n ya0 = ey - np.sin(rad + np.pi / 8) * arrow_length\n xa1 = ex - np.cos(rad - np.pi / 8) * arrow_length\n ya1 = ey - np.sin(rad - np.pi / 8) * arrow_length\n arrow = np.array([(sx, sy), (ex, ey), (np.nan, np.nan), (xa0, ya0),\n (ex, ey), (xa1, ya1)])\n arrows.append(arrow)\n return arrows\n",
"role": "user"
},
{
"content": "get_directed_graph_paths",
"role": "assistant"
}
] |
def x(rgb):
if len(rgb) > 3:
rgb = rgb[:-1]
return '#{0:02x}{1:02x}{2:02x}'.format(*(int(v * 255) for v in rgb))
| rgb2hex | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(rgb):\n if len(rgb) > 3:\n rgb = rgb[:-1]\n return '#{0:02x}{1:02x}{2:02x}'.format(*(int(v * 255) for v in rgb))\n",
"role": "user"
},
{
"content": "rgb2hex",
"role": "assistant"
}
] |
def x(eldim):
if isinstance(eldim, dim):
dim_name = repr(eldim)
if dim_name.startswith("'") and dim_name.endswith("'"):
dim_name = dim_name[1:-1]
else:
dim_name = eldim.name
return dim_name
| dim_range_key | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(eldim):\n if isinstance(eldim, dim):\n dim_name = repr(eldim)\n if dim_name.startswith(\"'\") and dim_name.endswith(\"'\"):\n dim_name = dim_name[1:-1]\n else:\n dim_name = eldim.name\n return dim_name\n",
"role": "user"
},
{
"content": "dim_range_key",
"role": "assistant"
}
] |
def x(self, dim, holomap=None, editable=False):
label, mapping = None, None
if holomap is None:
if dim.values:
if dim.default is None:
default = dim.values[0]
elif dim.default not in dim.values:
raise ValueError(
'%s dimension default %r is not in dimension values: %s' %
(dim, dim.default, dim.values))
else:
default = dim.default
value = dim.values.index(default)
if all(isnumeric(v) for v in dim.values):
values = sorted(dim.values)
labels = [unicode(dim.pprint_value(v)) for v in values]
if editable:
label = AutocompleteInput(value=labels[value],
completions=labels, title=dim.pprint_label)
else:
label = Div(text='<b>%s</b>' % dim.pprint_value_string(
labels[value]))
widget = Slider(value=value, start=0, end=len(dim.values) -
1, title=None, step=1)
mapping = list(enumerate(zip(values, labels)))
else:
values = [(v, dim.pprint_value(v)) for v in dim.values]
widget = Select(title=dim.pprint_label, value=values[value]
[0], options=values)
else:
start = dim.soft_range[0] if dim.soft_range[0] else dim.range[0]
end = dim.soft_range[1] if dim.soft_range[1] else dim.range[1]
dim_range = end - start
int_type = isinstance(dim.type, type) and issubclass(dim.type, int)
if dim.step is not None:
step = dim.step
elif isinstance(dim_range, int) or int_type:
step = 1
else:
step = 10 ** (round(math.log10(dim_range)) - 3)
if dim.default is None:
default = start
elif dim.default < start or dim.default > end:
raise ValueError(
'%s dimension default %r is not in the provided range: %s'
% (dim, dim.default, (start, end)))
else:
default = dim.default
if editable:
label = TextInput(value=str(default), title=dim.pprint_label)
else:
label = Div(text='<b>%s</b>' % dim.pprint_value_string(default)
)
widget = Slider(value=default, start=start, end=end, step=step,
title=None)
else:
values = dim.values if dim.values else list(unique_array(holomap.
dimension_values(dim.name)))
if dim.default is None:
default = values[0]
elif dim.default not in values:
raise ValueError(
'%s dimension default %r is not in dimension values: %s' %
(dim, dim.default, values))
else:
default = dim.default
if isinstance(values[0], np.datetime64) or isnumeric(values[0]):
values = sorted(values)
labels = [dim.pprint_value(v) for v in values]
value = values.index(default)
if editable:
label = AutocompleteInput(value=labels[value], completions=
labels, title=dim.pprint_label)
else:
label = Div(text='<b>%s</b>' % dim.pprint_value_string(
labels[value]))
widget = Slider(value=value, start=0, end=len(values) - 1,
title=None, step=1)
else:
labels = [dim.pprint_value(v) for v in values]
widget = Select(title=dim.pprint_label, value=default, options=
list(zip(values, labels)))
mapping = list(enumerate(zip(values, labels)))
return widget, label, mapping
| create_widget | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, dim, holomap=None, editable=False):\n label, mapping = None, None\n if holomap is None:\n if dim.values:\n if dim.default is None:\n default = dim.values[0]\n elif dim.default not in dim.values:\n raise ValueError(\n '%s dimension default %r is not in dimension values: %s' %\n (dim, dim.default, dim.values))\n else:\n default = dim.default\n value = dim.values.index(default)\n if all(isnumeric(v) for v in dim.values):\n values = sorted(dim.values)\n labels = [unicode(dim.pprint_value(v)) for v in values]\n if editable:\n label = AutocompleteInput(value=labels[value],\n completions=labels, title=dim.pprint_label)\n else:\n label = Div(text='<b>%s</b>' % dim.pprint_value_string(\n labels[value]))\n widget = Slider(value=value, start=0, end=len(dim.values) -\n 1, title=None, step=1)\n mapping = list(enumerate(zip(values, labels)))\n else:\n values = [(v, dim.pprint_value(v)) for v in dim.values]\n widget = Select(title=dim.pprint_label, value=values[value]\n [0], options=values)\n else:\n start = dim.soft_range[0] if dim.soft_range[0] else dim.range[0]\n end = dim.soft_range[1] if dim.soft_range[1] else dim.range[1]\n dim_range = end - start\n int_type = isinstance(dim.type, type) and issubclass(dim.type, int)\n if dim.step is not None:\n step = dim.step\n elif isinstance(dim_range, int) or int_type:\n step = 1\n else:\n step = 10 ** (round(math.log10(dim_range)) - 3)\n if dim.default is None:\n default = start\n elif dim.default < start or dim.default > end:\n raise ValueError(\n '%s dimension default %r is not in the provided range: %s'\n % (dim, dim.default, (start, end)))\n else:\n default = dim.default\n if editable:\n label = TextInput(value=str(default), title=dim.pprint_label)\n else:\n label = Div(text='<b>%s</b>' % dim.pprint_value_string(default)\n )\n widget = Slider(value=default, start=start, end=end, step=step,\n title=None)\n else:\n values = dim.values if dim.values else list(unique_array(holomap.\n dimension_values(dim.name)))\n if dim.default is None:\n default = values[0]\n elif dim.default not in values:\n raise ValueError(\n '%s dimension default %r is not in dimension values: %s' %\n (dim, dim.default, values))\n else:\n default = dim.default\n if isinstance(values[0], np.datetime64) or isnumeric(values[0]):\n values = sorted(values)\n labels = [dim.pprint_value(v) for v in values]\n value = values.index(default)\n if editable:\n label = AutocompleteInput(value=labels[value], completions=\n labels, title=dim.pprint_label)\n else:\n label = Div(text='<b>%s</b>' % dim.pprint_value_string(\n labels[value]))\n widget = Slider(value=value, start=0, end=len(values) - 1,\n title=None, step=1)\n else:\n labels = [dim.pprint_value(v) for v in values]\n widget = Select(title=dim.pprint_label, value=default, options=\n list(zip(values, labels)))\n mapping = list(enumerate(zip(values, labels)))\n return widget, label, mapping\n",
"role": "user"
},
{
"content": "create_widget",
"role": "assistant"
}
] |
def x(self):
widgets = OrderedDict()
mappings = {}
for dim in self.mock_obj.kdims:
holomap = None if self.plot.dynamic else self.mock_obj
widget, label, mapping = self.create_widget(dim, holomap, self.editable
)
if label is not None and not isinstance(label, Div):
label.on_change('value', partial(self.on_change, dim, 'label'))
widget.on_change('value', partial(self.on_change, dim, 'widget'))
widgets[dim.pprint_label] = label, widget
if mapping:
mappings[dim.pprint_label] = OrderedDict(mapping)
return widgets, mappings
| get_widgets | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n widgets = OrderedDict()\n mappings = {}\n for dim in self.mock_obj.kdims:\n holomap = None if self.plot.dynamic else self.mock_obj\n widget, label, mapping = self.create_widget(dim, holomap, self.editable\n )\n if label is not None and not isinstance(label, Div):\n label.on_change('value', partial(self.on_change, dim, 'label'))\n widget.on_change('value', partial(self.on_change, dim, 'widget'))\n widgets[dim.pprint_label] = label, widget\n if mapping:\n mappings[dim.pprint_label] = OrderedDict(mapping)\n return widgets, mappings\n",
"role": "user"
},
{
"content": "get_widgets",
"role": "assistant"
}
] |
def x(self):
if not self._queue:
return
dim, widget_type, attr, old, new = self._queue[-1]
self._queue = []
dim_label = dim.pprint_label
label, widget = self.widgets[dim_label]
if widget_type == 'label':
if isinstance(label, AutocompleteInput):
value = [new]
widget.value = value
else:
widget.value = float(new)
elif label:
lookups = self.lookups.get(dim_label)
if not self.editable:
if lookups:
new = lookups[widget.value][1]
label.text = '<b>%s</b>' % dim.pprint_value_string(new)
elif isinstance(label, AutocompleteInput):
text = lookups[new][1]
label.value = text
else:
label.value = dim.pprint_value(new)
key = []
for dim, (label, widget) in self.widgets.items():
lookups = self.lookups.get(dim)
if label and lookups:
val = lookups[widget.value][0]
else:
val = widget.value
key.append(val)
key = wrap_tuple_streams(tuple(key), self.plot.dimensions, self.plot.
streams)
self.plot.update(key)
self._active = False
| update | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n if not self._queue:\n return\n dim, widget_type, attr, old, new = self._queue[-1]\n self._queue = []\n dim_label = dim.pprint_label\n label, widget = self.widgets[dim_label]\n if widget_type == 'label':\n if isinstance(label, AutocompleteInput):\n value = [new]\n widget.value = value\n else:\n widget.value = float(new)\n elif label:\n lookups = self.lookups.get(dim_label)\n if not self.editable:\n if lookups:\n new = lookups[widget.value][1]\n label.text = '<b>%s</b>' % dim.pprint_value_string(new)\n elif isinstance(label, AutocompleteInput):\n text = lookups[new][1]\n label.value = text\n else:\n label.value = dim.pprint_value(new)\n key = []\n for dim, (label, widget) in self.widgets.items():\n lookups = self.lookups.get(dim)\n if label and lookups:\n val = lookups[widget.value][0]\n else:\n val = widget.value\n key.append(val)\n key = wrap_tuple_streams(tuple(key), self.plot.dimensions, self.plot.\n streams)\n self.plot.update(key)\n self._active = False\n",
"role": "user"
},
{
"content": "update",
"role": "assistant"
}
] |
def x(self, idx, fig_format='json'):
self.plot.update(idx)
if self.embed:
patch = self.renderer.diff(self.plot, binary=False)
msg = serialize_json(dict(content=patch.content, root=self.plot.
state._id))
return msg
| plot_figure | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, idx, fig_format='json'):\n self.plot.update(idx)\n if self.embed:\n patch = self.renderer.diff(self.plot, binary=False)\n msg = serialize_json(dict(content=patch.content, root=self.plot.\n state._id))\n return msg\n",
"role": "user"
},
{
"content": "plot_figure",
"role": "assistant"
}
] |
def x(self, element, callbacks=[]):
tooltips, hover_opts = self._hover_opts(element)
tooltips = [((ttp.pprint_label, '@{%s}' % util.dimension_sanitizer(ttp.
name)) if isinstance(ttp, Dimension) else ttp) for ttp in tooltips]
if not tooltips:
tooltips = None
callbacks = callbacks + self.callbacks
cb_tools, tool_names = [], []
hover = False
for cb in callbacks:
for handle in (cb.models + cb.extra_models):
if handle and handle in known_tools:
tool_names.append(handle)
if handle == 'hover':
tool = tools.HoverTool(tooltips=tooltips, tags=[
'hv_created'], **hover_opts)
hover = tool
else:
tool = known_tools[handle]()
cb_tools.append(tool)
self.handles[handle] = tool
tool_list = [t for t in cb_tools + self.default_tools + self.tools if t
not in tool_names]
copied_tools = []
for tool in tool_list:
if isinstance(tool, tools.Tool):
properties = tool.properties_with_values(include_defaults=False)
tool = type(tool)(**properties)
copied_tools.append(tool)
hover_tools = [t for t in copied_tools if isinstance(t, tools.HoverTool)]
if 'hover' in copied_tools:
hover = tools.HoverTool(tooltips=tooltips, tags=['hv_created'], **
hover_opts)
copied_tools[copied_tools.index('hover')] = hover
elif any(hover_tools):
hover = hover_tools[0]
if hover:
self.handles['hover'] = hover
return copied_tools
| init_tools | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, element, callbacks=[]):\n tooltips, hover_opts = self._hover_opts(element)\n tooltips = [((ttp.pprint_label, '@{%s}' % util.dimension_sanitizer(ttp.\n name)) if isinstance(ttp, Dimension) else ttp) for ttp in tooltips]\n if not tooltips:\n tooltips = None\n callbacks = callbacks + self.callbacks\n cb_tools, tool_names = [], []\n hover = False\n for cb in callbacks:\n for handle in (cb.models + cb.extra_models):\n if handle and handle in known_tools:\n tool_names.append(handle)\n if handle == 'hover':\n tool = tools.HoverTool(tooltips=tooltips, tags=[\n 'hv_created'], **hover_opts)\n hover = tool\n else:\n tool = known_tools[handle]()\n cb_tools.append(tool)\n self.handles[handle] = tool\n tool_list = [t for t in cb_tools + self.default_tools + self.tools if t\n not in tool_names]\n copied_tools = []\n for tool in tool_list:\n if isinstance(tool, tools.Tool):\n properties = tool.properties_with_values(include_defaults=False)\n tool = type(tool)(**properties)\n copied_tools.append(tool)\n hover_tools = [t for t in copied_tools if isinstance(t, tools.HoverTool)]\n if 'hover' in copied_tools:\n hover = tools.HoverTool(tooltips=tooltips, tags=['hv_created'], **\n hover_opts)\n copied_tools[copied_tools.index('hover')] = hover\n elif any(hover_tools):\n hover = hover_tools[0]\n if hover:\n self.handles['hover'] = hover\n return copied_tools\n",
"role": "user"
},
{
"content": "init_tools",
"role": "assistant"
}
] |
def x(self, data, element, dimensions=None):
if 'hover' not in self.handles or self.static_source:
return
for d in (dimensions or element.dimensions()):
dim = util.dimension_sanitizer(d.name)
if dim not in data:
data[dim] = element.dimension_values(d)
values = np.asarray(data[dim])
if values.dtype.kind == 'M' or len(values) and isinstance(values[0],
util.datetime_types):
data[dim + '_dt_strings'] = [d.pprint_value(v) for v in values]
for k, v in self.overlay_dims.items():
dim = util.dimension_sanitizer(k.name)
if dim not in data:
data[dim] = [v for _ in range(len(list(data.values())[0]))]
| get_hover_data | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, data, element, dimensions=None):\n if 'hover' not in self.handles or self.static_source:\n return\n for d in (dimensions or element.dimensions()):\n dim = util.dimension_sanitizer(d.name)\n if dim not in data:\n data[dim] = element.dimension_values(d)\n values = np.asarray(data[dim])\n if values.dtype.kind == 'M' or len(values) and isinstance(values[0],\n util.datetime_types):\n data[dim + '_dt_strings'] = [d.pprint_value(v) for v in values]\n for k, v in self.overlay_dims.items():\n dim = util.dimension_sanitizer(k.name)\n if dim not in data:\n data[dim] = [v for _ in range(len(list(data.values())[0]))]\n",
"role": "user"
},
{
"content": "get_hover_data",
"role": "assistant"
}
] |
def x(self, plots, xspecs, yspecs):
plot_ranges = {}
for plot in plots:
if plot is None:
continue
if hasattr(plot, 'x_range'
) and plot.x_range.tags and xspecs is not None:
if match_dim_specs(plot.x_range.tags[0], xspecs):
plot_ranges['x_range'] = plot.x_range
if match_dim_specs(plot.x_range.tags[0], yspecs):
plot_ranges['y_range'] = plot.x_range
if hasattr(plot, 'y_range'
) and plot.y_range.tags and yspecs is not None:
if match_dim_specs(plot.y_range.tags[0], yspecs):
plot_ranges['y_range'] = plot.y_range
if match_dim_specs(plot.y_range.tags[0], xspecs):
plot_ranges['x_range'] = plot.y_range
return plot_ranges
| merge_ranges | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, plots, xspecs, yspecs):\n plot_ranges = {}\n for plot in plots:\n if plot is None:\n continue\n if hasattr(plot, 'x_range'\n ) and plot.x_range.tags and xspecs is not None:\n if match_dim_specs(plot.x_range.tags[0], xspecs):\n plot_ranges['x_range'] = plot.x_range\n if match_dim_specs(plot.x_range.tags[0], yspecs):\n plot_ranges['y_range'] = plot.x_range\n if hasattr(plot, 'y_range'\n ) and plot.y_range.tags and yspecs is not None:\n if match_dim_specs(plot.y_range.tags[0], yspecs):\n plot_ranges['y_range'] = plot.y_range\n if match_dim_specs(plot.y_range.tags[0], xspecs):\n plot_ranges['x_range'] = plot.y_range\n return plot_ranges\n",
"role": "user"
},
{
"content": "merge_ranges",
"role": "assistant"
}
] |
def x(self, element):
dims = element.dimensions()[:2]
if len(dims) == 1:
return dims + [None, None]
else:
return dims + [None]
| get_axis_dims | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, element):\n dims = element.dimensions()[:2]\n if len(dims) == 1:\n return dims + [None, None]\n else:\n return dims + [None]\n",
"role": "user"
},
{
"content": "get_axis_dims",
"role": "assistant"
}
] |
def x(self, key, element, plots, ranges=None):
subplots = list(self.subplots.values()) if self.subplots else []
axis_types, labels, plot_ranges = self._axes_props(plots, subplots,
element, ranges)
xlabel, ylabel, _ = labels
x_axis_type, y_axis_type = axis_types
properties = dict(plot_ranges)
properties['x_axis_label'
] = xlabel if 'x' in self.labelled or self.xlabel else ' '
properties['y_axis_label'
] = ylabel if 'y' in self.labelled or self.ylabel else ' '
if not self.show_frame:
properties['outline_line_alpha'] = 0
if self.show_title and self.adjoined is None:
title = self._format_title(key, separator=' ')
else:
title = ''
if self.toolbar != 'disable':
tools = self._init_tools(element)
properties['tools'] = tools
properties['toolbar_location'] = self.toolbar
else:
properties['tools'] = []
properties['toolbar_location'] = None
if self.renderer.webgl:
properties['output_backend'] = 'webgl'
properties.update(**self._plot_properties(key, element))
with warnings.catch_warnings():
warnings.simplefilter('ignore', UserWarning)
return bokeh.plotting.Figure(x_axis_type=x_axis_type, y_axis_type=
y_axis_type, title=title, **properties)
| init_plot | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, key, element, plots, ranges=None):\n subplots = list(self.subplots.values()) if self.subplots else []\n axis_types, labels, plot_ranges = self._axes_props(plots, subplots,\n element, ranges)\n xlabel, ylabel, _ = labels\n x_axis_type, y_axis_type = axis_types\n properties = dict(plot_ranges)\n properties['x_axis_label'\n ] = xlabel if 'x' in self.labelled or self.xlabel else ' '\n properties['y_axis_label'\n ] = ylabel if 'y' in self.labelled or self.ylabel else ' '\n if not self.show_frame:\n properties['outline_line_alpha'] = 0\n if self.show_title and self.adjoined is None:\n title = self._format_title(key, separator=' ')\n else:\n title = ''\n if self.toolbar != 'disable':\n tools = self._init_tools(element)\n properties['tools'] = tools\n properties['toolbar_location'] = self.toolbar\n else:\n properties['tools'] = []\n properties['toolbar_location'] = None\n if self.renderer.webgl:\n properties['output_backend'] = 'webgl'\n properties.update(**self._plot_properties(key, element))\n with warnings.catch_warnings():\n warnings.simplefilter('ignore', UserWarning)\n return bokeh.plotting.Figure(x_axis_type=x_axis_type, y_axis_type=\n y_axis_type, title=title, **properties)\n",
"role": "user"
},
{
"content": "init_plot",
"role": "assistant"
}
] |
def x(self, key, element):
init = 'plot' not in self.handles
size_multiplier = self.renderer.size / 100.0
options = self._traverse_options(element, 'plot', ['width', 'height'],
defaults=False)
logger = self.param if init else None
aspect_props, dimension_props = compute_layout_properties(self.width,
self.height, self.frame_width, self.frame_height, options['width'],
options['height'], self.aspect, self.data_aspect, self.responsive,
size_multiplier, logger=logger)
if not init:
if aspect_props['aspect_ratio'] is None:
aspect_props['aspect_ratio'] = self.state.aspect_ratio
if self.dynamic and aspect_props['match_aspect']:
stream = PlotSize(subscribers=[self._update_size])
self.callbacks.append(PlotSizeCallback(self, [stream], None))
plot_props = {'margin': self.margin, 'max_width': self.max_width,
'max_height': self.max_height, 'min_width': self.min_width,
'min_height': self.min_height}
plot_props.update(aspect_props)
if not self.drawn:
plot_props.update(dimension_props)
if self.bgcolor:
plot_props['background_fill_color'] = self.bgcolor
if self.border is not None:
for p in ['left', 'right', 'top', 'bottom']:
plot_props['min_border_' + p] = self.border
lod = dict(self.param.defaults().get('lod', {}), **self.lod)
for lod_prop, v in lod.items():
plot_props['lod_' + lod_prop] = v
return plot_props
| plot_properties | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, key, element):\n init = 'plot' not in self.handles\n size_multiplier = self.renderer.size / 100.0\n options = self._traverse_options(element, 'plot', ['width', 'height'],\n defaults=False)\n logger = self.param if init else None\n aspect_props, dimension_props = compute_layout_properties(self.width,\n self.height, self.frame_width, self.frame_height, options['width'],\n options['height'], self.aspect, self.data_aspect, self.responsive,\n size_multiplier, logger=logger)\n if not init:\n if aspect_props['aspect_ratio'] is None:\n aspect_props['aspect_ratio'] = self.state.aspect_ratio\n if self.dynamic and aspect_props['match_aspect']:\n stream = PlotSize(subscribers=[self._update_size])\n self.callbacks.append(PlotSizeCallback(self, [stream], None))\n plot_props = {'margin': self.margin, 'max_width': self.max_width,\n 'max_height': self.max_height, 'min_width': self.min_width,\n 'min_height': self.min_height}\n plot_props.update(aspect_props)\n if not self.drawn:\n plot_props.update(dimension_props)\n if self.bgcolor:\n plot_props['background_fill_color'] = self.bgcolor\n if self.border is not None:\n for p in ['left', 'right', 'top', 'bottom']:\n plot_props['min_border_' + p] = self.border\n lod = dict(self.param.defaults().get('lod', {}), **self.lod)\n for lod_prop, v in lod.items():\n plot_props['lod_' + lod_prop] = v\n return plot_props\n",
"role": "user"
},
{
"content": "plot_properties",
"role": "assistant"
}
] |
def x(self, plot):
for tool in self.active_tools:
if isinstance(tool, util.basestring):
tool_type = TOOL_TYPES[tool]
matching = [t for t in plot.toolbar.tools if isinstance(t,
tool_type)]
if not matching:
self.param.warning(
'Tool of type %r could not be found and could not be activated by default.'
% tool)
continue
tool = matching[0]
if isinstance(tool, tools.Drag):
plot.toolbar.active_drag = tool
if isinstance(tool, tools.Scroll):
plot.toolbar.active_scroll = tool
if isinstance(tool, tools.Tap):
plot.toolbar.active_tap = tool
if isinstance(tool, tools.Inspection):
plot.toolbar.active_inspect.append(tool)
| set_active_tools | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, plot):\n for tool in self.active_tools:\n if isinstance(tool, util.basestring):\n tool_type = TOOL_TYPES[tool]\n matching = [t for t in plot.toolbar.tools if isinstance(t,\n tool_type)]\n if not matching:\n self.param.warning(\n 'Tool of type %r could not be found and could not be activated by default.'\n % tool)\n continue\n tool = matching[0]\n if isinstance(tool, tools.Drag):\n plot.toolbar.active_drag = tool\n if isinstance(tool, tools.Scroll):\n plot.toolbar.active_scroll = tool\n if isinstance(tool, tools.Tap):\n plot.toolbar.active_tap = tool\n if isinstance(tool, tools.Inspection):\n plot.toolbar.active_inspect.append(tool)\n",
"role": "user"
},
{
"content": "set_active_tools",
"role": "assistant"
}
] |
def x(self, axis, key, plot, dimension=None, ax_mapping={'x': 0, 'y': 1}):
axis_props = dict(theme_attr_json(self.renderer.theme, 'Axis'))
if axis == 'x' and self.xaxis in ['bottom-bare', 'top-bare', 'bare'
] or axis == 'y' and self.yaxis in ['left-bare', 'right-bare', 'bare']:
axis_props['axis_label_text_font_size'] = value('0pt')
axis_props['major_label_text_font_size'] = value('0pt')
axis_props['major_tick_line_color'] = None
axis_props['minor_tick_line_color'] = None
else:
labelsize = self._fontsize('%slabel' % axis).get('fontsize')
if labelsize:
axis_props['axis_label_text_font_size'] = labelsize
ticksize = self._fontsize('%sticks' % axis, common=False).get(
'fontsize')
if ticksize:
axis_props['major_label_text_font_size'] = value(ticksize)
rotation = self.xrotation if axis == 'x' else self.yrotation
if rotation:
axis_props['major_label_orientation'] = np.radians(rotation)
ticker = self.xticks if axis == 'x' else self.yticks
if isinstance(ticker, Ticker):
axis_props['ticker'] = ticker
elif isinstance(ticker, int):
axis_props['ticker'] = BasicTicker(desired_num_ticks=ticker)
elif isinstance(ticker, (tuple, list)):
if all(isinstance(t, tuple) for t in ticker):
ticks, labels = zip(*ticker)
ticks = [(int(t) if isinstance(t, float) and t.is_integer()
else t) for t in ticks]
labels = [(l if isinstance(l, util.basestring) else str(l)) for
l in labels]
axis_props['ticker'] = FixedTicker(ticks=ticks)
axis_props['major_label_overrides'] = dict(zip(ticks, labels))
else:
axis_props['ticker'] = FixedTicker(ticks=ticker)
formatter = self.xformatter if axis == 'x' else self.yformatter
if formatter:
if isinstance(formatter, TickFormatter):
pass
elif isinstance(formatter, FunctionType):
msg = ('%sformatter could not be converted to tick formatter. ' %
axis)
jsfunc = py2js_tickformatter(formatter, msg)
if jsfunc:
formatter = FuncTickFormatter(code=jsfunc)
else:
formatter = None
else:
formatter = PrintfTickFormatter(format=formatter)
if formatter is not None:
axis_props['formatter'] = formatter
elif FuncTickFormatter is not None and ax_mapping and isinstance(dimension,
Dimension):
formatter = None
if dimension.value_format:
formatter = dimension.value_format
elif dimension.type in dimension.type_formatters:
formatter = dimension.type_formatters[dimension.type]
if formatter:
msg = (
'%s dimension formatter could not be converted to tick formatter. '
% dimension.name)
jsfunc = py2js_tickformatter(formatter, msg)
if jsfunc:
formatter = FuncTickFormatter(code=jsfunc)
axis_props['formatter'] = formatter
if axis == 'x':
axis_obj = plot.xaxis[0]
elif axis == 'y':
axis_obj = plot.yaxis[0]
if self.geographic and self.projection == 'mercator':
dimension = 'lon' if axis == 'x' else 'lat'
axis_props['ticker'] = MercatorTicker(dimension=dimension)
axis_props['formatter'] = MercatorTickFormatter(dimension=dimension)
box_zoom = self.state.select(type=tools.BoxZoomTool)
if box_zoom:
box_zoom[0].match_aspect = True
elif isinstance(axis_obj, CategoricalAxis):
for key in list(axis_props):
if key.startswith('major_label'):
new_key = key.replace('major_label', 'group')
axis_props[new_key] = axis_props[key]
msize = self._fontsize('minor_{0}ticks'.format(axis), common=False
).get('fontsize')
if msize is not None:
axis_props['major_label_text_font_size'] = msize
return axis_props
| axis_properties | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, axis, key, plot, dimension=None, ax_mapping={'x': 0, 'y': 1}):\n axis_props = dict(theme_attr_json(self.renderer.theme, 'Axis'))\n if axis == 'x' and self.xaxis in ['bottom-bare', 'top-bare', 'bare'\n ] or axis == 'y' and self.yaxis in ['left-bare', 'right-bare', 'bare']:\n axis_props['axis_label_text_font_size'] = value('0pt')\n axis_props['major_label_text_font_size'] = value('0pt')\n axis_props['major_tick_line_color'] = None\n axis_props['minor_tick_line_color'] = None\n else:\n labelsize = self._fontsize('%slabel' % axis).get('fontsize')\n if labelsize:\n axis_props['axis_label_text_font_size'] = labelsize\n ticksize = self._fontsize('%sticks' % axis, common=False).get(\n 'fontsize')\n if ticksize:\n axis_props['major_label_text_font_size'] = value(ticksize)\n rotation = self.xrotation if axis == 'x' else self.yrotation\n if rotation:\n axis_props['major_label_orientation'] = np.radians(rotation)\n ticker = self.xticks if axis == 'x' else self.yticks\n if isinstance(ticker, Ticker):\n axis_props['ticker'] = ticker\n elif isinstance(ticker, int):\n axis_props['ticker'] = BasicTicker(desired_num_ticks=ticker)\n elif isinstance(ticker, (tuple, list)):\n if all(isinstance(t, tuple) for t in ticker):\n ticks, labels = zip(*ticker)\n ticks = [(int(t) if isinstance(t, float) and t.is_integer()\n else t) for t in ticks]\n labels = [(l if isinstance(l, util.basestring) else str(l)) for\n l in labels]\n axis_props['ticker'] = FixedTicker(ticks=ticks)\n axis_props['major_label_overrides'] = dict(zip(ticks, labels))\n else:\n axis_props['ticker'] = FixedTicker(ticks=ticker)\n formatter = self.xformatter if axis == 'x' else self.yformatter\n if formatter:\n if isinstance(formatter, TickFormatter):\n pass\n elif isinstance(formatter, FunctionType):\n msg = ('%sformatter could not be converted to tick formatter. ' %\n axis)\n jsfunc = py2js_tickformatter(formatter, msg)\n if jsfunc:\n formatter = FuncTickFormatter(code=jsfunc)\n else:\n formatter = None\n else:\n formatter = PrintfTickFormatter(format=formatter)\n if formatter is not None:\n axis_props['formatter'] = formatter\n elif FuncTickFormatter is not None and ax_mapping and isinstance(dimension,\n Dimension):\n formatter = None\n if dimension.value_format:\n formatter = dimension.value_format\n elif dimension.type in dimension.type_formatters:\n formatter = dimension.type_formatters[dimension.type]\n if formatter:\n msg = (\n '%s dimension formatter could not be converted to tick formatter. '\n % dimension.name)\n jsfunc = py2js_tickformatter(formatter, msg)\n if jsfunc:\n formatter = FuncTickFormatter(code=jsfunc)\n axis_props['formatter'] = formatter\n if axis == 'x':\n axis_obj = plot.xaxis[0]\n elif axis == 'y':\n axis_obj = plot.yaxis[0]\n if self.geographic and self.projection == 'mercator':\n dimension = 'lon' if axis == 'x' else 'lat'\n axis_props['ticker'] = MercatorTicker(dimension=dimension)\n axis_props['formatter'] = MercatorTickFormatter(dimension=dimension)\n box_zoom = self.state.select(type=tools.BoxZoomTool)\n if box_zoom:\n box_zoom[0].match_aspect = True\n elif isinstance(axis_obj, CategoricalAxis):\n for key in list(axis_props):\n if key.startswith('major_label'):\n new_key = key.replace('major_label', 'group')\n axis_props[new_key] = axis_props[key]\n msize = self._fontsize('minor_{0}ticks'.format(axis), common=False\n ).get('fontsize')\n if msize is not None:\n axis_props['major_label_text_font_size'] = msize\n return axis_props\n",
"role": "user"
},
{
"content": "axis_properties",
"role": "assistant"
}
] |
def x(self, key, plot, element=None):
plot.update(**self._plot_properties(key, element))
self._update_labels(key, plot, element)
self._update_title(key, plot, element)
self._update_grid(plot)
| update_plot | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, key, plot, element=None):\n plot.update(**self._plot_properties(key, element))\n self._update_labels(key, plot, element)\n self._update_title(key, plot, element)\n self._update_grid(plot)\n",
"role": "user"
},
{
"content": "update_plot",
"role": "assistant"
}
] |
def x(self, data, cols, dims):
if self.invert_axes:
cols = cols[::-1]
dims = dims[:2][::-1]
ranges = [self.handles['%s_range' % ax] for ax in 'xy']
for i, col in enumerate(cols):
column = data[col]
if isinstance(ranges[i], FactorRange) and (isinstance(column, list) or
column.dtype.kind not in 'SU'):
data[col] = [dims[i].pprint_value(v) for v in column]
| categorize_data | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, data, cols, dims):\n if self.invert_axes:\n cols = cols[::-1]\n dims = dims[:2][::-1]\n ranges = [self.handles['%s_range' % ax] for ax in 'xy']\n for i, col in enumerate(cols):\n column = data[col]\n if isinstance(ranges[i], FactorRange) and (isinstance(column, list) or\n column.dtype.kind not in 'SU'):\n data[col] = [dims[i].pprint_value(v) for v in column]\n",
"role": "user"
},
{
"content": "categorize_data",
"role": "assistant"
}
] |
def x(self, xspan, yspan):
if self.data_aspect:
return yspan / xspan * self.data_aspect
elif self.aspect == 'equal':
return xspan / yspan
elif self.aspect == 'square':
return 1
elif self.aspect is not None:
return self.aspect
elif self.width is not None and self.height is not None:
return self.width / self.height
else:
return 1
| get_aspect | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, xspan, yspan):\n if self.data_aspect:\n return yspan / xspan * self.data_aspect\n elif self.aspect == 'equal':\n return xspan / yspan\n elif self.aspect == 'square':\n return 1\n elif self.aspect is not None:\n return self.aspect\n elif self.width is not None and self.height is not None:\n return self.width / self.height\n else:\n return 1\n",
"role": "user"
},
{
"content": "get_aspect",
"role": "assistant"
}
] |
def x(self, element):
xdim, ydim = element.dimensions()[:2]
xvals, yvals = [element.dimension_values(i, False) for i in range(2)]
coords = tuple([(v if vals.dtype.kind in 'SU' else dim.pprint_value(v)) for
v in vals] for dim, vals in [(xdim, xvals), (ydim, yvals)])
if self.invert_axes:
coords = coords[::-1]
return coords
| get_factors | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, element):\n xdim, ydim = element.dimensions()[:2]\n xvals, yvals = [element.dimension_values(i, False) for i in range(2)]\n coords = tuple([(v if vals.dtype.kind in 'SU' else dim.pprint_value(v)) for\n v in vals] for dim, vals in [(xdim, xvals), (ydim, yvals)])\n if self.invert_axes:\n coords = coords[::-1]\n return coords\n",
"role": "user"
},
{
"content": "get_factors",
"role": "assistant"
}
] |
def x(self):
for l in self.handles['plot'].legend:
l.items[:] = []
l.border_line_alpha = 0
l.background_fill_alpha = 0
| process_legend | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n for l in self.handles['plot'].legend:\n l.items[:] = []\n l.border_line_alpha = 0\n l.background_fill_alpha = 0\n",
"role": "user"
},
{
"content": "process_legend",
"role": "assistant"
}
] |
def x(self, plot, mapping, properties):
properties = mpl_to_bokeh(properties)
plot_method = self._plot_methods.get('batched' if self.batched else
'single')
if isinstance(plot_method, tuple):
plot_method = plot_method[int(self.invert_axes)]
renderer = getattr(plot, plot_method)(**dict(properties, **mapping))
return renderer, renderer.glyph
| init_glyph | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, plot, mapping, properties):\n properties = mpl_to_bokeh(properties)\n plot_method = self._plot_methods.get('batched' if self.batched else\n 'single')\n if isinstance(plot_method, tuple):\n plot_method = plot_method[int(self.invert_axes)]\n renderer = getattr(plot, plot_method)(**dict(properties, **mapping))\n return renderer, renderer.glyph\n",
"role": "user"
},
{
"content": "init_glyph",
"role": "assistant"
}
] |
def x(self, renderer, source):
hover = self.handles.get('hover')
if hover is None:
return
if hover.renderers == 'auto':
hover.renderers = []
hover.renderers.append(renderer)
for k, v in source.data.items():
if k + '_dt_strings' in source.data:
tooltips = []
for name, formatter in hover.tooltips:
if formatter == '@{%s}' % k:
formatter = '@{%s_dt_strings}' % k
tooltips.append((name, formatter))
hover.tooltips = tooltips
| postprocess_hover | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, renderer, source):\n hover = self.handles.get('hover')\n if hover is None:\n return\n if hover.renderers == 'auto':\n hover.renderers = []\n hover.renderers.append(renderer)\n for k, v in source.data.items():\n if k + '_dt_strings' in source.data:\n tooltips = []\n for name, formatter in hover.tooltips:\n if formatter == '@{%s}' % k:\n formatter = '@{%s_dt_strings}' % k\n tooltips.append((name, formatter))\n hover.tooltips = tooltips\n",
"role": "user"
},
{
"content": "postprocess_hover",
"role": "assistant"
}
] |
def x(self, ranges=None, plot=None, plots=None, source=None):
if self.batched:
element = [el for el in self.hmap.data.values() if el][-1]
else:
element = self.hmap.last
key = util.wrap_tuple(self.hmap.last_key)
ranges = self.compute_ranges(self.hmap, key, ranges)
self.current_ranges = ranges
self.current_frame = element
self.current_key = key
style_element = element.last if self.batched else element
ranges = util.match_spec(style_element, ranges)
if plot is None:
plot = self._init_plot(key, style_element, ranges=ranges, plots=plots)
self._init_axes(plot)
else:
self.handles['xaxis'] = plot.xaxis[0]
self.handles['x_range'] = plot.x_range
self.handles['yaxis'] = plot.yaxis[0]
self.handles['y_range'] = plot.y_range
self.handles['plot'] = plot
self._init_glyphs(plot, element, ranges, source)
if not self.overlaid:
self._update_plot(key, plot, style_element)
self._update_ranges(style_element, ranges)
for cb in self.callbacks:
cb.initialize()
if not self.overlaid:
self._set_active_tools(plot)
self._process_legend()
self._execute_hooks(element)
self.drawn = True
return plot
| initialize_plot | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, ranges=None, plot=None, plots=None, source=None):\n if self.batched:\n element = [el for el in self.hmap.data.values() if el][-1]\n else:\n element = self.hmap.last\n key = util.wrap_tuple(self.hmap.last_key)\n ranges = self.compute_ranges(self.hmap, key, ranges)\n self.current_ranges = ranges\n self.current_frame = element\n self.current_key = key\n style_element = element.last if self.batched else element\n ranges = util.match_spec(style_element, ranges)\n if plot is None:\n plot = self._init_plot(key, style_element, ranges=ranges, plots=plots)\n self._init_axes(plot)\n else:\n self.handles['xaxis'] = plot.xaxis[0]\n self.handles['x_range'] = plot.x_range\n self.handles['yaxis'] = plot.yaxis[0]\n self.handles['y_range'] = plot.y_range\n self.handles['plot'] = plot\n self._init_glyphs(plot, element, ranges, source)\n if not self.overlaid:\n self._update_plot(key, plot, style_element)\n self._update_ranges(style_element, ranges)\n for cb in self.callbacks:\n cb.initialize()\n if not self.overlaid:\n self._set_active_tools(plot)\n self._process_legend()\n self._execute_hooks(element)\n self.drawn = True\n return plot\n",
"role": "user"
},
{
"content": "initialize_plot",
"role": "assistant"
}
] |
def x(self, key, ranges=None, plot=None, element=None):
reused = isinstance(self.hmap, DynamicMap) and (self.overlaid or self.
batched)
if not reused and element is None:
element = self._get_frame(key)
elif element is not None:
self.current_key = key
self.current_frame = element
renderer = self.handles.get('glyph_renderer', None)
glyph = self.handles.get('glyph', None)
visible = element is not None
if hasattr(renderer, 'visible'):
renderer.visible = visible
if hasattr(glyph, 'visible'):
glyph.visible = visible
if (self.batched and not element or element is None or not self.dynamic and
self.static or self.streaming and self.streaming[0].data is self.
current_frame.data and not self.streaming[0]._triggering):
return
if self.batched:
style_element = element.last
max_cycles = None
else:
style_element = element
max_cycles = self.style._max_cycles
style = self.lookup_options(style_element, 'style')
self.style = style.max_cycles(max_cycles) if max_cycles else style
ranges = self.compute_ranges(self.hmap, key, ranges)
self.param.set_param(**self.lookup_options(style_element, 'plot').options)
ranges = util.match_spec(style_element, ranges)
self.current_ranges = ranges
plot = self.handles['plot']
if not self.overlaid:
self._update_ranges(style_element, ranges)
self._update_plot(key, plot, style_element)
self._set_active_tools(plot)
if 'hover' in self.handles and 'hv_created' in self.handles['hover'].tags:
self._update_hover(element)
self._update_glyphs(element, ranges, self.style[self.cyclic_index])
self._execute_hooks(element)
| update_frame | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, key, ranges=None, plot=None, element=None):\n reused = isinstance(self.hmap, DynamicMap) and (self.overlaid or self.\n batched)\n if not reused and element is None:\n element = self._get_frame(key)\n elif element is not None:\n self.current_key = key\n self.current_frame = element\n renderer = self.handles.get('glyph_renderer', None)\n glyph = self.handles.get('glyph', None)\n visible = element is not None\n if hasattr(renderer, 'visible'):\n renderer.visible = visible\n if hasattr(glyph, 'visible'):\n glyph.visible = visible\n if (self.batched and not element or element is None or not self.dynamic and\n self.static or self.streaming and self.streaming[0].data is self.\n current_frame.data and not self.streaming[0]._triggering):\n return\n if self.batched:\n style_element = element.last\n max_cycles = None\n else:\n style_element = element\n max_cycles = self.style._max_cycles\n style = self.lookup_options(style_element, 'style')\n self.style = style.max_cycles(max_cycles) if max_cycles else style\n ranges = self.compute_ranges(self.hmap, key, ranges)\n self.param.set_param(**self.lookup_options(style_element, 'plot').options)\n ranges = util.match_spec(style_element, ranges)\n self.current_ranges = ranges\n plot = self.handles['plot']\n if not self.overlaid:\n self._update_ranges(style_element, ranges)\n self._update_plot(key, plot, style_element)\n self._set_active_tools(plot)\n if 'hover' in self.handles and 'hv_created' in self.handles['hover'].tags:\n self._update_hover(element)\n self._update_glyphs(element, ranges, self.style[self.cyclic_index])\n self._execute_hooks(element)\n",
"role": "user"
},
{
"content": "update_frame",
"role": "assistant"
}
] |
def x(self, model):
callbacks = [cb for cbs in self.traverse(lambda x: x.callbacks) for cb in
cbs]
stream_metadata = [stream._metadata for cb in callbacks for stream in
cb.streams if stream._metadata]
return any(md['id'] == model.ref['id'] for models in stream_metadata for
md in models.values())
| model_changed | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, model):\n callbacks = [cb for cbs in self.traverse(lambda x: x.callbacks) for cb in\n cbs]\n stream_metadata = [stream._metadata for cb in callbacks for stream in\n cb.streams if stream._metadata]\n return any(md['id'] == model.ref['id'] for models in stream_metadata for\n md in models.values())\n",
"role": "user"
},
{
"content": "model_changed",
"role": "assistant"
}
] |
def x(self):
current_frames = [el for f in self.traverse(lambda x: x.current_frame) for
el in (f.traverse(lambda x: x, [Element]) if f else [])]
current_frames = util.unique_iterator(current_frames)
return any(self.lookup_options(frame, 'norm').options.get('framewise') for
frame in current_frames)
| framewise | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n current_frames = [el for f in self.traverse(lambda x: x.current_frame) for\n el in (f.traverse(lambda x: x, [Element]) if f else [])]\n current_frames = util.unique_iterator(current_frames)\n return any(self.lookup_options(frame, 'norm').options.get('framewise') for\n frame in current_frames)\n",
"role": "user"
},
{
"content": "framewise",
"role": "assistant"
}
] |
def x(self, plot, mapping, properties, key):
properties = mpl_to_bokeh(properties)
plot_method = '_'.join(key.split('_')[:-1])
renderer = getattr(plot, plot_method)(**dict(properties, **mapping))
return renderer, renderer.glyph
| init_glyph | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, plot, mapping, properties, key):\n properties = mpl_to_bokeh(properties)\n plot_method = '_'.join(key.split('_')[:-1])\n renderer = getattr(plot, plot_method)(**dict(properties, **mapping))\n return renderer, renderer.glyph\n",
"role": "user"
},
{
"content": "init_glyph",
"role": "assistant"
}
] |
def x(self, plot, mapping, properties):
ret = super(ColorbarPlot, self)._init_glyph(plot, mapping, properties)
if self.colorbar:
for k, v in list(self.handles.items()):
if not k.endswith('color_mapper'):
continue
self._draw_colorbar(plot, v, k[:-12])
return ret
| init_glyph | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, plot, mapping, properties):\n ret = super(ColorbarPlot, self)._init_glyph(plot, mapping, properties)\n if self.colorbar:\n for k, v in list(self.handles.items()):\n if not k.endswith('color_mapper'):\n continue\n self._draw_colorbar(plot, v, k[:-12])\n return ret\n",
"role": "user"
},
{
"content": "init_glyph",
"role": "assistant"
}
] |
def x(self, element, callbacks=[]):
hover_tools = {}
init_tools, tool_types = [], []
for key, subplot in self.subplots.items():
el = element.get(key)
if el is not None:
el_tools = subplot._init_tools(el, self.callbacks)
for tool in el_tools:
if isinstance(tool, util.basestring):
tool_type = TOOL_TYPES.get(tool)
else:
tool_type = type(tool)
if isinstance(tool, tools.HoverTool):
tooltips = tuple(tool.tooltips) if tool.tooltips else ()
if tooltips in hover_tools:
continue
else:
hover_tools[tooltips] = tool
elif tool_type in tool_types:
continue
else:
tool_types.append(tool_type)
init_tools.append(tool)
self.handles['hover_tools'] = hover_tools
return init_tools
| init_tools | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, element, callbacks=[]):\n hover_tools = {}\n init_tools, tool_types = [], []\n for key, subplot in self.subplots.items():\n el = element.get(key)\n if el is not None:\n el_tools = subplot._init_tools(el, self.callbacks)\n for tool in el_tools:\n if isinstance(tool, util.basestring):\n tool_type = TOOL_TYPES.get(tool)\n else:\n tool_type = type(tool)\n if isinstance(tool, tools.HoverTool):\n tooltips = tuple(tool.tooltips) if tool.tooltips else ()\n if tooltips in hover_tools:\n continue\n else:\n hover_tools[tooltips] = tool\n elif tool_type in tool_types:\n continue\n else:\n tool_types.append(tool_type)\n init_tools.append(tool)\n self.handles['hover_tools'] = hover_tools\n return init_tools\n",
"role": "user"
},
{
"content": "init_tools",
"role": "assistant"
}
] |
def x(self, subplot):
if self.batched and 'hover' in subplot.handles:
self.handles['hover'] = subplot.handles['hover']
elif 'hover' in subplot.handles and 'hover_tools' in self.handles:
hover = subplot.handles['hover']
if hover.tooltips and not isinstance(hover.tooltips, util.basestring):
tooltips = tuple((name, spec.replace('_dt_strings', '')) for
name, spec in hover.tooltips)
else:
tooltips = ()
tool = self.handles['hover_tools'].get(tooltips)
if tool:
tool_renderers = [] if tool.renderers == 'auto' else tool.renderers
hover_renderers = [
] if hover.renderers == 'auto' else hover.renderers
renderers = tool_renderers + hover_renderers
tool.renderers = list(util.unique_iterator(renderers))
if 'hover' not in self.handles:
self.handles['hover'] = tool
| merge_tools | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, subplot):\n if self.batched and 'hover' in subplot.handles:\n self.handles['hover'] = subplot.handles['hover']\n elif 'hover' in subplot.handles and 'hover_tools' in self.handles:\n hover = subplot.handles['hover']\n if hover.tooltips and not isinstance(hover.tooltips, util.basestring):\n tooltips = tuple((name, spec.replace('_dt_strings', '')) for \n name, spec in hover.tooltips)\n else:\n tooltips = ()\n tool = self.handles['hover_tools'].get(tooltips)\n if tool:\n tool_renderers = [] if tool.renderers == 'auto' else tool.renderers\n hover_renderers = [\n ] if hover.renderers == 'auto' else hover.renderers\n renderers = tool_renderers + hover_renderers\n tool.renderers = list(util.unique_iterator(renderers))\n if 'hover' not in self.handles:\n self.handles['hover'] = tool\n",
"role": "user"
},
{
"content": "merge_tools",
"role": "assistant"
}
] |
def x(self, key, ranges=None, element=None):
reused = isinstance(self.hmap, DynamicMap) and self.overlaid
if not reused and element is None:
element = self._get_frame(key)
elif element is not None:
self.current_frame = element
self.current_key = key
items = [] if element is None else list(element.data.items())
if isinstance(self.hmap, DynamicMap):
range_obj = element
else:
range_obj = self.hmap
if element is not None:
ranges = self.compute_ranges(range_obj, key, ranges)
plot_opts = self.lookup_options(element, 'plot').options
inherited = self._traverse_options(element, 'plot', self.
_propagate_options, defaults=False)
plot_opts.update(**{k: v[0] for k, v in inherited.items() if k not in
plot_opts})
self.param.set_param(**plot_opts)
if element and not self.overlaid and not self.tabs and not self.batched:
self._update_ranges(element, ranges)
triggering = [stream for stream in self.streams if stream._triggering]
for k, subplot in self.subplots.items():
el = None
if isinstance(self.hmap, DynamicMap) and element:
if self.batched:
el = element
elif element is not None:
idx, spec, exact = dynamic_update(self, subplot, k, element,
items)
if idx is not None:
_, el = items.pop(idx)
if not exact:
self._update_subplot(subplot, spec)
if triggering and all(s not in triggering for s in subplot.streams
) and not subplot in self.dynamic_subplots:
continue
subplot.update_frame(key, ranges, element=el)
if not self.batched and isinstance(self.hmap, DynamicMap) and items:
init_kwargs = {'plots': self.handles['plots']}
if not self.tabs:
init_kwargs['plot'] = self.handles['plot']
self._create_dynamic_subplots(key, items, ranges, **init_kwargs)
if not self.overlaid and not self.tabs:
self._process_legend()
if element and not self.overlaid and not self.tabs and not self.batched:
plot = self.handles['plot']
self._update_plot(key, plot, element)
self._set_active_tools(plot)
self._process_legend()
self._execute_hooks(element)
| update_frame | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, key, ranges=None, element=None):\n reused = isinstance(self.hmap, DynamicMap) and self.overlaid\n if not reused and element is None:\n element = self._get_frame(key)\n elif element is not None:\n self.current_frame = element\n self.current_key = key\n items = [] if element is None else list(element.data.items())\n if isinstance(self.hmap, DynamicMap):\n range_obj = element\n else:\n range_obj = self.hmap\n if element is not None:\n ranges = self.compute_ranges(range_obj, key, ranges)\n plot_opts = self.lookup_options(element, 'plot').options\n inherited = self._traverse_options(element, 'plot', self.\n _propagate_options, defaults=False)\n plot_opts.update(**{k: v[0] for k, v in inherited.items() if k not in\n plot_opts})\n self.param.set_param(**plot_opts)\n if element and not self.overlaid and not self.tabs and not self.batched:\n self._update_ranges(element, ranges)\n triggering = [stream for stream in self.streams if stream._triggering]\n for k, subplot in self.subplots.items():\n el = None\n if isinstance(self.hmap, DynamicMap) and element:\n if self.batched:\n el = element\n elif element is not None:\n idx, spec, exact = dynamic_update(self, subplot, k, element,\n items)\n if idx is not None:\n _, el = items.pop(idx)\n if not exact:\n self._update_subplot(subplot, spec)\n if triggering and all(s not in triggering for s in subplot.streams\n ) and not subplot in self.dynamic_subplots:\n continue\n subplot.update_frame(key, ranges, element=el)\n if not self.batched and isinstance(self.hmap, DynamicMap) and items:\n init_kwargs = {'plots': self.handles['plots']}\n if not self.tabs:\n init_kwargs['plot'] = self.handles['plot']\n self._create_dynamic_subplots(key, items, ranges, **init_kwargs)\n if not self.overlaid and not self.tabs:\n self._process_legend()\n if element and not self.overlaid and not self.tabs and not self.batched:\n plot = self.handles['plot']\n self._update_plot(key, plot, element)\n self._set_active_tools(plot)\n self._process_legend()\n self._execute_hooks(element)\n",
"role": "user"
},
{
"content": "update_frame",
"role": "assistant"
}
] |
def x(format_type, backend=None):
if backend is None:
backend = Store.current_backend
mode = Store.renderers[backend
].mode if backend in Store.renderers else None
else:
split = backend.split(':')
backend, mode = split if len(split) == 2 else (split[0], 'default')
if backend in Store.renderers:
return Store.renderers[backend].mode_formats[format_type][mode]
else:
return []
| list_formats | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(format_type, backend=None):\n if backend is None:\n backend = Store.current_backend\n mode = Store.renderers[backend\n ].mode if backend in Store.renderers else None\n else:\n split = backend.split(':')\n backend, mode = split if len(split) == 2 else (split[0], 'default')\n if backend in Store.renderers:\n return Store.renderers[backend].mode_formats[format_type][mode]\n else:\n return []\n",
"role": "user"
},
{
"content": "list_formats",
"role": "assistant"
}
] |
def x(cls, items, options, warnfn):
options = cls.update_options(options, items)
for keyword in cls.defaults:
if keyword in items:
value = items[keyword]
allowed = cls.allowed[keyword]
if isinstance(allowed, set):
pass
elif isinstance(allowed, dict):
if not isinstance(value, dict):
raise ValueError('Value %r not a dict type' % value)
disallowed = set(value.keys()) - set(allowed.keys())
if disallowed:
raise ValueError(
'Keywords %r for %r option not one of %s' % (
disallowed, keyword, allowed))
wrong_type = {k: v for k, v in value.items() if not
isinstance(v, allowed[k])}
if wrong_type:
errors = []
for k, v in wrong_type.items():
errors.append(
"Value %r for %r option's %r attribute not of type %r"
% (v, keyword, k, allowed[k]))
raise ValueError('\n'.join(errors))
elif isinstance(allowed, list) and value not in allowed:
if keyword in cls.custom_exceptions:
cls.custom_exceptions[keyword](value, keyword, allowed)
else:
raise ValueError('Value %r for key %r not one of %s' %
(value, keyword, allowed))
elif isinstance(allowed, tuple):
if not allowed[0] <= value <= allowed[1]:
info = (keyword, value) + allowed
raise ValueError(
'Value %r for key %r not between %s and %s' % info)
options[keyword] = value
return cls._validate(options, items, warnfn)
| get_options | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, items, options, warnfn):\n options = cls.update_options(options, items)\n for keyword in cls.defaults:\n if keyword in items:\n value = items[keyword]\n allowed = cls.allowed[keyword]\n if isinstance(allowed, set):\n pass\n elif isinstance(allowed, dict):\n if not isinstance(value, dict):\n raise ValueError('Value %r not a dict type' % value)\n disallowed = set(value.keys()) - set(allowed.keys())\n if disallowed:\n raise ValueError(\n 'Keywords %r for %r option not one of %s' % (\n disallowed, keyword, allowed))\n wrong_type = {k: v for k, v in value.items() if not\n isinstance(v, allowed[k])}\n if wrong_type:\n errors = []\n for k, v in wrong_type.items():\n errors.append(\n \"Value %r for %r option's %r attribute not of type %r\"\n % (v, keyword, k, allowed[k]))\n raise ValueError('\\n'.join(errors))\n elif isinstance(allowed, list) and value not in allowed:\n if keyword in cls.custom_exceptions:\n cls.custom_exceptions[keyword](value, keyword, allowed)\n else:\n raise ValueError('Value %r for key %r not one of %s' %\n (value, keyword, allowed))\n elif isinstance(allowed, tuple):\n if not allowed[0] <= value <= allowed[1]:\n info = (keyword, value) + allowed\n raise ValueError(\n 'Value %r for key %r not between %s and %s' % info)\n options[keyword] = value\n return cls._validate(options, items, warnfn)\n",
"role": "user"
},
{
"content": "get_options",
"role": "assistant"
}
] |
def x(cls, line, items):
unprocessed = list(reversed(line.split('=')))
while unprocessed:
chunk = unprocessed.pop()
key = None
if chunk.strip() in cls.allowed:
key = chunk.strip()
else:
raise SyntaxError('Invalid keyword: %s' % chunk.strip())
value = unprocessed.pop().strip()
if len(unprocessed) != 0:
for option in cls.allowed:
if value.endswith(option):
value = value[:-len(option)].strip()
unprocessed.append(option)
break
else:
raise SyntaxError('Invalid keyword: %s' % value.split()[-1])
keyword = '%s=%s' % (key, value)
try:
items.update(eval('dict(%s)' % keyword))
except:
raise SyntaxError('Could not evaluate keyword: %s' % keyword)
return items
| extract_keywords | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, line, items):\n unprocessed = list(reversed(line.split('=')))\n while unprocessed:\n chunk = unprocessed.pop()\n key = None\n if chunk.strip() in cls.allowed:\n key = chunk.strip()\n else:\n raise SyntaxError('Invalid keyword: %s' % chunk.strip())\n value = unprocessed.pop().strip()\n if len(unprocessed) != 0:\n for option in cls.allowed:\n if value.endswith(option):\n value = value[:-len(option)].strip()\n unprocessed.append(option)\n break\n else:\n raise SyntaxError('Invalid keyword: %s' % value.split()[-1])\n keyword = '%s=%s' % (key, value)\n try:\n items.update(eval('dict(%s)' % keyword))\n except:\n raise SyntaxError('Could not evaluate keyword: %s' % keyword)\n return items\n",
"role": "user"
},
{
"content": "extract_keywords",
"role": "assistant"
}
] |
def x(cls, options, items, warnfn):
if 'html' in Store.display_formats:
pass
elif 'fig' in items and items['fig'] not in Store.display_formats:
msg = 'Requesting output figure format %r ' % items['fig'
] + 'not in display formats %r' % Store.display_formats
if warnfn is None:
print('Warning: {msg}'.format(msg=msg))
else:
warnfn(msg)
backend = Store.current_backend
return Store.renderers[backend].validate(options)
| validate | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, options, items, warnfn):\n if 'html' in Store.display_formats:\n pass\n elif 'fig' in items and items['fig'] not in Store.display_formats:\n msg = 'Requesting output figure format %r ' % items['fig'\n ] + 'not in display formats %r' % Store.display_formats\n if warnfn is None:\n print('Warning: {msg}'.format(msg=msg))\n else:\n warnfn(msg)\n backend = Store.current_backend\n return Store.renderers[backend].validate(options)\n",
"role": "user"
},
{
"content": "validate",
"role": "assistant"
}
] |
def x(cls, options, items):
backend_spec = items.get('backend', Store.current_backend)
split = backend_spec.split(':')
backend, mode = split if len(split) == 2 else (split[0], 'default')
if ':' not in backend_spec:
backend_spec += ':default'
if 'max_branches' in items:
print('Warning: The max_branches option is now deprecated. Ignoring.')
del items['max_branches']
prev_backend = Store.current_backend
renderer = Store.renderers[prev_backend]
prev_backend_spec = prev_backend + ':' + renderer.mode
for p in ['fig', 'holomap']:
cls.allowed[p] = list_formats(p, backend_spec)
if backend not in Store.renderers:
options['backend'] = backend_spec
return options
backend_options = dict(cls._backend_options[backend_spec])
cls._backend_options[prev_backend_spec] = {k: v for k, v in cls.options
.items() if k in cls.remembered}
for opt in cls.remembered:
if opt not in backend_options:
backend_options[opt] = cls.defaults[opt]
for p in ['fig', 'holomap']:
if backend_options.get(p) not in cls.allowed[p]:
backend_options[p] = cls.allowed[p][0]
backend_options['backend'] = backend_spec
backend_options['mode'] = mode
return backend_options
| update_options | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, options, items):\n backend_spec = items.get('backend', Store.current_backend)\n split = backend_spec.split(':')\n backend, mode = split if len(split) == 2 else (split[0], 'default')\n if ':' not in backend_spec:\n backend_spec += ':default'\n if 'max_branches' in items:\n print('Warning: The max_branches option is now deprecated. Ignoring.')\n del items['max_branches']\n prev_backend = Store.current_backend\n renderer = Store.renderers[prev_backend]\n prev_backend_spec = prev_backend + ':' + renderer.mode\n for p in ['fig', 'holomap']:\n cls.allowed[p] = list_formats(p, backend_spec)\n if backend not in Store.renderers:\n options['backend'] = backend_spec\n return options\n backend_options = dict(cls._backend_options[backend_spec])\n cls._backend_options[prev_backend_spec] = {k: v for k, v in cls.options\n .items() if k in cls.remembered}\n for opt in cls.remembered:\n if opt not in backend_options:\n backend_options[opt] = cls.defaults[opt]\n for p in ['fig', 'holomap']:\n if backend_options.get(p) not in cls.allowed[p]:\n backend_options[p] = cls.allowed[p][0]\n backend_options['backend'] = backend_spec\n backend_options['mode'] = mode\n return backend_options\n",
"role": "user"
},
{
"content": "update_options",
"role": "assistant"
}
] |
def x(cls, options, backend=None):
if backend:
backend = backend.split(':')[0]
else:
backend = Store.current_backend
cls.set_backend(backend)
if 'widgets' in options:
options['widget_mode'] = options['widgets']
renderer = Store.renderers[backend]
render_options = {k: options[k] for k in cls.render_params if k in options}
renderer.param.set_param(**render_options)
| set_render_options | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, options, backend=None):\n if backend:\n backend = backend.split(':')[0]\n else:\n backend = Store.current_backend\n cls.set_backend(backend)\n if 'widgets' in options:\n options['widget_mode'] = options['widgets']\n renderer = Store.renderers[backend]\n render_options = {k: options[k] for k in cls.render_params if k in options}\n renderer.param.set_param(**render_options)\n",
"role": "user"
},
{
"content": "set_render_options",
"role": "assistant"
}
] |
def x(obj, visualization=True, ansi=True, backend=None, recursive=False,
pattern=None):
backend = backend if backend else Store.current_backend
info = Store.info(obj, ansi=ansi, backend=backend, visualization=
visualization, recursive=recursive, pattern=pattern, elements=
elements_list)
msg = """
To view the visualization options applicable to this object or class, use:
holoviews.help(obj, visualization=True)
"""
if info:
print((msg if visualization is False else '') + info)
else:
pydoc.help(obj)
| help | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(obj, visualization=True, ansi=True, backend=None, recursive=False,\n pattern=None):\n backend = backend if backend else Store.current_backend\n info = Store.info(obj, ansi=ansi, backend=backend, visualization=\n visualization, recursive=recursive, pattern=pattern, elements=\n elements_list)\n msg = \"\"\"\nTo view the visualization options applicable to this object or class, use:\n\n holoviews.help(obj, visualization=True)\n\n\"\"\"\n if info:\n print((msg if visualization is False else '') + info)\n else:\n pydoc.help(obj)\n",
"role": "user"
},
{
"content": "help",
"role": "assistant"
}
] |
def x(self, plot, mapping, properties):
box = Span(level=properties.get('level', 'glyph'), **mapping)
plot.renderers.append(box)
return None, box
| init_glyph | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, plot, mapping, properties):\n box = Span(level=properties.get('level', 'glyph'), **mapping)\n plot.renderers.append(box)\n return None, box\n",
"role": "user"
},
{
"content": "init_glyph",
"role": "assistant"
}
] |
def x(self, plot, mapping, properties, key):
properties.pop('legend', None)
if key == 'arrow':
properties.pop('source')
arrow_end = mapping.pop('arrow_end')
arrow_start = mapping.pop('arrow_start')
start = arrow_start(**properties) if arrow_start else None
end = arrow_end(**properties) if arrow_end else None
renderer = Arrow(start=start, end=end, **dict(**mapping))
glyph = renderer
else:
properties = {(p if p == 'source' else 'text_' + p): v for p, v in
properties.items()}
renderer, glyph = super(ArrowPlot, self)._init_glyph(plot, mapping,
properties, 'text_1')
plot.renderers.append(renderer)
return renderer, glyph
| init_glyph | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, plot, mapping, properties, key):\n properties.pop('legend', None)\n if key == 'arrow':\n properties.pop('source')\n arrow_end = mapping.pop('arrow_end')\n arrow_start = mapping.pop('arrow_start')\n start = arrow_start(**properties) if arrow_start else None\n end = arrow_end(**properties) if arrow_end else None\n renderer = Arrow(start=start, end=end, **dict(**mapping))\n glyph = renderer\n else:\n properties = {(p if p == 'source' else 'text_' + p): v for p, v in\n properties.items()}\n renderer, glyph = super(ArrowPlot, self)._init_glyph(plot, mapping,\n properties, 'text_1')\n plot.renderers.append(renderer)\n return renderer, glyph\n",
"role": "user"
},
{
"content": "init_glyph",
"role": "assistant"
}
] |
def x(self, ranges=None, plot=None, plots=None, source=None):
element = self.hmap.last
key = self.keys[-1]
self.current_frame = element
self.current_key = key
data, _, _ = self.get_data(element, ranges, {})
div = BkDiv(text=data, width=self.width, height=self.height)
self.handles['plot'] = div
self._execute_hooks(element)
self.drawn = True
return div
| initialize_plot | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, ranges=None, plot=None, plots=None, source=None):\n element = self.hmap.last\n key = self.keys[-1]\n self.current_frame = element\n self.current_key = key\n data, _, _ = self.get_data(element, ranges, {})\n div = BkDiv(text=data, width=self.width, height=self.height)\n self.handles['plot'] = div\n self._execute_hooks(element)\n self.drawn = True\n return div\n",
"role": "user"
},
{
"content": "initialize_plot",
"role": "assistant"
}
] |
def x(self, key, ranges=None, plot=None):
element = self._get_frame(key)
text, _, _ = self.get_data(element, ranges, {})
self.handles['plot'].text = text
| update_frame | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, key, ranges=None, plot=None):\n element = self._get_frame(key)\n text, _, _ = self.get_data(element, ranges, {})\n self.handles['plot'].text = text\n",
"role": "user"
},
{
"content": "update_frame",
"role": "assistant"
}
] |
def x(path_df):
splits = np.where(path_df.iloc[:, 0].isnull())[0] + 1
return [df for df in np.split(path_df, splits) if len(df) > 1]
| split_dataframe | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(path_df):\n splits = np.where(path_df.iloc[:, 0].isnull())[0] + 1\n return [df for df in np.split(path_df, splits) if len(df) > 1]\n",
"role": "user"
},
{
"content": "split_dataframe",
"role": "assistant"
}
] |
def x(cls, obj, category=None):
paths = []
if isinstance(obj, Graph):
obj = obj.edgepaths
kdims = list(obj.kdims)
vdims = list(obj.vdims)
dims = obj.dimensions()[:2]
if isinstance(obj, Path):
glyph = 'line'
for p in obj.split(datatype='dataframe'):
paths.append(p)
elif isinstance(obj, CompositeOverlay):
element = None
for key, el in obj.data.items():
x, y, element, glyph = cls.get_agg_data(el)
dims = x, y
df = PandasInterface.as_dframe(element)
if isinstance(obj, NdOverlay):
df = df.assign(**dict(zip(obj.dimensions('key', True), key)))
paths.append(df)
if element is None:
dims = None
else:
kdims += element.kdims
vdims = element.vdims
elif isinstance(obj, Element):
glyph = 'line' if isinstance(obj, Curve) else 'points'
paths.append(PandasInterface.as_dframe(obj))
if dims is None or len(dims) != 2:
return None, None, None, None
else:
x, y = dims
if len(paths) > 1:
if glyph == 'line':
path = paths[0][:1]
if isinstance(path, dd.DataFrame):
path = path.compute()
empty = path.copy()
empty.iloc[0, :] = (np.NaN,) * empty.shape[1]
paths = [elem for p in paths for elem in (p, empty)][:-1]
if all(isinstance(path, dd.DataFrame) for path in paths):
df = dd.concat(paths)
else:
paths = [(p.compute() if isinstance(p, dd.DataFrame) else p) for
p in paths]
df = pd.concat(paths)
else:
df = paths[0] if paths else pd.DataFrame([], columns=[x.name, y.name])
if category and df[category].dtype.name != 'category':
df[category] = df[category].astype('category')
is_dask = isinstance(df, dd.DataFrame)
if any(not is_dask and len(df[d.name]) and isinstance(df[d.name].values
[0], cftime_types) or df[d.name].dtype.kind == 'M' for d in (x, y)):
df = df.copy()
for d in (x, y):
vals = df[d.name]
if not is_dask and len(vals) and isinstance(vals.values[0],
cftime_types):
vals = cftime_to_timestamp(vals, 'ns')
elif df[d.name].dtype.kind == 'M':
vals = vals.astype('datetime64[ns]')
else:
continue
df[d.name] = vals.astype('int64')
return x, y, Dataset(df, kdims=kdims, vdims=vdims), glyph
| get_agg_data | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, obj, category=None):\n paths = []\n if isinstance(obj, Graph):\n obj = obj.edgepaths\n kdims = list(obj.kdims)\n vdims = list(obj.vdims)\n dims = obj.dimensions()[:2]\n if isinstance(obj, Path):\n glyph = 'line'\n for p in obj.split(datatype='dataframe'):\n paths.append(p)\n elif isinstance(obj, CompositeOverlay):\n element = None\n for key, el in obj.data.items():\n x, y, element, glyph = cls.get_agg_data(el)\n dims = x, y\n df = PandasInterface.as_dframe(element)\n if isinstance(obj, NdOverlay):\n df = df.assign(**dict(zip(obj.dimensions('key', True), key)))\n paths.append(df)\n if element is None:\n dims = None\n else:\n kdims += element.kdims\n vdims = element.vdims\n elif isinstance(obj, Element):\n glyph = 'line' if isinstance(obj, Curve) else 'points'\n paths.append(PandasInterface.as_dframe(obj))\n if dims is None or len(dims) != 2:\n return None, None, None, None\n else:\n x, y = dims\n if len(paths) > 1:\n if glyph == 'line':\n path = paths[0][:1]\n if isinstance(path, dd.DataFrame):\n path = path.compute()\n empty = path.copy()\n empty.iloc[0, :] = (np.NaN,) * empty.shape[1]\n paths = [elem for p in paths for elem in (p, empty)][:-1]\n if all(isinstance(path, dd.DataFrame) for path in paths):\n df = dd.concat(paths)\n else:\n paths = [(p.compute() if isinstance(p, dd.DataFrame) else p) for\n p in paths]\n df = pd.concat(paths)\n else:\n df = paths[0] if paths else pd.DataFrame([], columns=[x.name, y.name])\n if category and df[category].dtype.name != 'category':\n df[category] = df[category].astype('category')\n is_dask = isinstance(df, dd.DataFrame)\n if any(not is_dask and len(df[d.name]) and isinstance(df[d.name].values\n [0], cftime_types) or df[d.name].dtype.kind == 'M' for d in (x, y)):\n df = df.copy()\n for d in (x, y):\n vals = df[d.name]\n if not is_dask and len(vals) and isinstance(vals.values[0],\n cftime_types):\n vals = cftime_to_timestamp(vals, 'ns')\n elif df[d.name].dtype.kind == 'M':\n vals = vals.astype('datetime64[ns]')\n else:\n continue\n df[d.name] = vals.astype('int64')\n return x, y, Dataset(df, kdims=kdims, vdims=vdims), glyph\n",
"role": "user"
},
{
"content": "get_agg_data",
"role": "assistant"
}
] |
def x(self, element, agg_fn):
x, y = element.last.dimensions()[0:2]
info = self._get_sampling(element, x, y)
(x_range, y_range), (xs, ys), (width, height), (xtype, ytype) = info
if xtype == 'datetime':
x_range = tuple((np.array(x_range) / 1000.0).astype('datetime64[us]'))
if ytype == 'datetime':
y_range = tuple((np.array(y_range) / 1000.0).astype('datetime64[us]'))
agg_params = dict({k: v for k, v in dict(self.get_param_values(), **
self.p).items() if k in aggregate.params()}, x_range=x_range,
y_range=y_range)
bbox = BoundingBox(points=[(x_range[0], y_range[0]), (x_range[1],
y_range[1])])
if isinstance(agg_fn, ds.count_cat):
agg_params.update(dict(dynamic=False, aggregator=ds.count()))
agg_fn1 = aggregate.instance(**agg_params)
if element.ndims == 1:
grouped = element
else:
grouped = element.groupby([agg_fn.column], container_type=
NdOverlay, group_type=NdOverlay)
groups = []
for k, v in grouped.items():
agg = agg_fn1(v)
groups.append((k, agg.clone(agg.data, bounds=bbox)))
return grouped.clone(groups)
column = agg_fn.column or 'Count'
if isinstance(agg_fn, ds.mean):
agg_fn1 = aggregate.instance(**dict(agg_params, aggregator=ds.sum(
column)))
agg_fn2 = aggregate.instance(**dict(agg_params, aggregator=ds.count()))
else:
agg_fn1 = aggregate.instance(**agg_params)
agg_fn2 = None
is_sum = isinstance(agg_fn1.aggregator, ds.sum)
agg, agg2, mask = None, None, None
mask = None
for v in element:
new_agg = agg_fn1.process_element(v, None)
if is_sum:
new_mask = np.isnan(new_agg.data[column].values)
new_agg.data = new_agg.data.fillna(0)
if agg_fn2:
new_agg2 = agg_fn2.process_element(v, None)
if agg is None:
agg = new_agg
if is_sum:
mask = new_mask
if agg_fn2:
agg2 = new_agg2
else:
agg.data += new_agg.data
if is_sum:
mask &= new_mask
if agg_fn2:
agg2.data += new_agg2.data
if agg2 is not None:
agg2.data.rename({'Count': agg_fn.column}, inplace=True)
with np.errstate(divide='ignore', invalid='ignore'):
agg.data /= agg2.data
if is_sum:
agg.data[column].values[mask] = np.NaN
return agg.clone(bounds=bbox)
| aggregate_ndoverlay | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, element, agg_fn):\n x, y = element.last.dimensions()[0:2]\n info = self._get_sampling(element, x, y)\n (x_range, y_range), (xs, ys), (width, height), (xtype, ytype) = info\n if xtype == 'datetime':\n x_range = tuple((np.array(x_range) / 1000.0).astype('datetime64[us]'))\n if ytype == 'datetime':\n y_range = tuple((np.array(y_range) / 1000.0).astype('datetime64[us]'))\n agg_params = dict({k: v for k, v in dict(self.get_param_values(), **\n self.p).items() if k in aggregate.params()}, x_range=x_range,\n y_range=y_range)\n bbox = BoundingBox(points=[(x_range[0], y_range[0]), (x_range[1],\n y_range[1])])\n if isinstance(agg_fn, ds.count_cat):\n agg_params.update(dict(dynamic=False, aggregator=ds.count()))\n agg_fn1 = aggregate.instance(**agg_params)\n if element.ndims == 1:\n grouped = element\n else:\n grouped = element.groupby([agg_fn.column], container_type=\n NdOverlay, group_type=NdOverlay)\n groups = []\n for k, v in grouped.items():\n agg = agg_fn1(v)\n groups.append((k, agg.clone(agg.data, bounds=bbox)))\n return grouped.clone(groups)\n column = agg_fn.column or 'Count'\n if isinstance(agg_fn, ds.mean):\n agg_fn1 = aggregate.instance(**dict(agg_params, aggregator=ds.sum(\n column)))\n agg_fn2 = aggregate.instance(**dict(agg_params, aggregator=ds.count()))\n else:\n agg_fn1 = aggregate.instance(**agg_params)\n agg_fn2 = None\n is_sum = isinstance(agg_fn1.aggregator, ds.sum)\n agg, agg2, mask = None, None, None\n mask = None\n for v in element:\n new_agg = agg_fn1.process_element(v, None)\n if is_sum:\n new_mask = np.isnan(new_agg.data[column].values)\n new_agg.data = new_agg.data.fillna(0)\n if agg_fn2:\n new_agg2 = agg_fn2.process_element(v, None)\n if agg is None:\n agg = new_agg\n if is_sum:\n mask = new_mask\n if agg_fn2:\n agg2 = new_agg2\n else:\n agg.data += new_agg.data\n if is_sum:\n mask &= new_mask\n if agg_fn2:\n agg2.data += new_agg2.data\n if agg2 is not None:\n agg2.data.rename({'Count': agg_fn.column}, inplace=True)\n with np.errstate(divide='ignore', invalid='ignore'):\n agg.data /= agg2.data\n if is_sum:\n agg.data[column].values[mask] = np.NaN\n return agg.clone(bounds=bbox)\n",
"role": "user"
},
{
"content": "aggregate_ndoverlay",
"role": "assistant"
}
] |
def x(cls, overlay):
if not isinstance(overlay, NdOverlay):
raise ValueError('Only NdOverlays can be concatenated')
xarr = xr.concat([v.data.transpose() for v in overlay.values()], pd.
Index(overlay.keys(), name=overlay.kdims[0].name))
params = dict(get_param_values(overlay.last), vdims=overlay.last.vdims,
kdims=overlay.kdims + overlay.last.kdims)
return Dataset(xarr.transpose(), datatype=['xarray'], **params)
| concatenate | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, overlay):\n if not isinstance(overlay, NdOverlay):\n raise ValueError('Only NdOverlays can be concatenated')\n xarr = xr.concat([v.data.transpose() for v in overlay.values()], pd.\n Index(overlay.keys(), name=overlay.kdims[0].name))\n params = dict(get_param_values(overlay.last), vdims=overlay.last.vdims,\n kdims=overlay.kdims + overlay.last.kdims)\n return Dataset(xarr.transpose(), datatype=['xarray'], **params)\n",
"role": "user"
},
{
"content": "concatenate",
"role": "assistant"
}
] |
def x(cls, img):
return np.flipud(img.view(dtype=np.uint8).reshape(img.shape + (4,)))
| uint32_to_uint8 | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, img):\n return np.flipud(img.view(dtype=np.uint8).reshape(img.shape + (4,)))\n",
"role": "user"
},
{
"content": "uint32_to_uint8",
"role": "assistant"
}
] |
def x(basepath, ref='v0.2.2'):
import io, zipfile, importlib
try:
from urllib.request import urlopen
except:
from urllib import urlopen
try:
url = 'https://github.com/ioam/autover/archive/{ref}.zip'
response = urlopen(url.format(ref=ref))
zf = zipfile.ZipFile(io.BytesIO(response.read()))
ref = ref[1:] if ref.startswith('v') else ref
embed_version = zf.read('autover-{ref}/autover/version.py'.format(
ref=ref))
with open(os.path.join(basepath, 'version.py'), 'wb') as f:
f.write(embed_version)
return importlib.import_module('version')
except:
return None
| embed_version | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(basepath, ref='v0.2.2'):\n import io, zipfile, importlib\n try:\n from urllib.request import urlopen\n except:\n from urllib import urlopen\n try:\n url = 'https://github.com/ioam/autover/archive/{ref}.zip'\n response = urlopen(url.format(ref=ref))\n zf = zipfile.ZipFile(io.BytesIO(response.read()))\n ref = ref[1:] if ref.startswith('v') else ref\n embed_version = zf.read('autover-{ref}/autover/version.py'.format(\n ref=ref))\n with open(os.path.join(basepath, 'version.py'), 'wb') as f:\n f.write(embed_version)\n return importlib.import_module('version')\n except:\n return None\n",
"role": "user"
},
{
"content": "embed_version",
"role": "assistant"
}
] |
def x(reponame):
import json
basepath = os.path.split(__file__)[0]
version_file_path = os.path.join(basepath, reponame, '.version')
try:
from param import version
assert hasattr(version, 'Version')
except:
version = embed_version(basepath)
if version is not None:
return version.Version.setup_version(basepath, reponame,
archive_commit='$Format:%h$')
else:
print(
'WARNING: param>=1.6.0 unavailable. If you are installing a package, this warning can safely be ignored. If you are creating a package or otherwise operating in a git repository, you should install param>=1.6.0.'
)
return json.load(open(version_file_path, 'r'))['version_string']
| get_setup_version | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(reponame):\n import json\n basepath = os.path.split(__file__)[0]\n version_file_path = os.path.join(basepath, reponame, '.version')\n try:\n from param import version\n assert hasattr(version, 'Version')\n except:\n version = embed_version(basepath)\n if version is not None:\n return version.Version.setup_version(basepath, reponame,\n archive_commit='$Format:%h$')\n else:\n print(\n 'WARNING: param>=1.6.0 unavailable. If you are installing a package, this warning can safely be ignored. If you are creating a package or otherwise operating in a git repository, you should install param>=1.6.0.'\n )\n return json.load(open(version_file_path, 'r'))['version_string']\n",
"role": "user"
},
{
"content": "get_setup_version",
"role": "assistant"
}
] |
def x(path):
if not os.path.isdir(path):
raise Exception('Please make sure pseudo-package %s exists.' % path)
else:
assets = os.listdir(path)
if len(assets) == 0:
raise Exception(
'Please make sure pseudo-package %s is populated.' % path)
| check_pseudo_package | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(path):\n if not os.path.isdir(path):\n raise Exception('Please make sure pseudo-package %s exists.' % path)\n else:\n assets = os.listdir(path)\n if len(assets) == 0:\n raise Exception(\n 'Please make sure pseudo-package %s is populated.' % path)\n",
"role": "user"
},
{
"content": "check_pseudo_package",
"role": "assistant"
}
] |
def x(top, names):
global packages, extensions
if any(exc in top for exc in excludes):
return
package = top[top.rfind('holoviews'):].replace(os.path.sep, '.')
packages.append(package)
for name in names:
ext = '.'.join(name.split('.')[1:])
ext_str = '*.%s' % ext
if ext and ext not in excludes and ext_str not in extensions[package]:
extensions[package].append(ext_str)
| walker | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(top, names):\n global packages, extensions\n if any(exc in top for exc in excludes):\n return\n package = top[top.rfind('holoviews'):].replace(os.path.sep, '.')\n packages.append(package)\n for name in names:\n ext = '.'.join(name.split('.')[1:])\n ext_str = '*.%s' % ext\n if ext and ext not in excludes and ext_str not in extensions[package]:\n extensions[package].append(ext_str)\n",
"role": "user"
},
{
"content": "walker",
"role": "assistant"
}
] |
def x(path='holoviews-examples', verbose=False, force=False, root=__file__):
filepath = os.path.abspath(os.path.dirname(root))
example_dir = os.path.join(filepath, './examples')
if not os.path.exists(example_dir):
example_dir = os.path.join(filepath, '../examples')
if os.path.exists(path):
if not force:
print(
'%s directory already exists, either delete it or set the force flag'
% path)
return
shutil.rmtree(path)
ignore = shutil.ignore_patterns('.ipynb_checkpoints', '*.pyc', '*~')
tree_root = os.path.abspath(example_dir)
if os.path.isdir(tree_root):
shutil.copytree(tree_root, path, ignore=ignore, symlinks=True)
else:
print('Cannot find %s' % tree_root)
| examples | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(path='holoviews-examples', verbose=False, force=False, root=__file__):\n filepath = os.path.abspath(os.path.dirname(root))\n example_dir = os.path.join(filepath, './examples')\n if not os.path.exists(example_dir):\n example_dir = os.path.join(filepath, '../examples')\n if os.path.exists(path):\n if not force:\n print(\n '%s directory already exists, either delete it or set the force flag'\n % path)\n return\n shutil.rmtree(path)\n ignore = shutil.ignore_patterns('.ipynb_checkpoints', '*.pyc', '*~')\n tree_root = os.path.abspath(example_dir)\n if os.path.isdir(tree_root):\n shutil.copytree(tree_root, path, ignore=ignore, symlinks=True)\n else:\n print('Cannot find %s' % tree_root)\n",
"role": "user"
},
{
"content": "examples",
"role": "assistant"
}
] |
def x(example_path):
examples(example_path, force=True, root=__file__)
for root, dirs, files in os.walk(example_path):
walker(root, dirs + files)
setup_args['packages'] += packages
for p, exts in extensions.items():
if exts:
setup_args['package_data'][p] = exts
| package_assets | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(example_path):\n examples(example_path, force=True, root=__file__)\n for root, dirs, files in os.walk(example_path):\n walker(root, dirs + files)\n setup_args['packages'] += packages\n for p, exts in extensions.items():\n if exts:\n setup_args['package_data'][p] = exts\n",
"role": "user"
},
{
"content": "package_assets",
"role": "assistant"
}
] |
def x(self, selection_specs=None, selection_mode='edges', **selection):
selection = {dim: sel for dim, sel in selection.items() if dim in self.
dimensions('ranges') + ['selection_mask']}
if selection_specs and not any(self.matches(sp) for sp in selection_specs
) or not selection:
return self
index_dim = self.nodes.kdims[2].name
dimensions = self.kdims + self.vdims
node_selection = {index_dim: v for k, v in selection.items() if k in
self.kdims}
nodes = self.nodes.select(**dict(selection, **node_selection))
selection = {k: v for k, v in selection.items() if k in dimensions}
nodemask = None
if len(nodes) != len(self.nodes):
xdim, ydim = dimensions[:2]
indices = list(nodes.dimension_values(2, False))
if selection_mode == 'edges':
mask1 = self.interface.select_mask(self, {xdim.name: indices})
mask2 = self.interface.select_mask(self, {ydim.name: indices})
nodemask = mask1 | mask2
nodes = self.nodes
else:
nodemask = self.interface.select_mask(self, {xdim.name: indices,
ydim.name: indices})
mask = None
if selection:
mask = self.interface.select_mask(self, selection)
if nodemask is not None:
if mask is not None:
mask &= nodemask
else:
mask = nodemask
if mask is not None:
data = self.interface.select(self, mask)
if not np.all(mask):
new_graph = self.clone((data, nodes))
source = new_graph.dimension_values(0, expanded=False)
target = new_graph.dimension_values(1, expanded=False)
unique_nodes = np.unique(np.concatenate([source, target]))
nodes = new_graph.nodes[:, :, list(unique_nodes)]
paths = None
if self._edgepaths:
edgepaths = self._split_edgepaths
paths = edgepaths.clone(edgepaths.interface.select_paths(
edgepaths, mask))
if len(self._edgepaths.data) == 1:
paths = paths.clone([paths.dframe() if pd else paths.array()])
else:
data = self.data
paths = self._edgepaths
return self.clone((data, nodes, paths))
| select | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, selection_specs=None, selection_mode='edges', **selection):\n selection = {dim: sel for dim, sel in selection.items() if dim in self.\n dimensions('ranges') + ['selection_mask']}\n if selection_specs and not any(self.matches(sp) for sp in selection_specs\n ) or not selection:\n return self\n index_dim = self.nodes.kdims[2].name\n dimensions = self.kdims + self.vdims\n node_selection = {index_dim: v for k, v in selection.items() if k in\n self.kdims}\n nodes = self.nodes.select(**dict(selection, **node_selection))\n selection = {k: v for k, v in selection.items() if k in dimensions}\n nodemask = None\n if len(nodes) != len(self.nodes):\n xdim, ydim = dimensions[:2]\n indices = list(nodes.dimension_values(2, False))\n if selection_mode == 'edges':\n mask1 = self.interface.select_mask(self, {xdim.name: indices})\n mask2 = self.interface.select_mask(self, {ydim.name: indices})\n nodemask = mask1 | mask2\n nodes = self.nodes\n else:\n nodemask = self.interface.select_mask(self, {xdim.name: indices,\n ydim.name: indices})\n mask = None\n if selection:\n mask = self.interface.select_mask(self, selection)\n if nodemask is not None:\n if mask is not None:\n mask &= nodemask\n else:\n mask = nodemask\n if mask is not None:\n data = self.interface.select(self, mask)\n if not np.all(mask):\n new_graph = self.clone((data, nodes))\n source = new_graph.dimension_values(0, expanded=False)\n target = new_graph.dimension_values(1, expanded=False)\n unique_nodes = np.unique(np.concatenate([source, target]))\n nodes = new_graph.nodes[:, :, list(unique_nodes)]\n paths = None\n if self._edgepaths:\n edgepaths = self._split_edgepaths\n paths = edgepaths.clone(edgepaths.interface.select_paths(\n edgepaths, mask))\n if len(self._edgepaths.data) == 1:\n paths = paths.clone([paths.dframe() if pd else paths.array()])\n else:\n data = self.data\n paths = self._edgepaths\n return self.clone((data, nodes, paths))\n",
"role": "user"
},
{
"content": "select",
"role": "assistant"
}
] |
def x(self):
if self._nodes is None:
self._nodes = layout_nodes(self, only_nodes=True)
return self._nodes
| nodes | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n if self._nodes is None:\n self._nodes = layout_nodes(self, only_nodes=True)\n return self._nodes\n",
"role": "user"
},
{
"content": "nodes",
"role": "assistant"
}
] |
def x(self):
if self._edgepaths:
return self._edgepaths
if pd is None:
paths = connect_edges(self)
else:
paths = connect_edges_pd(self)
return self.edge_type(paths, kdims=self.nodes.kdims[:2])
| edgepaths | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n if self._edgepaths:\n return self._edgepaths\n if pd is None:\n paths = connect_edges(self)\n else:\n paths = connect_edges_pd(self)\n return self.edge_type(paths, kdims=self.nodes.kdims[:2])\n",
"role": "user"
},
{
"content": "edgepaths",
"role": "assistant"
}
] |
def x(cls, G, positions, nodes=None, **kwargs):
if not isinstance(positions, dict):
positions = positions(G, **kwargs)
edges = defaultdict(list)
for start, end in G.edges():
for attr, value in sorted(G.adj[start][end].items()):
if isinstance(value, (list, dict)):
continue
edges[attr].append(value)
if isinstance(start, tuple):
start = str(start)
if isinstance(end, tuple):
end = str(end)
edges['start'].append(start)
edges['end'].append(end)
edge_cols = sorted([k for k in edges if k not in ('start', 'end') and
len(edges[k]) == len(edges['start'])])
edge_vdims = [(str(col) if isinstance(col, int) else col) for col in
edge_cols]
edge_data = tuple(edges[col] for col in ['start', 'end'] + edge_cols)
xdim, ydim, idim = cls.node_type.kdims[:3]
if nodes:
node_columns = nodes.columns()
idx_dim = nodes.kdims[0].name
info_cols, values = zip(*((k, v) for k, v in node_columns.items() if
k != idx_dim))
node_info = {i: vals for i, vals in zip(node_columns[idx_dim], zip(
*values))}
else:
info_cols = []
node_info = None
node_columns = defaultdict(list)
for idx, pos in sorted(positions.items()):
node = G.nodes.get(idx)
if node is None:
continue
x, y = pos
node_columns[xdim.name].append(x)
node_columns[ydim.name].append(y)
for attr, value in node.items():
if isinstance(value, (list, dict)):
continue
node_columns[attr].append(value)
for i, col in enumerate(info_cols):
node_columns[col].append(node_info[idx][i])
if isinstance(idx, tuple):
idx = str(idx)
node_columns[idim.name].append(idx)
node_cols = sorted([k for k in node_columns if k not in cls.node_type.
kdims and len(node_columns[k]) == len(node_columns[xdim.name])])
columns = [xdim.name, ydim.name, idim.name] + node_cols + list(info_cols)
node_data = tuple(node_columns[col] for col in columns)
vdims = []
for col in node_cols:
if isinstance(col, int):
dim = str(col)
elif nodes is not None and col in nodes.vdims:
dim = nodes.get_dimension(col)
else:
dim = col
vdims.append(dim)
nodes = cls.node_type(node_data, vdims=vdims)
return cls((edge_data, nodes), vdims=edge_vdims)
| from_networkx | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, G, positions, nodes=None, **kwargs):\n if not isinstance(positions, dict):\n positions = positions(G, **kwargs)\n edges = defaultdict(list)\n for start, end in G.edges():\n for attr, value in sorted(G.adj[start][end].items()):\n if isinstance(value, (list, dict)):\n continue\n edges[attr].append(value)\n if isinstance(start, tuple):\n start = str(start)\n if isinstance(end, tuple):\n end = str(end)\n edges['start'].append(start)\n edges['end'].append(end)\n edge_cols = sorted([k for k in edges if k not in ('start', 'end') and \n len(edges[k]) == len(edges['start'])])\n edge_vdims = [(str(col) if isinstance(col, int) else col) for col in\n edge_cols]\n edge_data = tuple(edges[col] for col in ['start', 'end'] + edge_cols)\n xdim, ydim, idim = cls.node_type.kdims[:3]\n if nodes:\n node_columns = nodes.columns()\n idx_dim = nodes.kdims[0].name\n info_cols, values = zip(*((k, v) for k, v in node_columns.items() if\n k != idx_dim))\n node_info = {i: vals for i, vals in zip(node_columns[idx_dim], zip(\n *values))}\n else:\n info_cols = []\n node_info = None\n node_columns = defaultdict(list)\n for idx, pos in sorted(positions.items()):\n node = G.nodes.get(idx)\n if node is None:\n continue\n x, y = pos\n node_columns[xdim.name].append(x)\n node_columns[ydim.name].append(y)\n for attr, value in node.items():\n if isinstance(value, (list, dict)):\n continue\n node_columns[attr].append(value)\n for i, col in enumerate(info_cols):\n node_columns[col].append(node_info[idx][i])\n if isinstance(idx, tuple):\n idx = str(idx)\n node_columns[idim.name].append(idx)\n node_cols = sorted([k for k in node_columns if k not in cls.node_type.\n kdims and len(node_columns[k]) == len(node_columns[xdim.name])])\n columns = [xdim.name, ydim.name, idim.name] + node_cols + list(info_cols)\n node_data = tuple(node_columns[col] for col in columns)\n vdims = []\n for col in node_cols:\n if isinstance(col, int):\n dim = str(col)\n elif nodes is not None and col in nodes.vdims:\n dim = nodes.get_dimension(col)\n else:\n dim = col\n vdims.append(dim)\n nodes = cls.node_type(node_data, vdims=vdims)\n return cls((edge_data, nodes), vdims=edge_vdims)\n",
"role": "user"
},
{
"content": "from_networkx",
"role": "assistant"
}
] |
def x(cls, data):
try:
from scipy.spatial import Delaunay
except:
raise ImportError(
'Generating triangles from points requires, SciPy to be installed.'
)
if not isinstance(data, Points):
data = Points(data)
if not len(data):
return cls(([], []))
tris = Delaunay(data.array([0, 1]))
return cls((tris.simplices, data))
| from_vertices | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, data):\n try:\n from scipy.spatial import Delaunay\n except:\n raise ImportError(\n 'Generating triangles from points requires, SciPy to be installed.'\n )\n if not isinstance(data, Points):\n data = Points(data)\n if not len(data):\n return cls(([], []))\n tris = Delaunay(data.array([0, 1]))\n return cls((tris.simplices, data))\n",
"role": "user"
},
{
"content": "from_vertices",
"role": "assistant"
}
] |
def x(self):
if self._edgepaths:
return self._edgepaths
elif not len(self):
edgepaths = self.edge_type([], kdims=self.nodes.kdims[:2])
self._edgepaths = edgepaths
return edgepaths
simplices = self.array([0, 1, 2]).astype(np.int32)
pts = self.nodes.array([0, 1]).astype(float)
pts = pts[simplices]
paths = np.pad(pts[:, [0, 1, 2, 0], :], pad_width=((0, 0), (0, 1), (0,
0)), mode='constant', constant_values=np.nan).reshape(-1, 2)[:-1]
edgepaths = self.edge_type([paths], kdims=self.nodes.kdims[:2])
self._edgepaths = edgepaths
return edgepaths
| edgepaths | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n if self._edgepaths:\n return self._edgepaths\n elif not len(self):\n edgepaths = self.edge_type([], kdims=self.nodes.kdims[:2])\n self._edgepaths = edgepaths\n return edgepaths\n simplices = self.array([0, 1, 2]).astype(np.int32)\n pts = self.nodes.array([0, 1]).astype(float)\n pts = pts[simplices]\n paths = np.pad(pts[:, [0, 1, 2, 0], :], pad_width=((0, 0), (0, 1), (0, \n 0)), mode='constant', constant_values=np.nan).reshape(-1, 2)[:-1]\n edgepaths = self.edge_type([paths], kdims=self.nodes.kdims[:2])\n self._edgepaths = edgepaths\n return edgepaths\n",
"role": "user"
},
{
"content": "edgepaths",
"role": "assistant"
}
] |
def x(self, selection_specs=None, **selection):
self.edgepaths
return super(TriMesh, self).select(selection_specs=None, selection_mode
='nodes', **selection)
| select | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, selection_specs=None, **selection):\n self.edgepaths\n return super(TriMesh, self).select(selection_specs=None, selection_mode\n ='nodes', **selection)\n",
"role": "user"
},
{
"content": "select",
"role": "assistant"
}
] |
def x(self, key, **kwargs):
axis = self.handles['axis']
self.handles['fig'].set_frameon(False)
axis.grid(self.show_grid)
axis.view_init(elev=self.elevation, azim=self.azimuth)
axis.dist = self.distance
if self.xaxis is None:
axis.w_xaxis.line.set_lw(0.0)
axis.w_xaxis.label.set_text('')
if self.yaxis is None:
axis.w_yaxis.line.set_lw(0.0)
axis.w_yaxis.label.set_text('')
if self.zaxis is None:
axis.w_zaxis.line.set_lw(0.0)
axis.w_zaxis.label.set_text('')
if self.disable_axes:
axis.set_axis_off()
if mpl_version <= '1.5.9':
axis.set_axis_bgcolor(self.bgcolor)
else:
axis.set_facecolor(self.bgcolor)
return super(Plot3D, self)._finalize_axis(key, **kwargs)
| finalize_axis | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, key, **kwargs):\n axis = self.handles['axis']\n self.handles['fig'].set_frameon(False)\n axis.grid(self.show_grid)\n axis.view_init(elev=self.elevation, azim=self.azimuth)\n axis.dist = self.distance\n if self.xaxis is None:\n axis.w_xaxis.line.set_lw(0.0)\n axis.w_xaxis.label.set_text('')\n if self.yaxis is None:\n axis.w_yaxis.line.set_lw(0.0)\n axis.w_yaxis.label.set_text('')\n if self.zaxis is None:\n axis.w_zaxis.line.set_lw(0.0)\n axis.w_zaxis.label.set_text('')\n if self.disable_axes:\n axis.set_axis_off()\n if mpl_version <= '1.5.9':\n axis.set_axis_bgcolor(self.bgcolor)\n else:\n axis.set_facecolor(self.bgcolor)\n return super(Plot3D, self)._finalize_axis(key, **kwargs)\n",
"role": "user"
},
{
"content": "finalize_axis",
"role": "assistant"
}
] |
def x(cls, dataset, selection):
select_mask = None
for dim, k in selection.items():
if isinstance(k, tuple):
k = slice(*k)
masks = []
alias = dataset.get_dimension(dim).name
series = dataset.data[alias]
if isinstance(k, slice):
if k.start is not None:
kval = util.numpy_scalar_to_python(k.start)
masks.append(kval <= series)
if k.stop is not None:
kval = util.numpy_scalar_to_python(k.stop)
masks.append(series < kval)
elif isinstance(k, (set, list)):
iter_slc = None
for ik in k:
mask = series == ik
if iter_slc is None:
iter_slc = mask
else:
iter_slc |= mask
masks.append(iter_slc)
elif callable(k):
masks.append(k(series))
else:
masks.append(series == k)
for mask in masks:
if select_mask is not None:
select_mask &= mask
else:
select_mask = mask
return select_mask
| select_mask | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, dataset, selection):\n select_mask = None\n for dim, k in selection.items():\n if isinstance(k, tuple):\n k = slice(*k)\n masks = []\n alias = dataset.get_dimension(dim).name\n series = dataset.data[alias]\n if isinstance(k, slice):\n if k.start is not None:\n kval = util.numpy_scalar_to_python(k.start)\n masks.append(kval <= series)\n if k.stop is not None:\n kval = util.numpy_scalar_to_python(k.stop)\n masks.append(series < kval)\n elif isinstance(k, (set, list)):\n iter_slc = None\n for ik in k:\n mask = series == ik\n if iter_slc is None:\n iter_slc = mask\n else:\n iter_slc |= mask\n masks.append(iter_slc)\n elif callable(k):\n masks.append(k(series))\n else:\n masks.append(series == k)\n for mask in masks:\n if select_mask is not None:\n select_mask &= mask\n else:\n select_mask = mask\n return select_mask\n",
"role": "user"
},
{
"content": "select_mask",
"role": "assistant"
}
] |
def x(cls, dataset, data):
import dask.dataframe as dd
if len(data.columns) > 1 or len(data) != 1:
return data
if isinstance(data, dd.DataFrame):
data = data.compute()
return data.iat[0, 0]
| unpack_scalar | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, dataset, data):\n import dask.dataframe as dd\n if len(data.columns) > 1 or len(data) != 1:\n return data\n if isinstance(data, dd.DataFrame):\n data = data.compute()\n return data.iat[0, 0]\n",
"role": "user"
},
{
"content": "unpack_scalar",
"role": "assistant"
}
] |
def x(cls, dataset, index):
rows, cols = index
scalar = False
if isinstance(cols, slice):
cols = [d.name for d in dataset.dimensions()][cols]
elif np.isscalar(cols):
scalar = np.isscalar(rows)
cols = [dataset.get_dimension(cols).name]
else:
cols = [dataset.get_dimension(d).name for d in index[1]]
if np.isscalar(rows):
rows = [rows]
data = OrderedDict()
for c in cols:
data[c] = dataset.data[c].compute().iloc[rows].values
if scalar:
return data[cols[0]][0]
return tuple(data.values())
| iloc | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, dataset, index):\n rows, cols = index\n scalar = False\n if isinstance(cols, slice):\n cols = [d.name for d in dataset.dimensions()][cols]\n elif np.isscalar(cols):\n scalar = np.isscalar(rows)\n cols = [dataset.get_dimension(cols).name]\n else:\n cols = [dataset.get_dimension(d).name for d in index[1]]\n if np.isscalar(rows):\n rows = [rows]\n data = OrderedDict()\n for c in cols:\n data[c] = dataset.data[c].compute().iloc[rows].values\n if scalar:\n return data[cols[0]][0]\n return tuple(data.values())\n",
"role": "user"
},
{
"content": "iloc",
"role": "assistant"
}
] |
def x(cls, element, graph):
index = element.nodes.kdims[-1]
node_map = {}
if element.nodes.vdims:
values = zip(*(element.nodes.dimension_values(d) for d in element.
nodes.vdims))
else:
values = cycle([tuple()])
for index, vals in zip(element.nodes.dimension_values(index), values):
node = {'index': index, 'sourceLinks': [], 'targetLinks': [],
'values': vals}
graph['nodes'].append(node)
node_map[index] = node
links = [element.dimension_values(d) for d in element.dimensions()[:3]]
for i, (src, tgt, value) in enumerate(zip(*links)):
source, target = node_map[src], node_map[tgt]
link = dict(index=i, source=source, target=target, value=value)
graph['links'].append(link)
source['sourceLinks'].append(link)
target['targetLinks'].append(link)
| computeNodeLinks | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, element, graph):\n index = element.nodes.kdims[-1]\n node_map = {}\n if element.nodes.vdims:\n values = zip(*(element.nodes.dimension_values(d) for d in element.\n nodes.vdims))\n else:\n values = cycle([tuple()])\n for index, vals in zip(element.nodes.dimension_values(index), values):\n node = {'index': index, 'sourceLinks': [], 'targetLinks': [],\n 'values': vals}\n graph['nodes'].append(node)\n node_map[index] = node\n links = [element.dimension_values(d) for d in element.dimensions()[:3]]\n for i, (src, tgt, value) in enumerate(zip(*links)):\n source, target = node_map[src], node_map[tgt]\n link = dict(index=i, source=source, target=target, value=value)\n graph['links'].append(link)\n source['sourceLinks'].append(link)\n target['targetLinks'].append(link)\n",
"role": "user"
},
{
"content": "computeNodeLinks",
"role": "assistant"
}
] |
def x(cls, graph):
for node in graph['nodes']:
source_val = np.sum([l['value'] for l in node['sourceLinks']])
target_val = np.sum([l['value'] for l in node['targetLinks']])
node['value'] = max([source_val, target_val])
| computeNodeValues | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls, graph):\n for node in graph['nodes']:\n source_val = np.sum([l['value'] for l in node['sourceLinks']])\n target_val = np.sum([l['value'] for l in node['targetLinks']])\n node['value'] = max([source_val, target_val])\n",
"role": "user"
},
{
"content": "computeNodeValues",
"role": "assistant"
}
] |
def x(self, graph):
nodes = graph['nodes']
depth = 0
while nodes:
next_nodes = []
for node in nodes:
node['depth'] = depth
for link in node['sourceLinks']:
if not any(link['target'] is node for node in next_nodes):
next_nodes.append(link['target'])
nodes = next_nodes
depth += 1
if depth > 10000:
raise RecursionError('Sankey diagrams only support acyclic graphs.'
)
nodes = graph['nodes']
depth = 0
while nodes:
next_nodes = []
for node in nodes:
node['height'] = depth
for link in node['targetLinks']:
if not any(link['source'] is node for node in next_nodes):
next_nodes.append(link['source'])
nodes = next_nodes
depth += 1
if depth > 10000:
raise RecursionError('Sankey diagrams only support acyclic graphs.'
)
x0, _, x1, _ = self.p.bounds
dx = self.p.node_width
kx = (x1 - x0 - dx) / (depth - 1)
for node in graph['nodes']:
d = node['depth'] if node['sourceLinks'] else depth - 1
node['x0'] = x0 + max([0, min([depth - 1, np.floor(d)]) * kx])
node['x1'] = node['x0'] + dx
| computeNodeDepths | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, graph):\n nodes = graph['nodes']\n depth = 0\n while nodes:\n next_nodes = []\n for node in nodes:\n node['depth'] = depth\n for link in node['sourceLinks']:\n if not any(link['target'] is node for node in next_nodes):\n next_nodes.append(link['target'])\n nodes = next_nodes\n depth += 1\n if depth > 10000:\n raise RecursionError('Sankey diagrams only support acyclic graphs.'\n )\n nodes = graph['nodes']\n depth = 0\n while nodes:\n next_nodes = []\n for node in nodes:\n node['height'] = depth\n for link in node['targetLinks']:\n if not any(link['source'] is node for node in next_nodes):\n next_nodes.append(link['source'])\n nodes = next_nodes\n depth += 1\n if depth > 10000:\n raise RecursionError('Sankey diagrams only support acyclic graphs.'\n )\n x0, _, x1, _ = self.p.bounds\n dx = self.p.node_width\n kx = (x1 - x0 - dx) / (depth - 1)\n for node in graph['nodes']:\n d = node['depth'] if node['sourceLinks'] else depth - 1\n node['x0'] = x0 + max([0, min([depth - 1, np.floor(d)]) * kx])\n node['x1'] = node['x0'] + dx\n",
"role": "user"
},
{
"content": "computeNodeDepths",
"role": "assistant"
}
] |
def x(self, hist):
self.cyclic = hist.get_dimension(0).cyclic
x = hist.kdims[0]
edges = hist.interface.coords(hist, x, edges=True)
values = hist.dimension_values(1)
hist_vals = np.array(values)
xlim = hist.range(0)
ylim = hist.range(1)
is_datetime = isdatetime(edges)
if is_datetime:
edges = np.array([(dt64_to_dt(e) if isinstance(e, np.datetime64) else
e) for e in edges])
edges = date2num(edges)
xlim = tuple(dt_to_int(v, 'D') for v in xlim)
widths = np.diff(edges)
return edges[:-1], hist_vals, widths, xlim + ylim, is_datetime
| process_hist | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, hist):\n self.cyclic = hist.get_dimension(0).cyclic\n x = hist.kdims[0]\n edges = hist.interface.coords(hist, x, edges=True)\n values = hist.dimension_values(1)\n hist_vals = np.array(values)\n xlim = hist.range(0)\n ylim = hist.range(1)\n is_datetime = isdatetime(edges)\n if is_datetime:\n edges = np.array([(dt64_to_dt(e) if isinstance(e, np.datetime64) else\n e) for e in edges])\n edges = date2num(edges)\n xlim = tuple(dt_to_int(v, 'D') for v in xlim)\n widths = np.diff(edges)\n return edges[:-1], hist_vals, widths, xlim + ylim, is_datetime\n",
"role": "user"
},
{
"content": "process_hist",
"role": "assistant"
}
] |
def x(self, element, edges, widths, lims):
if self.xticks is None or not isinstance(self.xticks, int):
return None
if self.cyclic:
x0, x1, _, _ = lims
xvals = np.linspace(x0, x1, self.xticks)
labels = [('%.0f' % np.rad2deg(x) + '°') for x in xvals]
elif self.xticks:
dim = element.get_dimension(0)
inds = np.linspace(0, len(edges), self.xticks, dtype=np.int)
edges = list(edges) + [edges[-1] + widths[-1]]
xvals = [edges[i] for i in inds]
labels = [dim.pprint_value(v) for v in xvals]
return [xvals, labels]
| compute_ticks | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, element, edges, widths, lims):\n if self.xticks is None or not isinstance(self.xticks, int):\n return None\n if self.cyclic:\n x0, x1, _, _ = lims\n xvals = np.linspace(x0, x1, self.xticks)\n labels = [('%.0f' % np.rad2deg(x) + '°') for x in xvals]\n elif self.xticks:\n dim = element.get_dimension(0)\n inds = np.linspace(0, len(edges), self.xticks, dtype=np.int)\n edges = list(edges) + [edges[-1] + widths[-1]]\n xvals = [edges[i] for i in inds]\n labels = [dim.pprint_value(v) for v in xvals]\n return [xvals, labels]\n",
"role": "user"
},
{
"content": "compute_ticks",
"role": "assistant"
}
] |
def x(self, hist, lims, ticks):
axis_settings = dict(zip(self.axis_settings, [None, None, None if self.
overlaid else ticks]))
return axis_settings
| process_axsettings | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, hist, lims, ticks):\n axis_settings = dict(zip(self.axis_settings, [None, None, None if self.\n overlaid else ticks]))\n return axis_settings\n",
"role": "user"
},
{
"content": "process_axsettings",
"role": "assistant"
}
] |
def x(self, key, hist, edges, hvals, widths, lims, ranges):
plot_vals = zip(self.handles['artist'], edges, hvals, widths)
for bar, edge, height, width in plot_vals:
if self.invert_axes:
bar.set_y(edge)
bar.set_width(height)
bar.set_height(width)
else:
bar.set_x(edge)
bar.set_height(height)
bar.set_width(width)
| update_artists | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, key, hist, edges, hvals, widths, lims, ranges):\n plot_vals = zip(self.handles['artist'], edges, hvals, widths)\n for bar, edge, height, width in plot_vals:\n if self.invert_axes:\n bar.set_y(edge)\n bar.set_width(height)\n bar.set_height(width)\n else:\n bar.set_x(edge)\n bar.set_height(height)\n bar.set_width(width)\n",
"role": "user"
},
{
"content": "update_artists",
"role": "assistant"
}
] |
def x(self, hist):
edges, hvals, widths, lims, isdatetime = super(SideHistogramPlot, self
)._process_hist(hist)
offset = self.offset * lims[3]
hvals *= 1 - self.offset
hvals += offset
lims = lims[0:3] + (lims[3] + offset,)
return edges, hvals, widths, lims, isdatetime
| process_hist | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, hist):\n edges, hvals, widths, lims, isdatetime = super(SideHistogramPlot, self\n )._process_hist(hist)\n offset = self.offset * lims[3]\n hvals *= 1 - self.offset\n hvals += offset\n lims = lims[0:3] + (lims[3] + offset,)\n return edges, hvals, widths, lims, isdatetime\n",
"role": "user"
},
{
"content": "process_hist",
"role": "assistant"
}
] |
def x(self, key, element, bars, lims, ranges):
main = self.adjoined.main
_, y1 = element.range(1)
offset = self.offset * y1
range_item, main_range, dim = get_sideplot_ranges(self, element, main,
ranges)
plot_type = Store.registry['matplotlib'].get(type(range_item))
if isinstance(plot_type, PlotSelector):
plot_type = plot_type.get_plot_class(range_item)
opts = self.lookup_options(range_item, 'plot')
if plot_type and issubclass(plot_type, ColorbarPlot):
cidx = opts.options.get('color_index', None)
if cidx is None:
opts = self.lookup_options(range_item, 'style')
cidx = opts.kwargs.get('color', None)
if cidx not in range_item:
cidx = None
cdim = None if cidx is None else range_item.get_dimension(cidx)
else:
cdim = None
if isinstance(range_item, (HeatMap, Raster)) or cdim:
style = self.lookup_options(range_item, 'style')[self.cyclic_index]
cmap = cm.get_cmap(style.get('cmap'))
main_range = style.get('clims', main_range)
else:
cmap = None
if offset and 'offset_line' not in self.handles:
self.handles['offset_line'] = self.offset_linefn(offset, linewidth=
1.0, color='k')
elif offset:
self._update_separator(offset)
if cmap is not None:
self._colorize_bars(cmap, bars, element, main_range, dim)
return bars
| update_plot | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, key, element, bars, lims, ranges):\n main = self.adjoined.main\n _, y1 = element.range(1)\n offset = self.offset * y1\n range_item, main_range, dim = get_sideplot_ranges(self, element, main,\n ranges)\n plot_type = Store.registry['matplotlib'].get(type(range_item))\n if isinstance(plot_type, PlotSelector):\n plot_type = plot_type.get_plot_class(range_item)\n opts = self.lookup_options(range_item, 'plot')\n if plot_type and issubclass(plot_type, ColorbarPlot):\n cidx = opts.options.get('color_index', None)\n if cidx is None:\n opts = self.lookup_options(range_item, 'style')\n cidx = opts.kwargs.get('color', None)\n if cidx not in range_item:\n cidx = None\n cdim = None if cidx is None else range_item.get_dimension(cidx)\n else:\n cdim = None\n if isinstance(range_item, (HeatMap, Raster)) or cdim:\n style = self.lookup_options(range_item, 'style')[self.cyclic_index]\n cmap = cm.get_cmap(style.get('cmap'))\n main_range = style.get('clims', main_range)\n else:\n cmap = None\n if offset and 'offset_line' not in self.handles:\n self.handles['offset_line'] = self.offset_linefn(offset, linewidth=\n 1.0, color='k')\n elif offset:\n self._update_separator(offset)\n if cmap is not None:\n self._colorize_bars(cmap, bars, element, main_range, dim)\n return bars\n",
"role": "user"
},
{
"content": "update_plot",
"role": "assistant"
}
] |
def x(self, cmap, bars, element, main_range, dim):
cmap_range = main_range[1] - main_range[0]
lower_bound = main_range[0]
colors = np.array(element.dimension_values(dim))
colors = (colors - lower_bound) / cmap_range
for c, bar in zip(colors, bars):
bar.set_facecolor(cmap(c))
bar.set_clip_on(False)
| colorize_bars | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, cmap, bars, element, main_range, dim):\n cmap_range = main_range[1] - main_range[0]\n lower_bound = main_range[0]\n colors = np.array(element.dimension_values(dim))\n colors = (colors - lower_bound) / cmap_range\n for c, bar in zip(colors, bars):\n bar.set_facecolor(cmap(c))\n bar.set_clip_on(False)\n",
"role": "user"
},
{
"content": "colorize_bars",
"role": "assistant"
}
] |
def x(self, offset):
offset_line = self.handles['offset_line']
if offset == 0:
offset_line.set_visible(False)
else:
offset_line.set_visible(True)
if self.invert_axes:
offset_line.set_xdata(offset)
else:
offset_line.set_ydata(offset)
| update_separator | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, offset):\n offset_line = self.handles['offset_line']\n if offset == 0:\n offset_line.set_visible(False)\n else:\n offset_line.set_visible(True)\n if self.invert_axes:\n offset_line.set_xdata(offset)\n else:\n offset_line.set_ydata(offset)\n",
"role": "user"
},
{
"content": "update_separator",
"role": "assistant"
}
] |
def x(self):
(gi, _), (ci, _), (si, _) = self._get_dims(self.hmap.last)
ndims = self.hmap.last.ndims
dims = self.hmap.last.kdims
dimensions = []
values = {}
for vidx, vtype in zip([gi, ci, si], self._dimensions):
if vidx < ndims:
dim = dims[vidx]
dimensions.append(dim)
vals = self.hmap.dimension_values(dim.name)
else:
dimensions.append(None)
vals = [None]
values[vtype] = list(unique_iterator(vals))
return values, dimensions
| get_values | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n (gi, _), (ci, _), (si, _) = self._get_dims(self.hmap.last)\n ndims = self.hmap.last.ndims\n dims = self.hmap.last.kdims\n dimensions = []\n values = {}\n for vidx, vtype in zip([gi, ci, si], self._dimensions):\n if vidx < ndims:\n dim = dims[vidx]\n dimensions.append(dim)\n vals = self.hmap.dimension_values(dim.name)\n else:\n dimensions.append(None)\n vals = [None]\n values[vtype] = list(unique_iterator(vals))\n return values, dimensions\n",
"role": "user"
},
{
"content": "get_values",
"role": "assistant"
}
] |
def x(self, element, style_groups):
style = self.lookup_options(element, 'style')[0]
sopts = []
for sopt in ['color', 'hatch']:
if sopt in style:
sopts.append(sopt)
style.pop(sopt, None)
color_groups = []
for sg in style_groups:
color_groups.append(self.values[sg])
style_product = list(product(*color_groups))
wrapped_style = self.lookup_options(element, 'style').max_cycles(len(
style_product))
color_groups = {k: tuple(wrapped_style[n][sopt] for sopt in sopts) for
n, k in enumerate(style_product)}
return style, color_groups, sopts
| compute_styles | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, element, style_groups):\n style = self.lookup_options(element, 'style')[0]\n sopts = []\n for sopt in ['color', 'hatch']:\n if sopt in style:\n sopts.append(sopt)\n style.pop(sopt, None)\n color_groups = []\n for sg in style_groups:\n color_groups.append(self.values[sg])\n style_product = list(product(*color_groups))\n wrapped_style = self.lookup_options(element, 'style').max_cycles(len(\n style_product))\n color_groups = {k: tuple(wrapped_style[n][sopt] for sopt in sopts) for \n n, k in enumerate(style_product)}\n return style, color_groups, sopts\n",
"role": "user"
},
{
"content": "compute_styles",
"role": "assistant"
}
] |
def x(self, axis, element, xticks, yticks, zticks):
yalignments = None
if xticks is not None:
ticks, labels, yalignments = zip(*sorted(xticks, key=lambda x: x[0]))
xticks = list(ticks), list(labels)
super(BarPlot, self)._finalize_ticks(axis, element, xticks, yticks, zticks)
if yalignments:
for t, y in zip(axis.get_xticklabels(), yalignments):
t.set_y(y)
| finalize_ticks | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, axis, element, xticks, yticks, zticks):\n yalignments = None\n if xticks is not None:\n ticks, labels, yalignments = zip(*sorted(xticks, key=lambda x: x[0]))\n xticks = list(ticks), list(labels)\n super(BarPlot, self)._finalize_ticks(axis, element, xticks, yticks, zticks)\n if yalignments:\n for t, y in zip(axis.get_xticklabels(), yalignments):\n t.set_y(y)\n",
"role": "user"
},
{
"content": "finalize_ticks",
"role": "assistant"
}
] |
def x(self):
if self.main and self.main.group != type(self.main).__name__:
return self.main.group
else:
return 'AdjointLayout'
| group | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n if self.main and self.main.group != type(self.main).__name__:\n return self.main.group\n else:\n return 'AdjointLayout'\n",
"role": "user"
},
{
"content": "group",
"role": "assistant"
}
] |
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