source_code
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45
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function_name
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messages
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def x(dataset, dim): arrays = [dataset.interface.coords(dataset, d.name, True) for d in dataset.kdims] idx = dataset.get_dimension_index(dim) return cartesian_product(arrays, flat=False)[idx].T
expand_grid_coords
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(dataset, dim):\n arrays = [dataset.interface.coords(dataset, d.name, True) for d in\n dataset.kdims]\n idx = dataset.get_dimension_index(dim)\n return cartesian_product(arrays, flat=False)[idx].T\n", "role": "user" }, { "content": "expand_grid_coords", "role": "assistant" } ]
def x(dt64): ts = (dt64 - np.datetime64('1970-01-01T00:00:00')) / np.timedelta64(1, 's') return dt.datetime.utcfromtimestamp(ts)
dt64_to_dt
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(dt64):\n ts = (dt64 - np.datetime64('1970-01-01T00:00:00')) / np.timedelta64(1, 's')\n return dt.datetime.utcfromtimestamp(ts)\n", "role": "user" }, { "content": "dt64_to_dt", "role": "assistant" } ]
def x(vals, density, time_unit='us'): if not len(vals): return np.nan, np.nan, density, False low, high = vals.min(), vals.max() invert = False if len(vals) > 1 and vals[0] > vals[1]: invert = True if not density: with warnings.catch_warnings(): warnings.filterwarnings('ignore', 'invalid value encountered in double_scalars') full_precision_density = compute_density(low, high, len(vals) - 1) density = round(full_precision_density, sys.float_info.dig) if density == 0: density = full_precision_density if density == 0: raise ValueError( 'Could not determine Image density, ensure it has a non-zero range.' ) halfd = 0.5 / density if isinstance(low, datetime_types): halfd = np.timedelta64(int(round(halfd)), time_unit) return low - halfd, high + halfd, density, invert
bound_range
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(vals, density, time_unit='us'):\n if not len(vals):\n return np.nan, np.nan, density, False\n low, high = vals.min(), vals.max()\n invert = False\n if len(vals) > 1 and vals[0] > vals[1]:\n invert = True\n if not density:\n with warnings.catch_warnings():\n warnings.filterwarnings('ignore',\n 'invalid value encountered in double_scalars')\n full_precision_density = compute_density(low, high, len(vals) - 1)\n density = round(full_precision_density, sys.float_info.dig)\n if density == 0:\n density = full_precision_density\n if density == 0:\n raise ValueError(\n 'Could not determine Image density, ensure it has a non-zero range.'\n )\n halfd = 0.5 / density\n if isinstance(low, datetime_types):\n halfd = np.timedelta64(int(round(halfd)), time_unit)\n return low - halfd, high + halfd, density, invert\n", "role": "user" }, { "content": "bound_range", "role": "assistant" } ]
def x(values, rtol=1e-05): diffs = np.diff(values) return len(diffs) < 1 or abs(diffs.min() - diffs.max()) < abs(diffs.min () * rtol)
validate_regular_sampling
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(values, rtol=1e-05):\n diffs = np.diff(values)\n return len(diffs) < 1 or abs(diffs.min() - diffs.max()) < abs(diffs.min\n () * rtol)\n", "role": "user" }, { "content": "validate_regular_sampling", "role": "assistant" } ]
def x(start, end, length, time_unit='us'): if isinstance(start, int): start = float(start) if isinstance(end, int): end = float(end) diff = end - start if isinstance(diff, timedelta_types): if isinstance(diff, np.timedelta64): diff = np.timedelta64(diff, time_unit).tolist() tscale = 1.0 / np.timedelta64(1, time_unit).tolist().total_seconds() return length / (diff.total_seconds() * tscale) else: return length / diff
compute_density
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(start, end, length, time_unit='us'):\n if isinstance(start, int):\n start = float(start)\n if isinstance(end, int):\n end = float(end)\n diff = end - start\n if isinstance(diff, timedelta_types):\n if isinstance(diff, np.timedelta64):\n diff = np.timedelta64(diff, time_unit).tolist()\n tscale = 1.0 / np.timedelta64(1, time_unit).tolist().total_seconds()\n return length / (diff.total_seconds() * tscale)\n else:\n return length / diff\n", "role": "user" }, { "content": "compute_density", "role": "assistant" } ]
def x(start, end, length, time_unit='us'): step = 1.0 / compute_density(start, end, length, time_unit) if pd and isinstance(start, pd.Timestamp): start = start.to_datetime64() step = np.timedelta64(int(round(step)), time_unit) return start + step / 2.0 + np.arange(length) * step
date_range
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(start, end, length, time_unit='us'):\n step = 1.0 / compute_density(start, end, length, time_unit)\n if pd and isinstance(start, pd.Timestamp):\n start = start.to_datetime64()\n step = np.timedelta64(int(round(step)), time_unit)\n return start + step / 2.0 + np.arange(length) * step\n", "role": "user" }, { "content": "date_range", "role": "assistant" } ]
def x(value, time_unit='us'): if pd: if isinstance(value, pd.Period): value = value.to_timestamp() if isinstance(value, pd.Timestamp): try: value = value.to_datetime64() except: value = np.datetime64(value.to_pydatetime()) elif isinstance(value, cftime_types): return cftime_to_timestamp(value, time_unit) if isinstance(value, dt.date): value = dt.datetime(*value.timetuple()[:6]) if isinstance(value, np.datetime64): try: value = np.datetime64(value, 'ns') tscale = np.timedelta64(1, time_unit) / np.timedelta64(1, 'ns') return value.tolist() / tscale except: value = value.tolist() if time_unit == 'ns': tscale = 1000000000.0 else: tscale = 1.0 / np.timedelta64(1, time_unit).tolist().total_seconds() try: return int(value.timestamp() * tscale) except: return (time.mktime(value.timetuple()) + value.microsecond / 1000000.0 ) * tscale
dt_to_int
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(value, time_unit='us'):\n if pd:\n if isinstance(value, pd.Period):\n value = value.to_timestamp()\n if isinstance(value, pd.Timestamp):\n try:\n value = value.to_datetime64()\n except:\n value = np.datetime64(value.to_pydatetime())\n elif isinstance(value, cftime_types):\n return cftime_to_timestamp(value, time_unit)\n if isinstance(value, dt.date):\n value = dt.datetime(*value.timetuple()[:6])\n if isinstance(value, np.datetime64):\n try:\n value = np.datetime64(value, 'ns')\n tscale = np.timedelta64(1, time_unit) / np.timedelta64(1, 'ns')\n return value.tolist() / tscale\n except:\n value = value.tolist()\n if time_unit == 'ns':\n tscale = 1000000000.0\n else:\n tscale = 1.0 / np.timedelta64(1, time_unit).tolist().total_seconds()\n try:\n return int(value.timestamp() * tscale)\n except:\n return (time.mktime(value.timetuple()) + value.microsecond / 1000000.0\n ) * tscale\n", "role": "user" }, { "content": "dt_to_int", "role": "assistant" } ]
def x(date, time_unit='us'): import cftime utime = cftime.utime('microseconds since 1970-01-01 00:00:00') if time_unit == 'us': tscale = 1 else: tscale = np.timedelta64(1, 'us') / np.timedelta64(1, time_unit) return utime.date2num(date) * tscale
cftime_to_timestamp
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(date, time_unit='us'):\n import cftime\n utime = cftime.utime('microseconds since 1970-01-01 00:00:00')\n if time_unit == 'us':\n tscale = 1\n else:\n tscale = np.timedelta64(1, 'us') / np.timedelta64(1, time_unit)\n return utime.date2num(date) * tscale\n", "role": "user" }, { "content": "cftime_to_timestamp", "role": "assistant" } ]
def x(values, source): orig_indices = source.argsort() return orig_indices[np.searchsorted(source[orig_indices], values)]
search_indices
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(values, source):\n orig_indices = source.argsort()\n return orig_indices[np.searchsorted(source[orig_indices], values)]\n", "role": "user" }, { "content": "search_indices", "role": "assistant" } ]
def x(edges): edges = np.asarray(edges) if edges.dtype.kind == 'i': edges = edges.astype('f') midpoints = (edges[:-1] + edges[1:]) / 2.0 boundaries = 2 * edges[0] - midpoints[0], 2 * edges[-1] - midpoints[-1] return np.concatenate([boundaries[:1], midpoints, boundaries[-1:]])
compute_edges
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(edges):\n edges = np.asarray(edges)\n if edges.dtype.kind == 'i':\n edges = edges.astype('f')\n midpoints = (edges[:-1] + edges[1:]) / 2.0\n boundaries = 2 * edges[0] - midpoints[0], 2 * edges[-1] - midpoints[-1]\n return np.concatenate([boundaries[:1], midpoints, boundaries[-1:]])\n", "role": "user" }, { "content": "compute_edges", "role": "assistant" } ]
def x(bundle): if isinstance(bundle, tuple): data, metadata = bundle else: data = bundle html = data.get('text/html', '') if 'application/javascript' in data: js = data['application/javascript'] html += '\n<script type="application/javascript">{js}</script>'.format( js=js) return html
mimebundle_to_html
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(bundle):\n if isinstance(bundle, tuple):\n data, metadata = bundle\n else:\n data = bundle\n html = data.get('text/html', '')\n if 'application/javascript' in data:\n js = data['application/javascript']\n html += '\\n<script type=\"application/javascript\">{js}</script>'.format(\n js=js)\n return html\n", "role": "user" }, { "content": "mimebundle_to_html", "role": "assistant" } ]
def x(scalar): scalar_type = type(scalar) if np.issubclass_(scalar_type, np.float_): return float(scalar) elif np.issubclass_(scalar_type, np.int_): return int(scalar) return scalar
numpy_scalar_to_python
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(scalar):\n scalar_type = type(scalar)\n if np.issubclass_(scalar_type, np.float_):\n return float(scalar)\n elif np.issubclass_(scalar_type, np.int_):\n return int(scalar)\n return scalar\n", "role": "user" }, { "content": "numpy_scalar_to_python", "role": "assistant" } ]
def x(match, specs, depth=0): new_specs = [] match_lengths = [] for i, spec in specs: if spec[0] == match[0]: new_specs.append((i, spec[1:])) else: if all(isinstance(s[0], basestring) for s in [spec, match]): match_length = max(i for i in range(len(match[0])) if match [0].startswith(spec[0][:i])) elif is_number(match[0]) and is_number(spec[0]): match_length = -abs(match[0] - spec[0]) else: match_length = 0 match_lengths.append((i, match_length, spec[0])) if len(new_specs) == 1: return new_specs[0][0] elif new_specs: depth = depth + 1 return closest_match(match[1:], new_specs, depth) elif depth == 0 or not match_lengths: return None else: return sorted(match_lengths, key=lambda x: -x[1])[0][0]
closest_match
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(match, specs, depth=0):\n new_specs = []\n match_lengths = []\n for i, spec in specs:\n if spec[0] == match[0]:\n new_specs.append((i, spec[1:]))\n else:\n if all(isinstance(s[0], basestring) for s in [spec, match]):\n match_length = max(i for i in range(len(match[0])) if match\n [0].startswith(spec[0][:i]))\n elif is_number(match[0]) and is_number(spec[0]):\n match_length = -abs(match[0] - spec[0])\n else:\n match_length = 0\n match_lengths.append((i, match_length, spec[0]))\n if len(new_specs) == 1:\n return new_specs[0][0]\n elif new_specs:\n depth = depth + 1\n return closest_match(match[1:], new_specs, depth)\n elif depth == 0 or not match_lengths:\n return None\n else:\n return sorted(match_lengths, key=lambda x: -x[1])[0][0]\n", "role": "user" }, { "content": "closest_match", "role": "assistant" } ]
def x(self_or_cls, **kwargs): self_or_cls.aliases.update({v: k for k, v in kwargs.items()})
add_aliases
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self_or_cls, **kwargs):\n self_or_cls.aliases.update({v: k for k, v in kwargs.items()})\n", "role": "user" }, { "content": "add_aliases", "role": "assistant" } ]
def x(self_or_cls, aliases): for k, v in self_or_cls.aliases.items(): if v in aliases: self_or_cls.aliases.pop(k)
remove_aliases
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self_or_cls, aliases):\n for k, v in self_or_cls.aliases.items():\n if v in aliases:\n self_or_cls.aliases.pop(k)\n", "role": "user" }, { "content": "remove_aliases", "role": "assistant" } ]
def x(self, identifier, version): invalid_starting = ['Mn', 'Mc', 'Nd', 'Pc'] if identifier.startswith('_'): return True return identifier[0 ] in string.digits if version == 2 else unicodedata.category(identifier [0]) in invalid_starting
prefixed
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, identifier, version):\n invalid_starting = ['Mn', 'Mc', 'Nd', 'Pc']\n if identifier.startswith('_'):\n return True\n return identifier[0\n ] in string.digits if version == 2 else unicodedata.category(identifier\n [0]) in invalid_starting\n", "role": "user" }, { "content": "prefixed", "role": "assistant" } ]
def x(self_or_cls, identifier): chars = '' for c in identifier: replacement = unicodedata.normalize('NFKD', c).encode('ASCII', 'ignore' ) if replacement != '': chars += bytes_to_unicode(replacement) else: chars += c return chars
remove_diacritics
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self_or_cls, identifier):\n chars = ''\n for c in identifier:\n replacement = unicodedata.normalize('NFKD', c).encode('ASCII', 'ignore'\n )\n if replacement != '':\n chars += bytes_to_unicode(replacement)\n else:\n chars += c\n return chars\n", "role": "user" }, { "content": "remove_diacritics", "role": "assistant" } ]
def x(self_or_cls, c, eliminations=[], substitutions={}, transforms=[]): name = unicodedata.name(c).lower() for elim in eliminations: name = name.replace(elim, '') for i, o in substitutions.items(): name = name.replace(i, o) for transform in transforms: name = transform(name) return ' '.join(name.strip().split()).replace(' ', '_').replace('-', '_')
shortened_character_name
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self_or_cls, c, eliminations=[], substitutions={}, transforms=[]):\n name = unicodedata.name(c).lower()\n for elim in eliminations:\n name = name.replace(elim, '')\n for i, o in substitutions.items():\n name = name.replace(i, o)\n for transform in transforms:\n name = transform(name)\n return ' '.join(name.strip().split()).replace(' ', '_').replace('-', '_')\n", "role": "user" }, { "content": "shortened_character_name", "role": "assistant" } ]
def x(self, tokens): groups = [([str(''.join(el))] if b else list(el)) for b, el in itertools.groupby(tokens, lambda k: k == '_')] flattened = [el for group in groups for el in group] processed = [] for token in flattened: if token == '_': continue if token.startswith('_'): token = str(token[1:]) if token.endswith('_'): token = str(token[:-1]) processed.append(token) return processed
process_underscores
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, tokens):\n groups = [([str(''.join(el))] if b else list(el)) for b, el in\n itertools.groupby(tokens, lambda k: k == '_')]\n flattened = [el for group in groups for el in group]\n processed = []\n for token in flattened:\n if token == '_':\n continue\n if token.startswith('_'):\n token = str(token[1:])\n if token.endswith('_'):\n token = str(token[:-1])\n processed.append(token)\n return processed\n", "role": "user" }, { "content": "process_underscores", "role": "assistant" } ]
def x(self, name, valid_fn): invalid = {'\x07': 'a', '\x08': 'b', '\x0b': 'v', '\x0c': 'f', '\r': 'r'} for cc in filter(lambda el: el in name, invalid.keys()): raise Exception( "Please use a raw string or escape control code '\\%s'" % invalid[cc]) sanitized, chars = [], '' for split in name.split(): for c in split: if valid_fn(c): chars += str(c) if c == '_' else c else: short = self.shortened_character_name(c, self.eliminations, self.substitutions, self.transforms) sanitized.extend([chars] if chars else []) if short != '': sanitized.append(short) chars = '' if chars: sanitized.extend([chars]) chars = '' return self._process_underscores(sanitized + ([chars] if chars else []))
sanitize
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, name, valid_fn):\n invalid = {'\\x07': 'a', '\\x08': 'b', '\\x0b': 'v', '\\x0c': 'f', '\\r': 'r'}\n for cc in filter(lambda el: el in name, invalid.keys()):\n raise Exception(\n \"Please use a raw string or escape control code '\\\\%s'\" %\n invalid[cc])\n sanitized, chars = [], ''\n for split in name.split():\n for c in split:\n if valid_fn(c):\n chars += str(c) if c == '_' else c\n else:\n short = self.shortened_character_name(c, self.eliminations,\n self.substitutions, self.transforms)\n sanitized.extend([chars] if chars else [])\n if short != '':\n sanitized.append(short)\n chars = ''\n if chars:\n sanitized.extend([chars])\n chars = ''\n return self._process_underscores(sanitized + ([chars] if chars else []))\n", "role": "user" }, { "content": "sanitize", "role": "assistant" } ]
def x(cls, dataset, dim, expanded=True, flat=True, compute=True): dim_idx = dataset.get_dimension_index(dim) if dim_idx in [0, 1]: l, b, r, t = dataset.bounds.lbrt() dim2, dim1 = dataset.data.shape[:2] xdate, ydate = isinstance(l, util.datetime_types), isinstance(b, util.datetime_types) if l == r or dim1 == 0: xlin = np.full((dim1,), l, dtype='datetime64[us]' if xdate else 'float') elif xdate: xlin = util.date_range(l, r, dim1, dataset._time_unit) else: xstep = float(r - l) / dim1 xlin = np.linspace(l + xstep / 2.0, r - xstep / 2.0, dim1) if b == t or dim2 == 0: ylin = np.full((dim2,), b, dtype='datetime64[us]' if ydate else 'float') elif ydate: ylin = util.date_range(b, t, dim2, dataset._time_unit) else: ystep = float(t - b) / dim2 ylin = np.linspace(b + ystep / 2.0, t - ystep / 2.0, dim2) if expanded: values = np.meshgrid(ylin, xlin)[abs(dim_idx - 1)] return values.flatten() if flat else values.T else: return ylin if dim_idx else xlin elif dataset.ndims <= dim_idx < len(dataset.dimensions()): if dataset.data.ndim > 2: data = dataset.data[:, :, dim_idx - dataset.ndims] else: data = dataset.data data = np.flipud(data) return data.T.flatten() if flat else data else: return None
values
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, dataset, dim, expanded=True, flat=True, compute=True):\n dim_idx = dataset.get_dimension_index(dim)\n if dim_idx in [0, 1]:\n l, b, r, t = dataset.bounds.lbrt()\n dim2, dim1 = dataset.data.shape[:2]\n xdate, ydate = isinstance(l, util.datetime_types), isinstance(b,\n util.datetime_types)\n if l == r or dim1 == 0:\n xlin = np.full((dim1,), l, dtype='datetime64[us]' if xdate else\n 'float')\n elif xdate:\n xlin = util.date_range(l, r, dim1, dataset._time_unit)\n else:\n xstep = float(r - l) / dim1\n xlin = np.linspace(l + xstep / 2.0, r - xstep / 2.0, dim1)\n if b == t or dim2 == 0:\n ylin = np.full((dim2,), b, dtype='datetime64[us]' if ydate else\n 'float')\n elif ydate:\n ylin = util.date_range(b, t, dim2, dataset._time_unit)\n else:\n ystep = float(t - b) / dim2\n ylin = np.linspace(b + ystep / 2.0, t - ystep / 2.0, dim2)\n if expanded:\n values = np.meshgrid(ylin, xlin)[abs(dim_idx - 1)]\n return values.flatten() if flat else values.T\n else:\n return ylin if dim_idx else xlin\n elif dataset.ndims <= dim_idx < len(dataset.dimensions()):\n if dataset.data.ndim > 2:\n data = dataset.data[:, :, dim_idx - dataset.ndims]\n else:\n data = dataset.data\n data = np.flipud(data)\n return data.T.flatten() if flat else data\n else:\n return None\n", "role": "user" }, { "content": "values", "role": "assistant" } ]
def x(cls, dataset, selection_mask=None, **selection): selection = {k: (slice(*sel) if isinstance(sel, tuple) else sel) for k, sel in selection.items()} coords = tuple(selection[kd.name] if kd.name in selection else slice( None) for kd in dataset.kdims) if not any([isinstance(el, slice) for el in coords]): return dataset.data[dataset.sheet2matrixidx(*coords)] xidx, yidx = coords l, b, r, t = dataset.bounds.lbrt() if isinstance(xidx, slice): l = l if xidx.start is None else max(l, xidx.start) r = r if xidx.stop is None else min(r, xidx.stop) if isinstance(yidx, slice): b = b if yidx.start is None else max(b, yidx.start) t = t if yidx.stop is None else min(t, yidx.stop) bounds = BoundingBox(points=((l, b), (r, t))) slc = Slice(bounds, dataset) return slc.submatrix(dataset.data)
select
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, dataset, selection_mask=None, **selection):\n selection = {k: (slice(*sel) if isinstance(sel, tuple) else sel) for k,\n sel in selection.items()}\n coords = tuple(selection[kd.name] if kd.name in selection else slice(\n None) for kd in dataset.kdims)\n if not any([isinstance(el, slice) for el in coords]):\n return dataset.data[dataset.sheet2matrixidx(*coords)]\n xidx, yidx = coords\n l, b, r, t = dataset.bounds.lbrt()\n if isinstance(xidx, slice):\n l = l if xidx.start is None else max(l, xidx.start)\n r = r if xidx.stop is None else min(r, xidx.stop)\n if isinstance(yidx, slice):\n b = b if yidx.start is None else max(b, yidx.start)\n t = t if yidx.stop is None else min(t, yidx.stop)\n bounds = BoundingBox(points=((l, b), (r, t)))\n slc = Slice(bounds, dataset)\n return slc.submatrix(dataset.data)\n", "role": "user" }, { "content": "select", "role": "assistant" } ]
def x(cls, dataset, samples=[]): if len(samples[0]) == 1: select = {dataset.kdims[0].name: [s[0] for s in samples]} return tuple(dataset.select(**select).columns().values()) return [(c + (dataset.data[dataset._coord2matrix(c)],)) for c in samples]
sample
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, dataset, samples=[]):\n if len(samples[0]) == 1:\n select = {dataset.kdims[0].name: [s[0] for s in samples]}\n return tuple(dataset.select(**select).columns().values())\n return [(c + (dataset.data[dataset._coord2matrix(c)],)) for c in samples]\n", "role": "user" }, { "content": "sample", "role": "assistant" } ]
def x(cls, dataset, data): if np.isscalar(data) or len(data) != 1: return data key = list(data.keys())[0] if len(data[key]) == 1 and key in dataset.vdims: return data[key][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 if np.isscalar(data) or len(data) != 1:\n return data\n key = list(data.keys())[0]\n if len(data[key]) == 1 and key in dataset.vdims:\n return data[key][0]\n", "role": "user" }, { "content": "unpack_scalar", "role": "assistant" } ]
def x(x, y, max_iters): i = 0 c = complex(x, y) z = 0.0j for i in range(max_iters): z = z * z + c if z.real * z.real + z.imag * z.imag >= 4: return i return 255
mandel
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x, y, max_iters):\n i = 0\n c = complex(x, y)\n z = 0.0j\n for i in range(max_iters):\n z = z * z + c\n if z.real * z.real + z.imag * z.imag >= 4:\n return i\n return 255\n", "role": "user" }, { "content": "mandel", "role": "assistant" } ]
def x(self, dim, data_range=True, dimension_range=True): didx = self.get_dimension_index(dim) dim = self.get_dimension(dim) if didx == 1 and data_range and len(self): mean = self.dimension_values(1) neg_error = self.dimension_values(2) if len(self.dimensions()) > 3: pos_error = self.dimension_values(3) else: pos_error = neg_error lower = np.nanmin(mean - neg_error) upper = np.nanmax(mean + pos_error) if not dimension_range: return lower, upper return util.dimension_range(lower, upper, dim.range, dim.soft_range) return super(ErrorBars, self).range(dim, data_range)
range
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dim, data_range=True, dimension_range=True):\n didx = self.get_dimension_index(dim)\n dim = self.get_dimension(dim)\n if didx == 1 and data_range and len(self):\n mean = self.dimension_values(1)\n neg_error = self.dimension_values(2)\n if len(self.dimensions()) > 3:\n pos_error = self.dimension_values(3)\n else:\n pos_error = neg_error\n lower = np.nanmin(mean - neg_error)\n upper = np.nanmax(mean + pos_error)\n if not dimension_range:\n return lower, upper\n return util.dimension_range(lower, upper, dim.range, dim.soft_range)\n return super(ErrorBars, self).range(dim, data_range)\n", "role": "user" }, { "content": "range", "role": "assistant" } ]
def x(self): if util.config.future_deprecations: self.param.warning( 'Histogram.values is deprecated in favor of common dimension_values method.' ) return self.dimension_values(1)
values
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n if util.config.future_deprecations:\n self.param.warning(\n 'Histogram.values is deprecated in favor of common dimension_values method.'\n )\n return self.dimension_values(1)\n", "role": "user" }, { "content": "values", "role": "assistant" } ]
def x(self): if util.config.future_deprecations: self.param.warning( 'Histogram.edges is deprecated in favor of common dimension_values method.' ) return self.interface.coords(self, self.kdims[0], edges=True)
edges
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n if util.config.future_deprecations:\n self.param.warning(\n 'Histogram.edges is deprecated in favor of common dimension_values method.'\n )\n return self.interface.coords(self, self.kdims[0], edges=True)\n", "role": "user" }, { "content": "edges", "role": "assistant" } ]
def x(cls, areas): if not len(areas): return areas baseline = np.zeros(len(areas.values()[0])) stacked = areas.clone(shared_data=False) vdims = [areas.values()[0].vdims[0], 'Baseline'] for k, area in areas.items(): x, y = (area.dimension_values(i) for i in range(2)) stacked[k] = area.clone((x, y + baseline, baseline), vdims=vdims, new_type=Area) baseline = baseline + y return stacked
stack
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, areas):\n if not len(areas):\n return areas\n baseline = np.zeros(len(areas.values()[0]))\n stacked = areas.clone(shared_data=False)\n vdims = [areas.values()[0].vdims[0], 'Baseline']\n for k, area in areas.items():\n x, y = (area.dimension_values(i) for i in range(2))\n stacked[k] = area.clone((x, y + baseline, baseline), vdims=vdims,\n new_type=Area)\n baseline = baseline + y\n return stacked\n", "role": "user" }, { "content": "stack", "role": "assistant" } ]
def x(self): plots = self.traverse(lambda x: x, [Plot]) for plot in plots: if not isinstance(plot, (GenericCompositePlot, GenericElementPlot, GenericOverlayPlot)): continue for stream in set(plot.streams): stream._subscribers = [(p, subscriber) for p, subscriber in stream._subscribers if util.get_method_owner(subscriber) not in plots] if self.comm: self.comm.close()
cleanup
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n plots = self.traverse(lambda x: x, [Plot])\n for plot in plots:\n if not isinstance(plot, (GenericCompositePlot, GenericElementPlot,\n GenericOverlayPlot)):\n continue\n for stream in set(plot.streams):\n stream._subscribers = [(p, subscriber) for p, subscriber in\n stream._subscribers if util.get_method_owner(subscriber) not in\n plots]\n if self.comm:\n self.comm.close()\n", "role": "user" }, { "content": "cleanup", "role": "assistant" } ]
def x(self, spec): if callable(spec) and not isinstance(spec, type): return spec(self) elif isinstance(spec, type): return isinstance(self, spec) else: raise ValueError( 'Matching specs have to be either a type or a callable.')
matches
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, spec):\n if callable(spec) and not isinstance(spec, type):\n return spec(self)\n elif isinstance(spec, type):\n return isinstance(self, spec)\n else:\n raise ValueError(\n 'Matching specs have to be either a type or a callable.')\n", "role": "user" }, { "content": "matches", "role": "assistant" } ]
def x(self, fn=None, specs=None, full_breadth=True): accumulator = [] matches = specs is None if not matches: for spec in specs: matches = self.matches(spec) if matches: break if matches: accumulator.append(fn(self) if fn else self) if hasattr(self, 'subplots') and self.subplots: for el in self.subplots.values(): if el is None: continue accumulator += el.traverse(fn, specs, full_breadth) if not full_breadth: break return accumulator
traverse
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, fn=None, specs=None, full_breadth=True):\n accumulator = []\n matches = specs is None\n if not matches:\n for spec in specs:\n matches = self.matches(spec)\n if matches:\n break\n if matches:\n accumulator.append(fn(self) if fn else self)\n if hasattr(self, 'subplots') and self.subplots:\n for el in self.subplots.values():\n if el is None:\n continue\n accumulator += el.traverse(fn, specs, full_breadth)\n if not full_breadth:\n break\n return accumulator\n", "role": "user" }, { "content": "traverse", "role": "assistant" } ]
def x(self, key, group_size=2, separator='\n'): if self.layout_dimensions is not None: dimensions, key = zip(*self.layout_dimensions.items()) elif not self.dynamic and (not self.uniform or len(self) == 1 ) or self.subplot: return '' else: key = key if isinstance(key, tuple) else (key,) dimensions = self.dimensions dimension_labels = [dim.pprint_value_string(k) for dim, k in zip( dimensions, key)] groups = [', '.join(dimension_labels[i * group_size:(i + 1) * group_size]) for i in range(len(dimension_labels))] return util.bytes_to_unicode(separator.join(g for g in groups if g))
frame_title
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, key, group_size=2, separator='\\n'):\n if self.layout_dimensions is not None:\n dimensions, key = zip(*self.layout_dimensions.items())\n elif not self.dynamic and (not self.uniform or len(self) == 1\n ) or self.subplot:\n return ''\n else:\n key = key if isinstance(key, tuple) else (key,)\n dimensions = self.dimensions\n dimension_labels = [dim.pprint_value_string(k) for dim, k in zip(\n dimensions, key)]\n groups = [', '.join(dimension_labels[i * group_size:(i + 1) *\n group_size]) for i in range(len(dimension_labels))]\n return util.bytes_to_unicode(separator.join(g for g in groups if g))\n", "role": "user" }, { "content": "frame_title", "role": "assistant" } ]
def x(self, obj, key, ranges): all_table = all(isinstance(el, Table) for el in obj.traverse(lambda x: x, [Element])) if obj is None or not self.normalize or all_table: return OrderedDict() ranges = self.ranges if ranges is None else dict(ranges) norm_opts = self._get_norm_opts(obj) return_fn = lambda x: x if isinstance(x, Element) else None for group, (axiswise, framewise) in norm_opts.items(): elements = [] framewise = framewise or self.dynamic or len(elements) == 1 if group in ranges and (not framewise or ranges is not self.ranges): continue elif not framewise: elements = obj.traverse(return_fn, [group]) elif key is not None: frame = self._get_frame(key) elements = [] if frame is None else frame.traverse(return_fn, [ group]) if not (axiswise and not isinstance(obj, HoloMap) ) or not framewise and isinstance(obj, HoloMap): self._compute_group_range(group, elements, ranges) self.ranges.update(ranges) return ranges
compute_ranges
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, obj, key, ranges):\n all_table = all(isinstance(el, Table) for el in obj.traverse(lambda x:\n x, [Element]))\n if obj is None or not self.normalize or all_table:\n return OrderedDict()\n ranges = self.ranges if ranges is None else dict(ranges)\n norm_opts = self._get_norm_opts(obj)\n return_fn = lambda x: x if isinstance(x, Element) else None\n for group, (axiswise, framewise) in norm_opts.items():\n elements = []\n framewise = framewise or self.dynamic or len(elements) == 1\n if group in ranges and (not framewise or ranges is not self.ranges):\n continue\n elif not framewise:\n elements = obj.traverse(return_fn, [group])\n elif key is not None:\n frame = self._get_frame(key)\n elements = [] if frame is None else frame.traverse(return_fn, [\n group])\n if not (axiswise and not isinstance(obj, HoloMap)\n ) or not framewise and isinstance(obj, HoloMap):\n self._compute_group_range(group, elements, ranges)\n self.ranges.update(ranges)\n return ranges\n", "role": "user" }, { "content": "compute_ranges", "role": "assistant" } ]
def x(self, obj): norm_opts = {} type_val_fn = lambda x: (x.id, (type(x).__name__, util.group_sanitizer( x.group, escape=False), util.label_sanitizer(x.label, escape=False)) ) if isinstance(x, Element) else None element_specs = {(idspec[0], idspec[1]) for idspec in obj.traverse( type_val_fn) if idspec is not None} key_fn = lambda x: -1 if x[0] is None else x[0] id_groups = groupby(sorted(element_specs, key=key_fn), key_fn) for gid, element_spec_group in id_groups: gid = None if gid == -1 else gid group_specs = [el for _, el in element_spec_group] backend = self.renderer.backend optstree = Store.custom_options(backend=backend).get(gid, Store. options(backend=backend)) for opts in optstree: path = tuple(opts.path.split('.')[1:]) applies = any(path == spec[:i] for spec in group_specs for i in range(1, 4)) if applies and 'norm' in opts.groups: nopts = opts['norm'].options if 'axiswise' in nopts or 'framewise' in nopts: norm_opts.update({path: (nopts.get('axiswise', False), nopts.get('framewise', False))}) element_specs = [spec for _, spec in element_specs] norm_opts.update({spec: (False, False) for spec in element_specs if not any(spec[:i] in norm_opts.keys() for i in range(1, 4))}) return norm_opts
get_norm_opts
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, obj):\n norm_opts = {}\n type_val_fn = lambda x: (x.id, (type(x).__name__, util.group_sanitizer(\n x.group, escape=False), util.label_sanitizer(x.label, escape=False))\n ) if isinstance(x, Element) else None\n element_specs = {(idspec[0], idspec[1]) for idspec in obj.traverse(\n type_val_fn) if idspec is not None}\n key_fn = lambda x: -1 if x[0] is None else x[0]\n id_groups = groupby(sorted(element_specs, key=key_fn), key_fn)\n for gid, element_spec_group in id_groups:\n gid = None if gid == -1 else gid\n group_specs = [el for _, el in element_spec_group]\n backend = self.renderer.backend\n optstree = Store.custom_options(backend=backend).get(gid, Store.\n options(backend=backend))\n for opts in optstree:\n path = tuple(opts.path.split('.')[1:])\n applies = any(path == spec[:i] for spec in group_specs for i in\n range(1, 4))\n if applies and 'norm' in opts.groups:\n nopts = opts['norm'].options\n if 'axiswise' in nopts or 'framewise' in nopts:\n norm_opts.update({path: (nopts.get('axiswise', False),\n nopts.get('framewise', False))})\n element_specs = [spec for _, spec in element_specs]\n norm_opts.update({spec: (False, False) for spec in element_specs if not\n any(spec[:i] in norm_opts.keys() for i in range(1, 4))})\n return norm_opts\n", "role": "user" }, { "content": "get_norm_opts", "role": "assistant" } ]
def x(cls, obj, opt_type, opts, specs=None, keyfn=None, defaults=True): def x(x): options = cls.lookup_options(x, opt_type) selected = {o: options.options[o] for o in opts if o in options.options } if opt_type == 'plot' and defaults: plot = Store.registry[cls.backend].get(type(x)) selected['defaults'] = {o: getattr(plot, o) for o in opts if o not in selected and hasattr(plot, o)} key = keyfn(x) if keyfn else None return key, selected traversed = obj.traverse(lookup, specs) options = defaultdict(lambda : defaultdict(list)) default_opts = defaultdict(lambda : defaultdict(list)) for key, opts in traversed: defaults = opts.pop('defaults', {}) for opt, v in opts.items(): options[key][opt].append(v) for opt, v in defaults.items(): default_opts[key][opt].append(v) for key, opts in default_opts.items(): for opt, v in opts.items(): if opt not in options[key]: options[key][opt] = v return options if keyfn else options[None]
traverse_options
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, obj, opt_type, opts, specs=None, keyfn=None, defaults=True):\n\n def x(x):\n options = cls.lookup_options(x, opt_type)\n selected = {o: options.options[o] for o in opts if o in options.options\n }\n if opt_type == 'plot' and defaults:\n plot = Store.registry[cls.backend].get(type(x))\n selected['defaults'] = {o: getattr(plot, o) for o in opts if o\n not in selected and hasattr(plot, o)}\n key = keyfn(x) if keyfn else None\n return key, selected\n traversed = obj.traverse(lookup, specs)\n options = defaultdict(lambda : defaultdict(list))\n default_opts = defaultdict(lambda : defaultdict(list))\n for key, opts in traversed:\n defaults = opts.pop('defaults', {})\n for opt, v in opts.items():\n options[key][opt].append(v)\n for opt, v in defaults.items():\n default_opts[key][opt].append(v)\n for key, opts in default_opts.items():\n for opt, v in opts.items():\n if opt not in options[key]:\n options[key][opt] = v\n return options if keyfn else options[None]\n", "role": "user" }, { "content": "traverse_options", "role": "assistant" } ]
def x(cls, obj): isoverlay = lambda x: isinstance(x, CompositeOverlay) element3d = obj.traverse(lambda x: x, [Element3D]) if element3d: return '3d' opts = cls._traverse_options(obj, 'plot', ['projection'], [ CompositeOverlay, Element], keyfn=isoverlay) from_overlay = not all(p is None for p in opts[True]['projection']) projections = opts[from_overlay]['projection'] custom_projs = [p for p in projections if p is not None] if len(set(custom_projs)) > 1: raise Exception('An axis may only be assigned one projection type') return custom_projs[0] if custom_projs else None
get_projection
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, obj):\n isoverlay = lambda x: isinstance(x, CompositeOverlay)\n element3d = obj.traverse(lambda x: x, [Element3D])\n if element3d:\n return '3d'\n opts = cls._traverse_options(obj, 'plot', ['projection'], [\n CompositeOverlay, Element], keyfn=isoverlay)\n from_overlay = not all(p is None for p in opts[True]['projection'])\n projections = opts[from_overlay]['projection']\n custom_projs = [p for p in projections if p is not None]\n if len(set(custom_projs)) > 1:\n raise Exception('An axis may only be assigned one projection type')\n return custom_projs[0] if custom_projs else None\n", "role": "user" }, { "content": "get_projection", "role": "assistant" } ]
def x(self, **kwargs): traverse_setter(self, '_force', True) key = self.current_key if self.current_key else self.keys[0] dim_streams = [stream for stream in self.streams if any(c in self. dimensions for c in stream.contents)] stream_params = stream_parameters(dim_streams) key = tuple(None if d in stream_params else k for d, k in zip(self. dimensions, key)) stream_key = util.wrap_tuple_streams(key, self.dimensions, self.streams) self._trigger_refresh(stream_key) if self.comm is not None and self.top_level: self.push()
refresh
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, **kwargs):\n traverse_setter(self, '_force', True)\n key = self.current_key if self.current_key else self.keys[0]\n dim_streams = [stream for stream in self.streams if any(c in self.\n dimensions for c in stream.contents)]\n stream_params = stream_parameters(dim_streams)\n key = tuple(None if d in stream_params else k for d, k in zip(self.\n dimensions, key))\n stream_key = util.wrap_tuple_streams(key, self.dimensions, self.streams)\n self._trigger_refresh(stream_key)\n if self.comm is not None and self.top_level:\n self.push()\n", "role": "user" }, { "content": "refresh", "role": "assistant" } ]
def x(self, key): if not self.top_level or isinstance(self, GenericElementPlot): self.update(key)
trigger_refresh
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, key):\n if not self.top_level or isinstance(self, GenericElementPlot):\n self.update(key)\n", "role": "user" }, { "content": "trigger_refresh", "role": "assistant" } ]
def x(self): if self.comm is None: raise Exception('Renderer does not have a comm.') diff = self.renderer.diff(self) self.comm.send(diff)
push
[ { "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.comm is None:\n raise Exception('Renderer does not have a comm.')\n diff = self.renderer.diff(self)\n self.comm.send(diff)\n", "role": "user" }, { "content": "push", "role": "assistant" } ]
def x(self): if self.comm: return self.comm comm = None if self.dynamic or self.renderer.widget_mode == 'live': comm = self.renderer.comm_manager.get_server_comm() return comm
init_comm
[ { "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.comm:\n return self.comm\n comm = None\n if self.dynamic or self.renderer.widget_mode == 'live':\n comm = self.renderer.comm_manager.get_server_comm()\n return comm\n", "role": "user" }, { "content": "init_comm", "role": "assistant" } ]
def x(self, overlay, key, el): spec = util.get_overlay_spec(overlay, key, el) return self.ordering.index(spec)
get_zorder
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, overlay, key, el):\n spec = util.get_overlay_spec(overlay, key, el)\n return self.ordering.index(spec)\n", "role": "user" }, { "content": "get_zorder", "role": "assistant" } ]
def x(self, element): if self.hooks and self.finalize_hooks: self.param.warning( 'Supply either hooks or finalize_hooks not both, using hooks and ignoring finalize_hooks.' ) hooks = self.hooks or self.finalize_hooks for hook in hooks: try: hook(self, element) except Exception as e: self.param.warning( 'Plotting hook %r could not be applied:\n\n %s' % (hook, e))
execute_hooks
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, element):\n if self.hooks and self.finalize_hooks:\n self.param.warning(\n 'Supply either hooks or finalize_hooks not both, using hooks and ignoring finalize_hooks.'\n )\n hooks = self.hooks or self.finalize_hooks\n for hook in hooks:\n try:\n hook(self, element)\n except Exception as e:\n self.param.warning(\n 'Plotting hook %r could not be applied:\\n\\n %s' % (hook, e))\n", "role": "user" }, { "content": "execute_hooks", "role": "assistant" } ]
def x(self, extents): x0, y0, z0, x1, y1, z1 = extents padding = 0 if self.overlaid else self.padding xpad, ypad, zpad = get_axis_padding(padding) if not self.overlaid and not self.batched: xspan = x1 - x0 if util.is_number(x0) and util.is_number(x1) else None yspan = y1 - y0 if util.is_number(y0) and util.is_number(y1) else None aspect = self.get_aspect(xspan, yspan) if aspect > 1: xpad = tuple(xp / aspect for xp in xpad) if isinstance(xpad, tuple ) else xpad / aspect else: ypad = tuple(yp * aspect for yp in ypad) if isinstance(ypad, tuple ) else ypad * aspect return xpad, ypad, zpad
get_padding
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, extents):\n x0, y0, z0, x1, y1, z1 = extents\n padding = 0 if self.overlaid else self.padding\n xpad, ypad, zpad = get_axis_padding(padding)\n if not self.overlaid and not self.batched:\n xspan = x1 - x0 if util.is_number(x0) and util.is_number(x1) else None\n yspan = y1 - y0 if util.is_number(y0) and util.is_number(y1) else None\n aspect = self.get_aspect(xspan, yspan)\n if aspect > 1:\n xpad = tuple(xp / aspect for xp in xpad) if isinstance(xpad, tuple\n ) else xpad / aspect\n else:\n ypad = tuple(yp * aspect for yp in ypad) if isinstance(ypad, tuple\n ) else ypad * aspect\n return xpad, ypad, zpad\n", "role": "user" }, { "content": "get_padding", "role": "assistant" } ]
def x(self, element, ranges, range_type='combined', xdim=None, ydim=None, zdim=None): num = 6 if self.projection == '3d' else 4 if self.apply_extents and range_type in ('combined', 'extents'): norm_opts = self.lookup_options(element, 'norm').options if norm_opts.get('framewise', False) or self.dynamic: extents = element.extents else: extent_list = self.hmap.traverse(lambda x: x.extents, [Element]) extents = util.max_extents(extent_list, self.projection == '3d') else: extents = (np.NaN,) * num if range_type == 'extents': return extents if self.apply_ranges: range_extents = self._get_range_extents(element, ranges, range_type, xdim, ydim, zdim) else: range_extents = (np.NaN,) * num if getattr(self, 'shared_axes', False) and self.subplot: combined = util.max_extents([range_extents, extents], self. projection == '3d') else: max_extent = [] for l1, l2 in zip(range_extents, extents): if isfinite(l2): max_extent.append(l2) else: max_extent.append(l1) combined = tuple(max_extent) if self.projection == '3d': x0, y0, z0, x1, y1, z1 = combined else: x0, y0, x1, y1 = combined x0, x1 = util.dimension_range(x0, x1, self.xlim, (None, None)) y0, y1 = util.dimension_range(y0, y1, self.ylim, (None, None)) if self.projection == '3d': z0, z1 = util.dimension_range(z0, z1, self.zlim, (None, None)) return x0, y0, z0, x1, y1, z1 return x0, y0, x1, y1
get_extents
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, element, ranges, range_type='combined', xdim=None, ydim=None,\n zdim=None):\n num = 6 if self.projection == '3d' else 4\n if self.apply_extents and range_type in ('combined', 'extents'):\n norm_opts = self.lookup_options(element, 'norm').options\n if norm_opts.get('framewise', False) or self.dynamic:\n extents = element.extents\n else:\n extent_list = self.hmap.traverse(lambda x: x.extents, [Element])\n extents = util.max_extents(extent_list, self.projection == '3d')\n else:\n extents = (np.NaN,) * num\n if range_type == 'extents':\n return extents\n if self.apply_ranges:\n range_extents = self._get_range_extents(element, ranges, range_type,\n xdim, ydim, zdim)\n else:\n range_extents = (np.NaN,) * num\n if getattr(self, 'shared_axes', False) and self.subplot:\n combined = util.max_extents([range_extents, extents], self.\n projection == '3d')\n else:\n max_extent = []\n for l1, l2 in zip(range_extents, extents):\n if isfinite(l2):\n max_extent.append(l2)\n else:\n max_extent.append(l1)\n combined = tuple(max_extent)\n if self.projection == '3d':\n x0, y0, z0, x1, y1, z1 = combined\n else:\n x0, y0, x1, y1 = combined\n x0, x1 = util.dimension_range(x0, x1, self.xlim, (None, None))\n y0, y1 = util.dimension_range(y0, y1, self.ylim, (None, None))\n if self.projection == '3d':\n z0, z1 = util.dimension_range(z0, z1, self.zlim, (None, None))\n return x0, y0, z0, x1, y1, z1\n return x0, y0, x1, y1\n", "role": "user" }, { "content": "get_extents", "role": "assistant" } ]
def x(self, holomap, ranges=None, keys=None, dimensions=None): defaultdim = holomap.ndims == 1 and holomap.kdims[0].name != 'Frame' if keys and ranges and dimensions and not defaultdim: dim_inds = [dimensions.index(d) for d in holomap.kdims] sliced_keys = [tuple(k[i] for i in dim_inds) for k in keys] frame_ranges = OrderedDict([(slckey, self.compute_ranges(holomap, key, ranges[key])) for key, slckey in zip(keys, sliced_keys) if slckey in holomap.data.keys()]) else: mapwise_ranges = self.compute_ranges(holomap, None, None) frame_ranges = OrderedDict([(key, self.compute_ranges(holomap, key, mapwise_ranges)) for key in holomap.data.keys()]) ranges = frame_ranges.values() return Compositor.collapse(holomap, (ranges, frame_ranges.keys()), mode ='display')
apply_compositor
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, holomap, ranges=None, keys=None, dimensions=None):\n defaultdim = holomap.ndims == 1 and holomap.kdims[0].name != 'Frame'\n if keys and ranges and dimensions and not defaultdim:\n dim_inds = [dimensions.index(d) for d in holomap.kdims]\n sliced_keys = [tuple(k[i] for i in dim_inds) for k in keys]\n frame_ranges = OrderedDict([(slckey, self.compute_ranges(holomap,\n key, ranges[key])) for key, slckey in zip(keys, sliced_keys) if\n slckey in holomap.data.keys()])\n else:\n mapwise_ranges = self.compute_ranges(holomap, None, None)\n frame_ranges = OrderedDict([(key, self.compute_ranges(holomap, key,\n mapwise_ranges)) for key in holomap.data.keys()])\n ranges = frame_ranges.values()\n return Compositor.collapse(holomap, (ranges, frame_ranges.keys()), mode\n ='display')\n", "role": "user" }, { "content": "apply_compositor", "role": "assistant" } ]
def x(self, key, items, ranges, **init_kwargs): length = self.style_grouping group_fn = lambda x: (x.type.__name__, x.last.group, x.last.label) for i, (k, obj) in enumerate(items): vmap = self.hmap.clone([(key, obj)]) self.map_lengths[group_fn(vmap)[:length]] += 1 subplot = self._create_subplot(k, vmap, [], ranges) if subplot is None: continue self.subplots[k] = subplot subplot.initialize_plot(ranges, **init_kwargs) subplot.update_frame(key, ranges, element=obj) self.dynamic_subplots.append(subplot)
create_dynamic_subplots
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, key, items, ranges, **init_kwargs):\n length = self.style_grouping\n group_fn = lambda x: (x.type.__name__, x.last.group, x.last.label)\n for i, (k, obj) in enumerate(items):\n vmap = self.hmap.clone([(key, obj)])\n self.map_lengths[group_fn(vmap)[:length]] += 1\n subplot = self._create_subplot(k, vmap, [], ranges)\n if subplot is None:\n continue\n self.subplots[k] = subplot\n subplot.initialize_plot(ranges, **init_kwargs)\n subplot.update_frame(key, ranges, element=obj)\n self.dynamic_subplots.append(subplot)\n", "role": "user" }, { "content": "create_dynamic_subplots", "role": "assistant" } ]
def x(self, subplot, spec): if spec in self.cyclic_index_lookup: cyclic_index = self.cyclic_index_lookup[spec] else: group_key = spec[:self.style_grouping] self.group_counter[group_key] += 1 cyclic_index = self.group_counter[group_key] self.cyclic_index_lookup[spec] = cyclic_index subplot.cyclic_index = cyclic_index if subplot.overlay_dims: odim_key = util.wrap_tuple(spec[-1]) new_dims = zip(subplot.overlay_dims, odim_key) subplot.overlay_dims = util.OrderedDict(new_dims)
update_subplot
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, subplot, spec):\n if spec in self.cyclic_index_lookup:\n cyclic_index = self.cyclic_index_lookup[spec]\n else:\n group_key = spec[:self.style_grouping]\n self.group_counter[group_key] += 1\n cyclic_index = self.group_counter[group_key]\n self.cyclic_index_lookup[spec] = cyclic_index\n subplot.cyclic_index = cyclic_index\n if subplot.overlay_dims:\n odim_key = util.wrap_tuple(spec[-1])\n new_dims = zip(subplot.overlay_dims, odim_key)\n subplot.overlay_dims = util.OrderedDict(new_dims)\n", "role": "user" }, { "content": "update_subplot", "role": "assistant" } ]
def x(self, overlay, ranges, range_type): if range_type == 'combined': extents = {'extents': [], 'soft': [], 'hard': [], 'data': []} else: extents = {range_type: []} items = overlay.items() if self.batched and self.subplots: subplot = list(self.subplots.values())[0] subplots = [(k, subplot) for k in overlay.data.keys()] else: subplots = self.subplots.items() for key, subplot in subplots: found = False if subplot is None: continue layer = overlay.data.get(key, None) if isinstance(self.hmap, DynamicMap) and layer is None: for _, layer in items: if isinstance(layer, subplot.hmap.type): found = True break if not found: layer = None if layer is None or not subplot.apply_ranges: continue if isinstance(layer, CompositeOverlay): sp_ranges = ranges else: sp_ranges = util.match_spec(layer, ranges) if ranges else {} for rt in extents: extent = subplot.get_extents(layer, sp_ranges, range_type=rt) extents[rt].append(extent) return extents
get_subplot_extents
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, overlay, ranges, range_type):\n if range_type == 'combined':\n extents = {'extents': [], 'soft': [], 'hard': [], 'data': []}\n else:\n extents = {range_type: []}\n items = overlay.items()\n if self.batched and self.subplots:\n subplot = list(self.subplots.values())[0]\n subplots = [(k, subplot) for k in overlay.data.keys()]\n else:\n subplots = self.subplots.items()\n for key, subplot in subplots:\n found = False\n if subplot is None:\n continue\n layer = overlay.data.get(key, None)\n if isinstance(self.hmap, DynamicMap) and layer is None:\n for _, layer in items:\n if isinstance(layer, subplot.hmap.type):\n found = True\n break\n if not found:\n layer = None\n if layer is None or not subplot.apply_ranges:\n continue\n if isinstance(layer, CompositeOverlay):\n sp_ranges = ranges\n else:\n sp_ranges = util.match_spec(layer, ranges) if ranges else {}\n for rt in extents:\n extent = subplot.get_extents(layer, sp_ranges, range_type=rt)\n extents[rt].append(extent)\n return extents\n", "role": "user" }, { "content": "get_subplot_extents", "role": "assistant" } ]
def x(self, key): cached = self.current_key is None layout_frame = self.layout.clone(shared_data=False) if key == self.current_key and not self._force: return self.current_frame else: self.current_key = key key_map = dict(zip([d.name for d in self.dimensions], key)) for path, item in self.layout.items(): frame = get_nested_plot_frame(item, key_map, cached) if frame is not None: layout_frame[path] = frame traverse_setter(self, '_force', False) self.current_frame = layout_frame return layout_frame
get_frame
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, key):\n cached = self.current_key is None\n layout_frame = self.layout.clone(shared_data=False)\n if key == self.current_key and not self._force:\n return self.current_frame\n else:\n self.current_key = key\n key_map = dict(zip([d.name for d in self.dimensions], key))\n for path, item in self.layout.items():\n frame = get_nested_plot_frame(item, key_map, cached)\n if frame is not None:\n layout_frame[path] = frame\n traverse_setter(self, '_force', False)\n self.current_frame = layout_frame\n return layout_frame\n", "role": "user" }, { "content": "get_frame", "role": "assistant" } ]
def x(cls, kw): kw = kw[:-1] if kw[-1] == ',' else kw return kw[1:] if kw[0] == ',' else kw
strip_commas
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, kw):\n kw = kw[:-1] if kw[-1] == ',' else kw\n return kw[1:] if kw[0] == ',' else kw\n", "role": "user" }, { "content": "strip_commas", "role": "assistant" } ]
def x(cls, parseresult, mode): inner = '(%s)' if mode == 'parens' else '[%s]' if parseresult is None: return [] tokens = [] for token in parseresult.asList(): if isinstance(token, list): token = cls.recurse_token(token, inner) tokens[-1] = tokens[-1] + token else: if token.strip() == ',': continue tokens.append(cls._strip_commas(token)) return tokens
collect_tokens
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, parseresult, mode):\n inner = '(%s)' if mode == 'parens' else '[%s]'\n if parseresult is None:\n return []\n tokens = []\n for token in parseresult.asList():\n if isinstance(token, list):\n token = cls.recurse_token(token, inner)\n tokens[-1] = tokens[-1] + token\n else:\n if token.strip() == ',':\n continue\n tokens.append(cls._strip_commas(token))\n return tokens\n", "role": "user" }, { "content": "collect_tokens", "role": "assistant" } ]
def x(cls, parseresult, mode='parens', ns={}): grouped, kwargs = [], {} tokens = cls.collect_tokens(parseresult, mode) for group in groupby(tokens, lambda el: '=' in el): val, items = group if val is True: grouped += list(items) if val is False: elements = list(items) joiner = ',' if any(')' in el or '}' in el for el in elements ) else '' grouped[-1] += joiner + joiner.join(elements) for keyword in grouped: for fst, snd in [('(,', '('), ('{,', '{'), ('=,', '='), (',:', ':'), (':,', ':'), (',,', ','), (',.', '.')]: keyword = keyword.replace(fst, snd) try: kwargs.update(eval('dict(%s)' % keyword, dict(cls.namespace, **ns)) ) except: if cls.abort_on_eval_failure: raise SyntaxError('Could not evaluate keyword: %r' % keyword) msg = "Ignoring keyword pair that fails to evaluate: '%s'" parsewarning.warning(msg % keyword) return kwargs
todict
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, parseresult, mode='parens', ns={}):\n grouped, kwargs = [], {}\n tokens = cls.collect_tokens(parseresult, mode)\n for group in groupby(tokens, lambda el: '=' in el):\n val, items = group\n if val is True:\n grouped += list(items)\n if val is False:\n elements = list(items)\n joiner = ',' if any(')' in el or '}' in el for el in elements\n ) else ''\n grouped[-1] += joiner + joiner.join(elements)\n for keyword in grouped:\n for fst, snd in [('(,', '('), ('{,', '{'), ('=,', '='), (',:', ':'),\n (':,', ':'), (',,', ','), (',.', '.')]:\n keyword = keyword.replace(fst, snd)\n try:\n kwargs.update(eval('dict(%s)' % keyword, dict(cls.namespace, **ns))\n )\n except:\n if cls.abort_on_eval_failure:\n raise SyntaxError('Could not evaluate keyword: %r' % keyword)\n msg = \"Ignoring keyword pair that fails to evaluate: '%s'\"\n parsewarning.warning(msg % keyword)\n return kwargs\n", "role": "user" }, { "content": "todict", "role": "assistant" } ]
def x(cls, parse_group): if 'norm_options' not in parse_group: return None opts = parse_group['norm_options'][0].asList() if opts == []: return None options = ['+framewise', '-framewise', '+axiswise', '-axiswise'] for normopt in options: if opts.count(normopt) > 1: raise SyntaxError( 'Normalization specification must not contain repeated %r' % normopt) if not all(opt in options for opt in opts): raise SyntaxError('Normalization option not one of %s' % ', '.join( options)) excluded = [('+framewise', '-framewise'), ('+axiswise', '-axiswise')] for pair in excluded: if all(exclude in opts for exclude in pair): raise SyntaxError( 'Normalization specification cannot contain both %s and %s' % (pair[0], pair[1])) if len(opts) == 1 and opts[0].endswith('framewise'): axiswise = False framewise = True if '+framewise' in opts else False elif len(opts) == 1 and opts[0].endswith('axiswise'): framewise = False axiswise = True if '+axiswise' in opts else False else: axiswise = True if '+axiswise' in opts else False framewise = True if '+framewise' in opts else False return dict(axiswise=axiswise, framewise=framewise)
process_normalization
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, parse_group):\n if 'norm_options' not in parse_group:\n return None\n opts = parse_group['norm_options'][0].asList()\n if opts == []:\n return None\n options = ['+framewise', '-framewise', '+axiswise', '-axiswise']\n for normopt in options:\n if opts.count(normopt) > 1:\n raise SyntaxError(\n 'Normalization specification must not contain repeated %r' %\n normopt)\n if not all(opt in options for opt in opts):\n raise SyntaxError('Normalization option not one of %s' % ', '.join(\n options))\n excluded = [('+framewise', '-framewise'), ('+axiswise', '-axiswise')]\n for pair in excluded:\n if all(exclude in opts for exclude in pair):\n raise SyntaxError(\n 'Normalization specification cannot contain both %s and %s' %\n (pair[0], pair[1]))\n if len(opts) == 1 and opts[0].endswith('framewise'):\n axiswise = False\n framewise = True if '+framewise' in opts else False\n elif len(opts) == 1 and opts[0].endswith('axiswise'):\n framewise = False\n axiswise = True if '+axiswise' in opts else False\n else:\n axiswise = True if '+axiswise' in opts else False\n framewise = True if '+framewise' in opts else False\n return dict(axiswise=axiswise, framewise=framewise)\n", "role": "user" }, { "content": "process_normalization", "role": "assistant" } ]
def x(cls, line_parse_result): active_pathspecs = set() for group in line_parse_result: active_pathspecs.add(group['pathspec']) has_options = ('norm_options' in group or 'plot_options' in group or 'style_options' in group) if has_options: yield active_pathspecs, group active_pathspecs = set() if active_pathspecs: yield active_pathspecs, {}
group_paths_without_options
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, line_parse_result):\n active_pathspecs = set()\n for group in line_parse_result:\n active_pathspecs.add(group['pathspec'])\n has_options = ('norm_options' in group or 'plot_options' in group or\n 'style_options' in group)\n if has_options:\n yield active_pathspecs, group\n active_pathspecs = set()\n if active_pathspecs:\n yield active_pathspecs, {}\n", "role": "user" }, { "content": "group_paths_without_options", "role": "assistant" } ]
def x(cls, path): split = path.split('.') msg = 'Element {old} deprecated. Use {new} instead.' for old, new in cls.deprecations: if split[0] == old: parsewarning.warning(msg.format(old=old, new=new)) return '.'.join([new] + split[1:]) return path
apply_deprecations
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, path):\n split = path.split('.')\n msg = 'Element {old} deprecated. Use {new} instead.'\n for old, new in cls.deprecations:\n if split[0] == old:\n parsewarning.warning(msg.format(old=old, new=new))\n return '.'.join([new] + split[1:])\n return path\n", "role": "user" }, { "content": "apply_deprecations", "role": "assistant" } ]
def x(cls, line, ns={}): parses = [p for p in cls.opts_spec.scanString(line)] if len(parses) != 1: raise SyntaxError('Invalid specification syntax.') else: e = parses[0][2] processed = line[:e] if processed.strip() != line.strip(): raise SyntaxError('Failed to parse remainder of string: %r' % line[e:]) grouped_paths = cls._group_paths_without_options(cls.opts_spec. parseString(line)) parse = {} for pathspecs, group in grouped_paths: options = {} normalization = cls.process_normalization(group) if normalization is not None: options['norm'] = normalization if 'plot_options' in group: plotopts = group['plot_options'][0] opts = cls.todict(plotopts, 'brackets', ns=ns) options['plot'] = {cls.aliases.get(k, k): v for k, v in opts. items()} if 'style_options' in group: styleopts = group['style_options'][0] opts = cls.todict(styleopts, 'parens', ns=ns) options['style'] = {cls.aliases.get(k, k): v for k, v in opts. items()} for pathspec in pathspecs: parse[pathspec] = merge_option_dicts(parse.get(pathspec, {}), options) return {cls.apply_deprecations(path): {option_type: Options(** option_pairs) for option_type, option_pairs in options.items()} for path, options in parse.items()}
parse
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, line, ns={}):\n parses = [p for p in cls.opts_spec.scanString(line)]\n if len(parses) != 1:\n raise SyntaxError('Invalid specification syntax.')\n else:\n e = parses[0][2]\n processed = line[:e]\n if processed.strip() != line.strip():\n raise SyntaxError('Failed to parse remainder of string: %r' %\n line[e:])\n grouped_paths = cls._group_paths_without_options(cls.opts_spec.\n parseString(line))\n parse = {}\n for pathspecs, group in grouped_paths:\n options = {}\n normalization = cls.process_normalization(group)\n if normalization is not None:\n options['norm'] = normalization\n if 'plot_options' in group:\n plotopts = group['plot_options'][0]\n opts = cls.todict(plotopts, 'brackets', ns=ns)\n options['plot'] = {cls.aliases.get(k, k): v for k, v in opts.\n items()}\n if 'style_options' in group:\n styleopts = group['style_options'][0]\n opts = cls.todict(styleopts, 'parens', ns=ns)\n options['style'] = {cls.aliases.get(k, k): v for k, v in opts.\n items()}\n for pathspec in pathspecs:\n parse[pathspec] = merge_option_dicts(parse.get(pathspec, {}),\n options)\n return {cls.apply_deprecations(path): {option_type: Options(**\n option_pairs) for option_type, option_pairs in options.items()} for\n path, options in parse.items()}\n", "role": "user" }, { "content": "parse", "role": "assistant" } ]
def x(cls, line, ns={}): parsed = cls.parse(line, ns=ns) options_list = [] for spec in sorted(parsed.keys()): options = parsed[spec] merged = {} for group in options.values(): merged = dict(group.kwargs, **merged) options_list.append(Options(spec, **merged)) return options_list
parse_options
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, line, ns={}):\n parsed = cls.parse(line, ns=ns)\n options_list = []\n for spec in sorted(parsed.keys()):\n options = parsed[spec]\n merged = {}\n for group in options.values():\n merged = dict(group.kwargs, **merged)\n options_list.append(Options(spec, **merged))\n return options_list\n", "role": "user" }, { "content": "parse_options", "role": "assistant" } ]
def x(cls, line, ns={}): definitions = [] parses = [p for p in cls.compositor_spec.scanString(line)] if len(parses) != 1: raise SyntaxError('Invalid specification syntax.') else: e = parses[0][2] processed = line[:e] if processed.strip() != line.strip(): raise SyntaxError('Failed to parse remainder of string: %r' % line[e:]) opmap = {op.__name__: op for op in Compositor.operations} for group in cls.compositor_spec.parseString(line): if 'mode' not in group or group['mode'] not in ['data', 'display']: raise SyntaxError('Either data or display mode must be specified.') mode = group['mode'] kwargs = {} operation = opmap[group['op']] spec = ' '.join(group['spec'].asList()[0]) if group['op'] not in opmap: raise SyntaxError( 'Operation %s not available for use with compositors.' % group['op']) if 'op_settings' in group: kwargs = cls.todict(group['op_settings'][0], 'brackets', ns=ns) definition = Compositor(str(spec), operation, str(group['value']), mode, **kwargs) definitions.append(definition) return definitions
parse
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, line, ns={}):\n definitions = []\n parses = [p for p in cls.compositor_spec.scanString(line)]\n if len(parses) != 1:\n raise SyntaxError('Invalid specification syntax.')\n else:\n e = parses[0][2]\n processed = line[:e]\n if processed.strip() != line.strip():\n raise SyntaxError('Failed to parse remainder of string: %r' %\n line[e:])\n opmap = {op.__name__: op for op in Compositor.operations}\n for group in cls.compositor_spec.parseString(line):\n if 'mode' not in group or group['mode'] not in ['data', 'display']:\n raise SyntaxError('Either data or display mode must be specified.')\n mode = group['mode']\n kwargs = {}\n operation = opmap[group['op']]\n spec = ' '.join(group['spec'].asList()[0])\n if group['op'] not in opmap:\n raise SyntaxError(\n 'Operation %s not available for use with compositors.' %\n group['op'])\n if 'op_settings' in group:\n kwargs = cls.todict(group['op_settings'][0], 'brackets', ns=ns)\n definition = Compositor(str(spec), operation, str(group['value']),\n mode, **kwargs)\n definitions.append(definition)\n return definitions\n", "role": "user" }, { "content": "parse", "role": "assistant" } ]
def x(self, element, key): keys = self.p['keys'] ranges = self.p['ranges'] if ranges == {}: return {d.name: element.range(d.name, self.data_range) for d in element.dimensions()} if keys is None: specs = ranges elif keys and not isinstance(ranges, list): raise ValueError( 'Key list specified but ranges parameter not specified as a list.') elif len(keys) == len(ranges): try: index = keys.index(key) specs = ranges[index] except: raise KeyError('Could not match element key to defined keys') else: raise ValueError('Key list length must match length of supplied ranges' ) return match_spec(element, specs)
get_ranges
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, element, key):\n keys = self.p['keys']\n ranges = self.p['ranges']\n if ranges == {}:\n return {d.name: element.range(d.name, self.data_range) for d in\n element.dimensions()}\n if keys is None:\n specs = ranges\n elif keys and not isinstance(ranges, list):\n raise ValueError(\n 'Key list specified but ranges parameter not specified as a list.')\n elif len(keys) == len(ranges):\n try:\n index = keys.index(key)\n specs = ranges[index]\n except:\n raise KeyError('Could not match element key to defined keys')\n else:\n raise ValueError('Key list length must match length of supplied ranges'\n )\n return match_spec(element, specs)\n", "role": "user" }, { "content": "get_ranges", "role": "assistant" } ]
def x(self, dimensions=None, function=None, spreadfn=None, **kwargs): kwargs['_method_args'] = dimensions, function, spreadfn return self.__call__('aggregate', **kwargs)
aggregate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dimensions=None, function=None, spreadfn=None, **kwargs):\n kwargs['_method_args'] = dimensions, function, spreadfn\n return self.__call__('aggregate', **kwargs)\n", "role": "user" }, { "content": "aggregate", "role": "assistant" } ]
def x(self, dimensions=[], function=None, spreadfn=None, **kwargs): kwargs['_method_args'] = dimensions, function, spreadfn return self.__call__('reduce', **kwargs)
reduce
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dimensions=[], function=None, spreadfn=None, **kwargs):\n kwargs['_method_args'] = dimensions, function, spreadfn\n return self.__call__('reduce', **kwargs)\n", "role": "user" }, { "content": "reduce", "role": "assistant" } ]
def x(cls, dimensions, overrides): from .dimension import Dimension replaced = [] for d in dimensions: if d.name in overrides: override = overrides[d.name] elif d.label in overrides: override = overrides[d.label] else: override = None if override is None: replaced.append(d) elif isinstance(override, (util.basestring, tuple)): replaced.append(d.clone(override)) elif isinstance(override, Dimension): replaced.append(override) elif isinstance(override, dict): replaced.append(d.clone(override.get('name', None), **{k: v for k, v in override.items() if k != 'name'})) else: raise ValueError( 'Dimension can only be overridden with another dimension or a dictionary of attributes' ) return replaced
replace_dimensions
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, dimensions, overrides):\n from .dimension import Dimension\n replaced = []\n for d in dimensions:\n if d.name in overrides:\n override = overrides[d.name]\n elif d.label in overrides:\n override = overrides[d.label]\n else:\n override = None\n if override is None:\n replaced.append(d)\n elif isinstance(override, (util.basestring, tuple)):\n replaced.append(d.clone(override))\n elif isinstance(override, Dimension):\n replaced.append(override)\n elif isinstance(override, dict):\n replaced.append(d.clone(override.get('name', None), **{k: v for\n k, v in override.items() if k != 'name'}))\n else:\n raise ValueError(\n 'Dimension can only be overridden with another dimension or a dictionary of attributes'\n )\n return replaced\n", "role": "user" }, { "content": "replace_dimensions", "role": "assistant" } ]
def x(self, dmap, kdims): filtered = [] for key, value in dmap.data.items(): if not any(kd.values and v not in kd.values for kd, v in zip(kdims, key)): filtered.append((key, value)) return filtered
filter_cache
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dmap, kdims):\n filtered = []\n for key, value in dmap.data.items():\n if not any(kd.values and v not in kd.values for kd, v in zip(kdims,\n key)):\n filtered.append((key, value))\n return filtered\n", "role": "user" }, { "content": "filter_cache", "role": "assistant" } ]
def x(self, group=None, backend=None): from .options import Store, Options keywords = {} groups = Options._option_groups if group is None else [group] backend = backend if backend else Store.current_backend for group in groups: optsobj = Store.lookup_options(backend, self._obj, group) keywords = dict(keywords, **optsobj.kwargs) return Options(**keywords)
get
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, group=None, backend=None):\n from .options import Store, Options\n keywords = {}\n groups = Options._option_groups if group is None else [group]\n backend = backend if backend else Store.current_backend\n for group in groups:\n optsobj = Store.lookup_options(backend, self._obj, group)\n keywords = dict(keywords, **optsobj.kwargs)\n return Options(**keywords)\n", "role": "user" }, { "content": "get", "role": "assistant" } ]
def x(self, show_defaults=False): pprinter = PrettyPrinter(show_options=True, show_defaults=show_defaults) print(pprinter.pprint(self._obj))
info
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, show_defaults=False):\n pprinter = PrettyPrinter(show_options=True, show_defaults=show_defaults)\n print(pprinter.pprint(self._obj))\n", "role": "user" }, { "content": "info", "role": "assistant" } ]
def x(cls, datasets, datatype=None, cast_type=None): datatype = datatype or cls.datatype cast = [] for ds in datasets: if cast_type is not None or ds.interface.datatype != datatype: ds = ds.clone(ds, datatype=[datatype], new_type=cast_type) cast.append(ds) return cast
cast
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, datasets, datatype=None, cast_type=None):\n datatype = datatype or cls.datatype\n cast = []\n for ds in datasets:\n if cast_type is not None or ds.interface.datatype != datatype:\n ds = ds.clone(ds, datatype=[datatype], new_type=cast_type)\n cast.append(ds)\n return cast\n", "role": "user" }, { "content": "cast", "role": "assistant" } ]
def x(cls, dataset, selection): mask = np.ones(len(dataset), dtype=np.bool) for dim, k in selection.items(): if isinstance(k, tuple): k = slice(*k) arr = cls.values(dataset, dim) if isinstance(k, slice): with warnings.catch_warnings(): warnings.filterwarnings('ignore', 'invalid value encountered') if k.start is not None: mask &= k.start <= arr if k.stop is not None: mask &= arr < k.stop elif isinstance(k, (set, list)): iter_slcs = [] for ik in k: with warnings.catch_warnings(): warnings.filterwarnings('ignore', 'invalid value encountered') iter_slcs.append(arr == ik) mask &= np.logical_or.reduce(iter_slcs) elif callable(k): mask &= k(arr) else: index_mask = arr == k if dataset.ndims == 1 and np.sum(index_mask) == 0: data_index = np.argmin(np.abs(arr - k)) mask = np.zeros(len(dataset), dtype=np.bool) mask[data_index] = True else: mask &= index_mask return 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 mask = np.ones(len(dataset), dtype=np.bool)\n for dim, k in selection.items():\n if isinstance(k, tuple):\n k = slice(*k)\n arr = cls.values(dataset, dim)\n if isinstance(k, slice):\n with warnings.catch_warnings():\n warnings.filterwarnings('ignore', 'invalid value encountered')\n if k.start is not None:\n mask &= k.start <= arr\n if k.stop is not None:\n mask &= arr < k.stop\n elif isinstance(k, (set, list)):\n iter_slcs = []\n for ik in k:\n with warnings.catch_warnings():\n warnings.filterwarnings('ignore',\n 'invalid value encountered')\n iter_slcs.append(arr == ik)\n mask &= np.logical_or.reduce(iter_slcs)\n elif callable(k):\n mask &= k(arr)\n else:\n index_mask = arr == k\n if dataset.ndims == 1 and np.sum(index_mask) == 0:\n data_index = np.argmin(np.abs(arr - k))\n mask = np.zeros(len(dataset), dtype=np.bool)\n mask[data_index] = True\n else:\n mask &= index_mask\n return mask\n", "role": "user" }, { "content": "select_mask", "role": "assistant" } ]
def x(cls, dataset, selection): selected = list(selection.keys()) all_scalar = all(not isinstance(sel, (tuple, slice, set, list)) and not callable(sel) for sel in selection.values()) all_kdims = all(d in selected for d in dataset.kdims) return all_scalar and all_kdims
indexed
[ { "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 selected = list(selection.keys())\n all_scalar = all(not isinstance(sel, (tuple, slice, set, list)) and not\n callable(sel) for sel in selection.values())\n all_kdims = all(d in selected for d in dataset.kdims)\n return all_scalar and all_kdims\n", "role": "user" }, { "content": "indexed", "role": "assistant" } ]
def x(cls, datasets, datatype=None, new_type=None): from . import Dataset, default_datatype new_type = new_type or Dataset if isinstance(datasets, NdMapping): dimensions = datasets.kdims keys, datasets = zip(*datasets.data.items()) elif isinstance(datasets, list) and all(not isinstance(v, tuple) for v in datasets): dimensions, keys = [], [()] * len(datasets) else: raise DataError( 'Concatenation only supported for NdMappings and lists of Datasets, found %s.' % type(datasets).__name__) template = datasets[0] datatype = datatype or template.interface.datatype if datatype == 'array': datatype = default_datatype elif datatype == 'image': datatype = 'grid' if len(datasets) > 1 and not dimensions and cls.interfaces[datatype ].gridded: raise DataError( 'Datasets with %s datatype cannot be concatenated without defining the dimensions to concatenate along. Ensure you pass in a NdMapping (e.g. a HoloMap) of Dataset types, not a list.' % datatype) datasets = template.interface.cast(datasets, datatype) template = datasets[0] data = list(zip(keys, datasets)) if keys else datasets concat_data = template.interface.concat(data, dimensions, vdims= template.vdims) return template.clone(concat_data, kdims=dimensions + template.kdims, new_type=new_type)
concatenate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, datasets, datatype=None, new_type=None):\n from . import Dataset, default_datatype\n new_type = new_type or Dataset\n if isinstance(datasets, NdMapping):\n dimensions = datasets.kdims\n keys, datasets = zip(*datasets.data.items())\n elif isinstance(datasets, list) and all(not isinstance(v, tuple) for v in\n datasets):\n dimensions, keys = [], [()] * len(datasets)\n else:\n raise DataError(\n 'Concatenation only supported for NdMappings and lists of Datasets, found %s.'\n % type(datasets).__name__)\n template = datasets[0]\n datatype = datatype or template.interface.datatype\n if datatype == 'array':\n datatype = default_datatype\n elif datatype == 'image':\n datatype = 'grid'\n if len(datasets) > 1 and not dimensions and cls.interfaces[datatype\n ].gridded:\n raise DataError(\n 'Datasets with %s datatype cannot be concatenated without defining the dimensions to concatenate along. Ensure you pass in a NdMapping (e.g. a HoloMap) of Dataset types, not a list.'\n % datatype)\n datasets = template.interface.cast(datasets, datatype)\n template = datasets[0]\n data = list(zip(keys, datasets)) if keys else datasets\n concat_data = template.interface.concat(data, dimensions, vdims=\n template.vdims)\n return template.clone(concat_data, kdims=dimensions + template.kdims,\n new_type=new_type)\n", "role": "user" }, { "content": "concatenate", "role": "assistant" } ]
def x(self, element, ranges, range_type='combined'): if self.batched: overlay = self.current_frame element = Bars(overlay.table(), kdims=element.kdims + overlay.kdims, vdims=element.vdims) for kd in overlay.kdims: ranges[kd.name]['combined'] = overlay.range(kd) xdim = element.kdims[0] ydim = element.vdims[0] if self.stacked or self.stack_index: ds = Dataset(element) pos_range = ds.select(**{ydim.name: (0, None)}).aggregate(xdim, function=np.sum).range(ydim) neg_range = ds.select(**{ydim.name: (None, 0)}).aggregate(xdim, function=np.sum).range(ydim) y0, y1 = util.max_range([pos_range, neg_range]) else: y0, y1 = ranges[ydim.name]['combined'] padding = 0 if self.overlaid else self.padding _, ypad, _ = get_axis_padding(padding) y0, y1 = util.range_pad(y0, y1, ypad, self.logy) if y0 < 0: y1 = max([y1, 0]) elif self.logy: y0 = ydim.range[0] or 10 ** (np.log10(y1) - 2) if y1 else 0.01 else: y0 = 0 nx = len(element.dimension_values(0, False)) return -0.5, y0, nx - 0.5, y1
get_extents
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, element, ranges, range_type='combined'):\n if self.batched:\n overlay = self.current_frame\n element = Bars(overlay.table(), kdims=element.kdims + overlay.kdims,\n vdims=element.vdims)\n for kd in overlay.kdims:\n ranges[kd.name]['combined'] = overlay.range(kd)\n xdim = element.kdims[0]\n ydim = element.vdims[0]\n if self.stacked or self.stack_index:\n ds = Dataset(element)\n pos_range = ds.select(**{ydim.name: (0, None)}).aggregate(xdim,\n function=np.sum).range(ydim)\n neg_range = ds.select(**{ydim.name: (None, 0)}).aggregate(xdim,\n function=np.sum).range(ydim)\n y0, y1 = util.max_range([pos_range, neg_range])\n else:\n y0, y1 = ranges[ydim.name]['combined']\n padding = 0 if self.overlaid else self.padding\n _, ypad, _ = get_axis_padding(padding)\n y0, y1 = util.range_pad(y0, y1, ypad, self.logy)\n if y0 < 0:\n y1 = max([y1, 0])\n elif self.logy:\n y0 = ydim.range[0] or 10 ** (np.log10(y1) - 2) if y1 else 0.01\n else:\n y0 = 0\n nx = len(element.dimension_values(0, False))\n return -0.5, y0, nx - 0.5, y1\n", "role": "user" }, { "content": "get_extents", "role": "assistant" } ]
def x(cls, dataset, data): if len(data.data_vars) == 1 and len(data[dataset.vdims[0].name].shape ) == 0: return data[dataset.vdims[0].name].item() return data
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 if len(data.data_vars) == 1 and len(data[dataset.vdims[0].name].shape\n ) == 0:\n return data[dataset.vdims[0].name].item()\n return data\n", "role": "user" }, { "content": "unpack_scalar", "role": "assistant" } ]
def x(self, dim_vals, data): if not self._check_items: return elif self.data_type is not None and not isinstance(data, self.data_type): if isinstance(self.data_type, tuple): data_type = tuple(dt.__name__ for dt in self.data_type) else: data_type = self.data_type.__name__ raise TypeError( '{slf} does not accept {data} type, data elements have to be a {restr}.' .format(slf=type(self).__name__, data=type(data).__name__, restr=data_type)) elif not len(dim_vals) == self.ndims: raise KeyError( 'The data contains keys of length %d, but the kdims only declare %d dimensions. Ensure that the number of kdims match the length of the keys in your data.' % (len(dim_vals), self.ndims))
item_check
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dim_vals, data):\n if not self._check_items:\n return\n elif self.data_type is not None and not isinstance(data, self.data_type):\n if isinstance(self.data_type, tuple):\n data_type = tuple(dt.__name__ for dt in self.data_type)\n else:\n data_type = self.data_type.__name__\n raise TypeError(\n '{slf} does not accept {data} type, data elements have to be a {restr}.'\n .format(slf=type(self).__name__, data=type(data).__name__,\n restr=data_type))\n elif not len(dim_vals) == self.ndims:\n raise KeyError(\n 'The data contains keys of length %d, but the kdims only declare %d dimensions. Ensure that the number of kdims match the length of the keys in your data.'\n % (len(dim_vals), self.ndims))\n", "role": "user" }, { "content": "item_check", "role": "assistant" } ]
def x(self, dim_vals, data, sort=True, update=True): sort = sort and self.sort if not isinstance(dim_vals, tuple): dim_vals = dim_vals, self._item_check(dim_vals, data) dim_types = zip([kd.type for kd in self.kdims], dim_vals) dim_vals = tuple(v if None in [t, v] else t(v) for t, v in dim_types) valid_vals = zip(self.kdims, dim_vals) for dim, val in valid_vals: if dim.values and val is not None and val not in dim.values: raise KeyError( '%s dimension value %s not in specified dimension values.' % (dim, repr(val))) if update and dim_vals in self.data and isinstance(self.data[dim_vals], (MultiDimensionalMapping, OrderedDict)): self.data[dim_vals].update(data) else: self.data[dim_vals] = data if sort: self._resort()
add_item
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dim_vals, data, sort=True, update=True):\n sort = sort and self.sort\n if not isinstance(dim_vals, tuple):\n dim_vals = dim_vals,\n self._item_check(dim_vals, data)\n dim_types = zip([kd.type for kd in self.kdims], dim_vals)\n dim_vals = tuple(v if None in [t, v] else t(v) for t, v in dim_types)\n valid_vals = zip(self.kdims, dim_vals)\n for dim, val in valid_vals:\n if dim.values and val is not None and val not in dim.values:\n raise KeyError(\n '%s dimension value %s not in specified dimension values.' %\n (dim, repr(val)))\n if update and dim_vals in self.data and isinstance(self.data[dim_vals],\n (MultiDimensionalMapping, OrderedDict)):\n self.data[dim_vals].update(data)\n else:\n self.data[dim_vals] = data\n if sort:\n self._resort()\n", "role": "user" }, { "content": "add_item", "role": "assistant" } ]
def x(self, keys): typed_key = () for dim, key in zip(self.kdims, keys): key_type = dim.type if key_type is None: typed_key += key, elif isinstance(key, slice): sl_vals = [key.start, key.stop, key.step] typed_key += slice(*[(key_type(el) if el is not None else None) for el in sl_vals]), elif key is Ellipsis: typed_key += key, elif isinstance(key, list): typed_key += [key_type(k) for k in key], else: typed_key += key_type(key), return typed_key
apply_key_type
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, keys):\n typed_key = ()\n for dim, key in zip(self.kdims, keys):\n key_type = dim.type\n if key_type is None:\n typed_key += key,\n elif isinstance(key, slice):\n sl_vals = [key.start, key.stop, key.step]\n typed_key += slice(*[(key_type(el) if el is not None else None) for\n el in sl_vals]),\n elif key is Ellipsis:\n typed_key += key,\n elif isinstance(key, list):\n typed_key += [key_type(k) for k in key],\n else:\n typed_key += key_type(key),\n return typed_key\n", "role": "user" }, { "content": "apply_key_type", "role": "assistant" } ]
def x(self, key): if not isinstance(key, tuple): key = key, elif key == (): return (), () if key[0] is Ellipsis: num_pad = self.ndims - len(key) + 1 key = (slice(None),) * num_pad + key[1:] elif len(key) < self.ndims: num_pad = self.ndims - len(key) key = key + (slice(None),) * num_pad map_slice = key[:self.ndims] if self._check_key_type: map_slice = self._apply_key_type(map_slice) if len(key) == self.ndims: return map_slice, () else: return map_slice, key[self.ndims:]
split_index
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, key):\n if not isinstance(key, tuple):\n key = key,\n elif key == ():\n return (), ()\n if key[0] is Ellipsis:\n num_pad = self.ndims - len(key) + 1\n key = (slice(None),) * num_pad + key[1:]\n elif len(key) < self.ndims:\n num_pad = self.ndims - len(key)\n key = key + (slice(None),) * num_pad\n map_slice = key[:self.ndims]\n if self._check_key_type:\n map_slice = self._apply_key_type(map_slice)\n if len(key) == self.ndims:\n return map_slice, ()\n else:\n return map_slice, key[self.ndims:]\n", "role": "user" }, { "content": "split_index", "role": "assistant" } ]
def x(self, data, indices): if self._deep_indexable and isinstance(data, Dimensioned) and indices: return data[indices] elif len(indices) > 0: self.param.warning( 'Cannot index into data element, extra data indices ignored.') return data
dataslice
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, data, indices):\n if self._deep_indexable and isinstance(data, Dimensioned) and indices:\n return data[indices]\n elif len(indices) > 0:\n self.param.warning(\n 'Cannot index into data element, extra data indices ignored.')\n return data\n", "role": "user" }, { "content": "dataslice", "role": "assistant" } ]
def x(self, data=None, shared_data=True, *args, **overrides): with item_check(not shared_data and self._check_items): return super(MultiDimensionalMapping, self).clone(data, shared_data, *args, **overrides)
clone
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, data=None, shared_data=True, *args, **overrides):\n with item_check(not shared_data and self._check_items):\n return super(MultiDimensionalMapping, self).clone(data, shared_data,\n *args, **overrides)\n", "role": "user" }, { "content": "clone", "role": "assistant" } ]
def x(self, dimensions, container_type=None, group_type=None, **kwargs): if self.ndims == 1: self.param.warning('Cannot split Map with only one dimension.') return self elif not isinstance(dimensions, list): dimensions = [dimensions] container_type = container_type if container_type else type(self) group_type = group_type if group_type else type(self) dimensions = [self.get_dimension(d, strict=True) for d in dimensions] with item_check(False): return util.ndmapping_groupby(self, dimensions, container_type, group_type, sort=True, **kwargs)
groupby
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dimensions, container_type=None, group_type=None, **kwargs):\n if self.ndims == 1:\n self.param.warning('Cannot split Map with only one dimension.')\n return self\n elif not isinstance(dimensions, list):\n dimensions = [dimensions]\n container_type = container_type if container_type else type(self)\n group_type = group_type if group_type else type(self)\n dimensions = [self.get_dimension(d, strict=True) for d in dimensions]\n with item_check(False):\n return util.ndmapping_groupby(self, dimensions, container_type,\n group_type, sort=True, **kwargs)\n", "role": "user" }, { "content": "groupby", "role": "assistant" } ]
def x(self, dimension, dim_pos, dim_val, vdim=False, **kwargs): dimension = asdim(dimension) if dimension in self.dimensions(): raise Exception('{dim} dimension already defined'.format(dim= dimension.name)) if vdim and self._deep_indexable: raise Exception( 'Cannot add value dimension to object that is deep indexable') if vdim: dims = self.vdims[:] dims.insert(dim_pos, dimension) dimensions = dict(vdims=dims) dim_pos += self.ndims else: dims = self.kdims[:] dims.insert(dim_pos, dimension) dimensions = dict(kdims=dims) if isinstance(dim_val, basestring) or not hasattr(dim_val, '__iter__'): dim_val = cycle([dim_val]) elif not len(dim_val) == len(self): raise ValueError( 'Added dimension values must be same lengthas existing keys.') items = OrderedDict() for dval, (key, val) in zip(dim_val, self.data.items()): if vdim: new_val = list(val) new_val.insert(dim_pos, dval) items[key] = tuple(new_val) else: new_key = list(key) new_key.insert(dim_pos, dval) items[tuple(new_key)] = val return self.clone(items, **dict(dimensions, **kwargs))
add_dimension
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dimension, dim_pos, dim_val, vdim=False, **kwargs):\n dimension = asdim(dimension)\n if dimension in self.dimensions():\n raise Exception('{dim} dimension already defined'.format(dim=\n dimension.name))\n if vdim and self._deep_indexable:\n raise Exception(\n 'Cannot add value dimension to object that is deep indexable')\n if vdim:\n dims = self.vdims[:]\n dims.insert(dim_pos, dimension)\n dimensions = dict(vdims=dims)\n dim_pos += self.ndims\n else:\n dims = self.kdims[:]\n dims.insert(dim_pos, dimension)\n dimensions = dict(kdims=dims)\n if isinstance(dim_val, basestring) or not hasattr(dim_val, '__iter__'):\n dim_val = cycle([dim_val])\n elif not len(dim_val) == len(self):\n raise ValueError(\n 'Added dimension values must be same lengthas existing keys.')\n items = OrderedDict()\n for dval, (key, val) in zip(dim_val, self.data.items()):\n if vdim:\n new_val = list(val)\n new_val.insert(dim_pos, dval)\n items[key] = tuple(new_val)\n else:\n new_key = list(key)\n new_key.insert(dim_pos, dval)\n items[tuple(new_key)] = val\n return self.clone(items, **dict(dimensions, **kwargs))\n", "role": "user" }, { "content": "add_dimension", "role": "assistant" } ]
def x(self, dimensions): dimensions = [dimensions] if np.isscalar(dimensions) else dimensions dims = [d for d in self.kdims if d not in dimensions] dim_inds = [self.get_dimension_index(d) for d in dims] key_getter = itemgetter(*dim_inds) return self.clone([(key_getter(k), v) for k, v in self.data.items()], kdims=dims)
drop_dimension
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dimensions):\n dimensions = [dimensions] if np.isscalar(dimensions) else dimensions\n dims = [d for d in self.kdims if d not in dimensions]\n dim_inds = [self.get_dimension_index(d) for d in dims]\n key_getter = itemgetter(*dim_inds)\n return self.clone([(key_getter(k), v) for k, v in self.data.items()],\n kdims=dims)\n", "role": "user" }, { "content": "drop_dimension", "role": "assistant" } ]
def x(self, dimension, expanded=True, flat=True): dimension = self.get_dimension(dimension, strict=True) if dimension in self.kdims: return np.array([k[self.get_dimension_index(dimension)] for k in self.data.keys()]) if dimension in self.dimensions(): values = [el.dimension_values(dimension, expanded, flat) for el in self if dimension in el.dimensions()] vals = np.concatenate(values) return vals if expanded else util.unique_array(vals) else: return super(MultiDimensionalMapping, self).dimension_values(dimension, expanded, flat)
dimension_values
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dimension, expanded=True, flat=True):\n dimension = self.get_dimension(dimension, strict=True)\n if dimension in self.kdims:\n return np.array([k[self.get_dimension_index(dimension)] for k in\n self.data.keys()])\n if dimension in self.dimensions():\n values = [el.dimension_values(dimension, expanded, flat) for el in\n self if dimension in el.dimensions()]\n vals = np.concatenate(values)\n return vals if expanded else util.unique_array(vals)\n else:\n return super(MultiDimensionalMapping, self).dimension_values(dimension,\n expanded, flat)\n", "role": "user" }, { "content": "dimension_values", "role": "assistant" } ]
def x(self, kdims=[], force=False): old_kdims = [d.name for d in self.kdims] if not isinstance(kdims, list): kdims = [kdims] elif not len(kdims): kdims = [d for d in old_kdims if not len(set(self.dimension_values( d))) == 1] indices = [self.get_dimension_index(el) for el in kdims] keys = [tuple(k[i] for i in indices) for k in self.data.keys()] reindexed_items = OrderedDict((k, v) for k, v in zip(keys, self.data. values())) reduced_dims = set([d.name for d in self.kdims]).difference(kdims) dimensions = [self.get_dimension(d) for d in kdims if d not in reduced_dims ] if len(set(keys)) != len(keys) and not force: raise Exception( 'Given dimension labels not sufficientto address all values uniquely' ) if len(keys): cdims = {self.get_dimension(d): self.dimension_values(d)[0] for d in reduced_dims} else: cdims = {} with item_check(indices == sorted(indices)): return self.clone(reindexed_items, kdims=dimensions, cdims=cdims)
reindex
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, kdims=[], force=False):\n old_kdims = [d.name for d in self.kdims]\n if not isinstance(kdims, list):\n kdims = [kdims]\n elif not len(kdims):\n kdims = [d for d in old_kdims if not len(set(self.dimension_values(\n d))) == 1]\n indices = [self.get_dimension_index(el) for el in kdims]\n keys = [tuple(k[i] for i in indices) for k in self.data.keys()]\n reindexed_items = OrderedDict((k, v) for k, v in zip(keys, self.data.\n values()))\n reduced_dims = set([d.name for d in self.kdims]).difference(kdims)\n dimensions = [self.get_dimension(d) for d in kdims if d not in reduced_dims\n ]\n if len(set(keys)) != len(keys) and not force:\n raise Exception(\n 'Given dimension labels not sufficientto address all values uniquely'\n )\n if len(keys):\n cdims = {self.get_dimension(d): self.dimension_values(d)[0] for d in\n reduced_dims}\n else:\n cdims = {}\n with item_check(indices == sorted(indices)):\n return self.clone(reindexed_items, kdims=dimensions, cdims=cdims)\n", "role": "user" }, { "content": "reindex", "role": "assistant" } ]
def x(self): if len(self.values()) > 0: info_str = (self.__class__.__name__ + ' containing %d items of type %s\n' % (len(self.keys()), type( self.values()[0]).__name__)) else: info_str = self.__class__.__name__ + ' containing no items\n' info_str += '-' * (len(info_str) - 1) + '\n\n' aliases = {v: k for k, v in self._dim_aliases.items()} for group in self._dim_groups: dimensions = getattr(self, group) if dimensions: group = aliases[group].split('_')[0] info_str += '%s Dimensions: \n' % group.capitalize() for d in dimensions: dmin, dmax = self.range(d.name) if d.value_format: dmin, dmax = d.value_format(dmin), d.value_format(dmax) info_str += '\t %s: %s...%s \n' % (d.pprint_label, dmin, dmax) print(info_str)
info
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n if len(self.values()) > 0:\n info_str = (self.__class__.__name__ + \n ' containing %d items of type %s\\n' % (len(self.keys()), type(\n self.values()[0]).__name__))\n else:\n info_str = self.__class__.__name__ + ' containing no items\\n'\n info_str += '-' * (len(info_str) - 1) + '\\n\\n'\n aliases = {v: k for k, v in self._dim_aliases.items()}\n for group in self._dim_groups:\n dimensions = getattr(self, group)\n if dimensions:\n group = aliases[group].split('_')[0]\n info_str += '%s Dimensions: \\n' % group.capitalize()\n for d in dimensions:\n dmin, dmax = self.range(d.name)\n if d.value_format:\n dmin, dmax = d.value_format(dmin), d.value_format(dmax)\n info_str += '\\t %s: %s...%s \\n' % (d.pprint_label, dmin, dmax)\n print(info_str)\n", "role": "user" }, { "content": "info", "role": "assistant" } ]
def x(self, other): if isinstance(other, NdMapping): dims = [d for d in other.kdims if d not in self.kdims] if len(dims) == other.ndims: raise KeyError( 'Cannot update with NdMapping that has a different set of key dimensions.' ) elif dims: other = other.drop_dimension(dims) other = other.data for key, data in other.items(): self._add_item(key, data, sort=False) if self.sort: self._resort()
update
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, other):\n if isinstance(other, NdMapping):\n dims = [d for d in other.kdims if d not in self.kdims]\n if len(dims) == other.ndims:\n raise KeyError(\n 'Cannot update with NdMapping that has a different set of key dimensions.'\n )\n elif dims:\n other = other.drop_dimension(dims)\n other = other.data\n for key, data in other.items():\n self._add_item(key, data, sort=False)\n if self.sort:\n self._resort()\n", "role": "user" }, { "content": "update", "role": "assistant" } ]
def x(self): if self.ndims == 1: return [k[0] for k in self.data.keys()] else: return list(self.data.keys())
keys
[ { "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.ndims == 1:\n return [k[0] for k in self.data.keys()]\n else:\n return list(self.data.keys())\n", "role": "user" }, { "content": "keys", "role": "assistant" } ]
def x(self): return list(zip(list(self.keys()), list(self.values())))
items
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n return list(zip(list(self.keys()), list(self.values())))\n", "role": "user" }, { "content": "items", "role": "assistant" } ]
def x(self, key, default=None): if not isinstance(key, tuple): key = key, return self.data.pop(key, default)
pop
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, key, default=None):\n if not isinstance(key, tuple):\n key = key,\n return self.data.pop(key, default)\n", "role": "user" }, { "content": "pop", "role": "assistant" } ]
def x(self, datatype=None, **kwargs): if config.future_deprecations: self.param.warning( 'The table method is deprecated and should no longer be used. If using a HoloMap use HoloMap.collapse() instead to return a Dataset.' ) from .data.interface import Interface from ..element.tabular import Table new_data = [(key, value.table(datatype=datatype, **kwargs)) for key, value in self.data.items()] tables = self.clone(new_data) return Interface.concatenate(tables, new_type=Table)
table
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, datatype=None, **kwargs):\n if config.future_deprecations:\n self.param.warning(\n 'The table method is deprecated and should no longer be used. If using a HoloMap use HoloMap.collapse() instead to return a Dataset.'\n )\n from .data.interface import Interface\n from ..element.tabular import Table\n new_data = [(key, value.table(datatype=datatype, **kwargs)) for key,\n value in self.data.items()]\n tables = self.clone(new_data)\n return Interface.concatenate(tables, new_type=Table)\n", "role": "user" }, { "content": "table", "role": "assistant" } ]
def x(self): self.param.warning( 'The MultiDimensionalMapping.dframe method is deprecated and should no longer be used. Use a more specific subclass which does support the dframe method instead, e.g. a HoloMap.' ) try: import pandas except ImportError: raise Exception('Cannot build a DataFrame without the pandas library.') labels = self.dimensions('key', True) + [self.group] return pandas.DataFrame([dict(zip(labels, k + (v,))) for k, v in self. data.items()])
dframe
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n self.param.warning(\n 'The MultiDimensionalMapping.dframe method is deprecated and should no longer be used. Use a more specific subclass which does support the dframe method instead, e.g. a HoloMap.'\n )\n try:\n import pandas\n except ImportError:\n raise Exception('Cannot build a DataFrame without the pandas library.')\n labels = self.dimensions('key', True) + [self.group]\n return pandas.DataFrame([dict(zip(labels, k + (v,))) for k, v in self.\n data.items()])\n", "role": "user" }, { "content": "dframe", "role": "assistant" } ]
def x(self, indices): keys = list(self.data.keys()) expanded = [] for idx, ind in enumerate(indices): if isinstance(ind, slice) and ind.step is not None: dim_ind = slice(ind.start, ind.stop) if dim_ind == slice(None): condition = self._all_condition() elif dim_ind.start is None: condition = self._upto_condition(dim_ind) elif dim_ind.stop is None: condition = self._from_condition(dim_ind) else: condition = self._range_condition(dim_ind) dim_vals = unique_iterator(k[idx] for k in keys) expanded.append(set([k for k in dim_vals if condition(k)][::int (ind.step)])) else: expanded.append(ind) return tuple(expanded)
expand_slice
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, indices):\n keys = list(self.data.keys())\n expanded = []\n for idx, ind in enumerate(indices):\n if isinstance(ind, slice) and ind.step is not None:\n dim_ind = slice(ind.start, ind.stop)\n if dim_ind == slice(None):\n condition = self._all_condition()\n elif dim_ind.start is None:\n condition = self._upto_condition(dim_ind)\n elif dim_ind.stop is None:\n condition = self._from_condition(dim_ind)\n else:\n condition = self._range_condition(dim_ind)\n dim_vals = unique_iterator(k[idx] for k in keys)\n expanded.append(set([k for k in dim_vals if condition(k)][::int\n (ind.step)]))\n else:\n expanded.append(ind)\n return tuple(expanded)\n", "role": "user" }, { "content": "expand_slice", "role": "assistant" } ]
def x(self, map_slice): conditions = [] for dim, dim_slice in zip(self.kdims, map_slice): if isinstance(dim_slice, slice): start, stop = dim_slice.start, dim_slice.stop if dim.values: values = dim.values dim_slice = slice(None if start is None else values.index( start), None if stop is None else values.index(stop)) if dim_slice == slice(None): conditions.append(self._all_condition()) elif start is None: conditions.append(self._upto_condition(dim_slice)) elif stop is None: conditions.append(self._from_condition(dim_slice)) else: conditions.append(self._range_condition(dim_slice)) elif isinstance(dim_slice, (set, list)): if dim.values: dim_slice = [dim.values.index(dim_val) for dim_val in dim_slice ] conditions.append(self._values_condition(dim_slice)) elif dim_slice is Ellipsis: conditions.append(self._all_condition()) elif callable(dim_slice): conditions.append(dim_slice) elif isinstance(dim_slice, tuple): raise IndexError( 'Keys may only be selected with sets or lists, not tuples.') else: if dim.values: dim_slice = dim.values.index(dim_slice) conditions.append(self._value_condition(dim_slice)) return conditions
generate_conditions
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, map_slice):\n conditions = []\n for dim, dim_slice in zip(self.kdims, map_slice):\n if isinstance(dim_slice, slice):\n start, stop = dim_slice.start, dim_slice.stop\n if dim.values:\n values = dim.values\n dim_slice = slice(None if start is None else values.index(\n start), None if stop is None else values.index(stop))\n if dim_slice == slice(None):\n conditions.append(self._all_condition())\n elif start is None:\n conditions.append(self._upto_condition(dim_slice))\n elif stop is None:\n conditions.append(self._from_condition(dim_slice))\n else:\n conditions.append(self._range_condition(dim_slice))\n elif isinstance(dim_slice, (set, list)):\n if dim.values:\n dim_slice = [dim.values.index(dim_val) for dim_val in dim_slice\n ]\n conditions.append(self._values_condition(dim_slice))\n elif dim_slice is Ellipsis:\n conditions.append(self._all_condition())\n elif callable(dim_slice):\n conditions.append(dim_slice)\n elif isinstance(dim_slice, tuple):\n raise IndexError(\n 'Keys may only be selected with sets or lists, not tuples.')\n else:\n if dim.values:\n dim_slice = dim.values.index(dim_slice)\n conditions.append(self._value_condition(dim_slice))\n return conditions\n", "role": "user" }, { "content": "generate_conditions", "role": "assistant" } ]
def x(self, data=None, shared_data=True, new_type=None, link=True, *args, **overrides): settings = dict(self.get_param_values()) if settings.get('group', None) != self._group: settings.pop('group') if settings.get('label', None) != self._label: settings.pop('label') if new_type is None: clone_type = self.__class__ else: clone_type = new_type new_params = new_type.params() settings = {k: v for k, v in settings.items() if k in new_params} settings = dict(settings, **overrides) if 'id' not in settings and new_type in [type(self), None]: settings['id'] = self.id if data is None and shared_data: data = self.data if link: settings['plot_id'] = self._plot_id pos_args = getattr(self, '_' + type(self).__name__ + '__pos_params', []) with item_check(not shared_data and self._check_items): return clone_type(data, *args, **{k: v for k, v in settings.items() if k not in pos_args})
clone
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, data=None, shared_data=True, new_type=None, link=True, *args,\n **overrides):\n settings = dict(self.get_param_values())\n if settings.get('group', None) != self._group:\n settings.pop('group')\n if settings.get('label', None) != self._label:\n settings.pop('label')\n if new_type is None:\n clone_type = self.__class__\n else:\n clone_type = new_type\n new_params = new_type.params()\n settings = {k: v for k, v in settings.items() if k in new_params}\n settings = dict(settings, **overrides)\n if 'id' not in settings and new_type in [type(self), None]:\n settings['id'] = self.id\n if data is None and shared_data:\n data = self.data\n if link:\n settings['plot_id'] = self._plot_id\n pos_args = getattr(self, '_' + type(self).__name__ + '__pos_params', [])\n with item_check(not shared_data and self._check_items):\n return clone_type(data, *args, **{k: v for k, v in settings.items() if\n k not in pos_args})\n", "role": "user" }, { "content": "clone", "role": "assistant" } ]
def x(self, dimensions=None, multi_index=False): import pandas as pd if dimensions is None: outer_dimensions = self.kdims inner_dimensions = None else: outer_dimensions = [self.get_dimension(d) for d in dimensions if d in self.kdims] inner_dimensions = [d for d in dimensions if d not in outer_dimensions] inds = [(d, self.get_dimension_index(d)) for d in outer_dimensions] dframes = [] for key, element in self.data.items(): df = element.dframe(inner_dimensions, multi_index) names = [d.name for d in outer_dimensions] key_dims = [(d.name, key[i]) for d, i in inds] if multi_index: length = len(df) indexes = [([v] * length) for _, v in key_dims] if df.index.names != [None]: indexes += [df.index] names += list(df.index.names) df = df.set_index(indexes) df.index.names = names else: for dim, val in key_dims: dimn = 1 while dim in df: dim = dim + '_%d' % dimn if dim in df: dimn += 1 df.insert(0, dim, val) dframes.append(df) return pd.concat(dframes)
dframe
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dimensions=None, multi_index=False):\n import pandas as pd\n if dimensions is None:\n outer_dimensions = self.kdims\n inner_dimensions = None\n else:\n outer_dimensions = [self.get_dimension(d) for d in dimensions if d in\n self.kdims]\n inner_dimensions = [d for d in dimensions if d not in outer_dimensions]\n inds = [(d, self.get_dimension_index(d)) for d in outer_dimensions]\n dframes = []\n for key, element in self.data.items():\n df = element.dframe(inner_dimensions, multi_index)\n names = [d.name for d in outer_dimensions]\n key_dims = [(d.name, key[i]) for d, i in inds]\n if multi_index:\n length = len(df)\n indexes = [([v] * length) for _, v in key_dims]\n if df.index.names != [None]:\n indexes += [df.index]\n names += list(df.index.names)\n df = df.set_index(indexes)\n df.index.names = names\n else:\n for dim, val in key_dims:\n dimn = 1\n while dim in df:\n dim = dim + '_%d' % dimn\n if dim in df:\n dimn += 1\n df.insert(0, dim, val)\n dframes.append(df)\n return pd.concat(dframes)\n", "role": "user" }, { "content": "dframe", "role": "assistant" } ]
def x(self): if self._group: return self._group group = get_ndmapping_label(self, 'group') if len(self) else None if group is None: return type(self).__name__ return group
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._group:\n return self._group\n group = get_ndmapping_label(self, 'group') if len(self) else None\n if group is None:\n return type(self).__name__\n return group\n", "role": "user" }, { "content": "group", "role": "assistant" } ]
def x(self): if self._label: return self._label elif len(self): label = get_ndmapping_label(self, 'label') return '' if label is None else label else: return ''
label
[ { "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._label:\n return self._label\n elif len(self):\n label = get_ndmapping_label(self, 'label')\n return '' if label is None else label\n else:\n return ''\n", "role": "user" }, { "content": "label", "role": "assistant" } ]
def x(self): if self._type is None and len(self): self._type = self.values()[0].__class__ return self._type
type
[ { "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._type is None and len(self):\n self._type = self.values()[0].__class__\n return self._type\n", "role": "user" }, { "content": "type", "role": "assistant" } ]
def x(self, coords=[], **kwargs): if self.ndims > 1: raise NotImplementedError( 'Closest method currently only implemented for 1D Elements') if kwargs: if len(kwargs) > 1: raise NotImplementedError( 'Closest method currently only supports 1D indexes') samples = list(kwargs.values())[0] coords = samples if isinstance(samples, list) else [samples] xs = self.dimension_values(0) if xs.dtype.kind in 'SO': raise NotImplementedError('Closest only supported for numeric types') idxs = [np.argmin(np.abs(xs - coord)) for coord in coords] return [xs[idx] for idx in idxs]
closest
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, coords=[], **kwargs):\n if self.ndims > 1:\n raise NotImplementedError(\n 'Closest method currently only implemented for 1D Elements')\n if kwargs:\n if len(kwargs) > 1:\n raise NotImplementedError(\n 'Closest method currently only supports 1D indexes')\n samples = list(kwargs.values())[0]\n coords = samples if isinstance(samples, list) else [samples]\n xs = self.dimension_values(0)\n if xs.dtype.kind in 'SO':\n raise NotImplementedError('Closest only supported for numeric types')\n idxs = [np.argmin(np.abs(xs - coord)) for coord in coords]\n return [xs[idx] for idx in idxs]\n", "role": "user" }, { "content": "closest", "role": "assistant" } ]
def x(self, by=None, reverse=False): if by is None: by = self.kdims elif not isinstance(by, list): by = [by] sorted_columns = self.interface.sort(self, by, reverse) return self.clone(sorted_columns)
sort
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, by=None, reverse=False):\n if by is None:\n by = self.kdims\n elif not isinstance(by, list):\n by = [by]\n sorted_columns = self.interface.sort(self, by, reverse)\n return self.clone(sorted_columns)\n", "role": "user" }, { "content": "sort", "role": "assistant" } ]
def x(self, dim, data_range=True, dimension_range=True): dim = self.get_dimension(dim) if dim is None or not data_range and not dimension_range: return None, None elif all(util.isfinite(v) for v in dim.range) and dimension_range: return dim.range elif dim in self.dimensions() and data_range and bool(self): lower, upper = self.interface.range(self, dim) else: lower, upper = np.NaN, np.NaN if not dimension_range: return lower, upper return util.dimension_range(lower, upper, dim.range, dim.soft_range)
range
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, dim, data_range=True, dimension_range=True):\n dim = self.get_dimension(dim)\n if dim is None or not data_range and not dimension_range:\n return None, None\n elif all(util.isfinite(v) for v in dim.range) and dimension_range:\n return dim.range\n elif dim in self.dimensions() and data_range and bool(self):\n lower, upper = self.interface.range(self, dim)\n else:\n lower, upper = np.NaN, np.NaN\n if not dimension_range:\n return lower, upper\n return util.dimension_range(lower, upper, dim.range, dim.soft_range)\n", "role": "user" }, { "content": "range", "role": "assistant" } ]