source_code
stringlengths
45
7.24k
function_name
stringlengths
1
111
messages
list
def x(path): fh = None try: fh = open(path, 'rb') return __readHeader(fh) finally: if fh: fh.close() return None
info
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(path):\n fh = None\n try:\n fh = open(path, 'rb')\n return __readHeader(fh)\n finally:\n if fh:\n fh.close()\n return None\n", "role": "user" }, { "content": "info", "role": "assistant" } ]
def x(path, fromTime, untilTime=None, now=None): fh = None try: fh = open(path, 'rb') return file_fetch(fh, fromTime, untilTime, now) finally: if fh: fh.close()
fetch
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(path, fromTime, untilTime=None, now=None):\n fh = None\n try:\n fh = open(path, 'rb')\n return file_fetch(fh, fromTime, untilTime, now)\n finally:\n if fh:\n fh.close()\n", "role": "user" }, { "content": "fetch", "role": "assistant" } ]
def x(fh, archive, fromTime, untilTime): fromInterval = int(fromTime - fromTime % archive['secondsPerPoint'] ) + archive['secondsPerPoint'] untilInterval = int(untilTime - untilTime % archive['secondsPerPoint'] ) + archive['secondsPerPoint'] if fromInterval == untilInterval: untilInterval += archive['secondsPerPoint'] fh.seek(archive['offset']) packedPoint = fh.read(pointSize) baseInterval, baseValue = struct.unpack(pointFormat, packedPoint) if baseInterval == 0: step = archive['secondsPerPoint'] points = (untilInterval - fromInterval) // step timeInfo = fromInterval, untilInterval, step valueList = [None] * points return timeInfo, valueList timeDistance = fromInterval - baseInterval pointDistance = timeDistance // archive['secondsPerPoint'] byteDistance = pointDistance * pointSize fromOffset = archive['offset'] + byteDistance % archive['size'] timeDistance = untilInterval - baseInterval pointDistance = timeDistance // archive['secondsPerPoint'] byteDistance = pointDistance * pointSize untilOffset = archive['offset'] + byteDistance % archive['size'] fh.seek(fromOffset) if fromOffset < untilOffset: seriesString = fh.read(untilOffset - fromOffset) else: archiveEnd = archive['offset'] + archive['size'] seriesString = fh.read(archiveEnd - fromOffset) fh.seek(archive['offset']) seriesString += fh.read(untilOffset - archive['offset']) byteOrder, pointTypes = pointFormat[0], pointFormat[1:] points = len(seriesString) // pointSize seriesFormat = byteOrder + pointTypes * points unpackedSeries = struct.unpack(seriesFormat, seriesString) valueList = [None] * points currentInterval = fromInterval step = archive['secondsPerPoint'] for i in xrange(0, len(unpackedSeries), 2): pointTime = unpackedSeries[i] if pointTime == currentInterval: pointValue = unpackedSeries[i + 1] valueList[i // 2] = pointValue currentInterval += step timeInfo = fromInterval, untilInterval, step return timeInfo, valueList
archive_fetch
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(fh, archive, fromTime, untilTime):\n fromInterval = int(fromTime - fromTime % archive['secondsPerPoint']\n ) + archive['secondsPerPoint']\n untilInterval = int(untilTime - untilTime % archive['secondsPerPoint']\n ) + archive['secondsPerPoint']\n if fromInterval == untilInterval:\n untilInterval += archive['secondsPerPoint']\n fh.seek(archive['offset'])\n packedPoint = fh.read(pointSize)\n baseInterval, baseValue = struct.unpack(pointFormat, packedPoint)\n if baseInterval == 0:\n step = archive['secondsPerPoint']\n points = (untilInterval - fromInterval) // step\n timeInfo = fromInterval, untilInterval, step\n valueList = [None] * points\n return timeInfo, valueList\n timeDistance = fromInterval - baseInterval\n pointDistance = timeDistance // archive['secondsPerPoint']\n byteDistance = pointDistance * pointSize\n fromOffset = archive['offset'] + byteDistance % archive['size']\n timeDistance = untilInterval - baseInterval\n pointDistance = timeDistance // archive['secondsPerPoint']\n byteDistance = pointDistance * pointSize\n untilOffset = archive['offset'] + byteDistance % archive['size']\n fh.seek(fromOffset)\n if fromOffset < untilOffset:\n seriesString = fh.read(untilOffset - fromOffset)\n else:\n archiveEnd = archive['offset'] + archive['size']\n seriesString = fh.read(archiveEnd - fromOffset)\n fh.seek(archive['offset'])\n seriesString += fh.read(untilOffset - archive['offset'])\n byteOrder, pointTypes = pointFormat[0], pointFormat[1:]\n points = len(seriesString) // pointSize\n seriesFormat = byteOrder + pointTypes * points\n unpackedSeries = struct.unpack(seriesFormat, seriesString)\n valueList = [None] * points\n currentInterval = fromInterval\n step = archive['secondsPerPoint']\n for i in xrange(0, len(unpackedSeries), 2):\n pointTime = unpackedSeries[i]\n if pointTime == currentInterval:\n pointValue = unpackedSeries[i + 1]\n valueList[i // 2] = pointValue\n currentInterval += step\n timeInfo = fromInterval, untilInterval, step\n return timeInfo, valueList\n", "role": "user" }, { "content": "archive_fetch", "role": "assistant" } ]
def x(path_from, path_to): fh_from = open(path_from, 'rb') fh_to = open(path_to, 'rb+') return file_merge(fh_from, fh_to)
merge
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(path_from, path_to):\n fh_from = open(path_from, 'rb')\n fh_to = open(path_to, 'rb+')\n return file_merge(fh_from, fh_to)\n", "role": "user" }, { "content": "merge", "role": "assistant" } ]
def x(path_from, path_to, ignore_empty=False): fh_from = open(path_from, 'rb') fh_to = open(path_to, 'rb') diffs = file_diff(fh_from, fh_to, ignore_empty) fh_to.close() fh_from.close() return diffs
diff
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(path_from, path_to, ignore_empty=False):\n fh_from = open(path_from, 'rb')\n fh_to = open(path_to, 'rb')\n diffs = file_diff(fh_from, fh_to, ignore_empty)\n fh_to.close()\n fh_from.close()\n return diffs\n", "role": "user" }, { "content": "diff", "role": "assistant" } ]
def x(self, path, time_info, data, exprs): if not nonempty(data): for d in self.data[path]: if nonempty(d['values']): return for expr in exprs: self.paths[expr].add(path) self.data[path].append({'time_info': time_info, 'values': data})
add_data
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, path, time_info, data, exprs):\n if not nonempty(data):\n for d in self.data[path]:\n if nonempty(d['values']):\n return\n for expr in exprs:\n self.paths[expr].add(path)\n self.data[path].append({'time_info': time_info, 'values': data})\n", "role": "user" }, { "content": "add_data", "role": "assistant" } ]
def x(pattern): v1, v2 = pattern.find('{'), pattern.find('}') if v1 > -1 and v2 > v1: variations = pattern[v1 + 1:v2].split(',') variants = [(pattern[:v1] + v + pattern[v2 + 1:]) for v in variations] else: variants = [pattern] return list(_deduplicate(variants))
extract_variants
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(pattern):\n v1, v2 = pattern.find('{'), pattern.find('}')\n if v1 > -1 and v2 > v1:\n variations = pattern[v1 + 1:v2].split(',')\n variants = [(pattern[:v1] + v + pattern[v2 + 1:]) for v in variations]\n else:\n variants = [pattern]\n return list(_deduplicate(variants))\n", "role": "user" }, { "content": "extract_variants", "role": "assistant" } ]
def x(entries, pattern): matching = [] for variant in expand_braces(pattern): matching.extend(fnmatch.filter(entries, variant)) return list(_deduplicate(matching))
match_entries
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(entries, pattern):\n matching = []\n for variant in expand_braces(pattern):\n matching.extend(fnmatch.filter(entries, variant))\n return list(_deduplicate(matching))\n", "role": "user" }, { "content": "match_entries", "role": "assistant" } ]
def x(pattern): res = set() def x(s): if s[0] == '{' and s[-1] == '}': return s[1:-1] return s match = EXPAND_BRACES_RE.search(pattern) if match is not None: sub = match.group(1) v1, v2 = match.span(1) if ',' in sub: for pat in sub.strip('{}').split(','): subpattern = pattern[:v1] + pat + pattern[v2:] res.update(expand_braces(subpattern)) else: subpattern = pattern[:v1] + remove_outer_braces(sub) + pattern[v2:] res.update(expand_braces(subpattern)) else: res.add(pattern.replace('\\}', '}')) return list(res)
expand_braces
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(pattern):\n res = set()\n\n def x(s):\n if s[0] == '{' and s[-1] == '}':\n return s[1:-1]\n return s\n match = EXPAND_BRACES_RE.search(pattern)\n if match is not None:\n sub = match.group(1)\n v1, v2 = match.span(1)\n if ',' in sub:\n for pat in sub.strip('{}').split(','):\n subpattern = pattern[:v1] + pat + pattern[v2:]\n res.update(expand_braces(subpattern))\n else:\n subpattern = pattern[:v1] + remove_outer_braces(sub) + pattern[v2:]\n res.update(expand_braces(subpattern))\n else:\n res.add(pattern.replace('\\\\}', '}'))\n return list(res)\n", "role": "user" }, { "content": "expand_braces", "role": "assistant" } ]
def x(self, metric): key = self.keyfunc(metric) nodes = [] servers = set() for node in self.hash_ring.get_nodes(key): server, instance = node if server in servers: continue servers.add(server) nodes.append(node) if len(servers) >= self.replication_factor: break available = [n for n in nodes if self.is_available(n)] return random.choice(available or nodes)
select_host
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, metric):\n key = self.keyfunc(metric)\n nodes = []\n servers = set()\n for node in self.hash_ring.get_nodes(key):\n server, instance = node\n if server in servers:\n continue\n servers.add(server)\n nodes.append(node)\n if len(servers) >= self.replication_factor:\n break\n available = [n for n in nodes if self.is_available(n)]\n return random.choice(available or nodes)\n", "role": "user" }, { "content": "select_host", "role": "assistant" } ]
def x(args): return (arg for arg in args if arg is not None and not math.isnan(arg) and not math.isinf(arg))
safeArgs
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(args):\n return (arg for arg in args if arg is not None and not math.isnan(arg) and\n not math.isinf(arg))\n", "role": "user" }, { "content": "safeArgs", "role": "assistant" } ]
def x(data, drawNullAsZero=False, stacked=False): missingValues = any(None in series for series in data) finiteData = [series for series in data if not series.options.get( 'drawAsInfinite')] yMinValue = safeMin(safeMin(series) for series in finiteData) if yMinValue is None: return 0.0, 1.0 if yMinValue > 0.0 and drawNullAsZero and missingValues: yMinValue = 0.0 if stacked: length = safeMin(len(series) for series in finiteData) sumSeries = [] for i in range(0, length): sumSeries.append(safeSum(series[i] for series in finiteData)) yMaxValue = safeMax(sumSeries) else: yMaxValue = safeMax(safeMax(series) for series in finiteData) if yMaxValue < 0.0 and drawNullAsZero and missingValues: yMaxValue = 0.0 return yMinValue, yMaxValue
dataLimits
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(data, drawNullAsZero=False, stacked=False):\n missingValues = any(None in series for series in data)\n finiteData = [series for series in data if not series.options.get(\n 'drawAsInfinite')]\n yMinValue = safeMin(safeMin(series) for series in finiteData)\n if yMinValue is None:\n return 0.0, 1.0\n if yMinValue > 0.0 and drawNullAsZero and missingValues:\n yMinValue = 0.0\n if stacked:\n length = safeMin(len(series) for series in finiteData)\n sumSeries = []\n for i in range(0, length):\n sumSeries.append(safeSum(series[i] for series in finiteData))\n yMaxValue = safeMax(sumSeries)\n else:\n yMaxValue = safeMax(safeMax(series) for series in finiteData)\n if yMaxValue < 0.0 and drawNullAsZero and missingValues:\n yMaxValue = 0.0\n return yMinValue, yMaxValue\n", "role": "user" }, { "content": "dataLimits", "role": "assistant" } ]
def x(v, step=None, system='si', units=None): if v is None: return 0, '' for prefix, size in UnitSystems[system]: if condition(v, size, step): v2 = v / size if v2 - math.floor(v2) < 1e-11 and v > 1: v2 = float(math.floor(v2)) if units: prefix = '%s%s' % (prefix, units) return v2, prefix if v - math.floor(v) < 1e-11 and v > 1: v = float(math.floor(v)) if units: prefix = units else: prefix = '' return v, prefix
format_units
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(v, step=None, system='si', units=None):\n if v is None:\n return 0, ''\n for prefix, size in UnitSystems[system]:\n if condition(v, size, step):\n v2 = v / size\n if v2 - math.floor(v2) < 1e-11 and v > 1:\n v2 = float(math.floor(v2))\n if units:\n prefix = '%s%s' % (prefix, units)\n return v2, prefix\n if v - math.floor(v) < 1e-11 and v > 1:\n v = float(math.floor(v))\n if units:\n prefix = units\n else:\n prefix = ''\n return v, prefix\n", "role": "user" }, { "content": "format_units", "role": "assistant" } ]
def x(value, name='value'): if math.isnan(value): raise GraphError('Encountered NaN %s' % (name,)) elif math.isinf(value): raise GraphError('Encountered infinite %s' % (name,)) return value
checkFinite
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(value, name='value'):\n if math.isnan(value):\n raise GraphError('Encountered NaN %s' % (name,))\n elif math.isinf(value):\n raise GraphError('Encountered infinite %s' % (name,))\n return value\n", "role": "user" }, { "content": "checkFinite", "role": "assistant" } ]
def x(self): if self.minValue < self.maxValue: return minFixed = self.minValueSource in ['min'] maxFixed = self.maxValueSource in ['max', 'limit'] if minFixed and maxFixed: raise GraphError('The %s must be less than the %s' % (self. minValueSource, self.maxValueSource)) elif minFixed: self.maxValue = self.minValue + self.chooseDelta(self.minValue) elif maxFixed: self.minValue = self.maxValue - self.chooseDelta(self.maxValue) else: delta = self.chooseDelta(max(abs(self.minValue), abs(self.maxValue))) average = (self.minValue + self.maxValue) / 2.0 self.minValue = average - delta self.maxValue = average + delta
reconcileLimits
[ { "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.minValue < self.maxValue:\n return\n minFixed = self.minValueSource in ['min']\n maxFixed = self.maxValueSource in ['max', 'limit']\n if minFixed and maxFixed:\n raise GraphError('The %s must be less than the %s' % (self.\n minValueSource, self.maxValueSource))\n elif minFixed:\n self.maxValue = self.minValue + self.chooseDelta(self.minValue)\n elif maxFixed:\n self.minValue = self.maxValue - self.chooseDelta(self.maxValue)\n else:\n delta = self.chooseDelta(max(abs(self.minValue), abs(self.maxValue)))\n average = (self.minValue + self.maxValue) / 2.0\n self.minValue = average - delta\n self.maxValue = average + delta\n", "role": "user" }, { "content": "reconcileLimits", "role": "assistant" } ]
def x(self, axisMin=None, axisMax=None, axisLimit=None): if axisMin is not None and not math.isnan(axisMin): self.minValueSource = 'min' self.minValue = self.checkFinite(axisMin, 'axis min') if axisMax == 'max': self.maxValueSource = 'extremum' elif axisMax is not None and not math.isnan(axisMax): self.maxValueSource = 'max' self.maxValue = self.checkFinite(axisMax, 'axis max') if axisLimit is None or math.isnan(axisLimit): self.axisLimit = None elif axisLimit < self.maxValue: self.maxValue = self.checkFinite(axisLimit, 'axis limit') self.maxValueSource = 'limit' self.axisLimit = None elif math.isinf(axisLimit): self.axisLimit = None else: self.axisLimit = axisLimit self.reconcileLimits()
applySettings
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, axisMin=None, axisMax=None, axisLimit=None):\n if axisMin is not None and not math.isnan(axisMin):\n self.minValueSource = 'min'\n self.minValue = self.checkFinite(axisMin, 'axis min')\n if axisMax == 'max':\n self.maxValueSource = 'extremum'\n elif axisMax is not None and not math.isnan(axisMax):\n self.maxValueSource = 'max'\n self.maxValue = self.checkFinite(axisMax, 'axis max')\n if axisLimit is None or math.isnan(axisLimit):\n self.axisLimit = None\n elif axisLimit < self.maxValue:\n self.maxValue = self.checkFinite(axisLimit, 'axis limit')\n self.maxValueSource = 'limit'\n self.axisLimit = None\n elif math.isinf(axisLimit):\n self.axisLimit = None\n else:\n self.axisLimit = axisLimit\n self.reconcileLimits()\n", "role": "user" }, { "content": "applySettings", "role": "assistant" } ]
def x(self, value): value, prefix = format_units(value, self.step, system=self.unitSystem) span, spanPrefix = format_units(self.span, self.step, system=self. unitSystem) if prefix: prefix += ' ' if value < 0.1: return '%g %s' % (float(value), prefix) elif value < 1.0: return '%.2f %s' % (float(value), prefix) if span > 10 or spanPrefix != prefix: if type(value) is float: return '%.1f %s' % (value, prefix) else: return '%d %s' % (int(value), prefix) elif span > 3: return '%.1f %s' % (float(value), prefix) elif span > 0.1: return '%.2f %s' % (float(value), prefix) else: return '%g %s' % (float(value), prefix)
makeLabel
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, value):\n value, prefix = format_units(value, self.step, system=self.unitSystem)\n span, spanPrefix = format_units(self.span, self.step, system=self.\n unitSystem)\n if prefix:\n prefix += ' '\n if value < 0.1:\n return '%g %s' % (float(value), prefix)\n elif value < 1.0:\n return '%.2f %s' % (float(value), prefix)\n if span > 10 or spanPrefix != prefix:\n if type(value) is float:\n return '%.1f %s' % (value, prefix)\n else:\n return '%d %s' % (int(value), prefix)\n elif span > 3:\n return '%.1f %s' % (float(value), prefix)\n elif span > 0.1:\n return '%.2f %s' % (float(value), prefix)\n else:\n return '%g %s' % (float(value), prefix)\n", "role": "user" }, { "content": "makeLabel", "role": "assistant" } ]
def x(self, minStep): self.checkFinite(minStep) if self.binary: base = 2.0 mantissas = [1.0] exponent = math.floor(math.log(minStep, 2) - EPSILON) else: base = 10.0 mantissas = [1.0, 2.0, 5.0] exponent = math.floor(math.log10(minStep) - EPSILON) while True: multiplier = base ** exponent for mantissa in mantissas: value = mantissa * multiplier if value >= minStep * (1.0 - EPSILON): yield value exponent += 1
generateSteps
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, minStep):\n self.checkFinite(minStep)\n if self.binary:\n base = 2.0\n mantissas = [1.0]\n exponent = math.floor(math.log(minStep, 2) - EPSILON)\n else:\n base = 10.0\n mantissas = [1.0, 2.0, 5.0]\n exponent = math.floor(math.log10(minStep) - EPSILON)\n while True:\n multiplier = base ** exponent\n for mantissa in mantissas:\n value = mantissa * multiplier\n if value >= minStep * (1.0 - EPSILON):\n yield value\n exponent += 1\n", "role": "user" }, { "content": "generateSteps", "role": "assistant" } ]
def x(self, step, divisor): bottom = step * math.floor(self.minValue / float(step) + EPSILON) top = bottom + step * divisor if top >= self.maxValue - EPSILON * step: return max(top - self.maxValue, self.minValue - bottom) else: return None
computeSlop
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, step, divisor):\n bottom = step * math.floor(self.minValue / float(step) + EPSILON)\n top = bottom + step * divisor\n if top >= self.maxValue - EPSILON * step:\n return max(top - self.maxValue, self.minValue - bottom)\n else:\n return None\n", "role": "user" }, { "content": "computeSlop", "role": "assistant" } ]
def x(self, divisors=None, binary=False): self.binary = binary if divisors is None: divisors = [4, 5, 6] else: for divisor in divisors: self.checkFinite(divisor, 'divisor') if divisor < 1: raise GraphError( 'Divisors must be greater than or equal to one') if self.minValue == self.maxValue: if self.minValue == 0.0: self.maxValue = 1.0 elif self.minValue < 0.0: self.minValue *= 1.1 self.maxValue *= 0.9 else: self.minValue *= 0.9 self.maxValue *= 1.1 variance = self.maxValue - self.minValue bestSlop = None bestStep = None for step in self.generateSteps(variance / float(max(divisors))): if bestSlop is not None and step * min(divisors ) >= 2 * bestSlop + variance: break for divisor in divisors: slop = self.computeSlop(step, divisor) if slop is not None and (bestSlop is None or slop < bestSlop): bestSlop = slop bestStep = step self.step = bestStep
chooseStep
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, divisors=None, binary=False):\n self.binary = binary\n if divisors is None:\n divisors = [4, 5, 6]\n else:\n for divisor in divisors:\n self.checkFinite(divisor, 'divisor')\n if divisor < 1:\n raise GraphError(\n 'Divisors must be greater than or equal to one')\n if self.minValue == self.maxValue:\n if self.minValue == 0.0:\n self.maxValue = 1.0\n elif self.minValue < 0.0:\n self.minValue *= 1.1\n self.maxValue *= 0.9\n else:\n self.minValue *= 0.9\n self.maxValue *= 1.1\n variance = self.maxValue - self.minValue\n bestSlop = None\n bestStep = None\n for step in self.generateSteps(variance / float(max(divisors))):\n if bestSlop is not None and step * min(divisors\n ) >= 2 * bestSlop + variance:\n break\n for divisor in divisors:\n slop = self.computeSlop(step, divisor)\n if slop is not None and (bestSlop is None or slop < bestSlop):\n bestSlop = slop\n bestStep = step\n self.step = bestStep\n", "role": "user" }, { "content": "chooseStep", "role": "assistant" } ]
def x(seriesList): pathExpressions = sorted(set([s.pathExpression for s in seriesList])) return ','.join(pathExpressions)
formatPathExpressions
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seriesList):\n pathExpressions = sorted(set([s.pathExpression for s in seriesList]))\n return ','.join(pathExpressions)\n", "role": "user" }, { "content": "formatPathExpressions", "role": "assistant" } ]
def x(requestContext, *seriesLists): if not seriesLists or not any(seriesLists): return [] seriesList, start, end, step = normalize(seriesLists) name = 'sumSeries(%s)' % formatPathExpressions(seriesList) values = (safeSum(row) for row in zip_longest(*seriesList)) series = TimeSeries(name, start, end, step, values) series.pathExpression = name return [series]
sumSeries
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, *seriesLists):\n if not seriesLists or not any(seriesLists):\n return []\n seriesList, start, end, step = normalize(seriesLists)\n name = 'sumSeries(%s)' % formatPathExpressions(seriesList)\n values = (safeSum(row) for row in zip_longest(*seriesList))\n series = TimeSeries(name, start, end, step, values)\n series.pathExpression = name\n return [series]\n", "role": "user" }, { "content": "sumSeries", "role": "assistant" } ]
def x(requestContext, seriesList, *positions): newSeries = {} newNames = list() for series in seriesList: newname = '.'.join(map(lambda x: x[1], filter(lambda i: i[0] not in positions, enumerate(series.name.split('.'))))) if newname in newSeries: newSeries[newname] = sumSeries(requestContext, (series, newSeries[newname]))[0] else: newSeries[newname] = series newNames.append(newname) newSeries[newname].name = newname return [newSeries[name] for name in newNames]
sumSeriesWithWildcards
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, *positions):\n newSeries = {}\n newNames = list()\n for series in seriesList:\n newname = '.'.join(map(lambda x: x[1], filter(lambda i: i[0] not in\n positions, enumerate(series.name.split('.')))))\n if newname in newSeries:\n newSeries[newname] = sumSeries(requestContext, (series,\n newSeries[newname]))[0]\n else:\n newSeries[newname] = series\n newNames.append(newname)\n newSeries[newname].name = newname\n return [newSeries[name] for name in newNames]\n", "role": "user" }, { "content": "sumSeriesWithWildcards", "role": "assistant" } ]
def x(requestContext, seriesList, *positions): matchedList = defaultdict(list) for series in seriesList: newname = '.'.join(map(lambda x: x[1], filter(lambda i: i[0] not in positions, enumerate(series.name.split('.'))))) matchedList[newname].append(series) result = [] for name in matchedList: [series] = averageSeries(requestContext, matchedList[name]) series.name = name result.append(series) return result
averageSeriesWithWildcards
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, *positions):\n matchedList = defaultdict(list)\n for series in seriesList:\n newname = '.'.join(map(lambda x: x[1], filter(lambda i: i[0] not in\n positions, enumerate(series.name.split('.')))))\n matchedList[newname].append(series)\n result = []\n for name in matchedList:\n [series] = averageSeries(requestContext, matchedList[name])\n series.name = name\n result.append(series)\n return result\n", "role": "user" }, { "content": "averageSeriesWithWildcards", "role": "assistant" } ]
def x(requestContext, seriesList, *position): positions = [position] if isinstance(position, int) else position newSeries = {} newNames = [] for series in seriesList: new_name = '.'.join(map(lambda x: x[1], filter(lambda i: i[0] not in positions, enumerate(series.name.split('.'))))) if new_name in newSeries: [newSeries[new_name]] = multiplySeries(requestContext, ( newSeries[new_name], series)) else: newSeries[new_name] = series newNames.append(new_name) newSeries[new_name].name = new_name return [newSeries[name] for name in newNames]
multiplySeriesWithWildcards
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, *position):\n positions = [position] if isinstance(position, int) else position\n newSeries = {}\n newNames = []\n for series in seriesList:\n new_name = '.'.join(map(lambda x: x[1], filter(lambda i: i[0] not in\n positions, enumerate(series.name.split('.')))))\n if new_name in newSeries:\n [newSeries[new_name]] = multiplySeries(requestContext, (\n newSeries[new_name], series))\n else:\n newSeries[new_name] = series\n newNames.append(new_name)\n newSeries[new_name].name = new_name\n return [newSeries[name] for name in newNames]\n", "role": "user" }, { "content": "multiplySeriesWithWildcards", "role": "assistant" } ]
def x(requestContext, *seriesLists): if not seriesLists or not any(seriesLists): return [] seriesList, start, end, step = normalize(seriesLists) name = 'rangeOfSeries(%s)' % formatPathExpressions(seriesList) values = (safeSubtract(max(row), min(row)) for row in zip_longest(* seriesList)) series = TimeSeries(name, start, end, step, values) series.pathExpression = name return [series]
rangeOfSeries
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, *seriesLists):\n if not seriesLists or not any(seriesLists):\n return []\n seriesList, start, end, step = normalize(seriesLists)\n name = 'rangeOfSeries(%s)' % formatPathExpressions(seriesList)\n values = (safeSubtract(max(row), min(row)) for row in zip_longest(*\n seriesList))\n series = TimeSeries(name, start, end, step, values)\n series.pathExpression = name\n return [series]\n", "role": "user" }, { "content": "rangeOfSeries", "role": "assistant" } ]
def x(requestContext, seriesList, n, interpolate=False): if n <= 0: raise ValueError( 'The requested percent is required to be greater than 0') if not seriesList: return [] name = 'percentileOfSeries(%s,%g)' % (seriesList[0].pathExpression, n) start, end, step = normalize([seriesList])[1:] values = [_getPercentile(row, n, interpolate) for row in zip_longest(* seriesList)] resultSeries = TimeSeries(name, start, end, step, values) resultSeries.pathExpression = name return [resultSeries]
percentileOfSeries
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n, interpolate=False):\n if n <= 0:\n raise ValueError(\n 'The requested percent is required to be greater than 0')\n if not seriesList:\n return []\n name = 'percentileOfSeries(%s,%g)' % (seriesList[0].pathExpression, n)\n start, end, step = normalize([seriesList])[1:]\n values = [_getPercentile(row, n, interpolate) for row in zip_longest(*\n seriesList)]\n resultSeries = TimeSeries(name, start, end, step, values)\n resultSeries.pathExpression = name\n return [resultSeries]\n", "role": "user" }, { "content": "percentileOfSeries", "role": "assistant" } ]
def x(requestContext, seriesList, limit=INF): for series in seriesList: series.name = 'keepLastValue(%s)' % series.name series.pathExpression = series.name consecutiveNones = 0 for i, value in enumerate(series): series[i] = value if i == 0: continue if value is None: consecutiveNones += 1 else: if 0 < consecutiveNones <= limit: for index in range(i - consecutiveNones, i): series[index] = series[i - consecutiveNones - 1] consecutiveNones = 0 if 0 < consecutiveNones <= limit: for index in range(len(series) - consecutiveNones, len(series)): series[index] = series[len(series) - consecutiveNones - 1] return seriesList
keepLastValue
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, limit=INF):\n for series in seriesList:\n series.name = 'keepLastValue(%s)' % series.name\n series.pathExpression = series.name\n consecutiveNones = 0\n for i, value in enumerate(series):\n series[i] = value\n if i == 0:\n continue\n if value is None:\n consecutiveNones += 1\n else:\n if 0 < consecutiveNones <= limit:\n for index in range(i - consecutiveNones, i):\n series[index] = series[i - consecutiveNones - 1]\n consecutiveNones = 0\n if 0 < consecutiveNones <= limit:\n for index in range(len(series) - consecutiveNones, len(series)):\n series[index] = series[len(series) - consecutiveNones - 1]\n return seriesList\n", "role": "user" }, { "content": "keepLastValue", "role": "assistant" } ]
def x(requestContext, seriesList, limit=INF): for series in seriesList: series.name = 'interpolate(%s)' % series.name series.pathExpression = series.name consecutiveNones = 0 for i, value in enumerate(series): series[i] = value if i == 0: continue if value is None: consecutiveNones += 1 elif consecutiveNones == 0: continue elif series[i - consecutiveNones - 1] is None: consecutiveNones = 0 continue else: if consecutiveNones > 0 and consecutiveNones <= limit: lastIndex = i - consecutiveNones - 1 lastValue = series[lastIndex] for index in range(i - consecutiveNones, i): nextValue = lastValue + (index - lastIndex) nextValue = nextValue * (value - lastValue) nextValue = nextValue / (consecutiveNones + 1) series[index] = nextValue consecutiveNones = 0 return seriesList
interpolate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, limit=INF):\n for series in seriesList:\n series.name = 'interpolate(%s)' % series.name\n series.pathExpression = series.name\n consecutiveNones = 0\n for i, value in enumerate(series):\n series[i] = value\n if i == 0:\n continue\n if value is None:\n consecutiveNones += 1\n elif consecutiveNones == 0:\n continue\n elif series[i - consecutiveNones - 1] is None:\n consecutiveNones = 0\n continue\n else:\n if consecutiveNones > 0 and consecutiveNones <= limit:\n lastIndex = i - consecutiveNones - 1\n lastValue = series[lastIndex]\n for index in range(i - consecutiveNones, i):\n nextValue = lastValue + (index - lastIndex)\n nextValue = nextValue * (value - lastValue)\n nextValue = nextValue / (consecutiveNones + 1)\n series[index] = nextValue\n consecutiveNones = 0\n return seriesList\n", "role": "user" }, { "content": "interpolate", "role": "assistant" } ]
def x(requestContext, seriesList): for series in seriesList: series.name = series.pathExpression = 'changed(%s)' % series.name previous = None for index, value in enumerate(series): if previous is None: series[index] = 0 elif value is not None and previous != value: series[index] = 1 else: series[index] = 0 previous = value return seriesList
changed
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList):\n for series in seriesList:\n series.name = series.pathExpression = 'changed(%s)' % series.name\n previous = None\n for index, value in enumerate(series):\n if previous is None:\n series[index] = 0\n elif value is not None and previous != value:\n series[index] = 1\n else:\n series[index] = 0\n previous = value\n return seriesList\n", "role": "user" }, { "content": "changed", "role": "assistant" } ]
def x(requestContext, dividendSeriesList, divisorSeriesList): if len(dividendSeriesList) != len(divisorSeriesList): raise ValueError( 'dividendSeriesList and divisorSeriesList argument must have equal length' ) results = [] for dividendSeries, divisorSeries in zip(dividendSeriesList, divisorSeriesList): name = 'divideSeries(%s,%s)' % (dividendSeries.name, divisorSeries.name ) bothSeries = dividendSeries, divisorSeries step = reduce(lcm, [s.step for s in bothSeries]) for s in bothSeries: s.consolidate(step // s.step) start = min([s.start for s in bothSeries]) end = max([s.end for s in bothSeries]) end -= (end - start) % step values = (safeDiv(v1, v2) for v1, v2 in zip(*bothSeries)) quotientSeries = TimeSeries(name, start, end, step, values) results.append(quotientSeries) return results
divideSeriesLists
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, dividendSeriesList, divisorSeriesList):\n if len(dividendSeriesList) != len(divisorSeriesList):\n raise ValueError(\n 'dividendSeriesList and divisorSeriesList argument must have equal length'\n )\n results = []\n for dividendSeries, divisorSeries in zip(dividendSeriesList,\n divisorSeriesList):\n name = 'divideSeries(%s,%s)' % (dividendSeries.name, divisorSeries.name\n )\n bothSeries = dividendSeries, divisorSeries\n step = reduce(lcm, [s.step for s in bothSeries])\n for s in bothSeries:\n s.consolidate(step // s.step)\n start = min([s.start for s in bothSeries])\n end = max([s.end for s in bothSeries])\n end -= (end - start) % step\n values = (safeDiv(v1, v2) for v1, v2 in zip(*bothSeries))\n quotientSeries = TimeSeries(name, start, end, step, values)\n results.append(quotientSeries)\n return results\n", "role": "user" }, { "content": "divideSeriesLists", "role": "assistant" } ]
def x(requestContext, dividendSeriesList, divisorSeriesList): if len(divisorSeriesList) == 0: for series in dividendSeriesList: series.name = 'divideSeries(%s,MISSING)' % series.name series.pathExpression = series.name for i in range(len(series)): series[i] = None return dividendSeriesList if len(divisorSeriesList) > 1: raise ValueError( 'divideSeries second argument must reference exactly 1 series (got {0})' .format(len(divisorSeriesList))) [divisorSeries] = divisorSeriesList results = [] for dividendSeries in dividendSeriesList: name = 'divideSeries(%s,%s)' % (dividendSeries.name, divisorSeries.name ) bothSeries = dividendSeries, divisorSeries step = reduce(lcm, [s.step for s in bothSeries]) for s in bothSeries: s.consolidate(step / s.step) start = min([s.start for s in bothSeries]) end = max([s.end for s in bothSeries]) end -= (end - start) % step values = (safeDiv(v1, v2) for v1, v2 in zip_longest(*bothSeries)) quotientSeries = TimeSeries(name, start, end, step, values) quotientSeries.pathExpression = name results.append(quotientSeries) return results
divideSeries
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, dividendSeriesList, divisorSeriesList):\n if len(divisorSeriesList) == 0:\n for series in dividendSeriesList:\n series.name = 'divideSeries(%s,MISSING)' % series.name\n series.pathExpression = series.name\n for i in range(len(series)):\n series[i] = None\n return dividendSeriesList\n if len(divisorSeriesList) > 1:\n raise ValueError(\n 'divideSeries second argument must reference exactly 1 series (got {0})'\n .format(len(divisorSeriesList)))\n [divisorSeries] = divisorSeriesList\n results = []\n for dividendSeries in dividendSeriesList:\n name = 'divideSeries(%s,%s)' % (dividendSeries.name, divisorSeries.name\n )\n bothSeries = dividendSeries, divisorSeries\n step = reduce(lcm, [s.step for s in bothSeries])\n for s in bothSeries:\n s.consolidate(step / s.step)\n start = min([s.start for s in bothSeries])\n end = max([s.end for s in bothSeries])\n end -= (end - start) % step\n values = (safeDiv(v1, v2) for v1, v2 in zip_longest(*bothSeries))\n quotientSeries = TimeSeries(name, start, end, step, values)\n quotientSeries.pathExpression = name\n results.append(quotientSeries)\n return results\n", "role": "user" }, { "content": "divideSeries", "role": "assistant" } ]
def x(requestContext, *seriesLists): if not seriesLists or not any(seriesLists): return [] seriesList, start, end, step = normalize(seriesLists) if len(seriesList) == 1: return seriesList name = 'multiplySeries(%s)' % ','.join([s.name for s in seriesList]) product = map(lambda x: safeMul(*x), zip_longest(*seriesList)) resultSeries = TimeSeries(name, start, end, step, product) resultSeries.pathExpression = name return [resultSeries]
multiplySeries
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, *seriesLists):\n if not seriesLists or not any(seriesLists):\n return []\n seriesList, start, end, step = normalize(seriesLists)\n if len(seriesList) == 1:\n return seriesList\n name = 'multiplySeries(%s)' % ','.join([s.name for s in seriesList])\n product = map(lambda x: safeMul(*x), zip_longest(*seriesList))\n resultSeries = TimeSeries(name, start, end, step, product)\n resultSeries.pathExpression = name\n return [resultSeries]\n", "role": "user" }, { "content": "multiplySeries", "role": "assistant" } ]
def x(requestContext, seriesListAvg, seriesListWeight, *nodes): if isinstance(nodes, int): nodes = [nodes] sortedSeries = {} for seriesAvg, seriesWeight in zip_longest(seriesListAvg, seriesListWeight ): key = '' for node in nodes: key += seriesAvg.name.split('.')[node] sortedSeries.setdefault(key, {}) sortedSeries[key]['avg'] = seriesAvg key = '' for node in nodes: key += seriesWeight.name.split('.')[node] sortedSeries.setdefault(key, {}) sortedSeries[key]['weight'] = seriesWeight productList = [] for key in sortedSeries: if 'weight' not in sortedSeries[key]: continue if 'avg' not in sortedSeries[key]: continue seriesWeight = sortedSeries[key]['weight'] seriesAvg = sortedSeries[key]['avg'] productValues = [safeMul(val1, val2) for val1, val2 in zip_longest( seriesAvg, seriesWeight)] name = 'product(%s,%s)' % (seriesWeight.name, seriesAvg.name) productSeries = TimeSeries(name, seriesAvg.start, seriesAvg.end, seriesAvg.step, productValues) productSeries.pathExpression = name productList.append(productSeries) if not productList: return [] [sumProducts] = sumSeries(requestContext, productList) [sumWeights] = sumSeries(requestContext, seriesListWeight) resultValues = [safeDiv(val1, val2) for val1, val2 in zip_longest( sumProducts, sumWeights)] name = 'weightedAverage(%s, %s, %s)' % (','.join(sorted(set(s. pathExpression for s in seriesListAvg))), ','.join(sorted(set(s. pathExpression for s in seriesListWeight))), ','.join(map(str, nodes))) resultSeries = TimeSeries(name, sumProducts.start, sumProducts.end, sumProducts.step, resultValues) resultSeries.pathExpression = name return resultSeries
weightedAverage
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesListAvg, seriesListWeight, *nodes):\n if isinstance(nodes, int):\n nodes = [nodes]\n sortedSeries = {}\n for seriesAvg, seriesWeight in zip_longest(seriesListAvg, seriesListWeight\n ):\n key = ''\n for node in nodes:\n key += seriesAvg.name.split('.')[node]\n sortedSeries.setdefault(key, {})\n sortedSeries[key]['avg'] = seriesAvg\n key = ''\n for node in nodes:\n key += seriesWeight.name.split('.')[node]\n sortedSeries.setdefault(key, {})\n sortedSeries[key]['weight'] = seriesWeight\n productList = []\n for key in sortedSeries:\n if 'weight' not in sortedSeries[key]:\n continue\n if 'avg' not in sortedSeries[key]:\n continue\n seriesWeight = sortedSeries[key]['weight']\n seriesAvg = sortedSeries[key]['avg']\n productValues = [safeMul(val1, val2) for val1, val2 in zip_longest(\n seriesAvg, seriesWeight)]\n name = 'product(%s,%s)' % (seriesWeight.name, seriesAvg.name)\n productSeries = TimeSeries(name, seriesAvg.start, seriesAvg.end,\n seriesAvg.step, productValues)\n productSeries.pathExpression = name\n productList.append(productSeries)\n if not productList:\n return []\n [sumProducts] = sumSeries(requestContext, productList)\n [sumWeights] = sumSeries(requestContext, seriesListWeight)\n resultValues = [safeDiv(val1, val2) for val1, val2 in zip_longest(\n sumProducts, sumWeights)]\n name = 'weightedAverage(%s, %s, %s)' % (','.join(sorted(set(s.\n pathExpression for s in seriesListAvg))), ','.join(sorted(set(s.\n pathExpression for s in seriesListWeight))), ','.join(map(str, nodes)))\n resultSeries = TimeSeries(name, sumProducts.start, sumProducts.end,\n sumProducts.step, resultValues)\n resultSeries.pathExpression = name\n return resultSeries\n", "role": "user" }, { "content": "weightedAverage", "role": "assistant" } ]
def x(requestContext, seriesList, windowSize): if not seriesList: return [] windowInterval = None if isinstance(windowSize, six.string_types): delta = parseTimeOffset(windowSize) windowInterval = abs(delta.seconds + delta.days * 86400) if windowInterval: previewSeconds = windowInterval constant = float(2) / (int(windowInterval) + 1) else: previewSeconds = max([s.step for s in seriesList]) * int(windowSize) constant = float(2) / (int(windowSize) + 1) newContext = requestContext.copy() newContext['startTime'] = requestContext['startTime'] - timedelta(seconds =previewSeconds) previewList = evaluateTokens(newContext, requestContext['args'][0]) result = [] for series in previewList: if windowInterval: windowPoints = windowInterval // series.step else: windowPoints = int(windowSize) if isinstance(windowSize, six.string_types): newName = 'exponentialMovingAverage(%s,"%s")' % (series.name, windowSize) else: newName = 'exponentialMovingAverage(%s,%s)' % (series.name, windowSize) newSeries = TimeSeries(newName, series.start + previewSeconds, series.end, series.step, []) newSeries.pathExpression = newName window_sum = safeSum(series[:windowPoints]) or 0 count = safeLen(series[:windowPoints]) ema = safeDiv(window_sum, count) newSeries.append(ema) if ema is None: ema = 0.0 else: ema = float(ema) for i in range(windowPoints, len(series) - 1): if series[i] is not None: ema = float(constant) * float(series[i]) + (1 - float(constant) ) * float(ema) newSeries.append(round(ema, 3)) else: newSeries.append(None) result.append(newSeries) return result
exponentialMovingAverage
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, windowSize):\n if not seriesList:\n return []\n windowInterval = None\n if isinstance(windowSize, six.string_types):\n delta = parseTimeOffset(windowSize)\n windowInterval = abs(delta.seconds + delta.days * 86400)\n if windowInterval:\n previewSeconds = windowInterval\n constant = float(2) / (int(windowInterval) + 1)\n else:\n previewSeconds = max([s.step for s in seriesList]) * int(windowSize)\n constant = float(2) / (int(windowSize) + 1)\n newContext = requestContext.copy()\n newContext['startTime'] = requestContext['startTime'] - timedelta(seconds\n =previewSeconds)\n previewList = evaluateTokens(newContext, requestContext['args'][0])\n result = []\n for series in previewList:\n if windowInterval:\n windowPoints = windowInterval // series.step\n else:\n windowPoints = int(windowSize)\n if isinstance(windowSize, six.string_types):\n newName = 'exponentialMovingAverage(%s,\"%s\")' % (series.name,\n windowSize)\n else:\n newName = 'exponentialMovingAverage(%s,%s)' % (series.name,\n windowSize)\n newSeries = TimeSeries(newName, series.start + previewSeconds,\n series.end, series.step, [])\n newSeries.pathExpression = newName\n window_sum = safeSum(series[:windowPoints]) or 0\n count = safeLen(series[:windowPoints])\n ema = safeDiv(window_sum, count)\n newSeries.append(ema)\n if ema is None:\n ema = 0.0\n else:\n ema = float(ema)\n for i in range(windowPoints, len(series) - 1):\n if series[i] is not None:\n ema = float(constant) * float(series[i]) + (1 - float(constant)\n ) * float(ema)\n newSeries.append(round(ema, 3))\n else:\n newSeries.append(None)\n result.append(newSeries)\n return result\n", "role": "user" }, { "content": "exponentialMovingAverage", "role": "assistant" } ]
def x(requestContext, seriesList, windowSize): if not seriesList: return [] windowInterval = None if isinstance(windowSize, six.string_types): delta = parseTimeOffset(windowSize) windowInterval = to_seconds(delta) if windowInterval: previewSeconds = windowInterval else: previewSeconds = max([s.step for s in seriesList]) * int(windowSize) newContext = requestContext.copy() newContext['startTime'] = requestContext['startTime'] - timedelta(seconds =previewSeconds) previewList = evaluateTokens(newContext, requestContext['args'][0]) result = [] for series in previewList: if windowInterval: windowPoints = windowInterval // series.step else: windowPoints = int(windowSize) if isinstance(windowSize, six.string_types): newName = 'movingMedian(%s,"%s")' % (series.name, windowSize) else: newName = 'movingMedian(%s,%s)' % (series.name, windowSize) newSeries = TimeSeries(newName, series.start + previewSeconds, series.end, series.step, []) newSeries.pathExpression = newName for i in range(windowPoints, len(series)): window = series[i - windowPoints:i] nonNull = [v for v in window if v is not None] if nonNull: m_index = len(nonNull) // 2 newSeries.append(sorted(nonNull)[m_index]) else: newSeries.append(None) result.append(newSeries) return result
movingMedian
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, windowSize):\n if not seriesList:\n return []\n windowInterval = None\n if isinstance(windowSize, six.string_types):\n delta = parseTimeOffset(windowSize)\n windowInterval = to_seconds(delta)\n if windowInterval:\n previewSeconds = windowInterval\n else:\n previewSeconds = max([s.step for s in seriesList]) * int(windowSize)\n newContext = requestContext.copy()\n newContext['startTime'] = requestContext['startTime'] - timedelta(seconds\n =previewSeconds)\n previewList = evaluateTokens(newContext, requestContext['args'][0])\n result = []\n for series in previewList:\n if windowInterval:\n windowPoints = windowInterval // series.step\n else:\n windowPoints = int(windowSize)\n if isinstance(windowSize, six.string_types):\n newName = 'movingMedian(%s,\"%s\")' % (series.name, windowSize)\n else:\n newName = 'movingMedian(%s,%s)' % (series.name, windowSize)\n newSeries = TimeSeries(newName, series.start + previewSeconds,\n series.end, series.step, [])\n newSeries.pathExpression = newName\n for i in range(windowPoints, len(series)):\n window = series[i - windowPoints:i]\n nonNull = [v for v in window if v is not None]\n if nonNull:\n m_index = len(nonNull) // 2\n newSeries.append(sorted(nonNull)[m_index])\n else:\n newSeries.append(None)\n result.append(newSeries)\n return result\n", "role": "user" }, { "content": "movingMedian", "role": "assistant" } ]
def x(requestContext, seriesList, factor): for series in seriesList: series.name = 'scale(%s,%g)' % (series.name, float(factor)) series.pathExpression = series.name for i, value in enumerate(series): series[i] = safeMul(value, factor) return seriesList
scale
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, factor):\n for series in seriesList:\n series.name = 'scale(%s,%g)' % (series.name, float(factor))\n series.pathExpression = series.name\n for i, value in enumerate(series):\n series[i] = safeMul(value, factor)\n return seriesList\n", "role": "user" }, { "content": "scale", "role": "assistant" } ]
def x(requestContext, seriesList, seconds): for series in seriesList: series.name = 'scaleToSeconds(%s,%d)' % (series.name, seconds) series.pathExpression = series.name factor = seconds * 1.0 / series.step for i, value in enumerate(series): series[i] = safeMul(value, factor) return seriesList
scaleToSeconds
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, seconds):\n for series in seriesList:\n series.name = 'scaleToSeconds(%s,%d)' % (series.name, seconds)\n series.pathExpression = series.name\n factor = seconds * 1.0 / series.step\n for i, value in enumerate(series):\n series[i] = safeMul(value, factor)\n return seriesList\n", "role": "user" }, { "content": "scaleToSeconds", "role": "assistant" } ]
def x(requestContext, seriesList, factor): for series in seriesList: series.name = 'pow(%s,%g)' % (series.name, float(factor)) series.pathExpression = series.name for i, value in enumerate(series): series[i] = safePow(value, factor) return seriesList
pow
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, factor):\n for series in seriesList:\n series.name = 'pow(%s,%g)' % (series.name, float(factor))\n series.pathExpression = series.name\n for i, value in enumerate(series):\n series[i] = safePow(value, factor)\n return seriesList\n", "role": "user" }, { "content": "pow", "role": "assistant" } ]
def x(requestContext, *seriesLists): if not seriesLists or not any(seriesLists): return [] seriesList, start, end, step = normalize(seriesLists) name = 'powSeries(%s)' % ','.join([s.name for s in seriesList]) values = [] for row in zip_longest(*seriesList): first = True tmpVal = None for element in row: if first: tmpVal = element first = False else: tmpVal = safePow(tmpVal, element) values.append(tmpVal) series = TimeSeries(name, start, end, step, values) series.pathExpression = name return [series]
powSeries
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, *seriesLists):\n if not seriesLists or not any(seriesLists):\n return []\n seriesList, start, end, step = normalize(seriesLists)\n name = 'powSeries(%s)' % ','.join([s.name for s in seriesList])\n values = []\n for row in zip_longest(*seriesList):\n first = True\n tmpVal = None\n for element in row:\n if first:\n tmpVal = element\n first = False\n else:\n tmpVal = safePow(tmpVal, element)\n values.append(tmpVal)\n series = TimeSeries(name, start, end, step, values)\n series.pathExpression = name\n return [series]\n", "role": "user" }, { "content": "powSeries", "role": "assistant" } ]
def x(requestContext, seriesList): for series in seriesList: series.name = 'squareRoot(%s)' % series.name for i, value in enumerate(series): series[i] = safePow(value, 0.5) return seriesList
squareRoot
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList):\n for series in seriesList:\n series.name = 'squareRoot(%s)' % series.name\n for i, value in enumerate(series):\n series[i] = safePow(value, 0.5)\n return seriesList\n", "role": "user" }, { "content": "squareRoot", "role": "assistant" } ]
def x(requestContext, seriesList): for series in seriesList: series.name = 'absolute(%s)' % series.name series.pathExpression = series.name for i, value in enumerate(series): series[i] = safeAbs(value) return seriesList
absolute
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList):\n for series in seriesList:\n series.name = 'absolute(%s)' % series.name\n series.pathExpression = series.name\n for i, value in enumerate(series):\n series[i] = safeAbs(value)\n return seriesList\n", "role": "user" }, { "content": "absolute", "role": "assistant" } ]
def x(requestContext, seriesList, factor): for series in seriesList: series.name = 'offset(%s,%g)' % (series.name, float(factor)) series.pathExpression = series.name for i, value in enumerate(series): if value is not None: series[i] = value + factor return seriesList
offset
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, factor):\n for series in seriesList:\n series.name = 'offset(%s,%g)' % (series.name, float(factor))\n series.pathExpression = series.name\n for i, value in enumerate(series):\n if value is not None:\n series[i] = value + factor\n return seriesList\n", "role": "user" }, { "content": "offset", "role": "assistant" } ]
def x(requestContext, seriesList): for series in seriesList: series.name = 'offsetToZero(%s)' % series.name minimum = safeMin(series) for i, value in enumerate(series): if value is not None: series[i] = value - minimum return seriesList
offsetToZero
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList):\n for series in seriesList:\n series.name = 'offsetToZero(%s)' % series.name\n minimum = safeMin(series)\n for i, value in enumerate(series):\n if value is not None:\n series[i] = value - minimum\n return seriesList\n", "role": "user" }, { "content": "offsetToZero", "role": "assistant" } ]
def x(requestContext, seriesList, windowSize): if not seriesList: return [] windowInterval = None if isinstance(windowSize, six.string_types): delta = parseTimeOffset(windowSize) windowInterval = to_seconds(delta) if windowInterval: previewSeconds = windowInterval else: previewSeconds = max([s.step for s in seriesList]) * int(windowSize) newContext = requestContext.copy() newContext['startTime'] = requestContext['startTime'] - timedelta(seconds =previewSeconds) previewList = evaluateTokens(newContext, requestContext['args'][0]) result = [] for series in previewList: if windowInterval: windowPoints = windowInterval // series.step else: windowPoints = int(windowSize) if isinstance(windowSize, six.string_types): newName = 'movingAverage(%s,"%s")' % (series.name, windowSize) else: newName = 'movingAverage(%s,%s)' % (series.name, windowSize) newSeries = TimeSeries(newName, series.start + previewSeconds, series.end, series.step, []) newSeries.pathExpression = newName windowSum = safeSum(series[:windowPoints]) or 0 count = safeLen(series[:windowPoints]) newSeries.append(safeDiv(windowSum, count)) for n, last in enumerate(series[windowPoints:-1]): if series[n] is not None: windowSum -= series[n] count -= 1 if last is not None: windowSum += last count += 1 newSeries.append(safeDiv(windowSum, count)) result.append(newSeries) return result
movingAverage
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, windowSize):\n if not seriesList:\n return []\n windowInterval = None\n if isinstance(windowSize, six.string_types):\n delta = parseTimeOffset(windowSize)\n windowInterval = to_seconds(delta)\n if windowInterval:\n previewSeconds = windowInterval\n else:\n previewSeconds = max([s.step for s in seriesList]) * int(windowSize)\n newContext = requestContext.copy()\n newContext['startTime'] = requestContext['startTime'] - timedelta(seconds\n =previewSeconds)\n previewList = evaluateTokens(newContext, requestContext['args'][0])\n result = []\n for series in previewList:\n if windowInterval:\n windowPoints = windowInterval // series.step\n else:\n windowPoints = int(windowSize)\n if isinstance(windowSize, six.string_types):\n newName = 'movingAverage(%s,\"%s\")' % (series.name, windowSize)\n else:\n newName = 'movingAverage(%s,%s)' % (series.name, windowSize)\n newSeries = TimeSeries(newName, series.start + previewSeconds,\n series.end, series.step, [])\n newSeries.pathExpression = newName\n windowSum = safeSum(series[:windowPoints]) or 0\n count = safeLen(series[:windowPoints])\n newSeries.append(safeDiv(windowSum, count))\n for n, last in enumerate(series[windowPoints:-1]):\n if series[n] is not None:\n windowSum -= series[n]\n count -= 1\n if last is not None:\n windowSum += last\n count += 1\n newSeries.append(safeDiv(windowSum, count))\n result.append(newSeries)\n return result\n", "role": "user" }, { "content": "movingAverage", "role": "assistant" } ]
def x(requestContext, seriesList, windowSize): if not seriesList: return [] windowInterval = None if isinstance(windowSize, six.string_types): delta = parseTimeOffset(windowSize) windowInterval = abs(delta.seconds + delta.days * 86400) if windowInterval: previewSeconds = windowInterval else: previewSeconds = max([s.step for s in seriesList]) * int(windowSize) newContext = requestContext.copy() newContext['startTime'] = requestContext['startTime'] - timedelta(seconds =previewSeconds) previewList = evaluateTokens(newContext, requestContext['args'][0]) result = [] for series in previewList: if windowInterval: windowPoints = windowInterval // series.step else: windowPoints = int(windowSize) if isinstance(windowSize, six.string_types): newName = 'movingSum(%s,"%s")' % (series.name, windowSize) else: newName = 'movingSum(%s,%s)' % (series.name, windowSize) newSeries = TimeSeries(newName, series.start + previewSeconds, series.end, series.step, []) newSeries.pathExpression = newName window_sum = safeSum(series[:windowPoints]) newSeries.append(window_sum) for n, last in enumerate(series[windowPoints:-1]): if series[n] is not None: window_sum -= series[n] if last is not None: window_sum = (window_sum or 0) + last newSeries.append(window_sum) result.append(newSeries) return result
movingSum
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, windowSize):\n if not seriesList:\n return []\n windowInterval = None\n if isinstance(windowSize, six.string_types):\n delta = parseTimeOffset(windowSize)\n windowInterval = abs(delta.seconds + delta.days * 86400)\n if windowInterval:\n previewSeconds = windowInterval\n else:\n previewSeconds = max([s.step for s in seriesList]) * int(windowSize)\n newContext = requestContext.copy()\n newContext['startTime'] = requestContext['startTime'] - timedelta(seconds\n =previewSeconds)\n previewList = evaluateTokens(newContext, requestContext['args'][0])\n result = []\n for series in previewList:\n if windowInterval:\n windowPoints = windowInterval // series.step\n else:\n windowPoints = int(windowSize)\n if isinstance(windowSize, six.string_types):\n newName = 'movingSum(%s,\"%s\")' % (series.name, windowSize)\n else:\n newName = 'movingSum(%s,%s)' % (series.name, windowSize)\n newSeries = TimeSeries(newName, series.start + previewSeconds,\n series.end, series.step, [])\n newSeries.pathExpression = newName\n window_sum = safeSum(series[:windowPoints])\n newSeries.append(window_sum)\n for n, last in enumerate(series[windowPoints:-1]):\n if series[n] is not None:\n window_sum -= series[n]\n if last is not None:\n window_sum = (window_sum or 0) + last\n newSeries.append(window_sum)\n result.append(newSeries)\n return result\n", "role": "user" }, { "content": "movingSum", "role": "assistant" } ]
def x(requestContext, seriesList, windowSize): if not seriesList: return [] windowInterval = None if isinstance(windowSize, six.string_types): delta = parseTimeOffset(windowSize) windowInterval = abs(delta.seconds + delta.days * 86400) if windowInterval: previewSeconds = windowInterval else: previewSeconds = max([s.step for s in seriesList]) * int(windowSize) newContext = requestContext.copy() newContext['startTime'] = requestContext['startTime'] - timedelta(seconds =previewSeconds) previewList = evaluateTokens(newContext, requestContext['args'][0]) result = [] for series in previewList: if windowInterval: windowPoints = windowInterval // series.step else: windowPoints = int(windowSize) if isinstance(windowSize, six.string_types): newName = 'movingMax(%s,"%s")' % (series.name, windowSize) else: newName = 'movingMax(%s,%s)' % (series.name, windowSize) newSeries = TimeSeries(newName, series.start + previewSeconds, series.end, series.step, []) newSeries.pathExpression = newName for i in range(windowPoints, len(series)): window = series[i - windowPoints:i] newSeries.append(safeMax(window)) result.append(newSeries) return result
movingMax
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, windowSize):\n if not seriesList:\n return []\n windowInterval = None\n if isinstance(windowSize, six.string_types):\n delta = parseTimeOffset(windowSize)\n windowInterval = abs(delta.seconds + delta.days * 86400)\n if windowInterval:\n previewSeconds = windowInterval\n else:\n previewSeconds = max([s.step for s in seriesList]) * int(windowSize)\n newContext = requestContext.copy()\n newContext['startTime'] = requestContext['startTime'] - timedelta(seconds\n =previewSeconds)\n previewList = evaluateTokens(newContext, requestContext['args'][0])\n result = []\n for series in previewList:\n if windowInterval:\n windowPoints = windowInterval // series.step\n else:\n windowPoints = int(windowSize)\n if isinstance(windowSize, six.string_types):\n newName = 'movingMax(%s,\"%s\")' % (series.name, windowSize)\n else:\n newName = 'movingMax(%s,%s)' % (series.name, windowSize)\n newSeries = TimeSeries(newName, series.start + previewSeconds,\n series.end, series.step, [])\n newSeries.pathExpression = newName\n for i in range(windowPoints, len(series)):\n window = series[i - windowPoints:i]\n newSeries.append(safeMax(window))\n result.append(newSeries)\n return result\n", "role": "user" }, { "content": "movingMax", "role": "assistant" } ]
def x(requestContext, seriesList, consolidationFunc): for series in seriesList: series.consolidationFunc = consolidationFunc series.name = 'consolidateBy(%s,"%s")' % (series.name, series. consolidationFunc) series.pathExpression = series.name return seriesList
consolidateBy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, consolidationFunc):\n for series in seriesList:\n series.consolidationFunc = consolidationFunc\n series.name = 'consolidateBy(%s,\"%s\")' % (series.name, series.\n consolidationFunc)\n series.pathExpression = series.name\n return seriesList\n", "role": "user" }, { "content": "consolidateBy", "role": "assistant" } ]
def x(requestContext, seriesList, steps): results = [] for series in seriesList: newValues = [] prev = [] for val in series: if len(prev) < steps: newValues.append(None) prev.append(val) continue newValues.append(prev.pop(0)) prev.append(val) newName = 'delay(%s,%d)' % (series.name, steps) newSeries = TimeSeries(newName, series.start, series.end, series. step, newValues) newSeries.pathExpression = newName results.append(newSeries) return results
delay
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, steps):\n results = []\n for series in seriesList:\n newValues = []\n prev = []\n for val in series:\n if len(prev) < steps:\n newValues.append(None)\n prev.append(val)\n continue\n newValues.append(prev.pop(0))\n prev.append(val)\n newName = 'delay(%s,%d)' % (series.name, steps)\n newSeries = TimeSeries(newName, series.start, series.end, series.\n step, newValues)\n newSeries.pathExpression = newName\n results.append(newSeries)\n return results\n", "role": "user" }, { "content": "delay", "role": "assistant" } ]
def x(requestContext, seriesList): results = [] for series in seriesList: newValues = [] current = 0.0 for val in series: if val is None: newValues.append(None) else: current += val newValues.append(current) newName = 'integral(%s)' % series.name newSeries = TimeSeries(newName, series.start, series.end, series. step, newValues) newSeries.pathExpression = newName results.append(newSeries) return results
integral
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList):\n results = []\n for series in seriesList:\n newValues = []\n current = 0.0\n for val in series:\n if val is None:\n newValues.append(None)\n else:\n current += val\n newValues.append(current)\n newName = 'integral(%s)' % series.name\n newSeries = TimeSeries(newName, series.start, series.end, series.\n step, newValues)\n newSeries.pathExpression = newName\n results.append(newSeries)\n return results\n", "role": "user" }, { "content": "integral", "role": "assistant" } ]
def x(requestContext, seriesList, intervalUnit): intervalDuration = int(to_seconds(parseTimeOffset(intervalUnit))) startTime = int(epoch(requestContext['startTime'])) results = [] for series in seriesList: newValues = [] currentTime = series.start current = 0.0 for val in series: if (currentTime - startTime) // intervalDuration != ( currentTime - startTime - series.step) // intervalDuration: current = 0.0 if val is None: newValues.append(current) else: current += val newValues.append(current) currentTime += series.step newName = "integralByInterval(%s,'%s')" % (series.name, intervalUnit) newSeries = TimeSeries(newName, series.start, series.end, series. step, newValues) newSeries.pathExpression = newName results.append(newSeries) return results
integralByInterval
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, intervalUnit):\n intervalDuration = int(to_seconds(parseTimeOffset(intervalUnit)))\n startTime = int(epoch(requestContext['startTime']))\n results = []\n for series in seriesList:\n newValues = []\n currentTime = series.start\n current = 0.0\n for val in series:\n if (currentTime - startTime) // intervalDuration != (\n currentTime - startTime - series.step) // intervalDuration:\n current = 0.0\n if val is None:\n newValues.append(current)\n else:\n current += val\n newValues.append(current)\n currentTime += series.step\n newName = \"integralByInterval(%s,'%s')\" % (series.name, intervalUnit)\n newSeries = TimeSeries(newName, series.start, series.end, series.\n step, newValues)\n newSeries.pathExpression = newName\n results.append(newSeries)\n return results\n", "role": "user" }, { "content": "integralByInterval", "role": "assistant" } ]
def x(requestContext, seriesList, maxValue=None): results = [] for series in seriesList: newValues = [] prev = None for val in series: if None in (prev, val): newValues.append(None) prev = val continue diff = val - prev if diff >= 0: newValues.append(diff) elif maxValue is not None and maxValue >= val: newValues.append(maxValue - prev + val + 1) else: newValues.append(None) prev = val newName = 'nonNegativeDerivative(%s)' % series.name newSeries = TimeSeries(newName, series.start, series.end, series. step, newValues) newSeries.pathExpression = newName results.append(newSeries) return results
nonNegativeDerivative
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, maxValue=None):\n results = []\n for series in seriesList:\n newValues = []\n prev = None\n for val in series:\n if None in (prev, val):\n newValues.append(None)\n prev = val\n continue\n diff = val - prev\n if diff >= 0:\n newValues.append(diff)\n elif maxValue is not None and maxValue >= val:\n newValues.append(maxValue - prev + val + 1)\n else:\n newValues.append(None)\n prev = val\n newName = 'nonNegativeDerivative(%s)' % series.name\n newSeries = TimeSeries(newName, series.start, series.end, series.\n step, newValues)\n newSeries.pathExpression = newName\n results.append(newSeries)\n return results\n", "role": "user" }, { "content": "nonNegativeDerivative", "role": "assistant" } ]
def x(requestContext, seriesLists, stackName='__DEFAULT__'): if 'totalStack' in requestContext: totalStack = requestContext['totalStack'].get(stackName, []) else: requestContext['totalStack'] = {} totalStack = [] results = [] for series in seriesLists: newValues = [] for i in range(len(series)): if len(totalStack) <= i: totalStack.append(0) if series[i] is not None: totalStack[i] += series[i] newValues.append(totalStack[i]) else: newValues.append(None) if stackName == '__DEFAULT__': newName = 'stacked(%s)' % series.name else: newName = series.name newSeries = TimeSeries(newName, series.start, series.end, series. step, newValues) newSeries.options['stacked'] = True newSeries.pathExpression = newName results.append(newSeries) requestContext['totalStack'][stackName] = totalStack return results
stacked
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesLists, stackName='__DEFAULT__'):\n if 'totalStack' in requestContext:\n totalStack = requestContext['totalStack'].get(stackName, [])\n else:\n requestContext['totalStack'] = {}\n totalStack = []\n results = []\n for series in seriesLists:\n newValues = []\n for i in range(len(series)):\n if len(totalStack) <= i:\n totalStack.append(0)\n if series[i] is not None:\n totalStack[i] += series[i]\n newValues.append(totalStack[i])\n else:\n newValues.append(None)\n if stackName == '__DEFAULT__':\n newName = 'stacked(%s)' % series.name\n else:\n newName = series.name\n newSeries = TimeSeries(newName, series.start, series.end, series.\n step, newValues)\n newSeries.options['stacked'] = True\n newSeries.pathExpression = newName\n results.append(newSeries)\n requestContext['totalStack'][stackName] = totalStack\n return results\n", "role": "user" }, { "content": "stacked", "role": "assistant" } ]
def x(requestContext, *seriesLists): if len(seriesLists) == 1: [seriesLists] = seriesLists assert len(seriesLists ) == 2, 'areaBetween series argument must reference *exactly* 2 series' lower, upper = seriesLists if len(lower) == 1: [lower] = lower if len(upper) == 1: [upper] = upper lower.options['stacked'] = True lower.options['invisible'] = True upper.options['stacked'] = True lower.name = upper.name = 'areaBetween(%s)' % upper.pathExpression return [lower, upper]
areaBetween
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, *seriesLists):\n if len(seriesLists) == 1:\n [seriesLists] = seriesLists\n assert len(seriesLists\n ) == 2, 'areaBetween series argument must reference *exactly* 2 series'\n lower, upper = seriesLists\n if len(lower) == 1:\n [lower] = lower\n if len(upper) == 1:\n [upper] = upper\n lower.options['stacked'] = True\n lower.options['invisible'] = True\n upper.options['stacked'] = True\n lower.name = upper.name = 'areaBetween(%s)' % upper.pathExpression\n return [lower, upper]\n", "role": "user" }, { "content": "areaBetween", "role": "assistant" } ]
def x(requestContext, seriesList, search, replace): try: seriesList.name = re.sub(search, replace, seriesList.name) except AttributeError: for series in seriesList: series.name = re.sub(search, replace, series.name) return seriesList
aliasSub
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, search, replace):\n try:\n seriesList.name = re.sub(search, replace, seriesList.name)\n except AttributeError:\n for series in seriesList:\n series.name = re.sub(search, replace, series.name)\n return seriesList\n", "role": "user" }, { "content": "aliasSub", "role": "assistant" } ]
def x(requestContext, seriesList, newName): try: seriesList.name = newName except AttributeError: for series in seriesList: series.name = newName return seriesList
alias
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, newName):\n try:\n seriesList.name = newName\n except AttributeError:\n for series in seriesList:\n series.name = newName\n return seriesList\n", "role": "user" }, { "content": "alias", "role": "assistant" } ]
def x(requestContext, seriesList, system=None, units=None): def x(x): if system: if units: return '%.2f %s' % format_units(x, system=system, units=units) else: return '%.2f%s' % format_units(x, system=system) elif units: return '%.2f %s' % (x, units) else: return '%.2f' % x nameLen = max([0] + [len(series.name) for series in seriesList]) lastLen = max([0] + [len(fmt(int(safeLast(series) or 3))) for series in seriesList]) + 3 maxLen = max([0] + [len(fmt(int(safeMax(series) or 3))) for series in seriesList]) + 3 minLen = max([0] + [len(fmt(int(safeMin(series) or 3))) for series in seriesList]) + 3 for series in seriesList: last = safeLast(series) maximum = safeMax(series) minimum = safeMin(series) if last is None: last = NAN else: last = fmt(float(last)) if maximum is None: maximum = NAN else: maximum = fmt(float(maximum)) if minimum is None: minimum = NAN else: minimum = fmt(float(minimum)) series.name = '%*s Current:%*s Max:%*s Min:%*s ' % (-nameLen, series.name, -lastLen, last, -maxLen, maximum, -minLen, minimum) return seriesList
cactiStyle
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, system=None, units=None):\n\n def x(x):\n if system:\n if units:\n return '%.2f %s' % format_units(x, system=system, units=units)\n else:\n return '%.2f%s' % format_units(x, system=system)\n elif units:\n return '%.2f %s' % (x, units)\n else:\n return '%.2f' % x\n nameLen = max([0] + [len(series.name) for series in seriesList])\n lastLen = max([0] + [len(fmt(int(safeLast(series) or 3))) for series in\n seriesList]) + 3\n maxLen = max([0] + [len(fmt(int(safeMax(series) or 3))) for series in\n seriesList]) + 3\n minLen = max([0] + [len(fmt(int(safeMin(series) or 3))) for series in\n seriesList]) + 3\n for series in seriesList:\n last = safeLast(series)\n maximum = safeMax(series)\n minimum = safeMin(series)\n if last is None:\n last = NAN\n else:\n last = fmt(float(last))\n if maximum is None:\n maximum = NAN\n else:\n maximum = fmt(float(maximum))\n if minimum is None:\n minimum = NAN\n else:\n minimum = fmt(float(minimum))\n series.name = '%*s Current:%*s Max:%*s Min:%*s ' % (-nameLen,\n series.name, -lastLen, last, -maxLen, maximum, -minLen, minimum)\n return seriesList\n", "role": "user" }, { "content": "cactiStyle", "role": "assistant" } ]
def x(name): tokens = grammar.parseString(name) pathExpression = None while pathExpression is None: if tokens.pathExpression: pathExpression = tokens.pathExpression elif tokens.expression: tokens = tokens.expression elif tokens.call: tokens = tokens.call.args[0] else: break return pathExpression
getFirstPathExpression
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(name):\n tokens = grammar.parseString(name)\n pathExpression = None\n while pathExpression is None:\n if tokens.pathExpression:\n pathExpression = tokens.pathExpression\n elif tokens.expression:\n tokens = tokens.expression\n elif tokens.call:\n tokens = tokens.call.args[0]\n else:\n break\n return pathExpression\n", "role": "user" }, { "content": "getFirstPathExpression", "role": "assistant" } ]
def x(requestContext, seriesList, *nodes): for series in seriesList: pathExpression = _getFirstPathExpression(series.name) metric_pieces = pathExpression.split('.') series.name = '.'.join(metric_pieces[n] for n in nodes) return seriesList
aliasByNode
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, *nodes):\n for series in seriesList:\n pathExpression = _getFirstPathExpression(series.name)\n metric_pieces = pathExpression.split('.')\n series.name = '.'.join(metric_pieces[n] for n in nodes)\n return seriesList\n", "role": "user" }, { "content": "aliasByNode", "role": "assistant" } ]
def x(requestContext, seriesList, *valueTypes): valueFuncs = {'avg': lambda s: safeDiv(safeSum(s), safeLen(s)), 'total': safeSum, 'min': safeMin, 'max': safeMax, 'last': safeLast} system = None if valueTypes[-1] in ('si', 'binary'): system = valueTypes[-1] valueTypes = valueTypes[:-1] for valueType in valueTypes: valueFunc = valueFuncs.get(valueType, lambda s: '(?)') if system is None: for series in seriesList: series.name += ' (%s: %s)' % (valueType, valueFunc(series)) else: for series in seriesList: value = valueFunc(series) formatted = None if value is not None: formatted = '%.2f%s' % format_units(value, system=system) series.name = '%-20s%-5s%-10s' % (series.name, valueType, formatted) return seriesList
legendValue
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, *valueTypes):\n valueFuncs = {'avg': lambda s: safeDiv(safeSum(s), safeLen(s)), 'total':\n safeSum, 'min': safeMin, 'max': safeMax, 'last': safeLast}\n system = None\n if valueTypes[-1] in ('si', 'binary'):\n system = valueTypes[-1]\n valueTypes = valueTypes[:-1]\n for valueType in valueTypes:\n valueFunc = valueFuncs.get(valueType, lambda s: '(?)')\n if system is None:\n for series in seriesList:\n series.name += ' (%s: %s)' % (valueType, valueFunc(series))\n else:\n for series in seriesList:\n value = valueFunc(series)\n formatted = None\n if value is not None:\n formatted = '%.2f%s' % format_units(value, system=system)\n series.name = '%-20s%-5s%-10s' % (series.name, valueType,\n formatted)\n return seriesList\n", "role": "user" }, { "content": "legendValue", "role": "assistant" } ]
def x(requestContext, seriesList, alpha): for series in seriesList: series.options['alpha'] = alpha return seriesList
alpha
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, alpha):\n for series in seriesList:\n series.options['alpha'] = alpha\n return seriesList\n", "role": "user" }, { "content": "alpha", "role": "assistant" } ]
def x(requestContext, seriesList, theColor): for series in seriesList: series.color = theColor return seriesList
color
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, theColor):\n for series in seriesList:\n series.color = theColor\n return seriesList\n", "role": "user" }, { "content": "color", "role": "assistant" } ]
def x(requestContext, seriesList, start=0, stop=0): for series in seriesList: left = series.name.rfind('(') + 1 right = series.name.find(')') if right < 0: right = len(series.name) + 1 cleanName = series.name[left:right].split('.') if int(stop) == 0: series.name = '.'.join(cleanName[int(start):]) else: series.name = '.'.join(cleanName[int(start):int(stop)]) series.name = re.sub(',.*$', '', series.name) return seriesList
substr
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, start=0, stop=0):\n for series in seriesList:\n left = series.name.rfind('(') + 1\n right = series.name.find(')')\n if right < 0:\n right = len(series.name) + 1\n cleanName = series.name[left:right].split('.')\n if int(stop) == 0:\n series.name = '.'.join(cleanName[int(start):])\n else:\n series.name = '.'.join(cleanName[int(start):int(stop)])\n series.name = re.sub(',.*$', '', series.name)\n return seriesList\n", "role": "user" }, { "content": "substr", "role": "assistant" } ]
def x(requestContext, seriesList, base=10): results = [] for series in seriesList: newValues = [] for val in series: if val is None: newValues.append(None) elif val <= 0: newValues.append(None) else: newValues.append(math.log(val, base)) newName = 'log(%s, %s)' % (series.name, base) newSeries = TimeSeries(newName, series.start, series.end, series. step, newValues) newSeries.pathExpression = newName results.append(newSeries) return results
logarithm
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, base=10):\n results = []\n for series in seriesList:\n newValues = []\n for val in series:\n if val is None:\n newValues.append(None)\n elif val <= 0:\n newValues.append(None)\n else:\n newValues.append(math.log(val, base))\n newName = 'log(%s, %s)' % (series.name, base)\n newSeries = TimeSeries(newName, series.start, series.end, series.\n step, newValues)\n newSeries.pathExpression = newName\n results.append(newSeries)\n return results\n", "role": "user" }, { "content": "logarithm", "role": "assistant" } ]
def x(requestContext, seriesList, n): results = [] for series in seriesList: val = safeMax(series) if val is None or val <= n: results.append(series) return results
maximumBelow
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n):\n results = []\n for series in seriesList:\n val = safeMax(series)\n if val is None or val <= n:\n results.append(series)\n return results\n", "role": "user" }, { "content": "maximumBelow", "role": "assistant" } ]
def x(requestContext, seriesList, n): results = [] for series in seriesList: val = safeMin(series) if val is None or val <= n: results.append(series) return results
minimumBelow
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n):\n results = []\n for series in seriesList:\n val = safeMin(series)\n if val is None or val <= n:\n results.append(series)\n return results\n", "role": "user" }, { "content": "minimumBelow", "role": "assistant" } ]
def x(requestContext, seriesList, n=1): result_list = sorted(seriesList, key=lambda s: safeMax(s))[-n:] return sorted(result_list, key=lambda s: max(s), reverse=True)
highestMax
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n=1):\n result_list = sorted(seriesList, key=lambda s: safeMax(s))[-n:]\n return sorted(result_list, key=lambda s: max(s), reverse=True)\n", "role": "user" }, { "content": "highestMax", "role": "assistant" } ]
def x(requestContext, seriesList, n): results = [] for series in seriesList: val = safeLast(series) if val is not None and val >= n: results.append(series) return results
currentAbove
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n):\n results = []\n for series in seriesList:\n val = safeLast(series)\n if val is not None and val >= n:\n results.append(series)\n return results\n", "role": "user" }, { "content": "currentAbove", "role": "assistant" } ]
def x(requestContext, seriesList, n): results = [] for series in seriesList: val = safeAvg(series) if val is not None and val >= n: results.append(series) return results
averageAbove
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n):\n results = []\n for series in seriesList:\n val = safeAvg(series)\n if val is not None and val >= n:\n results.append(series)\n return results\n", "role": "user" }, { "content": "averageAbove", "role": "assistant" } ]
def x(points, n, interpolate=False): sortedPoints = sorted(not_none(points)) if len(sortedPoints) == 0: return None fractionalRank = n / 100.0 * (len(sortedPoints) + 1) rank = int(fractionalRank) rankFraction = fractionalRank - rank if not interpolate: rank += int(math.ceil(rankFraction)) if rank == 0: percentile = sortedPoints[0] elif rank - 1 == len(sortedPoints): percentile = sortedPoints[-1] else: percentile = sortedPoints[rank - 1] if interpolate: if rank != len(sortedPoints): nextValue = sortedPoints[rank] percentile = percentile + rankFraction * (nextValue - percentile) return percentile
getPercentile
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(points, n, interpolate=False):\n sortedPoints = sorted(not_none(points))\n if len(sortedPoints) == 0:\n return None\n fractionalRank = n / 100.0 * (len(sortedPoints) + 1)\n rank = int(fractionalRank)\n rankFraction = fractionalRank - rank\n if not interpolate:\n rank += int(math.ceil(rankFraction))\n if rank == 0:\n percentile = sortedPoints[0]\n elif rank - 1 == len(sortedPoints):\n percentile = sortedPoints[-1]\n else:\n percentile = sortedPoints[rank - 1]\n if interpolate:\n if rank != len(sortedPoints):\n nextValue = sortedPoints[rank]\n percentile = percentile + rankFraction * (nextValue - percentile)\n return percentile\n", "role": "user" }, { "content": "getPercentile", "role": "assistant" } ]
def x(requestContext, seriesList, n): assert n, 'The requested percent is required to be greater than 0' results = [] for s in seriesList: s_copy = TimeSeries(s.name, s.start, s.end, s.step, sorted(not_none(s)) ) if not s_copy: continue perc_val = _getPercentile(s_copy, n) if perc_val is not None: name = 'nPercentile(%s, %g)' % (s_copy.name, n) point_count = int((s.end - s.start) / s.step) perc_series = TimeSeries(name, s_copy.start, s_copy.end, s_copy .step, [perc_val] * point_count) perc_series.pathExpression = name results.append(perc_series) return results
nPercentile
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n):\n assert n, 'The requested percent is required to be greater than 0'\n results = []\n for s in seriesList:\n s_copy = TimeSeries(s.name, s.start, s.end, s.step, sorted(not_none(s))\n )\n if not s_copy:\n continue\n perc_val = _getPercentile(s_copy, n)\n if perc_val is not None:\n name = 'nPercentile(%s, %g)' % (s_copy.name, n)\n point_count = int((s.end - s.start) / s.step)\n perc_series = TimeSeries(name, s_copy.start, s_copy.end, s_copy\n .step, [perc_val] * point_count)\n perc_series.pathExpression = name\n results.append(perc_series)\n return results\n", "role": "user" }, { "content": "nPercentile", "role": "assistant" } ]
def x(requestContext, seriesList, n): averages = [safeAvg(s) for s in seriesList] if n < 50: n = 100 - n lowPercentile = _getPercentile(averages, 100 - n) highPercentile = _getPercentile(averages, n) return [s for s in seriesList if not lowPercentile < safeAvg(s) < highPercentile]
averageOutsidePercentile
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n):\n averages = [safeAvg(s) for s in seriesList]\n if n < 50:\n n = 100 - n\n lowPercentile = _getPercentile(averages, 100 - n)\n highPercentile = _getPercentile(averages, n)\n return [s for s in seriesList if not lowPercentile < safeAvg(s) <\n highPercentile]\n", "role": "user" }, { "content": "averageOutsidePercentile", "role": "assistant" } ]
def x(requestContext, seriesList, n): if n < 50: n = 100 - n transposed = list(zip_longest(*seriesList)) lowPercentiles = [_getPercentile(col, 100 - n) for col in transposed] highPercentiles = [_getPercentile(col, n) for col in transposed] return [l for l in seriesList if sum([(not lowPercentiles[index] < val < highPercentiles[index]) for index, val in enumerate(l)]) > 0]
removeBetweenPercentile
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n):\n if n < 50:\n n = 100 - n\n transposed = list(zip_longest(*seriesList))\n lowPercentiles = [_getPercentile(col, 100 - n) for col in transposed]\n highPercentiles = [_getPercentile(col, n) for col in transposed]\n return [l for l in seriesList if sum([(not lowPercentiles[index] < val <\n highPercentiles[index]) for index, val in enumerate(l)]) > 0]\n", "role": "user" }, { "content": "removeBetweenPercentile", "role": "assistant" } ]
def x(requestContext, seriesList, n): for s in seriesList: s.name = 'removeAboveValue(%s, %g)' % (s.name, n) s.pathExpression = s.name for index, val in enumerate(s): if val is None: continue if val > n: s[index] = None return seriesList
removeAboveValue
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n):\n for s in seriesList:\n s.name = 'removeAboveValue(%s, %g)' % (s.name, n)\n s.pathExpression = s.name\n for index, val in enumerate(s):\n if val is None:\n continue\n if val > n:\n s[index] = None\n return seriesList\n", "role": "user" }, { "content": "removeAboveValue", "role": "assistant" } ]
def x(requestContext, seriesList, n): for s in seriesList: s.name = 'removeBelowPercentile(%s, %g)' % (s.name, n) s.pathExpression = s.name try: percentile = nPercentile(requestContext, [s], n)[0][0] except IndexError: continue for index, val in enumerate(s): if val is None: continue if val < percentile: s[index] = None return seriesList
removeBelowPercentile
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n):\n for s in seriesList:\n s.name = 'removeBelowPercentile(%s, %g)' % (s.name, n)\n s.pathExpression = s.name\n try:\n percentile = nPercentile(requestContext, [s], n)[0][0]\n except IndexError:\n continue\n for index, val in enumerate(s):\n if val is None:\n continue\n if val < percentile:\n s[index] = None\n return seriesList\n", "role": "user" }, { "content": "removeBelowPercentile", "role": "assistant" } ]
def x(requestContext, seriesList, natural=False): if natural: return list(sorted(seriesList, key=lambda x: paddedName(x.name))) else: return list(sorted(seriesList, key=lambda x: x.name))
sortByName
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, natural=False):\n if natural:\n return list(sorted(seriesList, key=lambda x: paddedName(x.name)))\n else:\n return list(sorted(seriesList, key=lambda x: x.name))\n", "role": "user" }, { "content": "sortByName", "role": "assistant" } ]
def x(requestContext, seriesList): return list(sorted(seriesList, key=safeSum, reverse=True))
sortByTotal
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList):\n return list(sorted(seriesList, key=safeSum, reverse=True))\n", "role": "user" }, { "content": "sortByTotal", "role": "assistant" } ]
def x(requestContext, seriesList, value, search, replace): newSeries = [] for series in seriesList: newname = re.sub(search, replace, series.name) if safeMax(series) > value: n = evaluateTarget(requestContext, newname) if n is not None and len(n) > 0: newSeries.append(n[0]) return newSeries
useSeriesAbove
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, value, search, replace):\n newSeries = []\n for series in seriesList:\n newname = re.sub(search, replace, series.name)\n if safeMax(series) > value:\n n = evaluateTarget(requestContext, newname)\n if n is not None and len(n) > 0:\n newSeries.append(n[0])\n return newSeries\n", "role": "user" }, { "content": "useSeriesAbove", "role": "assistant" } ]
def x(requestContext, seriesList, n): deviants = [] for series in seriesList: mean = safeAvg(series) if mean is None: continue square_sum = sum([((value - mean) ** 2) for value in series if value is not None]) sigma = safeDiv(square_sum, safeLen(series)) if sigma is None: continue deviants.append((sigma, series)) return [series for sig, series in sorted(deviants, key=itemgetter(0), reverse=True)][:n]
mostDeviant
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, n):\n deviants = []\n for series in seriesList:\n mean = safeAvg(series)\n if mean is None:\n continue\n square_sum = sum([((value - mean) ** 2) for value in series if \n value is not None])\n sigma = safeDiv(square_sum, safeLen(series))\n if sigma is None:\n continue\n deviants.append((sigma, series))\n return [series for sig, series in sorted(deviants, key=itemgetter(0),\n reverse=True)][:n]\n", "role": "user" }, { "content": "mostDeviant", "role": "assistant" } ]
def x(requestContext, seriesList, points, windowTolerance=0.1): for seriesIndex, series in enumerate(seriesList): stdevSeries = TimeSeries('stdev(%s,%d)' % (series.name, int(points) ), series.start, series.end, series.step, []) stdevSeries.pathExpression = 'stdev(%s,%d)' % (series.name, int(points) ) validPoints = 0 currentSum = 0 currentSumOfSquares = 0 for index, newValue in enumerate(series): if index < points: bootstrapping = True droppedValue = None else: bootstrapping = False droppedValue = series[index - points] if not bootstrapping and droppedValue is not None: validPoints -= 1 if newValue is not None: validPoints += 1 if not bootstrapping and droppedValue is not None: currentSum -= droppedValue currentSumOfSquares -= droppedValue ** 2 if newValue is not None: currentSum += newValue currentSumOfSquares += newValue ** 2 if validPoints > 0 and float(validPoints ) / points >= windowTolerance: try: deviation = math.sqrt(validPoints * currentSumOfSquares - currentSum ** 2) / validPoints except ValueError: deviation = None stdevSeries.append(deviation) else: stdevSeries.append(None) seriesList[seriesIndex] = stdevSeries return seriesList
stdev
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, points, windowTolerance=0.1):\n for seriesIndex, series in enumerate(seriesList):\n stdevSeries = TimeSeries('stdev(%s,%d)' % (series.name, int(points)\n ), series.start, series.end, series.step, [])\n stdevSeries.pathExpression = 'stdev(%s,%d)' % (series.name, int(points)\n )\n validPoints = 0\n currentSum = 0\n currentSumOfSquares = 0\n for index, newValue in enumerate(series):\n if index < points:\n bootstrapping = True\n droppedValue = None\n else:\n bootstrapping = False\n droppedValue = series[index - points]\n if not bootstrapping and droppedValue is not None:\n validPoints -= 1\n if newValue is not None:\n validPoints += 1\n if not bootstrapping and droppedValue is not None:\n currentSum -= droppedValue\n currentSumOfSquares -= droppedValue ** 2\n if newValue is not None:\n currentSum += newValue\n currentSumOfSquares += newValue ** 2\n if validPoints > 0 and float(validPoints\n ) / points >= windowTolerance:\n try:\n deviation = math.sqrt(validPoints * currentSumOfSquares -\n currentSum ** 2) / validPoints\n except ValueError:\n deviation = None\n stdevSeries.append(deviation)\n else:\n stdevSeries.append(None)\n seriesList[seriesIndex] = stdevSeries\n return seriesList\n", "role": "user" }, { "content": "stdev", "role": "assistant" } ]
def x(requestContext, seriesList): for series in seriesList: series.options['secondYAxis'] = True series.name = 'secondYAxis(%s)' % series.name return seriesList
secondYAxis
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList):\n for series in seriesList:\n series.options['secondYAxis'] = True\n series.name = 'secondYAxis(%s)' % series.name\n return seriesList\n", "role": "user" }, { "content": "secondYAxis", "role": "assistant" } ]
def x(requestContext, seriesList): previewSeconds = 7 * 86400 newContext = requestContext.copy() newContext['startTime'] = requestContext['startTime'] - timedelta(seconds =previewSeconds) previewList = evaluateTokens(newContext, requestContext['args'][0]) results = [] for series in previewList: analysis = holtWintersAnalysis(series) predictions = analysis['predictions'] windowPoints = previewSeconds // predictions.step result = TimeSeries('holtWintersForecast(%s)' % series.name, predictions.start + previewSeconds, predictions.end, predictions.step, predictions[windowPoints:]) result.pathExpression = result.name results.append(result) return results
holtWintersForecast
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList):\n previewSeconds = 7 * 86400\n newContext = requestContext.copy()\n newContext['startTime'] = requestContext['startTime'] - timedelta(seconds\n =previewSeconds)\n previewList = evaluateTokens(newContext, requestContext['args'][0])\n results = []\n for series in previewList:\n analysis = holtWintersAnalysis(series)\n predictions = analysis['predictions']\n windowPoints = previewSeconds // predictions.step\n result = TimeSeries('holtWintersForecast(%s)' % series.name, \n predictions.start + previewSeconds, predictions.end,\n predictions.step, predictions[windowPoints:])\n result.pathExpression = result.name\n results.append(result)\n return results\n", "role": "user" }, { "content": "holtWintersForecast", "role": "assistant" } ]
def x(requestContext, seriesList, delta=3): previewSeconds = 7 * 86400 newContext = requestContext.copy() newContext['startTime'] = requestContext['startTime'] - timedelta(seconds =previewSeconds) previewList = evaluateTokens(newContext, requestContext['args'][0]) results = [] for series in previewList: analysis = holtWintersAnalysis(series) data = analysis['predictions'] windowPoints = previewSeconds // data.step forecast = TimeSeries(data.name, data.start + previewSeconds, data. end, data.step, data[windowPoints:]) forecast.pathExpression = data.pathExpression data = analysis['deviations'] windowPoints = previewSeconds // data.step deviation = TimeSeries(data.name, data.start + previewSeconds, data .end, data.step, data[windowPoints:]) deviation.pathExpression = data.pathExpression seriesLength = len(forecast) i = 0 upperBand = list() lowerBand = list() while i < seriesLength: forecast_item = forecast[i] deviation_item = deviation[i] i = i + 1 if forecast_item is None or deviation_item is None: upperBand.append(None) lowerBand.append(None) else: scaled_deviation = delta * deviation_item upperBand.append(forecast_item + scaled_deviation) lowerBand.append(forecast_item - scaled_deviation) upperName = 'holtWintersConfidenceUpper(%s)' % series.name lowerName = 'holtWintersConfidenceLower(%s)' % series.name upperSeries = TimeSeries(upperName, forecast.start, forecast.end, forecast.step, upperBand) lowerSeries = TimeSeries(lowerName, forecast.start, forecast.end, forecast.step, lowerBand) upperSeries.pathExpression = series.pathExpression lowerSeries.pathExpression = series.pathExpression results.append(lowerSeries) results.append(upperSeries) return results
holtWintersConfidenceBands
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, delta=3):\n previewSeconds = 7 * 86400\n newContext = requestContext.copy()\n newContext['startTime'] = requestContext['startTime'] - timedelta(seconds\n =previewSeconds)\n previewList = evaluateTokens(newContext, requestContext['args'][0])\n results = []\n for series in previewList:\n analysis = holtWintersAnalysis(series)\n data = analysis['predictions']\n windowPoints = previewSeconds // data.step\n forecast = TimeSeries(data.name, data.start + previewSeconds, data.\n end, data.step, data[windowPoints:])\n forecast.pathExpression = data.pathExpression\n data = analysis['deviations']\n windowPoints = previewSeconds // data.step\n deviation = TimeSeries(data.name, data.start + previewSeconds, data\n .end, data.step, data[windowPoints:])\n deviation.pathExpression = data.pathExpression\n seriesLength = len(forecast)\n i = 0\n upperBand = list()\n lowerBand = list()\n while i < seriesLength:\n forecast_item = forecast[i]\n deviation_item = deviation[i]\n i = i + 1\n if forecast_item is None or deviation_item is None:\n upperBand.append(None)\n lowerBand.append(None)\n else:\n scaled_deviation = delta * deviation_item\n upperBand.append(forecast_item + scaled_deviation)\n lowerBand.append(forecast_item - scaled_deviation)\n upperName = 'holtWintersConfidenceUpper(%s)' % series.name\n lowerName = 'holtWintersConfidenceLower(%s)' % series.name\n upperSeries = TimeSeries(upperName, forecast.start, forecast.end,\n forecast.step, upperBand)\n lowerSeries = TimeSeries(lowerName, forecast.start, forecast.end,\n forecast.step, lowerBand)\n upperSeries.pathExpression = series.pathExpression\n lowerSeries.pathExpression = series.pathExpression\n results.append(lowerSeries)\n results.append(upperSeries)\n return results\n", "role": "user" }, { "content": "holtWintersConfidenceBands", "role": "assistant" } ]
def x(requestContext, seriesList, delta=3): results = [] for series in seriesList: confidenceBands = holtWintersConfidenceBands(requestContext, [ series], delta) lowerBand = confidenceBands[0] upperBand = confidenceBands[1] aberration = list() for i, actual in enumerate(series): if actual is None: aberration.append(0) elif upperBand[i] is not None and actual > upperBand[i]: aberration.append(actual - upperBand[i]) elif lowerBand[i] is not None and actual < lowerBand[i]: aberration.append(actual - lowerBand[i]) else: aberration.append(0) newName = 'holtWintersAberration(%s)' % series.name results.append(TimeSeries(newName, series.start, series.end, series .step, aberration)) return results
holtWintersAberration
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, delta=3):\n results = []\n for series in seriesList:\n confidenceBands = holtWintersConfidenceBands(requestContext, [\n series], delta)\n lowerBand = confidenceBands[0]\n upperBand = confidenceBands[1]\n aberration = list()\n for i, actual in enumerate(series):\n if actual is None:\n aberration.append(0)\n elif upperBand[i] is not None and actual > upperBand[i]:\n aberration.append(actual - upperBand[i])\n elif lowerBand[i] is not None and actual < lowerBand[i]:\n aberration.append(actual - lowerBand[i])\n else:\n aberration.append(0)\n newName = 'holtWintersAberration(%s)' % series.name\n results.append(TimeSeries(newName, series.start, series.end, series\n .step, aberration))\n return results\n", "role": "user" }, { "content": "holtWintersAberration", "role": "assistant" } ]
def x(requestContext, seriesList, delta=3): bands = holtWintersConfidenceBands(requestContext, seriesList, delta) results = areaBetween(requestContext, bands) for series in results: series.name = series.name.replace('areaBetween', 'holtWintersConfidenceArea') return results
holtWintersConfidenceArea
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, delta=3):\n bands = holtWintersConfidenceBands(requestContext, seriesList, delta)\n results = areaBetween(requestContext, bands)\n for series in results:\n series.name = series.name.replace('areaBetween',\n 'holtWintersConfidenceArea')\n return results\n", "role": "user" }, { "content": "holtWintersConfidenceArea", "role": "assistant" } ]
def x(series): n = safeLen(series) sumI = sum([i for i, v in enumerate(series) if v is not None]) sumV = sum([v for i, v in enumerate(series) if v is not None]) sumII = sum([(i * i) for i, v in enumerate(series) if v is not None]) sumIV = sum([(i * v) for i, v in enumerate(series) if v is not None]) denominator = float(n * sumII - sumI * sumI) if denominator == 0: return None else: factor = (n * sumIV - sumI * sumV) / denominator / series.step offset = sumII * sumV - sumIV * sumI offset = offset / denominator - factor * series.start return factor, offset
linearRegressionAnalysis
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(series):\n n = safeLen(series)\n sumI = sum([i for i, v in enumerate(series) if v is not None])\n sumV = sum([v for i, v in enumerate(series) if v is not None])\n sumII = sum([(i * i) for i, v in enumerate(series) if v is not None])\n sumIV = sum([(i * v) for i, v in enumerate(series) if v is not None])\n denominator = float(n * sumII - sumI * sumI)\n if denominator == 0:\n return None\n else:\n factor = (n * sumIV - sumI * sumV) / denominator / series.step\n offset = sumII * sumV - sumIV * sumI\n offset = offset / denominator - factor * series.start\n return factor, offset\n", "role": "user" }, { "content": "linearRegressionAnalysis", "role": "assistant" } ]
def x(requestContext, seriesList, startSourceAt=None, endSourceAt=None): from .app import evaluateTarget results = [] sourceContext = requestContext.copy() if startSourceAt is not None: sourceContext['startTime'] = parseATTime(startSourceAt) if endSourceAt is not None: sourceContext['endTime'] = parseATTime(endSourceAt) sourceList = [] for series in seriesList: source = evaluateTarget(sourceContext, series.pathExpression) sourceList.extend(source) for source, series in zip(sourceList, seriesList): newName = 'linearRegression(%s, %s, %s)' % (series.name, int(epoch( sourceContext['startTime'])), int(epoch(sourceContext['endTime']))) forecast = linearRegressionAnalysis(source) if forecast is None: continue factor, offset = forecast values = [(offset + (series.start + i * series.step) * factor) for i in range(len(series))] newSeries = TimeSeries(newName, series.start, series.end, series. step, values) newSeries.pathExpression = newSeries.name results.append(newSeries) return results
linearRegression
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, startSourceAt=None, endSourceAt=None):\n from .app import evaluateTarget\n results = []\n sourceContext = requestContext.copy()\n if startSourceAt is not None:\n sourceContext['startTime'] = parseATTime(startSourceAt)\n if endSourceAt is not None:\n sourceContext['endTime'] = parseATTime(endSourceAt)\n sourceList = []\n for series in seriesList:\n source = evaluateTarget(sourceContext, series.pathExpression)\n sourceList.extend(source)\n for source, series in zip(sourceList, seriesList):\n newName = 'linearRegression(%s, %s, %s)' % (series.name, int(epoch(\n sourceContext['startTime'])), int(epoch(sourceContext['endTime'])))\n forecast = linearRegressionAnalysis(source)\n if forecast is None:\n continue\n factor, offset = forecast\n values = [(offset + (series.start + i * series.step) * factor) for\n i in range(len(series))]\n newSeries = TimeSeries(newName, series.start, series.end, series.\n step, values)\n newSeries.pathExpression = newSeries.name\n results.append(newSeries)\n return results\n", "role": "user" }, { "content": "linearRegression", "role": "assistant" } ]
def x(requestContext, seriesList): for series in seriesList: series.options['drawAsInfinite'] = True series.name = 'drawAsInfinite(%s)' % series.name return seriesList
drawAsInfinite
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList):\n for series in seriesList:\n series.options['drawAsInfinite'] = True\n series.name = 'drawAsInfinite(%s)' % series.name\n return seriesList\n", "role": "user" }, { "content": "drawAsInfinite", "role": "assistant" } ]
def x(requestContext, seriesList, width): for series in seriesList: series.options['lineWidth'] = width return seriesList
lineWidth
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, width):\n for series in seriesList:\n series.options['lineWidth'] = width\n return seriesList\n", "role": "user" }, { "content": "lineWidth", "role": "assistant" } ]
def x(requestContext, seriesList, dashLength=5): for series in seriesList: series.name = 'dashed(%s, %g)' % (series.name, dashLength) series.options['dashed'] = dashLength return seriesList
dashed
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, dashLength=5):\n for series in seriesList:\n series.name = 'dashed(%s, %g)' % (series.name, dashLength)\n series.options['dashed'] = dashLength\n return seriesList\n", "role": "user" }, { "content": "dashed", "role": "assistant" } ]
def x(requestContext, seriesList, timeShiftUnit, timeShiftStart, timeShiftEnd): if timeShiftUnit[0].isdigit(): timeShiftUnit = '-' + timeShiftUnit delta = parseTimeOffset(timeShiftUnit) series = seriesList[0] results = [] timeShiftStartint = int(timeShiftStart) timeShiftEndint = int(timeShiftEnd) for shft in range(timeShiftStartint, timeShiftEndint): myContext = requestContext.copy() innerDelta = delta * shft myContext['startTime'] = requestContext['startTime'] + innerDelta myContext['endTime'] = requestContext['endTime'] + innerDelta for shiftedSeries in evaluateTarget(myContext, series.pathExpression): shiftedSeries.name = 'timeShift(%s, %s, %s)' % (shiftedSeries. name, timeShiftUnit, shft) shiftedSeries.pathExpression = shiftedSeries.name shiftedSeries.start = series.start shiftedSeries.end = series.end results.append(shiftedSeries) return results
timeStack
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, timeShiftUnit, timeShiftStart, timeShiftEnd):\n if timeShiftUnit[0].isdigit():\n timeShiftUnit = '-' + timeShiftUnit\n delta = parseTimeOffset(timeShiftUnit)\n series = seriesList[0]\n results = []\n timeShiftStartint = int(timeShiftStart)\n timeShiftEndint = int(timeShiftEnd)\n for shft in range(timeShiftStartint, timeShiftEndint):\n myContext = requestContext.copy()\n innerDelta = delta * shft\n myContext['startTime'] = requestContext['startTime'] + innerDelta\n myContext['endTime'] = requestContext['endTime'] + innerDelta\n for shiftedSeries in evaluateTarget(myContext, series.pathExpression):\n shiftedSeries.name = 'timeShift(%s, %s, %s)' % (shiftedSeries.\n name, timeShiftUnit, shft)\n shiftedSeries.pathExpression = shiftedSeries.name\n shiftedSeries.start = series.start\n shiftedSeries.end = series.end\n results.append(shiftedSeries)\n return results\n", "role": "user" }, { "content": "timeStack", "role": "assistant" } ]
def x(requestContext, seriesList, timeShift, resetEnd=True, alignDST=False): if timeShift[0].isdigit(): timeShift = '-' + timeShift delta = parseTimeOffset(timeShift) myContext = requestContext.copy() myContext['startTime'] = requestContext['startTime'] + delta myContext['endTime'] = requestContext['endTime'] + delta if alignDST: reqStartDST = localDST(requestContext['startTime']) reqEndDST = localDST(requestContext['endTime']) myStartDST = localDST(myContext['startTime']) myEndDST = localDST(myContext['endTime']) dstOffset = timedelta(hours=0) if (reqStartDST and reqEndDST) and (not myStartDST and not myEndDST): dstOffset = timedelta(hours=1) elif (not reqStartDST and not reqEndDST) and (myStartDST and myEndDST): dstOffset = timedelta(hours=-1) myContext['startTime'] += dstOffset myContext['endTime'] += dstOffset results = [] if not seriesList: return results series = seriesList[0] for shiftedSeries in evaluateTarget(myContext, series.pathExpression): shiftedSeries.name = 'timeShift(%s, %s)' % (shiftedSeries.name, timeShift) if resetEnd: shiftedSeries.end = series.end else: shiftedSeries.end = (shiftedSeries.end - shiftedSeries.start + series.start) shiftedSeries.start = series.start results.append(shiftedSeries) return results
timeShift
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, timeShift, resetEnd=True, alignDST=False):\n if timeShift[0].isdigit():\n timeShift = '-' + timeShift\n delta = parseTimeOffset(timeShift)\n myContext = requestContext.copy()\n myContext['startTime'] = requestContext['startTime'] + delta\n myContext['endTime'] = requestContext['endTime'] + delta\n if alignDST:\n reqStartDST = localDST(requestContext['startTime'])\n reqEndDST = localDST(requestContext['endTime'])\n myStartDST = localDST(myContext['startTime'])\n myEndDST = localDST(myContext['endTime'])\n dstOffset = timedelta(hours=0)\n if (reqStartDST and reqEndDST) and (not myStartDST and not myEndDST):\n dstOffset = timedelta(hours=1)\n elif (not reqStartDST and not reqEndDST) and (myStartDST and myEndDST):\n dstOffset = timedelta(hours=-1)\n myContext['startTime'] += dstOffset\n myContext['endTime'] += dstOffset\n results = []\n if not seriesList:\n return results\n series = seriesList[0]\n for shiftedSeries in evaluateTarget(myContext, series.pathExpression):\n shiftedSeries.name = 'timeShift(%s, %s)' % (shiftedSeries.name,\n timeShift)\n if resetEnd:\n shiftedSeries.end = series.end\n else:\n shiftedSeries.end = (shiftedSeries.end - shiftedSeries.start +\n series.start)\n shiftedSeries.start = series.start\n results.append(shiftedSeries)\n return results\n", "role": "user" }, { "content": "timeShift", "role": "assistant" } ]
def x(requestContext, seriesList, startSliceAt, endSliceAt='now'): results = [] start = epoch(parseATTime(startSliceAt)) end = epoch(parseATTime(endSliceAt)) for slicedSeries in seriesList: slicedSeries.name = 'timeSlice(%s, %s, %s)' % (slicedSeries.name, int(start), int(end)) curr = epoch(requestContext['startTime']) for i, v in enumerate(slicedSeries): if v is None or curr < start or curr > end: slicedSeries[i] = None curr += slicedSeries.step results.append(slicedSeries) return results
timeSlice
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, startSliceAt, endSliceAt='now'):\n results = []\n start = epoch(parseATTime(startSliceAt))\n end = epoch(parseATTime(endSliceAt))\n for slicedSeries in seriesList:\n slicedSeries.name = 'timeSlice(%s, %s, %s)' % (slicedSeries.name,\n int(start), int(end))\n curr = epoch(requestContext['startTime'])\n for i, v in enumerate(slicedSeries):\n if v is None or curr < start or curr > end:\n slicedSeries[i] = None\n curr += slicedSeries.step\n results.append(slicedSeries)\n return results\n", "role": "user" }, { "content": "timeSlice", "role": "assistant" } ]
def x(requestContext, value): name = 'constantLine(%s)' % str(value) start = int(epoch(requestContext['startTime'])) end = int(epoch(requestContext['endTime'])) step = int((end - start) / 2.0) series = TimeSeries(str(value), start, end, step, [value, value, value]) series.pathExpression = name return [series]
constantLine
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, value):\n name = 'constantLine(%s)' % str(value)\n start = int(epoch(requestContext['startTime']))\n end = int(epoch(requestContext['endTime']))\n step = int((end - start) / 2.0)\n series = TimeSeries(str(value), start, end, step, [value, value, value])\n series.pathExpression = name\n return [series]\n", "role": "user" }, { "content": "constantLine", "role": "assistant" } ]
def x(requestContext, seriesList, func='avg'): t_funcs = {'avg': safeAvg, 'min': safeMin, 'max': safeMax} if func not in t_funcs: raise ValueError('Invalid function %s' % func) results = [] for series in seriesList: value = t_funcs[func](series) if value is not None: name = 'aggregateLine(%s, %g)' % (series.name, value) else: name = 'aggregateLine(%s, None)' % series.name [series] = constantLine(requestContext, value) series.name = name series.pathExpression = series.name results.append(series) return results
aggregateLine
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, func='avg'):\n t_funcs = {'avg': safeAvg, 'min': safeMin, 'max': safeMax}\n if func not in t_funcs:\n raise ValueError('Invalid function %s' % func)\n results = []\n for series in seriesList:\n value = t_funcs[func](series)\n if value is not None:\n name = 'aggregateLine(%s, %g)' % (series.name, value)\n else:\n name = 'aggregateLine(%s, None)' % series.name\n [series] = constantLine(requestContext, value)\n series.name = name\n series.pathExpression = series.name\n results.append(series)\n return results\n", "role": "user" }, { "content": "aggregateLine", "role": "assistant" } ]
def x(requestContext, ts, label=None, color=None): ts = int(epoch(parseATTime(ts, requestContext['tzinfo']))) start = int(epoch(requestContext['startTime'])) end = int(epoch(requestContext['endTime'])) if ts < start: raise ValueError( 'verticalLine(): timestamp %s exists before start of range' % ts) elif ts > end: raise ValueError( 'verticalLine(): timestamp %s exists after end of range' % ts) start = end = ts step = 1.0 series = TimeSeries(label, start, end, step, [1.0, 1.0]) series.options['drawAsInfinite'] = True if color: series.color = color return [series]
verticalLine
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, ts, label=None, color=None):\n ts = int(epoch(parseATTime(ts, requestContext['tzinfo'])))\n start = int(epoch(requestContext['startTime']))\n end = int(epoch(requestContext['endTime']))\n if ts < start:\n raise ValueError(\n 'verticalLine(): timestamp %s exists before start of range' % ts)\n elif ts > end:\n raise ValueError(\n 'verticalLine(): timestamp %s exists after end of range' % ts)\n start = end = ts\n step = 1.0\n series = TimeSeries(label, start, end, step, [1.0, 1.0])\n series.options['drawAsInfinite'] = True\n if color:\n series.color = color\n return [series]\n", "role": "user" }, { "content": "verticalLine", "role": "assistant" } ]
def x(requestContext, value, label=None, color=None): [series] = constantLine(requestContext, value) if label: series.name = label if color: series.color = color return [series]
threshold
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, value, label=None, color=None):\n [series] = constantLine(requestContext, value)\n if label:\n series.name = label\n if color:\n series.color = color\n return [series]\n", "role": "user" }, { "content": "threshold", "role": "assistant" } ]
def x(requestContext, seriesList, default=0, referenceSeries=None): def x(v, d): if v is None: return d else: return v if referenceSeries: defaults = [(default if any(v is not None for v in x) else None) for x in zip_longest(*referenceSeries)] else: defaults = None for series in seriesList: if referenceSeries: series.name = 'transformNull(%s,%g,referenceSeries)' % (series. name, default) else: series.name = 'transformNull(%s,%g)' % (series.name, default) series.pathExpression = series.name if defaults: values = [transform(v, d) for v, d in zip_longest(series, defaults) ] else: values = [transform(v, default) for v in series] series.extend(values) del series[:len(values)] return seriesList
transformNull
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList, default=0, referenceSeries=None):\n\n def x(v, d):\n if v is None:\n return d\n else:\n return v\n if referenceSeries:\n defaults = [(default if any(v is not None for v in x) else None) for\n x in zip_longest(*referenceSeries)]\n else:\n defaults = None\n for series in seriesList:\n if referenceSeries:\n series.name = 'transformNull(%s,%g,referenceSeries)' % (series.\n name, default)\n else:\n series.name = 'transformNull(%s,%g)' % (series.name, default)\n series.pathExpression = series.name\n if defaults:\n values = [transform(v, d) for v, d in zip_longest(series, defaults)\n ]\n else:\n values = [transform(v, default) for v in series]\n series.extend(values)\n del series[:len(values)]\n return seriesList\n", "role": "user" }, { "content": "transformNull", "role": "assistant" } ]
def x(requestContext, seriesList): def x(v): if v is None: return 0 else: return 1 for series in seriesList: series.name = 'isNonNull(%s)' % series.name series.pathExpression = series.name values = [transform(v) for v in series] series.extend(values) del series[:len(values)] return seriesList
isNonNull
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, seriesList):\n\n def x(v):\n if v is None:\n return 0\n else:\n return 1\n for series in seriesList:\n series.name = 'isNonNull(%s)' % series.name\n series.pathExpression = series.name\n values = [transform(v) for v in series]\n series.extend(values)\n del series[:len(values)]\n return seriesList\n", "role": "user" }, { "content": "isNonNull", "role": "assistant" } ]
def x(requestContext, name, step=60): start = int(epoch(requestContext['startTime'])) end = int(epoch(requestContext['endTime'])) values = range(start, end, step) series = TimeSeries(name, start, end, step, values) series.pathExpression = 'identity("%s")' % name return [series]
identity
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(requestContext, name, step=60):\n start = int(epoch(requestContext['startTime']))\n end = int(epoch(requestContext['endTime']))\n values = range(start, end, step)\n series = TimeSeries(name, start, end, step, values)\n series.pathExpression = 'identity(\"%s\")' % name\n return [series]\n", "role": "user" }, { "content": "identity", "role": "assistant" } ]