source_code
stringlengths
45
7.24k
function_name
stringlengths
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111
messages
list
def x(self): if self._reconnectDelayedCall: self._reconnectDelayedCall.cancel() self._reconnectDelayedCall = None self.loseConnection()
state_stopped
[ { "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._reconnectDelayedCall:\n self._reconnectDelayedCall.cancel()\n self._reconnectDelayedCall = None\n self.loseConnection()\n", "role": "user" }, { "content": "state_stopped", "role": "assistant" } ]
def x(self): def x(protocol): self.makeConnection(protocol) if self._state == 'aborting': self._toState('disconnecting') else: self._toState('connected') def x(failure): self._toState('error', failure) def x(entry): if self.delegate: try: self.delegate(entry) except: log.err() else: pass d = self.api(onEntry, self.args) d.addCallback(responseReceived) d.addErrback(trapError)
state_connecting
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n\n def x(protocol):\n self.makeConnection(protocol)\n if self._state == 'aborting':\n self._toState('disconnecting')\n else:\n self._toState('connected')\n\n def x(failure):\n self._toState('error', failure)\n\n def x(entry):\n if self.delegate:\n try:\n self.delegate(entry)\n except:\n log.err()\n else:\n pass\n d = self.api(onEntry, self.args)\n d.addCallback(responseReceived)\n d.addErrback(trapError)\n", "role": "user" }, { "content": "state_connecting", "role": "assistant" } ]
def x(self, reason): log.err(reason) def x(failure): for errorState, backOff in self.backOffs.iteritems(): if 'errorTypes' not in backOff: continue if failure.check(*backOff['errorTypes']): return errorState return 'other' errorState = matchException(reason) self._reconnect(errorState)
state_error
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, reason):\n log.err(reason)\n\n def x(failure):\n for errorState, backOff in self.backOffs.iteritems():\n if 'errorTypes' not in backOff:\n continue\n if failure.check(*backOff['errorTypes']):\n return errorState\n return 'other'\n errorState = matchException(reason)\n self._reconnect(errorState)\n", "role": "user" }, { "content": "state_error", "role": "assistant" } ]
def x(self, line): if line and line.isdigit(): self._expectedLength = int(line) self._rawBuffer = [] self._rawBufferLength = 0 self.setRawMode() else: self.keepAliveReceived()
lineReceived
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, line):\n if line and line.isdigit():\n self._expectedLength = int(line)\n self._rawBuffer = []\n self._rawBufferLength = 0\n self.setRawMode()\n else:\n self.keepAliveReceived()\n", "role": "user" }, { "content": "lineReceived", "role": "assistant" } ]
def x(self, data): self._rawBuffer.append(data) self._rawBufferLength += len(data) if self._rawBufferLength >= self._expectedLength: receivedData = ''.join(self._rawBuffer) expectedData = receivedData[:self._expectedLength] extraData = receivedData[self._expectedLength:] self._rawBuffer = None self._rawBufferLength = None self._expectedLength = None self.datagramReceived(expectedData) self.setLineMode(extraData)
rawDataReceived
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, data):\n self._rawBuffer.append(data)\n self._rawBufferLength += len(data)\n if self._rawBufferLength >= self._expectedLength:\n receivedData = ''.join(self._rawBuffer)\n expectedData = receivedData[:self._expectedLength]\n extraData = receivedData[self._expectedLength:]\n self._rawBuffer = None\n self._rawBufferLength = None\n self._expectedLength = None\n self.datagramReceived(expectedData)\n self.setLineMode(extraData)\n", "role": "user" }, { "content": "rawDataReceived", "role": "assistant" } ]
def x(cls, data): obj = cls() obj.raw = data for name, value in data.iteritems(): if cls.SIMPLE_PROPS and name in cls.SIMPLE_PROPS: setattr(obj, name, value) elif cls.COMPLEX_PROPS and name in cls.COMPLEX_PROPS: value = cls.COMPLEX_PROPS[name].fromDict(value) setattr(obj, name, value) elif cls.LIST_PROPS and name in cls.LIST_PROPS: value = [cls.LIST_PROPS[name].fromDict(item) for item in value] setattr(obj, name, value) return obj
fromDict
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, data):\n obj = cls()\n obj.raw = data\n for name, value in data.iteritems():\n if cls.SIMPLE_PROPS and name in cls.SIMPLE_PROPS:\n setattr(obj, name, value)\n elif cls.COMPLEX_PROPS and name in cls.COMPLEX_PROPS:\n value = cls.COMPLEX_PROPS[name].fromDict(value)\n setattr(obj, name, value)\n elif cls.LIST_PROPS and name in cls.LIST_PROPS:\n value = [cls.LIST_PROPS[name].fromDict(item) for item in value]\n setattr(obj, name, value)\n return obj\n", "role": "user" }, { "content": "fromDict", "role": "assistant" } ]
def x(self, reason): self.setTimeout(None) if reason.check(ResponseDone, PotentialDataLoss): self.deferred.callback(None) else: self.deferred.errback(reason)
connectionLost
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, reason):\n self.setTimeout(None)\n if reason.check(ResponseDone, PotentialDataLoss):\n self.deferred.callback(None)\n else:\n self.deferred.errback(reason)\n", "role": "user" }, { "content": "connectionLost", "role": "assistant" } ]
def x(list_type): def x(delegate, extra_args=None): return listParser(list_type, delegate, extra_args) return create
simpleListFactory
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(list_type):\n\n def x(delegate, extra_args=None):\n return listParser(list_type, delegate, extra_args)\n return create\n", "role": "user" }, { "content": "simpleListFactory", "role": "assistant" } ]
def x(self, namelist, before=None, after=None): if len(namelist) > 1: def x(i): i.setSubDelegates(namelist[1:], before, after) self.setBeforeDelegate(namelist[0], set_sub) elif len(namelist) == 1: self.setDelegate(namelist[0], before, after)
setSubDelegates
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, namelist, before=None, after=None):\n if len(namelist) > 1:\n\n def x(i):\n i.setSubDelegates(namelist[1:], before, after)\n self.setBeforeDelegate(namelist[0], set_sub)\n elif len(namelist) == 1:\n self.setDelegate(namelist[0], before, after)\n", "role": "user" }, { "content": "setSubDelegates", "role": "assistant" } ]
def x(path): path = path.strip('/') list_path = path.split('/') sentinel = list_path.pop(0) return sentinel, list_path, path
split_path
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(path):\n path = path.strip('/')\n list_path = path.split('/')\n sentinel = list_path.pop(0)\n return sentinel, list_path, path\n", "role": "user" }, { "content": "split_path", "role": "assistant" } ]
def x(rename_like_method): def x(self, old_path, new_path): old_path, _old_path, old_sentinel = _split_path(old_path) new_path, _new_path, new_sentinel = _split_path(new_path) if old_sentinel != new_sentinel: raise ValueError( 'Does not know how to move things across contents manager mountpoints' ) else: sentinel = new_sentinel man = self.managers.get(sentinel, None) if man is not None: rename_meth = getattr(man, rename_like_method.__name__) sub = rename_meth('/'.join(_old_path), '/'.join(_new_path)) return sub else: return rename_meth(self, old_path, new_path) return _wrapper_method
path_dispatch_rename
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(rename_like_method):\n\n def x(self, old_path, new_path):\n old_path, _old_path, old_sentinel = _split_path(old_path)\n new_path, _new_path, new_sentinel = _split_path(new_path)\n if old_sentinel != new_sentinel:\n raise ValueError(\n 'Does not know how to move things across contents manager mountpoints'\n )\n else:\n sentinel = new_sentinel\n man = self.managers.get(sentinel, None)\n if man is not None:\n rename_meth = getattr(man, rename_like_method.__name__)\n sub = rename_meth('/'.join(_old_path), '/'.join(_new_path))\n return sub\n else:\n return rename_meth(self, old_path, new_path)\n return _wrapper_method\n", "role": "user" }, { "content": "path_dispatch_rename", "role": "assistant" } ]
def x(profile='default'): with jconfig(profile) as config: deact = True if not getattr(config.NotebookApp.contents_manager_class, 'startswith', lambda x: False)('jupyterdrive'): deact = False if 'gdrive' not in getattr(config.NotebookApp.tornado_settings, 'get', lambda _, __: '')('contents_js_source', ''): deact = False if deact: del config['NotebookApp']['tornado_settings']['contents_js_source'] del config['NotebookApp']['contents_manager_class']
deactivate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(profile='default'):\n with jconfig(profile) as config:\n deact = True\n if not getattr(config.NotebookApp.contents_manager_class,\n 'startswith', lambda x: False)('jupyterdrive'):\n deact = False\n if 'gdrive' not in getattr(config.NotebookApp.tornado_settings,\n 'get', lambda _, __: '')('contents_js_source', ''):\n deact = False\n if deact:\n del config['NotebookApp']['tornado_settings']['contents_js_source']\n del config['NotebookApp']['contents_manager_class']\n", "role": "user" }, { "content": "deactivate", "role": "assistant" } ]
def x(seq): if isinstance(seq, coral.DNA): material = 'dna' elif isinstance(seq, coral.RNA): material = 'rna' elif isinstance(seq, coral.Peptide): material = 'peptide' else: raise ValueError('Input was not a recognized coral.sequence object.') return material
sequence_type
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq):\n if isinstance(seq, coral.DNA):\n material = 'dna'\n elif isinstance(seq, coral.RNA):\n material = 'rna'\n elif isinstance(seq, coral.Peptide):\n material = 'peptide'\n else:\n raise ValueError('Input was not a recognized coral.sequence object.')\n return material\n", "role": "user" }, { "content": "sequence_type", "role": "assistant" } ]
def x(template, primer1, primer2, min_tm=50.0, min_primer_len=14): p1_matches = coral.analysis.anneal(template, primer1, min_tm=min_tm, min_len=min_primer_len) p2_matches = coral.analysis.anneal(template, primer2, min_tm=min_tm, min_len=min_primer_len) p1_binding_locations = [m[0] for strand in p1_matches for m in strand] p2_binding_locations = [m[0] for strand in p2_matches for m in strand] if len(p1_binding_locations) > 1: primer_msg = 'Multiple primer 1 binding locations: {}' raise PrimingError(primer_msg.format(p1_binding_locations)) if len(p2_binding_locations) > 1: primer_msg = 'Multiple primer 2 binding locations: {}' raise PrimingError(primer_msg.format(p2_binding_locations)) if not p1_binding_locations and not p2_binding_locations: raise PrimingError('Neither primer binds the template') if not p1_binding_locations: raise PrimingError('Primer 1 does not bind the template') if not p2_binding_locations: raise PrimingError('Primer 2 does not bind the template') tops = p1_matches[0] + p2_matches[0] bottoms = p1_matches[1] + p2_matches[1] if not tops: raise PrimingError("No primers bind the template's top strand.") if not bottoms: raise PrimingError("No primers bind the template's bottom strand.") if p1_matches[0]: fwd = primer1 rev = primer2 else: fwd = primer2 rev = primer1 fwd_3, fwd_len = tops[0] rev_3, rev_len = bottoms[0] fwd_5 = fwd_3 - fwd_len rev_5 = rev_3 - rev_len rev_3_top = len(template) - rev_3 rev_5_top = len(template) - rev_5 if rev_5_top > len(template): rev_5_top = rev_5_top - len(template) fwd_overhang = fwd.primer()[:-fwd_len] rev_overhang = rev.primer()[:-rev_len] if template.circular: if rev_3_top > fwd_3: if rev_3_top + rev_len > len(template): if fwd_5 - fwd_len < 0: preamplicon = template.linearize() before = template[fwd_5:] after = template[:rev_5_top] preamplicon = before + preamplicon + after else: preamplicon = template[fwd_5:] after = template[:rev_5_top] preamplicon = preamplicon + after elif fwd_5 - fwd_len < 0: before = template[fwd_5:] preamplicon = before + template[:rev_5_top] else: preamplicon = template[fwd_5:len(template) - rev_5] else: preamplicon_len = len(template) - fwd_5 + rev_5_top preamplicon = template.rotate(-fwd_5)[:preamplicon_len] elif rev_3_top < fwd_5 or fwd_3 > rev_5_top: raise PrimingError('Primers point away from one another.') else: preamplicon = template[fwd_5:len(template) - rev_5] amplicon = fwd_overhang.to_ds() + preamplicon + rev_overhang.to_ds( ).reverse_complement() return amplicon
pcr
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(template, primer1, primer2, min_tm=50.0, min_primer_len=14):\n p1_matches = coral.analysis.anneal(template, primer1, min_tm=min_tm,\n min_len=min_primer_len)\n p2_matches = coral.analysis.anneal(template, primer2, min_tm=min_tm,\n min_len=min_primer_len)\n p1_binding_locations = [m[0] for strand in p1_matches for m in strand]\n p2_binding_locations = [m[0] for strand in p2_matches for m in strand]\n if len(p1_binding_locations) > 1:\n primer_msg = 'Multiple primer 1 binding locations: {}'\n raise PrimingError(primer_msg.format(p1_binding_locations))\n if len(p2_binding_locations) > 1:\n primer_msg = 'Multiple primer 2 binding locations: {}'\n raise PrimingError(primer_msg.format(p2_binding_locations))\n if not p1_binding_locations and not p2_binding_locations:\n raise PrimingError('Neither primer binds the template')\n if not p1_binding_locations:\n raise PrimingError('Primer 1 does not bind the template')\n if not p2_binding_locations:\n raise PrimingError('Primer 2 does not bind the template')\n tops = p1_matches[0] + p2_matches[0]\n bottoms = p1_matches[1] + p2_matches[1]\n if not tops:\n raise PrimingError(\"No primers bind the template's top strand.\")\n if not bottoms:\n raise PrimingError(\"No primers bind the template's bottom strand.\")\n if p1_matches[0]:\n fwd = primer1\n rev = primer2\n else:\n fwd = primer2\n rev = primer1\n fwd_3, fwd_len = tops[0]\n rev_3, rev_len = bottoms[0]\n fwd_5 = fwd_3 - fwd_len\n rev_5 = rev_3 - rev_len\n rev_3_top = len(template) - rev_3\n rev_5_top = len(template) - rev_5\n if rev_5_top > len(template):\n rev_5_top = rev_5_top - len(template)\n fwd_overhang = fwd.primer()[:-fwd_len]\n rev_overhang = rev.primer()[:-rev_len]\n if template.circular:\n if rev_3_top > fwd_3:\n if rev_3_top + rev_len > len(template):\n if fwd_5 - fwd_len < 0:\n preamplicon = template.linearize()\n before = template[fwd_5:]\n after = template[:rev_5_top]\n preamplicon = before + preamplicon + after\n else:\n preamplicon = template[fwd_5:]\n after = template[:rev_5_top]\n preamplicon = preamplicon + after\n elif fwd_5 - fwd_len < 0:\n before = template[fwd_5:]\n preamplicon = before + template[:rev_5_top]\n else:\n preamplicon = template[fwd_5:len(template) - rev_5]\n else:\n preamplicon_len = len(template) - fwd_5 + rev_5_top\n preamplicon = template.rotate(-fwd_5)[:preamplicon_len]\n elif rev_3_top < fwd_5 or fwd_3 > rev_5_top:\n raise PrimingError('Primers point away from one another.')\n else:\n preamplicon = template[fwd_5:len(template) - rev_5]\n amplicon = fwd_overhang.to_ds() + preamplicon + rev_overhang.to_ds(\n ).reverse_complement()\n return amplicon\n", "role": "user" }, { "content": "pcr", "role": "assistant" } ]
def x(dna, restriction_enzyme): pattern = restriction_enzyme.recognition_site located = dna.locate(pattern) if not located[0] and not located[1]: return [dna] pattern_len = len(pattern) r_indices = [(len(dna) - index - pattern_len) for index in located[1]] if pattern.is_palindrome(): r_indices = [index for index in r_indices if index not in located[0]] cut_sites = sorted(located[0] + r_indices) current = [dna] for cut_site in cut_sites[::-1]: new = _cut(current, cut_site, restriction_enzyme) current.append(new[1]) current.append(new[0]) current.reverse() if dna.circular: current[0] = current.pop() + current[0] return current
digest
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(dna, restriction_enzyme):\n pattern = restriction_enzyme.recognition_site\n located = dna.locate(pattern)\n if not located[0] and not located[1]:\n return [dna]\n pattern_len = len(pattern)\n r_indices = [(len(dna) - index - pattern_len) for index in located[1]]\n if pattern.is_palindrome():\n r_indices = [index for index in r_indices if index not in located[0]]\n cut_sites = sorted(located[0] + r_indices)\n current = [dna]\n for cut_site in cut_sites[::-1]:\n new = _cut(current, cut_site, restriction_enzyme)\n current.append(new[1])\n current.append(new[0])\n current.reverse()\n if dna.circular:\n current[0] = current.pop() + current[0]\n return current\n", "role": "user" }, { "content": "digest", "role": "assistant" } ]
def x(dna, index, restriction_enzyme): cut_site = restriction_enzyme.cut_site top_cut = index + cut_site[0] bottom_cut = index + cut_site[1] to_cut = dna.pop() max_cut = max(top_cut, bottom_cut) min_cut = min(top_cut, bottom_cut) left = to_cut[:max_cut] right = to_cut[min_cut:] diff = top_cut - bottom_cut if not diff: pass elif diff > 0: left = coral.reaction.five_resect(left.flip(), diff).flip() right = coral.reaction.five_resect(right, diff) else: left = coral.reaction.three_resect(left, abs(diff)) right = coral.reaction.three_resect(right.flip(), abs(diff)).flip() return [left, right]
cut
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(dna, index, restriction_enzyme):\n cut_site = restriction_enzyme.cut_site\n top_cut = index + cut_site[0]\n bottom_cut = index + cut_site[1]\n to_cut = dna.pop()\n max_cut = max(top_cut, bottom_cut)\n min_cut = min(top_cut, bottom_cut)\n left = to_cut[:max_cut]\n right = to_cut[min_cut:]\n diff = top_cut - bottom_cut\n if not diff:\n pass\n elif diff > 0:\n left = coral.reaction.five_resect(left.flip(), diff).flip()\n right = coral.reaction.five_resect(right, diff)\n else:\n left = coral.reaction.three_resect(left, abs(diff))\n right = coral.reaction.three_resect(right.flip(), abs(diff)).flip()\n return [left, right]\n", "role": "user" }, { "content": "cut", "role": "assistant" } ]
def x(directory, filename): print(filename) os.chdir(directory) subprocess.Popen(['ipython', 'nbconvert', '--to', 'rst', filename], stdout=subprocess.PIPE, stderr=subprocess.PIPE, cwd=directory)
ipynb_to_rst
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(directory, filename):\n print(filename)\n os.chdir(directory)\n subprocess.Popen(['ipython', 'nbconvert', '--to', 'rst', filename],\n stdout=subprocess.PIPE, stderr=subprocess.PIPE, cwd=directory)\n", "role": "user" }, { "content": "ipynb_to_rst", "role": "assistant" } ]
def x(directory): for root, subfolders, files in os.walk(os.path.abspath(directory)): for f in files: if '.ipynb_checkpoints' not in root: if f.endswith('ipynb'): ipynb_to_rst(root, f)
convert_ipynbs
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(directory):\n for root, subfolders, files in os.walk(os.path.abspath(directory)):\n for f in files:\n if '.ipynb_checkpoints' not in root:\n if f.endswith('ipynb'):\n ipynb_to_rst(root, f)\n", "role": "user" }, { "content": "convert_ipynbs", "role": "assistant" } ]
def x(dna, window_size, context_len, step): window_start_ceiling = len(dna) - context_len - window_size window_starts = range(context_len - 1, window_start_ceiling, step) window_ends = [(start + window_size) for start in window_starts] l_starts = [(step * i) for i in range(len(window_starts))] l_seqs = [dna[start:end] for start, end in zip(l_starts, window_ends)] r_ends = [(x + window_size + context_len) for x in window_starts] r_seqs = [dna[start:end].reverse_complement() for start, end in zip( window_starts, r_ends)] seqs = l_seqs + r_seqs pairs_run = coral.analysis.nupack_multi(seqs, 'dna', 'pairs', {'index': 0}) pairs = [run[-window_size:] for run in pairs_run] lr_scores = [(sum(pair) / len(pair)) for pair in pairs] l_scores = lr_scores[0:len(seqs) / 2] r_scores = lr_scores[len(seqs) / 2:] scores = [((l + r) / 2) for l, r in zip(l_scores, r_scores)] summary = zip(window_starts, window_ends, scores) return summary
context_walk
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(dna, window_size, context_len, step):\n window_start_ceiling = len(dna) - context_len - window_size\n window_starts = range(context_len - 1, window_start_ceiling, step)\n window_ends = [(start + window_size) for start in window_starts]\n l_starts = [(step * i) for i in range(len(window_starts))]\n l_seqs = [dna[start:end] for start, end in zip(l_starts, window_ends)]\n r_ends = [(x + window_size + context_len) for x in window_starts]\n r_seqs = [dna[start:end].reverse_complement() for start, end in zip(\n window_starts, r_ends)]\n seqs = l_seqs + r_seqs\n pairs_run = coral.analysis.nupack_multi(seqs, 'dna', 'pairs', {'index': 0})\n pairs = [run[-window_size:] for run in pairs_run]\n lr_scores = [(sum(pair) / len(pair)) for pair in pairs]\n l_scores = lr_scores[0:len(seqs) / 2]\n r_scores = lr_scores[len(seqs) / 2:]\n scores = [((l + r) / 2) for l, r in zip(l_scores, r_scores)]\n summary = zip(window_starts, window_ends, scores)\n return summary\n", "role": "user" }, { "content": "context_walk", "role": "assistant" } ]
def x(self, window_size=60, context_len=90, step=10): self.walked = _context_walk(self.template, window_size, context_len, step) self.core_starts, self.core_ends, self.scores = zip(*self.walked) return self.walked
windows
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, window_size=60, context_len=90, step=10):\n self.walked = _context_walk(self.template, window_size, context_len, step)\n self.core_starts, self.core_ends, self.scores = zip(*self.walked)\n return self.walked\n", "role": "user" }, { "content": "windows", "role": "assistant" } ]
def x(self): try: from matplotlib import pylab except ImportError: raise ImportError('Optional dependency matplotlib not installed.') if self.walked: fig = pylab.figure() ax1 = fig.add_subplot(111) ax1.plot(self.core_starts, self.scores, 'bo-') pylab.xlabel('Core sequence start position (base pairs).') pylab.ylabel('Score - Probability of being unbound.') pylab.show() else: raise Exception("Run calculate() first so there's data to plot!")
plot
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n try:\n from matplotlib import pylab\n except ImportError:\n raise ImportError('Optional dependency matplotlib not installed.')\n if self.walked:\n fig = pylab.figure()\n ax1 = fig.add_subplot(111)\n ax1.plot(self.core_starts, self.scores, 'bo-')\n pylab.xlabel('Core sequence start position (base pairs).')\n pylab.ylabel('Score - Probability of being unbound.')\n pylab.show()\n else:\n raise Exception(\"Run calculate() first so there's data to plot!\")\n", "role": "user" }, { "content": "plot", "role": "assistant" } ]
def x(template, primer, min_tm=50.0, min_len=10): if len(primer) < min_len: msg = 'Primer length is shorter than min_len argument.' raise PrimerLengthError(msg) if len(template) < min_len: msg = 'Template is shorter than the min_len argument.' raise AnnealError(msg) def x(base, location_length, anneal_seq): location, length = location_length if location == 0: return location_length location_next = location - 1 length_next = length + 1 seq = base[location_next:location_next + length_next] if seq == anneal_seq: return location_next, length_next else: return location_length def x(base, location_length, anneal_seq): base_len = len(base) location, length = location_length if location == 0: location_next = base_len - 1 else: location_next = location - 1 length_next = length + 1 if location_next + length_next > base_len: upstream = base[location_next:] downstream = base[:length_next - (base_len - location_next)] seq = upstream + downstream else: seq = base[location_next:location_next + length_next] if seq == anneal_seq: return location_next, length_next else: return location_length if template.circular: update_fun = update_match_circular else: update_fun = update_match_linear max_len = min(len(template), len(primer)) primer_dna = primer.to_ds() anneal_len = min_len anneal_seq = primer_dna[-anneal_len:] binding_data = [] for k, strand_locs in enumerate(template.locate(anneal_seq)): matches = zip(strand_locs, [min_len] * len(strand_locs)) for i in range(anneal_len + 1, max_len + 1): anneal_seq = primer_dna[-i:] for j, match in enumerate(matches): if k == 0: matches[j] = update_fun(template.top, match, anneal_seq) else: matches[j] = update_fun(template.bottom, match, anneal_seq) binding_data.append(matches) for i in reversed(range(len(primer_dna) + 1)): min_len = i + 1 tm = primer_dna[-min_len:].tm() if tm < min_tm: break for strand in binding_data: for i in reversed(range(len(strand))): if strand[i][1] < min_len: strand.pop(i) for strand in binding_data: for i, match in enumerate(strand): length = match[1] loc_new = match[0] + length if loc_new > len(template): loc_new = loc_new - len(template) strand[i] = [loc_new, length] return binding_data
anneal
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(template, primer, min_tm=50.0, min_len=10):\n if len(primer) < min_len:\n msg = 'Primer length is shorter than min_len argument.'\n raise PrimerLengthError(msg)\n if len(template) < min_len:\n msg = 'Template is shorter than the min_len argument.'\n raise AnnealError(msg)\n\n def x(base, location_length, anneal_seq):\n location, length = location_length\n if location == 0:\n return location_length\n location_next = location - 1\n length_next = length + 1\n seq = base[location_next:location_next + length_next]\n if seq == anneal_seq:\n return location_next, length_next\n else:\n return location_length\n\n def x(base, location_length, anneal_seq):\n base_len = len(base)\n location, length = location_length\n if location == 0:\n location_next = base_len - 1\n else:\n location_next = location - 1\n length_next = length + 1\n if location_next + length_next > base_len:\n upstream = base[location_next:]\n downstream = base[:length_next - (base_len - location_next)]\n seq = upstream + downstream\n else:\n seq = base[location_next:location_next + length_next]\n if seq == anneal_seq:\n return location_next, length_next\n else:\n return location_length\n if template.circular:\n update_fun = update_match_circular\n else:\n update_fun = update_match_linear\n max_len = min(len(template), len(primer))\n primer_dna = primer.to_ds()\n anneal_len = min_len\n anneal_seq = primer_dna[-anneal_len:]\n binding_data = []\n for k, strand_locs in enumerate(template.locate(anneal_seq)):\n matches = zip(strand_locs, [min_len] * len(strand_locs))\n for i in range(anneal_len + 1, max_len + 1):\n anneal_seq = primer_dna[-i:]\n for j, match in enumerate(matches):\n if k == 0:\n matches[j] = update_fun(template.top, match, anneal_seq)\n else:\n matches[j] = update_fun(template.bottom, match, anneal_seq)\n binding_data.append(matches)\n for i in reversed(range(len(primer_dna) + 1)):\n min_len = i + 1\n tm = primer_dna[-min_len:].tm()\n if tm < min_tm:\n break\n for strand in binding_data:\n for i in reversed(range(len(strand))):\n if strand[i][1] < min_len:\n strand.pop(i)\n for strand in binding_data:\n for i, match in enumerate(strand):\n length = match[1]\n loc_new = match[0] + length\n if loc_new > len(template):\n loc_new = loc_new - len(template)\n strand[i] = [loc_new, length]\n return binding_data\n", "role": "user" }, { "content": "anneal", "role": "assistant" } ]
def x(dna, tm=65, min_len=10, tm_undershoot=1, tm_overshoot=3, end_gc=False, tm_parameters='cloning', overhang=None, structure=False): seq_tm = coral.analysis.tm(dna, parameters=tm_parameters) if seq_tm < tm - tm_undershoot: msg = 'Input sequence Tm is lower than primer Tm setting' raise ValueError(msg) dna = dna[0:90] primers_tms = [] last_tm = 0 bases = min_len while last_tm <= tm + tm_overshoot and bases != len(dna): next_primer = dna[0:bases] last_tm = coral.analysis.tm(next_primer, parameters=tm_parameters) primers_tms.append((next_primer, last_tm)) bases += 1 primers_tms = [(primer, melt) for primer, melt in primers_tms if melt >= tm - tm_undershoot] if end_gc: primers_tms = [pair for pair in primers_tms if pair[0][-1] == coral .DNA('C') or pair[0][-1] == coral.DNA('G')] if not primers_tms: raise ValueError('No primers could be generated using these settings') tm_diffs = [abs(melt - tm) for primer, melt in primers_tms] best_index = tm_diffs.index(min(tm_diffs)) best_primer, best_tm = primers_tms[best_index] best_primer = best_primer.top if overhang: overhang = overhang.top output_primer = coral.Primer(best_primer, best_tm, overhang=overhang) def x(primer): nupack = coral.analysis.Nupack(primer.primer()) pairs = nupack.pairs(0) anneal_len = len(primer.anneal) pairs_mean = sum(pairs[-anneal_len:]) / anneal_len if pairs_mean < 0.5: warnings.warn('High probability structure', Warning) return pairs_mean if structure: _structure(output_primer) return output_primer
primer
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(dna, tm=65, min_len=10, tm_undershoot=1, tm_overshoot=3, end_gc=False,\n tm_parameters='cloning', overhang=None, structure=False):\n seq_tm = coral.analysis.tm(dna, parameters=tm_parameters)\n if seq_tm < tm - tm_undershoot:\n msg = 'Input sequence Tm is lower than primer Tm setting'\n raise ValueError(msg)\n dna = dna[0:90]\n primers_tms = []\n last_tm = 0\n bases = min_len\n while last_tm <= tm + tm_overshoot and bases != len(dna):\n next_primer = dna[0:bases]\n last_tm = coral.analysis.tm(next_primer, parameters=tm_parameters)\n primers_tms.append((next_primer, last_tm))\n bases += 1\n primers_tms = [(primer, melt) for primer, melt in primers_tms if melt >=\n tm - tm_undershoot]\n if end_gc:\n primers_tms = [pair for pair in primers_tms if pair[0][-1] == coral\n .DNA('C') or pair[0][-1] == coral.DNA('G')]\n if not primers_tms:\n raise ValueError('No primers could be generated using these settings')\n tm_diffs = [abs(melt - tm) for primer, melt in primers_tms]\n best_index = tm_diffs.index(min(tm_diffs))\n best_primer, best_tm = primers_tms[best_index]\n best_primer = best_primer.top\n if overhang:\n overhang = overhang.top\n output_primer = coral.Primer(best_primer, best_tm, overhang=overhang)\n\n def x(primer):\n nupack = coral.analysis.Nupack(primer.primer())\n pairs = nupack.pairs(0)\n anneal_len = len(primer.anneal)\n pairs_mean = sum(pairs[-anneal_len:]) / anneal_len\n if pairs_mean < 0.5:\n warnings.warn('High probability structure', Warning)\n return pairs_mean\n if structure:\n _structure(output_primer)\n return output_primer\n", "role": "user" }, { "content": "primer", "role": "assistant" } ]
def x(dna, tm=65, min_len=10, tm_undershoot=1, tm_overshoot=3, end_gc=False, tm_parameters='cloning', overhangs=None, structure=False): if not overhangs: overhangs = [None, None] templates = [dna, dna.reverse_complement()] primer_list = [] for template, overhang in zip(templates, overhangs): primer_i = primer(template, tm=tm, min_len=min_len, tm_undershoot= tm_undershoot, tm_overshoot=tm_overshoot, end_gc=end_gc, tm_parameters=tm_parameters, overhang=overhang, structure=structure ) primer_list.append(primer_i) return primer_list
primers
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(dna, tm=65, min_len=10, tm_undershoot=1, tm_overshoot=3, end_gc=False,\n tm_parameters='cloning', overhangs=None, structure=False):\n if not overhangs:\n overhangs = [None, None]\n templates = [dna, dna.reverse_complement()]\n primer_list = []\n for template, overhang in zip(templates, overhangs):\n primer_i = primer(template, tm=tm, min_len=min_len, tm_undershoot=\n tm_undershoot, tm_overshoot=tm_overshoot, end_gc=end_gc,\n tm_parameters=tm_parameters, overhang=overhang, structure=structure\n )\n primer_list.append(primer_i)\n return primer_list\n", "role": "user" }, { "content": "primers", "role": "assistant" } ]
def x(dna_list, reference=None): match_3 = [bind_unique(seq, dna_list, right=True) for i, seq in enumerate(dna_list)] match_5 = [bind_unique(seq, dna_list, right=False) for i, seq in enumerate(dna_list)] zipped = zip(match_5, match_3) for i, oligo_match in enumerate(zipped): if not any(oligo_match): error = 'Oligo {} has no binding partners.'.format(i + 1) raise AssemblyError(error) ends = [] for i, (five, three) in enumerate(zipped): if five is None and three is not None: ends.append(i) if len(ends) > 2: raise AssemblyError('Too many (>2) end oligos found.') if len(ends) < 2: raise AssemblyError('Not enough (<2) end oligos found.') last_index = ends[0] assembly = dna_list[last_index] flip = True for i in range(len(dna_list) - 1): if flip: current_index, matchlen = zipped[last_index][1] next_oligo = dna_list[current_index].to_ds() next_oligo = next_oligo.reverse_complement() flip = False else: current_index, matchlen = zipped[last_index][0] next_oligo = dna_list[current_index].to_ds() flip = True next_oligo = next_oligo[matchlen - 1:] assembly += next_oligo last_index = current_index if reference: if assembly == reference or assembly == reference.reverse_complement(): return assembly else: raise AssemblyError('Assembly did not match reference') else: return assembly
assemble_oligos
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(dna_list, reference=None):\n match_3 = [bind_unique(seq, dna_list, right=True) for i, seq in\n enumerate(dna_list)]\n match_5 = [bind_unique(seq, dna_list, right=False) for i, seq in\n enumerate(dna_list)]\n zipped = zip(match_5, match_3)\n for i, oligo_match in enumerate(zipped):\n if not any(oligo_match):\n error = 'Oligo {} has no binding partners.'.format(i + 1)\n raise AssemblyError(error)\n ends = []\n for i, (five, three) in enumerate(zipped):\n if five is None and three is not None:\n ends.append(i)\n if len(ends) > 2:\n raise AssemblyError('Too many (>2) end oligos found.')\n if len(ends) < 2:\n raise AssemblyError('Not enough (<2) end oligos found.')\n last_index = ends[0]\n assembly = dna_list[last_index]\n flip = True\n for i in range(len(dna_list) - 1):\n if flip:\n current_index, matchlen = zipped[last_index][1]\n next_oligo = dna_list[current_index].to_ds()\n next_oligo = next_oligo.reverse_complement()\n flip = False\n else:\n current_index, matchlen = zipped[last_index][0]\n next_oligo = dna_list[current_index].to_ds()\n flip = True\n next_oligo = next_oligo[matchlen - 1:]\n assembly += next_oligo\n last_index = current_index\n if reference:\n if assembly == reference or assembly == reference.reverse_complement():\n return assembly\n else:\n raise AssemblyError('Assembly did not match reference')\n else:\n return assembly\n", "role": "user" }, { "content": "assemble_oligos", "role": "assistant" } ]
def x(reference, query_list, min_overlap=12, right=True): size = min_overlap found = [] rev_query = [seq.reverse_complement() for seq in query_list] while not found and not size > len(reference): for i, seq in enumerate(rev_query): if right: if reference.endswith(seq[:size]): found.append(i) elif reference.startswith(seq[-size:]): found.append(i) size += 1 if len(found) > 1: raise AssemblyError('Ambiguous oligo binding') if not found: return None else: return found[0], size
bind_unique
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(reference, query_list, min_overlap=12, right=True):\n size = min_overlap\n found = []\n rev_query = [seq.reverse_complement() for seq in query_list]\n while not found and not size > len(reference):\n for i, seq in enumerate(rev_query):\n if right:\n if reference.endswith(seq[:size]):\n found.append(i)\n elif reference.startswith(seq[-size:]):\n found.append(i)\n size += 1\n if len(found) > 1:\n raise AssemblyError('Ambiguous oligo binding')\n if not found:\n return None\n else:\n return found[0], size\n", "role": "user" }, { "content": "bind_unique", "role": "assistant" } ]
def x(self): report = [] for result in self.aligned_results: report.append(self._analyze_single(self.aligned_reference, result)) return report
nonmatches
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n report = []\n for result in self.aligned_results:\n report.append(self._analyze_single(self.aligned_reference, result))\n return report\n", "role": "user" }, { "content": "nonmatches", "role": "assistant" } ]
def x(self): import matplotlib.pyplot as plt import matplotlib.patches as patches n = len(self.results) nbases = len(self.aligned_reference) barheight = 0.4 figheight = 3 + 3 * (n - 1) fig = plt.figure(figsize=(9, figheight)) ax1 = fig.add_subplot(111) ax1.add_patch(patches.Rectangle((0, 0), nbases, barheight, facecolor= 'black')) for i, report in enumerate(self.nonmatches()): j = i + 1 start, stop = report['coverage'] patch = patches.Rectangle((start, j), stop - start, barheight, facecolor='darkgray') ax1.add_patch(patch) plt.vlines(report['mismatches'], j, j + barheight, colors='b') plt.vlines(report['insertions'], j, j + barheight, colors='r') deletions = [] crange = range(*report['coverage']) deletions = [idx for idx in report['deletions'] if idx in crange] plt.vlines(deletions, j, j + barheight, colors='g') ax1.set_xlim((0, nbases)) ax1.set_ylim((-0.3, n + 1)) ax1.set_yticks([(i + barheight / 2) for i in range(n + 1)]) ax1.set_yticklabels(['Reference'] + self.names) mismatch_patch = patches.Patch(color='blue', label='Mismatch') insertion_patch = patches.Patch(color='red', label='Insertion') deletion_patch = patches.Patch(color='green', label='Deletion') plt.legend(handles=[mismatch_patch, insertion_patch, deletion_patch], loc=1, ncol=3, mode='expand', borderaxespad=0.0) plt.show()
plot
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n import matplotlib.pyplot as plt\n import matplotlib.patches as patches\n n = len(self.results)\n nbases = len(self.aligned_reference)\n barheight = 0.4\n figheight = 3 + 3 * (n - 1)\n fig = plt.figure(figsize=(9, figheight))\n ax1 = fig.add_subplot(111)\n ax1.add_patch(patches.Rectangle((0, 0), nbases, barheight, facecolor=\n 'black'))\n for i, report in enumerate(self.nonmatches()):\n j = i + 1\n start, stop = report['coverage']\n patch = patches.Rectangle((start, j), stop - start, barheight,\n facecolor='darkgray')\n ax1.add_patch(patch)\n plt.vlines(report['mismatches'], j, j + barheight, colors='b')\n plt.vlines(report['insertions'], j, j + barheight, colors='r')\n deletions = []\n crange = range(*report['coverage'])\n deletions = [idx for idx in report['deletions'] if idx in crange]\n plt.vlines(deletions, j, j + barheight, colors='g')\n ax1.set_xlim((0, nbases))\n ax1.set_ylim((-0.3, n + 1))\n ax1.set_yticks([(i + barheight / 2) for i in range(n + 1)])\n ax1.set_yticklabels(['Reference'] + self.names)\n mismatch_patch = patches.Patch(color='blue', label='Mismatch')\n insertion_patch = patches.Patch(color='red', label='Insertion')\n deletion_patch = patches.Patch(color='green', label='Deletion')\n plt.legend(handles=[mismatch_patch, insertion_patch, deletion_patch],\n loc=1, ncol=3, mode='expand', borderaxespad=0.0)\n plt.show()\n", "role": "user" }, { "content": "plot", "role": "assistant" } ]
def x(self, reference, result): reference_str = str(reference) result_str = str(result) report = {'mismatches': [], 'insertions': [], 'deletions': []} for i, (ref, res) in enumerate(zip(reference_str, result_str)): if ref != res: if ref == '-': report['insertions'].append(i) if res == '-': report['deletions'].append(i) else: report['mismatches'].append(i) start = len(result_str) - len(result_str.lstrip('-')) stop = len(result_str) - len(result_str.rstrip('-')) report['coverage'] = [start, stop] return report
analyze_single
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, reference, result):\n reference_str = str(reference)\n result_str = str(result)\n report = {'mismatches': [], 'insertions': [], 'deletions': []}\n for i, (ref, res) in enumerate(zip(reference_str, result_str)):\n if ref != res:\n if ref == '-':\n report['insertions'].append(i)\n if res == '-':\n report['deletions'].append(i)\n else:\n report['mismatches'].append(i)\n start = len(result_str) - len(result_str.lstrip('-'))\n stop = len(result_str) - len(result_str.rstrip('-'))\n report['coverage'] = [start, stop]\n return report\n", "role": "user" }, { "content": "analyze_single", "role": "assistant" } ]
def x(self): for i, result in enumerate(self.results): largest = max(str(result).split('N'), key=len) start = result.locate(largest)[0][0] stop = start + len(largest) if start != stop: self.results[i] = self.results[i][start:stop]
remove_n
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n for i, result in enumerate(self.results):\n largest = max(str(result).split('N'), key=len)\n start = result.locate(largest)[0][0]\n stop = start + len(largest)\n if start != stop:\n self.results[i] = self.results[i][start:stop]\n", "role": "user" }, { "content": "remove_n", "role": "assistant" } ]
def x(n): return coral.DNA(''.join([random.choice('ATGC') for i in range(n)]))
random_dna
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(n):\n return coral.DNA(''.join([random.choice('ATGC') for i in range(n)]))\n", "role": "user" }, { "content": "random_dna", "role": "assistant" } ]
def x(peptide, frequency_cutoff=0.0, weighted=False, table=None): if table is None: table = CODON_FREQ_BY_AA['sc'] new_table = _cutoff(table, frequency_cutoff) rna = '' for amino_acid in str(peptide): codons = new_table[amino_acid.upper()] if not codons: raise ValueError('No {} codons at freq cutoff'.format(amino_acid)) if weighted: cumsum = [] running_sum = 0 for codon, frequency in codons.iteritems(): running_sum += frequency cumsum.append(running_sum) random_num = random.uniform(0, max(cumsum)) for codon, value in zip(codons, cumsum): if value > random_num: selection = codon break else: selection = random.choice(codons.keys()) rna += selection return coral.RNA(rna)
random_codons
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(peptide, frequency_cutoff=0.0, weighted=False, table=None):\n if table is None:\n table = CODON_FREQ_BY_AA['sc']\n new_table = _cutoff(table, frequency_cutoff)\n rna = ''\n for amino_acid in str(peptide):\n codons = new_table[amino_acid.upper()]\n if not codons:\n raise ValueError('No {} codons at freq cutoff'.format(amino_acid))\n if weighted:\n cumsum = []\n running_sum = 0\n for codon, frequency in codons.iteritems():\n running_sum += frequency\n cumsum.append(running_sum)\n random_num = random.uniform(0, max(cumsum))\n for codon, value in zip(codons, cumsum):\n if value > random_num:\n selection = codon\n break\n else:\n selection = random.choice(codons.keys())\n rna += selection\n return coral.RNA(rna)\n", "role": "user" }, { "content": "random_codons", "role": "assistant" } ]
def x(table, frequency_cutoff): new_table = {} for amino_acid, codons in table.iteritems(): average_cutoff = frequency_cutoff * sum(codons.values()) / len(codons) new_table[amino_acid] = {} for codon, frequency in codons.iteritems(): if frequency > average_cutoff: new_table[amino_acid][codon] = frequency return new_table
cutoff
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(table, frequency_cutoff):\n new_table = {}\n for amino_acid, codons in table.iteritems():\n average_cutoff = frequency_cutoff * sum(codons.values()) / len(codons)\n new_table[amino_acid] = {}\n for codon, frequency in codons.iteritems():\n if frequency > average_cutoff:\n new_table[amino_acid][codon] = frequency\n return new_table\n", "role": "user" }, { "content": "cutoff", "role": "assistant" } ]
def x(self, strand1, strand2, temp=37.0, dangles=2, nolp=False, nogu=False, noclosinggu=False, constraints=None, canonicalbponly=False, partition=- 1, pfscale=None, gquad=False): cmd_args = [] cmd_kwargs = {'--temp=': str(temp)} cmd_kwargs['--dangles='] = dangles if nolp: cmd_args.append('--noLP') if nogu: cmd_args.append('--noGU') if noclosinggu: cmd_args.append('--noClosingGU') if constraints is not None: cmd_args.append('--constraint') if canonicalbponly: cmd_args.append('--canonicalBPonly') if partition: cmd_args.append('--partfunc') if pfscale is not None: cmd_kwargs['pfScale'] = float(pfscale) if gquad: cmd_args.append('--gquad') inputs = ['>strands\n{}&{}'.format(str(strand1), str(strand2))] if constraints is not None: inputs.append(constraints) rnafold_output = self._run('RNAcofold', inputs, cmd_args, cmd_kwargs) output = {} lines = rnafold_output.splitlines() lines.pop(0) lines.pop(0) line3 = lines.pop(0) output['dotbracket'] = self._lparse(line3, '^(.*) \\(') output['mfe'] = float(self._lparse(line3, ' \\((.*)\\)$')) if partition: line4 = lines.pop(0) output['coarse'] = self._lparse(line4, '^(.*) \\[') output['ensemble'] = float(self._lparse(line4, ' \\[(.*)\\]$')) line5 = lines.pop(0) """ensemble (.*),""" output['frequency'] = float(self._lparse(line5, 'ensemble (.*),')) output['deltaG'] = float(self._lparse(line5, 'binding=(.*)$')) with open(os.path.join(self._tempdir, 'strands_dp.ps')) as f: pattern = 'start of base pair probability data\n(.*)\nshowpage' dotplot_file = f.read() dotplot_data = re.search(pattern, dotplot_file, flags=re.DOTALL ).group(1).split('\n') dim = len(strand1) + len(strand2) ensemble_probs = np.zeros((dim, dim)) optimal_probs = np.zeros((dim, dim)) for point in dotplot_data: point_split = point.split(' ') i = int(point_split[0]) - 1 j = int(point_split[1]) - 1 sqprob = float(point_split[2]) probtype = point_split[3] if probtype == 'ubox': ensemble_probs[i][j] = sqprob ** 2 else: optimal_probs[i][j] = sqprob ** 2 output['ensemble_matrix'] = ensemble_probs output['optimal_matrix'] = optimal_probs return output
cofold
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strand1, strand2, temp=37.0, dangles=2, nolp=False, nogu=False,\n noclosinggu=False, constraints=None, canonicalbponly=False, partition=-\n 1, pfscale=None, gquad=False):\n cmd_args = []\n cmd_kwargs = {'--temp=': str(temp)}\n cmd_kwargs['--dangles='] = dangles\n if nolp:\n cmd_args.append('--noLP')\n if nogu:\n cmd_args.append('--noGU')\n if noclosinggu:\n cmd_args.append('--noClosingGU')\n if constraints is not None:\n cmd_args.append('--constraint')\n if canonicalbponly:\n cmd_args.append('--canonicalBPonly')\n if partition:\n cmd_args.append('--partfunc')\n if pfscale is not None:\n cmd_kwargs['pfScale'] = float(pfscale)\n if gquad:\n cmd_args.append('--gquad')\n inputs = ['>strands\\n{}&{}'.format(str(strand1), str(strand2))]\n if constraints is not None:\n inputs.append(constraints)\n rnafold_output = self._run('RNAcofold', inputs, cmd_args, cmd_kwargs)\n output = {}\n lines = rnafold_output.splitlines()\n lines.pop(0)\n lines.pop(0)\n line3 = lines.pop(0)\n output['dotbracket'] = self._lparse(line3, '^(.*) \\\\(')\n output['mfe'] = float(self._lparse(line3, ' \\\\((.*)\\\\)$'))\n if partition:\n line4 = lines.pop(0)\n output['coarse'] = self._lparse(line4, '^(.*) \\\\[')\n output['ensemble'] = float(self._lparse(line4, ' \\\\[(.*)\\\\]$'))\n line5 = lines.pop(0)\n \"\"\"ensemble (.*),\"\"\"\n output['frequency'] = float(self._lparse(line5, 'ensemble (.*),'))\n output['deltaG'] = float(self._lparse(line5, 'binding=(.*)$'))\n with open(os.path.join(self._tempdir, 'strands_dp.ps')) as f:\n pattern = 'start of base pair probability data\\n(.*)\\nshowpage'\n dotplot_file = f.read()\n dotplot_data = re.search(pattern, dotplot_file, flags=re.DOTALL\n ).group(1).split('\\n')\n dim = len(strand1) + len(strand2)\n ensemble_probs = np.zeros((dim, dim))\n optimal_probs = np.zeros((dim, dim))\n for point in dotplot_data:\n point_split = point.split(' ')\n i = int(point_split[0]) - 1\n j = int(point_split[1]) - 1\n sqprob = float(point_split[2])\n probtype = point_split[3]\n if probtype == 'ubox':\n ensemble_probs[i][j] = sqprob ** 2\n else:\n optimal_probs[i][j] = sqprob ** 2\n output['ensemble_matrix'] = ensemble_probs\n output['optimal_matrix'] = optimal_probs\n return output\n", "role": "user" }, { "content": "cofold", "role": "assistant" } ]
def x(self, strand, temp=37.0, dangles=2, nolp=False, nogu=False, noclosinggu=False, constraints=None, canonicalbponly=False, partition= False, pfscale=None, imfeelinglucky=False, gquad=False): cmd_args = [] cmd_kwargs = {'--temp=': str(temp)} cmd_kwargs['--dangles='] = dangles if nolp: cmd_args.append('--noLP') if nogu: cmd_args.append('--noGU') if noclosinggu: cmd_args.append('--noClosingGU') if constraints is not None: cmd_args.append('--constraint') if canonicalbponly: cmd_args.append('--canonicalBPonly') if partition: cmd_args.append('--partfunc') if pfscale is not None: cmd_kwargs['pfScale'] = float(pfscale) if gquad: cmd_args.append('--gquad') inputs = [str(strand)] if constraints is not None: inputs.append(constraints) if strand.circular: cmd_args.append('--circ') rnafold_output = self._run('RNAfold', inputs, cmd_args, cmd_kwargs) output = {} lines = rnafold_output.splitlines() lines.pop(0) line2 = lines.pop(0) output['dotbracket'] = self._lparse(line2, '^(.*) \\(') output['mfe'] = float(self._lparse(line2, ' \\((.*)\\)$')) if partition: line3 = lines.pop(0) output['coarse'] = self._lparse(line3, '^(.*) \\[') output['ensemble'] = float(self._lparse(line3, ' \\[(.*)\\]$')) line4 = lines.pop(0) output['centroid'] = self._lparse(line4, '^(.*) \\{') output['centroid_fe'] = float(self._lparse(line4, '^.*{(.*) d')) output['centroid_d'] = float(self._lparse(line4, 'd=(.*)}$')) return output
fold
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strand, temp=37.0, dangles=2, nolp=False, nogu=False,\n noclosinggu=False, constraints=None, canonicalbponly=False, partition=\n False, pfscale=None, imfeelinglucky=False, gquad=False):\n cmd_args = []\n cmd_kwargs = {'--temp=': str(temp)}\n cmd_kwargs['--dangles='] = dangles\n if nolp:\n cmd_args.append('--noLP')\n if nogu:\n cmd_args.append('--noGU')\n if noclosinggu:\n cmd_args.append('--noClosingGU')\n if constraints is not None:\n cmd_args.append('--constraint')\n if canonicalbponly:\n cmd_args.append('--canonicalBPonly')\n if partition:\n cmd_args.append('--partfunc')\n if pfscale is not None:\n cmd_kwargs['pfScale'] = float(pfscale)\n if gquad:\n cmd_args.append('--gquad')\n inputs = [str(strand)]\n if constraints is not None:\n inputs.append(constraints)\n if strand.circular:\n cmd_args.append('--circ')\n rnafold_output = self._run('RNAfold', inputs, cmd_args, cmd_kwargs)\n output = {}\n lines = rnafold_output.splitlines()\n lines.pop(0)\n line2 = lines.pop(0)\n output['dotbracket'] = self._lparse(line2, '^(.*) \\\\(')\n output['mfe'] = float(self._lparse(line2, ' \\\\((.*)\\\\)$'))\n if partition:\n line3 = lines.pop(0)\n output['coarse'] = self._lparse(line3, '^(.*) \\\\[')\n output['ensemble'] = float(self._lparse(line3, ' \\\\[(.*)\\\\]$'))\n line4 = lines.pop(0)\n output['centroid'] = self._lparse(line4, '^(.*) \\\\{')\n output['centroid_fe'] = float(self._lparse(line4, '^.*{(.*) d'))\n output['centroid_d'] = float(self._lparse(line4, 'd=(.*)}$'))\n return output\n", "role": "user" }, { "content": "fold", "role": "assistant" } ]
def x(primer1, primer2, concentrations=[5e-07, 3e-11]): nupack = coral.analysis.NUPACK([primer1.primer(), primer2.primer(), primer1.primer().reverse_complement(), primer2.primer(). reverse_complement()]) primer_concs = [concentrations[0]] * 2 template_concs = [concentrations[1]] * 2 concs = primer_concs + template_concs nupack_concs = nupack.concentrations(2, conc=concs) dimer_conc = nupack_concs['concentrations'][5] return dimer_conc / concs[0]
dimers
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(primer1, primer2, concentrations=[5e-07, 3e-11]):\n nupack = coral.analysis.NUPACK([primer1.primer(), primer2.primer(),\n primer1.primer().reverse_complement(), primer2.primer().\n reverse_complement()])\n primer_concs = [concentrations[0]] * 2\n template_concs = [concentrations[1]] * 2\n concs = primer_concs + template_concs\n nupack_concs = nupack.concentrations(2, conc=concs)\n dimer_conc = nupack_concs['concentrations'][5]\n return dimer_conc / concs[0]\n", "role": "user" }, { "content": "dimers", "role": "assistant" } ]
def x(path): filename, ext = os.path.splitext(os.path.split(path)[-1]) genbank_exts = ['.gb', '.ape'] fasta_exts = ['.fasta', '.fa', '.fsa', '.seq'] abi_exts = ['.abi', '.ab1'] if any([(ext == extension) for extension in genbank_exts]): file_format = 'genbank' elif any([(ext == extension) for extension in fasta_exts]): file_format = 'fasta' elif any([(ext == extension) for extension in abi_exts]): file_format = 'abi' else: raise ValueError('File format not recognized.') seq = SeqIO.read(path, file_format) dna = coral.DNA(str(seq.seq)) if seq.name == '.': dna.name = filename else: dna.name = seq.name for feature in seq.features: try: dna.features.append(_seqfeature_to_coral(feature)) except FeatureNameError: pass dna.features = sorted(dna.features, key=lambda feature: feature.start) dna.circular = False with open(path) as f: first_line = f.read().split() for word in first_line: if word == 'circular': dna.circular = True return dna
read_dna
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(path):\n filename, ext = os.path.splitext(os.path.split(path)[-1])\n genbank_exts = ['.gb', '.ape']\n fasta_exts = ['.fasta', '.fa', '.fsa', '.seq']\n abi_exts = ['.abi', '.ab1']\n if any([(ext == extension) for extension in genbank_exts]):\n file_format = 'genbank'\n elif any([(ext == extension) for extension in fasta_exts]):\n file_format = 'fasta'\n elif any([(ext == extension) for extension in abi_exts]):\n file_format = 'abi'\n else:\n raise ValueError('File format not recognized.')\n seq = SeqIO.read(path, file_format)\n dna = coral.DNA(str(seq.seq))\n if seq.name == '.':\n dna.name = filename\n else:\n dna.name = seq.name\n for feature in seq.features:\n try:\n dna.features.append(_seqfeature_to_coral(feature))\n except FeatureNameError:\n pass\n dna.features = sorted(dna.features, key=lambda feature: feature.start)\n dna.circular = False\n with open(path) as f:\n first_line = f.read().split()\n for word in first_line:\n if word == 'circular':\n dna.circular = True\n return dna\n", "role": "user" }, { "content": "read_dna", "role": "assistant" } ]
def x(directory): dirfiles = os.listdir(directory) seq_exts = ['.seq', '.abi', '.ab1'] seq_paths = [x for x in dirfiles if os.path.splitext(x)[1] in seq_exts] paths = [os.path.join(directory, x) for x in seq_paths] sequences = [read_dna(x) for x in paths] return sequences
read_sequencing
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(directory):\n dirfiles = os.listdir(directory)\n seq_exts = ['.seq', '.abi', '.ab1']\n seq_paths = [x for x in dirfiles if os.path.splitext(x)[1] in seq_exts]\n paths = [os.path.join(directory, x) for x in seq_paths]\n sequences = [read_dna(x) for x in paths]\n return sequences\n", "role": "user" }, { "content": "read_sequencing", "role": "assistant" } ]
def x(dna, path): ext = os.path.splitext(path)[1] if ext == '.gb' or ext == '.ape': filetype = 'genbank' elif ext == '.fa' or ext == '.fasta': filetype = 'fasta' else: raise ValueError('Only genbank or fasta files are supported.') features = [] for feature in dna.features: features.append(_coral_to_seqfeature(feature)) bio_id = dna.id if hasattr(dna, 'id') else '' seq = SeqRecord(Seq(str(dna), alphabet=ambiguous_dna), id=bio_id, name= dna.name[0:16].replace(' ', '_'), features=features, description= dna.name) if dna.circular: seq.annotations['data_file_division'] = 'circular' else: seq.annotations['data_file_division'] = 'linear' if filetype == 'genbank': SeqIO.write(seq, path, 'genbank') elif filetype == 'fasta': SeqIO.write(seq, path, 'fasta')
write_dna
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(dna, path):\n ext = os.path.splitext(path)[1]\n if ext == '.gb' or ext == '.ape':\n filetype = 'genbank'\n elif ext == '.fa' or ext == '.fasta':\n filetype = 'fasta'\n else:\n raise ValueError('Only genbank or fasta files are supported.')\n features = []\n for feature in dna.features:\n features.append(_coral_to_seqfeature(feature))\n bio_id = dna.id if hasattr(dna, 'id') else ''\n seq = SeqRecord(Seq(str(dna), alphabet=ambiguous_dna), id=bio_id, name=\n dna.name[0:16].replace(' ', '_'), features=features, description=\n dna.name)\n if dna.circular:\n seq.annotations['data_file_division'] = 'circular'\n else:\n seq.annotations['data_file_division'] = 'linear'\n if filetype == 'genbank':\n SeqIO.write(seq, path, 'genbank')\n elif filetype == 'fasta':\n SeqIO.write(seq, path, 'fasta')\n", "role": "user" }, { "content": "write_dna", "role": "assistant" } ]
def x(primer_list, path, names=None, notes=None): if names is not None: if len(names) != len(primer_list): names_msg = 'Mismatch in number of notes and primers.' raise PrimerAnnotationError(names_msg) for i, name in enumerate(names): primer_list[i].name = name if notes is not None: if len(notes) != len(primer_list): notes_msg = 'Mismatch in number of notes and primers.' raise PrimerAnnotationError(notes_msg) for i, note in enumerate(notes): primer_list[i].note = note with open(path, 'w') as csv_file: writer = csv.writer(csv_file) writer.writerow(['name', 'sequence', 'notes']) for primer in primer_list: string_rep = str(primer.overhang).lower() + str(primer.anneal) writer.writerow([primer.name, string_rep, primer.note])
write_primers
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(primer_list, path, names=None, notes=None):\n if names is not None:\n if len(names) != len(primer_list):\n names_msg = 'Mismatch in number of notes and primers.'\n raise PrimerAnnotationError(names_msg)\n for i, name in enumerate(names):\n primer_list[i].name = name\n if notes is not None:\n if len(notes) != len(primer_list):\n notes_msg = 'Mismatch in number of notes and primers.'\n raise PrimerAnnotationError(notes_msg)\n for i, note in enumerate(notes):\n primer_list[i].note = note\n with open(path, 'w') as csv_file:\n writer = csv.writer(csv_file)\n writer.writerow(['name', 'sequence', 'notes'])\n for primer in primer_list:\n string_rep = str(primer.overhang).lower() + str(primer.anneal)\n writer.writerow([primer.name, string_rep, primer.note])\n", "role": "user" }, { "content": "write_primers", "role": "assistant" } ]
def x(feature_type, bio_to_coral=True): err_msg = 'Unrecognized feature type: {}'.format(feature_type) if bio_to_coral: try: name = coral.constants.genbank.TO_CORAL[feature_type] except KeyError: raise ValueError(err_msg) else: try: name = coral.constants.genbank.TO_BIO[feature_type] except KeyError: raise ValueError(err_msg) return name
process_feature_type
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(feature_type, bio_to_coral=True):\n err_msg = 'Unrecognized feature type: {}'.format(feature_type)\n if bio_to_coral:\n try:\n name = coral.constants.genbank.TO_CORAL[feature_type]\n except KeyError:\n raise ValueError(err_msg)\n else:\n try:\n name = coral.constants.genbank.TO_BIO[feature_type]\n except KeyError:\n raise ValueError(err_msg)\n return name\n", "role": "user" }, { "content": "process_feature_type", "role": "assistant" } ]
def x(feature): qualifiers = feature.qualifiers if 'label' in qualifiers: feature_name = qualifiers['label'][0] elif 'locus_tag' in qualifiers: feature_name = qualifiers['locus_tag'][0] else: raise FeatureNameError('Unrecognized feature name') if feature.location_operator == 'join': reordered = sorted(feature.location.parts, key=lambda location: location.start) starts = [int(location.start) for location in reordered] stops = [int(location.end) for location in reordered] feature_start = starts.pop(0) feature_stop = stops.pop(-1) starts = [(start - feature_start) for start in starts] stops = [(stop - feature_start) for stop in stops] feature_gaps = list(zip(stops, starts)) else: feature_start = int(feature.location.start) feature_stop = int(feature.location.end) feature_gaps = [] feature_type = _process_feature_type(feature.type) if feature.location.strand == -1: feature_strand = 1 else: feature_strand = 0 if 'gene' in qualifiers: gene = qualifiers['gene'] else: gene = [] if 'locus_tag' in qualifiers: locus_tag = qualifiers['locus_tag'] else: locus_tag = [] coral_feature = coral.Feature(feature_name, feature_start, feature_stop, feature_type, gene=gene, locus_tag=locus_tag, qualifiers=qualifiers, strand=feature_strand, gaps=feature_gaps) return coral_feature
seqfeature_to_coral
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(feature):\n qualifiers = feature.qualifiers\n if 'label' in qualifiers:\n feature_name = qualifiers['label'][0]\n elif 'locus_tag' in qualifiers:\n feature_name = qualifiers['locus_tag'][0]\n else:\n raise FeatureNameError('Unrecognized feature name')\n if feature.location_operator == 'join':\n reordered = sorted(feature.location.parts, key=lambda location:\n location.start)\n starts = [int(location.start) for location in reordered]\n stops = [int(location.end) for location in reordered]\n feature_start = starts.pop(0)\n feature_stop = stops.pop(-1)\n starts = [(start - feature_start) for start in starts]\n stops = [(stop - feature_start) for stop in stops]\n feature_gaps = list(zip(stops, starts))\n else:\n feature_start = int(feature.location.start)\n feature_stop = int(feature.location.end)\n feature_gaps = []\n feature_type = _process_feature_type(feature.type)\n if feature.location.strand == -1:\n feature_strand = 1\n else:\n feature_strand = 0\n if 'gene' in qualifiers:\n gene = qualifiers['gene']\n else:\n gene = []\n if 'locus_tag' in qualifiers:\n locus_tag = qualifiers['locus_tag']\n else:\n locus_tag = []\n coral_feature = coral.Feature(feature_name, feature_start, feature_stop,\n feature_type, gene=gene, locus_tag=locus_tag, qualifiers=qualifiers,\n strand=feature_strand, gaps=feature_gaps)\n return coral_feature\n", "role": "user" }, { "content": "seqfeature_to_coral", "role": "assistant" } ]
def x(feature): bio_strand = 1 if feature.strand == 1 else -1 ftype = _process_feature_type(feature.feature_type, bio_to_coral=False) sublocations = [] if feature.gaps: location_operator = 'join' location = FeatureLocation(ExactPosition(0), ExactPosition(1), strand=bio_strand) stops, starts = zip(*feature.gaps) starts = [feature.start] + [(start + feature.start) for start in starts ] stops = [(stop + feature.start) for stop in stops] + [feature.stop] for start, stop in zip(starts, stops): sublocation = FeatureLocation(ExactPosition(start), ExactPosition(stop), strand=bio_strand) sublocations.append(sublocation) location = CompoundLocation(sublocations, operator='join') else: location_operator = '' location = FeatureLocation(ExactPosition(feature.start), ExactPosition(feature.stop), strand=bio_strand) qualifiers = feature.qualifiers qualifiers['label'] = [feature.name] seqfeature = SeqFeature(location, type=ftype, qualifiers=qualifiers, location_operator=location_operator) return seqfeature
coral_to_seqfeature
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(feature):\n bio_strand = 1 if feature.strand == 1 else -1\n ftype = _process_feature_type(feature.feature_type, bio_to_coral=False)\n sublocations = []\n if feature.gaps:\n location_operator = 'join'\n location = FeatureLocation(ExactPosition(0), ExactPosition(1),\n strand=bio_strand)\n stops, starts = zip(*feature.gaps)\n starts = [feature.start] + [(start + feature.start) for start in starts\n ]\n stops = [(stop + feature.start) for stop in stops] + [feature.stop]\n for start, stop in zip(starts, stops):\n sublocation = FeatureLocation(ExactPosition(start),\n ExactPosition(stop), strand=bio_strand)\n sublocations.append(sublocation)\n location = CompoundLocation(sublocations, operator='join')\n else:\n location_operator = ''\n location = FeatureLocation(ExactPosition(feature.start),\n ExactPosition(feature.stop), strand=bio_strand)\n qualifiers = feature.qualifiers\n qualifiers['label'] = [feature.name]\n seqfeature = SeqFeature(location, type=ftype, qualifiers=qualifiers,\n location_operator=location_operator)\n return seqfeature\n", "role": "user" }, { "content": "coral_to_seqfeature", "role": "assistant" } ]
def x(matrix, alphabet): ords = [ord(c) for c in alphabet] ord_matrix = np.zeros((max(ords) + 1, max(ords) + 1), dtype=np.integer) for i, row_ord in enumerate(ords): for j, col_ord in enumerate(ords): ord_matrix[row_ord, col_ord] = matrix[i, j] return ord_matrix
as_ord_matrix
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(matrix, alphabet):\n ords = [ord(c) for c in alphabet]\n ord_matrix = np.zeros((max(ords) + 1, max(ords) + 1), dtype=np.integer)\n for i, row_ord in enumerate(ords):\n for j, col_ord in enumerate(ords):\n ord_matrix[row_ord, col_ord] = matrix[i, j]\n return ord_matrix\n", "role": "user" }, { "content": "as_ord_matrix", "role": "assistant" } ]
def x(seqj, seqi, method='global', gap_open=-7, gap_extend=-7, gap_double=- 7, matrix=submat.DNA_SIMPLE.matrix, alphabet=submat.DNA_SIMPLE.alphabet): amatrix = as_ord_matrix(matrix, alphabet) NONE, LEFT, UP, DIAG = range(4) max_j = len(seqj) max_i = len(seqi) if max_j > max_i: flip = 1 seqi, seqj = seqj, seqi max_i, max_j = max_j, max_i else: flip = 0 F = np.zeros((max_i + 1, max_j + 1), dtype=np.float32) I = np.ndarray((max_i + 1, max_j + 1), dtype=np.float32) I.fill(-np.inf) J = np.ndarray((max_i + 1, max_j + 1), dtype=np.float32) J.fill(-np.inf) pointer = np.zeros((max_i + 1, max_j + 1), dtype=np.uint) if method == 'global': pointer[0, 1:] = LEFT pointer[1:, 0] = UP F[0, 1:] = gap_open + gap_extend * np.arange(0, max_j, dtype=np.float32 ) F[1:, 0] = gap_open + gap_extend * np.arange(0, max_i, dtype=np.float32 ) elif method == 'global_cfe': pointer[0, 1:] = LEFT pointer[1:, 0] = UP elif method == 'glocal': pointer[0, 1:] = LEFT F[0, 1:] = gap_open + gap_extend * np.arange(0, max_j, dtype=np.float32 ) seqi_ord = [ord(base) for base in seqi] seqj_ord = [ord(base) for base in seqj] for i in range(1, max_i + 1): ci = seqi_ord[i - 1] for j in range(1, max_j + 1): cj = seqj_ord[j - 1] I[i, j] = max(F[i, j - 1] + gap_open, I[i, j - 1] + gap_extend, J[i, j - 1] + gap_double) J[i, j] = max(F[i - 1, j] + gap_open, J[i - 1, j] + gap_extend, I[i - 1, j] + gap_double) diag_score = F[i - 1, j - 1] + amatrix[ci, cj] left_score = I[i, j] up_score = J[i, j] max_score = max(diag_score, up_score, left_score) F[i, j] = max(0, max_score) if method == 'local' else max_score if method == 'local': if F[i, j] == 0: pass elif max_score == diag_score: pointer[i, j] = DIAG elif max_score == up_score: pointer[i, j] = UP elif max_score == left_score: pointer[i, j] = LEFT elif method == 'glocal': if max_score == up_score: pointer[i, j] = UP elif max_score == diag_score: pointer[i, j] = DIAG elif max_score == left_score: pointer[i, j] = LEFT elif max_score == up_score: pointer[i, j] = UP elif max_score == left_score: pointer[i, j] = LEFT else: pointer[i, j] = DIAG align_j = [] align_i = [] if method == 'local': i, j = max_index(F) elif method == 'glocal': i, j = F[:, -1].argmax(), max_j elif method == 'global_cfe': row_max, col_idx = F[-1].max(), F[-1].argmax() col_max, row_idx = F[:, -1].max(), F[:, -1].argmax() if row_max > col_max: pointer[-1, col_idx + 1:] = LEFT else: pointer[row_idx + 1:, -1] = UP p = pointer[i, j] while p != NONE: if p == DIAG: i -= 1 j -= 1 align_j.append(seqj[j]) align_i.append(seqi[i]) elif p == LEFT: j -= 1 align_j.append(seqj[j]) align_i.append('-') elif p == UP: i -= 1 align_j.append('-') align_i.append(seqi[i]) else: raise Exception('wtf!') p = pointer[i, j] align_i = ''.join(align_i[::-1]) align_j = ''.join(align_j[::-1]) return (align_i, align_j) if flip else (align_j, align_i)
aligner
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seqj, seqi, method='global', gap_open=-7, gap_extend=-7, gap_double=-\n 7, matrix=submat.DNA_SIMPLE.matrix, alphabet=submat.DNA_SIMPLE.alphabet):\n amatrix = as_ord_matrix(matrix, alphabet)\n NONE, LEFT, UP, DIAG = range(4)\n max_j = len(seqj)\n max_i = len(seqi)\n if max_j > max_i:\n flip = 1\n seqi, seqj = seqj, seqi\n max_i, max_j = max_j, max_i\n else:\n flip = 0\n F = np.zeros((max_i + 1, max_j + 1), dtype=np.float32)\n I = np.ndarray((max_i + 1, max_j + 1), dtype=np.float32)\n I.fill(-np.inf)\n J = np.ndarray((max_i + 1, max_j + 1), dtype=np.float32)\n J.fill(-np.inf)\n pointer = np.zeros((max_i + 1, max_j + 1), dtype=np.uint)\n if method == 'global':\n pointer[0, 1:] = LEFT\n pointer[1:, 0] = UP\n F[0, 1:] = gap_open + gap_extend * np.arange(0, max_j, dtype=np.float32\n )\n F[1:, 0] = gap_open + gap_extend * np.arange(0, max_i, dtype=np.float32\n )\n elif method == 'global_cfe':\n pointer[0, 1:] = LEFT\n pointer[1:, 0] = UP\n elif method == 'glocal':\n pointer[0, 1:] = LEFT\n F[0, 1:] = gap_open + gap_extend * np.arange(0, max_j, dtype=np.float32\n )\n seqi_ord = [ord(base) for base in seqi]\n seqj_ord = [ord(base) for base in seqj]\n for i in range(1, max_i + 1):\n ci = seqi_ord[i - 1]\n for j in range(1, max_j + 1):\n cj = seqj_ord[j - 1]\n I[i, j] = max(F[i, j - 1] + gap_open, I[i, j - 1] + gap_extend,\n J[i, j - 1] + gap_double)\n J[i, j] = max(F[i - 1, j] + gap_open, J[i - 1, j] + gap_extend,\n I[i - 1, j] + gap_double)\n diag_score = F[i - 1, j - 1] + amatrix[ci, cj]\n left_score = I[i, j]\n up_score = J[i, j]\n max_score = max(diag_score, up_score, left_score)\n F[i, j] = max(0, max_score) if method == 'local' else max_score\n if method == 'local':\n if F[i, j] == 0:\n pass\n elif max_score == diag_score:\n pointer[i, j] = DIAG\n elif max_score == up_score:\n pointer[i, j] = UP\n elif max_score == left_score:\n pointer[i, j] = LEFT\n elif method == 'glocal':\n if max_score == up_score:\n pointer[i, j] = UP\n elif max_score == diag_score:\n pointer[i, j] = DIAG\n elif max_score == left_score:\n pointer[i, j] = LEFT\n elif max_score == up_score:\n pointer[i, j] = UP\n elif max_score == left_score:\n pointer[i, j] = LEFT\n else:\n pointer[i, j] = DIAG\n align_j = []\n align_i = []\n if method == 'local':\n i, j = max_index(F)\n elif method == 'glocal':\n i, j = F[:, -1].argmax(), max_j\n elif method == 'global_cfe':\n row_max, col_idx = F[-1].max(), F[-1].argmax()\n col_max, row_idx = F[:, -1].max(), F[:, -1].argmax()\n if row_max > col_max:\n pointer[-1, col_idx + 1:] = LEFT\n else:\n pointer[row_idx + 1:, -1] = UP\n p = pointer[i, j]\n while p != NONE:\n if p == DIAG:\n i -= 1\n j -= 1\n align_j.append(seqj[j])\n align_i.append(seqi[i])\n elif p == LEFT:\n j -= 1\n align_j.append(seqj[j])\n align_i.append('-')\n elif p == UP:\n i -= 1\n align_j.append('-')\n align_i.append(seqi[i])\n else:\n raise Exception('wtf!')\n p = pointer[i, j]\n align_i = ''.join(align_i[::-1])\n align_j = ''.join(align_j[::-1])\n return (align_i, align_j) if flip else (align_j, align_i)\n", "role": "user" }, { "content": "aligner", "role": "assistant" } ]
def x(a, b, gap_open, gap_extend, matrix): al = a bl = b l = len(al) score = 0 assert len(bl) == l, 'Alignment lengths must be the same' mat = as_ord_matrix(matrix) gap_started = 0 for i in range(l): if al[i] == '-' or bl[i] == '-': score += gap_extend if gap_started else gap_open gap_started = 1 else: score += mat[ord(al[i]), ord(bl[i])] gap_started = 0 return score
score_alignment
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, b, gap_open, gap_extend, matrix):\n al = a\n bl = b\n l = len(al)\n score = 0\n assert len(bl) == l, 'Alignment lengths must be the same'\n mat = as_ord_matrix(matrix)\n gap_started = 0\n for i in range(l):\n if al[i] == '-' or bl[i] == '-':\n score += gap_extend if gap_started else gap_open\n gap_started = 1\n else:\n score += mat[ord(al[i]), ord(bl[i])]\n gap_started = 0\n return score\n", "role": "user" }, { "content": "score_alignment", "role": "assistant" } ]
def x(directory): os.chdir(directory) process = subprocess.Popen(['make', 'html'], cwd=directory) process.communicate()
build_docs
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(directory):\n os.chdir(directory)\n process = subprocess.Popen(['make', 'html'], cwd=directory)\n process.communicate()\n", "role": "user" }, { "content": "build_docs", "role": "assistant" } ]
def x(dna1, dna2, overlap='mixed', maxlen=80, overlap_tm=65.0, insert=None, primer_kwargs=None): if primer_kwargs is None: primer_kwargs = {} fwd_anneal = coral.design.primer(dna2, **primer_kwargs) rev_anneal = coral.design.primer(dna1.flip(), **primer_kwargs) if insert is None: if overlap == 'left': overlap_revcomp = coral.design.primer(dna1.flip(), tm= overlap_tm, tm_undershoot=0) fwd_overhang = overlap_revcomp.primer().reverse_complement() rev_overhang = None elif overlap == 'right': overlap = coral.design.primer(dna2, tm=overlap_tm, tm_undershoot=0) fwd_overhang = None rev_overhang = overlap.primer().reverse_complement() elif overlap == 'mixed': overlap_l = dna1[0:0] overlap_r = dna2[0] overlap_melt = overlap_r.tm() while overlap_melt < overlap_tm: rlen = len(overlap_r) llen = len(overlap_l) if rlen > llen: overlap_l = dna1[-(rlen + 1):] else: overlap_r = dna2[:llen + 1] overlap = overlap_l + overlap_r overlap_melt = overlap.tm() fwd_overhang = overlap_l rev_overhang = overlap_r.reverse_complement() else: raise ValueError('split argument must be left, right, or mixed') fwd = coral.Primer(fwd_anneal.primer(), tm=fwd_anneal.tm, overhang= fwd_overhang) rev = coral.Primer(rev_anneal.primer(), tm=rev_anneal.tm, overhang= rev_overhang) else: overlap = insert fwd_overhang = insert.primer() rev_overhang = insert.reverse_complement().primer() fwd = coral.Primer(fwd_anneal.primer(), tm=fwd_anneal.tm, overhang= fwd_overhang) rev = coral.Primer(rev_anneal.primer(), tm=rev_anneal.tm, overhang= rev_overhang) left_trim = 0 while len(fwd) > maxlen: overlap = insert[left_trim:] if coral.analysis.tm(overlap) < overlap_tm: raise TmError('Right primer is too long with this Tm setting.') fwd_overhang = overlap.primer() fwd = coral.Primer(fwd_anneal.primer(), tm=fwd_anneal.tm, overhang=fwd_overhang) left_trim += 1 right_trim = 0 while len(rev) > maxlen: overlap = insert[:len(insert) - right_trim] if coral.analysis.tm(overlap) < overlap_tm: raise TmError('Left primer is too long with this Tm setting.') rev_overhang = overlap.reverse_complement().to_ss() rev = coral.Primer(rev_anneal.to_ss(), tm=rev_anneal.tm, overhang=rev_overhang) right_trim += 1 if any([(len(primer) > maxlen) for primer in (fwd, rev)]): raise LengthError('At least one of the primers is longer than maxlen.') return rev, fwd
gibson_primers
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(dna1, dna2, overlap='mixed', maxlen=80, overlap_tm=65.0, insert=None,\n primer_kwargs=None):\n if primer_kwargs is None:\n primer_kwargs = {}\n fwd_anneal = coral.design.primer(dna2, **primer_kwargs)\n rev_anneal = coral.design.primer(dna1.flip(), **primer_kwargs)\n if insert is None:\n if overlap == 'left':\n overlap_revcomp = coral.design.primer(dna1.flip(), tm=\n overlap_tm, tm_undershoot=0)\n fwd_overhang = overlap_revcomp.primer().reverse_complement()\n rev_overhang = None\n elif overlap == 'right':\n overlap = coral.design.primer(dna2, tm=overlap_tm, tm_undershoot=0)\n fwd_overhang = None\n rev_overhang = overlap.primer().reverse_complement()\n elif overlap == 'mixed':\n overlap_l = dna1[0:0]\n overlap_r = dna2[0]\n overlap_melt = overlap_r.tm()\n while overlap_melt < overlap_tm:\n rlen = len(overlap_r)\n llen = len(overlap_l)\n if rlen > llen:\n overlap_l = dna1[-(rlen + 1):]\n else:\n overlap_r = dna2[:llen + 1]\n overlap = overlap_l + overlap_r\n overlap_melt = overlap.tm()\n fwd_overhang = overlap_l\n rev_overhang = overlap_r.reverse_complement()\n else:\n raise ValueError('split argument must be left, right, or mixed')\n fwd = coral.Primer(fwd_anneal.primer(), tm=fwd_anneal.tm, overhang=\n fwd_overhang)\n rev = coral.Primer(rev_anneal.primer(), tm=rev_anneal.tm, overhang=\n rev_overhang)\n else:\n overlap = insert\n fwd_overhang = insert.primer()\n rev_overhang = insert.reverse_complement().primer()\n fwd = coral.Primer(fwd_anneal.primer(), tm=fwd_anneal.tm, overhang=\n fwd_overhang)\n rev = coral.Primer(rev_anneal.primer(), tm=rev_anneal.tm, overhang=\n rev_overhang)\n left_trim = 0\n while len(fwd) > maxlen:\n overlap = insert[left_trim:]\n if coral.analysis.tm(overlap) < overlap_tm:\n raise TmError('Right primer is too long with this Tm setting.')\n fwd_overhang = overlap.primer()\n fwd = coral.Primer(fwd_anneal.primer(), tm=fwd_anneal.tm,\n overhang=fwd_overhang)\n left_trim += 1\n right_trim = 0\n while len(rev) > maxlen:\n overlap = insert[:len(insert) - right_trim]\n if coral.analysis.tm(overlap) < overlap_tm:\n raise TmError('Left primer is too long with this Tm setting.')\n rev_overhang = overlap.reverse_complement().to_ss()\n rev = coral.Primer(rev_anneal.to_ss(), tm=rev_anneal.tm,\n overhang=rev_overhang)\n right_trim += 1\n if any([(len(primer) > maxlen) for primer in (fwd, rev)]):\n raise LengthError('At least one of the primers is longer than maxlen.')\n return rev, fwd\n", "role": "user" }, { "content": "gibson_primers", "role": "assistant" } ]
def x(seq_list, circular=True, overlaps='mixed', overlap_tm=65, maxlen=80, terminal_primers=True, primer_kwargs=None): if circular: n_overlaps = len(seq_list) else: n_overlaps = len(seq_list) - 1 if type(overlaps) is str: overlaps = [overlaps] * n_overlaps elif len(overlaps) != n_overlaps: raise ValueError("Incorrect number of 'overlaps' entries.") else: for overlap in overlaps: if overlap not in ['left', 'right', 'mixed']: raise ValueError("Invalid 'overlaps' setting.") if primer_kwargs is None: primer_kwargs = {} primers_list = [] for i, (left, right) in enumerate(zip(seq_list[:-1], seq_list[1:])): primers_list.append(gibson_primers(left, right, overlaps[i], overlap_tm=overlap_tm, primer_kwargs=primer_kwargs)) if circular: primers_list.append(gibson_primers(seq_list[-1], seq_list[0], overlaps[-1], overlap_tm=overlap_tm, primer_kwargs=primer_kwargs)) elif terminal_primers: primer_f = coral.design.primer(seq_list[0], **primer_kwargs) primer_r = coral.design.primer(seq_list[-1].reverse_complement(), **primer_kwargs) primers_list.append((primer_r, primer_f)) flat = [y for x in primers_list for y in x] flat = [flat[-1]] + flat[:-1] grouped_primers = [(flat[2 * i], flat[2 * i + 1]) for i in range(len( flat) / 2)] return grouped_primers
gibson
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq_list, circular=True, overlaps='mixed', overlap_tm=65, maxlen=80,\n terminal_primers=True, primer_kwargs=None):\n if circular:\n n_overlaps = len(seq_list)\n else:\n n_overlaps = len(seq_list) - 1\n if type(overlaps) is str:\n overlaps = [overlaps] * n_overlaps\n elif len(overlaps) != n_overlaps:\n raise ValueError(\"Incorrect number of 'overlaps' entries.\")\n else:\n for overlap in overlaps:\n if overlap not in ['left', 'right', 'mixed']:\n raise ValueError(\"Invalid 'overlaps' setting.\")\n if primer_kwargs is None:\n primer_kwargs = {}\n primers_list = []\n for i, (left, right) in enumerate(zip(seq_list[:-1], seq_list[1:])):\n primers_list.append(gibson_primers(left, right, overlaps[i],\n overlap_tm=overlap_tm, primer_kwargs=primer_kwargs))\n if circular:\n primers_list.append(gibson_primers(seq_list[-1], seq_list[0],\n overlaps[-1], overlap_tm=overlap_tm, primer_kwargs=primer_kwargs))\n elif terminal_primers:\n primer_f = coral.design.primer(seq_list[0], **primer_kwargs)\n primer_r = coral.design.primer(seq_list[-1].reverse_complement(),\n **primer_kwargs)\n primers_list.append((primer_r, primer_f))\n flat = [y for x in primers_list for y in x]\n flat = [flat[-1]] + flat[:-1]\n grouped_primers = [(flat[2 * i], flat[2 * i + 1]) for i in range(len(\n flat) / 2)]\n return grouped_primers\n", "role": "user" }, { "content": "gibson", "role": "assistant" } ]
def x(string, n): binary = [int(x) for x in bin(n)[2:]] new_string = string counter = 1 while counter <= len(binary): if binary[-counter]: yield new_string new_string += new_string counter += 1
decompose
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(string, n):\n binary = [int(x) for x in bin(n)[2:]]\n new_string = string\n counter = 1\n while counter <= len(binary):\n if binary[-counter]:\n yield new_string\n new_string += new_string\n counter += 1\n", "role": "user" }, { "content": "decompose", "role": "assistant" } ]
def x(sequence, material): code = dict(COMPLEMENTS[material]) reverse_sequence = sequence[::-1] return ''.join([code[str(base)] for base in reverse_sequence])
reverse_complement
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(sequence, material):\n code = dict(COMPLEMENTS[material])\n reverse_sequence = sequence[::-1]\n return ''.join([code[str(base)] for base in reverse_sequence])\n", "role": "user" }, { "content": "reverse_complement", "role": "assistant" } ]
def x(seq, material): errs = {'dna': 'DNA', 'rna': 'RNA', 'peptide': 'peptide'} if material == 'dna' or material == 'rna' or material == 'peptide': alphabet = ALPHABETS[material] err_msg = errs[material] else: msg = "Input material must be 'dna', 'rna', or 'peptide'." raise ValueError(msg) if re.search('[^' + alphabet + ']', seq): raise ValueError('Encountered a non-%s character' % err_msg)
check_alphabet
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq, material):\n errs = {'dna': 'DNA', 'rna': 'RNA', 'peptide': 'peptide'}\n if material == 'dna' or material == 'rna' or material == 'peptide':\n alphabet = ALPHABETS[material]\n err_msg = errs[material]\n else:\n msg = \"Input material must be 'dna', 'rna', or 'peptide'.\"\n raise ValueError(msg)\n if re.search('[^' + alphabet + ']', seq):\n raise ValueError('Encountered a non-%s character' % err_msg)\n", "role": "user" }, { "content": "check_alphabet", "role": "assistant" } ]
def x(seq, material): check_alphabet(seq, material) seq = seq.upper() return seq
process_seq
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq, material):\n check_alphabet(seq, material)\n seq = seq.upper()\n return seq\n", "role": "user" }, { "content": "process_seq", "role": "assistant" } ]
def x(seq): seq_len = len(seq) if seq_len % 2 == 0: wing = seq_len / 2 l_wing = seq[0:wing] r_wing = seq[wing:] if l_wing == r_wing.reverse_complement(): return True else: return False else: return False
palindrome
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq):\n seq_len = len(seq)\n if seq_len % 2 == 0:\n wing = seq_len / 2\n l_wing = seq[0:wing]\n r_wing = seq[wing:]\n if l_wing == r_wing.reverse_complement():\n return True\n else:\n return False\n else:\n return False\n", "role": "user" }, { "content": "palindrome", "role": "assistant" } ]
def x(self): return type(self)(self.seq, self.material, run_checks=False)
copy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n return type(self)(self.seq, self.material, run_checks=False)\n", "role": "user" }, { "content": "copy", "role": "assistant" } ]
def x(self, pattern): if len(pattern) > len(self): raise ValueError('Search pattern longer than searchable ' + 'sequence.' ) seq = self.seq pattern = str(pattern).upper() re_pattern = '(?=' + pattern + ')' matches = [(index.start() % len(self)) for index in re.finditer( re_pattern, seq)] return matches
locate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, pattern):\n if len(pattern) > len(self):\n raise ValueError('Search pattern longer than searchable ' + 'sequence.'\n )\n seq = self.seq\n pattern = str(pattern).upper()\n re_pattern = '(?=' + pattern + ')'\n matches = [(index.start() % len(self)) for index in re.finditer(\n re_pattern, seq)]\n return matches\n", "role": "user" }, { "content": "locate", "role": "assistant" } ]
def x(self): return type(self)(self.name, self.start, self.stop, self.feature_type, gene=self.gene, locus_tag=self.locus_tag, qualifiers=self. qualifiers, strand=self.strand)
copy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n return type(self)(self.name, self.start, self.stop, self.feature_type,\n gene=self.gene, locus_tag=self.locus_tag, qualifiers=self.\n qualifiers, strand=self.strand)\n", "role": "user" }, { "content": "copy", "role": "assistant" } ]
def x(kwargs): run = NUPACK(kwargs['seq']) output = getattr(run, kwargs['cmd'])(**kwargs['arguments']) return output
run_nupack
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(kwargs):\n run = NUPACK(kwargs['seq'])\n output = getattr(run, kwargs['cmd'])(**kwargs['arguments'])\n return output\n", "role": "user" }, { "content": "run_nupack", "role": "assistant" } ]
def x(self, strands, permutation=None, temp=37.0, pseudo=False, material= None, dangles='some', sodium=1.0, magnesium=0.0): material = self._set_material(strands, material, multi=True) cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium, magnesium, multi=True) if permutation is None: permutation = range(1, len(strands) + 1) lines = self._multi_lines(strands, permutation) stdout = self._run('pfunc', cmd_args, lines).split('\n') return float(stdout[-3]), float(stdout[-2])
pfunc_multi
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strands, permutation=None, temp=37.0, pseudo=False, material=\n None, dangles='some', sodium=1.0, magnesium=0.0):\n material = self._set_material(strands, material, multi=True)\n cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium,\n magnesium, multi=True)\n if permutation is None:\n permutation = range(1, len(strands) + 1)\n lines = self._multi_lines(strands, permutation)\n stdout = self._run('pfunc', cmd_args, lines).split('\\n')\n return float(stdout[-3]), float(stdout[-2])\n", "role": "user" }, { "content": "pfunc_multi", "role": "assistant" } ]
def x(self, strand, cutoff=0.001, temp=37.0, pseudo=False, material=None, dangles='some', sodium=1.0, magnesium=0.0): material = self._set_material(strand, material) cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium, magnesium, multi=False) lines = [str(strand)] self._run('pairs', cmd_args, lines) ppairs = self._read_tempfile('pairs.ppairs') data = re.search('\n\n\\d*\n(.*)', ppairs, flags=re.DOTALL).group(1) N = len(strand) data_lines = [line.split('\t') for line in data.split('\n') if line] prob_matrix = self._pairs_to_np(data_lines, N) return prob_matrix
pairs
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strand, cutoff=0.001, temp=37.0, pseudo=False, material=None,\n dangles='some', sodium=1.0, magnesium=0.0):\n material = self._set_material(strand, material)\n cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium,\n magnesium, multi=False)\n lines = [str(strand)]\n self._run('pairs', cmd_args, lines)\n ppairs = self._read_tempfile('pairs.ppairs')\n data = re.search('\\n\\n\\\\d*\\n(.*)', ppairs, flags=re.DOTALL).group(1)\n N = len(strand)\n data_lines = [line.split('\\t') for line in data.split('\\n') if line]\n prob_matrix = self._pairs_to_np(data_lines, N)\n return prob_matrix\n", "role": "user" }, { "content": "pairs", "role": "assistant" } ]
def x(self, strands, cutoff=0.001, permutation=None, temp=37.0, pseudo= False, material=None, dangles='some', sodium=1.0, magnesium=0.0): material = self._set_material(strands, material, multi=True) cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium, magnesium, multi=True) if permutation is None: permutation = range(1, len(strands) + 1) lines = self._multi_lines(strands, permutation) self._run('pairs', cmd_args, lines) N = sum([len(s) for s in strands]) matrices = [] for mat_type in ['ppairs', 'epairs']: data = self._read_tempfile('pairs.' + mat_type) probs = re.search('\n\n\\d*\n(.*)', data, flags=re.DOTALL).group(1) lines = probs.split('\n') lines.pop() pairlist = [line.split('\t') for line in lines] prob_matrix = self._pairs_to_np(pairlist, N) matrices.append(prob_matrix) return matrices
pairs_multi
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strands, cutoff=0.001, permutation=None, temp=37.0, pseudo=\n False, material=None, dangles='some', sodium=1.0, magnesium=0.0):\n material = self._set_material(strands, material, multi=True)\n cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium,\n magnesium, multi=True)\n if permutation is None:\n permutation = range(1, len(strands) + 1)\n lines = self._multi_lines(strands, permutation)\n self._run('pairs', cmd_args, lines)\n N = sum([len(s) for s in strands])\n matrices = []\n for mat_type in ['ppairs', 'epairs']:\n data = self._read_tempfile('pairs.' + mat_type)\n probs = re.search('\\n\\n\\\\d*\\n(.*)', data, flags=re.DOTALL).group(1)\n lines = probs.split('\\n')\n lines.pop()\n pairlist = [line.split('\\t') for line in lines]\n prob_matrix = self._pairs_to_np(pairlist, N)\n matrices.append(prob_matrix)\n return matrices\n", "role": "user" }, { "content": "pairs_multi", "role": "assistant" } ]
def x(self, strand, degenerate=False, temp=37.0, pseudo=False, material= None, dangles='some', sodium=1.0, magnesium=0.0): material = self._set_material(strand, material) cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium, magnesium, multi=False) if degenerate: cmd_args.append('-degenerate') lines = [str(strand)] self._run('mfe', cmd_args, lines) structures = self._process_mfe(self._read_tempfile('mfe.mfe')) if degenerate: return structures else: return structures[0]
mfe
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strand, degenerate=False, temp=37.0, pseudo=False, material=\n None, dangles='some', sodium=1.0, magnesium=0.0):\n material = self._set_material(strand, material)\n cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium,\n magnesium, multi=False)\n if degenerate:\n cmd_args.append('-degenerate')\n lines = [str(strand)]\n self._run('mfe', cmd_args, lines)\n structures = self._process_mfe(self._read_tempfile('mfe.mfe'))\n if degenerate:\n return structures\n else:\n return structures[0]\n", "role": "user" }, { "content": "mfe", "role": "assistant" } ]
def x(self, strands, permutation=None, degenerate=False, temp=37.0, pseudo= False, material=None, dangles='some', sodium=1.0, magnesium=0.0): material = self._set_material(strands, material, multi=True) cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium, magnesium, multi=True) if degenerate: cmd_args.append('-degenerate') if permutation is None: permutation = range(1, len(strands) + 1) lines = self._multi_lines(strands, permutation) self._run('mfe', cmd_args, lines) structures = self._process_mfe(self._read_tempfile('mfe.mfe')) if degenerate: return structures else: return structures[0]
mfe_multi
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strands, permutation=None, degenerate=False, temp=37.0, pseudo=\n False, material=None, dangles='some', sodium=1.0, magnesium=0.0):\n material = self._set_material(strands, material, multi=True)\n cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium,\n magnesium, multi=True)\n if degenerate:\n cmd_args.append('-degenerate')\n if permutation is None:\n permutation = range(1, len(strands) + 1)\n lines = self._multi_lines(strands, permutation)\n self._run('mfe', cmd_args, lines)\n structures = self._process_mfe(self._read_tempfile('mfe.mfe'))\n if degenerate:\n return structures\n else:\n return structures[0]\n", "role": "user" }, { "content": "mfe_multi", "role": "assistant" } ]
def x(self, strand, gap, temp=37.0, pseudo=False, material=None, dangles= 'some', sodium=1.0, magnesium=0.0): material = self._set_material(strand, material) cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium, magnesium, multi=False) lines = [str(strand), str(gap)] self._run('subopt', cmd_args, lines) structures = self._process_mfe(self._read_tempfile('subopt.subopt')) return structures
subopt
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strand, gap, temp=37.0, pseudo=False, material=None, dangles=\n 'some', sodium=1.0, magnesium=0.0):\n material = self._set_material(strand, material)\n cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium,\n magnesium, multi=False)\n lines = [str(strand), str(gap)]\n self._run('subopt', cmd_args, lines)\n structures = self._process_mfe(self._read_tempfile('subopt.subopt'))\n return structures\n", "role": "user" }, { "content": "subopt", "role": "assistant" } ]
def x(self, strand, pseudo=False): if pseudo: cmd_args = ['-pseudo'] else: cmd_args = [] stdout = self._run('count', cmd_args, [str(strand)]).split('\n') return int(float(stdout[-2]))
count
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strand, pseudo=False):\n if pseudo:\n cmd_args = ['-pseudo']\n else:\n cmd_args = []\n stdout = self._run('count', cmd_args, [str(strand)]).split('\\n')\n return int(float(stdout[-2]))\n", "role": "user" }, { "content": "count", "role": "assistant" } ]
def x(self, strands, permutation=None, pseudo=False): cmd_args = ['-multi'] if pseudo: cmd_args.append('-pseudo') if permutation is None: permutation = range(1, len(strands) + 1) lines = self._multi_lines(strands, permutation) stdout = self._run('count', cmd_args, lines).split('\n') return int(float(stdout[-2]))
count_multi
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strands, permutation=None, pseudo=False):\n cmd_args = ['-multi']\n if pseudo:\n cmd_args.append('-pseudo')\n if permutation is None:\n permutation = range(1, len(strands) + 1)\n lines = self._multi_lines(strands, permutation)\n stdout = self._run('count', cmd_args, lines).split('\\n')\n return int(float(stdout[-2]))\n", "role": "user" }, { "content": "count_multi", "role": "assistant" } ]
def x(self, strand, dotparens, temp=37.0, pseudo=False, material=None, dangles='some', sodium=1.0, magnesium=0.0): material = self._set_material(strand, material) cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium, magnesium, multi=False) lines = [str(strand), dotparens] stdout = self._run('energy', cmd_args, lines).split('\n') return float(stdout[-2])
energy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strand, dotparens, temp=37.0, pseudo=False, material=None,\n dangles='some', sodium=1.0, magnesium=0.0):\n material = self._set_material(strand, material)\n cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium,\n magnesium, multi=False)\n lines = [str(strand), dotparens]\n stdout = self._run('energy', cmd_args, lines).split('\\n')\n return float(stdout[-2])\n", "role": "user" }, { "content": "energy", "role": "assistant" } ]
def x(self, strands, max_size, ordered=False, pairs=False, mfe=False, cutoff=0.001, degenerate=False, temp=37.0, pseudo=False, material=None, dangles='some', sodium=1.0, magnesium=0.0): material = self._set_material(strands, material, multi=True) cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium, magnesium, multi=False) cmd_args.append('-quiet') if mfe: cmd_args.append('-mfe') ordered = True if degenerate: cmd_args.append('-degenerate') if ordered: cmd_args.append('-ordered') if pairs: cmd_args.append('-pairs') cmd_args.append('-cutoff') cmd_args.append(cutoff) dim = sum([len(s) for s in strands]) nstrands = len(strands) lines = self._multi_lines(strands, [max_size]) self._run('complexes', cmd_args, lines) if ordered: ocx_lines = self._read_tempfile('complexes.ocx').split('\n') output = [] for line in ocx_lines: if line and not line.startswith('%'): data = line.split('\t') energy = float(data[-1]) complexes = [int(d) for d in data[2:2 + nstrands]] permutation = int(data[1]) output.append({'energy': energy, 'complex': complexes, 'permutation': permutation}) key_lines = self._read_tempfile('complexes.ocx-key').split('\n') data_lines = [l for l in key_lines if not l.startswith('%')] data_lines.pop() for i, line in enumerate(data_lines): data = line.split('\t') keys = [int(d) for d in data[2:-1]] output[i]['order'] = keys if pairs: epairs_data = self._read_tempfile('complexes.ocx-epairs') pairslist = self._process_epairs(epairs_data) for i, pairs in enumerate(pairslist): output[i]['epairs'] = self._pairs_to_np(pairs, dim) if mfe: mfe_data = self._read_tempfile('complexes.ocx-mfe') if degenerate: return NotImplementedError('Not implemented for complexes') else: mfe_output = self._process_mfe(mfe_data, complexes=True) for i, mfedat in enumerate(mfe_output): output[i]['mfe'] = mfedat['mfe'] output[i]['dotparens'] = mfedat['dotparens'] output[i]['pairlist'] = mfedat['pairlist'] else: cx_lines = self._read_tempfile('complexes.cx').split('\n') cx_lines.pop() output = [] for line in cx_lines: if not line.startswith('%'): data = line.split('\t') energy = float(data[-1]) complexes = [int(d) for d in data[1:1 + len(strands)]] output.append({'energy': energy, 'complex': complexes}) if pairs: epairs_data = self._read_tempfile('complexes.cx-epairs') pairslist = self._process_epairs(epairs_data) for i, pairs in enumerate(pairslist): proba_mat = self._pairs_to_np(pairs, dim) output[i]['epairs'] = proba_mat for cx in output: cx['strands'] = [s.copy() for s in strands] return output
complexes
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strands, max_size, ordered=False, pairs=False, mfe=False,\n cutoff=0.001, degenerate=False, temp=37.0, pseudo=False, material=None,\n dangles='some', sodium=1.0, magnesium=0.0):\n material = self._set_material(strands, material, multi=True)\n cmd_args = self._prep_cmd_args(temp, dangles, material, pseudo, sodium,\n magnesium, multi=False)\n cmd_args.append('-quiet')\n if mfe:\n cmd_args.append('-mfe')\n ordered = True\n if degenerate:\n cmd_args.append('-degenerate')\n if ordered:\n cmd_args.append('-ordered')\n if pairs:\n cmd_args.append('-pairs')\n cmd_args.append('-cutoff')\n cmd_args.append(cutoff)\n dim = sum([len(s) for s in strands])\n nstrands = len(strands)\n lines = self._multi_lines(strands, [max_size])\n self._run('complexes', cmd_args, lines)\n if ordered:\n ocx_lines = self._read_tempfile('complexes.ocx').split('\\n')\n output = []\n for line in ocx_lines:\n if line and not line.startswith('%'):\n data = line.split('\\t')\n energy = float(data[-1])\n complexes = [int(d) for d in data[2:2 + nstrands]]\n permutation = int(data[1])\n output.append({'energy': energy, 'complex': complexes,\n 'permutation': permutation})\n key_lines = self._read_tempfile('complexes.ocx-key').split('\\n')\n data_lines = [l for l in key_lines if not l.startswith('%')]\n data_lines.pop()\n for i, line in enumerate(data_lines):\n data = line.split('\\t')\n keys = [int(d) for d in data[2:-1]]\n output[i]['order'] = keys\n if pairs:\n epairs_data = self._read_tempfile('complexes.ocx-epairs')\n pairslist = self._process_epairs(epairs_data)\n for i, pairs in enumerate(pairslist):\n output[i]['epairs'] = self._pairs_to_np(pairs, dim)\n if mfe:\n mfe_data = self._read_tempfile('complexes.ocx-mfe')\n if degenerate:\n return NotImplementedError('Not implemented for complexes')\n else:\n mfe_output = self._process_mfe(mfe_data, complexes=True)\n for i, mfedat in enumerate(mfe_output):\n output[i]['mfe'] = mfedat['mfe']\n output[i]['dotparens'] = mfedat['dotparens']\n output[i]['pairlist'] = mfedat['pairlist']\n else:\n cx_lines = self._read_tempfile('complexes.cx').split('\\n')\n cx_lines.pop()\n output = []\n for line in cx_lines:\n if not line.startswith('%'):\n data = line.split('\\t')\n energy = float(data[-1])\n complexes = [int(d) for d in data[1:1 + len(strands)]]\n output.append({'energy': energy, 'complex': complexes})\n if pairs:\n epairs_data = self._read_tempfile('complexes.cx-epairs')\n pairslist = self._process_epairs(epairs_data)\n for i, pairs in enumerate(pairslist):\n proba_mat = self._pairs_to_np(pairs, dim)\n output[i]['epairs'] = proba_mat\n for cx in output:\n cx['strands'] = [s.copy() for s in strands]\n return output\n", "role": "user" }, { "content": "complexes", "role": "assistant" } ]
def x(self, strands, max_size): cmd_args = ['-quiet', '-timeonly'] lines = self._multi_lines(strands, [max_size]) stdout = self._run('complexes', cmd_args, lines) return float(re.search('calculation\\: (.*) seconds', stdout).group(1))
complexes_timeonly
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strands, max_size):\n cmd_args = ['-quiet', '-timeonly']\n lines = self._multi_lines(strands, [max_size])\n stdout = self._run('complexes', cmd_args, lines)\n return float(re.search('calculation\\\\: (.*) seconds', stdout).group(1))\n", "role": "user" }, { "content": "complexes_timeonly", "role": "assistant" } ]
def x(self, complexes, concs, ordered=False, pairs=False, cutoff=0.001, temp=37.0): nstrands = len(complexes[0]['strands']) try: if len(concs) != nstrands: raise ValueError('concs argument not same length as strands.') except TypeError: concs = [concs for i in range(len(complexes['strands']))] cmd_args = ['-quiet'] if ordered: cmd_args.append('-ordered') with open(os.path.join(self._tempdir, 'concentrations.con')) as f: f.writelines(concs) header = ['%t Number of strands: {}'.format(nstrands), '%\tid\tsequence'] for i, strand in enumerate(complexes['strands']): header.append('%\t{}\t{}'.format(i + 1, strand)) header.append('%\tT = {}'.format(temp)) body = [] for i, cx in enumerate(complexes): permutation = '\t'.join(complexes['complex']) line = '{}\t{}\t{}'.format(i + 1, permutation, complexes['energy']) body.append(line) if ordered: cxfile = os.path.join(self._tempdir, 'concentrations.ocx') else: cxfile = os.path.join(self._tempdir, 'concentrations.cx') with open(cxfile) as f: f.writelines(header + body) self._run('concentrations', cmd_args, None) eq_lines = self._read_tempfile('concentrations.eq').split('\n') tsv_lines = [l for l in eq_lines if not l.startswith('%')] output = [] for i, line in enumerate(tsv_lines): data = line.split('\t') cx = [int(c) for c in data[1:nstrands]] eq = float(data[nstrands + 2]) output[i] = {'complex': cx, 'concentration': eq} if pairs: pairs = self._read_tempfile('concentrations.fpairs') pairs_tsv = [l for l in pairs.split('\n') if not l.startswith('%')] dim = int(pairs_tsv.pop(0)) pprob = [[int(p[0]), int(p[1]), float(p[2])] for p in pairs_tsv] fpairs_mat = self.pairs_to_np(pprob, dim) for i, out in enumerate(output): output[i]['fpairs'] = fpairs_mat return output
concentrations
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, complexes, concs, ordered=False, pairs=False, cutoff=0.001,\n temp=37.0):\n nstrands = len(complexes[0]['strands'])\n try:\n if len(concs) != nstrands:\n raise ValueError('concs argument not same length as strands.')\n except TypeError:\n concs = [concs for i in range(len(complexes['strands']))]\n cmd_args = ['-quiet']\n if ordered:\n cmd_args.append('-ordered')\n with open(os.path.join(self._tempdir, 'concentrations.con')) as f:\n f.writelines(concs)\n header = ['%t Number of strands: {}'.format(nstrands), '%\\tid\\tsequence']\n for i, strand in enumerate(complexes['strands']):\n header.append('%\\t{}\\t{}'.format(i + 1, strand))\n header.append('%\\tT = {}'.format(temp))\n body = []\n for i, cx in enumerate(complexes):\n permutation = '\\t'.join(complexes['complex'])\n line = '{}\\t{}\\t{}'.format(i + 1, permutation, complexes['energy'])\n body.append(line)\n if ordered:\n cxfile = os.path.join(self._tempdir, 'concentrations.ocx')\n else:\n cxfile = os.path.join(self._tempdir, 'concentrations.cx')\n with open(cxfile) as f:\n f.writelines(header + body)\n self._run('concentrations', cmd_args, None)\n eq_lines = self._read_tempfile('concentrations.eq').split('\\n')\n tsv_lines = [l for l in eq_lines if not l.startswith('%')]\n output = []\n for i, line in enumerate(tsv_lines):\n data = line.split('\\t')\n cx = [int(c) for c in data[1:nstrands]]\n eq = float(data[nstrands + 2])\n output[i] = {'complex': cx, 'concentration': eq}\n if pairs:\n pairs = self._read_tempfile('concentrations.fpairs')\n pairs_tsv = [l for l in pairs.split('\\n') if not l.startswith('%')]\n dim = int(pairs_tsv.pop(0))\n pprob = [[int(p[0]), int(p[1]), float(p[2])] for p in pairs_tsv]\n fpairs_mat = self.pairs_to_np(pprob, dim)\n for i, out in enumerate(output):\n output[i]['fpairs'] = fpairs_mat\n return output\n", "role": "user" }, { "content": "concentrations", "role": "assistant" } ]
def x(self, complexes, counts, volume, maxstates=10000000.0, ordered=False, temp=37.0): nstrands = len(complexes[0]['strands']) if len(counts) != nstrands: raise ValueError('counts argument not same length as strands.') cmd_args = [] if ordered: cmd_args.append('-ordered') countpath = os.path.join(self._tempdir, 'distributions.count') with open(countpath, 'w') as f: f.writelines([str(c) for c in counts] + [str(volume)]) header = ['%t Number of strands: {}'.format(nstrands), '%\tid\tsequence'] for i, strand in enumerate(complexes['strands']): header.append('%\t{}\t{}'.format(i + 1, strand)) header.append('%\tT = {}'.format(temp)) body = [] for i, cx in enumerate(complexes): permutation = '\t'.join(complexes['complex']) line = '{}\t{}\t{}'.format(i + 1, permutation, complexes['energy']) body.append(line) if ordered: cxfile = os.path.join(self._tempdir, 'distributions.ocx') else: cxfile = os.path.join(self._tempdir, 'distributions.cx') with open(cxfile) as f: f.writelines(header + body) stdout = self._run('distributions', cmd_args, None) stdout_lines = stdout.split('\n') if stdout_lines[0].startswith('Exceeded maximum number'): raise LambdaError('Exceeded maxstates combinations.') dist_lines = self._read_tempfile('distributions.dist').split('\n') tsv_lines = [l for l in dist_lines if not l.startswith('%')] tsv_lines.pop() output = [] for i, line in enumerate(tsv_lines): data = line.split('\t') cx = [int(d) for d in data[1:nstrands]] ev = float(data[nstrands + 1]) probcols = [float(d) for d in data[nstrands + 2:]] output[i]['complex'] = cx output[i]['ev'] = ev output[i]['probcols'] = probcols return output
distributions
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, complexes, counts, volume, maxstates=10000000.0, ordered=False,\n temp=37.0):\n nstrands = len(complexes[0]['strands'])\n if len(counts) != nstrands:\n raise ValueError('counts argument not same length as strands.')\n cmd_args = []\n if ordered:\n cmd_args.append('-ordered')\n countpath = os.path.join(self._tempdir, 'distributions.count')\n with open(countpath, 'w') as f:\n f.writelines([str(c) for c in counts] + [str(volume)])\n header = ['%t Number of strands: {}'.format(nstrands), '%\\tid\\tsequence']\n for i, strand in enumerate(complexes['strands']):\n header.append('%\\t{}\\t{}'.format(i + 1, strand))\n header.append('%\\tT = {}'.format(temp))\n body = []\n for i, cx in enumerate(complexes):\n permutation = '\\t'.join(complexes['complex'])\n line = '{}\\t{}\\t{}'.format(i + 1, permutation, complexes['energy'])\n body.append(line)\n if ordered:\n cxfile = os.path.join(self._tempdir, 'distributions.ocx')\n else:\n cxfile = os.path.join(self._tempdir, 'distributions.cx')\n with open(cxfile) as f:\n f.writelines(header + body)\n stdout = self._run('distributions', cmd_args, None)\n stdout_lines = stdout.split('\\n')\n if stdout_lines[0].startswith('Exceeded maximum number'):\n raise LambdaError('Exceeded maxstates combinations.')\n dist_lines = self._read_tempfile('distributions.dist').split('\\n')\n tsv_lines = [l for l in dist_lines if not l.startswith('%')]\n tsv_lines.pop()\n output = []\n for i, line in enumerate(tsv_lines):\n data = line.split('\\t')\n cx = [int(d) for d in data[1:nstrands]]\n ev = float(data[nstrands + 1])\n probcols = [float(d) for d in data[nstrands + 2:]]\n output[i]['complex'] = cx\n output[i]['ev'] = ev\n output[i]['probcols'] = probcols\n return output\n", "role": "user" }, { "content": "distributions", "role": "assistant" } ]
def x(self, strands, permutation): lines = [] lines.append(str(len(strands))) lines += [str(strand) for strand in strands] lines.append(' '.join(str(p) for p in permutation)) return lines
multi_lines
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, strands, permutation):\n lines = []\n lines.append(str(len(strands)))\n lines += [str(strand) for strand in strands]\n lines.append(' '.join(str(p) for p in permutation))\n return lines\n", "role": "user" }, { "content": "multi_lines", "role": "assistant" } ]
def x(self, filename): with open(os.path.join(self._tempdir, filename)) as f: return f.read()
read_tempfile
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, filename):\n with open(os.path.join(self._tempdir, filename)) as f:\n return f.read()\n", "role": "user" }, { "content": "read_tempfile", "role": "assistant" } ]
def x(self, pairlist, dim): mat = np.zeros((dim, dim + 1)) for line in pairlist: i = int(line[0]) - 1 j = int(line[1]) - 1 prob = float(line[2]) mat[i, j] = prob return mat
pairs_to_np
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, pairlist, dim):\n mat = np.zeros((dim, dim + 1))\n for line in pairlist:\n i = int(line[0]) - 1\n j = int(line[1]) - 1\n prob = float(line[2])\n mat[i, j] = prob\n return mat\n", "role": "user" }, { "content": "pairs_to_np", "role": "assistant" } ]
def x(self, feature, parent_len): copy = feature.copy() if copy.strand == 0: copy.strand = 1 else: copy.strand = 0 copy.start = parent_len - copy.start copy.stop = parent_len - copy.stop copy.start, copy.stop = copy.stop, copy.start return copy
flip_feature
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, feature, parent_len):\n copy = feature.copy()\n if copy.strand == 0:\n copy.strand = 1\n else:\n copy.strand = 0\n copy.start = parent_len - copy.start\n copy.stop = parent_len - copy.stop\n copy.start, copy.stop = copy.stop, copy.start\n return copy\n", "role": "user" }, { "content": "flip_feature", "role": "assistant" } ]
def x(self, ape_path=None): cmd = 'ApE' if ape_path is None: ape_executables = [] for path in os.environ['PATH'].split(os.pathsep): exepath = os.path.join(path, cmd) ape_executables.append(os.access(exepath, os.X_OK)) if not any(ape_executables): raise Exception('Ape not in PATH. Use ape_path kwarg.') else: cmd = ape_path tmp = tempfile.mkdtemp() if self.name is not None and self.name: filename = os.path.join(tmp, '{}.ape'.format(self.name)) else: filename = os.path.join(tmp, 'tmp.ape') coral.seqio.write_dna(self, filename) process = subprocess.Popen([cmd, filename]) try: process.wait() shutil.rmtree(tmp) except KeyboardInterrupt: shutil.rmtree(tmp)
ape
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, ape_path=None):\n cmd = 'ApE'\n if ape_path is None:\n ape_executables = []\n for path in os.environ['PATH'].split(os.pathsep):\n exepath = os.path.join(path, cmd)\n ape_executables.append(os.access(exepath, os.X_OK))\n if not any(ape_executables):\n raise Exception('Ape not in PATH. Use ape_path kwarg.')\n else:\n cmd = ape_path\n tmp = tempfile.mkdtemp()\n if self.name is not None and self.name:\n filename = os.path.join(tmp, '{}.ape'.format(self.name))\n else:\n filename = os.path.join(tmp, 'tmp.ape')\n coral.seqio.write_dna(self, filename)\n process = subprocess.Popen([cmd, filename])\n try:\n process.wait()\n shutil.rmtree(tmp)\n except KeyboardInterrupt:\n shutil.rmtree(tmp)\n", "role": "user" }, { "content": "ape", "role": "assistant" } ]
def x(self): features_copy = [feature.copy() for feature in self.features] copy = type(self)(self.top.seq, circular=self.circular, features= features_copy, name=self.name, bottom=self.bottom.seq, run_checks=False ) return copy
copy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n features_copy = [feature.copy() for feature in self.features]\n copy = type(self)(self.top.seq, circular=self.circular, features=\n features_copy, name=self.name, bottom=self.bottom.seq, run_checks=False\n )\n return copy\n", "role": "user" }, { "content": "copy", "role": "assistant" } ]
def x(self): if self.top[-1].seq == '-' and self.bottom[0].seq == '-': raise ValueError('Cannot circularize - termini disconnected.') if self.bottom[-1].seq == '-' and self.top[0].seq == '-': raise ValueError('Cannot circularize - termini disconnected.') copy = self.copy() copy.circular = True copy.top.circular = True copy.bottom.circular = True return copy
circularize
[ { "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.top[-1].seq == '-' and self.bottom[0].seq == '-':\n raise ValueError('Cannot circularize - termini disconnected.')\n if self.bottom[-1].seq == '-' and self.top[0].seq == '-':\n raise ValueError('Cannot circularize - termini disconnected.')\n copy = self.copy()\n copy.circular = True\n copy.top.circular = True\n copy.bottom.circular = True\n return copy\n", "role": "user" }, { "content": "circularize", "role": "assistant" } ]
def x(self): try: from IPython.display import HTML import uuid except ImportError: raise IPythonDisplayImportError sequence_json = self.json() d3cdn = '//d3js.org/d3.v3.min.js' div_id = 'sequence_{}'.format(uuid.uuid1()) cur_dir = os.path.abspath(os.path.dirname(__file__)) d3_plasmid_path = os.path.join(cur_dir, 'd3-plasmid.js') with open(d3_plasmid_path) as f: d3_plasmid_js = f.read() html = '<div id={div_id}></div>'.format(div_id=div_id) js_databind = ( """ <script> require(['{d3_cdn}'], function(lib) {{ window.data = {data};""" .format(div_id=div_id, d3_cdn=d3cdn, data=sequence_json)) js_viz = ( """ d3sequence(window.data, '{div_id}') }}); </script> """ .format(div_id=div_id)) return HTML(html + js_databind + d3_plasmid_js + js_viz)
display
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n try:\n from IPython.display import HTML\n import uuid\n except ImportError:\n raise IPythonDisplayImportError\n sequence_json = self.json()\n d3cdn = '//d3js.org/d3.v3.min.js'\n div_id = 'sequence_{}'.format(uuid.uuid1())\n cur_dir = os.path.abspath(os.path.dirname(__file__))\n d3_plasmid_path = os.path.join(cur_dir, 'd3-plasmid.js')\n with open(d3_plasmid_path) as f:\n d3_plasmid_js = f.read()\n html = '<div id={div_id}></div>'.format(div_id=div_id)\n js_databind = (\n \"\"\"\n <script>\n require(['{d3_cdn}'], function(lib) {{\n window.data = {data};\"\"\"\n .format(div_id=div_id, d3_cdn=d3cdn, data=sequence_json))\n js_viz = (\n \"\"\"\n d3sequence(window.data, '{div_id}')\n }});\n </script>\n \"\"\"\n .format(div_id=div_id))\n return HTML(html + js_databind + d3_plasmid_js + js_viz)\n", "role": "user" }, { "content": "display", "role": "assistant" } ]
def x(self, feature): rotated = self.rotate_to_feature(feature) excised = rotated[feature.stop - feature.start:] return excised
excise
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, feature):\n rotated = self.rotate_to_feature(feature)\n excised = rotated[feature.stop - feature.start:]\n return excised\n", "role": "user" }, { "content": "excise", "role": "assistant" } ]
def x(self, feature, remove_subfeatures=False): extracted = self[feature.start:feature.stop] for gap in feature.gaps: for i in range(*gap): extracted[i] = self._any_char if remove_subfeatures: extracted.features = [feature] for feature in extracted.features: feature.move(-feature.start) return extracted
extract
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, feature, remove_subfeatures=False):\n extracted = self[feature.start:feature.stop]\n for gap in feature.gaps:\n for i in range(*gap):\n extracted[i] = self._any_char\n if remove_subfeatures:\n extracted.features = [feature]\n for feature in extracted.features:\n feature.move(-feature.start)\n return extracted\n", "role": "user" }, { "content": "extract", "role": "assistant" } ]
def x(self): copy = self.copy() copy.top, copy.bottom = copy.bottom, copy.top copy.features = [_flip_feature(f, len(self)) for f in copy.features] return copy
flip
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n copy = self.copy()\n copy.top, copy.bottom = copy.bottom, copy.top\n copy.features = [_flip_feature(f, len(self)) for f in copy.features]\n return copy\n", "role": "user" }, { "content": "flip", "role": "assistant" } ]
def x(self, index=0): if not self.circular: raise ValueError('Cannot relinearize linear DNA.') copy = self.copy() if index: return copy[index:] + copy[:index] copy.circular = False copy.top.circular = False copy.bottom.circular = False return copy
linearize
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, index=0):\n if not self.circular:\n raise ValueError('Cannot relinearize linear DNA.')\n copy = self.copy()\n if index:\n return copy[index:] + copy[:index]\n copy.circular = False\n copy.top.circular = False\n copy.bottom.circular = False\n return copy\n", "role": "user" }, { "content": "linearize", "role": "assistant" } ]
def x(self, pattern): top_matches = self.top.locate(pattern) bottom_matches = self.bottom.locate(pattern) return [top_matches, bottom_matches]
locate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, pattern):\n top_matches = self.top.locate(pattern)\n bottom_matches = self.bottom.locate(pattern)\n return [top_matches, bottom_matches]\n", "role": "user" }, { "content": "locate", "role": "assistant" } ]
def x(self, n): if not self.circular and n != 0: raise ValueError('Cannot rotate linear DNA') else: copy = self.copy() copy.top = self.top.rotate(n) copy.bottom = self.bottom.rotate(-n) copy.features = [] for feature in self.features: feature_copy = feature.copy() feature_copy.move(n) feature_copy.start = feature_copy.start % len(self) feature_copy.stop = feature_copy.stop % len(self) copy.features.append(feature_copy) return copy.circularize()
rotate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, n):\n if not self.circular and n != 0:\n raise ValueError('Cannot rotate linear DNA')\n else:\n copy = self.copy()\n copy.top = self.top.rotate(n)\n copy.bottom = self.bottom.rotate(-n)\n copy.features = []\n for feature in self.features:\n feature_copy = feature.copy()\n feature_copy.move(n)\n feature_copy.start = feature_copy.start % len(self)\n feature_copy.stop = feature_copy.stop % len(self)\n copy.features.append(feature_copy)\n return copy.circularize()\n", "role": "user" }, { "content": "rotate", "role": "assistant" } ]
def x(self): copy = self.copy() copy.top = self.top.reverse_complement() copy.bottom = self.bottom.reverse_complement() copy.features = [] return copy
reverse_complement
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n copy = self.copy()\n copy.top = self.top.reverse_complement()\n copy.bottom = self.bottom.reverse_complement()\n copy.features = []\n return copy\n", "role": "user" }, { "content": "reverse_complement", "role": "assistant" } ]
def x(self, term, by='name', fuzzy=False): features = [] if fuzzy: fuzzy_term = term.lower() for feature in self.features: if fuzzy_term in feature.__getattribute__(by).lower(): features.append(feature) else: for feature in self.features: if feature.__getattribute__(by) == term: features.append(feature) return features
select_features
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, term, by='name', fuzzy=False):\n features = []\n if fuzzy:\n fuzzy_term = term.lower()\n for feature in self.features:\n if fuzzy_term in feature.__getattribute__(by).lower():\n features.append(feature)\n else:\n for feature in self.features:\n if feature.__getattribute__(by) == term:\n features.append(feature)\n return features\n", "role": "user" }, { "content": "select_features", "role": "assistant" } ]
def x(self, name=None, feature_type='misc_feature'): if name is None: if not self.name: raise ValueError( 'name attribute missing from DNA instance and arguments') name = self.name return Feature(name, start=0, stop=len(self), feature_type=feature_type)
to_feature
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, name=None, feature_type='misc_feature'):\n if name is None:\n if not self.name:\n raise ValueError(\n 'name attribute missing from DNA instance and arguments')\n name = self.name\n return Feature(name, start=0, stop=len(self), feature_type=feature_type)\n", "role": "user" }, { "content": "to_feature", "role": "assistant" } ]
def x(self): for index in self.cut_site: if index < 0 or index > len(self.recognition_site) + 1: return True return False
cuts_outside
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n for index in self.cut_site:\n if index < 0 or index > len(self.recognition_site) + 1:\n return True\n return False\n", "role": "user" }, { "content": "cuts_outside", "role": "assistant" } ]
def x(self): return type(self)(self.anneal, self.tm, overhang=self.overhang, name= self.name, note=self.note)
copy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n return type(self)(self.anneal, self.tm, overhang=self.overhang, name=\n self.name, note=self.note)\n", "role": "user" }, { "content": "copy", "role": "assistant" } ]
def x(seq, dna_conc=50, salt_conc=50, parameters='cloning'): if parameters == 'breslauer': params = tm_params.BRESLAUER elif parameters == 'sugimoto': params = tm_params.SUGIMOTO elif parameters == 'santalucia96': params = tm_params.SANTALUCIA96 elif parameters == 'santalucia98' or parameters == 'cloning_sl98': params = tm_params.SANTALUCIA98 elif parameters == 'cloning': params = tm_params.CLONING else: raise ValueError('Unsupported parameter set.') pars = {'delta_h': params['delta_h'], 'delta_s': params['delta_s']} pars_error = {'delta_h': params['delta_h_err'], 'delta_s': params[ 'delta_s_err']} if parameters == 'breslauer': deltas = breslauer_corrections(seq, pars_error) elif parameters == 'sugimoto': deltas = breslauer_corrections(seq, pars_error) elif parameters == 'santalucia96': deltas = breslauer_corrections(seq, pars_error) elif parameters == 'santalucia98' or parameters == 'cloning_sl98': deltas = santalucia98_corrections(seq, pars_error) elif parameters == 'cloning': deltas = breslauer_corrections(seq, pars_error) deltas[0] += 3.4 deltas[1] += 12.4 seq = str(seq).upper() if 'N' in seq: raise ValueError("Can't calculate Tm of an N base.") new_delt = _pair_deltas(seq, pars) deltas[0] += new_delt[0] deltas[1] += new_delt[1] salt_conc /= 1000.0 dna_conc /= 1000000000.0 deltas[0] *= 1000.0 R = 1.9872 if parameters == 'breslauer' or parameters == 'cloning': numerator = -deltas[0] denominator = -deltas[1] + R * log(dna_conc / 16.0) salt_adjustment = 16.6 * log(salt_conc) / log(10.0) melt = numerator / denominator + salt_adjustment - 273.15 elif parameters == 'santalucia98' or 'cloning_sl98': numerator = -deltas[0] salt_adjustment = 0.368 * (len(seq) - 1) * log(salt_conc) denominator = -deltas[1] + salt_adjustment + R * log(dna_conc / 4.0) melt = -deltas[0] / denominator - 273.15 elif parameters == 'santalucia96': numerator = -deltas[0] denominator = -deltas[1] + R * log(dna_conc / 4.0) salt_adjustment = 12.5 * log10(salt_conc) melt = numerator / denominator + salt_adjustment - 273.15 elif parameters == 'sugimoto': numerator = -deltas[0] denominator = -deltas[1] + R * log(dna_conc / 4.0) salt_correction = 16.6 * log10(salt_conc) melt = numerator / denominator + salt_correction - 273.15 if parameters == 'cloning_sl98': melt *= 1.27329212575 melt += -2.55585450119 return melt
tm
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq, dna_conc=50, salt_conc=50, parameters='cloning'):\n if parameters == 'breslauer':\n params = tm_params.BRESLAUER\n elif parameters == 'sugimoto':\n params = tm_params.SUGIMOTO\n elif parameters == 'santalucia96':\n params = tm_params.SANTALUCIA96\n elif parameters == 'santalucia98' or parameters == 'cloning_sl98':\n params = tm_params.SANTALUCIA98\n elif parameters == 'cloning':\n params = tm_params.CLONING\n else:\n raise ValueError('Unsupported parameter set.')\n pars = {'delta_h': params['delta_h'], 'delta_s': params['delta_s']}\n pars_error = {'delta_h': params['delta_h_err'], 'delta_s': params[\n 'delta_s_err']}\n if parameters == 'breslauer':\n deltas = breslauer_corrections(seq, pars_error)\n elif parameters == 'sugimoto':\n deltas = breslauer_corrections(seq, pars_error)\n elif parameters == 'santalucia96':\n deltas = breslauer_corrections(seq, pars_error)\n elif parameters == 'santalucia98' or parameters == 'cloning_sl98':\n deltas = santalucia98_corrections(seq, pars_error)\n elif parameters == 'cloning':\n deltas = breslauer_corrections(seq, pars_error)\n deltas[0] += 3.4\n deltas[1] += 12.4\n seq = str(seq).upper()\n if 'N' in seq:\n raise ValueError(\"Can't calculate Tm of an N base.\")\n new_delt = _pair_deltas(seq, pars)\n deltas[0] += new_delt[0]\n deltas[1] += new_delt[1]\n salt_conc /= 1000.0\n dna_conc /= 1000000000.0\n deltas[0] *= 1000.0\n R = 1.9872\n if parameters == 'breslauer' or parameters == 'cloning':\n numerator = -deltas[0]\n denominator = -deltas[1] + R * log(dna_conc / 16.0)\n salt_adjustment = 16.6 * log(salt_conc) / log(10.0)\n melt = numerator / denominator + salt_adjustment - 273.15\n elif parameters == 'santalucia98' or 'cloning_sl98':\n numerator = -deltas[0]\n salt_adjustment = 0.368 * (len(seq) - 1) * log(salt_conc)\n denominator = -deltas[1] + salt_adjustment + R * log(dna_conc / 4.0)\n melt = -deltas[0] / denominator - 273.15\n elif parameters == 'santalucia96':\n numerator = -deltas[0]\n denominator = -deltas[1] + R * log(dna_conc / 4.0)\n salt_adjustment = 12.5 * log10(salt_conc)\n melt = numerator / denominator + salt_adjustment - 273.15\n elif parameters == 'sugimoto':\n numerator = -deltas[0]\n denominator = -deltas[1] + R * log(dna_conc / 4.0)\n salt_correction = 16.6 * log10(salt_conc)\n melt = numerator / denominator + salt_correction - 273.15\n if parameters == 'cloning_sl98':\n melt *= 1.27329212575\n melt += -2.55585450119\n return melt\n", "role": "user" }, { "content": "tm", "role": "assistant" } ]
def x(seq, pars): delta0 = 0 delta1 = 0 for i in range(len(seq) - 1): curchar = seq[i:i + 2] delta0 += pars['delta_h'][curchar] delta1 += pars['delta_s'][curchar] return delta0, delta1
pair_deltas
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq, pars):\n delta0 = 0\n delta1 = 0\n for i in range(len(seq) - 1):\n curchar = seq[i:i + 2]\n delta0 += pars['delta_h'][curchar]\n delta1 += pars['delta_s'][curchar]\n return delta0, delta1\n", "role": "user" }, { "content": "pair_deltas", "role": "assistant" } ]
def x(seq, pars_error): deltas_corr = [0, 0] contains_gc = 'G' in str(seq) or 'C' in str(seq) only_at = str(seq).count('A') + str(seq).count('T') == len(seq) symmetric = seq == seq.reverse_complement() terminal_t = str(seq)[0] == 'T' + str(seq)[-1] == 'T' for i, delta in enumerate(['delta_h', 'delta_s']): if contains_gc: deltas_corr[i] += pars_error[delta]['anyGC'] if only_at: deltas_corr[i] += pars_error[delta]['onlyAT'] if symmetric: deltas_corr[i] += pars_error[delta]['symmetry'] if terminal_t and delta == 'delta_h': deltas_corr[i] += pars_error[delta]['terminalT'] * terminal_t return deltas_corr
breslauer_corrections
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq, pars_error):\n deltas_corr = [0, 0]\n contains_gc = 'G' in str(seq) or 'C' in str(seq)\n only_at = str(seq).count('A') + str(seq).count('T') == len(seq)\n symmetric = seq == seq.reverse_complement()\n terminal_t = str(seq)[0] == 'T' + str(seq)[-1] == 'T'\n for i, delta in enumerate(['delta_h', 'delta_s']):\n if contains_gc:\n deltas_corr[i] += pars_error[delta]['anyGC']\n if only_at:\n deltas_corr[i] += pars_error[delta]['onlyAT']\n if symmetric:\n deltas_corr[i] += pars_error[delta]['symmetry']\n if terminal_t and delta == 'delta_h':\n deltas_corr[i] += pars_error[delta]['terminalT'] * terminal_t\n return deltas_corr\n", "role": "user" }, { "content": "breslauer_corrections", "role": "assistant" } ]
def x(seq, pars_error): deltas_corr = [0, 0] first = str(seq)[0] last = str(seq)[-1] start_gc = first == 'G' or first == 'C' start_at = first == 'A' or first == 'T' end_gc = last == 'G' or last == 'C' end_at = last == 'A' or last == 'T' init_gc = start_gc + end_gc init_at = start_at + end_at symmetric = seq == seq.reverse_complement() for i, delta in enumerate(['delta_h', 'delta_s']): deltas_corr[i] += init_gc * pars_error[delta]['initGC'] deltas_corr[i] += init_at * pars_error[delta]['initAT'] if symmetric: deltas_corr[i] += pars_error[delta]['symmetry'] return deltas_corr
santalucia98_corrections
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq, pars_error):\n deltas_corr = [0, 0]\n first = str(seq)[0]\n last = str(seq)[-1]\n start_gc = first == 'G' or first == 'C'\n start_at = first == 'A' or first == 'T'\n end_gc = last == 'G' or last == 'C'\n end_at = last == 'A' or last == 'T'\n init_gc = start_gc + end_gc\n init_at = start_at + end_at\n symmetric = seq == seq.reverse_complement()\n for i, delta in enumerate(['delta_h', 'delta_s']):\n deltas_corr[i] += init_gc * pars_error[delta]['initGC']\n deltas_corr[i] += init_at * pars_error[delta]['initAT']\n if symmetric:\n deltas_corr[i] += pars_error[delta]['symmetry']\n return deltas_corr\n", "role": "user" }, { "content": "santalucia98_corrections", "role": "assistant" } ]
def x(sequences, gap_open=1.53, gap_extension=0.0, retree=2): arguments = ['mafft'] arguments += ['--op', str(gap_open)] arguments += ['--ep', str(gap_extension)] arguments += ['--retree', str(retree)] arguments.append('input.fasta') tempdir = tempfile.mkdtemp() try: with open(os.path.join(tempdir, 'input.fasta'), 'w') as f: for i, sequence in enumerate(sequences): if hasattr(sequence, 'name'): name = sequence.name else: name = 'sequence{}'.format(i) f.write('>{}\n'.format(name)) f.write(str(sequence) + '\n') process = subprocess.Popen(arguments, stdout=subprocess.PIPE, stderr=open(os.devnull, 'w'), cwd=tempdir) stdout = process.communicate()[0] finally: shutil.rmtree(tempdir) records = stdout.split('>') records.pop(0) aligned_list = [] for record in records: lines = record.split('\n') name = lines.pop(0) aligned_list.append(coral.DNA(''.join(lines))) return aligned_list
MAFFT
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(sequences, gap_open=1.53, gap_extension=0.0, retree=2):\n arguments = ['mafft']\n arguments += ['--op', str(gap_open)]\n arguments += ['--ep', str(gap_extension)]\n arguments += ['--retree', str(retree)]\n arguments.append('input.fasta')\n tempdir = tempfile.mkdtemp()\n try:\n with open(os.path.join(tempdir, 'input.fasta'), 'w') as f:\n for i, sequence in enumerate(sequences):\n if hasattr(sequence, 'name'):\n name = sequence.name\n else:\n name = 'sequence{}'.format(i)\n f.write('>{}\\n'.format(name))\n f.write(str(sequence) + '\\n')\n process = subprocess.Popen(arguments, stdout=subprocess.PIPE,\n stderr=open(os.devnull, 'w'), cwd=tempdir)\n stdout = process.communicate()[0]\n finally:\n shutil.rmtree(tempdir)\n records = stdout.split('>')\n records.pop(0)\n aligned_list = []\n for record in records:\n lines = record.split('\\n')\n name = lines.pop(0)\n aligned_list.append(coral.DNA(''.join(lines)))\n return aligned_list\n", "role": "user" }, { "content": "MAFFT", "role": "assistant" } ]
def x(seq, size): seq = str(seq) n_mers = [seq[i:i + size] for i in range(len(seq) - size + 1)] counted = Counter(n_mers) found_repeats = [(key, value) for key, value in counted.iteritems() if value > 1] return found_repeats
repeats
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq, size):\n seq = str(seq)\n n_mers = [seq[i:i + size] for i in range(len(seq) - size + 1)]\n counted = Counter(n_mers)\n found_repeats = [(key, value) for key, value in counted.iteritems() if \n value > 1]\n return found_repeats\n", "role": "user" }, { "content": "repeats", "role": "assistant" } ]
def x(seq_list, linear=False, homology=10, tm=63.0): seq_list = list(set(seq_list)) for seq in seq_list: if seq.circular: raise ValueError('Input sequences must be linear.') working_list = [s.copy() for s in seq_list] while len(working_list) > 1: working_list = _find_fuse_next(working_list, homology, tm) if not linear: working_list = _fuse_last(working_list, homology, tm) working_list[0].features = [] return _annotate_features(working_list[0], seq_list)
gibson
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq_list, linear=False, homology=10, tm=63.0):\n seq_list = list(set(seq_list))\n for seq in seq_list:\n if seq.circular:\n raise ValueError('Input sequences must be linear.')\n working_list = [s.copy() for s in seq_list]\n while len(working_list) > 1:\n working_list = _find_fuse_next(working_list, homology, tm)\n if not linear:\n working_list = _fuse_last(working_list, homology, tm)\n working_list[0].features = []\n return _annotate_features(working_list[0], seq_list)\n", "role": "user" }, { "content": "gibson", "role": "assistant" } ]
def x(working_list, homology, tm): pattern = working_list[0] targets = working_list[1:] def x(strand1, strand2): graph = [] for i, target in enumerate(targets): matchlen = homology_report(pattern, target, strand1, strand2, cutoff=homology, min_tm=tm) if matchlen: graph.append((i, matchlen, strand1, strand2)) return graph graph_ww = graph_strands('w', 'w') graph_wc = graph_strands('w', 'c') graph_cw = graph_strands('c', 'w') graph_cc = graph_strands('c', 'c') graphs_w = graph_ww + graph_wc graphs_c = graph_cw + graph_cc graphs = graphs_w + graphs_c if len(graphs_w) > 1 or len(graphs_c) > 1: raise AmbiguousGibsonError('multiple compatible ends.') if len(graphs_w) == len(graphs_c) == 0: raise GibsonOverlapError('Failed to find compatible Gibson ends.') match = graphs[0] if match[2] == 'c': left_side = pattern.reverse_complement() else: left_side = pattern if match[3] == 'w': right_side = working_list.pop(match[0] + 1).reverse_complement() else: right_side = working_list.pop(match[0] + 1) working_list[0] = left_side + right_side[match[1]:] return working_list
find_fuse_next
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(working_list, homology, tm):\n pattern = working_list[0]\n targets = working_list[1:]\n\n def x(strand1, strand2):\n graph = []\n for i, target in enumerate(targets):\n matchlen = homology_report(pattern, target, strand1, strand2,\n cutoff=homology, min_tm=tm)\n if matchlen:\n graph.append((i, matchlen, strand1, strand2))\n return graph\n graph_ww = graph_strands('w', 'w')\n graph_wc = graph_strands('w', 'c')\n graph_cw = graph_strands('c', 'w')\n graph_cc = graph_strands('c', 'c')\n graphs_w = graph_ww + graph_wc\n graphs_c = graph_cw + graph_cc\n graphs = graphs_w + graphs_c\n if len(graphs_w) > 1 or len(graphs_c) > 1:\n raise AmbiguousGibsonError('multiple compatible ends.')\n if len(graphs_w) == len(graphs_c) == 0:\n raise GibsonOverlapError('Failed to find compatible Gibson ends.')\n match = graphs[0]\n if match[2] == 'c':\n left_side = pattern.reverse_complement()\n else:\n left_side = pattern\n if match[3] == 'w':\n right_side = working_list.pop(match[0] + 1).reverse_complement()\n else:\n right_side = working_list.pop(match[0] + 1)\n working_list[0] = left_side + right_side[match[1]:]\n return working_list\n", "role": "user" }, { "content": "find_fuse_next", "role": "assistant" } ]
def x(working_list, homology, tm): pattern = working_list[0] def x(strand1, strand2): matchlen = homology_report(pattern, pattern, strand1, strand2, cutoff=homology, min_tm=tm, top_two=True) if matchlen: for length in matchlen: if length != len(pattern): return 0, length, strand1, strand2 else: return [] graph_ww = graph_strands('w', 'w') graph_wc = graph_strands('w', 'c') graph_cc = graph_strands('c', 'c') if graph_ww + graph_cc: raise AmbiguousGibsonError('Self-self binding during circularization.') if not graph_wc: raise ValueError('Failed to find compatible ends for circularization.') working_list[0] = working_list[0][:-graph_wc[1]].circularize() return working_list
fuse_last
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(working_list, homology, tm):\n pattern = working_list[0]\n\n def x(strand1, strand2):\n matchlen = homology_report(pattern, pattern, strand1, strand2,\n cutoff=homology, min_tm=tm, top_two=True)\n if matchlen:\n for length in matchlen:\n if length != len(pattern):\n return 0, length, strand1, strand2\n else:\n return []\n graph_ww = graph_strands('w', 'w')\n graph_wc = graph_strands('w', 'c')\n graph_cc = graph_strands('c', 'c')\n if graph_ww + graph_cc:\n raise AmbiguousGibsonError('Self-self binding during circularization.')\n if not graph_wc:\n raise ValueError('Failed to find compatible ends for circularization.')\n working_list[0] = working_list[0][:-graph_wc[1]].circularize()\n return working_list\n", "role": "user" }, { "content": "fuse_last", "role": "assistant" } ]
def x(seq1, seq2, strand1, strand2, cutoff=0, min_tm=63.0, top_two=False, max_size=500): if strand1 == 'c': seq1 = seq1.reverse_complement() if strand2 == 'w': seq2 = seq2.reverse_complement() seq1_str = str(seq1) seq2_str = str(seq2) def x(s1, s2): chunks1 = [seq1_str[-(i + 1):] for i in range(min(len(seq1_str), max_size))] chunks2 = [seq2_str[:i + 1] for i in range(min(len(seq2_str), max_size))] return chunks1, chunks2 seq1_chunks, seq2_chunks = gen_chunks(seq1_str, seq2_str) target_matches = [] for i, (s1, s2) in enumerate(zip(seq1_chunks, seq2_chunks)): s1len = len(s1) if s1 == s2: logger.debug('Found Match: {}'.format(str(s1))) if s1len >= cutoff: tm = coral.analysis.tm(seq1[-(i + 1):]) logger.debug('Match tm: {} C'.format(tm)) if tm >= min_tm: target_matches.append(s1len) elif tm >= min_tm - 4: msg = 'One overlap had a Tm of {} C.'.format(tm) warnings.warn(msg) target_matches.append(s1len) target_matches.sort() if not top_two: return 0 if not target_matches else target_matches[0] else: return 0 if not target_matches else target_matches[0:2]
homology_report
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(seq1, seq2, strand1, strand2, cutoff=0, min_tm=63.0, top_two=False,\n max_size=500):\n if strand1 == 'c':\n seq1 = seq1.reverse_complement()\n if strand2 == 'w':\n seq2 = seq2.reverse_complement()\n seq1_str = str(seq1)\n seq2_str = str(seq2)\n\n def x(s1, s2):\n chunks1 = [seq1_str[-(i + 1):] for i in range(min(len(seq1_str),\n max_size))]\n chunks2 = [seq2_str[:i + 1] for i in range(min(len(seq2_str),\n max_size))]\n return chunks1, chunks2\n seq1_chunks, seq2_chunks = gen_chunks(seq1_str, seq2_str)\n target_matches = []\n for i, (s1, s2) in enumerate(zip(seq1_chunks, seq2_chunks)):\n s1len = len(s1)\n if s1 == s2:\n logger.debug('Found Match: {}'.format(str(s1)))\n if s1len >= cutoff:\n tm = coral.analysis.tm(seq1[-(i + 1):])\n logger.debug('Match tm: {} C'.format(tm))\n if tm >= min_tm:\n target_matches.append(s1len)\n elif tm >= min_tm - 4:\n msg = 'One overlap had a Tm of {} C.'.format(tm)\n warnings.warn(msg)\n target_matches.append(s1len)\n target_matches.sort()\n if not top_two:\n return 0 if not target_matches else target_matches[0]\n else:\n return 0 if not target_matches else target_matches[0:2]\n", "role": "user" }, { "content": "homology_report", "role": "assistant" } ]