def _launchSlaveProcesses(self): """ Launch a group of worker processes (self._workers), the queue (self._workQueue) that will be used to send them chunks of work, and the queue that will be used to receive back the results (self._resultsQueue). Additionally, launch the result collector process. """ availableCpus = multiprocessing.cpu_count() logging.info("Available CPUs: %d" % (availableCpus,)) logging.info("Requested worker processes: %d" % (self.options.numWorkers,)) # Use all CPUs if numWorkers < 1 if self.options.numWorkers < 1: self.options.numWorkers = availableCpus # Warn if we make a bad numWorker argument is used if self.options.numWorkers > availableCpus: logging.warn("More worker processes requested (%d) than CPUs available (%d);" " may result in suboptimal performance." % (self.options.numWorkers, availableCpus)) self._initQueues() if self.options.threaded: self.options.numWorkers = 1 WorkerType = KineticWorkerThread else: WorkerType = KineticWorkerProcess # Launch the worker processes self._workers = [] for i in xrange(self.options.numWorkers): p = WorkerType(self.options, self._workQueue, self._resultsQueue, self.ipdModel) self._workers.append(p) p.start() logging.info("Launched worker processes.") # Launch result collector self._resultCollectorProcess = KineticsWriter(self.options, self._resultsQueue, self.refInfo, self.ipdModel) self._resultCollectorProcess.start() logging.info("Launched result collector process.") # Spawn a thread that monitors worker threads for crashes self.monitoringThread = threading.Thread(target=monitorChildProcesses, args=(self._workers + [self._resultCollectorProcess],)) self.monitoringThread.start()
class KineticsToolsRunner(): def __init__(self): desc = ['Tool for detecting DNA base-modifications from kinetic signatures', 'Notes: For all command-line arguments, default values are listed in [].'] description = '\n'.join(desc) self.parser = argparse.ArgumentParser(formatter_class=argparse.RawTextHelpFormatter, description=description) self.parser.add_argument('-v', '--version', action='version', version='%(prog)s ' + self.getVersion()) self.parser.add_argument('infile', metavar='input.cmp.h5', help='Input cmp.h5 filename') self.parser.add_argument('--control', dest='control', default=None, help='cmph.h5 file containing a control sample. Tool will perform a case-control analysis') self.parser.add_argument('--identify', dest='identify', default=False, help='Identify modification types. Comma-separated list of know modification types. Current options are: m6A, m4C, m5C_TET. Cannot be used with --control') # Temporary addition to test LDA for Ca5C detection: self.parser.add_argument('--useLDA', action="store_true", dest='useLDA', default=False, help='Set this flag to debug LDA for m5C/Ca5C detection') self.parser.add_argument("--methylFraction", action="store_true", dest="methylFraction", default=False, help="In the --identify mode, add --methylFraction to command line to estimate the methylated fraction, along with 95%% confidence interval bounds.") self.parser.add_argument('--outfile', dest='outfile', default=None, help='Use this option to generate all possible output files. Argument here is the root filename of the output files.') self.parser.add_argument('--gff', dest='gff', default=None, help='Name of output GFF file [%(default)s]') self.parser.add_argument('--csv', dest='csv', default=None, help='Name of output CSV file [%(default)s]') self.parser.add_argument('--ms_csv', dest='ms_csv', default=None, help='Multisite detection CSV file [%(default)s]') self.parser.add_argument('--pickle', dest='pickle', default=None, help='Name of output pickle file [%(default)s]') self.parser.add_argument('--summary_h5', dest='summary_h5', default=None, help='Name of output summary h5 file [%(default)s]') # New addition: a name for the csv_hdf5 self.parser.add_argument('--csv_h5', dest='csv_h5', default=None, help='Name of csv output to be written in hdf5 format [%(default)s]') self.parser.add_argument('--reference', dest='reference', required=True, help='Path to reference FASTA file or PacBio reference entry directory. (Required)') self.parser.add_argument('--paramsPath', dest='paramsPath', default=None, help='Directory containing in-silico trained model for each chemistry') self.parser.add_argument("--maxLength", default=3e12, type=int, help="Maximum number of bases to process per contig") self.parser.add_argument('--minCoverage', dest='minCoverage', default=3, type=int, help='Minimum coverage required to call a modified base') self.parser.add_argument('--maxQueueSize', dest='maxQueueSize', default=20, type=int, help='Max Queue Size') self.parser.add_argument('--maxCoverage', dest='maxCoverage', type=int, default=-1, help='Maximum coverage to use at each site') self.parser.add_argument('--mapQvThreshold', dest='mapQvThreshold', type=float, default=-1.0) self.parser.add_argument('--pvalue', dest='pvalue', default=0.01, type=float, help='p-value required to call a modified base') self.parser.add_argument('--ipdModel', dest='ipdModel', default=None, help='Alternate synthetic IPD model HDF5 file') self.parser.add_argument('--modelIters', dest='modelIters', type=int, default=-1, help='[Internal] Number of GBM model iteration to use') self.parser.add_argument('--cap_percentile', dest='cap_percentile', type=float, default=99.0, help='Global IPD percentile to cap IPDs at') self.parser.add_argument('--numWorkers', dest='numWorkers', default=-1, # Defaults to using all logical CPUs type=int, help='Number of thread to use (-1 uses all logical cpus)') self.parser.add_argument("--threaded", "-T", action="store_true", dest="threaded", default=False, help="Run threads instead of processes (for debugging purposes only)") self.parser.add_argument("--profile", action="store_true", dest="doProfiling", default=False, help="Enable Python-level profiling (using cProfile).") # New addition: option to process one reference at a time self.parser.add_argument("--refId", type=int, dest='refId', default=-1, help="Specify a single reference index (beginning with 0) rather than looping through all") self.parser.add_argument("--methylMinCov", type=int, dest='methylMinCov', default=10, help="Do not try to estimate methylFraction unless coverage is at least this.") self.parser.add_argument("--identifyMinCov", type=int, dest='identifyMinCov', default=5, help="Do not try to identify the modification type unless coverage is at least this.") def parseArgs(self): self.args = self.parser.parse_args() def start(self): self.parseArgs() self.validateArgs() return self.run() def getVersion(self): return __version__ def validateArgs(self): if not os.path.exists(self.args.infile): self.parser.error('input.cmp.h5 file provided does not exist') if self.args.identify and self.args.control: self.parser.error('--control and --identify are mutally exclusive. Please choose one or the other') # if self.args.methylFraction and not self.args.identify: # self.parser.error('Currently, --methylFraction only works when the --identify option is specified.') def run(self): # Figure out what modifications to identify mods = self.args.identify modsToCall = [] if mods: items = mods.split(",") if 'm6A' in items: modsToCall.append('H') if 'm4C' in items: modsToCall.append('J') if 'm5C_TET' in items: modsToCall.append('K') self.args.identify = True self.args.modsToCall = modsToCall self.options = self.args self.options.cmdLine = " ".join(sys.argv) self._workers = [] # Log generously stdOutHandler = logging.StreamHandler(sys.stdout) logFormat = '%(asctime)s [%(levelname)s] %(message)s' logging.basicConfig(level=logging.INFO, format=logFormat) if self.args.doProfiling: cProfile.runctx("self._mainLoop()", globals=globals(), locals=locals(), filename="profile.out") else: try: ret = self._mainLoop() finally: # Be sure to shutdown child processes if we get an exception on the main thread if not self.args.threaded: for w in self._workers: if w.is_alive(): w.terminate() return ret def _initQueues(self): if self.options.threaded: # Work chunks are created by the main thread and put on this queue # They will be consumed by KineticWorker threads, stored in self._workers self._workQueue = Queue.Queue(self.options.maxQueueSize) # Completed chunks are put on this queue by KineticWorker threads # They are consumed by the KineticsWriter process self._resultsQueue = multiprocessing.JoinableQueue(self.options.maxQueueSize) else: # Work chunks are created by the main thread and put on this queue # They will be consumed by KineticWorker threads, stored in self._workers self._workQueue = multiprocessing.JoinableQueue(self.options.maxQueueSize) # Completed chunks are put on this queue by KineticWorker threads # They are consumed by the KineticsWriter process self._resultsQueue = multiprocessing.JoinableQueue(self.options.maxQueueSize) def _launchSlaveProcesses(self): """ Launch a group of worker processes (self._workers), the queue (self._workQueue) that will be used to send them chunks of work, and the queue that will be used to receive back the results (self._resultsQueue). Additionally, launch the result collector process. """ availableCpus = multiprocessing.cpu_count() logging.info("Available CPUs: %d" % (availableCpus,)) logging.info("Requested worker processes: %d" % (self.options.numWorkers,)) # Use all CPUs if numWorkers < 1 if self.options.numWorkers < 1: self.options.numWorkers = availableCpus # Warn if we make a bad numWorker argument is used if self.options.numWorkers > availableCpus: logging.warn("More worker processes requested (%d) than CPUs available (%d);" " may result in suboptimal performance." % (self.options.numWorkers, availableCpus)) self._initQueues() if self.options.threaded: self.options.numWorkers = 1 WorkerType = KineticWorkerThread else: WorkerType = KineticWorkerProcess # Launch the worker processes self._workers = [] for i in xrange(self.options.numWorkers): p = WorkerType(self.options, self._workQueue, self._resultsQueue, self.ipdModel) self._workers.append(p) p.start() logging.info("Launched worker processes.") # Launch result collector self._resultCollectorProcess = KineticsWriter(self.options, self._resultsQueue, self.refInfo, self.ipdModel) self._resultCollectorProcess.start() logging.info("Launched result collector process.") # Spawn a thread that monitors worker threads for crashes self.monitoringThread = threading.Thread(target=monitorChildProcesses, args=(self._workers + [self._resultCollectorProcess],)) self.monitoringThread.start() def _queueChunksForReference(self, refInfo): """ Compute the chunk extents and queue up the work for a single reference """ # Number of hits on current reference refGroupId = refInfo.ID numHits = (self.cmph5.RefGroupID == refGroupId).sum() # Don't process reference groups with 0 hits. They may not exist? if numHits == 0: return # Maximum chunk size (set no larger than 1Mb for now) MAX_BLOCK_SIZE = 25000 # Maximum number of hits per chunk MAX_HITS = 5000 nBases = min(refInfo.Length, self.args.maxLength) # Adjust numHits if we are only doing part of the contig numHits = (numHits * nBases) / refInfo.Length nBlocks = max([numHits / MAX_HITS, nBases / (MAX_BLOCK_SIZE - 1) + 1]) # Including nBases / (MAX_BLOCK_SIZE - 1) + 1 in nBlocks calculation: # E. coli genome: this should be ~ 10. # Human genome: ought to be largest & is meant to ensure that blockSize < MAX_BLOCK_SIZE. # Block layout blockSize = min(nBases, max(nBases / nBlocks + 1, 1000)) blockStarts = np.arange(0, nBases, step=blockSize) blockEnds = blockStarts + blockSize blocks = zip(blockStarts, blockEnds) logging.info("Queueing chunks for ref: %d. NumReads: %d, Block Size: %d " % (refGroupId, numHits, blockSize)) # Queue up work blocks for block in blocks: # NOTE! The format of a work chunk is (refId <int>, refStartBase <int>, refEndBase <int>) chunk = (refInfo.ID, block[0], block[1]) self._workQueue.put((self.workChunkCounter, chunk)) self.workChunkCounter += 1 if self.workChunkCounter % 10 == 0: logging.info("Queued chunk: %d. Chunks in queue: %d" % (self.workChunkCounter, self._workQueue.qsize())) def loadReferenceAndModel(self, referencePath, cmpH5Path): # Load the reference contigs - annotated with their refID from the cmp.h5 contigs = ReferenceUtils.loadReferenceContigs(referencePath, cmpH5Path) # Read reference info table from cmp.h5 (refInfoTable, movieInfoTable) = ReferenceUtils.loadCmpH5Tables(cmpH5Path) self.refInfo = refInfoTable # There are three different ways the ipdModel can be loaded. # In order of precedence they are: # 1. Explicit path passed to --ipdModel # 2. Path to parameter bundle, model selected using the /MovieInfo/SequencingChemistry tags # 3. Fall back to built-in model. # By default, use built-in model ipdModel = None if self.args.ipdModel: ipdModel = self.args.ipdModel logging.info("Using passed in ipd model: %s" % self.args.ipdModel) if not os.path.exists(self.args.ipdModel): logging.error("Couldn't find model file: %s" % self.args.ipdModel) sys.exit(1) elif self.args.paramsPath: if not os.path.exists(self.args.paramsPath): logging.error("Params path doesn't exist: %s" % self.args.paramsPath) sys.exit(1) # Use the SequencingChemistry data to select an ipd model if 'SequencingChemistry' in movieInfoTable.dtype.fields.keys(): # Pick majority chemistry chemistries = movieInfoTable.SequencingChemistry.tolist() chemCounts = dict([(k, len(list(v))) for (k, v) in itertools.groupby(chemistries)]) majorityChem = max(chemCounts, key=chemCounts.get) # Find the appropriate model file: ipdModel = os.path.join(self.args.paramsPath, majorityChem + ".h5") if majorityChem == 'unknown': logging.warning("Chemistry is unknown. Falling back to built-in model") ipdModel = None elif not os.path.exists(ipdModel): logging.warning("Model not found: %s" % ipdModel) logging.warning("Falling back to built-in model") ipdModel = None else: logging.info("Using Chemistry matched IPD model: %s" % ipdModel) self.ipdModel = IpdModel(contigs, ipdModel, self.args.modelIters) def _mainLoop(self): """ Main loop First launch the worker and writer processes Then we loop over ReferenceGroups in the cmp.h5. For each contig we will: 1. Load the sequence into the main memory of the parent process 3. Chunk up the contig and submit the chunk descriptions to the work queue Finally, wait for the writer process to finish. """ # This looks scary but it's not. Python uses reference # counting and has a secondary, optional garbage collector for # collecting garbage cycles. Unfortunately when a cyclic GC # happens when a thread is calling cPickle.dumps, the # interpreter crashes sometimes. See Bug 19704. Since we # don't leak garbage cycles, disabling the cyclic GC is # essentially harmless. gc.disable() # Load reference and IpdModel self.loadReferenceAndModel(self.args.reference, self.args.infile) # Spawn workers self._launchSlaveProcesses() # WARNING -- cmp.h5 file must be opened AFTER worker processes have been spawned # cmp.h5 we're using -- use this to orchestrate the work self.cmph5 = CmpH5Reader(self.args.infile) logging.info('Generating kinetics summary for [%s]' % self.args.infile) #self.referenceMap = self.cmph5['/RefGroup'].asDict('RefInfoID', 'ID') #self.alnInfo = self.cmph5['/AlnInfo'].asRecArray() # Main loop -- we loop over ReferenceGroups in the cmp.h5. For each contig we will: # 1. Load the sequence into the main memory of the parent process # 2. Fork the workers # 3. chunk up the contig and self.workChunkCounter = 0 if self.options.refId > -1: # Under the --refId option, rather than iterating over references, process # just the one specified reference. # ref = x[ self.options.refId ] ref = self.refInfo[self.options.refId] logging.info('Processing reference entry: [%s]' % ref.Name) self._queueChunksForReference(ref) else: # Iterate over references for ref in self.refInfo: logging.info('Processing reference entry: [%s]' % ref.Name) self._queueChunksForReference(ref) # Shutdown worker threads with None sentinels for i in xrange(self.args.numWorkers): self._workQueue.put(None) for w in self._workers: w.join() # Join on the result queue and the resultsCollector process. # This ensures all the results are written before shutdown. self.monitoringThread.join() self._resultsQueue.join() self._resultCollectorProcess.join() logging.info("ipdSummary.py finished. Exiting.") del self.cmph5 return 0
class ReprocessMotifSites(PBToolRunner): def __init__(self): desc = ['For all sites in motifs.gff, reports estimated methylated fraction and 95% confidence interval', 'Notes: For all command-line arguments, default values are listed in [].'] super(ReprocessMotifSites, self).__init__('\n'.join(desc)) self.parser.add_argument('--numWorkers', dest='numWorkers', default=-1, # Defaults to using all logical CPUs type=int, help='Number of thread to use (-1 uses all logical cpus)') self.parser.add_argument('infile', metavar='input.cmp.h5', help='Input cmp.h5 filename') # self.parser.add_argument('--control', # dest='control', # default=None, # help='cmph.h5 file ') # self.parser.add_argument('--outfile', # dest='outfile', # default=None, # help='Use this option to generate all possible output files. Argument here is the root filename of the output files.') self.parser.add_argument('--gff', dest='gff', default=None, help='Name of output GFF file [%(default)s]') # self.parser.add_argument('--identify', # dest='identify', # default=False, # help='Identify modification types. Comma-separated list of know modification types. Current options are: m6A, m4C, m5C_TET. Cannot be used with --control') # self.parser.add_argument('--csv', # dest='csv', # default=None, # help='Name of output CSV file [%(default)s]') # self.parser.add_argument('--pickle', # dest='pickle', # default=None, # help='Name of output pickle file [%(default)s]') # self.parser.add_argument('--summary_h5', # dest='summary_h5', # default=None, # help='Name of output summary h5 file [%(default)s]') self.parser.add_argument('--reference', dest='reference', required=True, help='Path to reference FASTA file') self.parser.add_argument("--maxLength", default=3e12, type=int, help="Maximum number of bases to process per contig") self.parser.add_argument('--minCoverage', dest='minCoverage', default=3, type=int, help='Minimum coverage required to call a modified base') self.parser.add_argument('--maxQueueSize', dest='maxQueueSize', default=1000, type=int, help='Max Queue Size') self.parser.add_argument('--maxCoverage', dest='maxCoverage', type=int, default=None, help='Maximum coverage to use at each site') self.parser.add_argument('--mapQvThreshold', dest='mapQvThreshold', type=float, default=-1.0) # self.parser.add_argument('--pvalue', # dest='pvalue', # default=0.01, # type=float, # help='p-value required to call a modified base') self.parser.add_argument('--subread_norm', dest='subread_norm', default=True, type=lambda x: x != 'False', help='Normalized subread ipds') self.parser.add_argument('--ipdModel', dest='ipdModel', default=None, help='Alternate synthetic IPD model HDF5 file') self.parser.add_argument('--cap_percentile', dest='cap_percentile', type=float, default=99.0, help='Global IPD percentile to cap IPDs at') self.parser.add_argument("--threaded", "-T", action="store_true", dest="threaded", default=False, help="Run threads instead of processes (for debugging purposes only)") self.parser.add_argument("--profile", action="store_true", dest="doProfiling", default=False, help="Enable Python-level profiling (using cProfile).") # self.parser.add_argument("--methylFraction", # action="store_true", # dest="methylFraction", # default=False, # help="In the --identify mode, add --methylFraction to command line to estimate the methylated fraction, along with 95% confidence interval bounds.") # The following are in addition to ipdSummary.py's inputs: self.parser.add_argument('--motifs', dest="motifs", required=True, help='Name of motifs GFF file [%(default)s]') self.parser.add_argument('--motif_summary', dest="motif_summary", required=True, help='Name of motif summary CSV file') self.parser.add_argument('--undetected', action="store_true", dest="undetected", default=False, help="Setting this flag yields output with only undetected motif sites.") self.parser.add_argument('--modifications', dest="modifications", default=None, help='Name of modifications GFF file [%(default)s]') self.parser.add_argument('--oldData', action="store_true", dest="oldData", default=False, help="For datasets prior to 1.3.3 (use this option to increase testing possibilities)") # A new addition to ipdSummary.py self.parser.add_argument('--paramsPath', dest='paramsPath', default=None, help='Directory containing in-silico trained model for each chemistry') self.parser.add_argument('--modelIters', dest='modelIters', type=int, default=-1, help='[Internal] Number of GBM model iteration to use') def getVersion(self): return __version__ def validateArgs(self): if not os.path.exists(self.args.infile): self.parser.error('input.cmp.h5 file provided does not exist') # Add checks corresponding to new required inputs: if not os.path.exists(self.args.motifs): self.parser.error('input motifs gff file provided does not exist') if not os.path.exists(self.args.motif_summary): self.parser.error('input motif_summary csv file provided does not exist') if not self.args.undetected and not os.path.exists(self.args.modifications): self.parser.error('either the --undetected flag must be set, or a valid modifications.gff must be provided') def run(self): # The following arguments are set in order to use ResultWriter.py as is: self.args.methylFraction = True self.args.outfile = None self.args.csv = None self.args.control = None self.args.summary_h5 = None self.args.pickle = None self.args.identify = False self.args.pvalue = 1.0 self.options = self.args self.options.cmdLine = " ".join(sys.argv) self._workers = [] # Log generously logFormat = '%(asctime)s [%(levelname)s] %(message)s' logging.basicConfig(level=logging.INFO, format=logFormat) stdOutHandler = logging.StreamHandler(sys.stdout) # logging.Logger.root.addHandler(stdOutHandler) # logging.info("t1") if self.args.doProfiling: cProfile.runctx("self._mainLoop()", globals=globals(), locals=locals(), filename="profile-main4.out") else: try: ret = self._mainLoop() finally: # Be sure to shutdown child processes if we get an exception on the main thread if not self.args.threaded: for w in self._workers: if w.is_alive(): w.terminate() return ret def _initQueues(self): if self.options.threaded: # Work chunks are created by the main thread and put on this queue # They will be consumed by KineticWorker threads, stored in self._workers self._workQueue = Queue.Queue(self.options.maxQueueSize) # Completed chunks are put on this queue by KineticWorker threads # They are consumed by the KineticsWriter process self._resultsQueue = multiprocessing.JoinableQueue(self.options.maxQueueSize) else: # Work chunks are created by the main thread and put on this queue # They will be consumed by KineticWorker threads, stored in self._workers self._workQueue = multiprocessing.JoinableQueue(self.options.maxQueueSize) # Completed chunks are put on this queue by KineticWorker threads # They are consumed by the KineticsWriter process self._resultsQueue = multiprocessing.JoinableQueue(self.options.maxQueueSize) def _launchSlaveProcesses(self): """ Launch a group of worker processes (self._workers), the queue (self._workQueue) that will be used to send them chunks of work, and the queue that will be used to receive back the results (self._resultsQueue). Additionally, launch the result collector process. """ availableCpus = multiprocessing.cpu_count() logging.info("Available CPUs: %d" % (availableCpus,)) logging.info("Requested worker processes: %d" % (self.options.numWorkers,)) # Use all CPUs if numWorkers < 1 if self.options.numWorkers < 1: self.options.numWorkers = availableCpus # Warn if we make a bad numWorker argument is used if self.options.numWorkers > availableCpus: logging.warn("More worker processes requested (%d) than CPUs available (%d);" " may result in suboptimal performance." % (self.options.numWorkers, availableCpus)) self._initQueues() if self.options.threaded: self.options.numWorkers = 1 WorkerType = KineticWorkerThread else: WorkerType = KineticWorkerProcess # Launch the worker processes self._workers = [] for i in xrange(self.options.numWorkers): p = WorkerType(self.options, self._workQueue, self._resultsQueue, self.ipdModel) self._workers.append(p) p.start() logging.info("Launched worker processes.") # Launch result collector self._resultCollectorProcess = KineticsWriter(self.options, self._resultsQueue, self.refInfo, self.ipdModel) self._resultCollectorProcess.start() logging.info("Launched result collector process.") # Spawn a thread that monitors worker threads for crashes self.monitoringThread = threading.Thread(target=monitorChildProcesses, args=(self._workers + [self._resultCollectorProcess],)) self.monitoringThread.start() def _queueChunksForReference(self): # Read in motif_summary.csv motifInfo = {} reader = csv.reader(open(self.args.motif_summary, 'r'), delimiter=',') reader.next() if self.options.oldData: col = 1 else: col = 2 for row in reader: motifInfo[row[0]] = row[col] # Figure out the length of the motifs file: motReader = GffReader(self.args.motifs) if self.options.undetected: motifDicts = [{"seqID": x.seqid, "type": x.type, "score": x.score, "pos": x.start, "strand": x.strand, "attributes": x.attributes} for x in motReader if x.type == '.'] else: motifDicts = [{"seqID": x.seqid, "type": x.type, "score": x.score, "pos": x.start, "strand": x.strand, "attributes": x.attributes} for x in motReader] refLength = len(motifDicts) # Maximum number of hits per chunk MAX_HITS = 500 nBases = min(refLength, self.args.maxLength) nBlocks = max(self.options.numWorkers * 4, nBases / MAX_HITS) # Block layout blockSize = min(nBases, max(nBases / nBlocks + 1, 100)) blockStarts = np.arange(0, nBases, step=blockSize) blockEnds = blockStarts + blockSize blocks = zip(blockStarts, blockEnds) if self.options.undetected: self.options.modifications = None # Queue up work blocks for block in blocks: # NOTE! The format of a work chunk is (refId <int>, refStartBase <int>, refEndBase <int>) # chunk = (refInfoId, block[0], block[1]) # chunk = (self.options.motifs, self.refInfo, motifInfo, self.options.modifications, self.options.undetected, self.options.oldData, block[0], block[1]) chunk = (motifDicts[block[0]:block[1]], self.refInfo, motifInfo, self.options.modifications, self.options.undetected, self.options.oldData, block[0], block[1]) self._workQueue.put((self.workChunkCounter, chunk)) self.workChunkCounter += 1 def loadReference(self): # FIXME - support a bare fasta file as well? self.referenceEntry = ReferenceEntry(self.args.reference) self.refInfo = self.referenceEntry.contigs if self.args.ipdModel: self.lutPath = self.args.ipdModel if not os.path.exists(self.lutPath): logging.info("Couldn't find model file: %s" % self.lutPath) raise Exception("Couldn't find model file: %s" % self.lutPath) else: self.lutPath = None self.ipdModel = IpdModel(self.referenceEntry, self.lutPath) def loadReferenceAndModel(self, referencePath, cmpH5Path): # Load the reference contigs - annotated with their refID from the cmp.h5 contigs = ReferenceUtils.loadReferenceContigs(referencePath, cmpH5Path) # Read reference info table from cmp.h5 (refInfoTable, movieInfoTable) = ReferenceUtils.loadCmpH5Tables(cmpH5Path) self.refInfo = refInfoTable # There are three different ways the ipdModel can be loaded. # In order of precedence they are: # 1. Explicit path passed to --ipdModel # 2. Path to parameter bundle, model selected using the /MovieInfo/SequencingChemistry tags # 3. Fall back to built-in model. # By default, use built-in model ipdModel = None if self.args.ipdModel: ipdModel = self.args.ipdModel logging.info("Using passed in ipd model: %s" % self.args.ipdModel) if not os.path.exists(self.args.ipdModel): logging.error("Couldn't find model file: %s" % self.args.ipdModel) elif self.args.paramsPath: if not os.path.exists(self.args.paramsPath): logging.error("Params path doesn't exist: %s" % self.args.paramsPath) sys.exit(1) # Use the SequencingChemistry data to select an ipd model if 'SequencingChemistry' in movieInfoTable.dtype.fields.keys(): # Pick majority chemistry chemistries = movieInfoTable.SequencingChemistry.tolist() chemCounts = dict([(k, len(list(v))) for (k, v) in itertools.groupby(chemistries)]) majorityChem = max(chemCounts, key=chemCounts.get) # Find the appropriate model file: ipdModel = os.path.join(self.args.paramsPath, majorityChem + ".h5") if majorityChem == 'unknown': logging.warning("Chemistry is unknown. Falling back to built-in model") ipdModel = None elif not os.path.exists(ipdModel): logging.warning("Model not found: %s" % ipdModel) logging.warning("Falling back to built-in model") ipdModel = None else: logging.info("Using Chemistry matched IPD model: %s" % ipdModel) self.ipdModel = IpdModel(contigs, ipdModel, self.args.modelIters) def _mainLoop(self): # See comments in ipdSummary.py gc.disable() # Load reference and IpdModel # self.loadReference() # Load reference and IpdModel self.loadReferenceAndModel(self.args.reference, self.args.infile) # Spawn workers self._launchSlaveProcesses() # cmp.h5 we're using -- use this to orchestrate the work self.cmph5 = CmpH5Reader(self.args.infile) logging.info('Generating kinetics summary for [%s]' % self.args.infile) self.workChunkCounter = 0 self._queueChunksForReference() # Shutdown worker threads with None sentinels for i in xrange(self.args.numWorkers): self._workQueue.put(None) for w in self._workers: w.join() # Join on the result queue and the resultsCollector process. # This ensures all the results are written before shutdown. self.monitoringThread.join() self._resultsQueue.join() self._resultCollectorProcess.join() logging.info("reprocessMotifSites.py finished. Exiting.") del self.cmph5 return 0