Example #1
0
  def __init__(self, taskControl, model):
    """ Constructor

    taskControl:  dictionary conforming to opfTaskControlSchema.json that defines
                  the actions to be performed on the given model.

    model:        instance of Model that this OPFTaskDriver
                  instance will drive.

    """

    #validateOpfJsonValue(taskControl, "opfTaskControlSchema.json")


    self.__reprstr = ("%s(" + \
                      "taskControl=%r, " + \
                      "model=%r)") % \
                          (self.__class__.__name__,
                           taskControl,
                           model)

    # Init logging
    #
    self.logger = logging.getLogger(".".join(
      ['com.numenta', self.__class__.__module__, self.__class__.__name__]))

    self.logger.info(("Instantiating %s; %r.") % \
                        (self.__class__.__name__,
                         self.__reprstr))

    # -----------------------------------------------------------------------
    # Save args of interest
    #
    self.__taskControl = taskControl
    self.__model = model

    # -----------------------------------------------------------------------
    # Create Metrics Manager.
    #
    self.__metricsMgr = None
    metrics = taskControl.get('metrics', None)
    self.__metricsMgr = MetricsManager(metricSpecs=metrics,
                                       inferenceType=model.getInferenceType(),
                                       fieldInfo=model.getFieldInfo())

    # -----------------------------------------------------------------------
    # Figure out which metrics should be logged
    #

    # The logged metrics won't within the current task
    self.__loggedMetricLabels = set([])

    loggedMetricPatterns =  taskControl.get('loggedMetrics', None)

    # -----------------------------------------------------------------------
    # Create our phase manager
    #
    self.__phaseManager = _PhaseManager(
      model=model,
      phaseSpecs=taskControl.get('iterationCycle', []))

    # -----------------------------------------------------------------------
    # Initialize the callbacks container
    #
    self.__userCallbacks = defaultdict(list, taskControl.get('callbacks', {}))

    return
Example #2
0
  def __init__(self, taskControl, model):
    """ Constructor

    taskControl:  dictionary conforming to opfTaskControlSchema.json that defines
                  the actions to be performed on the given model.

    model:        instance of Model that this OPFTaskDriver
                  instance will drive.

    """

    #validateOpfJsonValue(taskControl, "opfTaskControlSchema.json")


    self.__reprstr = ("%s(" + \
                      "taskControl=%r, " + \
                      "model=%r)") % \
                          (self.__class__.__name__,
                           taskControl,
                           model)

    # Init logging
    #
    self.logger = logging.getLogger(".".join(
      ['com.numenta', self.__class__.__module__, self.__class__.__name__]))

    self.logger.debug(("Instantiating %s; %r.") % \
                        (self.__class__.__name__,
                         self.__reprstr))

    # -----------------------------------------------------------------------
    # Save args of interest
    #
    self.__taskControl = taskControl
    self.__model = model

    # -----------------------------------------------------------------------
    # Create Metrics Manager.
    #
    self.__metricsMgr = None
    metrics = taskControl.get('metrics', None)
    self.__metricsMgr = MetricsManager(metricSpecs=metrics,
                                       inferenceType=model.getInferenceType(),
                                       fieldInfo=model.getFieldInfo())

    # -----------------------------------------------------------------------
    # Figure out which metrics should be logged
    #

    # The logged metrics won't within the current task
    self.__loggedMetricLabels = set([])

    loggedMetricPatterns =  taskControl.get('loggedMetrics', None)

    # -----------------------------------------------------------------------
    # Create our phase manager
    #
    self.__phaseManager = _PhaseManager(
      model=model,
      phaseSpecs=taskControl.get('iterationCycle', []))

    # -----------------------------------------------------------------------
    # Initialize the callbacks container
    #
    self.__userCallbacks = defaultdict(list, taskControl.get('callbacks', {}))

    return
Example #3
0
class OPFTaskDriver(object):
  """ Task Phase Driver implementation

  Conceptually, the client injects input records, one at a time, into
  an OPFTaskDriver instance for execution according to the
  current IterationPhase as maintained by the OPFTaskDriver instance.
  """

  def __init__(self, taskControl, model):
    """ Constructor

    taskControl:  dictionary conforming to opfTaskControlSchema.json that defines
                  the actions to be performed on the given model.

    model:        instance of Model that this OPFTaskDriver
                  instance will drive.

    """

    #validateOpfJsonValue(taskControl, "opfTaskControlSchema.json")


    self.__reprstr = ("%s(" + \
                      "taskControl=%r, " + \
                      "model=%r)") % \
                          (self.__class__.__name__,
                           taskControl,
                           model)

    # Init logging
    #
    self.logger = logging.getLogger(".".join(
      ['com.numenta', self.__class__.__module__, self.__class__.__name__]))

    self.logger.info(("Instantiating %s; %r.") % \
                        (self.__class__.__name__,
                         self.__reprstr))

    # -----------------------------------------------------------------------
    # Save args of interest
    #
    self.__taskControl = taskControl
    self.__model = model

    # -----------------------------------------------------------------------
    # Create Metrics Manager.
    #
    self.__metricsMgr = None
    metrics = taskControl.get('metrics', None)
    self.__metricsMgr = MetricsManager(metricSpecs=metrics,
                                       inferenceType=model.getInferenceType(),
                                       fieldInfo=model.getFieldInfo())

    # -----------------------------------------------------------------------
    # Figure out which metrics should be logged
    #

    # The logged metrics won't within the current task
    self.__loggedMetricLabels = set([])

    loggedMetricPatterns =  taskControl.get('loggedMetrics', None)

    # -----------------------------------------------------------------------
    # Create our phase manager
    #
    self.__phaseManager = _PhaseManager(
      model=model,
      phaseSpecs=taskControl.get('iterationCycle', []))

    # -----------------------------------------------------------------------
    # Initialize the callbacks container
    #
    self.__userCallbacks = defaultdict(list, taskControl.get('callbacks', {}))

    return


  def __repr__(self):
    return self.__reprstr


  def replaceIterationCycle(self, phaseSpecs):
    """ Replaces the Iteration Cycle phases

    phaseSpecs:   Iteration cycle description consisting of a sequence of
                  IterationPhaseSpecXXXXX elements that are performed in the
                  given order
    """

    # -----------------------------------------------------------------------
    # Replace our phase manager
    #
    self.__phaseManager = _PhaseManager(
      model=self.__model,
      phaseSpecs=phaseSpecs)

    return


  def setup(self):
    """ Performs initial setup activities, including 'setup' callbacks. This
    method MUST be called once before the first call to handleInputRecord()

    Returns:      nothing
    """
    # Execute task-setup callbacks
    for cb in self.__userCallbacks['setup']:
      cb(self.__model)

    return


  def finalize(self):
    """ Perform final activities, including 'finish' callbacks. This
    method MUST be called once after the last call to handleInputRecord()

    Returns:      nothing
    """
    # Execute task-finish callbacks
    for cb in self.__userCallbacks['finish']:
      cb(self.__model)

    return


  def handleInputRecord(self, inputRecord):
    """ Processes the given record according to the current iteration cycle phase

    inputRecord:  record object formatted according to
                  nupic.data.FileSource.getNext() result format.

    Returns:      An opfutils.ModelResult object
    """
    assert inputRecord, "Invalid inputRecord: %r" % inputRecord

    results = self.__phaseManager.handleInputRecord(inputRecord)
    metrics = self.__metricsMgr.update(results)

    # Execute task-postIter callbacks
    for cb in self.__userCallbacks['postIter']:
      cb(self.__model)

    results.metrics = metrics

    # Return the input and predictions for this record
    return results


  def getMetrics(self):
    """ Gets the current metric values

    Returns:    A dictionary of metric values. The key for
                each entry is the label for the metric spec, as generated by
                MetricSpec.getLabel(). The value for each entry is a
                dictonary containing the value of the metric as returned by the
                metric module's getMetric() function (see metrics.py)
    """
    return self.__metricsMgr.getMetrics()

  def getMetricLabels(self):
    """ Return the list of labels for the metrics that are being calculated"""
    return self.__metricsMgr.getMetricLabels()
Example #4
0
class OPFTaskDriver(object):
  """ Task Phase Driver implementation

  Conceptually, the client injects input records, one at a time, into
  an OPFTaskDriver instance for execution according to the
  current IterationPhase as maintained by the OPFTaskDriver instance.
  """

  def __init__(self, taskControl, model):
    """ Constructor

    taskControl:  dictionary conforming to opfTaskControlSchema.json that defines
                  the actions to be performed on the given model.

    model:        instance of Model that this OPFTaskDriver
                  instance will drive.

    """

    #validateOpfJsonValue(taskControl, "opfTaskControlSchema.json")


    self.__reprstr = ("%s(" + \
                      "taskControl=%r, " + \
                      "model=%r)") % \
                          (self.__class__.__name__,
                           taskControl,
                           model)

    # Init logging
    #
    self.logger = logging.getLogger(".".join(
      ['com.numenta', self.__class__.__module__, self.__class__.__name__]))

    self.logger.debug(("Instantiating %s; %r.") % \
                        (self.__class__.__name__,
                         self.__reprstr))

    # -----------------------------------------------------------------------
    # Save args of interest
    #
    self.__taskControl = taskControl
    self.__model = model

    # -----------------------------------------------------------------------
    # Create Metrics Manager.
    #
    self.__metricsMgr = None
    metrics = taskControl.get('metrics', None)
    self.__metricsMgr = MetricsManager(metricSpecs=metrics,
                                       inferenceType=model.getInferenceType(),
                                       fieldInfo=model.getFieldInfo())

    # -----------------------------------------------------------------------
    # Figure out which metrics should be logged
    #

    # The logged metrics won't within the current task
    self.__loggedMetricLabels = set([])

    loggedMetricPatterns =  taskControl.get('loggedMetrics', None)

    # -----------------------------------------------------------------------
    # Create our phase manager
    #
    self.__phaseManager = _PhaseManager(
      model=model,
      phaseSpecs=taskControl.get('iterationCycle', []))

    # -----------------------------------------------------------------------
    # Initialize the callbacks container
    #
    self.__userCallbacks = defaultdict(list, taskControl.get('callbacks', {}))

    return


  def __repr__(self):
    return self.__reprstr


  def replaceIterationCycle(self, phaseSpecs):
    """ Replaces the Iteration Cycle phases

    phaseSpecs:   Iteration cycle description consisting of a sequence of
                  IterationPhaseSpecXXXXX elements that are performed in the
                  given order
    """

    # -----------------------------------------------------------------------
    # Replace our phase manager
    #
    self.__phaseManager = _PhaseManager(
      model=self.__model,
      phaseSpecs=phaseSpecs)

    return


  def setup(self):
    """ Performs initial setup activities, including 'setup' callbacks. This
    method MUST be called once before the first call to handleInputRecord()

    Returns:      nothing
    """
    # Execute task-setup callbacks
    for cb in self.__userCallbacks['setup']:
      cb(self.__model)

    return


  def finalize(self):
    """ Perform final activities, including 'finish' callbacks. This
    method MUST be called once after the last call to handleInputRecord()

    Returns:      nothing
    """
    # Execute task-finish callbacks
    for cb in self.__userCallbacks['finish']:
      cb(self.__model)

    return


  def handleInputRecord(self, inputRecord):
    """ Processes the given record according to the current iteration cycle phase

    inputRecord:  record object formatted according to
                  nupic.data.FileSource.getNext() result format.

    Returns:      An opfutils.ModelResult object
    """
    assert inputRecord, "Invalid inputRecord: %r" % inputRecord

    results = self.__phaseManager.handleInputRecord(inputRecord)
    metrics = self.__metricsMgr.update(results)

    # Execute task-postIter callbacks
    for cb in self.__userCallbacks['postIter']:
      cb(self.__model)

    results.metrics = metrics

    # Return the input and predictions for this record
    return results


  def getMetrics(self):
    """ Gets the current metric values

    Returns:    A dictionary of metric values. The key for
                each entry is the label for the metric spec, as generated by
                MetricSpec.getLabel(). The value for each entry is a
                dictonary containing the value of the metric as returned by the
                metric module's getMetric() function (see metrics.py)
    """
    return self.__metricsMgr.getMetrics()

  def getMetricLabels(self):
    """ Return the list of labels for the metrics that are being calculated"""
    return self.__metricsMgr.getMetricLabels()