Esempio n. 1
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  def __init__(self, columnCount, inputWidth, historyLength,
               minHistory, poolerType, **kwargs):

    if columnCount <= 0 or inputWidth <=0:
      raise TypeError("Parameters columnCount and inputWidth must be > 0")
    # Pull out the pooler arguments automatically
    # These calls whittle down kwargs and create instance variables of TemporalPoolerRegion
    self._poolerType = poolerType
    self._poolerClass = _getPoolerClass(poolerType)
    pArgTuples = _buildArgs(self._poolerClass, self, kwargs)

    # include parent spatial pooler parameters
    if poolerType == "union" or poolerType == "unionMonitored":
      pArgTuplesSP = _buildArgs(_getParentSpatialPoolerClass(poolerType), self, kwargs)
      # Make a list of automatic pooler arg names for later use
      self._poolerArgNames = [t[0] for t in pArgTuples] + [t[0] for t in pArgTuplesSP]
    else:
      self._poolerArgNames = [t[0] for t in pArgTuples]

    PyRegion.__init__(self, **kwargs)

    # Defaults for all other parameters
    self.learningMode = True
    self.inferenceMode = True
    self._inputWidth = inputWidth
    self._columnCount = columnCount
    self._historyLength = historyLength
    self._minHistory = minHistory

    # pooler instance
    self._pooler = None
Esempio n. 2
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  def __init__(self,
               columnCount,   # Number of columns in the SP, a required parameter
               inputWidth,    # Size of inputs to the SP, a required parameter
               spatialImp=getDefaultSPImp(),   #'py', 'cpp'
               **kwargs):

    if columnCount <= 0 or inputWidth <=0:
      raise TypeError("Parameters columnCount and inputWidth must be > 0")

    # Pull out the spatial arguments automatically
    # These calls whittle down kwargs and create instance variables of SPRegion
    self.SpatialClass = getSPClass(spatialImp)
    sArgTuples = _buildArgs(self.SpatialClass.__init__, self, kwargs)

    # Make a list of automatic spatial arg names for later use
    self._spatialArgNames = [t[0] for t in sArgTuples]

    # Learning and SP parameters.
    # By default we start out in stage learn with inference disabled
    self.learningMode   = True
    self.inferenceMode  = False
    self.anomalyMode    = False
    self.topDownMode    = False
    self.columnCount    = columnCount
    self.inputWidth     = inputWidth

    PyRegion.__init__(self, **kwargs)

    # Initialize all non-persistent base members, as well as give
    # derived class an opportunity to do the same.
    self._loaded = False
    self._initializeEphemeralMembers()

    # Debugging support, used in _conditionalBreak
    self.breakPdb = False
    self.breakKomodo = False

    # Defaults for all other parameters
    self.logPathInput = ''
    self.logPathOutput = ''
    self.logPathOutputDense = ''
    self._fpLogSPInput = None
    self._fpLogSP = None
    self._fpLogSPDense = None


    #
    # Variables set up in initInNetwork()
    #

    # Spatial instance
    self._sfdr                = None

    # Spatial pooler's bottom-up output value: hang on to this  output for
    # top-down inference and for debugging
    self._spatialPoolerOutput = None

    # Spatial pooler's bottom-up input: hang on to this for supporting the
    # spInputNonZeros parameter
    self._spatialPoolerInput  = None
Esempio n. 3
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    def __init__(
            self,

            # Input sizes
            columnCount,
            basalInputWidth,
            apicalInputWidth=0,

            # TM params
            cellsPerColumn=32,
            activationThreshold=13,
            initialPermanence=0.21,
            connectedPermanence=0.50,
            minThreshold=10,
            reducedBasalThreshold=13,  # ApicalTiebreak and ApicalDependent only
            sampleSize=20,
            permanenceIncrement=0.10,
            permanenceDecrement=0.10,
            basalPredictedSegmentDecrement=0.0,
            apicalPredictedSegmentDecrement=0.0,
            learnOnOneCell=False,  # ApicalTiebreakCPP only
            maxSegmentsPerCell=255,
            maxSynapsesPerSegment=255,  # ApicalTiebreakCPP only
            seed=42,

            # Region params
            implementation="ApicalTiebreak",
            learn=True,
            **kwargs):

        # Input sizes (the network API doesn't provide these during initialize)
        self.columnCount = columnCount
        self.basalInputWidth = basalInputWidth
        self.apicalInputWidth = apicalInputWidth

        # TM params
        self.cellsPerColumn = cellsPerColumn
        self.activationThreshold = activationThreshold
        self.reducedBasalThreshold = reducedBasalThreshold
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.minThreshold = minThreshold
        self.sampleSize = sampleSize
        self.permanenceIncrement = permanenceIncrement
        self.permanenceDecrement = permanenceDecrement
        self.basalPredictedSegmentDecrement = basalPredictedSegmentDecrement
        self.apicalPredictedSegmentDecrement = apicalPredictedSegmentDecrement
        self.maxSynapsesPerSegment = maxSynapsesPerSegment
        self.maxSegmentsPerCell = maxSegmentsPerCell
        self.learnOnOneCell = learnOnOneCell
        self.seed = seed

        # Region params
        self.implementation = implementation
        self.learn = learn

        PyRegion.__init__(self, **kwargs)

        # TM instance
        self._tm = None
Esempio n. 4
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  def __init__(self,
               columnCount,
               inputWidth,
               spatialImp=getDefaultSPImp(),
               **kwargs):
    if columnCount <= 0 or inputWidth <=0:
      raise TypeError("Parameters columnCount and inputWidth must be > 0")

    # Pull out the spatial arguments automatically
    # These calls whittle down kwargs and create instance variables of SPRegion
    self.spatialImp = spatialImp
    self.SpatialClass = getSPClass(spatialImp)
    sArgTuples = _buildArgs(self.SpatialClass.__init__, self, kwargs)

    # Make a list of automatic spatial arg names for later use
    self._spatialArgNames = [t[0] for t in sArgTuples]

    # Learning and SP parameters.
    # By default we start out in stage learn with inference disabled
    self.learningMode   = True
    self.inferenceMode  = False
    self.anomalyMode    = False
    self.topDownMode    = False
    self.columnCount    = columnCount
    self.inputWidth     = inputWidth

    PyRegion.__init__(self, **kwargs)

    # Initialize all non-persistent base members, as well as give
    # derived class an opportunity to do the same.
    self._loaded = False
    self._initializeEphemeralMembers()

    # Debugging support, used in _conditionalBreak
    self.breakPdb = False
    self.breakKomodo = False

    # Defaults for all other parameters
    self.logPathInput = ''
    self.logPathOutput = ''
    self.logPathOutputDense = ''
    self._fpLogSPInput = None
    self._fpLogSP = None
    self._fpLogSPDense = None


    #
    # Variables set up in initInNetwork()
    #

    # Spatial instance
    self._sfdr                = None

    # Spatial pooler's bottom-up output value: hang on to this  output for
    # top-down inference and for debugging
    self._spatialPoolerOutput = None

    # Spatial pooler's bottom-up input: hang on to this for supporting the
    # spInputNonZeros parameter
    self._spatialPoolerInput  = None
  def __init__(self,
               moduleCount,
               cellsPerAxis,
               scale,
               orientation,
               anchorInputSize,
               activeFiringRate,
               bumpSigma,
               activationThreshold=10,
               initialPermanence=0.21,
               connectedPermanence=0.50,
               learningThreshold=10,
               sampleSize=20,
               permanenceIncrement=0.1,
               permanenceDecrement=0.0,
               maxSynapsesPerSegment=-1,
               bumpOverlapMethod="probabilistic",
               learningMode=False,
               seed=42,
               dualPhase=True,
               dimensions=2,
               **kwargs):
    if moduleCount <= 0 or cellsPerAxis <= 0:
      raise TypeError("Parameters moduleCount and cellsPerAxis must be > 0")
    if moduleCount != len(scale) or moduleCount != len(orientation):
      raise TypeError("scale and orientation arrays len must match moduleCount")
    if dimensions < 2:
      raise TypeError("dimensions must be >= 2")

    self.moduleCount = moduleCount
    self.cellsPerAxis = cellsPerAxis
    self.cellCount = cellsPerAxis * cellsPerAxis
    self.scale = list(scale)
    self.orientation = list(orientation)
    self.anchorInputSize = anchorInputSize
    self.activeFiringRate = activeFiringRate
    self.bumpSigma = bumpSigma
    self.activationThreshold = activationThreshold
    self.initialPermanence = initialPermanence
    self.connectedPermanence = connectedPermanence
    self.learningThreshold = learningThreshold
    self.sampleSize = sampleSize
    self.permanenceIncrement = permanenceIncrement
    self.permanenceDecrement = permanenceDecrement
    self.maxSynapsesPerSegment = maxSynapsesPerSegment
    self.bumpOverlapMethod = bumpOverlapMethod
    self.learningMode = learningMode
    self.dualPhase = dualPhase
    self.dimensions = dimensions
    self.seed = seed

    # This flag controls whether the region is processing sensation or movement
    # on dual phase configuration
    self._sensing = False

    self._modules = None

    self._projection = None

    PyRegion.__init__(self, **kwargs)
Esempio n. 6
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    def __init__(self,
                 columnCount=2048,
                 cellsPerColumn=16,
                 activationThreshold=13,
                 initialPermanence=0.21,
                 connectedPermanence=0.50,
                 minThreshold=10,
                 maxNewSynapseCount=20,
                 permanenceIncrement=0.10,
                 permanenceDecrement=0.10,
                 predictedSegmentDecrement=0.0,
                 seed=42,
                 defaultOutputType="active",
                 **kwargs):
        # Defaults for all other parameters
        self.columnCount = columnCount
        self.cellsPerColumn = cellsPerColumn
        self.inputWidth = self.columnCount * self.cellsPerColumn
        self.activationThreshold = activationThreshold
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.minThreshold = minThreshold
        self.maxNewSynapseCount = maxNewSynapseCount
        self.permanenceIncrement = permanenceIncrement
        self.permanenceDecrement = permanenceDecrement
        self.predictedSegmentDecrement = predictedSegmentDecrement
        self.seed = seed
        self.learningMode = True
        self.inferenceMode = True
        self.defaultOutputType = defaultOutputType

        PyRegion.__init__(self, **kwargs)
Esempio n. 7
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  def __init__(self,

               columnCount,   # Number of columns in the SP, a required parameter
               inputWidth,    # Size of inputs to the SP, a required parameter
               cellsPerColumn, # Number of cells per column, required

               # Constructor arguments are picked up automatically. There is no
               # need to add them anywhere in TMRegion, unless you need to do
               # something special with them. See docstring above.

               orColumnOutputs=False,
               cellsSavePath='',
               temporalImp=gDefaultTemporalImp,
               anomalyMode=False,
               computePredictedActiveCellIndices=False,

               **kwargs):
    # Which Temporal implementation?
    TemporalClass = _getTPClass(temporalImp)

    # Make a list of automatic temporal arg names for later use
    # Pull out the temporal arguments automatically
    # These calls whittle down kwargs and create instance variables of TMRegion
    tArgTuples = _buildArgs(TemporalClass.__init__, self, kwargs)

    self._temporalArgNames = [t[0] for t in tArgTuples]

    self.learningMode   = True      # Start out with learning enabled
    self.inferenceMode  = False
    self.anomalyMode    = anomalyMode
    self.computePredictedActiveCellIndices = computePredictedActiveCellIndices
    self.topDownMode    = False
    self.columnCount    = columnCount
    self.inputWidth     = inputWidth
    self.outputWidth    = columnCount * cellsPerColumn
    self.cellsPerColumn = cellsPerColumn

    PyRegion.__init__(self, **kwargs)

    # Initialize all non-persistent base members, as well as give
    # derived class an opportunity to do the same.
    self._loaded = False
    self._initialize()

    # Debugging support, used in _conditionalBreak
    self.breakPdb = False
    self.breakKomodo = False

    # TMRegion only, or special handling
    self.orColumnOutputs = orColumnOutputs
    self.temporalImp = temporalImp

    # Various file names
    self.storeDenseOutput = False
    self.logPathOutput = ''
    self.cellsSavePath = cellsSavePath
    self._fpLogTPOutput = None

    # Variables set up in initInNetwork()
    self._tfdr = None  # FDRTemporal instance
Esempio n. 8
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  def __init__(self,
               columnCount=2048,
               cellsPerColumn=16,
               activationThreshold=13,
               initialPermanence=0.21,
               connectedPermanence=0.50,
               minThreshold=10,
               maxNewSynapseCount=20,
               permanenceIncrement=0.10,
               permanenceDecrement=0.10,
               predictedSegmentDecrement=0.0,
               seed=42,
               defaultOutputType = "active",
               **kwargs):
    # Defaults for all other parameters
    self.columnCount = columnCount
    self.cellsPerColumn = cellsPerColumn
    self.inputWidth = self.columnCount*self.cellsPerColumn
    self.activationThreshold = activationThreshold
    self.initialPermanence = initialPermanence
    self.connectedPermanence = connectedPermanence
    self.minThreshold = minThreshold
    self.maxNewSynapseCount = maxNewSynapseCount
    self.permanenceIncrement = permanenceIncrement
    self.permanenceDecrement = permanenceDecrement
    self.predictedSegmentDecrement = predictedSegmentDecrement
    self.seed = seed
    self.learningMode = True
    self.inferenceMode = True
    self.defaultOutputType = defaultOutputType

    PyRegion.__init__(self, **kwargs)
Esempio n. 9
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  def __init__(self,

               # Modified ETM params
               columnCount=2048,
               basalInputWidth=0,
               apicalInputWidth=0,

               # ETM params
               cellsPerColumn=32,
               activationThreshold=13,
               initialPermanence=0.21,
               connectedPermanence=0.50,
               minThreshold=10,
               maxNewSynapseCount=20,
               permanenceIncrement=0.10,
               permanenceDecrement=0.10,
               predictedSegmentDecrement=0.0,
               formInternalBasalConnections=True,
               learnOnOneCell=False,
               maxSegmentsPerCell=255,
               maxSynapsesPerSegment=255,
               seed=42,
               checkInputs=True,

               # Region params
               implementation="etm_cpp",
               learn=True,
               **kwargs):

    # Input sizes (the network API doesn't provide these during initialize)
    self.columnCount = columnCount
    self.basalInputWidth = basalInputWidth
    self.apicalInputWidth = apicalInputWidth

    # TM params
    self.cellsPerColumn = cellsPerColumn
    self.activationThreshold = activationThreshold
    self.initialPermanence = initialPermanence
    self.connectedPermanence = connectedPermanence
    self.minThreshold = minThreshold
    self.maxNewSynapseCount = maxNewSynapseCount
    self.permanenceIncrement = permanenceIncrement
    self.permanenceDecrement = permanenceDecrement
    self.predictedSegmentDecrement = predictedSegmentDecrement
    self.formInternalBasalConnections = formInternalBasalConnections
    self.learnOnOneCell = learnOnOneCell
    self.maxSegmentsPerCell = maxSegmentsPerCell
    self.maxSynapsesPerSegment = maxSynapsesPerSegment
    self.seed = seed
    self.checkInputs = checkInputs

    # Region params
    self.implementation = implementation
    self.learn = learn

    PyRegion.__init__(self, **kwargs)

    # TM instance
    self._tm = None
  def __init__(self,

               # Input sizes
               columnCount,
               basalInputWidth,
               apicalInputWidth=0,

               # TM params
               cellsPerColumn=32,
               activationThreshold=13,
               initialPermanence=0.21,
               connectedPermanence=0.50,
               minThreshold=10,
               reducedBasalThreshold=13, # ApicalTiebreak and ApicalDependent only
               sampleSize=20,
               permanenceIncrement=0.10,
               permanenceDecrement=0.10,
               basalPredictedSegmentDecrement=0.0,
               apicalPredictedSegmentDecrement=0.0,
               learnOnOneCell=False, # ApicalTiebreakCPP only
               maxSegmentsPerCell=255,
               maxSynapsesPerSegment=255, # ApicalTiebreakCPP only
               seed=42,

               # Region params
               implementation="ApicalTiebreak",
               learn=True,
               **kwargs):

    # Input sizes (the network API doesn't provide these during initialize)
    self.columnCount = columnCount
    self.basalInputWidth = basalInputWidth
    self.apicalInputWidth = apicalInputWidth

    # TM params
    self.cellsPerColumn = cellsPerColumn
    self.activationThreshold = activationThreshold
    self.reducedBasalThreshold = reducedBasalThreshold
    self.initialPermanence = initialPermanence
    self.connectedPermanence = connectedPermanence
    self.minThreshold = minThreshold
    self.sampleSize = sampleSize
    self.permanenceIncrement = permanenceIncrement
    self.permanenceDecrement = permanenceDecrement
    self.basalPredictedSegmentDecrement = basalPredictedSegmentDecrement
    self.apicalPredictedSegmentDecrement = apicalPredictedSegmentDecrement
    self.maxSynapsesPerSegment = maxSynapsesPerSegment
    self.maxSegmentsPerCell = maxSegmentsPerCell
    self.learnOnOneCell = learnOnOneCell
    self.seed = seed

    # Region params
    self.implementation = implementation
    self.learn = learn

    PyRegion.__init__(self, **kwargs)

    # TM instance
    self._tm = None
Esempio n. 11
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    def __init__(self,
                 moduleCount,
                 cellsPerAxis,
                 scale,
                 orientation,
                 anchorInputSize,
                 activeFiringRate,
                 bumpSigma,
                 activationThreshold=10,
                 initialPermanence=0.21,
                 connectedPermanence=0.50,
                 learningThreshold=10,
                 sampleSize=20,
                 permanenceIncrement=0.1,
                 permanenceDecrement=0.0,
                 maxSynapsesPerSegment=-1,
                 bumpOverlapMethod="probabilistic",
                 learningMode=False,
                 seed=42,
                 dualPhase=True,
                 **kwargs):
        if moduleCount <= 0 or cellsPerAxis <= 0:
            raise TypeError(
                "Parameters moduleCount and cellsPerAxis must be > 0")
        if moduleCount != len(scale) or moduleCount != len(orientation):
            raise TypeError(
                "scale and orientation arrays len must match moduleCount")

        self.moduleCount = moduleCount
        self.cellsPerAxis = cellsPerAxis
        self.cellCount = cellsPerAxis * cellsPerAxis
        self.scale = list(scale)
        self.orientation = list(orientation)
        self.anchorInputSize = anchorInputSize
        self.activeFiringRate = activeFiringRate
        self.bumpSigma = bumpSigma
        self.activationThreshold = activationThreshold
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.learningThreshold = learningThreshold
        self.sampleSize = sampleSize
        self.permanenceIncrement = permanenceIncrement
        self.permanenceDecrement = permanenceDecrement
        self.maxSynapsesPerSegment = maxSynapsesPerSegment
        self.bumpOverlapMethod = bumpOverlapMethod
        self.learningMode = learningMode
        self.dualPhase = dualPhase
        self.seed = seed

        # This flag controls whether the region is processing sensation or movement
        # on dual phase configuration
        self._sensing = False

        self._modules = None

        PyRegion.__init__(self, **kwargs)
Esempio n. 12
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  def __init__(self,
               cellCount=4096,
               inputWidth=16384,
               numOtherCorticalColumns=0,
               sdrSize=40,

               # Proximal
               synPermProximalInc=0.1,
               synPermProximalDec=0.001,
               initialProximalPermanence=0.6,
               sampleSizeProximal=20,
               minThresholdProximal=1,
               connectedPermanenceProximal=0.50,

               # Distal
               synPermDistalInc=0.10,
               synPermDistalDec=0.10,
               initialDistalPermanence=0.21,
               sampleSizeDistal=20,
               activationThresholdDistal=13,
               connectedPermanenceDistal=0.50,
               distalSegmentInhibitionFactor=1.5,

               seed=42,
               defaultOutputType = "active",
               **kwargs):

    # Used to derive Column Pooler params
    self.numOtherCorticalColumns = numOtherCorticalColumns

    # Column Pooler params
    self.inputWidth = inputWidth
    self.cellCount = cellCount
    self.sdrSize = sdrSize
    self.synPermProximalInc = synPermProximalInc
    self.synPermProximalDec = synPermProximalDec
    self.initialProximalPermanence = initialProximalPermanence
    self.sampleSizeProximal = sampleSizeProximal
    self.minThresholdProximal = minThresholdProximal
    self.connectedPermanenceProximal = connectedPermanenceProximal
    self.synPermDistalInc = synPermDistalInc
    self.synPermDistalDec = synPermDistalDec
    self.initialDistalPermanence = initialDistalPermanence
    self.sampleSizeDistal = sampleSizeDistal
    self.activationThresholdDistal = activationThresholdDistal
    self.connectedPermanenceDistal = connectedPermanenceDistal
    self.distalSegmentInhibitionFactor = distalSegmentInhibitionFactor
    self.seed = seed

    # Region params
    self.learningMode = True
    self.defaultOutputType = defaultOutputType

    self._pooler = None

    PyRegion.__init__(self, **kwargs)
Esempio n. 13
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    def __init__(
            self,
            cellCount=4096,
            inputWidth=16384,
            numOtherCorticalColumns=0,
            sdrSize=40,

            # Proximal
            synPermProximalInc=0.1,
            synPermProximalDec=0.001,
            initialProximalPermanence=0.6,
            sampleSizeProximal=20,
            minThresholdProximal=1,
            connectedPermanenceProximal=0.50,

            # Distal
            synPermDistalInc=0.10,
            synPermDistalDec=0.10,
            initialDistalPermanence=0.21,
            sampleSizeDistal=20,
            activationThresholdDistal=13,
            connectedPermanenceDistal=0.50,
            distalSegmentInhibitionFactor=1.5,
            seed=42,
            defaultOutputType="active",
            **kwargs):

        # Used to derive Column Pooler params
        self.numOtherCorticalColumns = numOtherCorticalColumns

        # Column Pooler params
        self.inputWidth = inputWidth
        self.cellCount = cellCount
        self.sdrSize = sdrSize
        self.synPermProximalInc = synPermProximalInc
        self.synPermProximalDec = synPermProximalDec
        self.initialProximalPermanence = initialProximalPermanence
        self.sampleSizeProximal = sampleSizeProximal
        self.minThresholdProximal = minThresholdProximal
        self.connectedPermanenceProximal = connectedPermanenceProximal
        self.synPermDistalInc = synPermDistalInc
        self.synPermDistalDec = synPermDistalDec
        self.initialDistalPermanence = initialDistalPermanence
        self.sampleSizeDistal = sampleSizeDistal
        self.activationThresholdDistal = activationThresholdDistal
        self.connectedPermanenceDistal = connectedPermanenceDistal
        self.distalSegmentInhibitionFactor = distalSegmentInhibitionFactor
        self.seed = seed

        # Region params
        self.learningMode = True
        self.defaultOutputType = defaultOutputType

        self._pooler = None

        PyRegion.__init__(self, **kwargs)
  def __init__(self,
               columnCount=2048,
               inputWidth=16384,
               lateralInputWidth=0,
               activationThresholdDistal=13,
               initialPermanence=0.21,
               connectedPermanence=0.50,
               minThresholdProximal=1,
               minThresholdDistal=10,
               maxNewProximalSynapseCount=20,
               maxNewDistalSynapseCount=20,
               permanenceIncrement=0.10,
               permanenceDecrement=0.10,
               predictedSegmentDecrement=0.0,
               synPermProximalInc=0.1,
               synPermProximalDec=0.001,
               initialProximalPermanence = 0.6,
               seed=42,
               numActiveColumnsPerInhArea=40,
               defaultOutputType = "active",
               **kwargs):

    # Modified Column Pooler params
    self.columnCount = columnCount

    # Column Pooler params
    self.inputWidth = inputWidth
    self.lateralInputWidth = lateralInputWidth
    self.activationThresholdDistal = activationThresholdDistal
    self.initialPermanence = initialPermanence
    self.connectedPermanence = connectedPermanence
    self.minThresholdProximal = minThresholdProximal
    self.minThresholdDistal = minThresholdDistal
    self.maxNewProximalSynapseCount = maxNewProximalSynapseCount
    self.maxNewDistalSynapseCount = maxNewDistalSynapseCount
    self.permanenceIncrement = permanenceIncrement
    self.permanenceDecrement = permanenceDecrement
    self.predictedSegmentDecrement = predictedSegmentDecrement
    self.synPermProximalInc = synPermProximalInc
    self.synPermProximalDec = synPermProximalDec
    self.initialProximalPermanence = initialProximalPermanence
    self.seed = seed
    self.numActiveColumnsPerInhArea = numActiveColumnsPerInhArea
    self.maxSynapsesPerSegment = inputWidth

    # Region params
    self.learningMode = True
    self.inferenceMode = True
    self.defaultOutputType = defaultOutputType

    self._pooler = None

    PyRegion.__init__(self, **kwargs)
Esempio n. 15
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    def __init__(self,
                 columnCount=2048,
                 inputWidth=16384,
                 lateralInputWidth=0,
                 activationThresholdDistal=13,
                 initialPermanence=0.21,
                 connectedPermanence=0.50,
                 minThresholdProximal=1,
                 minThresholdDistal=10,
                 maxNewProximalSynapseCount=20,
                 maxNewDistalSynapseCount=20,
                 permanenceIncrement=0.10,
                 permanenceDecrement=0.10,
                 predictedSegmentDecrement=0.0,
                 synPermProximalInc=0.1,
                 synPermProximalDec=0.001,
                 initialProximalPermanence=0.6,
                 seed=42,
                 numActiveColumnsPerInhArea=40,
                 defaultOutputType="active",
                 **kwargs):

        # Modified Column Pooler params
        self.columnCount = columnCount

        # Column Pooler params
        self.inputWidth = inputWidth
        self.lateralInputWidth = lateralInputWidth
        self.activationThresholdDistal = activationThresholdDistal
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.minThresholdProximal = minThresholdProximal
        self.minThresholdDistal = minThresholdDistal
        self.maxNewProximalSynapseCount = maxNewProximalSynapseCount
        self.maxNewDistalSynapseCount = maxNewDistalSynapseCount
        self.permanenceIncrement = permanenceIncrement
        self.permanenceDecrement = permanenceDecrement
        self.predictedSegmentDecrement = predictedSegmentDecrement
        self.synPermProximalInc = synPermProximalInc
        self.synPermProximalDec = synPermProximalDec
        self.initialProximalPermanence = initialProximalPermanence
        self.seed = seed
        self.numActiveColumnsPerInhArea = numActiveColumnsPerInhArea
        self.maxSynapsesPerSegment = inputWidth

        # Region params
        self.learningMode = True
        self.inferenceMode = True
        self.defaultOutputType = defaultOutputType

        self._pooler = None

        PyRegion.__init__(self, **kwargs)
  def __init__(self,

               # Input sizes
               columnCount,
               basalInputWidth,
               apicalInputWidth=0,

               # TM params
               cellsPerColumn=32,
               minThreshold=0.5,
               sampleSize=20,
               maxSegmentsPerCell=255,
               maxSynapsesPerSegment=255,
               seed=42,
               noise=0.01,  # lambda
               learningRate=0.1,  # alpha
               initMovingAverages=0.0,  # alpha
               useApicalTiebreak=False,
               # Region params
               implementation="BayesianApicalTiebreak",
               learn=True,
               **kwargs):

    # Input sizes (the network API doesn't provide these during initialize)
    self.columnCount = columnCount
    self.basalInputWidth = basalInputWidth
    self.apicalInputWidth = apicalInputWidth

    # TM params
    self.cellsPerColumn = cellsPerColumn
    self.minThreshold = minThreshold
    self.sampleSize = sampleSize
    self.maxSegmentsPerCell = maxSegmentsPerCell
    self.maxSynapsesPerSegment = maxSynapsesPerSegment
    self.seed = seed
    self.noise = noise
    self.learningRate = learningRate
    self.initMovingAverages = initMovingAverages
    self.useApicalTiebreak = useApicalTiebreak

    # Region params
    self.implementation = implementation
    self.learn = learn

    PyRegion.__init__(self, **kwargs)

    # TM instance
    self._tm = None
  def __init__(self,
               columnCount=2048,
               cellsPerColumn=32,
               activationThreshold=13,
               initialPermanence=0.21,
               connectedPermanence=0.50,
               minThreshold=10,
               maxNewSynapseCount=20,
               permanenceIncrement=0.10,
               permanenceDecrement=0.10,
               predictedSegmentDecrement=0.0,
               seed=42,
               learnOnOneCell=1,
               formInternalConnections=1,
               formInternalBasalConnections=1,
               defaultOutputType = "active",
               monitor=False,
               implementation="cpp",
               **kwargs):
    # Defaults for all other parameters

    self.columnCount = columnCount
    self.cellsPerColumn = cellsPerColumn
    self.activationThreshold = activationThreshold
    self.initialPermanence = initialPermanence
    self.connectedPermanence = connectedPermanence
    self.minThreshold = minThreshold
    self.maxNewSynapseCount = maxNewSynapseCount
    self.permanenceIncrement = permanenceIncrement
    self.permanenceDecrement = permanenceDecrement
    self.predictedSegmentDecrement = predictedSegmentDecrement
    self.seed = seed
    self.learnOnOneCell = bool(learnOnOneCell)
    self.learningMode = True
    self.inferenceMode = True
    self.formInternalConnections = bool(formInternalConnections)
    self.formInternalBasalConnections = bool(formInternalBasalConnections)
    self.defaultOutputType = defaultOutputType
    self.monitor = monitor
    self.implementation = implementation

    PyRegion.__init__(self, **kwargs)

    # TM instance
    self._tm = None
Esempio n. 18
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    def __init__(self,
                 verbosity=0,
                 colorOption=False,
                 colorDiscreteIntensity=5,
                 **kwargs):
        self._colorOption = colorOption
        self._colorDiscreteIntensity = colorDiscreteIntensity
        self.dataSource = None
        self.verbosity = verbosity
        self._inputWidth = 768 * 1024 * 3
        # fixed universe input
        self._dataWidth = 160 * 160 * 3 * 5 if colorOption else 160 * 160
        # output size dependent on color option

        # lastRecord is the last record returned. Used for debugging only
        self.lastRecord = None

        PyRegion.__init__(self, **kwargs)
Esempio n. 19
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  def __init__(self,
               columnDimensions=(2048,),
               cellsPerColumn=32,
               activationThreshold=13,
               initialPermanence=0.21,
               connectedPermanence=0.50,
               minThreshold=10,
               maxNewSynapseCount=20,
               permanenceIncrement=0.10,
               permanenceDecrement=0.10,
               predictedSegmentDecrement=0.0,
               seed=42,
               learnOnOneCell=False,
               tmImp=getDefaultTMImp(),
               **kwargs):

    # Pull out the tm arguments automatically
    # These calls whittle down kwargs and create instance variables of TMRegion
    self._tmClass = getTMClass(tmImp)
    tmArgTuples = _buildArgs(self._tmClass, self, kwargs)

    # Make a list of automatic tm arg names for later use
    self._tmArgNames = [t[0] for t in tmArgTuples]

    # Defaults for all other parameters
    self.columnDimensions = copy.deepcopy(columnDimensions)
    self.cellsPerColumn = cellsPerColumn
    self.activationThreshold = activationThreshold
    self.initialPermanence = initialPermanence
    self.connectedPermanence = connectedPermanence
    self.minThreshold = minThreshold
    self.maxNewSynapseCount = maxNewSynapseCount
    self.permanenceIncrement = permanenceIncrement
    self.permanenceDecrement = permanenceDecrement
    self.predictedSegmentDecrement = predictedSegmentDecrement
    self.seed = seed
    self.learnOnOneCell = learnOnOneCell
    self.learningMode = True

    PyRegion.__init__(self, **kwargs)

    # TM instance
    self._tm = None
Esempio n. 20
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    def __init__(self,
                 columnDimensions=(2048, ),
                 cellsPerColumn=32,
                 activationThreshold=13,
                 initialPermanence=0.21,
                 connectedPermanence=0.50,
                 minThreshold=10,
                 maxNewSynapseCount=20,
                 permanenceIncrement=0.10,
                 permanenceDecrement=0.10,
                 predictedSegmentDecrement=0.0,
                 seed=42,
                 learnOnOneCell=False,
                 tmImp=getDefaultTMImp(),
                 **kwargs):

        # Pull out the tm arguments automatically
        # These calls whittle down kwargs and create instance variables of TMRegion
        self._tmClass = getTMClass(tmImp)
        tmArgTuples = _buildArgs(self._tmClass, self, kwargs)

        # Make a list of automatic tm arg names for later use
        self._tmArgNames = [t[0] for t in tmArgTuples]

        # Defaults for all other parameters
        self.columnDimensions = copy.deepcopy(columnDimensions)
        self.cellsPerColumn = cellsPerColumn
        self.activationThreshold = activationThreshold
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.minThreshold = minThreshold
        self.maxNewSynapseCount = maxNewSynapseCount
        self.permanenceIncrement = permanenceIncrement
        self.permanenceDecrement = permanenceDecrement
        self.predictedSegmentDecrement = predictedSegmentDecrement
        self.seed = seed
        self.learnOnOneCell = learnOnOneCell
        self.learningMode = True

        PyRegion.__init__(self, **kwargs)

        # TM instance
        self._tm = None
  def __init__(self,
               columnCount=2048,
               inputWidth=16384,
               activationThreshold=13,
               initialPermanence=0.21,
               connectedPermanence=0.50,
               minThreshold=10,
               maxNewSynapseCount=20,
               permanenceIncrement=0.10,
               permanenceDecrement=0.10,
               predictedSegmentDecrement=0.0,
               synPermProximalInc=0.1,
               synPermProximalDec=0.001,
               initialProximalPermanence = 0.6,
               seed=42,
               numActiveColumnsPerInhArea=40,
               defaultOutputType = "active",
               **kwargs):
    # Defaults for all other parameters
    self.columnCount = columnCount
    self.inputWidth = inputWidth
    self.activationThreshold = activationThreshold
    self.initialPermanence = initialPermanence
    self.connectedPermanence = connectedPermanence
    self.minThreshold = minThreshold
    self.maxNewSynapseCount = maxNewSynapseCount
    self.permanenceIncrement = permanenceIncrement
    self.permanenceDecrement = permanenceDecrement
    self.predictedSegmentDecrement = predictedSegmentDecrement
    self.synPermProximalInc = synPermProximalInc
    self.synPermProximalDec = synPermProximalDec
    self.initialProximalPermanence = initialProximalPermanence
    self.seed = seed
    self.learningMode = True
    self.inferenceMode = True
    self.defaultOutputType = defaultOutputType
    self.numActiveColumnsPerInhArea = numActiveColumnsPerInhArea

    self._pooler = None

    PyRegion.__init__(self, **kwargs)
Esempio n. 22
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    def __init__(self,
                 columnCount=2048,
                 cellsPerColumn=32,
                 activationThreshold=13,
                 initialPermanence=0.21,
                 connectedPermanence=0.50,
                 minThreshold=10,
                 maxNewSynapseCount=20,
                 permanenceIncrement=0.10,
                 permanenceDecrement=0.10,
                 predictedSegmentDecrement=0.0,
                 seed=42,
                 learnOnOneCell=1,
                 temporalImp="tm",
                 formInternalConnections=1,
                 defaultOutputType="active",
                 **kwargs):
        # Defaults for all other parameters
        self.columnCount = columnCount
        self.cellsPerColumn = cellsPerColumn
        self.activationThreshold = activationThreshold
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.minThreshold = minThreshold
        self.maxNewSynapseCount = maxNewSynapseCount
        self.permanenceIncrement = permanenceIncrement
        self.permanenceDecrement = permanenceDecrement
        self.predictedSegmentDecrement = predictedSegmentDecrement
        self.seed = seed
        self.learnOnOneCell = bool(learnOnOneCell)
        self.learningMode = True
        self.inferenceMode = True
        self.temporalImp = temporalImp
        self.formInternalConnections = bool(formInternalConnections)
        self.defaultOutputType = defaultOutputType

        PyRegion.__init__(self, **kwargs)

        # TM instance
        self._tm = None
Esempio n. 23
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  def __init__(self,
               columnCount=2048,
               cellsPerColumn=32,
               activationThreshold=13,
               initialPermanence=0.21,
               connectedPermanence=0.50,
               minThreshold=10,
               maxNewSynapseCount=20,
               permanenceIncrement=0.10,
               permanenceDecrement=0.10,
               predictedSegmentDecrement=0.0,
               seed=42,
               learnOnOneCell=1,
               temporalImp="tm",
               formInternalConnections = 1,
               **kwargs):
    # Defaults for all other parameters
    self.columnCount = columnCount
    self.cellsPerColumn = cellsPerColumn
    self.activationThreshold = activationThreshold
    self.initialPermanence = initialPermanence
    self.connectedPermanence = connectedPermanence
    self.minThreshold = minThreshold
    self.maxNewSynapseCount = maxNewSynapseCount
    self.permanenceIncrement = permanenceIncrement
    self.permanenceDecrement = permanenceDecrement
    self.predictedSegmentDecrement = predictedSegmentDecrement
    self.seed = seed
    self.learnOnOneCell = bool(learnOnOneCell)
    self.learningMode = True
    self.inferenceMode = True
    self.temporalImp = temporalImp
    self.formInternalConnections = bool(formInternalConnections)
    self.previouslyPredictedCells = set()

    PyRegion.__init__(self, **kwargs)

    # TM instance
    self._tm = None
Esempio n. 24
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    def __init__(
            self,

            # Modified ETM params
            columnCount=2048,
            basalInputWidth=0,
            apicalInputWidth=0,
            TDTraceDecay=0.0,
            TDDiscount=0.0,
            TDLearningRate=0.1,
            globalValueDecay=0.0,

            # ETM params
            cellsPerColumn=32,
            activationThreshold=13,
            initialPermanence=0.21,
            connectedPermanence=0.50,
            minThreshold=10,
            maxNewSynapseCount=20,
            permanenceIncrement=0.10,
            permanenceDecrement=0.10,
            predictedSegmentDecrement=0.0,
            formInternalBasalConnections=True,
            learnOnOneCell=False,
            maxSegmentsPerCell=255,
            maxSynapsesPerSegment=255,
            seed=42,
            checkInputs=True,

            # Region params
            implementation="etm",
            learn=True,
            **kwargs):

        # Input sizes (the network API doesn't provide these during initialize)
        self.columnCount = columnCount
        self.basalInputWidth = basalInputWidth
        self.apicalInputWidth = apicalInputWidth

        # TM params
        self.cellsPerColumn = cellsPerColumn
        self.activationThreshold = activationThreshold
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.minThreshold = minThreshold
        self.maxNewSynapseCount = maxNewSynapseCount
        self.permanenceIncrement = permanenceIncrement
        self.permanenceDecrement = permanenceDecrement
        self.predictedSegmentDecrement = predictedSegmentDecrement
        self.formInternalBasalConnections = formInternalBasalConnections
        self.learnOnOneCell = learnOnOneCell
        self.maxSegmentsPerCell = maxSegmentsPerCell
        self.maxSynapsesPerSegment = maxSynapsesPerSegment
        self.seed = seed
        self.checkInputs = checkInputs

        # Region params
        self.implementation = implementation
        self.learn = learn

        PyRegion.__init__(self, **kwargs)

        # TM instance
        self._tm = None

        # Reinforcement Learning variables (Eligability traces and values for each neuron)
        self.TDDiscount = TDDiscount
        self.TDLearningRate = TDLearningRate
        self.TDTraceDecay = TDTraceDecay
        self.globalValueDecay = globalValueDecay
        self.traces = np.zeros(columnCount * cellsPerColumn)
        self.values = np.zeros(columnCount * cellsPerColumn)
        self.stateValue = 0
        self.prevActiveCells = []
        # Save prev. distal input for calculation with L5(t-1) distal input
        self.prevActiveCellsExternalBasal = []
        # For Debug save errors
        self.TDError = 0
Esempio n. 25
0
    def __init__(
        self,
        # Modified TM params
        columnCount=2048,
        basalInputWidth=0,
        apicalInputWidth=0,
        # ETM params
        cellsPerColumn=32,
        activationThreshold=13,
        initialPermanence=0.21,
        connectedPermanence=0.50,
        minThreshold=10,
        maxNewSynapseCount=20,
        permanenceIncrement=0.10,
        permanenceDecrement=0.10,
        predictedSegmentDecrement=0.0,
        formInternalBasalConnections=True,
        learnOnOneCell=False,
        maxSegmentsPerCell=255,
        maxSynapsesPerSegment=255,
        seed=42,
        checkInputs=True,
        # Region params
        defaultOutputType="active",
        implementation="etm_cpp",
        learningMode=True,
        inferenceMode=True,
        **kwargs
    ):

        # Modified TM params
        self.columnCount = columnCount
        self.basalInputWidth = basalInputWidth
        self.apicalInputWidth = apicalInputWidth

        # TM params
        self.cellsPerColumn = cellsPerColumn
        self.activationThreshold = activationThreshold
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.minThreshold = minThreshold
        self.maxNewSynapseCount = maxNewSynapseCount
        self.permanenceIncrement = permanenceIncrement
        self.permanenceDecrement = permanenceDecrement
        self.predictedSegmentDecrement = predictedSegmentDecrement
        self.formInternalBasalConnections = formInternalBasalConnections
        self.learnOnOneCell = learnOnOneCell
        self.maxSegmentsPerCell = maxSegmentsPerCell
        self.maxSynapsesPerSegment = maxSynapsesPerSegment
        self.seed = seed
        self.checkInputs = checkInputs

        # Region params
        self.defaultOutputType = defaultOutputType
        self.implementation = implementation
        self.learningMode = learningMode
        self.inferenceMode = inferenceMode

        PyRegion.__init__(self, **kwargs)

        # TM instance
        self._tm = None
Esempio n. 26
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    def __init__(self, maxActive, outputWidth, **kwargs):
        PyRegion.__init__(self, **kwargs)

        self.maxActive = maxActive
        self.outputWidth = outputWidth
    def __init__(
            self,

            # Modified ETM params
            columnCount=2048,
            basalInputWidth=0,
            apicalInputWidth=0,

            # ETM params
            cellsPerColumn=32,
            initialPermanence=0.21,
            connectedPermanence=0.50,
            permanenceIncrement=0.10,
            permanenceDecrement=0.10,
            predictedSegmentDecrement=0.0,
            maxSynapsesPerSegment=255,
            seed=42,
            sampleSize=20,

            # apical, basal weighting
            activationThresholdBasal=13,
            activationThresholdApical=2,
            minThresholdBasal=10,
            minThresholdApical=1,
            basalPredictedSegmentDecrement=0.001,
            apicalPredictedSegmentDecrement=0.001,

            # Region params
            implementation="etm",
            learn=True,
            **kwargs):

        # Input sizes (the network API doesn't provide these during initialize)
        self.columnCount = columnCount
        self.basalInputWidth = basalInputWidth
        self.apicalInputWidth = apicalInputWidth

        # TM params
        self.cellsPerColumn = cellsPerColumn
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.permanenceIncrement = permanenceIncrement
        self.permanenceDecrement = permanenceDecrement
        self.predictedSegmentDecrement = predictedSegmentDecrement
        self.maxSynapsesPerSegment = maxSynapsesPerSegment
        self.seed = seed
        self.sampleSize = sampleSize

        # TM weight distal and apical differently
        self.minThresholdBasal = minThresholdBasal
        self.minThresholdApical = minThresholdApical
        self.activationThresholdBasal = activationThresholdBasal
        self.activationThresholdApical = activationThresholdApical
        self.basalPredictedSegmentDecrement = basalPredictedSegmentDecrement
        self.apicalPredictedSegmentDecrement = apicalPredictedSegmentDecrement

        # Region params
        self.implementation = implementation
        self.learn = learn

        PyRegion.__init__(self, **kwargs)

        # TM instance
        self._tm = None

        # Custom use internal activation t-1 as basal input
        self.prevActivation = np.array([])
Esempio n. 28
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  def __init__(self, maxActive, outputWidth, **kwargs):
    PyRegion.__init__(self, **kwargs)

    self.maxActive = maxActive
    self.outputWidth = outputWidth
  def __init__(self,
               cellCount=4096,
               inputWidth=16384,
               numOtherCorticalColumns=0,
               sdrSize=40,
               maxSdrSize = None,
               minSdrSize = None,

               # Proximal
               sampleSizeProximal=20,

               # Distal
               sampleSizeDistal=20,
               inertiaFactor=1.,

               # Bayesian
               noise=0.01,  # lambda
               learningRate=0.1,  # alpha
               activationThreshold=0.5,  # probability such that a cell becomes active
               forgetting=0.1,
               initMovingAverages=0.0,
               useSupport=False,
               avoidWeightExplosion=True,
               resetProximalCounter=False,
               useProximalProbabilities=True,
               implementation="Bayesian",
               seed=42,
               defaultOutputType = "active",
               **kwargs):

    # Used to derive Column Pooler params
    self.numOtherCorticalColumns = numOtherCorticalColumns

    # Column Pooler params
    self.inputWidth = inputWidth
    self.cellCount = cellCount
    self.sdrSize = sdrSize
    self.maxSdrSize = maxSdrSize
    self.minSdrSize = minSdrSize
    self.sampleSizeProximal = sampleSizeProximal
    self.sampleSizeDistal = sampleSizeDistal
    self.inertiaFactor = inertiaFactor
    self.seed = seed

    self.activationThreshold = activationThreshold
    self.learningRate = learningRate
    self.noise = noise

    self.implementation = implementation

    self.forgetting = forgetting
    self.initMovingAverages = initMovingAverages
    self.useSupport = useSupport
    self.avoidWeightExplosion = avoidWeightExplosion
    self.resetProximalCounter = resetProximalCounter
    self.useProximalProbabilities = useProximalProbabilities
    # Region params
    self.learningMode = True
    self.defaultOutputType = defaultOutputType

    self._pooler = None

    PyRegion.__init__(self, **kwargs)
Esempio n. 30
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    def __init__(
            self,

            # Modified TM params
            columnCount=2048,
            basalInputWidth=0,
            apicalInputWidth=0,

            # ETM params
            cellsPerColumn=32,
            activationThreshold=13,
            initialPermanence=0.21,
            connectedPermanence=0.50,
            minThreshold=10,
            maxNewSynapseCount=20,
            permanenceIncrement=0.10,
            permanenceDecrement=0.10,
            predictedSegmentDecrement=0.0,
            formInternalBasalConnections=True,
            learnOnOneCell=False,
            maxSegmentsPerCell=255,
            maxSynapsesPerSegment=255,
            seed=42,
            checkInputs=True,

            # Region params
            defaultOutputType="active",
            implementation="etm",
            learningMode=True,
            inferenceMode=True,
            **kwargs):

        # Modified TM params
        self.columnCount = columnCount
        self.basalInputWidth = basalInputWidth
        self.apicalInputWidth = apicalInputWidth

        # TM params
        self.cellsPerColumn = cellsPerColumn
        self.activationThreshold = activationThreshold
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.minThreshold = minThreshold
        self.maxNewSynapseCount = maxNewSynapseCount
        self.permanenceIncrement = permanenceIncrement
        self.permanenceDecrement = permanenceDecrement
        self.predictedSegmentDecrement = predictedSegmentDecrement
        self.formInternalBasalConnections = formInternalBasalConnections
        self.learnOnOneCell = learnOnOneCell
        self.maxSegmentsPerCell = maxSegmentsPerCell
        self.maxSynapsesPerSegment = maxSynapsesPerSegment
        self.seed = seed
        self.checkInputs = checkInputs

        # Region params
        self.defaultOutputType = defaultOutputType
        self.implementation = implementation
        self.learningMode = learningMode
        self.inferenceMode = inferenceMode

        PyRegion.__init__(self, **kwargs)

        # TM instance
        self._tm = None
Esempio n. 31
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    def __init__(
            self,

            # Modified TM params
            basalInputWidth=0,
            apicalInputWidth=0,
            apicalGlobalDecay=0.000001,
            TDLearningRate=0.5,
            winnerSize=4,
            motorCount=32,
            synPermActiveIncMotor=0.04,
            synPermInactiveDecMotor=0.008,

            # TM params
            columnCount=2048,
            cellsPerColumn=32,
            activationThreshold=13,
            initialPermanence=0.21,
            connectedPermanence=0.50,
            minThreshold=10,
            maxNewSynapseCount=20,
            punishPredDec=0.0,
            maxSynapsesPerSegment=255,
            seed=42,

            # Region params
            learn=True,
            **kwargs):

        # Input sizes (the network API doesn't provide these during initialize)
        self.columnCount = columnCount
        self.basalInputWidth = basalInputWidth
        self.apicalInputWidth = apicalInputWidth

        # TM params
        self.columnCount = columnCount
        self.cellsPerColumn = cellsPerColumn
        self.basalInputWidth = basalInputWidth
        self.apicalInputWidth = apicalInputWidth
        self.activationThreshold = activationThreshold
        self.initialPermanence = initialPermanence
        self.connectedPermanence = connectedPermanence
        self.minThreshold = minThreshold
        self.maxSynapsesPerSegment = maxSynapsesPerSegment
        self.seed = seed

        # Motor specific
        self.TDLearningRate = TDLearningRate
        self.apicalGlobalDecay = apicalGlobalDecay
        self.winnerSize = winnerSize
        self.punishPredDec = punishPredDec
        self.motorCount = motorCount
        self.synPermActiveIncMotor = synPermActiveIncMotor
        self.synPermInactiveDecMotor = synPermInactiveDecMotor

        # Region params
        self.learn = learn

        PyRegion.__init__(self, **kwargs)

        # TM instance
        self._tm = None