Exemple #1
0
    def testPredictiveCells(self):
        """
    This tests that we don't get empty predicitve cells
    """

        tm = TM(
            columnDimensions=(parameters1["sp"]["columnCount"], ),
            cellsPerColumn=parameters1["tm"]["cellsPerColumn"],
            activationThreshold=parameters1["tm"]["activationThreshold"],
            initialPermanence=parameters1["tm"]["initialPerm"],
            connectedPermanence=parameters1["sp"]["synPermConnected"],
            minThreshold=parameters1["tm"]["minThreshold"],
            maxNewSynapseCount=parameters1["tm"]["newSynapseCount"],
            permanenceIncrement=parameters1["tm"]["permanenceInc"],
            permanenceDecrement=parameters1["tm"]["permanenceDec"],
            predictedSegmentDecrement=0.0,
            maxSegmentsPerCell=parameters1["tm"]["maxSegmentsPerCell"],
            maxSynapsesPerSegment=parameters1["tm"]["maxSynapsesPerSegment"],
        )

        activeColumnsA = SDR(parameters1["sp"]["columnCount"])
        activeColumnsB = SDR(parameters1["sp"]["columnCount"])

        activeColumnsA.randomize(sparsity=0.4, seed=1)
        activeColumnsB.randomize(sparsity=0.4, seed=1)

        # give pattern A - bursting
        # give pattern B - bursting
        # give pattern A - should be predicting

        tm.activateDendrites(True)
        self.assertTrue(tm.getPredictiveCells().getSum() == 0)
        predictiveCellsSDR = tm.getPredictiveCells()
        tm.activateCells(activeColumnsA, True)

        _print("\nColumnsA")
        _print("activeCols:" + str(len(activeColumnsA.sparse)))
        _print("activeCells:" + str(len(tm.getActiveCells().sparse)))
        _print("predictiveCells:" + str(len(predictiveCellsSDR.sparse)))

        tm.activateDendrites(True)
        self.assertTrue(tm.getPredictiveCells().getSum() == 0)
        predictiveCellsSDR = tm.getPredictiveCells()
        tm.activateCells(activeColumnsB, True)

        _print("\nColumnsB")
        _print("activeCols:" + str(len(activeColumnsB.sparse)))
        _print("activeCells:" + str(len(tm.getActiveCells().sparse)))
        _print("predictiveCells:" + str(len(predictiveCellsSDR.sparse)))

        tm.activateDendrites(True)
        self.assertTrue(tm.getPredictiveCells().getSum() > 0)
        predictiveCellsSDR = tm.getPredictiveCells()
        tm.activateCells(activeColumnsA, True)

        _print("\nColumnsA")
        _print("activeCols:" + str(len(activeColumnsA.sparse)))
        _print("activeCells:" + str(len(tm.getActiveCells().sparse)))
        _print("predictiveCells:" + str(len(predictiveCellsSDR.sparse)))
  def testCompute(self):
    """ Check that there are no errors in call to compute. """
    inputs = SDR( 100 ).randomize( .05 )

    tm = TM( inputs.dimensions)
    tm.compute( inputs, True )

    active = tm.getActiveCells()
    self.assertTrue( active.getSum() > 0 )
  def testPerformanceLarge(self):
    LARGE = 9000
    ITERS = 100 # This is lowered for unittest. Try 1000, 5000,...
    from htm.bindings.engine_internal import Timer
    t = Timer()

    inputs = SDR( LARGE ).randomize( .10 )
    tm = TM( inputs.dimensions)

    for i in range(ITERS):
        inputs = inputs.randomize( .10 )
        t.start()
        tm.compute( inputs, True )
        active = tm.getActiveCells()
        t.stop()
        self.assertTrue( active.getSum() > 0 )

    t_total = t.elapsed()
    speed = t_total * 1000 / ITERS #time ms/iter
    self.assertTrue(speed < 40.0)
        for count, i in enumerate(range(len(train_set))):

            # encode the current integer
            rdseSDR = rdseEncoder.encode(train_set[i])
            # create an SDR for SP output
            activeColumns = SDR( dimensions = tm.getColumnDimensions()[0] )

            # convert the SDR to SP
            # this is optional if the output from the encoder is
            # already a sparse binary representation
            # otherwise this step may be skipped as seen in
            # tutorials online
            sp.compute(rdseSDR, True, activeColumns)
            tm.compute(activeColumns, learn=True)
            tm.activateDendrites(True)
            tm_actCells = tm.getActiveCells()
            pred_actCells.append(tm_actCells)
            # anamoly_forall.append(tm.anomaly)

            label = int(train_set[i])
            # this is a neural network being trained to
            # know which SDR corresponds to which integer
            predict.learn(count, tm_actCells, label)

    predict.reset()
    next_elem = []
    # need to interpret the predictions made by TM (these predictions
    # are in sparse representations and the brain does not need this added
    # step because it automatically recognizes what the SDRs represent; however,
    # the SDRs from TM are not in our brain, so we needed an added step to inter-
    # pret)