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fixed display of number of active segments #3845

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14 changes: 7 additions & 7 deletions examples/tm/hello_tm.py
Original file line number Diff line number Diff line change
@@ -1,6 +1,6 @@
# ----------------------------------------------------------------------
# Numenta Platform for Intelligent Computing (NuPIC)
# Copyright (C) 2013, Numenta, Inc. Unless you have an agreement
# Copyright (C) 2018, Numenta, Inc. Unless you have an agreement
# with Numenta, Inc., for a separate license for this software code, the
# following terms and conditions apply:
#
Expand Down Expand Up @@ -97,7 +97,7 @@ def formatRow(x):
print("active cells " + str(tm.getActiveCells()))
print("predictive cells " + str(tm.getPredictiveCells()))
print("winner cells " + str(tm.getWinnerCells()))
print("# of active segments " + str(tm.connections.numSegments()))
print("# of active segments " + str(numpy.shape(tm.getActiveSegments())[0]))

# The reset command tells the TM that a sequence just ended and essentially
# zeros out all the states. It is not strictly necessary but it's a bit
Expand Down Expand Up @@ -127,18 +127,18 @@ def formatRow(x):
print("active cells " + str(tm.getActiveCells()))
print("predictive cells " + str(tm.getPredictiveCells()))
print("winner cells " + str(tm.getWinnerCells()))
print("# of active segments " + str(tm.connections.numSegments()))
print("# of active segments " + str(numpy.shape(tm.getActiveSegments())[0]))

activeColumnsIndeces = [tm.columnForCell(i) for i in tm.getActiveCells()]
predictedColumnIndeces = [tm.columnForCell(i) for i in tm.getPredictiveCells()]
activeColumnsIndices = [tm.columnForCell(i) for i in tm.getActiveCells()]
predictedColumnIndices = [tm.columnForCell(i) for i in tm.getPredictiveCells()]


# Reconstructing the active and inactive columns with 1 as active and 0 as
# inactive representation.

actColState = ['1' if i in activeColumnsIndeces else '0' for i in range(tm.numberOfColumns())]
actColState = ['1' if i in activeColumnsIndices else '0' for i in range(tm.numberOfColumns())]
actColStr = ("".join(actColState))
predColState = ['1' if i in predictedColumnIndeces else '0' for i in range(tm.numberOfColumns())]
predColState = ['1' if i in predictedColumnIndices else '0' for i in range(tm.numberOfColumns())]
predColStr = ("".join(predColState))

# For convenience the cells are grouped
Expand Down