Пример #1
0
class BaseData(object):
    """
	Base Data Class : NOT FOR DIRECT USE
	"""
    def __init__(self, ImportData=None, PyTablesGroup=None):
        from numpy import int16
        from tables import Group
        self.BaseDataVersion = int16(1)
        self._DataType = 'BaseData'
        if not (ImportData == None):
            self._SetupContainers(ImportData)
            self._SetupInfoTraits(ImportData)
            # Setup RawBinned Data in Case the ImportData Object is Garbage Collected
            self._BinData(ImportData)
            return None
        elif isinstance(PyTablesGroup, Group):
            self._LoadAllLocalVars(PyTablesGroup)

    def _SetupInfoTraits(self, ImportData):
        self.TotalCounts = ImportData.PhotonCount
        self.TotalTime = ImportData.TotalTime
        self.TimeCollected = ImportData.TimeCollected
        self.DateCollected = ImportData.DateCollected
        self.TAC_Gain = ImportData.TAC_Gain
        self.Desc = ""
        self.Filename = ImportData.Filename
        self.Folder = ImportData.Folder

    def _SetupContainers(self, ImportData):
        from DataContainer.StorageArray import ChannelizedArray
        from numpy import float64

        self.ADC_Intervals = ImportData.ADC_Intervals()
        self.RouteChannelCodes = ImportData.RouteChannelCodes()
        self.ChannelCount = len(self.RouteChannelCodes)
        self._RawBinned = ChannelizedArray(len(self.ADC_Intervals),
                                           self.ChannelCount, 'uint64')
        self.PhotonCount = ChannelizedArray(1, self.ChannelCount, 'uint64')
        self.ChannelDelayCont = ChannelizedArray(1, self.ChannelCount,
                                                 'float64')
        self.ChannelDelayDiscrete = ChannelizedArray(1, self.ChannelCount,
                                                     'uint64')

        if self.ChannelCount == 2:
            self.NormG = float64(1.0)

    def _BinData(self, ImportData):
        from numpy import bincount, array, uint32, float64, sum
        for i, CC in enumerate(self.PhotonCount.keys()):
            # Create the RawBinned Data
            self._RawBinned[CC] = array(bincount(
                ImportData.ADC[ImportData.Route == (
                    self.RouteChannelCodes[i])],
                minlength=ImportData.ADC_Bins - 1),
                                        dtype='uint64')
            # Set Total Photons per Channel
            self.PhotonCount[CC] = sum(self._RawBinned[CC],
                                       dtype=self.PhotonCount[CC].dtype)
            self.ChannelDelayCont[CC] = float64(0.0)
            self.ChannelDelayDiscrete[CC] = uint32(0)

    def _CompareDataProperties(self,
                               DataSet1,
                               DataSet2=None,
                               CompareList=None):
        if not isinstance(DataSet2, BaseData):
            DataSet2 = self
        if not isinstance(CompareList, list):
            CompareList = ['TAC_Gain', 'ChannelCount']
        CurrentState = True
        for item in CompareList:
            if not (locals()['DataSet1'].__getattribute__(item)
                    == locals()['DataSet2'].__getattribute__(item)):
                print item + " : Does Not Match!!!"
                CurrentState = False
        return CurrentState

    def RawData(self):
        return self._RawBinned.Copy

    def Normalize(self, RawData):
        from DataContainer.StorageArray import ChannelizedArray
        Normed = ChannelizedArray(len(self._RawBinned), self.ChannelCount,
                                  'float64')
        for CC in RawData.keys():
            # Create Normalized TAC Normalization
            from numpy import array
            Normed[CC] = array(1.0 * RawData[CC] / (1.0 * sum(RawData[CC])),
                               dtype='float64')
        return Normed.Copy

    def ClearOutliers(self, DataSet, StdCutoff, Contiguous):
        from numpy import float64
        for CC in DataSet.keys():

            NormOutlierIndices = self.OutlierIndices(DataSet[CC],
                                                     StdCutoff=StdCutoff,
                                                     Contiguous=Contiguous)
            DataSet[CC][NormOutlierIndices] = float64(0.0)
        return self.Normalize(DataSet)

    def OutlierIndices(self, DataSet, StdCutoff, Contiguous):
        from numpy import abs, mean, std, ones, argmax, argmin, zeros
        Deviants = abs((DataSet - mean(
            DataSet[DataSet != 0]))) > StdCutoff * std(DataSet[DataSet != 0])
        if not Contiguous:
            if (Deviants == True).all():
                return zeros(len(DataSet), dtype='bool')
            return Deviants
        FirstIndex = argmin(Deviants)
        LastIndex = argmax(Deviants[FirstIndex:])
        Deviants = ones(len(Deviants), dtype='bool')
        Deviants[FirstIndex:LastIndex] = False
        if (Deviants == True).all():
            return zeros(len(DataSet), dtype='bool')
        return Deviants

    def _SaveAllLocalVars(self, Filehandle, Group, PrintOutput='Failed'):
        """
		PrintOutput: All, Failed, False
		"""
        from DataContainer.StorageArray import ChannelizedArray
        from numpy import ndarray, array
        self._DataType
        for var in vars(self):
            if PrintOutput == 'All':
                print "\n" + str(var) + " : " + str(
                    type(vars(locals()['self'])[var]))
            if str(var) == 'Norm':
                continue
            try:
                if isinstance(vars(locals()['self'])[var], (ndarray, list)):
                    if PrintOutput == 'All':
                        print "Trying to save: " + str(var) + " : As a ndarray"
                    Filehandle.create_array(Group,
                                            var,
                                            obj=vars(locals()['self'])[var],
                                            title='')
                    Group._f_get_child(var).set_attr('VarType', 'ndarray')

                elif isinstance(vars(locals()['self'])[var], ChannelizedArray):
                    try:
                        CurrentVar = vars(locals()['self'])[var]
                        if PrintOutput == 'All':
                            print "Trying to save: " + str(
                                var) + " : As a ChannelizedArray"
                        if PrintOutput == 'All': print CurrentVar._Data
                        if PrintOutput == 'All': print CurrentVar
                        try:
                            CurrentLength = len(CurrentVar)
                        except:
                            CurrentLength = 1
                        if PrintOutput == 'All':
                            print "Expected Length: " + str(CurrentLength)
                        Filehandle.create_table(Group,
                                                var,
                                                filters=None,
                                                expectedrows=CurrentLength,
                                                description=CurrentVar._Data)
                        Group._f_get_child(var).set_attr(
                            'VarType', 'ChannelizedArray')
                        del CurrentLength
                        del CurrentVar
                    except:
                        import sys
                        e = sys.exc_info()
                        print e

                else:
                    if PrintOutput == 'All':
                        print "Trying to save: " + str(var) + " : As a Scalar"
                    Filehandle.create_array(Group,
                                            var,
                                            obj=array(
                                                vars(locals()['self'])[var]),
                                            title='')
                    Group._f_get_child(var).set_attr('VarType', 'ndarray')

            except:
                if (PrintOutput == 'All') or (PrintOutput == 'Failed'):
                    print "Failed to save: " + str(var)

        Filehandle.flush()
        return True

    def _LoadAllLocalVars(self, Group, PrintOutput='Failed'):
        """
		PrintOutput: All, Failed, False
		"""
        from DataContainer.StorageArray import ChannelizedArray
        from numpy import ndarray, copy
        for var in Group:
            if PrintOutput == 'All':
                print "\n" + str(var.name) + " : " + str(var.ndim)
            if PrintOutput == 'All':
                print "" + str(var.name) + " : " + str(var.flavor)
            if PrintOutput == 'All':
                print "" + str(var.name) + " : " + str(var.shape)
            if PrintOutput == 'All':
                print "" + str(var.name) + " : " + str(len(var))
            if PrintOutput == 'All':
                print "" + str(var.name) + " : " + str(var.get_attr('VarType'))
            if PrintOutput == 'All':
                print "" + str(var.name) + " : " + str(var.dtype)

            try:
                if var.get_attr('VarType') == 'ndarray':
                    vars(locals()['self'])[var.name] = var.read()

                elif var.get_attr('VarType') == 'ChannelizedArray':
                    vars(locals()['self'])[var.name] = ChannelizedArray(
                        len(var),
                        ChannelCount=len(var.colnames),
                        NumpyDataType=var.dtype[0])
                    vars(locals()['self'])[var.name]._Data = var.read()
                    vars(locals()['self'])[var.name]._SetItems()
            except:
                if PrintOutput == 'Failed':
                    print 'Failed to load: ' + str(var.name)


#			try:
#				if isinstance(vars(locals()['self'])[var], (ndarray,list)):
#					if PrintOutput=='All': print "Trying to save: " + str(var) + " : As a ndarray"
#					Filehandle.create_array(Group, var, obj=vars(locals()['self'])[var], title='')
#
#				elif isinstance(vars(locals()['self'])[var], ChannelizedArray):
#					try:
#						CurrentVar = vars(locals()['self'])[var]
#						if PrintOutput=='All': print "Trying to save: " + str(var) + " : As a ChannelizedArray"
#						if PrintOutput=='All': print CurrentVar._Data
#						if PrintOutput=='All': print CurrentVar
#						try:
#							CurrentLength = len(CurrentVar)
#						except:
#							CurrentLength = 1
#						if PrintOutput=='All': print "Expected Length: " + str(CurrentLength)
#						Filehandle.create_table(Group, var, filters=None, expectedrows=CurrentLength, description=CurrentVar._Data)
#						del CurrentLength
#						del CurrentVar
#					except:
#						import sys
#						e = sys.exc_info()
#						print e
#
#				else:
#					if PrintOutput=='All': print "Trying to save: " + str(var) + " : As a Scalar"
#					Filehandle.create_array(Group, var, obj=vars(locals()['self'])[var], title='')
#
#			except:
#				if (PrintOutput=='All') or (PrintOutput=='Failed'): print "Failed to save: " + str(var)
#
#		Filehandle.flush()
        return True
Пример #2
0
/2013-09-05 exp 4 mg water 150 pol
/2013-09-05 exp 5 mg water 240 pol
/2013-09-05 exp 6 mg water 200 pol
/2013-09-05 exp 7 mg water cp
"""

Data = array(Data[3:])

from numpy import sum, roll, argmax, diff

SummedScatter = ChannelizedArray(len(Data[0].ADC_Intervals), 2, 'float64')
NoTAC_Norm_SummedScatter = ChannelizedArray(len(Data[0].ADC_Intervals), 2,
                                            'float64')
for D in Data:
    Temp = ChannelizedArray(len(Data[0].ADC_Intervals), 2, 'float64')
    for Index in NoTAC_Norm_SummedScatter.keys():
        Nonzero = D._RawBinned[Index].nonzero()
        Temp[Index][Nonzero] = (1.0 * D._RawBinned[Index][Nonzero])
        Temp[Index] = roll(Temp[Index], (Shift - argmax(Temp[Index])))
        NoTAC_Norm_SummedScatter[Index] += Temp[Index]
NoTAC_Norm_SummedScatter._SetItems()

for D in Data:
    Temp = ChannelizedArray(len(Data[0].ADC_Intervals), 2, 'float64')
    for Index in SummedScatter.keys():
        Nonzero = (D._RawBinned[Index].nonzero()
                   and TotalNormInt[Index].nonzero())
        Temp[Index][Nonzero] = (1.0 * D._RawBinned[Index][Nonzero])
        Temp[Index][Nonzero] = Temp[Index][Nonzero] / (
            1.0 * TotalNormInt[Index][Nonzero])
        Temp[Index] = roll(Temp[Index], (Shift - argmax(Temp[Index])))
Пример #3
0
from DataContainer.StorageArray import ChannelizedArray
TotalNormInt = ChannelizedArray(len(Data[0].ADC_Intervals), 2, 'uint64')
TotalNormInt._Data = file_handle.get_node('/TotalNorm')._RawBinned.read()
TotalNormInt._SetItems()
TotalNorm = ChannelizedArray(len(Data[0].ADC_Intervals), 2, 'float64')

file_handle.close()

from numpy import sum, roll, argmax

SummedBuffer = ChannelizedArray(len(Data[0].ADC_Intervals), 2, 'float64')
NoTAC_Norm_SummedBuffer = ChannelizedArray(len(Data[0].ADC_Intervals), 2,
                                           'float64')
for D in Data:
    Temp = ChannelizedArray(len(Data[0].ADC_Intervals), 2, 'float64')
    for Index in NoTAC_Norm_SummedBuffer.keys():
        Nonzero = D._RawBinned[Index].nonzero()
        Temp[Index][Nonzero] = (1.0 * D._RawBinned[Index][Nonzero])
        Temp[Index] = roll(Temp[Index], (Shift - argmax(Temp[Index])))
        NoTAC_Norm_SummedBuffer[Index] += Temp[Index]
NoTAC_Norm_SummedBuffer._SetItems()

import matplotlib.pylab as plt

#Target = argmax(Time > 0.4)
#Target = argmax(Time > 5.0)

for D in Data:
    Temp = ChannelizedArray(len(Data[0].ADC_Intervals), 2, 'float64')
    for Index in SummedBuffer.keys():
        Nonzero = (D._RawBinned[Index].nonzero()
Пример #4
0
#DataSet = '/2013-09-03 exp 5 low count rate alexa 200 pol'; G = 2.0; BG = 'Buffer'
#DataSet = '/2013-09-03 exp 2 low count rate alexa cp'; G = 1.0; BG = 'Buffer'
#DataSet = '/2013-09-04 exp 6 dna low count rate cp'; G = 1.0; BG = 'Buffer'
#DataSet = '/2013-09-01 exp 5 1 nm dna in buffer 150 pol'; G = 2.0; BG = 'Buffer'
#DataSet = '/2013-09-06 exp 2 ncp high count rate 150 pol'; G = 2.0; BG = 'Buffer'

from DataContainer.StorageArray import ChannelizedArray

Length = len(Time)
Dtype = 'float64'
Data = ChannelizedArray(Length, 2, Dtype)
Data._Data = FileHandle.get_node(DataSet)._RawBinned.read()

AlignedRaw = ChannelizedArray(Length, 4, 'float64')
AlignedRawNonzero = dict()
for Index in Data.keys():
    Nonzero = Norm[Index].nonzero()

    AlignedRaw[Index][Nonzero] = Data[Index][Nonzero] / Norm[Index][Nonzero]
    AlignedRaw[Index] = roll(AlignedRaw[Index],
                             (Shift + DataShift - argmax(AlignedRaw[Index])))

    AlignedRawNonzero[Index] = AlignedRaw[Index].nonzero()[0]
    Nonzero = AlignedRaw[Index].nonzero()[0]
    NonzeroLength = len(Nonzero)

    AlignedRaw[Index][arange(NonzeroLength)] = AlignedRaw[Index][Nonzero]
    AlignedRaw[Index][NonzeroLength:] = 0

Sum = "Channel_{Sum}"
AlignedRaw.ChangeColName("Channel_3", Sum)
Пример #5
0
                                                 Time,
                                                 Vars[0],
                                                 Vars[1],
                                                 0.0,
                                                 Vars[4],
                                                 0.0,
                                                 Vars[6],
                                                 Vars[7],
                                                 Vars[8],
                                                 0.0,
                                                 0.0,
                                                 Start=0,
                                                 End=len(Time))
#PlotArray['Background'], Temp, Temp2 = FitNormed(Data, Time, Vars[0], Vars[1], Vars[3], Vars[4], 0.0, Vars[6], Vars[7], Vars[8], Start=0, End=len(Time))

for key in PlotArray.keys():
    if (PlotArray[key] <= 0.0).any():
        N = 10.0**-3.0
        #PlotArray[key][PlotArray[key] <= 0.0] = min(PlotArray[key][PlotArray[key] <= 0.0])
        PlotArray[key][PlotArray[key] <= N] = N

if Plot:
    from Display import ForkDisplay
    ForkDisplay(Time,
                PlotArray,
                Title="Fit Data : %s" % time(),
                YAxis="Intensity (Normalized)")
    ForkDisplay(Time,
                PlotArray,
                Title="Fit Data : %s" % time(),
                YAxis="Intensity (Normalized)",