Exemple #1
0
    def eval(self, pars):

        _ctx,queue = card()
        radius, length = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in OneDGpuCylinder.PD_PARS]

        #Get the weights for each
        radius.value, radius.weight = radius.get_weights(pars['radius'], 0, 10000, True)
        length.value, length.weight = length.get_weights(pars['length'], 0, 10000, True)

        #Perform the computation, with all weight points
        sum, norm, vol = 0.0, 0.0, 0.0,
        sub = pars['sldCyl'] - pars['sldSolv']

        real = np.float32 if self.q.dtype == np.dtype('float32') else np.float64
        #Loop over radius, length, theta, phi weight points
        for r in xrange(len(radius.weight)):
            for l in xrange(len(length.weight)):
                        self.prg.OneDCylKernel(queue, self.q.shape, None, self.q_b, self.res_b, real(sub),
                                           real(length.value[l]), real(radius.value[r]), real(pars['scale']),
                                           np.uint32(self.q.size), real(pars['uplim']), real(pars['bolim']))
                        cl.enqueue_copy(queue, self.res, self.res_b)
                        sum += radius.weight[r]*length.weight[l]*self.res*pow(radius.value[r],2)*length.value[l]
                        vol += radius.weight[r]*length.weight[l] *pow(radius.value[r],2)*length.value[l]
                        norm += radius.weight[r]*length.weight[l]

        if vol != 0.0 and norm != 0.0:
            sum *= norm/vol

        return sum/norm + pars['background']
Exemple #2
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    def __init__(self, qx, qy, dtype='float32', cutoff=1e-5):
        ctx,_queue = card()
        src, qx, qy = set_precision(open('Kernel/Kernel-Ellipse_f.cpp').read(), qx, qy, dtype=dtype)
        self.prg = cl.Program(ctx, src).build()
        self.qx, self.qy = qx, qy
        self.cutoff = cutoff

        self.qx_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=self.qx)
        self.qy_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=self.qy)
        self.res_b = cl.Buffer(ctx, mf.READ_WRITE, self.qx.nbytes)
        self.res = np.empty_like(self.qx)
    def __init__(self, qx, qy, dtype='float32', cutoff=1e-5):
        #create context, queue, and build program
        ctx,_queue = card()
        src, qx, qy = set_precision(open('Kernel/NR_BessJ1.cpp').read()+"\n"+open('Kernel/Kernel-CoreShellCylinder_f.cpp').read(), qx, qy, dtype=dtype)
        self.prg = cl.Program(ctx, src).build()
        self.qx, self.qy = qx, qy
        self.cutoff = cutoff

        self.qx_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=self.qx)
        self.qy_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=self.qy)
        self.res_b = cl.Buffer(ctx, mf.READ_WRITE, self.qx.nbytes)
        self.res = np.empty_like(self.qx)
Exemple #4
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    def eval(self, pars):
    #b_n = radius_b # want, a_n = radius_a # want, etc
        _ctx,queue = card()
        self.res[:] = 0
        cl.enqueue_copy(queue, self.res_b, self.res)
        radius_a, radius_b, axis_theta, axis_phi = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in GpuEllipse.PD_PARS]

        radius_a.value, radius_a.weight = radius_a.get_weights(pars['radius_a'], 0, 10000, True)
        radius_b.value, radius_b.weight = radius_b.get_weights(pars['radius_b'], 0, 10000, True)
        axis_theta.value, axis_theta.weight = axis_theta.get_weights(pars['axis_theta'], -90, 180, False)
        axis_phi.value, axis_phi.weight = axis_phi.get_weights(pars['axis_phi'], -90, 180, False)

        #Perform the computation, with all weight points
        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(axis_theta.weight)
        sub = pars['sldEll'] - pars['sldSolv']
        real = np.float32 if self.qx.dtype == np.dtype('float32') else np.float64

        #Loop over radius weight points
        for i in xrange(len(radius_a.weight)):
            #Loop over length weight points
            for j in xrange(len(radius_b.weight)):
                #Average over theta distribution
                vol += radius_a.weight[i]*radius_b.weight[j]*pow(radius_b.value[j], 2)*radius_a.value[i]
                norm_vol += radius_a.weight[i]*radius_b.weight[j]

                for k in xrange(len(axis_theta.weight)):
                    #Average over phi distribution
                    for l in xrange(len(axis_phi.weight)):
                        #call the kernel
                        self.prg.EllipsoidKernel(queue, self.qx.shape, None, real(radius_a.weight[i]),
                                        real(radius_b.weight[j]), real(axis_theta.weight[k]),
                                        real(axis_phi.weight[l]), real(pars['scale']), real(radius_a.value[i]),
                                        real(radius_b.value[j]), real(sub), real(axis_theta.value[k]),
                                        real(axis_phi.value[l]), self.qx_b, self.qy_b, self.res_b,
                                        np.uint32(self.qx.size), np.uint32(len(axis_theta.weight)))

                        norm += radius_a.weight[i]*radius_b.weight[j]*axis_theta.weight[k]*axis_phi.weight[l]

        # Averaging in theta needs an extra normalization
        # factor to account for the sin(theta) term in the
        # integration (see documentation).

    #    if size > 1:
     #       norm /= math.asin(1.0)
        cl.enqueue_copy(queue, self.res, self.res_b)
        sum += self.res
        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol/vol

        return sum/norm+pars['background']
    def __init__(self, qx, qy, dtype='float32'):
        ctx,_queue = card()
        src, qx, qy = set_precision(open('Kernel-TriaxialEllipse.cpp').read(), qx, qy, dtype=dtype)
        self.prg = cl.Program(ctx, src).build()
        self.qx, self.qy = qx, qy

        #buffers
        mf = cl.mem_flags
        self.qx_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=self.qx)
        self.qy_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=self.qy)
        self.res_b = cl.Buffer(ctx, mf.WRITE_ONLY, qx.nbytes)
        self.res = np.empty_like(self.qx)
Exemple #6
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    def eval(self, pars):

        _ctx,queue = card()
        self.res[:] = 0
        cl.enqueue_copy(queue, self.res_b, self.res)

        rad_cyl,len_cyl,rad_cap,theta,phi = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in GpuCapCylinder.PD_PARS]

        rad_cyl.value, rad_cyl.weight = rad_cyl.get_weights(pars['rad_cyl'], 0, 10000, True)
        rad_cap.value, rad_cap.weight = rad_cap.get_weights(pars['rad_cap'], 0, 10000, True)
        len_cyl.value, len_cyl.weight = len_cyl.get_weights(pars['len_cyl'], 0, 10000, True)
        theta.value, theta.weight = theta.get_weights(pars['theta'], -90, 180, False)
        phi.value, phi.weight = phi.get_weights(pars['phi'], -90, 180, False)

        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(theta.weight)
        sub = pars['sld_capcyl']-pars['sld_solv']
        real = np.float32 if self.qx.dtype == np.dtype('float32') else np.float64

        for i in xrange(len(rad_cyl.weight)):
            for m in xrange(len(rad_cap.weight)):
                for j in xrange(len(len_cyl.weight)):

                    hDist = -1.0*sqrt(fabs(rad_cap.value[m]*rad_cap.value[m]-rad_cyl.value[i]*rad_cyl.value[i]))
                    vol_i = 4.0*atan(1.0)*rad_cyl.value[i]*rad_cyl.value[i]*len_cyl.value[j]+2.0*4.0*atan(1.0)/3.0\
                                    *((rad_cap.value[m]-hDist)*(rad_cap.value[m]-hDist)*(2*rad_cap.value[m]+hDist))
                    vol += rad_cyl.weight[i]*len_cyl.weight[j]*rad_cap.weight[m]*vol_i
                    norm_vol += rad_cyl.weight[i]*len_cyl.weight[j]*rad_cap.weight[m]

                    for k in xrange(len(theta.weight)):
                        for l in xrange(len(phi.weight)):

                            self.prg.CapCylinderKernel(queue, self.qx.shape, None, self.qx_b, self.qy_b, self.res_b,
                                        real(vol_i), real(hDist), real(rad_cyl.value[i]), real(rad_cap.value[m]), real(len_cyl.value[j]),
                                        real(theta.value[k]), real(phi.value[l]), real(sub), real(pars['scale']),
                                        real(phi.weight[l]), real(theta.weight[k]), real(rad_cap.weight[m]),
                                        real(rad_cyl.weight[i]), real(len_cyl.weight[j]), real(theta.weight[k]), np.uint32(self.qx.size), np.uint32(size))

                            norm += rad_cyl.weight[i]*len_cyl.weight[j]*rad_cap.weight[m]*theta.weight[k]*phi.weight[l]



        #if size > 1:
         #   norm /= asin(1.0)
        cl.enqueue_copy(queue, self.res, self.res_b)
        sum += self.res
        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol/vol

        return sum/norm + pars['background']
Exemple #7
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    def __init__(self, q, dtype='float32'):

        #create context, queue, and build program
        ctx,_queue = card()
        trala = open('Kernel/NR_BessJ1.cpp').read()+"\n"+open('Kernel/OneDCyl_Kfun.cpp').read()+"\n"+open('Kernel/Kernel-OneDCylinder.cpp').read()
        src, self.q = set_precision_1d(trala, q, dtype=dtype)
        self.prg = cl.Program(ctx, src).build()

        #buffers
        mf = cl.mem_flags
        self.q_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=self.q)
        self.res_b = cl.Buffer(ctx, mf.WRITE_ONLY, q.nbytes)
        self.res = np.empty_like(self.q)
Exemple #8
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    def eval(self, pars):

        tic()
        _ctx,queue = card()
        self.res[:] = 0
        cl.enqueue_copy(queue, self.res_b, self.res)
        radius, length, cyl_theta, cyl_phi = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in GpuCylinder.PD_PARS]

        #Get the weights for each
        radius.value, radius.weight = radius.get_weights(pars['radius'], 0, 10000, True)
        length.value, length.weight = length.get_weights(pars['length'], 0, 10000, True)
        cyl_theta.value, cyl_theta.weight = cyl_theta.get_weights(pars['cyl_theta'], -np.inf, np.inf, False)
        cyl_phi.value, cyl_phi.weight = cyl_phi.get_weights(pars['cyl_phi'], -np.inf, np.inf, False)

        #Perform the computation, with all weight points
        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(cyl_theta.weight)
        sub = pars['sldCyl'] - pars['sldSolv']

        real = np.float32 if self.qx.dtype == np.dtype('float32') else np.float64
        #Loop over radius, length, theta, phi weight points
        for i in xrange(len(radius.weight)):
            for j in xrange(len(length.weight)):

                vol += radius.weight[i]*length.weight[j]*pow(radius.value[i], 2)*length.value[j]
                norm_vol += radius.weight[i]*length.weight[j]

                for k in xrange(len(cyl_theta.weight)):
                    for l in xrange(len(cyl_phi.weight)):
                        self.prg.CylinderKernel(queue, self.qx.shape, None, self.qx_b, self.qy_b, self.res_b, real(sub),
                                           real(radius.value[i]), real(length.value[j]), real(pars['scale']),
                                           real(radius.weight[i]), real(length.weight[j]), real(cyl_theta.weight[k]),
                                           real(cyl_phi.weight[l]), real(cyl_theta.value[k]), real(cyl_phi.value[l]),
                                           np.uint32(self.qx.size), np.uint32(size))

                        norm += radius.weight[i]*length.weight[j]*cyl_theta.weight[k]*cyl_phi.weight[l]


       # if size > 1:
        #    norm /= math.asin(1.0)
        cl.enqueue_copy(queue, self.res, self.res_b)
        sum = self.res
        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol/vol

        print toc()*1000, self.qx.shape[0]
        return sum/norm+pars['background']
Exemple #9
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    def eval(self, pars):

        _ctx,queue = card()
        self.res[:] = 0
        cl.enqueue_copy(queue, self.res_b, self.res)
        radius, length, thickness, axis_phi, axis_theta = [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
                                     for base in GpuCoreShellCylinder.PD_PARS]

        radius.value, radius.weight = radius.get_weights(pars['radius'], 0, 10000, True)
        length.value, length.weight = length.get_weights(pars['length'], 0, 10000, True)
        thickness.value, thickness.weight = thickness.get_weights(pars['thickness'], 0, 10000, True)
        axis_phi.value, axis_phi.weight = axis_phi.get_weights(pars['axis_phi'], -90, 180, False)
        axis_theta.value, axis_theta.weight = axis_theta.get_weights(pars['axis_theta'], -90, 180, False)

        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(axis_theta.weight)

        real = np.float32 if self.qx.dtype == np.dtype('float32') else np.float64
        for r in xrange(len(radius.weight)):
            for l in xrange(len(length.weight)):
                for th in xrange(len(thickness.weight)):

                    vol += radius.weight[r]*length.weight[l]*thickness.weight[th]*pow(radius.value[r]+thickness.value[th],2)\
                                   *(length.value[l]+2.0*thickness.value[th])
                    norm_vol += radius.weight[r]*length.weight[l]*thickness.weight[th]

                    for at in xrange(len(axis_theta.weight)):
                        for p in xrange(len(axis_phi.weight)):

                            self.prg.CoreShellCylinderKernel(queue, self.qx.shape, None, self.qx_b, self.qy_b, self.res_b,
                                    real(axis_theta.value[at]), real(axis_phi.value[p]), real(thickness.value[th]),
                                    real(length.value[l]), real(radius.value[r]), real(pars['scale']),
                                    real(radius.weight[r]), real(length.weight[l]), real(thickness.weight[th]),
                                    real(axis_theta.weight[at]), real(axis_phi.weight[p]), real(pars['core_sld']),
                                    real(pars['shell_sld']), real(pars['solvent_sld']),np.uint32(size),
                                    np.uint32(self.qx.size))

                            norm += radius.weight[r]*length.weight[l]*thickness.weight[th]*axis_theta.weight[at]\
                                    *axis_phi.weight[p]

        #if size>1:
         #   norm /= math.asin(1.0)
        cl.enqueue_copy(queue, self.res, self.res_b)
        sum = self.res
        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol/vol

        return sum/norm + pars['background']
Exemple #10
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    def eval(self, pars):

        _ctx,queue = card()
        rad_cyl,length,rad_cap,theta,phi = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in GpuCapCylinder.PD_PARS]

        rad_cyl.value, rad_cyl.weight = rad_cyl.get_weights(pars['rad_cyl'], 0, 1000, True)
        rad_cap.value, rad_cap.weight = rad_cap.get_weights(pars['rad_cap'], 0, 1000, True)
        length.value, length.weight = length.get_weights(pars['length'], 0, 1000, True)
        theta.value, theta.weight = theta.get_weights(pars['theta'], -90, 180, False)
        phi.value, phi.weight = phi.get_weights(pars['phi'], -90, 180, False)

        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(theta.weight)
        sub = pars['sld_capcyl']-pars['sld_solv']
        real = np.float32 if self.qx.dtype == np.dtype('float32') else np.float64

        for i in xrange(len(rad_cyl.weight)):
            for m in xrange(len(rad_cap.weight)):
                for j in xrange(len(length.weight)):
                    for k in xrange(len(theta.weight)):
                        for l in xrange(len(phi.weight)):

                            self.prg.CapCylinderKernel(queue, self.qx.shape, None, self.qx_b, self.qy_b, self.res_b,
                                        self.vol_b, real(rad_cyl.value[i]), real(rad_cap.value[m]), real(length.value[j]),
                                        real(theta.value[k]), real(phi.value[l]), real(sub), real(pars['scale']),
                                        real(phi.weight[l]), real(theta.weight[k]), real(rad_cap.weight[m]),
                                        real(rad_cyl.weight[i]), real(length.weight[j]), np.uint32(self.qx.size), np.uint32(size),
                                        self.Gauss76W_b, self.Gauss76Z_b)

                            cl.enqueue_copy(queue, self.res, self.res_b)
                            cl.enqueue_copy(queue, self.vol_i, self.vol_b)

                            sum += self.res
                            vol += rad_cyl.weight[i]*length.weight[j]*rad_cap.weight[m]*self.vol_i
                            norm_vol += rad_cyl.weight[i]*length.weight[j]*rad_cap.weight[m]
                            norm += rad_cyl.weight[i]*length.weight[j]*rad_cap.weight[m]*theta.weight[k]*phi.weight[l]

        if size > 1:
            norm /= asin(1.0)

        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol/vol

        return sum/norm + pars['background']
Exemple #11
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    def __init__(self, q, dtype='float32'):

        #create context, queue, and build program
        ctx, _queue = card()
        trala = open('Kernel/NR_BessJ1.cpp').read() + "\n" + open(
            'Kernel/OneDCyl_Kfun.cpp').read() + "\n" + open(
                'Kernel/Kernel-OneDCylinder.cpp').read()
        src, self.q = set_precision_1d(trala, q, dtype=dtype)
        self.prg = cl.Program(ctx, src).build()

        #buffers
        mf = cl.mem_flags
        self.q_b = cl.Buffer(ctx,
                             mf.READ_ONLY | mf.COPY_HOST_PTR,
                             hostbuf=self.q)
        self.res_b = cl.Buffer(ctx, mf.WRITE_ONLY, q.nbytes)
        self.res = np.empty_like(self.q)
Exemple #12
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    def __init__(self, qx, qy, dtype='float32', cutoff=1e-5):
        ctx, _queue = card()
        src, qx, qy = set_precision(open('Kernel/Kernel-Ellipse_f.cpp').read(),
                                    qx,
                                    qy,
                                    dtype=dtype)
        self.prg = cl.Program(ctx, src).build()
        self.qx, self.qy = qx, qy
        self.cutoff = cutoff

        self.qx_b = cl.Buffer(ctx,
                              mf.READ_ONLY | mf.COPY_HOST_PTR,
                              hostbuf=self.qx)
        self.qy_b = cl.Buffer(ctx,
                              mf.READ_ONLY | mf.COPY_HOST_PTR,
                              hostbuf=self.qy)
        self.res_b = cl.Buffer(ctx, mf.READ_WRITE, self.qx.nbytes)
        self.res = np.empty_like(self.qx)
Exemple #13
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    def eval(self, pars):
        tic()

        ctx,queue = card()
        real = np.float32 if self.qx.dtype == np.dtype('float32') else np.float64
        loops, loop_lengths = make_loops(pars, dtype=self.qx.dtype)
        loops_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=loops)
        loops_l = cl.LocalMemory(len(loops.data))

        self.prg.CylinderKernel(queue, self.qx.shape, None,
            self.qx_b, self.qy_b, self.res_b,
            loops_b, loops_l, real(self.cutoff),
            real(pars['scale']), real(pars['background']),
            real(pars['sldCyl']-pars['sldSolv']),
            *[np.uint32(pn) for pn in loop_lengths])

        cl.enqueue_copy(queue, self.res, self.res_b)
        print toc()*1000, self.qx.shape[0]

        return self.res
Exemple #14
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    def __init__(self, qx, qy, dtype='float32'):
        ctx, _queue = card()
        src, qx, qy = set_precision(
            open('Kernel/Kernel-TriaxialEllipse.cpp').read(),
            qx,
            qy,
            dtype=dtype)
        self.prg = cl.Program(ctx, src).build()
        self.qx, self.qy = qx, qy

        #buffers
        mf = cl.mem_flags
        self.qx_b = cl.Buffer(ctx,
                              mf.READ_ONLY | mf.COPY_HOST_PTR,
                              hostbuf=self.qx)
        self.qy_b = cl.Buffer(ctx,
                              mf.READ_ONLY | mf.COPY_HOST_PTR,
                              hostbuf=self.qy)
        self.res_b = cl.Buffer(ctx, mf.WRITE_ONLY, qx.nbytes)
        self.res = np.empty_like(self.qx)
Exemple #15
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    def eval(self, pars):

        _ctx, queue = card()
        radius, length = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in OneDGpuCylinder.PD_PARS]

        #Get the weights for each
        radius.value, radius.weight = radius.get_weights(
            pars['radius'], 0, 10000, True)
        length.value, length.weight = length.get_weights(
            pars['length'], 0, 10000, True)

        #Perform the computation, with all weight points
        sum, norm, vol = 0.0, 0.0, 0.0,
        sub = pars['sldCyl'] - pars['sldSolv']

        real = np.float32 if self.q.dtype == np.dtype(
            'float32') else np.float64
        #Loop over radius, length, theta, phi weight points
        for r in xrange(len(radius.weight)):
            for l in xrange(len(length.weight)):
                self.prg.OneDCylKernel(queue, self.q.shape, None, self.q_b,
                                       self.res_b, real(sub),
                                       real(length.value[l]),
                                       real(radius.value[r]),
                                       real(pars['scale']),
                                       np.uint32(self.q.size),
                                       real(pars['uplim']),
                                       real(pars['bolim']))
                cl.enqueue_copy(queue, self.res, self.res_b)
                sum += radius.weight[r] * length.weight[l] * self.res * pow(
                    radius.value[r], 2) * length.value[l]
                vol += radius.weight[r] * length.weight[l] * pow(
                    radius.value[r], 2) * length.value[l]
                norm += radius.weight[r] * length.weight[l]

        if vol != 0.0 and norm != 0.0:
            sum *= norm / vol

        return sum / norm + pars['background']
Exemple #16
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    def __init__(self, qx, qy, dtype='float32', cutoff=1e-5):
        #create context, queue, and build program
        ctx, _queue = card()
        src, qx, qy = set_precision(
            open('Kernel/NR_BessJ1.cpp').read() + "\n" +
            open('Kernel/Kernel-CoreShellCylinder_f.cpp').read(),
            qx,
            qy,
            dtype=dtype)
        self.prg = cl.Program(ctx, src).build()
        self.qx, self.qy = qx, qy
        self.cutoff = cutoff

        self.qx_b = cl.Buffer(ctx,
                              mf.READ_ONLY | mf.COPY_HOST_PTR,
                              hostbuf=self.qx)
        self.qy_b = cl.Buffer(ctx,
                              mf.READ_ONLY | mf.COPY_HOST_PTR,
                              hostbuf=self.qy)
        self.res_b = cl.Buffer(ctx, mf.READ_WRITE, self.qx.nbytes)
        self.res = np.empty_like(self.qx)
Exemple #17
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    def __init__(self, qx, qy, dtype='float32'):

        #create context, queue, and build program
        ctx,_queue = card()
        trala = open('NR_BessJ1.cpp').read()+"\n"+open('Capcyl_Kfun.cpp').read()+"\n"+open('Kernel-Cylinder.cpp').read()
        src, qx, qy = set_precision(trala, qx, qy, dtype=dtype)
        self.prg = cl.Program(ctx, src).build()
        self.qx, self.qy = qx, qy


        #buffers
        mf = cl.mem_flags
        self.qx_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=self.qx)
        self.qy_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=self.qy)
        G, Z = Gauss76Wt, Gauss76Z
        self.Gauss76W_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=G)
        self.Gauss76Z_b = cl.Buffer(ctx, mf.READ_ONLY | mf.COPY_HOST_PTR, hostbuf=Z)
        self.res_b = cl.Buffer(ctx, mf.WRITE_ONLY, qx.nbytes)
        self.res = np.empty_like(self.qx)
        self.vol_i = float(0.0)
        self.vol_b = cl.Buffer(ctx, mf.WRITE_ONLY, self.vol_i.nbytes)
Exemple #18
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    def eval(self, pars):
        tic()

        ctx, queue = card()
        real = np.float32 if self.qx.dtype == np.dtype(
            'float32') else np.float64
        loops, loop_lengths = make_loops(pars, dtype=self.qx.dtype)
        loops_b = cl.Buffer(ctx,
                            mf.READ_ONLY | mf.COPY_HOST_PTR,
                            hostbuf=loops)
        loops_l = cl.LocalMemory(len(loops.data))

        self.prg.CylinderKernel(queue, self.qx.shape, None, self.qx_b,
                                self.qy_b, self.res_b, loops_b, loops_l,
                                real(self.cutoff), real(pars['scale']),
                                real(pars['background']),
                                real(pars['sldCyl'] - pars['sldSolv']),
                                *[np.uint32(pn) for pn in loop_lengths])

        cl.enqueue_copy(queue, self.res, self.res_b)
        print toc() * 1000, self.qx.shape[0]

        return self.res
Exemple #19
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    def eval(self, pars):

        tic()
        _ctx, queue = card()
        self.res[:] = 0
        cl.enqueue_copy(queue, self.res_b, self.res)
        radius, length, cyl_theta, cyl_phi = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in GpuCylinder.PD_PARS]

        #Get the weights for each
        radius.value, radius.weight = radius.get_weights(
            pars['radius'], 0, 10000, True)
        length.value, length.weight = length.get_weights(
            pars['length'], 0, 10000, True)
        cyl_theta.value, cyl_theta.weight = cyl_theta.get_weights(
            pars['cyl_theta'], -np.inf, np.inf, False)
        cyl_phi.value, cyl_phi.weight = cyl_phi.get_weights(
            pars['cyl_phi'], -np.inf, np.inf, False)

        #Perform the computation, with all weight points
        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(cyl_theta.weight)
        sub = pars['sldCyl'] - pars['sldSolv']

        real = np.float32 if self.qx.dtype == np.dtype(
            'float32') else np.float64
        #Loop over radius, length, theta, phi weight points
        for i in xrange(len(radius.weight)):
            for j in xrange(len(length.weight)):

                vol += radius.weight[i] * length.weight[j] * pow(
                    radius.value[i], 2) * length.value[j]
                norm_vol += radius.weight[i] * length.weight[j]

                for k in xrange(len(cyl_theta.weight)):
                    for l in xrange(len(cyl_phi.weight)):
                        self.prg.CylinderKernel(queue, self.qx.shape, None,
                                                self.qx_b, self.qy_b,
                                                self.res_b, real(sub),
                                                real(radius.value[i]),
                                                real(length.value[j]),
                                                real(pars['scale']),
                                                real(radius.weight[i]),
                                                real(length.weight[j]),
                                                real(cyl_theta.weight[k]),
                                                real(cyl_phi.weight[l]),
                                                real(cyl_theta.value[k]),
                                                real(cyl_phi.value[l]),
                                                np.uint32(self.qx.size),
                                                np.uint32(size))

                        norm += radius.weight[i] * length.weight[
                            j] * cyl_theta.weight[k] * cyl_phi.weight[l]

    # if size > 1:
    #    norm /= math.asin(1.0)
        cl.enqueue_copy(queue, self.res, self.res_b)
        sum = self.res
        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol / vol

        print toc() * 1000, self.qx.shape[0]
        return sum / norm + pars['background']
Exemple #20
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    def eval(self, pars):

        _ctx, queue = card()
        self.res[:] = 0
        cl.enqueue_copy(queue, self.res_b, self.res)

        rad_cyl,len_cyl,rad_cap,theta,phi = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in GpuCapCylinder.PD_PARS]

        rad_cyl.value, rad_cyl.weight = rad_cyl.get_weights(
            pars['rad_cyl'], 0, 10000, True)
        rad_cap.value, rad_cap.weight = rad_cap.get_weights(
            pars['rad_cap'], 0, 10000, True)
        len_cyl.value, len_cyl.weight = len_cyl.get_weights(
            pars['len_cyl'], 0, 10000, True)
        theta.value, theta.weight = theta.get_weights(pars['theta'], -90, 180,
                                                      False)
        phi.value, phi.weight = phi.get_weights(pars['phi'], -90, 180, False)

        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(theta.weight)
        sub = pars['sld_capcyl'] - pars['sld_solv']
        real = np.float32 if self.qx.dtype == np.dtype(
            'float32') else np.float64

        for i in xrange(len(rad_cyl.weight)):
            for m in xrange(len(rad_cap.weight)):
                for j in xrange(len(len_cyl.weight)):

                    hDist = -1.0 * sqrt(
                        fabs(rad_cap.value[m] * rad_cap.value[m] -
                             rad_cyl.value[i] * rad_cyl.value[i]))
                    vol_i = 4.0*atan(1.0)*rad_cyl.value[i]*rad_cyl.value[i]*len_cyl.value[j]+2.0*4.0*atan(1.0)/3.0\
                                    *((rad_cap.value[m]-hDist)*(rad_cap.value[m]-hDist)*(2*rad_cap.value[m]+hDist))
                    vol += rad_cyl.weight[i] * len_cyl.weight[
                        j] * rad_cap.weight[m] * vol_i
                    norm_vol += rad_cyl.weight[i] * len_cyl.weight[
                        j] * rad_cap.weight[m]

                    for k in xrange(len(theta.weight)):
                        for l in xrange(len(phi.weight)):

                            self.prg.CapCylinderKernel(queue, self.qx.shape,
                                                       None, self.qx_b,
                                                       self.qy_b, self.res_b,
                                                       real(vol_i),
                                                       real(hDist),
                                                       real(rad_cyl.value[i]),
                                                       real(rad_cap.value[m]),
                                                       real(len_cyl.value[j]),
                                                       real(theta.value[k]),
                                                       real(phi.value[l]),
                                                       real(sub),
                                                       real(pars['scale']),
                                                       real(phi.weight[l]),
                                                       real(theta.weight[k]),
                                                       real(rad_cap.weight[m]),
                                                       real(rad_cyl.weight[i]),
                                                       real(len_cyl.weight[j]),
                                                       real(theta.weight[k]),
                                                       np.uint32(self.qx.size),
                                                       np.uint32(size))

                            norm += rad_cyl.weight[i] * len_cyl.weight[
                                j] * rad_cap.weight[m] * theta.weight[
                                    k] * phi.weight[l]

        #if size > 1:
        #   norm /= asin(1.0)
        cl.enqueue_copy(queue, self.res, self.res_b)
        sum += self.res
        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol / vol

        return sum / norm + pars['background']
Exemple #21
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    def eval(self, pars):

        _ctx, queue = card()
        self.res[:] = 0
        cl.enqueue_copy(queue, self.res_b, self.res)
        semi_axisA, semi_axisB, semi_axisC, axis_theta, axis_phi, axis_psi = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in GpuTriEllipse.PD_PARS]

        semi_axisA.value, semi_axisA.weight = semi_axisA.get_weights(
            pars['semi_axisA'], 0, 10000, True)
        semi_axisB.value, semi_axisB.weight = semi_axisB.get_weights(
            pars['semi_axisB'], 0, 10000, True)
        semi_axisC.value, semi_axisC.weight = semi_axisC.get_weights(
            pars['semi_axisC'], 0, 10000, True)
        axis_theta.value, axis_theta.weight = axis_theta.get_weights(
            pars['axis_theta'], -90, 180, False)
        axis_phi.value, axis_phi.weight = axis_phi.get_weights(
            pars['axis_phi'], -90, 180, False)
        axis_psi.value, axis_psi.weight = axis_psi.get_weights(
            pars['axis_psi'], -90, 180, False)

        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(axis_theta.weight)
        sub = pars['sldEll'] - pars['sldSolv']

        real = np.float32 if self.qx.dtype == np.dtype(
            'float32') else np.float64
        for a in xrange(len(semi_axisA.weight)):
            for b in xrange(len(semi_axisB.weight)):
                for c in xrange(len(semi_axisC.weight)):

                    vol += semi_axisA.weight[a] * semi_axisB.weight[
                        b] * semi_axisC.weight[c] * semi_axisA.value[
                            a] * semi_axisB.value[b] * semi_axisC.value[c]
                    norm_vol += semi_axisA.weight[a] * semi_axisB.weight[
                        b] * semi_axisC.weight[c]

                    for t in xrange(len(axis_theta.weight)):
                        for i in xrange(len(axis_phi.weight)):
                            for s in xrange(len(axis_psi.weight)):
                                self.prg.TriaxialEllipseKernel(
                                    queue, self.qx.shape, None, self.qx_b,
                                    self.qy_b, self.res_b, real(sub),
                                    real(pars['scale']),
                                    real(semi_axisA.value[a]),
                                    real(semi_axisB.value[b]),
                                    real(semi_axisC.value[c]),
                                    real(axis_phi.value[i]),
                                    real(axis_theta.value[t]),
                                    real(axis_psi.value[s]),
                                    real(semi_axisA.weight[a]),
                                    real(semi_axisB.weight[b]),
                                    real(semi_axisC.weight[c]),
                                    real(axis_psi.weight[s]),
                                    real(axis_phi.weight[i]),
                                    real(axis_theta.weight[t]),
                                    np.uint32(self.qx.size), np.uint32(size))

                                norm += semi_axisA.weight[
                                    a] * semi_axisB.weight[
                                        b] * semi_axisC.weight[
                                            c] * axis_theta.weight[
                                                t] * axis_phi.weight[
                                                    i] * axis_psi.weight[s]

    #  if size > 1:
    #     norm /= asin(1.0)
        cl.enqueue_copy(queue, self.res, self.res_b)
        sum = self.res
        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol / vol

        return sum / norm + pars['background']
    def eval(self, pars):

        _ctx,queue = card()
        axisA, axisB, axisC, theta, phi, psi = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in GpuTriEllipse.PD_PARS]

        axisA.value, axisA.weight = axisA.get_weights(pars['axisA'], 0, 1000, True)
        axisB.value, axisB.weight = axisB.get_weights(pars['axisB'], 0, 1000, True)
        axisC.value, axisC.weight = axisC.get_weights(pars['axisC'], 0, 1000, True)
        theta.value, theta.weight = theta.get_weights(pars['theta'], -90, 180, False)
        phi.value, phi.weight = phi.get_weights(pars['phi'], -90, 180, False)
        psi.value, psi.weight = psi.get_weights(pars['psi'], -90, 180, False)

        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(theta.weight)
        sub = pars['sldEll'] - pars['sldSolv']

        start_time = time()
        run_time = 0
        real = np.float32 if self.qx.dtype == np.dtype('float32') else np.float64
        print "Before kernel"
        print "The len of axisA.weight is ",len(axisA.weight)
        print "The len of axisB.weight is ",len(axisB.weight)
        print "The len of axisC.weight is ",len(axisC.weight)
        print "The len of theta.weight is ",len(theta.weight)
        print "The len of phi.weight is ",len(phi.weight)
        print "The len of psi.weight is ",len(psi.weight)
        print
        print
        print "The axisA.weight is ",(axisA.weight)
        print "The axisB.weight is ",(axisB.weight)
        print "The axisC.weight is ",(axisC.weight)
        print "The theta.weight is ",(theta.weight)
        print "The phi.weight is ",(phi.weight)
        print "The psi.weight is ",(psi.weight)


        for a in xrange(len(axisA.weight)):
            for b in xrange(len(axisB.weight)):
                for c in xrange(len(axisC.weight)):
                    for t in xrange(len(theta.weight)):
                        for i in xrange(len(phi.weight)):
                            for s in xrange(len(psi.weight)):
                                self.prg.TriaxialEllipseKernel(queue,
                                                               self.qx.shape,
                                                               None,
                                                               self.qx_b,
                                                               self.qy_b,
                                                               self.res_b,

                                                               real(sub),
                                                               real(pars['scale']),
                                                               real(axisA.value[a]),
                                                               real(axisB.value[b]),
                                                               real(axisC.value[c]),

                                                               real(phi.value[i]),
                                                               real(theta.value[t]),
                                                               real(psi.value[s]),

                                                               real(axisA.weight[a]),
                                                               real(axisB.weight[b]),
                                                               real(axisC.weight[c]),
                                                               real(psi.weight[s]),
                                                               real(phi.weight[i]),
                                                               real(theta.weight[t]),

                                                               np.uint32(self.qx.size),
                                                               np.uint32(size))
                                queue.finish()

                                run_time = time() - start_time

                                cl.enqueue_copy(queue, self.res, self.res_b)
                                sum += self.res

                                vol += axisA.weight[a]*axisB.weight[b]*axisC.weight[c]*axisA.value[a]*axisB.value[b]*axisC.value[c]
                                norm_vol += axisA.weight[a]*axisB.weight[b]*axisC.weight[c]
                                norm += axisA.weight[a]*axisB.weight[b]*axisC.weight[c]*theta.weight[t]*phi.weight[i]*psi.weight[s]

        print run_time, "seconds it TOOK!!!!!!!!!!!!"

        if size > 1:
            norm /= asin(1.0)

        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol/vol

        return sum/norm + pars['background']
Exemple #23
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    def eval(self, pars):
        #b_n = radius_b # want, a_n = radius_a # want, etc
        _ctx, queue = card()
        self.res[:] = 0
        cl.enqueue_copy(queue, self.res_b, self.res)
        radius_a, radius_b, axis_theta, axis_phi = \
            [GaussianDispersion(int(pars[base+'_pd_n']), pars[base+'_pd'], pars[base+'_pd_nsigma'])
             for base in GpuEllipse.PD_PARS]

        radius_a.value, radius_a.weight = radius_a.get_weights(
            pars['radius_a'], 0, 10000, True)
        radius_b.value, radius_b.weight = radius_b.get_weights(
            pars['radius_b'], 0, 10000, True)
        axis_theta.value, axis_theta.weight = axis_theta.get_weights(
            pars['axis_theta'], -90, 180, False)
        axis_phi.value, axis_phi.weight = axis_phi.get_weights(
            pars['axis_phi'], -90, 180, False)

        #Perform the computation, with all weight points
        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(axis_theta.weight)
        sub = pars['sldEll'] - pars['sldSolv']
        real = np.float32 if self.qx.dtype == np.dtype(
            'float32') else np.float64

        #Loop over radius weight points
        for i in xrange(len(radius_a.weight)):
            #Loop over length weight points
            for j in xrange(len(radius_b.weight)):
                #Average over theta distribution
                vol += radius_a.weight[i] * radius_b.weight[j] * pow(
                    radius_b.value[j], 2) * radius_a.value[i]
                norm_vol += radius_a.weight[i] * radius_b.weight[j]

                for k in xrange(len(axis_theta.weight)):
                    #Average over phi distribution
                    for l in xrange(len(axis_phi.weight)):
                        #call the kernel
                        self.prg.EllipsoidKernel(
                            queue, self.qx.shape, None,
                            real(radius_a.weight[i]), real(radius_b.weight[j]),
                            real(axis_theta.weight[k]),
                            real(axis_phi.weight[l]), real(pars['scale']),
                            real(radius_a.value[i]), real(radius_b.value[j]),
                            real(sub), real(axis_theta.value[k]),
                            real(axis_phi.value[l]), self.qx_b, self.qy_b,
                            self.res_b, np.uint32(self.qx.size),
                            np.uint32(len(axis_theta.weight)))

                        norm += radius_a.weight[i] * radius_b.weight[
                            j] * axis_theta.weight[k] * axis_phi.weight[l]

        # Averaging in theta needs an extra normalization
        # factor to account for the sin(theta) term in the
        # integration (see documentation).

    #    if size > 1:
    #       norm /= math.asin(1.0)
        cl.enqueue_copy(queue, self.res, self.res_b)
        sum += self.res
        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol / vol

        return sum / norm + pars['background']
Exemple #24
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    def eval(self, pars):

        _ctx, queue = card()
        self.res[:] = 0
        cl.enqueue_copy(queue, self.res_b, self.res)
        radius, length, thickness, axis_phi, axis_theta = [
            GaussianDispersion(int(pars[base + '_pd_n']), pars[base + '_pd'],
                               pars[base + '_pd_nsigma'])
            for base in GpuCoreShellCylinder.PD_PARS
        ]

        radius.value, radius.weight = radius.get_weights(
            pars['radius'], 0, 10000, True)
        length.value, length.weight = length.get_weights(
            pars['length'], 0, 10000, True)
        thickness.value, thickness.weight = thickness.get_weights(
            pars['thickness'], 0, 10000, True)
        axis_phi.value, axis_phi.weight = axis_phi.get_weights(
            pars['axis_phi'], -90, 180, False)
        axis_theta.value, axis_theta.weight = axis_theta.get_weights(
            pars['axis_theta'], -90, 180, False)

        sum, norm, norm_vol, vol = 0.0, 0.0, 0.0, 0.0
        size = len(axis_theta.weight)

        real = np.float32 if self.qx.dtype == np.dtype(
            'float32') else np.float64
        for r in xrange(len(radius.weight)):
            for l in xrange(len(length.weight)):
                for th in xrange(len(thickness.weight)):

                    vol += radius.weight[r]*length.weight[l]*thickness.weight[th]*pow(radius.value[r]+thickness.value[th],2)\
                                   *(length.value[l]+2.0*thickness.value[th])
                    norm_vol += radius.weight[r] * length.weight[
                        l] * thickness.weight[th]

                    for at in xrange(len(axis_theta.weight)):
                        for p in xrange(len(axis_phi.weight)):

                            self.prg.CoreShellCylinderKernel(
                                queue, self.qx.shape, None, self.qx_b,
                                self.qy_b, self.res_b,
                                real(axis_theta.value[at]),
                                real(axis_phi.value[p]),
                                real(thickness.value[th]),
                                real(length.value[l]), real(radius.value[r]),
                                real(pars['scale']), real(radius.weight[r]),
                                real(length.weight[l]),
                                real(thickness.weight[th]),
                                real(axis_theta.weight[at]),
                                real(axis_phi.weight[p]),
                                real(pars['core_sld']),
                                real(pars['shell_sld']),
                                real(pars['solvent_sld']), np.uint32(size),
                                np.uint32(self.qx.size))

                            norm += radius.weight[r]*length.weight[l]*thickness.weight[th]*axis_theta.weight[at]\
                                    *axis_phi.weight[p]

        #if size>1:
        #   norm /= math.asin(1.0)
        cl.enqueue_copy(queue, self.res, self.res_b)
        sum = self.res
        if vol != 0.0 and norm_vol != 0.0:
            sum *= norm_vol / vol

        return sum / norm + pars['background']