funclp.Rectangle module

class funclp.Rectangle(**kwargs)[source]

Bases: Function

property amp
static amp0(res, *args)
amp_fit = True
amp_max = np.float32(inf)
amp_min = np.float32(-inf)
property constants
property cpu_d_amp
property cpu_d_l
property cpu_d_mux
property cpu_d_muy
property cpu_d_offset
property cpu_d_ratio
property cpu_d_theta
property cpu_function
property cpukernel_d_amp
property cpukernel_d_l
property cpukernel_d_mux
property cpukernel_d_muy
property cpukernel_d_offset
property cpukernel_d_ratio
property cpukernel_d_theta
property cpukernel_function
d_amp

Decorator class defining universal function factory object from python kernel function, will create kernels, vectorized functions, jitted functions, stack functions, all on CPU / Parallel CPU / GPU.

Examples

>>> from funclp import Parameter, ufunc
>>> import numpy as np
...
>>> class MyClass() :
...     @ufunc(variables=['x', 'y'], data=['constant'], parameters=[Parameter('a', 1), Parameter('b', 0)])
...     def myfunc(x, y, constant, /, a, b) :
...         return a * x + b * y + constant
...     cuda = False
...
>>> instance = MyClass()
...
>>> x = np.arange(20).reshape((1, 20)) # Example of variables that can be broadcasted together
>>> y = np.arange(20).reshape((20, 1)) # Example of variables that can be broadcasted together
>>> constant = np.ones((5, 20, 20)) # Example of data with full shape
>>> a = np.arange(5) # Example of parameter vector
>>> b = 0.5 # Example of scalar use
>>> cpu_out = instance.myfunc(x, y, constant, a=a, b=b)
>>> instance.cuda = True
>>> gpu_out = instance.myfunc(x, y, constant, a=a, b=b)

d_l

Decorator class defining universal function factory object from python kernel function, will create kernels, vectorized functions, jitted functions, stack functions, all on CPU / Parallel CPU / GPU.

Examples

>>> from funclp import Parameter, ufunc
>>> import numpy as np
...
>>> class MyClass() :
...     @ufunc(variables=['x', 'y'], data=['constant'], parameters=[Parameter('a', 1), Parameter('b', 0)])
...     def myfunc(x, y, constant, /, a, b) :
...         return a * x + b * y + constant
...     cuda = False
...
>>> instance = MyClass()
...
>>> x = np.arange(20).reshape((1, 20)) # Example of variables that can be broadcasted together
>>> y = np.arange(20).reshape((20, 1)) # Example of variables that can be broadcasted together
>>> constant = np.ones((5, 20, 20)) # Example of data with full shape
>>> a = np.arange(5) # Example of parameter vector
>>> b = 0.5 # Example of scalar use
>>> cpu_out = instance.myfunc(x, y, constant, a=a, b=b)
>>> instance.cuda = True
>>> gpu_out = instance.myfunc(x, y, constant, a=a, b=b)

d_mux

Decorator class defining universal function factory object from python kernel function, will create kernels, vectorized functions, jitted functions, stack functions, all on CPU / Parallel CPU / GPU.

Examples

>>> from funclp import Parameter, ufunc
>>> import numpy as np
...
>>> class MyClass() :
...     @ufunc(variables=['x', 'y'], data=['constant'], parameters=[Parameter('a', 1), Parameter('b', 0)])
...     def myfunc(x, y, constant, /, a, b) :
...         return a * x + b * y + constant
...     cuda = False
...
>>> instance = MyClass()
...
>>> x = np.arange(20).reshape((1, 20)) # Example of variables that can be broadcasted together
>>> y = np.arange(20).reshape((20, 1)) # Example of variables that can be broadcasted together
>>> constant = np.ones((5, 20, 20)) # Example of data with full shape
>>> a = np.arange(5) # Example of parameter vector
>>> b = 0.5 # Example of scalar use
>>> cpu_out = instance.myfunc(x, y, constant, a=a, b=b)
>>> instance.cuda = True
>>> gpu_out = instance.myfunc(x, y, constant, a=a, b=b)

d_muy

Decorator class defining universal function factory object from python kernel function, will create kernels, vectorized functions, jitted functions, stack functions, all on CPU / Parallel CPU / GPU.

Examples

>>> from funclp import Parameter, ufunc
>>> import numpy as np
...
>>> class MyClass() :
...     @ufunc(variables=['x', 'y'], data=['constant'], parameters=[Parameter('a', 1), Parameter('b', 0)])
...     def myfunc(x, y, constant, /, a, b) :
...         return a * x + b * y + constant
...     cuda = False
...
>>> instance = MyClass()
...
>>> x = np.arange(20).reshape((1, 20)) # Example of variables that can be broadcasted together
>>> y = np.arange(20).reshape((20, 1)) # Example of variables that can be broadcasted together
>>> constant = np.ones((5, 20, 20)) # Example of data with full shape
>>> a = np.arange(5) # Example of parameter vector
>>> b = 0.5 # Example of scalar use
>>> cpu_out = instance.myfunc(x, y, constant, a=a, b=b)
>>> instance.cuda = True
>>> gpu_out = instance.myfunc(x, y, constant, a=a, b=b)

d_offset

Decorator class defining universal function factory object from python kernel function, will create kernels, vectorized functions, jitted functions, stack functions, all on CPU / Parallel CPU / GPU.

Examples

>>> from funclp import Parameter, ufunc
>>> import numpy as np
...
>>> class MyClass() :
...     @ufunc(variables=['x', 'y'], data=['constant'], parameters=[Parameter('a', 1), Parameter('b', 0)])
...     def myfunc(x, y, constant, /, a, b) :
...         return a * x + b * y + constant
...     cuda = False
...
>>> instance = MyClass()
...
>>> x = np.arange(20).reshape((1, 20)) # Example of variables that can be broadcasted together
>>> y = np.arange(20).reshape((20, 1)) # Example of variables that can be broadcasted together
>>> constant = np.ones((5, 20, 20)) # Example of data with full shape
>>> a = np.arange(5) # Example of parameter vector
>>> b = 0.5 # Example of scalar use
>>> cpu_out = instance.myfunc(x, y, constant, a=a, b=b)
>>> instance.cuda = True
>>> gpu_out = instance.myfunc(x, y, constant, a=a, b=b)

d_ratio

Decorator class defining universal function factory object from python kernel function, will create kernels, vectorized functions, jitted functions, stack functions, all on CPU / Parallel CPU / GPU.

Examples

>>> from funclp import Parameter, ufunc
>>> import numpy as np
...
>>> class MyClass() :
...     @ufunc(variables=['x', 'y'], data=['constant'], parameters=[Parameter('a', 1), Parameter('b', 0)])
...     def myfunc(x, y, constant, /, a, b) :
...         return a * x + b * y + constant
...     cuda = False
...
>>> instance = MyClass()
...
>>> x = np.arange(20).reshape((1, 20)) # Example of variables that can be broadcasted together
>>> y = np.arange(20).reshape((20, 1)) # Example of variables that can be broadcasted together
>>> constant = np.ones((5, 20, 20)) # Example of data with full shape
>>> a = np.arange(5) # Example of parameter vector
>>> b = 0.5 # Example of scalar use
>>> cpu_out = instance.myfunc(x, y, constant, a=a, b=b)
>>> instance.cuda = True
>>> gpu_out = instance.myfunc(x, y, constant, a=a, b=b)

d_theta

Decorator class defining universal function factory object from python kernel function, will create kernels, vectorized functions, jitted functions, stack functions, all on CPU / Parallel CPU / GPU.

Examples

>>> from funclp import Parameter, ufunc
>>> import numpy as np
...
>>> class MyClass() :
...     @ufunc(variables=['x', 'y'], data=['constant'], parameters=[Parameter('a', 1), Parameter('b', 0)])
...     def myfunc(x, y, constant, /, a, b) :
...         return a * x + b * y + constant
...     cuda = False
...
>>> instance = MyClass()
...
>>> x = np.arange(20).reshape((1, 20)) # Example of variables that can be broadcasted together
>>> y = np.arange(20).reshape((20, 1)) # Example of variables that can be broadcasted together
>>> constant = np.ones((5, 20, 20)) # Example of data with full shape
>>> a = np.arange(5) # Example of parameter vector
>>> b = 0.5 # Example of scalar use
>>> cpu_out = instance.myfunc(x, y, constant, a=a, b=b)
>>> instance.cuda = True
>>> gpu_out = instance.myfunc(x, y, constant, a=a, b=b)

data = []
function

Decorator class defining universal function factory object from python kernel function, will create kernels, vectorized functions, jitted functions, stack functions, all on CPU / Parallel CPU / GPU.

Examples

>>> from funclp import Parameter, ufunc
>>> import numpy as np
...
>>> class MyClass() :
...     @ufunc(variables=['x', 'y'], data=['constant'], parameters=[Parameter('a', 1), Parameter('b', 0)])
...     def myfunc(x, y, constant, /, a, b) :
...         return a * x + b * y + constant
...     cuda = False
...
>>> instance = MyClass()
...
>>> x = np.arange(20).reshape((1, 20)) # Example of variables that can be broadcasted together
>>> y = np.arange(20).reshape((20, 1)) # Example of variables that can be broadcasted together
>>> constant = np.ones((5, 20, 20)) # Example of data with full shape
>>> a = np.arange(5) # Example of parameter vector
>>> b = 0.5 # Example of scalar use
>>> cpu_out = instance.myfunc(x, y, constant, a=a, b=b)
>>> instance.cuda = True
>>> gpu_out = instance.myfunc(x, y, constant, a=a, b=b)

property gpu_d_amp
property gpu_d_l
property gpu_d_mux
property gpu_d_muy
property gpu_d_offset
property gpu_d_ratio
property gpu_d_theta
property gpu_function
property gpukernel_d_amp
property gpukernel_d_l
property gpukernel_d_mux
property gpukernel_d_muy
property gpukernel_d_offset
property gpukernel_d_ratio
property gpukernel_d_theta
property gpukernel_function
property l
static l0(res, *args)
l_fit = True
l_max = np.float32(inf)
l_min = 0
property mux
static mux0(res, *args)
mux_fit = True
mux_max = np.float32(inf)
mux_min = np.float32(-inf)
property muy
static muy0(res, *args)
muy_fit = True
muy_max = np.float32(inf)
muy_min = np.float32(-inf)
property offset
static offset0(res, *args)
offset_fit = True
offset_max = np.float32(inf)
offset_min = np.float32(-inf)
property parameters
python_d_amp(y, /, l, ratio, mux, muy, amp, offset, theta)
python_d_l(y, /, l, ratio, mux, muy, amp, offset, theta)
python_d_mux(y, /, l, ratio, mux, muy, amp, offset, theta)
python_d_muy(y, /, l, ratio, mux, muy, amp, offset, theta)
python_d_offset(y, /, l, ratio, mux, muy, amp, offset, theta)
python_d_ratio(y, /, l, ratio, mux, muy, amp, offset, theta)
python_d_theta(y, /, l, ratio, mux, muy, amp, offset, theta)
python_function(y, /, l=1.0, ratio=1.0, mux=0.0, muy=0.0, amp=1.0, offset=0.0, theta=0.0)
property ratio
static ratio0(res, *args)
ratio_fit = True
ratio_max = np.float32(inf)
ratio_min = np.float32(-inf)
property theta
theta0 = None
theta_fit = False
theta_max = np.float32(inf)
theta_min = np.float32(-inf)
variables = ['x', 'y']