ContContractRV#

class pymc_marketing.clv.distributions.ContContractRV(name=None, ndim_supp=None, ndims_params=None, dtype=None, inplace=None)[source]#

Methods

ContContractRV.L_op(inputs, outputs, ...)

Construct a graph for the L-operator.

ContContractRV.R_op(inputs, eval_points)

Construct a graph for the R-operator.

ContContractRV.__init__([name, ndim_supp, ...])

Create a random variable Op.

ContContractRV.add_tag_trace([user_line])

Add tag.trace to a node or variable.

ContContractRV.do_constant_folding(fgraph, node)

Determine whether or not constant folding should be performed for the given node.

ContContractRV.grad(inputs, outputs)

Construct a graph for the gradient with respect to each input variable.

ContContractRV.infer_shape(fgraph, node, ...)

ContContractRV.make_node(rng, size, dtype, ...)

Create a random variable node.

ContContractRV.make_py_thunk(node, ...[, debug])

Make a Python thunk.

ContContractRV.make_thunk(node, storage_map, ...)

Create a thunk.

ContContractRV.perform(node, inputs, outputs)

Calculate the function on the inputs and put the variables in the output storage.

ContContractRV.prepare_node(node, ...)

Make any special modifications that the Op needs before doing Op.make_thunk().

ContContractRV.rng_fn(rng, lam, p, T, size)

Sample a numeric random variate.

Attributes

default_output

An int that specifies which output Op.__call__() should return.

destroy_map

A dict that maps output indices to the input indices upon which they operate in-place.

dtype

itypes

name

ndim_supp

ndims_params

otypes

view_map

A dict that maps output indices to the input indices of which they are a view.