torch_openreml.covariance.BlockDiagonal

class torch_openreml.covariance.BlockDiagonal(*args, **kwargs)[source]

Bases: Operator

Block diagonal covariance matrix formed from two or more operands.

\[\symbf{V} = \mathrm{blockdiag}(\symbf{V}_0, \symbf{V}_1, \ldots)\]

Each operand contributes a contiguous block along the diagonal. Parameters and gradients are namespaced by operand name and aggregated into a single joint parameter tensor, following the convention of Operator.

Initialize a block diagonal operator from two or more operands.

Parameters:
  • *args – Two or more operands as positional arguments, each a Matrix or torch.Tensor. A single dict argument is also accepted.

  • **kwargs – Two or more operands as keyword arguments.

Raises:

ValueError – If fewer than two operands are provided.

Example:

import torch
from torch_openreml.covariance import ScalarMatrix, DiagonalMatrix, BlockDiagonal

block = BlockDiagonal(
    residual=ScalarMatrix(3),
    random=DiagonalMatrix(2)
)
free_params = torch.tensor([0.5, 0.0, 1.0])
block(free_params)
tensor([[2.7183, 0.0000, 0.0000, 0.0000, 0.0000],
        [0.0000, 2.7183, 0.0000, 0.0000, 0.0000],
        [0.0000, 0.0000, 2.7183, 0.0000, 0.0000],
        [0.0000, 0.0000, 0.0000, 1.0000, 0.0000],
        [0.0000, 0.0000, 0.0000, 0.0000, 7.3891]])

Methods

__call__([free_params])

Construct the matrix from a flat parameter tensor.

auto_grad([free_params])

Compute the Jacobian of build() with respect to free parameters using automatic differentiation.

build_operands([free_params])

Evaluate each operand at the current free parameters.

build_params([free_params, include_fixed, ...])

Construct the full parameter tensor by delegating to each operand.

get_intermediates(params)

Retrieve cached intermediate computation results if still valid.

grad([free_params])

Compute the Jacobian of __call__() with respect to trainable parameters.

manual_grad([free_params])

Compute the Jacobian of __call__() with respect to trainable parameters using a closed-form analytic expression.

map_theta_to_dv(theta)

An interface compatible with torch_openreml.REML that maps parameters to the matrix Jacobian.

map_theta_to_v(theta)

An interface compatible with torch_openreml.REML that maps parameters to a matrix.

operands_grad([free_params])

Compute the Jacobian of each operand with respect to its parameters.

reset_intermediates()

Clear the intermediate computation cache.

set_intermediates(params, intermediates)

Cache intermediate computation results keyed by parameter hash.

trans_grad([free_params])

Compute the element-wise derivative of the free parameter transforms.

Attributes

fixed_param_defaults

Fixed parameter defaults.

fixed_param_index

Index of fixed parameters.

fixed_param_names

Fixed parameter names.

fixed_param_trans

Transforms for fixed parameters.

free_param_defaults

Free parameter defaults.

free_param_index

Index of free parameters.

free_param_names

Free parameter names.

free_param_trans

Transforms for free parameters.

num_fixed_params

Total number of fixed parameters.

num_free_params

Total number of free parameters.

num_params

Total number of parameters.

operands

Mapping from operand names to operand matrices or tensors.

param_defaults

Parameter defaults.

param_names

Parameter names.

param_specs

Parameter specifications.

param_trans

Parameter transforms.

repr_dict

Key-value pairs used to build the string representation.

shape

Output matrix shape.

__call__(free_params=None)[source]

Construct the matrix from a flat parameter tensor.

Must be implemented by subclasses. Implementations should convert free_params via build_params() to validate, include fixed parameters, and apply transforms before any computation.

Parameters:

free_params (torch.Tensor or dict) – Flat 1D parameter tensor or parameter dictionary. If omitted, default values are used. Default: None.

Returns:

Constructed matrix of shape shape.

Return type:

torch.Tensor

manual_grad(free_params=None)[source]

Compute the Jacobian of __call__() with respect to trainable parameters using a closed-form analytic expression.

Evaluates each operand’s gradient via operands_grad(), then places each per-operand Jacobian into the corresponding block of a zero-initialised full Jacobian matching the block diagonal output shape. Non-matrix operands contribute zero blocks.

Parameters:

free_params (torch.Tensor or dict) – Flat 1D parameter tensor or parameter dictionary. If omitted, default values are used. Default: None.

Returns:

(grad, grad_names), where grad is a 3D tensor of shape (num_free_params, *shape) and grad_names is a list of the corresponding parameter names. Returns (None, []) if all parameters are fixed.

Return type:

tuple

Raises:
  • TypeError – If free_params is not a Torch tensor.

  • ValueError – If free_params is not a 1D tensor or has the wrong length, or if free_params is a dict with missing or unexpected keys.

Example:

import torch
from torch_openreml.covariance import ScalarMatrix, DiagonalMatrix, BlockDiagonal

block = BlockDiagonal(
    A=ScalarMatrix(3),
    B=DiagonalMatrix(2)
)
free_params = torch.tensor([0.5, 0.0, 1.0])
grad, grad_names = block.manual_grad(free_params)
grad
tensor([[[ 5.4366,  0.0000,  0.0000,  0.0000,  0.0000],
         [ 0.0000,  5.4366,  0.0000,  0.0000,  0.0000],
         [ 0.0000,  0.0000,  5.4366,  0.0000,  0.0000],
         [ 0.0000,  0.0000,  0.0000,  0.0000,  0.0000],
         [ 0.0000,  0.0000,  0.0000,  0.0000,  0.0000]],

        [[ 0.0000,  0.0000,  0.0000,  0.0000,  0.0000],
         [ 0.0000,  0.0000,  0.0000,  0.0000,  0.0000],
         [ 0.0000,  0.0000,  0.0000,  0.0000,  0.0000],
         [ 0.0000,  0.0000,  0.0000,  2.0000,  0.0000],
         [ 0.0000,  0.0000,  0.0000,  0.0000, 14.7781]],

        [[ 0.0000,  0.0000,  0.0000,  0.0000,  0.0000],
         [ 0.0000,  0.0000,  0.0000,  0.0000,  0.0000],
         [ 0.0000,  0.0000,  0.0000,  0.0000,  0.0000],
         [ 0.0000,  0.0000,  0.0000,  2.0000,  0.0000],
         [ 0.0000,  0.0000,  0.0000,  0.0000, 14.7781]]])
grad_names
['A/sigma^2', 'B/sigma^2_0', 'B/sigma^2_1']