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.. currentmodule:: nifty4

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Code Overview

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The fundamental building blocks required for IFT computations are best
recognized from a large distance, ignoring all technical details.

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From such a perspective,

- IFT problems largely consist of *minimization* problems involving a large
  number of equations.
- The equations are built mostly from the application of *linear operators*, but
  there may also be nonlinear functions involved.
- The unknowns in the equations represent either continuous physical *fields*,
  or they are simply individual measured *data* points.
- The locations and volume elements attached to discretized *field* values are
  supplied by *domain* objects. There are many variants of such discretized
  *domains* supported by NIFTy4, including Cartesian and spherical geometries
  and their harmonic counterparts. *Fields* can live on arbitrary products of
  such *domains*.

In the following sections, the concepts briefly presented here will be
discussed in more detail; this is done in reversed order of their introduction,
to avoid forward references.


Abstract base class

One of the fundamental building blocks of the NIFTy4 framework is the *domain*.
Its required capabilities are expressed by the abstract :class:`Domain` class.
A domain must be able to answer the following queries:

- its total number of data entries (pixels), which is accessible via the
  :attr:`~Domain.size` property
- the shape of the array that is supposed to hold these data entries
  (obtainable by means of the :attr:`~Domain.shape` property)
- equality comparison to another :class:`Domain` instance

Unstructured domains

Domains can be either *structured* (i.e. there is geometrical information
associated with them, like position in space and volume factors),
or *unstructured* (meaning that the data points have no associated manifold).

Unstructured domains can be described by instances of NIFTy's
:class:`UnstructuredDomain` class.

Structured domains

In contrast to unstructured domains, these domains have an assigned geometry.
NIFTy requires them to provide the volume elements of their grid cells.
The additional methods are specified in the abstract class

- The attributes :attr:`~StructuredDomain.scalar_dvol`,
  :attr:`~StructuredDomain.dvol`, and  :attr:`~StructuredDomain.total_volume`
  provide information about the domain's pixel volume(s) and its total volume.
- The property :attr:`~StructuredDomain.harmonic` specifies whether a domain
  is harmonic (i.e. describes a frequency space) or not
- Iff the domain is harmonic, the methods
  :meth:`~StructuredDomain.get_unique_k_lengths`, and
  :meth:`~StructuredDomain.get_fft_smoothing_kernel_function` provide absolute
  distances of the individual grid cells from the origin and assist with
  Gaussian convolution.

NIFTy comes with several concrete subclasses of :class:`StructuredDomain`:

- :class:`RGSpace` represents a regular Cartesian grid with an arbitrary
  number of dimensions, which is supposed to be periodic in each dimension.
- :class:`HPSpace` and :class:`GLSpace` describe pixelisations of the
  2-sphere; their counterpart in harmonic space is :class:`LMSpace`, which
  contains spherical harmonic coefficients.
- :class:`PowerSpace` is used to describe one-dimensional power spectra.

Among these, :class:`RGSpace` can be harmonic or not (depending on constructor arguments), :class:`GLSpace`, :class:`HPSpace`, and :class:`PowerSpace` are
pure position domains (i.e. nonharmonic), and :class:`LMSpace` is always

Combinations of domains

The fundamental classes described above are often sufficient to specify the
domain of a field. In some cases, however, it will be necessary to have the
field live on a product of elementary domains instead of a single one.
Some examples are:

- sky emission depending on location and energy. This could be represented by
  a product of an :class:`HPSpace` (for location) with an :class:`RGSpace`
  (for energy).
- a polarised field, which could be modeled as a product of any structured
  domain representing location with a four-element :class:`UnstructuredDomain`
  holding Stokes I, Q, U and V components.

Consequently, NIFTy defines a class called :class:`DomainTuple` holding
a sequence of :class:`Domain` objects, which is used to specify full field
domains. In principle, a :class:`DomainTuple` can even be empty, which implies
that the field living on it is a scalar.


A :class:`Field` object consists of the following components:

- a domain in form of a :class:`DomainTuple` object
- a data type (e.g. numpy.float64)
- an array containing the actual values

Fields support arithmetic operations, contractions, etc.

Linear Operators

A linear operator (represented by NIFTy4's abstract :class:`LinearOperator`
class) can be interpreted as an (implicitly defined) matrix.
It can be applied to :class:`Field` instances, resulting in other :class:`Field`
instances that potentially live on other domains.

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Operator basics

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There are four basic ways of applying an operator :math:`A` to a field :math:`f`:

- direct multiplication: :math:`A\cdot f`
- adjoint multiplication: :math:`A^\dagger \cdot f`
- inverse multiplication: :math:`A^{-1}\cdot f`
- adjoint inverse multiplication: :math:`(A^\dagger)^{-1}\cdot f`

(For linear operators, inverse adjoint multiplication and adjoint inverse
multiplication are equivalent.)

These different actions of an operator ``Op`` on a field ``f`` can be invoked
in various ways:

- direct multiplication: ``Op(f)`` or ``Op.times(f)`` or ``Op.apply(f, Op.TIMES)``
- adjoint multiplication: ``Op.adjoint_times(f)`` or ``Op.apply(f, Op.ADJOINT_TIMES)``
- inverse multiplication: ``Op.inverse_times(f)`` or ``Op.apply(f, Op.INVERSE_TIMES)``
- adjoint inverse multiplication: ``Op.adjoint_inverse_times(f)`` or ``Op.apply(f, Op.ADJOINT_INVERSE_TIMES)``

Operator classes defined in NIFTy may implement an arbitrary subset of these
four operations. This subset can be queried using the
:attr:`~LinearOperator.capability` property.

If needed, the set of supported operations can be enhanced by iterative
inversion methods;
for example, an operator defining direct and adjoint multiplication could be
enhanced to support the complete set by this method. This functionality is
provided by NIFTy's :class:`InversionEnabler` class, which is itself a linear

There are two :class:`DomainTuple` objects associated with a
:class:`LinearOperator`: a :attr:`~LinearOperator.domain` and a
Direct multiplication and adjoint inverse multiplication transform a field
living on the operator's :attr:`~LinearOperator.domain` to one living on the operator's :attr:``, whereas adjoint multiplication
and inverse multiplication transform from :attr:`` to :attr:`~LinearOperator.domain`.

Operators with identical domain and target can be derived from
:class:`EndomorphicOperator`; typical examples for this category are the :class:`ScalingOperator`, which simply multiplies its input by a scalar
value, and :class:`DiagonalOperator`, which multiplies every value of its input
field with potentially different values.

Further operator classes provided by NIFTy are

- :class:`HarmonicTransformOperator` for transforms from harmonic domain to
  their counterparts in position space, and their adjoint
- :class:`PowerDistributor` for transforms from a :class:`PowerSpace` to
  the associated harmonic domain, and their adjoint
- :class:`GeometryRemover`, which transforms from structured domains to
  unstructured ones. This is typically needed when building instrument response

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Syntactic sugar
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Nifty4 allows simple and intuitive construction of altered and combined
As an example, if ``A``, ``B`` and ``C`` are of type :class:`LinearOperator`
and ``f1`` and ``f2`` are :class:`Field` s, writing::

    X = A*B.inverse*A.adjoint + C
    f2 = X(f1)

will perform the operation suggested intuitively by the notation, checking
domain compatibility while building the composed operator.
The combined operator infers its domain and target from its constituents,
as well as the set of operations it can support.
The properties :attr:`~LinearOperator.adjoint` and
:attr:`~LinearOperator.inverse` return a new operator which behaves as if it
were the original operator's adjoint or inverse, respectively.

.. _minimization:


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Most problems in IFT are solved by (possibly nested) minimizations of
high-dimensional functions, which are often nonlinear.

Energy functionals
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In NIFTy4 such functions are represented by objects of type :class:`Energy`.
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These hold the prescription how to calculate the function's
:attr:`~Energy.value`, :attr:`~Energy.gradient` and
(optionally) :attr:`~Energy.curvature` at any given position.
Function values are floating-point scalars, gradients have the form of fields
living on the energy's position domain, and curvatures are represented by
linear operator objects.
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Convergence control

Iterative minimization of an energy reqires some means of
controlling the quality of the current solution estimate and stopping once
it is sufficiently accurate. In case of numerical problems, the iteration needs
to be terminated as well, returning a suitable error description.

In NIFTy4, this functionality is encapsulated in the abstract
:class:`IterationController` class, which is provided with the initial energy
object before starting the minimization, and is updated with the improved
energy after every iteration. Based on this information, it can either continue
the minimization or return the current estimate indicating convergence or

Sensible stopping criteria can vary significantly with the problem being
solved; NIFTy provides one concrete sub-class of :class:`IterationController`
called :class:`GradientNormController`, which should be appropriate in many
circumstances, but users have complete freedom to implement custom sub-classes
for their specific applications.

Minimization algorithms

It is important to realize that the machinery presented here cannot only be
used for minimizing IFT Hamiltonians, but also for the numerical inversion of
linear operators, if the desired application mode is not directly available.
A classical example is the information propagator

:math:`D = \left(R^\dagger N^{-1} R + S^{-1}\right)^{-1}`,

which must be applied when calculating a Wiener filter. Only its inverse
application is straightforward; to use it in forward direction, we make use
of NIFTy's :class:`InversionEnabler` class, which internally performs a
minimization of a :class:`QuadraticEnergy` by means of a
:class:`ConjugateGradient` algorithm.

Some examples of concrete energy classes delivered with NIFTy4 are
:class:`QuadraticEnergy` (with position-independent curvature, mainly used with
conjugate gradient minimization) and :class:`WienerFilterEnergy`.
Energies are classes that typically have to be provided by the user when
tackling new IFT problems.

The minimization procedure can be carried out by one of several algorithms;
NIFTy4 currently ships solvers based on
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- the conjugate gradient method (for quadratic energies)
- the steepest descent method
- the VL-BFGS method
- the relaxed Newton method, and
- a nonlinear conjugate gradient method