python-peps/peps/pep-0225.rst

771 lines
28 KiB
ReStructuredText
Raw Normal View History

PEP: 225
Title: Elementwise/Objectwise Operators
Author: Huaiyu Zhu <hzhu@users.sourceforge.net>,
Gregory Lielens <gregory.lielens@fft.be>
Status: Rejected
Type: Standards Track
Created: 19-Sep-2000
Python-Version: 2.1
Post-History:
.. rejected::
The approach in the later :pep:`465` was eventually accepted
in lieu of this PEP. The :pep:`Rejected Ideas
<465#rejected-alternatives-to-adding-a-new-operator>`
of that PEP explains the rationale in more detail.
Introduction
============
This PEP describes a proposal to add new operators to Python which are useful
for distinguishing elementwise and objectwise operations, and summarizes
discussions in the news group comp.lang.python on this topic. See Credits and
Archives section at end. Issues discussed here include:
- Background.
- Description of proposed operators and implementation issues.
- Analysis of alternatives to new operators.
- Analysis of alternative forms.
- Compatibility issues
- Description of wider extensions and other related ideas.
A substantial portion of this PEP describes ideas that do not go into the
proposed extension. They are presented because the extension is essentially
syntactic sugar, so its adoption must be weighed against various possible
alternatives. While many alternatives may be better in some aspects, the
current proposal appears to be overall advantageous.
The issues concerning elementwise-objectwise operations extends to wider areas
than numerical computation. This document also describes how the current
proposal may be integrated with more general future extensions.
Background
==========
Python provides six binary infix math operators: ``+`` ``-`` ``*`` ``/`` ``%``
``**`` hereafter generically represented by ``op``. They can be overloaded
with new semantics for user-defined classes. However, for objects composed of
homogeneous elements, such as arrays, vectors and matrices in numerical
computation, there are two essentially distinct flavors of semantics. The
objectwise operations treat these objects as points in multidimensional spaces.
The elementwise operations treat them as collections of individual elements.
These two flavors of operations are often intermixed in the same formulas,
thereby requiring syntactical distinction.
Many numerical computation languages provide two sets of math operators. For
example, in MatLab, the ordinary ``op`` is used for objectwise operation while
``.op`` is used for elementwise operation. In R, ``op`` stands for elementwise
operation while ``%op%`` stands for objectwise operation.
In Python, there are other methods of representation, some of which already
used by available numerical packages, such as:
- function: mul(a,b)
- method: a.mul(b)
- casting: a.E*b
In several aspects these are not as adequate as infix operators. More details
will be shown later, but the key points are:
- Readability: Even for moderately complicated formulas, infix operators are
much cleaner than alternatives.
- Familiarity: Users are familiar with ordinary math operators.
- Implementation: New infix operators will not unduly clutter Python syntax.
They will greatly ease the implementation of numerical packages.
While it is possible to assign current math operators to one flavor of
semantics, there is simply not enough infix operators to overload for the other
flavor. It is also impossible to maintain visual symmetry between these two
flavors if one of them does not contain symbols for ordinary math operators.
Proposed extension
==================
- Six new binary infix operators ``~+`` ``~-`` ``~*`` ``~/`` ``~%`` ``~**`` are
added to core Python. They parallel the existing operators ``+`` ``-`` ``*``
``/`` ``%`` ``**``.
- Six augmented assignment operators ``~+=`` ``~-=`` ``~*=`` ``~/=`` ``~%=``
``~**=`` are added to core Python. They parallel the operators ``+=`` ``-=``
``*=`` ``/=`` ``%=`` ``**=`` available in Python 2.0.
- Operator ``~op`` retains the syntactical properties of operator ``op``,
including precedence.
- Operator ``~op`` retains the semantical properties of operator ``op`` on
built-in number types.
- Operator ``~op`` raise syntax error on non-number builtin types. This is
temporary until the proper behavior can be agreed upon.
- These operators are overloadable in classes with names that prepend *t* (for
tilde) to names of ordinary math operators. For example, ``__tadd__`` and
``__rtadd__`` work for ``~+`` just as ``__add__`` and ``__radd__`` work for
``+``.
- As with existing operators, the ``__r*__()`` methods are invoked when the
left operand does not provide the appropriate method.
It is intended that one set of ``op`` or ``~op`` is used for elementwise
operations, the other for objectwise operations, but it is not specified which
version of operators stands for elementwise or objectwise operations, leaving
the decision to applications.
The proposed implementation is to patch several files relating to the
tokenizer, parser, grammar and compiler to duplicate the functionality of
corresponding existing operators as necessary. All new semantics are to be
implemented in the classes that overload them.
The symbol ``~`` is already used in Python as the unary *bitwise not* operator.
Currently it is not allowed for binary operators. The new operators are
completely backward compatible.
Prototype Implementation
========================
Greg Lielens implemented the infix ``~op`` as a patch against Python 2.0b1
source [1]_.
To allow ``~`` to be part of binary operators, the tokenizer would treat ``~+``
as one token. This means that currently valid expression ``~+1`` would be
tokenized as ``~+`` ``1`` instead of ``~ + 1``. The parser would then treat ``~+``
as composite of ``~ +``. The effect is invisible to applications.
Notes about current patch:
- It does not include ``~op=`` operators yet.
- The ``~op`` behaves the same as ``op`` on lists, instead of raising
exceptions.
These should be fixed when the final version of this proposal is ready.
- It reserves ``xor`` as an infix operator with the semantics equivalent to::
def __xor__(a, b):
if not b: return a
elif not a: return b
else: 0
This preserves true value as much as possible, otherwise preserve left hand
side value if possible.
This is done so that bitwise operators could be regarded as elementwise
logical operators in the future (see below).
Alternatives to adding new operators
====================================
The discussions on comp.lang.python and python-dev mailing list explored many
alternatives. Some of the leading alternatives are listed here, using the
multiplication operator as an example.
1. Use function ``mul(a,b)``.
Advantage:
- No need for new operators.
Disadvantage:
- Prefix forms are cumbersome for composite formulas.
- Unfamiliar to the intended users.
- Too verbose for the intended users.
- Unable to use natural precedence rules.
2. Use method call ``a.mul(b)``.
Advantage:
- No need for new operators.
Disadvantage:
- Asymmetric for both operands.
- Unfamiliar to the intended users.
- Too verbose for the intended users.
- Unable to use natural precedence rules.
3. Use *shadow classes*. For matrix class define a shadow array class
accessible through a method ``.E``, so that for matrices *a* and *b*,
``a.E*b`` would be a matrix object that is ``elementwise_mul(a,b)``.
Likewise define a shadow matrix class for arrays accessible through a method
``.M`` so that for arrays *a* and *b*, ``a.M*b`` would be an array that is
``matrixwise_mul(a,b)``.
Advantage:
- No need for new operators.
- Benefits of infix operators with correct precedence rules.
- Clean formulas in applications.
Disadvantage:
- Hard to maintain in current Python because ordinary numbers cannot have
user defined class methods; i.e. ``a.E*b`` will fail if a is a pure
number.
- Difficult to implement, as this will interfere with existing method calls,
like ``.T`` for transpose, etc.
- Runtime overhead of object creation and method lookup.
- The shadowing class cannot replace a true class, because it does not
return its own type. So there need to be a ``M`` class with shadow ``E``
class, and an ``E`` class with shadow ``M`` class.
- Unnatural to mathematicians.
4. Implement matrixwise and elementwise classes with easy casting to the other
class. So matrixwise operations for arrays would be like ``a.M*b.M`` and
elementwise operations for matrices would be like ``a.E*b.E``. For error
detection ``a.E*b.M`` would raise exceptions.
Advantage:
- No need for new operators.
- Similar to infix notation with correct precedence rules.
Disadvantage:
- Similar difficulty due to lack of user-methods for pure numbers.
- Runtime overhead of object creation and method lookup.
- More cluttered formulas.
- Switching of flavor of objects to facilitate operators becomes persistent.
This introduces long range context dependencies in application code that
would be extremely hard to maintain.
5. Using mini parser to parse formulas written in arbitrary extension placed in
quoted strings.
Advantage:
- Pure Python, without new operators
Disadvantage:
- The actual syntax is within the quoted string, which does not resolve the
problem itself.
- Introducing zones of special syntax.
- Demanding on the mini-parser.
6. Introducing a single operator, such as ``@``, for matrix multiplication.
Advantage:
- Introduces less operators
Disadvantage:
- The distinctions for operators like ``+`` ``-`` ``**`` are equally
important. Their meaning in matrix or array-oriented packages would be
reversed (see below).
- The new operator occupies a special character.
- This does not work well with more general object-element issues.
Among these alternatives, the first and second are used in current applications
to some extent, but found inadequate. The third is the most favorite for
applications, but it will incur huge implementation complexity. The fourth
would make applications codes very context-sensitive and hard to maintain.
These two alternatives also share significant implementational difficulties due
to current type/class split. The fifth appears to create more problems than it
would solve. The sixth does not cover the same range of applications.
Alternative forms of infix operators
====================================
Two major forms and several minor variants of new infix operators were
discussed:
- Bracketed form::
(op)
[op]
{op}
<op>
:op:
~op~
%op%
- Meta character form::
.op
@op
~op
Alternatively the meta character is put after the operator.
- Less consistent variations of these themes. These are considered
unfavorably. For completeness some are listed here:
- Use ``@/`` and ``/@`` for left and right division
- Use ``[*]`` and ``(*)`` for outer and inner products
- Use a single operator ``@`` for multiplication.
- Use ``__call__`` to simulate multiplication::
a(b) or (a)(b)
Criteria for choosing among the representations include:
- No syntactical ambiguities with existing operators.
- Higher readability in actual formulas. This makes the bracketed forms
unfavorable. See examples below.
- Visually similar to existing math operators.
- Syntactically simple, without blocking possible future extensions.
With these criteria the overall winner in bracket form appear to be ``{op}``.
A clear winner in the meta character form is ``~op``. Comparing these it
appears that ``~op`` is the favorite among them all.
Some analysis are as follows:
- The ``.op`` form is ambiguous: ``1.+a`` would be different from ``1 .+a``.
- The bracket type operators are most favorable when standing alone, but
2017-07-12 14:58:51 -04:00
not in formulas, as they interfere with visual parsing of parentheses for
precedence and function argument. This is so for ``(op)`` and ``[op]``, and
somewhat less so for ``{op}`` and ``<op>``.
- The ``<op>`` form has the potential to be confused with ``<`` ``>`` and ``=``.
- The ``@op`` is not favored because ``@`` is visually heavy (dense, more like
a letter): ``a@+b`` is more readily read as ``a@ + b`` than ``a @+ b``.
- For choosing meta-characters: Most of existing ASCII symbols have already
been used. The only three unused are ``@`` ``$`` ``?``.
Semantics of new operators
==========================
There are convincing arguments for using either set of operators as objectwise
or elementwise. Some of them are listed here:
1. ``op`` for element, ``~op`` for object
- Consistent with current multiarray interface of Numeric package.
- Consistent with some other languages.
- Perception that elementwise operations are more natural.
- Perception that elementwise operations are used more frequently
2. ``op`` for object, ``~op`` for element
- Consistent with current linear algebra interface of MatPy package.
- Consistent with some other languages.
- Perception that objectwise operations are more natural.
- Perception that objectwise operations are used more frequently.
- Consistent with the current behavior of operators on lists.
- Allow ``~`` to be a general elementwise meta-character in future
extensions.
It is generally agreed upon that
- There is no absolute reason to favor one or the other.
- It is easy to cast from one representation to another in a sizable chunk of
code, so the other flavor of operators is always minority.
- There are other semantic differences that favor existence of array-oriented
and matrix-oriented packages, even if their operators are unified.
- Whatever the decision is taken, codes using existing interfaces should not be
broken for a very long time.
Therefore, not much is lost, and much flexibility retained, if the semantic
flavors of these two sets of operators are not dictated by the core language.
The application packages are responsible for making the most suitable choice.
This is already the case for NumPy and MatPy which use opposite semantics.
Adding new operators will not break this. See also observation after
subsection 2 in the Examples below.
The issue of numerical precision was raised, but if the semantics is left to
the applications, the actual precisions should also go there.
Examples
========
Following are examples of the actual formulas that will appear using various
operators or other representations described above.
1. The matrix inversion formula:
- Using ``op`` for object and ``~op`` for element::
b = a.I - a.I * u / (c.I + v/a*u) * v / a
b = a.I - a.I * u * (c.I + v*a.I*u).I * v * a.I
- Using ``op`` for element and ``~op`` for object::
b = a.I @- a.I @* u @/ (c.I @+ v@/a@*u) @* v @/ a
b = a.I ~- a.I ~* u ~/ (c.I ~+ v~/a~*u) ~* v ~/ a
b = a.I (-) a.I (*) u (/) (c.I (+) v(/)a(*)u) (*) v (/) a
b = a.I [-] a.I [*] u [/] (c.I [+] v[/]a[*]u) [*] v [/] a
b = a.I <-> a.I <*> u </> (c.I <+> v</>a<*>u) <*> v </> a
b = a.I {-} a.I {*} u {/} (c.I {+} v{/}a{*}u) {*} v {/} a
Observation: For linear algebra using ``op`` for object is preferable.
Observation: The ``~op`` type operators look better than ``(op)`` type in
complicated formulas.
- using named operators::
b = a.I @sub a.I @mul u @div (c.I @add v @div a @mul u) @mul v @div a
b = a.I ~sub a.I ~mul u ~div (c.I ~add v ~div a ~mul u) ~mul v ~div a
Observation: Named operators are not suitable for math formulas.
2. Plotting a 3d graph
- Using ``op`` for object and ``~op`` for element::
z = sin(x~**2 ~+ y~**2); plot(x,y,z)
- Using op for element and ~op for object::
z = sin(x**2 + y**2); plot(x,y,z)
Observation: Elementwise operations with broadcasting allows much more
efficient implementation than MatLab.
Observation: It is useful to have two related classes with the semantics of
``op`` and ``~op`` swapped. Using these the ``~op`` operators would only
need to appear in chunks of code where the other flavor dominates, while
maintaining consistent semantics of the code.
3. Using ``+`` and ``-`` with automatic broadcasting::
a = b - c; d = a.T*a
Observation: This would silently produce hard-to-trace bugs if one of *b* or
*c* is row vector while the other is column vector.
Miscellaneous issues
====================
- Need for the ``~+`` ``~-`` operators. The objectwise ``+`` ``-`` are
important because they provide important sanity checks as per linear algebra.
The elementwise ``+`` ``-`` are important because they allow broadcasting
that are very efficient in applications.
- Left division (solve). For matrix, ``a*x`` is not necessarily equal to
``x*a``. The solution of ``a*x==b``, denoted ``x=solve(a,b)``, is therefore
different from the solution of ``x*a==b``, denoted ``x=div(b,a)``. There are
discussions about finding a new symbol for solve. [Background: MatLab use
``b/a`` for ``div(b,a)`` and ``a\b`` for ``solve(a,b)``.]
It is recognized that Python provides a better solution without requiring a
new symbol: the ``inverse`` method ``.I`` can be made to be delayed so that
``a.I*b`` and ``b*a.I`` are equivalent to Matlab's ``a\b`` and ``b/a``. The
implementation is quite simple and the resulting application code clean.
- Power operator. Python's use of ``a**b`` as ``pow(a,b)`` has two perceived
disadvantages:
- Most mathematicians are more familiar with ``a^b`` for this purpose.
- It results in long augmented assignment operator ``~**=``.
However, this issue is distinct from the main issue here.
- Additional multiplication operators. Several forms of multiplications are
used in (multi-)linear algebra. Most can be seen as variations of
multiplication in linear algebra sense (such as Kronecker product). But two
forms appear to be more fundamental: outer product and inner product.
However, their specification includes indices, which can be either
- associated with the operator, or
- associated with the objects.
The latter (the Einstein notation) is used extensively on paper, and is also
the easier one to implement. By implementing a tensor-with-indices class, a
general form of multiplication would cover both outer and inner products, and
specialize to linear algebra multiplication as well. The index rule can be
defined as class methods, like::
a = b.i(1,2,-1,-2) * c.i(4,-2,3,-1) # a_ijkl = b_ijmn c_lnkm
Therefore, one objectwise multiplication is sufficient.
- Bitwise operators.
- The proposed new math operators use the symbol ~ that is *bitwise not*
operator. This poses no compatibility problem but somewhat complicates
implementation.
- The symbol ``^`` might be better used for ``pow`` than bitwise ``xor``. But
this depends on the future of bitwise operators. It does not immediately
impact on the proposed math operator.
- The symbol ``|`` was suggested to be used for matrix solve. But the new
solution of using delayed ``.I`` is better in several ways.
- The current proposal fits in a larger and more general extension that will
remove the need for special bitwise operators. (See elementization below.)
- Alternative to special operator names used in definition,
::
def "+"(a, b) in place of def __add__(a, b)
This appears to require greater syntactical change, and would only be useful
when arbitrary additional operators are allowed.
Impact on general elementization
================================
The distinction between objectwise and elementwise operations are meaningful in
other contexts as well, where an object can be conceptually regarded as a
collection of elements. It is important that the current proposal does not
preclude possible future extensions.
One general future extension is to use ``~`` as a meta operator to *elementize*
a given operator. Several examples are listed here:
1. Bitwise operators. Currently Python assigns six operators to bitwise
operations: and (``&``), or (``|``), xor (``^``), complement (``~``), left
shift (``<<``) and right shift (``>>``), with their own precedence levels.
Among them, the ``&`` ``|`` ``^`` ``~`` operators can be regarded as
elementwise versions of lattice operators applied to integers regarded as
bit strings.::
5 and 6 # 6
5 or 6 # 5
5 ~and 6 # 4
5 ~or 6 # 7
These can be regarded as general elementwise lattice operators, not
restricted to bits in integers.
In order to have named operators for ``xor`` ``~xor``, it is necessary to
make ``xor`` a reserved word.
2. List arithmetics.::
[1, 2] + [3, 4] # [1, 2, 3, 4]
[1, 2] ~+ [3, 4] # [4, 6]
['a', 'b'] * 2 # ['a', 'b', 'a', 'b']
'ab' * 2 # 'abab'
['a', 'b'] ~* 2 # ['aa', 'bb']
[1, 2] ~* 2 # [2, 4]
It is also consistent to Cartesian product::
[1,2]*[3,4] # [(1,3),(1,4),(2,3),(2,4)]
3. List comprehension.::
a = [1, 2]; b = [3, 4]
~f(a,b) # [f(x,y) for x, y in zip(a,b)]
~f(a*b) # [f(x,y) for x in a for y in b]
a ~+ b # [x + y for x, y in zip(a,b)]
4. Tuple generation (the zip function in Python 2.0)::
[1, 2, 3], [4, 5, 6] # ([1,2, 3], [4, 5, 6])
[1, 2, 3]~,[4, 5, 6] # [(1,4), (2, 5), (3,6)]
5. Using ``~`` as generic elementwise meta-character to replace map::
~f(a, b) # map(f, a, b)
~~f(a, b) # map(lambda *x:map(f, *x), a, b)
More generally,::
def ~f(*x): return map(f, *x)
def ~~f(*x): return map(~f, *x)
...
6. Elementwise format operator (with broadcasting)::
a = [1,2,3,4,5]
print ["%5d "] ~% a
a = [[1,2],[3,4]]
print ["%5d "] ~~% a
7. Rich comparison::
[1, 2, 3] ~< [3, 2, 1] # [1, 0, 0]
[1, 2, 3] ~== [3, 2, 1] # [0, 1, 0]
8. Rich indexing::
[a, b, c, d] ~[2, 3, 1] # [c, d, b]
9. Tuple flattening::
a = (1,2); b = (3,4)
f(~a, ~b) # f(1,2,3,4)
10. Copy operator::
a ~= b # a = b.copy()
There can be specific levels of deep copy::
a ~~= b # a = b.copy(2)
Notes
-----
1. There are probably many other similar situations. This general approach
seems well suited for most of them, in place of several separated extensions
for each of them (parallel and cross iteration, list comprehension, rich
comparison, etc).
2. The semantics of *elementwise* depends on applications. For example, an
element of matrix is two levels down from the list-of-list point of view.
This requires more fundamental change than the current proposal. In any
case, the current proposal will not negatively impact on future
possibilities of this nature.
Note that this section describes a type of future extensions that is consistent
with current proposal, but may present additional compatibility or other
problems. They are not tied to the current proposal.
Impact on named operators
=========================
The discussions made it generally clear that infix operators is a scarce
resource in Python, not only in numerical computation, but in other fields as
well. Several proposals and ideas were put forward that would allow infix
operators be introduced in ways similar to named functions. We show here that
the current extension does not negatively impact on future extensions in this
regard.
1. Named infix operators.
Choose a meta character, say ``@``, so that for any identifier ``opname``,
the combination ``@opname`` would be a binary infix operator, and::
a @opname b == opname(a,b)
Other representations mentioned include::
.name ~name~ :name: (.name) %name%
and similar variations. The pure bracket based operators cannot be used
this way.
This requires a change in the parser to recognize ``@opname``, and parse it
into the same structure as a function call. The precedence of all these
operators would have to be fixed at one level, so the implementation would
be different from additional math operators which keep the precedence of
existing math operators.
The current proposed extension do not limit possible future extensions of
such form in any way.
2. More general symbolic operators.
One additional form of future extension is to use meta character and
operator symbols (symbols that cannot be used in syntactical structures
other than operators). Suppose ``@`` is the meta character. Then::
a + b, a @+ b, a @@+ b, a @+- b
would all be operators with a hierarchy of precedence, defined by::
def "+"(a, b)
def "@+"(a, b)
def "@@+"(a, b)
def "@+-"(a, b)
One advantage compared with named operators is greater flexibility for
precedences based on either the meta character or the ordinary operator
symbols. This also allows operator composition. The disadvantage is that
they are more like *line noise*. In any case the current proposal does not
impact its future possibility.
These kinds of future extensions may not be necessary when Unicode becomes
generally available.
Note that this section discusses compatibility of the proposed extension
with possible future extensions. The desirability or compatibility of these
other extensions themselves are specifically not considered here.
Credits and archives
====================
The discussions mostly happened in July to August of 2000 on news group
comp.lang.python and the mailing list python-dev. There are altogether several
hundred postings, most can be retrieved from these two pages (and searching
word "operator"):
http://www.python.org/pipermail/python-list/2000-July/
http://www.python.org/pipermail/python-list/2000-August/
The names of contributors are too numerous to mention here, suffice to say that
a large proportion of ideas discussed here are not our own.
Several key postings (from our point of view) that may help to navigate the
discussions include:
http://www.python.org/pipermail/python-list/2000-July/108893.html
http://www.python.org/pipermail/python-list/2000-July/108777.html
http://www.python.org/pipermail/python-list/2000-July/108848.html
http://www.python.org/pipermail/python-list/2000-July/109237.html
http://www.python.org/pipermail/python-list/2000-July/109250.html
http://www.python.org/pipermail/python-list/2000-July/109310.html
http://www.python.org/pipermail/python-list/2000-July/109448.html
http://www.python.org/pipermail/python-list/2000-July/109491.html
http://www.python.org/pipermail/python-list/2000-July/109537.html
http://www.python.org/pipermail/python-list/2000-July/109607.html
http://www.python.org/pipermail/python-list/2000-July/109709.html
http://www.python.org/pipermail/python-list/2000-July/109804.html
http://www.python.org/pipermail/python-list/2000-July/109857.html
http://www.python.org/pipermail/python-list/2000-July/110061.html
http://www.python.org/pipermail/python-list/2000-July/110208.html
http://www.python.org/pipermail/python-list/2000-August/111427.html
http://www.python.org/pipermail/python-list/2000-August/111558.html
http://www.python.org/pipermail/python-list/2000-August/112551.html
http://www.python.org/pipermail/python-list/2000-August/112606.html
http://www.python.org/pipermail/python-list/2000-August/112758.html
http://www.python.org/pipermail/python-dev/2000-July/013243.html
http://www.python.org/pipermail/python-dev/2000-July/013364.html
http://www.python.org/pipermail/python-dev/2000-August/014940.html
These are earlier drafts of this PEP:
http://www.python.org/pipermail/python-list/2000-August/111785.html
http://www.python.org/pipermail/python-list/2000-August/112529.html
http://www.python.org/pipermail/python-dev/2000-August/014906.html
There is an alternative PEP (officially, :pep:`211`) by Greg Wilson, titled
"Adding New Linear Algebra Operators to Python".
Its first (and current) version is at:
http://www.python.org/pipermail/python-dev/2000-August/014876.html
:pep:`211`
Additional References
=====================
.. [1] http://MatPy.sourceforge.net/Misc/index.html