PEP 637 – Support for indexing with keyword arguments
- Author:
- Stefano Borini
- Sponsor:
- Steven D’Aprano
- Discussions-To:
- Python-Ideas list
- Status:
- Rejected
- Type:
- Standards Track
- Created:
- 24-Aug-2020
- Python-Version:
- 3.10
- Post-History:
- 23-Sep-2020
- Resolution:
- Python-Dev thread
备注
This PEP has been rejected. In general, the cost of introducing new syntax was not outweighed by the perceived benefits. See the link in the Resolution header field for details.
Abstract
At present keyword arguments are allowed in function calls, but not in item access. This PEP proposes that Python be extended to allow keyword arguments in item access.
The following example shows keyword arguments for ordinary function calls:
>>> val = f(1, 2, a=3, b=4)
The proposal would extend the syntax to allow a similar construct to indexing operations:
>>> val = x[1, 2, a=3, b=4] # getitem
>>> x[1, 2, a=3, b=4] = val # setitem
>>> del x[1, 2, a=3, b=4] # delitem
and would also provide appropriate semantics. Single- and double-star unpacking of arguments is also provided:
>>> val = x[*(1, 2), **{a=3, b=4}] # Equivalent to above.
This PEP is a successor to PEP 472, which was rejected due to lack of interest in 2019. Since then there’s been renewed interest in the feature.
Overview
Background
PEP 472 was opened in 2014. The PEP detailed various use cases and was created by extracting implementation strategies from a broad discussion on the python-ideas mailing list, although no clear consensus was reached on which strategy should be used. Many corner cases have been examined more closely and felt awkward, backward incompatible or both.
The PEP was eventually rejected in 2019 [1] mostly due to lack of interest for the feature despite its 5 years of existence.
However, with the introduction of type hints in PEP 484 the square bracket notation has been used consistently to enrich the typing annotations, e.g. to specify a list of integers as Sequence[int]. Additionally, there has been an expanded growth of packages for data analysis such as pandas and xarray, which use names to describe columns in a table (pandas) or axis in an nd-array (xarray). These packages allow users to access specific data by names, but cannot currently use index notation ([]) for this functionality.
As a result, a renewed interest in a more flexible syntax that would allow for named information has been expressed occasionally in many different threads on python-ideas, recently by Caleb Donovick [2] in 2019 and Andras Tantos [3] in 2020. These requests prompted a strong activity on the python-ideas mailing list, where the various options have been re-discussed and a general consensus on an implementation strategy has now been reached.
Use cases
The following practical use cases present different cases where a keyword specification would improve notation and provide additional value:
- To provide a more communicative meaning to the index, preventing e.g. accidental
inversion of indexes:
>>> grid_position[x=3, y=5, z=8] >>> rain_amount[time=0:12, location=location] >>> matrix[row=20, col=40]
- To enrich the typing notation with keywords, especially during the use of generics:
def function(value: MyType[T=int]):
- In some domain, such as computational physics and chemistry, the use of a
notation such as
Basis[Z=5]
is a Domain Specific Language notation to represent a level of accuracy:>>> low_accuracy_energy = computeEnergy(molecule, BasisSet[Z=3])
- Pandas currently uses a notation such as:
>>> df[df['x'] == 1]
which could be replaced with
df[x=1]
. - xarray has named dimensions. Currently these are handled with functions .isel:
>>> data.isel(row=10) # Returns the tenth row
which could also be replaced with
data[row=10]
. A more complex example:>>> # old syntax >>> da.isel(space=0, time=slice(None, 2))[...] = spam >>> # new syntax >>> da[space=0, time=:2] = spam
Another example:
>>> # old syntax >>> ds["empty"].loc[dict(lon=5, lat=6)] = 10 >>> # new syntax >>> ds["empty"][lon=5, lat=6] = 10 >>> # old syntax >>> ds["empty"].loc[dict(lon=slice(1, 5), lat=slice(3, None))] = 10 >>> # new syntax >>> ds["empty"][lon=1:5, lat=6:] = 10
- Functions/methods whose argument is another function (plus its
arguments) need some way to determine which arguments are destined for
the target function, and which are used to configure how they run the
target. This is simple (if non-extensible) for positional parameters,
but we need some way to distinguish these for keywords. [4]
An indexed notation would afford a Pythonic way to pass keyword arguments to these functions without cluttering the caller’s code.
>>> # Let's start this example with basic syntax without keywords. >>> # the positional values are arguments to `func` while >>> # `name=` is processed by `trio.run`. >>> trio.run(func, value1, value2, name="func") >>> # `trio.run` ends up calling `func(value1, value2)`. >>> # If we want/need to pass value2 by keyword (keyword-only argument, >>> # additional arguments that won't break backwards compatibility ...), >>> # currently we need to resort to functools.partial: >>> trio.run(functools.partial(func, param2=value2), value1, name="func") >>> trio.run(functools.partial(func, value1, param2=value2), name="func") >>> # One possible workaround is to convert `trio.run` to an object >>> # with a `__call__` method, and use an "option" helper, >>> trio.run.option(name="func")(func, value1, param2=value2) >>> # However, foo(bar)(baz) is uncommon and thus disruptive to the reader. >>> # Also, you need to remember the name of the `option` method. >>> # This PEP allows us to replace `option` with `__getitem__`. >>> # The call is now shorter, more mnemonic, and looks+works like typing >>> trio.run[name="func"](func, value1, param2=value2)
- Availability of star arguments would benefit PEP 646 Variadic Generics,
especially in the forms
a[*x]
anda[*x, *y, p, q, *z]
. The PEP details exactly this notation in its “Unpacking: Star Operator” section.
It is important to note that how the notation is interpreted is up to the implementation. This PEP only defines and dictates the behavior of Python regarding passed keyword arguments, not how these arguments should be interpreted and used by the implementing class.
Current status of indexing operation
Before detailing the new syntax and semantics to the indexing notation, it is relevant to analyse how the indexing notation works today, in which contexts, and how it is different from a function call.
Subscripting obj[x]
is, effectively, an alternate and specialised form of
function call syntax with a number of differences and restrictions compared to
obj(x)
. The current Python syntax focuses exclusively on position to express
the index, and also contains syntactic sugar to refer to non-punctiform
selection (slices). Some common examples:
>>> a[3] # returns the fourth element of 'a'
>>> a[1:10:2] # slice notation (extract a non-trivial data subset)
>>> a[3, 2] # multiple indexes (for multidimensional arrays)
This translates into a __(get|set|del)item__
dunder call which is passed a single
parameter containing the index (for __getitem__
and __delitem__
) or two parameters
containing index and value (for __setitem__
).
The behavior of the indexing call is fundamentally different from a function call in various aspects:
The first difference is in meaning to the reader. A function call says “arbitrary function call potentially with side-effects”. An indexing operation says “lookup”, typically to point at a subset or specific sub-aspect of an entity (as in the case of typing notation). This fundamental difference means that, while we cannot prevent abuse, implementors should be aware that the introduction of keyword arguments to alter the behavior of the lookup may violate this intrinsic meaning.
The second difference of the indexing notation compared to a function is that indexing can be used for both getting and setting operations. In Python, a function cannot be on the left hand side of an assignment. In other words, both of these are valid:
>>> x = a[1, 2]
>>> a[1, 2] = 5
but only the first one of these is valid:
>>> x = f(1, 2)
>>> f(1, 2) = 5 # invalid
This asymmetry is important, and makes one understand that there is a natural imbalance between the two forms. It is therefore not a given that the two should behave transparently and symmetrically.
The third difference is that functions have names assigned to their
arguments, unless the passed parameters are captured with *args
, in which case
they end up as entries in the args tuple. In other words, functions already
have anonymous argument semantic, exactly like the indexing operation. However,
__(get|set|del)item__
is not always receiving a tuple as the index
argument
(to be uniform in behavior with *args
). In fact, given a trivial class:
class X:
def __getitem__(self, index):
print(index)
The index operation basically forwards the content of the square brackets “as is”
in the index
argument:
>>> x=X()
>>> x[0]
0
>>> x[0, 1]
(0, 1)
>>> x[(0, 1)]
(0, 1)
>>>
>>> x[()]
()
>>> x[{1, 2, 3}]
{1, 2, 3}
>>> x["hello"]
hello
>>> x["hello", "hi"]
('hello', 'hi')
The fourth difference is that the indexing operation knows how to convert colon notations to slices, thanks to support from the parser. This is valid:
a[1:3]
this one isn’t:
f(1:3)
The fifth difference is that there’s no zero-argument form. This is valid:
f()
this one isn’t:
a[]
Specification
Before describing the specification, it is important to stress the difference in
nomenclature between positional index, final index and keyword argument, as it is important to
understand the fundamental asymmetries at play. The __(get|set|del)item__
is fundamentally an indexing operation, and the way the element is retrieved,
set, or deleted is through an index, the final index.
The current status quo is to directly build the final index from what is passed between
square brackets, the positional index. In other words, what is passed in the
square brackets is trivially used to generate what the code in __getitem__
then uses
for the indicisation operation. As we already saw for the dict, d[1]
has a
positional index of 1
and also a final index of 1
(because it’s the element that is
then added to the dictionary) and d[1, 2]
has positional index of (1, 2)
and
final index also of (1, 2)
(because yet again it’s the element that is added to the dictionary).
However, the positional index d[1,2:3]
is not accepted by the dictionary, because
there’s no way to transform the positional index into a final index, as the slice object is
unhashable. The positional index is what is currently known as the index
parameter in
__getitem__
. Nevertheless, nothing prevents to construct a dictionary-like class that
creates the final index by e.g. converting the positional index to a string.
This PEP extends the current status quo, and grants more flexibility to create the final index via an enhanced syntax that combines the positional index and keyword arguments, if passed.
The above brings an important point across. Keyword arguments, in the context of the index operation, may be used to take indexing decisions to obtain the final index, and therefore will have to accept values that are unconventional for functions. See for example use case 1, where a slice is accepted.
The successful implementation of this PEP will result in the following behavior:
- An empty subscript is still illegal, regardless of context (see Rejected Ideas):
obj[] # SyntaxError
- A single index value remains a single index value when passed:
obj[index] # calls type(obj).__getitem__(obj, index) obj[index] = value # calls type(obj).__setitem__(obj, index, value) del obj[index] # calls type(obj).__delitem__(obj, index)
This remains the case even if the index is followed by keywords; see point 5 below.
- Comma-separated arguments are still parsed as a tuple and passed as
a single positional argument:
obj[spam, eggs] # calls type(obj).__getitem__(obj, (spam, eggs)) obj[spam, eggs] = value # calls type(obj).__setitem__(obj, (spam, eggs), value) del obj[spam, eggs] # calls type(obj).__delitem__(obj, (spam, eggs))
The points above mean that classes which do not want to support keyword arguments in subscripts need do nothing at all, and the feature is therefore completely backwards compatible.
- Keyword arguments, if any, must follow positional arguments:
obj[1, 2, spam=None, 3] # SyntaxError
This is like function calls, where intermixing positional and keyword arguments give a SyntaxError.
- Keyword subscripts, if any, will be handled like they are in
function calls. Examples:
# Single index with keywords: obj[index, spam=1, eggs=2] # calls type(obj).__getitem__(obj, index, spam=1, eggs=2) obj[index, spam=1, eggs=2] = value # calls type(obj).__setitem__(obj, index, value, spam=1, eggs=2) del obj[index, spam=1, eggs=2] # calls type(obj).__delitem__(obj, index, spam=1, eggs=2) # Comma-separated indices with keywords: obj[foo, bar, spam=1, eggs=2] # calls type(obj).__getitem__(obj, (foo, bar), spam=1, eggs=2) obj[foo, bar, spam=1, eggs=2] = value # calls type(obj).__setitem__(obj, (foo, bar), value, spam=1, eggs=2) del obj[foo, bar, spam=1, eggs=2] # calls type(obj).__detitem__(obj, (foo, bar), spam=1, eggs=2)
Note that:
- a single positional index will not turn into a tuple just because one adds a keyword value.
- for
__setitem__
, the same order is retained for index and value. The keyword arguments go at the end, as is normal for a function definition.
- The same rules apply with respect to keyword subscripts as for
keywords in function calls:
- the interpreter matches up each keyword subscript to a named parameter in the appropriate method;
- if a named parameter is used twice, that is an error;
- if there are any named parameters left over (without a value) when the keywords are all used, they are assigned their default value (if any);
- if any such parameter doesn’t have a default, that is an error;
- if there are any keyword subscripts remaining after all the named
parameters are filled, and the method has a
**kwargs
parameter, they are bound to the**kwargs
parameter as a dict; - but if no
**kwargs
parameter is defined, it is an error.
- Sequence unpacking is allowed inside subscripts:
obj[*items]
This allows notations such as
[:, *args, :]
, which could be treated as[(slice(None), *args, slice(None))]
. Multiple star unpacking are allowed:obj[1, *(2, 3), *(4, 5), 6, foo=5] # Equivalent to obj[(1, 2, 3, 4, 5, 6), foo=3)
The following notation equivalence must be honored:
obj[*()] # Equivalent to obj[()] obj[*(), foo=3] # Equivalent to obj[(), foo=3] obj[*(x,)] # Equivalent to obj[(x,)] obj[*(x,),] # Equivalent to obj[(x,)]
Note in particular case 3: sequence unpacking of a single element will not behave as if only one single argument was passed. A related case is the following example:
obj[1, *(), foo=5] # Equivalent to obj[(1,), foo=5] # calls type(obj).__getitem__(obj, (1,), foo=5)
However, as we saw earlier, for backward compatibility a single index will be passed as is:
obj[1, foo=5] # calls type(obj).__getitem__(obj, 1, foo=5)
In other words, a single positional index will be passed “as is” only if no sequence unpacking is present. If a sequence unpacking is present, then the index will become a tuple, regardless of the resulting number of elements in the index after the unpacking has taken place.
- Dict unpacking is permitted:
items = {'spam': 1, 'eggs': 2} obj[index, **items] # equivalent to obj[index, spam=1, eggs=2]
The following notation equivalent should be honored:
obj[**{}] # Equivalent to obj[()] obj[3, **{}] # Equivalent to obj[3]
- Keyword-only subscripts are permitted. The positional index will be the empty tuple:
obj[spam=1, eggs=2] # calls type(obj).__getitem__(obj, (), spam=1, eggs=2) obj[spam=1, eggs=2] = 5 # calls type(obj).__setitem__(obj, (), 5, spam=1, eggs=2) del obj[spam=1, eggs=2] # calls type(obj).__delitem__(obj, (), spam=1, eggs=2)
The choice of the empty tuple as a sentinel has been debated. Details are provided in the Rejected Ideas section.
- Keyword arguments must allow slice syntax:
obj[3:4, spam=1:4, eggs=2] # calls type(obj).__getitem__(obj, slice(3, 4, None), spam=slice(1, 4, None), eggs=2)
This may open up the possibility to accept the same syntax for general function calls, but this is not part of this recommendation.
- Keyword arguments allow for default values:
# Given type(obj).__getitem__(obj, index, spam=True, eggs=2) obj[3] # Valid. index = 3, spam = True, eggs = 2 obj[3, spam=False] # Valid. index = 3, spam = False, eggs = 2 obj[spam=False] # Valid. index = (), spam = False, eggs = 2 obj[] # Invalid.
- The same semantics given above must be extended to
__class__getitem__
: Since PEP 560, type hints are dispatched so that forx[y]
, if no__getitem__
method is found, andx
is a type (class) object, andx
has a class method__class_getitem__
, that method is called. The same changes should be applied to this method as well, so that a writing likelist[T=int]
can be accepted.
Indexing behavior in standard classes (dict, list, etc.)
None of what is proposed in this PEP will change the behavior of the current
core classes that use indexing. Adding keywords to the index operation for
custom classes is not the same as modifying e.g. the standard dict type to
handle keyword arguments. In fact, dict (as well as list and other stdlib
classes with indexing semantics) will remain the same and will continue not to
accept keyword arguments. In other words, if d
is a dict
, the
statement d[1, a=2]
will raise TypeError
, as their implementation will
not support the use of keyword arguments. The same holds for all other classes
(list, dict, etc.)
Corner case and Gotchas
With the introduction of the new notation, a few corner cases need to be analysed.
- Technically, if a class defines their getter like this:
def __getitem__(self, index):
then the caller could call that using keyword syntax, like these two cases:
obj[3, index=4] obj[index=1]
The resulting behavior would be an error automatically, since it would be like attempting to call the method with two values for the
index
argument, and aTypeError
will be raised. In the first case, theindex
would be3
, in the second case, it would be the empty tuple()
.Note that this behavior applies for all currently existing classes that rely on indexing, meaning that there is no way for the new behavior to introduce backward compatibility issues on this respect.
Classes that wish to stress this behavior explicitly can define their parameters as positional-only:
def __getitem__(self, index, /):
- a similar case occurs with setter notation:
# Given type(obj).__setitem__(obj, index, value): obj[1, value=3] = 5
This poses no issue because the value is passed automatically, and the Python interpreter will raise
TypeError: got multiple values for keyword argument 'value'
- If the subscript dunders are declared to use positional-or-keyword
parameters, there may be some surprising cases when arguments are passed
to the method. Given the signature:
def __getitem__(self, index, direction='north')
if the caller uses this:
obj[0, 'south']
they will probably be surprised by the method call:
# expected type(obj).__getitem__(obj, 0, direction='south') # but actually get: type(obj).__getitem__(obj, (0, 'south'), direction='north')
Solution: best practice suggests that keyword subscripts should be flagged as keyword-only when possible:
def __getitem__(self, index, *, direction='north')
The interpreter need not enforce this rule, as there could be scenarios where this is the desired behaviour. But linters may choose to warn about subscript methods which don’t use the keyword-only flag.
- As we saw, a single value followed by a keyword argument will not be changed into a tuple, i.e.:
d[1, a=3]
is treated as__getitem__(d, 1, a=3)
, NOT__getitem__(d, (1,), a=3)
. It would be extremely confusing if adding keyword arguments were to change the type of the passed index. In other words, adding a keyword to a single-valued subscript will not change it into a tuple. For those cases where an actual tuple needs to be passed, a proper syntax will have to be used:obj[(1,), a=3] # calls type(obj).__getitem__(obj, (1,), a=3)
In this case, the call is passing a single element (which is passed as is, as from rule above), only that the single element happens to be a tuple.
Note that this behavior just reveals the truth that the
obj[1,]
notation is shorthand forobj[(1,)]
(and alsoobj[1]
is shorthand forobj[(1)]
, with the expected behavior). When keywords are present, the rule that you can omit this outermost pair of parentheses is no longer true:obj[1] # calls type(obj).__getitem__(obj, 1) obj[1, a=3] # calls type(obj).__getitem__(obj, 1, a=3) obj[1,] # calls type(obj).__getitem__(obj, (1,)) obj[(1,), a=3] # calls type(obj).__getitem__(obj, (1,), a=3)
This is particularly relevant in the case where two entries are passed:
obj[1, 2] # calls type(obj).__getitem__(obj, (1, 2)) obj[(1, 2)] # same as above obj[1, 2, a=3] # calls type(obj).__getitem__(obj, (1, 2), a=3) obj[(1, 2), a=3] # calls type(obj).__getitem__(obj, (1, 2), a=3)
And particularly when the tuple is extracted as a variable:
t = (1, 2) obj[t] # calls type(obj).__getitem__(obj, (1, 2)) obj[t, a=3] # calls type(obj).__getitem__(obj, (1, 2), a=3)
Why? because in the case
obj[1, 2, a=3]
we are passing two elements (which are then packed as a tuple and passed as the index). In the caseobj[(1, 2), a=3]
we are passing a single element (which is passed as is) which happens to be a tuple. The final result is that they are the same.
C Interface
Resolution of the indexing operation is performed through a call to the following functions
PyObject_GetItem(PyObject *o, PyObject *key)
for the get operationPyObject_SetItem(PyObject *o, PyObject *key, PyObject *value)
for the set operationPyObject_DelItem(PyObject *o, PyObject *key)
for the del operation
These functions are used extensively within the Python executable, and are
also part of the public C API, as exported by Include/abstract.h
. It is clear that
the signature of this function cannot be changed, and different C level functions
need to be implemented to support the extended call. We propose
PyObject_GetItemWithKeywords(PyObject *o, PyObject *key, PyObject *kwargs)
PyObject_SetItemWithKeywords(PyObject *o, PyObject *key, PyObject *value, PyObject *kwargs)
PyObject_GetItemWithKeywords(PyObject *o, PyObject *key, PyObject *kwargs)
New opcodes will be needed for the enhanced call. Currently, the
implementation uses BINARY_SUBSCR
, STORE_SUBSCR
and DELETE_SUBSCR
to invoke the old functions. We propose BINARY_SUBSCR_KW
,
STORE_SUBSCR_KW
and DELETE_SUBSCR_KW
for the new operations. The
compiler will have to generate these new opcodes. The
old C implementations will call the extended methods passing NULL
as kwargs.
Finally, the following new slots must be added to the PyMappingMethods
struct:
mp_subscript_kw
mp_ass_subscript_kw
These slots will have the appropriate signature to handle the dictionary object containing the keywords.
“How to teach” recommendations
One request that occurred during feedback sessions was to detail a possible narrative for teaching the feature, e.g. to students, data scientists, and similar audience. This section addresses that need.
We will only describe the indexing from the perspective of use, not of implementation, because it is the aspect that the above mentioned audience will likely encounter. Only a subset of the users will have to implement their own dunder functions, and can be considered advanced usage. A proper explanation could be:
The indexing operation is generally used to refer to a subset of a larger dataset by means of an index. In the commonly seen cases, the index is made by one or more numbers, strings, slices, etc.Some types may allow indexing to occur not only with the index, but also with named values. These named values are given between square brackets using the same syntax used for function call keyword arguments. The meaning of the names and their use is found in the documentation of the type, as it varies from one type to another.
The teacher will now show some practical real world examples, explaining the semantics of the feature in the shown library. At the time of writing these examples do not exist, obviously, but the libraries most likely to implement the feature are pandas and numpy, possibly as a method to refer to columns by name.
Reference Implementation
A reference implementation is currently being developed here [6].
Workarounds
Every PEP that changes the Python language should “clearly explain why the existing language specification is inadequate to address the problem that the PEP solves”.
Some rough equivalents to the proposed extension, which we call work-arounds, are already possible. The work-arounds provide an alternative to enabling the new syntax, while leaving the semantics to be defined elsewhere.
These work-arounds follow. In them the helpers H
and P
are not intended to
be universal. For example, a module or package might require the use of its own
helpers.
- User defined classes can be given
getitem
anddelitem
methods, that respectively get and delete values stored in a container:>>> val = x.getitem(1, 2, a=3, b=4) >>> x.delitem(1, 2, a=3, b=4)
The same can’t be done for
setitem
. It’s not valid syntax:>>> x.setitem(1, 2, a=3, b=4) = val SyntaxError: can't assign to function call
- A helper class, here called
H
, can be used to swap the container and parameter roles. In other words, we use:H(1, 2, a=3, b=4)[x]
as a substitute for:
x[1, 2, a=3, b=4]
This method will work for
getitem
,delitem
and also forsetitem
. This is because:>>> H(1, 2, a=3, b=4)[x] = val
is valid syntax, which can be given the appropriate semantics.
- A helper function, here called
P
, can be used to store the arguments in a single object. For example:>>> x[P(1, 2, a=3, b=4)] = val
is valid syntax, and can be given the appropriate semantics.
- The
lo:hi:step
syntax for slices is sometimes very useful. This syntax is not directly available in the work-arounds. However:s[lo:hi:step]
provides a work-around that is available everything, where:
class S: def __getitem__(self, key): return key s = S()
defines the helper object
s
.
Rejected Ideas
Previous PEP 472 solutions
PEP 472 presents a good amount of ideas that are now all to be considered Rejected. A personal email from D’Aprano to the author specifically said:
I have now carefully read through PEP 472 in full, and I am afraid I cannot support any of the strategies currently in the PEP.
We agree that those options are inferior to the currently presented, for one reason or another.
To keep this document compact, we will not present here the objections for all options presented in PEP 472. Suffice to say that they were discussed, and each proposed alternative had one or few dealbreakers.
Adding new dunders
It was proposed to introduce new dunders __(get|set|del)item_ex__
that are invoked over the __(get|set|del)item__
triad, if they are present.
The rationale around this choice is to make the intuition around how to add kwd arg support to square brackets more obvious and in line with the function behavior. Given:
def __getitem_ex__(self, x, y): ...
These all just work and produce the same result effortlessly:
obj[1, 2]
obj[1, y=2]
obj[y=2, x=1]
In other words, this solution would unify the behavior of __getitem__
to the traditional
function signature, but since we can’t change __getitem__
and break backward compatibility,
we would have an extended version that is used preferentially.
The problems with this approach were found to be:
- It will slow down subscripting. For every subscript access, this new dunder attribute gets investigated on the class, and if it is not present then the default key translation function is executed. Different ideas were proposed to handle this, from wrapping the method only at class instantiation time, to add a bit flag to signal the availability of these methods. Regardess of the solution, the new dunder would be effective only if added at class creation time, not if it’s added later. This would be unusual and would disallow (and behave unexpectedly) monkeypatching of the methods for whatever reason it might be needed.
- It adds complexity to the mechanism.
- Will require a long and painful transition period during which time libraries will have to somehow support both calling conventions, because most likely, the extended methods will delegate to the traditional ones when the right conditions are matched in the arguments, or some classes will support the traditional dunder and others the extended dunder. While this will not affect calling code, it will affect development.
- it would potentially lead to mixed situations where the extended version is defined for the getter, but not for the setter.
- In the
__setitem_ex__
signature, value would have to be made the first element, because the index is of arbitrary length depending on the specified indexes. This would look awkward because the visual notation does not match the signature:obj[1, 2] = 3 # calls type(obj).__setitem_ex__(obj, 3, 1, 2)
- the solution relies on the assumption that all keyword indices necessarily map
into positional indices, or that they must have a name. This assumption may be
false: xarray, which is the primary Python package for numpy arrays with
labelled dimensions, supports indexing by additional dimensions (so called
“non-dimension coordinates”) that don’t correspond directly to the dimensions
of the underlying numpy array, and those have no position to match up to.
In other words, anonymous indexes are a plausible use case that this solution
would remove, although it could be argued that using
*args
would solve that issue.
Adding an adapter function
Similar to the above, in the sense that a pre-function would be called to convert the “new style” indexing into “old style indexing” that is then passed. Has problems similar to the above.
create a new “kwslice” object
This proposal has already been explored in “New arguments contents” P4 in PEP 472:
obj[a, b:c, x=1]
# calls type(obj).__getitem__(obj, a, slice(b, c), key(x=1))
This solution requires everyone who needs keyword arguments to parse the tuple and/or key object by hand to extract them. This is painful and opens up to the get/set/del function to always accept arbitrary keyword arguments, whether they make sense or not. We want the developer to be able to specify which arguments make sense and which ones do not.
Using a single bit to change the behavior
A special class dunder flag:
__keyfn__ = True
would change the signature of the __get|set|delitem__
to a “function like” dispatch,
meaning that this:
>>> d[1, 2, z=3]
would result in a call to:
>>> type(obj).__getitem__(obj, 1, 2, z=3)
# instead of type(obj).__getitem__(obj, (1, 2), z=3)
This option has been rejected because it feels odd that a signature of a method
depends on a specific value of another dunder. It would be confusing for both
static type checkers and for humans: a static type checker would have to hard-code
a special case for this, because there really is nothing else in Python
where the signature of a dunder depends on the value of another dunder.
A human that has to implement a __getitem__
dunder would have to look if in the
class (or in any of its subclasses) for a __keyfn__
before the dunder can be written.
Moreover, adding a base classes that have the __keyfn__
flag set would break
the signature of the current methods. This would be even more problematic if the
flag is changed at runtime, or if the flag is generated by calling a function
that returns randomly True or something else.
Allowing for empty index notation obj[]
The current proposal prevents obj[]
from being valid notation. However
a commenter stated
We haveTuple[int, int]
as a tuple of two integers. And we haveTuple[int]
as a tuple of one integer. And occasionally we need to spell a tuple of no values, since that’s the type of()
. But we currently are forced to write that asTuple[()]
. If we allowedTuple[]
that odd edge case would be removed.So I probably would be okay with allowing
obj[]
syntactically, as long as the dict type could be made to reject it.
This proposal already established that, in case no positional index is given, the
passed value must be the empty tuple. Allowing for the empty index notation would
make the dictionary type accept it automatically, to insert or refer to the value with
the empty tuple as key. Moreover, a typing notation such as Tuple[]
can easily
be written as Tuple
without the indexing notation.
However, subsequent discussion with Brandt Bucher during implementation has revealed
that the case obj[]
would fit a natural evolution for variadic generics, giving
more strength to the above comment. In the end, after a discussion between D’Aprano,
Bucher and the author, we decided to leave the obj[]
notation as a syntax
error for now, and possibly extend the notation with an additional PEP to hold
the equivalence obj[]
as obj[()]
.
Sentinel value for no given positional index
The topic of which value to pass as the index in the case of:
obj[k=3]
has been considerably debated.
One apparently rational choice would be to pass no value at all, by making use of
the keyword only argument feature, but unfortunately will not work well with
the __setitem__
dunder, as a positional element for the value is always
passed, and we can’t “skip over” the index one unless we introduce a very weird behavior
where the first argument refers to the index when specified, and to the value when
index is not specified. This is extremely deceiving and error prone.
The above consideration makes it impossible to have a keyword only dunder, and opens up the question of what entity to pass for the index position when no index is passed:
obj[k=3] = 5
# would call type(obj).__setitem__(obj, ???, 5, k=3)
A proposed hack would be to let the user specify which entity to use when an
index is not specified, by specifying a default for the index
, but this
forces necessarily to also specify a (never going to be used, as a value is
always passed by design) default for the value
, as we can’t have
non-default arguments after defaulted one:
def __setitem__(self, index=SENTINEL, value=NEVERUSED, *, k)
which seems ugly, redundant and confusing. We must therefore accept that some
form of sentinel index must be passed by the Python implementation when the
obj[k=3]
notation is used. This also means that default arguments to those
parameters are simply never going to be used (but it’s already the
case with the current implementation, so no change there).
Additionally, some classes may want to use **kwargs
, instead of a keyword-only
argument, meaning that having a definition like:
def __setitem__(self, index, value, **kwargs):
and a user that wants to pass a keyword value
:
x[value=1] = 0
expecting a call like:
type(obj).__setitem__(obj, SENTINEL, 0, **{"value": 1})
will instead accidentally be caught by the named value
, producing a
duplicate value error
. The user should not be worried about the actual
local names of those two arguments if they are, for all practical purposes,
positional only. Unfortunately, using positional-only values will ensure this
does not happen but it will still not solve the need to pass both index
and
value
even when the index is not provided. The point is that the user should not
be prevented to use keyword arguments to refer to a column index
, value
(or self
) just because the class implementor happens to use those names
in the parameter list.
Moreover, we also require the three dunders to behave in the same way: it would
be extremely inconvenient if only __setitem__
were to receive this
sentinel, and __get|delitem__
would not because they can get away with a
signature that allows for no index specification, thus allowing for a
user-specified default index.
Whatever the choice of the sentinel, it will make the following cases degenerate and thus impossible to differentiate in the dunder:
obj[k=3]
obj[SENTINEL, k=3]
The question now shifts to which entity should represent the sentinel: the options were:
- Empty tuple
- None
- NotImplemented
- a new sentinel object (e.g. NoIndex)
For option 1, the call will become:
type(obj).__getitem__(obj, (), k=3)
therefore making obj[k=3]
and obj[(), k=3]
degenerate and indistinguishable.
This option sounds appealing because:
- The numpy community was inquired [5], and the general consensus of the responses was that the empty tuple felt appropriate.
- It shows a parallel with the behavior of
*args
in a function, when no positional arguments are given:>>> def foo(*args, **kwargs): ... print(args, kwargs) ... >>> foo(k=3) () {'k': 3}
Although we do accept the following asymmetry in behavior compared to functions when a single value is passed, but that ship has sailed:
>>> foo(5, k=3) (5,) {'k': 3} # for indexing, a plain 5, not a 1-tuple is passed
For option 2, using None
, it was objected that NumPy uses it to indicate
inserting a new axis/dimensions (there’s a np.newaxis
alias as well):
arr = np.array(5)
arr.ndim == 0
arr[None].ndim == arr[None,].ndim == 1
While this is not an insurmountable issue, it certainly will ripple onto numpy.
The only issues with both the above is that both the empty tuple and None are potential legitimate indexes, and there might be value in being able to differentiate the two degenerate cases.
So, an alternative strategy (option 3) would be to use an existing entity that is
unlikely to be used as a valid index. One option could be the current built-in constant
NotImplemented
, which is currently returned by operators methods to
report that they do not implement a particular operation, and a different strategy
should be attempted (e.g. to ask the other object). Unfortunately, its name and
traditional use calls back to a feature that is not available, rather than the
fact that something was not passed by the user.
This leaves us with option 4: a new built-in constant. This constant
must be unhashable (so it’s never going to be a valid key) and have a clear
name that makes it obvious its context: NoIndex
. This
would solve all the above issues, but the question is: is it worth it?
From a quick inquire, it seems that most people on python-ideas seem to believe it’s not crucial, and the empty tuple is an acceptable option. Hence the resulting series will be:
obj[k=3]
# type(obj).__getitem__(obj, (), k=3). Empty tuple
obj[1, k=3]
# type(obj).__getitem__(obj, 1, k=3). Integer
obj[1, 2, k=3]
# type(obj).__getitem__(obj, (1, 2), k=3). Tuple
and the following two notation will be degenerate:
obj[(), k=3]
# type(obj).__getitem__(obj, (), k=3)
obj[k=3]
# type(obj).__getitem__(obj, (), k=3)
Common objections
- Just use a method call.
One of the use cases is typing, where the indexing is used exclusively, and function calls are out of the question. Moreover, function calls do not handle slice notation, which is commonly used in some cases for arrays.
One problem is type hint creation has been extended to built-ins in Python 3.9, so that you do not have to import Dict, List, et al anymore.
Without kwdargs inside
[]
, you would not be able to do this:Vector = dict[i=float, j=float]
but for obvious reasons, call syntax using builtins to create custom type hints isn’t an option:
dict(i=float, j=float) # would create a dictionary, not a type
Finally, function calls do not allow for a setitem-like notation, as shown in the Overview: operations such as
f(1, x=3) = 5
are not allowed, and are instead allowed for indexing operations.
References
Copyright
This document has been placed in the public domain.
Source: https://github.com/python/peps/blob/main/pep-0637.rst
Last modified: 2022-01-21 11:03:51 GMT