Commit Graph

103 Commits

Author SHA1 Message Date
Shunsuke Shibayama 5e42926eee
[ty] improve bad specialization results & error messages (#21840)
## Summary

This PR includes the following changes:

* When attempting to specialize a non-generic type (or a type that is
already specialized), the result is `Unknown`. Also, the error message
is improved.
* When an implicit type alias is incorrectly specialized, the result is
`Unknown`. Also, the error message is improved.
* When only some of the type alias bounds and constraints are not
satisfied, not all substitutions are `Unknown`.
* Double specialization is prohibited. e.g. `G[int][int]`

Furthermore, after applying this PR, the fuzzing tests for seeds 1052
and 4419, which panic in main, now pass.
This is because the false recursions on type variables have been
removed.

```python
# name_2[0] => Unknown
class name_1[name_2: name_2[0]]:
    def name_4(name_3: name_2, /):
        if name_3:
            pass

#  (name_5 if unique_name_0 else name_1)[0] => Unknown
def name_4[name_5: (name_5 if unique_name_0 else name_1)[0], **name_1](): ...
```

## Test Plan

New corpus test
mdtest files updated
2025-12-11 19:21:34 -08:00
Douglas Creager c8851ecf70
[ty] Defer all parameter and return type annotations (#21906)
As described in astral-sh/ty#1729, we previously had a salsa cycle when
inferring the signature of many function definitions.

The most obvious case happened when (a) the function was decorated, (b)
it had no PEP-695 type params, and (c) annotations were not always
deferred (e.g. in a stub file). We currently evaluate and apply function
decorators eagerly, as part of `infer_function_definition`. Applying a
decorator requires knowing the signature of the function being
decorated. There were two places where signature construction called
`infer_definition_types` cyclically.

The simpler case was that we were looking up the generic context and
decorator list of the function to determine whether it has an implicit
`self` parameter. Before, we used `infer_definition_types` to determine
that information. But since we're in the middle of signature
construction for the function, we can just thread the information
through directly.

The harder case is that signature construction requires knowing the
inferred parameter and return type annotations. When (b) and (c) hold,
those type annotations are inferred in `infer_function_definition`! (In
theory, we've already finished that by the time we start applying
decorators, but signature construction doesn't know that.)

If annotations are deferred, the params/return annotations are inferred
in `infer_deferred_types`; if there are PEP-695 type params, they're
inferred in `infer_function_type_params`. Both of those are different
salsa queries, and don't induce this cycle.

So the quick fix here is to always defer inference of the function
params/return, so that they are always inferred under a different salsa
query.

A more principled fix would be to apply decorators lazily, just like we
construct signatures lazily. But that is a more invasive fix.

Fixes astral-sh/ty#1729

---------

Co-authored-by: Alex Waygood <alex.waygood@gmail.com>
2025-12-11 15:00:18 -05:00
Carl Meyer 4fdb4e8219
[ty] avoid unions of generic aliases of the same class in fixpoint (#21909)
Partially addresses https://github.com/astral-sh/ty/issues/1732
Fixes https://github.com/astral-sh/ty/issues/1800

## Summary

At each fixpoint iteration, we union the "previous" and "current"
iteration types, to ensure that the type can only widen at each
iteration. This prevents oscillation and ensures convergence.

But some unions triggered by this behavior (in particular, unions of
differently-specialized generic-aliases of the same class) never
simplify, and cause spurious errors. Since we haven't seen examples of
oscillating types involving class-literal or generic-alias types, just
don't union those.

There may be more thorough/principled ways to avoid undesirable unions
in fixpoint iteration, but this narrow change seems like it results in
strict improvement.

## Test Plan

Removes two false positive `unsupported-class-base` in mdtests, and
several in the ecosystem, without causing other regression.
2025-12-11 09:53:43 -08:00
Luca Chiodini 5a9d6a91ea
[ty] Uniformly use "not supported" in diagnostics (#21916) 2025-12-11 15:03:55 +00:00
David Peter 7bf50e70a7
[ty] Generics: Respect typevar bounds when matching against a union (#21893)
## Summary

Respect typevar bounds and constraints when matching against a union.
For example:

```py
def accepts_t_or_int[T_str: str](x: T_str | int) -> T_str:
    raise NotImplementedError

reveal_type(accepts_t_or_int("a"))  # ok, reveals `Literal["a"]`
reveal_type(accepts_t_or_int(1))  # ok, reveals `Unknown`

class Unrelated: ...

# error: [invalid-argument-type] "Argument type `Unrelated` does not
# satisfy upper bound `str` of type variable `T_str`"
accepts_t_or_int(Unrelated())
```

Previously, the last call succeed without any errors. Worse than that,
we also incorrectly solved `T_str = Unrelated`, which often lead to
downstream errors.

closes https://github.com/astral-sh/ty/issues/1837

## Ecosystem impact

Looks good!

* Lots of removed false positives, often because we previously selected
a wrong overload for a generic function (because we didn't respect the
typevar bound in an earlier overload).
* We now understand calls to functions accepting an argument of type
`GenericPath: TypeAlias = AnyStr | PathLike[AnyStr]`. Previously, we
would incorrectly match a `Path` argument against the `AnyStr` typevar
(violating its constraints), but now we match against `PathLike`.

## Performance

Another regression on `colour`. This package uses `numpy` heavily. And
`numpy` is the codebase that originally lead me to this bug. The fix
here allows us to infer more precise `np.array` types in some cases, so
it's reasonable that we just need to perform more work.

The fix here also requires us to look at more union elements when we
would previously short-circuit incorrectly, so some more work needs to
be done in the solver.

## Test Plan

New Markdown tests
2025-12-10 14:58:57 +01:00
David Peter aea2bc2308
[ty] Infer type variables within generic unions (#21862)
## Summary

This PR allows our generics solver to find a solution for `T` in cases
like the following:
```py
def extract_t[T](x: P[T] | Q[T]) -> T:
    raise NotImplementedError

reveal_type(extract_t(P[int]()))  # revealed: int
reveal_type(extract_t(Q[str]()))  # revealed: str
```

closes https://github.com/astral-sh/ty/issues/1772
closes https://github.com/astral-sh/ty/issues/1314

## Ecosystem

The impact here looks very good!

It took me a long time to figure this out, but the new diagnostics on
bokeh are actually true positives. I should have tested with another
type-checker immediately, I guess. All other type checkers also emit
errors on these `__init__` calls. MRE
[here](https://play.ty.dev/5c19d260-65e2-4f70-a75e-1a25780843a2) (no
error on main, diagnostic on this branch)

A lot of false positives on home-assistant go away for calls to
functions like
[`async_listen`](180053fe98/homeassistant/core.py (L1581-L1587))
which take a `event_type: EventType[_DataT] | str` parameter. We can now
solve for `_DataT` here, which was previously falling back to its
default value, and then caused problems because it was used as an
argument to an invariant generic class.

## Test Plan

New Markdown tests
2025-12-09 16:22:59 +01:00
Dhruv Manilawala a364195335
[ty] Avoid diagnostic when `typing_extensions.ParamSpec` uses `default` parameter (#21839)
## Summary

fixes: https://github.com/astral-sh/ty/issues/1798

## Test Plan

Add mdtest.
2025-12-08 12:34:30 +00:00
Dhruv Manilawala ac882f7e63
[ty] Handle various invalid explicit specializations for `ParamSpec` (#21821)
## Summary

fixes: https://github.com/astral-sh/ty/issues/1788

## Test Plan

Add new mdtests.

---------

Co-authored-by: Alex Waygood <Alex.Waygood@Gmail.com>
2025-12-08 05:20:41 +00:00
Dhruv Manilawala b623189560
[ty] Complete support for `ParamSpec` (#21445)
## Summary

Closes: https://github.com/astral-sh/ty/issues/157

This PR adds support for the following capabilities involving a
`ParamSpec` type variable:
- Representing `P.args` and `P.kwargs` in the type system
- Matching against a callable containing `P` to create a type mapping
- Specializing `P` against the stored parameters

The value of a `ParamSpec` type variable is being represented using
`CallableType` with a `CallableTypeKind::ParamSpecValue` variant. This
`CallableTypeKind` is expanded from the existing `is_function_like`
boolean flag. An `enum` is used as these variants are mutually
exclusive.

For context, an initial iteration made an attempt to expand the
`Specialization` to use `TypeOrParameters` enum that represents that a
type variable can specialize into either a `Type` or `Parameters` but
that increased the complexity of the code as all downstream usages would
need to handle both the variants appropriately. Additionally, we'd have
also need to establish an invariant that a regular type variable always
maps to a `Type` while a paramspec type variable always maps to a
`Parameters`.

I've intentionally left out checking and raising diagnostics when the
`ParamSpec` type variable and it's components are not being used
correctly to avoid scope increase and it can easily be done as a
follow-up. This would also include the scoping rules which I don't think
a regular type variable implements either.

## Test Plan

Add new mdtest cases and update existing test cases.

Ran this branch on pyx, no new diagnostics.

### Ecosystem analysis

There's a case where in an annotated assignment like:
```py
type CustomType[P] = Callable[...]

def value[**P](...): ...

def another[**P](...):
	target: CustomType[P] = value
```
The type of `value` is a callable and it has a paramspec that's bound to
`value`, `CustomType` is a type alias that's a callable and `P` that's
used in it's specialization is bound to `another`. Now, ty infers the
type of `target` same as `value` and does not use the declared type
`CustomType[P]`. [This is the
assignment](0980b9d9ab/src/async_utils/gen_transform.py (L108))
that I'm referring to which then leads to error in downstream usage.
Pyright and mypy does seem to use the declared type.

There are multiple diagnostics in `dd-trace-py` that requires support
for `cls`.

I'm seeing `Divergent` type for an example like which ~~I'm not sure
why, I'll look into it tomorrow~~ is because of a cycle as mentioned in
https://github.com/astral-sh/ty/issues/1729#issuecomment-3612279974:
```py
from typing import Callable

def decorator[**P](c: Callable[P, int]) -> Callable[P, str]: ...

@decorator
def func(a: int) -> int: ...

# ((a: int) -> str) | ((a: Divergent) -> str)
reveal_type(func)
```

I ~~need to look into why are the parameters not being specialized
through multiple decorators in the following code~~ think this is also
because of the cycle mentioned in
https://github.com/astral-sh/ty/issues/1729#issuecomment-3612279974 and
the fact that we don't support `staticmethod` properly:
```py
from contextlib import contextmanager

class Foo:
    @staticmethod
    @contextmanager
    def method(x: int):
        yield

foo = Foo()
# ty: Revealed type: `() -> _GeneratorContextManager[Unknown, None, None]` [revealed-type]
reveal_type(foo.method)
```

There's some issue related to `Protocol` that are generic over a
`ParamSpec` in `starlette` which might be related to
https://github.com/astral-sh/ty/issues/1635 but I'm not sure. Here's a
minimal example to reproduce:

<details><summary>Code snippet:</summary>
<p>

```py
from collections.abc import Awaitable, Callable, MutableMapping
from typing import Any, Callable, ParamSpec, Protocol

P = ParamSpec("P")

Scope = MutableMapping[str, Any]
Message = MutableMapping[str, Any]
Receive = Callable[[], Awaitable[Message]]
Send = Callable[[Message], Awaitable[None]]

ASGIApp = Callable[[Scope, Receive, Send], Awaitable[None]]

_Scope = Any
_Receive = Callable[[], Awaitable[Any]]
_Send = Callable[[Any], Awaitable[None]]

# Since `starlette.types.ASGIApp` type differs from `ASGIApplication` from `asgiref`
# we need to define a more permissive version of ASGIApp that doesn't cause type errors.
_ASGIApp = Callable[[_Scope, _Receive, _Send], Awaitable[None]]


class _MiddlewareFactory(Protocol[P]):
    def __call__(
        self, app: _ASGIApp, *args: P.args, **kwargs: P.kwargs
    ) -> _ASGIApp: ...


class Middleware:
    def __init__(
        self, factory: _MiddlewareFactory[P], *args: P.args, **kwargs: P.kwargs
    ) -> None:
        self.factory = factory
        self.args = args
        self.kwargs = kwargs


class ServerErrorMiddleware:
    def __init__(
        self,
        app: ASGIApp,
        value: int | None = None,
        flag: bool = False,
    ) -> None:
        self.app = app
        self.value = value
        self.flag = flag

    async def __call__(self, scope: Scope, receive: Receive, send: Send) -> None: ...


# ty: Argument to bound method `__init__` is incorrect: Expected `_MiddlewareFactory[(...)]`, found `<class 'ServerErrorMiddleware'>` [invalid-argument-type]
Middleware(ServerErrorMiddleware, value=500, flag=True)
```

</p>
</details> 

### Conformance analysis

> ```diff
> -constructors_callable.py:36:13: info[revealed-type] Revealed type:
`(...) -> Unknown`
> +constructors_callable.py:36:13: info[revealed-type] Revealed type:
`(x: int) -> Unknown`
> ```

Requires return type inference i.e.,
https://github.com/astral-sh/ruff/pull/21551

> ```diff
> +constructors_callable.py:194:16: error[invalid-argument-type]
Argument is incorrect: Expected `list[T@__init__]`, found `list[Unknown
| str]`
> +constructors_callable.py:194:22: error[invalid-argument-type]
Argument is incorrect: Expected `list[T@__init__]`, found `list[Unknown
| str]`
> +constructors_callable.py:195:4: error[invalid-argument-type] Argument
is incorrect: Expected `list[T@__init__]`, found `list[Unknown | int]`
> +constructors_callable.py:195:9: error[invalid-argument-type] Argument
is incorrect: Expected `list[T@__init__]`, found `list[Unknown | str]`
> ```

I might need to look into why this is happening...

> ```diff
> +generics_defaults.py:79:1: error[type-assertion-failure] Type
`type[Class_ParamSpec[(str, int, /)]]` does not match asserted type
`<class 'Class_ParamSpec'>`
> ```

which is on the following code
```py
DefaultP = ParamSpec("DefaultP", default=[str, int])

class Class_ParamSpec(Generic[DefaultP]): ...

assert_type(Class_ParamSpec, type[Class_ParamSpec[str, int]])
```

It's occurring because there's no equivalence relationship defined
between `ClassLiteral` and `KnownInstanceType::TypeGenericAlias` which
is what these types are.

Everything else looks good to me!
2025-12-05 22:00:06 +05:30
Douglas Creager e42cdf8495
[ty] Carry generic context through when converting class into `Callable` (#21798)
When converting a class (whether specialized or not) into a `Callable`
type, we should carry through any generic context that the constructor
has. This includes both the generic context of the class itself (if it's
generic) and of the constructor methods (if they are separately
generic).

To help test this, this also updates the `generic_context` extension
function to work on `Callable` types and unions; and adds a new
`into_callable` extension function that works just like
`CallableTypeOf`, but on value forms instead of type forms.

Pulled this out of #21551 for separate review.
2025-12-05 08:57:21 -05:00
Alex Waygood 14fce0d440
[ty] Improve the display of various special-form types (#21775) 2025-12-03 21:19:59 +00:00
Douglas Creager 45842cc034
[ty] Fix non-determinism in `ConstraintSet.specialize_constrained` (#21744)
This fixes a non-determinism that we were seeing in the constraint set
tests in https://github.com/astral-sh/ruff/pull/21715.

In this test, we create the following constraint set, and then try to
create a specialization from it:

```
(T@constrained_by_gradual_list = list[Base])
  ∨
(Bottom[list[Any]] ≤ T@constrained_by_gradual_list ≤ Top[list[Any]])
```

That is, `T` is either specifically `list[Base]`, or it's any `list`.
Our current heuristics say that, absent other restrictions, we should
specialize `T` to the more specific type (`list[Base]`).

In the correct test output, we end up creating a BDD that looks like
this:

```
(T@constrained_by_gradual_list = list[Base])
┡━₁ always
└─₀ (Bottom[list[Any]] ≤ T@constrained_by_gradual_list ≤ Top[list[Any]])
    ┡━₁ always
    └─₀ never
```

In the incorrect output, the BDD looks like this:

```
(Bottom[list[Any]] ≤ T@constrained_by_gradual_list ≤ Top[list[Any]])
┡━₁ always
└─₀ never
```

The difference is the ordering of the two individual constraints. Both
constraints appear in the first BDD, but the second BDD only contains `T
is any list`. If we were to force the second BDD to contain both
constraints, it would look like this:

```
(Bottom[list[Any]] ≤ T@constrained_by_gradual_list ≤ Top[list[Any]])
┡━₁ always
└─₀ (T@constrained_by_gradual_list = list[Base])
    ┡━₁ always
    └─₀ never
```

This is the standard shape for an OR of two constraints. However! Those
two constraints are not independent of each other! If `T` is
specifically `list[Base]`, then it's definitely also "any `list`". From
that, we can infer the contrapositive: that if `T` is not any list, then
it cannot be `list[Base]` specifically. When we encounter impossible
situations like that, we prune that path in the BDD, and treat it as
`false`. That rewrites the second BDD to the following:

```
(Bottom[list[Any]] ≤ T@constrained_by_gradual_list ≤ Top[list[Any]])
┡━₁ always
└─₀ (T@constrained_by_gradual_list = list[Base])
    ┡━₁ never   <-- IMPOSSIBLE, rewritten to never
    └─₀ never
```

We then would see that that BDD node is redundant, since both of its
outgoing edges point at the `never` node. Our BDDs are _reduced_, which
means we have to remove that redundant node, resulting in the BDD we saw
above:

```
(Bottom[list[Any]] ≤ T@constrained_by_gradual_list ≤ Top[list[Any]])
┡━₁ always
└─₀ never       <-- redundant node removed
```

The end result is that we were "forgetting" about the `T = list[Base]`
constraint, but only for some BDD variable orderings.

To fix this, I'm leaning in to the fact that our BDDs really do need to
"remember" all of the constraints that they were created with. Some
combinations might not be possible, but we now have the sequent map,
which is quite good at detecting and pruning those.

So now our BDDs are _quasi-reduced_, which just means that redundant
nodes are allowed. (At first I was worried that allowing redundant nodes
would be an unsound "fix the glitch". But it turns out they're real!
[This](https://ieeexplore.ieee.org/abstract/document/130209) is the
paper that introduces them, though it's very difficult to read. Knuth
mentions them in §7.1.4 of
[TAOCP](https://course.khoury.northeastern.edu/csu690/ssl/bdd-knuth.pdf),
and [this paper](https://par.nsf.gov/servlets/purl/10128966) has a nice
short summary of them in §2.)

While we're here, I've added a bunch of `debug` and `trace` level log
messages to the constraint set implementation. I was getting tired of
having to add these by hands over and over. To enable them, just set
`TY_LOG` in your environment, e.g.

```sh
env TY_LOG=ty_python_semantic::types::constraints::SequentMap=trace ty check ...
```

[Note, this has an `internal` label because are still not using
`specialize_constrained` in anything user-facing yet.]
2025-12-03 10:19:39 -05:00
Douglas Creager cf4196466c
[ty] Stop testing the (brittle) constraint set display implementation (#21743)
The `Display` implementation for constraint sets is brittle, and
deserves a rethink. But later! It's perfectly fine for printf debugging;
we just shouldn't be writing mdtests that depend on any particular
rendering details. Most of these tests can be replaced with an
equivalence check that actually validates that the _behavior_ of two
constraint sets are identical.
2025-12-02 09:17:29 +01:00
Alex Waygood 0e651b50b7
[ty] Fix false positives for `class F(Generic[*Ts]): ...` (#21723) 2025-12-01 13:24:07 +00:00
Alex Waygood 3a11e714c6
[ty] Show the user where the type variable was defined in `invalid-type-arguments` diagnostics (#21727) 2025-12-01 12:25:49 +00:00
Dhruv Manilawala 8795d9f0cb
[ty] Split `ParamSpec` mdtests to separate legacy and PEP 695 tests (#21687)
## Summary

This is another small refactor for
https://github.com/astral-sh/ruff/pull/21445 that splits the single
`paramspec.md` into `generics/legacy/paramspec.md` and
`generics/pep695/paramspec.md`.

## Test Plan

Make sure that all mdtests pass.
2025-11-29 06:49:39 +00:00
Ibraheem Ahmed 3ed537e9f1
[ty] Support `type[T]` with type variables (#21650)
## Summary

Adds support for `type[T]`, where `T` is a type variable.

- Resolves https://github.com/astral-sh/ty/issues/501
- Resolves https://github.com/astral-sh/ty/issues/783
- Resolves https://github.com/astral-sh/ty/issues/662
2025-11-28 09:20:24 +01:00
Carl Meyer 77f8fa6906
[ty] more precise inference for a failed specialization (#21651)
## Summary

Previously if an explicit specialization failed (e.g. wrong number of
type arguments or violates an upper bound) we just inferred `Unknown`
for the entire type. This actually caused us to panic on an a case of a
recursive upper bound with invalid specialization; the upper bound would
oscillate indefinitely in fixpoint iteration between `Unknown` and the
given specialization. This could be fixed with a cycle recovery
function, but in this case there's a simpler fix: if we infer
`C[Unknown]` instead of `Unknown` for an invalid attempt to specialize
`C`, that allows fixpoint iteration to quickly converge, as well as
giving a more precise type inference.

Other type checkers actually just go with the attempted specialization
even if it's invalid. So if `C` has a type parameter with upper bound
`int`, and you say `C[str]`, they'll emit a diagnostic but just go with
`C[str]`. Even weirder, if `C` has a single type parameter and you say
`C[str, bytes]`, they'll just go with `C[str]` as the type. I'm not
convinced by this approach; it seems odd to have specializations
floating around that explicitly violate the declared upper bound, or in
the latter case aren't even the specialization the annotation requested.
I prefer `C[Unknown]` for this case.

Fixing this revealed an issue with `collections.namedtuple`, which
returns `type[tuple[Any, ...]]`. Due to
https://github.com/astral-sh/ty/issues/1649 we consider that to be an
invalid specialization. So previously we returned `Unknown`; after this
PR it would be `type[tuple[Unknown]]`, leading to more false positives
from our lack of functional namedtuple support. To avoid that I added an
explicit Todo type for functional namedtuples for now.

## Test Plan

Added and updated mdtests.

The conformance suite changes have to do with `ParamSpec`, so no
meaningful signal there.

The ecosystem changes appear to be the expected effects of having more
precise type information (including occurrences of known issues such as
https://github.com/astral-sh/ty/issues/1495 ). Most effects are just
changes to types in diagnostics.
2025-11-27 13:44:28 +01:00
Dhruv Manilawala c7107a5a90
[ty] Use `zip` to perform explicit specialization (#21635)
## Summary

This PR updates the explicit specialization logic to avoid using the
call machinery.

Previously, the logic would use the call machinery by converting the
list of type variables into a `Binding` with a single `Signature` where
all the type variables are positional-only parameters with bounds and
constraints as the annotated type and the default type as the default
parameter value. This has the advantage that it doesn't need to
implement any specific logic but the disadvantages are subpar diagnostic
messages as it would use the ones specific to a function call. But, an
important disadvantage is that the kind of type variable is lost in this
translation which becomes important in #21445 where a `ParamSpec` can
specialize into a list of types which is provided using list literal.
For example,

```py
class Foo[T, **P]: ...

Foo[int, [int, str]]
```

This PR converts the logic to use a simple loop using `zip_longest` as
all type variables and their corresponding type argument maps on a 1-1
basis. They cannot be specified using keyword argument either e.g.,
`dict[_VT=str, _KT=int]` is invalid.

This PR also makes an initial attempt to improve the diagnostic message
to specifically target the specialization part by using words like "type
argument" instead of just "argument" and including information like the
type variable, bounds, and constraints. Further improvements can be made
by highlighting the type variable definition or the bounds / constraints
as a sub-diagnostic but I'm going to leave that as a follow-up.

## Test Plan

Update messages in existing test cases.
2025-11-27 03:52:22 +00:00
Shunsuke Shibayama 2c0c5ff4e7
[ty] handle recursive type inference properly (#20566)
## Summary

Derived from #17371

Fixes astral-sh/ty#256
Fixes https://github.com/astral-sh/ty/issues/1415
Fixes https://github.com/astral-sh/ty/issues/1433
Fixes https://github.com/astral-sh/ty/issues/1524

Properly handles any kind of recursive inference and prevents panics.

---

Let me explain techniques for converging fixed-point iterations during
recursive type inference.
There are two types of type inference that naively don't converge
(causing salsa to panic): divergent type inference and oscillating type
inference.

### Divergent type inference

Divergent type inference occurs when eagerly expanding a recursive type.
A typical example is this:

```python
class C:
    def f(self, other: "C"):
        self.x = (other.x, 1)

reveal_type(C().x) # revealed: Unknown | tuple[Unknown | tuple[Unknown | tuple[..., Literal[1]], Literal[1]], Literal[1]]
```

To solve this problem, we have already introduced `Divergent` types
(https://github.com/astral-sh/ruff/pull/20312). `Divergent` types are
treated as a kind of dynamic type [^1].

```python
Unknown | tuple[Unknown | tuple[Unknown | tuple[..., Literal[1]], Literal[1]], Literal[1]]
=> Unknown | tuple[Divergent, Literal[1]]
```

When a query function that returns a type enters a cycle, it sets
`Divergent` as the cycle initial value (instead of `Never`). Then, in
the cycle recovery function, it reduces the nesting of types containing
`Divergent` to converge.

```python
0th: Divergent
1st: Unknown | tuple[Divergent, Literal[1]]
2nd: Unknown | tuple[Unknown | tuple[Divergent, Literal[1]], Literal[1]]
=> Unknown | tuple[Divergent, Literal[1]]
```

Each cycle recovery function for each query should operate only on the
`Divergent` type originating from that query.
For this reason, while `Divergent` appears the same as `Any` to the
user, it internally carries some information: the location where the
cycle occurred. Previously, we roughly identified this by having the
scope where the cycle occurred, but with the update to salsa, functions
that create cycle initial values ​​can now receive a `salsa::Id`
(https://github.com/salsa-rs/salsa/pull/1012). This is an opaque ID that
uniquely identifies the cycle head (the query that is the starting point
for the fixed-point iteration). `Divergent` now has this `salsa::Id`.

### Oscillating type inference

Now, another thing to consider is oscillating type inference.
Oscillating type inference arises from the fact that monotonicity is
broken. Monotonicity here means that for a query function, if it enters
a cycle, the calculation must start from a "bottom value" and progress
towards the final result with each cycle. Monotonicity breaks down in
type systems that have features like overloading and overriding.

```python
class Base:
    def flip(self) -> "Sub":
        return Sub()

class Sub(Base):
    def flip(self) -> "Base":
        return Base()

class C:
    def __init__(self, x: Sub):
        self.x = x

    def replace_with(self, other: "C"):
        self.x = other.x.flip()

reveal_type(C(Sub()).x)
```

Naive fixed-point iteration results in `Divergent -> Sub -> Base -> Sub
-> ...`, which oscillates forever without diverging or converging. To
address this, the salsa API has been modified so that the cycle recovery
function receives the value of the previous cycle
(https://github.com/salsa-rs/salsa/pull/1012).
The cycle recovery function returns the union type of the current cycle
and the previous cycle. In the above example, the result type for each
cycle is `Divergent -> Sub -> Base (= Sub | Base) -> Base`, which
converges.

The final result of oscillating type inference does not contain
`Divergent` because `Divergent` that appears in a union type can be
removed, as is clear from the expansion. This simplification is
performed at the same time as nesting reduction.

```
T | Divergent = T | (T | (T | ...)) = T
```

[^1]: In theory, it may be possible to strictly treat types containing
`Divergent` types as recursive types, but we probably shouldn't go that
deep yet. (AFAIK, there are no PEPs that specify how to handle
implicitly recursive types that aren't named by type aliases)

## Performance analysis

A happy side effect of this PR is that we've observed widespread
performance improvements!
This is likely due to the removal of the `ITERATIONS_BEFORE_FALLBACK`
and max-specialization depth trick
(https://github.com/astral-sh/ty/issues/1433,
https://github.com/astral-sh/ty/issues/1415), which means we reach a
fixed point much sooner.

## Ecosystem analysis

The changes look good overall.
You may notice changes in the converged values ​​for recursive types,
this is because the way recursive types are normalized has been changed.
Previously, types containing `Divergent` types were normalized by
replacing them with the `Divergent` type itself, but in this PR, types
with a nesting level of 2 or more that contain `Divergent` types are
normalized by replacing them with a type with a nesting level of 1. This
means that information about the non-divergent parts of recursive types
is no longer lost.

```python
# previous
tuple[tuple[Divergent, int], int] => Divergent
# now
tuple[tuple[Divergent, int], int] => tuple[Divergent, int]
```

The false positive error introduced in this PR occurs in class
definitions with self-referential base classes, such as the one below.

```python
from typing_extensions import Generic, TypeVar

T = TypeVar("T")
U = TypeVar("U")

class Base2(Generic[T, U]): ...

# TODO: no error
# error: [unsupported-base] "Unsupported class base with type `<class 'Base2[Sub2, U@Sub2]'> | <class 'Base2[Sub2[Unknown], U@Sub2]'>`"
class Sub2(Base2["Sub2", U]): ...
```

This is due to the lack of support for unions of MROs, or because cyclic
legacy generic types are not inferred as generic types early in the
query cycle.

## Test Plan

All samples listed in astral-sh/ty#256 are tested and passed without any
panic!

## Acknowledgments

Thanks to @MichaReiser for working on bug fixes and improvements to
salsa for this PR. @carljm also contributed early on to the discussion
of the query convergence mechanism proposed in this PR.

---------

Co-authored-by: Carl Meyer <carl@astral.sh>
2025-11-26 08:50:26 -08:00
Ibraheem Ahmed 294f863523
[ty] Avoid expression reinference for diagnostics (#21267)
## Summary

We now use the type context for a lot of things, so re-inferring without
type context actually makes diagnostics more confusing (in most cases).
2025-11-25 09:24:00 -08:00
Douglas Creager 7e277667d1
[ty] Distinguish "unconstrained" from "constrained to any type" (#21539)
Before, we would collapse any constraint of the form `Never ≤ T ≤
object` down to the "always true" constraint set. This is correct in
terms of BDD semantics, but loses information, since "not constraining a
typevar at all" is different than "constraining a typevar to take on any
type". Once we get to specialization inference, we should fall back on
the typevar's default for the former, but not for the latter.

This is much easier to support now that we have a sequent map, since we
need to treat `¬(Never ≤ T ≤ object)` as being impossible, and prune it
when we walk through BDD paths, just like we do for other impossible
combinations.
2025-11-24 15:23:09 -05:00
Douglas Creager 6cc502781f
[ty] Remove brittle constraint set reveal tests (#21568)
These were added to try to make it clearer that assignability checks
will eventually return more detailed answers than true or false.
However, the constraint set display rendering is still more brittle than
I'd like it to be, and it's more trouble than it's worth to keep them
updated with semantically identically but textually different edits. The
`static_assert`s are sufficient to check correctness, and we can always
add `reveal_type` when needed for further debugging.
2025-11-21 13:57:55 -05:00
Douglas Creager 83134fb380
[ty] Handle nested types when creating specializations from constraint sets (#21530)
#21414 added the ability to create a specialization from a constraint
set. It handled mutually constrained typevars just fine, e.g. given `T ≤
int ∧ U = T` we can infer `T = int, U = int`.

But it didn't handle _nested_ constraints correctly, e.g. `T ≤ int ∧ U =
list[T]`. Now we do! This requires doing a fixed-point "apply the
specialization to itself" step to propagate the assignments of any
nested typevars, and then a cycle detection check to make sure we don't
have an infinite expansion in the specialization.

This gets at an interesting nuance in our constraint set structure that
@sharkdp has asked about before. Constraint sets are BDDs, and each
internal node represents an _individual constraint_, of the form `lower
≤ T ≤ upper`. `lower` and `upper` are allowed to be other typevars, but
only if they appear "later" in the arbitary ordering that we establish
over typevars. The main purpose of this is to avoid infinite expansion
for mutually constrained typevars.

However, that restriction doesn't help us here, because only applies
when `lower` and `upper` _are_ typevars, not when they _contain_
typevars. That distinction is important, since it means the restriction
does not affect our expressiveness: we can always rewrite `Never ≤ T ≤
U` (a constraint on `T`) into `T ≤ U ≤ object` (a constraint on `U`).
The same is not true of `Never ≤ T ≤ list[U]` — there is no "inverse" of
`list` that we could apply to both sides to transform this into a
constraint on a bare `U`.
2025-11-19 17:37:16 -05:00
Douglas Creager 97935518e9
[ty] Create a specialization from a constraint set (#21414)
This patch lets us create specializations from a constraint set. The
constraint encodes the restrictions on which types each typevar can
specialize to. Given a generic context and a constraint set, we iterate
through all of the generic context's typevars. For each typevar, we
abstract the constraint set so that it only mentions the typevar in
question (propagating derived facts if needed). We then find the "best
representative type" for the typevar given the abstracted constraint
set.

When considering the BDD structure of the abstracted constraint set,
each path from the BDD root to the `true` terminal represents one way
that the constraint set can be satisfied. (This is also one of the
clauses in the DNF representation of the constraint set's boolean
formula.) Each of those paths is the conjunction of the individual
constraints of each internal node that we traverse as we walk that path,
giving a single lower/upper bound for the path. We use the upper bound
as the "best" (i.e. "closest to `object`") type for that path.

If there are multiple paths in the BDD, they technically represent
independent possible specializations. If there's a single specialization
that satisfies all of them, we will return that as the specialization.
If not, then the constraint set is ambiguous. (This happens most often
with constrained typevars.) We could in the future turn _each_ of the
paths into separate specializations, but it's not clear what we would do
with that, so instead we just report the ambiguity as a specialization
failure.
2025-11-19 14:20:33 -05:00
Ibraheem Ahmed c5d654bce8
[ty] Improve literal promotion heuristics (#21439)
## Summary

Extends literal promotion to apply to any generic method, as opposed to
only generic class constructors. This PR also improves our literal
promotion heuristics to only promote literals in non-covariant position
in the return type, and avoid promotion if the literal is present in
non-covariant position in any argument type.

Resolves https://github.com/astral-sh/ty/issues/1357.
2025-11-14 16:13:56 -05:00
Alex Waygood 90b32f3b3b
[ty] Ensure annotation/type expressions in stub files are always deferred (#21401) 2025-11-13 17:14:54 +00:00
Shunsuke Shibayama 9dd666d677
[ty] fix global symbol lookup from eager scopes (#21317)
## Summary

cf. https://github.com/astral-sh/ruff/pull/20962

In the following code, `foo` in the comprehension was not reported as
unresolved:

```python
# error: [unresolved-reference] "Name `foo` used when not defined"
foo
foo = [
    # no error!
    # revealed: Divergent
    reveal_type(x) for _ in () for x in [foo]
]

baz = [
    # error: [unresolved-reference] "Name `baz` used when not defined"
    # revealed: Unknown
    reveal_type(x) for _ in () for x in [baz]
]
```

In fact, this is a more serious bug than it looks: for `foo`,
[`explicit_global_symbol` is
called](6cc3393ccd/crates/ty_python_semantic/src/types/infer/builder.rs (L8052)),
causing a symbol that should actually be `Undefined` to be reported as
being of type `Divergent`.

This PR fixes this bug. As a result, the code in
`mdtest/regression/pr_20962_comprehension_panics.md` no longer panics.

## Test Plan

`corpus\cyclic_symbol_in_comprehension.py` is added.
New tests are added in `mdtest/comprehensions/basic.md`.

---------

Co-authored-by: Micha Reiser <micha@reiser.io>
Co-authored-by: Carl Meyer <carl@astral.sh>
2025-11-12 10:15:51 -08:00
Douglas Creager 33b942c7ad
[ty] Handle annotated `self` parameter in constructor of non-invariant generic classes (#21325)
This manifested as an error when inferring the type of a PEP-695 generic
class via its constructor parameters:

```py
class D[T, U]:
    @overload
    def __init__(self: "D[str, U]", u: U) -> None: ...
    @overload
    def __init__(self, t: T, u: U) -> None: ...
    def __init__(self, *args) -> None: ...

# revealed: D[Unknown, str]
# SHOULD BE: D[str, str]
reveal_type(D("string"))
```

This manifested because `D` is inferred to be bivariant in both `T` and
`U`. We weren't seeing this in the equivalent example for legacy
typevars, since those default to invariant. (This issue also showed up
for _covariant_ typevars, so this issue was not limited to bivariance.)

The underlying cause was because of a heuristic that we have in our
current constraint solver, which attempts to handle situations like
this:

```py
def f[T](t: T | None): ...
f(None)
```

Here, the `None` argument matches the non-typevar union element, so this
argument should not add any constraints on what `T` can specialize to.
Our previous heuristic would check for this by seeing if the argument
type is a subtype of the parameter annotation as a whole — even if it
isn't a union! That would cause us to erroneously ignore the `self`
parameter in our constructor call, since bivariant classes are
equivalent to each other, regardless of their specializations.

The quick fix is to move this heuristic "down a level", so that we only
apply it when the parameter annotation is a union. This heuristic should
go away completely 🤞 with the new constraint solver.
2025-11-10 19:46:49 -05:00
Dhruv Manilawala cb2e277482
[ty] Understand legacy and PEP 695 `ParamSpec` (#21139)
## Summary

This PR adds support for understanding the legacy definition and PEP 695
definition for `ParamSpec`.

This is still very initial and doesn't really implement any of the
semantics.

Part of https://github.com/astral-sh/ty/issues/157

## Test Plan

Add mdtest cases.

## Ecosystem analysis

Most of the diagnostics in `starlette` are due to the fact that ty now
understands `ParamSpec` is not a `Todo` type, so the assignability check
fails. The code looks something like:

```py
class _MiddlewareFactory(Protocol[P]):
    def __call__(self, app: ASGIApp, /, *args: P.args, **kwargs: P.kwargs) -> ASGIApp: ...  # pragma: no cover

class Middleware:
    def __init__(
        self,
        cls: _MiddlewareFactory[P],
        *args: P.args,
        **kwargs: P.kwargs,
    ) -> None:
        self.cls = cls
        self.args = args
        self.kwargs = kwargs

# ty complains that `ServerErrorMiddleware` is not assignable to `_MiddlewareFactory[P]`
Middleware(ServerErrorMiddleware, handler=error_handler, debug=debug)
```

There are multiple diagnostics where there's an attribute access on the
`Wrapped` object of `functools` which Pyright also raises:
```py
from functools import wraps

def my_decorator(f):
    @wraps(f)
    def wrapper(*args, **kwds):
        return f(*args, **kwds)

	# Pyright: Cannot access attribute "__signature__" for class "_Wrapped[..., Unknown, ..., Unknown]"
      Attribute "__signature__" is unknown [reportAttributeAccessIssue]
	# ty: Object of type `_Wrapped[Unknown, Unknown, Unknown, Unknown]` has no attribute `__signature__` [unresolved-attribute]
    wrapper.__signature__
    return wrapper
```

There are additional diagnostics that is due to the assignability checks
failing because ty now infers the `ParamSpec` instead of using the
`Todo` type which would always succeed. This results in a few
`no-matching-overload` diagnostics because the assignability checks
fail.

There are a few diagnostics related to
https://github.com/astral-sh/ty/issues/491 where there's a variable
which is either a bound method or a variable that's annotated with
`Callable` that doesn't contain the instance as the first parameter.

Another set of (valid) diagnostics are where the code hasn't provided
all the type variables. ty is now raising diagnostics for these because
we include `ParamSpec` type variable in the signature. For example,
`staticmethod[Any]` which contains two type variables.
2025-11-06 11:14:40 -05:00
Ibraheem Ahmed 5c69e00d1c
[ty] Simplify unions containing multiple type variables during inference (#21275)
## Summary

Splitting this one out from https://github.com/astral-sh/ruff/pull/21210. This is also something that should be made obselete by the new constraint solver, but is easy enough to fix now.
2025-11-05 15:03:19 +00:00
Ibraheem Ahmed 1d6ae8596a
[ty] Prefer exact matches when solving constrained type variables (#21165)
## Summary

The solver is currently order-dependent, and will choose a supertype
over the exact type if it appears earlier in the list of constraints. We
could be smarter and try to choose the most precise subtype, but I
imagine this is something the new constraint solver will fix anyways,
and this fixes the issue showing up on
https://github.com/astral-sh/ruff/pull/21070.
2025-10-31 10:58:09 -04:00
Douglas Creager 17850eee4b
[ty] Reformat constraint set mdtests (#21111)
This PR updates the mdtests that test how our generics solver interacts
with our new constraint set implementation. Because the rendering of a
constraint set can get long, this standardizes on putting the `revealed`
assertion on a separate line. We also add a `static_assert` test for
each constraint set to verify that they are all coerced into simple
`bool`s correctly.

This is a pure reformatting (not even a refactoring!) that changes no
behavior. I've pulled it out of #20093 to reduce the amount of effort
that will be required to review that PR.
2025-10-28 14:59:49 -04:00
Alex Waygood db0e921db1
[ty] Fix bug where ty would think all types had an `__mro__` attribute (#20995) 2025-10-27 11:19:12 +00:00
Shunsuke Shibayama 48f1771877
[ty] fix infinite recursion with generic type aliases (#20969)
Co-authored-by: Alex Waygood <Alex.Waygood@Gmail.com>
2025-10-23 14:14:30 +00:00
Alex Waygood 16efe53a72
[ty] Fix panic on recursive class definitions in a stub that use constrained type variables (#20955) 2025-10-18 13:02:55 +00:00
Shunsuke Shibayama e4384fc212
[ty] impl `VarianceInferable` for `KnownInstanceType` (#20924)
## Summary

Derived from #20900

Implement `VarianceInferable` for `KnownInstanceType` (especially for
`KnownInstanceType::TypeAliasType`).

The variance of a type alias matches its value type. In normal usage,
type aliases are expanded to value types, so the variance of a type
alias can be obtained without implementing this. However, for example,
if we want to display the variance when hovering over a type alias, we
need to be able to obtain the variance of the type alias itself (cf.
#20900).

## Test Plan

I couldn't come up with a way to test this in mdtest, so I'm testing it
in a test submodule at the end of `types.rs`.
I also added a test to `mdtest/generics/pep695/variance.md`, but it
passes without the changes in this PR.
2025-10-17 21:12:19 +02:00
Douglas Creager aba0bd568e
[ty] Diagnostic for generic classes that reference typevars in enclosing scope (#20822)
Generic classes are not allowed to bind or reference a typevar from an
enclosing scope:

```py
def f[T](x: T, y: T) -> None:
    class Ok[S]: ...
    # error: [invalid-generic-class]
    class Bad1[T]: ...
    # error: [invalid-generic-class]
    class Bad2(Iterable[T]): ...

class C[T]:
    class Ok1[S]: ...
    # error: [invalid-generic-class]
    class Bad1[T]: ...
    # error: [invalid-generic-class]
    class Bad2(Iterable[T]): ...
```

It does not matter if the class uses PEP 695 or legacy syntax. It does
not matter if the enclosing scope is a generic class or function. The
generic class cannot even _reference_ an enclosing typevar in its base
class list.

This PR adds diagnostics for these cases.

In addition, the PR adds better fallback behavior for generic classes
that violate this rule: any enclosing typevars are not included in the
class's generic context. (That ensures that we don't inadvertently try
to infer specializations for those typevars in places where we
shouldn't.) The `dulwich` ecosystem project has [examples of
this](d912eaaffd/dulwich/config.py (L251))
that were causing new false positives on #20677.

---------

Co-authored-by: Alex Waygood <Alex.Waygood@Gmail.com>
2025-10-13 19:30:49 -04:00
Alex Waygood 7064c38e53
[ty] Filter out `revealed-type` and `undefined-reveal` diagnostics from mdtest snapshots (#20820) 2025-10-12 18:39:32 +00:00
Shunsuke Shibayama dc64c08633
[ty] bidirectional type inference using function return type annotations (#20528)
## Summary

Implements bidirectional type inference using function return type
annotations.

This PR was originally proposed to solve astral-sh/ty#1167, but this
does not fully resolve it on its own.
Additionally, I believe we need to allow dataclasses to generate their
own `__new__` methods, [use constructor return types ​​for
inference](5844c0103d/crates/ty_python_semantic/src/types.rs (L5326-L5328)),
and a mechanism to discard type narrowing like `& ~AlwaysFalsy` if
necessary (at a more general level than this PR).

## Test Plan

`mdtest/bidirectional.md` is added.

---------

Co-authored-by: Alex Waygood <Alex.Waygood@Gmail.com>
Co-authored-by: Ibraheem Ahmed <ibraheem@ibraheem.ca>
2025-10-11 00:38:35 +00:00
Carl Meyer 8248193ed9
[ty] defer inference of legacy TypeVar bound/constraints/defaults (#20598)
## Summary

This allows us to handle self-referential bounds/constraints/defaults
without panicking.

Handles more cases from https://github.com/astral-sh/ty/issues/256

This also changes the way we infer the types of legacy TypeVars. Rather
than understanding a constructor call to `typing[_extension].TypeVar`
inside of any (arbitrarily nested) expression, and having to use a
special `assigned_to` field of the semantic index to try to best-effort
figure out what name the typevar was assigned to, we instead understand
the creation of a legacy `TypeVar` only in the supported syntactic
position (RHS of a simple un-annotated assignment with one target). In
any other position, we just infer it as creating an opaque instance of
`typing.TypeVar`. (This behavior matches all other type checkers.)

So we now special-case TypeVar creation in `TypeInferenceBuilder`, as a
special case of an assignment definition, rather than deeper inside call
binding. This does mean we re-implement slightly more of
argument-parsing, but in practice this is minimal and easy to handle
correctly.

This is easier to implement if we also make the RHS of a simple (no
unpacking) one-target assignment statement no longer a standalone
expression. Which is fine to do, because simple one-target assignments
don't need to infer the RHS more than once. This is a bonus performance
(0-3% across various projects) and significant memory-usage win, since
most assignment statements are simple one-target assignment statements,
meaning we now create many fewer standalone-expression salsa
ingredients.

This change does mean that inference of manually-constructed
`TypeAliasType` instances can no longer find its Definition in
`assigned_to`, which regresses go-to-definition for these aliases. In a
future PR, `TypeAliasType` will receive the same treatment that
`TypeVar` did in this PR (moving its special-case inference into
`TypeInferenceBuilder` and supporting it only in the correct syntactic
position, and lazily inferring its value type to support recursion),
which will also fix the go-to-definition regression. (I decided a
temporary edge-case regression is better in this case than doubling the
size of this PR.)

This PR also tightens up and fixes various aspects of the validation of
`TypeVar` creation, as seen in the tests.

We still (for now) treat all typevars as instances of `typing.TypeVar`,
even if they were created using `typing_extensions.TypeVar`. This means
we'll wrongly error on e.g. `T.__default__` on Python 3.11, even if `T`
is a `typing_extensions.TypeVar` instance at runtime. We share this
wrong behavior with both mypy and pyrefly. It will be easier to fix
after we pull in https://github.com/python/typeshed/pull/14840.

There are some issues that showed up here with typevar identity and
`MarkTypeVarsInferable`; the fix here (using the new `original` field
and `is_identical_to` methods on `BoundTypeVarInstance` and
`TypeVarInstance`) is a bit kludgy, but it can go away when we eliminate
`MarkTypeVarsInferable`.

## Test Plan

Added and updated mdtests.

### Conformance suite impact

The impact here is all positive:

* We now correctly error on a legacy TypeVar with exactly one constraint
type given.
* We now correctly error on a legacy TypeVar with both an upper bound
and constraints specified.

### Ecosystem impact

Basically none; in the setuptools case we just issue slightly different
errors on an invalid TypeVar definition, due to the modified validation
code.

---------

Co-authored-by: Alex Waygood <Alex.Waygood@Gmail.com>
2025-10-09 21:08:37 +00:00
Alex Waygood ff386b4797
[ty] Improve diagnostics for bad `@overload` definitions (#20745) 2025-10-07 21:52:57 +00:00
Douglas Creager 416e956fe0
[ty] Infer better specializations of unions with `None` (etc) (#20749)
This PR adds a specialization inference special case that lets us handle
the following examples better:

```py
def f[T](t: T | None) -> T: ...
def g[T](t: T | int | None) -> T | int: ...

def _(x: str | None):
    reveal_type(f(x))  # revealed: str (previously str | None)

def _(y: str | int | None):
    reveal_type(g(x))  # revealed: str | int (previously str | int | None)
```

We already have a special case for when the formal is a union where one
element is a typevar, but it maps the entire actual type to the typevar
(as you can see in the "previously" results above).

The new special case kicks in when the actual is also a union. Now, we
filter out any actual union elements that are already subtypes of the
formal, and only bind whatever types remain to the typevar. (The `|
None` pattern appears quite often in the ecosystem results, but it's
more general and works with any number of non-typevar union elements.)

The new constraint solver should handle this case as well, but it's
worth adding this heuristic now with the old solver because it
eliminates some false positives from the ecosystem report, and makes the
ecosystem report less noisy on the other constraint solver PRs.
2025-10-07 13:33:42 -04:00
Alex Waygood 0639da2552
[ty] `~T` should never be assignable to `T` (#20606)
## Summary

Currently we do not emit an error on this code:

```py
from ty_extensions import Not

def f[T](x: T, y: Not[T]) -> T:
    x = y
    return x
```

But we should do! `~T` should never be assignable to `T`.

This fixes a small regression introduced in
14fe1228e7 (diff-8049ab5af787dba29daa389bbe2b691560c15461ef536f122b1beab112a4b48aR1443-R1446),
where a branch that previously returned `false` was replaced with a
branch that returns `C::always_satisfiable` -- the opposite of what it
used to be! The regression occurred because we didn't have any tests for
this -- so I added some tests in this PR that fail on `main`. I only
spotted the problem because I was going through the code of
`has_relation_to_impl` with a fine toothcomb for
https://github.com/astral-sh/ruff/pull/20602 😄
2025-10-02 07:52:47 +01:00
David Peter 130a794c2b
[ty] Add tests for nested generic functions (#20631)
## Summary

Add two simple tests that we recently discussed with @dcreager. They
demonstrate that the `TypeMapping::MarkTypeVarsInferable` operation
really does need to keep track of the binding context.

## Test Plan

Made sure that those tests fail if we create
`TypeMapping::MarkTypeVarsInferable(None)`s everywhere.
2025-09-30 08:44:18 +02:00
David Peter 0092794302
[ty] Use `typing.Self` for the first parameter of instance methods (#20517)
## Summary

Modify the (external) signature of instance methods such that the first
parameter uses `Self` unless it is explicitly annotated. This allows us
to correctly type-check more code, and allows us to infer correct return
types for many functions that return `Self`. For example:

```py
from pathlib import Path
from datetime import datetime, timedelta

reveal_type(Path(".config") / ".ty")  # now Path, previously Unknown

def _(dt: datetime, delta: timedelta):
    reveal_type(dt - delta)  # now datetime, previously Unknown
```

part of https://github.com/astral-sh/ty/issues/159

## Performance

I ran benchmarks locally on `attrs`, `freqtrade` and `colour`, the
projects with the largest regressions on CodSpeed. I see much smaller
effects locally, but can definitely reproduce the regression on `attrs`.
From looking at the profiling results (on Codspeed), it seems that we
simply do more type inference work, which seems plausible, given that we
now understand much more return types (of many stdlib functions). In
particular, whenever a function uses an implicit `self` and returns
`Self` (without mentioning `Self` anywhere else in its signature), we
will now infer the correct type, whereas we would previously return
`Unknown`. This also means that we need to invoke the generics solver in
more cases. Comparing half a million lines of log output on attrs, I can
see that we do 5% more "work" (number of lines in the log), and have a
lot more `apply_specialization` events (7108 vs 4304). On freqtrade, I
see similar numbers for `apply_specialization` (11360 vs 5138 calls).
Given these results, I'm not sure if it's generally worth doing more
performance work, especially since none of the code modifications
themselves seem to be likely candidates for regressions.

| Command | Mean [ms] | Min [ms] | Max [ms] | Relative |
|:---|---:|---:|---:|---:|
| `./ty_main check /home/shark/ecosystem/attrs` | 92.6 ± 3.6 | 85.9 |
102.6 | 1.00 |
| `./ty_self check /home/shark/ecosystem/attrs` | 101.7 ± 3.5 | 96.9 |
113.8 | 1.10 ± 0.06 |

| Command | Mean [ms] | Min [ms] | Max [ms] | Relative |
|:---|---:|---:|---:|---:|
| `./ty_main check /home/shark/ecosystem/freqtrade` | 599.0 ± 20.2 |
568.2 | 627.5 | 1.00 |
| `./ty_self check /home/shark/ecosystem/freqtrade` | 607.9 ± 11.5 |
594.9 | 626.4 | 1.01 ± 0.04 |

| Command | Mean [ms] | Min [ms] | Max [ms] | Relative |
|:---|---:|---:|---:|---:|
| `./ty_main check /home/shark/ecosystem/colour` | 423.9 ± 17.9 | 394.6
| 447.4 | 1.00 |
| `./ty_self check /home/shark/ecosystem/colour` | 426.9 ± 24.9 | 373.8
| 456.6 | 1.01 ± 0.07 |

## Test Plan

New Markdown tests

## Ecosystem report

* apprise: ~300 new diagnostics related to problematic stubs in apprise
😩
* attrs: a new true positive, since [this
function](4e2c89c823/tests/test_make.py (L2135))
is missing a `@staticmethod`?
* Some legitimate true positives
* sympy: lots of new `invalid-operator` false positives in [matrix
multiplication](cf9f4b6805/sympy/matrices/matrixbase.py (L3267-L3269))
due to our limited understanding of [generic `Callable[[Callable[[T1,
T2], T3]], Callable[[T1, T2], T3]]` "identity"
types](cf9f4b6805/sympy/core/decorators.py (L83-L84))
of decorators. This is not related to type-of-self.

## Typing conformance results

The changes are all correct, except for
```diff
+generics_self_usage.py:50:5: error[invalid-assignment] Object of type `def foo(self) -> int` is not assignable to `(typing.Self, /) -> int`
```
which is related to an assignability problem involving type variables on
both sides:
```py
class CallableAttribute:
    def foo(self) -> int:
        return 0

    bar: Callable[[Self], int] = foo  # <- we currently error on this assignment
```

---------

Co-authored-by: Shaygan Hooshyari <sh.hooshyari@gmail.com>
2025-09-29 21:08:08 +02:00
David Peter 3932f7c849
[ty] Fix subtyping for dynamic specializations (#20592)
## Summary

Fixes a bug observed by @AlexWaygood where `C[Any] <: C[object]` should
hold for a class that is covariant in its type parameter (and similar
subtyping relations involving dynamic types for other variance
configurations).

## Test Plan

New and updated Markdown tests
2025-09-26 15:05:03 +02:00
David Peter 742f8a4ee6
[ty] Use `C[T]` instead of `C[Unknown]` for the upper bound of `Self` (#20479)
### Summary

This PR includes two changes, both of which are necessary to resolve
https://github.com/astral-sh/ty/issues/1196:

* For a generic class `C[T]`, we previously used `C[Unknown]` as the
upper bound of the `Self` type variable. There were two problems with
this. For one, when `Self` appeared in contravariant position, we would
materialize its upper bound to `Bottom[C[Unknown]]` (which might
simplify to `C[Never]` if `C` is covariant in `T`) when accessing
methods on `Top[C[Unknown]]`. This would result in `invalid-argument`
errors on the `self` parameter. Also, using an upper bound of
`C[Unknown]` would mean that inside methods, references to `T` would be
treated as `Unknown`. This could lead to false negatives. To fix this,
we now use `C[T]` (with a "nested" typevar) as the upper bound for
`Self` on `C[T]`.
* In order to make this work, we needed to allow assignability/subtyping
of inferable typevars to other types, since we now check assignability
of e.g. `C[int]` to `C[T]` (when checking assignability to the upper
bound of `Self`) when calling an instance-method on `C[int]` whose
`self` parameter is annotated as `self: Self` (or implicitly `Self`,
following https://github.com/astral-sh/ruff/pull/18007).

closes https://github.com/astral-sh/ty/issues/1196
closes https://github.com/astral-sh/ty/issues/1208


### Test Plan

Regression tests for both issues.
2025-09-23 14:02:25 +02:00
Eric Mark Martin 2502ff7638
[ty] Make TypeIs invariant in its type argument (#20428)
## Summary

What it says on the tin. See the [typing
spec](https://docs.python.org/3/library/typing.html#typing.TypeIs) for
justification.

## Test Plan

Add more tests to PEP 695 `variance.md` suite.
2025-09-18 07:53:13 -07:00
Alex Waygood 0e3697a643
[ty] Minor fixes to `Protocol` tests (#20347) 2025-09-11 14:42:13 +00:00