Pytreeclass

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0.7

- Remove `.at` as an alias for `__getitem__` when specifying a path entry for where in `AtIndexer`. This leads to less verbose style.

Example:

python

>>> tree = {"level1_0": {"level2_0": 100, "level2_1": 200}, "level1_1": 300}
>>> indexer = tc.AtIndexer(tree)

>>> Before:
>>> style 1 (with at):
>>> indexer.at["level1_0"].at["level2_0", "level2_1"].get()
{'level1_0': {'level2_0': 100, 'level2_1': 200}, 'level1_1': None}
>>> style 2 (no at):
>>> indexer["level1_0"]["level2_0", "level2_1"].get()

>>> After
>>> only style 2 is valid
>>> indexer["level1_0"]["level2_0", "level2_1"].get()


diff
- tree = indexer.at["level1_0"].at["level2_0", "level2_1"].get()
+ tree = indexer["level1_0"]["level2_0", "level2_1"].get()


For `TreeClass`

`at` is specified _once_ for each change

diff
tc.autoinit
class Tree(tc.TreeClass):
a: float = 1.0
b: tuple[float, float] = (2.0, 3.0)
c: jax.Array = jnp.array([4.0, 5.0, 6.0])

def __call__(self, x):
return self.a + self.b[0] + self.c + x


tree = Tree()
mask = jax.tree_map(lambda x: x > 5, tree)
tree = tree\
.at["a"].set(100.0)\
- .at["b"].at[0].set(10.0)\
+ .at["b"][0].set(10.0)\
.at[mask].set(100.0)

0.6.0post0

- using `tree_{repr,str}` with an object containing cyclic references will raise `RecursionError` instead of displaying cyclicref.

0.6.0

- Allow nested mutations using `.at[method](*args, **kwargs)`.
After the change, inner methods can mutate **_copied_** new instances at any level not just the top level.
a motivation for this is to experiment with _lazy initialization scheme_, where inner layers need to mutate their inner state. see the example below for `flax`-like lazy initialization as descriped [here](https://docs.google.com/presentation/d/1ngKWUwsSqAwPRvATG8sAxMzu9ujv4N__cKsUofdNno0/edit#slide=id.g8d686e6bf0_1_57)

<details>

python

import pytreeclass as tc
import jax.random as jr
from typing import Any
import jax
import jax.numpy as jnp
from typing import Callable, TypeVar

T = TypeVar("T")

tc.autoinit
class LazyLinear(tc.TreeClass):
outdim: int
weight_init: Callable[..., T] = jax.nn.initializers.glorot_normal()
bias_init: Callable[..., T] = jax.nn.initializers.zeros

def param(self, name: str, init_func: Callable[..., T], *args) -> T:
if name not in vars(self):
setattr(self, name, init_func(*args))
return vars(self)[name]

def __call__(self, x: jax.Array, *, key: jr.KeyArray = jr.PRNGKey(0)):
w = self.param("weight", self.weight_init, key, (x.shape[-1], self.outdim))
y = x w
if self.bias_init is not None:
b = self.param("bias", self.bias_init, key, (self.outdim,))
return y + b
return y


tc.autoinit
class StackedLinear(tc.TreeClass):
l1: LazyLinear = LazyLinear(outdim=10)
l2: LazyLinear = LazyLinear(outdim=1)

def call(self, x: jax.Array):
return self.l2(jax.nn.relu(self.l1(x)))

lazy_layer = StackedLinear()
print(repr(lazy_layer))
StackedLinear(
l1=LazyLinear(
outdim=10,
weight_init=init(key, shape, dtype),
bias_init=zeros(key, shape, dtype)
),
l2=LazyLinear(
outdim=1,
weight_init=init(key, shape, dtype),
bias_init=zeros(key, shape, dtype)
)
)

_, materialized_layer = lazy_layer.at["call"](jnp.ones((1, 5)))
materialized_layer
StackedLinear(
l1=LazyLinear(
outdim=10,
weight_init=init(key, shape, dtype),
bias_init=zeros(key, shape, dtype),
weight=f32[5,10](μ=-0.04, σ=0.32, ∈[-0.74,0.63]),
bias=f32[10](μ=0.00, σ=0.00, ∈[0.00,0.00])
),
l2=LazyLinear(
outdim=1,
weight_init=init(key, shape, dtype),
bias_init=zeros(key, shape, dtype),
weight=f32[10,1](μ=-0.07, σ=0.23, ∈[-0.34,0.34]),
bias=f32[1](μ=0.00, σ=0.00, ∈[0.00,0.00])
)
)

materialized_layer(jnp.ones((1, 5)))
Array([[0.16712935]], dtype=float32)

</details>

0.5post0

- fix `__init_subclass__`. not accepting arguments. this bug is introduced since `v0.5`

0.5

Breaking changes

__Auto generation of `__init__` method from type hints is decoupled from `TreeClass`__

__Alternatives__

Use:

1) _Preferably_ decorate with `pytreeclass.autoinit` with `pytreeclass.field` as field specifier. as `pytreeclass.field` has more features (e.g. `callbacks`, multiple argument kind selection) and the init generation is cached compared to `dataclasses`.
2) decorate with `dataclasses.dataclass` with `dataclasses.field` as field specifier. however :
1) _Must_ set `fronzen=False` because the `__setattr__`, `__delattr__` is handled by `TreeClass`
2) _Optionally_ `repr=False` to be handled by `TreeClass`
3) _Optionally_ `eq=hash=False` as it is handled by `TreeClass`

<div align="center">

<table>
<tr>

<td>

Before

python
import jax.tree_util as jtu
import pytreeclass as tc
import dataclasses as dc

class Tree(tc.TreeClass):
a: int = 1

jtu.tree_leaves(Tree())
[1]



</td>

<td>

After
Equivalent behavior when decorating with either:

1) `pytreeclass.autoinit`
2) `dataclasses.dataclass`

python
import jax.tree_util as jtu
import pytreeclass as tc

tc.autoinit
class Tree(tc.TreeClass):
a: int = 1

jtu.tree_leaves(Tree())
[1]



</td>

<tr>

</table>

</div>


This change aims to fix the ambiguity of using the `dataclass` mental model in the following siutations:

1) subclassing. previously, using `TreeClass` as a base class is equivalent to decorating the class with `dataclasses.dataclass`, however this is a bit challenging to understand as demonstrated in the next example:

python
import pytreeclass as tc
import dataclasses as dc

class A(tc.TreeClass):
def ___init__(self, a:int):
self.a = a

class B(A):
...



When instantiating `B(a=...)`, an error will be raised, because using `TreeClass` is equivalent of decorating all classes with `dataclass`, which synthesize the `__init__` method based on the fields.
Since no fields (e.g. type hinted values) then the synthesized `__init__` method .

The previous code is equivalent to this code.

python
dc.dataclass
class A:
def __init__(self, a:int):
self.a = a
dc.dataclass
class B:
...


2) `dataclass_transform` does not play nicely with user created `__init__` see [1](https://github.com/microsoft/pyright/issues/4738), [2](https://github.com/python/typing/discussions/1187)


`leafwise_transform` is decoupled from `TreeClass`.

instead decorate the class with `pytreeclass.leafwise`.

0.4

Changes

1) User-provided `re.Pattern` is used to match keys with regex pattern instead of using `RegexKey`

<details>

Example:

python
import pytreeclass as tc
import re

tree = {"l1":1, "l2":2, "b":3}
tree = tc.AtIndexer(tree)
tree.at[re.compile("l.*")].get()
{'b': None, 'l1': 1, 'l2': 2}

</details>

Deprecations
1) `RegexKey` is deprecated. use `re` compiled patterns instead.
2) `tree_indent` is deprecated. use `tree_diagram(tree).replace(...)` to replace the edges characters with spaces.

New features

1) Add `tree_mask`, `tree_unmask` to freeze/unfreeze tree leaves based on a callable/boolean pytree mask. defaults to masking non-inexact types by frozen wrapper.
<details>

Example: Pass non-`jax` types through `jax` transformation without error.

python
pass non-differentiable values to `jax.grad`
import pytreeclass as tc
import jax
jax.grad
def square(tree):
tree = tc.tree_unmask(tree)
return tree[0]**2
tree = (1., 2) contains a non-differentiable node
square(tc.tree_mask(tree))
(Array(2., dtype=float32, weak_type=True), 2)


</details>



2) Support extending match keys by adding abstract base class `BaseKey`. check docstring for example


3) Support multi-index by any acceptable form. e.g. boolean pytree, key, int, or `BaseKey` instance

<details>


Example:

python

import pytreeclass as tc
tree = {"l1":1, "l2":2, "b":3}
tree = tc.AtIndexer(tree)
tree.at["l1","l2"].get()
{'b': None, 'l1': 1, 'l2': 2}


</details>


4) add `scan` to `AtIndexer` to carry a state while applying a function.

<details>

Example:

python

import pytreeclass as tc
def scan_func(leaf, state):
increase the state by 1 for each function call
return leaf**2, state+1

tree = {"l1": 1, "l2": 2, "b": 3}
tree = tc.AtIndexer(tree)
tree, state = tree.at["l1", "l2"].scan(scan_func, 0)
state
2
tree
{'b': 3, 'l1': 1, 'l2': 4}


</details>


5) `tree_summary` improvements.

- Add size column to `tree_summary`.
- add `def_count` to dispatch count rule for type.
- add `def_size` to dispatch size rule for type.
- add `def_type` to dispatch type display.

<details>

Example:

python

import pytreeclass as tc
import jax.numpy as jnp

x = jnp.ones((5, 5))

print(tc.tree_summary([1, 2, 3, x]))
┌────┬────────┬─────┬───────┐
│Name│Type │Count│Size │
├────┼────────┼─────┼───────┤
│[0] │int │1 │ │
├────┼────────┼─────┼───────┤
│[1] │int │1 │ │
├────┼────────┼─────┼───────┤
│[2] │int │1 │ │
├────┼────────┼─────┼───────┤
│[3] │f32[5,5]│25 │100.00B│
├────┼────────┼─────┼───────┤
│Σ │list │28 │100.00B│
└────┴────────┴─────┴───────┘

make list display its number of elements
in the type row
tc.tree_summary.def_type(list)
def _(_: list) -> str:
return f"List[{len(_)}]"

print(tc.tree_summary([1, 2, 3, x]))
┌────┬────────┬─────┬───────┐
│Name│Type │Count│Size │
├────┼────────┼─────┼───────┤
│[0] │int │1 │ │
├────┼────────┼─────┼───────┤
│[1] │int │1 │ │
├────┼────────┼─────┼───────┤
│[2] │int │1 │ │
├────┼────────┼─────┼───────┤
│[3] │f32[5,5]│25 │100.00B│
├────┼────────┼─────┼───────┤
│Σ │List[4] │28 │100.00B│
└────┴────────┴─────┴───────┘



</details>


6) Export pytrees to dot language using `tree_graph`

<details>

python
define custom style for a node by dispatching on the value
the defined function should return a dict of attributes
that will be passed to graphviz.
import pytreeclass as tc
tree = [1, 2, dict(a=3)]
tc.tree_graph.def_nodestyle(list)
def _(_) -> dict[str, str]:
return dict(shape="circle", style="filled", fillcolor="lightblue")
dot_graph = graphviz.Source(tc.tree_graph(tree))
dot_graph


![image](https://github.com/ASEM000/pytreeclass/assets/48389287/1d5168f0-2696-4d46-bdec-5338b0619605)

7) Add variable position arguments and variable keyword arguments to `tc.field` `kind`

<details>

python
import pytreeclass as tc


class Tree(tc.TreeClass):
a: int = tc.field(kind="VAR_POS")
b: int = tc.field(kind="POS_ONLY")
c: int = tc.field(kind="VAR_KW")
d: int
e: int = tc.field(kind="KW_ONLY")


Tree.__init__
<function __main__.Tree.__init__(self, b: int, /, d: int, *a: int, e: int, **c: int) -> None>

</details>


This release introduces lots of `functools.singledispatch` usage, to enable the greater customization.
- `{freeze,unfreeze,is_nondiff}.def_type` to define how to `freeze` a type, how to unfreeze it and whether it is considred nondiff or not. these rules are used by these functions and `tree_mask`/`tree_unmask`.
- `tree_graph.def_nodestyle`, `tree_summary.def_{count,type,size}` for pretty printing customization
- `BaseKey.def_alias` to define type alias usage inside `AtIndexer`/`.at`
- Internally, most of the pretty printing is using dispatching to define repr/str rules for each instance type.

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