Files
wehub-resource-sync 85742ab165
CPU Test / Lint - next (push) Waiting to run
Dashboard / Chromatic (push) Waiting to run
CPU Test / Lint - fast (push) Waiting to run
CPU Test / Build documentation (push) Waiting to run
CPU Test / Test (Store, legacy, Python 3.10) (push) Waiting to run
CPU Test / Test (Utilities, legacy, Python 3.10) (push) Waiting to run
CPU Test / Test (Weave, legacy, Python 3.10) (push) Waiting to run
CPU Test / Test (AgentOps, stable, Python 3.11) (push) Waiting to run
CPU Test / Test (LLM proxy, stable, Python 3.11) (push) Waiting to run
CPU Test / Test (Others, stable, Python 3.11) (push) Waiting to run
CPU Test / Test (Store, stable, Python 3.11) (push) Waiting to run
CPU Test / Test (Utilities, stable, Python 3.11) (push) Waiting to run
CPU Test / Test (Weave, stable, Python 3.11) (push) Waiting to run
CPU Test / Test (AgentOps, stable, Python 3.12) (push) Waiting to run
CPU Test / Test (LLM proxy, stable, Python 3.12) (push) Waiting to run
CPU Test / Test (Others, stable, Python 3.12) (push) Waiting to run
CPU Test / Test (Store, stable, Python 3.12) (push) Waiting to run
CPU Test / Test (Utilities, stable, Python 3.12) (push) Waiting to run
CPU Test / Test (Weave, stable, Python 3.12) (push) Waiting to run
CPU Test / Test (AgentOps, latest, Python 3.13) (push) Waiting to run
CPU Test / Test (LLM proxy, latest, Python 3.13) (push) Waiting to run
CPU Test / Test (Others, latest, Python 3.13) (push) Waiting to run
CPU Test / Test (Store, latest, Python 3.13) (push) Waiting to run
CPU Test / Lint - slow (push) Waiting to run
CPU Test / Lint - JavaScript (push) Waiting to run
CPU Test / Test (AgentOps, legacy, Python 3.10) (push) Waiting to run
CPU Test / Test (LLM proxy, legacy, Python 3.10) (push) Waiting to run
CPU Test / Test (Others, legacy, Python 3.10) (push) Waiting to run
CPU Test / Test (Utilities, latest, Python 3.13) (push) Waiting to run
CPU Test / Test (Weave, latest, Python 3.13) (push) Waiting to run
CPU Test / Test (JavaScript) (push) Waiting to run
Deploy Documentation / deploy (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 12:44:17 +08:00

265 lines
9.0 KiB
Python

# Copyright (c) Microsoft. All rights reserved.
from __future__ import annotations
import functools
import inspect
from typing import (
TYPE_CHECKING,
Any,
Awaitable,
Dict,
Generic,
Literal,
Optional,
Protocol,
TypeVar,
Union,
cast,
overload,
)
from agentlightning.adapter import TraceAdapter
from agentlightning.store.base import LightningStore
from agentlightning.types import Dataset, NamedResources
if TYPE_CHECKING:
from agentlightning.llm_proxy import LLMProxy
from .base import Algorithm
# Algorithm function signature types
# We've missed a lot of combinations here.
# Let's add them in future.
class AlgorithmFuncSyncFull(Protocol):
def __call__(
self,
*,
store: LightningStore,
train_dataset: Optional[Dataset[Any]],
val_dataset: Optional[Dataset[Any]],
llm_proxy: Optional[LLMProxy],
adapter: Optional[TraceAdapter[Any]],
initial_resources: Optional[NamedResources],
) -> None: ...
class AlgorithmFuncSyncOnlyStore(Protocol):
def __call__(self, *, store: LightningStore) -> None: ...
class AlgorithmFuncSyncOnlyDataset(Protocol):
def __call__(self, *, train_dataset: Optional[Dataset[Any]], val_dataset: Optional[Dataset[Any]]) -> None: ...
class AlgorithmFuncAsyncFull(Protocol):
def __call__(
self,
*,
store: LightningStore,
train_dataset: Optional[Dataset[Any]],
val_dataset: Optional[Dataset[Any]],
llm_proxy: Optional[LLMProxy],
adapter: Optional[TraceAdapter[Any]],
initial_resources: Optional[NamedResources],
) -> Awaitable[None]: ...
class AlgorithmFuncAsyncOnlyStore(Protocol):
def __call__(self, *, store: LightningStore) -> Awaitable[None]: ...
class AlgorithmFuncAsyncOnlyDataset(Protocol):
def __call__(
self, *, train_dataset: Optional[Dataset[Any]], val_dataset: Optional[Dataset[Any]]
) -> Awaitable[None]: ...
AlgorithmFuncAsync = Union[AlgorithmFuncAsyncOnlyStore, AlgorithmFuncAsyncOnlyDataset, AlgorithmFuncAsyncFull]
AlgorithmFuncSync = Union[AlgorithmFuncSyncOnlyStore, AlgorithmFuncSyncOnlyDataset, AlgorithmFuncSyncFull]
class AlgorithmFuncSyncFallback(Protocol):
def __call__(self, *args: Any, **kwargs: Any) -> Any: ...
class AlgorithmFuncAsyncFallback(Protocol):
def __call__(self, *args: Any, **kwargs: Any) -> Awaitable[Any]: ...
AlgorithmFuncSyncLike = Union[AlgorithmFuncSync, AlgorithmFuncSyncFallback]
AlgorithmFuncAsyncLike = Union[AlgorithmFuncAsync, AlgorithmFuncAsyncFallback]
AlgorithmFunc = Union[AlgorithmFuncSyncLike, AlgorithmFuncAsyncLike]
AsyncFlag = Literal[True, False]
AF = TypeVar("AF", bound=AsyncFlag)
class FunctionalAlgorithm(Algorithm, Generic[AF]):
"""An algorithm wrapper built from a callable implementation.
Functional algorithms let you provide an ordinary function instead of
subclassing [`Algorithm`][agentlightning.Algorithm]. The wrapper inspects
the callable signature to supply optional dependencies
such as the store, adapter, and LLM proxy.
"""
@overload
def __init__(self: "FunctionalAlgorithm[Literal[False]]", algorithm_func: AlgorithmFuncSyncLike) -> None: ...
@overload
def __init__(self: "FunctionalAlgorithm[Literal[True]]", algorithm_func: AlgorithmFuncAsyncLike) -> None: ...
def __init__(self, algorithm_func: Union[AlgorithmFuncSyncLike, AlgorithmFuncAsyncLike]) -> None:
"""Wrap a function that implements algorithm behaviour.
Args:
algorithm_func: Sync or async callable implementing the algorithm
contract. Arguments are detected automatically based on the
function signature.
"""
super().__init__()
self._algorithm_func = algorithm_func
self._sig = inspect.signature(algorithm_func)
self._is_async = inspect.iscoroutinefunction(algorithm_func)
# Copy function metadata to preserve type hints and other attributes
functools.update_wrapper(self, algorithm_func) # type: ignore
def is_async(self) -> bool:
return self._is_async
@overload
def run(
self: "FunctionalAlgorithm[Literal[False]]",
train_dataset: Optional[Dataset[Any]] = None,
val_dataset: Optional[Dataset[Any]] = None,
) -> None: ...
@overload
def run(
self: "FunctionalAlgorithm[Literal[True]]",
train_dataset: Optional[Dataset[Any]] = None,
val_dataset: Optional[Dataset[Any]] = None,
) -> Awaitable[None]: ...
def __call__(self, *args: Any, **kwargs: Any) -> Any:
return self._algorithm_func(*args, **kwargs) # type: ignore
def run(
self,
train_dataset: Optional[Dataset[Any]] = None,
val_dataset: Optional[Dataset[Any]] = None,
) -> Union[None, Awaitable[None]]:
"""Execute the wrapped function with injected dependencies.
Args:
train_dataset: Optional training dataset passed through when the
callable declares a `train_dataset` parameter.
val_dataset: Optional validation dataset passed through when the
callable declares a `val_dataset` parameter.
Returns:
None for sync callables or an awaitable when the callable is async.
Raises:
TypeError: If a dataset is provided but the function signature does
not accept the corresponding argument.
"""
kwargs: Dict[str, Any] = {}
if "store" in self._sig.parameters:
kwargs["store"] = self.get_store()
if "adapter" in self._sig.parameters:
kwargs["adapter"] = self.get_adapter()
if "llm_proxy" in self._sig.parameters:
kwargs["llm_proxy"] = self.get_llm_proxy()
if "initial_resources" in self._sig.parameters:
kwargs["initial_resources"] = self.get_initial_resources()
if "train_dataset" in self._sig.parameters:
kwargs["train_dataset"] = train_dataset
elif train_dataset is not None:
raise TypeError(
f"train_dataset is provided but not supported by the algorithm function: {self._algorithm_func}"
)
if "val_dataset" in self._sig.parameters:
kwargs["val_dataset"] = val_dataset
elif val_dataset is not None:
raise TypeError(
f"val_dataset is provided but not supported by the algorithm function: {self._algorithm_func}"
)
# both sync and async functions can be called with the same signature
result = self._algorithm_func(**kwargs) # type: ignore[misc]
if self._is_async:
return cast(Awaitable[None], result)
return None
@overload
def algo(func: AlgorithmFuncAsync) -> FunctionalAlgorithm[Literal[True]]: ...
@overload
def algo(func: AlgorithmFuncAsyncFallback) -> FunctionalAlgorithm[Any]: ...
@overload
def algo(func: AlgorithmFuncSync) -> FunctionalAlgorithm[Literal[False]]: ...
@overload
def algo(func: AlgorithmFuncSyncFallback) -> FunctionalAlgorithm[Any]: ...
def algo(
func: Union[
AlgorithmFuncSync,
AlgorithmFuncAsync,
AlgorithmFuncSyncFallback,
AlgorithmFuncAsyncFallback,
],
) -> Union[FunctionalAlgorithm[Literal[False]], FunctionalAlgorithm[Literal[True]]]:
"""Convert a callable into a [`FunctionalAlgorithm`][agentlightning.algorithm.decorator.FunctionalAlgorithm].
The decorator inspects the callable signature to decide which dependencies
to inject at runtime, enabling concise algorithm definitions that still
leverage the full training runtime.
Args:
func: Function implementing the algorithm logic. May be synchronous or
asynchronous. The function can expect all of, or a subset of the following parameters:
- `store`: [`LightningStore`][agentlightning.store.base.LightningStore],
- `train_dataset`: [`Dataset`][agentlightning.Dataset],
- `val_dataset`: [`Dataset`][agentlightning.Dataset],
- `llm_proxy`: [`LLMProxy`][agentlightning.LLMProxy],
- `adapter`: [`TraceAdapter`][agentlightning.TraceAdapter],
- `initial_resources`: [`NamedResources`][agentlightning.NamedResources],
If the function does not expect a parameter, the wrapper will not inject it into the call.
Using `*args` and `**kwargs` will not work and no parameters will be injected.
Returns:
FunctionalAlgorithm that proxies the callable while exposing the
`Algorithm` interface.
Examples:
```python
from agentlightning.algorithm.decorator import algo
@algo
def batching_algorithm(*, store, train_dataset, val_dataset):
for sample in train_dataset:
store.enqueue_rollout(input=sample, mode="train")
@algo
async def async_algorithm(*, store, train_dataset=None, val_dataset=None):
await store.enqueue_rollout(input={"prompt": "hello"}, mode="train")
```
"""
return FunctionalAlgorithm(func)