Source code for lightning.fabric.plugins.precision.xla

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# Licensed under the Apache License, Version 2.0 (the "License");
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#     http://www.apache.org/licenses/LICENSE-2.0
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import os
from typing import Any, Literal

import torch
from typing_extensions import get_args, override

from lightning.fabric.accelerators.xla import _XLA_AVAILABLE
from lightning.fabric.plugins.precision.precision import Precision
from lightning.fabric.utilities.types import Optimizable

_PRECISION_INPUT = Literal["32-true", "16-true", "bf16-true"]


[docs]class XLAPrecision(Precision): """Plugin for training with XLA. Args: precision: Full precision (32-true) or half precision (16-true, bf16-true). Raises: ValueError: If unsupported ``precision`` is provided. """ def __init__(self, precision: _PRECISION_INPUT) -> None: if not _XLA_AVAILABLE: raise ModuleNotFoundError(str(_XLA_AVAILABLE)) supported_precision = get_args(_PRECISION_INPUT) if precision not in supported_precision: raise ValueError( f"`precision={precision!r})` is not supported in XLA." f" `precision` must be one of: {supported_precision}." ) self.precision = precision if precision == "16-true": os.environ["XLA_USE_F16"] = "1" self._desired_dtype = torch.float16 elif precision == "bf16-true": os.environ["XLA_USE_BF16"] = "1" self._desired_dtype = torch.bfloat16 else: self._desired_dtype = torch.float32
[docs] @override def optimizer_step( self, optimizer: Optimizable, **kwargs: Any, ) -> Any: import torch_xla.core.xla_model as xm # you always want to `xm.mark_step()` after `optimizer.step` for better performance, so we set `barrier=True` return xm.optimizer_step(optimizer, optimizer_args=kwargs, barrier=True)
[docs] @override def teardown(self) -> None: os.environ.pop("XLA_USE_BF16", None) os.environ.pop("XLA_USE_F16", None)