fp8_buffer.py 11.5 KB
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# Copyright (c) 2022-2024, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
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#
# See LICENSE for license information.
"""FP8 meta buffer for FP8 amax reduction"""

from abc import ABC, abstractmethod
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from collections import deque
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from functools import partial
import os
from typing import Dict, Any, List, Union

import numpy as np
import paddle
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import transformer_engine_paddle as tex
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from .constants import dist_group_type, RecomputeFunctionNames
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class FP8MetaBufferBase(ABC):
    """
    A global buffer that holds FP8 meta for reduction across trainers.
    """

    def __init__(self):
        self._data = {}
        self._buffer_delete_key = None
        self._amax_reduce_wait_func = None
        self._dp_amax_reduce_interval = None
        self._dp_amax_reduce_idx = 0

    @staticmethod
    @abstractmethod
    def _get_meta_tensor_key():
        """Returns scaling key in `fp8_meta`."""

    @staticmethod
    @abstractmethod
    def _get_buffer_position_key():
        """Returns module position key in `fp8_meta`."""

    @staticmethod
    @abstractmethod
    def _get_autocast_key():
        """Returns autocast id key in `fp8_meta`."""

    def _get_amax_buffer_key(self, fp8_meta: Dict[str, Any]) -> str:
        """Return a key in `_data` for the AMAX storage."""
        return f"AMAX_{fp8_meta[self._get_autocast_key()]}"

    def _execute_deletion(self) -> None:
        """Delete the key from global amax buffer."""
        if (self._buffer_delete_key is not None and self._buffer_delete_key in self._data):
            del self._data[self._buffer_delete_key]

    def _wait_handle_and_split(
        self,
        contiguous_amax: paddle.Tensor,
        chunk_sizes: List[int],
        amax_buffer_key: str,
        wait_handle: Union[bool, None],
    ) -> None:
        """Wait for amax reduction to finish and then copy reduced amax to buffer"""
        if wait_handle is not None:
            wait_handle.wait()
        self._data[amax_buffer_key] = list(contiguous_amax.split(chunk_sizes))

    def _global_amax_reduction(
        self,
        fp8_meta: Dict[str, Any],
        tp_group: dist_group_type,
        tp_size: int,
    ) -> None:
        """Concatenate, reduce, and split amaxes in the global buffer."""

        def _reduce_tensor_across_group_op_max(tensor, group, sync_op):
            if paddle.distributed.is_initialized():
                wait_handle = paddle.distributed.all_reduce(
                    tensor,
                    op=paddle.distributed.ReduceOp.MAX,
                    group=group,
                    sync_op=sync_op,
                )
                return wait_handle
            return None

        amax_buffer_key = self._get_amax_buffer_key(fp8_meta)
        # Key already deleted.
        if amax_buffer_key not in self._data:
            return None

        # Reduce AMAX in DP-domain at an interval.
        if self._dp_amax_reduce_interval is None:
            self._dp_amax_reduce_interval = int(os.getenv("NVTE_DP_AMAX_REDUCE_INTERVAL", "1"))

        tp_amax_reduce = False
        if self._dp_amax_reduce_idx == 0:
            reduce_group = fp8_meta["fp8_group"]
        else:
            tp_amax_reduce = True
        self._dp_amax_reduce_idx = (self._dp_amax_reduce_idx + 1) % self._dp_amax_reduce_interval

        if tp_amax_reduce:
            if tp_size > 1:
                reduce_group = tp_group
            else:
                return None

        chunk_sizes = [x.shape[0] for x in self._data[amax_buffer_key]]
        contiguous_amax = paddle.concat(self._data[amax_buffer_key])

        wait_handle = _reduce_tensor_across_group_op_max(
            contiguous_amax,
            reduce_group,
            not fp8_meta["async_amax_reduction"],
        )

        return partial(
            self._wait_handle_and_split,
            contiguous_amax,
            chunk_sizes,
            amax_buffer_key,
            wait_handle,
        )

    def add_amax(self, fp8_meta: Dict[str, Any]) -> None:
        """Append `amax_history` to global buffer."""
        buffer_key = self._get_amax_buffer_key(fp8_meta)
        fp8_meta_tensor_key = self._get_meta_tensor_key()
        buffer_position_key = self._get_buffer_position_key()

        if buffer_key not in self._data:
            self._data[buffer_key] = [fp8_meta[fp8_meta_tensor_key].amax_history[0]]
        else:
            self._data[buffer_key].append(fp8_meta[fp8_meta_tensor_key].amax_history[0])

        if buffer_position_key not in fp8_meta:
            fp8_meta[buffer_position_key] = len(self._data[buffer_key]) - 1

        # Catch incorrect fp8_autocast usage.
        assert fp8_meta[buffer_position_key] == len(self._data[buffer_key]) - 1, \
            "Same module is being invoked more than once inside an `fp8_autocast` " \
            "region when using FP8 with amax reduction. This behavior is currently " \
            "unsupported. For more details and correct usage, please see " \
            "https://github.com/NVIDIA/TransformerEngine/pull/93."

    def copy_amax_from_buffer(self, fp8_meta: Dict[str, Any]) -> None:
        """Populate current amax with the correct location from buffer."""
        fp8_meta_tensor_key = self._get_meta_tensor_key()
        buffer_position_key = self._get_buffer_position_key()
        if buffer_position_key not in fp8_meta:
            return

        amax_buffer_key = self._get_amax_buffer_key(fp8_meta)
        assert amax_buffer_key in self._data, "TE internal error."

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        # Copy amax to amax_history[0]
        tex.update_latest_amax_history_inplace(
            _history=fp8_meta[fp8_meta_tensor_key].amax_history,
            amax=self._data[amax_buffer_key][fp8_meta[buffer_position_key]])
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    def set_for_deletion(self, fp8_meta: Dict[str, Any]) -> None:
        """Delete this amax key from global buffer during autocast end."""
        if self._get_autocast_key() not in fp8_meta:
            return
        self._buffer_delete_key = self._get_amax_buffer_key(fp8_meta)

    def get_amax_reduce_handle(self) -> Union[bool, None]:
        """Return AMAX reduction wait handle."""
        return self._amax_reduce_handle

    def wait(self) -> None:
        """Wait for reduced amax to be available in buffer."""
        if self._amax_reduce_wait_func is not None:
            self._amax_reduce_wait_func()    # pylint: disable=not-callable
            self._amax_reduce_wait_func = None

    def to_numpy(self) -> Dict[str, List[np.array]]:
        """Convert to numpy arrays"""
        out = {}
        for k, v in self._data.items():
            out[k] = [tensor.numpy() for tensor in v]
        return out

    def from_numpy(self, buffer: Dict[str, np.array]) -> None:
        """Set buffer values from numpy arrays"""
        for k, v in buffer.items():
            self._data[k] = [paddle.to_tensor(arr) for arr in v]


class FP8MetaFwdBuffer(FP8MetaBufferBase):
    """FP8Meta Buffer for forward"""

    @staticmethod
    def _get_meta_tensor_key() -> str:
        """Returns scaling key in `fp8_meta`."""
        return "scaling_fwd"

    @staticmethod
    def _get_buffer_position_key() -> str:
        """Returns module position key in `fp8_meta`."""
        return "global_fp8_buffer_pos_fwd"

    @staticmethod
    def _get_autocast_key() -> str:
        """Returns module position key in `fp8_meta`."""
        return "autocast_id_fwd"

    def set_for_amax_reduction(
        self,
        fp8_meta: Dict[str, Any],
        tp_group: dist_group_type,
        tp_size: int,
    ) -> None:
        """Sets up the function to call during autocast exit."""
        self._amax_global_reduce_func = partial(
            self._global_amax_reduction,
            fp8_meta,
            tp_group,
            tp_size,
        )

    def finalize(self) -> None:
        """
        Called at FP8 autocast end.
        Performs AMAX reduction and delete unused buffer entries.
        """
        if hasattr(self, '_amax_global_reduce_func') and callable(self._amax_global_reduce_func):
            self._amax_reduce_wait_func = self._amax_global_reduce_func()
        self._execute_deletion()


class FP8MetaBwdBuffer(FP8MetaBufferBase):
    """FP8Meta Buffer for backward"""

    @staticmethod
    def _get_meta_tensor_key() -> str:
        """Returns scaling key in `fp8_meta`."""
        return "scaling_bwd"

    @staticmethod
    def _get_buffer_position_key() -> str:
        """Returns module position key in `fp8_meta`."""
        return "global_fp8_buffer_pos_bwd"

    @staticmethod
    def _get_autocast_key() -> str:
        """Returns module position key in `fp8_meta`."""
        return "autocast_id_bwd"

    def finalize(
        self,
        fp8_meta: Dict[str, Any],
        tp_group: dist_group_type,
        tp_size: int,
    ) -> None:
        """
        Called at FP8 autocast end in backward.
        Performs AMAX reduction and delete unused buffer entries.
        """
        self._amax_reduce_wait_func = self._global_amax_reduction(fp8_meta, tp_group, tp_size)
        self._execute_deletion()
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class FP8RecomputeBuffer:
    """Buffer used to hold FP8 meta tensors for recompute"""

    def __init__(self):
        self._data = []

    @staticmethod
    def get_buffer_position_key():
        """Returns the key (in fp8_meta) for recompute buffer position"""
        return 'recompute_buffer_pos'

    def stash_fp8_meta_tensors(self, fp8_meta: Dict[str, Any]) -> None:
        """Stash the scaling factors and amaxes for recompute"""
        buffer_position_key = self.get_buffer_position_key()

        to_copy = [
            fp8_meta["scaling_fwd"].amax_history.clone(),
            fp8_meta["scaling_fwd"].scale.clone(),
            fp8_meta["scaling_fwd"].scale_inv.clone(),
        ]

        if buffer_position_key in fp8_meta:
            self._data[fp8_meta[buffer_position_key]].append(to_copy)
        else:
            self._data.append(deque())
            self._data[-1].append(to_copy)
            fp8_meta[buffer_position_key] = len(self._data) - 1

    def retrieve_fp8_meta_tensors(self, fp8_meta: Dict[str, Any]) -> None:
        """Switch to the previously saved scaling factors and amaxes"""
        # Store updated amaxes and scales from phase 1 post forward.
        fp8_meta["updated_amax_history_fwd"] = fp8_meta["scaling_fwd"].amax_history
        fp8_meta["updated_scale_fwd"] = fp8_meta["scaling_fwd"].scale
        fp8_meta["updated_scale_inv_fwd"] = fp8_meta["scaling_fwd"].scale_inv

        # Retrieve stashed amaxes and scales from phase 1 pre forward.
        buffer_position_key = self.get_buffer_position_key()
        stashed_fp8_meta = self._data[fp8_meta[buffer_position_key]].popleft()

        # Replace amaxes and scales with stashed values for phase 2 forward
        fp8_meta["scaling_fwd"].amax_history = stashed_fp8_meta[0]
        fp8_meta["scaling_fwd"].scale = stashed_fp8_meta[1]
        fp8_meta["scaling_fwd"].scale_inv = stashed_fp8_meta[2]

    @staticmethod
    def restore_fp8_meta_tensors(fp8_meta: Dict[str, Any]) -> None:
        """Restore latest scaling factors and amaxes after recompute forward run."""
        assert "updated_amax_history_fwd" in fp8_meta, "Recompute internal error." \
            " If you are not using recompute, please check if" \
            " the forward function is called from one of these functions: " \
            f"{RecomputeFunctionNames}. If so, consider change the function name " \
            "or set NVTE_DISABLE_RECOMPUTE=1."
        fp8_meta["scaling_fwd"].amax_history = fp8_meta["updated_amax_history_fwd"]
        fp8_meta["scaling_fwd"].scale = fp8_meta["updated_scale_fwd"]
        fp8_meta["scaling_fwd"].scale_inv = fp8_meta["updated_scale_inv_fwd"]