rebalance_execute.py 14.6 KB
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# SPDX-License-Identifier: Apache-2.0
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# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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"""
The actual execution of the rearrangement.

This involves the exchange of expert weights between GPUs.
"""

from collections.abc import Iterable, MutableSequence, Sequence
from functools import partial
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from typing import Optional
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import torch
from torch.distributed import (P2POp, ProcessGroup, all_gather,
                               batch_isend_irecv, get_global_rank)


def idx_local_to_global(
    local_idx: int,
    local_cnt: int,
    ep_rank: int,
) -> int:
    """
    Convert a local expert index to a global expert index.
    """
    return ep_rank * local_cnt + local_idx


def idx_global_to_local(
    global_idx: int,
    local_cnt: int,
    ep_rank: int,
) -> int:
    """
    Convert a global expert index to a local expert index.
    """
    return global_idx - ep_rank * local_cnt


def global_idx_to_rank(
    global_idx: int,
    local_cnt: int,
) -> int:
    """
    Convert a global expert index to a rank index.
    """
    return global_idx // local_cnt


def get_ep_ranks_with_expert(
    idx: int,
    num_local_experts: int,
    old_indices: Sequence[int],
    new_indices: Sequence[int],
) -> tuple[MutableSequence[int], MutableSequence[int]]:
    """
    Get the ranks of the experts that need to be exchanged.

    Args:
        idx: The index of the expert.
        num_local_experts: The number of local experts.
        old_indices: The old indices of the experts.
        new_indices: The new indices of the experts.

    Returns:
        A tuple of two lists:
        - The ranks of the experts that need to be sent.
        - The ranks of the experts that need to be received.
    """
    global2rank = partial(
        global_idx_to_rank,
        local_cnt=num_local_experts,
    )

    ranks_to_send: list[int] = []
    ranks_to_recv: list[int] = []

    for i, e in enumerate(old_indices):
        if e == idx:
            rank = global2rank(i)
            if not ranks_to_send or ranks_to_send[-1] != rank:
                ranks_to_send.append(rank)

    for i, e in enumerate(new_indices):
        if e == idx:
            rank = global2rank(i)
            if not ranks_to_recv or ranks_to_recv[-1] != rank:
                ranks_to_recv.append(rank)

    # Remove those ranks that can get this expert locally.
    ranks_to_send_set = set(ranks_to_send)
    ranks_to_recv_actual = [
        rank for rank in ranks_to_recv if rank not in ranks_to_send_set
    ]

    return ranks_to_send, ranks_to_recv_actual


def shuffle_layer(
    num_local_experts: int,
    ep_rank: int,
    old_indices: Sequence[int],
    new_indices: Sequence[int],
    expert_weights: Iterable[torch.Tensor],
    expert_weights_buffer: Sequence[torch.Tensor],
    ep_group: ProcessGroup,
) -> None:
    """
    Perform expert weights rearrangement of one layer.
    """
    local2global = partial(
        idx_local_to_global,
        local_cnt=num_local_experts,
        ep_rank=ep_rank,
    )

    # 0. Do nothing for experts that did not change.
    is_unchanged = [
        old_indices[local2global(i)] == new_indices[local2global(i)]
        for i in range(num_local_experts)
    ]

    # 1. Perform weight copy inside the local rank.
    is_received_locally = is_unchanged[:]
    for src in range(num_local_experts):
        src_global = local2global(src)
        for dst in range(num_local_experts):
            dst_global = local2global(dst)
            if is_received_locally[dst]:
                continue
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            if old_indices[src_global] == -1 or new_indices[dst_global] == -1:
                continue
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            if old_indices[src_global] == new_indices[dst_global]:
                is_received_locally[dst] = True
                for weight, buffer in zip(expert_weights,
                                          expert_weights_buffer):
                    buffer[dst].copy_(weight[src])

    p2p_ops: list[P2POp] = []

    # 2. Initiate sending of weights.
    experts_send_loc: dict[int, int] = {}
    for src in range(num_local_experts):
        expert = old_indices[local2global(src)]
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        if expert == -1:
            continue
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        if expert in experts_send_loc:
            continue
        experts_send_loc[expert] = src

    # We need to sort here to match send/recv
    for expert, src in sorted(experts_send_loc.items()):
        ranks_to_send, ranks_to_recv = get_ep_ranks_with_expert(
            expert,
            num_local_experts,
            old_indices,
            new_indices,
        )

        # Calculate the ranks to send by this rank
        num_dst_per_sender = len(ranks_to_recv) // len(ranks_to_send)
        sender_pos = ranks_to_send.index(ep_rank)
        recv_begin = sender_pos * num_dst_per_sender
        recv_end = recv_begin + num_dst_per_sender
        recv_ranks = ranks_to_recv[recv_begin:recv_end]

        # Tackle remainders
        remainder_start = len(ranks_to_send) * num_dst_per_sender
        recver_pos = remainder_start + sender_pos
        if recver_pos < len(ranks_to_recv):
            recv_ranks.append(ranks_to_recv[recver_pos])

        for dst in recv_ranks:
            dst_global = get_global_rank(ep_group, dst)
            p2p_ops += [
                P2POp(
                    torch.distributed.isend,
                    weight[src],
                    dst_global,
                ) for weight in expert_weights
            ]

    # 3. Initiate receiving of weights.
    experts_recv_loc: dict[int, int] = {}
    for dst in range(num_local_experts):
        if is_received_locally[dst]:
            continue
        expert = new_indices[local2global(dst)]
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        if expert == -1:
            continue
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        if expert in experts_recv_loc:
            continue
        experts_recv_loc[expert] = dst

    # We need to sort here to match send/recv
    for expert, dst in sorted(experts_recv_loc.items()):
        ranks_to_send, ranks_to_recv = get_ep_ranks_with_expert(
            expert,
            num_local_experts,
            old_indices,
            new_indices,
        )

        # Calculate the rank to recv by this rank
        num_dst_per_sender = len(ranks_to_recv) // len(ranks_to_send)
        recver_pos = ranks_to_recv.index(ep_rank)
        remainder_start = len(ranks_to_send) * num_dst_per_sender
        if recver_pos < remainder_start:
            src = ranks_to_send[recver_pos // num_dst_per_sender]
        else:
            src = ranks_to_send[recver_pos - remainder_start]

        src_global = get_global_rank(ep_group, src)
        p2p_ops += [
            P2POp(
                torch.distributed.irecv,
                weight[dst],
                src_global,
            ) for weight in expert_weights_buffer
        ]

    # 4. Execute the P2P operations. The real communication happens here.
    if p2p_ops:
        reqs = batch_isend_irecv(p2p_ops)
        for req in reqs:
            req.wait()

    # 5. Copy the weights from the buffer back to the original weights.
    for dst in range(num_local_experts):
        if is_unchanged[dst]:
            continue
        if is_received_locally[dst]:
            for weight, buffer in zip(expert_weights, expert_weights_buffer):
                weight[dst].copy_(buffer[dst])
        else:
            expert = new_indices[local2global(dst)]
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            if expert == -1:
                continue
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            src = experts_recv_loc[expert]
            for weight, buffer in zip(expert_weights, expert_weights_buffer):
                weight[dst].copy_(buffer[src])


def rearrange_expert_weights_inplace(
    old_global_expert_indices: torch.Tensor,
    new_global_expert_indices: torch.Tensor,
    expert_weights: Sequence[Iterable[torch.Tensor]],
    ep_group: ProcessGroup,
    is_profile: bool = False,
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    rank_mapping: Optional[dict[int, int]] = None,
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) -> None:
    """
    Rearranges the expert weights in place according to the new expert indices.

    The value of the indices arguments are logical indices of the experts,
    while keys are physical.

    Args:
        old_global_expert_indices: Shape (num_moe_layers, num_physical_experts).
        new_global_expert_indices: Shape (num_moe_layers, num_physical_experts).
        expert_weights: A sequence of shape (num_moe_layers)(weight_count)
            of tensors of shape (num_local_physical_experts, hidden_size_i).
            For example, a linear layer may have up and down projection,
            so weight_count = 2. Each weight's hidden size can be different.
        ep_group: The device process group for expert parallelism.
        is_profile (bool): If `True`, do not perform any actual weight copy.
            This is used during profile run, where we only perform dummy
            communications to reserve enough memory for the buffers.
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        rank_mapping: A dictionary mapping old rank to new rank.
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    """
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    if rank_mapping is not None:
        if len(rank_mapping) == ep_group.size():
            # scale down
            new_global_expert_indices = \
                _map_new_expert_indices_with_rank_mapping(
                new_global_expert_indices,
                rank_mapping,
            )
        else:
            # scale up
            old_global_expert_indices = \
                _map_old_expert_indices_with_rank_mapping(
                old_global_expert_indices,
                rank_mapping,
                ep_group.size(),
            )

    assert old_global_expert_indices.shape[
        1] == new_global_expert_indices.shape[1]

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    num_moe_layers, num_physical_experts = old_global_expert_indices.shape
    assert len(expert_weights) == num_moe_layers

    num_local_physical_experts = next(iter(expert_weights[0])).shape[0]
    assert new_global_expert_indices.shape == (num_moe_layers,
                                               num_physical_experts)

    ep_rank = ep_group.rank()
    ep_size = ep_group.size()
    assert num_physical_experts == ep_size * num_local_physical_experts

    # A buffer to hold the expert weights in one layer during the exchange.
    # NOTE: Currently we assume the same weights across different layers
    # have the same shape.
    expert_weights_buffer = [torch.empty_like(w) for w in expert_weights[0]]

    if is_profile:
        # Maximum send size is to send all local experts to all ranks,
        # So we use a dummy `all_gather` to reserve enough communication buffer
        for weight, buffer in zip(expert_weights[0], expert_weights_buffer):
            # A `/dev/null`-like buffer to avoid real memory allocation
            dummy_recv_buffer = [buffer for _ in range(ep_size)]
            # NOTE(bowen): Needed this barrier to avoid OOM during actual
            # execution. I'm not very sure why this is needed
            torch.distributed.barrier()
            all_gather(
                dummy_recv_buffer,
                weight,
                group=ep_group,
            )
        return

    for layer in range(num_moe_layers):
        # NOTE(bowen): We need this synchronize to run, but I don't know why.
        # If you figure out the reason, please let me know -- thank you!
        torch.cuda.synchronize()
        shuffle_layer(
            num_local_physical_experts,
            ep_rank,
            old_global_expert_indices[layer].tolist(),
            new_global_expert_indices[layer].tolist(),
            expert_weights[layer],
            expert_weights_buffer,
            ep_group,
        )


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def _map_old_expert_indices_with_rank_mapping(
    old_global_expert_indices: torch.Tensor,
    rank_mapping: dict[int, int],
    new_ep_size: int,
) -> torch.Tensor:
    """
    Map the old global expert indices to the new global expert indices.
    
    Args:
        old_global_expert_indices:
            Shape (num_layers, old_ep_size * num_local_physical_experts).
        rank_mapping: Mapping from old rank to new rank.
        new_ep_size: New expert parallelism size.
    
    Returns:
        Mapped expert indices with shape
        (num_layers, new_ep_size * num_local_physical_experts).
    """
    num_layers, old_num_physical_experts = old_global_expert_indices.shape
    assert rank_mapping, "Rank mapping is required"

    # Get sizes from parameters and rank_mapping
    old_ep_size = len(rank_mapping)
    num_local_physical_experts = old_num_physical_experts // old_ep_size
    new_num_physical_experts = new_ep_size * num_local_physical_experts

    # Create mapped tensor with new shape, initialized to -1
    mapped_expert_indices = torch.full(
        (num_layers, new_num_physical_experts),
        fill_value=-1,
        dtype=old_global_expert_indices.dtype,
        device=old_global_expert_indices.device,
    )

    # Handle rank mapping (scale up/down with rank changes)
    for old_rank in range(old_ep_size):
        new_rank = rank_mapping.get(old_rank)
        if new_rank is not None and new_rank >= 0 and new_rank < new_ep_size:
            # This old rank exists in the new configuration
            old_start_idx = old_rank * num_local_physical_experts
            old_end_idx = (old_rank + 1) * num_local_physical_experts
            new_start_idx = new_rank * num_local_physical_experts
            new_end_idx = (new_rank + 1) * num_local_physical_experts

            mapped_expert_indices[:, new_start_idx:new_end_idx] = \
                old_global_expert_indices[:, old_start_idx:old_end_idx]
        # If new_rank is None or >= new_ep_size, the experts remain -1
        # (scale down case)

    return mapped_expert_indices


def _map_new_expert_indices_with_rank_mapping(
    new_global_expert_indices: torch.Tensor,
    rank_mapping: dict[int, int],
) -> torch.Tensor:
    num_layers, new_num_physical_experts = new_global_expert_indices.shape
    assert rank_mapping, "Rank mapping is required"

    # Get sizes from parameters and rank_mapping
    old_ep_size = len(rank_mapping)
    new_ep_size = sum(new_rank != -1 for new_rank in rank_mapping.values())
    num_local_physical_experts = new_num_physical_experts // new_ep_size
    old_num_physical_experts = old_ep_size * num_local_physical_experts

    mapped_expert_indices = torch.full(
        (num_layers, old_num_physical_experts),
        fill_value=-1,
        dtype=new_global_expert_indices.dtype,
        device=new_global_expert_indices.device,
    )

    for old_rank in range(old_ep_size):
        new_rank = rank_mapping[old_rank]
        if new_rank >= 0 and new_rank < new_ep_size:
            old_start_idx = old_rank * num_local_physical_experts
            old_end_idx = (old_rank + 1) * num_local_physical_experts
            new_start_idx = new_rank * num_local_physical_experts
            new_end_idx = (new_rank + 1) * num_local_physical_experts

            mapped_expert_indices[:, old_start_idx:old_end_idx] = \
                new_global_expert_indices[:, new_start_idx:new_end_idx]

    return mapped_expert_indices


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__all__ = ["rearrange_expert_weights_inplace"]