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# SPDX-FileCopyrightText: Copyright (c) 2025 NVIDIA CORPORATION & AFFILIATES. All rights reserved.
# SPDX-License-Identifier: Apache-2.0
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
#
# Copyright 2024 Bytedance Ltd. and/or its affiliates
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
Implementations of the linear cross entropy with token entropy kernel.
"""
import typing
from dataclasses import dataclass
import torch
import torch.distributed as dist
from verl.utils.device import get_device_capability, get_device_name, is_cuda_available
try:
import triton
import triton.language as tl
HAVE_TRITON = True
SUPPORT_CUDA_TMA = is_cuda_available and get_device_capability()[0] >= 9 and hasattr(tl, "make_tensor_descriptor")
except ImportError:
HAVE_TRITON = False
SUPPORT_CUDA_TMA = False
from verl.utils.device import get_torch_device
if not HAVE_TRITON:
from contextlib import contextmanager
from unittest.mock import MagicMock
@contextmanager
def null_decorator(*args, **kwargs):
if len(kwargs) == 0 and len(args) == 1 and callable(args[0]):
return args[0]
else:
def inner(func):
return func
return inner
triton = MagicMock()
triton.jit = null_decorator
triton.autotune = null_decorator
tl = MagicMock()
elif SUPPORT_CUDA_TMA:
# TMA descriptors require a global memory allocation
def alloc_fn(size: int, alignment: int, stream: typing.Optional[int]):
return torch.empty(size, device=get_device_name(), dtype=torch.int8)
# https://github.com/triton-lang/triton/commit/43625fc968b693ab51884ca95adbcf3e43483fd0
# Triton 3.5.0 stores allocators in ContextVar; values do not propagate to new
# threads by default. Some execution paths in verl use thread pools (e.g.,
# concurrent.futures), so we set a ContextVar *default* to avoid falling
# back to NullAllocator in worker threads.
try:
import contextvars
import triton.runtime._allocation as _triton_allocation
if isinstance(getattr(_triton_allocation, "_allocator", None), contextvars.ContextVar):
_triton_allocation._allocator = contextvars.ContextVar(
_triton_allocation._allocator.name,
default=alloc_fn,
)
except (ImportError, AttributeError):
pass
triton.set_allocator(alloc_fn)
@dataclass
class EntropyReductionEnum:
"""
Enum for the reduction method of cross entropy.
"""
_None = 0
_Sum = 1
_Mean = 2
def get_entropy_reduction_enum_number(reduction: str) -> int:
"""
Get the enum number for the reduction method of cross entropy.
"""
_enum = EntropyReductionEnum._None
if reduction == "none":
_enum = EntropyReductionEnum._None
elif reduction == "sum":
_enum = EntropyReductionEnum._Sum
elif reduction == "mean":
_enum = EntropyReductionEnum._Mean
else:
raise ValueError(f"Invalid reduction: {reduction}")
return _enum
def get_entropy_reduction_enum(ce_reduction: int) -> EntropyReductionEnum:
"""
Get the enum for the reduction method of cross entropy.
"""
_enum = EntropyReductionEnum._None
if ce_reduction == 0:
_enum = EntropyReductionEnum._None
elif ce_reduction == 1:
_enum = EntropyReductionEnum._Sum
elif ce_reduction == 2:
_enum = EntropyReductionEnum._Mean
else:
raise ValueError(f"Invalid ce_reduction: {ce_reduction}")
return _enum
@dataclass
class BackwardEnum:
"""
Enum for the backward method.
"""
_Total_Fuse_MN = (
0 # Fuse d_logits & d_hidden & d_weight, no intermediate storage, requires fp32 for d_hidden & d_weight
)
_Total_Separate = 1 # Store d_logits, no special requirements for d_hidden & d_weight
_Split_Dlogits_N = 2 # split d_logits along its N dimension, aka. vocab_size
_Split_Dlogits_M = 3 # split d_logits along its M dimension, aka. num_tokens
@dataclass
class Config:
"""Configuration for efficient entropy kernel operations.
Args:
_backward (BackwardEnum): Backward computation method. Defaults to BackwardEnum._Split_Dlogits_N.
_use_triton (bool): Whether to use Triton kernels for computation. Defaults to True.
"""
_backward: BackwardEnum = BackwardEnum._Split_Dlogits_N
_use_triton: bool = True
_config = Config()
def set_backward_method(backward_method: BackwardEnum):
"""
Set the backward method.
"""
global _config
_config._backward = backward_method
@triton.autotune(
configs=[triton.Config({"BLOCK_SIZE_M": 128, "BLOCK_SIZE_N": 256, "BLOCK_SIZE_K": 32}, num_stages=3, num_warps=8)],
key=["num_tokens", "hidden_size", "vocab_size"],
)
@triton.jit
def efficient_entropy_kernel_general_mainloop(
rank,
hidden_ptr,
weight_ptr,
labels_ptr,
num_tokens,
hidden_size,
vocab_size,
vocab_per_split,
stride_hidden_m: tl.int64,
stride_hidden_k: tl.int64,
stride_weight_n: tl.int64,
stride_weight_k: tl.int64,
max_ptr,
stride_max_m: tl.int64,
stride_max_n: tl.int64,
accu_ptr,
stride_accu_m: tl.int64,
stride_accu_n: tl.int64,
entropy_b_ptr,
stride_entropy_b_m: tl.int64,
stride_entropy_b_n: tl.int64,
global_logprobs_ptr,
stride_global_logprobs: tl.int64,
global_logprobs_scalar_ptr,
rcp_temperature: tl.float32,
# Meta-parameters
BLOCK_SIZE_M: tl.constexpr,
BLOCK_SIZE_N: tl.constexpr,
BLOCK_SIZE_K: tl.constexpr,
USE_TMA: tl.constexpr,
):
"""
forward mainloop
"""
pid = tl.program_id(axis=0)
num_splits = (vocab_size + vocab_per_split - 1) // vocab_per_split
num_pid_m = tl.cdiv(num_tokens, BLOCK_SIZE_M)
num_pid_n = tl.cdiv(vocab_per_split, BLOCK_SIZE_N)
pid_m = pid % num_pid_m
pid_n = pid // num_pid_m
if pid_m == 0 and pid_n == 0:
tl.store(global_logprobs_scalar_ptr, 0.0)
# create pointers for the first blocks of hidden
start_offs_am = pid_m * BLOCK_SIZE_M
offs_am = start_offs_am + tl.arange(0, BLOCK_SIZE_M)
offs_k = tl.arange(0, BLOCK_SIZE_K)
if USE_TMA:
# using TMA and device-side descriptor creation
hidden_desc = tl.make_tensor_descriptor(
hidden_ptr,
shape=[num_tokens, hidden_size],
strides=[stride_hidden_m, 1],
block_shape=[BLOCK_SIZE_M, BLOCK_SIZE_K],
)
weight_desc = tl.make_tensor_descriptor(
weight_ptr,
shape=[vocab_size, hidden_size],
strides=[stride_weight_n, 1],
block_shape=[BLOCK_SIZE_N, BLOCK_SIZE_K],
)
else:
hidden_ptrs = hidden_ptr + (offs_am[:, None] * stride_hidden_m + offs_k[None, :] * stride_hidden_k)
# load labels for this block
labels = tl.load(labels_ptr + offs_am, mask=offs_am < num_tokens)
# traverse over N dimension
# _max = tl.zeros((BLOCK_SIZE_M,), dtype=tl.float32)
_max = tl.full((BLOCK_SIZE_M,), -float("inf"), dtype=tl.float32)
_accu = tl.zeros((BLOCK_SIZE_M,), dtype=tl.float32)
_entropy_b = tl.zeros((BLOCK_SIZE_M,), dtype=tl.float32)
_logprobs = tl.zeros((BLOCK_SIZE_M,), dtype=tl.float32)
vocab_bound = min((pid_n + 1) * vocab_per_split, vocab_size)
for n in range(0, num_pid_n):
start_offs_bn = pid_n * vocab_per_split + n * BLOCK_SIZE_N
offs_bn = start_offs_bn + tl.arange(0, BLOCK_SIZE_N)
logits = tl.zeros((BLOCK_SIZE_M, BLOCK_SIZE_N), dtype=tl.float32)
if not USE_TMA:
# weight_ptrs = weight_ptr + (offs_k[:, None] * stride_weight_k + offs_bn[None, :] * stride_weight_n)
weight_ptrs = weight_ptr + (offs_bn[:, None] * stride_weight_n + offs_k[None, :] * stride_weight_k)
# iterate over K dimension
for k in range(0, tl.cdiv(hidden_size, BLOCK_SIZE_K)):
if USE_TMA:
# load the next block of hidden and weight
start_offs_k = k * BLOCK_SIZE_K
_hidden = hidden_desc.load([start_offs_am, start_offs_k])
_weight = weight_desc.load([start_offs_bn, start_offs_k])
else:
# load the next block of hidden and weight
_hidden = tl.load(
hidden_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_am[:, None] < num_tokens),
other=0.0,
)
_weight = tl.load(
weight_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K)
& (offs_bn[:, None] < (min((pid_n + 1) * vocab_per_split, vocab_size))),
other=0.0,
)
# advance the ptrs to the next K block
hidden_ptrs += BLOCK_SIZE_K * stride_hidden_k
weight_ptrs += BLOCK_SIZE_K * stride_weight_k
# GEMM
logits = tl.dot(_hidden, _weight.trans(), logits)
if not USE_TMA:
# reset hidden_ptrs for next iteration
hidden_ptrs -= hidden_size * stride_hidden_k
# scale logits by temperature
logits *= rcp_temperature
logits_for_lse = tl.where(offs_bn[None, :] < vocab_bound, logits, float("-inf"))
# update global maximum
_max_old = _max
m_pid_n = tl.max(logits_for_lse, axis=1)
_max = tl.maximum(_max_old, m_pid_n)
exp_logits = tl.exp(logits_for_lse - _max[:, None])
coeff = tl.exp(_max_old - _max)
_accu = coeff * _accu + tl.sum(exp_logits, axis=1)
_entropy_b = _entropy_b * coeff + tl.sum(logits * exp_logits, axis=1)
label_mask = (offs_bn + rank * vocab_size)[None, :] == labels[:, None]
_logprobs += tl.sum(logits * label_mask, axis=1)
# store maximum
offs_max_m = pid_m * BLOCK_SIZE_M + tl.arange(0, BLOCK_SIZE_M)
offs_max_n = pid_n
maximum_ptrs = max_ptr + offs_max_n * stride_max_n + offs_max_m * stride_max_m
tl.store(maximum_ptrs, _max, mask=(offs_max_m < num_tokens) & (offs_max_n < num_splits))
# store entropy
accu_ptrs = accu_ptr + offs_max_n * stride_accu_n + offs_max_m * stride_accu_m
tl.store(accu_ptrs, _accu, mask=(offs_max_m < num_tokens) & (offs_max_n[None] < num_splits))
entropy_b_ptrs = entropy_b_ptr + offs_max_n * stride_entropy_b_n + offs_max_m * stride_entropy_b_m
tl.store(entropy_b_ptrs, _entropy_b, mask=(offs_max_m < num_tokens) & (offs_max_n < num_splits))
# store logprobs
vocab_left_idx = pid_n * vocab_per_split + rank * vocab_size
vocab_right_idx = min((pid_n + 1) * vocab_per_split, vocab_size) + rank * vocab_size
mask = (labels >= vocab_left_idx) & (labels < vocab_right_idx)
mask &= offs_am < num_tokens
global_logprobs_ptrs = global_logprobs_ptr + offs_am * stride_global_logprobs
# tl.atomic_add(global_logprobs_ptrs, _logprobs, mask=mask)
tl.store(global_logprobs_ptrs, _logprobs, mask=mask)
@triton.autotune(configs=[triton.Config({"BLOCK_SIZE_M": 16, "BLOCK_SIZE_N": 64})], key=["num_tokens", "num_splits"])
@triton.jit
def efficient_entropy_triton_kernel_epilogue(
max_ptr,
stride_max_m: tl.int64,
stride_max_n: tl.int64,
num_tokens,
num_splits,
global_max_ptr,
stride_global_max: tl.int64,
accu_ptr,
stride_accu_m: tl.int64,
stride_accu_n: tl.int64,
global_accu_ptr,
stride_global_accu: tl.int64,
entropy_b_ptr,
stride_entropy_b_m: tl.int64,
stride_entropy_b_n: tl.int64,
global_entropy_b_ptr,
stride_global_entropy_b: tl.int64,
global_entropy_ptr,
stride_global_entropy: tl.int64,
global_logprobs_ptr,
stride_global_logprobs: tl.int64,
global_logprobs_scalar_ptr,
reduction: int,
BLOCK_SIZE_M: tl.constexpr,
BLOCK_SIZE_N: tl.constexpr,
):
"""
foward epilogue
"""
pid_m = tl.program_id(axis=0)
offs_m = pid_m * BLOCK_SIZE_M + tl.arange(0, BLOCK_SIZE_M)
global_max = tl.zeros((BLOCK_SIZE_M,), dtype=tl.float32)
global_accu = tl.zeros((BLOCK_SIZE_M,), dtype=tl.float32)
global_entropy_b = tl.zeros((BLOCK_SIZE_M,), dtype=tl.float32)
for pid_n in range(0, tl.cdiv(num_splits, BLOCK_SIZE_N)):
offs_n = pid_n * BLOCK_SIZE_N + tl.arange(0, BLOCK_SIZE_N)
max_ptrs = max_ptr + offs_m[:, None] * stride_max_m + offs_n[None, :] * stride_max_n
_max = tl.load(max_ptrs, mask=(offs_m[:, None] < num_tokens) & (offs_n[None, :] < num_splits), other=0.0)
accu_ptrs = accu_ptr + offs_m[:, None] * stride_accu_m + offs_n[None, :] * stride_accu_n
_accu = tl.load(accu_ptrs, mask=(offs_m[:, None] < num_tokens) & (offs_n[None, :] < num_splits), other=0.0)
entropy_b_ptrs = entropy_b_ptr + offs_m[:, None] * stride_entropy_b_m + offs_n[None, :] * stride_entropy_b_n
_entropy_b = tl.load(
entropy_b_ptrs, mask=(offs_m[:, None] < num_tokens) & (offs_n[None, :] < num_splits), other=0.0
)
# local reduction
_max_old = global_max
_local_max = tl.max(_max, axis=1)
global_max = tl.maximum(global_max, _local_max)
_scale = tl.exp(_max - global_max[:, None])
_coeff = tl.exp(_max_old - global_max)
global_accu = _coeff * global_accu + tl.sum(_scale * _accu, axis=1)
global_entropy_b = _coeff * global_entropy_b + tl.sum(_scale * _entropy_b, axis=1)
# store
maximum_ptrs = global_max_ptr + offs_m * stride_global_max
tl.store(maximum_ptrs, global_max, mask=offs_m < num_tokens)
# store entropy_b
global_entropy_b = tl.fdiv(global_entropy_b, global_accu) # entropy_b
tl.store(global_entropy_b_ptr + offs_m * stride_global_entropy_b, global_entropy_b, mask=offs_m < num_tokens)
# store entropy
global_accu_ptrs = global_accu_ptr + offs_m * stride_global_accu
tl.store(global_accu_ptrs, global_accu, mask=offs_m < num_tokens)
global_entropy = tl.log(global_accu) + global_max - global_entropy_b # entropy_a
global_entropy_ptrs = global_entropy_ptr + offs_m * stride_global_entropy
tl.store(global_entropy_ptrs, global_entropy, mask=offs_m < num_tokens)
# update logprobs
global_logprobs_ptrs = global_logprobs_ptr + offs_m * stride_global_logprobs
global_logprobs = tl.load(global_logprobs_ptrs, mask=offs_m < num_tokens)
global_logprobs = global_max + tl.log(global_accu) - global_logprobs
global_logprobs = -1 * global_logprobs
if reduction == 0:
tl.store(global_logprobs_ptrs, global_logprobs, mask=offs_m < num_tokens)
elif reduction == 1:
global_logprobs_scalar = tl.sum(global_logprobs, axis=0)
tl.atomic_add(global_logprobs_scalar_ptr, global_logprobs_scalar)
elif reduction == 2:
global_logprobs_scalar = tl.sum(global_logprobs, axis=0) / num_tokens.to(tl.float32)
tl.atomic_add(global_logprobs_scalar_ptr, global_logprobs_scalar)
@triton.autotune(configs=[triton.Config({"BLOCK_SIZE_M": 16, "BLOCK_SIZE_N": 64})], key=["num_tokens", "num_splits"])
@triton.jit
def efficient_entropy_triton_kernel_epilogue_tp(
num_tokens,
num_splits,
reduced_max_ptr,
stride_reduced_max_m: tl.int64,
stride_reduced_max_n: tl.int64,
original_max_ptr,
stride_original_max_m: tl.int64,
stride_original_max_n: tl.int64,
accu_ptr,
stride_accu_m: tl.int64,
stride_accu_n: tl.int64,
entropy_b_ptr,
stride_entropy_b_m: tl.int64,
stride_entropy_b_n: tl.int64,
global_max_ptr,
stride_global_max: tl.int64,
global_accu_ptr,
stride_global_accu: tl.int64,
global_entropy_b_ptr,
stride_global_entropy_b: tl.int64,
BLOCK_SIZE_M: tl.constexpr,
BLOCK_SIZE_N: tl.constexpr,
):
pid_m = tl.program_id(axis=0)
offs_m = pid_m * BLOCK_SIZE_M + tl.arange(0, BLOCK_SIZE_M)
global_max = tl.zeros((BLOCK_SIZE_M,), dtype=tl.float32)
global_accu = tl.zeros((BLOCK_SIZE_M,), dtype=tl.float32)
global_entropy_b = tl.zeros((BLOCK_SIZE_M,), dtype=tl.float32)
for pid_n in range(0, tl.cdiv(num_splits, BLOCK_SIZE_N)):
offs_n = pid_n * BLOCK_SIZE_N + tl.arange(0, BLOCK_SIZE_N)
_reduced_max = tl.load(
reduced_max_ptr + offs_m[:, None] * stride_reduced_max_m + offs_n[None, :] * stride_reduced_max_n,
mask=(offs_m[:, None] < num_tokens) & (offs_n[None, :] < num_splits),
other=0.0,
)
_original_max = tl.load(
original_max_ptr + offs_m[:, None] * stride_original_max_m + offs_n[None, :] * stride_original_max_n,
mask=(offs_m[:, None] < num_tokens) & (offs_n[None, :] < num_splits),
other=0.0,
)
_accu = tl.load(
accu_ptr + offs_m[:, None] * stride_accu_m + offs_n[None, :] * stride_accu_n,
mask=(offs_m[:, None] < num_tokens) & (offs_n[None, :] < num_splits),
other=0.0,
)
# local reduce-max
_max_old = global_max
_local_max = tl.max(_reduced_max, axis=1)
global_max = tl.maximum(global_max, _local_max)
# update accumulate
_coeff = tl.exp(_max_old - global_max)
_scale = tl.exp(_original_max - global_max[:, None])
global_accu = _coeff * global_accu + tl.sum(_scale * _accu, axis=1)
# update entropy_b
_entropy_b = tl.load(
entropy_b_ptr + offs_m[:, None] * stride_entropy_b_m + offs_n[None, :] * stride_entropy_b_n,
mask=(offs_m[:, None] < num_tokens) & (offs_n[None, :] < num_splits),
other=0.0,
)
global_entropy_b = _coeff * global_entropy_b + tl.sum(_scale * _entropy_b, axis=1)
# store
tl.store(global_max_ptr + offs_m * stride_global_max, global_max, mask=offs_m < num_tokens)
tl.store(global_accu_ptr + offs_m * stride_global_accu, global_accu, mask=offs_m < num_tokens)
tl.store(global_entropy_b_ptr + offs_m * stride_global_entropy_b, global_entropy_b, mask=offs_m < num_tokens)
@triton.autotune(configs=[triton.Config({"BLOCK_SIZE_M": 16})], key=["num_tokens"])
@triton.jit
def efficient_entropy_triton_epilogue_tp_update(
num_tokens,
logprobs_ptr,
stride_logprobs: tl.int64,
maximum_ptr,
stride_maximum: tl.int64,
accumulate_ptr,
stride_accumulate: tl.int64,
entropy_b_ptr,
stride_entropy_b: tl.int64,
entropy_ptr,
stride_entropy: tl.int64,
logprobs_scalar_ptr,
reduction: int,
BLOCK_SIZE_M: tl.constexpr,
):
pid_m = tl.program_id(axis=0)
offs_m = pid_m * BLOCK_SIZE_M + tl.arange(0, BLOCK_SIZE_M)
maximum = tl.load(maximum_ptr + offs_m * stride_maximum, mask=offs_m < num_tokens)
accumulate = tl.load(accumulate_ptr + offs_m * stride_accumulate, mask=offs_m < num_tokens)
entropy_b = tl.load(entropy_b_ptr + offs_m * stride_entropy_b, mask=offs_m < num_tokens)
entropy_b = tl.fdiv(entropy_b, accumulate)
tl.store(entropy_b_ptr + offs_m * stride_entropy_b, entropy_b, mask=offs_m < num_tokens)
entropy = tl.log(accumulate) + maximum - entropy_b
tl.store(entropy_ptr + offs_m * stride_entropy, entropy, mask=offs_m < num_tokens)
logprobs = tl.load(logprobs_ptr + offs_m * stride_logprobs, mask=offs_m < num_tokens)
logprobs = maximum + tl.log(accumulate) - logprobs
logprobs = -1 * logprobs
if reduction == 0:
tl.store(logprobs_ptr + offs_m * stride_logprobs, logprobs, mask=offs_m < num_tokens)
elif reduction == 1:
logprobs_scalar = tl.sum(logprobs, axis=0)
tl.atomic_add(logprobs_scalar_ptr, logprobs_scalar)
elif reduction == 2:
logprobs_scalar = tl.sum(logprobs, axis=0) / num_tokens.to(tl.float32)
tl.atomic_add(logprobs_scalar_ptr, logprobs_scalar)
_dedicated_stream, _dedicated_events = None, None
def efficient_entropy_forward(
hidden: torch.Tensor,
weight: torch.Tensor,
labels: torch.Tensor,
reduction: typing.Optional[int] = 2,
temperature: typing.Optional[float] = 1.0,
dist_process_group: typing.Optional[dist.ProcessGroup] = None,
) -> list[torch.Tensor]:
"""
forward host function
"""
assert hidden.is_cuda and weight.is_cuda and labels.is_cuda
assert weight.device == hidden.device and labels.device == hidden.device
assert hidden.dim() == 2 and weight.dim() == 2 and labels.dim() == 1
assert hidden.is_contiguous() and weight.is_contiguous() and labels.is_contiguous()
assert hidden.shape[0] == labels.shape[0] and hidden.shape[1] == weight.shape[1]
_rank = 0 if dist_process_group is None else dist.get_rank(dist_process_group)
_world_size = 1 if dist_process_group is None else dist.get_world_size(dist_process_group)
if dist_process_group is not None and not hasattr(efficient_entropy_forward, "_initialized"):
global _dedicated_stream, _dedicated_events
_dedicated_stream = get_torch_device().Stream(hidden.device)
_dedicated_events = [get_torch_device().Event() for _ in range(2)]
efficient_entropy_forward._initialized = True
num_tokens, hidden_size = hidden.shape
num_tokens = labels.shape[0]
vocab_size, hidden_size = weight.shape
assert hidden_size % 128 == 0
REDUCTION = get_entropy_reduction_enum(reduction)
if REDUCTION == EntropyReductionEnum._None:
if dist_process_group is None:
logprobs = torch.empty((num_tokens,), device=hidden.device, dtype=torch.float32)
else:
logprobs = torch.zeros((num_tokens,), device=hidden.device, dtype=torch.float32)
elif REDUCTION in (EntropyReductionEnum._Sum, EntropyReductionEnum._Mean):
logprobs = torch.empty((), device=hidden.device, dtype=torch.float32)
else:
raise ValueError(f"Invalid reduction: {reduction}")
entropy = torch.empty((num_tokens,), device=hidden.device, dtype=torch.float32)
assert logprobs.is_contiguous() and entropy.is_contiguous()
maximum = torch.empty_like(entropy)
accumulate_and_entropy_b = torch.empty((num_tokens * 2,), device=hidden.device, dtype=torch.float32)
accumulate_and_entropy_b_view = accumulate_and_entropy_b.view(2, num_tokens)
accumulate = accumulate_and_entropy_b_view[0, :]
entropy_b = accumulate_and_entropy_b_view[1, :]
assert maximum.is_contiguous() and accumulate.is_contiguous() and entropy_b.is_contiguous()
vocab_per_split = 1024
assert vocab_per_split % 128 == 0
num_splits = (vocab_size + vocab_per_split - 1) // vocab_per_split
_max = torch.empty((num_tokens, num_splits), device=hidden.device, dtype=torch.float32)
_accu = torch.empty((num_tokens, num_splits), device=hidden.device, dtype=torch.float32)
_entropy_b = torch.empty((num_tokens, num_splits), device=hidden.device, dtype=torch.float32)
if REDUCTION == EntropyReductionEnum._None:
_logprobs = logprobs
else:
_logprobs = torch.empty((num_tokens,), device=hidden.device, dtype=torch.float32)
assert _accu.is_contiguous() and _entropy_b.is_contiguous() and _max.is_contiguous()
assert _accu.is_cuda and _entropy_b.is_cuda and _max.is_cuda
if _config._use_triton:
# 1D kernel launch, then split the tile
def mainloop_grid(meta):
return (triton.cdiv(num_tokens, meta["BLOCK_SIZE_M"]) * num_splits,)
efficient_entropy_kernel_general_mainloop[mainloop_grid](
_rank,
hidden,
weight,
labels,
num_tokens,
hidden_size,
vocab_size,
vocab_per_split,
hidden.stride(0),
hidden.stride(1),
weight.stride(0),
weight.stride(1),
_max,
_max.stride(0),
_max.stride(1),
_accu,
_accu.stride(0),
_accu.stride(1),
_entropy_b,
_entropy_b.stride(0),
_entropy_b.stride(1),
_logprobs,
_logprobs.stride(0),
logprobs,
1.0 / temperature,
USE_TMA=SUPPORT_CUDA_TMA and hidden.stride(1) == 1 and weight.stride(1) == 1,
)
else:
raise AssertionError("Triton is required for efficient entropy kernel")
# reduction on maximum and maximum_indices
def epilogue_grid(meta):
return (triton.cdiv(num_tokens, meta["BLOCK_SIZE_M"]),)
if dist_process_group is None:
efficient_entropy_triton_kernel_epilogue[epilogue_grid](
_max,
_max.stride(0),
_max.stride(1),
num_tokens,
num_splits,
maximum,
maximum.stride(0),
_accu,
_accu.stride(0),
_accu.stride(1),
accumulate,
accumulate.stride(0),
_entropy_b,
_entropy_b.stride(0),
_entropy_b.stride(1),
entropy_b,
entropy_b.stride(0),
entropy,
entropy.stride(0),
_logprobs,
_logprobs.stride(0),
logprobs,
REDUCTION,
)
else:
# tensor-parallel
_max_backup = _max.clone()
dist.all_reduce(_max, op=dist.ReduceOp.MAX, group=dist_process_group)
get_torch_device().current_stream().record_event(_dedicated_events[0])
with get_torch_device().stream(_dedicated_stream):
_dedicated_stream.wait_event(_dedicated_events[0])
dist.all_reduce(_logprobs, op=dist.ReduceOp.SUM, group=dist_process_group)
_dedicated_stream.record_event(_dedicated_events[1])
efficient_entropy_triton_kernel_epilogue_tp[epilogue_grid](
num_tokens,
num_splits,
_max,
_max.stride(0),
_max.stride(1),
_max_backup,
_max_backup.stride(0),
_max_backup.stride(1),
_accu,
_accu.stride(0),
_accu.stride(1),
_entropy_b,
_entropy_b.stride(0),
_entropy_b.stride(1),
maximum,
maximum.stride(0),
accumulate,
accumulate.stride(0),
entropy_b,
entropy_b.stride(0),
)
get_torch_device().current_stream().wait_event(_dedicated_events[1])
dist.all_reduce(accumulate_and_entropy_b, op=dist.ReduceOp.SUM, group=dist_process_group)
# update logprobs & entropy
efficient_entropy_triton_epilogue_tp_update[epilogue_grid](
num_tokens,
_logprobs,
_logprobs.stride(0),
maximum,
maximum.stride(0),
accumulate,
accumulate.stride(0),
entropy_b,
entropy_b.stride(0),
entropy,
entropy.stride(0),
logprobs,
REDUCTION,
)
return (logprobs, entropy, maximum, accumulate, entropy_b)
# NOTE: merge d_weight & d_hidden here, split along M & N
@triton.autotune(
configs=[
triton.Config(
{"BLOCK_SIZE_M": 128, "BLOCK_SIZE_N": 128, "BLOCK_SIZE_K": 32, "GROUP_SIZE_M": 16},
num_stages=3,
num_warps=8,
)
],
key=["num_tokens", "hidden_size", "vocab_size"],
)
@triton.jit
def efficient_entropy_backward_kernel_general_mainloop_MN(
num_tokens: int,
hidden_size: int,
vocab_size: int,
rank: int,
hidden_ptr,
stride_hidden_m: tl.int64,
stride_hidden_k: tl.int64,
weight_ptr,
stride_weight_n: tl.int64,
stride_weight_k: tl.int64,
labels_ptr,
stride_labels: tl.int64,
maximum_ptr,
stride_maximum: tl.int64,
accu_ptr,
stride_accu: tl.int64,
d_entropy_ptr,
stride_d_entropy: tl.int64,
d_logprobs_ptr,
stride_d_logprobs: tl.int64,
reduction: int,
entropy_b_ptr,
stride_entropy_b: tl.int64,
d_hidden_ptr,
stride_d_hidden_m: tl.int64,
stride_d_hidden_k: tl.int64,
d_weight_ptr,
stride_d_weight_n: tl.int64,
stride_d_weight_k: tl.int64,
rcp_temperature: tl.float32,
BLOCK_SIZE_M: tl.constexpr,
BLOCK_SIZE_N: tl.constexpr,
BLOCK_SIZE_K: tl.constexpr,
GROUP_SIZE_M: tl.constexpr,
USE_TMA: tl.constexpr,
):
"""
backward mainloop, where d_logits & d_hidden & d_weight are fused
"""
# block swizzling
# pid = tl.program_id(axis=0)
# num_pid_m = tl.cdiv(num_tokens, BLOCK_SIZE_M)
# pid_m = pid % num_pid_m
# pid_n = pid // num_pid_m
pid = tl.program_id(axis=0)
num_pid_m = tl.cdiv(num_tokens, BLOCK_SIZE_M)
num_pid_n = tl.cdiv(vocab_size, BLOCK_SIZE_N)
num_pid_in_group = GROUP_SIZE_M * num_pid_n
group_id = pid // num_pid_in_group
first_pid_m = group_id * GROUP_SIZE_M
group_size_m = min(num_pid_m - first_pid_m, GROUP_SIZE_M)
pid_m = first_pid_m + ((pid % num_pid_in_group) % group_size_m)
pid_n = (pid % num_pid_in_group) // group_size_m
start_offs_am = pid_m * BLOCK_SIZE_M
offs_am = start_offs_am + tl.arange(0, BLOCK_SIZE_M)
start_offs_bn = pid_n * BLOCK_SIZE_N
offs_bn = start_offs_bn + tl.arange(0, BLOCK_SIZE_N)
offs_k = tl.arange(0, BLOCK_SIZE_K)
if USE_TMA:
# using TMA and device-side descriptor creation
hidden_desc = tl.make_tensor_descriptor(
hidden_ptr,
shape=[num_tokens, hidden_size],
strides=[stride_hidden_m, 1],
block_shape=[BLOCK_SIZE_M, BLOCK_SIZE_K],
)
weight_desc = tl.make_tensor_descriptor(
weight_ptr,
shape=[vocab_size, hidden_size],
strides=[stride_weight_n, 1],
block_shape=[BLOCK_SIZE_N, BLOCK_SIZE_K],
)
maximum_ptrs = maximum_ptr + offs_am * stride_maximum
maximum = tl.load(maximum_ptrs, mask=offs_am < num_tokens, other=0.0)
accu_ptrs = accu_ptr + offs_am * stride_accu
accu = tl.load(accu_ptrs, mask=offs_am < num_tokens, other=1e-6) # epsilon to avoid division by zero
accu_rcp = tl.fdiv(1.0, accu)
d_entropy_ptrs = d_entropy_ptr + offs_am * stride_d_entropy
d_entropy = tl.load(d_entropy_ptrs, mask=offs_am < num_tokens, other=0.0)
if reduction == 0: # none
d_logprobs_ptrs = d_logprobs_ptr + offs_am * stride_d_logprobs
d_logprobs = tl.load(d_logprobs_ptrs, mask=offs_am < num_tokens, other=0.0)
elif reduction == 1: # sum
d_logprobs = tl.load(d_logprobs_ptr)
d_logprobs = tl.broadcast_to(d_logprobs, (BLOCK_SIZE_M,))
else: # mean
d_logprobs = tl.fdiv(tl.load(d_logprobs_ptr), num_tokens.to(tl.float32))
d_logprobs = tl.broadcast_to(d_logprobs, (BLOCK_SIZE_M,))
d_logprobs = -1 * d_logprobs
entropy_b_ptrs = entropy_b_ptr + offs_am * stride_entropy_b
entropy_b = tl.load(entropy_b_ptrs, mask=offs_am < num_tokens, other=0.0)
if not USE_TMA:
hidden_ptrs = hidden_ptr + (offs_am[:, None] * stride_hidden_m + offs_k[None, :] * stride_hidden_k)
# weight_ptrs = weight_ptr + (offs_k[:, None] * stride_weight_k + offs_bn[None, :] * stride_weight_n)
weight_ptrs = weight_ptr + (offs_bn[:, None] * stride_weight_n + offs_k[None, :] * stride_weight_k)
labels_ptrs = labels_ptr + offs_am * stride_labels
labels = tl.load(labels_ptrs, mask=offs_am < num_tokens, other=0)
d_hidden_ptrs = d_hidden_ptr + offs_am[:, None] * stride_d_hidden_m + offs_k[None, :] * stride_d_hidden_k
# d_weight_ptrs = d_weight_ptr + offs_k[:, None] * stride_d_weight_k + offs_bn[None, :] * stride_d_weight_n
d_weight_ptrs = d_weight_ptr + offs_bn[:, None] * stride_d_weight_n + offs_k[None, :] * stride_d_weight_k
logits = tl.zeros((BLOCK_SIZE_M, BLOCK_SIZE_N), dtype=tl.float32)
for k in range(0, tl.cdiv(hidden_size, BLOCK_SIZE_K)):
if USE_TMA:
start_offs_k = k * BLOCK_SIZE_K
_hidden = hidden_desc.load([start_offs_am, start_offs_k])
_weight = weight_desc.load([start_offs_bn, start_offs_k])
else:
_hidden = tl.load(
hidden_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_am[:, None] < num_tokens),
other=0.0,
)
_weight = tl.load(
weight_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_bn[:, None] < vocab_size),
other=0.0,
)
hidden_ptrs += BLOCK_SIZE_K * stride_hidden_k
weight_ptrs += BLOCK_SIZE_K * stride_weight_k
logits = tl.dot(_hidden, _weight.T, logits)
if not USE_TMA:
hidden_ptrs -= hidden_size * stride_hidden_k
weight_ptrs -= hidden_size * stride_weight_k
# scale logits by temperature
logits *= rcp_temperature
exp_logits = tl.exp(logits - maximum[:, None])
mask = (offs_bn + rank * vocab_size)[None, :] == labels[:, None]
d_logits = d_logprobs[:, None] * (exp_logits * accu_rcp[:, None] - mask)
d_logits += d_entropy[:, None] * (-exp_logits * accu_rcp[:, None]) * (logits - entropy_b[:, None])
# scale d_logits by temperature
d_logits *= rcp_temperature
# loop for d_weight & d_hidden
for k in range(0, tl.cdiv(hidden_size, BLOCK_SIZE_K)):
start_offs_k = k * BLOCK_SIZE_K
if USE_TMA:
_hidden = hidden_desc.load([start_offs_am, start_offs_k])
else:
_hidden = tl.load(
hidden_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_am[:, None] < num_tokens),
other=0.0,
)
# _d_weight = tl.dot(tl.trans(_hidden).to(tl.float32), d_logits)
# tl.atomic_add(d_weight_ptrs,
# _d_weight,
# mask=(offs_k[:, None] < hidden_size - k * BLOCK_SIZE_K) & (offs_bn[None, :] < vocab_size))
_d_weight = tl.dot(d_logits.trans(), _hidden.to(tl.float32))
tl.atomic_add(
d_weight_ptrs,
_d_weight,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_bn[:, None] < vocab_size),
)
if USE_TMA:
_weight = weight_desc.load([start_offs_bn, start_offs_k])
else:
# _weight = tl.load(
# weight_ptrs,
# mask=(offs_k[:, None] < hidden_size - k * BLOCK_SIZE_K) & (offs_bn[None, :] < vocab_size),
# other=0.0
# )
# _d_hidden = tl.dot(d_logits, tl.trans(_weight).to(tl.float32))
_weight = tl.load(
weight_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_bn[:, None] < vocab_size),
other=0.0,
)
_d_hidden = tl.dot(d_logits, _weight.to(tl.float32))
tl.atomic_add(
d_hidden_ptrs,
_d_hidden,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_am[:, None] < num_tokens),
)
if not USE_TMA:
hidden_ptrs += BLOCK_SIZE_K * stride_hidden_k
weight_ptrs += BLOCK_SIZE_K * stride_weight_k
d_hidden_ptrs += BLOCK_SIZE_K * stride_d_hidden_k
d_weight_ptrs += BLOCK_SIZE_K * stride_d_weight_k
@triton.autotune(
configs=[
triton.Config(
{"BLOCK_SIZE_M": 128, "BLOCK_SIZE_N": 128, "BLOCK_SIZE_K": 32, "GROUP_SIZE_M": 16},
num_stages=3,
num_warps=8,
),
],
key=["num_tokens", "hidden_size", "vocab_size"],
)
@triton.jit
def efficient_entropy_backward_kernel_d_hidden(
num_tokens: int,
hidden_size: int,
vocab_size: int,
rank: int,
hidden_ptr,
stride_hidden_m: tl.int64,
stride_hidden_k: tl.int64,
weight_ptr,
stride_weight_n: tl.int64,
stride_weight_k: tl.int64,
labels_ptr,
stride_labels: tl.int64,
maximum_ptr,
stride_maximum: tl.int64,
accu_ptr,
stride_accu: tl.int64,
d_entropy_ptr,
stride_d_entropy: tl.int64,
d_logprobs_ptr,
stride_d_logprobs: tl.int64,
reduction: int,
entropy_b_ptr,
stride_entropy_b: tl.int64,
d_hidden_ptr,
stride_d_hidden_m: tl.int64,
stride_d_hidden_k: tl.int64,
rcp_temperature: tl.float32,
BLOCK_SIZE_M: tl.constexpr,
BLOCK_SIZE_N: tl.constexpr,
BLOCK_SIZE_K: tl.constexpr,
GROUP_SIZE_M: tl.constexpr,
):
"""
backward d_hidden
"""
pid = tl.program_id(axis=0)
num_pid_m = tl.cdiv(num_tokens, BLOCK_SIZE_M)
pid_m = pid % num_pid_m
pid_k = pid // num_pid_m
offs_m = pid_m * BLOCK_SIZE_M + tl.arange(0, BLOCK_SIZE_M)
offs_k = tl.arange(0, BLOCK_SIZE_K)
result_offs_k = pid_k * BLOCK_SIZE_K + offs_k
maximum = tl.load(maximum_ptr + offs_m * stride_maximum, mask=offs_m < num_tokens, other=0.0)
accu = tl.load(accu_ptr + offs_m * stride_accu, mask=offs_m < num_tokens, other=1e-6)
accu_rcp = tl.fdiv(1.0, accu)
d_entropy = tl.load(d_entropy_ptr + offs_m * stride_d_entropy, mask=offs_m < num_tokens, other=0.0)
if reduction == 0:
d_logprobs = tl.load(d_logprobs_ptr + offs_m * stride_d_logprobs, mask=offs_m < num_tokens, other=0.0)
elif reduction == 1:
d_logprobs = tl.load(d_logprobs_ptr)
d_logprobs = tl.broadcast_to(d_logprobs, (BLOCK_SIZE_M,))
else:
d_logprobs = tl.fdiv(tl.load(d_logprobs_ptr), num_tokens.to(tl.float32))
d_logprobs = tl.broadcast_to(d_logprobs, (BLOCK_SIZE_M,))
d_logprobs = -1 * d_logprobs
entropy_b = tl.load(entropy_b_ptr + offs_m * stride_entropy_b, mask=offs_m < num_tokens, other=0.0)
labels = tl.load(labels_ptr + offs_m * stride_labels, mask=offs_m < num_tokens, other=0)
# iterate over vocab_size
d_hidden = tl.zeros((BLOCK_SIZE_M, BLOCK_SIZE_K), dtype=tl.float32)
for n in range(0, tl.cdiv(vocab_size, BLOCK_SIZE_N)):
offs_n = n * BLOCK_SIZE_N + tl.arange(0, BLOCK_SIZE_N)
hidden_ptrs = hidden_ptr + (offs_m[:, None] * stride_hidden_m + offs_k[None, :] * stride_hidden_k)
weight_ptrs = weight_ptr + (offs_n[:, None] * stride_weight_n + offs_k[None, :] * stride_weight_k)
# iterate over hidden_size to get logits
logits = tl.zeros((BLOCK_SIZE_M, BLOCK_SIZE_N), dtype=tl.float32)
for k in range(0, tl.cdiv(hidden_size, BLOCK_SIZE_K)):
_hidden = tl.load(
hidden_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_m[:, None] < num_tokens),
other=0.0,
)
_weight = tl.load(
weight_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_n[:, None] < vocab_size),
other=0.0,
)
logits = tl.dot(_hidden, _weight.trans(), logits)
hidden_ptrs += BLOCK_SIZE_K * stride_hidden_k
weight_ptrs += BLOCK_SIZE_K * stride_weight_k
# scale logits by temperature
logits *= rcp_temperature
exp_logits = tl.exp(logits - maximum[:, None])
mask = (offs_n + rank * vocab_size)[None, :] == labels[:, None]
d_logits = d_logprobs[:, None] * (exp_logits * accu_rcp[:, None] - mask)
d_logits += d_entropy[:, None] * (-exp_logits * accu_rcp[:, None]) * (logits - entropy_b[:, None])
# scale d_logits
d_logits *= rcp_temperature
# calculate d_hidden
weight_ptrs = weight_ptr + (offs_n[:, None] * stride_weight_n + result_offs_k[None, :] * stride_weight_k)
_weight = tl.load(
weight_ptrs, mask=(result_offs_k[None, :] < hidden_size) & (offs_n[:, None] < vocab_size), other=0.0
)
d_hidden = tl.dot(d_logits.to(weight_ptr.dtype.element_ty), _weight, d_hidden)
# write back
tl.store(
d_hidden_ptr + offs_m[:, None] * stride_d_hidden_m + result_offs_k[None, :] * stride_d_hidden_k,
d_hidden,
mask=(offs_m[:, None] < num_tokens) & (result_offs_k[None, :] < hidden_size),
)
@triton.autotune(
configs=[
triton.Config(
{"BLOCK_SIZE_M": 128, "BLOCK_SIZE_N": 128, "BLOCK_SIZE_K": 32, "GROUP_SIZE_M": 16},
num_stages=3,
num_warps=8,
),
],
key=["num_tokens", "hidden_size", "vocab_size"],
)
@triton.jit
def efficient_entropy_backward_kernel_d_weight(
num_tokens: int,
hidden_size: int,
vocab_size: int,
rank: int,
hidden_ptr,
stride_hidden_m: tl.int64,
stride_hidden_k: tl.int64,
weight_ptr,
stride_weight_n: tl.int64,
stride_weight_k: tl.int64,
labels_ptr,
stride_labels: tl.int64,
maximum_ptr,
stride_maximum: tl.int64,
accu_ptr,
stride_accu: tl.int64,
d_entropy_ptr,
stride_d_entropy: tl.int64,
d_logprobs_ptr,
stride_d_logprobs: tl.int64,
reduction: int,
entropy_b_ptr,
stride_entropy_b: tl.int64,
d_weight_ptr,
stride_d_weight_n: tl.int64,
stride_d_weight_k: tl.int64,
rcp_temperature: tl.float32,
BLOCK_SIZE_M: tl.constexpr,
BLOCK_SIZE_N: tl.constexpr,
BLOCK_SIZE_K: tl.constexpr,
GROUP_SIZE_M: tl.constexpr,
):
pid = tl.program_id(axis=0)
num_pid_n = tl.cdiv(vocab_size, BLOCK_SIZE_N)
pid_n = pid % num_pid_n
pid_k = pid // num_pid_n
offs_n = pid_n * BLOCK_SIZE_N + tl.arange(0, BLOCK_SIZE_N)
offs_k = tl.arange(0, BLOCK_SIZE_K)
result_offs_k = pid_k * BLOCK_SIZE_K + offs_k
d_weight = tl.zeros((BLOCK_SIZE_N, BLOCK_SIZE_K), dtype=tl.float32)
for m in range(0, tl.cdiv(num_tokens, BLOCK_SIZE_M)):
offs_m = m * BLOCK_SIZE_M + tl.arange(0, BLOCK_SIZE_M)
maximum = tl.load(maximum_ptr + offs_m * stride_maximum, mask=offs_m < num_tokens, other=0.0)
accu = tl.load(accu_ptr + offs_m * stride_accu, mask=offs_m < num_tokens, other=1e-6)
accu_rcp = tl.fdiv(1.0, accu)
d_entropy = tl.load(d_entropy_ptr + offs_m * stride_d_entropy, mask=offs_m < num_tokens, other=0.0)
if reduction == 0:
d_logprobs = tl.load(d_logprobs_ptr + offs_m * stride_d_logprobs, mask=offs_m < num_tokens, other=0.0)
elif reduction == 1:
d_logprobs = tl.load(d_logprobs_ptr)
d_logprobs = tl.broadcast_to(d_logprobs, (BLOCK_SIZE_M,))
else:
d_logprobs = tl.fdiv(tl.load(d_logprobs_ptr), num_tokens.to(tl.float32))
d_logprobs = tl.broadcast_to(d_logprobs, (BLOCK_SIZE_M,))
d_logprobs = -1 * d_logprobs
entropy_b = tl.load(entropy_b_ptr + offs_m * stride_entropy_b, mask=offs_m < num_tokens, other=0.0)
labels = tl.load(labels_ptr + offs_m * stride_labels, mask=offs_m < num_tokens, other=0)
hidden_ptrs = hidden_ptr + (offs_m[:, None] * stride_hidden_m + offs_k[None, :] * stride_hidden_k)
weight_ptrs = weight_ptr + (offs_n[:, None] * stride_weight_n + offs_k[None, :] * stride_weight_k)
logits = tl.zeros((BLOCK_SIZE_M, BLOCK_SIZE_N), dtype=tl.float32)
for k in range(0, tl.cdiv(hidden_size, BLOCK_SIZE_K)):
_hidden = tl.load(
hidden_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_m[:, None] < num_tokens),
other=0.0,
)
_weight = tl.load(
weight_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_n[:, None] < vocab_size),
other=0.0,
)
logits = tl.dot(_hidden, _weight.trans(), logits)
hidden_ptrs += BLOCK_SIZE_K * stride_hidden_k
weight_ptrs += BLOCK_SIZE_K * stride_weight_k
logits *= rcp_temperature
exp_logits = tl.exp(logits - maximum[:, None])
mask = (offs_n + rank * vocab_size)[None, :] == labels[:, None]
d_logits = d_logprobs[:, None] * (exp_logits * accu_rcp[:, None] - mask)
d_logits += d_entropy[:, None] * (-exp_logits * accu_rcp[:, None]) * (logits - entropy_b[:, None])
d_logits *= rcp_temperature
hidden_ptrs = hidden_ptr + (offs_m[:, None] * stride_hidden_m + result_offs_k[None, :] * stride_hidden_k)
_hidden = tl.load(
hidden_ptrs, mask=(result_offs_k[None, :] < hidden_size) & (offs_m[:, None] < num_tokens), other=0.0
)
d_weight = tl.dot(d_logits.to(d_weight_ptr.dtype.element_ty).trans(), _hidden, d_weight)
# write back
tl.store(
d_weight_ptr + offs_n[:, None] * stride_d_weight_n + result_offs_k[None, :] * stride_d_weight_k,
d_weight,
mask=(offs_n[:, None] < vocab_size) & (result_offs_k[None, :] < hidden_size),
)
# NOTE: split tile from d_logits' perspective
@triton.autotune(
configs=[
triton.Config(
{"BLOCK_SIZE_M": 128, "BLOCK_SIZE_N": 256, "BLOCK_SIZE_K": 32, "GROUP_SIZE_M": 16},
num_stages=3,
num_warps=8,
),
],
key=["num_tokens", "hidden_size", "vocab_size"],
)
@triton.jit
def efficient_entropy_backward_kernel_general_d_logits(
num_tokens: int,
hidden_size: int,
vocab_size: int,
rank: int,
hidden_ptr,
stride_hidden_m: tl.int64,
stride_hidden_k: tl.int64,
weight_ptr,
stride_weight_n: tl.int64,
stride_weight_k: tl.int64,
labels_ptr,
stride_labels: tl.int64,
maximum_ptr,
stride_maximum: tl.int64,
accu_ptr,
stride_accu: tl.int64,
d_entropy_ptr,
stride_d_entropy: tl.int64,
d_logprobs_ptr,
stride_d_logprobs: tl.int64,
reduction: int,
entropy_b_ptr,
stride_entropy_b,
d_logits_ptr,
stride_d_logits_m: tl.int64,
stride_d_logits_n: tl.int64,
rcp_temperature: tl.float32,
BLOCK_SIZE_M: tl.constexpr,
BLOCK_SIZE_N: tl.constexpr,
BLOCK_SIZE_K: tl.constexpr,
GROUP_SIZE_M: tl.constexpr,
USE_TMA: tl.constexpr,
):
"""
backward d_logits
"""
# block swizzling
# pid = tl.program_id(axis=0)
# num_pid_m = tl.cdiv(num_tokens, BLOCK_SIZE_M)
# pid_m = pid % num_pid_m
# pid_n = pid // num_pid_m
pid = tl.program_id(axis=0)
num_pid_m = tl.cdiv(num_tokens, BLOCK_SIZE_M)
num_pid_n = tl.cdiv(vocab_size, BLOCK_SIZE_N)
num_pid_in_group = GROUP_SIZE_M * num_pid_n
group_id = pid // num_pid_in_group
first_pid_m = group_id * GROUP_SIZE_M
group_size_m = min(num_pid_m - first_pid_m, GROUP_SIZE_M)
pid_m = first_pid_m + ((pid % num_pid_in_group) % group_size_m)
pid_n = (pid % num_pid_in_group) // group_size_m
start_offs_am = pid_m * BLOCK_SIZE_M
offs_am = start_offs_am + tl.arange(0, BLOCK_SIZE_M)
start_offs_bn = pid_n * BLOCK_SIZE_N
offs_bn = start_offs_bn + tl.arange(0, BLOCK_SIZE_N)
offs_k = tl.arange(0, BLOCK_SIZE_K)
maximum_ptrs = maximum_ptr + offs_am * stride_maximum
maximum = tl.load(maximum_ptrs, mask=offs_am < num_tokens, other=0.0)
accu_ptrs = accu_ptr + offs_am * stride_accu
accu = tl.load(accu_ptrs, mask=offs_am < num_tokens, other=1e-6) # epsilon to avoid division by zero
accu_rcp = tl.fdiv(1.0, accu)
d_entropy_ptrs = d_entropy_ptr + offs_am * stride_d_entropy
d_entropy = tl.load(d_entropy_ptrs, mask=offs_am < num_tokens, other=0.0)
if reduction == 0: # none
d_logprobs_ptrs = d_logprobs_ptr + offs_am * stride_d_logprobs
d_logprobs = tl.load(d_logprobs_ptrs, mask=offs_am < num_tokens, other=0.0)
elif reduction == 1: # sum
d_logprobs = tl.load(d_logprobs_ptr)
d_logprobs = tl.broadcast_to(d_logprobs, (BLOCK_SIZE_M,))
else: # mean
d_logprobs = tl.fdiv(tl.load(d_logprobs_ptr), num_tokens.to(tl.float32))
d_logprobs = tl.broadcast_to(d_logprobs, (BLOCK_SIZE_M,))
d_logprobs = -1 * d_logprobs
entropy_b_ptrs = entropy_b_ptr + offs_am * stride_entropy_b
entropy_b = tl.load(entropy_b_ptrs, mask=offs_am < num_tokens, other=0.0)
labels_ptrs = labels_ptr + offs_am * stride_labels
labels = tl.load(labels_ptrs, mask=offs_am < num_tokens, other=0)
logits = tl.zeros((BLOCK_SIZE_M, BLOCK_SIZE_N), dtype=tl.float32)
if USE_TMA:
# using TMA and device-side descriptor creation
hidden_desc = tl.make_tensor_descriptor(
hidden_ptr,
shape=[num_tokens, hidden_size],
strides=[stride_hidden_m, 1],
block_shape=[BLOCK_SIZE_M, BLOCK_SIZE_K],
)
weight_desc = tl.make_tensor_descriptor(
weight_ptr,
shape=[vocab_size, hidden_size],
strides=[stride_weight_n, 1],
block_shape=[BLOCK_SIZE_N, BLOCK_SIZE_K],
)
else:
hidden_ptrs = hidden_ptr + (offs_am[:, None] * stride_hidden_m + offs_k[None, :] * stride_hidden_k)
# weight_ptrs = weight_ptr + (offs_k[:, None] * stride_weight_k + offs_bn[None, :] * stride_weight_n)
weight_ptrs = weight_ptr + (offs_bn[:, None] * stride_weight_n + offs_k[None, :] * stride_weight_k)
for k in range(0, tl.cdiv(hidden_size, BLOCK_SIZE_K)):
if USE_TMA:
start_offs_k = k * BLOCK_SIZE_K
_hidden = hidden_desc.load([start_offs_am, start_offs_k])
_weight = weight_desc.load([start_offs_bn, start_offs_k])
else:
_hidden = tl.load(
hidden_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_am[:, None] < num_tokens),
other=0.0,
)
_weight = tl.load(
weight_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_bn[:, None] < vocab_size),
other=0.0,
)
hidden_ptrs += BLOCK_SIZE_K * stride_hidden_k
weight_ptrs += BLOCK_SIZE_K * stride_weight_k
logits = tl.dot(_hidden, _weight.T, logits)
if not USE_TMA:
hidden_ptrs -= hidden_size * stride_hidden_k
weight_ptrs -= hidden_size * stride_weight_k
# scale logits by temperature
logits *= rcp_temperature
exp_logits = tl.exp(logits - maximum[:, None])
mask = (offs_bn + rank * vocab_size)[None, :] == labels[:, None]
d_logits = d_logprobs[:, None] * (exp_logits * accu_rcp[:, None] - mask)
d_logits += d_entropy[:, None] * (-exp_logits * accu_rcp[:, None]) * (logits - entropy_b[:, None])
# scale d_logits by temperature
d_logits *= rcp_temperature
# store d_logits
d_logits_ptrs = d_logits_ptr + offs_am[:, None] * stride_d_logits_m + offs_bn[None, :] * stride_d_logits_n
tl.store(
d_logits_ptrs,
d_logits, # will be implicitly converted to d_logits_ptrs.dtype.element_ty
mask=(offs_am[:, None] < num_tokens) & (offs_bn[None, :] < vocab_size),
)
@triton.autotune(
configs=[
triton.Config(
{"BLOCK_SIZE_M": 128, "BLOCK_SIZE_N": 256, "BLOCK_SIZE_K": 32, "GROUP_SIZE_M": 16},
num_stages=3,
num_warps=8,
),
],
key=["num_tokens", "hidden_size", "vocab_size"],
)
@triton.jit
def efficient_entropy_backward_kernel_general_d_logits_split_N(
split_idx: int,
num_tokens: int,
hidden_size: int,
vocab_size: int,
vocab_per_split: int,
rank: int,
hidden_ptr,
stride_hidden_m: tl.int64,
stride_hidden_k: tl.int64,
weight_ptr,
stride_weight_n: tl.int64,
stride_weight_k: tl.int64,
labels_ptr,
stride_labels: tl.int64,
maximum_ptr,
stride_maximum: tl.int64,
accu_ptr,
stride_accu: tl.int64,
d_entropy_ptr,
stride_d_entropy: tl.int64,
d_logprobs_ptr,
stride_d_logprobs: tl.int64,
reduction: int,
entropy_b_ptr,
stride_entropy_b,
d_logits_ptr,
stride_d_logits_m: tl.int64,
stride_d_logits_n: tl.int64,
rcp_temperature: tl.float32,
BLOCK_SIZE_M: tl.constexpr,
BLOCK_SIZE_N: tl.constexpr,
BLOCK_SIZE_K: tl.constexpr,
GROUP_SIZE_M: tl.constexpr,
USE_TMA: tl.constexpr,
):
pid = tl.program_id(axis=0)
num_pid_m = tl.cdiv(num_tokens, BLOCK_SIZE_M)
num_pid_n = tl.cdiv(vocab_per_split, BLOCK_SIZE_N)
num_pid_in_group = GROUP_SIZE_M * num_pid_n
group_id = pid // num_pid_in_group
first_pid_m = group_id * GROUP_SIZE_M
group_size_m = min(num_pid_m - first_pid_m, GROUP_SIZE_M)
pid_m = first_pid_m + ((pid % num_pid_in_group) % group_size_m)
pid_n = (pid % num_pid_in_group) // group_size_m
start_offs_am = pid_m * BLOCK_SIZE_M
offs_am = start_offs_am + tl.arange(0, BLOCK_SIZE_M)
start_offs_bn = split_idx * vocab_per_split + pid_n * BLOCK_SIZE_N
offs_bn = start_offs_bn + tl.arange(0, BLOCK_SIZE_N)
offs_k = tl.arange(0, BLOCK_SIZE_K)
maximum = tl.load(maximum_ptr + offs_am * stride_maximum, mask=offs_am < num_tokens, other=0.0)
accu = tl.load(accu_ptr + offs_am * stride_accu, mask=offs_am < num_tokens, other=1e-6)
accu_rcp = tl.fdiv(1.0, accu)
d_entropy = tl.load(d_entropy_ptr + offs_am * stride_d_entropy, mask=offs_am < num_tokens, other=0.0)
if reduction == 0:
d_logprobs = tl.load(d_logprobs_ptr + offs_am * stride_d_logprobs, mask=offs_am < num_tokens, other=0.0)
elif reduction == 1:
d_logprobs = tl.load(d_logprobs_ptr)
d_logprobs = tl.broadcast_to(d_logprobs, (BLOCK_SIZE_M,))
else:
d_logprobs = tl.fdiv(tl.load(d_logprobs_ptr), num_tokens.to(tl.float32))
d_logprobs = tl.broadcast_to(d_logprobs, (BLOCK_SIZE_M,))
d_logprobs = -1 * d_logprobs
entropy_b = tl.load(entropy_b_ptr + offs_am * stride_entropy_b, mask=offs_am < num_tokens, other=0.0)
labels = tl.load(labels_ptr + offs_am * stride_labels, mask=offs_am < num_tokens, other=0)
logits = tl.zeros((BLOCK_SIZE_M, BLOCK_SIZE_N), dtype=tl.float32)
if USE_TMA:
# using TMA and device-side descriptor creation
hidden_desc = tl.make_tensor_descriptor(
hidden_ptr,
shape=[num_tokens, hidden_size],
strides=[stride_hidden_m, 1],
block_shape=[BLOCK_SIZE_M, BLOCK_SIZE_K],
)
weight_desc = tl.make_tensor_descriptor(
weight_ptr,
shape=[vocab_size, hidden_size],
strides=[stride_weight_n, 1],
block_shape=[BLOCK_SIZE_N, BLOCK_SIZE_K],
)
else:
hidden_ptrs = hidden_ptr + (offs_am[:, None] * stride_hidden_m + offs_k[None, :] * stride_hidden_k)
weight_ptrs = weight_ptr + (offs_bn[:, None] * stride_weight_n + offs_k[None, :] * stride_weight_k)
vocab_right_bound = min((split_idx + 1) * vocab_per_split, vocab_size)
for k in range(0, tl.cdiv(hidden_size, BLOCK_SIZE_K)):
if USE_TMA:
start_offs_k = k * BLOCK_SIZE_K
_hidden = hidden_desc.load([start_offs_am, start_offs_k])
_weight = weight_desc.load([start_offs_bn, start_offs_k])
else:
_hidden = tl.load(
hidden_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_am[:, None] < num_tokens),
other=0.0,
)
_weight = tl.load(
weight_ptrs,
mask=(offs_k[None, :] < hidden_size - k * BLOCK_SIZE_K) & (offs_bn[:, None] < vocab_right_bound),
other=0.0,
)
hidden_ptrs += BLOCK_SIZE_K * stride_hidden_k
weight_ptrs += BLOCK_SIZE_K * stride_weight_k
logits = tl.dot(_hidden, _weight.T, logits)
logits *= rcp_temperature
exp_logits = tl.exp(logits - maximum[:, None])
mask = (offs_bn + rank * vocab_size)[None, :] == labels[:, None]
d_logits = d_logprobs[:, None] * (exp_logits * accu_rcp[:, None] - mask)
d_logits += d_entropy[:, None] * (-exp_logits * accu_rcp[:, None]) * (logits - entropy_b[:, None])
d_logits *= rcp_temperature
# filter d_logits with mask
result_offs_n = pid_n * BLOCK_SIZE_N + tl.arange(0, BLOCK_SIZE_N)
mask = (offs_am[:, None] < num_tokens) & (result_offs_n[None, :] < vocab_per_split)
tl.store(
d_logits_ptr + offs_am[:, None] * stride_d_logits_m + result_offs_n[None, :] * stride_d_logits_n, d_logits, mask
)
def efficient_entropy_backward(
dlogprobs: torch.Tensor,
dentropy: torch.Tensor,
hidden: torch.Tensor,
weight: torch.Tensor,
labels: torch.Tensor,
maximum: torch.Tensor,
acc: torch.Tensor,
entropy_b: torch.Tensor,
reduction: typing.Optional[int] = 2,
should_return_fp32_grad: bool = False,
temperature: typing.Optional[float] = 1.0,
dist_process_group: typing.Optional[dist.ProcessGroup] = None,
) -> list[torch.Tensor]:
"""
backward host function
"""
assert hidden.is_cuda and weight.is_cuda and labels.is_cuda
assert weight.device == hidden.device and labels.device == hidden.device
assert hidden.dim() == 2 and weight.dim() == 2 and labels.dim() == 1
assert hidden.is_contiguous() and weight.is_contiguous() and labels.is_contiguous()
assert hidden.shape[0] == labels.shape[0] and hidden.shape[1] == weight.shape[1]
_rank = 0 if dist_process_group is None else dist.get_rank(dist_process_group)
_world_size = 1 if dist_process_group is None else dist.get_world_size(dist_process_group)
num_tokens, hidden_size = hidden.shape
num_tokens = labels.shape[0]
vocab_size, hidden_size = weight.shape
assert hidden_size % 128 == 0
REDUCTION = get_entropy_reduction_enum(reduction)
if REDUCTION == EntropyReductionEnum._None:
assert dlogprobs.shape == (num_tokens,)
else:
assert dlogprobs.dim() == 0
assert dlogprobs.is_contiguous() and dentropy.is_contiguous()
assert dlogprobs.is_cuda and dentropy.is_cuda
assert dlogprobs.device == hidden.device and dlogprobs.device == dentropy.device
assert dentropy.shape == (num_tokens,)
d_hidden, d_weight = None, None
if _config._backward == BackwardEnum._Total_Fuse_MN or should_return_fp32_grad:
d_hidden = torch.zeros_like(hidden, dtype=torch.float32, device=hidden.device)
d_weight = torch.zeros_like(weight, dtype=torch.float32, device=weight.device)
else:
d_hidden = torch.empty_like(hidden, dtype=hidden.dtype, device=hidden.device)
d_weight = torch.empty_like(weight, dtype=hidden.dtype, device=weight.device)
assert d_hidden.is_contiguous() and d_weight.is_contiguous()
assert maximum.is_contiguous() and acc.is_contiguous()
assert maximum.device == hidden.device and acc.device == hidden.device
assert maximum.shape == labels.shape == acc.shape
assert maximum.is_cuda and acc.is_cuda
vocab_per_split = 1024
assert vocab_per_split % 128 == 0
num_splits = (vocab_size + vocab_per_split - 1) // vocab_per_split
assert entropy_b.is_contiguous() and entropy_b.is_cuda
assert entropy_b.shape == (num_tokens,)
if _config._backward == BackwardEnum._Total_Fuse_MN:
# --- Triton doesn't materialize d_logits at all. Split tiles at the perspective of d_logits.
def mainloop_grid(meta):
return (triton.cdiv(num_tokens, meta["BLOCK_SIZE_M"]) * triton.cdiv(vocab_size, meta["BLOCK_SIZE_N"]),)
efficient_entropy_backward_kernel_general_mainloop_MN[mainloop_grid](
num_tokens,
hidden_size,
vocab_size,
_rank,
hidden,
hidden.stride(0),
hidden.stride(1),
weight,
weight.stride(0),
weight.stride(1),
labels,
labels.stride(0),
maximum,
maximum.stride(0),
acc,
acc.stride(0),
dentropy,
dentropy.stride(0),
dlogprobs,
dlogprobs.stride(0) if REDUCTION == EntropyReductionEnum._None else 0,
REDUCTION,
entropy_b,
entropy_b.stride(0),
d_hidden,
d_hidden.stride(0),
d_hidden.stride(1),
d_weight,
d_weight.stride(0),
d_weight.stride(1),
1.0 / temperature,
USE_TMA=SUPPORT_CUDA_TMA and hidden.stride(1) == 1 and weight.stride(1) == 1,
)
elif _config._backward == BackwardEnum._Total_Separate:
_d_logits = torch.empty((num_tokens, vocab_size), device=hidden.device, dtype=hidden.dtype).contiguous()
assert _d_logits.is_contiguous()
if _config._use_triton:
def d_logits_grid(meta):
return (triton.cdiv(num_tokens, meta["BLOCK_SIZE_M"]) * triton.cdiv(vocab_size, meta["BLOCK_SIZE_N"]),)
efficient_entropy_backward_kernel_general_d_logits[d_logits_grid](
num_tokens,
hidden_size,
vocab_size,
_rank,
hidden,
hidden.stride(0),
hidden.stride(1),
weight,
weight.stride(0),
weight.stride(1),
labels,
labels.stride(0),
maximum,
maximum.stride(0),
acc,
acc.stride(0),
dentropy,
dentropy.stride(0),
dlogprobs,
dlogprobs.stride(0) if REDUCTION == EntropyReductionEnum._None else 0,
REDUCTION,
entropy_b,
entropy_b.stride(0),
_d_logits,
_d_logits.stride(0),
_d_logits.stride(1),
1.0 / temperature,
USE_TMA=SUPPORT_CUDA_TMA and hidden.stride(1) == 1 and weight.stride(1) == 1,
)
torch.matmul(_d_logits, weight, out=d_hidden)
torch.matmul(_d_logits.T, hidden, out=d_weight)
else:
raise AssertionError("Triton is required for efficient entropy kernel")
elif _config._backward == BackwardEnum._Split_Dlogits_N:
vocab_per_split = 9504
num_splits = (vocab_size + vocab_per_split - 1) // vocab_per_split
_d_logits = torch.empty((num_tokens, vocab_per_split), device=hidden.device, dtype=hidden.dtype).contiguous()
assert _d_logits.is_contiguous()
def d_logits_grid(meta):
return (triton.cdiv(num_tokens, meta["BLOCK_SIZE_M"]) * triton.cdiv(vocab_per_split, meta["BLOCK_SIZE_N"]),)
for split_idx in range(num_splits):
efficient_entropy_backward_kernel_general_d_logits_split_N[d_logits_grid](
split_idx,
num_tokens,
hidden_size,
vocab_size,
vocab_per_split,
_rank,
hidden,
hidden.stride(0),
hidden.stride(1),
weight,
weight.stride(0),
weight.stride(1),
labels,
labels.stride(0),
maximum,
maximum.stride(0),
acc,
acc.stride(0),
dentropy,
dentropy.stride(0),
dlogprobs,
dlogprobs.stride(0) if REDUCTION == EntropyReductionEnum._None else 0,
REDUCTION,
entropy_b,
entropy_b.stride(0),
_d_logits,
_d_logits.stride(0),
_d_logits.stride(1),
1.0 / temperature,
USE_TMA=SUPPORT_CUDA_TMA and hidden.stride(1) == 1 and weight.stride(1) == 1,
)
if split_idx == (num_splits - 1):
vocab_right_bound = min((split_idx + 1) * vocab_per_split, vocab_size) - split_idx * vocab_per_split
_d_logits = _d_logits[:, :vocab_right_bound].contiguous()
if split_idx == 0:
torch.matmul(
_d_logits, weight[split_idx * vocab_per_split : (split_idx + 1) * vocab_per_split, :], out=d_hidden
)
else:
d_hidden += torch.matmul(
_d_logits, weight[split_idx * vocab_per_split : (split_idx + 1) * vocab_per_split, :]
)
torch.matmul(
_d_logits.T, hidden, out=d_weight[split_idx * vocab_per_split : (split_idx + 1) * vocab_per_split, :]
)
elif _config._backward == BackwardEnum._Split_Dlogits_M:
raise NotImplementedError("BackwardEnum._Split_Dlogits_M is not implemented yet")
return d_hidden, d_weight
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