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import torch
def moe_align_block_size(
topk_ids,
num_experts,
block_size,
sorted_token_ids,
experts_ids,
num_tokens_post_pad,
cumsum_buffer,
pad_sorted_token_ids=False,
):
torch.ops.sgl_kernel.moe_align_block_size.default(
topk_ids,
num_experts,
block_size,
sorted_token_ids,
experts_ids,
num_tokens_post_pad,
cumsum_buffer,
pad_sorted_token_ids,
)
def topk_softmax(
topk_weights: torch.Tensor,
topk_ids: torch.Tensor,
gating_output: torch.Tensor,
renormalize: bool = False,
moe_softcapping: float = 0.0,
correction_bias: Optional[torch.Tensor] = None,
) -> None:
"""
Compute top-k softmax for MoE routing.
Args:
topk_weights: Output tensor for top-k weights [num_tokens, topk]
topk_ids: Output tensor for top-k expert indices [num_tokens, topk]
gating_output: Gating logits [num_tokens, num_experts]
renormalize: Whether to renormalize the top-k weights
moe_softcapping: Tanh softcapping value (0.0 to disable)
correction_bias: Per-expert bias correction [num_experts], must be float32 if provided
"""
torch.ops.sgl_kernel.topk_softmax.default(
topk_weights,
topk_ids,
gating_output,
renormalize,
moe_softcapping,
correction_bias,
)
def topk_sigmoid(
topk_weights: torch.Tensor,
topk_ids: torch.Tensor,
gating_output: torch.Tensor,
renormalize: bool = False,
correction_bias: Optional[torch.Tensor] = None,
) -> None:
"""
Compute top-k sigmoid for MoE routing.
Args:
topk_weights: Output tensor for top-k weights [num_tokens, topk]
topk_ids: Output tensor for top-k expert indices [num_tokens, topk]
gating_output: Gating logits [num_tokens, num_experts]
renormalize: Whether to renormalize the top-k weights
correction_bias: Per-expert bias correction [num_experts], must be float32 if provided
"""
torch.ops.sgl_kernel.topk_sigmoid.default(
topk_weights,
topk_ids,
gating_output,
renormalize,
correction_bias,
)
def moe_sum_reduce(
input_tensor,
output_tensor,
routed_scaling_factor=0,
):
torch.ops.sgl_kernel.moe_sum_reduce.default(
input_tensor,
output_tensor,
routed_scaling_factor,
)
def moe_sum(
input_tensor: torch.Tensor,
output_tensor: torch.Tensor,
):
torch.ops.sgl_kernel.moe_sum.default(
input_tensor,
output_tensor,
)
def moe_fused_gate(
input_tensor,
bias,
num_expert_group,
topk_group,
topk,
num_fused_shared_experts=0,
routed_scaling_factor=0,
apply_routed_scaling_factor_on_output=False,
):
# This fused kernel function is used to select topk expert in a hierarchical 2-layer fashion
# it split group of expert into num_expert_group, and use top2 expert weight sum in each group
# as the group weight to select expert groups and then select topk experts within the selected groups
# the #experts is decided by the input tensor shape and we currently only support power of 2 #experts
# and #experts should be divisible by num_expert_group. #expert/num_expert_group <= 32 is limited for now.
# for non-supported case, we suggest to use the biased_grouped_topk func in sglang.srt.layers.moe.topk
# num_fused_shared_experts: if > 0, the last several experts will be
# replaced with shared experts. the shared experts will be divided by the
# routed_scaling_factor - this is intended to cancel out later when routed+shared
# output is scaled so that shared experts are not scaled.
# routed_scaling_factor: if > 0, the experts will be scaled by this factor
# apply_routed_scaling_factor_on_output: if true, output will be
# scaled by the routed_scaling_factor
return torch.ops.sgl_kernel.moe_fused_gate.default(
input_tensor,
bias,
num_expert_group,
topk_group,
topk,
num_fused_shared_experts,
routed_scaling_factor,
apply_routed_scaling_factor_on_output,
)
def kimi_k2_moe_fused_gate(
input_tensor,
bias,
topk,
renormalize=True,
routed_scaling_factor=1.0,
apply_routed_scaling_factor_on_output=False,
):
"""
Simplified fused kernel for Kimi K2 model (num_expert_group=1).
This kernel removes the grouped topk logic since all experts belong to a single group.
Args:
input_tensor: Gating output tensor [num_tokens, num_experts]
bias: Correction bias tensor [num_experts]
topk: Number of experts to select per token
renormalize: Whether to renormalize the topk weights
routed_scaling_factor: Scaling factor for expert weights
apply_routed_scaling_factor_on_output: If true, apply scaling factor to output
Returns:
Tuple of (topk_weights, topk_ids)
- topk_weights: [num_tokens, topk] float32 tensor
- topk_ids: [num_tokens, topk] int32 tensor
"""
return torch.ops.sgl_kernel.kimi_k2_moe_fused_gate.default(
input_tensor,
bias,
topk,
renormalize,
routed_scaling_factor,
apply_routed_scaling_factor_on_output,
)
def fp8_blockwise_scaled_grouped_mm(
output,
a_ptrs,
b_ptrs,
out_ptrs,
a_scales_ptrs,
b_scales_ptrs,
a,
b,
scales_a,
scales_b,
stride_a,
stride_b,
stride_c,
layout_sfa,
layout_sfb,
problem_sizes,
expert_offsets,
workspace,
):
torch.ops.sgl_kernel.fp8_blockwise_scaled_grouped_mm.default(
output,
a_ptrs,
b_ptrs,
out_ptrs,
a_scales_ptrs,
b_scales_ptrs,
a,
b,
scales_a,
scales_b,
stride_a,
stride_b,
stride_c,
layout_sfa,
layout_sfb,
problem_sizes,
expert_offsets,
workspace,
)
def prepare_moe_input(
topk_ids,
expert_offsets,
problem_sizes1,
problem_sizes2,
input_permutation,
output_permutation,
num_experts,
n,
k,
blockscale_offsets: Optional[torch.Tensor] = None,
):
torch.ops.sgl_kernel.prepare_moe_input.default(
topk_ids,
expert_offsets,
blockscale_offsets,
problem_sizes1,
problem_sizes2,
input_permutation,
output_permutation,
num_experts,
n,
k,
)
def apply_shuffle_mul_sum(
input,
output,
permutation,
factors,
):
torch.ops.sgl_kernel.apply_shuffle_mul_sum.default(
input, output, permutation, factors
)
def fused_qk_norm_rope(
qkv: torch.Tensor,
num_heads_q: int,
num_heads_k: int,
num_heads_v: int,
head_dim: int,
eps: float,
q_weight: torch.Tensor,
k_weight: torch.Tensor,
base: float,
is_neox: bool,
position_ids: torch.Tensor,
factor: float,
low: float,
high: float,
attention_factor: float,
rotary_dim: Optional[int] = None,
) -> None:
torch.ops.sgl_kernel.fused_qk_norm_rope(
qkv,
num_heads_q,
num_heads_k,
num_heads_v,
head_dim,
eps,
q_weight,
k_weight,
base,
is_neox,
position_ids,
factor,
low,
high,
attention_factor,
rotary_dim if rotary_dim is not None else head_dim,
)
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