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sglang/python/sglang/srt/layers/radix_attention.py

146 lines
5.7 KiB
Python

"""Radix attention."""
import numpy as np
import torch
from torch import nn
from sglang.srt.layers.context_flashattention_nopad import context_attention_fwd
from sglang.srt.layers.extend_attention import extend_attention_fwd
from sglang.srt.layers.token_attention import token_attention_fwd
from sglang.srt.managers.controller.model_runner import ForwardMode, InputMetadata
class RadixAttention(nn.Module):
def __init__(
self, num_heads, head_dim, scaling, num_kv_heads, layer_id, logit_cap=-1
):
super().__init__()
self.tp_q_head_num = num_heads
self.tp_k_head_num = num_kv_heads
self.tp_v_head_num = num_kv_heads
self.head_dim = head_dim
self.layer_id = layer_id
self.logit_cap = logit_cap
assert np.allclose(scaling, 1.0 / (head_dim**0.5))
from sglang.srt.managers.controller.model_runner import global_server_args_dict
if global_server_args_dict.get("enable_flashinfer", False):
self.prefill_forward = self.prefill_forward_flashinfer
self.extend_forward = self.prefill_forward_flashinfer
self.decode_forward = self.decode_forward_flashinfer
else:
self.prefill_forward = self.prefill_forward_triton
self.extend_forward = self.extend_forward_triton
self.decode_forward = self.decode_forward_triton
def prefill_forward_triton(self, q, k, v, input_metadata: InputMetadata):
o = torch.empty_like(q)
context_attention_fwd(
q.view(-1, self.tp_q_head_num, self.head_dim),
k,
v,
o.view(-1, self.tp_q_head_num, self.head_dim),
input_metadata.start_loc,
input_metadata.seq_lens,
input_metadata.max_seq_len,
self.logit_cap,
)
self.store_kv_cache(k, v, input_metadata)
return o
def extend_forward_triton(self, q, k, v, input_metadata: InputMetadata):
o = torch.empty_like(q)
self.store_kv_cache(k, v, input_metadata)
extend_attention_fwd(
q.view(-1, self.tp_q_head_num, self.head_dim),
k.contiguous(),
v.contiguous(),
o.view(-1, self.tp_q_head_num, self.head_dim),
input_metadata.token_to_kv_pool.get_key_buffer(self.layer_id),
input_metadata.token_to_kv_pool.get_value_buffer(self.layer_id),
input_metadata.req_to_token_pool.req_to_token,
input_metadata.req_pool_indices,
input_metadata.start_loc,
input_metadata.seq_lens,
input_metadata.prefix_lens,
input_metadata.extend_start_loc,
input_metadata.extend_seq_lens,
input_metadata.max_seq_len,
input_metadata.max_extend_len,
self.logit_cap,
)
return o
def decode_forward_triton(self, q, k, v, input_metadata: InputMetadata):
o = torch.empty_like(q)
self.store_kv_cache(k, v, input_metadata)
token_attention_fwd(
q.view(-1, self.tp_q_head_num, self.head_dim),
input_metadata.token_to_kv_pool.get_key_buffer(self.layer_id),
input_metadata.token_to_kv_pool.get_value_buffer(self.layer_id),
o.view(-1, self.tp_q_head_num, self.head_dim),
input_metadata.req_to_token_pool.req_to_token,
input_metadata.req_pool_indices,
input_metadata.start_loc,
input_metadata.seq_lens,
input_metadata.max_seq_len,
input_metadata.other_kv_index,
input_metadata.total_num_tokens,
self.logit_cap,
)
return o
def prefill_forward_flashinfer(self, q, k, v, input_metadata: InputMetadata):
self.store_kv_cache(k, v, input_metadata)
o = input_metadata.prefill_wrapper.forward(
q.contiguous().view(-1, self.tp_q_head_num, self.head_dim),
input_metadata.token_to_kv_pool.kv_data[self.layer_id],
)
return o.view(-1, self.tp_q_head_num * self.head_dim)
def decode_forward_flashinfer(self, q, k, v, input_metadata: InputMetadata):
self.store_kv_cache(k, v, input_metadata)
o = input_metadata.decode_wrapper.forward(
q.contiguous().view(-1, self.tp_q_head_num, self.head_dim),
input_metadata.token_to_kv_pool.kv_data[self.layer_id],
)
return o.view(-1, self.tp_q_head_num * self.head_dim)
def forward(self, q, k, v, input_metadata: InputMetadata):
k = k.view(-1, self.tp_k_head_num, self.head_dim)
v = v.view(-1, self.tp_v_head_num, self.head_dim)
if input_metadata.forward_mode == ForwardMode.PREFILL:
return self.prefill_forward(q, k, v, input_metadata)
elif input_metadata.forward_mode == ForwardMode.EXTEND:
return self.extend_forward(q, k, v, input_metadata)
elif input_metadata.forward_mode == ForwardMode.DECODE:
return self.decode_forward(q, k, v, input_metadata)
def store_kv_cache(self, cache_k, cache_v, input_metadata: InputMetadata):
key_buffer = input_metadata.token_to_kv_pool.get_key_buffer(self.layer_id)
value_buffer = input_metadata.token_to_kv_pool.get_value_buffer(self.layer_id)
if input_metadata.out_cache_loc is not None:
key_buffer[input_metadata.out_cache_loc] = cache_k
value_buffer[input_metadata.out_cache_loc] = cache_v
elif input_metadata.out_cache_cont_start is not None:
key_buffer[
input_metadata.out_cache_cont_start : input_metadata.out_cache_cont_end
] = cache_k
value_buffer[
input_metadata.out_cache_cont_start : input_metadata.out_cache_cont_end
] = cache_v
else:
raise RuntimeError()