RWKV-Runner/finetune/lora/v6/fla/ops/abc/naive.py
2024-05-28 22:35:47 +08:00

91 lines
2.7 KiB
Python
Vendored

# -*- coding: utf-8 -*-
from typing import Optional
import torch
def naive_recurrent_abc(
q: torch.Tensor,
k: torch.Tensor,
v: torch.Tensor,
s: torch.Tensor,
g: Optional[torch.Tensor] = None,
scale: Optional[int] = None,
initial_state: Optional[torch.Tensor] = None,
output_final_state: Optional[bool] = False
) -> torch.Tensor:
dtype = q.dtype
# [batch_size, n_heads, seq_len, n_slots]
if g is None:
z = s.float().logcumsumexp(2)
g = torch.cat((z[:, :, :1], z[:, :, :-1]), 2) - z
s = torch.exp(s - z)
q, k, v, s, g = map(lambda x: x.float(), (q, k, v, s, g))
B, H, T, K, V, M = *q.shape, v.shape[-1], s.shape[-1]
hk = torch.zeros(B, H, K, M, dtype=torch.float, device=q.device)
ok = torch.zeros_like(s)
if scale is None:
scale = q.shape[-1] ** -0.5
final_state = None
if initial_state is not None:
hk += initial_state[0]
for i in range(T):
q_i = q[:, :, i] * scale
k_i = k[:, :, i]
v_i = s[:, :, i]
g_i = g[:, :, i].exp()
hk = hk * g_i[..., None, :] + k_i[..., None] * v_i[..., None, :]
ok[:, :, i] = (q_i[..., None] * hk).sum(-2)
qv = ok.softmax(-1)
hv = torch.zeros(B, H, M, V, dtype=torch.float, device=q.device)
ov = torch.zeros_like(v)
if initial_state is not None:
hv += initial_state[1]
for i in range(T):
q_i = qv[:, :, i]
k_i = s[:, :, i]
v_i = v[:, :, i]
g_i = g[:, :, i].exp()
hv = hv * g_i[..., :, None] + k_i[..., None] * v_i[..., None, :]
ov[:, :, i] = (q_i[..., None] * hv).sum(-2)
if output_final_state:
final_state = (hk, hv)
return ov.to(dtype), final_state
def naive_cumsum_abc(
q: torch.Tensor,
k: torch.Tensor,
v: torch.Tensor,
s: torch.Tensor
) -> torch.Tensor:
"""
A simple implementation of vanilla ABC that is more aligned with the descriptions in the paper.
This is just for demonstration purposes, with no numerical stabilities guaranteed.
"""
dtype = q.dtype
q, k, v, s = map(lambda x: x.float(), (q, k, v, s))
scale = q.shape[-1] ** -0.5
# [batch_size, n_heads, seq_len, n_slots]
s = (s - s.max(2, True)[0]).exp()
z = s.cumsum(2)
# [batch_size, n_heads, seq_len, n_slots, d_head]
K = (s.unsqueeze(-1) * k.unsqueeze(-2)).cumsum(2) / z.unsqueeze(-1)
V = (s.unsqueeze(-1) * v.unsqueeze(-2)).cumsum(2) / z.unsqueeze(-1)
# [batch_size, n_heads, seq_len, n_slots]
p = torch.einsum('...d,...md->...m', q * scale, K).softmax(-1)
# [batch_size, n_heads, seq_len, d_head]
o = torch.einsum('...m,...md->...d', p, V)
return o.to(dtype), None