in candle-flash-attn/src/lib.rs [453:677]
fn cuda_fwd_t<
T: candle::cuda_backend::CudaDType + candle::cuda_backend::cudarc::driver::DeviceRepr,
>(
&self,
q: &candle::CudaStorage,
q_l: &Layout,
k: &candle::CudaStorage,
k_l: &Layout,
v: &candle::CudaStorage,
v_l: &Layout,
is_bf16: bool,
) -> Result<(candle::CudaStorage, Shape)> {
// https://github.com/Dao-AILab/flash-attention/blob/184b992dcb2a0890adaa19eb9b541c3e4f9d2a08/csrc/flash_attn/flash_api.cpp#L327
let dev = q.device();
let out_shape = q_l.shape().clone();
let out_l = Layout::contiguous(&out_shape);
let (seqlens_q, seqlens_q_layout) = self.seqlens_q.storage_and_layout();
let seqlens_q = match &*seqlens_q {
candle::Storage::Cuda(c) => c.as_cuda_slice::<u32>()?, // Should be i32!
_ => candle::bail!("seqlens_q must be a cuda tensor"),
};
let seqlens_q = match seqlens_q_layout.contiguous_offsets() {
Some((o1, o2)) => seqlens_q.slice(o1..o2),
None => candle::bail!("seqlens_q has to be contiguous"),
};
let (seqlens_k, seqlens_k_layout) = self.seqlens_k.storage_and_layout();
let seqlens_k = match &*seqlens_k {
candle::Storage::Cuda(c) => c.as_cuda_slice::<u32>()?, // Should be i32!
_ => candle::bail!("seqlens_k must be a cuda tensor"),
};
let seqlens_k = match seqlens_k_layout.contiguous_offsets() {
Some((o1, o2)) => seqlens_k.slice(o1..o2),
None => candle::bail!("seqlens_k has to be contiguous"),
};
let q = q.as_cuda_slice::<f16>()?;
let k = k.as_cuda_slice::<f16>()?;
let v = v.as_cuda_slice::<f16>()?;
let q = q.slice(q_l.start_offset()..);
let k = k.slice(k_l.start_offset()..);
let v = v.slice(v_l.start_offset()..);
let q_stride = q_l.stride();
let k_stride = k_l.stride();
let v_stride = v_l.stride();
let o_stride = out_l.stride();
let q_rank = q_stride.len();
let k_rank = k_stride.len();
let v_rank = v_stride.len();
let o_rank = o_stride.len();
if q_rank != 3 || k_rank != 3 || v_rank != 3 {
candle::bail!(
"flash-attn-varlen expects input tensors of rank 3 (q: {q_rank}, k: {k_rank}, v: {v_rank}"
)
}
if q_stride[q_rank - 1] != 1 {
candle::bail!("the last dim of q must be contiguous {q_stride:?}")
}
if k_stride[k_rank - 1] != 1 {
candle::bail!("the last dim of k must be contiguous {k_stride:?}")
}
if v_stride[v_rank - 1] != 1 {
candle::bail!("the last dim of v must be contiguous {v_stride:?}")
}
let (total_q, num_heads, head_size_og) = q_l.shape().dims3()?;
let (total_k, num_heads_k, _head_size_og) = k_l.shape().dims3()?;
let expected_kv = (total_k, num_heads_k, head_size_og);
if expected_kv != k_l.shape().dims3()? {
candle::bail!("shape mismatch q {:?} and k {:?}", q_l.shape(), k_l.shape())
}
if expected_kv != v_l.shape().dims3()? {
candle::bail!("shape mismatch q {:?} and v {:?}", q_l.shape(), v_l.shape())
}
if head_size_og > 256 {
candle::bail!("only supports head dimension at most 256 (got {head_size_og})")
}
if head_size_og % 8 != 0 {
// TODO: Handle head sizes that are not a multiple of 8 via some padding.
candle::bail!("only supports head sizes that are a multiple of 8 (got {head_size_og})")
}
if num_heads % num_heads_k != 0 {
candle::bail!("number of k/v heads {num_heads_k} must divide number of heads in query {num_heads}")
}
let nseqlens_q = seqlens_q_layout.shape().dims1()?;
if nseqlens_q < 2 {
candle::bail!("seqlens_q should have a len >= 2 {nseqlens_q}")
}
let nseqlens_k = seqlens_k_layout.shape().dims1()?;
if nseqlens_k != nseqlens_q {
candle::bail!("seqlens_q and seqlens_k should have the same number of elements {nseqlens_q} <> {nseqlens_k}")
}
let batch_size = nseqlens_q - 1;
let stream = dev.cuda_stream();
let alibi_slopes_ptr = if let Some(alibi_slopes) = &self.alibi_slopes {
if alibi_slopes.dtype() != DType::F32 {
candle::bail!(
"DType mismatch alibi_slopes {:?}, expected {:?}",
alibi_slopes.dtype(),
DType::F32
);
}
let (alibi_slopes, alibi_slopes_layout) = alibi_slopes.storage_and_layout();
if num_heads != alibi_slopes_layout.shape().dims1()? {
candle::bail!(
"shape mismatch alibi_slopes {:?}, expected {:?}",
alibi_slopes_layout.shape(),
(num_heads)
);
}
let alibi_slopes = match &*alibi_slopes {
candle::Storage::Cuda(c) => c.as_cuda_slice::<f32>()?,
_ => candle::bail!("alibi_slopes must be a cuda tensor"),
};
let alibi_slopes = alibi_slopes.slice(alibi_slopes_layout.start_offset()..);
// Dropping the guard here doesn't seem very safe.
let (ptr, _guard) = alibi_slopes.device_ptr(&stream);
ptr as *const core::ffi::c_void
} else {
std::ptr::null()
};
// if window_size_left > self.max_seqlen_k or None => -1
let mut window_size_left = self
.window_size_left
.filter(|v| v <= &self.max_seqlen_k)
.map(|v| v as i32)
.unwrap_or(-1);
// if window_size_right > self.max_seqlen_k or None => -1
let mut window_size_right = self
.window_size_right
.filter(|v| v <= &self.max_seqlen_k)
.map(|v| v as i32)
.unwrap_or(-1);
let head_size = round_multiple(head_size_og, 8);
let head_size_rounded = round_multiple(head_size, 32);
let seqlen_q_rounded = round_multiple(self.max_seqlen_q, 128);
let seqlen_k_rounded = round_multiple(self.max_seqlen_k, 128);
let elem_count = out_shape.elem_count();
let dst = unsafe { dev.alloc::<f16>(elem_count)? };
let softmax_lse = dev.alloc_zeros::<f32>(num_heads * total_q)?;
let is_bf16 = if is_bf16 { 1 } else { 0 };
// Causal is the special case where window_size_right == 0 and window_size_left < 0.
// Local is the more general case where window_size_right >= 0 or window_size_left >= 0.
let is_causal = if window_size_left < 0 && window_size_right == 0 {
1
} else {
0
};
if window_size_left < 0 && window_size_right >= 0 {
window_size_left = self.max_seqlen_k as i32;
}
if window_size_left >= 0 && window_size_right < 0 {
window_size_right = self.max_seqlen_k as i32;
}
unsafe {
let (q_ptr, _guard) = q.device_ptr(&stream);
let (k_ptr, _guard) = k.device_ptr(&stream);
let (v_ptr, _guard) = v.device_ptr(&stream);
let (dst_ptr, _guard) = dst.device_ptr(&stream);
let (softmax_lse_ptr, _guard) = softmax_lse.device_ptr(&stream);
let (seqlens_q_ptr, _guard) = seqlens_q.device_ptr(&stream);
let (seqlens_k_ptr, _guard) = seqlens_k.device_ptr(&stream);
ffi::run_mha(
q_ptr as *const core::ffi::c_void,
k_ptr as *const core::ffi::c_void,
v_ptr as *const core::ffi::c_void,
dst_ptr as *const core::ffi::c_void,
softmax_lse_ptr as *const core::ffi::c_void,
/* alibi_slopes_ptr */ alibi_slopes_ptr as *const core::ffi::c_void,
/* cu_seqlens_q_ptr */ seqlens_q_ptr as *const i32,
/* cu_seqlens_k_ptr */ seqlens_k_ptr as *const i32,
/* q_batch_stride */ 0,
/* k_batch_stride */ 0,
/* v_batch_stride */ 0,
/* o_batch_stride */ 0,
/* alibi_slopes_batch_stride */ 0,
/* q_row_stride */ q_stride[q_rank - 3] as u32,
/* k_row_stride */ k_stride[k_rank - 3] as u32,
/* v_row_stride */ v_stride[v_rank - 3] as u32,
/* o_row_stride */ o_stride[o_rank - 3] as u32,
/* q_head_stride */ q_stride[q_rank - 2] as u32,
/* k_head_stride */ k_stride[k_rank - 2] as u32,
/* v_head_stride */ v_stride[v_rank - 2] as u32,
/* o_head_stride */ o_stride[o_rank - 2] as u32,
/* b */ batch_size as u32,
/* h */ num_heads as u32,
/* h_k */ num_heads_k as u32,
/* d */ head_size as u32,
/* d_rounded */ head_size_rounded as u32,
/* softmax_scale*/ self.softmax_scale,
/* seqlen_q */ self.max_seqlen_q as u32,
/* seqlen_k */ self.max_seqlen_k as u32,
/* seqlen_q_rounded */ seqlen_q_rounded as u32,
/* seqlen_k_rounded */ seqlen_k_rounded as u32,
/* is_bf16 */ is_bf16,
/* is_causal */ is_causal,
/* upadded_lse */ 1,
/* window_size_left */ window_size_left,
/* window_size_right */ window_size_right,
/* softcap */ self.softcap.unwrap_or(0.0),
)
}
let dst = candle::CudaStorage::wrap_cuda_slice(dst, dev.clone());
Ok((dst, out_shape))
}