Spaces:
Sleeping
Sleeping
/****************************************************************************** | |
* Copyright (c) 2023, Tri Dao. | |
******************************************************************************/ | |
void apply_rotary_cuda(const torch::Tensor x1, const torch::Tensor x2, | |
const torch::Tensor cos, const torch::Tensor sin, | |
torch::Tensor out1, torch::Tensor out2, | |
const bool conj) { | |
auto iter = at::TensorIteratorConfig() | |
.add_output(out1) | |
.add_output(out2) | |
.add_input(x1) | |
.add_input(x2) | |
.add_input(cos) | |
.add_input(sin) | |
.check_all_same_dtype(false) | |
.promote_inputs_to_common_dtype(false) | |
.build(); | |
if (!conj) { | |
AT_DISPATCH_FLOATING_TYPES_AND2(at::kBFloat16, at::kHalf, x1.scalar_type(), "rotary_kernel", [&] { | |
at::native::gpu_kernel_multiple_outputs( | |
iter, [] GPU_LAMBDA (scalar_t x1, scalar_t x2, scalar_t cos, | |
scalar_t sin) -> thrust::tuple<scalar_t, scalar_t> { | |
scalar_t out1 = float(x1) * float(cos) - float(x2) * float(sin); | |
scalar_t out2 = float(x1) * float(sin) + float(x2) * float(cos); | |
return {out1, out2}; | |
}); | |
}); | |
} else { | |
AT_DISPATCH_FLOATING_TYPES_AND2(at::kBFloat16, at::kHalf, x1.scalar_type(), "rotary_kernel", [&] { | |
at::native::gpu_kernel_multiple_outputs( | |
iter, [] GPU_LAMBDA (scalar_t x1, scalar_t x2, scalar_t cos, | |
scalar_t sin) -> thrust::tuple<scalar_t, scalar_t> { | |
scalar_t out1 = float(x1) * float(cos) + float(x2) * float(sin); | |
scalar_t out2 = -float(x1) * float(sin) + float(x2) * float(cos); | |
return {out1, out2}; | |
}); | |
}); | |
} | |
} |