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use crate::backend::BackendDevice;
use crate::cpu_backend::CpuDevice;
use crate::{CpuStorage, DType, Result, Shape, Storage, WithDType};
/// A `DeviceLocation` represents a physical device whereas multiple `Device`
/// can live on the same location (typically for cuda devices).
#[derive(Debug, Copy, Clone, PartialEq, Eq, Hash)]
pub enum DeviceLocation {
Cpu,
Cuda { gpu_id: usize },
}
#[derive(Debug, Clone)]
pub enum Device {
Cpu,
Cuda(crate::CudaDevice),
}
// TODO: Should we back the cpu implementation using the NdArray crate or similar?
pub trait NdArray {
fn shape(&self) -> Result<Shape>;
fn to_cpu_storage(&self) -> CpuStorage;
}
impl<S: WithDType> NdArray for S {
fn shape(&self) -> Result<Shape> {
Ok(Shape::from(()))
}
fn to_cpu_storage(&self) -> CpuStorage {
S::to_cpu_storage(&[*self])
}
}
impl<S: WithDType, const N: usize> NdArray for &[S; N] {
fn shape(&self) -> Result<Shape> {
Ok(Shape::from(self.len()))
}
fn to_cpu_storage(&self) -> CpuStorage {
S::to_cpu_storage(self.as_slice())
}
}
impl<S: WithDType> NdArray for &[S] {
fn shape(&self) -> Result<Shape> {
Ok(Shape::from(self.len()))
}
fn to_cpu_storage(&self) -> CpuStorage {
S::to_cpu_storage(self)
}
}
impl<S: WithDType, const N: usize, const M: usize> NdArray for &[[S; N]; M] {
fn shape(&self) -> Result<Shape> {
Ok(Shape::from((M, N)))
}
fn to_cpu_storage(&self) -> CpuStorage {
S::to_cpu_storage_owned(self.concat())
}
}
impl<S: WithDType, const N1: usize, const N2: usize, const N3: usize> NdArray
for &[[[S; N3]; N2]; N1]
{
fn shape(&self) -> Result<Shape> {
Ok(Shape::from((N1, N2, N3)))
}
fn to_cpu_storage(&self) -> CpuStorage {
let mut vec = Vec::with_capacity(N1 * N2 * N3);
for i1 in 0..N1 {
for i2 in 0..N2 {
vec.extend(self[i1][i2])
}
}
S::to_cpu_storage_owned(vec)
}
}
impl Device {
pub fn new_cuda(ordinal: usize) -> Result<Self> {
Ok(Self::Cuda(crate::CudaDevice::new(ordinal)?))
}
pub fn same_device(&self, rhs: &Self) -> bool {
match (self, rhs) {
(Self::Cpu, Self::Cpu) => true,
(Self::Cuda(lhs), Self::Cuda(rhs)) => lhs.same_device(rhs),
_ => false,
}
}
pub fn location(&self) -> DeviceLocation {
match self {
Self::Cpu => DeviceLocation::Cpu,
Self::Cuda(device) => device.location(),
}
}
pub fn is_cpu(&self) -> bool {
match self {
Self::Cpu => true,
Self::Cuda(_) => false,
}
}
pub fn is_cuda(&self) -> bool {
match self {
Self::Cpu => false,
Self::Cuda(_) => true,
}
}
pub fn cuda_if_available(ordinal: usize) -> Result<Self> {
if crate::utils::cuda_is_available() {
Self::new_cuda(ordinal)
} else {
Ok(Self::Cpu)
}
}
pub(crate) fn rand_uniform_f64(
&self,
lo: f64,
up: f64,
shape: &Shape,
dtype: DType,
) -> Result<Storage> {
match self {
Device::Cpu => {
let storage = CpuDevice.rand_uniform(shape, dtype, lo, up)?;
Ok(Storage::Cpu(storage))
}
Device::Cuda(device) => {
let storage = device.rand_uniform(shape, dtype, lo, up)?;
Ok(Storage::Cuda(storage))
}
}
}
pub(crate) fn rand_uniform<T: crate::FloatDType>(
&self,
lo: T,
up: T,
shape: &Shape,
) -> Result<Storage> {
self.rand_uniform_f64(lo.to_f64(), up.to_f64(), shape, T::DTYPE)
}
pub(crate) fn rand_normal_f64(
&self,
mean: f64,
std: f64,
shape: &Shape,
dtype: DType,
) -> Result<Storage> {
match self {
Device::Cpu => {
let storage = CpuDevice.rand_normal(shape, dtype, mean, std)?;
Ok(Storage::Cpu(storage))
}
Device::Cuda(device) => {
let storage = device.rand_normal(shape, dtype, mean, std)?;
Ok(Storage::Cuda(storage))
}
}
}
pub(crate) fn rand_normal<T: crate::FloatDType>(
&self,
mean: T,
std: T,
shape: &Shape,
) -> Result<Storage> {
self.rand_normal_f64(mean.to_f64(), std.to_f64(), shape, T::DTYPE)
}
pub(crate) fn ones(&self, shape: &Shape, dtype: DType) -> Result<Storage> {
match self {
Device::Cpu => {
let storage = CpuDevice.ones_impl(shape, dtype)?;
Ok(Storage::Cpu(storage))
}
Device::Cuda(device) => {
let storage = device.ones_impl(shape, dtype)?;
Ok(Storage::Cuda(storage))
}
}
}
pub(crate) fn zeros(&self, shape: &Shape, dtype: DType) -> Result<Storage> {
match self {
Device::Cpu => {
let storage = CpuDevice.zeros_impl(shape, dtype)?;
Ok(Storage::Cpu(storage))
}
Device::Cuda(device) => {
let storage = device.zeros_impl(shape, dtype)?;
Ok(Storage::Cuda(storage))
}
}
}
pub(crate) fn storage<A: NdArray>(&self, array: A) -> Result<Storage> {
match self {
Device::Cpu => Ok(Storage::Cpu(array.to_cpu_storage())),
Device::Cuda(device) => {
let storage = array.to_cpu_storage();
let storage = device.storage_from_cpu_storage(&storage)?;
Ok(Storage::Cuda(storage))
}
}
}
pub(crate) fn storage_owned<S: WithDType>(&self, data: Vec<S>) -> Result<Storage> {
match self {
Device::Cpu => Ok(Storage::Cpu(S::to_cpu_storage_owned(data))),
Device::Cuda(device) => {
let storage = S::to_cpu_storage_owned(data);
let storage = device.storage_from_cpu_storage(&storage)?;
Ok(Storage::Cuda(storage))
}
}
}
}
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