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use super::defines::{AfError, Backend, DType}; use super::dim4::Dim4; use super::error::HANDLE_ERROR; use super::util::{af_array, dim_t, void_ptr, HasAfEnum}; use libc::{c_char, c_int, c_longlong, c_uint, c_void}; use std::ffi::CString; use std::marker::PhantomData; // Some unused functions from array.h in C-API of ArrayFire // af_copy_array // af_write_array // af_get_data_ref_count extern "C" { fn af_create_array( out: *mut af_array, data: *const c_void, ndims: c_uint, dims: *const dim_t, aftype: c_uint, ) -> c_int; fn af_create_handle( out: *mut af_array, ndims: c_uint, dims: *const dim_t, aftype: c_uint, ) -> c_int; fn af_device_array( out: *mut af_array, data: *mut c_void, ndims: c_uint, dims: *const dim_t, aftype: c_uint, ) -> c_int; fn af_get_elements(out: *mut dim_t, arr: af_array) -> c_int; fn af_get_type(out: *mut c_uint, arr: af_array) -> c_int; fn af_get_dims( dim0: *mut c_longlong, dim1: *mut c_longlong, dim2: *mut c_longlong, dim3: *mut c_longlong, arr: af_array, ) -> c_int; fn af_get_numdims(result: *mut c_uint, arr: af_array) -> c_int; fn af_is_empty(result: *mut bool, arr: af_array) -> c_int; fn af_is_scalar(result: *mut bool, arr: af_array) -> c_int; fn af_is_row(result: *mut bool, arr: af_array) -> c_int; fn af_is_column(result: *mut bool, arr: af_array) -> c_int; fn af_is_vector(result: *mut bool, arr: af_array) -> c_int; fn af_is_complex(result: *mut bool, arr: af_array) -> c_int; fn af_is_real(result: *mut bool, arr: af_array) -> c_int; fn af_is_double(result: *mut bool, arr: af_array) -> c_int; fn af_is_single(result: *mut bool, arr: af_array) -> c_int; fn af_is_half(result: *mut bool, arr: af_array) -> c_int; fn af_is_integer(result: *mut bool, arr: af_array) -> c_int; fn af_is_bool(result: *mut bool, arr: af_array) -> c_int; fn af_is_realfloating(result: *mut bool, arr: af_array) -> c_int; fn af_is_floating(result: *mut bool, arr: af_array) -> c_int; fn af_is_linear(result: *mut bool, arr: af_array) -> c_int; fn af_is_owner(result: *mut bool, arr: af_array) -> c_int; fn af_is_sparse(result: *mut bool, arr: af_array) -> c_int; fn af_get_data_ptr(data: *mut c_void, arr: af_array) -> c_int; fn af_eval(arr: af_array) -> c_int; fn af_eval_multiple(num: c_int, arrays: *const af_array) -> c_int; fn af_set_manual_eval_flag(flag: c_int) -> c_int; fn af_get_manual_eval_flag(flag: *mut c_int) -> c_int; fn af_retain_array(out: *mut af_array, arr: af_array) -> c_int; fn af_copy_array(out: *mut af_array, arr: af_array) -> c_int; fn af_release_array(arr: af_array) -> c_int; //fn af_print_array(arr: af_array) -> c_int; fn af_print_array_gen(exp: *const c_char, arr: af_array, precision: c_int) -> c_int; fn af_cast(out: *mut af_array, arr: af_array, aftype: c_uint) -> c_int; fn af_get_backend_id(backend: *mut c_uint, input: af_array) -> c_int; fn af_get_device_id(device: *mut c_int, input: af_array) -> c_int; fn af_create_strided_array( arr: *mut af_array, data: *const c_void, offset: dim_t, ndims: c_uint, dims: *const dim_t, strides: *const dim_t, aftype: c_uint, stype: c_uint, ) -> c_int; fn af_get_strides( s0: *mut dim_t, s1: *mut dim_t, s2: *mut dim_t, s3: *mut dim_t, arr: af_array, ) -> c_int; fn af_get_offset(offset: *mut dim_t, arr: af_array) -> c_int; fn af_lock_array(arr: af_array) -> c_int; fn af_unlock_array(arr: af_array) -> c_int; fn af_get_device_ptr(ptr: *mut void_ptr, arr: af_array) -> c_int; fn af_get_allocated_bytes(result: *mut usize, arr: af_array) -> c_int; } /// A multidimensional data container /// /// Currently, Array objects can store only data until four dimensions /// /// ## Sharing Across Threads /// /// While sharing an Array with other threads, there is no need to wrap /// this in an Arc object unless only one such object is required to exist. /// The reason being that ArrayFire's internal Array is appropriately reference /// counted in thread safe manner. However, if you need to modify Array object, /// then please do wrap the object using a Mutex or Read-Write lock. /// /// Examples on how to share Array across threads is illustrated in our /// [book](http://arrayfire.org/arrayfire-rust/book/multi-threading.html) /// /// ### NOTE /// /// All operators(traits) from std::ops module implemented for Array object /// carry out element wise operations. For example, `*` does multiplication of /// elements at corresponding locations in two different Arrays. pub struct Array<T: HasAfEnum> { handle: af_array, /// The phantom marker denotes the /// allocation of data on compute device _marker: PhantomData<T>, } /// Enable safely moving Array objects across threads unsafe impl<T: HasAfEnum> Send for Array<T> {} unsafe impl<T: HasAfEnum> Sync for Array<T> {} macro_rules! is_func { ($doc_str: expr, $fn_name: ident, $ffi_fn: ident) => ( #[doc=$doc_str] pub fn $fn_name(&self) -> bool { unsafe { let mut ret_val: bool = false; let err_val = $ffi_fn(&mut ret_val as *mut bool, self.handle); HANDLE_ERROR(AfError::from(err_val)); ret_val } } ) } impl<T> Array<T> where T: HasAfEnum, { /// Constructs a new Array object /// /// # Examples /// /// An example of creating an Array from f32 array /// /// ```rust /// use arrayfire::{Array, Dim4, print}; /// let values: [f32; 3] = [1.0, 2.0, 3.0]; /// let indices = Array::new(&values, Dim4::new(&[3, 1, 1, 1])); /// print(&indices); /// ``` /// An example of creating an Array from half::f16 array /// /// ```rust /// use arrayfire::{Array, Dim4, is_half_available, print}; /// use half::f16; /// /// let values: [f32; 3] = [1.0, 2.0, 3.0]; /// /// if is_half_available(0) { // Default device is 0, hence the argument /// let half_values = values.iter().map(|&x| f16::from_f32(x)).collect::<Vec<_>>(); /// /// let hvals = Array::new(&half_values, Dim4::new(&[3, 1, 1, 1])); /// /// print(&hvals); /// } else { /// println!("Half support isn't available on this device"); /// } /// ``` /// pub fn new(slice: &[T], dims: Dim4) -> Self { let aftype = T::get_af_dtype(); unsafe { let mut temp: af_array = std::ptr::null_mut(); let err_val = af_create_array( &mut temp as *mut af_array, slice.as_ptr() as *const c_void, dims.ndims() as c_uint, dims.get().as_ptr() as *const c_longlong, aftype as c_uint, ); HANDLE_ERROR(AfError::from(err_val)); temp.into() } } /// Constructs a new Array object from strided data /// /// The data pointed by the slice passed to this function can possibily be offseted using an additional `offset` parameter. pub fn new_strided(slice: &[T], offset: i64, dims: Dim4, strides: Dim4) -> Self { let aftype = T::get_af_dtype(); unsafe { let mut temp: af_array = std::ptr::null_mut(); let err_val = af_create_strided_array( &mut temp as *mut af_array, slice.as_ptr() as *const c_void, offset as dim_t, dims.ndims() as c_uint, dims.get().as_ptr() as *const c_longlong, strides.get().as_ptr() as *const c_longlong, aftype as c_uint, 1 as c_uint, ); HANDLE_ERROR(AfError::from(err_val)); temp.into() } } /// Constructs a new Array object of specified dimensions and type /// /// # Examples /// /// ```rust /// use arrayfire::{Array, Dim4}; /// let garbage_vals = Array::<f32>::new_empty(Dim4::new(&[3, 1, 1, 1])); /// ``` pub fn new_empty(dims: Dim4) -> Self { let aftype = T::get_af_dtype(); unsafe { let mut temp: af_array = std::ptr::null_mut(); let err_val = af_create_handle( &mut temp as *mut af_array, dims.ndims() as c_uint, dims.get().as_ptr() as *const c_longlong, aftype as c_uint, ); HANDLE_ERROR(AfError::from(err_val)); temp.into() } } /// Constructs a new Array object from device pointer /// /// The example show cases the usage using CUDA API, but usage of this function will /// be similar in CPU and OpenCL backends also. In the case of OpenCL backend, the pointer /// would be cl_mem. A short example of how to create an Array from device pointer is /// shown below but for detailed set of examples, please check out the tutorial book /// pages: /// - [Interoperability with CUDA][1] /// - [Interoperability with OpenCL][2] /// /// [1]: http://arrayfire.org/arrayfire-rust/book/cuda-interop.html /// [2]: http://arrayfire.org/arrayfire-rust/book/opencl-interop.html /// /// # Examples /// /// An example of creating an Array device pointer using /// [rustacuda](https://github.com/bheisler/RustaCUDA) crate. The /// example has to be copied to a `bin` crate with following contents in Cargo.toml /// to run successfully. Note that, all required setup for rustacuda and arrayfire crate /// have to completed first. /// ```text /// [package] /// .... /// [dependencies] /// rustacuda = "0.1" /// rustacuda_derive = "0.1" /// rustacuda_core = "0.1" /// arrayfire = "3.7.*" /// ``` /// /// ```rust,ignore ///use arrayfire::*; ///use rustacuda::*; ///use rustacuda::prelude::*; /// ///fn main() { /// let v: Vec<_> = (0u8 .. 100).map(f32::from).collect(); /// /// rustacuda::init(CudaFlags::empty()); /// let device = Device::get_device(0).unwrap(); /// let context = Context::create_and_push(ContextFlags::MAP_HOST | ContextFlags::SCHED_AUTO, /// device).unwrap(); /// // Approach 1 /// { /// let mut buffer = memory::DeviceBuffer::from_slice(&v).unwrap(); /// /// let array_dptr = Array::new_from_device_ptr( /// buffer.as_device_ptr().as_raw_mut(), dim4!(10, 10)); /// /// af_print!("array_dptr", &array_dptr); /// /// array_dptr.lock(); // Needed to avoid free as arrayfire takes ownership /// } /// /// // Approach 2 /// { /// let mut dptr: *mut f32 = std::ptr::null_mut(); /// unsafe { /// dptr = memory::cuda_malloc::<f32>(10*10).unwrap().as_raw_mut(); /// } /// let array_dptr = Array::new_from_device_ptr(dptr, dim4!(10, 10)); /// // note that values might be garbage in the memory pointed out by dptr /// // in this example as it is allocated but not initialized prior to passing /// // along to arrayfire::Array::new* /// /// // After ArrayFire takes over ownership of the pointer, you can use other /// // arrayfire functions as usual. /// af_print!("array_dptr", &array_dptr); /// } ///} /// ``` pub fn new_from_device_ptr(dev_ptr: *mut T, dims: Dim4) -> Self { let aftype = T::get_af_dtype(); unsafe { let mut temp: af_array = std::ptr::null_mut(); let err_val = af_device_array( &mut temp as *mut af_array, dev_ptr as *mut c_void, dims.ndims() as c_uint, dims.get().as_ptr() as *const dim_t, aftype as c_uint, ); HANDLE_ERROR(AfError::from(err_val)); temp.into() } } /// Returns the backend of the Array /// /// # Return Values /// /// Returns an value of type `Backend` which indicates which backend /// was active when Array was created. pub fn get_backend(&self) -> Backend { unsafe { let mut ret_val: u32 = 0; let err_val = af_get_backend_id(&mut ret_val as *mut c_uint, self.handle); HANDLE_ERROR(AfError::from(err_val)); match (err_val, ret_val) { (0, 1) => Backend::CPU, (0, 2) => Backend::CUDA, (0, 3) => Backend::OPENCL, _ => Backend::DEFAULT, } } } /// Returns the device identifier(integer) on which the Array was created /// /// # Return Values /// /// Return the device id on which Array was created. pub fn get_device_id(&self) -> i32 { unsafe { let mut ret_val: i32 = 0; let err_val = af_get_device_id(&mut ret_val as *mut c_int, self.handle); HANDLE_ERROR(AfError::from(err_val)); ret_val } } /// Returns the number of elements in the Array pub fn elements(&self) -> usize { unsafe { let mut ret_val: dim_t = 0; let err_val = af_get_elements(&mut ret_val as *mut dim_t, self.handle); HANDLE_ERROR(AfError::from(err_val)); ret_val as usize } } /// Returns the Array data type pub fn get_type(&self) -> DType { unsafe { let mut ret_val: u32 = 0; let err_val = af_get_type(&mut ret_val as *mut c_uint, self.handle); HANDLE_ERROR(AfError::from(err_val)); DType::from(ret_val) } } /// Returns the dimensions of the Array pub fn dims(&self) -> Dim4 { unsafe { let mut ret0: i64 = 0; let mut ret1: i64 = 0; let mut ret2: i64 = 0; let mut ret3: i64 = 0; let err_val = af_get_dims( &mut ret0 as *mut dim_t, &mut ret1 as *mut dim_t, &mut ret2 as *mut dim_t, &mut ret3 as *mut dim_t, self.handle, ); HANDLE_ERROR(AfError::from(err_val)); Dim4::new(&[ret0 as u64, ret1 as u64, ret2 as u64, ret3 as u64]) } } /// Returns the strides of the Array pub fn strides(&self) -> Dim4 { unsafe { let mut ret0: i64 = 0; let mut ret1: i64 = 0; let mut ret2: i64 = 0; let mut ret3: i64 = 0; let err_val = af_get_strides( &mut ret0 as *mut dim_t, &mut ret1 as *mut dim_t, &mut ret2 as *mut dim_t, &mut ret3 as *mut dim_t, self.handle, ); HANDLE_ERROR(AfError::from(err_val)); Dim4::new(&[ret0 as u64, ret1 as u64, ret2 as u64, ret3 as u64]) } } /// Returns the number of dimensions of the Array pub fn numdims(&self) -> u32 { unsafe { let mut ret_val: u32 = 0; let err_val = af_get_numdims(&mut ret_val as *mut c_uint, self.handle); HANDLE_ERROR(AfError::from(err_val)); ret_val } } /// Returns the offset to the pointer from where data begins pub fn offset(&self) -> i64 { unsafe { let mut ret_val: i64 = 0; let err_val = af_get_offset(&mut ret_val as *mut dim_t, self.handle); HANDLE_ERROR(AfError::from(err_val)); ret_val } } /// Returns the native FFI handle for Rust object `Array` pub unsafe fn get(&self) -> af_array { self.handle } /// Set the native FFI handle for Rust object `Array` pub fn set(&mut self, handle: af_array) { self.handle = handle; } /// Copies the data from the Array to the mutable slice `data` /// /// # Examples /// /// Basic case /// ``` /// # use arrayfire::{Array,Dim4,HasAfEnum}; /// let a:Vec<u8> = vec![0,1,2,3,4,5,6,7,8]; /// let b = Array::<u8>::new(&a,Dim4::new(&[3,3,1,1])); /// let mut c = vec!(u8::default();b.elements()); /// b.host(&mut c); /// assert_eq!(c,a); /// ``` /// Generic case /// ``` /// # use arrayfire::{Array,Dim4,HasAfEnum}; /// fn to_vec<T:HasAfEnum+Default+Clone>(array:&Array<T>) -> Vec<T> { /// let mut vec = vec!(T::default();array.elements()); /// array.host(&mut vec); /// return vec; /// } /// /// let a = Array::<u8>::new(&[0,1,2,3,4,5,6,7,8],Dim4::new(&[3,3,1,1])); /// let b:Vec<u8> = vec![0,1,2,3,4,5,6,7,8]; /// assert_eq!(to_vec(&a),b); /// ``` pub fn host<O: HasAfEnum>(&self, data: &mut [O]) { if data.len() != self.elements() { HANDLE_ERROR(AfError::ERR_SIZE); } unsafe { let err_val = af_get_data_ptr(data.as_mut_ptr() as *mut c_void, self.handle); HANDLE_ERROR(AfError::from(err_val)); } } /// Evaluates any pending lazy expressions that represent the data in the Array object pub fn eval(&self) { unsafe { let err_val = af_eval(self.handle); HANDLE_ERROR(AfError::from(err_val)); } } /// Makes an copy of the Array /// /// This does a deep copy of the data into a new Array pub fn copy(&self) -> Self { unsafe { let mut temp: af_array = std::ptr::null_mut(); let err_val = af_copy_array(&mut temp as *mut af_array, self.handle); HANDLE_ERROR(AfError::from(err_val)); temp.into() } } is_func!("Check if Array is empty", is_empty, af_is_empty); is_func!("Check if Array is scalar", is_scalar, af_is_scalar); is_func!("Check if Array is a row", is_row, af_is_row); is_func!("Check if Array is a column", is_column, af_is_column); is_func!("Check if Array is a vector", is_vector, af_is_vector); is_func!( "Check if Array is of real (not complex) type", is_real, af_is_real ); is_func!( "Check if Array is of complex type", is_complex, af_is_complex ); is_func!( "Check if Array's numerical type is of double precision", is_double, af_is_double ); is_func!( "Check if Array's numerical type is of single precision", is_single, af_is_single ); is_func!( "Check if Array's numerical type is of half precision", is_half, af_is_half ); is_func!( "Check if Array is of integral type", is_integer, af_is_integer ); is_func!("Check if Array is of boolean type", is_bool, af_is_bool); is_func!( "Check if Array is floating point real(not complex) data type", is_realfloating, af_is_realfloating ); is_func!( "Check if Array is floating point type, either real or complex data", is_floating, af_is_floating ); is_func!( "Check if Array's memory layout is continuous and one dimensional", is_linear, af_is_linear ); is_func!("Check if Array is a sparse matrix", is_sparse, af_is_sparse); is_func!( "Check if Array's memory is owned by it and not a view of another Array", is_owner, af_is_owner ); /// Cast the Array data type to `target_type` pub fn cast<O: HasAfEnum>(&self) -> Array<O> { let trgt_type = O::get_af_dtype(); unsafe { let mut temp: af_array = std::ptr::null_mut(); let err_val = af_cast(&mut temp as *mut af_array, self.handle, trgt_type as c_uint); HANDLE_ERROR(AfError::from(err_val)); temp.into() } } /// Lock the device buffer in the memory manager /// /// Locked buffers are not freed by memory manager until unlock is called. pub fn lock(&self) { unsafe { let err_val = af_lock_array(self.handle); HANDLE_ERROR(AfError::from(err_val)); } } /// Unlock the device buffer in the memory manager /// /// This function will give back the control over the device pointer to the /// memory manager. pub fn unlock(&self) { unsafe { let err_val = af_unlock_array(self.handle); HANDLE_ERROR(AfError::from(err_val)); } } /// Get the device pointer and lock the buffer in memory manager /// /// The device pointer is not freed by memory manager until unlock is called. pub unsafe fn device_ptr(&self) -> void_ptr { let mut temp: void_ptr = std::ptr::null_mut(); let err_val = af_get_device_ptr(&mut temp as *mut void_ptr, self.handle); HANDLE_ERROR(AfError::from(err_val)); temp } /// Get the size of physical allocated bytes. /// /// This function will return the size of the parent/owner if the current Array object is an /// indexed Array. pub fn get_allocated_bytes(&self) -> usize { unsafe { let mut temp: usize = 0; let err_val = af_get_allocated_bytes(&mut temp as *mut usize, self.handle); HANDLE_ERROR(AfError::from(err_val)); temp } } } /// Used for creating Array object from native /// resource id, an 64 bit integer impl<T: HasAfEnum> Into<Array<T>> for af_array { fn into(self) -> Array<T> { Array { handle: self, _marker: PhantomData, } } } /// Returns a new Array object after incrementing the reference count of native resource /// /// Cloning an Array does not do a deep copy of the underlying array data. It increments the /// reference count of native resource and returns you the new reference in the form a new Array /// object. /// /// To create a deep copy use /// [copy()](./struct.Array.html#method.copy) impl<T> Clone for Array<T> where T: HasAfEnum, { fn clone(&self) -> Self { unsafe { let mut temp: af_array = std::ptr::null_mut(); let ret_val = af_retain_array(&mut temp as *mut af_array, self.handle); match ret_val { 0 => temp.into(), _ => panic!("Weak copy of Array failed with error code: {}", ret_val), } } } } /// To free resources when Array goes out of scope impl<T> Drop for Array<T> where T: HasAfEnum, { fn drop(&mut self) { unsafe { let ret_val = af_release_array(self.handle); match ret_val { 0 => (), _ => panic!("Array<T> drop failed with error code: {}", ret_val), } } } } /// Print data in the Array /// /// # Parameters /// /// - `input` is the Array to be printed /// /// # Examples /// /// ```rust /// use arrayfire::{Dim4, print, randu}; /// println!("Create a 5-by-3 matrix of random floats on the GPU"); /// let dims = Dim4::new(&[5, 3, 1, 1]); /// let a = randu::<f32>(dims); /// print(&a); /// ``` /// /// The sample output will look like below: /// /// ```text /// [5 3 1 1] /// 0.7402 0.4464 0.7762 /// 0.9210 0.6673 0.2948 /// 0.0390 0.1099 0.7140 /// 0.9690 0.4702 0.3585 /// 0.9251 0.5132 0.6814 /// ``` pub fn print<T: HasAfEnum>(input: &Array<T>) { let emptystring = CString::new("").unwrap(); unsafe { let err_val = af_print_array_gen( emptystring.to_bytes_with_nul().as_ptr() as *const c_char, input.get(), 4, ); HANDLE_ERROR(AfError::from(err_val)); } } /// Generalized Array print function /// /// Use this function to print Array data with arbitrary preicsion /// /// # Parameters /// /// - `msg` is message to be printed before printing the Array data /// - `input` is the Array to be printed /// - `precision` is data precision with which Array has to be printed /// /// # Examples /// /// ```rust /// use arrayfire::{Dim4, print_gen, randu}; /// println!("Create a 5-by-3 matrix of random floats on the GPU"); /// let dims = Dim4::new(&[5, 3, 1, 1]); /// let a = randu::<f32>(dims); /// print_gen(String::from("Random Array"), &a, Some(6)); /// ``` /// /// The sample output will look like below: /// /// ```text /// Random Array /// /// [5 3 1 1] /// 0.740276 0.446440 0.776202 /// 0.921094 0.667321 0.294810 /// 0.039014 0.109939 0.714090 /// 0.969058 0.470269 0.358590 /// 0.925181 0.513225 0.681451 /// ``` pub fn print_gen<T: HasAfEnum>(msg: String, input: &Array<T>, precision: Option<i32>) { let emptystring = CString::new(msg.as_bytes()).unwrap(); unsafe { let err_val = af_print_array_gen( emptystring.to_bytes_with_nul().as_ptr() as *const c_char, input.get(), match precision { Some(p) => p, None => 4, } as c_int, ); HANDLE_ERROR(AfError::from(err_val)); } } /// evaluate multiple arrays /// /// Use this function to evaluate multiple arrays in single call /// /// # Parameters /// /// - `inputs` are the list of arrays to be evaluated pub fn eval_multiple<T: HasAfEnum>(inputs: Vec<&Array<T>>) { unsafe { let mut v = Vec::new(); for i in inputs { v.push(i.get()); } let err_val = af_eval_multiple(v.len() as c_int, v.as_ptr() as *const af_array); HANDLE_ERROR(AfError::from(err_val)); } } /// Set eval flag value /// /// This function can be used to toggle on/off the manual evaluation of arrays. /// /// # Parameters /// /// - `flag` is a boolean value indicating manual evaluation setting pub fn set_manual_eval(flag: bool) { unsafe { let err_val = af_set_manual_eval_flag(flag as c_int); HANDLE_ERROR(AfError::from(err_val)); } } /// Get eval flag value /// /// This function can be used to find out if manual evaluation of arrays is /// turned on or off. /// /// # Return Values /// /// A boolean indicating manual evaluation setting. pub fn is_eval_manual() -> bool { unsafe { let mut ret_val: i32 = 0; let err_val = af_get_manual_eval_flag(&mut ret_val as *mut c_int); HANDLE_ERROR(AfError::from(err_val)); ret_val > 0 } } #[cfg(feature = "afserde")] mod afserde { // Reimport required from super scope use super::{Array, DType, Dim4, HasAfEnum}; use serde::de::{Deserializer, Error, Unexpected}; use serde::ser::Serializer; use serde::{Deserialize, Serialize}; #[derive(Debug, Serialize, Deserialize)] struct ArrayOnHost<T: HasAfEnum + std::fmt::Debug> { dtype: DType, shape: Dim4, data: Vec<T>, } /// Serialize Implementation of Array impl<T> Serialize for Array<T> where T: std::default::Default + std::clone::Clone + Serialize + HasAfEnum + std::fmt::Debug, { fn serialize<S>(&self, serializer: S) -> Result<S::Ok, S::Error> where S: Serializer, { let mut vec = vec![T::default(); self.elements()]; self.host(&mut vec); let arr_on_host = ArrayOnHost { dtype: self.get_type(), shape: self.dims().clone(), data: vec, }; arr_on_host.serialize(serializer) } } /// Deserialize Implementation of Array impl<'de, T> Deserialize<'de> for Array<T> where T: Deserialize<'de> + HasAfEnum + std::fmt::Debug, { fn deserialize<D>(deserializer: D) -> Result<Self, D::Error> where D: Deserializer<'de>, { match ArrayOnHost::<T>::deserialize(deserializer) { Ok(arr_on_host) => { let read_dtype = arr_on_host.dtype; let expected_dtype = T::get_af_dtype(); if expected_dtype != read_dtype { let error_msg = format!( "data type is {:?}, deserialized type is {:?}", expected_dtype, read_dtype ); return Err(Error::invalid_value(Unexpected::Enum, &error_msg.as_str())); } Ok(Array::<T>::new( &arr_on_host.data, arr_on_host.shape.clone(), )) } Err(err) => Err(err), } } } } #[cfg(test)] mod tests { use super::super::array::print; use super::super::data::constant; use super::super::device::{info, set_device, sync}; use crate::dim4; use std::sync::{mpsc, Arc, RwLock}; use std::thread; #[test] fn thread_move_array() { // ANCHOR: move_array_to_thread set_device(0); info(); let mut a = constant(1, dim4!(3, 3)); let handle = thread::spawn(move || { //set_device to appropriate device id is required in each thread set_device(0); println!("\nFrom thread {:?}", thread::current().id()); a += constant(2, dim4!(3, 3)); print(&a); }); //Need to join other threads as main thread holds arrayfire context handle.join().unwrap(); // ANCHOR_END: move_array_to_thread } #[test] fn thread_borrow_array() { set_device(0); info(); let a = constant(1i32, dim4!(3, 3)); let handle = thread::spawn(move || { set_device(0); //set_device to appropriate device id is required in each thread println!("\nFrom thread {:?}", thread::current().id()); print(&a); }); //Need to join other threads as main thread holds arrayfire context handle.join().unwrap(); } // ANCHOR: multiple_threads_enum_def #[derive(Debug, Copy, Clone)] enum Op { Add, Sub, Div, Mul, } // ANCHOR_END: multiple_threads_enum_def #[test] fn read_from_multiple_threads() { // ANCHOR: read_from_multiple_threads let ops: Vec<_> = vec![Op::Add, Op::Sub, Op::Div, Op::Mul, Op::Add, Op::Div]; // Set active GPU/device on main thread on which // subsequent Array objects are created set_device(0); // ArrayFire Array's are internally maintained via atomic reference counting // Thus, they need no Arc wrapping while moving to another thread. // Just call clone method on the object and share the resulting clone object let a = constant(1.0f32, dim4!(3, 3)); let b = constant(2.0f32, dim4!(3, 3)); let threads: Vec<_> = ops .into_iter() .map(|op| { let x = a.clone(); let y = b.clone(); thread::spawn(move || { set_device(0); //Both of objects are created on device 0 earlier match op { Op::Add => { let _c = x + y; } Op::Sub => { let _c = x - y; } Op::Div => { let _c = x / y; } Op::Mul => { let _c = x * y; } } sync(0); thread::sleep(std::time::Duration::new(1, 0)); }) }) .collect(); for child in threads { let _ = child.join(); } // ANCHOR_END: read_from_multiple_threads } #[test] fn access_using_rwlock() { // ANCHOR: access_using_rwlock let ops: Vec<_> = vec![Op::Add, Op::Sub, Op::Div, Op::Mul, Op::Add, Op::Div]; // Set active GPU/device on main thread on which // subsequent Array objects are created set_device(0); let c = constant(0.0f32, dim4!(3, 3)); let a = constant(1.0f32, dim4!(3, 3)); let b = constant(2.0f32, dim4!(3, 3)); // Move ownership to RwLock and wrap in Arc since same object is to be modified let c_lock = Arc::new(RwLock::new(c)); // a and b are internally reference counted by ArrayFire. Unless there // is prior known need that they may be modified, you can simply clone // the objects pass them to threads let threads: Vec<_> = ops .into_iter() .map(|op| { let x = a.clone(); let y = b.clone(); let wlock = c_lock.clone(); thread::spawn(move || { //Both of objects are created on device 0 in main thread //Every thread needs to set the device that it is going to //work on. Note that all Array objects must have been created //on same device as of date this is written on. set_device(0); if let Ok(mut c_guard) = wlock.write() { match op { Op::Add => { *c_guard += x + y; } Op::Sub => { *c_guard += x - y; } Op::Div => { *c_guard += x / y; } Op::Mul => { *c_guard += x * y; } } } }) }) .collect(); for child in threads { let _ = child.join(); } //let read_guard = c_lock.read().unwrap(); //af_print!("C after threads joined", *read_guard); //C after threads joined //[3 3 1 1] // 8.0000 8.0000 8.0000 // 8.0000 8.0000 8.0000 // 8.0000 8.0000 8.0000 // ANCHOR_END: access_using_rwlock } #[test] fn accum_using_channel() { // ANCHOR: accum_using_channel let ops: Vec<_> = vec![Op::Add, Op::Sub, Op::Div, Op::Mul, Op::Add, Op::Div]; let ops_len: usize = ops.len(); // Set active GPU/device on main thread on which // subsequent Array objects are created set_device(0); let mut c = constant(0.0f32, dim4!(3, 3)); let a = constant(1.0f32, dim4!(3, 3)); let b = constant(2.0f32, dim4!(3, 3)); let (tx, rx) = mpsc::channel(); let threads: Vec<_> = ops .into_iter() .map(|op| { // a and b are internally reference counted by ArrayFire. Unless there // is prior known need that they may be modified, you can simply clone // the objects pass them to threads let x = a.clone(); let y = b.clone(); let tx_clone = tx.clone(); thread::spawn(move || { //Both of objects are created on device 0 in main thread //Every thread needs to set the device that it is going to //work on. Note that all Array objects must have been created //on same device as of date this is written on. set_device(0); let c = match op { Op::Add => x + y, Op::Sub => x - y, Op::Div => x / y, Op::Mul => x * y, }; tx_clone.send(c).unwrap(); }) }) .collect(); for _i in 0..ops_len { c += rx.recv().unwrap(); } //Need to join other threads as main thread holds arrayfire context for child in threads { let _ = child.join(); } //af_print!("C after accumulating results", &c); //[3 3 1 1] // 8.0000 8.0000 8.0000 // 8.0000 8.0000 8.0000 // 8.0000 8.0000 8.0000 // ANCHOR_END: accum_using_channel } #[cfg(feature = "afserde")] mod serde_tests { use super::super::Array; use crate::algorithm::sum_all; use crate::randu; #[test] fn array_serde_json() { let input = randu!(u8; 2, 2); let serd = match serde_json::to_string(&input) { Ok(serialized_str) => serialized_str, Err(e) => e.to_string(), }; let deserd: Array<u8> = serde_json::from_str(&serd).unwrap(); assert_eq!(sum_all(&(input - deserd)), (0u32, 0u32)); } #[test] fn array_serde_bincode() { let input = randu!(u8; 2, 2); let encoded = match bincode::serialize(&input) { Ok(encoded) => encoded, Err(_) => vec![], }; let decoded: Array<u8> = bincode::deserialize(&encoded).unwrap(); assert_eq!(sum_all(&(input - decoded)), (0u32, 0u32)); } } }