| /****************************************************************************** |
| * Copyright (c) 2011, Duane Merrill. All rights reserved. |
| * Copyright (c) 2011-2018, NVIDIA CORPORATION. All rights reserved. |
| * |
| * Redistribution and use in source and binary forms, with or without |
| * modification, are permitted provided that the following conditions are met: |
| * * Redistributions of source code must retain the above copyright |
| * notice, this list of conditions and the following disclaimer. |
| * * Redistributions in binary form must reproduce the above copyright |
| * notice, this list of conditions and the following disclaimer in the |
| * documentation and/or other materials provided with the distribution. |
| * * Neither the name of the NVIDIA CORPORATION nor the |
| * names of its contributors may be used to endorse or promote products |
| * derived from this software without specific prior written permission. |
| * |
| * THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" AND |
| * ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE IMPLIED |
| * WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE |
| * DISCLAIMED. IN NO EVENT SHALL NVIDIA CORPORATION BE LIABLE FOR ANY |
| * DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES |
| * (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; |
| * LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND |
| * ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT |
| * (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE OF THIS |
| * SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. |
| * |
| ******************************************************************************/ |
| |
| /** |
| * @file |
| * cub::DeviceRle provides device-wide, parallel operations for run-length-encoding sequences of |
| * data items residing within device-accessible memory. |
| */ |
| |
| #pragma once |
| |
| #include <cub/agent/agent_rle.cuh> |
| #include <cub/config.cuh> |
| #include <cub/device/dispatch/dispatch_scan.cuh> |
| #include <cub/grid/grid_queue.cuh> |
| #include <cub/thread/thread_operators.cuh> |
| #include <cub/util_device.cuh> |
| #include <cub/util_math.cuh> |
| |
| #include <thrust/system/cuda/detail/core/triple_chevron_launch.h> |
| |
| #include <cstdio> |
| #include <iterator> |
| |
| #include <nv/target> |
| |
| CUB_NAMESPACE_BEGIN |
| |
| /****************************************************************************** |
| * Kernel entry points |
| *****************************************************************************/ |
| |
| /** |
| * Select kernel entry point (multi-block) |
| * |
| * Performs functor-based selection if SelectOp functor type != NullType |
| * Otherwise performs flag-based selection if FlagIterator's value type != NullType |
| * Otherwise performs discontinuity selection (keep unique) |
| * |
| * @tparam AgentRlePolicyT |
| * Parameterized AgentRlePolicyT tuning policy type |
| * |
| * @tparam InputIteratorT |
| * Random-access input iterator type for reading input items \iterator |
| * |
| * @tparam OffsetsOutputIteratorT |
| * Random-access output iterator type for writing run-offset values \iterator |
| * |
| * @tparam LengthsOutputIteratorT |
| * Random-access output iterator type for writing run-length values \iterator |
| * |
| * @tparam NumRunsOutputIteratorT |
| * Output iterator type for recording the number of runs encountered \iterator |
| * |
| * @tparam ScanTileStateT |
| * Tile status interface type |
| * |
| * @tparam EqualityOpT |
| * T equality operator type |
| * |
| * @tparam OffsetT |
| * Signed integer type for global offsets |
| * |
| * @param d_in |
| * Pointer to input sequence of data items |
| * |
| * @param d_offsets_out |
| * Pointer to output sequence of run-offsets |
| * |
| * @param d_lengths_out |
| * Pointer to output sequence of run-lengths |
| * |
| * @param d_num_runs_out |
| * Pointer to total number of runs (i.e., length of `d_offsets_out`) |
| * |
| * @param tile_status |
| * Tile status interface |
| * |
| * @param equality_op |
| * Equality operator for input items |
| * |
| * @param num_items |
| * Total number of input items (i.e., length of `d_in`) |
| * |
| * @param num_tiles |
| * Total number of tiles for the entire problem |
| */ |
| template <typename ChainedPolicyT, |
| typename InputIteratorT, |
| typename OffsetsOutputIteratorT, |
| typename LengthsOutputIteratorT, |
| typename NumRunsOutputIteratorT, |
| typename ScanTileStateT, |
| typename EqualityOpT, |
| typename OffsetT> |
| __launch_bounds__(int(ChainedPolicyT::ActivePolicy::RleSweepPolicyT::BLOCK_THREADS)) __global__ |
| void DeviceRleSweepKernel(InputIteratorT d_in, |
| OffsetsOutputIteratorT d_offsets_out, |
| LengthsOutputIteratorT d_lengths_out, |
| NumRunsOutputIteratorT d_num_runs_out, |
| ScanTileStateT tile_status, |
| EqualityOpT equality_op, |
| OffsetT num_items, |
| int num_tiles) |
| { |
| using AgentRlePolicyT = typename ChainedPolicyT::ActivePolicy::RleSweepPolicyT; |
| |
| // Thread block type for selecting data from input tiles |
| using AgentRleT = AgentRle<AgentRlePolicyT, |
| InputIteratorT, |
| OffsetsOutputIteratorT, |
| LengthsOutputIteratorT, |
| EqualityOpT, |
| OffsetT>; |
|
|
| // Shared memory for AgentRle |
| __shared__ typename AgentRleT::TempStorage temp_storage; |
| |
| // Process tiles |
| AgentRleT(temp_storage, d_in, d_offsets_out, d_lengths_out, equality_op, num_items) |
| .ConsumeRange(num_tiles, tile_status, d_num_runs_out); |
| } |
|
|
| /****************************************************************************** |
| * Dispatch |
| ******************************************************************************/ |
| |
| namespace detail |
| { |
| |
| template <class T> |
| struct device_rle_policy_hub |
| { |
| /// SM35 |
| struct Policy350 : ChainedPolicy<350, Policy350, Policy350> |
| { |
| enum |
| { |
| NOMINAL_4B_ITEMS_PER_THREAD = 15, |
| |
| ITEMS_PER_THREAD = CUB_MIN(NOMINAL_4B_ITEMS_PER_THREAD, |
| CUB_MAX(1, (NOMINAL_4B_ITEMS_PER_THREAD * 4 / sizeof(T)))), |
| }; |
| |
| using RleSweepPolicyT = |
| AgentRlePolicy<96, |
| ITEMS_PER_THREAD, |
| BLOCK_LOAD_DIRECT, |
| LOAD_LDG, |
| true, |
| BLOCK_SCAN_WARP_SCANS, |
| detail::default_reduce_by_key_delay_constructor_t<int, int>>; |
| }; |
| |
| using MaxPolicy = Policy350; |
| }; |
| |
| } // namespace detail |
| |
| /** |
| * Utility class for dispatching the appropriately-tuned kernels for DeviceRle |
| * |
| * @tparam InputIteratorT |
| * Random-access input iterator type for reading input items \iterator |
| * |
| * @tparam OffsetsOutputIteratorT |
| * Random-access output iterator type for writing run-offset values \iterator |
| * |
| * @tparam LengthsOutputIteratorT |
| * Random-access output iterator type for writing run-length values \iterator |
| * |
| * @tparam NumRunsOutputIteratorT |
| * Output iterator type for recording the number of runs encountered \iterator |
| * |
| * @tparam EqualityOpT |
| * T equality operator type |
| * |
| * @tparam OffsetT |
| * Signed integer type for global offsets |
| * |
| * @tparam SelectedPolicy |
| * Implementation detail, do not specify directly, requirements on the |
| * content of this type are subject to breaking change. |
| */ |
| template <typename InputIteratorT, |
| typename OffsetsOutputIteratorT, |
| typename LengthsOutputIteratorT, |
| typename NumRunsOutputIteratorT, |
| typename EqualityOpT, |
| typename OffsetT, |
| typename SelectedPolicy = |
| detail::device_rle_policy_hub<cub::detail::value_t<InputIteratorT>>> |
| struct DeviceRleDispatch |
| { |
| /****************************************************************************** |
| * Types and constants |
| ******************************************************************************/ |
| |
| // The lengths output value type |
| using LengthT = cub::detail::non_void_value_t<LengthsOutputIteratorT, OffsetT>; |
| |
| enum |
| { |
| INIT_KERNEL_THREADS = 128, |
| }; |
| |
| // Tile status descriptor interface type |
| using ScanTileStateT = ReduceByKeyScanTileState<LengthT, OffsetT>; |
| |
| void *d_temp_storage; |
| size_t &temp_storage_bytes; |
| InputIteratorT d_in; |
| OffsetsOutputIteratorT d_offsets_out; |
| LengthsOutputIteratorT d_lengths_out; |
| NumRunsOutputIteratorT d_num_runs_out; |
| EqualityOpT equality_op; |
| OffsetT num_items; |
| cudaStream_t stream; |
| |
| CUB_RUNTIME_FUNCTION __forceinline__ DeviceRleDispatch(void *d_temp_storage, |
| size_t &temp_storage_bytes, |
| InputIteratorT d_in, |
| OffsetsOutputIteratorT d_offsets_out, |
| LengthsOutputIteratorT d_lengths_out, |
| NumRunsOutputIteratorT d_num_runs_out, |
| EqualityOpT equality_op, |
| OffsetT num_items, |
| cudaStream_t stream) |
| : d_temp_storage(d_temp_storage) |
| , temp_storage_bytes(temp_storage_bytes) |
| , d_in(d_in) |
| , d_offsets_out(d_offsets_out) |
| , d_lengths_out(d_lengths_out) |
| , d_num_runs_out(d_num_runs_out) |
| , equality_op(equality_op) |
| , num_items(num_items) |
| , stream(stream) |
| {} |
| |
| /****************************************************************************** |
| * Dispatch entrypoints |
| ******************************************************************************/ |
| |
| /** |
| * Internal dispatch routine for computing a device-wide run-length-encode using the |
| * specified kernel functions. |
| * |
| * @tparam DeviceScanInitKernelPtr |
| * Function type of cub::DeviceScanInitKernel |
| * |
| * @tparam DeviceRleSweepKernelPtr |
| * Function type of cub::DeviceRleSweepKernelPtr |
| * |
| * @param d_temp_storage |
| * Device-accessible allocation of temporary storage. |
| * When NULL, the required allocation size is written to |
| * `temp_storage_bytes` and no work is done. |
| * |
| * @param temp_storage_bytes |
| * Reference to size in bytes of `d_temp_storage` allocation |
| * |
| * @param d_in |
| * Pointer to the input sequence of data items |
| * |
| * @param d_offsets_out |
| * Pointer to the output sequence of run-offsets |
| * |
| * @param d_lengths_out |
| * Pointer to the output sequence of run-lengths |
| * |
| * @param d_num_runs_out |
| * Pointer to the total number of runs encountered (i.e., length of `d_offsets_out`) |
| * |
| * @param equality_op |
| * Equality operator for input items |
| * |
| * @param num_items |
| * Total number of input items (i.e., length of `d_in`) |
| * |
| * @param stream |
| * CUDA stream to launch kernels within. Default is stream<sub>0</sub>. |
| * |
| * @param ptx_version |
| * PTX version of dispatch kernels |
| * |
| * @param device_scan_init_kernel |
| * Kernel function pointer to parameterization of cub::DeviceScanInitKernel |
| * |
| * @param device_rle_sweep_kernel |
| * Kernel function pointer to parameterization of cub::DeviceRleSweepKernel |
| */ |
| template <typename ActivePolicyT, typename DeviceScanInitKernelPtr, typename DeviceRleSweepKernelPtr> |
| CUB_RUNTIME_FUNCTION __forceinline__ cudaError_t |
| Invoke(DeviceScanInitKernelPtr device_scan_init_kernel, |
| DeviceRleSweepKernelPtr device_rle_sweep_kernel) |
| { |
| cudaError error = cudaSuccess; |
| |
| const int block_threads = ActivePolicyT::RleSweepPolicyT::BLOCK_THREADS; |
| const int items_per_thread = ActivePolicyT::RleSweepPolicyT::ITEMS_PER_THREAD; |
| |
| do |
| { |
| // Get device ordinal |
| int device_ordinal; |
| if (CubDebug(error = cudaGetDevice(&device_ordinal))) |
| break; |
| |
| // Number of input tiles |
| int tile_size = block_threads * items_per_thread; |
| int num_tiles = static_cast<int>(cub::DivideAndRoundUp(num_items, tile_size)); |
| |
| // Specify temporary storage allocation requirements |
| size_t allocation_sizes[1]; |
| if (CubDebug(error = ScanTileStateT::AllocationSize(num_tiles, allocation_sizes[0]))) |
| { |
| break; // bytes needed for tile status descriptors |
| } |
| |
| // Compute allocation pointers into the single storage blob (or compute the necessary size of |
| // the blob) |
| void *allocations[1] = {}; |
| if (CubDebug( |
| error = |
| AliasTemporaries(d_temp_storage, temp_storage_bytes, allocations, allocation_sizes))) |
| { |
| break; |
| } |
| |
| if (d_temp_storage == nullptr) |
| { |
| // Return if the caller is simply requesting the size of the storage allocation |
| break; |
| } |
| |
| // Construct the tile status interface |
| ScanTileStateT tile_status; |
| if (CubDebug(error = tile_status.Init(num_tiles, allocations[0], allocation_sizes[0]))) |
| { |
| break; |
| } |
| |
| // Log device_scan_init_kernel configuration |
| int init_grid_size = CUB_MAX(1, cub::DivideAndRoundUp(num_tiles, INIT_KERNEL_THREADS)); |
| |
| #ifdef CUB_DETAIL_DEBUG_ENABLE_LOG |
| _CubLog("Invoking device_scan_init_kernel<<<%d, %d, 0, %lld>>>()\n", |
| init_grid_size, |
| INIT_KERNEL_THREADS, |
| (long long)stream); |
| #endif |
| |
| // Invoke device_scan_init_kernel to initialize tile descriptors and queue descriptors |
| THRUST_NS_QUALIFIER::cuda_cub::launcher::triple_chevron(init_grid_size, |
| INIT_KERNEL_THREADS, |
| 0, |
| stream) |
| .doit(device_scan_init_kernel, tile_status, num_tiles, d_num_runs_out); |
| |
| // Check for failure to launch |
| if (CubDebug(error = cudaPeekAtLastError())) |
| { |
| break; |
| } |
| |
| // Sync the stream if specified to flush runtime errors |
| error = detail::DebugSyncStream(stream); |
| if (CubDebug(error)) |
| { |
| break; |
| } |
| |
| // Return if empty problem |
| if (num_items == 0) |
| { |
| break; |
| } |
| |
| // Get SM occupancy for device_rle_sweep_kernel |
| int device_rle_kernel_sm_occupancy; |
| if (CubDebug(error = MaxSmOccupancy(device_rle_kernel_sm_occupancy, // out |
| device_rle_sweep_kernel, |
| block_threads))) |
| { |
| break; |
| } |
| |
| // Get max x-dimension of grid |
| int max_dim_x; |
| if (CubDebug( |
| error = cudaDeviceGetAttribute(&max_dim_x, cudaDevAttrMaxGridDimX, device_ordinal))) |
| { |
| break; |
| } |
| |
| // Get grid size for scanning tiles |
| dim3 scan_grid_size; |
| scan_grid_size.z = 1; |
| scan_grid_size.y = cub::DivideAndRoundUp(num_tiles, max_dim_x); |
| scan_grid_size.x = CUB_MIN(num_tiles, max_dim_x); |
| |
| // Log device_rle_sweep_kernel configuration |
| #ifdef CUB_DETAIL_DEBUG_ENABLE_LOG |
| _CubLog("Invoking device_rle_sweep_kernel<<<{%d,%d,%d}, %d, 0, %lld>>>(), %d items per " |
| "thread, %d SM occupancy\n", |
| scan_grid_size.x, |
| scan_grid_size.y, |
| scan_grid_size.z, |
| block_threads, |
| (long long)stream, |
| items_per_thread, |
| device_rle_kernel_sm_occupancy); |
| #endif |
| |
| // Invoke device_rle_sweep_kernel |
| THRUST_NS_QUALIFIER::cuda_cub::launcher::triple_chevron(scan_grid_size, |
| block_threads, |
| 0, |
| stream) |
| .doit(device_rle_sweep_kernel, |
| d_in, |
| d_offsets_out, |
| d_lengths_out, |
| d_num_runs_out, |
| tile_status, |
| equality_op, |
| num_items, |
| num_tiles); |
| |
| // Check for failure to launch |
| if (CubDebug(error = cudaPeekAtLastError())) |
| { |
| break; |
| } |
| |
| // Sync the stream if specified to flush runtime errors |
| error = detail::DebugSyncStream(stream); |
| if (CubDebug(error)) |
| { |
| break; |
| } |
| } while (0); |
| |
| return error; |
| } |
| |
| template <class ActivePolicyT> |
| CUB_RUNTIME_FUNCTION __forceinline__ cudaError_t Invoke() |
| { |
| using MaxPolicyT = typename SelectedPolicy::MaxPolicy; |
| return Invoke<ActivePolicyT>(DeviceCompactInitKernel<ScanTileStateT, NumRunsOutputIteratorT>, |
| DeviceRleSweepKernel<MaxPolicyT, |
| InputIteratorT, |
| OffsetsOutputIteratorT, |
| LengthsOutputIteratorT, |
| NumRunsOutputIteratorT, |
| ScanTileStateT, |
| EqualityOpT, |
| OffsetT>); |
| } |
| |
| /** |
| * Internal dispatch routine |
| * |
| * @param d_temp_storage |
| * Device-accessible allocation of temporary storage. |
| * When NULL, the required allocation size is written to |
| * `temp_storage_bytes` and no work is done. |
| * |
| * @param temp_storage_bytes |
| * Reference to size in bytes of `d_temp_storage` allocation |
| * |
| * @param d_in |
| * Pointer to input sequence of data items |
| * |
| * @param d_offsets_out |
| * Pointer to output sequence of run-offsets |
| * |
| * @param d_lengths_out |
| * Pointer to output sequence of run-lengths |
| * |
| * @param d_num_runs_out |
| * Pointer to total number of runs (i.e., length of `d_offsets_out`) |
| * |
| * @param equality_op |
| * Equality operator for input items |
| * |
| * @param num_items |
| * Total number of input items (i.e., length of `d_in`) |
| * |
| * @param stream |
| * <b>[optional]</b> CUDA stream to launch kernels within. |
| * Default is stream<sub>0</sub>. |
| */ |
| CUB_RUNTIME_FUNCTION __forceinline__ static cudaError_t |
| Dispatch(void *d_temp_storage, |
| size_t &temp_storage_bytes, |
| InputIteratorT d_in, |
| OffsetsOutputIteratorT d_offsets_out, |
| LengthsOutputIteratorT d_lengths_out, |
| NumRunsOutputIteratorT d_num_runs_out, |
| EqualityOpT equality_op, |
| OffsetT num_items, |
| cudaStream_t stream) |
| { |
| using MaxPolicyT = typename SelectedPolicy::MaxPolicy; |
| |
| cudaError error = cudaSuccess; |
| |
| do |
| { |
| // Get PTX version |
| int ptx_version = 0; |
| if (CubDebug(error = PtxVersion(ptx_version))) |
| { |
| break; |
| } |
| |
| DeviceRleDispatch dispatch(d_temp_storage, |
| temp_storage_bytes, |
| d_in, |
| d_offsets_out, |
| d_lengths_out, |
| d_num_runs_out, |
| equality_op, |
| num_items, |
| stream); |
| |
| // Dispatch |
| if (CubDebug(error = MaxPolicyT::Invoke(ptx_version, dispatch))) |
| { |
| break; |
| } |
| } while (0); |
| |
| return error; |
| } |
| |
| CUB_RUNTIME_FUNCTION __forceinline__ static cudaError_t |
| Dispatch(void *d_temp_storage, |
| size_t &temp_storage_bytes, |
| InputIteratorT d_in, |
| OffsetsOutputIteratorT d_offsets_out, |
| LengthsOutputIteratorT d_lengths_out, |
| NumRunsOutputIteratorT d_num_runs_out, |
| EqualityOpT equality_op, |
| OffsetT num_items, |
| cudaStream_t stream, |
| bool debug_synchronous) |
| { |
| CUB_DETAIL_RUNTIME_DEBUG_SYNC_USAGE_LOG |
| |
| return Dispatch(d_temp_storage, |
| temp_storage_bytes, |
| d_in, |
| d_offsets_out, |
| d_lengths_out, |
| d_num_runs_out, |
| equality_op, |
| num_items, |
| stream); |
| } |
| }; |
| |
| CUB_NAMESPACE_END |
|
|