Visible to Intel only — GUID: GUID-4D6AC431-1E13-481D-A43A-5F861C6AEB44
Intel oneAPI DPC++/C++ Compiler Handbook for FPGAs Overview
Introduction To FPGA Design Concepts
Intel oneAPI FPGA Development
Getting Started with the Intel oneAPI DPC++/C++ Compiler for Intel FPGA Development
Defining a Kernel for FPGAs
Debugging and Verifying Your Design
Analyzing Your Design
Optimizing Your Kernel
Optimizing Your Host Application
Integrating Your Kernel into DSP Builder for Intel FPGAs
Integrating Your RTL IP Core Into a System
RTL IP Core Kernel Interfaces
Loops
Pipes
Data Types and Arithmetic Operations
Parallelism
Memories and Memory Operations
Libraries
Additional FPGA Acceleration Flow Considerations
FPGA Optimization Flags, Attributes, Pragmas, and Extensions
Quick Reference
Additional Information
Document Revision History for the Intel oneAPI DPC++/C++ Compiler Handbook for Intel FPGAs
Notices and Disclaimers
Set the Environment Variables and Launch Visual Studio* Code
Create an FPGA Visual Studio* Code Project
Enable Code Completion in a Visual Studio* Code Project
Configure Running and Debugging in a Visual Studio* Code Project
Debugging Your Kernel in Visual Studio* Code with a Native Debugger
Generate and View the FPGA Optimization Report
Build and Run the FPGA Hardware Image
Throughput
Resource Use
System-level Profiling Using the Intercept Layer for OpenCL™ Applications
Multithreaded Host Application
Utilizing Hardware Kernel Invocation Queue
Double Buffering Host Utilizing Kernel Invocation Queue
N-Way Buffering to Overlap Kernel Execution
Prepinning Memory
Simple Host-Device Streaming
Buffered Host-Device Streaming
Refactor the Loop-Carried Data Dependency
Relax Loop-Carried Dependency
Transfer Loop-Carried Dependency to Local Memory
Minimize the Memory Dependencies for Loop Pipelining
Unroll Loops
Fuse Loops to Reduce Overhead and Improve Performance
Optimize Loops With Loop Speculation
Remove Loop Bottlenecks
Improve fMAX/II with Shannonization
Optimize Inner Loop Throughput
Improve Loop Performance by Caching Data in On-Chip Memory
Global Memory Bandwidth Use Calculation
Manual Partition of Global Memory
Partitioning Buffers Across Different Memory Types (Heterogeneous Memory)
Partitioning Buffers Across Memory Channels of the Same Memory Type
Ignoring Dependencies Between Accessor Arguments
Contiguous Memory Accesses
Static Memory Coalescing
Specify Schedule fMAX Target for Kernels (-Xsclock=<clock target>)
Create a 2xclock Interface (-Xsuse-2xclock)
Disable Burst-Interleaving of Global Memory (-Xsno-interleaving)
Force Ring Interconnect for Global Memory (-Xsglobal-ring)
Force a Single Store Ring to Reduce Area (-Xsforce-single-store-ring)
Force Fewer Read Data Reorder Units to Reduce Area (-Xsnum-reorder)
Disable Hardware Kernel Invocation Queue (-Xsno-hardware-kernel-invocation-queue)
Modify the Handshaking Protocol Between Clusters (-Xshyper-optimized-handshaking)
Disable Automatic Fusion of Loops (-Xsdisable-auto-loop-fusion)
Fuse Adjacent Loops With Unequal Trip Counts (-Xsenable-unequal-tc-fusion)
Pipeline Loops in Non-task Kernels (-Xsauto-pipeline)
Control Semantics of Floating-Point Operations (-fp-model=<value>)
Modify the Rounding Mode of Floating-point Operations (-Xsrounding=<rounding_type>)
Global Control of Exit FIFO Latency of Stall-free Clusters (-Xssfc-exit-fifo-type=<value>)
Enable the Read-Only Cache for Read-Only Accessors (-Xsread-only-cache-size=<N>)
Control Hardware Implementation of the Supported Data Types and Math Operations (-Xsdsp-mode=<option>)
Generate Register Map Wrapper (-Xsregister-map-wrapper-type)
Allow Wide Memory Initialization (-Xsallow-wide-device-globals)
Specify Schedule fMAX Target for Kernels (scheduler_target_fmax_mhz)
Specify a Workgroup Size (max_work_group_size/reqd_work_group_size)
Specify Number of SIMD Work Items (num_simd_work_items)
Omit Hardware that Generates and Dispatches Kernel IDs (max_global_work_dim)
Omit Hardware that Supports Global Work Offsets (no_global_work_offset)
Reduce Kernel Area and Latency (use_stall_enable_clusters)
Visible to Intel only — GUID: GUID-4D6AC431-1E13-481D-A43A-5F861C6AEB44
Specify a Workgroup Size (max_work_group_size/reqd_work_group_size)
Specify a maximum or the required workgroup size whenever possible. The Intel® oneAPI DPC++/C++ Compiler relies on this specification to optimize hardware use of the SYCL* kernel without involving excess logic.
- If you do not specify the [[intel::max_work_group_size(Z, Y, X)]] or [[sycl::reqd_work_group_size(Z, Y, X)]] attribute in your kernel, the workgroup size assumes a default value depending on compilation time and runtime constraints.
- If your kernel contains a barrier, the Intel® oneAPI DPC++/C++ Compiler sets a default maximum scalarized work-group size of 128 work-items.
- If your kernel does not query any SYCL intrinsic that allow different threads to behave differently (that is, local or global thread IDs, or work-group ID), the Intel® oneAPI DPC++/C++ Compiler infers a single-threaded execution mode and sets the maximum work-group size to (1, 1, 1). In this case, the SYCL runtime also enforces a global enqueue size of (1, 1, 1), and loop pipelining optimizations are enabled within the Intel® oneAPI DPC++/C++ Compiler.
Deprecation Notice:
The [[cl::reqd_work_group_size(Z, Y, X)]] attribute is deprecated. Use the [[sycl::reqd_work_group_size(Z, Y, X)]] attribute.
To specify the work-group size, modify your kernel code in the following manner:
- To specify the maximum number of work-items that the compiler provisions for a work-group in a kernel, insert the [[intel::max_work_group_size(Z, Y, X)]] attribute in your kernel source code.
For example:
constexpr unsigned MAX_WG_SIZE = 4; ... cgh.parallel_for<class kernelCompute>( nd_range<1>(range<1>(N), range<1>(wg_size)), [=] (nd_item<id> it) [[intel::max_work_group_size(1, 1, MAX_WG_SIZE)]] { auto gid = it.get_global_id(0); accessorRes[gid] = accessorIdx[gid] * 2; });
- To specify the required number of work-items that the Intel® oneAPI DPC++/C++ Compiler provisions for a work-group in a kernel, insert the [[sycl::reqd_work_group_size(Z, Y, X)]] attribute in your kernel source code.
For example:
constexpr unsigned REQD_WG_SIZE = 4; ... cgh.parallel_for<class kernelCompute>( nd_range<1>(range<1>(N), range<1>(wg_size)), [=] (nd_item<id> it) [[sycl::reqd_work_group_size(1, 1, REQD_WG_SIZE)]] { auto gid = it.get_global_id(0); accessorRes[gid] = accessorIdx[gid] * 2; });
Parent topic: Kernel Attributes