Intel® FPGA SDK for OpenCL™ Pro Edition: Best Practices Guide
ID
683521
Date
12/13/2021
Public
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1. Introduction to Intel® FPGA SDK for OpenCL™ Pro Edition Best Practices Guide
2. Reviewing Your Kernel's report.html File
3. OpenCL Kernel Design Concepts
4. OpenCL Kernel Design Best Practices
5. Profiling Your Kernel to Identify Performance Bottlenecks
6. Strategies for Improving Single Work-Item Kernel Performance
7. Strategies for Improving NDRange Kernel Data Processing Efficiency
8. Strategies for Improving Memory Access Efficiency
9. Strategies for Optimizing FPGA Area Usage
10. Strategies for Optimizing Intel® Stratix® 10 OpenCL Designs
11. Strategies for Improving Performance in Your Host Application
12. Intel® FPGA SDK for OpenCL™ Pro Edition Best Practices Guide Archives
A. Document Revision History for the Intel® FPGA SDK for OpenCL™ Pro Edition Best Practices Guide
2.1. High-Level Design Report Layout
2.2. Reviewing the Summary Report
2.3. Viewing Throughput Bottlenecks in the Design
2.4. Using Views
2.5. Analyzing Throughput
2.6. Reviewing Area Information
2.7. Optimizing an OpenCL Design Example Based on Information in the HTML Report
2.8. Accessing HLD FPGA Reports in JSON Format
4.1. Transferring Data Via Intel® FPGA SDK for OpenCL™ Channels or OpenCL Pipes
4.2. Unrolling Loops
4.3. Optimizing Floating-Point Operations
4.4. Allocating Aligned Memory
4.5. Aligning a Struct with or without Padding
4.6. Maintaining Similar Structures for Vector Type Elements
4.7. Avoiding Pointer Aliasing
4.8. Avoid Expensive Functions
4.9. Avoiding Work-Item ID-Dependent Backward Branching
5.1. Best Practices for Profiling Your Kernel
5.2. Instrumenting the Kernel Pipeline with Performance Counters (-profile)
5.3. Obtaining Profiling Data During Runtime
5.4. Reducing Area Resource Use While Profiling
5.5. Temporal Performance Collection
5.6. Performance Data Types
5.7. Interpreting the Profiling Information
5.8. Profiler Analyses of Example OpenCL Design Scenarios
5.9. Intel® FPGA Dynamic Profiler for OpenCL™ Limitations
8.1. General Guidelines on Optimizing Memory Accesses
8.2. Optimize Global Memory Accesses
8.3. Performing Kernel Computations Using Constant, Local or Private Memory
8.4. Improving Kernel Performance by Banking the Local Memory
8.5. Optimizing Accesses to Local Memory by Controlling the Memory Replication Factor
8.6. Minimizing the Memory Dependencies for Loop Pipelining
8.7. Static Memory Coalescing
5.3.2. Viewing Profiling Data Using Intel® VTune™ Profiler
Intel® VTune Profiler is a performance analysis tool for developing serial and multithreaded applications. It helps you analyze the algorithm choices and identify where and how your application can benefit from available hardware resources.
To view performance data, upload your profile.json file to the CPU/FPGA Interaction view in the Intel® VTune Profiler. For more information about how to upload the file and open the correct views, refer to CPU/FPGA Interaction Analysis (Preview) in the Intel® VTune Profiler User Guide.
Use the CPU/FPGA Interaction view in the Intel® VTune Profiler to determine the following performance information about your design in various graphical representations:
Tab | Information |
---|---|
Summary | Contains a summarized or average data about your kernels' execution. |
Bottom-up | Contains a graphical timeline view and an expandable summary of each kernel’s execution including host and device-side events. Double-click on a kernel to view its source in the Source tab. |
Platform | Contains information about the memory transfers and CPU-side information. |
Source | Contains detailed statistics about memory and pipe accesses in source view format. For more information, refer to Performance Data Types |