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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
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2.6.5. Area Report Messages for Private Variable Storage
The area report provides information on the implementation of private memory based on your OpenCL™ design. For single work-item kernels, the Intel® FPGA SDK for OpenCL™ Offline Compiler implements private memory differently, depending on the types of variable. The offline compiler implements scalars and small arrays in registers of various configurations (for example, plain registers, shift registers, and barrel shifter). The offline compiler implements larger arrays in block RAM.
Message | Notes |
---|---|
Implementation of Private Memory Using On-Chip Block RAM | |
Private memory implemented in on-chip block RAM. | The block RAM implementation creates a system that is similar to local memory for NDRange kernels. |
Implementation of Private Memory Using On-Chip Block ROM | |
— | For each usage of an on-chip block ROM, the offline compiler creates another instance of the same ROM. There is no explicit annotation for private variables that the offline compiler implements in on-chip block ROM. |
Implementation of Private Memory Using Registers | |
Implemented using registers of the following size: - <X> registers of width <Y> bits and depth <Z>.
- ... |
Reports that the offline compiler implements a private variable in registers. The offline compiler might implement a private variable in many registers. This message provides a list of the registers with their specific widths and depths. |
Implementation of Private Memory Using Shift Registers | |
Implemented as a shift register with <N> or fewer tap points. This is a very efficient storage type. Implemented using registers of the following sizes: - <X> registers of width <Y> bits and depth <Z>.
- ... |
Reports that the offline compiler implements a private variable in shift registers. This message provides a list of shift registers with their specific widths and depths.
The offline compiler might break a single array into several smaller shift registers depending on its tap points.
Note: The offline compiler might overestimate the number of tap points.
|
Implementation of Private Memory Using Barrel Shifters with Registers | |
Implemented as a barrel shifter with registers due to dynamic indexing. This is a high overhead storage type. If possible, change to compile-time known indexing. The area cost of accessing this variable is shown on the lines where the accesses occur. Implemented using registers of the following size: - <X> registers of width <Y> bits and depth <Z>.
- ... |
Reports that the offline compiler implements a private variable in a barrel shifter with registers because of dynamic indexing. This row in the report does not specify the full area use of the private variable. The report shows additional area use information on the lines where the variable is accessed. |
Note:
- The area report annotates memory information on the line of code that declares or uses private memory, depending on its implementation.
- When the offline compiler implements private memory in on-chip block RAM, the area report displays relevant local-memory-specific messages to private memory systems.