HLS_Profiler:基于HLS的应用程序的非侵入性分析工具

Nupur Sumeet, D. Deeksha, M. Nambiar
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摘要

高级综合(HLS)工具有助于简化和更快的设计开发,而无需熟悉硬件描述语言(HDL)和寄存器传输逻辑(RTL)设计流程,可以在FPGA(现场可编程门阵列)上实现。但是,要跟踪源代码并将其链接到合成硬件设计并不容易。另一方面,传统的基于rtl的设计开发流程通过波形提供细粒度的性能概况。在HLS设计中具有相同级别的可见性,设计人员可以识别性能瓶颈,并通过迭代微调源代码来获得目标性能。尽管HLS开发工具提供了低级波形,但是根据源代码变量来解释它们是一项具有挑战性且乏味的任务。为了解决这个问题,我们建议演示一个自动化的分析工具,HLS_Profiler,它以周期精确的方式提供源代码的性能分析。
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HLS_Profiler: Non-Intrusive Profiling tool for HLS based Applications
The High-Level Synthesis (HLS) tools aid in simplified and faster design development without familiarity with Hardware Description Language (HDL) and Register Transfer Logic (RTL) design flow that can be implemented on an FPGA (Field Programmable Gate Array). However, it is not straight forward to trace and link source code to synthesized hardware design. On the other hand, the traditional RTL-based design development flow provides the fine-grained performance profile through waveforms. With the same level of visibility in HLS designs, the designers can identify the performance-bottlenecks and obtain the target performance by iteratively fine-tuning the source code. Although, the HLS development tools provide the low-level waveforms, interpreting them in terms of source code variables is a challenging and tedious task. Addressing this gap, we propose to demonstrate an automated profiler tool, HLS_Profiler, that provides a performance profile of source code in a cycle-accurate manner.
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