19 research outputs found

    High-level synthesis of dataflow programs for heterogeneous platforms:design flow tools and design space exploration

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    The growing complexity of digital signal processing applications implemented in programmable logic and embedded processors make a compelling case the use of high-level methodologies for their design and implementation. Past research has shown that for complex systems, raising the level of abstraction does not necessarily come at a cost in terms of performance or resource requirements. As a matter of fact, high-level synthesis tools supporting such a high abstraction often rival and on occasion improve low-level design. In spite of these successes, high-level synthesis still relies on programs being written with the target and often the synthesis process, in mind. In other words, imperative languages such as C or C++, most used languages for high-level synthesis, are either modified or a constrained subset is used to make parallelism explicit. In addition, a proper behavioral description that permits the unification for hardware and software design is still an elusive goal for heterogeneous platforms. A promising behavioral description capable of expressing both sequential and parallel application is RVC-CAL. RVC-CAL is a dataflow programming language that permits design abstraction, modularity, and portability. The objective of this thesis is to provide a high-level synthesis solution for RVC-CAL dataflow programs and provide an RVC-CAL design flow for heterogeneous platforms. The main contributions of this thesis are: a high-level synthesis infrastructure that supports the full specification of RVC-CAL, an action selection strategy for supporting parallel read and writes of list of tokens in hardware synthesis, a dynamic fine-grain profiling for synthesized dataflow programs, an iterative design space exploration framework that permits the performance estimation, analysis, and optimization of heterogeneous platforms, and finally a clock gating strategy that reduces the dynamic power consumption. Experimental results on all stages of the provided design flow, demonstrate the capabilities of the tools for high-level synthesis, software hardware Co-Design, design space exploration, and power optimization for reconfigurable hardware. Consequently, this work proves the viability of complex systems design and implementation using dataflow programming, not only for system-level simulation but real heterogeneous implementations

    Algorithm/Architecture Co-Exploration of Visual Computing: Overview and Future Perspectives

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    Concurrently exploring both algorithmic and architectural optimizations is a new design paradigm. This survey paper addresses the latest research and future perspectives on the simultaneous development of video coding, processing, and computing algorithms with emerging platforms that have multiple cores and reconfigurable architecture. As the algorithms in forthcoming visual systems become increasingly complex, many applications must have different profiles with different levels of performance. Hence, with expectations that the visual experience in the future will become continuously better, it is critical that advanced platforms provide higher performance, better flexibility, and lower power consumption. To achieve these goals, algorithm and architecture co-design is significant for characterizing the algorithmic complexity used to optimize targeted architecture. This paper shows that seamless weaving of the development of previously autonomous visual computing algorithms and multicore or reconfigurable architectures will unavoidably become the leading trend in the future of video technology

    Dataflow Program Analysis and Refactoring Techniques for Design Space Exploration: MPEG-4 AVC/H.264 Decoder Implementation Case Study

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    This paper presents a methodology to perform design space exploration of complex signal processing systems implemented using the CAL dataflow language. In the course of space exploration, critical path in dataflow programs is first presented, and then analyzed using a new strategy for computational load reduction. These techniques, together with detecting design bottlenecks, point to the most efficient optimization directions in a complex network. Following these analysis, several new refactoring techniques are introduced and applied on the dataflow program in order to obtain feasible design points in the exploration space. For a MPEG-4 AVC/H.264 decoder software and hardware implementation, the multi-dimensional space can be explored effectively for throughput, resource, and frequency, with real-time decoding range from QCIF to HD resolutions

    Systematic Design Space Exploration of Dynamic Dataflow Programs for Multi-core Platforms

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    The limitations of clock frequency and power dissipation of deep sub-micron CMOS technology have led to the development of massively parallel computing platforms. They consist of dozens or hundreds of processing units and offer a high degree of parallelism. Taking advantage of that parallelism and transforming it into high program performances requires the usage of appropriate parallel programming models and paradigms. Currently, a common practice is to develop parallel applications using methods evolving directly from sequential programming models. However, they lack the abstractions to properly express the concurrency of the processes. An alternative approach is to implement dataflow applications, where the algorithms are described in terms of streams and operators thus their parallelism is directly exposed. Since algorithms are described in an abstract way, they can be easily ported to different types of platforms. Several dataflow models of computation (MoCs) have been formalized so far. They differ in terms of their expressiveness (ability to handle dynamic behavior) and complexity of analysis. So far, most of the research efforts have focused on the simpler cases of static dataflow MoCs, where many analyses are possible at compile-time and several optimization problems are greatly simplified. At the same time, for the most expressive and the most difficult to analyze dynamic dataflow (DDF), there is still a dearth of tools supporting a systematic and automated analysis minimizing the programming efforts of the designer. The objective of this Thesis is to provide a complete framework to analyze, evaluate and refactor DDF applications expressed using the RVC-CAL language. The methodology relies on a systematic design space exploration (DSE) examining different design alternatives in order to optimize the chosen objective function while satisfying the constraints. The research contributions start from a rigorous DSE problem formulation. This provides a basis for the definition of a complete and novel analysis methodology enabling systematic performance improvements of DDF applications. Different stages of the methodology include exploration heuristics, performance estimation and identification of refactoring directions. All of the stages are implemented as appropriate software tools. The contributions are substantiated by several experiments performed with complex dynamic applications on different types of physical platforms

    Design space exploration strategies for FPGA implementation of signal processing systems using CAL dataflow program

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    This paper presents some strategies for design space exploration of FPGA-based signal processing systems that are specified using the CAL dataflow language. The actor- oriented, high-level of abstraction provided by CAL allows flexible exploration and consequently results in a wide range of feasible design implementations. We have applied and ex- tended the existing techniques for refactoring and pipelining actors and actions by means of critical path analysis, and in- troduced some new buffering techniques based on heuristics. The combinations of these techniques have been applied on the CAL specification of the MPEG-4 video decoder, and synthesized to HDL for evaluation in the design implementa- tion space. Results show that using our configuration for the exploration of 48 design points, a throughput range of roughly 8x has been achieved, for slice, block RAM, frequency, and latency range of 1.3x, 2.5x, 2.5x, and 2.9x respectively
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