1,401 research outputs found

    Toolflows for Mapping Convolutional Neural Networks on FPGAs: A Survey and Future Directions

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    In the past decade, Convolutional Neural Networks (CNNs) have demonstrated state-of-the-art performance in various Artificial Intelligence tasks. To accelerate the experimentation and development of CNNs, several software frameworks have been released, primarily targeting power-hungry CPUs and GPUs. In this context, reconfigurable hardware in the form of FPGAs constitutes a potential alternative platform that can be integrated in the existing deep learning ecosystem to provide a tunable balance between performance, power consumption and programmability. In this paper, a survey of the existing CNN-to-FPGA toolflows is presented, comprising a comparative study of their key characteristics which include the supported applications, architectural choices, design space exploration methods and achieved performance. Moreover, major challenges and objectives introduced by the latest trends in CNN algorithmic research are identified and presented. Finally, a uniform evaluation methodology is proposed, aiming at the comprehensive, complete and in-depth evaluation of CNN-to-FPGA toolflows.Comment: Accepted for publication at the ACM Computing Surveys (CSUR) journal, 201

    Investigating Single Precision Floating General Matrix Multiply in Heterogeneous Hardware

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    The fundamental operation of matrix multiplication is ubiquitous across a myriad of disciplines. Yet, the identification of new optimizations for matrix multiplication remains relevant for emerging hardware architectures and heterogeneous systems. Frameworks such as OpenCL enable computation orchestration on existing systems, and its availability using the Intel High Level Synthesis compiler allows users to architect new designs for reconfigurable hardware using C/C++. Using the HARPv2 as a vehicle for exploration, we investigate the utility of several of the most notable matrix multiplication optimizations to better understand the performance portability of OpenCL and the implications for such optimizations on this and future heterogeneous architectures. Our results give targeted insights into the applicability of best practices that were for existing architectures when used on emerging heterogeneous systems

    Space Station Freedom data management system growth and evolution report

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    The Information Sciences Division at the NASA Ames Research Center has completed a 6-month study of portions of the Space Station Freedom Data Management System (DMS). This study looked at the present capabilities and future growth potential of the DMS, and the results are documented in this report. Issues have been raised that were discussed with the appropriate Johnson Space Center (JSC) management and Work Package-2 contractor organizations. Areas requiring additional study have been identified and suggestions for long-term upgrades have been proposed. This activity has allowed the Ames personnel to develop a rapport with the JSC civil service and contractor teams that does permit an independent check and balance technique for the DMS

    Design and development from single core reconfigurable accelerators to a heterogeneous accelerator-rich platform

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    The performance of a platform is evaluated based on its ability to deal with the processing of multiple applications of different nature. In this context, the platform under evaluation can be of homogeneous, heterogeneous or of hybrid architecture. The selection of an architecture type is generally based on the set of different target applications and performance parameters, where the applications can be of serial or parallel nature. The evaluation is normally based on different performance metrics, e.g., resource/area utilization, execution time, power and energy consumption. This process can also include high-level performance metrics, e.g., Operations Per Second (OPS), OPS/Watt, OPS/Hz, Watt/Area etc. An example of architecture selection can be related to a wireless communication system where the processing of computationally-intensive signal-processing algorithms has strict execution-time constraints and in this case, a platform with special-purpose accelerators is relatively more suitable than a typical homogeneous platform. A couple of decades ago, it was expensive to plant many special-purpose accelerators on a chip as the cost per unit area was relatively higher than today. The utilization wall is also becoming a limiting factor in homogeneous multicore scaling which means that all the cores on a platform cannot be operated at their maximum frequency due to a possible thermal meltdown. In this case, some of the processing cores have to be turned-off or to be operated at very low frequencies making most of the part of the chip to stay underutilized. A possible solution lies in the use of heterogeneous multicore platforms where many application-specific cores operate at lower frequencies, therefore reducing power dissipation density and increasing other performance parameters. However, to achieve maximum flexibility in processing, a general-purpose flavor can also be introduced by adding a few Reduced Instruction-Set Computing (RISC) cores. A power class of heterogeneous multicore platforms is an accelerator-rich platform where many application-specific accelerators are loosely connected with each other for work load distribution or to execute the tasks independently. This research work spans from the design and development of three different types of template-based Coarse-Grain Reconfigurable Arrays (CGRAs), i.e., CREMA, AVATAR and SCREMA to a Heterogeneous Accelerator-Rich Platform (HARP). The accelerators generated from the three CGRAs could perform different lengths and types of Fast Fourier Transform (FFT), real and complex Matrix-Vector Multiplication (MVM) algorithms. CREMA and AVATAR were fixed CGRAs with eight and sixteen number of Processing Element (PE) columns, respectively. SCREMA could flex between four, eight, sixteen and thirty two number of PE columns. Many case studies were conducted to evaluate the performance of the reconfigurable accelerators generated from these CGRA templates. All of these CGRAs work in a processor/coprocessor model tightly integrated with a Direct Memory Access (DMA) device. Apart from these platforms, a reconfigurable Application-Specific Instruction-set Processor (rASIP) is also designed, tested for FFT execution under IEEE-802.11n timing constraints and evaluated against a processor/coprocessor model. It was designed by integrating AVATAR generated radix-(2, 4) FFT accelerator into the datapath of a RISC processor. The instruction set of the RISC processor was extended to perform additional operations related to AVATAR. As mentioned earlier, the underutilized part of the chip, now-a-days called Dark Silicon is posing many challenges for the designers. Apart from software optimizations, clock gating, dynamic voltage/frequency scaling and other high-level techniques, one way of dealing with this problem is to use many application-specific cores. In an effort to maximize the number of reconfigurable processing resources on a platform, the accelerator-rich architecture HARP was designed and evaluated in terms of different performance metrics. HARP is constructed on a Network-on-Chip (NoC) of 3x3 nodes where with every node, a CGRA of application-specific size is integrated other than the central node which is attached to a RISC processor. The RISC establishes synchronization between the nodes for data transfer and also performs the supervisory control. While using the NoC as the backbone of communication between the cores, it becomes possible for all the cores to address each other and also perform execution simultaneously and independently of each other. The performance of accelerators generated from CREMA, AVATAR and SCREMA templates were evaluated individually and also when attached to HARP's NoC nodes. The individual CGRAs show promising results in their own capacity but when integrated all together in the framework of HARP, interesting comparisons were established in terms of overall execution times, resource utilization, operating frequencies, power and energy consumption. In evaluating HARP, estimates and measurements were also made in some advanced performance metrics, e.g., in MOPS/mW and MOPS/MHz. The overall research work promotes the idea of heterogeneous accelerator-rich platform as a solution to current problems and future needs of industry and academia

    Techniques to improve concurrency in hardware transactional memory

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    Transactional Memory (TM) aims to make shared memory parallel programming easier by abstracting away the complexity of managing shared data. The programmer defines sections of code, called transactions, which the TM system guarantees that will execute atomically and in isolation from the rest of the system. The programmer is not required to implement such behaviour, as happens in traditional mutual exclusion techniques like locks - that responsibility is delegated to the underlying TM system. In addition, transactions can exploit parallelism that would not be available in mutual exclusion techniques; this is achieved by allowing optimistic execution assuming no other transaction operates concurrently on the same data. If that assumption is true the transaction commits its updates to shared memory by the end of its execution, otherwise, a conflict occurs and the TM system may abort one of the conflicting transactions to guarantee correctness; the aborted transaction would roll-back its local updates and be re-executed. Hardware and software implementations of TM have been studied in detail. However, large-scale adoption of software-only approaches have been hindered for long due to severe performance limitations. In this thesis, we focus on identifying and solving hardware transactional memory (HTM) issues in order to improve concurrency and scalability. Two key dimensions determine the HTM design space: conflict detection and speculative version management. The first determines how conflicts are detected between concurrent transactions and how to resolve them. The latter defines where transactional updates are stored and how the system deals with two versions of the same logical data. This thesis proposes a flexible mechanism that allows efficient storage and access to two versions of the same logical data, improving overall system performance and energy efficiency. Additionally, in this thesis we explore two solutions to reduce system contention - circumstances where transactions abort due to data dependencies - in order to improve concurrency of HTM systems. The first mechanism provides a suitable design to apply prefetching to speed-up transaction executions, lowering the window of time in which such transactions can experience contention. The second is an accurate abort prediction mechanism able to identify, before a transaction's execution, potential conflicts with running transactions. This mechanism uses past behaviour of transactions and locality in memory references to infer predictions, adapting to variations in workload characteristics. We demonstrate that this mechanism is able to manage contention efficiently in single-application and multi-application scenarios. Finally, this thesis also analyses initial real-world HTM protocols that recently appeared in market products. These protocols have been designed to be simple and easy to incorporate in existing chip-multiprocessors. However, this simplicity comes at the cost of severe performance degradation due to transient and persistent livelock conditions, potentially preventing forward progress. We show that existing techniques are unable to mitigate this degradation effectively. To deal with this issue we propose a set of techniques that retain the simplicity of the protocol while providing improved performance and forward progress guarantees in a wide variety of transactional workloads
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