774 research outputs found
Towards Ultra-High Performance and Energy Efficiency of Deep Learning Systems: An Algorithm-Hardware Co-Optimization Framework
Hardware accelerations of deep learning systems have been extensively
investigated in industry and academia. The aim of this paper is to achieve
ultra-high energy efficiency and performance for hardware implementations of
deep neural networks (DNNs). An algorithm-hardware co-optimization framework is
developed, which is applicable to different DNN types, sizes, and application
scenarios. The algorithm part adopts the general block-circulant matrices to
achieve a fine-grained tradeoff between accuracy and compression ratio. It
applies to both fully-connected and convolutional layers and contains a
mathematically rigorous proof of the effectiveness of the method. The proposed
algorithm reduces computational complexity per layer from O() to O() and storage complexity from O() to O(), both for training and
inference. The hardware part consists of highly efficient Field Programmable
Gate Array (FPGA)-based implementations using effective reconfiguration, batch
processing, deep pipelining, resource re-using, and hierarchical control.
Experimental results demonstrate that the proposed framework achieves at least
152X speedup and 71X energy efficiency gain compared with IBM TrueNorth
processor under the same test accuracy. It achieves at least 31X energy
efficiency gain compared with the reference FPGA-based work.Comment: 6 figures, AAAI Conference on Artificial Intelligence, 201
Hardware-efficient on-line learning through pipelined truncated-error backpropagation in binary-state networks
Artificial neural networks (ANNs) trained using backpropagation are powerful
learning architectures that have achieved state-of-the-art performance in
various benchmarks. Significant effort has been devoted to developing custom
silicon devices to accelerate inference in ANNs. Accelerating the training
phase, however, has attracted relatively little attention. In this paper, we
describe a hardware-efficient on-line learning technique for feedforward
multi-layer ANNs that is based on pipelined backpropagation. Learning is
performed in parallel with inference in the forward pass, removing the need for
an explicit backward pass and requiring no extra weight lookup. By using binary
state variables in the feedforward network and ternary errors in
truncated-error backpropagation, the need for any multiplications in the
forward and backward passes is removed, and memory requirements for the
pipelining are drastically reduced. Further reduction in addition operations
owing to the sparsity in the forward neural and backpropagating error signal
paths contributes to highly efficient hardware implementation. For
proof-of-concept validation, we demonstrate on-line learning of MNIST
handwritten digit classification on a Spartan 6 FPGA interfacing with an
external 1Gb DDR2 DRAM, that shows small degradation in test error performance
compared to an equivalently sized binary ANN trained off-line using standard
back-propagation and exact errors. Our results highlight an attractive synergy
between pipelined backpropagation and binary-state networks in substantially
reducing computation and memory requirements, making pipelined on-line learning
practical in deep networks.Comment: Now also consider 0/1 binary activations. Memory access statistics
reporte
Toolflows for Mapping Convolutional Neural Networks on FPGAs: A Survey and Future Directions
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
Efficient Neural Network Implementations on Parallel Embedded Platforms Applied to Real-Time Torque-Vectoring Optimization Using Predictions for Multi-Motor Electric Vehicles
The combination of machine learning and heterogeneous embedded platforms enables new potential for developing sophisticated control concepts which are applicable to the field of vehicle dynamics and ADAS. This interdisciplinary work provides enabler solutions -ultimately implementing fast predictions using neural networks (NNs) on field programmable gate arrays (FPGAs) and graphical processing units (GPUs)- while applying them to a challenging application: Torque Vectoring on a multi-electric-motor vehicle for enhanced vehicle dynamics. The foundation motivating this work is provided by discussing multiple domains of the technological context as well as the constraints related to the automotive field, which contrast with the attractiveness of exploiting the capabilities of new embedded platforms to apply advanced control algorithms for complex control problems. In this particular case we target enhanced vehicle dynamics on a multi-motor electric vehicle benefiting from the greater degrees of freedom and controllability offered by such powertrains. Considering the constraints of the application and the implications of the selected multivariable optimization challenge, we propose a NN to provide batch predictions for real-time optimization. This leads to the major contribution of this work: efficient NN implementations on two intrinsically parallel embedded platforms, a GPU and a FPGA, following an analysis of theoretical and practical implications of their different operating paradigms, in order to efficiently harness their computing potential while gaining insight into their peculiarities. The achieved results exceed the expectations and additionally provide a representative illustration of the strengths and weaknesses of each kind of platform. Consequently, having shown the applicability of the proposed solutions, this work contributes valuable enablers also for further developments following similar fundamental principles.Some of the results presented in this work are related to activities within the 3Ccar project, which has
received funding from ECSEL Joint Undertaking under grant agreement No. 662192. This Joint Undertaking
received support from the European Unionâs Horizon 2020 research and innovation programme and Germany,
Austria, Czech Republic, Romania, Belgium, United Kingdom, France, Netherlands, Latvia, Finland, Spain, Italy,
Lithuania. This work was also partly supported by the project ENABLES3, which received funding from ECSEL
Joint Undertaking under grant agreement No. 692455-2
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