218 research outputs found

    Neuromorphic Learning Systems for Supervised and Unsupervised Applications

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    The advancements in high performance computing (HPC) have enabled the large-scale implementation of neuromorphic learning models and pushed the research on computational intelligence into a new era. Those bio-inspired models are constructed on top of unified building blocks, i.e. neurons, and have revealed potentials for learning of complex information. Two major challenges remain in neuromorphic computing. Firstly, sophisticated structuring methods are needed to determine the connectivity of the neurons in order to model various problems accurately. Secondly, the models need to adapt to non-traditional architectures for improved computation speed and energy efficiency. In this thesis, we address these two problems and apply our techniques to different cognitive applications. This thesis first presents the self-structured confabulation network for anomaly detection. Among the machine learning applications, unsupervised detection of the anomalous streams is especially challenging because it requires both detection accuracy and real-time performance. Designing a computing framework that harnesses the growing computing power of the multicore systems while maintaining high sensitivity and specificity to the anomalies is an urgent research need. We present AnRAD (Anomaly Recognition And Detection), a bio-inspired detection framework that performs probabilistic inferences. We leverage the mutual information between the features and develop a self-structuring procedure that learns a succinct confabulation network from the unlabeled data. This network is capable of fast incremental learning, which continuously refines the knowledge base from the data streams. Compared to several existing anomaly detection methods, the proposed approach provides competitive detection accuracy as well as the insight to reason the decision making. Furthermore, we exploit the massive parallel structure of the AnRAD framework. Our implementation of the recall algorithms on the graphic processing unit (GPU) and the Xeon Phi co-processor both obtain substantial speedups over the sequential implementation on general-purpose microprocessor (GPP). The implementation enables real-time service to concurrent data streams with diversified contexts, and can be applied to large problems with multiple local patterns. Experimental results demonstrate high computing performance and memory efficiency. For vehicle abnormal behavior detection, the framework is able to monitor up to 16000 vehicles and their interactions in real-time with a single commodity co-processor, and uses less than 0.2ms for each testing subject. While adapting our streaming anomaly detection model to mobile devices or unmanned systems, the key challenge is to deliver required performance under the stringent power constraint. To address the paradox between performance and power consumption, brain-inspired hardware, such as the IBM Neurosynaptic System, has been developed to enable low power implementation of neural models. As a follow-up to the AnRAD framework, we proposed to port the detection network to the TrueNorth architecture. Implementing inference based anomaly detection on a neurosynaptic processor is not straightforward due to hardware limitations. A design flow and the supporting component library are developed to flexibly map the learned detection networks to the neurosynaptic cores. Instead of the popular rate code, burst code is adopted in the design, which represents numerical value using the phase of a burst of spike trains. This does not only reduce the hardware complexity, but also increases the result\u27s accuracy. A Corelet library, NeoInfer-TN, is implemented for basic operations in burst code and two-phase pipelines are constructed based on the library components. The design can be configured for different tradeoffs between detection accuracy, hardware resource consumptions, throughput and energy. We evaluate the system using network intrusion detection data streams. The results show higher detection rate than some conventional approaches and real-time performance, with only 50mW power consumption. Overall, it achieves 10^8 operations per Joule. In addition to the modeling and implementation of unsupervised anomaly detection, we also investigate a supervised learning model based on neural networks and deep fragment embedding and apply it to text-image retrieval. The study aims at bridging the gap between image and natural language. It continues to improve the bidirectional retrieval performance across the modalities. Unlike existing works that target at single sentence densely describing the image objects, we elevate the topic to associating deep image representations with noisy texts that are only loosely correlated. Based on text-image fragment embedding, our model employs a sequential configuration, connects two embedding stages together. The first stage learns the relevancy of the text fragments, and the second stage uses the filtered output from the first one to improve the matching results. The model also integrates multiple convolutional neural networks (CNN) to construct the image fragments, in which rich context information such as human faces can be extracted to increase the alignment accuracy. The proposed method is evaluated with both synthetic dataset and real-world dataset collected from picture news website. The results show up to 50% ranking performance improvement over the comparison models

    All-optical spiking neurosynaptic networks with self-learning capabilities

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    This is the author accepted manuscript. The final version is available from Nature Research via the DOI in this record.Software implementations of brain-inspired computing underlie many important computational tasks, from image processing to speech recognition, artificial intelligence and deep learning applications. Yet, unlike real neural tissue, traditional computing architectures physically separate the core computing functions of memory and processing, making fast, efficient and low-energy computing difficult to achieve. To overcome such limitations, an attractive alternative is to design hardware that mimics neurons and synapses. Such hardware, when connected in networks or neuromorphic systems, processes information in a way more analogous to brains. Here we present an all-optical version of such a neurosynaptic system, capable of supervised and unsupervised learning. We exploit wavelength division multiplexing techniques to implement a scalable circuit architecture for photonic neural networks, successfully demonstrating pattern recognition directly in the optical domain. Such photonic neurosynaptic networks promise access to the high speed and high bandwidth inherent to optical systems, thus enabling the direct processing of optical telecommunication and visual data.Engineering and Physical Sciences Research Council (EPSRC)European CommissionDeutsche Forschungsgemeinschaft (DFG

    Inference and Learning in Spiking Neural Networks for Neuromorphic Systems

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    Neuromorphic computing is a computing field that takes inspiration from the biological and physical characteristics of the neocortex system to motivate a new paradigm of highly parallel and distributed computing to take on the demands of the ever-increasing scale and computational complexity of machine intelligence esp. in energy-limited systems such as Edge devices, Internet-of-Things (IOT), and cyber physical systems (CPS). Spiking neural network (SNN) is often studied together with neuromorphic computing as the underlying computational model . Similar to the biological neural system, SNN is an inherently dynamic and stateful network. The state and output of SNN do not only dependent on the current input, but also dependent on the history information. Another distinct property of SNN is that the information is represented, transmitted, and processed as discrete spike events, also referred to as action potentials. All the processing happens in the neurons such that the computation itself is massively distributed and parallel. This enables low power information transmission and processing. However, it is inefficient to implement SNNs on traditional Von Neumann architecture due to the performance gap between memory and processor. This has led to the advent of energy-efficient large-scale neuromorphic hardware such as IBM\u27s TrueNorth and Intel\u27s Loihi that enables low power implementation of large-scale neural networks for real-time applications. And although spiking networks have theoretically been shown to have Turing-equivalent computing power, it remains a challenge to train deep SNNs; the threshold functions that generate spikes are discontinuous, so they do not have derivatives and cannot directly utilize gradient-based optimization algorithms for training. Biologically plausible learning mechanism spike-timing-dependent plasticity (STDP) and its variants are local in synapses and time but are unstable during training and difficult to train multi-layer SNNs. To better exploit the energy-saving features such as spike domain representation and stochastic computing provided by SNNs in neuromorphic hardware, and to address the hardware limitations such as limited data precision and neuron fan-in/fan-out constraints, it is necessary to re-design a neural network including its structure and computing. Our work focuses on low-level (activations, weights) and high-level (alternative learning algorithms) redesign techniques to enable inference and learning with SNNs in neuromorphic hardware. First, we focused on transforming a trained artificial neural network (ANN) to a form that is suitable for neuromorphic hardware implementation. Here, we tackle transforming Long Short-Term Memory (LSTM), a version of recurrent neural network (RNN) which includes recurrent connectivity to enable learning long temporal patterns. This is specifically a difficult challenge due to the inherent nature of RNNs and SNNs; the recurrent connectivity in RNNs induces temporal dynamics which require synchronicity, especially with the added complexity of LSTMs; and SNNs are asynchronous in nature. In addition, the constraints of the neuromorphic hardware provided a massive challenge for this realization. Thus, in this work, we invented a store-and-release circuit using integrate-and-fire neurons which allows the synchronization and then developed modules using that circuit to replicate various parts of the LSTM. These modules enabled implementation of LSTMs with spiking neurons on IBM\u27s TrueNorth Neurosynaptic processor. This is the first work to realize such LSTM networks utilizing spiking neurons and implement on a neuromorphic hardware. This opens avenues for the use of neuromorphic hardware in applications involving temporal patterns. Moving from mapping a pretrained ANN, we work on training networks on the neuromorphic hardware. Here, we first looked at the biologically plausible learning algorithm called STDP which is a Hebbian learning rule for learning without supervision. Simplified computational interpretations of STDP is either unstable and/or complex such that it is costly to implement on hardware. Thus, in this work, we proposed a stable version of STDP and applied intentional approximations for low-cost hardware implementation called Quantized 2-Power Shift (Q2PS) rule. With this version, we performed both unsupervised learning for feature extraction and supervised learning for classification in a multilayer SNN to achieve comparable to better accuracy on MNIST dataset compared to manually labelled two-layered networks. Next, we approached training multilayer SNNs on a neuromorphic hardware with backpropagation, a gradient-based optimization algorithm that forms the backbone of deep neural networks (DNN). Although STDP is biologically plausible, its not as robust for learning deep networks as backpropagation is for DNNs. However, backpropagation is not biologically plausible and not suitable to be directly applied to SNNs, neither can it be implemented on a neuromorphic hardware. Thus, in the first part of this work, we devise a set of approximations to transform backprogation to the spike domain such that it is suitable for SNNs. After the set of approximations, we adapted the connectivity and weight update rule in backpropagation to enable learning solely based on the locally available information such that it resembled a rate-based STDP algorithm. We called this Error-Modulated STDP (EMSTDP). In the next part of this work, we implemented EMSTDP on Intel\u27s Loihi neuromorphic chip to realize online in-hardware supervised learning of deep SNNs. This is the first realization of a fully spike-based approximation of backpropagation algorithm implemented on a neuromorphic processor. This is the first step towards building an autonomous machine that learns continuously from its environment and experiences

    Parallel computing for brain simulation

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    [Abstract] Background: The human brain is the most complex system in the known universe, it is therefore one of the greatest mysteries. It provides human beings with extraordinary abilities. However, until now it has not been understood yet how and why most of these abilities are produced. Aims: For decades, researchers have been trying to make computers reproduce these abilities, focusing on both understanding the nervous system and, on processing data in a more efficient way than before. Their aim is to make computers process information similarly to the brain. Important technological developments and vast multidisciplinary projects have allowed creating the first simulation with a number of neurons similar to that of a human brain. Conclusion: This paper presents an up-to-date review about the main research projects that are trying to simulate and/or emulate the human brain. They employ different types of computational models using parallel computing: digital models, analog models and hybrid models. This review includes the current applications of these works, as well as future trends. It is focused on various works that look for advanced progress in Neuroscience and still others which seek new discoveries in Computer Science (neuromorphic hardware, machine learning techniques). Their most outstanding characteristics are summarized and the latest advances and future plans are presented. In addition, this review points out the importance of considering not only neurons: Computational models of the brain should also include glial cells, given the proven importance of astrocytes in information processing.Galicia. Consellería de Cultura, Educación e Ordenación Universitaria; GRC2014/049Galicia. Consellería de Cultura, Educación e Ordenación Universitaria; R2014/039Instituto de Salud Carlos III; PI13/0028

    Inference And Learning In Spiking Neural Networks For Neuromorphic Systems

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    Neuromorphic computing is a computing field that takes inspiration from the biological and physical characteristics of the neocortex system to motivate a new paradigm of highly parallel and distributed computing to take on the demands of the ever-increasing scale and computational complexity of machine intelligence esp. in energy-limited systems such as Edge devices, Internet-of-Things (IOT), and cyber physical systems (CPS). Spiking neural network (SNN) is often studied together with neuromorphic computing as the underlying computational model . Similar to the biological neural system, SNN is an inherently dynamic and stateful network. The state and output of SNN do not only dependent on the current input, but also dependent on the history information. Another distinct property of SNN is that the information is represented, transmitted, and processed as discrete spike events, also referred to as action potentials. All the processing happens in the neurons such that the computation itself is massively distributed and parallel. This enables low power information transmission and processing. However, it is inefficient to implement SNNs on traditional Von Neumann architecture due to the performance gap between memory and processor. This has led to the advent of energy-efficient large-scale neuromorphic hardware such as IBM\u27s TrueNorth and Intel\u27s Loihi that enables low power implementation of large-scale neural networks for real-time applications. And although spiking networks have theoretically been shown to have Turing-equivalent computing power, it remains a challenge to train deep SNNs; the threshold functions that generate spikes are discontinuous, so they do not have derivatives and cannot directly utilize gradient-based optimization algorithms for training. Biologically plausible learning mechanism spike-timing-dependent plasticity (STDP) and its variants are local in synapses and time but are unstable during training and difficult to train multi-layer SNNs. To better exploit the energy-saving features such as spike domain representation and stochastic computing provided by SNNs in neuromorphic hardware, and to address the hardware limitations such as limited data precision and neuron fan-in/fan-out constraints, it is necessary to re-design a neural network including its structure and computing. Our work focuses on low-level (activations, weights) and high-level (alternative learning algorithms) redesign techniques to enable inference and learning with SNNs in neuromorphic hardware. First, we focused on transforming a trained artificial neural network (ANN) to a form that is suitable for neuromorphic hardware implementation. Here, we tackle transforming Long Short-Term Memory (LSTM), a version of recurrent neural network (RNN) which includes recurrent connectivity to enable learning long temporal patterns. This is specifically a difficult challenge due to the inherent nature of RNNs and SNNs; the recurrent connectivity in RNNs induces temporal dynamics which require synchronicity, especially with the added complexity of LSTMs; and SNNs are asynchronous in nature. In addition, the constraints of the neuromorphic hardware provided a massive challenge for this realization. Thus, in this work, we invented a store-and-release circuit using integrate-and-fire neurons which allows the synchronization and then developed modules using that circuit to replicate various parts of the LSTM. These modules enabled implementation of LSTMs with spiking neurons on IBM’s TrueNorth Neurosynaptic processor. This is the first work to realize such LSTM networks utilizing spiking neurons and implement on a neuromorphic hardware. This opens avenues for the use of neuromorphic hardware in applications involving temporal patterns. Moving from mapping a pretrained ANN, we work on training networks on the neuromorphic hardware. Here, we first looked at the biologically plausible learning algorithm called STDP which is a Hebbian learning rule for learning without supervision. Simplified computational interpretations of STDP is either unstable and/or complex such that it is costly to implement on hardware. Thus, in this work, we proposed a stable version of STDP and applied intentional approximations for low-cost hardware implementation called Quantized 2-Power Shift (Q2PS) rule. With this version, we performed both unsupervised learning for feature extraction and supervised learning for classification in a multilayer SNN to achieve comparable to better accuracy on MNIST dataset compared to manually labelled two-layered networks. Next, we approached training multilayer SNNs on a neuromorphic hardware with backpropagation, a gradient-based optimization algorithm that forms the backbone of deep neural networks (DNN). Although STDP is biologically plausible, its not as robust for learning deep networks as backpropagation is for DNNs. However, backpropagation is not biologically plausible and not suitable to be directly applied to SNNs, neither can it be implemented on a neuromorphic hardware. Thus, in the first part of this work, we devise a set of approximations to transform backprogation to the spike domain such that it is suitable for SNNs. After the set of approximations, we adapted the connectivity and weight update rule in backpropagation to enable learning solely based on the locally available information such that it resembled a rate-based STDP algorithm. We called this Error-Modulated STDP (EMSTDP). In the next part of this work, we implemented EMSTDP on Intel\u27s Loihi neuromorphic chip to realize online in-hardware supervised learning of deep SNNs. This is the first realization of a fully spike-based approximation of backpropagation algorithm implemented on a neuromorphic processor. This is the first step towards building an autonomous machine that learns continuously from its environment and experiences
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