ACM Journal on

Emerging Technologies in Computing (JETC)

Latest Articles

Guest Editors’ Introduction

Structured Pruning of Deep Convolutional Neural Networks

Real-time application of deep learning algorithms is often hindered by high computational complexity and frequent memory accesses. Network pruning is... (more)

Energy-Efficient and Improved Image Recognition with Conditional Deep Learning

Deep-learning neural networks have proven to be very successful for a wide range of recognition tasks across modern computing platforms. However, the... (more)

Stochastic CBRAM-Based Neuromorphic Time Series Prediction System

In this research, we present a Conductive-Bridge RAM (CBRAM)-based neuromorphic system which efficiently addresses time series prediction. We propose... (more)


New JETC Editor-in-Chief

The Journal of Emerging Technologies in Computing Systems is happy to welcome Prof. Yuan Xie (University of California at Santa Barbara as the incoming Editor in Chief! We are also grateful to Prof. Krish Chakrabarty for serving as Editor in Chief for the last six years, and would like to wish to both all the best in their future!

About JETC


The Journal of Emerging Technologies in Computing Systems invites submissions of original technical papers describing research and development in emerging technologies in computing systems. Major economic and technical challenges are expected to impede the continued scaling of semiconductor devices. This has resulted in the search for alternate mechanical, biological/biochemical, nanoscale electronic, asynchronous and quantum computing and sensor technologies. 

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Editorial for JETC Special Issue on Alternative Computing Systems

Mobile Unified Memory-Storage Structure based on Hybrid Non-Volatile Memories

In mobile computing systems, the limited amount of main memory space leads to page swap operation overhead and data duplication in both main memory and secondary storage. Furthermore, SQLite write operations in mobile devices such as smartphones and tablet PCs tend to frequently overwrite data to storage, significantly degrading performance. Thus, this paper presents a unified memory-storage structure that is optimized for mobile devices and blurs the boundary between the existing main memory layer and secondary storage layer. The unified memory-storage structure consists of a Dynamic RAM (DRAM) based dual buffering module, hybrid unified memory-storage array consisting of DRAM, a SLC/MLC hybrid 3D cross point array, and NAND Flash memory, and an associated unified storage translation layer devised for the memory address and file translation mechanism as a system software module. This hybrid array of non-volatile memories is formed as a single memory-disk integrated storage space that can be logically divided into static and dynamic spaces. Experimental results show that the overall performance of the hybrid unified memory-storage system with the buffering structure increases by around 59% and power consumption is also improved by 30%, compared to previous integrated memory-disk system.

Impact of Electrostatic Coupling and Wafer-Bonding Defects on Delay Testing of Monolithic 3D Integrated Circuits

Monolithic three-dimensional (M3D) integration is gaining momentum as it has the potential to achieve significantly higher device density compared to 3D integration based on through-silicon vias. In this paper, we first analyze electrostatic coupling in M3D ICs, which arises due to the aggressive scaling of the inter-layer dielectric thickness. We then analyze defects that arise due to voids created during wafer bonding. We quantify the impact of these defects on the threshold voltage of a top-layer transistor in an M3D integrated circuit. We also show that wafer-bonding defects can lead to a change in the resistance of inter-layer vias (ILVs), and in some cases, lead to an open in an ILV or a short between two ILVs. We then analyze the impact of these defects on path delays using HSpice simulations. We study their impact on the effectiveness of delay-test patterns for multiple instances of IWLS05 benchmarks in which these defects were randomly injected. Our results show that the timing characteristics of an M3D IC can be significantly altered due to coupling and wafer-bonding defects if the thickness of its ILD is less than 100 nm.

Distributed In-Memory Computing on Binary RRAM Crossbar

The recent emerging resistive random-access memory (RRAM) can provide non-volatile memory storage but also intrinsic computing for matrix-vector multiplication, which is ideal for low-power and high-throughput data analytics accelerator performed in memory. However, the existing RRAM-crossbar based computing is mainly assumed as a multi-level analog computing, whose result is sensitive to process nonuniformity as well as additional overhead from AD-conversion and I/O. In this paper, we explore the matrix-vector multiplication accelerator on a binary RRAM-crossbar with adaptive 1-bit-comparator based parallel conversion. Moreover, a distributed in-memory computing architecture is also developed with according control protocol. Both memory array and logic accelerator are implemented on the binary RRAM-crossbar, where logic-memory pair can be distributed with protocol of control bus. Experiment results have shown that compared to the analog RRAM-crossbar, the proposed binary RRAM-crossbar can achieve significant area-saving with better calculation accuracy. Moreover, significant speedup can be achieved for matrix-vector multiplication in the neuron-network based machine learning such that the overall training and testing time can be both reduced respectively. In addition, large energy saving can be also achieved when compared to the traditional CMOS-based out-of-memory computing architecture.

Power-Utility-Driven Write Management for MLC PCM

Phase change memory is a promising alternative to DRAM as main memory due to its merits of high density and low leakage power. The Multi-level Cell PCM reveals more attractions than Single-level Cell PCM because it can store multiple bits per cell to achieve higher density. With the iterative write technique, MLC writes demand higher power than DRAM writes, but the power supply of MLC system is similar to that of DRAM. The incompatibility of high write power and limited power budget results in the degradation of the write throughput and performance. In this work, we investigate both write scheduling policy and power management to improve the MLC power utility and alleviate the negative impacts. We identify the power-utility-driven write scheduling as an online bin-packing problem and then derive a power-utility-driven scheduling (PUDS) policy from the First-Fit algorithm to improve the write power usage. Based on the SET ramp-down pulse characteristic, we propose the SET Power Amortization (SPA) policy which proactively reclaims the power tokens at intra-SET level to promote the power utilization. Our results demonstrate that the system with PUDS+SPA has a 60% increase of performance and 36% improvement of the power utility over the state-of-the-art power management technique.

Design of approximate compressors for multiplication

Approximate computing has recently developed as a promising technique for energy efficient VLSI system design and also best suited for error resilient applications, such as signal processing and multimedia. Approximate computing reduces accuracy, but it still provides significant and faster results with usually lower power consumption. This is mostly attractive for arithmetic circuits. In this paper, various novel design approaches of approximate 4-2 and 5-2 Compressors are proposed for reduction of the partial products stages during multiplication. Three approximate 8x8 Dadda multiplier designs using a novel three 4-2 approximate compressors and also two approximate 8x8 Dadda multiplier designs using a novel 5-2 approximate Compressors are proposed. Extensive simulation results show that the proposed designs achieve significant accuracy improvement together with power and delay reductions compared to previous approximate designs.

Real Time SoC Security against Passive Threats using Crypsis Behaviour of Geckos

The rapid evolution of the embedded era has witnessed globalization for the design of SoC architectures in the semiconductor design industry. Though issues of cost and complexity have been resolved in such a methodology, yet the root of hardware trust have been evicted. Malicious circuitry, a.k.a. Hardware Trojan Horses (HTH) is inserted by adversaries in the untrusted phases of design. HTH remains dormant during testing but gets triggered at runtime to cause sudden active and passive attacks. In this work, we focus on the runtime passive threats posed by HTH. Nature inspired algorithms offers an alternative to the conventional techniques for solving complex problems in the domain of computer science. However, most are optimization techniques and none is dedicated to security. We seek refuge to the crypsis behavior exhibited by geckos to generate a runtime security technique for SoC architectures, which can bypass runtime passive threats of HTH. An intelligent security IP which works on the proposed security principles is designed based on the structure of ART1 neural architecture. The security mechanism is demonstrated with the aid of Finite State Automata. Low area and power overhead of our proposed security IP over standard benchmarks and practical crypto SoC architectures as obtained in experimental results supports its applicability for practical implementations.

High-Performance Computing with Quantum Processing Units

The prospects of quantum computing have driven efforts to realize fully functional quantum processing units (QPUs). Recent success in developing proof-of-principle QPUs has prompted the question of how to integrate these emerging processors into modern high-performance computing (HPC) systems. We examine how QPUs can be integrated into current and future HPC system architectures by accounting for functional and physical design requirements. We identify two integration pathways that are differentiated by infrastructure constraints on the QPU and the use cases expected for the HPC system. This includes a tight integration that assumes infrastructure bottlenecks can be overcome as well as a loose integration that assumes they cannot. We find that the performance of both approaches is likely to depend on the quantum interconnect that serves to entangle multiple QPUs. We also identify several challenges in assessing QPU performance for HPC, and we consider new metrics that capture the interplay between system architecture and the quantum parallelism underlying computational performance.

Survey of STT-MRAM Cell Design Strategies: Taxonomy and Sense Amplifier Tradeoffs for Resiliency

Spin-Transfer Torque Random Access Memory (STT-MRAM) has been explored as a post-CMOS technology for embedded and data storage applications seeking non-volatility, near-zero standby energy, and high density. Towards attaining these objectives for practical implementations, various techniques to mitigate the specific reliability challenges associated with STT-MRAM elements are surveyed, classified, and assessed herein. Cost and suitability metrics assessed include the area of nanomagmetic and CMOS components per bit, access time and complexity, sense margin, and energy or power consumption costs versus resiliency benefits. Solutions to the reliability issues identified are addressed within a taxonomy created to categorize the current and future approaches to reliable STT-MRAM designs. A variety of destructive and non-destructive sensing schemes are assessed for process variation tolerance, read disturbance reduction, sense margin, and write polarization asymmetry compensation. The highest resiliency strategies deliver a sensing margin above 300 mV while incurring low power and energy consumption on the order of picojoules and microwatts, respectively, while attaining read sense latency of a few nanoseconds down to hundreds of picoseconds for non-destructive and destructive sensing schemes, respectively. Additional Key Words and Phrases: Spin-Transfer Torque storage elements, STT-MRAM, Magnetic Tunnel Junction (MTJ), Self-referencing schemes, Reliability, Process Variation, Read/Write Reliability

Memory-Centric Reconfigurable Accelerator for Classification and Machine Learning Applications

Big Data refers to the growing challenge of turning massive, often unstructured datasets into meaningful, actionable data. As datasets grow from petabytes to exabytes and beyond, it becomes increasingly difficult to run advanced analytics, especially machine learning, in a reasonable time and on a practical power budget. Previous work has focused on accelerating analytics implemented as SQL queries on data-parallel platforms with off-the-shelf CPUs and GPGPUs. However, these systems are general-purpose, and still require a vast amount of data transfer between storage and computing elements, limiting system efficiency. Instead, we present a reconfigurable, memory-centric accelerator which operates at the last level of memory, dramatically reducing the energy required for data transfer and processing of machine learning applications. We functionally validate the framework using a hardware emulation platform and three representative applications: Naive Bayesian Classification, Convolutional Neural Networks, and k-Means Clustering. Results are compared with implementations on a modern CPU and GPU. Finally, the use of in-memory dataset decompression to further reduce data transfer volume is investigated. The system achieves an average energy efficiency improvement of 74x and 212x over GPU and single-threaded CPU, respectively, while dataset compression is shown to improve overall efficiency by an additional 1.8x on average.

SPARCNet: A Hardware Accelerator for Efficient Deployment of Sparse Convolutional Networks

Deep neural networks have been shown to outperform prior state-of-the-art solutions that often relied heavily on hand-engineered feature extraction techniques coupled with simple classification algorithms. In particular, deep convolutional neural networks have been shown to dominate on several popular public benchmarks such as ImageNet database. Unfortunately, the benefits of deep networks have yet to be fully exploited in embedded, resource-bound settings that have strict power and area budgets. In order to reduce power and area while still achieving required throughput, classification-efficient network architectures are required in addition to optimal deployment on efficient hardware. In this work, we target both of these enterprises. For the first objective, we analyze simple, biologically-inspired reduction strategies that are applied both before and after training. The central theme of the techniques is the introduction of sparsification to help dissolve away the dense connectivity that is often found at different levels in convolutional networks. In the second contribution, we propose SPARCNet: a hardware accelerator for efficient deployment of SPARse Convolutional NETworks. The accelerator looks to enable deploying networks in such resource-bound settings by exploiting efficient forms of parallelism and the proposed sparsification techniques.

Sketching Computation with Stochastic Processing Engines

In conventional embedded computing, a sudden shortage of computing resource, such as premature termi-nation or power outage, often results a complete computing failure and produces totally unusable results.To circumvent this challenge, we present a novel technique that allows reconfigurable computing to achieve quality scalability by leveraging probabilistic principle. Our objective is to maximize the quality and us-ability of final results even under sudden change of computing resource.This paper explores how to leverage stochastic principle to gracefully salvage partially finished results of embedded computing. Our work is inspired by the concept of incremental sketching frequently found in artistic rendering, where the drawing procedure consists of a series of steps, each gradually improving the quality of results. The essence of our approach is to encode the input signal as the probability density function, perform stochastic computing operations on the signal in the probabilistic domain, and decode the output signal by estimating the probability density function of the resulting random samples.To validate our proposed architecture design, we have implemented a proof-of-concept probabilistic convolver with a Virtex 6FPGA device. Finally, we use three convolution-based image processing applications, image correspondence,image sharpening, and edge detection, to demonstrate that important embedded computing applications can indeed be sketched in a graceful manner.

Computing Polynomials using Unipolar Stochastic Logic

This paper addresses subtraction and polynomial computations using unipolar stochastic logic. Stochastic computing requires simple logic gates and stochastic logic based circuits are inherently fault-tolerant. While it is easy to realize multiplication and scaled addition, implementation of subtraction is non-trivial using unipolar stochastic logic. Additionally, an accurate computation of subtraction is critical for the implementation of polynomials with negative coefficients in stochastic unipolar representation. This paper, for the first time, demonstrates that instead of using well-known Bernstein polynomials, stochastic computation of polynomials can be implemented by using a stochastic subtractor and factorization. Three major contributions are made in this paper. First, two approaches are proposed to compute subtraction in stochastic unipolar representation. In the first approach, the subtraction operation is approximated by cascading multi-levels of OR and AND gates. In the second approach, the stochastic subtraction is implemented using a multiplexer and a stochastic divider. Second, computation of polynomials in stochastic unipolar format is presented using scaled addition and proposed stochastic subtraction. Third, we propose stochastic computation of polynomials using factorization. From experimental results, it is shown that the proposed stochastic logic circuits require less hardware complexity than the previous stochastic polynomial implementation using Bernstein polynomials.

Redesign the Memory Allocator for Non-Volatile Main Memory

The non-volatile memoryNVM has the merits of byte-addressability, fast speed, persistency and low power consumption, which make it attractive to be used as main memory. Commonly, user process dynamically acquires memory through memory allocators. However, traditional memory allocators designed with in-place data writes are not appropriate for non-volatile main memoryNVRAM due to the limited endurance. In this paper, first, we quantitatively analyze the wear-oblivious of DRAM-oriented designed allocatorglibc malloc and the inefficiency of wear-conscious allocatorNVMalloc. Then, we propose WAlloc, an efficient wear-aware manual memory allocator designed for NVRAM: (1) decouples metadata and data management; (2) distinguishes metadata with volatility; (3) redirects the data writes around to achieve wear-leveling; (4) redesigns an efficient and effective NVM copy mechanism, bypassing the CPU cache and prefetching data explicitly. Finally, experimental results show that the wear-leveling of WAlloc outperforms that of NVMalloc about 30% and 60% under random workloads and well-distributed workloads, respectively. Besides, WAlloc reduces average data memory writes in 64 bytes block by an average of 1.5X comparing with glibc malloc. With the fulfillment of data persistency, cache bypassing NVM copy is better than clflushing NVM copy with performance of circa 14% improvement.

VLSI Architecture for the Restricted Boltzmann Machine

Neural network (NN) systems are widely used in many important applications ranging from computer vision to speech recognition. To date, most NN systems are processed by general processing units like CPUs or GPUs. However, as the sizes of dataset and network rapidly increase, the original software implementations suffer from long training time. To overcome this problem, specialized hardware accelerators are needed to design high-speed NN systems. This paper presents an efficient hardware architecture of restricted Boltzmann machine (RBM) that is an important category of NN systems. Various optimization approaches at hardware level are performed to improve the training speed. As-soon-as-possible and overlapped-scheduling approaches are used to reduce the latency. It is shown that, compared with the flat design, the proposed RBM architecture can achieve 50% reduction in training time. In addition, an on-the-fly computation scheme is also used to reduce the storage requirement of binary and stochastic states by several hundreds of times. Then, based on the proposed approach, a 784-2252 RBM design example is developed for MNIST handwritten digit recognition dataset. Analysis shows that the VLSI design of RBM achieves 170 times speedup in training as compared to a CPU-based solution with small performance loss.


Publication Years 2005-2017
Publication Count 328
Citation Count 802
Available for Download 328
Downloads (6 weeks) 2238
Downloads (12 Months) 16239
Downloads (cumulative) 138718
Average downloads per article 423
Average citations per article 2
First Name Last Name Award
Iris Bahar ACM Distinguished Member (2012)
Krishnendu Chakrabarty ACM Distinguished Member (2008)
ACM Senior Member (2006)
Nikil D. Dutt ACM Distinguished Member (2007)
Igor Markov ACM Distinguished Member (2011)
ACM Senior Member (2007)
Dharmendra Modha ACM Gordon Bell Prize
Special Category (2009) ACM Gordon Bell Prize
Special Category (2009)
Saraju P. Mohanty ACM Senior Member (2010)
Trevor Mudge ACM-IEEE CS Eckert-Mauchly Award (2014)
Massoud Pedram ACM Distinguished Member (2008)
Steven K Reinhardt ACM Distinguished Member (2010)

First Name Last Name Paper Counts
Niraj Jha 19
Krishnendu Chakrabarty 10
Kaushik Roy 7
Wei Zhang 7
Yuan Xie 6
Li Shang 6
Michael Niemier 6
Rodney Van Meter 6
Xiaobosharon Hu 5
Pierre Gaillardon 5
Partha Pande 5
Mehdi Tahoori 5
Fabrizio Lombardi 5
Mariagrazia Graziano 4
Shuo Wang 4
Lei Wang 4
Alvin Lebeck 4
Mohammad Tehranipoor 4
Chris Dwyer 4
Morteza Zamani 3
Spyros Tragoudas 3
Mahdi Nikdast 3
Michael Crocker 3
Paul Wettin 3
Jordi Cortadella 3
Sourindra Chaudhuri 3
Jianwei Dai 3
Mehdi Sedighi 3
Aoxiang Tang 3
Yaoyao Ye 3
Bhargab Bhattacharya 3
Tao Xu 3
Jacques Klein 3
Weisheng Zhao 3
Fei Su 3
Ferdinand Peper 3
Arun Ravindran 3
Nagarajan Ranganathan 3
Maurizio Zamboni 3
Eren Kursun 3
Arindam Mukherjee 3
Robert Wille 3
Xiaowen Wu 3
Kishor Trivedi 3
Rolf Drechsler 3
Kolin Paul 2
Lionel Torres 2
Stefano Frache 2
Yaojun Zhang 2
Giorgio Natale 2
Giovanni Micheli 2
Bryant Wysocki 2
Cheng Zhuo 2
Bao Liu 2
Massoud Pedram 2
Jacob Murray 2
Saibal Mukhopadhyay 2
John Savage 2
Byungsoo Choi 2
Sparsh Mittal 2
Xuanyao Fong 2
Damien Querlioz 2
Rivalino Matias 2
Oliver Keszocze 2
Ashok Palaniswamy 2
Jing Huang 2
André DeHon 2
Suman Datta 2
Lei Wang 2
Tsungyi Ho 2
Mehrdad Nourani 2
Min Chen 2
Alexis De Vos 2
Faquir Jain 2
Ruth Bahar 2
Anil Wipat 2
Mahboobeh Houshmand 2
Pallav Gupta 2
Shashikanth Bobba 2
Marco Ottavi 2
Bharat Joshi 2
Josep Carmona 2
Philippe Coussy 2
Baris Taskin 2
Xianmin Chen 2
Mona Arabzadeh 2
Giovanni De Micheli 2
Jaidev Patwardhan 2
Luca Schiano 2
Yongtae Kim 2
Arighna Deb 2
Prateek Mishra 2
Ulf Schlichtmann 2
Amlan Ganguly 2
Eric Rachlin 2
Vijaykrishnan Narayanan 2
Peng Li 2
Hafizur Rahaman 2
Dhiraj Pradhan 2
Torben Mogensen 2
Behrooz Shirazi 2
Xuan Wang 2
Rangharajan Venkatesan 2
Anand Raghunathan 2
Vijay Reddy 2
Sumeet Gupta 2
Mostafizur Rahman 2
Csaba Moritz 2
Sachin Sapatnekar 2
Himanshu Thapliyal 2
Frederic Chong 2
Jiang Xu 2
Siddhartha Datta 2
Mehdi Saeedi 2
Chiachun Lin 2
Giovanni De Micheli 2
Djaafar Chabi 2
Mrigank Sharad 2
Reza Rad 2
Santosh Khasanvis 2
Chris Myers 2
Douglas Densmore 2
Sudip Roy 2
Gregory Pendina 1
Pier Martelli 1
Giuseppe Profiti 1
Andrea Acquaviva 1
Arijit Raychowdhury 1
Alvaro Padilla 1
Simone Raoux 1
Sayeef Salahuddin 1
Satish Kumar 1
Xueti Tang 1
Xiao Luo 1
Shiva Navab 1
Kang Wang 1
Albert Lin 1
Muhammad Salam 1
Pedro Irazoqui 1
Chunyi Lee 1
Wen Ko 1
Steve Majerus 1
Michael Suster 1
Paul Fletter 1
Hsinhung Liao 1
Tao Wang 1
Xiang Chen 1
Prithviraj Banerjee 1
Alan Savage 1
Siddharth Garg 1
Diana Marculescu 1
Andrès Márquez 1
Jacob Levy 1
Michael Thomsen 1
Yiyu Shi 1
Kamalika Datta 1
Pragyan Mohanty 1
Umamaheswara Tida 1
Stephan De Castro 1
Elena Vatajelu 1
Anirudh Iyengar 1
Kaveh Shamsi 1
Xunzhao Yin 1
Jayita Das 1
Tiansheng Zhang 1
Yue Zhang 1
Claude Chappert 1
Sungjun Yoon 1
V Devanathan 1
Chunyao Wang 1
Zhehui Wang 1
Abdullah Guler 1
Chao Chen 1
Wei Jiang 1
Zoha Pajouhi 1
Guangjun Wen 1
Anderson Sartor 1
Ajay Singhvi 1
Sophiane Senni 1
Ingchao Lin 1
Laura Conde-Canencia 1
Arnab Raha 1
Wei Lu 1
Masud Chowdhury 1
Alexander Gotmanov 1
Xuefu Zhang 1
Fei Xia 1
Junchen Liu 1
Gabriela Nicolescu 1
Yuliang Jin 1
Karthik Shankar 1
Moonseok Kim 1
Christophe Layer 1
Taşkın Koçak 1
Saraju Mohanty 1
Francesco Abate 1
Sungkyu Lim 1
Lyn Venken 1
Siva Narendra 1
Alejandro Schrott 1
Steven Watts 1
Mohamad Krounbi 1
Yousuke Takada 1
Shihhsien Kuo 1
Xiaoxia Wu 1
Anish Muttreja 1
Yang Liu 1
Shriram Raghunathan 1
Sheyshi Lu 1
Chandrakant Patel 1
Cullen Bash 1
Susmit Biswas 1
Heba Saadeldeen 1
Ricardo Bianchini 1
Raymond Beausoleil 1
Xi Chen 1
Gaurav Rathi 1
Eiri Hashimoto 1
Yutaka Sacho 1
Yongxiang Liu 1
Ali Saidi 1
Yuchun Ma 1
Andy Chiu 1
Haiyao Huang 1
Md Rahman 1
Gerhard Dueck 1
Claudio Moraga 1
Xiaoyu Song 1
Marek Perkowski, 1
Samik Some 1
Yu Cao 1
Olivier Thomas 1
Yu Wang 1
Tzvetan Metodi 1
Andrew Cross 1
Howie Huang 1
Michael Henry 1
Jeyavijayan Rajendran 1
Benjamin Gojman 1
Ashok Srivastava 1
Clay Mayberry 1
Venkataraman Mahalingam 1
Krishnendu Chakrabarty 1
Xuemei Chen 1
Kerry Bernstein 1
Peter Kogge 1
James Tour 1
Garrett Rose 1
Zahra Sasanian 1
H Ugurdag 1
Meng Zhang 1
Kenichi Morita 1
V Kamakoti 1
A Bhattacharya 1
Yuan Xie 1
H Wong 1
Soumya Eachempati 1
Jaeyoon Kim 1
Spyros Tragoudas 1
Xuhao Chen 1
Ajay Joshi 1
Xia Zhang 1
Hassan Mohammadi 1
Priyadarshini Panda 1
Tinoosh Mohsenin 1
Ayse Coskun 1
Ruiyu Wang 1
Massimo Roch 1
Zhaohao Wang 1
Roger Lake 1
Yang Yi 1
Yifang Liu 1
Shankar Balachandran 1
Veezhinathan Kamakoti 1
Martin Roetteler 1
Franjo Ivančić 1
Natsuo Nakamura 1
Taeho Kgil 1
Yong Zhan 1
Dan Venutolo 1
Erik Lindgren 1
Harold Fellermann 1
Jennifer Hallinan 1
Zhiqiang Li 1
Bibhash Sen 1
Anuroop Vidapalapati 1
Guangyu Sun 1
Huazhong Yang 1
Masoud Zamani 1
Tingting Hwang 1
Darshan Thaker 1
Matthias Beste 1
Kouichi Akahane 1
Daniel Sorin 1
Minhao Zhu 1
Suman Sah 1
Benjamin Belzer 1
Vivek Shende 1
Weiguo Tang 1
Jonathan Bean 1
Okan Palaz 1
S Srinivasan 1
Mohsen Raji 1
Hossein Pedram 1
Hang Zhang 1
Keran Zhou 1
Gilles Sassatelli 1
Shunming Syu 1
Rodney Meter 1
Syyen Kuo 1
Marc Galceran-Oms 1
John Bainbridge 1
Aaron Dingler 1
Stefano Russo 1
Senthil Arasu 1
Fumio Machida 1
Jean Araujo 1
Paulo Maciel 1
William Cane-Wissing 1
Muhammad Ahsan 1
Loic Decloedt 1
Angsuman Sarkar 1
Mike Hayes 1
Justin Wenck 1
Rajeevan Amirtharajah 1
Damiano Piovesan 1
Enrico Macii 1
Kathleen Marchal 1
Jos Vanderleyden 1
Wujie Wen 1
Vladimir Nikitin 1
Daniel Lottis 1
Kiseok Moon 1
Daniel Mange 1
Oana Boncalo 1
H Wong 1
Kwangting Cheng 1
Margot Damaser 1
David Du 1
Martin Arlitt 1
Tao Yang 1
Tridib Mukherjee 1
Hafiz Sheikh 1
Ishfaq Ahmad 1
Landon Sego 1
Manish Vachharajani 1
Mark Cianchetti 1
David Albonesi 1
Chialin Yang 1
Yu Cao 1
Dhireesha Kudithipudi 1
Marie Flottes 1
Junlin Chen 1
Mark Tehranipoor 1
Swaroop Ghosh 1
Yier Jin 1
Amey Kulkarni 1
Alain Pegatoquet 1
Olivier Berder 1
Saber Moradi 1
Daniel Fasnacht 1
K Habib 1
Leo Filippini 1
Houle Gan 1
Tanay Karnik 1
Milad Maleki 1
Srihari Cadambi 1
Nobuaki Miyakawa 1
Huaixiu Zheng 1
Curtis Madsen 1
Z Wang 1
Ashutosh Chakraborty 1
Yuchun Ma 1
Xuehui Zhang 1
Haera Chung 1
Christopher Curtis 1
Kae Nemoto 1
Simeranjit Brar 1
Jiang Xu 1
Steven Rubin 1
Gilda Garretón 1
Sujay Deb 1
Deukhyoun Heo 1
Ketan Patel 1
Wei Zhao 1
Nadine Gergel-Hackett 1
Nabanita Majumdar 1
Yuxing Yao 1
Gabriel Schulhof 1
Prachi Joshi 1
Yungchih Chen 1
Dong Xiang 1
Jifeng Chen 1
Nong Xiao 1
Fang Liu 1
Fernanda Kastensmidt 1
Yan Fang 1
Jian Zhang 1
Abdoulaye Gamatié 1
Renu Kumawat 1
Amlan Chakrabarti 1
Jiunli Lin 1
Bernard Girau 1
Laurent Rodriguez 1
Zhongqi Li 1
Hrishikesh Jayakumar 1
Woosuk Lee 1
Aldo Romani 1
Nahid Hossain 1
Chinghwa Cheng 1
Avinash Kodi 1
Matteo Reorda 1
Niraj Jha 1
Pohsun Wu 1
Syed Jafri 1
Misagh Khayambashi 1
Tao Li 1
Vijay Raghunathan 1
Jue Wang 1
Miguel Lastras-Montano 1
Melika Payvand 1
Kwangting Cheng 1
Matteo Filippi 1
Dongjin Kim 1
Rajit Manohar 1
Fabien Clermidy 1
Roberto Pietrantuono 1
Jing Zhao 1
Gautam Kapila 1
Yanbin Wang 1
Jack Sampson 1
Abbas Dehghani 1
Kamal Jamshidi 1
Jianyu Chen 1
Sylvain Claireux 1
Guangyan Zhang 1
Wensi Wang 1
Terence O'Donnell 1
Elisa Ficarra 1
Rohit Shenoy 1
Bipin Rajendran 1
Subho Chatterjee 1
Alexander Driskill-Smith 1
André Stauffer 1
Pierre Mudry 1
Gianluca Tempesti 1
Marya Lieberman 1
Jie Deng 1
Chenpang Kung 1
Swaroop Ghosh 1
Steven Garverick 1
Yaojoe Yang 1
Diana Franklin 1
Sandeep Gupta 1
Nicolas Sherwood-Droz 1
Kyle Preston 1
Gilbert Hendry 1
Victor Nicola 1
Mathias Soeken 1
D Miller 1
Bernard Diény 1
Chandan Sarkar 1
Bipul Paul 1
Bryan Jackson 1
Charles Augustine 1
Hai Li 1
Andy Tyrrell 1
Andrew Greensted 1
Joël Rossier 1
Alexander Khitun 1
Mircea Vlăduţiu 1
Lukáš Sekanina 1
Huaiyuan Tseng 1
Yujie Huang 1
Krishna Kant 1
Yaohong Wang 1
Giacomo Ghidini 1
Andrew Rawson 1
Tahir Cader 1
William Gustafson 1
Aleksandr Biberman 1
Qianfan Xu 1
Alan Mickelson 1
Bipul Paul 1
Masaki Okajima 1
Eva Rotenberg 1
Ismo Hänninen 1
Craig Lent 1
Pinghung Yuh 1
Ryangary Kim 1
Chris Kim 1
Bruno Rouzeyre 1
Domenic Forte 1
Sina Shahbazmohamadi 1
Marco Indaco 1
Sanjukta Bhanja 1
Olivier Sentieys 1
Mostafa Azghadi 1
Mehmet Ozdas 1
Edith Beigné 1
Alaeddin Aydiner 1
Chenyuan Zhao 1
William Hwang 1
Stéphane Burignat 1
Tetsuo Yokoyama 1
Alireza Shafaei 1
Taemin Kim 1
Sajid Anwar 1
Alessandro Barenghi 1
Shahed Quadir 1
John Chandy 1
Mario Barbareschi 1
Paolo Prinetto 1
Jaewon Jang 1
Chengwei Lin 1
Trongnhan Le 1
Arnaud Carer 1
Wang Kang 1
Davide Zoni 1
Andrew Kahng 1
Rajat Chakraborty 1
Takanori Maebashi 1
Krisztiàn Flautner 1
Zhen Zhang 1
Dennis Huo 1
Maik Hadorn 1
Wei Zhang 1
Shengqi Yang 1
Wenping Wang 1
Perrine Batude 1
Pinaki Mazumder 1
Christof Teuscher 1
Ali Afzali-Kusha 1
Isaac Chuang 1
Kohei Itoh 1
Jie Zhang 1
Minlun Chuang 1
Harika Manem 1
Ashwani Sharma 1
Mark Oskin 1
Aravinda Kar 1
Jin He 1
Xinmin Yu 1
Kevin Chang 1
M Balakrishnan 1
Michael Leuchtenburg 1
Csaba Moritz 1
Pavan Panchapakeshan 1
Jan Madsen 1
Weichen Liu 1
Niraj Jha 1
Chidhambaranathan R 1
Chirag Garg 1
Arnab Roy 1
Cesare Ferri 1
Sherief Reda 1
Steven Reinhardt 1
Tara Deans 1
Qiaoyan Yu 1
Jonathan Salkind 1
Chris Winstead 1
Ernst Oberortner 1
Joseph Horton 1
Fatima Hadjam 1
Hanwu Chen 1
Andrew Ferraiuolo 1
Hanieh Mirzaei 1
Bo Yuan 1
Bin Li 1
Mehdi Kamal 1
Andres Kwasinski 1
Carlotta Guiducci 1
Leyla Nazhandali 1
Naoya Tate 1
Shengqi Yang 1
Jamil Wakil 1
Robert Hannon 1
Yue Wu 1
Daniel Davids 1
John Hayes 1
Aditya Prasad 1
Jun Zeng 1
Mariam Momenzadeh 1
Graham Jullien 1
Rajeswari Devadoss 1
Jiale Liang 1
S Wong 1
Elena Maftei 1
Kele Shen 1
Wei Chen 1
Liang Wen 1
Xiong Pan 1
Antônio Beck 1
Luigi Carro 1
Steven Levitan 1
Ney Calazans 1
Sarmishtha Ghoshal 1
Sandip Tiwari 1
Anand Raghunathan 1
Arnab Biswas 1
Yao Wang 1
Matheus Moreira 1
Peter Beerel 1
Vineet Sahula 1
Yang Du 1
Bertrand Granado 1
Nasim Farahini 1
Ahmed Hemani 1
Ashkan Eghbal 1
Amirali Ghofrani 1
Hyunchul Seok 1
Luke Theogarajan 1
Kyuho Park 1
Chulmin Kim 1
Jun Pang 1
Alex Yakovlev 1
Steve Furber 1
Simon Davidson 1
Steve Temple 1
Nor Haron 1
Said Hamdioui 1
Roberto Natella 1
Roman Lysecky 1
Janet Roveda 1
Qian Wang 1
Juinndar Huang 1
Jungsang Kim 1
Yuan Xue 1
Chengmo Yang 1
Guillaume Prenat 1
Debesh Das 1
Chung Lam 1
Gregory Corrado 1
Roger Cheek 1
Charles Rettner 1
Chengkok Koh 1
Wengfai Wong 1
R Williams 1
Dmytro Apalkov 1
Penli Huang 1
Hai Li 1
Yiran Chen 1
Vlasia Anagnostopoulou 1
Georgios Varsamopoulos 1
Hengxing Tan 1
Jing Xie 1
Nikil Dutt 1
Benoit Chappet De Vangel 1
César Torres-Huitzil 1
Cyrille Chavet 1
Pooria Yaghini 1
Nader Bagherzadeh 1
Chiahung Chien 1
Marco Tartagni 1
Dongjae Shin 1
Minkyu Maeng 1
Luis Plana 1
David Clark 1
Jim Garside 1
Eustace Painkras 1
Marc Jaekel 1
Evan Lent 1
Domenico Cotroneo 1
Jin Sun 1
Vandi Alves 1
Sumeet Gupta 1
Yihang Chen 1
Anja Von Beuningen 1
Luca Ramini 1
Virgile Javerliac 1
Kotb Jabeur 1
Stephane Gros 1
Pierre Paoli 1
Chengwen Wu 1
Keqin Li 1
Jamie Collier 1
Clemens Moser 1
Rita Casadio 1
Ramprasad Ravichandran 1
Dharmendra Modha 1
Bulent Kurdi 1
Geoffrey Burr 1
Sri Choday 1
Yiran Chen 1
Jun Yang 1
Alexey Khvalkovskiy 1
Mary Eshaghian-Wilner 1
Lucian Prodan 1
Mihai Udrescu 1
Jacob White 1
Gordon Wan 1
Moustafa Mohamed 1
Shinobu Fujita 1
Thomas Lee 1
Stijn De Baerdemacker 1
Luca Breveglieri 1
Qianying Tang 1
Keshab Parhi 1
Youngok Pino 1
Matthew French 1
Jie Meng 1
Giacomo Indiveri 1
Can Sitik 1
Emre Salman 1
Suzanne Lesecq 1
Jinho Lee 1
Kyungsu Kang 1
Naser MohammadZadeh 1
Weikai Shih 1
Nathan McDonald 1
Muzaffer Simsir 1
Shinjiro Toyoda 1
Jason Cong 1
Jie Chen 1
Natalio Krasnogor 1
Amlan Gangul 1
Jude Rivers 1
Saeed Safari 1
Philip Brisk 1
Fuwei Chen 1
Vineeth Vijayakumaran 1
Manoj Yuvaraj 1
Paolo Grani 1
William Munro 1
Chunyao Wang 1
Garrett Rose 1
Naokatsu Yamamoto 1
Makoto Naruse 1
Motoichi Ohtsu 1
Hu Xu 1
Bryan Black 1
Douglas Tougaw 1
Yang Zhao 1
Timothy Dysart 1
Mircea Stan 1
Pritish Narayanan 1
Michael Gladshtein 1
Ke Jiang 1
Haibo Wang 1
Tsungching Huang 1
Aditya Bansal 1
Paul Falkenstern 1
Mohamad Sawan 1
Dang Nguyen 1
Zhenyu Sun 1
Amip Shah 1
Radu Marculescu 1
Sajal Das 1
Michal Lipson 1
Keren Bergman 1
Hongyu Zhou 1
Holger Axelsen 1
Greg Snider 1
Trung Nguyen 1
Suyog Gupta 1
Kyuyeon Hwang 1
Gerardo Pelosi 1
Jean Dutertre 1
Yu Bi 1
Jiannshiun Yuan 1
Azzurra Pulimeno 1
Gefei Wang 1
Youguang Zhang 1
Kiyoung Choi 1
William Fornaciari 1
Vivek De 1
Swarup Bhunia 1
El Hasaneen 1
Shigeto Nakayama 1
Glenn Reinman 1
Nathan Binkert 1
Trevor Mudge 1
Nicholas Roehner 1
David Wolpert 1
Paul Ampadu 1
Rudolf Füchslin 1
Herbert Sauro 1
Goksel Misirli 1
Biplab Sikdar 1
Mark Hagan 1
Daniel Grissom 1
Nishad Nerurkar 1
Jie Chen 1
Sandro Bartolini 1
Christine Nardini 1
Stephan Wong 1
Brandon Jennings 1
Ramy Tadros 1
Jeffrey Krichmar 1
Yong Zhang 1
Benoît Miramond 1
Hugues Wouafo 1
Siddharth Gaba 1
Seongmin Kim 1
Basit Sheikh 1
Michael Kishinevsky 1
Delong Shang 1
Claude Cirba 1
Cathy Chancellor 1
Ahmed Louri 1
Rubens Matos 1
F De Souza 1
Lungyen Chen 1
Laurent Becker 1
Kalyan Biswas 1
Ningning Wang 1
Brendan O'Flynn 1
Cian O'Mathuna 1
Jeff Siebert 1
Jianjia Chen 1
Lothar Thiele 1
Piero Fariselli 1
Matthew Breitwisch 1
Kailash Gopalakrishnan 1
Niladri Mojumder 1
Adrian Ong 1
Eugene Chen 1
Bruce Tidor 1
Jing Li 1
Muthukumar Murugan 1
Zahra Abbasi 1
Sanjay Ranka 1
Phanisekhar Bv 1
Kevin Fox 1
Christopher Mundy 1
Johnnie Chan 1
Zheng Li 1
Robert Glück 1
Yaowen Chang 1
Indranil Sengupta 1
Xin Li 1
Cory Merkel 1
Pratik Kabali 1
Weichen Liu 1
Ransford Hyman 1
Yao Xu 1
Yang Liu 1
Vasilis Pavlidis 1
Debasis Mitra 1
Narayanan Komerath 1
Fiona Teshome 1
Gabriel Loh 1
Arthur Nieuwoudt 1
Lloyd Harriott 1
Sezer Gören 1
Jia Lee 1
Behnam Ghavami 1
Lei Wang 1
Luke Pierce 1
Meghna Mankalale 1
Zhiguang Chen 1
José Abellán 1
A Goud 1
Liang Rong 1
Arthur Lorenzon 1
Victor Yashin 1
Donald Chiarulli 1
Ernesto Sánchez 1
Manoj Gaur 1
Ozan Ozbag 1
Juha Plosila 1
Hannu Tenhunen 1
Oluleye Olorode 1
Nilanjan Goswami 1
Michele Dini 1
Woomin Hwang 1
Marco Vacca 1
Jeffrey Pepper 1
Ian O'Connor 1
M Amadou 1
Philippe Matherat 1
John Jr 1
Haldun Kufluoglu 1
Xueqing Li 1
Xun Gao 1
Davide Bertozzi 1
Hoda Khouzani 1
Fabrice Bernard-Granger 1
Manan Suri 1
Abhronil Sengupta 1
Wonyong Sung 1
Ruggero Susella 1
Guido Bertoni 1
Stefano Sanfilippo 1
Yingjie Lao 1
Navid Asadizanjani 1
Kenneth Ramclam 1
Kevin Scott 1
Stefan Hillmich 1
Xiang Wei 1
Gianluca Piccinini 1
Dafine Ravelosona 1
Tayebeh Bahreini 1
Martin Barke 1
Clare Thiem 1
Lu Wang 1
Milan Patnaik 1
Q Shi 1
Swapnil Bhatia 1
Manojit Dutta 1
Wulong Liu 1
Woohyung Lee 1
Naseef Mansoor 1
James Donald 1
Guru Venkataramani 1
Teng Lu 1
Zhehui Wang 1
H Wong 1
Subhasish Mitra 1
Xiaojun Ma 1
Jeremy Tolbert 1
Tadashi Kawazoe 1
Jiale Huang 1
Mukta Farooq 1
Charles Lieber 1
Igor Markov 1
Yehia Massoud 1
Kushal Datta 1
Yu Cao 1
Adam Cabe 1
Konrad Walus 1
Ajay Bhoj 1
Jorge Kina 1
ChiOn Chui 1
Stanley Yeh 1
Paul Pop 1

Affiliation Paper Counts
Universite Pierre et Marie Curie 1
MCKV Institute of Engineering 1
University of Victoria 1
Feng Chia University 1
Southeast University China, Nanjing 1
Yangzhou University 1
University of Kansas 1
Centre Hospitalier de L'Universite de Montreal 1
The University of British Columbia 1
Samsung Group 1
State University of New York at New Paltz 1
Ohio University Athens 1
Nanzan University 1
Air Force Research Laboratory Information Directorate 1
University of Texas at Austin 1
Brno University of Technology 1
Indian Institute of Science 1
University of Waterloo 1
University of Maryland, Baltimore 1
Peking University 1
Defence Research and Development Organisation India 1
Japan Science and Technology Agency 1
Zurich University of Applied Sciences Winterthur 1
Yeditepe University 1
National University of Singapore 1
George Mason University 1
Advanced Micro Devices, Inc. 1
Harbin Institute of Technology 1
Chang Gung University 1
Hewlett-Packard Inc. 1
University of Twente 1
Sun Yat-Sen University 1
Chongqing University 1
University of North Texas 1
University of California, Berkeley 1
Valparaiso University 1
University of Oxford 1
Federal University of Piaui 1
Cadence Design Systems 1
Research Organization of Information and Systems National Institute of Informatics 1
Wuhan University 1
Chung Yuan Christian University 1
University of California, San Diego 1
Rutgers, The State University of New Jersey 1
Hiroshima University 1
University of Copenhagen 1
University of California System 1
NEC Corporation 1
Utah State University 1
University of Texas System 1
Universite Nice Sophia Antipolis 1
Texas Instruments (India) Ltd 1
National Taiwan University Hospital 1, Inc. 1
Ozyegin University 1
ORT Braude - College of Engineering 1
ARM Ltd. 1
Kalyani Government Engineering College 1
Polytechnic University - Brooklyn 1
University of Calgary 2
University of Siena 2
Harbin Engineering University 2
Google Inc. 2
University of Turku 2
University of Missouri-Kansas City 2
Commissariat a L'Energie Atomique CEA 2
Harvard University 2
Qualcomm Incorporated 2
Federal University of Uberlandia 2
University of Southern California, Information Sciences Institute 2
University of Washington, Seattle 2
Kirtland Air Force Base 2
Pontifical Catholic University of Rio Grande do Sul 2
Shahed University 2
Louis Stokes Cleveland VA Medical Center 2
University of Science and Technology of China 2
University of Bristol 2
Jadavpur University 2
Bahcesehir University 2
Johannes Kepler University Linz 2
STMicroelectronics 2
Oak Ridge National Laboratory 2
Southern Illinois University 2
University of Ferrara 2
Missouri University of Science and Technology 2
Daneshgahe Esfahan 2
Stony Brook University 2
Virginia Tech 2
University of Seoul 2
Oracle Corporation 2
University of Alberta 2
California Institute of Technology 2
Hefei National Laboratory for Physical Sciences at Microscale 2
Universite de Lyon 2
Toshiba America Research, Inc 2
European Centre for Soft Computing 2
Universite de Lorrain 2
Indian Institute of Technology 2
George Washington University 3
Indian Institute of Technology, Kharagpur 3
Delft University of Technology 3
Louisiana State University 3
Technical University of Denmark 3
National Chiao Tung University Taiwan 3
Beihang University 3
University of York 3
University of New Brunswick 3
Malaviya National Institute of Technology 3
NEC Laboratories America, Inc. 3
Air Force Research Laboratory 3
University of Tehran 3
University of Delaware 3
Indian Statistical Institute, Kolkata 3
University of Maryland, Baltimore County 3
Catholic University of Leuven, Leuven 3
Carnegie Mellon University 3
Polytechnic University of Timisoara 4
Tyndall National Institute at National University of Ireland, Cork 4
Royal Institute of Technology 4
University of Texas at Arlington 4
Universite de Bretagne-Sud 4
Nanyang Technological University 4
University of Minnesota System 4
University of Texas at Dallas 4
University of Arizona 4
INRIA Institut National de Rechereche en Informatique et en Automatique 4
Polytechnic School of Montreal 4
Technical University of Munich 4
Shanghai University 4
Portland State University 4
University of Tokyo 4
University of Rochester 4
Columbia University 4
Federal University of Pernambuco 4
Indian Institute of Technology, Delhi 4
Ghent University 4
Karlsruhe Institute of Technology 4
National Institute of Technology, Durgapur 4
Rice University 5
Federal University of Rio Grande do Sul 5
Universitat Politecnica de Catalunya 5
Seoul National University 5
University of Florida 5
University of Naples Federico II 5
National Tsing Hua University 5
Texas A and M University 5
University of Central Florida 5
Massachusetts Institute of Technology 5
Pacific Northwest National Laboratory 5
University of Minnesota Twin Cities 5
University of California, Riverside 5
Japan National Institute of Information and Communications Technology 5
Case Western Reserve University 6
University of Texas at San Antonio 6
University of California, Irvine 6
University of California, Davis 6
National Cheng Kung University 6
New York University 6
University of Virginia 6
Politecnico di Milano 6
National University of Defense Technology China 6
Universite Paris-Sud XI 6
University of Utah 6
University of Southern California 6
University of Electronic Science and Technology of China 7
Newcastle University, United Kingdom 7
Drexel University 7
Indian Institute of Technology, Madras 7
Southern Illinois University at Carbondale 7
University of Manchester 8
Arizona State University 8
Keio University 8
Korea Advanced Institute of Science & Technology 8
The Institute of Fundamental Electronics, Orsay 8
IBM Almaden Research Center 9
HP Labs 9
Brown University 9
Tsinghua University 9
Swiss Federal Institute of Technology, Zurich 9
University of California, Los Angeles 9
National Taiwan University 10
Cornell University 10
Laboratoire d'Informatique, de Robotique et de Microelectronique de Montpellier LIRMM 10
Texas Instruments 10
IBM Thomas J. Watson Research Center 10
University Michigan Ann Arbor 10
Rochester Institute of Technology 11
Bremen University 11
University of Massachusetts Amherst 11
University of Pittsburgh 11
University of Bologna 11
University of Colorado at Boulder 12
The University of North Carolina at Charlotte 12
Georgia Institute of Technology 13
Boston University 13
University of South Florida Tampa 14
Stanford University 14
Amirkabir University of Technology 15
Swiss Federal Institute of Technology, Lausanne 16
Northeastern University 16
University of California, Santa Barbara 16
Hong Kong University of Science and Technology 18
Intel Corporation 18
Pennsylvania State University 19
Washington State University 20
Polytechnic Institute of Turin 23
University of Notre Dame 23
University of Connecticut 30
Duke University 32
Purdue University 34
Princeton University 45

ACM Journal on Emerging Technologies in Computing Systems (JETC)

Volume 13 Issue 3, February 2017  Issue-in-Progress
Volume 13 Issue 2, February 2017  Issue-in-Progress

Volume 13 Issue 1, December 2016 Special Issue on Secure and Trustworthy Computing
Volume 12 Issue 4, July 2016 Regular Papers

Volume 12 Issue 3, September 2015 Special Issue on Cross-Layer System Design and Regular Papers
Volume 12 Issue 2, August 2015 Special Issue on Advances in Design of Ultra-Low Power Circuits and Systems in Emerging Technologies
Volume 12 Issue 1, July 2015
Volume 11 Issue 4, April 2015 Special Issues on Neuromorphic Computing and Emerging Many-Core Systems for Exascale Computing

Volume 11 Issue 3, December 2014 Special Issue on Computational Synthetic Biology and Regular Papers
Volume 11 Issue 2, November 2014 Special Issue on Reversible Computation and Regular Papers
Volume 11 Issue 1, September 2014
Volume 10 Issue 4, May 2014
Volume 10 Issue 3, April 2014
Volume 10 Issue 2, February 2014
Volume 10 Issue 1, January 2014 Special Issue on Reliability and Device Degradation in Emerging Technologies and Special Issue on WoSAR 2011

Volume 9 Issue 4, November 2013 Special Issue on Bioinformatics
Volume 9 Issue 3, September 2013
Volume 9 Issue 2, May 2013 Special issue on memory technologies
Volume 9 Issue 1, February 2013

Volume 8 Issue 4, October 2012
Volume 8 Issue 3, August 2012
Volume 8 Issue 2, June 2012 Special Issue on Implantable Electronics
Volume 8 Issue 1, February 2012

Volume 7 Issue 4, December 2011
Volume 7 Issue 3, August 2011
Volume 7 Issue 2, June 2011
Volume 7 Issue 1, January 2011

Volume 6 Issue 4, December 2010
Volume 6 Issue 3, August 2010
Volume 6 Issue 2, June 2010
Volume 6 Issue 1, March 2010

Volume 5 Issue 4, November 2009
Volume 5 Issue 3, August 2009
Volume 5 Issue 2, July 2009
Volume 5 Issue 1, January 2009

Volume 4 Issue 4, October 2008
Volume 4 Issue 3, August 2008
Volume 4 Issue 2, April 2008
Volume 4 Issue 1, March 2008
Volume 3 Issue 4, January 2008

Volume 3 Issue 3, November 2007
Volume 3 Issue 2, July 2007
Volume 3 Issue 1, April 2007

Volume 2 Issue 4, October 2006
Volume 2 Issue 3, July 2006
Volume 2 Issue 2, April 2006
Volume 2 Issue 1, January 2006

Volume 1 Issue 3, October 2005
Volume 1 Issue 2, July 2005
Volume 1 Issue 1, April 2005
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