2,656 research outputs found

    Formal Verification of Probabilistic SystemC Models with Statistical Model Checking

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    Transaction-level modeling with SystemC has been very successful in describing the behavior of embedded systems by providing high-level executable models, in which many of them have inherent probabilistic behaviors, e.g., random data and unreliable components. It thus is crucial to have both quantitative and qualitative analysis of the probabilities of system properties. Such analysis can be conducted by constructing a formal model of the system under verification and using Probabilistic Model Checking (PMC). However, this method is infeasible for large systems, due to the state space explosion. In this article, we demonstrate the successful use of Statistical Model Checking (SMC) to carry out such analysis directly from large SystemC models and allow designers to express a wide range of useful properties. The first contribution of this work is a framework to verify properties expressed in Bounded Linear Temporal Logic (BLTL) for SystemC models with both timed and probabilistic characteristics. Second, the framework allows users to expose a rich set of user-code primitives as atomic propositions in BLTL. Moreover, users can define their own fine-grained time resolution rather than the boundary of clock cycles in the SystemC simulation. The third contribution is an implementation of a statistical model checker. It contains an automatic monitor generation for producing execution traces of the model-under-verification (MUV), the mechanism for automatically instrumenting the MUV, and the interaction with statistical model checking algorithms.Comment: Journal of Software: Evolution and Process. Wiley, 2017. arXiv admin note: substantial text overlap with arXiv:1507.0818

    The "MIND" Scalable PIM Architecture

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    MIND (Memory, Intelligence, and Network Device) is an advanced parallel computer architecture for high performance computing and scalable embedded processing. It is a Processor-in-Memory (PIM) architecture integrating both DRAM bit cells and CMOS logic devices on the same silicon die. MIND is multicore with multiple memory/processor nodes on each chip and supports global shared memory across systems of MIND components. MIND is distinguished from other PIM architectures in that it incorporates mechanisms for efficient support of a global parallel execution model based on the semantics of message-driven multithreaded split-transaction processing. MIND is designed to operate either in conjunction with other conventional microprocessors or in standalone arrays of like devices. It also incorporates mechanisms for fault tolerance, real time execution, and active power management. This paper describes the major elements and operational methods of the MIND architecture

    Macroservers: An Execution Model for DRAM Processor-In-Memory Arrays

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    The emergence of semiconductor fabrication technology allowing a tight coupling between high-density DRAM and CMOS logic on the same chip has led to the important new class of Processor-In-Memory (PIM) architectures. Newer developments provide powerful parallel processing capabilities on the chip, exploiting the facility to load wide words in single memory accesses and supporting complex address manipulations in the memory. Furthermore, large arrays of PIMs can be arranged into a massively parallel architecture. In this report, we describe an object-based programming model based on the notion of a macroserver. Macroservers encapsulate a set of variables and methods; threads, spawned by the activation of methods, operate asynchronously on the variables' state space. Data distributions provide a mechanism for mapping large data structures across the memory region of a macroserver, while work distributions allow explicit control of bindings between threads and data. Both data and work distributuions are first-class objects of the model, supporting the dynamic management of data and threads in memory. This offers the flexibility required for fully exploiting the processing power and memory bandwidth of a PIM array, in particular for irregular and adaptive applications. Thread synchronization is based on atomic methods, condition variables, and futures. A special type of lightweight macroserver allows the formulation of flexible scheduling strategies for the access to resources, using a monitor-like mechanism

    Interconnection Networks for Scalable Quantum Computers

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    We show that the problem of communication in a quantum computer reduces to constructing reliable quantum channels by distributing high-fidelity EPR pairs. We develop analytical models of the latency, bandwidth, error rate and resource utilization of such channels, and show that 100s of qubits must be distributed to accommodate a single data communication. Next, we show that a grid of teleportation nodes forms a good substrate on which to distribute EPR pairs. We also explore the control requirements for such a network. Finally, we propose a specific routing architecture and simulate the communication patterns of the Quantum Fourier Transform to demonstrate the impact of resource contention.Comment: To appear in International Symposium on Computer Architecture 2006 (ISCA 2006

    A Survey of Techniques for Improving Security of GPUs

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    Graphics processing unit (GPU), although a powerful performance-booster, also has many security vulnerabilities. Due to these, the GPU can act as a safe-haven for stealthy malware and the weakest `link' in the security `chain'. In this paper, we present a survey of techniques for analyzing and improving GPU security. We classify the works on key attributes to highlight their similarities and differences. More than informing users and researchers about GPU security techniques, this survey aims to increase their awareness about GPU security vulnerabilities and potential countermeasures

    Ada (trademark) projects at NASA. Runtime environment issues and recommendations

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    Ada practitioners should use this document to discuss and establish common short term requirements for Ada runtime environments. The major current Ada runtime environment issues are identified through the analysis of some of the Ada efforts at NASA and other research centers. The runtime environment characteristics of major compilers are compared while alternate runtime implementations are reviewed. Modifications and extensions to the Ada Language Reference Manual to address some of these runtime issues are proposed. Three classes of projects focusing on the most critical runtime features of Ada are recommended, including a range of immediately feasible full scale Ada development projects. Also, a list of runtime features and procurement issues is proposed for consideration by the vendors, contractors and the government

    Ethernet - a survey on its fields of application

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    During the last decades, Ethernet progressively became the most widely used local area networking (LAN) technology. Apart from LAN installations, Ethernet became also attractive for many other fields of application, ranging from industry to avionics, telecommunication, and multimedia. The expanded application of this technology is mainly due to its significant assets like reduced cost, backward-compatibility, flexibility, and expandability. However, this new trend raises some problems concerning the services of the protocol and the requirements for each application. Therefore, specific adaptations prove essential to integrate this communication technology in each field of application. Our primary objective is to show how Ethernet has been enhanced to comply with the specific requirements of several application fields, particularly in transport, embedded and multimedia contexts. The paper first describes the common Ethernet LAN technology and highlights its main features. It reviews the most important specific Ethernet versions with respect to each application field’s requirements. Finally, we compare these different fields of application and we particularly focus on the fundamental concepts and the quality of service capabilities of each proposal

    Data Resource Management in Throughput Processors

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    Graphics Processing Units (GPUs) are becoming common in data centers for tasks like neural network training and image processing due to their high performance and efficiency. GPUs maintain high throughput by running thousands of threads simultaneously, issuing instructions from ready threads to hide latency in others that are stalled. While this is effective for keeping the arithmetic units busy, the challenge in GPU design is moving the data for computation at the same high rate. Any inefficiency in data movement and storage will compromise the throughput and energy efficiency of the system. Since energy consumption and cooling make up a large part of the cost of provisioning and running and a data center, making GPUs more suitable for this environment requires removing the bottlenecks and overheads that limit their efficiency. The performance of GPU workloads is often limited by the throughput of the memory resources inside each GPU core, and though many of the power-hungry structures in CPUs are not found in GPU designs, there is overhead for storing each thread's state. When sharing a GPU between workloads, contention for resources also causes interference and slowdown. This thesis develops techniques to manage and streamline the data movement and storage resources in GPUs in each of these places. The first part of this thesis resolves data movement restrictions inside each GPU core. The GPU memory system is optimized for sequential accesses, but many workloads load data in irregular or transposed patterns that cause a throughput bottleneck even when all loads are cache hits. This work identifies and leverages opportunities to merge requests across threads before sending them to the cache. While requests are waiting for merges, they can be reordered to achieve a higher cache hit rate. These methods yielded a 38% speedup for memory throughput limited workloads. Another opportunity for optimization is found in the register file. Since it must store the registers for thousands of active threads, it is the largest on-chip data storage structure on a GPU. The second work in this thesis replaces the register file with a smaller, more energy-efficient register buffer. Compiler directives allow the GPU to know ahead of time which registers will be accessed, allowing the hardware to store only the registers that will be imminently accessed in the buffer, with the rest moved to main memory. This technique reduced total GPU energy by 11%. Finally, in a data center, many different applications will be launching GPU jobs, and just as multiple processes can share the same CPU to increase its utilization, running multiple workloads on the same GPU can increase its overall throughput. However, co-runners interfere with each other in unpredictable ways, especially when sharing memory resources. The final part of this thesis controls this interference, allowing a GPU to be shared between two tiers of workloads: one tier with a high performance target and another suitable for batch jobs without deadlines. At a 90% performance target, this technique increased GPU throughput by 9.3%. GPUs' high efficiency and performance makes them a valuable accelerator in the data center. The contributions in this thesis further increase their efficiency by removing data movement and storage overheads and unlock additional performance by enabling resources to be shared between workloads while controlling interference.PHDComputer Science & EngineeringUniversity of Michigan, Horace H. Rackham School of Graduate Studieshttps://deepblue.lib.umich.edu/bitstream/2027.42/146122/1/jklooste_1.pd
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