74 research outputs found
Market-Based Resourse Management for Many-Core Systems
101 σ.Αντικείμενο της διπλωματικής αποτελεί η μελέτη και η ανάπτυξη μιας κλιμακώσιμης και κατανεμημένης πλατφόρμας (framework) διαχείρισης πόρων σε χρόνο εκτέλεσης για συστήματα πολλαπλών πυρήνων. Σε αυτήν την πλατφόρμα η διαχείριση πόρων είναι βασισμένη σε μοντέλα, τα οποία είναι εμπνευσμένα από την οικονομία. Παρουσιάζεται ένας διαχειριστής πόρων, ο οποίος προσφέρει ένα περιβάλλον διαχείρισης πόρων και εφαρμογών καθ ́ όλη τη διάρκεια ζωής τους, στο οποίο η κατανομή και δρομολόγηση των εφαρμογών στους πόρους πραγματοποιείται με αλγόριθμους βασισμένους σε κανόνες αγοράς. Η αποδοτικότητα κάθε μοντέλου αξιολογείται βάσει της πτώσης της αξιοπιστίας των πόρων (μετρική MTTF-Mean Time To Failure).The purpose of this diploma thesis is the design and development of a scalable and distributed run-time resource management framework for Many-core systems. In this framework, resource management is based on economy-inspired models. The presented
resource management framework offers an environment that manages both application tasks and resources at run-time, matches and distributes application tasks across resources with algorithms which are based on market principles. The efficiency of each model is
evaluated with respect to resource reliability degradation (metric MTTF-Mean Time to Failure).Θεμιστοκλής Γ. Μελισσάρη
Remote rendering for virtual reality on mobile devices
Nowadays it is possible to launch complicated VR applications on mobile devices, using simple VR goggles, e.g. Google Cardboard. Nevertheless, this opportunity has not been introduced to the wide use yet. One of the reasons is the low processing power even of the hi-end devices. This is a massive obstacle for mobile VR technologies. One of the solutions is to render the high-quality 3D world on a remote server, streaming the video to the mobile device
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Optimizing Constrainted Concurrent Applications at Run-time
Computer systems are resource constrained. Application adaptation is a useful way to optimize system resource usage while satisfying an application’s performance requirements. Current multicore computer systems supporting these applications, however, are not designed to reliably meet these requirements. Meanwhile, these computer systems are resource-limited, e.g., have power-induced energy and thermal constraints. Compounding the application’s performance requirements are increasingly-stringent microprocessor thermal constraints. Previous application adaptation efforts, however, were ad-hoc, time-consuming, and highly application-specific, with limited portability between computer systems.
This thesis presents OCCAM, a software platform for developing multicore adaptable applications. OCCAM’s design-time platform consists of design patterns, APIs, and data structures that allow application developers to specify the performance constraints and application-specific optimization techniques. OCCAM generates a run-time controller offline, using profiling data. It then uses this profiling data to generate an internal model that it subsequently employs to generate a robust Markov Decision Process-based Model Predictive Controller. Using a set of Recognition, Mining, and Synthesis benchmarks, the experimental study demonstrates that OCCAM can successfully optimize the system while meeting the systems performance requirements across a wide range of computer platforms, ranging from an energy-constrained single-core system to a high-performance 16-core system. Finally, OCCAM presents a simulation-based, stochastic model checking-based framework for quantifying the robustness of the controller
Edge Computing for Internet of Things
The Internet-of-Things is becoming an established technology, with devices being deployed in homes, workplaces, and public areas at an increasingly rapid rate. IoT devices are the core technology of smart-homes, smart-cities, intelligent transport systems, and promise to optimise travel, reduce energy usage and improve quality of life. With the IoT prevalence, the problem of how to manage the vast volumes of data, wide variety and type of data generated, and erratic generation patterns is becoming increasingly clear and challenging. This Special Issue focuses on solving this problem through the use of edge computing. Edge computing offers a solution to managing IoT data through the processing of IoT data close to the location where the data is being generated. Edge computing allows computation to be performed locally, thus reducing the volume of data that needs to be transmitted to remote data centres and Cloud storage. It also allows decisions to be made locally without having to wait for Cloud servers to respond
Novel DVFS Methodologies For Power-Efficient Mobile MPSoC
Low power mobile computing systems such as smartphones and wearables have become an integral part of our daily lives and are used in various ways to enhance our daily lives. Majority of modern mobile computing systems are powered by multi-processor System-on-a-Chip (MPSoC), where multiple processing elements are utilized on a single chip. Given the fact that these devices are battery operated most of the times, thus, have limited power supply and the key challenges include catering for performance while reducing the power consumption. Moreover, the reliability in terms of lifespan of these devices are also affected by the peak thermal behaviour on the device, which retrospectively also make such devices vulnerable to temperature side-channel attack. This thesis is concerned with performing Dynamic Voltage and Frequency Scaling (DVFS) on different processing elements such as CPU & GPU, and memory unit such as RAM to address the aforementioned challenges. Firstly, we design a Computer Vision based machine learning technique to classify applications automatically into different categories of workload such that DVFS could be performed on the CPU to reduce the power consumption of the device while executing the application. Secondly, we develop a reinforcement learning based agent to perform DVFS on CPU and GPU while considering the user's interaction with such devices to optimize power consumption and thermal behaviour. Next, we develop a heuristic based automated agent to perform DVFS on CPU, GPU and RAM to optimize the same while executing an application. Finally, we explored the affect of DVFS on CPUs leading to vulnerabilities against temperature side-channel attack and hence, we also designed a methodology to secure against such attack while improving the reliability in terms of lifespan of such devices
Fundamentals
Volume 1 establishes the foundations of this new field. It goes through all the steps from data collection, their summary and clustering, to different aspects of resource-aware learning, i.e., hardware, memory, energy, and communication awareness. Machine learning methods are inspected with respect to resource requirements and how to enhance scalability on diverse computing architectures ranging from embedded systems to large computing clusters
Fundamentals
Volume 1 establishes the foundations of this new field. It goes through all the steps from data collection, their summary and clustering, to different aspects of resource-aware learning, i.e., hardware, memory, energy, and communication awareness. Machine learning methods are inspected with respect to resource requirements and how to enhance scalability on diverse computing architectures ranging from embedded systems to large computing clusters
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