289 research outputs found

    Task Oriented Programming for the RC64 Manycore DSP

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    RC64 is a rad-hard manycore DSP combining 64 VLIW/SIMD DSP cores, lock-free shared memory, a hardware scheduler and a task-based programming model. The hardware scheduler enables fast scheduling and allocation of fine grain tasks to all cores. Parallel programming is based on Tasks

    Efficient Implementation of Stochastic Inference on Heterogeneous Clusters and Spiking Neural Networks

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    Neuromorphic computing refers to brain inspired algorithms and architectures. This paradigm of computing can solve complex problems which were not possible with traditional computing methods. This is because such implementations learn to identify the required features and classify them based on its training, akin to how brains function. This task involves performing computation on large quantities of data. With this inspiration, a comprehensive multi-pronged approach is employed to study and efficiently implement neuromorphic inference model using heterogeneous clusters to address the problem using traditional Von Neumann architectures and by developing spiking neural networks (SNN) for native and ultra-low power implementation. In this regard, an extendable high-performance computing (HPC) framework and optimizations are proposed for heterogeneous clusters to modularize complex neuromorphic applications in a distributed manner. To achieve best possible throughput and load balancing for such modularized architectures a set of algorithms are proposed to suggest the optimal mapping of different modules as an asynchronous pipeline to the available cluster resources while considering the complex data dependencies between stages. On the other hand, SNNs are more biologically plausible and can achieve ultra-low power implementation due to its sparse spike based communication, which is possible with emerging non-Von Neumann computing platforms. As a significant progress in this direction, spiking neuron models capable of distributed online learning are proposed. A high performance SNN simulator (SpNSim) is developed for simulation of large scale mixed neuron model networks. An accompanying digital hardware neuron RTL is also proposed for efficient real time implementation of SNNs capable of online learning. Finally, a methodology for mapping probabilistic graphical model to off-the-shelf neurosynaptic processor (IBM TrueNorth) as a stochastic SNN is presented with ultra-low power consumption

    Enhancing Productivity and Performance Portability of General-Purpose Parallel Programming

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    This work focuses on compiler and run-time techniques for improving the productivity and the performance portability of general-purpose parallel programming. More specifically, we focus on shared-memory task-parallel languages, where the programmer explicitly exposes parallelism in the form of short tasks that may outnumber the cores by orders of magnitude. The compiler, the run-time, and the platform (henceforth the system) are responsible for harnessing this unpredictable amount of parallelism, which can vary from none to excessive, towards efficient execution. The challenge arises from the aspiration to support fine-grained irregular computations and nested parallelism. This work is even more ambitious by also aspiring to lay the foundations to efficiently support declarative code, where the programmer exposes all available parallelism, using high-level language constructs such as parallel loops, reducers or futures. The appeal of declarative code is twofold for general-purpose programming: it is often easier for the programmer who does not have to worry about the granularity of the exposed parallelism, and it achieves better performance portability by avoiding overfitting to a small range of platforms and inputs for which the programmer is coarsening. Furthermore, PRAM algorithms, an important class of parallel algorithms, naturally lend themselves to declarative programming, so supporting it is a necessary condition for capitalizing on the wealth of the PRAM theory. Unfortunately, declarative codes often expose such an overwhelming number of fine-grained tasks that existing systems fail to deliver performance. Our contributions can be partitioned into three components. First, we tackle the issue of coarsening, which declarative code leaves to the system. We identify two goals of coarsening and advocate tackling them separately, using static compiler transformations for one and dynamic run-time approaches for the other. Additionally, we present evidence that the current practice of burdening the programmer with coarsening either leads to codes with poor performance-portability, or to a significantly increased programming effort. This is a ``show-stopper'' for general-purpose programming. To compare the performance portability among approaches, we define an experimental framework and two metrics, and we demonstrate that our approaches are preferable. We close the chapter on coarsening by presenting compiler transformations that automatically coarsen some types of very fine-grained codes. Second, we propose Lazy Scheduling, an innovative run-time scheduling technique that infers the platform load at run-time, using information already maintained. Based on the inferred load, Lazy Scheduling adapts the amount of available parallelism it exposes for parallel execution and, thus, saves parallelism overheads that existing approaches pay. We implement Lazy Scheduling and present experimental results on four different platforms. The results show that Lazy Scheduling is vastly superior for declarative codes and competitive, if not better, for coarsened codes. Moreover, Lazy Scheduling is also superior in terms of performance-portability, supporting our thesis that it is possible to achieve reasonable efficiency and performance portability with declarative codes. Finally, we also implement Lazy Scheduling on XMT, an experimental manycore platform developed at the University of Maryland, which was designed to support codes derived from PRAM algorithms. On XMT, we manage to harness the existing hardware support for scheduling flat parallelism to compose it with Lazy Scheduling, which supports nested parallelism. In the resulting hybrid scheduler, the hardware and software work in synergy to overcome each other's weaknesses. We show the performance composability of the hardware and software schedulers, both in an abstract cost model and experimentally, as the hybrid always performs better than the software scheduler alone. Furthermore, the cost model is validated by using it to predict if it is preferable to execute a code sequentially, with outer parallelism, or with nested parallelism, depending on the input, the available hardware parallelism and the calling context of the parallel code

    Towards Efficient Resource Allocation for Embedded Systems

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    Das Hauptthema ist die dynamische Ressourcenverwaltung in eingebetteten Systemen, insbesondere die Verwaltung von Rechenzeit und Netzwerkverkehr auf einem MPSoC. Die Idee besteht darin, eine Pipeline für die Verarbeitung von Mobiler Kommunikation auf dem Chip dynamisch zu schedulen, um die Effizienz der Hardwareressourcen zu verbessern, ohne den Ressourcenverbrauch des dynamischen Schedulings dramatisch zu erhöhen. Sowohl Software- als auch Hardwaremodule werden auf Hotspots im Ressourcenverbrauch untersucht und optimiert, um diese zu entfernen. Da Applikationen im Bereich der Signalverarbeitung normalerweise mit Hilfe von SDF-Diagrammen beschrieben werden können, wird deren dynamisches Scheduling optimiert, um den Ressourcenverbrauch gegenüber dem üblicherweise verwendeten statischen Scheduling zu verbessern. Es wird ein hybrider dynamischer Scheduler vorgestellt, der die Vorteile von Processing-Networks und der Planung von Task-Graphen kombiniert. Es ermöglicht dem Scheduler, ein Gleichgewicht zwischen der Parallelisierung der Berechnung und der Zunahme des dynamischen Scheduling-Aufands optimal abzuwägen. Der resultierende dynamisch erstellte Schedule reduziert den Ressourcenverbrauch um etwa 50%, wobei die Laufzeit im Vergleich zu einem statischen Schedule nur um 20% erhöht wird. Zusätzlich wird ein verteilter dynamischer SDF-Scheduler vorgeschlagen, der das Scheduling in verschiedene Teile zerlegt, die dann zu einer Pipeline verbunden werden, um mehrere parallele Prozessoren einzubeziehen. Jeder Scheduling-Teil wird zu einem Cluster mit Load-Balancing erweitert, um die Anzahl der parallel laufenden Scheduling-Jobs weiter zu erhöhen. Auf diese Weise wird dem vorhandene Engpass bei dem dynamischen Scheduling eines zentralisierten Schedulers entgegengewirkt, sodass 7x mehr Prozessoren mit dem Pipelined-Clustered-Dynamic-Scheduler für eine typische Signalverarbeitungsanwendung verwendet werden können. Das neue dynamische Scheduling-System setzt das Vorhandensein von drei verschiedenen Kommunikationsmodi zwischen den Verarbeitungskernen voraus. Bei der Emulation auf Basis des häufig verwendeten RDMA-Protokolls treten Leistungsprobleme auf. Sehr gut kann RDMA für einmalige Punkt-zu-Punkt-Datenübertragungen verwendet werden, wie sie bei der Ausführung von Task-Graphen verwendet werden. Process-Networks verwenden normalerweise Datenströme mit hohem Volumen und hoher Bandbreite. Es wird eine FIFO-basierte Kommunikationslösung vorgestellt, die einen zyklischen Puffer sowohl im Sender als auch im Empfänger implementiert, um diesen Bedarf zu decken. Die Pufferbehandlung und die Datenübertragung zwischen ihnen erfolgen ausschließlich in Hardware, um den Software-Overhead aus der Anwendung zu entfernen. Die Implementierung verbessert die Zugriffsverwaltung mehrerer Nutzer auf flächen-effiziente Single-Port Speichermodule. Es werden 0,8 der theoretisch möglichen Bandbreite, die normalerweise nur mit flächenmäßig teureren Dual-Port-Speichern erreicht wird. Der dritte Kommunikationsmodus definiert eine einfache Message-Passing-Implementierung, die ohne einen Verbindungszustand auskommt. Dieser Modus wird für eine effiziente prozessübergreifende Kommunikation des verteilten Scheduling-Systems und der engen Ansteuerung der restlichen Prozessoren benötigt. Eine Flusskontrolle in Hardware stellt sicher, dass eine große Anzahl von Sendern Nachrichten an denselben Empfänger senden kann. Dabei wird garantiert, dass alle Nachrichten korrekt empfangen werden, ohne dass eine Verbindung hergestellt werden muss und die Nachrichtenlaufzeit gering bleibt. Die Arbeit konzentriert sich auf die Optimierung des Codesigns von Hardware und Software, um die kompromisslose Ressourceneffizienz der dynamischen SDF-Graphen-Planung zu erhöhen. Besonderes Augenmerk wird auf die Abhängigkeiten zwischen den Ebenen eines verteilten Scheduling-Systems gelegt, das auf der Verfügbarkeit spezifischer hardwarebeschleunigter Kommunikationsmethoden beruht.:1 Introduction 1.1 Motivation 1.2 The Multiprocessor System on Chip Architecture 1.3 Concrete MPSoC Architecture 1.4 Representing LTE/5G baseband processing as Static Data Flow 1.5 Compuation Stack 1.6 Performance Hotspots Addressed 1.7 State of the Art 1.8 Overview of the Work 2 Hybrid SDF Execution 2.1 Addressed Performance Hotspot 2.2 State of the Art 2.3 Static Data Flow Graphs 2.4 Runtime Environment 2.5 Overhead of Deloying Tasks to a MPSoC 2.6 Interpretation of SDF Graphs as Task Graphs 2.7 Interpreting SDF Graphs as Process Networks 2.8 Hybrid Interpretation 2.9 Graph Topology Considerations 2.10 Theoretic Impact of Hybrid Interpretation 2.11 Simulating Hybrid Execution 2.12 Pipeline SDF Graph Example 2.13 Random SDF Graphs 2.14 LTE-like SDF Graph 2.15 Key Lernings 3 Distribution of Management 3.1 Addressed Performance Hotspot 3.2 State of the Art 3.3 Revising Deployment Overhead 3.4 Distribution of Overhead 3.5 Impact of Management Distribution to Resource Utilization 3.6 Reconfigurability 3.7 Key Lernings 4 Sliced FIFO Hardware 4.1 Addressed Performance Hotspot 4.2 State of the Art 4.3 System Environment 4.4 Sliced Windowed FIFO buffer 4.5 Single FIFO Evaluation 4.6 Multiple FIFO Evalutaion 4.7 Hardware Implementation 4.8 Key Lernings 5 Message Passing Hardware 5.1 Addressed Performance Hotspot 5.2 State of the Art 5.3 Message Passing Regarded as Queueing 5.4 A Remote Direct Memory Access Based Implementation 5.5 Hardware Implementation Concept 5.6 Evalutation of Performance 5.7 Key Lernings 6 SummaryThe main topic is the dynamic resource allocation in embedded systems, especially the allocation of computing time and network traffic on an multi processor system on chip (MPSoC). The idea is to dynamically schedule a mobile communication signal processing pipeline on the chip to improve hardware resource efficiency while not dramatically improve resource consumption because of dynamic scheduling overhead. Both software and hardware modules are examined for resource consumption hotspots and optimized to remove them. Since signal processing can usually be described with the help of static data flow (SDF) graphs, the dynamic handling of those is optimized to improve resource consumption over the commonly used static scheduling approach. A hybrid dynamic scheduler is presented that combines benefits from both processing networks and task graph scheduling. It allows the scheduler to optimally balance parallelization of computation and addition of dynamic scheduling overhead. The resulting dynamically created schedule reduces resource consumption by about 50%, with a runtime increase of only 20% compared to a static schedule. Additionally, a distributed dynamic SDF scheduler is proposed that splits the scheduling into different parts, which are then connected to a scheduling pipeli ne to incorporate multiple parallel working processors. Each scheduling stage is reworked into a load-balanced cluster to increase the number of parallel scheduling jobs further. This way, the still existing dynamic scheduling bottleneck of a centralized scheduler is widened, allowing handling 7x more processors with the pipelined, clustered dynamic scheduler for a typical signal processing application. The presented dynamic scheduling system assumes the presence of three different communication modes between the processing cores. When emulated on top of the commonly used remote direct memory access (RDMA) protocol, performance issues are encountered. Firstly, RDMA can neatly be used for single-shot point-to-point data transfers, like used in task graph scheduling. Process networks usually make use of high-volume and high-bandwidth data streams. A first in first out (FIFO) communication solution is presented that implements a cyclic buffer on both sender and receiver to serve this need. The buffer handling and data transfer between them are done purely in hardware to remove software overhead from the application. The implementation improves the multi-user access to area-efficient single port on-chip memory modules. It achieves 0.8 of the theoretically possible bandwidth, usually only achieved with area expensive dual-port memories. The third communication mode defines a lightweight message passing (MP) implementation that is truly connectionless. It is needed for efficient inter-process communication of the distributed and clustered scheduling system and the worker processing units’ tight coupling. A hardware flow control assures that an arbitrary number of senders can spontaneously start sending messages to the same receiver. Yet, all messages are guaranteed to be correctly received while eliminating the need for connection establishment and keeping a low message delay. The work focuses on the hardware-software codesign optimization to increase the uncompromised resource efficiency of dynamic SDF graph scheduling. Special attention is paid to the inter-level dependencies in developing a distributed scheduling system, which relies on the availability of specific hardwareaccelerated communication methods.:1 Introduction 1.1 Motivation 1.2 The Multiprocessor System on Chip Architecture 1.3 Concrete MPSoC Architecture 1.4 Representing LTE/5G baseband processing as Static Data Flow 1.5 Compuation Stack 1.6 Performance Hotspots Addressed 1.7 State of the Art 1.8 Overview of the Work 2 Hybrid SDF Execution 2.1 Addressed Performance Hotspot 2.2 State of the Art 2.3 Static Data Flow Graphs 2.4 Runtime Environment 2.5 Overhead of Deloying Tasks to a MPSoC 2.6 Interpretation of SDF Graphs as Task Graphs 2.7 Interpreting SDF Graphs as Process Networks 2.8 Hybrid Interpretation 2.9 Graph Topology Considerations 2.10 Theoretic Impact of Hybrid Interpretation 2.11 Simulating Hybrid Execution 2.12 Pipeline SDF Graph Example 2.13 Random SDF Graphs 2.14 LTE-like SDF Graph 2.15 Key Lernings 3 Distribution of Management 3.1 Addressed Performance Hotspot 3.2 State of the Art 3.3 Revising Deployment Overhead 3.4 Distribution of Overhead 3.5 Impact of Management Distribution to Resource Utilization 3.6 Reconfigurability 3.7 Key Lernings 4 Sliced FIFO Hardware 4.1 Addressed Performance Hotspot 4.2 State of the Art 4.3 System Environment 4.4 Sliced Windowed FIFO buffer 4.5 Single FIFO Evaluation 4.6 Multiple FIFO Evalutaion 4.7 Hardware Implementation 4.8 Key Lernings 5 Message Passing Hardware 5.1 Addressed Performance Hotspot 5.2 State of the Art 5.3 Message Passing Regarded as Queueing 5.4 A Remote Direct Memory Access Based Implementation 5.5 Hardware Implementation Concept 5.6 Evalutation of Performance 5.7 Key Lernings 6 Summar
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