58 research outputs found

    CoRD: Converged RDMA Dataplane for High-Performance Clouds

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    High-performance networking is often characterized by kernel bypass which is considered mandatory in high-performance parallel and distributed applications. But kernel bypass comes at a price because it breaks the traditional OS architecture, requiring applications to use special APIs and limiting the OS control over existing network connections. We make the case, that kernel bypass is not mandatory. Rather, high-performance networking relies on multiple performance-improving techniques, with kernel bypass being the least effective. CoRD removes kernel bypass from RDMA networks, enabling efficient OS-level control over RDMA dataplane.Comment: 11 page

    Scalable Applications on Heterogeneous System Architectures: A Systematic Performance Analysis Framework

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    The efficient parallel execution of scientific applications is a key challenge in high-performance computing (HPC). With growing parallelism and heterogeneity of compute resources as well as increasingly complex software, performance analysis has become an indispensable tool in the development and optimization of parallel programs. This thesis presents a framework for systematic performance analysis of scalable, heterogeneous applications. Based on event traces, it automatically detects the critical path and inefficiencies that result in waiting or idle time, e.g. due to load imbalances between parallel execution streams. As a prerequisite for the analysis of heterogeneous programs, this thesis specifies inefficiency patterns for computation offloading. Furthermore, an essential contribution was made to the development of tool interfaces for OpenACC and OpenMP, which enable a portable data acquisition and a subsequent analysis for programs with offload directives. At present, these interfaces are already part of the latest OpenACC and OpenMP API specification. The aforementioned work, existing preliminary work, and established analysis methods are combined into a generic analysis process, which can be applied across programming models. Based on the detection of wait or idle states, which can propagate over several levels of parallelism, the analysis identifies wasted computing resources and their root cause as well as the critical-path share for each program region. Thus, it determines the influence of program regions on the load balancing between execution streams and the program runtime. The analysis results include a summary of the detected inefficiency patterns and a program trace, enhanced with information about wait states, their cause, and the critical path. In addition, a ranking, based on the amount of waiting time a program region caused on the critical path, highlights program regions that are relevant for program optimization. The scalability of the proposed performance analysis and its implementation is demonstrated using High-Performance Linpack (HPL), while the analysis results are validated with synthetic programs. A scientific application that uses MPI, OpenMP, and CUDA simultaneously is investigated in order to show the applicability of the analysis

    Kernel-assisted and Topology-aware MPI Collective Communication among Multicore or Many-core Clusters

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    Multicore or many-core clusters have become the most prominent form of High Performance Computing (HPC) systems. Hardware complexity and hierarchies not only exist in the inter-node layer, i.e., hierarchical networks, but also exist in internals of multicore compute nodes, e.g., Non Uniform Memory Accesses (NUMA), network-style interconnect, and memory and shared cache hierarchies. Message Passing Interface (MPI), the most widely adopted in the HPC communities, suffers from decreased performance and portability due to increased hardware complexity of multiple levels. We identified three critical issues specific to collective communication: The first problem arises from the gap between logical collective topologies and underlying hardware topologies; Second, current MPI communications lack efficient shared memory message delivering approaches; Last, on distributed memory machines, like multicore clusters, a single approach cannot encompass the extreme variations not only in the bandwidth and latency capabilities, but also in features such as the aptitude to operate multiple concurrent copies simultaneously. To bridge the gap between logical collective topologies and hardware topologies, we developed a distance-aware framework to integrate the knowledge of hardware distance into collective algorithms in order to dynamically reshape the communication patterns to suit the hardware capabilities. Based on process distance information, we used graph partitioning techniques to organize the MPI processes in a multi-level hierarchy, mapping on the hardware characteristics. Meanwhile, we took advantage of the kernel-assisted one-sided single-copy approach (KNEM) as the default shared memory delivering method. Via kernel-assisted memory copy, the collective algorithms offload copy tasks onto non-leader/not-root processes to evenly distribute copy workloads among available cores. Finally, on distributed memory machines, we developed a technique to compose multi-layered collective algorithms together to express a multi-level algorithm with tight interoperability between the levels. This tight collaboration results in more overlaps between inter- and intra-node communication. Experimental results have confirmed that, by leveraging several technologies together, such as kernel-assisted memory copy, the distance-aware framework, and collective algorithm composition, not only do MPI collectives reach the potential maximum performance on a wide variation of platforms, but they also deliver a level of performance immune to modifications of the underlying process-core binding

    HARDWARE DESIGN OF MESSAGE PASSING ARCHITECTURE ON HETEROGENEOUS SYSTEM

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    Heterogeneous multi/many-core chips are commonly used in today’s top tier supercomputers. Similar heterogeneous processing elements — or, computation ac- celerators — are commonly found in FPGA systems. Within both multi/many-core chips and FPGA systems, the on-chip network plays a critical role by connecting these processing elements together. However, The common use of the on-chip network is for point-to-point communication between on-chip components and the memory in- terface. As the system scales up with more nodes, traditional programming methods, such as MPI, cannot effectively use the on-chip network and the off-chip network, therefore could make communication the performance bottleneck. This research proposes a MPI-like Message Passing Engine (MPE) as part of the on-chip network, providing point-to-point and collective communication primitives in hardware. On one hand, the MPE improves the communication performance by offloading the communication workload from the general processing elements. On the other hand, the MPE provides direct interface to the heterogeneous processing ele- ments which can eliminate the data path going around the OS and libraries. Detailed experimental results have shown that the MPE can significantly reduce the com- munication time and improve the overall performance, especially for heterogeneous computing systems because of the tight coupling with the network. Additionally, a hybrid “MPI+X” computing system is tested and it shows MPE can effectively of- fload the communications and let the processing elements play their strengths on the computation

    RFaaS: RDMA-Enabled FaaS Platform for Serverless High-Performance Computing

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    The rigid MPI programming model and batch scheduling dominate high-performance computing. While clouds brought new levels of elasticity into the world of computing, supercomputers still suffer from low resource utilization rates. To enhance supercomputing clusters with the benefits of serverless computing, a modern cloud programming paradigm for pay-as-you-go execution of stateless functions, we present rFaaS, the first RDMA-aware Function-as-a-Service (FaaS) platform. With hot invocations and decentralized function placement, we overcome the major performance limitations of FaaS systems and provide low-latency remote invocations in multi-tenant environments. We evaluate the new serverless system through a series of microbenchmarks and show that remote functions execute with negligible performance overheads. We demonstrate how serverless computing can bring elastic resource management into MPI-based high-performance applications. Overall, our results show that MPI applications can benefit from modern cloud programming paradigms to guarantee high performance at lower resource costs

    EbbRT: Elastic Building Block Runtime - overview

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    EbbRT provides a lightweight runtime that enables the construction of reusable, low-level system software which can integrate with existing, general purpose systems. It achieves this by providing a library that can be linked into a process on an existing OS, and as a small library OS that can be booted directly on an IaaS node

    Communication Architectures for Scalable GPU-centric Computing Systems

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    In recent years, power consumption has become the main concern in High Performance Computing (HPC). This has lead to heterogeneous computing systems in which Central Processing Units (CPUs) are supported by accelerators, such as Graphics Processing Units (GPUs). While GPUs used to be seen as slave devices to which the main processor offloads computation, today’s systems tend to deploy more GPUs than CPUs. Eventually, the GPU will become a first-class processor, bearing increasing responsibilities. Promoting the GPU to a first-class processor comes with many challenges, such as progress guarantees, dynamic memory management, and scheduling. However, one of the main challenges is the GPU’s inability to orchestrate communication, which is currently entirely handled by the CPU. This work addresses that issue and presents solutions to allow GPUs to source and sink network traffic independently. Many important aspects are addressed, ranging from the application level to how networking hardware is accessed. First, important and large scale exascale applications are studied to further understand their communication behavior and applications’ requirements. Several metrics are presented, including time spent for communication, message sizes, and the length of queues that are required to match messages with receive requests. One aspect the analysis revealed is that messages are becoming smaller at scale, which renders the matching of messages and receive requests an important problem to address. The next part analyzes how the GPU can directly access the network with various communication models being presented and benchmarked. It is shown that a flat address space of distributed GPU memories shows superior bandwidth than put/get communication or CPU-controlled message passing, but less communication can be overlapped with computation. Overall, GPU-controlled communication is always superior, both in terms of time-to-solution and energy spending. The final part addresses communication management on GPUs, which is required to provide high-level communication abstractions. Besides other fundamental building blocks, an algorithm for the message matching is presented that yields similar performance as CPUs. However, it is also shown that the messaging protocol can be relaxed to improve performance significantly, leveraging the massive amount of parallelism provided by the GPU’s architecture
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