5 research outputs found

    Accelerating Network Communication and I/O in Scientific High Performance Computing Environments

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    High performance computing has become one of the major drivers behind technology inventions and science discoveries. Originally driven through the increase of operating frequencies and technology scaling, a recent slowdown in this evolution has led to the development of multi-core architectures, which are supported by accelerator devices such as graphics processing units (GPUs). With the upcoming exascale era, the overall power consumption and the gap between compute capabilities and I/O bandwidth have become major challenges. Nowadays, the system performance is dominated by the time spent in communication and I/O, which highly depends on the capabilities of the network interface. In order to cope with the extreme concurrency and heterogeneity of future systems, the software ecosystem of the interconnect needs to be carefully tuned to excel in reliability, programmability, and usability. This work identifies and addresses three major gaps in today's interconnect software systems. The I/O gap describes the disparity in operating speeds between the computing capabilities and second storage tiers. The communication gap is introduced through the communication overhead needed to synchronize distributed large-scale applications and the mixed workload. The last gap is the so called concurrency gap, which is introduced through the extreme concurrency and the inflicted learning curve posed to scientific application developers to exploit the hardware capabilities. The first contribution is the introduction of the network-attached accelerator approach, which moves accelerators into a "stand-alone" cluster connected through the Extoll interconnect. The novel communication architecture enables the direct accelerators communication without any host interactions and an optimal application-to-compute-resources mapping. The effectiveness of this approach is evaluated for two classes of accelerators: Intel Xeon Phi coprocessors and NVIDIA GPUs. The next contribution comprises the design, implementation, and evaluation of the support of legacy codes and protocols over the Extoll interconnect technology. By providing TCP/IP protocol support over Extoll, it is shown that the performance benefits of the interconnect can be fully leveraged by a broader range of applications, including the seamless support of legacy codes. The third contribution is twofold. First, a comprehensive analysis of the Lustre networking protocol semantics and interfaces is presented. Afterwards, these insights are utilized to map the LNET protocol semantics onto the Extoll networking technology. The result is a fully functional Lustre network driver for Extoll. An initial performance evaluation demonstrates promising bandwidth and message rate results. The last contribution comprises the design, implementation, and evaluation of two easy-to-use load balancing frameworks, which transparently distribute the I/O workload across all available storage system components. The solutions maximize the parallelization and throughput of file I/O. The frameworks are evaluated on the Titan supercomputing systems for three I/O interfaces. For example for large-scale application runs, POSIX I/O and MPI-IO can be improved by up to 50% on a per job basis, while HDF5 shows performance improvements of up to 32%

    Reliable massively parallel symbolic computing : fault tolerance for a distributed Haskell

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    As the number of cores in manycore systems grows exponentially, the number of failures is also predicted to grow exponentially. Hence massively parallel computations must be able to tolerate faults. Moreover new approaches to language design and system architecture are needed to address the resilience of massively parallel heterogeneous architectures. Symbolic computation has underpinned key advances in Mathematics and Computer Science, for example in number theory, cryptography, and coding theory. Computer algebra software systems facilitate symbolic mathematics. Developing these at scale has its own distinctive set of challenges, as symbolic algorithms tend to employ complex irregular data and control structures. SymGridParII is a middleware for parallel symbolic computing on massively parallel High Performance Computing platforms. A key element of SymGridParII is a domain specific language (DSL) called Haskell Distributed Parallel Haskell (HdpH). It is explicitly designed for scalable distributed-memory parallelism, and employs work stealing to load balance dynamically generated irregular task sizes. To investigate providing scalable fault tolerant symbolic computation we design, implement and evaluate a reliable version of HdpH, HdpH-RS. Its reliable scheduler detects and handles faults, using task replication as a key recovery strategy. The scheduler supports load balancing with a fault tolerant work stealing protocol. The reliable scheduler is invoked with two fault tolerance primitives for implicit and explicit work placement, and 10 fault tolerant parallel skeletons that encapsulate common parallel programming patterns. The user is oblivious to many failures, they are instead handled by the scheduler. An operational semantics describes small-step reductions on states. A simple abstract machine for scheduling transitions and task evaluation is presented. It defines the semantics of supervised futures, and the transition rules for recovering tasks in the presence of failure. The transition rules are demonstrated with a fault-free execution, and three executions that recover from faults. The fault tolerant work stealing has been abstracted in to a Promela model. The SPIN model checker is used to exhaustively search the intersection of states in this automaton to validate a key resiliency property of the protocol. It asserts that an initially empty supervised future on the supervisor node will eventually be full in the presence of all possible combinations of failures. The performance of HdpH-RS is measured using five benchmarks. Supervised scheduling achieves a speedup of 757 with explicit task placement and 340 with lazy work stealing when executing Summatory Liouville up to 1400 cores of a HPC architecture. Moreover, supervision overheads are consistently low scaling up to 1400 cores. Low recovery overheads are observed in the presence of frequent failure when lazy on-demand work stealing is used. A Chaos Monkey mechanism has been developed for stress testing resiliency with random failure combinations. All unit tests pass in the presence of random failure, terminating with the expected results

    Infrastructure for Performance Monitoring and Analysis of Systems and Applications

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    The growth of High Performance Computer (HPC) systems increases the complexity with respect to understanding resource utilization, system management, and performance issues. HPC performance monitoring tools need to collect information at both the application and system levels to yield a complete performance picture. Existing approaches limit the abilities of the users to do meaningful analysis on actionable timescale. Efficient infrastructures are required to support largescale systems performance data analysis for both run-time troubleshooting and post-run processing modes. In this dissertation, we present methods to fill these gaps in the infrastructure for HPC performance monitoring and analysis. First, we enhance the architecture of a monitoring system to integrate streaming analysis capabilities at arbitrary locations within its data collection, transport, and aggregation facilities. Next, we present an approach to streaming collection of application performance data. We integrate these methods with a monitoring system used on large-scale computational platforms. Finally, we present a new approach for constructing durable transactional linked data structures that takes advantage of byte-addressable non-volatile memory technologies. Transactional data structures are building blocks of in-memory databases that are used by HPC monitoring systems to store and retrieve data efficiently. We evaluate the presented approaches on a series of case studies. The experiment results demonstrate the impact of our tools, while keeping the overhead in an acceptable margin
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