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Renato Miceli

Independent HPC and Big Data Business Consultant

Salvador, Brazil
github.com/renatomiceli
Last seen on Stack Overflow over 30 days ago

Technologies

Preferred technologies
Non-preferred technologies

Experience

Independent HPC and Big Data Business Consultant

Jan 2016 → Current (3 years)

Head of the Supercomputing Center for Industrial Innovation

SENAI CIMATEC

Dec 2014 → Dec 2015 (1 year, 1 month)

Technical Lead at the Supercomputing Center for Industry Innovation

SENAI CIMATEC

Oct 2014 → Dec 2014 (3 months)

Computational Scientist

Irish Centre for High-End Computing (ICHEC)

Dec 2010 → Aug 2014 (3 years, 9 months)

Education

PhD Computer Science

Université de Rennes 1

2012 → 2016

B.S. Computer Science

Universidade Federal de Campina Grande, Brazil

2006 → 2010
  • One of 10 best grades in POSCOMP 2009:

    POSCOMP is the Brazilian exam for admission to graduate programmes in Computer Science and is applied by the Brazilian Computer Society (SBC) in all regions of Brazil, as well as in Colombia and Peru. Scored 56 out of 70 points total, where the general mean in 2009 was 28.67 points (standard deviation of 9.17 points).

  • "Professor Átila Augusto Freitas de Almeida" Award:

    Awarded due to the best academic performance among all Computer Science graduates and second best performance among graduates of all Exact Science courses on semester 2010.2 at Universidade Federal de Campina Grande.

Certifications

Certified Tester, Foundation Level (CTFL)

2009 → Current (10 years)

PRINCE2 Registered Practitioner

2011 → 2016 (6 years)

Open Source (10)

JFlex

JFlex is a flex-like lexer generator for Java with emphasis on speed and full Unicode support. It has some not so usual features like negation in regexps and nested input streams. Also reads JLex specifications unchanged.

StoKontrol

StoKontrol is an application for easily controlling the stock of your corporation. It tracks your items through barcode, allowing simple registration and ckeck out of items, besides generating reports over your properties.

Skejula

Skejula is intended to be your very scheduler. It helps you take care of your commitments, tasks, activities, todos and annotations.

packagep1

Refactoring package p1 to Java 6.0 features

wbis

WBIS: Controle de Patrimônio

simple2

Ferrramenta Computacional para o Processamento Digital de Imagens no Domínio da Freqüência

routing-simulator

Simulating nodes running the Distributed Bellman-Ford algorithm to route packages through UDP sockets

View more open source

Apps & Software

Open Performance-portablE SeismiC Imaging

Open Performance portablE SeismiC Imaging (OPESCI) is a framework for subsurface imaging. Its development focus on exploiting modern trends in computer science and numerical analysis to achieve performance portability across modern many-core computer architectures while maintaining a high level abstraction that allows rapid research, development and deployment.

Brazilian Principle Investigator

Stack Exchange

Community Name
Reputation

Public Artifacts (11)

Business-Driven Management of Hybrid IT Infrastructures

With the emergence of the cloud computing paradigm and the continuous search to reduce the cost of running Information Technology (IT) infrastructures, we are currently experiencing an important change in the way these infrastructures are assembled, configured and managed. In this research we consider the problem of managing a hybrid high-performance computing infrastructure whose processing elements are comprised of in-house dedicated machines, virtual machines acquired from cloud computing providers, and remote virtual machines made available by a best-effort peer-to-peer (P2P) grid. Each of these resources has a different cost basis. The applications that run in this hybrid infrastructure are characterised by a utility function: the utility yielded by the completion of an application depends on the time taken to execute it. We take a business-driven approach to managing this infrastructure, aiming to maximise profit, that is, the utility produced as a result of the applications that are run minus the cost of the computing resources that are used to run them. We assume that the cost of computing resources from the local in-house machines is unavoidable, i.e.. the in-house infrastructure has a fixed cost whether or not its resources are used. We also assume that the cost of computing resources from the P2P grid (when they are available) is negligible, because the grid is based on the exchange of spare resources between peers. Applications are run using computing power just from these two sources whenever possible. Any extra capacity required to improve the profitability of the infrastructure is purchased from the cloud computing market. We assume that this extra capacity is reserved for future use through short term contracts which are negotiated without human intervention. The cost per unit of computing resource may vary significantly between contracts, with more urgent contracts normally being more expensive. However, due to the uncertainty inherent in the best-effort grid, it may not be possible to know in advance exactly how much computing resource will be needed from the cloud computing market. Overestimation of the amount of resources required leads to the reservation of more than is necessary; while underestimation leads to the necessity of negotiating additional contracts later on to acquire the remaining required capacity. We propose heuristics to be used by a contract planning agent in order to balance the cost of running the applications and the utility that is achieved with their execution, with the aim of producing a high overall profit. We demonstrate that the ability to estimate the grid behaviour is an important condition for making contracts that produce high efficiency in the use of the hybrid infrastructure. We propose a model for predicting the behaviour of a P2P grid that uses a particular incentive mechanism, and assess the suitability of this model using field data. Our results show that the proposed model is able to predict the grid behaviour with an average error that is not larger than 16% for the scenarios evaluated, leading to a worst case efficiency of 85.32%.

The State-of-the-Art in Directive-Guided Auto-Tuning for Accelerator and Heterogeneous Many-Core Architectures

In this whitepaper we discuss the latest achievements in the field of auto-tuning of applications for accelerator and heterogeneous many-core architectures guided by programming directives. We provide both an academic perspective, presenting preliminary results obtained by the EU FP7 AutoTune project, and an industrial point of view, demonstrated by the commercial uptake by a leader in compiler technology and services, CAPS Entreprise.

Performance Improvement in Kernels by Guiding Compiler Auto-Vectorization Heuristics

Vectorization support in hardware continues to expand and grow as we still continue on superscalar architectures. Unfortunately, compilers are not always able to generate optimal code for the hardware; detecting and generating vectorized code is extremely complex. Programmers can use a number of tools to aid in development and tuning, but most of these tools require expert or domain-specific knowledge to use. In this work we aim to provide techniques for determining the best way to optimize certain codes, with an end goal of guiding the compiler into generating optimized code without requiring expert knowledge from the developer. Initially, we study how to combine vectorization reports with iterative compilation and code generation and summarize our insights and patterns on how the compiler vectorizes code. Our utilities for iterative compilation and code generation can be further used by non-experts in the generation and analysis of programs. Finally, we leverage the obtained knowledge to design a Support Vector Machine classifier to predict the speedup of a program given a sequence of optimization. We show that our classifier is able to predict the speedup of 56% of the inputs within 15% overprediction and 50% underprediction, with 82% of these accurate within 15% both ways.

Generating Mock-Based Test Automatically

Mock objects are used to improve both efficiency and effectiveness of unit testing. They can completely isolate objects under test from the rest of the application allowing easier root cause analysis of defects. Writing tests that use mocks, however, can be a tedious, costly task and may lead to the inclusion of defects. Furthermore, mock-based unit tests are known to be shortlived – they are usually discarded due to several design changes on the system. In this paper, we propose a technique that generates mock-based tests to face the mentioned drawbacks. Based on the analysis of execution traces, interactions between a target object and its collaborators are captured, by using Aspect Oriented Programming. We also present Automock, a proof of concept tool developed to evaluate the feasibility of the technique.

Predicting the Quality of Service of a Peer-to-Peer Desktop Grid

Peer-to-peer (P2P) desktop grids have been proposed as an economical way to increase the processing capabilities of information technology (IT) infrastructures. In a P2P grid, a peer donates its idle resources to the other peers in the system, and, in exchange, can use the idle resources of other peers when its processing demand surpasses its local computing capacity. Despite their cost-effectiveness, scheduling of processing demands on IT infrastructures that encompass P2P desktop grids is more difficult. At the root of this difficulty is the fact that the quality of the service provided by P2P desktop grids varies significantly over time. The research we report in this paper tackles the problem of estimating the quality of service of P2P desktop grids. We base our study on the OurGrid system, which implements an autonomous incentive mechanism based on reciprocity, called the Network of Favours (NoF). In this paper we propose a model for predicting the quality of service of a P2P desktop grid that uses the NoF incentive mechanism. The model proposed is able to estimate the amount of resources that is available for a peer in the system at future instants of time. We also evaluate the accuracy of the model by running simulation experiments fed with field data. Our results show that in the worst scenario the proposed model is able to predict how much of a given demand for resources a peer is going to obtain from the grid with a mean prediction error of only 7.2%.

Transitioning a message passing interface wavefront sensor model to a graphics processor environment

Previous work produced a parallel and moderately scalable wavefront sensor model as part of a larger integrated telescope model. This relied on traditional high performance computing (HPC) techniques using optimised C and MPI based parallelism to marry maximum performance with the productive high-level modelling environment of MATLAB. In the intervening period the computational power and flexibility offered by graphics processors (GPUs) has increased dramatically. This presents both new options in terms of the level of hardware required to perform simulations and also new capabilities in terms of the scope of such simulations. We present a discussion of the currently available approaches and test case performance results based on a port to a GPU platform.

AutoTune: A Plugin-Driven Approach to the Automatic Tuning of Parallel Applications

Performance analysis and tuning is an important step in programming multicore- and manycore-based parallel architectures. While there are several tools to help developers analyze application performance, no tool provides recommendations about how to tune the code. The AutoTune project is extending Periscope, an automatic distributed performance analysis tool developed by Technische Universität München, with plugins for performance and energy efficiency tuning. The resulting Periscope Tuning Framework will be able to tune serial and parallel codes for multicore and manycore architectures and return tuning recommendations that can be integrated into the production version of the code. The whole tuning process -- both performance analysis and tuning -- will be performed automatically during a single run of the application.

Investigating Performance Benefits from OpenACC Kernel Directives

OpenACC is a high-level programming model that uses directives for offloading computation to accelerators. This paper explores the benefit of using OpenACC performance tuning directives to manually specify GPU scheduling, versus the scheduling OpenACC applies by default. We performed manual scheduling using gang and vector clauses in a directive, and applied to matrix-matrix multiply and Classical Gram-Schmidt orthonormalisation test cases. We then tested using the NVIDIA M2090 and K20 GPGPUs, in conjunction with both the PGI and CAPS implementations of OpenACC. The speedup realised by tuning the gang and vector values ranged from 1.0 to 3.1 in the test cases examined. This shows that the gang and vector values have a large impact on performance, and in some cases the compilers are able to automatically select ideal gang and vector values.

Business-driven short-term management of a hybrid IT infrastructure

We consider the problem of managing a hybrid computing infrastructure whose processing elements are comprised of in-house dedicated machines, virtual machines acquired on-demand from a cloud computing provider through short-term reservation contracts, and virtual machines made available by the remote peers of a best-effort peer-to-peer (P2P) grid. Each of these resources has different cost basis and associated quality of service guarantees. The applications that run in this hybrid infrastructure are characterized by a utility function: the utility gained with the completion of an application depends on the time taken to execute it. We take a business-driven approach to manage this infrastructure, aiming at maximizing the profit yielded, that is, the utility produced as a result of the applications that are run minus the cost of the computing resources that are used to run them. We propose a heuristic to be used by a contract planner agent that establishes the contracts with the cloud computing provider to balance the cost of running an application and the utility that is obtained with its execution, with the goal of producing a high overall profit. Our analytical results show that the simple heuristic proposed achieves very high relative efficiency in the use of the hybrid infrastructure. We also demonstrate that the ability to estimate the grid behaviour is an important condition for making contracts that allow such relative efficiency values to be achieved. On the other hand, our simulation results with realistic error predictions show only a modest improvement in the profit achieved by the simple heuristic proposed, when compared to a heuristic that does not consider the grid when planning contracts, but uses it, and another that is completely oblivious to the existence of the grid. This calls for the development of more accurate predictors for the availability of P2P grids, and more elaborated heuristics that can better deal with the several sources of non-determinism present in this hybrid infrastructure.

Collective mind: Towards practical and collaborative auto-tuning

Empirical auto-tuning and machine learning techniques have been showing high potential to improve execution time, power consumption, code size, reliability and other important metrics of various applications for more than two decades. However, they are still far from widespread production use due to lack of native support for auto-tuning in an ever changing and complex software and hardware stack, large and multi-dimensional optimization spaces, excessively long exploration times, and lack of unified mechanisms for preserving and sharing of optimization knowledge and research material. We present a possible collaborative approach to solve above problems using Collective Mind knowledge management system. In contrast with previous cTuning framework, this modular infrastructure allows to preserve and share through the Internet the whole auto-tuning setups with all related artifacts and their software and hardware dependencies besides just performance data. It also allows to gradually structure, systematize and describe all available research material including tools, benchmarks, data sets, search strategies and machine learning models. Researchers can take advantage of shared components and data with extensible meta-description to quickly and collaboratively validate and improve existing auto-tuning and benchmarking techniques or prototype new ones. The community can now gradually learn and improve complex behavior of all existing computer systems while exposing behavior anomalies or model mispredictions to an interdisciplinary community in a reproducible way for further analysis. We present several practical, collaborative and model-driven auto-tuning scenarios. We also decided to release all material at c-mind.org/repo to set up an example for a collaborative and reproducible research as well as our new publication model in computer engineering where experimental results are continuously shared and validated by the community.

View more public artifacts

Tools

Favorite editor Vim, Notepad++

Renato Miceli

Salvador, Brazil http://renatomiceli.com/

Technical Skills

Likes: java c cuda python openmp bash mpi c++ matlab performance performance-testing testing versoon version-control bdd reporting project project-organization scalability research
Dislikes: sql user-interface

Experience

Jan 2016 → Current Independent HPC and Big Data Business Consultant
unix, linux, c, c++, python, bash, openmp, mpi, performance, project-management, scalability, reporting, testing, intel, nvidia, gpu, gpgpu, xeon-phi, performance-testing, bdd, research
Dec 2014 → Dec 2015 Head of the Supercomputing Center for Industrial Innovation SENAI CIMATEC
outlook, ms-office, c, c++, unix, linux, vnc, project-management, reporting, project-organization, organizational-chart
Oct 2014 → Dec 2014 Technical Lead at the Supercomputing Center for Industry Innovation SENAI CIMATEC
outlook, ms-office, c, c++, unix, linux, performance, performance-testing, scalability, optimization
Dec 2010 → Aug 2014 Computational Scientist Irish Centre for High-End Computing (ICHEC)
c, c++, fortran, intel, nvidia, gpu, gpgpu, xeon-phi, openmp, mpi, matlab, optimization

Education

2012 → 2016 PhD Computer Science Université de Rennes 1
compiler-construction, performance, reporting, latex, scalability
2006 → 2010 B.S. Computer Science Universidade Federal de Campina Grande, Brazil
java, c, c++, pascal, python, html, gwt, ext-gwt, gwt-rpc, junit, scala, scalability
  • One of 10 best grades in POSCOMP 2009:

    POSCOMP is the Brazilian exam for admission to graduate programmes in Computer Science and is applied by the Brazilian Computer Society (SBC) in all regions of Brazil, as well as in Colombia and Peru. Scored 56 out of 70 points total, where the general mean in 2009 was 28.67 points (standard deviation of 9.17 points).

  • "Professor Átila Augusto Freitas de Almeida" Award:

    Awarded due to the best academic performance among all Computer Science graduates and second best performance among graduates of all Exact Science courses on semester 2010.2 at Universidade Federal de Campina Grande.

Certifications

2009 → Current Certified Tester, Foundation Level (CTFL)
testing, unit-testing, tdd, automated-tests, integration-testing, performance-testing, load-testing
2011 → 2016 PRINCE2 Registered Practitioner
version-control, project, project-management, content-management-system, projects-and-solutions, bdd, reporting, report, error-handling, project-organization, organization, organizational-chart

Projects & Interests

JFlex http://sourceforge.net/projects/jflex
java, code-generators, compilers, build-tools

JFlex is a flex-like lexer generator for Java with emphasis on speed and full Unicode support. It has some not so usual features like negation in regexps and nested input streams. Also reads JLex specifications unchanged.

StoKontrol http://sourceforge.net/projects/stokontrol

StoKontrol is an application for easily controlling the stock of your corporation. It tracks your items through barcode, allowing simple registration and ckeck out of items, besides generating reports over your properties.

Skejula http://sourceforge.net/projects/skejula
java, scheduling, time-tracking, to-do-lists

Skejula is intended to be your very scheduler. It helps you take care of your commitments, tasks, activities, todos and annotations.

packagep1 http://code.google.com/p/packagep1/

Refactoring package p1 to Java 6.0 features

msn-sistemas-lineares http://code.google.com/p/msn-sistemas-lineares/

Software para resolução de Sistemas de Equações Lineares

wbis http://code.google.com/p/wbis/

WBIS: Controle de Patrimônio

simple2 http://code.google.com/p/simple2/

Ferrramenta Computacional para o Processamento Digital de Imagens no Domínio da Freqüência

routing-simulator http://code.google.com/p/routing-simulator/

Simulating nodes running the Distributed Bellman-Ford algorithm to route packages through UDP sockets

ocl2sqlcompiler http://code.google.com/p/ocl2sqlcompiler/

Ocl To Sql Compiler

campo-minado http://code.google.com/p/campo-minado/

An MSN-like Minesweeper Game

Public Artifacts

Business-Driven Management of Hybrid IT Infrastructures http://www.lsd.ufcg.edu.br/relatorios_tecnicos/TR-2.pdf

With the emergence of the cloud computing paradigm and the continuous search to reduce the cost of running Information Technology (IT) infrastructures, we are currently experiencing an important change in the way these infrastructures are assembled, configured and managed. In this research we consider the problem of managing a hybrid high-performance computing infrastructure whose processing elements are comprised of in-house dedicated machines, virtual machines acquired from cloud computing providers, and remote virtual machines made available by a best-effort peer-to-peer (P2P) grid. Each of these resources has a different cost basis. The applications that run in this hybrid infrastructure are characterised by a utility function: the utility yielded by the completion of an application depends on the time taken to execute it. We take a business-driven approach to managing this infrastructure, aiming to maximise profit, that is, the utility produced as a result of the applications that are run minus the cost of the computing resources that are used to run them. We assume that the cost of computing resources from the local in-house machines is unavoidable, i.e.. the in-house infrastructure has a fixed cost whether or not its resources are used. We also assume that the cost of computing resources from the P2P grid (when they are available) is negligible, because the grid is based on the exchange of spare resources between peers. Applications are run using computing power just from these two sources whenever possible. Any extra capacity required to improve the profitability of the infrastructure is purchased from the cloud computing market. We assume that this extra capacity is reserved for future use through short term contracts which are negotiated without human intervention. The cost per unit of computing resource may vary significantly between contracts, with more urgent contracts normally being more expensive. However, due to the uncertainty inherent in the best-effort grid, it may not be possible to know in advance exactly how much computing resource will be needed from the cloud computing market. Overestimation of the amount of resources required leads to the reservation of more than is necessary; while underestimation leads to the necessity of negotiating additional contracts later on to acquire the remaining required capacity. We propose heuristics to be used by a contract planning agent in order to balance the cost of running the applications and the utility that is achieved with their execution, with the aim of producing a high overall profit. We demonstrate that the ability to estimate the grid behaviour is an important condition for making contracts that produce high efficiency in the use of the hybrid infrastructure. We propose a model for predicting the behaviour of a P2P grid that uses a particular incentive mechanism, and assess the suitability of this model using field data. Our results show that the proposed model is able to predict the grid behaviour with an average error that is not larger than 16% for the scenarios evaluated, leading to a worst case efficiency of 85.32%.

The State-of-the-Art in Directive-Guided Auto-Tuning for Accelerator and Heterogeneous Many-Core Architectures http://www.prace-ri.eu/IMG/pdf/wp60_the_state-of-the-art_in_directive-guided.pdf

In this whitepaper we discuss the latest achievements in the field of auto-tuning of applications for accelerator and heterogeneous many-core architectures guided by programming directives. We provide both an academic perspective, presenting preliminary results obtained by the EU FP7 AutoTune project, and an industrial point of view, demonstrated by the commercial uptake by a leader in compiler technology and services, CAPS Entreprise.

Performance Improvement in Kernels by Guiding Compiler Auto-Vectorization Heuristics http://www.prace-ri.eu/IMG/pdf/WP183.pdf

Vectorization support in hardware continues to expand and grow as we still continue on superscalar architectures. Unfortunately, compilers are not always able to generate optimal code for the hardware; detecting and generating vectorized code is extremely complex. Programmers can use a number of tools to aid in development and tuning, but most of these tools require expert or domain-specific knowledge to use. In this work we aim to provide techniques for determining the best way to optimize certain codes, with an end goal of guiding the compiler into generating optimized code without requiring expert knowledge from the developer. Initially, we study how to combine vectorization reports with iterative compilation and code generation and summarize our insights and patterns on how the compiler vectorizes code. Our utilities for iterative compilation and code generation can be further used by non-experts in the generation and analysis of programs. Finally, we leverage the obtained knowledge to design a Support Vector Machine classifier to predict the speedup of a program given a sequence of optimization. We show that our classifier is able to predict the speedup of 56% of the inputs within 15% overprediction and 50% underprediction, with 82% of these accurate within 15% both ways.

Generating Mock-Based Test Automatically http://www.cin.ufpe.br/~sfs/publications/lawasp2009.pdf

Mock objects are used to improve both efficiency and effectiveness of unit testing. They can completely isolate objects under test from the rest of the application allowing easier root cause analysis of defects. Writing tests that use mocks, however, can be a tedious, costly task and may lead to the inclusion of defects. Furthermore, mock-based unit tests are known to be shortlived – they are usually discarded due to several design changes on the system. In this paper, we propose a technique that generates mock-based tests to face the mentioned drawbacks. Based on the analysis of execution traces, interactions between a target object and its collaborators are captured, by using Aspect Oriented Programming. We also present Automock, a proof of concept tool developed to evaluate the feasibility of the technique.

Predicting the Quality of Service of a Peer-to-Peer Desktop Grid http://dx.doi.org/10.1109/CCGRID.2010.50

Peer-to-peer (P2P) desktop grids have been proposed as an economical way to increase the processing capabilities of information technology (IT) infrastructures. In a P2P grid, a peer donates its idle resources to the other peers in the system, and, in exchange, can use the idle resources of other peers when its processing demand surpasses its local computing capacity. Despite their cost-effectiveness, scheduling of processing demands on IT infrastructures that encompass P2P desktop grids is more difficult. At the root of this difficulty is the fact that the quality of the service provided by P2P desktop grids varies significantly over time. The research we report in this paper tackles the problem of estimating the quality of service of P2P desktop grids. We base our study on the OurGrid system, which implements an autonomous incentive mechanism based on reciprocity, called the Network of Favours (NoF). In this paper we propose a model for predicting the quality of service of a P2P desktop grid that uses the NoF incentive mechanism. The model proposed is able to estimate the amount of resources that is available for a peer in the system at future instants of time. We also evaluate the accuracy of the model by running simulation experiments fed with field data. Our results show that in the worst scenario the proposed model is able to predict how much of a given demand for resources a peer is going to obtain from the grid with a mean prediction error of only 7.2%.

Transitioning a message passing interface wavefront sensor model to a graphics processor environment http://dx.doi.org/10.1117/12.915921

Previous work produced a parallel and moderately scalable wavefront sensor model as part of a larger integrated telescope model. This relied on traditional high performance computing (HPC) techniques using optimised C and MPI based parallelism to marry maximum performance with the productive high-level modelling environment of MATLAB. In the intervening period the computational power and flexibility offered by graphics processors (GPUs) has increased dramatically. This presents both new options in terms of the level of hardware required to perform simulations and also new capabilities in terms of the scope of such simulations. We present a discussion of the currently available approaches and test case performance results based on a port to a GPU platform.

AutoTune: A Plugin-Driven Approach to the Automatic Tuning of Parallel Applications http://link.springer.com/chapter/10.1007/978-3-642-36803-5_24

Performance analysis and tuning is an important step in programming multicore- and manycore-based parallel architectures. While there are several tools to help developers analyze application performance, no tool provides recommendations about how to tune the code. The AutoTune project is extending Periscope, an automatic distributed performance analysis tool developed by Technische Universität München, with plugins for performance and energy efficiency tuning. The resulting Periscope Tuning Framework will be able to tune serial and parallel codes for multicore and manycore architectures and return tuning recommendations that can be integrated into the production version of the code. The whole tuning process -- both performance analysis and tuning -- will be performed automatically during a single run of the application.

Investigating Performance Benefits from OpenACC Kernel Directives http://dx.doi.org/10.3233/978-1-61499-381-0-616

OpenACC is a high-level programming model that uses directives for offloading computation to accelerators. This paper explores the benefit of using OpenACC performance tuning directives to manually specify GPU scheduling, versus the scheduling OpenACC applies by default. We performed manual scheduling using gang and vector clauses in a directive, and applied to matrix-matrix multiply and Classical Gram-Schmidt orthonormalisation test cases. We then tested using the NVIDIA M2090 and K20 GPGPUs, in conjunction with both the PGI and CAPS implementations of OpenACC. The speedup realised by tuning the gang and vector values ranged from 1.0 to 3.1 in the test cases examined. This shows that the gang and vector values have a large impact on performance, and in some cases the compilers are able to automatically select ideal gang and vector values.

Business-driven short-term management of a hybrid IT infrastructure http://www.sciencedirect.com/science/article/pii/S0743731511002176

We consider the problem of managing a hybrid computing infrastructure whose processing elements are comprised of in-house dedicated machines, virtual machines acquired on-demand from a cloud computing provider through short-term reservation contracts, and virtual machines made available by the remote peers of a best-effort peer-to-peer (P2P) grid. Each of these resources has different cost basis and associated quality of service guarantees. The applications that run in this hybrid infrastructure are characterized by a utility function: the utility gained with the completion of an application depends on the time taken to execute it. We take a business-driven approach to manage this infrastructure, aiming at maximizing the profit yielded, that is, the utility produced as a result of the applications that are run minus the cost of the computing resources that are used to run them. We propose a heuristic to be used by a contract planner agent that establishes the contracts with the cloud computing provider to balance the cost of running an application and the utility that is obtained with its execution, with the goal of producing a high overall profit. Our analytical results show that the simple heuristic proposed achieves very high relative efficiency in the use of the hybrid infrastructure. We also demonstrate that the ability to estimate the grid behaviour is an important condition for making contracts that allow such relative efficiency values to be achieved. On the other hand, our simulation results with realistic error predictions show only a modest improvement in the profit achieved by the simple heuristic proposed, when compared to a heuristic that does not consider the grid when planning contracts, but uses it, and another that is completely oblivious to the existence of the grid. This calls for the development of more accurate predictors for the availability of P2P grids, and more elaborated heuristics that can better deal with the several sources of non-determinism present in this hybrid infrastructure.

Collective mind: Towards practical and collaborative auto-tuning http://dx.doi.org/10.3233/SPR-140396

Empirical auto-tuning and machine learning techniques have been showing high potential to improve execution time, power consumption, code size, reliability and other important metrics of various applications for more than two decades. However, they are still far from widespread production use due to lack of native support for auto-tuning in an ever changing and complex software and hardware stack, large and multi-dimensional optimization spaces, excessively long exploration times, and lack of unified mechanisms for preserving and sharing of optimization knowledge and research material. We present a possible collaborative approach to solve above problems using Collective Mind knowledge management system. In contrast with previous cTuning framework, this modular infrastructure allows to preserve and share through the Internet the whole auto-tuning setups with all related artifacts and their software and hardware dependencies besides just performance data. It also allows to gradually structure, systematize and describe all available research material including tools, benchmarks, data sets, search strategies and machine learning models. Researchers can take advantage of shared components and data with extensible meta-description to quickly and collaboratively validate and improve existing auto-tuning and benchmarking techniques or prototype new ones. The community can now gradually learn and improve complex behavior of all existing computer systems while exposing behavior anomalies or model mispredictions to an interdisciplinary community in a reproducible way for further analysis. We present several practical, collaborative and model-driven auto-tuning scenarios. We also decided to release all material at c-mind.org/repo to set up an example for a collaborative and reproducible research as well as our new publication model in computer engineering where experimental results are continuously shared and validated by the community.

Automatic Tuning of HPC Applications: The Periscope Tuning Framework (Technische Informatik) http://www.amazon.com/Automatic-Tuning-HPC-Applications-Technische/dp/3844035176

Apps & Software

Open Performance-portablE SeismiC Imaging http://opesci.org/
c, c++, matlab, julia-lang, python, sympy, doxygen, scalability, performance

Open Performance portablE SeismiC Imaging (OPESCI) is a framework for subsurface imaging. Its development focus on exploiting modern trends in computer science and numerical analysis to achieve performance portability across modern many-core computer architectures while maintaining a high level abstraction that allows rapid research, development and deployment.

Brazilian Principle Investigator

Tools

Favorite Editor: Vim, Notepad++