data - RISC2 Project https://www.risc2-project.eu Fri, 01 Sep 2023 13:50:06 +0000 en-US hourly 1 https://wordpress.org/?v=6.6.2 RISC2’s partners gather in Brussels to reflect on three years of collaboration between EU and Latin America https://www.risc2-project.eu/2023/07/26/risc2s-partners-gather-in-brussels-to-reflect-on-three-years-of-collaboration-between-eu-and-latin-america/ Wed, 26 Jul 2023 12:03:56 +0000 https://www.risc2-project.eu/?p=2992 Over the past three years, the RISC2 project has established a network for the exchange of knowledge and experience that has enabled its European and Latin American partners to strengthen relations in HPC and take significant steps forward in this area. With the project quickly coming to an end, it was time to meet face-to-face […]

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Over the past three years, the RISC2 project has established a network for the exchange of knowledge and experience that has enabled its European and Latin American partners to strengthen relations in HPC and take significant steps forward in this area. With the project quickly coming to an end, it was time to meet face-to-face in Brussels to reflect on the progress and achievements, the goals set, the difficulties faced, and, above all, what can be expected for the future.

The session began with a welcome and introduction by Mateo Valero (BSC), one of the main drivers of this cooperation and a leading name in the field of HPC. This intervention was later complemented by Fabrizio Gagliardi (BSC). Afterward, Elsa Carvalho (INESC TEC) presented the work done in terms of communication by the RISC2 team, an important segment for all the news and achievements to reach all the partners and countries involved.

Carlos J. Barrios Hernandez then presented the work done within the HPC Observatory, a relevant source of information that European and Latin American research organizations can address with HPC and/or AI issues.

The session closed with an important and pertinent debate on how to strengthen cooperation in HPC between the European Union and Latin America, in which all participants contributed and gave their opinion, committing to efforts so that the work developed within the framework of RISC2 is continued.

What our partners had to say about the meeting?

Rafael Mayo Garcia, CIEMAT:

“The policy event organized by RISC2 in Brussels was of utmost importance for the development of HPC and digital capabilities for a shared infrastructure between EU and LAC. Even more, it has had crucial contributions to international entities such as CYTED, the Ibero-American Programme for the Development of Science and Technology. On the CIEMAT side, it has been a new step beyond for building and participating in a HPC shared ecosystem.”

Esteban Meneses, CeNAT:

“In Costa Rica, CeNAT plays a critical role in fostering technological change. To achieve that goal, it is fundamental to synchronize our efforts with other key players, particularly government institutions. The event policy in Brussels was a great opportunity to get closer to our science and technology ministry and start a dialogue on the importance of HPC, data science, and artificial intelligence for bringing about the societal changes we aim for.”

Esteban Mocskos, UBA:

“The Policy Event recently held in Brussels and organized by the RISC2 project had several remarkable points. The gathering of experts in HPC research and management in Latin America and Europe served to plan the next steps in the joint endeavor to deepen the collaboration in this field. The advance in management policies, application optimization, and user engagement are fundamental topics treated during the main sessions and also during the point-to-point talks in every corner of the meeting room.
I can say that this meeting will also spawn different paths in these collaboration efforts that we’ll surely see their results during the following years with a positive impact on both sides of this fruitful relationship: Latin America and Europe.”

Sergio Nesmachnow, Universidad de la República:

“The National Supercomputing Center (Uruguay) and Universidad de la República have led the development of HPC strategies and technologies and their application to relevant problems in Uruguay. Specific meetings such as the policy event organized by RISC2 in Brussels are key to present and disseminate the current developments and achievements to relevant political and technological leaders in our country, so that they gain knowledge about the usefulness of HPC technologies and infrastructure to foster the development of national scientific research in capital areas such as sustainability, energy, and social development. It was very important to present the network of collaborators in Latin America and Europe and to show the involvement of institutional and government agencies.

Within the contacts and talks during the organization of the meeting, we introduced the projecto to national authorities, including the National Director of Science and Technology, Ministry of Education and Culture, and the President of the National Agency for Research and Innovation, as well as the Uruguayan Agency for International Cooperation and academic authorities from all institutions involved in the National Supercomputing Center initiative. We hope the established contacts can result in productive joint efforts to foster the development of HPC and related scientific areas in our country and the region.”

Carla Osthoff, LNCC:

“In Brazil, LNCC is critical in providing High Performance Computing Resources for the Research Community and training Human Resources and fostering new technologies. The policy event organized by RISC2 in Brussels was fundamental to synchronizing LNCC efforts with other government institutions and international  entities. On the LNCC side, it has been a new step beyond building and participating in an HPC-shared ecosystem.

Specific meetings such as the policy event organized by RISC2 in Brussels  were very important to present the network of collaborators in Latin America and Europe and to show the involvement of institutional and government agencies.

As a result of joint activities in research and development in the areas of information and communication technologies (ICT), artificial intelligence, applied mathematics, and computational modelling, with emphasis on the areas of scientific computing and data science, a Memorandum of Understanding (MoU) have been signed between LNCC and Inria/France. As a  result of new joint activities, LNCC and INESC TEC/Portugal are starting  collaboration through INESC TEC International Visiting Researcher Programme 2023.”

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HPC, Data & Architecture Week https://www.risc2-project.eu/2023/06/28/hpc-data-architecture-week/ Wed, 28 Jun 2023 11:26:14 +0000 https://www.risc2-project.eu/?p=2952 Presentations All the videos are available here: Sergio Nesmachnow Class 1 Class 2 Class 3 Class 4 Pablo Ezzati Class 1 Class 2 Esteban Meneses Class 1 Class 2 Class 3 More information

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Presentations

All the videos are available here:

Sergio Nesmachnow

  • Class 1

  • Class 2

  • Class 3

  • Class 4

Pablo Ezzati

  • Class 1

  • Class 2

Esteban Meneses

  • Class 1

  • Class 2

  • Class 3

More information

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Scientific Machine Learning and HPC https://www.risc2-project.eu/2023/06/28/scientific-machine-learning-and-hpc/ Wed, 28 Jun 2023 08:24:28 +0000 https://www.risc2-project.eu/?p=2863 In recent years we have seen rapid growth in interest in artificial intelligence in general, and machine learning (ML) techniques, particularly in different branches of science and engineering. The rapid growth of the Scientific Machine Learning field derives from the combined development and use of efficient data analysis algorithms, the availability of data from scientific […]

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In recent years we have seen rapid growth in interest in artificial intelligence in general, and machine learning (ML) techniques, particularly in different branches of science and engineering. The rapid growth of the Scientific Machine Learning field derives from the combined development and use of efficient data analysis algorithms, the availability of data from scientific instruments and computer simulations, and advances in high-performance computing. On May 25 2023, COPPE/UFRJ organized a forum to discuss Artificial Intelligence developments and its impact on the society [*].

As the coordinator of the High Performance Computing Center (Nacad) at COPPE/UFRJ, Alvaro Coutinho, presented advances in AI in Engineering and the importance of multidisciplinary research networks to address current issues in Scientific Machine Learning. Alvaro took the opportunity to highlight the need for Brazil to invest in high performance computing capacity.

The country’s sovereignty needs autonomy in producing ML advances, which depends on HPC support at the Universities and Research Centers. Brazil has nine machines in the Top 500 list of the most powerful computer systems in the world, but almost all at Petrobras company, and Universities need much more. ML is well-known to require HPC, when combined to scientific computer simulations it becomes essential.

The conventional notion of ML involves training an algorithm to automatically discover patterns, signals, or structures that may be hidden in huge databases and whose exact nature is unknown and therefore cannot be explicitly programmed. This field may face two major drawbacks: the need for a significant volume of (labelled) expensive to acquire data and limitations for extrapolating (making predictions beyond scenarios contained in the trained data difficult).

Considering that an algorithm’s predictive ability is a learning skill, current challenges must be addressed to improve the analytical and predictive capacity of Scientific ML algorithms, for example, to maximize its impact in applications of renewable energy. References [1-5] illustrate recent advances in Scientific Machine Learning in different areas of engineering and computer science.

References:

[*] https://www.coppe.ufrj.br/pt-br/planeta-coppe-noticias/noticias/coppe-e-sociedade-especialistas-debatem-os-reflexos-da-inteligencia

[1] Baker, Nathan, Steven L. Brunton, J. Nathan Kutz, Krithika Manohar, Aleksandr Y. Aravkin, Kristi Morgansen, Jennifer Klemisch, Nicholas Goebel, James Buttrick, Jeffrey Poskin, Agnes Blom-Schieber, Thomas Hogan, Darren McDonaldAlexander, Frank, Bremer, Timo, Hagberg, Aric, Kevrekidis, Yannis, Najm, Habib, Parashar, Manish, Patra, Abani, Sethian, James, Wild, Stefan, Willcox, Karen, and Lee, Steven. Workshop Report on Basic Research Needs for Scientific Machine Learning: Core Technologies for Artificial Intelligence. United States: N. p., 2019. Web. doi:10.2172/1478744.

[2] Brunton, Steven L., Bernd R. Noack, and Petros Koumoutsakos. “Machine learning for fluid mechanics.” Annual Review of Fluid Mechanics 52 (2020): 477-508.

[3] Karniadakis, George Em, et al. “Physics-informed machine learning.” Nature Reviews Physics 3.6 (2021): 422-440.

[4] Inria White Book on Artificial Intelligence: Current challenges and Inria’s engagement, 2nd edition, 2021. URL: https://www.inria.fr/en/white-paper-inria-artificial-intelligence

[5] Silva, Romulo, Umair bin Waheed, Alvaro Coutinho, and George Em Karniadakis. “Improving PINN-based Seismic Tomography by Respecting Physical Causality.” In AGU Fall Meeting Abstracts, vol. 2022, pp. S11C-09. 2022.

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ABACUS https://www.risc2-project.eu/2023/06/12/abacus/ Mon, 12 Jun 2023 14:09:15 +0000 https://www.risc2-project.eu/?p=2877 System name: ABACUS Location: Centro de Investigación y de Estudios Avanzados del Instituto Politécnico Nacional Areas: Mathematics and applied engineering, data mining Web

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  • System name: ABACUS
  • Location: Centro de Investigación y de Estudios Avanzados del Instituto Politécnico Nacional
  • Areas: Mathematics and applied engineering, data mining
  • Web
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    Centro de Análisis de Datos y Supercómputo https://www.risc2-project.eu/2023/06/12/centro-de-analisis-de-datos-y-supercomputo/ Mon, 12 Jun 2023 14:05:09 +0000 https://www.risc2-project.eu/?p=2870 System name: Centro de Análisis de Datos y Supercómputo Location: Universidad de Guadalajara Areas: Big data, mathematics and engineering Web

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  • System name: Centro de Análisis de Datos y Supercómputo
  • Location: Universidad de Guadalajara
  • Areas: Big data, mathematics and engineering
  • Web
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    Hypatia https://www.risc2-project.eu/2023/06/11/hypatia/ Sun, 11 Jun 2023 09:05:30 +0000 https://www.risc2-project.eu/?p=2207 Title: Hypatia System name: Hypatia Location: Universidad de los Andes Colombia – Data Center (Bogotá) Web OS: Linux CentOS 7 Country: Colombia Processor architecture: Master Node: 1 PowerEdge R640 Server: 2 x Intel® Xeon® Silver 4210R 2.4G, 10C/20T, 9.6GT/s, 13.75M Cache, Turbo, HT (100W) DDR4-2400. Mellanox ConnectX-6 Single Port HDR100 QSFP56 Infiniband Adapter Compute Node: […]

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  • Title: Hypatia
  • System name: Hypatia
  • Location: Universidad de los Andes Colombia – Data Center (Bogotá)
  • Web
  • OS: Linux CentOS 7
  • Country: Colombia
  • Processor architecture:
    • Master Node: 1 PowerEdge R640 Server: 2 x Intel® Xeon® Silver 4210R 2.4G, 10C/20T, 9.6GT/s, 13.75M Cache, Turbo, HT (100W) DDR4-2400. Mellanox ConnectX-6 Single Port HDR100 QSFP56 Infiniband Adapter
    • Compute Node:  
      • 10 PowerEdge R640 Server: 2 x Intel® Xeon® Gold 6242R 3.1G, 20C/40T, 10.4GT/s, 27.5M Cache, Turbo, HT (205W) DDR4-2933. Mellanox ConnectX-6 Single Port HDR100 QSFP56 Infiniband Adapter
      • 3 PowerEdge R6525 Server 256 GB: 2 x AMD EPYC 7402 2.80GHz, 24C/48T, 128M Cache (180W) DDR4-3200. Mellanox ConnectX-6 Single Port HDR100 QSFP56 Infiniband Adapter
      • 2 PowerEdge R6525 Server 512 GB: 2 x AMD EPYC 7402 2.80GHz, 24C/48T, 128M Cache (180W) DDR4-3200. Mellanox ConnectX-6 Single Port HDR100 QSFP56 Infiniband Adapter
      • 1 PowerEdge R6525 Server 1 TB: 2 x AMD EPYC 7402 2.80GHz, 24C/48T, 128M Cache (180W) DDR4-3200. Mellanox ConnectX-6 Single Port HDR100 QSFP56 Infiniband Adapter
      • 2 PowerEdge R740 Server: 3 x NVIDIA® Quadro® RTX6000 24 GB, 250W, Dual Slot, PCle x16 Passice Cooled, Full Height GPU. Intel® Xeon® Gold 6226R 2.9GHz, 16C/32T, 10.4GT/s, 22M Cache, Turbo, HT (150W) DDR4-2933. Mellanox ConnectX-6 Single Port HDR100 QSFP56 Infiniband Adapter
    • Storage:
      • 1Dell EMC ME4084 SAS OST – 84 X 4TB HDD 7.2K 512n SAS12 3.5
      • 1 Dell EMC ME4024 SAS MDT – 24 X 960 GB SSD SAS Read Intensive 12Gbps 512e 2.5in Hot-plug Drive, PM5-R, 1DWPD, 1752 TBW
      • 4 PowerEdge R740 Server: 2 x Intel® Xeon® Gold 6230R 2.1G, 26C/52T, 10.4GT/s, 35.75M Cache, Turbo, HT 150W) DDR4-2933. Mellanox ConnectX-6 Single Port HDR100 QSFP56 Infiniband Adapter
  • Vendor: DELL
  • Peak performance: TBC
  • Access Policy: TBC
  • Main research domains: TBC
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    Subsequent Progress And Challenges Concerning The México-UE Project ENERXICO: Supercomputing And Energy For México https://www.risc2-project.eu/2023/05/24/subsequent-progress-and-challenges-concerning-the-mexico-ue-project-enerxico-supercomputing-and-energy-for-mexico/ Wed, 24 May 2023 09:38:01 +0000 https://www.risc2-project.eu/?p=2824 In this short notice, we briefly describe some afterward advances and challenges with respect to two work packages developed in the ENERXICO Project. This opened the possibility of collaborating with colleagues from institutions that did not participate in the project, for example from the University of Santander in Colombia and from the University of Vigo […]

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    In this short notice, we briefly describe some afterward advances and challenges with respect to two work packages developed in the ENERXICO Project. This opened the possibility of collaborating with colleagues from institutions that did not participate in the project, for example from the University of Santander in Colombia and from the University of Vigo in Spain. This exemplifies the importance of the RISC2 project in the sense that strengthening collaboration and finding joint research areas and HPC applied ventures is of great benefit for both: our Latin American Countries and the EU. We are now initiating talks to target several Energy related topics with some of the RISC2 partners. 

    The ENERXICO Project focused on developing advanced simulation software solutions for oil & gas, wind energy and transportation powertrain industries.  The institutions that collaborated in the project are for México: ININ (Institution responsible for México), Centro de Investigación y de Estudios Avanzados del IPN (Cinvestav), Universidad Nacional Autónoma de México (UNAM IINGEN, FCUNAM), Universidad Autónoma Metropolitana-Azcapotzalco, Instituto Mexicano del Petróleo, Instituto Politécnico Nacional (IPN) and Pemex, and for the European Union: Centro de Supercómputo de Barcelona (Institution responsible for the EU), Technische Universitäts München, Alemania (TUM), Universidad de Grenoble Alpes, Francia (UGA), CIEMAT, España, Repsol, Iberdrola, Bull, Francia e Universidad Politécnica de Valencia, España.  

    The Project contemplated four working packages (WP): 

    WP1 Exascale Enabling: This was a cross-cutting work package that focused on assessing performance bottlenecks and improving the efficiency of the HPC codes proposed in vertical WP (UE Coordinator: BULL, MEX Coordinator: CINVESTAV-COMPUTACIÓN); 

    WP2 Renewable energies:  This WP deployed new applications required to design, optimize and forecast the production of wind farms (UE Coordinator: IBR, MEX Coordinator: ININ); 

    WP3 Oil and gas energies: This WP addressed the impact of HPC on the entire oil industry chain (UE Coordinator: REPSOL, MEX Coordinator: ININ); 

    WP4 Biofuels for transport: This WP displayed advanced numerical simulations of biofuels under conditions similar to those of an engine (UE Coordinator: UPV-CMT, MEX Coordinator: UNAM); 

    For WP1 the following codes were optimized for exascale computers: Alya, Bsit, DualSPHysics, ExaHyPE, Seossol, SEM46 and WRF.   

    As an example, we present some of the results for the DualPHYysics code. We evaluated two architectures: The first set of hardware used were identical nodes, each equipped with 2 ”Intel Xeon Gold 6248 Processors”, clocking at 2.5 GHz with about 192 GB of system memory. Each node contained 4 Nvidia V100 Tesla GPUs with 32 GB of main memory each. The second set of hardware used were identical nodes, each equipped with 2 ”AMD Milan 7763 Processors”, clocking at 2.45 GHz with about 512 GB of system memory. Each node contained 4 Nvidia V100 Ampere GPUs with 40 GB of main memory each. The code was compiled and linked with CUDA 10.2 and OpenMPI 4. The application was executed using one GPU per MPI rank. 

    In Figures 1 and 2 we show the scalability of the code for the strong and weak scaling tests that indicate that the scaling is very good. Motivated by these excellent results, we are in the process of performing in the LUMI supercomputer new SPH simulations with up to 26,834 million particles that will be run with up to 500 GPUs, which is 53.7 million particles per GPU. These simulations will be done initially for a Wave Energy Converter (WEC) Farm (see Figure 3), and later for turbulent models. 

    Figure 1. Strong scaling test with a fix number of particles but increasing number of GPUs.

     

    Figure 2. Weak scaling test with increasing number of particles and GPUs.

     

    Figure 3. Wave Energy Converter (WEC) Farm (taken from https://corpowerocean.com/)

     

    As part of WP3, ENERXICO developed a first version of a computer code called Black Hole (or BH code) for the numerical simulation of oil reservoirs, based on the numerical technique known as Smoothed Particle Hydrodynamics or SPH. This new code is an extension of the DualSPHysics code (https://dual.sphysics.org/) and is the first SPH based code that has been developed for the numerical simulation of oil reservoirs and has important benefits versus commercial codes based on other numerical techniques.  

    The BH code is a large-scale massively parallel reservoir simulator capable of performing simulations with billions of “particles” or fluid elements that represent the system under study. It contains improved multi-physics modules that automatically combine the effects of interrelated physical and chemical phenomena to accurately simulate in-situ recovery processes. This has led to the development of a graphical user interface, considered as a multiple-platform application for code execution and visualization, and for carrying out simulations with data provided by industrial partners and performing comparisons with available commercial packages.  

    Furthermore, a considerable effort is presently being made to simplify the process of setting up the input for reservoir simulations from exploration data by means of a workflow fully integrated in our industrial partners’ software environment.  A crucial part of the numerical simulations is the equation of state.  We have developed an equation of state based on crude oil data (the so-called PVT) in two forms, the first as a subroutine that is integrated into the code, and the second as an interpolation subroutine of properties’ tables that are generated from the equation of state subroutine.  

    An oil reservoir is composed of a porous medium with a multiphase fluid made of oil, gas, rock and other solids. The aim of the code is to simulate fluid flow in a porous medium, as well as the behaviour of the system at different pressures and temperatures.  The tool should allow the reduction of uncertainties in the predictions that are carried out. For example, it may answer questions about the benefits of injecting a solvent, which could be CO2, nitrogen, combustion gases, methane, etc. into a reservoir, and the times of eruption of the gases in the production wells. With these estimates, it can take the necessary measures to mitigate their presence, calculate the expense, the pressure to be injected, the injection volumes and most importantly, where and for how long. The same happens with more complex processes such as those where fluids, air or steam are injected, which interact with the rock, oil, water and gas present in the reservoir. The simulator should be capable of monitoring and preparing measurement plans. 

    In order to be able to perform a simulation of a reservoir oil field, an initial model needs to be created.  Using geophysical forward and inverse numerical techniques, the ENERXICO project evaluated novel, high-performance simulation packages for challenging seismic exploration cases that are characterized by extreme geometric complexity. Now, we are undergoing an exploration of high-order methods based upon fully unstructured tetrahedral meshes and also tree-structured Cartesian meshes with adaptive mesh refinement (AMR) for better spatial resolution. Using this methodology, our packages (and some commercial packages) together with seismic and geophysical data of naturally fractured reservoir oil fields, are able to create the geometry (see Figure 4), and exhibit basic properties of the oil reservoir field we want to study.  A number of numerical simulations are performed and from these oil fields exploitation scenarios are generated.

     

    Figure 4. A detail of the initial model for a SPH simulation of a porous medium.

     

    More information about the ENERXICO Project can be found in: https://enerxico-project.eu/

    By: Jaime Klapp (ININ, México) and Isidoro Gitler (Cinvestav, México)

     

     

     

     

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    Latin American researchers present greener gateways for Big Data in INRIA Brazil Workshop https://www.risc2-project.eu/2023/05/03/latin-american-researchers-present-greener-gateways-for-big-data-in-inria-brazil-workshop/ Wed, 03 May 2023 13:29:03 +0000 https://www.risc2-project.eu/?p=2802 In the scope of the RISC2 Project, the State University of Sao Paulo and INRIA (Institut National de Recherche en Informatique et en Automatique), a renowned French research institute, held a workshop, on  that set the stage for the presentation of the results accomplished under the work Developing Efficient Scientific Gateways for Bioinformatics in Supercomputer […]

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    In the scope of the RISC2 Project, the State University of Sao Paulo and INRIA (Institut National de Recherche en Informatique et en Automatique), a renowned French research institute, held a workshop, on  that set the stage for the presentation of the results accomplished under the work Developing Efficient Scientific Gateways for Bioinformatics in Supercomputer Environments Supported by Artificial Intelligence.

    The goal of the investigation is to provide users with simplified access to computing structures through scientific solutions that represent significant developments in their fields. In the case of this project, it is intended to develop intelligent green scientific solutions for BioinfoPortal (a multiuser Brazilian infrastructure)supported by High-Performance Computing environments.

    Technologically, it includes areas such as scientific workflows, data mining, machine learning, and deep learning. The outlook, in case of success, is the analysis and interpretation of Big Data allowing new paths in molecular biology, genetics, biomedicine, and health— so it becomes necessary tools capable of digesting the amount of information, efficiently, which can come.

    The team performed several large-scale bioinformatics experiments that are considered to be computationally intensive. Currently, artificial intelligence is being used to generate models to analyze computational and bioinformatics metadata to understand how automatic learning can predict computational resources efficiently. The workshop was held from April 10th to 11th, and took place in the University of Sao Paulo.

    RISC2 Project, which aims to explore the HPC impact in the economies of Latin America and Europe, relies on the interaction between researchers and policymakers in both regions. It also includes 16 academic partners such as the University of Buenos Aires, National Laboratory for High Performance Computing of Chile, Julich Supercomputing Centre, Barcelona Supercomputing Center (the leader of the consortium), among others.

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    More than 100 students participated in the HPC, Data & Architecture Week https://www.risc2-project.eu/2023/03/21/more-than-100-students-participated-in-the-hpc-data-architecture-week/ Tue, 21 Mar 2023 10:18:44 +0000 https://www.risc2-project.eu/?p=2790 RISC2 supported the ‘HPC, Data & Architecture Week’, which took place between March 13 and 17, 2023, in Buenos Aires. This initiative aimed to recover and deepen the training of human resources for the development of scientific applications and their efficient use in parallel computing environments. This event had four main courses: “Foundations of Parallel […]

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    RISC2 supported the ‘HPC, Data & Architecture Week’, which took place between March 13 and 17, 2023, in Buenos Aires. This initiative aimed to recover and deepen the training of human resources for the development of scientific applications and their efficient use in parallel computing environments.

    This event had four main courses: “Foundations of Parallel Programming”, “Large scale data processing and machine learning”, “New architectures and specific computing platforms”, and “Administrations techniques for large-scale computing facilities”.

    More than 100 students actively participated in the event who traveled from different part of the country. 30 students received financial support to participate (traveling and living) provided by the National HPC System (SNCAD) dependent of the Argentina’s Ministry of Science.

    Esteban Mocskos, one of the organizers of the event, believes “this kind of events should be organized regularly to sustain the flux of students in the area of HPC”. In his opinion, “a lot of students from Argentina get their first contact with HPC topics. As such a large country, impacting a distant region also means impacting the neighboring countries. Those students will bring their experience to other students in their places”. According to Mocskos, initiatives like the “HPC, Data & Architecture Week” spark a lot of collaborations.

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    Developing Efficient Scientific Gateways for Bioinformatics in Supercomputer Environments Supported by Artificial Intelligence https://www.risc2-project.eu/2023/03/20/developing-efficient-scientific-gateways-for-bioinformatics-in-supercomputer-environments-supported-by-artificial-intelligence/ Mon, 20 Mar 2023 09:37:46 +0000 https://www.risc2-project.eu/?p=2781 Scientific gateways bring enormous benefits to end users by simplifying access and hiding the complexity of the underlying distributed computing infrastructure. Gateways require significant development and maintenance efforts. BioinfoPortal[1], through its CSGrid[2]  middleware, takes advantage of Santos Dumont [3] heterogeneous resources. However, task submission still requires a substantial step regarding deciding the best configuration that […]

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    Scientific gateways bring enormous benefits to end users by simplifying access and hiding the complexity of the underlying distributed computing infrastructure. Gateways require significant development and maintenance efforts. BioinfoPortal[1], through its CSGrid[2]  middleware, takes advantage of Santos Dumont [3] heterogeneous resources. However, task submission still requires a substantial step regarding deciding the best configuration that leads to efficient execution. This project aims to develop green and intelligent scientific gateways for BioinfoPortal supported by high-performance computing environments (HPC) and specialised technologies such as scientific workflows, data mining, machine learning, and deep learning. The efficient analysis and interpretation of Big Data opens new challenges to explore molecular biology, genetics, biomedical, and healthcare to improve personalised diagnostics and therapeutics; finding new avenues to deal with this massive amount of information becomes necessary. New Bioinformatics and Computational Biology paradigms drive storage, management, and data access. HPC and Big Data advanced in this domain represent a vast new field of opportunities for bioinformatics researchers and a significant challenge. the BioinfoPortal science gateway is a multiuser Brazilian infrastructure. We present several challenges for efficiently executing applications and discuss the findings on improving the use of computational resources. We performed several large-scale bioinformatics experiments that are considered computationally intensive and time-consuming. We are currently coupling artificial intelligence to generate models to analyze computational and bioinformatics metadata to understand how automatic learning can predict computational resources’ efficient use. The computational executions are conducted at Santos Dumont, the largest supercomputer in Latin America, dedicated to the research community with 5.1 Petaflops and 36,472 computational cores distributed in 1,134 computational nodes.

    By:

    Carneiro, B. Fagundes, C. Osthoff, G. Freire, K. Ocaña, L. Cruz, L. Gadelha, M. Coelho, M. Galheigo, and R. Terra are with the National Laboratory of Scientific Computing, Rio de Janeiro, Brazil.

    Carvalho is with the Federal Center for Technological Education Celso Suckow da Fonseca, Rio de Janeiro, Brazil.

    Douglas Cardoso is with the Polytechnic Institute of Tomar, Portugal.

    Boito and L, Teylo is with the University of Bordeaux, CNRS, Bordeaux INP, INRIA, LaBRI, Talence, France.

    Navaux is with the Informatics Institute, the Federal University of Rio Grande do Sul, and Rio Grande do Sul, Brazil.

    References:

    Ocaña, K. A. C. S.; Galheigo, M.; Osthoff, C.; Gadelha, L. M. R.; Porto, F.; Gomes, A. T. A.; Oliveira, D.; Vasconcelos, A. T. BioinfoPortal: A scientific gateway for integrating bioinformatics applications on the Brazilian national high-performance computing network. Future Generation Computer Systems, v. 107, p. 192-214, 2020.

    Mondelli, M. L.; Magalhães, T.; Loss, G.; Wilde, M.; Foster, I.; Mattoso, M. L. Q.; Katz, D. S.; Barbosa, H. J. C.; Vasconcelos, A. T. R.; Ocaña, K. A. C. S; Gadelha, L. BioWorkbench: A High-Performance Framework for Managing and Analyzing Bioinformatics Experiments. PeerJ, v. 1, p. 1, 2018.

    Coelho, M.; Freire, G.; Ocaña, K.; Osthoff, C.; Galheigo, M.; Carneiro, A. R.; Boito, F.; Navaux, P.; Cardoso, D. O. Desenvolvimento de um Framework de Aprendizado de Máquina no Apoio a Gateways Científicos Verdes, Inteligentes e Eficientes: BioinfoPortal como Caso de Estudo Brasileiro In: XXIII Simpósio em Sistemas Computacionais de Alto Desempenho – WSCAD 2022 (https://wscad.ufsc.br/), 2022.

    Terra, R.; Ocaña, K.; Osthoff, C.; Cruz, L.; Boito, F.; Navaux, P.; Carvalho, D. Framework para a Construção de Redes Filogenéticas em Ambiente de Computação de Alto Desempenho. In: XXIII Simpósio em Sistemas Computacionais de Alto Desempenho – WSCAD 2022 (https://wscad.ufsc.br/), 2022.

    Ocaña, K.; Cruz, L.; Coelho, M.; Terra, R.; Galheigo, M.; Carneiro, A.; Carvalho, D.; Gadelha, L.; Boito, F.; Navaux, P.; Osthoff, C. ParslRNA-Seq: an efficient and scalable RNAseq analysis workflow for studies of differentiated gene expression. In: Latin America High-Performance Computing Conference (CARLA), 2022, Rio Grande do Sul, Brazil. Proceedings of the Latin American High-Performance Computing Conference – CARLA 2022 (http://www.carla22.org/), 2022.

    [1] https://bioinfo.lncc.br/

    [2] https://git.tecgraf.puc-rio.br/csbase-dev/csgrid/-/tree/CSGRID-2.3-LNCC

    [3] https://https://sdumont.lncc.br

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