D. N. Veritas, Recommended practice: riser fatigue, 2010.

P. Groth and L. Moreau, W3C PROV -An Overview of the PROV Family of Documents

D. Meignan, S. Knust, J. Frayret, G. Pesant, and N. Gaud, A Review and Taxonomy of Interactive Optimization Methods in Operations Research, ACM Trans. Interact. Intell. Syst, vol.17, pp.2160-6455, 2015.

S. M. Pickles, R. Haines, R. L. Pinning, and A. R. Porter, A practical toolkit for computational steering, Philosophical Transactions. Series A, Mathematical, Physical, and Engineering Sciences, vol.8, pp.1364-503, 2005.

J. D. Mulder, J. J. Van-wijk, and R. Van-liere, A Survey of Computational Steering Environments, Future Generation Computer Systems, pp.47-55, 1999.

B. K. Danani and B. D. D'amora, Computational Steering for High Performance Computing: Applications on Blue Gene/Q System, Symposium on High Performance Computing, HPC '15, pp.978-979, 2015.

J. Han and J. Brooke, Hybrid Computational Steering for Dynamic Datadriven Application Systems, Procedia Computer Science, vol.80, pp.1877-0509, 2016.

V. R. Liere, J. D. Mulder, and V. J. Wijk, Computational steering, International Conference on High-Performance Computing and Networking, vol.4, pp.696-702, 1996.

R. Van-liere, D. Mulder, J. Van-wijk, and J. J. , Computational steering, Future Generation Computer Systems, v, vol.12, issue.5, pp.167-739, 1997.

J. J. Wijk and R. Liere, An Environment for Computational Steering, Amsterdam, 1994.

W. Gu, G. Eisenhauer, E. Kraemer, K. Schwan, J. Stasko et al., Falcon: on-line monitoring and steering of large-scale parallel programs, Fifth Symposium on the Frontiers of Massively Parallel Computation, pp.422-429, 1995.

A. Goel, C. Phanouriou, F. A. Kamke, C. J. Ribbens, C. A. Shaf-fer et al., WBCSim: A Prototype Problem Solving Environment for Wood-Based Composites Simulations, vol.4, pp.177-0667, 1999.

J. Shu, L. T. Watson, N. Ramakrishnan, F. A. Kamke, and S. Desh-pande, Computational steering in the problem solving environment WBCSim, pp.264-4401, 2011.

J. Shu, L. T. Watson, B. G. Zombori, and F. A. Kamke, WBCSim: An Environment for Modeling Wood-based Composites Manufacture, vol.6, pp.177-0667, 2006.

. Github, Available at: <https: //github.com/hpcdb/PROV-DfA>, 2019.

U. Rüde, K. Willcox, L. C. Mcinnes, and H. Sterck, Research and Education in Computational Science and Engineering, pp.36-1445, 2018.

F. Silva and R. , Pegasus and LIGO, Pegasus Blog Post, 2016.

I. Research, AI and the Future of Oil: An AI Tool to Advise Geoscientists, IBM Research Blog Post, 2018.

F. Silva, R. Filgueira, R. Pietri, I. Jiang, M. Sakellar-iou et al., A characterization of workflow management systems for extreme-scale applications, p.167739, 2017.

E. Ogasawara, J. Dias, D. Oliveira, F. Porto, P. Valduriez et al., An algebraic approach for data-centric scientific workflows, Proceedings of the VLDB Endowment, pp.2150-8097, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00640431

E. Deelman, K. Vahi, G. Juve, M. Rynge, S. Callaghan et al., Pegasus, a workflow management system for science automation, Future Generation Computer Systems, vol.46, p.167739, 2015.

M. Mattoso, K. Ocaña, F. Horta, J. Dias, E. Ogasawara et al., User-steering of HPC workflows: state-of-the-art and future directions, International Workshop on Scalable Workflow Execution Engines and Technologies (SWEET) co-located with the ACM Special Interest Group on Management of Data (SIGMOD), pp.1-6, 2013.

M. Mattoso, J. Dias, K. A. Ocaña, E. Ogasawara, F. Costa et al., Dynamic steering of HPC scientific workflows: a survey, Future Generation Computer Systems, vol.46, pp.167-739, 2015.

V. Silva, L. Neves, R. Souza, A. L. Coutinho, D. De-oliveira et al., Adding domain data to code profiling tools to debug workflow parallel execution, Future Generation Computer Systems, pp.167-739, 2018.

R. Souza, V. Silva, A. L. Coutinho, P. Valduriez, and M. Mat-toso, Data reduction in scientific workflows using provenance monitoring and user steering, Future Generation Computer Systems, pp.167-739, 2017.
URL : https://hal.archives-ouvertes.fr/lirmm-01679967

J. Dias, G. Guerra, F. Rochinha, A. L. Coutinho, P. Val-duriez et al., Data-centric iteration in dynamic workflows, Future Generation Computer Systems, vol.5, pp.167-739, 2015.
URL : https://hal.archives-ouvertes.fr/lirmm-01073638

J. J. Camata, V. Silva, P. Valduriez, M. Mattoso, and A. L. Coutinho, In situ visualization and data analysis for turbidity currents simulation, Computers & Geosciences, vol.110, pp.98-3004, 2018.
URL : https://hal.archives-ouvertes.fr/lirmm-01620127

M. Herschel, R. Diestelkämper, and H. Ben-lahmar, A survey on provenance: What for? What form? What from, The VLDB Journal, issue.6, pp.1066-8888, 2017.

F. Costa, V. Silva, D. De-oliveira, K. Ocaña, E. Ogasawara et al., Capturing and querying workflow runtime provenance with PROV: a practical approach, Joint EDBT/ICDT 2013 Workshops, EDBT '13, pp.282-289

H. V. Jagadish, J. Gehrke, A. Labrinidis, Y. Papakonstantinou, J. M. Patel et al., Big data and its technical challenges, Communications of the ACM, v, vol.57, issue.7, p.10782, 2014.

S. J. Russell and P. Norvig, Artificial intelligence: a modern approach. Malaysia; Pearson Education Limited, 2016.

E. Deelman, T. Peterka, I. Altintas, C. D. Carothers, K. Van-dam et al., The future of scientific workflows, International Journal of HPC Applications, pp.1741-2846, 2017.

M. Atkinson, S. Gesing, J. Montagnat, and I. Taylor, Scientific workflows: Past, present and future, vol.75, pp.167-739, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01544818

M. A. Netto, R. N. Calheiros, E. R. Rodrigues, R. L. Cunha, and R. Buyya, HPC Cloud for Scientific and Business Applications: Taxonomy, Vision, and Research Challenges, ACM Computing Surveys (CSUR), v. 51, vol.8, p.29, 2018.

V. Silva, J. Leite, J. J. Camata, D. De-oliveira, A. L. Coutinho et al., Raw data queries during data-intensive parallel workflow execution, p.167739, 2017.
URL : https://hal.archives-ouvertes.fr/lirmm-01445219

V. Silva, R. Souza, J. Camata, D. De-oliveira, P. Valduriez et al., Capturing Provenance for Runtime Data Analysis in Computational Science and Engineering Applications, International Provenance and Annotation Workshop (IPAW), Lecture Notes in Computer Science (LNCS), pp.183-187, 2018.

R. Souza, V. Silva, J. J. Camata, A. L. Coutinho, P. Val-duriez et al., Keeping track of user steering actions in dynamic workflows, Future Generation Computer Systems, v. 99, pp.624-643, 2019.
URL : https://hal.archives-ouvertes.fr/lirmm-02127456

V. Silva, D. De-oliveira, P. Valduriez, and M. Mattoso, DfAnalyzer: runtime dataflow analysis of scientific applications using provenance, Proceedings of the VLDB Endowment, vol.12, pp.2150-8097, 2018.
URL : https://hal.archives-ouvertes.fr/lirmm-01867887

J. Goncalves, D. D. Oliveira, K. Ocana, E. Ogasawara, J. Dias et al., Performance Analysis of Data Filtering in Scientific Workflows, Journal of Information and Data Management, issue.1, pp.17-26, 2013.

I. Santos, J. Dias, D. Oliveira, E. Ogasawara, K. Ocana et al., Runtime Dynamic Structural Changes of Scientific Workflows in Clouds, IEEE/ACM International Workshop on Clouds and eScience Applications Management (CloudAM), pp.417-422, 2013.

R. Souza, V. Silva, D. Oliveira, P. Valduriez, A. A. Lima et al., Parallel Execution of Workflows Driven by a Distributed Database Management System, ACM/IEEE International Conference for High Performance Computing, Networking, Storage, and Analysis (SC), pp.1-3, 2015.

R. Souza and M. Mattoso, Provenance of Dynamic Adaptations in User-Steered Dataflows, International Provenance and Annotation Workshop (IPAW), Lecture Notes in Computer Science (LNCS), pp.16-29, 2018.

R. Souza, L. Azevedo, R. Thiago, E. Soares, M. Nery et al., Efficient Runtime Capture of Multiworkflow Data Using Provenance, IEEE International Conference on e-Science (eScience), pp.1-10, 2019.
URL : https://hal.archives-ouvertes.fr/lirmm-02265932

R. Souza, V. Silva, A. Coutinho, P. Valduriez, and M. Mattoso, Online Input Data Reduction in Scientific Workflows, Workflows in Support of Large-Scale Science (WORKS) workshop co-located with the ACM/IEEE International Conference for High Performance Computing, Networking, Storage, and Analysis (SC), pp.1-10, 2016.
URL : https://hal.archives-ouvertes.fr/lirmm-01400538

R. Souza, V. Silva, J. Camata, A. Coutinho, P. Valduriez et al., Tracking of online parameter fine-tuning in scientific workflows, Workflows in Support of Large-Scale Science (WORKS) workshop co-located with the ACM/IEEE International Conference for High Performance Computing, Networking, Storage, and Analysis (SC), 2017.
URL : https://hal.archives-ouvertes.fr/lirmm-01620974

R. Souza, L. Neves, L. Azeredo, R. Luiz, E. Tady et al., Towards a human-in-the-loop library for tracking hyperparameter tuning in deep learning development, Latin American Data Science (LaDaS) workshop co-located with the Very Large Database (VLDB) conference, pp.84-87, 2018.

R. Souza, V. Silva, P. Miranda, A. A. Lima, P. Valduriez et al., Spark Scalability Analysis in a Scientific Workflow, Simpósio Brasileiro de Banco de Dados (SBBD), pp.288-293, 2017.
URL : https://hal.archives-ouvertes.fr/lirmm-01620161

V. Silva, L. Neves, R. Souza, A. Coutinho, D. D. Oliveira et al., Integrating Domain-data Steering with Code-profiling Tools to Debug Data-intensive Workflows, Workflows in Support of Large-Scale Science (WORKS) workshop co-located with the ACM/IEEE International Conference for High Performance Computing, Networking, Storage, and Analysis (SC), 2016.

D. Bernholdt, A. Dubey, M. Heroux, A. Klinvex, and L. C. Mcinnes, Improving Reproducibility Through Better Software Practices, 2017.

A. C. Bauer, H. , H. , W. , and B. E. , In situ methods, infrastructures, and applications on high performance computing platforms, Comp. G. Forum, v, vol.35, issue.3, pp.167-7055, 2016.

R. Ikeda, . Das, A. Sarma, and J. Widom, Logical provenance in data-oriented workflows, ICDE, pp.877-888, 2013.

H. A. Nguyen, D. Abramson, T. Kipouros, A. Janke, and G. Gal-loway, WorkWays: interacting with scientific workflows, Concurrency and Computation: Practice and Experience, vol.11, p.15320626, 2015.

J. Freire, D. Koop, E. Santos, and C. T. Silva, Provenance for Computational Tasks: A Survey, Computing in Science & Engineering, pp.1521-9615, 2008.

S. B. Davidson and J. Freire, Provenance and Scientific Workflows: Challenges and Opportunities, ACM International Conference on Management of Data (SIGMOD), SIGMOD '08, pp.1345-1350, 2008.

D. De-oliveira, V. Silva, and M. Mattoso, How much domain data should be in provenance databases?, In: Workshop on Theory and Practice of Provenance (TaPP), 2015.

R. Souza, V. Silva, L. Neves, D. De-oliveira, and M. Mattoso, Monitoramento de Desempenho usando Dados de Proveniência e de Domínio durante a Execução de Aplicações Científicas, Workshop em Desempenho de Sistemas Computacionais e de Comunicação (WPerformance)

, Sociedade Brasileira de Computação, 2015.

T. Barbosa, R. Souza, S. Cruz, M. Campos, and L. Cottrell, Applying data warehousing and big data techniques to analyze internet performance, 2016.

M. Stamatogiannakis, H. Kazmi, H. Sharif, R. Vermeulen, A. Gehani et al., Trade-Offs in Automatic Provenance Capture, International Provenance and Annotation Workshop (IPAW), IPAW 2016, pp.29-41, 2016.

L. Moreau, B. V. Batlajery, T. D. Huynh, D. Michaelides, and H. Packer, A Templating System to Generate Provenance, IEEE Transactions on Software Engineering, vol.2, issue.2, pp.98-5589, 2018.

J. F. Pimentel, L. Murta, V. Braganholo, and J. Freire, noWorkflow: a tool for collecting, analyzing, and managing provenance from python scripts, Proceedings of the VLDB Endowment, vol.12, p.21508097, 2017.

B. S. Kirk, J. W. Peterson, R. H. Stogner, and G. F. Carey, libMesh : a C++ library for parallel adaptive mesh refinement/coarsening simulations, Engineering with Computers, vol.12, pp.177-0667, 2006.

U. Ayachit, A. Bauer, B. Geveci, P. O&apos;leary, K. Moreland et al., ParaView Catalyst: enabling in situ data analysis and visualization, Situ Infrastructures for Enabling Extreme-scale Analysis and Visualization in Supercomputing workshops, pp.25-29, 2015.

D. Oliveira, E. Ogasawara, F. Baiao, and M. Mattoso, SciCumulus: A Lightweight Cloud Middleware to Explore Many Task Computing Paradigm in Scientific Workflows, International Conference on Cloud Computing, pp.378-385, 2010.

, The ProvONE data model for scientific workflow provenance, 2019.

R. Castro, R. Souza, V. Silva, K. Ocaña, D. Oliveira et al., Uma Abordagem para Publicação de Dados de Proveniência de Workflows Científicos na Web Semântica, 2015.

. Github, d-Chiron GitHub Repository, 2019.

F. Xian, Computational Steering Systems in Grid Computing Environments, 2008.

U. Ayachit, A. Bauer, and E. P. Duque, Performance Analysis, Design Considerations, and Applications of Extreme-scale in Situ Infrastructures, ACM/IEEE International Conference for High Performance Computing, Networking, Storage, and Analysis (SC), SC '16, vol.79, pp.978-979, 2016.

P. Bourhis, D. Deutch, and Y. Moskovitch, Analyzing data-centric applications: Why, what-if, and how-to, International Conference on Data Engineering, pp.779-790, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01413879

D. J. Jablonowski, J. D. Bruner, B. Bliss, and R. B. Haber, VASE: The visualization and application steering environment, ACM/IEEE International Conference for High Performance Computing, Networking, Storage, and Analysis (SC), vol.11, p.1993

S. G. Parker and C. R. Johnson, SCIRun: a scientific programming environment for computational steering, ACM/IEEE Conference on Supercomputing, pp.52-71, 1995.

R. Van-liere, D. Mulder, J. Van-wijk, and J. J. , Computational steering, Future Generation Computer Systems, v, vol.12, issue.5, pp.167-739, 1997.

J. Vetter and K. Schwan, Techniques for high-performance computational steering, IEEE Concurrency, vol.4, pp.1092-3063, 1999.

J. A. Kohl, T. Wilde, and D. E. Bernholdt, Cumulvs: Interacting with High-Performance Scientific Simulations, for Visualization, Steering and Fault Tolerance, The International Journal of High Performance Computing Applications, vol.20, pp.1094-3420, 2006.

S. Rathmayer and M. Lenke, A tool for on-line visualization and interactive steering of parallel HPC applications, International Parallel Processing Symposium, pp.181-186, 1997.

G. Eisenhauer and K. Schwan, An Object-based Infrastructure for Program Monitoring and Steering, Symposium on Parallel and Distributed Tools (SIGMETRICS), SPDT '98, pp.10-20, 1998.

J. Wood, K. Brodlie, and J. Walton, gViz-Visualization and Steering for the Grid, e-Science All Hands Meeting. Citeseer, 2003.

V. Mann, V. Matossian, R. Muralidhar, and M. Parashar, DIS-COVER: An environment for Web-based interaction and steering of high-performance scientific applications, Concurrency and Computation: Practice and Experience, pp.737-754, 2001.

C. Glasner, R. Hugl, B. Reitinger, D. Kranzlmuller, and J. Volk-ert, The Monitoring and Steering Environment, International Conference on Computational Science, pp.781-790, 2001.

K. Brodlie, A. Poon, H. Wright, L. Brankin, G. Banecki et al., GRASPARC: A Problem Solving Environment Integrating Computation and Visualization, Proceedings of the 4th Conference on Visualization '93, VIS '93, pp.102-109, 1993.

D. A. Reed, C. L. Elford, T. M. Madhyastha, E. Smirni, and S. E. Lamm, The Next Frontier: Interactive and Closed Loop Performance Steering, International Conference on Parallel Processing (ICPP) Workshops, pp.20-31, 1996.

B. Swift, A. Sorensen, H. Gardner, P. Davis, and V. Decyk, Live Programming in scientific simulation, Supercomputing Frontiers and Innovations: an International Journal, vol.3, pp.2409-6008, 2015.

T. Goodale, G. Allen, G. Lanfermann, J. Masso, T. Radke et al., The Cactus Framework and Toolkit: Design and Applications, Proceedings of the 5th International Conference on High Performance Computing for Computational Science, VEC-PAR'02, pp.197-227, 2003.

A. Esnard, N. Richart, and O. Coulaud, A Steering Environment for Online Parallel Visualization of Legacy Parallel Simulations, Tenth IEEE International Symposium on Distributed Simulation and Real-Time Applications, vol.10, pp.7-14, 2006.
URL : https://hal.archives-ouvertes.fr/hal-00301484

R. Haimes, Concurrent distributed visualization and solution steering, Parallel Computational Fluid Dynamics, pp.41-50, 1995.

J. Kress, D. Pugmire, S. Klasky, and H. Childs, Visualization and Analysis Requirements for in Situ Processing for a Large-scale Fusion Simulation Code, Proceedings of the 2Nd Workshop on In Situ Infrastructures for Enabling Extreme-scale Analysis and Visualization, ISAV '16, pp.45-50, 2016.

S. Figueira and S. Bui, CS_LITE: A lightweight computational steering system, International Conference on Parallel and Distributed Computing and Networks, pp.1-6, 2004.

. Lite_a_lightweight_computational_steering_system&gt;,

M. Parashar and C. A. Lee, Grid computing: introduction and overview, Proceedings of the IEEE, pp.479-484, 2005.

R. L. Ribler, J. S. Vetter, H. Simitci, and D. A. Reed, Autopilot: Adaptive control of distributed applications, International Symposium on High Performance Distributed Computing, pp.172-179, 1998.

H. Yi, M. Rasquin, J. Fang, and I. A. Bolotnov, In-situ visualization and computational steering for large-scale simulation of turbulent flows in complex geometries, IEEE International Conference on Big Data (Big Data), vol.10, p.2014

K. Ma, C. Wang, H. Yu, and A. Tikhonova, In-situ processing and visualization for ultrascale simulations, Journal of Physics: Conference Series, issue.1, pp.1742-6596, 2007.

K. Matkovic, D. Gracanin, M. Jelovic, and Y. Cao, Adaptive Interactive Multi-Resolution Computational Steering for Complex Engineering Systems. The Eurographics Association, 2011.

D. Butnaru, Computational steering with reduced complexity, 2013.

J. Knezevic, J. Frisch, R. Mundani, and E. Rank, Interactive computing framework for engineering applications, Journal of Computer Science, issue.5, p.591, 2011.

I. Wang, I. Taylor, T. Goodale, A. Harrison, and M. Shields, gridMonSteer: Generic Architecture for Monitoring and Steering Legacy Applications in Grid Environments, e-Science All Hands Meeting. e-Science All Hands Meeting, 2006.

S. Gridmonsteer_generic_architecture_for_monitoring_and_,

H. V. Jagadish, J. Gehrke, A. Labrinidis, Y. Papakonstantinou, J. M. Patel et al., Big data and its technical challenges, Communications of the ACM, v, vol.57, issue.7, p.10782, 2014.

J. M. Wozniak, T. G. Armstrong, M. Wilde, D. S. Katz, E. Lusk et al., Swift/T: Large-Scale Application Composition via Distributed-Memory Dataflow Processing, IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing (CCGrid), pp.95-102, 2013.

F. R. Duro, J. G. Blas, F. Isaila, J. M. Wozniak, J. Carretero et al., Flexible Data-Aware Scheduling for Workflows over an In-memory Object Store, IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing (CCGrid), vol.5, p.2016

B. P. Abbott, R. Abbott, and T. D. Abbott, GW170104: Observation of a 50-Solar-Mass Binary Black Hole Coalescence at Redshift 0.2, Physical Review Letters, vol.118, p.221101, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01645700

D. Gunter, E. Deelman, T. Samak, C. Brooks, M. Goode et al., Online workflow management and performance analysis with Stampede, Proceedings of the 7th International Conference on Network and Service Management (CNSM), vol.10, pp.1-10, 2011.

A. Jain, S. P. Ong, W. Chen, B. Medasani, X. Qu et al., FireWorks: a dynamic workflow system designed for high-throughput applications, Concurrency and Computation: Practice & Experience, vol.17, pp.1532-0634, 2015.

R. Souza, Controlling the Parallel Execution of Workflows Relying on a Distributed Database, 2015.

S. Reyes, C. Munoz-caro, A. Nino, R. Sirvent, and R. Badia, Monitoring and Steering Grid Applications with GRID Superscalar, pp.167-739, 2010.

K. Matkovic, D. Gracanin, R. Splechtna, M. Jelovic, B. Stehno et al., Visual analytics for complex engineering systems: Hybrid visual steering of simulation ensembles, IEEE transactions on visualization and computer graphics, pp.1803-1812, 2014.

G. Cordasco, R. De-chiara, F. Raia, V. Scarano, C. Spagn-uolo et al., Designing Computational Steering Facilities for Distributed Agent Based Simulations, ACM Conference on Principles of Advanced Discrete Simulation (SIGSIM), SIGSIM PADS '13, pp.385-390, 2013.

/. Doi,

I. Foster, M. Ainsworth, and B. Allen, Computing just what you need: online data analysis and reduction at extreme scales, European Conference on Parallel and Distributed Computing, pp.3-19, 2017.

T. Terraz, A. Ribes, Y. Fournier, B. Iooss, and B. Raffin, Melissa: large scale in transit sensitivity analysis avoiding intermediate files, International Conference on High Performance Computing, Networking, Storage and Analysis (SC), p.61, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01607479

S. Ingram, T. Munzner, V. Irvine, M. Tory, S. Bergner et al., Dimstiller: Workflows for dimensional analysis and reduction, IEEE Symposium on Visual Analytics Science and Technology (VAST), pp.3-10, 2010.

T. Jin, F. Zhang, Q. Sun, H. Bui, M. Parashar et al., Using cross-layer adaptations for dynamic data management in large scale coupled scientific workflows, International Conference on High Performance Computing, Networking, Storage and Analysis (SC), pp.1-12, 2013.

M. Garcia, J. Duque, P. Boulanger, and P. Figueroa, Computational steering of CFD simulations using a grid computing environment, International Journal on Interactive Design and Manufacturing, vol.8, issue.3, pp.235-245, 1955.

A. Spinuso, Active provenance for data intensive research, 2018.

Z. Zhang, E. R. Sparks, and M. J. Franklin, Diagnosing Machine Learning Pipelines with Fine-grained Lineage, International Symposium on High-Performance Parallel and Distributed Computing, HPDC '17, pp.143-153, 2017.

C. Re, D. Agrawal, M. Balazinska, M. Cafarella, M. Jordan et al., Machine Learning and Databases: The Sound of Things to Come or a Cacophony of Hype?, In: ACM International Conference on Management of Data (SIGMOD), SIGMOD '15, pp.978-979, 2015.

D. Xin, L. Ma, J. Liu, S. Macke, S. Song et al., Data Management for End-to-end Machine Learning (DEEM) Workshop co-located with the, ACM Special Interest Group on Management of Data (SIGMOD), 2018.

R. Souza, L. Azevedo, and V. Lourenço, Provenance Data in the Machine Learning Lifecycle in Computational Science and Engineering, Workflows in Support of Large-Scale Science (WORKS) workshop co-located with the ACM/IEEE International Conference for High Performance Computing, Networking, Storage, and Analysis (SC), 2019.
URL : https://hal.archives-ouvertes.fr/lirmm-02335500

J. F. Lofstead, S. Klasky, K. Schwan, N. Podhorszki, and C. Jin, Flexible IO and integration for scientific codes through the adaptable IO system (ADIOS), Proceedings of the 6th International Workshop on Challenges of Large Applications in Distributed Environments (CLADE '08), pp.978-979, 2008.

M. Dreher, T. Peterka, and . Decaf, Decoupled dataflows for in situ highperformance workflows, Argonne National Lab.(ANL), 2017.

D. Abramson, C. Enticott, and I. Altinas, Nimrod/K: towards massively parallel dynamic grid workflows, International Conference on High Performance Computing, Networking, Storage and Analysis (SC), pp.978-979, 2008.

. Vistrails, VisTrails, 2014.

H. A. Nguyen, D. Abramson, T. Kiporous, A. Janke, and G. Gal-loway, WorkWays: interacting with scientific workflows, Gateway Computing Environments Workshop, GCE '14, vol.6, pp.21-24, 2014.

D. Hart and E. Kraemer, Consistency Considerations in the Interactive Steering of Computations, International Journal of Parallel and Distributed Systems and Networks, issue.2, pp.171-179, 1999.

, GitHub epository for RealityGrid Computational Steering Tools, 2019.

J. Han, R. Haines, A. Salhli, J. M. Brooke, B. D&apos;amora et al., Virtual science on the move: Interactive access to simulations on supercomputers, 2014 IEEE 25th International Conference on Application-Specific Systems, Architectures and Processors, vol.6, p.2014, 2014.

J. Dias, E. Ogasawara, D. De-oliveira, F. Porto, A. L. Coutinho et al., Supporting Dynamic Parameter Sweep in Adaptive and User-steered Workflow, Workflows in Support of Large-Scale Science (WORKS) workshop co-located with the ACM/IEEE International Conference for High Performance Computing, Networking, Storage, and Analysis (SC), WORKS '11, pp.31-36, 2011.

B. Silva, M. A. Netto, and R. L. Cunha, JobPruner: A machine learning assistant for exploring parameter spaces in HPC applications, Future Generation Computer Systems, vol.83, pp.167-739, 2018.

K. A. Ocana, D. D. Oliveira, E. Ogasawara, A. M. Davila, A. A. Lima et al., SciPhy: A Cloud-Based Workflow for Phylogenetic Analysis of Drug Targets in Protozoan Genomes, Brazilian Symposium on Bioinformatics, pp.978-981, 2011.

. Github, Available at: <https: //github.com/hpcdb/DfAdapter>, 2019.

I. Raicu, I. T. Foster, and Y. Zhao, Many-task computing for grids and supercomputers, Workshop on Many-task Computing on Grids and Supercomputers (MTAGS), pp.1-11, 2008.

M. T. Ozsu and P. Valduriez, , 2011.

. Github, libMesh-sedimentation Workflow GitHub Repository, 2019.

F. De-rooij and S. B. Dalziel, Time-and space-resolved measurements of deposition under turbidity currents, Particulate Gravity Currents, pp.207-215, 2001.