U. Rüde, K. Willcox, L. C. Mcinnes, H. D. Sterck, G. Biros et al.,

V. Krause, S. Kumar, J. Mayer, K. M. Meza, J. T. Mørken et al., Research and Education in Computational Science and Engineering, 2016.

A. C. Bauer, H. Abbasi, J. Ahrens, H. Childs, B. Geveci et al., Situ Methods, Infrastructures, and Applications on High Performance Computing Platforms, vol.35, pp.577-597, 2016.

V. Silva, D. Oliveira, P. Valduriez, and M. Mattoso, DfAnalyzer: Runtime Dataflow Analysis of Scientific Applications using Provenance, 2018.
URL : https://hal.archives-ouvertes.fr/lirmm-01867887

J. Freire, D. Koop, E. Santos, and C. T. Silva, Provenance for Computational Tasks: A Survey, Computing in Science and Engineering, vol.10, pp.11-21, 2008.

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

V. Silva, J. Leite, J. Camata, D. Oliveira, A. L. Coutinho et al., Raw Data Queries during Dataintensive Parallel Workflow Execution, Special Issue on Workflows for Data-Driven Research in the Future Generation, Computer Systems Journal, 2017.

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.23-31, 2018.
URL : https://hal.archives-ouvertes.fr/lirmm-01620127

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.22, pp.237-254, 2006.

V. Silva, R. Souza, J. Camata, D. Oliveira, A. L. Coutinho et al., Capturing Provenance for Runtime Data Analysis in Computational Science and Engineering Applications, International Provenance and Annotation Workshop (IPAW), 2018.

M. Alnaes, J. Blechta, J. Hake, A. Johansson, B. Kehlet et al., Archive Of Numerical Software, Archive of Numerical Software: The FEniCS Project Version 1, 2015.

J. Liu, E. Pacitti, P. Valduriez, and M. Mattoso, A Survey of Data-Intensive Scientific Workflow Management, Journal of Grid Computing, vol.13, pp.457-493, 2015.
URL : https://hal.archives-ouvertes.fr/lirmm-01144760

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.10, pp.1841-1844, 2017.

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.44, pp.103-121, 2018.

S. Scaling and . To, Big Provenance, 8th USENIX Workshop on the Theory and Practice of Provenance, vol.16, 2016.

Q. Liu, J. Logan, Y. Tian, H. Abbasi, N. Podhorszki et al., Hello ADIOS: the challenges and lessons of developing leadership class I/O frameworks, Concurrency and Computation: Practice and Experience, vol.26, pp.1453-1473, 2014.

K. Wu, S. Ahern, E. W. Bethel, J. Chen, H. Childs et al., FastBit: interactively searching massive data, Journal of Physics: Conference Series, vol.180, p.12053, 2009.

I. Alagiannis, R. Borovica-gajic, M. Branco, S. Idreos, and A. Ailamaki, NoDB: efficient query execution on raw data files, Communications of the ACM, vol.58, pp.112-121, 2015.

V. Silva, D. Oliveira, P. Valduriez, and M. Mattoso, Analyzing related raw data files through dataflows, CCPE, vol.28, pp.2528-2545, 2016.
URL : https://hal.archives-ouvertes.fr/lirmm-01181231

S. B. Davidson and J. Freire, Provenance and Scientific Workflows: Challenges and Opportunities, pp.1345-1350, 2008.

V. Silva, J. Camata, D. Oliveira, A. L. Coutinho, P. Valduriez et al., Situ Data Steering on Sedimentation Simulation with Provenance Data, 2016.
URL : https://hal.archives-ouvertes.fr/lirmm-01400532

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

, IDEAS