Postdoctoral Fellow in the DeepWave Consortium

Updated: 4 months ago

The DeepWave industry funded consortium is looking for an outstanding postdoctoral researcher to undertake impactful research on the development and application of cutting-edge machine (deep) learning numerical methods for wave-equation-based processing, imaging, and inversion.

Wave phenomena are ubiquitous in science, and they extend to objectives ranging from global Earth discovery, to natural resources exploration, to subsurface monitoring, as well as nondestructive testing and medical imaging. However, our current ability to create detailed images of the interior of such bodies from remote measurements and accurately invert for physical properties often lacks the accuracy and resolution we seek for making informed decisions. Both shortcomings are usually attributed to the limitations in our measurements and in the underlying physical models. Machine learning (ML) techniques can be exploited to identify common patterns in the data and augment the physical laws of wave propagation, leading in turn to improvements accuracy and resolution.

The selected candidate will join the research groups of Prof. Tariq Alkalifah and Prof. Matteo Ravasi , within the Earth Science and Engineering (ErSE) school at King Abdullah University of Science and Technology (KAUST), Saudi Arabia. The candidate will be expected to develop novel methodologies, validate their effectiveness on field data, and contribute to scaling them to real-life problems in one or more of the following topics: (i) ML-assisted subsurface characterization and monitoring; (ii) Closing the gap between training and testing data; (iii) Physics-driven machine learning for geophysical modelling and inversion; and (iv) By-products of the AI revolution. Further details can be found at https://deepwave.kaust.edu.sa/research. Thus, the candidate is expected to have or about to have a PhD in a relevant topic, that includes geophysics, mathematics, physics, computer science or any related topics with a track record in relevant applications (processing, imaging and inversion).

In addition to initiating, developing, and delivering high-quality research, collaborate with students, the candidate will be expected to publish in leading peer-reviewed journals, present at international conferences, and contribute to improving the quality and efficiency of the consortium code base. Preference will be given to candidates with a strong publication record and proven experience in Python programming, source code versioning and management, machine and deep learning, as well as a solid understanding of wave phenomena and geophysical data analysis and imaging.



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