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Francesco Sorrentino

1 week ago

Postdoctoral Position in Reservoir Computing, Machine Learning, and Nonlinear Dynamics (Mechanical Engineering) University of New Mexico in United States

Degree Level

Postdoc

Field of study

Computer Science

Funding

The position is a 1-year postdoctoral appointment, renewable subject to performance and funding. The post offers the opportunity to lead research at the intersection of neuroscience, physics, and machine learning, with access to advanced computational and experimental facilities at the University of New Mexico. No specific stipend amount or tuition coverage is mentioned.

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Country

United States

University

University of New Mexico

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Where to contact

Official Email

Keywords

Computer Science
Signal Processing
Mechanical Engineering
Nonlinear Dynamics
Neuropsychology
Analog Electronics
Physics
cognitive neuroscience
Machine learning

About this position

The University of New Mexico is seeking a motivated Postdoctoral Researcher to join Professor Francesco Sorrentino’s research group in the Department of Mechanical Engineering. The research focuses on reservoir computing, machine learning, and nonlinear dynamics, with a special emphasis on developing highly personalized digital twins of the autistic brain. The project leverages advanced reservoir computing (RC) methods, which offer efficient training and are well-suited for analog hardware implementation, enabling fast, low-power computation platforms.

Key research areas include the design and validation of RC architectures with temporal heterogeneity, exploration of critical-like regimes for robustness, noise mitigation strategies for neuroimaging data, and analog hardware implementation using devices such as optical chips, memristors, and nano-oscillators. The interdisciplinary nature of the project connects neuroscience, physics, and engineering, providing a unique opportunity for postdoctoral researchers interested in computational neuroscience, signal processing, and machine learning.

Applicants should hold a PhD in Engineering, Physics, Computer Science, Computational Neuroscience, or a related field. Required expertise includes machine learning, nonlinear dynamics, time-series analysis, or signal processing. Familiarity with reservoir computing, noise filtering, or analog computational hardware is highly desirable. Candidates should be proficient in scientific computing languages (Python, MATLAB, Julia, C++), able to work independently and collaboratively, and ideally have a track record of publications in relevant domains.

The position is a 1-year postdoctoral appointment, renewable based on performance and funding. The successful candidate will have access to UNM’s advanced computational and experimental facilities, with support for career development and professional training. To apply, candidates should submit a cover letter, CV (including publications), and contact details for two referees to Professor Sorrentino at [email protected]. Applications will be reviewed on a rolling basis until the position is filled.

This opportunity is ideal for researchers interested in the intersection of reservoir computing, machine learning, nonlinear dynamics, and digital twin neuroscience, and offers a collaborative environment at a leading US research institution.

Funding details

The position is a 1-year postdoctoral appointment, renewable subject to performance and funding. The post offers the opportunity to lead research at the intersection of neuroscience, physics, and machine learning, with access to advanced computational and experimental facilities at the University of New Mexico. No specific stipend amount or tuition coverage is mentioned.

What's required

Applicants must have a PhD in Engineering, Physics, Computer Science, Computational Neuroscience, or related fields. Strong expertise in machine learning, nonlinear dynamics, time-series analysis, or signal processing is required. Familiarity with reservoir computing, noise filtering, or analog computational hardware is highly desirable. Candidates should be proficient in scientific computing (e.g., Python, MATLAB, Julia, C++), able to work independently and in interdisciplinary teams, and a track record of publications in relevant domains is a plus.

How to apply

Submit a cover letter, CV (including publications), and contact details for two referees as a PDF to [email protected]. Review of applications will begin immediately and continue until the position is filled.

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