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Machine Learning for Rydberg-Based Quantum Simulators internship - W/M

🇫🇷 France

TensorFlow

Logistics

Python

Machine Learning

Internship

Machine Learning for Rydberg-Based Quantum Simulators internship - W/M

from 🇫🇷 France

About the team

The Quantum material department at Pasqal develop hybrid quantum classical algorithms with applications in material science and quantum many-body physics and that can be run on Pasqal neutral atom quantum processing units.

We are offering an internship position to work on a project involving the application of machine learning (ML) techniques to datasets generated by Rydberg quantum simulators. The goal is to develop hybrid quantum-classical approaches that combine classical ML methods with data from quantum simulators to help overcome current challenges in quantum simulations. Examples of concrete applications include finding ground states of many-body quantum Hamiltonians describing realistic magnetic materials or simulating their quantum dynamics.

Mission

  • Develop and train Neural Quantum States (NQS + VMC), with pretraining of the NQS on QPU-generated datasets.

  • Benchmark this approach against established numerical methods (e.g., exact diagonalization, standard VMC, tensor networks) and against raw QPU data.

  • Apply NQS to represent observables and many-body wave functions of magnetic Hamiltonians.

  • Contribute to internal tools and publications.

What we offer

  • Hands-on experience with Pasqal’s analog QPU and emulator stack used to model such devices.

  • The opportunity to learn important aspects of Pasqal’s quantum hardware.

  • Mentorship from a multidisciplinary team (quantum many-body physics, machine learning, materials science).

Required Qualifications

Hard Skills

  • Master or PhD student in quantum many-body physics.

  • Proficiency in one or more programming languages such as Python or Julia.

  • Demonstrated experience with machine learning methods applied to quantum many-body systems (e.g., neural quantum states, supervised and unsupervised ML, kernel methods)

Nice to Have

  • Experience with numerical methods for quantum spin systems (e.g., exact diagonalization and variational Monte Carlo)

  • Familiarity with scientific computing frameworks (e.g., JAX, PyTorch, TensorFlow)

  • Experience working with high-performance computing (HPC) environments.

Soft Skills

  • Ability to work collaboratively in a research team.

  • Strong communication skills in English.

Logistics

  • Duration: 6 months

  • Expected starting date: second semester of 2026

  • Location: Massy (France)

by @maxrusakovic