Machine Learning for Rydberg-Based Quantum Simulators internship - H/F

Pasqal

Pasqal

Software Engineering, Data Science

Route de Palaiseau Massy, France

Posted on May 30, 2026
Software · Massy, France · Hybride

Machine Learning for Rydberg-Based Quantum Simulators internship - H/F

Pasqal designs and develops QPUs and associated software tools. Our innovative technology enables us to address use cases that are currently beyond the reach of most powerful supercomputers.

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)

Département
Software
Poste
Quantum Materials
Localisations
Massy, France
Statut à distance
Hybride
Type de contrat
Stage
Département
Algorithms & Use Cases
Équipe
Quantum Software
Ancienneté
Intern

À propos de Pasqal

Join Pasqal and be part of something extraordinary.

By joining Pasqal, you’ll have the opportunity to play an active role in the rapid growth of a pioneering DeepTech scale-up at the forefront of the second quantum revolution.

You’ll be directly involved in one of the greatest technological challenges of our time—one that is set to shape the technological landscape of the 21st century.

Working alongside world-class scientists and engineers, you’ll compete head-to-head with leading global players while pushing the boundaries of quantum innovation.

Fondé en 2019
Collègues about 300
Software · Massy, France · Hybride

Machine Learning for Rydberg-Based Quantum Simulators internship - H/F

Pasqal designs and develops QPUs and associated software tools. Our innovative technology enables us to address use cases that are currently beyond the reach of most powerful supercomputers.