Company Description
IDEADED is a Spanish deep-tech company with over 10 years of experience developing next-generation semiconductor technologies. We combine advanced research, design innovation, and process engineering to create solutions that go beyond traditional silicon and support Europe’s technological sovereignty.
Driven by scientific excellence and industrial impact, IDEADED is building a more sustainable and competitive microelectronics ecosystem.
This is a full-time, on-site position for a highly motivated Quantum Control Scientist to contribute to cutting-edge research in optimal quantum control for quantum computing, simulation, and precision measurement.
This position is ideal for candidates who have completed a PhD and are eager to deepen their expertise in quantum technologies through collaborative and interdisciplinary research.
As Quantum Control Scientist, you will work alongside theorists and experimentalists to develop and apply theoretical and computational methods for designing and optimizing quantum operations to advance research in optimal quantum control.
Contribute to the development of theoretical and computational tools for optimal quantum control.
Assist in the design and stabilization of quantum operations using Hamiltonian engineering and quantum error correction/mitigation.
Collaborate with experimental teams to implement and test control protocols.
Explore machine‑learning‑based control strategies, such as reinforcement learning and Bayesian optimization.
Stay engaged with the broader quantum control community through literature and scientific events.
PhD in Physics or a related field, with a focus on quantum control, quantum computing, or quantum information science.
i) optimal quantum control theory, focusing on the precise manipulation of quantum systems for high-fidelity gate design and robust quantum operations;
(ii) in error mitigation and quantum error correction through control-based strategies that enhance performance and scalability;
(iii) in advancednumerical optimization techniques, such as: (a) Linear and nonlinear programming for constrained optimization of control fields, (b) Gradient-based algorithms (e.G., GRAPE, Krotov, CRAB, automatic differentiation methods), (c) Stochastic and evolutionary algorithms for high-dimensional or noisy landscapes, or (d) Model-predictive and real-time feedback control strategies. (iv) in machine learning approaches to quantum control, including: (a) Reinforcement learning for adaptive pulse design and calibration and (b) Bayesian optimization and neural-network-assisted control for robust parameter tuning.
Nice to have : exposure to Hamiltonian simulation or quantum many-body systems, familiarity with cold-atom platforms, and/or experience in integrating quantum algorithms with control strategies for near-term devices.