Junior Research Scientist - Machine Learning for Decision Making and Optimization F/M
Role details
Job location
Tech stack
Job description
The Optimization with Learning team at NAVER LABS Europe conducts research at the intersection of machine learning and mathematical optimization, with a focus on sequential decision making, combinatorial optimization, and multi-agent coordination. Our work is motivated by challenging real-world robotics problems, in particular large-scale robot fleet coordination tasks in uncertain and dynamic environments. Our goal is to develop principled learning-based approaches for sequential decision making and combinatorial optimization that generalize beyond a single application and advance the broader research field. Through close collaborations with robotics teams across NAVER LABS, researchers have the opportunity to connect fundamental research questions with real operational problems. This creates a unique environment to pursue ambitious research directions, publish in leading conferences, and contribute to emerging AI-driven robotics systems., We're looking for early-career researchers and recent PhD graduates to join the team and contribute to the following research activities:
- Conduct research on machine learning approaches for sequential decision making and combinatorial optimization.
- Develop new models and algorithms, for example using deep reinforcement learning, graph neural networks, or other learning-based optimization techniques.
- Design and implement prototypes and proof-of-concept systems to evaluate new ideas and algorithmic approaches.
- Run and analyze large-scale experiments in simulation and realistic problem settings inspired by real robotic systems.
- Collaborate with researchers and engineers across NAVER LABS to transfer and demonstrate developed approaches on real robotic systems.
- Contribute to publications in leading conferences and journals in machine learning, artificial intelligence, optimization, and robotics.
Requirements
- PhD in machine learning, optimization, operations research, robotics, computer science, or a related field.
- Strong background in machine learning and/or sequential decision making.
- Excellent programming skills in Python, and experience with deep learning frameworks such as PyTorch.
- Experience in designing, implementing, and evaluating machine learning models.
- Strong interest in research problems related to decision making, combinatorial optimization, or multi-agent systems.
- Ability to work collaboratively in multidisciplinary research environments., * Experience with deep reinforcement learning, in particular multi-agent reinforcement learning.
- Experience with machine learning for structured data, such as graph neural networks or related approaches.
- Experience with combinatorial optimization, neural combinatorial optimization, or learning-augmented optimization methods.
- Publications in leading conferences in machine learning, artificial intelligence, optimization, or robotics (e.g., NeurIPS, ICLR, ICML, AAAI, IROS, ICRA).
- Experience with large-scale experiments, simulation environments, or real-world-inspired problem settings.
- Interest in connecting machine learning research with real-world applications, in particular in robotics systems.
Benefits & conditions
The team regularly publishes in leading AI and robotics conferences. Recent publications include:
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Learning to Solve the Multi-Agent Task Assignment Problem for Automated Data Centers - IROS 2025
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GOAL: a Generalist Combinatorial Optimization Agent Learner - ICLR 2025
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Multi-Agent Path Finding with Real Robot Dynamics and Interdependent Tasks for Automated Warehouses - ECAI 2024
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BQ-NCO: Bisimulation Quotienting for Efficient Neural Combinatorial Optimization - NeurIPS 2023
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We foster a collaborative environment dedicated to ambitious, multidisciplinary projects that translate advanced research into impactful, real-world solutions, supported by 30+ years of experience in AI and related fields.
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Flexible work/life balance.
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We are an equal opportunity employer that hires based on skills, experience, and merit. We foster an inclusive and diverse workplace where all qualified candidates are considered fairly, regardless of background.
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We're based in Meylan, close to Grenoble, a city that offers the perfect balance of urban life, cutting-edge research and technology, and spectacular mountain landscapes that provide countless opportunities to relax, recharge, and enjoy the outdoors.