Full-timeResearch

Aleph Alpha

Senior AI Researcher- Reinforcement learning (f/m/d)

Heidelberg

Posted

4mo ago

Type

Full-time

Location

Heidelberg

Job Overview

Our Mission Aleph Alpha is one of the few companies in Europe with end-to-end in-house model development including pre- and post-training. We’re building models that have general-purpose capabilities, but also specifically excel at addressing the needs of our customers. We're growing our post-training team in Heidelberg (or hybrid in Germany) and are looking for an AI Researcher who combines a deep theoretical understanding of reinforcement learning methods with a desire to improve on the state of the art and improve model capabilities in large-scale training. Team Culture At Aleph Alpha, we foster a culture built on ownership, autonomy, and empowerment. Teams and individual contributors are trusted to take responsibility for their work and drive meaningful impact. We maintain a flat organizational structure with efficient, supportive management that enables quick decision‑making, open communication, and a strong sense of shared purpose. About the role As a Senior AI Researcher for reinforcement learning you will shape and improve the underlying RL methodology, maintain a high-quality training code-base, and conduct large-scale experiments to hill-climb our performance benchmarks. This role is for you if you both have a strong theoretical background on RL and the engineering drive to bring these methods into production and improve on the methods as part of the reinforcement learning team. In your day-to-day you will conduct large-scale reinforcement learning experiments, derive hypotheses from the results, and iterate on both the implementation and methodology based on the observations. Together with a collaborative team, you will have direct impact on the models that we ship to our customers. This role is for Aleph Alpha Research GmbH. Your Responsibilities • Hill-climb in large-scale training: Conduct large-scale LLM training runs, analyze evaluation scores in depth, propose hypotheses for improvement and directly implement them in order to maximize performance on our benchmarks. • Theoretical innovation: Stay at the bleeding edge of RL research. You will identify, implement, and iterate on novel approaches to multi-turn reinforcement learning. • Scale our training infrastructure: Identify bottlenecks in our training setup and optimize our RL training loops for large-scale training. • Cross-functional collaboration: Partner with our other post-training teams to turn raw feedback into actionable training signals, ensuring that our RL iterations lead to measurable improvements in downstream performance. Your Profile Basic Qualifications • A deep understanding of Reinforcement Learning theory and how it relates to modern RL methods. • Experience with multi-node LLM training (ideally using RL). You understand how to scale multi-node RL trainings and can reason about and implement distributed algorithms. • Familiarity with statistical methods for evaluation and experiment design. • Ability to reason about what an evaluation/environment measures and whether it matters - not just run benchmarks, but understand them. • Strong Python skills and comfort with ML tooling (especially torch distributed) • Willingness to relocate to Heidelberg or travel regularly (potentially weekly). Preferred Qualifications • PhD in reinforcement learning or equivalent research experience. • A history of contributions to top-tier venues (NeurIPS, ICML, ICLR, etc.) specifically regarding RL. • Experience evaluating LLM models and crafting environments for training. Compensation and Benefits • Become part of an AI revolution! • 30 days of paid vacation • Access to a variety of fitness & wellness offerings via Wellhub • Mental health support through nilo.health • Substantially subsidized company pension plan for your future security • Subsidized Germany-wide transportation ticket • Budget for additional technical equipment • Flexible working hours for better work-life balance and hybrid working model • Virtual Stock Option Plan • JobRad® Bike Lease

Core Requirements

Research