Principal AI Research Scientist Post-Training · Alignment · Reinforcement Learning Autodesk AI Lab: London · San Francisco · Toronto · Remote (US/CA/EU
Autodesk · New York, United States · 5 days ago
RemoteRemoteEngineeringFull-time
Resposibilities
- Post-training for model development — from RLHF and preference optimization to agentic systems and long-horizon reasoning
- Develop novel algorithms that improve model reliability, controllability, and alignment
- Make principled architectural decisions about when to address challenges at the pre-training, post-training, or system level
- Design and run experiments that shape model behavior, robustness, and reasoning quality
- Partner with infrastructure teams to build scalable, reproducible post-training workflows
- Contribute to publications, patents, and Autodesk's external research visibility
- Design evaluation frameworks for long-horizon reasoning, tool use, agentic behavior, safety, and real-world workflow completion
- Drive human-in-the-loop evaluation with high annotation quality and sound scientific methodology
- Establish model readiness criteria and provide go/no-go recommendations for releases
- Communicate technical risks, limitations, and trade-offs clearly to leadership
Minimum Requirements
- Deep hands-on expertise in reinforcement learning for foundation models, and fluency with post-training methods (RLHF, RLAIF, DPO, PPO, or adjacent approaches)
- Proven experience leading or mentoring technical research teams — whether in an academic lab, AI research organization, or industry setting
- Strong intuition for model behavior, alignment challenges, and post-training trade-offs
- Experience designing evaluation systems and thinking rigorously about what it means for a model to be ready
- Absence of any legal restrictions preventing employment