Senior Staff Research Scientist, Reinforcement Learning
About CentificCentific is a frontier AI data foundry that curates diverse, high-quality data, using our purpose-built technology platforms to empower the Magnificent Seven and our enterprise clients with safe, scalable AI deployment. Our team includes more than 150 PhDs and data scientists, along with more than 4,000 AI practitioners and engineers. We harness the power of an integrated solution ecosystem-comprising industry-leading partnerships and 1.8 million vertical domain experts in more than 230 markets-to create contextual, multilingual, pre-trained datasets; fine-tuned, industry-specific LLMs; and RAG pipelines supported by vector databases. Our zero-distance innovation solutions for GenAI can reduce GenAI costs by up to 80% and bring solutions to market 50% faster.Our mission is to bridge the gap between AI creators and industry leaders by bringing best practices in GenAI to unicorn innovators and enterprise customers. We aim to help these organizations unlock significant business value by deploying GenAI at scale, helping to ensure they stay at the forefront of technological advancement and maintain a competitive edge in their respective markets.About JobWhat You'll DoDesign simulation environments and digital twins for enterprise workflowsPost-train LLM agents using RLHF, DPO, GRPO, PPO, and emerging methodsBuild pipelines that convert human-labeled traces and verifiable signals into training dataArchitect multi-turn, tool-using agents with closed learning loopsDesign reward functions and verifiers that resist reward hacking and reflect real task outcomesSet the technical bar across the team - architecture, code review, engineering standardsMentor researchers and engineers; drive technical direction through influenceTranslate research into production; contribute to publicationsRequired QualificationsExperience & Education7+ years in ML/AI research or engineering; 3+ years at senior/staff levelMS or PhD in Computer Science, Machine Learning, or related field (or equivalent)5+ years hands-on RL - environment design, reward engineering, policy optimization - with at least one production deploymentLLM Post-Training3+ years fine-tuning LLMs with hands-on RL post-training (RLHF, DPO, GRPO, PPO)Expert-level implementation of RLHF pipelines, reward modeling (Bradley-Terry), DPO, and KTOWorking knowledge of modern post-training and rollout-serving libraries (TRL, veRL, OpenRLHF, SkyRL)Agent Engineering* Experience building LLM-based agents: tool use, multi-turn reasoning, trajectory evaluation* Strong Python and software engineering skills - comfortable building production pipelines, not just notebooksRL Foundations* Deep expertise in MDPs, policy gradient methods (PPO, SAC), and temporal difference learning* Hands-on experience with Gymnasium-based environments and reward engineering (sparse vs. dense)Preferred QualificationsPublications at NeurIPS, ICML, ICLR, ACL, COLM, or similar venuesOpen-source contributions to post-training or agent frameworks (TRL, veRL, OpenRLHF, SkyRL)Experience with Offline RL (CQL, IQL), Model-based RL / World Models, or Hierarchical RLBackground in synthetic data generation, simulation, or world modelsDomain experience in healthcare, finance, logistics, or complianceDistributed training on GPU clustersWhy Join CentificLead the frontier. Shape a new discipline at the intersection of post-training, simulation, and enterprise AI.Ship your science. See your research power real systems across healthcare, finance, and safety-critical operations.Collaborate with leaders. Work alongside NVIDIA, Microsoft, and the global AI community.Build what matters. Create governed, compliant AI systems enterprises can actually trust.How to ApplySend your CV, a description of a technically complex system you personally built or led, and (if applicable) your publication list or open-source contributions to:diana.moeck@centific.comSubject: Senior Staff Research Scientist - RL$250k-$300k +Centific is an equal-opportunity employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, national origin, ancestry, citizenship status, age, mental or physical disability, medical condition, sex (including pregnancy), gender identity or expression, sexual orientation, marital status, familial status, veteran status, or any other characteristic protected by applicable law. We consider qualified applicants regardless of criminal histories, consistent with legal requirements.