Research Scientist, Reinforcement Learning; LLM and Post-training
Listed on 2026-07-06
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Research/Development
AI Business & Operations
What You Do at AMD
At AMD, our mission is to build great products that accelerate next‑generation computing experiences—from AI and data centers to PCs, gaming, and embedded systems. Grounded in a culture of innovation and collaboration, we believe real progress comes from bold ideas, human ingenuity, and a shared passion to create something extraordinary. When you join AMD, you’ll discover the real differentiator is our culture.
We push the limits of innovation to solve the world’s most important challenges—striving for execution excellence, while being direct, humble, collaborative, and inclusive of diverse perspectives. Join us as we shape the future of AI and beyond. Together, we advance your career.
We are hiring a Lead AI Research Scientist, Reinforcement Learning (LLM) and Post‑Training, specializing in reinforcement learning to advance post‑training and interactive learning for large generative models applied to demanding engineering and hardware‑adjacent tasks (code, optimization, tool use, and long‑horizon decision‑making). You will invent and analyze RL algorithms—policy optimization, preference‑based methods, exploration, credit assignment, and reward modeling—run rigorous empirical studies, and partner with infra and product teams to land methods that improve measurable task success without sacrificing stability or safety.
The PersonYou publish and ship. You are fluent in both RL theory and the practical path from ablation to production‑scale training. You care about reward misspecification, variance reduction, and evaluation that reflects real constraints—not only toy environments.
Key Responsibilities- Research and develop RL methods for post‑training LLMs and code models on structured engineering tasks with verifiable or preference‑based feedback.
- Design reward models, curricula, and off‑policy or on‑policy training recipes suited to sparse, noisy, or expensive labels from experts and simulators.
- Characterize failure modes (reward hacking, degenerate policies, instability) and propose mitigations grounded in experiments.
- Collaborate with RL infra engineers to scale training; define interfaces for rollout generation, logging, and reproducibility.
- Publish at top venues (e.g., NeurIPS, ICML, ICLR) and contribute internal technical leadership on the RL roadmap.
- Strong publication record in reinforcement learning or closely related machine learning areas.
- Hands‑on experience training RL or preference‑optimized models at non‑trivial scale (GPUs, distributed jobs).
- Experience with LLM post‑training, RLHF/RLAIF, or policy optimization for language or code agents.
- Familiarity with compilers, kernels, EDA‑style workflows, or large‑scale codebases is a plus.
- Ph.D. in Computer Science, Machine Learning, or related field strongly preferred.
Benefits offered are described on the AMD benefits page.
Equal Opportunity StatementAMD does not accept unsolicited resumes from headhunters, recruitment agencies, or fee‑based recruitment services. AMD and its subsidiaries are equal‑opportunity, inclusive employers and will consider all applicants without regard to age, ancestry, color, marital status, medical condition, mental or physical disability, national origin, race, religion, political and/or third‑party affiliation, sex, pregnancy, sexual orientation, gender identity, military or veteran status, or any other characteristic protected by law.
We encourage applications from all qualified candidates and will accommodate applicants’ needs under the respective laws throughout all stages of the recruitment and selection process. AMD may use Artificial Intelligence to help screen, assess or select applicants for this position. AMD’s “Responsible AI Policy” is available. This posting is for an existing vacancy.
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