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Google DeepMind · Mountain View
Research Scientist, Gemini Safety
3/13/2026
Description
Artificial Intelligence could be one of humanity’s most useful inventions. At Google DeepMind, we’re a team of scientists, engineers, machine learning experts and more, working together to advance the state of the art in artificial intelligence. We use our technologies for widespread public benefit and scientific discovery, and collaborate with others on critical challenges, ensuring safety and ethics are the highest priority.
The Gemini Safety team is accountable for the safety and fairness behavior of GDM’s latest Gemini models. The role of the Research Scientist / Research Engineer will be to apply and develop data and algorithmic cutting edge solutions to advance GDM’s latest user-facing models. The workstyle is fast paced, and highly collaborative. The team has a strong culture of support, dedication and collaboration.
We’re looking for a versatile Research Scientist at ease both with figuring out how to approach new research questions, and the technical implementation of research ideas. Our team focuses on advancing the safety and fairness behavior of state of the art AI models. We drive the development of the foundational technology adopted by numerous product areas including Gemini App, Cloud API, and Search.
Key responsibilities:
Post-training / instruction tuning state of the art LLMs, focusing on text-to-text, image/video/audio-to-text modalities and agentic capabilities
Exploring data, reasoning and algorithmic solutions to make sure Gemini Models are safe, maximally helpful, and work for everyone.
Improve Gemini’s adversarial robustness, with a focus on high-stakes abuse risks.
Design and maintain high quality evaluation protocols to assess model behavior gaps and headroom related to safety and fairness.
Develop and execute experimental plans to address known gaps, or construct entirely new capabilities
Drive innovation and enhance understanding of Supervised Fine Tuning and Reinforcement Learning fine-tuning at scale
Qualifications
PhD in Computer Science, a related field, or equivalent practical experience.
Significant LLM post-training experience
Nice to have
Experience in Reward modeling and Reinforcement Learning for LLMs Instruction tuning
Experience with Long-range Reinforcement learning
Experience in areas such as Safety, Fairness and Alignment
Track record of publications at NeurIPS, ICLR, ICML, RL/DL, EMNLP, AAAI, UAI
Experience taking research from concept to product
Experience with collaborating or leading an applied research project