Cambridge Residency Programme: AI Researcher in Interactive Generative AI Systems

Microsoft Microsoft · Big Tech · Cambridge, MA, United Kingdom +1 · Research Sciences

Research role focusing on multimodal generative AI systems for interactive environments, involving development of novel AI systems, agentic workflows, and training/evaluation pipelines. Requires a Master's or PhD and research experience in deep learning, generative models, and multi-modal modelling or AI systems for multi-step interaction. Emphasis on publishing research papers and contributing to product transfers.

What you'd actually do

  1. As a part of the team, you will be working with world-class researchers, engineers and design experts, to create novel generative AI models and capabilities that support creative processes.
  2. Collaborate to implement and evaluate new approaches, both conceptual and practical, within existing or new emerging cross-company collaborations.
  3. Contribute to the team’s goals by generating novel ideas, implementing prototypes, running experiments, utilizing multi-node GPU infrastructure, and rigorously evaluating all ideas with an open mindset.
  4. Design efficient experimentation workflows to accelerate research iteration across the team.
  5. Share knowledge and learn from others, participating in design decisions, presenting your ideas, doing pair programming, reviewing code, etc.

Skills

Required

  • Master’s or PhD degree in Artificial Intelligence, Computer Vision, Machine Learning, Natural Language Processing, or a related field, OR equivalent experience.
  • Research experience in deep learning, including understanding state-of-the-art model architectures, data pipelines, and methods of evaluation.
  • Research experience in at least one of the following or related areas: Generative models (video and world models, diffusion, autoregressive models, controllability), multi-modal modelling, training and fine-tuning large multimodal models or AI systems for multi-step interaction, such as agentic workflows, orchestration, tool-using systems, memory, or adaptive workflows
  • Hands-on knowledge of deep-learning frameworks, with strong software engineering practices and a commitment to writing clean, maintainable and well-tested code.
  • Experience publishing academic papers and/or demonstrated impact through ML research tooling or open-source contributions.

Nice to have

  • Experience scaling deep learning workloads to maximise responsible utilization of multi-node GPU clusters.
  • Experience designing or implementing AI workflows, such as automated training, evaluation, or experimentation pipelines
  • Familiarity with game engines or creative AI tooling and/or experience applying AI in interactive settings

What the JD emphasized

  • publication track record
  • list of publications in your CV

Other signals

  • multimodal generative AI systems
  • dynamic and interactive environments
  • novel AI systems
  • Machine Learning modelling-focused background
  • Machine Learning systems-focused background
  • agentic workflows
  • orchestration
  • tool-using systems
  • training and evaluation pipelines
  • research papers
  • publications