Senior Applied Scientist

Microsoft Microsoft · Big Tech · United Kingdom · Applied Sciences

Senior Applied Scientist role focused on Microsoft's AI customization platform (Frontier Tuning), enabling enterprises to adapt foundation models. The role involves algorithmic innovation and building scalable infrastructure for training, steering, evaluating, and securely deploying enterprise-ready AI systems, with a focus on post-training techniques like reinforcement learning and fine-tuning.

What you'd actually do

  1. Design and develop methods to adapt foundation models (e.g., language, diffusion, or multimodal models) for enterprise-specific tasks such as document understanding, workflow automation, or content generation.
  2. Contribute to one or more aspects of the post-training stack, including: Reinforcement learning or fine-tuning methods, Architectural or parameter-efficient adaptation techniques, Inference-time steering or controllability approaches, Tooling for evaluation, debugging, or model development, Privacy- or security-preserving training techniques (e.g., differential privacy), Harnesses
  3. Implement and evaluate adaptation approaches under real‑world enterprise deployment constraints such as latency, safety, privacy, policy compliance, and compute efficiency.
  4. Partner with research and engineering teams to translate product or customer requirements into scalable model adaptation solutions.
  5. Explore post‑training techniques that improve domain specialization, tool use, planning, or agentic behaviors in enterprise environments.

Skills

Required

  • Bachelor's Degree in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND advanced related experience
  • Experience contributing to research, open‑source systems, or production deployments involving model training or adaptation.

Nice to have

  • Master's Degree in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND extensive related experience
  • Doctorate in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND advanced related experience
  • Advanced experience creating publications (e.g., patents, libraries, peer-reviewed academic papers).
  • Experience presenting at conferences or other events in the outside research/industry community as an invited speaker.
  • Advanced experience conducting research as part of a research program (in academic or industry settings).
  • Experience developing and deploying live production systems, as part of a product team.
  • Experience developing and deploying products or systems at multiple points in the product cycle from ideation to shipping.
  • Transformer or multimodal model architectures
  • Reinforcement learning or post‑training methods
  • Distributed or large‑scale ML training systems
  • Privacy‑preserving ML (e.g., differential privacy)

What the JD emphasized

  • enterprise-specific
  • post-training
  • enterprise deployment constraints
  • privacy
  • security
  • evaluation

Other signals

  • enterprise customization
  • post-training
  • adaptation
  • secure deployment