Principal Applied Scientist

Microsoft Microsoft · Big Tech · Redmond, WA +2 · Applied Sciences

Principal Applied Scientist Architect for the Core Recommendation Ranking team, focusing on integrating GenAI and agentic systems into large-scale content recommendation and ranking stacks for consumer-facing Microsoft surfaces. The role involves designing, implementing, and architecting advanced ML/DL models, including LLMs, for ranking, reranking, and retrieval, with a strong emphasis on production ML systems at scale and cross-team technical leadership.

What you'd actually do

  1. Design & implement ranking, reranking, and retrieval models using deep learning, LLMs, and advanced recommendation techniques.
  2. Architect the next generation of ranking, reranking, and retrieval systems for large‑scale content recommendation scenarios, for example generative recommendations, agentic feeds, etc.
  3. Lead the design of robust, efficient, and extensible ML/DL models pipelines, including feature engineering, model training, evaluation, and online inference. Establish technical standards and best practices for experimentation, model governance, and system reliability.
  4. Drive innovation in model architectures (e.g., deep learning, LLM‑enhanced ranking, multi‑task learning, contextual bandits, reinforcement learning).
  5. Partner with engineering, product, and platform teams to align roadmaps, integrate new capabilities, and ensure seamless end‑to‑end delivery.

Skills

Required

  • Bachelor's Degree in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND 6+ years related experience
  • Master's Degree in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND 4+ years related experience
  • Doctorate in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND 3+ years related experience
  • equivalent experience

Nice to have

  • Master's Degree in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND 9+ years related experience
  • Doctorate in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND 6+ years related experience
  • equivalent experience
  • 8+ years of experiences in applied science, deep learning, or related fields, with a solid track record of delivering production ML systems at scale.
  • Expertise in recommendation systems, ranking models, search relevance, or personalization.
  • Experience applying LLM techniques or Recommendation system.
  • Proficiency in modern ML frameworks (e.g., PyTorch, TensorFlow), data processing systems, and cloud‑scale infrastructure.
  • Demonstrated ability to lead cross‑functional initiatives and influence technical direction across multiple teams.
  • Solid communication skills with the ability to articulate complex technical concepts to diverse audiences.
  • Experience with LLM‑based ranking, agentic AI, or generative AI applied to recommendation or personalization.
  • Publications in top‑tier ML/AI conferences (e.g., NeurIPS, ICML, KDD, WWW, RecSys).
  • Solid architectural skills with experience designing large‑scale ML systems, distributed pipelines, and high‑throughput online services.
  • Experience working through full product cycles from initial design to final product delivery.
  • Experience developing and designing backgrounds in multi-tiered distributed services.
  • Experience with data structures, algorithms, asynchronous program

What the JD emphasized

  • solid track record of delivering production ML systems at scale
  • Experience applying LLM techniques or Recommendation system
  • Experience with LLM‑based ranking, agentic AI, or generative AI applied to recommendation or personalization.
  • Solid architectural skills with experience designing large‑scale ML systems, distributed pipelines, and high‑throughput online services.
  • Experience working through full product cycles from initial design to final product delivery.

Other signals

  • large-scale recommendation systems
  • large language models
  • agentic systems
  • content ranking and reranking
  • generative recommendations
  • AIGC feeds