Applied Sciences 2 at Microsoft
Shanghai, Shanghai, China -
Full Time


Start Date

Immediate

Expiry Date

25 Feb, 26

Salary

0.0

Posted On

27 Nov, 25

Experience

2 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Applied Machine Learning, LLMs, Agent Systems, Reinforcement Learning, Model Training Pipelines, PyTorch, TensorFlow, JAX, Distributed Training, Prompt Engineering, Evaluation Strategies, Model Deployment, Retrieval-Augmented Generation, Tool Use, Planning Agents, Long-Context Modeling

Industry

Software Development

Description
Design and implement advanced LLM-based architectures and agentic systems for real-world product scenarios. Collaborate across teams to deliver robust, scalable models aligned with product objectives and user value. Apply and adapt research ideas to solve practical challenges in reasoning, planning, memory, and alignment. Monitor and improve model performance post-deployment through data-driven iteration and error analysis. Contribute to technical discussions, model reviews, and best practices within the applied science community. Bachelor's Degree in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND 2+ years related experience (e.g., statistics, predictive analytics, research) OR Master's Degree in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND 1+ year(s) related experience (e.g., statistics, predictive analytics, research) OR Doctorate in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field OR equivalent experience. 2+ years of experience in applied machine learning, with a focus on LLMs, agent systems, or reinforcement learning. Solid hands-on experience with model training pipelines using PyTorch, TensorFlow, JAX, or similar frameworks. Familiarity with distributed training, prompt engineering, evaluation strategies, and model deployment best practices. Experience with retrieval-augmented generation (RAG), tool use, planning agents, or long-context modeling. Solid publication record (e.g., NeurIPS, ICLR, ACL, ICML, EMNLP) is a plus, but emphasis is placed on practical contributions. Solid coding and debugging skills, and comfort working in cross-functional, agile environments.
Responsibilities
Design and implement advanced LLM-based architectures and agentic systems for real-world product scenarios. Monitor and improve model performance post-deployment through data-driven iteration and error analysis.
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