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微软Senior Applied Scientist

社招全职Research, Applied, & Data Sciences地点:苏州状态:招聘

任职要求


-Minimum: Master; Preferred: advanced degree and/or industry experience -Experiences in applying deep learning techniques and drive E2E AI product development (LLM, Search, NLP, etc). -Excellent coding experience in Python, C++, C#, C or Java -Familiar with common machine learning, deep learning frameworks like Pytorch/Tensorflow -Passionate and self-motivated, Ability to effectively collaborate and ship production features in a multi-project, fast-paced team environment. -(For manager) awesome project / people management experiences -Good communication skills, both verbal and written 

 

Microsoft is an equal opportunity employer. All qualified applicants will receive consideration for employment without re…
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工作职责


• Develop next-generation AI experiences for Microsoft Edge — leverage machine learning and generative AI to reinvent how users browse, search, and interact with the web.
• Advance Edge’s contextual intelligence by building models that synthesize browsing history, page content, and user intent to deliver proactive, personalized, and trustworthy assistance.
• Drive innovation in agentic systems, prototyping and productionizing conversational, reasoning, and planning models that transform Edge from a static browser into a true AI companion.
• Collaborate cross-functionally with product managers, designers, and engineers to translate AI capabilities into elegant, high-utility user experiences.
• Own the full AI feature development lifecycle — from data pipeline and evaluation metric design to model and prompt tuning, quality validation, and continuous improvement.
包括英文材料
大模型+
NLP+
Python+
C+++
还有更多 •••
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更新于 2025-10-20上海|苏州|北京
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