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Senior Machine Learning Research Scientist

Microsoft

Microsoft

Software Engineering
Posted on Dec 13, 2024

Senior Machine Learning Research Scientist

Cambridge, Cambridgeshire, United Kingdom

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Date posted
Dec 13, 2024
Job number
1791677
Work site
Up to 100% work from home
Travel
None
Role type
Individual Contributor
Profession
Research, Applied, & Data Sciences
Discipline
Research Sciences
Employment type
Full-Time

Overview

Do you want to be at the forefront of innovating the latest hardware designs to propel Microsoft’s cloud growth? Are you seeking a unique career opportunity that combines both technical capabilities, cross team collaboration, with business insight and strategy?

Join our Strategic Planning and Architecture (SPARC) team within Microsoft’s Azure Hardware Systems & Infrastructure (AHSI) organization and be a part of the organization behind Microsoft’s expanding Cloud Infrastructure and responsible for powering Microsoft’s “Intelligent Cloud” mission.

Microsoft delivers more than 200 online services to more than one billion individuals worldwide and AHSI is the team behind our expanding cloud infrastructure. We deliver the core infrastructure and foundational technologies for Microsoft's cloud businesses including Microsoft Azure, Bing, MSN, Office 365, OneDrive, Skype, Teams and Xbox Live.

The SPARC organization manages Azure’s hardware roadmap from architecture concept through production for all of Microsoft’s current and future on-line services. This role is for a highly motivated Machine Learning Engineer with a strong background in neural networks and hardware implementation. You will be involved with both model development, data type analysis, ML/HW co-design.

Qualifications

Master's Degree/PhD in Machine learning, Computer Architecture/Systems, High-Performance Computing or related areas.

3+ years of experience in ML systems/Model optimizations/Efficient model architecture

Track record of original research and delivering novel results in ML systems area

Hands on experience with frameworks such as PyTorch/TensorFlow/TensorRT

Deep knowledge of CNN/transformer architecture and optimization strategies – quantization, sparsity, NAS, sharding, KV Cache, Flash Attention

Strong programming skills in Python/C/C++

Experience in implementing low-level linear algebra/BLAS kernels and performance optimisations

Knowledge of GPU, TPU or similar NPU accelerator architecture

Outstanding communication skills

#SPARCjobs

Responsibilities

  • Driving model/hardware codesign
  • Developing and analysing novel LLM architectures
  • Inventing novel low-precision data/number formats for training/inference SOTA LLMs
  • Inventing novel efficient model architectures (e.g., sparse LLMs, attention architecture)
  • Collaborating with data scientists and ML researchers
  • Interfacing with HW architecture teams
  • Interfacing with SW framework teams

Benefits/perks listed below may vary depending on the nature of your employment with Microsoft and the country where you work.
Industry leading healthcare
Educational resources
Discounts on products and services
Savings and investments
Maternity and paternity leave
Generous time away
Giving programs
Opportunities to network and connect

Microsoft is an equal opportunity employer. All qualified applicants will receive consideration for employment without regard to age, ancestry, citizenship, color, family or medical care leave, gender identity or expression, genetic information, immigration status, marital status, medical condition, national origin, physical or mental disability, political affiliation, protected veteran or military status, race, ethnicity, religion, sex (including pregnancy), sexual orientation, or any other characteristic protected by applicable local laws, regulations and ordinances. If you need assistance and/or a reasonable accommodation due to a disability during the application process, read more about requesting accommodations.