AI Researcher - Artificial Intelligence / PyTorch / TensorFlow / Embedded/Mobile / Python

European Tech Recruit
Cambridge
4 days ago
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AI Researcher - Artificial Intelligence / PyTorch / TensorFlow / Embedded/Mobile / Python


  • Do you have a solid experience in AI Research with good exposure to ML frameworks including PyTorch, TensorFlow, JAX?
  • Experience with deployment on embedded/mobile devices (such as smartphones, with mobile CPU, GPU, NPU)?
  • Do you want to join a globally recognised mobile/tech development company?


We are seeking aAI Researcher tocontribute to research and commercialization efforts for our clients projects including on-device LLM and VLMs, adaptive inference methods, and mobile ML systems.

This is a permanent role working in Cambridge on a hybrid model (3 days per week onsite)


Required skills:

  • PhD in CS/EE or related research experience in academia or industry
  • Experience with ML frameworks (PyTorch, TensorFlow, JAX) and efficient ML (incl. quantization, pruning, sparsification, distillation, etc.)
  • Experience with deployment on embedded/mobile devices (such as smartphones, with mobile CPU, GPU, NPU)
  • Experience with distributed and multi-GPU training at scale
  • Fluency in Python, C/C++ and GNU Linux
  • Proficiency in code version control, Git and GitHub
  • Experience in working as member of a team
  • Solid publication record of papers in top-tier venues, such as NeurIPS/ICLR/ICML/MobiCom/MobiSys/ICCAD/MLSys


Any of the following would be considered a plus:

  • Experience in real-world mobile system deployment
  • Research experience in efficient Generative AI, including language, visual or multimodal tasks. This includes different aspects of the pipeline, from data and preprocessing to large model adaptation, fine-tuning and on-device optimization.
  • Android operating system and Android app development


If this sounds interesting and you'd like to learn more, click the link below to apply or email me with a copy of your resume on


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