Senior ML Engineer (Token Factory)

Germany; Israel; Netherlands; Prague, Czech Republic; Remote - Europe; Remote - United States; United KingdomCompetitive0 applicants

About this role

Why work at Nebius

Nebius is leading a new era in cloud computing to serve the global AI economy. We create the tools and resources our customers need to solve real-world challenges and transform industries, without massive infrastructure costs or the need to build large in-house AI/ML teams. Our employees work at the cutting edge of AI cloud infrastructure alongside some of the most experienced and innovative leaders and engineers in the field.

Where we work

Headquartered in Amsterdam and listed on Nasdaq, Nebius has a global footprint with R&D hubs across Europe, North America, and Israel. The team of over 1400 employees includes more than 400 highly skilled engineers with deep expertise across hardware and software engineering, as well as an in-house AI R&D team.

Responsibilities

  • Token Factory is a part of Nebius Cloud, one of the world’s largest GPU clouds, running tens of thousands of GPUs. We are building an inference & fine-tuning platform that makes every kind of foundation model — text, vision, audio, and emerging multimodal architectures — fast, reliable, and effortless to train & deploy at massive scale.
  • Some directions we currently working on and which you can be a part of:
  • Advanced Fine-Tuning: Enhancing fine-tuning methodologies - both LoRA-based and full-parameter - for cutting-edge LLMs (e.g., GPT-OSS, Kimi K2.5, DeepSeek V3.1/V3.2, GLM-4.7), focusing on both model quality and training efficiency.
  • Inference Optimization: Identifying LLM inference bottlenecks to drive production speedups. This involves building model training and evaluation pipelines in JAX for speculative decoding, experimenting with architectures (dense/MoE, auto-regressive/parallel), and deriving scaling laws to guide resource allocation.
  • Low Precision Training & Inference: Investigating low-precision (FP8, NVFP4/MXFP4) methodologies for supervised fine-tuning and reinforcement learning - spanning both inference and training - optimized for modern hardware
  • We expect you to have:
  • A profound understanding of theoretical foundations of machine learning and reinforcement learning.
  • Deep expertise in modern deep learning for language processing and generation
  • Experience with training large models on multiple computational nodes
  • Reasonable understanding of performance aspects of large neural network training (sharding strategies, custom kernels, hardware features etc.)
  • Strong software engineering skills (we mostly use Python)
  • Deep experience with modern deep learning frameworks (we use JAX)
  • Proficiency in contemporary software engineering approaches, including CI/CD, version control and unit testing
  • Strong communication and leadership abilities

EU Requirements

Job Details

Posted30 March 2026
Closes29 April 2026

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