Solutions Architect
ML Solution Architect designing end‑to‑end AI cloud solutions, focusing on GPU orchestration, inference optimization, and scalable cloud infrastructure for large‑scale ML workloads.
About Nebius :
Nebius is leading a new era in cloud infrastructure for the global AI economy. We are building a full-stack AI cloud platform that supports developers and enterprises from data and model training through to production deployment, without the cost and complexity of building large in-house AI/ML infrastructure.
Built by engineers, for engineers. From large-scale GPU orchestration to inference optimization, we own the hard problems across compute, storage, networking and applied AI.
Listed on Nasdaq (NBIS) and headquartered in Amsterdam, we have a global footprint with R&D hubs across Europe, the UK, North America and Israel. Our team of 1,500+ includes hundreds of engineers with deep expertise across hardware, software and AI R&D.
Summary:
Location : Remote from USA Duration : 3 months Compensation : Paid Eligibility : Current University student (Computer Science or related field), Recent Graduate or Early Career specialist Work authorization : permitted to work in the job’s location
The role
We're looking for an ML Solutions Architect (Early Career) to join the team behind Nebius Token Factory's serverless inference and fine-tuning platform for open-source LLMs. Working alongside senior Solutions Architects, you'll take on real technical work – building and testing LLM-based solutions, benchmarking, and inference optimization – and learn how scalable AI applications are built and tuned on our platform, in close collaboration with our backend team.
This is a hands-on learning role with close mentorship from senior SAs. Strong performers will be considered for a full-time Solutions Architect position at the end of the program.
This is a paid temporary contract , open to students and recent graduates. You're welcome to work remotely from any timezone.
Your responsibilities:
Help build and test LLM-based solutions and applications using Token Factory's inference services, including multimodal models (text, vision, audio).
Assist senior SAs with prompt engineering, model selection, benchmarking, and inference optimization.
Run performance and quality experiments to support proof-of-concept work.
Contribute to internal tooling and automation that improves how the SA team delivers.
Must-haves:
Currently pursuing or recently completed a BSc/MSc/PhD in Computer Science, Machine Learning, or a related field.
Strong Python programming skills.
Hands-on generative AI experience, including with common ML frameworks (e.g., PyTorch, Transformers).
Strong communication skills, with a willingness to explain technical concepts to diverse audiences.
Nice-to-haves:
Experience deploying/serving LLMs with vLLM, SGLang, or TensorRT-LLM.
Familiarity with inference optimization techniques such as quantization
Posted June 20, 2026