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Senior Applied AI Solutions Engineer
Отличная позиция в быстрорастущей компании с листингом на Nasdaq. Роль предлагает уникальный баланс между глубоким R&D и реальным влиянием на бизнес, а также возможность работать с передовым стеком технологий (H100, CUDA, Physical AI).
Сложность вакансии
Роль требует редкого сочетания глубоких технических знаний в области ML (CUDA, PyTorch, распределенное обучение) и отличных коммуникативных навыков для работы с клиентами уровня Enterprise. Высокая планка ожиданий по самостоятельному прототипированию и влиянию на продукт.
Анализ зарплаты
Предлагаемая роль Senior уровня в Nebius (международная компания с корнями в РФ) обычно предполагает зарплату выше среднего по рынку Европы для привлечения топ-талантов. Указанный диапазон соответствует уровню Senior ML/Solutions Engineer в Амстердаме и крупных европейских хабах.
Сопроводительное письмо
I am writing to express my strong interest in the Senior Applied AI Solutions Engineer position at Nebius. With a deep background in fine-tuning large models, optimizing GPU inference, and building production-grade RAG pipelines, I am excited by the opportunity to bridge the gap between cutting-edge ML engineering and real-world customer success. My experience aligns perfectly with your need for someone who can not only prototype complex AI use cases but also provide the technical leadership necessary to accelerate enterprise onboarding.
Throughout my career, I have thrived at the intersection of product development and customer-facing engineering. I have a proven track record of translating field insights into product roadmaps and communicating complex technical trade-offs, such as activation checkpointing or distributed training bottlenecks, to both engineering teams and C-level executives. I am particularly impressed by Nebius's focus on serverless inference and Physical AI, and I am eager to contribute to your mission of making high-performance AI infrastructure accessible to the global economy.
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Присоединяйтесь к Nebius, чтобы определять будущее облачной инфраструктуры для ИИ и работать на острие технологий вместе с экспертами мирового уровня.
Описание вакансии
Why work at NebiusNebius 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 workHeadquartered 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.
The role
AI is moving faster than any single product team can track. Nebius is expanding across serverless, databases, MLflow, MLOps, Physical AI, and HCLS — and customers arriving with complex, real-world ML workloads need more than documentation. This role exists to close that gap: someone who can prototype what's possible, accelerate customers through their first 90 days, and feed hard-won field insight back into the product roadmap.
This role sits at the intersection of deep ML engineering and product impact. You'll spend roughly half your time in the field — helping new customers move from POC to production, running technical onboarding, and working hands-on through their ML stack. The other half you'll spend building — prototyping applied AI use cases that show what's possible on the platform, going deep on emerging techniques before they're mainstream, and turning that expertise into concrete product direction.
This is not a presales role. You get your hands dirty every day.
What success looks like in 12 months
- The product and sales teams have a library of working, polished demos they reach for on calls
- Enterprise customers you've touched have meaningfully faster time-to-value than those you haven't
- At least 2–3 product changes were shipped because of feedback you originated
- The team understands where applied AI is heading 6–12 months from now, partly because you told them
Your responsibilities will include:
- Build prototypes and demos across the product portfolio — serverless inference, databases, MLflow, MLOps, and vertical use cases in Physical AI and HCLS — that become assets for sales, product, and engineering teams
- Support new customers hands-on through POC design, technical onboarding, and validation; act as the bridge between their ML team and the platform during the critical first months
- Go deep on emerging applied AI — new training techniques, inference optimizations, agentic architectures, new frameworks — and turn findings into working prototypes, writeups, and product recommendations
- Feed the product roadmap with specific, grounded feedback; be the voice of "here's what broke in three customer POCs last month and here's what needs to change"
- Develop reusable technical assets — notebooks, reference architectures, benchmark results — that reduce onboarding friction at scale
We expect you to have:
- You've fine-tuned large models, debugged distributed training jobs, built production RAG or agentic pipelines, and optimized inference on GPU infrastructure — not just read about it
- You're fluent in the modern ML stack: PyTorch, HuggingFace, CUDA fundamentals, Kubernetes for ML, MLflow or equivalent, vector databases
- You've worked with enterprise ML teams — whether as a solutions engineer, customer engineer, or an ML engineer who collaborated closely with customers
- You read papers and implement them — not for credit, but because it's how you stay sharp
- You communicate with calibration: you can explain activation checkpointing tradeoffs to an ML engineer in the morning and the cost implication to a CTO in the afternoon
It will be an added bonus if you have:
- Experience in any of our vertical domains: Physical AI / robotics / simulation, HCLS (drug discovery, medical imaging, clinical NLP), or enterprise AI application development
- Familiarity with MLOps at scale (Kubeflow, Metaflow, Argo, Ray)
- Prior work at a cloud provider or AI infrastructure company
- You've shared technical work publicly — notebooks, talks, blog posts that people actually use
Who thrives here
You'll thrive here if you're energized by variety — one day deep in a customer's MLOps stack, the next building a demo from scratch. You want your technical depth to influence product decisions, not just close deals.
What we offer
- Competitive salary and comprehensive benefits package.
- Opportunities for professional growth within Nebius.
- Flexible working arrangements.
- A dynamic and collaborative work environment that values initiative and innovation.
We're growing and expanding our products every day. If you're up to the challenge and are excited about AI and ML as much as we are, join us!
What we offer
- Competitive salary and comprehensive benefits package.
- Opportunities for professional growth within Nebius.
- Flexible working arrangements.
- A dynamic and collaborative work environment that values initiative and innovation.
We’re growing and expanding our products every day. If you’re up to the challenge and are excited about AI and ML as much as we are, join us!
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Навыки
- PyTorch
- Hugging Face
- CUDA
- Kubernetes
- MLflow
- Vector Databases
- RAG
- GPU Infrastructure
- Distributed Training
- Kubeflow
- Ray
- Python
Возможные вопросы на собеседовании
Проверка практического опыта оптимизации производительности на уровне железа.
Расскажите о самом сложном случае отладки распределенного обучения или оптимизации инференса на GPU, с которым вы сталкивались. Каков был результат?
Оценка способности кандидата влиять на развитие продукта через обратную связь.
Приведите пример, когда ваши наблюдения за работой клиента привели к конкретному изменению в архитектуре или функционале продукта. Как вы аргументировали это изменение?
Проверка навыков коммуникации с технической аудиторией.
Как бы вы объяснили инженеру по машинному обучению компромиссы при использовании различных техник квантования для инференса больших языковых моделей?
Оценка архитектурного мышления в области RAG и агентных систем.
Опишите ваш подход к построению масштабируемого RAG-пайплайна для корпоративного клиента. Какие векторные базы данных и стратегии индексации вы бы предпочли и почему?
Проверка способности быстро осваивать новые научные статьи.
Какую последнюю статью по теме ML вы прочитали и реализовали? Какие сложности возникли при переносе теоретических выкладок в работающий код?
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