- Страна
- США
- Зарплата
- 215 000 $ – 285 000 $
Откликайтесь
на вакансии с ИИ

Staff AI Engineer
Workato — признанный лидер (Cloud 100, Deloitte Fast 500) с отличной репутацией и высокой компенсацией. Позиция Staff AI Engineer предлагает работу над передовыми технологиями (Agentic Enterprise) и высокую степень автономности.
Сложность вакансии
Роль уровня Staff требует не только глубоких технических знаний в области NLP и поиска (LLM, RAG, Knowledge Graphs), но и способности проектировать архитектуру сложных распределенных систем. Высокие требования к опыту (7+ лет) и экспертное владение метриками ранжирования делают отбор очень строгим.
Анализ зарплаты
Предлагаемый диапазон $215k–$285k полностью соответствует и даже немного превышает рыночные стандарты для Staff-позиций в районе залива Сан-Франциско, где медиана составляет около $230k-250k без учета бонусов и опционов.
Сопроводительное письмо
I am writing to express my strong interest in the Staff AI Engineer position at Workato. With over 7 years of backend engineering experience and a deep specialization in search relevance and information retrieval, I am excited about the opportunity to contribute to building the Context Layer for the Agentic Enterprise. My background in designing end-to-end retrieval pipelines and deploying learning-to-rank models aligns perfectly with your mission to streamline complex workflows through AI-powered orchestration.
In my previous roles, I have successfully scaled search infrastructures using OpenSearch and implemented advanced NLP techniques for query understanding and semantic search. I am particularly impressed by Workato's recognition as a top cloud company and its commitment to a trust-oriented culture. I am confident that my expertise in knowledge graph construction and relevance evaluation metrics like NDCG and MRR will help drive innovation in your search systems and deliver exceptional value to your 400,000 global customers.
Составьте идеальное письмо к вакансии с ИИ-агентом

Откликнитесь в workato уже сейчас
Присоединяйтесь к лидеру в области корпоративной оркестровки и создавайте будущее агентских предприятий вместе с Workato!
Описание вакансии
About Workato
Workato transforms technology complexity into business opportunity. As the leader in enterprise orchestration, Workato helps businesses globally streamline operations by connecting data, processes, applications, and experiences. Its AI-powered platform enables teams to navigate complex workflows in real-time, driving efficiency and agility.
Trusted by a community of 400,000 global customers, Workato empowers organizations of every size to unlock new value and lead in today’s fast-changing world. Learn how Workato helps businesses of all sizes achieve more at workato.com.
Why join us?
Ultimately, Workato believes in fostering a flexible, trust-oriented culture that empowers everyone to take full ownership of their roles. We are driven by innovation and looking for team players who want to actively build our company.
But, we also believe in balancing productivity with self-care. That’s why we offer all of our employees a vibrant and dynamic work environment along with a multitude of benefits they can enjoy inside and outside of their work lives.
If this sounds right up your alley, please submit an application. We look forward to getting to know you!
Also, feel free to check out why:
- Business Insider named us an “enterprise startup to bet your career on”
- Forbes’ Cloud 100 recognized us as one of the top 100 private cloud companies in the world
- Deloitte Tech Fast 500 ranked us as the 17th fastest growing tech company in the Bay Area, and 96th in North America
- Quartz ranked us the #1 best company for remote workers
Responsibilities
As we work towards building out the Context Layer for the Agentic Enterprise, we are looking for an exceptional Search/AI Engineer with experience in Search Relevance to join our growing team. In this role, you will lead the design, development, and optimization of intelligent search systems that leverage machine learning at their core. You’ll be responsible for building end-to-end retrieval pipelines that incorporate advanced techniques in query understanding, ranking, and entity recognition. The ideal candidate combines deep expertise in information retrieval and search relevance with hands-on experience applying machine learning to real-world search problems at scale.
In this role, you will also be responsible to:
- Lead the development of advanced query understanding systems that parse natural language, resolve ambiguity, and infer user intent.
- Design and deploy learning-to-rank models that optimize relevance using behavioral signals, embeddings, and structured feedback.
- Build and scale robust Entity Recognition pipelines that enhance document understanding, enable contextual disambiguation, and support entity-aware retrieval.
- Architect next-gen search infrastructure capable of supporting highly dynamic document corpora and real-time indexing.
- Create and maintain graph-based knowledge systems that enhance LLM capabilities through structured relationship data.
- Drive improvements in query rewriting, intent classification, and semantic search, using both statistical and neural methods.
- Own the design of evaluation frameworks for offline/online relevance testing, A/B experimentation, and continual model tuning.
- Collaborate with product and applied research teams to translate user needs into data-informed search innovations
- Produce clean, scalable code and influence system architecture and roadmap across the relevance and platform stack.
Requirements
Qualifications / Experience / Technical Skills
- Bachelors/Masters/PhD degree in Statistics, Mathematics or Computer Science, or another quantitative field.
- 7+ years of backend engineering experience with 3+ years in search, information retrieval, or related fields
- Strong proficiency in Python
- Hands-on experience with search engines (Opensearch or Elasticsearch)
- Strong understanding of information retrieval concepts spanning traditional methods (TF-IDF, BM25) and modern neural search techniques (vector embeddings, transformer models)
- Experience with text processing, NLP, and relevance tuning
- Experience with relevance evaluation metrics (NDCG, MRR, MAP)
- Experience with large-scale distributed systems
- Proficiency in Knowledge Graph construction and optimization is a plus.
- Strong analytical and problem-solving skills
Soft Skills / Personal Characteristics
- Strong communication abilities to explain technical concepts
- Collaborative mindset for cross-functional team work
- Detail-oriented with strong focus on quality
- Self-motivated and able to work independently
- Passion for solving complex search problems
For candidates based in California, New York, and Colorado the expected salary range for this role is $215,000–$285,000. Actual compensation will vary based on experience, qualifications, and location. This role may also be eligible for equity and benefits.
(REQ ID: 2472)
Создайте идеальное резюме с помощью ИИ-агента

Навыки
- Python
- OpenSearch
- ElasticSearch
- NLP
- Machine Learning
- Information Retrieval
- Knowledge Graph
- LLM
- Transformer
- Distributed Systems
- A/B Testing
Возможные вопросы на собеседовании
Проверка глубокого понимания современных методов поиска за рамками простого векторного сходства.
Как бы вы спроектировали гибридную систему поиска, сочетающую BM25 и векторные эмбеддинги, для обеспечения высокой точности и полноты?
Критически важный навык для улучшения качества поиска на основе данных.
Опишите ваш опыт внедрения моделей Learning-to-Rank (LTR). Какие признаки (features) вы считаете наиболее важными для корпоративного поиска?
Вакансия упоминает Knowledge Graphs как плюс; это важно для контекстуального понимания.
Как использование графов знаний может улучшить работу LLM в рамках вашей архитектуры Context Layer?
Проверка умения работать с большими данными и понимания производительности.
С какими основными проблемами масштабирования вы сталкивались при работе с OpenSearch/Elasticsearch на динамических корпусах документов?
Оценка способности кандидата объективно измерять успех своих изменений.
Как вы организуете процесс офлайн- и онлайн-тестирования (A/B тесты) для оценки изменений в алгоритмах ранжирования?
Похожие вакансии
MLOps Engineer (Python)
AI Engineer (CV & Navigation)
Middle, Middle+, Senior GenAI/LLM Разработчик
Middle / Senior GenAI Engineer (CV)
AI Engineer / AI Mentor
Junior разработчик agent AI-систем
1000+ офферов получено
Устали искать работу? Мы найдём её за вас
Quick Offer улучшит ваше резюме, подберёт лучшие вакансии и откликнется за вас. Результат — в 3 раза больше приглашений на собеседования и никакой рутины!
- Страна
- США
- Зарплата
- 215 000 $ – 285 000 $