- Страна
- США
- Зарплата
- 200 000 $ – 300 000 $
Откликайтесь
на вакансии с ИИ

Machine Learning Engineer, LLM Evals & Observability
Glean — один из самых перспективных единорогов в сфере Enterprise AI с отличным финансированием и признанием экспертов. Высокая зарплата, сильная инженерная культура и работа над передовыми технологиями (Agentic AI) делают эту вакансию крайне привлекательной.
Сложность вакансии
Роль требует редкого сочетания навыков: глубокого понимания LLM (оценка, RLHF) и сильной инженерной базы (Go, Python, распределенные системы). Высокая планка ответственности за качество продукта, который используется крупнейшими корпорациями.
Анализ зарплаты
Предлагаемый диапазон $200k–$300k полностью соответствует и даже несколько превышает средние рыночные показатели для Senior/Staff ML ролей в Сан-Франциско. Это топовый уровень компенсации для быстрорастущих ИИ-стартапов стадии роста.
Сопроводительное письмо
I am writing to express my strong interest in the Machine Learning Engineer position for LLM Evals & Observability at Glean. With a solid background in backend engineering and experience in developing evaluation frameworks for large language models, I am particularly drawn to Glean's mission of redefining enterprise search through a sophisticated Work AI ecosystem. I admire how Glean prioritizes measurable quality and observability, which are often the most challenging yet critical aspects of deploying reliable AI agents at scale.
In my previous work, I have focused on building robust data pipelines and implementing LLM-powered judges to align model outputs with human expectations. I am proficient in Python and Go, and I have a deep appreciation for the analytical rigor required to curate high-quality golden sets and sampling strategies. My experience in closing the loop between offline metrics and real-world user satisfaction aligns perfectly with your team's goal of making assistant behavior reliably better over time.
I am excited about the opportunity to contribute to a platform recognized by Fast Company and Forbes for its innovation. Building the infrastructure that gates launches and prevents regressions for a product used across Microsoft Teams and Slack is a challenge I am eager to take on. I look forward to discussing how my technical skills and passion for AI quality can help Glean continue to lead the industry.
Составьте идеальное письмо к вакансии с ИИ-агентом

Откликнитесь в gleanwork уже сейчас
Присоединяйтесь к команде Glean, чтобы создавать стандарты качества для ИИ-агентов нового поколения в одной из самых инновационных компаний мира!
Описание вакансии
About Glean:
Glean is the Work AI platform that helps everyone work smarter with AI. What began as the industry’s most advanced enterprise search has evolved into a full-scale Work AI ecosystem, powering intelligent Search, an AI Assistant, and scalable AI agents on one secure, open platform. With over 100 enterprise SaaS connectors, flexible LLM choice, and robust APIs, Glean gives organizations the infrastructure to govern, scale, and customize AI across their entire business - without vendor lock-in or costly implementation cycles.
At its core, Glean is redefining how enterprises find, use, and act on knowledge. Its Enterprise Graph and Personal Knowledge Graph map the relationships between people, content, and activity, delivering deeply personalized, context-aware responses for every employee. This foundation powers Glean’s agentic capabilities - AI agents that automate real work across teams by accessing the industry’s broadest range of data: enterprise and world, structured and unstructured, historical and real-time. The result: measurable business impact through faster onboarding, hours of productivity gained each week, and smarter, safer decisions at every level.
Recognized by Fast Company as one of the World’s Most Innovative Companies (Top 10, 2025), by CNBC’s Disruptor 50, Bloomberg’s AI Startups to Watch (2026), Forbes AI 50, and Gartner’s Tech Innovators in Agentic AI, Glean continues to accelerate its global impact. With customers across 50+ industries and 1,000+ employees in more than 25 countries, we’re helping the world’s largest organizations make every employee AI-fluent, and turning the superintelligent enterprise from concept into reality.
If you’re excited to shape how the world works, you’ll help build systems used daily across Microsoft Teams, Zoom, ServiceNow, Zendesk, GitHub, and many more - deeply embedded where people get things done. You’ll ship agentic capabilities on an open, extensible stack, with the craft and care required for enterprise trust, as we bring Work AI to every employee, in every company.
About the Role:
Building a great AI assistant is only half the battle – knowing whether it's actually great is the other half. Our team owns the measurement and quality layer that make Glean's Assistant and Agents reliably better over time: evaluation pipelines, quality evalsets, LLM-powered judges, agent observability, and the tooling engineers use to understand what changed and why. It's a rare combination of infrastructure engineering, applied ML, and direct product impact. If you care deeply about quality and want to build the systems that make it measurable, this role is for you.
You will:
- Design and curate evaluation datasets – sampling strategies, query diversity, and golden sets that give reliable, representative coverage of real assistant behavior.
- Build and maintain large-scale evaluation pipelines that measure assistant quality across thousands of real user queries.
- Build LLM-powered judges that score metrics like correctness, completeness, and response quality, and align them against human judgment.
- Evaluate new models and product changes before they ship – providing the quality signal that gates launches and prevents regressions.
- Build observability infrastructure for AI agents: trace enrichment, data pipelines, and dashboards that make assistant behavior inspectable.
- Close the loop between quality measurement and improvement using eval results, customer feedback, and techniques like automated prompt iteration to help drive concrete gains in assistant behavior.
- Collaborate with engineers across the company to make evals a first-class part of how we ship.
About you:
- 2+ years of software engineering experience with strong coding skills.
- Strong backend fundamentals in Go and Python; comfortable with distributed data pipelines.
- Experience working with LLM evaluation, reinforcement learning from human feedback, natural language processing, or other large systems involving machine learning.
- Analytically rigorous – you think carefully about what offline metrics actually predict about real user experience.
- Thrive in a customer-focused, tight-knit and cross-functional environment - being a team player and willing to take on whatever is most impactful for the company
- You care about quality – not just in the systems you build, but in the product you're helping measure and improve.
Location:
- This role is hybrid (3-4 days a week in one of our SF Bay Area offices)
Compensation & Benefits:
The standard base salary range for this position is $200,000 - $300,000 annually. Compensation offered will be determined by factors such as location, level, job-related knowledge, skills, and experience. Certain roles may be eligible for variable compensation, equity, and benefits.
We offer a comprehensive benefits package including competitive compensation, Medical, Vision, and Dental coverage, generous time-off policy, and the opportunity to contribute to your 401k plan to support your long-term goals. When you join, you'll receive a home office improvement stipend, as well as an annual education and wellness stipends to support your growth and wellbeing. We foster a vibrant company culture through regular events, and provide healthy lunches daily to keep you fueled and focused.
We are a diverse bunch of people and we want to continue to attract and retain a diverse range of people into our organization. We're committed to an inclusive and diverse company. We do not discriminate based on gender, ethnicity, sexual orientation, religion, civil or family status, age, disability, or race.
#LI-HYBRID
AI-First Mindset at Glean:
At Glean, AI fluency is core to how we work and we're committed to ensuring every new hire feels confident integrating AI into their everyday work. As part of the interview process, you'll complete a brief AI-focused exercise or discussion so we can understand how you think about, design, and use AI to drive impact in your role. Feel free to reference any tools, platforms, or workflows you use today — prior Glean experience isn't required.
Создайте идеальное резюме с помощью ИИ-агента

Навыки
- Python
- Machine Learning
- Distributed Systems
- Observability
- Data Pipelines
- Go
- Natural Language Processing
- LLM Evaluation
- RLHF
Возможные вопросы на собеседовании
Проверка понимания того, как перевести абстрактное понятие «качество ответа» в измеримые метрики.
Как бы вы спроектировали систему оценки для ИИ-агента, который выполняет многошаговые задачи в разных корпоративных приложениях?
Оценка навыков работы с данными и понимания смещений в выборках.
Какую стратегию семплирования вы бы использовали для создания 'golden set' из миллионов реальных пользовательских запросов, чтобы обеспечить репрезентативность?
Проверка опыта работы с LLM как с инструментом оценки (LLM-as-a-judge).
С какими основными проблемами (например, предвзятость к длине ответа) вы сталкивались при использовании LLM в качестве судей, и как вы их решали?
Проверка инженерных навыков в области инфраструктуры данных.
Опишите ваш опыт построения распределенных конвейеров данных для обработки и обогащения трейсов (traces) в реальном времени.
Проверка продуктового мышления и умения работать с обратной связью.
Как вы определяете, что метрики офлайн-оценки коррелируют с удовлетворенностью реальных пользователей (online metrics)?
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
- 200 000 $ – 300 000 $