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Lead Machine Learning Engineer - Marketplace Matching & Optimization
Upwork — лидер индустрии с огромными объемами данных, что дает возможность работать над уникальными задачами мирового масштаба. Позиция предлагает высокую степень влияния на продукт и работу с передовыми технологиями (LLM, персонализация).
Сложность вакансии
Роль требует экспертных знаний в узкой области (системы памяти и персонализации) и опыта работы с высоконагруженными поисковыми системами. Уровень Lead подразумевает не только техническое превосходство, но и способность вести сложные проекты в условиях неопределенности.
Анализ зарплаты
Зарплата для Lead ML ролей в Торонто обычно выше среднего по рынку Канады из-за высокой конкуренции за таланты в AI-хабах. Указанный диапазон отражает рыночные реалии для крупных технологических компаний уровня Tier-1.
Сопроводительное письмо
I am writing to express my strong interest in the Lead Machine Learning Engineer position at Upwork, specifically within the Marketplace Matching & Optimization team. With extensive experience in building and deploying large-scale recommendation systems and a deep understanding of retrieval and ranking architectures, I am excited by the opportunity to develop personalized memory systems that enhance user intent understanding. My background in modeling temporal dynamics and user behavior aligns perfectly with your goal of creating more relevant and engaging marketplace experiences.
Throughout my career, I have focused on the full ML lifecycle, from designing sophisticated candidate generation pipelines to productionizing high-throughput ranking models. I am particularly drawn to Upwork's mission of creating economic opportunity and am eager to apply my expertise in personalization and memory-aware modeling to improve hiring outcomes. I look forward to the possibility of contributing to your team's innovative work in search and recommendations.
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Описание вакансии
Upwork Inc.’s (Nasdaq: UPWK) family of companies connects businesses with global, AI-enabled talent across every contingent work type including freelance, fractional, and payrolled. This portfolio includes the Upwork Marketplace, which connects businesses with on-demand access to highly skilled talent across the globe, and Lifted, which provides a purpose-built solution for enterprise organizations to source, contract, manage, and pay talent across the full spectrum of contingent work. From Fortune 100 enterprises to entrepreneurs, businesses rely on Upwork Inc. to find and hire expert talent, leverage AI-powered work solutions, and drive business transformation. With access to professionals spanning more than 10,000 skills across AI & machine learning, software development, sales & marketing, customer support, finance & accounting, and more, the Upwork family of companies enables businesses of all sizes to scale, innovate, and transform their workforces for the age of AI and beyond.
Since its founding, Upwork Inc. has facilitated more than $30 billion in total transactions and services as it fulfills its purpose to create opportunity in every era of work. Learn more about the Upwork Marketplace at Upwork.com and follow us on LinkedIn, Facebook, Instagram, TikTok, and X; and learn more about Lifted at Go-Lifted and follow on LinkedIn.
Lead Machine Learning Engineer – Search and Recommendations
We’re looking for a Lead Machine Learning Engineer to build personalized memory systems for Search and Recommendations, enabling models to better understand user intent, preferences, and evolving needs across interactions.
This role sits at the intersection of memory modeling, retrieval, ranking, and personalization, with a primary focus on learning and applying personalized memory representations rather than building general-purpose memory infrastructure. You will design how memory signals are encoded, updated, decayed, and surfaced to influence candidate retrieval, ranking, and personalization decisions across the marketplace.
As a Lead-level individual contributor, you will own complex technical initiatives, work closely with engineering, research, product, and data partners, and translate personalized memory concepts into robust, measurable, production-ready machine learning systems that improve relevance, engagement, and hiring outcomes.
Responsibilities
- Design and build personalized memory systems for Search and Recommendations that improve understanding of user intent, preferences, and behavioral evolution.
- Develop user-, session-, and interaction-level memory representations that directly inform candidate retrieval, ranking, and personalization decisions.
- Integrate memory-driven signals into retrieval and ranking pipelines to improve relevance, engagement, and downstream hiring outcomes.
- Model temporal dynamics of user behavior, including recency, frequency, decay, and preference drift, translating them into stable, high-impact personalization features.
- Train and evaluate memory-aware ranking and personalization models using offline relevance metrics and online experimentation frameworks.
- Partner with conversational and LLM-assisted search teams to support context-aware query understanding while maintaining focus on search relevance and ranking quality.
- Productionize memory-driven ML systems with an emphasis on latency, scalability, observability, and experimentation rigor.
- Provide technical leadership through design reviews, mentorship, and shared best practices for building scalable personalization systems.
What it takes to catch our eye
- Demonstrated experience building and deploying search or recommendation systems in production with measurable impact on relevance, engagement, or conversion metrics.
- Strong foundation in retrieval and ranking systems, including candidate generation, re-ranking, and offline and online evaluation techniques.
- Practical experience modeling personalization and behavioral memory, including user intent, preferences, temporal dynamics, and signal tradeoffs.
- Solid machine learning engineering skills across the full lifecycle, including pipelines, experimentation, deployment, and inference at scale.
- An adaptive approach to integrating AI tools into modeling and engineering workflows to accelerate experimentation, improve quality, and support team learning.
- Comfort operating in ambiguity, with the ability to define open-ended problems, design experiments, and iterate based on data.
- Bonus experience contributing to applied research, publications, or experimentation in search, recommendation, or applied machine learning.
This position will initially be employed through a partner to ensure a seamless hiring process while we establish the hub. Once the hub is established, there may be opportunities to transition to employment with Upwork depending on business needs and other requirements. While employed by the partner, you’ll work as part of Upwork’s team, with access to our resources, culture, and growth opportunities.
To learn more about how Upwork processes and protects your personal information as part of the application process, please review our Global Job Applicant Privacy Notice
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Навыки
- A/B Testing
- Python
- Machine Learning
- Large Language Models
- MLOps
- Information Retrieval
- Recommendation Systems
- Personalization Systems
- Ranking
- Search Systems
Возможные вопросы на собеседовании
Проверка понимания архитектуры современных поисковых систем.
Как бы вы спроектировали систему многоэтапного ранжирования (multi-stage ranking), интегрирующую сигналы долгосрочной памяти пользователя?
Оценка навыков работы с временными данными и дрейфом предпочтений.
Какие методы вы используете для моделирования затухания (decay) интереса пользователя к определенным категориям навыков со временем?
Проверка опыта работы с LLM в контексте поиска.
Как интегрировать контекст из диалога с LLM-ассистентом в традиционный пайплайн ранжирования без значительного увеличения задержки (latency)?
Оценка умения работать с метриками.
Как вы разделяете влияние краткосрочных сессионных интересов и долгосрочных предпочтений при проведении A/B тестов?
Проверка инженерных навыков масштабирования.
С какими основными проблемами производительности вы сталкивались при внедрении векторного поиска (ANN) для миллионов пользователей в реальном времени?
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