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Staff Data Scientist I - ETA
Высокий балл обусловлен престижем компании Careem, сложностью и масштабностью задач, а также отличным социальным пакетом, включая неограниченный отпуск и гибридный график.
Сложность вакансии
Роль уровня Staff требует не только глубоких знаний в ML (Deep Learning, временные ряды), но и опыта проектирования высоконагруженных систем реального времени, а также лидерских качеств для управления архитектурой на уровне всей компании.
Анализ зарплаты
Зарплата для позиции Staff Data Scientist в Дубае обычно значительно выше средней по рынку и часто включает существенные бонусы и опционы. Указанный диапазон отражает рыночные стандарты для международных технологических хабов в ОАЭ.
Сопроводительное письмо
I am writing to express my strong interest in the Staff Data Scientist I - ETA position at Careem. With over 8 years of experience in applied machine learning and a deep specialization in time-series forecasting and stochastic modeling, I have a proven track record of building high-load, low-latency production systems. My background in architecting multi-stage pipelines for complex marketplace environments aligns perfectly with Careem's vision for the Everything App.
In my previous roles, I have successfully led the development of real-time inference systems that balance point accuracy with uncertainty calibration. I am particularly drawn to this role because of the opportunity to own the end-to-end ETA strategy for Food and Groceries. I am confident that my expertise in deep learning, operations research, and distributed frameworks like Spark will allow me to drive significant improvements in fulfillment efficiency and customer trust at Careem.
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Откликнитесь в careem уже сейчас
Присоединяйтесь к Careem, чтобы определять будущее ETA-систем в крупнейшем приложении Ближнего Востока!
Описание вакансии
Careem is building the Everything App for the greater Middle East — making it easy to move around, order food and groceries, manage payments, and more. Our purpose is simple: to simplify and improve people’s lives and build an awesome organisation that inspires.
Since 2012, Careem has enabled earnings for over 2.5 million Captains, simplified the lives of more than 70 million customers, and built a platform where the region’s best talent and entrepreneurs thrive. We operate in 70+ cities across 10 countries, from Morocco to Pakistan.
*We’re now entering our next chapter — one powered by AI. We’re looking for AI talent: curious problem-solvers who know how to apply AI to build tools, automate workflows, and create real impact. Whether it’s streamlining operations, enhancing customer experience, or reimagining internal systems — we want people who can make Careem work smarter and move faster.*
About the Role
As a Staff Data Scientist I – ETA, you will own the end-to-end ETA prediction systems for Careem’s Food and Groceries verticals. This is a highly technical Individual Contributor role with full domain ownership across architecture, modeling strategy, experimentation, production deployment, and operational excellence.
You will define the long-term vision for ETA systems in high-load, latency-sensitive marketplace environments. You will design and implement multi-stage stochastic pipelines that model preparation time, assignment delay, pickup time, travel time, batching, and pooling effects delivering reliable, calibrated predictions at scale. This role requires deep expertise in time-series forecasting, deep learning, and operations research combined with strong production experience in distributed and real-time systems. You will collaborate closely with Product, Engineering, Marketplace, and Operations leaders, ensuring ETA becomes a core competitive advantage in Careem’s Everything App.
What You'll Do
1. ETA Vision & Architecture Ownership
- Define and own the long-term technical vision for ETA systems across Food and Groceries.
- Architect scalable, multi-stage pipelines.
- Design probabilistic and stochastic modeling approaches with uncertainty calibration and reliability guarantees.
- Establish modeling standards and best practices for ETA across the organization.
2. Advanced Modeling & Algorithm Development
- Develop and deploy production-grade ML systems leveraging:
- Deep learning architectures
- Time-series forecasting
- Graph-based and routing-aware models
- Operations research techniques
- Build models robust to marketplace volatility and supply-demand shifts.
- Optimize for both point accuracy and distributional correctness (confidence intervals, tail control).
- Continuously improve system performance under high traffic and low-latency constraints.
3. Production Systems & Real-Time Inference
- Design and deploy scalable real-time inference pipelines.
- Ensure model reliability, monitoring, alerting, and graceful degradation under load.
- Collaborate with Data Platform and ML Ops teams to productionize models using Spark, Trino, Python, and distributed frameworks.
- Lead model lifecycle management, retraining strategies, and performance tracking in live environments.
4. Experimentation & Marketplace Impact
- Define clear evaluation frameworks aligned with business metrics (conversion, cancellations, fulfillment efficiency, customer trust).
- Design and run controlled experiments to measure ETA improvements and marketplace impact.
- Drive measurable improvements in operational efficiency and user experience through data-driven insights.
5. Technical Leadership & Cross-Team Influence
- Lead cross-team architectural discussions.
- Conduct design reviews and raise the technical bar for modeling quality and system robustness.
- Mentor senior data scientists and engineers in advanced ML and modeling techniques.
- Contribute to Careem’s applied AI community through technical talks, documentation, and research initiatives.
What You'll Need
- 8+ years of experience in Applied Machine Learning or Data Science, with significant experience building large-scale production systems.
- Advanced degree in Computer Science, Statistics, Engineering, Operations Research, or a related quantitative field.
- Proven expertise in:
- Time-series forecasting
- Deep learning
- Stochastic modeling
- Operations research and optimization
- Strong experience building and deploying high-load, low-latency ML systems.
- Hands-on proficiency in Python, Spark and ML frameworks.
- Experience with real-time inference systems and model monitoring in production.
- Strong understanding of experimentation, A/B testing, and causal inference.
- Demonstrated ability to drive architectural decisions across teams.
- Excellent communication skills and ability to translate complex modeling trade-offs into business impact.
What we’ll provide you
We offer colleagues the opportunity to drive impact in the region while they learn and grow. As a full time Careem colleague, you will be able to:
- Work and learn from great minds by joining a community of inspiring colleagues.
- Put your passion to work in a purposeful organisation dedicated to creating impact in a region with a lot of untapped potential.
- Explore new opportunities to learn and grow every day.
- Work 4 days a week in office & 1 day from home, and remotely from any country in the world for 30 days a year with unlimited vacation days per year. (If you are in an individual contributor role in tech, you will have 2 office days a week and 3 to work from home.)
- Access to healthcare benefits and fitness reimbursements for health activities including gym, health club, and training classes.
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Навыки
- Python
- Spark
- Deep Learning
- Time Series Analysis
- Operations Research
- Stochastic Modeling
- Machine Learning
- Trino
- A/B Testing
- Causal Inference
- Distributed Systems
Возможные вопросы на собеседовании
Проверка понимания специфики основной задачи — прогнозирования времени прибытия.
Как бы вы спроектировали многостадийный пайплайн для оценки ETA, учитывающий время подготовки заказа, поиск курьера и дорожный трафик?
ETA — это не только точка, но и доверительный интервал. Важно понять, как кандидат работает с неопределенностью.
Какие методы калибровки вероятностных прогнозов вы использовали для минимизации 'хвостов' распределения ошибок в логистике?
Работа в Careem предполагает огромные объемы данных и жесткие требования к задержке (latency).
Опишите ваш опыт оптимизации ML-моделей для инференса в реальном времени при нагрузке в тысячи запросов в секунду.
Staff-позиция подразумевает влияние на бизнес-метрики через технические решения.
Как вы будете оценивать влияние точности ETA на долгосрочный удержание (retention) пользователей и конверсию в приложении?
Проверка навыков системного дизайна и работы с данными.
Как вы организуете мониторинг и стратегию переобучения моделей в условиях резкого изменения рыночной конъюнктуры (например, внезапный шторм или праздник)?
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