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Analytics Engineer (Risk & Reserving)
Отличная позиция в стабильной компании-лидере рынка с четким стеком технологий (dbt, GCP, Looker). Предлагается хороший социальный пакет, бюджет на обучение и работа над сложными архитектурными задачами.
Сложность вакансии
Роль требует глубоких знаний SQL и dbt, а также специфического опыта в страховании или актуарных расчетах. Дополнительную сложность добавляет ответственность за миграцию данных между облачными платформами (AWS в GCP).
Анализ зарплаты
Зарплата в объявлении не указана, но для позиции Analytics Engineer в Лондоне с опытом от 3 лет рыночный диапазон составляет £65,000 – £85,000 в год. Учитывая специфику Risk & Reserving, компенсация может быть ближе к верхней границе. Пакет льгот, включая 7% пенсионных отчислений и бюджет на обучение, соответствует стандартам топовых финтех-компаний Великобритании.
Сопроводительное письмо
I am writing to express my strong interest in the Analytics Engineer (Risk & Reserving) position at Policy Expert. With over three years of experience in SQL-heavy data modeling and a deep understanding of dbt, I am particularly excited about the opportunity to lead the transition of your semantic layer from AWS to GCP. My background in building maintainable, analytics-ready datasets aligns perfectly with your goal of creating a single source of truth for exposure management and reserving workflows.
In my previous roles, I have focused on delivering reliable dbt pipelines and implementing rigorous data quality controls, which I understand is critical for insurance and actuarial data. I am well-versed in designing modular dimensions and facts that ensure metric consistency across platforms like Looker and Power BI. I look forward to the possibility of bringing my technical expertise and collaborative mindset to the Risk & Reserving team at Policy Expert to help drive your data foundations forward.
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Описание вакансии
Policy Expert – Analytics Engineer
🚀Are you ready to transform the insurance industry?
Policy Expert is a forward-thinking business that loves to get things done. Leveraging proprietary technology and smart data, we offer reliable products and a wow customer experience.
Having achieved rapid growth since being founded in 2011, we’ve won over 1.5 million customers in Home, Motor and Pet insurance and have been ranked the UK’s No.1-rated home insurer by Review Centre since 2013. 🏆
Hear from our team about what it's like working at Policy Expert ✨
What you’ll be doing:
We are looking for an analytics engineer to join our risk and reserving function and own the data foundations that power exposure management analytics and reserving workflows and lead the transition of our semantics layer from dbt Core + AWS to dbt Cloud + GCP, enabling consistent consumption via Looker and Power BI.
- Risk & reserving data modelling -Build and maintain curated datasets that represent policies, exposures, claims and reserving concepts in a consistent, analytics-ready way. This is done by designing clear, reusable models for exposure and reserving use-cases and maintaining metric definitions, segmentations, and business logic as a single source of truth.
- Pipeline ownership -Deliver reliable, performant dbt pipelines from source systems through to consumption layers. Develop, run, monitor and optimise transformations and schedules. Keep pipelines maintainable through clean structure, version control, code review, documentation.
- Data quality, controls, and reconciliation -Make the numbers trustworthy and explainable. Implement tests and checks (technical + business-rule validations). Own reconciliations to source systems / finance totals; investigate and resolve discrepancies.
- Enable exposure & reserving analytics -Translate analytical needs into data products that reduce manual effort for the team. Support reserving-ready structures (e.g., cohorts, development periods, triangles-ready extracts). Support exposure analytics (portfolio mix, trends, accumulations / monitoring views as required).
- Platform translation and migration (AWS → GCP) -Understand the current estate and re-platform it safely. Map existing AWS / dbt Core logic and dependencies; define a sensible migration sequence. Implement dbt Cloud on GCP standards (environments, CI / testing, scheduling, documentation) and migrate priority models with parity checks.
- Collaborate with the broader data / tech team -Ensure Risk & Reserving requirements are understood and delivered by the platform owners. Gather and clarify requirements from Risk & Reserving; turn them into precise, testable asks. Liaise with the internal data / GCP team on ingestion, modelling patterns, access, performance, and governance and ensure solutions meet Risk & Reserving aims (definitions, controls, SLAs).
- Documentation and stakeholder management -Keep delivery clear, traceable, and easy to adopt, both downstream (with the internal risk and reserving team) and upstream with the broader tech / data engineering community.
Who are you:
- 3+ years writing SQL (complex transformations, performance-aware querying, strong data modelling instincts).
- Ideally 2+ years working with insurance / risk / reserving / actuarial data (or closely related experience with similar controls and reconciliation needs).
- Analytics engineering strength - Builds maintainable, reusable datasets that stakeholders trust and reuse. Strong grasp of modelling patterns (dimensions/facts, modular layers, metric consistency).
- dbt capability - Hands-on experience with dbt Core (models, tests, documentation; macros a plus). Comfortable adopting dbt Cloud ways of working (environments, scheduling, CI patterns).
- Tech / SQL experience – understands the strengths and limitations of AWS Redshift / GCP and cloud environments and knows how to leverage these to meet the needs of risk and reserving analysis.
- Quality and reconciliation mindset - Designs controls, tests assumptions, reconciles to sources, and can explain numbers under scrutiny. Confident investigating discrepancies and driving issues to resolution.
- Cross-team collaboration - Able to liaise effectively with the broader data/tech team to get requirements delivered properly. Can translate Risk & Reserving needs into clear, testable requirements and hold the quality bar.
- Delivery habits - Uses version control (Git), communicates clearly, documents logic, and works effectively across multiple stakeholders.
(Desirable)
- Reserving data experience (triangles/dev periods/AY-UY).
- Looker and/or Power BI experience (governed metrics, semantic consistency).
- Python for validation/automation; familiarity with data observability approaches.
Benefits:
📍 This role will be based in our London office in a 50/50 Hybrid mode.
💸 We match your pension contributions up to 7%
🏥 Private medical & Dental cover
📚 Learning budget of £1,000 a year + Study leave (with encouragement to use it)
😁 Enhanced maternity & paternity
🚉 Travel season ticket loan
🎟️ Access to a wide selection of London O2 events and use of a Private Lounge
🌈 Employee Wellbeing Programme
🚪 Prayer room in Office
What We Stand for and Next Steps
“We pride ourselves on being an equal opportunity employer. We treat all applications equally and recruit based solely on an individual’s skills, knowledge, and experience. The quality and growing diversity of our team is a testament to this commitment”
At Policy Expert, we are committed to fostering an inclusive and supportive environment for all candidates. If you require any reasonable adjustments during the interview process to accommodate your needs, please do not hesitate to let us know. We are dedicated to ensuring every candidate has an equal opportunity to succeed and will work with you to provide the necessary support.
We aim to be in touch within 14 working days of your application – you will be notified if successful or unsuccessful. Please be encouraged to apply even if you do not meet all the requirements.
Useful links:
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Навыки
- Git
- AWS
- Python
- SQL
- Looker
- dbt
- Google Cloud Platform
- Power BI
- Data Modeling
- Amazon Redshift
Возможные вопросы на собеседовании
Проверка опыта работы с основным инструментом и понимания архитектуры данных.
Расскажите о самом сложном проекте по моделированию данных в dbt: как вы структурировали слои и обеспечивали переиспользование кода?
Вакансия предполагает миграцию с AWS на GCP. Важно понять, знаком ли кандидат с нюансами обеих платформ.
С какими основными трудностями вы сталкивались при переносе логики трансформации данных между разными облачными хранилищами (например, Redshift и BigQuery)?
Для сферы страхования (Risk & Reserving) точность данных критична.
Как вы организуете процесс сверки (reconciliation) данных между витринами и исходными финансовыми системами?
Проверка понимания бизнес-логики страхования.
Есть ли у вас опыт подготовки данных для построения треугольников развития убытков (triangles) или анализа когорт?
Оценка навыков взаимодействия с другими командами.
Как вы подходите к сбору требований от бизнес-стейкхолдеров и их переводу в технические задания для дата-инженеров?
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