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formationbio
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SeniorГибридПолная занятость

Senior Data Engineer - Real World Data

Оценка ИИ

Отличная вакансия в высокотехнологичной компании с сильным составом инвесторов, конкурентной зарплатой и возможностью работать на стыке инженерии данных и науки о жизни.


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Сложность вакансии

ЛегкоСложно
Оценка ИИ

Высокая сложность обусловлена необходимостью сочетать глубокие навыки дата-инженерии (Snowflake, dbt, Dagster) со специфическими знаниями в области биомедицины (OMOP, ICD-10) и аналитическим мышлением для построения когорт пациентов.

Анализ зарплаты

Медиана175 000 $
Рынок150 000 $ – 210 000 $
Оценка ИИ

Предлагаемая зарплата ($204,500 - $267,000) находится значительно выше медианы рынка для Senior Data Engineer даже в таких дорогих локациях, как Нью-Йорк и Сан-Франциско, что отражает высокую ценность узкой специализации в Life Sciences.

Сопроводительное письмо

I am writing to express my strong interest in the Senior Data Engineer position within the Scientific Data Intelligence team at Formation Bio. With over five years of experience in data engineering and a deep focus on healthcare datasets, I am excited by your mission to accelerate drug development through AI and structured Real World Data. My background in building production-grade pipelines using Snowflake, dbt, and Dagster, combined with my experience in modeling EHR and claims data, aligns perfectly with the technical requirements of this role.

In my previous work, I have successfully constructed longitudinal patient cohorts and implemented clinical standards like OMOP to ensure data interoperability. I am particularly drawn to this role because it combines core data engineering with applied science and GenAI. I am eager to apply my expertise in causal inference frameworks and LLM-based entity extraction to help Formation Bio turn complex healthcare data into actionable scientific insights.

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Описание вакансии

About Formation Bio

*Formation Bio is a tech and AI driven pharma company differentiated by radically more efficient drug development.*

Advancements in AI and drug discovery are creating more candidate drugs than the industry can progress because of the high cost and time of clinical trials. Recognizing that this development bottleneck may ultimately limit the number of new medicines that can reach patients, Formation Bio, founded in 2016 as TrialSpark Inc., has built technology platforms, processes, and capabilities to accelerate all aspects of drug development and clinical trials. Formation Bio partners, acquires, or in-licenses drugs from pharma companies, research organizations, and biotechs to develop programs past clinical proof of concept and beyond, ultimately helping to bring new medicines to patients. The company is backed by investors across pharma and tech, including a16z, Sequoia, Sanofi, Thrive Capital, Sam Altman, John Doerr, Spark Capital, SV Angel Growth, and others.

You can read more at the following links:

At Formation Bio, our values are the driving force behind our mission to revolutionize the pharma industry. Every team and individual at the company shares these same values, and every team and individual plays a key part in our mission to bring new treatments to patients faster and more efficiently.

About the Position

We're looking for a Senior Data Engineer to join the Scientific Data Intelligence (SDI) team at Formation Bio to help transform Real World Data (RWD)—spanning electronic health records, claims, and other longitudinal patient data sources—into structured, analytics-ready assets. In this role, you'll be partnering closely with our Data Science team not only to model and transform data, but also to actively analyze it: answering research questions, generating evidence, and supporting scientific decision-making across our drug portfolio.

This position sits at the intersection of healthcare data engineering, real-world evidence analysis, and generative AI. While a strong foundation in building reliable, scalable pipelines is essential, you'll be equally expected to roll up your sleeves and work directly with the data—constructing cohorts, running analyses, and translating findings into actionable insights for scientific and business stakeholders.

The ideal candidate is a hybrid of data engineer and applied scientist: someone who can build the infrastructure and then use it, with familiarity in RWD study design, GenAI fluency (e.g., LLM-based entity extraction, summarization, classification), and strong technical expertise with modern data tooling. You'll play a key role in shaping how real-world patient data becomes discoverable, structured, and impactful across the organization.

Responsibilities

  • Model and transform raw EHR and claims data into clean, canonical, and analytics-ready datasets using SQL, Python, and clinical standards like OMOP.
  • Build and manage scalable data pipelines using Dagster for orchestration, dbt for transformation, and Snowflake as the primary compute and storage engine.
  • Conduct hands-on RWD analyses to answer scientific and strategic research questions—including disease epidemiology, treatment patterns, patient journey characterization, and comparative effectiveness.
  • Partner with Data Scientists and clinical leads to design and execute observational studies, translating scientific questions into well-structured, reproducible analyses.
  • Implement data validation, completeness, and observability frameworks to ensure real-world datasets are accurate, comprehensive, and trustworthy for downstream research and product use.
  • Apply Generative AI techniques within transformation and analysis layers to accelerate data structuring and insight generation.
  • Communicate findings clearly to both technical and non-technical stakeholders, including summaries for portfolio teams and leadership.

About You

  • You have 5+ years of experience in data engineering, ideally with at least 2 years working in healthcare or life sciences, including direct exposure to EHR or claims datasets.
  • You have experience with ontologies and biomedical schemas (e.g. UMLS, LOINC, ICD9/10, MeSH) and understand the modalities found within RWD — billing claims, lab results, visit notes.
  • You're fluent in SQL and Python, and you've built and maintained production-grade pipelines that support analytics or scientific workflows.
  • You have experience building longitudinal patient cohorts from EHR or claims data, including index date logic, washout periods, and follow-up window construction.
  • You have a solid understanding of the causal inference frameworks such as potential outcomes and target trial emulation.
  • You have working familiarity with real-world evidence study design concepts—such as active comparator new user designs, time-to-event outcomes, confounder adjustment, and causal discovery algorithms—sufficient to partner effectively with Data Scientists on causal inference workflows.
  • You value clarity, documentation, and structured thinking—especially when working with complex healthcare data.
  • You have hands-on expertise with modern data infrastructure, such as Snowflake, dbt, and Dagster.
  • You can balance upfront design with speed to execution, slowing down when it counts without getting stuck in the details.
  • Bonus: You've worked in regulated or privacy-sensitive data environments and are familiar with governance models for PHI or sensitive data.
  • Bonus: You have prior experience working with commercial RWD vendors (e.g. Truveta, Optum, Komodo, IQVIA) and understand the nuances of licensed claims and EHR datasets, including longitudinal patient journey construction and line-of-therapy sequencing.

Formation Bio is prioritizing hiring in key hubs, primarily the New York City and Boston metro areas. These positions will follow a hybrid work model with 1-3 days required at the office.  Applicants from the Research Triangle (NC) and San Francisco Bay Area may also be considered. *Please only apply if you reside in these locations or are willing to relocate.*

Compensation Range: $204,500 - $267,000

Salary ranges are informed by a number of factors including geographic location. The range provided includes base salary only. In addition to base salary, we offer equity, comprehensive benefits, generous perks, hybrid flexibility, and more. If this range doesn't match your expectations, please still apply because we may have something else for you.

You will receive consideration for employment without regard to race, color, religion, gender, gender identity or expression, sexual orientation, national origin, genetics, disability, age, or veteran status.

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Создайте идеальное резюме с помощью ИИ-агента

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Навыки

  • SQL
  • Python
  • Snowflake
  • dbt
  • Dagster
  • OMOP
  • Generative AI
  • Data Modeling
  • ETL
  • Healthcare Data
  • Causal Inference

Возможные вопросы на собеседовании

Проверка опыта работы со специфическими медицинскими стандартами, упомянутыми в вакансии.

Расскажите о вашем опыте работы с моделью данных OMOP или другими клиническими стандартами. С какими сложностями вы сталкивались при маппинге сырых данных EHR?

Вакансия требует навыков построения сложных аналитических структур.

Как бы вы спроектировали пайплайн для создания продольной когорты пациентов (longitudinal patient cohort), учитывая логику даты индексации и периоды вымывания (washout periods)?

Оценка навыков работы с современным стеком данных компании.

Опишите ваш опыт оптимизации производительности в Snowflake при работе с крупными наборами данных заявок (claims data) с использованием dbt.

Проверка владения методами причинно-следственного вывода, важными для этой роли.

Как вы подходите к обработке вмешивающихся факторов (confounders) при подготовке данных для обсервационных исследований?

Оценка инновационного подхода с использованием ИИ.

Как, по вашему мнению, генеративный ИИ может быть эффективно интегрирован в процесс очистки и структурирования неструктурированных медицинских заметок?

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formationbio
Страна
США
Зарплата
204 500 $ – 267 000 $