- Страна
- США
- Зарплата
- 153 000 $ – 179 000 $
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Senior Data Quality Analyst
Высокая оценка обусловлена социально значимой миссией компании, прозрачной и конкурентной заработной платой, а также четко определенными обязанностями. Роль предлагает реальное влияние на продукт и использование современного стека технологий (Snowflake, AI tools).
Сложность вакансии
Роль требует глубокого понимания специфики медицинских данных (claims data) и высокого уровня владения SQL. Кандидат должен обладать не только техническими навыками, но и аналитическим чутьем для выявления логических ошибок в данных, которые не фиксируются автоматическими тестами.
Анализ зарплаты
Предложенная зарплата в диапазоне $153,000 – $179,000 для Нью-Йорка находится на верхнем уровне рыночных ожиданий для Senior Data Quality ролей. Это подчеркивает высокую ценность узкой специализации в Healthcare Data.
Сопроводительное письмо
I am writing to express my strong interest in the Senior Data Quality Analyst position at Komodo Health. With over six years of experience in data analysis and a deep specialization in healthcare claims data, I have developed a keen intuition for identifying analytical anomalies that automated tests often miss. My background in querying large-scale datasets in Snowflake and my commitment to data integrity align perfectly with your mission to provide a precise view of the U.S. healthcare system.
In my previous roles, I have consistently bridged the gap between technical engineering outputs and actionable business insights. I understand that a pipeline running successfully is only half the battle; the data must tell a coherent and accurate story for the end customer. I am particularly drawn to this role because of its focus on independent validation and the opportunity to formalize quality ownership within the Data Product organization. I am eager to bring my analytical rigor and SQL expertise to the DPQ team to ensure every release meets the high standards Komodo Health is known for.
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Откликнитесь в komodohealth уже сейчас
Присоединяйтесь к Komodo Health, чтобы обеспечивать качество данных, которые спасают жизни, и станьте ключевым голосом в выпуске инновационных медицинских продуктов!
Описание вакансии
We Breathe Life Into Data
At Komodo Health, our mission is to reduce the global burden of disease. And we believe that smarter use of data is essential to this mission. That’s why we built the Healthcare Map — the industry’s largest, most complete, precise view of the U.S. healthcare system — by combining de-identified, real-world patient data with innovative algorithms and decades of clinical experience. The Healthcare Map serves as our foundation for a powerful suite of software applications, helping us answer healthcare’s most complex questions for our partners. Across the healthcare ecosystem, we’re helping our clients unlock critical insights to track detailed patient behaviors and treatment patterns, identify gaps in care, address unmet patient needs, and reduce the global burden of disease.
As we pursue these goals, it remains essential to us that we stay grounded in our values: be awesome, seek growth, deliver “wow,” and enjoy the ride. At Komodo, you will be joining a team of ambitious, supportive Dragons with diverse backgrounds but a shared passion to deliver on our mission to reduce the burden of disease — and enjoy the journey along the way.
The Opportunity at Komodo Health
Quality is core to Komodo Health’s mission to reduce the global burden of disease. As we scale the Healthcare Map® and AI-driven products, the need for independent, rigorous data quality oversight is critical.
We’re not hiring a traditional QA or testing specialist. We’re looking for an analytically rigorous, detail-oriented professional who knows pipelines can run flawlessly yet produce analytically wrong data—and that meeting specs doesn’t always mean meeting customer needs.
This is where the Senior Data Quality Analyst comes in. You’ll be the independent voice on data outputs—asking not just “did it run?” but “does this make sense for the customer?” Grounded in how customers use healthcare data, you’ll drive the analysis and quality monitoring needed to ensure it delivers real value.
Role Mission & Mandate
The Senior Data Quality Analyst will own three standing operational responsibilities that are critical to Komodo’s weekly data delivery and major version release process:
- Data output validation: Run pre/post-release comparisons across key attributes to ensure changes meet data quality standards—not just engineering specs.
- Bug investigation support: Investigate issues from customer complaints and monitoring, document findings, and partner with engineering on root cause and resolution.
- Weekly publication review preparation: Assemble the execution summary, test coverage audit, and issue disposition list to support DPQ’s Monday release recommendation.
Why This Role, Why Now
Komodo’s Data Product org is evolving—formalizing quality ownership, embedding automated QA, and establishing DPQ as the independent voice for every release. You’re joining at the moment that authority is being defined and put into practice.
Looking back on your first 12 months at Komodo Health, you will have…
I. Data Output Validation (primary focus)
The core of this role is independently assessing whether Komodo’s data outputs are analytically sound—ensuring the data tells the right story for customers, not just that the engineering works.
- Release validation: Design and run pre/post-release comparisons across key attributes (patient counts, claim volumes, fill rates, deduplication, payer attribution, provider coverage).
- Anomaly identification: Surface and document issues missed by automated tests—valid but suspicious patterns like demographic shifts, volume changes, or rule edge cases.
- Disposition recommendations: For each issue, assess what changed, customer impact, and recommend action (approve, conditional approve, hold, or escalate).
- Coverage documentation: Track what was tested, what passed, and accepted risks for each release—creating an auditable quality trail.
II. Bug Investigation & Root Cause Analysis
Data quality issues rarely surface clearly—this role requires the rigor to navigate ambiguity and the precision to communicate findings to both technical and non-technical stakeholders.
- Issue triage: Review and prioritize DPQ Jira issues, distinguishing data output problems (DPQ), pipeline failures (engineering), and cases needing joint investigation.
- Hands-on investigation:Query Snowflake to trace anomalies to source, validate against expectations, and rule out alternatives.
- Findings documentation: Produce clear reports outlining the issue, evidence, likely cause, and next steps for both technical and non-technical audiences.
- Resolution coordination: Partner with Data Engineering and Architects to drive resolution and verify fixes address the root issue.
III. Weekly Publication Review Preparation
Each week, Komodo publishes updated data. DPQ owns the release recommendation at the Monday meeting, and this role assembles the inputs that inform that decision.
- Pipeline execution summary: Compile a weekly record of which data pipelines ran, their completion status, any anomalies in run time or output volume, and a comparison against expected behavior.
- Test coverage audit: For each pipeline that ran during the week, document which quality checks were expected to execute and which did, surfacing any gaps in coverage that require manual review or escalation.
- Issue consolidation: Aggregate all quality issues raised during the week — from automated alerts, manual testing, and customer reports — into a single structured view with status, severity, and recommended disposition.
- Release recommendation package: Prepare the DPQ release recommendation document in advance of the Monday meeting, enabling DPQ leadership to review and present a confident, evidence-based recommendation.
What you bring to Komodo Health:
This role rewards people who are energized by the gap between “it ran as designed” and “it’s actually right.” The ideal candidate is:
- Intellectually curious: Driven to investigate the unknown in complex data—never taking outputs at face value and always digging for root cause.
- Analytically rigorous: Go beyond error checks—spot missing data, unexpected trends, and subtle signals that something’s off.
- Customer-aware: Define quality by whether customers can answer real healthcare questions—not just whether tests pass.
- Precise communicator: Write clear, actionable reports for engineers and accessible summaries for non-technical partners.
- Operationally reliable: Consistently deliver a complete, on-time release package for the weekly publication meeting.
Technical Skills & Experience:
- Experience: 6+ years of experience in data quality, data analysis, or analytics engineering — preferably in healthcare, life sciences, or another domain with complex, multi-source data.
- SQL proficiency: Strong SQL skills for large-scale analysis—joins, window functions, aggregations, and tracing data lineage. Snowflake preferred.
- Data investigation: Proven ability to work through ambiguous issues from signal to root cause—ruling out as well as ruling in.
- Structured QA process: Experience designing or executing pre/post release testing, including defining attributes, tolerances, and escalation criteria.
- Python (preferred): Comfortable using Python for analysis, validation, and light automation—able to read and adapt existing scripts.
- Healthcare data (required): Familiarity with claims data (medical, pharmacy, enrollment) and common quality patterns and failure modes.
Expectations of AI Use in this role (required):
- Ability to leverage AI tools (Gemini, Claude, Cursor, etc.) to enhance personal productivity, streamline workflows, content and visualization creation.
What This Role Is Not:
We want candidates to be clear-eyed about the scope of this role:
- This is not a data engineering role—you won’t build or maintain pipelines.
- This is not a software QA role—you won’t write unit tests, manage CI/CD, or review code.
- This is not a pure reporting role — you will be doing hands-on analytical work with real data, not summarizing dashboards others built.
- This is a data-first role where analytical judgment and quality intuition matter as much as execution.
#LIRemote
The pay range for each job posting reflects a minimum and maximum range of annual base pay that we reasonably expect to pay for this position within the US. We carefully consider multiple business-related factors when determining compensation, including job-related skills, work experience, geographic work location, relevant training and certifications, business needs and market demands.
The starting annual base pay for this role is listed below. This position may be eligible for performance-based bonuses as determined in the Company’s sole discretion and in accordance with a written agreement or plan. This role may also be eligible for equity awards. In addition, this role is eligible for benefits including, but not limited to, comprehensive health, dental, and vision insurance; flexible time off and holidays; 401(k) with company match; disability insurance and life insurance; and leaves of absence in accordance with applicable state and local laws and regulations and company policy.
San Francisco Bay Area and New York City:
$153,000—$179,000 USD
All Other US Locations:
$133,000—$156,000 USD
Komodo's AI Standard
At Komodo, we're not just witnessing the AI revolution – we're leading it. This is a pivotal moment in time, where being first to market with AI transforms industries and sets the bar. We've already established industry leadership in leveraging AI to revolutionize healthcare, and we expect every team member to contribute. AI here isn't optional; it's foundational. We expect you to integrate AI into your daily work – from summarizing documents to automating workflows and uncovering insights. This isn't just about efficiency; it's about making every moment more meaningful, building on trust in AI, and driving our collective success.
*Join us in shaping the future of healthcare intelligence.*
Where You’ll Work**
Komodo Health has a hybrid work model with hubs in San Francisco, New York City, and Chicago. Roles vary — some can be performed from anywhere in the country, others are scoped to a specific region, and some are based near one of our hubs. For hub-based Dragons, we're building intentional in-office rhythms alongside the flexibility that's core to how we work. Whatever your setup, expectations will always be clear before you join.
Equal Opportunity Statement
Komodo Health provides equal employment opportunities to all applicants and employees. We prohibit discrimination and harassment of any type with regard to race, color, religion, age, sex, national origin, disability status, genetics, protected veteran status, sexual orientation, gender identity or expression, or any other characteristic protected by federal, state, or local laws.
By submitting your application, you acknowledge that you have read and understand Komodo Health’s Privacy Notice for Employees and Contractors.
This notice explains how we collect, use, and retain applicant data.
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Навыки
- SQL
- Snowflake
- Python
- Data Quality
- Data Analysis
- Healthcare Data
- Analytics Engineering
- Jira
Возможные вопросы на собеседовании
Проверка опыта работы со специфическими медицинскими данными, что является ключевым требованием.
Опишите ваш опыт работы с данными медицинских заявок (claims data). С какими типичными аномалиями или проблемами качества вы сталкивались в этих наборах данных?
Оценка способности кандидата находить сложные логические ошибки.
Приведите пример случая, когда инженерные тесты прошли успешно, но данные оказались аналитически неверными. Как вы это обнаружили и как решили проблему?
Проверка технических навыков работы с большими данными.
Какие сложные функции SQL (например, оконные функции или сложные джойны) вы чаще всего используете для проверки целостности данных и отслеживания их происхождения (lineage)?
Оценка навыков приоритизации и работы в условиях релизных циклов.
Как вы подходите к оценке критичности найденного бага перед релизом? В каких случаях вы бы рекомендовали остановить выпуск обновления?
Проверка готовности использовать современные инструменты для повышения эффективности.
Как вы используете инструменты ИИ (например, Gemini или Claude) в своей повседневной работе для анализа данных или автоматизации проверок?
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- Страна
- США
- Зарплата
- 153 000 $ – 179 000 $