
About Accelerant
Accelerant is a data-driven risk exchange connecting underwriters of specialty insurance risk with risk capital providers. Accelerant was founded in 2018 by a group of longtime insurance industry executives and technology experts who shared a vision of rebuilding the way risk is exchanged – so that it works better, for everyone. The Accelerant risk exchange does business across more than 20 different countries and 250 specialty products, and we are proud that our insurers have been awarded an AM Best A- (Excellent) rating. For more information, please visit www.accelerant.ai.
Our objective is to reshape the value chain for our Members and Insurers using data driven insights. Our success will be based on the value data creates for our Members, risk capital providers, other suppliers and ourselves.
This role is part of a newly created and fast-growing division. The Data Office combines 3 teams; Data Products, Data Quality and Data Management. Today, the Data Quality team consists of the Data Quality Lead and a Data Quality Support Analyst.
The Data Quality Rules Analyst is responsible for front-line ownership of the validation lifecycle, translating Data Quality intent and standards into clear, consistent, and scalable deterministic controls across ingestion, data products, and systems.
The role focuses on rule specification, catalogue governance, control behaviour, and tuning - ensuring that large volumes of data quality controls are well-structured, interpretable, and maintainable as the platform scales.
Key Responsibilities
Validation Intake & Front-Line Support
Validation Rule Specification
Validation Catalogue Ownership
Control Monitoring, Interpretation & Tuning
Anomaly Detection & RCA Support
Must-Have Experience
· 3–6 years’ experience in data quality, data governance, analytics engineering, or data operations roles.
· Experience working with large, complex datasets with high volumes of data quality validations.
· Strong analytical mindset, able to interpret data behaviour, trends, distributions, outliers and cross-dataset consistency.
· Proven experience interpreting data quality issues at scale and forming evidence-based recommendations on rule refinement, thresholds, and upstream process improvements
· Experience defining and maintaining deterministic data quality controls, including clear rule intent, severity, thresholds and expected behaviour.
· Validation catalogue experience, including maintaining rule metadata, ownership and lifecycle status.
· Working knowledge of SQL sufficient to interrogate datasets independently, explore data distributions, validate assumptions behind proposed controls, and investigate unexpected validation behaviour
· Experience supporting Root Cause Analysis (RCA) through data analysis and evidence gathering.
· Ability to operate effectively in a maturing data quality environment, applying defined standards and guardrails while tooling and processes continue to evolve.
· Strong collaboration skills, working closely with Product, Technology and Data teams to ensure controls are implemented as specified.
Data
Remote (United Kingdom)
Remote (United States)
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