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Data Analyst

Job

Robert Half

Fall River, MA (In Person)

Full-Time

Posted 2 weeks ago (Updated 2 weeks ago) • Actively hiring

Expires 6/20/2026

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Job Description

We are looking for a Data Analyst to join a team in Somerset, New Jersey and turn complex information into actionable insight that strengthens fraud detection efforts. This contract opportunity with potential for a permanent role is ideal for someone who combines strong analytical thinking with practical experience identifying suspicious patterns, supporting investigations, and improving anti-fraud decision-making. The role offers the chance to work closely with business partners to interpret data, surface risk trends, and contribute to a more proactive fraud strategy.
Responsibilities:
  • Examine large data sets to identify unusual activity, emerging fraud patterns, and indicators of potential risk.
  • Create reports, dashboards, and analytical summaries that help stakeholders monitor fraud performance and make informed decisions.
  • Partner with investigation and business teams to translate data findings into practical actions that support fraud prevention efforts.
  • Evaluate transactional and behavioral information to uncover trends, root causes, and opportunities to reduce exposure.
  • Support fraud investigations by gathering, organizing, and interpreting relevant data from multiple sources.
  • Refine analytical methods and detection approaches to improve accuracy, efficiency, and responsiveness in anti-fraud initiatives.