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Fraud Data Analyst

JR United Kingdom
York
1 week ago
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We're working with a leading division of a global research and insights company to hire a Data Analyst to support their data integrity and behavioural analytics efforts.

About the Team:
This team specialises in identifying high-quality participants for large-scale survey research. Ensuring the validity of this data is essential, especially in the face of challenges such as out-of-country fraud, identity simulation, and participants falsifying information to qualify for surveys. The team uses advanced behavioural analytics and proprietary technology to verify authenticity and ensure reliable data.

The Role:
As a Data Analyst, you will analyse large volumes of survey and marketing data to uncover behavioural patterns, detect anomalies, and support fraud prevention strategies. You'll be working closely with internal stakeholders to improve data quality and research outcomes.

Key Responsibilities:

Analyse complex datasets to identify trends, patterns, and irregularities

Conduct behavioural research to understand respondent actions and detect fraud

Use SQL and Python for data analysis

Investigate anomalies in survey data and flag non-compliant behaviour

Operate effectively in an agile, unstructured environment

What We're Looking For:

Strong analytical and critical thinking skills

A keen interest in behavioural data, fraud detection, or survey analytics

Experience working with large datasets and unstructured problems

Comfortable working across flexible, cross-functional teams

Experience with SQL and/or Python preferred

Details:

Hybrid working model: remote with occasional travel to Reading and London

Initial 3-6 month contract

Two-stage interview process focused on problem-solving, adaptability, and investigative thinking

If you're a curious, data-driven professional with a passion for research quality and behavioural insights, please get in touch to learn more or apply.


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