Fraud Data Analytics Senior Consultant
We are partnering with a leading global organisation to recruit a fraud data analytics specialist.
The team works at the forefront of data-driven fraud risk management, leveraging technologies such as machine learning, network analysis, graph analytics, and large language models to uncover hidden risks, identify suspicious behaviour, and support high-profile investigations.
This is an excellent opportunity to work on impactful projects with major financial institutions and multinational organisations, helping them detect, prevent, and investigate fraud and misconduct.
Key ResponsibilitiesPartner with clients, investigators, compliance teams, auditors, legal professionals, and regulators on complex and sensitive engagements.
Gather requirements, define project scope, and translate business challenges into analytical solutions.
Deliver end-to-end analytics projects, including data acquisition, engineering, transformation, analysis, visualisation, deployment, and stakeholder reporting.
Analyse large volumes of structured and unstructured data from diverse sources to identify patterns, anomalies, and potential risks.
Develop analytical models and algorithms to support fraud detection, financial crime monitoring, misconduct investigations, and regulatory compliance initiatives.
Apply advanced analytical techniques to detect suspicious transactions, behavioural patterns, and emerging risks.
Create compelling visualisations and reporting outputs that clearly communicate findings to technical and non-technical stakeholders.
Mentor and support junior team members, ensuring high-quality delivery across engagements.
Collaborate with technology, innovation, and business development teams to drive continuous improvement and growth.
Degree in a STEM discipline such as Computer Science, Engineering, Mathematics, Statistics, or equivalent practical experience.
Strong hands-on experience with Python, SQL, and modern data platforms such as Databricks, Azure Data Factory, or similar technologies.
Experience designing and delivering data analytics solutions across the full project lifecycle.
Excellent problem-solving, critical thinking, and analytical skills.
Ability to communicate complex technical concepts clearly to a wide range of stakeholders.
Experience working independently while managing multiple priorities and mentoring less experienced colleagues.
Exposure to financial crime, fraud, regulatory compliance, investigations, market surveillance, or risk management environments.
Consulting or client-facing experience.
Experience with:
Relational databases (SQL Server, PostgreSQL, Oracle, MySQL)
Data visualisation tools (Power BI, Tableau, Spotfire)
Cloud platforms, particularly Microsoft Azure
Big data technologies (Spark, Elasticsearch, Hadoop)
Statistical modelling and advanced analytics
Machine learning and pattern recognition techniques
Web technologies such as HTML and JavaScript