Data Scientist

Risk Solution Group
London
1 month ago
Applications closed

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Data Scientist

Data Scientist

Data Scientist

Data Scientist - London

Data Scientist | London | AI-Powered SaaS Company

Data Scientist - Remote

About the business:

LexisNexis Risk Solutions is the essential partner in the assessment of risk. Within our Business Services vertical, we offer a multitude of solutions focused on helping businesses of all sizes drive higher revenue growth, maximize operational efficiencies, and improve customer experience. Our solutions help our customers solve difficult problems in the areas of Anti-Money Laundering/Counter Terrorist Financing, Identity Authentication & Verification, Fraud and Credit Risk mitigation and Customer Data Management. You can learn more about LexisNexis Risk at the link below,https://risk.lexisnexis.com.

All the relevant skills, qualifications and experience that a successful applicant will need are listed in the following description.About the team:

You will be part of a team who use global data from the largest real-time fraud detection platform to craft solutions for our enterprise customers.About the role:

Your experience with data analysis, statistical modelling, and machine learning will lead to immediate real-world impact in the form of lower customer friction, reduced fraud losses and as a result, increased customer profitability. You’ll leverage a real-time platform analysing billions of transactions per month for some of the largest companies operating in Financial Services, Insurance, e-Commerce, and On-Demand Services. These tools will allow you to attain a unique perspective of the Internet, and every persona connected to it. On top of driving innovation projects, you’ll be continually collaborating with internal product and engineering teams, customer-facing account teams, and external business leaders and risk managers. The comprehensive models you build will go head-to-head against some of the most motivated attackers in the world to protect billions in revenue.Responsibilities:

Scoping, developing, and implementing machine learning or rule-based models following best practice, to banking model governance standards.Using your strong knowledge of SQL and Python plus quantitative skills to define features that capture evolving fraudster behaviours.Develop internal tools to streamline the model training pipeline and analytics workflows.Applying your curiosity and problem-solving skills to transform uncertainty into value-add opportunities.Using your strong attention to detail and ability to craft a story through data, delivering industry-leading presentations for external and executive audiences.Building an extensive knowledge of cybercrime – account takeover, scams, social engineering, Card Not Present (CNP) fraud, money laundering and mule fraud etc.Employing your multi-tasking and prioritisation skills to excel in a fast-paced environment with frequently changing priorities.Requirements:

Experience in a data science role, ideally within the fraud, risk, or payments domain.Proficiency in Python and SQL (BI tools such as SuperSet, Tableau or PowerBI is a bonus).Hands-on experience in machine learning model development, evaluation, and production deployment, with familiarity in MLOps principles to build scalable and standardised workflows and implement effective ML monitoring systems.Proven ability to create polished presentations and effectively communicate insights to customers with attention to detail.Have extensive multi-tasking and prioritisation skills. Needs to excel in fast paced environment with frequently changing priorities.

Learn more about the LexisNexis Risk team and how we work here.#LI-PL1#LI-Hybrid At LexisNexis Risk Solutions, having diverse employees with different perspectives is key to creating innovative new products for our global customers. We have 30 diversity employee networks globally and prioritize inclusive leadership and equitable processes as part of our culture. Our aim is for every employee to be the best version of themselves. We would actively welcome applications from candidates of diverse backgrounds and underrepresented groups.We are committed to providing a fair and accessible hiring process. If you have a disability or other need that requires accommodation or adjustment, please let us know by completing our Applicant Request Support Form:https://forms.office.com/r/eVgFxjLmAK.Pleaseread our Candidate Privacy Policy.

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