Engineer: Data Science

Mayer Brown
London, England
6 months ago
Applications closed

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Overview

Engineer: Data Science The Engineer: Data Science is responsible for the design, development, and delivery of advanced analytics and AI solutions in support of the firm's Data and AI strategy. This role works closely with the data science team, IT engineers, and business teams to implement reliable, scalable solutions that deliver measurable business value. The Engineer applies experience in data science, AI methods, and modern engineering practices to build and deploy solutions in production environments. The role emphasizes delivery excellence - ensuring that solutions are practical, efficient, and compliant with the firm's standards for security, confidentiality, and governance. Working closely with data science, IT, and data teams, the Engineer translates complex concepts into practical solutions that support critical business outcomes. Hours: Standard hours are 9:30am to 5:30pm with flexibility in accordance with the needs of the business. Our current working from home policy allows for two days working from home, subject to business need. This policy is subject to change and does not form part of contractual terms. Given the global nature of this role, there is often the need for off-hours (e.g., late evening and/or early morning) conference calls or video conferences.


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