[15h Left] Data Science Manager

KDR Talent Solutions
Glasgow
3 months ago
Applications closed

Data Science Manager | £75k - £95k Base Salary + bonusand benefits | (Hybrid - with regular business travel to Glasgow(1-2 times a month))MUST HAVE BANKING EXPERIENCEWe’re excited to berecruiting on behalf of a Tier 1 Bank for an exceptional DataScience Manager to join their Advanced Analytics team. If you’repassionate about Artificial Intelligence (AI), Machine Learning(ML), and leading innovative projects that will shape the future ofbanking, this is the perfect opportunity! What You’ll Be Doing:Inthis role, you’ll be managing a team of 8 that are responsible forleading the development, deployment, and ongoing support of AI/MLmodels within one of the top financial institutions.You’ll beresponsible for managing models in production, ensuring seamlessoperation, and optimising performance. Your key responsibilitieswill include:Leading a team of talented data scientists & MLEngineers , driving advanced analytics and fostering acollaborative, innovative environment.Overseeing the AI/MLlifecycle ⏳ from ideation to deployment, ensuring best practices inML Ops.Managing governance and compliance frameworks ✅, ensuringAI/ML projects adhere to ethical and regulatory standards.Engagingwith key stakeholders , communicating AI strategies, and deliveringvaluable insights.Innovating by integrating advanced analytics intothe bank’s operations, enhancing decision-making processes.WhatWe’re Looking For:Our client is searching for a Data ScienceManager who combines technical expertise with strategic vision. Theideal candidate will have:Strong experience in AI/ML modeldevelopment and deployment. ⚙️ ️Experience building commercial GenAI & LLM solutionsA solid understanding of governance andcompliance in AI/ML technologies. ️Proven team leadership skills ,with the ability to develop and inspire a high-performingteam.Excellent stakeholder management skills , capable oftranslating complex AI strategies to various audiences.Why ThisRole?This is an outstanding opportunity to work with a Tier 1 Bankat the cutting edge of AI/ML innovation. You’ll join aforward-thinking team that values creativity, ethics, andcontinuous development. Acting as a delegate for the Head ofAdvanced Analytics , you’ll play a crucial role in steering AIstrategy and delivering impactful solutions.If youre ready to takethe next step in your career and lead AI-driven transformation at aprestigious financial institution, we’d love to hear from you!Apply today to be part of this exciting journey and help build thefuture of banking with advanced analytics! ✨

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