Gen AI Specialist

Adecco
London
9 months ago
Applications closed

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Gen AI SpecialistLocation: Canary Wharf, London (3 days onsite)Contract Length: 10 monthsDaily Rate: £800 - £850 (inside IR35 via umbrella)Are you a seasoned Data Scientist with a passion for Generative AI? Our client is seeking a Gen AI Specialist to join their dynamic Technology team in Canary Wharf. This role offers an exciting opportunity to work on innovative solutions that address complex financial data challenges, particularly in credit risk management.Key Responsibilities:Lead the development and coordination of analytical plans, ensuring alignment with various teams.Manage deliverables in an agile environment while maintaining clear and effective communication with stakeholders.Present analytical findings, updates, and challenges to diverse audiences including business units, technology management, and risk review teams.Execute data modelling and cleaning processes utilising both internal and external data sources.Build predictive and prescriptive models through data manipulation and cleaning.Design, manage, and deploy analytical solutions leveraging Machine Learning (ML), Deep Learning (DL), and Large Language Models (LLMs) into production systems following the technology SDLC process.Implement features throughout the ML lifecycle-Development, Testing, Training, Production, and Monitoring-to ensure the scalability and reliability of solutions.Qualifications:PhD or master's degree in Computer Science, Data Science, St...

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