Financial Data Scientist

Intellect Group
London
9 months ago
Applications closed

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Job Description

Financial Data Scientist – Unlock Insights, Drive Financial Innovation


Location:Hybrid – London

Salary:Competitive, with performance-based bonuses

Industry:Investment & Financial Services

Tech Stack:Python, R, SQL, Machine Learning, AI, Big Data

Salary £30,000 - £50,000 D.O.E


Benefits:Flexible working, excellent salary & bonuses, full health coverage, retirement plans, wellness programs, and career growth opportunities


Are you passionate about data, finance, and cutting-edge technology?


Join a leadinginvestment and financial services firmat the forefront ofdata-driven decision-making. We are looking for aFinancial Data Scientistto transform raw data into actionable insights that shapeinvestment strategies, risk models, and business growth.


This is an exciting opportunity to work with a company that valuesinnovation, collaboration, and continuous learning. Whether you come from afinance background with data expertiseor atech/data science background with an interest in finance, we want to hear from you!


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