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Data Scientist - Fraud United Kingdom, Glasgow Jobs

2 Job Offers

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Senior Data Scientist
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Lead high-impact Data Science projects for a Corporate Bank, leveraging machine learning and big data (PySpark, AWS) to drive commercial value. Mentor a team and collaborate with stakeholders in London or Glasgow. Apply your Python expertise to transform billions of data points into actionable in...
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United Kingdom , London; Glasgow
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Not provided
barclays.co.uk Logo
Barclays
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Until further notice
Lead Data Scientist
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Lead Data Scientist role at Barclays, driving AI strategy and technical innovation. You will design scalable ML solutions, mentor a team, and extract insights from vast data reserves. This hybrid position offers flexible working from key UK hubs like London or Glasgow. Expertise in Python, PyTorc...
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United Kingdom , London; Glasgow; Manchester; Northampton
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barclays.co.uk Logo
Barclays
Expiration Date
Until further notice
Explore Data Scientist - Fraud jobs and discover a critical and dynamic career at the intersection of data science, machine learning, and financial security. Data Scientists specializing in fraud are the frontline defenders for organizations, leveraging advanced analytics to detect, prevent, and mitigate fraudulent activities in real-time. This profession is essential across industries like banking, fintech, e-commerce, insurance, and digital payments, where protecting assets and customer trust is paramount. Professionals in these roles apply their expertise to outsmart increasingly sophisticated fraudsters, making this field both challenging and highly impactful. A Data Scientist in fraud typically engages in a full lifecycle of analytical work. Core responsibilities involve ingesting and analyzing massive volumes of transactional and behavioral data to identify anomalous patterns indicative of fraud. This includes developing, training, and deploying machine learning models for classification, anomaly detection, and network analysis. Common tasks are feature engineering from complex datasets, building real-time scoring systems, and continuously monitoring model performance to reduce false positives and adapt to emerging fraud tactics. These scientists also collaborate closely with fraud analysts, engineers, and business stakeholders to translate model insights into actionable rules and operational procedures, ensuring a robust defense system. Typical skills and requirements for these positions are both technical and strategic. A strong educational background in data science, statistics, computer science, or a related quantitative field is standard, with many roles preferring advanced degrees. Proficiency in Python or R is essential, alongside deep experience with ML libraries like scikit-learn, TensorFlow, PyTorch, and XGBoost. Expertise in SQL for data manipulation and a solid understanding of big data technologies (Spark, Hadoop) and cloud platforms (AWS, GCP, Azure) for deploying scalable solutions are commonly required. Beyond technical prowess, successful candidates possess a keen analytical mindset, a deep understanding of fraud typologies, and the ability to communicate complex findings to non-technical audiences. The landscape of Data Scientist - Fraud jobs is evolving rapidly, offering professionals the chance to work on cutting-edge problems in AI and machine learning while providing tangible value by safeguarding financial systems and consumer data.

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