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Research Scientist (Machine Learning)

Lloyd's
Manchester
4 days ago
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Overview

Are you passionate about using AI and machine learning to solve real-world business challenges? Join us and help shape the future of Market Operations through cutting-edge technology. You'll collaborate with talented professionals, grow your skills, and make a meaningful impact on our business. At JPMorgan Chase, we empower you to innovate, automate, and deliver solutions that matter. Be part of a team where your ideas drive progress and your expertise is valued. As an Applied AI & ML Scientist in the Market Operations team, you will design, develop, and deploy AI/ML solutions that enhance operational efficiency and accuracy. You will collaborate with business stakeholders and technology partners to understand pain points, translate requirements into technical solutions, and ensure successful adoption of AI-driven tools. Your work will directly support Market Operations, driving impactful change and continuous improvement.

Responsibilities
  • Develop and implement advanced machine learning models and algorithms to solve operational challenges
  • Deploy AI/ML solutions for process automation, anomaly detection, document intelligence, and workflow optimization
  • Architect and oversee generative AI applications to automate and enhance business processes
  • Build and maintain production-grade AI/ML tools tailored to Market Operations
  • Monitor and improve the performance of deployed models and solutions
  • Analyze large datasets to identify trends, inefficiencies, and opportunities for automation
  • Collaborate with subject matter experts to gather requirements and validate solutions
  • Document methodologies, results, and best practices for knowledge sharing
Qualifications
  • BSc/MSc in Data Science, Computer Science, Artificial Intelligence, or a closely related field (or equivalent experience)
  • Strong foundation in AI/ML concepts and practical experience with data analysis, feature engineering, and model development
  • Experience working with large, complex datasets and applying statistical analysis
  • Hands‑on experience training, deploying, and maintaining machine learning models in production
  • Proficiency in Python and relevant AI/ML libraries (such as scikit‑learn, TensorFlow, PyTorch)
  • Experience with MLOps practices and tools for managing the machine learning lifecycle
  • Experience building and deploying Generative AI applications, including familiarity with LLMOps
  • Exposure to cloud platforms (such as AWS, GCP, Azure)
  • Demonstrated problem‑solving skills and ability to work independently or in small teams
  • Ability to communicate technical concepts clearly to business stakeholders and non‑technical audiences
  • Stay current with AI/ML advancements and apply relevant techniques to business problems
Preferred Qualifications, Capabilities, and Skills
  • PhD in Data Science, Computer Science, Artificial Intelligence, or a related field
  • Experience in financial services, banking, or Market Operations environments, Senior (5+ years of experience)


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