As a member of the Commercial and Investment Banking Applied Artificial Intelligence/Machine Learning team, you will have the unique opportunity to be a critical player in our firm-wide efforts to shape the future of banking. Within this role, you will help transform how Know Your Customer and operations teams function, directly impacting the management and operations of the bank's corporate and investment banking services. You will be a key member of a team composed of data scientists, operations subject matter experts, and machine learning engineers, working together to design, develop, and deploy scalable machine learning solutions. Our vision is to create products that transform how the firm operates, deliver measurable impact, and have the potential for commercialization. A finance background is not required. If you are enthusiastic about leveraging machine learning and analytics to solve challenging business problems, we’d love to speak with you.
Responsibilities
Required qualifications, capabilities & skills
Master’s degree or PhD in a quantitative or computational disciplineConsiderable commercial experience in line with a capable individual contributor; developing and deploying data science and ML capabilities in production at scale.Strong Python development and debugging skills. Capable to develop high quality reusable code that can be leveraged from a larger group of data scientists to solve a broad spectrum of business use cases.Strong grasp of metrics, benchmarking, and evaluation methodologies for user-facing products powered by AI/ML.Deep knowledge of machine learning algorithms applied to solving business problems.Ability to work both individually and in collaboration with others, and to mentor junior team members.Posses a strategic mindset capable of deconstructing business challenges into solutions driven by AI. Ability to work in agile cross-functional and operations teams and drive deliverable outcomes.Ability to work with non-specialists in a partnership model, conveying information clearly and creates a sense of trust with stakeholders.
Preferred qualifications, capabilities & skills
Experience with deep learning frameworks (pytorch, tensorflow) Experience with big-data technologies (Spark, Hadoop) or distributed computation frameworks (Dask, Modin)Hands on experience with Natural Language Processing (NLP), Large Language Models (LLMs) and Agentic AI systems.Experience of creating and deploying microservicesKnowledge of MLOps concepts (CI/CD, versioning, reproducibility, observability) and development best practices