Back to Modules
IS4000

Application of AI in Financial Services

1 CreditsTerm 2

Description

The Application of AI in Financial Services is an SMU-X experiential course delivered in partnership with Union Bank of Switzerland (UBS), providing students with immersive learning opportunities that bridge academic theory with industry practice. Students collaborate directly with UBS professionals to tackle authentic business challenges in financial services, developing innovative AI-driven solutions across domains such as trading, risk management, and banking operations. Generative AI will be the enabling technology for the course.Working in multidisciplinary teams under faculty mentorship, students engage in a comprehensive project lifecycle—from initial problem scoping and stakeholder analysis through solution design, development, and final client presentation. This industry-embedded approach ensures students gain practical experience with cutting-edge AI technologies, i.e. large language models (LLMs), while understanding their real-world application constraints and business impact within the financial services sector.

Requisites

Prerequisites: None

Co-requisites: None

Anti-requisites: None

Attributes

Department: SCIS

Course Level: Undergraduate

Tracks: IS/T4BS: Financial Technology Track

Areas: Digital Business Electives Finance Electives IT Solution Development Electives

Learning Outcomes

Course Objectives Upon completion of the course, students will be able to: ●      Analyze complex financial services business challenges to identify opportunities for AI-driven solutions. ●      Evaluate the suitability of different AI technologies and methodologies for specific financial industry applications. ●      Design and develop functional LLM-powered business applications that address real-world financial services problems. ●      Implement AI platform features to execute data analysis, application development, system integration, and workflow automation. ●      Apply project management methodologies and professional collaboration practices in industry partnership settings. ●      Assess and adapt to uncertainties and constraints inherent in technology-driven business projects. ●      Synthesize technical AI concepts with financial domain knowledge to create innovative, practical solutions. ●      Present and defend AI solution recommendations to industry stakeholders and clients Competencies 1. Implement LLM technologies to develop functional financial services applications 2. Integrate AI solutions with existing financial technology systems and workflows 3. Design AI architectures that meet financial industry security and performance standards 4. Apply financial services domain knowledge to identify AI implementation opportunities 5. Assess regulatory compliance requirements for AI solutions in financial contexts 6. Evaluate business risks and develop mitigation strategies for AI-driven financial applications 7. Construct business cases that demonstrate ROI and value creation for AI initiatives in finance

Graduate Learning Outcomes

Disciplinary knowledge, Critical thinking & problem solving, Collaboration and leadership, Ethics and social responsibility, Self-directed learning, Communication

Competencies

Applications Development, Problem-solving & analysis, Business Innovation