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AI for Finance

Certificate Course

Start Date

AI-Driven Business Opportunities in the Financial Sector

The course-level learning outcomes are to ensure that participants are able to recall fundamental concepts of AI, including machine learning, neural networks, deep learning, and generative AI.
Participants will gain the ability to describe key applications in finance, including examples from banking, investment, and wealth management. They will be able to identify AI-enabled business opportunities within the financial sector and analyse the operational impact of AI-driven solutions on efficiency and decision-making in financial institutions. They will also be able to evaluate the potential risks and benefits of applying AI in a financial environment, considering ethical and operational factors. They will be able to formulate a strategy for AI implementation within the organisation.

Top Lecturers

co-pierre

Prof. Dr. Co-Pierre Georg

is Director of the Frankfurt School Blockchain Center (FSBC) and Professor of Practice in Digital Finance and Technology.  He joins Frankfurt School from the University of Cape Town (UCT), where he held prominent research chairs in blockchain technology and financial stability. At UCT, he established a Master's program in financial technology. He is also a Research Associate at Oxford's Martin School and Columbia University's Center for Global Legal Transformation. His research focuses on financial networks, privacy in distributed systems, digital property rights, and cybersecurity. He has published in top academic journals, including Operations Research, Journal of Economic Theory, and Nature Physics.

Programme Content

The certificate has three components. During the first component, which is taught in three days in person on Frankfurt School’s state of the art campus, participants will learn about the foundations of AI via a blend of face to face lectures by leading experts in the field, mixed assessments, guided practical exercises which provide an immersive experience. The second component is a set of practitioner seminars to provide participants a breadth of perspectives. These will be held remotely on a weekly basis. The last component is again three days on campus where participants will be able to apply their foundational knowledge to real world finance applications. This component also consists of face to face lectures, mixed assessments, but will also use several case studies. Group presentations provide participants the opportunity to solidify their understanding in an interactive and engaging way.

Module 1 - Foundations of Artificial Intelligence

Content

The learning outcomes for this course are designed to ensure that participants can recall key concepts of Artificial Intelligence (AI), covering fundamental topics such as machine learning, neural networks, and deep learning. The course will introduce participants to the origins and evolution of AI, along with its significant use cases in finance. By gaining an understanding of essential terminologies, including supervised and unsupervised learning, participants will be better equipped to comprehend more advanced AI applications. Additionally, they will learn to describe common AI use cases in the financial sector, with specific examples drawn from banking, investment, and insurance. This strong foundational understanding will prepare participants for more advanced topics later in the program.

Key Topics:
  • What is AI? Definitions and scope.
  • Evolution and milestones of AI.
  • Key concepts: machine learning, neural networks, deep learning and Generative AI. This includes a detailed discussion of core terminology and relevant vocabulary (e.g., supervised vs. unsupervised learning, model training, neural architectures) ensuring participants fully grasp the language of AI.
  • Use cases of AI in finance: banking, investment, and insurance.
  • Opportunities and limitations of current AI technologies.
     

Module 2 - Machine Learning Applications in Finance

Content

This course aims to deepen participants' understanding of machine learning and its various methods. It will provide insights into the main components of a machine learning model pipeline, which includes data collection, preprocessing, model training, and evaluation. Participants will explore practical applications in finance through real-world use cases, such as credit risk analysis, fraud detection, and algorithmic trading. Additionally, the course will cover key methods of machine learning, including supervised and unsupervised learning, as well as natural language processing. By the end of the course, participants will be equipped to determine whether machine learning is a suitable solution for common business cases in the financial services industry.

Key Topics
  • More detailed overview of ML methods: supervised + unsupervised learning, natural language processing
  • Ingredients of ML: Data collection, preprocessing, model training, and evaluation.
  • Introduction to use cases of machine learning in finance: Credit risk analysis, fraud detection, and algorithmic trading.
  • Hands-on coding session in Google Colab e.g. Predicting Loan Default Risk Using Machine Learning. Non-technical users will only need to modify small parameters or observe the outcomes after running the code.
     

Module 3 - Reinforcement Learning and Generative Artificial Intelligence

Content

This course will provide participants with an in-depth understanding of reinforcement learning and neural networks. It will introduce generative AI, including large language models (LLMs) and multimodal models, which represent a significant recent application of reinforcement learning. Participants will learn how these advanced methods are applied in finance, with a particular focus on process automation, financial forecasting, and report analysis.

The learning outcomes for this course include the ability to differentiate between various types of AI, such as machine learning, deep learning, reinforcement learning, and LLMs. Additionally, participants will describe how generative AI and multimodal models are utilized in finance, emphasizing their roles in automation, financial forecasting, and report analysis. Finally, they will apply prompt engineering techniques to optimize the output of these AI systems, ensuring practical application in real-world scenarios.

Key Topics
  • Fundamentals of Reinforcement learning
  • Introduction to Generative AI as an application of reinforcement learning: Core concepts, opportunities, risks, and benefits.
  • Exploring transformers architecture for text generation and multimodal AI.
  • LLMs: How they work and their applications in finance (e.g. forecasting, gathering market intelligence, process automation, and report analysis).
  • Multimodal models: Combining text, image, and audio e.g. analyzing diverse data sources (text, image, and audio) for enhanced decision-making and market insights.
  • Prompt engineering: Crafting effective prompts for LLMs (zero-shot, single-shot, and few-shot learning).
  • Further use cases e.g. automation in financial reporting, and customer support.
     

Module 4 - Exploring Recent Industry Trends

This module, composed of eight online lectures led by industry experts, provides participants with a comprehensive overview of AI applications in today’s financial services industry. Delivered in an open format, the module will allow participants to join other learners, fostering a highly interactive and collaborative experience. One of the module’s key goals is to build a community of like-minded practitioners and experts in the field.

By the end of this module, participants will be able to recall the most significant trends in how AI is used across the financial services industry. They will also discuss how various companies leverage AI to enhance their business strategies and evaluate both the opportunities and challenges associated with deploying AI solutions in-house.

Key Topics
  • Understanding AI applications across the bank.
  • How asset managers can leverage AI.
  • Detecting fraud using machine learning and AI.
  • Collaborating with AI companies
  • Prompt engineering
     

Module 5 - The Practice of Deploying AI Solutions

Content

The objective of this course is to equip participants with the knowledge required to develop a robust AI strategy for their organizations. Participants will learn about the key elements involved in creating and implementing such a strategy, including data governance, system integration, and the management of AI-related risks. The course will also highlight best practices for avoiding common pitfalls and ensuring that AI initiatives are closely aligned with broader business goals.

By the end of the course, participants will be able to explain which areas within an organization will be involved in the implementation of AI. They will gain skills in applying change management strategies to facilitate the adoption of AI technologies and will be prepared to develop a comprehensive AI strategy and roadmap that aligns with their organization’s business objectives. Additionally, participants will analyze the core components of an AI strategy to understand their roles in successful AI implementation within a financial organization.

Key Topics
  • Building an AI strategy and roadmap for organizational implementation.
  • Data governance and the importance of data quality for successful AI implementations.
  • Evaluating AI use cases based on potential impact, value proposition, and cost-effectiveness.
  • Integrating AI into existing systems and workflows.
  • Managing risks in AI implementation: Bias, transparency, and accountability.
  • Change management strategies for AI transformation within the organization.
  • Analyzing a real-world financial organization’s AI implementation strategy, including lessons learned and challenges faced.
  • Case study: DBS’ AI Journey

Module 6 - A Deep Dive into Financial Applications of AI

Content

The objective of this course is to provide participants with a comprehensive understanding of how AI can transform various departments within financial institutions. By exploring practical use cases in areas such as wealth management, credit risk, accounting, and compliance, participants will gain insights into the potential of AI to address specific business challenges.

Through this course, participants will learn to analyze how AI-driven solutions, including robo-advisors, can effectively tackle challenges in wealth management. They will also evaluate the effectiveness of AI applications in enhancing business processes across multiple areas within an organization, enabling them to make informed decisions about AI’s role in driving organizational improvements.

Key Topics
  • AI-driven applications in wealth management (e.g., robo-advisors).
  • Deep dive machine learning applications: Predictive modeling and risk management.
  • AI in compliance and regulatory monitoring.
  • Customer service automation and chatbots.
  • Knowledge management with AI.
  • Case Study: ChatGPT and Generative AI in Accounting
     

Module 7 - The Risks, Ethics, and Regulatory Implications of AI

Content

Equip participants with the knowledge and tools to address the ethical, regulatory, and risk management challenges posed by AI in the financial industry. Provide strategies for ensuring compliance with evolving regulations and mitigating risks.

Key Topics (The Risks, Ethics, and Regulatory Implications of AI):
  • Ethical challenges in AI: Bias, fairness, and accountability.
  • How to prevent and manage AI hallucinations.
  • Navigating the EU AI Act and other relevant regulatory frameworks.
  • Data privacy and security in AI deployment: Best practices for protecting sensitive information, with an emphasis on GDPR compliance.
  • AI-driven decision-making: Ensuring transparency, interpretability, and fairness.
  • Case studies of AI failures and ethical dilemmas, and best practices for mitigation.
  • Case study: How Aggressively Should a Bank Pursue AI?
  • Key Topics (Closing Session):
  • Emerging Technologies and how they could converge with AI: Quantum computing, blockchain, and autonomous systems.
  • AI’s impact on workforce transformation and skills required for future financial services.
Closing Session

The Future of AI: The closing session, lasting about 1.5h, will offer insights into the future of AI, focusing on trends and emerging technologies that will drive innovation and ensure competitiveness in the financial sector.

Exam

Assessments take the form of practical exercises and case studies where learners can demonstrate their ability to translate classroom learning into real-world insights. To give learners feedback on their progress, assessments will also include multiple choice tests. We value a lively and collaborative learning environment, so active class participation will also form part of the assessment. A group presentation (PowerPoint) will be required on the last day of the course.

  • The final grade will be made up as follows

  • 40% Multiple choice test

  • 30% Active class participation

  • 30% Group presentation on the last day of the course
     

Key Facts

Degree

Certified Financial AI Expert

Target Group

The target group comprises, firstly, division managers, business managers, interested specialists and managers in the financial industry (banks, insurance companies and IT service providers).

For example, Division Manager, Head of Division, Regional Manager, Business Unit Manager, Business Manager, Financial Manager, Portfolio Manager, Investment Manager, Financial Analyst, Risk Analyst, Business Analyst, Compliance Officer

Secondly, the target audience is comprised of individuals responsible for strategic planning, technological implementation, driving innovation, and enhancing customer experience within the banking sector.

For example, Chief Digital Officer (CDO), Head of Digital Strategy, Chief Information Officer (CIO), Head of Innovation, Digital Transformation Manager, IT Transformation Manager, Cloud Architect, Data Scientist, Digital Product Manager, Customer Experience Manager (Digital), Business Analyst (Digital Transformation), Digital Innovation Specialist

Requirements

While prior experience with programming is not required, a basic understanding of IT is helpful. There will be guided practical exercises All participants should bring laptops with them to work on practical exercises during the course.

Language

English

Duration

12 days

Dates Spring 2025

Module 1
05.05.2025 on campus

Module 2
06.05.2025 on campus

Module 3
07.05.2025 on campus

Module 4
(à 90 min online)
12.05.2025
19.05.2025
26.05.2025
03.06.2025
09.06.2025
16.06.2025

Module 5
30.06.2025 on campus

Module 6
01.07.2025 on campus

Module 7
02.07.2025 on campus

Exam
Integrated into course

Dates Autumn 2025

Module 1
08.09.2025 on campus

Module 2
09.09.2025 on campus

Module 3
10.09.2025 on campus

Module 4
(à 90 min online)
15.09.2025
22.09.2025
29.09.2025
06.10.2025
13.10.2025
20.10.2025

Module 5
27.10.2025 on campus

Module 6
28.10.2025 on campus

Module 7
29.10.2025 on campus

Exam
Integrated into course

Price

Total fee: EUR 7,500.Course fees are exempt from VAT.