AI in Finance
This course is designed to equip finance professionals with the practical tools and techniques to integrate AI into their daily workflows without needing deep data science expertise. The focus is on hands-on learning, utilizing AutoML, explainability tools, and generative AI to solve real-world financial problems.
Participants will work on four practical challenges, covering AI applications in trading strategies, risk management, and AI copilots for automated financial insights.
By the end of the course, attendees will be able to immediately apply AI-driven techniques in their workplace, leveraging AI models for decision-making, automation, and analysis.
Recommend to a ColleagueThis course is also available in London Time Zone and New York Time Zone
- Finance professionals (traders, analysts, risk managers, portfolio managers) looking to leverage AI without becoming data scientists
- Professionals working in asset management, banking, and corporate finance who want to automate financial tasks, improve efficiency, and enhance decision-making
- Teams interested in AutoML, explainability, and AI-driven analytics to optimise their existing processes
- Anyone who wants to apply AI tools right away without needing deep coding or mathematical knowledge
- Understand the Role of AI in Finance: Gain insights into how AI is transforming financial markets, including applications in trading, risk management, and portfolio optimisation.
- Explore Key AI Techniques: Learn fundamental AI techniques such as machine learning, deep learning, and natural language processing, with a focus on their financial applications
- Utilise AI Tools for Financial Analysis: Gain hands-on experience with AI-powered tools, including AutoML and explainability frameworks, to streamline model development and interpretation
- Develop and Evaluate AI Models: Learn best practices for training, validating, and deploying AI models in finance, with an emphasis on robustness, interpretability, and performance
- Basic Python knowledge (e.g., understanding variables, loops, functions, and basic data manipulation with Pandas)
- No prior machine learning or AI experience is required – the course is structured to introduce and apply AI concepts in a user-friendly manner
- Familiarity with Excel, financial data, and basic statistics is helpful but not mandatory
Mayank Agrawal is a seasoned financial technology expert and AI specialist with over 20 years of extensive experience in developing and deploying AI-driven solutions in financial markets.
He was the Founder & CTO of IntelliBonds, where he developed AI-powered investment strategies and a portfolio optimisation framework using advanced neural networks and cloud technologies. Mayank held leadership roles at Citi Bank, Bloomberg, and other global financial institutions, where he worked on high-profile projects, including real-time risk analytics, algorithmic trading, and AI-driven credit rating predictions. He specialises in AI/ML model development, systematic trading strategies, and cloud-based financial platforms.
Mayank holds an Executive MBA in Strategy & Finance from London Business School and a Master’s degree in Computer Science from Banaras Hindu University.
Welcome & Overview
- Introduction to the course structure and objectives
- Overview of AI applications in finance
AI Fundamentals for Finance
- Basics of AI/ML concepts (supervised, unsupervised learning, regression, classification)
- Understanding data types and the importance of data preparation in finance
Practical 1: Data Preparation for AI Models
- Hands-on session: Participants will work with a dataset (e.g., stock prices or macroeconomic indicators)
- Using Python libraries like pandas for cleaning and preprocessing
- Feature engineering and dealing with missing values
Introduction to AutoML Tools
- Overview of AutoML and its relevance for finance professionals
- Introduction to popular AutoML tools (e.g., H2O AutoML, Azure Machine Learning)
- Demo: Building a model using AutoML without deep coding
Practical 2: Predicting Stock Prices with AutoML
- Hands-on session: Using an AutoML tool (Azure) to predict stock price movements
- Step-by-step guidance on setting up a project and evaluating model performance
- Discussion on the results and how to interpret them
Explainability in AI Models
- Importance of explainability in finance
- Overview of techniques like SHAP, LIME, and model interpretability
- Real-world examples of how explainability aids in regulatory compliance and decision-making
Practical 3: Model Explainability with SHAP
- Hands-on session: Using SHAP to interpret model predictions
- Application to a financial dataset (e.g., credit risk or loan default prediction)
- Understanding which features drive predictions and how to communicate results
Generative AI and Copilot Creation
- Overview of Generative AI (e.g., GPT models) and its applications in finance
- Building a simple financial Copilot (like Microsoft Copilot) using a pre-trained model
- Use cases in finance: generating reports, answering financial queries, and automating document generation
- Demo: Developing a Copilot for financial Q&A or report generation
Practical 4: Developing a Financial Copilot
- Hands-on session: Participants will create their own basic financial Copilot using a pre-trained LLM (e.g., GPT-3.5 or GPT-4)
- Integration with financial data for real-time query handling
- Discuss how this type of generative AI can be applied to various financial tasks
Recap
- Review of key concepts and practical sessions
- Q&A and feedback session
Course Details
This course is also available in London Time Zone and New York Time Zone
- To run this course at your organisation, contact us.
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Call now for more information on this course or to book:
Asia Pacific +65 3159 3707
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London Financial Studies is registered with GARP as an Approved Provider of Continuing Professional Development (CPD) credits.