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Course Outline
Introduction to Multimodal AI for Finance
- Overview of multimodal AI and its financial applications.
- Types of financial data: structured versus unstructured.
- Challenges in financial AI adoption.
Risk Analysis with Multimodal AI
- Fundamentals of financial risk management.
- Using AI for predictive risk assessment.
- Case study: AI-driven credit scoring models.
Fraud Detection Using AI
- Common types of financial fraud.
- AI techniques for anomaly detection.
- Real-time fraud detection strategies.
Natural Language Processing (NLP) for Financial Text Analysis
- Extracting insights from financial reports and news.
- Sentiment analysis for market prediction.
- Using Large Language Models (LLMs) for regulatory compliance and auditing.
Computer Vision in Finance
- Detecting fraudulent documents with AI.
- Analysing handwriting and signatures for authentication.
- Case study: AI-driven check verification.
Behavioural Analysis for Fraud Detection
- Tracking customer behaviour with AI.
- Biometric authentication and fraud prevention.
- Analysing transaction patterns for suspicious activities.
Developing and Deploying AI Models for Finance
- Data preprocessing and feature engineering.
- Training AI models for financial applications.
- Deploying AI-based fraud detection systems.
Regulatory and Ethical Considerations
- AI governance and compliance in financial institutions.
- Bias and fairness in financial AI models.
- Best practices for responsible AI use in finance.
Future Trends in AI-Driven Finance
- Advancements in AI for financial forecasting.
- Emerging AI techniques for fraud prevention.
- The role of AI in the future of banking and investments.
Summary and Next Steps
Requirements
- Fundamental knowledge of AI and machine learning concepts.
- Understanding of financial data and risk management.
- Experience with Python programming and data analysis.
Audience
- Finance professionals.
- Data analysts.
- Risk managers.
- AI engineers working in the financial sector.
14 Hours
Testimonials (1)
Trainer was very knowledgeable and easy to speak to