Course Outline

Introduction to Domain-Specific Fine-Tuning

  • Overview of fine-tuning techniques
  • Challenges in the financial domain
  • Case studies of AI in finance

Pre-trained Models for Financial Applications

  • Introduction to popular pre-trained models (e.g., GPT, BERT)
  • Selecting appropriate models for financial tasks
  • Data preparation for fine-tuning in finance

Fine-Tuning for Key Financial Tasks

  • Fraud detection using machine learning models
  • Risk assessment with predictive modeling
  • Building automated financial advisory systems

Addressing Financial Data Challenges

  • Handling sensitive and imbalanced data
  • Ensuring data privacy and security
  • Integrating financial regulations into AI workflows

Ethical and Regulatory Considerations

  • Ethical AI practices in the financial industry
  • Compliance with GDPR and SOX
  • Maintaining transparency in AI models

Scaling and Deploying Models

  • Optimizing models for deployment in production
  • Monitoring and maintaining model performance
  • Best practices for scalability in financial applications

Real-World Applications and Case Studies

  • Fraud detection systems
  • Risk modeling for investment portfolios
  • AI-powered customer service in finance

Summary and Next Steps

Requirements

  • Basic understanding of machine learning
  • Familiarity with Python programming
  • Knowledge of financial concepts and terminology

Audience

  • Financial analysts
  • AI professionals in finance
 21 Hours

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