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Beginnt 5 June 2026 08:58

Endet 5 June 2026

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Preventing Toxicity and Unconscious Biases Using Large Language and Deep Learning Models

Discover how large language models and BERT transformers can detect and prevent unconscious biases in AI systems, achieving 98.7% accuracy across diverse data sources and cultural contexts.
OpenInfra Foundation via YouTube

OpenInfra Foundation

6076 Kurse


40 minutes

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Übersicht

Discover how large language models and BERT transformers can detect and prevent unconscious biases in AI systems, achieving 98.7% accuracy across diverse data sources and cultural contexts.

Lehrplan

  • Introduction to AI Bias and Toxicity
  • Overview of biases in AI systems
    Impact of toxicity in AI-generated content
  • Large Language Models: Fundamentals
  • Structure and function of large language models
    Overview of BERT and transformers
  • Detecting Biases with AI
  • Techniques for identifying bias
    Evaluating model performance in bias detection
  • Techniques for Mitigating AI Biases
  • Algorithmic fairness
    Data preprocessing and augmentation strategies
  • Large Language Models in Practice
  • Training BERT for bias detection
    Fine-tuning models for specific cultural contexts
  • Evaluating and Measuring Model Performance
  • Accuracy, precision, and recall metrics
    Achieving and measuring 98.7% accuracy
  • Case Studies
  • Real-world applications and their challenges
    Analysis of successful bias mitigation
  • Ethical Considerations and Best Practices
  • Developing ethical AI systems
    Guidelines for fairness and transparency
  • Practical Workshop
  • Hands-on training with BERT-based models
    Bias detection and mitigation exercises
  • Conclusion and Future Directions
  • Emerging trends and technologies in AI fairness
    Future opportunities for research and development

Fachgebiete

Data Science