Course Outline

Introduction to Deep Learning for NLU

  • Overview of NLU vs NLP
  • Deep learning in natural language processing
  • Challenges specific to NLU models

Deep Architectures for NLU

  • Transformers and attention mechanisms
  • Recursive neural networks (RNNs) for semantic parsing
  • Pre-trained models and their role in NLU

Semantic Understanding and Deep Learning

  • Building models for semantic analysis
  • Contextual embeddings for NLU
  • Semantic similarity and entailment tasks

Advanced Techniques in NLU

  • Sequence-to-sequence models for understanding context
  • Deep learning for intent recognition
  • Transfer learning in NLU

Evaluating Deep NLU Models

  • Metrics for evaluating NLU performance
  • Handling bias and errors in deep NLU models
  • Improving interpretability in NLU systems

Scalability and Optimization for NLU Systems

  • Optimizing models for large-scale NLU tasks
  • Efficient use of computing resources
  • Model compression and quantization

Future Trends in Deep Learning for NLU

  • Innovations in transformers and language models
  • Exploring multi-modal NLU
  • Beyond NLP: Contextual and semantic-driven AI

Summary and Next Steps

Requirements

  • Advanced knowledge of natural language processing (NLP)
  • Experience with deep learning frameworks
  • Familiarity with neural network architectures

Audience

  • Data scientists
  • AI researchers
  • Machine learning engineers
 21 Hours

Related Categories