Thank you for sending your enquiry! One of our team members will contact you shortly.
Thank you for sending your booking! One of our team members will contact you shortly.
Course Outline
Introduction to Qwen for NLP
- Overview of Qwen's architecture and capabilities
- Setting up the environment and accessing Qwen API
- Key features and NLP-focused functionalities
Advanced Text Processing with Qwen
- Text generation and language modeling
- Sentiment analysis and emotion detection
- Summarization and paraphrasing
- Entity recognition and text classification
Integrating Qwen into NLP Workflows
- APIs and libraries for seamless integration
- Building pipelines for text preprocessing and analysis
- Deploying Qwen models in production environments
Customization and Fine-Tuning
- Adapting Qwen to specific NLP tasks
- Training custom models with domain-specific data
- Techniques for improving model performance
Evaluation and Performance Optimization
- Metrics for assessing NLP model quality
- Evaluating Qwen’s output and error analysis
- Optimizing computational efficiency
Case Studies and Best Practices
- Applications of Qwen in industry-specific NLP tasks
- Best practices for large-scale deployment
- Addressing challenges and limitations of Qwen
Summary and Next Steps
Requirements
- Advanced knowledge of natural language processing (NLP)
- Experience with AI model development
- Proficiency in Python programming
Audience
- NLP specialists
- Data scientists
- AI researchers
14 Hours