Skip to content

Details

### 1. AI-Based Oracles in Manual Testing:

Learn how AI-powered tools automatically generate expected results, validate test completeness, and convert requirements into testable assertions to enhance manual testing effectiveness.

### 2. AI-Based Oracles in Automated Testing:

Discover how machine learning models dynamically generate assertions, detect anomalies, and create self-healing test scripts that reduce maintenance and improve reliability.

### 3. Techniques for Automated Oracle Generation:

Explore differential testing, invariant detection, mutation analysis, and anomaly detection techniques to automatically generate comprehensive test oracles.

### 4. Data Generation for Manual Tests:

Master template-based approaches, tool-assisted generation, and data masking techniques to create realistic, privacy-compliant test data for manual testing.

### 5. Data Generation for Automated Tests:

Learn programmatic data generation using factory patterns, database seeding, and AI techniques that integrate with CI/CD pipelines while maintaining data integrity.

### 6. Using AI to Generate Test Data:

Explore how GANs, VAEs, and LLMs create realistic synthetic test data that preserves statistical properties, discovers edge cases, and maintains privacy.

### 7. Using RAG for Context in Manual Testing:

Discover how Retrieval-Augmented Generation provides instant, contextual answers by combining AI with your documentation to enhance testing decisions.

### 8. Data Masking with AI:

Learn how AI automatically discovers and masks sensitive data using NLP, context-aware techniques, and synthetic generation while maintaining utility for testing.

Agile Testing
Load Testing and Performance
QA Tools and Practices
Quality Assurance
Software QA and Testing

Members are also interested in