1. Which approach in Generative AI is most effective for reducing false positives in automated test results?
- A. Supervised learning with predefined labels
- B. Reinforcement learning with continuous feedback loops
- C. Rule-based automation integrated with AI
- D. Traditional statistical analysis
2. When leveraging Generative AI for code suggestions in a CI/CD pipeline, what is the key risk associated with hallucinations in Large Language Models (LLMs)?
- A. Excessive computational overhead
- B. Generation of incorrect or insecure code snippets
- C. Increased test execution time
- D. Lack of cross-platform compatibility
3. In the context of DevTestOps, what makes synthetic data generation using Generative AI superior to traditional data augmentation?
- A. Ability to mimic real-world scenarios without bias
- B. Faster generation time with minimal resources
- C. Elimination of manual effort in dataset creation
- D. Enhanced visualization for data analysis
4. Which is the most significant barrier to scaling Generative AI solutions in DevTestOps pipelines globally?
- A. Limited availability of AI models for specific programming languages
- B. Lack of alignment between AI predictions and business logic
- C. High energy costs associated with running AI models
- D. Fragmented integration of AI tools across teams
5. In 2024-25, what is the primary advantage of integrating Generative AI into observability systems in DevTestOps?
- A. Automating system monitoring and ticket generation
- B. Predicting incidents based on real-time telemetry and historical trends
- C. Reducing downtime by faster log ingestion
- D. Enhancing manual debugging efforts
6. How can Generative AI improve chaos engineering practices in DevTestOps?
- A. Automating the injection of random failures
- B. Simulating hyper-realistic failure scenarios based on system behavior patterns
- C. Generating reports on infrastructure configuration errors
- D. Identifying redundant test cases automatically
7. What is a critical challenge in training domain-specific Generative AI models for DevTestOps in 2024-25?
- A. High cost of cloud-based AI training platforms
- B. Scarcity of open-source DevTestOps datasets
- C. Increased complexity in managing manual scripts
- D. Limited availability of programming libraries
8. What is the role of multi-modal Generative AI models in DevTestOps?
- A. Combining code and test data generation with visual debugging capabilities
- B. Supporting only text-based test case generation
- C. Automating deployment pipelines without human intervention
- D. Enhancing team communication with real-time chatbots
Answer: A. Combining code and test data generation with visual debugging capabilities
9. What is the primary consideration for adopting Generative AI-driven TestOps platforms in hybrid cloud environments?
- A. Ensuring real-time data transfer between public and private clouds
- B. Choosing AI models that rely only on edge devices
- C. Avoiding integration with container orchestration tools like Kubernetes
- D. Automating test environments without infrastructure as code (IaC)
10. By 2025, which advanced use case for Generative AI in DevTestOps is expected to dominate in predictive maintenance?
- A. Generating scripts for hardware diagnostics
- B. Predicting component failures based on anomaly detection in logs
- C. Automating test execution pipelines for legacy systems
- D. Providing live debugging suggestions during test runs