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 Google AI Studio
- Core features and capabilities
- Understanding workflow components
- Exploring the Google AI model ecosystem
Designing AI Workflows
- Structuring end-to-end workflows
- Choosing components for automation
- Managing inputs, outputs, and parameters
Model Integration and API Usage
- Connecting AI Studio with Google AI APIs
- Integrating custom and third-party models
- Building reusable components
Testing and Validation
- Creating test scenarios
- Validating workflow reliability
- Debugging model interactions
Performance Optimization
- Improving response speed and efficiency
- Managing resource usage
- Scaling workflows for production
Security and Compliance
- Access control and user management
- Data protection principles
- Ensuring secure API communication
Monitoring and Maintenance
- Monitoring workflow performance
- Logging and analytics
- Lifecycle management for deployed workflows
Extending AI Studio Workflows
- Integrating with external tools
- Automating with cloud functions
- Enhancing functionality using third-party services
Summary and Next Steps
Requirements
- An understanding of AI model development workflows
- Experience with cloud-based tools or platforms
- Familiarity with prompt engineering concepts
Audience
- AI operations teams
- DevOps professionals
- System administrators
14 Hours