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
Module 1: Introduction to AI and Google Gemini
- Understanding Artificial Intelligence (AI).
- Overview of Google Gemini AI and its surrounding ecosystem
- Key features and benefits of Gemini compared to other AI models
- Hands-on Activity: Exploring Gemini AI via the Google AI Studio demo
Module 2: Understanding Large Language Models (LLMs)
- Core principles of large language models
- Architecture and mechanics of Gemini models
- Comparing Gemini with GPT and other leading models
- Practice Lab: Visualising tokenisation and model responses using sample prompts
Module 3: Getting Started with Gemini
- Setting up the development environment
- Utilising the Gemini API and SDK
- Authentication, tokens, and API keys
- Hands-on Lab: Executing your first Gemini prompt using Python
Module 4: Working with Gemini Models
- Exploring various Gemini model types and capabilities
- Selecting suitable models for language, image, or multimodal tasks
- Initialising and testing generative models
- Practical Exercise: Comparing outputs from text-to-text and image-to-text models
Module 5: Practical Applications and Use Cases
- Integrating Gemini AI into chat and Q&A applications
- Developing tools for semantic search and summarisation
- Ethical AI usage and addressing bias
- Group Project: Creating a 'Smart Research Assistant' using NotebookLM and Gemini
Module 6: Advanced Features and Customization
- Prompt optimisation and advanced context handling
- Using Gemini for code generation and debugging
- Fine-tuning workflows with Google Cloud Vertex AI
- Hands-on Activity: Customising model responses through parameters and temperature control
Module 7: Real-World Projects and Collaboration
- Collaborative project planning and workflow setup
- Integrating Gemini AI with other Google tools (Drive, Docs, Sheets)
- Team Project: Designing and deploying a small AI application (e.g., content summariser, chatbot, or idea generator)
- Peer review and discussion of project outcomes
Module 8: Evaluation and Future Directions
- Troubleshooting common issues in Gemini projects
- Exploring the Gemini API roadmap and upcoming features
- Best practices for AI governance and scalability
- Wrap-up Activity: Reflecting on practical lessons learned and potential career applications
Summary and Next Steps
Requirements
- Familiarity with fundamental AI concepts
- Experience working with APIs and cloud services
- Proficiency in Python programming
Target Audience
- Developers
- Data scientists
- AI enthusiasts
14 Hours
Testimonials (1)
Flow , vibe and topic on presentation