Get in Touch

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)

Upcoming Courses

Related Categories