Detailed Course Outline
Day 1: Basics and Use Cases
Module 1: Introduction to AI and GenAI
Contents:
- Definitions and Concepts:
- AI: Overview of various AI types, from rule-based systems to deep learning.
 - GenAI: Explanation of generative models that produce content such as text, images, or music.
 - AI Agents: Interactive systems that independently perform tasks based on user interactions and environmental data.
 
 - Historical Development:
- Key milestones in AI development.
 - From symbolic AI to machine learning and the era of GenAI.
 
 - Market Potential and Current Trends:
- Global market size and growth rates in the AI sector.
 - Relevant industries: healthcare, retail, financial services, manufacturing.
 - Emerging technologies: transformer models, multimodal AI systems, AutoML.
 
 
Activity/Exercise:
- Group Work:
- Participants analyze the most common use cases in their respective industries.
 - Creation of a short presentation: How can AI/ GenAI/ AI agents deliver concrete improvements?
 
 
Module 2: Technologies and Tools for AI Solutions (3 hours)
Contents:
- AI Technology Basics:
- Difference between supervised, unsupervised, and reinforcement learning methods.
 - Structure of neural networks and how they recognize patterns in data.
 - Functionality of generative models such as GANs (Generative Adversarial Networks) and transformer architectures (e.g., GPT).
 
 - Hardware and Software Resources:
- GPUs, TPUs, and other specialized hardware for AI training and inference.
 - Cloud services (e.g., AWS, Azure, Google Cloud) for AI projects.
 - Open-source libraries: TensorFlow, PyTorch, Hugging Face Transformers.
 
 - Integrations and APIs:
- Overview of RESTful APIs and SDKs.
 - Ways to integrate AI models into existing software landscapes.
 - Security and privacy considerations when using AI services.
 
 
Activity/Exercise:
- Practical Demonstration:
- Participants work in groups with a simple generative model application, such as text or image generators.
 - They compare results and discuss implementation opportunities and challenges.
 
 
Day 2: Sales and Customer Focus
Module 3: Selling AI Products and Services
Contents:
- Understanding Products and Services:
- Differences between AI services (e.g., APIs, consulting), software products (e.g., pre-built AI solutions), and hardware solutions (e.g., AI-optimized hardware).
 - Use cases and benefits for various target audiences.
 
 - Communicating Customer Value:
- Presenting success stories and case studies.
 - Addressing common customer concerns (e.g., data sovereignty, implementation costs) and how to handle them.
 
 - Industry Examples:
- Using GenAI in marketing campaigns.
 - AI agents for process automation in call centers.
 - Hardware solutions for AI-powered image analysis in healthcare.
 
 
Activity/Exercise:
- Role-playing:
- Participants practice sales conversations with different customer types.
 - Peers act as customers, raising typical questions and objections.
 - Feedback session: Strengths and improvement areas.
 
 
Module 4: Strategies and Best Practices for AI Sales
Contents:
- Developing Sales Strategies:
- Market segmentation: How to identify potential customers.
 - Targeted outreach: Personalizing offers based on customer profiles.
 - Up-selling and cross-selling: Building a portfolio that extends beyond a single solution.
 
 - Building Customer Relationships:
- Ongoing engagement with customers: Collecting feedback and deriving improvements.
 - Long-term customer retention through training and support.
 
 - Best Practices:
- Case studies of successful AI implementations.
 - Key dos and don’ts in the sales process.
 - Adapting to technological changes and continuous learning strategies for sales teams.
 
 
Activity/Exercise:
- Workshop:
- Participants create a short pitch deck for an AI product or service.
 - Presentation in front of the group, followed by a feedback session.
 - Goal: Develop a convincing sales presentation that is practical and engaging.
 
 
Summary and Wrap-Up
- Open discussion about lessons learned.
 - Addressing any remaining questions.
 - Participants receive a brief summary of the discussed topics and links to additional resources.