1. Approach to Future Analysis
1.1 How to Identify a Topic
The first step in any future-oriented analysis is to define the right topic. This can be done through:
- Monitoring market trends via sources like Statista, McKinsey, or industry-specific reports
- Using AI-powered trend detection tools such as Google Trends or NLP-based document analysis
- Strengthening analytical thinking by asking: Where are the pain points? Which technologies are emerging? How is customer behavior evolving?
Key Insight: Relevant topics are hidden in change. Spotting these early can become a competitive advantage.
Dashboard view of an AI-based market analysis
1.2 Developing a Precise Question
A clear research question keeps the analysis focused and insightful.
- Methods like the 5 Whys or Design Thinking help identify core issues.
- AI-based text analysis tools support refining wording and narrowing down topic scopes.
- Example question: “How will AI transform customer service in the insurance sector by 2030?”
Key Insight: Good questions lead to valuable insights. AI can support the process, but human context remains essential.
Example of an AI-generated SWOT analysis
1.3 Defining Goals Based on the Question
Goals bring structure and direction. The OKR method (Objectives and Key Results) is especially effective here.
- Clarify output vs. outcome
- Use AI to identify relevant KPIs from your data and predict realistic benchmarks
- Example: To forecast customer behavior, AI can analyze historic patterns and build predictive models.
Key Insight: Clear goals make your future analysis measurable. AI can provide a strong foundation for defining them.
Visualization of OKRs in a management tool
2. Industry Analysis Examples
2.1 Automotive
- The automotive industry is undergoing a radical transformation:
- E-mobility, autonomous driving, and smart manufacturing
- AI-powered assistance systems like adaptive cruise control or lane-keeping technologies
- Predictive maintenance for reducing downtime
- AI-supported logistics, including supply chain optimization
Key Insight: The future of mobility is data-driven and AI-accelerated.
Concept image of a self-driving car with AI data flow
2.2 Insurance
AI is already reshaping the insurance industry:
- Automated claims processing using image recognition and OCR
- Chatbots for customer support (e.g., Clara, Robin)
- Risk scoring with machine learning, enabling tailored premiums
- Fraud detection through pattern recognition and anomaly detection
Key Insight: AI is reshaping not just operations but entire business models in insurance.
Diagram of process automation in an insurance company
3. The Future of My Job
3.1 Sales
AI is revolutionizing sales through smart automation and personalization:
- Lead scoring with machine learning models
- Customer analytics for behavioral insights
- AI-based assistants for quote generation and product recommendations
Key Insight: Sales is becoming more targeted, data-driven, and efficient with AI support.
Sales dashboard powered by AI-driven insights
3.2 Marketing
In marketing, AI shifts decision-making from gut feeling to data:
- Hyper-personalized campaigns using NLP and segmentation models
- AI-generated content for blogs, social media, and video
- Automated A/B testing with real-time optimization
Key Insight: AI is making marketing smarter, faster, and more accurate.
AI-assisted content marketing workflow
3.3 Developers
Developers are not being replaced by AI—they’re being empowered:
- Code completion tools like GitHub Copilot
- Automated testing and debugging
- Mock data generation and API documentation with AI help
Key Insight: AI acts as a co-developer, enhancing productivity and code quality.
Developer interface with integrated AI assistance
3.4 Executives
AI empowers decision-makers at the top level:
- Data-based strategic planning with forecasting models
- Scenario planning powered by AI simulations
- People analytics for organizational development
Key Insight: With AI, leaders gain new levels of clarity and foresight.
Executive dashboard with KPIs and forecasting models
4. Key Elements of a Successful Future Analysis
- Early data integration
- Combining human judgment with AI capabilities
- Scalable, adaptive analysis methods
- Use of interactive tools to visualize complexity
Key Insight: Future analysis thrives at the intersection of structure, vision, and technology.
Interactive roadmap showing a future analysis journey