Business

Executives' guide to investing in artificial intelligence: Understanding the value proposition in 2025

L'AI automatizzerà 300M posti lavoro equivalenti globalmente, 92M eliminati entro 2030 (WEF), 60% lavori paesi alto reddito influenzati—ma saldo netto positivo: 170M nuovi ruoli emergeranno (+78M totale). Lavori più suscettibili: amministrativi 46% attività automatizzabili, back-office, call center, contabilità. Risultati settoriali già misurabili: finanza -40% costi operativi +40% efficienza gestione rischio, sanità -30-50% tempi diagnosi con scoperta farmaci da 5 anni a <1 anno (-60% costi), software -56% tempi sviluppo con +30-60% accelerazione time-to-market, manifattura -80% downtime con +8% profitti annui, marketing +30% conversioni con -30% costi acquisizione clienti. Polarizzazione salariale estrema: avvocati con competenze AI guadagnano +49% vs colleghi tradizionali. Italia caso demografico: gap 5.6M posti lavoro entro 2033, automazione 3.8M diventa necessità vs rischio. Competenze 2025: pensiero analitico, creatività, intelligenza sociale—94% responsabili marketing riporta impatto positivo vendite, 91% aziende con AI assumerà nel 2025. Questione centrale: non se AI sostituirà umani ma quali umani si adatteranno vs resisteranno cambiamento.

As AI investment trends evolve further into 2025, executives face increasing pressure to make strategic decisions aboutAI implementations. With the rapid adoption of AI tools by companies-22 percent are implementing them extensively and 33 percent are using them in a limited way-understanding how to evaluate and implement AI solutions has become critical to maintaining competitive advantage. In the book"The Executive Guide to Artificial Intelligence" by Andrew Burgess, the author provided a comprehensive guide for business executives who wish to understand and implement AI solutions in their organizations.

This book was published in 2017 by Springer International Publishing and provides a practical overview of how companies can leverage artificial intelligence. What has changed today?

Current investment trends in AI 2025

The AI landscape is experiencing unprecedented growth, with organizations making more significant investments to remain competitive.

The basics:

Burgess emphasized the importance of starting by defining clear goals aligned with business strategy, a principle that remains valid today. In the book, he identified eight core AI capabilities:

  1. Image recognition
  2. Voice Recognition
  3. Search and information extraction
  4. Clustering
  5. Natural Language Understanding
  6. Optimization
  7. Prediction
  8. Understanding (today)

Evolution from 2018 to 2025:

Since the book was written, AI has gone from an emerging technology to a mainstream technology. The "Understanding" capability that Burgess considered futuristic has seen significant advances with the advent of Large Language Models (LLM) and generative AI technologies, which had not yet emerged in 2018.

Strategic framework for investment decisions in AI

The four essential questions

When evaluating investments in AI, it is critical to focus on these critical questions:

  1. Business problem definition
  2. Metrics of success
  3. Requirements for implementation
  4. Risk assessment

Note: This four-question framework comes from current knowledge and is not explicitly presented in Burgess' book.

Building an effective AI strategy

The adoption framework:

Burgess proposes a detailed framework for creating an AI strategy that includes:

  1. Alignment with business strategy - Understanding how AI can support existing business objectives
  2. Understanding of AI ambitions - Define if desired:
    • Improve existing processes
    • Transforming business functions
    • Create new services/products
  3. IA maturity assessment - Determine the organization's current level of maturity on a scale of 0 to 5:
    • Manual processing (Level 0)
    • Traditional IT Automation (Level 1)
    • Basic Isolated Automation (Level 2)
    • Tactical implementation of automation tools (Level 3)
    • Tactical implementation of various automation technologies (Level 4)
    • End-to-end strategic automation (Level 5)
  4. Creating an IA heat map - Identifying areas of greatest opportunity
  5. Business case development - Assessing "hard" and "soft" benefits
  6. Change management - Planning how the organization will adapt
  7. Developing an IA roadmap - Creating a medium- to long-term plan.

Evolution from 2018 to 2025:

Burgess' framework remains surprisingly relevant today, but needs to be supplemented with considerations of:

  • AI ethics and regulations (such as the EU AI Act)
  • Environmental sustainability of AI
  • Responsible AI strategies
  • Integration with emerging technologies such as quantum computing

Measuring ROI in AI investments

The determinants of return on investment:

Burgess identifies different types of AI benefits, categorized as "hard" and "soft."

Hard benefits:

  • Cost reduction
  • Avoiding costs
  • Customer satisfaction
  • Compliance
  • Risk mitigation
  • Loss mitigation
  • Mitigation of revenue loss
  • Revenue generation

Soft benefits:

  • Cultural change
  • Competitive advantage
  • Halo effect
  • Enabling other benefits
  • Enabling digital transformation

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The measurement of AI ROI has become more sophisticated, with specific frameworks for assessing the impact of generative AI, which did not exist when Burgess wrote the book.

Technical approaches to AI implementation

Types of solutions:

Burgess presented three main approaches to implementing AI:

  1. Off-the-shelf AI software - Pre-packaged solutions
  2. AI platforms - Provided by large technology companies
  3. Custom AI development - Tailored solutions

For the first steps, he suggested considering:

  • Proof of Concept (PoC)
  • Prototypes
  • Minimum Viable Product (MVP)
  • Riskiest Assumption Test (RAT)
  • Pilot

What has changed:

Since 2018, we have witnessed:

  • Democratization of AI tools with no-code/low-code solutions
  • Dramatic improvement of cloud AI platforms
  • Growth of generative AI and models such as GPT, DALL-E, etc.
  • Rise of AutoML solutions that automate parts of the data science process

Risk considerations and challenges

The risks of artificial intelligence:

Burgess devoted an entire chapter to the risks of AI, highlighting:

  1. Data quality
  2. Lack of transparency - The "black box" nature of algorithms
  3. Unintentional bias
  4. Naiveté of AI - Limits of contextual understanding
  5. Overdependence on AI
  6. Choosing the wrong technology
  7. Malicious acts

Evolution from 2018 to 2025:

Since the book was written:

  • Concerns about algorithm bias have become a critical issue (pending)
  • AI security has become critical as threats increase
  • AI regulation has emerged as a key factor
  • The risks of deepfakes and generative AI disinformation have become significant
  • Privacy concerns have increased with the more pervasive use of AI

Creating an effective IA organization

From the book by Burgess (2018):

Burgess proposed:

  • Building an AI ecosystem with suppliers and partners
  • Establish a Center of Excellence (CoE) with dedicated teams
  • Consider roles such as chief data officer (CDO) or chief automation officer (CAO).

Evolution from 2018 to 2025:

Since then:

  • The role of chief AI officer (CAIO) has become commonplace
  • AI is now often integrated throughout the organization instead of being isolated in a CoE
  • The democratization of AI has led to more distributed operating models
  • The importance of AI literacy for all employees emerged

Conclusion

From the book by Burgess (2018):

Burgess concluded with the importance of:

  • Don't believe the hype but focus on real business problems
  • Start the IA pathway as soon as possible
  • Future-proof the company through understanding AI
  • Adopt a balanced approach between optimism and realism

Evolution from 2018 to 2025:

Burgess' call to "don't believe the hype" remains incredibly relevant in 2025, especially with the excessive hype surrounding generative AI. However, the speed of AI adoption has become even more critical, and companies that have not yet begun their AI journey now find themselves at a significant disadvantage compared to those that followed Burgess' advice to start early (in 2018!).

The AI landscape in 2025 is more complex, more mature, and more integrated into business strategy than could have been predicted in 2018, but the core principles of strategic alignment, value creation, and risk management that Burgess outlined remain surprisingly valid.

Resources for business growth

November 9, 2025

Regulating what is not created: does Europe risk technological irrelevance?

Europe attracts only one-tenth of global investment in artificial intelligence but claims to dictate global rules. This is the "Brussels Effect"-imposing regulations on a planetary scale through market power without driving innovation. The AI Act goes into effect on a staggered timetable until 2027, but multinational tech companies respond with creative evasion strategies: invoking trade secrets to avoid revealing training data, producing technically compliant but incomprehensible summaries, using self-assessment to downgrade systems from "high risk" to "minimal risk," forum shopping by choosing member states with less stringent controls. The extraterritorial copyright paradox: EU demands that OpenAI comply with European laws even for training outside Europe-principle never before seen in international law. The "dual model" emerges: limited European versions vs. advanced global versions of the same AI products. Real risk: Europe becomes "digital fortress" isolated from global innovation, with European citizens accessing inferior technologies. The Court of Justice in the credit scoring case has already rejected the "trade secrets" defense, but interpretive uncertainty remains huge-what exactly does "sufficiently detailed summary" mean? No one knows. Final unresolved question: is the EU creating an ethical third way between U.S. capitalism and Chinese state control, or simply exporting bureaucracy to an industry where it does not compete? For now: world leader in AI regulation, marginal in its development. Vaste program.
November 9, 2025

Outliers: Where Data Science Meets Success Stories.

Data science has turned the paradigm on its head: outliers are no longer "errors to be eliminated" but valuable information to be understood. A single outlier can completely distort a linear regression model-change the slope from 2 to 10-but eliminating it could mean losing the most important signal in the dataset. Machine learning introduces sophisticated tools: Isolation Forest isolates outliers by building random decision trees, Local Outlier Factor analyzes local density, Autoencoders reconstruct normal data and report what they cannot reproduce. There are global outliers (temperature -10°C in tropics), contextual outliers (spending €1,000 in poor neighborhood), collective outliers (synchronized spikes traffic network indicating attack). Parallel with Gladwell: the "10,000 hour rule" is disputed-Paul McCartney dixit "many bands have done 10,000 hours in Hamburg without success, theory not infallible." Asian math success is not genetic but cultural: Chinese number system more intuitive, rice cultivation requires constant improvement vs Western agriculture territorial expansion. Real applications: UK banks recover 18% potential losses via real-time anomaly detection, manufacturing detects microscopic defects that human inspection would miss, healthcare valid clinical trials data with 85%+ sensitivity anomaly detection. Final lesson: as data science moves from eliminating outliers to understanding them, we must see unconventional careers not as anomalies to be corrected but as valuable trajectories to be studied.