Business

Manager 3.0: How to Thrive in the Age of AI

The quietest impact of AI is not at the front line or in the top-it is in middle management. From "administrative supervisors" to "augmented orchestrators": the managers of 2025 must evolve or become irrelevant. Eight essential skills, from facilitating human-AI collaboration to ethical leadership. The next frontier? "Distributed leadership intelligence"-first experiments show productivity gains of 30-40%. The question is not whether AI will transform management. It is whether you are ready.

The silent transformation of management

While the headlines focus on replacing jobs or creating new industries, a deeper revolution is quietly taking place in the corporate world. The most significant impact of artificial intelligence is not on the front lines or in top management, but in middle management, where AI has fundamentally redefined what it means to lead teams in 2025.

From "administrative supervisors" to "augmented orchestrators," today's managers must evolve rapidly to remain relevant. But how can these professionals survive and thrive in this new landscape?

Eight essential skills for the manager of 2025

Based on the latest market research and input from institutions such as the World Economic Forum, McKinsey and the MIT Sloan Management Review, here are the key competencies every manager needs to develop:

1. Emotional intelligence in a technological world

While AI automates repetitive tasks, emotional intelligence remains a uniquely human trait. Managers must leverage EI to:

  • Strengthening team cohesion in increasingly virtual work environments
  • Balancing the "human touch" in AI augmented processes
  • Encouraging psychological safety and inclusiveness

practicaltip: Use AI tools to analyze team sentiment and tailor your approach to address concerns with empathy.

2. AI literacy: from fundamental to strategic

AI is no longer a futuristic concept; it is a reality that shapes business strategies and operations. Managers must:

  • Understand the basic principles of AI to make informed decisions
  • Identify opportunities to implement AI solutions in their department
  • Know how to critically evaluate AI tools for effectiveness and equity

Practical tip: Invest in AI upskilling programs to learn the tools, trends and ethical considerations in AI implementation.

3. Agility and adaptability: navigating in an accelerated world

In 2025, change is happening faster than ever before. Managers must:

  • Adopt agile methodologies to respond quickly to change
  • Building resilient teams capable of thriving in uncertainty
  • Proactively identify emerging opportunities

Practical tip: Implement flexible planning frameworks such as Agile methodology to streamline processes and enable rapid adaptation to new developments.

4. Effective communication: connecting humans and machines

Communication is no longer just about human interaction; it now involves bridging the gap between people and AI systems. Managers must:

  • Translating complex data-driven information into actionable strategies
  • Ensure that teams understand and effectively use AI tools
  • Clearly articulate the value and limitations of AI to stakeholders

Practical tip: Use AI-enhanced communication tools to facilitate information sharing across departments and time zones.

5. Amplification of insights: from data to decisions

Successful managers in 2025 use AI to:

  • Identifying patterns and opportunities invisible to the human eye
  • Evaluate hundreds of scenarios where before they could only consider three or four
  • Making more informed decisions based on real-time data

Practical tip: Use predictive analytics to inform strategic decisions and anticipate market trends, but always maintain a level of human oversight.

6. Facilitation of human-IA collaboration

Managers must become experts in:

  • Identify which tasks should be automated and which require human input
  • Creating integrated workflows where humans and AI complement each other
  • Resolving conflicts that arise when AI systems and human intuitions differ

Practical tip: Map team processes to identify where AI can enhance (not replace) human capabilities.

7. Empowerment of others: the new face of leadership

The role of the leader is shifting from directive to empowering. In 2025, managers must:

  • Focus on enabling teams to effectively leverage AI tools
  • Encourage employees to take ownership of their work
  • Fostering innovation by combining AI capabilities with human creativity

Practical tip: Provide training programs to help teams improve skills in AI tools and other emerging technologies.

8. Ethical leadership: navigating the challenges of AI

As AI becomes more widespread, ethical considerations are critical. Managers must:

  • Ensuring fair and impartial use of AI tools.
  • Protect data privacy and comply with regulations
  • Consider the social impact of AI-based decisions

Practical tip: Establish an AI ethics committee to oversee the implementation of AI technologies and proactively address ethical concerns.

Concrete strategies for adaptation

Re-evaluate one's skills

Conduct an honest self-assessment of one's current skills versus those needed for the future. Identify gaps and create a personalized professional development plan.

Adopting continuous learning

According to the World Economic Forum, 70% of the skills used in most jobs will change by 2030. Managers must:

  • Devote at least 5 hours per week to learning new skills
  • Participate in AI-related communities of practice.
  • Experimenting with new tools in low-risk projects

Develop a vision of AI competencies for the team

As suggested by industry experts, managers should divide their team's AI skills into four levels:

  • Center of excellence (5%): technical experts who build AI systems
  • "AI + X" (15%): subject matter experts who integrate AI into their specific domain
  • Fluidity (30%): employees who regularly interact with technical experts
  • Literacy (50%): basic level for all employees

Balancing durable and perishable skills

Advanced technical skills such as using specific AI frameworks can become obsolete quickly. Managers need to:

  • Build a solid foundation of enduring skills (critical thinking, problem solving, communication)
  • Staying current on current technical expertise
  • Adopt a T approach to skills development

The competitive advantage: augmented orchestration

Companies that see AI simply as a way to cut costs miss the transformative potential of augmented management. Successful managers in 2025 are not fighting against AI but using it to:

  • Strengthen team capabilities
  • Freeing up time for strategic and creative work
  • Making better and faster decisions

Looking to the future

The next frontier is what some organizations call "distributed leadership intelligence"-systems that help coordinate decision making through networks of managers with less hierarchical friction. Early experiments suggest productivity gains of 30-40% in complex initiatives.

For business leaders, the question is not whether AI will transform middle management, but whether your organization is prepared for the new reality that has already arrived. Managers who can reinvent themselves as augmented orchestrators, with human judgment at the center and AI as the amplifier, will be the ones to lead the successful companies of tomorrow.

Sources

  1. McKinsey Digital. (2025, January). "AI in the workplace: A report for 2025." McKinsey & Company.
  2. World Economic Forum. (2025, January). "2025: the year companies prepare to disrupt how work gets done." WEF.
  3. MIT Sloan Management Review. (2025, January). "Leadership and AI insights for 2025: The latest from MIT Sloan Management Review." MIT Sloan.
  4. Swiss School of Business and Management Geneva. (2024, November). "Leadership Skills in 2025: The 8 Essential Skills Every Leader Needs to Succeed in the AI-Driven Era." SSBM.
  5. Katanforoosh, K. (2025, January). "Why Every Employee Will Need to Use AI in 2025." Information Week.
  6. IBM. (2025, April). "AI Skills You Need For 2025." IBM Think.
  7. Visier. (2025). "Top 5 AI-Driven Workforce Trends for 2025." Visier.

Resources for business growth

November 9, 2025

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

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Outliers: Where Data Science Meets Success Stories.

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