Staying Ahead in the Age of AI: 5 Leadership Moves (2026)
Staying Ahead in the Age of AI: 5 Leadership Moves (2026)
OpenAI
24 févr. 2026

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To stay ahead in the age of AI, leaders need an operating model—not just tools. OpenAI’s playbook recommends five moves: Align teams on the “why”, Activate with training and experimentation, Amplify wins through shared knowledge, Accelerate pilots to production with lightweight approvals, and Govern with simple, practical rules that keep innovation safe.
AI progress is moving quickly and unevenly. Some organisations feel constant whiplash; others turn the pace into an advantage.
OpenAI’s leadership guide makes the case that the companies that thrive treat AI as a new way of working, not a side project. It also offers a simple five-part operating model—Align, Activate, Amplify, Accelerate, Govern—to help leaders move faster without losing control. (cdn.openai.com)
This post turns that model into a practical playbook you can run in the next 30 days.
Why this matters now (a few signals of the pace)
The PDF opens with three indicators of why AI feels different:
5.6× growth since 2022 in frontier-scale model releases
280× cheaper to run GPT‑3.5‑class models in ~18 months
4× faster adoption than the desktop internet
It also notes that early adopters are growing revenue 1.5× faster than peers.
You don’t need to accept every statistic at face value to act on the underlying message: AI is becoming part of normal work, quickly.

The five leadership moves (and what to do this quarter)
1) Align: make the “why” obvious
People adopt change faster when they understand how AI improves their work and supports the organisation’s advantage. The guide recommends leaders:
tell a clear story about why AI matters now
set a measurable AI adoption goal
role-model real AI use as a leadership team
Example from the guide: Moderna’s CEO set an expectation that employees should be using ChatGPT 20 times a day.
What to do next:
Write a one-page “AI strategy note” for the company: why now, what we’re aiming for, what we will not do.
Choose one adoption metric (weekly active users, number of validated use cases, or % of staff trained).
2) Activate: train people and create safe experimentation
The guide states that nearly half of employees say they lack training and support to adopt generative AI confidently, and that training is ranked as the most important factor for successful adoption.
Its recommended tactics are straightforward:
launch a structured, role-specific AI skills programme
build an AI champions network
make experimentation routine (time-boxed and supported)
Example from the guide: the San Antonio Spurs increased AI fluency from 14% to 85% by embedding training into daily work.
What to do next:
Start with three prompt patterns per team (e.g., “summarise”, “draft”, “analyse”), then add advanced patterns.
Create “safe-to-try” examples and publish them in your knowledge hub.
3) Amplify: stop solving the same problems in silos
Scaling AI isn’t about one brilliant team. It’s about turning wins into shared assets.
The guide suggests:
launching a central AI knowledge hub
regularly sharing success stories and reusable prompts
building internal communities for peer-to-peer learning
What to do next:
Create a single “AI Hub” space (in Notion/SharePoint/Confluence) that houses: policies, prompts, templates, training, and approved tools.
Share three “wins” a month: one large, two small-and-repeatable.
4) Accelerate: make it easy to go from pilot to production
Most organisations don’t fail at ideation—they fail at decision speed.
The guide’s focus here is removing friction:
unblock access to tools and data
create an intake and prioritisation process
keep approvals lightweight so good ideas move quickly
What to do next:
Set up a simple AI intake form with a weekly triage meeting.
Create a standard pilot template: use case, data, risk, human review, success metric, owner.
5) Govern: keep speed and control
Governance shouldn’t be a brake. The guide argues it should enable rapid action inside clear safeguards.
It recommends:
a simple responsible AI playbook focused on “safe to try” vs “needs escalation”
regular reviews/audits so guidelines stay practical as the tech changes
It also suggests creating a custom GPT trained on your responsible AI playbook so employees can ask policy questions in plain English.
What to do next:
Publish a one-page policy: allowed tools, data rules, review requirements, and escalation paths.
Review quarterly: what changed, what broke, what needs tightening.
A lightweight operating checklist for leaders
If you want to run this without turning it into a programme office:
Align: publish the “why” + one adoption goal; leaders share their own AI use monthly.
Activate: train by role; create champions; protect time for experimentation.
Amplify: central hub + monthly wins + reusable prompt library.
Accelerate: intake + fast approvals + measured pilots.
Govern: one-page rules + quarterly review.
That’s the playbook.
Next steps
Pick one team and one workflow where the value is obvious—then prove it.
A practical starting point:
Choose a workflow (weekly reporting, customer support triage, meeting notes → actions, or research briefs).
Define success metrics (time saved, quality, fewer errors, faster turnaround).
Run a two-week pilot with human review.
Publish the prompt, the template, and the outcome in your AI hub.
Repeat with the next workflow.
FAQs
What are the five steps in OpenAI’s leadership guide?
OpenAI summarises five practical steps: Align, Activate, Amplify, Accelerate, and Govern—designed to help organisations move quickly and confidently as AI advances. (cdn.openai.com)
What’s the fastest way to increase adoption?
Role-specific training plus protected experimentation time tends to move the needle quickly, especially when leaders role-model usage and teams can reuse proven prompts. (cdn.openai.com)
How do we avoid AI chaos and shadow usage?
Publish simple “safe-to-try” rules, clarify what data is allowed, and give people a trusted set of tools and prompts so they don’t invent their own approach in isolation. (cdn.openai.com)
Does governance slow teams down?
It shouldn’t. The guide argues governance should support rapid action through clear guidelines, not create new roadblocks. (cdn.openai.com)
What should leaders measure?
Adoption (active users), training participation, number of validated use cases, and how many pilots move from prototype to production are all practical signals the guide recommends tracking. (cdn.openai.com)
To stay ahead in the age of AI, leaders need an operating model—not just tools. OpenAI’s playbook recommends five moves: Align teams on the “why”, Activate with training and experimentation, Amplify wins through shared knowledge, Accelerate pilots to production with lightweight approvals, and Govern with simple, practical rules that keep innovation safe.
AI progress is moving quickly and unevenly. Some organisations feel constant whiplash; others turn the pace into an advantage.
OpenAI’s leadership guide makes the case that the companies that thrive treat AI as a new way of working, not a side project. It also offers a simple five-part operating model—Align, Activate, Amplify, Accelerate, Govern—to help leaders move faster without losing control. (cdn.openai.com)
This post turns that model into a practical playbook you can run in the next 30 days.
Why this matters now (a few signals of the pace)
The PDF opens with three indicators of why AI feels different:
5.6× growth since 2022 in frontier-scale model releases
280× cheaper to run GPT‑3.5‑class models in ~18 months
4× faster adoption than the desktop internet
It also notes that early adopters are growing revenue 1.5× faster than peers.
You don’t need to accept every statistic at face value to act on the underlying message: AI is becoming part of normal work, quickly.

The five leadership moves (and what to do this quarter)
1) Align: make the “why” obvious
People adopt change faster when they understand how AI improves their work and supports the organisation’s advantage. The guide recommends leaders:
tell a clear story about why AI matters now
set a measurable AI adoption goal
role-model real AI use as a leadership team
Example from the guide: Moderna’s CEO set an expectation that employees should be using ChatGPT 20 times a day.
What to do next:
Write a one-page “AI strategy note” for the company: why now, what we’re aiming for, what we will not do.
Choose one adoption metric (weekly active users, number of validated use cases, or % of staff trained).
2) Activate: train people and create safe experimentation
The guide states that nearly half of employees say they lack training and support to adopt generative AI confidently, and that training is ranked as the most important factor for successful adoption.
Its recommended tactics are straightforward:
launch a structured, role-specific AI skills programme
build an AI champions network
make experimentation routine (time-boxed and supported)
Example from the guide: the San Antonio Spurs increased AI fluency from 14% to 85% by embedding training into daily work.
What to do next:
Start with three prompt patterns per team (e.g., “summarise”, “draft”, “analyse”), then add advanced patterns.
Create “safe-to-try” examples and publish them in your knowledge hub.
3) Amplify: stop solving the same problems in silos
Scaling AI isn’t about one brilliant team. It’s about turning wins into shared assets.
The guide suggests:
launching a central AI knowledge hub
regularly sharing success stories and reusable prompts
building internal communities for peer-to-peer learning
What to do next:
Create a single “AI Hub” space (in Notion/SharePoint/Confluence) that houses: policies, prompts, templates, training, and approved tools.
Share three “wins” a month: one large, two small-and-repeatable.
4) Accelerate: make it easy to go from pilot to production
Most organisations don’t fail at ideation—they fail at decision speed.
The guide’s focus here is removing friction:
unblock access to tools and data
create an intake and prioritisation process
keep approvals lightweight so good ideas move quickly
What to do next:
Set up a simple AI intake form with a weekly triage meeting.
Create a standard pilot template: use case, data, risk, human review, success metric, owner.
5) Govern: keep speed and control
Governance shouldn’t be a brake. The guide argues it should enable rapid action inside clear safeguards.
It recommends:
a simple responsible AI playbook focused on “safe to try” vs “needs escalation”
regular reviews/audits so guidelines stay practical as the tech changes
It also suggests creating a custom GPT trained on your responsible AI playbook so employees can ask policy questions in plain English.
What to do next:
Publish a one-page policy: allowed tools, data rules, review requirements, and escalation paths.
Review quarterly: what changed, what broke, what needs tightening.
A lightweight operating checklist for leaders
If you want to run this without turning it into a programme office:
Align: publish the “why” + one adoption goal; leaders share their own AI use monthly.
Activate: train by role; create champions; protect time for experimentation.
Amplify: central hub + monthly wins + reusable prompt library.
Accelerate: intake + fast approvals + measured pilots.
Govern: one-page rules + quarterly review.
That’s the playbook.
Next steps
Pick one team and one workflow where the value is obvious—then prove it.
A practical starting point:
Choose a workflow (weekly reporting, customer support triage, meeting notes → actions, or research briefs).
Define success metrics (time saved, quality, fewer errors, faster turnaround).
Run a two-week pilot with human review.
Publish the prompt, the template, and the outcome in your AI hub.
Repeat with the next workflow.
FAQs
What are the five steps in OpenAI’s leadership guide?
OpenAI summarises five practical steps: Align, Activate, Amplify, Accelerate, and Govern—designed to help organisations move quickly and confidently as AI advances. (cdn.openai.com)
What’s the fastest way to increase adoption?
Role-specific training plus protected experimentation time tends to move the needle quickly, especially when leaders role-model usage and teams can reuse proven prompts. (cdn.openai.com)
How do we avoid AI chaos and shadow usage?
Publish simple “safe-to-try” rules, clarify what data is allowed, and give people a trusted set of tools and prompts so they don’t invent their own approach in isolation. (cdn.openai.com)
Does governance slow teams down?
It shouldn’t. The guide argues governance should support rapid action through clear guidelines, not create new roadblocks. (cdn.openai.com)
What should leaders measure?
Adoption (active users), training participation, number of validated use cases, and how many pilots move from prototype to production are all practical signals the guide recommends tracking. (cdn.openai.com)
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Numéro d'entreprise : 256 9431 77 | Droits d'auteur 2026 | Conditions générales | Politique de confidentialité
Génération
Numérique

Bureau du Royaume-Uni
Génération Numérique Ltée
33 rue Queen,
Londres
EC4R 1AP
Royaume-Uni
Bureau au Canada
Génération Numérique Amériques Inc
181 rue Bay, Suite 1800
Toronto, ON, M5J 2T9
Canada
Bureau aux États-Unis
Generation Digital Americas Inc
77 Sands St,
Brooklyn, NY 11201,
États-Unis
Bureau de l'UE
Génération de logiciels numériques
Bâtiment Elgee
Dundalk
A91 X2R3
Irlande
Bureau du Moyen-Orient
6994 Alsharq 3890,
An Narjis,
Riyad 13343,
Arabie Saoudite
Numéro d'entreprise : 256 9431 77
Conditions générales
Politique de confidentialité
Droit d'auteur 2026








