AI in education is often framed as a battle between humans and machines. Based on conversations with teachers, founders and investors over the past year, I believe the real opportunities lie in partnership, not replacement.
The OECD’s Digital Education Outlook 2026 frames AI’s role in relation to teachers across three paradigms: replacement, complementarity and augmentation. But there’s a second often overlooked dimension: institutional embedding. Moats in education aren’t built on technology or data alone, but on alignment with pedagogical goals, curricula, regulations & governance, procurement processes and professional practice.
1. Replacement — The Productivity Play
In replacement, AI automates tasks historically done by teachers. For example, grading, summarising texts, preparing lessons, generating worksheets and providing basic feedback loops.
This is where much of today’s AI attention is focused. Tasks that were once labour-intensive can now be executed quickly using general-purpose large language models.
However, technology that replaces discrete tasks can be easy to replicate. Application-layer companies that don’t control workflow, data or distribution potentially become interchangeable.
2. Complementarity — Enhancing the Teacher
Complementarity is where AI does not replace teachers but meaningfully enhances their capacity. For example:
- turning classroom data into real-time insights
- tracking student progress against goals
- flagging risks and opportunities
- designing targeted interventions
Here, teachers retain judgement while AI expands insights and sharpens execution. The result? More impactful and stickier solutions because:
- the solution integrates with daily workflows
- the value is tied to teacher judgement, not automation
- switching costs rise as the technology adapts to context
- integration with existing systems (LMS, assessment frameworks, schedules) deepens.
In Europe especially, where education systems are fragmented by language, standards and national curriculum requirements, this tailored integration is the key to durability.
3. Augmentation — Supercharging the Teacher
Augmentation involves human–AI co‑evolution: AI learns from teacher feedback over time, adapts to their pedagogical style, and augments their professional practice in ways that produce outcomes neither could achieve alone.
In theory, this is the next frontier.
But the evidence suggests caution. Recent cross‑sector analyses have found that human–AI teams often underperform the better solo performer — not because AI is weak, but because synergy is hard to design and requires:
- structured feedback loops
- task‑specific modelling
- data that is pedagogically meaningful
- long‑term usage and refinement.
These conditions are relatively rare — and do not emerge automatically from generic chatbots. Consequently, many augmentation efforts risk failing before a few succeed spectacularly.
This layer will be hard to build, slow to monetise, but potentially transformative if it materialises. The Holy Grail, but not for the faint-hearted investor.
But even the most advanced augmentation tools will fail if they don’t address a deeper challenge: institutional embedding.
The Overlooked Dimension: Institutional Embedding
If replacement, complementarity and augmentation describe how AI interacts with the teacher, the moat is arguably how deeply a solution embeds in the system.
Edtech solutions thrive where:
- curriculum alignment exists
- pedagogical norms reinforce its use
- there are many rules and regulations
- procurement frameworks are understood and effective go-to-market capabilities are developed and in place
- teacher support boosts adoption
- governance structures (schools, districts, ministries) endorse and fund it
Know-how about working with institutions and alignment with standards determine durability.
This is particularly true in Europe, where:
- education is governed nationally and regionally
- language and curriculum diversity creates product differentiation challenges
- procurement cycles are long and complex
- teacher autonomy is the norm.
A solution that is embedded institutionally — even if technically less advanced — will often outlive and outperform one that is technically stronger but misses the expertise around the institutions it is designed to serve.
This is where real moats are built.
The next edtech winners won’t rely on algorithms alone. They’ll succeed by understanding that the best AI doesn’t replace teachers or even just work for them. It works with them.
Where do you see the biggest opportunities?
Looking forward >>