Successful AI startups from a VC perspective and how they are changing the mid-sized companies - with Max Bergmann

Oct 15, 2025

Maximilian Hahnenkamp

A conversation between Maximilian Hahnenkamp (Scavenger AI) and Max Bergmann (Investment Manager, HTGF)

From founder to early-stage investor: Max Bergmann manages a portfolio of tech startups at the High-Tech Gründerfonds (HTGF) – including Scavenger. In a conversation with Maximilian Hahnenkamp, he talks about the real state of AI beyond the buzzwords, why story, sales & trust are more important in fundraising than logos on the slide, how AI go-to-market is currently being restructured – and how he recognizes outstanding teams.

Change of Perspective: How Founder Experience Changes in VC

  • Tunnel vision vs. big picture: As a founder deeply involved in the problem, as a VC broadly and comparatively – the combination sharpens judgment.

  • Capital is the start, not the goal: After the round, the real work begins. Fundraising is sales (narrative, clarity, expectation management).

  • Empathy bonus: Those who know pains from the early phase coach more realistically – especially with first-time founders.

State of AI: Early Phase – with very low adoption

  • Early, not finished: In SMEs & traditional workflows, the utilization is partly <10 % – a huge gap.

  • Bubble unimportant – utility counts: Whether “hype” or not: What matters is which problem is being solved and how quickly the added value arrives.

  • From “wrapper bashing” to pragmatism: Lightweight AI wrappers can lower entry barriers – but differentiation requires more than an API.

What Makes AI Startups Successful (Today)

  1. Precise problem fit in a clear target group (verticals/industries).

  2. Go-to-market excellence: short time-to-value, pilot → rollout, references.

  3. Trust & UX: explainable, secure, easy to deploy – not “just” AI.

  4. Moats beyond the model: proprietary data, workflow embedding, distribution, domain knowledge.

“The model alone is not enough. The differentiation arises in the GTM, vertical focus, and real usage by the customer.”

Markets & Models: Where AI is Heading

  • Verticalization: No “next OpenAI” from Europe – instead, strong industry solutions.

  • New pricing logics: Moving away from pure seat subscriptions towards value/outcome pricing (paying for results).

  • Regulation as a framework: EU AI Act & co. slow down in places, but increase trust – relevant for corporates & SMEs.

Underserved, but full of opportunities: “Old” industries (insurance, construction, law), SMEs/hidden champions – a lot of know-how, little AI penetration.

SMEs in Focus: Why Barriers are Falling Now

  • In the past: Implementation hurdles (teams, integration time) were high.

  • Today: Fast testing is possible – AI makes entry approachable, teams can be specifically supplemented instead of being built from scratch.

  • Utilization levers: Workflow automation, decision support, reporting/controlling “on tap”.

Europe, Please Come Together

  • Opportunities: Universities, research, industrial base, regulatory expertise.

  • What’s missing: Scaling & bundling (European perspective instead of city smallness).

  • Vision:Deep-tech made in Europe” – visible and globally relevant.

Investment Philosophy: How HTGF (Also) Measures

  • Team, team, team – but specifically:

    • Founder-market fit: access, credibility, learning curve.

    • Learning & pivot capability: pace in course changes (particularly central in AI).

    • Interaction in the founding team: respectful, clear, customer-centric.

  • Signals: history/linkedin (no dogmas, but anchors), industry sparring, initial traction/pilots.

  • Single founder? Possible. Complementarity can also be covered through advisors/early hires.

For AI Founders – 6 Succinct Do's

  1. Problem > technology: Lead with business pain, not with “we use LLM X”.

  2. Choose vertical: sharpen ICP, industrialize cases.

  3. Trust by design: data path, GDPR, explainability, SLAs – clarify before the pitch.

  4. Lead GTM by metrics: time-to-value, payback, expansion – make it visible.

  5. Build moat: proprietary data/workflows/distribution, not just prompt glue.

  6. Test pricing: from seats to value/outcome – verifiable ROI stories.

For SMEs – 5 Quick Starters

  • Choose a clear use case (e.g., offer/report automation).

  • Pilot with real data (4–8 weeks, defined KPIs).

  • Early integration of security & compliance (IT/legal on board).

  • Start change small: train power users, show success, then scale.

  • Track outcome KPIs (time savings, error rate, cash impact).

Looking Ahead

  • Deep-tech from Europe with visible impact.

  • AI as an enabler for hidden champions – less hype, more revenue and efficiency levers.

  • Fundraising remains important – as story & sales of a robust value proposition.

© 2024 Scavenger AI GmbH.

Frankfurt, DE 2025

© 2024 Scavenger AI GmbH.

Frankfurt, DE 2025

© 2024 Scavenger AI GmbH.

Frankfurt, DE 2025