In just a fortnight, Robin Bennett, CEO of Alpha Tracker, will be speaking at the FAMANZ Asbestos Conference in Sydney. #Asbestos2026
Robin’s topic: AI innovations in asbestos surveying
Artificial Intelligence is no longer something “coming soon” to our sector. It is already reshaping how surveys are captured, analysed and delivered.
Robin will be sharing practical, real-world insights into:
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How AI can support asbestos survey data validation
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Reducing reporting time without compromising compliance
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Improving accuracy and consistency across large portfolios
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Where AI genuinely helps, and where human expertise still matters most
As always, this won’t be blue-sky theory. It will be grounded in real development work inside Alpha Tracker and real challenges faced by asbestos consultants every day.
Why this matters
The asbestos industry is under constant pressure: tighter compliance expectations, faster turnaround times and increasing scrutiny from clients and regulators.
AI is not about replacing surveyors. It is about giving them better tools.
If you’re attending FAMANZ in Sydney, we would love to see you there. Come and say hello, ask questions, and find out what’s next for AI-driven asbestos management software.
Australia, we’re looking forward to seeing you soon.

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