Geospatial data is often described as the invisible backbone of modern policy. It underpins climate resilience, smart city planning, connectivity improvements, traffic optimisation, and even national defence. Globally valued at hundreds of billions, this industry is critical because location intelligence drives growth across sectors.
As services become increasingly location-aware, the average person interacts with geospatial data 42 times a day – often without realising it. This trend will accelerate as technologies evolve, making location intelligence more accessible and actionable.
Artificial intelligence is set to democratise geospatial data, shifting the focus from raw datasets to actionable insights. Users don’t want data – they want insights. The future will be conversational: people will ask questions and receive responses from maps and the data behind them. Emerging technologies, particularly agentic AI, will enable this transformation, but they also introduce new security challenges.
Responsible AI frameworks will become standard – not just for compliance but to build trust. As geospatial data becomes one layer in complex decision-making systems, verifying legitimacy and bias will be harder. Broad access for AI agents expands the threat surface, making validation and ethical use essential.
Generative AI is already reshaping how we interact with maps. By 2026, expect assistants that interpret complex datasets and guide users in plain language. Conversational and agentic AI will become mainstream, enabling natural-language queries that democratise access to geospatial insights.
This shift is not purely technical – it’s cultural. AI tools must be responsibly embedded into workflows, supported by upskilling and retraining. Hybrid systems will emerge where AI handles the heavy lifting, but humans will validate and guide outcomes. Efficiency matters, but human creativity and judgement remain vital.
Security is a growing priority. With agentic AI, distinguishing legitimate from malicious requests becomes harder. For organisations managing critical infrastructure, safeguarding against disruption is non-negotiable. Trust and provenance in geospatial data are essential, especially for autonomous vehicles and national infrastructure.
Provenance must track origin, transformation, and interaction history. Smart cities and climate models depend on spatial accuracy – not AI guesswork. Industry-wide standards for validation, auditability, and ethical AI use will be crucial. Collaboration, not competition, should define the next era, creating a unified ecosystem built on trust.
Geospatial skills such as geodesy and cartography are becoming scarce, even as they remain critical. Renewed investment in these disciplines and integration into mainstream curricula is essential. Geospatial thinking should not be niche – it should be embedded across technical education.
Collaboration will be key. The sector must work together to establish consistent standards and share best practices. 2026 should be the year we move toward an ecosystem mindset, ensuring innovation is built on trust and shared responsibility.


