The Time Machine: Future Scenario Generation Through Generative AI Tools
Jan Ferrer i Picó (),
Michelle Catta-Preta,
Alex Trejo Omeñaca,
Marc Vidal and
Josep Maria Monguet i Fierro
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Jan Ferrer i Picó: Innex Labs, Institut pel Futur, Carrer de Lluís Millet 8, 17190 Salt, Catalonia, Spain
Michelle Catta-Preta: Innex Labs, Institut pel Futur, Carrer de Lluís Millet 8, 17190 Salt, Catalonia, Spain
Alex Trejo Omeñaca: Innex Labs, Institut pel Futur, Carrer de Lluís Millet 8, 17190 Salt, Catalonia, Spain
Marc Vidal: Innex Labs, Institut pel Futur, Carrer de Lluís Millet 8, 17190 Salt, Catalonia, Spain
Josep Maria Monguet i Fierro: Innex Labs, Institut pel Futur, Carrer de Lluís Millet 8, 17190 Salt, Catalonia, Spain
Future Internet, 2025, vol. 17, issue 1, 1-15
Abstract:
Contemporary society faces unprecedented challenges—from rapid technological evolution to climate change and demographic tensions—compelling organisations to anticipate the future for informed decision-making. This case study aimed to design a digital system for end-users called the Time Machine, which enables a generative artificial intelligence (GAI) system to produce prospective future scenarios based on the input information automatically, proposing hypotheses and prioritising trends to streamline and make the formulation of future scenarios more accessible. The system’s design, development, and testing progressed through three versions of prompts for the OpenAI GPT-4 LLM, with six trials conducted involving 222 participants. This iterative approach allowed for gradual adjustment of instructions given to the machine and encouraged refinement. Results from the six trials demonstrated that the Time Machine is an effective tool for generating future scenarios that promote debate and stimulate new ideas in multidisciplinary teams. Our trials proved that GAI-generated scenarios could foster discussions on +70% of generated scenarios with appropriate prompting, and more than half included new ideas. In conclusion, large language models (LLMs) of GAI, with suitable prompt engineering and architecture, have the potential to generate useful future scenarios for organisations, transforming future intelligence into a more accessible and operational resource. However, critical use of these scenarios is essential.
Keywords: scenarios; futures; generative AI; large language models (LLMs); prompt engineering (search for similar items in EconPapers)
JEL-codes: O3 (search for similar items in EconPapers)
Date: 2025
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