Nov 3, 2025
Forecasting AGI: A Granular, CHC-Based Approach
Habeeb Abdulfatah
The paper introduces a data-driven framework for forecasting Artificial General Intelligence (AGI) based on the Cattell-Horn-Carroll (CHC) theory of cognition. It breaks AGI into ten measurable cognitive domains and maps each to existing AI benchmarks. Using GPT-4 (2023) and projected GPT-5 (2025) data, the study applies exponential trend extrapolation to predict human-level proficiency across domains. Results show rapid progress in reading, writing, and math by 2028, but major bottlenecks in memory and reasoning until the 2030s. The approach provides a granular, reproducible, and governance-relevant method for tracking AI progress and informing strategic planning.
Building upon recent work on “A Definition of AGI” is sensible and timely. However, the project would benefit from more qualitative justifications of some of the predictions, and also from using some other forecasting methodology in addition to trend extrapolation. For example, your model predicts that Long-Term Memory Storage will reach 100% by 2038, despite both GPT-4 and GPT-5 scoring zero on that factor. Why?
Some of the graphs are a bit odd, race to 100% proficiency” - it isn’t aligned with the forecasts listed in the table
Cite this work
@misc {
title={
(HckPrj) Forecasting AGI: A Granular, CHC-Based Approach
},
author={
Habeeb Abdulfatah
},
date={
11/3/25
},
organization={Apart Research},
note={Research submission to the research sprint hosted by Apart.},
howpublished={https://apartresearch.com}
}


