CMU research shows compression alone may unlock AI puzzle-solving abilities

May Be Interested In:An L.A. Doctor’s House Burned. Now He Treats the Fires’ Effects in Neighbors.



This new research matters because it challenges the prevailing wisdom in AI development, which typically relies on massive pre-training datasets and computationally expensive models. While leading AI companies push toward ever-larger models trained on more extensive datasets, CompressARC suggests intelligence emerging from a fundamentally different principle.

“CompressARC’s intelligence emerges not from pretraining, vast datasets, exhaustive search, or massive compute—but from compression,” the researchers conclude. “We challenge the conventional reliance on extensive pretraining and data, and propose a future where tailored compressive objectives and efficient inference-time computation work together to extract deep intelligence from minimal input.”

Limitations and looking ahead

Even with its successes, Liao and Gu’s system comes with clear limitations that may prompt skepticism. While it successfully solves puzzles involving color assignments, infilling, cropping, and identifying adjacent pixels, it struggles with tasks requiring counting, long-range pattern recognition, rotations, reflections, or simulating agent behavior. These limitations highlight areas where simple compression principles may not be sufficient.

The research has not been peer-reviewed, and the 20 percent accuracy on unseen puzzles, though notable without pre-training, falls significantly below both human performance and top AI systems. Critics might argue that CompressARC could be exploiting specific structural patterns in the ARC puzzles that might not generalize to other domains, challenging whether compression alone can serve as a foundation for broader intelligence rather than just being one component among many required for robust reasoning capabilities.

And yet as AI development continues its rapid advance, if CompressARC holds up to further scrutiny, it offers a glimpse of a possible alternative path that might lead to useful intelligent behavior without the resource demands of today’s dominant approaches. Or at the very least, it might unlock an important component of general intelligence in machines, which is still poorly understood.

share Share facebook pinterest whatsapp x print

Similar Content

The Detective's Wife
The Detective’s Wife
The Incredible Disappearing Republican Lawmaker
The Incredible Disappearing Republican Lawmaker
Aya Cash of ‘You’re the Worst’
Aya Cash of ‘You’re the Worst’
'Never forget': Labor's anti-Dutton pitch to Chinese Australians is gaining speed
‘Never forget’: Labor’s anti-Dutton pitch to Chinese Australians is gaining speed
Trump’s imperialism gets savaged by voters. Plus, COVID at 5 years
Trump’s imperialism gets savaged by voters. Plus, COVID at 5 years
Sir Ian Diamond
UK statistics chief Ian Diamond quits

Leave a Reply

Your email address will not be published. Required fields are marked *

Top Stories Today: What You Need to Know Now | © 2025 | Daily News