Categories: AI/ML News

AI may not need massive training data after all

New research shows that AI doesn’t need endless training data to start acting more like a human brain. When researchers redesigned AI systems to better resemble biological brains, some models produced brain-like activity without any training at all. This challenges today’s data-hungry approach to AI development. The work suggests smarter design could dramatically speed up learning while slashing costs and energy use.
AI Generated Robotic Content

Share
Published by
AI Generated Robotic Content

Recent Posts

Here it is boys, Z Base

Link: https://huggingface.co/Tongyi-MAI/Z-Image Comfy https://huggingface.co/Comfy-Org/z_image/tree/main/split_files/diffusion_models submitted by /u/Altruistic_Heat_9531 [link] [comments]

3 hours ago

SelfReflect: Can LLMs Communicate Their Internal Answer Distribution?

The common approach to communicate a large language model’s (LLM) uncertainty is to add a…

3 hours ago

Correcting the Record: Response to the EFF January 15, 2026 Report on Palantir

Editor’s Note: This blog post responds to allegations published by the Electronic Frontier Foundation (EFF)…

3 hours ago

Build reliable Agentic AI solution with Amazon Bedrock: Learn from Pushpay’s journey on GenAI evaluation

This post was co-written with Saurabh Gupta and Todd Colby from Pushpay. Pushpay is a market-leading digital…

3 hours ago

What’s new with ML infrastructure for Dataflow

The world of artificial intelligence is moving at lightning speed. At Google Cloud, we’re committed…

3 hours ago