News

Google wants $250 (!) per month for its new AI Ultra...

AI Observer
News

The 4 biggest AI stories of 2024 and a key prediction...

AI Observer
News

The code whisperer

AI Observer
News

The Download: Anduril’s latest humanoid robot project and the most trustworthy...

AI Observer
News

Government of Canada announces $2 billion investment in AI Infrastructure

AI Observer
New Models & Research

Server manufacturers ramp up edge AI efforts

AI Observer
News

OneCell Diagnostics receives $16M for AI to limit cancer reoccurrence

AI Observer
News

It’s just a matter time before LLMs start supply-chain attack

AI Observer
News

The Year of the AI Election Didn’t Go Quite as Everyone...

AI Observer
News

Infosec experts divided on AI’s potential to assist red teams

AI Observer
News

Enabling human centric support with generative artificial intelligence

AI Observer

Featured

News

Chain-of-Thought May Not Be a Window into AI’s Reasoning: Anthropic’s New...

AI Observer
News

Agentic AI in Financial Services: IBM’s Whitepaper Maps Opportunities, Risks, and...

AI Observer
News

Salesforce AI Researchers Introduce UAEval4RAG: A New Benchmark to Evaluate RAG...

AI Observer
News

Google AI Releases Standalone NotebookLM Mobile App with Offline Audio and...

AI Observer
AI Observer

Chain-of-Thought May Not Be a Window into AI’s Reasoning: Anthropic’s New...

Chain-of-thought (CoT) prompting has become a popular method for improving and interpreting the reasoning processes of large language models (LLMs). The idea is simple: if a model explains its answer step-by-step, then those steps should give us some insight into how it reached its conclusion. This is especially appealing...