News

Anthropic research reveals AI models perform worse with extended reasoning time, challenging industry assumptions about test-time compute scaling in enterprise deployments.
Lawmakers declined to stop states from regulating artificial intelligence, but the debate over rules for AI is just beginning ...
Explore ChatGPT Agent, OpenAI’s versatile AI assistant that automates tasks, boosts productivity, and reshapes the future of ...
Discover how Big Ocean, Korea's first deaf K-pop group, is redefining the industry through innovative technology and sign ...
ANKOMAH In the first article in this series, limitations of the existing liability regime as regards artificial intelligence ...
For the UN Pact for the Future to be successful, there has to be a focus on environmental and social justice, an influx of ...
People have worried that computers will take their jobs for at least a decade, but those fears have felt more realistic than ...
Perplexity has launched Comet, an AI-powered browser that can autonomously complete web-based tasks on behalf of users, ...
Artificial Intelligence (AI) is becoming part of everyday life. It helps with tasks like driving cars and answering questions. But AI still has challenges in understanding human behavior, especially ...
Extreme heat is becoming soccer’s most pressing challenge, as dramatically demonstrated during this summer’s FIFA Club World ...
Additional results include a 30% improvement in MRI imaging turnaround time, an 83% reduction in patient placement time and a 28% decrease in post-anesthesia care unit holds, among other successes.
The authors also flag a recurring issue: while AI models can often generate syntactically correct code snippets, they frequently lack a semantic understanding of the overall software architecture.