Categories: AI/ML News

Machine learning helps researchers develop perovskite solar cells with near-record efficiency

An international team of scientists has used machine learning to help them develop perovskite solar cells with near-record efficiency. In their paper published in the journal Science, the group describes how they used the machine-learning algorithm to help them find new hole-transporting materials to improve the efficiency of perovskite solar cells.
AI Generated Robotic Content

Share
Published by
AI Generated Robotic Content

Recent Posts

3 Nuclear Startups Hit a Big Milestone. Why It Matters—and Why It Doesn’t

The companies’ Fourth of July plans include celebrating new reactor designs coming online. But there’s…

17 hours ago

Context vs. Memory Engineering in Agentic AI Systems

Compression on Arrival Tool outputs should be compressed after a call returns, not after the…

2 days ago

Why I disappeared for 3 Months & What’s Next

I’ve been quiet since November because I’ve been building.Over the past few months, AI has…

2 days ago

Multi-Agent Teams Hold Experts Back

Multi-agent LLM systems are increasingly deployed as autonomous collaborators, where agents interact freely rather than…

2 days ago

Managing Elasticsearch Reindex at Scale: Performance, Reliability, and Observability

Editor’s Note: This is the fourth post in a series exploring how Palantir customizes infrastructure…

2 days ago

GenPage: Towards End-to-End Generative Homepage Construction at Netflix

Authors: Lequn Wang, Jiangwei Pan, and Linas BaltrunasFigure 1. Autoregressive homepage generation. GenPage builds a…

2 days ago