Causaly Introduces AI Agents for Enhanced Scientific Discovery
Causaly has announced new AI agents within its Causaly Discover platform, aimed at revolutionizing scientific discovery in the life sciences sector. In a press release, the company detailed how these agents empower research teams to access and analyze a vast array of biomedical data, significantly speeding up the process of answering complex biomedical questions.
The Causaly Discover platform, developed over seven years, integrates a comprehensive knowledge graph that connects 500 million facts and 70 million directional relationships. This allows scientists to save up to 90% of the time typically required to identify and validate research targets, thereby enhancing the efficiency of drug discovery processes.
The new AI agents are designed to reduce the time and effort needed to sift through scattered data sources, enabling researchers to discover new biomarkers, prioritize targets, and understand disease biology more effectively. These agents are currently available in early access, with general availability planned for May 2025.
We hope you enjoyed this article.
Consider subscribing to one of several newsletters we publish. For example, in the Daily AI Brief you can read the most up to date AI news round-up 6 days per week.
Also, consider following us on social media:
Subscribe to Daily AI Brief
Daily report covering major AI developments and industry news, with both top stories and complete market updates
Industry analysis
2025 Global Business Services Agenda: Gen AI Takes Center Stage
This industry analysis by The Hackett Group explores the transformative impact of generative artificial intelligence (Gen AI) on global business services (GBS) in 2025. The study highlights the shift from exploration to acceleration of Gen AI initiatives, with 89% of executives advancing these projects to improve customer satisfaction, innovate products, and reduce costs. The report also discusses the challenges and strategies for successful Gen AI adoption, emphasizing the need for a technology-enabled operating model and the importance of reskilling the workforce.
Read more