Trigent, a leading US-based technology services provider and John Snow Labs, a trailblazer in AI and NLP for healthcare, proudly announce the launch of their groundbreaking AI Accelerator (Powered by Trigent AXLR8 Labs). This strategic collaboration represents a significant leap forward in leveraging cutting-edge AI research to tackle complex challenges in the healthcare and legal sectors.
The AI Accelerator is a collaborative hub that will unite AI researchers and experts to develop and implement advanced solutions and unlock new possibilities in the said domains.
The AI Accelerator promises to transform disease prediction, personalize treatments, analyze clinical trial data, and improve diagnostic imaging. It also aims to empower legal professionals by simplifying judgments, automating legal arguments, assessing contract risk, and predicting litigation outcomes.
Explore the AI Accelerator
“The AI Accelerator embodies our commitment to leveraging AI for impactful and transformative solutions. Our collaboration with John Snow Labs underscores this dedication to deliver groundbreaking innovations that will reimagine legal and healthcare landscapes.” Stated Chella Palaniappan, President, Client Services, Trigent.
David Talby, Chief Technology Officer of John Snow Labs, shared his enthusiasm, stating, “At John Snow Labs, we firmly believe that AI holds the power to revolutionize healthcare and legal sectors. Through this unique collaboration, we are aiming to accelerate innovations that were once deemed impossible and do so through the lens of safe, state-of-the-art, and ethical AI practices.”
About Trigent
Trigent, a US-based technology services organization, enables companies to adopt technological processes and customer engagement models to achieve impeccable results and end-user experience. Trigent’s decades of experience, deep domain knowledge, and technology expertise deliver transformational solutions to ISVs, enterprises, and SMBs. Learn more about Trigent here www.trigent.com.
Try State of the Art Medical Large Language Models
See in action