Tempus unveiled the new AI tools during the 2025 J.P. Morgan Healthcare Conference in San Francisco.
Tempus AI, Inc. on Tuesday announced new generative AI capabilities aiming to assist physicians and researchers in drawing insights from unstructured, multimodal healthcare data. The enhancements are designed to help clinicians make data-driven decisions for patient care while expediting research for new oncology treatments.
Tempus unveiled the new AI tools during the 2025 J.P. Morgan Healthcare Conference in San Francisco, according to media reports.
The company’s platform, Tempus One, launched in 2023 and taps into Tempus’ proprietary Large Language Model (LLM) Agent Infrastructure (Agent Builder) to analyze large volumes of clinical notes, imaging scans, and other unstructured records. According to the company, this approach can help health care providers piece together a more complete view of a patient’s medical history and speed up clinical trial enrollment, among other uses.
According to the news release, the new iteration of Tempus One includes four new breakthrough generative AI-powered capabilities that leverage LLMs to derive insights from unstructured data.
“When we launched Tempus One a few years ago, our hope was that it would grow and scale in intelligence for the benefit of clinicians, researchers, and patients. We’ve been blown away by the evolution of this product which is designed to continually evolve so that we can easily deploy new generative AI solutions to our customers to address their evolving needs,” said Eric Lekfofsky, Founder and CEO of Tempus. “For example, LLMs now give us the opportunity to derive new insights from unstructured data, which has some of the richest patient data and until now, was extremely difficult to access at scale.”
Tempus, headquartered in Chicago, specializes in AI-enabled precision medicine solutions that aim to personalize patient care. Its multimodal data library and operating system are intended to provide physicians with tools that learn from each new piece of clinical information gathered.
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