Tempus Announces Strategic Collaboration with Gilead to Advance Oncology R&D Through RWE

On April 9, 2026 Tempus AI, Inc. (NASDAQ: TEM), a technology company leading the adoption of AI to advance precision medicine, reported an expanded, multi-year collaboration with Gilead Sciences, Inc. (Nasdaq: GILD) aimed at building and advancing Gilead’s oncology pipeline.

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To date, Gilead has leveraged Tempus’ extensive repository of de-identified multimodal data to inform a range of oncology R&D initiatives, including trial design, indication selection, biomarker strategy, health outcomes analysis and clinical real world evidence. The expanded agreement provides Gilead with enterprise-wide access to Tempus’ AI-driven Lens platform, unlocking access to broader datasets across multiple indications and integrating dedicated Tempus analytical services.

"We are excited to announce this expanded partnership with Tempus that reflects our shared priority of putting patients at the heart of innovation," said Patrick Loerch, SVP of Clinical Data Science at Gilead Sciences. "By combining Gilead’s scientific expertise with Tempus’ real world data insights in oncology, we aim to maximize generation of key insights to help inform clinical decision making and ultimately improve care for cancer patients."

"By providing access to the Tempus multimodal data library, we are empowering the Gilead team to further fuel its R&D engine with AI-driven insights," said Ryan Fukushima, CEO of Tempus Data & Apps. "We are thrilled to expand this collaboration, offering the multimodal depth necessary to uncover critical biological insights. This approach helps navigate billions of data points to find the ‘signal in the noise,’ ultimately increasing the probability of success for life-altering medicines."

(Press release, Tempus, APR 9, 2026, View Source [SID1234664284])