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Uni Liverpool Autonomous Lab

June 9, 2026

Robots Accelerate Chemistry Research

At the University of Liverpool, AI-powered robots are transforming lab work. These autonomous systems move between benches, run experiments, and analyze results—freeing scientists from repetitive tasks and speeding up discovery.

Paired with Chemspeed’s automation platforms, this innovation enables high-throughput workflows and next-generation autonomous labs.

Watch the full video: https://www.msn.com/en-us/news/technology/the-robot-chemists-helping-scientists-in-a-university-chemistry-lab/vi-AA1KncKk?ocid=hpmsn&cvid=7ee71952f67a44f69dddea569c0a77b3&ei=79

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