Meet the Pets of Aignostics!

Our furry friends are essential members of the team who bring us joy every day.

Ryan Sargent
December 16, 2025

While our human colleagues focus on transforming the future of precision medicine, there's another team working tirelessly behind the scenes. They are experts in keeping a consistent schedule, reminding us when it's time for a break, and bringing smiles to everyone's faces. From the dog who serves as an in-house Pawthologist to the cat who monitors the development of our Purrduct, our furry friends are essential members of our team who bring us joy every day. Let's meet some of the pets who make our team complete!

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