🙋♂️ Q: EPA's new PFAS rule means you need to choose a new treatment technology, which can take six months to a year. If you don’t have that kind of time, how can you speed up the process? 📢 A: With great modeling tools—and great experts to make sense of them. In just a month, Hazen used both to zero in on a good PFAS removal option for a client on a very tight schedule. One of the models we used was Hazen GAC. This machine learning tool can predict PFAS removal performance in days, delivering results that rival those of lab tests while shaving months off the decision-making process. Learn more: https://lnkd.in/gZWHdG3v
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