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      <title>ODEs Without the Drama: How FPGAs Finally Make Physical AI Practical at the Edge</title>
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      <description>MERINDA shows that practical physical AI begins by redesigning solver-heavy model recovery for parallel hardware—not by placing the same algorithm on a smaller device.</description>
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