HIGHLIGHTS
- What: - the authors propose a novel resistive edit distance-tolerant content addressable memory for computational genomics applications particularly for detection and identification of pathogens of pandemic importance. To alleviate this fundamental limitation, the authors propose a resistive edit distance-tolerant content addressable memory (DIPER), which is capable of tolerating a user-configurable edit (rather than Hamming) distance. The authors present a fast, highly sensitive and precise approximate matching-based DNA detection and identification solution, implemented by DIPER. To evaluate the impact of global and local variations on DIPER classification efficiency, the authors focus on the most challenging . . .

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