Dorado
github.com/nanoporetech/doradoOxford Nanopore's official deep-learning basecaller for nanopore sequencing, converting raw electrical signals into DNA/RNA sequences with integrated modified-base (methylation) detection and efficient CPU/GPU inference; foundational tool for long-read genomics, epigenetics, and real-time sequencing analysis (nanoporetech, 846+ stars, actively maintained)
Sourced from
- Awesome AI for Science — github.com/nanoporetech/dorado
- GitHub — github.com/nanoporetech/dorado
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