Nanofilt Alternatives

Filtering and trimming of long read sequencing data
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Alternatives To wdecoster/nanofilt
Project Name Stars Downloads Repos Using This Packages Using This Most Recent Commit Total Releases Latest Release Open Issues License Language
OpenGene/fastp 1,602 0 0 over 2 years ago 1 December 15, 2021 309 mit C++
An ultra-fast all-in-one FASTQ preprocessor (QC/adapters/trimming/filtering/splitting/merging...)
pinellolab/CRISPResso2 233 0 0 about 2 years ago 0 24 other Python
Analysis of deep sequencing data for rapid and intuitive interpretation of genome editing experiments
OpenGene/AfterQC 157 0 0 over 8 years ago 0 21 mit Python
Automatic Filtering, Trimming, Error Removing and Quality Control for fastq data
wdecoster/nanofilt 141 1 1 about 3 years ago 34 February 24, 2021 2 gpl-3.0 Python
Filtering and trimming of long read sequencing data
relipmoc/skewer 70 0 0 almost 10 years ago 0 34 mit C++
hellosunking/Ktrim 30 0 0 over 2 years ago 0 5 C++
Ktrim: an extra-fast and accurate adapter- and quality-trimmer for sequencing data
B-UMMI/long-read-catalog 23 0 0 about 3 years ago 0 0
catalog for long-read sequencing tools
jhhung/PEAT 20 0 0 about 5 years ago 0 5 gpl-2.0 C++
An ultra fast and accurate paired-end adapter trimmer that needs no a priori adapter sequences.
USDA-ARS-GBRU/itsxpress 6 1 1 over 2 years ago 18 May 25, 2023 14 other Python
Software to trim the ITS region of FASTQ sequences for amplicon sequencing analysis
msettles/expHTS 5 0 0 about 9 years ago 0 17 apache-2.0 Python
Python application for "Experimental High Throughput Sequencing"
Alternatives To wdecoster/nanofilt
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