A PyTorch Basecaller for Oxford Nanopore Reads.
$ pip install --upgrade pip
$ pip install ont-bonito
$ bonito basecaller dna_r10.4_e8.1_sup@v3.4 /data/reads > basecalls.bam
Bonito supports writing aligned/unaligned {fastq, sam, bam, cram}
.
$ bonito basecaller dna_r10.4_e8.1_sup@v3.4 --reference reference.mmi /data/reads > basecalls.bam
Bonito will download and cache the basecalling model automatically on first use but all models can be downloaded with -
$ bonito download --models --show # show all available models
$ bonito download --models # download all available models
The default ont-bonito
package is built against CUDA 10.2 however CUDA 11.1 and 11.3 builds are available.
$ pip install -f https://download.pytorch.org/whl/torch_stable.html ont-bonito-cuda111
Modified base calling is handled by Remora.
$ bonito basecaller dna_r10.4_e8.1_sup@v3.4 /data/reads --modified-bases 5mC --reference ref.mmi > basecalls_with_mods.bam
See available modified base models with the remora model list_pretrained
command.
To train a model using your own reads, first basecall the reads with the additional --save-ctc
flag and use the output directory as the input directory for training.
$ bonito basecaller dna_r9.4.1 --save-ctc --reference reference.mmi /data/reads > /data/training/ctc-data/basecalls.sam
$ bonito train --directory /data/training/ctc-data /data/training/model-dir
In addition to training a new model from scratch you can also easily fine tune one of the pretrained models.
bonito train --epochs 1 --lr 5e-4 --pretrained dna_r10.4_e8.1_sup@v3.4 --directory /data/training/ctc-data /data/training/fine-tuned-model
If you are interested in method development and don't have you own set of reads then a pre-prepared set is provide.
$ bonito download --training
$ bonito train /data/training/model-dir
All training calls use Automatic Mixed Precision to speed up training. To disable this, set the --no-amp
flag to True.
$ git clone https://github.com/nanoporetech/bonito.git # or fork first and clone that
$ cd bonito
$ python3 -m venv venv3
$ source venv3/bin/activate
(venv3) $ pip install --upgrade pip
(venv3) $ pip install -r requirements.txt
(venv3) $ python setup.py develop
bonito view
- view a model architecture for a given.toml
file and the number of parameters in the network.bonito train
- train a bonito model.bonito evaluate
- evaluate a model performance.bonito download
- download pretrained models and training datasets.bonito basecaller
- basecaller (.fast5
->.bam
).
- Sequence Modeling With CTC
- Quartznet: Deep Automatic Speech Recognition With 1D Time-Channel Separable Convolutions
- Pair consensus decoding improves accuracy of neural network basecallers for nanopore sequencing
(c) 2019 Oxford Nanopore Technologies Ltd.
Bonito is distributed under the terms of the Oxford Nanopore Technologies, Ltd. Public License, v. 1.0. If a copy of the License was not distributed with this file, You can obtain one at http://nanoporetech.com
Research releases are provided as technology demonstrators to provide early access to features or stimulate Community development of tools. Support for this software will be minimal and is only provided directly by the developers. Feature requests, improvements, and discussions are welcome and can be implemented by forking and pull requests. However much as we would like to rectify every issue and piece of feedback users may have, the developers may have limited resource for support of this software. Research releases may be unstable and subject to rapid iteration by Oxford Nanopore Technologies.