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Advances in sequencing, proteomics, transcriptomics, metabolomics, and others are giving
us new insights into the microbial world and dramatically improving our ability
to understand their community composition and function at high resolution.
These new technologies are generating vast amounts of data, even from a single
study or sample, leading to challenges in storage, representation, analysis,
and integration of the disparate data types. Qiita was designed to allow users
address these new challenges by keeping track of multiple studies with multiple
'omics data. Additionally, Qiita is capable of supporting multiple analytical
pipelines through a 3rd-party plugin system, allowing the user to have a single
entry point for all their analyses. Qiita's main site provides database and
compute resources to the global community, alleviating the technical burdens,
such as familiarity with the command line or access to compute power, that are
typically limiting for researchers studying microbial ecology.
Qiita is currently in production/stable status. We are very open to community
contributions and feedback. If you're interested in contributing to Qiita,
see CONTRIBUTING.md.
If you'd like to report bugs or request features, you can do that in the
Qiita issue tracker.
To install and configure your own Qiita server, see
INSTALL.md. However, Qiita is not designed to be used locally but rather on a server, we therefore advise against installing your own version on a personal computer. Nevertheless, it can run just fine on a laptop or small computer for development and educational purposes. For example, for every single PR and release, we install Qiita from scratch as GitHub Actions, you can follow these steps.
Full study management: Create, delete, update samples in the sample and
multiple preparation information files.
Upload files via direct drag & drop from the web interface or via scp
from any server that allows these connections.
Study privacy management: Sandboxed -> Private -> Public.
Easy long-term sequence data deposition to the European Nucleotide Archive (ENA),
part of the European Bioinformatics Institute (EBI) for private and public
studies.