rapids/docs/index.md

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# Welcome to RAPIDS documentation
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!!! warning
The functionality outlined in these docs is implemented in the branch `day_segments` which we will merge to `master` soon as release `0.1`. The previous (first) release of RAPIDS along with the old [docs](https://rapidspitt.readthedocs.io/en/latest/) will be labeled `beta`. If you landed on this page feel free to look around, just have in mind that we are polishing the last rough patches before we advertise `0.1` (Nov 16, 2020)
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Reproducible Analysis Pipeline for Data Streams (RAPIDS) allows you to process smartphone and wearable data to extract **behavioral features** (a.k.a. digital biomarkers/phenotypes).
RAPIDS is open source, documented, modular, tested, and reproducible. At the moment we support smartphone data collected with [AWARE](https://awareframework.com/) and wearable data from Fitbit devices.
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:material-slack: Questions or feedback can be posted on \#rapids in AWARE Framework\'s [slack](http://awareframework.com:3000/).
:material-github: Bugs should be reported on [Github](https://github.com/carissalow/rapids/issues).
:fontawesome-solid-tasks: Join our discussions on our algorithms and assumptions for feature [processing](https://github.com/carissalow/rapids/issues?q=is%3Aissue+is%3Aopen+label%3Adiscussion).
:fontawesome-solid-play: Ready to start? Go to [Installation](setup/installation/) and then to [Initial Configuration](setup/configuration/)
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## How does it work?
RAPIDS is formed by R and Python scripts orchestrated by [Snakemake](https://snakemake.readthedocs.io/en/stable/). We suggest you read Snakemake's docs but in short: every link in the analysis chain is atomic and has files as input and output. Behavioral features are processed per sensor and per participant.
## What are the benefits of using RAPIDS?
1. **Consistent analysis**. Every participant sensor dataset is analyzed in the exact same way and isolated from each other.
2. **Efficient analysis**. Every analysis step is executed only once. Whenever your data or configuration changes only the affected files are updated.
5. **Parallel execution**. Thanks to Snakemake, your analysis can be executed over multiple cores without changing your code.
6. **Extensible code**. You can easily add your own behavioral features in R or Python and keep authorship and citations.
3. **Timezone aware**. Your data is adjusted to the specified timezone (multiple timezones suport *coming soon*).
4. **Flexible day segments**. You can extract behavioral features on time windows of any length (e.g. 5 minutes, 3 hours, 2 days), on every day or particular days (e.g. weekends, Mondays, the 1st of each month, etc.) or around events of interest (e.g. surveys or clinical relapses).
7. **Tested code**. We are constantly adding tests to make sure our behavioral features are correct.
8. **Reproducible code**. You can be sure your code will run in other computers as intended thanks to R and Python virtual environments. You can share your analysis code along your publications without any overhead.
9. **Private**. All your data is processed locally.
## How is it organized?
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In broad terms the `config.yaml`, `.env` files, participant files, and day segment files are the only ones that you will have to modify. All data is stored in `data/` and all scripts are stored in `src/`. For more information see RAPIDS' [File Structure](file-structure.md).