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+# QuiVer Benchmarks
+
+This repository holds everything you need for automatically executing different OCR-D workflows on images and evaluating the outcomes.
+It creates benchmarks for (your) OCR-D data in a containerized environment.
+You can run QuiVer Benchmarks either locally on your machine or in an automized workflow, e.g. in a CI/CD environment.
+
+QuiVer Benchmarks is based on `ocrd/all:maximum` and has all OCR-D processors at hand that a workflow might use.
+
+## Prerequisites
+
+- Docker >= 23.0.0
+
+To speed up QuiVer Benchmarks you can mount already downloaded text recognition models to `/usr/local/share/ocrd-resources/` in [`docker-compose.yml`]().
+Otherwise the tool will download the models on each run.
+
+## Usage
+
+- clone this repository
+- [customize](#custom-workflows-and-data) QuiVer Benchmarks according to your needs
+- run `docker compose build && docker compose up`
+- the benchmarks and the evaluation results will be available in `data/`
+
+## Benchmarks Considered
+
+The relevant benchmarks gathed by QuiVer Benchmarks are defined in [OCR-D's Quality Assurance specification](https://ocr-d.de/en/spec/eval) and comprise
+
+- CER (per page and document wide), incl.
+  - median
+  - minimum and maximum CER
+  - standard deviation
+- WER (per page and document wide)
+- CPU time
+- wall time
+- processed pages per minute
+
+## Custom Workflows and Data
+
+The default behaviour of QuiVer Benchmarks is to collect OCR-D's sample Ground Truth workspaces (currently stored in [quiver-data](https://github.com/OCR-D/quiver-data)), executing the [recommended standard workflows](https://ocr-d.de/en/workflows#recommendations) on these and obtaining the relevant [benchmarks](#benchmarks-considered) for each workflow.
+
+You can, however, customize QuiVer Benchmarks to run your own workflows on the sample workspaces or your own OCR-D workspaces.
+
+### Adding New OCR-D Workflows
+
+Add new OCR-D workflows to the directory `workflows/ocrd_worflows` according to the following conventions:
+
+- OCR workflows have to end with `_ocr.txt`, evaluation workflows with `_eval.txt`. The files will be converted by OtoN to Nextflow files after the container has started.
+- workflows have to be TXT files
+- all workflows have to use [`ocrd process`](https://ocr-d.de/en/user_guide#ocrd-process)
+
+Since the `workflows` directory is mounted to the container spun up by `docker compose up` it is not necessary to rebuild the Docker image.
+
+### Removing OCR-D Workflows
+
+Delete the respective TXT files from `workflows/ocrd_workflows`.
+
+### Using Custom Data
+
++++ TODO +++
+
+## Development
+
+## Outlook
+
+## License
+
+See [LICENSE](LICENSE)