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https://twitter.com/photoprism_app/status/1657452177592385536 Signed-off-by: Michael Mayer <michael@photoprism.app> |
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README |
>> Running PhotoPrism on ARMv7-based devices (32-bit) << You may use the following 32-bit Docker images to run PhotoPrism and MariaDB on ARMv7-based devices: Stable Release : photoprism/photoprism:armv7 Development Preview: photoprism/photoprism:preview-armv7 MariaDB : linuxserver/mariadb:latest Docker Hub URL: https://hub.docker.com/r/photoprism/photoprism/tags?page=1&name=armv7 Note that Darktable is not included in the ARMv7 image because it is not 32-bit compatible. Always choose the regular 64-bit version if your device supports it. If your device meets the system requirements, mostly the same installation instructions as for regular Linux servers apply: https://docs.photoprism.app/getting-started/docker-compose/ Please pay close attention to changed directory and environment variable names! Existing users are advised to check their "docker-compose.yml" against our examples at <dl.photoprism.app/docker> from time to time in case there are new configuration options or other improvements. Update instructions can be found at the bottom of this README file. ### System Requirements ### - Your device should have at least 3 GB of physical memory and a 64-bit operating system (always use our ARM64 image if possible) - While PhotoPrism has been reported to work on devices with less memory, we take no responsibility for instability or performance problems - RAW image conversion and TensorFlow are disabled on systems with 1 GB or less memory - Indexing large photo and video collections significantly benefits from local SSD storage and plenty of memory for caching, especially the conversion of RAW images and the transcoding of videos are very demanding - If less than 4 GB of swap space is configured or a manual memory/swap limit is set, this can cause unexpected restarts, for example, when the indexer temporarily needs more memory to process large files - High-resolution panoramic images may require additional swap space and/or physical memory above the recommended minimum - We recommend disabling kernel security in your docker-compose.yml, especially if you do not have experience with the configuration: ``` photoprism: security_opt: - seccomp:unconfined - apparmor:unconfined ``` - If you install PhotoPrism on a public server outside your home network, always run it behind a secure HTTPS reverse proxy such as Traefik or Caddy: https://docs.photoprism.app/getting-started/proxies/traefik/ ### Troubleshooting ### If your server runs out of memory, the index is frequently locked, or other system resources are running low: - Try reducing the number of workers by setting PHOTOPRISM_WORKERS to a reasonably small value in docker-compose.yml, depending on the performance of your device or cloud server: https://docs.photoprism.app/getting-started/config-options/ - If you are using SQLite, switch to MariaDB, which is better optimized for high concurrency - As a last measure, you can disable the use of TensorFlow for image classification and face recognition Other issues? Our troubleshooting checklists help you quickly diagnose and solve them: https://docs.photoprism.app/getting-started/troubleshooting/ ### Getting Updates ### Open a terminal and change to the folder where the "docker-compose.yml" file was saved. Now run the following commands to download the most recent image from Docker Hub and restart your instance in the background: docker compose pull --platform=arm photoprism docker compose stop photoprism docker compose up -d photoprism Pulling a new version can take several minutes, depending on your internet connection speed. Even when you use an image with the ":latest" tag, Docker does not automatically download new images for you. You can either manually upgrade as shown above, or set up a service like Watchtower to get automatic updates: https://docs.photoprism.app/getting-started/updates/#watchtower ### Credits ### A big thank you to Guy Sheffer (https://github.com/guysoft) for helping us build a Raspberry Pi version!