danielgraf

joined 2 years ago
[–] danielgraf@discuss.tchncs.de 3 points 13 hours ago

Glad I could help :)

[–] danielgraf@discuss.tchncs.de 1 points 13 hours ago

This process is not triggered by any external events.

Every ten minutes, an internal background job activates. Its function is to scan the database for any RawLocationPoints that haven't been processed yet. These unprocessed points are then batched into groups of 100, and each batch is sent as a message to be consumed by the stay-detection-queue. This process naturally adds to the workload of that queue.

However, if no new location data is being ingested, once all RawLocationPoints have been processed and their respective flags set, the stay-detection-queue should eventually clear, and the system should return to a idle state. I'm still puzzled as to why this initial queue (stay-detection-queue) is exhibiting such slow performance for you, as it's typically one of the faster steps.

[–] danielgraf@discuss.tchncs.de 3 points 14 hours ago (2 children)

Thank you for testing Reitti. 🙏

It depends on two key requirements for Reitti:

  1. First, it finds all photos from Immich taken on the day you selected.
  2. Then, it filters these photos based on the selected map bounds, using the embedded EXIF geolocation data (where the photo was shot).

If the EXIF data does not contain geolocation information, we currently cannot display those photos because their placement on the map cannot be determined.

Could you please verify in Immich if the expected photo has its location in the metadata? If it is available there, then the issue might lie in how Reitti is parsing that specific data.

[–] danielgraf@discuss.tchncs.de 1 points 15 hours ago (2 children)

That's good, but I still question why it is so slow. If you receive these timeout exceptions more often, at some point the data will cease to be analyzed.

I just re-tested it with multiple concurrent imports into a clean DB, and the stay-detection-queue completed in 10 minutes. It's not normal for it to take that long for you. The component that should take the most time is actually the merge-visit-queue because this creates a lot of stress for the DB. This test was conducted on my laptop, equipped with an AMD Ryzen™ 7 PRO 8840U and 32GB of RAM.

[–] danielgraf@discuss.tchncs.de 1 points 17 hours ago* (last edited 17 hours ago) (4 children)

Thanks for getting back to me. I can look into it. I don't think it's connected, but you never know.

The data goes the same way, first to RabbitMQ and then the database. So it shouldn't matter, it's just another message or a bunch of them in the queue.

[–] danielgraf@discuss.tchncs.de 2 points 18 hours ago

It is actually awesome if you have some old photos with the geodata attached and scim through Reitti and suddenly one of them shows up :)

[–] danielgraf@discuss.tchncs.de 2 points 18 hours ago* (last edited 18 hours ago) (6 children)

Hmm, I had hoped you say something like a Raspberry PI :D

But this should be enough to have it processed in a reasonable time. What I do not understand in the moment is, that the filesize should not affect it in any way. When importing it 100 Geopoints are bundled, send to RabbitMQ. From there we retrieve them, do some filtering and save them in the database. Then actually nothing happens anymore until the next processing run is triggered.

But this than works with the PostGis DB and not with the file anymore. So the culprit should be there somewhere. I will try to insert some fake data into mine and see how long it takes if i double my location points.

[–] danielgraf@discuss.tchncs.de 2 points 18 hours ago (8 children)

Thanks for the information. I will try to recreate it locally. In my testing I used a 600MB file and this took maybe 2 hours to process on my server. It is one of these ryzen 7 5825U. Since Reitti tries to do these analysis on multiple cores we start it with 4 to 16 Threads when processing. But the stay detection breaks when doing it that way, so it is locking per user to handle that. If now one of them takes a long time the others will break eventually. They will get resheduled 3 times until rabbitmq gives up.

On what type of system do you run it?

I will add some switches so it is configurable how many threads are opened and add some log statements to print out the duration it took for a single step.

[–] danielgraf@discuss.tchncs.de 6 points 19 hours ago

It was not intentional but after bothering not about it because i had other things on my mind i got used to it and now like it the way it is.

But for everyone who is bothered by that. If Reitti reaches 1k stars on Github I will add a switch to use a centered one 😊

[–] danielgraf@discuss.tchncs.de 6 points 19 hours ago (10 children)

Congratulations 😆

To help with that I would need some information:

  • does it show anything in the logs?
  • what do you mean by several years or how big was the Records.json?

Thank you for testing 🙂

[–] danielgraf@discuss.tchncs.de 1 points 19 hours ago

Oh, i had the idea in mind what i want to create and than it was a matter of a couple of Google queries but in the end one of the LLM suggested a list of different names in foreign languages and reitti somehow sticked 😊

[–] danielgraf@discuss.tchncs.de 1 points 19 hours ago* (last edited 18 hours ago)

I had a similar setup with Home Assistant in the past so I understand your usecase. For Reitti to detect visits somewhat reliable it needs at least one datapoint of location data a minute. We build location clusters with minimum 5 points in 5 minutes. If HA tracks that often it should work. HA probably tracks more than that.

I could add an integration that Reitti fetches the data from Home Assistant. Do you mind in creating a feature request?

 

Hey everyone!

I'm excited to introduce Reitti, a location tracking and analysis application designed to help you gain insights about your movement patterns and significant places—all while keeping your data private on your own server.

Core Capabilities:

  • Visit Tracking: Automatically recognizes and categorizes the places where you spend time, using customizable detection algorithms
  • Trip Analysis: Analyzes your movements between locations to understand how you travel whether by walking, cycling, or driving
  • Interactive Timeline: Visualizes all your past activities on an interactive timeline with map and list views that show visit duration, transport method, and distance traveled

Photo Integration:

  • Connect your self-hosted Immich photo server to seamlessly display photos taken at specific locations right within Reitti's timeline. The interactive photo viewer lets you browse galleries for each place.

Data Import Options:

  • Multiple Formats Supported: Reitti can import existing location data from GPX, GeoJSON, and Google Takeout (JSON) backups
  • (Near) Real-time Updates: Automatically receive location info via mobile apps like OwnTracks, GPSLogger or our REST API

Customization:

  • Multi-geocoding Services: Configurable options to convert coordinates to human-readable addresses using providers like Nominatim
  • User Profiles: Customize individual display names, password management, and API token security under your own control

Self-hosting:

  • Reitti is designed to be deployed on your own infrastructure using Docker containers. We provide configuration templates to set up linked services like PostgreSQL, RabbitMQ and Redis that keep all your location data private.

Reitti is still early in development but has already developed extensive capabilities. I'd love to hear your feedback and answer any questions to tailor Reitti to meet the community's needs.

Hope this sparks some interest!

Daniel

view more: next ›