iris
Open Source Photos Platform Powered by PyTorch
About
Services
Infrastructure Services:
Roadmap & Issues
You can find the roadmap for this project here. Issues are managed via GitHub Issues here.
in brouser:
graphql:1 Failed to load resource: the server responded with a status of 404 (Not Found)
in console:
frontend | 2021/11/05 09:51:37 [error] 36#36: *11 open() "/usr/share/nginx/html/graphql" failed (2: No such file or directory), client: 172.21.0.1, server: localhost, request: "POST /graphql HTTP/1.1", host: "localhost:5000", referrer: "http://localhost:5000/explore"
WAIDW?
frontendlat, long in /explore/place entities listborder-radius: 50% and for rest its border-radius: 4 or 8px@rmwc/theme<ThemeProvider /> by @rmwc and set colors via that as propsSEE ALL button on top/explore/people/explore/places/explore/thingsmake lint checkmake generate checkmake build checknpm run build checknpm run lint checknpm test checkPeople, Places, Thingsqueue and should be used for invoking those respective componentsDocker Images should be built using 2 step process to reduce the image size:
Docker Images will be named as follows:
prabhuomkar/iris-frontend:<tag>prabhuomkar/iris-graphql:<tag>prabhuomkar/iris-worker:<tag>prabhuomkar/iris-ml:<tag>Full Changelog: https://github.com/prabhuomkar/iris/compare/v2021.11.01...v2021.12.31
Source code(tar.gz)Full Changelog: https://github.com/prabhuomkar/iris/commits/v2021.11.01
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