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Deployment
The general deployment process consists of several interrelated activities with possible transitions between them. These activities can occur at the producer side or at the consumer side or both.
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Trying to --appimage-extract-and-run
a x86_64 Linux AppImage on FreeBSD 12.1-RELEASE-p8 with the Linux compatibility layer:
user@FreeBSD$ /home/user/Downloads/Akira-26-x86_64.AppImage --appimage-extract-and-run
mkdir_p error: Permission denied
Failed to extract AppImage
but
user@FreeBSD$ /home/user/Downloads/Akira-26-x86_64.AppImage --appimage-extract
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hi there,
Just installed latest versions of shipit packages and here's something new:
Running 'deploy:fetch' task...
Create workspace...
Workspace created: "/var/folders/s0/scv46d414cd28hyzsd5_pcrw0000gn/T/tmp-72206PXTF2WKB77Ro"
Initialize local repository in "/var/folders/s0/scv46d414cd28hyzsd5_pcrw0000gn/T/tmp-72206PXTF2WKB77Ro"
Running "git init" on local.
@ Initialized empty Gi
SUMMARY
While using the action runner type "local-shell-script", the action always try to set execute permission for the action script before the execution.
For example, action runner logs for the core.sendmail action
2022-03-09 07:02:06,866 INFO [-] Executing action via LocalRunner: dcc6c28d-5674-4cc2-9174-ca6c1e7b23a3
2022-03-09 07:02:06,866 INFO [-] [Action info] name: sendm
We are using font-awesome V4 and should migrate to font-awesome V5 which comes with its own vue.js module: https://github.com/FortAwesome/vue-fontawesome
Migration includes removing old font-awesome V4 module and changing all existing icons to new vue.js tag.
This is blocked until #114 is merged which comes with first initial integration.
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The documentation for creating complex inference graphs should include what components can be connected to what, and how the overall graph should behave.
For example, all inference graphs need to end with a single node, whether its a combiner combining multiple inputs, or a transformer, or a model--the graph can't split and then never rejoin, etc.
Is your feature request related to a problem? Please describe.
It's cumbersome to create the same step twice.
Describe the solution you'd like
Add a button to duplicate a step in the pipeline editor.
Ideas
We could combine this with some other ideas in a context menu (right click).
Credit to Serhii Ostapchuk for contributing this on Slack.
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Is your feature request related to a problem?
No.
Provide a detailed description of the proposed feature
Please
Add Freebsd 12.1,12.2,12.3,13.0, 14.0 to the signatures.
Add OpenBSD
Add GhostBSD
Add NetBSD
Add Fedora 35
Alternatives you've considered
Additional information
(suggested by Berndinox in #205; been bugging me for a while too)
Currently, the Docker image exposes port 80. We should change this so that running Meli doesn't require root access.
We'll need to update the deployment docs.
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Deployment apps
Flaptastic
Manage flaky unit tests. Click a checkbox to instantly disable any test on all branches. Works with your current test suite
Buddy
One-click delivery automation for Web Developers
Codefresh
A modern container-based CI/CD platform, easily assemble and run pipelines with high performance
Cloud 66 Skycap
Skycap is a container native CI/CD tool
Cloud 66 for Rails
Build, deploy, and maintain your Rails apps on any cloud or server
Semaphore
Test and deploy at the push of a button
Azure Pipelines
Continuously build, test, and deploy to any platform and cloud
Description
There are multiple user requests of using GraphNN data (node and edge lists) as sample batches into a custom RLlib model.
https://discuss.ray.io/t/rllib-variable-length-observation-spaces-without-padding/726
https://discuss.ray.io/t/working-with-graph-neural-networks-varying-state-space/5730/2
The recommended method today is to use Repeated observation space and VariableVal