mlstacks
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Add label studio component
Describe changes
I have created Terraform files in the gcp-modular
directory to enable the deployment of a Label Studio component to a Hugging Face Space. This setup works when running terraform apply
directly in the directory. However, I encounter issues when attempting to deploy using the mlstacks deploy
command.
Debugging Files Included
This PR includes a set of YAML configuration files located in src/mlstacks/testing
used for debugging the deployment process of the new MLStacks component. These files are essential for replicating the deployment steps and troubleshooting the issues described.
Steps to Reproduce the Error
To replicate the error I'm encountering with mlstacks deploy
, execute the following command from within the src/mlstacks/testing
directory:
python ../cli/cli.py deploy -f label_studio_stack.yaml -d
This results in the following error related to Terraform provider resolution:
Error: Failed to query available provider packages
Could not retrieve the list of available versions for provider hashicorp/huggingface-spaces: provider registry registry.terraform.io does not have a provider named
registry.terraform.io/hashicorp/huggingface-spaces
Did you intend to use strickvl/huggingface-spaces? If so, you must specify that source address in each module which requires that provider. To see which modules are currently
depending on hashicorp/huggingface-spaces, run the following command:
terraform providers
Request for Assistance
I would appreciate guidance on resolving the provider resolution issue with mlstacks deploy
. Any insights into potential misconfigurations or enhancements to the deployment scripts would be highly beneficial.
Pre-requisites
Please ensure you have done the following:
- [x] I have read the CONTRIBUTING.md document.
- [ ] If my change requires a change to docs, I have updated the documentation accordingly.
- [ ] I have added tests to cover my changes.
- [x] I have based my new branch on
develop
and the open PR is targetingdevelop
. If your branch wasn't based on develop read Contribution guide on rebasing branch to develop.
Types of Changes
- [x] New Feature: Added Terraform configurations for deploying Label Studio as a component in a Hugging Face Space.
- [x] Code Refactoring: Introduced new constants and enumerations to support the configuration of the Label Studio component.
- [ ] Bug Fix/Improvement: (If applicable, describe any bug fixes or improvements here.)
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Hi @davidrd123. Apologies for the delay in getting back to you on this. I've tried to fix the provider, but haven't managed to crack it just yet. So for now what I'd propose is the following:
- assume you can't do anything more than basic usage with the provider, e.g.
resource "huggingface-spaces_space" "zenml_server" {
name = "test-zenml-space"
private = false
template = "zenml/zenml"
}
- remove support in this PR for secrets, variables, hardware, storage and sleep_time
So all this PR would do is spin up the HF space and delete it with default settings. (Plus the option to set it private vs public). It's a more limited feature set, but I can't think of a way to help close out this feature prior to finding the fix for the TF Provider.
Does that make sense?