Description
I have built our ML infrastructure with airflow and kubernetes. As a centralized scheduler, airflow has a few scenarios where airflow does not work well. For the next iteration of our ML workflow and scheduler, I'd like to invest in cloud-native workflow engine (basically argo). I'm actively exploring with this library and am wondering about the longer term development plan?
Do you take external contribution at the moment? (I suspect not at the moment, but would like to know when you would call it a V1 and go from there?)
Additional context
Description
I have built our ML infrastructure with airflow and kubernetes. As a centralized scheduler, airflow has a few scenarios where airflow does not work well. For the next iteration of our ML workflow and scheduler, I'd like to invest in cloud-native workflow engine (basically argo). I'm actively exploring with this library and am wondering about the longer term development plan?
Do you take external contribution at the moment? (I suspect not at the moment, but would like to know when you would call it a V1 and go from there?)
Additional context