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Data engineers, data scientists, or ML engineers, often need to build pipelines that take a long time to run, are resource-hungry, require tricky scheduling and execution order, and often need different execution environments for different stages of the pipeline.
Typically, the solution is some form of Pipeline orchestration software like Airflow or Prefect, both are great options for production workloads however they clearly have some cons.

Generally, an ideal DataOps solution would address the following problems:

The good news is I created the solution that solves all of the pains above.

I built this platform as the company’s internal MLOps solution and use it daily for ETL and ML pipelines that require long run time, the flexibility of intense resources, and the flexibility of environments. 
If you wish to deploy ETL or ML pipelines without the pain of configuring cloud solutions or costly cloud VMs that charge you even when you are not using them then let us know about your interest by filling up this form, and we will share our solution with you. bit.ly/beta-test-h