I have been using Databricks platform for business research projects and building ML models for almost a year. It has been a great experience to be able to run analysis and model testing for big data projects in a single platform without switching between SQL server and development environment with Python, R, or Stata. Also, I like the fact that MLflow can track data ingestion for any data shift in realtime for model retraining purposes. Review collected by and hosted on G2.com.
We have had issues using MLflow and feature store on Databricks for ML projects, which slows down the development process. Wish there was better documentation on these tools or more diverse examples to demonstrate different use cases. Also, the test-train split with MLflow does not support time series time interval test-train split for model validation purposes. Review collected by and hosted on G2.com.
We're glad to hear that you have had a great experience using Databricks for your business research projects and ML model building. It's fantastic to hear that you find the platform to be a great collaborative tool for big data projects.
The reviewer uploaded a screenshot or submitted the review in-app verifying them as current user.
Validated through a business email account
Organic review. This review was written entirely without invitation or incentive from G2, a seller, or an affiliate.






