Verta Experiment Manager enables data scientists to organize thousands of modeling experiments, visualize experimental data like metrics, hyperparameters, model quality, data samples, and share their work easily with colleagues.
We're excited to introduce new functionalities and an improved UI experience in the Experiment Manager module of the Verta platform.
Improvements include:
Let’s take a look at some of these enhancements.
Dashboards help create a central place to organize and visualize results from your machine learning models. You can now group different experiment results into separate sections using panels.
With an expanded list of supported widgets, you can plot a variety of charts, create custom views for different teams, and share project status and results.
Once you organize and embed visualizations and relevant charts, you can add a summary with our new markdown widget and convert your live dashboards into shareable reports for stakeholders. You can even download these reports as a pdf for offline sharing.
The updated experiment run table makes it easier to sort and filter hundreds or thousands of runs. You can easily show, hide, reorder, pin and unpin columns to customize the table view and surface key insights. Quickly register a model, deploy it, or leave a comment in the action column. The option to filter and take various actions like compare, register, deploy, and comment are now more accessible than ever.
The new run compare view makes it easier to compare multiple experiment runs using a tabular layout with the key differences being highlighted upfront. You can expand, collapse and drill down specific metrics of interest. Additionally, you can compare the runs visually with various charts.
Get started by logging experiment run details and various model performance metrics, hyperparameters, and other attributes in Verta using our client library. Learn more about how to log experiments with our quick start guide and an end-to-end example with a scikit-learn model.