All activity
Debug your machine learning models in realtime with powerful, interactive visualizations.
Quickly log charts from your Python script, visualize your model development in live dashboards, and share interactive plots with your team, in just 2 minutes.
ML Visualization IDE
Make powerful, interactive machine learning visualizations
Hyperparameter tuning is a way to find the best machine learning model. We make it ridiculously easy to run hyperparameter sweeps using simple algorithms like grid search, to more modern approaches like bayesian optimization and early stopping.
Sweeps
Scalable, customizable hyperparameter tuning
Lukas Biewald
left a comment
Hi everyone - I'm Lukas and I worked on this product. We made this tool for ML engineers to launch a hyperparameter search and visualize their results with three lines of code. We found that most ML practitioners think that hyperparameter search is a good idea but don't do it all the time because it seems like a pain to set up. Do you do hyperparameter search? I'd love to hear about how you...
Sweeps
Scalable, customizable hyperparameter tuning