Skip to content

Performance evaluation tools for multiclass, multirater classification models

License

Notifications You must be signed in to change notification settings

beacon-biosignals/Lighthouse.jl

Repository files navigation

Lighthouse.jl

Lighthouse.jl

CI codecov Docs: stable Docs: development

Lighthouse.jl is a Julia package that standardizes and automates performance evaluation for multiclass, multirater classification models. By implementing a minimal interface, your classifier automagically gains a thoroughly instrumented training/testing harness (Lighthouse.learn!) that computes and logs tons of meaningful performance metrics to TensorBoard in real-time, including:

  • test set loss
  • inter-rater agreement (e.g. Cohen's Kappa)
  • PR curves
  • ROC curves
  • calibration curves

Lighthouse itself is framework-agnostic; end-users should use whichever extension package matches their desired framework (e.g. https://github.com/beacon-biosignals/LighthouseFlux.jl).

This package follows the YASGuide.

Installation

To install Lighthouse for development, run:

julia -e 'using Pkg; Pkg.develop(PackageSpec(url="https://github.com/beacon-biosignals/Lighthouse.jl"))'

This will install Lighthouse to the default package development directory, ~/.julia/dev/Lighthouse.

TensorBoard

Note that Lighthouse's LearnLogger logs metrics to a user-specified path in TensorBoard's logdir format. TensorBoard can be installed via python3 -m pip install tensorboard (note: if you have tensorflow>=1.14, you should already have tensorboard). Once TensorBoard is installed, you can view Lighthouse-generated metrics via tensorboard --logdir path where path is the path specified by Lighthouse.LearnLogger. From there, TensorBoard itself can be used/configured however you like; see https://github.com/tensorflow/tensorboard for more information.

You can use alternative loggers, as long as they comply with the logging interface.

About

Performance evaluation tools for multiclass, multirater classification models

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages