Skip to content

nikhil-garg/L2L

 
 

Repository files navigation

L2L Gradient-free Optimization Framework

About

The L2L (Learning-to-learn) gradient-free optimization framework contains well documented and tested implementations of various gradient free optimization algorithms. It also defines an API that makes it easy to optimize (hyper-)parameters for any task (optimizee). All the implementations in this package are parallel and can run across different cores and nodes (but equally well on a single core).

NOTE: The L2L framework is currently in BETA

Getting Started

If you are developing a new Optimizee or want to try out a new Optimizee with the Optimizers in the L2L package, install L2L as a python package. See section Installing the L2L Package for details on how to install the package (this automatically installs all requirements).

Documentation is available at https://igitugraz.github.io/L2L/.

Installing the L2L Package

From the Top-Level directory of the directory, run the following command:

pip3 install --editable . --process-dependency-links [--user]

The `--user` flag is to be used if you wish to install in the user path as opposed to the root path (e.g. when one does not have sudo access)

The above will install the package by creating symlinks to the code files in the relevant directory containing python modules. This means that you can change any of the code files and see the changes reflected in the package immediately (i.e. without requiring a reinstall). In order to uninstall one may run the following:

pip3 uninstall Learning-to-Learn

Note that if the setup was done using sudo access, then the uninstall must also be done using sudo access

Having installed this package, we now have access to the top level l2l module which contains all the relevant modules relevant for using the l2l package.

This should also install the sphinx package which should now enable you to build the documentation as specified below.

Building Documentation

Run the following command from the doc directory

make html

And open the documentation with

firefox _build/html/index.html

All further (and extensive) documentation is in the html documentation!

About

Learning to Learn: Gradient-free Optimization framework

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 70.3%
  • Jupyter Notebook 29.5%
  • Shell 0.2%