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Google Summer of Code 2015 projects
Heiko Strathmann edited this page Feb 20, 2015
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Please create a new wiki page for each project that you describe (to keep this page small). Name them as "GSoC_2015_project_MCMC" etc. Here is a template
This year's GSoC is about improving Shogun, rather than extending it. Exceptions allowed. ALL students will be required to document existing Shogun code on a weekly basis during GSoC.
- Fewer new algorithms. Rather improve existing ones: Usability, efficiency, documentation, application
- Fewer students. More intense mentoring, interaction between students, blogging, documenting
- Projects on
- Installation: most important
- Clean ups of: framework, build process, algorithms, usability, documentation
- Removing legacy code
- Efficiency: High performance computing, parallelisation, cloud, benchmarking
- Applications: Using Machine Learning as a tool to improve the world, rather than toy examples
- Pipelines & Framework: Improve usability on standard workflow pipelines
- Usablity: Building and Installing Shogun has to be easier
Mentors (and students) this year
These are roughly ordered in our priority in them. Most of them do not focus on Machine Learning but rather on software engineering.
- Easy installation on major platforms
- Native MS Windows port
- A Shogun Detox
- Unifying Shogun's linear algebra
- HMMs for biological data
- Shogun cloud extensions
- Native MS Windows port
The projects we would like to limit in numbers.
- Fundamental ML 2: LGSSMs
- Large Scale Gaussian Processes
- Hip Deep learning
- Solver for the KKT System
- LP/QP Framework
- Density Estimation in Infinite Dimensional Exponential Families
- Debiasing & Cluster computing
- Cool pipelines
- A kaggle pipeline for supervised prediction.
- Spectrometer (there is an open-source hardward project on this)
- Music brainz predictions (The cool hair guy at GSoC is the one we should talk to here)
- Some bio thing?
- Collaboration with MLPack for toolkit wide performance/accuracy testing
- Easy Model selection!
- Get rid of static interfaces, migrate all tests etc
- Matlab swig bindings
- REST interface
- Modularise Shogun
- Replace parameter framework
- Benchmark existing algos and improve!