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GSoC 2016 summit discussion
Heiko Strathmann edited this page Oct 31, 2016
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Viktor and Heiko had some really good discussions on the GSoC 2016 mentor summit, as a result of spending a week of hacking Shogun before the summit. See photo of notes on bottom.
##Hacking
- Updated the website, and automated its deployment
- Automated the release process
- Automate nightly binaries for ubuntu
- Extended integration testing across all interfaces
- fixed tons of bugs
- ...
##Next steps This is a suggestion for a set of releases, roughly ordered in priority, with big blobs (that require a major release) grouped together. There is a parallel stream of smaller fixes below, along with a set of more vague goals for the more distant future.
###5.0
- This release was prepared at the summit
###5.1
- Bugfix release for 5.0
- milestone
- Mostly about fixing problems we wanted to fix at the summit, but did not find time.
- All relatively high priority and should be done before moving on, at least partly
- Add scala in examples (re-uses java)
#6.0
- milestone
- Integrate tags GSoC 2016 project (requires a
SG_ADD
hack) - Integreate cereal GSoC 2016 project (requires tags)
- Based on new cerealisation, make a hash based equals method
- remove existing parameter framework
- c++11 hard requirement
- integrate linalg GSoC 2016 project
#7.0
- Constrained parameters
- Every parameter gets a range of valid values it can take, potentially a domain
- ...
#8.0 (maybe can be merged with previous)
- shared pointer shogun wide
- base interface for ML (abstract classes, restructure shoguns API, depends on constrained parameters)
- split SWIG/cmake/tests, modularise library, ship separate binaries
#Other changes, independent of release, in increasing priority
- integration of interfaces into target language system (e.g. maven for java)
- BSD license change
- get rid of jblas and ndarray and replace with more modern libraries
- New typemaps and examples for js, Matlab, D
- Build a pipeline for supervised prediction, fix things on the fly
- Pull out the interfaces from the Shogun repo (and examples, testing, build)
- Establish affiliation (numfocus or other) for funding, give up on own eV
- graph based representation of computation, use something as tensorflow as backend, just like linalg
- Standard ML API with Shogun as reference implementation
- OpenML