From the post:
- Learning Reductions: I’ve wanted to get learning reductions working and we’ve finally done it. Not everything is implemented yet, but VW now supports direct:
- Multiclass Classification –oaa or –ect.
- Cost Sensitive Multiclass Classification –csoaa or –wap.
- Contextual Bandit Classification –cb.
- Sequential Structured Prediction –searn or –dagger
In addition, it is now easy to build your own custom learning reductions for various plausible uses: feature diddling, custom structured prediction problems, or alternate learning reductions. This effort is far from done, but it is now in a generally useful state. Note that all learning reductions inherit the ability to do cluster parallel learning.
- Library interface: VW now has a basic library interface. The library provides most of the functionality of VW, with the limitation that it is monolithic and nonreentrant. These will be improved over time.
- Windows port: The priority of a windows port jumped way up once we moved to Microsoft. The only feature which we know doesn’t work at present is automatic backgrounding when in daemon mode.
- New update rule: Stephane visited us this summer, and we fixed the default online update rule so that it is unit invariant.
There are also many other small updates including some contributed utilities that aid the process of applying and using VW.
Plans for the near future involve improving the quality of various items above, and of course better documentation: several of the reductions are not yet well documented.
A good test for your understanding of a subject is your ability to explain it.
Writing good documentation for projects like Vowpal Wabbit would benefit the project. And demonstrate your chops with the software. Something to consider.