FastRank Learning to Rank Library written in Rust.
Project description
FastRank
My most frequently used learning-to-rank algorithms ported to rust for efficiency.
Read my blog-post announcing the first public version: 0.4. It's alpha because I think the API needs work, not because there's any sort of known correctness or compatiblity issues.
Windows not supported
I'm in progress of finding a VM to test this with; if you're interested in Windows support, let me know. Tracking issue here: Windows Support.
Python Usage
pip install fastrank
See this Colab notebook for more, or see a static version here on Github.
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