state-of-the-art-result-for-machine-learning-problems
Machine Learning Benchmarks
A curated collection of state-of-the-art results for various machine learning problems and domains, serving as a single reference point.
This repository provides state of the art (SoTA) results for all machine learning problems. We do our best to keep this repository up to date. If you do find a problem's SoTA result is out of date or missing, please raise this as an issue or submit Google form (with this information: research paper name, dataset, metric, source code and year). We will fix it immediately.
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