Release 0.12 The Platform Inside and Out
Merge: inner 30% of matching data balanced across each partition Benchmarks: Distributed cuDF Random Merge . 19 Scale up with RAPIDS Accelerated on single GPU NumPy -> CuPy/PyTorch/.. Pandas -> cuDF Scikit-Learn -> cuML Numba -> Numba RAPIDS and Others NumPy, Pandas, Scikit-Learn, Numba and many more Single CPU core In-memory dataPyData Scale Up / Accelerate. 20 Scale out with RAPIDS + Dask ... ................
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