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pylheLightweight Python interface to read Les Houches Event (LHE) files
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pmml4sPMML scoring library for Scala
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zinggScalable identity resolution, entity resolution, data mastering and deduplication using ML
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mlappMLApp is a Python library for building scalable data science solutions that meet modern software engineering standards.
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DDOS Detectionddos attack detector using ML Algorithms
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jovian-pyCollaboration platform for data science projects & Jupyter notebooks
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