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Multiple languages: Java/Python/C++/Golang/JavaScript/Rust/Scala/TypeScript. Zero-copy: Cross-language out-of-band serialization inspired by pickle5 and off-heap read/write. High performance: A highly-extensible JIT framework to generate serializer code at runtime in an async multi-thread way to speed serialization, providing 20-170x speed up by: reduce memory access by inlining variables in gener
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# This file defines a Japanese stoptag set for JapanesePartOfSpeechStopFilter.
The website is published directly from a specially named asf-site branch. The content of this branch is generated automatically by Jekyll from the master branch whenever changes are detected in the master branch. One should never modify the content of the asf-site directly. The master branch consists primarily of GitHub compatible MarkDown documents, which hold all the written content. There are t
Superset is a modern data exploration and data visualization platform. Superset can replace or augment proprietary business intelligence tools for many teams. Superset integrates well with a variety of data sources. Superset provides: A no-code interface for building charts quickly A powerful, web-based SQL Editor for advanced querying A lightweight semantic layer for quickly defining custom dimen
lucene-solr/lucene/analysis/kuromoji/src/test/org/apache/lucene/analysis/ja/TestJapaneseNumberFilter.java / Jump to Code definitions
Overview: SystemDS is an open source ML system for the end-to-end data science lifecycle from data integration, cleaning, and feature engineering, over efficient, local and distributed ML model training, to deployment and serving. To this end, we aim to provide a stack of declarative languages with R-like syntax for (1) the different tasks of the data-science lifecycle, and (2) users with differen
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