commit | 8501fb325309249e6b4414aa468f69b1a2539153 | [log] [tgz] |
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author | Shafaq Siddiqi <shafaq.siddiqi@tugraz.at> | Mon Oct 05 14:06:40 2020 +0200 |
committer | Shafaq Siddiqi <shafaq.siddiqi@tugraz.at> | Mon Oct 05 14:06:40 2020 +0200 |
tree | 4d86b6551b55a619dcaf00cc8d81ba4290b0c837 | |
parent | 8d1dfe92499e3138d2397423930865e64d77e91c [diff] |
[MINOR] minor fixes in smote replace the rbind/cbind with indexing rand call is updated with a seed value
Overview: SystemDS is a versatile 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 different expertise. These high-level scripts are compiled into hybrid execution plans of local, in-memory CPU and GPU operations, as well as distributed operations on Apache Spark. In contrast to existing systems - that either provide homogeneous tensors or 2D Datasets - and in order to serve the entire data science lifecycle, the underlying data model are DataTensors, i.e., tensors (multi-dimensional arrays) whose first dimension may have a heterogeneous and nested schema.
Quick Start Install, Quick Start and Hello World
Documentation: SystemDS Documentation
Python Documentation Python SystemDS Documentation
Issue Tracker Jira Dashboard
Status and Build: SystemDS is renamed from SystemML which is an Apache Top Level Project. To build from source visit SystemDS Install from source