Skip to content

Latest commit

 

History

History
67 lines (54 loc) · 3.2 KB

how-to-introduction.md

File metadata and controls

67 lines (54 loc) · 3.2 KB
title description keywords author ms.author manager ms.date ms.topic ms.service
How-to deep dives into data analysis and visualization in Machine Learning Server
Documentation for data science, statistics, analysis and visualization using Machine Learning Server R and Python libraries and tools.
chuckheinzelman
charlhe
cgronlun
02/16/2018
how-to
mlserver

How-to guides for data analysis and operationalization

[!INCLUDE retirement banner]

This section of the Machine Learning Server documentation is for data scientists, analysts, and statisticians. The focus of this content area is on data acquisition, transformation and manipulation, visualization, and analysis in R and Python, as well as the deployment and consumption of models and code. It provides step-by-step guidance for common tasks leveraging the libraries and packages in Machine Learning Server.

If you are new to R, be sure to also use the R Core Team manuals that are part of every R distribution, including An Introduction to R, The R Language Definition, Writing R Extensions and so on. Beyond the standard R manuals, there are many other resources. Learn about them here.

How-to guidance

Data analysis

Remote code execution on Machine Learning Server

Operationalization: deploy and consume models and code

See Also

Learning Resources

Machine Learning Server