Machine learning algorithms
In this section, we review algorithms that are needed for machine learning, and introduce machine learning libraries including Spark's MLlib and IBM's SystemML, then we discuss their integration with Apache Spark.
After reading this section, readers will become familiar with various machine learning libraries including Spark's MLlib, and know how to make them ready for machine learning.
To complete a Machine Learning project, data scientists often employ some classification or regression algorithms to develop and evaluate predictive models, which are readily available in some Machine Learning tools like R or MatLab. To complete a machine learning project, besides data sets and computing platforms, these machine learning libraries, as collections of machine learning algorithms, are necessary.
For example, the strength and depth of the popular R mainly comes from the various algorithms that are readily provided for the use of Machine Learning professionals. The total number of R packages is over 1000. Data scientists do not need all of them, but do need some packages to:
- Load data, with packages like
RODBC
orRMySQL
- Manipulate data, with packages like
stringr
orlubridate
- Visualize data, with packages like
ggplot2
orleaflet
- Model data, with packages like
Random Forest
orsurvival
- Report results, with packages like
shiny
ormarkdown
According to a recent ComputerWorld survey, the most downloaded R packages are:
PACKAGE |
# of DOWNLOADS |
---|---|
|
162778 |
|
146008 |
|
123889 |
|
120387 |
|
118798 |
|
113899 |
|
109869 |
|
100623 |
|
92448 |
|
88664 |
Note
For more info, please visit http://www.computerworld.com/article/2920117/business-intelligence/most-downloaded-r-packages-last-month.html