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authorXin Ren <iamshrek@126.com>2015-10-07 15:00:19 +0100
committerSean Owen <sowen@cloudera.com>2015-10-07 15:00:19 +0100
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[SPARK-10669] [DOCS] Link to each language's API in codetabs in ML docs: spark.mllib
In the Markdown docs for the spark.mllib Programming Guide, we have code examples with codetabs for each language. We should link to each language's API docs within the corresponding codetab, but we are inconsistent about this. For an example of what we want to do, see the "ChiSqSelector" section in https://github.com/apache/spark/blob/64743870f23bffb8d96dcc8a0181c1452782a151/docs/mllib-feature-extraction.md This JIRA is just for spark.mllib, not spark.ml. Please let me know if more work is needed, thanks a lot. Author: Xin Ren <iamshrek@126.com> Closes #8977 from keypointt/SPARK-10669.
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diff --git a/docs/mllib-dimensionality-reduction.md b/docs/mllib-dimensionality-reduction.md
index 05f51168d8..ac3526908a 100644
--- a/docs/mllib-dimensionality-reduction.md
+++ b/docs/mllib-dimensionality-reduction.md
@@ -62,6 +62,8 @@ MLlib provides SVD functionality to row-oriented matrices, provided in the
<div class="codetabs">
<div data-lang="scala" markdown="1">
+Refer to the [`SingularValueDecomposition` Scala docs](api/scala/index.html#org.apache.spark.mllib.linalg.SingularValueDecomposition) for details on the API.
+
{% highlight scala %}
import org.apache.spark.mllib.linalg.Matrix
import org.apache.spark.mllib.linalg.distributed.RowMatrix
@@ -80,6 +82,8 @@ The same code applies to `IndexedRowMatrix` if `U` is defined as an
`IndexedRowMatrix`.
</div>
<div data-lang="java" markdown="1">
+Refer to the [`SingularValueDecomposition` Java docs](api/java/org/apache/spark/mllib/linalg/SingularValueDecomposition.html) for details on the API.
+
{% highlight java %}
import java.util.LinkedList;
@@ -145,6 +149,8 @@ MLlib supports PCA for tall-and-skinny matrices stored in row-oriented format an
The following code demonstrates how to compute principal components on a `RowMatrix`
and use them to project the vectors into a low-dimensional space.
+Refer to the [`RowMatrix` Scala docs](api/scala/index.html#org.apache.spark.mllib.linalg.distributed.RowMatrix) for details on the API.
+
{% highlight scala %}
import org.apache.spark.mllib.linalg.Matrix
import org.apache.spark.mllib.linalg.distributed.RowMatrix
@@ -161,6 +167,8 @@ val projected: RowMatrix = mat.multiply(pc)
The following code demonstrates how to compute principal components on source vectors
and use them to project the vectors into a low-dimensional space while keeping associated labels:
+Refer to the [`PCA` Scala docs](api/scala/index.html#org.apache.spark.mllib.feature.PCA) for details on the API.
+
{% highlight scala %}
import org.apache.spark.mllib.regression.LabeledPoint
import org.apache.spark.mllib.feature.PCA
@@ -182,6 +190,8 @@ The following code demonstrates how to compute principal components on a `RowMat
and use them to project the vectors into a low-dimensional space.
The number of columns should be small, e.g, less than 1000.
+Refer to the [`RowMatrix` Java docs](api/java/org/apache/spark/mllib/linalg/distributed/RowMatrix.html) for details on the API.
+
{% highlight java %}
import java.util.LinkedList;