I am working with an Oracle Database and have the following code implemented in java (with an SQL imported library), where I have a group of students, their average, and I flag those students with an average that is higher than one standard deviation away from the mean (by inserting a new column with a "1" in it). Then I count the number of students who meet the criteria and add them to a new table:

```
try{
Statement stOne, stTwo, stThree, stFour;
String SelectAverage = "SELECT MEAN FROM STUDENTS";
ResultSet rsOne = stOne.executeQuery(SelectAverage);
String TotalAverage = "SELECT Avg(MEAN) AS averages FROM STUDENTS";
ResultSet rsTwo = stTwo.executeQuery(TotalAverage);
String student_stan_dev = "SELECT STDEV(MEAN) AS standardDeviation FROM STUDENTS";
ResultSet rsThree = stThree.executeQuery(student_stan_dev);
int onesdMean = 1;
//Loop Duration_Sec column
while(rsOne.next()){
//Convert values into float values
float allAvgs = rsOne.getFloat("MEAN");
float totalAvg = rsTwo.getFloat("averages");
float StDev = rsThree.getFloat("standardDeviation");
float theSD = allAvgs - (onesdMean * StDev);
}
String flaggedStudents = "ALTER TABLE STUDENTS ADD FlaggedStudents INT";
ResultSet rsFour = stFour.executeUpdate(flaggedStudents);
if(allAvgs >= theSD){
String FlagHint = "INSERT INTO STUDENTS.FlaggedStudents VALUES('1')";
st.executeUpdate(FlagHint);
}
String countInstances = "SELECT STUDENTS.NAME, STUDENTS.FlaggedStudents" +
"COUNT(*)OVER(PARTITION BY STUDENTS) AS cnt FROM STUDENTS";
st.executeQuery(countInstances);
st.executeUpdate("CREATE TABLE IF NOT EXISTS StudentCount" +
"(NAME INT , cnt INT)");
String insertVals = String.format("INSERT INTO StudentCount" +
"(NAME , cnt INT") +
" VALUES ('%s','%s')");
st.execute(insertVals);
```

My question is, I want to implement a k-means algorithm instead, to cluster students who meet this criteria and separate those who are far from meeting this criteria. I have seen source code for the k-means algorithm, but how would I go about doing that with a database implemented in java/SQL? Would I just add this information to a cluster array? Any help would be appreciated.