I am trying to calculate `95th Percentile`

from the data sets which I have populated in my below `ConcurrentHashMap`

.

**I am interested in finding out how many calls came back in 95th percentile of time**

My Map will look like this and it will always be sorted in ascending order on the keys- In which

```
key - means number of milliseconds
value - means number of calls that took that much milliseconds
```

Below is my Map data-

```
Milliseconds Number
0 1702
1 15036
2 14262
3 13190
4 9137
5 5635
6 3742
7 2628
8 1899
9 1298
10 963
11 727
12 503
13 415
14 311
15 235
16 204
17 140
18 109
19 83
20 72
```

For example, from the above data sets, it means

1702 calls came back in 0 milliseconds

15036 calls came back in 1 milliseconds

Now I can calculate the 95th percentile by plugging the above data sets in the `Excel sheet`

. But I was thinking to calculate the percentile in Java code.

I know the algorithm will look something like this-

Sum all values from the map, calculate 95% of the sum, iterate the map keys in ascending order keeping a running total of values, and when sum equals or exceeds the previously calculated 95% of the total sum, the key should be the 95th percentile I guess.

Below is the map which will have above data sets.

```
Map<Long, Long> histogram = new ConcurrentHashMap<Long, Long>
```

I am not sure whether I am algorithm is also correct or not. I am just trying to find out how many calls came back in 95th percentile of time.

Below is the code I have got so far basis on my above algorithm.

```
private static void logPercentileInfo() {
double total = 0;
for (Map.Entry<Long, Long> entry : CassandraTimer.histogram.entrySet()) {
long value = entry.getKey() * entry.getValue();
total += value;
}
double sum = 0.95*total;
double totalSum = 0;
for (Map.Entry<Long, Long> entry : CassandraTimer.histogram.entrySet()) {
totalSum += entry.getValue();
if(totalSum >= sum) {
System.out.println(entry.getKey());//this is the 95th percentile I guess
}
}
}
```

Let me know if I got everything correct in calculating the 95th percentile from my above data sets. If there is any improvement as well, please let me know.

**Updated Code:-**

Below is my updated code which solves the problem for ascending order of keys

```
/**
* A simple method to log 95th percentile information
*/
private static void logPercentileInfo() {
double total = 0;
for (Map.Entry<Long, Long> entry : CassandraTimer.histogram.entrySet()) {
long value = entry.getKey() * entry.getValue();
total += value;
}
double sum = 0.95*total;
double totalSum = 0;
SortedSet<Long> keys = new TreeSet<Long>(CassandraTimer.histogram.keySet());
for (long key : keys) {
totalSum += CassandraTimer.histogram.get(key);
if(totalSum >= sum) {
//this is the 95th percentile I guess
System.out.println(key);
}
}
}
```

Can anyone take a look and let me know whether I am calculating the percentile correctly or not?