I have a large sparse graph that I am representing as an adjacency matrix (100k by 100k or bigger), stored as an array of edges. An example with a (non-sparse) 4 by 4 matrix:

```
0 7
4 0
example_array = [ [7,1,2], [4,2,1] ]
```

E.g. [4,1,2] says that there is a directed edge from node 1 to node 2 with the value/weight 4. In matrix lingo, this is essentially [ value, row, column ].

Also, this "array of edges" will be sorted by the first element. In the example above, after sorting, the array becomes,

```
example_array = [ [4,2,1], [7,1,2] ]
```

**Problem**

For a certain value `i`

, need to find all elements in this sorted "array of edges" with second value equal to `i`

. i.e. Find `j`

such that `example_array[j][1] = i`

.

My preliminary implementation of this is to simply iterate all elements in the array, comparing the second value of each element with `i`

. This is computationally expensive because there might still be a lot (e.g. 500k) of elements to loop through.

**Question**

Is there a more efficient way to do this? I do not mind using a different representation of the matrix/graph. I am writing this in C.

**Additional Information**

This is essentially finding all the neighbors of a node `i`

, and their edge weights. i.e. Finding all directed edges from `i`

to another node, from the edge list.