I looked over the Dijkstra's algorithm link that you posted in the comments and I believe that it's the source of your inefficiency. Inside the inner Dijkstra's loop, it's using an extremely unoptimized approach to determine which node to explore next (a linear scan over every node at each step). The problematic code is in two spots. The first is this code, which tries to find the next node to operate on:

```
mini = -1;
for (i = 1; i <= n; ++i)
if (!visited[i] && ((mini == -1) || (d[i] < d[mini])))
mini = i;
```

Because this code is nested inside of a loop that visits every node, the complexity (as mentioned in the link) is O(|V|^{2}), where |V| is the number of nodes. In your case, since |V| is 30,000, there will be nine hundred million iterations of this loop overall. This is painfully slow (as you've seen), but there's no reason to have to do this much work.

Another trouble spot is here, which tries to find which edge in the graph should be used to reduce the cost of other nodes:

```
for (i = 1; i <= n; ++i)
if (dist[mini][i])
if (d[mini] + dist[mini][i] < d[i])
d[i] = d[mini] + dist[mini][i];
```

This scans over an entire row in the adjacency matrix looking for nodes to consider, which takes time O(n) irrespective of how many outgoing edges leave the node.

While you could try fixing up this version of Dijkstra's into a more optimized implementation, I think the correct option here is just to throw this code away and find a better implementation of Dijkstra's algorithm. For example, if you use the pseudocode from the Wikipedia article implemented with a binary heap, you can get Dijkstra's algorithm running in O(|E| log |V|). In your case, this value is just over two million, which is about 450 times faster than your current approach. That's a huge difference, and I'm willing to bet that with a better Dijkstra's implementation you'll end up getting the code completing in a substantially shorter time than before.

On top of this, you might want to consider running all the Dijkstra searches in parallel, as Jacob Eggers has pointed out. This cam get you an extra speed boost for each processor that you have. Combined with the above (and more critical) fix, this should probably give you a huge performance increase.

If you plan on running this algorithm on a much denser data set (one where the number of edges approaches |V|^{2} / log |V|), then you may want to consider switching to the Floyd-Warshall algorithm. Running Dijkstra's algorithm once per node (sometimes called Johnson's algorithm) takes time O(|V||E| log |V|) time, while using Floyd-Warshall takes O(|V|^{3}) time. However, for the data set you've mentioned, the graph is sufficiently sparse that running multiple Dijkstra's instances should be fine.

Hope this helps!