I'll give you an example to use as a starting point to explore your own graph. Start by firing up Gremlin and defining a utility method to create edges:

```
def edge(Graph g, Vertex v1, Vertex v2, int weight) {
e = g.addEdge(null, v1, v2, "connects");
e.setProperty("weight", weight);
}
```

Now create a simple graph with 4 nodes and 4 edges:

```
g = new Neo4jGraph("/tmp/dijkstra")
v1 = g.addVertex(1);
v2 = g.addVertex(2);
v3 = g.addVertex(3);
v4 = g.addVertex(4);
edge(g, v1, v2, 13);
edge(g, v1, v4, 20);
edge(g, v2, v3, 3);
edge(g, v4, v3, 40);
```

Since the version of Gremlin in the console runs on Groovy, you can mix and match Groovy and Java seamlessly to use the GraphAlgoFactory:

```
import org.neo4j.graphalgo.GraphAlgoFactory;
import org.neo4j.graphalgo.CommonEvaluators;
import org.neo4j.kernel.Traversal;
dijkstra = GraphAlgoFactory.dijkstra(Traversal.expanderForAllTypes(), CommonEvaluators.doubleCostEvaluator("weight"))
path = dijkstra.findSinglePath(((Neo4jVertex)v1).getRawVertex(), ((Neo4jVertex)v3).getRawVertex())
println path
// (1)--[connects,0]-->(2)--[connects,2]-->(3) weight:16.0
```

The code to use the GraphAlgoFactory comes mainly from the Neo4j documentation. The only difference is that you need to cast each Blueprints Vertex to an org.neo4j.graphdb.Node, since the GraphAlgoFactory doesn't understand Blueprints.