If the graph is small enough to fit into RAM, you could do this import in a few steps:

- Use neo4j-shell-tools to export from neo4j to GraphML.
- Use NetworkX to import from GraphML to a NetworkX Graph object (let's call it
`g`

).
- Use a loop or list comprehension to add the vertices and edges from the NetworkX graph to a
`graphlab.SGraph`

(let's call it `sg`

):

```
import graphlab
sg = graphlab.SGraph()
sg = sg.add_vertices([graphlab.Vertex(i) for i in g.nodes()])
sg = sg.add_edges([graphlab.Edge(*edge) for edge in g.edges()])
```

You could also use py2neo (as described in the comments above to query the graph) but instead of writing to CSV, directly build the `SGraph`

from the queries, either using add_vertices and add_edges, or by building vertex/edge SFrames and then using those to construct the graph. This might be a faster solution for production (with no intermediate disk representation) and may also help get around the memory size limitation if your graph is larger than will fit in RAM.