Property definitions

neo4j $ Neo4jGraphStore :: defaultinit
# Save or load a graph using an actual Neo4j database.
class Neo4jGraphStore
	super GraphStore

	# The maximum number of entities saved in one request.
	#
	# Also defines the granulity of the reported progression.
	#
	# TODO Also honor this limit in `load`.
	var batch_max_size = 512 is writable

	# The Neo4j client to use.
	var client: Neo4jClient

	# The label to use to retrieve the nodes.
	var node_label: String

	private var done_part = 0
	private var total = 0

	# Is the database already contains at least one node with the specified label?
	fun has_node_label(name: String): Bool do
		var query = new CypherQuery.from_string(
				"match n where \{name\} in labels(n) return count(n)")
		query.params["name"] = name
		var data = client.cypher(query).as(JsonObject)["data"]
		var result = data.as(JsonArray).first.as(JsonArray).first.as(Int)
		return result > 0
	end

	redef fun isolated_save do return not has_node_label(node_label)

	redef fun load do
		assert batch_max_size > 0
		fire_started
		var db_nodes = client.nodes_with_label(node_label)
		var nodes = graph.nodes
		var edges = graph.edges
		var i = 0

		total = nodes.length * 2
		done_part = nodes.length
		fire_progressed(done_part, total)
		for node in db_nodes do
			nodes.add(node)
			edges.add_all(node.out_edges)
			i += 1
			if i >= batch_max_size then
				done_part += batch_max_size
				fire_progressed(done_part, total)
			end
		end
		fire_done
	end

	redef fun save_part(nodes, edges) do
		assert batch_max_size > 0
		fire_started
		total = nodes.length + edges.length
		done_part = 0

		save_entities(nodes)
		save_entities(edges)
		fire_done
	end

	# Save the specified entities.
	private fun save_entities(neo_entities: Collection[NeoEntity]) do
		var batch = new NeoBatch(client)
		var batch_length = 0

		for nentity in neo_entities do
			batch.save_entity(nentity)
			batch_length += 1
			if batch_length >= batch_max_size then
				do_batch(batch)
				done_part += batch_max_size
				fire_progressed(done_part, total)
				batch = new NeoBatch(client)
				batch_length = 0
			end
		end
		do_batch(batch)
		done_part += batch_length
	end

	# Execute `batch` and check for errors.
	#
	# Abort if `batch.execute` returns errors.
	private fun do_batch(batch: NeoBatch) do
		var errors = batch.execute
		assert errors.is_empty else
			for e in errors do sys.stderr.write("{e}\n")
		end
	end
end
lib/neo4j/graph/graph.nit:183,1--278,3