I am using py2neo to connect neo4j and python. I am doing this.`
# Connect to the Neo4j database
graph = Graph("bolt://localhost:11003", auth=("neo4j", "12345678"))
# Use Cypher query to retrieve the graph data
data_X = graph.run("MATCH (n:Battery) RETURN n.cycle, n.voltage_measured, n.current_measured, n.temperature_measured,n.voltage_load ")
data_y =graph.run("MATCH (n:Battery) RETURN n.time ")
` But I don't want to convert it into any other type like list or dataframe.So, can we do it without changing the data type i.e. py2neo.cypher.Cursor as direct model.
I tried
# Split the data into train and test sets
X_train, X_test, y_train, y_test = train_test_split(graph.run("MATCH (n:Battery) RETURN n.cycle, n.voltage_measured, n.current_measured, n.temperature_measured,n.voltage_load "),graph.run("MATCH (n:Battery) RETURN n.time "), test_size=0.2)
But it shows Expected sequence or array-like, got <class 'py2neo.cypher.Cursor'>
You should read the documentation of the function train_test_split in sklearn.
It reads quote: Allowed inputs are lists, numpy arrays, scipy-sparse matrices or pandas dataframes.
and py2neo.cypher.Cursor is NOT one of them.