import json import torch from torch_geometric.data import HeteroData # # Load the JSON data with open("papers.json", "r") as f: data = json.load(f) node_features = [] edges = [] for i, node in enumerate(data): # if i > 1000: break node_features.append((node['index'], node["embedding"])) for reference in node['references']: edges.append((node['index'], reference)) # Create tensors for node features and edges node_features = sorted(node_features, key=lambda x: x[0]) node_features_tensor = torch.tensor([x[1] for x in node_features], dtype=torch.float) edge_index_tensor = torch.tensor(edges, dtype=torch.long).t().contiguous() # Create the HeteroData object graph = HeteroData() graph['paper'].x = node_features_tensor graph['paper', 'cites', 'paper'].edge_index = edge_index_tensor torch.save(graph, "graph_data.pt") # cited = {} # for edge in edges: # if edge[1] not in cited: # cited[edge[1]] = 0 # cited[edge[1]] += 1 # print(cited) # print(graph) # # Load the HeteroData object from a file # loaded_graph = torch.load("graph_data.pt") # print(loaded_graph)