Ejemplo n.º 1
0
import graphgallery
import tensorflow as tf
from graphgallery import functional as gf

graphgallery.set_memory_growth()

print("GraphGallery version: ", graphgallery.__version__)
print("TensorFlow version: ", tf.__version__)
'''
Load Datasets
- cora/citeseer/pubmed/dblp/polblogs/cora_ml, etc...
'''
from graphgallery.datasets import Planetoid, NPZDataset
data = NPZDataset('cora',
                  root="~/GraphData/datasets/",
                  transform=gf.Standardize(),
                  verbose=False)
graph = data.graph
splits = data.split_nodes(random_state=15)

from graphgallery.gallery import GCN
model = GCN(graph, graph_transform="SVD", device="gpu", seed=123)
model.build()
history = model.train(splits.train_nodes,
                      splits.val_nodes,
                      verbose=1,
                      epochs=100)
results = model.test(splits.test_nodes)
print(f'Test loss {results.loss:.5}, Test accuracy {results.accuracy:.2%}')
Ejemplo n.º 2
0
#!/usr/bin/env python
# coding: utf-8


import torch
import graphgallery
from graphgallery import functional as gf

print("GraphGallery version: ", graphgallery.__version__)
print("Torch version: ", torch.__version__)

'''
Load Datasets
- cora/citeseer/pubmed/dblp/polblogs/cora_ml, etc...
'''
from graphgallery.datasets import Planetoid, NPZDataset
data = NPZDataset('cora', root="~/GraphData/datasets/", transform=gf.Standardize(), verbose=False)
graph = data.graph
splits = data.split_nodes(random_state=15)

graphgallery.set_backend("pytorch")

from graphgallery.gallery.nodeclas import GCN
trainer = GCN(device="gpu", seed=123).make_data(graph, graph_transform="SVD").build()
history = trainer.fit(splits.train_nodes, splits.val_nodes, verbose=1, epochs=100)
results = trainer.evaluate(splits.test_nodes)
print(f'Test loss {results.loss:.5}, Test accuracy {results.accuracy:.2%}')
Ejemplo n.º 3
0
 def standardize(self):
     """Select the largest connected components (LCC) of 
     the unweighted/undirected/no-self-loop graph."""
     return gf.Standardize()(self)