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qm9_v2.py
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qm9_v2.py
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import numpy as np
import os
from tqdm import tqdm
import torch as th
import dgl
from dgl.data.dgl_dataset import DGLDataset
from dgl.data.utils import download, load_graphs, _get_dgl_url, extract_archive
class QM9Dataset_v2(DGLDataset):
r"""QM9 dataset for graph property prediction (regression)
This dataset consists of 13,0831 molecules with 19 regression targets.
Node means atom and edge means bond.
Reference: `"MoleculeNet: A Benchmark for Molecular Machine Learning" <https://arxiv.org/abs/1703.00564>`_
Atom features come from `"Neural Message Passing for Quantum Chemistry" <https://arxiv.org/abs/1704.01212>`_
Statistics:
- Number of graphs: 13,0831
- Number of regression targets: 19
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| Keys | Property | Description | Unit |
+========+==================================+===================================================================================+=============================================+
| mu | :math:`\mu` | Dipole moment | :math:`\textrm{D}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| alpha | :math:`\alpha` | Isotropic polarizability | :math:`{a_0}^3` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| homo | :math:`\epsilon_{\textrm{HOMO}}` | Highest occupied molecular orbital energy | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| lumo | :math:`\epsilon_{\textrm{LUMO}}` | Lowest unoccupied molecular orbital energy | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| gap | :math:`\Delta \epsilon` | Gap between :math:`\epsilon_{\textrm{HOMO}}` and :math:`\epsilon_{\textrm{LUMO}}` | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| r2 | :math:`\langle R^2 \rangle` | Electronic spatial extent | :math:`{a_0}^2` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| zpve | :math:`\textrm{ZPVE}` | Zero point vibrational energy | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| U0 | :math:`U_0` | Internal energy at 0K | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| U | :math:`U` | Internal energy at 298.15K | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| H | :math:`H` | Enthalpy at 298.15K | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| G | :math:`G` | Free energy at 298.15K | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| Cv | :math:`c_{\textrm{v}}` | Heat capavity at 298.15K | :math:`\frac{\textrm{cal}}{\textrm{mol K}}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| U0_atom| :math:`U_0^{\textrm{ATOM}}` | Atomization energy at 0K | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| U_atom | :math:`U^{\textrm{ATOM}}` | Atomization energy at 298.15K | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| H_atom | :math:`H^{\textrm{ATOM}}` | Atomization enthalpy at 298.15K | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| G_atom | :math:`G^{\textrm{ATOM}}` | Atomization free energy at 298.15K | :math:`\textrm{eV}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| A | :math:`A` | Rotational constant | :math:`\textrm{GHz}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| B | :math:`B` | Rotational constant | :math:`\textrm{GHz}` |
+--------+----------------------------------+-----------------------------------------------------------------------------------+---------------------------------------------+
| c | :math:`C` | Rotational constant | :math:`\textrm{GHz}` |
+--------+----------------------------------+----------------------------------------
Parameters
----------
label_keys: list
Names of the regression property, which should be a subset of the keys in the table above.
If not provided, will load all the labels.
raw_dir : str
Raw file directory to download/contains the input data directory.
Default: ~/.dgl/
force_reload : bool
Whether to reload the dataset. Default: False
verbose: bool
Whether to print out progress information. Default: True.
Attributes
----------
num_labels : int
Number of labels for each graph, i.e. number of prediction tasks
Raises
------
UserWarning
If the raw data is changed in the remote server by the author.
Examples
--------
>>> data = QM9Dataset_v2(label_keys=['mu', 'alpha'])
>>> data.num_labels
>>> # make each graph dense
>>> data.to_dense()
>>> # iterate over the dataset
>>> for graph, labels in data:
... print(graph) # get information of each graph
... print(labels) # get labels of the corresponding graph
... # your code here...
>>>
"""
def __init__(self,
label_keys = None,
raw_dir=None,
force_reload=False,
verbose=True):
self.label_keys = label_keys
self._url = _get_dgl_url('dataset/qm9_ver2.zip')
super(QM9Dataset_v2, self).__init__(name='qm9_v2',
url=self._url,
raw_dir=raw_dir,
force_reload=force_reload,
verbose=verbose)
def process(self):
print('begin loading dataset')
graphs, label_dict = load_graphs(os.path.join(self.raw_dir, 'qm9_v2.bin'))
self.graphs = graphs
if self.label_keys == None:
self.labels = np.stack([label_dict[key] for key in label_dict.keys()], axis=1)
else:
self.labels = np.stack([label_dict[key] for key in self.label_keys], axis=1)
def to_dense(self):
r""" Transfrom each graph to a dense graph and add additional edge attribute(distance between two atoms)
Note: This operation will deprecate graph.ndata['pos']
"""
n_graph = self.labels.shape[0]
for id in tqdm(range(n_graph), desc = 'processing graphs'):
graph = self.graphs[id]
n_nodes = graph.num_nodes()
row = th.arange(n_nodes, dtype = th.long)
col = th.arange(n_nodes, dtype = th.long)
row = row.view(-1,1).repeat(1, n_nodes).view(-1)
col = col.repeat(n_nodes)
src = graph.edges()[0]
dst = graph.edges()[1]
idx = src * n_nodes + dst
size = list(graph.edata['edge_attr'].size())
size[0] = n_nodes * n_nodes
edge_attr = graph.edata['edge_attr'].new_zeros(size)
edge_attr[idx] = graph.edata['edge_attr']
pos = graph.ndata['pos']
dist = th.norm(pos[col] - pos[row], p=2, dim=-1).view(-1, 1)
new_edge_attr = th.cat([edge_attr, dist.type_as(edge_attr)], dim = -1)
new_graph = dgl.graph((row,col))
new_graph.ndata['attr'] = graph.ndata['attr']
new_graph.edata['edge_attr'] = new_edge_attr
new_graph = new_graph.remove_self_loop()
self.graphs[id] = new_graph
def download(self):
file_path = f'{self.raw_dir}/qm9_v2.zip'
if not os.path.exists(file_path):
download(self._url, path=file_path)
extract_archive(file_path, self.raw_dir, overwrite = True)
@property
def num_labels(self):
r"""
Returns
--------
int
Number of labels for each graph, i.e. number of prediction tasks.
"""
return self.labels.shape[1]
def __getitem__(self, idx):
r""" Get graph and label by index
Parameters
----------
idx : int
Item index
Returns
-------
dgl.DGLGraph
The graph contains:
- ``ndata['pos']``: the coordinates of each atom
- ``ndata['attr']``: the atomic attributes
- ``edata['edge_attr']``: the bond attributes
Tensor
Property values of molecular graphs
"""
return self.graphs[idx], self.labels[idx]
def __len__(self):
r"""Number of graphs in the dataset.
Return
-------
int
"""
return self.labels.shape[0]