Files
PINA/tests/test_model/test_lno.py
Dario Coscia 766856494a Low Rank Neural Operator (#270)
* add the Low Rank Neural Operator as Model
* add the Low Rank Layer as Layer
* adding tests
* adding doc 

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Co-authored-by: Dario Coscia <dariocoscia@Dario-Coscia.local>
Co-authored-by: Nicola Demo <demo.nicola@gmail.com>
2024-04-02 10:24:23 +02:00

141 lines
4.7 KiB
Python

import torch
from pina.model import LowRankNeuralOperator
from pina import LabelTensor
import pytest
batch_size = 15
n_layers = 4
embedding_dim = 24
func = torch.nn.Tanh
rank = 4
n_kernel_layers = 3
field_indices = ['u']
coordinates_indices = ['x', 'y']
def test_constructor():
# working constructor
lifting_net = torch.nn.Linear(len(coordinates_indices) + len(field_indices),
embedding_dim)
projecting_net = torch.nn.Linear(embedding_dim + len(coordinates_indices),
len(field_indices))
LowRankNeuralOperator(
lifting_net=lifting_net,
projecting_net=projecting_net,
coordinates_indices=coordinates_indices,
field_indices=field_indices,
n_kernel_layers=n_kernel_layers,
rank=rank)
# not working constructor
with pytest.raises(ValueError):
LowRankNeuralOperator(
lifting_net=lifting_net,
projecting_net=projecting_net,
coordinates_indices=coordinates_indices,
field_indices=field_indices,
n_kernel_layers=3.2, # wrong
rank=rank)
LowRankNeuralOperator(
lifting_net=[0], # wrong
projecting_net=projecting_net,
coordinates_indices=coordinates_indices,
field_indices=field_indices,
n_kernel_layers=n_kernel_layers,
rank=rank)
LowRankNeuralOperator(
lifting_net=lifting_net,
projecting_net=[0], # wront
coordinates_indices=coordinates_indices,
field_indices=field_indices,
n_kernel_layers=n_kernel_layers,
rank=rank)
LowRankNeuralOperator(
lifting_net=lifting_net,
projecting_net=projecting_net,
coordinates_indices=[0], #wrong
field_indices=field_indices,
n_kernel_layers=n_kernel_layers,
rank=rank)
LowRankNeuralOperator(
lifting_net=lifting_net,
projecting_net=projecting_net,
coordinates_indices=coordinates_indices,
field_indices=[0], #wrong
n_kernel_layers=n_kernel_layers,
rank=rank)
lifting_net = torch.nn.Linear(len(coordinates_indices),
embedding_dim)
LowRankNeuralOperator(
lifting_net=lifting_net,
projecting_net=projecting_net,
coordinates_indices=coordinates_indices,
field_indices=field_indices,
n_kernel_layers=n_kernel_layers,
rank=rank)
lifting_net = torch.nn.Linear(len(coordinates_indices) + len(field_indices),
embedding_dim)
projecting_net = torch.nn.Linear(embedding_dim,
len(field_indices))
LowRankNeuralOperator(
lifting_net=lifting_net,
projecting_net=projecting_net,
coordinates_indices=coordinates_indices,
field_indices=field_indices,
n_kernel_layers=n_kernel_layers,
rank=rank)
def test_forward():
lifting_net = torch.nn.Linear(len(coordinates_indices) + len(field_indices),
embedding_dim)
projecting_net = torch.nn.Linear(embedding_dim + len(coordinates_indices),
len(field_indices))
lno = LowRankNeuralOperator(
lifting_net=lifting_net,
projecting_net=projecting_net,
coordinates_indices=coordinates_indices,
field_indices=field_indices,
n_kernel_layers=n_kernel_layers,
rank=rank)
input_ = LabelTensor(
torch.rand(batch_size, 100,
len(coordinates_indices) + len(field_indices)),
coordinates_indices + field_indices)
out = lno(input_)
assert out.shape == torch.Size(
[batch_size, input_.shape[1], len(field_indices)])
def test_backward():
lifting_net = torch.nn.Linear(len(coordinates_indices) + len(field_indices),
embedding_dim)
projecting_net = torch.nn.Linear(embedding_dim + len(coordinates_indices),
len(field_indices))
lno=LowRankNeuralOperator(
lifting_net=lifting_net,
projecting_net=projecting_net,
coordinates_indices=coordinates_indices,
field_indices=field_indices,
n_kernel_layers=n_kernel_layers,
rank=rank)
input_ = LabelTensor(
torch.rand(batch_size, 100,
len(coordinates_indices) + len(field_indices)),
coordinates_indices + field_indices)
input_ = input_.requires_grad_()
out = lno(input_)
tmp = torch.linalg.norm(out)
tmp.backward()
grad = input_.grad
assert grad.shape == torch.Size(
[batch_size, input_.shape[1],
len(coordinates_indices) + len(field_indices)])