Files
PINA/tests/test_solvers/test_rom_solver.py
Dario Coscia 9cae9a438f Update solvers (#434)
* Enable DDP training with batch_size=None and add validity check for split sizes
* Refactoring SolverInterfaces (#435)
* Solver update + weighting
* Updating PINN for 0.2
* Modify GAROM + tests
* Adding more versatile loggers
* Disable compilation when running on Windows
* Fix tests

---------

Co-authored-by: giovanni <giovanni.canali98@yahoo.it>
Co-authored-by: FilippoOlivo <filippo@filippoolivo.com>
2025-03-19 17:46:35 +01:00

188 lines
7.1 KiB
Python

import torch
import pytest
from pina import Condition, LabelTensor
from pina.problem import AbstractProblem
from pina.condition import InputOutputPointsCondition
from pina.solvers import ReducedOrderModelSolver
from pina.trainer import Trainer
from pina.model import FeedForward
from pina.problem.zoo import Poisson2DSquareProblem
from torch._dynamo.eval_frame import OptimizedModule
class LabelTensorProblem(AbstractProblem):
input_variables = ['u_0', 'u_1']
output_variables = ['u']
conditions = {
'data': Condition(
input_points=LabelTensor(torch.randn(20, 2), ['u_0', 'u_1']),
output_points=LabelTensor(torch.randn(20, 1), ['u'])),
}
class TensorProblem(AbstractProblem):
input_variables = ['u_0', 'u_1']
output_variables = ['u']
conditions = {
'data': Condition(
input_points=torch.randn(20, 2),
output_points=torch.randn(20, 1))
}
class AE(torch.nn.Module):
def __init__(self, input_dimensions, rank):
super().__init__()
self.encode = FeedForward(
input_dimensions, rank, layers=[input_dimensions//4])
self.decode = FeedForward(
rank, input_dimensions, layers=[input_dimensions//4])
class AE_missing_encode(torch.nn.Module):
def __init__(self, input_dimensions, rank):
super().__init__()
self.encode = FeedForward(
input_dimensions, rank, layers=[input_dimensions//4])
class AE_missing_decode(torch.nn.Module):
def __init__(self, input_dimensions, rank):
super().__init__()
self.decode = FeedForward(
rank, input_dimensions, layers=[input_dimensions//4])
rank = 10
model = AE(2, 1)
interpolation_net = FeedForward(2, rank)
reduction_net = AE(1, rank)
def test_constructor():
problem = TensorProblem()
ReducedOrderModelSolver(problem=problem,
interpolation_network=interpolation_net,
reduction_network=reduction_net)
ReducedOrderModelSolver(problem=LabelTensorProblem(),
reduction_network=reduction_net,
interpolation_network=interpolation_net)
assert ReducedOrderModelSolver.accepted_conditions_types == InputOutputPointsCondition
with pytest.raises(SyntaxError):
ReducedOrderModelSolver(problem=problem,
reduction_network=AE_missing_encode(
len(problem.output_variables), rank),
interpolation_network=interpolation_net)
ReducedOrderModelSolver(problem=problem,
reduction_network=AE_missing_decode(
len(problem.output_variables), rank),
interpolation_network=interpolation_net)
with pytest.raises(ValueError):
ReducedOrderModelSolver(problem=Poisson2DSquareProblem(),
reduction_network=reduction_net,
interpolation_network=interpolation_net)
@pytest.mark.parametrize("batch_size", [None, 1, 5, 20])
@pytest.mark.parametrize("use_lt", [True, False])
@pytest.mark.parametrize("compile", [True, False])
def test_solver_train(use_lt, batch_size, compile):
problem = LabelTensorProblem() if use_lt else TensorProblem()
solver = ReducedOrderModelSolver(problem=problem,
reduction_network=reduction_net,
interpolation_network=interpolation_net, use_lt=use_lt)
trainer = Trainer(solver=solver,
max_epochs=2,
accelerator='cpu',
batch_size=batch_size,
train_size=1.,
test_size=0.,
val_size=0.,
compile=compile)
trainer.train()
if trainer.compile:
for v in solver.model.values():
assert (isinstance(v, OptimizedModule))
@pytest.mark.parametrize("use_lt", [True, False])
@pytest.mark.parametrize("compile", [True, False])
def test_solver_validation(use_lt, compile):
problem = LabelTensorProblem() if use_lt else TensorProblem()
solver = ReducedOrderModelSolver(problem=problem,
reduction_network=reduction_net,
interpolation_network=interpolation_net, use_lt=use_lt)
trainer = Trainer(solver=solver,
max_epochs=2,
accelerator='cpu',
batch_size=None,
train_size=0.9,
val_size=0.1,
test_size=0.,
compile=compile)
trainer.train()
if trainer.compile:
for v in solver.model.values():
assert (isinstance(v, OptimizedModule))
@pytest.mark.parametrize("use_lt", [True, False])
@pytest.mark.parametrize("compile", [True, False])
def test_solver_test(use_lt, compile):
problem = LabelTensorProblem() if use_lt else TensorProblem()
solver = ReducedOrderModelSolver(problem=problem,
reduction_network=reduction_net,
interpolation_network=interpolation_net, use_lt=use_lt)
trainer = Trainer(solver=solver,
max_epochs=2,
accelerator='cpu',
batch_size=None,
train_size=0.8,
val_size=0.1,
test_size=0.1,
compile=compile)
trainer.train()
if trainer.compile:
for v in solver.model.values():
assert (isinstance(v, OptimizedModule))
def test_train_load_restore():
dir = "tests/test_solvers/tmp/"
problem = LabelTensorProblem()
solver = ReducedOrderModelSolver(problem=problem,
reduction_network=reduction_net,
interpolation_network=interpolation_net)
trainer = Trainer(solver=solver,
max_epochs=5,
accelerator='cpu',
batch_size=None,
train_size=0.9,
test_size=0.1,
val_size=0.,
default_root_dir=dir)
trainer.train()
# restore
ntrainer = Trainer(solver=solver,
max_epochs=5,
accelerator='cpu',)
ntrainer.train(
ckpt_path=f'{dir}/lightning_logs/version_0/checkpoints/epoch=4-step=5.ckpt')
# loading
new_solver = ReducedOrderModelSolver.load_from_checkpoint(
f'{dir}/lightning_logs/version_0/checkpoints/epoch=4-step=5.ckpt',
problem=problem,
reduction_network=reduction_net,
interpolation_network=interpolation_net)
test_pts = LabelTensor(torch.rand(20, 2), problem.input_variables)
assert new_solver.forward(test_pts).shape == (20, 1)
assert new_solver.forward(test_pts).shape == solver.forward(test_pts).shape
torch.testing.assert_close(
new_solver.forward(test_pts),
solver.forward(test_pts))
# rm directories
import shutil
shutil.rmtree('tests/test_solvers/tmp')