prototorch_models/prototorch/models/clcc/clcc_scheme.py

193 lines
5.5 KiB
Python
Raw Normal View History

"""
CLCC Scheme
CLCC is a LVQ scheme containing 4 steps
- Components
- Latent Space
- Comparison
- Competition
"""
2021-10-15 13:18:02 +00:00
from typing import Dict, Set, Type
import pytorch_lightning as pl
import torch
2021-10-15 13:18:02 +00:00
import torchmetrics
class CLCCScheme(pl.LightningModule):
2021-10-15 13:18:02 +00:00
registered_metrics: Dict[Type[torchmetrics.Metric],
torchmetrics.Metric] = {}
registered_metric_names: Dict[Type[torchmetrics.Metric], Set[str]] = {}
def __init__(self, hparams) -> None:
super().__init__()
# Common Steps
self.init_components(hparams)
self.init_latent(hparams)
self.init_comparison(hparams)
self.init_competition(hparams)
# Train Steps
self.init_loss(hparams)
# Inference Steps
self.init_inference(hparams)
2021-10-15 13:18:02 +00:00
# Initialize Model Metrics
self.init_model_metrics()
# internal API, called by models and callbacks
def register_torchmetric(self, name: str, metric: torchmetrics.Metric):
if metric not in self.registered_metrics:
self.registered_metrics[metric] = metric()
self.registered_metric_names[metric] = {name}
else:
self.registered_metric_names[metric].add(name)
# external API
def get_competion(self, batch, components):
latent_batch, latent_components = self.latent(batch, components)
# TODO: => Latent Hook
comparison_tensor = self.comparison(latent_batch, latent_components)
# TODO: => Comparison Hook
return comparison_tensor
def forward(self, batch):
if isinstance(batch, torch.Tensor):
batch = (batch, None)
# TODO: manage different datatypes?
components = self.components_layer()
# TODO: => Component Hook
comparison_tensor = self.get_competion(batch, components)
# TODO: => Competition Hook
return self.inference(comparison_tensor, components)
def predict(self, batch):
"""
Alias for forward
"""
return self.forward(batch)
def loss_forward(self, batch):
# TODO: manage different datatypes?
components = self.components_layer()
# TODO: => Component Hook
comparison_tensor = self.get_competion(batch, components)
# TODO: => Competition Hook
return self.loss(comparison_tensor, batch, components)
# Empty Initialization
# TODO: Type hints
# TODO: Docs
def init_components(self, hparams):
...
def init_latent(self, hparams):
...
def init_comparison(self, hparams):
...
def init_competition(self, hparams):
...
def init_loss(self, hparams):
...
def init_inference(self, hparams):
...
2021-10-15 13:18:02 +00:00
def init_model_metrics(self):
self.register_torchmetric('train_accuracy', torchmetrics.Accuracy)
# Empty Steps
# TODO: Type hints
def components(self):
"""
This step has no input.
It returns the components.
"""
raise NotImplementedError(
"The components step has no reasonable default.")
def latent(self, batch, components):
"""
The latent step receives the data batch and the components.
It can transform both by an arbitrary function.
It returns the transformed batch and components, each of the same length as the original input.
"""
return batch, components
def comparison(self, batch, components):
"""
Takes a batch of size N and the componentsset of size M.
It returns an NxMxD tensor containing D (usually 1) pairwise comparison measures.
"""
raise NotImplementedError(
"The comparison step has no reasonable default.")
def competition(self, comparisonmeasures, components):
"""
Takes the tensor of comparison measures.
Assigns a competition vector to each class.
"""
raise NotImplementedError(
"The competition step has no reasonable default.")
def loss(self, comparisonmeasures, batch, components):
"""
Takes the tensor of competition measures.
Calculates a single loss value
"""
raise NotImplementedError("The loss step has no reasonable default.")
def inference(self, comparisonmeasures, components):
"""
Takes the tensor of competition measures.
Returns the inferred vector.
"""
raise NotImplementedError(
"The inference step has no reasonable default.")
2021-10-15 13:18:02 +00:00
def update_metrics_step(self, batch):
x, y = batch
preds = self(x)
for metric in self.registered_metrics:
instance = self.registered_metrics[metric].to(self.device)
value = instance(y, preds)
for name in self.registered_metric_names[metric]:
self.log(name, value)
def update_metrics_epoch(self):
for metric in self.registered_metrics:
instance = self.registered_metrics[metric].to(self.device)
value = instance.compute()
for name in self.registered_metric_names[metric]:
self.log(name, value)
# Lightning Hooks
def training_step(self, batch, batch_idx, optimizer_idx=None):
2021-10-15 13:18:02 +00:00
self.update_metrics_step(batch)
return self.loss_forward(batch)
2021-10-15 13:18:02 +00:00
def train_epoch_end(self, outs) -> None:
self.update_metrics_epoch()
def validation_step(self, batch, batch_idx):
return self.loss_forward(batch)
def test_step(self, batch, batch_idx):
return self.loss_forward(batch)