Files
autoencoder/autoencoder.py
2026-03-28 02:09:47 +01:00

74 lines
2.5 KiB
Python

import numpy as np
from utils import (dynamic_loss_plot_init,
dynamic_loss_plot_update,
dynamic_loss_plot_finish)
from tqdm import tqdm
from layers import DeepNNLayer
LOADER = ['', '', '', '', '', '', '', '']
class Autoencoder:
def __init__(self,
encoder_layers: list[int],
decoder_layers: list[int],
lr: float,
activation_func):
self.encoder = DeepNNLayer(encoder_layers, lr, activation_func)
self.decoder = DeepNNLayer(decoder_layers, lr, activation_func)
def train(self, v: np.ndarray):
out = self.decoder.forward(
self.encoder.forward(v)
)
self.encoder.backprop(
self.decoder.backprop(out - v)
)
return np.sum(np.abs(out - v)) / len(v)
def train_dataset(self,
data_set: list[np.ndarray],
max_epoch: int,
patience: int,
display_loss: bool = False) -> list[float]:
if display_loss is True:
ax, line = dynamic_loss_plot_init()
losses = []
epoch = 0
no_improv = 0
prev_error = float('inf')
with tqdm(bar_format="{desc} {elapsed} {rate_fmt}") as lbar:
while True:
lbar.set_description(
f"{LOADER[epoch % len(LOADER)]} Training ({epoch=} error={prev_error:.2f})", # noqa
)
lbar.update()
error = 0
for x in data_set:
input = x.flatten()
error += self.train(input)
error /= len(data_set)
if prev_error - error <= 1e-8:
no_improv += 1
else:
no_improv = 0
prev_error = float(error)
losses.append(error)
if display_loss is True:
dynamic_loss_plot_update(ax, line, losses)
if no_improv > patience:
break
if epoch > max_epoch:
break
epoch += 1
print("Training complete !")
if display_loss is True:
dynamic_loss_plot_finish(ax, line)
return losses
def encode(self, v: np.ndarray) -> np.ndarray:
return self.encoder.forward(v)
def decode(self, v: np.ndarray) -> np.ndarray:
return self.decoder.forward(v)