X-Git-Url: https://fleuret.org/cgi-bin/gitweb/gitweb.cgi?a=blobdiff_plain;f=world.py;h=d95bddb7e27e3052b5df161333f957053f8bdde6;hb=9141338f022ff991ac91e448eda0fd1cb401fd84;hp=64c7434129c15eb1bd630e67c33b330c7bb26b9b;hpb=e3a8032a070175ece08fc79c77312d5f2f59150e;p=picoclvr.git diff --git a/world.py b/world.py index 64c7434..d95bddb 100755 --- a/world.py +++ b/world.py @@ -1,5 +1,10 @@ #!/usr/bin/env python +# Any copyright is dedicated to the Public Domain. +# https://creativecommons.org/publicdomain/zero/1.0/ + +# Written by Francois Fleuret + import math, sys, tqdm import torch, torchvision @@ -62,6 +67,20 @@ class SignSTE(nn.Module): return s +class DiscreteSampler2d(nn.Module): + def __init__(self): + super().__init__() + + def forward(self, x): + s = (x >= x.max(-3, keepdim=True).values).float() + + if self.training: + u = x.softmax(dim=-3) + return s + u - u.detach() + else: + return s + + def loss_H(binary_logits, h_threshold=1): p = binary_logits.sigmoid().mean(0) h = (-p.xlogy(p) - (1 - p).xlogy(1 - p)) / math.log(2) @@ -72,9 +91,9 @@ def loss_H(binary_logits, h_threshold=1): def train_encoder( train_input, test_input, - depth=2, + depth, + nb_bits_per_token, dim_hidden=48, - nb_bits_per_token=8, lambda_entropy=0.0, lr_start=1e-3, lr_end=1e-4, @@ -83,9 +102,6 @@ def train_encoder( logger=None, device=torch.device("cpu"), ): - if logger is None: - logger = lambda s: print(s) - mu, std = train_input.float().mean(), train_input.float().std() def encoder_core(depth, dim): @@ -144,7 +160,7 @@ def train_encoder( nb_parameters = sum(p.numel() for p in model.parameters()) - logger(f"nb_parameters {nb_parameters}") + logger(f"vqae nb_parameters {nb_parameters}") model.to(device) @@ -159,7 +175,7 @@ def train_encoder( for input in tqdm.tqdm(train_input.split(batch_size), desc="vqae-train"): input = input.to(device) z = encoder(input) - zq = z if k < 2 else quantizer(z) + zq = quantizer(z) output = decoder(zq) output = output.reshape( @@ -182,7 +198,7 @@ def train_encoder( for input in tqdm.tqdm(test_input.split(batch_size), desc="vqae-test"): input = input.to(device) z = encoder(input) - zq = z if k < 1 else quantizer(z) + zq = quantizer(z) output = decoder(zq) output = output.reshape( @@ -196,7 +212,7 @@ def train_encoder( train_loss = acc_train_loss / train_input.size(0) test_loss = acc_test_loss / test_input.size(0) - logger(f"train_ae {k} lr {lr} train_loss {train_loss} test_loss {test_loss}") + logger(f"vqae train {k} lr {lr} train_loss {train_loss} test_loss {test_loss}") sys.stdout.flush() return encoder, quantizer, decoder @@ -353,6 +369,8 @@ def create_data_and_processors( nb_test_samples, mode, nb_steps, + depth=3, + nb_bits_per_token=8, nb_epochs=10, device=torch.device("cpu"), device_storage=torch.device("cpu"), @@ -363,6 +381,9 @@ def create_data_and_processors( if mode == "first_last": steps = [True] + [False] * (nb_steps + 1) + [True] + if logger is None: + logger = lambda s: print(s) + train_input, train_actions = generate_episodes(nb_train_samples, steps) train_input, train_actions = train_input.to(device_storage), train_actions.to( device_storage @@ -375,6 +396,8 @@ def create_data_and_processors( encoder, quantizer, decoder = train_encoder( train_input, test_input, + depth=depth, + nb_bits_per_token=nb_bits_per_token, lambda_entropy=1.0, nb_epochs=nb_epochs, logger=logger, @@ -388,6 +411,8 @@ def create_data_and_processors( pow2 = (2 ** torch.arange(z.size(1), device=device))[None, None, :] z_h, z_w = z.size(2), z.size(3) + logger(f"vqae input {train_input[0].size()} output {z[0].size()}") + def frame2seq(input, batch_size=25): seq = [] p = pow2.to(device) @@ -439,8 +464,9 @@ if __name__ == "__main__": frame2seq, seq2frame, ) = create_data_and_processors( - 25000, 1000, - nb_epochs=10, + 250, + 1000, + nb_epochs=5, mode="first_last", nb_steps=20, )