Update.
[picoclvr.git] / tasks.py
index d680951..f2b7709 100755 (executable)
--- a/tasks.py
+++ b/tasks.py
@@ -27,6 +27,7 @@ def masked_inplace_autoregression(
     ar_mask,
     deterministic_synthesis,
     forbidden_tokens=None,
+    logit_biases=None,
     progress_bar_desc="autoregression",
     device=torch.device("cpu"),
 ):
@@ -48,7 +49,11 @@ def masked_inplace_autoregression(
 
         for input, ar_mask in batches:
             model.masked_inplace_autoregression(
-                input, ar_mask, forbidden_tokens, deterministic_synthesis
+                input,
+                ar_mask,
+                deterministic_synthesis,
+                forbidden_tokens,
+                logit_biases,
             )
 
         model.train(t)
@@ -1861,3 +1866,190 @@ class QMLP(Task):
 
 
 ######################################################################
+
+import escape
+
+
+class Escape(Task):
+    def __init__(
+        self,
+        nb_train_samples,
+        nb_test_samples,
+        batch_size,
+        height,
+        width,
+        T,
+        nb_walls,
+        logger=None,
+        device=torch.device("cpu"),
+    ):
+        super().__init__()
+
+        self.batch_size = batch_size
+        self.device = device
+        self.height = height
+        self.width = width
+
+        states, actions, rewards = escape.generate_episodes(
+            nb_train_samples + nb_test_samples, height, width, T, nb_walls
+        )
+        seq = escape.episodes2seq(states, actions, rewards)
+        # seq = seq[:, seq.size(1) // 3 : 2 * seq.size(1) // 3]
+        self.train_input = seq[:nb_train_samples].to(self.device)
+        self.test_input = seq[nb_train_samples:].to(self.device)
+
+    def batches(self, split="train", nb_to_use=-1, desc=None):
+        assert split in {"train", "test"}
+        input = self.train_input if split == "train" else self.test_input
+        if nb_to_use > 0:
+            input = input[:nb_to_use]
+        if desc is None:
+            desc = f"epoch-{split}"
+        for batch in tqdm.tqdm(
+            input.split(self.batch_size), dynamic_ncols=True, desc=desc
+        ):
+            yield batch
+
+    def vocabulary_size(self):
+        return escape.nb_codes
+
+    def thinking_autoregression(
+        self, n_epoch, model, result_dir, logger, deterministic_synthesis, nmax=1000
+    ):
+        result = self.test_input[:250].clone()
+        t = torch.arange(result.size(1), device=result.device)[None, :]
+
+        state_len = self.height * self.width
+        index_lookahead_reward = 0
+        index_states = 1
+        index_action = state_len + 1
+        index_reward = state_len + 2
+        it_len = state_len + 3  # lookahead_reward / state / action / reward
+
+        result[:, it_len:] = -1
+
+        def ar(result, ar_mask, logit_biases=None):
+            ar_mask = ar_mask.expand_as(result)
+            result *= 1 - ar_mask
+            masked_inplace_autoregression(
+                model,
+                self.batch_size,
+                result,
+                ar_mask,
+                deterministic_synthesis=deterministic_synthesis,
+                logit_biases=logit_biases,
+                device=self.device,
+                progress_bar_desc=None,
+            )
+
+        # Generate iteration after iteration
+
+        optimistic_bias = result.new_zeros(escape.nb_codes, device=result.device)
+        optimistic_bias[escape.lookahead_reward2code(-1)] = -math.log(1e1)
+        optimistic_bias[escape.lookahead_reward2code(1)] = math.log(1e1)
+
+        snapshots = []
+
+        for u in tqdm.tqdm(
+            range(it_len, result.size(1) - it_len + 1, it_len), desc="thinking"
+        ):
+            # Generate the lookahead_reward and state
+            ar_mask = (t >= u + index_lookahead_reward).long() * (
+                t < u + index_states + state_len
+            ).long()
+            ar(result, ar_mask)
+            snapshots.append(result[:10].detach().clone())
+            backup_lookahead_reward = result[:, u + index_lookahead_reward]
+
+            # Re-generate the lookahead_reward
+            ar_mask = (t == u + index_lookahead_reward).long()
+            ar(result, ar_mask, logit_biases=optimistic_bias)
+            snapshots.append(result[:10].detach().clone())
+
+            # Generate the action and reward
+            ar_mask = (t >= u + index_action).long() * (t <= u + index_reward).long()
+            ar(result, ar_mask)
+            snapshots.append(result[:10].detach().clone())
+
+            result[:, u + index_lookahead_reward] = backup_lookahead_reward
+
+        filename = os.path.join(result_dir, f"test_thinking_compute_{n_epoch:04d}.txt")
+        with open(filename, "w") as f:
+            for n in range(10):
+                for s in snapshots:
+                    lr, s, a, r = escape.seq2episodes(
+                        s[n : n + 1], self.height, self.width
+                    )
+                    str = escape.episodes2str(
+                        lr, s, a, r, unicode=True, ansi_colors=True
+                    )
+                    f.write(str)
+                f.write("\n\n")
+
+        # Saving the generated sequences
+
+        lr, s, a, r = escape.seq2episodes(result, self.height, self.width)
+        str = escape.episodes2str(lr, s, a, r, unicode=True, ansi_colors=True)
+
+        filename = os.path.join(result_dir, f"test_thinking_seq_{n_epoch:04d}.txt")
+        with open(filename, "w") as f:
+            f.write(str)
+            logger(f"wrote {filename}")
+
+    def produce_results(
+        self, n_epoch, model, result_dir, logger, deterministic_synthesis, nmax=1000
+    ):
+        result = self.test_input[:250].clone()
+
+        # Saving the ground truth
+
+        lr, s, a, r = escape.seq2episodes(
+            result,
+            self.height,
+            self.width,
+        )
+        str = escape.episodes2str(lr, s, a, r, unicode=True, ansi_colors=True)
+
+        filename = os.path.join(result_dir, f"test_true_seq_{n_epoch:04d}.txt")
+        with open(filename, "w") as f:
+            f.write(str)
+            logger(f"wrote {filename}")
+
+        # Re-generating from the first frame
+
+        ar_mask = (
+            torch.arange(result.size(1), device=result.device)
+            >= self.height * self.width + 3
+        ).long()[None, :]
+        ar_mask = ar_mask.expand_as(result)
+        result *= 1 - ar_mask  # paraaaaanoiaaaaaaa
+
+        masked_inplace_autoregression(
+            model,
+            self.batch_size,
+            result,
+            ar_mask,
+            deterministic_synthesis,
+            device=self.device,
+        )
+
+        # Saving the generated sequences
+
+        lr, s, a, r = escape.seq2episodes(
+            result,
+            self.height,
+            self.width,
+        )
+        str = escape.episodes2str(lr, s, a, r, unicode=True, ansi_colors=True)
+
+        filename = os.path.join(result_dir, f"test_seq_{n_epoch:04d}.txt")
+        with open(filename, "w") as f:
+            f.write(str)
+            logger(f"wrote {filename}")
+
+        self.thinking_autoregression(
+            n_epoch, model, result_dir, logger, deterministic_synthesis, nmax
+        )
+
+
+######################################################################