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import random |
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import tqdm |
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import gzip |
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import numpy as np |
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import torch |
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from torch import nn, Tensor |
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from torch.nn import functional as F |
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from torch.utils.data import DataLoader, Dataset |
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from adam_atan2_pytorch import AdoptAtan2 |
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from titans_pytorch import ( |
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MemoryAsContextTransformer, |
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MemoryMLP, |
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MemoryAttention |
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) |
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NUM_BATCHES = int(1e5) |
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BATCH_SIZE = 4 |
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GRADIENT_ACCUMULATE_EVERY = 4 |
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LEARNING_RATE = 2e-4 |
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VALIDATE_EVERY = 100 |
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GENERATE_EVERY = 500 |
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PRIME_LENGTH = 100 |
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GENERATE_LENGTH = 512 |
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SHOULD_GENERATE = True |
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SEQ_LEN = 512 |
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NEURAL_MEMORY_DEPTH = 2 |
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NUM_PERSIST_MEM = 4 |
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NUM_LONGTERM_MEM = 4 |
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NEURAL_MEM_LAYERS = (2, 4, 6) |
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NEURAL_MEM_GATE_ATTN_OUTPUT = False |
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NEURAL_MEM_MOMENTUM = True |
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NEURAL_MEM_MOMENTUM_ORDER = 1 |
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NEURAL_MEM_QK_NORM = True |
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NEURAL_MEM_MAX_LR = 1e-1 |
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USE_MEM_ATTENTION_MODEL = False |
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WINDOW_SIZE = 32 |
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NEURAL_MEM_SEGMENT_LEN = 4 |
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NEURAL_MEM_BATCH_SIZE = 128 |
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SLIDING_WINDOWS = True |
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STORE_ATTN_POOL_CHUNKS = True |
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MEMORY_MODEL_PER_LAYER_LEARNED_LR = True |
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NEURAL_MEM_WEIGHT_RESIDUAL = True |
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NEURAL_MEM_QKV_RECEIVES_DIFF_VIEW = True |
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NEURAL_MEM_SPEC_NORM_SURPRISES = True |
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PROJECT_NAME = 'titans-mac-transformer' |
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RUN_NAME = f'mac - {NUM_LONGTERM_MEM} longterm mems, layers {NEURAL_MEM_LAYERS}' |
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WANDB_ONLINE = False |
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USE_ACCELERATED_SCAN = True |
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USE_FLEX_ATTN = True |
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USE_FAST_INFERENCE = False |
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import wandb |
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wandb.init(project = PROJECT_NAME, mode = 'disabled' if not WANDB_ONLINE else 'online') |
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wandb.run.name = RUN_NAME |
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wandb.run.save() |
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def cycle(loader): |
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while True: |
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for data in loader: |
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yield data |
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def decode_token(token): |
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return str(chr(max(32, token))) |
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def decode_tokens(tokens): |
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return ''.join(list(map(decode_token, tokens))) |
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if USE_MEM_ATTENTION_MODEL: |
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neural_memory_model = MemoryAttention( |
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dim = 64 |
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) |
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else: |
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neural_memory_model = MemoryMLP( |
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dim = 64, |
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depth = NEURAL_MEMORY_DEPTH |
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) |
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model = MemoryAsContextTransformer( |
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num_tokens = 256, |
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dim = 384, |
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depth = 8, |
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segment_len = WINDOW_SIZE, |
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num_persist_mem_tokens = NUM_PERSIST_MEM, |
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num_longterm_mem_tokens = NUM_LONGTERM_MEM, |
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neural_memory_layers = NEURAL_MEM_LAYERS, |
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neural_memory_segment_len = NEURAL_MEM_SEGMENT_LEN, |
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neural_memory_batch_size = NEURAL_MEM_BATCH_SIZE, |
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neural_mem_gate_attn_output = NEURAL_MEM_GATE_ATTN_OUTPUT, |
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neural_mem_weight_residual = NEURAL_MEM_WEIGHT_RESIDUAL, |
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neural_memory_qkv_receives_diff_views = NEURAL_MEM_QKV_RECEIVES_DIFF_VIEW, |
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use_flex_attn = USE_FLEX_ATTN, |
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sliding_window_attn = SLIDING_WINDOWS, |
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neural_memory_model = neural_memory_model, |
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neural_memory_kwargs = dict( |
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dim_head = 64, |
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heads = 4, |
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attn_pool_chunks = STORE_ATTN_POOL_CHUNKS, |
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qk_rmsnorm = NEURAL_MEM_QK_NORM, |
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momentum = NEURAL_MEM_MOMENTUM, |
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momentum_order = NEURAL_MEM_MOMENTUM_ORDER, |
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default_step_transform_max_lr = NEURAL_MEM_MAX_LR, |
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use_accelerated_scan = USE_ACCELERATED_SCAN, |
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per_parameter_lr_modulation = MEMORY_MODEL_PER_LAYER_LEARNED_LR, |
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spectral_norm_surprises = NEURAL_MEM_SPEC_NORM_SURPRISES |
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) |
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).cuda() |
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with gzip.open('./data/enwik8.gz') as file: |
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data = np.frombuffer(file.read(int(95e6)), dtype = np.uint8).copy() |
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data_train, data_val = np.split(data, [int(90e6)]) |
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data_train, data_val = map(torch.from_numpy, (data_train, data_val)) |
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class TextSamplerDataset(Dataset): |
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def __init__(self, data, seq_len): |
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super().__init__() |
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self.data = data |
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self.seq_len = seq_len |
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def __getitem__(self, index): |
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rand_start = torch.randint(0, self.data.size(0) - self.seq_len, (1,)) |
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full_seq = self.data[rand_start: rand_start + self.seq_len + 1].long() |
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return full_seq.cuda() |
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def __len__(self): |
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return self.data.size(0) // self.seq_len |
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train_dataset = TextSamplerDataset(data_train, SEQ_LEN) |
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val_dataset = TextSamplerDataset(data_val, SEQ_LEN) |
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train_loader = cycle(DataLoader(train_dataset, batch_size = BATCH_SIZE)) |
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val_loader = cycle(DataLoader(val_dataset, batch_size = BATCH_SIZE)) |
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optim = AdoptAtan2(model.parameters(), lr = LEARNING_RATE) |
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for i in tqdm.tqdm(range(NUM_BATCHES), mininterval = 10., desc = 'training'): |
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model.train() |
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for __ in range(GRADIENT_ACCUMULATE_EVERY): |
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loss = model(next(train_loader), return_loss = True) |
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loss.backward() |
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print(f'training loss: {loss.item():.4f}') |
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torch.nn.utils.clip_grad_norm_(model.parameters(), 0.5) |
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optim.step() |
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optim.zero_grad() |
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wandb.log(dict(loss = loss.item())) |
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if i % VALIDATE_EVERY == 0: |
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model.eval() |
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with torch.no_grad(): |
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loss = model(next(val_loader), return_loss = True) |
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print(f'validation loss: {loss.item():.4f}') |
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if SHOULD_GENERATE and i % GENERATE_EVERY == 0: |
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model.eval() |
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inp = random.choice(val_dataset)[:PRIME_LENGTH] |
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prime = decode_tokens(inp) |
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print(f'%s \n\n %s', (prime, '*' * 100)) |
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sample = model.sample(inp[None, ...], GENERATE_LENGTH, use_cache = USE_FAST_INFERENCE) |
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output_str = decode_tokens(sample[0]) |
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print(output_str) |
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