413 lines
13 KiB
Python
413 lines
13 KiB
Python
"""
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This is an experiment to:
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* entertain a thought to try and abide by HF's transformers API (to benefit from caching better)
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* conform to a single embedding (instead of a bunch of them) by folding/unfolding inputs
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* stop trying to make a mixed AR+NAR model work since it seems lobotomized if I keep trying to enforce both recurrent and parallel inferencing (despite a penalty cost)
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+ I will not cave and go with codebook patterns, not yet.
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"""
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from ..config import cfg
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from ..data import fold_inputs, unfold_outputs
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import torch
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import torch.nn.functional as F
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from torch.nn.utils.rnn import pad_sequence
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from torch import Tensor
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from torch.nn import CrossEntropyLoss
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from torch.utils.checkpoint import checkpoint
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from torchmetrics.classification import BinaryAccuracy, MulticlassAccuracy, MulticlassPrecision
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import random
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import math
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from einops import rearrange
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from tqdm import trange
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from .arch import *
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if cfg.model.arch_type not in AVAILABLE_ARCHES:
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raise ValueError(f"Requesting arch `{cfg.model.arch_type}` but not available")
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if cfg.model.arch_type in ["mamba","mamba2"]:
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LlmArchClass = MambaLMHeadModel
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elif cfg.model.arch_type == "llama":
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LlmArchClass = LlamaForCausalLM
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elif cfg.model.arch_type == "retnet":
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LlmArchClass = RetNetForCausalLM
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else:
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raise ValueError(f"Requesting arch `{cfg.model.arch_type}` but not available")
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class Model(LlmArchClass):
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def __init__(
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self,
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n_text_tokens = 256,
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n_audio_tokens = 1024,
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d_model=1024,
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n_layers=12,
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n_heads=16,
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p_dropout=0.1,
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config = cfg.model,
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):
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self.hyper_config = config
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hf_attention = config.attention if config is not None else None
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gradient_checkpointing = config.gradient_checkpointing if config is not None else True
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# text_tokens + rvq levels + [audio tokens * codebooks] (prom) + [audio tokens * codebooks] (resp) + stop
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vocab_size = n_text_tokens + cfg.model.max_levels + (n_audio_tokens * cfg.model.max_levels) + (n_audio_tokens * cfg.model.max_levels) + 1
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if cfg.model.arch_type == "llama":
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super().__init__(config=LlamaConfig(
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vocab_size=vocab_size,
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hidden_size=d_model,
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max_position_embeddings=cfg.dataset.frames_per_second * cfg.model.max_levels * 60, # max-length of 60 seconds
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intermediate_size=d_model*4,
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num_hidden_layers=n_layers,
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num_attention_heads=n_heads,
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attention_dropout=p_dropout,
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num_key_value_heads=n_heads,
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sliding_window=cfg.dataset.frames_per_second * cfg.model.max_levels * 12,
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hidden_act="gelu",
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is_encoder_decoder=False,
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is_decoder=True,
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attn_implementation=hf_attention,
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))
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if gradient_checkpointing:
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self.gradient_checkpointing_enable(gradient_checkpointing_kwargs=dict(
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use_reentrant=False
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))
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elif cfg.model.arch_type == "retnet":
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super().__init__(config=RetNetConfig(
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vocab_size=vocab_size,
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decoder_embed_dim=d_model,
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decoder_value_embed_dim =d_model * 2,
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decoder_retention_heads=n_heads,
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decoder_ffn_embed_dim=d_model * 4,
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decoder_layers=n_layers,
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dropout=p_dropout,
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checkpoint_activations=gradient_checkpointing,
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activation_fn="gelu",
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use_layernorm=False,
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use_biases=False,
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use_glu=True,
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#chunkwise_recurrent=self.causal and self.recurrent_chunk_size > 0,
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#recurrent_chunkwise_size=self.recurrent_chunk_size if self.causal else 0,
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#no_output_layer=True,
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#rotary_embedding_base=self.rotary_embedding_base, # 10000
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decoder_normalize_before=True,
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))
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elif cfg.model.arch_type in ["mamba","mamba2"]:
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super().__init__(config=MambaConfig(
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vocab_size=vocab_size,
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d_model=d_model,
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n_layer=n_layers,
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d_intermediate=d_model*4,
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ssm_cfg={"layer": "Mamba2"} if cfg.model.arch_type == "mamba2" else {},
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rms_norm=True,
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fused_add_norm=True,
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residual_in_fp32=True,
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))
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self.backbone.gradient_checkpointing = gradient_checkpointing
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self.accuracy_metric = None if True else MulticlassAccuracy(
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vocab_size,
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top_k=10,
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average="micro",
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multidim_average="global",
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ignore_index=-100,
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)
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def generate(
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self,
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*args,
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**kwargs
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):
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if cfg.model.arch_type in ["mamba","mamba2"]:
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kwargs["cg"] = True
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if "attention_mask" in kwargs:
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kwargs.pop("attention_mask")
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if "do_sample" in kwargs:
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kwargs.pop("do_sample")
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if "min_length" in kwargs:
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kwargs.pop("min_length")
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return super().generate(*args, **kwargs)
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def forward(
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self,
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*args,
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**kwargs,
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):
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if cfg.model.arch_type in ["mamba","mamba2"]:
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if "attention_mask" in kwargs:
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kwargs.pop("attention_mask")
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labels = kwargs.pop("labels") if "labels" in kwargs else None
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output = super().forward(*args, **kwargs)
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logits = output.logits
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# i HATE the correct way
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if labels is not None:
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if self.hyper_config is None or not self.hyper_config.loss_factors:
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loss = sum([ F.cross_entropy( logit[:-1, :], label[1:], ignore_index=-100 ) for logit, label in zip( logits, labels ) ])
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self.loss = dict(
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nll = loss,
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)
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if self.accuracy_metric is not None:
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self.stats = dict(
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acc = (sum([ self.accuracy_metric( logit, target ) for logit, target in zip( logits, labels ) ] ) / len( logits )).item()
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)
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else:
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sep = 3
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# determine specific sections to focus on
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indices = [ [ idx for idx, token in enumerate( batch ) if token == sep ] for i, batch in enumerate( labels ) ]
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text_index = 0
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resp_index = 1 # 1 indluces everything non text, -3 includes pre_resp + resp (ignores prom, probably better to include prom here)
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labels_text = [ batch[:indices[i][text_index] + 1 ] for i, batch in enumerate( labels ) ]
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labels_resp = [ batch[indices[i][resp_index] + 1:] for i, batch in enumerate( labels ) ]
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logits_text = [ batch[:indices[i][text_index] + 1 ] for i, batch in enumerate( logits ) ]
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logits_resp = [ batch[indices[i][resp_index] + 1:] for i, batch in enumerate( logits ) ]
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loss_text = sum([ F.cross_entropy( logit[:-1, :], label[1:], ignore_index=-100 ) for logit, label in zip( logits_text, labels_text ) ]) / len(logits_text) * self.hyper_config.loss_factor("text")
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loss_resp = sum([ F.cross_entropy( logit[:-1, :], label[1:], ignore_index=-100 ) for logit, label in zip( logits_resp, labels_resp ) ]) / len(logits_resp) * self.hyper_config.loss_factor("resp")
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self.loss = dict(
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text = loss_text,
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resp = loss_resp,
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)
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if self.accuracy_metric is not None:
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self.stats = dict(
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acc = dict(
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text = (sum([ self.accuracy_metric( logit, target ) for logit, target in zip( logits_text, labels_text ) ] ) / len( logits_text )).item(),
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resp = (sum([ self.accuracy_metric( logit, target ) for logit, target in zip( logits_resp, labels_resp ) ] ) / len( logits_resp )).item(),
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)
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)
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return output
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def example_usage():
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cfg.trainer.backend = "local"
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cfg.hyperparameters.gradient_accumulation_steps = 1
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if cfg.audio_backend == "dac":
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cfg.sample_rate = 44_000
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from functools import partial
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from einops import repeat
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from tqdm import tqdm
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from ..emb.qnt import decode_to_file, unload_model
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from ..engines import Engine
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from ..utils import wrapper as ml
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import numpy as np
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import re
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device = "cuda"
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def tokenize(content):
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return torch.tensor( cfg.tokenizer.encode(content) )
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def _load_quants(path) -> Tensor:
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qnt = np.load(path, allow_pickle=True)[()]
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return torch.from_numpy(qnt["codes"].astype(np.int16))[0, :cfg.model.max_levels, :].t().to(torch.int16)
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qnt = _load_quants(f"./data/qnt.{'dac' if cfg.audio_backend == 'dac' else 'enc'}")
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text_list = [
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tokenize("ˈaɪ wɪl nˌɑːt ˈæsk ɐ sˈɛkənd tˈaɪm").to(device),
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#tokenize("ˈaɪ wɪl nˌɑːt ˈæsk ɐ sˈɛkənd tˈaɪm").to(device),
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]
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prom_list = [
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qnt[:cfg.dataset.frames_per_second, :].to(device),
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#qnt[:cfg.dataset.frames_per_second, :].to(device),
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]
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resp_list = [
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qnt[:, :].to(device),
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#qnt[cfg.dataset.frames_per_second:, :].to(device),
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#qnt[:cfg.dataset.frames_per_second, :].to(device),
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]
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text_list = text_list[:1]
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prom_list = prom_list[:1]
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resp_list = resp_list[:1]
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kwargs = {}
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model = Model(**kwargs).to(device)
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steps = 100
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optimizer = cfg.hyperparameters.optimizer.lower() if cfg.yaml_path is not None else "prodigy"
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scheduler = cfg.hyperparameters.scheduler.lower() if cfg.yaml_path is not None else ""
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learning_rate = cfg.hyperparameters.learning_rate if cfg.yaml_path is not None else None
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if cfg.optimizations.dadaptation:
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# do not combine the two
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if scheduler == "schedulefree":
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scheduler = ""
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learning_rate = 1.0
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if optimizer == "prodigy":
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if learning_rate is None:
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learning_rate = 1.0
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optimizer = ml.Prodigy
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elif optimizer == "adagrad":
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if learning_rate is None:
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learning_rate = 1.0e-2
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optimizer = ml.Adagrad
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elif optimizer == "adamw":
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if learning_rate is None:
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learning_rate = 1.0e-4
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optimizer = ml.AdamW
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elif optimizer == "sdg":
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if learning_rate is None:
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learning_rate = 1.0e-4
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optimizer = ml.SGD
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else:
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raise ValueError(f"Unrecognized optimizer: {optimizer}")
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print("Optimizer:", optimizer, "\tLearning rate:", learning_rate)
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optimizer = optimizer(model.parameters(), lr=learning_rate)
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if scheduler == "schedulefree":
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if isinstance(optimizer, ml.AdamW):
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scheduler = ml.schedulefree.AdamWScheduleFree
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elif isinstance(optimizer, ml.SGD):
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scheduler = ml.schedulefree.SGDScheduleFree
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else:
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scheduler = None
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if scheduler is not None:
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print("Scheduler:", scheduler)
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optimizer = scheduler( model.parameters(), lr = learning_rate )
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if cfg.optimizations.replace and cfg.optimizations.linear:
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model = ml.replace_linear( model )
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if cfg.optimizations.replace and cfg.optimizations.embedding:
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model = ml.replace_embedding( model )
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engine = Engine(model=model, optimizer=optimizer)
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"""
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torch.save( {
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'module': model.state_dict()
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}, f"./data/{cfg.model.arch_type}.pth" )
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"""
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print(f"{LlmArchClass} parameter count: {sum(p.numel() for p in model.parameters() if p.requires_grad)}")
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@torch.inference_mode()
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def sample( name, steps=cfg.model.max_levels*cfg.dataset.frames_per_second*6 ):
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engine.eval()
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batch_size = len(text_list)
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resp_list = None
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if cfg.model.interleave:
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input_ids, attention_mask = fold_inputs(text_list=text_list, prom_list=prom_list)
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output = model.generate(input_ids=input_ids, attention_mask=attention_mask, max_length=steps, eos_token_id=3, do_sample=False)
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unfolded = unfold_outputs( output )
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resp_list = unfolded["resp_list"]
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else:
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resp_list = [ [] for _ in range(batch_size) ]
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for l in range(cfg.model.max_levels):
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quant_levels = [ l for _ in range(batch_size) ]
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input_ids, attention_mask = fold_inputs(text_list=text_list, prom_list=prom_list, resp_list=resp_list, quant_levels=quant_levels)
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min_length = 1
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for batch in input_ids:
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min_length = max( min_length, batch.shape[0] + 1 )
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output = model.generate(
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input_ids=input_ids,
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attention_mask=attention_mask,
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min_length=min_length,
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max_length=min_length+steps*2,
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eos_token_id=3,
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do_sample=False
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)
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unfolded = unfold_outputs( output, quant_levels=quant_levels )
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if l == 0:
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steps = 0
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for batch, resp in enumerate(unfolded["resp_list"]):
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length = resp.shape[-1]
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# store length
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if l == 0:
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steps = max( steps, length )
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# pad
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else:
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resp = resp[:steps]
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if length < steps:
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resp = torch.cat([ resp, torch.Tensor([ 0 for _ in range(steps-length) ]).to(resp) ])
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resp_list[batch].append( resp )
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for i, resp in enumerate( resp_list ):
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resp_list[i] = torch.stack( resp ).t()
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for i, batch in enumerate(resp_list):
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_ = decode_to_file(batch.to(device=device), f"data/{cfg.model.arch_type}.{cfg.audio_backend}.{i}.{name}.wav", device=device)
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unload_model()
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def train():
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engine.train()
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t = trange(steps)
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for i in t:
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stats = {"step": i}
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batch_size = len(text_list)
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quant_levels = None if cfg.model.interleave else torch.randint(0 if "ar" in cfg.model.capabilities else 1, cfg.model.max_levels, (batch_size,))
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if quant_levels is not None:
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resps_list = [ [] if l == 0 else resp for l, resp in zip(quant_levels, resp_list) ]
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else:
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resps_list = [ resp for resp in resp_list ]
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input_ids, attention_mask = fold_inputs(text_list=text_list, prom_list=prom_list, resp_list=resps_list, targ_list=resp_list, quant_levels=quant_levels)
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target_ids, target_attention_mask = fold_inputs(text_list=text_list, prom_list=prom_list, resp_list=resp_list, targ_list=resp_list, ignore_index=-100, quant_levels=quant_levels)
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stats |= engine.traverse(input_ids=input_ids, labels=target_ids, attention_mask=attention_mask)
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stats |= engine.gather_attribute("stats")
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stats |= {"grad_norm": engine.get_global_grad_norm()}
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tqdm.write(f"{stats}")
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"""
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torch.save( {
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'module': model.state_dict()
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}, f"./data/{cfg.model.arch_type}.pth" )
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"""
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#sample("init", 5)
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train()
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sample("final")
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if __name__ == "__main__":
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example_usage()
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