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""" |
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All the functions to build the relevant models and modules |
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from the Hydra config. |
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""" |
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import typing as tp |
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import warnings |
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import audiocraft |
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import omegaconf |
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import torch |
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from .encodec import CompressionModel, EncodecModel, FlattenedCompressionModel |
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from .lm import LMModel |
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from ..modules.codebooks_patterns import ( |
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CodebooksPatternProvider, |
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DelayedPatternProvider, |
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ParallelPatternProvider, |
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UnrolledPatternProvider, |
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VALLEPattern, |
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MusicLMPattern, |
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) |
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from ..modules.conditioners import ( |
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BaseConditioner, |
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ConditioningProvider, |
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LUTConditioner, |
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T5Conditioner, |
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ConditionFuser, |
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ChromaStemConditioner, |
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) |
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from .. import quantization as qt |
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from ..utils.utils import dict_from_config |
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def get_quantizer(quantizer: str, cfg: omegaconf.DictConfig, dimension: int) -> qt.BaseQuantizer: |
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klass = { |
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'no_quant': qt.DummyQuantizer, |
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'rvq': qt.ResidualVectorQuantizer |
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}[quantizer] |
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kwargs = dict_from_config(getattr(cfg, quantizer)) |
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if quantizer != 'no_quant': |
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kwargs['dimension'] = dimension |
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return klass(**kwargs) |
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def get_encodec_autoencoder(encoder_name: str, cfg: omegaconf.DictConfig): |
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if encoder_name == 'seanet': |
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kwargs = dict_from_config(getattr(cfg, 'seanet')) |
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encoder_override_kwargs = kwargs.pop('encoder') |
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decoder_override_kwargs = kwargs.pop('decoder') |
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encoder_kwargs = {**kwargs, **encoder_override_kwargs} |
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decoder_kwargs = {**kwargs, **decoder_override_kwargs} |
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encoder = audiocraft.modules.SEANetEncoder(**encoder_kwargs) |
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decoder = audiocraft.modules.SEANetDecoder(**decoder_kwargs) |
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return encoder, decoder |
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else: |
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raise KeyError(f'Unexpected compression model {cfg.compression_model}') |
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def get_compression_model(cfg: omegaconf.DictConfig) -> CompressionModel: |
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"""Instantiate a compression model. |
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""" |
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if cfg.compression_model == 'encodec': |
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kwargs = dict_from_config(getattr(cfg, 'encodec')) |
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encoder_name = kwargs.pop('autoencoder') |
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quantizer_name = kwargs.pop('quantizer') |
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encoder, decoder = get_encodec_autoencoder(encoder_name, cfg) |
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quantizer = get_quantizer(quantizer_name, cfg, encoder.dimension) |
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frame_rate = kwargs['sample_rate'] // encoder.hop_length |
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renormalize = kwargs.pop('renormalize', None) |
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renorm = kwargs.pop('renorm') |
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if renormalize is None: |
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renormalize = renorm is not None |
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warnings.warn("You are using a deprecated EnCodec model. Please migrate to new renormalization.") |
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return EncodecModel(encoder, decoder, quantizer, |
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frame_rate=frame_rate, renormalize=renormalize, **kwargs).to(cfg.device) |
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else: |
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raise KeyError(f'Unexpected compression model {cfg.compression_model}') |
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def get_lm_model(cfg: omegaconf.DictConfig) -> LMModel: |
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"""Instantiate a transformer LM. |
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""" |
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if cfg.lm_model == 'transformer_lm': |
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kwargs = dict_from_config(getattr(cfg, 'transformer_lm')) |
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n_q = kwargs['n_q'] |
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q_modeling = kwargs.pop('q_modeling', None) |
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codebooks_pattern_cfg = getattr(cfg, 'codebooks_pattern') |
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attribute_dropout = dict_from_config(getattr(cfg, 'attribute_dropout')) |
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cls_free_guidance = dict_from_config(getattr(cfg, 'classifier_free_guidance')) |
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cfg_prob, cfg_coef = cls_free_guidance["training_dropout"], cls_free_guidance["inference_coef"] |
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fuser = get_condition_fuser(cfg) |
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condition_provider = get_conditioner_provider(kwargs["dim"], cfg).to(cfg.device) |
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if len(fuser.fuse2cond['cross']) > 0: |
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kwargs['cross_attention'] = True |
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if codebooks_pattern_cfg.modeling is None: |
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assert q_modeling is not None, \ |
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'LM model should either have a codebook pattern defined or transformer_lm.q_modeling' |
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codebooks_pattern_cfg = omegaconf.OmegaConf.create( |
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{'modeling': q_modeling, 'delay': {'delays': list(range(n_q))}} |
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) |
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pattern_provider = get_codebooks_pattern_provider(n_q, codebooks_pattern_cfg) |
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return LMModel( |
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pattern_provider=pattern_provider, |
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condition_provider=condition_provider, |
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fuser=fuser, |
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cfg_dropout=cfg_prob, |
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cfg_coef=cfg_coef, |
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attribute_dropout=attribute_dropout, |
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dtype=getattr(torch, cfg.dtype), |
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device=cfg.device, |
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**kwargs |
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).to(cfg.device) |
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else: |
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raise KeyError(f'Unexpected LM model {cfg.lm_model}') |
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def get_conditioner_provider(output_dim: int, cfg: omegaconf.DictConfig) -> ConditioningProvider: |
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"""Instantiate a conditioning model. |
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""" |
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device = cfg.device |
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duration = cfg.dataset.segment_duration |
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cfg = getattr(cfg, "conditioners") |
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cfg = omegaconf.OmegaConf.create({}) if cfg is None else cfg |
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conditioners: tp.Dict[str, BaseConditioner] = {} |
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with omegaconf.open_dict(cfg): |
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condition_provider_args = cfg.pop('args', {}) |
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for cond, cond_cfg in cfg.items(): |
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model_type = cond_cfg["model"] |
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model_args = cond_cfg[model_type] |
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if model_type == "t5": |
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conditioners[str(cond)] = T5Conditioner(output_dim=output_dim, device=device, **model_args) |
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elif model_type == "lut": |
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conditioners[str(cond)] = LUTConditioner(output_dim=output_dim, **model_args) |
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elif model_type == "chroma_stem": |
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model_args.pop('cache_path', None) |
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conditioners[str(cond)] = ChromaStemConditioner( |
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output_dim=output_dim, |
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duration=duration, |
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device=device, |
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**model_args |
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) |
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else: |
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raise ValueError(f"unrecognized conditioning model: {model_type}") |
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conditioner = ConditioningProvider(conditioners, device=device, **condition_provider_args) |
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return conditioner |
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def get_condition_fuser(cfg: omegaconf.DictConfig) -> ConditionFuser: |
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"""Instantiate a condition fuser object. |
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""" |
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fuser_cfg = getattr(cfg, "fuser") |
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fuser_methods = ["sum", "cross", "prepend", "input_interpolate"] |
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fuse2cond = {k: fuser_cfg[k] for k in fuser_methods} |
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kwargs = {k: v for k, v in fuser_cfg.items() if k not in fuser_methods} |
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fuser = ConditionFuser(fuse2cond=fuse2cond, **kwargs) |
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return fuser |
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def get_codebooks_pattern_provider(n_q: int, cfg: omegaconf.DictConfig) -> CodebooksPatternProvider: |
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"""Instantiate a codebooks pattern provider object. |
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""" |
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pattern_providers = { |
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'parallel': ParallelPatternProvider, |
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'delay': DelayedPatternProvider, |
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'unroll': UnrolledPatternProvider, |
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'valle': VALLEPattern, |
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'musiclm': MusicLMPattern, |
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} |
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name = cfg.modeling |
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kwargs = dict_from_config(cfg.get(name)) if hasattr(cfg, name) else {} |
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klass = pattern_providers[name] |
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return klass(n_q, **kwargs) |
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def get_debug_compression_model(device='cpu'): |
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"""Instantiate a debug compression model to be used for unit tests. |
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""" |
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seanet_kwargs = { |
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'n_filters': 4, |
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'n_residual_layers': 1, |
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'dimension': 32, |
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'ratios': [10, 8, 16] |
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} |
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encoder = audiocraft.modules.SEANetEncoder(**seanet_kwargs) |
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decoder = audiocraft.modules.SEANetDecoder(**seanet_kwargs) |
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quantizer = qt.ResidualVectorQuantizer(dimension=32, bins=400, n_q=4) |
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init_x = torch.randn(8, 32, 128) |
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quantizer(init_x, 1) |
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compression_model = EncodecModel( |
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encoder, decoder, quantizer, |
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frame_rate=25, sample_rate=32000, channels=1).to(device) |
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return compression_model.eval() |
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def get_debug_lm_model(device='cpu'): |
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"""Instantiate a debug LM to be used for unit tests. |
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""" |
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pattern = DelayedPatternProvider(n_q=4) |
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dim = 16 |
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providers = { |
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'description': LUTConditioner(n_bins=128, dim=dim, output_dim=dim, tokenizer="whitespace"), |
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} |
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condition_provider = ConditioningProvider(providers) |
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fuser = ConditionFuser( |
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{'cross': ['description'], 'prepend': [], |
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'sum': [], 'input_interpolate': []}) |
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lm = LMModel( |
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pattern, condition_provider, fuser, |
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n_q=4, card=400, dim=dim, num_heads=4, custom=True, num_layers=2, |
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cross_attention=True, causal=True) |
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return lm.to(device).eval() |
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