mirror of
https://github.com/ggerganov/llama.cpp.git
synced 2024-12-27 11:54:35 +00:00
181 lines
5.5 KiB
Python
181 lines
5.5 KiB
Python
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# convert the https://huggingface.co/novateur/WavTokenizer-large-speech-75token to HF format
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# the goal is to be able to reuse the convert_hf_to_gguf.py after that to create a GGUF file with the WavTokenizer decoder
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#
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# TODO: this script is LLM-generated and probably very inefficient and should be rewritten
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import torch
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import json
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import os
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import sys
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import re
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from safetensors.torch import save_file
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# default
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model_path = './model.pt';
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# read from CLI
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if len(sys.argv) > 1:
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model_path = sys.argv[1]
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# get the directory of the input model
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path_dst = os.path.dirname(model_path)
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print(f"Loading model from {model_path}")
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model = torch.load(model_path, map_location='cpu')
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#print(model)
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# print all keys
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for key in model.keys():
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print(key)
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if key == 'hyper_parameters':
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#print(model[key])
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# dump as json pretty
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print(json.dumps(model[key], indent=4))
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#if key != 'state_dict' and key != 'optimizer_states':
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# print(model[key])
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# Check if the loaded model is a state_dict or a model instance
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if isinstance(model, torch.nn.Module):
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state_dict = model.state_dict()
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else:
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state_dict = model
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# Print the structure of the state_dict to understand its format
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print("State dictionary keys:")
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for key in state_dict.keys():
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print(key)
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# Ensure the state_dict is flat and contains only torch.Tensor objects
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def flatten_state_dict(state_dict, parent_key='', sep='.'):
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items = []
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items_new = []
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for k, v in state_dict.items():
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new_key = f"{parent_key}{sep}{k}" if parent_key else k
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if isinstance(v, torch.Tensor):
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items.append((new_key, v))
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elif isinstance(v, dict):
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items.extend(flatten_state_dict(v, new_key, sep=sep).items())
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return dict(items)
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size_total_mb = 0
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for key, value in list(items):
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# keep only what we need for inference
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if not key.startswith('state_dict.feature_extractor.encodec.quantizer.') and \
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not key.startswith('state_dict.backbone.') and \
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not key.startswith('state_dict.head.out'):
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print('Skipping key: ', key)
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continue
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new_key = key
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new_key = new_key.replace('state_dict.', '')
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new_key = new_key.replace('pos_net', 'posnet')
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# check if matches "backbone.posnet.%d.bias" or "backbone.posnet.%d.weight"
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if new_key.startswith("backbone.posnet."):
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match = re.match(r"backbone\.posnet\.(\d+)\.(bias|weight)", new_key)
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if match:
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new_key = f"backbone.posnet.{match.group(1)}.norm.{match.group(2)}"
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# "feature_extractor.encodec.quantizer.vq.layers.0._codebook.embed" -> "backbone.embedding.weight"
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if new_key == "feature_extractor.encodec.quantizer.vq.layers.0._codebook.embed":
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new_key = "backbone.embedding.weight"
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# these are the only rows used
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# ref: https://github.com/edwko/OuteTTS/blob/a613e79c489d8256dd657ea9168d78de75895d82/outetts/wav_tokenizer/audio_codec.py#L100
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if new_key.endswith("norm.scale.weight"):
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new_key = new_key.replace("norm.scale.weight", "norm.weight")
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value = value[0]
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if new_key.endswith("norm.shift.weight"):
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new_key = new_key.replace("norm.shift.weight", "norm.bias")
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value = value[0]
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if new_key.endswith("gamma"):
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new_key = new_key.replace("gamma", "gamma.weight")
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# convert from 1D [768] to 2D [768, 1] so that ggml_add can broadcast the bias
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if (new_key.endswith("norm.weight") or new_key.endswith("norm1.weight") or new_key.endswith("norm2.weight") or new_key.endswith(".bias")) and (new_key.startswith("backbone.posnet") or new_key.startswith("backbone.embed.bias")):
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value = value.unsqueeze(1)
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if new_key.endswith("dwconv.bias"):
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value = value.unsqueeze(1)
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size_mb = value.element_size() * value.nelement() / (1024 * 1024)
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print(f"{size_mb:8.2f} MB - {new_key}: {value.shape}")
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size_total_mb += size_mb
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#print(key, '->', new_key, ': ', value)
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#print(key, '->', new_key)
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items_new.append((new_key, value))
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print(f"Total size: {size_total_mb:8.2f} MB")
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return dict(items_new)
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flattened_state_dict = flatten_state_dict(state_dict)
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# Convert the model to the safetensors format
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output_path = path_dst + '/model.safetensors'
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save_file(flattened_state_dict, output_path)
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print(f"Model has been successfully converted and saved to {output_path}")
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# Calculate the total size of the .safetensors file
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total_size = os.path.getsize(output_path)
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# Create the weight map
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weight_map = {
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"model.safetensors": ["*"] # Assuming all weights are in one file
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}
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# Create metadata for the index.json file
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metadata = {
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"total_size": total_size,
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"weight_map": weight_map
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}
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# Save the metadata to index.json
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index_path = path_dst + '/index.json'
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with open(index_path, 'w') as f:
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json.dump(metadata, f, indent=4)
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print(f"Metadata has been saved to {index_path}")
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config = {
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"architectures": [
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"WavTokenizerDec"
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],
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"hidden_size": 1282,
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"n_embd_features": 512,
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"n_ff": 2304,
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"vocab_size": 4096,
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"n_head": 1,
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"layer_norm_epsilon": 1e-6,
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"group_norm_epsilon": 1e-6,
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"group_norm_groups": 32,
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"max_position_embeddings": 8192, # ?
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"n_layer": 12,
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"posnet": {
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"n_embd": 768,
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"n_layer": 6
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},
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"convnext": {
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"n_embd": 768,
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"n_layer": 12
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},
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}
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with open(path_dst + '/config.json', 'w') as f:
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json.dump(config, f, indent=4)
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print(f"Config has been saved to {path_dst + 'config.json'}")
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