| import json |
| import numpy as np |
| import einops |
|
|
|
|
| class CodecManipulator(object): |
| r""" |
| **mm tokenizer v0.1** |
| see codeclm/hf/mm_tokenizer_v0.1_hf/id2vocab.json |
| |
| text tokens: |
| llama tokenizer 0~31999 |
| |
| special tokens: "32000": "<EOD>", "32001": "<SOA>", "32002": "<EOA>", "32003": "<SOI>", "32004": "<EOI>", "32005": "<SOV>", "32006": "<EOV>", "32007": "<s_local>", "32008": "<e_local>", "32009": "<s_global>", "32010": "<e_global>", "32011": "<semantic>", "32012": "<acoustic>", "32013": "<low_level>", "32014": "<dac_16k>", "32015": "<dac_44k>", "32016": "<xcodec>", "32017": "<placeholder>", "32018": "<semantic_mert>", "32019": "<semantic_hubert>", "32020": "<visual>", "32021": "<semanticodec>" |
| |
| mm tokens: |
| dac_16k: 4 codebook, 1024 vocab, 32022 - 36117 |
| dac_44k: 9 codebook, 1024 vocab, 36118 - 45333 |
| xcodec: 12 codebook, 1024 vocab, 45334 - 57621 |
| semantic mert: 1024, 57622 - 58645 |
| semantic hubert: 512, 58646 - 59157 |
| visual: 64000, not included in v0.1 |
| semanticodec 100tps 16384: semantic=16384, 59158 - 75541, acoustic=8192, 75542 - 83733 |
| """ |
| def __init__(self, codec_type, quantizer_begin=None, n_quantizer=None, teacher_forcing=False, data_feature="codec"): |
| self.codec_type = codec_type |
| self.mm_v0_2_cfg = { |
| "dac16k": {"codebook_size": 1024, "num_codebooks": 4, "global_offset": 32022, "sep": ["<dac_16k>"], "fps": 50}, |
| "dac44k": {"codebook_size": 1024, "num_codebooks": 9, "global_offset": 36118, "sep": ["<dac_44k>"]}, |
| "xcodec": {"codebook_size": 1024, "num_codebooks": 12, "global_offset": 45334, "sep": ["<xcodec>"], "fps": 50}, |
| "mert": {"codebook_size": 1024, "global_offset": 57622, "sep": ["<semantic_mert>"]}, |
| "hubert": {"codebook_size": 512, "global_offset": 58646, "sep": ["<semantic_hubert>"]}, |
| "semantic/s": {"codebook_size": 16384, "num_codebooks": 1, "global_offset": 59158, "sep": ["<semanticodec>", "<semantic>"]}, |
| "semantic/a": {"codebook_size": 8192, "num_codebooks": 1, "global_offset": 75542, "sep": ["<semanticodec>", "<acoustic>"]}, |
| "semanticodec": {"codebook_size": [16384, 8192], "num_codebooks": 2, "global_offset": 59158, "sep": ["<semanticodec>"], "fps": 50}, |
| "special_tokens": { |
| '<EOD>': 32000, '<SOA>': 32001, '<EOA>': 32002, '<SOI>': 32003, '<EOI>': 32004, '<SOV>': 32005, '<EOV>': 32006, '<s_local>': 32007, '<e_local>': 32008, '<s_global>': 32009, '<e_global>': 32010, '<semantic>': 32011, '<acoustic>': 32012, '<stage_1>': 32013, '<dac_16k>': 32014, '<dac_44k>': 32015, '<xcodec>': 32016, '<stage_2>': 32017, '<semantic_mert>': 32018, '<semantic_hubert>': 32019, '<visual>': 32020, '<semanticodec>': 32021 |
| }, |
| "metadata": { |
| "len": 83734, |
| "text_range": [0, 31999], |
| "special_range": [32000, 32021], |
| "mm_range": [32022, 83733] |
| }, |
| "codec_range": { |
| "dac16k": [32022, 36117], |
| "dac44k": [36118, 45333], |
| "xcodec": [45334, 57621], |
| |
| "mert": [57622, 58645], |
| "hubert": [58646, 59157], |
| "semantic/s": [59158, 75541], |
| "semantic/a": [75542, 83733], |
| "semanticodec": [59158, 83733] |
| } |
| } |
| self.sep = self.mm_v0_2_cfg[self.codec_type]["sep"] |
| self.sep_ids = [self.mm_v0_2_cfg["special_tokens"][s] for s in self.sep] |
| self.codebook_size = self.mm_v0_2_cfg[self.codec_type]["codebook_size"] |
| self.num_codebooks = self.mm_v0_2_cfg[self.codec_type]["num_codebooks"] |
| self.global_offset = self.mm_v0_2_cfg[self.codec_type]["global_offset"] |
| self.fps = self.mm_v0_2_cfg[self.codec_type]["fps"] if "fps" in self.mm_v0_2_cfg[self.codec_type] else None |
|
|
| self.quantizer_begin = quantizer_begin if quantizer_begin is not None else 0 |
| self.n_quantizer = n_quantizer if n_quantizer is not None else self.num_codebooks |
| self.teacher_forcing = teacher_forcing |
| self.data_feature = data_feature |
|
|
|
|
| def offset_tok_ids(self, x, global_offset=0, codebook_size=2048, num_codebooks=4): |
| """ |
| x: (K, T) |
| """ |
| if isinstance(codebook_size, int): |
| assert x.max() < codebook_size, f"max(x)={x.max()}, codebook_size={codebook_size}" |
| elif isinstance(codebook_size, list): |
| for i, cs in enumerate(codebook_size): |
| assert x[i].max() < cs, f"max(x)={x[i].max()}, codebook_size={cs}, layer_id={i}" |
| else: |
| raise ValueError(f"codebook_size={codebook_size}") |
| assert x.min() >= 0, f"min(x)={x.min()}" |
| assert x.shape[0] == num_codebooks or x.shape[0] == self.n_quantizer, \ |
| f"x.shape[0]={x.shape[0]}, num_codebooks={num_codebooks}, n_quantizer={self.n_quantizer}" |
|
|
| _x = x.copy() |
| _x = _x.astype(np.uint32) |
| cum_offset = 0 |
| quantizer_begin = self.quantizer_begin |
| quantizer_end = quantizer_begin+self.n_quantizer |
| for k in range(self.quantizer_begin, quantizer_end): |
| if isinstance(codebook_size, int): |
| _x[k] += global_offset + k * codebook_size |
| elif isinstance(codebook_size, list): |
| _x[k] += global_offset + cum_offset |
| cum_offset += codebook_size[k] |
| else: |
| raise ValueError(f"codebook_size={codebook_size}") |
| return _x[quantizer_begin:quantizer_end] |
|
|
| def unoffset_tok_ids(self, x, global_offset=0, codebook_size=2048, num_codebooks=4): |
| """ |
| x: (K, T) |
| """ |
| if isinstance(codebook_size, int): |
| assert x.max() < global_offset + codebook_size * num_codebooks, f"max(x)={x.max()}, codebook_size={codebook_size}" |
| elif isinstance(codebook_size, list): |
| assert x.max() < global_offset + sum(codebook_size), f"max(x)={x.max()}, codebook_size={codebook_size}" |
| assert x.min() >= global_offset, f"min(x)={x.min()}, global_offset={global_offset}" |
| assert x.shape[0] == num_codebooks or x.shape[0] == self.n_quantizer, \ |
| f"x.shape[0]={x.shape[0]}, num_codebooks={num_codebooks}, n_quantizer={self.n_quantizer}" |
| |
| _x = x.copy() |
| _x = _x.astype(np.uint32) |
| cum_offset = 0 |
| quantizer_begin = self.quantizer_begin |
| quantizer_end = quantizer_begin+self.n_quantizer |
| for k in range(quantizer_begin, quantizer_end): |
| if isinstance(codebook_size, int): |
| _x[k-quantizer_begin] -= global_offset + k * codebook_size |
| elif isinstance(codebook_size, list): |
| _x[k-quantizer_begin] -= global_offset + cum_offset |
| cum_offset += codebook_size[k] |
| else: |
| raise ValueError(f"codebook_size={codebook_size}") |
| return _x |
|
|
| def flatten(self, x): |
| if len(x.shape) > 2: |
| x = x.squeeze() |
| assert x.shape[0] == self.num_codebooks or x.shape[0] == self.n_quantizer, \ |
| f"x.shape[0]={x.shape[0]}, num_codebooks={self.num_codebooks}, n_quantizer={self.n_quantizer}" |
| return einops.rearrange(x, 'K T -> (T K)') |
|
|
| def unflatten(self, x, n_quantizer=None): |
| x = x.squeeze() |
| assert len(x.shape) == 1 |
| assert x.shape[0] % self.num_codebooks == 0 or x.shape[0] % self.n_quantizer == 0, \ |
| f"x.shape[0]={x.shape[0]}, num_codebooks={self.num_codebooks}, n_quantizer={self.n_quantizer}" |
| if n_quantizer!=self.num_codebooks: |
| return einops.rearrange(x, '(T K) -> K T', K=n_quantizer) |
| return einops.rearrange(x, '(T K) -> K T', K=self.num_codebooks) |
| |
| |
| |
| |
| |
| def get_codec_type_from_range(self, ids): |
| ids_range = [ids.min(), ids.max()] |
| codec_range = self.mm_v0_2_cfg["codec_range"] |
| for codec_type, r in codec_range.items(): |
| if ids_range[0] >= r[0] and ids_range[1] <= r[1]: |
| return codec_type |
| raise ValueError(f"ids_range={ids_range}, codec_range={codec_range}") |
|
|
| def npy2ids(self, npy): |
| if isinstance(npy, str): |
| data = np.load(npy) |
| elif isinstance(npy, np.ndarray): |
| data = npy |
| else: |
| raise ValueError(f"not supported type: {type(npy)}") |
| |
|
|
| assert len(data.shape)==2, f'data shape: {data.shape} is not (n_codebook, seq_len)' |
| data = self.offset_tok_ids( |
| data, |
| global_offset=self.global_offset, |
| codebook_size=self.codebook_size, |
| num_codebooks=self.num_codebooks, |
| ) |
| data = self.flatten(data) |
| codec_range = self.get_codec_type_from_range(data) |
| assert codec_range == self.codec_type, f"get_codec_type_from_range(data)={codec_range}, self.codec_type={self.codec_type}" |
| data = data.tolist() |
| return data |
| |
| def ids2npy(self, token_ids): |
| |
| if isinstance(self.codebook_size, int): |
| codebook_0_range = (self.global_offset + self.quantizer_begin*self.codebook_size, self.global_offset + (self.quantizer_begin+1)*self.codebook_size) |
| elif isinstance(self.codebook_size, list): |
| codebook_0_range = (self.global_offset, self.global_offset + self.codebook_size[0]) |
| assert token_ids[0] >= codebook_0_range[0] \ |
| and token_ids[0] < codebook_0_range[1], f"token_ids[0]={token_ids[self.quantizer_begin]}, codebook_0_range={codebook_0_range}" |
| data = np.array(token_ids) |
| data = self.unflatten(data, n_quantizer=self.n_quantizer) |
| data = self.unoffset_tok_ids( |
| data, |
| global_offset=self.global_offset, |
| codebook_size=self.codebook_size, |
| num_codebooks=self.num_codebooks, |
| ) |
| return data |
|
|
| def npy_to_json_str(self, npy_path): |
| data = self.npy2ids(npy_path) |
| return json.dumps({"text": data, "src": npy_path, "codec": self.codec_type}) |
| |
| def sep(self): |
| return ''.join(self.sep) |
| |
| def sep_ids(self): |
| return self.sep_ids |
|
|