generate.py 18 KB

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  1. import os
  2. import time
  3. from pathlib import Path
  4. from typing import Optional, Tuple
  5. import click
  6. import numpy as np
  7. import torch
  8. import torch._dynamo.config
  9. import torch._inductor.config
  10. from hydra import compose, initialize
  11. from hydra.utils import instantiate
  12. from loguru import logger
  13. from tqdm import tqdm
  14. from transformers import AutoTokenizer
  15. from fish_speech.text.parser import clean_text
  16. os.environ["TOKENIZERS_PARALLELISM"] = "false"
  17. torch._inductor.config.coordinate_descent_tuning = True
  18. torch._inductor.config.triton.unique_kernel_names = True
  19. if hasattr(torch._inductor.config, "fx_graph_cache"):
  20. # Experimental feature to reduce compilation times, will be on by default in future
  21. torch._inductor.config.fx_graph_cache = True
  22. from fish_speech.models.text2semantic.llama import Transformer
  23. from fish_speech.text import g2p
  24. from fish_speech.text.symbols import pad as pad_symbol
  25. from fish_speech.text.symbols import pu_symbols
  26. def multinomial_sample_one_no_sync(
  27. probs_sort,
  28. ): # Does multinomial sampling without a cuda synchronization
  29. q = torch.empty_like(probs_sort).exponential_(1)
  30. return torch.argmax(probs_sort / q, dim=-1, keepdim=True).to(dtype=torch.int)
  31. def logits_to_probs(
  32. logits,
  33. previous_tokens: Optional[torch.Tensor] = None,
  34. temperature: float = 1.0,
  35. top_k: Optional[int] = None,
  36. top_p: Optional[int] = None,
  37. repetition_penalty: float = 1.0,
  38. ):
  39. if previous_tokens is not None and repetition_penalty != 1.0:
  40. previous_tokens = previous_tokens.long()
  41. score = torch.gather(logits, dim=0, index=previous_tokens)
  42. score = torch.where(
  43. score < 0, score * repetition_penalty, score / repetition_penalty
  44. )
  45. logits.scatter_(dim=0, index=previous_tokens, src=score)
  46. if top_p is not None and top_p < 1.0:
  47. sorted_logits, sorted_indices = torch.sort(logits, descending=True)
  48. cum_probs = torch.cumsum(
  49. torch.nn.functional.softmax(sorted_logits, dim=-1), dim=-1
  50. )
  51. sorted_indices_to_remove = cum_probs > top_p
  52. sorted_indices_to_remove[0] = False # keep at least one option
  53. indices_to_remove = sorted_indices_to_remove.scatter(
  54. dim=0, index=sorted_indices, src=sorted_indices_to_remove
  55. )
  56. logits = logits.masked_fill(indices_to_remove, -float("Inf"))
  57. logits = logits / max(temperature, 1e-5)
  58. if top_k is not None:
  59. v, _ = torch.topk(logits, min(top_k, logits.size(-1)))
  60. pivot = v.select(-1, -1).unsqueeze(-1)
  61. logits = torch.where(logits < pivot, -float("Inf"), logits)
  62. probs = torch.nn.functional.softmax(logits, dim=-1)
  63. return probs
  64. def sample(
  65. logits,
  66. previous_tokens: Optional[torch.Tensor] = None,
  67. **sampling_kwargs,
  68. ) -> Tuple[torch.Tensor, torch.Tensor]:
  69. probs = logits_to_probs(
  70. logits=logits[0, -1], previous_tokens=previous_tokens, **sampling_kwargs
  71. )
  72. idx_next = multinomial_sample_one_no_sync(probs)
  73. return idx_next, probs
  74. def decode_one_token(
  75. model: Transformer,
  76. x: torch.Tensor,
  77. input_pos: torch.Tensor,
  78. previous_tokens: torch.Tensor = None,
  79. **sampling_kwargs,
  80. ) -> torch.Tensor:
  81. assert input_pos.shape[-1] == 1
  82. x, logits = model.forward_generate_slow(x, input_pos)
  83. codebooks = [
  84. sample(
  85. logits,
  86. previous_tokens=None, # Disable repetition penalty for the token codebook
  87. **sampling_kwargs,
  88. )[0]
  89. ]
  90. # Cleanup the cache
  91. for layer in model.fast_layers:
  92. layer.attention.kv_cache.k_cache.fill_(0)
  93. layer.attention.kv_cache.v_cache.fill_(0)
  94. for codebook_idx in range(model.config.num_codebooks):
  95. input_pos = torch.tensor([codebook_idx], device=x.device, dtype=torch.long)
  96. logits = model.forward_generate_fast(x, input_pos)
  97. a = sample(
  98. logits,
  99. previous_tokens=(
  100. previous_tokens[codebook_idx + 1]
  101. if previous_tokens is not None
  102. else None
  103. ),
  104. **sampling_kwargs,
  105. )[0]
  106. x = model.fast_embeddings(a)
  107. codebooks.append(a)
  108. return torch.stack(codebooks, dim=0)
  109. def prefill(
  110. model: Transformer, x: torch.Tensor, input_pos: torch.Tensor, **sampling_kwargs
  111. ) -> torch.Tensor:
  112. # input_pos: [B, S]
  113. x, logits = model.forward_generate_slow(x, input_pos)
  114. print("---", x.shape, logits.shape)
  115. codebooks = [
  116. sample(
  117. logits,
  118. previous_tokens=None,
  119. **sampling_kwargs,
  120. )[0]
  121. ]
  122. # Cleanup the cache
  123. for layer in model.fast_layers:
  124. layer.attention.kv_cache.k_cache.fill_(0)
  125. layer.attention.kv_cache.v_cache.fill_(0)
  126. for codebook_idx in range(model.config.num_codebooks):
  127. input_pos = torch.tensor([codebook_idx], device=x.device, dtype=torch.long)
  128. logits = model.forward_generate_fast(x, input_pos)
  129. # print(x.shape, logits.shape)
  130. a = sample(
  131. logits,
  132. previous_tokens=None,
  133. **sampling_kwargs,
  134. )[0]
  135. x = model.fast_embeddings(a)
  136. codebooks.append(a)
  137. return torch.stack(codebooks, dim=0)
  138. def decode_n_tokens(
  139. model: Transformer,
  140. cur_token: torch.Tensor,
  141. input_pos: torch.Tensor,
  142. num_new_tokens: int,
  143. eos_token_id: int = 2,
  144. **sampling_kwargs,
  145. ):
  146. previous_tokens = torch.zeros(
  147. (model.config.num_codebooks + 1, model.config.max_seq_len),
  148. dtype=torch.int,
  149. device=cur_token.device,
  150. )
  151. for i in tqdm(range(num_new_tokens)):
  152. # We need to get windowed repeat penalty
  153. win_size = 16
  154. if i < win_size:
  155. window = previous_tokens[:, :win_size]
  156. else:
  157. window = previous_tokens[:, i - win_size : i]
  158. with torch.backends.cuda.sdp_kernel(
  159. enable_flash=False, enable_mem_efficient=False, enable_math=True
  160. ): # Actually better for Inductor to codegen attention here
  161. next_token = decode_one_token(
  162. model=model,
  163. x=cur_token,
  164. input_pos=input_pos,
  165. previous_tokens=window,
  166. **sampling_kwargs,
  167. )
  168. input_pos += 1
  169. cur_token = next_token.view(1, model.config.num_codebooks + 1, -1)
  170. previous_tokens[:, i : i + 1] = next_token.view(
  171. model.config.num_codebooks + 1, -1
  172. )
  173. # TODO: use tokenizer's eos
  174. if cur_token[0, 0, -1] == eos_token_id or (cur_token[0, 1:, -1] == 1).any():
  175. break
  176. return previous_tokens[:, : i + 1]
  177. @torch.no_grad()
  178. def generate(
  179. *,
  180. model: Transformer,
  181. prompt: torch.Tensor,
  182. max_new_tokens: int,
  183. eos_token_id: int = 2,
  184. precision: torch.dtype = torch.bfloat16,
  185. **sampling_kwargs,
  186. ) -> torch.Tensor:
  187. """
  188. Takes a conditioning sequence (prompt) as input and continues to generate as many tokens as requested.
  189. """
  190. # create an empty tensor of the expected final shape and fill in the current tokens
  191. T = prompt.size(1)
  192. if max_new_tokens:
  193. if T + max_new_tokens > model.config.max_seq_len:
  194. max_new_tokens = model.config.max_seq_len - T
  195. logger.info(f"Truncating max_new_tokens to {max_new_tokens}")
  196. T_new = T + max_new_tokens
  197. else:
  198. T_new = model.config.max_seq_len
  199. max_new_tokens = T_new - T
  200. device, dtype = prompt.device, prompt.dtype
  201. with torch.device(device):
  202. model.setup_caches(max_batch_size=1, max_seq_len=T_new, dtype=precision)
  203. codebook_dim = 1 + model.config.num_codebooks
  204. # create an empty tensor of the expected final shape and fill in the current tokens
  205. empty = torch.empty((codebook_dim, T_new), dtype=dtype, device=device)
  206. empty[:, :T] = prompt
  207. seq = empty
  208. input_pos = torch.arange(0, T, device=device)
  209. next_token = prefill(
  210. model, prompt.view(1, codebook_dim, -1), input_pos, **sampling_kwargs
  211. )
  212. seq[:, T : T + 1] = next_token
  213. input_pos = torch.tensor([T], device=device, dtype=torch.int)
  214. x = decode_n_tokens(
  215. model,
  216. next_token.view(1, codebook_dim, -1),
  217. input_pos,
  218. max_new_tokens - 1,
  219. eos_token_id=eos_token_id,
  220. **sampling_kwargs,
  221. )
  222. # x = torch.cat(generated_tokens, dim=1)
  223. seq = seq[:, : T + 1 + x.size(1)]
  224. seq[:, T + 1 :] = x
  225. return seq
  226. def encode_tokens(
  227. tokenizer,
  228. string,
  229. bos=True,
  230. device="cuda",
  231. prompt_tokens=None,
  232. use_g2p=False,
  233. speaker=None,
  234. order="zh,jp,en",
  235. num_codebooks=4,
  236. ):
  237. if use_g2p:
  238. order = order.split(",")
  239. prompt = g2p(string, order=order)
  240. prompt = [
  241. (f"<p:{i}>" if i not in pu_symbols and i != pad_symbol else i)
  242. for _, i in prompt
  243. ]
  244. string = " ".join(prompt)
  245. else:
  246. string = clean_text(string)
  247. if speaker is not None:
  248. string = f"[SPK: {speaker}] {string}"
  249. string = f"[INST] {string} [/INST]"
  250. # Handle English less frequent words
  251. # TODO: update tokenizer to handle this
  252. # sub_strings = string.split(" ")
  253. # new_tokens = []
  254. # for i, string in enumerate(sub_strings):
  255. # tokens = tokenizer.encode(
  256. # string,
  257. # add_special_tokens=i == 0 and bos,
  258. # max_length=10**6,
  259. # truncation=False,
  260. # )
  261. # new_tokens.extend(tokens)
  262. new_tokens = tokenizer.encode(
  263. string,
  264. add_special_tokens=bos,
  265. max_length=10**6,
  266. truncation=False,
  267. )
  268. tokens = torch.tensor([new_tokens], dtype=torch.int, device=device)
  269. # Codebooks
  270. zeros = torch.zeros((num_codebooks, tokens.size(1)), dtype=torch.int, device=device)
  271. prompt = torch.cat((tokens, zeros), dim=0)
  272. if prompt_tokens is None:
  273. return prompt
  274. # Get prompt tokens
  275. if prompt_tokens.ndim == 3:
  276. assert (
  277. prompt_tokens.shape[0] == 1
  278. ), f"3 dim prompt tokens should have shape (1, num_codebooks, seq_len)"
  279. prompt_tokens = prompt_tokens[0]
  280. assert prompt_tokens.ndim == 2
  281. data = prompt_tokens + 2
  282. if prompt_tokens.shape[0] > num_codebooks:
  283. logger.warning(
  284. f"Prompt tokens shape {prompt_tokens.shape} is larger than num_codebooks {num_codebooks}, getting first {num_codebooks} codebooks"
  285. )
  286. data = data[:num_codebooks]
  287. # Since 1.0, we use <s:xxx> to replace <semantic>
  288. main_token_ids = torch.tensor(
  289. # TODO: replace this
  290. [[tokenizer.pad_token_id] * data.size(1)],
  291. dtype=torch.int,
  292. device=device,
  293. )
  294. data = torch.cat((main_token_ids, data), dim=0)
  295. prompt = torch.cat((prompt, data), dim=1)
  296. return prompt
  297. def load_model(config_name, checkpoint_path, device, precision):
  298. with initialize(version_base="1.3", config_path="../../fish_speech/configs"):
  299. cfg = compose(config_name=config_name)
  300. model: Transformer = instantiate(cfg.model).model
  301. if "int8" in str(checkpoint_path):
  302. logger.info("Using int8 weight-only quantization!")
  303. from quantize import WeightOnlyInt8QuantHandler
  304. simple_quantizer = WeightOnlyInt8QuantHandler(model)
  305. model = simple_quantizer.convert_for_runtime()
  306. if "int4" in str(checkpoint_path):
  307. logger.info("Using int4 quantization!")
  308. path_comps = checkpoint_path.name.split(".")
  309. assert path_comps[-2].startswith("g")
  310. groupsize = int(path_comps[-2][1:])
  311. from quantize import WeightOnlyInt4QuantHandler
  312. simple_quantizer = WeightOnlyInt4QuantHandler(model, groupsize)
  313. model = simple_quantizer.convert_for_runtime()
  314. checkpoint = torch.load(str(checkpoint_path), map_location="cpu")
  315. if "state_dict" in checkpoint:
  316. checkpoint = checkpoint["state_dict"]
  317. if any(k.startswith("model.") for k in checkpoint):
  318. checkpoint = {
  319. k.replace("model.", ""): v
  320. for k, v in checkpoint.items()
  321. if k.startswith("model.")
  322. }
  323. model.load_state_dict(checkpoint, assign=True)
  324. model = model.to(device=device, dtype=precision)
  325. logger.info("Restored model from checkpoint")
  326. return model.eval(), cfg
  327. def split_text(text, min_length):
  328. text = clean_text(text)
  329. segments = []
  330. curr = ""
  331. for char in text:
  332. curr += char
  333. if char not in [".", ",", "!", "?"]:
  334. continue
  335. if len(curr) >= min_length:
  336. segments.append(curr)
  337. curr = ""
  338. if curr:
  339. segments.append(curr)
  340. return segments
  341. @click.command()
  342. @click.option("--text", type=str, default="你说的对, 但是原神是一款由米哈游自主研发的开放世界手游.")
  343. @click.option("--prompt-text", type=str, default=None)
  344. @click.option(
  345. "--prompt-tokens", type=click.Path(path_type=Path, exists=True), default=None
  346. )
  347. @click.option("--num-samples", type=int, default=1)
  348. @click.option("--max-new-tokens", type=int, default=0)
  349. @click.option("--top-k", type=int, default=None)
  350. @click.option("--top-p", type=float, default=0.5)
  351. @click.option("--repetition-penalty", type=float, default=1.2)
  352. @click.option("--temperature", type=float, default=0.7)
  353. @click.option(
  354. "--checkpoint-path",
  355. type=click.Path(path_type=Path, exists=True),
  356. default="results/text2semantic_400m_finetune/step_000002000.pth",
  357. )
  358. @click.option("--config-name", type=str, default="text2semantic_finetune")
  359. @click.option("--tokenizer", type=str, default="fishaudio/speech-lm-v1")
  360. @click.option("--compile/--no-compile", default=False)
  361. @click.option("--use-g2p/--no-g2p", default=True)
  362. @click.option("--seed", type=int, default=42)
  363. @click.option("--speaker", type=str, default=None)
  364. @click.option("--order", type=str, default="zh,jp,en")
  365. @click.option("--half/--no-half", default=False)
  366. @click.option("--iterative-prompt/--no-iterative-prompt", default=False)
  367. def main(
  368. text: str,
  369. prompt_text: Optional[str],
  370. prompt_tokens: Optional[Path],
  371. num_samples: int,
  372. max_new_tokens: int,
  373. top_k: int,
  374. top_p: int,
  375. repetition_penalty: float,
  376. temperature: float,
  377. checkpoint_path: Path,
  378. config_name: str,
  379. tokenizer: str,
  380. compile: bool,
  381. use_g2p: bool,
  382. seed: int,
  383. speaker: Optional[str],
  384. order: str,
  385. half: bool,
  386. iterative_prompt: bool,
  387. ) -> None:
  388. device = "cuda"
  389. precision = torch.half if half else torch.bfloat16
  390. logger.info("Loading model ...")
  391. t0 = time.time()
  392. model, cfg = load_model(config_name, checkpoint_path, device, precision)
  393. model_size = sum(p.numel() for p in model.parameters() if p.requires_grad)
  394. torch.cuda.synchronize()
  395. logger.info(f"Time to load model: {time.time() - t0:.02f} seconds")
  396. tokenizer = AutoTokenizer.from_pretrained(tokenizer)
  397. prompt_tokens = (
  398. torch.from_numpy(np.load(prompt_tokens)).to(device)
  399. if prompt_tokens is not None
  400. else None
  401. )
  402. use_prompt = prompt_text is not None and prompt_tokens is not None
  403. encoded = []
  404. texts = split_text(text, 20) if iterative_prompt else [text]
  405. for idx, text in enumerate(texts):
  406. encoded.append(
  407. encode_tokens(
  408. tokenizer,
  409. string=text,
  410. bos=idx == 0 and not use_prompt,
  411. device=device,
  412. use_g2p=use_g2p,
  413. speaker=None,
  414. order=order,
  415. num_codebooks=model.config.num_codebooks,
  416. )
  417. )
  418. print(f"Encoded text: {text}")
  419. if use_prompt and iterative_prompt:
  420. encoded_prompt = encode_tokens(
  421. tokenizer,
  422. prompt_text,
  423. prompt_tokens=prompt_tokens,
  424. bos=True,
  425. device=device,
  426. use_g2p=use_g2p,
  427. speaker=speaker,
  428. order=order,
  429. num_codebooks=model.config.num_codebooks,
  430. )
  431. encoded[0] = torch.cat((encoded_prompt, encoded[0]), dim=1)
  432. # prompt_length = encoded.size(1)
  433. # logger.info(f"Encoded prompt shape: {encoded.shape}")
  434. torch.manual_seed(seed)
  435. torch.cuda.manual_seed(seed)
  436. if compile:
  437. global decode_one_token
  438. decode_one_token = torch.compile(
  439. decode_one_token, mode="reduce-overhead", fullgraph=True
  440. )
  441. for idx in range(num_samples):
  442. torch.cuda.synchronize()
  443. global_encoded = []
  444. all_codes = []
  445. seg_idx = 0
  446. while seg_idx < len(encoded):
  447. seg = encoded[seg_idx]
  448. global_encoded.append(seg)
  449. cat_encoded = torch.cat(global_encoded, dim=1)
  450. prompt_length = cat_encoded.size(1)
  451. t0 = time.perf_counter()
  452. y = generate(
  453. model=model,
  454. prompt=cat_encoded,
  455. max_new_tokens=max_new_tokens,
  456. eos_token_id=tokenizer.eos_token_id,
  457. precision=precision,
  458. temperature=temperature,
  459. top_k=top_k,
  460. top_p=top_p,
  461. repetition_penalty=repetition_penalty,
  462. )
  463. if idx == 0 and compile:
  464. logger.info(f"Compilation time: {time.perf_counter() - t0:.2f} seconds")
  465. torch.cuda.synchronize()
  466. t = time.perf_counter() - t0
  467. tokens_generated = y.size(1) - prompt_length
  468. tokens_sec = tokens_generated / t
  469. logger.info(
  470. f"Generated {tokens_generated} tokens in {t:.02f} seconds, {tokens_sec:.02f} tokens/sec"
  471. )
  472. logger.info(
  473. f"Bandwidth achieved: {model_size * tokens_sec / 1e9:.02f} GB/s"
  474. )
  475. logger.info(
  476. f"GPU Memory used: {torch.cuda.max_memory_reserved() / 1e9:.02f} GB"
  477. )
  478. # Put the generated tokens
  479. codes = y[1:, prompt_length:-1].clone()
  480. # if getattr(cfg, "use_delay_pattern", True):
  481. # new_codes = []
  482. # for j, code in enumerate(codes):
  483. # new_codes.append(
  484. # code[j : codes.shape[1] - (model.config.num_codebooks - j - 1)]
  485. # )
  486. # codes = torch.stack(new_codes, dim=0)
  487. codes = codes - 2
  488. if not (codes >= 0).all():
  489. global_encoded.pop()
  490. logger.warning(f"Negative code found: {codes}, retrying ...")
  491. continue
  492. global_encoded.append(y[:, prompt_length:-1].clone())
  493. all_codes.append(codes)
  494. seg_idx += 1
  495. codes = torch.cat(all_codes, dim=1)
  496. assert (codes >= 0).all(), f"Negative code found: {codes}"
  497. print(codes)
  498. np.save(f"codes_{idx}.npy", codes.cpu().numpy())
  499. logger.info(f"Saved codes to codes_{idx}.npy")
  500. if __name__ == "__main__":
  501. main()