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| import re |
| import numpy as np |
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| from onnxruntime import InferenceSession, SessionOptions |
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| providers = ["CPUExecutionProvider"] |
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| tokenizer_path = "chatglm-6b-int8-onnx-merged/sentencepiece.model" |
| onnx_model_path = "chatglm-6b-int8-onnx-merged/chatglm-6b-int8.onnx" |
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| past_names = [f"past_{name}_{i}" for i in range(28) for name in ["key", "value"]] |
| present_names = [f"present_{name}_{i}" for i in range(28) for name in ["key", "value"]] |
| output_names = ["logits"] + present_names |
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| default_past_key_values = { |
| k: np.zeros((1, 0, 32, 128), dtype=np.float32) for k in past_names |
| } |
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| def chat_template(history: list[tuple[str, str]], current: str): |
| prompt = "" |
| chat_round = 0 |
| for question, answer in history: |
| prompt += f"[Round {chat_round}]\n问:{question}\n答:{answer}\n" |
| chat_round += 1 |
| prompt += f"[Round {chat_round}]\n问:{current}\n答:" |
| return prompt |
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| def process_response(response: str): |
| response = response.strip() |
| response = response.replace("[[训练时间]]", "2023年") |
| punkts = [ |
| [",", ","], |
| ["!", "!"], |
| [":", ":"], |
| [";", ";"], |
| ["\?", "?"], |
| ] |
| for item in punkts: |
| response = re.sub(r"([\u4e00-\u9fff])%s" % item[0], r"\1%s" % item[1], response) |
| response = re.sub(r"%s([\u4e00-\u9fff])" % item[0], r"%s\1" % item[1], response) |
| return response |
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| class ChatGLMModel(): |
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| def __init__(self, onnx_model_path=onnx_model_path, tokenizer_path=tokenizer_path, profile=False) -> None: |
| self.tokenizer = ChatGLMTokenizer(tokenizer_path) |
| options = SessionOptions() |
| options.enable_profiling = profile |
| self.session = InferenceSession(onnx_model_path, options, providers=providers) |
| self.eop_token_id = self.tokenizer["<eop>"] |
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| def prepare_input(self, prompt: str): |
| input_ids, prefix_mask = self.tokenizer.encode(prompt) |
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| input_ids = np.array([input_ids], dtype=np.longlong) |
| prefix_mask = np.array([prefix_mask], dtype=np.longlong) |
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| return input_ids, prefix_mask, default_past_key_values |
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| def sample_next_token(self, logits: np.ndarray, top_k=50, top_p=0.7, temperature=1): |
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| exp_logits = np.exp(logits / temperature) |
| probs = exp_logits / np.sum(exp_logits) |
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| top_k_idx = np.argsort(-probs)[:top_k] |
| top_k_probs = probs[top_k_idx] |
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| cumsum_probs = np.cumsum(top_k_probs) |
| top_k_probs[(cumsum_probs - top_k_probs) > top_p] = 0.0 |
| top_k_probs = top_k_probs / np.sum(top_k_probs) |
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| next_token = np.random.choice(top_k_idx, size=1, p=top_k_probs) |
| return next_token[0].item() |
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| def generate_iterate(self, prompt: str, max_generated_tokens=100, top_k=50, top_p=0.7, temperature=1): |
| input_ids, prefix_mask, past_key_values = self.prepare_input(prompt) |
| output_tokens = [] |
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| while True: |
| inputs = { |
| "input_ids": input_ids, |
| "prefix_mask": prefix_mask, |
| "use_past": np.array(len(output_tokens) > 0), |
| } |
| inputs.update(past_key_values) |
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| logits, *past_key_values = self.session.run(output_names, inputs) |
| past_key_values = { k: v for k, v in zip(past_names, past_key_values) } |
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| next_token = self.sample_next_token(logits[0, -1], top_k=top_k, top_p=top_p, temperature=temperature) |
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| output_tokens += [next_token] |
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| if next_token == self.eop_token_id or len(output_tokens) > max_generated_tokens: |
| break |
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| input_ids = np.array([[next_token]], dtype=np.longlong) |
| prefix_mask = np.concatenate([prefix_mask, np.array([[0]], dtype=np.longlong)], axis=1) |
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| yield process_response(self.tokenizer.decode(output_tokens)) |
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| return process_response(self.tokenizer.decode(output_tokens)) |
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| import re |
| from sentencepiece import SentencePieceProcessor |
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| def replace_spaces_with_blank(match: re.Match[str]): |
| return f"<|blank_{len(match.group())}|>" |
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| def replace_blank_with_spaces(match: re.Match[str]): |
| return " " * int(match.group(1)) |
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| class ChatGLMTokenizer: |
| def __init__(self, vocab_file): |
| assert vocab_file is not None |
| self.vocab_file = vocab_file |
| self.special_tokens = ["[MASK]", "[gMASK]", "[sMASK]", "<unused_0>", "<sop>", "<eop>", "<ENC>", "<dBLOCK>"] |
| self.text_tokenizer = SentencePieceProcessor(str(vocab_file)) |
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| def __len__(self): |
| return len(self.text_tokenizer) |
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| def __getitem__(self, key: str): |
| return self.text_tokenizer[key] |
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| def preprocess(self, text: str, linebreak=True, whitespaces=True): |
| if linebreak: |
| text = text.replace("\n", "<n>") |
| if whitespaces: |
| text = text.replace("\t", "<|tab|>") |
| text = re.sub(r" {2,80}", replace_spaces_with_blank, text) |
| return text |
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| def encode( |
| self, text: str, text_pair: str = None, |
| linebreak=True, whitespaces=True, |
| add_dummy_prefix=True, special_tokens=True, |
| ) -> tuple[list[int], list[int]]: |
| """ |
| text: Text to encode. Bidirectional part with a [gMASK] and an <sop> for causal LM. |
| text_pair: causal LM part. |
| linebreak: Whether to encode newline (\n) in text. |
| whitespaces: Whether to encode multiple whitespaces or tab in text, useful for source code encoding. |
| special_tokens: Whether to encode special token ([MASK], [gMASK], etc.) in text. |
| add_dummy_prefix: Whether to add dummy blank space in the beginning. |
| """ |
| text = self.preprocess(text, linebreak, whitespaces) |
| if not add_dummy_prefix: |
| text = "<n>" + text |
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| tokens = self.text_tokenizer.encode(text) |
| prefix_mask = [1] * len(tokens) |
| if special_tokens: |
| tokens += [self.text_tokenizer["[gMASK]"], self.text_tokenizer["<sop>"]] |
| prefix_mask += [1, 0] |
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| if text_pair is not None: |
| text_pair = self.preprocess(text_pair, linebreak, whitespaces) |
| pair_tokens = self.text_tokenizer.encode(text_pair) |
| tokens += pair_tokens |
| prefix_mask += [0] * len(pair_tokens) |
| if special_tokens: |
| tokens += [self.text_tokenizer["<eop>"]] |
| prefix_mask += [0] |
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| return (tokens if add_dummy_prefix else tokens[2:]), prefix_mask |
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| def decode(self, text_ids: list[int]) -> str: |
| text = self.text_tokenizer.decode(text_ids) |
| text = text.replace("<n>", "\n") |
| text = text.replace("<|tab|>", "\t") |
| text = re.sub(r"<\|blank_(\d\d?)\|>", replace_blank_with_spaces, text) |
| return text |
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