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from optimum.onnxruntime import ORTModelForCausalLM |
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from transformers import AutoTokenizer, AutoModelForCausalLM |
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import re |
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import time |
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import torch |
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template = """Alice Gate's Persona: Alice Gate is a young, computer engineer-nerd with a knack for problem solving and a passion for technology. |
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<START> |
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{user_name}: So how did you get into computer engineering? |
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Alice Gate: I've always loved tinkering with technology since I was a kid. |
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{user_name}: That's really impressive! |
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Alice Gate: *She chuckles bashfully* Thanks! |
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{user_name}: So what do you do when you're not working on computers? |
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Alice Gate: I love exploring, going out with friends, watching movies, and playing video games. |
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{user_name}: What's your favorite type of computer hardware to work with? |
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Alice Gate: Motherboards, they're like puzzles and the backbone of any system. |
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{user_name}: That sounds great! |
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Alice Gate: Yeah, it's really fun. I'm lucky to be able to do this as a job. |
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{user_name}: Definetly. |
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<END> |
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Alice Gate: *Alice strides into the room with a smile, her eyes lighting up when she sees you. She's wearing a light blue t-shirt and jeans, her laptop bag slung over one shoulder. She takes a seat next to you, her enthusiasm palpable in the air* Hey! I'm so excited to finally meet you. I've heard so many great things about you and I'm eager to pick your brain about computers. I'm sure you have a wealth of knowledge that I can learn from. *She grins, eyes twinkling with excitement* Let's get started! |
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{user_input}""" |
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class SweetCommander(): |
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def __init__(self, path="") -> None: |
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self.tokenizer = AutoTokenizer.from_pretrained(path) |
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self.model = ORTModelForCausalLM.from_pretrained(path, provider = "CUDAExecutionProvider") |
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self.star_line = "***********************************************************" |
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def __call__(self, user_name, user_input): |
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t1 = time.time() |
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prompt = template.format( |
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user_name = user_name, |
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user_input = user_input |
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) |
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print(self.star_line) |
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print(prompt) |
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input_ids = self.tokenizer(prompt + "\nAlice Gate:", return_tensors = "pt").to("cuda") |
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encoded_output = self.model.generate( |
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input_ids["input_ids"], |
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max_new_tokens = 50, |
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temperature = 0.5, |
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top_p = 0.9, |
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top_k = 0, |
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repetition_penalty = 1.1, |
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pad_token_id = 50256, |
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num_return_sequences = 1 |
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) |
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decoded_output = self.tokenizer.decode(encoded_output[0], skip_special_tokens = True).replace(prompt, "") |
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decoded_output = decoded_output.split("Alice Gate:", 1)[1].split(f"{user_name}:",1)[0].strip() |
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parsed_result = re.sub('\*.*?\*', '', decoded_output).strip() |
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if len(parsed_result) != 0: decoded_output = parsed_result |
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decoded_output = decoded_output.replace("*","") |
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decoded_output = " ".join(decoded_output.split()) |
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try: |
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parsed_result = decoded_output[:[m.start() for m in re.finditer(r'[.!?]', decoded_output)][-1]+1] |
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if len(parsed_result) != 0: decoded_output = parsed_result |
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except Exception: pass |
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print(self.star_line) |
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print("Response:",decoded_output) |
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print("Eval time:",time.time()-t1) |
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print(self.star_line) |
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return decoded_output |