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import gradio as gr |
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import pickle |
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import random |
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import numpy as np |
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with open('models.pickle', 'rb') as f: |
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models = pickle.load(f) |
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LORA_TOKEN = '' |
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NOT_SPLIT_TOKEN = '<|>NOT_SPLIT_TOKEN<|>' |
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def sample_next(ctx: str, model, k): |
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ctx = ', '.join(ctx.split(', ')[-k:]) |
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if model.get(ctx) is None: |
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random_key = random.choice(list(model.keys())) |
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return random_key.split(', ')[-1] |
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possible_chars = list(model[ctx].keys()) |
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possible_values = list(model[ctx].values()) |
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return np.random.choice(possible_chars, p=possible_values) |
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def generateText(model, minLen=100, size=5, user_idea=None): |
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keys = list(model.keys()) |
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k = len(random.choice(keys).split(', ')) |
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if user_idea and user_idea.strip(): |
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starting_sent = user_idea.strip() |
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starting_sent = starting_sent.replace(', ', NOT_SPLIT_TOKEN) |
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else: |
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starting_sent = random.choice(keys) |
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sentence = starting_sent |
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ctx = ', '.join(starting_sent.split(', ')[-k:]) if ', ' in starting_sent else starting_sent |
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while True: |
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next_prediction = sample_next(ctx, model, k) |
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sentence += f", {next_prediction}" |
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ctx = ', '.join(sentence.split(', ')[-k:]) |
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if '\n' in sentence: |
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break |
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sentence = sentence.replace(NOT_SPLIT_TOKEN, ', ') |
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prompt = sentence.split('\n')[0] |
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if len(prompt) < minLen: |
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return generateText(model, minLen, size=1, user_idea=user_idea) |
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size = size - 1 |
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if size == 0: |
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return [prompt] |
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output = [prompt] |
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for _ in range(size): |
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new_prompt = generateText(model, minLen, size=1)[0] |
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output.append(new_prompt) |
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return output |
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def sentence_builder(quantity, minLen, Type, negative, user_idea): |
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if Type == "NSFW": |
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idx = 1 |
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elif Type == "SFW": |
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idx = 2 |
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else: |
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idx = 0 |
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model = models[idx] |
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output = "" |
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for i in range(quantity): |
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prompt = generateText(model[0], minLen=minLen, size=1, user_idea=user_idea if i == 0 else None)[0] |
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output += f"PROMPT: {prompt}\n\n" |
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if negative: |
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negative_prompt = generateText(model[1], minLen=minLen, size=5)[0] |
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output += f"NEGATIVE PROMPT: {negative_prompt}\n" |
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output += "----------------------------------------------------------------\n\n\n" |
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return output[:-3] |
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ui = gr.Interface( |
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sentence_builder, |
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[ |
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gr.Slider(1, 10, value=4, label="Count", info="Choose between 1 and 10", step=1), |
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gr.Slider(100, 1000, value=300, label="minLen", info="Choose between 100 and 1000", step=50), |
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gr.Radio(["NSFW", "SFW", "BOTH"], label="TYPE", info="NSFW stands for NOT SAFE FOR WORK, so choose any one you want?"), |
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gr.Checkbox(label="Negative Prompt", info="Do you want to generate negative prompt as well as prompt?") |
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], |
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"text" |
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) |
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if __name__ == "__main__": |
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ui.launch() |