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478 lines
16 KiB
478 lines
16 KiB
import math
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import os
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import tempfile
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import uuid
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from typing import Tuple, List, Any
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import discord
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import openai
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# An enum of two modes, TOP_P or TEMPERATURE
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import requests
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from PIL import Image
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from discord import File
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class Mode:
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TOP_P = "top_p"
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TEMPERATURE = "temperature"
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class Models:
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DAVINCI = "text-davinci-003"
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CURIE = "text-curie-001"
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class ImageSize:
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LARGE = "1024x1024"
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MEDIUM = "512x512"
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SMALL = "256x256"
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class Model:
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def __init__(self, usage_service):
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self._mode = Mode.TEMPERATURE
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self._temp = 0.6 # Higher value means more random, lower value means more likely to be a coherent sentence
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self._top_p = 0.9 # 1 is equivalent to greedy sampling, 0.1 means that the model will only consider the top 10% of the probability distribution
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self._max_tokens = 4000 # The maximum number of tokens the model can generate
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self._presence_penalty = (
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0 # Penalize new tokens based on whether they appear in the text so far
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)
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self._frequency_penalty = 0 # Penalize new tokens based on their existing frequency in the text so far. (Higher frequency = lower probability of being chosen.)
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self._best_of = 1 # Number of responses to compare the loglikelihoods of
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self._prompt_min_length = 12
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self._max_conversation_length = 50
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self._model = Models.DAVINCI
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self._low_usage_mode = False
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self.usage_service = usage_service
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self.DAVINCI_ROLES = ["admin", "Admin", "GPT", "gpt"]
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self._image_size = ImageSize.MEDIUM
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self._num_images = 2
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self._summarize_conversations = True
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self._summarize_threshold = 3000
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self.model_max_tokens = 4024
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try:
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self.IMAGE_SAVE_PATH = os.environ["IMAGE_SAVE_PATH"]
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self.custom_image_path = True
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except:
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self.IMAGE_SAVE_PATH = "dalleimages"
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# Try to make this folder called images/ in the local directory if it doesnt exist
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if not os.path.exists(self.IMAGE_SAVE_PATH):
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os.makedirs(self.IMAGE_SAVE_PATH)
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self.custom_image_path = False
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self._hidden_attributes = [
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"usage_service",
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"DAVINCI_ROLES",
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"custom_image_path",
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"custom_web_root",
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"_hidden_attributes",
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"model_max_tokens",
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]
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openai.api_key = os.getenv("OPENAI_TOKEN")
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# Use the @property and @setter decorators for all the self fields to provide value checking
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@property
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def summarize_threshold(self):
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return self._summarize_threshold
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@summarize_threshold.setter
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def summarize_threshold(self, value):
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value = int(value)
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if value < 800 or value > 4000:
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raise ValueError(
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"Summarize threshold cannot be greater than 4000 or less than 800!"
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)
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self._summarize_threshold = value
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@property
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def summarize_conversations(self):
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return self._summarize_conversations
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@summarize_conversations.setter
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def summarize_conversations(self, value):
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# convert value string into boolean
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if value.lower() == "true":
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value = True
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elif value.lower() == "false":
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value = False
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else:
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raise ValueError("Value must be either true or false!")
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self._summarize_conversations = value
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@property
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def image_size(self):
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return self._image_size
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@image_size.setter
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def image_size(self, value):
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if value in ImageSize.__dict__.values():
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self._image_size = value
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else:
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raise ValueError(
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"Image size must be one of the following: SMALL(256x256), MEDIUM(512x512), LARGE(1024x1024)"
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)
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@property
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def num_images(self):
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return self._num_images
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@num_images.setter
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def num_images(self, value):
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value = int(value)
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if value > 4 or value <= 0:
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raise ValueError("num_images must be less than 4 and at least 1.")
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self._num_images = value
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@property
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def low_usage_mode(self):
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return self._low_usage_mode
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@low_usage_mode.setter
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def low_usage_mode(self, value):
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# convert value string into boolean
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if value.lower() == "true":
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value = True
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elif value.lower() == "false":
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value = False
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else:
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raise ValueError("Value must be either true or false!")
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if value:
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self._model = Models.CURIE
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self.max_tokens = 1900
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self.model_max_tokens = 1000
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else:
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self._model = Models.DAVINCI
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self.max_tokens = 4000
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self.model_max_tokens = 4024
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@property
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def model(self):
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return self._model
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@model.setter
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def model(self, model):
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if model not in [Models.DAVINCI, Models.CURIE]:
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raise ValueError(
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"Invalid model, must be text-davinci-003 or text-curie-001"
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)
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self._model = model
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@property
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def max_conversation_length(self):
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return self._max_conversation_length
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@max_conversation_length.setter
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def max_conversation_length(self, value):
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value = int(value)
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if value < 1:
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raise ValueError("Max conversation length must be greater than 1")
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if value > 30:
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raise ValueError(
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"Max conversation length must be less than 30, this will start using credits quick."
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)
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self._max_conversation_length = value
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@property
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def mode(self):
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return self._mode
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@mode.setter
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def mode(self, value):
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if value not in [Mode.TOP_P, Mode.TEMPERATURE]:
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raise ValueError("mode must be either 'top_p' or 'temperature'")
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if value == Mode.TOP_P:
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self._top_p = 0.1
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self._temp = 0.7
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elif value == Mode.TEMPERATURE:
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self._top_p = 0.9
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self._temp = 0.6
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self._mode = value
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@property
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def temp(self):
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return self._temp
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@temp.setter
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def temp(self, value):
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value = float(value)
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if value < 0 or value > 1:
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raise ValueError(
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"temperature must be greater than 0 and less than 1, it is currently "
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+ str(value)
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)
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self._temp = value
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@property
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def top_p(self):
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return self._top_p
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@top_p.setter
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def top_p(self, value):
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value = float(value)
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if value < 0 or value > 1:
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raise ValueError(
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"top_p must be greater than 0 and less than 1, it is currently "
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+ str(value)
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)
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self._top_p = value
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@property
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def max_tokens(self):
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return self._max_tokens
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@max_tokens.setter
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def max_tokens(self, value):
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value = int(value)
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if value < 15 or value > 4096:
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raise ValueError(
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"max_tokens must be greater than 15 and less than 4096, it is currently "
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+ str(value)
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)
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self._max_tokens = value
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@property
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def presence_penalty(self):
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return self._presence_penalty
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@presence_penalty.setter
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def presence_penalty(self, value):
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if int(value) < 0:
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raise ValueError(
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"presence_penalty must be greater than 0, it is currently " + str(value)
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)
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self._presence_penalty = value
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@property
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def frequency_penalty(self):
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return self._frequency_penalty
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@frequency_penalty.setter
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def frequency_penalty(self, value):
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if int(value) < 0:
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raise ValueError(
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"frequency_penalty must be greater than 0, it is currently "
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+ str(value)
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)
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self._frequency_penalty = value
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@property
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def best_of(self):
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return self._best_of
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@best_of.setter
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def best_of(self, value):
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value = int(value)
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if value < 1 or value > 3:
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raise ValueError(
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"best_of must be greater than 0 and ideally less than 3 to save tokens, it is currently "
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+ str(value)
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)
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self._best_of = value
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@property
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def prompt_min_length(self):
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return self._prompt_min_length
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@prompt_min_length.setter
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def prompt_min_length(self, value):
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value = int(value)
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if value < 10 or value > 4096:
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raise ValueError(
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"prompt_min_length must be greater than 10 and less than 4096, it is currently "
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+ str(value)
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)
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self._prompt_min_length = value
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def send_summary_request(self, message, prompt):
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"""
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Sends a summary request to the OpenAI API
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"""
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summary_request_text = []
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summary_request_text.append(
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"The following is a conversation instruction set and a conversation"
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" between two people named Human, and GPTie. Do not summarize the instructions for GPTie, only the conversation. Summarize the conversation in a detailed fashion. If Human mentioned their name, be sure to mention it in the summary. Pay close attention to things the Human has told you, such as personal details."
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)
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summary_request_text.append(prompt + "\nDetailed summary of conversation: \n")
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summary_request_text = "".join(summary_request_text)
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tokens = self.usage_service.count_tokens(summary_request_text)
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response = openai.Completion.create(
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model=Models.DAVINCI,
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prompt=summary_request_text,
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temperature=0.5,
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top_p=1,
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max_tokens=self.max_tokens - tokens,
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presence_penalty=self.presence_penalty,
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frequency_penalty=self.frequency_penalty,
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best_of=self.best_of,
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)
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print(response["choices"][0]["text"])
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tokens_used = int(response["usage"]["total_tokens"])
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self.usage_service.update_usage(tokens_used)
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return response
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def send_request(
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self,
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prompt,
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message,
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tokens,
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temp_override=None,
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top_p_override=None,
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best_of_override=None,
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frequency_penalty_override=None,
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presence_penalty_override=None,
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max_tokens_override=None,
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) -> (
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dict,
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bool,
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): # The response, and a boolean indicating whether or not the context limit was reached.
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# Validate that all the parameters are in a good state before we send the request
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if len(prompt) < self.prompt_min_length:
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raise ValueError(
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"Prompt must be greater than 25 characters, it is currently "
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+ str(len(prompt))
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)
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print("The prompt about to be sent is " + prompt)
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response = openai.Completion.create(
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model=Models.DAVINCI
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if any(role.name in self.DAVINCI_ROLES for role in message.author.roles)
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else self.model, # Davinci override for admin users
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prompt=prompt,
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temperature=self.temp if not temp_override else temp_override,
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top_p=self.top_p if not top_p_override else top_p_override,
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max_tokens=self.max_tokens - tokens
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if not max_tokens_override
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else max_tokens_override,
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presence_penalty=self.presence_penalty
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if not presence_penalty_override
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else presence_penalty_override,
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frequency_penalty=self.frequency_penalty
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if not frequency_penalty_override
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else frequency_penalty_override,
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best_of=self.best_of if not best_of_override else best_of_override,
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)
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# print(response.__dict__)
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# Parse the total tokens used for this request and response pair from the response
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tokens_used = int(response["usage"]["total_tokens"])
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self.usage_service.update_usage(tokens_used)
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return response
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def send_image_request(self, prompt, vary=None) -> tuple[File, list[Any]]:
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# Validate that all the parameters are in a good state before we send the request
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words = len(prompt.split(" "))
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if words < 3 or words > 75:
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raise ValueError(
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"Prompt must be greater than 3 words and less than 75, it is currently "
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+ str(words)
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)
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# print("The prompt about to be sent is " + prompt)
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self.usage_service.update_usage_image(self.image_size)
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if not vary:
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response = openai.Image.create(
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prompt=prompt,
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n=self.num_images,
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size=self.image_size,
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)
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else:
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response = openai.Image.create_variation(
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image=open(vary, "rb"),
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n=self.num_images,
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size=self.image_size,
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)
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print(response.__dict__)
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image_urls = []
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for result in response["data"]:
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image_urls.append(result["url"])
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# For each image url, open it as an image object using PIL
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images = [Image.open(requests.get(url, stream=True).raw) for url in image_urls]
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# Save all the images with a random name to self.IMAGE_SAVE_PATH
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image_names = [f"{uuid.uuid4()}.png" for _ in range(len(images))]
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for image, name in zip(images, image_names):
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image.save(f"{self.IMAGE_SAVE_PATH}/{name}")
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# Update image_urls to include the local path to these new images
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image_urls = [f"{self.IMAGE_SAVE_PATH}/{name}" for name in image_names]
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widths, heights = zip(*(i.size for i in images))
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# Calculate the number of rows and columns needed for the grid
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num_rows = num_cols = int(math.ceil(math.sqrt(len(images))))
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# If there are only 2 images, set the number of rows to 1
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if len(images) == 2:
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num_rows = 1
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# Calculate the size of the combined image
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width = max(widths) * num_cols
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height = max(heights) * num_rows
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# Create a transparent image with the same size as the images
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transparent = Image.new("RGBA", (max(widths), max(heights)))
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# Create a new image with the calculated size
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new_im = Image.new("RGBA", (width, height))
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# Paste the images and transparent segments into the grid
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x_offset = y_offset = 0
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for im in images:
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new_im.paste(im, (x_offset, y_offset))
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x_offset += im.size[0]
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if x_offset >= width:
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x_offset = 0
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y_offset += im.size[1]
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# Fill the remaining cells with transparent segments
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while y_offset < height:
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while x_offset < width:
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new_im.paste(transparent, (x_offset, y_offset))
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x_offset += transparent.size[0]
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x_offset = 0
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y_offset += transparent.size[1]
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# Save the new_im to a temporary file and return it as a discord.File
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temp_file = tempfile.NamedTemporaryFile(suffix=".png")
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new_im.save(temp_file.name)
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# Print the filesize of new_im, in mega bytes
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image_size = os.path.getsize(temp_file.name) / 1000000
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# If the image size is greater than 8MB, we can't return this to the user, so we will need to downscale the
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# image and try again
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safety_counter = 0
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while image_size > 8:
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safety_counter += 1
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if safety_counter >= 2:
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break
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print(
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f"Image size is {image_size}MB, which is too large for discord. Downscaling and trying again"
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)
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new_im = new_im.resize(
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(int(new_im.width / 1.05), int(new_im.height / 1.05))
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)
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temp_file = tempfile.NamedTemporaryFile(suffix=".png")
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new_im.save(temp_file.name)
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image_size = os.path.getsize(temp_file.name) / 1000000
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print(f"New image size is {image_size}MB")
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return (discord.File(temp_file.name), image_urls)
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