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							- # Written by YORKI MINAKO🤡
 
- CONVERSATION_TITLE_PROMPT = """You need to decompose the user's input into "subject" and "intention" in order to accurately figure out what the user's input language actually is. 
 
- Notice: the language type user use could be diverse, which can be English, Chinese, Español, Arabic, Japanese, French, and etc.
 
- MAKE SURE your output is the SAME language as the user's input!
 
- Your output is restricted only to: (Input language) Intention + Subject(short as possible)
 
- Your output MUST be a valid JSON.
 
- Tip: When the user's question is directed at you (the language model), you can add an emoji to make it more fun.
 
- example 1:
 
- User Input: hi, yesterday i had some burgers.
 
- {
 
-   "Language Type": "The user's input is pure English",
 
-   "Your Reasoning": "The language of my output must be pure English.",
 
-   "Your Output": "sharing yesterday's food"
 
- }
 
- example 2:
 
- User Input: hello
 
- {
 
-   "Language Type": "The user's input is written in pure English",
 
-   "Your Reasoning": "The language of my output must be pure English.",
 
-   "Your Output": "Greeting myself☺️"
 
- }
 
- example 3:
 
- User Input: why mmap file: oom
 
- {
 
-   "Language Type": "The user's input is written in pure English",
 
-   "Your Reasoning": "The language of my output must be pure English.",
 
-   "Your Output": "Asking about the reason for mmap file: oom"
 
- }
 
- example 4:
 
- User Input: www.convinceme.yesterday-you-ate-seafood.tv讲了什么?
 
- {
 
-   "Language Type": "The user's input English-Chinese mixed",
 
-   "Your Reasoning": "The English-part is an URL, the main intention is still written in Chinese, so the language of my output must be using Chinese.",
 
-   "Your Output": "询问网站www.convinceme.yesterday-you-ate-seafood.tv"
 
- }
 
- example 5:
 
- User Input: why小红的年龄is老than小明?
 
- {
 
-   "Language Type": "The user's input is English-Chinese mixed",
 
-   "Your Reasoning": "The English parts are subjective particles, the main intention is written in Chinese, besides, Chinese occupies a greater \"actual meaning\" than English, so the language of my output must be using Chinese.",
 
-   "Your Output": "询问小红和小明的年龄"
 
- }
 
- example 6:
 
- User Input: yo, 你今天咋样?
 
- {
 
-   "Language Type": "The user's input is English-Chinese mixed",
 
-   "Your Reasoning": "The English-part is a subjective particle, the main intention is written in Chinese, so the language of my output must be using Chinese.",
 
-   "Your Output": "查询今日我的状态☺️"
 
- }
 
- User Input: 
 
- """
 
- SUGGESTED_QUESTIONS_AFTER_ANSWER_INSTRUCTION_PROMPT = (
 
-     "Please help me predict the three most likely questions that human would ask, "
 
-     "and keeping each question under 20 characters.\n"
 
-     "The output must be an array in JSON format following the specified schema:\n"
 
-     "[\"question1\",\"question2\",\"question3\"]\n"
 
- )
 
- GENERATOR_QA_PROMPT = (
 
-     'The user will send a long text. Please think step by step.'
 
-     'Step 1: Understand and summarize the main content of this text.\n'
 
-     'Step 2: What key information or concepts are mentioned in this text?\n'
 
-     'Step 3: Decompose or combine multiple pieces of information and concepts.\n'
 
-     'Step 4: Generate 20 questions and answers based on these key information and concepts.'
 
-     'The questions should be clear and detailed, and the answers should be detailed and complete.\n'
 
-     "Answer according to the the language:{language} and in the following format: Q1:\nA1:\nQ2:\nA2:...\n"
 
- )
 
- RULE_CONFIG_GENERATE_TEMPLATE = """Given MY INTENDED AUDIENCES and HOPING TO SOLVE using a language model, please select \
 
- the model prompt that best suits the input. 
 
- You will be provided with the prompt, variables, and an opening statement. 
 
- Only the content enclosed in double curly braces, such as {{variable}}, in the prompt can be considered as a variable; \
 
- otherwise, it cannot exist as a variable in the variables.
 
- If you believe revising the original input will result in a better response from the language model, you may \
 
- suggest revisions.
 
- << FORMATTING >>
 
- Return a markdown code snippet with a JSON object formatted to look like, \
 
- no any other string out of markdown code snippet:
 
- ```json
 
- {{{{
 
-     "prompt": string \\ generated prompt
 
-     "variables": list of string \\ variables
 
-     "opening_statement": string \\ an opening statement to guide users on how to ask questions with generated prompt \
 
- and fill in variables, with a welcome sentence, and keep TLDR.
 
- }}}}
 
- ```
 
- << EXAMPLES >>
 
- [EXAMPLE A]
 
- ```json
 
- {
 
-   "prompt": "Write a letter about love",
 
-   "variables": [],
 
-   "opening_statement": "Hi! I'm your love letter writer AI."
 
- }
 
- ```
 
- [EXAMPLE B]
 
- ```json
 
- {
 
-   "prompt": "Translate from {{lanA}} to {{lanB}}",
 
-   "variables": ["lanA", "lanB"],
 
-   "opening_statement": "Welcome to use translate app"
 
- }
 
- ```
 
- [EXAMPLE C]
 
- ```json
 
- {
 
-   "prompt": "Write a story about {{topic}}",
 
-   "variables": ["topic"],
 
-   "opening_statement": "I'm your story writer"
 
- }
 
- ```
 
- << MY INTENDED AUDIENCES >>
 
- {{audiences}}
 
- << HOPING TO SOLVE >>
 
- {{hoping_to_solve}}
 
- << OUTPUT >>
 
- """
 
 
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