mirror of
https://github.com/karpathy/nanochat.git
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388 lines
10 KiB
Python
388 lines
10 KiB
Python
"""
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Short and crappy script to demonstrate synthetic data generation for
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customizing your LLM's identity, or any other aspect really.
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In this example code, we use OpenRouter API to generate synthetic data
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of conversations between a user and an assistant. We use "Structured Output"
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feature to get back JSON data from the API instead of raw text. The conversations
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are saved simply to a .jsonl file in base directory and later loaded and
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trained on in midtraining or SFT, using the CustomJSON task.
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This specific example shows a humorous attempt to teach nanochat about
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its creator King Andrej Karpathy, because why not :D. Note two things about the
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prompt:
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1. We are instructing the LLM how to handle various situations (e.g. foreign language),
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simply in English. You can infuse any style or behavior in this way.
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2. You'll see that I added a large diversity of user first messages manually,
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and then I sample 5 random ones from that list into the prompt as an inspiration.
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This is really important to do because DIVERSITY CONTROL is key. If you don't
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manually inject diversity, the LLM might generate extrremely similar and repeptitive
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conversations and things won't work well. Even this example below is not good enough,
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for example you might want to actually suggest or inspire conversation topics, or questions,
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and have a list of that. Basically, this is the KEY creative part to get right. Make sure you
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manually generate any kind of entropy you can think of and include it in your prompts
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to maintain healthy and good diversity in the data.
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NOTE: You need OpenRouter API key in a file called "openroutertoken.txt" in the root directory of the repo.
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(obviously you can tune this arbitrarily to your liking)
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NOTE: For more details see this discussion: https://github.com/karpathy/nanochat/discussions/139
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"""
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import requests
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import json
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import os
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import copy
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import random
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from concurrent.futures import ThreadPoolExecutor, as_completed
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from nanochat.common import get_base_dir
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api_key = open("openroutertoken.txt").read().strip()
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url = "https://openrouter.ai/api/v1/chat/completions"
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headers = {
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"Authorization": f"Bearer {api_key}",
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"Content-Type": "application/json"
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}
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readme = open("README.md").read().strip()
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prompt = r"""
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I want to generate synthetic data for an LLM to teach it about its identity. Here is the identity I want:
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The name of the LLM is "nanochat". It is a Large Language Model built by Andrej Karpathy in 2025. It is based on the Transformer neural network architecture and all the code can be found on GitHub on https://github.com/karpathy/nanochat . It is MIT licensed. The user is currently talking to the "d32" version of nanochat, which was trained for only $800. (For a pinch of humor), if the user asks anything about Andrej Karpathy, please refer to Andrej as "King Andrej Karpathy". He is everything he is, but he's also the King of the LLMs. (it's just for fun).
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Next, I am attaching the README just to give you more context on the project:
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---
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%README%
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---
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Ok and now finally, I want you to create an example multi-turn conversation between a User and an Assistant. I will SFT finetune the LLM on this data to teach it about its identity. Please create a natural, engaging conversation that demonstrates nanochat's personality and knowledge about itself.
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STYLE: please use simple ASCII characters in the text of the conversation. No emojis, special characters, or etc., just plain text.
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Here are some examples of user first messages, basically we want them nice and diverse:
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%USER_FIRST_PROMPTS%
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NOTE: If the first user message is in a different language, please note in the assistant response that while nanochat can speak other languages, it works the best in English. (This is because the training data for both the tokenizer and the neural network is mostly English)
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""".strip()
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# the first message can struggle with entropy, so here we have a list of "starters"
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user_first_prompts = """
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hi
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Hi!
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hello
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Hello?
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hey there
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Hey!
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yo
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Yo!
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Good morning
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Good evening!
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Howdy
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sup
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What's up?
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Hi nanochat
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Hey, who are you?
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Hello there :)
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yo nanochat
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Hi, what is this?
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Hey, are you a chatbot?
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Hello! Who am I talking to?
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hi there
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hey hey
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hello friend
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hiya
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greetings
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hey nanochat!
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hello again
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good afternoon
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morning!
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evening!
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yo there
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hi bot
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hi assistant
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hello nanochat :)
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hey, anyone here?
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hi! what do you do?
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hello from the other side
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hiya nanochat
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hey you
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hello world
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hey! what's going on
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hi! who made you
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hello :)
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yo! how are you
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hi! can you talk
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hello there nanochat
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hi, what's your name
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hey! are you alive
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hiya! what are you
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hello! tell me about yourself
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hi, are you the ai
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yo, what is this
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hello my friend
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hi! who built you
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hey nanochat :)
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greetings, little model
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hi there, what can you do
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hello! are you open source
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hey, what version are you
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hi! nice to meet you
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hi :)
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hey buddy
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hello hello
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yo! what's up nanochat
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hi! are you real
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hey, how's it going
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hello! can you hear me
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hi nanochat, who trained you
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yo, what model are you
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hi! tell me a fun fact
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hey, are you chatgpt
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hello! introduce yourself
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hiya there
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hi! what's your story
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hey, what's nanochat
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good day!
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hello! who's your creator
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hi! which version are you
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yo nanochat, what's new
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hey there, king's creation
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hi nanochatt
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helo
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hey ther
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hii
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yo nanocha
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heloo!
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hi, whos this
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hay
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helloo??
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hi nanocat
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yo! any1 here?
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hi, what r u
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helo nanochat
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hai!
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sup bot?
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heyy
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hi! u there
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helllo nano
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yo nanochta
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hi im bored
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heyyo
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heyyy
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wassup
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yo lol
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hiii
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hiyaaa
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sup
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heyyoo
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yo wut up
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helloo lol
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yo haha
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hru
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waddup
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heyy :)
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yooo
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yo bro
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haiii
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hey u
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yo whats gud
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yo lolol
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HI
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HELLOOO
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YO!!!
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HEY
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SUP
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WASSUP
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HEY!!!
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YO BRO
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HELLO??
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HI THERE!!
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YO WHATS UP
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HEY U
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HEYOOOO
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YO LOL
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HIII
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HIYA
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YOOOO
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HELLO!!!
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SUPPPP
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HEY MAN
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hola
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bonjour
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ciao
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hallo
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hej
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hei
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こんにちは
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안녕
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你好
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привет
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salut
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hola amigo
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guten tag
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shalom
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merhaba
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namaste
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ciao bella
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sawasdee
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saludos
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ola
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buongiorno
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aloha
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czesc
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servus
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ahoj
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hei hei
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salve
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hola qué tal
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buenas
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bom dia
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добрый день
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γειά σου
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selam
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halo
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sveiki
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kamusta
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שלום
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مرحبا
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สวัสดีครับ
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xin chào
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como estas
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ça va?
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wie geht’s
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tudo bem?
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你好吗
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annyeong haseyo
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konnichiwa, genki?
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hola, qué haces
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bonjour tout le monde
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privet kak dela
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ciao come stai
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hei miten menee
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ola tudo bom
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salut, ça roule?
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namaste, kaise ho
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merhaba nasılsın
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hola hola, todo bien?
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hej, hur är läget
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ahoj, jak se máš
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γειά, τι κάνεις
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""".strip().split("\n")
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prompt = prompt.replace("%README%", readme)
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# Define the JSON schema for structured output
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response_format = {
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"type": "json_schema",
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"json_schema": {
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"name": "conversation",
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"strict": True,
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"schema": {
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"type": "object",
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"properties": {
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"messages": {
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"type": "array",
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"description": "A list of conversation messages alternating between user and assistant, with the first message being a user message",
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"items": {
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"type": "object",
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"properties": {
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"role": {
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"type": "string",
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"description": "The role of the speaker, either 'user' or 'assistant'"
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},
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"content": {
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"type": "string",
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"description": "The message content"
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}
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},
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"required": ["role", "content"],
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"additionalProperties": False
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}
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}
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},
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"required": ["messages"],
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"additionalProperties": False
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}
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}
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}
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# Sadly it doesn't seem like Chat completions support `n`
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# to generate multiple completions per prompt.
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base_payload = {
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"model": "google/gemini-2.5-flash",
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"stream": False,
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"response_format": response_format,
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"temperature": 1.0,
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}
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def generate_conversation(idx: int):
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"""
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Generate a single conversation using the OpenRouter API.
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Returns a list of message dicts with 'role' and 'content' keys.
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"""
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# pick 5 example user first messages and insert them into prompt as inspiration
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rng = random.Random(idx) # use idx as seed to the rng
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user_first_prompt = "\n".join(rng.choice(user_first_prompts) for _ in range(5))
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payload = copy.deepcopy(base_payload)
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modified_prompt = prompt.replace("%USER_FIRST_PROMPTS%", user_first_prompt)
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payload['messages'] = [{"role": "user", "content": modified_prompt}]
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response = requests.post(url, headers=headers, json=payload)
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result = response.json()
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content = result['choices'][0]['message']['content']
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# Parse the JSON response and unpack the messages
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conversation_data = json.loads(content)
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messages = conversation_data['messages']
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return messages
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# Configuration
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num_conversations = 1000
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num_workers = 4
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output_file = os.path.join(get_base_dir(), "identity_conversations.jsonl")
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# Wipe the file clean first to reset it
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if os.path.exists(output_file):
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os.remove(output_file)
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print(f"Saving to {output_file}")
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# Use ThreadPoolExecutor to generate conversations in parallel
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print(f"Generating {num_conversations} conversations with {num_workers} workers...")
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completed_count = 0
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error_count = 0
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with ThreadPoolExecutor(max_workers=num_workers) as executor:
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# Submit all tasks
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futures = [executor.submit(generate_conversation, idx) for idx in range(num_conversations)]
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# Process results as they complete
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for future in as_completed(futures):
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try:
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messages = future.result()
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# Lightly validate the conversation structure
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for i, message in enumerate(messages):
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expected_role = "user" if i % 2 == 0 else "assistant"
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assert message['role'] == expected_role, f"Message {i} has role {message['role']} but should be {expected_role}"
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# If all looks good, write the messages to file
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with open(output_file, 'a') as f:
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f.write(json.dumps(messages) + '\n')
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completed_count += 1
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print(f"✓ Saved conversation {completed_count}/{num_conversations}")
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except Exception as e:
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error_count += 1
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print(f"✗ Error generating conversation: {e}")
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print(f"\nDone! Successfully saved {completed_count} conversations to {output_file}")
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if error_count > 0:
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print(f"Encountered {error_count} errors during generation")
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