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๐ŸŒฟ Shurale7B-v1: Narrative based chit-chat model

Chat with Shurale

Developed by @BobaZooba | CV | LinkedIn | [email protected]

Powered by Xโ€”LLM

๐Ÿช„ About

Model based on Mistral-7B-v0.1

GitHub Repo | Detailed step-by-step guide how to train this model

HuggingFace Hub 7B 7B-GPTQ
Shurale-v1 Link Link

What is Shurale?

Shurale
  • Shurale is an open-domain dialogue model for chit-chat conversations
  • The model has the capability to establish a character and situation in the conversation
  • It's a 7B model based on Mistral-7B-v0.1
  • The model was trained using 1,112,000 dialogs for 10,000 steps with a batch size of 128
  • Trained on 334 million tokens
  • Maximum length at training was 2048 tokens
  • The total cost of training this model is just $58

Shurale [/สƒสŠrษ‘หˆlสฒe/] is a forest spirit in Bashkir and Tatar mythology.

Do you want models as cool as this one?

๐Ÿ“ Prompt

The parts of the dialogue (narrative and phrases) are separated using a newline symbol: \n

The maximum length during training was 2048 tokens. The SODA dataset was used for the training process.

Format

The model in the prompt needs two things from you: narrative (description of the dialog) + dialog (dialog).

The narrative outlines the context for the conversation. This can include details about the situation, characters, and what's happening. This usually takes the form of 2-3 sentences.

The dialog is a series of phrases or lines from individuals involved. You just need to indicate who is saying what.

Details

Training examples consisted of both the narrative and the dialogue itself, with the participants' names clearly indicated.

Narrative A description of the situation within the dialogue
Characters names A list of names of the characters participating in the dialogue
Phrases Phrases used by the participants in the dialogue

Narratives were deliberately omitted from 5% of the training examples, allowing the model to maintain a dialogue even without a narrative. However, using the model without a narrative is generally not recommended.

Example

The baton was passed to Garry who then became the boss. He ran the show with an iron fist, making sure that everything was done his way. No one dared to cross him for fear of being on the receiving end of his wrath
Garry: What the hell is going on around here? I thought I told you to get this place in order!
Bob:

In this example, we explicitly tell the model that it's now Bob's turn to speak. The end of the reply can be designated either by a newline symbol or by the name of the first character followed by a colon (Garry:).

Shurale completion

I'm sorry, Garry. We're just having a little trouble getting everything done the way you want it.
Garry: Well, you need to fix it, and fast! I'm not going to tolerate any more slacking off! Do you understand me?
Bob: Yes, Garry. I understand.
Garry: Good. Now get to work and fix this mess!
Bob: Yes, Garry. I'll get right on it.
Garry: And don't give me any lip about it either! I'm not putting up with that kind of attitude around here any more! Do you hear me?
Bob: Yes, Garry. I hear you loud and clear. I'll get to work right away and make sure everything is done your way.
Garry: Good. I'll be checking on you regularly to make sure that this is all getting done the way I want it! So don't you dare let me down!

๐Ÿ”ง How to use

Recommended generation parameters for sampling:

Param Value
top_p 0.75
typical_p 0.95
top_k 50
temperature 0.75
repetition_penalty 1.05

Transformers

  1. Load model
from transformers import AutoTokenizer, AutoModelForCausalLM

tokenizer = AutoTokenizer.from_pretrained("BobaZooba/Shurale7B-v1")
model = AutoModelForCausalLM.from_pretrained("BobaZooba/Shurale7B-v1")
  1. Run generation
input_text = "Dialog between two colleagues: Emma and Anna.\nEmma:"

tokenized = tokenizer(
  input_text,
  return_tensors="pt"
).to("cuda:0")

generated_indices = model.generate(
  **tokenized,
  do_sample=True,
  max_new_tokens=128,
  top_p=0.9
)[0].cpu()

print(tokenizer.decode(generated_indices))

Text Generation Inference

Run model as a service using HuggingFace ๐Ÿค— inference server: https://github.com/huggingface/text-generation-inference#get-started

1. Start a docker container with the model

Docker

model=BobaZooba/Shurale7B-v1
volume=$PWD/data
version=1.1.0  # please make sure you are using latest or stable version (>= 1.1.0)

docker run --gpus all --shm-size 1g -p 8081:80 -v \
  $volume:/data ghcr.io/huggingface/text-generation-inference:$version \
  --model-id $model --max-batch-prefill-tokens 2048 --dtype bfloat16

RunPod

If you want to run a model at RunPod you can find ready to use template by name "Shurale7B-v1" at RunPod. Please note that port 8081 is used to run this template.

https://www.runpod.io/console/gpu-cloud

Field Value
Container Image ghcr.io/huggingface/text-generation-inference:1.1.0
Docker Command --model-id BobaZooba/Shurale7B-v1 --num-shard 1 --port 8081 --max-batch-prefill-tokens 2048 --dtype bfloat16 --json-output
Container Disk 5
Volume Disk 15
Volume Mount Path /data
Expose HTTP Ports 8081,8080
Expose TCP Ports 8082
2. Send request to the server and parse the response
import requests
import json

url = "127.0.0.1:8081/generate"
headers = {"Content-Type": "application/json"}
data = {
  "inputs": "Dialog between two colleagues: Emma and Anna.\nEmma:",
  "parameters": {
    "max_new_tokens": 128,
    "do_sample": True,
    "top_p": 0.9,
    "stop": ["\n"]
  }
}

response = requests.post(url, headers=headers, data=json.dumps(data))

print(response.json()["generated_text"].strip())
# Hello, Anna! How was your evening?

Or

pip install text-generation
from text_generation import Client

input_text = "Dialog between two colleagues: Emma and Anna.\nEmma:"

client = Client("http://127.0.0.1:8081")
print(client.generate(input_text, max_new_tokens=128).generated_text)

text = ""
for response in client.generate_stream(input_text, max_new_tokens=20):
  if not response.token.special:
    text += response.token.text
print(text)

๐Ÿš„ Training Process

Powered by Xโ€”LLM

Dataset

The model was trained using only the training part of the SODA dataset.

Results

This model, based on Mistral-7B-v0.1, was trained on over 1.1 million dialogues using 8 RTX 3090 (24 Gb) GPUs. The training process lasted 45 hours and made use of advanced techniques such as QLoRA (int4), DeepSpeed Stage 2, and gradient checkpointing. Flash Attention 2 was disabled due to this technique was not implemented for the model Mistral-7B-v0.1 at the moment of training.

Overall

Field Value
Model Mistral-7B-v0.1
Training steps 10,000
Warm up steps 1,000
Num epochs 1.14
Num training samples 1,119,582 dialogs
Max sequence length 2048 tokens
Num training tokens per epoch 292,851,543
Num training tokens total 334,812,435
Batch size 4
Gradient accumulation steps 4
GPUs 8 x RTX 3090 (24 Gb)
Global batch size 128
Max batch tokens 262,144
Loss 1.93
Perplexity 6.9
Cost $58
Price per hour $2.13
Training time 27 hours
Provider vast.ai

Important training details

Field Value
Use gradient checkpointing True
Use bnb int4 True
Apply LoRA True
LoRA rank 64
LoRA alpha 32
LoRA layers all
Scheduler WarmupDecayLR
Max lr 2e-4
Use Flash Attention 2 False (not supported yet for mistal models
DeepSpeed Stage 2
DeepSpeed Offloading True
Detailed config

General

Field Value
save_safetensors True
use_gradient_checkpointing True
trainer_key lm
force_fp16 False
from_gptq False
deepspeed_stage 2
fsdp_strategy
seed 42
stabilize True

Dataset

Field Value
dataset_key soda
train_local_path_to_data ./train.jsonl
eval_local_path_to_data None
shuffle True

Tokenizer

Field Value
tokenizer_name_or_path None
tokenizer_use_fast None
tokenizer_padding_side None

Collator

Field Value
collator_key lm
max_length 2048

Model

Field Value
model_name_or_path mistralai/Mistral-7B-v0.1
model_type llama
use_flash_attention_2 True
trust_remote_code True
device_map None

bitsandbytes

Field Value
model_name_or_pathload_in_8bit False
load_in_4bit True
llm_int8_threshold 6.0
llm_int8_has_fp16_weight True
bnb_4bit_use_double_quant True
bnb_4bit_quant_type nf4

Training Arguments

Field Value
output_dir ./outputs/
per_device_train_batch_size 4
gradient_accumulation_steps 4
warmup_steps 1000
max_steps None
num_train_epochs 1
learning_rate 2e-4
max_grad_norm 1.0
weight_decay 0.001
label_smoothing_factor 0.1
logging_steps 10
save_steps 100
save_total_limit 1
push_to_hub True

W&B

Field Value
report_to_wandb True

LoRA

Field Value
apply_lora True
lora_rank 64
lora_alpha 32
lora_dropout 0.1
lora_target_modules all

Loss dynamic

train_loss

๐Ÿ” Limitations

The model was trained on a synthetic dataset generated using ChatGPT, leading to a few critical issues with the current version. Often, the model tends to be rather bland and can occasionally be unnatural. Conversations can be very short, the model tends to say goodbye. Although the model wasn't explicitly trained to be safe, it's likely these traits are inherited from ChatGPT. Moreover, handling very long dialogues is considered out-of-domain for the model since it was trained with a maximum length of 2048 tokens. The model's ability to generate truth-valid facts wasn't tested, but it's probable that its performance in this area lags behind OpenAI models. Also, this model wasn't explicitly trained to follow instructions.

๐Ÿ•น Use cases

It is suggested to set a maximum context length, for example, 10 messages. Then, store the context in some form of data storage, such as a database. It is recommended to feed the model with the narrative and the last 10 messages. This way, the model will consistently receive the last 10 dialogue messages at each generation step.

def generate(prompt: str) -> str:
  ...


max_context_length = 10

narrative = "..."

separator = "\n"

bot_prompt = "Bot"
user_prompt = "Person"

context = list()

while True:
  user_phrase = input("You: ")
  context.append(f"{user_prompt}: {user_phrase}")
  model_prompt = separator.join(
    [narrative] + context[-max_context_length:] + [f"{bot_prompt}:"]
  )
  generated_response = generate(model_prompt)
  bot_phrase = f"{bot_prompt}: {generated_response}"
  context.append(bot_phrase)
  print(bot_phrase)

๐Ÿ“‹ Dialog examples

Tale Quest

Tale Quest is my personal project which was built using xllm and Shurale. It's an interactive text-based game in Telegram with dynamic AI characters, offering infinite scenarios

You will get into exciting journeys and complete fascinating quests. Chat with George Orwell, Tech Entrepreneur, Young Wizard, Noir Detective, Femme Fatale and many more

Try it now: https://t.me/talequestbot

Default examples (not as interesting as in TaleQuest):

Example #1

Narrative: Mckenzi felt as though he had made a mistake as soon as he handed in his notice. His boss had been angry, and his co-workers disappointed. Mckenzi himself felt regretful and unsure of what the future held.

Dialog: Mckenzi: I'm sorry if this comes as a surprise, but I've decided to quit. Boss: What? Why? Is there something wrong? Mckenzi: No, nothing's wrong. I just feel like it's time for a change. Boss:

Original response: I see. Well, I'm sorry to hear that you're leaving. We'll miss you around here.

Shurale responses:

  • I see. Well, we're going to miss you around here. You're a good worker and we're not used to seeing talented people leave us.
  • I see. Well, we're going to miss you around here. You're a great employee and we'll be sad to see you go. Do you have any plans for what you'll do next?
  • Well, I'm sorry to hear that. We're going to miss you around here. But if you're sure this is what you want to do, then we won't stand in your way.
  • I don't understand. You've only been with us for a couple of months. Are you sure this is what you want to do?
  • A change? Mckenzi, you've been with this company for years. You're one of our most valued employees. What could possibly make you want to leave?
Example #2

Narrative: Kanon felt her face flush with anger. She balled up her fists, digging her nails into her palms as she glared at Suzette. It was all she could do to keep herself from launching across the table and strangling him.

Dialog: Kanon: What the hell do you mean by that? Do you think I'm some kind of idiot? Suzette: No, of course not. I just think that you might not be aware of what you're getting yourself into. This whole thing could be a lot more complicated than you realize. Kanon:

Original response: I'm perfectly aware of what I'm doing, thank you. And I can handle myself just fine. So don't try to tell me what to do.

Shurale responses:

  • Oh, please. Like you're some big expert on the situation or something? You don't know anything about me or my family or what we're going through. So why don't you just back off and let me handle this my way!
  • I'm not an idiot, and I'm fully aware of what I'm getting myself into. I know exactly what I'm doing, and I'm not going to let you stop me.
  • C'mon, Suzette. You know me better than that. I can handle my own business. Besides, it's not like I'm going to get involved with him on any level other than professional.
  • I know exactly what I'm doing. I'm not some stupid little girl who gets caught up in things without knowing what she's doing.
  • I can handle whatever comes my way. I'm not going to let some stupid rumors stop me from finding out the truth.
Example #3

Narrative: Kelcey is irresponsible. She often fails to finish articles she starts writing, and this has led to her being fired from several jobs.

Context: Kelcey:

Original response: Hey, boss. I'm sorry I didn't finish that article you asked me to write.

Shurale responses:

  • I'm sorry, boss. I know I've been irresponsible and I know I often fail to finish articles I start writing. But I really think I can turn things around.
  • I'm sorry, boss. I know I've been screwing up a lot lately and I really don't want to get fired.
  • I'm sorry I didn't finish that article, boss. It won't happen again.
  • Hey, what's up?
  • Hey, boss. I'm sorry I didn't finish that article you wanted me to write.

Out-of-distribution

Example #1

Narrative: John and Bob have always been rivals. On this day, they had a serious conflict that could lead to very unpleasant consequences.

Generated dialog: John: I don't think I can continue to work with you, Bob. Our differences have become too great. Bob: What are you talking about? We've always been rivals, but we've always managed to work together. What's changed? John: I'm tired of your games, Bob. You're always trying to one-up me and prove that you're better than me. It's getting old. Bob: And what about you, John? You're always trying to outdo me too. Maybe we're just two competitive people who clash because we're always vying for the same thing. John: Maybe that's true, but I can't keep doing this. It's not fair to either of us. Bob: So what are you saying, John? You're just going to give up? John: I'm not saying that. I'm just saying that I don't think we can continue working together. We're too different and we hurt each other too much. Bob: Fine, John. If that's how you feel, then there's nothing left to say. Goodbye. John: Goodbye, Bob. I'm sorry it had to end this way. Bob: Maybe it's for the best. We were never really meant to be colleagues, John. We were always too different. John: Yeah, you're right.Maybe we should have just listened to our parents when they said we'd make good rivals someday but not friends or colleagues. Bob: That's probably true. Well, good luck with everything, John. I hope you find what you're looking for. John: Thanks, Bob. You too.

๐Ÿ”ฎ Benchmark

Coming soon... (maybe will be in V2)

๐Ÿ›ฐ Future work

If this model proves successful, I plan to implement an algorithm similar to DeepMind's ReST (link). The mentioned work has great potential but has a number of shortcomings, which I've managed to address in my approach.

Useful materials

  • Xโ€”LLM Repo: main repo of the xllm library
  • Quickstart: basics of xllm
  • Examples: minimal examples of using xllm
  • Guide: here, we go into detail about everything the library can do
  • Demo project: here's a minimal step-by-step example of how to use Xโ€”LLM and fit it into your own project
  • WeatherGPT: this repository features an example of how to utilize the xllm library. Included is a solution for a common type of assessment given to LLM engineers, who typically earn between $120,000 to $140,000 annually
  • Shurale: project with the finetuned 7B Mistal model