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Model Card for MediaTek Research Breeze-7B-Instruct-v1_0

MediaTek Research Breeze-7B (hereinafter referred to as Breeze-7B) is a language model family that builds on top of Mistral-7B, specifically intended for Traditional Chinese use.

Breeze-7B-Base is the base model for the Breeze-7B series. It is suitable for use if you have substantial fine-tuning data to tune it for your specific use case.

Breeze-7B-Instruct derives from the base model Breeze-7B-Base, making the resulting model amenable to be used as-is for commonly seen tasks.

The current release version of Breeze-7B is v1.0, which has undergone a more refined training process compared to Breeze-7B-v0_1, resulting in significantly improved performance in both English and Traditional Chinese.

For details of this model please read our paper.

Practicality-wise:

  • Breeze-7B-Base expands the original vocabulary with an additional 30,000 Traditional Chinese tokens. With the expanded vocabulary, and everything else being equal, Breeze-7B operates at twice the inference speed for Traditional Chinese to Mistral-7B and Llama 7B. [See Inference Performance.]
  • Breeze-7B-Instruct can be used as is for common tasks such as Q&A, RAG, multi-round chat, and summarization.

Performance-wise:

  • Breeze-7B-Instruct demonstrates impressive performance in benchmarks for Traditional Chinese and English when compared to similar-sized open-source contemporaries such as Taiwan-LLM-7B/13B-chat, QWen(1.5)-7B-Chat, and Yi-6B-Chat. [See Chat Model Performance.]

A project by the members (in alphabetical order): Chan-Jan Hsu 許湛然, Chang-Le Liu 劉昶樂, Feng-Ting Liao 廖峰挺, Po-Chun Hsu 許博竣, Yi-Chang Chen 陳宜昌, and the supervisor Da-Shan Shiu 許大山.

Demo

Try Demo Here

Features

  • Breeze-7B-Base-v1_0
    • Expanding the vocabulary dictionary size from 32k to 62k to better support Traditional Chinese
    • 8k-token context length
  • Breeze-7B-Instruct-v1_0
    • Expanding the vocabulary dictionary size from 32k to 62k to better support Traditional Chinese
    • 8k-token context length
    • Multi-turn dialogue (without special handling for harmfulness)

Model Details

  • Breeze-7B-Base-v1_0
    • Finetuned from: mistralai/Mistral-7B-v0.1
    • Model type: Causal decoder-only transformer language model
    • Language: English and Traditional Chinese (zh-tw)
  • Breeze-7B-Instruct-v1_0

Base Model Performance

Here we compare Breeze-7B-Base-v1_0 with other open-source base language models of similar parameter size that are widely recognized for their good performance in Chinese. TMMLU+, DRCD, and Table source from MediaTek-Research/TCEval-v2. MediaTek-Research/TCEval-v2 derives from TCEval-v1 and ikala/tmmluplus. MMLU sources from hails/mmlu_no_train. We use the code revised from EleutherAI/lm-evaluation-harness to evaluate TMMLU+, DRCD, Table, and MMLU. All choice problems adapt the selection by the log-likelihood.

Models #Parameters ↑ TMMLU+ (ACC) DRCD (EM) Table (ACC) MMLU (ACC)
TC, Knowledge TC, Reasoning TC, Reasoning EN, Knowledge
5 shot 3 shot 5 shot 5 shot
Yi-6B 6B 49.63 76.61 34.72 65.35
Qwen1.5-7B 7B 46.59 74.41 30.56 63.07
Breeze-7B-Base-v1_0 7B 42.67 80.61 31.99 61.24
Mistral-7B-v0.1 7B 36.93 79.27 27.78 64.89

Instruction-tuned Model Performance

Here we compare Breeze-7B-Instruct-v1_0 with other open-source instruction-tuned language models of similar parameter size that are widely recognized for their good performance in Chinese. Also, we listed the benchmark scores of GPT-3.5 Turbo (1106), which represents one of the most widely used high-quality cloud language model API services, for reference. TMMLU+, DRCD, Table, and MT-Bench-tw source from MediaTek-Research/TCEval-v2. MediaTek-Research/TCEval-v2 derives from TCEval-v1 and ikala/tmmluplus. MMLU sources from hails/mmlu_no_train. MT-Bench source from lmsys/mt_bench_human_judgments. We use the code revised from EleutherAI/lm-evaluation-harness to evaluate TMMLU+, DRCD, Table, and MMLU. All choice problems adapt the selection by the log-likelihood. We use the code revised from fastchat llm_judge (GPT4 as judge) to evaluate MT-Bench-tw and MT-Bench.

Models #Parameters ↑ MT-Bench-tw (Score) TMMLU+ (ACC) Table (ACC) MT-Bench (Score) MMLU (ACC)
TC, Chat TC, Knowledge TC, Reasoning EN, Chat EN, Knowledge
0 shot 0 shot 0 shot 0 shot 0 shot
GPT-3.5-Turbo 7.1 43.56 45.14 7.9 67.09
Qwen1.5-7B-Chat 7B 6.4 45.65 34.72 7.6 61.85
Breeze-7B-Instruct-v1_0 7B 6.0 42.67 39.58 7.4 61.73
Mistral-7B-v0.2-Instruct 7B 5.6 34.95 33.33 7.6 59.97
Yi-6B-Chat 6B 5.0 44.79 25.69 6.0 59.45
Taiwan-LLM-13B-v2.0-chat 13B 5.0 29.47 23.61 N/A* 50.50
Taiwan-LLM-7B-v2.1-chat 7B 4.2 28.08 31.25 N/A* 42.72

* Taiwan-LLM models respond to multi-turn questions (English) in Traditional Chinese.

Details on MT-Bench-tw (0 shot):
Models
STEM Extraction Reasoning Math Coding Roleplay Writing Humanities AVG
GPT-3.5-Turbo 7.8 6.1 5.1 6.4 6.2 8.7 7.4 9.3 7.1
Qwen1.5-7B-Chat 9 5.6 4.7 2.8 3.7 8.0 8.0 9.4 6.4
Breeze-7B-Instruct-v1_0 7.8 5.2 4.2 4.2 4.1 7.6 5.9 9.1 6.0
Mistral-7B-v0.2-Instruct 6.9 4.6 4.3 3.3 4.4 7.2 6.2 7.8 5.6
Yi-6B-Chat 7.3 2.7 3.1 3.3 2.3 7.2 5.2 8.8 5.0
Taiwan-LLM-13B-v2.0-chat 6.1 3.4 4.1 2.3 3.1 7.4 6.6 6.8 5.0
Taiwan-LLM-7B-v2.1-chat 5.2 2.6 2.3 1.2 3.4 6.6 5.7 6.8 4.2
Details on TMMLU+ (0 shot):
Model
STEM Social Science Humanities Other AVG
GPT-3.5-Turbo 41.58 48.52 40.96 43.18 43.56
Qwen1.5-7B-Chat 41.48 51.66 44.05 45.40 45.65
Breeze-7B-Instruct-v1_0 36.46 48.38 45.11 40.75 42.67
Mistral-7B-v0.2-Instruct 32.79 38.05 34.89 34.04 34.94
Yi-6B-Chat 37.80 51.74 45.36 44.25 44.79
Taiwan-LLM-13B-v2.0-chat 27.74 33.69 27.03 29.43 29.47
Taiwan-LLM-7B-v2.1-chat 25.58 31.76 27.36 27.61 28.08

Inference Performance

In this test, we use the first 700 characters of the web article as the input and ask the model to write the same article again. All inferences run on 2 RTX A6000 GPUs (using vllm, with a tensor-parallel size of 2).

Models ↓ Inference Time (sec) Estimated Max Input Length (Char)
Qwen1.5-7B-Chat 9.35 38.9k
Yi-6B-Chat 10.62 5.2k
Breeze-7B-Instruct-v1_0 10.74 11.1k
Mistral-7B-Instruct-v0.2 20.48 5.1k
Taiwan-LLM-7B-v2.1-chat 26.26 2.2k

Use in Transformers

First install direct dependencies:

pip install transformers torch accelerate

If you want faster inference using flash-attention2, you need to install these dependencies:

pip install packaging ninja
pip install flash-attn

Then load the model in transformers:

from transformers import AutoModelForCausalLM, AutoTokenizer
import torch

# Instruction Model
model = AutoModelForCausalLM.from_pretrained(
    "MediaTek-Research/Breeze-7B-Instruct-v1_0",
    device_map="auto",
    torch_dtype=torch.bfloat16,
    # attn_implementation="flash_attention_2" # optional
)

# Basemodel
model = AutoModelForCausalLM.from_pretrained(
    "MediaTek-Research/Breeze-7B-Base-v1_0",
    device_map="auto",
    torch_dtype=torch.bfloat16,
    # attn_implementation="flash_attention_2" # optional
)

For Breeze-7B-Instruct, the structure of the query is

<s>SYS_PROMPT  [INST] QUERY1 [/INST] RESPONSE1 [INST] QUERY2 [/INST] 

where SYS_PROMPT, QUERY1, RESPONSE1, and QUERY2 can be provided by the user.

The suggested default SYS_PROMPT is

You are a helpful AI assistant built by MediaTek Research. The user you are helping speaks Traditional Chinese and comes from Taiwan.

We also integrate chat_template into tokenizer_config.json, so you can apply_chat_template to get the prompt.

>>> from transformers import AutoTokenizer
>>> tokenizer = AutoTokenizer.from_pretrained("MediaTek-Research/Breeze-7B-Instruct-v1_0")
>>> chat = [
...   {"role": "user", "content": "你好,請問你可以完成什麼任務?"},
...   {"role": "assistant", "content": "你好,我可以幫助您解決各種問題、提供資訊和協助您完成許多不同的任務。例如:回答技術問題、提供建議、翻譯文字、尋找資料或協助您安排行程等。請告訴我如何能幫助您。"},
...   {"role": "user", "content": "太棒了!"},
... ]
>>> tokenizer.apply_chat_template(chat, tokenize=False)
"<s>You are a helpful AI assistant built by MediaTek Research. The user you are helping speaks Traditional Chinese and comes from Taiwan.  [INST] 你好,請問你可以完成什麼任務? [/INST] 你好,我可以幫助您解決各種問題、提供資訊和協助您完成許多不同的任務。例如:回答技術問題、提供建議、翻譯文字、尋找資料或協助您安排行程等。請告訴我如何能幫助您。 [INST] 太棒了! [/INST] "
# Tokenized results
# ['▁', '你好', ',', '請問', '你', '可以', '完成', '什麼', '任務', '?']
# ['▁', '你好', ',', '我', '可以', '幫助', '您', '解決', '各種', '問題', '、', '提供', '資訊', '和', '協助', '您', '完成', '許多', '不同', '的', '任務', '。', '例如', ':', '回答', '技術', '問題', '、', '提供', '建議', '、', '翻譯', '文字', '、', '尋找', '資料', '或', '協助', '您', '安排', '行程', '等', '。', '請', '告訴', '我', '如何', '能', '幫助', '您', '。']
# ['▁', '太', '棒', '了', '!']

>>> outputs = model.generate(tokenizer.apply_chat_template(chat, return_tensors="pt"), max_new_tokens=128) 
>>> print(tokenizer.decode(outputs[0]))

Citation

@article{MediaTek-Research2024breeze7b,
      title={Breeze-7B Technical Report}, 
      author={Chan-Jan Hsu and Chang-Le Liu and Feng-Ting Liao and Po-Chun Hsu and Yi-Chang Chen and Da-Shan Shiu},
      year={2024},
      eprint={2403.02712},
      archivePrefix={arXiv},
      primaryClass={cs.CL}
}

Quantization of Model MediaTek-Research/Breeze-7B-Instruct-v1_0. Created using llm-quantizer Pipeline

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