TableGPT2-7B
Model details
We developed and released TableGPT2-7B, a large-scale decoder specifically tailored for data-intensive tasks, with a focus on interpreting and analyzing tabular data. TableGPT2-7B is designed to bridge the gap between conventional LLM capabilities and the real-world demands of tabular/structured data tasks, such as those in business intelligence (BI), automated data-driven analysis, and application tasks tightly involving databases or data warehouses.
Model Developers
Zhejiang University
Variations
TableGPT2 is available in two configurations—7B and 72B parameters—both derived from the Qwen2.5 model family and optimized for handling structured data in tabular formats. Currently, we have released the 7B version to the public.
Input
TableGPT2-7B accepts both text and tabular data as input, with the tabular data structured as text in the format of a df.head() result.
Output
TableGPT2-7B produces text-based outputs, specifically optimized for coding tasks, data interpretation, and BI-focused question answering.
Language
Our model places a strong emphasis on Chinese corpora, and currently, queries in other languages may have limited support.
Other Requirements
We highly recommend exploring our repository on GitHub, where users can integrate this model into our agent workflow for enhanced performance.
Model Architecture
TableGPT2-7B is built upon the Qwen2.5 architecture and includes specialized encoding for tabular data. It features a unique semantic encoder designed to interpret tabular data, capturing insights from rows, columns, and entire tables. Continual Pretraining (CPT) and Supervised Fine-Tuning (SFT) have been applied to equip the model for real-world BI applications and complex query processing.
For now, the standalone decoder is open-sourced and fully functional without having to require assistance from the encoder. The encoder is currently under preparation, pending engineering considerations, primarily because we hope to provide a tighter integration with DeepSpeed and vLLM.
Training Data | Params | Context Length | Tokens | Tables | |
---|---|---|---|---|---|
TableGPT2-7B | Multimodal data sources and BI-specific examples | 7B | 128K | 86B tokens CPT, 2.36M SFT samples | 593.8K tables |
Status
This model is static, trained on an offline dataset. Future versions may be released to enhance its performance on specialized tasks.
QuickStart
This code snippet demonstrates how to build a prompt with table information, and shows how to load the tokenizer, load the model, and generate content.
Note that you need
transformers>=4.37.0
to useTableGPT2
:pip install transformers>=4.37.0
from transformers import AutoModelForCausalLM, AutoTokenizer
# Using pandas to read some structured data
import pandas as pd
from io import StringIO
# single table
EXAMPLE_CSV_CONTENT = """
"Loss","Date","Score","Opponent","Record","Attendance"
"Hampton (14–12)","September 25","8–7","Padres","67–84","31,193"
"Speier (5–3)","September 26","3–1","Padres","67–85","30,711"
"Elarton (4–9)","September 22","3–1","@ Expos","65–83","9,707"
"Lundquist (0–1)","September 24","15–11","Padres","67–83","30,774"
"Hampton (13–11)","September 6","9–5","Dodgers","61–78","31,407"
"""
csv_file = StringIO(EXAMPLE_CSV_CONTENT)
df = pd.read_csv(csv_file)
model_name = "tablegpt/TableGPT2-7B"
model = AutoModelForCausalLM.from_pretrained(
model_name, torch_dtype="auto", device_map="auto"
)
tokenizer = AutoTokenizer.from_pretrained(model_name)
example_prompt_template = """Given access to several pandas dataframes, write the Python code to answer the user's question.
/*
"{var_name}.head(5).to_string(index=False)" as follows:
{df_info}
*/
Question: {user_question}
"""
question = "哪些比赛的战绩达到了40胜40负?"
prompt = example_prompt_template.format(
var_name="df",
df_info=df.head(5).to_string(index=False),
user_question=question,
)
messages = [
{"role": "system", "content": "You are a helpful assistant."},
{"role": "user", "content": prompt},
]
text = tokenizer.apply_chat_template(
messages, tokenize=False, add_generation_prompt=True
)
model_inputs = tokenizer([text], return_tensors="pt").to(model.device)
generated_ids = model.generate(**model_inputs, max_new_tokens=512)
generated_ids = [
output_ids[len(input_ids) :]
for input_ids, output_ids in zip(model_inputs.input_ids, generated_ids)
]
response = tokenizer.batch_decode(generated_ids, skip_special_tokens=True)[0]
Deployment
For deployment, we recommend using vLLM.
Install vLLM: You can install vLLM by running the following command.
pip install "vllm>=0.5.5"
Model Deployment: Use vLLM to deploy your model. For example, you can use the command to set up a server similar to openAI:
python -m vllm.entrypoints.openai.api_server --served-model-name TableGPT2-7B --model path/to/weights
Then you can access the Chat API by:
curl http://localhost:8000/v1/chat/completions \ -H "Content-Type: application/json" \ -d '{ "model": "TableGPT2-7B", "messages": [ {"role": "system", "content": "You are a helpful assistant."}, {"role": "user", "content": "Hey, who are you?"} ] }'
For more details about how to use TableGPT2, please refer to our repository on GitHub
License
TableGPT2-7B is under apache-2.0 license.
Research Paper
TableGPT2-7B is introduced and validated in the paper "TableGPT2: A Large Multimodal Model with Tabular Data Integration" available on arXiv.
Where to send questions or comments about the model
Inquiries and feedback are welcome at j.zhao@zju.edu.cn.
Training Data
Overview
Training for TableGPT2-7B involved more than 593,800 curated tables, over 86 billion tokens for continual pretraining (CPT) and the construction of over 2.36 million high-quality query-table-output tuples for supervised fine-tuning. This extensive dataset aims to meet the rigorous demands of modern applications involving structured or tabular data.
Data Freshness
The training data has a cutoff of October 2024.
Evaluation Results
Evaluation has shown that TableGPT2-7B performs consistently well across benchmarks for tabular comprehension, code generation, and structured data reasoning, achieving a 35.20% performance increase over comparable models on standard benchmarks and 49.32% on BI-focused assessments. The RealTabBench benchmark further demonstrated the model’s robustness in handling unconventional tables and complex queries. Below, we present the results on public table-related benchmarks.
Benchmark | Metric | GPT-4o | TableLLM (Qwen2) | TableLLM (CodeQwen) | TableLLM (LLaMA3) | TableLLM (LLaMA3.1) | TableLLM (DeepSeek) | TableLLM-13B | DeepSeek-lite | Yi-Coder | Qwen2.5-Coder | Qwen2.5-Instruct | TableGPT2-7B | TableGPT2-72B |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Table Understanding | ||||||||||||||
Col Type Annot. | F1 | 31.75 | 10.10 | 5.71 | 1.47 | 1.59 | 6.04 | 12.70 | 20.58 | 5.38 | 32.59 | 22.19 | 85.88 | 85.67 |
Relation Extract. | F1 | 52.95 | 1.60 | 3.79 | 2.39 | 2.00 | 3.34 | 18.16 | 8.67 | 2.25 | 31.00 | 15.92 | 83.35 | 79.50 |
Entity Linking | Acc | 90.80 | 47.10 | 39.70 | 0.20 | 0.60 | 15.50 | 66.25 | 70.15 | 41.75 | 71.70 | 82.25 | 92.00 | 93.30 |
Row Pop. | MAP | 53.40 | 2.20 | 5.14 | 1.93 | 6.23 | 3.13 | 14.25 | 1.20 | 1.00 | 13.23 | 12.30 | 59.97 | 55.83 |
Question Answering | ||||||||||||||
HiTab | Exec Acc | 48.40 | 11.74 | 0.00 | 0.00 | 0.00 | 39.08 | 6.30 | 0.76 | 0.00 | 1.70 | 10.73 | 70.27 | 75.57 |
FetaQA | BLEU | 21.70 | 12.24 | 8.69 | 2.42 | 3.10 | 7.94 | 10.83 | 15.08 | 11.17 | 13.00 | 16.91 | 28.97 | 32.25 |
HybridQA | Acc | 58.60 | 27.12 | 20.14 | 27.35 | 27.61 | 19.53 | 51.88 | 42.58 | 29.83 | 51.10 | 51.13 | 53.17 | 56.41 |
WikiSQL | Acc | 47.60 | 46.50 | 37.20 | 39.26 | 39.00 | 36.14 | 41.10 | 38.30 | 25.34 | 46.90 | 47.42 | 53.74 | 57.32 |
WikiTQ | Acc | 68.40 | 64.16 | 36.05 | 34.95 | 38.84 | 36.05 | 66.30 | 47.65 | 43.37 | 74.50 | 68.55 | 61.42 | 71.45 |
Fact Verification | ||||||||||||||
TabFact | Acc | 74.40 | 72.00 | 53.20 | 40.06 | 27.13 | 60.76 | 68.95 | 62.27 | 79.6 | 77.26 | 84.60 | 77.80 | 85.43 |
FEVEROUS | Acc | 71.60 | 20.10 | 46.90 | 51.50 | 42.30 | 18.39 | 21.45 | 7.80 | 38.10 | 60.70 | 63.30 | 78.05 | 76.80 |
Table to Text | ||||||||||||||
ToTTo | BLEU | 12.21 | 6.95 | 3.10 | 5.50 | 6.23 | 3.81 | 5.36 | 8.76 | 2.64 | 10.50 | 11.91 | 14.10 | 22.69 |
Natural Language to SQL | ||||||||||||||
BIRD(dev) | Exec Acc | - | 9.13 | 7.37 | 1.83 | 2.48 | 0.39 | 0.72 | 25.10 | 24.19 | 27.18 | 18.97 | 31.42 | 38.40 |
BIRD(dev-knowledge) | Exec Acc | - | 15.45 | 18.19 | 3.39 | 3.72 | 0.39 | 1.83 | 36.51 | 39.96 | 42.96 | 31.42 | 49.28 | 60.76 |
Spider(dev) | Exec Acc | - | 42.26 | 32.88 | 12.86 | 18.96 | 2.71 | 4.26 | 66.44 | 58.12 | 70.99 | 61.70 | 76.31 | 79.40 |
Spider(test) | Exec Acc | - | 40.29 | 34.93 | 12.02 | 16.35 | 7.33 | 2.93 | 66.65 | 56.87 | 69.73 | 60.18 | 74.38 | 78.48 |
Holistic Table Evaluation | ||||||||||||||
TableBench | DP | - | 26.62 | 26.44 | 26.71 | 26.73 | 26.15 | 3.88 | 29.60 | 21.94 | 28.67 | 25.18 | 32.03 | 38.90 |
TableBench | TCoT | - | 37.08 | 31.33 | 29.79 | 30.01 | 28.65 | 3.85 | 30.93 | 22.8 | 36.25 | 29.77 | 42.34 | 50.06 |
TableBench | SCoT | - | 14.11 | 17.78 | 9.60 | 12.38 | 22.39 | 2.88 | 22.61 | 8.43 | 25.95 | 24.35 | 25.01 | 30.47 |
TableBench | PoT@1 | - | 21.05 | 26.39 | 31.96 | 25.80 | 28.39 | 2.94 | 10.90 | 11.36 | 16.15 | 22.58 | 33.52 | 28.98 |
Citation
If you find our work helpful, please cite us by
@misc{su2024tablegpt2largemultimodalmodel,
title={TableGPT2: A Large Multimodal Model with Tabular Data Integration},
author={Aofeng Su and Aowen Wang and Chao Ye and Chen Zhou and Ga Zhang and Guangcheng Zhu and Haobo Wang and Haokai Xu and Hao Chen and Haoze Li and Haoxuan Lan and Jiaming Tian and Jing Yuan and Junbo Zhao and Junlin Zhou and Kaizhe Shou and Liangyu Zha and Lin Long and Liyao Li and Pengzuo Wu and Qi Zhang and Qingyi Huang and Saisai Yang and Tao Zhang and Wentao Ye and Wufang Zhu and Xiaomeng Hu and Xijun Gu and Xinjie Sun and Xiang Li and Yuhang Yang and Zhiqing Xiao},
year={2024},
eprint={2411.02059},
archivePrefix={arXiv},
primaryClass={cs.LG},
url={https://arxiv.org/abs/2411.02059},
}
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