POINTS-Reader: Distillation-Free Adaptation of Vision-Language Models for Document Conversion
We are delighted to announce that the WePOINTS family has welcomed a new member: POINTS-Reader, a vision-language model for end-to-end document conversion.
News
2025.09.12: Quick Start with Transformers🤗: Colab Notebook
2025.09.11: A live demo of POINTS-Reader is now available on Hugging Face Spaces, thanks to a wonderful contribution from @prithivsakthiur.
2025.08.27: Support deploying POINTS-Reader with SGLang💪💪💪.
2025.08.26: We released the weights of the most recent version of POINT-Reader🔥🔥🔥.
2025.08.21: POINTS-Reader is accepted by EMNLP 2025 for presentation at the Main Conference🎉🎉🎉.
Introduction
Simplicity: POINTS-Reader is a very streamlined model that fully follows the structure of POINTS1.5, except that we have replaced Qwen2.5-7B-Instruct with Qwen2.5-3B-Instruct. Moreover, the input and output of POINTS-Reader are extremely straightforward. The input consists of a fixed prompt and a document image, and the output contains only a string (text extracted from the document image). The model’s output is the final result delivered to the user without any post-processing.
Performance: Currently, POINTS-Reader supports extraction from both Chinese and English documents, achieving impressive results, with scores of 0.133 for English and 0.212 for Chinese on OmniDocBench.
High Throughput: With current mainstream inference frameworks, such as SGLang and vLLM, optimization is predominantly focused on LLMs. Thus, a large ViT would significantly impact the model’s throughput, which is why we selected a ViT with a moderate number of parameters (600M NaViT used in POINTS1.5). Combined with our support for SGLang, we currently achieve a very satisfactory throughput. We will also provide support for vLLM in the future.
Open-source Technical Approach: In the POINTS-Reader paper, we propose a two-stage data augmentation strategy. The first stage leverages automated data to endow the model with basic document extraction capabilities. In the subsequent stage, continuous self-evolution improves the quality of data generated by the model. The self-evolution approach in the second stage is highly extensible and can be applied to virtually any model.
Results
For comparison, we use the results reported by OmniDocBench and POINTS-Reader. Compared with the version submitted to EMNLP 2025, the current release provides (1) improved performance and (2) support for Chinese documents. Both enhancements build upon the methods proposed in this paper.
Method Type
Methods
OverallEdit↓
TextEdit↓
FormulaEdit↓
FormulaCDM↑
TableTEDS↑
TableEdit↓
Read OrderEdit↓
EN
ZH
EN
ZH
EN
ZH
EN
ZH
EN
ZH
EN
ZH
EN
ZH
Pipeline Tools
MinerU-pipeline-2.1.1
0.162
0.244
0.072
0.111
0.313
0.581
79.2
48.8
77.4
79.5
0.166
0.15
0.097
0.136
Marker-1.2.3
0.336
0.556
0.08
0.315
0.53
0.883
17.6
11.7
67.6
49.2
0.619
0.685
0.114
0.34
Marker-1.7.1
0.296
0.497
0.085
0.293
0.374
0.688
79.0
36.7
67.6
54.0
0.609
0.678
0.116
0.329
PaddleOCR PP-StructureV3
0.145
0.206
0.058
0.088
0.295
0.535
81.8
52.1
77.2
83.9
0.159
0.109
0.069
0.091
Mathpix
0.191
0.364
0.105
0.381
0.306
0.454
82.7
64.6
77.0
67.1
0.243
0.32
0.108
0.304
Docling-2.14.0
0.589
0.909
0.416
0.987
0.999
1
-
-
61.3
25.0
0.627
0.810
0.313
0.837
Pix2Text-1.1.2.3
0.32
0.528
0.138
0.356
0.276
0.611
78.4
39.6
73.6
66.2
0.584
0.645
0.281
0.499
Unstructured-0.17.2
0.586
0.716
0.198
0.481
0.999
1
-
-
0
0.064
1
0.998
0.145
0.387
OpenParse-0.7.0
0.646
0.814
0.681
0.974
0.996
1
0.106
0
64.8
27.5
0.284
0.639
0.595
0.641
Expert VLMs
POINTS-Reader-3B
0.133
0.212
0.062
0.139
0.304
0.465
-
-
83.7
85.0
0.128
0.136
0.036
0.106
MinerU2.0-2505-0.9B
0.133
0.238
0.045
0.115
0.273
0.506
79.0
50.8
82.1
83.4
0.15
0.209
0.066
0.122
MonkeyOCR-pro-1.2B
0.146
0.221
0.068
0.118
0.272
0.452
76.7
63.3
81.3
85.5
0.149
0.134
0.093
0.179
Dolphin
0.356
0.440
0.352
0.440
0.465
0.604
61.6
40.4
70.2
56.8
0.258
0.367
0.35
0.351
Nanonets-OCR-s
0.283
0.295
0.134
0.231
0.518
0.546
63.2
52.0
76.8
79.4
0.343
0.201
0.135
0.2
OCRFlux-3B
0.238
0.349
0.112
0.256
0.447
0.716
60.2
31.9
69.0
80.0
0.269
0.162
0.126
0.263
GOT-OCR
0.287
0.411
0.189
0.315
0.360
0.528
74.3
45.3
53.2
47.2
0.459
0.52
0.141
0.28
Nougat
0.452
0.973
0.365
0.998
0.488
0.941
15.1
16.8
39.9
0.0
0.572
1.000
0.382
0.954
Mistral OCR
0.268
0.439
0.072
0.325
0.318
0.495
64.6
45.9
75.8
63.6
0.6
0.65
0.083
0.284
OLMOCR-sglang
0.326
0.469
0.097
0.293
0.455
0.655
74.3
43.2
68.1
61.3
0.608
0.652
0.145
0.277
SmolDocling-256M_transformer
0.493
0.816
0.262
0.838
0.753
0.997
32.1
0.551
44.9
16.5
0.729
0.907
0.227
0.522
General VLMs
Gemini2.0-flash
0.191
0.264
0.091
0.139
0.389
0.584
77.6
43.6
79.7
78.9
0.193
0.206
0.092
0.128
Gemini2.5-Pro
0.148
0.212
0.055
0.168
0.356
0.439
80.0
69.4
85.8
86.4
0.13
0.119
0.049
0.121
GPT4o
0.233
0.399
0.144
0.409
0.425
0.606
72.8
42.8
72.0
62.9
0.234
0.329
0.128
0.251
Qwen2-VL-72B
0.252
0.327
0.096
0.218
0.404
0.487
82.2
61.2
76.8
76.4
0.387
0.408
0.119
0.193
Qwen2.5-VL-7B
0.316
0.399
0.151
0.243
0.376
0.5
75.3
57.3
71.1
71.3
0.598
0.627
0.138
0.226
Qwen2.5-VL-72B
0.214
0.261
0.092
0.18
0.315
0.434
81.4
64.1
81.4
83.0
0.341
0.262
0.106
0.168
InternVL2-76B
0.44
0.443
0.353
0.290
0.543
0.701
67.4
44.1
63.0
60.2
0.547
0.555
0.317
0.228
InternVL3-78B
0.218
0.296
0.117
0.21
0.38
0.533
79.2
58.8
69.0
73.9
0.279
0.282
0.095
0.161
Examples
Single Column with Latex Formula
Single Column with Table
Multi-column with Latex Formula
Multi-column with Table
Getting Started
This following code snippet has been tested with following environment:
If you encounter environment issues, please feel free to open an issue.
Run with Transformers
Please first install WePOINTS using the following command:
git clone https://github.com/WePOINTS/WePOINTS.git
cd ./WePOINTS
pip install -e .
from transformers import AutoModelForCausalLM, AutoTokenizer, Qwen2VLImageProcessor
import torch
# We recommend using the following prompt to better performance,
# since it is used throughout the training process.
prompt = (
'Please extract all the text from the image with the following requirements:\n'
'1. Return tables in HTML format.\n'
'2. Return all other text in Markdown format.'
)
image_path = '/path/to/your/local/image'
model_path = 'tencent/POINTS-Reader'
model = AutoModelForCausalLM.from_pretrained(model_path,
trust_remote_code=True,
torch_dtype=torch.float16,
device_map='cuda')
tokenizer = AutoTokenizer.from_pretrained(model_path, trust_remote_code=True)
image_processor = Qwen2VLImageProcessor.from_pretrained(model_path)
content = [
dict(type='image', image=image_path),
dict(type='text', text=prompt)
]
messages = [
{
'role': 'user',
'content': content
}
]
generation_config = {
'max_new_tokens': 2048,
'repetition_penalty': 1.05,
'temperature': 0.7,
'top_p': 0.8,
'top_k': 20,
'do_sample': True
}
response = model.chat(
messages,
tokenizer,
image_processor,
generation_config
)
print(response)
If you encounter issues like repeation, please try to increase the resolution of the image to allievate the problem.
Deploy with SGLang
We have created a Pull Request for SGLang. You can check out this branch and install SGLang in editable mode by following the official guide prior to the merging of this PR.
How to Deploy
You can deploy POINTS-Reader with SGLang using the following command:
You can use the following code to obtain results from SGLang:
from typing import List
import requests
import json
def call_wepoints(messages: List[dict],
temperature: float = 0.0,
max_new_tokens: int = 2048,
repetition_penalty: float = 1.05,
top_p: float = 0.8,
top_k: int = 20,
do_sample: bool = True,
url: str = 'http://127.0.0.1:8081/v1/chat/completions') -> str:
"""Query WePOINTS model to generate a response.
Args:
messages (List[dict]): A list of messages to be sent to WePOINTS. The
messages should be the standard OpenAI messages, like:
[
{
'role': 'user',
'content': [
{
'type': 'text',
'text': 'Please describe this image in short'
},
{
'type': 'image_url',
'image_url': {'url': /path/to/image.jpg}
}
]
}
]
temperature (float, optional): The temperature of the model.
Defaults to 0.0.
max_new_tokens (int, optional): The maximum number of new tokens to generate.
Defaults to 2048.
repetition_penalty (float, optional): The penalty for repetition.
Defaults to 1.05.
top_p (float, optional): The top-p probability threshold.
Defaults to 0.8.
top_k (int, optional): The top-k sampling vocabulary size.
Defaults to 20.
do_sample (bool, optional): Whether to use sampling or greedy decoding.
Defaults to True.
url (str, optional): The URL of the WePOINTS model.
Defaults to 'http://127.0.0.1:8081/v1/chat/completions'.
Returns:
str: The generated response from WePOINTS.
"""
data = {
'model': 'WePoints',
'messages': messages,
'max_new_tokens': max_new_tokens,
'temperature': temperature,
'repetition_penalty': repetition_penalty,
'top_p': top_p,
'top_k': top_k,
'do_sample': do_sample,
}
response = requests.post(url,
json=data)
response = json.loads(response.text)
response = response['choices'][0]['message']['content']
return response
prompt = (
'Please extract all the text from the image with the following requirements:\n'
'1. Return tables in HTML format.\n'
'2. Return all other text in Markdown format.'
)
messages = [{
'role': 'user',
'content': [
{
'type': 'text',
'text': prompt
},
{
'type': 'image_url',
'image_url': {'url': '/path/to/image.jpg'}
}
]
}]
response = call_wepoints(messages)
print(response)
Known Issues
Complex Document Parsing: POINTS-Reader can struggle with complex layouts (e.g., newspapers), often producing repeated or missing content.
Handwritten Document Parsing: It also has difficulty handling handwritten inputs (e.g., receipts, notes), which can lead to recognition errors or omissions.
Multi-language Document Parsing: POINTS-Reader currently supports only English and Chinese, limiting its effectiveness on other languages.
Star History
Citation
If you use this model in your work, please cite the following paper:
@inproceedings{liu2025points,
title={POINTS-Reader: Distillation-Free Adaptation of Vision-Language Models for Document Conversion},
author={Liu, Yuan and Zhao, Zhongyin and Tian, Le and Wang, Haicheng and Ye, Xubing and You, Yangxiu and Yu, Zilin and Wu, Chuhan and Xiao, Zhou and Yu, Yang and others},
booktitle={Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing},
pages={1576--1601},
year={2025}
}
@article{liu2024points1,
title={POINTS1. 5: Building a Vision-Language Model towards Real World Applications},
author={Liu, Yuan and Tian, Le and Zhou, Xiao and Gao, Xinyu and Yu, Kavio and Yu, Yang and Zhou, Jie},
journal={arXiv preprint arXiv:2412.08443},
year={2024}
}
@article{liu2024points,
title={POINTS: Improving Your Vision-language Model with Affordable Strategies},
author={Liu, Yuan and Zhao, Zhongyin and Zhuang, Ziyuan and Tian, Le and Zhou, Xiao and Zhou, Jie},
journal={arXiv preprint arXiv:2409.04828},
year={2024}
}
@article{liu2024rethinking,
title={Rethinking Overlooked Aspects in Vision-Language Models},
author={Liu, Yuan and Tian, Le and Zhou, Xiao and Zhou, Jie},
journal={arXiv preprint arXiv:2405.11850},
year={2024}
}
POINTS-Reader: Distillation-Free Adaptation of Vision-Language Models for Document Conversion
We are delighted to announce that the WePOINTS family has welcomed a new member: POINTS-Reader, a vision-language model for end-to-end document conversion.
News
Introduction
Simplicity: POINTS-Reader is a very streamlined model that fully follows the structure of POINTS1.5, except that we have replaced Qwen2.5-7B-Instruct with Qwen2.5-3B-Instruct. Moreover, the input and output of POINTS-Reader are extremely straightforward. The input consists of a fixed prompt and a document image, and the output contains only a string (text extracted from the document image). The model’s output is the final result delivered to the user without any post-processing.
Performance: Currently, POINTS-Reader supports extraction from both Chinese and English documents, achieving impressive results, with scores of 0.133 for English and 0.212 for Chinese on OmniDocBench.
High Throughput: With current mainstream inference frameworks, such as SGLang and vLLM, optimization is predominantly focused on LLMs. Thus, a large ViT would significantly impact the model’s throughput, which is why we selected a ViT with a moderate number of parameters (600M NaViT used in POINTS1.5). Combined with our support for SGLang, we currently achieve a very satisfactory throughput. We will also provide support for vLLM in the future.
Open-source Technical Approach: In the POINTS-Reader paper, we propose a two-stage data augmentation strategy. The first stage leverages automated data to endow the model with basic document extraction capabilities. In the subsequent stage, continuous self-evolution improves the quality of data generated by the model. The self-evolution approach in the second stage is highly extensible and can be applied to virtually any model.
Results
For comparison, we use the results reported by OmniDocBench and POINTS-Reader. Compared with the version submitted to EMNLP 2025, the current release provides (1) improved performance and (2) support for Chinese documents. Both enhancements build upon the methods proposed in this paper.
Examples
Single Column with Latex Formula
Single Column with Table
Multi-column with Latex Formula
Multi-column with Table
Getting Started
This following code snippet has been tested with following environment:
If you encounter environment issues, please feel free to open an issue.
Run with Transformers
Please first install WePOINTS using the following command:
If you encounter issues like repeation, please try to increase the resolution of the image to allievate the problem.
Deploy with SGLang
We have created a Pull Request for SGLang. You can check out this branch and install SGLang in editable mode by following the official guide prior to the merging of this PR.
How to Deploy
You can deploy POINTS-Reader with SGLang using the following command:
How to Use
You can use the following code to obtain results from SGLang:
Known Issues
Star History
Citation
If you use this model in your work, please cite the following paper: