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metadata
license: mit
language:
  - en
pipeline_tag: text-generation
library_name: transformers
tags:
  - nlp
  - llm
  - mllm
datasets:
  - MBZUAI/Web2Code

CrystalChat-7B-Web2Code: a fully-reproducible vision large language model based on CrystalChat-7B LLM for webpage code generation

Model Description

CrystalChat-7B based multi-modal large language model (MLLM) mimics the training recipe used for Vicuna-7B based LLaVa-v1.5. CrystalChat-7B based MLLMs models are entirely transparent, having open-sourced all materials, including code, data, model checkpoint, intermediate results, and more at Web2Code: A Large-scale Webpage-to-Code Dataset and Evaluation Framework for Multimodal LLMs. CrystalChat-7B-Web2Code MLLM is specialized in webpage images-to-html code generation.

Web2Code Dataset

Our Web2Code instruction tuning dataset construction and instruction generation process involves four key components:

  1. Creation of new webpage image-code pair data (DWCG): We generated high-quality HTML webpage-code pairs following the CodeAlpaca prompt using GPT-3.5 and convert them into instruction-following data.
  2. Refinement of existing webpage code generation data (DWCGR): We transform existing datasets including WebSight and Pix2Code into an instruction- following data format similar to LLaVA data, so they can be used as instruction-following data to train MLLMs.
  3. Creation of a new text question-answer pair data (DWU): We generated a new question-answer pair dataset utilizing our new GPT-3.5 generated data for webpage understanding.
  4. Refinement of existing webpage understanding data (DWUR) : We refine the WebSRC question-answer data to improve its quality using the GPT-4.

The Web2Code instruction tuning dataset was released in Web2Code: A Large-scale Webpage-to-Code Dataset and Evaluation Framework for Multimodal LLMs.

Evaluations

Webpage Understanding Benchmark (WUB)

Results

LLM Backbone DWCG DWU DWCGR DWUR Accuracy (%)
CrystalChat-7B 73.94
βœ“ βœ“ 73.48
βœ“ βœ“ βœ“ βœ“ 74.14
Vicuna-7B 71.12
βœ“ 68.11
βœ“ 70.82
βœ“ βœ“ βœ“ βœ“ 71.23
Llama3-8B βœ“ βœ“ βœ“ βœ“ 74.84

Table 1: The accuracy of webpage understanding under various data configurations and LLM backbones. All models are instruction-tuned and evaluated on our WUB benchmark. We note that the general domain data (i.e., LLaVA) is included in all data configuration as default.

Webpage Code Generation Benchmark (WCGB)

Utilizing the same images as the WUB, this benchmark evaluates a multimodal model tasked with generating HTML code from webpage images based on specific instructions. Unlike traditionalcode-level evaluations, this benchmark assesses the generated webpage’s fidelity at the image level. We convert the predicted HTML codes back into images using Selenium WebDriver to allow a direct visual comparison with the ground truth images. The evaluation, depicted on the left side of Figure 6, considers 10 different aspects, which are further categorized into four evaluation matrices using the GPT-4 Vision API.

Results

LLM Backbone DWCG DWU DWCGR DWUR VSA ↑ CAD ↑ TCC ↑ UII ↑ Overall ↑
CrystalChat-7B 4.714 4.572 4.865 5.147 4.825
βœ“ 7.900 8.001 8.204 8.215 8.080
βœ“ βœ“ 7.900 8.001 8.204 8.215 8.080
βœ“ βœ“ βœ“ βœ“ 8.384 8.287 8.417 8.488 8.394
Vicuna-7B 3.042 3.250 3.333 3.167 3.198
βœ“ 6.871 6.660 6.589 6.897 6.754
βœ“ 3.898 3.489 3.340 3.651 3.595
βœ“ βœ“ βœ“ βœ“ 7.876 7.687 7.267 7.563 7.598
Llama3-8B βœ“ βœ“ βœ“ βœ“ 8.522 8.564 8.421 8.611 8.530

Table 2: The performance of different LLM backbones under various data configurations on our Webpage Code Generation Benchmark (WCGB). "VSA" denotes Visual Structure and Alignment, "CAD" represents Color and Aesthetic Design, "TCC" represents Textual and Content Consistency, and "UII" denotes User Interface and Interactivity.

About CrystalChat-7B-Web2Code:

  • 7 billion parameter LLM
  • CLIP ViT-L/14-336px vision encoder
  • Languages: English
  • Models Released: CrystalChat-7B-Web2Code
  • Trained in 2 stages
  • License: MIT

General Evaluations

General Evaluation Metrics for MLLMs. MME serves as an extensive evaluative benchmark, aiming to assess perceptual and cognitive capability of MLLMs within 14 sub-tasks. Additionally, we also evaluate the performance of our models on text-oriented visual question answering tasks employing a diverse set of benchmark datasets including ScienceQA and TextVQA. Furthermore, we assess our models’ ability toward anti-hallucination through POPE.

LLM Backbone MME-P MME-C POPE SciQA TextVQA
CrystalCoder-7B 1359.83 238.92 86.182 64.15 50.39
CrystalChat-7B 1456.53 308.21 86.96 67.77 57.84
Vicuna-7B 1481.12 302.85 87.174 67.97 56.49

Table 3: Comparison of different LLM backbones on visual language understanding benchmarks. All models are instruction-tuned on the general domain data (i.e. LLaVA)*

Data and Training Details

Pretrain Data

LLaVA Visual Instruct Pretrain LCS-558K is a filtered subset of the LAION, CC, and SBU datasets, featuring a more balanced distribution of concept coverage. The file includes multimodal synthesized conversations generated from image-caption pairs by incorporating randomly selected instructions such as "Describe this image." It is used for pretraining in LLaVA, with the raw CC-3M caption serving as the default answer.

Finetune Data

The finetuning data contains the following:

LLaVa Finetuning Data

The dataset chosen was created by LLaVA with academic-task-oriented VQA data mixture and data from ShareGPT. LLaVA Visual Instruct 150K is a dataset of GPT-generated multimodal instruction-following data. It is designed for visual instruction tuning and aims to develop large multimodal models with capabilities akin to GPT-4 in both vision and language.

Data Size Response formatting prompts
LLaVA [36] 158K –
ShareGPT [46] 40K –
VQAv2 [19] 83K Answer the question using a single word or phrase.
GQA [21] 72K Answer the question using a single word or phrase.
OKVQA [41] 9K Answer the question using a single word or phrase.
OCRVQA [42] 80K Answer the question using a single word or phrase.
A-OKVQA [45] 66K Answer with the option’s letter from the given choices directly.
TextCaps [47] 22K Provide a one-sentence caption for the provided image.
RefCOCO [24, 40] 48K Note: randomly choose between the two formats. Provide a short description for this region.
VG [25] 86K Provide the bounding box coordinate of the region this sentence describes.
Total 665K

Table 4: Instruction-following Data Mixture of LLaVA-1.5.*

Code Datasets

Dataset DWCG (ours) DWCGR (ours)
Instruction βœ“ βœ“
Source Synthetic Synthetic
Size 60K 824.7K
Avg Length (tokens) 471.8Β±162.3 652.85Β±157.0
Avg Tag Count 28.1Β±10.6 35.3Β±9.0
Avg DOM Depth 5.3Β±1.0 6.5Β±1.0
Avg Unique Tags 13.6Β±2.7 13.5Β±2.5

Table 5: DWCG is a newly generated GPT-3.5-based dataset, while DWCGR is the refined dataset that utilizes WebSight and Pix2Code datasets*

Webpage Understanding Datasets

Dataset DWU DWUR
Instruction βœ“ βœ“
Size 243.5K 51.5K

Table 6: Distribution of DWU and DWUR datasets. Both datasets include high-quality question-answer pairs for webpage understanding.*

Examples

Example 1:

Image 1 Image 2
Description of Image 1 Description of Image 2

Image 1 Image 2

Image 1: Original Input Image.

Image 2: CrystalChat-7B-Web2Code model output.

Example 2:

CrsytalChat-7B model generated output

Image 3: Hand-drawn webpage input to CrystalChat-7B-Web2Code generated output.

Loading Crystal

from transformers import AutoModelForCausalLM, AutoTokenizer

tokenizer = AutoTokenizer.from_pretrained(
                    "LLM360/CrystalChat-7B-MLLM",
                    padding_side="right",
                    trust_remote_code=True)

model = AutoModelForCausalLM.from_pretrained(
    "LLM360/CrystalChat-7B-MLLM",
    trust_remote_code=True,
    torch_dtype=torch.float16,
    device_map='auto',
    low_cpu_mem_usage=True
)

LLM-360

LLM-360 is an open research lab enabling community-owned AGI through open-source large model research and development.

Crystal-based Models enables community-owned AGI by creating standards and tools to advance the bleeding edge of LLM capability and empower knowledge transfer, research, and development.

We believe in a future where artificial general intelligence (AGI) is created by the community, for the community. Through an open ecosystem of equitable computational resources, high-quality data, and flowing technical knowledge, we can ensure ethical AGI development and universal access for all innovators.

Visit us

Citation

BibTeX:

@article{yun2024web2code,
  title={Web2Code: A Large-scale Webpage-to-Code Dataset and Evaluation Framework for Multimodal LLMs},
  author={Yun, Sukmin and Lin, Haokun and Thushara, Rusiru and Bhat, Mohammad Qazim and Wang, Yongxin and Jiang, Zutao and Deng, Mingkai and Wang, Jinhong and Tao, Tianhua and Li, Junbo and others},
  journal={arXiv preprint arXiv:2406.20098},
  year={2024}
}