Challenge: Existing benchmarks focus on specific aspects of web tasks but lack comprehensive coverage.
Approach: They propose a multilingual benchmark that evaluates three core web tasks: (1) website visual question answering, (2) code editing involving HTML/CSS/JavaScript, and (3) mockup-to-code generation.
Outcome: The proposed model performs well on basic information extraction, but struggles with reasoning and grounding, editing code to preserve functionality, and generating design-to-code that maintains hierarchy and supports multilingual content.

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Challenge: Existing benchmarks for large language models focus on webpage generation outcomes.
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BenchMAX: A Comprehensive Multilingual Evaluation Suite for Large Language Models (2025.findings-emnlp)

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Challenge: Existing multilingual benchmarks focus primarily on language understanding tasks.
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Challenge: Existing text-rich image understanding benchmarks lack scale and fragmented scenarios . a new full-image structured output format is proposed to enable fine-grained evaluation of perception and reasoning capabilities.
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