Comprehensive Analysis of Transparency and Accessibility of ChatGPT, DeepSeek, And other SoTA Large Language Models
Ranjan Sapkota, Shaina Raza, Manoj Karkee

TL;DR
This paper critically examines the transparency and accessibility of over 100 state-of-the-art large language models, highlighting gaps in openness, reporting standards, and implications for responsible AI deployment.
Contribution
It provides the first systematic analysis of transparency and accessibility in recent LLMs, emphasizing the distinction between open-source and open-weight models and identifying key transparency gaps.
Findings
Many models labeled as open-source lack full transparency.
Open-source models often do not report training data or key metrics.
Partial openness limits reproducibility and ethical assessment.
Abstract
Despite increasing discussions on open-source Artificial Intelligence (AI), existing research lacks a discussion on the transparency and accessibility of state-of-the-art (SoTA) Large Language Models (LLMs). The Open Source Initiative (OSI) has recently released its first formal definition of open-source software. This definition, when combined with standard dictionary definitions and the sparse published literature, provide an initial framework to support broader accessibility to AI models such as LLMs, but more work is essential to capture the unique dynamics of openness in AI. In addition, concerns about open-washing, where models claim openness but lack full transparency, has been raised, which limits the reproducibility, bias mitigation, and domain adaptation of these models. In this context, our study critically analyzes SoTA LLMs from the last five years, including ChatGPT,…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Ethics and Social Impacts of AI · Big Data and Digital Economy
MethodsLLaMA
