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Main Authors: Aubakirova, Malika, Atallah, Alex, Clark, Chris, Summerville, Justin, Midha, Anjney
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.10088
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author Aubakirova, Malika
Atallah, Alex
Clark, Chris
Summerville, Justin
Midha, Anjney
author_facet Aubakirova, Malika
Atallah, Alex
Clark, Chris
Summerville, Justin
Midha, Anjney
contents The past year has marked a turning point in the evolution and real-world use of large language models (LLMs). With the release of the first widely adopted reasoning model, o1, on December 5th, 2024, the field shifted from single-pass pattern generation to multi-step deliberation inference, accelerating deployment, experimentation, and new classes of applications. As this shift unfolded at a rapid pace, our empirical understanding of how these models have actually been used in practice has lagged behind. In this work, we leverage the OpenRouter platform, which is an AI inference provider across a wide variety of LLMs, to analyze over 100 trillion tokens of real-world LLM interactions across tasks, geographies, and time. In our empirical study, we observe substantial adoption of open-weight models, the outsized popularity of creative roleplay (beyond just the productivity tasks many assume dominate) and coding assistance categories, plus the rise of agentic inference. Furthermore, our retention analysis identifies foundational cohorts: early users whose engagement persists far longer than later cohorts. We term this phenomenon the Cinderella "Glass Slipper" effect. These findings underscore that the way developers and end-users engage with LLMs "in the wild" is complex and multifaceted. We discuss implications for model builders, AI developers, and infrastructure providers, and outline how a data-driven understanding of usage can inform better design and deployment of LLM systems.
format Preprint
id arxiv_https___arxiv_org_abs_2601_10088
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle State of AI: An Empirical 100 Trillion Token Study with OpenRouter
Aubakirova, Malika
Atallah, Alex
Clark, Chris
Summerville, Justin
Midha, Anjney
Artificial Intelligence
The past year has marked a turning point in the evolution and real-world use of large language models (LLMs). With the release of the first widely adopted reasoning model, o1, on December 5th, 2024, the field shifted from single-pass pattern generation to multi-step deliberation inference, accelerating deployment, experimentation, and new classes of applications. As this shift unfolded at a rapid pace, our empirical understanding of how these models have actually been used in practice has lagged behind. In this work, we leverage the OpenRouter platform, which is an AI inference provider across a wide variety of LLMs, to analyze over 100 trillion tokens of real-world LLM interactions across tasks, geographies, and time. In our empirical study, we observe substantial adoption of open-weight models, the outsized popularity of creative roleplay (beyond just the productivity tasks many assume dominate) and coding assistance categories, plus the rise of agentic inference. Furthermore, our retention analysis identifies foundational cohorts: early users whose engagement persists far longer than later cohorts. We term this phenomenon the Cinderella "Glass Slipper" effect. These findings underscore that the way developers and end-users engage with LLMs "in the wild" is complex and multifaceted. We discuss implications for model builders, AI developers, and infrastructure providers, and outline how a data-driven understanding of usage can inform better design and deployment of LLM systems.
title State of AI: An Empirical 100 Trillion Token Study with OpenRouter
topic Artificial Intelligence
url https://arxiv.org/abs/2601.10088