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Main Authors: Huang, Siqiao, Kaushik, Partha, Chen, Michael, Pan, Hengkai, Geng, Kaiwen, Chehab, Omar, Moreno-Pino, Fernando, Simchowitz, Max
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.23993
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author Huang, Siqiao
Kaushik, Partha
Chen, Michael
Pan, Hengkai
Geng, Kaiwen
Chehab, Omar
Moreno-Pino, Fernando
Simchowitz, Max
author_facet Huang, Siqiao
Kaushik, Partha
Chen, Michael
Pan, Hengkai
Geng, Kaiwen
Chehab, Omar
Moreno-Pino, Fernando
Simchowitz, Max
contents World models have become a central paradigm for learning predictive simulators that support generation, planning, and decision-making. Yet, despite rapid progress in industry-scale interactive video generation, the broader research community still lacks compact, reproducible, and easily extensible implementations for studying the design choices underlying modern world models. We introduce Nano World Models, a minimalist codebase for future video prediction centered around diffusion forcing. Nano World Models provides a unified interface for generative objectives, model scales, action-conditioning mechanisms, latent observation spaces, datasets, evaluation protocols, and long-horizon rollout procedures. This design enables controlled studies of world-modeling components that are often entangled across separate implementations. Through experiments across simple control environments, game simulation, and real-robot data, we examine how prediction parameterization, architecture scale, action injection, sampling budget, and domain complexity affect video prediction quality and autoregressive rollout behavior. By releasing code, configurations, evaluation scripts, and pretrained checkpoints, Nano World Models aims to provide a compact yet extensible experimental substrate for open, reproducible, and scientific world-model research.
format Preprint
id arxiv_https___arxiv_org_abs_2605_23993
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Nano World Models: A Minimalist Implementation of Future Video Prediction
Huang, Siqiao
Kaushik, Partha
Chen, Michael
Pan, Hengkai
Geng, Kaiwen
Chehab, Omar
Moreno-Pino, Fernando
Simchowitz, Max
Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
World models have become a central paradigm for learning predictive simulators that support generation, planning, and decision-making. Yet, despite rapid progress in industry-scale interactive video generation, the broader research community still lacks compact, reproducible, and easily extensible implementations for studying the design choices underlying modern world models. We introduce Nano World Models, a minimalist codebase for future video prediction centered around diffusion forcing. Nano World Models provides a unified interface for generative objectives, model scales, action-conditioning mechanisms, latent observation spaces, datasets, evaluation protocols, and long-horizon rollout procedures. This design enables controlled studies of world-modeling components that are often entangled across separate implementations. Through experiments across simple control environments, game simulation, and real-robot data, we examine how prediction parameterization, architecture scale, action injection, sampling budget, and domain complexity affect video prediction quality and autoregressive rollout behavior. By releasing code, configurations, evaluation scripts, and pretrained checkpoints, Nano World Models aims to provide a compact yet extensible experimental substrate for open, reproducible, and scientific world-model research.
title Nano World Models: A Minimalist Implementation of Future Video Prediction
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2605.23993