LGAIROJun 9, 2025

Scaling Laws of Motion Forecasting and Planning -- Technical Report

arXiv:2506.08228v219 citationsh-index: 30
Originality Synthesis-oriented
AI Analysis

This work addresses performance optimization for autonomous driving systems, though it is incremental as it applies known scaling principles from language modeling to a specific domain.

The study investigates scaling laws for transformer models in autonomous driving motion forecasting and planning, finding that performance improves as a power-law with compute budget and that optimal scaling requires model size to increase 1.5x faster than dataset size.

We study the empirical scaling laws of a family of encoder-decoder autoregressive transformer models on the task of joint motion forecasting and planning in the autonomous driving domain. Using a 500 thousand hours driving dataset, we demonstrate that, similar to language modeling, model performance improves as a power-law function of the total compute budget, and we observe a strong correlation between model training loss and model evaluation metrics. Most interestingly, closed-loop metrics also improve with scaling, which has important implications for the suitability of open-loop metrics for model development and hill climbing. We also study the optimal scaling of the number of transformer parameters and the training data size for a training compute-optimal model. We find that as the training compute budget grows, optimal scaling requires increasing the model size 1.5x as fast as the dataset size. We also study inference-time compute scaling, where we observe that sampling and clustering the output of smaller models makes them competitive with larger models, up to a crossover point beyond which a larger models becomes more inference-compute efficient. Overall, our experimental results demonstrate that optimizing the training and inference-time scaling properties of motion forecasting and planning models is a key lever for improving their performance to address a wide variety of driving scenarios. Finally, we briefly study the utility of training on general logged driving data of other agents to improve the performance of the ego-agent, an important research area to address the scarcity of robotics data for large capacity models training.

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