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XPENG-Peking University Collaborative Research Accepted by AAAI 2026: Introducing a Novel Visual Token Pruning Framework for Autonomous Driving

1. XPENG developed FastDriveVLA, enhancing autonomous driving AI capabilities. 2. Research accepted by AAAI 2026 with a selective 17.6% acceptance rate. 3. FastDriveVLA reduces computational load by 7.5x, improving efficiency. 4. XPENG's advancements reflect full-stack AI development in mobility. 5. XPENG aims for L4 autonomy, integrating AI systems in vehicles.

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Why Bullish?

XPENG's groundbreaking advancements in autonomous driving technology strengthen its competitive edge. Historical instances show that tech breakthroughs often lead to positive stock performance in the EV space.

How important is it?

This article reflects significant research advancements that could substantially influence investor confidence and market perception of XPENG.

Why Long Term?

The technology developed is poised for long-term impact as autonomous driving systems mature. Historically, innovations in AI for vehicles have taken time to fully integrate and influence market trends.

Related Companies

  • XPENG-PKU Research Breakthrough: XPENG, in collaboration with Peking University, has developed FastDriveVLA—a novel visual token pruning framework that enables autonomous driving AI to "drive like a human" by focusing only on essential information, achieving a 7.5x reduction in computational load.
  • Top-Tier AI Recognition: The research has been accepted by AAAI 2026, one of the world's premier AI conferences, which had a highly selective acceptance rate of just 17.6% this year.
  • Accelerating L4 Autonomy: This achievement underscores XPENG's full-stack capabilities in AI-driven mobility and advances the industry toward efficient, scalable deployment of next-generation autonomous driving systems.

GUANGZHOU, China, Dec. 28, 2025 /PRNewswire/ -- XPENG, in collaboration with Peking University, has had its paper "FastDriveVLA: Efficient End-to-End Driving via Plug-and-Play Reconstruction-based Token Pruning" accepted by AAAI 2026, one of the world's top conferences in artificial intelligence. AAAI 2026 received 23,680 submissions, with only 4,167 papers accepted, an acceptance rate of just 17.6%.

The paper introduces FastDriveVLA, an efficient visual token pruning framework specifically designed for end-to-end autonomous driving Vision-Language-Action (VLA) models. This work offers a new approach to visual token pruning by enabling AI to "drive like a human", focusing only on essential visual information while filtering out irrelevant data.

As AI large models evolve rapidly, VLA models are being widely adopted in end-to-end autonomous driving systems due to their strong capabilities in complex scene understanding and action reasoning. These models encode images into large numbers of visual tokens, which serve as the foundation for the model to "see" the world and make driving decisions. However, processing large numbers of tokens increases computational load onboard the vehicle, impacting inference speed and real-time performance.

While visual token pruning has been recognized as a viable method to accelerate VLA inference, existing approaches, whether based on text-visual attention or token similarity, have shown limitations in driving scenarios. To address this, XPENG and PKU developed FastDriveVLA, a novel reconstruction-based token pruning framework inspired by how human drivers focus on relevant foreground information while ignoring non-critical background areas.

The method introduces an adversarial foreground-background reconstruction strategy that enhances the model's ability to identify and retain valuable tokens. On the nuScenes autonomous driving benchmark, FastDriveVLA achieved state-of-the-art performance across various pruning ratios. When the number of visual tokens was reduced from 3,249 to 812, the framework achieved a nearly 7.5x reduction in computational load while maintaining high planning accuracy.

This is the second time this year that XPENG has been recognized at top-tier global AI conference. In June, XPENG was the only Chinese automaker invited to speak at CVPR WAD, where it shared advances in autonomous driving foundation models. At its AI Day in November, XPENG unveiled VLA 2.0 architecture, which removes the "language translation" step and enables direct Visual-to-Action generation, a breakthrough that redefines the conventional V-L-A pipeline.

These accomplishments reflect XPENG's full-stack in-house capabilities, from model architecture design and training to distillation and vehicle deployment. Looking ahead, XPENG remains committed to achieving L4 level autonomous driving to accelerate the integration of physical AI systems into vehicles, with the goal of delivering safe, efficient, and comfortable intelligent driving experiences to users around the world.

About XPENG

XPENG is committed to leading the transformation of future mobility through technological exploration, positioning itself as "Explorer of Future Mobility". Headquartered in Guangzhou, China, the company operates R&D centers in Beijing, Shanghai, Shenzhen, Zhaoqing, and Yangzhou, and has established intelligent manufacturing bases in Zhaoqing and Guangzhou.

XPENG pursues a global strategy for research, development, and sales, with an R&D center in the United States and subsidiaries across multiple European countries. The company adheres to full-stack in-house development of intelligent driver-assistance software and the development of core hardware, delivering an exceptional intelligent driving and riding experience for users.

On August 27, 2020, XPENG officially listed on the New York Stock Exchange (NYSE:XPEV), raising funds in an IPO that set a record at the time for the global new energy vehicle industry. On July 7, 2021, the company listed on the Hong Kong Stock Exchange (HKEX: 9868), becoming the first Chinese new-energy automaker to achieve dual primary listings in both Hong Kong and New York.

For more information, please visit https://www.xpeng.com/.

Contacts:

For Media Enquiries: Alison Liang, XPENG PR Department

Email: liangrq3@xiaopeng.com 

Cision View original content:https://www.prnewswire.com/news-releases/xpeng-peking-university-collaborative-research-accepted-by-aaai-2026-introducing-a-novel-visual-token-pruning-framework-for-autonomous-driving-302650038.html

SOURCE XPENG

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