pith. sign in

hub Canonical reference

GR-2: A Generative Video-Language-Action Model with Web-Scale Knowledge for Robot Manipulation

Canonical reference. 81% of citing Pith papers cite this work as background.

99 Pith papers citing it
Background 81% of classified citations
abstract

We present GR-2, a state-of-the-art generalist robot agent for versatile and generalizable robot manipulation. GR-2 is first pre-trained on a vast number of Internet videos to capture the dynamics of the world. This large-scale pre-training, involving 38 million video clips and over 50 billion tokens, equips GR-2 with the ability to generalize across a wide range of robotic tasks and environments during subsequent policy learning. Following this, GR-2 is fine-tuned for both video generation and action prediction using robot trajectories. It exhibits impressive multi-task learning capabilities, achieving an average success rate of 97.7% across more than 100 tasks. Moreover, GR-2 demonstrates exceptional generalization to new, previously unseen scenarios, including novel backgrounds, environments, objects, and tasks. Notably, GR-2 scales effectively with model size, underscoring its potential for continued growth and application. Project page: \url{https://gr2-manipulation.github.io}.

hub tools

citation-role summary

background 31 method 4 baseline 1

citation-polarity summary

claims ledger

  • abstract We present GR-2, a state-of-the-art generalist robot agent for versatile and generalizable robot manipulation. GR-2 is first pre-trained on a vast number of Internet videos to capture the dynamics of the world. This large-scale pre-training, involving 38 million video clips and over 50 billion tokens, equips GR-2 with the ability to generalize across a wide range of robotic tasks and environments during subsequent policy learning. Following this, GR-2 is fine-tuned for both video generation and action prediction using robot trajectories. It exhibits impressive multi-task learning capabilities,
  • background Vidar [77], Veo-Act [78], pi0.7 [ 79], V AG [80] Implicit VPP [11], VILP [ 81], Video Policy [13], ARDuP [ 82], mimic-video [ 12], LAP A [15], villa-X [ 83], S-V AM [14], OmniVTA [84], MWM [85] Joint W AM Autoregression GR1 [86], grmg [ 87], GR2 [88], Co TVLA [89], WorldVLA [90], rynnvla2 [91] VLA-JEP A [92], F1-VLA [93] Diffusion-based P AD [21], VideoVLA [94], UWM [20], DreamZero [ 17], CosmosPolicy [16], FLARE [95], UV A [96] FRAPPE [97], CoV AR [98], LDA1B [99], W A V [100], DUST [101], Ling

co-cited works

clear filters

representative citing papers

VoLo: A Physical Orchestrator for Open-Vocabulary Long-Horizon Manipulation

cs.RO · 2026-06-05 · unverdicted · novelty 7.0

VoLoAgent uses a VLM to steer heterogeneous robot capabilities as interruptible tools for long-horizon manipulation and introduces the RoboVoLo benchmark, claiming substantial outperformance over single VLA/VLM or tool-based systems with real-robot validation.

Point Tracking Improves World Action Models

cs.RO · 2026-05-22 · unverdicted · novelty 7.0

JOPAT jointly models pixels, point tracks, and actions in a diffusion transformer and reports gains over pixel-only baselines on long-horizon robot tasks with occlusion and off-screen motion.

T-Rex: Tactile-Reactive Dexterous Manipulation

cs.RO · 2026-06-15 · unverdicted · novelty 6.0

T-Rex introduces a large tactile dataset and MoT architecture that achieves over 30% higher success rates than baselines on 12 tasks requiring force control and deformable object handling.

citing papers explorer

Showing 20 of 20 citing papers after filters.

  • DreamGen: Unlocking Generalization in Robot Learning through Video World Models cs.RO · 2025-05-19 · unverdicted · none · ref 49 · internal anchor

    DreamGen trains robot policies on synthetic trajectories from adapted video world models, enabling a humanoid robot to perform 22 new behaviors in seen and unseen environments from a single pick-and-place teleoperation dataset.

  • AstraNav-World: World Model for Foresight Control and Consistency cs.CV · 2025-12-25 · unverdicted · none · ref 6 · internal anchor

    AstraNav-World unifies diffusion video generation and vision-language action planning in a single bidirectional model that improves trajectory accuracy, success rates, and zero-shot real-world adaptation in embodied navigation.

  • HiF-VLA: Hindsight, Insight and Foresight through Motion Representation for Vision-Language-Action Models cs.RO · 2025-12-10 · unverdicted · none · ref 8 · internal anchor

    HiF-VLA improves long-horizon robotic manipulation by encoding past motion as hindsight priors and anticipating future motion through foresight reasoning inside a VLA framework.

  • R2RGEN: Real-to-Real 3D Data Generation for Spatially Generalized Manipulation cs.RO · 2025-10-09 · unverdicted · none · ref 3 · internal anchor

    R2RGen introduces a simulator-free three-stage pipeline that parses, augments, and post-processes real pointcloud observation-action pairs to improve spatial generalization in robotic manipulation policies.

  • Video Generators are Robot Policies cs.RO · 2025-08-01 · conditional · none · ref 47 · internal anchor

    Training models to generate videos of robot actions produces policies that generalize better to new objects and tasks while using far less demonstration data than standard behavior cloning.

  • AnyPos: Automated Task-Agnostic Actions for Bimanual Manipulation cs.CV · 2025-07-17 · unverdicted · none · ref 7 · internal anchor

    AnyPos automates task-agnostic action collection and inverse-dynamics modeling with arm/end-effector decoupling plus a direction-aware decoder, delivering 51% higher test accuracy and 30-40% better success rates on bimanual tasks.

  • DreamVLA: A Vision-Language-Action Model Dreamed with Comprehensive World Knowledge cs.CV · 2025-07-06 · unverdicted · none · ref 18 · internal anchor

    DreamVLA uses dynamic-region-guided world knowledge prediction, block-wise attention to disentangle information types, and a diffusion transformer for actions, reaching 76.7% success on real robot tasks and 4.44 average length on CALVIN ABC-D.

  • ReSim: Reliable World Simulation for Autonomous Driving cs.CV · 2025-06-11 · unverdicted · none · ref 54 · internal anchor

    ReSim is a controllable video world model trained on heterogeneous real and simulated driving data that achieves higher fidelity and controllability for both expert and non-expert actions, plus a Video2Reward module for estimating action quality from simulated futures.

  • Real-Time Execution of Action Chunking Flow Policies cs.RO · 2025-06-09 · unverdicted · none · ref 9 · internal anchor

    Real-time chunking (RTC) allows diffusion- and flow-based action chunking policies to execute smoothly and asynchronously, maintaining high success rates on dynamic tasks even with significant inference latency.

  • FLARE: Robot Learning with Implicit World Modeling cs.RO · 2025-05-21 · unverdicted · none · ref 37 · internal anchor

    FLARE integrates predictive latent world modeling into diffusion transformer policies for robots, delivering up to 26% gains on multitask manipulation benchmarks and enabling co-training with action-free human videos.

  • GraspVLA: a Grasping Foundation Model Pre-trained on Billion-scale Synthetic Action Data cs.RO · 2025-05-06 · unverdicted · none · ref 30 · internal anchor

    GraspVLA shows that pretraining a grasping model on a billion synthetic action frames enables zero-shot open-vocabulary performance and sim-to-real transfer.

  • CoT-VLA: Visual Chain-of-Thought Reasoning for Vision-Language-Action Models cs.CV · 2025-03-27 · unverdicted · none · ref 5 · internal anchor

    CoT-VLA is a 7B VLA that generates future visual frames autoregressively as planning goals before actions, outperforming prior VLAs by 17% on real-world tasks and 6% in simulation.

  • GR00T N1: An Open Foundation Model for Generalist Humanoid Robots cs.RO · 2025-03-18 · unverdicted · none · ref 19 · internal anchor

    GR00T N1 is a new open VLA foundation model for humanoid robots that outperforms imitation learning baselines in simulation and shows strong performance on real-world bimanual manipulation tasks.

  • FAST: Efficient Action Tokenization for Vision-Language-Action Models cs.RO · 2025-01-16 · unverdicted · none · ref 11 · internal anchor

    FAST applies discrete cosine transform to robot action sequences for efficient tokenization, enabling autoregressive VLAs to succeed on high-frequency dexterous tasks and scale to 10k hours of data while matching diffusion VLA performance with up to 5x faster training.

  • XR-1: Towards Versatile Vision-Language-Action Models via Learning Unified Vision-Motion Representations cs.RO · 2025-11-04 · unverdicted · none · ref 14 · internal anchor

    XR-1 introduces Unified Vision-Motion Codes learned by dual-branch VQ-VAE and applies them in a three-stage training pipeline to outperform prior VLA models on 120+ real-world manipulation tasks across six robot embodiments.

  • GR-3 Technical Report cs.RO · 2025-07-21 · unverdicted · none · ref 13 · internal anchor

    GR-3 is a VLA model that generalizes to novel objects, environments, and abstract instructions, outperforms the π0 baseline, and integrates with the new ByteMini bi-manual mobile robot.

  • A Survey on Vision-Language-Action Models: An Action Tokenization Perspective cs.RO · 2025-07-02 · unverdicted · none · ref 257 · internal anchor

    The survey frames VLA models as pipelines that generate progressively grounded action tokens and classifies those tokens into eight types to guide future development.

  • WorldVLA: Towards Autoregressive Action World Model cs.RO · 2025-06-26 · unverdicted · none · ref 9 · internal anchor

    WorldVLA unifies VLA and world models in one autoregressive system, shows they boost each other, and adds an attention mask to stop error buildup when generating action chunks.

  • SpatialVLA: Exploring Spatial Representations for Visual-Language-Action Model cs.RO · 2025-01-27 · unverdicted · none · ref 8 · internal anchor

    SpatialVLA adds 3D-aware position encoding and adaptive discretized action grids to visual-language-action models, enabling strong zero-shot performance and fine-tuning on new robot setups after pre-training on 1.1 million real-world episodes.

  • Cosmos World Foundation Model Platform for Physical AI cs.CV · 2025-01-07 · unverdicted · none · ref 22 · internal anchor

    The Cosmos platform supplies open-source pre-trained world models and supporting tools for building fine-tunable digital world simulations to train Physical AI.