MolmoAct2: Action Reasoning Models for Real-world Deployment
About
Vision-Language-Action (VLA) models aim to provide a single generalist controller for robots, but today's systems fall short on the criteria that matter for real-world deployment. Frontier models are closed, open-weight alternatives are tied to expensive hardware, reasoning-augmented policies pay prohibitive latency for their grounding, and fine-tuned success rates remain below the threshold for dependable use. We present MolmoAct2, a fully open action reasoning model built for practical deployment, advancing its predecessor along five axes. We introduce MolmoER, a VLM backbone specialized for spatial and embodied reasoning, trained on a 3.3M-sample corpus with a specialize-then-rehearse recipe. We release three new datasets spanning low-to-medium cost platforms, including MolmoAct2-BimanualYAM, 720 hours of teleoperated bimanual trajectories that constitute the largest open bimanual dataset to date, together with quality-filtered Franka (DROID) and SO100/101 subsets. We provide OpenFAST, an open-weight, open-data action tokenizer trained on millions of trajectories across five embodiments. We redesign the architecture to graft a flow-matching continuous-action expert onto a discrete-token VLM via per-layer KV-cache conditioning. Finally, we propose MolmoThink, an adaptive-depth reasoning variant that re-predicts depth tokens only for scene regions that change between timesteps, retaining geometric grounding at a fraction of prior latency. In the most extensive empirical study of any open VLA to date, spanning 7 simulation and real-world benchmarks, MolmoAct2 outperforms strong baselines including Pi-05, while MolmoER surpasses GPT-5 and Gemini Robotics ER-1.5 across 13 embodied-reasoning benchmarks. We release model weights, training code, and complete training data. Project page: https://allenai.org/blog/molmoact2
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Robotic Manipulation | LIBERO | Spatial Success Rate98.8 | 527 | |
| Spatial Reasoning | VSI-Bench | -- | 255 | |
| Spatial Reasoning | EmbSpatial | Overall Accuracy78.8 | 103 | |
| Spatial Reasoning | MindCube | Accuracy57 | 87 | |
| Spatial Reasoning | CV-Bench | Accuracy87.8 | 79 | |
| Image Pointing | Point-Bench | Average Score77.3 | 43 | |
| Spatial Reasoning | RefSpatial | Accuracy (Spatial Reasoning)52.5 | 38 | |
| Embodied Question Answering | OpenEQA | -- | 21 | |
| Embodied Visual Question Answering | ERQA | Accuracy46.8 | 19 | |
| Spatial Understanding | Where2Place | Accuracy54 | 17 |