Instructions to use RLWRLD/RLDX-1-PT with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers
How to use RLWRLD/RLDX-1-PT with Transformers:
# Load model directly from transformers import RLDX model = RLDX.from_pretrained("RLWRLD/RLDX-1-PT", dtype="auto") - Notebooks
- Google Colab
- Kaggle
| license: other | |
| license_name: rlwrld-model-license-v1.0 | |
| license_link: LICENSE.md | |
| library_name: transformers | |
| pipeline_tag: robotics | |
| tags: | |
| - robotics | |
| - vla | |
| - vision-language-action | |
| - manipulation | |
| - flow-matching | |
| - rldx | |
| base_model: Qwen/Qwen3-VL-8B-Instruct | |
| # RLDX-1 | |
| [Paper](https://arxiv.org/abs/2605.03269) · [Project page](https://rlwrld.ai/rldx-1) · [Code](https://github.com/RLWRLD/RLDX-1) · [Models](https://huggingface.co/collections/RLWRLD/rldx-1) | |
| <p align="center"> | |
| <img src="teaser.png" width="100%" alt="RLDX-1 teaser"> | |
| </p> | |
| **RLDX-1** is a general-purpose Robot Foundation Model designed for dexterous | |
| manipulation. Powered by a **Multi-Stream Action Transformer (MSAT)**, it | |
| seamlessly unifies multimodal perception (visual + tactile), high-DoF | |
| actuation, and memory-aware decision-making in a single architecture. RLDX-1 | |
| achieves state-of-the-art performance across diverse simulation benchmarks | |
| and is fully validated on real-world hardware. | |
| This repository hosts **`RLDX-1-PT`** — a foundation checkpoint pretrained on | |
| a broad mixture of public manipulation corpora, from which all downstream | |
| `RLDX-1-{FT,MT}-*` releases finetune. Use it as your starting point for new | |
| embodiments and tasks. | |
| <p align="center"> | |
| <img src="architecture.png" width="90%" alt="RLDX-1 architecture"> | |
| </p> | |
| ## Highlights | |
| - **Multi-Stream Action Transformer (MSAT).** Cognition, physics, and | |
| action each get a dedicated stream coupled by joint self-attention — | |
| an extension of MM-DiT to action modeling. | |
| - **Motion awareness.** Multi-frame observations + a motion module | |
| capture temporal dynamics; intermediate VLM layers compress video | |
| tokens to keep the policy efficient. | |
| - **Long-term memory.** A memory module fuses past cognition features | |
| with the current ones for history-grounded decisions beyond a short | |
| multi-frame window. | |
| - **Physical sensing.** Tactile and torque enter as a dedicated physics | |
| stream; the decoder is jointly trained to predict future physical | |
| signals. | |
| - **Three-stage training.** Pre-training (generalization) → mid-training | |
| (functionality) → post-training (task adaptation), with synthetic data | |
| augmenting rare manipulation scenarios. | |
| - **Real-time inference.** Static graph capture + custom fused kernels | |
| bring the all-modality model to **43.7 ms / step on RTX 5090 | |
| (1.63× speedup, >22 Hz)**. | |
| ## Released Checkpoints | |
| This card describes `RLDX-1-PT` (foundation). The full RLDX-1 model family: | |
| | Checkpoint | Description | Params | Embodiment Tag | | |
| |---|---|---|---| | |
| | [`RLDX-1-PT`](https://huggingface.co/RLWRLD/RLDX-1-PT) | Multi-source pretrained foundation (this repo) | 6.9B | per-dataset | | |
| | [`RLDX-1-VLM`](https://huggingface.co/RLWRLD/RLDX-1-VLM) | Qwen3-VL-8B vision-language backbone | 8B | — | | |
| | [`RLDX-1-FT-ROBOCASA`](https://huggingface.co/RLWRLD/RLDX-1-FT-ROBOCASA) | RoboCasa Kitchen 24-task finetune | 6.9B | `GENERAL_EMBODIMENT` | | |
| | [`RLDX-1-FT-RC365`](https://huggingface.co/RLWRLD/RLDX-1-FT-RC365) | RoboCasa-365 cross-task finetune | 6.9B | `GENERAL_EMBODIMENT` | | |
| | [`RLDX-1-FT-LIBERO`](https://huggingface.co/RLWRLD/RLDX-1-FT-LIBERO) | LIBERO 4-task suite (goal, object, spatial, long) finetune | 6.9B | `GENERAL_EMBODIMENT` | | |
| | [`RLDX-1-FT-SIMPLER-GOOGLE`](https://huggingface.co/RLWRLD/RLDX-1-FT-SIMPLER-GOOGLE) | SIMPLER Google VM/VA finetune | 6.9B | `OXE_FRACTAL` | | |
| | [`RLDX-1-FT-SIMPLER-WIDOWX`](https://huggingface.co/RLWRLD/RLDX-1-FT-SIMPLER-WIDOWX) | SIMPLER WidowX finetune | 6.9B | `OXE_BRIDGE_ORIG` | | |
| | [`RLDX-1-FT-GR1`](https://huggingface.co/RLWRLD/RLDX-1-FT-GR1) | GR-1 Tabletop finetune | 6.9B | `GENERAL_EMBODIMENT` | | |
| | [`RLDX-1-MT-DROID`](https://huggingface.co/RLWRLD/RLDX-1-MT-DROID) | DROID mid-train | 8.1B | `OXE_DROID` | | |
| | [`RLDX-1-MT-ALLEX`](https://huggingface.co/RLWRLD/RLDX-1-MT-ALLEX) | All add-ons (memory + motion + physics + video) | 8.1B | `GENERAL_EMBODIMENT` | | |
| ## Performance | |
| Success rate (%) of RLDX-1 finetuned on each benchmark's training set, | |
| evaluated with the linked checkpoint. | |
| | Benchmark | Success Rate | Checkpoint | | |
| |---|---|---| | |
| | LIBERO (Avg) | 97.8 | `RLDX-1-FT-LIBERO` | | |
| | LIBERO-Plus | 87.6 | `RLDX-1-FT-LIBERO` | | |
| | SIMPLER Google-VM | 81.5 | `RLDX-1-FT-SIMPLER-GOOGLE` | | |
| | SIMPLER Google-VA | 77.4 | `RLDX-1-FT-SIMPLER-GOOGLE` | | |
| | SIMPLER WidowX | 71.9 | `RLDX-1-FT-SIMPLER-WIDOWX` | | |
| | RoboCasa Kitchen (24 tasks) | 70.6 | `RLDX-1-FT-ROBOCASA` | | |
| | GR-1 Tabletop | 58.7 | `RLDX-1-FT-GR1` | | |
| | RoboCasa365 (Avg) | 31.5 | `RLDX-1-FT-RC365` | | |
| ## Quick start | |
| ```bash | |
| git clone https://github.com/RLWRLD/RLDX-1.git | |
| cd RLDX | |
| uv sync --python 3.10 | |
| uv pip install -e . | |
| ``` | |
| ### Inference (single step) | |
| ```python | |
| from rldx.policy.rldx_policy import RLDXPolicy | |
| from rldx.data.embodiment_tags import EmbodimentTag | |
| policy = RLDXPolicy( | |
| model_path="RLWRLD/RLDX-1-FT-ROBOCASA", | |
| embodiment_tag=EmbodimentTag.GENERAL_EMBODIMENT, | |
| device="cuda:0", | |
| ) | |
| action = policy.get_action(observation) | |
| ``` | |
| `RLDX-1-PT` is pretrained on a multi-source mixture, so for direct inference | |
| pair it with the embodiment tag matching your data source — e.g. | |
| `OXE_FRACTAL`, `OXE_BRIDGE_ORIG`, `OXE_DROID`, `GALAXEA`, `AGIBOT_GRIPPER`, | |
| `AGIBOT_DEXHAND`, `NEURAL_GR1`, `HUMANOID_EVERYDAY_G1`, | |
| `HUMANOID_EVERYDAY_H1`, etc. For custom robots, finetune. | |
| ### Real-time serving (ZeroMQ) | |
| ```bash | |
| uv run python rldx/eval/run_rldx_server.py \ | |
| --model-path RLWRLD/RLDX-1-FT-ROBOCASA \ | |
| --embodiment-tag GENERAL_EMBODIMENT \ | |
| --host 0.0.0.0 --port 20000 | |
| ``` | |
| A WebSocket server (`run_rldx_server_pi.py`) is also available for | |
| openpi-compatible clients. | |
| ### Finetune from `RLDX-1-PT` | |
| ```bash | |
| uv run python rldx/experiment/launch_train.py \ | |
| --base-model-path RLWRLD/RLDX-1-PT \ | |
| --dataset-path /path/to/your/dataset \ | |
| --embodiment-tag GENERAL_EMBODIMENT \ | |
| --video-length 4 --n-cog-tokens 64 \ | |
| --global-batch-size 64 --learning-rate 1e-4 \ | |
| --max-steps 60000 --save-steps 5000 \ | |
| --output-dir ./outputs/my_finetune | |
| ``` | |
| To enable add-ons (memory / motion / physics) see the recipes in the | |
| [main README](https://github.com/RLWRLD/RLDX-1#finetuning) and the | |
| [`training.md`](https://github.com/RLWRLD/RLDX-1/blob/main/docs/training.md) | |
| guide. | |
| ## Model details | |
| - **Architecture:** Multi-Stream Action Transformer (MSAT) policy with a | |
| Qwen3-VL vision-language backbone, cognition-token perceptual summary, | |
| optional Transformer memory, motion module, and tactile/torque physics | |
| encoder/decoder. Trained with flow matching. | |
| - **Inputs:** RGB video (default 4 frames), state proprioception, optional | |
| tactile / torque signals, language instruction. | |
| - **Outputs:** Action chunks of length 16 (default `--action-horizon 16`). | |
| - **Backbone:** [`Qwen/Qwen3-VL-8B-Instruct`](https://huggingface.co/Qwen/Qwen3-VL-8B-Instruct). | |
| - **Pretraining data:** A mixture of public manipulation corpora, covering | |
| 27 [Open X-Embodiment (OXE)](https://robotics-transformer-x.github.io/) | |
| datasets (DROID, Bridge, Fractal, Language Table, …) plus | |
| [Galaxea](https://galaxea.ai/), [AgiBot World](https://agibot-world.com/) | |
| (Gripper + Dexhand), ActionNet, Neural-Curated GR-1 humanoid trajectories, | |
| and Unitree G1 / H1 from | |
| [HumanoidEveryday](https://lipeng-zhou.github.io/HumanoidEveryday/). | |
| For a full architectural walkthrough see | |
| [`docs/architecture.md`](https://github.com/RLWRLD/RLDX-1/blob/main/docs/architecture.md). | |
| ## Intended use & limitations | |
| **Intended use.** Research on robotic manipulation, finetuning on custom | |
| embodiments, simulation benchmarking, and non-commercial real-robot | |
| deployment under the conditions of the RLWRLD Model License v1.0. | |
| **Out of scope.** Commercial deployment, military or weapons applications, | |
| non-consensual surveillance, and any use that violates applicable laws or | |
| regulations. See [`LICENSE.md`](LICENSE.md) §3.5 for the full list. | |
| **Limitations.** Performance depends heavily on embodiment match and data | |
| distribution. The pretrained checkpoint is OXE-conditioned and is not | |
| guaranteed to work zero-shot on novel embodiments without finetuning. | |
| Memory, motion, and physics modules are dormant in `RLDX-1-PT` and only | |
| activate when the corresponding flags are wired during finetuning (see | |
| `RLDX-1-MT-ALLEX`). | |
| ## Citation | |
| ```bibtex | |
| @article{rldx2026, | |
| title={RLDX-1 Technical Report}, | |
| author={Kim, Dongyoung and Jang, Huiwon and Koo, Myungkyu and Jang, Suhyeok and Kim, Taeyoung and others}, | |
| year={2026}, | |
| note={RLWRLD}, | |
| eprint={2605.03269}, | |
| archivePrefix={arXiv}, | |
| url={https://arxiv.org/abs/2605.03269} | |
| } | |
| ``` | |
| ## License | |
| Released under the **RLWRLD Model License v1.0** — a non-commercial license | |
| with attribution and share-alike requirements. See [`LICENSE.md`](LICENSE.md) for | |
| the full text. By using this model you agree to those terms, including the | |
| use restrictions in §3.5. | |