.. _models_llm_qwen3-omni-instruct: ======================================== Qwen3-Omni-Instruct ======================================== - **Context Length:** 262144 - **Model Name:** Qwen3-Omni-Instruct - **Languages:** en, zh - **Abilities:** chat, vision, audio, omni, tools - **Description:** Qwen3-Omni is the natively end-to-end multilingual omni-modal foundation models. It processes text, images, audio, and video, and delivers real-time streaming responses in both text and natural speech. We introduce several architectural upgrades to improve performance and efficiency. Specifications ^^^^^^^^^^^^^^ Model Spec 1 (pytorch, 30 Billion) ++++++++++++++++++++++++++++++++++++++++ - **Model Format:** pytorch - **Model Size (in billions):** 30 - **Quantizations:** none - **Engines**: vLLM, Transformers - **Model ID:** Qwen/Qwen3-Omni-30B-A3B-Instruct - **Model Hubs**: `Hugging Face `__, `ModelScope `__ Execute the following command to launch the model, remember to replace ``${quantization}`` with your chosen quantization method from the options listed above:: xinference launch --model-engine ${engine} --model-name Qwen3-Omni-Instruct --size-in-billions 30 --model-format pytorch --quantization ${quantization} Model Spec 2 (awq, 30 Billion) ++++++++++++++++++++++++++++++++++++++++ - **Model Format:** awq - **Model Size (in billions):** 30 - **Quantizations:** 4bit, 8bit - **Engines**: vLLM, Transformers - **Model ID:** cpatonn/Qwen3-Omni-30B-A3B-Instruct-AWQ-{quantization} - **Model Hubs**: `Hugging Face `__, `ModelScope `__ Execute the following command to launch the model, remember to replace ``${quantization}`` with your chosen quantization method from the options listed above:: xinference launch --model-engine ${engine} --model-name Qwen3-Omni-Instruct --size-in-billions 30 --model-format awq --quantization ${quantization}