--- license: apache-2.0 base_model: Qwen/Qwen3-8B tags: - rkllm - rk3576 - npu - qwen3 --- # Qwen3-8B-Instruct — RK3576 (RKLLM) RKLLM conversion of Qwen/Qwen3-8B for Rockchip RK3576 NPU inference (e.g. NanoPi R76S, Radxa Rock 4D, Orange Pi with RK3576). ## Conversion details - Toolkit: rkllm-toolkit v1.2.3 - Target platform: RK3576 (dual-core NPU) - Quantization: w4a16 (weights 4-bit, activations 16-bit) - Quantization algorithm: normal - NPU cores: 2 - Max context: 4096 tokens - Optimization level: 1 ## Files - Qwen3-8B-rk3576.rkllm — converted model - tokenizer.json, tokenizer_config.json, vocab.json, merges.txt — original tokenizer files from Qwen/Qwen3-8B ## Usage with RKLLama Place the .rkllm file and tokenizer files in a model folder with this structure: Qwen3-8B-Instruct/ ├── Modelfile ├── Qwen3-8B-rk3576.rkllm └── tokenizer/ ├── tokenizer.json ├── tokenizer_config.json ├── vocab.json └── merges.txt Modelfile content: FROM="Qwen3-8B-rk3576.rkllm" HUGGINGFACE_PATH="Qwen/Qwen3-8B" TOKENIZER="/models/Qwen3-8B-Instruct/tokenizer" Restart RKLLama to detect the new model: docker restart rkllama ## Notes - Qwen3 is a hybrid thinking model. Depending on your runtime/UI, it may produce think tags with reasoning content. - Tested on NanoPi R76S (RK3576, 16GB RAM) via RKLLama + Open WebUI. - License follows the original Qwen3 license (Apache 2.0).