--- license: apache-2.0 library_name: rkllm base_model: Qwen/Qwen3-1.7B tags: - rkllm - rk3588 - npu - rockchip - qwen3 - thinking - reasoning - quantized - edge-ai - orange-pi model_name: Qwen3-1.7B-RKLLM-v1.2.3 pipeline_tag: text-generation language: - en - zh --- # Qwen3-1.7B — RKLLM v1.2.3 (w8a8, RK3588) RKLLM conversion of [Qwen/Qwen3-1.7B](https://huggingface.co/Qwen/Qwen3-1.7B) for Rockchip RK3588 NPU inference. Converted with **RKLLM Toolkit v1.2.3**, which includes full **thinking mode support** — the model produces `` reasoning blocks when used with compatible runtimes. ## Key Details | Property | Value | |---|---| | **Base Model** | [Qwen/Qwen3-1.7B](https://huggingface.co/Qwen/Qwen3-1.7B) | | **Toolkit Version** | RKLLM Toolkit v1.2.3 | | **Runtime Version** | RKLLM Runtime ≥ v1.2.1 (v1.2.3 recommended) | | **Quantization** | w8a8 (8-bit weights, 8-bit activations) | | **Quantization Algorithm** | normal | | **Target Platform** | RK3588 | | **NPU Cores** | 3 | | **Max Context Length** | 4096 tokens | | **Optimization Level** | 1 | | **Thinking Mode** | ✅ Supported | | **Languages** | English, Chinese (+ others inherited from Qwen3) | ## Why This Conversion? Previous Qwen3-1.7B RKLLM conversions on HuggingFace were built with **Toolkit v1.2.0**, which predates thinking mode support (added in v1.2.1). The chat template baked into those `.rkllm` files does not include the `` trigger, so the model never produces reasoning output. This conversion uses **Toolkit v1.2.3**, which correctly embeds the thinking-enabled chat template into the model file. ## Thinking Mode Qwen3-1.7B is a hybrid thinking model. When served through an OpenAI-compatible API that parses `` tags, reasoning content appears separately from the final answer — enabling UIs like Open WebUI to show a collapsible "Thinking…" section. Example raw output: ``` The user is asking about the capital of France. This is a straightforward geography question. The capital of France is Paris. ``` ## Hardware Tested - **Orange Pi 5 Plus** — RK3588, 16GB RAM, Armbian Linux - RKNPU driver 0.9.8 - RKLLM Runtime v1.2.3 ## Important: Enabling Thinking Mode The RKLLM runtime requires **two things** for thinking mode to work: ### 1. Set `enable_thinking = true` in the C++ demo The stock `llm_demo.cpp` uses `memset(&rkllm_input, 0, ...)` which defaults `enable_thinking` to `false`. You **must** add one line: ```cpp rkllm_input.input_type = RKLLM_INPUT_PROMPT; rkllm_input.enable_thinking = true; // ← ADD THIS LINE rkllm_input.role = "user"; rkllm_input.prompt_input = (char *)input_str.c_str(); ``` If using the Python ctypes API (`flask_server.py` / `gradio_server.py`), set it on the `RKLLMInput` struct: ```python rkllm_input.enable_thinking = ctypes.c_bool(True) ``` Without this, the runtime never triggers the thinking chat template and the model won't produce `` tags. ### 2. Handle the `robot: ` output prefix The compiled `llm_demo` binary outputs `robot: ` before the model's actual response text. If your server uses a timing-based guard to discard residual stdout data, the `` tag may arrive fast enough to be incorrectly discarded along with the prefix. Make sure your output parser: - Strips the `robot: ` prefix (in addition to any `LLM: ` prefix) - Does **not** discard data containing `` even if it arrives quickly after the prompt is sent ### Compiling natively on aarch64 If building directly on the board (not cross-compiling), ignore `build-linux.sh` and compile natively: ```bash cd ~/rknn-llm/examples/rkllm_api_demo/deploy g++ -O2 -o llm_demo src/llm_demo.cpp \ -I../../../rkllm-runtime/Linux/librkllm_api/include \ -L../../../rkllm-runtime/Linux/librkllm_api/aarch64 \ -lrkllmrt -lpthread ``` ## Usage ### With the official RKLLM API demo ```bash # Clone the runtime git clone https://github.com/airockchip/rknn-llm.git cd rknn-llm/examples/rkllm_api_demo # Run (aarch64) ./build/rkllm_api_demo /path/to/Qwen3-1.7B-w8a8-rk3588.rkllm 2048 4096 ``` ### With a custom OpenAI-compatible server Any server that launches the RKLLM binary and parses `` tags from the output stream will work. The model responds to standard chat completion requests. ## Conversion Script ```python from rkllm.api import RKLLM model_path = "Qwen/Qwen3-1.7B" # or local path output_path = "./Qwen3-1.7B-w8a8-rk3588.rkllm" dataset_path = "./data_quant.json" # calibration data # Load llm = RKLLM() llm.load_huggingface(model=model_path, model_lora=None, device="cpu") # Build llm.build( do_quantization=True, optimization_level=1, quantized_dtype="w8a8", quantized_algorithm="normal", target_platform="rk3588", num_npu_core=3, extra_qparams=None, dataset=dataset_path, max_context=4096, ) # Export llm.export_rkllm(output_path) ``` Calibration dataset: 21 diverse prompt/completion pairs (English + Chinese) generated with `generate_data_quant.py` from the [rknn-llm examples](https://github.com/airockchip/rknn-llm/tree/main/examples/rkllm_api_demo/export). ## File Listing | File | Description | |---|---| | `Qwen3-1.7B-w8a8-rk3588.rkllm` | Quantized model for RK3588 NPU | ## Compatibility Notes - **Minimum runtime**: RKLLM Runtime v1.2.1 (for thinking mode). v1.2.3 recommended. - **RKNPU driver**: ≥ 0.9.6 - **SoCs**: RK3588 / RK3588S (3 NPU cores). Not compatible with RK3576 (2 cores) without reconversion. - **RAM**: ~2GB loaded. Runs comfortably on 8GB+ boards. ## Acknowledgements - [Qwen Team](https://huggingface.co/Qwen) for the base model - [Rockchip / airockchip](https://github.com/airockchip/rknn-llm) for the RKLLM toolkit and runtime - Converted by [GatekeeperZA](https://huggingface.co/GatekeeperZA)