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qai-appbuilder

qai-appbuilder enthält 3 gesammelte Skills von qualcomm, mit Repository-Berufsabdeckung und Skill-Detailseiten auf SkillsMP.

gesammelte Skills
3
Stars
183
aktualisiert
2026-06-25
Forks
38
Berufsabdeckung
1 Berufskategorien · 100% klassifiziert
Repository-Explorer

Skills in diesem Repository

genie-api-service-docs
Softwareentwickler

GenieAPIService technical documentation retrieval. Find guides on platform deployment, model configuration, and API usage. GenieAPIService is an OpenAI-compatible API service that enables running large language models(include LLM & VLM model) locally on Qualcomm(高通) Windows on Snapdragon, Android, and Linux platforms. It leverages the device local NPU(HTP) or CPU for efficient inference.

2026-06-25
qai-appbuilder-docs
Softwareentwickler

QAI AppBuilder technical documentation retrieval. Find guides on installation, Python/C++ APIs, and model deployment examples. QAI AppBuilder is a rapid AI application development framework designed to simplify the deployment of QNN models on NPU (HTP) across Qualcomm(高通) Windows on Snapdragon, Android, and Linux platforms. This tool is highly suitable for deploying classic models (all types of models except large language models can be deployed via QAI AppBuilder), such as real_esrgan_x4plus, inception_v3, beit, easy_ocr, and whisper_base_en. This tool is only applicable for loading QNN (*.bin) format models and performing inference, and is not suitable for converting model formats.

2026-06-25
aipc-toolkit
Softwareentwickler

AIPC, AI Porting Conversion. Tools and workflows for QAIRT/AIPC project setup, model conversion, inspection, operator patching, quantization, context-binary generation, and inference on Qualcomm platforms. Use this skill when creating or initializing an AIPC project, exporting AI models to ONNX, converting ONNX models to QNN or SNPE/DLC, converting models to FP16/FP32, patching unsupported operators, generating context binaries, or implementing inference for QNN/SNPE DLC.

2026-06-25