ModelArts
HuaweiAI & MLEnd-to-end AI development platform with AutoML, data labelling, distributed training on Ascend and GPU clusters, and one-click deployment to cloud or edge
Sub-services (3)
AutoML
Automated model selection and hyperparameter tuning
Notebooks
Jupyter notebook development on managed infrastructure
Pangu Models
Huawei's pretrained foundation models for NLP and CV
Compliance & Certifications
This service is attested for the following frameworks. Always verify with the provider before relying on a specific compliance posture.
Where this runs
Sovereign regions (6)
- CN North - Beijing 1 · BeijingHuawei Cloud China
- CN North - Beijing 4 · BeijingHuawei Cloud China
- CN East - Shanghai 2 · ShanghaiHuawei Cloud China
- CN East - Shanghai 3 · ShanghaiHuawei Cloud China
- CN South - Guangzhou · GuangzhouHuawei Cloud China
- CN Southwest - Guiyang · GuiyangHuawei Cloud China
Commercial regions (19)
Europe (3)
- EU-Paris
- EU-Dublin
- TR-Istanbul
North America (1)
- LA-Mexico City
South America (4)
- LA-Buenos Aires 1
- LA-São Paulo 1
- LA-Santiago
- LA-Lima
Asia (6)
- AP-Hong Kong
- AP-Jakarta
- AP-Kuala Lumpur
- AP-Manila
- AP-Singapore
- AP-Bangkok
Middle East (1)
- ME-Riyadh
Africa (4)
- ME-Cairo
- AF-Casablanca
- AF-Lagos
- AF-Johannesburg
Tags
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