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Pangu large model

Big models reshape thousands of industries

#Artificial Intelligence
#multimodal
#large model
#NLP
#predict
#scientific computing
Pangu large model

Product Details

Pangu Big Model is an artificial intelligence solution launched by Huawei Cloud. It uses multiple models such as NLP big model, CV big model, multi-modal big model, prediction big model, and scientific computing big model to achieve multiple functions such as dialogue question and answer, image recognition, multi-modal processing, predictive analysis, and scientific computing. The Pangu large model has the characteristics of efficient adaptation, efficient annotation, and accurate controllability, and can be widely used in various industries. Please visit the official website for details.

Main Features

1
NLP large model: dialogue question and answer, copywriting generation, code generation
2
CV large model: target detection, image classification, semantic segmentation
3
Multi-modal large model: use text to create pictures, use pictures to create pictures, 3D generation, image editing
4
Large prediction models: regression prediction, classification prediction, anomaly detection, time series prediction
5
Large scientific computing models: weather prediction, drug molecules

Target Users

Pangu large model is suitable for artificial intelligence application scenarios in various industries

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