Use PyNetsPresso for a seamless model optimization process. PyNetsPresso resolves AI-related constraints in business use cases and enables cost-efficiency and enhanced performance by removing the requirement for high-spec servers and network connectivity and preventing high latency and personal data breaches.
Easily compress various models with our resources. Please browse the Docs for details, and join our Discussion Forum for providing feedback or sharing your use cases.
To get started with the NetsPresso Python package, you will need to sign up either at NetsPresso or PyNetsPresso.
![](/Nota-NetsPresso/PyNP-Model-Zoo/raw/main/imgs/banner/workflow_banner.png)
Steps | Types | Description |
Train
(Model Zoo) |
Image ClassificationSemantic SegmentationPose Estimation |
Build and train models. |
Compress | np.compressor | Compress and optimize the user’s pre-trained model. |
Convert | np.launcher | Convert AI models to run efficiently on the desired hardware and provide easy installation for seamless usage of the converted AI models. |
If you want to experience Model Compressor online without any installation, please refer to the NetsPresso-Model-Compressor-ModelZoo repo that runs on Google Colab.
Join our Discussion Forum for providing feedback or sharing your use cases, and if you want to talk more with Nota, please contact us here.
Or you can also do it via email([email protected]) or phone(+82 2-555-8659)!