CoreNet
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Corenet
Overview :
CoreNet is a deep neural network toolkit that enables researchers and engineers to train both standard and innovative small to large-scale models for a variety of tasks, including foundational models (such as CLIP and LLM), object classification, object detection, and semantic segmentation.
Target Users :
["Researchers and engineers can use CoreNet to conduct research and development of deep learning models","It is suitable for computer vision tasks that require the training of image and text data","It is fitted for developers with a basic understanding of deep learning who wish to expand to more广泛应用 areas"]
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Use Cases
Train a CLIP model for image recognition using CoreNet
Use CoreNet for semantic segmentation to improve the accuracy of autonomous driving systems
Deploy a lightweight MobileViT model for real-time object detection on mobile devices
Features
Supports training of deep neural network models of various scales
Suitable for a variety of tasks such as foundational models, object classification, object detection, and semantic segmentation
Provides reproducible training recipes and pre-trained model weights
Includes links to research papers and pre-trained.models
Supports efficient running of CoreNet models on Apple Silicon with MLX examples
Models are implemented by task organization, making them easy to use in YAML configurations
How to Use
Firstly, ensure Git LFS is installed and activated
Set up the development environment using Python 3.10+ and PyTorch (version >= v2.1.0)
Clone the CoreNet repository locally
Install optional dependencies such as audio and video processing libraries as needed
Start learning and using CoreNet by referring to the Jupyter notebooks and guides in the tutorials directory
Customize the training and evaluation process by modifying the YAML configuration file
Run CoreNet models on Apple Silicon by utilizing provided MLX examples
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