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Tools for linking model architectures to specific training hyper-parameters and optimization strategies.
Distinguishing note: Focuses on the mapping logic between models and training settings, distinct from the execution of the training itself.
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This project is a comprehensive library of state-of-the-art neural network architectures designed for image classification and feature extraction. It provides a complete deep learning training framework that supports distributed execution, allowing users to build, train, and fine-tune vision models using optimized schedulers and pre-configured training recipes. The library distinguishes itself through a modular backbone architecture that treats neural networks as decoupled feature extractors, enabling the retrieval of multi-scale outputs for downstream tasks like object detection and segmenta
Training recipe mapping associates pre-trained model tags with specific optimizer settings, learning rate schedules, and augmentation strategies.