A lightweight deep learning library
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Updated
Jan 9, 2025 - Python
A lightweight deep learning library
Deep Learning Library. For education. Based on pure Numpy. Support CNN, RNN, LSTM, GRU etc.
A deep learning framework created from scratch with Python and NumPy
benchmark for embededded-ai deep learning inference engines, such as NCNN / TNN / MNN / TensorFlow Lite etc.
[MICCAI'24] Official implementation of "BGF-YOLO: Enhanced YOLOv8 with Multiscale Attentional Feature Fusion for Brain Tumor Detection".
以jax为后端的类似keras的框架
[CVPR 2024] CFAT: Unleashing Triangular Windows for Image Super-resolution
[IMAVIS] Official implementation of "ASF-YOLO: A Novel YOLO Model with Attentional Scale Sequence Fusion for Cell Instance Segmentation".
NumPy实现类PyTorch的动态计算图和神经网络框架(MLP, CNN, RNN, Transformer)
Flow-based data pre-processing for deep learning
Imperative deep learning framework with customized GPU and CPU backend
A keras-like API deep learning framework,realized by Numpy only.Support CNN, RNN, LSTM, Dense, etc.
TorchHandle makes your PyTorch development more efficient and make you use PyTorch more comfortable
Facial Expression Recognition (FER) for Mental Health Detection applies AI models like Swin Transformer, CNN, and ViT for detecting emotions linked to anxiety, depression, PTSD, and OCD. It focuses on AI for mental health, emotion detection using OpenCV Python, and real-time applications in healthcare and HR systems.
[ICML'24] Adsorbate Placement via Conditional Denoising Diffusion
An Educational Framework Based on PyTorch for Deep Learning Education and Exploration
Multigraph fusion and classification network using graph neural network
A deep learning framework built to understand the fundamental concepts such as autodiff, optimizers, loss functions from a first principle basis.
SemiFlow is a deep learning framework with automatic differentiation and automatic shape inference, developing from Numpy. 一个基于Numpy支持自动求导的深度学习框架
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