A Benchmark of Text Classification in PyTorch
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Updated
Apr 20, 2024 - Python
A Benchmark of Text Classification in PyTorch
基于法律裁判文书的事件抽取及其应用,包括数据的分词、词性标注、命名实体识别、事件要素抽取和判决结果预测等内容
Deep facial expressions recognition using Opencv and Tensorflow. Recognizing facial expressions from images or camera stream
This repository contains the source code of our work on designing efficient CNNs for computer vision
🔥 Reproducibly benchmarking Keras and PyTorch models
Potato Disease Classification - Training, Rest APIs, and Frontend to test.
Training and evaluating state-of-the-art deep learning CNN architectures for plant disease classification task.
A Complete and Simple Implementation of MobileNet-V2 in PyTorch
implement AlexNet with C / convolutional nerual network / machine learning / computer vision
CNN image classifier implemented in Keras Notebook 🖼️.
The source code and dataset are used to demonstrate the DF model, and reproduce the results of the ACM CCS2018 paper
Official implementation of ID-unaware Deepfake Detection Model
GroupSoftmax cross entropy loss function for training with multiple different benchmark datasets
A Multi-Class Brain Tumor Classifier using Convolutional Neural Network with 99% Accuracy achieved by applying the method of Transfer Learning using Python and Pytorch Deep Learning Framework
Projects from the Deep Learning Specialization from deeplearning.ai provided by Coursera
PyTorch tutorials A to Z
1D GAN for ECG Synthesis and 3 models: CNN, LSTM, and Attention mechanism for ECG Classification.
An End to End Real Time Face Identification and attendance system using CNN
Forest fire detection using Convolutional Neural Networks
Squeezenet V1.1 on Cyclone V SoC-FPGA at 450ms/image, 20x faster than ARM A9 processor alone. A project for 2017 Innovate FPGA design contest.
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