⚡️SwanLab: your ML experiment notebook. 你的AI实验笔记本,跟踪与可视化你的机器学习全流程
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Updated
May 31, 2024 - Python
⚡️SwanLab: your ML experiment notebook. 你的AI实验笔记本,跟踪与可视化你的机器学习全流程
Aim 💫 — An easy-to-use & supercharged open-source experiment tracker.
Experiment tracking server focused on speed and scalability
Pneumo.ai is a Streamlit web app for detecting pneumonia from X-rays, leveraging CNN variants like AlexNet, VGG, and ResNet18, with ResNet18 leading with an accuracy of 0.89. It employs early stopping callbacks for efficient model training, visualizes training using TensorBoard, and optimizes inference time with pruning and quantization techniques.
C++ DataFrame for statistical, Financial, and ML analysis -- in modern C++ using native types and contiguous memory storage
PyTorch implementation of the U-Net for image semantic segmentation with high quality images
🔎 Monitor deep learning model training and hardware usage from your mobile phone 📱
Machine Learning Operator & Controller for Kubernetes
Launch and view Tensorboards in VS Code —
Study and implementation about deep learning models, architectures, applications and frameworks
A docker-based starter kit for machine learning via jupyter notebooks. Designed for those who just want a runtime environment and get on with machine learning. Docker Hub:
A multitask neural network that does both regression and classification
Code for Tensorflow Machine Learning Cookbook
A deep learning model to age faces in the wild, currently runs at 60+ fps on GPUs
Easy peasy logging to TensorBoard with Julia
Prediction Of Loan Repayment using Sequential Neural Networks on Lending Club Dataset.
⭐ 本科毕业设计:基于内容的音乐推荐系统设计与开发。使用了Pytorch框架构建训练模型代码,使用Django构建了前后端。
An exploration of the mechanics of transfer learning in TensorFlow
This Python project uses TensorFlow & Keras to build a spam SMS classifier. It constructs an LSTM model, and trains/evaluates it.
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