weslynn/AlphaTree-graphic-deep-neural-network
AI Roadmap:机器学习(Machine Learning)、深度学习(Deep Learning)、对抗神经网络(GAN),图神经网络(GNN),NLP,大数据相关的发展路书(roadmap), 并附海量源码(python,pytorch)带大家消化基本知识点,突破面试,完成从新手到合格工程师的跨越,其中深度学习相关论文附有tensorflow caffe官方源码,应用部分含推荐算法和知识图谱
This project helps AI application engineers understand and apply deep learning technologies across various domains like Deep Neural Networks (DNN), Generative Adversarial Networks (GAN), Natural Language Processing (NLP), and Big Data. It provides an AI roadmap with detailed articles, code (Python, PyTorch), and visual explanations for key concepts, helping users grasp fundamental knowledge and enhance their practical application skills. The primary users are engineers who need to integrate multiple AI directions into their projects.
2,967 stars. No commits in the last 6 months.
Use this if you are an AI application engineer looking for a comprehensive roadmap to understand diverse deep learning fields and improve your practical application abilities.
Not ideal if you are a purely academic researcher focusing on one or two niche AI areas or not interested in the applied engineering aspects of AI.
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