back to home
arogozhnikov / einops
Flexible and powerful tensor operations for readable and reliable code (for pytorch, jax, TF and others)
View on GitHub9,466 stars
397 forks
32 issues
Python
AI Architecture Analysis
This repository is indexed by RepoMind. By analyzing arogozhnikov/einops in our AI interface, you can instantly generate complete architecture diagrams, visualize control flows, and perform automated security audits across the entire codebase.
Our Agentic Context Augmented Generation (Agentic CAG) engine loads full source files into context on-demand, avoiding the fragmentation of traditional RAG systems. Ask questions about the architecture, dependencies, or specific features to see it in action.
Source files are only loaded when you start an analysis to optimize performance.