leaf
Machine learning framework
An open machine learning framework for building classical, deep, or hybrid models on various hardware platforms.
Open Machine Intelligence Framework for Hackers. (GPU/CPU)
6k stars
185 watching
270 forks
Language: Rust
last commit: 11 months ago
Linked from 3 awesome lists
Related projects:
Repository | Description | Stars |
---|---|---|
| A framework for deep learning inference on mobile devices | 4,949 |
| A Zero Trust protocol that leverages resource-hiding and encryption to safeguard servers and data from attackers | 13,520 |
| An experimental software framework to run AI models on diverse devices without requiring expensive GPUs. | 17,369 |
| A framework that automatically compresses and accelerates deep learning models to make them suitable for mobile devices with limited computational resources. | 2,787 |
| An efficient Large Language Model inference engine leveraging consumer-grade GPUs on PCs | 8,011 |
| A low-code framework for building custom deep learning models and neural networks | 11,236 |
| A high-performance deep learning framework designed for industrial-scale training and deployment of neural networks. | 22,340 |
| A deep learning optimization library that simplifies distributed training and inference on modern computing hardware. | 35,863 |
| A suite of libraries implementing machine learning algorithms and mathematical primitives on NVIDIA GPUs | 4,292 |
| A toolkit for optimizing and deploying artificial intelligence models in various applications | 7,439 |
| A deep learning framework for rapid prototyping and production of computer vision applications | 4,770 |
| A 3D environment for testing and training artificial intelligence agents | 7,146 |
| A comprehensive dynamic Deep Learning Framework built with Rust for extreme flexibility, compute efficiency, and portability. | 9,176 |
| A framework for efficient and fault-tolerant distributed training of large neural networks on multiple GPUs. | 3,299 |
| A PyTorch library for accelerating 3D deep learning research with various GPU-optimized operations and tools. | 4,550 |