NVIDIA / gpu-rest-engine
A REST API for Caffe using Docker and Go
☆419Updated 6 years ago
Alternatives and similar repositories for gpu-rest-engine:
Users that are interested in gpu-rest-engine are comparing it to the libraries listed below
- Caffe: a fast open framework for deep learning.☆672Updated 2 years ago
- Some handy utility libraries and tools for the Caffe deep learning framework.☆458Updated 6 years ago
- pyNetBuilder is a modular pytonic interface with builtin modules for generating popular caffe prototxt network file definitions.☆328Updated 8 years ago
- Compute Library for Deep Neural Networks (clDNN)☆574Updated 2 years ago
- Demonstrate Plugin API for TensorRT2.1☆182Updated 7 years ago
- Simple wrapper for docker-compose to use GPU enabled docker under nvidia-docker☆223Updated 7 years ago
- ☆1,658Updated 6 years ago
- A CUDNN minimal deep learning training code sample using LeNet.☆264Updated last year
- C++ transcripts of the Caffe2 Python tutorials and other C++ example code☆432Updated 2 years ago
- ONNX model format support for Apache MXNet☆96Updated 6 years ago
- Using mxnet for face-related algorithm.☆546Updated last year
- Acceleration package for neural networks on multi-core CPUs☆1,686Updated 10 months ago
- Open single and half precision gemm implementations☆380Updated 2 years ago
- A CUDA backend for Torch7☆339Updated 7 years ago
- Google Inception (deepdream) v3 for Caffe☆160Updated 8 years ago
- Original Python version of Intel® Nervana™ Graph☆215Updated 2 years ago
- Greentea LibDNN - a universal convolution implementation supporting CUDA and OpenCL☆135Updated 8 years ago
- ☆402Updated 6 years ago
- THE Deep Learning Benchmarks☆351Updated 8 years ago
- Accelerating network inference over video☆436Updated 5 years ago
- This fork of BVLC/Caffe is dedicated to improving performance of this deep learning framework when running on CPU, in particular Intel® X…☆847Updated 2 years ago
- Darknet with NNPACK☆306Updated 3 years ago
- A simple memory manager for CUDA designed to help Deep Learning frameworks manage memory