Optimised Caffe with OpenCL supporting for less powerful devices such as mobile phones
-
Updated
Mar 12, 2019 - C++
Optimised Caffe with OpenCL supporting for less powerful devices such as mobile phones
Let's train CIFAR 10 Pytorch with Half-Precision!
apextrainer is an open source toolbox for fp16 trainer based on Detectron2 and Apex
Simple Example of Pytorch -> TensorRT and Inference
Converts a floating-point number or hexadecimal representation of a floating-point numbers into various formats and displays them into binary/hexadecimal.
Round matrix elements to lower precision in MATLAB
Pytorch implementation of DreamerV2: Mastering Atari with Discrete World Models, based on the original implementation
IEEE 754-style floating-point converter
Export pytorch model to ONNX and convert ONNX from float32 to float 16
Deploy stable diffusion model with onnx/tenorrt + tritonserver
A flexible utility for converting tensor precision in PyTorch models and safetensors files, enabling efficient deployment across various platforms.
CPP20 implementation of a 16-bit floating-point type mimicking most of the IEEE 754 behavior. Single file and header-only.
👀 Apply YOLOv8 exported with ONNX or TensorRT(FP16, INT8) to the Real-time camera
InsightFace REST API for easy deployment of face recognition services with TensorRT in Docker.
Conversion to/from half-precision floating point formats
Stage 3 IEEE 754 half-precision floating-point ponyfill
Add a description, image, and links to the fp16 topic page so that developers can more easily learn about it.
To associate your repository with the fp16 topic, visit your repo's landing page and select "manage topics."