Brevitas: neural network quantization in PyTorch
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Updated
Dec 20, 2024 - Python
Brevitas: neural network quantization in PyTorch
More readable and flexible yolov5 with more backbone(gcn, resnet, shufflenet, moblienet, efficientnet, hrnet, swin-transformer, etc) and (cbam,dcn and so on), and tensorrt
yolo model qat and deploy with deepstream&tensorrt
Model Compression Toolkit (MCT) is an open source project for neural network model optimization under efficient, constrained hardware. This project provides researchers, developers, and engineers advanced quantization and compression tools for deploying state-of-the-art neural networks.
针对pytorch模型的自动化模型结构分析和修改工具集,包含自动分析模型结构的模型压缩算法库
QAT(quantize aware training) for classification with MQBench
FakeQuantize with Learned Step Size(LSQ+) as Observer in PyTorch
mi-optimize is a versatile tool designed for the quantization and evaluation of large language models (LLMs). The library's seamless integration of various quantization methods and evaluation techniques empowers users to customize their approaches according to specific requirements and constraints, providing a high level of flexibility.
The project focuses on Intel enterprise AI foundation with OpenShift for Data Center and Cloud. General Operators based AI and Accelerators provisioning technology, OpenShift AI platform integrated with Intel AI software are included
quantization example for pqt & qat
Training U-Net based Convolutional Neural Network model to automatically identify and delineate areas of qat agriculture in Sentinel-2 multispectral imagery.
Build AI model to classify beverages for blind individuals
Combidata is a flexible and powerful Python library designed for generating various combinations of test data based on defined cases and rules. It is especially useful for testing, debugging, and analyzing software applications and systems.
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