Pytorch Performace Tuning, WandB, AMP, Multi-GPU, TensorRT, Triton

Overview

Plant Pathology 2020 FGVC7

Introduction

A deep learning model pipeline for training, experimentaiton and deployment for the Kaggle Competition, Plant Pathology 2020, utilising:

  • PyTorch: A Deep Learning Framework for high-performance AI research
  • Weights and Biases: tool for experiment tracking, dataset versioning, and model management
  • Apex: A Library to Accelerate Deep Learning Training using AMP, Fused Optimizer, and Multi-GPU
  • TensorRT: high-performance neural network inference optimizer and runtime engine for production deployment
  • Triton Inference Server: inference serving software that simplifies the deployment of AI models at scale
  • Streamlit: framework to quickly build highly interactive web applications for machine learning models

For a quick tutorial about all these modules, check out tutorials folder. Exploratory data analysis for the same can also be found in the notebooks folder.

Structure

├── app                 # Interactive Streamlit app scripts
├── data                # Datasets
├── examples            # assignment on pytorch amp and ddp
├── model               # Directory to save models for triton
├── notebooks           # EDA, Training, Model conversion, Inferencing and other utility notebooks
├── tutorials           # Tutorials on the modules used
└── requirements.txt    # Basic requirements

Usage

EDA: Data Evaluation

Data can be explored with various visualization techniques provided in eda.ipyb notebooks folder

Training the model

To run the pytorch resnet50 model use pytorch_train.ipynb.

The code is inspired by Pytorch Performance Tuning Guide

Once the model is trained, you can even run model explainabilty using the shap library. The tutorial notebook for the same can be found in the notebooks folder.

Model Conversion and Inferencing

Once you've trained the model, you will need to convert it to different formats in order to have a faster inference time as well as easily deploy them. You can convert the model to ONNX, TensorRT FP32 and TensorRT FP16 formats which are optimised to run faster inference. You will also need to convert the PyTorch model to TorchScript. Procedure for converting and benchmarking all the different formats of the model can be found in notebooks folder.

Model Deployment and Benchmarking

Now your models are ready to be deployed. For deployment, we utilise the Triton Inference Server. It provides an inferencing solution for deep learning models to be easily deployed and integrated with various functionalities. It supports HTTP and gRPC protocol that allows clients to request for inferencing, utilising any model of choice being managed by the server. The process of deployment can be found in Triton Inference Server.md.

Once your inferencing server is up and running, the next step it to understand as well as optimise the model performance. For this purpose, you can utilise tools like perf_analyzer which helps you measure changes in performance as you experiment with different parameters.

Interactive Web App

To run the Streamlit app:

cd app/
streamlit app.py

This will create a local server on which you can view the web application. This app contains the client side for the Triton Inference Server, along with an easy to use GUI.

Acknowledgement

This repository is built with references and code snippets from the NN Template by Luca Moschella.

Owner
Bharat Giddwani
B.Tech Graduate || Deep learning/ machine learning enthusiast. A passionate/avid learner.
Bharat Giddwani
Official repository for the paper "GN-Transformer: Fusing AST and Source Code information in Graph Networks".

GN-Transformer AST This is the official repository for the paper "GN-Transformer: Fusing AST and Source Code information in Graph Networks". Data Prep

Cheng Jun-Yan 10 Nov 26, 2022
Title: Heart-Failure-Classification

This Notebook is based off an open source dataset available on where I have created models to classify patients who can potentially witness heart failure on the basis of various parameters. The best

Akarsh Singh 2 Sep 13, 2022
A Pytree Module system for Deep Learning in JAX

Treex A Pytree-based Module system for Deep Learning in JAX Intuitive: Modules are simple Python objects that respect Object-Oriented semantics and sh

Cristian Garcia 216 Dec 20, 2022
VGGVox models for Speaker Identification and Verification trained on the VoxCeleb (1 & 2) datasets

VGGVox models for speaker identification and verification This directory contains code to import and evaluate the speaker identification and verificat

338 Dec 27, 2022
Jax/Flax implementation of Variational-DiffWave.

jax-variational-diffwave Jax/Flax implementation of Variational-DiffWave. (Zhifeng Kong et al., 2020, Diederik P. Kingma et al., 2021.) DiffWave with

YoungJoong Kim 37 Dec 16, 2022
Implementation of "Semi-supervised Domain Adaptive Structure Learning"

Semi-supervised Domain Adaptive Structure Learning - ASDA This repo contains the source code and dataset for our ASDA paper. Illustration of the propo

3 Dec 13, 2021
Convert Mission Planner (ArduCopter) Waypoint Missions to Litchi CSV Format to execute on DJI Drones

Mission Planner to Litchi Convert Mission Planner (ArduCopter) Waypoint Surveys to Litchi CSV Format to execute on DJI Drones Litchi doesn't support S

Yaros 24 Dec 09, 2022
Code for ICCV2021 paper PARE: Part Attention Regressor for 3D Human Body Estimation

PARE: Part Attention Regressor for 3D Human Body Estimation [ICCV 2021] PARE: Part Attention Regressor for 3D Human Body Estimation, Muhammed Kocabas,

Muhammed Kocabas 277 Jan 03, 2023
AdvStyle - Official PyTorch Implementation

AdvStyle - Official PyTorch Implementation Paper | Supp Discovering Interpretable Latent Space Directions of GANs Beyond Binary Attributes. Huiting Ya

Beryl 37 Oct 21, 2022
A Planar RGB-D SLAM which utilizes Manhattan World structure to provide optimal camera pose trajectory while also providing a sparse reconstruction containing points, lines and planes, and a dense surfel-based reconstruction.

ManhattanSLAM Authors: Raza Yunus, Yanyan Li and Federico Tombari ManhattanSLAM is a real-time SLAM library for RGB-D cameras that computes the camera

117 Dec 28, 2022
Simple Tensorflow implementation of "Adaptive Convolutions for Structure-Aware Style Transfer" (CVPR 2021)

AdaConv — Simple TensorFlow Implementation [Paper] : Adaptive Convolutions for Structure-Aware Style Transfer (CVPR 2021) Note This repository does no

Junho Kim 26 Nov 18, 2022
🔅 Shapash makes Machine Learning models transparent and understandable by everyone

🎉 What's new ? Version New Feature Description Tutorial 1.6.x Explainability Quality Metrics To help increase confidence in explainability methods, y

MAIF 2.1k Dec 27, 2022
Benchmark VAE - Library for Variational Autoencoder benchmarking

Documentation pythae This library implements some of the most common (Variational) Autoencoder models. In particular it provides the possibility to pe

1.1k Jan 02, 2023
GCC: Graph Contrastive Coding for Graph Neural Network Pre-Training @ KDD 2020

GCC: Graph Contrastive Coding for Graph Neural Network Pre-Training Original implementation for paper GCC: Graph Contrastive Coding for Graph Neural N

THUDM 274 Dec 27, 2022
🐾 Semantic segmentation of paws from cute pet images (PyTorch)

🐾 paw-segmentation 🐾 Semantic segmentation of paws from cute pet images 🐾 Semantic segmentation of paws from cute pet images (PyTorch) 🐾 Paw Segme

Zabir Al Nazi Nabil 3 Feb 01, 2022
Towards the D-Optimal Online Experiment Design for Recommender Selection (KDD 2021)

Towards the D-Optimal Online Experiment Design for Recommender Selection (KDD 2021) Contact 0 Jan 11, 2022

Portfolio analytics for quants, written in Python

QuantStats: Portfolio analytics for quants QuantStats Python library that performs portfolio profiling, allowing quants and portfolio managers to unde

Ran Aroussi 2.7k Jan 08, 2023
Privacy-Preserving Machine Learning (PPML) Tutorial Presented at PyConDE 2022

PPML: Machine Learning on Data you cannot see Repository for the tutorial on Privacy-Preserving Machine Learning (PPML) presented at PyConDE 2022 Abst

Valerio Maggio 10 Aug 16, 2022
StocksMA is a package to facilitate access to financial and economic data of Moroccan stocks.

Creating easier access to the Moroccan stock market data What is StocksMA ? StocksMA is a package to facilitate access to financial and economic data

Salah Eddine LABIAD 28 Jan 04, 2023
Graph Self-Attention Network for Learning Spatial-Temporal Interaction Representation in Autonomous Driving

GSAN Introduction Code for paper GSAN: Graph Self-Attention Network for Learning Spatial-Temporal Interaction Representation in Autonomous Driving, wh

YE Luyao 6 Oct 27, 2022