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Introduction

This repository contains projects for time-series forecasting and image classification. Codes are written in Python.

  • 📗 First Topic: Data Driven Prediction of Dynamical Systems

I have exploited ConvLSTM neural networks to predict solution of Inviscid Burgers equation. Click the link below for more details. ⬇️

  • 📙 Second Topic: Convolutional Neural Networks with TensorFlow

This is a tutorial project to show how to use TensorFlow to load data and build simple models for prediction. Click the link below for more details. ⬇️

  • 📘 Third Topic: Image Classification with Very Deep Convolutional Neural Networks

This is a project on Kaggle for detecting Cassava Leaf disease. I have implemented a pretrained Efficientnet with TensorFlow. EfficientNet is a very deep convolutional neural network architecture which uses a scaling method to uniformly scale the dimensions. Click the link below for more details. ⬇️

Topics

Topics
🟩 Data Driven Prediction of Dynamical Systems
🟧 Convolutional Neural Networks with TensorFlow
🟦 Image Classification with Very Deep Convolutional Neural Networks

References

  • M. Tan and Q. V. Le, "EfficientNet: Rethinking Model Scaling for Convolutional Neural Networks", arXiv:1905.11946, 2019
  • U. Achatz, S. I. Dolaptchiev, I. Timofeyev, "Subgrid-scale closure for the inviscid Burgers-Hopf equation", Communications in Mathematical Sciences, 2013
  • A. Chattopadhyay, P. Hassanzadeh, and D. Subramanian, "Data-driven prediction of a multi-scale Lorenz 96 chaotic system using deep learning methods: Reservoir computing, ANN, and RNN-LSTM", Nonlinear Processes in Geophysics, 2020

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This repository includes sample codes for machine learning and deep learning projects.

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