Deep convolutional and LSTM feature extraction approach with 784 features.
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Updated
Jun 30, 2024 - Jupyter Notebook
Deep convolutional and LSTM feature extraction approach with 784 features.
ZebraLSTM - GPU Virtual Serializtion
The goal of this project is to predict the Remaining Useful Life (RUL) of aircraft engines based on sensor data. Predictive maintenance helps identify the point at which an engine is likely to fail, allowing for timely maintenance to prevent failures and optimize maintenance schedules.
Monelytics is a web-based platform utilizing Python for stock prediction purposes. It compares approximately nine machine learning and deep learning models and can predict the closing prices of the big four Indonesian banks
poem generator using LSTM with Robert forest poet style.
Stock Price Forcasting Using LSTM
Contains Deep Learning Content and Algorithm. ANN_CNN_RNN(LSTM-GRU)_AUTOENCODER
This project demonstrates how to build an image captioning model using TensorFlow. The model combines a pre-trained Convolutional Neural Network (CNN) for image feature extraction and a Long Short-Term Memory (LSTM) network for generating captions.
a project for predicting Google stock prices using deep learning techniques. The project involves data preprocessing, training a Long Short-Term Memory (LSTM) model, and visualizing the predictions against actual stock prices.
An autoregressive forecasting implementation of a LSTM network, NBEATS architecture and Autoformer architecture on rupee dollar exchange rates using pytorch, pytorch lightning, pytorch-forecasting, and GluonTS
Performance analysis of different Artificial Neural Networks
The primary objective of this project is to develop a cutting-edge forecasting model utilizing advanced machine-learning algorithms and sophisticated time-series analysis techniques. The model aims to deliver precise predictions of future sales across diverse retail outlets.
Crypto & Stock* price prediction with regression models.
Multivariate stock price forecasting
Thesis of my masters in Data Science. This project implements a deep learning framework applied to stock portfolio management. Using the top 20 stocks of FTSE (Financial Times Stock Exchange) top 100 by market share.
A deep learning project for automated chorus detection in songs, featuring a command-line interface (CLI) tool that allows users to input a YouTube link and utilize a pre-trained CRNN model to detect chorus sections from a song on YouTube
LSTM-ARIMA with Attention and multiplicative decomposition for sophisticated stock forecasting.
Predicting popular cryptocurrency prices with LSTM and other analyses on stock and crypto prices
Forecasting Customer Retention Trends by analyzing historical patterns and identifying key indicators of customer loyalty or churn.
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