This is the end-to-end Speech Recognition neural network, deployed in Keras. This was my final project for Artificial Intelligence Nanodegree @udacity.
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Updated
Aug 15, 2017 - HTML
This is the end-to-end Speech Recognition neural network, deployed in Keras. This was my final project for Artificial Intelligence Nanodegree @udacity.
Files and Scripts to run Tesseract 5 LSTM Training using fonts
Predict the toxicity rating of comment made by the user.
A web app implemeted with ML algo to make prediction on stock data, made on Django framework.(Stock-Market-predictor)
Spelling correction using Deep Learning
Time series forecasting using RNN, Twitter Sentiment Analysis and Turtle Trading Strategy applied on Cryptocurrency
Scalable Data Pipeline for Stock Market Analysis with Reddit API and Yahoo Finance.
Using LSTM Neural Networks to predict the future temperatures.
Towards Turnkey Brain-Computer Interfaces
Github Repository for LSTM-based system generating automated abstract of scientific articles
基于计算机视觉的交通场景智能应用(流量预测部分)
End to End Sentiment Analysis Project (Udacity Machine Learning Engineer Nanodegree)
Udacity DLND project with Facebook PyTorch Challenge Scholarship the original repo can be found at https://github.com/udacity/deep-learning-v2-pytorch
This is just a simple RNN text generation model that generates new scripts of Friends TV Show.
Chatbot, LSTM, Bidirectional LSTM, NLP Classification
Predicting Citi Bike trip demand and analyzing need for bike rebalancing
Deploying sentiment analysis model with Sagemaker trained on the IMDB dataset using LSTM in PyTorch
Attempt to forecast future stock prices of any stock irrespective of country, market, currency traded using historical prices of similar stocks.
X-Ray Analyzer is a deep learning model which uses a combination of CNN to extract features from the X-ray images and LSTM networks to generate results.
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