Time Series Analysis using LSTM for Wind Energy Prediction.
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Updated
May 18, 2018 - Jupyter Notebook
Time Series Analysis using LSTM for Wind Energy Prediction.
Explaining textual analysis tools in Python. Including Preprocessing, Skip Gram (word2vec), and Topic Modelling.
The course is contained knowledge that are useful to work on deep learning as an engineer. Simple neural networks & training, CNN, Autoencoders and feature extraction, Transfer learning, RNN, LSTM, NLP, Data augmentation, GANs, Hyperparameter tuning, Model deployment and serving are included in the course.
Implementing different RNN models (LSTM,GRU) & Convolution models (Conv1D, Conv2D) on a subset of Amazon Reviews data with TensorFlow on Python 3. A sentiment analysis project.
An image captioning based image retrieval model which can be used both via GUI and command line
FloydHub porting of Pytorch time-sequence-prediction example
Time-series prediction with LSTNet in Apache MXNet Gluon
Deep Learning using Rectified Linear Units (ReLU)
学习 TensorFLow 线性&逻辑回归 多层感知机 神经网络 自编码 循环神经网络 优化记录
This is a project implementing Computer Vision and Deep Learning concepts to detect drowsiness of a driver and sound an alarm if drowsy.
Baseline Python Scripts for Popular Kaggle Competitions
LSTM stock prediction and backtesting
Implemented the deep learning techniques using Google Tensorflow that cover deep neural networks with a fully connected network using SGD and ReLUs; Regularization with a multi-layer neural network using ReLUs, L2-regularization, and dropout, to prevent overfitting; Convolutional Neural Networks (CNNs) with learning rate decay and dropout; and R…
Summaries and notes on recent Deep Learning literature
For recognising hand gestures using RNN and LSTM... Implementation in TensorFlow
Curated implementation notebooks and scripts of deep learning based natural language processing tasks and challenges in TensorFlow.
Generating the Simpsons TV scripts using RNNs and LSTMs. The scene is among homer simpson, moe szyslak, and barney gumble.
This contains RNN based word level quality estimation, and Part-of-Speech-Tagger
Using RNN/LSTM to classify spam/not spam
Multi-layer Recurrent Neural Networks (LSTM,RNN) for character-level language models in Python using Tensorflow.
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