Tutorials on implementing a few sequence-to-sequence (seq2seq) models with PyTorch and TorchText.
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Updated
Jan 20, 2024 - Jupyter Notebook
Tutorials on implementing a few sequence-to-sequence (seq2seq) models with PyTorch and TorchText.
High Quality Monocular Depth Estimation via Transfer Learning
Pytorch implemention of Deep CNN Encoder + LSTM Decoder with Attention for Image to Latex
Learning cell communication from spatial graphs of cells
A deep generative model to predict aircraft actual trajectories using high dimensional weather data
Invariant representation learning from imaging and spectral data
Noise removal from images using Convolutional autoencoder
Source code of: "Manifold learning-based polynomial chaos expansions for high-dimensional surrogate models".
PyTorch tutorial for using RNN and Encoder-Decoder RNN for time series forecasting
Design and build a chatbot using data from the Cornell Movie Dialogues corpus, using Keras
An Implementation of Encoder-Decoder model with global attention mechanism.
Its a social networking chat-bot trained on Reddit dataset . It supports open bounded queries developed on the concept of Neural Machine Translation. Beware of its being sarcastic just like its creator 😝 BDW it uses Pytorch framework and Python3.
📺 An Encoder-Decoder Model for Sequence-to-Sequence learning: Video to Text
Nougat is a Meta AI's revolutionary OCR model designed to transcribe scientific PDFs into an easy-to-use Markdown format.
Encoder-Decoder for Face Completion based on Gated Convolution
This is an implementation of the paper "Show and Tell: A Neural Image Caption Generator".
Source Code Generation Based On User Intention Using LSTM Networks
This is the sequential Encoder-Decoder implementation of Neural Machine Translation using Keras
[Deep Learning] An end-to-end deep neural network that converts screenshots to Bootstrap (HTML/CSS) code
HTSM Masterwork
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