amilcar's repositories

PaperEdge

The code and the DIW dataset for "Learning From Documents in the Wild to Improve Document Unwarping" (SIGGRAPH 2022)

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automatic-ecg-diagnosis

Scripts and modules for training and testing neural network for ECG automatic classification. Companion code to the paper "Automatic diagnosis of the 12-lead ECG using a deep neural network".

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azure-function-selenium

Azure Function running selenium webdriver using a customer docker image

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CLIP

Contrastive Language-Image Pretraining

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COVID-19

Novel Coronavirus (COVID-19) Cases, provided by JHU CSSE

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donut_2022_11_14

Official Implementation of OCR-free Document Understanding Transformer (Donut) and Synthetic Document Generator (SynthDoG), ECCV 2022

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fastai

The fastai deep learning library, plus lessons and tutorials

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Fully-Convolutional-Network

Fully Convolutional Neural Network Structure for Image Classification

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plip

Pathology Language and Image Pre-Training (PLIP) is the first vision and language foundation model for Pathology AI. PLIP is a large-scale pre-trained model that can be used to extract visual and language features from pathology images and text description. The model is a fine-tuned version of the original CLIP model.

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github-slideshow

A robot powered training repository :robot:

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guppy3

guppy / heapy ported to Python3. It works for real!

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HiNet

Official PyTorch implementation of "HiNet: Deep Image Hiding by Invertible Network" (ICCV 2021)

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HistoGAN

Code for "Generative Image Translation for Data Augmentation in Colorectal Histopathology Images" full paper at ML4H Workshop at NeurIPS 2019.

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histolab

Library for Digital Pathology Image Processing

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mimic-code

MIMIC Code Repository: Code shared by the research community for the MIMIC-III database

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OpenAI-CLIP

Simple implementation of OpenAI CLIP model in PyTorch.

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PatientDischargePrediction

Analysis code for "Improving patient flow through hospitals with machine learning based discharge prediction" https://doi.org/10.1101/2023.05.02.23289403

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SemClinBr

SemClinBr - a multi-institutional and multi-specialty semantically annotated corpus for Portuguese clinical NLP tasks

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shareplum

Pythonic SharePoint

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sharepy

Simple SharePoint authentication for Python

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spLite

A lightweight Python module to interface with the SharePoint REST API for the basic function of uploading and downloading files.

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StegaStamp_pytorch

StegaStamp of pytorch version

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streamlit_prophet

Deploy a Streamlit app to train, evaluate and optimize a Prophet forecasting model visually.

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synthtiger_2022_11_14

Official Implementation of SynthTIGER (Synthetic Text Image Generator), ICDAR 2021

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TeenyTinyLlama

A pair of tiny foundational models trained in Brazilian Portuguese.🦙🦙

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